Repository: phiresky/ripgrep-all Branch: master Commit: d6d7d5314ba4 Files: 70 Total size: 1.0 MB Directory structure: gitextract_jwvrvi_c/ ├── .cargo/ │ └── audit.toml ├── .envrc ├── .github/ │ ├── ISSUE_TEMPLATE/ │ │ ├── bug_report.md │ │ └── feature_request.md │ └── workflows/ │ ├── ci.yml │ └── release.yml ├── .gitignore ├── .typos.toml ├── .vscode/ │ └── launch.json ├── CHANGELOG.md ├── Cargo.toml ├── LICENSE.md ├── README.md ├── ci/ │ ├── macos-install-packages │ └── ubuntu-install-packages ├── doc/ │ ├── config.default.jsonc │ ├── notes.md │ └── update-readme.sh ├── exampledir/ │ ├── decompress/ │ │ ├── test.log │ │ ├── test.log.bz2 │ │ ├── test.log.xz │ │ ├── test.log.zst │ │ └── testlogbutwithoutextension │ ├── demo/ │ │ ├── greeting.mkv │ │ ├── hello.odt │ │ └── hello.sqlite3 │ ├── encoding/ │ │ ├── utf16le.txt │ │ └── utf8.txt │ ├── formatting.epub │ ├── mail_nested.eml │ ├── mail_pdf_attach.eml │ ├── sqlitedb │ ├── tar/ │ │ └── test.tar.bz2 │ ├── test/ │ │ ├── github_email.eml │ │ ├── hello.sqlite3 │ │ ├── mail_with_attachment.mbox │ │ └── test.mbx │ ├── test.djvu │ ├── wasteland.docx │ ├── wasteland.epub │ ├── wasteland.fb2 │ ├── wasteland.mkv │ ├── wasteland.mobi │ └── wasteland.odt ├── flake.nix ├── rust-toolchain.toml └── src/ ├── adapted_iter.rs ├── adapters/ │ ├── custom.rs │ ├── decompress.rs │ ├── ffmpeg.rs │ ├── mbox.rs │ ├── postproc.rs │ ├── sqlite.rs │ ├── tar.rs │ ├── writing.rs │ └── zip.rs ├── adapters.rs ├── bin/ │ ├── rga-fzf-open.rs │ ├── rga-fzf.rs │ ├── rga-preproc.rs │ └── rga.rs ├── caching_writer.rs ├── config.rs ├── expand.rs ├── lib.rs ├── matching.rs ├── preproc.rs ├── preproc_cache.rs ├── recurse.rs └── test_utils.rs ================================================ FILE CONTENTS ================================================ ================================================ FILE: .cargo/audit.toml ================================================ [yanked] enabled = false # doesn't work in Nix sandbox update_index = false # crates.io index managed by Nix ================================================ FILE: .envrc ================================================ use flake ================================================ FILE: .github/ISSUE_TEMPLATE/bug_report.md ================================================ --- name: Bug report about: Create a report to help us improve title: '' labels: bug assignees: '' --- **Describe the bug** **To Reproduce** Attach example file: Run command: **Output** **Screenshots** If applicable, add screenshots to help explain your problem. **Operating System and Version** **Output of `rga --version`** ================================================ FILE: .github/ISSUE_TEMPLATE/feature_request.md ================================================ --- name: Feature request about: Suggest an idea for this project title: '' labels: '' assignees: '' --- **Is your feature request related to a problem? Please describe.** A clear and concise description of what the problem is. Ex. I'm always frustrated when [...] **Describe the solution you'd like** A clear and concise description of what you want to happen. **Describe alternatives you've considered** A clear and concise description of any alternative solutions or features you've considered. **Additional context** Add any other context or screenshots about the feature request here. ================================================ FILE: .github/workflows/ci.yml ================================================ # Based on https://github.com/actions-rs/meta/blob/master/recipes/quickstart.md # # While our "example" application has platform-specific code, # for simplicity we are compiling and testing everything in a nix-on-Linux environment only. on: [push, pull_request] name: ci jobs: nix-flake-check: name: nix flake check runs-on: ubuntu-latest steps: - name: Checkout sources uses: actions/checkout@v4 - name: Install nix uses: cachix/install-nix-action@v21 - name: Ensure the build succeeds run: nix build - name: Run `nix flake check` to run formatters, linters, and tests run: nix flake check --print-build-logs ================================================ FILE: .github/workflows/release.yml ================================================ # adapted from https://github.com/BurntSushi/ripgrep/blob/master/.github/workflows/release.yml # The way this works is a little weird. But basically, the create-release job # runs purely to initialize the GitHub release itself. Once done, the upload # URL of the release is saved as an artifact. # # The build-release job runs only once create-release is finished. It gets # the release upload URL by downloading the corresponding artifact (which was # uploaded by create-release). It then builds the release executables for each # supported platform and attaches them as release assets to the previously # created release. # # The key here is that we create the release only once. name: release on: push: # Enable when testing release infrastructure on a branch. # branches: # - ag/release tags: - "v[0-9]+.[0-9]+.[0-9]+*" jobs: create-release: permissions: write-all name: create-release runs-on: ubuntu-latest # env: # Set to force version number, e.g., when no tag exists. # RG_VERSION: TEST-0.0.0 steps: - name: Create artifacts directory run: mkdir artifacts - name: Get the release version from the tag if: env.RG_VERSION == '' run: | # Apparently, this is the right way to get a tag name. Really? # # See: https://github.community/t5/GitHub-Actions/How-to-get-just-the-tag-name/m-p/32167/highlight/true#M1027 echo "RG_VERSION=${GITHUB_REF#refs/tags/}" >> $GITHUB_ENV echo "version is: ${{ env.RG_VERSION }}" - name: Create GitHub release id: release uses: actions/create-release@v1 env: GITHUB_TOKEN: ${{ secrets.GITHUB_TOKEN }} with: tag_name: ${{ env.RG_VERSION }} release_name: ${{ env.RG_VERSION }} - name: Save release upload URL to artifact run: echo "${{ steps.release.outputs.upload_url }}" > artifacts/release-upload-url - name: Save version number to artifact run: echo "${{ env.RG_VERSION }}" > artifacts/release-version - name: Upload artifacts uses: actions/upload-artifact@v4 with: name: artifacts path: artifacts build-release: name: build-release needs: ["create-release"] runs-on: ${{ matrix.os }} env: # For some builds, we use cross to test on 32-bit and big-endian # systems. CARGO: cargo # When CARGO is set to CROSS, this is set to `--target matrix.target`. TARGET_FLAGS: "" # When CARGO is set to CROSS, TARGET_DIR includes matrix.target. TARGET_DIR: ./target # Emit backtraces on panics. RUST_BACKTRACE: 1 strategy: matrix: include: - build: linux os: ubuntu-22.04 rust: nightly target: x86_64-unknown-linux-musl strip: x86_64-linux-musl-strip - build: linux os: ubuntu-22.04 rust: nightly target: arm-unknown-linux-gnueabihf strip: arm-linux-gnueabihf-strip - build: linux os: ubuntu-22.04 rust: nightly target: aarch64-unknown-linux-gnu strip: aarch64-linux-gnu-strip - build: macos os: macos-latest rust: nightly target: x86_64-apple-darwin - build: macos os: macos-latest rust: nightly target: aarch64-apple-darwin - build: win os: windows-2025 rust: nightly target: x86_64-pc-windows-msvc #- build: win # os: windows-2019 # rust: nightly-x86_64-gnu # target: x86_64-pc-windows-gnu steps: - name: Checkout repository uses: actions/checkout@v4 with: fetch-depth: 1 - name: Install packages (Ubuntu) if: matrix.build == 'linux' run: | ci/ubuntu-install-packages - name: Install packages (macOS) if: matrix.build == 'macos' run: | ci/macos-install-packages - name: Install Rust uses: actions-rs/toolchain@v1 with: toolchain: ${{ matrix.rust }} profile: minimal override: true target: ${{ matrix.target }} - name: Use Cross shell: bash run: | cargo install cross echo "CARGO=cross" >> $GITHUB_ENV echo "TARGET_FLAGS=--target ${{ matrix.target }}" >> $GITHUB_ENV echo "TARGET_DIR=./target/${{ matrix.target }}" >> $GITHUB_ENV - name: Show command used for Cargo run: | echo "cargo command is: ${{ env.CARGO }}" echo "target flag is: ${{ env.TARGET_FLAGS }}" echo "target dir is: ${{ env.TARGET_DIR }}" - name: Get release download URL uses: actions/download-artifact@v4 with: name: artifacts path: artifacts - name: Set release upload URL and release version shell: bash run: | echo "RELEASE_UPLOAD_URL=$(cat artifacts/release-upload-url)" >> $GITHUB_ENV echo "release upload url: $RELEASE_UPLOAD_URL" echo "RELEASE_VERSION=$(cat artifacts/release-version)" >> $GITHUB_ENV echo "release version: $RELEASE_VERSION" - name: Build release binary run: ${{ env.CARGO }} build --verbose --release ${{ env.TARGET_FLAGS }} - name: Strip release binary (macos) if: matrix.build == 'macos' run: | strip "target/${{ matrix.target }}/release/rga" \ "target/${{ matrix.target }}/release/rga-preproc" \ "target/${{ matrix.target }}/release/rga-fzf" \ "target/${{ matrix.target }}/release/rga-fzf-open" - name: Strip release binary (linux) if: matrix.build == 'linux' run: | docker run --rm -v \ "$PWD/target:/target:Z" \ "rustembedded/cross:${{ matrix.target }}" \ "${{ matrix.strip }}" \ "/target/${{ matrix.target }}/release/rga" \ "/target/${{ matrix.target }}/release/rga-preproc" \ "/target/${{ matrix.target }}/release/rga-fzf" \ "/target/${{ matrix.target }}/release/rga-fzf-open" - name: Build archive shell: bash run: | staging="ripgrep_all-${{ env.RELEASE_VERSION }}-${{ matrix.target }}" mkdir -p "$staging"/doc cp {README.md,LICENSE.md} "$staging/" cp CHANGELOG.md "$staging/doc/" if [ "${{ matrix.build }}" = "win" ]; then cp "target/${{ matrix.target }}/release/rga.exe" "$staging/" cp "target/${{ matrix.target }}/release/rga-preproc.exe" "$staging/" cp "target/${{ matrix.target }}/release/rga-fzf.exe" "$staging/" cp "target/${{ matrix.target }}/release/rga-fzf-open.exe" "$staging/" 7z a "$staging.zip" "$staging" echo "ASSET=$staging.zip" >> $GITHUB_ENV else cp "target/${{ matrix.target }}/release/rga" "$staging/" cp "target/${{ matrix.target }}/release/rga-preproc" "$staging/" cp "target/${{ matrix.target }}/release/rga-fzf" "$staging/" cp "target/${{ matrix.target }}/release/rga-fzf-open" "$staging/" tar czf "$staging.tar.gz" "$staging" echo "ASSET=$staging.tar.gz" >> $GITHUB_ENV fi - name: Upload release archive uses: actions/upload-release-asset@v1.0.1 env: GITHUB_TOKEN: ${{ secrets.GITHUB_TOKEN }} with: upload_url: ${{ env.RELEASE_UPLOAD_URL }} asset_path: ${{ env.ASSET }} asset_name: ${{ env.ASSET }} asset_content_type: application/octet-stream ================================================ FILE: .gitignore ================================================ /result /target /exampledir.2 /.idea /.pre-commit-config.yaml /.vscode/settings.json **/*.rs.bk ================================================ FILE: .typos.toml ================================================ [default.extend-words] als = "als" [files] extend-exclude = ["exampledir/*"] ================================================ FILE: .vscode/launch.json ================================================ { // Use IntelliSense to learn about possible attributes. // Hover to view descriptions of existing attributes. // For more information, visit: https://go.microsoft.com/fwlink/?linkid=830387 "version": "0.2.0", "configurations": [ { "type": "lldb", "request": "attach", "name": "Attach", "program": "${workspaceFolder}/target/release/rga-preproc" }, { "type": "lldb", "request": "launch", "name": "Debug unit tests in library 'rga'", "cargo": { "args": ["test", "--no-run", "--lib", "--package=rga"], "filter": { "name": "rga", "kind": "lib" } }, "args": [], "cwd": "${workspaceFolder}" }, { "type": "lldb", "request": "launch", "name": "Debug executable 'rga'", "cargo": { "args": ["build", "--bin=rga"], "filter": { "name": "rga", "kind": "bin" } }, "args": [], "cwd": "${workspaceFolder}" }, { "type": "lldb", "request": "launch", "name": "Debug unit tests in executable 'rga'", "cargo": { "args": ["test", "--no-run", "--bin=rga", "--package=ripgrep-all"], "filter": { "name": "rga", "kind": "bin" } }, "args": [], "cwd": "${workspaceFolder}" }, { "type": "lldb", "request": "launch", "name": "Debug executable 'rga-preproc'", "cargo": { "args": ["build", "--bin=rga-preproc"], "filter": { "name": "rga-preproc", "kind": "bin" } }, "args": ["exampledir/tar/test.tar.bz2"], "cwd": "${workspaceFolder}" }, { "type": "lldb", "request": "launch", "name": "Debug unit tests in executable 'rga-preproc'", "cargo": { "args": ["test", "--no-run", "--bin=rga-preproc", "--package=rga"], "filter": { "name": "rga-preproc", "kind": "bin" } }, "args": [], "cwd": "${workspaceFolder}" } ] } ================================================ FILE: CHANGELOG.md ================================================ # 0.10.5 (2024-01-16) - return the same exit status as rg # 0.10.4 (2024-01-16) - add `--rga-no-prefix-filenames` flag (https://github.com/phiresky/ripgrep-all/issues/154) # 0.10.3 (2024-01-15) This was originally supposed to be version 1.0.0, but I don't feel confident enough in the stability to call it that. Highlights: - rga is now configurable via a config file (~/.config/ripgrep-all/config.jsonc) that is generated on first use, including schema. - Custom subprocess-spawning adapters can be defined via config file. See https://github.com/phiresky/ripgrep-all/wiki - External adapters can be shared with the community at https://github.com/phiresky/ripgrep-all/discussions Others: - mbox adapter (@FliegendeWurst https://github.com/phiresky/ripgrep-all/pull/104) - auto generate parts of the readme - add loads of debug logs and performance timings when `--debug` is used - better error messages via `anyhow` - add cross-platform rga-fzf binary - change whole code base to be async - change adapter interface from `(&Read, &Write) -> ()` to `AsyncRead -> AsyncRead` to allow chaining of adapters # 0.9.6 (2020-05-19) - Fix windows builds - Case insensitive file extension matching - Move to Github Actions instead of Travis - Fix searching for words that are hyphenated in PDFs (#44) - Always load rga-preproc binary from location where rga is # 0.9.5 (2020-04-08) - Allow search in pdf files without extension (https://github.com/phiresky/ripgrep-all/issues/39) - Prefer shipped binaries to system-installed ones (https://github.com/phiresky/ripgrep-all/issues/32) - Upgrade dependencies # 0.9.3 (2019-09-19) - Fix compilation on new Rust by updating rusqlite ([#25](https://github.com/phiresky/ripgrep-all/pull/25)) # 0.9.2 (2019-06-17) - Fix file ending regex ([#13](https://github.com/phiresky/ripgrep-all/issues/13)) - Fix decoding of UTF16 with BOM ([#5](https://github.com/phiresky/ripgrep-all/issues/5)) - Shorten the output on failure to two lines (https://github.com/phiresky/ripgrep-all/issues/7), you can use `--no-messages` to completely suppress errors. - Better installations instructions in readme for each OS - Add windows binaries! Including all dependencies! # 0.9.1 (2019-06-16) - Add enabled adapters to cache key if caching for archive - Prevent empty trailing page output in pdf reader # 0.9.0 (2019-06-16) - Split decompress and tar adapter so we can also read pure .bz2 files etc - Add mime type detection to decompress so we can read e.g. /boot/initramfs.img which is a bz2 file without ending # 0.8.9 (2019-06-15) - Finally fix linux binary package - add readme to crates.io # 0.8.7 (2019-06-15) Minor fixes - Correctly wrap help text - Show own help when no arguments given - Hopefully package the rga binary correctly # 0.8.5 previous changes not documented ================================================ FILE: Cargo.toml ================================================ [package] authors = ["phiresky "] description = "rga: ripgrep, but also search in PDFs, E-Books, Office documents, zip, tar.gz, etc." edition = "2024" exclude = [ "exampledir/*", ] homepage = "https://github.com/phiresky/ripgrep-all" license = "AGPL-3.0-or-later" name = "ripgrep_all" readme = "README.md" repository = "https://github.com/phiresky/ripgrep-all" version = "0.10.10" [features] default = ["perf-literal"] perf-literal = ["regex/perf-literal"] # See more keys and their definitions at https://doc.rust-lang.org/cargo/reference/manifest.html [dependencies] anyhow = {version = "1.0.71", features = ["backtrace"]} async-compression = { version = "0.4.0", features = ["all", "all-algorithms", "tokio"] } async-stream = "0.3.5" async-trait = "0.1.68" async_zip = {version = "0.0.12", features = ["full"]} bincode = "1.3.3" bytes = "1.4.0" clap = {version = "4.3.0", features = ["wrap_help"]} crossbeam = "0.8.2" crossbeam-channel = "0.5.8" derive_more = "0.99.17" directories-next = "2.0.0" dyn-clonable = "0.9.0" dyn-clone = "1.0.11" encoding_rs = "0.8.32" encoding_rs_io = "0.1.7" env_logger = "0.10.0" glob = "0.3.1" json_comments = "0.2.1" lazy_static = "1.4.0" log = "0.4.17" mailparse = "0.14.0" memchr = "2.5.0" mime2ext = "0.1.52" open = "5" paste = "1.0.12" path-clean = "1.0.1" pretty-bytes = "0.2.2" regex = "1.8.2" rusqlite = {version = "0.30.0", features = ["vtab", "bundled"]} schemars = {version = "0.8.12", features = ["preserve_order"]} serde = {version = "1.0.163", features = ["derive"]} serde_json = "1.0.96" size_format = "1.0.2" structopt = "0.3.26" tempfile = "3.5.0" tokio = {version = "1.28.1", features = ["full"]} tokio-rusqlite = "0.5.0" tokio-stream = {version = "0.1.14", features = ["io-util", "tokio-util"]} astral-tokio-tar = "0.5.6" tokio-util = {version = "0.7.8", features = ["io", "full"]} tree_magic = {package = "tree_magic_mini", version = "3.0.3"} [dev-dependencies] async-recursion = "1.0.4" ctor = "0.2.0" pretty_assertions = "1.3.0" tempfile = "3.5.0" tokio-test = "0.4.2" [profile.release] debug = true lto = "thin" split-debuginfo = "packed" ================================================ FILE: LICENSE.md ================================================ I like the concept of giving back, so I settled on the AGPL as the default license for all my personal projects. This isn't set in stone, so feel free to write me at `phireskyde+git@gmail.com` if you need something else. --- ### GNU AFFERO GENERAL PUBLIC LICENSE Version 3, 19 November 2007 Copyright © 2007 Free Software Foundation, Inc. <> Everyone is permitted to copy and distribute verbatim copies of this license document, but changing it is not allowed. ### Preamble The GNU Affero General Public License is a free, copyleft license for software and other kinds of works, specifically designed to ensure cooperation with the community in the case of network server software. The licenses for most software and other practical works are designed to take away your freedom to share and change the works. By contrast, our General Public Licenses are intended to guarantee your freedom to share and change all versions of a program--to make sure it remains free software for all its users. When we speak of free software, we are referring to freedom, not price. Our General Public Licenses are designed to make sure that you have the freedom to distribute copies of free software (and charge for them if you wish), that you receive source code or can get it if you want it, that you can change the software or use pieces of it in new free programs, and that you know you can do these things. Developers that use our General Public Licenses protect your rights with two steps: (1) assert copyright on the software, and (2) offer you this License which gives you legal permission to copy, distribute and/or modify the software. A secondary benefit of defending all users' freedom is that improvements made in alternate versions of the program, if they receive widespread use, become available for other developers to incorporate. Many developers of free software are heartened and encouraged by the resulting cooperation. However, in the case of software used on network servers, this result may fail to come about. The GNU General Public License permits making a modified version and letting the public access it on a server without ever releasing its source code to the public. The GNU Affero General Public License is designed specifically to ensure that, in such cases, the modified source code becomes available to the community. It requires the operator of a network server to provide the source code of the modified version running there to the users of that server. Therefore, public use of a modified version, on a publicly accessible server, gives the public access to the source code of the modified version. An older license, called the Affero General Public License and published by Affero, was designed to accomplish similar goals. This is a different license, not a version of the Affero GPL, but Affero has released a new version of the Affero GPL which permits relicensing under this license. The precise terms and conditions for copying, distribution and modification follow. ### TERMS AND CONDITIONS #### 0. Definitions. "This License" refers to version 3 of the GNU Affero General Public License. "Copyright" also means copyright-like laws that apply to other kinds of works, such as semiconductor masks. "The Program" refers to any copyrightable work licensed under this License. Each licensee is addressed as "you". "Licensees" and "recipients" may be individuals or organizations. To "modify" a work means to copy from or adapt all or part of the work in a fashion requiring copyright permission, other than the making of an exact copy. The resulting work is called a "modified version" of the earlier work or a work "based on" the earlier work. A "covered work" means either the unmodified Program or a work based on the Program. To "propagate" a work means to do anything with it that, without permission, would make you directly or secondarily liable for infringement under applicable copyright law, except executing it on a computer or modifying a private copy. Propagation includes copying, distribution (with or without modification), making available to the public, and in some countries other activities as well. To "convey" a work means any kind of propagation that enables other parties to make or receive copies. Mere interaction with a user through a computer network, with no transfer of a copy, is not conveying. An interactive user interface displays "Appropriate Legal Notices" to the extent that it includes a convenient and prominently visible feature that (1) displays an appropriate copyright notice, and (2) tells the user that there is no warranty for the work (except to the extent that warranties are provided), that licensees may convey the work under this License, and how to view a copy of this License. If the interface presents a list of user commands or options, such as a menu, a prominent item in the list meets this criterion. #### 1. Source Code. The "source code" for a work means the preferred form of the work for making modifications to it. "Object code" means any non-source form of a work. A "Standard Interface" means an interface that either is an official standard defined by a recognized standards body, or, in the case of interfaces specified for a particular programming language, one that is widely used among developers working in that language. The "System Libraries" of an executable work include anything, other than the work as a whole, that (a) is included in the normal form of packaging a Major Component, but which is not part of that Major Component, and (b) serves only to enable use of the work with that Major Component, or to implement a Standard Interface for which an implementation is available to the public in source code form. A "Major Component", in this context, means a major essential component (kernel, window system, and so on) of the specific operating system (if any) on which the executable work runs, or a compiler used to produce the work, or an object code interpreter used to run it. The "Corresponding Source" for a work in object code form means all the source code needed to generate, install, and (for an executable work) run the object code and to modify the work, including scripts to control those activities. However, it does not include the work's System Libraries, or general-purpose tools or generally available free programs which are used unmodified in performing those activities but which are not part of the work. For example, Corresponding Source includes interface definition files associated with source files for the work, and the source code for shared libraries and dynamically linked subprograms that the work is specifically designed to require, such as by intimate data communication or control flow between those subprograms and other parts of the work. The Corresponding Source need not include anything that users can regenerate automatically from other parts of the Corresponding Source. The Corresponding Source for a work in source code form is that same work. #### 2. Basic Permissions. All rights granted under this License are granted for the term of copyright on the Program, and are irrevocable provided the stated conditions are met. This License explicitly affirms your unlimited permission to run the unmodified Program. The output from running a covered work is covered by this License only if the output, given its content, constitutes a covered work. This License acknowledges your rights of fair use or other equivalent, as provided by copyright law. You may make, run and propagate covered works that you do not convey, without conditions so long as your license otherwise remains in force. You may convey covered works to others for the sole purpose of having them make modifications exclusively for you, or provide you with facilities for running those works, provided that you comply with the terms of this License in conveying all material for which you do not control copyright. Those thus making or running the covered works for you must do so exclusively on your behalf, under your direction and control, on terms that prohibit them from making any copies of your copyrighted material outside their relationship with you. Conveying under any other circumstances is permitted solely under the conditions stated below. Sublicensing is not allowed; section 10 makes it unnecessary. #### 3. Protecting Users' Legal Rights From Anti-Circumvention Law. No covered work shall be deemed part of an effective technological measure under any applicable law fulfilling obligations under article 11 of the WIPO copyright treaty adopted on 20 December 1996, or similar laws prohibiting or restricting circumvention of such measures. When you convey a covered work, you waive any legal power to forbid circumvention of technological measures to the extent such circumvention is effected by exercising rights under this License with respect to the covered work, and you disclaim any intention to limit operation or modification of the work as a means of enforcing, against the work's users, your or third parties' legal rights to forbid circumvention of technological measures. #### 4. Conveying Verbatim Copies. You may convey verbatim copies of the Program's source code as you receive it, in any medium, provided that you conspicuously and appropriately publish on each copy an appropriate copyright notice; keep intact all notices stating that this License and any non-permissive terms added in accord with section 7 apply to the code; keep intact all notices of the absence of any warranty; and give all recipients a copy of this License along with the Program. You may charge any price or no price for each copy that you convey, and you may offer support or warranty protection for a fee. #### 5. Conveying Modified Source Versions. You may convey a work based on the Program, or the modifications to produce it from the Program, in the form of source code under the terms of section 4, provided that you also meet all of these conditions: - a\) The work must carry prominent notices stating that you modified it, and giving a relevant date. - b\) The work must carry prominent notices stating that it is released under this License and any conditions added under section 7. This requirement modifies the requirement in section 4 to "keep intact all notices". - c\) You must license the entire work, as a whole, under this License to anyone who comes into possession of a copy. This License will therefore apply, along with any applicable section 7 additional terms, to the whole of the work, and all its parts, regardless of how they are packaged. This License gives no permission to license the work in any other way, but it does not invalidate such permission if you have separately received it. - d\) If the work has interactive user interfaces, each must display Appropriate Legal Notices; however, if the Program has interactive interfaces that do not display Appropriate Legal Notices, your work need not make them do so. A compilation of a covered work with other separate and independent works, which are not by their nature extensions of the covered work, and which are not combined with it such as to form a larger program, in or on a volume of a storage or distribution medium, is called an "aggregate" if the compilation and its resulting copyright are not used to limit the access or legal rights of the compilation's users beyond what the individual works permit. Inclusion of a covered work in an aggregate does not cause this License to apply to the other parts of the aggregate. #### 6. Conveying Non-Source Forms. You may convey a covered work in object code form under the terms of sections 4 and 5, provided that you also convey the machine-readable Corresponding Source under the terms of this License, in one of these ways: - a\) Convey the object code in, or embodied in, a physical product (including a physical distribution medium), accompanied by the Corresponding Source fixed on a durable physical medium customarily used for software interchange. - b\) Convey the object code in, or embodied in, a physical product (including a physical distribution medium), accompanied by a written offer, valid for at least three years and valid for as long as you offer spare parts or customer support for that product model, to give anyone who possesses the object code either (1) a copy of the Corresponding Source for all the software in the product that is covered by this License, on a durable physical medium customarily used for software interchange, for a price no more than your reasonable cost of physically performing this conveying of source, or (2) access to copy the Corresponding Source from a network server at no charge. - c\) Convey individual copies of the object code with a copy of the written offer to provide the Corresponding Source. This alternative is allowed only occasionally and noncommercially, and only if you received the object code with such an offer, in accord with subsection 6b. - d\) Convey the object code by offering access from a designated place (gratis or for a charge), and offer equivalent access to the Corresponding Source in the same way through the same place at no further charge. You need not require recipients to copy the Corresponding Source along with the object code. If the place to copy the object code is a network server, the Corresponding Source may be on a different server (operated by you or a third party) that supports equivalent copying facilities, provided you maintain clear directions next to the object code saying where to find the Corresponding Source. Regardless of what server hosts the Corresponding Source, you remain obligated to ensure that it is available for as long as needed to satisfy these requirements. - e\) Convey the object code using peer-to-peer transmission, provided you inform other peers where the object code and Corresponding Source of the work are being offered to the general public at no charge under subsection 6d. A separable portion of the object code, whose source code is excluded from the Corresponding Source as a System Library, need not be included in conveying the object code work. A "User Product" is either (1) a "consumer product", which means any tangible personal property which is normally used for personal, family, or household purposes, or (2) anything designed or sold for incorporation into a dwelling. In determining whether a product is a consumer product, doubtful cases shall be resolved in favor of coverage. For a particular product received by a particular user, "normally used" refers to a typical or common use of that class of product, regardless of the status of the particular user or of the way in which the particular user actually uses, or expects or is expected to use, the product. A product is a consumer product regardless of whether the product has substantial commercial, industrial or non-consumer uses, unless such uses represent the only significant mode of use of the product. "Installation Information" for a User Product means any methods, procedures, authorization keys, or other information required to install and execute modified versions of a covered work in that User Product from a modified version of its Corresponding Source. The information must suffice to ensure that the continued functioning of the modified object code is in no case prevented or interfered with solely because modification has been made. If you convey an object code work under this section in, or with, or specifically for use in, a User Product, and the conveying occurs as part of a transaction in which the right of possession and use of the User Product is transferred to the recipient in perpetuity or for a fixed term (regardless of how the transaction is characterized), the Corresponding Source conveyed under this section must be accompanied by the Installation Information. But this requirement does not apply if neither you nor any third party retains the ability to install modified object code on the User Product (for example, the work has been installed in ROM). The requirement to provide Installation Information does not include a requirement to continue to provide support service, warranty, or updates for a work that has been modified or installed by the recipient, or for the User Product in which it has been modified or installed. Access to a network may be denied when the modification itself materially and adversely affects the operation of the network or violates the rules and protocols for communication across the network. Corresponding Source conveyed, and Installation Information provided, in accord with this section must be in a format that is publicly documented (and with an implementation available to the public in source code form), and must require no special password or key for unpacking, reading or copying. #### 7. Additional Terms. "Additional permissions" are terms that supplement the terms of this License by making exceptions from one or more of its conditions. Additional permissions that are applicable to the entire Program shall be treated as though they were included in this License, to the extent that they are valid under applicable law. If additional permissions apply only to part of the Program, that part may be used separately under those permissions, but the entire Program remains governed by this License without regard to the additional permissions. When you convey a copy of a covered work, you may at your option remove any additional permissions from that copy, or from any part of it. (Additional permissions may be written to require their own removal in certain cases when you modify the work.) You may place additional permissions on material, added by you to a covered work, for which you have or can give appropriate copyright permission. Notwithstanding any other provision of this License, for material you add to a covered work, you may (if authorized by the copyright holders of that material) supplement the terms of this License with terms: - a\) Disclaiming warranty or limiting liability differently from the terms of sections 15 and 16 of this License; or - b\) Requiring preservation of specified reasonable legal notices or author attributions in that material or in the Appropriate Legal Notices displayed by works containing it; or - c\) Prohibiting misrepresentation of the origin of that material, or requiring that modified versions of such material be marked in reasonable ways as different from the original version; or - d\) Limiting the use for publicity purposes of names of licensors or authors of the material; or - e\) Declining to grant rights under trademark law for use of some trade names, trademarks, or service marks; or - f\) Requiring indemnification of licensors and authors of that material by anyone who conveys the material (or modified versions of it) with contractual assumptions of liability to the recipient, for any liability that these contractual assumptions directly impose on those licensors and authors. All other non-permissive additional terms are considered "further restrictions" within the meaning of section 10. If the Program as you received it, or any part of it, contains a notice stating that it is governed by this License along with a term that is a further restriction, you may remove that term. If a license document contains a further restriction but permits relicensing or conveying under this License, you may add to a covered work material governed by the terms of that license document, provided that the further restriction does not survive such relicensing or conveying. If you add terms to a covered work in accord with this section, you must place, in the relevant source files, a statement of the additional terms that apply to those files, or a notice indicating where to find the applicable terms. Additional terms, permissive or non-permissive, may be stated in the form of a separately written license, or stated as exceptions; the above requirements apply either way. #### 8. Termination. You may not propagate or modify a covered work except as expressly provided under this License. Any attempt otherwise to propagate or modify it is void, and will automatically terminate your rights under this License (including any patent licenses granted under the third paragraph of section 11). However, if you cease all violation of this License, then your license from a particular copyright holder is reinstated (a) provisionally, unless and until the copyright holder explicitly and finally terminates your license, and (b) permanently, if the copyright holder fails to notify you of the violation by some reasonable means prior to 60 days after the cessation. Moreover, your license from a particular copyright holder is reinstated permanently if the copyright holder notifies you of the violation by some reasonable means, this is the first time you have received notice of violation of this License (for any work) from that copyright holder, and you cure the violation prior to 30 days after your receipt of the notice. Termination of your rights under this section does not terminate the licenses of parties who have received copies or rights from you under this License. If your rights have been terminated and not permanently reinstated, you do not qualify to receive new licenses for the same material under section 10. #### 9. Acceptance Not Required for Having Copies. You are not required to accept this License in order to receive or run a copy of the Program. Ancillary propagation of a covered work occurring solely as a consequence of using peer-to-peer transmission to receive a copy likewise does not require acceptance. However, nothing other than this License grants you permission to propagate or modify any covered work. These actions infringe copyright if you do not accept this License. Therefore, by modifying or propagating a covered work, you indicate your acceptance of this License to do so. #### 10. Automatic Licensing of Downstream Recipients. Each time you convey a covered work, the recipient automatically receives a license from the original licensors, to run, modify and propagate that work, subject to this License. You are not responsible for enforcing compliance by third parties with this License. An "entity transaction" is a transaction transferring control of an organization, or substantially all assets of one, or subdividing an organization, or merging organizations. If propagation of a covered work results from an entity transaction, each party to that transaction who receives a copy of the work also receives whatever licenses to the work the party's predecessor in interest had or could give under the previous paragraph, plus a right to possession of the Corresponding Source of the work from the predecessor in interest, if the predecessor has it or can get it with reasonable efforts. You may not impose any further restrictions on the exercise of the rights granted or affirmed under this License. For example, you may not impose a license fee, royalty, or other charge for exercise of rights granted under this License, and you may not initiate litigation (including a cross-claim or counterclaim in a lawsuit) alleging that any patent claim is infringed by making, using, selling, offering for sale, or importing the Program or any portion of it. #### 11. Patents. A "contributor" is a copyright holder who authorizes use under this License of the Program or a work on which the Program is based. The work thus licensed is called the contributor's "contributor version". A contributor's "essential patent claims" are all patent claims owned or controlled by the contributor, whether already acquired or hereafter acquired, that would be infringed by some manner, permitted by this License, of making, using, or selling its contributor version, but do not include claims that would be infringed only as a consequence of further modification of the contributor version. For purposes of this definition, "control" includes the right to grant patent sublicenses in a manner consistent with the requirements of this License. Each contributor grants you a non-exclusive, worldwide, royalty-free patent license under the contributor's essential patent claims, to make, use, sell, offer for sale, import and otherwise run, modify and propagate the contents of its contributor version. In the following three paragraphs, a "patent license" is any express agreement or commitment, however denominated, not to enforce a patent (such as an express permission to practice a patent or covenant not to sue for patent infringement). To "grant" such a patent license to a party means to make such an agreement or commitment not to enforce a patent against the party. If you convey a covered work, knowingly relying on a patent license, and the Corresponding Source of the work is not available for anyone to copy, free of charge and under the terms of this License, through a publicly available network server or other readily accessible means, then you must either (1) cause the Corresponding Source to be so available, or (2) arrange to deprive yourself of the benefit of the patent license for this particular work, or (3) arrange, in a manner consistent with the requirements of this License, to extend the patent license to downstream recipients. "Knowingly relying" means you have actual knowledge that, but for the patent license, your conveying the covered work in a country, or your recipient's use of the covered work in a country, would infringe one or more identifiable patents in that country that you have reason to believe are valid. If, pursuant to or in connection with a single transaction or arrangement, you convey, or propagate by procuring conveyance of, a covered work, and grant a patent license to some of the parties receiving the covered work authorizing them to use, propagate, modify or convey a specific copy of the covered work, then the patent license you grant is automatically extended to all recipients of the covered work and works based on it. A patent license is "discriminatory" if it does not include within the scope of its coverage, prohibits the exercise of, or is conditioned on the non-exercise of one or more of the rights that are specifically granted under this License. You may not convey a covered work if you are a party to an arrangement with a third party that is in the business of distributing software, under which you make payment to the third party based on the extent of your activity of conveying the work, and under which the third party grants, to any of the parties who would receive the covered work from you, a discriminatory patent license (a) in connection with copies of the covered work conveyed by you (or copies made from those copies), or (b) primarily for and in connection with specific products or compilations that contain the covered work, unless you entered into that arrangement, or that patent license was granted, prior to 28 March 2007. Nothing in this License shall be construed as excluding or limiting any implied license or other defenses to infringement that may otherwise be available to you under applicable patent law. #### 12. No Surrender of Others' Freedom. If conditions are imposed on you (whether by court order, agreement or otherwise) that contradict the conditions of this License, they do not excuse you from the conditions of this License. If you cannot convey a covered work so as to satisfy simultaneously your obligations under this License and any other pertinent obligations, then as a consequence you may not convey it at all. For example, if you agree to terms that obligate you to collect a royalty for further conveying from those to whom you convey the Program, the only way you could satisfy both those terms and this License would be to refrain entirely from conveying the Program. #### 13. Remote Network Interaction; Use with the GNU General Public License. Notwithstanding any other provision of this License, if you modify the Program, your modified version must prominently offer all users interacting with it remotely through a computer network (if your version supports such interaction) an opportunity to receive the Corresponding Source of your version by providing access to the Corresponding Source from a network server at no charge, through some standard or customary means of facilitating copying of software. This Corresponding Source shall include the Corresponding Source for any work covered by version 3 of the GNU General Public License that is incorporated pursuant to the following paragraph. Notwithstanding any other provision of this License, you have permission to link or combine any covered work with a work licensed under version 3 of the GNU General Public License into a single combined work, and to convey the resulting work. The terms of this License will continue to apply to the part which is the covered work, but the work with which it is combined will remain governed by version 3 of the GNU General Public License. #### 14. Revised Versions of this License. The Free Software Foundation may publish revised and/or new versions of the GNU Affero General Public License from time to time. Such new versions will be similar in spirit to the present version, but may differ in detail to address new problems or concerns. Each version is given a distinguishing version number. If the Program specifies that a certain numbered version of the GNU Affero General Public License "or any later version" applies to it, you have the option of following the terms and conditions either of that numbered version or of any later version published by the Free Software Foundation. If the Program does not specify a version number of the GNU Affero General Public License, you may choose any version ever published by the Free Software Foundation. If the Program specifies that a proxy can decide which future versions of the GNU Affero General Public License can be used, that proxy's public statement of acceptance of a version permanently authorizes you to choose that version for the Program. Later license versions may give you additional or different permissions. However, no additional obligations are imposed on any author or copyright holder as a result of your choosing to follow a later version. #### 15. Disclaimer of Warranty. THERE IS NO WARRANTY FOR THE PROGRAM, TO THE EXTENT PERMITTED BY APPLICABLE LAW. EXCEPT WHEN OTHERWISE STATED IN WRITING THE COPYRIGHT HOLDERS AND/OR OTHER PARTIES PROVIDE THE PROGRAM "AS IS" WITHOUT WARRANTY OF ANY KIND, EITHER EXPRESSED OR IMPLIED, INCLUDING, BUT NOT LIMITED TO, THE IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE. THE ENTIRE RISK AS TO THE QUALITY AND PERFORMANCE OF THE PROGRAM IS WITH YOU. SHOULD THE PROGRAM PROVE DEFECTIVE, YOU ASSUME THE COST OF ALL NECESSARY SERVICING, REPAIR OR CORRECTION. #### 16. Limitation of Liability. IN NO EVENT UNLESS REQUIRED BY APPLICABLE LAW OR AGREED TO IN WRITING WILL ANY COPYRIGHT HOLDER, OR ANY OTHER PARTY WHO MODIFIES AND/OR CONVEYS THE PROGRAM AS PERMITTED ABOVE, BE LIABLE TO YOU FOR DAMAGES, INCLUDING ANY GENERAL, SPECIAL, INCIDENTAL OR CONSEQUENTIAL DAMAGES ARISING OUT OF THE USE OR INABILITY TO USE THE PROGRAM (INCLUDING BUT NOT LIMITED TO LOSS OF DATA OR DATA BEING RENDERED INACCURATE OR LOSSES SUSTAINED BY YOU OR THIRD PARTIES OR A FAILURE OF THE PROGRAM TO OPERATE WITH ANY OTHER PROGRAMS), EVEN IF SUCH HOLDER OR OTHER PARTY HAS BEEN ADVISED OF THE POSSIBILITY OF SUCH DAMAGES. #### 17. Interpretation of Sections 15 and 16. If the disclaimer of warranty and limitation of liability provided above cannot be given local legal effect according to their terms, reviewing courts shall apply local law that most closely approximates an absolute waiver of all civil liability in connection with the Program, unless a warranty or assumption of liability accompanies a copy of the Program in return for a fee. END OF TERMS AND CONDITIONS ### How to Apply These Terms to Your New Programs If you develop a new program, and you want it to be of the greatest possible use to the public, the best way to achieve this is to make it free software which everyone can redistribute and change under these terms. To do so, attach the following notices to the program. It is safest to attach them to the start of each source file to most effectively state the exclusion of warranty; and each file should have at least the "copyright" line and a pointer to where the full notice is found. Copyright (C) This program is free software: you can redistribute it and/or modify it under the terms of the GNU Affero General Public License as published by the Free Software Foundation, either version 3 of the License, or (at your option) any later version. This program is distributed in the hope that it will be useful, but WITHOUT ANY WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the GNU Affero General Public License for more details. You should have received a copy of the GNU Affero General Public License along with this program. If not, see . Also add information on how to contact you by electronic and paper mail. If your software can interact with users remotely through a computer network, you should also make sure that it provides a way for users to get its source. For example, if your program is a web application, its interface could display a "Source" link that leads users to an archive of the code. There are many ways you could offer source, and different solutions will be better for different programs; see section 13 for the specific requirements. You should also get your employer (if you work as a programmer) or school, if any, to sign a "copyright disclaimer" for the program, if necessary. For more information on this, and how to apply and follow the GNU AGPL, see <>. ================================================ FILE: README.md ================================================ # rga: ripgrep, but also search in PDFs, E-Books, Office documents, zip, tar.gz, etc. rga is a line-oriented search tool that allows you to look for a regex in a multitude of file types. rga wraps the awesome [ripgrep] and enables it to search in pdf, docx, sqlite, jpg, movie subtitles (mkv, mp4), etc. [ripgrep]: https://github.com/BurntSushi/ripgrep [![github repo](https://img.shields.io/badge/repo-github.com%2Fphiresky%2Fripgrep--all-informational.svg)](https://github.com/phiresky/ripgrep-all) [![Crates.io](https://img.shields.io/crates/v/ripgrep-all.svg)](https://crates.io/crates/ripgrep-all) [![fearless concurrency](https://img.shields.io/badge/concurrency-fearless-success.svg)](https://www.reddit.com/r/rustjerk/top/?sort=top&t=all) For more detail, see this introductory blogpost: https://phiresky.github.io/blog/2019/rga--ripgrep-for-zip-targz-docx-odt-epub-jpg/ rga will recursively descend into archives and match text in every file type it knows. Here is an [example directory](https://github.com/phiresky/ripgrep-all/tree/master/exampledir/demo) with different file types: ``` demo/ ├── greeting.mkv ├── hello.odt ├── hello.sqlite3 └── somearchive.zip ├── dir │ ├── greeting.docx │ └── inner.tar.gz │ └── greeting.pdf └── greeting.epub ``` ![rga output](doc/demodir.png) ## Integration with fzf ![rga-fzf](doc/rga-fzf.gif) See [the wiki](https://github.com/phiresky/ripgrep-all/wiki/fzf-Integration) for instructions of integrating rga with fzf. ## INSTALLATION Linux x64, macOS and Windows binaries are available [in GitHub Releases][latestrelease]. [latestrelease]: https://github.com/phiresky/ripgrep-all/releases/latest ### Linux #### Arch Linux `pacman -S ripgrep-all` #### Gentoo Linux `emerge sys-apps/ripgrep-all` #### Nix `nix-env -iA nixpkgs.ripgrep-all` #### Debian-based download the [rga binary][latestrelease] and get the dependencies like this: `apt install ripgrep pandoc poppler-utils ffmpeg` If ripgrep is not included in your package sources, get it from [here](https://github.com/BurntSushi/ripgrep/releases). rga will search for all binaries it calls in \$PATH and the directory itself is in. ### Windows Note that installing via [chocolatey](https://chocolatey.org/packages/ripgrep-all) or [scoop](https://github.com/ScoopInstaller/Main/blob/master/bucket/rga.json) is the only supported download method. If you download the binary from releases manually, you will not get the dependencies (for example pdftotext from poppler). If you get an error like `VCRUNTIME140.DLL could not be found`, you need to install [vc_redist.x64.exe](https://support.microsoft.com/en-us/help/2977003/the-latest-supported-visual-c-downloads). #### Chocolatey ``` choco install ripgrep-all ``` #### Scoop ``` scoop install rga ``` ### Homebrew/Linuxbrew `rga` can be installed with [Homebrew](https://formulae.brew.sh/formula/ripgrep-all#default): `brew install rga` To install the dependencies that are each not strictly necessary but very useful: `brew install pandoc poppler ffmpeg` ### MacPorts `rga` can also be installed on macOS via [MacPorts](https://ports.macports.org/port/ripgrep-all/): `sudo port install ripgrep-all` ### Compile from source rga should compile with stable Rust (v1.75.0+, check with `rustc --version`). To build it, run the following (or the equivalent in your OS): ``` ~$ apt install build-essential pandoc poppler-utils ffmpeg ripgrep cargo ~$ cargo install --locked ripgrep_all ~$ rga --version # this should work now ``` ## Available Adapters rga works with _adapters_ that adapt various file formats. It comes with a few adapters integrated: ``` rga --rga-list-adapters ``` You can also add **custom adapters**. See [the wiki](https://github.com/phiresky/ripgrep-all/wiki) for more information. Adapters: - **pandoc** Uses pandoc to convert binary/unreadable text documents to plain markdown-like text Runs: pandoc --from= --to=plain --wrap=none --markdown-headings=atx Extensions: .epub, .odt, .docx, .fb2, .ipynb, .html, .htm - **poppler** Uses pdftotext (from poppler-utils) to extract plain text from PDF files Runs: pdftotext - - Extensions: .pdf Mime Types: application/pdf - **postprocpagebreaks** Adds the page number to each line for an input file that specifies page breaks as ascii page break character. Mainly to be used internally by the poppler adapter. Extensions: .asciipagebreaks - **ffmpeg** Uses ffmpeg to extract video metadata/chapters, subtitles, lyrics, and other metadata Extensions: .mkv, .mp4, .avi, .mp3, .ogg, .flac, .webm - **zip** Reads a zip file as a stream and recurses down into its contents Extensions: .zip, .jar Mime Types: application/zip - **decompress** Reads compressed file as a stream and runs a different extractor on the contents. Extensions: .als, .bz2, .gz, .tbz, .tbz2, .tgz, .xz, .zst Mime Types: application/gzip, application/x-bzip, application/x-xz, application/zstd - **tar** Reads a tar file as a stream and recurses down into its contents Extensions: .tar - **sqlite** Uses sqlite bindings to convert sqlite databases into a simple plain text format Extensions: .db, .db3, .sqlite, .sqlite3 Mime Types: application/x-sqlite3 The following adapters are disabled by default, and can be enabled using '--rga-adapters=+foo,bar': - **mail** Reads mailbox/mail files and runs extractors on the contents and attachments. Extensions: .mbox, .mbx, .eml Mime Types: application/mbox, message/rfc822 ## USAGE: > rga \[RGA OPTIONS\] \[RG OPTIONS\] PATTERN \[PATH \...\] ## FLAGS: **\--rga-accurate** > Use more accurate but slower matching by mime type > By default, rga will match files using file extensions. Some programs, > such as sqlite3, don\'t care about the file extension at all, so users > sometimes use any or no extension at all. With this flag, rga will try > to detect the mime type of input files using the magic bytes (similar > to the \`file\` utility), and use that to choose the adapter. > Detection is only done on the first 8KiB of the file, since we can\'t > always seek on the input (in archives). **\--rga-no-cache** > Disable caching of results > By default, rga caches the extracted text, if it is small enough, to a > database in \${XDG_CACHE_DIR-\~/.cache}/ripgrep-all on Linux, > _\~/Library/Caches/ripgrep-all_ on macOS, or > C:\\Users\\username\\AppData\\Local\\ripgrep-all on Windows. This way, > repeated searches on the same set of files will be much faster. If you > pass this flag, all caching will be disabled. **-h**, **\--help** > Prints help information **\--rga-list-adapters** > List all known adapters **\--rga-print-config-schema** > Print the JSON Schema of the configuration file **\--rg-help** > Show help for ripgrep itself **\--rg-version** > Show version of ripgrep itself **-V**, **\--version** > Prints version information ## OPTIONS: **\--rga-adapters=**\\... > Change which adapters to use and in which priority order (descending) > \"foo,bar\" means use only adapters foo and bar. \"-bar,baz\" means > use all default adapters except for bar and baz. \"+bar,baz\" means > use all default adapters and also bar and baz. **\--rga-cache-compression-level=**\ > ZSTD compression level to apply to adapter outputs before storing in > cache db > Ranges from 1 - 22 \[default: 12\] **\--rga-config-file=**\ **\--rga-max-archive-recursion=**\ > Maximum nestedness of archives to recurse into \[default: 5\] **\--rga-cache-max-blob-len=**\ > Max compressed size to cache > Longest byte length (after compression) to store in cache. Longer > adapter outputs will not be cached and recomputed every time. > Allowed suffixes on command line: k M G \[default: 2000000\] **\--rga-cache-path=**\ > Path to store cache db \[default: /home/phire/.cache/ripgrep-all\] **-h** shows a concise overview, **\--help** shows more detail and advanced options. All other options not shown here are passed directly to rg, especially \[PATTERN\] and \[PATH \...\] ## Config The config file location leverage the mechanisms defined by - the [XDG base directory](https://standards.freedesktop.org/basedir-spec/basedir-spec-latest.html) and the [XDG user directory](https://www.freedesktop.org/wiki/Software/xdg-user-dirs/) specifications on Linux (ex: `~/.config/ripgrep-all/config.jsonc`) - the [Known Folder](https://msdn.microsoft.com/en-us/library/windows/desktop/dd378457.aspx) API on Windows (ex: `C:\Users\Alice\AppData\Roaming\ripgrep-all/config.jsonc`) - the [Standard Directories](https://developer.apple.com/library/content/documentation/FileManagement/Conceptual/FileSystemProgrammingGuide/FileSystemOverview/FileSystemOverview.html#//apple_ref/doc/uid/TP40010672-CH2-SW6) guidelines on macOS (ex: `~/Library/Application Support/ripgrep-all/config.jsonc`) ## Development To enable debug logging: ```bash export RUST_LOG=debug export RUST_BACKTRACE=1 ``` Also remember to disable caching with `--rga-no-cache` or clear the cache (`~/Library/Caches/rga` on macOS, `~/.cache/rga` on other Unixes, or `C:\Users\username\AppData\Local\rga` on Windows) to debug the adapters. ### Nix and Direnv You can use the provided [`flake.nix`](./flake.nix) to setup all build- and run-time dependencies: 1. Enable [Flakes](https://wiki.nixos.org/wiki/Flakes) in your Nix configuration. 1. Add [`direnv`](https://direnv.net/) to your profile: `nix profile install nixpkgs#direnv` 1. `cd` into the directory where you have cloned this directory. 1. Allow use of [`.envrc`](./.envrc): `direnv allow` 1. After the dependencies have been installed, your shell will now have all of the necessary development dependencies. ================================================ FILE: ci/macos-install-packages ================================================ #!/bin/sh brew install poppler ================================================ FILE: ci/ubuntu-install-packages ================================================ #!/bin/sh sudo apt-get update sudo apt-get install -y --no-install-recommends \ poppler-utils ================================================ FILE: doc/config.default.jsonc ================================================ { // This file follows the JSON schema defined below. // If you use an editor that supports JSON schema (e.g. VS Code), // you should be getting IntelliSense and validation. "$schema": "./config.v1.schema.json", // The default config and schema will be regenerated if they are missing // https://github.com/phiresky/ripgrep-all/blob/master/doc/config.default.jsonc // The config options are the same as the command line options, // but with --rga- prefix removed and - and . replaced with _. // e.g. --rga-no-cache becomes `"no_cache": true. // The only exception is the `custom_adapters` option, which can only be set in this file. "custom_adapters": [ // See https://github.com/phiresky/ripgrep-all/wiki for more information // to verify if your custom adapters are picked up correctly, run `rga --rga-list-adapters` ] } ================================================ FILE: doc/notes.md ================================================ ## schema -> ui generation https://json-schema.org/implementations.html#web-ui-generation - https://github.com/guillotinaweb/ngx-schema-form - https://github.com/hamzahamidi/ajsf angular igh - https://github.com/dashjoin/json-schema-form - https://github.com/json-editor/json-editor - https://github.com/jsonform/jsonform - https://github.com/vazco/uniforms ## json schema is ridiculous "mimetypes": { "description": "if not null and --rga-accurate is enabled, mime type matching is used instead of file name matching", "type": [ "array", "null" ], "items": { "type": "string" } }, what the fuck???? this is the only thing required to see that json schema has horrible design ================================================ FILE: doc/update-readme.sh ================================================ #!/bin/bash content=$( cat < $(cargo run --bin rga -- --rga-list-adapters) $(help2man -N "cargo run --bin rga --" | pandoc -f man -t markdown --markdown-headings=atx | rg --multiline "## USAGE:(.|\n)*") END ) rg --passthrough --multiline '.*update-readme.sh(.|\n)*update-readme.sh.*' README.md --replace "$content" | sponge README.md prettier --write README.md ================================================ FILE: exampledir/decompress/test.log ================================================ hello world this is a test ================================================ FILE: exampledir/encoding/utf8.txt ================================================ hello wörld! ================================================ FILE: exampledir/mail_nested.eml ================================================ To: submit.t4eseGWSvG1JST3r@spam.spamcop.net From: 2012gdwu <2012gdwu@posteo.de> Subject: Postbank Spam Autocrypt: addr=2012gdwu@posteo.de; keydata= mDMEXXjwiRYJKwYBBAHaRw8BAQdAmjXRazNXXy5tK05Dwl5mSRbdth9JkQq92V/QVyqjdgm0 I0FybmUgS2VsbGVyIDxhcm5lLmtlbGxlckBwb3N0ZW8uZGU+iJYEExYIAD4WIQR2UN3HoAGx KI0B7Eih+UCxBQvPLgUCXXjwiQIbAwUJCWYBgAULCQgHAgYVCgkICwIEFgIDAQIeAQIXgAAK CRCh+UCxBQvPLpPfAP4gs6Oky3+UO2LU2XxweeQO+YEWXK0QtM2+ajzrGaF3HAD+LBfmyB9+ Wom2KP0CwxUzI4d6zmiAMSKOnGGgzd65igm4OARdePCJEgorBgEEAZdVAQUBAQdAncxZ3Rox wmvm+/qCkCm9+PU2HmWr08M3qdqkf2L4IngDAQgHiH4EGBYIACYWIQR2UN3HoAGxKI0B7Eih +UCxBQvPLgUCXXjwiQIbDAUJCWYBgAAKCRCh+UCxBQvPLpQkAQCgYOlOftMNi+sfn+XQvfOc ULQWp+cgOBMcyVCdpJEQCwD9HBuwuHobl8FPm0PbRtlCn/7GY4WK+Hh4+3BKmhRn8wU= Message-ID: <1530ae05-33a7-fa40-9473-ca625a14385a@posteo.de> Date: Mon, 20 Jul 2020 07:35:55 +0200 User-Agent: Mozilla/5.0 (X11; Linux x86_64; rv:68.0) Gecko/20100101 Thunderbird/68.10.0 MIME-Version: 1.0 Content-Type: multipart/mixed; boundary="------------6670F92201FB126ED9472803" Content-Language: de-DE This is a multi-part message in MIME format. --------------6670F92201FB126ED9472803 Content-Type: text/plain; charset=utf-8 Content-Transfer-Encoding: 7bit here you go --------------6670F92201FB126ED9472803 Content-Type: message/rfc822; name="postbank.eml" Content-Transfer-Encoding: 7bit Content-Disposition: attachment; filename="postbank.eml" Return-Path: Delivered-To: arne.keller@posteo.de Received: from proxy02.posteo.name ([127.0.0.1]) by dovecot12 (Dovecot) with LMTP id EaKBGxv9FF+9mwEAJesNpQ for ; Mon, 20 Jul 2020 04:15:27 +0200 Received: from proxy02.posteo.de ([127.0.0.1]) by proxy02.posteo.name (Dovecot) with LMTP id 31UFGtHsFF+T4gMAGFAyLg ; Mon, 20 Jul 2020 04:15:27 +0200 Received: from mailin05.posteo.de (unknown [10.0.1.5]) by proxy02.posteo.de (Postfix) with ESMTPS id 4B950v2JYGz11fk for ; Mon, 20 Jul 2020 04:15:27 +0200 (CEST) Received: from mx03.posteo.de (mailin05.posteo.de [127.0.0.1]) by mailin05.posteo.de (Postfix) with ESMTPS id 4270120F15 for ; Mon, 20 Jul 2020 04:15:27 +0200 (CEST) X-Virus-Scanned: amavisd-new at posteo.de X-Spam-Flag: NO X-Spam-Score: 2.639 X-Spam-Level: ** X-Spam-Status: No, score=2.639 tagged_above=-1000 required=8 tests=[AV:Heuristics.Phishing.Email.SpoofedDomain=0.1, ALL_TRUSTED=-1, FROM_LOCAL_NOVOWEL=0.5, HK_RANDOM_ENVFROM=0.626, HK_RANDOM_FROM=0.999, HTML_FONT_LOW_CONTRAST=0.001, HTML_IMAGE_ONLY_24=1.282, HTML_MESSAGE=0.001, HTTPS_HTTP_MISMATCH=0.1, POSTEO_GENERICS_IO=0.01, T_FILL_THIS_FORM_SHORT=0.01, T_REMOTE_IMAGE=0.01] autolearn=disabled Received: from mout.web.de (mout.web.de [212.227.15.14]) by mx03.posteo.de (Postfix) with ESMTPS id 4B950t696Mz10nB for ; Mon, 20 Jul 2020 04:15:26 +0200 (CEST) Authentication-Results: mx03.posteo.de; dmarc=none (p=none dis=none) header.from=carcarry.de Received: from [212.227.15.17] ([212.227.15.17]) by mx-ha.web.de (mxweb010 [212.227.15.17]) with ESMTPS (Nemesis) id 1MRloE-1kQNT22I4w-00T9hm for ; Mon, 20 Jul 2020 04:15:26 +0200 Received: from mout.kundenserver.de ([212.227.17.24]) by mx-ha.web.de (mxweb010 [212.227.15.17]) with ESMTPS (Nemesis) id 1MINbE-1k0aRm2Hzw-00EOVM for <2012gdwu@web.de>; Mon, 20 Jul 2020 04:15:26 +0200 Received: from 217.160.251.109 ([217.160.251.109]) by mrelayeu.kundenserver.de (mreue107 [212.227.15.183]) with ESMTPSA (Nemesis) id 1MPoPd-1kBHRt0o2F-00MqkS for <2012gdwu@web.de>; Mon, 20 Jul 2020 04:15:26 +0200 From: "=?utf-8?B?UE9TVEJBTs2fS82f?=" Subject: BsetSign App : Y7P32-HTXU2-FRDG7 To: "2012gdwu" <2012gdwu@web.de> Content-Type: multipart/alternative; boundary="QHebeB08yNTYquFAhtQnxv=_cOW4Xd528c" MIME-Version: 1.0 Date: Mon, 20 Jul 2020 02:15:26 +0000 Message-ID: <1M3lHZ-1jyAPt0pTn-000u1I@mrelayeu.kundenserver.de> X-Provags-ID: V03:K1:68TECBVA88ZKh8HcSl/N+ElwlecL1tc+1AuDDyqm9em66WO295R IfuHqA9uG7+Vlyr99v+OneGltnr43KfsgRKj9GgOpDj2QelHphKFGPILAvvsQ8vOq6ucC2W BW3NEOh3JhitB6o4xLEmj+dbivC0ie728/cPMcjj6TwyBzw5nT1or8mBZWoEMSF/zcu+PIr gGpFY2puzzURN4oKX82/w== X-Spam-Flag: NO X-UI-Out-Filterresults: notjunk:1;V03:K0:c01ZANnvlk8=:ouSMGue72FUx2PJOSNnmEW qI8A89gf6q3aAdJBhLX1Bhd70xio64ljpha9X5ArOYg6Q2RH1JYyvfBSMoTo3HMy37H3L8kaq ReRCdSPOMD8+llZ/rRpPLl+7PofGOv+Hu3UO7gzgm9v0YqwLZIwh9P2w9TIu+GqVJWeDdmxrs RDPeHY8lsRL+8AFeSGNiWBYMEHDxKofTqS5Zh7mal1Bm4JbgEEIP36V4oL3c6V1olMHQZzEH9 7D0T8U6LyLyfSbuu5M6QN2FZ+F6IDJNDUG1uwNt9K12ESY6TweMR3xInFabiZ9fMPmrjPaNwW hlyKg67tDYL2lfk2fpa/LbhLnlfKEDqSvkgK54CZh+xbIQetju66cZUEFQyCIcGdAOWI8+nty FdbNUzxhNpZTPBrA7H95gRuc0u2GJBfZZsxdp46jpBwG65yqmJ32pkJrATo8CNbBO9A6hpdyL UNu5bavZBJp9dsyY6Cnm6vMOIjJ8qMy/vNkrtRXNWBrnVHhuQZ3B+osG8XWLiyq7s4hFOwDxY WLRgjKL6HgIj+2DLParwiuSsX8TVy5+WhxDUou0UJDzD3C1JmYiryTlo4Vu4CIZFXkgAuAsEq c55M6L2eUmD3xQNaqgMEJFksT2qXWaSb2Qw6HM7mtLBbSUhuWtSv2oeVrNwgx8XWexWYYZYFv KAZzICpkVhxpYIntoKRiDtQZxBDejPwGmne2iG81rn34pGJwOOYojf9dFghodE5bZEqVh6KbA f/38x9FIoYewzA2WuyngX/bXTdkLQM49W1vdlF5DQOlgYuM8Ni7NeJG888VhDZxcUn6vIIJs3 xH0jOWrWCUz0gK9uyyagjcfdXr54Zv1E7i936CTlRq5QnDKN2C9jQFH5ymD4G1W5zX6Xj/05O M7VaU9Y3mvOM/+82zsKc5zJOFOf9MoI5JBhnPjHWeqaJgpYhNoKgGvPo3QfZFwzk/MHH2PgB1 PLGvjSE8u/cpYeGhJdzTXM00J9ai5yGRNFD71zHoHBOFGCpmZVnJJ8SD+qUd4K4BfSD+DJ5Qd t1wsCpH5bgodnXgMcN6Zj0q3P/ODk3dnah1hsYMyIWDBFZ0cTlp2QkYhAKZh1HM5WcfSc5UwU SrcK9HHiG7BKOFYA1r6Rx5YYqwGWeGxr9mlH7MLyfCwI8PlWtfeB7Pj4eEI1hLy9GMnHBCJDj W8o1yDeE54rgWHR7CtIF6w+qF+quA3ZdwVSPOHwQeH7vS4OaJjeEyeeT4YOJdIMI7UknEasAG LfMS/PKWx7+YcUNaz0xvO70NwZj1FKJuWqDS6ZTciMSvGkEFTWVOqn5nPlHi8hDbBTVn70aPa BQi3U68hgdDpJIHlVLLvRcaCYYly3L60NQBgJroag4fRiIvDUSXfDatrDYOv+L4xBYdB3GP+s wqtsPY82YOwXP5KlRMPVEZcuWX5tWiOuaNjePbEkXpE2iQZUqfkDQTYNUGZR+TTBqHOWjO7R3 hORQB0gOwe85gZv80G1EL32EtRjVxJxQfrHGPCGXb8HRXbvGGV3Xu3wZEE8iuJngBUJtWeDBq q61rYwZxVuml72lfRM6Lo+OGLAsyqvobxujY9BHpokZH4FNlUstjUoPANTGoAhM+MyQb0fSAV 8HA/r6n0oJh0B8+2AxJvVokbhEbL/RlJIZIYpCeRceeA+jjBaR7EvuglUoLN3CcB9CrdDH/qz ymHzEjPVnFar3/sqRjeKyIk71z4yotOKCPQcdD1gTbYWehZiIJwAlDFSpfPdFTQLOJMWd3wuD 0mHLep6tLtCY+hjhCYWlTyKKQ8CWiBWPTql21bPp7XVWCfc+4u8kZi5Y3dg3pvpSwwmcyRisX +7+8a+pBzN4VOEuX+dzglKDrNd6h2OL0tBMnk1yqAV27dX9cMRrO941IvtiaZO90BjZtV92oP XkGxvKnGQuynHus/3yblaw== This is a multi-part message in MIME format --QHebeB08yNTYquFAhtQnxv=_cOW4Xd528c Content-Type: text/plain; charset="utf-8" Content-Transfer-Encoding: quoted-printable Content-Disposition: inline Sehr geehrter Herr / Frau =E2=80=A6, Ab dem 20. Jul 2020 aktualisiert die Postbank alle BestSign-Anwendung= en. =C3=96ffnen Sie den unten stehenden Aktivierungslink, um am Upgrade t= eilzunehmen. Verkn=C3=BCpfung https://meine.postbank.de/#/login Wir empfehlen dringend, dieses Upgrade durchzuf=C3=BChren. Reundliche Gr=C3=BC=C3=9Fe, =C2=A9 2020 Postbank=E2=80=93 eine Niederlassung der Deutsche Bank AG= Hypnotiseur/zertifizierter Hypnosecoach (DVH) Burnoutpr=C3=A4ventionscoach Modeberater f=C3=BCr Ma=C3=9Fhemden/Ma=C3=9Fblusen Kurs/Seminarleiter Waldbaden/Waldcoach Am Wiesengrund 5 24980 Schafflund Tel.: 04639-98475 Mob.: 015117317305 Home : www.hypnosepraxis-im-norden.de Home : www.masshemden-im-norden.de Home : www.waldbaden-zwischen-den-meeren.de --QHebeB08yNTYquFAhtQnxv=_cOW4Xd528c Content-Type: text/html; charset="utf-8" Content-Transfer-Encoding: quoted-printable Content-Disposition: inline

3D""


 Sehr geehrter Herr / Frau =E2=80=A6,
 Ab dem 20. Jul 2020 aktualisiert die Postbank alle BestSign= -Anwendungen.

 =C3=96ffnen Sie den unten stehenden Aktivierungslink, um am= Upgrade teilzunehmen. Verkn=C3=BCpfung


 Wir empfehlen dringend, dieses Upgrade durchzuf=C3=BChren.<= /div>
 Reundliche Gr=C3=BC=C3=9Fe,
 =C2=A9 2020 Postbank=E2=80= =93 eine Niederlassung der Deutsche Bank AG

Hypnotiseur/zertifizierter Hypnosecoach (DVH)=
Burnoutpr=C3=A4= ventionscoach
Mo= deberater f=C3=BCr Ma=C3=9Fhemden/Ma=C3=9Fblusen
Kurs/Seminarleiter Waldbaden/Waldcoac= h
Am Wiesengrund= 5
24980 Schaffl= und
Tel.: 04639-= 98475
Mob.: 0151= 17317305
Home : = www.hypnos= epraxis-im-norden.de
Home : www.masshemden-im-norden.de
Home : www.waldbaden-zwischen-den-meeren.de<= /div>
--QHebeB08yNTYquFAhtQnxv=_cOW4Xd528c-- --------------6670F92201FB126ED9472803-- ================================================ FILE: exampledir/mail_pdf_attach.eml ================================================ Return-Path: Delivered-To: arne.keller@posteo.de Received: from proxy02.posteo.name ([127.0.0.1]) by dovecot12.posteo.name (Dovecot) with LMTP id pSysHGDdbmB8YwEAX/Xuyw for ; Thu, 08 Apr 2021 13:05:20 +0200 Received: from proxy02.posteo.de ([127.0.0.1]) by proxy02.posteo.name (Dovecot) with LMTP id s5NOOdLWbmCfkwIAGFAyLg ; Thu, 08 Apr 2021 13:05:20 +0200 Received: from mailin03.posteo.de (unknown [10.0.0.63]) by proxy02.posteo.de (Postfix) with ESMTPS id 4FGJMN08Csz11fX for ; Thu, 8 Apr 2021 13:05:20 +0200 (CEST) Received: from mx03.posteo.de (mailin03.posteo.de [127.0.0.1]) by mailin03.posteo.de (Postfix) with ESMTPS id DCF8F20C4F for ; Thu, 8 Apr 2021 13:05:19 +0200 (CEST) X-Virus-Scanned: amavisd-new at posteo.de X-Spam-Flag: NO X-Spam-Score: 3.28 X-Spam-Level: *** X-Spam-Status: No, score=3.28 tagged_above=-1000 required=7 tests=[ATTACHMT_OFFICE_RULE_POSTEO=3, HTML_MESSAGE=0.001, POSTEO_PH_URI02=0.0001, RCVD_IN_DNSWL_NONE=-0.0001, RCVD_IN_MSPIKE_H2=-0.001, T_OBFU_PDF_ATTACH=0.01, T_RCVD_IN_ABUSIX_WHITE=0.01, T_REMOTE_IMAGE=0.01, URIBL_GREY=0.25] autolearn=disabled Received: from mail-wr1-f42.google.com (mail-wr1-f42.google.com [209.85.221.42]) by mx03.posteo.de (Postfix) with ESMTPS id 4FGJMK3DhPz11Th for <2012gdwu@posteo.de>; Thu, 8 Apr 2021 13:05:17 +0200 (CEST) Authentication-Results: posteo.de; dmarc=pass (p=reject dis=none) header.from=southpole.com Authentication-Results: posteo.de; dkim=pass (1024-bit key) header.d=southpole.com header.i=@southpole.com header.b=HLA5ukVr; dkim-atps=neutral Received: by mail-wr1-f42.google.com with SMTP id e12so1654541wro.11 for <2012gdwu@posteo.de>; Thu, 08 Apr 2021 04:05:17 -0700 (PDT) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=southpole.com; s=google; h=mime-version:importance:from:date:message-id:subject:to; bh=qff7ZcQHFkiA26901Rwd3B+BU8uwZ2eTNK/n8m3J+Ng=; b=HLA5ukVrjUevyqsukSaRSyGzDHHdOilYVk+ibWh1TBy78YoTdbTdpyP4ZA4KOMyAyB J3NicUjaRSdGEcfvtZa64Zhq4n6pOqrECZOHC1UDTOkSel03EXI3X64T02i6/C/roJvE ib4bSoCqSsQ7GwahiAeavXHSx6VXYDeJWPqIo= X-Google-DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=1e100.net; s=20161025; h=x-gm-message-state:mime-version:importance:from:date:message-id :subject:to; bh=qff7ZcQHFkiA26901Rwd3B+BU8uwZ2eTNK/n8m3J+Ng=; b=Upw39D0O7nKa6RP/KkusFZ9NvzRTDpbVSgFVZsbpprWRbppSEuiaYEUi+XCwB5NFBN dY6EoUIFEAtzUI/JHmifTFIkDmFk5CxafFOxcNT3h2yh38edmK9mBPfuTSy1XSTjQqDK MsD+FP5YkJ9xQc4+L1rf8IFycIE/Hznf5qR2f4qXkn02O/L+zP8n3C2aRbsEqyZOkdcB 7HqnQSXTD6a4gV5KONxlYgZ7Haazw5H4o3RR5KgelxJvcoBZ+hbJXnElevMgmkBJkd6C ausYAMrD6gmERVAK/sUxTCNI+BnywUQE+qon2W1NEs5JIZYa0K0mRv//4hv89u+fzRO7 7qIA== X-Gm-Message-State: AOAM530qdo1mLwrOc0xI8a0LtThgIf2NVgI0ECVYto1ljKPKDSWwJWm0 yV0EhTsgYDIgTHN5+KcPebgnIcKhYCAmJnMraZGnEB4/lZ8= X-Google-Smtp-Source: ABdhPJwAJ3NVb10PbLymKdjWJcu9ZzQlfTzoSBdvfj/Zkns1VzY/73NvyCaaWP8juXXoP2E8REB/lJEEZ8VZicvxz0U= MIME-Version: 1.0 X-Received: by 2002:a5d:4a48:: with SMTP id v8mr10230108wrs.107.1617879916745; Thu, 08 Apr 2021 04:05:16 -0700 (PDT) Received: from 972489997876 named unknown by gmailapi.google.com with HTTPREST; Thu, 8 Apr 2021 04:05:15 -0700 Importance: Normal From: ebay@southpole.com Date: Thu, 8 Apr 2021 04:05:15 -0700 Message-ID: Subject: =?UTF-8?Q?Vielen_Dank_f=C3=BCr_Ihren_Beitrag_zum_Ausgleich_der_CO2?= =?UTF-8?Q?_Emissionen_Ihres_Einkaufs?= To: 2012gdwu@posteo.de Content-Type: multipart/mixed; boundary="000000000000ba40c005bf7405c8" --000000000000ba40c005bf7405c8 Content-Type: multipart/alternative; boundary="000000000000ba40be05bf7405c6" --000000000000ba40be05bf7405c6 Content-Type: text/plain; charset="UTF-8" Content-Transfer-Encoding: quoted-printable Sehr geehrte/r Arne Keller, Vielen Dank f=C3=BCr Ihren Beitrag zum Ausgleich der CO2 Emissionen Ihres Einkaufs. Sie haben sich daf=C3=BCr entschieden, das Prony Windkraft Projekt in Neukaledonien zu unterst=C3=BCtzen. Teil des Projekts sind sechs Windparks = an verschieden Orten mit einer gesch=C3=A4tzten j=C3=A4hrlichen Produktion von= 40 GWh Strom. Das Projekt ersetzt damit Netzstrom, der zu 80% aus fossilen Kraftwerken produziert wird. Weitere Informationen =C3=BCber das Projekt erhalten Sie hier = . Gezahlter Betrag (incl.MwSt.): 1.0 EUR Falls Sie mehr =C3=BCber CO2 Kompensation erfahren m=C3=B6chten, klicken Si= e bitte hier . Weitere Informationen zu Klimaschutzl=C3=B6sungen finden Sie auf unserer we= bsite . Mit freundlichen Gr=C3=BC=C3=9Fen, *Ihr South Pole Team* #OurClimateJourney starts here *South Pole* Technoparkstrasse 1 Zurich 8005 Switzerland --000000000000ba40be05bf7405c6 Content-Type: text/html; charset="UTF-8" Content-Transfer-Encoding: quoted-printable

=20 =20 =20 =20 =20

=20

=20 3D""
3D""
Sehr geehrte/r Arne Keller,

Vielen Dank f=C3=BCr Ihren Beitrag zum Ausgleich der CO2 Emissionen Ihres E= inkaufs.=C2=A0

Sie haben sich daf=C3=BCr entschieden, das Prony Windkraft Projekt in Neuka= ledonien zu unterst=C3=BCtzen. Teil des Projekts sind sechs Windparks an ve= rschieden Orten mit einer gesch=C3=A4tzten j=C3=A4hrlichen Produktion von 4= 0 GWh Strom. Das Projekt ersetzt damit Netzstrom, der zu 80% aus fossilen K= raftwerken produziert wird. Weitere Informationen =C3=BCber das Projekt erh= alten Sie
hier.

Gezahlter Betrag (incl.MwSt.):=20 1.0 EUR =C2=A0

Falls Sie mehr =C3=BCber CO2 Kompensation erfahren m=C3=B6chten, klicken Si= e bitte
hier= .

Weitere Informationen zu Klimaschutzl=C3=B6sungen finden Si= e auf unserer website.=C2=A0

Mit freundlichen Gr=C3=BC=C3=9Fen,
Ihr South Pole Team
#OurClimateJourney starts here
<= /td>
South Pole<= br> Technoparkstrasse 1
Zurich 8005
Switzerland=C2=A0
=20

--000000000000ba40be05bf7405c6-- --000000000000ba40c005bf7405c8 Content-Type: application/octet-stream; name="Bestatigung.pdf" Content-Disposition: attachment; filename="Bestatigung.pdf" Content-Transfer-Encoding: base64 X-Attachment-Id: e9780c8ba1b9c354_0.1 JVBERi0xLjMKJf////8KOSAwIG9iago8PAovUHJlZGljdG9yIDE1Ci9Db2xvcnMgMwovQml0c1Bl ckNvbXBvbmVudCA4Ci9Db2x1bW5zIDY0Cj4+CmVuZG9iago4IDAgb2JqCjw8Ci9UeXBlIC9YT2Jq ZWN0Ci9TdWJ0eXBlIC9JbWFnZQovQml0c1BlckNvbXBvbmVudCA4Ci9XaWR0aCA2NAovSGVpZ2h0 IDYzCi9GaWx0ZXIgL0ZsYXRlRGVjb2RlCi9EZWNvZGVQYXJtcyA5IDAgUgovQ29sb3JTcGFjZSAv RGV2aWNlUkdCCi9MZW5ndGggMzQ3NQo+PgpzdHJlYW0KaEPtWQd0VFUazvSaTHonfVKYhARSSCFU kVBCEWU9iCywILYVFCyHsx52UUFXRXFV1FU5YmFdVIK4QaoQWiAQSnpCMqmkzCSZ9Ezf780dHo+Z tIWcs5tz9jvJy/e++93/vfvuf8t7YT24eSKLxXJwcDCbzTTBcUBuIxLC5IM57fnIxSEMIGz8GdNg oyljGpzQVG/CSL8wCTAgvwcnMHLDyGuB2KYQpVp+AOoUAsuBzWJTCnEwQEw4WEqpM7ouOaKUPmUS a/3RACcszQd/LMGpuI5ip+cWvzwrLuNKRa7OoEtXzHgqc/PSaSsS5MkqTZOqo5k24z6WTX380Rmr +rS9mUmLa5qVoT5h6YppGYkL1R0tCyYv8XT2autUbVm+vVh5dcOSLTPjMgRs9orZ6xNCEwqqr+mN ehIHYN4AIcCA3F5koxdocDncF5a+OithYZJiGpfDUwTEvLx8R1z4ZB9X/+ToGa+ufMfV0c1qNZv5 HN785KXfnfwSdxzmP17AE8gkLoFeIYrgSXGh8emxD/q5B4T4hidGTfFy9btQnGM2G5WqaieJ8+dH dvdoe6xR7huMQcxyWDFrHW7UeupgTouZyeFwD57dt/rth+qbq2RS16iAGGshms5imUzGqqaKLw7/ DQ8DsYiu1fVFB8Tw2FwoIT7hZcprQd7ynv5unUGrN+gdxbIAz0CTyUTM94+7xkBU4ISq+hKz2UT1 DcvBVeoKsfJWWXuXurGtAVzEF0O3eCmAC7iCYG85Zb+Nzu42H4/A5rYG3KPcL+r09aNyvwh4SepT 7aTYHf994q5p9GrZ+V0HttPPskB59cjFA7fUdeBoKI5Gk9FSQsFkNrFZHHcnj5kTM3DKYcNCJaTe ZKhvUdY0luM2Az2DUxTTQ3zk9APXdLUW1d6wTA6jgztjAA9mX87efl0fGDnNvpT13k+vo5XzkpZE BcZ29rQX196AbrGbtQb98fxfMOKPXPmlUV371IJN7lJXPPgmVe3l8tzShmJtb7uyoeSlLze0d6pM em1La4NOrxXxBX9evkMqkpIg9w/brUSAZ9BHG/eZjMbHd8zv7O0wmkw7n/w0OjQR6f7Zwbezcn+A FU74YTZRDMOImitJdeuTNVuyxdJSUkqdUpnJIl2BfqfMjFCEDygOYQCxXQcISI7ChOLvTnyxO+st zJVrF26KCYolNQk4LLZUIAVhs9kyiYzH5Ql5QolAgiN+UCrmi0UCEYII+ELkG4/L57BYXCrZRg32 WwnL7VMpbp4YmjBtwgNVjTd/vrC/tLaAmlgD44iJINRXvveVn8UC8dK0R19f9f4rv9v22PRVn7+w f8WMNTvWfDB+nOKd9Z++u/4zReCEv2/8Xu4rfyZzk4kawqOJu9YBJpA8K2c/+cpjb47zDMQpUghH DptjKbQi1DeCw+UFeoZOkid/fGingMv74dw/kPFfn9oj4IsixymuV17OKfgN/eYq85wUlsjnCaw1 Rw9D9CZSzWT5Sx2QJDgirakTC8DDfCPyCk+G+MphMRp1r327BTM9ikhQywYEzxtV2GpNY0JEqjXg qGLQ3SjK1J0tIFNjH4wNicfDBm/rUlsKKZjMDpgfWzTNYX6RaCubzV2b8QyPw7MWW2A2man2Ozg0 qesdqOTnWAtGD7YpBIkQXPXXvIN6g25+yiM71n/i7OjepK67WHqWNgi5fGepG5srCPUO6+7vjhin iAyMITMPDrBhv+Dt6uvr5o9lGIvGpbLzdN1RBLbTd23mQLXa3sKq/MLqa3Xq2mJlPrYGt9Q15wpO 7D70bltXK3ECIr4IK8P+M986ihwP5x2IDY4/np9dp6pBn5Y1lHBZrNMFJ1wd3fu0PYcvH0Jf5Jac QaiaFiWZJOiLAswbIAQYoYE158VJhKE1IKRZpBjAkyOTOlXjdh1iIAQKfYRCOwmYIjUeEApj6XZF W8Mg4hAGkAFSiAZ1yhCIgQYtEsLEgKI1lKXuKGLQQTxWMPYbgEwa0xj7L/WEjV2M+RQa8z0wymMA v9iH8zhcJ7HMXebp7eKDHw9nT5nERSQQsx3MBqPBwHgvHTo+MLQBxHYlJgTHAbmNSAiA5dpN6jY+ MEYRFCf3jfRy85eIHPlcvmVjih+qCm5db9D29nffUtVWNJQWVV8rqS1o79GQJEYQ+/j23EaklPtp AN4ZpELJlOgZsybOl49TCPGM2VROMp0mE7WFhm4TCkc0pkR57cTV7AslOf26fpvSAbmNSCn3/Hnd Q+b5UPryB+IzpWIZdKYTe9grpWfPF50qryvu6G3H7s1J4iz3i0pVTE+ISseLpU2oju62I5cOHDz/ fVs3zCO9AXBKuYcGSISS5TPWzE9dxucJcQpAp529fV0nLh9s7dbUNVeeKzmDanR1OPzc/NbO25AS PZMWSS0cUTHr7Hf7c77u0/bRItMAbiNSyn+aQlMUM9ZnbnJz9gInpcQA3tffAyISSoizWV2/ducy 5D04qU47F6UuW7vgedIVRCQGkEZ17cdZf80rv0CbbQyE0KW2H3cJAWw4rBKh9LnFL6/MeEYsciQi KQXAtfr+rXuel0lkHZ3qIuXVE1ey+7XdnjKvkroiGydQUlvY1auJD08h8zhtAHEUy6bGznaRuBQo 8zHuad2GAISPdBr1dw/Ytuq9+MgpqDag82Z9kYQvKKsv+eDgWzXNlV09mjp1zckbx2AiBqYZKG8o wQwbYnlTJaANGDPh4xR4j71681J3XxcRAfvrgti+kRECMHl0UOy2Nbt83AMGM3T3dX7w4/aU8VO1 +j6ZUBLsI79Ydv5Waz2ugNIBa4GU1hZmJC7i8wRMkRDAw8UnTTH9RuXl9u62AQ2EI4V8wciJDQHQ xNiQSVtXvefs6GZvoElDszLcP/Kzf+367caxalU1+gGvQkwDYM97db2YyiICYpgik0jFTinjp1+v zGvvamXqTDLUGMDdR45T/GX1+44SZ1okBGDyf/62J7/i4tzJS8J8wrp6Ovp1fUaTAZkgFkp0Bt2A tQjBW/LshEwbkYBwrC3o2Lyycx09GlokIHyoMeDp7L39Dx/KpK7k1N5wm5jzy3PL6opA4kIT5yUt UWmaaluqUZaZuMTL1be6uYphpkD4uoxnhTzhpIg0psgkADjaMClsck7BMTK9EpEmg6YQNgJ//v27 Ad5hRARsDDTp7G7bvm+LpkeDDcLpguPHrmZXNlZIhVIXqUt+5eW5iYvautRt3VQOhPrIowJialU1 GKeY05ZNX1WovBoXlijgC+loTAIQjnUw2Cv0TMFxm8wEGXQ3yuPynKVU3g8LTHbUxwtLUDySPm0v ODLnyfnPB3oGczicHes+/uOil3zd/CeExD+R+YKIL4oJmvjl5p8iA2PzKi70a3ssYYYCIvt7Bgn5 Ius5A4OmkN6oL665MXPiXA6by9TtCTY6B858YzDetcdEkyobyzY+/KeU6Fm4sEwk6+vrWTZrjZvM q0FVzWGxOegQ/6jKusKpcXO5HOoS9vEBwjFUtn21qV5dyxQJGWoabe1SN7Qo02JmkS0aEQkBaM5m c3KuH9X0tDNFEOpznd/4MP8ocOyXJoYnC/gi8ISI1MbWOox1HpszM34B9q3MWoQANMez2Pn9Vnpt JiJA+DDTaE2zsr2zJTEqnWP5rElEG8JmsZvbGupU1X6ufmR7TPS0qKlN7U3pEx4gH4bpWlptr8Gg a2it23PsE29n71C/SKLbxwdMJuPurDeP5v+Cq9gbQIbfSlTcKle334oPT+VwuAMaAAzNeZMfmjd5 aXlNQVN7IxF9nH3S42ZjUWM6m1rrNny46tDFH0vrCrFpXT3naSepC22wia/X6z78aXv2pawhUmDQ /w/QQKIdzc9+be+mjq42q2QHkVAqk7rhuHHZVmQ8FLFAvGTqiuTx04iBxrnCky2aJiwRyOK5CQv9 PIOtBXbA5PbGNy8ezjuIu7RKA4G8Dw0DmC6X57706bqymhuk6YPBy9VvvOV/yclR6bHhyZjCrQW3 EeARzOPx8URDvMNWzX3WqtrhZn3x5k+eyC05az0fHMOnEEAZWSyshaeuH0VfImu5HJ6NgSatmmbM Kmvnb8T6bXlGJjoBAEexU2JY0pyExQtSH3Fx8iAiszomnKwz3+z88Y3WzhambkMAwu/lhUbuF7k6 4+k4eQo4AXTaaSFwsvPLL/xw6ivMTl4uPkmRaQnhaTUtVZ9n74oPS1497zkul/pXCDM+ZpuCm3l7 fv2otL4YBfRFaQN9A8xr3eMrJQZ0gjzp4WkrFcF4H6Ly0MaJeebZXY/VqJQm1ILs4IDNc3TQxDlJ CxUh8ZTCiI9xVlp9bf/pvZgrjUbqn3HMUExuI1LKPb/UA7j1cL/IOYkLUxTTnR3dLcodA97ZVe2N bZ0qSMgWd2dvsVBK0okO1d6pyi3OOZp3sKyh1Gg00KU4DnsD4JRy/59V8PxEAnGUv2KSPDkmOM7f K0QichosFIB337rmqqKa6/kVuUU1BX26XtIh9vHtuY1IKff8VQKckLs4iyXgCtwcXb1cfN1lHmKh I8+yeugM+l5tt1qjatE0qrvUWr2WCjRc/GENlDK6DRjMac9HLg5hABnROvC/jDsz9BjFSL9KAPaG kTuBkRtGXgvk/yn038bYTyHCxi7G+Bhgsf4NiAEsdQplbmRzdHJlYW0KZW5kb2JqCjEzIDAgb2Jq Cjw8Ci9UeXBlIC9FeHRHU3RhdGUKL2NhIDEKL0NBIDEKPj4KZW5kb2JqCjE2IDAgb2JqCjw8Ci9U eXBlIC9FeHRHU3RhdGUKL0NBIDEKPj4KZW5kb2JqCjEyIDAgb2JqCjw8Ci9UeXBlIC9QYWdlCi9Q YXJlbnQgMSAwIFIKL01lZGlhQm94IFswIDAgODQxLjg5IDU5NS4yOF0KL0NvbnRlbnRzIDEwIDAg UgovUmVzb3VyY2VzIDExIDAgUgo+PgplbmRvYmoKMTEgMCBvYmoKPDwKL1Byb2NTZXQgWy9QREYg L1RleHQgL0ltYWdlQiAvSW1hZ2VDIC9JbWFnZUldCi9FeHRHU3RhdGUgPDwKL0dzMSAxMyAwIFIK L0dzMiAxNiAwIFIKPj4KL1hPYmplY3QgPDwKL0kxIDUgMCBSCi9JMiA2IDAgUgovSTMgNyAwIFIK L0k0IDggMCBSCj4+Ci9Gb250IDw8Ci9GMSAxNCAwIFIKL0YyIDE1IDAgUgo+Pgo+PgplbmRvYmoK MTAgMCBvYmoKPDwKL0xlbmd0aCAyMDIxCi9GaWx0ZXIgL0ZsYXRlRGVjb2RlCj4+CnN0cmVhbQp4 nM1b227bRhB911fwB7LZuewNCPyQpA2ahwJt/FbkQReraNG0KAy0v9/Z5ZKibWnoFJokMGjLEiUd zu2cmV3C4OXnBcivUILDPOw/bV6+u4fh1/vN3xsMfjwhgB9YzpH/6wk/wPD2r81PZ8/0rkSGnAby fijzf+1t+Iy3hfjkbfTwbS/f3v3z2/7u53evh/39ZvyA+/2fm6N8IJy7oNe3/XkYCNilGCKGgZFd xExAw618y/fyIg63x80vr7z3IAfKIRfhWY7Q/0Y5khxZjtIfb28G/3G4fb/57vZKKLk+SUxpBeVO jr0ch5uhOEyJmIdXC+TXRxaSwGG/ar87OY6jvaopQX4BdmSx21JQQ/20zJQr7HpSM2iDf32jZnAl R5IXxLAu5o4bB9D9PmFO17emmBAKiD0VSLlD4EdOLjaQuLjscyisQNp2C+26Zfb9b4V56I/vTOBF j25MjMvoSo+9im53/TBK5EpLACJyPoZ8LgGAuilKN4tBKoqnaB2Jv5M0QxdLqJk6VYdjP3DMwytD I/aOyTMOWMARJSzpjKNsk4uidyn4RCsoaERRM789DjZoSnSck4+gomk1kJaFUrxXnPhO3PyqO+1g glCyyqGnHJKOEG+G5AgZoQw90sFfH02IEt1E8NReMEBYliKpnx7EaxBtyDgHBxLLnFUkIB7JToyR MgxT3a4Ul1yQp0b3QbYpBRIiXr6jlOeHugF1SAAVxojrASS+5SrDhgkVd2TdlScOvhleCEly5Uhs Z8cF99jwSxTyQ9avoeqaSaqEE99U/4KUfNh27VPDcjeRdxeeU9LsxyuBiTGvfzXJS0RikjzSr2bb YyIuvNG5He5OV9L+Hq9fGqVRwBhdYKzE/gQe+gUsg8qM4LCmKKkozrp8EkJfvlqT+FPUt/C/jvoz XGvBKQGrSKtqUkP5QLIZoBCpCBSTEJYaZ3AhUauD0aZkSoKmKNBQR7Ys3KWXjDOxhmzmyRCpqoP6 Zf/LhvbFLnoSvRekddFjzY4AI0SpJCVFPScxdFtsuz2OvbJQ926PuYkEWwN9NCII6YkhlbiSGfFG ZJDwR8m9+ZwCMtnAQhIW9lLj1suGnRZIHJwo0LXi9eyQt0HZ2FPKLKeSzxpp97B2mDBocByyBMc6 EjqJJCuDSN/ng6geHc2TmrrrHMTdZUZcVGt29IGTbqujWZViCi5KyuesIrgo0xcyd5bp5VSpTFgS XY0u0hFj0hqGhs1mKFUbn4RiJ9ItGieWFuYGl6CeNVn2uNBoBgjr7JPCWtTNatGmTkTPwjaiN6Pu R1WH3QzyVuToy8hERnNG9g7Hb19N020XXgYopJQF5oKooyjeskGK2TsRCpB0FJh78Exl3kgb+OI8 jJJZQ/PtiKzG0JSlJqXL/a1d90MipiTzW73XUJSnneI0E221PnjLGi/SUsimSFrrKKeO+0x9aBO3 qY4a9bNchDtT0xYKSigLJAYooly6+CPpHjVmZSlLjrGRmOoxkIrtKMFUsJcay4Dpmr6qIwfdNlO5 nAaPk6KZoj+alYOQvINUB0663XZmBT1kdh7bQqJqo8fLfLSwkQHNYHI+1xmDjqpTrtUAuK6qZWzT QM07+37YRLGw23Oi+HEP06J22+Nmu3jNrgokliYBYxMHmtds1/qS9OeR61aC9axfrvUZTZQr4UsT QoHPa5O7RWIdu3HiQqf052FptL2Z8ajUwZmK+Pyinw2tQJibBM2GxzEBTRpklK9NXFW3gqDFkk27 Vhc/OYyKW/OKbbsm0loIfiQqBcUXSqo2Ku+iR0NzOOXWTOo9d+aFDsNRRUrzUoPmuf2IqqHj08LS jNgOYSRwbReU7tVLTbgvi56q7/kxrAZRRGYZ1zi+kfqUpD4BrNqP5OvJZtEoiQenEeIKy+Ak2QxQ hOJqu0Z6PlIX02djKdj23OAdFmVN+cv03BqKr7daRpEd+JHkFIQP1oynvshwvdiTq+K7pruGauqv bVVl3RHFTE2Fa14Mj2yz00PeaGTJJc8JuWY7Q5qW/luEC6xEftsYs7VBQDwvHioIiMcCTTb7/YKU x5xHIaB5w7abDRndOKHR4pd7bO78abUw2YoQ6fWJQ/KkR8mFPTXzPod8imU4PMw2S/SlRlgdVejo L2z8miXU+kY3C9pGJ7zTOmUtLpVd54+2gMHw7+aXj/LhB4HyuxzvN5V9Ofnh0yb3R38sQb/50EF/ ePNjvSisF/VhcVtI5PEqIg2io4bAMN4Iwle8EUQMUKIDrstwlycrRlWSfW0TGCBoIOYBXKe7tkbx 5cKcRSKEksknDeTchBqtl+ea+3V6rLqL+3Y2q95TirkQa1YxTL2bEQYsUjKRWQex697oo6S5HV6u 3tjNtqUrcYh14VQDWfEYyraI2XmO0pU8z12PKpzdPQBREgpDlrxSs3450K2Pp/umpn3FfW3VmKIT 1c1s9QYTNfu/3v0KtYKLvPFiz7NmfNCx1PHAtAnfsmQiOipC4qBC66JvnvZYTBDBhbZLQgNCk+eM xpgJnFi6DirWHIW21pAI9iV7HYg1iQA7PzKZAuJz7izwNjssQhZrjfJWA2q9V0j6yFCqONViZ6K3 g63g5yAWacMSDUwxzabKHlA36+rZdOjsQF0/Hu2ZAtCVRqBqdvVu6MWTm6T2fr7Xdg4qO8qIIg4Q zzPvYiXjeU1OvSF+bHLqo+c0Of8B/f6vgQplbmRzdHJlYW0KZW5kb2JqCjE4IDAgb2JqCihwZGZt YWtlKQplbmRvYmoKMTkgMCBvYmoKKHBkZm1ha2UpCmVuZG9iagoyMCAwIG9iagooRDoyMDIxMDQw ODExMDUxNFopCmVuZG9iagoxNyAwIG9iago8PAovUHJvZHVjZXIgMTggMCBSCi9DcmVhdG9yIDE5 IDAgUgovQ3JlYXRpb25EYXRlIDIwIDAgUgo+PgplbmRvYmoKMjIgMCBvYmoKPDwKL1R5cGUgL0Zv bnREZXNjcmlwdG9yCi9Gb250TmFtZSAvQVpaWlpaK1JvYm90by1NZWRpdW0KL0ZsYWdzIDQKL0Zv bnRCQm94IFstNzMyLjQyMTg3NSAtMjcwLjk5NjA5NCAxMTY5LjkyMTg3NSAxMDU2LjE1MjM0NF0K L0l0YWxpY0FuZ2xlIDAKL0FzY2VudCA5MjcuNzM0Mzc1Ci9EZXNjZW50IC0yNDQuMTQwNjI1Ci9D YXBIZWlnaHQgNzEwLjkzNzUKL1hIZWlnaHQgNTI4LjMyMDMxMwovU3RlbVYgMAovRm9udEZpbGUy IDIxIDAgUgo+PgplbmRvYmoKMjMgMCBvYmoKPDwKL1R5cGUgL0ZvbnQKL1N1YnR5cGUgL0NJREZv bnRUeXBlMgovQmFzZUZvbnQgL0FaWlpaWitSb2JvdG8tTWVkaXVtCi9DSURTeXN0ZW1JbmZvIDw8 Ci9SZWdpc3RyeSAoQWRvYmUpCi9PcmRlcmluZyAoSWRlbnRpdHkpCi9TdXBwbGVtZW50IDAKPj4K L0ZvbnREZXNjcmlwdG9yIDIyIDAgUgovVyBbMCBbOTA4IDYzMC44NTkzNzUgNTM2LjYyMTA5NCA1 MTYuMTEzMjgxIDMzMi41MTk1MzEgNTQxLjAxNTYyNSAyNTUuMzcxMDk0IDU2Ni44OTQ1MzEgNTU1 LjY2NDA2MyA1NTYuMTUyMzQ0IDI0OS4wMjM0MzggMjgyLjIyNjU2MyA1NTUuMTc1NzgxIDM1MS41 NjI1IDYzMC4zNzEwOTQgMjU1LjM3MTA5NCA4NzAuMTE3MTg4IDU0MS4wMTU2MjUgNTYyLjk4ODI4 MSA2NjUuNTI3MzQ0IDU2OC4zNTkzNzUgMjc5LjI5Njg3NSA1NjguMzU5Mzc1IDU2NS40Mjk2ODgg NTY5LjMzNTkzOF1dCi9DSURUb0dJRE1hcCAvSWRlbnRpdHkKPj4KZW5kb2JqCjI0IDAgb2JqCjw8 Ci9MZW5ndGggMjg0Ci9GaWx0ZXIgL0ZsYXRlRGVjb2RlCj4+CnN0cmVhbQp4nF2RTW+DMAyG7/wK H7tDRfkY7SSENHUXDvvQ2E5TD5AYFGkkUQgH/v2SOGunRSKPbL82sZ2e26dWCgvpm1GsQwujkNzg olbDEAachEyyHLhgNlrhZnOvk9Qld9ticW7lqKCuE4D03YUXazbYPXI14J33vRqORsgJdp/nLni6 VetvnFFaOCRNAxxHV+651y/9jJCG1H3LXVzYbe+yboqPTSPkwc7oSUxxXHTP0PRywqQ+uNPUoztN gpL/C8ekYfyrBofs1MDXzSzzgOo+4FgQygAkVA+EI8VIWWFAHqtEyYkkVLMcyMkInJARooSsgpBT zSLWjD8am4vv77cT36pfy3WMbDXGTTDsLozOD01IvK5XK+2zwvcDD9mVzwplbmRzdHJlYW0KZW5k b2JqCjE0IDAgb2JqCjw8Ci9UeXBlIC9Gb250Ci9TdWJ0eXBlIC9UeXBlMAovQmFzZUZvbnQgL0Fa WlpaWitSb2JvdG8tTWVkaXVtCi9FbmNvZGluZyAvSWRlbnRpdHktSAovRGVzY2VuZGFudEZvbnRz IFsyMyAwIFJdCi9Ub1VuaWNvZGUgMjQgMCBSCj4+CmVuZG9iagoyNiAwIG9iago8PAovVHlwZSAv Rm9udERlc2NyaXB0b3IKL0ZvbnROYW1lIC9CWlpaWlorUm9ib3RvLVJlZ3VsYXIKL0ZsYWdzIDQK L0ZvbnRCQm94IFstNzM2LjgxNjQwNiAtMjcwLjk5NjA5NCAxMTQ4LjQzNzUgMTA1Ni4xNTIzNDRd Ci9JdGFsaWNBbmdsZSAwCi9Bc2NlbnQgOTI3LjczNDM3NQovRGVzY2VudCAtMjQ0LjE0MDYyNQov Q2FwSGVpZ2h0IDcxMC45Mzc1Ci9YSGVpZ2h0IDUyOC4zMjAzMTMKL1N0ZW1WIDAKL0ZvbnRGaWxl MiAyNSAwIFIKPj4KZW5kb2JqCjI3IDAgb2JqCjw8Ci9UeXBlIC9Gb250Ci9TdWJ0eXBlIC9DSURG b250VHlwZTIKL0Jhc2VGb250IC9CWlpaWlorUm9ib3RvLVJlZ3VsYXIKL0NJRFN5c3RlbUluZm8g PDwKL1JlZ2lzdHJ5IChBZG9iZSkKL09yZGVyaW5nIChJZGVudGl0eSkKL1N1cHBsZW1lbnQgMAo+ PgovRm9udERlc2NyaXB0b3IgMjYgMCBSCi9XIFswIFs5MDggNzEyLjg5MDYyNSAyNDIuNjc1Nzgx IDUyOS43ODUxNTYgMzM4LjM3ODkwNiA4NzYuNDY0ODQ0IDMyNi42NjAxNTYgMjQ3LjU1ODU5NCA3 NTEuNDY0ODQ0IDU2My45NjQ4NDQgNTYxLjAzNTE1NiA1MTUuNjI1IDU0My45NDUzMTMgNTYxLjAz NTE1NiAxOTYuMjg5MDYzIDU0My45NDUzMTMgNTUxLjc1NzgxMyA2MjIuNTU4NTk0IDQ4NC4zNzUg NTcwLjMxMjUgNTUzLjcxMDkzOCA0OTUuNjA1NDY5IDYyNi45NTMxMjUgMjQyLjY3NTc4MSA1MjMu NDM3NSA1NTAuNzgxMjUgNTUxLjI2OTUzMSA1NjEuMDM1MTU2IDIzOC43Njk1MzEgNTA2LjgzNTkz OCA1NTEuMjY5NTMxIDI2My4xODM1OTQgNjU1Ljc2MTcxOSA2MzAuODU5Mzc1IDQ3My4xNDQ1MzEg ODg3LjIwNzAzMSAzNDcuMTY3OTY5IDcxMi44OTA2MjUgNTk2LjY3OTY4OCA2ODcuNSAyNzEuOTcy NjU2IDY0OC40Mzc1IDY1Mi4zNDM3NSA1NjguMzU5Mzc1IDU2MS41MjM0MzggNTYxLjUyMzQzOCA2 ODEuMTUyMzQ0IDU2MS41MjM0MzggODczLjA0Njg3NSA1NjEuNTIzNDM4IDU2MS41MjM0MzggNTkz LjI2MTcxOSA1NjEuNTIzNDM4IDczMi40MjE4NzVdXQovQ0lEVG9HSURNYXAgL0lkZW50aXR5Cj4+ CmVuZG9iagoyOCAwIG9iago8PAovTGVuZ3RoIDM1MQovRmlsdGVyIC9GbGF0ZURlY29kZQo+Pgpz dHJlYW0KeJxdUk1rhDAQvfsr5rg9LHZN1BZEKNuLh35Q21PpQZNxEWqU6B7894156W6poI83M2/m xUx8rB4r0y8Uv9pR1bxQ1xtteR7PVjG1fOpNdEhI92oJzH/V0ExR7MT1Oi88VKYbqSgiovjNpefF rrR70GPLN1vsxWq2vTnR7uNY+0h9nqZvHtgsdBuVJWnuXLunZnpuBqbYS/eVdvl+WfdOda14Xyem xPMDLKlR8zw1im1jThwVt+4pi849ZcRG/0sHUdv9rSYHIi3p80rlnYfsHpB6yBMwDSY9JBDkOXII ZqjMhQcOQZQkCuwAYMwLggzBDpDRxULeoK5FJvRA/wxm8+AShjIIMgg6CJIwDYbSYB0T0nACWJCo TFEpYUiGSgySOIEEE2AiyNFMwKDEHxNoJjA2RU7AfJKWX9t9/d7MdnXbml3WQp2tdRvhd9GvwrYE veHLuk7jtKn8+wNvpsCvCmVuZHN0cmVhbQplbmRvYmoKMTUgMCBvYmoKPDwKL1R5cGUgL0ZvbnQK L1N1YnR5cGUgL1R5cGUwCi9CYXNlRm9udCAvQlpaWlpaK1JvYm90by1SZWd1bGFyCi9FbmNvZGlu ZyAvSWRlbnRpdHktSAovRGVzY2VuZGFudEZvbnRzIFsyNyAwIFJdCi9Ub1VuaWNvZGUgMjggMCBS Cj4+CmVuZG9iago0IDAgb2JqCjw8Cj4+CmVuZG9iagozIDAgb2JqCjw8Ci9UeXBlIC9DYXRhbG9n Ci9QYWdlcyAxIDAgUgovTmFtZXMgMiAwIFIKPj4KZW5kb2JqCjEgMCBvYmoKPDwKL1R5cGUgL1Bh Z2VzCi9Db3VudCAxCi9LaWRzIFsxMiAwIFJdCj4+CmVuZG9iagoyIDAgb2JqCjw8Ci9EZXN0cyA8 PAogIC9OYW1lcyBbCl0KPj4KPj4KZW5kb2JqCjIxIDAgb2JqCjw8Ci9MZW5ndGggMzI4MQovRmls dGVyIC9GbGF0ZURlY29kZQo+PgpzdHJlYW0KeJx9WA90VNWZ/+59f2YmM0nmTeYPZAKZySQThImB TCaBiJDoBMIfJRIWZygJQRIlgEuM+UOACNZGIQ1akO6eHm3xCKuuuxzevEYFq5CuyGm7KFm79GxX tj1KrWylRZmKKJmXfve9mTCJnE7O++797r3v3t/3934vnR1drWCC3cCBdWPr+hbQf8/jU7ERB5L8 B/gUbtm6IcVfY/MPr9/WrrMkgMSzobvTk+SXI1nb3tGamn8Fn4aHtvQ+qPP0BkDWCxsf7tym89Jz SDY+2P7Qwzpv43D9W0DYUp9t6NeFFeuy538JU43a7OnPpdtZe56svPxNYeK8aa3xUWRNQPXDAAxb VAsObP6mUK0xrdX2Sf/l4tMMZ0kNkckozaH30F9yVi6Kf53cEHeVn8ev4oeFGuFF4aIoiXPFfeI5 w3RDvbZPLjwDTrgXhOSuWQgR6GwQkZ8JZ2E//ASfy9ABCvTBaliHa5sJD6/CaVxtV5vBTp8D69g8 yFT/GQX1gpmvAju/D6yCDHZxCjjEYbDS74DNwIMg/k4/R7bMkmEWKCSLziJKNkH6RnbV7CK3FYyz 4A0y9/bCXAm7b9B7q8t8Dtbj6u643WtnPX58TJg9I9+ZxXrihvsWlrhZz1BdnnzX+J2lVbdNZT3T Ey33VvlYL6PngeUVXtYz7+9Zq49ZupuXVUxjvcxAYZ7dwnpZd1fOyrcxMIo1y4BgPbV9bVPCym47 eVSRGam3k07GdioL85Bdx8guRkrzcGwFI1sZeYaRY4yMMZKfR7rYG13sjS72RpeS7cHXtnoYy3pX GMn34OJ1jDzDyDlGxhhZyNaVFrA3GCmdiWQhEjQhujs3A9XOoflMYIFs2KpYrJJkmydbrDKMMCpq 1KTRzBGQoTYi01J3jHoWRDUGkAHrgqjCU8A3FUFvDHpj1Bo544Ji0Qcy9QFqlbMuzJ7j9UpeTiJE IpyXhIiXm5GYT09XqH9R3ySWP1BOVQlNJAT5myOCIdFHe25IdFuiiTbtoU2I+iAAfxjxZ6FL5kO7 Qj3e5N7SCKPTk3gJQiTfwusCwla7SpV8F3kklk3kjFkR7/+4/xpVjNkuNgXWmPXmqEyssek32dlz gpK3jHfYRYPT6bDzPoJsRai8uCjIGr/Pd5DEvyJ0y8bux9Wvv1T/RKb2PHlJ/eB6d/+O714T5DOn W14IeGI737tA96vzutsuCm9ufmBLM4unhrHLvJm/FxwwDZ5UnNPzGRinVTYm5TGiCMa8yfLkgpGt yy0dOpV7Lpc2Dq3L3ZpLHxnKzy1lzZXcMWyUwVzSGLMYbko1UUjFZtTsY7TGnOmyCgUQCpVXVATL bJLD63QGyypdosgViAZvyO+n0U/Vj/o+/v7/fZG40/zjnpfbnqj57ZGWHRI5Z+ywE9/V6S+OPa3+ UVUfePL5p/rWb+YODfbZtvdhaC8bu8z9CiX1w2bFVDwDT9YlNKFQppSEecjkMQlpnilpX+eIbJqI O9NpxbkhS2ZeJm2U86yxwrRJbyFlk5w3x0sbZ88h5X5/sR/FCZY5HT40VYHosDt5ZkbRV+D3h4JM wAr64ebrDa9ffv0/rsQ3rq5vbSLTD6+4erp/pPOysG1Dcwvx14TLZ0ReHnxr+EeLGpcumLtg4f3b 7z/wWvMr61c3LmGJ2Dh2mXYINWCHVQo4nOPS5aBAOSnpMpHJROnkHKtMRljUQSlzNT7N8zKtMWMa y1tl6wiKIQUdPsnObOEQfR5J8oWCEjl66tSchTNnNdyjXlIUoUb9eihxZEFlxlsuEqKtQ8QwNgZr UOs3hLPUDxLCFGEq3kNOHZoL0bgYtDkX5Co8A72xD9f8QDiP8ZYJCxUxK5vZQGRg07JBShot1Jg0 aCQLJo3SmJiZ5kZenxQk5RVlTNMFfrIrHlfVxd+rq/veYr6KTJ27dOncyiVL8MyV6mregn4xFQox AgqK/OzMAqtsTp7J4TFc6kwRGTHFmJEx25KMJg3zHIHTAtpsjUlpbpEtsVHFoU+6rLFpaUrmrLGC 9AjIKbcFy1yVQQlDvcBfXMk8JBRCf6GVmgkk5kYr/3z6xCbzh+pXH/VcvOPR9iO9g23HTn5xtb/7 2cW1z27rp0WjpOTxh298ev7ahvoD/U/sWtJFbr92+GePkQs7TjKP6UHLfIUXohU9JkOyjXuMAQUx TPCYFKNp35pkspHJZvICzdQjJZaRLkMRc++QhDIwwEHJx1k2vyu/Fv+32IL4J5see/8d+nZi0fu7 ONONMwxNL94P19EKDI05Dc0E7Wv5J8VkIZOVQqOBZmhIFsfQoEbN6WiIqyLoyZF8EotAA7akybDt HbJSjEdbn62L81V9+9W+RIi+/dCG/lEVtULgMMI6pN1Y0/7OVZT0s0Ojo7g0JYcIKMfd41q1ln7b ecdDcdyrdE+eqEQyCXWQbOl5nawR4uubDtTF49zpAbUrcSd9s73xu6M3RHb+TkzqQ6jHTFismLT4 uUUe1xw3xQjICOxw9Fia5rEms4BvI4bU2ajCMhf96ezgy1XxS2Lk+fICbq1xdyKPr+rdl8XOxjtS mIJqsECDfiiPW/MpjWkIPLdyJQ2O5kq8ljs3wXagjYqoc61il6hlUg2EVEm8hHhpxb8kEoPkVVKW uEjnq/9Nu46pVYKc+IejRE3sGD2PaAYR0i7UyUT7FdzafpgdREjqT+xF/U2DbQqv3Ya38MMJITLB Kd3IuFNyOZBxpBgLMhbNQzm3VrsYHMxRDRPv/Skjuq+WscfpSppeNOT4pJTjrjd0nPltffdvfnqM xtdsbGhzkLhw8sCd6MOP9L/00pmfJ+bR4Yeao3WJXPqLUz2jn6MzY5bT8jDKNR1ugz2Ka+YsPQ3J npFJyXjcbtZJmlKoi2fAzVqDRmNZLL2SsZmZu1WbLLY8W8A238Y34u0Ry0+TDj3MZ0hP0f5iLUuU FwaDIf1u9GkXP0pudzmKyioqQ/qFyXFWS+crh98n5MoPm5obNsW7/7Pv5MfcbYlE3S7PE0/tacxf 1Pvm3qMnFq9qbaiOPhc5dVSdcuB+6diiO842rV7UwDSwEyudMjRyNrjhQSUnbxqTIoddHYA1wE0b pZSgWXxyhCqCheUXJUNrsFCN5UzM41MmhK+d+gqKDcxttWqmWI9jls4r+bKP3j25yXIh3qac+Ti+ s/sn1TWHOnZSahtVf7O3S4TEBzvV/1WvG2R5QL1r36v/jhLYML7uwvgyQAYsvkWETQiqccQmLYxQ xBikGStDG0WIXqyGgxhTXo57J3G2W/2a+i/SYvV64nny0q9Jg3oUK+J6mk/XsujAj0s6JryGNXwV 3Ewe3y7PgaUOBBfj0o6knJ5QMOCEUFGQjl1Vn6Nz8/n929/7L9z7qbEvyYv4BZYBPgXMlvHISwkS g/TbnZQlK6jyCmIPL10arlm+lMA9VfOWLe28B3XVhtYuEE5jHnRDncLp1uZYta7vmoG7Zngmmzpj wqX9bXta0Z6UC1nxerblFOuhqVVFaM+Czz6/fIX77Isrn3Hx9u097VzH9q52jraqZ9Sfk0oyZ5RU kSr1ffWc/b1Trw2rr5/9xYl3k1mTX45WNcN9aQJ7JoWiYhaTYZduRhZgaTkbS6X04o1ZV/I6kg/3 aeJV+rPROi6WWE5X0wG1+leCfFb9RxYbK1Bbd2J2yMaP7lrF4s5LfpdNGUlzs7xJmSxmmwhkysQS hsUxuFx2Ea0EIZfdqX+qFIgrHvvDwQ+JZCY7PvmnT9Q/xweu7d3X2zNIiw+N7VX/+P/zXhgdIHNU 08tvD584Mvw2omvkf8/5hLOAnwvgA8y+SrYBvyyokJZZRjCTYqWKd612dpmTFX1FqU7j3d3hcPfd 5Jd6K6wuC4dbwuE5egPcILQIFjjIL4MG3gvL6L+CkV8Fa6gZ+vi9sJLvgB7+UeglKirrLjjMPwK9 dAR2CmY4iGsGxWuwk63nH8exBrDxg/AKnQ9PYdvGP4n7Pg0ruH5olCGwTDbVR2KEPB09Tsb65fC0 mIlb11Qik4DHU9sWlklziUwDMpnpLZG5gGeRzBUtWhnxRT0DnoElLQOeRZ6N61tkvkhrcaJ1IFrq kaEh0oZ0VcQrV0fd493WaLSqRObZNry2zUAUN9iU3GCTtgG+nyiRhcAyj8z56yP3ReTdYbdcHY66 vV5PrTxcH5GHw25vNFoii+MYPfq/HDS0hoAsziyRjfoODRG52i1DdGBA53xeeffAgHsAJUjxwxP5 4wQmD1SnD6AGao+T3fXazG6f180GfF6fFxFGwyWyKbCsIVKLEL0IMSMgB2pLZHNALsHGEogVkz2e gYbIiWrgYcNxI+xZFTkBAe5Se9Qt+3Bzz57jWHKmxpiUmQG5es9xD6yJxEog7D4BJdylcLTkb1lG mg8KZW5kc3RyZWFtCmVuZG9iagoyNSAwIG9iago8PAovTGVuZ3RoIDU5ODEKL0ZpbHRlciAvRmxh dGVEZWNvZGUKPj4Kc3RyZWFtCnicpVoJXFRV2z/nbrMCd2AGZBFmGB00IRAYcF/KJfPN3AXLHUxM AxGVFpfCBQEly8TStHorBU3v3NfSwVL8Ei0qxSW/7EXTlrdS2y1NmMv7nDMzMJf49ft+vw+bc85z Z+beZ3/+zzMVFS7JRTq0CrFInJc7Kwd5/7bDK2MeXPDRZ+HVbUH+HD/9B7wKFs4qLvCSeC4s1jlL i6w+ei0sEwsKc/3vfw6vUY8seHyul2bt8PHGeQuLir20/TdYmuYWPLLQS3c7DZ9/F2E4MvbQspUF 980IGfA7itTSd4//bLqb7J/i8TfvRHs+1aVoFwOpQ4z3YQhpFihGuDDqTrRyvy6F3ifwLxNes9Be 9A0egyvwbWY0/HuRuc1OYd9nm7gp3FLuZ74/v43/SIgSSoR3NSZNomaV5oQ2SFuoPaoL1yXrxumq dF/pe+pX6M8Yggx9DBsN1Ybrxt7GxcZXg5ig/KD/BKcHFwefCEkN2SX2FedRDjJRJQpHExHv4ycY hENMNyQAfRd6GWxQhorReZSDxqCpaB2aiSajdGYAehfJaCM6Dt8wKzORmdmGrKwNGbh+yMxtQCIv IbPQBVnwm8gk1KFg4SLcEf4kYy8J9UIyFpleWDZhWA+a+qV0jxaRthc6iO/rf7fNDMeDTNZ9fXrQ Ezv+3vTu4eTETX9gQK9IcuIzEuMjQ8hJWDRtRGo0OWk2LXu4n52ctCseGds3ipx0E4dnOOhd9Etn js7oSk6Gkpwx3s8ZL8plcwaQU5BZNOoEcgoekJoQYyKnkCHpPbvS74pjh3q5QnKoQQMCWIcvz+sy TB4chRfLM8iykizJUbhIfpAs+WSpJMt+srSSJS4KLyHfWEK+sYR8Y4kcEku+S5afyBIXC5+bQZZK spwmSytZBsfCh/PJkmyFz+XDAgaDsGB7gKJZUK0OGVEIWiQbRZMptK9kFCXUSFaBrjq6BjUiCQ3P kpjkaBcTOyibEggIFDooW+YYBN+Uee+m8W5aurn0xpuy0XsliG4SI7qCjTdTettsJhtrwtiEWRt2 YhvbwzOAOZ6h/KjUYuPXDKsomPF4eOnO67zGs5xZ1mxiij3TmemlzHRwsGqEeC1IYECPeFkTgBvB z5oeCH1HPinBAcFRgsqmS5Z/0uFpB07rvtAxi+RKHV4kJ8MFeacOF7oYLOl7Zdk+i76ZDfzaTTaT 3ZQGaxqvPeaJr6tjLh9jXvXM4CXPRqaQeP8GiNZ5/HHQqxENloWgYCKwIEo4UH9RHfliREnfCDy7 BF79vDQ2PSM13CzEO/Akt/uDzAV9+izI5PrhuKRBg6YOGECeOK31BvsbNwZZUFe0QNbGxpEnakUp 3PdELTxE2/GJcpSWmiIq+cDRqNNRzDSXsV1S0IxLbCflMO9ntaIrPFAdfDxyOtMzMtJSQ00WW3h4 WmpGZoSA4wWNzelwMA80KTeevPT0uWseO/evstmlaYtKlYsFW0OZWG2pGdt+jX/VU6lcUzwPvFI/ 9p6sM2zDP58P3rCNJLsKEKsKJApCI2UuOASe7ZXEAMwb/JKoxOKB4IkiDWKgyWSdgYdvp/TGDnu8 hpguAriNYKru6v3OUPcB9qFdGTHsZs02D+L6Ld8UTJ5djpBQDM/uiopljurS+2wWnsB2+myqUj9B WfR7mhkIs5+IBiKaaB5rDTRW6EaUGqBqqUsjMEuZBL1aw4DldGBdILyne0XA/fhlDV+Nz3hrKc4R 3POXP1JqqP32nXvdXL/iin1jZirrPL2YhqLFT87zpDL1N7a1XIOsCnLpWm8wk/kh4CWz5ODwiDa5 MLCF/dyHARHmJ4KACCLcY5oPUDIcXGwAr0GiSxtAsqJkapRCiQCmNIvdZAaHyLQI9niH02R3ppnw uoaGjKHWPqOGP7Wivp4fotyp9MwaOtS4xbyljNlZiUnR6AUxfQ4YNqKZMk9jpxMuVdpX+QQ1kl/h NB0QhSMDSxXu3fR0S+ndPSwN2zH8lxYWlsbd3+hW6rcof7aiLcqJQ5+2vNDK9m8+waa3fMz1a7nA 3gVxNgPi7GeoQyEoCs2Vu0THEPN1ESUW4kxI/quTGIEwhgbyTJjhWSPlgm6QWF1hKhW6ugRGWFh6 KHgCJBx7AuiRcUZQnZqIR8y4cfRIvrtGl3/i3R/cW9dK4ybsLd3KOP7Eyc8w6XdQUSlOv6051LgD //LiWZIlKlpvcFaBlOhI4D40Kpo8PtTLvTa5neG/VyWv9erQyPq4D1VzHxHIPTYz9vgEDUmYGdZQ U0I6DUKSJjjr13WfFOhq3AW47Kr7ufUHx046sGYzY7qtnNu0XECe98uVC4qHf+9UjZJYcwr8guj+ MESlA+XIuoQebX6hA8Z0fpZjgIghXLIxOsKejlQtWFUBBkxaAsgYUbI1wurqpuI83dHN4YDclpYa brHTCLSYw7nwcIuZ+LPDmUazHcssUr5948Gr+w99U/v07NzC+diyd8J37mc+WOTmywvzVuK40RMG TCwau+bQkc3/eCxr5L3DBk1+fMqm/Q+/MXPawkmotRUtBLmu8fWMA7wKYQ3KQDsA50R4hYsAeSJA OFcKvin1hbgidpypTGZ/BU1Eom5orRzf3UEkjRclQ2MneYraTRUpZh9B7+31R5IL5JAImo0gfZoC 0qeFvilFiK6uahXG/9VLM9NMVDkJmUQ1Tidx2Mx2f5157diJfF31n2eXXOk/c9nedVX5dUeu125Z t3/8pJp14Lge3KuiuPnK2V9zpuQ/v7Vs2iqc+tvBMzvxj9vOgv27KpdxOvo30qIuCIzu4viAYkVy E3CRkJHpTAMDrc2bzr09R7l8X0n5rk25DaAzqmXQWSzqgZ6SI3re5RVKsjaqFd0BHgSWSyaCI2oy 0A1USXQSEqCpUAPVFCe64gI0Beq0qwCEI4Hmw/RuaWlOr1vZaQGFhGyOsHSHAuq0W8HV2B6i/ul/ vfIJxt8fKFo0Z23t4vqlh89zDsUwZbt9k7K3yDp+7dvl1YcnzVqcM3JcVdbh15XgF7LEDVPvu3xy ymxfDWW/AJlNaKJsCA3rvI6pSpc/yCkRAkQIrVasQAQDmxtUERLhK08Of3nC/YWnPsBTWDfOy59a 6oB6VLpdWe5xMh8vKZg5psUDWZ0lmI0rBcwWDG1DHMoKSO5/gZQRCFMzJav0rA2helYDFFKY4gK5 A4SWSmJV441YDGSGU7R1Jxuo3VaNm374qShn6XrlO+UkHrh2m/KlUofjV1RVVCpf89Lxurkv97K5 Vx2/wlR7bpY/gTUvrVhQvBC0agOt1oIkAuojI4228/pEwUjHPCoj3ld3MKk7afgXbHxPeWqDUvxe Mzu4+QSp0gx6CLJ0OlgtBEWj4bIxpqsPj4f5PJU6Z8cCoyoh4IGR6uAk/oUsoAdwPeQtIRle53to +ReVl7Dp8avPNSk/1e6q2PBmdcX63UzCTqVMOaUE7WiuwKktugOfXzopX/ocuIsD6T8RLIAhItEa WeutIYA0IwKRpjVQcD+rJiBMfqILEF3+AoEJEQ5EOCHA3XCAUACSglTmBoVI5kZiaEAWNE9HaGg4 WQjyILi5Yc+e0+8V7IlbvmhZ3qVLzKjaWnZP5cNvNwzcnvroo9MrWyaBwjF4IGL/BScdGuEVQQMc aPy8UaxOFIwCPJBDDBFbI7r4QKDJa7zWtVls0Mk4bRbcj3m85Q1mkucAm15VVcpGvliCfF0LT7uW ItTuLX7vp4+P7fB4FbCUEUMg7RDT/dBRz0dPQIf9EqpBtUg7Te6LoG0ReMLfkLAMYYQwWZgrLBXW CluEN4V3BN00iFuKgk3gf9jORMvQwKz7zvM+M/8/zBtuxQxtTArT6Fnecg443Q7sTgLEwAIWbufH 2sFu3i6FNCcCHVQ8DLn2BsXPo2UxAD+L8HkxqgMaClQscSS2URJFMCysaihBMmNaMMAJZHL6Eqbd 4TW4OZwZNGezdj+/tP6xS0pz0cXN7/yi3a+tzNuw7aWS4qnTdufgBIzidvxR+vm+vHUf1dkPN7Tl R2DZhO6X9b78KCb/tUVr6ywIEQxEcLsRSCOrV2XFjkkxDQ9/sj4gKbrZg1WBSdGrs1LQWRN4oQi5 Wm8KbdOZqnxTON7RM9tVS7kKYjrjqjsty2B1MynGEDJsjwVn3nobuz84P8ItPbryw3qmzjP8jx1s WPMJghSVmVwszUFRqEAO8+LcMFEy+qJcBRNVAIzya+6Y+HhjB8z4d4jXixn9nZoaNMZ+eax+kbta t+jD979yby/dPXHCnjUvM6Zbytnlnlv858UVyufKHe7g+Rc8zZvPQTZtPaqMxtnQixuh2oA3RnQh DIikm+lEEsovMK/qaSD1WholS7JLDOzLsUm0xSc4aSI1sRQl0g59tPLNwHRr+qChYZnODGjUM7h+ zaOUD0I3a++dwB3GcYmDvT07JlMCzgjGN6IlAYndGhgenZq6PQtoaZRb+qGOeaAB6SEJ+N7+axI4 Iejb00AmzQO4tsjtnoPHXVUewhcu4t8fV1YLqGXGMpyjDPCUAUql/klRapQPpT7bjlL9GRPseBOw NEGpGD3b+jteis5AXo0J+BSJeCZQkZlkuGEhunu2b2H//oV9Z6UMGZJy96BBpBYSrHCCZkoL6v83 SIFU/w7Di6COYIALjbCYGU7DmsCpnM50JqEabzuCu+3EO5WLx881XL71/QVe2q00fDjtlNLwJsOH Npdjc+uk2ziM8fNSB7zoURh6UNabLcST9O0xQZ3HzxjlkhjJwGIvWlTlOVbVNRFvshMOLWbO7gMo CTacV8dE/oRDlFu3lGqc/dLrr1cq25l+HtDHzQ/Pf/PypvXPbGdBz+HKaFaCzBECWQzR6V0neIRm LVU+MxMPCiYpzKVTaQ4aJmAIOmPGnpDgjICsS1zkx5YTygO5TfbhqdPz4nsqKxpwCNurOU75lQ3a wv0j9zHubmLzgQgJP4COQlF2J0qhPh0bCAdUk7pOcKeeZA3BuwXRjcBOwk9EJu3dEzQUSH0V0xNb X8ORPeK+PKbs3K+cj4hQPtyvvFKHP6p7i73dopWOs1/fGct1z89v/jfwhxEZmzVQHJMrhwTMQv6P +KXN8f5/KOXbPXtqa4YM1ic7p87+9ltAJ/n7jpi26PJmFwI6CZhv6tA/ZKw3tHGpAgwqtaqwVFv+ ZXjvUJZupFxjWpi8I0z7sWPMF0e52c07eKn5Re4ReC4EMFcFz9Wg5E7mqm3pSBBVXs0RxyHTUcA+ XJWSeFRJ4ubyoXd+5EN3kAha2nqD10EuNgGK9EUzrWj++7a1XUHqBh3wbEyHAsHZ47sxCc700G5p ENiWBBFKBqOxmKELDc3kdc8qt6W9yh/PM89hw9792PDs0cbD75xhz7lrP2aZ6gvKsd3VuO+pvLP4 nj3VytFPGcxii3L9j0eblas4xEM8+SAsy+hsPBD5dNSyD/ksqyOJgSAKwO411P8HynyYuc1e9POx gfUydpAaW7iC1flAQBpNPKIV21tjuBqstDal/aR8zRzZ9+o/3+KllvhTyh2RwcyX7JUWx479+3aw /wYtx4DPdKW20xMsYTD68hQX2D90ii/bRjxajoIIrSppyXp6lZiYtdMGxsayn3h2rD/BJO5mkuo9 D+CfbuOnlNW8dGcsE8VUe/2XG0Hz97hO/Mhvb9nACZ0kSU41xyXOplXpyGYCoO19sVc865lLLXPY 5z1JzDLmVU/Ly7y0Q0kkNqkB17vIH4R+rV8nwdP+8wWicI5LDpxvygzL+yLGxDu7pzEXa5VyJrQr d2b97pOg69Vg7xjehczQFY7rxNRt81OkShOyJohO0zXJKj8P6ujnFrvAaQgGshBIhJxOEXVnAVVa /A0c+2D8Z63IvPjkka9+P3VGacFT8ISzM16Je+3x5ZWbeNfL3O2rq5Wb568qv+KhnpH4OVzNewoK Jw870HTohS1uop0nQIImiMk4tCBgwB7bIYFIBlEKaewwGuoA3ORYls6PYpMPHI09HctMOxASG0e2 wbEPwhY4PiJ41BfBIoK6F2FnbPEMS8M3I5Omj6b7lVuSrNyoYsDVwr/G4XF1GcrlYyfxlaMLXnMq +xnx6Py8XTj9o5V4FJ7//QVsU35RWpf9rnyR0heP3A6STQfE8idI5kBPdpJrIoGI9ALmSDpNSJZP k9ZpJyK//ZDTDIQLiUkElYXIz0VgTEfgTyMOasxIUYpphFU9hsBpGRlO0TflSWufSHDWbs40vxkT 7HhtecmW1uJKt+f9U9eenF9c0oqUuUpr7ZYVazduf76cTWXWFmK0ftFb33z+PzPkRIe08vh/Lr+z uKyiZGUp4+sphfF0qpLdiR+qkpdquuVvw1TTBBkjOurSeDc93VJ66xioYqYwiHzS4OBXcRNu+rMu VIl/XrGHQQZsfph7HUI/k8lpzuW2enZ6PiRZkUFOyAJjKXIKBqj61xzYlgewjo7WcLI68BtJHTU0 ylqB/moSpPOyg0kFJcUGPMRm0rBrGxpqPXlMRb3naVwfjr+vUvbh8QvZX1r6Mg09CB+Lwdf14BFB KNpff1Q/EbZ5u/7v/BweTKsN6xRJtQlL8P06Q42Zyekv3/j+Cnf5h+uXWffqyo3PMOvL169hmYXK YeU4BlZv4aG4j3JOORF0/X8vXFY+u3H1/Ndgv7HAWyH11hwZBUy3VQkzCogob+EFfZCMGFA1ZEcU zaIO0WUOYD5KlOIaYVXPa7GDTiBTwzvOtklYOnyeme5gJt+6isOatlx/+tjuFzfurMKPfjJHufHt FqVlw7H3/7n1tS3M+pGnt+69WvTx46urludnPzn3ydfzXZ8u/mDl6hefurAEqmcByBUMckVAhuyF crxCWUAOi6ocEusn6CikToBITMDTXFEBorFRCXRCnRDlHeqrJqyWjrK1Df3ImDUj0z/FZ9Md8QIV DFN5iYDsjcWzC9e0Np71PF04q+DGsbofqrbdqXq+5JnNyrWF69ZcXlPGpS+sSen97rL3rlx9d+mR 3ik1Cw599lnLq0+8tPX2xkoual1R/vr1lysQj/Jar/MlfD14VxRYMR31QU91goHtQNi9wNH3c6+J U3taAGkXpa6NUtdkOLjuCrjeVXT1bidlp5221c5kOZO1k1NmMh36kXTjU4Nv5OckKrDg9Awrfcca +AZxAj4BR+TtKlnzxq6nn6kpy7p/5JTJmycz/XdhYfcupYVcuW/ylFEjsxVNHnMyj9taUrOndOTq XbvKNWNyZ08aNWbu3PEtZ0qqd5ePLKneVS48mDtn0v0P5syZ+Ns9XOE9EIG53M/Mj6AjLWDAWETq X0AvSFxaI0pioyR6+fe21N39h1zvL994n3fnH0oaOBB66V7en8HZCpTDH0DV+Be0gRuIpjFvowoN i8qZl5EON0N2ZFEvrgTN4JajCs4K+1S0EM4z8XOoKz3Ph+vNqJq9gmzcs+gh7jEUx95CWTxH77md S0EPc/PgM3molNwDf996lAuGZwHNRKNn+cGomjfC9z9E4ZpINJA5iQYQfrgTqDe/Ci1lktBBPgVV 8H1QDFcB11egGnit5hejJ2CfLrTQa054LeaOorGwF/BNKI/NQrkSShwt6cZmAYbYmH0It66RVnd1 6dgZ05MknGi1Ds8bJuGZSRKTKOG7bEkSm2gdIbHdR4zPsmdby6xlo3LKrCOs82blSFx3usMbuWXZ yVYJTcjKg3Vilk0akh3ddszNzu6XJHHkNhy9TVk23GC+7wbz6Q3g+54kiU8cbZVYx9iscVnSqmHR 0pBh2dE2m3W4VDc2S6obFm3Lzk6ShDYerd7/8YVyq0mUhLuSJK33DhOypCHREsouK/NSdpu0qqws ugwk8NN1avoQRh0vDAm8ABoYfgivGkvfWWW3RZMLdpvdBhxmD0uSdImjJ2QNBxZtwKI+UeoxPEky JEo9YTMmuhJwqbVsQpZ7COLQnENaVDoxy416sN8VZEdLdri5tfSQiNquESmDEqUhpYesaGqWqyca Fu1GPdnvhmUn/ReLxm6xCmVuZHN0cmVhbQplbmRvYmoKMjkgMCBvYmoKPDwKL1R5cGUgL1hPYmpl Y3QKL1N1YnR5cGUgL0ltYWdlCi9IZWlnaHQgMTQ4Ci9XaWR0aCA3MjYKL0JpdHNQZXJDb21wb25l bnQgOAovRmlsdGVyIC9GbGF0ZURlY29kZQovQ29sb3JTcGFjZSAvRGV2aWNlR3JheQovRGVjb2Rl IFswIDFdCi9MZW5ndGggMTI3Cj4+CnN0cmVhbQp4nO3BMQEAAADCoP6pZwwfoAAAAAAAAAAAAAAA AAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA AAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAPgYBCyzHCmVuZHN0cmVhbQplbmRv YmoKNiAwIG9iago8PAovVHlwZSAvWE9iamVjdAovU3VidHlwZSAvSW1hZ2UKL0JpdHNQZXJDb21w b25lbnQgOAovV2lkdGggNzI2Ci9IZWlnaHQgMTQ4Ci9GaWx0ZXIgL0ZsYXRlRGVjb2RlCi9Db2xv clNwYWNlIC9EZXZpY2VSR0IKL1NNYXNrIDI5IDAgUgovTGVuZ3RoIDEyOTk1Cj4+CnN0cmVhbQp4 nO3dB1QU1/4H8ElMj/pir9grJcaCovReBLsmavISE5MYExNj4osp/k1MFEWKLZYYNbbYaLt0sSF2 RQQVUbFgRXZ2YVlgYafsf+4uGmMQ7t0ddsD8PuceH8fszt5Z3jnz9Zbf1esBAAAAAAAAAAAAAAAA AAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAGTcgoSRP8WN/jke pwXOk/1v/WGO56TuNQAAAAAaNsorjHIJodxDsZrjIttp21gOEggAAAAAzNJo+HLKJ4LyX4bVPMPs P98BYyAAAAAAMBMkEAAAAABYHiQQAAAAAFgeJBAAAAAAWB4kEAAAAABYHiQQAAAAAFgeJBAAAAAA WB4kEAAAAABYHiQQAAAAAFgeJBAAAAAAWB4kEAAAAABYHiQQAAAAAFgeJBAAAAAAWB4kEAAAAABY HiQQAAAAAFgeJBAAAAAAWB4kEAAAAABYHiQQAAAAAFgeJBAAAAAAWB4kEAAAAABYHiQQAAAAAFge JBAAAAAAWB4kEAAAAABYHiQQAAAAAFgeJBAAAAAAWB4kEAAAAABYHiQQAAAA4GnFa8tZ5X32Rl7l 6fTyyA2aFT+q531SPH2UarKrcvQAhW8v2qdboX8fekQ/1USnog8DimZP1oTNKdu4tGK/XHflPHvv FldawtdN3yyWQIo0FdfuFaeeuTl/24m3ghNtp21t8eZadE23MMp5iXBlyifsxcAVrd9c13vqH55z ov+7JOWnbcejjuSdzVPcUpSUlFeKfu91gedZvrKQL7vKFx3l7mzmLn/HZU1mTnmy6X3ZA22ZPa9U plCVCYYWRwk/M3ubsmlW7PEh7JkRXM6n3PVw/n4sr7nAl9/gdUV19EsHAADwdNNdyNDGbdMsm1v8 9WTVO24Kz66FLh0UHl1or+60T0/arzcd0Jcebk0H2gpNGWhDD7dBfyNEESGTeHcXXq9ws1K4dlSO fKN4xpiSBTPL/lxdeeYIry0TsZN1nUBUJdo/UnOmrdhnO23LswHLqKHBlPNiys0QObzD0Uf7Cm0p asLPQhP+UvhP7qGU6xLKOQS93nFR8wlrBn2+fUr4nlVxWVnXFCLevlj4SgXKG7mz2dN+7KGuTPKz jIxi4igmnmISKCaRYpKqGpv8t1b194mGlyUYXh9H6eIodu+r7BE7NnMsm/sNyiTaW1LfIgAAgPpO l31SE/xV0bseylH9ab9eKG8IfwZY00F2yhGvE7cgO5RM/PrQ3j0U3j2UI/upJjio502rOLKH50X4 J3LdJZDDF+4EzZM3GbMKhQpX4yhHBOW3FPezHjbhLd4R6O2Gi7wQtKLPR5uDd50sKdOZf/vmYrX8 rbXs4X5MamMUJB6EDZQuUsxoyY/EknjD1fa+whzqy+X9rH9CFNGyFSfprOyi3OyiS0QtQ3me4RgL f22muVeuOKvKwb+1TFVOniZf6l4DAEDdEsIAk3O2dOkPijGDFM7tae/utH9fOtAGpQ7TgseT0kig LQozPj3RpwTaalbOr8w4bE7PRU8g6rKKNfHZNh9voQb+QrmFovDgu9SU4FFtFPEzDJUIacRxEeUU MiE4If7ENXNu3zR86SXu1nru6EDjkIUQFdiHgxvmBI8npRFDIBE+Qvg4XSzFHh3A3Yjgy/924xVc Zd9Ev2d39nxlty1Ro3Z0++LMz5b/DknpOMY6ye/5Xb1xby3SltrSJvHuAak7DgAAdUibnqSeOVE5 op/Csys93FrMyFFjo4fbGD7RRv3DR5UZR03rvLgJZNv+3D4fbkaDFR5hIkSOmpsQbFxChIQTMDc2 21JTM3zZVSZzAru/JcoeiXUTOWoNJImGgZEDbZiLM3i29GHftufHtYoZbCV36hzngt86yBy7x7sr K4ss8wWaLOZ2SuPI1zvJnTHvq22swxvJgVL3GgAA6gQv/MPzYDw90Vnh3gWt3Ai0sUzw+HuzQyMt vj0Vrh2Lp4/SXTlPehdiJZCLt5RtJ61DQxOeYeKMeODmkAi0aGTIogkLE4pKK8T4xVaPL7vGHBuo izPMjJg/z2J+DjFM+uhkFJe3gGeqcsiI9GltYocQJRDhmd4yZtDszEV199WJwjrJt71sKOZNCTGs RbR92v2TUvcaAADEpzufoZ73scK5HVo4GmRn4hoPsQZDDB1AUzMB1prw74jWh4iSQL5Zf7gqCfiJ NOFC1Iwf6hLSbvJvW/bliPp7NuBZPmeGTnjuJ9TZVIupOQRFkXiKSevJ0/uEnp5SnX9+V2/8gQJj ay8b1jfBJ7/sjvhfnUg2X48RkpUV3n11inNpHWM/9vB0lmOl7jgAAIis9PfFxsUY0gaPJ83LFH0Y wFw8i3kvZiYQdWmF/Rfb0LQL/kXqLod4hlFuS77/w8QJqWrx5deYtO4oeyRJnTdqGA9JoJgUir8e KnTY88D7rWMHd4ojCCFCYmkWPeD77FARvzcRlTHl/gffFxIIZrKykju1lQ1NvHtQ6o4DAICYdLlZ RdMCFe6dhGe9xdZ7EI+H+PZSeHYui96Ic0fmJJA9Z/JfG7eacg2RYNzjSc03gnJc5D4nsqRMhPoh 3L0dTMqzbCJaCyp90qi5JVE6OaXPnpypvt5B7tKRcDWI8NR+cVff+rkpZld+YtOoN/AHdoSs4ntg itS9BgAAMVVmn1COegNtiTUnexj3swy3rir9ITS/3mizrfBDVXkQG/OHVtBgiFe30o1htd6UCQnE OMtz6vJ99Lj3CKP8sMcojDtZvMMpL0PzDKtqws9VtUFE2jLjHDL4ix0MZ1btVr74JGvcWmv+REny X/VAqrbZJv6tSAgjyuROMsXFUfzFz6ecnt8Ce8TgYWsWPWBe9lJzvrE6Ypvk1w57BYhw1y/ttj5G n5G61wAAIJqyXb/R3j2EnGBOKkBLRj27ooDxpoPqPa+ijwKKpo8s/mx00aejhJ9VU7xUk5yUowcI mQS9zMzVrYG2ha4d1T9Oq/m+iBPIFzuEd8mOXaX8IijPcNxI4FVVEuTFEStbv/Vbl3c39Jy6yfrj LULr/eHmblM2tp7426ujV6GXOYcYUo15UcSwLKTXBxtvFWpM+3XzxcfY1BfQbhdzJkcMm1ZQhkl9 iT3Qij1oxR7qwR7uwx62YY/YsIet2fRebFoX9kBbVO7DsNnW3P01yZQ+kco9NbZzYgDpMEgH2TDr RN/cEgl2N9dAfmvfy7ttMNOU8LJWMfaTj8+SutcAACCasu2rFZ5d0MyLCXMigbZCblG4dlSM6l8y 96Oybasqjuxl8nK40pLHPoUr07C3r+syj1akxpSuXaie8x4daKdw6Uj79kYXMWFgJMhO4dROs3pB DbdGmkDcvok6e00hBAk0dlFrDPBdisqfOi+2emf9tBX7f0s6l3bu9m2FhmEfH524Q2tOXirYvDdn 5poDQ2ftpJwWoShirGBmWhoxhJCu72FNRT2G53ldeg8mwZQMgEYzkgx1TZMo7oQzd+l/3N0tvOoQ r73Js9UVs+UYvqKALz7O3d3BXvqeO+XOpDwrvJ01eWBECCF7qGn7g5rLyMZAhMd38+iB88+vMOEb qyMczxlXgGDeghC6rOROe++LuRAIAAAkVB67SeHT05T4EWiDVqv69iz+MFCbtBOd7UKyOJ9nGE6l 1O6Xq2dNQMMvqA/W5CHEttCrW+nm5U/6FLIE4h1uO21r24m/1xI/jLMtbqGUZ2jQj/ITufc0WoL6 pTqGvXRbNWfDkecCl6P9NSZv7xXe5bTY97to/I82YnO/rqpESjroYdwhe6AVdy2Yr1TpOfKqrUIg 0RVx+St1h7oaK6yaEEL0ydS9PU1bJwR0JJyI6SB37CAbVqIrrb2fFhF3d39b2VD8CietYwePTv9U 6l4DAIA4yhO2K7y7m/DoNxz7Yq2e9zGTk2l+N5j8PM2Kecqxg1C1VcLBEDrQVuHSvmK/rNorkyUQ Qwip5fV+aNzjhaAVn686WKguN/PGI2LPCJkHlRnxNWmvDVoTsnjS4iT8T+TLLulMeO4b5lzYA225 W7+ZecsPcYoU5thgJsGkEJJCLUiyaRnnQboa5LXo/l9lLhTrFszkfeBdIVTgj+G8uLvv1RIoww4A eBpw9H00+BBAFj/QE9/NSjlhKHP+lLj9Ya5eVH81SeFqRTogQwf0VY6zZxX3/nlN4gRS69DH0GCn r3advFQg1l2XanVfrUuj3JdU1Rsh7ZWhdOofqRcwP4678AnxyIMQP+QUd8qT14pdUoNj2FvrdXKK JeySkEDykptYxzm2lxPED8NqEMce8R71oUTqcTqzSWQ//ATVKmaw58F3pO41AACIgCspVk7xpH17 kT7raf8+mvUhdXeuekVqDDp0xo9gTSxajuLdvWjWZD3z+LyAaAnEUI7jGb+I9cnEdVlx3KY1/aZv RatKTNgv4x1BeYWfu1575XZUdH3ff8hKfxhHP86Oqou7ruqVJoc9aEWai/TJ1Mq9A5rIyBKIsUTq N5khdXc7mJz2vkW0AqR97LDsolypew0AACLQLJ+r8O5OtPEWzbwE2VWkxtZ13yqO7aPHDxY+jiiE KDy7amVbHruUOAnEMPPS6Z0NRy9UM8wiGl7/bliKIYQQdljonnuo46xdLFtLMORurWPk5PHjpKsY xxTXeOvafHZ/K5Zkbw5vGAlplzS2A+GmmPaGTTE3JS2RuqcgvR32ChDjFpgPTsyRsMMAACAW3cWz hR5d6EBbgke8fx/l2EE6806qxcdcylIE2RHtDkbbgb26P3YdERKI4fnefPwaHWOJItjLY89SDsHE fTZsjYmIqaVMBHu0P9EOXFToI/kZvvyGBW6cV5/VEa6P1SdTaw74NI11JloNYiyROvdcuAVuqvo7 5fnJx75ElV3xuo0GQGTDjtO4dYABAKA+K/qvB9kIQ4C18Hr2xhVLdlKXdQKVMiNZE6Lw6FKy+pdH L2JuAhGe7B5hA2dsLy0n3/dhqt+SzqHP9SbstmGNSs2DFboYskc8E09xl2Zb6r717PWlRAtThQRS cqCLd9pHbWKHdiap024skcry0pyrcuD+sRYxg/C3wLSMsZ90dKYkXQUAAHFpkyJp3550EO4ACNp1 691Dm7TL8l0t3RBKe3XD3x2DlqROdmYL/5orMTeBeIQ1Hr2KNnvPC6mV8izKJYR4OsZ58Yxfn3hc CF98inQKRhdP8RUWnK1gy3QHuxAsU0mi9GltN2bNbSV3wX+gG1uz6AE/Zi+z3K09wjftPfwtMMJ9 Ndltl1tyVZKuAgCAiLiSYtXHAWgABO+xblzkWbopQqoOF896C3+5LFoN4tG1bMtfVafMSiDe4c/6 L71R8HhpNcv4adtxVLWMaHeMT8TLo349k1dY7QXZK3OryoBgtkSKPT7EwnfN569CncTOSEIn9QU7 XA580CbWgSiBdJANs0n0u1xy3cI3eLYo54VdffCLoLaIGTQjY76FOwkAAHWh4kC8wqML/gJUIauo pvpJ2GHm6sVChzYEHUbDIK78gzNTTE8gvmjzy7q62fmCyff7aFTsHT+EGFaDfLG2+mEQ9oSbToaG NXBbLMXmTLfwLfN6Pfpcknki/ZU5aXRW40g70tUgzaMH/mzxEqkTj85sFYM7ANJR5tgt3uO08pyF OwkAAHVBNdWHYAVIkF2hS/vKrBPS9rloxliCXcNBqNK7LvOY8b2mJxDXkBHz4qS98at3i1tMWIOK pJEMgzQKWKHVVXMILF9xly+/wZffxG1l13lGbfm7ZlOb4p+XxyRS+tM+wrtGH57eKsaeKIR0kDsK j3iNBUukHlOc6RLn2lHuiNnDFjGDPjj5rcW6BwAAdYctvFc4pAX2o/x1hXd39fzPpO61XohAqHAr /sIVn57qOe8b32tiAvGNoFyXSHvXRjsOXqIGL6T8SeZihgWHRTbgs1PZM8PxN+ygrJLWRXjXEToL DRpgP9yN7bXo/l+fDbbYrU0+PksIFdgrQJxfjbQtrjTx8EEAAKhXNOsW055dcZ/jgbaK4dbao3ul 7rWe06iLPh2FP3SDisyPGcRXVuhNSyB+yyjH4G//OCL1fVdpMno1OlQXv/+eYd2mmHJiXT3BXpiG f2qekEC41Jf0HPpdjz88o1WMPeFqEFQiVVVZbIH7uqq52Sx6AP6K2ebRAycfg2NwAQBPA66yomha IH6FDeGJXzRjLF/XtajwlP2+hPbpgbkpBp20G9C34mCi3rQE4hnW/YM/VCVaqW+6SvSRK5TzYoLV IL4RQjuRK1rdeAtjL80mWoyqS6B4Bg0U3K+gX9ltS7oapGXMoDlnLTHeNe7Ipy2xA1IHtALELU9z 0wIdAwCAuqY7n6EcOxC/vAbt2bV0kzTbFf9Jl3lMGWSLW0ItyE7h3V2zCu0gIE4ghvpj32xIl/qO /0KXaHtN3VzLcb3/uIW5mxvqGe7spa+JEggjExJI1X6lKSfmNI8eQDQMYpkSqdlFF4UP6khSBPWr jAV12iUAALCYcvm2QvxdMMJD3LEtc9sSxTBx8CyLTs7FPsOX9u2lnvOe8MZGQSvJEohPxDMBy64X SLACswafrdqPqrVjDoP4LRMSiOe30SzLSd1xU5AlkBSUQPQ62vjei+qr3ePdO8iGEQ2DNIseMO/8 0jq9qRkZP+IvlO0od7SSO10uuVanXQIAAIspCZ5Je/fAXwRS6NFN6i7/TfHM8QRLQQKslROd9Iyq 0cjVZAnEI2zIzB1S3+vj0rJvG6ZXsCdivCNeG7c67670J8CagL3yA3ECqbj78O3zspe1iiXbFGMs kcrxdRXYMlUXOsqc8FfJConoSxgAAQA8LXiWKfoogGgRSPFno6Xu9d+Urg2mvbph9h/tI/bsplfd aDR6LVkCGbZobVJ9LL/wwgiS6SS/pZTTorRztyToKFfJ62i+/DqvOc8Xn+SVBzg6ibsXxd39k7u1 nr21mstfzl0P5a4t4q7+zOX9yF3+P+7K99zl77jL36KW9xN7bAj+btx/JpD7WmVH2bAOhJtihIf+ T9nL6+grmXbqh+bRAzF7IgSVVjH2d8urLysHAAANDleque/WWYm/odWre+mv9asSY+WRFIWbFX4C Ubh10p9MfG7cetIHt6a8Uup7rYbTl7soD+ylIP6oQvsPIi4FYbV8ZSFfns+rz/IFu7gb4VzOdCZz DHtsGHuoO7O/eWUSKmLGJNbYEh78WUNLNGywJTq85u8JRBCWu75p1BtktUFQiVT/KyXiTzsqK4qe 29WbqAjqj+fry/orAAAwH5N3QeHUDvfxbTjiTZtYvyYjOEWBwrk9/i3QXt30O8Ofe2sTQQLxCu82 ZSNTL5dPfL/pKCrSjp9ADEtBzPlEvjSXL4hm837isiezJxyZ/a11SRQjp5g4VIn00cBQlRmSjWfp 1tQwX4MfP6pNIOWstm+Sb3vZUKLVIHVUInVGxo/4NUCEIGSd5HtFU1/WXwEAgPm0e6IUbp0IHt/D bVRvuxR9FFA01a9etA/9iz7wQxXX8W/Bt5c+9LPnJm0lSCBuS95alCT176p60UfyqGGLCBKId3iz 8WtN+CBeeZA7N4U91JPd2wQFhgdJg30QM4jigQXaPxOIYOXlLUKiIC2RaiVzLGXKxPh1VclVX7VO 9MVfGdssesA3WYtF7AAAAEiubH2oArsW2cMQQvv3qUeNJH4oDQfE6Gf6Pf/ODoIE4hzy07bjUv+u qnetoJgavIAggfgtFV6PeXG+spArTOQyAqtGORKqRjZMGJGoJwmkjNW67ZvclvC4OlQiNVPMEqlf n1koXLMT3qdbyZ3+E/WGiJ8OAAD1gWbRLPyNME9HowNt9f8d+Py7u3ATiPDIdg5Zk5At9e+qeuqy CspxIdlRuQN/qfWyPKvlLn2L1nIYVmjU/7yBmUAEf96Qv7zbhiiBiFsitbiypK1sKP4WGCF+fJ25 SJSPBgCA+qP467cJDnd7OlqQnT6wy/NTduMmEN+llE941OErUv+uqldewRg6SbKvZ/CCm4UlT7og z2nZ81PRQEcC8eLPetWelEAEdsnDiYZBjCVSvzsbKsqv7IuM+c2iB2DOBLWXDe2XPPxu+X1RPhoA AOoP1ccE9difmiYkkOfexZ6FERKI79KYo1el/l1VT1vJNB69imxn8ZCFGVeqf6Jxt9YwB9qiNaXG xZ9Sp4g6SiBxd/e3jB6EfxSLIQkMs0n0u1lqbonUu+WFQvbAHAAxFEEdPP/8SjM/FAAA6iHVZBfS dRRPQRMSyLNvb6N88GYuhATit1R+op4WoqzQMc0nrKW8SY6ocwg+mP14SRBez7GnAozbYyUPD3Wd QHScblT6J61jBuMvSTWWSP3xnLn7YX86vxy/CGoHGQoqyooGWUEOAABqRr81FJUJlToSWD6BNJr4 J24pUcMYiOx4PR0DqdQxrd76jSyBDA1Oych/9CJ8UTqzvyWqONrAxz0wE4jgiCKjrcyBaBjkQYlU 089kvKbJ75Pg3R5vC0ynOOemkf1CL64z+eMAAKA+U735L00gz03ehptA/JZSXuE7Dl2W+ndVPa2O aTZ+DeVNMgszNHjPmb8SCF9ygUlpJP7Qx8NSHkl/NbR1N/Hv9cfi/9H+XoiMNW74TSKeFao5gQgC 06a2isU9lNbYXovu/9M502uD/HLh19ei+gvRAm8AZFjXONdi3RNX7AAAQIOmmuAACaT2BOKyeF1y Pd0LU16he2kE4Sl7DsFp2VXrGXhVOrPnZdHihzFvPAgYKDbseYHd25jd34I92I5N66Q73Is57sBl +HFn3+TOTeEufsbmzuIuzTFUX/9O+IHNnc1e/JLLmcadn8Jljmcz/JkTTrp0Gya9B7u3CVEIqTWB XNXkN4vsT7oaxDYpIM/UEqkvR9pifhxa+xo9aPnlTaZ9EAAA1H/0RGeycl5BdqgeyHDrBt30/lbP T8aehRGa0+Lgnaek/l1Vr0zLoCkY/HvxRytRM6+i40V4HY0mX0yOH4+OcsQbCoYICeGwtRAbuJxP 2WuL+TtbeOVBdBBM5X3e7PPd2MvfolQjXgIRTD89DxUowxuUeLAaZODPJi0NRQMg0f2xo87QASkj 71fQJn1VAADQABRN9Sc4lk6IHyP6qcYNVo6zb9BNP97mWaKaqK5LPlt1UOrfVfXUpZXU4GCyeiCD F9xUlArvZU97mrj2w5g6Hs6VpFujEQxVGq/N5xk1z7N1cads7tfmnI1brQzl+R4JHsYFn5itg9yx k8ypjCkn6vxdbeHAPaMwC8J3krs0jeoXevF3M74tAACo79Qk9UCErFI86y2puyyORsNJjpR1D/X+ LkbqLlcv62ohNWQhQfwQ2iBDTdRrP5kYPwzZgz3UjTk3hb9v1hEzRNiLM0UfAxHMyV7SLHoA6WqQ 2YQlwhZfWPtaFG4NkI5yx7aywaZ+TwAA0DCoF86kfXBrotIBfYve9+YUBVL3WgRkCcQrvCs6ma5O /mlvpt2Hr5CdC+O3lLIXnp5KtKyC5LD7qqGPeIpJbcrfXMNXWvqYePbCJ+QJ5F6tl9VxlS/vtiFa DfKgRKoas+c6nu2d4Im/BaZJpF147nrzvi0AAKjvyjaG458LQwfa0CP7s/l5UvdaBGQJxHcp5RKi LquUutfV+HpdutA3ggTiHfHy+F36e58RD4AkoyWm3Ckfqe6UzZpEnkCw0vLPF1biFynt/KBE6vdZ 4Zg9D7m4rmlUP7zrO7eNdXDa+6ZSpArwAABQb1WkxhCcjRtkJ7y4MruerskkQpZAhOaw8EDW41W8 6oMhM3dSHmEEN+IR7vnDXn064eZWw2G4bM4002thmI095Um0aBYlEJ0S58r3tfSAlBHt8BZpPFgp aiiRWlZ7iVQtW9kbvwaIoQjqystbzP62AACgvmPyziuc2tFBdpghROHeuTzmD6l7LQLiBOISMnt9 utS9rkbj0b+SFQNxWfnrxoX6veTx47iDtHfKpvckmjbSxVI8gztREpL7W8uYQaQlUuefX17rlVdd 2doKu/iqEFR6xnsynLn7hgAAoP7jK7S0dzc60BZ3Isa3V/E370rdaxEQJxCv8A5v17vqlIfO3ab8 lxJsxfVbRrmvS9/6BnECSX6GZyQujUU6baSTESQQwRspQZh7VYzNUCK1D6+vaVjofoXSfs/odjKs U/CElNI46vVtN+Rmf1UAANAQMEzRVD+CDbmBNgqfnlJ3WgTECcQn4tnhy64VEDzRLODHrccp91CC rbjeyzu9veJmbDv9HoL4oUug2ItfSHunwmOekZEkEKHbcoooNW26HvXybptO2Amks2FTzPxzNdUG 2XAt6jXsFSbtDMfgVnD1cbkRAADUBU3Yt7R3d4KlIE7tmGu5UvfaXMQJRHjKe4T+vP2E1B3/S3kF M3SWYREIfgLxWDFm9k/6tNc4/NUUyRSz9yW+6Ki0N8sXRDFxZOM2ujghgWiIPsV1/6Q2sUPwQ0h7 2TC7pICrJflPumDbWAfMYiNWcudW0fZbrlludzMAAEhOm7Cd9uqGvxREeLFm5Xype20u4gSCHt+h DrN2anX1ZU/u8Yv3yKqhCkHFc9UXP8/UpzfCH0xgkiguvZee8FEuOjbzTaKNMMahG54l63bkzaR2 sQTH1RlLpP7yhBKpf1yNbBxph3kp4XOd9r1VqiMrdAYAAA2aLidTOdaeHm6DX5es6MMAvrRhH5hl SgLxRcMgJ3JrLzFhGW8FJ5Ltw0VZ5ffYyO/1qSTTGYmU7ugQiW9Vp2LTupBVLxESSCJxAuF5vee+ t9vEDsGfiOkgcxRySDmjfexS5Uy52/5JbWNxV4C8Gmm3+Xo9rXoHAAB1hdcXzRhD+/XGTSBBdrR3 D23iTqn7bRZTEog/Ko5q//l2qfuOqEq01MBfyIqxe4e3mPinvmAlRzSYICSQDH9pb5a7tQHtwyXc PowSCFNK+llZxbkv7rLG3xRjXA3yv7OLH7vOuqs7W0QPxN8C0yPBXaRvCwAAGpLSdYto7Lpkxh0x qs9GS91rPV+mKQ37Rv3d++q5H+K04pkTmFvXjO81MYEIT3yHhfmFEk9JCCYsjKdcl5B13jlkxm8Z euVasgUVQgI54SntzbInXIiPzxMSSJIpCUTgum9S69jBRMMgPeM9iv5eItVx7zj8AZCmUf223ZCJ 9G0BAEBDwqlVimFtCJaCBNkpXDtqUyKl7bY2aVehY1vapyfti9F8eiic2vCaqseEiQnEMAziMFPi YZCdaZcpH8LzcIUXu4Wg6FS4VUcynoAe/Uf7S3izvHKfLo78/BpDBVe9SQkkQ3WhrWxoRznucXXG EqlzsyIeXmFHfsKrkXY4AyDCa9rEDvFPe7+UhRUgAIB/qaIP/fEnYpSGM2LocfacpKtB6NH96QBr guUrHwfyD852MT2BCI9yz7BVcVmS3bW6vPmE1UIfyIZuXJe8GZxoeH8yk/Is0UpU9mBHXntTkpvl 9Xr2UA+WdADEmECShQRSZtrnTjs1F7+MWOcHJVJvPSiROih1NGaFVSu5k5BAtkMNEADAv1jFwXiF a0eiYRDap4c69FupOly+c63C1UqJ12E0aOPZtfTXnx6+3fQE4o+qkz0XuEyhluYfra5fRaIFqH4k HTbc6d5Mw6bRkix2XzOCVZ3JKITw96WZI+CuhhCvAHmk2yYnkLNFOe1ljkTDIM2iB/xyAW2KibyZ JIQKzA01hhoggaJ+ZwAA0MDwFdqiLybQvr2UI/BDiC3t3rlsS+2FqUVXefIQ+nT8/TuBtsrhNpXH Dzy8glkJRGhuoZ3e3WD503JHzY83xA+S+RehuS6ZEBxfdQlOx6T3IdpXgrbBnva28J2int6XoX6S HuArRgIRfH5mvhAq8FeDCJHj1d02JbpS37QpmLtphNzSJPL1vQVHRPzSAACgISqXb0VrKoJwK7Qr jaflenapPH3Ykv3kykrpd9wUvr0JwpJ/H9UUn0d3EJubQIQM4B469pcES9746J/jUP0xouUfxmkj +19UJRUPr8NmjCA7ZDaZYhMoXp1hyZvldSo25TmyHbiiJpC75feFIIE/DCK0trEOAQenGNII1vSN cH3XfRN5XsLj/gAAoL5Aq0HQMAhuAjEsCLGmA20rUmMt00O+vFw51Y/26YE5/2JsCrdO5dtXP3od dJyKOQnEGEJcQty/ibLAXd9WaFD5U+cQ4vhh6OR3f/ztX9n8fRkjJ3ygJ1G6fW30vKXGfErOCh9n yvIP8RKI4JcLv7aIwd1RaxzTaC8bhhk/rORObWUOstv7xPrOAACgQWMuZCg8uiixD6p7EEL60t49 yiPr/OA25s4N1fRRpPGDHm5De3d/7N+ZlOti4qd5tc/3ocG+P8QUFtfhmpDIw1eajV+D9t6STr6g gZqw16dv0VYyj14QLe+MN4xsED3QhTxwypuv+xDCKxLY1FeJt9/+s8NmrEQ1ulNW0A8dVzcMfxgE P66gLTCHPuD1cAwuAABUUYfMLnTvTPSIr3rK+/RQL/iCr3i8OKRYmLwcxZgBaIiGqG9BdoUuVmVb H6+bTQ1ZQPxAf9JT3iO07aTfz+QVin7LLMe/vzQVbbz1JDn85WHziRDeeDTnbjVXzhyLJmLIQwh3 bIDot/ko7voSJuUZc+PHX2MgpuzGfdTii2uaRvUjKlCGGVRe2m2dcu+QKF8aAAA8Hfiy0qLpI2k/ srkYpXFhqlc3hUdXbWq0uLt0ucK7JWFzFO6daf++pPFDSCzFsyfzDPPYNakBP5PFjBoCADpvJYwa GvzRsn2X76hEueWi0or1Kecpt1BTZl6MTXiX8+KVcWervT5feoloT+5fj/V4qnJfM57eI8ptPopT n2EOdtTJTdr5Ul1XTa5I9ph2MkfM0+XwW5vYIUNTx5nfNwAAeMow1y8rhrbC32ny2GCIwrt70bSg 8ug/9Jy5I/acRl2+dYXqXQ+FR2eacG7I0BlrhXcP5sr5f16ZGoidQIzxQwgDNa8b8UUrLl4bt+aH TYfNnJQJjTrTa+omNO1i8koVPxQ/Rs+Pq+FT2KxJxMMghsYkUkwKxeXM4PnHc51p+JIsLnMMk/JM LQs/kihdPHaHTToXplpr8/5sGvW6iMMgVnKnZtEDE++mmd83AAB4+miTdyt8epoYQoLsaL/eaFvN CDv13A8rs45z6iKe0WF+NM9znKakMvOIJvhLhW8vdB3SoQ9jNwJtaI8u2tTqT/uiBv2CP5jQePSv czamNxmzqpY6YMJz3zuccg+lPELd/hcpO3btfnEZy9Y+0c/zvLqs4uSlgsAfZY2Go7KrJk67VDUh foS4/m9XzR/N65RM6qsmbjZJQlt0mT0vcJdm8Yy6hk+pqQNsOVcQozs2CF2ttqIfqJ8H2nMXv2BS 8A72TUZxhRfjSF+NrtTnwH/bxA4RJYQIF2kdO3jC0c8Zs/M5AAA8rcp2rqU9u6CRhyDiEFKVQ9Di kJ4Klw70CFv17LdLV/1SFrWhMj1Fd/Y4c+UCc+sqezefvXeLuXmVuZRdeSpNuyeqbH1oyY/T6HGD C53a0d49UIoQsocp8cNW4dOjdP2Sam+tvEJH2S/AfaD7RLw8cuXFm6rUMzerJlxqrgYmvMYX7dWl HIIpn3D3b6I+/fXAcllmzJG8Q+fvnL9B590tzr2lOn35fuqZ/N9Tzv/f5mPD/0/WZOyv1NDgqpEW cxaooOGaJe0m/s5xte/x5O/uYPBHFapbaCG8XZdMcWdGsLdW8+rTPFvLyk8hrvDFp9iba7nsyez+ 1mhLTqJhTWwNfTCsKWXiKH3RcV6dUcuLH00gceIkED2qsi7HLzJW6wBI21iHPQXponQMAACeVmVr gxWObdFIiEkh5K/FGEIU8euNVol4dhVChXLMQNWbDqpJTqrJLqq3XYQflOOHKEf2o317ohf49qSH 49Zaf2L8cG6vWTHvSfelKC4jSiBNx64+faVAeGP04TzD0lPsAQrfCPRilxDDTpZlL438tdm4NS3f XNt8wtomY1Y9H7gC/VfnEBRXvM0LHg/jh+uStpPW5d7GXY7CnvvAlFNXHksICYZBjL1N2LROzDEH LutdNu8nLn8Vd3sDd3s9d2MZd/lbNvNN3eEBbJoVu7cxmsdJoLCGX4w5J47ibqBTV4T0giZr8Hqr ixUSiGjrkQamjMI8aa7WFSCu+yeK1SsAAHiKlUVtVAzvS/v3MScS/C2NBNqikY3h1qgFGBr62Qb9 PflYRzXxQ7iaf2/N6gU13NTVe2pqMHYC8Y5o9ebanJtVz/RrBepXR6+k3An3xhoHRnwiUPM2NOEH 34ha1riSxg/nkN5TN6k0FTXc+z8x2e8zZoaQh1HBMJ+C0kW8ocUZmvHnBMNwR1JtIx7/nHxJori7 fxq7ypdk4S+gZWSUvuKeaf+3/6djijNNo94wcyLGSu78n6g3zhZdFKtXAADwdNOdOUb796W9upmw FtSSDc37+PcpdO+qlW+t+Y7OXaepIQuxE0h4+8m/Xy/4a7VDTr7SZtoWymlxVYQQJT+YmT2EPOO4 yHV25F2lKbs/mFNejFibUMRqxgokSRR/d8fDfvKac7jrQIQEIqf0pXkmfBtPMvLQxy1j7M1JIMLb xxz+RMQuAQDAU48vVqr/bxqaSRGaGCMV4sePQFvau4fyTQddTmatt3Pkwh20SAPz+e4V3vW9jff/ sb3l3SUpaA7FrCWjIsUP91ChkyvlZh3Xy+R+zRjGKOpFDjFs+2UO9eBL/rab2JBAsMdAhARSdMqc 7+QxhwpPdopzJqrT/mjrKHeykjsfvH9CxC4BAMC/hDY1tug9T9q9i8kLRMVvQXbGrTcKt44lYd9y KgXOjaRk5KNln9gJpPfUTRptNXt5tu3P7fj274bBEPEmU4iyh3c45bjY69uoE7kF5v9++TtbmH3/ qdqiK0kOSX4wmyNkocyRPP/4Xh6+NIdgDCSO4hWJ5n8tj3r3xOxWpg6DtIoZ/NbRmeL2BwAA/j14 dVH57g0KDyu0ZNSvj2FeRqIcgha4WqPFq25WqqkBlacIqivEHM2jhi3CfdB7htl+spXlqt/ZqinX jZofh0KI+dtYiLKHV7jwoY2Gr9icmmOosy4Ovvw6lzmKkRkygIVDyIPNNcyeV7jC6iuZ8GVXmT0k CeT2RrG+GaObZXee3dGzUxzxapBOcufndvbOLs4Vtz8AAPAvVLr796JPRqLBB6/uaHuLhbOHfx+F eyfVhCHF336gyyIe1t6QesGwVTYCq7mF9v90W80XvF6g9psb+4yQDVyWiHDcTK1zLh6hVu+sXx1f fb1T8/GqdPakh3GTiyUGQwxLPlD2SO/FXltcU8d0RYzhwFwmGaPFUdzlb0X/cqadnts8eiBpCGkZ Yz8aVoAAAIBI+DJNxeEUTfh3tG8vhXN7VL4joC/a1RIkzq6Wh4027qAZbo0Cj0eXQqd2RVP9Sv+I YK6Z+C/K1fHZlNuSRsOX4zQhhDh9tQvnsvvP3pwasZdyCkYDLJ5h4gyJGDfLCJcyDHpQDguHzNyx eV8Ora7Ds/D0hlEVnt7DnR2vM2yGNWEbSy2Rw9BYY0WRWIo91p+7sZLXFdfaK3bfa+gKexrV3pIo NlP8yudXNDdsEv2IVoN0NByDe0xxRvTOAADAvxyvq9RlHlUvmV002Uk5dhDKIV7daZ8eaNlqgLWh phnhOXfGEiLCdXx70d6GSwl/P86+ePrI0q0r2Hu3zO0wz7Mcx+MRXohT3eshdWnlCvnZnu9vej5o BYoNrkuI04ifcY2HoZaI4e0vjFjR+q1187edvKkQ88AdHLye4/OXM0ft2dRXmAelP0xJI8bU8XC7 rhAP9rzAHOrK587iy64R9Idn9Twn/A9G4+riJN/LJdd7JXjiJ5BOcudWMfZTT34nek8AAAA8ir19 vSIlqmxDWMmCL4o/H6d6x43266Nw6ahwtVK4d0arR7y6oVDh3QPlCp+e6E/hZ+FvPLspPLoo3Duh F7tZ0aPeKJripZ4zRRM2p3zHmspThziV+IfP1qmcm/TaxOyJi5IGfb698ehVlOMiaugiVH9MCBWG mZSqrTRCE34Q/sZtCapd5rTYUBx1SbPxa5y+2vVu2J5f47LO59NS342er7zP39vBXvqGPe3Dpvdi 9zz/WLmPatrDqiBy9AO750X2cF/09ouf87c28ppqzuup/945/nWL6IFEAyDtZcMyVBek7jgAAPxb oGH80hJOUcDevKq7lF1xJLUiblv51pWla37RLP1es/grIaKU/DyjZOFMzeKvNcvmlv6+uHz7Km1K VOWpNObqRfZuPqcs5CvJimvVTyXlldcL1KevFEQevjxvy7Gpy/YGzpM5z94tJJPXp2/rN/1P+8+3 e86JHrsg4cu1h0KjMhJOXj9/nc6/X1JWgXuYjiXxHMNXKviyK3zxKa4girsWwl36ijv3Hnt2LHtm BGpnx7BZE7nzU7ncL7mrwdyt9bwylS85x5fl8TpaeLvUd2C6wgrlK7ttieqSGWqATJe64wAAAABo wMYf+YxoN66V3Kl59MBbpaKVZgUAAADAv81hRUaXOFeiNajNowZ8dPJ7qTsOAAAAgAZs7OFPW8XY 40/BdJA59oj3yFA2yOUuAAAAAKgPDhWeepV4BcigT07PlbrjAAAAAGjA3PdNbBM7BD9+CFnl2Z3d 72ul38QEAAAAgAZqy43YVrFDrOROuPEjzqV59IBPT/0odccBAAAA0FBp2Qq/tPdbowEQghUgXeNc zhdflrrvAAAAAGioNl+P+U9Uf/wVIMIrW8bYz8oMlrrjAAAAAGjArOSOHWTD8FeAdJQ7Wsmd80vv SN1xAAAAADRUG69FNo60I1iAGufcPHrgR6egBggAAAAATHSnvOD15OHtCQdA2sU4lOg0UvcdAAAA AA1V+KX1LUlKkAmvbBY94LusUKk7DgAAAICGqlhX0knuQrQCRHixbZL/5ZLrUvcdAAAAAA3VV5nB r0X3x48fQmsWPeCH7DCpOw4AAACAhupueWG3OPcOMoJD6DrJnRrt6MNwrNR9BwAAAEBDNf303BYx g4hWgLwWNWDBhVVSdxwAAAAADdXF4ryu8a4dSQZA2suGWSf63YAaIAAAAAAw1YSjM1oSDoC0jLH/ +cIKqTsOAAAAgIbqiib/2Z298eOHcQtMzwSvYl2J1H0HAAAAQEM1+fisVjH2JAtQnZtGvfHDuXCp Ow4AAACAhiru9r52MgcruRPRCpBeCV4sbIEBAAAAgKlGpk8jHQBpHj1wycV1UnccAAAAAA1Vyr30 xpF2RCtA2suGDtoz6l55odR9BwAAAECDxPJc7wSvl3ZbN43qh9+oHd2XXt4kdd8BAAAA0FAVVii3 3JD9mS/fnh+H39Zf263jGKn7DgAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA0VP8PwT73XApl bmRzdHJlYW0KZW5kb2JqCjMwIDAgb2JqCjw8Ci9UeXBlIC9YT2JqZWN0Ci9TdWJ0eXBlIC9JbWFn ZQovSGVpZ2h0IDE0OAovV2lkdGggNzI2Ci9CaXRzUGVyQ29tcG9uZW50IDgKL0ZpbHRlciAvRmxh dGVEZWNvZGUKL0NvbG9yU3BhY2UgL0RldmljZUdyYXkKL0RlY29kZSBbMCAxXQovTGVuZ3RoIDQ4 OTIKPj4Kc3RyZWFtCnic7V1tufIwDL0SJgEJSJiESZgEJEwCEpCAhElAAhJw8L6XC+yjOUmTrtuA 5fy6z2Xr+nGapkmb/PzkQFGWZdXcUf/+tctSpsOxEvZVc2pv/wja9pffa1fO4bCiqJqW0nmEy6l2 ue34GOybS4TRL1xP1dqVdTjiqE5A55Bwrou16+xwCNgdrzZKP+AS2/G2qGOqNI/rwQW24/1QNEli usPt5HtHx3uhaIzaNILz2vFGyMJp57XjnVBn4vQdjevXjjdAqTVO63Cr126QY/Mojlk5fUfraohj VZTTDB8MmrWb5dgwZhDUD1xcXDtWwj6vRj2Ea9eOdZDT9EFxWrt5ji3iNCenf3FxG59jYRTzaR8v 3PZrN9KxLexnsX2EtHbl2rEg9rOq1D2c1o7FsBSp3XLtWAz1Upz+56YQAftyjK/chuyCRs52i3tJ UjuteYR3NNq1KzQHmpAPM31nvxCdXzjO1I6Ph7M6H5bTqV/wLSOGszoblie105qBszoXiiXs1ARf uQ+aDGd1LszvUUS4+RE+AGd1Jsx99oODnwkBcFbnwbI2vSHcvkfhrM6CNXaKLxyyt+ZjUDFT2lmd Awsc0xOw0R3jX9hC/JOzOgfmus6lwxZV61ckTvyrszoDyiW4K2BjPsaiPncKH37CWT0d61iqh9hQ eoJfSg9bjh9yVk9Hiv5xOTVVWTXH9Fipo9LyNuh9UZ2DluPHnNWTYdc/roeB76Q8ZthqbuWwNREC usec1WZYSXkhgdZ3E0MBb8fF6KzuMSurjf4X5sbhPi0VQYeN+GKc1T3mZHVh87+ceSucOW3MCNvY MDqre8zJalK2iMjJ0SpdYn/lwBE4q3vMyGqTqL4pBOr+cE4T2ZsQ1s7qHjOy2iSqta7tXdWczYaR rxy5EM7qHvOx2iSqjRdXduWhORvs2VsQ1s7qHvOx2iKqU/3aZdk0rUJ0f+XQBXBW95iP1YbN3XXi GaRd2Zzlz23g7J6zusdsrLbYqrNcnC1q4c5Nis16X/7qOU1T24OkvIKsLOr/ycTqOWs+qexXwBqN BExgdaGKh2PQeq+qVikg5LqzrQZl0wayvz03mv7c1cd2WIdbe6wXWiems3p3GKx4l1PWTPG7Or3s /eE0qvW1bSr5fRurd/Wo/PZUcxNvx9ELIGOMAzaYjv5WTHDybdSdfHv/Ps4cW7lKGdfJAEBpQQ7U NMzbHLpSWVaXVA6dbItUWMn+BA7I6n1Wls054C4HYSgMrC4OaNAuOJe44bDeTdc8Ea/ocezNG+3R vV3Mi8kuLLW0a72yGSHfhNV7vLaeLeoCx+oK73naOK93R2k0WlYcqlm9Y7XWGxoxw15xysH+sm5a na6j0gMKxXV4/GYdbfAR8/o9WM2WcxOWmVglH0UX/PgIZyT+3oyOxpXhtZLVct6tG1nfq1h9BkjU O4vKdE5VM3cqjYkdvajK4ER76Y63YLVEH71+GGqdf0WXUp9epbE/aEajhSXoWB0d7jaYdYYQIEl7 xQJoapM/o6s0eFHLrbCX4LsrsFpuuJ7WoOiIKYzPd7LTiiwkK1SsVgx3UD2DXzFBASlT4ubElgRh pRyC2neVL94BBvENWB3rTfViSouO2nc5WosifowTlRUKVutiH4yqZ4nra1ZAwGZdg9idGOVMIaxW C5U7qJq6PqsPsXfVTjJStCIWDKa16WQ+DSQQZ7U2oMewegZvudUCsku9zhixgqi1iLA+xmOEIWlX Z7WiAdpLcmHRqrvYKLiF8boJKSLKan2UmkHZBvFl9PrZzmyPIEoctX39nNo9T4SyaXVWs9b5QZ2V wjosWlc7qoKaY9iFoibGambU4H+7AS8MFTJYjkwqrPFLYGxv5+bu3t2VZdX0zqdAbtkrFKzna7Na tdQoN4yJoxO2OCGGXTAzYqym2ubt+FeLoqI/vXhjsOuZFJBp+RqlbSkV1cQU+ryzMGY1ZtWlqcr7 XMAS4SyXsDCrB2jbluGT0ofFl31tm4acQui+Oy4F6y238+HuZjswXrJxr0VYTdeCgTOBqLgvMWRQ EywKyMQ4lNLQkBpjB0F1uo1YDSNDDPxxe7i8jxaNaaweIPEcyBO340MzYkymOhcjx+rTS+va4y35 uMnINTL09EGH13gFlFlNTv4HF7HCSjZy66INEmHdlxEIZYdSlZ8Bo/EFwjiwciBL/2gE3oPVQ8cn sonoVBBc9mXYZdBfNRLWSFKMisA+x1GHyKwOXydmmEAWPfUJ2DgIQ2Sl6cFVhRlkeHQAsKshPYQW mOEIvAWrx6QFzdItqbDswJwMh3EvF0K+Dmg9Cvsispr0JZmyoQ7094DhvJ7huN704Kr8ub3Qvq70 d4KlkFpfge1+uJl4B1aHo0A1SN3dAlQ2kVuI1oMtD9iTAdEHaC2KCqmWYMYG8/rCVIyBQVRnCK7K bxfxuZwYgExTuW9HNHoDVp/DZ8CVU1WHgLJB5Cx5mtMyUPAtsKMcmh8lVoefh2bLoPgdKpOFQavO EHGP52oaq2mVsIynIzCYzeuzGrCGrosqizVgtXKad0scoDxcYoGQk0TF4E1mLzhGsLc4gPdYGI6A 5Eguw1sRwz5SaSBgALBJHNS9J9L6rAYrMG2aSv7QsmFHAndG1xw6n5ixAPcQ+h8FVpN1CJp3AiW6 hR/EsAThzRL2ly1dQRoKKnK4yUCF9YEvZXFWo4MY5KFEVuOtDBV73eIoddUIQM3t1xOB1aGIIerX AxfyvtICZwlWarkwxoM/SEUeVdwIowoI9xIVQH1frs5qOBXJU4msxkMMGPn8Bax/nO5DWdavlAKr wxnF2CuCISvVhj2Lr3zC8Y9x3RhQhraxOQfWUe4VMFZ8y5ZmNVQDiTRNYzW3GtP+eAocOs6MLEUC v2+JwGqVAkJEeqM9BWI6V50nERhvR0Rmw8h9USpweI2KypVu2Vid1bBTdLWKls0pclSoP0Uc9cWy iybt/36Pz7OaWECY0oMOPyltcLbINqoio+C1ZazhXI/C4W8qVvh5SkexZotZmtXwe5lYzb1Fhciz PcL0DwGGjK9+90uoVnPWLrJd1LHadilfVWQUwh6Q243yF/SpWOGXAjoDGvanpVmtq3Aaq7kHqVXo YYgByzz/NToDuqHiWR3OJ1bBGT9207HaeK8rT9ZogdXCIROG2HQe8CNPV8uuN7+Z1ayBlFKkFf+v a0lfSZ7V4UssJcICNKzWnkPvUOfIG81OzJ/IvEGRJ+hTfOHCaH0zq1lK0u0zx2phyPiT0AKrww3a tWUQPLfT2Cvs4ZpypEMXXYbyORMa9IQ+w5dNdcC3YTXe4uZhNU9J2r/4s9LyalHr+A8rUSpYnRKI 0xJiJOmzkVupIa/JA5JDkpbGDsDCrMZ9kofVPCVp9+LPfhSrk6KkT9etI5Mpdlt/dHSabmyk0mlh 7AA4q3VFvB2rE3PFTT6LGlsi5AhV/0ZnhU0bG2d1AKY/PprVqdGRFdehRcQVHz6a4AP9PXpuw4NB S2IHwFmtK2JhVkcV4OS0nqr4EgI06rwchnNAa1PptKDXL87qQW3fmNVRy156IHtLTCgAZbQWPoD1 vwELyC/SdXnycGd6+GZW804J2q/4s5/D6ikZmKedctLGIPrZwVDd40LoL3x5b2yvnpPV7OpFt9qP WU7NUCZWH9ifupfIO0pEWT0p58ikY05qVv9i13DqzrP+VFHhPUvO6khzUnyLdEVV+BZD/pxKHYrI WWjJwRfHJB1En0bjD0zo1ee6avGYUxnULc7fzGp29dKzWrhZksVjrj+5Qb5m7x8eU3QQ86dh+qSn /kwpz08aajHkF0tYSbID/wxWc8syqxKT/wtqnfAsz+pw1PT+QPq5ASzXuhBMKXcDJEyoHdg5Poqh I8NvGCxiRXcy9DNYzV0MoZ36bA/V+tgP01W7d+7yrA5/0ecEEO8YTk7YNcHFmPQ9bgdDV0u+h2hV Oh2cDACU+GRh+AxWc+s7S17DrQHKA+HaXPcLGTX1Lk8yjJkP61GkG63Tvkdo/cziQ8vneki6NqOQ wqjNn8FqZp6DndeTFlSEsNswaQLwrCajppaykuo7xaz3RLKwTk1uzBBBfxvXdMUO9RClwWewmrnJ Qrn7or/+Ni4QKv3HhHuL4aipSSHRLkei2FRhnTqjmFtB/NgEAFuBXuEkpaCNh8aO+5asxioIlQfd 0KgjJ1CSDXpfYDXZuGtVEMH6NnWviOushMVcPQTMuAbXUTz2dAAGbkiqnquyV34Iq6HCKcVdUke5 oV0ymEECq4k2qLY001q/YLQYY6SaQZJtikE5LyJQkQMnLTi9MhgAOsRU0wOLn4LVuLnLshpKEvBY JzC1EcnEeFhiRDJCHi0teAfgJL9ih5TEdP+UseIAwp5+ESE9euSgGxTntNGhLsoWsnvCEmRhVgOV U456SrmD5D3okmFDJFaT1UBrwGCPKWdRQFIdjEnpSu8ItdpO0tI1A+RZA+vtiEmS0v1ANAj5H8hI Yr4uzWqSXwuttIMJCEQFqCLokmENJVZTxRFlEQNgt4tZFJCfxNMg0maxEBpGhoH3Cyqjso8oApTR cRlwZVKwGjNxaVaHuUhgVPbhI2Bh0kRlH7VDjF9NX47Q+vkrexIkjwISvWKIIVkmq1vD1Y0OQ/8k GIGAkiiDxniQ0NQYcIjJL0lZTdcEmKBzcVYHGTSQAWvUIehw3HhmwAwaowqKrAbsvAnNq9pXXzO2 t0wKSGIwSWlK3bvhDP27NJHJoBXwgsQwHxTq/yBqJjzi2D7rAhKlPUBZjQbrOVX3h7Yj7/KsHtxj Zq4ajTsEOfGGGdVgtqNIYrTRr6gSJ8yO/fHaa5yMYp1LAUm66yWq1Y9uuJ3roHEo6dRQ5uNROtdl 8VOUB1zLcM1gLDrXlsvkdgcwBMNybs9S1mT1/SvHpmlOTHsCBQMHHLoeq9+lZ18dcd66SBLL0a/Y hnYKm7h7fevVRcwlrxwumAcS/IvimcO+G25tc0/sV/zcc/tFc6AlpGAiSqLqknE4ELodFHh+HVaL TQu12oQYGUH1ZFZzH+jTxpbNcZB6kr/+dEeyEYIiQQURAwsbHDvjcszBd+jORNWW8EgsIKMcfer1 1KKsVtGcruBmN1s0XdOkD3RdBNfeDGdAOphlpJyEVy9lQleUkdZou60wv1/CGgIyis6pbjOwKKs1 wemQb8/okCDEirHa9oGu76DcMKUsj8BsBZGnlJrVlJUmWkMbUjw96m2vYLUsgbiWznsXJq5dYaua iXVUt4yy2vaB10tQbkw/hNrD7IiRp5Q6lQ1og4HWLe6C6C6hIjVEZBSFNdfSmW94xdZUaH1EFeAB LLZxVptoLb2Uza73B+PBvYhOr2Q1ZmWhnRPs8apIF9e0hpCM0gLGtXRmVke20xypsaEf4YpqpmC1 ZbXv3gEalTFkdQRG1SvycV0hLCsPmiGA/a9ozSO8X8gYazGvR5a+jSvSWnLqFSrr7QmWoGE1TqkO IbndcqrVZttexKupKaIVDJPQ3TXCTTbW8yvu0zWnYrVA69cTi98xF7omcjS4jNKuZaqlYrU+KHr/ FSrgc6rVVtte7MYD5yDoEcl99LM7SV10PcRaX+IadJMhlFxMMez27DWtV4icUOGmSVLiiUrU7fgh UbL6p4B+yrCeg7EjW5e8arVRsY6vE/vDmS+Rzw4zQMFFMrsRtxUE6OFrHzM7HCiOEntEhNupfhW0 SjwQ0DRdn/zsjozAFodEy+qfe9AXiUiXYzUWR+HCk9NajcqXoPT/FGVzaokX7xi60QWUTeDmvpwP eo/qvhny4nJMu+YQEKE9GWowDcJ1nP2wUtd+kimwq4/hVtkyJHHsDyeQb/Pc1KD/QxUh3yGQByyK tS1cw91lWjW/+POc27Evy/r37frufjXj9+N/705j4v6vAYn1T0bkkllZHpqmKpPmalH+9ct8TXp9 4FDKnwiE6cSYTQQGxTqjq94hQB2R7IOxm7mFeufH5Mg6DhW2wOqxsM69WTScRnVRvRA2weqRsM69 WTQ4VV1UL4RNsHrEu9RgHDx0maXTQzY5rNgGq4c269ybRRiTCiL/lx0Y22D10PqW08D4hM4Pk1/1 cTDYCKsH7ZyhcNV2MUMQVocSW2F1dyA+vwlEuV30reJy2Aqru0NOc2zZNNtF3youiM2w+tXS/CYQ lXfR9Y8lsR1WP3WQOVitOBWd90y3Q8Z2WP0MvjALvaI3q9z+sSg2xOrHQfZZjMaxG8zKYJeOTNgS q//uGc9gro5eqLzN8lEHi02x+u5inKXgiBHEnYoLY1OsvkfMmKVc2QjiluqlsS1W/9QztU8ite8U F8fGWP0z0805wQjipF4eW2P1TOBPgqjzjTnywVmdBexJELfprQFndRZw98yd1KvAWZ0FjGnv7KRe Bc7qLMDXYXyjuBKc1XngpHZ8H4Bpz50vjg8HYbWUD9Lh+AiEpr2LH2hyfDwCVudNZ+BwrIKRae/m N18c34Ahq91K7fgOFC6oHd+HzkjtgtrxNXikPuByOTkcn4i7wfrqjhfHV+HknHZ8HWrntGMJ/Ac4 rJNjCmVuZHN0cmVhbQplbmRvYmoKNyAwIG9iago8PAovVHlwZSAvWE9iamVjdAovU3VidHlwZSAv SW1hZ2UKL0JpdHNQZXJDb21wb25lbnQgOAovV2lkdGggNzI2Ci9IZWlnaHQgMTQ4Ci9GaWx0ZXIg L0ZsYXRlRGVjb2RlCi9Db2xvclNwYWNlIC9EZXZpY2VSR0IKL1NNYXNrIDMwIDAgUgovTGVuZ3Ro IDM4NzMKPj4Kc3RyZWFtCnic7ZZbjhtBDgT3knu1va73w4BhWDMaqZjMJEsR6O/KB9nd9evXbfzn v/97/UmbBQAAgH28ddngWgIAAABnNF05uJAAAADAI5GLB1cRAACAzyR+5eA2AgAA8DnEbxfcQwAA AD6K+I2CqwgAAMDnEL8/cA8BAAD4KOJ3Bu4hAAAAH0X8nsA9BAAA4NOIXw+4hwAAAHwU8SsBlxAA AICPIn4T4B4CAADwacQvABOe9BAAAAA+iPh/f9qTHggAAMD9xH/3M5/0WAAAAG4m/qOf/KSHAwAA cCfxX/yKJz0lAACAe4j/1nc96XEBAADcQPyHvvFJDw0AAGA38V/53ic9OgAAgK3Ef+Lbn/QAAQAA 9hH/fd/xpMcIcA+8gLAI1vWY+I/7pic9TIBL4O2DRbCuZ8R/2fc96ZEC3ACvHiyCdT0g/rO+9UkP FmA9vHewCNb1XeK/6buf9HgBdsNLB4tgXd8i/oP+hCc9ZIDF8MbBIljXt4j/nT/kSc8ZYCu8brAI 1vV14v/lj3rS0wZYCe8aLIJ1fZH4H/nTnvTAAVbCuwaLYF1fIf47/swnPXYAH6qd50WDRbCuPxL/ EX/ykx4+QC/yhectg0Wwrj8S/wt/+JOeP4Cevm3nFYNFsK7Pif9/edIrAKDBs+28YrAI1vUJ8Z8v z+8nvQgA55hXnfcLFsG6PiH+5+X5/aQXAeCEyKrzfsEiWNfviP92K1OI2zPnBRhIZM95uWARrOt3 xP+5kvLjhoPZAbJElpw3CxbBun5J/G8rrz3uP94AgJnIkvNmwSJY10fiv9rWzuNZhvQA0E1kw3mt YBGs6yPx/6yn7Xi0UW0AyIlsOK8VLIJ1/Yf4T9ZfdTzmwE4A6kTWm3cKFsG6/kP8D5vtOZ56Zi0A B0TWm3cKFsG6/k389zqw5HgVk8sBeEJkt3mhYBGs69/E/62LGqYfgOdEdpsXChbBuv5N8K96R8NU BPCHyGLzNsEiWNc/ZG8dV9b7gS3tcr7F51Iii90tyrY8srSTCa//2I+/X137izx7+tJlubirRVlW mLyJSMlyUVblkY2dzHz9VzsR+ilOR/VIsozlmq527cBwh34PKsXWNThuIHtU354co3W+rhPb4tns xQ10GJOPKV5skIvr2hVthU+/tErRswzvNjAtWmVSElSed3WSWj+Dz6B0n73ueQ1ZSy0f1diuXIvc +kVVis6SX2+gftS0DSkysJDWWiYsYavb+RVN82Mrtpt4RanGFuVaN4i9ipGqf2ygeNTADSkys5Cm Wjy7J0zhL21gLZGpaVttJV5OtrRFuTaOwz96leLMtitHDVwPCTML0dZisNqRwtzYzFqys6u32ke8 lmxvi0LFB2F2fiAkV5xZ9fFRM9dDwthCVLXYrMqD2Ooa20l8apVW+4gXMqG3LaHiU/Cbf1elQ3Fm z2dHxW23MrmQei1mq9ognq4mdxIf2VmlfcTbGFLdllDxEUT8vyXRpDiz5Pj0+wZ3TDx1XzNx28Ug hqLihTz3HPd2UGkf8SqGtLclUbz8VIT3R6pXnNlwfPStszsjHrmplrjnepCB5zs7iRs7qLSJeAmj 2tPa60sUL7+ewj90leLMeuNzb53dGfHIHc3E3UqCDG+p6ahRQ3yrzybiJYwq0GameEi8eUkV/qGr FGfWG5976+zOiEeWNxO3qsoytqWOY2fO8fU+m4g3MK3AiJN3z+muzjaabNWtipFllgzuOz9Nx3bT 2kmkmW4tW5aBFfWd39SzYUx9xOMPLDDr4cXTPKUZpuMfuk0xskj1kb3ixLN+KjydSIQ8cVarvHLs sf8XDz+TUJkUPm/llROPP7PGuIEOh8duu7X8E7cpRhapOK/XPdg2sE69E08tLwo5mx+Ypc+2oRxh t5Ln3cha4vEH1rhiiOauWuX8E5/cWyVXJd2ZAecSVnB20i3nDGJQbEoxthxVsZLnLLKKePyZTc6f Y6SoPlH/xG2KkV1yrod/D8+odGIb/Yty5iBFxY44TYbPyjmQUxVbf44jS4jHn9nk/DmmWmrS9Wex KUZ2yfwepbbRY7Lis0M0EqRVtyPI8HIkrdafSuQ62eyTyxw+ymBLTdL+LDbFyC6Z1yO1jfNNHos+ 0Q223SQ94UDzoOuV1p9KXgnB7MP7jBvosKdy2KHuj2NTjIzJvyHDX5ljh3WTct1UkIr0c3V5lvnl SCotPvXIFYLBV1QaNyD3prLXoe6PY1OMjOniPs0O6ya1usenqdruUJdniZRzplgZaHwZKqSCb2l1 iI2BxjrU/XFsipExXdznRofCV0Z4VDxL5Uy5SX8zlTKLTz1snVT2LcWOMiMxNtmDP5FNMTKpi/vc 6FD4vgiPimepnGk7ra+ZSpnFR5K3SCr7lmJnuqoYm+zBn8imGJnUxX1udCh8X4RHxbNUzrSd1tdM pczKIwlbJ5J9V7cz7U0oR+7Bn8imGJmUXzS+kx0Og9JfGlCdMyRO5UCtvUgzlSaHbEIFf/Z19c70 OaEcuYctNXqEKrlSovGd7HAYlP7SgOqcIXEqB2rtRZqpNDlkE4r446+rd6DbCc3II/tD2RQjw/KL TlhLucOg9JcGVOcMiVM5sMPe9Y92DSTEO5nf8DTbE5qRJ/WHsilGhuUXnbCWcodZ9UcDZ4fIe5bb 0CY6tnf3o90BIfFm5pc8yvyQZrQ2/KFsipFh+UWHrKXWYVb90cDZIfKe5Ta0iY7t3f1od0BLvJz5 JQ/xP6cZrQ1/KJtiZFh+0SFrqXWYVX80cHaIvGe5DW2iY3sXP9oF6CBe0fyeJ6SY04zWhj+UTTEy LL/okLXUOsyqPxo4O0Tes9yGNtGxvYsf7QI0EW9pRc/ZIHOamZBrjn+tUCVXSnTIWmodZtUfDZwd Iu9ZbkOb6NjerY92+n3Ei1pUdTDLkGa2h7IpRoblFx2yllqHWfVHA2eHyHuW29AmOrZ366Odfivx rtZV7c8ypJntoWyKkWH5RYespdZhVv3RwNkh8p7lNrSJju1d+WhHbyDe2Ma2nXEmNCMfkD+UTTEy LL/ohLWUOwxKf2lAdc6QOJUDO+xd+WhH7yFe2t62DYkmlCP34E9kU4xMyi8a38kOh0HpLw2ozhkS p3Jgh737Hu3cbcR7u6DwvkQTypF78CeyKUYm5ReN72SHw6D0lwZU5wyJUzlQa0/bz1sclzk8V5HW Wj6n8I5EE8qRe/AnsilGJuUXje/kZIfC92VCz3IPk0/r5ng3Joeq01dL65Ou7Wu0oSaUI/fgT2RT jEzKLxrfyckOhe+L8Kh4lsqZttO6Oe5zcigJfc18ZuGqXBP6kXvwJ7IpRiblF43v5GSHwvdFeFQ8 S+VMuUNVP+9y3OfYREL6yvnMwiW54hV1qPvj2BQjY/KLBhdyuMPj9+VLdeFR5jjaM+UOVf28S2U9 BsbR0lTOJ3cuyZWtqEPdHMdZYGRMftHgQrY6TDXzne7xaam9ekVdnmX4KhatTo4jp6mfj+1ckitY UdOAzHGcBW4Zk19RkrTbYaqZJ7qpIH3SEw40b2PR6sAgTXT00/Skq3oJSa5gS0265jhOucgmb1mM etJuh0WfHaL+FN3SEw40b2Pd7cAgHcjL6XvSVb2KJFekpb7pOOOYdyyyzCsU66IGh0WfHaKRIK26 HUHmL2TR6rQUfcj7aXrSPb2EKlekqD5RWxb/jkWWeYViXdTg0D/6V+TMQboVh5zp38mi1SH+u9H2 0/SkS3oVYTRzXd1yniz+NYvs8wrFuqjB4cxNM+9wt+KQMyNrWbQaN+9BW1HH0xS540xVNGdjBi1D lsiaRVbaLHccsyhqcDh205xr3K0159juzfzyZMlmdjvPoq2o42mNLD9QFc1T2gUqwTUzyx2LHmtV YhZFDQ4PPHvW7MNVDOZfkXid58fWe+7wPAdVP32PIbL2NEmu7uqco2nSiq+ZXPQVP55o9ZhFUYPD t5yb16xbaHKQIRUdGGjyKXE7GVVFHY8/r6237vMf5YKjiS+SNo4hl1DxLFoxY1HU4HDyjnXoRrKM Ork4lB9F5/jchXYzI3tuyCsv6qPmEjcsT9SdS6h4Fq2YsShqcDh8x+JuJUGmHf6iAW0tzsI3kl1m f/PxUK/nivtUzSVuWJ6oO5dQ8SxaMWNR1OBw/oLFPdeDDDzf34y5843EZ+esfVeuuFvVXMwOt4cS Kp5FK2YsihocOp9rohn8762oz+G7nawjPjtn7etyxQ1LhmI2uT2XUO44WiVgUbTb4XEufxtOn/IU Y1Wc/USa30V8ds7aN4aKz0IyEadJWzRz1VumVhTtdliJ5q/C47MjxWQhZ0XZ/VlBfHy22peGumMc Np/bRyPUqkQ7TlcU7XZYiRbpwWC1I8VwLVtLE1ZoOPHx2WpfHWe1+e4IFZVpoYRCkWhF0W6HxXSR ElqtNqWYL2frasgWjSU+O1vt27Psdd4aoSgxLZRQJZKrKNrtsB4wFb/DbV+KLaKGxgbu0iiCUzN3 fkeQ1ea1/iXnTwulylWPNnB56g5VMVPZtZvWFyEl3d3PgfmxuzSH1NQitV8QoSmFx7nKv/DkIYme +/HnunKLtGEjqetuDRE2GujzHG9jOJ5hDex8tXlVil3Og25fYeMU9iLved3gVn+4PNQrqtfFXJ6j ndH2d2GX20eWOl9n+Ec2TmEXrR+ZjYNb/eHykPofLf0beji7MGifdAcAsAy+M7AFtvQ53EAAYBd8 Z2ARbOkTuH4AwC741MAi2NIncAMBgF3wqYFdsKXfwfUDAHbB1wZ2wZZ+BzcQANgFXxtYB1v6HVw/ AGARfHBgI6zol3ADAYBF8MGBjbCiX8L1AwAWwTcHlsKKPsL1AwAWwWcH9sKK/gM3EABYBJ8d2Asr +gjXDwDYAl8eWA0r+g9cPwBgC3x8YDus6N9wAwGALfDxgQtgRf/A9QMAtsD3By6A/fwD1w8A2AKf ILgD9vM3XD8AYAt8heAa2M/fcP0AgBXwIYKbYD9/9dxA0pkA4EL4FgFcBtcPAFgBnyOAy+AGAgAr 4HMEcBlcPwBgBXyRAC6D6wcArICPEsBlcPcAgBXwaQK4D64fAAAA4IfrBwAAAPjh+gEAAAB+uH4A AACAH+4eAAAA4IfrBwAAAPjh+gEAAAB+uHsAAABABK4fAAAA4Ie7BwAAAPjh7gEAAAB+uHsAAACA H+4eAAAAb/F/cUcKXwplbmRzdHJlYW0KZW5kb2JqCjMxIDAgb2JqCjw8Ci9UeXBlIC9YT2JqZWN0 Ci9TdWJ0eXBlIC9JbWFnZQovSGVpZ2h0IDczMgovV2lkdGggMjYwCi9CaXRzUGVyQ29tcG9uZW50 IDgKL0ZpbHRlciAvRmxhdGVEZWNvZGUKL0NvbG9yU3BhY2UgL0RldmljZUdyYXkKL0RlY29kZSBb MCAxXQovTGVuZ3RoIDIwNwo+PgpzdHJlYW0KeJztwQENAAAAwqD+qW8ON6AAAAAAAAAAAAAAAAAA AAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA AAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA AAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA eDLm1LPtCmVuZHN0cmVhbQplbmRvYmoKNSAwIG9iago8PAovVHlwZSAvWE9iamVjdAovU3VidHlw ZSAvSW1hZ2UKL0JpdHNQZXJDb21wb25lbnQgOAovV2lkdGggMjYwCi9IZWlnaHQgNzMyCi9GaWx0 ZXIgL0ZsYXRlRGVjb2RlCi9Db2xvclNwYWNlIC9EZXZpY2VSR0IKL1NNYXNrIDMxIDAgUgovTGVu Z3RoIDM2NTY2NQo+PgpzdHJlYW0KeJzsvId2W1eWrf0gHapsS6Io5pwDCIBZwa6u6nAfossSiQwQ YFayq6v/F7ndFgngJCSScvVD3f+bax9QtLv7DcpjDwwQOjhxfWvNufaG/9//++t/f/3vr//99b+/ /vfX//7631//++t///N/MxV/vhzMloKpoj9ZDCYLwXjOH874oxl/LOsPZYOhrP/MBu+fZvwnh82n B82hA2/ksDl26DHGec0wmoOH9YHDq6eH188Or0cOG0OZxtNs42mO1/qTTH38sDHx+nrysDF50Hx6 2HiU9Z6+aQy9ro//8XrqX6/G/3g1/P2nkTc/jWWupw+uR//1/z77438Mff/T+EFj/PX12B+vRv/1 aur19cj3V7PZ5vDB9Uim+eR1feSA942vD6//9s1PX7+5fnJQHzioPz5ofHVw/fcHn3578NNXB5++ fv3pm9efnrxuDB54wwfN2Zw/mPUHssHfv/n0Ta759wdXjw6uB/74H4Ovr58dNAbeXA0cNB7ZTrhS vvib1z8N/uun4T9eDX5fH/n+evh1/dnr+tAb9lYfeX09cdAcf9McfVMfO2zOZ/25rD920PztQf2r g8Zv39S/OmQ0vjps/lajMZjxvnn90+PD+qM3V085/4M642mGm8BuOXrzmW5IY/B1Y/j7+vAfrwf/ WH/Gm+8bQ4w3jVFudcabcM8l4z894BwaTzPeQMbjVJ+8aTx7c/3sTX3w9dWT15/412cZNvOeHfKw +Hp9+FDnPJrxRjLsxx/JNR/zXHL1gVxjgMeU4aE0Bw51oLHXjdHXPKbGxGFzItOc5qIOvWGeb85z Y7QQjOT9Z5n6YKY+kvNGCI+MP5z1J3L+ZKY5m2ms5JpzufpUts7THM1czWSbizlvll0dNgiDmaw3 RcC84SF6RJcuRIduDnH0vP80Hyxm/QWee6Y5fHg1nalPZhqrGW+BO5APnhb8KQ6d8wcyzaGcx/YD ee9ZvjmV9+Yz3tyb+nIumOfESuFA0R8vRwMFfynnLWW9yaI3WvTGSoxgohwMlYKhcjBcDqeL4T0L 42W+4g9rS3+sGIxyrEIIDoyhbPNZpvEs6zGGst5YPhjKB48yzcf2WLl1XAJ3mLAfzTRhYeSgPnTw aezwehgWso1hRo7zbw5nuWnXo9nGGDgcNBYPvfmDxhTP+vv/HDi4GtFR6s8OroeJrsOG4HrdGBcd n0a/vx7ijsEad4zdvv5p7PV/Dh9cDR5cM568+fT4DZHcIJ5/e3j9dabxm8PGbw7q3xw0HoPbgffb A/70/u77KyKTqB7KNAcy18PcQIuKJ9//9PSAsPzEGMwH4PPNm+tvDup8i2B+BPI5/0mm+ds3Pz1+ fTXwpglKA99/GnxTH3p9RWiNHzYfZT49zjee5JqPDq8HDsgATR7u6AFbEnjNgdc/Pc3UCbNvsldP Co2/yfwEF789rHOqXx1ef5NRBGrw4IxxaAK06QzAgsP10PcctE7MD2c8Yp57O5klhglsbnJjWJ8T gd5TXZRY4Ll8lWs8UmwoVBTwB82pg+b0QXPiTQPWhsgwWW805w3nvaGCTxQ9yzZHcv4YyYFzyDYZ pCw+JP450OhhY/iN7v+YoCDjNccOrnhST3PNUTvEM8WqYgC+hsmfeX88743nocBbyflzBX+m0Bgp 1h+XmpMFfzbXfJbznhaaA2KQ/RMDTZ7I06xHPpklD8BCPhjgGvMBZzVVDIdzzYm8P5kPuQNT+ZDU Cmuj4q45CRS5Jnd+kDMpCJAB9mxjpBQxnhVhIXhS8BlPi0R+tMDnHLQUjeaChXLAt8Yq4dNKNJEP 7lmYLPtTD1gY+SULg8YC8cPljxZCDv0oQ8Ik53tDyjDN8awGj0lPKgsUPLLmGGGfa7rB/RnNKdpH MmJh/KC+IBaaM6/JgT/BAocgeCy8eQUKHlxj7Pv66PcECRmYhFlXiTlkg09Dh1djnFLmevAQFn56 /ObTk4OrexYs2BqPDr0nxO2b5tcHza8Ovb/746ev3tRhgQz85EDbOxaGLHk+Pbh6fHA1lg/J4V8L hHh8c9h8nPEeAZdY4Fh8hfC+ItQ5H8KVN99kPpFUH2c5IiXpeuCwbju0qzj02PMA0ZVtfJ29elxo PMqxT8dC/evD+uOMIGKwDRV2+I1V0tdXvOcOjFgyfwpf3GfijSA8uJpQlHraTDeE+89d5QERwx6D APtNtv416GU4H10guYUSPHPgzR16U2T4Q56UN5xtWrEmMpsqSfZwxWym/ijDiV0NWE0fNRZGD+qA QA6fzfgChHyVbTzLeyN572nO4+ijFgakL0oDSZsQJXrnc/5K1p/nTcEbKzafFgldbyanNP40T/R6 AzlBPWMsAMjMobdodQcW+FMsgEAx5ChA5Fiw17qFZcCx5gvRaDFkjJdCgvaZjeFSOEwAa4SEen/w IVtGnB4nDAuc5FIlnKxE09X22FFrofALFqYpFsbCeDEY67MAL9wl7tgQaSRvyQQY8z4Pl+glvYzq tDW40mkNiOAeXk/wmq1bXeC1Dg6wMNRnYeygPse9JV+p6FM+6qO5+jDpOkP5Jvtdjx3Wx940Rr63 Sn3QHBELhIRYGM58Gsp+YvuhLAmKzz+BEs+O0AKEbzLNrwlgVVtv4KD5+HXjN6+v/v711d/88T++ fkPA14eJGW5+lqdcH3xzraR3iIRA13GSyL+GqwgPWEDtXP+GwvE9EusaEJ788T+JsacaJO1PsPBE LFBErh9Tp1QdJNJU9MnVFu2QwgaP881HRH6m8bWB8I3VC7FAZBJjxNIDFoZNfI4YC0oUnK2xMKac Q/1tDCsXCYR4ZP0Ri6LH1AXBJTTGMv5Uxke2LZEMM/4MI+tPZlEysEN+0xiwKiAWsjofWPjmkNRU H7e6MJlRLUDSwMK0tFlz8pBolCxxLAwpDUqGjRyICErDRE4Cey7rLWV8qsNcvjlW8J4UmhO55jxS Kof+aYISOLB/CB1nV8VgnkStE/PHC+EodSpPEKLVQ0JrqhBM6UPe9FkQbsFSqQUCY8bCMJkfmVT0 h0vBYEFJW3uwYRuH7Ep7K4YThWC10popYgr8mUo4cxQ+K3mJBxppqhLw+WjJHy/5EyX276OgoJvT 4KDjhhjHQpU9tfr7xK4F5TOa9yYKnKQ3VeSVOticzDVGTAsN91kYFgsNpCkguDuMEuAmT5KmyP8k UmquKsKVigJa9/urQYln6dWJNyQiJcxBpSM9spHc1Wju00SeP69GcqBxNZSRNxlQPKtaMSR6VRQa j1+baEcdvbl+dOD+iVGHKVgYMhYo/Sr0PHSxIJQcDojAAQtmIhwZRnkakRqvDyAYSIC28RPl9usn skLXhBAZFRYU/xlB9MRQIlcr80OEjScWfk9siAUwsYQ8bHUBDU+5mc4FhDHWAF2kWmMsPDMLRkqZ sMo7onzOaA7ZbbE7gwkiG3x6lL0eQJFmZdaU2K0cTIkLb9INZIYUvtQvh2YPxIyKPjRJq2tXE9oS dgK+ZV/33EDwTxB1OdUFiCBuJ7GTOm1vkPxzaDon2wScxYzPKzZh3FiYzDUXyJwFUq5vLDSms80V CaGAqFvIA47v4nzMQMO0Tiv8iCt/WgbWmymEI5n6dJ4/Qz5ZLEUzeNtSOFmOYIGAZM8jJcQSOTmY y4czuWAW45APF/LhXC7A8oxz6EJjuticLjbmyt5yNZqvtiar4WbhFyzMHoVYhkmNEBxmS9FUPpgp RJPiLhoqhoOSZBpP+iyMGPLjNiACECa45HxjIl+Hi4m8yqIbs5w/aQrLnPU4pQn0IUnAivh4Tt8a Vp6/lqDiARGl8HLQlHd7QyLyJBUOqR0eYI4UGgP5T+PFxlAOVVN3LAxLO9WfvrnW0Mby9YMo5DeN AfO/gxn5rKcyOMKBvDclJXw1bt5QqS8bMEYkM3yzugIBf/1EWKkK4JFH0duvPw0wxC/pHQ/y6XHm 6tHhJweCjWtRkEVGemD4dUYa/klWKfSJIr9JPjFRFDuFJyZLGCj/QWxX1udCxqSHqVaeTp7qAwsK e+WTMaVi9OHVaP+TceVAf9gEz2C2/jR7NZi9HjQWrKBoCAfsNm4Os4YyyfkzinYch/wyGmlU+pwH 6mOKwZb8PCZz7TkWyFpzWX82q2/NS8BzOU3CdbigxDthLn7EWHhih4MFrPEy22sPig3icyrnLRP5 eoL4XNyKN5P3V3PBJEq+SPT6c/IaGsgSLmdKLKCOiHyfmOegc6WQ7DpTCOaK0bReQz5ZKrcWK60J S+OTpWi63BrDF+TDJRvL9roAGjlF4GQFvVQfKVzPFRsLJW/tKKQEEPxbD/zCtOpCAAsT2mHgWLDD RRMCWUoM0+38yOOC/wjShQOAY5e4k55BQQbgYRG0V+DAm/FcgzIxnWvOIp+44fYgplVDA/LqM923 umV7YhVdgf5vkFVUGvB6Bx5FgTGlPhWfN0yP+SOF+qPcT0MFnjUskM+v4YvdDr+J8zx5FXWBiHVj QCYaMRAMKNI8dX7UhAkQqGNvrmZMADBIIOwEYwULlAbGU+tvDFpyln9505iVUFfeU6DmfBL+IyX5 q28OP0HBPQ6YqYGc/yjr/T0qi0KjGuEN5oIBtdRwdh5iybiwoqBMDgtcXUAg4cseUwRN4YxgFXNq FwgEKW2yN0rDU7VFharUcqsbLtsM5xrPcmzWGClQrNWv4L26FtKx/rhJI8cCdXnWml2T5ghkeHOq COyfCDcwVYLH5Q48bovVhUbMAio9G7OAKkCTS4HwZLP+lHqMCK3miKqMv5AL1nLBkoaP4H9WIO0H OIgp6R8PHMjhRAK7JX4GilxCMJtHwKCRpEYof7PFUBQU/MViwHugkOf9woI/WwiROrOlYKYEULgS b8LKBMJpMR8s54PVYsRYLoiFeVHsz1Tbo2UwbK5U/Nmit1TxCSQqxWbee+gXJiv+WNkbL3mAQCmZ KYYgzOGQbciwQTv50XI4VA6floKBoo9tp1KAgxtDwllESPlnfxqXkmGICHCYMRZGFKWSl6OmMZ5Z fZ/gPhS5sajWa57dmHUJgGU644+/aYxTGtStlcNSWUdqGguDBSVA7hsyQJ5dAqMBRLxSUJA9o4dO iflkWjL8SC4YVA+WYuGIq88bC3PqtOAN6zx0h+oTzHLG+8a6lENqSPr41mF02mupKWftMdoE8N8R 9tLYiCIMslor5PmviSUAyfvsARYgwkqDTkA5M6teByw8zrNN43Heexy7CSjwkUOw8ESmRu1rbhHf GrX6i7AftI4c1ZYxnleSGc5ita71SYEs3Ri2wRvu5NMMZuoKC+BMAfeZuzomByGNigtezAbzGdXo MVnCmIVBszMMdZasayR/8YCFaUFEuScHCsx+XRAL0wpy9qNuJ2l8pRCs5/01HDSZn4RZCAjI1T4L 42ZmKSg8ZdLpN+j8vDLkuKyBQh0WFkrRbDFYLoVr5Wi+FE4XxQKXPF1QgeBP6gKRM9EfY8LBHy0G Rpk3nw9WitFKqbVUjOY5ekF/WgeVk/EWKnjh5upRhDueLoebuV+yUPbGSk3HgvkFXQInNmZQw8JQ 0QeEYcOBVwz7UCEYstJg1UGlTXejQEb6RGyP5+sTavlSFHxOjFo5aizwREbU1gtII3xxqNhE9ozk ie36kOWxET01PYIxdbnrauUBghpTKp2DhYbKXBE9cE2ZwG5MqNEHApjupnuC8qGHTeFASB82lGkR SK+v1PFQMvTZ4TykwAJK2FjgoY9aziSGv7Zk/kT9GfXhR9Th9EZf16n4ozLaDRNCWPU6xRGzgD5H ApEZ5KSyziB4v800fwM1OYmlxzKVsADOyMsG9tYNtjcWKByc5BUDBFBfkoIGAt8iiobNCGBJhtRk aEwViTc0PxF+NUJCyDcox6PCQRVhvKA/x3hjHRgyLc8F/TOcVVPa+bVZEzBk6TmxprpAEDq/OYpL tdmlId3PhvMIk5nmYs5fIjfm/FmSj5kFhPGwPfGJrFpJ1AV1UUzbz5UCsvFq3kcULeYkb9gSFqgU UznNXk0UwxFjgepMIn1clE7g9CbUhiJj41Wb2AEqwlopXC9HC2TmgsfnI8YCb8BkXrDAncegOsyX EUjRRFlWGuHNacwXw8Vya76IrdD2q+XW9FF7vtpBR2EWhg+vFgl7jlj0Ew9YmCsT/EovUyWfijNt hWYEJ0L8FzSwz1PsqtKarEQTlZAxC60qVRSvgAoynQ/tvbFQrJO3hwqaVlBZz5vqy6mlNmsFXbkO TRj3wRqDGOFCc0h2Q8WFZ0qO4v4jYGYtd81IZ4ZkyyGeqfYvJaCKk6nPHNbnDhvzYkFNzqlsMCw1 5T+1gPzGpJfgsi7cOBiS9A7rU9wr4v+A6tCYP3TdEikl0ubf5Ly/zTX/Pmc9H3VXcNYeYn7k++tR KzqascJlkNO4jUR4pv63r/+vpE4Wl3GtwM55j7LNrzSHRajjDhz4aombH0E4fVJbCctfoHwIq68O rxwLj80pc1AcxyCXXAi/yvq/RXvkA65lqhSxsTonNi8waPJyVAEcjVive0C6qA4Io/0aIRAKyoRI kTElbaJReYYbCw7zsGYBTHziPiZsA16pj1NY+MPGAhY4J4ExZxqDMaUOv8S89Ux8Et1UtsHDEgua gFPJmC4pUBeUt0OSJKXwa9IsaqcQQsEwIpxsXAw5+tKhh00g8cLaGmxinNW9JHQjNImCudQi8nHN Y2oOSEsvqCiEnDAyfr3gbxT8NeJcYR/NlkPndgn+aeETLJRbK0dtSgYxuXDUcoBQcUatiCyXW0ua 1Gsm8/5DFmZK0iqwwIVQNSY0IuLfNaxAA7cOCONwV8ZZyPKwZ0AYM83DmxmdoVgYLjbVnjX7QE7Q vQWHHO5JbnpcD8WxQFHw/zcWqCPqu0qIktDkmketvTDSZ4HHzVOYyzYWM80la/dpsi+LDalbt7wh G5jVLOpwRkV8RIOormO0AVMTHIeaA2WQ8HnWU6aov8p5v8l7X+Wbj/LNp3giNVvUZXr2/dWYtZI0 QfymTracM81AIfjqzX+i/L851DT3Y6sLj1UgPHMNapnGRZD9iIXrR5lPT2RyuWpMR30gV+dVc742 RA3lA5yRkfnAsTBgLBBayDDl1YJahVzmoGmnQVlRKkiIJ0U6jlilGFdbT9NVE1Iy6s9MFsJpdVfE wnTGm8+SnQKzIWraUHnJZo4FbsXsoTd72FzMktul+R0IROxsVh0hbVMMFpS6w/m8urXT9ywUPHIp qsaxMGIsfONYgMRiMIa8V/kIV6gUGWS/ihd7ThXCRfkC4kosKMGqWdQit+vEbDzL1KeNo7lya6HS Xi8GG0V/RSNYpnxUWlPliCDnqqdL0Zjteb4SzVbCMbmAwO1zrhSBDEVkpdJGRKVKrWQpfMgCY74c ztsO50SBQJiSK+cm+5p3QDuVNUbLvkbRdYpcgJn3MRJHNbfiWW+WU9LJuDI9btXBcTEhZDAgHnVn +H9hYTanYJvps2AdP++eBYFmAmyOqKZ8W8dsDPdB/GQajgUZVbUr1edX65v9UPozRN31VI4HXV8k 6bF/ddFx9P6Mqpu6ZI+R9AWMiYiW/HYm9Pv6OIJNsu164o0msKYP5VPA7WshIBZ+c0CQS3IP5DTt pTlraxYRipbWPJ1eFsF2ZYtSxMKTXONJvkk+f3KoUx2wmQJsxWPDgdevcRyUiRwVpE51JvInCq7f otkoN01gsz9YtmBQraSYhQll+7grPqZ2pVqp07KoqrPc3nn7c8imfmwzjCos8CGY+IsZfyHjUztW zYdykxcEgjeZbaBARnB2eekQE8ASQsgt9o/8JlSmlZnJwIo6whi/+QjtnafEmC+2dT5kTr61Qror BDOEZSHcoBBwGjnfsnc0bXG7RGKvtB2knB7AzpngAUOy+lrJXyW9M0rBSjlaVOiGcg15j4owU2kT tICwdBQtVlvLtc6y6SWCfKYSLRxFy5XWSilK2iEesjBb8pF5C2U2aC8fdeYqyKo2tQAWnFgaKfkO BNzHUNmDhUkXvTlrMjuNZP5izCavOY0pylkp1AKnohJC3CWAazP+rk7BgtP/9yyMWczPiAX1h6fj trNvDW3wIUQxSlJ0ko7Wi5s30MbsmaoDT1TYbOzAIRpbPRmtK7B/Hdf0t5q3U4f1BW4sDzeDg2iI hYLyxrDELa6wOV7EOqEfEBv1oTyCqjln6wSm3zQm3zTcwgYGwQ8FxPxTZ2+pCAYgJGqJgsXqmC1L IHimJN3Z7Nq9YvQGAL9AqDeoX09tfn+oz4INzLWmaBFaIIY6GlIL2q1z0I2SyLcaARdPVUpwDdej hZgF0zy6M5OaBfC4xrl8PJydnJEZ0cKAabv2eRKyGuAK2uWMv5Txcbvr+SCRD9fz6P9QroF8Tk4u R0Qdr2Ty9VKUKEYLOWUS68Dz3LWwbY6IJW4V/N5gyZvJa1UGf06pSxkylhwLsFMOlwrBqsqWe4j+ otZLtBhEKTFPmZg0FojktUp7iT0XfGsTecslgbBYkkaaN5mERkKcLyirt6fLAee5VInAYbXWWi1F rhPLEcXCESyEG2x51LpnYUEL88DZn3UXWGkv4DIqndlKBxygwA1AGGFUGB5em+0nirJdk5xqIZqw qT1NnUCEWJDQmozllg1rAgMIpzejN0og46Kgzu0afsACY1pZSCzMmh8hjJ3utaJjUVqksnszJlnn 7KFbg5E61eD9EL4g6xZ6BdIqmTo5c8paxGRmOdBsY4YtM/WRw+vxTGPGstCoVJzKzUyhOVtszko3 osfqg/n6vGm2GVPas0iCQy0bWDiIFyzJmxOrKJBipJKkHikRK5U7Zg15NPyYTbsAxbAZW2PBH8g3 xEIWXccT1AwpOxnJhwM4EccCVUNGgAM1qAs2lUPCj6f748kp++5ITh7ZvHPDpntM/GsiWDfTzSlI 9nO70AkFBSqvbpHMjGV4AvtXLKDhN/IBGTtRCJPFaK0QkMDXyi2JcwkhtWjQ6mtAlPW47RiBCYs0 Ujd7A7c5yQBvpOQRvexquRguW18I2Z8ohgk5ZaLCmyt465JVwaRljAVtEC2Vo9VKGy7kfwucrQpH stJahiNYKHgLxcZyyVsuh8vkebK9+quijGiZldBCq/jUizW+UvFXKt4KRxcLBKc3XwnXq+2VSrRO NB5F9yywq8WKQnQ2HhE2eabcZiCWxstOHYmF8UowfaQxd4RzR7lphnq21LIwk2FxvoanZpPjmqrg 6xOVeKDZJvnWPXoql4il+lhJZcLVDlc+9PiMBVOwHAi+KApqdlEURqyHNq4n7uYl5f5GNM0nFmaQ EDjNrOwGEaJJczQJcYJ4psApLGGhDgvTOU2Uj1mX3iatUA5NjXxjrkA5Bk/1AQYLMoxjRHuGL3pS bkbEitrj4ZCt63hycIUvwJopINUZlm6kDDFmULCyTvWZomQ8Tmei6D3LXU9qBrYxbCywB1sjF7hW 6qAWnvkqB/nmYIGEj/1pyMoV3T1nh74Qy8k+D5mDHs+bNTAWpoqeEmDB3IHmNz0T/N6stS/mCmgA RTLbjNkZzooFQiu4Z2HFGk3ruWAjj3oJ1gsiAhbQ/HN2DlOut8/eTG5NxSz4BMx8pbVUaa2V2yvW 3p8rag53mTDOhyvQRCQrjYfsc53qX/YJp6WSv1YOVwnpEsrKn9crQshqUEk+mmtB20NWokwZCpJy CtSUxrxYABmVqmljAWEG8hyXyF8vhqlylKpE6Uq4c9RKlJBViKuIXDpbCdaqnGewXgmnj774hUU5 BY5OVAf3LGAWJs04TB9FhPFYJQCEmWo4a8NYwHET0kqGsEB1AIqZkk1VaymUqsMoyopyYHZ76ihk TJSpCB5fBAdiw8RSg3rhWJjsLxqHAliYcSo0bytDSqoIoyW8eR3LMBQrJUuARU0RjqrTrupAihs/ rE9nGnOaO/ZgYagYan4ESWb6h6NQF3jo89YDtLzdtKUvKOTmUrYxn20s5Bsziiux8FRKCVdbt5pC kPvjtswSYaAOlVYwerAwnG3OkNWzzYV8OK73eBBem0uETYF0V2eHNi8fszClqtpUdcjVnx7WtQDS FgMP5XxYGLSlXzp0kT8pcLDgW2tdi17InwYa3EGEJo4pKNY1alpdcOEdOGuwoD6/1i3PAKZY8NST ROdQu9XcQLSTfJrzRsRc3sMjJGyyzLGQyGuygNAlkxNgS2Rs0rUF/DKhRYnRw+JmSg9PS5C0147a iUo7IVvaIvYQ7YRlOi+akDQaRH5Bzczlo3CxFq0dkb2jlSNqAR6B2gGqAYPSABGTNmGNtl8EyXKE X04W/HTRXyiihfylSrhy1OKgCyaTYAGbA3eY8WQ+SBeC7WK4W45e1dqbpYjqs37UmuegR3wrWKr4 iWp7qvKljzSDyy41J0velMmkuUo0d9SeMVc+bTYccCYqPl+ZPQrnquF0NeT9NCyUnfgn30ZTAqGF f7e5v9B8cTAc6yveiKaJSmi2WvpqxliYUJJvSD4VPduVMrwKgXUzpqzEk64nrMRMlDEvYmG4aA4a iDTbqNI8afqBqkRsqPQfNqY09aClCJoSKkWjrtNu01KTJZPNshtaCYDQmjYMIWsOCrJ1x8KUsfBM ODQdC+rwZ7UQ4llGC0Vmcs6WUgWazw6ubEVxgIVHfnDaMzIyHoOHvkT8F9BIUkrjwgHHWp+wk8dv svMR5VXrZ1qrVpMLwkHrdkZVPjR9oAkmCjos4D6ydddFn7Xu0JhpJOzDuMqlWwwjiT5tuohwJQiJ 8Hl9IjypyDYCLaosWGPTWEBBLeR9N1MGPqvgILMQrBkLK8rPvtqSOFMrUvMmhBbMki+aPiF4VBQq rfVyCyuxYamYcF0rhslCiKBaEQs+0Z7AtyJaKuFiFRbCjWp7lfclDxxWj/QV8vOCZelJ60bCHV/Z hLKinyh4SXRUWeKELVeP2uvVDoJqSXUkTOXhTjgvZeobueZmPtgqhttYg1KwWgqAbhV1VMUXB+CQ PulOPmCBXD1m+meyEs4eqRDMVdu8zlhFmLLlfOPmEQBq5iiYPPImKh7fuhc/45Vw8qg1cwRi0WjJ Y29IxBEt29AYLYVDNpswUrKpkJI1bEsIvHBUHRv8gso6gFAmJiSGbYpfflNouBbZVGzApYvGpawa cCFxJUcTjeUo97JX41rQGKCUTPZIZsOCzSVJiCJXZvJUhAbBOV8gmOuMiVx90nI1Y6xwzSC1WodZ ycHJthlrrc9rmrXBIZ4eflIrshgtZX1N4B7Uxw/0SyXNFVqLTEsgeHyZBkojYWO6GE3HgrAxmbkm wQ6RfyptBX8hoIotaQHDp0UyHhtTJvLqNQ1ltIjCJqF0dU7YoEZ0mXlbh2DNHzdk/1VVfVcfJzW5 A9FEO3HuI5WxqFOSSU3E/FJRadaKoyLZVUms8ZL2Gc93TyuNayXDqjSSMrPJ4EjVXx11tZ5kbCUD KPdaDoHeRoQTb2ietWKwVoxQSktFTRZozovzN7tBwl+UOQ0WLZgJy9WjIIlSKjYXS82FI3/xOJw7 DqdrSBEkBNsLrkQpTFaipJGCHbaGDwwGiUorddTeLLfI/OlSuFmSrpO0gzXVoAhY1qod9NhCJUCJ rcPOUQviEpVogzeVL34BAT+pn/P8moXZ6hcWXF1YqEbzMgv+TEUN2/+BhaPIerkyC6MxCAikEAoU saVoohwPWOAax9QXqo8XEQBiwSSx9LA9UGX7GW3WcgN2Jmzh04ganmJhXL9RCkeNhVG140K3oNG1 I9jP01zzVywgV/ACS8QDKihXn37Agv2sT7JtKj4Z/wsLch8eiREnonWe2bqbzZnL+gv9MaeglZ55 SgSqLRCuZ32URsLExowkOh82xlC5OXSUP1RujpZVBCHIsTCc/QSqKdRXVtppkIRgndhxWQkvngtD EdkCYFcXZizG5ghsk9YTdusm5bmUCmBB65MRGzKzar9QLHhDVC9ZiPIeBOZs8Gah31+yKQnupCzw ik0ir+U9GU+L5wWkuy0WxdUu2gMas0zFDYcFBNJ6pbWK1ClQYiSrVtQU4lFqzFkbakHC3ncDsb1Y CZaNhY2St1r2Fo/8hVowf9KaP0aQSxkulwCBKvOFheVqa86U9nzJXy9HeOq0gWAsqOKkihSCyCQZ haO1Vm3PlnHQKjqGAxTIOMMCX79nYZ74r9g6VS1Y/cLCfLU1rYV8VhfKHixQF+aMhdkjMfLAFLNN axb0jlpT8tdk/sCaSPLdjgVFrHWWbPIimim35sutKZNMUk1l5BkjsGHzhgLBMolRM2NjUhq7MYLY KDYNBM9+uxE+ZMEm8bVehQh5ZuuEx81pqi+NzFCS1M8PGfMQoXaEGoBa36U+j8S2ipQtRJkqxrMk 81lNTq3lg6lMXf6RsHErxGyFCSJhRa/+pJa115/k61OaXQ1TRoEN9aWntPiqMVaor2uJMkUhGJSD oIo1Z+RTxMJk9mrjUIuZkZqUGFubqikAtyR12gJ1ynqPE5I3gfuEmCRaqBojuj/qNU2roae+N1pU qlvXruE6SKJAcRLp2s0vGwtwESyaUZ3s71ndy4I00kpOvSB3W+Y0F+abDrTtVRrEAtmGY21UWhvG gu5twUMUrVrwu6eJvlLfvtJaVLNIdWEFN0FkVlvpcpAq+2uVYMlYWD5pLR23FXIEswRSmCoF6Uor KT8SrVfbEEFxwV9Qg5J4ZAPBsWBcwE6kVRylMIFxrmIo5A7W5Ep8QEgCSDnYkM3/0lNdArGj6J4F Ih8KeF2wV8W2VrH+ggUTS19YmNKfLQiaP2pp1etROFmxYSBMiAXViDGT/W7Wbw7vX2nNUYkq8dLZ GXWDpQAZbimIjciNSRvqXZfipVPUMlgYwocW1UV5yMKU2h3RrP0wyi2Jn1D7zoIh31wu6Le3CwzT 8zziuaJrHYQT5m2nChLnM1+aNpqVW8g019TdaqwjJCSqQ6Jo2ubf50xmz+soanZxSpJ5OS+ZVYt+ VdXBwyCPFOoTGtfJYkRpmK5GQzLUAUabQrCsucKr6exV8rChOlLUIklzx2aTLfJnbQmBwS6N5Fjo f06eFAvP5Im8GW670JMvW5TLsPkv+64rJbxfESPg3HRKacFYAJMFrRHVomjnICSQ8vK5i05kigUT Zmq4SVbNq0T6jgUinMgn0xK6sIApcypFwS9vq4e+2JdJuAbOIaFUj8hpbZZDsVD2qRHLtWj1uLVc a2Fytc8iljlIF4NN8r8UjlhY0XxZKDMiFvhuDMIWw/QSIyU2JYQgaLkSpGqdDb5SbG4YUxvQx5sH LKxUW4gfQh0vMF9FGoV6lcFvzfZZQCPx6liYrwZLtdaCKgjSSM56zkDQUInxY4KMiHGDYtTs8+gD FuYrreWjNhguVsOFo5iIexym47IS3muqMZNYNnOnhtJUmcLE3rSWY9hE7KTpZzIzj0br4U33Ohbc oq9F0wmLMrMegTevho+3yNO0JLlgeXXS/TRJNjxmYcocCiJh9rC+nAWKBsV3JdtcF03NMasaUzbH MesmtqwPMJ7TLNtG1l881HqPVbFwTeSPF66nC9cprcZpcuueFhrL1Jecv5T1ljMUrMZcvp7ONDe0 gA1bhAAg65KffRtK1HOS6KH9ljBmwTkF2NcKT2NBP4S3fvusTeXgQF0j1E3a2qtYWC2rV7+giuCZ gnJ1QY54rhBPECznfU5msxilqA4iTusrFktfFn8SpfNa6eEbZbrDy7ambkObebMlb0HtoHCF9HvU 4YkrAUogBXy+YkvvxEKFoA03NfxE2Vs7CtaOo5VaCyG0Wm0tsVmfhW1jIak6cs8CdSeABTDZOmpv H7UBQSxoRJvqqQq0tFpbYbraTlCJil7K9pOqhHrzgIW1arQiI0AhiKgF9yws1QhvBfyMAl6/95Ff qKoJtlxrOxYMBKmp+VrHWAgdC9NiQW0opBRCa+zXLGg9CXdm8UgGxI0ZeRO9IpNIazMVrTyc+rIg pM3QnEJRLS9NUhg+6k1VWvOWpRfVUZes1cKAgl7dcoUJTdj5covGAp5uOdcknq3BgsWjkrZcvpUZ tGBzoaVfThkLJMaFTH0Vy5BtpNHP2UYiR5loDpVUCKakuiWczHFo5n264DkW5g4bs4eNtUKg33ZR eQvXU8XrJFGUV3thuNhc1llFq5reaiwVYbOxnVX4jVvvF7G9aLG6YGLeRaDL27b8MnQsOC6mbAnE kPWNp8qkF25yOGvdmEXNQOm3h+i6eTdLq7qAPIhWJJZCTWDpWIaDfES4bLMDnDkUkGm3rSm0oPUV /rxZjwU502jJelkTNmfhKu+SsZBS2g/mKwF21dyxDOyyNWMXhIlVBAvUdKWN8iFotxW6ASysw0Kt tVprA0KiqvniRDFKF8NNY4FoJ7Y3jmAB/ysLvG40ORa2+ixs2z43K9HWEZ/rWxCUokaUg/VSgNfe qnb4ir5VechCuFJVnFMIiH8LeKqDJX+CXFVDhWOxGvGJQDhurxx35g2EaRNUC7VOzEIVcHx7xfWw E8iKzERgw80y29pa4tzqAhoJG96cOfKmj7wZWXLhoEHaN3PRH9Gk5jta4/o9aRNzAWuwIB4rrfFy a9bWDyyoo958yIJbHDItDSzDuMqTKvi4sJRr6JH3UAX9pz+vX/O5hozKikYxnr5Mavm9t5ELlmEh j/5vpkmYsFD2Rsqy/Mq3D1iYLQSD2TpbzmuFm5csRc/Iz9XWVKG+UGI/HhLiabE+XlIeRq/qly+H 9cWCHP1O1k9rAV5TQVv05pzZt8X8soElraJRH8CEuvEbuGG/EcOYqAU9ZcsMbI0ZdlXzVtM2KzGR b87Yep4F8wsS84Sl3kSrUtetZfPUHEUpohAmVRRCWNixpTvYcC2fNjZlq21+Yd5WR8xpglgzy6tF 9UsJcowqLhiRs2xuFzBNF2lR3GqlvWa2ItmPRgvgaEuJGvsQJmqtjeP2Rq2TrKo3y/OiNqk12mch pT5qG/2/jvkVC+EXFkwjaUs3VCxau9WOCop6uRSRQBWk2nHbbz/oI61WceWwoITvon1BARws6A0a piUlI0yk35Zq0cqx3ptxCPHdi7X2olgABJQSZYKHDiAqLg4lMxGRjdCViRmzCRSFWbWnmlNHzZiF fnXAdE/YAr/JGIpYKU3axMSsgWBH1w4pN1pXIPHvOxYWFeG8Km1awyeeuOQRUxpWzU+ta+YoUowV tcB4wZKbfnOKkrf/lYHMRVFrXSjxtixHK4SXso1k3k/lFa6wMCrPIqlsCxtMTms+XROyY9nGVs5f yahLny5HowRkrT1bbC5V/OV8c02LHuskbU5Ac6l5H8pW87jmRgoBZqJInrfQZCC8V80/WrhGy5q/ aDoduKBODj5Uq3dmS/GUovtxIjd5smRFVv0WzeTOyf7gO7T2TMveNHulnuSiJerlcmuVBFVGkwgN SpImBawhQ05GiuNPtQTOAt7YaSXKQsZ+LyPXsGD/tG4+VxsbC0ua1bqfL7AOp3nnVXkK2VvFecna oQj+Skj2ThyF62KhmzjuYHvXDcNUqZUutXaOWjvk82obtbOuqiEi1vlWJVRgV4ntFvBuPsBh56i9 e9Ter3VUTSrcRm9TZaK1U+uyH42HazAU7aT9QEM4tBfFgvqrDgQ2WKm10W8rgFALV2rBQhXJJOSX DB8jSEMUiIVg6RiIVEpMbkVaehHP2QXTfbPMIWDQ9ubPHnnscM5qCiVJDsX6S2yzKGuPRgqMCz1i h5LynljASjfUNiy5nmFzST+G0v/og2c0GasyrdFarEQLFc3UT5GiFQDqb1BlFu3DOa1O1+oO8uqs zZIsHLXGS/4cJewIgjCJJG2Gt1zwN9wygILW0hD/hl6wXnDTsuht6X/+3M36qay/VSCWoL7FgVaL qHe1zhDSG2qMRGtaABaulbxUyX+eD7Y151WfLXqKMS0/aCygo5DWav5Iii9rIYTPWCi4dla4YqG1 pP23pm1af6LkVm1pvn7CpvL1axeLdvOwRD7FSA53yRYbqD0eWz8t75wxrzGvbqqWXqxr0ZFur8n+ yFljE1ct5xccCyarJLRstV7ALVrVM9JY1kI4zHJoc8qReQfUu0yrZtzM5BLA65plC9Y179ZKHndg YY3AO9J89Do+t9pJ1jrp487mcXfrhNeWWDjuCplqK1Vt9QO7lXK1TCzIPuxWBcKLk27qKEgTxuXm 1kk3eRRsQod9ka8/ZAEDuyTxE+uf1eP2qoJf03O/YmFVpkbUELdLFBRYoEz0x4I+98DBykeHsVTr wIIaTSaWYn9xhExSTXH7XNAaJ8kkdaigqRaZ7wiMF/EoHDQDHs1oiUhwz8KCfr7tT5SbswpvlWBl cp54ua1OI1rCCJqUcBULjDnLkyt6IuSfNl9cOWrPa9JHP/EYtwXni0ftiTKvLYW6YSshUYSC5lLB Wyn4qT4LWglZUohKGCgYkB/6sdVyzkdgSO08YIEjspO5sjdaak6XmlKtWh4TIqpXi81E0dvPB7sE XtlXn1DZnnjz3VLMJYizhfoahdD17RdtRcSKzbdqvb1GAFkLpotcd3pes1pq2pjnjVWKaS0OoVlg 7oBrdEjQan1CG/mqdXfGgpZeFKT/V7QEzg3hoIpgY12arTXnmrSGQ6LU2rBqsqbSH/Bwl5xM6rOw 7FggvE21Ak7a0niiEqwZCwmsca3j6sI6rkEsqARsxCwIBMcC/5qoqa2kNpRjoapJty0njaqd7aoT SO09vlWLgChZDbdPe+lqxH7SVl+w4V9YqFkzR8kcU8xoaYHrsQV/DIL+XD1u2YhWVRp0mbax8Lkf i6oLfRZOOqun3dWTLiIKCuar7XnL8Aviqw0IC1pVzv6jJbtj89ahWnRw4UGO4oC3XlM8XJ2diz93 dcd6vOqia3HXot3tJf0/cKSKZ82bzFhFWNRSGSXnebcN0lGLWIK1amdJczEdQwwhR2VvTWgpY6Ql lBJ1wUYlWtdPF8XCqhbDSDPgcIWYMqTiSosNNPfqTSCElEuj7ZyPTNoyjQELq7YTLNJ4WZZno0zp 1wnDwnKxsVpo7Oa8PQKvIrcrAYOcKAcrDOHmrxa9VUGnfg4RuG6Sb03CRgubnTVw92fxlyyo+WNi T+XDasGqNXA4gXXlEK4xkEmsteZdfT8SC2T7ddNISZOUgAwIKxXd5HWT+oxEuc1Ytt8mL/YlnPSM uv1RQiuFNIm2pFdB5AZKLKFFGmwcuISQlgRit3IKbiCNNiz4qQVryKQ+CxSFexaoHcmTXpLSUGun iOpaZ6vW2a6ZC6h2dgRCx1RThAriNV0NN4/bRgQ7afPqBnv44hfUyMUshMvK+YR6hItPHENcRJFa rXUoCg4NtlzTcL1fbYx3IOYdCLxZOUEvhTb4J30CC/yT3LdcuZquKjSSYWZDLLfzKp1mWsvVFzFi VC5X42FbKu8tKFY1BS8WagxRPG/5kPxjbxTzs5rHoZq0NGPSZ0FL1o/avPJElsqBzb8E5JZlN3cD 9dYK41hjpeacZs89AoNTTVBEJFS8laKfEAiRm9xcsOmeRU33ONkQTmkBYdP6JK0tbEXe38bxQY16 6fDiz1IXyo3JclM2wdYhTJa9pWJjpVCHhR0EfNkDKDU5y/FatVV9UV3KhNZeSn5slCQwNsoWkKo4 BHm8PsdN5t7PWiIObVVqEBeFfkWQOBGMnBUVMFiyFORcIXdvyQKbvL2pwG4ldN+4e+GaRj9Lk9iF QytmQXdAKyWww8Kcryu2lerXtMRCEK04FqSyBKPmi9m/OWiu65csaPYNHFLVDupIZQJJI3XUMxba W8ft9Ek3fdJLoaZqrZRl+HgcqToYF11e06oaWPIgLV3U2hIFbXvtbJ90GalfsrB60l45ba8xTtqJ k/bGaTcFL1aAVo87K04v1aCgvX7CaDl8+iy078cq/9QfK/1iYW5C/vqeBfa2VHXJP5ozE+2UmCFg TMXGRCXJVR/N7lmDzubrMRp8aNAdhwvHsS5VY1YT+pHJnlA9W1Uiuewlk6xuLl6AE+Flf11lApvW XrCpeXcO7pdQ48SzbI7vMNTqGmMBwe8ihAERqlBlWY8VwwGHSMKfKCOElIS3ihKujoU5YyGhwEOT YEl8zQHJxSD5/KVifb3Y3CsGO8iesjfJ0WHBUrFlYzXh1Scv91calMVC0qIoYZl21a3zRHnKKXtz 1kq1pZt6tXVrv6oI4YZ68i57h1bf7THZ9a5oA+JZ1KeO2slqe1WN9zBRjdThqamBkzDNv26Get5A 4w37V3fISl7yKExWA5R50pSPGj5H7RX7AYIWPxjIG7Z8Ir4Qgr/WSrJ//IIp+VTMgh2u2k7GdYHc 3mKgl9KK5E6K97U+CLVOrJSsTPCaZj/CIdo6BoTWtkDgtXM/iPOHLJDPl4neE9mBBNXnBAa5A1x4 e+24a95BgXrPAtUBpWQFIroPflASGscCBLhWTzuuZJithogvLFBrlp0rtxAlUS/1TfpyLM8kwwSp QNCTWrBpPoKWMk12Wqk6WMLlk2j5FLkVuA0IxXk7xLx46fBYHQsCoQoIUphyZIphn+K7eORY8DXJ YmVoRmsARMGKey/vL5XiCrp1SDQ7o75HMeLrnJKbTiIg3aylOyIFZavob5bCnVK0XdTy4w0tBgu5 bws1sWwBoGSL+Voq1RMVb7/S2qtQi9WWJ6iWjpDK5jL6LKgfHs8icQ76ZMN+jbKuVUAtaYkqPlqX 5s7H5FNkc8Em7x0L1uRBxrCHLePCLRZd0jOSdgUootRWmYoFtSIVBty9cL0aOhYcDmvWDkL8L5l5 d3VHK+VsJgtNjixBnwsKDeX5tUp7rQ+j8ahJ56TIEgLsVsrnuJuWse2AoebIYo2kDQAkLRAiG224 EAV600nXuimDZeu4J2T6dGwaEea4+SJmQcZh96y3c9rZOe0y0tVfs0CCXaphAYJ1KbG2WKtiYcQC adyJFrb87yxY/H9hwXZicquPgxpTus/dRbMMZP57FpZMtJCrl/smfSmOSUAIORA+fbnKCF11EAj6 RZL9ZE+HhoVw6RTXEBt5J5+0cIuMWrPVLP8LC4vGAhtvYPCP/ISRvqypdsX/pP0/BqfJ2MbCkigI kppC4kG3XXLGHuqEtStj4cjq3XFr/jiy2fnWVskn2HbLLXAgBtQSr9hJ1uR01ipSEVpjUKVkNFIV f68cMYg3knBCWk53ZkXlTKsIZA8r8dICLUUwFlBZq/ohDNcSOY+5GlcTEYROc+Vg3dJ1ohyvz0m5 SS72U9ACtiVZsICnwzOa0axEYCIndAWIUEnJw3ID8VbB+oPSYIdr2SSaSq2WalciAltrKoRDuFkN iSKXll2SXxcLOpN1k2obQiY2BeiodQu5lLGQNhA2tc++X7hn4TjGIc2o2jA8DaWu8xRpBXDLsbBl gGyf8HVv+5Qj+nvnNztnXY1TbXDPQuKks37aNlWjaE+cdlKnPTRSCrF03FmTRhIIBJs2OJGOEj6G ht7IVrf7nxOxhC7eOdDG0l3YZ6qDxqIsg36Fje5advFvHTM9cf4VW6GurGY3UP4k6vWachFVYFVo tLR/PZHIioLreoUrsHDSmqv6RNSqZsMtPk16LZsBN+0UswAItk8lmbUjI72qOR1OWJ/bRYkmrUjx eHV1ga9risHKerLS1jCljSTmTKTZTMkoJ4uFNg6UQoPCSWMMy/pF1TapUl3xFqVBaeSUO6AkmbCz 4qLWS16q7O+Uwm2qzxFGppW0ZLgmfiOUSdL1DLUyGYUWplUmNBJ4/5KP9JI4r2jVZcLmYVfU/9SP YpatpaC1NxV51TWnYY4kTlKlcLPoWAitHUE66sybKUuYZVaX3nwoLHCSK9VgterHOHAP1cBpWQwL W/sRgTqf5OcN6+QbCwrUpC2EI2mnat3EUWfVlBXlI6G54I6Kgj2OxSNvhaQEOzWrC/pXlc51W2Wt vpNocuHdNhBMKQkN1YVUzWA57ppkMonldJTQ6NlA6vibJ7wGVhfau5SG49buyRe/kFLwE/ZSR3Bh fqG3cdZbtZhfM/0jlWKNpiU+POstn3aXMMUnahOtnd4kGCe9RK2TYCenQeIkWD8hq0cgBlmMNQqE jIOiZUVc6P0KFaeqbENVWjhtT5+1Z07bc8ftuRrapuUqqVuLRUrk3Njbwmlr7iSatcXtiyecDNVH CC9ockQVB0+q/++BBb/snlUZ4pkBsJq7qUn4If82bCRrUfI4ogCtn5IEVIZMm1l/rGqO3lpeFLI1 hs3s6DKdfK12NJ1U9hLWBk8cd5eErUhci5Nea6Xkp5UnCYnORiWwmxxuYMpq+hVJohpsyJgTdbER sJwfbVVcwIcbbFwLNCzB8oi3TA/LD9oUbUprD6LNeDFPtGVzuHyyUYKOYL3sJzjoUcgXNxDtFd91 78WL60NWYKQte1VBKCqe5QL027HQOpNt7U0aqbumFRGhgeCGMpW1NDuq8jVqqzrwG8fdJNdVI8+E ktncarMAKJ+U9XwoAQndyc6KeTfrFLXMTSBNjYXjKIVdPb1RpnJu3VoH4BMvnKg6a9xOW8yjwXDB lIAtswbbHAKnbLorqRJjnoJx2rUnDiydTbPMu6fdF2e9F6ca9yykz+5ZiBKxdxYLa+amV51TPqay axntMjntrLdyKhBWBAKjt37aS5zYLKHKSmgghBZg8hcJKxlqKz3oLDl1KhaQ/cbCHENL1tVxwkFY EztK28IqrcUieZ60l0/bi6dsHKGLlo0FJ+0WbMUIJWzOWiL2Cz41wYyFeKwLc9V6PSl0r6Ii/BUL CDPG2rFmAFXgav0VYuRAvJKVlcSx1WIeIkXTHtaGIiHk8rV+xuRfUjlNjT6tB2NLCzyCM8n9UWyT V4P0KbHRkhSvBMSkrQcg8BjqAW6rYY5xI4oUVzELGlb6tdjMhIdVhz4LWoeQNkA2ykHsGaUreEVl BQkMu5WYDae9pUDEAggQycvqKljuRZyU3aIIrYugBrHxmu6Anc8JlZSraLkKu6birjasi+2kizrJ bG7sr1kQDjELWk2kfHIs86ug1b0NErUwedJGlujm1DqulbRSjhNLWj1SdYe2NWXc6vuFllqjNTWO 9CoWIieNVImO3WinTjqOBVdEHAvPz3rPT3v7D1hInXVTZz1doKJCmRwQEme99bPuOpEvQ63cKxeg aBQLGoifU8cCm3UJMwRV4oSIilQRTizATvp9p35AmvvurkFE3JuKWbAgby8KBBltMtWqCUVbbdvS VRDAUmIgENqI5PT7tn1BZoHDdWW9cSiocSWutmv5SlCR05zZEQutuIwyeF56xODPhYNtmBDFweqx b0M1wklBe77KGBt6yi0EZFI6h8qiurxyFGxYKkie9FaVsoj/lqsI6tpVXaOD6s/2IoLwTqtTp4BB Fbge4FbcA+HPaLum1p9jQZs5CqQNXNsw7o2kNeJ1ONvqJSIqAv3aXW2TrgsJEwyRM7Can611vvQe jVmtfyZRI+atn582Fmzxc7jlyhOCDctgEWJ3oGUXq7Fe1UjUXNvTpQiuSEmmXxdsKCDVyWc8ZEHW 4KS3edLbUtWweysWXBuzYxags6bWgdJLypqlZP5tvqKodvNuHVjgQ3cDt2ytRdr55RgHjqIHna5+ EVQ7YqGHUtJ4wELy/CZ1fptSYm8reRLYlurXjIg1CzknRRC6sLB2fnOPw5rpHwmhk07S9BXZ1Shw Q0XBLPBDFjoErRHRVb2wnUuPAdqxW/VEOW5bVyTuHiRd9B63lbGPcSKh61+tOdxOseewEK5bA4oz X9WWOtBaLM+QOloG7M6KU93sz7NsnnbTpx0qY/qsnTxrb5yFDGTe+om/fsyIld668mFbyOh5Uf2j tFJ6aIldDx3xoMvnUZIZZNw6LjsRhDw4m+V0NV2BvYkdO27BQiwk1C3H3HXU9JYKihhq/Z3EdcFG K37ohI2CPI7nzWrnvpG+rUdvqzFr1vo4kXJ23fi0ZqNaTmxv3c/P9llIVE0BIuZrarZr5/csGFZa I6S8ja/3XV2L57kUwL11g4igTRxZL1Szw+2d0+6Wc53H98lZldTVBR6raw2lzNjqosyfCoSTdtqx IOVvwVyVp0hZBjAWOsLBrssFtu7MsRUFG26zzT4Oto2CJ4ZFDaXutjpIvS2dZHf77EFdAISzG8fC 2kk/Vk8V6iR8sXDacnpp7Yxa0FkTCF037lnYkOnQK+8VPH2n4ESXcrL1Y/v776wbcWtnnZVTsWDz GmQerf1Yi9WIZEkiTsjCeVulFhUXqfrY6Mc23wpdXwthkzjvWbXquLrGq1EWWV1oGRH9uyccOlti oQsOm2jFsygJDqcBQ8bnFC6iDbuclEanz0KYVrpG85P0gpQSZkg24zXJNiBGUFlzI60Z/67NeLac vnU1PV1zLJAG2WfbZkLjp3bfBt+8Z8ERZJvtuBz4ZfQUGMbCptYttNw+1QlUam1tnri+StcCw1av EU79wXv9vKUGvxobYHvcU8CY77BFntJsSYvbhDQGziUw/DsW510hYHNhSbPMcd1RUePGdi2qO7/A wVWQe53Wb/Ioh58ohJSdTOGn9XQAX8OBz4ntCByoJxjaNvvc7k+9/ZIFaqVdnW6LSzInnd3j7o4N KvWOIWCZkEf/i7qQPOsl+yxYuD5kQSCsn3VsdFekkfogWOFInHU3zjpJiyWy4sbDgfRSzIsR/ilp UsoN2wAWuivnoiwhySHLb4uyrPgyYvNCokDgtXdUFlsuJvkkGRed+HVNRcdYuLhZ17l112V5RK7+ FMsdvZoOtEaEbqDSb8xCd/O8mzpvwYINoGj1h6BO2hFNLStRUxpSComWY2HjAQuJE2sJGguparB9 yrOI4imemmV+Y2HT+QWxIC6s49FO1fo9Q7HQ/hULm6aKN78sy4mTqsax9pAw0ycetc+Oqz4mj3ux inBLNKtascbrji11I70nbCQlV0x7V6IdrfDUSp5tJ/n0aNopd+HHTlt27jurG7W2k17WwOy4eysM pfz/Gw7Hsf6JF070WUhrKrltp82B2vFMQU2JxbHAJeyd9pQNxELLsWAz0VZY7y1D/xodC9tSRJpK 2D/p7tUYnV0E0llv68zOTXHY+e8sbFhFWJNMwjsTUc4yGAvnXfLt+nmvzwJKiT9vNi4YvdRFN33R 3boglvTFeLBbGxCBH0mf32wixuzoMkdnN4yV8+7SBeFKLhUIunY9EcdLV2oN0M676XPdAVhQzlTq 6GzJ42hsGGIizioLQg4WVs/ajLWLns5TV9FTgfglC7qfChLVhS0DIWbhPLLRTp13eE3q1bi2Ch4P BQNh5mID5d82FlQ1eNX+++sEkrBgakdE1KIdC61dx4JpJMeC9MBJ7CKdOXJSwR2rr5FiFtKmwNOW ElXa4gIhQDi0O0/rxiioXKVwLLiFaoy9Wvt5rbNvaXZTSZiU1eOhEwN9FmIQhAwBhu09tWdnmtDZ HGOhYyxEfUGoM9yx4sVAIzkWnOZJxdm+50y0iR+xYFnasdwyFgRC+gsLHcOhY/PI2vneWW8PhdMv CjtnPaf/TTgZ7zrtzo7Bvt1nAVOwf9zlc12UY+GcCCQylasfsNATC3Eyt3uCarq443XjvCf9f9ZO nHcS511YMI1E1oWFTuKyl7y8SV72WbhUcFqluOFVNuTiLmUsuIhN2VEcCPbaW7noLV8q4EkdLkVs 6rZb+TjVERmOhb2T7n7Vcjh/XvTSF/BL3ekmbcjsW/VRMCj4O4mzjrXCVLyMgj4LcvfWRtDda1ut 7Gyfd7ds9OO/tXEmCjj0hu18Q/JYRZzXtI1NMx2bMg7of7FA/VIcnkkiii8bm27S/4RobGniqRY5 nJ37TsR6Ro33TZtg4hVxtWXLZrYVQi0Nsycu325byrXGSNe5Hjfx6sSAuc7OfUVICy4Z/G2nCfsC CbWwp6GASVvjEYGUsAtMmd7YqXbIn3vCobVrqd50S6fPgs3G6rRR8vq5jTkXtb6tqyk9b5S5oLKS qqpKDHSUwRwUsgMW8zyCU/mFTQOBRJdyCepE8WBX1+kXnfa2Y+H8Zid+BMpj6RO3h55epRjbnPNO jXPglZORQAIZsV+lXmhCYefsZvv8lrgiSkm5D1iwHHtqd9ISuGL44i59cZsyFlxgKDIvbhSc9rp+ 3t4g+N/2UrxeaGxeEJaoKQI4ZmHzMmbBmeUNsdBzLCio0GCXNwyOwg3pV38VDmVLWNCuCMiOWDjt Pae2nnfXztswuPH2xuG54YbR7VIiu908u9HQxEc3djp9+5Cw3e6ddPbPetu1aE+Tjx3DgdHevIQy iJCPJqo5nLIELPBEqMWnclXOwLrHR4Rv6Qm2klRPjIwdi6PwCQNGds97uxzipLWDTMJrnOE+1Lx1 w7GcOo0XWOJS9xHDR+HLk+7z49a+gpMCge8TQbumk/U01Yd0K9MesHBspdNyI6e3Y8MZ7T5Bbec4 IMjpFhUvtUxDxJ56xeKuvWF224movUq0X209V0QRhCbhTB05F5zq96Ncx9i1thwLHFq1Tx0Yd0Nc cxIu7MaatUyJDjNE0qhKjJuK6jav4LBz3hMLJ+ah+gfSian5c7MLC7HUBy7xZV/niasSqdCcxH5w 2+2EG3V+41iAbpWV85stwvuCUFdS/eKdL25Is9ob0XtxKwRsWH+JkO4Q58mLHlpo4/IWHJKXdxuX vcRll9fU25sU8XPZ3bzsbl8qVpFSGxe34JC8uBULAupWeolaoHJgp03d0bX0XOZP6vLFtbTfqWPB mpxxepeedzWOvL12hgrqUIwSpl5SKLTLm1+xsHV2w7VvmpdZix+HCpYleSFJhdUNOWnvob7kdHgE rS2GKT3pJX3IG90TVTElxgcsnPbiRCTxY6lMFUedZOet0v16AQgaJ9Tl1o6CP7rXXZJedkrJU+f7 OsTSDuXgKCT89jlDNVViFmSXJAzae7XWrlMdx7Fr2Orj2W9GORNhwsNZCVVApcdt23jTlHzaokW/ lCeruwYFBzJG3Of6OVglel5tvyCwj3XJKjc6pY5VnO59oyYdr4VT01LNYWdPrIau9fvqPE1iKX2m FoRzZxrm+yx3ORbQTjEL28QqyepM91kd1P7h1P8567kM09+PvujGlrWGduUp+r1W3sf/euNK4S7D dqIIgYVzUXnPwubbu83LW5779uXd1qWVg0uNpFGTVqgTbyaH3t7ymnp7JyiIQL3XlulLSgBfl1ja kGoyE8E+390RqLaBdiu/4E7eAnVTtYMQle9O6Q64DmfMQurUMrOBv6XsrdKQphYQThdtWEj2WXB6 6T7bpOMY7m3ez5KYj773L4zt45Y0JOMMWduOWaAunHf7w07y/NYNQEgr59ykT+Ja/JAFmReR27ae m9LgL1g47ezZ2FU8dFLmRDhtpOmG7JVwcCxQFxSx1XD3GBnDGYqF9KlKzJZQ6vL5HuPUGiB9+6zH bXbA2c8vbUbXh7kvZNaH3HKhbglzx/K/Y0E5hPvMnSHrUlOcrj5qoUuf8+dx1zWFFLeWexV1tgRu 67jfpzruxK2qE0WsfhdwYlMSJzKDCnJlFd2otDWLNs292pBcsVLeNR618ZY1eYQDp3TijuUuNmZh RxI0jhnu/7aBI/yNBeHgxtkXFriuvZP+P/G5SgOn1H7YR9p6e7sVs3ALDiTz9NvPm+8+p98qktN9 CZSUIgKHm9Q7WLhJyDUr7NN89+3Nto20U01ve0krGZsipZd+K7G0ZSyk7Rq56i0DM2XmxVW6tGMh ht31/Du2pa2hUirobYHYeTste9JTcSRoLwjaX3xFN/yczfQqtWajD0JP2YkrJc3asKzeggVppMue lQMbv8Lh9MZGLx3XBSVee6N0LaErAaZCtip71Un3pa8thmzvxix0uPkxaxc6jY1z56purC9qrUJr HbvTs7k2x4LIYlfAS2Z7rmzpfufYcVOozjNuuiUHZjzTD36rstX3lTECJ9ZIwX9RfQh4p39O7Faf K69am6Kzh0b6JQvmfE1vnNodsIy905eL9zNfbgPNoVhbwCUolRvlbf5V6G2qfdcPYATP+e22brX1 Ck5V3DetySNezm+trRqXYwTS3vntPQtu7HwpFj1baKSA34u3vNm5J67/uQOEf9q9uN0WRzf3LGxf EsbgcAMLO2/vtigT78SC6oXCmySmYe7gRuPdrWX+LyzwlR0bm4DwzsbbXvrdjX29ayyoHllowULc CNqxLLRl2KYVonhk4qTjxpZkvAQGMkZeiXFxu8Ox+CcpmRsXsVvGggvdtHWWzBD1YhFiUi1pei9p FLjNVCUVxtzPtu6GSaOtCyeWbJybRnIq9Pymb0BU1rfdOFEIcf+3rdCn0D9K8tZhMNW06eZxtNk9 C6ogsfoiI/WLQvKse997se3tVTtBWqiHfM+Cq2V7LgH245wPlfCtv7QR952k6jf7Wq5fFOLu+h5m RKP38rj7klCvtfdP+800xompKecXYIF/FQu6nJR51W1L+8aUbqOdzI37RHia9HWax/pObZfiNs29 moyPZ090OVbuLYAVn3ZDXNeO0nnjHiU3/yELLoaJB4v57s6D/E+c7GMKiJYzjV3nLIwRMW5E7PRR Yuxf3u5f3u1f3OxdPGSht/Pudufdncb7z1sCgai+/R9YeHd7z0Ly0vSSsbANCJcam1Dwvpv6wGsv /f5m890vWOCUpAN1bt3dixvOBEg5Zz5E55iaIuETh20CfsdAwOE+P+MCBQL6jW8RUTv29e1zYvjm S6a1OJd9eDAUn4YDb/r31liwxbq6SxCnnVBxOC4yqbWtQZkgbjs2uv3TvnEUW6rvuKepBAWAKCK5 8jaq0prPVrid4n3IgjVXN61ebNr5OJuTUOEQCCp8x23VdIkEgkosSCWeqHO7ZSzsnNjG/SDf6bOw bXJa0zEnWseYtCDcOiXGbjTBat6cmrJX6zw/xph3XgBCrfPyqPWiiknXST5kYafW3a919+xX8/uS KCbs73//orM1Ko2FXTvEtt2cTdctdF3Es5t0LNo1FJkSZtJ+unVxMMdDK1ViFuxOymDqE7Eg1m4c 1y7/wwIBfA+CZXuB8Py899wRcWZ42lH2SaEET1+MUQv2Lm73bTy/uH1BEJ5/YWHn7e3u+8+7H352 OGy9/9lYuBELetNjpJE9725SHz6n3t9pyDjcMVIIqsu77befv7DwsZv+eMPY/Hi3+f72ngVCbvui t3N5Q27fvbx98e7u5bvPL4jzU1XJtMzIjQ5hNpwsvX0mUaFlhMYCX0ezORb2zrvgzHt2xQ7J4U4a xSxc3sTj7W3Cerwb6mV1JcO4t5KISkewQGagBGzpQ2pNm7qwfdHeccPhYFTqtC9M01qK24lRMlrB 5EwxoLU0NueIk9owavosKA1+YeHYJhpOVRrEwrnNVFqQGwVq0m5DK1tKT3ZUF2TuWm4WYyceaqe4 OuK0MTJ4zySQg2v9voeg4PnCwq6GzSyoHHRe1lqvKtGLo2hffapo27Hv+jBsI3DavD43CeScQj/8 7lkQDvuWpWP1ftb3QfJrN64X5MKVzbT9iSuRBlEfKJcKpGmNBW6j2jsStFTPmAUnbGItdP5FEbkq QPC/OCdUui/O1CHcMxnpFOyeS6SEkKJIXIgFKoLYuXnB+wd+YcdA2OP13e0e8fbuM3ke4QQj25SJ 97db727TRDUIiIVbsfCOqiFptPWWjT/vMkjaMho3G+9vkx/uUh/v0h8/w8LW297Wuxvb8+3uW/Z5 J+7efd6zI+5f3uxfIJY6lAMogAWBw85N+ewoA/T2nDQSC7cCCkYuunuXYmHXWNg67/cTzA6kYsuv XSVkGbr9otC13p3aFNx8InNP5qWtaQUVvjYV0LHAq5TYuZkIk2GWWG6MBdV6zsFA0JTEpq3yTdnS vpQJs6RUd9s6IWq6kmb1xO257/BFu64tpyLOrL2mmSblW2NBdQGnsG01S7N+F+3kGUopSrlpC/ut 7rb65517FhwOat2cqWOTlLLChKoAbZ9Z1rWJxV013kn17efHGi9qrW9r0cta+BwBdgILVgpPbf6x Rmlg49b+MdF1s2fxv3XmXKrE3v5p+/lpZ9/Gnuqmu5yea0GnTZYo87u+DbfakNG60Fjq22105uXU TZ9JJCc4f/W0yYe3rqW/afk/Zsd2sq8SQLTbKtMzxTPq4v7DvbN+tTrtOrO2b75gV7oi9sU7RgR3 Zs8E0osHdWHv42fCklh9/u7uhY3nb+9evL179fbu+fu7nQ9324T0+9tNIyJF6n5P/sdZWIS//3n/ /efnRDUbm+lef/fzxvufkx/+kv7w8xZff3+z+/7m+fubV7x+uN39IO629K8aOx9u9j90d961tt+2 dt71tmzPm+8/k9LVm5JO05+bH3629wit3tZlb1tM4fS79ipDbezc9IdMOuzwT0lKw4VwSDq7ak1s MpgJZsWnhXqHeNu4aG28lU0wCpxn6Zp2ElkmkLrScsQ2H561dkBYX+xsMNQmVed809b4MXYZ7pdT kjQ9zf6TZkndhtjWmQkSNy1rE0+aQjKXt+0CQ89UrKUuo+TbVvKyLVQvYk+UVt9Vawz6XZH+SjM1 38L0WcTYPHWjxbHU6TJlQkzuQ8FJ5+Vp9+VJ98VJ69Vp+PI0fHEa7UuntTXVcmp66di+ojmO7ktS 7qlklVBVvW7tn0UvT1svT1rPT9ovrLMhBCRENZeUtv4/AfZSU0Jt6w9H+4QuLCCMuZnW4jANLxnD 1/elbSgBXa2B1JOyx8c955y1rJrapAPtHbf0i4Oz7isC+Kz38rynN5fk+Ztd49Gel/In4kc1SMaw /cK0EGPrQtlbnLqWJterls7Ndw/8wosfPr/4ePf8Xe/V+9tvP3z+9sPP377/zPiO9x9/fv4D0Xu7 8/52+50j4ib94fMWIf3+DoKef3jIgpqoGx9+Tn38S+rjz5sfPm+/pwr09t/3Xrxn570XH8Dhbp/v fvx55+Nfdj7+197Hm/2P3d0P3d333f2PcIdVuTUi0GZ3anAxqE3g807ladNsvmk5KOjYsBmBi17c R7U5lG3JtluxcNkjz2xowq5tsR1Xyef6BUd3Tw/CIp+q9EsWtvogbKn52XWWX8n8Fyx0k4aDdUo1 7lnYPotn2faUOXvPxUJ3XzRFW2ehDVyJbIhNMMl9OBY4n/v8tqvWawQOnBt106jXQ8QU70r8s8Mv LKiZIxvSktgTbi31x2DhtOV02n9n4eVJ21hoPT8jbz9g4dQ1XaXHHAuvzm5ekmmViCC0w/YvT9sv T6Ln4GCdBPW01au/TVu3fEcZu2czhjocfsRkvKJ015TYpnm9bbVEzMYaC5vqjXeU7qxublu7b1f5 v8tRjIXIVJBYeAlr592XCvubX7EAbkT+vjsiX+yzINMtcDR21PRo68/Lu99d3t6z8OpPt9/+ePvt x953P9z+7ofPGh/vAOG7D3fffvz84oc7opSUvvf+du8Dqul25+PPux+hgA95/bz//u4Fg7JyqXCV QIICas3Hz/sfb59/vH3JeN99xfjQe/Xh9tXHu1cff375w19e/PBfex96ex86+zbYcp/C8a5ngzd3 8TAJZ+jFys3+FevR0XhLdVAHrN+nksWWl6dkXCC9OpoHVLj2WcDpn/esvFo9PTNrQPxctjffth+A IBY4nLHQ+e8sbF+o+yQ3ZGPzktqkA22e973/uRL7nj3l56pEPE2eV7AdsxBxejvaCXZJ5sVYoKa3 9s87Ntp7nPx5lNJoWZBb98zanvhZ9yMUx4Ks65k1hB0LF24aXdciOXcaGw0FxinlgNF5ISLaSu8W 28ZCx/kgqwudh3Xh1fnttwohNKEIfXHeeXUGR+0XStdK7Gl1sN10qpzFtn4m07VqgpRSElDE2g2J lRj39kIyXo1NY+S5kpgm4xTPEmMduy0IsC4lxspBb191gUvoGAs9Y0HlxkmdHasmWzrQjWsoufHC DLKGSsnNy4tbBuYCvl5e3r66vPv2gUb67t9ufvenm3/QuP39n+5+/6Mbnxn/8MPdqx9uGS9/UFQ/ /0hW5/Uzb1648eHu5fvbV/b6Um2o2/TH2y3Y+eHupX33ux9ufvdD77sPne/ed3/3ofe7Dzfffbwz 4n7+7kdwuH35p5tXP2p8++Pn3/342Ui5ewmDH35+8f6zNBuvH/TnSyzGuzvGPtrsXXfvbWf/XZei s/cOE624VU8YC4+RNxZ2pP81di4Vt2qXvZX14P3+uQ1YOG/vXmiwt913HZftLUQ1jb791k0gOha6 9yyQb12wbTqnz7FsemVLREhfOaMBDpKjcmdEb+elvFuwexHtXABCy7xJBw+FOt2zLVFWOychFLy4 IJt1nl8SzNEmpcQaXA5PEU1oGQh7zsWrRQ9lt2oC9FnYRUByT+TFYqfv/Lt6EV9YAE+ORTh13fSH tcU6/10jGQ5ErDTeniKw862NVwrFrjUtlYhsVVvH2s7GgvJ52+WcfUkXnYxAiAu0Wh+k5XsWdmIW uqbrWrvOFFzcm2Kx8NKk0XeXt99e3t6zsG/SayfuB/Z+yYJElGPh1Vnv27MukW+jxxWxE+3qAQu/ //PtH/58+4+8/tvtH/50+49/uvunf/v5n//tL//y5//izT/8ePsPP9x+S9B+JGKV5L/94TNx/kJo 3Lz6ePPth1vC+9sPlJI7Ptn78fb5j7dWa+5+B1M/9H7/Q/f3Hzq//9D9w8feHz7e/P6Huz/8+Pkf NX7+9sfeqz/1vvvTzXc/9n4Hhn/67DD8Hf/08bMJtnh89/Hnb40OytD+u97+u87z950Xpr723+rR 7+Km30LKZxvAcrP3rrd32SG78rp7Icct8y6no+eyb8/x+UWb8eJt++U79sZ+ejYMBPMjO+qn6cFJ 3CJRoIDkbCzIXMOXENNmVp56Ww9Y2LZ+l+tUEGzPZfaDvbfR3tv2bnzOXR3O4qTPQvScxHspFl7Y aVO2NC5cbPeE2JkyrQNh12YhbeblzoKh7fB3LOz0Wdh9yMJpTxrJfu27T1q4cNLFNnOrp/p94z3r aSuXnrF9x2QbWZoocix0HQuE3I7NHDn7fF8XCFRyuLHQdkVBzF64rKWhjqJKQ6zwYUGTnpyzsbBn LLywEvBCe7tBa/H66vyGAH51wcAvkPYlivZdF8Wco/qlMQ43+/32KeM7IDppf3fW+85w+B2fUBQM q3sW/unfb//53+/+5f/7+Z///fM//VnjX/78l//z5//6P//2XxABGn/40x1EfPex97sfbwnvf/jT X777kewtEL5j/P9svWl3Y1eSJPjvKltSRDC4byD2fSMZIVV29znzpSulIPZ9B7hEhJSVlTU1f2Aq RQJvfw8AI5TVPT9nzPw+kFR1n+MHBwSxEXS7Zubu96JuCIMwtus6cnsb6d3S91vmYcs8ahrHTe2o zjiu68cN47hhHjctXjasnfp8u7nYbRt7TW0fMGwBIHgIYbJXsxhVa1dir2bvgRrKxuuS9gZ5W354 W5nvyBuA+npVMV6VBQgV+wkLoIy3Zf1NScMC+4qLPxZhSdoyi1dYD7eutK0rXC62y4iH7fL9K67S DJXbBA7MS4XlYojbb2G1IH6kEkulBMEAADIUFmDqqaghzHg3Vp8EC1cG1bIyAqV7iTlxWuJjn9L1 O1ERSJs3V9qbK4BUUQPTFeJEqnCGVKTxtBtzrULVlsUf/eGD4gVhHIJa/3aT6t8Jgv4TFvirnzYo 8BGxKeBLLr3+SdTIjzQXrwQdlOs/znd+fNgBLzAVdb+mupln+4M8lUAGOTx/LX+UAAHrg6Yy9g/C 49+oYuBPfpvsW8pX/Dm+z2KzQKwBcvWt2OTXoo7Ues4rH7Rt+T9CnL9mh4vFxn8QXDxDQJy1hEEI /I9nLOyVDNFL+kssnHTNE2ChYx23zSNEyzoBKTSd44Zz3LSP29Zxyz6kdtIBin1cbzv7LWuPuDD2 AA2s8ISMA0TsNPSdFoCg7bX0w7YJcJ22jdOWftpEGBLmadNiNMxTEsd8t7046JqHHd75uOOc8NWB FPuwZh3UrMOafcAruHT2q9YWcrusb7EqpQEF8urmDhiqKqUwgcOriv2KRgb6zdjBPa/wcT0ADlyE S1J6KusA1FZJf1s23pY1AGG3vNgp/7p99TcCgTiiPYdP+Q4+pWr/Q9VWqy54h/8suVTtEqaowoKw w3+RXsw/iEP5Vn713ZUuTkoXVQYIzCnGGIuNHmPzQrBgqGx8g4dc6YIFIEJ7rShMnuob9UIvsYCH EAuMP7CM8PCEBfX8ZEPJdgqGzbEPUAss8ggWvhHBL6wk+lw1bVXHn7zA5Bde4PXvpIyz/af59p/u t2EZfuL6/0rq/H+Q5sI/SFPyW5HlyFXovdd4AyyszekU+Llp/yCTA6QG8UoKelL5pGMSymbpdUsY Ybdk7JZMyXxiQWyCr5G2rwAQYoEqqGTy/3LFeCXtM9VQw+24QrCAAiD2/sfDLoDA92Zsl0xwIsh6 5wUWTjsm4oQ5DyBg0TZPW/Zp00GcNG3cftIBImxg5KgNIBALey0Lkma3ifXcOgAQWs5Ryzlo2uCC PSzykFuS28DXSds8aRknLfOEEDADLSvQtAMtO9CwT4md+XbrYa+j7bd1POSgA1iBTYwDiiuEdVB/ gYWavVMxd6vmXs3YrWl7de1AcVZNf1MBQOhZsD7gylvoK5KUgSTfvnp4K/GmvHhd0b5ljdd4XV4A BUDKTlU7qGr78DLlX3dKf3tdWrzBb8EyFdAKIGZ+WzX/UKVDeYX8ZLMPksy//I75qT1hQbonuqx4 DAAKcPhOJfYVPvMFs4LSSOhJGWdhme9K/N/hH6cykPmP9dZHBLJizuCTcJFXPEIDIsacOXylsKBe V/kjzecFWnjfO0tFi352S7DwVmQMDQL9LEP6JuQFrtKyMnNxlgIOq5ckCDYItn6cb/3Tr1v/xALU GxYfSBZ4//9lM0r3jQj4Lb7/ORGNj+InhQWpo7IHNxdQUOF/ozhL8v8VGQHSCI8CX+tM1ytjr2Tu lqlk4HPpQaTuQaolOhYbLOhbsgx+w24X/i+m6CtNYeE1By34QYEHX//TguKKlplY4KuUzJe8cNax zjp2oO0gTltcsc9azlnLC7W9AGRSxyEQEB2EI+Hute0dJGHL2m/bB22XWJDLw46z1zb321jnreOu TcXVMsg1hBI8iAWUBdreWWcZaHnA2l5L224/7HQgkxa7XWOva+53ENYeMCX2Afg6aKgA9bhkijrI Qt+vPhzW50DZUcM4qC2Q0lBo+w2bta8KkGLC4+zWFgflxX55vlee75bn2+U51NSbqg6ng+s7uLEC I7OAcjvkPX89rM63Sw+7+G0Nn61vzL+tLL6t6ix/lfXtikn5yn+EsVVifHcF9aLxEqqmIqYeqqYM BmHgxzclXWke6LHtkqBG/DIsADiF67aiDyn0SVb4po92DwvaT4pQ5N9dMuR/SitKL0mzo4s8MHxR xydnu5y8drWAaHzNPFyIDbn/9p8eoN6xwm/DQv5psSPG+RupdwECqrvHIMqY9qqSr2r4ajWm3/zT 4i0g8E///hpY+OmB+o1Ox1/bBUd8/4JlvOcH6M+3JXLcd0o0SmOU/U02TGUI54N/f8EOXpplNH5W XPO1t1f6tk8BTP6nEOWDfF5sl/D8GmKLbE5q+OZKWED6C0ABgtTgs49Yaf7vTGBnu2zulA3E2xf9 hWDXDnadYNclIrhum8GWAyBEOstgxz0lKYARsM7bp133pAd0IP8txOEGHWCK4zbNBa8DArAeuOyA ZfTDpoZ1/kgxDp687Qa7q1B3FSQcXNDBTkcjCjoAgrXftQ+61kEX1GP5ATIS0pFwoZ0QyP/D+uIE uqsFM6If1jVQg8LCXl2MBq7XYfkXB9XFIZZ9hs4SVlXfps0x9kkH+oGQArBwVNMAhJM6mEIDFiC6 3la1rar+uqZ/W128kvrANuHA1ckPwQJ4BHJLLhdvQUxMftgZnQDhFQPw2cZlSd8p4WM3WQ3mr4CC ubr8RizDd0xyQwbGTFUMf+MbQM3HApa1khSumVoLlaXCHS+wQLoB18CY60QEe/pcbFXD4pU8hCn9 Agvf4m4/zWVBnssMpKY6X0IEmq/VNwVMwQIePt/606+v//QrlOcrJcB+UnMpmsKCDDYAuchkyHvA gewgrkdKPex1zlWFzc9V+TyxPkO1qgIasPD2BRYAky2WIDZxpVYAExDYFiC8lY/6NQuMDGEN9hck 5623FQt3fq34AhyB62ULd5bOMiX3SyyE+w6j54S6dqjjhDt2pOdFul6kt8SVcM8NdC2IqEDXPuu7 pz2HSQ4XgBu7NpAS6DqnHSfQcc7aNtTUSU+ia9GDtA3EKVwDcNRmgHrOOh6AEOosz1oush1csNuz AYTDnn3kh3NMNFlHHQagdwIf0XGPgTiY7qZ51NCOG3qgbZ7Rj0DRqcxnAQr0IWFRPjUAE/2oDuAg zIM6yMLcpb4yDqv6cc08qhlHNRgZ6wSOvq7BzuzXKM/26vpuTd9tmNt1tsXf4skBn5pJaiAcdNAr V5WKpTL/d1jAZ1vxP2T8g3Yr1l7FAsvvchUyaUbYrzdhXrCOSXVI/0YVc4QamPBSAHz9v2PhSlhG iAaZqVJF0CHPKXD4VtrxQJxgQftPWFDKn1iA5GaqA3oLBPCllnflNF9/eF6Nn1wqjepPmugrkMvD a3p8PJayjViQ3sRmQG6DhQ/ztz/dbyFEKdHyCO98o2aP1VCQLPgqyYEFVcrgY+HmhB22r16gQN4b P58SPnnrLUnhmRdEJFtbVXvrCuLHYOObSxb+a0TZFknZ4KSQOAsIqm+lPo//yMu+c2zoRgdOpOdE +m5s4MUHy8RwFR+s4v1lrM9fhft2uG9FcDlwggP7rGeedc1Qz5KwASJGlyAKdi38NtA1T7tmoGcF e3ao74T6brAHCNibcEA3QSCi7UGAgVwOu7w8BgQEBYImCwE4iOkAHwELDkABZgEWjhsaGEHoDERj BkAfflsEV0gfR7Qw5iEoo0ERdcTKFYtXh6xQASPmSdUI1M2TunVSNwnhFp/zuKXubBzU9f26fgBP 1NC3avMd9Tx1Y6e02CvTsu2Vkd7GPtsfus8F+I+IYdli797eojfnP3SvbB5UrH1cls19fvKgjIWw A9SahRx+VTG/K+n+gl8iFrZKamXzJ8de+9mlUWvxnpQfb30saM9YkGqwtFTIC2CcVyW/8K6e6rXS PAoLPwoWWPL99dWHezznqw9s8JGeQBM/ypMTEeZzxQYrwAeOVeBRW6p6U2bxmTKPQ8Vz32v7thf3 B4/AX/+Nl1RKYDpdUY+qWVEdsQsmiqUEXjC2ypoKrDkMWfa3S78DwmuxyWq136LpIxy28GGSnckO b+AW/fcMNtFYKiQQcClVd5kLpY8DFiq29HCtl33n5MRDJEYuIjnyUuNlerxKjZap0So5dOMjOzFy EmNGfOzEECMnNrSjfSvWt+IDOz5wEkMvMfASgFLPivTMUBeJagApkYEbGXqAwxkw0rWCHZvU03XA PqGOG+64AWow8A511wkSXuq65BRiQRCh2KdLxmFVquOctmE6jEAHLwFIGoG2cQafTmNiH7bgSkSt tYEF47A5P2wwjQUIMO/2qR9WqG6H6/ZZ3TytG9CE9B1NnZU0lnyR9vpRQ4csPGjqe435fos0BCm1 V37Yr+i7JR3pfSDpvcOVH5c6AqZ+p2Ig9qrWdpn1qx2ixjgsm4jjsnVUMWHe2Rmpwko8gG5eVRZb 7LZTg8Haq9gq0xow82miDWUcXmIBK+fOh4UkGBEnaaCwwBEpMAJ9NEyoQEwyx+RS+UEyxO806TsI eM+rX99e3e9UwHQMZM6bn6Cd5uQd1YoCA5YMAuFKqvo/6UJGfBvwU6qbCQvD0TgZo3qt9BXf3pxA +NPfdn562JXHcl7CJzhT9J4pKIDUofJ/S+5gfWOrouCgSZXPUEQsukh/JeoIf87riuq9wscxtlTl XPTqVlm1HnSJB/EUGv472yVVf2CV9RUWkIr1qmq/qjmAA4jjCQupmZueLTOzVWa6zEy89MTLTFaZ 8TI7WcuPTmbmZa6X6ZmXmrrJqYNITdzU2EmNnPTIyYzV/b0scDR0EgNiBEiJDuzY0IsOPQgwLOBY xoVB3DB0V9dFRDpuCOzQXSIUIiTnFRaetJYPBMECVBaJ4LQNgaQFuzoQd0bQKeJwRUcxSCLw760F EcEeB+u0sO1nDCfYtKNNJ9pwQxssnNLRGBRmUEqEgw6aOIFFIhwWBy16E/wK7mO/rB3IUn8ocNir GAdVa7/CK/tVXu6WdbnFAmT2gBrBwlHJOLwyDsH7dQ1E87YOY/srrr+q3G/VFq9ri906cuD+TZnx Fja/onO5u2I3doMF5sMb0WDI/x0CbUGD6WNB8ytabAuyy/aHH++/FYH0WnmKD9Tk1DwfGDsfDCyG uyU8w9+2P/xtp/Sw/eFhm/IeKHh4KxQALlDGWZEC/Y6MMRCVAAJeEVgoseeOF1XkpQqhUvYnL+z8 +OvOn/62+9PD3hXeMFu9/jSdv8uAl2+uxEwBC1fzNyUfC2/Kc8Khoore9GVqwkdIQRpJFTaSXrPN NN/CelLGWwI1cBkBO+9IN5nx4WFXgLCPBaqiCaiBO50CDPRRpaACO7/+PRaQ6vmbdW62ys6W2dkq N1tnJ8vcdJWburmZk7v2crerLOJmmZHIXi955ynus8xPV4XpY36yyo+XmZGbkkgKy8THS0SUGsyN DLxIn0E4dJ0IsEBELMNipWkiul6AKY3EFiz0nRPaE9dXR+IaAqKyQAqB9uKsswh2FSLEjxBKHqtV bTfQ8856eCpDehYsCJ+0bGAh2LJDLSfcAhCcWNMJN6wAi2ZWoMW2OyVZbQ4snIIjmlqgA6VnHbe1 4/Yi0NTwq+OaBiwcV+0jiUOBADsgSP6qicsNFkygYx//grJxVLFOKuYJrlzph0iJ5nyrfr/deHhV /n/f1h9eV/+2DRTUHnZq91uVf9+q/LpV/nWnOodb2a5w2fexwCkCHwtbIh52rxg7T1iANfCxAJnE 2tRL7yy1F6JJrZbbUhHa5Xwm0v7ftz/8+87Vr9sfRMn89AAs+Dnz4cmViECigGcD/fUGC99WFt+U F3+ocFxZNL/BpjDLO0IieJM/3u/+6W97wMIHjdTgvwHOAr3azOO9ZcmUgnObHPfAxK4sBAsLwQID RKB4RIXfUX3GAsc+n8TVNj95c6/Ey90Pc/y/dsuL/aq+V1lgXcLqpD46OjhO3Nk7VRqHJyxkbr3M LdLbw/qfmzHJ89er/GxZwI9TNz11MlOXyX+DWEks87frHLADBF2vCjePxZsv+WtAaZmZemmQy3SF S8ZslZqtU9NVcrxMjLz4EH7EiQ4s0VdmtGdEu3a040QBjY4V6dJ9wFmEek6w78KnI58DtOcWg4rI RNqHxJUEoZE6BsRYCM6FAsw8k8cCTYggsEBHbwYRbTPUsYItk8KsZUXaTqRlhZqMM6R9XQ80QA06 4IB7njaQ9gaun7Z0en8aFogl7Qw/1uYnNf2w8nDaAGSME1jvKuSQflC3YKt38WnzR2NXLvHf4S01 evaTmnFc1Q9Li6PSfL82367e71TxT/91uzZ/U3t429C2GovX1YdXlV9fVx7eChCk4c5yn99ooJaW FZK9D7rybQpsX65Ir5yFWW7ULbOaBA3wHRmBTdUtf6RTxm/UOr+ZatsCFj7cvyUK5qJqFtsf5tsf FjvQSyr/fx/ywDmD1Z6H11cPr67m3wGJ5adWiKrBck3exTv88LAlz481f1u0ysYOa1IponDa+6Af fNAPP2gHP1FWQf9vlUAQczpiLvIik+TV5W8Bu5mvZXMBe0BUREx+/Bd2y/Pd0sN+aXFY0Y/wT6kY RzUby9FuRfqtJVlAWM3DiyI0XNkVfYvAB/iEhfStl76BCgIWCASQAhK7cL08v/bylE8M/DZ77eZx C4BwTSwwblaF23Xx4xeEoGOZvQF3rDPXK8bNOnv7JXuDeMzM1hBgqbGbHNsSVmJkxId6omfGu3ai a+FKom/CfcQG9O/Rgc8gsBhBSf5Qzwz3jTDcOh2HHabiwqWlIsjf2lINc0NEE7DgBtp2uG1G2ka0 Y4VaegTP0zJCBAIAQr0UaJlnTUNuNKNtRqCln7VoQAId08dC1zxs88bT+uIU2qn6EGjZJwBRA77b UIZdylMsPe1vSlVbHPrV91jLMo9UzbYyB44OKnAcD3vV+U5tsQ29hGhqrxsap9ari1dVbZvPwyVr v2rh38SSkdLAFZNF3aohXkNXFd233GlC9cvxDBll/4PaVyJ0ACJQcggL8o4AgU6BPSxNOtqQ7vO3 PykUaEqxAwi0q1cUOTsl42U1SfTVAuL/7Y/3DDhiFj/VHAu9zGs11kIeoZraoRfAoo3EvseC/7Y0 36Ykm++w78liEV5394O2/5N29JN28iOCJuit7xSE71RBqUw5t0fBIwKP1VdDNhdQL70tWzsgAq75 94elX49L9ydlfMigg/kR2LmKVOcAj2oo7KiGAsSeAoXELjXY8762zN06fYvsXWau19nrL7nrL4Xr x8L1ushlXzBy7WZuiAWIpcLNknG7UlG8ezz/9BVYKNyti3erwsdl/qObv3Pyd17+4yr/8ZFxh/ia u33MXq9gOhhTNzVxCIqBk+y7yb6dGtpwH8mhAycuWFhG+qqiK5qKNS44cXgQ1y9b8RYnTJoww+AL VrSEULrw6QjaECneCtcgt7Hsd6wz+O4mEltcvAQLyB1wkxVrGQhgAezAe3YtVpJ7DMABN541NYWI YNuBxThruYEmB7c4oNIwJayjJq6zwCvTKQZ7hRssHG2wwP+UNM136xrtQ33xprb4rqYh3tQEC9LL oA0XayA6gf99agb4xCrk9OKtqKNtNSpf8vcMgutVx+1bKdK+oWjnAAOW6B3iQpdc0tXowpZcbgsQ NokhKNhggW7691jgcgoFJVgAEHZKSjhpT3CQHhmdBVUWX+tht/ywU7rfKePKfK+02MMtH+7ZcVBj YJQr+gGcFKiBkxWL7bKmChE7T3Wksr53xdglHMTF4L1VuLlgp2zBWcP1gBEOyg/HKq7u90rgiMV+ ydijoYNwtXFPxH7Flvr2f8YCPuEXvPCYul5ByaRnWMC/5m9+y998hfIpXK+ggoACKqi7FSyDBJSS RwcBXAALHx/PPz4WP6555dPj+We3+Nk8/9k+/9k9/3lZ/HlV/Pnx/Jev5z//vfD5a+Ej2GQlDLIC LiioWLNCuCpSIzsxsON9J973YqzorqKMpRgNG+KKEqvvRhhORHgBGglYACIghEKs1jpB6V+whdFd QfCfDVw1bQUPDnt+BAnUdQGKM5BCywy3zEjLjLWteMuMgxEAGaiptiVkZEN3Bfo24CAqSw/jUU0t 1HGBJlwG2StxpVlvS/DKSdM+AhzYNOd8yCFHEI2Tug6vccTGH+OgtoBY2kXUFzv1xdsaLAM8NYCg kV9UT5CDhQu/ulhRobEDSKu48L1ziSUUaWqQ6NU0CIJN8Cu/qMtswX//SveDiaokkAoSwa7c5yl2 rp7uIJZZ6kiUPUjdD3MGXr20SdoNHN5KY32H40O+Sd+9eti/uldxUJoflhcQioesCbBZ/4Zvnuy2 TQ0vKz+eszSX0Pbodk2+GfivknFYMpDbu1e+XsJSf9BwWKAgmh4Qh+X5SWVxXNaOrh7EF0gACxJq fmmvbOyzEi6Gomyo2Gef6NkvxCdebOwmxsvkZJWaEA652dcC2AEi52aVvl1m7lbZj49+wEFTL3lA BLmAAglYWJ1/XF18erz47F78Ylz8Yl3+4lz84l38sjz/ZX0BLPzyFaAofAJ2lkUyyGPh9hFuPXut YgnQZaduZsLCVGropgZecrBKDtaJwTreX0E4RWk0zAjLU+LEoYh6ZqRn4Ra6BvoCHwuh7jLY9kLS zjuA3RgtD7vWYZf9i5Oes9/QT0AcyG0kfNsMUxpZ8baV7NgpJjwjxKeS8m+PcDgj6KivRGXp4a7L B3bdEIxJh6gBsgItTltBO51I8fawZR2wwSHDXU069NM6EGEojgAWFBz264uDOjkCkkkC12EWFByw +i12KrgkNIiOqo+Ft5XFrtReuDKLYN5ma5VzIK/ERL+WTJPeh67KklKu5zKuVsVNnmvULcxqJjZ+ tUe9YTGZySks/gitmIIFus69kravyjKb1dt/wqdlVkKVcQ6uFselOZLz8OoeXumkrCFOBd0cUGEJ lNUAsh7LqiCjh52r+V55gSenycWTE6f60RVj/4Py+wK3CjyahZzfv9L2ibiHw9L8uLw4wZ35Dvme 1XvYExDtEcj8xPDmWQOs2qokjjgEcVTtJyxERm6YmebGhsv4ED73MTN5zE5X9MLXq+TNKnWzllil EVJcTcMa3FICFYAFUUfnd8TC5S/e5Z+N85+14mfjHIj4s3v+i1f47BY+e8XPy8KnZfGTQObTlwvw yN06D7oh43i5Wzd/4+RhSaYeIjdaZkerzGidHq6Tw2Vi4EI7xYkFMzq0YyMIJJNYIFk4ihfokZmc kE/PWNgHCgaezDiZRzIiddAEFmxqp44VhmHv2PGOnQQWEC0j3LLDwELLfsKCCnBQqG1EIMPaOuQZ bLvoNKBAV/YchHJc145ri1Nab1uaHRwgOWmBgFi/OqNVN1UvD4g4llCj7Id1DaqJwb0ebPOx8c3e N6dH9ujKpQ8ODwLuqGo7HCbU98q4RFbArXMEi0XFsuor6dJ0eKox6nDcnF0UaGzLSr7Jc+QbUABM SUhi+7mt6qhXulpdFafss0Ss75cFDmVtryzp6oNIccqmSkNEGEjL09Li+Gp++OHhuLQAChABma58 XdFfl+UNixUitdG532OFh5Tik5f8YPZ+mO/9+LD34/3Oj3PuQbhS0FscXWnHJY1wEyBIaEdq3GWD 331yin5cNo6ILNgK/bBqwVYfkB1IE2wVvcBCcMC+MIVHz0PEB0ukX2rkZiBapsv4bBXH5WQZJ3e4 iYmXmCxTs2UaPoI1pTXd9M2qeLu+uPtyAV30i5X/pOc/GYXPlgJC7qOd/+QAC4jzn9fvfvny/pev 73/+8u7Tuvhpmfvk5T46uTsrf2sVbuzitXN+7RYnXmG8LIxX2fEqPVqmR14SbmIEjWTFhnZ85Bej hCxsIIK52gE0XFBDpL8KSi8v1PEOuyYHnDrmQVs/7lrsViBvmcxM4HDLiLYMqKNE00g2jGRdi7ac aMuOABEd6aT3xKH35SW6eEU8LRER7OikJGinNiQTLIYO7XRSXyA4zSXTjPARJxxEdCClwoimHZL2 txpKl7kvjkGeCF+wx8dBEZ0t7wY3GCJ2G/phjXHAaSs/WGWq6ocVrG/4t5oHVXOPDhFwAEGw9LQt SntLYQEQkD22cNyvK+AUym9Zt5mxSLM9DugqWbJ4WuR3/IVd6i3kAq6uuwKEAwABsl+CoKjoEqq3 Yu69wALS7PCKQDi6Whx+mJ+UAATjuGKeVFki264SpJzy4qZIXTZFMr33wAtX8/2rOZO2YiBw5QQJ fwXxo8FWwFwciMIB7nAjsHZamp+WF6cV7aTCnD+QFrbCAs1ICUwxD1Y0hPrEjuRDO6gQCCKTAArr eU6VMxIEgt8C67qxnpPoQ6vYiZEbGXkR5N7QDzadR0REcopYpqcehE124rIGew1P7eQ+mvlPCIvx 2c5/dvI+L8A7rC9/+fL9P//2j3/57R///OV7/rgq/nlZ+NkpfLIKd2bx1jy/sc8Bh6l7PlkWJ8v8 ZJll148vlJ46AGNcut7xEa7I6IhQQ2wIi40rHqghOlhxzZem3nHP2u+auDxq66cQ/6xHOWFAhpNX lmBBjzeNRMtMtaxM04x1vGjbjbadSEc6IMII6iWiPTvWd8NAQV+w0CcWIl2YCC3U0oJw1nDlTR36 Cp8hB6hk7jdISLoRYsEKNgw1lMVhXWn8BQEQ3N7k9VPubzIOuUmEQNhrGbtNNUnFkIErPw7q5nEN ecJ/LkNm2neAiKqs6koRSeYDAlvcn6tzL7nsAdyWvjnVDpMc+f8gMQdBqLVdYWFPHDed9U9wB7pa QilIsLQKEHbpT1m9V3jcV5fUNmo9J4kAC0eEg0ZQcGVGouJ2vBBFIF5xtyJFs5op+yKpuw790AR3 jMOyEShpAaztyGrqLmoe8cXG8YeHkw/3p1f3gdL8rGKcVa1j6B9psu9QI/E9gA6OSw+Rqhat6Sd1 +4jKShcNpgkWfEPxvJen7wUGyzP2pySgh7sOB436FgeQ+l4QySMR5kwFI8qGshuTlgHcbmbk5pC3 02UW8unaydy42Vs3d+dmER+BhWX+8zr/87r485eLP399/5e///Ff/uO//fV//ve//sf3f/168a9f Lv/vLxd/cS9+tt79bL//7F7e2ucz+3zinE/c4tQrTAk06W646amdnDASLEM5iaHFGDlsXgzcBN6V jFRFe06M7tujnlETU11biA/Wm/eJdGWd79jRthGXSHbtTNdJtN1Ex0HEuSC4IAIBmlS3+jD1drRr gI/CvIRbAUcswp15uLMItuagDOILH13XOWrDqjv8JKUmzJ4IxFLTeGIEOAhAA0wRbpghXjeDsrmD hqJl7jW0vaYGZ71Xne/XFkcNTVHGgXDEUd0I1K2Tqn5U0VhOr1tw69zTUcUSzUzjTAXnbLXvqtqr 6uI1jDn35OpbVSQ/R6pE7SC9F3uVB1DDXoUz7XQBHKDaaOySMsuaKuMguFzDAgMCpfmeXB6UF0dV 47BqyJKrq2WcASCotPezWmAL4JQY0CpqC9U2AAgXXJXaDkUXh4qPagbHJuvmYc0k6eBRUD54hhKf ds/vDlChHVzdH179ilSnOqrqx1WTwKxwJPU1R7IpII8rxklVC9a0YHWOTwxAJtBKxOYBQEqEUiw9 YeGg750MlkDEaX952lsFestAzw1ADPet4MAJ4JYubgFY3FDPB4WM2wEskl1dKzlwoWSoZybrxHhF Dz5dZa7X8BeZ21Xu02Pu0zr3eVX4vD6HQAIv/Mvf//u//q//69/+vx/+7e8AwuX/8/XdX5fv/8X9 47+u//iX9fefnfcfvXe3y8ub5eXt+vxmWUTcesU7N3dtZ6/tzMxKT83M1M5O7cwYYaVHbnroIVIS eD9+9L1kz00wHLl0430PgUUeWIhhqe8Y7G50zWTPSYMK23DQdqorlV6OKTrS8rBiXTPWNRh9M963 VMRoWBaR3hyICLYffC8v476HbNVZQdZ41QiWBEdq1W4mtvlCDT3UMCJ1I1TTg3UwixFqyxBI2zpo aPtNnZv+qg97ggViRAIuAzY8WDVPKzpVAXIANNEwwR2ACXKJmzu49VV7W9OAglc17U1d367znBOa 8fLigBkLWjGJher9fnWxpxpVZeUITMiMl7HPDCSPHFzNIc6Rewel+4Myy5j7pQdWhwhJgEI7Ijz1 Y2oVxr6s/3tEqMChrOHG0wpHHLfUXiqZV6F7JdCQ3vP96vygtsCfcMS/CLoLRuZ+l0wESlI+hQ5l T8pBB36ZGn8RQISnUrZFl04cTzTalVFkSNAAfFzl/rg8B3zEUyxAImCrk7JxWjEPX2Dh2EeBe9rz JOe9IHPeCQ9sEMFZb3XWxY3LoMLCBhHyX5ZSf8cSTeWmkHvDJQ34aJUYrZLTdXK2Tl2vM3df0rer 9J2XvVvmP63PP3+5/OXrD3/+jz/+5T/O//I1/5fH879+vfzr4w//+uW//tt//Ld//fsf//LlvwIv P//2/eevP/z893effoMxL955xY8eL++8/I2bv7YL1y5j6uQnTm7s5cZLCVzxsiOXMXTSg2W6v0zh vfWcpIID0AHi6DuCBQbeNiIz8DJAdBdAsNM9JzUgphJDUI8TH1rxroGQhqAFHkQkARPQxFCL9ufR vhbpzqPAQteQSq8tk+pmyJ/ghfuwpJFhnYnLZiDzIagaerShRxpGsKGx69fmuGygY3HCtm0etPRD MEJDP27KrCCnpIzThsG5kQqSanHC0E7A/nTlJqfTq9yycVDT9tjs07blDBN14M/b6mKb7kBhgWs4 dzlV7kEKe2U41v8DFvZlbVdxwCWdyvwE1MAa6b1g4f6wPD8CEH6PhROI/DL5gjPwNSzXhhI/xAJZ SdsVA463gcX8tGoflYxjvvTTARGaQNsQwhI3XRJeKCvzzrYyQISX49+7wcIReQSyZ6HG5sk4Mhtw WjXOatpZlZ/VUekBa4jCAq19BUuKefSiphroe2f9JQhdUICcZ3sLqjg6pK4463hsWvWUiFqG+gwI J446dP3/NeQEtDTnVPvLaG8ZG6wQ8fFjfPKYmD6mbr4mr1eJmZOcsWeXu13m75bnH9eIzJ2bhHGG a/jn1bu/rH746/qHf3n8x79++eNf/v7Dn3/7/pe///DP/+v7P//Py89fLz+vERcfl5cfV5cf15d3 q8vb5cW1e3HtXcK5T5d+TBzG2C6OrcLIkgx/CjctaZ8eulztJauR0unRKjta5kZL3qfvpiUIkKHM VrFX7kIEZoZ4OPjCVoHfJqkS9dhgHhtosf4iMQB36CAO0E2IjQ+Lwoy8CTNuIKDHzuiyFwj4i5BE tKlHBRdnbPPBRC/OOtZxSyapyCPGKXfIGidNBotUTROcAicYqGCtW5xWtVPBwglH2Z+wsICy2uXI n77TMHcAh+ocsUMK0Ogcf4eFe2KB7Vqm2aFI7kPWG5+xIPeH9sZCOkccsUZ6f0RG2ABBYaGiqWLO CaFKlwqdgziqGEdCFsBIADq/rCDD2k6gaiItAZAzzm7hzWuqXKBcktpsdUSpYzI46LiRYbhS5Z6s fcHCUQ38aFCwVfyGHfACDAKYWDeCNT1SMwIE6fysauAyWLNZ4AUWRCa98M7CBV0s+F7Ib/Wyzxuj JLYDHZc7DoAUBRbcGQ5isBQ9rOZOKcJjfiy5A6i/jgAUw1V0tIqN10BEfLqKTdz4xIXdhulOydhS euLhlsjEis/s1K2d++QWfvaKP3vnvywvPi8vPq0FAr9dghp+/vv7X357/8vXd5/WDMDhbvXu4/r9 x8d3t4/v7x4vr1cSy8uZdzlzLqb2xcQ8H5u5oZsbeowRx2izY49ZzQa3jUjzRy8zXgEF2eEqO1hm ecVj2iNwz4nH2d3ZqjBd0cWPPMAhDSD0pQkyhF3S4v37+ABAWKSGZqKnp/pmCnzRs6JdEwHG5JBJ 20DEO2ako4dbi3BrHm3r0Q7CiDHMcNsIChZOARAWu2QDFCdyOZR+ShCRUDgo1dQDDT1c1UJVrHVa oIbQZZ7QkB1JuirSHkiwQtu09gQLO9X5nuzmw/pJeY+llbnnj4UAFyLpfSwcyaXCAnW+iLGXWIBS Oq3qJ1URaVWNUZGQ2qbqIxyVpdhVEQPLcpB+WtKR86eilCT0s6oZrCJLtSASvqqJIdLADhLzXdqZ ByALkAnIQ47Lz8HpL25RJHaIBS4LDFX1PeQT4iHaWQWflRGtWcGqjgUkWEP+z0M1ABDrCa6z+vSE hdAAXOAIBJZh2csm+3rMWF+LcjOCy+hxUo7Dcn33tO8EBu4xdxZYQRkBkr4wSMFTgxOR/oq3DLwI zOzIi42XsbEbHTlRqUFJIVSib8OGBwdWeGRFx0Z8aiRvrNSNlb6xMtcWnDI71Ner3M1j8e63Cyil j1/oHW6X5zce4vIOWPj6TuI9ECGgYNyuL2+8i5l9MbVUt4IiauJkpxK84qbHAIKTna04jjsRLAyW ueEKqZ4ZOsALUINfqZHd3PWaBd6Rm8ftVFPkF3IHqJBYeEgMtGR/kR5aqZ6R6dvwHfGeHe9CWVkQ ZnDl6a6FSEGVgTg6WqyziPcMyi0/IKsABz3cMUEcYXy8bZkY6Sgs4EYZL2QdmGOEZw09VjeidXgN PVTXz/zxQoYgAjQBNUVNBX111DRhuveQWjW15AIvFhZMLNpHTKH5YVWiIi6YC/gzFpTthR2AGqES qywClXmgPD8u359W5mdYaSX3wE3wp8i6Ux8LwMviVBleOl+xDyVi4aykBzdYCGywcCZYwOUx349x CI0E11CFl0dwZAW/Cm2woFTNqYz+qs28B/hz6uAgvId5oIp3BS2Et8o7k3TwEmUtXNYiFZgsvn8O 6vtYWJxVzICw1RMWwn3QgYMcjmIx58wDlncHpJDo6/GBqcbkkNghbmpzzgZuAJdD56TPHTdnfTvI qiOng56mI+QhTmTgRIaOYIF97ejQi8jktozPuWEWeUhDsCHhkRce2eGRER7pkZERndixiZ2YusnJ MjHk9qLMZJWbrnPw42MbyZybefmZV7iGp14Xb76c3/12eff18u4LQfHpt/efgI41FRTQxOqTl712 MjMnjYDvZpkLT2gjclMyRX78Egt2eggzDuzImOI1G47ZmVsYO8WRSzgIy2SVmoIBGRrJoZ4aGqm+ kcUD+3a27/BXkFjgDl7nj9m+l8Vlz04NjE2Y6RFHsFJDOz7gBihQBixMuKPHht5mpETyX66H1Tgi bmwb4ZaRaFrxphVrmpGmGabEMoMyUhJoquN3fDioOKrLylkXFQEv2bBADcd1W36k/YSyOuLabqr6 P/Qz59IrltI28iu6kkBVC4KMKvPTykOgugAGT6sQaQvhJi2AVbeqExEEArFwLGYZqy4takkPAAgl PcQfxVOIgDnFKo23hEfVDNoNgcNRTTtmCRRvFX+RFWnYkZoJOASRuhIQNiewM3Vnv+HuN2wWmQFG vJMqxA9BelbVISNDFSMMHJX1MOGAW2ATnrAAmODPsQIC1ee+c99TQIj1Vwju8WQRxkoOjMTQkho+ l/HQwA4O7dDQ4eXIBRwCA+sMN3JqTur8fVnqZRcPaCWCx46Q1S4iOnIFccIvEF1dXF+F+2tchuBB BiugLMSnxUtYZ0MrPLQBouiQdaqYMrx9VoqSQys5NJMjKzVCMns5f91+lLnx9fntl4uPXy8//Xb5 CQDBj8vsrZe5c7K3TubWSd+6abnCW6bAlJUDIkYOsJAbSQxXmRELU1liwWUALFM3O3PyQ6cwVJdA xDI/WkuskmMrPeabSQ2s7JCskUPa90gNyqHwluHyfLxGFIZLAhlPOHGFngBJzmLRaPSV77ZAxInR yu9r9J5nceVHJ9pjNTjasZMtJ9Gy4y071rKjLUuag3aQoyA65883HHEqXlu0Ey+RWnLFOq6bJw2H 3T1qpPsj+ErkXo1AOK3Zx1XrRC6JDpFAWPZPQEA1PQREgBoqD3SjZIr5KVZjwQJ+VEl4JrIE4jwg K3OgYmH5BR0gwmUjUjZPlF9gkcfkO6nJqk538OSCFRbwJnkkS6RuRpHSFR0BOIQqpqznJoCwW3d2 YZk5Qo9X14K1Rag2h3pE2iPCFSNSNSMVU17X4I3VRbiOt7QAIiCZwA5nld9hIQUi6LlSO+KwNMcw hlJ76TsJf3wa67lLXkD+D+3jgXkCXhg6p0OiIzwgCiiMe3YMKBhwRkgNS0TwK3boAARHhhlc6XO5 vivh0N0yTNLhk4dxt6HHbQvgnb70NXq8c6TrRgHVHgwv0GrTnIKzuK66OaTxZJ2frAuI6bpIUHwp 3nFuNn+3zt0tMxxHd9I3LiLzcZm5Y+CW3LXLbUqUTC68AB8+ecyP14AGIjt2JWAlPFZrEX0nP/Ly lEngBbc4/VLEy01XWNsJHNx55Khf5YGIvpUbOIj8wC7iziPvYrI6n0HgfcnP3OK1V5hJTL3CBE8I 1FjpniFGw8JlZkhkIRJ9Q5YXrjBxXLJY58U6dkzmRhJyGWvb0bYVblsR2W8ebWkIuI8wZJWMoJ80 F6fNRUBcxqnIJ/+yacGMH9fnJ/UFN3HUjdO6LNFI/rJwhIqahJRtiQXQAbFACJxInNaRxgzirs6c PFGSSWSV+Ah6fKAjXNEjFS0CZVLGM2ANN6iOGNYpO2VABEnqGM9ZI9ecEX2EWEjKzmeiwSh7avZp 3Wb/mm1H0BbuDJjMo1U9WtFiXPw1MSB4RSNaNaMVRoLGBJKMz3ZGUjOo8YALIvrFXp6+l2BDAQnp EgtY7kYrACTVxWq8kvFpKP8lcjU0dIGFo4F5NLRPhjZ4AaQQZn6yXAltHCdByNQQhyWczb/SxwJ1 ETSS2ArVF5bmlxNTu96Gq/BgddYXOPQ92Zvme3nxIPTmnLvAkxMLFuxtbkRhkx+u87yEvV3nZ+v8 LafEcx/X2Y+rzO0yfQ0sABFu9uM6c8t+B27xd2HMPCz++Yknm/JgCtbkBaa3+AVu01ulh0sEVni1 cQ+RAzvMHouzZYESyy1MPAlcYf2qMLLyQ5OCauicD53LsXc5WV7MVgBC4RZYcM4Z7vnUO5+455Re dmFo53pGbmAzhnx4fmznRlZmaMaHDrcHDmjVE32HzNizk/6ODztBY+7EVPTcWNdOtrVEW4vTlcN9 cLvTWUc/a2lBvzOukTj8oE8HTM5abJcDKQFJZop/1mkNBldmizwix4+csmPFpZX1ySqS9uFE7elo aOpkEmXeESfSBFGjuUc0v9D8i0hNi9QWkcpDqPIQhG5HWpJBkORYnGFsLSDrqHp/Wn3g8l7X2H+R Vww1jCATWBd8mad10BZkHrCwOGpApD3AN0XLD4mKnqhoCXoQ4Evnsl81w8ILsYqZrFkBVrd0oCxY 1wI0WXg2cf3V5xmMDEWRFxSrC7GaHHup0ZLNJraclrHBkr3agYv1H1gICgQCvPw9FqRuHyeVsycr g0NOnJUWT1KdjECz4GNB7UrgkEMUwdM2oIgAt2cssFrlF7XEsPTADrDnVgyKYkAspOBzpS8AqZ/p OQiqFOTwTLYU3a6yd2sfC9cuQgGBWLjxCmov0gzGGUBAniPJV8TCWDTSBOEpW80JEEAA2T5bq7TP j53CFNTA1kaOPXE3P3UABMT51MHtRVwZO+eT5bspwns3W11Cv93g5WBz7OLMFiy4ggVGEZwytCnA Rm4RT87nJ7jg92VfuQtbwYoWCcvLwtpLLQs2H3+vVHq9lB/4EODQjUTHiHcMJbo4PABjzoFzkAU7 49yg0TakKgUgPARbi2BzftaYc4NG0wg2dCReqMFJwrMmD8vi/C0PxdUVFkIiRQKwqDVyykljcVSf H9bnPJyk6SuxU+h8GbU6ZrLRUwRrWriuh5HkCgvlhzCECqWUJuMTWLQt4Zr7wAYL4YaOh+DlQnWh BqiaGpZxP45r1n5dYzumNo/W9Xh1kawaCKz/9AI1OGVjgwUjVjXj1f+EBW2DhcXvsCCiSGo+yzjP wfA4C8emLWIZHy5lcw0y2Q4PHeUXgnAKffNsYCmBFCcWeH9iwScFW9a0ZWK8issJAFz5iQiexfQC CxQA4jIc/tbXSAoLSyEF2bbD/dGyFVSpL8okO4GUkKoOeC3TsxHSI7PTIyc9cdJThzvyrv19eamp w53anCdkyEakNTdoTJeKFyCTipBJE1sFBz+Y7Z6qRIEFirDqTHUnP7U3gesW0hvXCzOnOHMvbmDY V+fXy4uJczH13gMIU+fd1L28ZuGLqHnGAnhhiaB84uTVqjhZn0/X57MVXwvB13Vh+cXmW7kZFJ2d H1v5kQSwM3I22PRykItAypDCDAotDUT0Yfcs1UaBB4l1zFjX4o7aLlt+MtZrBNuLUPue0XoIteYR iCvpg0iYIW7lYE9Q+fETUAnWamamBryckUcIhJPm/Kj+8IQFOS/XlMa6mjxkvp1K+iGxQQ1huNcX WBADy1ISL2uLMzrfebC+CEsLEoFHkYxqxEKobgWh8Hl/8xSaCsncBHIXsbqeqOnJmpGomfGaBRcQ FODgSgRRpVICHPBY3Bis609YIA8iai+wMF6mRmAENz72EliFJkonq3mGpRqZ5iaaIetCHPAeQSzB JggQOKujph2cVI+tWKCAoc6KAb9M1glCTE4AGDoy8+lEN+cAgFDiT7OmrDtRpwWHJClOeshWNcGC Lf9HSwkwgYMVZ8+LFZtMjyUdCTvZY5UyySElKwFXO3GTWFpxCZNLUDgZtflC9uhJPYrjf0+8oLId WY10LT4FlvqZV+Tib6nkz00tRB5aa4ZLm03wG6colV5E8dq9mNiIdxP7PbHgXCibcK14QTTSbIm0 v5itL2aPCLoJFdeP59xRSEQUZpxjz84ABL5WYWYXxmZxbJ6PLeEdwA0v9CS0LAm4e1AMJBbbKCxS sfdnQlDFpdMR5xSWxd3ldBlapHMv8RDpLGJQVm2EFmnpCFBJqKUHuelVNFVbhg8bFFTBpmx6guKi GZnDdBwRC4tTse1sCLI5bryUTOCacMPAAh4FHCrzIOBAiqEZlwXfYABl9QUCcIuwI29EGybgEBLU wBGHa2a4ZoWrCDNU5l51GB/cmVioG4k6gGBGcZ+6YIHY4XU8ig4aHNFwwg1OC4c2WAgI9wXrzzPb mckSXBDnIUhecsJFNSvToRkOS3NkmqckDdgaYHdg7EUQgp2Y7OVnzksJEQYzwfOUvPhIbTdweNrS ZJUegx286MhHE4ddh9zFiZCHcxKbRkBG/gCHMHw0DygTiyGhpFRMYWFgRmTyB1hISJE/3eOIhUxZ QEJDSHNJlJk9Ozl2/cOdhmaSksPOzFzuRZqxMMuzC2YrHwusI3E1Pp9559cek58hQFCKaGxtsOBk gQVA4MYt3NgSTuEW190CMvbaBUdIulqXE/v7mfeeaY8bPXEoCgh4FZiI9aUA4WL6eM4ALzxe3BAO RQUHMNGtm7+2Ctd28Zrju8WpeT61BGXO5cRRl5dj593IvhxaF4iRcz5ylNDKjR1Y++SAG8nx31Gd DhiNeAcBUODz1KPd+2j3Idabx3pavGsIHOi+/zMc2pxLDwpTqAi1GXIjIKCdSAgWpIolWKCP4BcN sAYVlEUe6R1rUCkFWfwEUxiMBrKRjkC0EHknLKHujwizIsSIwB3XrBgCjrhsnHFGkToqVtOAhXjd jNWBBeDLfMZCwwrXzUjNiJBZbJ6L1bBgQM78N0ktB7p5wkJ6skzKLHRKnYYEtTz1RCrzlCTFETzj BXjhGS+qd8alnnYACc/wR3qSIooSI4+nh40IMQAtM1klJx6HvYEIggKYWsbEm8hRY5aCg2CN9EGC GKhjLTco6LvcztP3dz2rvQOCBf6LCQSZI0ogehJ9GRmSaSKOD7GGbyRGJkKoAaTgMjNvVjzlgD3l 1YYXlr5EmW3g8IwFu6AEEqFk52DGGXb22kJg3c7N7KzECyyAFLzLKfSPRyWGF/KJxqNGmi7PpytC ADJp7BXHoprIC6uiCm4ttxDnN2AT8+Ia/GJfXjuXU+f9xPkeMZaYuD+MnR9Gzve06s4FKANvdQxB RTjQAQ3tzMCfLVEtwqQMzMiE4SLemyd6WqJvxHucIYHvjrW59TvaplgKq7SXEVyGlKcQ4Y4KeBAN SFHfLPCyootkk9aGJkdOEQvhphFB0AUo37HgdWihpiljirju/9bHQp3UgDU/AhRUFrEKTIGBlT9e ZVEoUeFw7xnug6guBAs6sMBBxxprREpWEQsNK8K+pCEAARCssGrHQM41IJBw/+c6Unq6VOtneuJm pmxCZalOV1nfOVIycSxnskxMVgmgYLKKMdvdxNBVowgZiSx3AC2JAvwKQJis05PVBgvcCsQNQZOV EMdSaMVLspW2mQXl5ggvqszFUAq5ggUAAZ4lSXryyCxKUEmZMSFrXbJj8ZJY4C0J+UdLi4Tz5Hjm ODRbX08MAQcjJT5CklaowfcLS+UXCryiAiiQ2CCCZSKs7YDDzYpnRvHQjyXLtuzfWZmZlZmYmbGB yI5ZGsL6fM5Skl0cYqGGqscn+eyyixPYZMgbT0VxvPSxMFOzVeql4S/0IsMsjDV20mf2uxsXWAAE fvDD/ceJ90fE2Pth5L4b2xdjG1g4l5fIq0YGrMTv5rK8tESSQ4ZaorcQLJjAQqLLqV1KqbYVk4NB In7as9mnNn2EnrYEgqa7bBEG5diQwBMW1J7xlpxSu6niyoC6LnYYKz/0/zy0KRYJFnBlAaREm89w iIr4iTHVtRhRYCUQRIGRrBgpyJ4m1vwNFhomsBAhFoiCM1VHAgQABAa0FoHwhIUzCVU6w/2fsIDM h9P01RHcGYI9WZfsIKeB5eQ8PZ6hR1BA9vCwoxix4CXlrLysmvaRYTYKrTFSl1SC+6eFGrgHZ+Im pktuixM9RkNBILhy/AXZIUkwrlLyEskxYZKg+mKPQ4AA27KMCmVE6VM8RRYJegRbZlCdhNIAPW40 UKzBWeueGrEGKdiJMfc+pKau0B//QIaUjIh6Tuip+qqnIsdOnIsF9ukyJ7uW8mqD9gwfhZUaQ31Z ybGJNSSNy7GVGUGxe8XRqjBc5vpOru/mOOa0zGK5GFuIzNCE883hcxswS7NsRkhjGnceuvnRkq8O 2TZbpmdGdmZmEFND7LnNkixswthltZbhvpss309W78fL9/zRvhQ4QEcJHEAQ8Np2fuDmBx5fRXp/ uRGHr9hk7xupvp7q6UmiwGTI9EisY8UgojqWCjEaHLICL4d7PGyBRaqOzvGq9gIyCcTBk3lkqgqs EenYIR45wsHCgMzlhqQ/7mOh5mMhWJ8HGIsAj6XSwuKUJYQXahrMBeFQ1UEK0QovFRBUJBpWTDaA UF81me3RJpuPSh1FKZkgyUz/Pg36bviFSNOWTj1DUUO49nwmDA9+mRELGZnb4ZynVFFyU3g9Vlpy E9bhsxMRPNNVZrpGtnMXz0iwILU+DkuPmPmggBTuIL/aYGHF/CcWPIUFBgUM0EQgcBQBQBgjOWEu nM2ZGLB+agSO1PMCC5xoIrPI5h3KJBCE7EFQEad9dtT+Bamf8BZOpY64/QcmWprFHLSQ4FZWv7OG N9y3OZsn5UpVmSEKRq5ggYF78gPhAYNeZopPgFzD457gR8Z4t6Yaq8gy/5dS7HVZ7+3jOWUOdmQi UgOTAxtMRVt0iyN3YymMjQxiQRoZ01ViaiYZVgoOBWREkeZQX5FEVsIpsM+ry8n6Yiw/jqzzkckY w1ZwMxS3RIGARsvicClwwBtzhSagae1M3wQc2OnjR2dJ20J6Fh3fayc6FgOEyzoeZ0XCXR0R7QEL sN6aYGEeZgkXZGGGpM0Xkc0aQAFPu20roy0aSVyDWOYFlVJ9fsZO3zzQ4GlsTFEfC341FXCI1fR4 zYA6ilY0aaXpiaoAoQyMECzBGhuFlP3UYGa8SVEUlhkVkIXwBV0Jd0tVqZoihAbfjJpdARYiL7Fw u5IljslfECkLwZxX50MSCx55VpXcZ+vs7BGRFjgg5CBi1ZZi7xXcoc6WASLSEznvhfBZi75yJTzZ 6eM/3McCIcP8z5AObB8LQ/g+2zcjGyzEBp4YDWow1q82WOAcdc96WtmSfnOK/1AWewc8eYlcg1dH xoIBOZtnpznLYaXZX3NkftWTiW5eChbczNABwBmKKYCOzdheRpxpfGgCBYmRJX4EFGbyoCckedeW 9KavZ4FLsEBlArAMjGTf2ABBsCD33GDByykGGdGmxUZ6fGQiALeMjG1wgcI7GUJfLYsjryBXAIQX WLCKiLFNGaaCWPAKpAYQhKOwkOPECEBqpSVSPYv0KlX0RM+L99w4LruOGG3BAo83NMM94xkLXZ3R 0UKszeqkBjERcgQisXDWkXiJBaogM8odTKwUQSxBHYEUWJvinJWpdJQqpQILYYaOZIZNiAkvgCPi iIoRK1M7RVnjNaQVQlUWaVncrs4RJtJBHFgANYhZYMOuSishbl3jm5HjgEgoL7FwxwMhsSYj/6mT J4DDqjCD0XuEtWTZhEDgJFvu+jHHw8QeM7NH5DNrRHQEK1lUOY2QkQImRBQLs9OVmrfJMPk5qk1e mC5Ts3V69iVFE7FKCnEALxzpGVpKL/0eC35iJ+Uo7zg3CkFiedw9R0ry1PGtHJOA+u2ziAQIJHn0 tyu7Mj05x0DuJupOlVh/h4WhuEuOp+JuIKZ1hjsaVjmRTFRNI9klxOuuwgL5EW+SO6/NGLvDwIIp WKDSwztPc0OQAgK4BuJ8mRqsUrw0AQREmgsyx5Y21WCpAHCQCQBcKjymaI706NCMSnsxqf5MytFl To1FyaAgrlCPIcAmbFtz40ZxLJZE+Y6xWwQKeiYDV2SOvTBe4e/KkhqeUCk7mAbLDRy8RNeNq3NC uk7yCQugA8GCCtjtSJtT6OHWgiPoXRFXMjTFLgbdhDqZUAHBiDWNeBOJquMKtRA3NGlhUVahlqmW a67bAgfleSl1WCzShSNUGDGQBUSR6B+Kf543YkU4keKIO+Cj4qy1Ekox9YRVjVETAdbUotztbhI+ ted5pOzHx9zNY266zk9XRSloFHlcMFDwhcNvUzs3U+FxbvOaM8ykBimWKsnEdZJCmieypqYKDq6c 2v0SC8vkjDvd0tePwgu0FRke5c3nITsghUaEgGCBGfVEDb5MIhZcX5uN1dn4vgxTUEoMVHPBoW3x 92KzRSLn53uKpDZYcNKysOOBL7DATOOxG6yerXJjDl0gwYpwEJD3Ei+wwFGl2NBAAAtw6MTCkFVc Jm3f2wToYJUmENaAQ7L/OyykXhTB/Os98KBqdNIrBQdGWJ2EwwM2fffEYoUYEGWEc8OVCrHndhbu YGRzsFa1CBET72LoFvt2ATHghGFe7DyxwzEqOpeMNPGVp05xY6wyXwwAIdV1gQWozUgPQNAiPR8L sZ4e72kxoIOtukWsY8SlkcGhKc5HGcHOAsFGRltH7sWaepyBFRuIMOCOo8z8Bbt7ggUp77AGJSRi RWUQNyIGOfYcLJ8yJOfP1Pwhj4OW3kfLb2RI00FP4rJhqHtGuKOHVEJX3tRiLV3BAU/4jAU5yC43 WRamK2mGrorExZpj0rOlaioV5DBVOXl4KVjwcxhYyPrh5a9XWR5EyVMiiQVOOy/5Kx4vDCCsiAKS wjolHY2UwsJ0nWazz6GzmK7kHHtuLlAmIjXygeBvZJbdZCnVHPeLVAyfVhg2UpFAU18nwU3Qa9Ul 4f1JVd5z+Ijw9yxk5OsnxPIvlYmAQSiMqTEg73PS6hUsyB4fwhwaRrAwIjvAmEMs0ZKMZG8pU5rL bHq4YozWqdF6gwUz3bPSPfsZCIKFpOhzSj4pCMDmBIdmaGAG+2aIcLAlpJggQxdJvyiE11pmAIfx WuoAUHQyZCsuD5Yf7/9yRDicD5ziUM172D5xjNUMFSdAKJkkWHTt2SI4Le545Q5ZRoItbEFB34j1 jTjLsMRCvGfEu3qcc1CG2rVBm0axBEG1CHeQ6g8AS7SlCRbMRMsCFhIQS/VFnCZiITmp+nqGCnKE WuSxdMtOWOEUk5eN5+D2WPWFmP4eQNayoLKi0nRI1rQU4ACl1KTL9vkFTNEQSPIIFDytiad97rXd cFA/zzGAFR0ZhwEen7Cgej3SRWJzSqb6iYWsFF2FF2QESFpXqtKYuV5y5kHxiMxUy4HbK15O5bBK X1wJoKToyvTj3pm1bxwmasGXsyVluU75fXCEK8dOyo4zuSf35lD20xGLO5b+mmou0EQvU3IsQMZf z8UyA6oqxptQWKChcPkNFDDXIyuHGGi5oZEbmjkZfuDCO7ZlLoKmIz4GEPTEGFjgZUKEfRLvZOCq fE5xDymVf3q84je8QETJxre0mhhBmhEIDqOHtdeKt81Nl4SzE4GheTYwzwQLMn9iy8yqi5DTDIAa V3VYYM+h6zi85DsvhQW2EQsj97xvAwsXMi5YBBBGjrhvuAmzOIGgMgsjM8+/1wbqoTZheZI9EyZC hs/ZlcjSdtmCAjMuAXMkcJBNST0z0WFvwoeDuIwoB6Lgr30sxFpavGUACMm2jbU6KVhItKBztNgT Fti/M9UxnuEOT+YJUdLr1FctK9aGHRCyoKfQY9KYDrfsYIdbLPkdajyAHQKM6iheBxC0dENPNc0k PbViExFOTT3RkiAirETL+T0W1oXpI1FACwZWBS9ANcEarAo3nDGAayjceHK29iNlErUT99codZQl WUjcuLlbnkKcmlhpWAwhEfEXawECfUSaTEEDnp0++liYEhQZYRDZVkmiUQvvJpbCHUss7xnZ2qOw kGZWIycttaGGVyYvsDDi/G1SZJJgYam0jWKEDSj4I5dT+S4VPJyTG1MnPbEyI+S/mR9q+ZGRZ6qY +bGZG5vZCfcsyLYFMzpaREfz+FiLjzRiYfyEBayrOoKZT6ZzVZ8lDf02sGSjqCNtL0+A4DIg0ZFC LcklIQUfC4i+EerpMnxiqfltutqu1HkkKOmhx7ifwlWh/kyfJpD/L7BwroAwhQAAO+gSBuEwlj8Q eBfdKCrOBE1w2GnI6hP8C4EwoBZNDkjBCYE2u/ygBvCCUIMqRsnmd5OnIvS0aBc6SpeNrmaybaXa DtbqJNZqwUK8gQeyu8dG9uZrAnhUAsf1HeAi2FjA7UbbVkzNqIMppA0Rld5csEFekG9etuQ8Covp 3TBSDR1AyCCahsgk0MEzFpIKC8Bm20623RdYWPNkePriR/rl2ZozmTPYZ84M5GcGqCE3k5oe6ONW vDOLnypXXbWnRr6ygXM++Vt2dbNw3HystHfBI6qSz69mkI2TCk0zJVo2Uoe/WvK7HqZP1U5ns2jT MGap5LHu2cr8ZqZcmVWbICkFHFxKssnM3tBvJ/k8orJRDgNkhigXLDv6IZCyEjnZ4+wXeHkLhbca hEsPTFUcIC8AJrTegoXx36KTB2AhIVhIjiQxsFryPCUeGhPvU/NIL5LVIXAN7DO3J8gBAgnuBnWk aMO6jVTyeYv6Nopo1wqDEXr8ajx2tXhwhxOVJVcV/Fkx6ysSMVlJG7nRiRslW6mD/fkx4j3n2fWD RvIuBu4loo/L5fvhCqDITc3CVC9ONMTFVL+YGMWRXhwZBRk+LwztAnA0gNEwiwM1Q67LVj582kA0 A+6bW/m6VgbqDtneMaW/wxMPWHECFgQOsNv4NHjwCNZtiJOWmWhbPKWtYwEgvIVH1JqBrnEmo+Zh GSbkZnBY8vo81lCcQn1F+KjaaWsRbD0E25oK2fHH6RHcISlnISYaOkMMe6ShUYzRv+t4uRibiYRV rOWk6i80EnL75kvm5jF785hncICTOyi55cQWLJh5HwtLsc9c1bmYS25npuorG1bShHILPBlVQp3Z wmPqV7mnCq0KomOZFVw8aX5+y49oLcGCX//3t9WwhgOjB80PxvkdFrhtGT8OeERSsm/R/2IpG3Jf Q5bqiH48I+ZasCBbdcAF3Clgy3inhNp6wzONFZQceRJHrKULLZ3uW4AGi8aboe4M2cGMTu8T03li AiBoyZGRGnFANMFJXTtGOFDMJFU9vy9VU5atTKkmsd7FnmDPkoYID26KkRG4GYFn4HfxcEdOJOMJ DGrEFJCJ+QV/cbXcRspicrJHD5Ic2ZGRFRma0aEVH3E6EW81x9kkWybD3eIAYgnhXfS994NlkTVw IzvV81OtOF1czIx3M/NyrF+MDFAGx//G3sV4SaPRt86R9hxi8fe0pkegDDM7sOjE+26ua2e7ThrL vvwJ+KujnKjUIz4WdERMHSrVNWJtnbZIUKDGBiDdcT3CL7s0+U1/XSPaNeMwLGCZ9iJWn8ebWuIZ Cxa8RrJlsbXRfgh3NJa22hqHRprIdk2ezVJYYzDhYTT0cHOO+/jRocEHFqItO/mi7yzfG/Io7CB7 7QmElXwXybJIm2ABCPTON36z1a+szh7lyqPaHZ9Xj+I4NKnhBRZcmc+UKbgNHajvt3qBBZH9MwU0 IMJ70RFWAoZVzTwHnNgsY4MA2ehv4ZcmoE8fPCgpy9btSkroK/W1Diw0YR2DbBjaattaaqC8sOu3 mIduQSIlUhkKR8AiQJBtzhmgjDdajJE6oIyuIXmtp2Z6cgqzoKdGOjJEiW0Z03WTyuQ+74+GrjCT svlC7fpnE5CnkOFG+eZHNf8gVX05yslVWKBllrkswYKIIrGoUCNJPLZr+FjgGT4Gci86MNjvIJfh 3SKHLb9ehD+qb+cZboE9FDtNLBj5KSc9Lmbmu2vr3cS44DQsq7JqpBxwgLK6GAFWdkpWAHCivyaM OPWUHwgW4IC6ZkaZIPw5A7x5HRopNtDjYrRVxZsiqmOkeiwXJDtmCva8gwzXwClRf0MrGNCMKaGI K23k8CLSlDIUvxfAirW40RuXqtOnWn6CBd4zvMGCQhlJxA84joU6eESwYHPIRA7k+T9jQba657it 3lNY4MSm5HNRvn8kL4mau1nleaTwOu/zyKN8j8+6AELh3VwfDi+xIEopz+eXnFdfDHe9Eg9OXaQM ODXYjXoVic0ECEy6VDhXWN6hQ1JqXGTqqTNbiKkJ8zzHyo9fe8/2wfJeetPRfsaCwAESKLMJUUdM ++JYKjBjN7epoOZJGXZOlIB0aa2MEITCC/noxkxfm6mpkRxjqZTVkgeUOZtT+1gRQm6w6cz6qvsC C/bvsNDd1JSUHZbxKphi/wjlTQWJrlmqnXFIEdmwIxNExAJd+dCWUqcW66ncM8WbWKxc9TS5j6nO HCA/skRAW5dhRxtrnXV+bV1MrfMxZZJYaXyA+CQ9+MfzkXsx5hgVvxdgasuJhbyek/kEfkp9oizT s6Thzo80w6lI4FFPDgzyyBCrBM8JSXb0FCDDxoqV7hhyQoiZ6mgpGAoRfsp3b3QglIwRbGmhFtvZ 6gsCRNsAEXaMVp1OJOpPm+sRaiQtxuN3rIT6DNuWsAlVE+QWWUmwEJPPUPSSkai/xIL6Min5HgR+ ZRuxULzxZGfK8lyiKFHgkSxI+JX4aH5rj/+tVbePRe6+fxRecCR8IHDIn+EVRHr5WLiWA7phPejE V+pFxWjL1ktlw3n7Kj9VJn2Vm7DSxawGEGa+75Ai0mZiCuv82Ctw+porea5vFamOHNVKQBLSaMsW Tqov+WcpFnimgLHs1lTbkFVB1ZdPUAKkm0yfcMhJpQUBDpKpPDMzNblaynxFhkLaTqpuOKum0j5T 8xhcLaUJMpBJWiX1ZXok1bGksqTCzXTtDI+ytOW7g01BhBmVDVNxeZRgwXzGAtOeu6TVj3CyKuR2 8S+9BRsBA4OdwZEVH/uR4OG0gIOdE/YvTsEIRsGvFdhqt11x5BWHxEKR/VY5NkHFTL7XEip6IuyJ NUTuz90TAysn/iItaiorFTkIqkzfyPT1XN8s9C3p/Rm87Jvc4tozMmrYWIlASWYuFB1Ohj81take O4KFthOH1mprm/qVHnsK6isrLjXhpIgxMex4yJyDuF25T88HGlHTePYLlEYfv2Zvn7DgChYECJRJ 3J8oV7zi7er87rF4u+Ss/q3n5zkwwhu/EAu3XuFug4Wb32NBDIVq2JFTbh8Ld18BB17fQOBFrJRa 4/5lqe6qDf6stYIOSCg0KYIFIoXj0GNXtqextURtPOJwQnZTMhIsuBu176PAl0M0DpQQWPALMosl +zQ9FbI2Ih+W5BqO0tly6RBBI7ASgZCdWmKon7AAgrZS0j4gEPpeVmGB5x4r+cRNefL9XNJKkNOT iAJctg2gANo727EyxILa02qprXzq4MqEDOjKLKL1xAvJns5LUozJYwTgpl9ioQ+5rgML0aERHpqh ESM8MmMjKzY2ExMzjT8BBDHhXiFu05jY3HP9hAV+mG5BYUG8Ev9k7gRxM3SUcmaOnGNQULuKBvTa haFffCvIMYbFoVkYGogif2sU+8b5wLwYWpcjG1fwY75nQWulO1BN4iaEMdmkYJ+CEWFfm03tOO2A TWVFcaUnuSaYPOcTehJegyU4K0reFMLlc9rpNkTRPN7V4nAuQETPX1JYf2g97+XJ3a7zH79k7+Cd V2qpL/L7FFaChVWR+9wf/Yn62/X53er8lntMkPDy7SFO/pYY4UP4VYbAgv2EheLNBhFqB5la/zdY ABAK/IIe/Cj8or4bUW0ruFkpaqAlFywUJDKbrwdVvCCOAx5EzVp7PAqDCbzkvnsZgc6JgiKCoJwn arCKhffU8BkI4jJchQX877h3bGJxqk22GODZOE3Nmeplni6YM6X5oZywh5iYElZuKn0H0efsdHQt jhj13aeTlxQWOGErttofd9/oKH8YifbTyHbsfNfJdbBsChaGT1gwOVvSV99wJ+F3xEyaBQJBT3dM Rk+2eT5jwSQp9DTIp0hfBxaAgtDYCo2sML8Cz4gPjZQ/bW7kJ1ZhypyH6c6JevRHEbgm2DlOb+KT pLICELI3PFYdeimPVJ/YxZHFEdmRdTm03o+cCxmUVQEzfjEyGWMkv3kxMC6GBlDwbuy8n7iXI3hz 47xnFXr4260s3zz+Io6Ry2HmSG8kOXM42VVGgEdAp1saPq5UW9wHK3Ks2kkrUC55BK7J5YgLi5Pr eiDHRF9PsD+ocz6hb8tHZ6faL7DA41MQX3K3q8JGCJ0TC6qJr7BAdoBwQnqf3y3P757Wf4/B272i MgvAwp1TvHN5MjZRQ3H1v2NhI5PkOxBv+AyCBVd9N6jCQl5hAdSAbBcscPZDenbKJmSkVc02x9CR HQcrtoknyFXrYrLEUvbk05GfskFJOlBTqQbTNdhPDmJjEJ6w4Dxvt2G7CvkgM9gDF0AojNdqH9wL LPBEPnW2Es0+Z7A3QSysefgSzz0QLMjWD9lFK5Wrvi3YcXJ9L9e1Cl270HMKbSPfMWM8n8pgSJNL sMAJOlVEknaehaAU79NEIzfILP4xfTxnxm+csS8GlQVnrYf62tlADwyNwNDHQpStcz050lIjLTcy Cjw5iidEZaWzoPZWiPIxchQ8kD06sMOD127d1LWVxicAiyGOG/n/bmz/MLb/yHMPsJ7Y5/Agshfv cmwi3k3s7yf2+5H1Hnebuv848xDf41FD87JvXfSsItiB44IEeJyn4sCAq1NqKW9SQrjAewa82dJz ZE9LHc6WkDpVlA8xZT4EKpF3/v/peu+uttJmzftrvuv9a2ZOd5uknAUYbIJzZ6JyJGOwcejuc87T RtpZWWD3MzMfZq6rakvgPudZq9ZeQkgC7Pu3q66quuuGn53/1Q3xyDPju102wHyDu8SObAn3Wbjb 18YJKpU+z5yqDAN6Iifv//0wXEBJ/IJstgqXO+FKJ1z2otVOuOoGy3awBHO5wxH4MEwazJfd+Yq5 ULEWyvZCyVmQzY/BsrgbCb2oo3HbF6ewUB7xCHWZNsyrsBCADBE3MV9Qb6IQ9UUU9Ob8LO60fNyR 9o/u/J6GNx3pzOQ1JN5B9YLkrNhky1yuSAzK569ZYDM2/AhLzIiW7YA/3UWCBIkT2Py21ycIe31p hNOrxBIIHhgteDPqd3hHdea2NWnTmdvqcBcqxULn/9s2uVUcK3xXe8g96eXjHG+p87JTDgolsO0C hDm4/p22GJNC325bk+yT34gOHGaIEla+MfNr+wGXivngFzZgwy9AyYrAkVn6/H9HLNH+1g8S2v8m a+Z/bCto7W92NA9mzO0aM9vtB9s6r8lhUo6dSx7rLNsGgx/8y4jv4P4+DiTk1m/cPUABl3fOSebc JFjIebGCBzEezlvhnBnJW4mCnSzYqYKbygMWK77bSubtdNHNFDt4JpW3o7LnYkEd6571YN9hQX/H 0Mkn30hj+Rwcx8/Wwo/twA/thZ9NeM85PCk6jjcEFlgdf2qQKDL8y+PfH342sNV9sCMTDlmEgqms Y0iJcPSOheqEBYDAA2p5klq4OghX4R36FALlIaAAC5FKN0IWvPsswFOIjuDLhAXDZ0FwEBY6cudX AS4DKCocFhQgC/i5Xf50Dnv0T8ulACnq1IgJC8W+L5D9pgt/b5GUJKCgsfzshX0/2p/czykc5qWh lNNdWAQZLBSHmqTVBOx985O30m4xYcHxW3c4raULCqAaECYFJ4/ZICo7i2WzG0/+RdTNWHrfntu1 5yAPJXupLMgmO/f/30ag7nIqoJy09a2UyB/sObxT0exZrXRsS6gAQHbavJuxkiibuL9mgR3mLGGT hdlf2zPKAmwLLFizW9asP8RSZsgAkF+ADL6L12DBE67/CXezQzXxwBe5+PONB9tt+WVMUrZNfUQh sM/4n80bbGPmrm26e9nZGsCC37fpDvbs1L6dBg57dhLPkAIjkjejeTOWt1JFJ110MrgWuPKTOTNV wJduttxLlzx8KyKbwaFK5qSsP5OzZZOUrbuAH0gT1/yWE/zVDv1shn404EDlX8lWFiTd7T3Yo3dg CLSjMzw789vd+V/gajszO+aMZLQklHUkeULXMPuz9XWM1FPVABZCQoFaiOcSDnmIM1no3mMBKxwU OLz6sRCpWYCIqJqBmh2sOsGqBFHiOOQFqin6PMFTrQQ/wh+9UO1zED0lOSIuIaJ0nwV2/c3LJjs/ +6p51LyezC5NIHJ/nijfTqjQo3GsCh3BfE6LfZQefvEu15uTiUN3g/JYxUBUMAEhJzvoqZp9GR7c ExY4B08e7/cRNQWpKLnFRlSkdG6IiAZTczu2ZBrdOW23YIup8z9kiojMWOYQMLoG6VTXnA8WHrcR 4V1bNoTkHGJmsIBbGbcI2dq1q5lY3buH+/YDnwXERcbslnnHwq80AcGZkyU0Rz0iaU8Qh9fL0Bje b3m2kZ8Em+ev3YJfkKYpU7Y2sJ0bbo5laGkF532m4IUku6K5kWDejuzbcfiCfTsDyzkpYQHrP5Jr R/NGrGAlina65MIyJSECi7/cSZe7mXI3Wx2ky704T2Ky/TkkVCuSjpC+L6aCty1ms7ftwLYT2fGi O24UweQ2bxp0vpLKoLFF2ZaeZ5eT0jkviMNsEUotQGIAebgGDrO1Z/TFbLtCrGX+nYVKnwFSbRDy QeiFq11YUK3cCcEvcNh7hyPfq3QTIWiHEp738650IhUvULOCdTtUc0I1l5rijoW+2h0LjKm682UP NleiBr/HQnfCggzj8lnwpDA9KU8X/L5ZfSYgpkONOFBFWjQnwVV/UqrwWdBJxf76VxD8op49N3Ux Em7pFCNmUUiBJ3kVT3bQdPz2NvzHcWqxO1Nw4BdmpBqFRRXQgXjynzXHDXruN1DBMmb53+SwOWmm df1dGyJytVNUWcDqnWdtznywx4U6s8/2cvwvT0ZzUzhMWEAkICucDyyJl0xhgTdMIIA757zEzPOQ JPhYJmzNOYZkxjfb7W+x8nfaMzvtuV12IS7stue22zPbhpTamSvg7wOud22KKRHCAV20RX/uRzjv UiDkXFCwmHcXCx5cQwpWtBNFI1E0k0UrVbIzFS9bcRcrXqbsZcudTKXnW62fLHejwoKICwrtyaAq VjHmdiwoCNmIZAd3nMiuG9v1IC7Yc8tBnRxyOzcpFTE9KCDI4Cx3ygL+BWa28He1JQKkW5zVf0Dc f+6xsFAb4M4sB9TC+iEe1twNCQihqhdAOCQH4kAvR2o9gBDjIQjDSIXiOkx/0dNKRBgqo8qzzolD 1QpW7CB1tCc6WvwCrS8x0oBhUmXEM23vWOhCqsi3ePozT0Is+sESHuj4Uz/Xep+FYneqsucntULZ kUolu5CfjD+SSRQy8qKjm/3ZwMm9S12tr+l3JdHEg34COZ1W0fXlM1lwhQVHPIU72bYvN7GiMwMJ OTGE0EHpYQhyo7HDOh29AO7Aphy56Or4Hdl2QRZkI5ItZY7J2tvWO7nN+p0GDPQL9ncSNn87EdH6 X6m37jkd8Y24iPES3AQe0DHNIWD+1eFi+NVd2IL5LMxvcXcnBzVvG99xhVzPiS3sXM/vtGe3Dfw+ 3F4nqbM5qRfAafqJgpwFvcDjVgskIlrwkjkvne9kC52lYmep1IMESBex2t1sxcpW7WzFgS1VPbFO ttLJlN00rNJNV3uJUidacGWygQt9EdwzFnbazL76jr4T2LEDO04IvmkHRMhmJcSxO208kKwvfNa0 o8zV0o8fHFJfuD4L3F3VEmvPbBnSeejXdObuxUiBOtwBPcJCtRfg+p+yAI3shRpuqOGFal6oShbg EaJVOf6jPAiX+pFyP1Lp82C1UjcKlVETFqpGEFYBEQ7owBv/BQtjoLdQ8WDzTED15Nj0IQ2BWUlj qq4WwcVByBzUkl/gC6gkL7Lio43iMgdMC9YdOTndY65VCnC87ndkPB2vMnGuG8z3glqYYKiDLwfa 8z/PN+qmsO40laSZ1buNxr6/kEl6HIVhzZZs34pOiIehcIpXQHbWzHJrA1ngGSg8nNd9IK2kMyLh KV7EZc/u+CzowsZ1Zt+kQUhqwXrbZ4EicZsZpDsWpOoxt43/fVOMnkI+pCMsAAFvnuLFFcqgN9lQ xMiZcREWP0GY3/4U3LkO7Br8llRSdFHNyaxXsDDr582sBWGBgwiKnVixmyx2M6XeYrG7WOouVQeZ yiBVG2ZrneWa9bDurDS8lUZnpdldrnaWqx5cQ6rsJktOsuwmEHUXFQRHqt6QJCaMozy4t8IVvQYK HGkUlChutz0rNofIn8/IvhK558xrsCQVcEaDExaoKX51iQBBgJmzWxMW8K2f7rRzsD4MNkbAYcpC uNYTELD43XDTCTfdUN3FOp+yEC0PIqVhpDSIEooeQSj3YhAaykLNDNbMcM0Oy7v4ZGXKQm/KQrA6 DhJAd6HizpcdskB50mdKqsIZ8hJT9XzFre0cyoKEUnilcOHNF+9YwHVuUqeDaXWACEwGEMmX3fuz X9QARUgDKmFhYYKD7xr2Xe1Vw1Wytdq65kxZmCmaD0rmbMWeLQMKC+4+zAF3knXRzqWc/W3O9kdc 7koTiH9IkHTM+hGvO3dnBITZy902jMnAHZjFOzkH7zvCgjVhwZUbuMfarrKAZcAYyaNf2MId0pUR BNzgLMsGV0s08vWDrU+zCJC2W4HtVnjXiGApivaf3Rb1zdSWuiqHUwtyZHN231zADbyAeMkKcTBg J57vJArdVLGTKnVTlUGiOozVx9m697BurjTd1YPOarO7etB7WAcd3mIVLDhgIV60okVJusp8D/yL hffM8B5UBnxNlzcTgLBlBbgvle6AGV3250tXcF4rmz4L0h4gwDJlAfdnS+XOmpdMNQNFlnuAAFWV 9IqI7/gvLIQao1BzHKR36AdrfR4OJSxEYHU31DRDTSdUd4SFfoQnQw2j5WGkOIyWhtEKiCAL8BTx 6oCvr5vBuhmqW5GGG2kQBDqXeywE71gYhRqDQK2zUIVfcIWF3n/DQlme1DSU1ubKHYoLyu2O9sTO lXoTFnpz0mQ4Jx1TExb6/m1cv9RNrJwbqR4BLPT0GWltYnzF9s47FnQIcCcsDoJXP0CSm/8dC8Zs BWbOlCAWjMAuHL0RYnQtLOSd74pMXMjRb5OddGyR4uOFO3egd3gdVQElCBBa39EMFdG6L5Us+Kke R7dnToOZeyxY4gXIwmRLNQtwVI7sDjIebBOEmS0ERQbiooWdVnDrU3Drz4Xt1uxWW5bNHQv4zAf4 HXLGg/327L6xANeQwzpsB3AP37NCu1pBNqP7ViRPZ4H/ynTdXambq01n9cBbbcK6K43uw0Z3sQbh 7MI1RPNmWKoP2vYWztmsQYCFfdbgAAIsvOsGCC9z3XPSLvJtzvwGVnKZppD9RxSGu56PA1tqveC2 K2U7i2HhTpfeAf8O2yaM8Sep4Y6MWVbi7Lmfv2IhDKthJQ9DmlCtDyONMa3eDzfscMOJ1r1ooxer 92O1QbwGFvqRYlfODezAI0TL3Rj8Ra0LRxBoWMGGHWo4AbiDWidU48lrUqpQ1dCVUl1Xw7BAxV6o GIGquVC1A1UH2iRAhdIJVDpyjq0qbsj5ofR49KXe7TBbK1NMpTYnDVGy8tkxK8kiLcwFCgMqbon/ qanl1AP2knEssAx1VHme14l2/UBxIKEUU0MLwoKIFNqsTMhBMMYTT5hF6VLo7duSs0LM7LCtvaTG 3p65vMVGnYIbKHDU3jzjivZsrn232Ydb5LygBG9Sy2aSREBwpP1J+nm43998kLe/2zd5MNyuAc/y Tc7heV579jfiIHz1t62TZ9xvdgwY5PA3W23RAtofbokHYXXpAR9YEi2buE/ObRlYHvhxsyxCtR9s QVfSBAQDroFKgVVI+BGwA2UhHyIxuWSZZL/PNiMu2DxELmL7PScof1o4Z2G1x0tOotJL1Qfpxkhs DMeRKvdSeLLcTVZgnWTZS5SAhhUvuAnEGAVPZjIzIpX+YTYSL1AOaOeYI1LC0+lPAZa8zVDOxBVg BhhiuSFoum07su2ACxkA0pHkKjS4JYqDMpx/O43CfMpCuImVP4o2xtH6SPOoYUjj+jjavI02BpGG A4s2wEI3Xu/H62QhVulHoZqFhVilF610Y5TV3XDDCzacIGKqhhuExPBZ6IWx+EteWEDQ9BRjsBpY sBYq7QDTsFAZ93BgnnaqMvqhSb8TJDxYIA4+C67oBU+aYPvavBQQFcCzQrgvqaMzhXzTrFTBmT4z Xe26vWLShuTJeQrTb3WkM5ObjIJFZhTDnKRtMwfIyai4DTo67FGMboK9PTqIWyfS561Arr2Qa32b syYDmuz5qZwRvzA5f4FHMMxrSLBrPdgHC4ivrG/22t/sGd/kwYL9P/eM/7Vr/BtW7552VbnKAqLf b3ZaQAbC5FvE0vuuSAxuRv72F04DezCZADOjegS3/Z8/zf5yjWU/I5NqOK9mh9PDfNHBHQoWw/Id c5YsmA+mgl3zV/ppktHl66eLbYfbSGVbUCu418Y/VAQSG8FDqYdrvNRLlvuJMlVzvOjFi04MwVKB ZYh40cUznMac98L3WAjsdTRlJHk8jVe5NVUNIITytCCJYFxKP75th3fcsP/23uxeb16l946mpOBB qK0IyM4dCxEu+EGseaMswEGABcUhRkz+xkI/UR/GRT7TI1R68SqUgs8CgqIQQGiK3K4jQPJZYA62 wvIEKaj1Jix0glUK7f+OhXstHIIDvANs0uPBcb7shpJdEvNU0D3fOMFDDrfl8PZ+QBX33825x8W0 V4rJKFnbk+mRmsXlCQsdthtJZ1pAAoAwK6py2gInTLoId4PcFQ4QHBbii9z7xtfTJfGYhiCi67wd yPvFoykL025YOQnOvc8Cq95MpSJE57vgULi3WsKD/wUWtls8RVeKDrMMDzrS/uR+SxB06xkTUA/E NXCDg7AgalHKcBqJwRNtSWFi22BP6Z5mq1hZ0IUNxySTxFjUnplUorXrQ7ZCT4bJ3GPBdxA+Ee35 7T/FPi0wXGRzS2DPkvFNtJC/kiE6rHDBlKqcHc6psagX8P9x2AMzLwt4QSYnB/ewgA24qrldY37P WNg3AzkjkDdxz8G/s6ZeYdzTKgnwBWVB3MECmwYVVeIgp8B8zUJ9EG2MECNFGCnhgR8yxZp43hW7 x0JjmKgBB3qHWLUfr9FitF64Tr8QonnhOuRGN1rvw7lEKTR6UpjoUozUcKWFq3aYKtsM1axQjVWJ IFO4rl/Cu1MZqh0G0gFli2uQ9j9VDYyRuJNImpe4NTXI0dbEgQNt9IgEmV2gtSF50vkvzoLDIbmb TzpyAzJGNTA1EMFDGdwA/u/gFPBfpnPpiQygsIMyCltM4qIcN5TNy9hJmUPo0AoOb/JYovsTUuQF MmqjozhIpdufcbTAVCqWqPlAirDwKd8CBwZIpp4o/Z1sFxXF3WW2ZBcChK+Huvxup/1ANtDJflJb 2nhs7dmTHIujEmDu1+tZGIIircbKxtUH1Jjm7ISFB1vcuK0hloZb1ClbOtaGqWDhy9Tc1Nc4gIXr ue1PMFUWC7tcw5LhV2vN7LZm94y5fWgBi0ocOmunBXCko8+TAp+OLuxo+lRiV7aN4XNmoWu2r2d3 rud2r+f3Wgv77QX2FtKXgZrAjkyylZ3a87scGj/1C6BABCAcjT0vrmHKAtYqhEC01os3IP/xeBBv jGL1YRQsNHrRpicgKAs9sJAEC3gNRfSEBb5lEOdx5F5oykKjE230Y/Q4/Fi/MEFZQW3uW92NQGXX rXBdkk50JYispLWv0mFGq9qfFumkAt4NwmtUPAoKmspnKdL59Qgu5pBvPf+ghIKj25GmbQP/ggVP 9llI+VsSuQF/2raM3ZbZwmSBfQI2U+tY3gyoXCmY2qECNKBMhse39J42GSlDlS0iEbHWjO8UuE1s gSajKf39pK7f9szaN1mY27P9LUI5hzj4Iyu50fJbFsisGT/5yVms+JCZfWN235zZNbTZQFmY0bEb v2r3rPbEupJfhb5uqWSQvQbM3D6QB+xnkK6GB/7i9/dHyEybOxY0KyXD9/Sx7YdVSgRY0CkirGhz kMKshFsQJpxmzK5R4NyCJJ/ZM2awjPc5aQFOZB44SMVzXqSx3zAm7cS8w7DLxYIJTdczO9czu9ez e7A2sJplGwn38fksSI5ubpdHTc1SHZjERM6g5J2HvQF0DVMWEs1hXHDgA6jjahdQJJojokEWOrAY rNFNNPiaVGOYnLCgToGeokmLNrvhJsIkghBpdIUF4sDPJzI8qTym55XXaYipJAaz5YrH3Ui9I6mn jkZTkVo/JBIGkiFUHYEOFv5oUg2v9FinllJ1cGoTFsJsQecWFfqFgoy1Kd0vavvmL3vJ2fIA3LI3 P92g6sdLklbNaQu3E2KkJBlF5sM7MtTa9hODRVfSg869Zm8ZebrvRMT1S6zF7oL5/SkLrrBA7++H TLJDWRaDDGmRvTDcNbCvXJgMnLjaDS6VXVWCLstq4EJY4JLYRYRvSglP8odMmEgPBjdjMqmyQC2J N1pBkaL4KcKO8R3ut7v2ZNyrKmVXBYKeqPgVC7INimcv+nrcl+RU5eT0fvOPLW9XLW9+C1+zpSVv Q1lgx/ieAfcxu/1pFixI+lTeLt31coiepLttOhGdRrKr1LdhPgjM93KUR0BqoyLERNFIk/zsr+05 ORdPKZhqh7lf71hIH4ySgoNCERcowAJxaPZjB11Y/KAXPxgkD4bJg1GqOQILCSCAK+XDICkvxrdi B/3IQS/S7ESa3WizF2uShTgMDqXWTdThGnoxDajEAUWIjC2GMAzQ9SINOIuORFB4AA/CHG+4Cv2C sG0kSVffIwgOPWZfq9PCHAOqkF8EhzzpMe8kYnZBszrqHcq9BZ0eP/ELk72o7iwP/XTloE95Xs9K yHXCuW4kJ8lViYhC4lnmmUrqhnHbz9kSNblyRIKaX6GTN3bk3BA7IizoG+c5gMXWbNWC7CpVFlSz T1mQeX2OgCMDujnHW2wXK9ZY0GkVe/qfTqExl+M6mdlh8DCz1ZqVvo6F3d78dnfuV49bhNiJ4S2I zW/hlohbtymBtylDj8mC+AVhQSjgNMsdV8ZaqmvQEU+W7gH/Fyww7S8bbOXAXxmB6L9dD9qTJmE2 i+p6hnfY0WgHv3OLv7/0R82IipHSvIyDxvqXZlrxI7K7nOZ/OSuB1lxexpjvWpo1mmW/ovGdnGjm s7Dtf2teRfSue5+FzOEodcC7OhZz8mCcOrzFVaAYxJuD+CEo6CUO+onDYQqv5IsFB3iHxkjipWHq YJwUix0MlIXohAV+Aj+qlwALta6obJ8F+B2sf42RInWR53gXWYB36NFr+KEUHkDCjMM18Qug4L5V pVp9V7xgTwgooFV7IVAjOEjnjLLArRZ3nU7qF/y4yJ0t2jMlByzMMZTyzygMcTF7UVz37QjEtYgF nwWu9g5PpMrjW2DBo6wueEw4F7rRQo8mp7bF8jZMd8rgKhu+bL/HIKcjCBQE/4AGpg2ZMNRZ90RD 29WkBQKxE2UjJxrtWsxhqtbgHbg1h1Wx08LyntlqS7YT/+PsG5/91Zv9hSwsbHUC273gTk+SjbbG 8GSBWlvGXOzIPZ+FD91ewf13nMM5mY2g26iVFwZmeu+9Y4EgBGQC8wOOLnSkacQWIribb2byRmLO KMjSVvkZ8AsWxOXNyjqXpkRf1E9X/gPZZ/Fgr/U1CywCym47RwpwfpymLLAxcrejlZf5Lckkb5mq oEUyWPdYwGIeJBo9sJA+uskc3ciCH2aPbtJHw/hhN3HUSx0N0kf47jB9OEgfDFLNbrLRSTV7qeYA ryQLdBa4/3cSTVq84SUanWQTYRUtWecrE753AAh9AsLwCTLEjtataN2ONpxY05NgrBOla6B3CFXc UNWj1q4P4CBCFY/P8MluqNYL1fsaLOnAAZXb4UonAit7kQp7y0NlG49DRSuMFyCeL3UY0mtUX5CO GqEgIJpaWLBnyvQLATYc9iTd0QnuWIEdnpLGbKoUVgJ0DZYcHYgbuBnMm5GSAwsXET5RwclBV11N TCGYjFYQtlmS7jA03YGfzoN+9rmZzj9/JCdCW89NADX7lkTgfl+cmLmw14YF9k21BXbT2X4aijsv rvndPXmeQ/9sf/bFlhfY6dC2vcA2HnTFHMbzOwZeLDPQHG2T5rzliRaYky6pGZ6UITuPuDlIW1hF p+zKnD18+WtLmnxMvyQhz08OqpZ6ukyI8k9C2Xb8Ep6EdguklQuSW6Hl12ZlDddd6RKRyTOzUsVA 1McuYv4j4Ae1ZDO18TUL1lzB5q0AspqNJRIoym4F1nTgKLf8MiLLCvjFtLP9K79AFpLNPhDIHI3T B0OsdlwXj28zx6P4YSd51E0d9dNHvfRhL3PYTx/0ScQhKOjhlZlDvGWU4J2/l6hj/XeSB1j/brLh CSy9ZKObauDBUAIqfAkQegmgAa/RwOKHR/ANLMSBAwBhDoppqFDF00oEIyUsfnY3uVjhfKbeCzf6 oZqwoJuGKLfvWIgSBzdctqMVsgA0wIK2EQan52nescDtqLMla7Zsz1aceZYM5FBOnmXgsj1sl8U1 Dg7KO1Jfc0MlLGb228vCBms2LFSywIIkjvzDrQBFpNzlBqgyvICyYAQhtAvSv8FAyArJLsiJuXKM CF2DsiA3f264E/MrSgtq3EEs7oMH4+L568BeW/bvc5ex7kXCegtsOYFtN7jjBZWIHdBNFrBm5tmh igCJSuQBhLlMeZqR2p9yNM9lLGNsGQ7J+lRFwAqdVB/Igja8sVNdZ8/eZ4EzQ9g4Koc+bHva/KB5 3fsssCi8YzHS2zZ08oD2BEohUsW4KX8UveHcPRb0OCT2SgkLc1MWdkzNj/kD1bcle0wcDP3rlIW5 rbucagY3fMEBd34+JghY8PQLmaNhQlhIHnZTsINOBnbYzRz5LKQO+gyx5J6fbAAoPAMWOom6k2y4 6UN8l05EWAAIcApwKNDaYKGfxLuoRDxxBy4sPmWBsRMzV3ANEOCqHaKNoTgLN8Iep46ygCtwUBZC Krerk30WstUiUnFwDRXNCIlwJXzq6wGdbKz1+/A5IRNuZbbUni2ZwGGOxQJ2pMu5mXqoh5zrwVyf KmWqAz3rEKERB6rA9ZSsEECgTc6iIgs09VPBounjkLOk81nzRZYcjy7m48YDoCGipyCwqJSzVKTj QWDP4HDLXWhMtg8x/cg+QHzOJzypLJCmPZHkOzJhe1s63DTZyCHDnswZpnOhUxAxMmVhVgp/UpDC Td5TFmbYDmpxmxIlhn/rlrv3XYDksyCbxzU3NSOqWeMiOZna9nvn6HdY47gXwDNS4p18qyV7qfwx yHcsbJt6lPyEBeNrFkzKpTyRmVeTFJbkimXmgzwpOLSFMkc+075fd84e9bG2U4fCwvFI0RDvAEB6 ZOGwkxIW0ocAoZM97GYPuukmuIBf6KV58+9nmoN0U+mAa4BTcFJNF9Rkj3rZQ1gfRCTqrkRW/SRZ wCuHyUN+fvxATEBQFhgm1dxYvQOhAcEuARXEyxD+gt0gdQ+kUGU34B26dA2ipicssJARrXRisBpw UBbgF7jhgo2FUOIisQFFWGfdkAWEWN5ssQWbK5rzRSuoLLBMJidvsjdJtLMsyLDu5M0xZIqUvDA8 jrJQJAuBPA/91CPegBsYDJediO811DWYygJxyH3NAncN6yFTjvqC4IQFUej8uRMWGCyRBXoBV+SD siCfk3e1MxCOI+hTYAc4j4VDKliNYgaJ7eVSf9fZmKx9zEhv3rwcksubtuwOkIlSYITKQhGQnKdv ItJtDZAUB8ZOnLDXZoTPjJalEkM3DkxYsDWAVxb4yXuSfdpqSVpAMwOOn/mkmUGwgKAOq3qbykKS qFKeoHA258XEV1qCDIfbSNqBw0/mFSL8CdvtOXVAGoLey6lmwMIxQBgAhOzJOHs8nuDAW3ri0AML meMuLHtEW8TyPiAOS0cDLPJ0E1z0Mgd8kGp66QOERi6ufDHeeOAtHvXxyjQYabjyAlCAFd6jMwIj Ahr8TlIcihge9yg0mgylELnF2QrVpTXcGEIpJmBdycHCOzCCUu3AivaEBeZ7mfJ1o1U7BieCSKnG /UfR2hAsgAJZorIdqdr1c1Mc99cW49hMfBkqdwOMpjR9pMfRuqAAMjmCK/c2diKFboTHa8IgTBw5 c5MsSJgkbxG/EIaUKJnhshEqmcoLwiQN1QQcR0uxPgv7MlCCC9WSpgKOLZJOAyvM4MoJ+npBKrlT BQ129loaI9Gd5fW8Nq4o2fYiVddtziNi7ZWNQ9a8v1osf6YNom4hArdQrDdOcdmxQtyUpDMxbHa0 7hpi5oKfE2ZaWOKiSXFhR3wHc0StB7ufZvZa0mprzMj9mUmqbW2+8tehsMDVTieiQ5u32zLxm35n woKET9umZEFNYcGvOzMTS9dGW8jRwmxJkqjSF1ksVSxIhU7+ZG1EJC/SQMXC3N9YyJ4MsydgYbiI B4JDhjj0Uode+qiTPektwY57i8fdpWPg0F0+6i0f9x8eDx4eD5cO+4sHPVgG/uKAOMB34MXZQy/T tPFg+XiA4EoZydC/wMv00gy0wIWX1gDszvBDe9DdyQPEUaBmcMdCHSDYsKiPA2UFXEOYPYSDeyxo D+EgVoNTsOJwIlUXngWxk+xC6kcqA58F3LFrul+jEyo7QazVshmqWAHc4anTOwsFK8hGfd/CoKDg snms4MbyLk8P5CHLdqRgUzuXXWHBDkizByer5JjOlV3huJrBUoufDxxKLFUHmOy1F1iSpnbQGExB kCMI7ZBWY3N3LTdhuUrfgjRE5URE+CzAEcBTtINQ6GAnb/sjWehZpJzN/3d6GXE9PgvSCG1phkqH vXCPKldLO7hjhHZMHgy659+luZCY8+E1sO/nf+Z1OP8kZKLJl6Rg/9OD/daMtLbO5vwqybx0Hs75 ul6jIz5gx4gcxfVgx5CNFfwobiff/RsL/CvmGY/JXrw9vw1DOjFo4X3FwRBhNZFa/HsN+lOKLNkr tCeOg87iXox0Mlg8Gy+ejSYsjBbFO2SJAyQzncKisnCCFe7Rjrzlww5weEgc+su48x/2lw/hJnoa RwEWn4UDhy8+Fh+BL2mdCQt90SBkAcL8PgsU4KLBlQjW+LRO0XDiDSvWsERrsyTB8hyNwkFZkHLe gFbF1QYLCQiQmpdoDnXzBQKkaG0EHOgdEN5UNVvlBstWqGyEK2a4igDJCla4C4mzZKXDlptYlQW2 UBKEeN6L5bpydKawUMQd2wpJqkpGQgkLrF9wzQsLwOoaOATLgMJiI59fCrRlX4zHhrScKx5BTjDH IuTh5lMjCD4LeRUO6jickJ4qwjk2pgzNBguGvgBKX1jgqC4YUwHa8COxGSsdUprXo5e0CsMnd9qB nXZoxwjvGBHxUyGZ96WpYE1q/bcsaMikeeDZXHsmfw2bzbfn8pLwZIsjzxWVTaO+lpl0ytnfCQuc Hc0Er6RbhXEdPha6d1UTFlrzPBTAoO0bTNPlOBs5wk7ytrTN6xY5OtCF3esF8ZsBHxMmH3Cd27o7 o2rp/IZ2Nlo8pS2d3iydfl48uckekgWGRie9RVp38RirWkxYEAp62Yaz2HSXD3tL9AteRuMo4iB2 6C4eWEtHLh5njyY4cOX3uP7hLO6zMI2RhAWGUmABrkGFNlWGHW9acbJgRym3O9GDXrTZk0ST1qkH sfqQxg1H3QkLCI08oERNLSxEquod+uGyzwJzU1UsY6xVmMF7eJV9tgtwFlWubXoQKaXRIxS8BCzv xXmYrBPdt6PcliXrsIBASGcXIA53OG+Tm/Kw7MEXrn8GS5+IQ8kIFE0YK+NFrWLrbjiHjkYOMY/t u1z8BevOfBwsVQ0TXQBCe3KwCH49IGOQBURKOWVB4q6cHr9uhVV0sAWOUZaE2VK2oHw2dc/aPDcm GMFdI7xLFvDXheV40KCU/wLaKc0P9+XMgs8CV++CtiPKZvO5gjlbvJ4twIy5omR4ZDrfwr7tt0ns awuWtOkKC9/IefTfcauC7LQVZ8TTGHflumOF5Yovg7tyTAybl1q8z3NAE//wIFloh8SCuy3tbuKa J7mfJiy0v2bhTi88PBuvnI1Xz0YrJ4OHsNPR6tnN6unNCh0EYqcu7ZgLG7f3h8e91ZPh6vFg5Wi4 cjxcPhowOgIIR33R1J0lhE/HfGaRegHPIEyCiPayIjcy4jWYiRJLH7jpQ5iXOnASDQeiG2jAmI89 wAv6oh1UTbgJmgdYQI3IbS8GO+xoZTwK+VB3Iavjja5WuqM1sODF4RFqnYRUvRPVbrwKTe0hmBGT 9I5sZWViClZ1ghVERzat6vD5ihOuSLc5AypG/tFiN1bsRUv9WKEXzdnRvA3hAECiJSdadqMVNwIv I80YlAyIVeSeL5klEhFgpGTesVAwOOaaiVlo8z47PWieNGoimDFoe/j/NSLcDiC9HLsm79gSSrED RJJONEKk++kQ1cjNnAuJTc5h9oG44T2Oy6Zx3w3n14Umbc8TSaLxmK0jH9XCu05kz43wQ/CClubB gnlrgTMnaQGZlRfQTQFSDRFYIFeNmdz1XL4FKDistSD7+vlvImGPtCDC5thnosNXWzOsoCGgMufx +TlbtycoDlIag/w3AlDQW+0wQ77W/M61sGCInyJlGoPpJ8OJ4BcTkIE20QhOnIJsI+V+UmkgvKu1 CQjjR+dY/0PgsHI6ekQWxiv0EYPs6ZQFgNBfOe4/AizHg9Wj/urR4OHRANERQFiC4jjiyl866CxD LByBBRpwkDRshwkleQavXD7BDxrhR4CvzJELAwvJpqM+InPIqkRaklQpWfkpJnXdxKEDIgQWTT15 vIKLox6uMfYQsqU2Br3fZNo2Xu/GSQEtCRC09l3txKsecIhq0pVjPTqTEgZUA9yBGa6BAjWyEKGx qUPqdJ1osSN9+L0YHpMCBkjRohMru/jYWBWf6XsQVhAQu8pmXmlq1Q0OFllgmHTHguRReXyqbKNj woo94T4LcPdGhCzYCMyiEBScvsgxLHqseSgvFTq97eNl+9ad4thjuCUgKAt4r4X3YiFF95woHvBH 3NmkX1rKHHtcS7j9hnfd6J4X5ahtxGYtmODA5Tovg2SD/E3Y/BnUFO6eVszhYgyCkG/PF8yASH46 vjz5Vf1C4bDH1ixmdJn8bM3uw9qSERIWxLX542h2J91TEimFOZ21Jck0497BSexm1P4KzhHd078C r6ePC+22Q3rSyq6BwIl/Mt5CJX7Hwurrm0evb9Yubh+dY30OJzZaOR0unw4WT7uiFHrLJ/3V08Hq yeBvLEAsQERDHWOdM0aicO7Imu8vnQxxpXcQ0yfpek4EOuiUY58F1RGSpAJWw0XmnXop5p1c0uGz wMdpYSHBYgSe6SSOusQBLBx0CEIDz+O7XQZUDfiCjhqzuBMc4sSBpiBEZTdrVJrJQ1UjVG2H67pl g5IE2gHGOgW4KDth3PxLWPZerOTFigiWhIWi/2S80hEWvEiJFi5pw4ZsbBe3MmUBCho4wEfcY8Gb jN3oyE4Wh7FQXqKafTOyb0YnLOB+DikhS5pJHvEIxIGKmCyYMq1RYYHbckXdiyTfM2VHMy0Gj8Zl b01x8EGQ5RqW10f29L5Kv+CzkLtjYUGiqTnJWYmg4KHq3NG27yoL8zljvkBbkMTaZJik784Csllp YXeS52EJAB6hNbffZl5U9pAu+OVFjZTIAn5EJNeJ8mRSmVS8N608+nV5dnTIDjtIJPWPRGC3LQrC EBaMOxZkABp+hykLj0DBxe365c3j14iOhlzwsDN4B8ROw6XTHohYOQMmg0dnw0enw8fwI8LCo6PB 6jEipQGCJSzvh3ANLMY5WeZRQRDCLax5aIru0qGYpJ7gWVaOeivwMqIpskeumI8PmILLWDoaZKAX hAUKkOOeyJZ+lvkoym1EUwmfBbgGjywgWJLyRKLp+SqjAeuIdeVxb0JEV5uj4lWfBVis2mXStQYQ 2pGGGW1aMZodrhrhqhmF7qjZkQotVrHjFSdecRNlNw4EfDpcsiCIMQYruWKeP+qk4EQ4P8eTSYMW KAiV29Dp4ho0RrIlbduZmCeKQCSzLFful5ywQHmiE3rJAre9hP0YCb6gHdmHBzEZUOlbCq7gQC5k Zz1hie4bcemPEuFg3ZnUTZgultmnE6bwpSv+BR/bDtEQIzFjoywEyJHjj0fg/kpNhVl8QQHuw99i E/J/nC1guuGJnNcSeZACwVjg7j9czcCEBa7wXa2h+xkwbfEK707KLmL3WJCDJplrYhmCb+F27HZo pxXaU19gqqbGg7C6hnssPL68feyzMHx03l89gw3gIx6/vlk9Hz3kl3h+TBAAiLDw+GT4+Hjw+BjX 4aMTADJGwLN6MhbV0IFRNTDcGq6e9B9CZRx1V+BHQJC8+PHp6DE+5xQEIWoiC0tHVOLiMsDCcAly o9nJNuFlGFwBB9giAraTPtwHAGE5Dw4Cj4+6dA3qHegv7lhgUa95V7BQE3+B8KlDq6mJiBCLNI1I ox1tmrEmcDBwjdTasGjNiFWNqFi8aiagx6tOquoQB1JAg1OIV7sx+JqylN6YZWWwJHNCuBmWfVB/ Z0FUQ8H0Z2T5AzClilGQhti8lBWUhbwDi0kKKyohkMT8ulYZLGENR3OtSF7HNhpiFj0X59qZEzOE ETPOuY6I377GYVo62bei91ggbnQu+B0AmqEJ3oDcveekgE5XwpswWaAfkdxakKNjaAHJDJOCPEGI 5sRVCc6qWaR86XLDcq4tuSBu1QzkVJizdialE9VB+B26EU4GUDT8KuRExU8cBHGQtLBM9uacGbAg vo9pamoHnwUtcd5jYfz4YrR2OVIWxAZ4vHYxFk/Rf3w+XHsNQQEKyMLa+c362c3a6WjtZLh2MsLj 9bPbtVM8c4PFL2UIJlQfakx1CkfQXYHiPh6AGlJwNlrDhxz3H1OG9x4yK+UuH3fgQRCAqZdZPuxJ wnagokMV9yJjKrIgYRJBSB9108e95DFwoINgiXySiZJeqb6vu2m9xGGXRjUBFjyxjrSFTAMnL3pg RprtyAFBUIvU29G6z4KaspCs2emak4R3qIACNS8mxe4pCwShBDXdj5a7ykKo7ITK0OZmuGLA1DUE i1NN4YSkl09dCTO091gIKwsFL5b3wEJUJlqrKQ5khGeu0SKyaOEggMOEBboJgBDLk4VYjixEROz4 wRjDOUZ0U7+gY22o1uFZuB+fJ1jhAyPisCCfAxwsTBZkBo70Lu5DWXDIcFxLGGzN5aoOKQsAIe/G c25CBhFHJz9FYjNXnKB/rmhoUmScdF5ZgoNoIr7LCSHI0Rv7BAd5PcWLFA4syR2ZfjUftmtOc2ji HYyJm6Cv+a8srF0OH18MH78GCIM1sjBaez16fN7Hdf31+PHZkHY6XD+/3Ti/XT8bE4fTMR5vnH0G DjBo8OWzoeqLh6fiX86gtXuPTvp0JSf9R8c92OOj7qPDDmyVCHRWcD3uwoMQFklSPTyEK+nDQSCm 8gX4ISMlahAIEFpPS+Gp427yqJNkcdyDj6CgYP3Obw5JsplK+qngPg4JS+KgyyYoYUF0RNcPnERW wymEyYIVbSoOVqRuROtGrG7G62asRkvUzGQNLFjpmi0sOBoyKQu+JCcOUxZ6lA/lLqduVpwQ81TG HQsiou82Pvh9sHhgkQVOVpSFJNGFpK1cYcEmCzlZV3nPN2BShCPg9Am4Bj9SyvvZp4ikvCTQEiKU haKtOHwNhXWfBV9EFL0Y3rUPiAhXWPbxBaU4wtv4vobfDH5iTAg7nC3MJhO/4VbXMAI8ACuzuDmR m5pFdU2OibiIZHqZK9ifFhOtqRwI5tlwpYOnInenOVj3cLC1uXFaXwtObvshNflY/Ze8Sxfs/42F ERDYeHMDWwcRF8M7AxHng/XXgAIsDNbOhrCN159h6/QOYziFzfPPZOH0Bvbo/Pbh+WjpFKq5t3La F1cC6z8+HcAXPD4ZrB37tnEy3ISPOOmtnoICtb7C9QgsHHRoR/QOqsGlGu7LcHiHRWiHkx4sddwj DsJCmqGUdtL+jQWaz4IaW8q9iZQQNVGH9UONdrDeIgsHvl6IQjs0zHjDSjSseN2K1xAdmWJWiuYm 77MwASFe6+sDXzUUSQTnClbdcMVWEKBEQoIDdLQoC5cbH2QCobIgDU7eNP2i2laWkydHePg3WD3C IMEvnXjRlqDImpjNyKogKoOGtWdxMcuSpoMo2jASwTHX/nz4sOLjrxNZmbJTCQTF940YVbwVESdC Foo25YDeYJmAtWIcLOykZdkzkyZnqfss7Nsxnr9gJ2GAIk8cVMWLrgEU95SLX0PRs6dtdiHmtETi hFX++DV6K3znGmxtnhSHwiqzzhageKFebuNvmZRX7uwrFt6MHl8O196M1q9u196MH10OH9FBABDE SON12s36xe3Gxe0aRASIOB+tn4OCkdh4g3azcTpeP6XvWD0fitYYPz4nPljkj07hFHoIitboETpr R5314y5s42RAFuAyEDJNbB1PwmtQX0BcA5AhhAa1OTX1kJULyO0DBypj+bQPSQKRDi4Wj7sSRPXT UCvHg3TTS0F6sxJnx47c+JETO7DjB7g6saaTEMWRgqxgY7lLhd7opBu9TKMXbphhCmcbHoGvZ1HP igGBup1oOGrJuoPoCJaq2pAMyYqdKFswcJGudVJVL1H2AyfJ3DpRSbRGql6Mu5O8MP1CO1RpRapt CnNAUTaiJStStKIlT8yNlrBE8aTJdqnCdK+cq8IWC1XcgSunGLRpOSuZt3GNyEkHDKugoPMan5MI Ed2uH1bx6lEOU0q3ZCC8nYDlLLUkDxOx1WKs/UnUVAB9VmKvTRzkM0lQif1XfnaIWt6M7pnxXSO5 007t4LdyGfnsS0pz4hTIQt5Jyo+L60+Unx4XFwbtT7dFSN1wTuNDnfQiAY+YwKJxjtTUJOAJIubJ 6aAkCd5Yd/M7e8MSShGHvVZIt6ULa+QCXOepQaYsrF2N196QBYAAKOAm1t/crEFKX94KAjdTFsDF GrQDWHh9szZhYfP8hgYiTsd4EhSsXdysvea71CmsAR+y0Fs/6cM2YKd40NsgBYigxN2c9vkaPHk2 2MAz0A6Sa/IzTnAQh+yAWjyAyvZEj0CbS38Umz0GS9DUB272wEs33aWTAX3HYT/T7MQPrMSRmxAW EodarXPhI9IHnQx4ERDSjW622YNl6l0pZ9vcUtG0pZmc7MQbtkZH8AuJup2UdvRU3UvVsPhdxQGG x/gE4sAUk5PwoyYHIAgLbqzeY9NsxYpW2rBYra0fG6uasbKN9Q8BTgpKFq3YjrFziWU7BSGCiAuB CvugEI1j8SPM4BJSEBISwMh9z7+ZA4RYwRHXIHdjdozQomKxfEc8hREv2DwlhAciYGWaiX0zuY81 jwf4kqs0JvRJ/5WsYaxbmCSTwwUsPHYM8i6NgHy3jd+BNO0Zyd1WVAInOpfddli8iXqBmFKAn1i4 94ESuYX3W+H9dmSvHeUfy47HsCqmiW4K3QX8pvZahP3g3whrqoHVf3iElooOfxafaCXFSks29LMS leFecV87r4OFtwABFAzEQdxuvP288eZ2/ZK2cYlVPRQbbVyMNy54JQtwDecQC2ThyevbJ+e3wIH+ 4oIErct3Ny9uNs5HG8CHFAw2zobrpwBhsHmKBd/fJAUDCb0QQQGELlhYP+vj9aDsEeVDX3TEQFJM Q9b+jtylY1d7oqBHVs6pTbT3KXM4YQH6+qCzeNjLHnRYnjuGjnATh3byyIOlDr2MNkc1vTRB8DIH XVbJm91MnVnZKCsXHdYpDnhlYqrhxfGlmERWUhbHtY7F7+MAw4N0vZOueRI40TUkqh70eLzWERac aNW9z0K8ZiQAV8MGX3QiZVuIsCYGFgzeddkNTpO1wVFa8YITn9xO70wkQLgICcBZQ1hC0YLcafO6 CJ14wYvnO4IA96vG8j3EWrG8kSjaemJOMm8lcwDBIAVqWLSSeuWaEaym6zYu5UU2zeb99caGDWGB yxsfAo+zb/iJWZktOWVBHljyIU5Mcr+6AZZODU6HZBkRaTjREC6UN8T8Nt2p+A2rqMn57Gv/CSyw 36ILkDUvyWQtzTjSptUOSRDop6nlj/qXLLwZbbz78uTqy8blZ9jmmy+bbz6vX4zXhIXNy1t8CRMf wTv/xuubzdc3Ty4+P3n9GTjgS/9bWO3nwyeXt0/gUM6HuNtvChTrpz1Q8ORsAHvKWAuOY7DOxT/A t9ZOu+tnvY3zPr58hODqpAtZ/UhYQIC0ejpeOlQQXGGht3I2WGbTLD3F4oGn3YDkggWO3vLJMH3s pU+8FK5Hbua4A0sfsmCREWqAA2wR4ACHZjfb6IACsW4MS52787yEdEbFiIPnqww/AOMuVw2W0iCi 7mV8EBwxN1l1E37VmyW/6ISFWNVmMqpmQIwnxNFQhgCEkqUsyANYK1Zuh0u2aHBbVgXkgJMoAQcs bHtqXMxFCxajxHD9sdXiDiKMmrgCEZbEC67gQI8Qy3eFBTdOFqxEwUrSeFaOmKUmTsFngR9YsO5+ rvw+VNx56l/4qfieQYNnwcvyeNCOSiILa1vM1itBnnysaPn/wkJBqiRsuzLESyoLLGqIltFqoK3Z gIhOXZCTsCITFoL7cAqtkDSsTkikZ1R/EdIPyTHWgpONCEpTFjbe3axfjYDD+tXN5tXt0wkLT958 efrun5tXn9cvEfYMIas3394+4XeBA0MmtSeXn5/ixRdf6B3IBX0B7//nw6cXcBmIoIawJ6/hQQBF fxMg4MtzsDDcpJcZbQA0rn+fhc1zvBf+ovfoFGqii0CL6dZTYeHAWTn2Hp2J4j7trpwgfPJ4RdR0 4MKJLB/iy/7SYWcVwvz8dum0u3jWWzyFiPCW2FsIWeFkESM17HTTgftYOiREiw1vsdlZYia2qyUJ 7lHlpiRPk7TRuhNluzjiJYffkufxYkgGsJCpe+Ao0+hOWUhX8cBL1rrJGuV5AtFX1ZWihhfn4mdW KtG4YwEuIFYy4r4MdxJVOy4sREq2mq4KziaVCdW6+GGc3F6ykyU8xl3UCBdbkVI7UkSMYcTxgTwK xJDvTtlx2FVY6IiPACPteAFhkpksmKmCncrT0gX/GCmfBaaYeJeOFEzgFvcNOEwCMBUXEvnEWdGA S2pHC1LgyOE+z4RVvGDJA6XJf+PEHInlHNELfFdo71O0yLiR3TIl/GjEP+1wrj3V9VpA9AW+qHj8 hhGe1W7Q9hGSteXTZNbxHiQ/jw3CewN710HFgd0CbqwI3WR+xcL7m3Xg8O524/1nLHWw8PTqrydv /3r29n8/ffe/sfI33kI+jEAEuHj6/suTd583EUQxfLrdBAhA5pJG78DFP6YjOB9svh4JC+MJC749 vRg9uxg9JQv9p29uNhGDnQ/Wz0gBncJZny8TRjQwQzAmjVJsYVrmyu8IBR3BofeQWVlQM4KsYLXi 0HuEFx9DsA/x5PJJZ/msuwwiTjpSQO/DibAJqmkvNh0gswzFTRbcpaa3zOxTF1IizeZAR6vbrGKw ou341mCXbLxpJw4ciGthwQYL6lbAQlpEBFUDKKjCXM1TxWoyDKGhgt1ONsxkw0g2rCRjJPgFAzjE WdG2kxAgkOqVVpyhlBMrOwyfSnYCVnZSYlj5PO+mZPHLipMsKwvwI0aUShxkmYmSGS+2wUKqbOkL xACOm0CshfgEK9NnwQAL6SIoECs6qaKThA/igrdjxSkLBhCLFZUIW9wTDSCkYEwN2SzhFRDhEMlE wUjk2kn4iDxxQzwWk/OqmPUVuQGL4TdhNwvkOcuC9CP4bu4avz9+HF1kyYgU8YFwCoaegSjUEISo nA2qSSf8hlEGh+1w0SCGeC8+nyyYMfgs1jucEAU16+bT1HFUcm6IuKYsbH642fxwu/nhy5MPXOdP rz4/f/fP51f/5/nV/8WDp+8+0xG8vaVTuPr87D1gERYkWILBfTx789ezy7/EO9yx8AQsvB77hsV/ McIi3+Tzw2cXeJIsPLmEvhitEYTu+nlv43V/83X/6cUQ1/XX/TU4i9dU36ts5GB+dQWe4qwH1yDe oY/HD/H4pPf4bLRy3CMFR6Tg4VFHkrQIkzoPTzsk4qSzcj6AIZrC6/ECNbCwhOCqqdaRHhIoCC7X NJb6gZM+QnzlQXdAcdAgxn0z4wdmuuazQL/AMImRkq+gsfirMEdZYDmj0UnUfRZSDStFHMACE1PJ Gha/KSxYcApJZm5b8Wo7BsVdlUJeGSDQsPjTFTdZxpLm2k6V7XTF5mrHyodHqPwZrVzHKp8Sletk +VOy+I9U6c9MpZ0ugwhTX4Z3TXwEljRBwKJNgYWS7eNQtFMiIuQFtjaZSN4VyxJOB0RYBKFIphIF FxRkeGShhFX0HXhZK1xq0SWJxwEOfJ7egRzxHi5NXJLIdSQnQKUMIgAC21rwMriD3HW02IrSzRm+ 0eOIE7lrRNEKmmbhwAIZFBCogwBCnGYx7cb9F62Q9MAL2nK6KNFjvvqOhfc3Tz58fvbxr6cf/pqw 8NeLd//3xdX/eXb119MrIHD75O3N5pubJ29vBY1bhFJAA/oatvn2y1PYmy8IliAQNn0WcG8fCw6g YPzs8kZ8BFjoP4E7oIMgFBssYfQlNOpuAgGEYReDJxcQF31ETWABOn0NmkKaBuEXVuARzrpAAPbo vAfvgBjp0blf3X7MpsEe9cWht8ovobg7D098Flalnr7KLG6POLD/vMOu2gN3+cBbFhyoIw5cYcFK HdjJAzsFFo69+IF9jwWT10MreQgKHDE32/B8FpiS6tMp1KCdHWUhwfGbLhVHHerbSTUddQ3AAY+Z 4K070tdh+SywftFOQFPIJ8TLMEtZSFbIQhruhqua93ywkK7gihe0I+V/RMt/xsqfEuXrpOCQKbcy 5Xaq1EoBhwochCnr35Q4Rx4Xfb+QKhGBlLJQgFiwJKSRxYk4rcj1JjfquxhJNXsaLOTgF0R3wwVQ v+P+3MJvmClasJQQkeAPNSWC4hEkasKFRRBKXgIOQgIqrGT8ydGSSRBKLfi7qLikKDWRNEOqIhYt wF1sOcZvUZbvW4wP8+1Yvj1lIcYkgJfgJE8KcB4tmpOEc3HihgrulIXn7768fE978R4U3MKe4f4v 7gAgPH0DCdx/8maweTl48nYsaNxsXN0+fnvz+A1t/erz2tvPj9/QKLeZfWIJG2J8483w6ZsBDX7h 9c3zi9sXF7fPL2+fYs1fDteZyO2vXfbW3/Q33uDD8eRg4wLeAZKBqgFORK4TL3Nx8+i8s3LminXA wuPX/cevB48IzmjzbLR+0l877t4z1rhXDzuPGUT1xQarxyx2gwKEW8ICQHDBznIT107myEwfGtlj J3FgpI7d2IGVBAjHnp+SPXRJR8NMNyyGWIyyHEgYfAhskQ6Fc0K477sOFnC3dzgDhE2zmolyqBGw /sFa0yZuTQcBGFxDnK0dBhBI1e1s3c5UDVi2ZiRrBqCIYzFXTClnMEOVLLspnlngSoxkpyFPBIcU YXFZ7Ci1k6VWstKmldtxhkwwZqvi9DKQJPBBbchz3niLLdzJE9AUVCL4TJ62mSo4E+GM4MqJl2xW tPnY5sFSuPJcToRSVrpkiUOxkvl2cr+VyhnpgoUrLJM3sgUzW7DSZM0QFlgTj8kDhHxx0ftqgCuB b+VasXwLoZ24g+tw8VO4dJ0sXqdyuEJ94Lc1Q4W27MM1eFp03krtG2AwiZ+Yx4/Glb9GYq+VQvTF tBWb1SOFQWCvw77EPe1dpCrhT5/gOWXhxYcvLz/+9f3Hf7788EVAEHtHHPjg7Qg4PMVCfTN6dnXz TH3E1a0U5m5g628/097cwphoQvyPyOfNaOPt6MnV+Olb4MCgSEF4efn5OXwEWHgzXH8LFgBCd/2t sgC/0BMWumRBRDSu8CCAQqKsm7WL3qOLzqPXncevO2sCwuNztnmsn402z8cbpwMtYUwNIKxCQTAx S3cAHJQFruFDZ1nCJEnbDh8edleOB4vH9pSF9ImXOGJKFlcayxMOWTiwma06hEawFw/txQNHLStZ KUnVdlJ1ZlxhwgKHHiRoTrJp6U4N8QuWxkjUCxMWEB1lwIIQka0hWGrzSTDCGreW9oSFsi+ZhQVX WOAD1jXuWGilqvAFRqJMHe2v9opkgAEOnicOiol5x0LRhVhQFhKUDGIlR0IXS0QKNIKVJAXwIyZZ KNJw85fVCEdgp/MmLJNvZwrEgUtUIjFdeFMW8BPjPKnKVoNP+S8s/BkuffpXLODXSNB/GWrJQhuW KLTi+VYMOCC0k4ZGltsKfZlqa0agqSctW/LL0CdG77Pw8S9Q8EoMULz4+M8XH/56/v6LgIDFP4Y9 Fy70+vTtWFwDPAKdwsa7zxtXX4QFCuHNy/HGG6js8ZN3N8/e8e3PL4fPL8cvLm9fXtCeX5AFeIGN q+HG2z5Y2Hzb33zTf/IWrqe3edHb/O9ZgOger18O6Edo/fWL/trFYO18sHbW3zgbbgoOvp2N1B5B UAsLqg602ePRac9n4dBdnviFxYa10nSWT9zsoQUW0odm5rSXOnLSJx0BAdGRrSCkm1aGi98FC9lD mIMvaXcsTKt4Hivg/NJJEQT6BXiEhHR0pKY4fMWCmRYWIOezwKTaStI73LEA15DCeqZesMgCQiY8 U7YYLJEFLYK3CQLtX7DATzOSWE5wEGWavMtmVkqEM1jAfTWFuKXItJUIdmDiC3DGVEUzU/ZZ4FVw IAgFmywU9LEJFmBTFhL3WVAcSj4IgAJxlAp5qv6yGSuDiGtYqgh3gytJUYEcKbO5MVpoxwptCfOY JYgXAdEnWIwxVQsKi6knnqlqhYudIBW3qbFT4u4PacPgI6Ys/Pj7P0nB+9uX7z/7OJCFv8RB3DzH en5/C9+hhsdPcbe/unki9pTu48szSbQSgTc3T9/cMrKCf3kvLLwFCP0Xl6OXYOH1GPYcUlpY2LwC Dv3Nq+6Td33gABaegIjL3pMLWP/Ja14BxVMqCwpqSgwiQ3BgGxewwfqFdEydsZC3gUjp9VgEy4hf nrJs8RjCASwceg8PXQUBQnv1DBKDOdsVuAn2QbHwDeeyfOwsHtlLJ14GN/zTbvrIzpx0UnANopdT hxDUZIE4NK0sHYSNV8qWDaoMZSE7reLxS1ceu2k8uGNBIiWGSX6kxOQqW/5oCJMyDTvbdDNTFqpG uqo63fFLexUsTlsDpMw9FpKSU0qWsc4RVomVTWiExPTOf+cXGEGJYL9jgWu+JCwU5VzyspeSnK38 LIe52RKTtFh41AJly2eBd34zUyIFmaLzr1hI8aBn08+A4ap0UEdocph+AYEWnsSHU9fQZ7ViykIe MQ8jqDiltxEtW9EKVAnUATPP8QpeCaH9CRYrfZLY7zpaNsL5T5xYlW+HSzwsJppr4xPkx+mvAe5a MOiLOxZ+Q4AEp3ArONAgHPzFDwXx/vY5viQgfOY5NYUAItfnUBbQ2rzeUk28vXlxJYrjPWz87N3o 2dvB88seWbi4efl6BHvxevTsknHXBhzBVe8JWeg9veo/vRryxW9xHT6DxLjsP4VCed3j9WLKQu/J 2x7dh9gTfOsSIl1KdcDhjgUt3vWlS4TfYkMsVDbXP/uj6CBUOACQQ/cRXMaBS/dxbC8d2yvn/aVj dxkswEeceIunnfShoyZb8OAF7CzW/6E8Fr+QZQeIK1tcETuRBW795mN3YgiiGCPBJixojGSp1wAC 0v4KFiwtf6QBC+nwWZDYiVncJFeyrXFRRlhQ7cwHVdXRRrrSVlMWpGlKpHfZ8VkoU0ok6BogVA2+ RpNUZVKQLjrCgstAaMJCCkuU2aFrWKpkCAtGumQqC+oX0l/7hSxjJCMDJ0JZYYrxXUkqiHaqoA9M 6A5YAiDksVbbckI6cDP440rXabLg+wVlIQYWYCp2ym2xa1IgFq+0oqVPcCjh/J9AJpy/ZjkevibX TuRaSQWTbCKmuoYhKrtj4eOXHz5+/v7D7asJC68+fH45WfnPxKYswHdMkXlJFrDahy+uxpNnYCLA SdD4xbvRcyzvN/0Xb+5YeAnt4LPQVxaegoW3vRdXg+e04Yu3tGeXfdjTiy64eAbFAc1yCRkOFrqb l50nl52nl72nb/oU5pdfsfDk4gbXCQvD9VP6i8fS7AETFrrST8ISubSIkBfgQPdx7MAgxpdZ1+5m DqzFYxduYum0mz1206zT4cvu8innRGWPPN2gigdQENzEpCwcyG4msMDclKPyfBkSu0m3kmzCNZga a6V8FiwJsWxI8lTdpDXgeuz05BkQkYGBkRoowKJlglQooGVr7vSxgGACAVXfgEJTqVM/MtHaVhp6 /B4LCeJgyQuIAG7vwCFTcqiLYX5dAx8FFj7B8PZMGevfyGB5S4wkesH09YKyUDSzRUPMzJbwpSEG dtoa28uCVN1hSfZVnwQLsBZYSOG3KrXTJTxJFuK4qxdt9o2UrHiZbSrsVKHRfcRhZbVWrPgnoIjk /wGvFy18YlkEnrFA1oQFfGArTRY+pYjDHQs/fLj98eNnmBCBMMm3l+IU5A5/q1y88EHg9cW7G7CA K0F4N1Y0XlzdkIX3wsKH8csP41fvb75/N/r+7XjCwvjV5Q3QgCRHtPPkqvf0XfeZsPD8qv/8LWwA EHAVFnpg4flbADXCJz9/MyILbxQEXLsIqHz3cUEEaJe30vhx47sGIQKrfe18LDZUFlaPPdijk+5j NkF11+Avjrw1bqNwYI9YtnBXznqQxtLv4SyddLJHdAHZY2/xpAscskcdTn86dvHMHQuHXfYQHmrZ wl2SXBMogPd5iKsgkGi0k412+sDRWGsScTHQwuJPNcSamncVNMRTZMTAAhxEird9c7HuZevefRyk 0IDlaqTLLUlDgRcY3mLDj/j6wg+rbGKCGKkqLJTaCZoU77j4HbJQsBWETNnJVtxMxSVl5VayCDH7 J1jI4ssSWWB0hPU80c5ZCZNg2ZKd9XEwiUyhTSsaPgv5dgpWsPSniGtQxwFYWlyixTa8T7LYyhT5 JSBK4MYuDR5ggdXDsqHUqKtiugC/XvkaFi/8A8DG8v/AP1e88IlepsggTX8B+U3AQitd+JQuwO9c 32fhp9+//PzHP3/6jd5h6hq+/wjvgMgfeuHmxQcu7xf81g3dx9UYK/bVuxu8HviIgYWRcPHZj6De k4Xv39/88G78/ZvxK7BwgSse37x6e/OcLPAm//Sq8+yqBwMLz0AEwyS6EoCg9vyN+J0rgvbibf8Z WLjwaHcs9IWCz0+kCI4rewJx5389kq6//jp7a8Uv4Eq90JfuWXiN/tqEBYCwftJbOXJWjmzA8vDI WQULR/byiQMWAIJvx+4iF7/s0T5000c+C4vEgS1/SzRvWWxJfAEoWD3yEIn5LNRbPgsqPQQKYcGe ssAynyRdk7V2qmaAiHQdfoGuIdugss7ULFYGG+6UBQGBd1Hc7dPl60ylnSUOVgYq428sVIQF5qaM RJXJ1ThDkSkLkibVotuEhYyyAEfADCdZkLIFVjhu2srCNI9kKghiluiFdlY8wpQFyIe0gkAW+PYs fgSDMUNMQpf8n7xpIxgrXmfgFPI+C9TXkBXUFzRRHNc+C0Upo0BflK8TZOHPOFhANIi3Y+UXWhKn Mahj0FUUGVL4M8Wf8mnKwi8A4Xf4hZuff/ss9uWX3//Cg58+wjtAHQ+evR++wE3+4+33H29/4H1+ /OpqBPv+3c0P72/xsh9BxHu4gNErCZOev4NSGCsLr+gUBt9fDl5eDL+/GP54MfrhzeiV3PmfAoS3 nedXnRdXnZdXiJF6L6/6r94NXl4NXrzpP3/Tw/UFHAS44AMQAdYQLHWfXLi0S4ZPTym3+5sXg82L IVubLsfavLH2WjbocVPegHaO9d/zvzzvP5o0AbJXBAbfcdLZAAsH1uqh/QggHDl4/cMTDwpi9aw7 ZYE6wp+W5i4xZLKXTjuLBISxE/duI6w6tJcPbPqCQ3epYa4eOHA6j+B0WMW2qcePVGXYGToFE5Zt 8rFESpZoELgGg8Ic320YKbFsw2TmCgEV0MANv+H4qVeaw2VfMRg+VREggYVPi5VPS9X2w7q1VLUz WP9lrGpEO8qCk+UuDCNW+RSvtuAdEnyvmaIidqRkYGWUAt9sebKVLoGC63TJL+EJC7xmSxIFkQtK Ay5vOBeAgDVcaGWL7Yya+pFCO5NvS+nBzCgLQhOQRJyDxZwpXmdpeCMWMF4sLEDvMNFkUt3nQZkk u3wTqQL0SlZ2wogvSYQ4oJfOXZN3hoKGppugRGKF/0xAYhT/vMfCZ7Dw02+3gELsr1/++CeIgP3w 2+3L325efoSNv/94AxYQSum3fvr4hQjgno/VDns/hn95Bb1wpSyMhIUbPv9u+MNbIHDzw+X4x8vx T29vfmAoNXr+bvDi/eDVh/7Ld737LLx6N3z5dqAGCnxPgdiJLAxob6EUujAmndQu/BamjUsx7k7V TXl3LOjjdQjti+Ha31iA1jjpgYjHDJwgsRksPT6jlCYL7OLwaErBSech1MSRu3xINKAmQATW7RI9 hS0sIC4iDstNW1lYaYIvuAaobzstqSeSBZRYp7NZp5DEFCVD06SDOLDus0BrAgQLBiKEBUMVhLKA mz9ioSxzTVAWcAdt2HIdZj6s28s1CXKoi0UyiF/Ico+qEa9eM1Ul+VWW87BQSY2TnaxPWV18vMhI yRAKrjOl6yz1wpSFVpZX8x4LfBfVgYBAUsqWgGCQCDoLxE6WppjSoqyz7DxsxQnaPRYENLyFN/ay lSwKC0VbCnlsI0yqFSRCo36HVzI1AIvvf6Kiz7UW+YPMxbyZ8ENBnwVmX4WF+D0Wtn6//fX3WzgC ZeHXP8gCifj9rx9///zq95tXv41hP3y8Ud/xCxzHxy8/f6A7ELv5gXY7YQHrfPwc8dKH0auPAOTm x/c3P14RgZ/f3sJ+urr94R0CLZAyevVh8Oq92Lu+GOKu0UuyMARlL6+gl7svREHQNVCnI2TCMxTa z972RTtTPj+5HKlt0DtM7HLkgzCx9YuB//zXLDwR17CJ2AkgnHTIwpG9dt6lfDhxH511Vk79vqaH J7JB+8SvXC8eW0snjrBgLfvN5O7Dk+7KkefjcAAK3JWmhesq80622uKRsygFjqVDpph0nS+Km4Bg T9PM+yyAFKEGLMBBGBIvmYiXlhrOYsNdrPO6zJKEvqC91FAWjGXxC1ms8IqjEpjauWpBUKRq7USt lai1NVWVoqC2FqvOYsWRm/z0Ps+bebaMDzEAQhYeYcpCWdcqQ3o+KBnqICZvBwVtvDJbNhcrVrZs +ixQQVgUET4LKjosac2lX8iWWovl1qK8nR8CZ4c4p2xpOy7ldq69mLfgHRJi3HnBfKwxzRElcwDK Su9dL5XcRby4YC3ui1+gvmhPWYgX/wHv8DcWiMNvt9t/fNn6nbb9x19bv9PgL77/fQz78TfaT7/d /Pzx9pePn2E/f7iF/TRhQdX39xAaWOfvxi9kqf/wcfzjh/FP+O7V6Kc345/fAAfY+Ed4E5KCmEoR oC8Q50IXIx4BX968vBpBO0/TSlAN91jQkImyWirjYsyvYrX7xjYPFiC+Mh8T9gGKRxAQ2DF71oMx jjrrwFaOzLXXvdVj+9EJHIS3ejo19seKAGc/+eKxARaWTiArrBWojJMOiOBrjr2VI8RIznITQZeD uAvXlYMJBQrCgcMy34G7TIltL01wIAIHiJcsqnWgIQZ3swzXA6fjs2Dw/l83hQVHWViasLDYaMGW 6q2lWmuxaixWzWwFK5mREovU3HZkp4QF9srWDSnnGQKItVibsmDeY0FxaN9joSWLnE4Bt3FhgYZ1 m61YGV32XMb6PNdzduIXwMti2SI1fmbJNziFGHuo8CFkYalMv5BVFhDeM+tr+YpGWWDR2UwoBSw9 Q1m3FQfEXen962X4slx7GU5t7xNYSLGDS3GAvvhErV38M0UFdMfC9h+fYcBBrp8nLBCKn//4/MMf 4x9hvwOE8c+/jX/5eEP77cuvdA23PyIEej+CiPgJzuLf//dPv/9TdfQrBFRwJcDn4/iXDzc/X41+ fkP75e34l7ejn96NfrjPwlUfGuHV1ZAq+54YoV8QFsDX8zeMkV6+p9cgC3AWcBxSy4NeeMrE1Pjp pP1p8xLWf/JmuPmGjU8b9wCZ2HBTChasaL8eCgtd2Np5b+11H8iAhfXXvUfKwqlLO/MenzJ8Agiy C4+7VpdPrZVzZxne4dhcOfHgRB4eO8qC2nLTnLAAEW3RcUhwJSCAFIRPjKBwXaXQ5s1/aaJNoEGA QBYO4sCkBoFaYcsHgiVDvQPiJXI0ZaHpZoFS01hs3mehDRywPu9YqLMVMFW3pDNQxEgdXCC+srI1 ewkswDWUxegjbAlvKJMXy+1FWaXZ8vViRW7dfEZwKF2rERC6D8P3GmVIDAl7JI6Ca6CPKBm+yZcT Z9GOV65j1eskxQ6cwvWiOAj1LBDsKSZ+iQODvZy5xEKGJVkp3yYVNDgOI5XDb2LhulxxF/OtJbih 3LUUytuSqsJv5cOb4eO7PNLOv38Rj/DfsLD1719+/c+bX/7j5uc/bn7+ffzLb2O8bOePL9u/fd6C d/gA73Dz00fY55/gRJiJ+utH6IjfPv/42w1dye/jn4UdnwWCMP7lymfh+99G338Y0imAhbd9ZeGn 9zdAjEEUc0fiDt6OhAU6AoIgesFn4f2N4vBM8q7sfaJJ+ESDPB9vgohLpWMgpWoaPMizyxvplSUL z2DnPdijs+6j8876JVnYuBw8PnPWzr31M3f9vLMGO+usnXbW77Gweq4sGEtHxsqJvXKCmIop2dWT juZsVw4dapAjl5HSgSUDcDxNsYqOIAirUBMH7uMj72HTwvMghbncE+8+C+oXlg8Bi7l0gNVuilmS tnW153z5wJPXG4sHraVma7nJSGmCg89CRllgdY8sIBJLNdqpept5qhqcgr1YY5i0PLGHNedh1V6u WEtlc6licP1XeLf3Wai0lyp685+wUCF6+hrpFcdK+0SV4a9q4w6EkrGEkMxnjX4HKp4sVD4xD1b6 lC1+omr4moUE3ROWt7WUt5cq5jRUS5eZZ06JSTINUdMnBGYQ3cAtlfuUyn+iXCowj5QpM6HE+ghA YELpLo+0/59/7f3HX+odxL7s/Ps/gQOJ+A+wMN76D9jt1r/fbP8Bu93+/TNY2P4IHL78+htlBUD4 8bcvP+LBb3/9DBOH8tMftz/9AQ9y8+tvN7+8H/96Nd56dwP79d345/fjHz+OQMoPHxkUgYLvCcLo R7JwC1MWfHt3o6HXSxpY6IuJlEYw9k4qGm/HWoaQSgRCqb4aWZiAACgUBDwWFsbKwrOL4fOL0fPX fdijMw+mLDx7NwYIEOYb594GifDWT721U1y7G2c9GV8wePTaXgULJ+bSsbF6CpXtIo56dN5fkRhp ldKji2Bs7aTzGI/hKYSRlUN3VVhYhTsgC+7jQ28d3z2wV75mYVHE+P9j5T3Y2tiybt3/fM89X28H sshgcMSRIKGcyBllVSlHJJGzQAnlDPjcMVdJgHfvPt9NfsZTXRaFwL3nW3OMNVdJwKFDwXUq6chY sKE7vJFyTDxaAwxSh4w2U72S217JLG/lAgv2NxLggNTgfCtxvZG4XkncjAXhAQpEcrvAAqUPUDDv gKFCfb5tq4OBAHWK+Q44KOAwZ39i4S1j4c0LHAQW3kq4N2yfLc37WGtgEYDqn6L0tA1ZgIlyRFvO /ymx/w+J5X/Omf81Y3w1bXw9bRJYAFP/NWP+15ywqwp+Dyw4wAJ1KAYaCaEb6InZ1lzagmWh3Va/ TP+atf7XTyMsFo7Ewk8bWyVmLMwgqtDiLTB5wcLB9939KUJgHz0Cxy87B+x8/7Mh+mE39AksGKJf dqNTOwAh8nlzb2or+m37YGrrgFjYjL6nRhClIQWc0mbsA2XwyMdtiuRfmD6vRz6vRb6sRz+vgYu9 9+uhyc0QWa8N+Ksgc1khdISWVsMTq88gjNMIg2birOyD42skBoWgEK3iEgVBECGsu7J1Jz9ba0JT 8AsapIcjaPV1aCk8TCwEW31hITCyGBrWB0b0ATJCOk//YrBbxQ+thAZ07oEFVL4LraFP4+pTu0Tq Ngv0eR3BvkW3aBmtBPna2aN7zhRdSie5IyXMlW9AF0JraOGghnFCjqCa72I49DD1CpM+OQ0jaKkW XgggkFN66gstFhgO9rf0VxYfWMRgcz2accNBvZbZXknNb2WWDpm1zYKNWJgHC6wvSGi/B2PB9pfM SkcEECnHlqRoMer1HPl5Kt2WOLDQBfsk5oSM8LrdEcDF2xYdNmIBxUkscLjyDa10IYPY/ppDgxDC BYHw6qf19S/bm2lBaA34WfTj0IOIBbHl/5w10/NH0xD1BVqqoum5FTd8gYVXc67Xv5zA4TW1G+Nf 0wYSWCAcrKDgf8ya8Sb/B42ekYtZLmBDB9o08pOmDK9piVgYZ6NfgIXnvICm8H1n//tW7Mfu4fed w687h1+2Yl9BB3qBIfIB2o1+QoPYYZlik1GwjcZx8G336OvuwSeyT6EP26EPO6GPW6HPW3tftyPf NiPfNkg/NqM/1vem1oKf18P43k+UpgOTW8GJbSg0ueGbXPe+3/BNrHnfrXgmV/3vKWsTC2yQQTF8 nM01Rmnetze27MM1H9YD71Z9EGUNtgw1uhaEhpZ9gwvuoQX38JJXGE+MrNJS7fCSZ3gR8g4v+Eao 8oPD9JwpbQUZXiAWhsg10ZaPAa17kHbJ4uLAAG0ODPTrvCJYI52/h93ScWNnC1Akkc6HXtCrRyNw dantnWquR+/qW/T2LuAyHjR1K/lelbNX4ehVOOlDP1SeXp2zG1cqrZ1KWxdTD75L4+hSOjohGl4w BIRtTgrEZ8tbpe2NopUXgBg46lTwzCzZ3sotb+SW13LrKwXcDkHRJ+V6pLZOsCA1dSisXSpbp8JG UMzbOue5DgmqFDdtuv+/kjr+klIHeSWzvkIAkbWGF39JaHgBv/GKVTgEf/VW4ugETWKO3fwBgp31 CAdu5m9oDZaeUHg1TQ2FRQC70D7+mrP8C4ZHjGZhJec/zSj4CXFvfvEd046Oaa5jhu+Y4Tpn+S4y S47WaGMWds71L7YD9hXbFkIb1GfZNhLasu5kz244/xLiOVuwfTOLH+14xaZ4wjrtv2izB9IxQLAx 12RvPdBBe7SsQONfgI4JPeiJhR/G/R+7Bz+29/+RhY8GgBAFCF9Yy/hO1xx83aY+8m33AJd92Y19 3o2iceBiWKmpXfpe4PB1cw9EfN+Kft+IfgUO63tfN4FS+PNm6DO8E/DZCk6ugwXfx83Ap83gx40Q ksWnzQiytpAaJsks0dhiEn1hPTyODM4cF1gYW/aMLrnHV7wtHNAvaIWWmgJSxvhqiOZ0S2xyQTj4 R5ZBhA/VPrIIFsgXtRUYfmYBbcI7uODFEa8M0LlfYIGNsP24ybcfRA3g2E/zO0cvmoLO2aPhSDpn r57+ChZ6VJCDOFI6oQEabbtxPVhAiXar7ESBmuvV8CJigSccaDdUa2GWze8Qn60URlQcTcBbLPAd cvQFyNpiQQFYaPWpQ+ESyfgeGWNBZgYLnUxgoYMAAQs8cKBVVtoHy/8ltf4lNbdYkAvDC7bTQ4z7 MJwJB2reziNNQ/hGnmVw3PlZU6BQwDG1Vo1w8haAsLUmNIg31BEEFqyvxdRBhPv/2xkOSRbqmAEL vMCCgMNrcvKCGA7to/Bo6n8Je3HZxiq2OOx4Gm20FnKFtSkafLdWwP6ipEybmv5FD0PZXrLwF+HQ YuHN7HN2/m6MITL82Nn/uXvYxmH/m2H/qyECsSInfTHEvhsPmaECC7Gp7Sgu+wpAdmGfIpQptoOf tsMAB0RQstja+7bFWCAc9n6sh76th6ZWA1NrgW+b4SkQsRH4BBA2/F+2QlPbe1PbEXpPvDMF8wjL 5pGPq6EPyBdERwjHjxtBRk1gctU7ueabXAu8Xw9C71YDZLTWhcFfmLoJ9ZQ9WqeiWR6tU43Rrr+A wMLIQuDvLCwQC0N6DzSo8xAUxAJ7mELvRRfoU7t7VS6IRQZ3P45qV5+WCQho+R4tj2OfzgEhdPdq HCK1A1eKVK5+tXtQ6xvAO2j4JwToAo0DBgxhpFvpgNg4w/30UOpbYsHSobKBhbc09XMRC0qBBWoK LSnstM8c1gtGS470YetEIwAC6D4KSxe6g9zWJeO7pHzXPIkaBC03cU8svH4RxtEd4G1QLTBLqH/C Ad1EQj3lDYFggt7MWd6KCQcYJNT/W+aUOihooOABggl6I7a8EsO0mF+BBQk1IxY9kEGcHTMQ3wkW GAIdM3Y6oXqmFPy63Y9eU3NhsZpWpYAhx46OFi9U7WwVtyVasyXWZtmMj95NuJ6jXbus+P+rrX+R obK2ZUHueMHC3ndD9McudYefhkPc+XHD/27c/26MfjNGp4yxKUNsiv7KXqSgjY4AECJMUZx/AzW7 4SliAeEi8qkdtL9tR37sxH7u7k/vxGa3otNbez83QtD0dmR6KzKzE/mxHfq6Ffy2Hf7OLoa+b0fx LV83ItRHNqiVfNuMfkdCWQtNrQc+r3unNn1ftwOfN3zE0brvw6oXer/q+7gWBC8TqwEBh3e0VypK s7x1P1u5pTVbWn1aCowtBUYXSGP0kJGAg39kgVoGY8E9qHMN6uG10B3YfqelAHvCyEePVOiFruEb 0vuGkCxQyVpnv84l0rv79C7GAi/SO0QL3j5igRepeJGS61e7hnW+Ia0H9c8o4PFdAzrXgJaEN0ES 6VW7etSI25S+uzTuTo27Q+MQWOhQcR1qkAIWHF1IDYpnFujmr7STv1K6EMl7aXnWRqlZSWqxoLB3 y/huKdc9T+qat3dKKXqzjkAW6w2x0Erib2UOhPHXqHxJy/YLLHQSRMjg1o55S4eY9BZEzFkJijlb By4TEwhvZs0CL28lljcS4GB9JfQFChE09SMiZh3EAqPgiYUO6iy4khrKa/oWJiGSs4kD+hHZM7H9 ea7xDIIgGy12oTtMMzRmSW/E7fzeAsHC3BGxILwtvf+LdaQfxr0fRoGFfbDw03D0w3gI4/TTHPth Ag6xH+aDH+Z91j4iKPsfpmcWwMUPY2zatD9NR1y898UYgb4ao99NsZ+m2C+8btyf242KtyPQ3PYe JN6JzuGvu9EZQ+SXYW/aEJkx4jw6vRud3olM70R/bUd/be793Az/2gxPb4Znt/Ate5LdyOxuYMYY mDYEfm77fu3iJPxzO/Bj0z+17pta839eC3xEmqAkzvYEbsZaLKy3WBhbDrxbDkwst1gYXwy+Wwqx x+5aGl7wDOvdkMBCe3+gv4WAzjuMKKH3jCx4IVxG4ZpV9eCCZ0DvEukcIr2rf8E1sOABCP3wPyoO LAxpXCP4RmoBjJ02CP3oCxrHAL3iFuJ5rwZ2y9nN1KXhO7X2Tg2SCN+JV9QuslKMhQ4lZOtsyc5C hLNT7kLNd7ZYoGsQTLoRSRT2HhlyREtd5Jesb3GN3NZBTNloVQp0SO1v2arUGylwcLxma0ECCx20 kQOtwfaSBcJBzFgQ2/AlNIs3M6a3c+a3EutbiRmXvZ2npSShqt/QZdxb+C62KkXFT37JLhzJOOEI 9yW2tEXfxeyW5XkH1IxFWLAV0jrldGHewVh4QywgjCOhs5m1EHYoy9tYrLb81YoJpNftxWFi4dez R/pliU2bD34aGQvGw1+mo2nz0S9TbMYcnYZQ56Z9/BW8fCcQoqjwn2b0CKLgF/sqgWCMzeAyy/4P cxT6ZY7NWGJzln2xdX/edii3HyuZVLYTQXLzocJyJLUe0AXWA5n9SGY/ltqO5i2H8+YDiWkflS8x 7EmNUZkxqjLva61HOtuR2hFVu6IqPqLiY1rnkd51quIOZOY9sWFvdif8Yyv0bTMIr/Vxcw9+aYJm HMGJjQAJPmotOLkqKISOIIAwsRzGcfRZ6A7eEUrZHtoTuNjCYUjnGtK5iQK9e0TnGoWAjNYxqGNN BF9l3WRA5wQRyO/EhdqOIh/UOIY1jlH6LlzvGtC7iQVW/wMMBDrX4BVw4RRpnOgmPRq+m+QgFnQA wYZU3qlxUMtQORBDEEa6VBxrB6RuJdclsEDTCr5TzhaalEgZNgomSlsvY6FXyvUxIVx3Sa1oHxSr kTXgkaTWN/NWGka0F2nfzKM1MBDQDmTOTilYwJ3fIhQ5A8GKVxggHDthLMyaqVmwrVBv2VouG238 wcIblCsdubds6EYjhtZSEsfqlkBodwfbEwtP825mw2jAh+J/JUz9mMkRBn/k1mbZai3Ohckg8WVl 70mrTEKDEEAQWsyr6T9YmLbuz9iOfpqP0Q5+mo5+mY9mLEe/jKBgb9oUmaFSj/4yRn5CKHJLbMZ+ hOunrYfTloMZ0v6MKTaL6rUeSriTOe54zo6TIyl/IneeatwX+sDNYji5ELjVui/VjlON40zrPFfz p1r+TOM6U3tONZ5Tredc673UuM+17nOd51LjOFHbD3XOs1V/fCN4ux1O7O4ltoPx7cjF7mHccHSz exDf2b/ZisTXfGfLLkBxruJPJZb9aZg9A+J89P1W+P3W3vvt0Hsk9E2EdOAQmlwPvV+jEcbEcggI MBb2gMPos3wjix6BiDHa+OEVHqN4t+SbZBOQiWX/uyXvBMkztuCETSJbJRCByteRhoADY2EI51rn sNY5pveM6dxjBAv6gqOfWgYQEAQoECicIgRtNBE138dMFFI2AshLFnrUTrYhBE7MJeDQpbIjg4MF ihsKmlbQCJtSNv+ShR6FrVcOFuwAQQQoZLBMFCLAEQL4a0QGiem1xEwsyIS+ABbgkdAR4KZ4gEBH Kng0BfQUO5klBgLzRWgNT1DgFboPM1slgCDc5AkESh9iCgXUHWYF0XqUML8gb8OMEAWNOTZ6Zl2J KJhhYvd/SutPLMyYXs+YwELLqgn5hVFA+YVWfa1v2yygW70Ss2f9BBaErSktFp7zwrQlOmM7nLYe EwjUFA5nLIcwPDPmyBML08YIesSMdX/WfjSLaueAw8Gs7UCMsrcfSe3HMu5E5bxQey6VnjOl+1SN 2vZfLYVv12OZ7ZP87nlp8yi3HE7qfZcLvstFf3zBe73ku14O3SyH40vBq6Ugna+ErlfCN2vR1GYs vRFJbkWSu7G0+eCOOy14riv+m6rnJu9LFQKZqjdVcV7luDN86Y4/y+0eZleDt1rnqdR2MGfdh4tD YPlECn/YCpLW/YjYHzZCHzb2Pm1E3i8Hocnl0ORyGAIaY6S98SXv6BIoCLRYWPKNrYSG2ZLUOzYZ H10EAm5oVO8a0fJDZJnIOA1qXSTWIwapNXhgkAgNLXBwjC94xvXucfJUf2dB+MZ+pGyBBRX3xALl cT3XpeHAQpcaoRutAV3DQSZKzXWr7RAlcRXXoxT2OznpiSFaj3pmoUdpF1jok9lFYEHO98ntPXJr D3IEMoXM/Hre+FpifMNYQKbuQGSYZ/O7eY6BwNMCFO13RV+wviH/I1Q+4gMvlHeHmC3VtqqdVlOF iCEUIdUhmShGCrzNjJU5GU4golPMd4odbLTtaLNA9Q8WWGDn25a+tTeJscAJgw/GgvH1rPkNCywd /8iC2Mo8G7qYjc3+aHL3NBAEC3/9srz6+dwXZizROdvhrP1k1nY0RzoUQ+zeLrEfzsHG2A7muaN5 /lDmOJI7j+VO3PCPpY5DmfNY6TrRes4W/ZfLwTiqcSN0tRk6345cGw6ThuO06SxrPL0znmaMKNfT u53TzPZRavsovXmYWt9Pbhwkd47SO0eprf0EtHOY2j3OGI8zhqO0+ShtOkiYDm4tB7fcccp7mQ/c lPaS1WimvJ8t7+er+/laJFMJJoqBW5L7smg/zhliydXglcZ1IrHBuZGd+74b+rrtZwp820FO909t QLSW9XnV/3HZ9wFaCbxfDU2uQCh1N9oH4sboMj0xMUaDPHoWY3QlMgiztBQc1HtG2Wby0SV0EO+o 3g+vNbYQQJSgNL3APrhA7xXpER88tDy74MUJOSJ0DdZBhnSMGtYvBMF0DWlJrEc4yGjpnCKwoLb1 aK09GmuXGsI5GSeaXGj4Hg1YsPZquX6kdTXXq6JnLjppewZPC01qhG5KGd2AC75L6eiV870yagr9 cr5fwfUpwIK5W2HulJo65o1dMkuXzNpJxoliNTmceVb/Uo6B0NryihdpGMdiNWPBQR1BbOsUipCp U0JTOYjm1CjROWsnQIChYoKDYlbK0p5ZE0fEgsTZJXExE2Vlt3fWR+jNBdBe5G7WQShcTMPts5w+ a4IRYr8G1yXmuwgH2tdHP10sqPXTyXRRlrexNV7mkWaIhdfTz8/+z3IHEueJzHkhhc1AzXPHMseJ 0n2u9l1qfFc4qn1X2kBcF7zWB2/0wWud/3IhFF+KJlaiifV9VHJ6+/AOd2bjUd5ynLGdpLiLLH9d JMWL1ous+TRtPMvsnmZ2TtMQnZyQDGdZw3HKeHhrPLzB0XySsl7k7FcF22Xefn5nP03x52n3ZTZw U4ikKtFkOZYsHedqJ4XacaF2lK8d5IBDLZSqBBIl11XRcVmwUYNIr4biateJDDmCP5Tyh/Pcwbw9 Nm/H8UBsicwaw9CvnfC3zdDXjeDURmhqc+/LVuQDbaYNTC57Pm6EPyBorLFh3zo9ZyE8rwe/RE/b LXhGFn20EkUdxEcJAiZqwUfdgR6y8w0uegcIAYDgGRKeNqInVT0tUe5wCUQQCBrHEAIFw2H4yTUx cMBCn5br1dl7tLZuDWTv1cE1sckF6xrEgtoGFlgY9/SpXF1yji0o8W+UtldycwfN8uwitaNPwfdS O3CABZHU1q/Ai/Y+lbVHae6WW7oEyWxQt5wDDgILtDkKPYJ8ETHSJeP+YIGWlShQd0q4LgnPbu88 FTYoYIL5YQVJLMBfdbHO0iHYlXabIIk5wSNRkRMLwiCbsTDXkpC42Z4Q59tZB2OB0vczC7MWVH6b BeFN2OoWw+EtYxBCfH49Z2lvVrS1Ejd+3MwzCyrvmdoHl34BLfgulv1X6+GbrVjacHQHbR+i1NO4 ae8cJHC3Nx4mjIdJ81HKcpKxnmTsZ1nuPMef550XBedlwX2ZQ/V64gVvouQhlZ3XBf4KaKDIM7aL lOX01nKasJwkrKdJ7jzNndzwR9fOkxvn6a3rPOW7yQeSJX+i6LnJua7uvDe5cLp8kK2dF+8vivWr Qj1Rub8pNy8KtZNc+fCuHEmX/Tf4oRn+Is1dpK0n+PVut2M3G3uXG+GrjdjN+t712t7VavhyNXy9 Go4vBy4XvacLnjM58DdHZnaDv3YCPw17vwyRqe3Qpw3/pw3fl83gl63wJ9qRG36/EaKMQM/rhVH5 oGNkwf1uJQArBcs0seIfRiimEZ6XRLs+fAOLnn4GAk3Aka8XaJGWnbhp9q13QuSvWixwQyo7JLAw 9IIFclM6Z5++hQOaQh8t23pos4eW5es2C6BGpHGBhR4FMgUMEvfEQjdYUIECDiAMKJz9xIK1X2ED C71qa4/K0ktpAtmB4kO3ggMLDAdqB4geiAYCC5209NTuC/OUrDukji6pEzhAOOmab/WCrhYLTnYP F/oCmgUiBrHQSZnaSrmjZbTYnX+O+5MFmlO8pbbyjEmHsD9qlljomHV0slXZP1mwCyx0C62B4cB+ ASE1WFisQFcys/EHvlFoQNzfWFiKXC/vxVdC8bXI7fZ+ynh8ZznL2y9Qw0X7ZdF6nrecZa2nWVb5 d46LrOsy57nKey5z3qucL17w3xQDiXIwUQmlaqFEKXiTDyWKoWSJlCoLte1LFl23ecdNhrtMcBe3 jvOk+zrtu836r9KBq1TwOkO6yUbSpVi2GrmrhDPlULoYyZQOcxVQcFu9T9XuM7X7XP3xrv6QrDSu SvXTQu0wWwmniv6bvCt+x10kbSc39tNb7izJn1NP4c8z3AVev7OfZ2xnd9azO9Nxenf/did2sxy8 hrVTcPsSc3jGGJo2hH/shr7vhH7sBH9sB7/R1CP0ZSv4eTNIU/KtvQ8UuhE6QpNrgckV2gcyseyd XA2MLXnGV3xjy97RZa/wvHb/ohuiskfxo+afhJSxiKDhGNU7RnVOaETrAAvDamJhVOceZitOyNqC g6K1KWC15BAt8sChV8f3L3qAA9sBiNaApGDr08EjcX1Km0jJiZTOXiVlCgTqDjVPewWBjMrep7Ah IIgUjAUYJJm9X4mmYAMIxILKDhyoO8is3Qo7Y0F47IhAoKTMXJMgtsrkoP17LRYcbOjAEwjCFE/o EcwmsRSAv5JoMVaC7mDtZOm7tSQrEEEeqWWTaJzRmmjbWi2jFSUYKcQCQKDBBFjomnUKLNCjrCw7 dwgs4EeDC6YOlhrAYwftJGQpfs70asYIERo0Gfk7CzAnlpO07TjDn2Y9l3lfvBSIl4LxQvA6G7jK +K5T/msq19B1OnqbPUjkj5P501TxNFkgpUtnmfJ5tnKWrZ7l6qfwMFC+fpKvHeWq5GTuyrFMKZIp RNL5WKYQTeX20/njTPE8V7ks1i+ypcts6SpXJuXLV8XadVmo8zqM0Gmxflmq31Tq6VozW2vkG81i 46HQeLyr3d+W65eF6vFdKZYq7CXxO2dcVyn3FTpLNpQshlMlMBJOEqT+RMmHQBHPu9CezvHPvDUd XO3sx9cjl4u+I5Vjb94SmDX5p40+aGY3MLMTmN5BvwgBiu9bwW9MUxvBT6u+qa299yueTwjgq96P 68GP64HJVffEqucdyTuxFgAXI0voFO7xVf+7FfDiAzKC3oGaRRdYGNNzYzpuVMeP6RxjOue4zjmm BRruETgl4YQclJtSObzWsmtgySla4EULjv4lsOCi5VaySRyxoLX3a+19SqsIOCj4PgWNsylTaylx 9+rBgq2XsdBPIBAOgypnv5LrRVhQmcACoOhTIUpbemSWHrmth2I1vuoEEYgPHfMWINCt4IV+0SGz v5E76AkLGc45Bou1Ew5q3tYlseHYiaOEukBXyzhx1BRolQm1bWUsWN5KAIL5iYU2PlTzjAKhRNmX xEL64Ntmie9A1p4VNi+x/Uvkecxv2iM/5AvWFxydwmUtHITugARBILwRm96KzW/FbCZIuy8oViBr P7Hgus6jVLw3Rd9NMZgo7aXKkVQ5liofpIr7SdRwAcV8lKud5etXxeZN6f622ExX7u+q95nqfRp3 7Cpu1Pe3leZN5T5eblyXqJ6vK81LlGu5fpavHufKRzm8Q+m0UL0o1uKlJq5PVx9SlftUBedtVVHh TbwDXNAVI+KmXE9UG6lqI1u/z9UahUajWL8v1gmHdLUZL4K+ErA6yhQjqXwYSheimdJ+phTLFMEg SMS/BVwEEwXvddZ9lXZdpp3nCbSPnej1VuR6PXS+5DvWuA7lfGzeFpFAu4F5Q0BiDElMe3OG0Kwh PI1+sen9thlA4v66GZzaDHzBydYe6JjaDH9ac31cdX1YdX1c937aCLxf97OdIb73a36Q8mEN8jP5 Jlc8k8uuiSXHuJ4jLfCTi64PS973S97JRe87nWtc7x6D49K6RrTuYZ2HhXHYLbtokUNr6F90DCx5 RIs03aYBN+pc22IBhqdfxQ0oeJGc1qDaLNjQSlosKFosDCpdQ2onLu5WmLrAgtoqsNCrsEJPLAAE ih5U6mAB/YLvVTrhoGiEhyPbEEUSYJm3dM2buiSmrnlzl8TcDTQkREc3HJHYxmy8jXkkRAaBBZpQ 0IADvWa+zYJYYAFNwURTjDkzwCG+6KvC7Z0Ku6slDuqmeURrKsfwIV/UZoFnLJC6CKIWEUTBnOkt tRI2E5yzCIzATT2xEE2VYrDld7XDu9pJtn6egzNvxIuN21I9XoJFKV2XyolqLV1t5FGKjYdS/b7e fGw0H2uNh0oDxdnM1+rZWu2uVktV6relWqLcuK2gkms3ldp1qXpVqsbLtUSlCXbuqs1ctVmq3Vdq D5Vqo1JrFmvNQrWJCi82H3O1ZqbSwDUo9RROavfZ+gOUbzzgS3n2s4BDoUEvwjUlgA/TebFxnK/B UEEHaBbgN5U/SBciSXSNQiCe81ykXOdJ50XSeX7LnVwbYxe70fPtyPnG3vlq+EzvP1G5D+WuA6V1 T2WLaPhDjeNYyaNrnKqcp/PWmNhy8Gtnb8a4/20r9NMQ+7kb/bET+baFAO75uu76suac2vB83Qp8 3qTEgdzxYR0s+N/T5hAPNZE138dV74cV98c170ccSZ6PK75PKz7gMAn7pHW+07snGAvDGidNt7Xe Aa2rV2d5YgHWq2+BQOhbABGOXnQEHT+g4wZhtGCuVM4B2gpILYMoACk6vldlE6kAAkcgKJxDSueQ ytGP4ldZu7WWHo2NscBwoJEcm8q1U4OQo0mtv9o7ZK1dHx0KSyckM3VKjTh2Q1Jjj9TUPY8T4EBE QE8sdLDBNMICEKA+gl4jI3XNP3UQ5oXQPsSmTsCCIyiTAC4cLV1zpG6xtVtsI81B1u5Zyz+wMEcs dLHdTe32wXpKa8UV1sjwemb39awRKR5drBPfOwMonj9P9axYPys2L0rQ/XUZd/j7JG7adM/H7RoW BWVcS1XrdzXGQv0eLNSaD837h8b9Q735UGnCuuBLDIdqPVOtp6v1ZKV2S/WPYxUnuLff4d5ev89W GzlW/9UGgLrHsQTnU2+Wm/eV+4diA9fgtk9c4OZfbDzmAUL9IUd9gbHAVGiAEYoPwCFZayaq+M3r JxSoKyf56mmR1poOQUQyF0ncRRJZuDvv+Y3z7IY/jXMncdvhhfXoxnIQNx3Et2OktTD80onadbDg OlpyH68GLlZDl9BGNLkRyywFr9XuKzl3Mm8/mTPuz5kOZk0HvwzAYW9mx/9r2/d9y/N90/N92/9t 0ze14aWV263glw3/R4CAsl/1fFlHNwl+XvdPbfq/0E4qWCwAAjq87xfd7/T8mMbRYkHDWNB6hjXu QQ3ckR0eaWDROQCPtOAUNv6J6EgbnwYWXIM6x6CWx7eMsBlHr47r0dp79fgqR5epkJ05YkHGk0FS OgaUXD9N9MCRvRe9Q2XtfWKBhBOOcCDZexBAlDxt7ZOyRVeZpQORnKkTUMhMHTIjjl0kY7fM3CUz 40g4SC1QJ9khS6eYmSJUNbkpazdN+uyEAxHB9kexiEE2SYpsAlhgk4wdElOH2NhJaJi65kxPLPRI 7D1ie4sFwsHWWoNloq4BYzZjI82yVoKLxaxH0GRt583s7ttZI1pDB1oPfjdEe9IzC7AisN+JSh0V m6k2M7XmnaA6ufRCoymo2GyWmveCULrAod5WrXFfQT3X6rlqNVN7Ui1TqwvK1ur5OnhhPqfZeqvy PUBolBp1UrNRvm/iFaaHyv1jmbEgKIfUXKN28MRCHr9bHb8hHBqZqKtiFekDOi/WoLNC9SRbOkjl DpLJg2QilkiGruKB64T3MuG9SsEmuc7TjpMUf5KyHyb4k7Q1em0KX+x4Dzc8p1uBM9P+pfnoynJ0 bj27sZ4ld2NXq6HbBc+l1nUhtxzKrUcSy77Ysj9rCs8akTUCMwb/rx3f9K4faEzv+Jm5CoGRH5u+ 75uB72gfW9Gvm9GpDTgr99QmEod7Yt05se6aXPNMLrnGFwCCa3LBAxZGiQXXiMYzrHYPql0iPT+g dwwuOOn+r+eZHIOgQAs5aJan4YfZbpDRBQ++1K23detsvWgKGngnjmVqDt5JJLUjOA8oqXcAsQE1 P6BxUHdAglbbupSWbvglLUfTPVgstrgE9VLK5gkQ1jJ6YaIQsVGuUrOwLfyNjB4aol2COJcCDXMX ogelD+Bg6paQd+qUGCGgAaA64aPQDqTwS3aYqB6Zo0fm7JYg8PI9wvBu3o5AQSyIDR1zu51iA763 xQLagRiXOXroYhCBardA+FLnHBHXKUZ5UyuB0eqYM1E8EVu7iCAYKrQSdIfdt3NgATJ0zZm7xRaB qc4X+1RhRWBL7nDrhjOvov6bhToVW57u5M3/yML9Y/3htyCcV5vklwr1eq5eawvnjScxEFrv8/xW /8wC3v+h9AcLzScWCkw5AoGwBQjJKnJ0+TxXOkcAL9WRVhCrT7Olk0zhLJs7zUH5WCoTTefDyRwy RTCRDyUqvuu89zLnPE17LnKO4zR/lLTvX1v2U9xJ1nFx57hMOy4T9rMb81HcepLYiqWW/Nc697nS dqSwn0ht+1JrTGLemzMH5kz+WaN/zhSQ2mJ4HYZq3ro/Z9ybM4bnjJFZY3R6N/ZzJ/ptK/Jtc496 xxaagmti3QEcwAJM1PtlN2wSUsPkou+d3jum845qvSNq95Da1S8UP7EgUMCxo+OJhQENRwMLDT9K +wkdBMJLFmhnIN9mwT6gdAyqHEMa1yBjQaThkDh61bbuFgt8r4bDeZfCIrDQ12oTyBHWPhpeW4Xb vsACWkOngkYYXfS4kOXNvLFDahJaQ48gqbmL4UBtQmal5oL0QSwwv4RMIeWJhXkEZK6bptK217Sd Ce2DNReKIYyjOVP3nKVnztozx/WI+V6xvVds60WdzwkCDuZOkknAQWABcYNwgySMhVkYthYLHbPG brG5R2IFUFDXi75QajyU4fzrzSrUaNYazUbzvo4j7vaNP1h4quEK2kEbhAaTcA5Gis3GC7W+6/lN Gs9AQTBXxUad1GyU2m/+NxYKsEkwSC9YyFNeuBeaAlwcsglyzXW+eJ0vIeMgmNwg6RQqN8X6Tal8 WSxdFivHueJRvhLLlmO5ahTK1gO3Jf91wXuRDcSLvsuc76rovy7RTo9E1Z8o+27z3pus/SxuObzi zlPm07u10PWi+0TNHaj5I7ktqrBH5PaI1B6WQTYc9xSOIwV3KLfvy+0HcvuhzLovMUVnjXszu2Fk jZ+7EehHm4X3647JddeHdaQJzydkh2UfDcEXvRN6dAfPO71nXEdbmIYXXEN658iCa5gdh3T8yIJw 4hzSOYb0LsaCU2BhSA/vZCNpbf0ae78adognUV5AagAL/KCKH9I4wcIgbRGkJdl+HS/S2PvUNqiX BnCWHiW5pj7BNTEQiAU5sSAUebfc3K2woH10s4eSupS2DlgmKeKDiUCg1mDtZd/CsoOZQQQQgImV QWEVWOiSckJrAAuIFWxdyMKSNdixPNEEFnpaLKAdcE8soJiZcTLjgk5BYkGMC5a+uyU28lTEgp16 jYQ6TqfY2C0BC5YevAlD7IkF8jnsxg7VmOr3ON4jEVSp9v6BBdiYKr6FqX7/u6WH39V72P7mC90L KhIj96U/hVdgmdr6481LzUcSsfCAJsX0QGggRzQfcm0WMjBIFWSTOvk6GDycVOqUuCl0U/RAcrmt VOMVGKfKabFKyTpXBQ772XrothSM5wPXuXCCFpDx13CiHLitBhIV/23RF896rjOOi1vuDEpYjtNr gfNF54GW39e5jjWOA53rUOc90nhiGu+B1nOodR9qXEcq/kDFQYdK7khu3Z837YmNYbEpLDFHxVba svtjJ/Bt2/tly/1p0/1h0/tpw4vs8HnN+3k1QDl60T0Js8T8EtrExKJ3lMZzjhEdP6pzjC262GzC MUIDOzDiGl5wD2lBgWtYy4/QK3y/zjYAae0kDTegJg3SKhNAsAMEnAOcQbxOW2TbLGg5wkEFFliC UFoJBFpZIsPTx6papBCWmywQxW21nZoI/JXK0qW0whp1yy2sldCyFa4nyaw9UrZaK6Paxq2ebfYQ egR1BwTzHhnfK3fAMnXMsX3a89a382bqL8CKCTj0iKloWf3beyVPLFh6UcwSC7EgNnWLn0BAR7Cy BsESN0pdbAdEfcjU84jkRubZTF30LWbWbszdLzxS/eGx8fBYowhAqjfum837xv+WhVJTKFccH8rN xwpT9R4soF/cv9CDoMrfKGANAu8phAjBPrGW8VBGUrh/bLFAOAhrR60vCT+x2HwoNCmJ51iiYaGG Wgl+E3YxnbBzINNMscZxVawAh4NscT9bjt6VY3fVSLK0lyiG4vm9RCl0U4DCULIcvC34b3K+64zz IuG6TLiuUraTa9P+xXrgcNUTXfHE1oJny/6j1eDJ6t7Jcvh4KXS8GDhe8p8s+k8XPCcgRes4VnNH Stu+3Boj2WMyG4zTnsQcnjaEfmz7vmx5Pm95PtER576vm/6pVf+XFe/HRRf0YdFDWvJ+WPK9Xw6M 613jeue7Bdf7ZR/oeLfgGUOP0JGIAnQKPfoCh8YBFob0dpLOPqiFUPbckBrih9U8jkRBiwU72+8B o4UcbYPQRwZoOwcvElaWXrKgsNJiFCVufMnSy4QmInQT9lcr81QWFjGIApHchmbUSxRQT+lq9Qtr F+VrUGMV1pG6iQXaT97NWOigfeMQWDB2So1dUqOAQ++8pW/e2iuxEQgkEIG/mnslJuHYI36SsQsC CywOtFnge+fsvXOI5+gLBqEvtFkwEwsvPiuM3d6p7JnIKQEHxOEGrRG1Wfgz9gosFNthlp3QK7i+ et98oXtB5ede8GyZgECWxWohTeB98A4vWajc/y7RQhP9uEqrDaEfPTy1mzL9MqRKo1G/vwfRdepT QPt3Fb9PlXJKukwrWggUZ4VyLJ2NpnPhVC6SzEcThVi6HKFjJZrClypER7IQvM74r9OB+B1Stv8m 47/NggjbcdwYuzDGLnejV4bD5Fb0EtqMnG8eXq7HzlaCR8vB45XQ+XLgTO860vKHwEFlP1Taokpb RGmPyGx782a/2OgRWPi85WrL823bR+tOq74vKx4m7+cV76dlz8cl98clz6dl/3u9+53OCb1f8lGz AAs6x6iWOkWbBUQAOwMBRNhJOm6EaZiWmPgRLesmWgciNqHB+sIgPUDB9TMQQMQgAgj6CMUQnnbS omtQ9La1pLKzIxAw9yiNUK/KLNJY+9sDjj4lY0FuQf33ySwimbXFAssdLRYUxALbAWXtplkGk0x4 zohNH2ijrBUBvFNm7GISWBDNW/rnrf3zNpHELpJwIrFVJLaIiAIjk4lwECQ2MhxAAUpdiAP4Fkfv HNdL+5R2ICRoRHIgQ5EBzQUu6wULrDLvYTxINCxoUHauNYstf95moY0D8zB/Y6FFBCv45gs99wJa NWqz8NQOAMJdGweBBVbzv4UbO53cU2uoPuf0h8Y/qXmPLnZ///Dw8Pj78fdv/E8DwYf9Q8BColy9 KpTO86VY6i6Suguns3u32Wgid5CpxJJFHA/vqsf5xn66Er7JBq9StC3k5i6UyAUTWSicKbjjaedl 0nWd4c6T3EWadlWd3ZhOrg1nN7sn1xvR07XwyWr4YiVwtuA+1jmPNdyh2r6vskeV9j2lPay0B+VW n9TiE1iY2vZM7Xi/QttepOkf24Hv675vq56v0Lrv6zqh8XnFAyg+L/k/Lfk/LvpAxPtFL2nJ927B DRZAxDhtHefHF91U9noeFIzobKN6OxNPhkrvHCO5CB+dYxgRAx0EoVvDI3EzFqz99JwFogfaBMdW pWjPOT2ph8ZBz6hSR6CsTcuzll61qUdp6FEYelUmkdYKS0Y4IKejlaApyAUQGAtyckpEB+svQKBb YW2hwVoDIjmLD7iG65HzOHbSc3b0jHaH3NjF1CMzITWIpJYBYsEqkthEqG2AIDaDhR7xLgQc+ubR O8wvcEA7EJaerN1zIMjRJ+b76LnsZxa6iQUTw8HaM2P+k4UmXAep3ixQCdGxBQJDoMVCvfHCJv07 C/f/iYXiU0BAUyAWWhJYgHLkwR6eWHgyXfgrVGO3erDQfPz98Psf9Jvqn/7gBP8isAAw7lkGh4O6 qzUS5Vq8VD3NlViILh2k8ofpwtFdaT+RP0iXDjMI1zWcsB0d2dDNXTiRj2QQH7LeeCaYKvgTOd9t jnZVxbOueM55nXXe5CHLZcJ8frt7dL0Vu9zYu1gLnq8Ezpf9FwuukwXXsR6ZwnWgcUTV/J7S5ldY /XOmvWlj8Jcx+NMU/GUK/TQEf+4Gf+4Efm0Gf6x7IUDxfcPPiPBOoU0s+UiL3g9610e9+8MC+oX3 /YLrHXNNk0ued4uud0uusQV+dBGWiRvT2cb1dtICPw5MFpy08YNSBjei5dBEhrTEwhA9eYE8Dihs A2rbIP3VgWBO0wq2SEUPX8BBqXl0h0G2S2qI8oWtV42OYMBRpLH0a63AQaS2iNj8Wugg/Uo7GSS5 bUBgQYbgTBGD7BYFDRpkCN2BsUDZoYeSCNcr57oUtk6wQPMLQxcTQjqZtHl0AYuIjtanpiCisicW eiQGAYenvoAK75o1ds3haEEW6JM4RBJnH20X3O0Q78ApdUlaIMBHUSp/wUKZjHqz+E8qNOqFeu1p qeePZdWWmXloUyAYm5dp4km/C5R5/0FCBMYxT/M1+q4XLeCPdaoGA+H+8e8ICP+E3y/O8efx8RFc oFeUW+GCpnUZNolIIE1X69f58mW2dJbJn6bzp7T0Wj7NVqD9u+JeKhe6vQsn85FsJZiueG8KvtsS QPAnc4FkzpfIem4y3tuc97bgvinYLhPW81vTcdxwcL0Tvdrau4Y2w9frgau1wOVq4HzFf7rsO1nw HOqcETUfltrCEmtIbA2LzQGxNTJrDs+YQtOGgHg3JN4Jzu0Ef216Z7aCPzZ839e931bc35Y80JdF 95dF19cl79cV39Sy59Oi88Oi8+OS6+Oy+8OS6/2SY2IRZc/j+GGBe7/AfVhyTC7y7/T2d4v4Ehih fjGstY7o0C8oiQ+zZSiWygEIN6SDR0Kapju8oMFW7uafRRtokRGMA1rTgM4yuEAhHZYJDQIhok9p 6VdaBxTWQSUosA0q7EMKBHaEbhPUKzeJaNOUWaSy4s2RzXuFlM0kYhGjZ95MaFAHMXYTBYKM3TIq crigvnkzUoNIamWWydwvMfS0RSxIQIEBEsEjze52zRp6hLAwZ+ubdxELYidrCjsAgdamaB2J8jjy Qs8LjwSPUWs78L+p3GyUG3VBL9eFqsI47G85t5Wm/wGH/xcsNP4UQPjfsIDi/0cWaqynlNkvxnZu sIE1jRQb6UojWaonoHIjUWnGi43rQu04Xz7OVw5y5VgGUBSC8az3KuOL59yXSc91yneT8d2k3fGU +zrtuso4LtK28xvb2Y315MZyfGM6vDXs3+7u3xpiN1uRm829+Mbe9WroctkPFg70kPdQ5TpU8DE5 FwUUUi4qse2BiDlzWGraAw5tFvw/N0k/1n0/Vv3fVn3fVrykVbDgnVp2f1p0MBBctJdjmViYhJad OD6x8B4sLHDviBFuVG8j70Qg8AQCtQacOJg4AYdBbUsDTIMsSjChQTgGW89WIGITCANayyBbsBJp LX0aM/pCv8o6gDyutDEWrMBhQMbO8TrqX2kZoAVe2wAldK6PWKBITqmcWLCS0D4IBLQMU7fC2CMI Nklu6qH4DBYsfVIrHefNonmTCAjMG3vmjUJTwIssOBhFgAJhASyw1SfkhT5qCg4c0RE65w1d808s UFgAC32zz30BRXX/+NiE6/431amcGoJergsx0YjtiYgynf8uPwfbB8HeCPqTl1azgIAAVGj+NyD8 t33hkf35Bxxgluif9sh4f2hFeFqzaq3T0h6PBpB8TIGIQhWZ4rJYPS/WaL8fusN1OniVDsXvPBe3 tF83DiXcV7euy1vnRcJ5nnRc3Dgv8NeE8yLJnybsx7eWwxvTfnx3/2YndrMdu93aT6zvXS75T5b8 x0jWi/4zrftQ7TpQ8FGlc1/Kx0DEvC0iM0fmjSGJITSz7ZvZCU5vB6Cfm96fwGHNK+j7mvfbGnBw f15yfFpxMRELL/VpCS2DBwsfl53vl520FXCBG1uwj4IIOgECHAVtjb3Fgpa8U7s78C1p+RcsUMpm QZtYGFCbB7XWAY0VPaKfVm5xxB3e3Cc3AwRiQcUNqbhhFU9CKqGfxQ2pbUO4GCFdgxNAAQrMTBZQ 0K+wQAO0cgXjhIht7lWYepVoNyacgIU+RAYZgdA7b2EyseI3iqRmOmEsIFOQ5sk7iaS2Pom5TwJ3 RKtPfRKumwYTfPe8sbVIK2mJVmXBwtwzCyihx//w556IuG/p8aGJunpk1fX42HgxdGb6DXtfu3/4 k5dWbVdfcNFeEaLrSyxxsIXZB7Ye+ygs8DL9f2LhqVnQv46J/c6trC2sHlfZkJHpMV9tZsuN21I5 SSaqdpUrnd4VTu+KJ5niyV0pmsjGUjmK3repYDzhv7r1XyX9l3eBq0Qwngrf3oVus4jbvquM9yLp PL2xnwCKuPno1nKSNhwl1yNXq6GzleAFesSi9wjSufYBhcIRg6QcWNgDC9DcblBsDM/uBmcoRHh/ bXh/bnigH9C65/u659ua+8uK63NbwOGl8AoDwfFl1f1pzfN+xTm5zL9b4scWOYJCz43qbGM6flTL jSNT03oU94QDWgazT5Qpnlig8YSm1RooXKjMgwCBErewDMux4GwRwR2p7ENq2iU4wjSqxhE42IcZ C8NaOxGhwQmsl02kMEMMAUu/3AShfeBN8CKRpTSJ1BCgABom6iByW69MYMEssCCSGkQUq81CUxhA vkZgBwti06DcPiAxD0gs/SRrn9iG1EBTBmQKlrJJBAJ4MVMSEVtesgAY/lG4uaL6XqhVVw+sLMm3 UJU+1p/17yz83f+/1NMCafX+XlgjEnDDnRzv/Hf9P2ThKUcIfx7oH0Oi5Sb0C/yIpy1VYLlJO6Dy yEeNZrbeyFRoz22qSjvJoeti7bJYYTs9AEj+KJU9SOaQu4+SdyeZ/Fm+fFaonuYrx9nSQSYfS2YD 8Yzz7JajZ4uS1uPkdvR6LXC25j9d9R0sew9X/EeLngMQoXbtK52wTBGZZU9qCkFiQ0BiCs+yHU2z O/7Zbe/0lufXpvvnhuvHhuvbuuvrmmtqzfVl9Unuz6ueTzS8brEAEKDPq65Pa+73K473K/zEMj9O LNjH9HaE64kFx6TeNcEWlwQuIDqhdSdKEwILgsj5kDjGAofSHVST8yFMwAJNt+lIe2V1TqTyEXpY jx9R8yMqboQ20NpG0IM0cGg4t49o7ezENqi2kFTEwgBAkJuG4KaQOJTmfqWJxFjoU1GPEFjoESZ3 Agsyo0huAAjoBSxHmPvnLQNSsIDCNg7OW/vFxn6xqV+MWMFWTYWJGy00GVn6MFMep9zRWq39v8MC 9L9+v9DLViJAwe63LU9FZfzQ1uML/RZu9U8lLVQ19BKcJxDu/43AP/RPLPynP+1fU2AFBDDRK7Tu 2myyqWJ7kYqG7/cNqEQPSjRKbLtsngCBiXpgKYNtNazWkuVaPF+5zlUy5Tpt5ao/IPWka41ktXZT qlwXigeZXDie9JzfUo84ujVGrzcCZ+v+03X/wbr/cCN4suI/XPYfa937andM6YgobFHCwRwSG4Pz 5j0JLJM1hhOx0T9r8E5vu39tEQtfgcOG6/um59uG++u6+8uaIC9wIBELQoNwflpxfFx1Tq5wgp5w mNBz79k4b5JmFo53en5cR88WgYUxvYOtODEWtGSZKD60WKBqp2k1u/8PqGw0odDQ6y0rhVfgiFhf QCMABcBhVG0fUVlGgYPayh5fAoz4NZxs8IEIAzRsQ2rLkIqEa4AD6BhUmaB+tRGtQbBJNOxm+0AY DuZeKVgwPLHQL2VRulXYZlAwIDaK5gzsxNRPZW/rRXegjUlCvkbQZtdLLAMkq0jyh0f6z3+eQWBF 9fyndUMW7resMu+pjFFpgh5fFu09uw+/LOmWb3nKJk8UCN/y/zcLDAf2W7BfT1iDFaYSTyzQbsP7 GlRt1GvNJkPjd7FBW0Eqzd+go1CrFet1tufqIQdPVWmimwgWsUobqJqFOtAAIKWLQv40m9tPZvfi ME53jpO0eT9hiMS3Q8dbUPhkLXi0EjzRe/d13gO1K6bi9hW2iNwakVr25PZ9mX1fzh3iOG8Jik3e 2V33zI7755b7OxrEtvfXjv/Htu/7pvfrumdq3UufGbju+7Lm+7Lq/bKKV3zMOzk+rvAMBDuEBjG5 TBH7/aJjcgGZwj2hdUzoHBO0RZYnItgCrMDCCEsNwsqScM8XGgTby4FEQCfs6WyaXzMWaL7ANnvY SUobqnpEaRtWWobkxmGleVhlHkNH0NrAwsSSa4xNQMYXQB/smQ2wjGlt41r7CKwUoQEWjP0qg0hl 6FMaeyGFMKQQcDD3yhBPjCIFsQBrNCizDkgFECwDbRZIZJOIhX6pvZe6g4WtuBILQhMhEMS4Bnnh +XO2hQbw0PYZz3fSByrzJxDYZa2zh8fHJzIeWA0z/X74dxZYAd9TjH14cilPXef+8W9iLqh9/b99 9e96/P3f/PlP3U6ISA/tH9FkXg5hp3Zfh6p0vK89UIQpC4keMafRLNdrlUajxvZiVchTPTSaD+10 A6N1X2k2y806LstUKulyNVGuXeerp3fl2G3Bf5l1n6bMBxeG6Nlu9Hxr73QzfLrsPYBZ0rv2dfy+ xh5T22NKe1TFHyghbl9uj0ptQYnJN2fwzO16Z3a8M9ue2V3aEy7k61+bfmFb+Dc2kphaAwieqQ20 CdfHFceHVbDAT6ApUF9wTLA0/X7J+X7B8WHRNUkgOMcX4Ys4JtYX6MlT0jidw/CjF7DwSyc2Mvwq K47sRf7ZQeGkNY9gARkRQAHbYx5QGPvlu4NK05DSNKKxjmitaA3jCw6CQmd7t8Ce79PZ3+k5iFjQ UJuAdxpQmUS0VAsQTN1KU88zC2y0LaeoLlJQdh6QWQbltgEp7vNmgDCI1CAxDYICsDDPWGBTiV6x qWcO7sjYDRYkJooJlLItfeggCA4vWPhfL1h4tkDMTbD6fWzfUmlZpkkrM7ifPwpfEVhottMu6wvP 1LRBYG5EmAuzbxPaDX7G/eP9P9mq3/SU0P2L+NC+pvFwz8S+xCr5PzWOFuBkhVoIsh/6xzzisc2m 8IbwaWzfePOP3ePtBTFhI6LQBerCehedC+6u1dSE9tcEU7VmtdYs1RrFSv2uVIln8yepTPQm5Ymn 7KfXtpO49ejafHC9GThe8xyuug5WnQdLfGzJEVtwxPSOmJaPqrk9hTUoswalJp/UCPmlhoB01y/d DczvhiTbQUFzm4GZreCvDf/PDd/3NRgnx5c1/tMq/3EVLDgmV50TK453y44xaKmFA604LTk/6Gke MbLED+rtA3r70AI/Ahx03ISO/6DjP+mcn/TuSa1zFLYfVoeWYW2jKGaNGcdhjQUpuD2PoH19tBKr 4ViattPSq8rSr7aQ51fuDqpN0LDWgu8aodZgH9VYx7TWceCgJ882gZaEroGOAMpgkyiMW+mTOujT CaydSjakYwuwNNeWW0Ryq6B+4CY3DyrtA1ITNDj/JHQHQ7/EBBYQqJGmaXFJQsG5CzZJau5hg7k+ qYXQYLuY/uaRHv701k/3fJRlo5Ux7+tsFytb1Wn9d7+nun1k+1of2HSYKvblrZtlhEf6xnZ5twsY 3/5c2G21mGIl98AekXiO5DWK2E0c6201/i1i378wWm0WhIXV+9//1kZaUbq1LPYfWSi3WPhdba2V kQQWhNRfu2/98kKLaeL/B/b/WPuZjmaqXLsqlM9yxWim6L/N+OJp92XKeZ42xy6Nexe74Yvt4Plm 4GyD8vXJkucInULrjKnsYZnVLzV5mXwyox+SG4MyY0iyE5Bs+yXbgbkt/9w2cPDNbPl/bHi+rvNT a/yXNcfndeenNef7VdQ/DxbGV5zvlp0Tyy6BBRpA6HFDtg8v0P6loScWAIje8V7HfdBy72GitI4x DT9KO5r4UTL8xMKYju7wwzrboNbGJg62PipdSg0imjLQimu/yjyghkwDKsOQmjzPkMaMk2GNeURj AU1jGgs0rrW+Q4hAy1CZITQFZGdaZSKU7L1KYqFbZRGGEWyozaSwMRYs/STzkMrWL0PNAwGkZlgj A9QvQV8wkWCfJCbBSrEpGz2L2ic1AwTatsHm1C9ZYCXRirRsAYfdvBkXsNe0l5uea34oC3tBGw/t rdqCT4Z5eKCYyR6FxjXVJisPlC7pyUsLT27SRqYKWz6lFSR6DoINI1onD09TiaIwzqa5Aztn+zfY 1lZEWviQZqWlh6d7deuO/fD4MoM3H+/vmYS88uydmE+6b62GtVZxwcI/7aSiwUf5WbT8W2nXeVF4 CqnZfElEe0GYvSfbT5Kr09Oy8XL1pFDZpw8DyYcS2VAi7zlPuc5TjrO0/SxrPU6ZjxLbketV/8mi e1/niKjsIbndL7P65FafwupXWAPoFEprWGkJy0whmQENIiDe9kngmra9c9u+X5vu7xuObyTX1IYL OFBrWIZNckysuiZpfZWxsNJmgTYv2cYWuJFFfhgsLCDY8pMLjkmdfUJtnVDb32n4d1rnOIjQCt4J 3t40rqO7+igNspGXrbj/99FA2TJA3gYOxzqksQ6qzVT8GlAgsGDA+RCIUOFoGlGbRlTGEaVxVG0G COgIAgsIzmwFiSbUIKtPaemjDeQWEQ0gWkNt6gKEA5oCGoQRIXoQF8gMxIIM8QEIGKg1SM1D8EsU KMzgop/clLUbINCyqoFWoqRmNqQTJnTPc2dhnaddVHRPZnGShFKnjUP0WBntjmZ7pJtss/Q9exKZ Hr0UPhBD0B09zswe52T7/Qo0SqNtfplqkx6gZp9xdFejxzPpCU22Uyjb2ndND2y+EK3MZGqCWl/K 0PvU7iC2ly9Hvw8NrAsvRIVKoLUWaVkTaTaE4cjD40M7EAlNpPHng0jQvz+F9LQLtyhs52D3eWEb eYEeAK/RNhUigh7ZFohgUPxmPYsFDfou/GPpGfCrUvU0WzjM5KPJu2gyH7jO+K4znssMd562HCWM cE3h0xXPwaIronfsafmQyhlU8gFIxQXVXEjNhdV2ksq2pzCHZEbg4J3f9Ym3PXPbnplN968N588N 548N59d155c1ag0IDu9pQQkgON6vOKGPtO6K+MxNstZA87hlJ3AYXeTH4aOW+Al4eI11XG0jFnTO CVpx4kkAR2t6p7cSDnobcBjSohFYWBcgn48b+zBu8sCE7JAFvmhQbRxSGwdVu8Ma4xMLwyoEatII uFCZwQLDAU0BnsrYr6b5AvqLSGWG1wIXAwrLIBNNtBU0m2OTCLBg6JXu0nfJdgfkRqhfahiQGgbh lyAZwoIR3glHsNAvs/RKjSKZuUeyy3Aw9qJ9yCxsQvFiPxLtBaUJLHtwrDUXLrKtd9naPX2oBXsg +qZUi5frcfrAIrzSuK00bkr162Ltqli7LNWZGtel6m25covYWKkl6enLRqJCumYXCA9g4k2u8T5l +oiMOPuIDPrEDHqlHmdXXtOVDXp4mQbBlYtC9ZKW92sXhcp1sRyH/aafQskU75ykEQApxZRhoBG/ VMOtmzz7YIF7ZuEemY9q+Zx/1z+xQDjk2cN0jDu2fZEpTwjXoBwjQvhxwocYPLFAD4bQY920CzFd rcVL5fNs7iSTjSXSwCEYT/mvk56rJH+RtJ7cGPcvN4PHK57Ykiuy6IzonXtqd0jtAhEhtSOkgfgw 4QAogIM1qDAHpUavdNcn2fYQDlvumS339KYLLHxbd07BKZFcH9dc6A7QewTqFcenVdYalnng8HGR /0DeyTm65Bhd4seWgAPbvKGzjWtt77T8pN4JIURMIEoQBaaJBStweLdgG9fb2tmBggA0DPND6dhO Ez3a+NFmQbk7rDYyCU3BNMoQYCyYRtVoDdZhVL7SKFIawIJIaaIEjSOBYBqWW0bkliGkAxlKmgZz IjawxmW98h3gI5Lv9gMEuaFfutMPOig+gAJj//wu+kW/jGKFSGbqlRr6pEjQu73zhj7Ggog2hNPk 7okFemqYyrtOpVWhikpDNbqN35SbZ4XaKal6kq8eM50UayfsU48O70r7meJ+uriPk2wllq0cZksn ueJpvnQKe0yPz9TO6UM2asf5yiGuz1VwcpKn43GudJwtHt4VoKNs6ShbPsq1dEjvU8UbRjOlaLoY y5To/e9KsUzhgC4uHueKJ/nSSb58WqicFapn7Hl/6AJgErBgpJ6knXj1jNB6WEdrP2FBHfCF5/lj IP6fWMi197Q/bRoRPn8gU61Ad7UqI6JOe9rZQ6zsGYpWUIFxgm9Er7yj6UPpkp6/zh2mMwd32b1U JpjM+BNpdxyt4dZyfLUbPdsIHq35DlY8+wuuiNoTVrvDKuDwzEJIZQsCBKUloDAH5EbkCMrU8zut 7jC77Z7ecP1Yd35bQ452fFl3f15zt1ngP6wgWbN+ser4tOz4vMh/pF6AZM2PLXOCqDUQDjBRsEzE wqSOR4iYBAJ68+SidWLBMrlgmyAcyC9RBGDFP0px2DahB0eWdzrLmB6kGKFB5Q5AGFEbYbFIjIUx plGVZVxDC6o4oeUjpZGCBtoHWFAQC4Ny04jMPCqzDMvMdKtnLAhbOERqU498u0+xCyL6lYYBhaEf J3IDvmVQZoRE87v9MqOg3vkdIAAcIBE1CFCACwwixsUTC9eFykWuLGw5gM5z5ctCFTfneLkBEGJ3 pehdKZIp7qULe+liGMe70l6mGE7mg7fZwM1dAMdkLpAqBOir+WgmH8sW9rPFg1zpgJ6ppK1uwjtA 0TvkxwIUSeWhYCIbuL0LsMcEgslcCEaaVAiny8F0OZAoBG7zgWQhmCoG8f7JHLsmt5fORTJQAe8W IwzLgg6yZRB6mi9fFCuXpQoMCTrO7fNn2jSfPFXx7ztpW1uqXj5z2n5wg3TX/mwQ5u4IjTz7/IE0 WKgBhyoEIoSxNXBAlBA+NkdYc0NroE9FqFXBwnWhcF4A0XeHudxe5i6YzvgSSVc8ZT+LW0+uzIeX u5GzzdDJuv9oyRPVeCMaD7pDWO0Ia5xhtv07orKFFASCn7EQkJtCUkOQssOWV7zlJhzILLm+raE1 QC60BjZfaLMgeKdV/vOK48si92HB/m7BPrbIPbHwDuAAEMKBRekF5weS48OibXLB/GHROtlmYYJV PtL0OPoIcKDVIcRhRGPTuIbc1KjOPKI1MRYMAgtwWWNqkwDCmBpX2sbUNoAwirJnS0+DWovAwqDC OKwwDcmNo1LTmNQMIoZYRu5nIPQKLCjAwg6IAAv9YEGxO6gEBQaaa+ACGVyQAQ4KJ8SC1EggyBAT UP/UFPrnDVCf5JmFw0whhgJLZCOJbDSZjaVx+y3h/oyb//5dOQhbm8z7EnnvbdZ3m8XRm6C/+m/z 3vid+yrjhuO9yXpuc55kwU/lmg2msqE0/kMX9+7KACecpkoOpYuhdCmUoTcMJvIBJu/NnSdOd0XP zZ07nvXEs3S8yXnoI1Jzzus75xW9znTnoh+U8d6S/LeZQCKHXyyYLoQypVAa+BTxE6MZalLUntA1 8pVT2h1BaLB+QR8LIHQ9ii3sU8iy7MOX8uzzx9jzFLVsvc5EQSbHcg0uQN+E0qzXgAi0GxJ9DFQ5 VYUqaYYDaw3ETqneLDeatWZT2E+CHIFkcVcpJ8olag1FdMPM/l0mlEoFkgAhzl8nbRc3ltO4+SQO p7QdOQcOK74DnTeq98Vw1LqjOndU64ppnFGVPSy3hOSWoNwcBAgKU1hqCD2zsOUmFtadP2jDhmNq 1flllboAKKBesOZgLOCc+7zCMRZQ1fZ3S0CAsbDCjeF8kaMt3wjROo7mEQv8Bz1OLBN64+SCaRLd gXCwCjgI9Y9eMKYxj+ssEzrc6o1jGuO4Hq3BMqpFRtgZUe2Oqo1jWjPDBBSYxzXWMbUFOIwozSMK E7FAucM4KPQFlXkIgQIGSWEck5nGZGDBNIIbvsIM9SOtI19rjH2qnT7ldq9ie0C526/cHQALCnik 7UHZzhAsE3kn2CTIQA5KYeyT7oiku72S7T4J3BSBgHwhkhieWGClnoNQXUHcq9nNOZyiZyGDeP0m 50Wp31A1toSyx4vxvOcq67y8c15mUKUoXddtgV5Hud5kfLd3fkCEm3mqQG9+k/UnQErRnyrjGvd1 3hMveOJ513XadZ1yQldp9lZ3DlKWP8/Yz5LcOe6W9CnBdvq44DR/keIvk/wVyXGF70o74xn3bdaT zHsYpK1/QjIfSqI9UcvYy+Qjd/SM8wG5L/JsyCzoevTBrazx3dCGbTh5WKlmulxLV198slO1QWmd wv5Dgj7lkh5/uC3XMtV7SkNMt5UylKiUk9Qg0BrqrY++oVU1woFWg9n+2Fytli6XkoQDwCwdZNLR dAos+JNJ59W19SJhOb81n94Yj28Mh/GdGHC42AifLfoOlvwHOC5493WemNYVBQtqnh4dVVjCcjOE EB2Rm/aku6H5bT+xsOma3XD9WnP8XHd9X3N8W3UCh8+rDugLQsSm6/M6IsP/xdd7MLeRZEvbP/7u jryhKFqJEj3oCe/RDe+9995bekmj2RtfnlMAyZm777eR0dEAQWlmtp7OzKrqhgda0XpW1d4VtWdZ Q36xpPO/1/neaDyvVe63tHmJGsFHpecT8eJdorUAx/tLCfpwaYdBLKlcS8QCgcAsOMgLzh2IUh8u HO8v7G+FztEIAIKED1BwOmVfOJXfnzvfnMjIS6+P6AgoXpzIf5xIOL6Y9wiRo+zvjhzvjuxvFfJr BdHxmheyAcu/Tm3/cwJfMP3Pkfnfx1aarUI9Bw6HFpb1hcIGAYqXZDGIahSi/nVohv44sL44xCfB gg214pEFuqTT8KYBH+nTiMJIjnRG4fYQwmWf9AgCLtE9DOZpqDkJNsaBBm3jp5HMt3oF6QMjXO2j cxOZkOjiPw53JvxXzAKtMeHTIojQGb2NPmvgwcjHsGe5qkNHue8s9+3FrqPUcxQ7rnLPVe07cOWE al2MHGe972oM3M2hpzXy0J8z8DWHfsCFf/LOKNaFcUzZPqap4VWan2yMBEXP1oNrTG8qk5va9LZx JZo4PdmPLvv397jIDx8ehg882unKT/W8T6KpgM7NPdjpIn3dorw/LFjAm/Rb44cffAc3zXGhZdzR nNLvO743EI4zur+HKaA+N27vCuNJbjxOjkaJIf4Ld92NnqvOvlDuyMWOlG9bs01Tuq6JFtXRgipS EHdAnAfzZ4EcWDjxZI5daeBw5MQxo3BkDuXUvjW+awkxDqFvhsAWtwa4A4UlftAl1we0ae9nnRsC Cytq7+c5C/5Pev8HHVqD563aQ76g9OCyv2DBJ1j4oJQ/qh1LaheJWVhaJKVHFkAHffLSAUeAEby7 cLw9hyPYYRmQiE9vCQ20BhlcvD6W+ATDGxQQCzzv6qC1jDMneccRcJDfAhnomCoGLUbQnqVnLBxZ qKGfSK9P5FcKm9DLuRCZJLAAo3nBtQLeQZgcCknPWQh2p8HOlAJJexIUcYVEJxjDAgGklwh46V+F +lfh/jWx0BgHmzSqA+0xgzBbsIAMM4kOZrhQ059Afw5cY0QW0MEJP4arMfLTROLQXaf7wpwY29We o9Kzl3v2UpcGQ4FuirHlu5Zsy5KjW8YwPKRCx1xoGAsNU7FpLrXMpbal3LFWutZKz1buSGVgAkb6 bobL38T1dhho9oKtQYTRSA1mIkEVprfo4PnRVWE4AxeN67vWDUbpAz8D9m6hB9L9jy49RZPmvrpk Ij+bs1uaAbu5hzp3D507HO+7rN7d/fD+YfQgnhNIj+bgB0n9vqHpXyQrmM6P5u1t4+a2foN/gEl+ Mk2NEJNGkU4/0Oz7Gz1fnR5B4yx3ZbpLrmFKVXXxsjpaVIWZhRCxcOLLHHvTJ97MsTt15EoJHOAO hzJaQ2wPLFhQGULfTYFvphCsYcsY2kRYgiMY/EKreu8KQNC55ixogIZ/We9fNgQ+6nzvNchLniW1 d0nlYXk/qX0QTj6onB9V9k9a1yed55MGP3IvWGBrOHf+gwXOSK43547XZ2gKcxw+0P5AJ7PAOeoc Y1t6fWx7eyIv5ppIb5C40DsuXHRyTCwAhNdHwhfsvB5h//eZ9K9T67+Ozf8iFqxg4eWx9OpY4sFv e3m40IIFQoA/AzEL1hcHVhjEv/etjywEAALLT0cazGCBUkef0xFd0pkLYoEcBLEk1EZTmNARUCDz 9K6DfRLFp94k3Cd/iQAH+jxhFejgik0XbcjbGHrpq0PG7trQWevhIi+X27Zi24oBkMfIb5qzDXO2 Zcq0zdmOKdMyZdumdNOcaUC6TFWTrWqzdV2uAenzTUiXbxkLbTN+vdSxlbv2CuDqgzIPoKj3fA16 rgvcKsodH8EvPbyiCQHU/OFVaXr7rFM8NG9uIGSYFlfv1h1Ec1N19PErmlKoz/CjB+ADNW/wWzje t+h3CYre/QOsZP5gcC7dN/xMm9lPxC20lYfazXXt+qZ2jUYzLU5n2dE4MxwluoNoexBp0eRqqIlM OHRVelK+aUpVdLGiJpJXhXLKUO4ylL8I5tGdjz2pI09S4U4qXElRHA7tiQM5fiBF96xzFrbNge9m atBMRGBD59sw0DLcJmTwres9q2CBYpKPROvUwRVjENZA2/k0nmUgoPKQ1N5PGpqJXdKgfbs/aJwf ta4l2uznpR+BGrBw4XzPE0c4QUBiOpyckRxvLpyvzx2vaOcGGQTsA5R9VKEp2MACagXSFM5fH1ve UqGQ0ClIYAeMAIQL5yv8IRSWUCgAgsSCO6B9O/84k4HDv0+sf5zYXpzYXp5IcxYEAgcLzau0/Q94 h0LIShIs7FugZyyQI4R6V0HSjEyB7IArLecNcc5XdWQhGs8Bfn47PcIdgQeGAo66MyjYn4b642B3 BIX6k/BgGuyN/e2Bt9X3NCE0RBjBwFWDkIJwPW9byy1c7U25hjHbMOaadMzUjZmmIY132oZMk47p uiFV0yer9DCiFFRRp6rqdFWTqWmydU22qc+1jPm2CUQgbBc7siCi2nMRFANPY+inFEceF6b7NCc0 VUXB6To/vS1d3ZWv7yvX91XSVe36un5zU7+5g8BI9fqucnVbGl2XJ9dVRKzpTeOGniFQnd1ANIE8 u61d3dZhLrf3bX60eI++MIKWFGc/aMHxhls5SjfSUeV6xn8FALyqXt2Ux9PSaJrvD1OdYZK+5GIY a0/CrQmaEcKSJVszxPLaSFYdzqpC2ctQ7iKYPfdnTrxJhSd+6I4fukgHztiBPcYblogFwsFKLGyT O4CFIFjY1Hk3Df4vBh/J6Ns0Ag3PGgyC5l1pVW4FR0Pgsw5hybus8a6ofJ9p9cGzjAFPN0GAEf8H rfuD1vVRO8dhGZ+EfTyx4BIgPLLw+tz+CqaAXoA2cel+z137I6RyvTuzvb+Q312giSNZgQLL21Pr uzPp3akMwS+oaFw6XyudLy7tr8/QHShQIU2BBRjE22P53TEqtg2+8Mep9OJMfnnGixf8mVcHVpYN en0gvT5E0bC/UdhfHplfKEx/HJpeHJpfHllfHQGTf7IQJBYwTmZiuoaCfXtMTQGX0/Yw9MgCEGgP fa2ht4UOOww0SP4mnftaI19r7EP+6Y783aGvM4BwEujhTYDQczeRXrpcDzv2CoygB9kwevMNQ76m y1Zwwddl6nqMaqFMQ4/xn2nysaFDWkhVtImSiqVMFJV0LKmTFQ1CdaapyzQMWZIxWzdl69Zcw1Zo ysWWRF+Ai/jUBYCeJv4huVBQckOjoblc4JCj6d+74tVdcXZbnE1Ls2n56qp8dV2+uinNrgvT6/wE aeqqMCYTKY6vKlf3pclNaXJdmlzhJVSeEhQggudyyU16PO80ffjzihcxwUWPtiTdVq6mtatpgx5r eYOe0qLnXt408CcPQMQk0xsnOxPgEGiiMfXkQsOWrVjSJUOioI3kVKHMRTB15k+eeBMKb1zgcCBY cETFFr49KbJnC0M7liC7QxD6ZkR38G/NWfBCX00+aMPIjqCnWv0Z7qDzfdZ6oRWNd03tW1V5PxML sAAfstMHkkewsISYpHUva+innzC2OSB9uCAQgAOJcaB0xNd2oXdK13uV+/0lYhKKg4wCTiyo4BeI T7AJ24cz+T1Sk4hPF/Y3SscrpeOPC/nVmUROAUZOiQIGQX5/bP/jxPqvE8uLUwkg0GYnZoGQObBC bw5s0NtD6c2hLPRKMWfh5aH5lYJYeHUEEyF3eGQh0r0KQ51ZmC5Ko3BzCEVbwwi6MygQ9YGcAlFn 7Bdq0c3vMAWc+JojL4ZZm1jwdYbedl+wIORt97ytrqvZtdfajlpHrrSlMoUZXL3N2aYhh7RT1WbK 2kxFm6lhSGuzTS2N7bo+XdNnatoUP54uWSIliqp4UQnFCqyiKlHWpGpa/BZgSVZ0ybIuUdLHi8Zk yZyu0kQ9odEw5xrAwVHrg0dqE0hrrUGwPYxwv06NZhlap7jJjKaZ0TA7GuYnk8J0VgAIMxjHdW5y lR9fF8Y3/Bz7aXFykx/OSONZbkAqjIgI0FGGTVzfwSPa1/e92x/0ZRM//5r++HN0/7NDt8XdVqdj qH172729oyfz3z2MUdtv7huTm/JgmuuOku1RDLQ2h164J21nbTqKdWu2Ykjk1ZHMZTB5Hkic+BNH /uSRD0QkHnE4JCJie8ABsoV3LUF2hzkRqA/UIIz+r8zCFlgwepCUlmlHq4+u8BrPHAS9f03r31D7 H1lAano/l/uDzsU4uJY0rk9qyM04eADCB6YAfYGmkuj6T17wVunlnUuISXSdBwvvqIDT+Oej9FFp Rx9/fym9u7B9PLd/JByYhUti4aXS/seF7aVgATqBKUhvj6T3xAL5AurzizOJl7ZlCkhHttdHNkEB gyC/hSPAF+AO+ygOppdHJuDwUmEGDi8VFhDxmpvFcxZogrRNz3yINMHCKNoax+jxccNomyaFqP/O wxLFpJBoENwsnlITSkH3iQV/Z8jnA0+rB9GDU8TkebktlVq2ErUDsIDLuD4LBGjA6zI1sgPhCwBh zkKZlCxpk2XxeDrCIVoggQVUy0RFm6rhfU28pKGbxYqaaF4XKxjiRVOybExVka/M2Tr6CHCQyx0E J3dj6KmhqA4DtDhC01yxHi95oFD0evFeH302PZ5mJleZ6XWWBEyuaTlvcpftT/Oja7KJET1hKYM+ Tt+6NcsOxoXRtDielmfX1el1+/que/tjyF82hN5dR8qa3RSnaO6ozJPq1XXz5hb1YfjwQN9Ycf/Q nF5Vh+NCb5jpDlKdfrxD/+WD9a630nQWq45CzZat6uMFdYSKw1kgc+LPokEfoT67U4eOhMKRpMpg T+zLkX0pTO7AYWkHLJiC26bgd2Ngm0++mcgjvhphEJ41mln1AoTPDMIKa1VHLKxpfKs8xUSNQLO4 OY4zEknjWlI7hZY1bvrYJRwB1uB4d24XLCzxZBQ/jsb1muoz1Yf3cIRLO6cj6YMSviDh/D15BOk9 yjWNeenNgoXXl/KrC9vr8/mC9dtTag2ckRzvjl0vyRFsOL6ipmAjEBQ2wDIHQSG/PrRRNEJeQmU4 QFkGC5ZXR1YCAdZwaHl5YH59aEGUemQB/TfcnIQb43BjxI9AmSZ6V8nujJ+mOIzxJAwdOyNaI8a1 FC+7eHMUARdtXGD7gTYG/6OGQr720NMCC9QRnNWus9J1YDSWOpBUbNvyTdRkU5ZrwnMh7YAIjGG0 hiyd0Dm4SJFw8VcDgQhNM6pjJTVYiIOUKo6qWElFM5BFNX4UzWuZCF28rE9UjSnggL+uZc21pULX Xurb821HoesqDzyVgbc68NWGwcY41Jri3wUK4V+tP4kOpjGhPngZ85rLdbo/xeAvjVEfkPZ5/WJ8 Rd4xHJcms/J4Ur+6qU2vejQNRZusGjc/CtObRB9XkkGwMwh3+pHeIDkc5ycoDtcwiD4vT7Rurirj UXk0Ko1HhdEoP5pm++NEqxtqdt2lmrvUsBebQBtVWhUqnPmyp578sSujsKeOndlje/pYTitsSYUt sS8FD6TQgcwsWEJ75tCOMbBjpBUHId6/Rw3ii8FPNzvQ6rN3Vetdgx2gO+hIaNOCDozzJZVrmSdd P9NqHfISmoLrAyjQQI4ltWNZ41zVuFdU7uVLJy7sHy7sSEe0T0NNG5Ne8w6Nt+cIRXaigEyBEBAU vDunmVV8fglFgxepYQHQa2bhHdsH6YymXt+doVk4aYX6xPXmxP3mxPPqxPbq1PLqxPL62Prm2Pb2 WBLZ6fW+BXp74nh1YEHL/vc+opH13worrcEpbDS5egg6rKDm5b759YH5zTMWot2raGcWa09JnRlA SA/wf/oVPVCxQyM/2QcdE3qa4mAmlOS9EzFehgh1hsHOkGaKOoPAP1hoIqX33Y2emDl3VnpUFkod W6EFFnC08PyPkCnfAho87KswBRN6dA4NurZQ3UDfJ1V9uv7DC1AZ8DJRUcX+xoIqnNNEWNGCNlbS xkAEYkbFkKzAKczpuileNier1nRDyjTsuaYj33QV2u5Sx1Nre+odb6PrbxLgwfaAji16yHC0S5eC ZG+cGUw5FF2DBXQNGAd1jekV+kJ1dkUTSjcY3rTnsHlzjxwVaw981RYu73KhIhcrznLNV2+FW91k b5AfjWvwiNs7mlmaTEmzK9ST7Ogq3Z8kOoNQu+uvt7yIl6WGJV2B2WnCuQsffZHWiTt94iKdOtOn jtSxnDyS44f2sMIRg/ZsoX1rmLbtMQ5zFky0VWmL9dUY3DTyioPOB63NN2zMiUB3gJgF5zKCEFig Bo28xAGJ+oLrk8a1rKHJqDXtnIWlC8cHmiwSLNBuJRTn17QYjQbh+khTss4lleODimIS+sL7c9iB Y0nlFqWDN2zIr85lYgEIEDvUKVDD350JOWhT34nr7an33ZnvFXzh1PLy2Pzq2AwcmAXp3RHikBkC C2QTJ8TCvw8t/zow/3FoYRysL1EWFDSL+xoZ6dDy5llfoO0QCAm9ayjZpy84y45uMnQNnKUgnm8h BB5PBA68OyiO6ydvigj3x6E+ailxMUejPfSChUbPQyx0HZxP4A529gVSqWN5pAAegaM4YQr4/Tbc ASDwzFKdLaNOTy5NlmAQWnhEvKTCpRIUCD1jQRXKqoIZVTjPJoKwXdBAUZIuVsKI0obzxljJlKhY klVbuiplajKUr8nFuqPUdFU7HkSURs/X7PlbfX+jCweMdkaJLlhAWUCbvi6NbtAjcuNZaUY7EluI /Vc33fuHwT0twwGK0vQ63u57y02EHGu6ZEoVDJmiKVO0ZEu2XMlZqPoqzWh7kOpP6El9vUlucluY PeA/Mj2UjNY6B55a3ddseRstZ6UpF1AcqqZUSR8rXAayF/7MuRcgxM9ciRNn/MSZPHbEFY7IkXPB gi0sVhx2TIEdU0iEJe7RpK+mwKaRboKbs2AIrNMyBIk2uCIvUZWmvkALEKwljYdnUz0wCLFyTdLD VjwrsA+6vDuXlBjtTlqGU7uYBQxvjHw0C88njRtafsxXQOOSlqffE0HOD+QdDl6qBgvS23MJILx/ Zg3Ewjlt3nh76nxPe2g9b84l8oVHFk4EC6gJCEi2d/AF5KUTOyFwZPu3woKTf+0Z/zgwv0A6AgLH aB82ikn75kcWEJWh1ICUHl5nodG1mH7PYPwLBPiLMv/JAtyhP6EbtaD+ONIfhXoLdWn9FzjQrgki ou+u9VwiKZHYIMpdW6lrKXYYgQbj0Fx4BB9zLUIgCzpaJEIDrgEQSiAC3gEc2B3KIiwhNWkQnAQL ACGIsgll+ZhRhrJCqhB+mlWHctpIwQAc4mVLsmJNVWypijldNmfLNhCB0lppw87c9a6HvoWh7W/2 Qq1BtD1MdsdpENGd5HqTbG+U7Y8ECH0qyJR5BncoC3f1m9vMYOKvdeyFupSnG5yNyaI6WdAkoLwu UTAkihjYVmCYrbmLLU+pHURTE9+F3Z0EOxMcPQCh1XZU6/ZSzVltOcotKVeDQdCzZUI5pR8sRM9c ACF6RptXowpHWGEPH6I1CBZsEbH6tmsOMwtcn0VfmM+s+tZJ/oUCvIXJt+gOvlUtw6IVy9Pu5wgs o2vo0L69qxrPqsoFHD6DCJZYmP4AHJTOt0rHR7RsAsE1l5o8gq2BRPNOFyQkKAx+HN8KFlCrVYIF atPvKX05OClRWKK8dG4jnVnfnEK4zmP8o1ZTs6awdOagFe0zx0sM+FM7agXc4X/2DIKFFzyVBF8g Fg6eWKANqPwtyRj5RAGOQ7FJb5oZTtKDaXo44+M0A++mtSp6RzhFajhLjkiJ4Sw+nEYHkwhBMQ73 aLmZHk89325EULiZBTHnD4+g4kCrYx2eVmpbCi1zoWnOY/BXTdm6GXRkaBbIksePOuZ8h465uiFT NqRLhkzFkKlqUxWOSUV+5HtFm6hoYmVNlJ8+FMqrgrmLQOYiyAqkBRdKUkYZRAnN4zOacF4XLYII YxxQlHQJAs0EInI1a6EpVVrAwVXrIjv5Gt1Asx9pDxOdUZKXAwiH7ijfHzeu7jq3DyP6kqA73rN6 37m9qUyROfuUbbLwtRrimS5eOosVzqL580j+grcY0ZKBP3PhS+mjRV0YHaeACGfNt2gNvT70goVO z9sdOBsdJ8JbAxcTJitbMcaL2nBWHUxf+hIXvuSpJ3bqjZ+4Ywpn5FAOHsioDETEgS28bwUUqA8R WoMzB76ZCISvRu8Xo3fT4NnU4wj5oA09jn4c12nRYY7Dik4Q4V285KlXHU3G8l3VwMG3SnOwnjW1 e1XtXlG7uWt4lrXuTzr3R637/bNyATv4xKZAk0g8vJdgGSpe2lN6aMvfpZ3Nggs1s0BEKKluf7jg 0n0mkbihvz63QG8uQASu/5bXJxbGASBIuOZzoEIxcb48kV6d21+cSnCHfx2aXgCNY9sLhfmlAjiY Xx9Z3h49ZaTclL4QOUvf43ydm+DILAwnudGMvrBgPMM7GYCAN0fT9GCc7o/Tg8k8NQGKOQvTxHAS 68MgJpDYiSR2X4CFYHvkhzvUesCBDKLW4403LYw3K45F+n9fIihazELFlK1ZcnVThqCwFjhKITVR fEKnBghFY7ZsyFb1mZouXaUJVaFklX2hyCwUVMH8BQYbAjZv8rwkU+AFXIIid0GkZJUBGESWiIgU IFU0T707UdSny6ZcHf88cqVtR16qdRGWAi2OSb0p8ky6N82Pbvi5xDftm4fO9d3o4QcouP718+rn D7CQHw4D9bYtR4+j18CzIkXQdxTKHgUzx4HMsT97TLspMkdusa0oQfnfmz7zp89AbiSrSpQMuZq5 WJFqbRfCUmfkbQ1dlY4ThlVomMFsOKsJpTXhrCqcPadFhzh05Ioe2oOH9hCKA0mCNSApheERvCQd 3GYctozer8zCus7NLMyJ+ALLMAW+GIOITCs8v7RwB6/o1CuLSadVXpgQLKxpvOvEgodY4F+hFW0d opTrg8bxXm0nEBb6xCDg4i+KwAcRkC6ENdiZBZaSpXIIoVx8EBNQZzZepyOPeH1hgcDCW7gDrOHE SizQGgRYwMfsr4kFx8sTmpX948T64sRGS8/H1pfH1lfHVsQqsPDm2Pr+5GmfamF2m5/SBHt+Sid5 4EAUzAo0r35FLFCbm5HGMwFFZjQT2Ymcgr7dY5ocTBKDcbw/jiE19ecghDq8DbU58LM89R5wcNGE UseOYfaMBVupTWvQRbRphKUqrv8W8oUqspO1SCzg0mqkQl015krGLFQxwiNyDVZLz7VaG6+oo4KF ohoKFS/D+Utm4TyYOSeDyMIpzv0pAcIZIrcvdelPIU0REeAlTAIRmlhelyoZ8Q+Qr5kLNWep4ao0 PdV2sNGLwRcQk3qz4vS+Pr1tXT/QvXu3D/xFEg/XPx9m97dgId3ve8p1JC51onQRKZ4Hcme+7L4n fuBNHvnS9Kw8T/rAmaZHhDkz+3LiwJE6cCYP3YlDb/LAGzv0Ro/8sbNw7DKWMmRLUrkJe3JXe/QM jXLHBqOJ5sCCLlYgFgLJY2/0xBc/pphEIBxIwUMppEBYsgZJFJl4ltUa3LYEvpv938w+tgbvV5Of 8hLjABa+0CYNNGgMew+xoKMnCSApUYkABbjs85WfNr4SC745CyrPmspFSUlDW/5WdZ5VPQqC453S Bi2p7Z80Tryko5oatAhC784lAQLKAgQWli7kjxfyEm2CfZKYcRV0fCCDoHU62MebSyuLWKDVujPp Pa/Wvaf7I4iFV7jmn8svji1g4cWJFVAAhD+OzC+OTK9PKFa9VJhA0Mezp/vaMNRzPDE4X1oa4+UU lbA4vSrwStPCFya8GjWl+2hGnJRGi9tqxEtYQ38cp/mWEZcImooMA4fWECD4eHcQ37HSdhAITUgq NqQS1BSyFRpWjL1sxZytWhCM6Vi3FVqIDWakJkSmXMWUK/ERo7RhzDcNOaiFgCR84ZEFLU5CeSoI YXIEkZREd0BeOqe7iVNnrAs/cEhfskfQ/TLB9HkooyQicmoQkSzBgKyZMoK6nK+7yq1AvRtp9OLt UWZ4XRtfMwt/8u1CtOV7dH/fv70uz65inZ6jUDEkKQvR08D8ueNA4cAdPXDHDz0JhTt56Erys/LS +/bUgUwPkNy3J/adsQN37MAV2XeF912hPU9ozxVUeMKX4bQ+WbJmG/YicuZARp9K1VCiEauU9G8H Q6H7QI89sUNn5MAeOpACBzy/SiBYiIVdS2DH7N+1+HetUGDH6v9m8W+ZSfO8ZBDBybth8K7rPet6 HJGXfGvUCNxrWg9E1QAgMCNizRpJaU3rgy+sKJ1ggT6p86zpXKtaDHtkfgu0pJE/65yf6R0a259E ayYQ7J+UrmWle+kCIDg+XYIFG7Sskj+rncv45KW8rMKwx+C3fbyUWPISuMDJhfQGvnBpeXtpe3dp ey9gubC/O7XxRg5kJFkMeGLhlKzh1amVFtrw8sj06tjy+tjy6sgMvT99upeHR/4kR9d/xCFc/yes Ke09AAjUGhbRaMgaTdKj6eJkkqVfnxtHajBJ9scksomrOG//DnfG6Av+Zyw4yy07syAX63KpZi83 5BJJKmDk14GDFXFdHHM1W75BE7D5ppUyUsWUL5vyFXO+aszXjHnhCw2eWS3rEmVad4hgeOSZBZ5N 4hSxKM45IYx/VpqETkGCU2DEJk8ClFIuwyRVJKuJIy9V9ImCOV2xZWv2YsNT7fiBQ2uQ7M+K/Qky Uuv2R/sOemjf3rdubuqzWbTb91Yb1kxBH8+rIvSUyENv5sCXU7ij9JgXZ/TAEVU4Ee9Th47kvhQ/ kOKHNCMap+Vj/NQZ3neE9hzBbUf4uz24bQ+CjmN3HOSCdEOqbkqSDImqlsoR9Q7QfeJLHnkTh64o sSAHD+XQoYyMFDqwMhE2ocCeDSz4oO05DjAIgOD5wiVijoPeA5FfAAedZ13r3tB5NnTedS1pVQSn +f4NYmFtwcK6ln5xXeda0zqWNbaPaiv0SSt91jlWdK5l8gXHJyVZwEcCwbmicq+oPJ+VbpZj6cL6 6cL6WSWvqB3Q8qW0orJ/UqFWwCwklvwJ58SCFSy8AQtK23slrV+DMoSrd6dW4PAeHkEbxWW6+MMR QMSp7RVO4Ain1lcntCoBCmAKr45Mb46f9iPlJ6gG4yx9AzKImC5YIBxwTPdHXBBImTkL00dlCIRH Fpia4SQFDeiezTgtQIxDHJMoKc1xgNd3nGUQ0XYQBfVHFlgtWpsukkewmixaj7BkG0DATCCQLxhI 85gkZpM0sSKu58RCMKsBFMyCOpyDaGYpnH/Uojg8Vx4CC6eB1EVozgLjAHcAXxmBA9zBVW57a71Q ox/rTnP9SXFyM78ffHZTQqocjjLdnqdal3JFQyKrjVLoOvKm9tyJPRcPVGdk3wERC4fOxIE9vi9F D6TooYyoT1spDokUZoEoiGzbwzv28J49si9z8rGHj12xCy+8LHMJfv0oC1m699ObPvbQn7/vwIdD BygLjoiCnqpEDRpEHNojCvyltHMpvGcL7Fq8383ebybflgnj3/3F4OGNGU84PGpDT6J+veCCPIIn Y0WVXtOK7uxCfd7QuTf0brCwrnOu6uzLGomklQULK1okKPey0rlEccjxWeliFtyrKvea2rcCI7iw Ll/awILAYVmJE7DgYNkf9RE2cWF9e2l9RyAQC3RjBSeoRxZEy357Jr0+k16eWBCNXtOqnJlvLKKp Jzo/4eMzFgrMQm44hjvkJ7M8uQM7BXAYjjNAYDDnAhaQGXNGYuFlVrDAIKBu45MAJ8XWkODl6Uhn GGoNBAsCBw5LfRQH6g7Vlr1cd1Qa9nLTUWnZKy1HtU23d5VaEiWollRq8zp1h/ZypxGfwEKVWgN1 Z6rPhizhIOZXtfGSitfXYAGaSF4byQsQ1OE8iR/YSPcCIDsFc6pgTjmfVsohIAmJx008Z4GFoJXW RLP6eMGUKnNSanur3WBrlOxP0kNExOs0PfJoQnsnWv1wne5ctmTL2hiyVhpwKbzxPU98zx3HNZ9B IBbmm4h4Tx2DEMXQpeHqjGIYHwIHUCBHdu3RPTlCYhyICB7nGNsHREcYv65wxI/QNZzxXTm4IwWg faQj/BQgUHHmCSVUBmlOBOFg9W+DBbOPcDB60Kb5hDr1V6OPuaCNfJt/F4b6utZFRBjAgoc7shcs rGs86xo3RCwQDi4ILKxo5RWNvKK1rwANLRIUaUXl/KwkraBf4MgCDp9VGPw2jH/YATmC2sHv2JGd WOQIiEzQJxjEhfWj0vZRJUEfBAuX8pwFKg7SW6rS1rdnqBISXAAd4c2JBaJ3Tq1vmYW3DAXefM5C fkwqTKboCKXZNTUFQEGDnIrDkyaz7EQgQFw8Ochwwg/8IRYy/bHAIdEbx3uMA215HdBNBK0hjnyL DaAY+EBEve2sNly1prPactU7zhqr2pbnhaLFakt5DK26YEGAYMyUaXJ1wYIx1+K+gO5c0MbRF7Ka cFYbeQYCi1cWcugFSn8aUgUySlJ2odypj1g4/7s1sNKqSAbugOu8CbmdVuWarkrPV2v5621EJn+j F2j0QLq/3vfVekAYxV8bzyuj2bNwRhFI7nmje+4o6gAoWLAQPRTCBXyhI0f0iK/e0CE+KZMeWdhz RPec0V0HAAEm4R1bcNcapOUDK4Y6bcn7bvEJ7VgD/COWObhnhhEE9kRSkoJ7Eo6hXVsAMem7xS+I WLDg/mpwfzV6GAov/ILlFTOxm3rnus6xrnetG1CQ3XRPECUiz6aWtAHpXNCmnrSmcwCHNUiLo3NN sKB2wkHEeoSgAKVbCL4AFxDRiNMRQHAsX9hJlyylHW9yfLJ/VkqfVDaIiKCMNGfhA2rIOW3we4uh fmymeadzuIPtFbmA2BlOM1FvGQECAT86eVpfKE6nwEHcXQIQyryRjPYqj2keaWETJCCQGUFjaEHB ODsYCxCIhf4ISvdGqR5dM+lSyXuZCAe6Y5Q3+LVHcyiaA2+j4643PY22u97yNLvuetdV6zgqTQcK BRwBvkBloWHLNazZujVTN2drpmyVJpFofaFiyNZERjLmW7y+UKYZ0XhRTRSkNeGMhmeHNDxrqgnl 1MEsxr+KQSDNQcgJqYL5M8ECqkQg/YgDqvRFKA0clDgGU+pwVhfLGxIlcwbtPm/JFq25sq1Qo6aT q1uyNbwv9oqoYoWLWOE8lj8Kpfd8YAF1GO04vj8vBRH0gkNXhBYF5hOhIYUcVsgRhXAKOXIo8YUd dmAnFhCWtu2h73LwmxzYsgW+SYFtG92tABb2rLRbG/kfwvDetgQEBSRad/ahOIvuvANSSH7UZ9C0 bQ2AHeDwHT3aJFhwPeKwYIESFOxjU+/YgAzOdYOb7wZyreqpSnzRer7qvIwDsfBF7/pigDXgYwDH QfhoHWQoGhd5B5kIr0eonOtq16bGDa2rnKvcEVY1sAxYgwz7WLAgky4x/h34lTV8Rg0omAWldYlE PeLjpRA1kScWTq0o6RD5xYn1PS3JWd6xL5A1nJrfnFlfHRsfWSgRBY8iHIpi3/74iiZXx4sxjyQM MQj/hYUhSbCQYRZSvXGyR0kp3hnRftcOqzummyPoVqBhkJakO54GWGgxCzjvupkFZ6UtFiAkBmGh pjlXN+VqQgZSnXDI1vSZOq24wREiOVyNNdGchlhIqwMkTVBA8cSCyv9EARB4FCiYK0Ci+Zlg+pTm Y+EUaRyhyyBBoQplNJGcMppQRpOqaFqTyKnj89vzSaHCWTCHXzwNZU7CaUUoeRCI7fsiB64k4eCK H8yLQ/DAGVK4wof2AIsLrxRSSGGFFFVIkUM0X1uQZoTIEdAdQt/sgS1HEPoq+b/afGLk79DID5Ev YGBbAwCBFRR3MYhVtm2jF9ox+wQO343u7yYP4YA/weSBtoGDCUkJwsj34ARobC3cgW3CtWlwQHMW kIJw8ecFO4DwldwB3dmxoXN+IV9wburtYAcnG8wCMBH2sanxbmh9IGKDQQBHX5iFNdrmxyyo2ALU LjSL5UvH8rlMupA/X9pXlI4VVAmltHKJZgFZ6IhCLaabLogF+MIHGvw2AuHM+uHc9vFcgj6c2j6C kSPTO2EQ5zaw8PYM8cnwyEJ5Ni1NEZDGhfEYBoF0xCsL17nRggUG4ZEFURMEC7khl25amJvm8eHh NEd5acxJCd2BdtokxDZXqg9j3s5H9wrRw3UbA3+zyyw0XbUG3MHT6HiQlFAcyBfIGuzljr3YkQu8 rxW+kG/Q2nShacrXjXmko7o+U6UbHBJlZST/yAKki2a0EaSgpMqfUgcyoECwoA5kVX4QQQg8pqNL /1xkByyaXA2kEPVPAmnoNJAUIAgWoHNfEjoNxY4DkWN/9DSUOAmmjnyoBlD6yJvhk4TCnwAIh6HE QTC6548cuNOChX2UXGeIWQgq3EEFs6CYsxA+kiJHUuxIih6hLFv9B7YA2vSeK/zdARD8W67QV3f4 iz3wRfJtWX3Mgp82ptrC27jO06U+CBCIBVpQgGWEd2nztp/dAfJumyAMfsgLCr4ZXN+MbpwDB5IF fcFDIBARsAw/xydkJNcXo+OrybFpdG0YXetG97rRs2GiNeuvep9gYWPOAo9/jQRtaO14Z0PrxE/p Mxr3GtqB0rWuovG/oXICBGhTDctwIvxwTbCjKayq3aJcL1/Mk9LnS8eCBRtY+Eyy0JFKhGOekSgm kXiqSl4CBWdW6BPOz6Slc/ndgoUPlzKxcG75t0L3LCNdFaYUhwoiFI2JBe4LGOHDzHCYhUYj9Ou8 KNdT2kvJDWJK7zARUJ6POaJmmB2MMgNiJz0YpfqjRLcf7/bi3X6iN4x3R9Hu/L45f6snAhIqg6uG 7tAiEEpNe7EhFxrAwVFp2+muh6a1ULPkytZC1ZKvWlAZMmUkJX2mwrc/VNXJCt/OUFRG8+p4QR1j a4jlUBwuAyllIKWCI6AmB+jZjCoa/Bmeh4E7ICzRchuOygUIF4G5L5wtdOJPkDXAJgL8/Dp/Es3i xJs8DsSOfJEjX/TYFwc4x77ksTdx5GF5H5UkKDwxWlwgR4jheOiOIR3BGjgjhRWOEG0lot1EERLS EdfeQ5iCzU+LBfbAviOwK/t3ZD/cYdsR+m4PUUxCHLIFqDLLge8237bNu23xYDBvc/7Z5bXmHfQF S5g2JpkpLAEEcgdyBB8QgEF8M7jZF7zfjZAH2jK4tigpueARVECsvi2zZ9Po3DA6NujoYnmgTbiG HgHJI1jY1Dq/ICNh5Ouc6xr7ukYWdIAFkgZvOlbpqi6tqexrKnlD7djQOMRP17S2VY1lVWNd0Uho 3KsacCGDjqVL26dLiYqzUswv2VfVMsck2/Kleenc9OnCwqVbgpZoiom0pLSTHQCNMxv08Vz+dGZZ OjV9ODG9OzK8P0V8Qpswvzu3vHzmC8Up2sFtfnxbmNzjmBshHc2K5BTD3KifHQ1z41EersEJStRq qg9DGAGBUEDpxnE0LtBkFMAZPFdmAA1TvV6q10n2uske49AbRvjmIH+7h2jkrrddtRbtPSMQGnKx YSdRawALjmrbXm1I5aq1VJFKVVu+ApnSJcECkpIuV1enqipYw+KuN1U0zytlBdjEJYX8NC00hHgn ElgIZsXKgmCBvIOlxmgPpAQLf1MQBpE8C7JT+BKg4NSXOvWnT2gFOXbkjdLREz3nGzDxgWNP7NhD TwMmeZIn7uSxeOSjkx6aTRS440cshYuF9+0RVpg3XdPJgUzTPnw/QuBQBgt+kuzfl/27UmBXCtL3 9Uih7xjwdtSQyI4z+F3ybtvc3y2ubYt72+rFaN/DTy0Y/35m4dEdqDjs8XIbpSPCwSMcgVgweL4b BCDEwpbR9c3s+WbxbFncm2bXhtm1bnJtmNybJs+mybtJ87GeL3rkHCFQ4P6qI23p3ZvUo+cBaV1r X8ixrpagDY28rrZtUnayC63rLGs687rWvKq1ruqkNb28qpU+a6gg0+qbxsFzrejUEjMif1ZamQUj hLCEl6BjhUvExwsrUhPS0XOnWD4zLZ3oP52BBd2HM9ObY8OHc8v7c3jEU3emB6SMr+fPLB1dCxYQ mfKjQW40yPMT3lhwAZaIRoOxcIrieFqazFA6oPx4lBuDoOEChL5Quk9K9nowiFinH6Wd+YNga+Bt tt0NYQo0leSstoGDo9x0llu0JFdt89Y42pnmqDXtVZp9lUt1iNyhUBetQZ+tqulpAGW6FTpWUDII oEAVySvDGQjZnmaWorx/FYP/iYU07b4IpjWhNEBQ+hMX/uQ/QWAWaJwHBQgQoIBBZI5x8ScWwoKF U3oCcOKRBYEDPf6UcaAnoGLYkx2Q+BnyMQXpkYXwQlSieX+dUJCqhCPwnAVc9nel0I4cBhF7zihY 2HOGdu1wDe93q3vBgo/XEWi5ec8SZF+ARwS4RFN3hn18R0wyuTkvcUCi7CSOMAj3lmDB5P5mcW9Z XF/Mrk2AwL6waXLTCh0t0tGYf2RBUADBa9AaAAKzMAcB5/CLTa19Lo30Fe/w+RecGKQNvW1dZ13X 2Tb09nWDfVUrL6tsn2EQWiexQF4gC31W2jggAQHWgoVVNdzBtgSnUNmXLqxLtE4Ng5Chz+fmpVPj 8rn5w4l+CQicMAtn5g8XtmcszIgF1t9YGA/YFwbCGsgdxvPZV7EeQSBMgACDMJmUqWsAmSccFiD0 5iwAhHY30uqGm/ydyM2+p47xX3NV6y6eWXXX2ujOpCqrRiDQy3rHBe9AxQYylQZyFC1Sl1uEQ75m yJTVqRJYUCeKKjKFnNhih5EPU6DFMnqOREZLS2Z5Je0+QnCip1hj5KsCKQ1+RHs+U5e++D9ZCD7p /IkFmmg6gy94Esd+sEAZCe5w4o+fICkJFtzROQ4kZoGUmLPgpEUE0j9ZCP03MQtOwoGJCOzJQYCw J/MCnDMOFvYcoT1ncA8hCjhI3h2bd8fq22EWYA2wAGYBJ2wT3J0pEZEECwIH1GofswMcPFyo3QSC mVkwO7+agQMcwYW+8IVZ+AIQ9DRr9JVi0pMjfNUBCtf8mk/j38FVmoITjhj2Qhsa6cuCC3qHura0 oQMOOMImEJOkZZV1WSV9VpMjfEa4ooBkR3xaxctLMxBYpfFvWwEIxIJVnGPA4/PLtHJHU1KfLqRP 57bPFxaYAvrFxzP4CGq1SbCAovFsHgkjXzRlEkMxz0iMA7SISYup18JkilxEIMw1IY1HRYpScxye s0AZCX2h3Y0ChEY3xF8RHqBFt5a73nDXGmAB49xTbdFXONG3OLXcdE5HEhipd9CsvfWmmz5JtcJR bVmLaNO0c1WTLJLmLOQ1sQKJNkWnKS+FMPJTNNEaJRbUnJfwzrkvcelLsC9k/i8L1JFDTyIc6EnX CZp3ZZ16U0f+KIFALISP/XEYBJrFsZdZYByYhQQ9GdudOHbH/ysLR8DBEX1uClwfhDugTSMj+cGC Ajg4gweO4L4jvE9rdlFepIjvOSK7cgAg7M9x8O3Kvh0b5N+nRbcgEWEl7TMXz1nYtqA7LKzB5Nlh bRs94uU2fwAB6ZGFr2b3V5OL5RazrwSCAS7g2dJ7Hh3hK9Hh2mRT2KRB7uR5WpeYU6KXrDkLGnnO glbahHSQDBY2tPIaioPa9lktMQg2CNFoTcN9AUnp0ryiNK8qgYN1IQtJiTFvRL8mIi5hHwTC0pkV LNA7SFDnJmCFI+zjA3zh/MkXivNLPd2zQHey06PdiYXidFSYAAEhDPIJv8mtYTItUjoilcbkCOXJ uDyZszDHgaxhnpEAQrLznIVesNGHfPWWp97wNJoEwpyFFoFQaT6pyj+lT7a8tbq7UvPUGs4q1LRx WAIL2lRRyyzQfokYLbeRogUKSHMWkupIVo0SEUxpwvTEIWYhjvEvmoJg4dKfvCQKHpVWhlLQZYjd ISBwAAUUfs58aWKBRA1asIDjse+RhRizEAcFQo8Z6R8sHNGNmWK5jSg4cpJw8sSCw69wBRWu0KEz tG8n7UkhdgeAEHpkYceOZu3bkblEIyYxDo8ssE2QUCWoX1uIF9qYZPY8srBtdEM7pgUOJvd3zkjf zK4t+ILRCX01CLmYBYxql6BgS+/iGu79ZmAiDM4vBieDQMcvNL9q39TZcSJYoIz0jAW83NTKX3T2 r3qRrDDsZSSrVY1jHoqUNm7NBALLTFKaVlWmNbVlTQNTAAsmsLB8bly5tKAgrFza0NOXz23LZ9aV S+uncxOaxcczA6oHWFi+sOAId3jamzcYZAdD2nFB62VTsgaaIB1RX4AvIPDMhYw04klXOMLkHyxU ppPqbFKaTQqzUWE6erQGgQOz0I+jKbT6YdIg1BwEGgOMfxcyUq2O4Y1rvrfepjuO4QLPWPBUm95a 01sVqrkrVQ9+pVJ1VZtyuW4tVk25EnDQJYvaBCOQKOoYBA1tPcqqgEAErTmNI687ZKgdhDJ458Kf QEcgOuZ9IakMpJTBv0kVIikXvvCchdMFC8fBOHA4CVJkmrNAFAj9HxYeu7NoDe4EseCMHjkjAgHo 2BU6dgaPkIhof91zFtgX7MF9OUi9GJKQlGjzEkB4ZGGXcUBSEizs2yD0aNKjU6A4A5Zti2cHYhZ2 zN5d9Aga/14x9bozZwH12YVKDha+mpzQltFJPQL92ujBmN8iFub6xjV8PhlldC2oIRBYAIGG+pbe CX3RyFtkB3aIisMCiq+Uo5yLxu0gFrgprD4zhXU6t66pzTT4wYLGsq614ojzdRjEhWkVCeoMR8va pW31wrZyTiFqica/+cOpHlgRC5f0ztIzFvI8X8osjDLUiGe0Danfz/S72UEXg5lFSSk/Hs/X43Bc 4MCOMK7OprXrWVmwMJu7yWOJTveAw4BmkDrDaGcUaQ0fWXDXau5qbcEC3efurXXYHeaRyVtt+Wqt RxY8lbKnWgULMAt7uW4r1cz5sjlXNaTLREGiZEiW9XSPPC00i32qsANQII5aVAmMcJpZIhzUfDuM lu+LUfHs639lQRXOXASSZ944JHA4o2+MSh4HotBJKHEciJ2EkmBBfKuUuLMGYmoSFJMoKRELJBQN 9O7HqSSnMIWwcIQFCH6IUtMzFpCU0KB3JTGwA7s0mxoWS9j7DgpIO3bIjxOS7N+jCSgyF2YB9cFH LMi0B2OHNmAQC7tW746FhLKwZ/ULR+DigH6NQo3W4NrC+AcFRgcLJ05aj2BqthcuIKZhaf0OlZyn p77y4P87DvAFvvLrCAcg8A1QYPAvXnJ9cAhtaB3zkU8LcCSmwwEQ1lTSJr20YfCvacwssGARLzfV trUL0xoS1Llx7dKyrrStXUrQCo1/46cL0/sTHbsDdQekpk/PunN5Oi6OaV0ABpEbDPPDUX44yA/6 xWG/MOzmB93CsF8cD0uzcXk2Lc9m5SvSY1+GI9SuZs2rWevmqn41rV6NoQqrNB3hFwuiSvOKQ6pH t8/H2vQUphA9ea/lq9e8taq3WkX+8dWbPmKh5QEIfO8McAAdIjuBBXel4i4V3eWyq1R2VmpyqSoV K7ZCxVqomjIlYwoglIzJsg6Vgffm0cRRJKeJ5VEWCAphDRFahtPywjQpJEQTSpAKCASSQqpgQhVK QheBBAIVi+eaYBC+FH2fWjAGCki83HYaiJ/AGnxRcgQv9Wg2BXp5SixEFe6IwhM9ookmljvGmMQF CApHUAEKmIVjZ+AIHYH2mqI7+xVgwUk/RX3el/wY27ja0948lG7aaxc8oJHvBQuoz48SwWkfb6JQ U6f27Uo+mAWJ1hc82xY3jrtEBI9/9oIdZmEPdJhxjjHv/GZysAQRGNj2bwbnfIXOhOu/e4u7wzfW d+P8uGVw4JPAZ4tF5/AFnfxVZ9+iwT9HYEvn3NKSHueXvmgdQpsa+6aazGKTe8eGxr6uJhBgChvw Ba20SrKtIh3hqKOXKzAL+AKXCIQiZKRVpbyqtK9cyugLaM0ISB9O9EhHn0DBuRksLD9nAeOcBv+w OCSVRtCgPBpWJqPKZFidjkizcfUa43zKOExwrLBgBxj/rdvrzu1N7+62fTNr3kybt9PGDakGImaj 8pRxGAyz/WGmN6S9Gd1xvD2JtsahVjvYavgbdX+95qvj2PTXQQd5AVgQFMxZYDpc5YqrVHQRCyVn uSoXK3KxLBfEigPdSm9IFAQLWnreRZH25kWZBZ5KUiMgRbOaSFYXSeujaR0RgYBE0oYzwh3INeYr DgmwoA4loQt/7MKPNpEAIDhSreAVOl5ujgOEY3/kLJQ4DyZO/dGTRxZgDRjwrsipJ3bmXbDgjjAI 0Tkj7B0ISH9jwRU6cdOR/SIIIS8dOf1HAgd7QNyqo+BViSP0bniH3b8v+3Ydf2NhLuQlYAJJggWf uH9BsMA4kHZp8Ht3AYLJu/eMhR2Tc8fk2DE7t80UlsgjiAXHlmHuDmJV7itFJjfj4PxucG7TZKxj y2TfEhwZ7fgt0LGlt0NkB5SU/gsLIi/NpbVv4R2u2CJEbaglUEBQqNCjbbwqN9eqzk67xNXIQpY5 C+jaJNq8sXwhifH/8dS4dIakhCpt/XQGFlArntYXSuNheYRhP61MMbZntaurxtVV8/qqBd1ctW9w nNWvEYGIhcoVH0EEotF4VBmPatNR83oKCnq3N93b6+4dqXN33b69auC3pviTB8Rav5/rD7I94DBK 98ap7oSeRdbpRrvtSLsVbDX9jYZgwd/okDswBSIpucvNBQtVOAKOjlLZsWBBypet2bIpVXjOAkDQ x+lrnoQX4DhngR7VSwjoWFpSmkF4YmGhpAABRCgDcSXQYEaoVpCATJq8IAgviEJnwcRZAF4QPfFi kJMECyfuBQueqMITVngiR17gEDkmKCKiUxy7nvrCsSt84g4LFo6cYbyEjuapKSA6Nd+nw/dyymEm ArzQjOuePYhctCv7hfbIGvxcH7wgYpdZEGFpj3AQs6+eOQtmDwksUHEADl6Bw67FvWdx7dGyBVhw QrjIf6OY5OR1OrdgYevRFwwugLBD87GOryYZOAgWGAeH0CMLOPmGlqFzgYWv2gUCCFEamaSViQW1 hGYxT1Aa0pwFWnR7Eu2J1cqf1TShtEayiYq9opQ+wxQuJfiCmEoCFDS/dGElEADFs75QJBcY1SaT 2nTavL5u0fdl3Pbu7ha6xQhvXc8wsOv8aNz69RWO9Jy38bA6HtQmw+bVpHM97d9e926verfX/bub /j3+hJsOOJqN65NhDZ8c8XPhBqNCn54dke1NMt1xstOJd1qxdivSaoWazWCzFWi0IV+9QyxU265y gxAo1d3lBqlSJ2uo1OylqqNcgyNI+Yo1VwIL5nTRnF6wECv8gwWBg4ZFW1hDSW0oSThE4A4ZXYQq A7PwCAL7RTilBgL++CML7BpC6BdpGMF5IH7mj0F0AvmAQPTUw/LG6AkV7gi1DGrccVqYI0WOPGHC wbOYa3KTfYhhD3bAwgKBRy4WLDAg86nXRxZksaOJVuL2nmkf7duJ7gAofCzyjn3Jt88sEA5kE96/ sQAKyB3o5R5k8exZPfsQIpZ1zsJ3kwMegR7xHc2astA/QXjOAvTNZP/+hIPwBYhA+M6/8h1E6Jwi OJGIBdtXjXVLY9sSXGhJZBAaidwBOKjFopu0qp6LJp3oxLYOqawsG72DpHQB2VYuLThfpb1MLKZg BT3iWUaCL2BgN6bT1mzWvrnuMgjiu2agwfxbxq7b11QK6rOJUA19eTLCIG9Ox52rWe96NgQC1ziZ Dm6vhve3o4c7HOlNAHI9w2da0yn+ltp4Vh3NysNpaTDJ9fvpbifZaSU73US3F+v2w+1esNH2N7g1 VJvOUg3jH0dXmY7Oct2BY6UOFuzFmkT7McrEQq5iyZYt2YoxVTSmyrq4mErizdsMgtiepI3hBHT8 P1lQY7TTgE9yaiL7ECyoAnFVMPnMMtL8tbPpy2D8IoA2HTvnEHXui51BhMCcBarbnhhaxjkt0sWP fWFIEHEMd/BGj70x4R3PJUBgCbMIHFNA4gbhpMikYBCOiILwEXIUMpLkO5B8iE/7vDZNwsh3+BkE 777Dd0DijRz4pI1wICKADHBga6DWwI6wDxxMbpIZjsAg2DwHNs8ubfBw0h4Ps3OHjq5tZmE+nhfa Njp3WFtGgCAtWHiGg17e0smMw5yFb6BAy4DAMiCdtKUVLFi/aXE+1yML5A5UomUxuUTzS2qZtgKC CALBsqY0Q4KINUKAdYH38VPQYVtlFqDVS2n1mS80rwmB/t19/+5uQIOfvkFmKHR/T+P5/haX+i7y EuEwbczGDeAwndQn4+Zk3JlN+9dXg+ur0d3N6OZqeHs1vruZPtzNftxD0x9304fbMdC4ux3gb7m5 6d3cdq9v29e3rdlNfXZVFps9hsPceJIejWO9QbDZ9jXQEdCUG89ZcBQrAMFerNOdocUaJECwZIuW fIV2ZeRrtGcvXaHHHPEtn7zoliM7iM33r2pjsInM/5MFGvD/lYUEvR8QP31igf0ifglRm4hf+DDs Y1SxQYEneiZYIFNInAkW/KFjnxCgiFDLpkmn/x8Woo8sHLtgCsE5CzACOUR3/cgRIkLyMwte3ulK 8068l49ZIDvwAoRDkh/egU8eChwkNgtmYVf0BcpFvn2Ld9/k2Te594kF977FfWAl7VpdYGH7OQtw B6NTLElABILBJUDYMcxZ2HpkwewQOGzppQULDioXZApzFr4b7d8N8ne99E1n+6azQt+11i2tFVyQ 2B1ETPqicayr7WtEwXx304bGtq6xktSWdZWZZd1QWxkNErMgrSslnKxe2Oa6pJePLHRvr/p0Gcew p2e+De7uh3d3w7v70d3D8PZ2eHuNQY7L+wBX+LubeSmAaFTfDG5pkE8e7qcP91c/HqDrXz9u6Iu/ f978/HFLerj5cX/942EG0ccepvQcIejn8P5H7+6+eXNdmU6KPK+bHo5inV6w2fTVCQT2girnIpK9 ULEXkItgCg2pUJOKNesjCzliwVqomzIVsKBPlvV0yycvNwgWolnayB2HNWRJEVDw2BceK0NW9GhW WrAAaoADK/kouiEimKE7IwJxDX6EEEVKXHhjEJfr+LknCiIeZ5/mLASCR/7AkS9IOPgjj+sRf2ch xpEpKlLTEwvuACWlJxaC/Ig8dgcpoJD9CtnHBsGjHWPeSXOwcIR9h/dA9hxCdu+h7MXH8BmFRAYB FihW2bzAQaSmfavvwOI7MHsPzJ4DM4HAckFgYdvq3MbR8owFkxPusEMsLNKR0bkLUbNGWSAWvpvt 22bC4ZuQASDIjzHp2xML8neD9F1vE9ox2LZxorV801q+aixkEzr7N918igksbGrQo23QJpVr26bK vKEybmhMG2ozy7I4ARSmNaVp7cK8PmfBunYxn2hlPWWk4f0NUXB7O7i9GWB4X9MIH949YLjyU+Bu xw93EGceGMej7kf39DXfsx/0rfekn4TA3e8/Wb/u//z14/efP1kPf/66+/PX7Z+/bujbwH9d/fw1 46/zA02N6aQ0GuZok0Y33u6Em81Are6tAgR4QY1YwHnlbyxAtnyVWKB0VDJni6wS+UK6bMpUDamK IVVldyAW1Hy3Mk4eWdBF//s8ki6c0YfTrIw+kjZEcJLSwSaCyf/KgtYf0wYSGhiHP6H0xQULgAKZ 6sIbFVyAhTMSsXDk9x95fazggoUYWJhnKtJ8eY5wcEdFlT6mvhBgBXn1ITxnQQ4f0mwSvTzGJx3B YzuvzTELtDDnpIC0J3v2ZfeB7AYIgoUjyX/ELOzKXmJB8gIHSk2CBaufbpqweA8sngMGYc/s3MP4 X7CAK/w2TSs5BQ4070pJiaaPdoyuXaNrj0WD3yxD383yggWZRBd/EMETswsWIAbBKrRtlHaN0o4e GclEODALXzVISujUNOn6VeuivAQQ1LYvGsiyCRBU+k21YVNt+aK1ftHZnuFgeWIBleHCun4pbShl aO1CWrt4em4exiQu7Li8Q2wEN8Nbdof7hyFFptshgzACMvSjGwSeycOdSEHXP3/c/Px5x0Mdg//h zz9//f7rz7/++v0fEv/v92/C4efDb3zsx9Wvh+mP+9HDLSo2mnV1OiwMu+leO9FpRNqNULPha9Tc VWrHqMboBdQOyg3kImehac/zE2MKNViAMUMj35yrmDMltGajUKaEjESPTsrSDQ76ZEGfzOmSZAe6 +JwFHTISxj+tPmM8pyCMf8QkPZISEIgk9dGkPpLQhePacFyHl7CPEC7+MbaApNoX0wbT2mAG0pAv RDSBqCYYFznqEoMfLPii6kBU6SepgvFLHwyCPIIe9kjNOnLqDQmdeMLQMdqxK3xK003Rx2nYEw8+ Bl8InrhJp+7QqQefQS4KKHjDKoKQgm7/CdCMqzN4QjOxOPcpnD4F9QKPwoVzuAPOvU8sSN5Dq+fQ 6j6SfAoq0a4DmxsvSTbPoc0npLAKChCNqCzsS549m5tmnHg26e8sOHfM7l0T0hFYwHh24GTXACIQ mTDspW9zX3BsmxwUgYwODlH4mMyy43wHNoEgpLVsYfDrpYU7AATI8l0rQd80tm8anMjfNKQttX1T Zf2iBiA2HL+ozF9UJuir2vSNWga6hnlTbSKnUBk2cKI2rqjMKyoL7d9ToiagR4AI6wY84tmc6uzn DwSYyf0dNL67YyiQkeihiKMH4AC/uB7dXk/ub69+3FPy+fXz4c+fGN6//vz16zdE329PwuD/z/x/ //v4v//89b//+f3jNywDDnIPlxncXbdpVW5SAQijbrbfSnSbUYDQbgRaDXe95qxWHJWqjHZcolLg KDXsuRpAsOfqlkKdHwtDe5D4pp6KJVN+YoFlyvHTk7IlfSqvT+UM6bwhVdAnGIR4Th8Tt3/yTdDB NKSPZA3RHAQc9NGEPpbQReO6cEwbjukARSSpC+HiH8f1X8ss6EMZXSAJaf0wiAgpRCygSsAaWMQC KUhS+aNzj/ClRJU+84TPvCHo1BPC8AYIQoTDfBo2jJF/5sMxJFg4cdFox5HW4BzzPasKR0CsO7Bf oE34FU6PwulVuDD+3Ucu5sLlP+TivC97DiQPWCAKbJ4jDHib95BAcAEEBWTzKOhNFgoC56J9qxsg QCjOu6gMFhfS0Q6NfyfOd/l8l41jB2GJQHCgKewZ3Y8swA4AAi1PEAsOZsG+a5DnMtr3TI5dg7St Qy+wbOGImrCISd91EI3/ba19WyORtDJefgcOanlTZfmiJr8QLHxVmbfUFuibyrQFqU1f1CbgsKlB cDLi+Flt+qw2r6jn+/fWLs3rl+aNS8vas+48+fEDOEw5808BxcP9hJ7/djdGCrq7HxMjt7OHO2R+ ouD375905f8Phj30my/9GPwMw1+/fv/n5+///fH7r4fff93zd3zfUij6iSiFWNW7u+FFh1l1Ni1R ZR5mB91ktxVlRwiQKdTdNdhBxc5rB/ZiVcpzLspVCIcs2jE/KyyHglykgpCriNnUv7GQxQcqxmzR kC4ABCNYSObAwlx0+2dWF8lRWQ5lICAAEIyxvCGaBQu6aEIbic8piCS04YQ2FNMFE0hKkNoX1aNK +ONafwLSBMP/YAFhSeWPqQIR6P+ygCv/mSciWDj34RjG+amH+zJCjjPETwmG0Lsj9FPvHIdjqgwk IoI/TCsOPLMECogRl48Hv+fQ4cHJocMrjoSD08fu4DukpuCFHSisXrBwBI9AiQAgNhb5hVcIvnBo cT3hYMWwd6Iv7PH437U4oD2rc8+KEzu0Z3ZQjsLR5Ng3u9C7d2n1gWoCybQwBfRig7wD6SWhOQtG +47eBgS2BBHwAr1tG4AY6DPbWsi2rbEJHIgFrR04PGPB8hUIqK3fyTusXy4NX5TGr+QR5i8a8xet kGlFbVpVm0k80bR+KWRZe9ad+enQoIBAICigHz8AArNAZoEgdEsp6E8M7Ltff/74/fsXj3yCABf+ /xAVxMKff/349fvuz7/ufv91++dfV7/+nPz4Obi961xd1Sfj0hBxaJCjbU60VS/e7UTbbVAQbdZD jWqgVvXVqt46AlL1bywUqghIcr46ZyH3yELBKljIla3ZEpLSEwsZWEMJLBgzBRKzoItn9PEsWDAk 8sBBHxUspNEUdKEUCoKBiIAvJAECs4CwhBKRwDgnFkIJXQgGIVhIzW1izkL4kQWAwC0bLxcsBIiF S1+MNoR7EwsWQswC4XBOYx7vRBfWEOWppxhR4CUKhHewfdDeDDaI8IIdpoMSFN70HcERnN5HRzgi R5izgLBEuzhgJcDBRkP9WPIf41x0asl7YPMccHZiIjzMglvgcDhngYb9npW0b3Uc2Ej7eGmRoQOL /dDq3Lc4DswO/MoBuMDwNgETOAJAYByABueiv7FgIBx2jfIuj3wgIFj4prOiOAMQ+MW2zrZgQeDA LGjtwhGoU7MdAAR8jFhQGh9Z+KoxU+/WktZRqzVmaF3Ns0zKudYun1ho3Vx30RTuuRrfUYMePvC3 2P/g7ky+AKe4R0e++vnzipvv9Mev8cOvyY8/pz/py1uHdz97Nw+dq7vW7LZFXx1O331cu74tTa9y wxFKcazZitQboRpURzX21xp+Ksg1X6USKJd9lbK3XHaXK+4KQKg6BAuckeALjmLNXqg68lVHDiyU TLkiKVOgbUg0j1S20eICcCia0xj5BfzIlIU7FBkHBKScPpnRJzKGeNbALBAOMbhDjvsyzSYJFozE QkoLL4gkcGKIpQUL6Av6cIJxSKh9EQO16Tikp4lZwUIMA14TIha4ZRMLamKBjirqDvH/j7D3anIk ybI0///j7nZPz3RVJQnq4RTcOOecwgADh3tkV+80HdmRfd5zVQ1wRGa1rMgnKgYDop70w7lHDV7J XGCHS1727CfgJcCaXijw1qObkwvMFyoUHjZ5BB69+NnLyBrMTnDBjilKSA1KBJLFG1xAKHAXIMKd Gw0u0OxEfKFo8O6oO1N9RiJ8Nhi693sXFPcrcwHQ+KQ6n1UbG/6zij1vftGsr7r9Vbe+aPTys2LQ TQgiG+CLYn2R7U/4wpdNHhy/SAZc+CDRdETtAB3hogNzAZMSNWX0Za4DP0395R1scpUYdGAjE+mA EsGeQTB+nmk/4wIZAQs4cIF0ULhf/4gGMcXIBCMk6PAPY+K/jemPIG6etf3L7l//5fhv/3L69397 /c//+P6//vOv/5s/bvt/f/vf/8/r//rP03/82+Ff/+UwfOZfT//+74d//3f6bxP/67/1//NfV//8 P9vf/rl+/a06f69evzff/9p8/6f6+2/l23cokJICx3B/8Pcnb3cELtb92Tu8YnU3e2e9dXrC3uzs 7d7aEeaWHqLp/V5b7Yz1Xu+2Zrcz6WkaiSCvNgpzAZ+hj7FHz3SySkCEno6VBmXWUtOJ9VKsO7Fa ieQC06HsBaRDsVrQXIREaCGCVHQL7P8M0VBzF5AO0GGeVlcXpmEmwpSkFFKAt7JZkl1dQCiwtYQC Q5UgHXJ2ylS9DAdN+QsTYRSkL8BnsLee6CF1Ts+pkR0oFF7y5MaPcMGNnjx8DIMWdEge4ALVbaoP CAXWO3ARfhtc4K05gAtsjb+60WdWoukRA1wwwzuDoDgwPfSIT9wF6gsUGV+ZC3eE800F7jeN+Kpa 2PNfNetuANcMJggXgVyQLQLDEsuRX2X9F0n/FV5Qp4AR9geRhiKygMNE+AgRLodIPw9xQCAafr26 MOgwuMC6g/Y7EX6ijJCv/DSlMyhcQI0/TcQ/oThMgPTfp/I/UHcg/u7GheU//9b801vz/bX762+b f/0X+t3pf/z7gf3caPV//7X+61v117fi+2v2ekxOu/S0z99e6ScT51N8OkWnY3AE7Ev+xHY4/dya fizh7XGT3ac/OqDTUWJztDcn+r9w370Cuz/Y6y3Rb61+Z212JtjuDXJhz1zY3rqg0qOEDcVBt9E3 +AD9GMno9/xwlUEWcPBJqCG3HXSQmrWEyKhXzIi1WPUAOgjFSiiWYgERCLgA5nmzuCWrhKwGMGIW wYUaIsAIkiLL52kOXyZRMbgQg3Ia51cXptQaKjploj8dwrCUw4JRSCA+RmGGO+QIIgMWOBn7zUb+ FCAI0mdMUxcXIALAxaOT0OriLWaKhw+EANFAEcBgfSH6SukQw4JPlv+FynXEHjGEX43wnn7yF36C C6b/+aZW32n+nerdKd43zFGwQHXvNfdedcCdakOHO80G2P9X4MXXIRTMr2SBCRG+IhqoSiAR6Av/ VwmjlMVcoE7BO8I1ET4SBlz4aa78PFdw8SsbkD6QCOqH+Y86YF7ibZrlwiACpGAiEFPlxgX2tI65 8JeJ+Gc6cSUwL/3DVP77mfx3U/n/GElXF6rv5/L7a/XbW/Xb9/q3781vby3W76/N97fsfPCOG+Ae t95p55/23nHnHHfecR8Qh+B0oF9cH4/u8eAcj+bupO/Oxv5s7U/2/uQezt4eWbDHenlkdma8Di5s jk6/d2AE/Zdb9yZt7B399JR+jI0x6Qgd0Bqgg0VjEgSBCBut35Ej3AX6PFzYMLbamlDWaNb0SZUS ZCW3K5n9V9LkZs1EWLM46LgICAUhawaKVijJCFach3QQsO3zBkCHWZxLec1FAEJRLLICn+QuoDVc XZglFx0Spklckwt06JpxF3ihGMfFKKKnEhDhwU4BhqXnqHoO8yd0Ci9+ogEpuXXhyU2HC7wLF5yA 8wAdUDH85DIdQYqIu0C5ADWoNQR3VvzNih9sOp79bNMRE2Yn9pyOZqdvuv9N87+pPnPB+6a490gH xSZUWODc6c5Xzf6CgsBgLtgYkD5BAdlCjkCEz+SCc3FB+0XU4MIHGTOSwYeiGx0GET6iU4j6rQsf qDjj216CCx/+lgs/XZrCLywU/jKWwa9TlbUGTEryn0cSP1y6aCL+ZSL8iQEXSIS58n/NlP/zxoX0 7Zh9P2W/vSb45j8fM/B6Ts8nkOBr/7Bj7KPjMT6dkQUhgmB3CLeHcIfhB5xwEWwP3gbf/HtjdzCR AoeTczzT3zLjYn8kdgeAAYn9R1pPHsNZ7+3V1sGktEVewIg9/dACF6TS0dpChMsdJoveb7XVBkZo 3VqnbY/rXl2tgbbqcU3ggn2GfXitdSt1uVKWawVGICDqFTKCFCjY1FR2Ykm5INKdlrGkx3ApXCAR RBqfuA41mCc5Nr9UNGAep/Min+fIhWISF7TnY7Rs6heo23BhHmdgFtORLD2P80E2DtJJmE4j3M+m Ea5xJ3t2sycC0ZCTL0FBJcKLnkmE+GkgJSNQHDwuAoAjLBSc4N7y7i3/3o3Y4+lw6MtwwYuxXkq0 DxfomZ2NgSr4YvsfHO+D7X20PHo2zX6n8RXBoXv8iPVOo4s7zWVBYCMX7hRrMELFhXmnGAwTb9E0 pdgkjuzcyVjROFCujY+y9kFUCUn/KBlQhhrxVMH6UdDxEnseF3Dhg4RajTjAN7mMiw90jURQfqZH DNjw6uVCGYzAtp/ijspcULgLP/G5iI5Vxb+MJO4L1j+PEA3zv0wWf5rM/zwT/8dU+O9z+b/NxL+f SX83fX/Wlnw/Jt9P6dspPh/i0yE9w4gTJz0ds8M+PexAdjjkh2N+xJ1DAgV2h2h3IvbnaH/i196O ToGAczi4x6N3ojNSh/0ZGv2+FO0YOmwP7obE8TdHtz+4/Z5aA+lwsPsdQDpYNFBBgR1jT7/KQ5VG O8A+JwvgQj+40G8GBQYRSAp9tdGZC/pqBZgOndJ2StPJDWJiTfu/Yl5gvYCbzJElawo0HYnkAk+E wQWIAMSikkpMStkkS2ZZNktRFspLyybmdPSULwYKFG16GBFQ9Z5ChCCehlfSSZDCBcJDarAnFNDB S17ggn8V4epCfnWBlW4uCxnx4GBMQpsO4cIdx43u/OQri4k7dAcG3oUIVC4gguN+sIH3yfY/O0On oN81cRdwQavLswB7GyPQHQuIe42ADt/ggozVfsBAJdsMl+HBly+a8VnVP8nER+YCjMBux37mCry7 wNMBI5OgMRfogjMoML91QaHZaUbgAvw8JQv4XETWTGW6M5Zw/Wf26OEfnwW48NOUXPjLHA1a+Ee4 MBXA30/f+0LydkQixACb/xWck9MpPiIUyIX0uE8Y6fHASZARh32wPwT7I3E4hgc6GopO7G8wD3sO Bif/hBFr7x527oHOiIgbF7x+75EFO3u9sdYbm9dn9AXSYUOsehM3twf+wyS4oHdwYWNQTdgaNCnB iI2x2eo9dj7LC1jAfCFZ6BoidAAuMB1WlA7MBWx+eCFdkFGuy/YSDS1vClLREnCEKgPXoRLykiPm xSSLZ1k6o8pQzljFZsCFnLmQAZSLBXo3PZurSATiIgKkCBJyAXMRUQxP65gLyIWnATYpYUbysqFW UFlIeC48MWUAigPGJJqUXPbjJeDF4M4NBwWcYMD2v1mo2P5nFwp4n3DhXI6bLPa7JurR5MKd/jdd cO41jn2PBiGZ4F6x72TixgX7q2aQDnToanySjasL3AJAFyLCAhZoDFIA2/6jaDI1DP5y4CICc0H5 MFc+EoMLV9hLCfw0Fnle0OHSCH1h8fNM+PNUgAt/mgp/mqMyiODvx+8zUvJ6SF736esRFmRv4DU9 0/lneqJJCUkRnfYcdn0Ij+QCxqf4eOAkANacT5ij/OOOE5z2wEfROGy8A/2Rsrdn/ODCzuk39npt rdd2v3G2O3eLFNgNIjAXLDpfYrnQ7zi45rWCzUUbbRiW+AUbot5d6PSOsew0YqUt19qyJxdquLCW W5RrjE/rP7qAgJBLBkapvOYuSEWNUBhcKEruwpxVhgX162oIBZqO0gUnKRZxOQ/LWVBg28OFWZTi 3VmUQIdJEI29aOznY78AE8oOjFLFiOXCsNW9mI6efPbMjlxAZUgIJ35ywic3ZNNU9MQaNAWEF92T BdAhHMAQ5Q4u3F9cuHODL17wxUVA0IOJO0BtIrw3g3vd+6Z794Z/r7v3uvMNfZmGIpsfKKFNP3AX cEcZXEAifCUXnFsX7uCCon+Wtc+yTs8gFOuLamPDwwJ6EiFbuP5CTyXgBXq09mH4GZL2iR7bmR/J Ef3X9wcNKqvS4CqC8mlB6y8z+cpVDeYCpQMNTjQ10Yz0F7gwE/9MSPwx3D+M3/9/ttPXA8heT0wE 8FZ8/y1/+y09vUUn+oEQvt4Hzhh7jt7xQOsZdeDknFCZGaejez75p2NInXoXDC5sLy5sSYc92GOO Aj4qxu7o73b+buttN86mBzYZ0Tvbjb0hrH7DXbD4ceuGlesVbrKV/4Hn5lIiaOdvdeYC4gMY6Ner zlgtAVzQlyt9udYxYnU9DUVwoWU9YrlWWZuQahKEzppoWGpZj2hYFlBA0ICUlmw6argOcGFe5osC lELRCKxccxcWcba4ugAvohwizIJ8GqSzkG4KCa3zCLkQTfxoEuQTMgW1AtnBdUhHPhSIXyCCl4zw MkCVwCiVPjnQBGNV8uzGz25EeNELDUvRkxOQEQgI0iG67H/0iOCWwQXHhw537MHEnUV8s9A7wgcr eCALPKwPuvugO2wcsmjzkxpkx4OOGcm6pxnJpBkJrXkIBede8SACoVpfVf2LrH4mNPboAV0bLZta A7PA/iTTQzq48FmxaIgS2SglaHiJt8gFOEJVGkGATS6TAgtugQw+LQY+LmT+AfDLAkZgOiIXfoEU E+kXDE40Pi3AT3BhKv5lJv0Fmsyoqv9p8p4L2esxeztl319JBETDK1z4p+L7P6fn34LT2Xk92+eT fT4C58yuTyd2h66t09E6Hk1wIKBJhNQ47kJiH55ICh8u7Dfubgs8sN/5bL5C6fa3W3+3gQ4u08Hu 4cL68hfNO9KB+EGHqwsWPYyjJxEYk9SuBxq5sGMKbNi6u3GB0zEdejYg8ZGJegTKNZCbJW5CENYd Wga2PYKgRjpcXZCrlusAF4S6EMpCgBr0scGXRVoIRC6mGRAwLKFThxQN85gK9SJOFnHMgQ7zCGFx cSEYXJigZfvJKIAFJAL69Sgori4wEbgLTBY/xiexPjk+4QaUDnzbMxe+Od69CyO8B8a9497bzjfH ZW/5UAO9+5vp35v+gxk8GsGD5tGXP3RgLjywWehetx9+wOLACC4FMuJedR4wQbESTQ8gVO2Lon5R NJYOUAATkcYmIoNveJ4Un5kR5AhFBlbtC0sKzkdB+UBbXfowlz7SzudZgGvp01z8CBbiJ0GCER8Y P03pvIhmpIn461T+ZSp9nCmf5upPMxEikAsTrDRB/TSReMu4ulB8P9FvIegPLV+zM41G2ev34u2v 2fmfktMrzT9DZTim1CAY1KD32fEGVrHj/SE+HDFBhQfmAulAMUEu7AcX/HcXjnDB2/berve4JhdZ 3P2e/Zk/1+HdBdYa9mYPI3BzP9Tnbs1cQDTsjfXOHHTYGt3O6DomQsu4pgO1A4hw2f9LXKBfQwrc 50AEqVoq+Fi9VGEN7OBjEryoWqYDDUtiU8KFRQ6gQ8M+U1K5zkoxyyWGmJYCOnVUEYgMVAna/yEj Yl5kU4oMUJALRDn1swllwR9d4Dpg28fvLngxhQjlwuACm5eCBwbb7fa943AeXPcBK+7Yzp3lIiAe bP/BggU+ggAiMBcwBbmPuveoY3UesfM1bHvzggEeDeLJMB80YNyrBD72iLxQTOoRmv5V06AD0uGr ilDgLqiDC6wm8AGJXFDMT2z/4xrF4TP3gqnxgUJB+pVvfkH+LKqfBehAIjAXBICXnwUZ734UpJ/n IrY9ooHOYzEyTcQPEwn8PJd+nongz6MFiUCr9DPxPiOVv51z5MLrOWcuJGjNx7f09Ft+/qf89Foe 96A4gEN5PFanU3k85ftdtt1gxf2cOOT7PV6m5MIp2h+iPXRAsziG6BdoDTQj8URg0Gi0C3Z7uthv L9BbcAEBYfWEvd2SDtvd5UCJbfJuw59EcBf04ex0y0RgprBnc/pyaxBLo+MitFoLllrbaYiDpuOJ wF1Q2uVQrq+nr9QmOrVZQQR8nh+ish7dwAIOTUp1gRlpnoGSnTvVVCWy91CQANRIKyGuhbhix0oo C/E8HlyAF7MwmQbY+TmjHFzA1MSigZFO8IGgYLUCZCMvBWMvGXsxGBHRC4qDEzzTmAT8R+BhXkKV /r0Lj9wFy7kz3XvLe7SDRyt4MoMng6H7jySC+2SQC0+686Tbj9wF7HzDeBgsANqTqT3q+oOm3SvK vYpr81FDj9bhxTdNv1PVr4r6VQbaV8XgfGatmfa8oPHNTyKw/c+9+EjZQZPSxz+6ABEkjXRAQFxE uLrAdBg2PM1LM3Lhw+ACbrL6PBX/9DInF14Wv4ylX8byz6PFuwuvhxxjEvrCGRzp7Ig456+v+flY nvfFaZ8fwYE4HQq8u9/G2zVWSofDITvQQWt+pLyIqVlvGXtq1nDhcBj+H5AuFoS7Hf0MCQNS33ub dbDtg/023NNTDMxLfGRCcaDuADY7b7t3+52zRhZsjH4FzH5pbVdWD9CvUb03xrI3lxsLeYGPdStg r1cGTFkxMEFRa15rLcG+8OmIVW3ppt5t1GWvLHu1rqCMumyFuhaaRlwupW4pVXSCKmE6yis1r7Sy 1stWqZYSdQR6GE2nTEkpoVZklVI0CtKBuSAkhJQWYlKIcS7GGJ9iIY2wLpKESYEqkaFBTCgFmA4U DRiWhj2Prj3gp1M/mQzEEy+euNEAdHAj8OKEj3b8TJERsHTwHi370fEeHffRxv73H53wwQ4I2v/u g+2xlz7LBe/BdBENj2b4aEQPWnivBfda+KAHD1ADUpiww3o0zCcSwXw0rCfCJHTKApJFozmKPZim x9P3dGfIi3vF+AYk7U7Uvkr6VxloXyQS5LNqflLQFJSPkvpRweBkfBDkX7HVJf0LrEGbnim/4hse o85c+Qx92Iz0WUCJkH5eiOCXhYhrgGkKskABhgwR8E8+TBEN2PPUHX4aCR+mChLhF8TEWPhlIoJb F6rXQ3HjwgV6SS7g3fM+hw6nA6eAL4dtsuuxsgHpwNZjRkPUITnt4uOWsU/o5YEOYI+H4HD093sW BzukRozggAub3ocIu024hzv8R3rkAk8H7oK72fnbvdfv3DWawlpfL43N0ty0zq6ztyt7aBkbk1zo 4QL9omO1sled03fGGp/vDbDqeaHWl73e9hq+7YkVEwHvUuOgEl2XetswFyqhqcWulZatWJVyVctF pRaVVtRG2ehlo5R03CpmrZA2YtaICUxhLuS1glGKXMjRFICclhJzAauQBFKeyEUmZilPhDmdKWE6 yhj5NCwAcwGhwA9guQ7J1I/f8UB0ga4n5EL0aCdsggoHF2z7yXEZPhMkwvc/wEREnYLsoPUBXljO gwk8eteECP4VcsH0niwX+58PRU90AewnBiYoDhVq3f6m07NpcE83LQoIRQekg6zDhTsoQCAsEBzG V425ABFk5aOi4pq5ICEmviApkA4zFQM/n/k/LwYXwC+IAEHC+qsgfxAUrgPBRiPq1wv6hwgFuAAF qDtQg5Cu689jSAHe/1sk9duxfDvmVJy5Djecjmz/v4vAyY677EgisOvDxQgSITltf+dCTMWBXAj2 +4CHAnMh2m6j3TZGs2AiYEU6QA1qEPxkCT0aLvRQZuf1W48eQ+CrfmltlvamdfcrZ4ei3bNPIhE2 Vre5dcFewwV8fo3VXK0M0K2JJVgBvV3x+mBQ41ijNZhtY7SNtmzlthHbBiJIWGv05VpBHFQkAkA0 KCgO6Mv5EiJIeSsmpZzXqAZyVsk0FMGFgrlQcBckuiikLJayFMAFdo40MIvyWfgOScH6wvVJBJuj 6NCJM/NByIgZcMEfYUCyk5GXjNxwhJee/+I4Y897cb1nN3h2IUjIXcBQ9OyRLw82hiUHyjxYV2AE +w0S1WfWoA330XQeTYvFwd9yQTM51KMJGDG4gCoBC+5k2v8QYdABIojqV1GBDvTYWjVhxGdZIxdk 5RN0kJSPNAuRCPj+hwKcGxHkjxQK5AKJICpcn1sXPi3UT+SRwssChMK2/3UqAHTwXyZztO+fxlNc /DoTb1zYl6/7gtKBcR4oX4+3WcDgXoAdg66ZCDsOuXCGBRu4wLzYX1xAfdhjCgp3G9r/+21CU9Ym 3u/QyqM97CAXSIfdBsAFdwsL1i6GqH7jbwC54FAErJztytksvR1duNu1s8Y41NMDu9UfXOiXAAOV uQaduWJ0YAVYlSaMjj+bXtnL1qBaQWOSggEJIjS1AqparRq9bgzSAWNSxV2gBpHjoiULyIVczqAD 9jwooQPdgQJJznIhl/NUTBMhiYUkEdKM9WiuAxTILuBmjrCY0flSAGYhakWEdRaE0yCY+gPkQkDg euJ6YwebnzeIYOz5k9Af++4kICmeHI/lAoaokKVG8IIq4aAs2A+29eiYj7b5aJlPlkl73rSx/y/H p3CBiWDy0YiGIioFhPXEuLrweDlZooAwHHboagwuyIML4A4iCMrFBf0bPqMauPisqB8l6ZOsfJah g/ZFNj4J2P+kwAV1cAH7f06jEULhFzYjXcckSPFxTtMR59McaYJMkT9QKMzAr9P5x4Xw62z+CfPV ZPrrdIb/qXcXXnfleYdBCGAiulJ9P2H/37jAHdkz8Pkt02HLAuLqAhTYkAt0MegAF6hE8D1PLmwg Qop12yc76EBqRCTC5opPOlCVoCGKRNgEm23QY2U3t3Bk6W6WmILggrtZ26ueWG+GX72uewjikAgN MPvGIlouhbXuLDLietCKft3xX2s48KJptQbRsFS7DukgN7XakAgqdCgqvajgglk3Wo2kqCACdwGb Hy5gVYpSgQ45qJgO+TUX2IwUwwUxy4Q0Xdw8jKOz1ii7QI8k2M1sFgWAWnYc0Qovbl0IAuYCrv2J 645dD4kw9iMSIfCnUTAJvGkIFzzWFzxmAXseQTHhU4O2LFjw5Bjg2TaeLeMJe960ni33yUR3Zpj2 kwlHdKYD1YTfu8B14BfcBTpZMu9ZWfim8gFpAJXhm6gMSMq9rD3I7CZtfuWDKH4SMR2pX2T9C6qE oH4RBxG+CIC5wM6RsIF/xf7/0QUSQeQnrhAB6SB9msufF8wFmovgwvTDfP5hjv2PXJh/mE1/nU0/ zhc/urAtGCWuYcEbONbfqSzcusC6w644bYnjJh/Y5keWEcd9yly4wF3YvRsBF5AFu03K2fbxxQWm w7sLAdj1xIazCQFc6Ht/vQo2K7dvvc0SRuAz6Onuau0ABMd6i5VFycqjWtEAa9PYtLYYrqx+afcX Fy7QYwg2TTltZ9atVjd6u6RfbrSN8oMLpVGUVlXZTaM3jYJOnRMUEFmJD0ABtUS/LvjxEUfJKzQI jpgkUpoC1qxTNOvLNFUIcS7EmRCnjESgpw/Y/xAhWMQhgesw/CODC553cQF4k8CdRbROQ2/key+O 9wwXbP/J8uisyQ0wRD07mI6sJ+bCs2O8MB2eoINlvdgudLjgPCMyuAumTdORbt26wOozXhoDmv7A uCcMbsQDAy7cSSoUeHhHe5DUe8aPLmhoE1+QIJLOJiUS4YugfGbnSF9QLhaDC+ADYxiQ5gIdN/EH cPQ8DkaIxBTr/Jfp5JMgYP24WHwgC2a0zmZ/dAGTEmAiHNj1jh0iHQs6OwL78rRjbEvSYVMc+/yw zg+42PHx6QcXztvk/O5CQi7QXJRsb1wgHfobHX5IBwxU4bYPN2ATbfoI0bCGC13Yr/y+9TdLv1+G zAVvvXZJga27Bnym6tw1WcBcaG0SoYUIgws0Ly2NCwgLneE0S7tuoQNcYD/bwLwEL5ACjVbVelGa ZWnXldVURlOpNy4gBfAZBeW6wgQFF/KrC2pRMxFKFQmSF9BhEcXY7SJ9hoJDiFKapuBFkjKYCBFt /kUSXkTgRPi3iyhhF9E85Fx18DEdTXw+GjmzyJ349tRHZXCx818c/5m58IIByaVPokc8Oc6TYz0x EUa0ms82uLhgui+2x3SwkBdPJlYHNYFg0QAFbkYm44kBFzhXF3hM8LPWO9r2ZMGjpBLiO3eK8gkz kiR/lpQv7BgWm58UECEFv1a+UHxoX/DlzyxgZQFZQLDKIA4u0PkqqxVzNIULc4xGM1iALKBowPWc MXv/b9o2b/vqdVe/HTjkwuuw4Uvs//PposPgQnUGW9JncKEvjlBjd3GhZ5AL6evuPRoOu2TP5qJt n+65C2s2JvUYmehdelRHLtAR664nEdhAFW3WjD7ebMN1H65X8WYd9l24XUKHoEdMrP1+7W3Qu3fs uAkVY+1hY3cV9r+5XdoXLFjQU49gOrTmDVqHuaiGC069tJql0XYG9YilgQaxbPWmRVkw69qqK7su jaowqlKrSu6CQsdKFZICoaDXlV6VNCmVNCMBGplYZZAxL+V0voRtTy7Qts/YdQodOD+6EApJtAAx 7fxFCGIhwrvpnHWHK9QXPHJhggvfG3s2LJiFsMCaePbYdUbY+c4AsgMuQAQKC9LB5qEAEQjbYjsf c5EDnuEOeWE/myatNDs53AWI8GwQ/PkCeNSJJ13nPFwsGGC58E3W4MKjSDwRKkMD3+jxtEJI9KTg C3uIgAnnq2QMLlBMIC80/ijhAxPhwyUXPgry8JRBVHmhANDhM5UOtAa8K6IpYCL6MF/wgIARUOPT 7Yz0dqrfzlir12N1ZryeSvqe3xWDC0gHXO8qliDleVOc+oHjhgEvMClt0+M6OXXJaZWe+vS8wZoc 1/EB9PEBX/tIgXW667PDJtv32W6NNd2vk/063q5AtO2i3Sqh0Wgd8glqs4572vzZps82m7jfRP2a bm6W0aYhetAG66W/6oL12lt2lBGrJaNyYMS6c/sOF1bHYJ3a6VG3l+ayBdaytVet3eGigQtu0wG7 7ayWPqCzXLCaxqgLsy7NBmWhNOpSL3OsKrWGUqlKucjUmpJCqyu8VPIMYOcjCJSs4C5QWLABSUr5 aHSBqSEgLKJIiCMJhQLlmrLAR0G4cSFehAmYB8ncj+Z+CBYBCAjfn/s+a9Ye9v/EM2a+MfetBaRw 7bFt00ETjUao1eTCo+08YZMjLCgvsO0xIMEF69m2nyz76sKT4T0bNCa9YFJCLgyP2MzLszYDjvzO hWddf2EgIx5UlT2DUx409UnDTeNJo6HoIsLAs6C8COgO2PbinSJ/kcSvokTlWpSxomt/oSdrwqe5 yE5ioYPyGZt/gd0ufMAOJxGkTwzc/MKlWCAIRGaN9IXMkrgIVz4LMEUAH6a3Lpyx/8vTgUMukB0w 4sAZ5qLztn6DDriAAmtGf4mPLdchO67TU5eeVtm5z25cgAWceL9O90iTTY6VRFgl+1V6IB3Sw4ak 2JERAb72Nyw1sParpCcX0nUfgX4V9V20WcabhtHCi3C9DFZYV1639LkL66W3btxVSxeo2NSXIcKS PXdYkQuoDMwFWOCsECKdvcSMBBGWHtKhhQ7vLtgtQuHiAkOvCqwaVQlyQSkLcoGBa+6CUuRKXqik A4uGiwtyxtoEvcw4PAsgArmQYXyKKRFi5gL/5RJGI7gQIREgQjz3ooUPYiGIhTASwlAI/HlArWHq uzPfmQe2GNlC6Ai4du2p60wxQTEXwJPDHsOx73l87Y8crBaBjKBQsAYRqD6TCy/sY1cXsP+ffueC rvJEeDHMF8MY4UKjl7cuPGqkyRMuZJqOniT1WVIIkUQYCcoDc+GbIpMRknQnKQz1G3byQqb9LOAt jEwICHz5IwJow3+mdiBdnj6z3yax59Gf6RdKIn0SLsApSWYuXFiwD7PrXyc3z9pYFlxEAHs2BRH1 2x5tojptq9OmOm+at239iou+PK4ZPYYl9u62vLiQQYTTKr+4wHQAm+S4jQ8bcuFAuZBSQCAOunjX wQW6iVg5YF7COIRGgN3OEoFEYC4Qty608fbCrqN/su7wVrBa0bPsVef1UKAlF1aQouM6AIqJDTuG XXWUCMvW6ZAgHdF1Tt06dUM0lBcmG5CMDh9jLlxEIBfgBXoEXKB0QCKUl2vU54IoihsXrjqQCMyF 7CoCI2UuxEgEOU8BjBASqsZMhIQnwiLK5mFKLvjJIsBMlQkBLnhGBDNWGZAL89ATYk+KXTF0Fp41 c4A7RUew/ZHD08F7cR3EAXdhTGdQGKXskWO9WNbzNRRM75lwX8wbF0zmAtWH4RouPDIXnmGBaY2Y C88qc0HT7qGDqsIF0gHBoSqP8lAWBh0GF+RHRb6TJYiD9ZskcxdQtOHCV0HmZ7DMBRLhkyByOwCL ANrbFBbsgl8zF+jLn0cAucBk+cgtmA18uHGhps2/r8+H5vVYvx5qsmBTnbDPNwiC+nX7/vJ1w1xY /84FBAfV5+MuR4M4dvlpVZz7/Ly56IB1S1XiiF7Q4/ufgmC3SgHLhexAkxIZweel3QqjFAahiImQ bdYpRFh3OdmxvnGhTnZNsmuT/TLeLkmffs2M6IMVbEKzbr0VY92SGhQQlBEe1eqVg2GpW5IIXeet Vhy3rp26tuvGbhpyoVsSCJQlm5GuLrS13tQmNetaayusal3gAiu5UBUaraw1FKjM0AEr1WclSy9k SkrIw9RENYGdMiVKgUDJ2JOImP14j7uQDtDmZyKEmRhT72YuBMyFYB7G6NHzwBMCh7PwbLgwtZ2p Axe8keWNqTijX6NWeM/UBZyRAxEsABdwjZigpoBQGFzw4MLIYi5g81vm78FNgwoCn45GhPGi0Us2 PqlX4MIDMkJRbqPhReTIj6r8TZEeNAXR8E2mkYkOXSU6fb0jmB0y/cAJLnykQ1GM+iKLCeXy5a/w RGAvpcEC+tj8IzXlH1z4MCM+zsSPN8/a2leIsK9P2/Z117DNz/Z833xHENAFggDggkMunC4unH5w AVNTcewKcmFdnDf5aZOBMxTApLTiYGrCts9Quo99drlOqCZAgY4PSym1bOz8Lt2s820PC/J1V0AK 6tr4cEcKkAiDDnAB0UCdeo21JyMoXFp/VQMMS+TFuvV7qtsAgxNlRNcxETofwxVWRENTA5sNRcwF CgWAzY92YLU1JUJTGezxNNCXtd6W+hI7P9PqHKvelFpd4DMoDmpZIh20Ai7Q7zeYEbAgAWqWqnmm wojsXQeIAGAB04GiYcHCgqpEnIpxRv0aIvjxzA2xilFGN1Gow1BE0aafvybUpj1v7jkAA5Lgu4Ln LVxv7voT7oJDo9TEc8d01kq9+NYFFhB0iPTCzpF4KIzIBYfFgf5sGS8W4kAfoJfmC+lg3Low0vDS 4A3iCu/Uj6oKnmSgPMvKy0WHR5qmpEdNuVdk+ALupQESgVyQ7xT1TlW/SBj+313gYfGVmcJyAc1i wS34LJAInxYEzwXeKeiX3mQBPYD4NH//+4Xl2x46NGe4sG3fttj/zdu6eVuBFuvr36A+rarjuj71 NWYndGpiXx4PzI6uPK1K+IJa8aMLrDswF449wFs5ZqrDioxAOsACzEs7xMSakmLXJ32HUCh2fbHt i35VojLQ8wiUji7et/G+iXZVtKujiw7x9sYFxMS6CVZ1sKo4ft8Em9aHF6vKXTXumiYoHhw+6Brg tjVwUKKXjdU1ZtdABG1Zm8wCuIAvfHB1wVjiujRuXMBLvUEusGgoCa0AlVZwHS4u5KlWZFqRwwjE xO9cYCRSFgusRKNEyLifZBKMoCBgLgRwIZEwVkWRiJYR0zr1QvSCmedyEcTAk4NA9P2F6y+8gEWD P7m64FFTGFGtRte2Jp45doyxbYwd1h0s+8W0RxcRxvSSFHj50QV+/WIAg5qCYY50CyK8KDQmsdlJ fdL5hTa0DFQJVGkFMBeYDiNJwct7RXzUIIJEoxS5IINvgjSIINP49JWQsSImWClWvtKYJICviANM RwtuAYyYcxew0gXuCOK1NUAB9iRO/njTnbvve+K3/fL7bvkGHUiE+m1ZvTb1uW1fuz/SnFb1cd2c +gaD02lXnxArh+p4rI6b+tiRDkcYsX534dhfusP6UqhJCoiQgyOLCVSG/TpDld51dMS067PNKt+u iu262m3Kzbpc0xFTzCOGXKij/eBCtOPdYcVcWEdwYb2EC+G6DlcVh4xYIyYqrysJ2DHcqf2u8pcl 8Jalu6zdrnE6csFgcBcsorm6oLOyoNUpMFrsfCQCXEiw4lotMw2TEkoEHbEyESgUCjRuKAARgF7m gL/8r1yQMrTpAChZBGXkhDa/FNH+51kgRoEY+RKIfVyzn+qhO3gL34MIYuiTC56/cBANwQwW2P7U pYcRqNgTcsEZO/bUAwaYkAsadBjZJtcBClAFMM2RabxQCmDz6y+28cIv+DVzgWqCaY5Na2zYI82E Cy8q7flHjbmgsfps6I80TTEXVNLhWSEXRoMLGI2EB5W7IJMLMnNBJBcwNX1jhYJOmSACPqxoX6lW Y/+jQWNvCxABOnylWi1wFygR5jOspIMIFxbsofOMZwovGh8n81sXVr8dVuTCdvnWL9/W7Xe40DEX mvZteaEbgAvnFYlALmwbmq8OjFN93MIFABfooOnUcxfYEetNmz4xF07vLmBlTytQq1lG7Nb5fpNv 0Ze7vO+qXV8hIFYdDU40aC2TQxsfamJfs4Boo77BiIXWgLodrtpo3cbrJlpX0boMV5wqpJ1ful0B F3xmR7jGCgsKos29tnBJh8ruamvVGGDdaCvMS41NSdHqbEbC7MRdkIsI+x8uQAGsuIYISomZPyUd amQEhqtaLwcXzKbkOoCrCDwXWKdOiYsLch7JeSAmnpR4cEHFnTSWkRFIiigQQl/kRL6c+HLqS0mI co28WAT+giqDJ/g+QgEuCK4veMHc8RENMwSEx89dnbHrTAhrbKsTV5u4OnNBHzva2NFHljG2sMOB Bl4s7cXG5tfpqRy74NcjCyIwF1gujA1rTNFgvWjaMx2lkgtUE9hpEueqw+AC41HBV/3iQZUekA7k gsxzAcMSq9J0vjRALlAusINWgc6X0JSvLkgiDwJ0BDYdzb6IAv+Hn4T5h/nkw2zykQShlv1hOr91 Yf19t3rdLk+b5Rku7Ijv++aVnR0dse2bBukwuLBqMSOdKRcGFxh8WKL1iPtdTWMSXOjQo+lY6bzO Tn0OL47vUFlgTQFBkA/QKWtxWIN8v86RDpuW2HUwJcP+p7Jcp9sqxVC0qZNtk/RNummJvk3WAFmA j62oR6+7AEasShCviWhdROssXBHBKg9WBQ1OHaKh9Ze1v2y8tmE6ZMQy91l2uF1pt7nVoiwMxdlq KkxQdlNbVWWUiVnlVlPSB5rSrHMdm7xg3/lVoSNBUC4QDZiUygKY9JKeTcAUpYAysUprAomw89mX P/Z8hP8FI0eniGiTM5Q0UNkH5ARZ4GNwQkGeh/4CXiSBkHiLxBFTbxH7QsLuRHDBpTEp9AjPFak4 UHfgdgDMURNPnXraBInAGLvmyDGHBm1bz5QF5sR2CdOi7/8hEWglBUydTGEdYWwYDHOsGwzrWVWe VelZU2AErl8IlfMky8+y9CQJL4r4IgsjWRzjQhGfFOFJFeHCvbS4IwSKBlX5JsMFbHJsaQE372QR LfubIHxbCN9E4ZskMUQC45MIOxacz0iExXx4SXMUPVn4MFuwXGAnTnPxw+T9Nxjrt371uunOYNu9 QQcyoqHzom2F7//XpnkdXKDIeF2zUIARPfGjEQ1zAR/AP0SD5mdK+Xmdkwtr+v5nFuTDA+tbF2j/ F/u+PBAQId8ts21L7Jf5oYML6aFN93W2rTLmQrqFAk22WRL9Mlm16XoZr5fpbh1tVux8dUkirMpk XcXrImYucEK40A0uhGteFmBE67UJ8NvMX+IDpXfh6gKJgE5BT+Vqu6rMKrXqzG4Ku61sGFEXRpkR FYMeSRRY2XNqGpDYNUYjpEYyuFAmRBXLWahkITa8lkdGmZpFojEXYMEA+wB3YREHzIWAdMDmT30h dRapOwvdeeSJSSBCCrgQupidpMiTfBeIBK59yWclwsdoRC5MfWPqmxPfHHsWGLn2i82g6ciaQgT0 BQMusMfTrC/wyBibDIig6xPD4HAXJobJXXjRlBdNJVR1dOFZll9k6VkSRoo4UgSIMFEhxeIZKMKj Ij5gWJLFe6AwF2h8ku64CJLwjb8lCIQEcSS2EtABGx5g899KQdesU3y6/ikcm5HoYcRscevC+m0D HSgdUJ9fN9ABLjQw4q1ncbBsXgmEwuDCGVJswGDEVQrkyGlZn5bVaVmeu+JEZ0r5mevAXSAdMDvl bDriM1JxGKKhIDqsbIe3pAPYc9rsiBUu1D+60F5caNI1gqBB+47pTAndATHBQ6H4nQvRKg+7ggYk uLBqgg60ABYELUwpaHDqCqfNgbss7GXFXKAvf6epqGJDigqbPyMX2oJoCriAmDCrbKAEOXtIx6Uo IQhE0MtE4wowKbSKXFBuXDBvXeAKpAH3Qk5DKQ7Y7/T8RUTpsMDOz0IxcxEN3AUB3QHwRAhdMYAI DhAvOgA6XPLsma8BcoFyATpYE5/OlGjD2xY9rQZoDewLn3LBoWgYXYAOE2DoNxhXXnT1RZdfdGWk cxcUZgePBmWkys8SRJDGKkSQbl14poCQHjmqcq/K94oEoMA3JAWFhUirKD6AiwgUEIw7elRHYP9z HbgdHHbEKlwfQzApfu8C16GjHd5Tg8bFd/TofvmdOkJzXtKkdO6YC+uLCz2Ba3anOa0pFJgLVx3K 11VxpiNWcuGiA7nAOgKjKw5dvieKC9mWQiHfteTCruU65Aeszd9woSfIhZ65sOkSsEU0LOP+b4nw gwvoERiQKqZDEyxxP8c0Fa7JBbfNHCJ3ugrf/NbgQum2lQcj6tJuEAo5W/lFbtXEjQs3RlS5UaVX F7Qy1SqAigEdYljARSAXisTIY40siIbRiFyACAGLBnztA7QGcoH+Vi4LxNQVEmcReQADEo8DkZ47 W2BwwWNABxqWXLgwD/QZYC6QDr41DRzuwsgymQvWxKLHZ3ABQ9GLo5EOqBK2NrK0saUTBkcbEdQd +Lw0MtQXQ3mhVaVJ6caFkaaMNUSDOFavLkgsIxi4VmVU6UeZuJclDjr1A1YJ+1+8Fy8uiBQQNC+J NyA7xMUdRxj4wYjrc+fZ4tPNb/P6t75/W6/Oq9XregURXtfLV77bEQqr7jtGo649Lxkd3uKb/4bV FYgAqkNTHVu4UJ1RwFflmY5YCzpiXXPKUw8K6ssrJsKSUzCgACfdUCPgLuBduthhq8OF9uJCnW2a iwsVPhyt6nSzTDZtsoUIbdz/oEC8zpkIoCAX0J2x+QcXamKZXMh8GqJK+OKtSrjgoFCz3e40hQcX 2solKXLypUkZGQdeXHRICa4De2lUMdCJBEABrYiUIsIdrcR1rKMs5CFE0LNIS0PWrGM5hQshh2VE KCURXGDnqCEmIinGLGRLGJNCF2A04m1aTjw5dOTAlgPugk0wF0gH314ExsznLuiARYNNP+ezsfOp NY8tc3DBNNGdnx31hTGy1bHF0cYmw1BHBOkwNokXU302lWdDJnQFsKRQERNj5gK2/USTx5o01eQJ SXFFHsMa5gK+9r/Rthd4BJAdEoqG9EgWCMyCBYMrwCoDF0GYc3DN+YLiwOoD0wEusB8m/ejC5jtc WK3Oy9Vrt3pbd4MLHZuIuosLnNUfXOAWdNyCYUC6uFCfO1DygKAnDhfoUd0K0IO5A/Z5y/ijC9jY DSalct8BFhMkyB9cwAoX6mTdxKsqY1Wavdsm5EIargiIwF7mcCFZFXFXoEpEyzxe1dGyiLo6urjg tzGgjGAusKOnkiYlEiF3mQvQh4xYJsBtE7dJXdIhcWoGjMDshDbxDlcDLkREHRt1onMX8pCrgSZu FLEBF7JIT0OgFdnFhYgPS5eRKYYFchLLSYSRSYocuKCkLndBjFw2UPlK7Cmho5AO7y6wC+6CJQTG nFzQ312g81Vn4to0BbFSMLFNNguZL7b25CjPjsJdGNnK2FImljohHdSxoTBUpgZc0F4gggkRJIZ8 zQgoAxEmf3ABY9JEQY8WxjLNTi8K+rWMbf+N9QK48CiJT2jcKBrUu8VHCCIs7rHbhfk9LpAXMgsO NkFdXeB8Xcy+LrDe6sDmpdn8x1xY37iw6l5ZRz7zUyMEAcFdYJHR/8GF7uJCi1GqPrXVoa6ODaRo XuEChqWW6YA2vSyOgE6Z2KErvcwPTb6v8z3Wtjxg27fvex4RsIULLQQpMUqxSelvu7BtIUK6rpNV iTvpusI/xJpscuZCcnWBhqVVnq5L6IAPx8s8gRRLqFHGXRV3mJFQnJkOtM9Tb5kBd0nFgYlA564Q wYcRdX5xIQZOAxK7ju2K4FJAhysWdnsVMiLz6kKJKSjUkQiwoGQ6ZOSCwVy45gJWNiwNLkho0NwF rHEgx66a2GrmCjEfkDwpcqXQkYZQsJkOsIDjXKo0ubDw9blvXMYkkz1rYLjWxMGYZGCd2MYUSeFo z+7FBcbYVia2OrE1GDE2ZQYEwUtiZCkvNy5QRiApuDLY/LpM05H+7sJUFafo0bLwIgFxJEsvdNwk Y88zROx/8Mx4ope4uXi4uIDB6VFGcCBHFtj5X2YTgItrNHAXrjp84fPSnNYbFzq40H/v1m9woVue 2yXV5GX3G3Y+tjpqwpIZsepQH1ATzj3j1oUl+1iLf1Wf2+pILsALKhqvcKEpjg1EyI9tfmgLwC3Y 00tmQU0cmvKIPY+d39BO3jRcBA7X4caF5vcu9OgLNTY2DLpxAaNRGq0S8P/nQoUpK1pGFA1dSiK0 MQM65NwFl05cc78tgosL7jLmIjAXIrsOgYWtXoRWGV2MyJwhI7DVA6Ng4DNNco0G6MCOjxKTuWBm kZnFOimQwAL+nJpOXIfTpIgeK8QsHUJ60KanwFUz9AX6eSoR2hKBULAv0WBLwcUFtOnAEwObXCDM eWBOfZO7MHEtiDDznBmuIQJj6lgjV3vx1BdXHRHa2NUmjjolNBhxcUHG4MTs0Ma2+mKzaBjAtfJk KKM/uDDRJO7CTBEm5MKC60AbninAg+DpekcUnoQFiwZyAdGAIYqnxn/lwo8BMftyPWgVUK7f/38w +te2P7fr83KNXKBoWHZvyyUHRry23Rkr4BNUv4QCp9Xy1C1PyyU0gTskQtOeaqzY/PUJM1JdE811 drp2agQHwqKEF/u6ONTloS72Zc7ARXmoSiTFtgYFFNg1oGQUfZVvK+rOm4qT9lXG2VwpKU02w8ei PgtXMYjWcCGLe6RDmqwyuJCuygQDUptxkjZPmixepuES01EcLZNwMCLxL4OQ12Z03NokPiaiKvaq yGsJtwkZkcdw68gqAqsMnDp2G4xPWCEFwiIyS9coHKsKjNwxa1QD38BahHqOO6FZ4h9GJEIaGUmo J5FKv1yKVex/fPNnvoqxJ6PJR459OfKVKMCWVnAR2FpoqZGtJK4SO2psD0S2yu6r0RAQ3AX+mz2B uTBnuTD39IVvzeGCS0+fp44xc40ZksI12B3UZIU2tgsXtCEUHBX3Zy7Qp45OYxIrDhNLn1Ch1igU TPHJFLC+mNKIkEeGPNLlEUYj5sJYE7kLY1WYqgJcmA6IE1l8kSQwkqQxLugMlouwgAvPsvAkQQc6 eoIOD+L8QZg9SvNHvBRn98L0QZjeL6aP7JpYTL4J0zuwmICvi+mXxZS8EOafp+P3vvDuAuN7t/rO awK5ADVWr5xu/X1NOpzXEKE9tuTCCaYQy3OzPNX8wRxcqAcXahqcfqfDecnCoiURKEGgA1lQvLtQ FTuIUGNe4iJUDO5CvqvzHVvJC7bnt5im2FsD5FG+rnJ66JySC+s4ggU9uZCs03SdpV3+owhZOriQ RE0UtnHc0VkTDwgOdvhFhMEFH7S4if0fMiJeNHBhlwGAAl77gwtW6ZqFY9fkgs1cgBFGibIccMw8 sAYXAj0J1DQGGnNBy3ygkguugjoQkQVy4KnkgqOFjsZdSBztSsxcQDQEljyAdGAu+L93AfVh4ZlQ ABt7YuvY4QMwgn3zY0aCCIMLCAI2HeHDU5qgjIsLOp2ymjodIjEXnpkLEGEMDIJc0JUxIBFQGaQp eSFMlMX0HcxL0liRR7IMESbMCJYUAlx4pod0gwtP8uJRnMMC7gLuYP9DBL4+0X3y4mExuRegw+Qb XJhPvs5JB54aty5sX5e/c+GqAwJi9db+3oVXhMLydy5wHS4utEiEiwsN14HdYcCUU8sUwLYvq2M1 7P8bF7DbmQtDKFRbouzrYouP1RwmxYWrCGtOma+LnM5R0RQi5kJCoXBxIW5TDrMgy5Z5tiygQ7yM oiYM2zCmfpGRC+3ly59cgAUxI/XrmHgXIeShwF1wK8KDC03i1fAocTAvVXDEswrXgQuZg5nKyD2r Do3CJxFSz0hdrFYeWllopb6R+FoaaWmgZR7qgJ65gHRARpAI7y6ooatDFtRnBg8FLSY7NBYNsm+K ngEk35JDRwxd9otuWwjNhY/K8HsXAPu216auPqd00CgaXH1Mz6Z1GpBsjfeCKY1DdGo0HCLp2pgd q9IzBVN+sZAIwogQBxd0cgEiTDAp6fRyosMF8eLCnEEuzGhqkicKXBAnksimJuEZQcBgLswJcmHG XJgyF+Z/2wVKB7gw/rYY383HX8Fi0OHLfHp1YffWbV6Xm3NLwxK8uNGBRHhrCKYDFQq0hvPFBdKh 7W50QGWouQtEw0TA7NQ0R2IIC3KhYQqUzAUONwI6FCDflRQNNy7Um6ba4OUwTeWb4krW5xiNLi6U F4p8heIMEYgbFxLoEDdx3CRJm6ZtChHyDi5kGdkRRW0I4i6O0bi75OoCdjv/2ocLQZsEWJvkNhQG F7D/69+RIEScMnLK0C59q/AwUJmZCxfM3EO/MMkFLgJzIfPtPLAz36IWEOlZoGeelljQR89sPcUX PmYeVyE8OfS0OIAaeoILR4msK1yEiwsQQRc9TfJNmXVqKgshcyEwBN9ceAa5gDbtmQvXmGNA4i6Q DtqYT0T8dxqePnboZ0u8FDB0BMFYV8c6c4GtBCLAQiIIY+LdBdr/hgyuLkx0pIMw1RYTdT5RAC6E Cao0tWmIwNv04ioC5iK48CzNCRkj04wUwM4XZ89/ywWSBcOSiGgYXCAGF0iHGxeW29cW0LDEdWAu EG/t+q1mNOu3JVo2dQrUByQCc6FjLqzOA9Sd6Ql1S+AlE2GJ9QjqhkFqnCBFVZELRXUsLjqUVxdY RrAxaVdTKGzIBVBs8mybERuQp5uM6LPBBZYFBXdhVeYddyHEGvdJskmTiwuwIGmSdHAhIxdwTXZE yTKKGejRIVXp90GIXwQt7sOFKKCAiP4A3/8RUQ24ZQiYC4FV+GgWcMHlLlQhViNzzQHPTD0785zc dxAWWQgRYIGWmAZESEw9seCCniAFXJWOTMkFSEHXmJEikwgJjXQg1NCUA0P0ry7YJAI9gzOFQMeY JAaDC0BkOoA5G42oGg8uKBM6dNXH9JJigk1H2tRimNrUUCf6LRqbiBYTYAoTU5yaUODigi5zHXBn ADrowkRbjFViQlCDmLJTVtamb0VYPKvsIfWNC7Qybi24deFBGAOuAwPFgRrEN3F+68Lurf2jDuxk aXnjQsvvcBe4BYMLpAPdb1/b+m1JnMkFqtXMhSUUuEBqoGVzHY7FhasOVxeqdxf6ql5XTV+X26LY 5fn2nWxLRgwu9IMLxaosV2XVFQmmI3IhjPs42SQJjGAupB2lQMZFYGRNmtZxuoxTJAIsaAICF13M dAi92g/a0G+CAPfbkFyAF2RE5NchI2Jhgdkp8srQryKAiwtkhI1OnfkYn7gLVu45FxdwbRc+VjN1 baRG7rmFb2aYnRwjJQvMzNITg+uABGE6kAsqd4Fiwr6KoP7oAu5IgSEFuhTgwiQLOIEuXlwQaY4y BxcQDTQp0THRjH68h1BQaHWVsSNPHHnmqnNXWzjq3FbmljIz1RnT4QpeTgxxYsynxGJqijNTmhqA TpDo4EgTaP9fXTDEsT4fa/OxOmPMqUozHcaK8IL9L2PbEy/K/JmYDi4wCwYjONKwPggTvj6KU0IY gUEHMoLa9Lffu9ByftCBXFj15EJ10eHiwitLgdPvWAK4UL21FVaqz1VzrJbgVDMXKg69PCMmqgYD 0iGvjvkfdSgxBVFBrm5daPu62jFZdu/kgIzAisGpLPoSLlSrsiaqtEciBHEfJn2cbpKUu7BKsxU6 QpIt07xNcqzQoUmzGkkRpsswWYZXF6IOIgTBEpvfD9lKF+TCYMRFBHKB6zC4wLhcRH4Ze0Vk55h8 PBf7P3FhhIU9X4UW7XnHyl2n9O0CoWA7Aw4ywqCdbwIrs4xEN1PTTHHH0VEHfnSBnReRBerFBT0m NNyMDGgih8S7C3ShMR2w+XUSgbvgGgtHBzOIgD1PP1hSwcSTJ640dsSJI81dRfBUwVEWtrSw5bkl L2wYIV2QF5Y6M4TpxYWZKc5xHy7oQ1OmL3/mwlgXR7owGlyYDS5o85m2mGkCQECMoIA8Y0xfYIEy fVImzzImoil4EifPtP8nhDAhayS8NXsUJnx9EvGZwYUbHViVZodL7y681n/UYfO928CF75iLqosO DamB4sDGIXTtWws4zXlZvrbliY6GsJ/rfdkeylsRbrm4kP0tHeACvurLcstcWJMLy74hF/Z5uYcs LD6uRvR5vs6RC8WmLNdlvS4b5Mi6/psupBABdEnWEoMOLZG0AUSADlEbEF0UrzAI+QECgr28usBl uQ2FCzElwsUFEJRRUMZBmfhFbKMOwIIiuLrg1u8u2NABzTqHBZadGBbmIuq/hhHrZqLbuWEmGowA emzr1AVcJXRvc+GaBZyLC4Ya6mqM8QnF2aSdH2C1xJC5gNnJ5y4YsAChILoG12HOXJj5yAV57EkT X5560tQVp4449yTBkwVIYQmCLcIIAUbQhufgpTI3hZkxJ0yB35xSLxD5CSrNQoMLixGAC8Z8os8m 2myiYp1PoYNKVRr1YaTMBxHk6ejiwgh3pCl4Ficv2PwwgrkwUihEALfgcTHGBePl4Z3RtyEdxl/m N+dI37stidAMRrwS21MDNufmEgp1/9Zs3prta7M91/25Wp/K9alanRoGSdHReRGqcQmaY9me2J4/ VMtDxaejmtkBBfBuc8zrwYJLNOwLvFuBXUErNvyWqLYVp9zUBb78aUxCBORQAMUBoYASka/TfE07 nHToqTUXqyJf5lkX56srSbFOsOImSPm6jPKbNajDCLW6TeJLa2AnS37cBAlAra78sPIjfKyOwgpq XEOBZwTjx9HIY6EQVIlfxVbrmZVrlZiIHOx8uIBqYKWuGdlY7dyDEawjoykDW0k8QEdJiadnvh5j NEJSuGbiGNjqoWWEjhH7euRpoacEjkJPEywtNrVYk2OFo0SaGhKKr8qeovqqHqhGqCi+JHsybkq+ KnqqyLxYePqM/R6DTpBc7crCRYmWJq4w86SZJy88ee7IcxsuSAtLFixVsDWwMOW5IYKFKWH/zwyM Ru9MDAGMNeFFXRAaLBDGCAXG2JhNjMlYn0y0yUSdTJTpVJnxk6WJMhtJ07E0ncrThTJbKNO5PJmI o5fFy7MwRjTAFJ4L5IU8G8n48GQkjl8QBAtkwXtNuKfW8HK/eP42By/389G3Wxd+W26xyc8V2L3C iObw1uxf2/25ZS4069ca9CRCjRDBxzbnqj+V/aBD3Z0aDvZ/c8rbM0Qou3PVndiMBB1YNDQXF9pj gY/VPyQC7X+SZVfUu3xgm9VbXBSIgwrzEmICCvRZif3fp9U2KzfDWhBwAdsbux1dOCtXRdGBpFgN lOsUFMwFGoTaIOsiXECTtIuw4p9HTYjKHCMOaFIK0iViAiK4IGm8BFJABOZC3ETQIai9oPHClsIi qBkUHIMdXhV4JaPAivocWI1r1i50sEvXLtjmhw6pi7CAFMwF0sHMHSO39dzWMg/oBT1WRolGHKBN mKljxpYRmdABEpkxvPD00NWQESGNSVpiaImm3righaoGHQJN8VQNLviKEUiqJyqerAaK7MuSJ4sw IqCRiX6V4WmcBQOlWyQjpKknzH1pfnFh4SAaFMFSoMOCVlzLsADgAjPSRF9MaVIa4C4gBWDBizYH uGYusGjQxyN9NNbH5II2naoz5MJMmWNAQgRMZFIDdxbafA4XpPFUGo0EuPDyIk9ocJIxLyEgiJE0 GYtjzrM4hiP34uRu/gK+LZ7viSdi/vIwhyyTqwv73zAjQYSSuUC7nblAIAX+CxdK0oGlA3Nh0GF5 rtpzvnwtl+eiO5cdjDiCqmMBQYlAFHBhecKa1VcXDnl9QC5ABOz/tNlloN6kpMMurwhkRF5usrJP y21W9Em1TbFChHITV+yT9OVPQZDkXUourPJyhf2f3FKQLxFt8jZIuzBtg5wb0UUZU4As6PAW8EDS OnFjx42TMB3iyotAE8SwBllQ22HjRK0XNm5QO0HtsgvPr1y/8sgUuva8wgVu4Zi1Y1aEXTlO6bJo cGzCHcCkVNAzCDOzkQ5aagMjd/TUwh10BzO1TayxYWB2Ck0zsqyY6+DokcNGI4SCrsUqXOBocCFQ tUAjWChonqz7IlyACEDyJNGVkA5SoImBztKBWeCqIkNyNYmi4eoCDUgL7oI97H8eB7gWbUVkN//o AmdM+39B7YBYXHl3QZ9M9elUw86fzZTZGKGgzFhMcB1m7y4gGoA8eeYuQAr5b7iAsHiUpkgBlgWw 4OGBeHxYPCM1nm76wv63avcGEcrd6+DCHuuZoHGIudC/1htYwKEEgQvlNRq6iw7Mgmz1ChHyDjqc CuYCsYQF+wK0+2J5KJZHuIBoGESo9lm9zxqwS+pt0uzSdpc2m6S5eAGw+UG54RbE1TYp+ggilJuw hBqIhlWErc42PBTIC6RDP+x/zuDCKsqWAcjJBZ+v/A4sSFbAS0HnpksnXVpJayWNnTSQwuEZETc+ tQno0NhhfaFxCBhR2V5h+aUdVLDD8SvHL4j/j6/3bG7c2Np2//+n9322x56kUU7MCTkSOTGTAJhJ STMe+9nnR5x7NUBJ473Pqbqqq9Gk/WlduNfiVKm9sd2fEiQCc8EZO9bQtocWxmR7gDYJs4CDkcGG NQO0+qYxIMxh34hpaqbZOTEhghWb/cjoh4YVmRZ0QEBQv8REiEwq/kglIEKsUSgUIoQGVsOHC5Lp idABH6kIBVeCC4qPgNAUX5fZr68IAhLB0WRHVRxNxd6DBSLvSbwria5COIr0311QRGqQ3ur/106J fmg9uUAUJ22jSy6YpQuc1uNUoqsRndIFnHTJBeyVdkeBCJ2W2mlqXUAi4BHRIHXQILVFBAdKHXTo HxeEFkuEWk2sgrpYq4sNDBEYKF5d2P+Y7r9P9t+xTncvhQvTLTLiiZU9LGBN0ZrtN89FghDr0oXX aJjlz2iNhtnzMD0Os+MoPwDoMMoQBGiNmAilC8SITQ0QYTDbDeYFW4gQL7YJmG8iYhsXzDbRdBNT CmBdhdNNNFkF03U4XQeTZTBZQYRouoxnaJ+WyRTtUIrijydkQVQwKaWg/T9cQFLQmvsJQS4Mc7hg w4WCZG4VAQEXIvRFpQ4o+L4/MbFGCyciF2x/0vfGJlZ/YsELAC/8ieNNYEFB4YJjj+1iFrZhASbl hH4scsa2PbJQ86h/Y2AYiU5EWn/AZmcQaXZiWHEJSRGZ8MIMDSM00QuxjkjRI6BqoUYEaJDICIQC XDDeXFALFxRXVsmFkw6eprhAVR2gaMBVJVjgCYInCo4IdwjmggwsKn4gWbJsK5IlCSYv9EWhLzHE d0AHAZQ/MRlcCQbnfq/b74IeXNC7Pa2LsgddtdvRuh21SyKQIOU5p7R6aqujtVtqu6F2QEvrtGCH 3EFYIDLQQYGG0IIOVfr5qE3jswQFqg1yAdTrQqPOt99cgAUvsODE8/TkAvFa+UVwwAXWIE1O0TBm LtDUkDMX0qdB9jxIj0l2GGT7QX4YLg+j5WGc7ycpiTBKd6OsdGE83w+n+8F0l8x2yZyxAKULceHC YgsdiNkmhA4MNEXYh1NyIZjBhVVAdqzC2Rr/SUJGwII0nGTh+B0T0oEgF3CCjDgZ8epCnHkx645+ dcFOFn2GHS/Y+x9GLHwU/zsXcOL+0wXi1QXHnRUW2IBEGFmFC9agD+xB3xla7th2cE7vf8OEC7FO RJo1MK03F3TowIzQ+1GJGekG3vyhqgdoflDnQNFCtXTBp0mhGBYMT+z7oklfUxRPhgtscKCMwEb3 NA0jtquSAo4MDFcBiicJpQuCRFEiyTh0iKL+GaJsYxWYC4JoIynggvAOkTeF4vclUgBzAUBHhMEZ IlhdjM9dvdPVOj2tw6kAFrQ7Gk4gSI+jxqnHKR3QU1pd5kJDbdeVFlbmQqsptVonEU4utOBCXWo1 pGaDRKgQEja1Ol+v881XFw7fZ1Bg+zxhkAj7dzr8FxeeJ2v2zc2bC5OTC+P0KcmekvQQp4ck3Sf5 frA6uZDBgt0wYy4UkAu7NxcWjHSXZFjJhXC+DRe7cF6wDQojaIUCUIOJMFv7kGKGgFgGhQ6zPJov 4+lJgREKnlHoAFOwGWYBSwfKBaxFjzTIg3cuYHVIh8wZZq8uWNGibIoiGqudaGqBeGYX7VM0w4kd lhZYwfjExAneuWCPLbz831xgOAx3dHIhMc0BdUcAdQ5TcEj1Dy9izY51gM0JpkOIN7/CXBCBHsqo 9iIRSAQMzp5q+ApCwQokM8TXZFQ4XNAD1USa+IpGLqikA7kg6wzDkU1HVpkLoieKzAUZbRW5gCAg YEGBbGMVxD6PFY9in3nxDt7kCnr0exEre73LGWUodM12V291tVZPa3Nah9fwndIF0gEiIC9KF5pw oa3BglZNaWJtISOUJrlwEqEYrhtSu0YTdJOKX3isi48Ngoyo86DxiwtU+RPGdPdELuyfZrvCheP4 FciyIRHGm+fxDvun8erI6pyYEhicn+LsKWYuxHAB0bBEs7SHBeN8N8zJBaYDAwPCP1wgEfZY4xRZ sA7mm2DxqsPWpzaJEiGi4qd9MN0gGnwYMYcLuT9dhrMVuTDL4UI0pvoP3rlQ6jCCAqk3ziCCP8kR Df6YgZE5zhANSAT3NC/YQxiR2QOaGvpFp1S6sPBiVvnEzMGeuUA6IAtKTi74I5uYOd4UoQAL+uTC EE1Rv0//jkZAgUIHB59SCphmQv+4QC7EuoMvIAtQ/6FqhYodqTYCImYwO/qRZqIFChQDoeALWiAw F2QdQRBo/+GC2IcLProjEdBhSDO15spYdVfVHUV3JGAwTJu+Kbi86OJtz8uOSJ2VIyuOJFvEqwtQ QCYLGH2SQjC5EoPgjV7Bf7jQObmAIm+i/+G1jqCzmGBJQUao7Z4KCzqsd2p21GZbbTaURl1pNJRm S222lMarCy2hWbjQlNoNqUMdESYF4bEmPtYlZoRQqfGg/urC8WV6QBAcS2DB4Xmxf5qXOhyGm30C dsfB4fto/wKGu6fB7mm4PQ62h8FmP1ij4Pej5R4xMVg9haunKD9G2SHODtQp5cdRukf94ztwYZBt k2wT59t4SS9/DMUjmqm3o8WWtU/Ml3Qdzlf+fBWAdBOl1DURs3VSdPtsLsA4EFJ55wH2CAKmAFkw y5NpOpgsknFZ//9klLpgnHoTuPAOUqC0wCYWpMBwYQ3mRDIjKAKo8l3GyYVpeZjM6dBLjHCCj1ys IBjb/tDCIeZob9x3x3jD694EHZFuDTEOa1idkYFHJ9Gcge4NDRddEJU33vY0HUABDx0UjMBjoNi+ 7ASKE6p4pBO4EKr9QLECmQglw+PMQLAimXkhw5F+oJu+Zvpq31csX7ID0fRFzS3BNI0hwoAUBY5w Quy7kumIpi0qFic7gJdtXnEE1REVW1TpXFAtUYMsKH6Tk/qcbOE7EIEXjR6dnBCMHk6w8nqXrR3B RNvT4Q165Mw21+9yJxc4tSnoHVHv8lqL0ygp0A61EQRKGy4IcEFrdpRGR22g22lDAbkGF9o4lCEC WdDgqhCncAHrI9GsiPWqVKtK1apYxRxd5evV9z1S6cKkgLlAIjBwPkLBbw8JKp8seB6A7TGBDljp HDochuvDmH5WenrvQqEDubDE1LAfli5sYnKB6ZBu2c9EG0DDMnzJt5BlkG/Il/TEYh3P1xHrf+Lp Kpmi8tn3Z3RIzBAH+SvwIoEOs3wwzfz/yih1GIUObzAXvGGxIRHsIda5PZgx5k4yA8W/NSAUgBtN nYK42EzscGwzBexgZPmDPsCGjJjYGJ/dkQmcoUkujEyLdIALug0GeMmr0AEiOOyFDxdoOogNVLub mE5UuuAw7EC1QxKBuYBqVyFC35esEHXOwwW8+TEgG77c/w8XLF8wkR3vXNDfuWC+04HtRdORVFhQ usAp0MEWmAUFcIGkgAgnF/jCBdHkRKZAucHa7wlmVzQRDXChy+ltbLD2jHbPbPWMFqejQWpyWlPU 2/I7FwodqHdS4UKnpza6cq2rNlpyrY1VqXcgApCaLaHRFpqvLhTTdIWmBszOjZpUr9MEXfyy2qj9 4sKMuTAuQP2THS9FpzTZH4e7wwCQC8/kwvZpsPnVhe0RGTEGa+TCMQLLA1FEQ34ckgukwyDfJWTB JiK2ETqi+en3Irz8i0+zdZitYcog3STpOgbkwipCClDx078mICCgA6IB8UHMcp8RgHkeLZYxgBET lHrqTjPvPRMKhcIFZ5w6kwy4BUOQEoOFA4Zg7pALU8YMe3cw94YLn7ngJtM3YgQBLEDZD/vlyDCE CCYIR/2Q9Uvu0ATO0PAmmJGhA/YqsAeqnQDFjhXmgla4wH4p0ou+yI0NuEBrqBXYgcZ0oGYJyvRD jVyg/kewQt4KBTOgH4vMQClcIHzN8hV8p+/xpidAE4NZYDL6SBBsfskF4fQoqg6nuBytpQu8YvGq xWsQoTSClyECuUBACtHoUv3rXQIZwWICFgh03uX1dumCfnIBiaA34QI+ggiS1pK0tsC8IBdojmgX M7Wgtjml3pWrXSgg16BAGxvWNXV/daEhYIJoMxeaVbHOfk2t1AWiRkCH5vse6fhMNb9HtYOn4eFl fHwZH55HB+whAhqkA4o/KXJh+zzYPCcUENQpDYpOiTFaH5LVIVodChdiRrJENNAQnSwJtEaoc7gQ AswF8x2bkbHHIX0aZdivAOo5BOk6KqIBoPjZgEzMCPRR/mwJPOYCVm+e47+KFjmBsp+kzjRz34MT dmi/kTsEZuSUweKARFi4w7k9ggtjazCxhlN7OIMdOPSQDgiC/y8XYkzTk340NgvCkRkMDZ/98uMM MP/qPmuQTi4odiIzyAWXueAiIGLYQdMxlXqguNQg6V5suCHQmQvqyQXVYtiBhCK3A94OBTsS+hgK EAGBSi74DE+1PPKl73KmyxUpoDuC5vAo+H4pAn+C6eAKOtuodk9xeqrTU+yeanOqDRE45oKg9jlG 7+RCDyh4NDpAQlXjDc82tJpdan4MzMVtGIE9o80ZbU6nshf0lmQwEeiikqaoNXimQw95odPvSzxc UFq8XAUwglDLfgnNUldqdIVGT2o2uUpXadcFmiBATWzUxOIH1QpN0ALNC3Wh2hTeZuenl8nxebR/ ggVJweF5ePw+OrwMD0+Dwz7egUO8Oyb7okF6GW5fBruiX4IOcGE/2O6SzQ6DQ7w6hKt9uCROOuzj fI86j5aMFSv45SbI1166C9M9/UC0wCMOf3EhWCwJzA7QYcFA2U+XPnPBn628OWO2dNnGny8hAvAX 0CEL5mkwSW2AIidyl1YSoVRgkloAm1nuAOxHBCywxgUkggUG4z4YljoQCaaGqZWQDicwL0zsaGxF 434yNeOJAZIpVj0cqn4ie7GMl7wzgBG6NzbdgeaN9dKFgQycBCjegETwGCwgqNTtQHZjzY00H4MD 0gFjAhTABF0QlTiBaHkcXHBCwQnph1OUNzwqLGAocMFCdrhc3+WLOCgGBFiA3olpItBHTk+3GQ5P uCK5YHcUuwvggmbDAk5nKyxQzS6tFqeQCF2g9LuK0VHM7psF1PO0JYMqH699ND8wAjrADrbpcNQO ofibMnTQmpJSB8yFBqc10DixH5faaJBEuSlIFUKu8aDol5RGW65xUp2TGpxcuNCq8yj+Bv2IJEGK WlOsNMXHpvAAWkKlJdZaQv2dC6PjcyFCvH+KwOE5OX4fEPBiH4P9Id5TX5Rsn5INy4UNNUtJ2Sbt E3JhE2920eYQrvdB4cLqADXi5cmCfBcCbNb4CPuNl+38dO8vtn668/N9SL7gC9sApmRrP33HYh3M Wf0jC9ivRjjxSlZOumHfWWFPOixA5s3RIC1sAAVmuVtALiwKFyBCH2Azo1CAGv1xaoJJSX8yLxmO DWJiEtP+cGaCwdRM3ugPaLLul48zIxprACLEEy0cqcFAhg5uYrgDRIPhjgwXuTDS3JHqjhR3qDhw Ad8ZwgXVjRTgxYqXIA5kN5Lxwic1IsWPNC/ChvZOKDuhRMSSHQHR9nnL6zkh70Skg0UuoMIxIGim p5quYroQQbJ9KMNTwTMLUMzAsHEimA5WjlKDXOhoVldH2Tu85gpkgdVWrI5q4bxH/1W/p0MHbCAC c0EjF7pyvyP1O7KJUGgrZoeMYMjMBRyKeotAzRtt+prZQRCIBtmBjkik6z2bdGmPUiO0BnTg1DpG gx5manxHacMFUaK/ECYiHaQqX/RLMvVLPFwQ67zcbMMF+c2FJspeRPE/tsiCe9DmH9pCpc3X3lz4 nhxf4sNLvH+O9s8hwP6IQ/AcPx3jI5GQC8d4c4zWTzENBdQLxZtD/OrCdhNvd3SCOl/tgvU/XQiz bQDybcA+pTXbIRq8bO/lez/f+dnWy7c+zkmTtZuu3aLa0w2Bl/906UKHxaYQwV3QubtY2icp3PkS j166JB3gwhQRkNJrH+cFM4qG/+pC8aid0CepMVkw5sZkSoymOhjP9PEcGOOFMZzqg8kbw2l5gvqP RjLAhvZjNRxKwVD2R30QjPv0Y9EYOqj+mPBGEEECzIWiwkkBLxHdWHAjwAexFESSj8Pio0hyIxEf OSDm7Qh9EQ8XbB8ucAAf2cE7F1xFtyXDlvouucCsQeVLui2g2iECLCARHIjQM50uMKADcHnN4Whw tjpwgYnQ0a0u6WB2Cx3eu6CSC22pTzWP1zsUUItPERDvXUAvhJov2iGDhgIBRY5ztSEgC5S6Qn+Q vqG8uYDXfo1TGoLaEpUWXJDIhUesvFiBDj2p0pOqbXgh1jihVrjQYy40KRRKF9oiRLgraPP3Hf6x zVVfXXj+Hj29IAuQCGEB9rCDgAtPxAGRcUSbFJUukAgh1s0h2u5jYhdvt9EWuUDvfNS5v4YR1BEV fVHhgo/SzTYuPqUv7MmFxc4lHQq2xHLrQ4Rs6YAFwGsfjxuq9unSma3cIgsI+IJ1adF+iYJ35rmz yN2SDJVvE7k9p/8PXHDKE7iABmnRB9i8e1QnqUrrQpsu9FIEMDOmDGaBPsK60Mcpyl5LxhrWE4UU KH6lcCGZaoOZXrowYC4MzRDDwkDzyQU5mKj+RCEXEglABBedUijaeOej2hPejTnSISQXfLgQyh4y IhRB4YIboew5J+rZYc8pXAg4pgMGB4ggsgFBNR1Zt0XDRgsk2p5ge3CBP4VCz7A50+6ZdrcPnI5p d0gHpAPmaw/TBLojtD0dzW7r5EKxorzbar+jUYPUYZAaODm50MK7XdHbmtEpwF4hHUgEqnlyoSky BHpEdwQX8EqvilBApat7ZKUqaXUcckqVY9OBoDRFpSnRH0yqSnABIgiPcKErVroSSr3K8ZVXFzBH ly7Qr6yNNlwQHtsCFLjrCPdd4aErwoXKmwtP0fMxBIiA56cEPB0ZT8MjLHj2Ds/u4dnfP/n7o89M gRfR9hCW7LFCAVp3h2C3c7d7b7PzN6QDFTx8WZXREKz2RSLABW9FoeAWLjAdKBcgC/mycvNlgZcv /XwZFGTLfrYyspUJ0qWVLm2Gs8iAO08ddhttKQKxVBcroDH0+dJgmFT8C4v1P+ZsYc9Te76wpjNz ulCnzAVsZnTDuTmbn5jpk5k+mmlgONeHC22wUKOhGo+0IhGwwosTejzS0URFA204s7DGIyNM1HAg hwMpHIrBkA9GfDAWfUL2oUmMgUJxQ8mNFScWMT5YA9FKRCsW6TEUMG7gU4SC54uBxwe+EAYE3VUY 8CFkCUTHkx1f8gIR7pAOAQc10DXhVY8XvuXyltOz3Z7jdV237fgdy+sWl1D13Q6+aXtd2+2QCy5y oWM4HR3Fb7cNqGF39X5bM5t0x4jd1hiICanfks2WarY0s2WYdFEbNjgRoYlRXk5FF5LoTU1vMaBD UypuO0epY6/jtY+hoC6oNdS8SGsVCMojENUKu2nnga5fkB9lpUL3k8iEQBFAoSAIj6JUFdhfmhTF aq97Lwg1UWr2hHqHr/ekVldqN/hGiyLgsc0/tri7DhIBLoj3Pemhy9+9cyF8OgRPe//pUOgQMx3i 4yE+HILDk8s4uXAMiUO4o8qPaKZmK4ygzd6HCztywdvsyYUNtUPlNL0qLShFWFMQOIutAyPSrVuK sEYKONnKgQjLFXHSwc9yP1tahQjZChv75IJNtzFnDpV0ajMvHPaImNDmS3W+1BjvXbCmi2IWMKdz a55ary6wUFCmC2U212dzg5gR06lGt+tMVeYCMZir71ojg2UE1FAYGjQZTIxwoA5nfbiQjGkPF6Kh FA3FcCQEY8EfEd5IQsPDYNWOGQEZMVLsoWQnBD3SXYWyH0oE3brDhz4flCJw7JJzrLzjSY4nuj5y hEVD0Ht1wXI4m1zgbKdHd9g6LYfdZPjeBefVBfsUDcXGIvR+S+/DhaZmtYBqtRSrJdOmrfc7Rp/+ tPavLjTpukKd7mfTiCbdSYWkoAs8T7xzoRRBqRCkAzaP4unSQsbp1hG5KrHBmWe3kfD8A11LIlSK PzbMc4+CADVqXb7W4ZEXzQ79G3SjxT20uYeO8NgRHnrSI3ToCpDitsPdvrlwDJ4O3tPepfUYkBpH jAnR8RAedt5+b+/3zvHoHY8+I8D5fh/sUPw7bCKs2G93AW123m7r7BENlA7+azqsXsE4sC1FWO/c VxewASQCOqKlnS3t5cphUDpkIC+wWDT0CxeYDkgHa5ET87SPqmZeEKRGrpILMIIoXDCZC2iNSATm gjnDf4hm6eQCEwFoDB2JQBc407WcKhiTDsRgqgzG6oCuboYjMKLslJAL8QiRoUATFP9gZkZDLZkY 8UAtbuOMR0I0EUMkAlwYCt5AoG4nFGkWCERKh1hyx4ozkr0hiXByASKIxJsLgO5e8xiuzzmu4NCN nZwX9ly0TEGv1OHkgu1wDlxw2nDB9donEQiEwj9cQL9kMugStn67EIG5QKgMGSscYRaw2wsREE3m Qgu5oOn1E6QDu66wThd46s0CWUebhICoSWqJKFcIpSKpleL2TnJBfqRL20oRKhJ1RxWpmJ2p+O+L vysv0eOjwMMFUOnyj12+0hVqXaHeFRodiMA9cGilqKfCp/dd/rbN3YB3LnjPB5eBjf9M1R48sZon F3Y2OEKTg89AggSHnb9H8W9fVyjg7rYkwm6L7zs7sPe2e3ezc9co/o3HLCAR1hucFDjLrZPv3ezk QkaJYP/qgpOvaHDI8gLmwtLKV3a+tnMYsTQL0txcZMYi6y8yK83tRUrMM/1XEZgLuTlNCYwD04Ux S9EmkQszGg1YKMyJ2Vydw4VZ6cIMIowZ2ECHiTKcyMOxWDCayqOZQpHBrnGGDswFLRpISIdoAGv0 eKBAhGQowIV48qbDP1zAikdnKDtDjA9Qg0DP42MDIwC6I+qIOMqCgIkQEC5e7C7nenQ5oRd0gRvQ pZ10Y6HbIwuYC67T85yOZ7ecdyJYaJmYCw4Cgi7t7FjWL7BrCVuGDRcaWp9QAaSwWxococucm+XF tmYT0aD0MTXXVb1WoBmlFKpW3u2slNQVHY+woCphNEAckAuPxdWdkvJAK/bSK5Xy7gW6fqFSKEAu iA+iUNxhRZvirwhjjuCESk+odgVmBPcAOOGxh49EaHLXpVD4hwsOeHlyn49kxNPBpco/+qx38o8Q YWcXmjztPWqldt5x6+2hQAn23m7j7kkHe7e14A4ZsScjNjsHNY/6Jx02TISNw7DBcmvnOyffuQS8 WDuswonlidKFEuuNUgSjJNfTTF8Q/RQx8eaC/irCLGdkxjQl4MKscGFuzmko0OHC9L0LC7jAmKjz iTodM7CZQgplPJIHY6FgOBFHM3k4hR0SMVWTER7VKBGRGnEiJWicKBSEeMgnIz4Z8/FUhA40MoxE vPPZz0SyX7ogsFEaWcB7EedFPN29GQleiOLnUPwB20AEP3yl66Hs3Z7rwYKOF7SB66PCO4C5gNaI d8kFzrPZZc7Ou1AgOhABh45Dl5CQAv02oPt5AHPBtBpwQe/XNaJRREPhgkk33Db67M5zdEcy0kGv ynoFKHpVNUopVA1DMagraq1A0+hQoes6MQvQJec0F1AK3AO62xkKiAzakAsKXelWY3cvwIUHnrsj C4T7AokvblpgYVE2UY8cZQSBTY+74zAscLdd/uY/XXg5Ot+fnEKK54NDGYGwOAYvYO+/7L3vB1qf tu7TltYjrf5xCy982pMd7nHnHLb2YWuB3caCDlsG6UAuAOe9CBtywcqhAwsIeLHECXvb50tiuSKY Gr+kA177aY6CN9Jcz5Z6vtTylZblWpoVmIULGAHmufE2IzALChEm9BsRMUt10mGuzec6mKFBmp9c mCEX1PlMm08hgvIOlVomBMQIb/suozeccOOZBB1GUwkMJkoypDVKBBgBC04u8NGgFw+5eMRFEz4c CwFrk8LknQv0gyrvJBiZeT/iqM4jjrnA+1AgJBf8oMiCLvu0C7yw4wZU9q7X8UmEluc3Ha9puy1W 513H6XrMheLvZxcuWMwUJgvioO0U2Fi7NixgOFbHsbr0B1P7TdOq66B0oa5a0KGhm41SBL3eZ8My Xv7U+egVSX9kOlQVo6boNUWrAhp+mQXYKEqVbnVWq0rRAsEFGgreXFCQC+VlU4/FlTuKWKXL3Oju Bfqz2RIVf+HCnSLcyfyt9Ard0kbBQRnB3fMc1kcMF70e3fnc691wHIGR4dWFlye4YIPng/2MtTDi SOMD4uBlV/K8dcFp7x03lA7ExiU7NvZxax83VunCur/dWAR02L0qULIhESyQb/oZI6e9tdyc6n/Z f6PUgSARaC7GaGDMU22RammuZUs1X6lY00wtXKBOiY3DaIeKAYHNCGUcMBe0AnKBzQVzxqsLs8IF xmKq/MMFZoc6w5t/8t4FccxcGE6kwUiOByKiIYx55oKIsSIZygO4kPTCuB0m7WDU9YecN+C8hAti MYjEKJaD8L+7gMrH/woiBOyE+h+/A5gOXS/quORCGyJ4ftsPWn7pQsN2QYuGZbfr0xXoby5ganDe XGjb9gmLWcDuZGO3etI9DOzSznrfIgyGztCwGuwac71u6rX/4oJRBYgGIKsVvOfZy//VBSp+uplQ ulfkCt3nLNNNa1jLW83lB/RCJSK7rk0owfsfFkgsC1TpQSEXbiXuRuJvJOFW5G9EDtyJ+JrwgA10 4HrIiweOo9tIuB7d/MxzN91fXXg+WM/7/vOhTy4cymigaXqHOneet87TCcTEd8zXO/+wdvcr57AG TIF1n9j0D1tad2tzuwH9QofNmoJgtSbWazxam3Uf5GsjXZsZbYglWPWXqP/cLFma+arQgcgyO6W5 GO29gQaGuaBkSyVfKlmupJlCOqTGIjUXbByGCwsaEAwwIwv0gkn5e5E6SyGCytohAg3SZA5kMmIG HYj5VJ5N3phDjakymyjTkTxd8JMpN5r0xlN+PBXHE2E05odjfoBeKOERDeTChLkwUSDIcMgxF1og GHb8QdeLQS+IhCAUokjC6tO/GvDsn9i4IOwV+EE3LB5LFyBCuwCJQKEQtl0ogFAgF5rACxqOV7ed uuM0PRqWO8yC4qYRuNBiPyWVIjhOeXUn0aera4sLnN1+2+136A5nHW/+Wt+qmf2aDqyaVmyATpc2 G3qVuYANTmgKgAui/igVuaBVFO2RRFAfFZUaIVWtFSIUdzUr4j3VP0KhuMOZ9kwH6V5+HRbYPWyy UJH5KiAR+FvWF93BBVnA/kbiriQe3Ij8tdAjCh0EqnzU/x39LWE6uaMLz0GPbnh+65H29vPeetlb 3w/Oj6P3fY/3P9X/d7z/d85xB0fspz2wnnZlC3SgicAqRoP9Dmt/vzN3W+Ow1Y8b47DRDxtjT5hb 1PzKpMrf9Fcrc7U01ksDJ9u1sV3rq7WxLBRYmyuwMsAy18GKQfulka9OZP1lZi3z/jKnr62W6nop g2UmMqRlJuepkqValhoZGaEztPkrmTYj1DlIFbBYEOlCyRbKeC5NUmWywCqD8VwcL/C2F8AETMXJ VJpMZWIsj0eIAFQ+hwofDbnxSJiMxdlYorxAa5QIAzCQRiMFDBAKA2mYdAeDbjLuxqNONOxECREn 3TgS4pAHCdaIiyLUfNuP2lHYAWHQ9r1mFHXDsBPHvRBNEU6Ilus3/bCNCPBo3/C9RuDXg6AehrT6 Xs11aq5d9+2WZ7cxJjDagd0K7KbrNG2nadkN4NgN1256dtPHeb/hmA3HqLvAbHj9pmc2XQOHNduq mv2KZla0flU1K3q/YpgVQ68YWsXUKpZetfVqn2Gi/tV7Ub2VtFtZu1fUB7XkUVNA5Q24ID2o4r0k 3knSnYyAkO5V+UEtRKAKv4UpCr4jQRn0SKULaIdk/gYohQXCNcFfvQEvuGuJ0uGG714JPWxusZIj 3DVkETkcXvZ6168uYFJ4QS7s+t8P9o+j+x3Dws552To/dthYx52OvCAR9v2nXf+4ZZykOAIc7szj DiIYxw1c0A8lOOnvtn3oQEasTZKCMDZMhO1KW6305coEEGFduLA0XkU4uYCJoGSZm6u8v6IVn2qr XFnn8iqT8lQkChcyjbmgp5Qd9LZfgFRdZIycKCyYp/JiwZjLKWMykxAKExixIKDAdF5YwDOYDhMR NT8ZS+OROBpzo1FvOOyRC0NuOhJmI3E6FJgL/IAQhkNpyEQYJOIg7iQo/lEnHrajQTtK2lHcjuNO HPEnF7g46qHs4UIQtV5dCPxWDBeCNnQAJILf8qGA1yjaIeB6/+GCX/fcuuc0fKrz1q8uNHBu24Rj 14GLE3zNQvE3oIB7csE1yQVgm1WLiv+xcEHDvl81mQu6+miqjxZ00Cp9Brmg3UMESbsrXVBQ3veM B9T/e1QUP0QQbyWJUKRblVFUOHPhjnSgoYBdgc5XfnXhJIIABS5PFC7gC7dwociIE1DgCiIUdLuX 71ywXw7m8874frB+HJ0fSIe9/WMHkA6oc+15bzztCszjlniCAps+QXtgHAs2WkGhAz6llol0YAow kAi7tb5badululpqq6VOYbECJsGCY51rayp1BvvOcqktaYNPX0XQVpnMkPKFSKSFC2oOFxZainF4 JgN686dFB6UsMnmeyYtUIhaMubSYSSmYSrOpOJudmIvTKT+d8Vgnk95kwk0m2PDTMd7/wgQpMORH 4x5cGJELvfGwNx3yBeMBP0q4YcwNwEBgwAuudAEWDFogTiBCO446MRQIuUHAJUEvDrsREyEIG1HQ LghfXWBADVb2Td9DzTcD2kOEOqMW+LUwqIU+bQJ8wa0jBQinTbBQCJy6Z9ccYNUdq+ZaFB8edLDq Xr/mGBVHL6i5Zt0za55Rs41K33yECzolQhX80wWFoTIXtIqq3cv6naLfa0CDC7AAzcxd4QJlgYQN g7mATxVwEoFxo4gM6ICXP2ZkHkmB0eBRpU4JdQ5TCLKAIfKX4i8uUC7I3K3Uu2UKXL5SiIBNt3Px 5sLBfDkYzAXz+9H6E+mwt37srB9b62WrP+3U5532tFWfNhq+g7JnmMe18bR5RX/aEs9b7ZlcUEsp 0DUVnRJZoCMLYMGeibBbqdulsspVlPR6qYOTLPoWj5m6zvBp8QVSpnSBHGEiZOw8k5eo/7R0YZni UVmSCyoanmyupHNW6gs5TeUsk9NMmi+E+ZxfLPh0ISwWQjpnzMR0SiymAoOflXCzaQ9MJ8Rk3JuO e7MxNxvz0xGr+cKFQRdM4MKggJskvXHcHcbtAdFNkl4y6CVokEoXWu9c6DAXenHQHRCdJERr1Ayj ehDWIr9VABcSdEelCy1mQQMK+G499LGph7DArZ1cqIZ+hfCqOA+cGlKA0SIsNELommqeXXWtqsPA Bmp4Vs23al6/+s6FimdWCxdwaJmPJnMBoUAuQATj0dRJhD658GArDxbbG+qjrkKBO5140NUHTSlD obCAskC6hwW6/KBjI95pMhLhRhZR21eEeKWUXLNB4IZV9Z3C3yvCg0oB8aaAJFyKJ4RXHd65gP+w qPz3LhQb/n0uHA1yYU/ry978se//2L2ifd9J37fy8wYo33ca7CA2xvNaP6GBl03xkQqeyYUCVD4r e0LbrbXicbdUwDZHq6+wnh9eaCfUba5uMgUurPMCmaRYqkvkCP4TBrKA8eoCUbiAeSFfEKTDQgLI CyKT0hQicPNZbzHn0jmfFcwEkE9FhpBN+GzCpQWzXjrtLhjzCWPcm48AR9CM0B0PIUIHTIbd6aAz G3SnSWeSdMZxaxi3BkQzidvJoJ0k7UHSwT5KWiUUCu04bEOExO+Agd8eBM0obIRhNQiqkVuPPNCI vOYg6rKMaIVBM/Sb9MKndz58aYT0nVroViGC71UDEuEx9EAlxhecamhXA7tOOligFMGzK65V4hNV ABEIs+qaFYCNb9YIAyePlvnAXECbxNLBeDD0u77+YOkVW32w1XtHvcfaVx8M5d5Qbg3lxlBvDfWe 8QB05c2CAkN+MGBE6cI1FJCFS6D84sI1q+prVDW5wD8AmSlQIPIXAkMUsJY60Jsfs3PvRu7dAjZW 4/ANJsKF8M6FH0/G9yfj5Vi4oH/f6T8YP3fGnzvlx074vhFf1uLLRv6xU79vNWKjv0CBlfrKS6HD Rn3ZKM9r5WmtHBn7tbJbKYULbyLkUgGiYbNUN8yFHchJhG0GTZRNLm9eKz+XVktivRQ2Ob/JsYqb DEjrVF6TAkS+ILK5BNheobAo2qeFQKRcNu9Rhc+62GQzwGUzHgpAhOVUXEGEYTcbddNRJxt38lkv n7RBOukswLizGHUXw4LegvqiznjYHg/ak0F7OoQI7VnSmcbtSdwaR81R3BjGjUFcT0DSAKPChbgZ xs3ShbBFlC60Bn5zEDQSJEL4GAWPkVuLvUKH+iBEQDQKQlb/BL7g12MPX0MEVMgFvxp4SISH0H2I iMfYqcR2NbKqsOCdCxXPevT7DyXYQ4c+iv+xwDVKPKPiG4++/ugYD33jrm8+nFx41I17Q7/tGw+2 XrGUe0u5s4l7S30w4YJ8Y8rXJnQgKe6YHXDk4dUCxIFRIN7pwq0m3agyXLgEinipSlcFlBE8g8N6 S7+dQgfujsUHWSORBecFonDOXECzxFqgzpXYuZY6N3L3ltX/hdD7hX+48P2of3/SmQv6845e7D+2 2s+d/lfpAv99w72suZeN+GOnnFzQXtbqP10glKeVBI6EDBcOjP1a3ZehwETIRAIbCgjtjUIEckHe LiUGXJBWubhkrHJuDTKewVzIZCTIElAcMBFmBPbULy2EFRSY88SiB7KCeZeAEaj2KQcXlicXloPO ctjNh+181F7h03ELLmRg3E5H7cWoPR90FgA6DLqFCxPGdNieDVqzuDWNmuOwPg5ro7g+TOqDpJYk tTipRXFtSEHQCqNGEDWgA/aFC9Qd+Z1h6UI9CavkQviYePXCBdR8grzA/p0L9OhWE7+eeNWBV40L F5ALSAT3PnIKHmLnMbYrcCG0imYJLlT/4UJgPQb0+PjOhQcG6QAXPHLhvq/fmua9YT5oxsPJBZYL 2qMl31nSjS3fQgdLvWcuXJvyFXSAFIZ8q8t3ukz1/08RTi4o1Behti8KSAfxAlDB8wVXCvvViETo 3jAR6JtiKcI38J8uCO0rsX0jdW6F7rnQO+e753yPeHVB7L3LhYPy46B+P2rfD+oLuaD82Ch/Qoct ogEb/seG+74G4o+t/GOjgj+xrpXvq1fwqIGXpfyUC09L8bgSSYd1oYPM0kFloSDvcvHNhVx5g/JC 3mYF0ETa5MSaFBCWmbDMhVXWW2fdddpdY5MK61Rcp4gG1h0hCJgIecFcopMiDuYUBzlTAOuSbSga pt18Si4sp/ySdBDWk95y2FoO29mwlY9aS3xh3III6RgWtBbD1nzYng+784RcgBTkAgsFRmuatKZx a0IuVMmFqM50qA3iWhLX4qg2CJsx9T+1MKzDiAQuBM0kRP23B35r6DeGfn3gV5OgEgcPcfiQ+Hjt 451P/Q/e/2iEiowgF9D8IA7IhdrAqwzRDpELmBqqgfsYuPehcwcKHSL7MbIrITVCNdYLPXoWsuAh NO9D8y7o3wXWPfD7954JHkgK46GARKDNvWPc9vUb07g1jDtdvzPRLxn3pn5naQiCewsWSDeOfOMo t5Z6ayILSITLQgdTvtGlG0261cRbHUh378GhKhSJcCGL5woUkAhNutSkC7KAK1y4VvhrFTqg7ele 00QgXACB+9UF7qLokajaO5d8+4J06FwLnTO+C75xPXBOYN/9JnTfZuf/PSp/H+SfO/mvvfxzr1IW bBQq+K3+A/1/0SCtxe9rqeAHmiWsK+nHEsg/lsqfK42hv+SlC08r8XktMWQAL0iBXNwvpcNKRp2X OhD8LufAYckdl/whF/aZuE0FsCnI0BFx22Vvu4YI7XUKOpusu0l76wW3XvDrOb+aCUUxr+bSZiGv pyLYzKV0wS9Sfo6+CC6kPGXBtAMXljM+nfTScTef9FYzuMAtsZnAi1oGJqCeTxv5tJVPEQrUGqHO Z8PONEG/xE9imgvABGPCgHqkcdKaxE20RtQdhY3JCWQE2RE3x1FjFKLPeQSx/zAMq4OgOoooBUZh YxDUoMDQrwz9R8bDOHgYBvdxyAgeIlDOwtWIIqAeYgpw0ERVIu8x9h4A2iEMxTQpMxd854ZxG7h3 gXPvs1L3SQFsbgPrNgbmTWheB/0r37pkXPnY93F4H+h3gUr42q2n3zrGjWNe2eaVpV9a2qWtXbra tafdeCq4dZQbxrWjXDnqlaVc9uWLvnJuymd9BZtLYEoXpnRliFe6cKWL15p0rQL5WlVuZPlKEM4l EYX9TRLO8apXpUsF73z+QsWeu1S5q1c06NC7BDxqHpOCiBH4gvol7oLofis2EnfBt7/S2jkTut/E 3rnY/iJ1vgrds173rMt9a/fOmp0vrc6XXufs1QWI8Nde+rmV/ixRfu6oR0IuQApmgfhjwxQoLCg4 ufDnCi6ohQ4vufSU80/LNx2KlumwFFHkxJLlRXGyhBoCE6G3z7uHZfeQ9w45v8/4bcqXIqTUCG0y zAi9zbJbuLDJOhQNYEE6bBZwgWfvdpJiMxfWU3495bCmNCb35jNKgXzB5YtuPuusyIVuxjqffNLB y3+JddwC2biajisprbVs3MgmZYO0GMGC5myAWaCZjjlMBORC0hklzQnNC5gOGgDzApQZB/VxUCso dJgwEYZhrXAhgQsBuTBkFgwDyoJfXbgf+fdD/y4OAFy4JxcQFj69/AHmCHRHKP6QNULkAjVFD4Fd C51KiCBwEQo3IHJvQ+fWt8Bd4UIAHczboH8T9W9i4xcXvP6lZ156xnWg30IBX70tXHD1G9u4to0r 24AIF5Z6YauXjnZV6OAqN7Z07chMhMIFiCCd9+XChXPSQb5gLlwa4qUuXGrClSZeqSKbCJQbRbkW KREuJP6bDBf4c1UkF1T+QuPPNf5SQ3eEaOhdKD3mReECWh3unH446uI/uZR654BcwIo93vmtL3CB LADQofUZOgidr4ULHe6s0/0K8PjqAkT4ayv+XAt/EuKfa/mvrfoXeqSNhv0PiIDDDZD/LF3AifRn wUo+AR3UF7KAYwhPK+F5JZIUhQgZT+TCseygxCPpwO9XvV3e2Wetfd46EJ1D1tst+M1C2qQykQG0 Q2iKupusTbBoIBakwwbpMMfrvVuwmXc3s8562gbZrJPSXNAB+byznGMcbmNdTlvLSbOk2I8bIB1V iGE1HdbSUSMbN7NxKx23MCbM4sY8aU9DfKczjRpokGZJexjV0RpNEjRFNYATzAuTEAq8ulCHDhgf RlTz1WFUGUKH4LF0AYfMAmpySITKKHgcwRTvfujdDby72CcS/x76JP4jAy48RhgBXKwPoX0fO/cD 7yFBO2TfB3aVuYAG6fbVhcC+8fvX0CHooxEiFwK4YF5H5n9xwTUuXO3S126If7igX9r6hf2rC64K C65s8cKWLhzlklCvbPnCIhe+GfJXU/lmyt/euXChU4UT9M4XLzX5WleuFRkNEkr6TIYO3Df6CEaQ COfsy5cK3va9c6VHMYE94HvfgIQGqXtGQfDqQveb1DkDcOH1/FcXvva4sx5zodtFLnx9c2Er/NwI 71yQfm7knxgZ1vKfZeULjCIORPadEyuJWAIZfF/yL8seg3tZ8S8rAXaQIK8uZPyxDA4Bm8Oyd1i1 D3nzkNX3Wf2QYdM+pJ3dgtsuxF0qF6M0zcjUC8GFziYnF0iHBSAd0CxtkBHzzmqGabe9mXc2M4jQ Asuy8vH+R7eD/r+Vj5ugLP5JYzVtrKfNFTbjOshGlWxULVzIRo181MyGzXTQnCMUwvo8bkyDWjps zaL6YtCeJ61RVJvE9Wlcn8S1aVQHMyr+aqEDA48UEyMfoCmCCxW4MAhQ9gTqf+A9opiLRIAIhQsD 9y5xbxOv4C7x7gn6Dn0/cQCGYhIhgQu03sb2fdE4hfZdaF+XODeBdeOj4OGCeRf27yPrPuzfIhSS Pnqk25MLV7599Q8XAu021ODCnWvckgsaRDi3VdLBoR6JIoCKX76ECKj/ApwUm9IF+cyQzpARSAro YIjncOGkw7kmnGuwQ7rCXKAI35gLZ0rvq8Z/07hv9AV4wZ2rHBR4c6F48wu9b8KrC/xFYUEhgoju CK0RXGAWICPIBeqRvghd5kIPLmDzhet+5tpf3lxYkwjEBhagtsUfS+FHLqDI6RGCrPgfS/57TvzI +T9XpMzPlUAshT9xQojge8695N1Ch+9LDryU8ETOP2cckdP+KeOOeee4RP03DlntkNdpkzb3aXu3 QDQI+1Q6ZMqedJDYy59yYZ211mlrk7bWi1ahwyYtWc9bq1lzPWtuF63NvLmeFtXeWp1e+3jMx3Ww HFVXo+p6XFtP6rQWmwl0qMGI5bCelzSyQSON63O884PKAmXvV3CyiKpsrU0TVHsFzOLaLKpO/Mep /zgLq1OmAIPyYozRACL4JELpAmo+KNohiHDPXGBQItwP3bv3LgxYRoCh9zDyHodwx3lIrLvExtce hnDBviWoTapE9kNo3YbWFQEXrOuwf43Kj6y7EHFg3EbmXcRcwLAQGTi59k2ywLOoQXKNS1e/+jUX 7jyD5gVyQf1mq+eOSr64TARbOndQ/wxkgSV+K6WgGeHMlL+Y8ldd/EIuyKULJhBgBENgOjAUWMCf qeTCF40707lvBr7QO1O6Z2qvMAJJQY2TBAVKzrCK5MI5ZgHUP1wQmp9FWEDFXxpBG3LkMxBQ/50v fO8r18PmE9/5xLU/v7mw4om1+DfYSH/hzc/K++cKjRPe/Pw/XVjybyIs6Zs/cq7gJe8wut/JBeIl f+M57T4t2uA57bxkvacF2iE0Rc09c+EIF9LmIW3v085+0T0suMNCOKQSjNil4o56IcwIrVXaXKfN kwvEZtEugAjLKb3q4QJAbS+HldWESn31Vvz0uBw8robV9ahGxT9ikAj11YhYDmp5UpIltTSqLcLq PKikePl791lST8PHfFDDOiMXHsAsrs6iytS/n/oP+CbiYxJUx0GFCKvMhUrpQvA4Rpvk3cGFQgHm wn1hwYBZMGSw/W3BsITORzi37xLrFgzd+yGMsG4H/dsBtUkPVPN91P9lZF3F9jXWsH+Flz/qP0Tl 6zeRCR2wXkcGuPH1Kw/1b14w3rmgFtx6rz0S4kD55ijnBHRQ8YjW6NyFCDCCiVC4AClYLiAUvhjy F0383Fe+WRilpXO4YAjfTJ4h4PHiFAHfYIHKfQVK97PW+6pzZyZzQe1+1WBEAQdlLt5E6H4lOl9x jtc+vfm7Z8yFzzLSAfNC54xnalDX1P4EhM7nXvszxQElwke+/bHX+vQPFyDCXysBIoC/11IBCv7H kmOQCKh8qvmMwEckQnGS975nxEvWJvL292W34CUjYEEhwnHeAq8u7NPmLmvsU4IapLQFFw4QYd45 zLFCB35HcLtFd7fA2NtYLupY14tCh+Z63mC0ilDAOx9VjVAoXFgPHzeTymZcXQ1R/I/rUWWN/aiS xw/LQQU6LEtqS+qRGitsBrVlUi2Jq3lcy5ACUTUNaT/37rKokoYPWVxZBPfT6HEaPoBZhDh4nPkP jMeJ9zj20PA8jsGrDjQsoym6Jxfc29IIn0aDYj1VfunC8L+4cDt0bof2bdK/ofqHC6CP9W7AGh6a CMwb37j0jYvQuoQLAC4ExiXq/80F/TrULkLtMtQx/KLzPyeMC+AaV65+zVy49hRwQxOBimHhirmA FPhWQlJQHMAFW/pmMxHIhZMUpoRhoXDhE/qlkwt4258ZHNEXzvvCBb38WQRo/+kCd250zzTQwwv/ K9HDNHFeuCB3qecBYvszzoXWZwAvxOZnCS5ADWyYEQVC43ehicr/2AVQgBLho0AufHz7HQkigCX/ V4nwvysR/I1coGrv/bnkGDw95r0fGfETJ3mPHonu96zzPQUtImv9yNsF3zPiedF6mhPHeZNcQDRk HRjB2qHmnmgcFo1j2jqSLxChfZiB7n7e3RGd3by1WzRWs/pqDqj+qQsCswaDWiN0/ihpKLBBm4RH uDCqbCdVsBlW1sPKZlSBCAgLciF558IAKxKhAUHypIKP8oIYVKn4GVlcnft3afS4CO/BzLuZBndT GBHczxiLAKFAOky8+7F3P6L1odShmA7QF1EiPKCq6VdT73ZEnc8drah554bBCt6hyh+4N4lDYIPH Eblwk1jXsXmdkAvo+a8H/WtSg/0ohKGYiXAemHDhPIYO1lVkXgXaBVIg1G8AsiDSrkL1PFShw7VH U/C5Cxf0ggu44JEIV558hdWln4YuSQT13CUXzkqks5MX568u0EaiTV84M0WI8NmQPsMFeNGXcHJm CF8N/qvBERZ/ZiEd4EXvzOyd6b2vau+LDh3IhS967wsOjc4XnXLhq9z5TPS+KNxXmTuTyY4vMrnw WYIL3a9C6xOAF2LzkwSwbyAIvsILCbnQ+sLXP/DN33vNP7oACrQ/cq0/+NYfOHn794WcA39nPVDs Gb3/XXJ/572/8i7Wv5eMFcceuz+z9p9Zk9H+mXfAnxnoMhca4EfWfF3B86LxNG8WPC8KYAQqv7uf dVnlNw6z2nFWP84az/BlVrjQ3k+a4IDzefUwe9hOq5tp4xUUfLkf18F20gC7aXM3KVkPHjfDx+2o shvXNqPaeoi1TgzqazAENVrZ42pQzxK0QA/54DGN79P4IUsqWVKFBTNUfng/jx4W8T2YR7dT/4oI bsEsuAMLAFP8+4V3P/Xu3kGNE5hgRkBTRC/827EPU6DAbcEQpe5cg5FzM7TBbUFoo+e/BIl7PfAx ONxgQ+WNEcC6TuybqH/Fqv2SBLGuUfaheQ4S+zyBCya4iPSLCC5oV5F2HaqwAJvLWL+I9Uu4EKiY lM8D/dzXv7nqmaOeoflx5UtHPPekC1++9BW0Q2e28sWWvzrvkb4Q8ldb+mrjtY8BWfhqiWe2eGYJ hCl8MsSPhFBiip8M4ZPJfzY58KXf+2xh7X7udz6bnU8a6H42OBQ/fap36UTvfMSj2v2kdD4CtfdZ 476o3Belh8PPeFTwUfeT3EHZfxTbf6Da8f6Xmn8AsUFIzY9S87Pa+So0PgjNDwLqHxYUIjR/5xsf 4MhbLry3ABvG3xlqvvNX1vmZ0QoF/spp/clO/kxbf6YNRusn6QA1AOXCy6Je8OrC87z2NK8/zRvv KYxAL7Sbdg6zFnOhTi5M60+z5nHaOjD2Y7jANCldqGym9Ve2M4hQDL9VNELbcW07ru+gw7hkPXgA 0AGsMCMMKoUO66RKDApqJTQa3GbxXZ7cMxfus/iRdMAswKodzIMbsAhLZiFEYPi3c/924RFz93bq 3U7dGwIbD//hA5hS/d8XLozeKC0Y2sTIvmHcjpgLkXMV2ej8L+JCB+cqsfGqv4QCIME4ABewNy+S YoPRwDgPjW9x/1tsfosMcF64ECqXAaNwIdS+hRqi4SpQLgL1W6B987Wz0gWFmn9HOHOhA5ARB2e2 zFyQCr68iuDIXyyR6ItfTP4LdHhzgf9k8L+bwh9GyUezMIL7ZPTAZ7P7CTrAArNNaEwHnKP4sRaP cAGrChHafyidPyCF1isU+AOoHTqUOx+B1P5DbP8utH6XWx/Vzmel/QkbkoKM+CgjJpq/E+3SBf7k Alf77c2FtAP+nfX+TRZ0/jdrg7/T1t9p86+0+eei+TMFrWItHv+cN/6c12klFwhmR/t72oQFKH5Q 6FA8Hst3fslhWivY0zu8hfXkQgMuHCbN46TxNMGmsR+DGnOhQi5MHreTCqOKjNjNatij8ynYnnTY jurbYX2Htie5XyV368H9eviwGjycdKisknfEBdU1tUO3ICfuGPd5/IhOKQ3u0vLNf0ME1wWz4Ibw r9EvzYF7DWagcMFhOpAaFBAT925c4NyMGGMX6/XQuhr2Gdb1iLgBY+sWa0yVfxH1CSiQMGLMxXjb o/4xHZuXA/MyNi4SAyscuYQIof41Ms5oJb7F+nmsX5EL8gUI1cuIuqNvofKNnZwHylmgnsEFj0IB Lpw54pkjfHWhg3DmSd9cvPzlzyh+Vyw5uQA+9wXCpBf+JwsuUL9E6WByHw3ug0k6kBGgDxf43w3u D6P3kej8YXY+Gq0/IEK/jbJH8X8s4oC5gC981Nt/aO0/VIhA/I7i17ofVYjQ+V3pfABy+0Tng9T+ ILY+KG24QDnCRPhdrP8u1j5IdeTFb3zjNw40P3Ct3/kWiYPv8+9c+HfaZnTKTdb6d9b8d9oAf6eN n4vGz/nbCgWK9dUF8GPRBN/nzZd5/b0LBf+/LjTYm7w8ecKnSIFx4ziuPY1r+xFxGNeO9FHlMH3Y jsEjASmmld0U9f+4GT0UbEePu9HjdljZDqubQXWLKSC+WcbXq8Hteni/GSIjoMb9Mr5bxlgfClbE I1hHj3khQniTh1jvGPcg9W8LMv8mJa4W/tXcu5z614R3NXPxeF24ABYu0gEuXL8ysa/H9Nq/JSOo /ikCJtABcdC/LBhb1+P+9QiYxNAsUuDkAmNgIQIuqPkxzhMTfc75wKA1oZ7ngnVEZ6H2JdQ+M7A5 i7VvA/0yQY+EUJAvIgV8i9UzrIEEzgLlK6F+9YDy1ZPPXAkWfPXFM4/Wr6702ZY+OeJnV/jiCJ+B K0INAueocJPH2x4V/geaH+hg8V9s/gudcL+Z/AfG74w/9N4HnftA3+z9YXQ+mJ0/4EK/dOFjWeo4 7OLxD6C1fwfqK53ftS6tShs1/y8gt/6H8S+5/Zvc/pfU/k1qfZBbH7CK9d+k+m9i/QO5UPsg1P4l 1P/Fgca/CiOgBk6E2v/86kLrf+dN8O9FacG/0zr4O0Xl13/Oaz/nbF2U66sLhQU/5o3vs8bJhVpB YQSTova8qD9hZMB0PK+/B/W/HVd2k8f99PEwrTzNqsdJ9TCuQoQjRBgSh1GddBjjo8p+fL8b35VM 7onx3XZ0Swzvt8OHHRg8bJOHDdU2BuSbfHCdD65Wg5v14BYZsYId0fUyvF1GdwWr6B6sQYj9DViG +MLNMrjNgpuM1tvUuzlxxbhkXEzcSzB1LpkLV8wCYo4T53JqX8yAAy4ndsHNzLmdwguL7GCOXI36 lwXj/tXIvBoZVyP9cqhdooAH1uWgT8V/4nzYPx9gHEAXpH9LjPNYOxtABPXbQLtAzRciBOpHEGof Q/VzqHyJlK+JehGrlzFzIZS+hdJZqHyN5LNQxP5rIH8mlC/Ak794OIEgIuELX3wEgfTJFv9wxU8e XOA/EUwHiGCJH0uET33Khc82XOC+EL0/+txvFnQgyAiD/6D1/qX3fjN7H4DRhgu/my3wETAXftc6 qPkPRhci/A601gegt39nfNA6JSpCof1/5Rb4P4z/S0a0yQupSYiN/xHr/yPXf1MaH5Q6+F1ukiN8 8zfmAqP2f/nq/+Er/+fVhf9n0fr34v9l0z2bI12387z/47LL+iSzXJSrHCVbommLlIq0DqkyRYo8 5Nl7zwwGQKO70TnnhG6gcwA655xzzt3IOWPS3pTsX+D7eRszs1l01VWrnvfpd3adD/e11npRZ+VC 5MtRmHAc+pkQ/HwU/HgYAh+WQbA6fDoKfyRqhF+W4edlhCL8zYWHw+CK+0XgYRkk4Pw6GrDtBP8h EMF7Mz+4me/fzg/Q/O/ngbtZ4H4WvoMFY4BD5BZMKTuIC0i+52rqpvAQJu7Liftq7Lka71+PD65G 3quh95Jk2wsRTsauk5ETnI1c5yP3+chzPnS/pv0r533PRQ/sn5N712mPcNZzn3ScJ23XSdt92vGA k477uOU4atmPWrajNrDP2455y7EgQAfnYdt5BClwbtoWDdu8TuqyaV+2HQRIgfw3XHOKZdO1aOLg nNUI05pjWnVMK8BJKDsnaObIf80+pvJPYZuAKvq8dVSxjLH/lEglLpTsg6KVzILSbq9k7JV2BiXj AC4UzP28uV+wDgr2AYbCqwuWfn6P3OesX8+7/cJur7jXyZOQYxb0cpY+anavl8OlqZkztLMmqNF+ dQFjgohQJ5vPDlUxFIyNjKmRJh8CAC40U4Z6UlelqJMZoa+ktNUUeayl9NW4/qsLRoApAAvKcUMp pl+JQFyI6isAOhD0lbi+/JViXFWIUURXrIxQ56MUEaAtRfTlqKEcJhSiunxUl41oU2FtOqLN4hzW ZkOaXFDz3YXDKPjlCITBz0ehn4+Cvxz5wZejwMdDKAARAmB1+HRE7HhZhp4XoScKuEB9QcSejiII Pyy4m/u/uUDWG7T0r9wugt+4W/pul/s3C/f1zHUzd98vffcL//3c/zAL308id2MQu5vEb8fR2zEx 4mbqvZ66L8fOi5ED4PDKyHk5BO6rkedqtH81PLgeeq/6XihwPHIcDR2UC064cDF2X4x+7YL7rOc6 77kvui5w1nWedOwUjlOc2w5wCh1aAI9O4kLTftS0roALi/ZXF1qOw1fsh03rsmFZ1C3zuhVeHLYI OMCFOfp/zUFEaDjndQfOhKp9WqEoA8esAjAd8BWA5m/7qoCVUCGMK5ZR2TwqW4ZFy7gMF6yjog2x 7xaM/RKACN9c2Pvqgm3lAqR4zX/uuwu9vIlQ2OvkEHUTAt/LmQfQIYvX4IKxmdOvXOhk9r7p0ED+ qeVn5UKdcqGZ2aunVi7sNJP6ekJbjWuqCS1cqGcN1bSumtJWcAlBEsSFasxQjQIq+VTISzFdJYFZ QAZHOaqrgBgBZ1CKaksxbRnEVaW4shhTFKJASaC8yBPUubAqH9YUw7pyRF8K6kohXSGsyYU16ZAq FVKlwxpIkYto8mF1zq/6viMtw5+XoS/L0M+HQVjw5TDw5dBH4f186Pt46F/xYen/CBEOg+DDIvA8 D4InQFygdDiKPWMuLPx3M+/dzIfDwzLwgM1n7ocat78G78AXshR57xbu27nreuq4mTnvF/v3C+/9 zHs/DdxNgneruTAO34xCN6PgzQgfAu6rieNibLsYUozsl2P75ch2OQD2y4HjcuC8HrmvIcXAfdlz HfVthwPb0cB2OnRQLrguUIeu0z4F6f9O5P+857zoOi86zlMEvmUnQIEORLBTOA4b9sOG7ahJhsJx G9iOMRqa1sWrC3awJIG3k8y3iAjLBqp1QaptBTUpXGQEVO0rC3AAEGFWsU0rtkl5BZFiRqYDvnnN 46plBcIPBcZly6SMah6ViAujonlMRDCPChY09n7BOCiaBkUjhWmIBalgHuRR9wb5PZyHBeofFvFo 7OWM3Zyxlzd284ZOXt/N70AHuNCGC2lTN7PXy5i7kCJramcNray2ndV3MsZ2Zqf1CpK/U08bKHDY qSUxBXYaSXwRExpJQyOprSU01bi6mlBXk5pqWltNa3AgLiR01biuHqdEiBBI2mOaFZW4rhojlKPa ckRTAeRAKEU0APeliLoYURUjymJUmQ8rChFlLoyDMh9RkYQHVfmgqhDSFkPaQkAN8iFFNqTMhBTp IAHnHAgosl7Zr+ZC8PPS/2nu/bzwfV4SPi29nw69H5cHL4uDJ9RD78vSR7kQ/LQMf1yEXmaB56n/ eeZ/ngeeF0G48LQIPi6Dj3Pf8/zgaQa8T3Pf08L3uPA9zFEPHmaE++k+oM7eB/gyw9l9N33lfuZ5 mHnup57bsedujJe9t6P9GzAkXPXR0i0Xk72L8d7lCJivx9brkeWyv3fVN1/0zJd9C+r1EFJYwVln 76RrPulZKKzgtGc969nO+vbTHjq/7aRjRT3r2M+7jgvUtu20vn/a8Jw2nWctxzks6FiP2xZw1H7t +Uck8NYjgB2JxN6+aFpnDWBZNC3LFmHRNM/qZkyEFYuabVGzE6qOlQUTEnu0d9u0SqBavYVq9YQx afs2svlUrIPK3qiyNyybRuVdZJvMguLepGSZlMwrxsW9UcE0Lu6ijgo7k8LuOL83yu8Nc3vDPJJv G2AjymE06Hs5bT+v6efVo6JmVNAO89peQd0qylsFiryygxvokNvtwYLUXje12yYY2ylDO61rZ9TN jLKZUbQyqlZG3cpoW2ldK6VvJcFOK2lsJvAJrAcNkNA3k4ZmSldLqGsJVSWurCaU5bi8FJdXkgp4 UY9r6nFtPaZtRHWNqL4R0TfC+nJYXopIK1F5NaaoxpSV6ApVKaQElbCmGtFWQFhbpigG9MWArhjU lMKafEBeDKszPkUOsQ9q8n513qfO+3GvzQc1CHwuIM8ERJmgOBuUZAOSjF+S80vyAWneL816pb+a C/4vUGABF7w/L71fIMJ3F/afF/svlBQfFrgnOnycB19gwdT3PPO9zF91eJoHHheBp/nB89zzOHM/ zlD3H+fgACLgQMV+ZcFXpuj/SL7rbkK4hwsUdxP37QgQHVBvhq9c9V2XI+vlxHI5tlwMLZdDy9XI ejWwXHT3rnqo5suu5aJjuerbL/s2cNa1nHb3Tnvm054FnBERrKddGzgBbWBFPevYzokI9vOW7ayx f9ZwnzUdp03bWQu/QgQzQPiXTQIOhw0zOGpZjkj4bVBgVgck/8smYdFYuYAFybKoAeu8aptX4YId Sw4VfsukYp5ULa/UUM3j8u6oRDJPfq1+3YIqu2BYIT8RF5D5ElwwTyECpEDyiQJwwTQpmSaoeeM4 bxrmgBF1QBYhYOpl9d2srg8dcpphQTfM6wc5XS+vaRcVKxfaeWU3r+nlDF0sQhlTL7XbTZraSRNy Dhc6aV0no2lllYSVC2lNK6VtpaCDrpnQNeOosEBLoWsmtc2kDkOhjtgn1GUEO0Z0qCZhhKIaV9Xj 6npMXY+qG1FNI6JtRHQNEu9XFygUlQggLlQjQF2NaGpEBE05tEJLbT5o++pSWFUIyMoRJYzIB1GV eT/ApYYMhZAqF5TnArKUX5T2izOUCJQL0pxPlvNJU27xdxegAOFgxZcl4fPy4NOrCx7UD3Nw8Gnh +7jwf5z5wMvU+zLzfcBhhlngf5z6HnGYeZ7nEMH1nbnnCUYQNTyvghAggud+4oECtyPH3dhxN3He Qwfy6LwZOm6GztuhixgxdN8MXrnqOc8HlvMhEeFiYLkcWK4GtuuBDRZc9WyXXSu4aFsve46Lrh31 sms/7ewRumYANc661tMOYWXBSct62rKetW2vIjSt503PacN12rCfNCwnTfNxa4/QRjUfNvfAEdLe 2D1smI4oIMIq+bPaHlg29g4be8s6YVHfm9fM84p5UbUsq9Zl1bYg2z6ibiJUdwkVI5jVd6dV07hs GJUM4/IO9c7uuLIHO8bk3jSuwIKdMUwpGDECxoXdaWF3QjCNcVMwTsj9zrhgGOf0YJgzDKk6yO/0 c8DQy+i6GV0/qx1kMRHw684gY+jl9J2CChYQEXKqbk7dy+q6WUM3vdNNGbuwgDT8Vxe6GU37mwtp NSFFdCCxT2iacQ2pFI24uhlXNQjqOgVSij7fgBdJ4kU1Kq/FFLWosh5VNqKqZkRNCKurYXk5InsF 5zDlAgirVlRRQ2oKDShhIgRVxaCiGJTlA+JiSJoPoNXLiBF+ec6HqihAjaAsF5TmQ9KUV5zyStI+ Kcj4pFmfDNtR9kCS/rUL8/2fF9/B45fF/ucFceHjcv/jwv1x4VnxCZdz78cZ4cP04MOM8DLdf0a8 J56nKXA+zxxPM8cjqU4KF+rjxPUN6rX9h7H7fuS6Hdpvh7a7kf1+7CCMHLcD203fetO33w6cv+am 77zuOc4R6d7eec8MsA5d9W3XfRtEuOnZr7u26479omW9RG3bsPNQa8/eeXsXXHT2MDLOQdty1iKc rkQgwAKKhvWs4Tyt209q5uPa3nFj96hpOmqZjlu7MOKouUthWjaMhw3jEWFnTpK/u6jvzmsEnMFh bXdR3ZtXdilwMC8JlkXFPKsYphU9mNcM8/rOrKoH87phVtFNQVlPYaAwziqmadUIRyDIqKCfFI0j RB2xzxkmIE+YFgyzomFS0I/yulFOO8oCzRDkyBaEETAAOV0/o+1ndIOsAQoMsqZBdrefMfWzO92c Bgp0syoKHDTdjLab0naS+k5K303BC2M3s9PN6MlcIBNBSUipQDMJ1KARV9Zj8kZc0Yor20lVO6kk JJTNmKoeUdXR2KOqGqYAHmOq6sqFqKwWkdUJ8mZE0QwrWiFFNQwFpK+EZOWQvAIdCESHckhZDq5Q lQKEcggiyIshWTEoKgSEhZA4HxChFpF8vyTr+4Yw6xfmQ8LUgTR1IEt75WnUA1kGdZ8MhbRb8s2F XxaeXxbun+eEL3PPV1ZGIP/uT3MX+Dx3f557Ps0opvsfJ54PU+B+mbhfpu7niet5ipzbv/Eyc4Ln qeNpYn8aO57GzkeKJ+gwcT+OXA9D593Aejuw3A1t99BhZMfhtm+lwMFO4ViBtAOMgPMu5ULXjHhf YiPqWq86lhtKhKu2/aJpuWzZzpuWC1SC6aJlvGiZLtu7l+29i5YZEBeahHMyCMA3F2ynNdtJ1XpU 3T2qmo7rxmMEvmmkdNg7auweN3dPWibKAvLTcd2wqJtWLGvfMB7WTIsqLDAtysZF2bQs7y4re8vy 3qK0+5r5im4OBWp6PM4q2nkNFmjJuayblnSTIgE6zCs7cGdSggUk6pMi2r5uktePs7pJTj9BzWon Oe0kTxjnNMSCjJqQVQ/z2IWAmoDPhAzQUi4YB5ndQWavn4YOxh6Sn0H+VYQsVdOqTkrVSWo6KW0v pe+ld3oZA2ZKO4VZoATNtKKZUhKShBZqXNGMyVvEBXknoWjH5YSYvInOH1Y2Iuj/xIJaRFGLyOtR RTUiq4aloBaW1sOyRljWDMlBJUQsKIUIKxfKIcXXqiih/+OjICAvBRRFP1AWSf+XFILinI8P8n5B Fge/IO8X5XzirFcMETI+ccbLz/j4WT8v7SUiQIfUvjS9wiNJOkUp1/e58PcL9y9z189g5voyc32e uQF0+DzzUAfnp6nj49Txaeb6NHV9pPg0dX+YuCicK14mjucpcm5/JNjAM24ALBjZVzwOKUa4cTwO HQ9D+13fcts33w0s99ABAwJqkBvLbc963bWAm57ttme77lopsAjtXfR2Se1Q3Z5K+GVr76plvmxa rlqWiwYeLecNZN5KZkTTeNXcuWoYcbhsmi6auxfNvfOWGS+As4aFmgUUdcJJxXJSMR9VjUfVHUQd nR8sSfh3j+oEDIvjuokC7xgWtZ1F3QigwLK6Q2E8qpkOq7sQYV7cmRcNi5JxWTYtSqZ50TgtaUng SfK1syo5TMuaWVkzKaFqZyXttKgdU0xL+nnZMCNqaMcFDRV43TRP5T+rnUGKjGacVo/S6nFWPcmS Osqohmk1IaMewYW8epBXEnKqfkbZz6gHWf0gszNImwap3X7S1McilNJ1Uxrkv5fGC0rUbkrRSQJl J7kyQtdNY0ZoW2QEwAJFIylf0UwARQuXcXkjJiM6RGVQoB2VtaJSVDT8eljeiCgaUUUzqqiFZQh/ LUIsQOyrICitBaX1oKxBUQlKyiFJKUh4dSGI5MsIfmkR+IC85F+5oCj4pZkDEWZB5oCX9XKzPm7G C3iZA0HmQIifKB3E6QN++oCXPuBiLiT3pQmPOOEWJd0iMhE84qRTmHIJv7swd/4yc/xMcH6ZOj9P Ef6VEXABB/uHie3D2PZxgoMDmUf9uFJg7Ph284JfqRHwMEaHtz0MrQ9D2+PI/jxyPJNqfxraHgav PALKi/u+5a5vvh9Y8P4dOb9yg0+A9h64Jj3fetU2U+DT2HTRNV50TeftnfPWDnr+JXp+a/eiYbyo I/a7F3XTJdJOGQGum8Zr4sLOZX0HL+DXiwbR4axmprCc1S2noGY+rVoARDip7B5XjcdVw8qFw7ph XjVg7UG8wVFtlzKFsCzrlzXDYR3vUC5UdsDhNxdKRATiQnFnWTItikSNSVGzcmFKhR8iTEvqaVE9 wyMoEhcodLOSnkIzKahHORXp/1nNLK8bZzRTHLKaCSxIq0Zp1TijHmdUo4ximFZ8c2GYUxMFsopX MvJ+WjXEmpQy9JNG0Evs9BKGbkLXTWi6KVUvpeilgbybknWSQIElpxVXteLqdkLTIqgaCSJCPSEj xGWNuKyZAESEelTaIOGXtijaYRloheVNEJE3wtJGRNYgGxEUEFeCYrhQCf7KhQChEhCXKMpBSSUE NeRlWOCTQATUok9cJBU30EGOmvdKsvtCTAHigg8KcAGJvYef9gjSHmFmHz+JUvv81D65T3hEcbc4 7hLGnYKEU5ByC9MeDAVh2in47sLU/svE9vPETuH4MnF8mtg/UVJ8Jmfbh5GVwvYysr+MHB8Izpfh 6uCgbnBv/zAmgb8fAOt9z3Lfsz70EXtcOp4G9se+DY8PuOyh2h77dtT7rvmuu3vX2yN0X+ttd/e6 vXvVMgEcbmAEvGjiEYPAcNHWX3QMl6gtwyVA1LEF1Q0XNQMV+B28icBfNnehBrGggUvDec1wBuo7 Z3XjWcN0WjWd1nZPa3vgBFT3jqt7R+XdY1AyHlcoF6r6o5phWdUvKoaVCIeV3SNQNlIYliXdogb0 iyphXsGb+mUV/8S4qOzM0diLOgo9GRBY7Av6WUG9KGnmoLhCPSuopnnVJK+c5VVwYVYAOgq8jK8D iEB2nnFOS/p/TjfOaqdZ7TitocAsIAzTqn5a3k8phyntMKWhdFANMop+WkrIyEjIk3gBP+n7SX0v oesntP2EvhfT9eKafkLZS8p7SVkvJe0mJaCTkGHPaUVJkltRZSsGFA0Ql5NPA0yEuLwZkzWikkZM 0oxSCmAcRKCAtBWStoIy0AxJmmFxKyKpB0W1oKgelsCFSkCEzL8OhYCM4JfVfYSyT1zyr5DAlDIU oCwoeIkFhQMRAWevpOSTFQ6kWY8o4+bnMAU83CxE8BDSHl7SxU25+Yg6co6axNkDU3hxlwAWxJ28 mIOXAE5e2k1Z4+R9d2Fs+WUEbL+MCT+PbV8mts9j66ex5dPI+nlk+zQkfBzaPw4cHweuT0P3S9/x 1LW9DBwfho6Xgf3DwAZe+tbHrgXxfuiRetcBxAjo8Ij8t/Gr/bFje+zYH9p4tN23rPft3du28aa1 A+46pgd4gcem4baFinvS1cEdjKA6/GVLd9HSXra0123ddUt/3fxKQ39VX2G4buCfGKlZgPATTmv6 V3CmOKnqT2qGk5qRwnRS3zuiOvlh0XhY3DkqA8NRWX9S3TksAyOlwO5RiXBc2j0pGU/KhuOSbl5T z6rqWWWFZo4PAQqy8FA7D4n3CsQ7r13kVQQYAfKqeU4JZlnFOC1FXRQ087x2Rto+qm6a0/ezWGzw Lawdko9i7epLAXWYggIagBEwyGDDoZaclHqY0I+S+jGZDsphWjpMi4dpySAjRdvvJmSduLKXUHbj yn5C1U/I+3H1IKbrx9S9mKIXl/bi4m5C3ImLKMTtmAQJbyLb0CFMck46PBaeiAJqYBfCr42QuEHS LoYCnYisG5F3QrI2RAgQmkFBI8Rthvm1AK/i51UCQgyFMlzwS2oBKcEvq/nkVa8C1LyKMgm5+NeU /RKQ3xfCAlRyoM7QIb8vSjv5aRc/4+Zl3dwcdHADnPkJBzfl4qdhgXOFIOXCFOAlXLy4k0twcBJO TtzGTrs4+OcZJ/e7CyPzL0Ng/WVk/ZniyxgKQATzx4H5Y9/yaWD9SLB96AP7h77juWd76lpXFjz3 LE9dy3PX/NIzP/YsDwQz5cLeXXsPRtx3LQ8dy0Pb/Eiq5bFtfWhZwH3TfNsyrUQAkAI63OLcNNxA gYaBEgF1pQY5X7Y0Fy31VUtz1dJeNbVXDQ2F9rquvaqt0BEjGvrLmv6iqj+v6c+gQFVHeHVBTwFB KCMqJPCn9d2T2u6yZIAIh0WE3HBY0h+W9cfYeUqQwggdDoumFcdF00nReFIyHJOtXj4rK+cV1aKq WVS0i7J2vtp2XncesvbMv1HQLnKr/L9aMM8SYME0q5hlVWCaUU/TmmlaO8vopsg8NRTI34VI7DWr /OMbYZDECFCt+v8woxyQzwHlAI9x3TChG+GnlGKQkg4gAuYCun1c3k3IO2jsQVEzJO7FZV0EPiIb RDX9mKoXk3Vjkm5MRC5jQtCOidpRcZssPLI2cUHaCkuaIWkD+z+1+RA1wjAFvkjwE2YB0eGrCE2/ rOXH2iNoBLmNEK/q51Z83IpfUAmKyn5h2SsqHQBx5UBa9coqB3IAHUpecckrKu7jBTEq3ikeCEHB I4ACOTc/7xaQswdGiPIeIXHByc+4eJQOr2BSJJ18KvwifBdTLvApuCT/TsoCBzvhZCcdrLSLTXCy v7sAEQbA8svQ8vPQ8mVoBp8HYO9jb+9Dd+9DzwwgxYe+9aVnfe5aEf6nngWD4KVveersPbZ3n9q7 L929597eIwU6PHr+XdsEcHho7963UPdW9aGFw959c5eEvGWgwm/AgYhAHvXguq5Dt79ZgXvqcEVE UJHapGior+qqq7r6uqa+rhKuqhpCTXtZ015UtWdQoAK0hKrujKgBL7Rn0KGmOylrCRXcG8+w5yP2 sKCgP4IIJS3AaIAUGBNwZFkwgsOC6bhgPC7sHOO1gmZalM1LikVZuaioF2UNobTafAjzgmbxa/Ia kvyM4h8zhwVp1SSlpIAO2mlaP0nr8KUwyipHGSXp8yklQk5ynlQOEoohSK2+ESjI94JyGNcQEvJB QtZPiilkSH4nRujGlN2YtBeTIu3dOK8TEfUjyl5U3otKutFXCzpRQTsqbEVErTC6vYQkHMt/SNwO ihoBMfWdK22GyLcAJYj4lZCkHZS0AtKmX9r0SZteWcsnr/sF9QCnFuBWfSsX+OWAsOQTkJB7RAWP qOSRlPelqNRBVtzHveAbBQ+/8PWQd/GyDk7Oycu7+AQ3+Ql7PqUDL0104BJwcPGTDgEBIjhWkNGQ dGIosEHCxY7ZmAnHdtLBTDm3UzjYt7//TXWw90uf8HN/98uKwe7n/u6n/u6HrulDZ/cVSgr0/8fO 3hOmQB+zYO+pAwuMK146xqeu8aFDuG/v3Ld2SG0bCS3jXRM3RnLZMq24a+LScNfU3zZ1AIcV5LGh u6lpb+q6FbhcHSgFVIQG4boOlKRWCFcVNaGquSZor6ra84oOnFUghfa8qruo6c7rSL6WUNWclClK mtOy7hQbUVlPuaA7KuqOSprDkuaorKNcMBxhXhQo8rBg5yivP8prjvLqeVG2KMkplIuS6rCkPiyq l2T/ofh6WOZVy5yKDAXKhWma8A90SCunKeU4qZgkcVDP0rppWjdJa0cZ+SgtG6WAfJwECgo50k5I yVYMQBpVPoyphjHFIC7ux0W9hLAXR+al3Zisj+0ohlVEWHKzaj5OPyHsxjjNEK9LFhtJNyLqRgTE ggi/HRG0wsJWWNQKiVtBKCDuUCK0g4ImXAjI6gFp3S9pBIG4GYIyojZqgNDwiRs+ScMLZA2vvO4V 1PycGrYjL4WPj6FAuYC2L4YLMAKHoltI8OBGiMwj+Tmq5t28by5kndyMnQ0dcMg6eQA6ZOCCg5fC RuTkkm3HBRe4UCPlEICkXQgSqDaceUk7N+bYBnHndsRCj9sZCTsDOiRsjKSN+d2F3u4vPRP40jV+ 7u6ALz3j557pY9f4obPzoW0EL6gd00t397mz+4jkd3df0P/bO48t/VPL8NzZee4Yntv6x7b+oaUD 9xQPeGwbHlqG+xZCrqOq/r5loBSgaOjuGtp/zG1de1NV39SABtw1NKvDdePVgqv6SgTVdU15U1Nd lwmUC5rriuaKABd0Z8j5irLmDFSA+rSiIpSVp2UVoaQ6KahOi+rzEhkTh0XVURmpVgByKKuPytqj op7Mi4L+kFigIyLklIc5xbIgWRZky6LssKg4LCoPC8plXrnMKRdU8pH/ZVa5xIdARv5KVj5Py16h buYZ2SwtmyZXyGcp5TytWqS185RmmsQUkA6TEjBKSMZJ6YR6DXWclI2SsmHy9ddBUtIHCckwBh0k gzivH+f3EvxeXPDqQlTZ8Iu9yjcW3n/IWmntMK8X5/aiAiJCWNgJ8zsRjAl+O8xvhvitkHA1CFp+ IOwEhB2/oBvgtwOiZhAiiGs+Yc3Hrwf4zSC/RdHw8Zp+fsMrIDp4xfUDaW1fWjsQVr28qpdfPuCV D1AFZciILQhzYR9zAfmncAsIEMHNy7m4EAHgTMEvuPnQgSgAEV6BF0SKlQhJOztpZ6Ww8Dix7XBS DsBP2vkJ6zd4cSs7bmVFbcyonRmzMyOWrbiNEbcyEjZmHF6YGd//v3ld0y8E4+e24VNbD1ZGfOwa Pnb0H9uGD0h7y/DSRuCN4LFteCLhNz409Q8N7VNLBwue27rnlvaxpX1oar7x2NI9tfSPsKCJPKup qrlvfsu8Dpm/q2v+/1DfVJW3NeVtlaKuWh2uaspLgANBdU3Am5rrkvq6pLkua8FVSXtJcVXWnRXV p98oqanwK05K8pOSDJyW5Gdl5VlRcZpXnOWVl0X1SUl1VJQfl+WHJcRbdlRSHuIGOhQ12IgO85rD HCxQH+WVRznZYU6yzImXOclhQXpUkB/mFcvsa+YpBZTLjGKZli/TsgVISQkZyTwlJqTFi8zr4ywp niYlK+ZJ+TylmKdUs4RymsAIEA8TomFcNI6LJgnJLCGdJiSTuGSSlI6R/LhosCIhQqvvx4XDuHgQ F/QTrH6C3U9wenE++RCISKtuvkvyO8X6b1ySv236BQ0/txViYxb0IsIuRAhzKXhwhLgQFLSCVKv3 i9p+IkLHx+v6OS2kPSCq+4V1Hx//hWaA2wpwGr7thp9V87IbPk79gNvwCRteUX1fXPOIqx5BZZ9f 9ghKHuSZT20+wiJZ9QV5tH2q8+fd3IKHV9wn5FzYgkjmVxsRKh7JpIAjTuonjAYyHbhpGxs6pOwc iIA8U72dkbIzqYWHlbCxYxZ2zAy4cSsvYeV+cyFiYUStjKiZHrcxYxZGzMKMmRmxXfp3FzqmXwDy DxFaOvC5Y/jc1X/s6D62iQsvTd1TQ/eE2jI8kT6P5q9HziHCQ0MDFx6b2sem5omgfmyqHxqv4BI/ 4Z07hLmmvGuocIAUiDqF5raqWnHzFZzvauq7Gg4KygXF66EiB5cV5QUoEy4xCMg4UGMQEBFK2puy 7qqovSi8clkkLqw4L6nPyyokH/k/KcpOitLjguSkIDkrys9BnnBRUEKQo6L4qCQ+LAoJZcmyKD0s UTnPvYJxcJSTH+fFxzkRcSFLkZEs01KwACmEX7FIyxdEBOLCIX5KAck8LZqnBGCRFi4yMEI0Swqm Cf4sKaIQz6jAzxKyaVw+jWMEiMYJ4SguHMeF0wR+FU9jokkMaoiHMeEwKhhEBf0YoRfjg0GM349x ejF6P87ox7exCLUjJLpu8e/Yf/N/OAR/2zgQdIKSTgg7D5LP70UE3TDvqwvcdojXhgsBAXzBRPjm QtfH7XpZLS+ST0ZAnRzYrQBg1b30uo9ePWDUvaz6AZu8cCCs7wtrbmHZJSij4bsIBZcQ5F2ivFuU RchXf/lxsrLO7bybXdznFDxsEni0fTt7VVdTgJwdSD4L54yNBSgp8AKHij0zbt0CCetW0kaHEQkr Gv521EyADvGvIpBLKzO0Rw+b6ZE9Rgxq7EEKJqmm73PhU1v3maD9BFqaTy3t6uZj+5sL+ucG0eEZ B+jQRKvXP9a1DzUNeMJoIOCgQf7vG6r7OlDf1zVElroO3NW0d1h1COrbmnrV/G/xzVtVXFflK26q ipuK4vYr5IxZQJ3vKsrbsvyuLL8syS/Kiku4UFJclpRXEIEy4qqovqJ0IC7ktec5oLvI60+x/BSU pwXFaVFxViL1pCA/LshIzcuO89KTvOw0LyfkpKc53CtweVwQHRV4h6AoOCyIDoto4Mp5RrHIypZZ 6WFWcgRyUtRlTrDMCRdZ4SJN4r1MixYk7cI5Yk+xSFNQQwGP0zRvmiLM0wIwA0n+NMH75sI0jrRL pjHpivEq9kn2MMkaJbeHCfY4Ih5FxOMofxTl9aNC4kKEP8BjhDuI8Pok29vd6GY/SuvGaI0ou+zl 2AT/gf3Xf7DH/Yuml93y8TpBcTcg7KLbB/idIOC1g9xOCCJwm0Eu+ctPgNv08Vp+XtvH7xB4HR+3 jZyTqHMhQu2AjeQ3fIS6l1k7YFT3UVm1fVbtgFv1cCtubtnFLTo5RRen4OIW0N4d3Pzqy9fJp76C OTk3wr+dc2znXdsFF6kZB4EIQpLPRuxXgyBl3QYZGztlYaWpy7SNg7mQsDAT6PBYeKw0ChzoMWBh Iu0REvXtmGWb6v9bMesWPhNCe1sgvEePmhmRXTqACxHjdxc+tJRfUX1oAvXHpuYTQfuxqfvQNLw0 9C/17zzXdc813VNV81hRAxxe6roXcqm9Rz+vkzaOxn5fx6P+vmq4r+48kIqz/raiualobmurjwL1 ZVV2UZNc1iRXNelNDTrIbyrym7LsuiS7LuOguC0r7kCRcF9UXBak0OGKSCG7KiuuK1hs0M/l5znZ eV6Bxn6RV5/nNGdZ7VlWd54znBWwAslPCzIKKvN5bETK49wKxXFWDk5yMgT7OCs5ySlOctKTnOg4 zzvKcQl5wWEe8VbNU0rS4TPiw4yIqvLDjHKR5S3z/EWOv8gAAZinebMUl4Q8BYSzlIhaitDqJWjs kzSHgjslr0EKPoAOZCKQoSCexYBkFpPOY9JZVDoKySYxaT+91U9vdFM/dhJruBmExOMQexLh9KJi hB+Mwvx5iDkOsrshYSe03Y/R25GtenSjFGBYpX+7+Rf/4w7r39f2GU3/u2GU1Q9wOvvs/oG4eyBs UZknsUf+g5x6gF0LsOt+dtPHafnYzQNWc5/VOsCB29jnIuqr5k9iT2AT9tkVz3fKbnbJxSo6twsO 5JyZdzJJzh3MnJ1JHsnldta2nbOz8k523skikF8ZIO2gpxyozAywMzO27RUpCwF7UdJMasK8nbSw UlZ2Yo9JMNMTiLqFRkGPWhhhpH2XECGZx0+bMct63LoeNm+GzTTCHi28SwubaBHTFhak8D9y4aWp IjRUL3XVh6+81DXPdS1C/lLTrQL/QllAqKgeKXB4qWmeMSCq6vuq/LYmva3J7moKeHFf1dxXtHdl oCFAhJLqpqwkixCWJWz+Fel5WXxRllxVpNdV2U2FoiS9LgJixE1JdluU3xYU4C6vuMxLL4tAdlGQ wIurIhSQnuWkZ1kgO89BCuVZVn2WXemgP80h/DIq3gAHOZV2xVFG9o2VC8dZKQUx4igjOSQg8ILD LO8wy1mkxISkYpmSrThMCw7TwnmaWLCqxAXS7flzxBsiJIEQCZ8TJLO4BD1/kmJPCZxpkjtN8ggJ wgRbUIwwjQkpHSCCZBqRjoLKUUTaSzJ7CUYn/r4TWx+GBMMwdxTkDMPsHhkEvEFYOAgKpwH2yM/q BhidML0bYZQC2+kDrln4l+//7/9VxfhNw8tpere7Afo4wu35tjsHnPaBqHkgaB5wmj4uwc9pBjiw oOZnrVxoovPvbzc929Chsc+p73OqHlbVs/0r8MiqeFhlF2GlwIqCg0lc+JZ/O/MrOJN4UzqwySP5 lZGx0UHKTk/a6Sls/hR4LW0FzJSFSXSwshJ7DByQf0iBGZHYI+f4Hj22uxXdpUX3AOnzIRMdhAmk +cf2aDHzZsy8HtrdfMW0CRHCRlrEuBU1boUMW99c+AgXmsrnBkVd+bKipnypKp+rqpeqmlBTf6hr PtY1HxD7KvKvfCwrvvFMvYnL+6r0tiq+q0ruqlJ4cY+bsuq2qCSUFHclxU0R3Z5s/rdV+V1VdlmS nBfFF0XxVUlyXZbelCXXJclNUXJdEFPgIL3Jy27y8puc/DYnv8xJLvJicJ4jXOQl5znJWVZ8lpWc ZSSnaelpWn6WUZ1n1edwIaM9yUIBySrhFLLVIMDqjh1+BaXDSgTpUZrcL5Oy5WvssfZwDjPMRYq7 SPEWCRWFcplQHKa2wZxknjR2akcSLfAhQBASERJAOEuIFgnxIi4hfT4mniRYkyRrkmBPEpxJgjuJ c6cUk5hgRPYc/iQqmK3WJCxCYdEwLBmE5b0YYs/Bt203Qh+CMHMQEPSD270QcxjZHoR4fb945BcN /bx+4H0vtFkN0eLOLSOP8cP/9b/z3/1p1oVgb7b2GQOfqOsWtNzsNnZ+H5d0dTdyziaQ/Ydd87Gq vm3U+gGrvs9s7sMadsvDqrtZVRer4maCsovw7VB2b5echCLyb2fkgY1QsDPzJPyMrI2RsxELslYm xXYGWPAIyK9ZGz1t3QLJ1dpvIaQsDCKCZTtpZoCUGflnxo1b0CFuYiR2iQ5xEyFmokdNWyCCQYC1 x8QI7tBDRkbYyKTA58BKlo2gaSNoXA8aN0LGzZCRFt7ZChsIId13Fz5hNWoon2qKZ4qXuuK7CxXF c0X+XKaoyF8I5OapLHssfaUsw+Pq8qECC8R3FdFtWXxXktyXZfcl2V1RDm6LOKDJS+/Q6kvS2zKQ XBXFlwUCDtdQALUgui4Ir/PC6xyq6Dovuc5Jr3Oy66wcwIXznOg8KyTkRBeUEedZEXQ4TYtPkkBC 6aA8TatOksrjjPgkKzrOADGF5DgjPc7IKBdedThKS6lLwmFajPtlEjrIKSTLlGAJC5K8ZZKzSEhI sBOiZVx6mOAsExgBIqr/I/8QQbhICAhJHITzuHAeWyGax8TzqHgWFU3irK+wCTH2NMahEIwjPAo+ RsMkKhyHBRgB/YikH5b0IvRemNkLinohziBCH4S2BwFRz8/pBbYHQc7Az+97BX0fv4+5EHzTDm7k 3RwD97d/92/+gP13/y7q4FQC/KaP2T5gtRy8lo3VO2B34QJZ7FlVJxM5r7m36x6S/6p3m7C/XXUx qk563cWECA33dtXBKNvpZSeh5GSAspO5OpScTFjwKoKNnrPSc5YtkMfByshY6GnzFmoW2d6jMDMy ZmbGwsyQAz1rJWQsNEBcsGwlzLSEGTowUlYmcWGPQdilg6iBFkewjXRU6BAxUOwwokZ6zMRYETUy ggZ6aGc7srMdNjDDBkZkh47mH9nZCOy8p1gP7myEdmjEAj09qNsKar//HekjhkJd8ViRPVE81+Qf YESVsqAie8FNWfqNl683j0XJiqcSRVmK+lgW30OEkvC2AET3RckDQfpQlN8XpOCuILkrSm+LaP5i QKKel1KIqeQj/4LrPP8qS5ETXuVEV1nJVVZ6mZFdZuQXGAEZwQrKCKIDMeK7CzjIzjLy07TiOCk/ TomO00JwkhZRiMFxWnyUEh8TJK+kJbgB1F97pAsokBRTiA4pFgn+EuGP85ZxLoVgGeMtY4i9eI7Y U/lHncf5KxZxwTwmmEf5FIJ5RDgPC2Zh/iy6DaYUkxhrEmVNo2wwifLHYS4Fb0wNiEGI2wtyu2FR N8Tvh9/2Qms9v6TnF/ZCjF6Q0w+Iul5Bz8vte4Wgd8DreHkd/1Yr9HcFz5qVT//hj//V+m/+MKhn 5Q54ZXzwulktF7tp43Sd3K6HVUOT93DKsMDJhAhVF7PqZlY9zLKHAUj/dzIqDnrVyWi4mDXqXLJv fQVnBija6StgwasIlAVZCnL46kLaTEfyX1141QEHOiA6WLYye7TM3iZEiJtfwVcAGQf4HNhlEBB+ 03cXKB2YYR0jpKODyM4WucQLO/QIRNAzQnqIwArpmCCsp0f0iP2mX/9+RUC3HtTTQrjUMYIaelDz /XvhpaZ4qsjR3h9KQAodXqrEAire4pey5Lkkfiq+gjP1KHosCB8LqCKcv/FQFN4VBZQIwjvigvih ILnPA9ltVnqXk97hTIwQ35Dki66z4uus9DorIQcMgiz/Osu7znGvMitghPAyI75ISy7Ssou0/CIj Pk3xwFmav+I8I7zAXEDaU8LjpPA4gSo+SUlPUrKjhPQoIThK8sFxSnCMFwiio6SQQvRrDhOERXKF YEnCL1jGhcu4BFMA+V8QaMv41jLOWMbZi4h0EZbNE6J5HFsNfxbjgXmMO49x5lHAnUW+wVuEefMQ dxriTMOMaYgwCX8lwgKwYBR6ZRji9oPcXoDTDW63IhvtILPvY/d8zIGfAdp+Zscn6HgVbY+07+H1 PdzBAbPnZbQOOC182ProLsVv/+6P/+Xav/0XAeVPVTeverCNNaZm57acvKaT3bSzazZG2UbHdlRx MGsOJkYDST5avYtedNJAifR/DIKtio1WtdEqVlrZRivZtoqv0EHhG9YtahxsgZUFGTNtRdZCok4y v0vAOIAIqV0Gedyjp0xgK71H3k/vboK4mbYSIbaHT9qt+C7Jf5yyIGEkxPSbpBoZK4gLWuSZFtZv Rgyb0R1axEDDI3aeIBzRMtDwCRpaSLMR1K77dGs+LcGveR/QbAa1W7AgoGYEVN9dQPgpC766gP5P iXBfQJKFz0XhU+HXCB5y/BWPecGvwa93ef5Njn+bhwhC6p9L7nOSu4z4NiO5TktuMpLbrBg63ObE NznKhYz4Ko2fUIXXGf51hned5V7nOJcZ9mUacC+R9pTwPCU+T8nOknBBdJrkniQ4ZzAiyQVnKf55 WnCc4B+tiAuO4jBCfJyUHJEYk05+mOAd4qckvBAcJgiksZOcv3JI1h5yWCQ48wR2IQ6SP4+hpYsW UekiKlvGWEj4IvZmEXu/iNGWMeY8qJ0HNLMYsWAa5UwipL1TIrBmEdYszJ6FVrBmIc48yJkH2NMA axrcmgS2xiC4gj4OM0dk5+GQbYeiH8DyQ+gEGI3I7xr4BHBrevviUfBvhoGf8BXcwmevW9t0anpO YdfJ6ns2+t4NLPxlF+9AtfXuz/7lX/xvv+8U/K7qetPa32h73zfcWw2HvO4QVh2bZSutamdUrVsN O6dmY1at9IqNxJ7g2Co6aAUHXNgqov9DActG2UwoWTYL1s28lYbkr8gDyys5C2K/4qsLe7Q0AQ2f WIDMU7GHBYykkQ7wmDTSksbNFCzYoyVNG4D6yCUukP2ffNXSYkbS8PGZEN8hRPUbcTzu0GOErYge OmDDQc7fg5BunUAeaQHNVkAN6OSg2gio1gEs8GreHajfeVVrPlziVzXDr2L4Fb9yoSR5QG7R9rHk kLoaAaLHPBA+FwTQAbwURc9wIf/VhSxFTvBaARTIkjzfZAV3OeE9yIoJadF9WnybEt+mJbcZ8V1W cpcT32ZF4CYtukmJr5LCqyT/OsW7TnOvM5zrLPsytX2RBOzzJPc8yT9PCs+TkvOk9CzJO42zTuKs 0zj7BCQ4pwkuOI5xj+Pcozhc4B/HBcdx4UlCdIxWTy45yxh7GeMcxXlHCcA/RA8PsY4SwkOEHztM hE8mAhaeGA6MZYIxjmyPIwg/XuMvotxJBOsQbR6lz8KbiwhjEeEuw9x5ULYISKkNhzWNbE/C25PI 9izMmFGdfxZkrpj66TM/c+pjzgLbUxwC9Il/a+zfGhHo4wBjFKAP/cyul9nzbfd8LHLws6hvAU7H z6wH1hu+9R76//720Pe3g4O39X3y5836vrDhlnTtnI5ju+3abLg3q/uiiIbx5k//9W/+p98zc/8s Z92oe97VnW+67o2Wbatm4VZt7JIDKw0yT0fOaxZG3cqoWLZAyUph3yrYaQDvFMkNrWSBDjToU7TS 8pbNnBlQ4TdvZfdIpQ60LLXhUNBe2aWlXiH9P2lE8iEF5sJ2El++O1spfAXvbMCFpHEDOqAmjetR 42bEuBk1bcIC4sIOLbZDw14URdvXbcb0tIh2I2agR3W42cJNFN8CWHW0yP97ENSsBTXvQxoc1gNq 5H8zqKaBgHLdr3zvV6wdQATNO7fy3YFqbV/x3qemeZWbPtWWV7b5fUdC8rHqFF7T/vKVDxgKWITy fOT/ier8KwXuCQJwl+HfZQS3af5tRnCXhQjC2wz/Js29TfPu0nwK4UNaRCG+T4lW3EGNDKrwNiW4 TQpuE4LrOP86zrlOcK6T7OsU6xoiJJjn8e3zOOssxjqPc89ivPO44DwuPI2yTqOM0xjzNLZ9GiNG nMYIJxHOSZRzHON9hX+CARHjHcU4x3HOYYS1jLAOY2x4cQIXIpxJgHEY5S7C3CVcCPMhAhYYtPFp 5N0svkH2FrLP8McB7ihMW8S3FtGNWfjdJLC9CLGWYdEyKF4EhQu/cBpG/okCZPkJM6dB2jRAmAE/ qZODzYkXFY/0qZ8x9TEmXvrEuzX20cc+5ti/PfIxh15G54DeOWCCtocOI3pYivzstne7fsCs72/2 PG97nnc99w9d1/uqk19zs6seWt3D7DrpbQe94XpfcaFb8jh/+Zv/8/f+B+5f/ybv/MuC829qrh9q tr9r22hN60bVtomP34KNm7cxC1YS77p5o27ZJC6Yt8qUDrjPIfBo/hZaYW8zv7dZWGGh5WEBor4L iAWoqwNcQOzTps20cYPUfwiintihUSJQlSxFmAtbCcNmcocW16+njLS4AXUjYVhPGN5HqMYe1q+T hcewCRFiOOg2wpqNkHojoqWF1OtR3VZYs0nOms0wWYc2yT8hwIJ3QfVaQLUWVL3H+3gtpN4MqjZA QLnmlb11q97ua9Zcirc+zbpb/s6r3vDI33tVGwfSte9/RypLP+C7AMnPC55z/Je84GNRBBFeYEEO 8ADun7KA95gB3IcMpBDcZ/jgjkr+fQaPAhxuU19dSPHvkoL7pOAu8cptHPBvEpQCScENZkGMex3j EF5dYF3FmZcxxjmIom6fRbbPkfYo5zTGO4vyTiPbp1HmaXSbgkVZwD6Jso/DnOMI5zjKPaI4jhId jqK8ZXj7KLKNugyzDqPsI7yJlSnCnoe3x176LMCaBXApXAQ5RcPvZv7tXmizH6Qto+xlhDMMskZh xiJBW4Z+nIVok8D7kY/sObOAYB7gz/3smY81DjInBPoUhOjfXJj6NlaMD9Yn3s3JwcbMvzX1wQL6 +GALjLwMWDDywYXtoXe7CxH2Ge19RssNKbYpL7Zb+4zGwVbds9lxve+41jvOjbZzve7eqLvXK863 Ddd60/G+7nzX2H+XNb2V/PY//tHv/dO1P/3jkJJWcP62dvCm5n5bta3VrBgK61USe3rZwi6aWSUz A8tPxfpjxfy2vEcjmMkIQObR+TPmjZx5o7C7kTdt5Hc3cjjsbaJmdzdI4I20jOkruzTihYm4kNwh kV6RNr0ekjsbiR2iA1XJIW6gYeeP6dbj+o2Y9v2qJvR4xJm48LrtaN+HtesR3QaIQhA12XCQ7YAS 92j1G1RFS3/vV2PzR33nV70Jqt8GcVAC6LAeWq1GivfAr3jnlb1xK37aV71zyd/41Gse+Tufet2L eaFa35d9d+FLWfIJUyDH/5ATvGRR+R/z/A9Z3kuW+5LlPGc4z+TAfcnxKPjgmXjBhxekprmPad5T RvCY5j+kv6oBUnyI8AAdEq/cxflw4XalBqUDUSDGvo6zbxKc2yTnBi7EmBdRSoQI/SLKPI9sX8TY 51HOeQzTgXsWZp5FmMSICAtAhOMw4ShEgBFHYc4haoSSIoJNhr4MMZZh5iGkCLMIETbqYZiFLk1e 8LOWAc58nxlg/zvDmz+MKf4KEZ2EGB3fZi+0gTFxnqaNvf9xEqCNfbSRlzfxcacYB342gj3zboz8 jDFWHT8dXwEUlAh+zAIo8B51tP8eIoz38Yj/Dm10QB/ubxEOGEMvcwU+frsQwb0Fmq6ttofRctGb bkYTe757re7axBbUcjJadkHTsdXw/FXDg57/pmbHCvRD0fG7gvVH7bs/+tPf+xd//b/8K790PW1a Lzl/W3L+UHFtlPCda6Uj6vW9reouA5R3t0u720Xz+4L1twXzD0XTRml3s0j1f5L5PXzDrmdM60QE 03rOtJ5F3SUVpHc20jub3zFuEiOw86P/G9aR/BWUBXhEq1+PE2DEBmpMT4Id0a5HCe8jmvdRzfuI eg3nmHYtpoMLEAF7zlpI/S6kXsO2E6ZAn/cp1oLKdZ98DSL4lOv4HParNvfl7w4Ua17sPIqfDhQ/ +pQ/wQiv4o0XaZe/9SHt33nrU7xxy370yH/yyH7COwfyN37VOwwRgP/O9/9vXkH4KSf4kOGhfsrx P2V5HzOcDyn2hzT7Y4b1kmLhQMEBHzPcj1nuhwz3KcV5TnOhDAX/Q4b/TIzAvKBmR3oFLgXPGeFz RvScFj2mhY8p4UNK8EpaeJ/i3CVZd0n2XQpwblOcmwRGA+syxrqMbl/iEMUj+yLKAufIf5BxGmKe hrcpWCcQIUSACIdBAjmAMIAU7HlgaxGiH4YZR2HmisMQAZNiHmQugqwjfNXub8/d9Lr+B/lf/c/0 P/6nO+t/VHGu1Vzvh0HaJLQ59G7MQptj0sBJJ5/4tsjaj/B7tycHzKGPPvTS8dPYt4Wf4MvYuzn2 knEAC8DAg7ox9KwP9zcGno3B/lbfs4LeIzBQu25627XVdGy2HLSmk9bE/xhk3knHuW5H5t82HIyG HTdbddta3fFbsvy4N6rWty3PTxnT7yxbf/snv/9P/vSf/bfW7R/Tpp9y1jc587uc5V3FsVHEN+/e esWyWTLRQNm0XjZtlU3b+BwuWn4s7L4pGtdLpo0CAm9czwI0f9N6xojHDXKz8z6zs5Yxvc8YCSk0 /x1aamfzFcNGaoeQNGzESW9/hShA9fmYfi2qfxfD2bAe069H9USEiPY9XIAIIKxeA0QHDXSAC2th LSzAqvMupCIEycKzFkDgpW/98rUDKXr++oF83ava9Co2PfI1t+ydW/6WJFz+4wHFPqIu/wlT4EAK 3lKV4JX95JH8APalP3hlP/oUPwWUb4KqNwElPHrz3YUc/0tW8DmDyv85w/s5y/sly/2SZn9Js37O APYK3HxOsT8nWZ9TrE9J9ocE+2OK8yXLo+Djn39K8V4wIzKchzT7Icl+TLKfkpwX4gumjAC8ZOEF /ynNe0gRqDnCuk8x75LbtwnCXYJ1m2ADTIrrGAv1Krp9hU+GMOM8TD8L0U8CjNMA8yy4TQixTsPs kyD7JMQ5gggBdHjWIeJNdGARSP9nHIboR8QFwiFmBCYFNSymvq25j7HEXPCxD73bSwTb+l73079e +6P/Zvvf/7Og5M+H2PaD+DLdGgWFwwMuNpmRf2PifzPxr03878cH7PE+Lhmkw+9vjfZp4wPaaH8T sR+Q5JMKEXqu9wP3Rt+90XOt95zrPfdW10UDHYq2k9Z20KBAw75Zt200bKibDQetat0kOkAN29uG 9U3NxqnZ6A33j1XbD037T3XHm4oTnwBvGp41n/Sv/vy/+8N//l/+E9mbP0ntrRdsf5Yz/zZv5BR3 WWUrdpt3+d13+P4tmraKJtS1gul9wbhJhf9dbuddcWetaHyfR9QNawTj+sqF7M56xkAu04Z30CG9 8w4kDe+TWPVf2cBuswL5R5LR2Kn2vkYs0L0DUd3biPZNRPc2SqQgbR8iRLSvFkTU70PKd2HVWkhF dCCXmrcgpHobBEoKxbuA/J1f9nZf8tYrW/NI3nnl6x7p+r4CQ2HTLV93Stec0rdu6Rt0e4/0R7Av /elARhTYl4C3B5K31IHSQfI74IcIst+FlD+CsOrHoOLvAsofvrnw91n+32cFhAz/7zO8/5zj/78F /v+T4/6nLOs/Zdn/OcdG/fsM6xeokdr+klzB+pwkavyc5v6c5qB+SXE/I/lJ1mOS+ZhkPCYA8ynB AM9J5lNqGzynWE8pOMJ6SBDuMQ6S9NsE7TpGu4rSrqP0myjjJrp9E2VdhpmXIcYVaphxFWVehOkX ka3zMO00QD/77gL7LMQ5CRAdjgLspX+bENiGDssAE6D/H0UYywDtMLj1Soi+8NNwM/fTJvubcy99 7sULnIWPPfdujxFOz7ZP+Oebf/T7f/3P/yvzxp+UTYzOPrvnFg4O3g+8a0PfTyPv70YHa6OD90MP d+jikg7vpvVdm33XBsk8Cfz7rmOt7ybJ7zrXO3bUja5jA4e2bb3t2GzbN1r2jSYFwt9A7K0bNQuF daNiXq9ZN6sWtH0aHluWHxp7P1Zs70uWtYr9fXHvp5b1J9hRsWwktZs+CffNH//Bf/9f/Ne0P/+3 Id3fJq1vsua/zuz+gJaeN7wtG9eLO2/y/x+Zbhod2VWd/X/5J2B3e8bBA8aObbCZAwEcEsgLxhCH EIZgYuxuSVV15/nemud5nqtUmlUqVamkGlWap+5Wd6vnwd3tnt2z3TaQBEgIYPJ+/O9zJdtkvWv9 1lnnXt26Uq/1PHs/+1QXuOU+ZWHAsDAIKIsDBqj2q73mtax9LWde7dWvqIDsFwqG+V7DPNoYF3uN i3nDfE6Zz8kLvcp8rzxfkOby+tmcaRZyPsI0kzVsAaU+a1DRAzM5WJVOVp7OSa2sqCK3c4qafPSt LOoFzRSUfUMjgdReV9dmEsQvAo0kopmQmnA/oTTiCjSFSliuxvTghcmEuRI1VeLm8aipFLOMx8AO erBDGewQhcoPjyELTEQAfTUKrQR6CgwLEJMMjbgItJNyI87PZKRORpzNidMptp3m3vfCfy37/wss sBz83Urod6uh368F310L/mHV//tV7x9WvbD+fsXzu2XPfwNL7v9WN79d8v5mwfvreQ/wq1nXr2bd v5r1/MeM+xezYAHbO/OA/efz9nfmrG/PWN7umN8CZqy3Z21vz9lvzzre2sJ5a9ZyY8Z0vWO6Pm2+ Pm29MW2/0XbeaLuutZxXmw6wA3jhRsd5bdp+bdp6tW15o2m/0nQBl5uQlzwA8kLDc77uOVtzIZAd nOfqoHDH+abz4rTjbMNyto7YNMXrU2bYQNQ/NWE6M2k7VbXDFHxq0gWZ52TVcaTmPjJpXU47fF0/ kL73f6Tvf2cmzh8uBY5OsMeq7PEp6niVPFaRj1X0x8b9R4v+I+OWw6DzkvnoFqYjY4bDRcPhkqr8 ovHgqPHwmOVQ0XJw1HxgxHRg1LSxhVnFsh8sAPoHVC/sGTIhI8BsC9PukHFjkN03IOwe43aPSHvG LJBqNoaU/YOAuRa26F8y/P1TX9X883dLceP8KLlSFhYGxYU+frkg7ioIe3qN673yngK7XGA7g3xn SJwZ0s8OGBcK+pWsZXfSvTttWc7JiF5lGSzQawC1A/N5w0IOjKCfz8pzWWkuB4jzeXEmo8ykDYiM YRZSTUaPUL0wnYYKr7TTMgBGmM5IUHJbGaGZ4RtpQGimRUgjEEsaqOZv6b8WlxuwxqRaXKnFZCjX 9ThXQ/D1mNCIyc04Yioqb3qhAtpOmMtRUzlmLkVMY1HLlh2iCjARU6oqEKWqUWSEqRiMGOZa3FhL wPhsbCfk6YQ8A39qnF/Iy/M5aalPnsmwM5kPvPC7RffvFjy/X/T9YSnw7nLg3ZXAH1f8f1z1/nHV 88dV9x+WXe+uuv+45vmfNe//rPn+Z9X3xxXvu2CKeed/zTp+M2P/Vcf27zOOf5tx/XLG/cuO6xcd +y9m7D+ftb8zawXemrG82bHc7FhuTFtvTttudRy3Os6b084bLcctkH3HdnXarGK52rFdm3Fcgy4w 7bg27YSmgIDu0ILVeQ2s0bSDFy63YGRwXKzbAWgTiLoN9hdqtvMqFxr28w0IP7ZzcLNhPQfin7Qg pmxnp6xnoR1MWl+fsJypmE9XLKcqcGk/NWE9WbG8VrWenLAfH7cdHQ8cHPIMGHYw//hV+sUvpcWf zWboDZD6hO5kjTs6xh0bl06MuF4bdhwYMx4oGg4VDUeKhqNFy9GS7XDJsncQ7CAfGpEPD8uHhuTD o4YDo4b9o8b1EcP+orBvRNwYNG8M2jYGHfsH7OtDhvVh/fogu39Y2BiU9/Ur+waNeweNayOGXcPK vmFufYBfHVH2DMKlfmVAXh+CvX41aYwxr3zr88+9+OUv9VqxRsYA+X9PUVkaVBYKEggb+sJar35X r7SrV1jp5eeAgjhX0M/2GmZz+rmMcSFlXUwbF3MisKAC2pjPI+by0iyQA8SZnITII6azKNK0QUsZ /XQGVqWdklspGW3ACCllGkjqO0n9dEKZjivwozqk8QQK53V1pIUAA0m+DjNvFPSvhzxfQ1OAMhFF QJKfjHGTMX4iwlWjwmREnIyK1bAwERYrESj7cgU9Y5iIGapxYzVhHI8r43G5HJcqMaEaF+oJqZGE biK1gLjUjsutGPwZ+lZEmY7pO3H9fEqeT0qLGWUO1qwCzIFzE8J04oOM9IcF57sL7ncXPO8u+N5d 9P9xGfD9cdn97pLzd4u2/16w/n7J8e6y848r7v9Z8fzPsuf/Lnv/76Lrj/O2P8xZfztj+82M7T9m HL/sOH8OfWHa/cuW45dt+ztt6+225XYHjGC9NWO7CTpv2642bWqpd11tOK/WHdebjuso+SAvwHoF Kv+M/UrHdnnaegUebqt9oQkucF1ruK/V3VdrblD+pZYNuFAzX6ybLzegU1gu102X6+Y36pZLdcvF uuVCw3a+bjurcmHKcr5qvlC1nKvCxnZ2wgqcGbcAp8fNp0qm0+Om0xXTa2XDiZL+JDBqOjFqO1aC zOPcGLXOxFmP5vtdz3+5+4WvjnqYjTK9t0IcHuGOF6XTQ4ZTQwaILvtQ8tEfHIWKbT446jhadu4f th4AYQ8JB4fEg4PsoVH+wCi/f1RZRw/Te0eYA/3WA/2OjT7X/j7H7mF5z4i4e1C7d4g8UOD3F6T9 ffq9EOaHxOUhftcQuVTgloasuyHDF/SrBXm1j13My2My/sMvPvPcZ5/08K8sppjFnLLeZ1wG9UJt 79Uv9Oqhni/lpOW8uJjhl7LCYkZcyErzGWkWantG38lAqoGQA4/xc1luFtVGdjbHz+UFWDtZtp1h Wxm0tjNCKy20s1IzI7UyW2G+hZCBJtR5GEIh1YAON0UYk1tRGeTXDitTUakShQwP0UWsRiV1koWb 0AIUkDdkeFA4FPCKWtUrUb0624IXhHKIm4gIlQgadctBrhTkx0NiOYyoRFAQQu9J6Kspvppkq0mm lmSbKa6d5KZTXCfJLaSkxaS0nFLm49JSQpmPKisJ40rStJaWl1PialZZSiuLKWUxrUxHBaAZ+RMv LLneXfS8u+hDQGtYCvxh0fu7Bedv56y/mbH8etb861nrb2at/zln++28A9rB7xfdf1hw/WHW9rtZ +392HL+advx7x/2LjvvtjmfLCy37Oy3L7Zbpdtv81jQ4wvYmNIWm9UbTdqNhv9lw3KzbgVtN+62W 5WbDeLNpvNEw3miabrYtN1rma03TtYbxesN0o2G+2YAHrDfr1ps1G3CtbrlaN18FC9SMVxuma3UT PHYN9lPGazXT1Zr5jZr50pT54qT5AjBlgfXchAl4vWw6WwELmIHXxkyngBLyAvAaxPui/lhRPg6M wiodGZP3D+sPjtn2DVk3Rkx9ph91/f2ntd/96xD2k6KTOlSEcm04NsbvGwTdKhuDwuFR5cCQvHeA OTAiHyqad/eLu/sNu/sM6wPG9X7wiH4Dcv6wtDHErw8TewbJ/QXDvj7z3oJtvWBbHZLXhuTVAWrX ALc3L+/N6/f2Gvb0GpYGxIV+frGPWiwIq7221Zx+BjZD8mwvM+IjXnr+H//qyU8IP/5OO2qaydAw ESxnjfNZqOfKrBryZ9LifFat+RlhMSvOp4W5tDCbEmfT0kwa5YTNkNNJC9MplbQwk5VmINhDtknx 7bTQSgloutys/Oow24JID4V3C7Glro0kFGShkVDtEBPrUbEJXoiialwFPUN5j0vlMIgZ5C1CU6hG xGpEqgR5sEM5CLIXx8OAVI4q5TBXDjETsAbYSogvB/lKSCgH+DEfB5T8/HiARx8JipWwNBGR6nG2 mWTaSbaT4mZS3GySm0+BEbjltLSUlFdTykJcXknqF2LKcsIIzCfEmRgPraETE6dj4kxcaYQFoBYS 3/fCfy+4ICP9bt6r4vvvOe9vZ12/6dh/1Tb9e9v0i475F9PmX06b/23a8h8z9l/POv9z3vXbOddv Z+z/1bH/GozQdv6y43ln2nO77X2n5f5Fw/GLhu2dhuV2w3i7aXqrabrdsrzZtLzZsL7ZtN2qO4A3 gYb9zbr1dt14e1K5XdPfruvfbujfbsFHDG81DG/W9beAmv7NKYOK8a2a6XbNfKtuvlkz3aqbbtQM txpovVkzXK8q16qG65PGa5PGNyYMlyuGixXDhTKsxrMVw5lxxKkx/emS8WTRABwf1YMdThaNJ0bR 5ckxw7FR/dER+ciIvDFIHitRG8Pc3kHhQNEEYf5AEdILPhUiXV3fffkLX9/x1RfS4osrA9Jif9fa kHikwB/qIw4NSPv6pH1D+MYws3dA2tNPrxUsq0CfbaVg3dNvh6K90S9s9BNr/brVPmxPXtyVV3bl DWt502K/uNgnLfYJy33S7owe2JMzrOUg6ghzBW6+ICz18isp43xaX88Tc/1UOYprf/h3Dz/1d9/6 Pz8YNzMrCUurV5zO8SjM5yHAi520OJsRZ1TZz2WkuRS4QJxNCTNJQOyAElJyJ6V00ijSgM5bSQSo HYZfSD6wh5gBA2Yroajom3EABk8AJlmh/h7qXk34MUj4Qj0mToX5yTBfD4uNiFyHhA+FPcaXwyww HmLLCK4SBhcI434WrajgC6WQMBbgS2AKP1P20RMBruxjKn5u3MeW/bDnx9xs0c2WPNy4lx/38eWA UAmKEyGpGaPbcWo6Ts0kWXDBYppfyvCL4IUkvxjnV1PyQkxYTsizYWEuIs6E+EaIrQXZZoSfCrBT QQ76F7gAmAhKH5ypduy/6Th/Pe38Vdv1qxbg/I+W/d+all82jD9vGm+3TajCt0xvty0/n7b+W8cO 08GvOo7fTNt+3bb9W8v+84b9dsN5q+68UXPdnLS/OWm5PWW5XTO9VTPcrhnfmjLCenvK9HbN/E7d 9nbNfhuo29+uW9+aMr89abg9ocD69pTh7Zrx5w3T23Uj8Fbd8CaofdJws6q/MQHA3vjmlPnWlPHm pOHWlOEG/KhmvD4JRjBcm9BfnTBcmTC8UdZfLCkXSvpzJf3rY4azY4ZTJfm1IqCcGJVPFvXHRxXg 2LACRjg+Yjg2rD82AtYwQl84OqJAvN/dRx8eE/YPGTaG9fshrg8Z9vQT+wbZPcO2xSzXK/wY//Yz P/7KJ4QffCNt/OFcv2WjIG708QcGxT0Fcb3fvK/fuqcgQ4/YXeDXUJ4xLRX0a/3yWq+wnpf3wJRa IJd6qV05YTUvInolKP7zfcJ8r7yQ16+mDKsp41rGuAKZNi/M5bmFHLmYpTtxGcr4bC9VjeECvvOL zz713Be/7BL4esg2m3QsZLjZND+fBcWK0wmuneA6KdA8P4NWoRVjpxOwQcBmGsVjsaMCm1ZKaqmV HzkiJTeTslrehUYUEBERuRHW18MGBCg8BlMtPxXlgJq6AtUINxFmJ4JsJcCCkqsIvhoQJiKgcLro J8cCdCXElgJUSd1A7Bnzs2CK8QAHpb4UFIoBHih5mZKHLvtA9vS4ly266DE33OHG3FzRzZU88AB4 QSj7xbJfqgRksF4tAsCfKsGEsjmntGJSA1pGWGzF9JMh2Chlnwigj3uYMS9TDnBjHrbk5aohuRyQ 4T1jvg++X3inZv5FzfLzKes7k9a3EZZ3pszvIPUaQJO3GoabdQTU4bea5ttNKPjWd+rwEePbU8Zb VdP1iulK2XypZL4wZr44Znxj3HB9wnhrCryAVA0Kf7tmgre9M2X5Rd3+85rjnZr9nTpgRQaZNL49 YXhn0vQObCbRC2+DOyYNb04qt6rKzQnEDaCiv17R36gYblSU62UZrRXlZtV4fQL9LuBaxXilbLw0 pr9Q1F8YM5wbM74+YjgzYjg5Kp8YFWE9PiL9qReOjeiPDCmIEcPREcPhYeXQkHJoWIEZdmNEOjBs 25PXQ6nf2yeuF6i9fcKuXmYlj68XdRP+7/s15L985bl/+NIzzL++0Ar2LCXZA0Pcnl52Pe/aV/Cs ZKEvGHflidU8t9orL+f5lV52JcvuyphWU475PAusZrkllZU8jLT8fC8oWVrIyMtx/XLCsJI0LiWV mZwwm+cXsvhSBocw004KnXhPWHn583/9zWef/ay48weliLMZdzeSrpkoMxNnOmm5HROm42w7DuLn W3EOpN6G9BLnp5PydFJqg/LjfBvux7hOjJsBj8S4hhpvmgl02FiPCTUkdaEJXgCBRcAIoCulGTY0 Q4CxEZbrEaEOdTXMAZPvUQ1zoPBKgJkIsFUIPwFuwg9e4JHaw8x4iBlDLkCMB5iSny75maKXASMU fUzRxxb93KiPG/XzFSj4fqEalMp+oRIQQfmg4YpfGvOIRY+wyRjgRZRgBYX7pXG/XPbLlaBSCejL AQUuR7zioJsf9ggFB9vvFvIOvtcp5Ox8n53steH9Dgo2fXZqyMUNONhBJzvg4N/3wq0J/ZsV45sV 060yYEZrxYhuTsg3qvJVYEICrlUVqMM3oDJXDTcr8s1x8XpJfKMoXhqVz4/ozw3rXx82vj5qOD8G KQUqtunmVrAxgdd+PoW89vMp2zuT9rcnbchxU+a3JuG3mG+WLbcmrDdhM2G+MWECVV+tGN8oG1SM V+BywnSlYr5UNl0qmS6P6y+NKZeBkh5+ennceLlsfKNivjhuPj9uPjdmer1oOjNmOl00nxg2nhg2 HRsWjw3zx4fFo8Pi8RH52DDiyJB8aFA+qIIsMKhsDEjAgUF5fUDZ06/sH9CvZ9kDfdxGgd2XF/aj AxlmLUvuGuSX88LyiDln+gHx/edf+Pzj//L3zxp2fKcWoiHzrGW5fX3CUoaBfL6YQVIHza+k+dW0 tJoUd6WUtbQ0nZWnQfZQxtPMfJpaypCzOXI+Sy6m+IWEsByWl6PKctywAFUuK87l+LW0binRtVLg odoP2tmXvvk3zz72ZPf3vl31amfiwmxav5gzLESUhSi/GNIsRMhWlG5GqFaMaUSYZoxXFS6inJ+Q kMJjXCuGvAD2mY3Q01GqkUA0E3QzwTRidB3uxOhmlIV/UT3ENEJcHUULoR4QGgGpHpQgUUwFhckg jwipQOYJsuUAU/YzqC8EORRs/ByEnDGQfQh5AfQ/6iXHoXGEIPYzJR8z4qbHvOywmwZGPOyIlxv2 wlAAIudA5NAFQO2jbl4Vvzjs4oec3P+GGXLQBTtbcHB9Tn6TgkMF9g4hZ+N6bVzazGbtYtLKp+1S 0iZlbWTKpMtaiAyCzFnolJHImqmUiXrfC9fH9dfHDTdKRhXTjXHAcH1cvj4uXh0XLgMlHngDLivy 9QlUouFH14rclVHu4jB3fog/OySdGZRODyqnh5XXoTKP6y9X9FfhsQn9rQnDW1Uo/qbbE+a3KuZb 4+ab46abZcOtsv5mRblWNr1Rsl4p266MW94oWy6Pmy8hTBfL5otlC3CpYrlcsV6qWC+UrRfGbeAI KPtblExQ/4HzJdOZoun1MfOZMcupouW1UcvxYfPRQdPRQfNRiPSD3JFB/vAgr+7Fw4PiwQFAPtAv bvSLB/olYKNf2lcQgLVe02rOsK9A7+8lD/TSB/LsekreyBv3F5T1LL/aa1nOWRaLL8/2/6iW8AVZ 7T984ytffvbxf/3mVxLcvzQDP9nb17WUIebS3EzGMJcRVjLMaoLdFZPXIuLuOLcriTezpiYMrWnI 88xciljKYLMZfC4FgmcXY9xKUFiJoO4wj7wgzef49VTXUnzHrhw26dlB/PCnX/r4U//0pS+O2IRD Ke1GWrucpdYLwt6kZV9CPhzqWQ/3TEfpVpRqxyAVsxB1piJ8FYIEJPmoAJEGvNBWm8IstJIQ0Q5j jZgWaCbwdpJsJ8h2jADgDfUQ2QhTjTDYgW2G+UaQayJHiFN+adIvTvqFyYAwGQLEybBYDXJgh2oI UgdsAAGowMzrZ0Z91KiPLHqpoo8a89Fo46VG3fSQgxr1sEMuGuFmgUEXMwDythJ9VqLXDCtdsFCw Ar0WKm+h8xaqFwHP0OqGzJqZjJnOmJk02jBpC5Mysym0F1ImPm2WEkYwghI1S3GLEjXJKTMZ0+sS RiJpIhImMmEkIzIW1xNRmfjACyUZ2WFMf70IGG6WTLfGYZWvF4VrwJhwtchfKfJXx0RkkLJ8dVy+ WhKvjfFXxoSLI/zrQ9zpIeG1IfHEkHRiWDo5Ip8uSq+PimdHxQtF8fKYdKWkXC3qr8HLSyYEeK1s gF96bUy6XAJJI81fLEG+MqlGQEFLlbrxfBE0b7xYUjtCyXypaD4/qj83Ip0bVc4i9GdG9OC+U0PK a0OGk8OGE8OGo4OIQ/36g336A336jV5uoxcqPH+wnz8Eyu8TNvqE/aCfXljF9bywr1fckxP29yu7 c+KurLCWNa9lLXvyzHqeWs8x6zl6T1rckxHWMwoU9pWsvJKBDM8s5anFXmGxVxq0aByvfvNbX/7k 337mY6/8w2cDysuNJN/Oy0txdiFO7E6LC1F6OS7vjktzYW4tCYKUZzOmhZQ4EyXbUWI+gbWS1EyC moVaHWFXAsxaVFoJMaspcT5Lz+fopRwxn8bbMcm544Uv/OXnv/7ZL+SwF9cS8okMfTiNred06xl6 X0q/PyEej9IbMXw+wc3Fudk4D10DMlITHexAOxDqUb4eBSPwswlhMSEsxdjFCLUYpRaSFDqSzbBL WXT0upDmZhN0J0a3IlQTeYFuhNkGZPIQVwvxU0FxKqBM+uWqX54KyrUwBHJ5IgAzLwcjAAr/fq4E aR+mXS8kfGbYTQ04cBViyEkN2Il+G66uIHKq30YDfXamYKPzViT1HMjbRGSNeMaIZ00UVGwo3Tkz nTZRKSOZNJApA5k2khkTmTETaRORNuMJgw6IKdqkAUsZ8LSBSOmJhEImFSppYBJ6Gta4nk7oYWVC ejwg60IKHtETEQMZVsighIdkIqJ80BdulpWbZXCBgrwwZrxVMr05bnyzpNwqireKAqw3RsXrQFG8 iZoFGEG+OiZdLYpXS9Klonh2RDg9LJ4clo4OCocHBKi9x4b44wPMiQHmtUH2DOoa4rlB6eKwcqVo vFI0XQU7lE3XwCBj0oWSASLN6yjbGM8WUYU/D3W+iFwAnB1Szg7rL4wYgctF06UR07kR5eyIdGZY Oj0inRqWXhuWTwzJxwekY4P6I/0KcKBXPlCQ9/dusdHLgx325VkV2HDreW5PjtudhY2wlub29kpr GbAGBBhxLSPuypgh2K9l+LUstZbh3oNfg4STNK6m2NU0tpywLSWNy7mXlnOv7IozS2Hcbdzxz999 7tPPPv2pT30C//HfZe2vzAdfXYq9uhim54L4QoxeSYlzMXE+pe9EjTNRPYo0UaYdJecTZCPJQTKZ jontCL/sp3dFhN0hfCUGP9KuFujFXraTZsOi5oW/evaZx77A/PSVw6GfHc/Sr6W5o0l8I6fdk8L2 ptj9cfZohD0QY5aTIkh9Li6AFzpxGJw3kz/fgKYQYdtRdjbGL8X5lQS/loA+pZKGJAZBjoc4t5CE B8hWmKgF8KkAPunHqwFyIkCX/dS4jyq52XG3WPZIZa80DnHdw0OYKbqgvFODTnLAjoPUkdptRL8d CjtesOJ5Cwb0WvCCBVV7oGAhe01UzkgCediYaZB92ogA8WcAqNtGAsSfMlJJI5UwkMmtDaEClyQU 9qQRixt7IvquuKE7KncnDdqEok3rsZSsSyo4EIeaL2GwSeuJlELAPqAn/QoRkMmgQgX1VFChQwod 1jMRhXnfC29OGCG0QN2+NmZAGalkulkCRyhvluS3xuW30EaBy1vjypsV/S0YYMsKahAl6VpJgrIP 4jw1JB4HF/TzBwv8gYJwsI87VKAP95JHC9SxPvp4gT3Zx58ZkM8NG84Pmy6OmC6PmS4XlcujEjSO M8M8cHaYPzciXBgVzo/wF0eESyMicHGQvzjAXxoSLw9JV0bkK8PKxRHx/IhwdgiaEX96EBBOD4mn BoWTA8KxPsShHHcozx/MoxVRkDZ6hb1Zbk+GBdZhk+V3Z7hdKitJZk9OXE0LuzPiShI24mqGXAG1 J/nlpLCcYkEeKxkWWEyzS2luKSksJbmlBJR9cTmhW4nrFrJCA6prRukzveTRvviTrz/9zKN3P//X T/b86LleN1YJ45NxUJfYicrTUUMnaliM65s+tuMnQJCzaBxmphJyI61vxI2NmH4uwCyGuL1xcjms W0holvN0LWXOWPBvfP2bTzz06Hf+6jODVnZfgt6fFtYT3J4YsycK3iH2xLSrYXwNZo2wCM2lE2bb YbYV4VpRrgntAEZdSC8BZirIQuCZDnNzEegL4mpCWo6LcyEeLmfDfCfEt4Js3UdPeckJD1lyEeNu ctxNjUGwdzGjDnrUxY442BE7N+rgRpzskJ0ZsFMDNhKAYJMzY3mzLmvUoo0Jz5txWLPvkUMQOSOh 6p/MGciMXgU24AIDlTKodjCRav0nILe8TwxkbKDiBog3BAJ+agTwuAELK91BpStm1ET02oQJjym6 hB6PyVhKwVMykZBUL0g4GCEl43ERC+rJgEL4JRUZIIMyFdbTYelP5oWy4WpJf2XMcKVouDqKuDaK 2sTNkkpRuVGUgetj8o0STAr6ayhTIa6MSRdHpbNQn0GKBf5IL3+wF3nhQC93oJc52Esd7KUP5emD eeZQnjvaK5zok18b0L8+aDg/Yjw/rJwfks4NcWcGqDP91OsD9LlB+vwQc36IvjjMXBpiLw9ylwZY 4PIg/8aQcGVIuDwgXBhkzg0y8PAZldP9zCmV4wXuWC8LHM4xR/Pc4Rxs2ENZZn+O35flwQvr79kB jABAhV9JsktxBurhakqATILEj76s3LGU+tlCTFiIGRcTzCL6EpNbTEO2h1SvnY/LCzH9YoxejDDL IXE5yDdyfClG7Qriy6GupfDOCcv3d/7whb/+1FMff/yjX/val+hXvpZ1djdCYiMst8JKK2Sc8bOz AX7WT0wHqDYINcyNRQ3VlGUibJoM62eDHPxobxzfFdXsTusWU0TOJf34+b+/99HPPfnkZ3ya78xB SU8qu2L8QpRbjPC7AsJqgN4d6VkKYbMR03RQavjpup+uAQGmFmKnQuwkTKw+etxDTsDNIAPJvx3i Z8JI/9MBrulmmx6Aq3u4KRdTsZNlOzFmJ4dtxIidHLHTw3Zm2M4OWplBGzeEYPstVMFM9llQyEEu MGFZE5YxatVVlzNvKh+HqAOhJaVHQGXOGIgt8UPO0ZMpiDEyJBkyqQeohJ6CNabHowoWlbGIhEUU IorEDxagYgaAhMv3wKN6LKrXBZXugNIdNek2vRBRtDH14yD7pEykZWSBhIjFBV1C1KUk3CdiXhWf hPsBEfcJGKxBEX/fCxdH5YvD0qURPcSYC4PKpUH50pDyBtThEenKsPTGsPzGiKQivzEKxVy+PCJd GhZArhcG+QtD0vkR5cygfKJPOAoFOSds5Pj9ORbYyIEUmf1ZZh+QYfdnuANZ4XBOOp6XT/crrw9I 5wakswMcGOFMP32mj4bN2QHmHDDInu9nL/Rz5/u5CwMAf2FAONfPn4Xm0see7mNf62NPFhAnCkj/ R8FrOe6gyoEMeyjHH8ywwEaK3pPi9kAVRYFf3JPmd0HISQLcUpwGIwCLcXYpwS9DhIYgHRcW4t0L cQ0wFyPmYvxcXJpNyHMJBR3aQCWPCnNRcT7MzYfZhRC9EKKWYkTNh8+EejoQsENEK6AtuvEE96Of /cPXP/XIA89+/MEXvvwZw47vDfr1MzDDBrialwXaXmIK8FFQq8fDhmJAKvuVakCaC7EzPnxXnFuJ UstpueIl//V733vyY48/9PCT//z887VA90yUno+KCzF5Oix3QuKiT5rziYshsgMlPWKZCghVDzXh oSqbeOmyF7mgBBXeQ8F+wstMeNlJLwdUPUzVxUw42IqDLdvZsoMdtzNFKzVqIYct5IBZxUIPWNgB K9dn5vosfMHM9JnBCBSq7RDpDRDssYwBSwNGWCGuwx1CVTuKJYktkOZT+g8AFyRU4jKxCRR/IApJ Hoyw6QUZ9pDkSSCqIEdsGUHB0WMKmEXn1+M+PRE00KjC62m/BHWeCSlMRGIiIhUWyZBIRiQKCEuw J0D5YAdwQUAmgjIRAC/wOi+vCwrY+144MyCc6RfO9otn+qQzfeLZPvF8v3S+XzhXYF8H+oTX+3jE gPB6PwCC5E8XmDO95JleCi7PDcqvDyqv9YHIhUMZYSPN7Usxe9P0vgy9nmH2bJJmd0MgSbL7U8Lh tHgiL50uiK8XxLPoV1BnwQi9FLwQNuf66NcL9NkCo/6IPdPLnurlgBM59kSeP5Fnj+fpY3n6SA5g jkD9hy6QZ8EC8EsRECFS9L4khdYEuSvBQTBejXOrCR4sAEZYTkA7AEVRC1EKJtzZCOy5hRi/GBPm ItxcDJuN0rPxl2fir3YifCcidSJKJ2KEko4I09NhajqEvsScC+FzYWwl0LMYYGsBDYSQeowt+/Dp sK4d0BbsIvvS9771t88/9dATn3n84Z989xsRzYtl26uNoFD1sW0/VYfQ4qWq6OtXQyWkVLwcCLXp 1c74dXNhejnK1Pyi+NI/PP7oJz5y/6OffupZC6ltxrqnI2BSccrPV33SlEfsOIWWg2178KqbLHqV EQgzdnwLBzHmIsc8EHLIMeQFEi6LDgLuFx3UqJ0esZKjNmbcwRet7IiFGbHAHWbIQg9ZqAGo/Caq YISVLpjZPqtQMPMFE5830hD1e8005PyskXhf/Kj+G/EEZHUDkYRAsln2lU21kwmFir8nfhhpEzL1 vgXiMkQaRFTGNy0Q3WTrDiifjMjICypwSUQ2n9zyAu1VGK/CukTKKzMeEUzBBxQ+LPEBgfXztF+g gxIblFm/xPhECrkAgQWgNUBHEHQqWFD8wAsnC9zJXv5kjjuZ41/L86fywmkEezpLn8zSx3Pcibz6 QIE/AZrs5Y73cifz9Ok8eSoHMKfyoFXhVK94MiceyYgHkvy+OLM3Qe9FZZnZtQW3Fmd2xdl9SeFQ SjyekV7LCKcy/Kks/1qOO5VXf3uWey2HNscz7LEsfwSaSFY4mBUgHu/PiHvTwt6MtJGVNjLCvgy/ nlZJCXvS4u60sCsprMQRy1EWlA9aWo2xK1FmKcIthtn5EA0sRJilKLsYY+ahukao2TDYge0ESfDC TBDuQHLg2hGhHZbaYaYdYlpBphWi2kEGaPmZpp9tBYhGAMkYKTnAowTuxxphqhVixj1sLcxWofb6 6SkfWXazJQeZU7r1P/nW85//xLMfuefLTzzyk6993s+9WnAyU36m7CEbXqIdoJpBfjrEzQXJtlfX 8uycDxHNoNAKKi6d9m+eeeb+Bz76+MOPaF74+2ELX/boagGiGsQqbu2kQ1+1i5NQ0m1k2YkXHeSo QxhyMEM2YsiKD1qxIRs2ZMeHHNigHTa6YVit2CACH7BS/VDeTWS/mR6y0f0wzBrxXiPWa8ILZqJP HXIh7UPlh4SfN4L4mbwJ9M+oOR/GUphPMZR8jGTaAFLHgSRke7UFgPKTCp3SMyk9G1foqEzGAAlH gPgVMi4R713i0fdBHUEXEXRhQQtrVMSiIjxDxsE78BKJiEq4ahPVI5LaOCRdRCLCAlwSQR5+SoZ4 eDMdE+mIQCBEAn4UErGAoAXCMrIAAPr3coDWJ2jBBSEJD8sfZKRjOeZYjj0GCkxzx9Ls8TR7Is2e zDCvgRGyzOEsdyTHQ/6BHA4cUTmeo1/LEicz5Ik0eQKezIGDxNdy4rGUdCjO749Se2PknjiUZWo1 DtC7UvwudNLO7o3zBxLC0aRwMsmdSrIn08LxtLjJiYwE65EkfzjB7YPZEEiJwFpKWkvJywkR/Yer pLgGFR4hwB7dhGAD8R6iS2QTfjHKz4H+w+xckEYE6NktyNkgOROEREGAEToBAipwG1YYM33ETIjt hNhG0NAIyg2/seGHlWz4iZYPa/l1DQ9e9xB1r27Kh0/4KHSu4hdKfmEywg67teMevugi6kGx5mMn PPSUm2m7tXMBvOneWXe8GhF6NC9849OffPbh+x/48qee+MG3n7P1fK/f0tMJULMhcgZWP7Ho727a fzbtfnnap4GanxKx57/4t4/d99B9D/7Fc1/8/KDQXbVRUx6+4iYGXa+MOndUzcq4USja6GGLZsSh GbRhIxZ+wCL0m/F+MwYMWAHdgE3Xb9P2WTQFY0/BBGj7zDi4AJV3kLeRzBpR2k8btCm9BtasCQI/ ljXq0nptBgEbTA08eEZPJGUsIekQCjqfAf3DrKqOqzhSLxI5EZcoFTohM6DPCFIvoWobA/1DLwA9 g9ojom6r/kPCB/QQirRRURdDYCp4TIS3gXfIqIBtgT6l2+odki7G62KcNilgcR5Ly1RCwFMimeBg RsBjgi4maGPoeW1Y6gmJXWGx28drN+0A6SioWiCiNhqIZ+974UiaPZpmj6W4I0kWOJpijibpY0nq WJo8nqGOpqkjGfpojj2a2/ICjKVHMsyRFH0kRR2Bx1LMiSzUc+l4Bmo+ty/J7o7TqzF6OUYvRanF MLkcoXfFuN1RdneE2R2FGMNuJNgDSeZgkj6QhA2/keD2x1m0Jri9MWZfnN0dQ8bZHefXYsJKBBCX I+JSRFqOsIthqPAQbOgFdETDzMboOSDCzEbYmRDTCdEzYWYaiLBQ3iHVNINQe8kmKumQ5wG84cOb fgJoBciGD1a64SWh8rd8bM3HQW2velGFn/SSVQ8x6cEmvdiEC0e4dRMebMKLl33EuI8oeommb0fZ 8XLJzo052Am/Aqao+MhxF9Hw6BpuXcOh6bjAR9iEdWeU/pcf/+0zH9t+58fuveuzn/z4d77xFf3O 76dM2LhnZ8XfU/Z0lRz/WrX+tObp6TeYur7z4iMPPnH/vR99+rEH8Z++OGwlRu3wWgbizTAUfLNu 1MgMG+ghEzlo0g5YNKB2ELlaz3V5I6JgxuBOv4VA941YTtHm9AD8CO81wWPoVCeDZluo8FhSXdXA g4ANqB00n5RxlHmg1MtkWgF5E+igUgHxqPpX67NaqEHeYIdNiE3AF3AZl/AEOtKBDTrViW/qHFV+ 8BSWgNlWJSYhnUfg4xIVk+mYTEUg6qu1PQZpX8C3ELEw+qXQRJCSw3w3EBE0YdC8rPYdWe07IhkT 8BgPjoAGgUVETI1b1FYXgG4CfxtEL7VngYXhU+974fCmBZLckQR7JAFGYI6m6KMpCjiWIo8liWNp CnrHEdQjWOBQhjkMI2qKPZRkDiWoIwkwBVxyGwl6t9oFwAULKIcgYMBcDtO7IuwuWMPMrjC1Hqf3 xNGTuxPkbrQHzYP4GWBXjFlT11UIOZB2ouxyiFsKsstBYQlGxaCwGGTmAtQcSD1EdaJMO0xOR6hO hJgJkx2UZ8hWkGiFyGaIaoILwsxkkKxCrggQkwF8yk/U/Hjdh9cQRN1P1iG3+6iGT80/fugO3IQb r7ghhGBTAXLSR1WRsDGg5NSVndqKSzfhxqpe3YRPN+7Tjfm0bcdP6o6XJh18yS6Me8WiC1ai5MKq Tqzpppp27bwHXw12z3h+thDS5rnv7/z2d77wl0/cde+92+/a/uknHnn+q58hf/C5IPtCr+3lontH xbyjX/+q9KPuzz7yyQc+8viDjz7xo2/+VVh8NWfR9VrwPhOEH8jzzKCR6pPxgh7vM2B9RrzPjBXQ GT6gyxm3QJo3Qvgh8wYiB1VdwtKSDsgoWM6gjr2bLlC21Ig0b0BAtUcFHx3Ig4BBxiRK+CLYgUFK k7GYCqrMoiozEY+8Z4EYAt+MQPDxKNR/XquWaHCBTj3PwTaJq2tKJlISDkCFjwtYWIAJF0ZdGgjB XmVzCt4chGH+RUqWyZCCiMgaICRrgpI2KIPOwSnwx2BBRhdhsShHRHkiwuOQoIICEZJULwACIiwi c0VUwrzuT7zAgAWOxJnDcRoALxxXkxIUfNQdkuSxNH0kwx5Io7F0f5Len6BA9vvjzP4Ysz9Kb0Tp fVF6DxT/MLUSJpci5EKYhO4POWTTC4shajVMrwapNdgEiV0RElgNE2sRYjVKrkbptdgWq1FqOfI+ 9BJ8Nggwi0FuIcDP+dg5Pz3rp+YgwAeoVpCC9A6RHkp920+0/WTTB3UeoOroaJEBoKpPebCaD0O9 wIu3vFjbi0/7iGnvJmQHwcx42RkP1/FwTTcz5SRrTrLqwGtuuuog4XLSSU5Y8UkrPmUnanZ8yoFP Oomqi5iA1OR4ZdLxyoSDKzk4mH9LLqbiIcouvOHCO15qzk/OePG2D/4GbcXNDVqJpPAz5ZUXnnvu S/fcu23bhz503/Y7H/+LbV/93F/+6MUX6Z1dNorQvvQvX/jk3zx078ceeuijn/v8sxbsR1kLljHp 0iZss6TnDEReT+RlLK9geT0ONzfP89FhJsQbgw5hhBXP6fGsnkAoeFbG08gOWFqBZ4jsZlNAxf8D 0LE8JB8ZU7MQkmscCruIJ6DSCkRCpNQ72vfQqZdY7E9ACn/vbdBTUEQBVC+oP9Vt3k+CTXiUcMAO sIc1ymnBC/BbogL6Xe8TByApiSSAjAbVXu0+qgehJekgWYVlbUjWgReCEpJ6GHTO4hEePkUlJDqO zpHIsEQGJXIrIMGw/CeAL/yM5oOMlAALUEdi1JE4DRyN0ycgyae440n2eJI+DlkIhRl6X4LaC2U8 Ru2O4LvDxK4QsStI7AZCxFqQWAkQywFyMUAuwDQKmTwAsZycC1HzIXI+QCwFyZUAuRogl33wJKk+ jK8EySXVO4sqaBMmFkI4sBgigPkgDp9dCFILEPt9zIyHmvHQoLEZP9vwUk0fDVW9iRIO0fRgLQ8G qb4B+vSQKhRQc2M1l67uhrEU63jxGR8x6yMRbgKY85BzHmrOQ8+52VkXN+Pk2i6m5WIaDqrlZupO uulipuwUwkLWLETDCuB1K14DUziIKRc5YdeU7V1lBzvmoCc8VNlNTnqIqhOv2fAZD9OEPmLtKtq6 oFOkDZwT3yG+9GX6x3/9rf/z3Mcfe3D79rvu+PCdf/Zn/9+H79j24Ec/8dTTX/3cZ77yzDNfvP/B T993/2NPPf3Iv/70HwPCqwmjNmnQptExPgETa1LCthQOUt9SNZGGYIOyDWR7Xdqgg5qfVnCEvAkG A0hC0MV59aRd3tI8pCA1t+g2eU/GaCKAS5S3IcwgiWIxHkOyhDeImk0vwHvgheid6msR6mVSVJF0 KfXlUbU7oAaBUCcCZA1dmNUAar9A34JFOC3kqKREIkQEJP+URKbfI4Xugx/xOISxrfFBFxY1IVET FLVBSReSN/MP2AQ6FBUT6JgAK8waMF8TQZEAL/hFfAvQP6/CYQEO89IfeOFwgjwcI47EyKOqEcAU sB5PsEfjzLEEA93hYILeF6eQC2I0KulBHMS84idXfOSqj1zxU4tect5DzEElBHwwDJLTPrzjJ2a3 vIAvgh38qll8ONhBBawBlR81kfkQrkLMBXEA7ZELNiGguqoFlpzxkB031XKRbQ/T8NBNH1v3wso0 YXXhTVSNiYaLbLioOoJWwWoOXd2ha7l0M14C/jb058F7HFjHgc84iVkXOeOiZlxMx8kCDQdds5NN J9Nw0i1oEy624WSn7HTdStctVMNMNsxEw0I2bNSknaraqXH0zZSuZGeKNqLiwioO3aQTq9p1E3pd 00ZV7LoRU1e/HfcwL3/7ua997fNf+NzTj3z6qUceeeLJj3zkI3ffc//dd939oTv//MN3fuiOO+7Z dvcj997/yLb7Ht1+/9MfffDxF776Sa+wMyJ1x/SalFGXMgAQ7NH3VlkjldqUOvoPBvhmtkGg2KNT UWdb0PwmIDP1K6fYn3ghgf6Lgu59I6he2CIOouU1MYg3vA4V8A+8oE2KGgRsBO2mFxC8yp94IaV6 IaYeCoEFwqBbfnOPXgiEGA0Q4WCPvBbhYTZBJ7EoNb1HGu5sIiEXqEZALogIavFHOUcbAiOIuqC0 VfADPGhbF+LwEIMHaZ2P1ngpDUjdw2rcnM7NabdgtS5G66a3cFHaD/pCnDgcxY9E8WNx8ih0hwh5 KEIeDtOHI+AL+lCc3ojR6zFqLUKtRqiVELmEvEAu+cklH7nkpRahtLpBpcS0G9VtqLSg22kPPu3F OwFiNoDkvejHwQvoU1teoFZ89KqPXYKaD2YJquIPEnPwcABtZv1QwxGzfgLWDrwNvZCYBqk7QO10 3Q2jLtfwICNMgx1cIGCihSAbTgpKOgB6bji0MMDC2nZqp91Yx43PqLSsWqBt07XteNtOtOxkyw7x nmrYqbqNqJpwYMKET9noup1tOvmGla2ZqEkDOWkgaiaybqWqVrpsIcfs9KgNH7PRoxbduKNn3NpV sWjLJs2YrKuaiH7jzn79jpyNZF9+8eF7P/rI/Q8/8JEH77773u0PPnbPg49uu+veO7ffte2BbXc/ cPcdd9595/YHtt/3wIe3PXDn3U989MG//N6Xnkzqe5KKJqnXZk2Q53Xq/z1DJ5kpI7kZ8jdTTUpB p/oIuKmgQx6EvFnkcQRSkQ5qb4QFkWtRtlFn1aig/X+9kNz0AtcDdogiO6D0AtU4ATEJ6b8nIWx5 QUWXfN8R/9sLkMdiW9OEmmfUOQIdKIGeeYgx2veBSzAFCmNqjtpsHPH3Oo56WKSLbqENc9qQuqIN rw0KuoD6NYGXR8ekXlbrYzQ+Wgv4KY0PADswGjfTY2c0CFZdaS2C0tpJhI34k4wUww5HdEcAcESE OBwmDgXJgwHyUJA+GKb3Rcj1COQieiUMUzC1DF4ASQeoBXCBl5p3U3MuatZNd0CcbmbaTUOZnXaT LRfeckM4x6Z92lm/btGPLfshSoEFoJvAyoARVr3ccgBmARSi1Cykbvz4AjjIT3Qg23swZCiI3B54 G0C0HETdTqiVn255WegOLfCCl2k5qZaDaqs0HXTTwQAtB1tzaKccGlhrzi3qTl0DmoVdV7NjUwh8 0o5X7UTVDoGHKlu1ZZu2DMI268oWrGzDyzZi3IKXLXTZTI0bcKBsJstWqmSlRq3kqJUatmDou1qj Zsy6s2h6dczYPWboKipEUSYGLJDqdwT1GL/jnz9y11/cv+3+u+77yPa7Hrj7vo/ddf/Htm+/d9v2 u+8E7T9w113IDHdt3wapadv2u/7i8Yc/Jr74V33Kq0lJk5a1OSPUSR3KQmi2RacuKb36rRYUf4nY jNzxzflU1sWkTZDg3/cCqr0cEh6sMfV4MyLCYKuJI6mrgUcl+b+9gIzAQy/AkiJ0FiKOrNETE3ri PKBJvNcaYvx7CO/ZCn0EDdfqiKrOqgC0A1YXYDUgZvgzwALQGgJUDxgBCHO6IK8N8Bo/1wPABl1y WgjzCFbjex/Q/CZMt4fpdoPUWYQHeUHnY7UeUusmNR4SeUH9LHQBjY3ptsHKau2M1sbobLTORuls pM5O6izEn/SFqO5wRHs4rDsU2gQ/qHrhYIA+EKT3BIk1lO2JJXQixCyHaPDCoh+8wCx6mXk3Peui UcbwsE0313LQbcgYdlAs3nDqmm5t26uZC+iWAhjEql0hetVPrfq3jLDq4Zf9zCLYCg0a1HKQhnFj 3kssqKFo2os1XRgylBtvu7e80FC90HRRU7BxUw033fYybQhOdrJtp9p2umWnmzaAaTvYtoOHjDTl 1E46NAjYvMeEHdBVVMp2vGwnynZy3EEVzT1FS0/JqhmzaMetWAlqvgUfNemKRnyTMRM+ZibGLOSI lRy2EkNmbMCkHTbqBpSeUdPOEcMrRWP3qL5rRCaGJWLYQcNPo1bWyfzs8Y8+cd+2e++476E773vk 7u0f23b3w/duh4x0z933feje++6458Mf3vbnf37Hn//Ztjs+vH3bPc98/LF897cH5Z9mJG1O0eUN UNg1KSj1MnQHAgS/Od4m1f97BkJNoboNYDEZxlUtFHw0sUpbw29c9QIYASUTTqN+maUe8iMvaJAX UPj5oKQnVC+oP0JSR0c9IgFBBbwQ5bujYAfEVohCOQqJGduUdPR9oPjzWJAH8SNCPMQkdAdtWJSO YBAO0D1esivMbaUmEL+f7/Gw3YAfvCBo/ZzWw/S46K5NnLAy3S64w2gQWzd7HLTGqd7xMNAFtF5a B0ZwET1uosdL94A7IBc5OI2ZBnosFKCxkFqwgIrOTn3w/cJGBD8Qxg6CBUIEAowAHSHAbPjofT5i r1+3O4CpdlCnXZh/QboeEjrCooeGteOkph3UNARsKMV2pgnp2kZO2ogpdOSiq7m0TY+m5eqZdmkW vDhMFsseZhk6gldY8oqLHmbBQ8y7CRg3FtDQAXELJa4ZFzntItpO/D3U/OPAJ23YhA2bdOATNh2s 4AUYDWow5EIvgJBjI1XQBiI9xP4JG5J9xaYBJp26KWQNDAxStmrGLVowQsmiqTjIkhUfsxJjVnLM 0rPJKEIDyQcYMWnHjFjRqBsxaEeMulEzXrQQI1Z80KzrN3YPmLr7ZGrIQA8asRETPmjcOWjo6tMT A0ai38RmJF2vmYGq3vXdb33zc8/+3Wef/urTT/zNU5/89MOPPvkXj9135/Zt2z+0bdufP7T9zqcf /sgjD9x1z/Y7tm+//5NPPpPCftwn78gK3Vmxuw8mBaE7IXQnpZ6sERQOxVmTQNFdlxJ0aUGXQWBp NM/2xMVuiPRRrjvCdsc4zWZhj6kZCU2s4AUE7HvCTE+URZLezDYJEfUIMF0MmgLXg8o+2IrdfAbF lQjXE2R2hrke9bOaCEo4IGxU7QFkBx7fdESIQXcgn4A4A6jg40EYVFltYBNGG1Q/Ahs/rUEf5zBY 3WyPi+vx8FoH3Q14OczHY24GwgxSOyR8B611MNrNhONgcRfcpHs2vbCJndLYSY2T1NixbifR46G0 LhIe0Dg5rZXpMVNdVrrHSvWYiS4z0W2FdASOwHpsxAdnqvtDxN4gvu7X7fVj+/34/iC5AR0hwAD7 /cS6T7Pbp12FkBPAlyDJQPIPkEjALnIOBk8nCUaAmryZt9t2tmVnG3aYQFHpnnLiU05kh7qjp+XQ zLpx+NSCi15wMfNOdHQz6yTnXfici1BRX4gmWXAW2UYQWy5w4kADCrhZU3UQJXNP1QGqRmebJZC0 jayh8RZiPDrqaVoJ2IAf6w4aMk/FtsUk/DEuyELgUKJs05VtWAUmX7NuwkmBEYoIctTSNWrpHrX2 DJkBzYhFO2LRDUHl12tHwQ4mHIwwCF3AoBsw6YYseJ9xx4B5Z0Fih4xCv4EcsbB9xp19xu5evW7A QgyYRBgqM7Iuq0DY7nFhP3Xrfmh++Z9sL78k/uCfvve15x++575td3343nvu/PSjD1E//ecffefv 7rv7zjvuevDJxz/h1/6kT+nJil0pfmdW6s7KGiDO70xJIPIdqhG0KYDXpNgeFU2K64lxOyLMKzF2 Z5TtgiQDeo6pxR8EH0XJBBkhCitUZgZ5YXOC2MznMfVhKPug+U3CTHeI6VYPPFFWD7E9AWZnkO0J spogo0GNBnkBZIwFGDSxhmFoBVVz6DJAQzvA/BwKLeAC2GwOtrAHj2ziZ5AvAjSgCzLgBY2L13pF zM70WMluNO2yOgel6hyCDQU3NQ4Wc3KEncGsDOZELQN5wbnlBXhGC8/YCY0N67HjyBQ2osdG9sCY YGE0FuSFLhvVZSEQMCbYVS9Y8Q/mhd1BElj3U+s+ct0HK73HQ+92U+seet1L7PJoVr3aJa9uwaub h2HWi8E650GHMNN2rG3Dmja8AcJDUqQaFqpmoSYt5ISVmEBigxAC5benauuZsmlaTphVsenNPANN xMlOO8gZdJ6Dd5yEyqYFwFZEA7KQYysUqeA18AKKLtoxczek+qKpa8KBl8yQ8ImqlZi04JNmfMqM 1yzouwCEjZgwa6sWnYq2ZtVNWbGqSTtp1qL7Zt2kBRs3aqs2ctyElRD4mHHnmAnoKpq6gTGTpmiC X6Qr6TE0KRjxEiQlAzZi0KEGYcQGTa8Omnb2ycyggQcvDJqYgmFnr6ErpxC9BmLIJBVkqqBoczz4 5dVe8dUY/ypouyASBUGn+acfP7z97u1333H/Pdu+9NgjkGy5l7//0PZt2+557JFHP43/9KWgwif5 rji7M0K/An0hq0Ag2QmtARV/iOsIbYLTJNieJKsBYBNhdkSZV+OQZDgUY6KqnpHyEaB8KPLgl544 9Av1EsUVXg1U6tlRBNEDlT+EWkBXkN6JvKCaBZ70M90+psvH9KD0DgUfiRxqOxZkcT+j8zNYgMU3 8TE6L0yvLOZjdU6ozES3m0JZBYV5usdN9rgpDeCFPI/QbgLBBio5fMpNaFx4j5/G/RQG4d+Fa9yk 1gnaxrVuCgecJOaCFToC1Q1A44COYEMgO8AI4CC0Nlxj1XVZ8W4rgUKRldVa6Z1WcqeV2KQb2QQH I/RYdR94Yc1LrnqIFTdidQt81YXvBiN4sWV3z6JbM+fWzrh1HRhmYXXrppGq8YYFqyNAfuQUgqpb qCnzphdIkKgaxWEC1VasPRNmTc2qbVi0LSvYh2jCWOGgWzYc3ASvaoHyEWQDQdVs5JSNqNkJ0PMm VRs+YdWBv8YhzJu7AcjnEO8rdrwEkjZjZZUJlQpgwSpWbMKEgUeqZhxtzBjov2zQVAyaskFbMerg 5pheU4VoZMAApHPjToShaxQwdheNPUWjZtSgLRuIcT2Mw1hRwUsGomQiRo34kF43aHxlwLSzX6b6 9WyfgSwYyLyhK4+8QCZ5TVYk8yI4Ai/IOwriK3nhp+CFvKQpcNo83a178UcfuxN9BX3/XXd8/S8/ DmrR9/zky594evv9Tz/w4Ke++bffsnByFLwggGh3RpidMR5U3YU6gqSNsaBnJOnEFtokVG8OeSHO QUZCFR7KfpDuCtFd0AIidHcEbbqiTDc8hnwEDUI95A+hkxnNpv4RvGoErhvt2e4Ag/AzXQG6ywe5 BcZVuhsGWAg/oHPwAsjezxJeGvO9h5/BIbF7KdAtOrH0QIBndB7YQGRSgX+p6gWtVz3qUV2AcGHd bqzHT+o8uMaDaYI0HqRwP8he1+MhtD64TyCcmNaJgY9w1QVdsNpUrGQPij2UzoppHCSsPSbtTmQE osdA9JjBC9ROM/6qGXsVvGCDjIR1gVmQHTQ973thzknNOagFJz3voOftJLDoIJbd5IqbWnZj866e WZem44LMD2gbTk3ToW3YtOCCKbMKKshE1UxOqkaYMpMTFrJsJUs2QgUvWXXjKqDkqgWbBIlakFbL 8EGwkhWr2/D/n433/JLjSq59v10NCd8wJOhJEHRDA8J779G+qtIcmz7L++pq79Dw3pIEjYajkeZK ek969z98O042AEq6a8WqlV1dBjOMX8TecSL77/AXk4iEYiollPrxXycR0e8UITnZPlpA+Bv6grG3 f5kOnjXZz13vRVf/0g1+Q2KjtncDCrhdBDIfFEwkv/diVPW/dlHYw99a/j+2/d9M/KUbvGh6v0/E v3RCBKzxzx2JeNGWP7Xli4560dI/tbwfW95Pdf/nRvBLM/y5Ff3YDH4w8WM7et7lz7ryaSt90kD9 jx63gkdtYuF5t/ywET2sxfcq/pO2fNR0njbZw7p9vaVuNuSDqrhf4slg4ZN12zas27rxzYE9H7zf xX+UMD9+dPfaDe9tGHh3x85P0ggJqW7U9N1WCBl/kzQPiXlyu1VkPgWky83yquYxZV9cL/LrZYmq jidR0q8h2wFFqlZSeb1ILBiOqK3gBVdLrwL5TwEWAMJVfIJBY5mSX8ynYgksZHMbEEEsoM4Hi+Vw gTrCKgt4XEjREcLFFBHMGRyWSClFwAH5PwcEioYRagpgIRt++otm7LMQI3xiIfbmI2858ZcibxFc RLDY/nwEkUlQLCTAAT0C+kdMJQI4TCVqIsoCXsDr+ugFJH56Pn7lTSReM5Rt8suiFzJEPxLoF31f ItA++n9g4T+m0v+cSiHg/89M+T+mkv+YCv9zOvg/s+H/B4U/rf9zRv+/M/rfaDLp/X3W/+dp75/h Q/vev0BjmEDV/Zth4W/99G+9+K8dCA9Ky58nIhPBC6RlH9U7+ms//qd+hEDd/stE8BvkDWkVAJI9 CTuQRfxbL4I4/xUudSJESmfxy4T/az/4saN+7Xsg4n7FulMs/Nwjb/sCvrUbkaTvBL8aAYMv/akX /EZT0Pi3dvhL0/+15QOEnxv615b3G6Lt/dbxf2yo37rBT00P8aLlZxT82KL4qaV+aOrnJn6oej/W QETwYyP4oeE/a3jPGv7zVvCkox639eNW/LAePG6hEchHDfmwKR/Ui/fr6eNGcq+injScp/XC0xp7 UCosNfhynd9v8NupGw/an6x7e826tzdufPvgjk97CfRAIRw8vnHTe+s2bdnyzpYLF08i/ZZhgRsh LQLV0BGCW8bV3oafLXk3IdrNodWKiWvkheVKyq+mfCnlK0UFp2xY8AwL3rUiXaMX3DSB68ViFnoR 1Z6+S1+lkaZapPxn80W+VKYnl0gd6cWymi8JRDbMXDLzfJR9qKNFOtgCBQHEzIKp82BhoQi170O9 I2ZiAgF04AIynpoCnQJQW6FX4hnKf5+ynR49BNIebWIh1OCCVFOopgNFSgl2AOInVBkLUyR7ZMZC N6To+Goi0P3Qo8fY68ReI5R1/CoS3ZCbkL1AgZQeXul7E/5rFv59qvivE+m/T5b/n8nSv/eTf+tH /z4V/MdM8J8z3n9M63+flP86Kf9lUkHz/w3if9KjgIeF6+wFf6WALIn/SuU3+adejPidBo/RL/3o ZzNv+bkfvSDLSUMYlOu/9MN/NCD80vd/61Fxzoo5cvJXGtcgn6MXnRDp/aJH8dNEQNHzED92vB/a +oe2AhFL3vAsv/JjJ/ipEz5vhT+0IFqiF63wpxYqNtnb5x3/eSf8sRM/b4fPmnijj4Ah/bGNa4of O/7jhoIXftLyVgM1vIUybqIFx6ofUODF8bNm8BgJ3wiedsKnvfhJN3rYJl9sIrxbVY+a/H7VflTl D6v8UaN4rxbdr+lbZXa/5Txosgf18FZJX0vFnbp+VrfuRGPJleGP1w28uXHbmoEtn+/8oApLW883 2Nnt67cPvLl+6+YNX+z8qCHGls3IfaWCbFfXSxLK55bRPNdNZOkNkbNS8cnPFvECaCG1nMrFRCyk JGyIlCL0kkdRMlMgo46uGhaMYqFqT+ldRqDgq7kin4qdmYQh/5crnnkSLMj5ortQ5CYEPWM0Dyzw klE7C4meo+kNXdCBbymcKwaZLAcCQIMGO+CCftRAA8JpkZ6B5tEzgUKt7oWiH6vM25qhEPliKuMo /kXdT1QvFp2YtyPWIwvMs8jmQj3DQieQHV93fTQFPRHqbqDbgW6EGiw0A9EOZSdU7UC1fQq8suOh j7z2C/82Wfr7RPFf++X/3S/9Wz8FC1D1/9pX/zYpAcLf++KfJ8RfJ+TvkwpGGHL995csAITfuwjo 8/j3icQU4fCvXQiVEHL6RS/6aSJGvOjHxAIsJ56HD0WF7+kXXSSh+rmjf2n7P7c9E8HPeE07JB3e Rg6HP3azCH7o+j/0PASukfzP2/oJ1V7esy5MuoP3KwJZ+qSBhA+fNwIEBMyzVvC07T9qIMODx02f VDpAaHtPGuppSz1uSsSTlnpQ40/a+iGKuannD1vyflPeb+BRPWjp+w3vHqLpP2zgo+jxQdO/19Aw sHeb3r2Wd4fWA8J7jQCO9WHDvlcef1RhD8vsXiW9Uw7u1uTtqnu/Zd+t2w9qyd1KfLfo3SurR/HI g3C4Njj08Zp16wa2rBsY+Piz9+oNOM3hKj/98YZ33npj/ea1b7y7beDi4d3zZcrVRTjWIol2EkVF BRxuFvX1or6GJC/RYIcOlYBGypZTDo+wQgjoq2WPCj4h4P8hVvsIsVAiFuZSGtTPl+QCsaBMzvNZ 6gtikbiQMwmfh0bC86m9UHQWDBHLZblYlIupWi7qpRQyRi1Eci7CM3SNQM4TBYk3m/qziWkQkZ4O Nan0UBEOdArgz4R6CnLFIwp6sewlcgIR0yMyv5/Kbiy6iWzHrBWzTsLbiWjiOmFdiP8sCAewoLuU 56IXeR2T5wChqUXDl83IqwEHX7ZC3Y68hqcbHljQHd9rabDw+qztX2FOJ0Iav/TCv0Pw9Px/6fv/ gmzvqr8hdWl4QmOWvyDzqYyr33vq9678S0f+1pa/ttWvHe/XXvjLRPSCVEr8W5fkNyozqu4L1PN+ 8ENP/9DVL6Bkev5PHe9Fx/+lE+A1L9r0sp/a4c+9GBn+A70l/KkbPqfq7SFvUdjNBR59qvNtH0rm WcX7ocMedZ2HPf9GXQSXz0wr+24letquPa5pqBp84A8173FDIm437NtN9xb0SUM/qPrP6uGziv9j DY/yaVU8rYmHNQbFcrchbjflzaa81wxgTlG677f0gzYuYF353bq4XZV3qorWD+o+Hm+bwDXdXVWj 2cuNCgo+XsZuV/itMicljwIOqwu1X89GNyHiZkXdrIiV1F0OnYmzI1+uG/jTW5vXbNv49Sfv9pDY seza+W/e/+ztdQNr163bsHH9Z59+nAoLoC0l9mzqLFXEctFHL7ieqqvIwIpGfb6ayKWEL5TFLBI4 ducTBm1/rQy176/QMB+MoG6TLL9aDJbTYImOZX3k4WyMJGczJDP4FExoSc9CBSH5Swp0oFPMxXI2 EnMJTYEWoKPQQWI5n4AIMZfyuZRlMZu6Myk+h88kEpXcLDYE00nYi1UXWZrKSWNspxDwsL5AIPOB A/4NU4GY9NhUwCcDKHm3l/BOREk+mdC7eugI8AIxshrVnpK8H4e9IGh5uu15NWk3Pbft86bPgAAZ 52IIHCbjYCL0e76H1tD1FPWIwOsGAES3fQ9R91TD95pgIfCBQ1O91kh/n0T+B3/rZuHjGi6A7EDP /2sv+qWT/tqhmg8i/tL1f+so4AAQ/hEsdGjS8kvX/8W4gxe9GHLlR0iUlk9J3vUzEJ50xJO2+AGO sq2eNdXzhv6p6UPMvGhGzxqo50jy6GnTRzynyUz0vBMQAi0Pyf+kqZ+2/CfQ5y0q9c+q+mnFe9Zx H/Wch319pw0xKf1LF6bc/PXYe1RWj/GCmvqhhnepJ3Vxt2XdaTu36g5K/d2KelT1H5W9p2X/YdF9 WHIelt37FfdulVEaN9TNprGlxIK6i9c3kN4cLCBuVcWtqjS7B362KpOdT8FmXoerrXs3axDn4lqZ I9Vv1ZQZ6dDcZnWwT+oF2h6Zya5VXBTbhVhNnxn7ev2W//XWprVb1+36cDv+o9+IoxmXH/py99a1 G99ct+5P69Zse+ft4Utnb6TWStGeLTlLNRjY4GpK+h81ea5CYgYsLMZsrsxnSgxoLBRNuaagck2+ 2PjTpcRbNJ50joKUCZ1DJaj/kiaNJEKQfmIqJTdK+Z94M6GcCSQp+YQC+mcG9TxSs4mcTcUscCjy uRKfTt3JmMIoFtWP/F6IbAy7ieqkvJsIKuyRmIgkDTBD1fNET3P41ukI7QAUcLoIWNu326HT8KyW 73QCtxvRp5G89yXsMALpPREEPT9o66Ap/apwG5q1fFFXrKE5SJmIgza9WGcgGC9A0dUK0SGCKGoa egndQXVCrxv6Lf2aBbjXfzIsoC/8tUNm9veO95e290/I/HbwohVBt9CYhWyp/0tb/dbRP7fET03+ c0u+aKufIOCRty3K5OdN+Er9rKGet/QP0PZdI2z6/o89j0Bo0fNEShN2Nfy5FT9vho/rEDD+o7r3 uA4BA/HjPYVub2pDAcq7Bgj41dNm8KTpP6nrxyjaNSSqulnjD7ve7bqaFEPe2ZNdy7qTho9q5cfN +F4Fmkc8rrEnZf9pJXpY8R8idav6rknaW3W1UpbXyyqbt98tew8qwaNK+LgS3ChHt6vJnVp0o6IQ aBB3Vs9wxY2yvEFVXd2sKqBxuybuNPhKRV6rqOwGq+sVibhZlfT6EjwsxY2ymW2mUC8kaZaQuiV3 sSIWEz55buTrDVv+19aBdQPrvvtwe59YCOalunDw5OY3176xZs0/rHlz09bNRw/uXQrz10ruQoUt VFClKauvJoaFskR9XkatjthMic8U+TyVaz6XIMgsXIVDqdAx1pKZ0pAsN0GD+iSYRW7HVMxRhPum DvcTmsDToDLRM6Rn1CyqdwQoyLHOvmRhGqYVpTtyVyNmUzGfBAgRdI7OWOgGQTdWHZL3hoVQ9AIx YWaYxIJHLPQ8NuFxNIgpSH3tNpTVCpz8hZOxNZIJJNT8TsBamnU8wqGtRFsBCr/jBQ2haorVPVDA MhZanmx5CqKoqURLyTYlv+p6aA0a72pJPKNbWrWIBdkw3aFNnUL/kYW/oOD3wr9NxLDA/9gh/f9r y/u5oX5pqhdUwwO4UeiZF23/Rdv7qaV+bqmfmuLHpvyJRo7Ibe95Eyx4P7SIhacQ5KTJ9VOI85Z6 2tE/9PznXVR49Zh+pYmauve87v/UgEaKAAJwyFh4WIOSUY+Q8A39qK7osabAgnkGL/DvV/Xjlr5X p/2ZmxX3Xh0qnT9suO2xK+z4sTku7qQVmNYHSPuy+7TmPivGT4vFx+XoYTWEXLnZ0Nca6mpDLVW8 qzRXD6+Xojul+EEpflyKn5TCG6XkZiW9VU1WF+xNF7hJx1LShKCosJtV51bNvlWzrlXVckkslfgK nidGIJbUSpGvQNuvSnfjWxOFAAtXi+5i0Zkvucje9unBL9cP/MO2zWu3bdz14bvIopXYW/Q0uzSy be2GN95c86c1b24cGNj93dezenwhtherqOHuVAB9HpA4TyDyqTgvxGIuJhCmSa4wo144QEDM4xGm GEU+0hSQ6JTS3kzsT0c0jZkK4ZElKjb0dj/JlhMknUNFRtX7cpbAwSv1dOTjyT6JGd4PEexVgIIp oATDG8H2wur6E8SC1yG7ylsB79LzECrIZz5hiOiHCtHRrOfTjz1fdjRvaMfLDXrjV0puDtcN7UL5 ACLDguh6EknepCQnw9uQqq55RbpVie7Am/gtKNCEAxIeL2tI2ZTChAQLFFo3lWp6uorf+kREE+x4 qibEKxZ+Rqq3/F874S+tgK6b3s8taBj/R4DQ8H5soozj0fuhgZxHzZfPG4oeoXayeSN+1aIRzY/U F/TThnzaNCy0yJPer/F7KOAN+aihHtYUqvrThv+k5j2pes9pOBk+qHoPqwTCs1b4hLggUQQKHtYk cAAa+NWjmqbHun+blgT4o3bxXjW8C1tadR43nPuV3EooioNX8odPzqri1SS5WYrgLu/X5cOyeFjm RghR9q7UnKtVlGVGm5A0e6FFgltlfacs7lech1X7ZtW9buJmDcGvV/j1sjAdJLxZQkQ3S/ENeoxu 0TPBYgkWUtA0viyAwLWSuEajHoAADQ+Rz1eMsF+GwUxVdvi1mDoLpdxclKudOv/F+o1vbNu2buuW 3R99MBHp5Ugs+qJksx3b31m7Zj1aw5q167/8/LMpPT4XWfNQQamLnLxaSeYjBek+a1iASoRomU4z Fty5InleYDIHGZOYINmPlNakcxLfgOBPrnpYORUrsNCLaA7TCXjbZ13YT19C1U960kzy/clAT2Ys kG6hGaYJmvygpE+GMsvnHukTE1SQaVDT9HhTo7YDN90LZcdjXZ9N4PVgIUJKk/5BDW9p/ErXJBs/ dyosjNaV2wkEUAIOTRDhCURLC1T+Noo/1XYFqdPwVVVxBC5aviYc8AI4As9rag0WXoZqKd3W8AWq AQo0sVAzRNSUrGtR/QMLP9b9ZzVke4jkRAtA0aZe0Ayewoo2fEKAxuneE0pj/YTKtXqEREUBN/EE pZt+5T2tm2l8ByAgjfnDusArHzf1g7p8UNePkOeN4GkzfIZPhuapEQtPMxbI6vrP2uETCCF8URNt Qt+vSoBwv6oe1j3U+Qc1D3G9DE0i71Si+1Tq8c8QD6r5x43craJcDpQ4dSF/+Myc9m4U0xslfr/O 75btOyXrdsW6UbZu1JyVqn21ypcpqC8QC7SiI25VnDvV/N1q7kY9f62aQ9xqOLcabKXMrhYZWLhZ jm6U4uvF5GUQEddL4QIN2yUdy5qNhVexlAqAsJSIq8SCyljAxVLMZqPCYml8KS1Uz1z8fP3GfxjY vGbzwJ6PP5oIvcXIXYAN9P39X321cf0m4PDmmnWffPTxhMotFgkElP2ZOEQyz0aQLjCq6BQCkn4G lRwXwCFxphJnOnamYjy68LMgYiFdbQfToUZbAQVToTdJgWs+aabuHcjySKyyAGWCiu2JCTjcQE3T MgN0vg/nO5kJKjPANCN6NQEZ7yFesuC9DnhVCBIU84aCgOFtj2cs4POp1PuU4XiNyU9Zl3LkzEl3 8GKZO8h5yJ5uiF9BOLkdH70ATOH/GXymUUEab/TapPl1HV0AX4RrTZ+Dsl+XFA3KfN0kBNBE8IzC V9SkqGtdVrLq6YoSVSVqkteEfMXCsxqx8MPLgeRToFEHCB586JOaflZXT+vIdiQeqZeHlNUkZh7W aWL5KBPzdYLlOYhoStjkR01+t+LcrbjQ/M/aEDbqdkncq6gHNf9Rjd77CFKn6j2CmaUfkfk+iIBM MgkPmSQBwr0K3gLDK0HKvYq+X9F4vEEHqZD9+Bz5uMKfVOVjJHzJpZWDst9j4tKug+zkhWmd0FEs rRPIa7RaqWgVoUxl+brZSbuOJyngGjSNXGgC718rhlTeKwxxvSpgAa6VFZ1YlbxrxRixkkYraXDN HFqRCqKjKEmzlNhdSNmK+TQCIeHLKRwBBbEAn5uqJcPCYiimw8JSeWS5OF4+e+6z9Rv+YdPm9Zs2 f//hRxAVi/icwO0n4eWjRzZv2Lx+zYa1aze+/9771cLgUkkiw6eh0sMAuQfdPheSaJ+BvA/wK5L6 YGG2yIAMcJiMVgNvmYnEjJlnQplPBqqPAA5QMlAgnt313TYiYMbhcqj0bgAWXFIvnkDvmCbDq/EW 1Op24LTJ5FJitynbgQP0v84aQe9lTNBpl+pkJRo5KXldOi3KasKh5bk1YbV9QV3DQ8aqqlByZCx3 4bwcGWrAFBBEyoh/XhU2wDEsuC1NZrlBagpvFGgHAIECH6J1HUUeWClV5hJREdIQ4SFwUYO/ELIq RQ0vAAtalSUkFq8I9t9YgGJBcj5GWlaR2MGTGsmYZ8SFfpqxUFMPq9IggPz3kbT3q5S6SNSHVf2o gsyUTyryftm5V7UeNti9qnuvyiBy7hT5JBuaU+N3K4AoQOajyAMBfP7Dsrpn4j5calHeLUsCoUYd AXG3jKou6MkqKFB3yxS3atG1ckDjzaJzP+WIB2V2K3Vu1NViDHGeTtjy4jcHCkcvzAX2Yokhma8V NTBZgXUtB1dTpL2/UtYQKoupjUeU/RUYTOR2Gl9Liyi/6AUrFb5UYsslToe29F76LYGQIMCCmeoX xVVSIxyBdy2mfImeEcYpyFcsLBsKoO2h8EksQcyAhdLQUjISnzq9gzbztqzbvG3X+x90Ag+yajF0 p4oRu3Jhy8atG9ZsBAvvvL2dXzwxHbmzCctY6Ic+8n82EFMhg42d9KFzNEmXyO3H1lRiT0NKJS76 whTh4E5C0puRPrFgsrof6AkKMeE7vQAsOK3A7UToDjTPbAeUdfht3+d9420nIzq3aqNrhG47BAvI Z54pFlhUcqZKNgVvCQ57213tEUarr4oTUZespSD7WUNaTW3XpAXh1PB4nYq5LjJx5cRpNjhcciGK FOEQeBWOpsC7AfS/+TqNpLUr3IKCIr8snbJkJcHKgiMqQlTlH1kQRcZLjFeYqHBZE9oEAOEZCxXD AgV3S8z9Awves7rJ/AyKin5qWHhM1ZuswaMqu1dyEdDwD9Eg6qThnzaC+yjaVRJI90ocOICX+1V+ ryHuNuStMi1kXk/sKTY8K0ZvJOxWmXZg7lX9uxXvfoWOnJDhKPW3y+pORUPk3CrJ2wj8WFU3ipyG 8xAnRXGrpO7SNibFrdS/ldLB1vVS/mZZ3CzhBd7tYni9yG+WJO0bJ7I0PHZk51eFM6e7PqmOm6m4 WfVXInWzli7F/lLJN4vEfD5x5hNrIXVWSv61Eqp3vBgHSKEF6P8azLUyw0kkcHCtFK6U0uU0QRAR Rc/kvLhZEfPmBHbebOwsmFiEXU0kifkI7hXQqbnEDCETORNB2/OZyJlLhhfSEfv4oQ/Wrlkz8Pa6 TW9//9GnLa1nw8J0UJgu+Xp86KPt72/809o33li/beu2y0d3T4RO37ORn02amYu+8aHTlKsQGxK2 tOe5EyGbiOxeaE1EFk04I7cXOL3QhdWlkX5AFoCMQAgbS+dQPfgCA0Lds5uB2wgpWhGy3YVqwvMT AZuKBD6245tnQt4IGLwwctjMbeAvaFwPHCDL64I3JW9rGFXRUrigYU6TVApNb6BqYAdQ5BvG7Zal A50PlVLTXuzw4bPnh86cD2y3qr2a59dQ5LUmPaPIDmeNoK5Zld7l1pRbpcC1qKDCK1XkvCREmVjw qlKVBfWFUhbs5SOTqeOiWeD1qeApIFKyrHjsWJFjv2LhURkeU94vwWZK0wt8xMOKUTJwu1X3cZU9 KDv3S+59ZHgZ1wgUZAGzcL/EH1akEVTqodkuvl5xb1XY7TK7Flnt/KVJd/hOSd6twqJ6Zq+S1owp t5HhJUNBmabxSHgE8pmIMD8CCtorJkbwo3cjlXR6lejbKewAirm1UjLinMaVYEFei+ylyLlOKj1y Tp/ds/Pz/LlLC6F9M2U3y3opZNdKwc1qfLUULKfeTMIWSvJaTS4U3eVUXk3kjTS+GoVzCaeshguA AaHNHJ+WaiJvPgrmIx+xGPnLib6K10TWjDeWUZCNbqDM583oZg6ZH0HG4EIvpC9BSORUxOcMC7PR yGwyOnpk/7vr1qzdtB0sfPvhJzUpJ/1cP8hDq0TO+N4/f7t57YY31m7atmnLid1ftn27r23kfN1X EAzQMG3NpjTrQz8AhFCihk9EfCK2u6GF6MfuROR0fbyFUrrncxTqLgWt4kDboN6ChS40z0sW6qHT CO1m5LRCt0PF3+lCsEE1hcQLnulEoh3JdqSaKOkQ7R49VgVKtFhlAfUcxpZYIFWDZ6pcVDmvcUpp 83rS/LCrNS1Lgtd9rySkzlsXjp8SY4WU65SrolB4Eon9ss6j4LvgCAhU0BekW0FH4LahSWbUvGQB esmrZCxQqCwqUpvw0CaIFKUi10UUpSgpkXK3yNkrFh5Ah5QgbyBXIE5Q5CWK9l0kcEncKfHbJWbU OwUu7pTFHSNdbpc4Cjuk/pNmCPVyuwinHN6vk+S+VRYLaqw6fHrCvrISOzcqku4KLK/uGCO37+Aa 2U6hb5pecPMlCwYHogCMUP4XcY3k1ysRv5Gqm6m8HvMVOlplkEBGnECNewuhWon9xdhaTqyrFTUV 2Of3HN6741t14exMCLvK5koQM+58yZmLcitlZyl15mOHKnksaQJPfx5EzZLZzM0WCwsVZ7HiLlXZ UkUsmZnkbOi3XKfpODOet5BEM4Ge9gWt35hh/uxqZEMbMRuJaRjbENd6NlEzBoSZVE5GfJbkijMZ jE6GIxf273l77Zo3iYW3voIpkHwyKMzETtNnFe1cOnFy89r1aze9NbB+094vP2qowqSH3OY1sEAD Rtb1+KRyoWFoCdPUfPy2GyKBKbLlBHgBRA921aPpZYfcK/JfkRsltQ/36rR8t+E7zZDVgUOAC7cB jeS7dOCFtwcUGQvUEXyodPSFDAToDWQXQ/VuoIYbFloo44o3SBFxBKkjxaocvEDww70SOzUUZIns hUQRgWVfOH5i8Oy5wOFFpKv0ygquVqN614z+BzgVbgOHKrGAR14z3wuzgMJekkRN5LgJY6nLSlzg MXkdPEUw6CWJgHDC61MhiAXmJoKlkhUlS9kfWVAUFbKxcMSZdIdXJaFeJhzuFNmdIjQSe1gVUEq3 ExtxFx2hqmAx7qFcp/JWqm8mlLf36t6MGgsvHu8ULqPIX4PBTPh15HlW/02G0zpNSZmlenU9ldkF PWPOahHXUoGER5g1Y3QHfT3Ba/S1lC1G1kLMllJJIJT5Et0S612HjI/0SgrT6iyUnZmSW3O9Q1/t 2/vRx/zcqZmwgGfmimML1cJKJbeYjq6U+EJszYZIP4skN3gpsrmynq3Y06V8Px7vh2M9f7TqXFaX T44d3zd0aP/QgX3i3LkpKa4myZSnpzRceTybcrN7QPGKBXjVKdqNN0TQ1FFMxZLWKSM2BcXiWxPe eFePHvtu19a1697c9BZY+PLdd4mF0EZzaXoM6c2GB7cPDKwZ2L52/aY/f/xOmY1PgQWkAe2VobbT oH5S2mChHogGUh1mViNj7Y5hoRdB1QAE5LPT8dwOSSm8gNEwx5ctT7RoUInqbbV8uxE4aAq1wEbU EXjGswkHbTeV1fLwmYRGTbtlQTW5InDNkeQ1xeBhaeeH8p/To3p9XadHKuzwpwhkNZ6BC0CSlzgv QtILMXrx0tF9+9l4LnR5glxVuqQUMrYEWCDmyQ4wg4CoKlaRzEDEUu7gsUgXjHLbcZD52WPs0DNF 5DynSJgwISk4j5kbCx4rkWgRCxYzBxFZ1isW7pWR9lDyENuwq5oGO43gDio/RDtlpjYrkaj26l6N XoZ2cJvun+J3q/iVWAzZLforH9EyKfmwlRsMLp5u2cPzkX0Nkr4qrpXca9BOkPRlfJpAPiOrKbFp l0yuJAI4XE+hryTt3hfxo1iJGUXCr8WAAs/j9Uh472rKkMMLMXLeWywK2s+p+ovkcKP5iO46mUuc xTI8Y36pWA2H8ns+3vX1+9/oofG69qFnkPDLxfEb5fxi4s7GhdkwmA70VFSpiSTKe+yyM3L8+JXD By4d2jt4dH/h3DE5eDYYvRiOXUpzl2vOSE9bszGfSdl04kyn9lzZmoafTfh0nIWYIRBotQAs9Omm KtmnWTrUi4C3hfDuB/aEb/W8fEuOff/lnwfWbnhz47b1m7Z99eH7VY1qb02iLCNRIx05ua92fLxm w1vrNmz+/MPtYWGoj1SHZwx104feoAzv8QL8ArEA4xBAn7gt5HzAaVyThUfT0TaN6FdZIBNKbwdx YIEMKflQj9UQAafw3Jp26pr6RVPZDVHAI/UOjfxnFYX8zOozI60iCZC6iYZy6xQZDhQlZpVloaac srDLJp/rCi5AQ7cktpsy7o6MHt23b/Dc2ZCxRImY8wRKXkLM86LIWODZtCdrJUh+dBNImthxYscF SimYEkh1vBjZTtfmSfnf4hULgesE3E20TD0ZCTdw7ZgDh9feGToEFvUmKXMFvb3oF66n7E6FDOxV KPCigtS/hUeY0JTfSsk13C/zW0WIFnYjFbcrwa1KfKOSrhST2viwd/ZEbWwQJnG5pK/SmBFF3r0a WytF57o5kFpK3Gtm2Xg5VldjuZxwyG/ENboJi2fr98sJuwoQUnU1AWscr1xJvaVALqZ8seQs08RG L9GBr1wsybkiPCnEjHe1LKcTG81iKi0spPFsFPGz/Lv39hz5cn+aZ6ReYnc+Huny88Xho+6p3SP7 95799tuTX+w58NF3hz7dd/yrI+cPHh0/fTbMjTWEjTLbUoW2Z6HMomJDvcwm7lSIPmLNFa2ZNDcR DE3R+gFtIFBAGoXUCKaz4yc6UYU5RU6yXsh7EcQJREuhBxY0ciz/+Y4vN2zYtGbj1g0DW/+844Ma NIy2up7bCnUjxH+48SN7viEWNm759IO32ejFCeW0iQWvTtNIsOBM8EJPu9VA4r1d6gsunm8HyHbW onOKbIbPzUySOkJTsyZ5XtEwVZ1+VE5dUT5X8Dk+q/ms6sHAUlbTb6XTEFZD2k3KdocUEYq8FDSZ 18RCSVolWajIQh3/izS52hqdCNDpMOQQEKhqGwQBGbBQRCBp+apiiSz3+N79xw8ccMdHI+S/L1Mt UkVBSh5vl6vfVeQudQFOAUUEBVWCEZDa5D9EDpJfwAUArqwjBLbjW3ZgOTDjocMiF+1AJCACkoy7 Hnd9wQLJfO4EzCal9IeztuupMpWZivO1REzL8Ub+UnHkTD1/cVLmFmMUcP8a7d6TvLmesFtFdhN1 PnWvIW+hYWrx1XI8FXjqypXxo0crw0OzWiwlepm2guXV1F2KCktR7mpauF528eNi6KDUX0vBgiYW KPmFIQIv5ldpOE/bC1djBC1hLobAAdR4iwHcqJijDTQOv7CciiXaNHDnUnemaE2V7OlEThf1Yimk G0YC0OfOReMN58LZvX8+8c0XzoWLaqhw/sjFbz/f980nX3/57s7vdnxx/Ps9ubMnxOXT8fjFqj1U kja0eiOAT2S9hPWR/PTh8KRuJyAfipyfK6rZIgSPg6ymnTTazDERQmvBJtDoks5hjUTvBrwNiQL3 SidZSL/xHmkkjnr78UefI8/XZix8+kGVpvo2THE3Cuo+Ct34xROH1gy8t2bD1g/f3TJ++UxX2W3F 6pGHRtDEv9BzpqSFJysBr/q8Ke2WcjJz2iLdAgSAIZmLVQQ0KjZrkKphdZPt1BFgbwVleBkFH8pc IwOp+MOrZrK/IZyGpI+FHKLRJSwtjW44WABBNQ0zSyzUtFX3AIsDYV83LNRgZoVV1rmysiho/gnp DhZ0RfhVGeQuXDnw3fcjFy74zI4UTwOReiLVPFEskW6mXhKXImMBaR+7bmL0f+Tw2JUx46HjQPzH MAtS4hoU4EffcRCBg7LPQsYjLhKpUqUhjULBDAuun7GApiBIm71i4YZhYSmmnKTbQ1JaJJjzC21n MBo6y8+f9i6fK45e7Lmjy6FzPXFvxPaNhC7AwlJMaT8Tavf8uYuHDiWjo0tReDUNZ33Uduh/fBoJ pKXUWjYsLKfuQmij2l9LNbGQSCQ/flyK2HJiiEioKSwlbN635z1nOZZLoQILy7F3NfanQloJm6Fx aAEvRr9YjB185nzFmiwVpouql8jZOJ6JguUkvxANLRRHZsKLfZXb+/E7uz764vtPvvn+ixO7vz1/ 4tiV0UtSOzxyvJpn91HSE7sjh3ux100QqpfKiSLvpW4ntjqR1QoKE8SFmIxpAweyfzpi05Hbj+BS aZhJM3y4j5Dut+rTQoLoanOA6yP3iAU61YU/lbAhVh+FXdjvfvDZ2k1bgcOGgS1fffp+yXNIk3C7 Hfp1sgyWNXhm/Vsfv7Fu4J1tGwfPHjcsuGChFoi6ZzdkYVIW2tIqh6IaSrBAv6W9TWIBmWwOZ3Wb 1niIgqbpBbTG5lEaV42eMSxAissS4SDLeJQ06oR5qUkj+IEDuWOyq2WBQq2qmfOFmfXcOpkIq6IK NY9YqCqYXGofsAlVGuxYJZ1LRD4VBWJNknQvclUWvhjJHd6199i+/c7ISIjMFE4gnUi5sXKJBeEm 3E2zML7AOAioHdI/iYu0F7GroHn+rywEJkKAsBqcgnGfOch/3/QFX3IQARYgk/Cvet0XINFpDR6y BF6V3yrTfSLXgEbozgf2pMq12Wg4enH85KFLB3fnT+wvj56d9QrLVB6DXhxORIE/PDR85EBp9NJ0 AB3O5lO+gEQtqmW6kYR2MudjtpCYoF+x7N4oSI6ZxJ5JrIWSO4/ynpiIXbxgMWILAYM6mvfZUqQX CQe9FHrTPlLOnYJEh/gvqZkS7eFMpQzVe7rIplGlQ3s24mYtDZlpdf3xxaLljI9+9tkX+z//wB88 VSoMtSE2PLsH6UIrMWqCxoZiCikNhxjQvv1EqroR7ST0YtkOkV0u3SRLq5hmFWd1CUf0keFkVN3s LlqSQCjX/mpAsXShVZRDP5rdA4j2qk/OFLqrLse3b39v/cZNbw68s3Zg++ef7ohpJ4f+YdAtXRqB Mn/s8ocffrJp3cD2bR+ePHS0rIdrerxNRNgdtAAaZpaqMqoGdjNiLW11PKtFus6m81nz2NQOoias Gp3e8iq3qgzPkIetcjpyLQqIHKeIgAugab9C5aegqp6dYREUNPyRPHmp0hPmFrlTpb4ApuyyskuK JFBZy7LnpdqLhY6E56G8h6zoi0Q5geYhhB8cKyUkO33q5P7vdo2euwDVFNq2n7OqXMEyeMwOhJMo TsaWTgFkZDz1axeMC46OICMmfLfgOfmIOyFH5iN4AEWE59E1hE7wD7AZIuIKP+JJIgVfx7nmruIO /nm+ciQraOa8YgGG9HpJ0F5lQuJkJaUxDsTS9YRunkXhnaWzS97VhTQ/6Jw9Onjg27O7vrp8aA8f uhRaBT50JXf6lH/pXF/k5mI2m6xm9XxKmb9EOwliPubz2WMq5hLapZwv0iLZbMmdTuFArSmIcFpa Y/NwtZE9BxYifLWY88EF9YWFQC2EeiFRc6maTmBFeS9mvdidSNhkSmdMU7E7g4ic6dAE6nZM06F+ MJ7P5T767Evn3IG2GMSHT0PeeLm+l6ddeh9qR3ZheGPeD6nedkBBLMwJrJiIpYGCm+mikf0Bz2Y4 EwH+D6EpjZk6rrJACHiuCacFweO7LUpsejJjoRZAk0Ny5Mt8ZNu2t4iFLe+v3fLuzk8+iWgD02oq qy4spHpb2nFhdP+efeveWDOwfvvB7/cXveGaBxYKkFItDhYg+2sNr9iIaBDalPmmytN6p4K8d+p0 vIsvgox3qoYFeFtiAW9EzgtR41T8oQnL2jUs0GQGOGTKHC2gDBEOXjivGhaq5GElhLrxp9BIKPtQ LPkiK8AXFDmqq03DH+h2qSOmQqYls7S2Qml7bk4JW3kcKh1Sxy3kdu3edfLwETmeR20vSlWGg7CR 27aw88q1IkAE9GAEpEoMBZBDgCILumZwwcx3rZcsOCGNSYURRWABHyURns0JB4f7LjcsuHh7yMUq CwosuJIXlHjNwmLiroCFIgl1XC/EzlLMiAW6YZwvJg4yfMb8iRvEFCqhO1LJX/GHzlsXz54/cvjI t9/aZ0/P+BwuYCHJqr1riDANgkLMR2wu4nPEAkfjoNupUtqcmU7tfpzPWEBMU6LaM4aF+VgsQPD4 jO4cDOVsIGdJjXNaM46yu1zFRMInSNUTC5ArU5EDdwwQJn17MnRoM60sWnL47Jmz2z/6VFw60lUj faidAKV1HCz0Mxbo1kLiq0t6xunGxEKbWKDlnHY2bNd2xkJW83u4hkVVTsuns6q2TyqobRZ7Wh5V 4zpS2mRjHdIFH6vN7Vcer4W8FkCo5xPrytat24iFrR+s3freZzs+TX2fWKCgPtKSNnJ4+PLFtW++ uX7N5m+//CaWY1VUfgV/DVKshoBRLVVkWEGvCcCCaQGKRkAIaHUaB0HDm+ts5lPOzqoUz2p+CZmJ NJZOKigyFrLJf0mIEudlCppqlrlbNVolYqTkIV2Q+Xx0aOjMyQvHD58+uO/o97sOfvP1fopv93+7 6+Cu3Uf27N+/+9DBfSeO7j11dPeJw/tPHzp05uShsxcPXzy479h3uw8MXRjWBSCjEu2nTAV5Byxo 10IE0EgKOp+FDr6O+kLM/hBcwAIg80MOygoBt33H9l0HT/ouCwCL8IgFCODVjoDnYUO8wCa9FDCh iAU3YwGQepK/YgE1fKHIFlM6wEJZnouchZiRkoczjUje48dZZEsspyIxEyI5nbnQ7SM9NJfDQ+f2 7xcXL0xrthi4M8jDyJo2Ixek/Xx2FBW6s3TgRSzQjxkLJqbAQlKYLWcNwpmObQRtu70c108FeKOc oSmlQPQ9d8J3aW0+Fv1E9lPRT8EF3U4yETo9nQcFMxBRNL10+oELRrre2Hff737rw0+Hju1GO2h7 hYmY5jmTdDjrdc20pwudHzGyn4HTS3gvEe2IZfs5DY+G7U3DAtRUd5UFujMFWqtJc/hVHNrmfArP NMy+TU0UMiJadL+JYx5ZBUGw5KPCZfSFDZugkd5dO/Dupx9/EvteXearsgBv24AJZfm6cpzc2Pa3 3tq08e3PP/nMc8dSVWjSaMuBNWjQsD1OUah13jCCr3ZR5yFdEBA/ZjTkVsyT0DCJsJD2ZWVOl0T2 6MbcAg4IsIBnyrTVQAMcwoEz4FAyLJS4WzYsFBUqP8qyHTiFCElr571CTo2PitERNjzkDA7lL10e OXfh0skz54+fPH7o1MG9p/Z9c+S7nXs++/T7HZ9+9/Vne758/+t339mx+8Cx3LDlu34otEcWmA6C ScwLBzIJF7GCwnc9qwAvQJrf+UO41BSoBaC249/AVlkIiQX8CghodARtsYDJkKtMKQGQ0GYQUT7j iiOYB/us8OgI9/UOxlwRaUnZu0A3Rpmty4QvQXJDzITOYmgvxi5tyNP2F+Xn1ZJYKmo6UYq9IDd+ as+e/KlTsz4ch5qEMQwLU7Ft7hwnRYTMnw7BCJuJzBA+4jN4JlmNqdTpRYWJqNALC5NxtlQGmuxJ KvI0se8jsfEYcRrO03slok+CxDU7k043csDCNBoErlW+DxYiNom8hYwPKOvK9pUdX3y17cOd46cP tHWuF+ItqPAWvmUi0k1FA/kW2RAofKfhW83QbkVOO3KIBQBCR674HAgeRrvNZkZKet7M8+vaIlJ8 ahA0kPecxn9lAVqdBpJIVDOEhyApwyPrvB49/9a2tzduGshY2PHxJ5FWNfFfWdAOs4a++HzHwKZ3 Pn7/E3d8NOZwE8x8eA6UVbyg7KmSD52D10PJUNqXlYtIhVX2AAKhV1ROEbYULCi3pHkKbYNGABYk /Sp92ReAhglgQuN9KKVML5VeshAzK1VuJZB4e+iCLJrqxy7Z1UQI0i3INNtFIPe04ypWcArDzvgw Gxu1c3mr4Dhj9pFdB3fs+Grnn7+/cG5Iu4F2PWaBBS9mvnZdzWxFrcGGRoIL8B3887IzstVAO0D9 j7mMuAxWWUBDMYMjRloopK6hApdcAx6zC3ONTgG9xLQLvyC04EpyrbinaLL0ioX5kjk8igiH7J5u 5DAyGUk7G1gLfn4+tOhmQPprYxI6fDa0yCMncir1wcKx7747u3t3w84vphqlHn1hCuqdwqzQowtE BoSQAQSzWsnpfCrhsMATMVK60I0KnQA42GaLhhZpUOQn0HpQwHGBx8jtUA7DtqA70H1VhoXsSbzA 7fnOhO/0fWcSvQB5q6wObe9A81jWxaPbP9qx+f2d7sWTDZlrhy7cayeA0ii0PN6k20bo5nEzCJLN kFhAtPHJMaPbb+kmXCSzjUCSkxtFYVcm5CoLGQ4UXibR7bphAdL9f7DAyySc8u7lU1sGtmYsrNvy /s4dn4Za1UXefA6ve9AkFh6lO7p/77cbNmx79633hy5cQqms64wFOsMqeSr1WOLl0S+qjNYbjOCB bqdHMgJ4DR5NJNJODRRI/tVeQD+uglCU7n9jgY50uVtk2WyfHkNW8Ph4KOBYc4FbSKhNyJJUkUlC JGdIdViGgsJDnZd5xUcDlo+YJZnDOQ+Ff/rAiW++2bfj82/37zmaH7KVrTT3fEcHjkcsQPYwKCUb eR7hGyHGAAVqPs1InWB1RsRM4Ettz7EImT+wEMFuc2VCZyxAhplrsCC0w1XGgpTEggQL3BevdzBm U0hrYiG7AYT2ClJTt2NK+wV/bDbITQY2oZGa+wpjaxYto+h1AmlduXzw669P7Po+GhmcDuVMyidj lFwLCmQyNDhELGsHUDtTNHVkKPiTJlDwkcZI5qki3XLeT8yfu0nETFmTNQ5dUNAO7C5tTtot5CfK tbY6kg6kuiHr0SoaN8sGNp7veTZ0EUDoAgTDAul/375w+Pv3Pv1i80dfWhdOksBA/Y94O7Aacrxm Jo29UDY8ZqSXakdoCmDBwtd1Yxdtoqpy+BCkNyp2VRQyFuoCSW6DhZou1GmcSCw0EK9YUIRD1iDg IF6xUNEc0qUuc4ULx7ds2rJx48Caze+t2/rBjk92SOZWxDg+ygh7q8wLFWUFavTE8T0bNmzZMvDW 0YPH0PQr6Av0FQU8ptpBZgZiPBaFKqct/SKS3M2nxgWAhYRbpikg1TOZZEMUAQHopUwdIUsRCXcy yZTSiRgr0ekVWx1pMqIjW2BLpBWpfCTzIS/E0oVpRaXxLSdm8Mt+AhGCImxn6gUKBxU4p9lY0agy LZjr2NrmZw6d2Lv3wOHjJ/bu2XvuxCluj4e+47PxgI17wvIlC1ComS3tAp07CHyaQyy47mowOjII ySxInznasej4zHU9x4X48WCo4aAZUQlYIJNIKbkyYCoz1BkLSkgtFVhA+Er46vX9C1NRYZYGkk4f lTmkgcwUHSE5wGEuthaDscW4QEeuNEinE1iwgOseFHKo2PDwkW++PbV7jz88OOGLjm/1ghxkUuYa iC/awKFyjZjK5vDIYdIwDCz0SITAXUJ120hvgECOmG4VR0dwezFrBXaH5iSwh1YjtKhZ0FpaJs7d ViaT8BptdQmTQovnwULfbGZCQhfdkQN/3vHn7/dv+fjL/PmTVZmH8qmHbsZCnQQS3YqLLG3JQkez hp9vBPm6nwcOGQvIdlraD1jGQjugv7pWl6jtTtuTNZ0dM/2BBRN1g0ODjp/wP43ViSA64SopaHIn Y2HrwLZNGze/uemddZvf2/npTrCAr2j4tM9chv6RdEQV6tEL5w5t2bx90/rNX3/xHf5rlrg56hXj VW2lnptoK1Y5sFByZYXLIrcjezxlBWQ+ImaFohmZmjYBp4zMLxRXWShk3SF+yQIeI8eCKU7pYMt9 GU7CoY7ABYs4+sKYz8cDkU8UFDiLXEYTTldGNk+RgRDzUOYu2OEJg1zP+zxnbEUhVFoh/Sx++sDx ffsODo6OHTtydN/3u0cHz7vWUMDHtDMk7HFoJHMibAsrD/FT1CjyQMAOKJzs1CAg/0sW2OeuhlPI WHCJBQgz6MrwJQuv1FFo5lo+k8oR0hX4l2ilpRBKcF9Lj7/2zjN+YY4kN936ARYmQyf7+wZgYSaG FR2fSWgHuBc5ENtQ9VNRvh/RLLHhczY2curQgdOHD7mDFyd8SHpkFzR5oRdYRufgA8nqmttJ6DQK 8qYXQvxzGsWEAhnbpZpM6zSwxvAjePFEYBYs6Y4SfAjqPxHR8q1WYDoCrROAILdpWDBht1WB8p+W zVjH43VJqdjC/2VDp/d89cmufUe27fg2f+lMTeayLdAWstcrNDxV1YoWFWiTx6UdhgDJMFTR43W/ 0AAvgVX36SypGbA6ZanVDARt4ChGt5x7sqSRdQUkJ6IMWICAYaEVwITaNNIxZ8F15dbAjq8qnirS Gn9+5MyxzZu3bdy0BSysBQs7dkjXqapCmecTbqO8FwV8LvJ8eGzw1NZt7w9sfmvHJ9+4BejhHBV5 lsM3Jirn81GPgQWnxPwysUATnpTZsWultGlj4XNwgSdp5gktxO0UHQG9g5OVjjg6BbqDHUGiMyh/ vMysqxkXEDkO7ADJdbP2GQk7VJTeHs9rt0AmlzFjV2XgQMmIyKXxjpl/umFWz1HG81ZqQ6toCTmU 98/tO3to77Hh4fzwpZF9u/ZfuXDBzo37joWvVq4DKeVDuriOZm4Ah6LwRtN9HDtTR6T5szEpk0b2 S+m4COXikQVChVL5aE+u8MzjqkwCDq7kMNTSY+gLUitFKslxnCgIfP7672BMB9Y0UQC7SjdDQRrh YopwwDPWTJSbSeweKXaUaLef4Ml8L6JKDhZg6M4dO3ru+HH78vmWpNWdjp/vwgL8gYWsEXQ9p2dW iDsUdKNfy1x0s3tgtdvzqNeQViEWHERLWeb+FE42Ge0DegksZGtmdI8VozAmGuKnKQttRTcS0ipm IDtG+Vw+vu/43q8PHT/71s7vcpdOV/go1HgjEC0S+ZA3tPeLT2tJmvO0aAKTS9gImgJYyCiomrJf NYsZeKx5cJHoArLuiSrtLdhZVCCiPLuGjmAgxStLAkqGmdsYOViocBuSrOLrlHY184OnDg8MbNmw aTN5Z+MXhONURN6wQNN+OrpCznujyhr8/LNv1q3d9O77O+0CC0UuEYWiOw4WUpUP5bgPxUKS3k9c nriFlFkm5yG0GCHgWhHdrmKFVj7DoSzxYjt2ULHzYCHKWGDZlhoy39RhB8/QbCc2QUvRLgc1oYBf wJcWULrpABdCiAwpN/kGECS52pcs+DQd4nGBlRwdulo5ys/7p3ef2L/ryOCVAprM2aMXjhw6audy Ra1jxpCaaI6eFDAOHkdi80jSNp2H4u/AIDM/Y8FBnkvfVdJliqPOMw11xCXETyCVx1Yp+L+w4Kyy IIVSygMRruOEvv9HFqZQ7QMYT3uKjqjcGXIK0DOO2S7OT0DzxDbkCrxkh463nIkg3/YLZteX22Mj 508cu3T6dOHSuYoz3vastp+HESZzSgs8tJ9A91WZUm96Aafz2ZDRH4MKXx5OKYdCI88NEbSQSbtn Tch+Gt2bmxBNmH05h06UzAJA3dyH0vAssABw8AkNacMR018j8Xnq5o7v+Wr49MGTZy69/dmu/OXT RWe4RRDJFumZQsWT8IkN864GjTqhlsdKYqwVOaAALAAEYsFH/tiv9taIhUDVfUh3XtLQ4VYWZUVE AJa6WXIAC1Xl1GgngW5FqXBaTqgEXqJ4keUuHjswsGnLhvWb34Rf2PbBzp07wQKqfZFB7bslCX2O KJT0WCrzRw+fevONde++80l+3AolWLBSx6JJqQeZZCXaSUjhiMR1i8RCoQTZ4xaKph2YHmGHYME2 +geMKNqgiJx86EL52yHhgAbhxCaIBYhwGyKKkTpCVjtuYOOj4I4dMsLoJoJOhwNBpVs7yFXXWFRi gSb/xizA5vvueCzHizxXhkxyLc2cwGInvj+4f/fBwcExAfcwyvbvO3zl4rC2dGB5yuECFAiBpkAs cMMCy9qBqy1H2475IqgdpR10BMMCgSB8oTRUEzz7Sxb8/8GCdvHJkjN8Cfe0L/BWl3lK+fL131Pt k5gHDvbLx9cx4UPtUBfoxDwLWN0esWChGtdQpIaHzh47OnTuXOHS+Tg/3KJ5O1hADhMLtEhPONBY vqUhsOn2kNWTKarn1B2aBgTaQDa80GATFlUisR2zPE+vX53SAAdNgbw1LKzi0PBpzb5r7iuvEwvQ JzRdVLnBU/u/5sPnTpy5iL5gD54rsxEI8pZpNLCfFS0S2i5w6xzaxoWkL8l8WeVR4WN3jA6wQg6p UyLpTpbWTO8ZrWhC9ptDq6KCFbVSCb2BwGvsihnv1z1uFpUhZuwyd6qSlvDrWhQDjf++iTt+7uj+ gU1b123Y/OaW99dt+/Czzz7jll10c0VyvvhwZs6zCikfK8rC0KXhDRs2v/fejiuXh0OFBMunDg2L wELRswkEWjCTCd3MYhFNrBDZudQ0hZIg/4uCn02HIEUiuiY/myCZoc8ZcMhYcBGrLDjEQtYa0BRC 26UDL/yKwTXD6lowrT4wgd6m3GMk4DmtNxgQMhZgY3OxHEvYWGTDDox7DIi5p/ceOrjvyOCIZVtK OeG5M5ePHzuTu1LwLB9iXjiMlA/eK4RnPvOlNHIBgrbBF4ywRmgHyS/BgmJZcHQHsEA4uOagmeK/ sODh9UwIJmzL8T20HSno3E38sS9ko3hopAkkf2D3TQCEKVJNTj92OiFSjmWJB30+QXcR0tS9FhAL p48cHr982Rm85I1czHQ4aXvf6virKwrmuJaW4SmTPcfsFbt/ZKFlVncm6E+rcVPbrWzrsqXthrKz pYLmS1vaNDoEUTNhWED5LeCjGmRL0T4k8rai2djF04Mn9yfO0PHT59/a+Y09eLbMhmsendKildR1 3rDAUbfBQs0sXkLzV5RFLDhjEEXNUJBQgZPVsJ8WOVDlVj1eRN2WblkxM7F0Vmc1CiXXpdM0agrQ SA79mQVQYPbcSshA6HAtQyShO3768L4tW97esHHLG7SD8f7nOz8HC6k7TjiYe1jIt7pWkY/je/Mj ubfffu+d9z45efJ0oEbRGoquKjKRSoDgxMKFX6B9NmS1UT7wAplTgGsg8e/YyPCS2YWG/gEOAKGk OCAyp1TEQogXr4ZLzQIfBaVkW3R2wEWyeuYLlFjMYUhtsECzfUGrnj6A4u7rYAYNZCYVc8sbzwXj ebxeMksVCqf3Hdy3f/dwYZALy7VzBWvk5JmjI1cuKKcAELjDJBNZVnu0TYfPgUEwYyKHo+CjHZjQ nutrrjSX/5MF/xULtJUhAwNC6CqfSzQRfL5l2Vp5Aj0FODhcOq9387q0P4AsLXQhigACiXyH5pO+ 3fPtLs15oJZFOxKtkMOo9vw8tBDSHtXPGh46c+QwGxlToyPyynmkcSNjwbNXlxPMJg9t5lBfWD2c pdtps7+oQA2CmeLPskBtN7LfydihQb0kE0qNgEyrVVOQ8WYNmIQ6Hs2eJG1I0iupyHuirJyqz08e 2ps7f6QsRk+eOf/Wjm/GLpwoOoM09oGeF/mqyIGFooatEHVKbLdkfCWKf90XdG6LxFbZVOflKIbO sOxsRGMOcJ2ix1LtpsqhWb0BxEyKGKpxSTDahTZ3ZlWlKDGa1YdaBJJF7vjJQ3u2bt2+YcPWNza/ t2bze5/t/CxjAbqOdvLpYMtNIIQYfizkR8c+/GjHwLbt+w4eDIMxsFBiOnVFwvPkfI04j80JWshy EVlpmhfhR3IBxgiHNIRBhtNFIul+mcjksOe+ZiEyEWcX+K1j6UIeH54Kuh0Gyh9V3bcckkwOzTaR 9j53PArbE4jsGsGyNNbQPBA2edvPOz7ngjnO2Njh73d/v/fbEWvQFQXbHnX42NDYhfPnjudHLwnb YTaTpGRI7WgoGcpnrlY7gqBBkC2kTSz4biBdKVyhoI6E9oTyJBwEjUx9+naRxSoLTIEFzyCDRuDa LgQS+gLeCxa0q16x0DE3d2f1HC2gZ2anPSgc/KitNqQ4Knko+4nXjWTbsztqvK0LtFEJFq5cOXv4 sBwdj3Jj3pULNZ4n9Q7RsrqcsPq3d2gnh2bsNH7PzqdqJMULkD3EAp3Y/iHMX8IhFugP6RTo1OkV C5oOtlDbq75TMYEaXiUqYTwLqO2oxlUPBdBVhdGj+3fLkdNlMXLs5NltO/48duFYxkIN75JgYbys ZapEXXPzlxnAAllOCAzyAiSB3GJW3s35VEoTe1RFs5Mp6dQMz8QKSUj6OaL5pJOY09si3QJg7kOR InUdRJU2P+mG9EALGqE7Y8f279oMFtZv+dPm92AZPt3xKbccNIXUzdOWPnPNrr5ddnMwufmR0a+/ 3rVp09Zvdn0XheOhzhUdP7bhUldZCJwCKXlhQbQGPOfzHDRJwGk/gRZ7jAMlVQMWGK29xaTDDQv0 6GSb/JF4HSEtNljaylig7VDaarOFbyFcsslChML16PStYECwNbcUKj+zSe2bbCQNQ7NN5dvSkxqG 1clZB3ft/X7PvkE0BIcMRMEOcoXg7MnRi6cLdk64FhcOvcujV5Mxx+dkLGSWWduSjuccz4NZgR0G OFJ70vOl9pWGj5Z0xGAmrnTQQGcNgQGBWHBJemkp0Q4yBw2I0Fw8/vpvzrdDpLrTDGwK3wIUiLbp CJBPE0al02I8bdS4LWX3vcIkOWvUeZ67ePHMgf1qdKxYyBVHr9Roc2D1KDZbS6BqT3+NjdOgxmwp rOYzyfU8OVNtv6KgQedQjvnLIXa2yVPlhQq3yN6a+Xwt6wvaKlHY5pFaA7QEdHLD57EDtQ8TZ41e PHvh1LGSO5i6Q/sOHd/80Zf5S6cqYhQcVehfiFYyXlSQteaPKtDfVaB7WNBTIieXDVtoh412fljR HMuGDBoJ1tKpeFDOtsGBJQhauUexNSBQayApnt3YXtMq24KrK13idCdLoKWPPHTGDu/9dtOWt9au H/jTlg9gGT795FNUxRIrwC/QJNNsR0Pn17iVOHl7fPzQgSMQVJ9+8YXWw74ej20/slREhoJmNQGp 95zH8hCGHs3/Cz4vRIoyHPaWArWaFn4YTeMJARuAxACTO68ifIkDCPKcAm2B2jAO7ssFUWgkFdJc 1KUJKmQ2c5Rb8OGjleMJ6w8sUGvwydUqxb2Q+bIgOJMo3m6BHdp98Ls9+8+PjLvkPyLLTSw7Hrms zp3I5UZcwwKqt/ojC+gOuJAWUzb3SB0FCI2vhbcgFjzFyTiYvkBumljgGQh/ZAFvZCHNjxCeY7tK arzXw/vs132hZXbPaK8sWB3XUEkPnA4NSGliDy1Ui0UjoL9dRnsIkd1L8dvRVOQHLw6dOnDAGTqL /47J2GjRGqNjJkp1m/LWDCSR+W2z50B3xdIhrAslk91CXlL5kh6v+TSrqXouVWOBXsDpDyZwVuFQ F4xGlyRLkIRQJiSQKqvTm0IZie2DCOiBAk1XSH5A7fuoY6PnL49dGErtobo7fPDwyfc+/mb80umy pINd9IW6GENfKEkS9uRqiT66AwXiP8WHe2Z1QTGztGOWcwRLmZlzGmObzWeqeAGUEpqR5iHN82HY V9eeY2hyWvuEcxHmr/FwOn6iwYgdIG2c3P49367Z8vbaLdvXbtq+YfM7n3/yAepwwiHC8yhcoedF ksFZ+HixOx6MXrl87MifNr7z8WdfJs65UAxJTmOZiG54Z8in0EYlpxzWzKJbVNB6IPuFGwlOFJC8 BwIMntRjri+4ps004SmIBDKQkjsa2kY4OlM7YIGbfuFmk0xkI0qxkg7UNZMo0UyE/z9Z590dx5Fk +393htLMjkiA3nvRew8SIHyjTbmsyvLetTfwliRImdm3Zz/yu5ENStr3dOLUKTSqqxti/DLuTVfU e2m5dGdcIzwCN0nVCx8dGPiRejtt0lHQ6gHu6VoS150nz2buPnheqSumGPbyqHfUQ1bPz1VqKw1D M76z4NkMN3TpAtP3THy6TVrI9ZHA9K0t14XQsSwaJzAJAZpoBGFmOb4wESHae6CEeoQvhltyy7Ys buI/C3oNb+JHJzQ16a8sdFytQ1pI7yJ7XQ1HoZrEdHoLra6W+ZSrtFQcF8d6P4E1rueOVlmsTT1/ ZqzMIrFzRc60RtPRaIgWDtTFUWs6qgitsJTCUps2VL1BWyg4Ju2uQ227UpKNhWSiFYK0bMSmXURo trDFRXeNOWah9NHqahmtk6LIHYqUQoFOTh2d+khd8ncRN5c+zJp1NTPqbbP+4s302Sv3pKWZDB4h 0FshSo/UHLPgGII+vUOttxNbKoWtJjQyq4+HomA8IVcSEYUllu6aOCEWaM4zvh48uGUQCIKFFLXm aOYzzeo56qI3EWh7WWCprq48fXTv2InTP06c+VGwcOsyWNASi6b6uI4T+n5km2LBF1hQEqXW+Djz 4+SV85euu43pyKrqumRBF+mcWNBRDc0Yjaxo8wOSLoarMxzR+MfU1WOOhbcncAggDiwkj+k5JJqp yRbz+b0xC0QZOyoW1C+K9wpxQmmJhhcJTJ351JNPCwFAK90/NI86/2lQmGZioFTZItvwZaDlwoA4 bei6/ejZx/uPX1cbqqlD2+Ma24cosvxGTZ2bmWcKg+DxbD9AydJQXHz6UMOBNUCQpHGIBSQwjZch oceaB3/a2F+Y1FnkAxOUAw9/gQV2bLzuEAu6YWg6AwtgyPepcOEEt4Kw+isLXZd29huEXEw5hkZi tA0IrIFvjHz8+xoF2m0ywvDORjvU2oHU92tonysLtXdPn4CFFuykrqEuIP/bR7M3USBAxBELTTEJ EywgaAM0NMhIJzhfXy0cuUCWUh0RJeN7VySCphwgXJpdU5A/1VJTjrg0ZiG15MSUUlvJwJqrQ6vT HBvObVmuTM96Cst4o+C1J6/eT165W1uaji058/U8wG0l0UVDRoBGeOlbUTP+nQWNWKDZO/q4yx0s xIYWG2pqomUgEISs0iOupUIvJTRARmu74Jpx8bg6pJz6cGJDuFeaXQajqvqG7DDp8YO7x46f/uHE mR9+Okt14fIFT4c4Vz1dpokBjhsYsLTQxMxhcijVlIWF89cenj5/pTb70mYrOpNMXSPprlsxMyON +7ruISjlaKqno2ueQfN5xqVByAaLSgOnuoDMGONgI0W4AVdrm7pj6tDrjqnZXKPJojRNjkNXiNE0 MZmHU5+nqRvIKlQHiDrHoAFiUl9iIMyHwzVoJBosBGLmz5gF1AWPM5fXNc188HTm0bN3VYlYoE5O 6hqybe4C39mP88vLK2SHLRf6ymJWYAVg0NLJRMACujStiaYRuSACXpnmUED8u0dv4VRQPBE4CRya ygGsHNABPkx4BBrNw/8Gxwk8L+Q0WC3Gq/mfLCDzx+VgHGDhjxjSWkgDgqcM0eqiTMD5qoUrNd16 z6s2PaMyXx2zQA+GQDPOlaatwJm2XbXt0bHlyE2K8YugQCtNnDOYgtKkZeNwDWMWynE1cXRkZmGq 9FuCQstNbbz8SszAhBRREIWDr4EaIae2nDsKSSYP4lbxGJSbuTI7w6o1X2Upr0MmPXg5dfzK3crC dGDKqacnPgyylFgymUSb+g9FTz5NQvN0CYF0DWgqpopUh/VIxAQGmsZmwNjSYBYKZQqTayg0XCUu 85GxuooQQ700k4GGenUNEdOsBprPEJIblVyksdJ4cPf2D2MWjp/754mzNy9dcBnuo7i67NDsesvX NbATmmBBiZhi1ut3HryenDw3/fKBrde4jlxivmb4oEDlvmLYKrNVzWSqbbDxtGfhi2E5DWKE6b6O YiEkDXSFGNiFtBgntmUwBEAwDc3iCBU42JS9umsI30pC3R73/1s6H7MwnvkAFmjKhIGb40XDhRiD zmfc002b6oLh0axpzzNww5qkGPefzDx89napBpaR6jRAhrpjcRQo0GwuLlVUBTxCteGzHA/Jb9Dc CYDgw2kBEMMyDdQyGjKjvwBvRK2D3MKVVDtgn10Rnkfr3lDFwILr4aNo+Q7+GhvJr+uW+H+Am4Am ovlPFlAI0JKjPbfkjqMMkPOehpOuqw49te8oaN6b0ZgF/EptB3InkMACMnNptjJmoXSMvmP1KJmV 7/kvt0TApYoXlY6ntR21tHCOE5qKWVI5UMdROkppy/QKCSpcBq3Fjliwaagrs5CEqhgO03LUAlsR FKiZQ+exKcVciYxGZKhzb185UoNmFJj1mFXuvXgHFpbnpz0uRa4OU5mCBVOmvnFYPyQtdctT9+OY BcJBl8OjVNfETE4xbwfnIoBDSiYXFUoNcKUuj1nwmZKImZ+RSGAKzv4YwPKZKlhomHL97u2bP544 g/jhxPkfT5y7cemCoym4D+QT9YHj34mpcBCBoeIk1jVHUV++nj0xeebJvRtcrRtMNVTVkSlQ/sCC CzOIrGaqhYsNEkg+TeNEsWAuY64GDHUcXUBh0JVo7ZG3pqZbCMZAFnDgusY5QiUiBCCOobvEAveY aTFuMg4RbhvcJhBELtLCTM3RmY0MYzrhAEyY4TBukzrXHULDcXTVMqr1Brv3eObe49cLlTqHRjJt R8wsQuYjUZHh8wuLy5UVVYGW4aJYWQiktAWFBh9Mhcvk+A64t2Fy4s+lo+6IaXpj3yMcPHOh+MAf ST8CxOd0pY/WCP9LNDQYaBXgYKhTIYQS/CsLNEwc6F1b6bvaWsRHod731KFPm/mMfGWUGP3c6IZs QD5C68XqIFaGfq1wtIWPS1NPn/LqXGkbA5rbY/YCreMpyH9Ex5N7gdoPta6PVxSaAuShUuBcQzTt IxbEbE/UCKWwpRKu1lXGLoPmqtnUCBdiDDe3WGbiGrUQSgnqqMBbPDW1JeAQGrWYy6ml2HJVrcy7 igQNn9mNiFXuPgcL94gF4/9jwWKCBVlM2tFDTp2TiIhm3UPAs3GAiOg7CMQCDBR0lAn0FLCQ4Eow a6PlR+FguCDByThED39EfTKqq8k+UUYs/Hzr+o8nzv4wcebYiQs/Hj8LFmyVWPDAAiwnarmmgAVf V2ym4B8PLMzOVU6dPnv72kUm15ClKAFjFhxF81TKWFIAyGGUDE1xDOSn5jDN/d8sODhBA67RKy4o UMcs6CbTAIKuq9DUCBBhgAum2XQHneY/aDpXNKYyaG5O1yMMkzEgyVXVYihJzNSYLXDAPW2GcsNx KxDkqBb+ClOvVmvaHyxAueNDECgcXDfxB6mqtlLFNXVZUnX6Rga+FF6nGqgSVfh2f7BgUUHDX4ZG 3sXXFH3GBC4dBcom6ATQGqk/AAJSdFzMcOILFlzCF7VUxeeaf/ELYIGWAPQcdbw7FtAY+GKbLF9d DZRhwropa/vqwFMHodIJGr1QWg0bUDXz0wtvHz82a3NNlw99dxjwjj8GQep4CBkUdH36sWnXW67U 9VXg0AuYeEQdTSVCwoslAPDOyH8J0UIdcZVxCCfOwMI4qC4QC2oGtW+N1RHMgly6aKXBAjK8EelS SbCMp2JKkVa59/zdCWJhBiwkAMHjMAup0EihYCEmFmAHoJdYaGoU38WPCDoXaGixSHuAkDsoFipY QAKnFnUB0SQfUECaiqYDpeIYc8ERtD2qho6mXkJYcv32jWs/Tpz7YeLssRMXwcLNy5fGLOAaYgH/ wKoUGpqn1wOTJsI5mra8VDt77vyNqxeZ2sA/sI3fqiqFwjyVWZqGAAsmsk4DQSpSBzUF/+TUArIx C5qjashqHF2VWHBU3f7/WNApkI3qmAWHHbEAcDjyX+d/sABmUVCAg6mNWdCsv7BgGgbDTYCbwi0m m6y6UlUFC2+WqjLlOW6I76Djkw1NwylKjk0mmMPeeoxY5JpKelCRUQlNVdJFmeBjpYTiA2GoCW1I Gk3kNoXCBQ72GCKUFbEewpLwP14GIJ5CR2okaA4sSq7857q2Ic2XoI1KqCKIk1HINhJzNYRxVlZh kyOlHaudkKZqb2bGIFH7kbwWSfARcx/mXz98YNbnO/S8IW9AcyQURD9QBqE6iFScgAUc+4Hc82W8 SJOlPRrqohnUPg29tUSZ6PhqN1DbPkBoCByEyhJjyuQgqA+WtjcsaYK02vS0ls9Kl1ho+jCwDZzj lcSsdwKOwtH2xWRRR461yv1nbyeu3q/Mz/iGlFKvKRwuySox3wC5SizACFBPkXM0dpaM5/bDiVs0 hhtbtBCgEDP/aYTLVGnM11RSC6oe+ooC6EHSQEplNsyCQoaCq8jnwMA1GpkO2rRQRthq49b1az9O nicWJi7CMty6cplYQJVBew6N9J0FV6uhckH/o/GqrzQuXbp87coFWa4ZuoKcBwj4t4x0I9ANkiga Uko21Ab9yqR3gQXCAf/eEFQqCa0xC66q+RraR5ygRhhozCGTuM50XRMsqExXdMokVBnchDjCxTZV BLTMBlNUVVZ0lX5rUh6rnFKZccECDR8TX6IqIC9V3ZQhxmQOFlaIhftP3y7XFXxZsGDDfTBdUxH4 VNaQJQCp4YsAEBQLEM/gvz1VARTEAtQUU6hw6arOmEUmSbBA1YHh69g4MmLBNAQIOBcs2FS40DwA Ac2T6kyRuKaYJIqZqyp/1oW1SB+PMuNkjRYp0Ml6jBe19VBZD+qDqNFNJCQ2rZePtWGqDmN5Layj dZ2bmnn/9LHTWEDr3XfE9j7EAqSR3A/lQQQigECj7Vb7oTRKoJEaXV8axdpqwsDFeFWCCK2PH0Ol h+tDlA+p40vgou0JlyE8tdh+H85CadNqd9gWhiOiGYAIuaRxCgCidmn2lNYJ9DZsDqqGsXL/6euT 1+7XFuaQbKnDM5e3UVwslQaOkbomg0/POE1pozkM8ObQUTb1rGYuS2yYaAlRAkMP5kKKuJTDtjso FnKg10O9gROa+UBVQ6UABTAUFuBCrkpgBNIrh2ZlcmBKAW9wpXb35tUfJs8dO37qbzQ378Ltq6gL csgaoMkjFrSQSXi7p9V8U7YsFIuGUpt/+vDWuQvnKivLJgw4a7hGA9bGYXU4bkgE1AK0iSJUFxzB RNMRDbvCZclSFUdRiAKmB2I9WiAmSFB1oAQSWf2dBUMErLQthBZEGgkLZLuKhNc5kk/TRBXQ6F0K 2nxciV+puowvxuB3BAs6NJClGa5mWQRpBVbg3iNiYbEqQfygsuBWTJZAoQGXojNJU3RuKJoKvQT9 RTINL5AuQlYbTEYdgbJCkhtgAfVHZrqsMQ3CDQ6DAT5LBVEKShU+mQu5Zwh+dXgQVTEUSUdouJXK FZkh8K1Rff5cy5PTU43WKM/1jcQQR4q1SNuMla24sZbIg0wZpdpmwjZSbTXX1hJlM6bu04UPs9Mv nnjKUjeg3tehmKc6iLRhLFYxR8qQcJD6KC4h0QFGoLLGJWMYaX24DwpFhNwNJAq/QUHnMi00o0U3 upiYx1vkI2RSU5BhoMCTm76MYzdiHbiSUGvBqoAIDyWGZFjH1wpj5dbD56fBwvwcJA1MROmZLVPN DTm3SduUFg15UGcvDR9ria0i1ZHelPMerRFAxNBjniZel6hj1tVSGyUALTmsOuiQE5QJW/sDB7Fq jPq14ETABew83Dd0V2A2PKPGlerdm1eOnTj9959O0ty8ifM/X7vsMiVgDRgEKFpLkVylCrGH+/u8 oRsNx2wYytKb5w9Onjk9MzvjGLLF6g6revgVWGASTZmA0TaUcbgU6h8swH24Gpy75ussQOBEGwc1 +B6jxh+iC/Ia+c9FUJ+SPjYdKr33Owto8+ELLMKHFBSuIV3OyKSQ5rC4hUZdUXUVqY36gtcNj9mO rljwC1Xt/uOPD56+XVhpMJJb1CtrUxIjkxmKg8JUeGJVUzXUBhJrqEG6JoEXHSfEhWZaumXROB0M ukGfgbfqf/wHfAAGAWuK+yP4eFwBjKB8qShikG4mnLvwIwAW1edPFnYLvpPT7hO03jkz6CFHqbGV 6mKdprKTSBsAoVDXM7Yt9pfeKPSNTN3JkKj60gyxELLKSOy1BZW1GjPEiFhQR5GC42qiraUMNaIX SMNYpfNQQQnANaCGKsJ3FqgoBNJRUIFAmdB6IRPzQ2hYvENDG2j5NQi2XsxwMj7v4xxXRlQXOiFr CxbojeDFrNy6//jctXvVufdw3Lmt0fRsR23bEGCM5qCKDSuawsWjtU9tJUfymw1EQR3IKtlzR8k9 6rBK6LcABGmPK1ECUBEoIJnAUUo4qCI0IZ9olilcALKa+mMt5pt1z6hydeXOjUt/O37y7/+a/NuJ Cz+cOPfz9ctwzQAH7ptmStC4npKZcBDQSGgNJdeRXH3p49vHE6dOvXn7BibCJhZWfAM3BF+oXMzn mntEwf8bvqHht4HJcOe/shAKNAAIaQVoKugJ6kE6CueIBc2jHjDILTYWPwBhLM2p+wiXARw0tars mkboWC5HxqoWMswgA2IJFgCmbdSqVaoLj55NLVUlYkEjyU7sQ59paNopOCBkGlUKIcmQ7mjkKf91 2GGUkiPHbaME4DKDiVzHdQIDCC9SV4bw9WTeaaTZoLoA62KQ6AJ2+ARTjKtwLi7A8f9hYYue86Xj ZHscmb6Zst1M3c/krVxdL7XNQt/N6MrNUt/M1d0c6aovTn/88PxxpC+v5fZmIrYbTQxiIVJHyPZI WUu0dRSUXF+NSS/hfD1hw1ChpaBQSkSKStQgEm0oYhDDjyA0xCACOLSirS+iE6LZRxVAwiu9GCCo 4pxcBgIsgJ1hYoiNAuhdZNWt6p37j85euVuZeQff3aSJrHzoal0HFcdoigmuXWgwW4UAy4SPgAEp RbRCvRCWpPToR1h1YNL0GXBA8kMypZYyDhoKBwtUVqg6jAMswGKMWUAUjuGbNd+ommrl5+sX/vav yb//58TfJs7/cPz0rasXXSZH5KwVminHmZizKoVsJXVV+MjIR5O+uDj9fPLM2WfPX0Rw06xBLPB6 SLqLWIBJ9wzlj/gLC7Krq6gaAXULkD8SCJCREa/QMeCMJiDRwITmEVMUYucugsgzKOBixt1EaMmR wDT6wAVBAofxOdBwaQoHp6lC1CXKaE6RAT+Ma2orFfnO/alHT9+tNBSDbIVK/T7ghTOLPDnadQ3p DjDGCUytOogQEzMcWqSJovCdBW5paOhNKhKid2nMgkpDh5xGQMS4iejXNUSBMIAAPgGFgI/PTU5h cTr/g4U92qqLGvztXMfJOHC+lWm7uXqQKzuFttHUtgp9L+e7uFI8sGM3h4zR5j9Mf3j+KNKX1nJz M7XEXru6KA3a0cZHiQoKgMBaqq4lKk5WRb0AI/TbGCeAAjVCGeMwiCkECAwBFoZHoSO6kdJBvYjV HqRXQr27/RjlAFVA7sChEwvqMAEFtCHwANcDHHflzqNHZ67cXJ55CVnVD2kjl6ErdR0oMbIb8Oy4 fzdUuzFEl1S6jXYA4uBH8FlK02u04FwCjcbHPQKhHRqFx3JHawVczAPRKMaLetzvOIiIuEIsGEoi BiOanhFatcCsmtryratn//6vib//5/G/nTj7w/FTd29ejizqKA65EloGzQPkUmrUE70KxJBJoa9H 5pK89Pbcxet37z3EBYEhe3o1NBuReFdk6BHls0KT9L4H7UTBZbDg6BKOPrw8WLBYJIYOxxQc9ZuJ YREaWKTf4le0Eg2BUuIfMcJEvySacWrJPX40xi2GuTXf0iPX9Eh5qGCBRsVoMECzTEDEQ9ofUvPM +piFh09eVxtiGEUMC0I+weg6YlBtPNjHqQOBm1R9DFGGjPFsDdQC26A+VYRtgksV1QKvju0xqTsN xspwTJMqAgVOLHE0od0EEQQI0YETQY0prvyDhc9tftCkBn8n18HFOHYL1AjtoNA+58puoW0KFvbF Y562v7MAYwsWpl+MWeBbGbFA1ht2A1or5xuZDhbgF5Dq64kKr7FGaKiiWOAysCCvJY3VGBdAPinD v1SEP1kgxcXgtddgtxOlT+ZF7aOaZGyYogrgRW011WlD7IRBa0F39QJ1TBAw6Tgrdx8/Pn31ZnX2 LTK8H9Pi/ZGv9TwAZYhpgfQpUF8dYBXDj8vEgo+QO3Qi9+MjJUbgBDjnLV8vXeBjHm2oLqbL5p4O HFLIJyKCpaJMQDXBPsCY5CY8jh7atcSpgYXrl0///fikYOH0DydO37t5JaFnGVDfVCx28SJnhAqF imNqSDLf1wun4shzV289unbtdqDKtEjTlCIaQFfwEbTjNE3JxotKKCIQAevtctkxBAumGsLRWCwW M0zEfjJqZFHEljYeJcksPTGPdgOIacmDTjiYNElpPL7swxRAaNFYni72uAML8Cmqb7GANgcwEaFj etD0NIQ9ZsECbpEt11aU+w/eP6T5SLJHazlpe22Pw6QrNNvQ1sV4N0Uglp9RYhuCBVpxg8Q3UQ7G uW1bNqggFhA0gYS2v4Mwc2iQxXQ4qLHGQ3U0kEdjec64OoxVk2DBtE1LsPBnP9LnlnHQNJDke4X+ qUlcUJQ6EPhUap8LZbfUtlpsp/yThZ1S3Suok2fhw/THV49jg1jYFo+e3xDPLNjIcDQ2aAMNRkIo VtepKBzViI2MjXHYSKGa4M0lgQOxIOoCNenj+AMEElepNkikbtzopygN8iAlIkhTQY/RzvBk2Mcs 9L+zAFgKe/H244enr9+UKlNNXxo/rXId7j5Se4neiVkH18daO5LbMdIecqvRCaXuOCKpEzQAYDdU hBjThEOHbeHj3QDGk2aBRtM3Sl/PvTELagb5hGLhGbDV+fd9HcFC5NYLX7LY8tWLJ3+YPHXsX8f/ fvzUDxOnb167EEJrmSSTItrOjtNIva20bRrjtgPbpwUaywFbvv9o6tKlW1a9RjM9kMPCqtC8KdOi pXDCsIynFyLDx2sZgAOqgw80kPZg00Zp0BAhLnCU0FZoLqIwOLlYK51zRnMRBQ4RP2LBt8RYNhcT 9o42bx/PCUeNUG0mwbDjmsQzYw8s8NA1XeS2qdEK0DELjlStyPdII72uSzJNiDJY5NB8RQc04f62 7poanUPvORbMiMdpANGiXl/DFrKH5qM6rkMbHHk0A0+A4Nq0gcZ4lTQuGwsqm5KfxJdl4NwVqg3J j7dY46rh0AJPR+ioP9e17Zdsv8n2keql/pke20fxqYkawT6V7HOh4mS7xXZLY7+gerFdsr2mut9S BAszs6+fpObSOj0Qzdor3Z3C2crN9VQnFZSwTXiQAlywP1jAKxs5I72Usa1c2crkjUxez5S1TFvL 2CpKSWpA84vQkeSrRBMkFrEwzICAPMrVYaau5toIN8zYKNXGPVSEUqSsCi6Ijkgb5UZmLd589PD0 zZ9Z42PhIc/hJswRrDfcekxzbrtAL9W7idrN0OajEDTGAowoS1RiISYWSIkdsSAecEZT3M3x5gCt ACzQHBWaPe6qYKGgZchaGcCoNpr+eIUssZB4jWao2PrylQuT/zh55kd6uPOpf548c+/2VYADsiix xX53YIFmdtk0bOHHQeAZmbnga8tPX85fvvSzXlmhh3Q4UDUy0pi2haQ1mKaYtasmNM8Waa9EjoqW nwJpD81GIByxQMPrFkCQQ0uOLWVs+TNTLbiWcy2lxaFMDBSyUExepWbfou1/xZ6NtGPAeKH0ePcA cuU02ZuN90Qds+C5yFKd1iwb9piFylL9zt03j5+/bSiqzZHkMspKaDOXNrtmgQPcVJfD4Ggx8lyn 3eA96puyQpvmWEPSuGIfGAsqiJbtm+P5hJ6NE7GeDtWCbIKF9LaFXxHzN8CCN2ZBvB2/orlSntgx DCfOX+apfi6lb23lsCnh5HNT2S+Vg6Z+0LT2S/tTy9pv6Qcd86BnH3T9/WaAYvG5rHxqNbZbkM32 hzdL06/fwUVuFeanQt4uGut5fauUtktlu1R3m2yvZQCfrQwlgMFBb+YMWmsj19ZzdS1TVlNlJGIV bgIs5NoRESmSmXqcxn1Q1BmFEkNdWGyN3qvhBG8RLNBxmBwF2nDEEPfMlFGuDDM7Nms37z0+fe2+ WvtQBPVRKK1F0jBsjOL6VmivOmQuBrR9ZWM1qnfgR2BG4ERE9AkH8vJk0gUOvbFegvqCQ09hw8lu QDg1PaUFuw2X7cNTqzg2aZ8NeAqcKGPd1Q2UvqciLF05f+7UPyfP/POniX+cOPuP46d/vnY7Nv0O PdHM6sGSOHKT7iNnFErmA6KjJnTx/dSVs2eWZ6epTXZ47PHINVLfQElKLDlzlNTB9WifITPQ4INN WnNH06LENKpsPPBBG98BCpq+klhSPA7a70WKHTkRm+OJmgKCGFp+gEDp7dCaHeLC0MRiH9yWngMi HgKixxbtcRfQ1ka0zEawAFkvQ4ZY3PVoVYWytLLy8+Pn91++WGhUYJEDqD9cZQbe2DtQB3I9tCDn aqDYtxXPkunoaCH+fE/3aJzlSIyNd+SGSLN1LRAz80LKbNrngkw453y8UoFWLSBoerZLj1rQwJ1j Mwc1CPIMYdOijz9Y+NRUgcBBKe2X8ueWtt/UDlrGfstGC3/Qsj+39b2msV0au6W9XwafS/1rq3rY UbfbZhE4Mx+W3796g7YI7gCCaq+NCqJst9TNUtksgAPbbfG9lrnTMnEHxGahb5aiJwqmo002fLNk SOyNQl8XeQ4WAAJwWKfHThmoHRu5TkWBTvB2gmijwP2ZoAb4sHFpGAk0QIEAAVVDXS00tPnQFbfu Pjp79Z5SnQELcCjrUWMYVQdRjTZu8u1RbPUj+H3QUe3ERyz0v8dfWehQKUFt4sPcBAtNuA+xuWU/ pslavRjuA5gYKBOtAMWCgYVOiCM8OKBQOmL+SR8ZYKhnz0z+Y+LUP0+c/MfkebBw+9rt0PSa9Phv k6ajODJoKnw59xWwkHosCwzUixSif2n+xuWLcx+m6BE2vhW7aA+VyMbFjHq9PCWkdGrAs0QuVYGE nIuR0lJuHbaFNgojyyA8AlhwaNuWo6OHiobPIr8zXisaO1riGdA8gdgEhkCwaSFbRKPznPYcoC31 TLEVNi3QoA5bC9/TSnyLdsx2NcdV7DELpKnkpcry7YdPH756sSLXaEo5bYXthXYQOo7YNAAAgkfF 5Q3UMs9SXJgdWB4UMqhNDy370doKyMjQ5rTC2qap5oFLO6NGvjtemsTHHUTjRTuWLRb+0NRucARr A9kGR29ZKBhw3DDptO/ZHywcdPRPXWMPFLS1zz3jU8/81HP2u+5Oy93tWAd9ttfTd3rGXh8v+rtt JPzybrux3eVlZL1/P/vo4d3K/KvMWtoupL0O2+mw3Q7bammbpUbOos13m3y7ZW4RAsZR408dU2CB U5dUyUTgBE6EYqtp0BAGisj/ZgF1YbMACDIo2yqpOghe+EZhQFatppwi42uZuZZba7m9Vtjd0A81 6daDR+du3lKlV814GXZmPaJHjfSEx4dyWysVGlWP9VFsgp0urVRCGIiBiGFsjLfRQ873Ez5IeE9E N+Zjg08sBIKFUO9EfBz0CB5w4QMoLjbA1MFC26fdKTlXT5+ZODYBp3Dy2OT5H0+cvn3jdmh7tNsq WAhhQNQyhMRChgsWXK0IaWYItA2xcOncx7evaJG+Q/MM89BEIcg8rfBh1RuevuIZNbgAYgEtKmyC cTRjiiw87TxPm9ikLksc4b4p/eT4/2MBfFEngIeSxCOH8j909BCqDB/qHE1WEQ/+o1V7kWnElnjk E5wLCCXLYASu6roN11JdCCFHSdxGdWXlwaNXT16+qko1X2cJ02g7Alq1hJKniTVxbmTRli8xALF8 33R97roGwvO47zAX4ekwT2GAr2MacBmca9QHBUvgIPOBACdTYNIkWLG9jDNe0eCbnm/ihr4DJYUy QvS4UEdibd2ffuGgZIdt40tT+9LSvnT0ww7/0rE+t5yDJuqCud9l+119H4z0nb2Ot9NSDzqVg25j p61lrvL6xZvb1y7duX568e2dUbAEUrbBQs/Y7fLdDsLcaZtblN58u8nBBY5bLYrtDt/umlstQ1Cg EzVQUwCnbaKUIHZadE7vGteUJmjiWyVYaGyW8lZTQ42g5xWWfLMwN3I+jnVYldxaz+313FnP3Y0i Lhx298nT87fuqI03rWRFPHPNHiKTIwgwnax9yTrEAmgy+ylDDCh0xJCci47ox/ogQRg9KgHkGvr4 VWGLoUCNtnulzeqPWKCnjRBWZjs0hil4xNHqRgZdEGntkGmGfOrMyR9Onf37iZN/mzj348TZ2z// HPlBO7LboQ3pRcPomd5J0dSDCPIdvcIpQwuWnNcrNy+ff/HwXuYYrdhpxnYR8RjSyIUwAwtS4at5 QBop9fVWTG/5KwvFeCsn6v7VkeqBKYX/iwUVLBAOHhQ7oRShNNCVeuabecAz38B57IieKMfIPLP0 7ZyelcByD59lwTugYIGaxOdJoIVuI4A3oWeLaIUn16vVh49fPnnxsiZVfV1NmEIduePdBqB5NOaK BaRoFmIXxcILLLDggIjA8gJKZorQ9GMrSKyQVn4ijx3DIVRMWsYv9j/yaC2e5R9thUE77CFC7oVW GNqhb4+3E6YVrrQszv5fLOwktnj2h7lNG0gaYg9JazN2txJ/PbZhQtcyPkJi0KPk/Y3M3Mwh7yE7 pY9vpy6du3v57LUXDx6y5bmep22UnFjoGjsdY6eNoPwnFgoGXQSLsd0aA8JRFDZbBvJ/v23sHQVH 7OLFpr7bNHZKOm4XbAccCX21RbZd3iobO015h+oOigLbJkD4ZmlSFBZio7A3cnc9c9dTb6Pl5Xbj 54dPzty8rzY+dlJlU/h6uAmYZXrEVWyvlk6HOmaNtUIfFsowpxgVsBsqtBbJLVJcDNKrF8vdmHp0 h4WG6OfU/dujbiidqga1/3DiVC96MZLfHACEiK/mTi9CNbH6+FWmt0ImM+nk2VM/nDn/H8cn/+P4 mR9Pnb91+3bk+fTUnsgCZWRJMhCqNUNVVAe1l9vt2G6FUCPK47s3n9y9ldo62GklVhnxZDwIGGi5 KzdDVkaoF2rkKGXIi8BIqdeXJlOJHc9oZISGBWmzVka1w0XmMyHD9CxgRUjHxFNTkOWSrYDjyDwj 93ke4KhTFxnocHCkFwvfyn0gQI9mABpUL8YsiLekxA49lDDzVOi36pJ8787U02czDYlHhlMaPKcN angmdvn2uQx15FtS6IgOLgo1cJQA1c3RxscI39lhgk0eiI2zxX7BuuuKVdOi/yj4y/7DodiIY7z2 PzSDwAo92mbed22PdpKkZaq2/5dnF8a1j+7SlLc85S69sxfe2os4TjmLH7zlj3zhnT73wl56wxde GnOvncVpe/GN9OHu7Ivbzx9cv3P91uWzd85PXrhz7drHV08LXt9p29ttttOGHaB2+7tf4GBhI1Nx RPuPxh8IQB1tlGynpe9+D7jsMQ6IfQpgAn1lkHOnsOA79trqTkvebalkTEoKuhUwKa2t0t4q7E0K ZyNzNzIPLAxS7msLN+7cO3PjPlfnkWDEdcyQ4cNM3cgsenBhYfUyYx1lpeSrpToqCYRVij9ZGPtx ciK5NioYYpATC8KnaKs5Wn59NTeHqTkq7GFu9ZD5KY4mQOjH5iiz+4mF6jAozHak11Vp8szpH85c /M7ChRu3bqC1ooXYodFNaAltO1HbMC8R4ZDDiUd6GZpNuAZTmXr+8Nndm6mp0h4FgVGGyDrWhD0J NDFdBOZXCW3J5fXAkuhXNDh4tOlrU5zgx5z8OGmeyNHGRKS0HaVGvpu6whQUlyKgy/ARBXlzPXO1 3EfQ6wVxcRRlYKaiWJA3AQIBTwRotAe4R2iktA+VDgdUr8j37k09ezEjKXZiO22bN32roHBL121G Vh4baaClAQtd2voGlSUNWewxAQUAUSNiXBXfVg9pPJv2iLEsjVQUrL1juLRM+2izMtqa3jzaZDs2 /XFlIWJIIDkiaAkhnPsfLKwnK8NgcT1ZErGwmS2vJ8trcWU9qQ3D2iAQ+6nG2oh21bP7nhKzj8rc i7cPrt88d/76qes3T1+8dfb0k2uX5PcvBgHUiwolA2GPoN5XKJ8mfDfbKdgeNfg6SsAuBd+DiAIF TUbR0vcpjIO28akDfKg6IHCH/SMWTDB10IFbUeFrDlB9WigZ9EYa+yMcUCDMcXyvDkg/5mszV36+ d/b6Q1NdaqfmKrx5guxtrBaNncJdi9zV3B0W7maTw85DL41KSvVVGPkC5QPUkDeHd0a2rxV8vTRH ud6DlMqAgz427Ku5PsRlBYetHhUWYpCBBZMiAQjWIDUJhMQc5GYn5rIqT5w8eezUxWPHT//t+Nl/ nDx/89b10LVatKjcgHPvBlInETUI8iw1OvDpIWvDg4S04nvx/cvHt6+mFkgxkecoCogm5JkwLLlH GqmIRFL5qBFGM+LFXzZAbvm0rxRKRkb7bR2xEFF10MYaSRxhWHRiwWOFr5cB0fSdBcJhXCBo8bhP 24bgfOzTgQYsBpluVzDl4c5y7KuZ32iGUn1FvX9v9unz+YZMj9dpWuRx8kChFege7KdZxDzFd0vg vlmKOoW/DnUt5LEPCw/dpaPQEHQuI+JiiB4jpC28WRzQuEYa2DTAIVZ5x7ShJT5l/GgSL7H8gIYw NNeGv9AcB/gwz9Vg8D3zT+/8daAf9pFd8ucexdeB+qWvfOpqB10VLfxOz9ntOTskbJydVrzVsjda cL60saReqXx4MbPwZsqozLcsbSt14GTXc8gYdafUdggESm+AsAupk6u7qBS5tk3CBjls7Heo8T/o GKIEHLGAt4yRESxQtoOCT/AvXfugDSLwI+jQCIoW4bB7hMyRTNqmAmFtluMCYW93rNSav3bn/qnr DwxlsYyttQw+na8VEljYLSECnVHmjnJvq2luNo0xC2ulLlgwRjlY0FcJBwMqcZCQlcArIxSC3BhQ /5WMWM01VBkwQr8tzGFugoVBRn1NMNrDTOAAEBApXuSypk5Mnjx28tKx42eOHT/3j0lopBuxb3do wpUuloc0eqnajRqFJ8FiIMmRM3+wUJ+dAgsoL01fb8cm3EQZMATsG8wFBBU0Uis1KRI+rhrtEJac 0yZptJ+JIeoCTDcSj1OOeZRjSEixMQIyHEqJgQW8UUxK1GhPthAE6eJFMTWRageKCD6a54KFo/Bh 8BWEOKcWPnKVCNXKqxdBY2VJ+vnOh8fPP9Zl2hwys+QUpHgSLs7htW3Vs+UQziK2AQK+G0BAOQAI kYuAfyfpRWMlFm5oxBFHaYgCVAQt9sECh20HCxHth2NGjtjZ9YgFP7GDGHeA8XZ1X9hvX2y0FKFU WH9hoad87SPkX4bKtyFYkHD8dVX9NlQP+/KXvnQ4kA8H9YOucti3vvTZfh9aqL5W1Etryal+dOsf us7idlPbBjgt7aDNPnX0zx3jU4t9gSVvG5+b7HNL/9w2yKG3OOKwxb+2za8dpDex8LnHv/TNT106 32ujcIAF7XMHUGh7TfYJmNA4BX5k+y38yHbBWqFSKYElKQmHrRZ10iJ2OwaCZow01b0uDdglbPH+ w7uXbt8M7MVBJh80w9082ChQMgjG9RT6vzEEGqm91043Sner5XzqxaMEv43WM3u79Ddztx/gSmcQ 8bXMWU2pk6ofG8PMGqW1zaa8lkswIINU7ifSWskGmdZL2DBDsTDagUJdW4W1XtoQUaOM9xOdaeqp 06d/PIG6cIFYmLhw59b1PHA7oZKZtX4kDyKULV56jdyTy0AZlU4vhbgyaCqUq8mLHx7cvOyzWmor EGMoNCXpGbTJBEIRoIVXspBlaNjxloSDF1QQGisXRaEVwMkykvqRncFMOgxJWKDExGYRkuIiCRSK u4XwLLwVEQV0DHVUGRQdRCYKBK5sxbydWnlkwG4QHfReg9wH1JEnR041CqTAb+RRtRVWlhcrN+68 fvh6ZkE20D4nbj2NanFSyxIti1js6wHafDh0uFyX3HcKkxLaSPLQNfAjbEgRe1lgZ76V4kULNp+T qaewMioKVubT83oCk0cO7dcduG4S0b7yURjFrhJ7qufKga8FAXDQaYDPo83t/2DhW1/9faj9NlB/ G6q/jRTE76s40X4bar8MFLDwuSd969e/9bVvfYvqRa8BFlazWs9baerVjrWyGTeQqDRPAyxQD63+ uWsghw+75ldEhx+ibaeZHiDC/NZ1PjfNTyVetL8ObIAA8Y8Wfp/eyBEgYgzIgUh1xL5wE59IJkFE cTqB7mrpY8uAlKY7tNkeWRUNsdsGC8pGIW20rJZdu/fw3qVbtwJ7GSzsFv42WECrHkt7JdtKpW0o rj7fKa3t3Nluu5sta7PtQZzAd6xmUFzeZknuA7GWuuNHfK4VDhpwNPi9aGWrpa03YSuUYaYAhNUm mtB6N2G9FFIKggclxoQlWW+6PZpbyNoBk+qN48cnBAgXfzhx8R8TF2/duJr6rpiCTl3Hw0ga5Rzv bcdon2EcdNgBsCA6qUyrsfTm8d3UlFEXaDMQV0WiIoeJCFdBS5sFWjuzmolZUqKarYiLYXHxhIgA vh7GBI7bzkPkj4mWFsdWYoOFJlx/bnczMw8o1QVHsL1aCYUW89iWEaUgAi/G1E161GcFSQM9k0He RPAOLLI1ardtqYjVOFLynAfecsBnl5Zrdx7N3H85vSDrliHHTj2LG1nW8IAMwPGIhQh22FAS3/Qt bdyXG4thPtdUs8DyLXpgdGixmGwILVEcRzN0W6GXkzGxC89LPAf/PyPXjgMvCnzPtXEApGA2ieCv lTRxkthJYw9GOvXDP1j4dz/6r0H0W9f7rev+3nP/PfR/73u/9rzfev5vA/sQLHRrv/Srvw7UX3rI Q/mgV98jFio9b6ltVHrW8nqwtJXVt1rqLsR8R4W4+tzVPrXVwx77iuiyL1QmjM/I5xb/1DLBAuJL y/qExO4ahwPzS58fdEkpgYWvA+twiMbZ+ty3d0XP0kHX3m2Zn/p40T3oQKohRcmD73fNcSHYI0LJ SmwVjc2isYfv0INPl7Y6VmYs333w8NyNuyarQsBsZeFeK9pqsvW88alt7mQaMMRn7ZX04JXNNltv yest0S3cM3fBad/Z69tbLWO9pMHBjaa+VmpbfaOfNzY6bL3JRrnSi6UhNFXLXG2awwJKRu0kBAK0 DaJLMp6tNb0+uQbUBS5J0sTkqWM/Xfzh+GXC4fiFe3d+bsVxj/b254NYa7l1vBEevBWjZdbhF3ok rqw2bU5lxlyqz00FrAa9hBa7l1r93EaKUtNNqonyGSxAI3VwTMhQZLaKX3VD2m9/lPmdyBFtqdmK nVZsl5FVoGokZjezO3hXijtYPfp0IMZw21HprjZ91Be4CbjmToJfmSgB8CPAR0BnQnHhJm1iyoKY T0n/O9SzGvpJGLfTqPDNmVnl+v2FMzdfXPj5xdz0gq+BHT/weODgzk7kQvC7aeh6Ftp/P/UdauS5 TqMYjhWbvOm5nqZENBGLHssrHjknNmcQj9lCJAZt4CO2SuYx8t82Q88hn2ybQeCFYqjOd2hyRuh7 lmkBlyRAk5D8wcJ/9YP/HgS/d53fOtbvPfvfQ/e3vvNL1/615/46sCCfDrv1X3vVX3rqty7/0lH2 e0g2aausrwYrI6u+6lY2gqXtrL7X0Q96+h7EfI8dwoMM9G8j85chxbe++a1n/dJ3vnadL237a9f9 1vcOuy5sMsoBVYSe8WVgfh0i/03xCtDAubPfsQ56dNxtcTrv4tzZhs8VLOx9Z2Gnq+71tIOBvtdj e12oOP2gr+92GcxOZi3dvPfw7I17K0sfHG25H+jrqb/ZNLc72rdBsIsMb2o7LfugaR403d2evt6S 1pvK3kDf7hgI0ffLYRxgkMlHlEyE1kvr/Vza7uJXaj+Rh7igNIYU5qg0kb2D3BqzMEIRQTrlTg9Z GtEIRXWlPjl5+ti/Lv944tqx43AN529cu5oFSFGYFGs1px7sbgzT4fRgxksLd+smnOS6x6B2hplH 4j88GsjopXY3RTtvHLX/od7NLOgWsAAoEKgXeFcvNgFCN4SR9zuhU/pWGVjNyBz3BWW0BRZcNvwy KhHrphzVASzgzkN8/9TCbZH/RcCp8ypEngMBq5lS9cFJEcGJ01SQIsJHe83YRYxbZoDgco8rkqvK 797VLv88d+ra85NXHjx79NqoqrSJmeuEjk1bOdEUOt1iCu1gaeM9zFZll9ZZ0BOcQ9NwmSJCFXuA K7ZSd9WGqzUcpe6rkq/KniIFmmw0qobSwCfK1YomNzSlrsh1SaqqtRVDkaqVpUa9tri4KDWUylKt UVWlyp9+4bc++z9D498D7fe+8vtA+Z3UkfrLQP11yH4Z8q9985e+/ltX/tpSv7WdL0i/nr7d0rYK ZStW90LjIGUHqYwGFs31fg+KvX7Qk74MlcOR+m2VfRtqiF9H/Bdg1TN/Gdi/Dr1vPfew43zteYd9 +3OfI//hFw6H1tehc0iqCThwtNWf+tDwHOWAQOia+11rr004iGFxk7qhAELX+Dw0d7p8p2cdjLyv m9GXtXC352627e2us97hkf7x+u1nxy8+OHfu4sn/PL747vlq6q639fWO9qmb7BThVjvc6cRfuu4h 8Fxju31poy3t9pSdLtvtartd8GVsQIzhLaW2XqrbXbbRVjZ7GmK94Nsdd7vjQdL0E2MNaqodItCG r5VejzqRnE+jYrX0+4nVi/hqSk+OXlmqTk6ePfafV348fuPY8as/Hr906+bNNAholmDGqcOKupvM bmIPcnNY2l3UhYweudhP4VPsQep2Y7tLLgCZCXurFqHeL9xe5oCXyGxkHvUjwTJAISO9SUF5tP1s BlerN9KjrTzgCyxcGdKqVQX3ATK5p8BuNCOcq0c2PIRBhldtRLaUe0ysBxdzmRzq1UxDnRYZ2XJg y47RsPU6zQ9nkqnWTaVhqRqrq0tzjTfP5h/cenrv6s+Xr76YvPR68vLT01ef3Ljy4PGtZ2+fvf/4 fnHu/fzc+9n3b6ZfvXj7/t30u1dTTx8+e/vi7YeX7989f/vuyeupx69e3Xv6+sHz6edvPzx78+Le k9cPn7959uTV08fPH91/8ejBuxfPpl+++PD8+fvnz2bfvV2YeT//YerNq+eLszOVpfnK8vzbqdf1 pcXq8qJUqz5//qxWra1U6kwx3r/7WF+S/sKC8V9D43ewMIBr0MgpjNivFDqxMDB/HfLfe2BB+dZG 6po7PZpisd1UdzPtc2oeFvqXAjpc3WlztMZ7PflgoHweqYerGlj4OtS+jti3kUEFYmDBcXzr219R IIBD1/3SgxmHcebkDrpknOEUvvRM4PBlYB/0zbEd2BJHogPFAjkvQNjrCFkFbzLg+0O+2+dQNQdD kjSbLWOjZez1nFGbzU3dOXvl3k8X7p07d+HGlSvvnz9YhfjvmattY7sd7BTRTi/d7kA4uXtNi5K/ B6UH36EejvzPA8CIsPY6NkhEPVrPtZ2OvtEEEdpOT9so+FpurOfGKo6Ftd3xYSVGGdLeHKXOKHUH ibVe+D16zqMBBkcJLcpemFucmDhzxMKJaz9OXL127apn817KOrFaevXSbaQOra0OzBVPrzjakqNV uLQY6DWjvsCq82pldmX2nbQ8rdXm5MrM0uyb5bl3tYUP8vLH2vz7lfmpxY9vKvPvlufe1hbf1xam Ft6/XJ5+XZ+dWvk4Vf04tTT9tjI7LS3PNpaml2Zef3z3bGnmlVL5oNVmKvNv5j48W5l/I1Xey8sf 5j48n33/rFGZZvV5ufJx/sObxY/v5OqCUltYWfww//HtytJ0dWm6svjh44dX8x/fKY1lTVpR6pWV hdnq/KK8XF8BC09m7l25e/fKzQsXHkxcfD559fHEpbtXzt1+cPXR+xczy/N1S7NdBi/gV5erXDUi J4gs35BUVpU9zUw4Pe5NqdRDw83dKHdDrSb5ho26A3GFEmDIjYievWuHum43JJ/RQ4UgrlAIXJOJ bZN5o1ZBoYk9G++Q6lWmqa5DT3CrrdRN7c+xtt+H5n+NzN9RGlb131bZb6sajr+v81/XzF9W+SGI GCj/HtZ/7Su/0lQltj1Qd3rqQV89aCqfgEMufWlWD9ry7sA4WGX7I+nTqvRlVTpclSmG8tcRDLhy OECVMQ67+kGLfe6iRjgwDpT2yGFhuuF8hWUwdprQ8NoeBduAty3VrVzeLlTY820Uo0IseYjrG5m0 WcgbaWM9a4jRamMjY+spAirIWEuMUazzxuKty2d/Onv9x3O3zl86//LZw48vX3X9bJh73dRYzbTN HM5X6Ya1oWds+PZaZG2kznrstC11N083In/ouEPHXgvjkedvJmnPcYaB1/OdnGulrbccKTeqBa9n vF6aUgte0pQKW80txW0sFaaS6PVIq0asGmkrqV6L9YVAW3z39v2J46d++OnajyduHpu49uPk1atX rywtzMnLSNEX8x8ezU09Wph+Pf3m6czbR9NvHyE5p988fvfygbYyq1VmjcaSsvzx49tnSuVjyBuJ LSNRGyszhrQIL1KIpl6rL/j4laumLs3WM6WlQKs1xVO0ElO15Zqvo+WnWhObEm8s+Hq1FcLvm5FV 49JcbNVQHSDMIqsOCzwo3V5Om5BbSs1W67nPy9gKbMVktcBRk4BGAUy9brEG7G0RuVBFIkUX4Y6b kTfz6t2dq5fvXjt78fLlycvXJq9emrxy7szpyRcPHyzPTWvySuAqgV2zzVq9Psd5FT8mvubyqqVV LG3ZZ1U0AvhjfaMW8FpkNfTGbMBXAo8etEObK6myLbbHtBTVlCRbVgJGS7mZVKe9tqGpHJM2iNHw DSXH0phWM03agcYU+ygxpfYHC1862teOdthRvvW0rz3YXgmpi/b8y0Db7yrbLXm3Wfvcqnxq1Q5K dT2vD8vasKgNkqWBvzCwlkbOwpo/OwyXekm1lyx347l+PN/HMZkfxAu9cG4Qzw+jBVzc8+b77sLA q3Tt5Y5d6TqVlrVYmvNNc77g86W50DQXCmM+0+djZcatvg0bU37tXSR9COUPfmPKq0/x5RfWyku3 9saqvjZXXutLz9niM2vlNV9+ri8/0xaeybNPlbln9Zknsy/uvLp35ebVM+cm/vXPk5d+On/nwsXL t29efXz7zrsnz+bePa7OvlDmXyrzL6qzT2Ze3qxPvTAX3qvz7/TlD/WP76Ye31XnZrS5Gb4wZy7N r7x7t/jqpbOyrC98tKtLTm2p8v6VNPdeX34fKAupXmH0rtd8ZdatLwRyJVRXlqde6JVZp7Hoy8sx qxmVmer0S0+dceTZt2+mJk+e+3Hixg8TN/7202U46CtXL09/mJKX37jafO7UcruOf3e0/5krNQOt n5shRzLM5K6S2ypsQmYrKBCZQ3t0QNv4yHa1ElkyGYrYTByVK5XYoeFjGomzZJ/VQr1e2FrKFV+r 88ZKYKiFx1MbDS8qzkJs1Wn+tg2y6iGvggUkG14MzFpg1kXvqBxZqqPVAoMe5RmYihgFZoGjeaaM oKVzXKbJe65BE/lsXXwB2VLrjfmFxalX75/fvXvv5/M3b56/ffX24zvPn9yfn3pjQfBzJaTeTiny ldBnvqv4DtBQsvFsEDQvEHjAzRETQjwtD/U00PNIh/0lRxy4oe9EngvTETlOEYaF6+WuV9K+/bAz Efx4M4lznNDMXt4sfM/Vihye3ShSP42dPPrzeW3O3Bt77q0zP5VUP6b12ag27S2/cZZfBPVX5tIz Y+GltfyaLTxf+XBfmX9c//hAXXqmLT+pTt/5+OLa7Ksb1en71Q/3a9MPV97f//j8xvzLGyvv7qy8 +7k+fVf+eK/y9sbCy6uN6fva3NPGh0fVdw+l6afzL+5U3jxQZ5+xuVfazEt1+sX8k7vSu+fB8my0 MpdUF6LKgjr1Rn73KqjMR/XFqLEYS0vm0jRffB3LH5tGpc2rXasR1mbMpdctfb7lLreD5cKtuGxG q3188eTO2TMnT01Onvjp9MSJM6cnLkz+6+Tp46fOTZy+ePrMhcnJubfP+zHfaLp9WhOtIf+HEV9L rCxcGbS0Mq7Vlp6XYX21aWy2zEGqJRAqjdlhTHNWaUS7sO3GXGlLpa/0Ut4KoMDrjrLYFzsVFGa9 MGu+slA6UjdUW4GCiMyqo81n4UJgz795P/uPn079x0+Xjk3e+PvktX+cvHbz+g1ZqlvyfG4rKZM7 tMaznpgrIYqOI2UWjOdiqFea0POOFKHlZBWfVRKrEYtAUxlYlLGZJxeekiJvzXpsSalLO3iInT20 8dNbMlrpQ2scCpp6hLxS8kCliXmOQqNpod4OdfxRuSu3QrUZwYkoZcyK2MgRoZoHMqIZs3bCWzFv wkHTwISVhwbcNLlv6lbizRg/wk2oSO/AkQJbimzZUirQdR9ePZl7/0pZWfAYfArtQNUMcT3MuN6M 6O34oDjQysxMcYdAa6V8PKsKl6UODVvkoVUkbhJaaWglgRX7ZhY5ZeyngR25PAvdZhRkvlsGfuo5 qQMPFeaeh2NKo9j4W1DUzHZiZ75RhmYnccrwz+cvKFOPdyO2B+Xf9L6U7hYcnFtdDVe+9Y3DHt9r 8q2cNa0lX/6wnskHfQ4vuV5IvbDiq1Mpn13PlfVMGcWN1UTO+GJqLq5m8lZT2e1o+7gyqxfWfC+o kvJvQ4How0CJlYWWWdtrmvulvZ0a+4VV6JUOb2wExl7q7KXuTmgNTanDahse24r50Ne6jtRz5WHQ GIX1gdfoOfX1SMOxaSwO3Eo/rHbCSsuvlt5y4UlKZfrl4we3r169eOHK5MTJ4z9NTPw0cf7kqbMn Jq+ePXnv+uWV2dchW266jbYnjWiVNG3l13bUdtpoJ/VWXG+GtX6mtsJ6O2yMcl1sCauupWBBH8Ej Z2bLU/BKn0YQKIYp74YMjGyWtjhao0TfbtmrGS/deiuQB7mx1jLbWTULKm8/zP3nxNn/OHHp75PX /zZxFRrpzu2fA9/pxTqM/FocbGXRGs2SZTSpIzfXSpsWTdCYnTmeLjtIeBuSJuGD3FptuqPS6aT4 9zVa+J7UAWt0RddTP6WRuA5NF7RQTcZDZrDhXVwcG1BBrYQ1YxpKHvfN0jSqxOynvJ/hzrydgBel iDWwIFKItUBBqrdTo5XQKF6T8h+XWa3EGg9PdHN70HQH+D40wMGLWI99hWqKrThaFXamMjtVmXvP aouoL5mrN0OzFZtlZBQhTQvEHdqZlSe8THmRcDT+WTCeAWW0Y6sZ8GYI7mywEIdouKxW7reyAD82 EzoBEWXsZp6NQPNfBC7NdAq83MOLTuIxSC+AgOikDvWJiZm3mfeX/VTt+f1M2s0aB4X8qZT3ivpm srSZzB32Kl869U+5tp+p23F9zV/eK6SDprwer4zC5VFU6XmLw2B5M8X19e1M3oH2ThrreWOrhIZf WU2W1/OVzby6liyvxrX1VBH7YOg7pblTWnste79l7TQbu+3Kp151rwNYKmISiEKzQdryYRuf1Tho 1b/0lP2OtNOqfRkoXwbSfqe206xtl/XDPoOKO+hI++3qVlHZaa3sthtrWYXGC/r2dtNt2qq8Mvvy +b3bNy7eu3Xpw6sH1dlXnjrb8Wv9pDFMGzsdNkrre122WaprmbxZsI2OPirV7YG5O7A3O8hDbbNt brZgmWHS3T3qzrVohV3OD3oBEn61NNaaJmK95Ku5vtuxd9r2Oi1TZYNY2WqaW20Lv1pv4RpOs1vb 1VZaefN+5qeJ0/9x4sLfJq7geGziwo3rV9LExR02W85a6m7QoJ6ymmurhdFPcUQJs9dLa62gBRqb TWf9Ox2D3BzhvLAQg8ICBchhvNjPRCC9aWDCRJ63I2KhSf2lJkXCO6nezfVORomNH0eFM8wdHAf0 XsKBZtUmuIB3crNbOGjtwUI342MWupnVL2zBIG8lNKgnmndktZ6PEzuhGgFJQ7OSbNVhNa06Ly/P ystzen3ZYw3amZCmatDiC+Q8TfyIjHZqEQWoLLhtauY0LQqMU68aVZDIorqAhIe2AR2Z00wpWpnX TL08cgrUiNBpRV5JBcLDSRE4ZeDmnk2TD31GLET407xe5vfzoBXh4j/XeP42ML51jV+75rcu//fI /p8N9//AOI/U39eUX0fsl4F72Lf/veb/eyM4HDpfBtaXofV5aB4MrMM179PAEj38/MvQ/Txw93r2 /tA5GNmHG+7XDfdwwz5csz+v2vt9a7/rfOq6X0fx7xvFf2+3/r1ZHA7CX9edX9f0b6vslzX+bWRQ d9OI/75u/zIwfhuav6+aX7rqF5juNfPbOkf8smF8XWOfh9TPQ6uKOtrngf55QNbmM3kc/VOfUUcT zeXzdko389Xa8vup148/vHnEajOJVe+n6lphbHf03a6x2wMFyn7XGIHllvG572x19NVSBQijQh2P rH0euesFWy90ULDVtNDUUz9qyz5cjWnWU8faaJkbLeQqp9u2zO2WtZbT2r1hQiuywdFuz94bOFtd k6aCtxudrPryzdRPJ/5k4YfJC3fv3Ow0Y5oom5kbmbdbBjRNvc3XmmBBFRP/DArqraJe3PXCRI1Y RdqjBMR6N6F5UOtNJLPRzwwxzEdLuaHf+oKFrqgOeAUsIMgmI+ELpAQDEeOxPIAwyOxhboOLdqTj 9V7O+6hEpYOc7+VuKxEjDpkJCnDs5WavMP9A44gIuoaOndQuUU0IDU4Tnzx6tLleX0JF4NKKyxoB J99BszV8AmGsrGjWH7xAzBNItYT3SocKTeH2M4RDUwoDMTEjssFCipujgiQmrm/i48QwRx4h1UGo l/s4cZqRWwRWNwnasd9OHEijsTrqJG439fpZ0MTFyZ/PX/htpP7Ppvnfm/bva8Z/bVj/s2P/9/8l 672/HLuuK+EfP5PNIJFsJlkM3UySSJGyrbHGn/TNjGXaI9uSSHVXAS8HAIX8csALyEDlHLubpGf+ 1Nn7vmqyPd9ad731Cv2Aql7r7Lv3Pufcg7J+mD88Kh8cZpuHkbIXSEeJcpSqxyPtUFyPM/0w0/cT FaG7G8l7sboTIoDlnUgWr9TxUXtJbS/axM1BIu1F8m6g7Ef6rq9tiyrefmDsBQCduh9vspAR1PbC Oq67QX0fcIiU/VjZi+XtsL4KajuxtJ1IM39j5j2YBw9xv4yw5GXIxbSqW1s6m/gVu4G6drVZV1r0 1GVXg4xRvv7yz1/+7qsvf9vYhJTaHA/VhWdMXWXmQcxsLgJtFRpTR5062szRgdmJJ+GaD2uLUC0d UdfwuLLeZt6vTVy5BNB8bR7oiNVZorFTcbBRughRYGcDEOPDfUZydUYDgBoN6tkQ7FBLna+8zp9+ /V9/+8rdt++8/t4Lb9x/4fV3X37r/U8//WjQM6P2137jL1lHHfd0Zs8Gm6OhFPdqSb8Wd7kSCC0C DTwlJR1KJoAiatd9YKEjxV05bNd8rrpgDXYJRh3RQ74lQ01FXcSVAifud6SwBx4BFjac1oa7RSz4 HdVvYynEQpPtHy5ghYe7qtvG0gAHv4OrBnRgAQWD1gZ0FCCDx0AZfSIIz+MxA5KGvayMbQEHs27L D9WHf1Ie/FHb/Mrk14w+vMWC6G7qknSkTrV1t9iwCiwMCToVv9SBwocxMevDhtLDaum9LQNYGOJv 64EgIMZAXtqwrXYalD1sBYE/smWEetcCp5jDps4DINCKTRV/DK5Oy3C3zJ6t9J/hhauJcTpSLwvt KJGOUvksVy7GysVUOikeHqYbx6mKiD1MAAEd6yBRdhGrsXyQKgcJIplrLwIQ8KPOVxLpJFePM+lo VDvJ6ieZfAA4xMpBpO1HiH9jxzMOQusoto8T+xCvx4j8+h5Q4NePYuUk0YC+o0Tf8ZWVV9+NlJ1Q 2Q7lNZjIra0j0sc6rM+9ze1I3R2ZeyNrOzbmPv5VWnrSbFBfOfJqIK/70qzN2Upm7Q+bf/xH6U+/ h9WNWnI51KeuOXWU6iTFwldXgT739PFAnQx1vLiM9JkvC76TSqeebP1lPOSTo97mzFenrjrqVUez N6eeNo+NAujw5NxB5MNos3MjHyBiN4AFLgeUUUt7NUQ1QeF+5Xf/+Ld/9/c/fu2NO6+/e+eN9++8 /s6P3nrv888+GXTNtLOBaJ8N7OnAHovzHWFvI+ptpsBRrw6tNeoropxBIMTtOvRSMdALyCrEPNTR bUNg7XtNFQkdFQrJBOEUQ1wN9cw144EKUvDam8TC1oYHNLUFFjq3WHBacBYbgIMD3ukgILWga2F5 bR33PtRUX/W6xILTBhZqVFMCC4hnp4V4U3qW3K16X426OE+6adUfAAvaxlfAgvjKXXh2fg9gGyLK 3MCiE7dhjevDjjpoq30gQvQ+iV7cOvyO04Dq0xDGPQiklo7477eVQVvuQafxRqH+adHLI+ZxBTsg 4AEHBDwQAU7BchpAlhZ0LK9lYA1s7VksnOfaWapd59blyLjIuC4L/Xqsn2XSYbJ5kilHGbbo2mEq HWfy4Ug+Gsm4x2Z+mAAUuMFOXt8P6ycppBRidXNvVNuNHx6kGydF7bgANOSDuL4f1I9j5XRkHMfG Uagd+MpxpJ6k9smodRjb7NNzwRrmQdQ4iptYe74J1BwmjaOksR9Ze1ihxXYOYAG6yN08GBn7I5Ml OUde+qxWi1ZA9Ti2drH5b21M7K8D86vGxpfqn/9R/+r3A/VPcYNuZUqroubdGlCw8LSlb8w9c+HZ 63CrHEBxqUAWFrTfFLs97EPvYTkEEOrLSFsEytRDkNewaePH0quVfn0WKdlwE/oK1DDxoV4elq4y 8VUEP8/uuWwdn/haCUHlPgy7X3/+xX95+ZU3nn/t3Tt333/+1b9+6Y13f/HzD9otOe08TDubZVcv OmrRhZZ7EAIO3Y2U5AKbIEOkjbo8tcQDGh0FFh62CAtuHS+mVE11YqGD5+FTFAJhi+47EFiIYHD6 ajLQoj7Yoe53NoMO7MMGCCIgZYjVUT26CR5HdVs1j29U3S1gxHQBhC2twgK0E7DgdeE4Nh0CiloL TMF2ppbitODlsQ8jzJQ2m/TgF4gF/eGfjY2v9NrXtmjea5k1bOP9LQSwBET07Dp+Eaz0YIvdHdjk 2TcLs497uN2m4jZBcAhstpq36RqkNrNVm10yCBmhaYBfoNnYEzWEiYAoAh0ANZbct7UKBd6W6WO1 rYGtAghYeOB7LCDyH03sy9y4Gds3k8bJCBt4/XgknY+Vs0LGxg6m2A839+Paeamf5urRCBiRjhP5 EBEe1o5i+RSqKVGOU6BG3stqexng8PC4qB0Vtf3RxnEOjlBgAfbJAtrJyD5OrYNIP0z0PaimUPBF CNKx9yNzN9AOYms/BHcYh7iJeI+1G5p7obkbQm7Vd8La0ts4GOn7mbEdazuxsfCVdazvYEsf1Nau tO1AIz0sG392tT+05X/uyH/oKn/wra/i1sZ4KC98fQaN5CpzTwGnLDx1GVpTx5i5JizDeFifsNkP 5oX9IctAnnk1eApgoRhujp3admpspyZ0FI/vDTYT6CJPmoiSN7AgOvrgj7R5ZBaODFCUjpoPQRb0 4GW4GQ3+8sWv/v6V196+89p7wMKdV3/60pvv/vLTj/pt7PBS0Venfavs6FOWxSGr6sACBVKHAqka cVCdzkjbSgL4tJWoJYXNetHjrAZ4CpiLqFNLaecVqCZcR3i9p2IBC8JZc8V9JR4AAht+eyPsiuN4 BIJSLSqojiz8eCVRFEQRItxvG2HXEL2s0EVQUADCQ6+zEfYkF3Cg3VYgorh12whg2FIIEkkcjq61 1M3qK10s6QGwwNNq6kMRvUxSVVhwGMZyp8GGUqfLZJQj+mx7cP3iq+3dpsos7pbu9iwEf0e8Vwgq uIPb/kCslk6B1DYlmAVQw6AB2dYY2mrflBn8Da6OIfUtAJ/y6QdeGCk3Y/O6MM9H+kVuXo/tq9I6 SZXzXD0f6yewDwWWdgwUZNWiazhKtdslTMTRSD8caUe5dpApB8BOVj8spIMcvkPGe/HMAdUUnjRP ssbxyAIQjsER9OnyUSIWoJQqhwlIBFiTj4Ux2Y9kocQUoACfcBhvHqcPj9KN/WRjP6vtF/XtUW2Z bCyi+jyEz4V3frCKNpbhX2beV1n3X4Pmlz39v3fV/9HVfh80/y3a+mM++MvEf4gnV0l9Edem4eY8 luaxjL19mRg7oQZy2QY1CCxMXRiK+gKSLJTmQX3q16ZeDaCYBzJsBaiB7gCgAHbASrEBfwH5BCBM PRWeArENHTV21LGjZT28Rc+8utv6yxdf/PaVV9+989oHz792H5bhpTff+/TnHww6pjiap0x75qQL 41/P+lIqVjZQRj24cj3ranlPK3rGuG+lLRVYyDoacJFsyRmpQeER1M4GgDPqA3pqLExE2gcQlARM wXNYWsz0F2wI4r8OLATdGu0D4r+j+LQYSgQ7QI6QPcT2FuQTSEQPuiZJoYVnaK7xTx6MCZilVwu5 6vhRoIwPiIPb6gDCXkRm1fsnlFI1pmajOvi2BUPBw2tgh3rlF3q2LHKe2PNlh+lZg5bcrnst1W+x Bcvfwh9muD0TC/QxgB4TyyFhAaQm+KhrK5yK0ABqtEETMsmEg6Z3tsEsGpbTwF+o9ix2Jzogjmc0 0uOp8WhsXOba+Ui9yPXLwrgqDeEa1Iux9j0W6AJoBGCctcMEOzziVq0WwvWQiCAWDqGpCuWolE/G 6umYTvwUgMp1EfbGUWoeZ/aRwALgc1boJyO1in+AAv4dDIKdHwssg18EEJ1keFKDQwEijpLNs1Ht dAQDsrkbbexEG9vJ5l6OWOXaTpVVVFvGCNcHE/ervPfvfuOfXftLr/GHgfEvwELc/jOrHj58sbRO lGUszcKawIIyjdR5ZKxgUlx5J1TXsOGJNvfrwMKccJBmQQ1vBAqWIXgEoa5UPnoRwXGrE09ZxSYM 9RiM42sTYkEHI8x8Y+rpHLAz1BahXQTQ3pu//BxYACN8cOfV+3dev//ym/f+5vOf+4NW2efsgrJj joEFum8ld9SMhKKkXcAEYa+NBxawkG7BXJujjh63ZIilHDKpo0atGr8aAxa7S3OR0VzIWMDCqK/B QYyeYgFGO+rUgYW4X8eWLuoRUtAGHMAdOkSRw2/oY7ZWLJ6B9dt4Xcc9Qp1duPDpPeE4tsALmzH7 1QEZiekpgkV1GgoPSlv1QQMbu9wXq0v7UGvxkCaxwGN0jXpPdH0jsOnQEdIdfdDWqJ1ast/Tva46 FL24/38sQK1xdfgWoMDvWn7Xxs0QpriNK29wdbaeYqGhei3dbSH4VdCcK+7dluFv/fDdhZflw4t8 4yKvYV0W8kUhXZbSeVm/mNTPJ9L5VDubaudT/WJiXEzM87F5XpqnuXEy0k8zLsTqMa54BddCBxbI ILl8VMgHmQTjvB/XEcxnhXVW2KcZDIJ1koEd8DziXDnNsajE4LX3seGnED+1w6x+zNQWvQmeOR4J vgBZJNIpeCQGFurAzsFI2Y1hqBmi81BZJ4g3eRkpomEb2vtP0da/+Y0/ONa/9tT/GTa/yvswvNhg cZXw5CJAhEvLWFvE+iIylokNLKw9BUBYB/J2jJiXsACEZYQdvjZxASLADa6BrXpYWQ9MRBYohrDb usACj8ROA2MemEABsDBxNY5E6OOvMosA6mLz57/4B2DhhVc+uPPK/efv3nvpjfc///QTr9+aOMZ4 aMwGTcokDs9R8iEDOBto8AJ5D7ygCyyYgMNkaOOatOkgSscoBmpCm1DLHbxLwXtLRy+Gej7QRyAC GGehl7K+Br4gLmCu+3Lcq0c9+XsssMQAL9DBTkuyEP5Ci/tG2LnNaoIy4r5OHdWVA+G+ucAOXQke hMIJzNLVo64ZtA2RWZU9fposyspSXxwCEmdI69VitRqLhTwJjhtY8LrGsK13AJyG5FBxIW5pmYGC qo+dIq0HOBh40r9dprD2dthrBD17uIX4t5y2BSC4bRsLP+Lqd8wIj3VIcGHXSvqNqGtH3UbQtp/B wgNg4aqQrgr5slDOC+milM7K+vm4dlbWzibK2VQ5n2gXWGPjvDDOc6NCwVmFBZFfOuECd0BTaWdj LBXPn4+hsjThMvAw3gjpBRdAZXUCCkjpwUkHCPhcYeopk45z+bRUzkoVr8CYwIxjHYIjRpRMsOen 0GMQUSQO2hA20wabcA3LUF8G+tRTcCOyQLVo689R64/QRfHW12Hj67S9UXTrM0+DKZixJ1BZBDLb xSNtGemLwFhGjd3Q2AlICuwkB0xCKB9lO1WxFpRJ0jZ0VGquIzgU/DqjHCozBLyrTV08AF4wJjAj gbGIbCzAAS/CjMxcUsMiMMuAPYEf/+w3r7x6/4VXPyQ13IVGev8XP/tg2G2Mhwh1c9pvzvqNyQAW QxE7OYBmIKTHQysnCrCsybCB+1FXJ0BACn0ND2RDNekRC9lQSVnmg1vnG0VCSRCEwELOh1UWSnoS qCHpqxxW0IFw0hn2XY06B2qnK+Hqtyv5pCGKgIVAKCj4CEQ+XAbx0peDnlQlad0taCT4Dk3AwfDa qt/lIgTMDZ6waMniPHXt/8aCWA6tMVy56XUtF5t/F6RAn+62BATamldhoXeLBSZvuQiHQMAh7Nm4 DrcMLIEFIwA6ulxhvxkJmee0yD5Rz4p7tr9lAAveM/WFR7Pa9aR2PZavSvlq/J+wcFJuHpd1rNNC Pi0UyCRIGgbkSDvP9PMKDqPbK7HArV6Fvz5BSBfyWQH3zR/Pcv2isC5L+zwz+V4osRKwUi8KiDHr KIV8Al7MM/iU3DiA74AuynSIroMERgOSzIDd5kqs05F9khgHkbIXSrsBFoyGsRfb22FjO2jMHGPh wgjrJQvED5L2w4DHhx+EjY0MWqKtjPvafGjOXcghc+mbC89ArC4Ce+paMw+foG+HGnkhJFIAhHVC IOAKIIB9VvjXyGTqydEXrkABaxMqoLQIjamYkwAs4Dp2YROgnbQKC3Niwch9EHft/od/9woFErFA Xnjz3me/+GjYa+SQ9F0l75hlz+SctCH38IxYYMCXAxgKaCeSApxy0pb5MJ9h+Zu5pqGUwH276rNY AI4yCiRCoHi6qkwUKxQ9ecQKnVKRQkw5xM2fod6ThebhoaSooyU9ExyBgMfyab01kY9SK+4gQHqq QAqchea1abqdrfqwzbp2r7HRth+wi2kLvmCDk5fIDhvABc8ENWUh+2FjEfbqoKkOwQ59Kxggtg22 yG4BXzrw6G8BldBpht83ubraM0t/yhEUSFgeQaFHgya0E8gi7GMZlVTDL4r7VtSznaYKdngWCzez +vWkfj1WQApXpXo51i6xn5fSJRhhLJ+UEhb36kK46Uylrci0C4GFal3kBuAAvkBsgwUuxjpRUKqI dizCYaQJyBi8Qi/h7aV2wQ/UTjPAwcQ6LczT0jwujKMcQkvbH9GDnOSmsNjAgnkQARrGYWrARIMs KgUFsXQYy3uhtheaB3Fz7ZqLoT7pcYBM3tsoh7W0/TBi78fmbKBN+yqu84E+G3CwBjNInroOsc8T DquwsaRA0rZDdS811rG6M9KAghWXtorVVaytY2M7tnZCe+3bS89agmKYkoKaMkTZXRl7ygxiKdSn gcZ6hKduJ9bCV5dYgZZ5+qC5+d69XxELr31I+3z3ffDCZ5997A6b8BcQ+QBC2Td4CrUvlZ5RODyF PeqpIoz1yRDyyYA7YGxDU3lGCUvuKumwjpW5aiHOMY0GCt6YD29lUtYTpruvlX1QDzYKrRoYAg2W Iozhjts8vwY4JAMjGRoAAuxA1BNpWFgGYsGAd0jwvGPEcOUDBr/P4FehmgSImIlK+mAETXwaJdMQ 7rsrDztSf6uO1WuxYY/tFg2goFbNqxmwU05xiAXdY6ccvTN4IeybwELcN4MOQIoNXA/aoDCeNn2K BZCO8nSp3+Mi6FkhQn1oO20tHjYc2godC+5jyHOsgCr+pyawAI8Pdgg7jR9qbWPlZmLcjK2Lwrwq 7etx42rcOMuNy4l9OTPOpzLWxVS5nGjXY/261G9K4wphj+09xVJ5BS+k2hkdBHwBRBGusN7aFZ6f GFdjYuSMJGLwVxSsX1yN8WnK6QgWQDnL8bx+WminpXY60S/m1slYO4BfAI7GujDUKswI3PpuIu+m td34wX72l9PJw/Pxw8Ps64Pk68N48zCCcFJ3XGntSkt3c8njz19nvT+Nen8qBn/Ju38Z9x+Oew/n Qx6+ng4fLryNpb+5Cjf2UnknVdbQQokGLGxH+jpUd1NjBerJjHWqrlJ1DnMRQn1pkGGrwFwDC569 cKydCNDgWkFlhfQd80igQBwpmgXw19I6hrypT5363JUyHyZu8533v3jlLlCABb/w3ktvvffZZx95 TnMM3+Fo06E9HZrFoDYCFlwdr0D5Z31VzOTRp44FTwEGGTsaaxa+UvpyEdQzv5Y6myNHGQ1Fmojl NpYYACKgRmSZBBZ6Ophx0tfGXbXEP8GJgAU6jHYGWweBjVDH3g7Nw7xrQluhJV08douFzNXTIUmh yrgCO3xLj3AQzKKRPtgfJQd9yRfL60turz5ob/ZaDzuNB/1WzekobkcRKVMsem33NmELJWa4HTMY QNVw50+GNkgh6Zsx0NFWAYp4QMrg6qtB7xYLQe+2PhIC2n0j6JuJa7sdNXEaLjPAmtPmGXDcx8BI C3IOHwVeACHC2vzgnS9y6dHUuJmYIkTNRxP7Zmpf4H5qXU31M9jniXw+YVqJsV0aN6WJdY2ozs3L XAcuEN4XzD6Z54VOXih1MgJ3ft6c5fJZpoIOIPVxc4HIB7nAm5QSPvASGIQZF3mqk0I7LpXjUj2d aEfwCwVzUAcZCAJYIDvsJNLuqL6Xbe7nDw6Lhwf5A6yTonaayYexBNW0dut72NUjZeXXZsO/FIOv sv5X+eDBqPOXyXAT7mDFfKm09OvbkYy1jiQ2O8UQP9Iq4oHr3URf4+0RNFJ9J9VICrEigIDNX2PP RmBsR+AFa+Ga26FOLET63Ic1VgCBWQB1JE18GWseghfwsdocV3xCoOSuNrQf/vS9z3/06r07r92D QHqOvPDe558DC7bQReoYEs5vwM4w1F26cvjxEmLMN8YOYKWXQwEQvOiouSNnjoSVu/XCk/H5IyGQ kioTC6U0UMeuUZXkyCzgl55a9tWcM5klqKwEEd7T0wHjmWqfAkmvtBAzsUzGajy72jPSgZY4gAPM gpwMtZFjgkGSIbQT3m5ixV1SDHmE09KkoC/7A9nvy14P7CC5HXjhusP+paqjictva1XPRtg1/S1m biPqGSsa2HhdnLY2Am7jetQRvABIDoAUMxhaPsOei0AQbSGEA6/QSxoec0EoTsNj34juig4ND/8R f8unlwGcGyJFrLvP1BcY3tzzZaybCXAhP56pj2caAHI1Vs9K6WKCwKbUAVKg86+g/DMdC0oJquly DFGkXU61qzk0vwZrcEaDIIt7i/dl7YIAsVm5yzdwBX3gA4UM00VuygAKRCVCOYVhmapY++nmYS5V WIBqOi6so8LaSet7ef2gkHA9Hmt7I2lvJO8mdVyxvR9kyl4i78XSdlifDh4snI3x8MGo++dR7+u8 /6Acbk69OjbqRaQtIuh/RLuyjLCIhd1E3aciqu0k9e0Urrm2CGpLAZC5V99OeN5zKRYoAGvCdkRt N9ZXoSpK1YCPPnbkiavMAw3GYeprcBBsVvTxr6r4BG0xVB3t63ff/eKll9978dV3X7h7787dD156 8/5nn9/3hsaioy2H5tix5mFz4eLt4BelcKWxq7CQ7cF9AAjqxNVL15j61sQzEedVvqgYAINgE5hl TRgNcIosWqFqhQsPfrsAk5FIT2VDGeZCeGQZsh9cEA+5QiH+0z62Yp0YgTHpAgjw6cCCmnrKyFOS oZy6aurqEEvkCLxdTDWPYDraICPYE7wFIgrUoITML9W9LQlYY99sU/YactBS/afVCr9T9XXQCIdw JQNQA9AEUWTGPTPqGMGWFoiMLoI8HkL8AAtGMDSdDgxFKxq0qiQSQIRnmHRtG3AEWFVm6WkeqeH2 zDYces8IHTvoESk9WwIx4S0/+IWJ8WiqC+9cvyphous3E+XRVGCB6SPpcio6lEpgwbgsdez/oAPC oSpGjOkRENvwFMcjBRA4zVmwhvI5L2z4gstJ/YKqycSHXE3lK8R/aV4QXPULkWU6H+unYw2K6KRU T8by2QSIABZqB6P6SamRFzLIJ+s4t/Yz+aDAUvZGdbDGLmgiqe9ENcKBWFB3YmmHhWlpBhXkbs68 zbwPdngo5iZtTlwOzQAK4IKxY4tNG+pI3ab6wm8xCIRYwCGqi94nSCZlxZ5DHYIf+/9ObKxDDTfg F9yAaBZs2FBmngwrMfUgihC0StWyO2deSwMQZrAhbJrSZkNlqH393vt/8yMeZ3tHlJ4/+NFPPvrs l/d8x1j1jZVjToCFAM6FogsqaxHqq9gYc+IHqMcQSVpWK6auMQFNiFVQPmnl0Eghe4akjGwoTQIV 5oWD/R05Z+0bJKKJDK3KgkUfXpvbeyhqarhmnpn5dkyzoKYDPWV6ysgGBq99MyMvQHLIWPFAAjuk DrZWPAngMPizgYknecPnjREcRI99Gk6n7rBgJ0rbbfpfv6UILIjVFm2oImUU0HfD+arDRh1YSPpW OrBxTXq8GTmNzG3kfit1GzwiMTCcjukj/pk7MqO+DTtc5a+ACOajqh6qnu0yxYrIt92+Neho/Tab nYZbCnQU2Ae/8VkswAVUWLieSDdcyqOZ9nhqPJ6aN1Ns+PXLKTZw+XKiXk8ABDAIzcXN2L4uLeAC ZHEh1NFZyZoa/MIZM071E5YGjJNMPi02gQ4I/nOYiIl0RkNtnGbqaVE/H+OqnU+4AIfTCeAgH5cy 2OGkkEV+VTvKWMs7KcyjkQEI7OfSQS7vZ6QMIOW01LH2Emk/VQ5G2g40TyjtQfwHElaFhXIgGrwB DV/CggWG5pn58qwavgE4UCyRGnYFFrB2U3kPn5YAXFiczjFz5QoLM4dCC+pozgEFAIu2hgryld2R vZNa26mF0F3Flii3aaKjVZs4Mkhhjlcctaf++Z33fvXyq/deeA288P6d1z/80dsf/uKz9/yhsRqY S8ecutbUt+cOQTQPoLIUMAuwABSsRJ525lEszX1r5pkTEATYwQFPAX1mMYSbNqGswAhjYeSrjkFY j5HILGEVji5sCNNNcAQjRxNlMhbdEph010gdfTQ0RkN4cCMfWvnALId2MbAzQAkmHYzgqCMXhh3P GJljAjXgBayozenKSUcdUVPp8BR+Tx62a0FXHDiC7Oc+rwlEEAghtnp2veqUPQjvPv1yRMsM0YXY Bi/gV8Db6qGYeRv1Dej/GLv6wAjBDrDVPUQ7wAvhZFVVQqH0NCyRceIDXgf4MtyuOexqQ2JBHnRU 0cInAQtYXus/YeF6rAr1DiDIN1NVSCaEPXhBuZzVAIermXw9U66n6lWpiOfN69K+EIUGkUrVWXco scxLcAdiu5TOEeSsr6nnY/ACbDXwokAvHY9AGQZZg3UE0IFyRixALOnnU+0E5AIpVbDKQCzQR7D9 9aywjkfmfoqYrx+MpN24dpgphyP5IJUOU3kdbO6K7nFOJ/NruNkO5LUnzf1aMXgwHj4Uh+xq32Nh xvKBvKSGl7ntx0ABdnsILdiHOtZhrh0Vxj7Ql+oHI3M3MVeBtpdauJkOpRUiPzEnwzrk00pYCdDN OjZ3R9Z+3trN7J2RPfNVbOniWIc2JhbUhRBLW9K/v/3OL1969d6Lr9978c0P7rz58ctvffDp5+AF c+3YK9eCWZhVvOCrS+guV66q2PMAYQ+C0IAF8AJRIAgCNFEMlOqVsWtBPuXY9nubBUyEI5Xsj1IQ +XAiQEE+0MUQG4CCJy+SgTKJrDKA5peDbh1BnvtG7hkjuHU87JgFPtCpFrGQOqADgYVhhRcsM3ds /ivCWIyNjdsqSCQfWLDVvhjuFHRZsPOZtoXm18ALToPfT1H1AXod6Cgdmt/hpDJF9IQDaI0E4Q12 GFAppQML0Ajp6y3IJKzEayZuA0YY78UCmvh1GG05ZvlDu61x4HXihcurqhJ9fQgtB2YZmIMWJBxE lAkH/YxGIi9AFAmbUDkFnZmliXVNXgAWasTCVCYWxkoFkwtRdDtnEY2aBxb4amKdkyDUi4nC8kSp XpQNYSUkAOQ8t8S9fE7fYV/iLdzVVdiEE7gSFuaACAotAOEI3oG1NvgLAu041S5y+ywDHJTjTAa+ cIW4OmGnkyLaNmQepoC892pAgRhQpqzpWKWpUEozryZWvaodT5waR5PBIPv1lS8djIyjzNwJIZbq 67CGtZsoeynsgLob0xQg8kEEu7Gxl5hLX4FkOilaQiYx+7qbIkrlKpW0jAwsYAF0sMK9wEJlLthS 6ymN2h/e/OmnL71274XX37/zxr0X3vz4pbc+/Pln77tDHbywGCDmG/ACC0flAChXEQYE0gigwCuM /LlvVpE/E1ggNBDSLl9hBhVmAR4czsWHKKJSmoX6LRZEfhXcAYtROhqpwZHLQCs8jQkoAMHTcZMC JsCCq+eAlWMUsCEOuMbKXf0WCCCIWyxYI8eqsAAGgbmIOxpcdgEeGQI7CFoDfhakQFyIjCgHoLUU 0U0Be44NnFWJeACrq2Orh7d1Od9MG3nNEUJ9ACuti6l9BkiBDNKndw55tWIH3sGqXHMEphC9hbA5 8dNVYYGUMbDcrj7saU5PG3QU+O4QbwSymHcFgp7pR5rpT+YIflUwgno9ZpUBWkjwwi0Wrn/AgnpD 18B62UUhCAJral9NbCKCoNCuYH7HEr0AeUE5H9eokUb0FNRafHuDWVYaBIWWuaRBAAoomUpBCmQQ jQ8ACyw366epfpzoh7F0GNdO2ZVBLECVHWd85ijVjkf6bqjsBPJupK4R575YAcfUAwsgCNFcBKbA Bq5iM99hkGt8MgC5GFjAwn4KB80FuQX7cJiZh5mFtRPq24htXwyAdeW5A1ei4wYfsj8yD3J7DbyM LGBhDhMRkQ6gbQCH2dNpTgsCQcYmb27+y5s//ezlu/efu/vuc3ffAxZe/slHn35+33fNbdeGX1hF LcBh5WkTfp9dvRzg7ar4ViPQisF2joEypl8gKMYs8/E6F1aCe76rlXDuoT6LdMELVT4KbgL0xNJb +RQLeDF35QI6SiwgIvdUnpUYyhklkFhiElohECGyqcCCRnXkmGQECHjHTvumcBYmc0093uSQ9z1+ EUw6NFmwEHnXSNQIsLwtYoFnq1ngVkSFTmHNwrFCrIHhYesGCkT8gw7wxgRAcxoQSKnbxDUUuICs Ckk9PHYHaoj5W/AXmuJd4o38BBMBDyEELLRb0rCn+kDcAJJJCwZ26jVd4dx/qDuDEab6Y/ICGEED TcARXJcG7cC4wkJdYEG5IV+QMoAUSCCRgxVueozANk6BDrxrpj9aaEJTAUoNssOkjuhlTY1FB7nS S3gehhpYOCqYPhJX+WwMCIiCdamJmh00GICgnfHUg3YSQ48BUxLeeDqq6nRq1aEhWgR1TqrEgjWG ehnWV3CsPAG0ORdYWAT16ijcTqrvgwVgmUMFcNgHKCIu3iTK/gi+QxXeAdAARkzQweHIPsqbFS8A BcDCEmbBg8TihPCqW2+HWFABBFiGNegj0oVfBu5AEPpOykxU6Unaw3+6+9c/e5HZVGLhzhsfvfT2 hz//JXjBABYWA2MRNKeetWRFG8oKn6AvAxOhvgwt+AV2Nw2Uog84qFOqI3nmVVcmrwoYauDFU8c+ D9tSIPk8PQH4CATp4yEshsXTTKCV0MQzY1Yo1DJQC/CIp2TEBYsImVdhQcshloawGGY2hNRhD146 xD7PRBN5YcAlZg82oIsycS+wwBRrxQiVaElY6jWo5IXDJTTgKeD3hwAL8IXA1v2BQVPcVkS+VBfa CcugKHJscgED2xJJJ01ABhZD93gOVBPxD8dtVPU4/jrKKlOYAgsx3+/KTl9Nw2bg2i64xm2Ij8Iz 1jNYIB3csOKm4h7eQUS7IXwxZHz9cswa9BUoA1gQlQgqqOnt9fK2VK2zlMz8qsq806R+NdWAhQty AfSSdsmcqnJW0Eec5UJTTc2ziXpUSGzky6XjQiIW2NrKmnXVuXHCgrV2AX4ZmReZdc46hSRY6SkW Yp4nOmALq87KQqgiqpcuxBI4Qt+J1FUgrYCCsF4lSFchm+5gBJgg8uE79KMR1dF+hE+zdvBpUFyJ wkmwsUAKJFDMxgygYB3Cmxv7cMe+vCdwQWaJWDiYw4bH+owZKpXSiIfjVKGOZKqjUNuG6fbk0pfk B79/5e2Pn+cQDADhHrHw1ge/+OU937P2/CZ4AViY+fY2DAKzUgh4iCs2NWGBCCZsbTImQw4imLPi ALrRxkOFkzZdZopYhh5KzCP5ylQIpAn1FYhAn7hMUk1de0x2AHZ0ACF3aplTA2oKX8lceeSCFIAI cASBwDXURgOiDByRYPfuq5VNyCCEyAuNUd/KsBj/Fu6LYaMALoY2wxIuGIJEqPccWzodLl9kyaz6 V1jvIXZv5mZjx4RM8iteGJqkib7O49VbclC1dsCe98kRdA0DG9gRzxh+hynZqp9WfLjJdqO+HfXx r7DYdtC3vK7lOcagKwf4La4FmQQP7oqEUtj/oTfvyVKHTRCuWX4MgzyWv11Yj2AWxtbNxD5np4RE FwDxA4xMoYjMy4mO+L+eaTczKB+Eeg0Bf8X4R+QDEdLFBK/geftqql/Bek9YcT4e1Y+zzXPmZhuX Y5PCqQAE6kd5HVfcEwWUSSrwwjpdzr4O0exknKTG6cg8TeTTtAY4XBQw+3hGO07lvbAGLEBBHbHx T9+LtL0IuNB3fG0Fb+vVllh+DYjYieRdkT6FUz4Y4UkAB9bD3glAK+ZRYm2H8A4arnt8ABSg7iUI fmPtwzgAFOY60A5SayfSzsZbByMLhgJP7gjRhf1/OzHWrEEbFSMwKQpIJiarD2zzRqTV5If/+MpP f/bcq+889/q7L7xF7/yjn3z881/eC73Gvt9Yuw0AYR7YkGRsNXRFOxO7vjVoISwxjkM0gQ84TmFK 8UPIzERhTkQvTHFdOAUFC8YZr+d0Coh/QMmGNy8HxsRh9xSAkDubuVcvAwW8kIEawCOBXvi6KNuJ DwQL9FV6BxcelseC0oGRDa0MfnlojwCBPiBgkhEGcA0CHXgRwQYl01EpWkSbUzoU/ldUt6t+1/hW 2Ig6NWTSELJH9XAP+zDUceNCQfFJEIcN+OC9aR+/tIkrtv2QpWeD50/xT0yoGm5LDTtghGbQsULR wl01I3n4cdD0+prbVfy+5kFWwWKwWscGv3jQ/IEX5hqBMJEfTQmHRxP1m7n5eGo9njRgn7EDX9Dt 6gQCsWDczKtMkUKymGKrr50WiPDNCy5JdCIBHZsQ/5fjCgvSNct2NvTP+bgOHF2TL6Cp5KOsdpTX Tso6G5+qJCrzrrrAAkin8XjWuiotngxN9JPUhDQ6y6RT2OeMf9U5ewV5Yhrm+lB08Z1l9lneOIiN bThcanueBq1WBYe1qKxBHe2z8U/HOi9a+5GOtxxE5l4Mp6BXWDjKrV3oLugfHwaBB3ygjrAOCQH9 OG/gup/qMN2w3msQEITWyIIWglkAFoSPZlV6d2Svbw+H1pPhhvyAWLhDdfT+C299+PwbH7389kfA QuDZe569duzvsbBiGorxP2bLtzx26BHonT2AqwKFCkaAg2BzoK9PAwZwRvMrFZ48j3VgYTSoJT0e +RTSyAYcBC+YM88SPFKfiAE4lWUoQSKxOY3tSWgxawRl5Rpj3yo8q3CtTCRa4QJgiqs6ddw10r4Q RZUuGlg/rGex0CcWYIRjZnuq9j/9WSzwJF1XSRzjFgtDbPgmwrUiCKgjYEHs+fAgjaRnhW096Rqg BqDA2eKMjmTYSAYNv234W/illr9l4uq08K+ASTPoNfyePQTFdKi+BmJkRyiA4LTUYfMHv3AzVa7G dZLCHPZZejKHcdBFfcGGHKqwwACekgXIBXMNKDhn4UzFPeAAW/1opoilM+zxgVPpagL4NK74I330 WW6w6FBs0EGz70LnsQUAoagd55u4OaN31ggEmm4YczgRE0C4mTSux83Lsok4P6VfqJNfUulkxGZv 8MJhgnt9N5B2fLyO2G7shurKlUAQO6wy1LF2QsghWWSHaJB3gAU6BR3q6BixHWjVSVLE9mGmV7s9 sACzsJ8YkEO7ob6fmGAEXIEFvA5DDTEGAbYj6nGix1vZTc2dxGB9OWB1YOrKa+Gj8eKKXyqBeAMv /P41gQWhke7fufvhS2999IvP70PE7joWsDD37cUtL+BDYJD1GfOrxkoQBBAxYzaVSaQxLADYwdE4 ANlhKgk7OSxwIfT/NIIXUMXSp765CJszrwGNtAhatCQuYljJhuzcoDRyZNiEMhB5JAcsAKEFZw0n TuM8ZsmjUXo2QJE7VkFGQMCbdM0DkkK1KrLIxQJemNLpgQ7MH7I6A1Pofz3Gi9XrAwikWyzwDHVH 8nvEQoK3u1g2lExKuWXFLPbZpbeVCzgUw2bIZOnt4QVgIezaQduKOpBhzbjXTPotb4sNq9FwK+g3 XGikymI7Fmfyt+SwZ4k2D234TE4VvHBNICjfrDRg4dulSK7SUBuPaAe0C+EIiIU5sKDezBCx8LmI cFnU4OiIL0voFumKOsoERqr6suAFYuFS1JqFL948K+TzwmTPEn1B/bQkHFh3K9nOR8dRsqMbzv0S q8AfYF2XgMPWVdE6F4U8LHECiEv0exBcoIbdoH6U8PDpbiiv3fp+qG779bVfw6rgIEbWyNuRtA+v nWr7ib72ZDACBBVI4ThpVK+LETfKrlBQu6F2mDKPBDjsRqQJQOCQp/MsGA08ACxAI+2l+h5cdmrt iiuLbolZJVphE3aJBSZgx76kPPjH1/76kzt33/2ru+/cuXvv+bvghU8++9VHgdsQWGjMg8aC/efa AmhyeGJo7ukAwnZkTx3EvzaFWRiSHdgK7hnLwBKvq2NmfpggzRzENqmBMzo4hUCfevhjrIljT93G wm/OXHsyNAsYgaFcwGiDDiJLFBqMtEquMpuqi7KdyaMTjjWuqgyuyf6KPtw0/qmBlQ9uBRIAUnrN sd8sXCAFHlaDmkqY2DHEgaDbKoDf08UYDSMUfgFMkWBxQAfUTh1wADtUXUapa428BvOlLL1ZIKCE Agm/sZH17LzfEKU0g9W0NkwE4h+vNKqzOV7LxJW80AJYbKdtDNuGu6Wwwakn/AV7EUFS+NvoLJ7p 2YYplp8sZGDh0Uz6dqWCIMTSsW7gprnzK9ei3EbBM5OvcDOjRxaeGr4Y3CGf57KITF1EtXw5vsXC 9VwmWUzsy4kq+jEUUY/Q2RNe1oTXkAGfi9seb9hwIMUgI0wh0ppXpX2e2xd54yJvPj0ZwaOjJ8y4 8kiFqHRrPCvNMTWc48ST0YjqWAUE1mJtYwMPObtpW0yVATUcMg3LkzuwCYexdRhax3HjIBEHtxHY MUyHiiuk0X4Mc80xBXuxzoxTqB1nJlvHEz4pahDqUW4fwnck5jYMy8iu4AB22BGOm/8EHEVwoDXp q/8OLLx49/3n77575/X7z7/+yY/e/tnnf/NJ5DV3nQawACCsouYOJBa/nAKOg4iYe9rCg2XmV7EQ BbDYvjV3OcEDWMAVcEDAlzwuBKVEwTMOVeZLHZmj/3oKe7wHxtRpiDNBRtmH78ZOq2QO6MCYRHbh m4BS5un4kMIzC9ccAz6ejTXzm8BCNoBA0sVxUS0bGAz+Cg7DKn3EQgOAAOKo1BQbOQYIco0HRfus IERVCrSniRKzEQoswEdAcUFTRTDmQy11jIgnI/CX2EXYAhwAFvhuMMIIWOjbYISi18i7dsKcEqwx ZVLqNkfDVjpshR0by23ptAxs82vASngdIyRxABpK0NFFRdsKO+y+qNo8fqgvLPQnC1VgQX2M6xIL NwrggNcfzWW8+GheYQE7fB3X67l6vTAuZ/ACwIv1eGY/gr+Y2tei4nY9JX1cThDwjUtYjBmIQBH9 ePIF/AJ9hEkfMVMup6AV8It0CcU1EQ3eE+PyNkOLK0ihcTPdupm2L8uts6xxxAE1sNjq2Vh7Cgf1 tGA26SCR9xMODTiEfRhpPIUNp4ztnUsWA804fKxa1EsRUAMsKEeQPZG155v7vglNtRcBU7oYU2Ac i8rCfmRsQ/+EAAX8BfQSfqkl0rCkD66I2df9kQVqqNihyqNC8AMCMN37qbnN2FYKZ7P+p/929yef vMwpYe+/cPf+C3c/efntn33xdz+P/Nau26h4YRk1dtgQC1mlV2foeIzON8ECWEDBzDHmjjEbGtOB Ph0a+BHoGDtQOBoCG/v8ONSAhdzjts9vYnXYpJr39ZnTABzKvpl3tdIxcw+2VMUaOdjAWT7gj30m i3IejrCojrwGZNUyaOF5QsC1C0dE/hA00ZiF7bHXrH5kiYH5JRgKGG1eU5Eg4lSNHh0xVoA9HxaA JWMEv1HxAqxH0jdGDrZ3MIgqBteQUDIYnKCVgHecRuG2QAdZzxoPmpN+a9xv0Yk47M324EqcRkzD 3oxEk57f1qMuc00RjEbfdDuqzzqFKZq09aRnJzy2YHhNFTY82PrBL3y3Nr/bNhD/YIRvVsrjRf3b NUEBjniykJ4sN79Z1Z4sa48W0qOldDWr39xiwbycYm/XH88aj6eNR5PGk2mLO/ms8WhuwlYACxel fUnTLVf9SKI3TxLsYNJNsHgHKQUgSDxDAUk2M2+m1jXeOBane9jaAXDhY9tX4y2Y3IORzOZVMNHc uJjqREShVf3exyxAy/tx/SCq73Fkk3QQSURBhQUBB4EIAIENS3sVFqCRIuMIrjkwD0Jr7dchq/YT jVlWTuqwIY0OsdvDiQt1RI/g1SssHKTAiAzgsE4HNRXrJ2UTiwIphpvWd2Jz4SnAwjaTsfrCk8vh 5uYff/faWx+9zA7V94iF13/2o5/8/Fe//kUcbAELqyH9wpIaCZ5dWUBZxVBBelVlWPqkgLlrAgWz ob5wzbnDe1yxSmzCYpMvAy33QQ1s5y44wdKY8Y02D5DCm7vQSNha9QIyybczFzszd2+EbuYauKmG xowG3P9HPa0cmBBXkyEct81vbxFYKKiXQBmNqd8EIvB64QhGAF5Ykob60piD7Su4CfsKjEBAIKhP sWBHQ0v0VLC/IqEpNlm24F9SodK4XUQKruAaIY16Nkih7DVmgy02jXtmFjT8rjpyG8nQHDlNcUgH lgGf1qgqC7AeQV/3eXwPwa+F/ApjMwZSgJo20N18FgtgBKDg27X27UojCmAclvoj+mhQgwwUPFnV Hy+x5Ccr9dFCvpnLjxba46V1DV6YQERZN7cJWGZKsavz9SlzsCLmmWIVFWfrZmYI362z9EwFpZwX tYsSth2mW300M66ZhoVDZ9r2fAytBZqwILTAEQDFxbjBslomgw44kYCFOfYsYVWVPggkRPh+pOwG 8l5IdtjlF8ZRHYn5e7xh215Iv3DAY9fGXgD60A4j4yDSjxNzD2CJZMgk2ueYx+jgnY8y62BkYh1m sNKw28pRzpuDFNEunRQ8lMpejhA4tbHglNnOGmi7CeJW2uf5aG0vM1cx2yo2//23r7718Yuv3Xvh tfdevPvBC2/97JW//vnf/u3PgYVtr7mCTApb0EgrGGdXEY6DzdtTKCVPm/nG3Kc6mtE7G0vfXsFc CIDgCo00i+1paLK+RjpQSgCB372oT6CmfKAAzsKaDK3KL5RDmgLs/4zeAbFQ+FYOR+Cw+6LwjGrs AIwG1tipnoc0gmVW86FBRJAOWHROu2xqBbhKUoYBNcVPdrV0AIXG8w5+VwoHsK5qyIY9TTRR0EfH fTAI6xHFsMFsLQ07FBFEGhihkXv04LnD707KnSacQjFojLrQeI2Z22GOF1ToIvi13GMXa+E1o56B mIfsyd0WvcAAJqiVOpbPVDAA1cTniAIE+MiGBxkNG17rB+/8zXzjG+z/iyogYZzNx3Oba2axK2Mu If5JCgvggugAX0A4PRKe4nqqUvMwZWRe8iSCAv1P4wzxg21/JjJOsNVMwEI4idrE2ODDhIPJ10vp io0Z+EyVemmCH6WrqXLKgXsSD9PNDKgg0fLHc6BnXOACiXMJytpxtnmU1TniMjUOI3M/NA9jez80 tn1yAcJ+FdSrwhksA+QNlM8uB5Spe5xRJg5TxypHXMacSwOVtQdmGSmiAK3uwoBkxnai7MCPw0cU ZtXavY/73NhLYJlrR4W6TurTYHMZS+uUgwL2MuBFWwNlqbX0pIPMWkTqdoZA5XTl2r/97rWffHrn tfsv373/4qv3n3/ro5fe/uA3fwuNtLXwW0uveRB3d+Itji9zEfw8TzcPeRpi4qt0wRwvIJZnTH1j BrMQQMkAL7hheXqBFRgLMYWDn+CxVWPm40c2e2NVbd6itQ+WASZCzRHzQ+aOEP+lT+FED+7TiY+G SuHC8vMcNydsMEkFWaUAPrkLP2tU0ohYANH0DR7KFueGWM5z1MLhhLSkL8V99gGSgBx4ZwXqCKHL okPfpMTqc6xB2leq0l7Kv6fqgDVEwgpYaCFusbIhWz5Ema9ZwJWIg65gKNEubuFFACfq6CCRSdAW 5Q+82OKZOzFCnOBybY7KFId9wBpw38PWDzPnv4UoWipPENgT+XqsPJ6a38xtrEeIcKqa2vWszjWX yAhwDSyr1eAgnixAHzpralP9Zm6JkwjYqB+e5BuXUzysMqTzOuDAHj9mooz/CwtCF+GfIKI2AZ+L CRF0yRsgSD4t5TMQylRgQZT5AARoLdGGBCAALJvHOeBQh84/iPXTUeM4bRwnzePURpCvvdoOj6pJ 1drm4G4d8uZoZB5jn4+JCCgoYIEtTyONw5NzKJ9q1Ayu2kGmIeaBhb3MwDrIzVtYRfKBmK7Mgl2q rWN1GT89Ex2x7kZRFOOPtFa+BOCsE2W3NOeJisjc+NffAgvPvXrvxVffBxaee+PDl9/+4B9+/Wno tmaOPXegytqrsAlHzKaLWJ/5imhVBSKMeWQhJrOBXHpMk85DaxHay8jm8JmANWhRgIY8g0hriMKc NnHYvAe8CBTAOLAxSRSdzRmbvcUr4iRp7mgVHCos5B7uWcXGbxTVOnnEnj01c9URgQPU2Lf2Gdch lgVXXrLBm5NteBCVh4Y4lINvFI1MAIKwxsypYicHFhjSjp109WJgspnKx6+mxALQYEzgPrjYLt6A a0CcT8I23gLDm/J55ntBVXD0SU8cvhuQRKqzD/waPhjqgR3zZBwQ3Qg7oktQzPoI+/rIa8Jx++Lr t77Hwv9eK/97W/92aXy3Mr9dWk9mcMHmo4nxeKqDKYACAYcaLfPsKRbGgIN8NZZvZtqjBZSPKZaN e579mdBQPBJYOBMzBK6mGg8vMD3LjjtxIFo7ywVAYB/GEDn4fPV6rgFB0FEX4i3QWud4ACjjcSHt NFehguCRD+EaRjWg4CSvH7NmIXOeGMRMah0ldlUpOEyMPbpaoKBOIDCbCgUlmo5CcSPu6ZET9Yi0 Ug0lUzhpvECQc/IA4vyoMLGAgn1iwWBjhujQ2EtV3ByOtlYBMzkIyIVok9iJ7Z3IFJYZnwalVN9N 5XVSW+f1eVJbRfbDP/z27l9/9lcEwnsv3f3wzlsf//idT4CFyGvN3cbSsfeCNpSPmPLK9tc5XEOI bV8XWDCxZoEJUgAQQApABH909Sm7kvgdi3QWYhBNVaQW1EAsfM8LAAK4YMwZy+wAr46CAgtjj7oo dysHrSTiBFx1mJRtrmLUTDIQXzZBXqCYKV3KpAI6BEBwbGqk234n+3ssFMzQEmXs6KOqMQCEUDTR pUwQCZcBS+I24C8y/C8CwMSEixFAsCB7aJy9JsTMSNQvAAqoHbzC09w8js3xmCk+sG8ADuACuI+w rYEdEnKNzQEaLaVkosmk4mI3OOcGwLxn/tbIb0ZD+xksqP+xhgW+LbERBTPjydwAOr5ZavDLEEhP VvLjpfJooQgppdwwuapc3RYXlOoE6Dmbl3hah4wwY6vqNQObRbor8gKLFOIgG4sIJBFRLODBZ47d oKASDa4kBTDCFUzHzDjJlcupeTGhQLqYmCe5jkA9zlTwxVFeg1I65lQxCUZ7HxEeqmJSq5jOmnDz Z0I1rG1H0h4b7Vho3hNYWHsSHj5ipsg8wutiBuDJiFgAL+C3AAjHBQyCcVJax6V1lFuHuYl70AFe pzpKFKDsNO+tYHXFDA2GnA+wNPYSLGPtM4UFe0JmGSnbmbLKtEVkf/Uv/3D3nc+ffw0C6f2XX//o uTc/fOWnH/+/v/5FFrW3w6211ziIOrtRawUVNFSJBZjop99twa9y8IT+9/VFBCyYU9yEJu7XSYPj mEQv38zTqm6las04Y1+U5zxoJ0vQgZBJHmfXiDhXSTSBOQ4QY7eIGDHg1fLpweqJeDKm2pHELEqO 4MupUnRxqM0AIjJIpgHoidN1xhxfgAdUgSaDSVrfEj5dpEyZJoIxodcuPTILPTjcSsVKnskjRezZ IxyqyB9hwxcTBqo3AkRJFwKMLSLpQGdRwwEF8OQ1BFIV/0FbJafQicC/NCozPhKts+zlIxZ4Sm7k bX2Phf9YKd8tCIQbzqbQgIVv5uY3C6BD4biYee1mQeN8s1Agk8ALMNfCWWDnpx1g7awUk8Em+hl2 ePoFBUA4LfBe7cnSfDSHNNLFREpRRCirI9JsQ73ta5pi/wd8tEtigRVt+GIAARCAUz4Vh9cuiAUQ hMl5ZaXBsTMAoOjiO2NOVdnx6/uReppZ1SSlk5EFFbTm963Xd2J5TxTRDlNWBBD/zI6SEfjKUcIb dn2ncN8yJ1gy0SRXWKjcgSilaUc57/E6YMWvn4CmyjqcyxQ1t5PWwmdrxDoCL9i7sTEd8BtL4dmB BWikVSqvcoSx8e9f/ubVdz9/AdLo7v2XXv/w/3n93o9/8uF/+80vp2l/P+6sPfsgbB+OOjtRY+kZ Owl2eJ6MW4bGMjJ5gNpnTCKG52I0WXXGB1egYMZZTPgbdNGkpFbYXAofUfkFsMMisCsswC8ACxNA DAsfC3Lhssbw4KE9xY1nTvA/AnboTVj7BiiokThwgFXpjNPJdF65gAJTgILpKZYw+no+0MQpCdH1 7bGRI4PFGBrxgHMD4I5TfoLBcjZoxbWLwBLnRhVxvA7sgOftquU795oF4nbIV6ZxuwiaeBH+IucR PDCCVtXBiRQmpuxqhoy/pcAmkwgElYxuM1REE4+LBlvghdQBFtrfY+F/rbT/WBnfzIxv59Z3C/u7 hfXNTH8yU5/MIIFqV7ONq+nm5aR2MWbT0eW4ds22JR7qucTuPYEQEnGOqJ4ZN0tTGGelWiCFm7nx eGlWLUyiW6+6so5wzTkbpkg3aaINSQMXiCsH7rFtmwGvXUzNE46LwR6uiaM9Cs9HixLbMQ+Qsr5w yCnf+gnHKHF893FqQjLtBqpgBBaa12GVR+WIjGN2jDeYROKPEEic0XQCgmBHEzUYB8bCQSDm4ZEz A7xwMDJEt54hTsCp8OO7Yr7rjuhc3UmsHdbX7J0EKMCyDhN76cizocTmjdRcwzVH6ixWIfj/+OVv Xnnnl3fe+PDF1+8BC8+99eEr73zy+9/+DbCwG22tXWJhL97ajRvbAQcrzcSwSvACsLCiRjKmnFR5 e9KtGs0nvn4aXKBUDRtzMbhy8bTT+3vvPL0VSzwZOhN2AygoPJF0wltCi7zADm1xDtQRliQQb/cA NJ3d4D5RI0wEHKtZOqaoQTCYcx5bMKqV9cVEJk5nEsPKHJ53AAWM2JVqigiHNbjFAnd1h8eFeD6C x0ih5CmlsICIxBFzNhymg0aOPYIqC5qpGMFRZW6TvlIVuCsJVLA2h7CnxWDzdg8cR3PB9nL8PR6u zDslPB/BsvXIbcbD5jNY0L9bmo8n+jczE1j4FliY69/O1e8WyjcQSMymSo9gnGdYQAGuLEMDCJy8 CkRwSgY0NudM3iyMKoMksACvQc0PLDwRCVgg4tHcupmZWAILJhzxKTtg9VMwyxRo0qvhk4AVB1GC DqYGNNIRUFAYnO9NpyAdZbdDVsXBN1Fu46Qyk0CImVACEGgHQn2HPUjiKxtC6YBNFxpLbCNAyYaC Amqejvs2jp4OtzwaAWXGcQ5Wso9y82xsX8xaJ2XjEGDJLbADELEdSlW1Yjus7Y/UnVRZJfJBYR0W 9kFmHY6so7RxEFs7gbEbWntx4zBvr9PWLLRnsf3Hf/6vP/rpp8DCC3fvvXD3/nM/+eTV9372T7/7 VU6BBLPQOow6S9dceLrAArtVsYCFp6enaRwAhAoLAEiVcRJdfEZFClXbkkABsTChX1arJu1lyGan uU/TvYjtcYiYVG9rEMzH2gWE/YADBMYgDjFe4NZ9+wh7xJI+hr0dgpjgU+yJuFLeMJXKhOpY1BoA BxYvaBkEFqh2eJChAkLhNzhqiWU4nfU4oXPY7xFaGcwC8Bg2EtoKI3XNGPABHPAJDisFI8/Ci35X SUkczPrSaPNDADdKKbAAITO0ccMkqtMo/SaFE9471CYhlJIedhQ8HPUMd0vNvJbbtZ7RSNp3C+PJ VLsp1UcTMILx7QIcoTyZSU+W9ZtF7fGi/ghrzlTqDSfsSWKADE86COeriiICFI5R2YTzSTUrQCFS xgo00s0MWkit6hGsOE80zvGmskLwAwLmORzBzMQnVAVlUUTjWG9QALBwkmlCHVls2yNZcLDYXlQ7 4HcAiWOe4suDxIB65TSHBWCO6DAxOVtMwAEmGlv9QaoCESe5wQJZrAEOp5xaYwtQEEEAAu1zquwn ikCfcVJYsAk84DYyII34Y2HDFGMBLwDmMf6SEdyxtA+XUZJKdmN17Wl7IWyLya9QieEyWtDzM2zg ofVvX/7m5Xc+e+HND1947f07r937q7c/euVd8MIXmTi8sBvAL2ytWEFTVywl6EtfYIEqiLOLAQce I31GICHgEf+r0FoJOExcFaQwHqpLGAoYBCAFWzq7uznoeCH2+co+wHQUvpL7ChAxjfC3CZkksrWs R0BNQS+54pC1o5FWyAhUaKMBB2uUpIaKICzmcyCNRPUN4r9wbNzjlYxFBysXh+CqRovcb0ApARrV lwTlPCLEkhz0WBlAwJsjDxBA5HMKQRE0MoirwM58oiD37XHUKsMmVRZe981MHLITgDJEwAsKGNic eNljJ23lu4Vw4hyPUZXU7UiAZB60/K6Wuk2v94N3/l9rvcLCI8TtWGXP9kz7Zi5/u5C/WyuPlsQC 4TCvP57Lj+EXbo+Catclr1dj7WZqVFIHokgcYVAunmLhYizDDnMU0lgBTeBH+ugJc60w3ZesHes0 GtBCnOONe40HearJk2IWK1kjU9mhxBHfPA0t0lD6fiwj/gEQFuD4BRDqQTWLO+N01r0I1sCsUACf K7Cg7jPzw8ljO6G07deBiJPMuCgbREFiHsYGv/dBjOnDBxI71EgssVUCaR3KZ+PGEZuR6DsOR/oZ B3eoR4Wym8kHpXI8No4AjZSnrUWqytiPgQV7FRkcmhRo49D+n//09z9+74sX3v74hdfBC8DCh6+8 +/Hvf/d5CYHkmOACYOEQGik04TvWobkdmisEvMfvlQMcxo7E+Rj+rTWYC6ewEmMw51RHgixCiCJo KuZRhVmgwhGHILjJ3/Z+cxqGmvty5kllAI2kjX3hpkXqteyrU4dnHGaeBSoBreBFOBSRXGXFgcPw h3TcgEPuVEl+k2W7ASsOFRyIhaFoXuVpUJ5oQARi0TIzz18ZZ6vgPA0VfMTmJdGGkTKhZOaQZKGd YfN3dcCEiICv921RKyemysCuLDnET+7ZwlCLjJPIuAqPUEkjKxUrGahhV8Jnhj0Z5j0LWhG7OOzI +UEjfbOQYQ0Q/98tdAEHBdH+7UL9bqk+WYAXNh/Na48JBImueSo/nihXJXiBjay4XgIR1P/iRJs4 0SCa7iTEfyWTbrFAZ6GKNgy1am29nmrXc0NAgEpJGAT2bLOpdQxM0SAfYeMVY+ev2ZthAQv8FpKk Bvt8VnD0PZYQ+QAX80vAAiJZUINJLMTyOqR3xg0cx0muQ2jthLU1vyqR9WUeiBuREei1I4Nfg5LK +KgTMUX/VDgFYEEccOOGfz5uchIySCEz9mJRjxipeyNlFdf3C+0Qf9UUxEHKIGskpKedSNtJte1U WyZa6Vv/8o+/BhbuvPXxS29+8MLr9597+8Mfv/PR73/3RRGCDqzd0D6Kt47T9oHIR+0yQwtEMM4F O2DDl6ZiIMA6sSCQAApQBrDAod8DTsxYRdYqZsWBvODfjr6vGpkqqSNyv/bCt8ALZaiMI3VMLKjT UJwPFcU4YKEcaIUYXDn3b/OxYyZXlfFtIssETUxBOiALl51LE9/iF/Jy3LE59VsUS6JVb8STDhq2 5aTPgw9cEPBOtVFDcdlw66XHHX7Eo6Na1FMAhFnSmsQN7PxigquW+8wscRwTbDV7RUAKTaZeHVoA YipoirpzA3DIhEACKEQm9vbA9YiHIJQUoAsswg0uHrZFDMQI/xMWpJtJ7dFE+m4Jy6B9S7MApiA1 XI83rucb17PNazGLW0xPkh4JLIgJY4YgBZ5ZENaYo/DObwsKFTsQF6IBSRHNq1xVGlacfaBe4ibP IUjCCIx4FIhkUSiihGeIYUosRlzCOzPbKe2nD/fjzap571B0aJ/l2H7lYyFvoJqIBcCECSWTM4oh eFKFvalipN5BquwluKriW04M0YwHNWWc5c3jEUwETwadl6ZIOgGbNhgBuojfDZfy5I7oRCJ8zkp7 n63dGnOnCXS4cljauyP9qDB5ei7a5NynEmKMv24/U/bAHYUKXiAW3v3iuTc+fOmN+8+/9j6x8NMP v/z/vsiD5nJorH1zjzKpuROQDkATeIUlDIEFcdJNEYcj9HVsrWgWjKXgBay5OPI8Ewc/84EsSnWs xM3FEdFVCHpqrCJcbWBhyWSRIb7JWik4SUmdx5bo7gZkzHKgTp9OXiJTuLdzM2DbqfREUncGIIQW r/DjdA02m/2GlExjr8E5GNyWOTeGUyjFOL6MFhiS3hbuVRfHnGmBS6F2sMnjYRhhgKIqf7N1nIW/ 2ykEVd9U1QGbsHLNUggEEj/Hwc7PlBFP290uOmh6B+cpLzhKBHXnm77ghdTj2f/Ea8Ru69mc6pMZ XMAm4vzxFPeawIIOang8k65mD6+mG1eTjcvx5tVYuiqBBe1GTMO44ilm9fHcrJKizxzzoXe+nj9t wBAQECcUpAoL0Et48tEzWDjO+G0LxELJbCqPNuTybQJ2Uk2n18QXLmwepA+PMgn2AVqI39STahel dcSv2VVPMnbosVUvExomNvYYivKhmKe3G9e3A7xdxmZ+SEGliJMOyn6s74UaNVJinuX6flQ/LwAu fqkusRCDsBrH8MWcGwODoO8EIBRDNEeBVuAIdH7zdaQdjxv7ovogev/qommQLVL7qXxUqPuFsk6l SWj/8//49Svv/PK5u/dfJBbee/4n8Asf/ds//XqStLc9aCRz17f32bNNRbTyzKVLgFRYEDKJx+XE tBmO+CZAYJABjUpK0WWLEgPIIrK+L7rROPjVvSU6mnBvs1QdyNMI+oQzKhfQVB5rdpxFRjqA+7DG HKnEeTKZKJyxzSM0+F0nQ6VqBSE7BObYFwklbPJAgcP0pigBW1V/EXbyVPRUZCKViiiNulr1I/b5 uKcIqVMBh9eq01v0k+vEAg+u6lVNnE8KIsBj9BcsRpAvqiQVbPLYbwnXbHIGZp+5U8EgDZ6SdhS/ V89Dy+uxOSr1QQpGxMkbP3jnbxf1b+bY8zcu8gc34/rN+Ckclvp3a7XCwvV082oCapCuS2gkOAVN zMrQxfFPTXhn9aqqqU0Y9mclWy8Q7Y8WemUTzvhFP7I4/kM4sMrMkxGGqLvBzypi9oV6yX5vU/Tp 6TTXQoCdZcp5plzkED/1Y/ZdyJWkP8b+nNtnhX2SV+O4ZfFFP+peLK/c2tqTVxx2tAkBj3WUsY7G KXwj/DFGNT1jn81I+q6vAjhnWfM0g+etARH0CykUkY2APy1sluRGEHLWofiqiBNmZS38dh4LFQc/ l6G6z0STSWfNL4/AnwoppXJwEzgoN3YzBNImxMCX/+3vfvzTz4CFl0Tb9p2ffPTqux/9+5f/ZRJv rVwEv752zf24uSe2/V02rFp7UaMKdTasehxizOGuoYZ7JpoQ9qAGWGn2L2kL4RfAGrhWszKqhFLV bjEXKFhHDWIBLBAqyxQhzQnGC1a0+Y1afEbkmmZMJZlMFoFEQuz2hBinbQzkYng7+rgU3kEEKo88 5E51iqFRuM3Sb7CHnBU07NjgjiZNNM9Kw9hqPOZDvmCXuCg06zzRwwYkyCcmS+HNc3a6yrcjCESL iDh2zWoFq94B7TMRAZEWUCBNoq1p1KaDpk3gyQiRhiU7JJy2JwcDKfX1cKjGjh46RjDUvZ7q94wf NNLs/zD11t9tbNm28A+v+5zEzIwxBBwnThwzS5YtyWIVc6nETCUGS2a2Qwe6+973fX/pW1vue/qO sYdOpVKW5JM115pz7wXkH8fE7xX8Rwn7swragUfnC1UQ0SxoBMDCbzWQDChVG1VxVrg/gRoV+R8l 4Y+qDFh4yjMIDih/m2tUNDON/qvPeoH/80T840REln/8PwWh/77gGjwK9ZxsZHQjRdzI8RNQmncZ AgH7mKcbby48gvXmGIDDQwEVhN7lKaSRcwAW5WvRfYuGMqD91WcsPAGHz7BnCQoc+BWasUteZugL lbxr9Nm7RW0uKLDVazQhEWEBxMJVkoeg8Jhz3wOhSpMPef5ZiYDzB7MHCDxvHAHobjKgZZQndAcN T0HJrjnxEiXpCRcZHsLHVYZrtK8EFS+ABrnPyrcZuCk1umSAB0ZY6BiZb+6fae+fau179XJwqnN0 2qRbKiWVepirx7iTqAjGf5UBMiNdJF0QGq5U5RxUQBLEO9Ah/rnL8XlGfO77fZ4SL1X5DMwYzQZq HAQ0ZqM0FDRK0jtLuxrngP8+g26I6MZhdBz0MnOSgS/GFyM0qI8z4FSNyiDAQiUi5INMOSpWU66a qsACOvSMBbSjmxQap34salAJxCOGWE0+IqQD3HNeUAZ1ZeHUEFNAghfBBHVYem6g0VANDTiA84cf lBtH0gJCQaMjK/wgvNVxWoFwg/JAYv+eKAGv2cYExsZhn5BDZ398g0QhLBRQaqsbogBY/nPOKoQD RI1AMsA7x1zJCJ2Osakom4yw6biYCHO5lDsdldTo/+qDUSP+USf/dUL+q06DRvizhraSAAgQAr6X CNALv9eJP+o02kSqcSCr/6xKv5WExgxo8XsRtWf50Wi1/awIUJewxibSD+T8eZSw1NhceoYAok+N vKPnAAHR5Hlk2zMWUCNi1F4GTJF5zFOPOViNDjB59nuB+5YHVduoj85TIA3ALT8W5MZIUKA0ILHZ 57qeRs8ZoWHn/DMKrrIIERAUAAXwCogA+XyZohrZF6jeGQjSQ851q7oe4G2zaKIoeHUwdTQqqOgC LDyAGM+jjwN8fa+44Y8Aop9VD8SgH8cu1Pq4Ip9lmG81N+onk6QuEmg2yq3qvk17rpLuU9RDXqml 4B9I0u1+aRuaa+6bbuubhNAAWOgam7bqV6uq5zQqnIKTjwlg/FdZMEvxLC7XI8JFCpl6Pc4DFs5U oQEBNMMXVQwBcUrw8FPnjT3VZ/lwjBoaA0eSztDN52YyCBQn/7OhiraSokINZXczxSgNWGi0u5Qa /WfkRvUoqqErhNhK4/QZXHQ5KddBkiMsCEiGqAgXjdRZVCsEQGhIYHDXMjoCDsloXEKAbRwic8/F Ec8NNJ6zhhp5d2Kj3kGspMCMJZC0pbir0cdYbIgOqZYGRSMdNyQJGsjSyJhCCYSNo8A8OrzmGi2O uQZHEp9rfxr7VM9xQW7EBaSRYUF0SMe5dILLJoV0jM8kRBWCUcqdTbjyyf/ohSi9r0qHtZDpLk3d ppiHDPc1j+Ys/ChJv1e5P+rk78fUnzX5v088f1QlAMK/asrPovCUQ022UTYF6q333EMe9Yr5ipJO SQgKwI4QQaoiLDQq3QT0WAUVxP2oC89j4MDOf8sLvxX478CCGuN+viOZDA6fRm36AFlZ9ikjfssq jSHs3GOjz+pjSbpB+RKIxqAOkzn+GqWb8o3pP8Cm6G8QUCBwpOmrFBoJeos0NUquuM7QjyUeOBKS zwg7z4oDHLiEGgsUFDSuFHW/50BioJNuQAQam/Xv7nmwzlMcsCC4eamCrlFA5jyWBHj4oSReAmcr u24K8l0BOJv3WlUuk66rtBt4zmlcPokDjUGnuoc7X9qH3jf1Trf2jbX1T7QMvukZf+MwLtWzbggB yJ8n+PM06j+DyhNiHljngKaYdBLlwOwvUF8O+rmnxylcxGGxp3EehEYdHQqjDmBofwm1CxBqMVQl ik6rQRenhEqSP06LZ1nXOZrSCB/E1ZJkJUqBLjhLu0/QoK5/Z3Q00vkkkMwVNHUL1AS8ysdpvpwk S3Ea3qeCziyAMsFnge6QUH/LxlH4CfyyKd9x1FcO+dGGalJQo0w6xKDkCpC9MYSIVID5H+GMyohQ 0URcKCSERqo26ksGUaaRDSI1EkKUEjr+Qw3zAQsVuJOQKzF3OepGyduogZgAqxSWy2HUlKkQ9aSD qOd2LiirXjEVFtUo0tQAtEwc7F/IJxVQzfmE1DjF4LMxAPJ/cjDej04uTk3ufZwxryw41pZYzarP spmmdSXZfB6y3KaOvueI3/Pu/6oE/lny/Kvs/u+K64+i+CMvP6LpnPS3Y+ZHjUEcqeRFjVKRfOBQ Fmvj6PnZz6O+FmX5e0X+fuz6eeJ6OhYfjoWHGv9bSfxnXv4zx/+WZb5n+G/AQHL8VzQMDv+tgv2E N89wjwnlWzr8pLoAfXd55g4pC89NxtXYL2IBXLc5+jYl3CbFhzT/pHLfs8TPnPNnlv4Jlp/h7tLs TZq5RdOlkVh4LIvXBfZcJcHgwYBv0aCTxojqDNpWuilxN2XutsxdQkiqCvcABzQ2CxVv3uaVmxws iALSt2P3JcSOMhpO3di5YgFZKGcvJ9wUQEG774uBq4znOuO+y/lus55LNKUdcCcWw/wR6IWRjy/7 Z1sHhlv6RtoG5nvG3tsPF8qoulmup10XWVQufZ0GduQ+DvvPE6GLlP8i6blW0ZvAV71Ee8KOK5U4 T5LVCHaKBqzwEDiA7RdVuQBkCZ1EN44eAAgp/kQVSipfVLmSypVV7lhtNKuBEJOgTxMO1AAwppwm PKdJD5rShbKeQCAjz48yY1H1BI3uxN2VFF3OOEop1E8pjySDUI26UCeBuFAKEdUwcRwh61H+LKbU g76qN4D61SfZfIrPJ7hcnMsnhHxCRNNMonwKdYzkG7kWQr5xalZIiMkAVUyIuSiEErqEkkOe90tR I32UgxfmkFqPuWAVgt5KJJj2gwAJxkOuVEwpB931kLcUdefDnoTflY36KgBGr5KJu1OofYFURfl+ Anw06ioZAqHNI7qFpoCxxf/VH2myo/XjSPfW24HPY13vetvf9re+H277NNG3+e6VZnFGvzFDHi6K ph2fQ5fmj6oe22UE/5YVvuZc91kw8kYX1ioNivv3ovRHGcwblDj3zzr7e5VuNJlBJAp4+GMO9Xj5 rSr/UZcbVQ/0z2P6G8pQBe7BNs4mZLRH2qA6X0v4j7Lje4H4mee+p+WfGd9PwAsaZQJiAW903uZR hmqJfCyTNwUcHZaprtu0eIvK06iHLPGIJn7ydyAH0txNClQA2kRFx2d57ulYvgTVACK6KFyjm8JD CYgQ2j69b7SyvC/SVxm8MRICbag+lZWbrOuu4IV1W/DcFpSHqucii04TrnPU81T3S6BtZf66KNwU 5YucdA4EHhURyBcoZ9XVqIMWYRUjomEL9MLHl32zLf2AhdH2wY/9kwuOw8+gXs+SroawFW/yrru0 XEeppEItLZ9llcu85zKvIHWQlc4zwnkWxDiwFLYQpmqp58mhcj3jKqaEEmLyKBMDCNI5WmjuQyUl lkFKALFR0WFBNSpCrLlApxIYavoXUyoo6Rq0M4CxkaeUcFWAn6A5v0JdZY9RsPBUUq5yRiyrDdGK zshclbi7mnBXgLpE6GKELEQI0B2lGHwrLofkAJOLoZ5LjXYEjaoHiCaNxgJAkIoxuZJ0o8Q81CtA qCIJzJdTAArw1Sx821ICyWSko8NCHvl2YFOo1UYR5HDQU4wEIKwAiNIJPpNCGSMlgAzacRXTSB2g dhmViKeo+tUE/JQCv1EhyWbiaN5oOiigY7u4XEKKXsl4/xMXDj9PcQefM8pBgNzlTduYblW/+Wlx 7vW7qTcTo+NdXa09Xe3jQ/2z48Of30xsfpw5XJkj9hdl86of21RFbcV7cBbWP6RsPzL47yXit4oT lPg/QX2c0P88pv8o0z+LzLcc86gyX8FXF9g/K+x/17k/K/g/qs7HCnldZS/K1PUxe1uTz/L8JTjb mvy1zjxVHY8FHH72e5b/nhF/L+B/ADrKaEZbI0WcfyqTD2XioYzfFLFbUA1Z323Oe5MFxo5kwnka TQy5TDD3GdRz7yaNTiIAC5cZ9qEsXQOlKfDnOfD//HVBfKp6ftQCd0UFBPu3Impuc58jge89oGHr wj3aSvXcFfy3+cBN3n+V996W/Zfg/0vKeZ64LFO3VeaySFyV6Msie1Xiz7IM2vZUUSodiNnTtIj6 6WWEkzRfCIuHG4v/g4XRlv5xwMLAq8+4fhk4yU3Ge4rq+pnrjPCUkc7iTFXFKxnyWGVrWa6aFvNR BuyhkoR/XBeoRVhAtmtZbxWotapU08Af0BRFdAAXE84S4gXag3KdobIgdy2OfPhJ0luPeeoRz3ks cJYEOUzU08B2FJR6jWSsVEmDNEA5oqiHMPhM1E+PaqQhecvJUCEZKaXDpVSwkPQVEp7n7Up0/psU wfln43QmTmVSuIoWlk+xyJ7jwvMMFJRWGhHB9sCxl0JSJeKqRBUINzV4hxDoFzB+uayCxQLDF4pJ VOPZ2C9CMqSxlSqVk//TZyMM/t9dTtPHGbKUJXJJ53GKKoSwXBgvAiULUgk/GXcT2QDqvxHz0dkQ rwbYqN/mdx+5eLPMWFycWSRNjENP2/WWPfNfWAjjeyWv+edJo4K4DLSBPk05VZ8lJNhsB2vzM72v x9o3Po0drM1ufhxdmOl5PdIyM9Q0O9z6ZqTt81TvxvvRw5XXuHaRPlwVLVt+aj8mGPI+23kKbdQA 8fhecv2EV5WB9VuW/Uee/f+qwn+VqD9zju9F7LFC3BSwqzyYNH9TVB6O3Y+wqsxtwQ4G+bMsobZI OS+q5SkxaJQP6s4HvEsEhf5QRqHhrkQ1GmUrdwX3PfjtvIiyIFT+XOWBtJyDmM2wF5lGFCgKJ6Cm 89xVAR0WX0G0KkpoSntO+lnxoHZkRfKpiH8rE6i2qMY/FJjbPDqeeETtaDz3efdd3g1k6a7ovisr dxXXZYG+LtK3ZeYqR9yVEH+Dh8+SxE1Guc16b1TPeQJN2r1MK+fAOtCsENf+2mLH8Kem/jdtg5Nt g1Ntgx/7Xi1ihrWaqpyllIssRBx0zP2YaXR5QuOBgM+zx2iWBGI+pylUClqNeStRMGzfKSx0RzlB HYnB0liw7Rpq2SehWaKgoDMuCBkgkxvpqVIl7qoC9Yp74R2OUWYdeZzgiiExF+DKUQEx/ziay4Bc Mdq3QWPgSjEC7Z2iwn8g5O5SDAKBu5JQGu1iFFT+DxfwzgmU5lpOK6WMVMiIeZUvo8Z9PGpQE0MV PY2iITSE91m5lyNCPoCG050kPceo17H0XMtTeE6xQH3JlALq2gefy5XQTCJUpgEf1CiaQ72eckkF 9G8mIceDqMlw1MsGJFLALU6jwXlkNOq0eo1Gt7Ot2dzUbG5sriwtL39Y/PLu48L7D/Nz79+/npmd HJ8YGhsfHOwe/gsLEWKvFjT+cer4eWz/84T4vWb7rWr+cYz9rEnloJnSvycO38al9XrClPEdBrgd 0bnu0C8dbn9ZW3j3dmK8r72ju6VjtH9kfGhsrG9kZnjyw9TMxod5w/qSU7PK6Dd8mBbUR47R1mXj Y9D5W5z8l8r8l0r8t+r8R87xe8HxWwF/zDhvU+RDFk1weIJVpO5yzvsciGv393LwsRh+qHhvKu47 lKpNfG2UfH5F/coaI3fLqOLyKoNIyHVWukZEiP33GJGKXMvQtSxzmucuSsJFia/l6PMSd492roA4 UU95/kdBfEyz37MCqJVGDTXxtUzcF7Afx0yjjxn1rNbvC7Dk53VbEB4q4l0JogxCylMJ5YrAG96p 9EOGvUnSDynlUfU9pLzXcc913Hub9F0lvOcxpRj27C0vtQ0tNvXPtQ5Mtw3MtgwsdE8t4aaNeg5s DKAqXxdA27L3SOzT1wmQQuxlnD+LcJdxz2XCc50MnUb9Z7HweSx0FvGfhj3nUe9pRDmPgr4GF0oV 4kQpRddywnFOzCWYfILNxyGacDVVQgfNaIcTLNZdSnlKiEoRxzGmFBaLQZTFCuK3FKVzQboYfq6M ZssxuhqnqoCFkFSCZ0I8GgocEWAdo9HAYj0q1aOu4yjgy1MBiKUC5ZSvlPYV0PtzlThZipLlGFUB shRhimEGHXlEmFocNUwuhdCg3lpcPn6eq4KOKpjSc7lco/9MJoAmCqXctoTrKCqYQpzBTxu8pF52 7HOWXbPFqNHpNBotWPrG1tbSytrnhS/v3nyYmpibmvwwMj7XP/S6t3uqq2O8vXOsb3Cmf2RqYGxq ePLtxOz87NyHN/PzcwvzC0ufV1a3/8JCwL5RkPd/Vh3/qKFMjH9UiX/V0Rk0+PPzOBmidxPi7klC 971GfK/T32rM07FwmSPrKawccQq27dX5V4tvJ/TbC07DsnF3fuvL9OK7kbnJvlcDbaNdTRPdLe9G ehZeDS+/mdhdeGNc/mDf+kLr1t3WvTRvKrtNF2Hr1wwLkhkR+7R8lxeeKtJTmX6AkIGEBvMALCUn P0LMOkYNkb6W2K8lkBsyKv9BJW+N7D4g/OC0G12/7lQRFWxm5AdVvADLL5C3Ve4iT53l8MsiVVMd p1nnDUjjCjhw7CKJo6EqOeF7TnhMc49V6eFYuq/wF1nw8+xNnr4FC0dp4eisDX0N1K/VdZdhUU5I jrkscOc5GsJBY7Qce5ul7rL0bZq6Swt3SLzItylQMZ7bjPcm47vOeAohaXfpU8fop6aBty0DUwCH lv657lefDAdrmYSSj7ty4PfQ2S7IZPEacAHEKS1fJKWzhHSRVlAeBZB2NJEEqJe7nkCt8y5UN8rT iAMpkmqoioGpJvlaVqrnXKUUn40yYE7VCH+acNUb5CQfasxNSHhyaP4OAWS+lPSgc1ug9FGuiPrJ iCibNN64E6MLCSRpi6iTjHQa4+sRBIdKkCv52WKALYdRETfadAIiFEI9AZAcTsiwMlEqG8HzEFkS qD6iFJf+XacQkAsBdyUSKPj9SdkVE+UQy/tpVqZx0nFkMxqPdAd6reZwd0+7tabdWt1d+7SzOr+y MLfwdvrTu9cf3szOTo5ODPcPDQ9093T1dXb2drR393T0DfSMDw/Nzc58ePNudWFpeWl1aWlle3lj bvptd3f34pdFg15rOtq3mIwOm4UmLRxjEwW7100EPP85X1CMyxl291vW/EcR/5El/iyS/1Vj/lHl fhRcp2EygO2leM1lcv/nsfW3uvO3OvajRj1UsYc68fsFXw5bFGwrSGvLYdNdxXFesBWSlnjA6OI0 TvO6cX91e21xeny0s71reGBifHiqv2dkoGdkeHBsfHR8dnp6bX72aG0O21uUTBs+pyZI6DMufTVo qseOLtPmuwxxk3Q+ZshHkMM5633eep0h7/J040wNtDD1DXUVQ622QRE8ZZWnrPtrxvMtI4OH/64q P1QQrfhVEbspYSdp600Jv6sQGb82oWwn3ftXeeJcxc9TwIjQjKFveeFB5S6LrsuyclVynWbZG7Tj BGpCuAbVAJIBFb6hXt/f8tJdGnSQ9JSlL8viSQ5IF32NujZxtznqNkPdqORzj6arFHOjCmDSl7Cy 8nXOVQgLO0sfu0YXmvtfo36qfRMt/W+6Jj58XHij0+84rIeY/ZCwH7KYQcENWT99FldqEalR7Ckc p8GimOMMW1bpUpqs57l6nq0Ag8qy9QxTS9O1OHsRk8/i0inakEeNVfOo8zYiPycRVy0kVQNSGTVU ceVCrkxYycalbAIYPqfGXCqo1KSYTQh5VcwkxFRUSoT5VIzLJrhcioE7OSBmCfEkSh2H6WqQLQe5 coCrgFdHZUGgl4l8xJkNOXMRMh0iUiEy7idDbqtfMijsgUDoBPxQwAys/RA/0tp1B8atff2G9nBN t/t5b/Pjzvrc5src5rvXn8fHZ4eGZvv7Z7p7Jrq6Jrq6h/r6x/oHxgaGx7v7xrq6hycm3s+9W3k/ v/Th48r8+/egZEd6u7cXF/a1a8ajXadpX8DNCu30c7QiMYpMJ70SaT6Yn5/EMF0qSKlhslE6gVoL ZsN0KuBIB50xBf8LC9Te+7Bjte7V3EZMD1H8Rxr/V5n8/+vCP8v8Scim2LcjzM5pQvdQtH47xhop 3MzvJ+xvZ/zvJ2I9ZMsJ+prXcRV3/F6lfkPDQPlGdwuUa3qb54tBp2X3/dLbAYvmi2A7IA0aq3bz cHNp6f30zGj3RH/beH/LUGfLZF/H25GB9xOjq3Ov9j7N6JZmzevvWP2627IXY/QFj/04aj9J42BX dxnPXUZ6Qke6/G22cXycoq/ToJH5r3npHuVaMzfAWIosfJPHLH+dYq5RrzCUcXefZ/3Epse5ylmX qjH7JRgziPqq6x7VHaDN1brqqqtoB/5U5W5Lym1RvCu6bnLiJTj5jHSXhejj+Vrw3qrij6IbcHFe 9p7kXWcF8a7qeai5TtPsaYq6zHKN/Fgajf7JSmfZ590Yrp5BGQvby2/bR183DY039w3Dejn0umX0 Te9A39DYyMjE+OT0zMSrN1Mz7+bfvHcYDWU/CyZXjbAoyzqBhq8dq/SxypRSFCwAQj4KspGsJsla kqpGyKuodJlAdUD5EAlmmY/RxRhTiXH1sFD1Mcd+rh4Uj1HjR5QpCr66muCLYT7rF7JIL6AJDuUY UwClgHoFoyLNChrOy1RRhyUFZWXHeJRHEZJVr5RwcVGRiUmMh7ZT5n2nfse0v2HY29Btru2urm0v r60vfl5aeD8/9+bN7Mzs9NTr6anp8bHx4cHR4eGBnr7ezu7erp6ezu6B3r7h/r6J0eE3M6/mXk8t flh4/+Z9f1dfX1ff2tJno273ULul02xsra9trKw4zFaOIAWaVATWw9Of38/ufPkQZIlETIqh0h5U HF2OuFWv6HMzkSCf8csB1rG18d7tskB8zPqJjI/LBySQ6uWwkPPT+QCdlv8z35nce68YPyeJ5Tyz XeWNZ4rxNmR4iJkf4uaiouNM6258vZ48eKrav9ewn8f4HxXyz2P6jyraIDrxGPOkpi6a78L2fxWI /1vk/pXh/5Gh/pnD/1HAfyuCELBF8U+UdjIt76E216p4muTLESYhWXyYhjJvWPRra0sLo/0DPU1t Y32j08NTrwbGxzr7Rtu6XnX3vx8Z/zw9sfXptX5rwXqwLBh2/SZjijSVBEvFbSv6bdWI8zJBXanE VRq/z9M3BfyiRJwWscuK9b5i/5qSnuLKt7T3W9b7Pe97UOUQvh/E9tzYdjWGn2W4OkjsgnxZlM9B cRTEi4znDDhJxn2hciCQUVuYLJrCcJkEIAAGPfdZ/wOsjPd7wf+Y9ZwV/bWc+7QgX5W9F0WhnuEh oJzl+MucdIUmGMqnWem8qJzmpWqWO86y6YDty8ehloHBF0P9LQNwMfzL8MyLwcn27oGOrsFf23ua u0eaO6Zbe1/39M1ubx7WQkLRx5RDDGqmnWDrqoTeKsNVMkwhSeaieC6CV5NMJU5XY0w9yl6EuIso fwI0KUrXktxxEtVKH0e5kxB34mdOvcxpgD9uVJwVEy5UnQ1/BSrAJ1R87LGPLLmdeZc5J1qzrCNO mAI2nde647Gsey3bsn7bebBuOFw73F/b31ndXV/ZWPyy/OHT0odPH17PzY6+mhwYH+kbG+we74d/ xpbJgY7X/d0zAwOzw6PvxkBBzi68nfs8PjHd3t7V3dcNUF9d/7KxtbS1s6TRrR4a1y2OHQY/dFFH bgbjHLZPs7PLb9+6KEsywCb9FKyQTPoFMh1Q0gFXKgAhT84Flf3VBcqwq3r5dAqwwBQiYtrP5Lxc 1suHFCoZ5jMe1k+Z15dngh5LLsCoXlJ18xm3WAwIRb+oKnTGzajCf/ZUvY7lkHMlSazGHWsqpi1Q mjy9nsK/qORS2L5M7S5yB4tZsOSE5SplvUhabtO2xwLxUKIeCnTZY4g4t7K84TLq/J6jvgJtztL3 WfIxh3/No5G1wBlC+Bqx+zrNHd4k5bu0G/XyUqU7VXhCfbfYWooIyabD7Q+LbwfN+4u8c5u1rzgO P1n2Puwtvvk8Mz473DvW2zbS0zHS3T7e2zM7Mr4wM7n8dnL9/ZRmZU6/+RHTrsr2nRB9kFOc5QB5 lnTBOk1QF3EIGcy3gvS1KN8XxVu0+S+UwvZcwFIK2S5VupFHhEaNIP6TF74VpYcsD4QfNPttBn8q giKmbrMo0xsNHAFEZMTbvPsm737mPDd55QpQg04QpPM0Gqd7jw4jZFQNl1duM64bEC855Toro2G4 WeEyK0QU7M30wMu+4V/7hpt6h1sGJn4dmnkxMNnRN9Ta0fO39q6m7oGmnunmgdmO/ldrW3v1BFMI YoUQcZzgTlV00HCiKhU0goc+ToIyZRoj4VCjDFTsk+TqcaKepCoJspggK2kg/6idUTbEFBG95wtu ruARYxLnZUgvzyo0xlgOnLo9y+6OcXPtYO2zZml+78vbnYW5DWAhM7MfJyfnRofeDve+Gxl8MzQ0 0d832NfVD8y8u62/p22wq224p2NiqGekr7unpWWgvX1+dnZr6cveytLh1rppf9eyr7EfHODGI9pq kwlMIZ023c7y+5m1hTcCZowpQGDYbFBEzZFQC0oZTaaOcpmAlPRI+ytfLDubAcGeCdNqiMiEiGyI azQ7ktIB1NmvlJQAINr1N8TRWsKPxxNkLEGA2EmF6KSbyHiZZIBPRcSMnxdAx36Z8bqsCT8TR1PX xYRXSAfAL7FRNxZRHH6W/gsLaXlXlfZywm6O0+YZY5k7LDIbGXIx4fwYtS3J2nVe8yXi2MxwmhS3 l+R388p+JXhUjFhKEWtc2BfNy0FSUwnZL1LkeQY7zWNXZfKuTN6X2LuSfJ7kA85dam8hJ9juk76v af831X2X5O9i1GPU+ZDFrrP2WtIe5LZtB9MRz/ZZ2XxWPqxlDJXEUcZvCXBHEn7kNOwb97SzY1Ot zZ19g5Njk9Ojo6OD/f19Pd29ne2jPb1zY4NfpsZ2373b//jRurxGbe7K2l3f4X6QXsuHNJWEsZ62 1bPOszx+XsROMraLDHadI69B6oL0yLFPWfZHjv8tJ37PEt9y2Lc8/pi1fS+SDzlnI0ucuM5z5xnm CsUO+bIgn+akela8KCo3SBorVwn+NMLcqvw3IE5519eC+z7julOBxcG19z4jo5zwLAgHPiizQAaa Bl419U+19I619U+/HJp+OTDZ1Nnza0vr37q6Xvb0vxyYbhqa7RieWt7arkbtpylk3qdp+jILnpwD rYr6JkWQtwe9DLGgEiLLQbzod6bdxoC87RG3eWqdcCw7bStm46Lh4PPB3qeD7aX99cX91S+apaW1 D58/vfsISvT9m/mJ8Vf9vUO9XYNdHT3tbe1dHR19PV09nX1dHSOd7UNtzT193YOzr15/ePf588e1 pU/rq4tr26vr+zubBu2mUbtu1q07j3ZN+5ufXk/NT485jJqA5Ix7sUyUVOMY8DSIa/WIVAvDEk7C XJwx0hDcTds5Ba/6uZKHqfj5WlA6C7uP/XIpwhYjZDmmJDzC4dqSaXst4rIVYiDAnRBPUWlzCLW/ S/rYfIwFgMTcFs36pN24EPKaojFbLOEopJkkfLSfTHvwuIeKeqi0n2Pt+tXltyxlCLiJoAf3K4xb xLySze+yuUWji9cL1NFfWCj7jFW/oerXnAQNNa+t4jZWvJqid1t1rSX4lTCx4nd+STBraX4jzq5G 6KUI/SUhrMXFrTC3rtg/Y5oZzvghJe4dB44uErbzlOMmAyZkv806rnN4PWb1Ob7w+rm823CVZG8T 7F0aNTu9TVK3CRyeuS/bzjLOELuD6V4nXJrLrOOu6HzMU/cq85Rz3aZcD1n3LfCWmEjuryxM9Zn3 PgnYpoRvMLZli+7j9srU0tzo/FTXzDCIjrbRrrax9o6RtvaZ/u65kcH5mcHVhVd7K3PG7S+Og03e pg2LlpTbVghR9aRwlkbjqMDzP+W4r1n2exYlAX4tsE9FCn6FhxJAALvKY9dF4ibP3uTRxOfLxtzD x6r3vuy+KcjfcqC4GfiqVwn8OkU9gXBA/feEh5zyVERZEyAxviKASA85NNbBw4mjg6PI8/fMtHdP dvbNNg1ONg+MN7V2/PKy6UU3xIWepoGppqHpzqHJxY3NJBpkrCQCUlihQzLrYZwSbpcwG310ZN/X OPY1hxvL+2tfdpcWtpc+LH988/H99Pzc9OuZscmJgYnx/pHh7tHh7qGBzoGGP+/vbuvpaOlqa+7v aR8Z6n01Ofxqanh2ZvTj/JvlL3Obm/Pavc+HusUD7fqhTru5tjwxNjwzNWoybgusUxZZvyRGRFdE 4hMePhPgGo6aK4Lo9vOOvU3D2qKPtOf96FC7EmcLMTwTJAuoqN+FckpDqNd3VLSQxjXRuR9XsCLQ 9YCQ8QvFsKsYUgpBJe9nCn6i4HMlJVG/vGKBX1/GCkGqEMRzfmfBL6RcXM7rynikQohLKs6Uy6Zf f32k/ejmD4NuU9BjTvqcEY8jyjuCpDlE2gOEPcqRhF63s/KJsukV1uLmzC7KxjoMrAPk/AGHaVmH RnD8Bwu1gPk8ZjmN6y9S1rM4cRyzVhOGfOwgGdIkfOtpz2LavZx1b6ClrGfca0nXcsa9nnVvR/kV t2Oe3J9g9NNBfDEr7NY8umO3rqzsVtxbNf9ePaor+vcU61veMKXKm2cxy1Xceqva77LYU558yhEP ZetV6bAcMwWZHebwvSofnMedVwnsIcE8JsSvKfkxIX/PcD9zzO95Ok1vmtdGksLGZUZ/XzI9VmwX OVspZkq59W5+h6U2nbbtzbWPw/3drc0vp16NIJ3WN9HXOdbfMTLYOTTePzY79urT23dr8x/3lxbM m0tOzRJ9+CWIbWWE/arbcBfDULu8An9TZM4y+G0Jvyrg1wX84RhkCH1X4O5K/F1ZugMWVHE91pTH uvv3PPk94/ieI+5Strs09ntNvMtytbDjOExdoYpR6THvfsjJT3nhR1E4ieK4hRodmGrumgVR0Nnx qqt7qqVvtLVvpLWj69eXTS872n7t6EBRY/BVW//w+Lu5je3dNWDVS6sLC58/fVhceL8w93p+duL1 q6Gp8YHJkf7xnnYw8L6Olp721p7uzuGurpnBwbdjo3PTr+bn3y0uLiytraytr62tb66ub65sbi29 fTfR19v84cOkQb9qMm9a7dsksS/wZpdsDgasiZgjlXAkY3QqrvgUTLO9sLPx1ufSZ5JcCrVRdef8 ftUrqz6hEOLR2LgoajJQ9LLE7ga2vZZgibJPOomIlTBdDONqmEpFuXRMSEWBrvDpMOdiDGbdEm7Z 9Ul2YCxRL41mgoSluJ9HM529VMVHpjg2SrIHC1+c6ztZCS/76azLnnc7szIXZxlVlDKSlJaIpOiI kUeGL6/1G+9FTAv8wc8Y/JTRy5hdFr1k3A+azSGz1We32/c0h+trtNEgYXoZP1ScZt6q56060XEg 2PZhSTbrX1g4jThvVXDRlqu07SJOnMcdJzHTccxcipiLEUMhtFsMHZQD5qr/qBY8OgkZK4GDsu+w 7Ddl3AdxbiuILQadn+PkVprU5ThNgt2KUusQR1RxW5U1IXqTPnhDaGZ8+EbedVR1m078psuI/Tbm fIhjtyp2nrKV/HgA09G6haxiuEzbz9Pm66T9LolfxYiLGHOTZhqZqEyI3DtanY0yh2dp7A7USpm6 yhEXKvFYEB+q3HmRqmfBZdl2ll6/e9WHHa3w+C5h3jVrVkBT7CxOr85PzL0aeDXYNdzZNtLdOtTe NN7bNj3Q8WlyaO3d5N7CrGH1g1W3TZh1Im5w0ybV5yyGyZMEjQ6yVf6xoNygwjf380yr3yqef9T9 qBdNSXoqe07RGbGrlpJETG/cW7EcaMOKpAa8MUUMCWREJIOszXmwOfdmDtjIy57xpo5hICHtbQNN nd3NXd2dbV3NL5tftrS+aO5s7nrd0vu2vWuqvXeyo7sfbbeA3OztHh7sHhnqmhjtev2qb25m8NPc +OKHqU/vpydHB3o62+fezpj0GqtxF7cesA6jjJsDrDMsYDGZiriIkJuIBVGza8y0vfhuzK5bSylE 0kumwlQmwmTCXDpMZqNYIY6XU1gpAVzFpXpp6mgLN6yoXkspinrlAd9QvUI+iNofoT5gaEIugIJL uwnL9mfr9peI4Mz62UKQyQbJdBBPBYk0wCFMJwIkUHpw2gK2e7j1DjOshSVrwotFXc60n467iZDo iLjwpNuWdB35KYdosx4sLZk3tgKMMSod+Zj9sHjoZ+xu3ObCbZLTyjs0MqEVzTrDykfd9mfcrnXR Ry7ykMP2BdrI2w9Fq85nOQrYzC7cbD/SmnQbuFULgUAkdPB/RsJMMmFwkUYXofdQRz6S+AsLl0n6 Nk085u0PGcd9krpP4bdJ+2UMO4sQ9aijEjNWI7ZqkK6H6LMIfR4lwe+VA/ayHziqLefSF6S9sktT kY5KjCXLAjp2E9xuWthN8Jogveeyb7H6T/T+B+loI4wdROyaqGMnTevy3GFZMBRcRwWPNS04Rb0G 2/mgyoarrOWmaHosOe6yIECwegxvtAWmT2NskNCZluci+NFFkr3OMKcQQdLkWRy/SbFfS9RdAUMp EDlGtKxov0ymFO1lnjxJkbWYoxa1Z72GuHQgY7ukecum3zBo1ydHBjqamgY6uoBKDPT0d7d3dbYD VR4Y7Z+YHnv19tXUxuf3+6ufrLuLjGFLNq67TZuyYb0iWm+DZFUwXbitx6IxyBzKzh3WumfaXzLs rel21j6+f/d6Zub928Xtdd3mqnZjaXd9cXP909ry/OL08HhHR2tXV8fLvqFfmiF2tTU3tTa1tza1 tra/aGl72drS0tHc3NPU+ralY76rY669Y7q1e6B/eGzh04L+UGMxbZsNa5gFML4lM9subs8Nv5Gg N+iX386Nm8y76SRXTDsraayawKsR/DRGwTqLM5UImQ3hxQRTTrCiQ3OwNOez688CruOgUIkwVbTY 4yhVi2HHEXs9bqtHqXKAz8oYp1+ndYsFt/E4hBf8VMaDZ7wEmHreT+X8VDEIkpxR3XiQgw//ZN79 7OdM6QCdDdEgeBNBMu51Jr2OhM8JKMgEMNVrE+zr+6tTNu1HL7kfE00J2ZJy2QO00YPrfeDSWfBC G7zT6DAcHK6vGjfXKdumSG0L5IZEb4mkkXEYWacJt+hJ+yaLb3MWg1O7bTJsW506htBzhI7AdhnO KFAmN2v2Os0+zCxzZpI2OJ0ahjMoEP4Yo0zbZMom03BhdNEGv2hR/hcWriAoZLDHPP69QD2q1JNK Pqn4XYq4TZIXcewsZjuNOk4jxHmMvEJVKsRpHKtHnbUwVos4qgFTxWdAcsNrrrgtZbex4D7IK7qc S6dKuhinCZJ7PmxTsaz67Fsxcj/o2Pbb1qPkTpLZi5JbQWI7wmh92J5z95Nt+22C055EzBcpG3yf 66QTfVAcO43jZ3HndQKPEFvGL9Mx7OAy7rxIOU7i1quM8zKNXSSw27zzMuO8L4iXKdZr2zB8mcq6 D84yxGUjW/sGdcxjzpLUSZKtJthKgssEGc3qu4/Tg9q1j4ztwG7YPtxb3Fx9t/z+9cfpyXdAtvta J3o7Rrraxns7pnu73gz1zw0Pzw51bc9PmVY2jatba+8mPs0MvwUmNtI73NM10NnW1906Mz4wMtY/ 83pidHzu1dSn8aGPU+Ofp199mJ16Pzw61dM93Nrd19k33Nwz/GtL58vmziZY7V1Nbd0trT3NsNr7 IV40d75u7Ztr63nX2jMLDKp75NXHz0tm01HIY02i7RRnPkIUonghRuYThBqjJNq4sfKWJjTJKJWF +1EcFGgpTFTCRMPCqXKYRAYcoooxXHbsaj+/8zgNJwl3GR0EM3l4OEYeo8IEez5sqcRt5QiR91Ep wYZrVrC9xYxsLgfwvB/P+PAs8PkQlfVjKbc968PyfiIh23zkgWn7o2Hjg4LtJ1wOeCztcUZkS4A3 hQRLWLDEZAfQ+4Rk4y3bmqXXR9sLvHXXS+p9pNFLGhVML4Ent0E426Xsm5RNa9PvGXbWTZoth3FL IHQiqRGJXZEAen8gkgYeN8C1TOtFp5GzHlAOHYkBEBAEBMYsS06Rtnp4e0jEgzzmFa0eye4SjLJw FHZjIcXhE50e3uHmrH7BHoR4JDoUwvEXFm6BtxdR9c2PEvOYIZ5UWORjmvyaJe/TxFUcu4o7wfwu E04IH9cp7CrpvEYW6DyJ2I6DlkrQXA1ajsPWWsQKlnwSNtVDR8dBUzVgLvmOsrI+ye9HaU2C28/J +rSgi7N7GWk/I8PN7QitiTEHHvumc28e08wDdU9xOlVEj2Wlg6L3qOgzFX1HQM9Og0a/9bP2w1jQ qjmPWK4zjvO09SxtgVegdleq/QxpduE8zipHawcfxnLK4XmavIqTd0n6Okldo8iCXaZR5/nzNFuJ MqT+M76/EOT0tRToO6aUxFUgzJI9Jtp95CFj2rTrdg5313dWVoc7ujpftvYBJ2952d78sqdtfLD3 TUtLy4uml7/++qK5taP119bxAVCgb6eGuwcn+sZnhjv7Z3uG5/p7FvoGPg6MvBmbfN81MtUx8Kq1 b6K1b7y1d6y1Z6QVQWO4pQut1t6J1l64P9lomjTbNvi2pf9ty8Drpr6xlv7x/qHx12/fko6VHEof IsDPVyLEcZwqJ5y5KCHjhp2lWQ7fAp5TiFCZAK768VwAL4Wpepwph/GM25Fzs4UAmQtaeMv69vxr l+OwkkaVDvk4m40S+bijnMazMUs6eJQJmzNBR9ZPRjkL0E3bzmKcsxR8eB7gEKbyYRo+Iu1zhARj RDIlXNYwb5Jsu7rlN7qVd7x520cc+KhDN66VnLu8XSM5IG4eusDanQdg85x5z7D5yaJZ5Sz7stMg O40u7MiFm2TnkeQw8sBwqAOJNtAOHWbax8z7pFknYEYXZfCwRi+nd3N6j2D0CmY3a1FYm4e1uGiT izLJtEXhHB4BdwuEi8NE2ubm8bifC3tov2QNK86I2xZ0WRI+Iu4jw2485MKCMhZ3UykPk3RRUf4/ ceGhiCYmPOSxhwz2kMa+ZshvGQqw8JShvmWZuzQECPwq4byIO66S2GXCcZl0oOwIlTiN2Y9DlmrI XI/YTmOO07jjLGYFGX4Rt6INpbj9FMiV3wRBNqcYMrK+4AFGZMy59UWfAfy2KmtBLKeACuKbgumz y7rkx9eDxFaI3Algm2FiO8Hpnlec0aaYPWrv3fbbIV63knft16PGWtRUj5uPo+aTqOU8ab9IY2dx 6jLOCodL2rnhktd4mcYvovhljDiLOs8hwMXxa9Q6jDlJUMdxhjctu6zrcaB2EaoSp89yLOoAnHbe lil4PVPxmkrmkljcT398PTTS3aZbn9drZg52Z3s7ultftA0Ntc2+6ezuam5pbno3PcJa9WGXZe5V x5t342/nxjq6J5o7R7vb33S0zXR0Tvb0THf0znT0TLf0jMJq6x3794LrnhG0esfbASa9E2juc/dk c990U+/0i+7JX/vGQUq3dQ/3j4wf7i/kGn3zUD5GhCuHmHzQmfZgwtHB3gKY914xxBTCeDaAZXxY zg80iT6NsyUgJy57wc2qiiMmHxAHXzbnZjiTRg1SaojOAZ8JYNmgrRCxZ0OmpM8YU/RxxQzuXcEP 9WsfD1beyzZtkDEGOENYskRka4A/8jB6hdT5WEOAMyqEDjtc21t6c7jxgbPsujCdYNfwjl0B2wMs 8Db4I1KpjEXDW/d5qxbTb1KmPQkAghtkDH7c5KEs8AoLGIubNwbhoxmzRJgk0uwGI6fMHvYoKFlC LktANMFFULZ5ebubsXk5s5sxeTlrUMKCoIkUKuCiFB6TGZtHxBMBLuZjg7Iz6qEAAjEPEfcSkQYQ YEUUuEOnvEzay6b/10zbu4LtNmu7SlquExbAAgDhR455TINwgNDAoFwglbhJIRQAb7lM2C+T8LDj LA7cyVqPWI/DllrYchK1ARYukvarpPUKPWCHJy8acKgFLRA4Cr4jEOC1MDxvrUet5dBROWQsB0w5 jyHK7YHETvAgMfZi7F5S0KV4bYTYiZCaCK1NcodhQhPGdmjNh4NPU8TeYojYSInbSXEv7dKkpP2s 66DkNxb9ED6ceZeF0S5uTPdkXLp6xHwWtl8AEKKOC6BVSYSFS5U+SRBAlhj9J8m0EhX05Qh5muLO s/RJkjzLGS9LhrO85Txrq+cNxxVTOUPrtl99mRsKigfnRUsucWDYWx/p7bZbFxnmy+R4R3fni43l qbOc9zhJLM33LSxMvZ8fa+8aaWrp7+143dE62dk2Bau9Y7atfboFAgGKBUPNXYOw4KKtsVq7RiA6 NHfA/dHm7ommnomXAITOsb93j73om2jpHOwdGtNpPqPxZEG2FBbKATbvoXIeLC3inE67NzcrGXZy SH6aCyEnkKJSkKgEiRrAHPy5G8/JTIIHH75PHixtvJ02bX1xU4ch3hwTLBEgD/xBWNBFRG1E3A9w GoXUsLZdx8GadmVeu/IeP9zgrHsCphEwLWvf4xwaEdw+rnVRBwp1KOH7lGnbtLdk063x9n2FBE2q dzMGL8CE1MuYXsENHvJIIQxuwgjXgm0fUOBjLB7arJAmL23xczYv/JEB336kcAbw5D7eptDIwqMK EZawiMsRczujbntItoRdtrDLEZSciAKJ8KQpJNvAzsMKHnYTMR8TclOwAgoZ8VCAjrBCNIakCwkf G/eSEQVQAwseJoMyHpFxiA5xmfoLC/dF20PBfqtaHzOOH3nyexawwD6p9E2cuEuTd2n8IYPfqyBR sTsVu0rZr1K267QdzP4iYT9P2E+R2rKdxOxnCeBOjlvVdpWyXv4bEWCEjvOo/SRqr0ftp+gZB6zT pL0Wtx7HLDUARfAo5z1Ulf2sW5f36DOug7zHWPYaVWE/LRyooiErm+K0LkHpgvZt9mBJMKwF8PUQ vRYgNwPURoBARCtE7USZvQi1H8K11rV3O++GPM7VvFt37Ds6C9vgO6CvkQCoYlcqealSJ3GK3H8v GhcTor4Wpc4S7GmSOIkT52nnacp0k+NOE3QtaT4rOUtRxrr3fu/zdFrB7iv4adbsI4m50YlczF5M 2fY23r6b6g6wGzclXnYuOvbffv746vXMUHfPYHt770DnZEfrYHf7RHf7ZEf7VFvbq9buoRZAQWf/ 82rp6m/rGmzrGmju6G9q721uH0CsqWfsZedQSzfwqPEX3aNNEEo6+vqGho265VSITbnxDKBAwVXJ mVWcKQHjD/a086/5g82UYE+4jKrHnHSZo7whyhqSginBG2OMKUo5o7Q5yGiJg6Wd+TeHqwuMZVt2 aF22fcWpdTl2RPum7Nz0ELseEpz2LnG0Zd1fPdpdtmhWKPMu59AKxL6A61iHVsR1blrvIg9k8kCh 9eC03fSR4Dzk7AcSbgTe4uUsAQksGfSC1ceYfaw5wFn8rCXIWdEd+CNvCQo2P2fxsuagaI+4nCHJ EZKdAZcVUSDRDBYbEJ0xsFI3GVeItJ9K+YiEB0t4cLhOeMm4h0KjFkJ0wuOMeZxxH/L5iQCdDnFR LxoSHQL/D9buAufPZRujn2MeMe1nE14qBhhxk1Ev0CcsIGExuHaRf2HhsWj7UcG+l/DfS9TPPPWY Ir6mQUHToJ1vwJcmHfeq8yGL32fwxxy8Om9Vx30Ou1GdZ3Hw8OZ6zArmfZnCLlI4IOUyZb5Imi6T ZoDMjQq0yn4et6Ko0UDBSdx2koBlhVfAQjViKgb1lYixFDIUAvpqxFwKHJUCJogjRc9RyQuvEN/t qmjOSpYUa4iQugCmDVJbgAWIJhF2J0Rp/MSen9gJEjte27ZoWndsfzCvvmGPPoWZ9bSgycr7OeUg q+hKPn01eATog8BUDTko7TvhcAEIWA00Zgg/iQKQ6Ys4VvYbTsLUeYw/A/GecRR9pH1nfntusuST LtL2y7xdsRBfxl9XkvhJlnbol1Y+DNbi+mrSROuncr4DsNjJ8b7uzp72tq6etv6ezoGu9rGejomu zumO9letYPAdva2dAIGB9m5Y/bDauvpbOvta2rpbuwbbewYBDi/beyBqtPeNgspu6R7q6hmYnHpl Plz1i9aYaM16yLTkjLHWKBiew4Bvr+/Pz9Ka1QhlDAv7AVbrwnYk+7bbqfFh+x6Hxus49DttPqde dmxhumXTxpJjf52xbgOlEcwawIIbA2K/Izu3FHzPTWjcpE5w6gjTDmbYoSwamTC6mSMXA94eUXfQ rUBmPNxRQLQGRJtPsHh5qxd8OwukxQ7WFUK0BI95sJiCRyRn3I3HFCwkOsKiI+oCP0zAH6PP9g/q zI2DGcc88EomAjiw+pBii3nxmJeAH4wreBJ+WR8FKIi7MdUPgoVPB5iEl84G0fyFNIh3LwZCAE1I iYLZs3E/vA8NMjnihqAAgYBN+tHc87hXTnoAO1TCxwQVIhnkQ24i4qVSQQ7Q8Z+4kHf8KJM/S9Tv JfqbSjwm8acU+QjyWaVALNykEBbuM9hdxvmUR3B4yGHfSuRjgQBRADzkJAbqFbvJkFdp/DJlu0qb YV2rltuM/S7rBDjAYxA7ziCIJCEuwIXtHIxKdZyn7PW45ThqOkla6wlLKWKqxqyVsKWMNIi1ErSW A7ay31H02ks+JyxARJwzxFh9QtQm5R0VmC2vjQuGCKuPMDoARZjYlyyb7OEKoflEH33yYF/8+FqI WI8wWwFyLUyth9nNpKRJyftp6RDbmcV33ngdG2WfrepzgKa4ByyEnfWQtRYgzsJMPYpXY46im7Ss vd17N56TWPgr+Koes3NlfDYfslRi1NHelxXQJiHtScYqm95WI1babuxub+5sb2trbelubX81Pt7R 3Nve3NXWMdDa3Nvc3NHc1tXS0d3e3YdWV29bZ3crWj2gwdu6+5rbOtvae5vaO5taOpvbu140tzW3 tk+Oj+1urVCWNdG563XuxjljgNj34VoPrmXM25adRe3SrFX7WXDuuMhNF74lObdk564b0yoOjWLf 8zoNfqcdUCM7d+ijTVqvYc2I5CjYgeIweEmDn9H7qAMfo/Mxhx760MsYPLRRoUwuEkj7EbB3D2f2 A1GXwOAtcA0XIZcdrB0cuE+0eTirl7WHJDwsI+IRkvGohwBjBocfFOxJL5n0UoCCmJtI+KiUn0n6 6KSPBAjASoKf9wEWsKSfUMNkzOuIeUHqOhI+eB5LALsLcikfmfIS8Kr6QeBwmSCX9DKqjwOsoSMS H8rcQ+MRg2Tch6GDjAAVhecDfAokg1dI+KWEz5X0KwmFQgIhyANHSoaFkIcMA8qCDISS/8SFPPaz TP+BiveZH1nqtzzzPcs8pAnQzo9Z8jGLPWYb4SBtf8gCHLCnAgbY+V6mIDoAKbpWsfsceZ+jbzPk tWq/VgELEBdMVyl0eAfR4SJpu0zZn19hnSet6EAtaUUrZTtLWU/TtnrSWoqaC2FzOWyphMB1248j zkrIUYsQRb+jFMBBAxb9zozbprqtOZ8x693P+81x6SDtsiUlS0IwxriDKH0QIPfdtl2PbUfG1kL0 apzdijGbUWbTiy378BUfsRpmt0LMlsexblmfNK1MkPsfYpQ2Ruuy0mHZfZQTDWWvJe+y5V32chAv hZwZCTOvvN17MxqjbKchWyV05DmyfB4cTcgHpZBDu/ZxaXY0692spa20droUthh291p++bWjraXp 5S89ra0f59+0vmht+uXX1vaulqa2Fy+aX7xs+fVl84umFrTgAq2ml82tL5sBIn2//PriBTp0a/nl RdOvL5t++eXvL375+8TwgFm/xZqXEY2xr/mxXZd9U3FuuYld2rLpOFgya+edpi8cse2iNl3Eloxv uwmtl9C5nfteTBcgTF6H3Y+bvKRWcgCCrB7K7GcNIc4UZOwBxhLkTUH+KCKbQBqHREsIGI5o9QOf 4e1+0RmQnGDwftkCqjYgAGl3RN3OsOJAzt+LiDo84+UcAIQoShQBCCAOAxw+2ggHCQ8JKIgoeMpP pwJMHDEcArCQClDpIJp4BSiIe7FUkEwFwV3j6RD8FZEOUpkgaFsyH+YgHOSCTDbAJN1kykNlAnCH A6sGbpP2sSkvDawpG2bUIEhjW9znSIdoYE2ABTXEp4KudEhJ+t0Jn5J007mAkI/IEBdSETHkJcN+ KhakI/8bCzn8Z4n5vUj/VgAgkD9z5FcVf8piT1n8DiICMKKMA1AA6zHnfMwjOHwr4t9LxAPCAggN uE+gDKIseY14keU2bb2IHV0lLIAUENqXIKhTDggKED6uVOwSbkKwSKEF/PxCxc7SznrCjoJC1FqL 2Y+jtnrMeZLA6zEMVjkEZolWNeIo+C1Zr6kQNBZDerhQPUcFPwZwUBWT6jpKy8YodxCmdVH2ICrs xYXtrPswJmij3C7Yf4jdCtCbPmojxO647OvOvTnL5mtS99lj2wo4d8PEboTYDWA7YRLUx2aE2Y4w eghDUVpnWp/Rzg2HSe2x/yjvOZD028tj/TF2S1V0258/LkyOB/HPqrR9sDgSZnZXP3xq+fsvzS9/ /fWXv7U3vxgfG3jxyy8vf/2lqbn55YuXfwfj/vf69e9/h5cXf2/8B+78+vJlS1v7//nb3/7297/B D/wN7v/69yb4oV/+NjbQbdKtEkdLvH3DT217yV0Z33ERuzKpZZ27tH3TaVqmIRYwWg+75+P2FVqr UPteWh9gDGjRJg9u94BQZQ88tCHIE0HB6ReA5JiB5IDlNwSpNe5xxMEnK0Dg0QqJNiDzQGbiChZz OZIeWEB7sCRiL86oy57wAnsngcmEJGdAcIYlPAYoUKikB+g9YvjJRmhoWD6VBjIfpBEdcmNJH5EO kLBSARKAkPTjYPwqQCCIpYO4GiJyYSoXoeE1EyDzof/H1Ft3uXGl28N/zA0zTsBhcGIH7MSOIWa7 3SAoBjGrmEtVomZm0yR3fu+XffdTyp3MrLO01N1qtZx59tl7nwdOKdHViV0bWbUYu7pWmQEh0aux 1hhozVirpgaNF0gtaCch1Hi8Fd42sctZsXclNKqBVgu0etKvJnix1fD1SuQ0fatqaUro1lztbyw8 pvpqsID4JBGfJuLjAYf1bCwi5mENssUdAw5DAQtweDIWsfDkJBUQ/MDCEZkIiCgJ3PEo5R8NeQDh MOKOB9J+wO3BtMIs+GAQ+TChtZ9IdOAZCdDke7GyGys7kbQTiXDf+M46jLYv7ETyTiht+Pwafclv BcKGxy1b8Be5NT+/FRVWsEsTfSgjjTAy1gpYEE6DTi5uL6W9h+COtJ+LOoth+2HQmvNbD7zmfbt2 167d0+Tb9cLVau5qT7htSPdt6b4l3TPFO3jU+Lsd4aKmXOoL901xri9cm7t85uGFTzQe7uO+rd5Q 7l649OkblcXzHf7SlXPnzn7woXz36/bSuavfviPf/+nHL8++8fwr2MxfeP65V196/q03X37h+X+8 9EIW+88/hwinIMeT55/Hk+dfzGIezwkC9OU//ucf//PcP4CC/6EX/uPFF58DLD7/+J38g8ty7jdA wKze7ZfvtNQ77fKDbnWxVX5YL90vS7drpfvNyn29OWe1F83mEpbdYuxW0WoUrDpjVGWjxhmNxW5l qVsRtRqv1XNaM99v5s0u4/R4p8sFOgkMD8/brNfhQhjVvjzoy2lfTnrisC8kmpToSmqoA12O+2Jq KKmpxj0p6Ehei1bQURK9MrIqdFSLIO9LMwoAfURZDwIIxYcF7kuhJkHSZJ1lIAUh0KCRpNRREhth DLCIA0MaWgrWADDRlEl2Z3Sq14ZU410DFkZWI9HbUa8ZwR0bjaFVGRjlWM8KAr1yYqsjD05BCTTF hUPpqaFWARYGfVgM+OuSCx9t18ALoV2FTPovLKiniXQ6ICw8jvnTiH2ccI9TqH1s8gyifS9g9kPm aMACEScpDyBAJp2mGVkMgQvlBOENi51ASomkqeCsIw5G4zg7fcLaRTC7EEjSAQzIQD2AuRjIu5G4 E4r7GRB2acnbAX1nJxCBhQ0PRpsHTWBt45UxkILIh90ubAb5naiw6QM1/KoF7cSv2gwcN9ZEh/Vm 015hpD2cmvNJPzc2GDwOektJfzHuLw60nFN/4NQe6so9Q7nvlOed0rypPLCVB05pzpTndXG+K13S Slc0aaEvLDSZq/PXvsxf+Zq/92OPu9kqXitcP//bF+8Ubn7D3Pn+/Of//P6T9x5e+qDy8Ozdn8/M Xfri+88/f+V/gIN/IMBffv5/XnsF4fzcyy9kYHj+hRkWaGX/I1DQY4aF//nHc4SP7DFbYA/8CI8f fPDm1d/OcYvXu+VFu7GI7d2oLlI1WqWolfO9ykId5lea06qLTjfndAt2p+j1GL/PO52i22G8ruA0 S05LtDt5g1ig4nZLZovRWwWrxzo67xuClxVLICa9Lu+22KBD6bahrqaaMtSw28hpTwAiAI1Ek4fY rk0VC69JIOP7atxVk34Ja2RUxibgUBqZhJSBARlfcrsiif+MFOCCgQi3w4MdEqsc6bLbhfXAfi7F ppwJJCkr2xCzpKEc9oSoh7+IgKdITqm0FYwAuNVTsz3QqFAwMQAQ8EV5YChDuzzxqhnQoJrU1K7C ofg92BM17Kj43VCrOr2Sp1d8uGaz4uml/+YFGOQTrAiMIJ2G3HHEPkq4k4SB2jmIi0ABsHCIDX8k PJlIQAEen9ITCUbj8Uj+I7uO4XgAdMjksrN1FPOHkQAsnCSElMNI2g8hqGTK1oWw2PJeTNv+bvZ8 k/J0wnYgbXoAgrQfq1uBuOYwq3ZxE7QSE2VshfDaYAdwBLPl57eDpZ1QoHIpS1izRXx/3S2sObRW bW6iMRN9ftlaGGrM2OCTfiHV8kOjkOj5VC94rYWok7erC3Z5waksutUlh44fc2Ejb8hLplIwq7/b 9RuaUmzzS03uhjT/i3z3Z+H+z83CjXr+uvrg0tzFrxevn138/ezF7z7+9fuP2JtfNvM/8rfPLVz5 +ocvP3/7lZfBCy+++PzLzz33Cjb251945YWX8A0SPc+RBKKF/Z8o4C9E0Mqw8Pz/LUgsElAvvgCy ePOtl86d+2zx3m/9OnRLHlu9AwFfKhhl3qxwZmVJU+bNct5vMV6/aHcLJoK8XYR4tgGEHgtnajZk qy24vbzT49xuze+XiQVM0TOFwIaRlANDpO/0BTCC3+binjgyCAhJT0p70rAvD4kaJHDESFemlrps l8amOtSVEfDSxyqNwQhaJe2pgy5RycQqTZ0qRNTAIOWPJ0ABVkguGCoL6BCynyqAA4J2SJJGCkjb lFKoIwTzjBSIF0oAQqJDI9Ej/EKsAws1uoXKwKonJnABEwEFpeA9sUBJQ6ucmuVsLnENkITLHvTK oBW/hz9UjayGq5UD2HCz6vb+PlM9ikRg4TgEFuSTkDsBFlLuKGX2k8LBgNIEoAbIoWd0iacMIGQa ibDwZCzDUzybqH8slx8P4bIVkMujRDxNCA4HIcEBQCB2iMEItCCWdgIBBAE62AvlLY/fcLl1hwUW AIotyg6Lu4GM16w7VNSxF4tHqQosbPhUqrcHu0FGo7AdLkFrAQ6bjrgbKjsBsxXkN/3ihldYd/gN G0ajuOkVVmxxbAhARKoVhnphaBQTLR/380mf8Ru5kGrDigl2vC430ugxaMKJ8177ltu+aVSYrpzr yDcbwrUOc7VWvGLIdzXpTmXpKnvzR2n+QuH2d/evfzX3+9fq3I+t/C/S/Z8Xrp29fuG7zz9687XX XnnttZdff+GFV1987vVXXnwdRjrb4TNnQHv+31h4jrDw/AvZT4GC5/4BTYUF9UTr1Zdfe/O1M2fe /uHcp7n719pqwajD5DJ6BXDgHCj/Mus38hFQUGO8JuN0WBciB5q/w3l9LACh4HQYowFS4H294PZ5 o6HoDTE0pMRVfUsILCGypMgk0R5pCFfsw2KCWNLVsaFOTHWsq6O+PCZ2UPB8alE537KFHykTekFp Ai7QK1OjNtGrGSJK+MUpYaFCQgvY8eiiZ4AiNUvABUIUiPA6Apliu5xapTS7Vx00EehkImJTSahf u5RYeAHkFkFgoFWjXiXzC5VIKw3oZLVMoNZALuVBtmL4lD4dOsFiLHt1EBa+xF9JSbZVQCtDsxXB MjitodeBUoKbiMxapP+ddz5NZCpDSuSnqfwIRpg0/wwLxYMBu0/mF7zAnmQCCd6BxNKAg1/4Y6o+ GRIcngyVpyP12bj8OJUfDwkOJzF/EHLwzicw4El23BQLh7APkbAf0cU6hwNlP5Q2XRYBv+GyO5Sh II0ELOyAIzxulrzLtJOE7wMsWAj+3RC+g92N8idDdS8Utxxhx5N2/EKW1yhuAw4Ov+OpeNmOx266 8ooJihFHWmGk5+mM1GLGFjPS2aRbnJj4vjAx5WGfX7bkiSGmfSGFEtDvu907RrXQKy31Snf6pVt9 4YZRvmeqtzvSjQZzq7JwtclfrRYvqYVL/OKPunC7zVxTH15S5i4t3b549eLXn3360YcfvPPh26// 863XPnr3jXfeePWVV15+6aUXX4FkenHmmP/WQoSF5zIiAAqe+8dLLz73CozGa6+8/trLb7391kcf f3ju+zO/Xz3HLdzpqKxWXXJhdetM2JbCZhlY8OqLSZf1qgW7mnPbfEAqHds7H/b5UOf8fsHtMnSw 3+NjszAwRadVMmoCtBCpEQPSiIsMbNEStmjqCOuTPict1CcthO19bJSGfYR9eaKXR5q6bJWnJliA CIKwYJQQ/MN+CUAAHJat+tSsAAtDTSIRhVfSxSXVbJ4AQrFMc2NswgX28NQoJUYpOy+FTS6ndi2k wyU1O0eSAIcIJgKWRKvAFITdClZEgh8LRFOaeZBAU/FPjvp4B9AHkFJK9dLQKE/xbh1YGDklC1MD s4QdKLdWAjaxm1gBbDVl38owIP/BwlNInVSAd36aik/o+Ih/POQfjYXTqXRM9pk7pMMi2Gcue85i HcUsYv5/V8rPxupjgoP8ZKj+Oa0+HSlU+A28RDAa1LaTOW7IJ/F0CCpRAI3DgUilfZGwSZno7Lg1 y19nlMHvw1PARwfijDt2QgAEUkqBcIKmAih2A/FwAOAUjhOVqoxcwEHcD4vHKZN9NkBA3A/KeNmO x++48pYjbXvSqlVcs4tb4BGYcY9bsfmxxixbYtpjR7ow6DIrtoQFjhhq4sjKBb15o5bXazmrvui2 5oP6gtfI25V7feVmT1zSxZwFA67eaSm/t5SrlrSgCfcbeVJQ4tLlhds/XP/tp5/Of/HTN2d+/Obj H7/94KtP3vr447ffe/+11994BXDAev75fzw/8xCAxksvvv7aq6++9vJrr770xmsvv/Pm628DQe+/ +/E/3/384w/Of/P575e+LD74pSctuQ3Bay4G3ULQ53zI7JZqNzmvsxBrBa9TjDU+6spQ135H8Now v2zcZyMdL2a8jhhpfGzg38VaNcms8QGw0Bd8OIt2MexycV9KEJC0SniMulJE3hnflEkpAQtmbcWu TcwytBMtXclYowSaGBuVoVZZNhurdnPVaS5btaycWx1nMmnZQxyqWABCQqejJbru0KmOZnu1Ptu6 oV6qsYFdujKNmmO/CiykNmmkBIAysMPX4359Zg1oLr1Nt/YM7NmMF3gB3s8ICIDCG8KwDHrkX+Ku MjZrU6s1MupxrzLUa2O7BWVltRWrTW46ggcx8PH+noPxeEinRv8aSc+G4h/wAtkZ0dOp/HhFPRpC 3gAFAqwBdBECO4MDA154MpKoMS0RHg8l0MrpAOyggiNguk8T9iDM7wX5g3jmuCGx6Bjq0Ug6SoSD mDukoyeJzlcj7ijh8eVhnK2BeJzKRwMFHLFLKBDhIDIToexG6l6k7ofKXiBTB5Cf3/PFTYfb9WQE /K6X3wtzO17+IKLv7Hrqpg0giLsAgi2sm+wu1YfgrRgYkM2AX3P4YS8/0ogdViwJ7nvNlfDlion/ f6WxXYz6Bb9bTLBh9iGZFuIO9mE+bs9btdtWRQpqqlm7a1XneuXbbue+W+KiOu+CRLh7cu5Xdv7n pbmrv//23a1fv7tz+ezdq19fvfDpLxe++v77T9+lJNzLr0M2Qf+89Dw44qWXX3z51ZffefutN996 /e233/j4w39+fubjz8589P1XX/703bdXfzp/5/KFpdvn1PxvtlqMO9iuc3Ef4V0MekwIltfEyFxM nIKvFRNLRAzEgENXHCCG6cMzAz0/0FnIntTgI30BOPKbJbjIsCOEbfzz2ajNxF0+7orYRf2WGLRl vy25LR77dkKqRh1BwJjY0mtTuzE2ylFHiLsCnMIQ4W0g4CtTqzaEjOmXB73SkHp5qlQiTjEMlpHw SQZEATDaAJoCdEDJZ0pGiYE7g1BACbWe6naUANTjN2Ac4HRSRx05ZDQGei3q0Yr/wkJ9CGaBB7Gl 1JNTrzSwJXw5cspjtzayKxOrmvQg8KoTsz4xG1GnHLRBZC2YBbxVYjZDrRbDZdhNv1sawIYbzf9g 4dlQ/mOk/jlSnyTS40R4BlBM5P9dUWGTj1L2IGEPEd5wB1P18YSSCIexeBgKTxL10UA+gstIlKep +ixVnsIyQB0lIjZnaJWtgNlF2MM7jKTjIYIcOBIy90FlrqfD0mGi7kcgAnY/5g4Sfg/UQzO05aOU iGMvpMrYPV84DOX9QAYE9qMSvgnI4H32AnbTYXd9vKEMf7Hp8us2s2GzW56w5cnbvgIu2PKkbYeI Y8Pms7s75Y1AWnUFrBVHmBjsaua71x1amwH0AL8Mf2HxiVaIuvDa/MSmEELs+a1cqsNRLvnthy70 OZxp837QmjdbD93OvNcsRj0m6Ys9+UG5cLPG3eYfXs/fu5S78+virZ8Xb/80d/OHBzd/vPLLV19+ +uGb2f7/0osvvPjyiy+9TGm319549f333nzvvTc/PfP+t199cv7s5+e++ezyxfPXL/+0cPNy4d4V afFahbnVV8ELnAuPo4lBj4ewT03oZ+poSCzs+WwMtdMVUtrJoU+UCfZMvKwDXHMDTRzCIOjsQMsO iCBFekLQYWNdTLD3amABEeoIcLDrrF1j3Drrt8AywshQVp3qBKoewklToP8haVKCQHlolKCpgJRl lwYNZZSkDvrlFDutWY+g5KmIAuwjhn0hIQsspZQpQORXBpo6q6xAqKd2aeSWBpbkg9cseeTDAvDQ dfhsY6c0NPFpaUuPu+WkX021+qBXT7UGaIIsuSEP3co0qE2p/ryaAA40wbU2cujunrFdn1iNsU5r qrdoDBSdytYmfjt1ygO7DPcUmUpg/O2d/3dc/t9R+Y9R6V/Q/KT8oXmEJyMB2ztcw+GQPZ0Kj5cV xDN861EsPxlXno4qz4aVJwP1JJSeUi1f6c9R6Y8RYQGhvuOzmz6zl4jHY/V4pByPJcQ57O0Rdv6I P4BlCMV9OkpSgIVDCKpUOBnL+zQrQNgfcHsxFTIRTYTCnssBbkehfBipR0llLwR2uKwCUNrDVg83 AROB+HflDQcxDyBIG1BNPly5tOYIux5epmzhO6Gy6orrobLmS+s+QKGs2gQEoGYTCsrmVx1xxZUm Nj/ow2KzE1uI4Tobi2Enn2Jf7eYSrei3FwdafgDrrecBirC74HYX/d5S0M2H3aVEl/qlh3XuXlt8 UC/eK+duCfPX2bnf+Pkr3Pxv7MPLd65+/9N3X7335utvvP7yKy+/+OJLLwASr73+6rvvvvXPd8EI 75w/+9lP339+6advfrv43a1rF+7fvMQ+uKrkbjeFuX55yW4wdoM164zT5u0mPaFytS51jZmNJaed 8zr5QQ/RKw91Wqkm+k3GbzEpgspSEk3EkxHMkYmwFAZ9gdocnNI0wEYNoUJYSLKtOyWNJHpNzq0X ow4PLZQtZUjHQSpsb4YIbPhK8hc7lKgTn8gI4p/qHLD9xjqd3sSaFGui1wEG8f4idBd+K+oBVhBL VXp9lmuLLTE02YErDRx5YMsRjJulpHQqi1dKcQ//nAp4J+qo2OTTfmNsdga9Jmgl0uShU03t8qyZ NLLUgVf24X1gc7z6xG1MyL80l83WVG8O9cbIasb9EowJeXOvMnCVyJZ94+/+hT/Hpf9vpfbvafXP SeVfY9hh8fFQeEI5Nf4JoUB8NJGwQA0n8AXj8jPyBZUnafk0ko8C4oUnifwEGimRHg1AGfxeiHgW Dkfy6bQElXWQIsIBEAZhDDjMjpX2Y8LCrs9S5gIWA9wxlo5G4m4MJuIyiyGfwGt73GFAWDiKQUk0 tmhW4AQPDixgwWgfwHR78roN4aRs++AIcdXigYg1V9y0ODIU1CiqAgLrobxMpMDj+aotAg6kvkJ1 zSaaWHbEVR9hw01sbuqIU5sfGhzW2ELkFIGRoLM0NAETekHUXRz0c153MdZzsQbJjR9JHjXnLuil eaO00Bbv19jbpcKNMnNDyV1TCtdy9y5c/+Xcl2fef+8tMMPzr7/2yjtvvfHuO2++9+4b77/16hef vH/557O//PDV75fO3btxce7W5fyD6/LSjYbwoC3PWQ2EOixwEaIo7EthT8Tyu/DIrN9l7eZSqBUh nMBNFPOalGFBgvjB4zI2XlOGKYh63F9Y6AugCdp1ndLYLacWpc8Q6hA82LeXnRq4I+yIoIZBX4Ls J4NAYqkEfx32RTpr6ksjSx3btG9TWq0D9hRBE9DtboeKP/0eGYEYH8MCBQCGQMFMucGPQJmUEr0c dmW8PgBMLCm2BYiirBJDSSiSgVCacjwGJcEL06rEvRIWxP/IaIIaIp1OpYAFX5PtDh/oMrAQ2yVf zyqdQD14gVbBGmr1idGKOrDwnVgrh1o5wH8op5J4FU8XXe1vLDyKeYTxs6H6NFWepBKMwB9ThXgB AmlQ3B8whxD8I4EGUE/UZ5Pyk1Hp8bD0dEg1S8ch9f48GkgnsfA4O1A9HogUsam0CxcwlPfBFIlw OpKxmdOWHnEniXyUyAcDLAXKn4RTzO9hqx9JJxNpO2T2skEZUGJHkXDg86exchIrx4PSo1HtKIWJ zrokYpHQlLns3ZC4AFjYdMhZAAvY6rd8adOXtmx+yxGoI9UTgQKsqcMvO9xQYyYGN4VMMnkSVIG6 7kmbobri8RuRvOrjZcJGqGARKByRmMLkJhZiiUv14thkZ4e0UT+XUtoCGgkiioWxNSoP9dIDwKGn zPXVh135QVO8Wyr+XuNuKfnrN379/suP3n33tZffePkFiKW33nj13bde/+DdN7/5/MNff/j6we8X b14+9+D3Cwt3Li/evcLM3ygVbrXkuY4yZzfzfo+FZR46dPYO5zvbb816zu8wicEt+/LQgv6BWeDD DgcUJNSMpgAUA6iULue3Ga81s8kCKCw1EJby7AAf4TpxK9mgyDr0/ASS3lAp46yryy7Mb3XWtok/ CiBQXQQggF9xylO3PLIgk1Ta9jUARKQjrK7gdHijwXbLObNeADWEkGpdLgBeKFtHuTmoqahXCrpU gzpA8NsqqGFgqpGuZFlpWOby0MInoSnKQCjYBOyT6nDf0GCVmA5/qnQHKH5klqkOsCv4VI+nJvDU VsVti1YT8ozOY8OO4jchFyteC66nM3ZaMVVlSNm1WWVPkz3971zbvyelf1M9Uvnfy5U/JurTkQj7 fJKwp0NKPe8PisdDjnhhJMBEY7t+OgIQSk/S0qOBchLBLCunsXQc8qeRAF44iqH2hZ0QFpU9nZQe TVXwwtEQoogHHA5pCbsBNTIcJMrpEEs6oJpV9nAIXpA3/OIOMQUwRX78IODxJ44jYAEaqQwIADUz IGSLXPZOIO348prNrdv8ugOkyLOrCdddaCSYDjqM3fCEVY9fxaMvrPkiqGHDE1dMdtwrrFn8uivB O0M4LXvY85l1X9geqFBTcBBTG78oj3TCwronjw0u1YqEC5ObWpTFg3YaGUyW1IMgWfAa80FrwW8u 6qX7ZvWhVZs3q3NN8VaVuyEt/Xbn0tlvzrzz0duvvPfGS++88dIH777x6cfvfnHm3R/PfvL7r9/P 3bjw4NqPi7d+WbrzK/fwdyVP3WHd8kO9tuB0lgKtGOksDHJiS0GPC/tcFn78kMy+OHFEPA4N0kKI doQuLMOKV8F+DhTAZQR07lS06nk3QwQe7WYh2+FFOk2dHfVY5YlbXfEbBAe4UQvRXh3ZUP681+Ey AEpDsIwNpyBmgIIHEUE0+BgU7T0u0gRoeESa1eaMOlwVGxKIQEkw8lKUOfSgjQXxgwiHiVY9EBBo ThOyZBwsieJ3JK8t4jHuK2OrSigwVDLdJiBQmsIIOPDINRrfYcJcKFTv15cD+HEdyKJEA94k7KoJ qEQruy3ZaUpBtxx0qm67kph1v1cCaqZhJzJLga7Gzt9nqo8H/KOY+2Oi/DktgRROBti62cO4+HjM P52Kx8OMHeLiAR2TcseUUxaOQoHScxGZ6GNs4LC0AXcUcMdZfu0woYjdiflHK+VHy+peQts+hNMh CSQqW4LC2YGUGkhZKyizHwt7MAgZFnbIRwsQY4+zKwh3XRbrMAQ01L2QiOAQEmsgU+VSkLWqxSrd X+aL5JoR/BGcgpDlI2g0wa7Hb3s8uIMuY4qk9QCWAbHNrXlQUPyyyayZHNVm2wICm0SUz4+swtQu bkbyZkyaai1Q1mGrTT7u5uGsp5YAZwHrgSdYa668bEtr5E2AJj7p5bCGWgGsYVYemDXCgtda7Kl3 lfzV3L2fH1w99/uFr89/9dEHb7383hsvf/zPt85+debC+S+vXPjm7rUfF25fXLx1oXj/Eny3Wrhd 5R+0Sw/71UWjuWi1lrxewe8zoc6ltpRa2M+pARlxOLIgbxD/TNRlYIfTbM/HTj40IAjL42zTRtzi lYmB6BIyrSJ4bcZpMX6X9zscHp0W0MFl275KxjM77YFKGTllBH9W5wP6gGVQoeFhhGfkAqFFlhxe vstGAKCOvV2G1KF9HlIfJAUh1wYjcNBa4AWnwfptwAGBWqLSoF456qpOi8/ybvJAL/kd2axzTpPq LgZkWyDt4DjIqkxopn05zY5kJ9l5UWTCJlQC/FZfCSG6TEpGww4kGnx9DRY+6AJoChV4G9nAvW5d r8h+VzXqoguGooyzGFIH0H9jgT0KiqcDDk7hCdVvK/9eLT2ZiI9GPBZQsEuNOdSPQDXbQ4CFIh9A OB3Ix2CESAQcTiPxJBKOo6z0IoVGEg+GEizD3kBAeO8PhIPs1BQ4ArOADqB29mJxyy1uu0XSVFBT qUhzLRIBWIC/RvzDp+86LCwDVYnQLHeEvbQbUa8E6ACkAArYo3MkaduD8peOiDtKQMGaw25kdR0H QVYKFfCrLrvq89j2N0JhI+A3fHHZYldtbjfzCzMsrCDIPXY9EpY9mAJmhUhEhJuGXlr3lLhbWHGg vaVVB/EPTc6mfXbVUVdsZcOTCQsONzGYqVUcG4W4O29U7tiNB1btgd142C3dUQpXCg8uFO9dmL/x w8/fnfnk/dc++/jtMx+8efarD69fPvf75e/vXPth6e4vubsX2bnL/PzVCnevLs7VpHu92rzWWHC6 ecqa9fAIy8AhMql0jawlxfnYlkcmnAJEiDCxS1O4AAvyHq5WockVNoQ9oSYDDiSNgv08JlUjQc9H mf73ELHULKNkBXVUPhdRMYM8q6BDbE/8ytitwCxTeR6lCVRKw2VVSfgA4IU0+0iprQxdej0d/hNk CAJRVyAstHmnzmRYAFUhzis08tqswztktp3aEwATqyFkNX7wOHTcFGUnV1j4YFkLA8IeFCDRuYEB d1AFFgIILYOAMLEbsNgwCHjboVkP4S80fOz2yGkHsN69Bqgh0iouNTtLNqgH/wUsMMvf81T/HItP h/zjVHg2huDhIZCeTbO6o7Hwx4p8MqT2z2NIplR4RAsswO26zIHPwdseITIDPsMFQCGcZt55mzrd oHnkgxSmldslLFASgRLQIXW6ARcHVLwtADiEjpFykIjgEVgMYAG/S6WtPr/n8cchjEz5KJS2HA7b OyzGTihSOVNENX7bWc3GfqQcxMoOpeSkmXDKav/gAsQD8tdgJWnD5zYixDa7GQnbkbgNjnDhrwWY ixWTg3feClVoJPx0xWOnLjNx2JFZTPXZmRIPaRR18huBOtT5oQaBJE4sUANMurpuA33q1BBXbAaY 2vDgRPIjcynqzqdG3mvO6ZX7TfGmlLvMzP2yePPctZ8///LjNz56/1Vg4cN3X/368/ev/vrdravn b189X5y7nL/3i7BwpVS4WRMetJSFdmXe6hS61Xm7m3d7BbuTG1gQIQJVNdt0+D91K3SM34NHFlMD FlXODiFlIGIZP4J11WF/aOD21KvQxYJuGY8j+/+WRQvv43WwOUMCUchB7dstDrLfbnNWi7E7rNfj qZTaKtEpk04HR0PKF0D5S9k5EmS/SHkx0AQViFKZaGgQ0LCfQ94kGqCqLDuVVFPcBuc1pbANXqjR DEmtFrTloEMVsFR3pFdgJfAdrwWMU9Yv7IpuC/KJSpj8LpUzzWrF3S4PLEDqm20h6OM/RRUGBEBI tcrEbIzMBqiBqviwqKmnFpuNuN9IjVZASZlyalfcrjTyq6EBw/53Dcb/W5H/F8GfcI8GLNmElPtj Kj+dSCAFWIaTQfHJiKoyTgYssHCaCPsBu2UXtu0C4HAYcns+u+exJOypEk9CbB9EmSKi3V7CVg/7 vE/NnpA63BF1yfHUN42wh3CKSMYcZjeM7MIFQD5RObd4mB2W7gcAF3XYnQyULZeb2eQtGuv3V1HT 9mz4BpSPzeDJfgz1Je1FcBPgCJm6m0M6dz3INNWax22Gwk4igxogmbahfxxulVISIlw2dM5GpGxE /NRjAJm1gF92oZfwXJra/AjKpAfLIIALhn1uogtjjV+xpHWztGaW1m1qsYcTH2s0IWfZLqb9+ZGe m9hs0Fm0aw+r7PV7V7+58cund658+8NX73zx0ZsfvfvyZx+/8+G7r5379rOrv56//svZuVsXl+5d Ks5dUYo3K/z9TmmxW8n1s8rqbm0eMslsLditXNCHa+CzrVgIu0LUEYI2l/TEia4M4Qc1cWRQ4A3p kZ5gIf6XYRwo+IkgJi45X6zs0LI0tCtjh/IU2GnxOHvidqhhB6Awm0Wtlu9Vl/R6wWvzfht/lI5G saBe6HmWoc4OiKjdAL8egWvIMlCfQpZuLmX6B5QEo12hFB626G4ZZnZsNUdGHTIp6ioU9h3EP9Vm kC7CP8fCx64BUHF2IgRSIDfRp/6I1KrDCAy9BsLYBFKghdqy25Ko+k6rDPXqAO/fLcOSGHX8K5TI qEZmLexTlnnsNSO95GUTtlOn7OPf+1/e+V8j4UnKPUqoPPU0ocK8Z1SGiu1aIGgkhccpezJgMixQ nTb8L0IagX0QZCvk4Rf2qcef3bALuz57kJ0LQeoAC1iQSbshZH9hzy3uecXDgF4AdJCnTuU9kv3g CGkrhGuYFXLTMekhXd+mwqQDDk9G5W1fmJXw0ay8gGoqls3CmsPgd/GjTWgbp7jpsFnGjdnxOKzd gOqa6Nw1JHOxBTqIpc1I3Mgsw05WCggsELkE0rpPWFgJ2NUQMolfDbi1QJg63GasLNswC8WRxq+5 CgzCmi0vm9Kox62Y0qpeWgUcrNKGo255CqzHssWM+kvD/sIY7GDAWbNRt1Blrj+49u2dS1/c+PWr H75+58szb3/24Wufn3n3s4/e+fzTf/743Re///rdwp1L7MJVZuFaRbgLFLTLi/1aARFoQtX32cic JdR42OdYp7MgjyqrgQXRx05bZ4IGGzTZQZ8IgmbCZFiY2LCcpI5gdQc6+QuQAlAAwQ9oTLxqAmcN QOnY0lUqKDWoFm7kViCNEMx+di4U/HU6xEfYkKlbQfSg8LNFQdtTogwUlKrDpp1VosZZWVGsQz7R TdCpBcTR/JnZ9YVkaXuVuA/aqsM1DHrgiFmqDh9SJkBlxVFgqFktHx2NGlSDFGFL75ftJvaBittW XKrEVqyWGGlw92ATBerLa8heQ8Jym5LfUfoV1gZM+qrREmlAt9vKeutkp0P9GgNLDXTZ/68zVRJI CftsyD8DESTs4yGfnSPxxwjmqHgcF04HRSDlCSAzEoGFWbPbMXw05A2dppJlyMbFCADCUSyepNJs z4eJPhkpVMgBxx0BQRywAFDs+MW9mN3HW6VylmuQqOI0EzMkgaiETz4I5Sdp+UmqHkXS42HpcKDs RtJ/+h1gB7Dw5fFQPUxUUMmymaOKowwC+CSrNDCZ33L5rAKQW7WY7UjeGShTBxKInVjsTnbcBMuw bBRXHbhpOnGduMX1mN+IhSn8dSiu+sJWrIIywAgrjrwZlNYcKvab6gKwsG7Lk768bpc37PKyLk40 bgWmw+amRhEyCQ467uUBBLMy15XudKXb0vylhZs/XvzuQ2Dhk/df+eDd18588NbHH759/uxnNy6f Kz68LuVvSPmbFeEegNCrghTyRqNoI+b77MAQh5aQAhEmPzCEqMtnKWZlhDiBzeyIIVRNoxhkB6d2 PT/oC6lOp/ozIMDVzpK/swYZcAoex04Z8nvWoYaQG1CvmUy3B/rV1KajTmo906g7hiLZqcxqJ4Iu VWhQlWyDc5uC3wI0AEwBX1oNxqUOOILDgMBFm3lWR03HtolFrW0hJa9VAIGqT7UaNZppZeqA6JHE omOo7KNGGpV2U4mRWYYpjuApdPx10v+UIOiW+2WuV2WcjuTSoAw6ZY2JbkpARAYKxWvJIAurKbo0 /kVsVwr9Kgt11KsWHOwhBjUTDbJ+Urf39x1V/16R/j0VwQ7PKNdMDvrpWD6lfn8YWOY4KpwmxcdE FuKziQy/ACAgsGGTH9OV4squx62bhQ2rSB0Kmf4/GdJQSgBhnw5XYV3ZVQSqsbTnFfZ95jBiDkEK CdwBZA8NbNmjPh1+k1oYxA3asbOsdCDRRBoonEA8TdSTlGo2wAJ42abP78aw50o2fCNbIb8GSgI0 UvUgltatYtp+uKzn10z2IFJ3fezkRZjlZYeOTFcDYd0HE6kHg9ImIGAW1+AdAnHFFdZCbmsoAQsr Prc5kFdcHhppDZTh0TBGPK7a8rolgRommrBqiss6oKFMNWnY40Z9dprlLIa9Qtiat6sPvMZi3GP8 Vg5ew6o8WLp1fu738z9/+/7Fc5+f/fy9L868B144+80nly58BywwD6/zS9dU9k5DvtepLNpd1mgW nSbntlivXQw6TNRnUkMY2eLIopQBNdRAt2tq2pOHfSXpimGbo8PSZsGu5+I+6ajsyIiOWKMsGeG2 mbBHiQlsvDE1y2StZ10hJAWOcAUj0KkRjPnAkFISUVAs1FBDaS8bManOugNmzfhhFzo/K15qClgO zWPksiojxWnxdpOLNNXvKTaA0+YAq5SGGJdji6xuSFFN1RpTuzHUK+AaME5MLTx0UBz2ecp62KTq 8bfwJoj21MwG3Zs1+kW9ZtdFs8EDI3grmnHUhbPAgg2H4yhhOS1pNnDA7UhGk9MarNWSvJ5qNBir xUY6bBE9AhFm6+8Zkv8a839MMpk0YE8HeBT+nJSejtTHVHEHpmCejkhBnQ5YykePRLiGY8ikbEEj QRptkizBlwpI4ZDKs/nZTIBtn1mz8+tOAW76IOTwbvjF46zk9TDlKcWcVVOAF7YCHqJlP6Euni0P xlncsLltmzsMpEeJ+nhUBi9AC21lTaDAS/Z66nTbgTcZiHRCG1Gv0FEigxeWtdyKnodk2nSETVtc s/hlkxpC131hA9JooO7AdwfSdvhXlTie7CbqBl38LWwMhGUfAonfG5WXabSytDMor3mkjjY8ecOV d4LyflzddJVtAARu1JDGmgDvvAy+MHjAYaKzE70YtQkCgx6b6nzUzteK15Zunbt75eyFb/957eLZ n7/96Py3n/zwzae/XvgOfgFYeHDjAjN/RWFudcsPzDakUc5qF23qSuDCDkvu2IB/ESeONHUU6iCw S1OrtGyVs6ppZZy12KSGRPnlLjfQBDpZ1QkIiH8AIehxAZAC4qBUNZW5Ws2iUS/CGpBBaFMebWbJ oaYiOmWaQUbK5kZWBgQBMgLUm2woVCBtIj4rQ6M6omK8GjS/04RqkrHDe20BJgL7edCnExu3R92j EF0BdmO7FJDzRYjKQZYCCHuy02DhfYIuICAm1qw8lRgksaohGMGoeHSrSBlhD7E0dWCNq8Cg15ZS o5JaNQ8s0AEAqY8bCsrvllyaBoOPCnlWg7OGlBq59VAvGQ0+Gz4gBpoEzsU/36wXtWrxP1jIgMBC Jv1rJP45gVcVqKknkrJRGNKjQRFgeTIkK/F0JDwdwyDzhxF7CMETMFREEeBLMRu1Sm07J6lI5jo7 LF238xtuYT87Rz2hgyZ+3yPLsBcWZyV/RB+ZQYDyz/r9hRk77PjiusVuO/xJRElnGiZMsl/cjWVA YN1jt0JACa/k9gfS6bh8kMgnI2INqvSGKHLYw1jBOgjLq4Yw1bhNT96OSluRAs2zGas7eKSjVxpi tpM1lm6F4gb8dcgv++yETlbFg3EVqmk9lPfT6tQS1l0ABzyiAAVkDRx5D2/uyPjRiiWuU5ICBpZd Njk8H/XzUWsxbC059UWvuWRX59SlS8y9Hx9c/e7yuY8ufvfpD1+8//0XH104+9nP5768cuG727+d W7j9i5K/3pTu9coPtNqCUYdTztuVvNdkYhrkK4xMfmyJI1MYm+Kqq646JcBhGfIM+zn1l0nAAjxC 1ONneQTgAiuinn3eB5rAEbqY1WlzgINeW9Jr+azGiXFaLBaFoi7hd0MqzWUAnOxX5OysqUyFeRTM fGRQEiGxqFttVnGdaHT+mSJoe1RiMTRKs0bpkV2LjIrToYm+gTG73BPPWbsreD2ajGE1eQf6qg37 L4DpoMciQ6H5MISCcqZkygOTmjQDSh+UE4NybRBUIxqLQcnrgQY/XofoCntghxKsgdOWva5qgqp6 BKWRU3PaICZ+aFdSp2ng+11qwYZxhorD992OoNe5v+tUx+QU/r0sPxpwRwF7Gov/nlSfpeUjXzzw GGABYPljIv5rLP4xlZ8MhYOwuGUvrRtLW06enDL1cgIFlBo+gEwKOcICuMCFeme2fCYTQtyuxx4G 3EnMg1ZOUvACe0jJC37Hn82W56l52SEZfzSsHA3KVJsdq6exuofv6/ktl4Wb2KMzVWHdg/gHFsQN t7jhMTuRsBeTDd+FZ0EMw1aAWQJx0+Y2bWnbVfeC8l5U2fDhgmEKxI1Y3coqA7N8HHUMAQsbPmSS sBmL65FACy47ViY2CEJe9SBCQHAwQZUdwMGl2WLjPgOUjQ1mZBSnNrcFiqFMtzjWi8N+HliARrKq D2EWsMLWoqbc4u7/eOvCl1fPf3T5+88unf34h6/O/PDlR+e/OnPtwneLty6W87fa4j2rtqSV73fV e2E3T30KTTZqc2mPG/a5kcFMLCoOWXbwaZXtuLruVajd0lKnFmFhZFANHgzC2CaCoFJVGjVMVRaU FO5SUnhoKuCLqC/araLfodmMLWW+KT/UazkAJCvqWDJri1BZfpuNqXiDTqtmpXehLvgGF1li4mQJ NQt7NfVKQOEM+nTWmtKJq/J/TdAQYKqvlSKzHBpKYMq+IeExtJSA+v1pPpibDQ2D786OaiH7S15P Meqc3cbfAhYgaWDhwQtlvDLOrD2dVsFf6/KEGuuqWZV49S8foVdjE6s+sOoAAmCY2rWBWabz4TYP KRj0KyaEU5f4AmAcWlUbNqeN/xR/+4WTuEimAAIpZo8D5slA/CMtPR2o/6JrmxSgAOvZmBZ44SRm D8MiND8E0mki0fU6o9LpsAQ9fzosH2UDJ/FN6iMI2P3sNGk7gIJi9oCagD2izDUPNO2EhT1QQwIK 4LYRh9TjDyxwWfmEchiV9nxpzxP3PfEAkAylk6FKjZ8ZIhD8gMMasBawewOwCbeR4W4PbiUhSIIa dgNpP5A3bQCqDixMIOYtYTMsrfnyxOFHemEroJqlqUGHUdTR4PObsTR1i1OPWadMhLjiCSueuDes IvbWEH6uvOWraxYUl7iROegNRxnbxTWPpnas05iC2SwCdqwX0s5S3F6MO7lBr2hWHnSkm7p6q8Vd Fe5cnP/t29sXz178+sOfvjpz/vMPLp378uYv5/gHV5SF63XmVou/05VvW9W5oL1ARqPJDtowIOyw zxLoLG6K9ze5MdVHUaZjqAGP4kjnx6A/Giws0W22VCBNOThKTNMGTpliyB4YgYlTwo9ADZl9VhHJ ZoOh+oqMO6Cg/C4TQU1BSjWLgIPf5vwW7zZYt8k6Xcbs5a1ewe4VPOoSEikZl82pABBGZimrYpIo 6UCIgM6pJnZ9YFc9TbJ7vN3nXdgWXfQ0ajh1ugLNR4K/Jqcg4dMGWQsDdnWnQyLKaPLYsWkyfJPr V/NZfzTMi0il5l1uaiurXjPuqnSCmg2KCbM+NR8m2q7bGYhgNGikcI96n6EAjQbUGtxK2YdVh37r Kn6XSkGC3t9zMA5DyH5+12H2Pe4oFLJR2/KzofLvSfl/p+rTZeGPVfHxmH06ZZ9M+ZMRApg5SrhH Q+XJGLai/K9JBYt89JA6oP+vFVqiu//oAJY7ijlY5oOAOY6pRe4gm8ia9aZBShV23SJUFkzHlkMX PeyGMiztblTa9qkxYdsF6ZQOI/VxWjkZlAAchP2mx9B4pVigcZQ+S93QHrsbyQdJCRG+G8ELKDtR 6XTcBAr2w/JuWN6kPJq6k5Q2QnFKSTGay0eZBYdfs5isaU5Z9+WpyyZabtnjqGwpEGGctwflqY3d nl3Oqi82Ajkr/xaWbX7NE6FSdqLamisuW8RQE31p2cxNjdxY56Y04owL6g8ruV8rhYuaetWu3hDn frt54cuL33zw05fvXfzmo2/PvHn5h89v/no2f/dXefG6mv+9yd+tMDf18pzfWvIauQjioSMkVFZK tbJRv5DQTGwh1dlUw0eFlSiONHw8ccWSRxq8SYGy5L4y1OEaGLiVQU9M+1S5GnZ5CCeQxRjLojWC eu9xgx4/1KUUMdZi7Ho+7OA94YIZoAB7OwLVrhf7pSW7wXo91m7njEbOoaMnBYLfpDmQvEs9dFxm 8IsjU4Kph5cf9kuUdDClsaPCiQd9LtB4GsFEU5hEu83Cqk+cakwt+VQlHndhdQuBxoa66JCIUiF4 elW+V+PsnqQ12U5lyWgxTlc0YMzbst0u+VlOAaTgY+llTy9HVjVx6oBDBFB0Ffw0K/+Dtal6Hdlq kTbLRqrKQS+7DKgpwInbLfE/WNiyi2R+XW7LLG5ZhR27cOizcA1PqK9HfLYsPJlih186GCwdJvmj lDkZ80fU+CyepsppIsNl/4u8NnU9PJvIT6fyyRA+mvqjD0MW8f+YRsSATRh8SSM1ImqUO05Fmi1p 54GFXZfZdtn9UDxJSvsRpDi/6dEVJDsBNLnyeFg9HpRPk8o+IhOv9Bkqz6PLrWClqb4iG7Uk7wMp oQyDvOlLFPmAA81HhUBS98gpqBuhtBFJWZZBXM2KNGbGBACcTaSHzgEKhmZxiv8UsZzlnYtDg6HK bSq941Y9MSvVoDlmE4tdphahzpZfm1owzkVYGABhooERHi5b4ljjk04+aS8Z8s0me7ktXm4Il3lg 4eJXV3/47NezHwEOF7754OezH9349dvCg0vi4rXig1/Fxas00bH00GksObWcXSn6TS4i4wz9z6cW dK+ANdAQq3nEntvMR9gn2wwd82rgjgLoY6SzWGNT2gyrK3Z5bCDYZpnfMvlrEER24pr0uZQWn/Q4 7LQABQmVHh3pRIiWjuC3eTxmyTWqU4ppUAbrkxOnCdVmQ7RaIu29HcChaDdzXjsPLFCyG5KeCiHg xAEH2HA+ASi8MhXZWnJsQNILcAcAUda4DY1Umpg1OjG2uQFNIVAivQpJY9OgbNXsCFZHsGmGsGR3 xX6NNZsI7LLXhlkGGIEdGUAwaZ6wRJnoFmwRdVLEPTXVaVYA1JrZEIAjuyMadQbL70pUy9eH4ioD Jv/BAvZkxNiWzWxaxR2HAUEACzAORwEDRfRoyJ/QoKQ8gHCcFo/hsifUpIYd/slYeTYpPZsAC5BS 8p9T6c8V+dmy8mwKjqA5e1nvMyFixyns+cUj6l/gThKqd93PRNSen5FFBF5gtlzKkW3Y7KrFbLj8 f7Cw7YqrBrNhcWsGvWYbXODR2gaXRcJOwK/aRcj+dYdfd4RVGxEub2VYWHOFTVtAkAMjW1SYRyel Kz675jOrThEI2va4HZ+H5d9wodNEOIh1SsnJm5SSk0Z6EQjCAgqWbRh2acUWN0N8p7TsULHrzqC0 HVZWbClrlCuse4VVO5cNpSkMKT3NDFo5rA5/o7T0q1G+1VNuLNz46cr5T377/gxQcOXcp79+9/G9 a+fvXjs39/t5Zu4S+/Ay8/BSU7xnVhcGfc6p50JsZQ0WT7xWPjW5kQPRW7CbizMsJDDUBtkEYGGi CcumODZBFoADl2jsUAebwEGos+EtQz1LQ+sQMNLEVqYOZAwPOExAKEQQAr6/4lIAJxo5XxgEYAFA GGMDtyvY5N1Wwe1QV12kyR5d90aTUd0uzX53mgWnmderC3ploafOW5Vi1KKmBq9T9LqM32MCnao4 YouGpg4sxWqxYIeBSa1tcN9Ds0IVFwYfa0U67CXtRHfXRhqNM8J+jhjO5g9LdpMz6M4dWa+IblPq lYtNZaldLuhtodfg+g1Ob/GUd2jRZOOoR3VNcdZh5PdUYMFscZ3SUktdNBoc4ADnbtW5fuXvuwuz RjOevG0o0Gz5kIek2YMvtvMHHs1Hoi7+hJ2V6h2n3AnlyGho3ulQfDZV/1xW/5wq/16R/1wGL+D7 PB2ZZsNXjwccJSNidtcrZBwBMcYchOx+wOx6zGEswEEc0CAydsPKTXrzk97CmlXcj2W6FcsTV012 qhU2qAdBXMvgcEjJOH7DZXYD/mRYOh2VdyNpzWFphp7JbLpiNnYS36GezQ1f3iSAcJDxNHMMpjvi l93i0FzagKMPoe0Lm07xaCBvw7MENCcckFnJpvaterDS0jace1pZden6szWq6xZXHAIFFnXJ+SJg MujmVl0O8b8GnIZgJW7FKkAj0UDLykOvMm8o90z1XtCYL+d/azB3Fq//eOHrf17+7uObF766c/ks P3/lwY0f7l79dunOzw9v/sAvXG5Ld536kl3DygUghQ5PRXd9JtHZxGBig4m04qDP+K38UIfeA1Tl qMXAX491AUDwW4uJxtA1JV3ObRSCNp3HhvQmQArpIgBkaMwK+dikz2ffISzgD+HFUZfowGtBKdET +GuahmGXU/hfGjjAAgt+V3Qg3rIOAhoRjN/VBLfDWI2c2yx4NAyct6usWctrNEN+yWoXQvxFV/VN ydUFF9K9BfchhJTdUyNdpXKjDtiHjXrFuCeQ+8Z+Djvcr0a9KqSOhSCvFa0aQMcFHeC0ZFVFE3+i zgIpWgYBrcWZHdGEiGpwHs29zMZ0Z1O+vWyaq9niaZp9k9PwVthksoMso8rUxIX/YOE0FbN58ko2 40je95gdO79t5fC474EpClv20raT2w8KWHQcGnHZxDweMIER/lfGCM/G/ONh8WTA7AWF3aBIM2So wZk7CGnnJ0aI6HwJKDumlh9pVsi07eTx5hv20rK+sKwtrBq5dbu45fMrRmHcWwId7ATwqsyKUdyC cLKpqXnNKqyahXXwiIc4JxJBtGdXyBF81mxuGQbTREwqYIft7DXLDoO1BkKJ+c2I3wi5nYjL8tQA WmHHy+6P8LlMccGBspuBsEFl3tLEhENHzMuAwNSEP2UhllYzoI10hB/+f3+Y9BYPxyAIHliAbZnq Ob/2wKvND9r5YY9xK/N+bTFu5dzqQ3Hul+KdS3NXzt+6+PWVc59c+/Gzhzd+4OcvLd27cPfat3O/ f5+/f6HK3pAWL7fEO2ZlwaYzpQV42BE2fFsYWdxAL44dbuqJQx1xW4A6wgpbTNgqzrAwNOAr82MT fDHDQt5rFGEZJlRWB/HDkzuA1yb3wRIWNCHKkhdZzYYKIGSkIGWNPNm4SKopooJYOpuyFOqPNind BiyE1IZTpvs9AZMeP+vChiuHy/ZbQtAS7SZDWKgvGQAI2MRWHE0w2qzZ4fQmAzjQyKb+X2dKNBaG 5vPgsylxF/qtlGpUqgEsDM16qpezVrgSzEXcUbGCpuI2eeztg2xeMaSRo8kzZ2G1+FkhX9CB0RZn iT/8CSubhww46A2WVp3rqLmmtNCr/J1fOB1Kx6l0kkpZPzKHvfo44k8i/tBnELrbYH9jcdNa3LIW tp2lPb+wT+OSaD4MxP9pIlLLQ1w8ifOng/yjIQtbfRDTtMknE+Uw5vEa4OUwAwLdVBtDONE8JTyh or6guBsUNt2lVXNxAwD0ius2XcGwYuTXzCLWqlFcR7Rb3LJWnPTz+BLWZt0qTrTcuJ9bNYubLr/t iVBH4AXwyKrFbVLLs7RJddQi/a7Lbvh8JpDYZa8IgbQVQ0exY21hO4AkK6wYOQQwzeiDgwjhJuCO xZ2YDDJU1irk0IwOqNYIyo2a4MY6QyNlTGiMhaG2tOoWx9riCiVTmEF7Du7AKT9YNviJIXSEO1Zp 3io9bPM31cXfFq7//OC3c3O/nfvt3Jm7l799eOO8lLuSu//z3M3vcvd+WLh9vnj/Qk99YJQfWtVF r0l9NwaetHJBN5cY8M5QSuzI5sZ/VWhzYRtYYJMeP6LCPCHuFZM+MzRFsAZ+im1/SA2YXECj8ITM MssJ5EqfSXVuoHF+mxwH6GCgSVTmbZYmVhlrSI3PVHEddoUsvIv4JCAFv0s9DnRTp1XGCnVqnxk6 ZAQG2VEteARsMuiDgMpRX8pmpUpuT3Azte9h6bLbl4AFq81RXRxdI0KNbF4PccsMNXxOHhYeUIq6 atABIup+W3HqQtiBqAM61LAlB00palF3A9gEnIII942S3ZecvmjS7WxChgXRIfHGem3qj8DnpBa2 vgyZZDRZSDuvp0AjmaCw//LOs2nYu/5f6v1RIv4BCzBWH1ENBrbuwrad2/MKu15uz88dRqSadv3i jo/Nn3+USvDFu97SUZQDLzwaERB2/MKWm9/xCjsuqISBrXg6VmnIZALUiDtOcd/DX5GfDlVA5jBh 9qPitpff9gs0/s5j6KSIctnsDnZ1i6ZbQCZBIO144h65XWHDZiZ9uvEKrLEfqQDCsJsbdpfGGgKb 248gnEqz5BcAAixsh3T/2gY1JhQnThEyad1jVqz8bsSvmgBdAYZ3w4EH4XcBBFCDWdwOpU2f6ldh QEAxK5YAFByltQ1XXjaBO2GiU/6O5r6CuaiQg8z4isVM9HzYnEs7uU1PWbPFvvLAqS50hNuV3BXm zo9Xzn1x79K5Gz99efuXb+5c+vr+9e8Lcxfn7/7w8NZ3hQc/yLlLpeI1ozJnlR+GrcIAlrbHBp08 DeLoLCZ6Ie7np66IBZ0/C/UUqrsr4JGm/yHyaWoHQ566kRv0Kfjhhd0GAp4xqzAdRTov7RS81lLU LdD0pC7eZNbdI83mYxAc7MrYKoMaAqimDjdrC6XeBEsFEKjrB9qJApgm92LFZtanCWPiUIMD1en1 aOQFpap1KCgxu7Wk6BM0ZIh2qw2tMusDpaw3lgVoNBmnkXPqi2Z1ya7ngrboEbNA81fgC2igU0dJ qJCvPMRjtxQ2Ja/JU88F9aYpAIIOcBly4tVomr0u40dmNQ+d5mfQCKgelaYcW/Snxcgo0ZzVrhz0 FLsp/AcLx6kILOz41LY2K7o7ibMnVI/KQSPtuoUDbOAuSCF3PKCCImBh085vQT45+U1zad/PPUqB I7xg6YDuXGAAhxleDiKWRkpCFEUADo0UOwqFRwP5X6PSaSTR/L0xbAgMyGxQEr8TsNvQTpD3VpGu CnXxwYTsUl3ggqe7rmwWnmLNJH8NRthwhKleTDtLE62wbDDjPnw09f4vG5BJKnW0uRxN6qZLdpTt RNlKZLqakHy3CAM+6S/i/SHDdkNqxsErgQIgImtGoGafTZ+c+GFa3Ysqa7aEtR2UgIt1uvxanoC8 PAEWY9MT8Ftpdz7pPAQ1bMJfWOIUSgb7c6fgwDhUHxRvnwcQbv78ze8/fgGNxN37RVq88vD2+au/ fDJ/67sKe0Ur39Ur97XS/bAN9ZVzakuIauzhE1tIjeKyRzXkQ5Oh3mpgga6i4JOeGHcEwCGhwY/Y k/Nuc2lASKEGt6xCj4qXoP+NyhLEfKIj7BHehahHWPCbBXgKDyqry89aEoYmHfiHlD6TAJABtUVQ gd/ULY+dcnYtlGS3WISxSfeVS6ldGboVryfYeJMeVZYO/0o0UBou6ssDXbXp4gY2uz2QEgfQMBZ2 5g5vt7mA6mAFv4fvUM2V3Vh0GvmRBXdf9lqCXmUtAKEOhwt6Ur2W7NalQbecdEt+Q/RII1GS2umJ oVWK3UpoqVqLyo08oLiL3yr4bY7+RZqEj6rVixpQCSzTZUBU4Go0eA/k0v2vu86DItwuNnAanZ3w u25+lgsAFiizFuR33fkdd37XW9gPcocxVVBsAgI2JZ2pTtsAcTCnsfiIpmpzeyF2cliAxewuBhpk RNV6iXxC/cvyaaI8TsE4Cp5nhUbS6VjYHzC7oJuIAZvgnQ/oyhKeLnfz+WzeHbPpCDsBjXnZovoi DkDIungkLIgiYGFCjQPcBjXm8LOezYnObgd0BrVmZ1mwQNxO1K1E3U3VnURd+WuCK12VfhCXAKhN V84shkQ1qw6X5QuoRGrdFbYCgAuWhMYurTvSbKoStv0tn0r1Vi1l1VbXbHXLLy3r/Khf3ItU+hie lPZylIPW81F7wak/aPC/d6Ql4eGNxRsXmHuXpYXfKszNxXs/CbnL3MJFKXe5Kd/WK3N6+WHQLsYd xq0v+e2lgVbIGCE30PIThx9oxZjmXfyNhYlJcyrIckL89xigABppAFNsUsKLJlT0BIS6DyFE0JAg rtxmLuwWCQutIsgiaAMLMMsclfzhVxCibX7WB0Q1fhrshrLsqPAUWSM/CSG3nY1s7dF0bsoXtHiz AQUlxqADmn1ElRKpUabetL7qtUW3hd8C0dBlItA5+A61OWe3OQQ9Gu5NM427LJV/dFkAJDEUCBuj zkDtGzV4ZKrWcFsyTTPr4FGwG6A/ASRFxXuaFFklqC+jzXg0Klyg3lW8Z4vBvzro0pBA6t0DMWkK nAI0ElWA4E3asA+S3/17PhLNwUPMRwhajk44Q4bKJIggshRziD2/8GhYPB7kD+P8ScoekKQp0IWe HgcgbFnMYSDRtAoqtAYWigDXtks1GEQNHnMUi8cxdfFn51TyH5Pqn9Pa42HpKJJ3A4Z6SCNo9fxe xJyk4qORfJjVe2/B0tKF0dRfsEGzLGjGBYjgKC4dD8qAxqiXwwIQNl0a7bJuCxBIw25hqsMLwNjm pwYLlzHu57F7T6grR1zxhfVQxIIv3qPR9+W9UD1Ja/txZScsr7oKjQggOmCxyR+PqruxumKxEwOf UMUHoAI/k6TRTkYNQAQBwVK2vPKarayaEtZU59Yo76BCsMXt+aA1NzYLKw6TABG9fEdc8ur8/d/O Ld28wN6/uHD7x9z9H5mHF2viTbP+0G4s+O1c1C0mPZoY7DfzRnXOay1CGo1tFh9+bEMqABQs5NNI J10UtOjkZ0BJASFrPWYR5IASwhvC28de3eGp1IdKKfioi+f8xJYTjZSSCxuSvcxu5PXyotMsUs8m wUpMZ4njrGl6CPhAjOk0UsmlyiXGbhbtFuQNm2GBp6tMWjw1YGZNEGl2hw4WfCvsrdPAxxBTrTw2 qnFX9Rpi0KLTTr8tWnUGYj4gNlGDvuhmRYN2swCKye6oEtxs2w8JO9QHrVfxU54SBzSamIeX0So5 6veERuoJYASjVQwN2e3CArDgAkqaExYEC8YBkgzk2OKcruRQI4+k19mWmutXmV6p8LdGGrD7QXHP pzttMzpgj6CC3Dy+eZqwx3EeXuAkyR8Plnb9hV1/aT8EELCHwyYAONLpoHQaqweQ7j6/69ENnnuk oHJbbmHHwxPoKEpb7PscNUfHEiBwMlCIIIYlGqaX8rPLyh9Rwlo+SoRtElfsbsDthjRzNTs74rZc aT8qHcalvUBe1RmgAKJoh4bpqZQm8yBIissGi8cVusSHnWZrDdELFDgcJc6MQthbxOPEZpZtjkyx LUw1wE3aAgpcZUKFpkWa2hQp+wN1xhFwDWOd7j0ZaYVhP7dC3lykETQuTdubGsqoJ204lXW7sqwr G3TLG+BDk2oGnQUw2tQqpP3FVFuKe4st8feoVdSlOXHu0t1L3zy48g1z90Luzo/S0m8V9veOcgco GPSYtM/+/0y9h44kV5It+Be7wC52Z97MvGE3m7pIdpGsyqzMDOFahHt4aOlae2gtU5cg2Y1ZYLFf u8c8+w0buAhkZYVi0c61c+41OwYKtKZzTuyT2L3FqSuAIwEOL1jIBnzUZvGEtQ8KDRRQ8w5ZhNFh KagOZCZx75cDUjoXAucZ5kCwtRwL0AUQF3SONMFHYDe2kBE07KIh2PVAoXuBgQK5vaAaJ/IcWwUG RPcyr1DNi1SphG8WGLOQFlk+Ii90FRriY5Gx/MSFWKhnQy2hyxE16+Pj6ku3MUVq6OtxRw1aUkq9 D3mlk0NGGWOyDqi+lFJjERaQgFxj7NfHXjMCFnrayG5O/ebL7d6YaqWQXDTod69PZ1OjIK90cnWQ N2Bhmg9MGeeXekg9YxLsCrCQz9XSaA01AAHCORn+UY8EagQJ8CnPDr/OoRRUCOSHmMcf/2utfZoI 91HxKSsBCx+m/POYaBK27jtEKWh2Sh6PWL9OqekGWKBB5wQBHkD4OKMGZ4JDJAELT9jqA/E2ED+M oaNrxJHWtV9XNPHwYSy/n9HEz8eR8juVM0EjkEvk3hdPsUoVSvMWFDFi+xCQlH4a14CChwwEHvpX mQ2Z6YA5p/rDuLbxpPGABRBA9beeODfZqckmvWI2LGcmM/eFTUSFPXu8MKysbYnGI7qAjHFOG7dp 9WFCVgCUAkIFcHiY1EB15ha7dgXo6/uRASzgCcACKfQY2aF+m7R2PvJUhZhS2jxQ5R4XNC6gHcLW xcJmyA3AZKN20apcsT99/u7b/6Fef+sa76R3X1y++tfyz38Sb765fv1ZQ/x57evk3ToQ9lHtcd7d jxBU8iapbBMV8jkzubkrr0PwImMDxmJC+dJd2C5urgMD6eDlbxdeJWixWV+aWnRVF7Sw7fOAA9AR dQAlaUJ13QoRKocsiKMeH3ZIsea6lSpjobWdOjvUC3j+i/MYMhE1EOW1QzOvmt9BV1IbTIn4ud9T nLbkdVUqkLaqblskf78uFZxDzsxtY+nW53ZtOqzOLTyC9qtYU6u6J4PKxiwvjp3mI6uQZYKhHA5l Gow7VJ2u7HSwgUt2R5l4nUXcTe0a9fq5lKSojc6rm03OQyIgl7Aq/sppC/FQ9Tsi/itS8vcgXECe BDkQgAgaxdhTEzA0t/4yQvqf8gLF/29zygjvxzRt7bcF+JJMQ3mQAmL2MWbej7hPM/7jTHw/Afnh DgF3nwBB1H32nOmPSeUhVrD5nwJKB78taBLu0ecOPnsKoSzEk8+fAwFPABBuQ8LChxFeBebP342o puJhTK6quecwuVDex9I5xAepz7nry11GbmAI1PeT2uMI23jlDFYfKjtP3HnSOSLpunIERP4+kIEF 7OHQCERvPAFEJe0Vk15h7osvPhi7VJnb/MzkFpawsvAOlYUprd3KbdYE/5njlxDgqX5H99fgRXhD cUtnsyoUBMQ13azRcatOnUEudETjFNVmQ3k2RFYydn5142oLi1kiB1mlpc0sHdarX8btwrDyplr4 6u03/2e1+C3z02c3P/xH8fVnSBBXP/znzes/8ZdfV8t/rXM/xW027XJLt7IJdSq3ANPLqqtQmXvS AakqBWmBxm/swtoSQPBrVP9DLWzYZoW4x+RnRHQTl3voGVMLnET1GlzSBXFSxlANNGEHizLI1IVc 5bx2GbJ6QnZelCNGpuq1OLtWjjoincci5AZUN45MEUPzDpX8xk2d+JUphElYxR6OvTof0Em1PZDJ SBM0hYqOeQ3yK8tnmoz6lbSrjgc6WOKIWFM+9Cc3dJoHwAJZ0yTD/EwpxwIhwgQWpHx+okHjmKGd bRr9CSD4fSo4hwaf+vUMET5Q7J4I7ESmGhHv0kGfoh7UkBr2pMzWrTYfDCupa7ikF0g+x6aeD5LG J/5xjvRAx0Ty+5H4cSzR40T6da68n4Ko8Lch8xByz4nwaSJ/GENEc/cxdxdypAJm1CBwGyk7MAeX h5R+P5apFQ5beiQg+O+AglBAtB89bmeXDy6LvICFHPGYyHehdBtI1B89pmnpW4/d+xySArBwh7QC WpVCmFAzwn2q7Xw5P9s0oBcABMDwENAF3B7vABoTA0rGAZqaQEGVGAhgcn0JZApI2paFZcCvYmkZ Clhzj4OeXVgsiNYhgMCpQw7TtNBAn1tS2mUPsX4/aeATt4GMLR2wIhuNtALCs3TptceUjPgAkF0A IVPfBVDQdTCljYtMVH3IOmuXnw4ICKNewdR+DurXWYdpsD9Kbz8v/vjvpdefvfv+3wp//eztN//6 5qt/ffP1v/7y9b/xF9/Wyq+H6tWoy/uNkqVfRR1m7MpjMtCmO4Xbaf08re9i8JbKwtHWPv6Tm/u4 iVgCKZo5Cl03++om1OiU3pJfjluxLY/6UB8Kjddxa8gUeTeoGDa5pCdMXfybVOYe1KWEBJHnCxU0 KelJuRIhC0qsyRDbO5kSz/068XBLSS0xtamUbuLrIekFfeK2UosKTaOh7nWlmEq+oeVBt6S4J+bU S5uY1akFLgrhUEv6ql3nnBYXQ/DmuoMOf8z8hgK4AzQcquLLi4hqidWKhjW3q0H5JuBOTsXrkcFs PKzMAjL+iizN6UnAQgxA0bU4OT5BXE9zP5mYKl3FYFChew2THPZSp+b3VKslZrmTwB/nSNRfI34c SX8DQSKmJH2ay9j/309FulYAvUnEX0GfSFaTxP4bjbhFWCpbhz34AoIW6vj3ZZUupjPpZfN/psZn Lb9ZhgYBj6oAIIDGweUODvuQY+HsI2UgmMHzuR2wk0FrgCZRHxBe+Jipd7G8dfljID+Chs1b9yNK CvkRK2SydIrUu1R7Ghv3+aXzzpe2vggsvAy9uoXS9ISVze5D8WFazdOBPA/4RcAvQ548MfJ5iEAW OezFEAXyzEKoqzNL3gbaPtI2YFmj6v3EoJiPacYoVv6DQmVL0+rDrIYPgrJe2OIxru6DatbhZgPh GOoA6TYQvNobu/rG1t6mHcbUrqTLr0s//gv/5n+q11/p5e8qhR/ld99Jl99ffPOfv3z178xPX7X4 tx3xjWsUvFoBqJyaYjjglrG+G4Goy4DDwldWgXrM6se4sfKMlVOlzZ/6PXW6R7bETaDuY8Q8KLow QTSalclQi1pC0sE/TnPl1JKOOBmo27A5tyGoQR4kpJ65Xwm7rNdm4jw7QGvPnOrL2VTQ5L06+2Iy PDH1EVF0NTXF1BIyWxx7KvLCxKNpaDHIxsAYOc1Z0JpQExz1E0EIUKlST3qZ7zA2q+QJQy3SdE+R WfrEJ3v5yJJDSwKtGtNNcQVJKhkI0UAEoBJTs1uq1ag4bcRzxe3IflcKkRQGPIgfFAoi327x/lAN oZFNYEQEEu0m94KFvF1O9wgIKrGjjuhD2vTVvBJDtpri2G0Awn9wJKqRoHmF2PwfY/Y5AxeSnifi hxnF9gdyNNV/m2qfaHyV+ttMf0pl4jwhUCB/mlf/vmp8nEIUsPcJC5VxHyG5UBE4Ap6GeGYy8sJ/ p4m9y25t5ugilXDAwjmSDiGIjXA/Uj8tqk8jFegAyh5T5SUvvJ+S2/wpogOcQ15odxuryBQAxadF EzrixRzpKbfLO0R0X0ZGGRkZ6FGjXJKPO0zkdSRuU3mdiKtYmHns3GWPifww0Xc+Ph3fQcE+j3Sw C6srjxxg8qIj/TyqPs8b+TGUiAUs3E91QOA81vOCJeq8vs2qBByvMs8L5B6y1tbTpoPyuFdK2zdL WwgbN75x3WRf+0axXv5KuvyTVvhWLXxrMD/XuV+Yn74uvf6q8ONfKjc/OlopqJfjFmNWLkc9dhNo mSsnpjANlDnwmOpzT57a4ozEtQYsHJP2KvfT3ie1NdIB1dOC/klLDzJZWXkg52Br1Y3fnIMStESv xsZtcTr8x63EJjSmHkKrPLKlVUht1FibqL4JyfiIClbza4uFA7Ggj/pq2Jb9Ng0GTYYCsBBbQmRi SS6Cc0At9l4XrKO2jLvLuDX1yXBg6mkphDwESO5FNraqdOJKvpFVhDFdUgzkyFYTT4scJejIU7MK 0EVd7Plc2OPjgQS2k1HPWgtAAxa8Dv5BACLJ75R9QKAjgY+5XZmYz1Ad+7XE1tyuCMECLAAIyUD1 oQ7a2P+r4bAyCRqxRe3P4UCjTiKz6nYhdv7gSL9OKx9H6vtU/pDKT6BAQenTVPjbUvx1xv06l57H Itb7KY3yfMqk/IYaAhlMPpe3VOxdISOvBIAyPs2Mx1EFEQ6Sc8L267N3Mf+QYP/nqIojEnZuae8x ANFtIh0CwsIxBB3C9k5NaltIjEg4xLSe5/qHRfUQgc+DgMlPqfoQq89T4XZUPmXlh6n0TPbdZIvx nvz0qN+BJikkOjXp0F2wuo0l0Lm7EGEvbBJxm8mHqbbJwDeEYyyeIvFprEG83IaQRVDr9Z1Px6fn kb6NoAj0W0jjUX2X1kC/twgVT1255Kp6O6o95dMVqTs7o9FCW49k9adli0peI/UcVqJmMeuUg8bN bCiOe/xQe9fgfjIrVxrzQ/nyi+ufPxeLP0ilH6Xi6/LFt/y779k3X2jFV2mXh3D2m+WgxYDAUCUq dI3FLyCFInUXIf7B0wA9au1c5VbwC6+K7X0bG7tYpyINV1hAJSVAjTp3K/kz68gONIcOsTFU1051 79chbVaWdoTisBTksokpLXxtHurTUJsElYQGvZGP99ypLSxjOTS2iPCePulhV9epkcGURo4cW3ww 4KOhjGhMwOT79bjfTIaNsU3VFy9dRRNHo0mLIEgOWUFC6qaIwAH5LE3y62kkAhqDMtQg7cOuTEdA wIKlJg6N2bXbTGKBJRpkIDBQY9rSFWqIc41BR7S7gt8X3Z4QDBU3J0hgUMCF14N85kjFUCOGGrQh dtpJx8hotpfg5WZT0bCaeY3M1+2B6Jt/+OZR0VHAP0UCrZh/n/G/5ueoHyfsbwvx14Xye26d9/S/ Bnp+mmP3k4+BcArJd+W3eeP3eeN5pJ8CeQcKFFB93QsW7lMxv0FDEmFvoTISAb95yKTbVNoFHDTC /UuRdiDdkcELtln5diS/9KydUxnrNpXxHJCle8AhAbFhTqPS7bj8ABW/qAAv9CqSD4hJg24Zknyv JpdI9Y7qYOlQ6y6TjmR8pB6n+ktH8z4SF2aZ/AEC6YFMBsgi4ESDDgXquR5pWzLN0E/j+i6pbSIj 6bIbv7L28c71+3F9Gyj34+rzrLYLeKD1ear9vmp+WjTegzVF6nTATHrsKa6uHeSL6txUQXsM9q+O cVXjfixf/KXw5vPC2y/Zq+8uX39evvhGvP6+yb8eVi7DFhN3WL/FZAMpvzWugLmROyuwQHNSoBG0 3LWyge167dOIwF2ItGWcsvrMFtJBeeaD81S2aTX3GYY+1Weg4tgwhxWavxk07rLuOWlvkE1M4AK5 jJ8OBbztKu8yGHmVMSUjbUxujY2F25gPCQt7p7kb1BeDWjaoQj7Tpt1n3W7JAd4HApVYdCpOQ7Hr itNQgQuQk3SA9IEkIpB0JYNuKrem+zibxtoCCynCG7KC+hcqMxNKjSaqg+dDfdgdoEwe07BpsiwI QHs6oEPqPKhBXDttHkrZGapOT/CHktPjzTbXryPCZb+v5DkCqQokSgUWvBbUSmU8qCdtPWwLI7I4 II+dyCQx7g7EyFW9f8LCXcDtreJ2ePMQ8O9T8QOVW7C3UenDhP80l55Gwl3MPqT4ufJ+ohwD9hTw DxSi0ALU9fCYgghpVDsUUBHpw1i5zSAB2K1bRuR/oJIMKmGi5ugU+QVaVTnHIiBzT8mFSoywnT6N q6dYWbsIOe4E4TADySE/7b+tG78u6nexgqD9ONIfRkgHyvOCJtjepeqvy9bfNr3fVl3SzgGAo31Y NB4nYPvCIZHuZuBp0n0knhLpNK4cJ9ou0zaJuqZrZXHtcFTOge/sK3sPq7L3NSiOpcNR41uinbLq IUFASmQvnNXOWW3jq+fM+LjoPM0aD5MaDc+aaA+Tyj3NXkHOIhf9jct7tbcLqwidQowuBWSafuOy Wv7CYL5oS39Vi18X33zOX31T+OUvpV++YN58VSl8rxe/c6rXwAIN5bSUpafnU3XUuSWu8N1i/W5c P6bGOoBgr5EDRkC0B1v9jGaFGEu6fRNWAfBeW8V0OjT3tTVZx2i5vaSx9GqntLuPWpNhJWhwSZsH FjZufWHWF1Z9ZtVprlnSn9A4cmhVNTZBpCF+1elQmg2kJbR5lx+/uKFCXztUN546Ag3JtcSE7DX0 sIdgJleWqKeZ9bLdKFiN0rBe8rsC8kLUV8w6a7eEsWPkLTwS2Es6oAvuCdWQ6HjMG04lryu+uAVi zw8G4tihuXJhh0+H8vzF4sYll0tvqFgdLhggHciI/G6tNGgwTkcMh5TU6CtZmtvmwLuirjIa1NIu kpo2IlEj+X0BXM4fVn1k7ajq/1Mvz2PEPUaUFx4hbz327LGPCfKCTLcMCcIe2zt/wsYec4952Sqy w9OI2n+eckMYQkRMdXRAxB0wkg+WvaOwVz7MlMcRni99nKn3ifhStnE/IiyAEZF1EjRsRJcIWecm br6bDkrYZu/HyBHkd4T8cp+oe1dYW+zO5o4ev/VAkCAuZGCBnjbRkFMQfvc0BpTqi2gSeirfjeTz SLqf4StVqLQpV7uHjKp6QCSW+a5+itVzXNl78i0ijcZ9VleOug+RjCrPs/rtSD8klWOqHVP9edm5 A4latLeB+jCuP89ahwgfXUecP83zMbszcjymqYgAUSDRQFIyt6zOhtzztAnV4Bhva9xXDeFb9eZL g/muIfzIvP1cuv66yvxYY/4qX39rlH4I6sVxTxj1xfFAmtnaNq6vw9qWrhKQDqCIdZrPG+CRmv1p 4DItaIHahCbzCjNLgNhPhxyINOIw6LB5DaoI+r2h3NF8GVwO+FBPBPZYSxv3tLRrTAbAQmPqYNVB qvOFzVOdeUgWVZpe51ZWtrIwpbQrhB1xZMpTqJJQWUTyPFImvkLDyqlHwAj7mteWPehTEP4Bl0ER Y0tvc4AGItyn34Pni25LAIEHjc+G/yiCgh7JenSpAWFOfgKO/nLFgLwQ59MV6bx3CGUtp30x6omp rQEpMaR9bnGZ4gv7tdTRkE2QVjyAqI/n6H5XnPsNIC7uVtwGvonqtlS7xeHNZ0F37LX8gWB22U6V /eMcKeY+QhQk4vtUgkCmYyVwlVAYd95lrYtjwHycKdAL91Ruh8gByedvqSpPpg6gEYKcWpURtA+I ugicgTnG7P1I+rSoPGTiyrpeWTd7rzzrX097Vxu7BBTkYxT0QyStbW7nCVizQWluModQej+tfpzX HkYVyISti8VtHWgN+SGunDzpnmpH9Y2LvAMoQVNrWxekq/p+poNxrV2GbLoX2j3S0FR5oKpyfIfK iaRxvs9nxuOy/WlvQv/uI+Wc0Eyr+6y2D7SdD6HReoQMn9Zym24VcuC3befDqrl0+R2IXKz+tum8 nzcfJ/X8Rk95nrbB5Z4X1f86dk+psrJZ5IVPy0Y+lrr6ONU3HjMdXA8qr5Sb/7SrP1rVH7vCD03u +4H6c/Hnz9iLz4XLLyo33xrlH8JGMW0za5eO/ccDbIDVbdw8ph18pW2gzywpZ0fGMQYJbByixjkG z6mtHGPSV7a+cZvWIfzjTtFrFdMBD6VA7TmOPjJfJoBUZ7ZBQ3ZsCG0aVgsFkfZlr8kitCY2BKac mcrcr2X5wJ1FQHNmRyZ5pSKhQGVnPWVKG3glb5pWpw6EiTTxhCkUii+njgpKP3brwAKYydRHbqrN Qw2AokpvU/U7QtiXkA5SsxJ0JQsbeIvLYVVJepJdZ8IWv6QLdCoUoeZolwavT/zqxNO8Lh92+WyA /KhNTBlKCjkCrCkaAoMacOe2hcyB2GmMvCqC3B9ITof3QJyaLD4IrAwpyWuJEbhTWzWbVLANKIV9 w+tqThfkqhD/kw/GbVB6jLmdXTx65Wfs6gEP2r9DALj8Q6Z+nFNLzgOI94j87sBw7jMZegF54Tan OtR9kyi5hWnlFhkh47FuE+42Zo9B+eCX8PN9Xo/xt3Xt93UdjAJ7ft6YKZ8iZYdt3+Y2Dl4CWFF5 KoJ/bTMriz3QxZwMVn/y5aMn3WJbzmjELV174RNJbitbl6Xls4eQf5mW+Dir3E/k01g+ZtAsSG2V Y4jYptsx7JyHtHoY1XaxCiwATTTlLUbQqhtfu5+091SwqpNx8dRANgGVoi7mWHq/gEyo0hpV30+b 72etU1S9S2v3uU3Tx1XtnOLJwiEUNx7kv7wLlWMsDyrfd5Vvh9orr/5653NLq1y5/kK++kuD/0Ep fM1ffqFcf1MpfDesXNiVy77yNm2zSArjobLMO5TJIjtuQCDsIsCzdohruxAf1DzHzZ3XOEed5+kQ /H8X1O5HzVOsLRwJ6mbmqklfIFIxkPPmZZKoM8dAMMQ9hZp03NoqaOD3QME8ILe61JQzS30ZrEDz 0ZyXOYbkIYxnjk3Nb/JBS4i7YkLmGCKVuRIchIlHWEjIEwABpsemllg0ad3v8Xa7ZDdLIV1h6Pl8 ByUakBETWBDg4LWFvl40jVIA8t9kwzYft6knLu6JAGZqId1UY7rFIM/AFIAaSHGHH1OPnkYFUUMV KtttiWFPIdKVl3/bbc7t8kgKHvErweuJTgfpSXXbvNlgnSYLgWC21LwqSero3KBGU+C9Duc0hf/G wn1UvvWLjwl/G7BPGcSC8hCr9zG1DCDj7/3yMeQgE5ARPuY9++A/O5fZuszOQ7gCL8rTOLeIh+TE /m9ert2brVfYeUVg4SET3k+kfEK69kwznaVT7np6SuRdIL5cHx8DKdfdwspk9mSFpCIpUDV1WnnE fu5LO0dYmxy+z9YFodLyYlH1GFHL812mbFwGEAAMT0DiWF57zNIpnaDQxwr0y2M+EvppQlVGgMN5 Ut+n+inLfcnSysLijiG0SfMY033u06hKZpWzGl64dBho/N829ff5kJR7ZMAxFSztfSrP23na06T9 cV1HXoA8WTjMr+vG79sGJM9t3igHHDnG67lVRHY4xSIYYFi/aLCvmvwPtvGOefNnrfy9fP1Nnf0R cHD0K9e4jpoMaNLKNc5Zl+h90jnErXPWOVIuqNFYdk9/nHR/XdrPk+Ft3LnPeqeweQxrh4CGMB4i feXTrUHco/YcUCMayoNgaHBmlfFbiDSFCENPzq2Aq9SG5siLWIc0SC2a4ZsMhIn90uNA5zyjIaR3 Le1rbkMAx4DUHQ2UjOZBi2NbCgfY3gtOu4CImsfNzag3C5ugN9h1R25l4lcmLlnh0WT2vhwPFSyQ lkGtZDVZMCW7wbgtFoQHsI06glMrufUS5SlHI+8mpxKBI1GdUiXqSy94iQiMCuLfaglOVyKTMbM6 to2gJ9NHmApUfwhC5euAZ+pU3Q4PMW7WSyQcerzVU81OxcfXGEhWU0VqABu0W0zS/aea7YQBFg5e EVjIb8REROZ9op2jSm5JyoIUPY1lpIZ9rohBhO5T6Z5aodX3E6JJB5/HTn4MxEPIHqLS/Qg8WXwc Qx0IH6Y0ghzwQRLBMyEoHojbkw8kOVFk1G6z80Ro2INPjWznUN6AOLnUYoOfkZuQER5j7eBKexcJ CBpZW1pUZTQfllZ2+Tbmn/My10PIkaAeyYdYOKXSOZPXkOGh9HFqIN1Qo2ggb0P5ftY4geGA2KfK w9Q4hND72i6gU5r7Wet5gvcH6ap8mBkf5savayBIhTzJNYh6SqnYIx/9aQAIv62Gp5H6vDQ+rqAv oOh1yIe1x5Kz5bQyGdzsQh7K+jaS0vZVT/kxqF/0pJ+q5VdV9nu1+F1L+lkrvdKK36vX3zr6uwV4 OJQCYtivEb33G3MHuaC1i5qboHZOGg+j9j1W1rmNWw9Z/y7pAg7HsHmPTBEZxyjvQg2NY9Yit3nf ABYQOQHRcg1RPRpqcVcJ2+KLtUXQEc1GwR8UEptNbT4la7K8Tomao2mMzoR6YcSgLcU9PL++DDoL mhUCwSumAyEzpWjAQhSMXXkWUntaXvCm54c/laAvEHHKPfqwjScmAQEZAUxp4lXDHvGlvLiugkQD LCDjINr9Jht1eL/Num125GrY2O0W63f5mJIR2dT4LQEqw887NG1Ij7bsNqE7JAgQZBzIlrGnT4Mq VIDb46lvzqGmIbAsrAi/NLXYbcSu5vQFuwWQ1pCwgEe/9Ydv3mNcvguLJ5840h116Mh0IhRUjr62 8+ho9KVnZ+eVVxZ2+zKgQbcGmfg8UR5GCGAwnPLaLu997hAy5xS7tHCbcceIuYfOTRHVzDkSQLew 8qSg7ENq5MTmeY6ljcNgIfJvY8BBXNvsbFBcmiBXwgsWztj/E2pw27kiZPIuENLu9aiH1MPufFqH gN370Brc1mMWJrN2+PxktXZL/QUi9uS7RH7MtD2VmyKktad5/XZcQfTeTbV9Im8jaekJezLQoGu7 92TordE9+Ej5r2Pn141Bs+QWOrgQvvY+lB7H9b/vhp8WvTN4S8L/bdc4AIPYFmi0ED5Uzfo3eLfz CAyq+TRuHQM9rL6rF75tlr/rqW9bwk8D5U21/EO38o6/ecVff1vjf3bqJezno4FEdREWVQ4cx+Yq 7G49Y2kjeSGHQs40IR8Ah8dp9y5rb1xjA1nhQTTVj1Etx4K2CWvrHAhUsxfUXoYYgg6NrWrYhZRW wLuwFQ+qRavO2C1+2GD9nhzQoSg+WpnSaX91bkOhEDMP2kw6FKeeuqCrhwrVIFFTAJEWCAGwiwh8 yassovqLLzfi/IW9QNKOHB2kC9Qrn4RFXmT/qET1jXw4dWXs0tVD0BVz83zVb/NBhwtA9Tt8r1G2 ukK3wQwQqJRQ9KivmQ0BZGZCBq1GYFbtrhJ0kPIAVSnAl4fW7vOZLft9LrY0s8UNGhwdrvYEuyN4 fT4YCoGtepYSulLTuGhXy3YLJKps1q9tQ/pnLDyAJgWlMyLKY/cud8hr3jY2qLuwc9mlWZj2r2aD awABsY2tGMTpHCFfgNgX5oOrnVu+jfhTwO3D8i4q7sLiMWbuUg5YOMc89W8mEiBGmiJToXMRbAie fSSSoVCOhUMgQCmvLAZiYfviDBzKt5G8sdi1xW4cSGykCRqvAKExGxaXNtKTADhs3HKOhfLGhfou LMwywHKI6dZs6ZA9yzES8ObgXdAjuXG9cUxUfPoBnGokYz0uIATAlzTwLupcmGh/27bJoxVscKQc IgEE7OOy+kDzFrW/b7t/3/aep80P887/d/Zvx9KntfFhqd9PKrmyALLkTSD9/dB/mNanAy7tlBvM 99XCN572Nqy9CztlAOHdq39jL74oXXwpFF5Vudd1/mevxY6H8ig/QTKrJbPGeG1lbNezjrCHRkjq d6MG5PM+MvZR7WHcuU1b56iBHPE06QMduwCErfn71rqbdo9Zc+VTbcbYVEZDOesTsYn7MugKWS/m jhbpkKrvnCbn9dQAqyvn9Q8alEXWV/wmEzTLcYeDNJh76sxXY5NPHbAXFYo77Aq0UWOrpxYGGfvw LKxBxr5gCljIbD13TMr7fcgqHIGqvBhUQuQCC6mj5eQHzF/CysgenLb9sCtaTaZnFM02H9pa6ued mwOlpZU6OuNRTbieOXW3qw7bkkftD5Ww/ZIvRKfFDOsFu8MCnm5XBBbMJm+1IFv4gDw3lGAoDjrl Vr3Yrr+zu0W7LfZqTK96iWUZf/QvnLzC0SvcR+xDwp989hQID2AC4EihiphcWcWtUwI12jjFo8/Q GSn1L+A5/CFAOihsncLBZ84hdxfxx5ABEPZR6ZxytymHJwA+uVeA9oKFfIIniHfl/Vw/pxICdR9w uwDPRN7hkFlexoicQyJLSBMnX7yP1ZceZ/xm7bD7kG6N81NZ7NLcOUaok2wBXhYmu3YEquIOtY2r bDxtCV2T/y1Sw/HlRm+kHxPlBQvbRFiF7C4WoY7vyL5Yf7+svV/WPyzr50yBosGCwKER1XPCAtjd 87T2Yd6kKdJp9QEUPRbuMvHv++bzHJqi8WnV+nXdeV40d4E6VC9s7d2oyy8tNaiVV6Y6kC+Uwrfy 1VfV0vfvvv93ufjKEH4qX3ypFl+FHdZrgi1zXfUtfj+oFqb5fJCNC3XWeBw3P656x8TAzr90VOjo fWA8jjsPoy5A8X7ee5y0n6etD4vuedQCFrbUoQDZa8wcat5Z0EC3xiZqkK8LSAu4SlekH/oUvTHd GsuIWNrw+yBFDJKU0yiDukAakHawQMWFaMi7bcZvCyk2ajzZVMcuHfiAmXj5nAi8VZjbFCe5eWlm 6XRwBH0BWjVU8n2bjjrBW6CLQWYm3j9s8KMcLAnEdQ80nrHaXGhVfFtzQfW7crtW7jcEsyUHA91u yQBvZFaBhZbBBiD/TZBAHmLBrBewQpA3Rx5Rj79OPWtWNXON2NSDAV1VZEHFHfBmt+APmbFX7+ol moXXZfo6999YeD8SAIRbMBmfOXlMXmik3sUKyPYpEI8eew7IRviebo2FpzGNMryN2QM4VVB8TDlI Y+SItX0DXJwi5pgg/Eor92bvlygjpOJ9IuaWF2puxESSAfT7aVbBfot4BrfZ5/TmSJ9CR7XIRHR/ 7QtYuSSv3CfKymam/cLCKq1dhpbDbH28kL9NxI1TooMvD2lCWLvk6zszubklQAWsPGYXsRDUIGZU 8hFD5lON0ybk505x4TPLgN0BU7H0MNI+TI2nhbEOhZlTPqbKp1XjOZ8T9F/7zt82UAdN0CdA5uO8 +fsKG3J9afE7n7vLpP/33H9pCP2waP4/BxP0bNQtjXqQzNWsw0AXn+P606QzUC6l66/ZN39+9+2/ vvv+37798//mNCEYb8Srr1vSL5Oh5Bg3zNsvhtr13DW2SXebdG6TRp4U6g+TxvO8fUiq+SBRMLHW 07S78fVRXzynzQ/L/tOMfJxOo+Yxa2xjar3ZxTWsQ9oAQLYxUf24K0Rd/iVfgO0g2hHzMeIT+/Y/ mj3phxyYwAKX9IW4x0MgjCzqcXDwyy5kRcXvCiD/I1uLTZUmWLXYl5GgdHFMIS1PbH1JRqkv1sT5 qFB8OlVrEBaQSjK3gpwCjUz5YqiQNzjNogKylMzTfatiD5RemwccQscILcPtVcJhleqrh7rfr/Sb YqfOey38F+lOk05o7VYp7HNOh/F6XGJXg0HFbIjDukhleD3V7wtA3zyqTiOoiVJgsvkNNUQ0H9ti 8E/1SEDBQ8w/JgIBwSf5fPZpdAhAcQcdDRXgMrchd089zuwtVEDC3tFinifC+ylUg/gAOhQjrXDA wiEqb4Piwrpe2TfkhpGBHYkHxK3HUS8Doj2VDyG/sApzq7ByCrsQVJ9du8VTwj+OZCiLvUu56Y6q OAgaa7M8GxQgk0mwj5VtwAELwM7G40Y9fApDbt4Jcod+TtS8WLo87pcnA2Zh8+uQWwUs9OwWnx5I jynAWIX0oJMft7SAAgrY+ynCuEIDrSJ1EwnHkbLPZGSKc6Y+zUg+fJg37olB0WS3u0ynmYk0Kpdq Pz7m89bxnK1HfaDvF82/7waA4cLi18TQKm7t6nHaOsRVKgi3Vfnq6zrzg3z5JfPzZ4PKhVJ+pTOv WuJfw07Ra1y1pb96jWunfg1xOnUrZBE/RKiTN+w2UHLvssbzon03adyN27ej1jlrHQGWrHnK6ick qaS6j6vHFGqocYiN+2mbOvXC6srXFp5G11W085Pb3ixv/4w6zMRmJzY3sfmpAzqEGJaTPu+2yn6b w5aeOx1VRoNq2Fa9JtFykHlE/qBWBATCgUKlDkOVLnlNBdt72IOmVududR3QlMMszwtIQ1Ao1LlG fqrK1NOmgR6bkMA8MgWN4HFo1gNhwdMyVx35ug/UuHoADY7t3TUgDaLcHDuxyKkeWHD6ahNM0hDM qmhWi3aT6eiXNPl3KAybhWal0Ktx3SrfqpRtCIpBldpRLRVIDHrCyBWtdiGxaI5nbEuhKXjdP2aR AAVPGRm/bMzCzi4dQIes4p7inxr8oSDoj07p4JX3Hlg6tXl+mokfJ/xjypwDEt3nsHQblh8T9hiW dmHpBHZEmaKYr9IxpLs5vBVkOCjN41i+H0kLuzAzr5bOzSFh7kZQxKBV0ONIMfxjJgE4GxsZirqq oTUAkNsYsAKIsO0j7wh0PRHJs2F5ZZORxUNafcyMY1hZ2uAkPDld4//vkJl7UH+F0eBmbjKnQL6L 1IMvT7vFtc8vPWbls0gQ4EvHnIDd+vLMZ3bA46TyjKSwbB5jZRfI1A0RV/aB8pBVn8bGr8vmKVYe x9pvq8ZTbi/wkBokqLeD9/PWh3l76QJHUCU6sLAJ1IUjrD0ZvwHhB3Ga9Xnmp8/Um6+18ndW7bIl vS7+9D+DVhEbftZnRgN2CXYXGYdxZx4YYauY2xqrK4+mv+2TSr5oiujcUV+2/VUAaSDmlkdQK5Vj apDLX1oDLrZ4mi2t/AoNHg2oChd4nAzltCfgkUxiAxFvu3CFqSOMTD7us36nHPZ4aquhMEYG0bN+ 1atJXk2OSRHwXpez29h+wYvEYYMhQt5HmuDAoMIuYFUh7+KgPh6SuMAKOkJA1UQydT2YUmbRbTKC 1u/ziSVPfX3i/uO4KR4II0dObMkfQOcqoV2hQiNs+z3FbAntfLApNP6gzvTqjC5e9jQ2aGkupEGt CNpvt4tOl8HqVoFWYVhXzLoSdLVkaCR0iiXkx1BCPBSRQaKhMfIadh98TAz+qQYjN/KSHyL+LuBu AyJL9xH3mIIpAQs8ksLaLGABC48plXM/jfnnEfc8QiIoPabl9yOQfOzkRaxzDI7EYh0i7hjSCQ8R GI+5S7DDi2BBe5/FH/dIBF4RuQCE6nbEnjMOCAKzWrsFEC1S4hAFPr8nssQcfBYvBEYgPaaD4rhf zDs6S+QJk/tgLE1+5xJBmg1L434BsnrjcysXeaEELIysIgKJdvWosnOkvS3ubCHpXKX9mzV0Sj7W ZAdh4gELyiwgLKyhI5CeEprjAy50l9UeR7XbRH8ak+/xx3n9LlHo6nyibW2QSeNvq/5vy94Tdm9P WXtIXsbDon4/QUDK2QAf9G5mF86piPQ0UN7WS6+066/SdpF9+2e3cSVe/aXOfTcelrNBaRdJt5m2 i1SncZ0MhbEtndLqDl87Um8n1Yd5/TzWT5By0/rDrH0aQQIYC1dbh9VdXD2PkQ5qx5TmsK98Ze5I 64BsYI9k4lQD0BaOvCZQUFnFi6Xwyq3Oh/rCMmZWdUQj2IjeJIPK2KmMbDoyDXsM0JH02KTDxm3W a5UQb36fCwY8tZWZEvUdDGW/x7qdYtRnx+QAqUzzA7FRX5qAGtF1hpT0pQhiocsDMkGflk9Th8TY kvPtWgJ9onY5U5g4Qmrxbo8x2yW7y7h9PsSnmJAkktvmrTrjNVmvzad0nQfRXY+6BgmNAf62aLUK 9MJWye0oYEddXRwY0rAmmTUpP6Ti3brg1kXQvGGtGA2IdzlIgkPe/ue+trxD+SESPgARMX8Xss+5 NN7Y1+PO21n36uizVHcdMHcxC0YELNzFxbu4ACycgpu1dblzr+/i8vuxcJuw+6gMLJxjMPl/ECSw HTwiKZwi/hRy8+H13Lze+qVTzN5PuF1UWHpXoFX7EEmHhSo5Bewx51TIBWQgQIUfUOXcFEE1BIL4 Y6RsHIH6jgN17yNxkFfMzpew+SNTLB0GQFh7DITtMgLZgGSQqf0t0hZ9bmeJd4EG2r/NWxLWvrAN pY0tHF35zleXMbcfU5vDYURzb+loNAYvIrNufMTjyDgG8tNIpw6m/PL992nvedTGOoX6XVL9bd05 xOrHZfNh2byb1daR6DXfdNVXlvGjU/srlMXTpJU0C+KbP8vvqE4v7hRG/VJf/WlissDdJpBWrrD2 yfsuGQh7sJ2RsQ3VTShvAvFxVjtmlftZ7Twx9plxN22fxk3khftZ5ziqHTLjkFXpYj3RAQqsp0X7 hF8CTbGem8HSBMYpMogprTwN6xC2TmF/ZTdmpjGhNnwawZAOZatRMhvlfDoP6A2b9bnRgBv1Weqe CJTMlWJLwPZrtRm3x0emnFhCPGDID99TkKGSLhc2qchwalVGw7xK1q4AC16bBRbioZBYYubKYw8q WHTaxLhA+HOhzca94sQVUyr5Ezw6HZU8JClHD+kcjEqS4p7odyiwQckgFsCRbCq0EKa+HFtcZNKr egbdKbvtqtc2rLrsNmSzVq4wr9tSwasrboM162VgAQIk8VTXBBz+qMHAtnw/Ec8j/mHMP0BHp9xd VD5DGruFk3d9jm/uM+YclQ9+mRR0LO4dZgHWMQAKiju3eAjKx5ABd7pNRez5W6d8Djls7HeR+BBR m9t9JJ882uQR4XSXh1zjl6CsT2EZwmFulcH8T5G098mw/RxRDQY9M5YOPolTKIINXg5Ja5fnAyQp YW2RUj4nMvXpxBKpXZsDFZlCMpvC1tf2gb52oR3kmVteBCxSwzI3KdoH6inWJn1mPihvbPYUSsdQ WJqlxbBMnkuphoSyBXHyWSSXQyTepuqOvFuVF9eLjasesAn71dlAPoaN+6z7MCUmT8atk/rDtLW0 pXyybe0U1n5f9Nam2Cx/N5ReW8rPrn65GApho6BefaW8+5L95T+Fiz85xsXKE5mLPzXEv85d8ZBo AEXYKqR90HVhExubWNsmWu4SBiwYv26bz/P6x037dlY/jev7rPaw6Hzc9k9j4wgdNNUPE+UwqWxH lXWsrUJ9lzb3aXsTNXMCb9DcNwuUSaXhPnjbpDr1QfXFZEAWxISFPjSFClyM+mrclrBoWm5fweN0 qGPPz0wmMSFRS8Nm0e6wPsBiKnFXSltS0pR82ngFvyP7fdUbQrGKfhdBi4yjR92Kjzfsi8mQH9vi 3KcBbWFPM2uiVZO9jjzOPWGioZiAHQ2koC/ZLd5pCWEfCK2GXSXOf8hMIx3Wgk4l6ulmT+qCIAEX VmXsGcM6azVB4WSnLZlN0WrJeIyGVa+jmjWhq5aqwoXfVevyO6vBW3jnYWXQYD3IHPOPvHCfcYAD 6MoxZs4J6Df3SB1q7PuUf0oR5NenqLBxr1fW9cYqbe0SHkGZViadte680j4ob/0yCM/SKS4tYjh5 Fw8NsboHFggIwtosrYZFSA9ogacRlb8+ZjxAt/NZEBtIgH0g7H1aTzRSR0N8Ro23o+7V1mOPkQi8 LBwWJH9lcRuL3zo8hAN+DxG9cMpTszizwIi4mYnFr0AGHHk+5GdDfmQVJnZh6pQXLrcCb3fFPbZZ Vzh64qxX2Hl0PpC71ihrh1s7JEPIZDhVlzYLAN6NKpAMWx+EX3yY1B6njWMELOj7wDhFjZWte413 NOthXJvb4mTA7sLKw7hxjKu/r4Z7v5I0CuIvfzJuvh6Ir89BxVTe2trbDv/jL1/9H+rVl0b529JP /+41rzqVn63au6H+tqf+VONexZ3ieCjsktpx3FxGyjKSH5f1+7lxnmiPoF5TAxlkB5Eybx2z2j6p rsOXySkasHC3NPZjbZvp9wvgpQsgrMMm+Wb3FHB4mr8Q4SXGPq0ufXkRKGu8HPkiAehqm6i+cI2J qYUtwa4yQUMY9ytrp76ltjhjbhKzItcyj/ICCH/em6lGQ8VrcEP5pi9d2zoTtZWwp7o92e5Jfl8K iJCw3UrZJektRz2q8Zg6pNB72k1Px+/ldEhtbn5X7hk3XeN6UC9YrXJqVwANry1QdWtHyuuOamO7 NrKMqVMfm8C1AX0durqPp/UgARS7ybttcVDnXHyQqYdD3e2q4EtWE2SJ6+us3ZbGbqP3csvWFgHY Ab55kx80+D/OkRJ26xN1X3uFjVe4S7jHjE5ZT15p515t/ctjWLiNkRQQ3uzWLu7s8jngc0nL3Sbc OUGY3Szsm33InWIexB5caOuWlwALtfxzeDy63ENM9qpICnuvtHULS/NqYYLzXE8HBbo1CAQy0CYP bWHjsC8Vd0uzvHUpL0wGxZlZXlODm4Isc/RJhkOSb5CGcgP5GZk3MkQwHHFli4vcXnXriQDCwi+v Ao7a/20odGCEnQ3KK4udD5CYxPxigoXWyN1ZaWrVyuGXNrd2Ber9jBRQMrzzwmIhTx7GxsaVIQog kO/S+nxIdhle/Z1TuzySmUzjflz/uOhQdVOEt6rNB2yLeTUUX6uXX3SYHyrvvoqaN4CDev0l/+ZP dfbVQP1FL3/XUn7SmVdt+bXBftcUfvDqV8TtaVevnea1x03zt9ve3QpBrt7NqgcqPtc/IB2seg/T 5jaoAIbbUHle1N+vW3eLxm5UXQQqcsoyqK6C+nkyOI36x7S7i1qAwz5unOgOAo+NEwTOuLYf19Zx deFVyM07NKgz1NaWjg41sfbwR4M8oBx9Qb58ysKXpp48cuWRp06Cam6al7ek1bmwzo96KqRHNsy9 Uk0lGCCYRbfJR1QBRYerWEBH0OGiHp/kNxH5SGjyfo/6Gk35oQG4utngewbjIiuZutsCC+KDrhQP Kl5LcBt4oUqdmy2+12QGLfA0kC515gMm5CeMlwA7ZIkfNN2ubLflrl62GqLfkt2W4vf0QQ1iXwsH Wj5QHljgvO4ftXkQvKeovA9K9xnV9oAm3UUgMyweAYHb5PouLeGHYwBoICkU9g4ivIxNHqxp7dzM hghpbOBIDeWVU9rQD6W1U1pCtFqlfKpC+Yjt3WPO0OYhhzcBs6IbiqC8sktEgVw68zyQt7aQm/1C OAvQC8gOK4vBE3Ijepr7TDfRZnnSvVpZRbpli3ikhqVThmSGpp4jwk2WQtdklha+G7MOynOnOHdK 5FFP7RVa2inMh8zGRkaQkYbw0S/Gwk8Tqk2aQExVr7IOs/Mr+6BCh0h5Q/TGE7BO+ZktwHJHvkxk NTZ3oMguly5ljfeL1m2mf1p1F5Y4s8RDpD9lVUv+uXbzVZ//sXL5ZY9/DTw2ue/14tc//eV/d6oX dfZ7rfxdpfRtQ/qpq/wiXX9ZY1/VuVdu/SruMjNPWaTydlK539bvltXTTLudgwvpp5HxMG6+DIx7 GNUBzKcppDrN3tqP6+dZez9qHkct7PPbuHWe9HdJexM0phb1L2+j+iFt7uL6MWueJs11pq8Sbear EMszVwEA93HtnLUepoO7cW8fNV+64ahXNGxQS3Ugg32t09pm1FgkdWAhJuc9bW4BO9RPAYoVkQdL JXEqbkdEhGfEhXL/JbqqoLGhbpPz25yLMM6X0+KToT7zWmSg0VOdjuS06cDWanHdasFqMC8j1NMh yXDImRmkvam4zbLd5uwu71KtkZxCQZMhElUVRv28eJVMjAlfSDpRrxKRw7zcryEjqFO3OXHrgxrg xicmWOIf9UjYpUHgzxGT2z9C5NK5DdlrxyJkwm1y9TB6wQIWOD9zdJmDx+w9ZuMUt24REvic8sgI K9CV4XXWu/DqPyXtt4DGKaaz0CP2Xhvkqoi0cvDwJsxtROXcWwfUq7zLRQHdr3kcZQEEP1VisCuT RpPgl3eg65F0oMI/ESQfDO0cgmLRTQSgtLBKoPQI16XFIhcsyekFIIX0ABYKK6+4wKcE7BSi20Nq 4JL2DZZfu8DTdj4RLbwtfg8oDSu/jPtgVtIpIuvgpS2uHIns+ChBSHjybUp8CR8BQrVxedC5tU+m fM+zOlLG87wJ7NyPquTv6skIe73wVWhcBPrbWuHrIaKdf63efNEWf3Sqb4zyd335J634LfP2c435 QS9/X2W+BzRc4xKJpqv+HHdL4DCZxzidi9QpTQNujB0jrZyn1IX9NOnepuTRd5vUDqH6MKYB2cdU PU7ap2lnhzgftyEW1nTXbMQ9GSjYhPVt1FgHNZrO5up0MR1V53FlEWubzNhltV1i/GNsbt7Nesrq 51GDjqFGyCYgSBKRsZG+TaurxFgmtUVkzAJjQT72dfLicPEcwkLSkyaeNgmolwFYAFjCHje25SVS mKeHXclpchbisFV2WyWvUw77Qr75y4O60DEY8BYTJK0tUE1dh28ol0AECeS8tW1sKdmALsft+s2g VrCaZadJk4C8BouPzgaVsAMyJgI+Y9fIjQJ0ry1FVJQoBT3dbpERpd8hQtXRbsL84iM1lf/Gwh1Q kAlAwX3MI2JXVgH04z6TEck7v0BYGBcfMuY+pdOkc8DubOgFas95SAVI5q1X3EBBh9zGY0e9d1n/ AnzpmPCnFHtpeTK4HveuILRnvXeL/vXGLq6tAh6RU4AF6Au6QXaYXU6KNjkEVmZpPijih3MongOR yl99AejYkQDn1mYRC+DCSxDz0A5bF/qXm/TKa1uAoJj1i4shXn6zpYu88tItrNzyzCxN+iXXeIsF 4bz3qcyPjLxsQIYFBUrb12m3CCyEzXLcLqdddtxngYWlQ4g4hAAFSfscQTyVL0K2h1T4dJtUyEzM F+9H+m+rFh7Tzs10UHL0X0zldWC8XZuMdv0V8/ozW7vsV16HrUut+KV48Wfh4i/ln/+kl3+4ePVv leIrYEErfoNkYelvgubV0hNvZ7V5zAMLkVlYZ/IuBfOpgNs8z/uP4+45gTCpbX1tbpKcuR2pH1bN 07S3iRsLhChNdqaRgvmIW2gEokbICPhhS9Nga7u4sc+ay6S6Sqv7Sf00bUKJAwsAwi5C/LduR+19 jGfqh9ig1onI2MY6hPwmqc5CbRpoi6i6wu/xnllz4SHp0CHthgyN9ZkPikLNyyAnbpud4J8xqEwc EXqhpxWHRjmidlExs0Tko6DHQW47TcXra2Zb6tLMKcHrARrlXrX4goiwS90N0P5pX7RrBccoBMgL LcY0CqZx4zfw/0tAboo7oltjnFo5aPMQGkEfPI2arP22GHeVoFcJesgaGtBBBhrkqqdY9XLY/WMu z4exeB+yj4n4SCN4hFNAVJzKO0fKwxiggHa+3kI4uIguxNj1anizd7E5c0glxxDCuQSONDNvdgF3 TIV1UMoGl0Hrl/Hgin4TC3Qy49D93WJwjbUiLFAVE3T3fSo9jhQkDgBhMSwtKciZl04icBhIWqDg pWBvZeaPw9K8dwMlDt5F7kygLja/hjow+WmP2YLMO+JiSKwMTOwuZiBkNj60OcgbCyxgQTjvPCHr gtrhmwv7EKHOJp1rhB8oFnR31mWiJkDB7oLKPkT2RzYRNw4HfZG2rqb9wp5kCw232roMUICFjPM4 rX1aNj8uGudUHfUK837RrvzUF7/vcN951Te+cTmsXGql78tv/0O5+dzSfx51i3Xme7NyUedet6U3 WB3xF+bnz2rMdw3uu5XLT22QimK3+teZzy5CbmIz27hyP20hOMd9adyX4zY/t9RdaDzNWsfcx2xL hqt1rMO4vU0apBdC6Iv6adzchNAC+jY2TqPm7aRzzPCSFqjUKjU2WW2dGZAMmwjP0bZxdemp0CAb UMRY28fU5Qo9AmzSJLiwsh+BINWxtqPmMq5N3Uo+S5osiGnYdNzIbQSUqUfTrOZ+axkaIHuAg9u6 sWpFUB1wtlXYnHvQCKzfZbwu69GNtmq1+WGbJT1uKnabMZulaCD4XS4xJaqJopkpctITLOPGNgpe vRR02GH1qq9e+rViUC9FDdatlWkitl3x27zdYLHmQWNsV0GcEmpwU/0eFHqpIb9rKVduk6Xbima5 X7n6Iy+EzGPMP+dXDA/UgCYjOLFhLmyE0PVs+OOk/9e1fYnIv4+5s0/1GE+piMcNSIh9fQjLh4iF jEXkz+3CxLpaBaWFV1xCF4TsPuKXTmk2uJl2L8ftC2Ahv4y+WVs3gBWdRLkgRaU1tmiKcFAv7kgF GDJCbp0XqeYBz057gA+HvLB3uKPLAw6zXmE5ZJZDZArhjMw+FPEz1sbiEKtHyBbzemlfTwaXwOnc pIsJwoInzPqlKVJDKEGPz63S3EIiuAZHGvfLjnGZdcsI/qnJrVxp66szEyEHoBWn/WLSfIevATjE zQs6GaDKKGELeuYQxTpEMjCFHwCxSee6VvySef0/esL34lvI5B+s6tVQv+xrP/bUH/Xil+9e/Qv7 y2dG+Ye29LYjv+0pF23xl8rNN7Xyq77yGm+4i9UFvqrHLENhFfIzhx1DDdk0wXZhEzk/RC2oWhpN 5SunjIrPD6k6z2cl7CEWaMeuQRHsc/JzzGoP83YOiuomNHYJiehtUicsjPBYWxJSaoesAVl9SKEm 6uBIh9TYxdUj3VzoB3xEpu9HBmltsKkEorsFPnaadDZxHW94HrexdlFtHeirUFvH+iZpLoLm1NWA hSV2FV+eOGQdlg4kSOk5eJQLYq/GQ5Esgu06WbsM5JiG+FQAh6AnhH3R69CtBBSH22KBhRn+tisg 5rvyRVN8061cOrUCgNCXL/ryu4506RrluCMEbc6jhZwi9KulQa0MLPg9CSu31FCSvuQ3uW7lys4L Ef84Uw3Zh4h7SkSIYtAYOvyhLhjhGAqg3Fv34j4tP43oCgzil8BCTAlCuHTwENXXSevnce/iNhHv MwVCNRlcjswrYGHtI/AgfqlmD7kA6xRyCH7kFKzF4Cpr/ZK23pBjks9QyhgiX4AgITWUTyGNjnrB wt7lEf8HR9g7/LhTmnTxnDwXDNl88auhsLWUra3uXe3oaSdfBRzWVnkxvAEW1u7NhvoaitiKISjm wAt5dAt5J6a4crmw9S5sX0edwswWFi6b9W/85uVkWMJOOx6U8LfLPClAboPzRPV38wG79xUaHhdW 8IZZ5yZsvpub5bwwyQiaF3HrEnofm79R/sYofd0W/+oZ76rF7wbKLy3hG6/2piv/oJe+Lv/y2Ztv /i/h3Vdd6U1QL2rF7w3mB43I0rdJt7ym0ggJu/HSE45g9Y6wcsRTXLtNG4eoDiyQRSQ1PApOpxia zDyVF4kSdHmrXhxZ0sJXsyE/c8XjqHo3q9/Nmwjj07h2JPJPnGfj6+BLu3FnP+nSIDaX3Ab2ePOk fkjo8ZQ2sBDbh7h+i2wyaoBHbSf1FTJITOnmOAYlaz+uh4+rwT6t7wCfaXsPKGWNXWwck9o6qoJK LSFS4s4qauX+SMrIFjNTiPpM0MUjWeeFPXXYKPk9NnWkcaDGtpjQLHXZ6TJupxz0WKpx7YnYxsk0 wzLsGu/WhLRDfpLDBue2RavGug3ebwot+cqsloe1cr9WbuvFjlEaNNhencVj0JWjvkh2BH0h7GKJ 1Ljapl6/ofZH7/9LherBZY4eLSjcF/aO7IBccBtf7z1s5ld015bwpJ39MtYOJAesyb05hfT7QwAu XZ5ZhYVfXAXlTcjMLWyS2GbfTnqXeO2JDmCFjQMtcDXuXE46l1uLCpaS9hu/9tozXo+7l2tCgXCg 5iBmT3gU1xazc+jM5z5UjtQECgjQ2tjiHqoWW7dNa2PJgMPerYw77KzH5J1xLCTP2i2M+29nQ6iS 8tYV1w6kMZ2XzgZlKO6FBbFfjNpXWb84MRnI1RHyl1kcD2/Gw8LCZtLuDRYyyKhTSFrXaevmFKj4 DmmrCFRG9WtI3TXdgGvIOHHrKmxc1Jmvp1RJyEx6hVH3Jmpet4UfG+wP4uWXeGzwX4vvPtNKX5V/ +Y9K8Wv5+qs696NeAgp+tPWrrvxLg38dtgszi+qpyN94XLsfkVXsPqzcjxqP49YxMvZhDUJ1NFSw 5r6+BWkZV2eJNA0lGtBJq0JDPz2Z5pi4NMdkbAvAwu20cTttIkesPFLHNF4kbgIOByAia+0S0Bvw HOOUNk9ZIzclq+0JC7Vz1gAcTtPWKqtNfZX4f6gBC8dpewO8ZI3TpHU760I7INdAtu+T+sJRk6Ew j/RtBiC0sShHOCBU6jpCUlBSqkGqxLlZPTVjmqKLsHckLLNVHDaLVrsc9PmRoyI1kOFYT/Shqeuc bfBxR8t6htevBEPN6cjAwkAv9yrQDoxV46AOukZZly414aKpFbs1ZliHJJGsRgFcy2mWBtUbs1bC u00snVpfO3+cI22sm5NfPtMBUXnvlvMWBv7g0eUvYnU2eLv3io8j6SElu+yTL9xH0i2djjInOgu6 2XnIHSVqc/DYQ8SvfCJIY/Nd1ruYmdcbt3QMmQOwFlBhxsHHPk8X0zu3PO1dAQiT/uW4e7Fxik8j 5RQJcePttH8DGO48qAxm0r1J6hej1tXB5R9i9WlUP4T6nOCAdyA4bBwRQb4YQFAIyAjTLoBA1xAr q7yiXuPiZHAxHdys/hcWkBd2vgSFC9nrNy+SztVoUBgNSwtXGA+ZhVMCtZuYNxMTihuchM16eIfy bMgm7ULcusEOH9Sus3aJbjHw/9oSJn0WiPDrl3HregHkkgYRlla5Lbyy9V/i5o1y9UW1+E2D+R6k 6OqH/5t7+5/vfvgX7u1nys2X0rsvuIvPCz/9J/f2L9zbz1vC63GfAyWDZllY/LjPJK0SvvDWk+9H NRqwYslzS1mSmbCaDxyESiWhCgmceaLTwf9rCZs25O0LFnaJvgqUhSchI5ynjX1qTG0pG3AzWz6m 9bvZ/8/Ueyg5liRJgp9ysjtNprsqeVDwR8GBxznn74FzIFhmZVV198jJ3t0nnzpyt2tEXEIiIwAE ItLUVNXdzcx723unuXEstQvZDoJ3VkkFxNLcBONNOAE7/NfR/9fR/0Y0lf68Ni4b/WVrPkNTVWTW FTTPBuFdqbAeLytzl5Oh54dMujYrIEwBAXZemPuCTFg+FOZlruPtbdNx6fJXXgAQRKxrzX6/DAdY 82iYufwimawzYRmPF+E4tburGPpKWYbi3BM3oXZI7ZWv54E8TzXAgfTf8KVVKO9zM7XGrszZMmuI tCGxtsqTBURoMCBcbNCJwQILpT24FrFOSnuS6X/UtX2f9V+vd1C/V/3fF6N/LMYI9a/ghbz/mnGv OfXrovv7ckhu6y1HII6XFDKGhSD/ley+dl8LsrMK8fwGBC1HT7PepeD3Mb2PYLc5cj3jBxaAtar/ AhsbQ/l3nxJ+43bWXgu++w0sU/X3IbVy20cEYcoTW5p2dz61stsQSL8vru0I5sLW663c7jEmg0ie 8yFs8inqPWeABlRWF5Jp67JP17ODqxlnzwmzCzuXnBQ7/DK/3lmKBjuf3/ncIeJ3IQdPtHCpUHmE TLqUk1POv8D7VP0DnH7ShSl+utZEHPB/ZDFrlwcW9gEClXwllqB26onSyrTOOZ+cEthzJIThirgP dunQkfjoTe5l5v2k9XcJFMB/7jX+wjz8z279zxBC5vgOvAAFRd//x7jzzhk/Zmq7MplC70Ri8xCS A/RjON7Y3cpgXksR/3ytlKtogQgxf915T3N9FQvbXIR6P5PtHZF427X2soRrELG+rrXrVSX1hZym iZt4hAVr/NvW/n9f49/2HgJ1V6j7HApfv9b+kNvdb6R2VQcvgAu+b6ynUj4Ag5nwtNKPQNlcuZDL IQQOMM5HuOa5vk6FzOnNQoQuoqu/8sevpf6y1I8z5TQjKLieF+NZ5nfY/4W6z8RTCZvvwlwfSus6 gmQ8Awq87q6SDqRvgLAhFdPgjjF+wXUq5vbAV7lI6808yD99GRpZKLvmMLLHazL0QSPbRJ5YeqRv cBmKkT1ytJ6l8ECEJbFgCktqzMJBanGByrgiZU06mTFMtEGq/1HXRkxBSc7RXjIOSh7R/ms5+LUc /lYO/2s9/b934rWH/OBbMXpNYVR74IV/rabAC0D0fdb7x2r4z+3k23yIeDsmLCBwATSK7iUFX3DX U2bSEOMU0aUGvV07BFBcPHwBNNUZPrpA9uZXHlJ0cx/RMNpPRe8YMXjYW96Hg/5WDH+bTf5rJUEj bfw+FrAADf+Uk+7cICPY2FPEHQIW63o80d8HxIzvfPqp4I8pXhPR230uJuCFU0zK3yB78JVdxC29 ziHhXxeT5/kU64K3XZDbfWdSKzS6niYMDlEPKTqS6ruATDwBQcxMau3x+Mrc6W3D0dLrIYZXHsHX MeYhjc5pHyY6mN77U8i/jj24FTs/jxt/m1DvYBO6jf/sN/9mjW4hkyT+vTH8ovW/eNNH4tz93sLm jd5tJneWFrIBaccaig0wxVMxfVsoF2iMSl6H46U/QuiSGVKVjpx8nqlL2PxrO+7zTPxla/x6sK+3 HUanQro24hYX3vCQCN+J+Ld/JYdxOrDwtLJe1xZgdSRTqMQzDNfa+H1vf1vpL3MVDLIJRyt/uIsm 20yYJZMyHC7jyYkYZI1s2F5fYVsqVUBK9VOzt4mlf+2jf22DPenjrTwtycTDlyVcdvC8sE6lSkZF l9qxgEkhg0v2BSBj7UsV3mEeAggGmSTi4cepTwvSmjWz+5HBxiaf2QMy4iSQM2saqAPPHPn2OPVJ x2xb4myJLVxh5kvbgtREJ97YM/pAROqSq02JOfA1yhKbscF5Mh1p0EhjV2CBhdyY/hsLl5Q5xBTy 88Zr7v32a8r/Xg3/ORv9Xgx+K8EO3EvKfgc6qhHpj532X6/lDP9cjoGFF1L4CWrgV25r7VGkXdJi CFzADr+Qa3ugA0Ic5CPBGhDXPYUMGGHrUT+wcEjoXXyFT9W75N1N0Fm6rUNInxPuiEc6nVPIn0P+ FPDnoHvJJq8z0uz0lPaPCXfJ+BeyZQo7wFxi5hwzkEYrh8rkGszsCSvj1377lCGQBr8s5Es6QDAD C6cYXoC6FORGKynk3IgHPDHgL0Uf0ggvfs76ZMe1Gh+TwdymFw6D+F+5DHwB8v85HexC3hnfxgqz CcfrYJiobUQyuOAQdVOldvUOHfxzZnS84Z3Q+dnp31ikbOdRYD5OmQ/W+E7rf9YGnz3xIdNbidby xcdQqmvdzwr7JRjXN3Zf529DGRJuvAkGW9AZMgBx05PnStzHo8rmK7t3SKQfk6quk6RU0pR+Ju3S yTIYkjk77mDpj3eRsPYnK2+Mhce/zOCOLSyS21fQMDpUFjl3LkSIqN921uscrya8LtRf4QhWBgji daY9k0IDqUrIPe1VKpxn2ved9+sh+GUfHGZ64Q8Lf7QkBf7qpTS/r9y3wtgmEkjhsjChcJbhFNTz y9b/tvZIz6UEkS+vYjJzYZerh8rEWsfqKlIQ7YnRLT04BWkRTeak+fxoGU9BDbNgnDsD0k/GHoR6 N3RHsQdzMUydka/yrszCfaxi5VpVMcpIL8rxjIwmEVKrF6psqHG+ShvTdmT0CmccKN3UGK5DJdP+ uINxSuhN0CrM+43fIkoJ8Z91XyP2a8j+kvV+m43/116FRHlNAYQBsPBrNf7HcvLP1eTHLKpfFwOI nEPEnBIoogG8A9zx3u+cYxpY+AWr5LEAmd/mwx9YIB65Gr3mg2OMWGoBDvuY2gGMYWcb0UuvDTjM zPrSboI+XrP+MWDPAf81G52y8S5GYHT38AIl/zbnn0uIscbSfli79XNCk50oOOKAJQoqRpLv7xOW bNfH/CkdbTwOWCCIiIAR+kI6KeExPXx3FbDbGKHVR3o/56N/7PTnYuRP79TuB2/6UJmdX5ZkoAOe eDXUeJNg2Hqkcgt3uPKGC6e7sDm4hrlFGb2PuQaO6259bm5SW5fT2A8gBaH1k8TfyPyXCfNBYD+W FiV2P2ijz7ZwmxnNTG8mShNY0Lkbmf6YCp1MpgKVTS2+dPjMpEqH3pBfvEdu5EKz2fw+ANMp+0DY +tNDJJ0y6YcUzy12EYyQ9r9vvXOhV9awNAcLZ/xUGG9z+7kyAJ9TpuxScZGMsTb4q+aTy0x+W6mv S/nbSv1lrT9X8utc/cfe+f/esv/nJfllbW0JFqZVNFkmYB/j173/y85/XtjAwn6uH+A75rAGGrBw TvVDKBfWkDRQTcVTJR+uo9XPhbEnDZfUZaBcZ66RHkr4OAuwlIVvHFJ/HcFiu6fS3eXmLBB3ubaM YRwmq0RI3UFi9xbJdJOLm1xKvFHsDGO7H5u93OyvQmGXyqUziswuKcH2RondT8wuaeuqMqFCV4EQ 6j1LZKbcg9xvhFrfJ5cGx6n+xz4SInAXdU4pvQ86x6Czd9t7p31Gko84YOGMFB0wz3H3FYyQ9V9T +IXujwurUP5QPoh5YOE3OOvl6NpAqfea977PB78th78tB/DXAMILqAdAI7up5FI3fDHsOblokSHw 2FPGPJX8U9mFXF+H9IJgoQksLCzwFA2NBMMO1/AMeZNer2fn/aeq9zLjLjlUUOdlBk3SOcUdYGHr tYEFcuuV3Kzon3PCNbDJO7iDoLt2CRY2Hrtyr3cC894engKPKfCCY2DhnOK3kOBSM7XpTu5nNg1Z dcnIoCu8Qiw/gk22AQ0+OqV8CbQi3wYTCI/C5JcOj9zuTu5mdhsmGotYhum9M7zpP/4ZWBDb7wbt 9wL72Zk8qv0b+AWx97Hb/osx+WJP70MJfqFlD+/8UU3jPidCO1eYQOcSOD6TjvTOMuyWDhWr9aXL wrDvw+E+nOz8ydbDx+mWrMkmGZ9L+XVpPC+MbSxlZj8DCrzp2gOVKM+l9XXuvM2cc66tQ9KGa5WO DzPpdWu8bSDmIaXILi4SzjkXvi7U37YmXPNTpTyV2uvMeFnbl6399ej/4xL/fopel6SlxtPcvqws AOEEjwyULZ1vm+AQKxtH2CXqMpSRk0u/d5kr55mcGQNrzMTqaOaSyQh4A4cZNBLMr7SM9cpVVoFZ WrAD2jbVT5W5J9M8hW0hr2HSc3F1NdSHmbItxFU6WRVyDJrwx2RSgz/aJmSG9SqczL0R2Vs2u/AF iclVLqlCyg3WEVlH5j25ZwnsdXGexCfGKJT5f2OhtOqwuieYWZ9au22ol71HnZFaI+4cUE9x+zWj vxbs1xIGmXnOGbJjTzpj8FA+3wr+a87+WvG/Vdxb0nkKmQu5+dYj5Qnz7vcF/8t1fZt1n5GBgSDS AQZ5u/OU0njAb0v2OWudkvYLsc/DC4ynzyxcyObmLmzu49bWb27c5ilgnqLeGabV5y4he/Q7x4ja R+2Z/bgN2+eCw/vfhYjb7p6c5XVhFo6kqGcAmnuO4XnpmdleODz+Jtd5N6OTx5089sljngIODugp 6a+T/jIeVE7tZd6dOQ1f+Ayd81aOLtFgYTIbiyvk5tLozJDwPeop4UrtfuPUZxaPgHzKRW/aDKUm sv0m7B6y3jZjlkFTZP/iTd5p3DuFfa9yt6nMRnq9cChzcttr/nXKvDMHd+P2z3rvJpw0gvFjJNQl 6n0wuU/EWiI+kE9kamH3SguZjV74/ZnLz2xuZrNLF/QEPdmbOXzl8otwsCXnvMIlFS+5vE+mhc0t g/42GZ6u58VPZNKQeu3Oqu5TIktWKZmzdppDVmnnwrzAUKQQDOw2YZ+hAdbO29p9XTrHjPTNW7r6 3g9fSucfB+ufR+cfR++3nUdugC9gOqxjhnxuXgrnXFggBXyFdMPOyMi2daHvZtY61xN75JO9zdEc r5aos0jO/ekiVTalPkvl2B1mpI2YdEGckyGJpJXrOpR3qb5PNZj6H9OoL+QIW92mgI+5JEWaShEM F+TIYFg4vXkw3BAxNpyRvv3dCl/x+stwUPn9zMZfnir04dKRKlt0RN6Weo46mCdGZE7K/7an+h35 fDYgg/aQsUnrrcFzgghhXlPuLWW/5exbxn6DICn4M5SM3zrFEDkwxdA8g+9V7zUFa1CvMfUctU8B 9ZKSmp2nBJTReSmYX1fdr3MO9hwQeLvewXtOYWy574v+L3P+pYBraBPzXg0QuhDha589pL1zzm2D 9twhp3gvZKd3ACzsHW6hN7d2C8l/YSEOaxB1UFaVXYes2gZkG2puNp6S3reKNB8+RDDRna3TWjrU LuzClkZqp7KghYbPUffks2eHvvgsHv+c9hdhN7PpbUwV9mNm1ld++21G6qm3XpcUHQzu1xa7sblL THrxwa3D2u986gXUH41nJudOGzOL+2WlvcylY4b/mroxemeP32fq7cahK2R1sw8sOOK91PvQvv+f Ev9pTP0s0O8n7Z9l5qPRvbMHd6nUcgZ3/vje6pObG3ufn1vdQmdDqW2Na6nBFBa79MgvckrH4IXV 9fOl3z+QXZfJMhrNSWsjMsRh4Q/W0XAdk1Hp+H3xzwvpkCNtSNeXwcyfPK3dr4dgmUzgJSESVsH4 RAaGCt/30v96C//5FENBzb3xwp/OvcnCVi9p+nXmfyMn0fgdtZeF8bIwv14LhV4W7qW0Dxnilkzz +bZxv+/cl7mxB+4W5iyRrsMU9JdNMCPtKYazQAY6yPQ0/zo0KhKwloW8zYXzXL1WmMqLQFxCOHmQ PRreCZl+kgqXhb4ns3SNbWHOI3VTqOCLKhjhW7Dwi2Bc4ldzBwX+aBYPx7RLp6toXDjdzOkWbnfj ybHch1lOjHFkTACH1BGBBUf+49z5ueifE1hCDuZ343WIA43pp5h+TZDkqXNIPacsnOkhIC7gCF8Q k0NkPGznto9++5k8GA9rAw5fyb0jooLwFGT+l4J+zqnXklyTu5CTNf75uq5XkphLSh2j1jmh4Br2 IQe3e4EggSZPemu/A8+7DTqXlAOVHH3u4PFHv3/0uOcENry/cduVWduGkNB0ZtQyrbZy8ebpvU+2 krYefhe+MumFWYfG2wbs2uPmDoew2QT9mcPu4YJd+mTTQMRTTN7zNiFwmPmtdcrs0u7LfHQpJtsA LqC7dLorG8ZHec6FBaS4ze58aC1u48OqkAKiRKHOqfhcKId4gjg0Bvf2+MGePK69PsI7HLedfjsc 8hrTFLsfB52/MY9/Yh7+Y9z5uVf/T/AC//DXSfu9wn4KJjVv/JBKjWDyACws4BEMLtPoTKeB4sxk CpNZBeRMcG6xWBu/tw0H++tJLnRIZnMrd7CAXw4hEnqLsA/KOJXT55l8KSWQBWz45TqghNx/JuNv prN4OIcUJwOdoa9GZDLFRjjNxT2ZWgt7KwE4mcGX1uSY+tf5s/IuGa9CEmanQgIivm7sbxv7+9b6 vsMnxreN/nadOnqZiU9reb+YXtbKy05/29vnhbpOyQzQc2mekNh9SLjJ3Jf3mX2qvGPh7UiHbXFX Ks9rb1cY6+sIQjKasJBXyRRhDwrYgSNKfV0YZQilpG3I2BRle23cOvfHO2KC5FUgJHo3UliYiOo6 zXMRTAs4C7mX68NVqOa2UAVqahMg5J5U/DdeOCddrFPMnVPu9XoKQPK/V986NciAU0i/kcpN/ooF 6hSR6s69z6ydZqk9rszGJSTAOYedN0IQLHzuMaChYZ4y5hxDObch5oGFN1LFPyBjPUkfb/6KL+oY tsEyK7czt9v7sPuUjZ4L/Nn725CBIL8AU+SgoX8K+Od4+BJPXpLhM0njvZXdTpT7wqiVVnPmQix1 dlA7KZz76BT3lzYDFbEjPQF6l4gtTdAHXOdgEw9WsAwxuQ0LCLxF3aeIOwXswWfXIb+Ju+uUO84G l/n4aTYpLSZWmrlGH+IxaXaKtGNwwMXcZjOttXCZucOAyJ6L8crpupPayhm647rG36cKU1kcrLQ/ bcVie1T/qNIPvZuPhThwhQeBfW8M7wAEe3Q/bP00av2MJVIfJfojbILe/RyJdXd874xuzcEXX6i7 k8dUo3KTARZSg567XWikmUnW3OIqk5m7vWUwWCdENpdWN4XFMNh5MNjl08tMOuSTTQzlScajz93+ Hjk2nMYmPwunu5k6S4fLbHqcmeQGXUlQcJiN5xHZw3TktiW1oLc38QSG95C6p8I4V/I6Hm8AhFK+ nrVNr1UP8i9b83WpnkvxeaHghz7NpV92+tNaet7JLzvltJBWyeg8V75u7V927tvKf5q5+9Q4Vc7z wn9dh6fK3mXmZWUeSWWEjYRf+JN5TMar7UpjlYm7StkUZHjWIhOXmZyHpIaUzGXzRjPEuTsCuit3 Eqk8iGwTSSvSzUYoraEnMYFMQBHr3dIYrX15E2lwCqExTmwBH3NXtMU//MILfGvBvVW9S8pA2CA+ t2597zee4w487ylk1nYL6xRxr9fJgwefXprNtdkETKCmnkmXDOYFbBJ2EHh42Blpn9QmMF8rPIX5 Rj6yrxn32xwumDTWIFtVRfccdXZ+m9xNvc4DfauQh7nKaBd6a251tj6zC/Bq/DHiNza9czjwwt7l VmZ7brRS+SEQbzO9XtmtXcyTK0MxbEh3aVGl1tl43UM8eiol8B20/dKjli4sObOJyTnyNuqSY4iY f8Lr+wywcIm4YzE4l8PzfLSMmWM52sQ8wi83qcN1yi1MQSi2gYUNpKnBIDgLk65sWJtmIN1EMsK1 UeqMPbyNhFZpsKlCDZo/ucOGN2q4g/bBlVbqRGredWt/GbT+DhSYg1sywZD+qLBfptQHZ3BvdG80 /rPW/eKMH/BdOPdQrPvTmj6488RGqLYBhMyAa+hWNlvo9A84YIE45kQUQQgNc5Pz5bavdAKNmgUD +Ahke4glckbggTL6gdSJVGZNuhUp83Qyy/rLfLKvSG+ibT49zWFmJ/NolHuTzB0V3oCMNVxIJ9K+ W90mEPPQMGQ7dEtGTZGNoAPsCdBUCudKBGu8LiGfVEDj+858Wkn72eiwgEAaE2Au1Le1+TQnvV73 oXSI5Y0vYi0dMrLwubJBClk4KMJRdK1WW6SQUuo1+SvHubYp5Vk8zvxB4g1Tf7IujWVCmpX9GGu+ Jy36jZk7SfVBAiPgCttIK61pKPVyY7IK1Lkrz23BmbBYyrDjqQNfH+Kjq/Qj7Y8az9/JvKchqWhO qXPSgUG+9twm+z/PCeQNKWFDgj3H7M4DX3SOcLIxqfTEuoQMnCyogZiLjJQVIPyOEX0I25cEcqv9 ktHfZ91f5+TCBrhg47QWRmNlNTd28+C38UjSOrIaQt5kaj2SHmOplqr1wmhuoHZSCH5241JnksD7 a5NZGnSltVKpFor3RBd59DbktxG/sDtzE8ji9z4UPv9KuhJNkS0PZKeLWQK8PrtP+odsuPSYdQD9 1jsE7A58Ybfxu3wr+pdqcCr7+6K3gteGlY55SJFtCBEyXLrdSyodEmHtw9SIpcn6YgOkA+KY2fXK qgG8p7SXq1SpA4Yjhf08aX0wu/dfK2vrTc6RZrCPQv3z5PGjSMNBtBHzw8bfvEldZj+b/QeQgkh9 UJhPCvdZoN7hu9bw3pnce0KN4GJ050E1Kc1Y78RaZ+YSsQdGAPRKjSbLYBcOxAC5zB9pVGZx83C4 zREkw5kP8zjcxuPK5hdObxdNduSOhLjP5WUsZH4vdDo5lOF1Gx9hf17I+0pcZcKGNAGWV6mwSifr dLQMxxDw61jZ5do20+bBNHcgKRGB4i4XV9EQVn3m9Q7ZdYriyrzM1G9r55e9dZwLl6X0/Wj/dnJf Vvq5lMmhRqEcyWmI/jKHZ9cvlfFM6k+tWTQqwj4QusxIWdzT2nneuIsUbwaggKKb5P4A1FBGU6xF poA78FusrxMZVtcJtgeYdLWXGWTrbOmLC1fYJ/pL5W8jPRC7qTKwR7QrcJ7Sr3wlsaeRMY6NcaD8 saf6UrS+VvQxrr+W1Cu5hkeoAQLmJWWBhW+kGK2H7Hr4P70vSNuiDBqDO4fsU/S/Sz6fYZYDivTH ADUANRDebu0Qtp4SCsbhGLSXZm1p1uF8IUue4T09kAh9Jlepe08ZNDmybh1cABYglx/yAdCxsMmm FrnLnfR2DrOFUHe4tUWXarPQmzOrvfRoaJuFx+5DctoLUti47MzoVAaNQC1saJXmjOioVmG21mF3 7iOL1vHPDWjC6qzM5s7Bb0ruk1zK3inv7fPuOmYrj1lFLKRIZZLrEDu//0qqBsiYv3OKcBrObEh3 ekVS9OdNcLvxm6V5C6Odafci/ZPK/VwozY3DzCFs1Lo3ekiFR5v75A9uw2mt9/hXrEH9b2AErJXT F65YAC/YoweV/wzWSORmKDV8oab3vwALrlh3hJonN2yhFirNEN8VGnMTRn6y84YLs1uQ2pYe2Twh tQC90h/kfr/weilYw+JnTm8dDIGFyupCRM3dAekMHE2LoJ8GVGh1EqtLmlTHI/BI4fG5NyhDaZHI m0I5zZXjbAIBts9JGeYydhaxPfMBB3UZkvYUmT1Kyc7ttdVqIB7JlpRdWNNUH1+HL4s/RpAcCx0u G07h69L9fQfrocODv87kb6QrpvgyE47pYJUOc78LOBzm2mFuHGb669Y9znXSOj6ZVuHoMFOPCx3Q gDTK/EnqDlbkaFsj7ibTyIhbezR3wALyOlQzfeQLfGFOl55ammKmTTJtlEEaGWNfHcTmxBT5QBtE YAfpj1qebzP625z6WrVfSoj2+tp52PmNt4L/dTb8Tm4QcUurAWuwsMmN0z1UDaRRzL0k3eeYP8Ju 201SmBBQiO1jSC+dZmU8Lu36Pmyt7Fql3y/t2s5trO06HrmxW0cf/gIqHRaDecr4fcjAsMMy7EMa nmWL7+akduxMWsEMwDIQ85eoC8vwmgwvYf8Y9BDwpMA55BbAArli2t36bGU0U+kRPHIgW0bcPhme 8gmwMLca24idO52lzyR4jF5bBzSc7w6486ijRxN341PrgFrCsEf0zGutAhZ+PNVac5s6RINLOr6k 07XbXzrkPtIKTiTsx2q7soC125lzM7MbkfzpKRuG4u3aYaDfVgYdi4+VToGtDkE/Ex/8/heDeTdt vyNhz99INATSJ5CCxt/26n8fNX8at9+BF0Tmo8R91Ps39vg+Udvu5MGZPNjTRwMOQqrZ4qMvNwKp kSltgDScNBKxVens0hmUZjdWWeTneTiYhcPC75defw4H4XQzA46JW7p9aLyZ3V0AL3YvtbqhScdu K/eY3OmBTTKLzfH0oLdMhCVp7Y7EOy6Dwb4aHysIITKRLXeV2JxmDkhHWUZSSaawjQobhlREnG9i JdWHCL+Fpyw8dR4qoQ7r0V9FJGMfcx3J/1KZrwvjVIqnQnxdqF9X2tNMPFcC+biQD7D5Kxht9/dL /LS2n9f2ZWmeF8aejKySYavhHVK8W2+4LbWXtX2stOclKZEoyXyfwTIQNqEISO4SDYhYBcops/aJ WVrCwlWWngwslK44g312BVvupvbUV3v2hP03Fv61535ZtE7Jw9q7WXv3EDZfyT294Vs+fEl55HZA g8Sz1yIVysTz0qeQeoqYp4jekWZizbeM+VZwl6i985trr7HGFyOGDGVIuK3XnukPMyDCfNy6rXPE Ym1deu1QBxjPDFKc3gcMUECqz0izO+5IWq1yL9XgtRycoOrT/jEkUgeaamW1dy54Bw/rn/DcmBwf L93OzMLPbeOHLqxWpj3uIv7rStgmvY1Pzexmpj1gVXbDl26v+6X0BWLJoULhPlcfVk4TfPdSdrch PbdbeMrCaS+cTmniBbvHqHdKBvuwv/V7QMHa5VcOHDR8K5NrLWP4fuG2AH+8ATy3NJqF1tJ7X1Kh vjA6h7C/ssE+DZX6i0b9D5P6k8Z8MdibeNKwevcqdzPufMCaUB8BBIH+ILEfBer9lH4P12ANyS4r XgrUoPY+a4MbLE94TJQmnLU/vE+n9WRS9wYPidjOZCrT2ERjYo1KDGYRDquAlIOVbj81ubk3gILK NIaM/rG7M4f35VagtmOzk9jN1KYqpzdz+oXFJTDpFkuGIFuTzCRHt+t0fChHZEBbPMWr5RDqubJK pdwfpm4v93rAHaQUtNN1cLOyIs1X5VyfLl09tQRH6Qf6cBYq61RfxWrlC4tQ3uXqCTl/Y5/n+qFU 4CNg28k980p9WppvW+fb3nlZm3gALMnzEnbbP1XGKpbmIdn+WiSk0ucw189zlfTDD4mEW0ak8G2f yadSAzDhblZkirSyDBRwBLCw9JTSFnJrPPPFwhNia+jIvDGlE2MUSPx/44XWJaudU6z6a0H9tuj+ vhj/NhtdIh7uYOXUDlH7KUVsk8LMc0xBDgEIp6ADLti7rWPQeoNBLpjnBP/7zSMeQO7jEXNKqmkA ipjcCYf7eIpJEt4HNCTK1mNOSR9O4SknW1g76CsyB3bwNh+8zgb44jMZNTL40T3sWzWAktm5rbXT PoakdcYxISXM25BZOq2Z2VjYCMg2Pid3XAu8wmifdJeQT04HgV2QJH9f2XUk/1OKmGcruxOI9xWi PWD3PgWOWLqNudPaR1xpIsnfrz1yswigAxbeSpACDyxc7/WRC6swNVgI+x34JWRzo4Gf7k1vdgFv Dm584bHSKNiWVGro3Du7/97pvZspH+PRTyr92e7dW927Qe0nmfls9EjxArAwav0ELAjMB5n7pLAf Fe4TxJLEfNC6n63RHajBFWo2Pk4fvGnNHt6Fk0d3cGd1b0LAYVRzR3VjWAuldk72mpjSRZ7nE5P1 5E6sMxBFYI1cY+DoS4PJDApOPAFzmR1ffwy0Zmrwqc7BoevDe1eog19gPwtrVHmjZTRcRfwKoPaH +1zaFsoyFVcpYnIyi8bEZbvdAowZC5tE3uf6PjWQh9ehUZiSK/WvWBjE9iS2Rik0jC9sMu1QGpeF /bxyjhWwQLoHnCrteG2sukUwzzSA4rLQn1cmQcfC3KZy5Y7n/nTxY6ZDRIpAwREHsFUhzIMB8UeZ iCdergyyisTrgGlpRyY2AgsgKWkTaktfJjdAEqUKhMwdR2Y/0qGRBrH2h194K+vfl51/bbv/XHd/ WxKTC3X0NR9AliBuLyn9fdH/dTkg9ThlDybiEHRWVn3rNC4R9ZIwIAVg4RxBKT2CQYCFI2KeFPsz iHzIoWsrmD4evEI0Oo09Od2mlja18ViYAnLGl5Lz4jOARm7Mdl+r3jnloJ2uNpw7wYCEzCmiXnMO n8zNFiJ/F7Err7Nw23vSkRKPJJfGf5mRTdTvCzL055B2F4hwp7MLyDW/tdfaBB2sY8LDca98qIXO wqbxBs5EmEFv188ZP7Pb0EVXaQTPMnwpxlBciOqty+4DfuMyeNtzi/Kmd+7k9hB3d4GYKFwsUxZC UWh5k0YsdhaQ7ionUZ9U9sbkbxLhMRUeNPovbvdnnfkitt9r7BeJ+axwX7TurdG/F5hPY+rdhHon 859E9oPKfdL4L0LnnUSRQwf4aF+o+2Ldnjyao3tzeKdyZPc1GD1Gk1o4rvvjeqbS6ZUXAATkfEdo +EoHcIg1JpCpWGUW9mBudhc2uVW7DvrLALaCz2w6c1qh2gwkKlbwChRWabHLYAwtEau93OpVLg+T tfL7+2iyDLuLlFvlvVXGL2Ku9BmsJf6ecX+djHb5dJNM1xFpJpxovUwfkutAXj9yu4HFR3avwrdC ITS6uTMGiSxCKbenmS2sY/NpER/L4Lxw3jbu1513muvLZHqoyG1AWBsyo82dbBPlVJIBo/tC34Gb yHEz/MJ4GY+AhRm5vwebL8wJRwjXAevyIsCLy3NXWPpSbo4WnrCOxMwakGkR4TQyu3A6uT3E+jcW flu0X7LGt5L5fdH7HTGf8eeAhS/eu3DKpNnjtUiTIQX7CaQ7/Zpwryn8L3MJKbDDS0KBFN5y+iUl B83HGKm4sQ8o0kCp6F9CFjZ5bTWWVm3rNQ9hh6gms4WcvHTZXG8isM8p6af0WnVPKQRPY+HUQRNL twXtBCxAa73mXTzxFJKK6ZXd3nn0LmCQ8MnJYMaRzgMAS8he28WQFjRw35XdirUazDiYAnZ+G8BQ P16xwB1I5VoPcMgNIoTWHoM1s+uFWQvF+tzmjvHgnJJS0FMMkcNURicSHmZGa260YvEBdhgoXjrQ G9TKIbuCC2eodm9jGfaf2YWjTKX8UUNhPoeTViY2g+Gt1/8itf5kd3+SOh8BBJX93K/9bUp9UElF 2+2UeT+h310ne/4Es2D0b8z+rTt6gJuWqA8S81HmP2v9W3MEdiC7rLHYmOl0OKnBlVv9O2DBnTRC qWNPGoFQzw0mJ8mfgynIzS48da5xWJXOz01+Dr5QOrnFZDaTWFRiNUO15U7bzgRs2MITU72D52bG IJS5QGFyC69DJyqVq9wy6FUBnbntWcisk17ls5nD7IvJeSat4mHpdiONzkw+s/qRxgcK5+l86g9n qVjFQh6MCRaiaeaBSkaFM0ntMQxs7sqzQJ+Hxjpxtrm5zhD/ytPSOM21y9LYwyPk8i5VYQEOmX4q THx+nhkgi00mAQXrdLLJpkBEGRLNltjd0GADjYsNfhFMAQfSWCwQNxEQMSE9lPxRqLG+zgYm7yFR qCwZy2784Z1/m9PfCvr3ee8tYxHbS6O2d2GEubdsCCysnAaS+SlCqHNwzXu3fQnol5h9iZkjrLTb fIqoN3J8QJNNVLKPSm6okvPlBIaXBazest4ruchHbvFd95da24DZBf/n0MrqXBVO8ylnD3FnH3VO CXNJkIphpfnztUXMOWHhQaDWiPUOWNgHsAbpEpZCulBPKUfmiqZkwNYvxQC8AzojnVHnYzBLpddm Rg0/9AB3E4CzwD7dTdh1pne+1Fj68JJsZdK5XnOnnxDPm2B47YbRXbncwiamIBAeiOx3qAJyQq1v A27lMpFc24b8KbX8KSNxd2PqQ2HQmdaO5abRu9X5W39cc/qkJ5LU+Vnu/OwPP9nd927/weBuFObT hEx2/ginrPS+AAUT5v2g/RM0kkDBQX+0BrdW/yaYPEbTpjV4gI6S+C8G2WitAQuR0AjGtVholCqV Se1QaNrjuie2sBKlHYgNrX8HyRTIhCwqs5spbKqwucKUOruw+dKEI+iWHheZndBsAhSlTQ6XM4Ig OtE7hdXNzEGocKnZLewuHjxzernKw7OH2mOOdATVFEGC9rYpGeiJj5XbhfWuvD4ZQRtNyZ2iVFpl UhFPYpd09AIcsIpgnPvjdapYAjPp1owp66vD1JYyR8ldbR6RcW/bnIglYOHHIjf3vGnlTA85HLcF Qtlk6r5Ul/F0V0pAQRUO15lwWmqnpb5MhcwfkkHP4XgDZXW19oEMphP2KTTSeOYNU4s3xaYN3nT7 pL2S3VuHf5w7/1pxv1X89dSYfvpx6YIcH/CkExE5L+CuF5DIxVRSoQzpAqvrUy8R+0a+Au9An8nq PJMr0/TLdSIPucUa8U/kXKB7cOmD24HLXlqPC7u2cJsVHK6O1SkN6loXc+2hdEXK3Hxc2Q3SIing z1Fv55LuE7AJO69NIJZ0gYWV1dl4zD7iYVcrvY739pb3QWQA3VvWPfpI16SucwFPbTQK5XFu4jEQ Qm1yRdzv4GeVZkfpfbImdUeA9njIdKow6rAbS2+4DSZLt0+SpNrO1VamNDOlkamNWHrMtSYgECq1 zGgnWmvmsM6YQf40RzWoF2N4o/Y/BVI9lhvO6NHu3/rDR5P/otIfgtHDxuosEXujOjSSRH/U+S8y S6SRAc3Tv1F6ny04YgE2pAFe0PnPidhIhGaAdC20M5XJdHAoC/NbaPTa7q4sfqbReEAmtWKpBV9M jthE0FYzloBH/GG5wuRDsRNLdCozld6bGV3wwsoBY3KkPQsBQjuyO5HJFPagunrn1ISXpGyhpY3a kNO5O0SolB5xE/6UDmUIqnqg1EOlkerUjJx3D0vA5DqvZxlOyORBuw8neyDahpzWpWCBYJKSA+Jx FUxnsVSSs4mRKzOR0YeHTaxp5kq5p+S+WgXyIpYPFTl6fl5bm3RKioZmMNr2obCPlbOI1MgYpM5w kUq7mXZa6IDDJpdgXnJ/ABRU0eSw0NfXUenEYpNBdSKU1TE3FqDvKxbIcFubx+NXmXBtfTw55v+t z3bR+5Zxrwn9ljBfM+4ckLhdGA9ru7G7Rg6kCDlcCJi929larbXRnMmPS61+CdjnmL+EBBoQQgjX nd88RW1yWh1QGwusQV+QPD28Jr3zWguT7LXuQgrude5ClnBLt7cLSOPHfcTu8HM9UsVzSbhLDBTw e6+7dTlo9VPEPSUcuWjnUlub2RGjwa4c2HDuKynBHp4DDkT2FOH94BP2awWFwxfk1ndr41CXhMUv kqtwxC1Qw8xqOpM7T3qs3F6otJEJD8mIAMdsZKB1lSvBsHbvGEPttPzJfSbXf6CgsqiKZFEm0loG EGQxJSSExfQ7fxa4v/Za/5cnfYjUm9JC9r4fNv5k8B+Hj/+hMe+WOti2kck1k79VaZDCu37j7+AF hf9sj+/V/me5+0nmP4YSRE5N4T8BC9BIyPwZcrtMJxIcSsubNj2igpozgysBBIS90CxUKhKb7rQe yO3K5gsV8GdLnUlgE2QqENqxgEcymQyN1C2AqWtrmlBrzQN+nvbTgE9gfj0yHAGOu/DwOT8LxyRK 7WHiDCEnQr0TqawvAPjtUKQLvZ/IfCByvsi7E84Y0vYEVmVU2mJhT2N8V+9WZNYbpItR+noV6ovY QBjDRBsCY0lMpPfmZF65ABOR4eeGE9/isUJzMI/kXalfLyZBd41nwXAVTw6lvSvcTW6RMVWBtEiV Za5sZ9phfr2PVJLIBzT2C2OZy3P4+lTK3KGrcok1JGccgVRY49KaLKGayMHK5NrNewoEVf6ITIsL /qhrIz0hc/4lojZmbabeL/SHo48kD1yQftr7a3BCdWTyfSLcLvX6wensnc7Jo/cOtTSbK7OxB1g8 0t1iDakP+xy08ZWd0zl67Mljt2ZnY7bwmqews7RrpfEA27uPIFQIEDYOdA63hJO1mntyWsfufXpt UWuLOXi9ncevLHplU2sH/8v1VKrNtPYWr3nFwi4AZ8HbMvguYAK0Hn1653ZS5T5V7zcBBYm1MMFH QCge0wAWZlZ94TSXHsKYghhOdXKxYe5AObQruBh7cC0BGyGWEFGITAikXKkDBSCypQch3fHEOuI/ 0joBiENjRA46592Q+pMjfEi020C+jdUHlX8/av7FG97p7AdveAteABCC6UMmNcUOuZsKR2AN77Qe OUoT2PegFaX7GRzhTh7U7hezf+OS26p3iUgF0xaoIZLauU4nctuDXxYahAvkNgRSBDhodKwgXDuh 1CqUNt420AGdZvYfggnwQqUSUyhcJsFitCCoYqXtEbXTctWGIdcDk0GmRf5PLC4DLvxe7vUDrWtL lKswoYGIYoGFWOkBBbEMgqDAEe6YsgZta9hxJ/jWIFGGgdRNNKKsfIXocEfqGFPamHLudVs1Mcex McLHSB94sBIq6ypsYHRJfzCz5xtdhG50rf3B59q0GRgsNMw6nV5LnpXCRXiLuStuMv1p7e7m+qZU Vqm4TMgJdRFOM388T0lD4yIWr23kxdgekdas1mjui5k5LO0J6G+Dx/ij67nJaB5N1xBysTDz/qh3 foU1DhHezYOLnF/fGI2jCwnEP4Xc0aORqHc+tfMoBNXcaKzsFoLtgJBzyM75yqxvrMbWbu6t5tFp HZB4vcbWacz1x6VegzQ6+8zWbG+MFtYMAmP4JRNuwS8n8grtjdNe2y0E/znizlF373GgA6yFTh1c /uB2F0anUFpziy51/C+3FyZCmt24zCHioHYKq145zcJuzJDVnVbltGd4Vz4TKXepdr/FLxWRraHd 9QQQ8mztNrYuyA4mpUn2owAHtV1o1CmZzp3e0uvBV85tPlM75uCu0GFkSGnnwmFWDnDxGJJVU/mP mdLyJo/BtGb3biatvynMu97jfxi9zzPiOyiR/TQgaf+DM6yN2++cMdliyrV2CpaRbnutPw9af42k mtb9Yg9hkO/gsrXunT2sOXDB07oIpzy8saZ3xhimgxyoVTqVEm5qJGKt1DrwzonUgf5PZQ5GAAIJ Gi8lzNVI5TYWHjM36VhA6mimUiuX2qnQTqYdd1C3h/VYohIVfyIqJnecOgnZYqVCDT6aC3TaVylP hpuuRTJQ00rkVqYiFw0WRj+RWHfS9oROIFDuuBWMO9Gkk4nsXCfX0UEZMRAHo6H3bIULrWHhThK9 H6l85U1WsYx/ps44sgaB0U/dSRVIuSsBKeaUj/VpYgiZA0E1Jg26EzFBOnKH13GcZBNpdh0/XVmj hT3eRuLMHeUAr43XGYX2wLMGhsZ59tB3R7E/SZyBLnSUYSPSwFAT/HQySDocw1kXwSi2h/vKXmX6 pjCg3Fa5nHt/+IW919x7rbVVh2tGeEPwHH0GOZ8sl4x1PpD9HHI6vDAaS7M10+ur6928lVH/YaXP sKsIaWJs2+Tq6dV0QCbt7BYYAX4BanllNHd25+AyEPYERxY5LFiYpF3YEa7Wp8lXbOoUwSz3VyZV KY1SaeRybaa3kPmh2Dc+xNLgEJKKZjDLNqRmThNYWIYUULAK6FXIAguZ3ki1x7lDKhpIs/qIX3ud uVXfBa0jjHlEV8YDGe7g0FsPfNdf2lDRPUjxlde/HiXDL7dDqTa3gSCCgtIge02BcG8OPv9obQG+ sIa3MDvB+CER68HkvtSbldnxhccfiR0QQKgr3I1If7RHj1DvoVi3R/dy7z1f/9Ow/Z8S+0Hlv4j0 p2n7w7T9XmY+6907sq3U/SKyH2BhIqURKc0Qumj8CBMRS7UEmUR4yNQm0n4kdCqdL7Ue7IA/bYMX SqQLE28VAokmjWtM0ruphJcXydl0IrQscsZ9741bqcrkBp9oTKS2beHREeu+DI6jUpP/MRnWg4hS 2vguIFaZkKODYzDdOqMNZD8S+LTlTprBtA26uTIOPzP6uQZvwvgCDSxU/iQyeqHZDzUu1rjKGV67 zcsV6Vk3Sp1BbPV9jXcVLtD6Ccjiei8iUsneJjgitnuwGHkoRM7QVkl3l0DhAKjcGJSkWHWYqF0H HKezJbggElMk+VROYzFPlTSWJIFSJy1HZkmPVnOAlZj9zBmCiXJ3lDmDjPRiEkBAi1iBPVnG8r50 /42FU9A5R9TBR3w25uAFGwoHcKDPIdnPXzsQqHWsuV7fup3rETALXiCKyG5tCReAU1qgBtAKgICQ Q+LduE08EWkfLwXZs/Pojd3ZAlygCZ8p1Hqp15duZ+k8LJ2btX+/8R4OIRwu9ZTRa6eWKzep/CmV Ps+Nh41LdNfGb2yDxsysbwlJdRZObRM0N1Fz6dcXfn3utnYxC0aY21RldY5J/6UcI4Ar0gGJnEHs ws4ubM+tGkABj7yAZiP9UZm5hczPQHWkSgdpcOGQbV5EdaE3Fw69cumFDR/aLKH21Roy89Klvemd M7rxpvfelNQauMP7hADkbmZTk87fp/TPOvQ/9ymWmyp3M2r9rPdu7cFjINT9SX3Kfhh2fhq0/i6x H6fU+0nrvUh9HNZ/utYvfJaZTzDUAv1e79+Qq6pTWOmmO35wRrf+9C6RgalmqjSCKRI+7Y/b3hhq kJ1ZpGZh7vKVg9WFhQE3kXvdIDVA2yQXyEFM4J1MZVceqeUJZApeGzIvVFu2UHfFVqDSgULLgweh dysP7hyxkRp0YRHrsfWGW2dYSGwmM7FCg1MKo1vofI5QlyDbQIXkhCW+HmR4UsfHJwYb6Gxm0XOP XfjcOuptEmCEKz1mlfQ32XgeDDKL3C0v7d6C9AGbbCNpi0/sPlZhdgOFcaYda9xC/M8isYwkMr7T F1J/Grpjxx5YeCKsMemGJ85CqYqUMpINidWmNPx46SmxPvHEviv0HLGnT1hH7sXaKFK7c3CEM8zN UWGKgTR0Jt34v9U7b11SR7mw6nCXc/BCxFxiCHJqbZMNnIWBzFzbkfNlKBlyfAZErMk+P1n4BHDA dw9eG5hC4t1H7UNEGh+tXCJ+AJxjRO6azi1IHdIrAxCozMbcblZ2cw4suHdr/+EYN88pCIW477n5 WGl3a0gam5zoAacwGiunvnZJBTRMAd7e2sNzH1deYxO08BOPKbcLmdJsra4NK9Zw3B43MyBvOlcG oZdeszAeEvV+e91Whfs+Rb25Qendzxr/mVyrcMlNvNLEwxqZVsPHlUsV1wNloGnhwE00KqhEp+1M b/T+x0DCq8Hb4i/A43UypeFObmXunTu9BSggvQT6nd67g1gyencQQnAHiPMh9WHKfuy3fppQ7/uN nyTmE/XlP/j7v7K3+Phn7u7Po8ZP0+vFpClFzqBF5j0ICNCzh5+tAfD1CGLyJzWfKP9OMKV9uGOV LclgQSRhylda5H6F0ips5nq7mymIwWdTjS0tMsTcnrS04SOphVcpBLwr1j3oKINFAIv87YS7kXr3 +rjmQmg5/Docza1urtDeoO71QUaUJ7QCRLvQhpePZCqS6VDsuNOmPny0Jg1fQvQ2XAhCswsNM3P4 lc8XFhVrrRyGy6ZTiFL8B/ndRTBYBqRNB6kWz5T1dQzWdcuivyND2GErQFK9yp/uc30eipBPodaL IK5s6CihSpV5oa4i8Vzpy1gqQ6GK5TKUlimpXYWzSKwJmXhrjF2pZwu8KbKu2rUmtDVuJwbviVRq DAETgWtJfMsU6H9jodIfSv0eWCCHCHkX0QuzWeq1SifuYOs0YXtfM1LpDz1T6bVSfSy1R3xypQnm FJI9VYTr7noSsXKbK68Ji1qZdXJATI59+VPMLR0IFXLbh5wXe+2525577V1M7WNQSfsAbR90DgHR YzuXgohaknLO9gqq3oA9bxdqbUVa+5JStVy5TeTPuX4zs+5n9mNpPuT6I4TTNmAPUQ/CoFShvqhK b1cWqS8wR+9T7W5u1wv98ZjgnbQrvUW0zfgB+n/jdpcO+6ML9xJvzCFUUhr1FT6aBBd7kCNholau 11P8WaxWrNUzvVnanQymVQRlNCGfYvl+5XbwGHv8RWTeiVcsWIO7XKEk6pNIvSN3udkbib8VuRtX aEyoDxp/A6Qg+CXq3Y85bgrzSaI/gizGrfc6OZX+DAJyx7dQaL5wnygNZ3wLpkBYEpWicIXBQ4fY QksfPVjThis3r6a+5SuN1OwgAuceQpoU8iQaCyyECm1Pm/YUcduCg051qjTxdc4cN+TevYFIRqgr sA90pNOh0kHwQ4/5o5Y3aDnDpjGsedOmL7axCLmQA74mwKX275T+nTZ48MVWYfJgikSlYxWvQLsC HkmTJvDQJ1YPBrZ0RpAupTNeB8ouMZaelGmjta9uYnGdCouEHMwFVh/iZzMzZolSWMPc6M3s8SFW D4k294QSdBBJu3S4ibpbcsF1tM7H22K6SserZDQLSeXFPBgtw+mhUPF5fN1EnZFT7x4kk6t0c0cK tLGnDmNz7Mp/9M17Spn/3QE4ZfcBBWpYkppiakVUfXMDPe9D3jRT8SYVb4GRQn3IlQek6C3UETS5 DwvcWBgPmfwlkb8U+v3MfMTHQof+IVhAUAEUMyRVq7mPmH3MrPxOaTcWUGV+e+k1VnArPowqZBWs dwc+vVRqqXA/1xpYpVqvVJjx1kwle1YL6BzzMdduEuVTod1U5j1McaHXyB1sh15adK404TErtVlp jUC61QfvnOmnHB7BgY8AaogJjYSaO7oPpo/24C4SaxtQOSmsY2G3dzGMQxtv6ZRwiP8NsEyuiDAA Rao++sJtpDx64r0nPjjCnT9prEkhLV8Y0Fcta/QhVR8k7u+wxu7oFjY2FOo/jt4G9f8EIpCR9GHN GDxO4BSoD+P2z/36fw6bf+s+/GnY+JtEf9BgMahPAvV53Ppo9u5VHrxA9FgkE4eidj/J3AdYkmDa SmCBFQYJWeBvpd6DMakjhoGFUO+EWsuTa4nRzkwq1dvkGp5Ge2I7lGGx2UihU50mO6tyywc1TOtq 717gboxR3YIRQLaH1JHb2vDBmeIvxmYq50864ZTJFLLhnGl8qnF4mDlpYDkiflbbmtasaT2QWqTK SWcSqe2SM5dHfCvGP3U2t7szf7CKxotgtCAjbsmc2QyZ3x6vQ3kTyitfXoSTeTyq4vEsE4t4ChO9 ypXYHvgSE2s9cpXCEVO174uA/7DyxFM2PuVjIGIZ9bcZzHh/FgyOpbhKxNQmM7CeFvaxMja5skil 1B+V4SgmFzAgt0iBpynyoTEMzUHqKP/GwnN+LTdwoMbJsdTKbhI5FJJqTYiitVXLpJu58bj3YBCa 0EtLs0HogFyoIye5wALis9BuS+220u+Wdg2uAWLpEBLfDbwQr2E3N6R7aotodadZWvXMeJy5LeRh 5N4cr+l2NrDYDrWwkLSbM621htSx4KCbC7091zprk16bTC4/pvJtJt9EAoBwt/XgTdrXLV8kdoii dji5L9QGPPjepSu1lhkPpV1fBa0EvOBCUEHWPvjT+0Qieyz++CGYPC4sCrYUKR2YXbpNcovPqs9s AttDzB0TfheSJvPO5HOhN0LpPlbrgVwLFHLqlMrUyu3CdATifSjdxgq00Adn8jEUH+FcUrVj9G9h n4eNnyXqvd2/14f1Mf2Frf192H5PLuPR7yTmPUhkREaT/F2kPyjcF4W90buP085nlbtVOPJdiX1v j+5+GHajf+NOau64LjKfBfaL3LvRR4/GpGHBI5vk3rUr1x3x0REeArXhy/DFpOrBntatcR1qfwbp YndznZgIeO1IbnnThjOpm2QXq+lMW75EQeTYZCREE4JHH9SMYcOHCFd6qczHMhtKjC9SALWv0IHG Birzw2ukBl9ZPRjzWKRioZMInVBuBlorAiRtIpAS2HmHyxwutVl8cm2pSsajL4PRLhFX/mQWj4pk mMWjyO+7Nh+4/dQl7Y9yi3R6TJRBKPCJ1AMi5rYQy32QBegm0HlHZuZEI8mRNQ70Ye4KmT3NrOnM Ix32VqmxKawikH2/GwRjyxxZ5kRVu5JM4Z9BMNGVwR/7SEEbPheaH65h57YPV0X09VopvLGRYz9F k0+V9nAgxQsd8kivc4rZjUcOp5Z280ej7Ey5ARB2XhNiicwljKjr4RrZJgKgrkUN9euqIevuQnoT kptyu4hakytz7VNKKoCuO0uNq3NnVuRIgr2E3XPI7112pjVyqZZKMKrAwh103SkiPZGAX6AYVLJx OzO9mSv1vcfsXWqm1dzhe0/8sgxap4Jb+M1tRC/cTnQ9Pi40II5Ug64d7pIOYec3Pg1bXZp1eIpU ewR9zG2IJRgf2MOHVAUp1JDtJfadMfziSaCGx1BtrpHuDMYZ3Q1bf82IfKoH4md/+gmqBo/0Jo8K 9wkQACMg50+aP0+ZG4H50q3/XWA+ghQE+udB4y9676PCAxc/S+QOBtYnvfsg0TcyCyzgW5/U7heQ izN88AgKgGXSjlvhPys9cpGbFPjoVGhQgYZc/agPbz2JQEAf3ojcB3N8F0jNQGzZ44YvtEAlodh2 x7VgWkuVdqJ04HndSdOdgCM65qgude/l7h2YwhrVIZDwxRhcoPcDkbOGbbKnOu3Y47Y1abtAhEyb AvQ2RCNbWD04lwCKaNoOx81SYcA+LtSa2ootOrFZAgGXTywGzBXrVG7zpHQ6nmJtE2kVCrNwWEWD WTop43GZTpe5VIWT0h/NfSE3J4k68CZcIPCFPs70UaqPYp33ZSbQeF/vIr3rAq1POqbALCLVB32o /dIRyAzcRF/EqqP3dI02jb4wpVWF971JGIzjSDCMviww/8bCJWSeyO2j3lvee027zzH3DIXvgxFa 0CQ7t4Hw3th1xPYxpFcOXPb/z9R7KDmOLcmC37H23rwrulQqahBaECAIrbUgqEVqUVXdfWfGZs32 y9cPa3d6zGC0LDYJMrPDw93PiYhDfMQr9AMZpgQXIDyUkOvCx0r6AWmBx6X4UkKlME/wFK30k6z8 kFe+LRU4EbwLygoYeVuSCUhvW+5lzZ7LyUvHvHXs25L53rEfLfv7GvQkvVTMUzl9rpjnkn7MadKz VqjQJH/ujP86m//aw+PLuA9U00vNA6evl9ZsOG4i2/DkWnlayd/JqRDK05JsQOwy7r4itR/nQn0o 1eealN6dwCApc5+TmP++1uA7ToVwLsTXJZzC/GUJ0ue2Ibt0pwfSUjfbZbCQ0A9AnLyLEPCQRsJ/ PjiQaq3T79xerFxHym3r0iCFTCfFeKF4F0p3yXwSqoNQI9PmLfGbLX8L57fh/CZQr2zxc6zdefJV MOsFCuwDafZB8sdbMp2OYTS08ZpsPeNrMLk1yXDZw8IlOxHLhCn8aWQMCosubXATTb5hxK9CxLOw jsRNCK8tr3xxE8h7OAKPW3kszM6R7NOpByJ7FrUvpRZXumAHxLkCLwCCqMg/YZm10gbHibXFVxZf WGAZ2A11GWtNpDbRrA3goJXWUypLWHnKQ2a9FA6YokmlAiox4ttUWl92Jwls8QOpD1y8bNxHIuy9 fWkca+u9c59r46FaPJNa8fB+ieetY20fKniNYJOZpa906WJbu6vKWbf+uvbrzGpyp8rsLDYSX2sS Y5mamxLs4G4K99wGwNGx8WAT1qXRVVZTOPuNdd67p128btwmd0NvXuXSXzXbh8V/HYz/52zjh//7 aP7HVv/eyKeYPkbT7y3pTfjP4/yDVBPxjxA2FffSCAjsD1KYoX5A59ewzOKfpPSOHMr2A/yCZ2qB dLGRVSb5OylGgu0lh2/iEWSBWz2X3Hsrvq2EpyXzuuLe1/zPLRQU81BS70vuX1v533ez70uIJfoh mz7mzBvACE1Vq0+V9rFa/NySevLnRjhlMP4ECM8V91RyoBUIuZeaI/Cpmbf17G07e90ozytoZmaX s11AHXOoQVAVmaxygNmM+TPp3Od2MfUI+INTKiRMUndxOehwjuCvzHGq9e6BglgAjrqAaxGTAbf2 6cYeHzOyiAQQrcNJqHwO5c/J7K42J0uHhuZfOmxlUNViYjFfXfkOoe7KNwv2C5J2sujFi7tofhvp N9H8GlrIvWAB8inTwQvjRKcqm80NtrTIhWBuHCaZj5LFsPWZwh6m1qAKJpkzjMwhGKFxWMin1mM2 kdB4dEe2zCQE/D5RtzC8PinqeICxhXcIIPBksgcdiptYbX0ps6DwpS3ZLzNhGdYxIlwCNEABjYc4 1wpDKEzoNDEzuNRgK09uwlnuSfght/l4wUTzKb4qwUJq3Ke4iV5GUuJxuKpIrBO5ieUunW0L+BGl CfBGAeSyL81NtmhDtQNz+fwulk/l4lST8Y9bYKR1V/FiGWjLUNtm5nkZ7Ft/VXvHbdrVblfhhyxL zcBTAYdV5e7b6NzFh5qMIP5xKh67YJMvYDqed8F5HZ020f0ueNj535/K8yY6rdMms9vir3Wkf61n /7mb//ta/ddK/aObvZX8j0b+fTn72cr/udf+WEtPFf0OdtjOyKSXA0SF/kF6fKRfiEDAv5HmTVgJ FhdC/eniKZCfX2oBThyv/EnmxsCAzJ4K9oiQy9kP8hYB+uptLf2+1/48zH/fzF4a/pcx+deWnGn1 XPLnhL5PWdzqvZbfavmVbH6R42thMc4581RxgCGwCXUHIBxi6pTSuAOw8N7CtpD2nHPFHwoGYmkV j3fZ9AHfs4HFg2zglj4phzvmEugG8Q87cC6Fbcoccogl5VTIx8uu9H2uPoNBKq0yJ4nW38XiPpV2 ibSJ4DjgkoT3Tlt6k11Mg19C5WvnDDuH3rjs0ibbyltfiNVBIN1Gyp0jXpv8V1e6QTC78nVhQ+f0 bekbOZpkcZeZw0C9ji4dPZkxSfRR5SAJs+mCyw0umE3SOdO6QmUx9cU+dCHd+NMmmFYBHjlSleTh K/GtCzXFAhHQVAS2Hte6PKTLypfWvrhyudoCQi+vgef12MJGipDhApDbL35BhlOAXsIFjljDIIRa 5czwNTKCSqFyYCVkQKB0pSZQClsMNTpU6cqSOk/d+HNcnT3LTDGxpS412nhReLPQ4GKDvyxsqqU7 S02xwg+e1kZmG1ld4mxjlfSABFILoZUtTq17WnpbpPQYPsU8585jE7x00cs2fdxlp3W0rMwy1ZrS CMBosbbGi1vvvI12tXVqbXL4zhJewzg2+v3a+v4U/zxm3w/x7+f6fZc+rtwHyKTcONTusf6rf+HP Tv7ZSq8F914JuJ5S5o9O+a+9/jt8wQp+mYVKgbn+jwNp8PyTjLOewyacc7KySmbFXDqXf3ZkQh3Z gFvCSosPFcm0uKCg4Cx+EPrgjgmFcMV1TqiXgv25JM73+2ZG9sLWCpL884VQiEmvpceMWzljXK+V /IH8XCpPhXxIhR0cawZVz95X3I/N7G0pnTMG9zymU3yfx1/LXIh5sknHnQA9iP+SmOjHhntqhZcO qW/ahUwXsNtYOOUKqY5IBdjnQ8otQ2qdMOdaPlfKJuaPGb7V4qGYdy6DJN/a06U97TwWwfZQak+1 DkJ5LMWVP+m88SagVt4E6Fi5085mG5PZeEIg9UNlEMg9V7j2pZtAucVFOjdBNIuhI1/b0tWC/4LL 1+6iRT/Q7hJ4BIM09UTzwWUW8SSaU7E+zU2uNCFR2Bo396jKmTTepA3oZUAWtZYh33hs5/BrX9iQ fWEeQGg9tnaY3JwWJtO4Qm0DBVznkla41gag6MImx+lWHsJeaACHWIUpBhYaX0xNYhxym8PnFpZY WDIec4vDMymesQkcCkcEHQTqNNUBUrnzZvmCz3S+sZXGBlKU3FNWObAwx9VEWhOqFSS9K6eWAFw0 /uxQutvcWWf2JnPAIzuy8TG/WHJ9lel4JOGa210w34T6Sxt8rOKXZXC/9GGo29yoskVT2XVpnw7Z 47nedhEoYwt3k+pdpMJNHCrz2FikW6HUocR+nqLHZfb7qXvs/FPrbfL5y9Z/Wf9Vp/q9ESFsjuHk HFOvJYeM/cdKgTqC5n+ruY8l/8dOJuXWNffHljRpvhIKIEOwfwmS31ezP9cqgAMegQR6hxfo5Kda fG7Fj7VymYkHMYO8NOy8PqIUYuYVegZmvJX+JMOojZdae67Up3L2clksequ1+0TYB+xTDnwtvrcG rnOiQGyQhrJwcizYfUo9NezLknsoadx5afd34eQh554K4SEnm9pk7TenDwm9T+ldQt1X7DYZr6Jh G/Qr566wetuEfWrVU6FAVK9DntQ5JMI6ZZfRtItJCQS00Pe1/dFZu1Dc+dzWhwZTY7W39nFn5aXR IbHeVlpu3OKzlu6wsYflYrALuHMiP+Z6A7Vg85k68YRbV7jJF7+2GPrJvA9HjEd/dgex5Km9SB8m xtid9Rzl1p3dxYtBYgwBjcwaRYshDDKCs7RZ6JOVP+uQjU0GUMqNUW4MK2ATas3nEOotJIcj1CZb GnRhUEBB47Klw2TAgg2aECob3p/KDbp2uMqiK3daB2wNdgghhAgWwAK1d/ELIWQPC15YE/mkEBQY IligcPnUYhKTIRixuHTBVja/dOXS4DKdzXUOWEjmMFB8bgiZxZQecyi1PbRljtwidBFP2pEiYRkK jU9qa+EayKnl9WILXbT0zusQSuaeTFsNt5Wzr93HVfR9nd7nNkTXz2XwgTQezna+dAiV+yZ43uRk Al6bPG6r06o4tOmuirvYyS01t2a1vyg9PXW1NJgngZ7jTxTiW+F5s4n0+y7cFPOabDj+te/8dsnG D+n0IZk+58wrEfPsfUa/lJDo4nvHfV/B5/I/SK3R7K0lyucXCr4v5e+t/PNSaAdZ9V6KoInXlfy+ JsVCP3fq73ty9Dnidun1O79Pdh9yCkoefpwMn9ySvrnXRjln3EMuPJfSQwZRBBHFHCPmMROfC+kp l47wgC7p8N1HAml8KNlTzb6txY+NBCw8ljQ55aqFbVd+dBAz0jHmTgkoBoad1H4QOCTUNh5XDpTJ l8q92WXjLpruc+FYyAACnObSZ1dIpAFbuEPIbyACvPDUwJuo+1hoLGppTZY2FSvEBdwTIGjHFCYa TpyMLAP3bfxRbfbXLr0PhcdsfgzVjSMHwjAQBrk2ttmvwEJhjpbOdOnSqTaAO7YEWOahPxuG83Hh sK46tJWeOyN9PYAGOKLypqk9CvR+aiGYmXWodL7SurDPUmWP0/mgssbAQrYYgymg0ltHgrctDaZ1 +KUnbGKkdz63SHovSFTPoIJSk00WdOVwpPw7Flap0MDbAjJgigsEloHUXBZX95l2yOZ4Sw0ImOAU JbeF3GObiKwaHUsdN2wcIr22gbq0pcYSG1sqTaBGKG2psOC7hdJhG6AMIA1gqUj/3SoU4VyOGbLQ fJeQvbxdNj9VC5iUU00OPd+X9jo395Xzskl+knl9xVsXPVXuc+W81c5Dqp9i9aUyfq6915X3sHTJ Sc3b+P1UnjpSyPqwStaZs0ntbeasU6tJzCyce45iW1LqihnoL1pUobFvgn3j1ZBYmZr5f60jkfXJ 9exfm9lHIzxk0NtkGxpJ9Z2MrVB+roXvK/6j4y+FbbP3CxaeCH1IP5YKAUKnwlz8qkT96OT37ez7 bvaxVZ6X/CGfLIN+ad9U9s0ho0i9BBkaSQa0/vtOxYf+DldbIZ4ZiPy3ln+pmFeyZMQ8FfRrzZzT cWvf7aPJWwuigaoXoPy3+fh5RZaevu+E9zX7vmJ/rAWyIZ4BAuw5FZ4K5RUZu5m/NvOPZrbxqV00 ad27yr5eBne7dLDLx200Rv5v/WluTXJzUhPxDFHBr1Lu1CiPnfbYqmcyHAk5dgjXHIhXnUO15vi9 0Tp3ekphQoVjKpwrwBMmlGqs3todn2KhWgA4Qq1zO28WSWNrel3rVCjfAQuNSzXmJNMGtTkNZ31X 6iVzZG/BlYexSbvq2J4NXHVkKbehDkYYZPY4MK5Kf9hGbDDve7N+ZtKtxyf6pLSofDFZQhR5QrFg igVbm1JlSqVB1nlWAdyuUHt8BsMC+xDJdSDnrphYXLSgU4trQ2kNno34xBrF5hjZsnC50kPeVmCi VyFy+KwLLzdxhVUw63y1MKF5hG2pnpfGvppvUtIivYuVJTyFzdcGm8/hQSAXZ40r5RYf6kwMK62T Jze+vPZwSRtP2gczUkCezB8Kc+XJuPkhXdyTEwnNY7TYe/ONo6487RBbT2Xw0oRPVXAq7F2y2AEF hXkqjT1hEOv1GP5+cB6q2WM9f2wXzyv7cWk+Lu2PLVk7elpHxwZew9ovvd3ab2o7yfSuctNALxJt u/LWbWCanOcpvq+su/+xv7CSf3TSa8vvE8RMbxuP9ukEWPjoyIyLHyv+50b4sRIglhC3p3T63pKB SDDLYJPXiv/eSKQetRT/XM7+tZuDFJ5a/lzRm3jUOLeNews6eG443P+FlHAwpDB1o7xUiFsKCuf+ cp3zKampvrQ/AAXPNQQ5vsOElPmtkEaYTTQlNXI1d98ybxvhZcW/r/nvGxG3fSKiS3pI+WPEHWPh MVeAgrdWxwWrvvYGjd3rvMEuGb103GMD/TOq3BEU0SETf3lM0jgTwyZrj536tp2/rnUoqNIaudKV Tv8WKrC9tyt4hEw+peIh5vcx3Oj0lIk7GO2UBiPUZu8+gcGZ3qezNZIwUuKCyudT+IVYGfjibaLe bQPS5tY5TG1SwawXacPcpCJ9jCvUKV8dOXKfPCr9YD4O5kQ4xfatr1/bCqQUfMS4JSstiDdoIZa4 YI+/2GGlMrlEZSpLgEeGoUBury6byIjeFSnDgyoQcocr8cVSdZvrQEfqsJFBFmZzG6RD4xHsAL5Y BuIhU3fJDKosM+jKFpaesgm1Xbw4Igjb+X1nbHN4ChGpHuSCT1w6PKL9nOn7WC1sPjUYYj0irbSF wmAgzDpP7FxpEygEFIg9T24s/ApiY/G4Nv5s6SqNIy1NPof1UKnWle5L55hZXaQ3vtY6SufOVj54 ynps3PvW2QGMlbZNxS7iSO82ma45f1k5b2ty9tDrJvoFh8d1CCx0NQyFVVZWnZqJN2/yeZ2rsSd7 jpDF+hZKafnXTJj3ln+omENNb3KqCQereHzMaRjY/9jM/n0jf18iUVOvNf1S0adsck4nH534vZPe GsikX1gQfgAdFf/HUvr3DXETx2x6TMcPOfWIq5i+N9w7fDGMdolHgh34kY8GSmyKyHxa8Ydyeijo 56UAKjkW1CrsreP+c0d/bPmPnYD/uiumq2S6zTnwwqmkycvyKdm2W8qXDlAVtuK1nD9ms0Mknki9 3PxSpCe9LsdPdX8bjV5b5c+9/lAK5wIemakMiC5xRTox6UPMLe3x1oc/sh5bovGeGiVUr4PZnS/f msx1IEONACykZQzOYhMJpHkhFMgqjT/ZBJPGnLYWtfXZZzIcjI+1b5H+NdS/hXov1Af+rJeog1rv nTymsaadQ+9IE0Q/N/u5M/Dm14567as3sNLwEZk+LqBhLD7VWajx1BrgJnDTyWKULsb7eIbAOyba MdYQVGCEdD5F8EM1lYAAREhAwQXACyP5N75SuohJdemLMPuVTTX46IQU16U2GxhsYrBE5IRIziIk 4paUZPCHTD4X2i6UU8BTHuULBmG8vSRzPL/NpW2uND4H8UO2qkmfndz5ZC/vWGjrRModuva5Xa61 kXJBH7w2S7YeEPD+rLSIdsp0IdO4ciG0lry05ZWjNCC1hVAabGExhUUKdE/VfJspLWwLItZUW9fe RMEhS45FcF8Hx1JbpXwVkZafbW1syaAD67nzXlrvvfPflz5+eO2Ch8Y51NahdZaF0ZVGGal1ou0v Z1otU31VLDp489JMfPG/sQAnu4/H25zaF1NE2msHjwD5Lf/eij9bRDuDkIZ2eizYp4LDI3HNtQhN guu1EolAqsSHhPlBdorV907+sVE+VuIHXEbLPVb090742UkvBdyH/IPU3ckvFQ8l9mNFNP99zR4L +mUpft/MHkpml4zxlqeGeV9xbx2HTH7Ip5uEIptfpbxNp1D7T0t2TciLAmU8XQZCksGSMGKkdUW4 z+W35fy5Uk6w0vXk55Z5v0AGQLjsILN4fg0Fa7O1AW1DnaCLUvajMf+19R9bYZdNl+Qs8jtETmNT NVkOEiFFGgeeQiCt97GwjvgtqabG/7tRrN45wnWmDg+h+ExaL/lUhSn+ZkvX7uzqFxay+WBj8d1i UhkTQCbT4aDvvNm3xOwF+q2Dl83vyOlU5qgyEduwxrCfdLqA1O9VLhm4RBp/XHheBqTQwAhbXGUC CFSsjguDlEUBqptILO1hGzCVxyUmu8T/eviLQFmF0obM7ma2Eb45qbhAlEIvFQ5oUd7AI4BfyIGk +PMCKSKceDIfh7NhptOQMbtI24SzbQjxw8XmKFiMQFuZyZSQRg5YQwIWGrBDIK5jGdJrm6ldrMQm E+gTuJX2UstXO2KgTmwRVDuOZ3Su87UltraMx8YUibQzAH86W9CFRXcI8hTmHb8+U7pi4xmtawEL 69hfhcY2sc+1voy4KpZ2DZQ/NBsp/H5snC2kV2k/XtocHirnUBi70lzlizKarUuzKxYPm+C8co9L B0B4O6VtOssDMfGF/8bCOaYOyfhYTO8rlhy4vJLhmh8z9r3gP0o4Qf4+4+4zpHHSa/Ncys+F8pjL 96n4lMv44aVQPmrte6390eo/Ou37Rv25V1+W/FPDPtXs+VKh9LGULoVMxFzDd+Nn0lADFGTUKhic chrp9KkS7jP2sWDeGu4PYitIx+gpo+4L9qHk70vSGra7YOG+pg/5+KXj/zzOX5cS2SYLGSTbB3yf Unks5IdS2ifsJqaO2eShmh4SbhtyL63yupzB6i4DciZabdJbn4fgebrs/f1cGx/LOehpFY0gxlqP xB6M88rlj7GyDpB4aWDhlCvnYobkuU+lxmEcYWJzo9Zmzgn+DsCjmqt8LLMWO7GFqT+78ZRbaHtI mpWu74w5oJfN+6741ZO/ejNwx60/v/XAC+RckrtY62fzIYwAQjHSJrE+zqx+7U4KUq1KEjvwEqn9 QOnhy+NqbBANnDK7dIFQiQwidibLkFtGUmLSmc1VvtRFcmmT97YuDVJD1kV81r6UOUIKo20CZVMw DtmqTuGd+cKZxvoo1EYw9YhMyBVc0DNw5cmC8uYD52JqwCldoK7DeWVLiU4noCeHh78AC8CbBxoV zpncYsAgpNjJZWN94kj9YDYqDLa2xXwBIwabD0QImc5mcxqkkM5pYjGAcZMCoQT66Jfcajy9cvTC mvszuPJZS7pKZxsAAY67tfa1uUrny4jU751r71y6x8tOxLny1slinRlNPM99eVvZ+9Z42nlPO2ff 6pBYzwfvsNS3tbZt9f/GwmNG32ekwgfO9+d69t5Ijyn3mLCvKfeccueUAOEQw8nC2yoPmbj1kSoZ 5Lc9uCwWXkqkev0DXrWYPeSwk2Qxf5OMt8n4/MsLlPSlxZJ0VsL/HlMAhH2s+VMB0YW0PP21oXBO 2ceM+7GU/+gUaKrXmntrxHM6vUy8Vw6Xarp9Ol1Fg3U8uK+pj6342vHnkrmUAFHnHCjWn0rE7XTp TxDz+BSgG/RxJMcozJ6b2bkUa3cILKxcboPATsT7TIDjeKyoJ1IBKz02PHgK3qRyBkuP3oY8sFAa U+Te0iB1p09QqiHZzMKV6CNkzk2gfe+s13Kx84S1zZYa54tjTxpZ3NBXbj35rrKmJHTn4AXI44nJ fQqUK0v8HGjXjnLlzK6jRT+e9wAcwCGCoJoPPBn/HEQ6kvxkFdGlTbCQm6Papi6DwoZwHBsf/2uU UyKvAx5+55jJCPUuYEuHLj3kfJY8umwbCORgFBdkx6xIdR9ZRIKPiGExDBb6CnzXwoP7bO0hD48i fRDOEepUYYH1OLhgJP/WEYGLYD7yAZMFVbgw5rPKkSF4akcpTCEji6tCbiLmp8mCSRDqlkSwEJD5 Zr7WV5nPjnSXA7/w2q6YXSKfvOtS1AEgNGAZW2rcWUlEEU3WY122JliGvtIbd9H5Vg6x5AN9CogG cFjn2irTWujGWEXMd/Hickatc8idbWau4kXlz1JHaiLt1DpP2+jtED9t/fu1m4MZfb6OpVNn7ZpF m/+1jvSYMo8p+5DCF5CmtvearAi95sJLwr/gsZZ+8cJrDRYQO2dSG8OVOz1EPFDwVmughks1KSkl fSjFXY7UTe3SyRaWAS5jSczIQ8mec5b0x1UEC4eMuS/ZR2KWyUYDPPgTPiJhgUF4ig8QRwY9xpLj pUr+rZLPCQf0HUJ+l0xX8fCQT44ltc/Hu3R8XyIMYKsRyQhUSF+6toebiIYvIKcfgjXwiZmyjch0 snNJyk3vKyg99ZwpD7mEt/yxV17a6WVuzOKy9kVt42njIisOlw6ZxAU4rH1+C+ykyiGRyIBHfdTY +CAQ+viYzn6szKXFZuq4s+hYHjrclc58YW7/V0I0zCTRxoVOudw3GPBEu9Oov82nf7fFL458pXNf DOHKlm9c6c4WbqJLJVJIzoD+BrMc6v3cHlTuuAuQMEm1ajrvt8jwzrRYgIwossh8qTDcxZB/wtJH tAu1zzYBv8vVU623gG3ArcmZ7Ezj4ZcCNUDmSbnNZbbY+HLrckuPW11AVNgTKLoM9w8FeIpLDQbi UKldEREeaKNAHydw2S5fuBBjUukolTOr7VluACl8tuBiDd+Tzg2yuVAYArAQm+NoMQzm5NxSOPTy svGXLqahNgEcEn1a20JpcsBRaeEOYrogO3qZydau0PgCMAu/3wV6YStghHQhZYaQLmDbFbL37UvQ gZtscSjtE0xEHe5Kf134q8TObdVTWU9jU1ve5tbzOoabftlmu9IrAi11Z21qlIHWpot1aS//R1/b a8lDzJ8T+kQW9ulDSL+V0s9G/Z4rb4V46fFk9wnVITzm17g6Z3iMGVDAdziFBqmJxXUZiCEdM2ab TiBj9tl4Ew9PBfWyhMNFoPLnjHmATGrIBEhoHtjzM1k4ZZ9y+j6ZAonvlfS9lp9z7hhOjsjqKX3Z OyPabOtP1w4Nf1ra/dK92xfUCconnwAL63gIXri4AP6cS4dMOGXCS3MpwG7Fp6V0qrhzqe4SuQvJ WZm7lDT+PJYEC8eU38X09zX/x46/1PgBKb1DNmncQaRdIQnvQqQsahfAjyvbUGjtaWmOA+U2Q2a2 pq3DtP7klEubgFiPHLpCuHW5K5e/csTrSL3rXLG12Fyf+OLdYvo3T/hWWWNPvlKpv2fG0BK/KdRv One14K8N9mrBfAtnfU+69ZQ7nf1KpkpqvQjuW7td+nRuDmtnkur90hgtyb72tDUn+D74aCBiG/Er nyELYp4AIlglUheLNXIyngzZy8nR3Dri1iG3T8RDqq5CpYv0daxB5sEW1e60dKjMnqT2ZEnOepCR jWtPjA0mnE9JoRGidz5JrGnmMoUvZjafQef7uA8ZC9M4syXyOWJ4wRVkUReBLZWmlBi0vxgWHo3b JiYFzRPqo9iAfJrgKh2+AuN4EoCAwK5sAEGK53Ll4KNlUiIVCIXDVWRUrFK5auWokSbEczae85nB 5Sa+A35BCaTQkRF/1jpzlomVe7ohM3Nh4utCGxltqG9S46HxulBrwsUqsxNLSexZExvL3E49gMKs /sds4YdLTj5E03PCvtfKD3K6pfF7M/9ezl4L/qEcn/JR590k80/54sspHb+37HvL3efTQzw6JuP7 nEJIX8bLUyu/3wWDNZEx/U3UP+aT+3L6XJMq1qeS7AXf53gZsQZEIOXTczq5T8l+93PGftQyPu4+ YR4ICtj7lD4lsO1kG24fMitn2hiT2hmSmqKWP5aw+dNNPFoGA5iIc0HGeT1UystSu5wwDlEEtyI8 d9JjJ5xK2ASxg6dIyMluh5yFEcD1SGwFVBz1c8v/WM9OGbPPIK6G0RxB26vI1hhFXLbDHmJSzFYa Y2Tjyhy3DqnnwZP4GrsUiZpqzGm9oGKpF8nfGnPY+RRQVpm0K1wbzGdPvIpm/yzNm8ahAvnG4r/G 88Gc/cL2/6ZQX+YseGG4YG58ue8IZMiwJV4F2p09uwFeFuynaN6r7DEiGR8ELEBoNeYEfxBw5cZn O5deusTm72JxG8/glJehWHpIieM6pFcJt4rJSburkDmkIgQe8EJ0iCUiFAkWLocEZdY4t8elR5Od 6ICYa0+buOrEnZFHT50E2iR1mNSlU4eF7648ZZ0Ym8SEgIFMWvlaZYkAQmNLS1KModbI5L5QJ8Iq l4uAK32YF74OhcSiQ50K5lTlXfK/J5W2ULtSbgqpLmX6rDDl/PLdustueBciiamVq4Qa60rTRIf6 moF0MoOPdRoSrnDwy6ptZJb+wjcUbzGzVCEw5NCQY1MpPa3Bd3NngUpHi1ntW8vYTS2tCqwmcUNL TWwtdv6qzTsm8ALscyH+WGqXkw6MP1aLH7WK6wOKvRito7suuN2nw8dq+tqyTxXCeLIO+ttw+FCS Z15r5piMNkFv6d1tSJae7NPRPhniZaccSn56nzFkvFI03fiTXUgBEY8V99xwQNYhHhzjMTzLAzgF Aiad/seeHJX4ftk4OMTU2p9sfMQkaEt6rJWHWtylMHrUQ8PDC2xjfARsuLyNyYSKXcKfCwne4Zhx TzV4gT/W9BrxEPHrmIVfeFurD40II9m5DGkCJQNdme9r4X0520c0sLD0e3vS9y12SL8eDWe6C8ko iW3Ak1F4iDprsoZdCuBojHU0XYfTGsFpjxGTxXywtCblfAALXC0mEEse6V++WTr0IeEbZwxt44rX jnBlcldz5tuM+rrg7ky+70uj+eTaYm8c7jZbkLrueDEO9GGokaJWX+2lOswCfMcEeKzNcWWMGxMA pGoLfM1cDj1kDwliUq5dPod+C7hVKgALuPDrQyAtvSkEHl5ZmkysU5EGCECig3EmuTlOzVHpTfGu 3Jn687GrTTy8ZsGQLTODjU1CDY7WD+BZQhHZuHCgkeDK5dxEPufI7oArX9aUZNIEF2prH35WWaZK HYlNLG3Jeiy0vVx4yOdcBpvgwuDjB0gpXJBhXGHOSnNemkqksZnJtZeWilUIppCiOR2o04zsaOOf au3MCktuLqtkTaDmjhIaUmBKri7pMovHyJoBDr4uQiZ5M0gyxpWBa9aQqC62QBD7KkhdNbLkxMEr /1pHemul91b+3qo/O/2tUZ8K5XJJpH0mmxIghLfrqPdQTcne1pJ/hLBpLgtBFfu+hPiZ7KL+2r/b gwiS8SGZbKNh592t/B5++NVJDQG29cZQX6eIuU8he8TnSnwoYKLHh7SPN26D/i4c7qLhuZh+bKSn ht0EfSCrdW+XDigG/he0IkOQrEJ6GyPD06twvE+mz42I3L4JmXXIXAQDf0qlE8wyLH8u7PLxNh/W /rjx4WLYY0G6dQ6QZ9nssdAuSgmCDehmjwkCHq55uAWWU0BgvPaZx2K2JUMnJAiqQyTUi9EKmXk+ 2IcwULNtKDUm21gMREu2uMVjOr+r5qzPD3yuFwkjl/8EOJSwVwERD748CiGBxBuN+mJwN9r0Cigw 2J7F9i26pw2vDfrW54epPvWVkacOE2N66XcYehIZGhNIvVjpJ7N+bUzKxSTTRrk+hoTb+LBgs10M Ey0uXWHpgQGJTDo0WpcJTcwtI7bx6JXPLh2uNqeFTsfqGK6/A0GYFGkUcsj+e+XRTciDFFLofIuD Fip9KYJMWkxjkw4Xk2Axyj26gnRx+dTkIJ9caRQok3gO6cjBEdc2AVrrCIDDLpyvwtkqnv3S/E0g lZ6Qwo+Tf4pI5jAs0YILddZTpw4CVZkGKhepQqhxIIiS9A2p3WUDHbY9XcBoM5nJl7bSuPPG00tH IwV7kd54Gm6VQUHZsm/KiafXkZX7RmSplb/ILMUUxpYwClU6AaKN6TbTGwJStQgV0tSQL/Lgr/6F nxudTK5uYYSVtwYWQP1YIi3DCOD3IhUUSJXwv+8rMtoCIvy9U96XMJ48COWUIgIRNsNTAoU/PWcQ TuPSvMK1j4eP5fQFAqnm7lM43+kxpPc+dY7ZR9LFDFVGEe4oQC6TUzp6rJjHCraaWG+In8q+zs2r dTg4F/ACDAJ7H3NQxVALrUd1/mQdTs4l+AV/q9t80W9sUBVCWjzG4sZnOodaedQ6GS6TXhNMTgVp 6l9H1DoidvutWdynMwBhF0GzQcLxu4ADjvbJeBUMDwmzjRjcbUeOlyXLNbCoUCPJ7HbtULUxAhYe ChUOulqQHQpSYqTf4osFMszCjTH96rLXiTLM5718Ptj4U1BGOBto1OcF9Wk++ayOPy1YeASIovGC vtWpG210NR9dOVwfWAiVscndLfhbRxn6Cul9DpVBoo580g3U88VbICIDcSj9fD7CVZv0LpLg8Wub 6Tyx9cRlKCwj8bSc7+sZ6bLMxA08RSiuvMsZKHMqUcmOXovQNaiKuDCqsKku4rtIaEioQwKRVp06 kBODIX0NQI3L1SG/yqSKTDOj3NnYn41jDUmALUyyHFRaLJAbz8eVxa4g+JGuTRZAAHBAEE0g5w4P foHhrQOFFLgakGG0o1C2PLHEsSGMbGnqSLQ/owsLdAAoaQ3ebrH/39KuJxNXbkrk5LXC26XeJlps k0UX6rU/Q6qHKU5cRLie+3rm6bk3JxQQ6BBXiQ5SngEFsUHnjhBZbBNrVajWsVZGapP8dS7Pj63+ tgQQxJdK+GgVgOK1luBzO29YWnerAJqflOg/wyYTZyo+lbNzKh3I8FuEEEKa2wWIvQkc7jYYb8PB PhpCMj3kk2doqop9KsAF0z2i1x6tydw8egvN4w5BFk81/dROHypIneEhowCEbUIdS4Z4gWS4SUbn El4A6Xp8TLltSDJwZU0gm9chfUwhg0eF2csXvbVPI40j9W0CDoHXWpPOprZ4Mh4uo94qop8b9W2l EDYJRifosVQBFh5Ib4J8GXSgPJB/qpBtm3AELICGVh6zIlqIfyrUbcC29qRaDA4Re4rJRsYhFiF4 KoPqPAp8FGnfovmVJ33xxK+BdJMod2CQ1hoDO0t7FM/uxMH/Enr/Nhv8HTE8p75Y/A3i3GRuFvSN ydwa1M1ifA0skHI+eaROruTJN529tfg7R+i5Qi8EKGSQwvAXHCC9yCN/7fDX0awP1ohmg8sBcBSi MTHGqUVtC2lfkiFIp0p7KBeHeLb15c7mK4MpF2SZt0FI2MwmFDsyvpvfpTAaMKosGQLgSeQi+1wS ropU7sGKcqk9umwx9BxyotAw1qjCYFuyTCoUJn1pPhpni2lhMLXFR/NpoFG+Ngn1aW6Te5JNZIsL Ib3mdKTT/px2QQrKxJaBCCrQGG9GewoF3dUFs6WvAE3JfJrp5G65wcUaA5kE8Q+TsknsZaB14Zx0 N1xmjrUJIKAUoZb7au6pmTsrPLXytNrDy8j013U6d2bjxGQzV9zXeP0i92epPwutv3jhqRXOOcnS sKuPGXtOaZKx4wlZmc/pU8E/VhJpdckhPERoCVJcXWqPGeJHOidkuwGpcuVSp5hf++MNMnk+OWeI 3uF9Nr7PqH043LiDjTva+dTWo3aQKz5FrHrKwLfus0Hl3BT2zQoBX7K4zjV3LKByR/DXjzVzLphd jO8DkhrDIW4D7kgGyjGrgGrd0dIbbyOixpHVl860XIxaCx/B7gHSAMJpuCEo4xG9pPoigTqiYfNf K+250M6J9FzNAITnCi9ABli8tuI6GO1CMv4LNhmw2kcCRNfGo5c2nA7eDmhID5BqHvlP+4Bee6ML Fq4d6bPJ/WYJ/+aK/yC2KBi3xiiWr5LZ1XzyD2n4f+n0P8AXuTb+1dTgir3Z6NOC/uZyt6Ew8Jie B+PA9T1xMBt9FUdflMk3bfLVoBHwd4E0CGVcfVwQSy5QcDEjvnTny8DLDal6lfu+2CPn5Bqj0p3u CxnXJpO7SFz5UmvzS0tY2eLGkztXIJt0Ntmk20XyPiZ9SbsEggTOgl/6JAkDCPVlY3odKmS4JTG/ TKAPXLUfzEcxAR2VL5jGFsi+s82m+gRXblBgh0gdJ3MqUClXGSPmcaVkOwOmgy4ucPhlGeBEfI2G RoJYgpfPbREvSw2udMBuSu1Iv8rCI8I+YF4acFiH+jYxS1dNDPGylqVtUmNf2Mfa2eRGHc3KQGlj FTk/By5cpSU7Du6pCg6F3wYzAGGV6JvcXKVGaIq6NHEXvDf/CwswjJ3fR7gew8mJIGL6kDMnGN6K eVtBusuHjN3HLEjhnBEsPGTyS6m+lupTrtwn4jkRTgk5nuwJdEx2uKbvK/65Qd4enggiYCrv1t4A GumccMcYoCOLt+eEATUUxlVmfq3xAtBBwZ1r8b4W9xmzSaaNRxaIQBbHZLoLJ/uQBvtcTCt3SsR9 xOwIBCCrhMdKPJNZozC5ZPsPQDhAz0f8Q0xOXiDTaVLpGEtkHGUuvJT8a8XfQ/Yks9dS+9Et/rVf wKq/VHNc7610iMFuiHAajnjrIzPIh4gHxdTmYOmMOg/miN6FzCmBd54/pHQ+/5bpvVi7Nfh/LLi/ lc4/76veUzVY2p8L9baa90PxekF/wn8Kta9E28x6lTEJ5Dud/rygP5vMl/nkn7HUj8Sez93ZMBHM nTL4LI2+KpMrY/rNoK9s7sZigYhbh78BFuLZACgwmK8uqEG6c8QbR7xdcFc6/Q06CliI9X5iDAuX AiKWsLoOl+tssQAWpM4S1660C+TVpTgKMqlzyck+v+YJ5Cb+7MI6kC9dEhyUzzZUL0V3ZIjxKuJz ZxIb48ycljAUFlfbfOsQk1LBj2tjUFK6oFKdisEF6iSYTUKEscnFOp0sGICrIkBgEoOMoPG0ESgD 6MhsvnQlXHAlZEYTYSWyxFqY4AKybZEbpHejtIBHMLvR+mpiCgVsuy3ltlx6CsL7qfPet+FDZ+0K bZUoy4SM6YAoIoOYmnCXe11sdtF8lSweu7gDmvy5rbILmXHmYu7+tb8AfYLs/VqwHxX/QWYLk2Zk BOGumN433FPDk6vmyZSwnIVNeG+U11K+T4WXQnqrpI8WFkN+zBHndOcPVxHZCzvAtCaDXQLtPbos vVKHmL3P+XPKI7t27niNfB5OGvt2FQ7uS+5pSbry9xl/JKuj3Daha2ewCSb7hHopRVIHEvPPqXSJ c0SyuA2oXUidMoYMryjYtU/uj2vpTBqQlD3Ze9QpoOFlGqvX2dPLiU7AIAeFdoyoQyidIvmj0V8r Ukz40V0wXij4FfDF/v/etOkxEp7y2TEWOnvcGP2VN9mEFKiBjJ2p1WPEbxwmlu9c4ZsrffNnX+BH XjvuoaY3Xq/QgIW7en7ncd8c4dpTbm3lzhdv8vmwNifZHL7gdkH/FkjXsCGJ3IvFO5+7dZlvNnen jj7P6WuTuzXpK5P+ZrFXOvXFZGAorhN1mCEtq4NfEAi1YTQfgRRU+qtNJs8MwBEL9pMhfHZm1w4p cB0suBubG5Q6vzTlpSltXKKUcn1YkXIsrjLoyiK9P5lBQeesQ1Kh1LkirpUnbXx5F8q7QCDHAPls 7pA+uBKE4omNI1YmXyy4yuTyxTScDYPZMJ5PAJPaEXKTg0YKZxPYikCdJPr0Uvg69dUBvpKPr70g hRaI/AzP21wBN2FQsUnl+KfJ/DLL6ZyJ1Gl8aaPGx3UB3LRGFp0MHkops6XUluvLENfHzj7XIIjZ sZytESeF+rC0jjWgYR0qf5N768w7Vsbj0jlWVhOpVTBr4gWkVOQodfDXuTxvLf8fO+0/N9ofrfR7 LX0vxaccdpU+lPSJ6Hn6sUF+Hj0U1PeOf285Mot4SbrePhpSdPdKqq8nZFBYNFyFw9rv1/5dF/Uh +HfZaJ+O7wui+eFGdzEk/XTpQvCPl+5oE5HOAkQy2X2rpXMpkeq7mIX4WXqTpTfaBUjRk5dCPEfM waOPHnOAww1gZqFbmHPGQMhtolHnDy7+fYJY7Zxxaw47c7R1xht7VMzvUu2mMaaNQUPIbVz6ENC4 24lgQbonGo+/z6fgrxXsTACJdVcj5t3J7vJBwB1EIB5xW9AZWXdNmJdGeV9qj7kI+5DLXDbjUm1Y 2VTtDbcps425ZN4PuG+p+K3Seon4xeOu5tQ3U5g6MyGd9XJSRDFItNvKHDr8J0/8nGnXqXIbC1d4 ZchfJcoIqgm2GsbB5a5tFkzxbT7BK29JvasJ/Yz0O86NCcIynI9wubP+AjJJvHV50kPnKVeucmXL 33Tuiync6sytxQ4ThSk1oZ4LnSWsHQ5JoyWnH4IvAIQpRE5NSpvIdEok+QxGQAcVcq3JrVx+4/EN otQYkxN/bI5sCpO+IakwhHROSCfRqEAe+FBxsxHEDNI4sBCqlCMCs31IptyAEegH2hB3yCwKjia3 SQ0erHpm0anNVB5fekzhTQuHScne9C8scNGMAUE0F+9M9uMMLtLZYM74cyY2hSog3aDrdEGOYknk dSJ0EXsoyZka+0JdxkobaeQE59RZpe42JwaqjfjYoupQbJLZMtOKaFaHf9Uj/dwKP9fS90b+o5X/ 1ck/apEMrKuF15X02glPFbONBo1zC9X0cyOTfoGau8xfJcuq53x6JHOAx4fL0LxlMFpGk21KCiRO JXVfTo7paBdDtJP/1AUUmYgI7jZHrT2GBbjP2Nf60okDaqj4Y8p03mgdjE8p+1xChCBcoabYzh6u XQp5GFIN7mAdMGRNCdnbxzVsnLvO64MmyJHixrjQBkuTWuIjDPwwXJqDlT2t9FGm9VbOhODLn9wn EhL+KRbgcPFGWP7OpcjmGgAYTXHzMxm7p3S/+ukILpiHTHwsJMgwIBGysFoMM62fzUb1Yopvcpk2 TNVERDG+fLsY/7OY9TO5Z1GfzOk3k72xBSRwJtIGJvfVk28D+TpSbozpP8zp33P1xmM+25N/2tPP HvM1VYaFOsk0OlGnvjQw2Gtl/Eka/N2VrtN5H5cnX7u4yBzjXjgf+MTM9ufctc5fWfwXV/4WKDAv V65860p30WwUKaNAHEXyOJbHmUo1Bts53OWUK3ntSK3FkXGpjrCGTXCEpSsWBh3MENWD0mQuJXNA 3zTHZVClM218riADwynSi21MU4MuLZboInUM+IApSlMoTbG0ZLLoOuu7s4Et47Fvy7e+eufN7lyl 7yv4a1CZyYYaZQo9A3YJ+d+kMoc0X0NHRTDXcybV+UQjcw8KAxmGcESksq489ZF/Fkrtz0iXhCfE xjSxpptMO9f6LleXkVz7Yh0odTjb196xDtapBZlEztqo1G0+K0O+iuXE4+tMaws9df+q2X7uRu9r 5q1R/iCnfvPvFf9cKM+lhBB9Lvl9MFk5g2M8feuUnzvt+2XS+1MnPrb8oZjC3j613GNDioseanaX sKdCeWlJp/9TwzyVw2Pc20d3y+AuNb4Vdr/1Scil+nDt0C/F7KMhM2Q+Gv4xRyQPWuuqc2+Pyegx p58LMmFpH5IGAfiCPcRVJgBoLV7mgcohU5lDouzj6T0oLAYrTdYunavjSB5WOr12GbKYCSAYg84a loteYfQ6cEc4gal5LOXXRn1ISUjjXZuLDcENNymzB4Wl7C5lz7kC2JLdilh4K+fnWF5ZIBRx53GF NkyVHhBXGNeVeQ3w4oe1Py0WvbXHhsqdTn3zhb7H97TxF3heT7zzxBtPujFnfVO+nfPfFuwXg/5k TP7h0p8S4Zve+9967/841Cd3+tVnbmsAQZ5kKu3OppY8Xgh3cxZ5ngzxtqVPMCY6+zeD/6fJf/Jn N7k1gfAwhFsEm6P9lhhktozNf3O4u0AY+Hw/4HswI7HcCyTYjTvoq1QjVYXlgq11bmkh7UsdFIgr L12ptjlCN4u+P+/BGgRzKtSgbeTckDMD2ZsuPCq0+vb82tWvQ2uQuZMK0CDj/qa1KTamkutSogrJ XHDUoTG7ttS+rQ5tUlJyZyvfDPGzIw09icYVzNhQhTVmAoXzFcHXxpHZz2wmXky9GahBLE05W4iJ xnjy2Jcnrjj2Jc4V6EBSMk33pAHclkz901XuLvMq1WWowEpvU3ud/Bqvre+bcJVYtUd6ix7qxUOr H+pFnUhdZWShUGZalWttPvtLI63JCc4/VwvQwTEcnKIx0dXJ9JiNkO13wRiI+GNLjmD4WM/eVvJD ze/yKUn+GXW+dNaQloe1CEScC+61Vd+XMnTRPh2dc7J3cF9M9umkdvuXQmiChQ1Js6TY75mMsocP nay93tK5ae3rlX+3CXobf3CKkZNHrYWfx4+luEu52kPSGBT2TQtGCPhzLr/UOtwxRM4uBFonpQ5V PGlNpjboe9KAxhwBB2NQLfqVAWobrcIpGYgaTyGHoPnxazbmaB9cMn/EN/Z0CdmW0etoWlg9sM82 ZMAO+xB+nKsXk/tYhkGATquNMdzE0prU1qAy75buOFa/4ZdaOuAXxpeuPf7OZq6N6ZU2/uzD3vJX rnjlSVeeNlyI18r004z6pz79bUH9w6T+YU//aQ7/Nu//m8989Zgrm/oWAkdcz+X7ljwyJJJXF/zN nPtsCF9N4ZMlfAIKXPmrI361YFVk2PbrAOFtjmPjOpxf2+I3dfLP+eSrzdw47K3P9xKp7/O3+uQ3 i/kGA25Ad3G3Nn/nCb1Ug16FgxZaonyg82lgIdIh6ZHDe9F8kupkfT6ZEydbuUJiTt15zwD1zG8T Z5zak8wkReb5BVypygQy5ctUoFCG1JvjVyY2eeKqfUO6mvOfdMhCeeiKE5sfki0wjc5JswYfqhyp U1oMgYhgTkx3684aBxZebB05UCbhjLK4wXzaWzADg5no9Fjuf5UHX2bDLzbXS+d0IONv2y9dcZOa XaifymCTWJvYXMfGOoGP1s6VcSz1ZaxCGnWVXWfzxFfqzGiSv+pU31bkkMqnXG/NSTm/2nqDh4x7 LCZPzeC5oaBh/tggvEVS6tCIj7Wwz+jWH7TBAKQAFLytRDDCY80+t9zbUvxYyuQgqmJyzCeX4xW4 Y4rYo1oHep7GBZUCFLzCj1fTU0qdEpLYV+4d4nkb9Ddh/7JDATxSIKP7lH2phM7DH7yXGPhNe9tk SGbCF9JDiQ9S7wvIqrvOvYFDX8GG2PC8DK77lGwFrqxROb8jWLBGDayEN8mtfmbcZfrdyoMZmcII 7AKmMeHl6daZriKKtAulbOUMLhvZ00vBD+n9T9XexqPhETZ4oz/dQezZI3xcsRg01jicXR9i/pTw SwdZCxF4pY5+08afdAo6/9pgPtn8bzbCgAj7qznzZT79DVgw8TzzyaJ/Azuo/f8dizcBf+PS1zZ9 gwC22FtL6uv8LXK+zl8v+K+2dOXApCvXiQ4RfrdgYLE/q9Qng7sO1WFqjG3pq8b8U+j/22z0d0+4 g+8ApgqVioS+Nvgk3PwfbfQZNlyffl0wV/PpF4MFoK595S6ej0qbSRawxpAukwBKhhDZbaZTK4cM 2Yb1LhZiNBdtmbLkoTUb+Po4c+gU+h/aZkHBdwALhc4kKkVmI8s98IKnjyOD8TUilpzZrQs1SAZA jR1xZAuDBU/0Uqj1/dkIFttXJ44ydJUxVJOvwhMxkEawHmS+t8l58kijrlTqes7cOtIIly0wriQk Eh9w01iiTaonUjc6np9Rc+auNPC15aUtda6ySZR1Ovs1JWadmk08rxMr87XU07d1VHh/7bW9LBGu pLFl41GnaPRRcz879WPJv3fT7yvuteYvw1WofUwdUnrlQ/aPu3C0TSYPFTna44zEXtBv5JRz+ccK opo5ZtRjA+3E3lfTdTSsnV7rjNbu9Bhyj6n0WoqkRaKcPjUTuA9Y4G0I+3DbOreQ/ft4fEypc0am 9p0S+gi77Y7yRS9d9GqP2qXUYw0Ayo+V2MJ9B9MlnEIEJUYOLjnGLMKVHI4Wk5lFxeI2kq7IiWnu tLRGCW5i9GMdag16qd8AHeYATnkDqloMtj6NsN8mdOMN1yEN43CxJJd9PdAQYOJOoabwssdcgriC ACNcY01D+fYyMf6GHOuWC4l2ZzC/Wew3Y/rZ5a894TpUbhHzJvubwf7DJacW3izYr7PJ39XJPxz+ qyt8mVN/t5jPIewA1DV3ZVLI59cm9W0+/ixOPqnsN/hiUyDuIJ4P4BpsESxzDVfi4HnuCo9k2iR0 iHir0Z+UyT+06W+OAD/SDyVcg1gemZNrpfeJv/7bbPhZn34zmG+2cONKN6585au4+TeV/uwqcB/D SB+F6iCZj3J9UsJTW8whlHe+Ui1IS7Un05Y0tpWhp43CxQQKPzKodEGR0a/aFB4nh8jX6HROdhly m09szpInhoRUP648poaMdEYx2YCgI20aqADvbaD1iIMAuGYUpJGjTAwBzwwzA/Z5ijtHMyqds9BI RCbJI0ceth7ZE8wMYJMPNHbO9lW2J1HXCns3Y3saO+CH3zR+PBfHhkL5c7YJ5C6cZRaXu/wyWYQW n3pa5mnL1NuWUeX95Z1fuimUzFMuvdXSjyX3+1L8sVTJ4K+O+74WXmr2kEz2MWT2GMK4dfrrYHLM 2IeKvy+53WXcymPN/HmY/XkAFrjnYrKL+8didK7pbTZpoHN8SCD6HIpPsXj0mH0wPieTx2r43A3O xWQVDGvrtjCuWq9/mcqL+4+W7rC1hx2sqDOuzSFyeOtS20Q4l8AddSqYfQKuGbXOoPP7hxRmYXCp aKIuIc2sfaa2epl+tbQnK5fUKRXWONBuk0U/t4aFjU8clUYffAH4P6ZCA0/hTJDwNxFZywWDVFbv iIAPaUAG/wm2YhuQbYV9yPzs5mtv0liDQkfyoRzuOpsDFJOnUlp7U4v7tKD/6QmQ618SFQqkF81u AQRX/OIIn3wJyuTa5r6Z3Bed+Y0sfnLk8uWbWMUrewvqs4GkjdQ9/qIOfxMnf9d50uMAUoApiMhE 4l6gDCyOlHn7MkxoP1FHgdyHJcEzs8kXDQZcvvGVW1f4FimkhAkySRteaaPr2fDbgr6FzHbEW0+5 zcxBvLgL9btQG1jSrSXiuuzZKcPG5lauAIu9cbmVRdc61SJLz7lYhZhBnqfIsIL52FWHCPKYGGcq nlGRTCXQ+RppUqssUl/nqRNDHC3EcWIyhcuULpXbo2A2dKXhxT6Pw3kvs/q/PLVPiugEX6VBEK4y AMRiMk52nOlkcTXW8AivPSlsMr2q9MYlaetmHZvR9OFM6wvynT4b6NJA48aqMJlrAitPJZ23bTX1 tVAXAOG5eOvMp5kvZ968iUnNauVb8UL+yzsvR68t9b1VL1O/+H+tpT/X+s+V8rZkX5pfIynofTIG HM5k020K7fFQ8KeU3SdkDNcxnwILb0BBS5+z0QNZRB0fitE2Ha3ScQcERVOE2X3IPUXcvU8/xNRb zbwsJ7viBp66dftAGa5dMoH0yoybwoSGuW3/X6bec7mRbTkafYL7Q1fS2WaGDh7tvffed8MDBD3H bXeM9EmK+/Y3F+aLsxXRwZghG4ZEZWXmWlW1SN6WiCbpQA3662C/bdyXFXwH87KSHhrufa2Q7Yxe AJuAVp4a9qECIvRPK+tcKU+t9NyKT6SYGaSgbgt5eylL3pUifMcZ8qaRH0tpHzPnlNtHzEPx3V8L oAxgBz99G8hSFRkFU8nHXICU+mXv4us/HqJ9ysImgxfuC20TiaRytTOeGulUiNBCvT/HUx0zAVfr LuAUUu2uMCeACYwD3OuKnE5FKrdze5oBOyb0/2wV85AliTatkOpNKldmqTKNrXHuzQt3mRNfwFV4 lMOQXa2QrLh2nkD2mj1u8LnCmKfaLDPJpgPk04Y0/rAbxJjLVBYTy3SispUF1a13gUIqKPCjiKrD eR+zPZl+j/jkInXmy5PcZFahdMr1cwHZQ5zRS6k/pNoh0TexTgqEKm1X6ZtSWWXyJlN2mX4qkE/c fWRvArN3td7DpVaumMI3+UrhykOmdbGwzkX8/YEFsszrcG0A96cAjx0ojww3cNvQaZHJQ2WLp80v E2XhHQKl85TWVVsPHGQ8r4JdJe0bqS/VPpObXBrgWRpj3VhdbhSJnrpaZCuJa0aOUcd+G4dN7EaG EjnzvhD7Qj1vw30XfbpvL8V70ZD8Waf6tyf+74/Kfz4E//MS/H+v9v88uf95JjtQf3+0/vFoAQ6/ nvRfDvplfq/zaQWZrX7bWt8L877tL8OUjoCD9uu98stW/GMrvQ/coVocG+Z+JZ5X8gNJ19rvK/s/ ds7/HIP/urf/A1yz44/t5FhTp4p7xT0tfyjpTbbcF+xDi2cwvm1dWFoI9dfGeL8Mwv0E1Tcox5J+ 6oXnTvg+AeypE156EV77bQCPyM8Nid5jjsyG9C7AyZJz0FJpX6n7GpeCP+O51+4roEnG/etguSUX dUjY3psPAb1LgSwkN+aUyxA8sAl7WHLS46bC7MAa4Ml3CXI4fcj4i0Zi9ymHb0KSHXP8gwFvPkIJ BFTnLshikTENxdvCnCFR18a8hw63l/hmThb/Z6k9TSw4ytkml3JrEWtQU7iHLbR5oc8i8zZzJ7DM kT6O9XlqLBCopN7Vl3HVNk9KlXwBeAQvVDbd+3IXCENIw7+soyWpFXSX4JHGUSsLltba5/46tepI qGOmTagmnLchcymfUFcR3gDAuChMtvMkonkSUhb+deU8wh37/Cn/vsUgnZBMen3fkPRyIP199kPl P+T+MfYOob/2HFzb0OtDvQoEyB6yKFQaQ0aGPq0yHhCoXRAcQCGRyflEuIobOIvYqT27DcAOKv4L QQjWqxwm04FiKdX4WOWhkQ613aVsl9FtLgyltMtFKFgA9r40mkStczPxNEfmCt2sZKPX3bUT1a4T mVoWzg+Dsu20XW/0pXlovVXuDqm9yqz/5RfUXw7qrxv7P+/9/36y/nFv/o0crGD856v+3+/WH2f9 657MpvjrvfXrnrQhAAi/7WwYW9jerxD2O+3zTvl6UH45XEiBdNYvVsns0HCnQTh14iM50Ef/Y2P/ 99H7r4P3N+irtfrQssdmiSR/LJl9AdE4w3XuRJDIZT3T/7R2XlvzpdYfybgVsh7+1JoI7/uKUAlI 4evOeF+pyP9kS6IVP69U+FnkcFzPLQy1Cqmzz+Q+QN7jgIUzsv3a+o6F514HBRCZlPNPlXSf8RsE T7jsXNJusPJZKPl1yCGQkMA3Eb/PxHXI7BPcL24iZhPSMMKdO1uFuHPWurOXDlzDfV7rr7301Ij4 USxfZdo4km6RrhuH6aHeoYqR841Zrk1KcwaZBF7InVkb0U3IDAmf2wvYYWABKCh1WIll6o6rcF75 y1Ab+fK4sOjG4VchkqTU2EJNGh8ABPm7RsK1CqSaGIFZ5887fzIEC3DEABrykVS11jegsdeZ2cRC n7PbSthk5OSsh8o95c4m0nuCMtCNvAp0uIMDmYNhnktx8OlNKIEE9+QwCGFXIL1L2xJflRNp/XYe Su+UufvQPsXefRKc8/g+j9aJ0UbipQyDjM7bl+oqFSqfKmyudpUuUI+leyzNe6T0VOtDZRXbQwg4 wLDIXcjCv8MBFUQNCpku5bpSO0blKRBR20rpM6HLlVWlb2uy2dGlYpvJXan3tZWFii7MDJGyRcaT hchSE1vOfa1OmV2vDI3S12qTaVWs1KG2Sp0h0f+Jha97aGzlrTJ+2zj/uCeT6/4T1PBi/O2J+7yj H1vqpWe/7ZTLdDtYae+vR+/zoD3X3FPNP3ciCcu9CuX/ac0/FfQ9UmuwgFx/6OVTLx474XEtf16r v6z0v26MP1b6fxzsP7bGfQXu4E4Vu45nXTgZ0vmmoB8H+RU/apVDQQaknElFkPVc60DEIRVJfs55 WIlPa/19pV3Mi3gq8R2S4V8uc30falJBQZY3G/W+UraxgGAeYryWeqiVx5X1MOh7sqCk7jMeKmKX sAAC/AKwsPIXrbXsHLo2F5eyN6a0Frj2ZEijesighaCK2UPKbyNm8Je1Nen9BVzALqUfag7EdIbx yYCpWSJfJ9JNZSxKY4HohZfsAwX5ttGnvbWozVkFv6CNS4fAIbOn6WW9NDEmwEKmTRJ5lMqjTJ8m zriJSY/bGlEEp2zSuU5XJpIeWxls54oI/nVELsCBYM3jO59t/ekQztfJDNcQkaWn0uZLWygduQ2U JpTWoLyKCHVQ232mnjNvF5odmenBdS6/jc1tEmxiZxVpRD6RElx+l+pbZO+YOZQCWYsrhWOr3Hf6 sdUPhbGDfAr1bWjsY/uUesfU30TOGsq8wEdpnUoX4h+WHCYFPr1y5do1htA+5MG5DsjQgNzbpu46 tmtHLWyEBMn2m0wge4UR0K3FqlKaVuN6Q+SuU/dY2wMMe+kMudnWVlmZZW3g2g5enaipw6n8HcVc MeKdqE1tl44cuvS5NueGWuorZaiNxOfLSK0CtU/sQ/GnRnps6LdefG/M9xapXvqyll5bCA/6dTW/ rybPHfVlK/2y14lqOnt/HG3SpLbScH1ea7AP33YGWSA9as8tvY9mx5A5I9m2MrBwaPgTngpOea+B C35fq//naP/Xvfu1Vw45uy8EWNRNMt+k81PDnjrh2AgPAxkfDQ0DSf/ckIqgX7b+pwEsrL705tet 9W1vEjLakuulk8+1+NyRBdtTKZEGHOR88l9YYwFKZh0hVTKPrX6EwiFdLQb4vUuYUy0fyA3sMeMf ShEmeh1SpNzaZXrSs0wNHpmMvSKjjfC0pBr8WIBlxNpZbEJ28In+6cmWwbwPFvuUPpNZl5DxCPLb XL8p9fE25FZQ8h47kFzNFhYbq/NKnwwenpzqfaqy542/hEzKiDuep+Yk0cfAQg2wWIvKmNf2oomW 64zbF6TGg8SSB19AarxLgy0NZuVLMA5DIMJEk3FGZD2HzMM8VeI+5+C8cG0ShuxTuxAbfONJbSC3 obhOpU3BHSvxXIj3mbYLrcaSK1MEFiqbGQKtD9zKVUtHyKx5Zt824MpYIy/k0itoe3JyhADzdSjl XSGtYkAS3CEdU/10WVZdRzAm0i6TTxXeDzk/YojFxmdqj4Yka8gGBKGAPrQ6ICgzd5k3BFZly4Ut tr5wMQtkVCx+nU2Cm83e99Zh2Hhe45u1r9chWcva5sZw6UfYdd5hFW0bZ9PYfaJkNmcrC50dBwaf OEKgLctQIIUftQaLEbusbzGGNDPFhSkuIwOCTfkTC+3it4P2beVALbx23GvHH1LqkM3eV4uvO+6P e+1vZ+OvZ8Sh+tIKnwb594P1x8H+ZWv+urfIwO2T88fJeu+F+3zxWDCPkNMxg8/isVceeomMGzoZ fz8bfzuof90pf9tpv8NxQ3AWEqLrvgRq+Le19LKRTx2/q9hdic8IQgg5FvpfgV947yGQzLfhMtKN VF9bnzcK/MLrxSmAF5CstqlwbqB8tMdOfmjEU8EhY2f6XWPPT4VEJtXvnIde31Vil9B1sNhd1lSh psjedK2sQ5pcEXtpHBMg1ytzeV+ouxSyGYBVnzpzkwjrmIfsR4hC/OCZYSUgy3cpCxKESAMQVgGw cNe704dc2UXCihRX07XN5SYVKVOofYgNaC1cm5gj6iVia29ZusjbMAKzyib/aF2qsUFPQCI7pGTt C0kSOXmIkMZBTOIAEe4Sp4AcnhtUYVLAAmzmkQydMx8H9wm02JPtwsafNt58DRYjS0+gOZYwC1iP bCiwoM7nWjnGysazBhfGBzoKYIGP1lvfrmF+PaH26SaaQcLBz8KMDISJRGJAfBax3QY02YnwiAI8 5upDCSwo20RY4RVjukN68Zct7vT4yqXxVHjdligfpXYtUENpa6CqmozQMWBnSIufzf/fYtdMOTcW nDK00yb2dkm8CoPStlJTiQ0xsbjUgePA04LZ5cfKehuCBzLBxoIHyQBhRyo1Ye3oW8+odX6dGafG KjwhsTnIJ5Eeafw80ARP4XE5AvVPLLxvFr8d5V829qdB/bwWPq+ACASJ8G3L/3pU/rg3AYTfjvCb 1D5bfF4r5MCds/998NffyQA981MvPRT0OaMgnB5KdpdS63hxgHrp5Heyf62/D+Knnn3v2JeKfq7Y +5zZJcyeuFT+nfRHI2lLu4re4kla8b4RjwW3Txhk7IcS+kf9QqY3kOFvb4MOn/I6CMdisUtn+3y5 SWjY2PsaLsN7WevHitvnNHRX40zghR8riQwKW5vPKx0oWBfckLNdQu0LnhiKiizY7mGEA/qQCvgQ d7FEluV9UlZ9rjTkwC6gj/DLJdQsmRWfaKNIuYMLxv2dR5FO/IrUBBbGHenoNEEH9GMhPxf4CJat zVyKruetzxU22SBexwzipEcIBcjYHLEhMcTzAviCZOpcilweja8wKZuIHNMzRIg3ZpdBnwj7y3FX eIeVxTQODAKXGUtkcjjNfaHftzaAQMZHVAp4ELTb+gsQ0C7h8ZDaZkqTSrV5ZcFWC+uII9/3F5VJ lZDiFoyV0kNrkeEbegfdHqi5y9UhvcqXCONEZ1KNrg22dXi8aKiAxaa1S8GMDCEPkXYqYDFECMsG xAdLlXFDBCzMK5sUk6fGDAIJSg9YKB3pAgQ1M6QSRACDEBiVreYWk5pLeARi/yNYabUPtXVsriMH mm2InMoz68AofQ3ZPvel2oOV5tZIO5f+7k2prTKQAm3L80AHVI0hsu/r5FhFm8ItPMmTl464sMWF p3GJAxOh+JrgEjiw/8TCb2f693vhtx2ZM/++4h4r7tNAhsN83cAO60jCrz1ZpbmMvCBHp/39bP6D zMQmo+l/3xsAwnPJnTPEAPtIhglTjx33Moift6S/AML+uUUGZl9a9rllDulsHU47bwpN8lhr37ZI +OLrSnro+X1Jg0TeNurzChpJ2MbUASk3F19aGFLjbQXjrBxz7kSWa+bnavHQ0IdicSyAJvMrmR5v 7Qp8BIt9Tm2z2SHj3nr9K2z4lsz+euhgFtTzAAsjQYa9khZOHYTSOHOoHUTdqUBCA6OJu0Q8ZEgF JpnKlROruIebyGBsp0h0mQEZM4b6eu0MPGoT8+sYMowOxI8w1BtEuA+7xK8cLhbGoXCXKjPY5NZn mmCBq/YXhYUQmq8Q3gk/XLYVdjG3xg3WfIUEeynq7n0GWAA2O5jWmBsC5ruLB0LBU9sYuCDHQMMg FOYyt+iObDpr94117sAL9qnW73FVGnhtDUzFgBXMNTwON/h853C1RedkvWieGnepscw0NTfELpBJ ySvZGpYrJGpPwtMOKduEk0ibBPIyUehMoVOV8sWJI9xF6qR0luAFaKFDpm1juXNZ2KvKhb9gdpWw y7ltzPQ+W5LSRHLeELDQRQQLlWPULtjHgIOuwJuGUEChAd0BLLNIFpo8MbfgF6C1jFVEOqC3mbNO nT4xu8SsY72FEiv0Q23s13bfqm2jpJlQp2Ie8LGF8KazyMpia9WmdRHkrppaAKASKIwtLn2NC21Z F5e4bIVxVOZ/9bXJnzbwC9ojbFEyO+XMl435Zat93gqfNtJjwz7U7Nsg/fVs//Xe+mWv/n5U//Fg /HFQP/f810F4a7jnkn0suHMhPHX0w2r6vKZ+Oan/eCQzJ0ktBKnW1t/IwinXR+MhHJ8q5n2tftsT 6/FpJb4MwsuKjDl6GiBlFz3ERrgEcZD2mQqmWP28gmKHI0AYLI8Z+9IznzcsWbY6Aa3ub6cQKujc qPuSOjXUQ8c+9ezbyvi6c3892GRPZKO/wNfcO+974/vX15V+KkQQCpT/NoIdRlpTjoV6IlMmlBOx Bvhd9H0O50htyMjTeWLdrVNmnTDHUgSO3lfGNuYyfeYKV6TcyF6sffaAEHXZ1qQLdQ5egP+F9ej8 JdlWs25Kf1y608wcF9a4MCe1NSu0ce8st4h8j+msJZ4B0mgTIjamgAPcyiog723wyaDvi20XtzHU CMyOjK8IdXJINKCXKHsIpEpfJ7AJ0gagJkXd6jZR1hFBzQ7EkZGJAVtYUdIWQWUqXTtMG1Mt2bC2 oVWakGw6VNGsJadCmJvU2OZqF1GNP+rAaJG+DtT64npCZRrps9Ra4KrJaaRI7HJtcb1HGlTXibIr tE0Bg8MRY+WxnQfVJMCANwEpVe0jHUkeSbv11YqwzCIz8GYEsnsOkw4dmCh9qF4gA7YyNqQgyhoS eZXpfaqtCnNTew+b6GmdPfTRrnGbVM4DzjWWqctFDpd6SmgKeWT6tlClZg7gJMaqIFOVGl8BQYQW n3iSY9CuwYauUGfGP7Hw0EEiLjuL2kfcY8l+3Wi/n9xPW+V5RZ0bskLyTFbvJSTwz2vSxfDXs/bX k/K5R/zPHvPZPhidksU76Wo0XtbM83706UT9/kDWnX7bud/W9q8rl8RqKx0b7mHgP+3kryft97P9 7Wh+2Whft8rXnfJlr75tpF2x7KPpNqNOlfC+Nr9u7G9beGfn69rcp8y54p8aAX7hb2f1y5b5BDgc 5V9P3tvafmzhFLRzy9y31Mua/7yXSF3rxgUrfd3q72vlZa0AAm97/X2vv2zVh1Y+FlBi5GyFQyI8 N+ZTe5kgB5edi7DV95V8buR1Aok766L5tmTXOf3Qy8dafIIUL/guWGbGCBkvkieQrLAY20DoLGaw uUqjBps9RsoxITP0MvO2cqele1P4t5l1lxh3eGAkXxfaKFfuOnPWm/OVTQ3WchtwrQVPwQTiDYgA dDB4zD4We4/eIr0Tz05DmB0y6ZB/vxRQACAAUtjk2pBAb8BxzwskZ4fpPHGXGqeSNNrsSY+/dq70 x9o65eYxNeGXIa3rlGoSMXesyIACX5TBsoonXSx0AbKx2kf8KqYeSLmXcUytfYLkL8IdEPEfMHXA lh7TwtH7Uq5zpYF3aBxSZ5OYfWyQpn4H75/ehPgjqwSYmXjZX4Z9VrqAlF5Xrng5hIKgYB2L+0xe JdyajP6QL4f7OPvMPeReF0i5zRbuYsjIEMttYx4H/9A7q8xvI6d09UDlcvhuVykCNXKEyJYjR65C vfCVQ+cPqbpr7U0DyUTaTgtf9EyqStUkEvNUKXOlb/7cX1gl8z4EQVOvjfptQ5qdLyPy5sdi9lDT rz0gIP9+1C+X9se9/stBfh/Yh3L+UMyP6XTtj0459Xmjf9lZn/fqLw/Sb4/qryeEq/LaSk+V+FrL r72O8HvsiAT65Wh83invG/xbelkp+ObzQE58eOpgQpfPHUugsTO+kBlH7ued+8vRfxm0Y848Ndy3 tf7rxvy2gYbh4F/e18Lb5RmeWpho7r6kX3r+l4P26z0ZGvM0IAaYX0/QSMq3g/kyqK+XcUavg3Yu QeuAgHZMxftMeu9tMoOus197bZ+x0F2PDWgIGRX5agrdS87G6vVzI61iunZJZVFmXPf+dA1l6/FE J7ssXG3vcbE4zpTZLhDWLldqs1yZtPa8sWa5ehPLV5F648sfS2uWquNcm0fiKJfnuTLP5VlnEkIh AzR8tjbmK59GIPUewoltbb53ObxQT0ZhMGR5OeP2KbvP+GMp7Ut5nV70TCxelowo+IjBF3v4XE/e BOo+0g4Rvir7WDkBF7Fyn+sPpElTa1M68yn40NiiYmsRGrPImmY2k5lC4yI+JVKv2JJ1gLUPYQYR JTYBn+Jmc1l4kE9CHfClAxUE8wLXoLSumGi0J819mcyAghS8iDoZRgygWBGFxtYW3zryKtQ2kX6P dJ1om1jfxkYfy3XEtbHURtI2t06VdyjcXerAUwTyAm6CLNKW1mWShrtrzCYwMkuNHbUI7S61V7nT p0bucJHLxj5fhuAR89wEq1DFj/Dv2ld9aSnMryxxmnpiHClVavQl0V3/xMKpWkIFvTQK7GrvzVpn sokW5xLSiAEXwPa+dfwfR3JQzmdIqZVAInCA/gdM2HNNP7bcl516qdCzvh3tX07O573+3AukOqLh YZNfauG9V19I343y0l3KLdbwCNxTT+1KcjwZSbat+Nyynwbul40Al/3UCudW3lfisVU+Hd0vR+el l55q9kur/NIZn1r5tRU/reTPeJ4eZEHDpzxWhNF+21ufBgXPdm54cMHzSv600x5aEZB56zWIrpUP +mNPqfxYqM+18Vzr751Jlqoa/bXR4c0PBXhQPSPGUq73l/Cer731OtjPnbVN8IkvKvvuvuQO+eK+ pAaXq4xlC1KIpW0iwZYmyqRzmX0kFvq8VGeVhiBfhvRVwt6k/J3L/xwrNxDVsTwKRSBi4fMzl52Y 82t7eefSt7Ewac3FxmXBF6UyTtVpLI0SadFYLAJ75QmbQNjB3eTs+6C8D4Shthl/KNV1iqQq92Q+ trCJYStUAgRcrnrw9a0jdwbXGkzvkEaGUyafclgMvo6WsTOJ7SkgACz4Gi4q0lmCBU9eR+ohBXbk AV7DoWqPjmwYz5kljm1pklhMFyI5yJfKQKEP+NbjEm0RynOXn4YSkgZNjiWNWLj+jc8PDr+2hUHn GoPbBsCXtoId8NTOVVeBvQ7dMpBK5OqAyz2uCaXS5WOdgWsoLamw4Mr11gO/ACPu5egr+7GJjnmw 7ZK+jobC6jNjiOGPxLaWmloCEWxK45g5L1W4zSMwSKDyFjMLVDY2+NASQyi00OgSZ+39udf22CBC 5mQ/VJ3U5mzwF1AjSKTvW/F9Lb/10hmutmVfOvYyEEwgc+D3ype1AC98zBfPHf/byfzjTFrhYAHO tbwlKYs+1xw45bkVvsCD77/PsoALVt7wIZJKPwkg6hMiP54GCdF1zKhH4jvYY7I8Fsx9wx8b/mGl fD7ZD510LLiHkn8DNDodZvypE7/stXPHPPXc68C9dMLntfrWybD8rw1pIIVH+O3s/HK2X0mZk3Qs uYda3iVs5y4PKX8u1JfaeKz0J1KAaoAUHkoVluGpVY+FgDu3lyoL0Mcpl46kGIOs6qwCimiqjHlu 5C10tTuqzEWqTtYhP5DTyblEnVTWAnrmPpPxo5C/yeRxKt4m3M3KXFbK1OM/QB1F8ihRxy57C32l Lz6qsw/a7IO5uAr5kcdc+8zHiLt2lz/ga8BPHebWYa4TeUoWWt1l6yxaZ7ZPuMdaxtuDc+9DJEwY VXGVik0srDKyprQiSzoAjrjxpZUr9jYHy7yL5IfSIEqp0S+Fu2IVMLm3jK2Zo9wE+iQCAMFKZN6L 0JEKOr73hU2orMmTCDXUOPCiz138Igr8AnOZSw8mVaBwhlCEAcnJ3CemROb3lDbgyCEUHt0FXOeR +R5r+HGL71zynK1HqKeBKbCl3JRKW8tcOfOV3BcTh08sNtSXoUoVFpebfGELAAIcROfDSmg9OK4w X7roXAWbNtgM8VCYTUx6mvCL79bGalAPvX1eea99/FKHdWAltpzq+BXkPndSX/EsHm6ij/Vd7jbB n/sLnTNvyYI2v43kx8p8bmAM9U9r9bkHLwjghdde+LSSvm2VXw/apzVimIE+OV4S41PDvq9gIsxf D9ZLh1zKgxP3iXAqhPeV+nWnIexhwL/t8EAV3/nelXyuxfuSf6iFXUkdG+ZYwScutiH1vSvzuRIf av4RzLKSvp6M57V8LNnL5rJyX0rIhPct/7yWTg27LWb7YnEsF/ARD5X4WIrvnfb73oPX/ryBZTaO NffQi8dK2BfcNuVhBMh46sGGHDoX2p4cgkN86DYREE6HUnmolF3CkzMBCxl2FUYVjhVA6D2qc5br AOoXemBUGpPSGLXOtDJniTqqnUXjLDN90noUVAEkPax0IFyp039z6Z8z6a5Sx4+JlIl3LvezL5Lm gkC68cVbh7syqA8W/dHjbjMVuWgaCjce/bNP/xwyuK7s5dilJx53DXYojJvKGtX2uLYngw/vAFwz Q8itEf8xeyiFTSFUsdBCfmdKG3JkcL3HQVxBlkDLHTP1sTZeetgi6FV9DdaDIEH69bnEWrjKbWRN 4Bf6BEzNAyabFC4YpliEZT4m1ilxGk8M9FloLBKTSm26RPb2yalztfu9epxKjUVqULXD146IACZD MvWJK488aZJfZsb2nrQKyIiMyhMyi00ttnKlylUySy4gdTy9DMwy0HJPJk1MDhI4VdhMbvM1Hhvq wAL0UmHJIIt1BEej9IEE5d+U5ro0Do3VR2R3PovpphK6QoGOOuQWXrSOjDoyK1duIzUJ4RTUMtYK X2p9uQTWIvmfWDjEEBjqc+M9N85775OxPysTLPxQ0S8t9wRG6AXSU7DVgIj7Aqw36vy7VTh5rFlY iefLgWgPFTLnsrJml1VBgYxL2hjPnUjKUElLApnr8vp9Muql/R9gOeTsoaIO1WJfLB9r8etgfhms t8b40ltPrfS6xiU+D/w2X5xqAAc5DZKACKoH8EjPd8l0SCeVe9OFoydS4y0918pDIb022hmAakg9 xqECcAQw9b7k98QUi+dKheY5l9oq4LYJHAG/TqAxILmFY6Pel8CCcF+q38stVgG7ITtc0jZiexdY YEp9YlE/JfLdOmD3sVDZ09qeFdakduaFOQGChpCpnHko3ajzfzWXP+D+jc9sXHrr0pl4G8rXoXzr i9cG9SP+YbEfHO6jy10lyhgGuTRmBWn8HOXSbamMAuajOR+F/DxR7lJllGkfC/2msSeNPW0d+rLL QJUWtU2lXSYeS/ACWyV8EbJdJrakQYat3eXlwkfGkekEtXooZMT5roCNZUqPKiD1PWKBSQNpyv3f KqNK2ZdksABpTIDW8pW1pw2Omuq0LY8CbVa4uJ8rXTa36MykEn2WGfNInUbKLJCnib5MNCpUlp4y ceSRzl0b3F2oUanFRRqdWxwIJbLo2KIjk7alaaBSocZGBp+5aumbNanoUzKHDzT8aJaT3g1gQWoD rQKJuHJlK4nG1rZEaMiYZwFXZ8qhtfa1sUrl2mMDfBYJ22QSftQG4j7Vu9QittpmilhJIqXO9IYM vTdKhwvURWj/udd2zkQywLzQ73PtsSQTre8L8ZCx54o015wb9mUg+wuHbLGOJvDUgMOpoHHdl+x9 AStH71N6F1ObACRO9S4xd4+l9NzKwAJZg1qTIavPjfBUk66EC7lDXSPSlodyfm7nj7AenfS5M35Z Od9W3lttksDupW9H/Z5sWLBPHamvgJh5hB2upTZZlNGkTWd1PGqjKZjlfU3mzJBGg1RcudQ+5gAH 0nHZ42Nldxm3ThlyHkej7jNpCNnqUueABL7PxFOt7AoB3mRTCsdC2ZBFSzLC95RDMHOghn0q7mKu NMZgTxBBDgvgAO/KLoYaJG1BcBaVNQUu+gCcPo3Uu1iBHbgGiexi/pAIg7PMSWv/BC+N4NepHzzx 2pevA/kmkK5c4Qq4yPVxaUzBOK05bwEK6Cj+NhQWmUJl6iRVxpl2nRu3tTWuzMmlDE+obbowF9Bm tbsgtakxW8d8FfF1wucehfDuQtKtU3mLVcJuMn6ImSagah8X2ewuHCq3mdrjCImEDBihS9j+cnVk m4+BUlqFyuArLfK2KmYGm5gghUXpMgXSL1kiWxb2hRH0eaLNI2UOIHjS1GTvDObGlcYhvgmpo1G+ Stny3BQmljRz1JmrLwITVoUBFjx14am4gQ51MTSV2BIzBxcPew6T3oZIZXLji5BJmcGRIg1XS3Uu 00nl1Tpk2hTWQD805q7SgWuCnYjrK+U4OOta3xb6PtMyT8o8ucjVJFHaXG8TlSxVxaQ0ayiMKhL+ iYXBn5xS+hDR24AMJ9nFLOQo8uq5EkiNRCe8Agj5AnRwLJb3JQ1hf8igkRhwBy7ScVOJuwiPXcKZ Iio2Ef1QwilIiPDnBiZXJXtq8M6NghA9pNw+ZTbxcpdSr2vubcM8d2SY2HMlPxW4VLjap1qF5icV Rz08i3rZsCMtoi+D1id0Yt8WwWjfctuaflrLjyvpFRhJydjGQ8w/5TLc8eOlbe1U8q0/g4XZJMzr YL71JkRR59Gts4QzSpTbQya8rAywxn0nr0vSTdP7LGl5yOWXzkS2xzX4FPmb4x8eU9vzTSiTGYy5 dcxMPPaJlD/JiXoLXgBBlPYsMcaQLvCn51KBy1gHXKFNa2PeWIs+4EJ5DDrwpVuH/zk1JqFyHat3 tTMrDAT5FG+pUCaNPs2Eu1KeFNo8UyCcRqFwB1ee6zNwR6aNC3MKIIPULiv//PdWzcZnc4++rAXN MndZhdSQsqucJUsQtTQkCOBZYo4zexobo4xUyZIiqNyeVe5lsEDMNyHXRWSrC+kUObOEOHGEwmBg 831+GmuLSJuH2jQx8MB56cALsLUD9mEvcFjG6hxayBUnOn1jsDeRtigsBKeQGKzGjQXqWqRvBPpa 4W9NZRJYS0+fB/oCHhyRH+qMJc51YWaKU1eehzpkGNhHGGKYEQ1iBraiBExM/mIcBDDFoSCFOtta bTORnIWaSJBeCO9tYz7ug31v9xXpOWp8oY61Ibfbldv09q62N5m2TbXW5be1vWvdvvhzf2GXTE75 Yh/P9tF8Fy4HD18BDY5AI6b2+XKfLXbZ4h6SqYMRoPYpnAJLKqU7+bWV4WdfavmYsNBaB+SfmL6v +MdaeKwEuN2XVv6y1t97/flS/XJIuHUIQJFDZp867m3NAgsvPcKYvc+5fcgcIv651F47CH77hUzl ld4GDf7lkMO08oeC62OqwftsuKet+rRTTr24qyEAxGPGP1XgBeFzb54z4RkCKWHWYKsYpgZGAK6H YAHip3Wo2pzmGqmaOGTcseTXGbUtmWMrgDVAClCJoANALyFrPhNY5tWlYGnwudpePpT2lhSqaU91 8LqxQDq4J1FvGme+z+E7SN3aoVC2sVhai0ybEH+tjCt91thgDeqyVzWy2I++dJ3o41C9yowR0Vru DNQQS9eZNK61Sastag0O4i6RwQ6TWJ7mKlPoZL84BiiMUW6O+2CJr6W9SLRpbkCrLCMdgXSX2vM+ 4fqMBdPtW/FhpR0acV8JFzhMM3vmq7exgZAeJcZN6U4uJy0ua7hmUtUgdwHSpg5BEspLT5w6/Mig r2zuJlSmSPVkx1mbpHDZDtXhD+ISLJQ2DYHkCuNAngELvgy4LTIEuUGDFBxhJlI3/PKKp6555lri bmxtGrm0CxVEPMUi1JaBtrTFqSVNbXliy2NHmkawHr7UBHLtSJnOZhpfmEJqcnh7YIp1qu4ydhsv m5gtI+bSIicNsborrFPvHwa3TpU05Mgo10Jflc628cveSnIF6m6bXppSM2NT20NpVP+rZvup4Uiv ccO8dghgUuRwn5ORWaeUPZf8Jp213uiQ02dyhJn4MihftsaXjQEXDJGPgAcpPNcSfOtjKZD2zI57 bDkA54iHlDxi8j4TSUdMLN7n0iHhdwl9brjngXte0S8D+zbwz5edhV1KFnJfGgWC/7UhUg1J/pxL L60KllmF802yPKTMQy2+b8gUjnMPYUMPyRwG+VSQF3ptlKdSfoCnSFmi3DIaluS5A5p0CLaXVvuy JmddrX3SB70JoOvozpn0/nSX0y8b+f1ITrp8bPQvW3cTkSFjsfyhtu9WwawD5UV0ac3BKQ+ViZRy yqx9YjTuzBc+2OyPiXrX+TQeu8vlVSJWNpVBBoh3pTGvL8O+yFcNN49TjRTzqMufA/k20SelS5o9 4SNc/mMEpaRNSqRTZZ5Li0QANK5C8WOqzAN+5HPAL5NdpkrCy6faqLLgSYEj2JNRqi4jZYFQhIav fdK5vM7Ec2+cB21XSX1M46q9JZlFY+LrZSifvcjtUW5Pah9xO4v1eYbHusIQqq2vZCYXqVSkLhOd SvCe1bkvz+CCfRn4HSf6NLfmJZnvwTQe6INH2JNZfw4HUQR5k9hLX5rF0hLCJlKhhZYqEMGNFUQ7 MOuwicsE+twW7wzuRmNufXXh69PIXhQBHZpTWxr7yiw1eU9eWvREnlwps2uHw2/HkFKllGuh9/xZ Gy4K9zISzWUR2/vK3ZTusQ22lZuHSgnIlM55CFaZs6n8qjI9l40c0BC7j6A9/HPprgv3f2PhseZh Ac4lQpF6brhPK/nToHzb2hA/SPKbdIk8/zqoQMG5Fp8u8+XOlbhN6EvJEHO+JH94AWIHGnZXTvbF 7L6hTiV9TxZCpVMqrXxu5fEwm/ekmI0/t+xjTz2tFmCEx4p9qOmHhsFjYdLhryGlyIlUuXJKpHOm HFMesu1UklNO3sFEjfTSCNt4tklmu2z+3CKB8w+l8HVtvXfqORdPJF3Q+5y+J44b7CN9Xhnvg/qp N76szBdyvo+Ed3WfCfuYXvvkGT5ttK8n/W2nPfX622A+tmrnzyvrrvPGp4y6z6lzIyPnPzX6nrRR yNtIbskqJR/LV7F8XZIxF3PIlV0qr8hSBiJ27iCRiiNSFGdSpH9ZmZb6wqZvE2XpcLe+NE71KZEZ PtUiRI0JDHVMBrlMA26UiPOYn6Ui6YNI1TsIJHP58fJYujRhdjhABoY6U+9yfRTJN6k6A3F4PJ5k Vtps6/N9hIvbFuIaXsZHwFx66IwpTG7n8atAHgL8jnzpke/jPVQuBRA1ZDQxNInaevKlalQATbTI zJ4YG3Sgzl1gQZnE+iRSR6F6Czi0Htt4+JVF3Fy5IlRKqC99bRqbc3jtTKYSlYk0FlhwdDZy5dCV Yk/MAzF3WaDPk0YWwcKNI88Cc5L6syqmy5BqYylzGFdcGMzEpCbGYmLSI2ChsJaVS3fxoo1mXbio SYXYLFan5GwjX10Xdh2bq8xtYnNd+fd9tCr8LrfPdbKtwjbR4JrLRKtAH6H6VPovsbOP7DRW/9RI IdE20DOItC8b9de98RkivII7myAVv23NP87BG0R1xg7+bAhmuwSaYb4K5kdiFgg1XHYHGFiDl4F7 7BcvK/rLTvy2J8O033r9mIrbUDjEEDAysAB9dW6Yp2H5ulm+dPxjJb73MiwJ2ZvryJbEaye+1OpT oZEr1x5ymUy326ikew4h3crnjOnd0TaB6Sbw+WUPDaa8tgoY6kQajUm1xrnj71vubSXjCT/hUQQL +hsoJifjryGldhF3nwvA3a9Hcr7Dp6380EBrCaVx2/uwCZN1tACzPFTcC95Pp8KPvPUG4YuIr4x5 LI1bB8zCXnYriNFeBRwsbU9GcnG+cOewN6kyAwoicZyT0RaLXJmFwhgiB3yR64tMnyCWYm2cm9NI uXP4j2SJdfnBoq59dowoKhQqkeAUbi3qp0i8I5t35rLzuMKkQnHs8yOPvfX5O23+k0V/dJiPAX/n 0KNYmtdkBCW0BNf6TOkg5wN0i9an17GwIbtRyj7WN6HW+yKZy+HSmbko7GXt0dtUPFXaOhEvZykC U0JDpq/IlStnlpRanK/OkMk9+TZQ7mCLYFLIAUMaKAkxyZUOcRmpyWQ23Ub8KpRLjcGPQpUKDbaK jToxYlcsfACBAzd5wp0njkzm2hLGpjhxtVHmz/qcqyPmstJLRxrjCHObmVnULJSWgbSEyAQWCmdc eKPaW1QB/Z2CE4MmZ44ESoy36sgggnXpkdJuV43IroRVenrmioknVYHSRHrnypE4TyWq0FjP4v5c R0rVl5ocK/DHwX3rlQd4gQaBjYv+utV+PQWftjY5m9ubbyIQAU1EFDnOjCMSiLgG6aHmIaJwkS2J Df1pywILX8l4CuXTYDwUyi4S95F8TGUyiagT39b825p+Wc1fGiLy7wv4C/5cs2SixVoic7lr9a0x P7f259aBXiLkUrGHarkP5vch9Zgxx2T5vcf5fU2i/RHBX/CbYH5ISU8NgPO6lZ430ifSUgfDopFK 8oje44KrTYQH+IL0stDUqp9wcy++9MwhnWTaB4//985Dnh8dMhCWSCpjS+GYcRvSATojLcza2GM/ wHSsA/Z7H/Q+4TuHqmAnjUVlLmNp4nIQ+eNMnafytCJFepNcgeCfpvIoV/Eqk0i6KwwCAdCBJ1wH ErBwbTJXeKDD3FrLG2NxY1Mjl7lRJj+Ql7OWtTVPtXGkjG322lzeuuxEn9+wV/+uzT8CQbF0W+rT RJgl4iwjcwNmORS7jpw5/i7GSKUo2ZKWN5HaO2KHi6ztC4XNEqOhTitnuYqhpblVDBTAC7CkT8ET a1etXa2wtFjnAg3yfp7ALHjkTOouYCCTQnkaXrRQbvKlzRU210bCJpcHXyjUZSgtXBGaZxZYXGiy sc0hbmGr8ZvazJXFQPncAgvghcRb5OGyTujMXYBZdPZao0fK4lad3anTO5eb+SKcEaTajSP97Ck/ uvKNp42RHyqLTkw2APsolKMxhStvMqdwFU+lXI0L4LgNNTUU32B9Ewg1clvqQsOg7gIiwO4kbvyn RkqVh5TI7JeGTKU+ZjCb3FsvfN2oXzf6LmEqaxyrN5lxt4lJe/t9KT6T9l7+SEbGkYqgU42/23gd zx5a5qlnnjpcMNdkO/i5kXYxM3jLbQA5JMNEfyFj64RTudgko2NCHRNQA+JZeV+RzeiHlj3ki8eS f62Vl0qFj36utHMpreJlbt/W+u3Knu7D5T5ZwgicK24IZ6toDncDv7/yZseUdJ7eV9yxpo8tvUvn 92TzAoZ92liTjU/dJ8Jjrnwb3LfW+ryy3lbW60qBtdnG49r8kCg/RvIPQzDdJtQ6XKyi5RBSpFco YjL1pnfniYpP8CeT+oG0GIQsWW5N+EwdJdJdpc0yeZJIEyTtRJl93+H63sXvMh8RzKl8l0g3Pvch Ve5C8ap1loF4DTiE0i1YPlAmEE4B0iM3UucfldlHbX5tU9cee1MZ056Ms4AvuDXpK1za4lqb38jj j9z1D+r0o0VfxcpdCfehzFNxEkKDsTeBcOsJN4F06wpXjnCdGjNwVktOFF3mKtWQdk4pt3jAoSJZ etl4NCln8uariGn9ZQ10O3Tl8MBCYSmxKnsyZYkTiPw6vAw18vGJzCJtHJBTJFhibFWutEgDHRzT JhMqa+nS1wZ9414WTlO8UCDFNhtIU4u+VsZ/0aY/qrOfbe7OluceAOJQnj5z1bEhXGvclTD/QVl8 tFgw7ES4+1nGH2R5Q27mb0zuZ535iync2PKIGCjYGZ32VcZUloEDsiM71KHKVL4cWVLsKqVlVJaR 4vuJtU3sKtCbxPF1zrMFmb7R+Mk/sfBc6MeYyIanSn5p4IK5zyv161o7F1zvTgv9JlOvCx3ieb6J WdKMRrZshEPOwEo/tsJ9zR1KelcsTpD9LdmVeGwIEM7wCyUDywBPcUg4PP9LQ0b+kqonH451vEum 54x7KpRPvfnaqaeS22XUoVyeyiXew3MpPuTCORPOpAqCvxz2Mend2eDOB2/eOONVBN6fkTrSYN7j E/SX62ABO7yFkvTG62S8yae7y54IXg4WuHcXcPEPOWSS+lIaT6WO1yWH+FTwI8t9OttFk2OOGLiF LtpnzGNNNkE6f7mJIMmQ4a87SG7lJhA/lOb4SAaFSfeFDFLIofOFm1wex8IdSKEyQRmCx93kkM3S ncddIfgLdWQt/j2RPqbyVabceNxPkXTjCR8TDXlmFCpTm7/VqY8mc6MuP8rzD/IC/yYhDWYB1kp9 BjYJxBuXBxhv9MUdsZNTPA8pZ4JeCoRr4DHhxyF769FA0LWx/FkY/5tG/2ywH03+mnheZeLxSLB3 Pg9XPksgXVQ6MRgY0spluwDUDyyQrQp8LcgQJ8ABsS0lGh8pYqizgUEVAFTMF94y0BDk1y5sjgrx JpSWmKhcbrCEGixy/GiiTUCIibEsXK4MpCKQQoNsroXiBAB36SufuQX2I20ZGEzg8q6+0PgRP/9x fvMv0vJnjbky2Rubv/OEKcH+4lqZXamLj+rig8leyYsfhPlPGnftc3cWICNMYlJWwfoOXl3A2ygs PrNY3xBcUyxNo9S1InOyiJAC1FQe6r7FR4le5Pqq/HO28DNsb8W/dcInaPVWeMjZl0o5hPzgsFuf v8+4RxABsnRLyjtPJantb9w5OQEZzhQP2chvG/l9J7/vJXDEQwlyER7JPBYoKA5mHNdLKz4AFAnT 2lMyNdEcd+58G9FHgAtZN6ARzIU16sPFJqVW8eKQzI/JbB9O9jFSPQNt1nikNgyJi/RqwVshaaf0 OmW2ObdO2XUEhSOcC/GcwwjMN8GMrBKn01U8LZzrzLguiBGm9olwSJTH0nzIyfyrfcQjl5JaxJAC bPfJArg+N8RxX5ZwOdiBYy723rJziDSqzGks3/T+8r4ChZkw2ve5uIJqhYeVcY0ymZiIU65V5sLj ryGEQoSofBtLV/rsXxLpqtSvB3dcGQjIHxzuQyBfQ3KX9sLirpnbf2Fu/19p/pNKXekM2av1pEmq 3OLhZBSAMnFZoOA2EGYm0iMzcpgRGCRR5oVOJTCe3CgSRqk0ypXxZWNu6km3GvPB4K9s6caWbm0R cXVtsVeecBtJ40iagIwifRFoM0+ekJYEOFBtRuLfZnJzmZs0bDg5Oc5gQwUSiM89sQjEKhJSZxEa 48i4C1QYh9tImUUSlShMKFGxSsEy+/KdL11lxrRzmS4WGxjhUAxMGrQSaotCnQOzpTzPcOlE3sBN +75oKYywGLOzj+zkJ3Hxk0r/7Io3Fv/RFZAB7sAIoEt9eYvLYibS5AM7/YmZ/rt4+6/y3b8Z7J2t LEx15jssnH4kw7lTZHKaq/gIfl1rDTOxJU9lPIMz5UUQqkGoDKt4v00f9vk/sfDace89/wZ5U1Ev 8I8pRDW/dvlTaD6XzqU8Q39tddJ9XEHwi0cSe9QOrqEhJUNfDuqXo/q2hz4na/WDx5GBKhH9QkpJ xZcW4QSjgZQ+2pDKcAQqsyLNKewm4E4xP9hQ0de5PkJ6X5PtUfpQcudi8VzOnsrZPh4N3gQsAF1a ktGCTBvRfcY1Md0k9Ar4qqV1Tk4A3+GpvEXvzHsbWmh2Sufr4C6zPkb6z5l123jTzqd7aGCP3yfa LpR6m83kkUv9VOqjdUAdyJBV8tKwz7uM/a6LWvwiAY1oLI1ZaUwTZRTJt2SrulKe4aPJShRTaXeV clsp+DoaSG+msI7ERBlD3udkevAI4qrUbxPpQ2uP9vH8XJA9epf/S6aPMxPCUvCkG2X5w/zq/2FH /yotfjTYG1+Z+uo8INvNH1P1Oke4cnAQ1xY1MpZ3DoP0PobMcDiQFJhoHIvTBFpamsEydPhDmfMc 5sWl6pBNXSpxFrFN6rETc56R5Z1ZRmw4Vbt0Ct2lk8YcACEzYEKpWFkWJnI737hiZXOpQaUGHWuk 0Ch12MhmImuZecvycr5D5S1Sc+LDyAsLn1/aNN7Y1BMmcCipfke2HcF61pL0mnlc4DCeNrfFccgT /sIV4WZxFhFSEHSDVnlaXlIqM1Opsc7e6OwHS/hgcj/o9E82d6XTV/Lsg8vPXW7pcpQ2HyvMrQa9 NP9Zm/yABCKzt6p05ztM6fAFOSxbGCIpj/Qk0AKBL2QFaPWFuaFRrsU6kRzESpbpbePW9Z9nVH3Z ap8G+SFnEELk8hbHiHvO1efc2MfCEC9IkIT02l8cUh5m4Ui8JH+f8GQSSyc/dfI6o4dwvo2Xm5Am 0yGc8RYfekM9tIttMemTuzaatBG1JTO15GMmA2srZzGYky10qXGXa7ct/hsyq4jbJNx9Q4quwSaP JbMNp/uY2oakPrP3mZ4oVfZYy7uC3+XcuRVfL4O5Dim39nHPnHSKucstbiNrQeNcv9lEdOPCU9AI XbjCVSL0EelH8wVY1B999mNjjjcBdSZLu/yhwk/n65jdxdzKFyBEc1hFZZxbEBgfA+XH2r3dJvP7 kn0s1cZcrp2Pe/+2s6eZcptbwJpUegKZNUE2qRetPUnkq9qY1uass/lCB6Ewjx3f+NNQv+pCGldu LQzmg0n/LE3+TZ7/YNAfkaUDde5pC0+d+sp1oN7A+YbyKFaRyWe+NII+d4Rbk7uCcnYFJMxbc3nt 89OAhyYhw2TwhnF/ai1KnykiNg+YxFmS/ehLpUSuLiqN6nQYEDqwph4w7lC5y9Sko1/ITLogzdR8 74u4IdMXxeVUoISonUWIwAY7J1wXc6ULIABEE1+AzZk67EhbkIg1uCtHuvI1vPOrACZXvXW0sQu4 uaQMCe4bf/wUgo2/zeBuNNj2pSMvdRHkOHd5KpAogx5b3MQWJiY/NrmRyYwsdmKxI0eYgCttcWSK 1zLzE7P4SWKuleUdP/ooL28U6k6hf3Skm8yctmSqlbYO9dYzMlNOZSaTaEekDW6uy3Roi2msJZEW +0riq4Et/rmORAQztSeKhXnI+KdMJFcuPWUyBNK+InUXj9D8Mb0n453pLiJriS+Z9Farj6XQ+4uc TM1ikORPCQ/NsA4mh2y6L8b7etxnt21626WzTUE2ZAdIL48dHDqXriLmL4n0c6Jc5fpd7cwhVruA 2aQCbtuQLeMF3Csw9dyI9zmLUD+lZGbXvhCfe+1tRc6fIsdGd9JrI8H4ny+9Oaf00h4VkvkSQ8QA sGfS0c+QxpyMW2VsG7N1RCOuMh1qbQZbuvbnj6X0WLPHbLkv2dK9aUgzPn7EWMub7DKJNzLw+f6l T253+aTDDdZ1Jt71JrV3f3pKbgtj5ILKlWWkMZknD4nRudNcvUFWj4SfBtheY9lYWqEj2JAWxoH2 IbVHiTmGwFCXP6iLH2zmIxS+xVw5cMoOF+sUdDUuU4KL/KAxP0GW42aSZsk1gQiB5nHEOws5Vl/C jTrs2GUgk+4i8S4CXuS7QJ8YwpUuX3vGGIbUUwGxaSRPc2ley8uSm8E1mMbEMeeJz5Qhn3lccRnr XdhM55LuoUJfJMo0kYnoykFSxjQwpqm9aENmiDhynAQ4gtwzS6F8DOioOd6YJX501CvPuI50fLL4 eqtyP1nyKHIYMEsCoEE4uXRlLDJyyO8iN9lU53yZBuXp82ukblec2cIclyPRrkyb7NzhKV+mIo02 hWtLvjaVnzX5B4b6aTH9gZvf0aMbaTFSF2OHv4LsTNTbzluUOpcrXCZxMU8H7J0PC69woSEXgZG4 cp1YfeHiSn3NVeh/YmGbUIfsMtSoFB9z4RRzp4g9htzOpQdIi/hun81eK/a1ER9qCR4WWh15+CWX Xmv5nLMwsF1Cn+ARCuRnfpOwhwJiY7EvJrt8dCwnj83iuYHvAApocgyrOYd+gEofgsngT2GBcfUB gEAuMpYtF1YRxMZyHS4HHzKJ2QTAqfC5sz+tnYfLcTxPrfzayS+tBDexi6hDzD7k5FSRc0ZGzexS YZvxWxjzUn4s5HMlnmqpDUHrs9yepdYkVsaNcxmC7dGQfGSHLqdg59tgEWlXl76zu5KcDDWG3lsF VEJGZM8PJb2GMXcnvTNp9elDKp3jWa3+6Aukvs4jlWlUSOTEMpY/+PyPqfqxNK7XPn2Zpy1uYvVQ wPiMXeknX7myuJ9t/spBemc+hgJE1AhaqNBmtcNmCG9t4UgTU7w18Onjwm1EJ/zkCtehMsIDFeon g712hHEG82uwGVywtIBXxRVKI4e/duRbg/9oSjeOgviE8L5xxTvEbaktS3nhQ3jPfzbIbaPYmBfI TmRcDFNaDO6JRDAaqYOKgQVlUhjzFoLKAE/dJca0cpelNcffMCHrw/PL6Ypc4wrwF7DnjnQb6KPQ HCX6TQHSt6d4J5G5CE3KUWaBDidClQQIs4IctsjXNlTi0mBnxmJsU5NIpgKFig020ChHnuGvavET D29Ynmn0jcEhOVyLzI88/Rd6/hdu+RO/uKHuPjLjj/LiVqV+NLmfHeFDqMBTjG12Jk9utMXIoK8N 5io06djh20wvI7mK1dSXEleKHcmS/uz9J11gFb+P6adKOmf8xqfW7mJlLzqSOW/L4Gr7/zP1ns2N LFmy4Pc3fauKAhqptdZaJ7QGQbJY+t6WM7Nv5/9/XQ+2bfeYpdFYLAApcPy4e8SJE2vp59b4vjG/ bhFj5hPsbau8QEotjZdeeeqV171NthE/km0I9rVy6qTrQvyykf92Nf56Mb8sxedavOXyNVeuhXZr zC9r749r9NfX+M+34NfF/3Hy3rb2Kzho47wszXODyJH2GbeOabAGxMa3tfe3U/k3shNr8B0K6hx9 XtuIyedOewWdLcFZ1q02Xjr7GTZk6T61BvgLH/h1BQiT1UO3hbGAaM9ZMvFUkW8W9haGhYwpHQJA BgT0stRIUVDOtT51KKRvYMZD9HXjwtcvEubSatdOg99/W9qvnQHG+fMu+NHrnTV87wmpkO3Lcx25 mtQwx9Q+Y547+dbJ8B3A5tMi+LJLAP9FOCucYRdSPWRVJq+Rrh0ahncX4WkrWxJ4Wk9KHWB+hQRC zudKj+0iyCQBLpLMQXhcZtOBBnc5Lxw+g3iwYUyMha+QvRVwJErjw9iKfSrVEU+YxZoXLnwuYEJ2 YUilacyNYmlSexxs8iohcwSth8CGDVdaR2jfJ/Lg1lcI9Yy0td8W+jKBp5CQKN67JQuLkD+U+pn0 rnROlbdJzdoTodneizT4LibLutcJ34Zc5gCVLAK7CuTSl9pAApvsUg13eiys92WhVmopqSp67DxW mTbQFqleR3KJC07kwhdyh+9CpY/1wuUji4ls2tEnuvgQWlRiiwo9chXWFucK/VFlP6bmJDOnrjBR Zo/afIifgTptIum49A5L7/mQ7np307lrCEJo2j5alfG/sPD3Z9I6+y8XeOTg69omozqFfEiEcyrB 7b7upJ8n8/c9JLRGFqxt7RfS3Uj/SeorzO87nbQFPtpfgKalibx6WZivG/PLzvjz2frbxfp9rz+V 9NabHHz6mklvDRw6PHgIi/rrKfjrawQ4/PkW/njvifRt574s4Xpk6PxVNNtl7CGH37S+LN03Muob f934iGo490sLQS6fkZ9z8VoppKdKqlxBZJUBH/3nc/zjiNhzfuxdkALk1qEGIwjrnDvW6oKoF7zL +roMvvT+G5ThJoAFOFbCP4uL9vjMVvszmWs2TpWwyxgy2Fjqb6vw+xoyLPix9l8a/ZCwu1BavU8N LwLIZiYzRouA2Wb8sRBvrfp1bd1a7bnXv2z9U0sGwaAZWmfSejOyR0MuLwK+ddiFx609dg8R4nOF NoZYKvV5YSPnc5nPVxEpe6h9vg/hNHn4hYaUrnE4cpeEGVR068vLUNtnJuzAMlH7SK4DoY8lvCa2 pqE+Lh0EmND6AjRYrM4ieZoq88qCoMLFQ1mBTeRtpK0CtbXFxiJ/WfjSIpCWkbKIkQqUJWk+o+7e t9ZaIdR9ZhkJ7028DaBgmzmLUK9dqQuUdw9OTMEmJS9uCTTea5lCtfLhWTRiw9+rqnaZsctAamYf GZWvl5ZaWWrtKYVDCLEMBTBal0ktbsTj2lCufanypcTmMk8MbS6yZxGBORsabGQKgc668NE2nVmU wd4ps3t28Bs//kQP/2TLoww5qtLLSOhytYTzKg1oQsABWIBq+hcWSK3ONUZW/7Kx31sSuV+WBBFf euvr2ryt+c8b6dtae11qnzf2t4P77eT++Rr8/RoBC88L8dgKe1hj5MBe/7r3f79mf7mRvUv+/uT/ 7WL/sTN+rJRvnfIN6b0zv/UW2U9wD8ftAwj//SX+6zNQQOrovm6sl4V+qaV9zm8TtnXH8J7fyUq3 4Nsq+L6KnhvvWJBdDOCLoaDI0uxC3CXcPhXJAtWAv9bmDUcLOSqvM8h+4VQLm5Q91vy2FA61dGpJ S5ZjpXxfR18XAbDwXNu3WnvtbDJUlfOXUjsU6q0H3KD6rE0OvURvU6oPmEOu/timT6W9dPnX1v7S m0tv2tvCJtQyeVyaCPJ5oj3CLIPLLqUEv//HwceT/LwESZmA4aZAgM1ad9oTTcttM7m0ZoU2BZqW LrP2mH0sLmA8jVmpT2swgk0FFhUYM1ceBso4s6COEFoieAFB3kRQIzywAGoo32cNEGA1+V8BhIKj 8YXYnCXGNLPmyP84wCmeMDDpe4cbZDrduWJnc43J9I6wdEXcS6kzuULXJgAitvhLIMOMrMEImd6m pAd47zG1Pe888DWuX3lv7m12oVracucjvO11YpKOrympp13HMnIOcetQX/hLae/Iqhx3Xzm4VKAM kAEfVS4uVe0TqwvMytEKm1jm2KEqUE8hrSppmStNJBSeULggCDGxhdgWI1sMAXNznLqcr81DE6iH +FTAPp4yVeh7bvRBmN5r7NiSZ7Y6Caw5PtM3ponLONq4CMVN4xxJbVL89L/2X/h58L6TzkjmGylM 9Uil6Cn+nfRvDMg81FZGwH9bG9/37s9z8udb+o/PpOnQ76RronSu2UPDH5cKhNO3vff3p+xv54zU iyIhb82vG2gY6anhP/fK+1AtafD+j3P0Py/Ffz7F/+9L+j9v8d9v3o+t/m0DhYOnR4MI3pbQIfpT I7322ueFjnB67a1nUt1nP5NZYFJJDnX0BDFWSsdMOuZgMXkfyYdUWQc8slbvz/todqyAYv22gGZD apoDC+eWbIJzrdRf2/TbMnyCMvfFXSw81TB00rGWrzXOS1r2vcHddOKpYU8VfyqFY66/9u5LE1xL exvJx1R9bbTGGtamVGh8oc6AhYU7a+zxwhkdM/alMS658rm1rjmuU10EXOWNu4jpvPmCDCALrcf0 AZ9qk1SddKAGh9oE3DGVYUNOubrwmMaloYigAUJrnlhz4AKkAKUEICTmrPDowmNzl4y+ZjZb2Gzn C4gryAmiRjy+cEnkI0N2oQBYFRYVKWNfGvrSKELy1KjS4ReB0jt8Y7ELV+odsTLYVJ4XOqQRRBc5 cjLJy4N9EptJHBa6q3cBeZIZtqm0JR3ylS6Uc1vMbXmdOMcyXAZGbUkglwqw0ue5PqtspvGgzSSo vjaQV5m+IP0BiIsHTxU2gytpQ6VLjD4yu0CvoOJCuYy4NlfqhC8jto5wU7QtjT0ZdkDIHAKE2JVi d5p6M6T63OdBOrHFufIs0ClfpSx+ojEjR6ZdhU5dKTSZwJx7GqMLE0eeW/IkcYUMl5QYi8IGDP+N hb33Bge6MBAD3zYOWQKzdb+RoZXo2965LvhLx//c2X+7JX97Lf+4pb9f468759YpMJuXhnvZaF/O pCfwrwuYIoCj/Ln2viyMp0Z+WZDj0gnQyedGem5VOPS/HvzfcZaF/mOhf13Iry3/2gm3GmqHf2nV Hzvn1977ZwXptZKeaglv+dxbCNfPvftz739ZmzDUMCxkW+TOuJbqCTYkN64FEjXfOUCTss+EF6i4 I1jMAm1tSnpdsPtK2Obcc2cQ0bUILoV5yow90lfAkYVjMX1u1ZfWujXuz/fWxE8LcV9QuEdItXNu vHbOrXTxlkthnDJtGzKNOUwVPhLZQptBYK/c6dKf3Qrh59r82jmnWDol6srldjGfqKPEvK+8aeci 7Y9rOF9lECkjh73LtNk6lNYBC14AHNYuQyo0XHoZC8tErBMJfqEKoIuIOkJg42dqz3OXInbYYypQ g02mzxqoiADSgk9I2Sec9TwlboJdJ6SiO9NnoTwEKQTyODXgwenEYCr4AourdKBYXPpyY/MAQuOI hcUV70CIdTq1WDLUbzMVmYmTNpGwTYR1Ag5VNxk0D1HyhSMtIrKlYGXJsURnCpfLdCJMgLIOZGTM KzCXBWICKnG1dO5wjS8SyedyJYGYAJgQHxFqy8SEGOszPfXpxGcSF6HOLgu9S5TSk0pXiA0+tvjU kVNfqRK2jJkekIkJlSQmm5h8oM5diTI4KEMhtZXUliOL9bS5qwIFrESNdG7qa1wZap7BmPJU5YfA zr+wAFn7maRi4yvZ6dsmZQwL4xuUDFkRaV076fPWhOz5yy2F9n5dvi/Y6fXnJVmz88cl/PNTBBT8 /pR+P0Vfl84bWdur3krp1oARxGPJHSoe8v5G6vpMmNlvC+O1lm85/61VPjfIsdytVnC89dYvAHDn I8JfkP9hz3sV5PJr75A1QbDAJ1Jo+m1jPXcqLvjrhhSa/nM9/lvvnUvwsrxPZRLqK4sU++30Sydu C27f8KdGPHfKbaF92wXPnXkrzX0k7UJlFynbRCIlprX6tLC+rdwvpNOFDQF2KLk1DEshksWbhfRU yp1FnTP1kOqXzGhdvjapWGZjiU2VUaxManOwz9jXRv7cyt97f2nRl8ytde6YWevYyIxJi6h2qEQf R+rYkQa+PIr0SR/iERnAS+/OO3eWqQ9wHIuI3ZbqIhHzgCkCOnPmsTHK7RmOPkY8jF3lofDpKmRL H+E6qdx5A5Q5VGwxqcOlNlsj2CKZ6JMUbKt0nlDaDNBRkdJQoXQBKDbUZim4w3wv8oEIt9jcApuw kTr/5yLNRKeBF2iYwmJbT9ok6j5XtoXy3jfe6FMV58p9qYPgT5zckV1h7vGzRAEcaPAC2ScxVloy EwfFCxtOtpboodVjBezQJ3AQAnI+DP4qV9eF1kUCjHaXistC6XIl9YjjhoNeJvYqtVsffkSJDY74 jkgqIrEvpS7nF6VShrhr1ldnnky54ixUhUgVu9CCcotV1mbx7VCpyhjc3FMET2U1dmQIE1+jPR0H BTb5Fxa+rMjiHaiab6QBpn5tVGABYgnscFvobxsD0f7l5CNtHgvhqVGgc97w+mv095fsv97K//xc /n6OnlcO2RCt0q+JeE7450p6aSE5xHMtvqyQon0IsJceylz9ClA08rdW/mOpPVfiIeMQaaTKqFKf SLWDcipgBPhjzr500reN9nWtfScm3QITnUuB0M07FnAAmO89UrR9Ci7A5ekvvf3S43ZgfLSnFhgU L538jgXp65HUlj/3AJr5VOinRDnG6rUwnirzK2l4aJ07EyL/TKo1wDtkY4VTq728twJ+64xNQF1x ilg8ZuYhkhehGopDm5nY7CRWhpVNP5XC54V6zdlzxhwC+Zqoucq3lrzw9W3qFSbliyNHfHCEh9RC VucSi0bCX+cqyf/2BMcqpHPjcUnKIPltpVYAQkiVAdVEbOXOljGHn7VHh+rA1x4Ta5zak8Kf1z7V kWNeWJPIpAufTNWtc2NXmOtUW4QygADk9oGwSogRBkbaSK4CMmlV+HzpC6Ex99Up8n9qAiCUL089 eRIosxJAAEEYTGGwCSkXHBX2fJ3Jh8bcNVaXqnkg1anR5U4VmqEhWMLMRtZFNIrTBPZcm2ekDJVu SDkKuwj5dUqqYbeFvs41QKCJBRwt8gDZdUioA7qLmTbhVqW8LPVFoVeRWgZqF9qZIYUyQMpCZS0y s8vlrlCXtdpkbBExnv7o6VMYZ2Ah0vjM0irHaFzd5SYOO3KZUaXzS09PLTW1tDowS18hc9YW18RQ VnDc/8bCH0cySn+pJCKMEWykwo30wUbyf29q6rysrG1NdhN+ryCyvy5t+Is/ruFP0l7PQJAj219b 7dQg/DSStBEStbhP6KdK+sve/69L8o9T8sc++Ll2v6+dbyv7x9r+fe/+AAf1ROd8I3/3yTQZWVhq fd/437ekm+X7rIT2ZaU+9xIM7BW5vSDleYeU26XMLmXhstcxu02FS0UmC2Bvj7nygotf6E+tuMvm 54rfJPQygX2YXnptX3CkZ0UhwWh30OHCY6mOVx5H+sx3BjLeLmHI6FAG7UcSwvu2Nca5Vc6pACzc Sv1rZ/3YZAeieFUX9CpNfXlGJiNy+a3T/nL0vnTaxp8V8iQVHhOJ3kZm46i5IdUWl6hUpI/biKx/ hBPMPb5PlU1O8mFlTVLtoTRHOLYZhBBdB0wdcXUCITRbpPx7eQ/feFRpz0qXQv4kL/CZLuLImuVU AJvAgzQhGaghc8eFSXb2LI1tqtUOB7/QelwXkDHP3GZwwFM0sZT5bAh/bdNQQY48VulPrjwBQYAm 4ClCZZYCGvzQZQe5RhdkXJTfN9a+tZYkUKUaoKtIL9/c00KdTy2p9tTKEWHMC4MCm+AtRLx5LGir 95l1IuJYJsoy1fAcyvcBsZRMoMPXcPBT65w/dfq6UrtM6TJtXXqbyl/GbqKJqSZmJt6rdbGybfTb 3t8trC4Xi5BgAY649MXCVVJLzk3VF9lQZgIR9ofvbHnl6rkCi01Z4thRJoExbxIFR2TRtjz2VOZ/ ayQIJBjVG6n/N/56JWtwyOBqTyzqqRR3hbgu5V0pn8nopfaNmFn9SgbkwRomcbKN8nlJWvqfWvnY 8E/wy52MD0TM/1p733v7tVCfMvG5kN9a/Rf8CCnSE7Ypu0lwcPv3RruvC+fnDoY9+rWLgJTvG+N1 gTMyT7AkC/ALCw9+LuAs4C45YA1XeygEvP3a6sdKhYjtSeGQRHbYaWGr+VsnwoMD45dWOkApVeKS zKPhvFxjzltzlivj2pi2FgVa2eUSPgFAuBYwerPGn+1LqU+Z0h5V7ri359dSeS6Mt8beQFmFiiOO QoXUUiK77gv5UMhfev3bUt+H85ULqcwsPe6lSxa+WhhC7Wi5xkYSwolGGAAFoUGRjluBkFlQ9VRu DGPlvrLHuTGo7ElpT7uIb3AkbAEsxGTKA5fXBcRTI2xKd156QASL39ek1pFsEr0K+doVWoiWUCLL kEuygxtE/iKUYHtrFxpplls0PHgfS7vCWBc6xPay1Aqf83Wo6KkpDFxlkhHJxKc640sThxsACIEw qUyuD+UG4gTuw2WBHXiTLjWWpdulVuWTvi7bnBSBrxLjvSeGCFOQAXcW3QVcH3DLkNuQHbigeeRl qjaRCGZMbdwOfJy8LxR8QXvYxk7bNTqwtqnsXR1sSr/z7VSTMk1sXHURqXjvIueXpbBpcHa1z6U8 oNpEblM5c5VA512OtqhZrJA6xk1kLFy11MSQp31t5sE1KMM2kTa1FTuULjzYylicD/6FBQKBpY5U /JUsc7Z+J8NKsMba80L/sibC5tqrt5379Ri8kClg/QUE0arPS+WplY4F+7lT/libz416qmT4003J 7Cp2m5OkfcyEHRKXS2085pJKX5H2GwPfWuNMa2dWObPCHrX+DIl6GbJ7kG8mI8M/EwMLvSRdawHH cyfuM6rzhtdGeOuN10ZbB/NtTN06+VIL24xZk4PfpDxk9qlWPq8s+OtbK0MmfV0Yv9bO20LHfb2s jEsrr1Lu1OBECmxga9EgiG0kHHONhFMm4fJeG3OVwIdSy4zdVOyhZLtofEyUG6RU6+88yWHuU3lq 8Pem8OAbw8gaHysZsmoX0it/1luj3p6sE+mlJ9uF9AEpdYhUslStNPjaF+A3E5uFmImgmtSJLw8z a7oI6Noal+awtEabGOJ8npqT1Jr2KdI+Dy5bxdzmffe3zueWZN6NrzwAgdQdLUKxd8kkxcJ7t6g2 3/xzvvjdLOwK8LUJYdP6sAMQLbM24N97GUG3S5VH448pGXqdFWQUF94BegyfIOYG6wvjSJrkGtO5 0hJe1ZPyUCaDPCEZsEIe7mN9ichPrD4yFwQL/2ymKr3XhwtkEZyL6ySVVOTKPWYRkMUa8PilJ0QG ExugJ5homWxpV2jnxtjmyioVt5UODXZZ+IBDi+CPrNbTOk9dhQZZNxTKS3xZjbatzHWp72p4bb5N RMS2KU51fuLKbKCQ4aY2JMuIfHlusbNAEkABrjre1ibpEJirIMTAnKv8AzP69O8ajIX2utQ/L8EC yrkSro0EyfRjTzrR/diRXhY/TwGwcGxJ47i33vy5tH9uzG97eGfjx878Y2f/bWN/BUwW5m2tnZbC eSERlQ42Cck44Utt3grlVshPhXwES77XIa8iHk9mBUFSIi2I2wypW30fApKPuXoupGPOwTKcCnaX UKtoCqlzLkUY2CtROBQE2IXMHVDbjD7U/LmVb0udLEDbOETUEZ+u/9rZf6yd34kdBlQVmP1DwfYx BewsQg4XsAyAAnWX4FzaqQK1OV9697myTnjx2nxaa8tqTvRVMnmprEuu7X2tlGZQwgE3TjwqMGeu +tim3LXRIdjW3qyzJ5X2UOtDxN46lWufj+FPdQo5duFIC0+JdSgcHon33eiNA3WSGkgLVGNPSRUf pLI/J2scIhIzkEMdFCAIKxVIH5hYWoXiP1d6rhOl9cncWeUg+3GlPge7NSYNJdPaPNxB4wA1fB8K i0hYwZymEkx3HwEF/PtiN7FymAIq0YAiQkai21BcZ1pNqv6gxMRUpTx+BJuwifRz4Tw3/jNSdGoW oQIN36X6urC2701jEPyLyNjE9jq2lqFBLIbLI/MvYAQStUuMVWbAp3Qev4F3TvELRBqb2XzhQtJI pQP6QCaUt4m8SSQAto/J0PEqJ82RNrA8uXksgoVvrCNzFeqXGic1DmSfX6Q1lZSLR3wVzGE6ch/p hY8tMXe1QOXxhDOHDbR5oNO+xNs8fMG48LgygN/nABxHG2vCoy4OTPHf40hAwT5noToQP1/XJnG4 vfYNip00WjFJ49BGXJT8rpZeF8aPtfVrafyxNb/ttO+kxtv6fa3/dan//eD/OobfyHaExh8X78fB e5cuCmlM2oOvyU5Jn1cuoh2xd0gACuWSwl+olx5eTCSNJjoDYmmfCrdW/9yb10o+Ztwp52+NAk8N Q30pVSTtp4Kod8gkUFLjD1bJdF8xp1Y8dwCg8raxceW/9t5PXD+Yrtb2Ln1EnreGq5StnMEy45pw tiD10hLS0SoWFz6LpLQvpHOtPeXO1y4+d1qXzOpk1BXDdT7b19TXPniu3E6TzMdPHjcsdC7yxn0l HHtjVfALn+68SWuOK2O09OargFkVwrlVXfU+RbZ3pjhLZ9HrAHJFrj3RFUcW95j+c9jTmiHhb0GL MXdA5Af00p319qy2ZrCcGdyxM8vNySLgD6m6T4BcfZ8a61hfkYSpkhkxT2osjkyWWVxncRtfxolK g2re17V1Id+EXE/uV97k8qHSAFKy2A3+XZu01rxzmM5mWotZuKT2e+GLuU4DC4XOFDq7DrVr6eG4 FO46s8tQa2IdubrHqT2pJ+tJjU1orkNzGeg4Wo+UcK/Ijr3StrYhn+oQhl0lJeIZXiB2Lh/KM4Md 2sLMh6SXmVznWkfoXaE0+cIk/WdAT5lDVQG+KQ6YguXBzT53/qmwXxfBOiG3sCCFLjpp3OTSpTtZ piLIogq01JEtldEVRpUeLWNq6VPP4SxNci0ts5REBwBlFfbHE21l4uozW5tmnvK/NdKtU4AFMMLr Al7VJFNdLa6fXQTTXToHFi4b42Vrkb4WCDYIpIrbZdNNOjnk1CWZv2Xcj4X+6xD8PLhf1srrUiMt Mtbu1334ZR9cFtahUY+Nem70S2OcC+0AICTaU0YmiLf4qBqRo3zZujAdX1Y2judGO+WkvgK/fMfn rLwT2f5Su2TqOZVeauVSCMDCJp29rOWXjXLuRLAD3Mrrmux4/hOKbmWeC/4ScjsoUmu8DqhNBuWD zDBeQb812rE1yFYCBdmC+dY5p0oFFl6KYAvpG9FVOM6jh74ennvuuuT2kdIabDCblDzXOTIp/mmE 40Zb5uKm4IkAcIGFSW1NTrl0qbV1LVfBrAhnbUQdKuRhtjGm+0TufDFWZ44whNeobGghJHCqsWZr n97AEbizhT3prTFUZWPPS3MaaINYH6U6KcyoDSqRxok0bR2xtqEz4WuU1gXdyKVGdyZXKVStUWRd m05l6jSHQ/SY0qFKj25CdlvI59aEDoFoX0cisvQ+ka6pekqUbSD2DjwUWxtM5wiw+Tgai4c0WgXq JtQ3odY7cmYJqSNlrhjplCeOXW4YidNUxkn5QmZ9Zuxz41SdwaSvYJBTLvcEX2ehhUAWZJY5lHFV HvOgzu/ZwQdp+uDwc18EFnjcUWfzlcGTluMGWdkXG5NAG0b6IDFHiT6tbeaY6/vM2KcaRGDlsiCF bWy+r9pAihsvIm6ZcCWY1xQ8S3Rt2XPpJBEMc2qYM12XAt+pfSc18ALJFGcZtK468002cvky0v6F hUX82EXDPhpvC/ba6ZdO3RTMIpv36WxX0beOe1mKb3vlx9n889X8tdeea3YdTyp/2MUTvOVSs/jj 7yf1254nQMAnlPKt1m6N8b7fJeSHdu3IyOS5BhxIhSq8wEsrf1lq3w/615P2ticbPf9x8f/6FP7/ K+D011597ZWfe/v3oweIfd/Zb2vrWinHQlrH3D9rwzZkVRop5IMHv/Xaz2P4/eh/OwSX3nhaWGdE e6ttSZs4DtHYh2zpTCqH3iTy8yK49f461Zaxusn1S+uS3qqtg1QM2bAKWdiH2wpKgNnX0rbgl/o8 Z+57jTn5yiJUe1+5NrADVm5NUnOYKJNYHnUOv4nUa22QpZ0R1QVTmKZLLT5BBkPk+Ervioj8wpyW NlVBlrhQINI6FFoHRgNqn62hYIW7ULxrnHlHpp7x4vH7uk4m0ShfnDj8KEfEunwHs+AjU7EkEuCI 5XGmTHJ9HhrT1KESG0b40dcffP0+cyeFC8s8rxwKemmdiIsQApWBEnjt1Ful7COyLBShuA7kpS/0 HrvwuU3I78gMoEyKNCwWfqR1ZqQICnSQyLUL4pgm8jzi6UxUSkUNONbj8SioGpk8IXYeyi0zaOKd oYUcObeVSBVsbmZzczCCzjxa3DhSqFihKoNLJSrlIT7nnjA2mAdHHPvK1BZHPoy8ycTqvDCYc+ms QDG+iNvfQtOSLfCgqSjQEJQS5FnjIudoG+i33O5io3A1X2ENfhaaYuIKsct76tSSRp7CauxEoUe+ zhWBUMUScPEvLKyL4a6aPa/U60KFCS398SKjDp2wKGZdOrku+K97+WUFWzo91ZNTPd8X813BHBrl ded8uwRfjtbrVnpez98205eeI2bZo6ATTrn83BrXmsDhQrbVIL+Q4f2F+nkpf1nLrwv+0tKXBXPu meeV+JlssqbcWhHHuRSeW/WPE+l4Dzg8NcI+x0nnuxxSf55qg0Sf+OIglIa5Olm47D7lvqx0WJtr Ky0jZldKAMKh1he1uFtol5VdelOQKVEjkbwDZadm4woOP/CkSelwoF0S2znk7rSLmacKzCU9L2Gi 2X0FN8dvDGpn0ntIdHWC72Ida9fc6W2ptOepPkzUWWEynSdVkCixXFn0MpxtU4CO2mfsKuRSbVho bGOLnUf9M85xIOqQn4GFhc/D9jY2E8tDm/2Y6xNoqlWCXIo/zjJ9Esgjix+kEMMGm5jMe/XRbImQ Dph1wCxsag1D7cEdiHksVKlQxHTsTXz73rfuY3cYmYNYHYfyiDwx+bG08fkMKPVc8tuQKbRRwA0S aQKhBVnV+fQ2hVIV9yCOSOttLsPd6ePKHpEyP1KMMSucaUPaCwi9ZS6NoFIMn+cTlUnBZSHTRQAd tBAsCV36TKTTBjuR5yNpPlbpqcHNXXkeaDApfCCPHebRYx99euDOHh1m4PBDnb53pYkp4JZHrjhJ dCY3uFWgHTOrMtneE6FsNxnpxrnKuTaaNYFSu+BHHcf7hr/6obSXsV47ZqzKiQ7XZtZIOIlIZvAj eHZJYya2REWGGNmzIuB8nf63Rloot4V8bbldzsLAwuBsYg0ClVRawkEshc8L+VCIXcSQQnqXWaTK pYU/dT531q1SkaufiDM1nzfuvkRunB4zGp4XVvfaqO8zDibpU12rT41+hSavtUuprElTCMTMfJXM j5VARn46hCi/f19l9mXpkL52nQWKWfjzXH+s7VHrjkPtPjQGkTXxtLEh3CfWrPJJk95DJi3cWaUP obf3EX+I+BaeVJuGxn1o3mfWINbuahvxiXvxTqW+jqQKotSYdQG/LwBV80La/8Jd0odG/rX1Xhoy rbBI6FOrNhHVSIOFNmn0SSE+9qTCBwaEhURfRHyoPiDSSpuuHSbVpqTrESlsFsBW24wrnbEnfIpg sT0xN/GCQaQ8FAZZ+L8EF+DbMWapMi6NOZjF4e5c/r526CX8RcD2Add7dKLBcbCZxVa+XDikVSn8 eKwO8CFAyibkWnOaycNEHmUa6RThiuPUnMF+1j4FRihdKreoQJ473Cgmq0TpwqJwkbucx9PGJwCA AU/qtyN56okDX75PjWFJBrXmkTAOhVFpMn3ItwGVadOYH0fiMNFG+MzCE2FRTZ7YUm02MenHRB+3 Idt4MDjz0uAKSwoUTqMHKv1o8COVe9C4oSlMIoOPNM7HJfETmxk69INL34fAozL3gQL2UaPvbVCD OgcQUoMtDK61xVJnC40GYEENeNolvD/4zhnnBFO4QTaQwJ7zDEpSJ5PptWv2obPJgnUWlD78NUcW IpV6G5uZIyWWGBq8qw5t+VHn/z2m+tSphxKqYA530PsUiHsbGefceKqUz612TOetM0rUYaCMEluo I2OZe8faf26c18b6sfR+bsJvm/B1Ex97n9S/lbN9Nn1q+bcVMeCwAGCE5w5GwH3trXOhvrTmKVN7 h1kRkcACR9caYpLexuylUs6F/FST15DSoJpsi3nMICQQOdTCoxY515VCkXCRSwUm0QMpfpqT0pxc C+UKYx7Q50hYGpNaHq1tDjlqU3G3hdbj1tzZKqBhSxcuVVvz1mV2mXIotG0i9i69cOZA0Pt+asyX 3vi59X+e/ZeVcV3oqT08BdzGgpifrez5rtS2OVS0mKvT0qF15rdYxy9wqULr87tCOVbaMiEtdCDJ Sne2TqU+4mN9bnEPBv1/XOFDac/WsdC5TKZDYA9TdVK8YyHX8fz5TUqWycBTp8Yk1Uf5+6RAQQrY 1BLJ1hMzi6mhtYwJ1FSpjxcus4kEvDHTqERhI5mqHFKbtIQciqHbJWiVUGZKS+48bR2bl8a9NHYf Arwz4K60mcoGTrlQmbnSwFcfQvUxMYapPvWFEbRZ48mVx6cONMw4ZQexOAzVoa/PDHnMTu+F+Via jeTJwOWhFYeB+BCK96k2SzXGYqcmS7nSHFEdmXTq0pknuNpMZRDtQ2lyp1MDix1EErLBNBYHDvPg CSOTGxjso0LdQSmF/6wGUWmfGwEymTLPVVh+KKuJIzzq7Aed+xAoc2Ah1YVY5cjVvmuz2gWr2gtg gWybGywSZVPqi1yO7ImrIEPSgc6EBgdJqbIfVfbhf/GCRXa4yJhzITzX6q3Un1L7OTO/1tavhX/N tIU3b6NJn09XzXzb8ee19rr2Lrmz9tU1aT4mbkhfUG7X0euceO1bJ7wuoajFUyWQkryFfqqkhT/r 3NnyPR+ufGHjS9fMvJbauZCeqve6jt4kpaeZ8EJq5NRrKW8jdhvz+0R8bu3n1rmW5iGQCqSO6Ueb vouUUWZN25DZFOKxIv0BTu8dY2BR4dEaWyoMaJjxvmCOBb8KwVb8OqQ6dw6H27qzfS6CqlYRNAy1 i9mVN9s4kzaannrly8LcReymYJtgnDrDOprvfPYpEZ9KqGtuWygLUj5EF9rUEe995TE2xm3ArjMB 1Pm0MBYx3siQlW642RR8yqUWBPzAke486UMg30GJ4YktfDaFdBEfff4BcMj1GcTSqTQOhd64TCAN bP4OpIAcG2vTxGQrT0ohYwK5ItMHwj5TliAOl8HPXSqfSnOT6BvfbC1AG/6XgfuO5UFhzioLFsA8 5v61jg+ZAxUBuDU+PnaIoG08cRmbja9EGmULD5b00VXuPOUuVJD8uRpq3xZjk3G1MbijYMeJPIn0 iaOORf5BYO41bqIzI2364LODkL+PJXzmJDYYXZxK85HFMq7EBBqduWzhMylZpzzV+AeVedCACOoR KgihjitMlLHLPr5P5U+ABU+e4kMAhECdW/SjTT3g8NhBquCmprEyAzka/L3O3nkykgwUIJ0aPMwU BCTgUFjgCECDa329D00YmdxmImuUufM2lnKPTyw2tfnYokJ9Zkv/rsF42/hf1s73jf1j674tzFMi H0L1kpq33DoF6sYiu2l8OVmvZ/3tWXm7qpcVf6ykla9WGlfJzM6Xn2vraaFsmmkTPUDYww6cG1zG uHJGJTjFgF69L61RYY46MkJClfps5SG0nEuhHxIRmf9SwFzotxoQILWpp0LcRNyt0U+5sgq4bSwe kIojsYWN4keZMC5JtNOrmIfZP7UKnM7TUjk1MsQJtAooMjWENjDPDSQf/dIDXNIxhSWc7xPu9F6G cSrJblxgomMuLN3p0hp/reXnpbbMmWslv3TGOmMLb1iF83UlkMrbxjhk4tKdr3Kp9MAss+690x3o cpkImTleJOzzChej7koRsq2PuNyhKpiCXGlCwVUfbOU+MR43GX+uNWAhVh4t+oPLfjLnf4Lx6Vxu EQhkeaZFecKjxX5yxAdfGnrSMLNoRxwZ3KMtjCC/U4PGa4Ad8EgLPvK42magovtQaS1t5emdI6Ty lKgmdZprpAy7tuRK53MNRljoPLKdSm4OYYHBII0nAQiZxXvyxJIefOOxDud9wiwScZ0Zq9RcZXYd aZFNp8qslWZLV2gjMfE43+NNdSayA4V6hHEudCaB2xUgAie+Ssn8WKHGjsD5CrAwT/GleLSnjy15 aEoD2AEP8WyQCe4QwUw/qJPftMkHdfpRnX3SGQT5A7wzOcAUNLESoTC26QePG/riJDcYSKP3aZq5 J1MmOw0UmjRcJa1jmFQHpVKlxec6Hys0lJhGfYpBmg5u8C6xkdjlJpRDjZKpTwp9J8/u/42FLWne +0pGO8EOk308emmo55q/Zso+pU7N7GXNvu3424p/WYvPK+nYcOTo2GPH3NbC14PyupaewBc1mQ47 FSpE0a0znpHne8gJUrpfe+N1wkA/41hHHJRY6xCOOMAgkLIl/g2epeWPBQX3/brgXpfiUyu8LpR9 xp1LUuGA4IH5zbVhZYzXMXeA+1jZZ5iUnfty8N6O4bdj+Lpyr5W+9uH7tGNsf27SHxv368p47fVz wT836ttS/7Z1r60GtYwrWUTz0nrsnPE14782yo9W3eTsbU06fmxiblWw65LtC25difAgG5+F999F XBnQbchB7JXmNDcJKUNLt8H82sm3pXRb6ouEanx8KXPSpx2PPeIDfexpn6qQ3pfyM0gnFwtzAh8B UgA1OMyn1mG3idJ6HKyHKzyYzEdfHuY2pD5D2o06rM7dm/yjKQwRHnAENnMXSaPivY1qRbqwQk3N gBqXe4RHhqCNFPzyCb4eUqq2qMZiKp2CQQ6FQaaNG2cKd78iyzDV2hNDhYJRtcWhD48fTBcZ28Xk HttQXrxvIxIYtEuKNGAEYBM4Sx1pwoMukYuJ5VmpMSuT7w22UuehNEOcs+xgLow1aerKs1CD3xdS R4xM1pAedfHeVh4SuO9E6GIp1meBPNVm9/zDbxY9kMe/SePflPknKCWTe7SEIUABpvCFSShNA3Hi cHArdEnGpshMgSfTwEIAdQTBo9KxNnfER4e/94RBqs0TlQqh0IQJUWLyNHNmoT6Cx3SVIeAWaXQE /mIeA/l/1SPtnV+H+Mc6hKV9brmfO/n3A/9zq/5ch7+frM9H6raZP/XUPh9vU0gLapvPtxW1aafX NfV2ZG8r8r/HYnYpONL7a+XfOudc66RKp5bPrQq5/rw2Lp1ybmWIJQjpJbREo70t7Zde+9wr39b6 SytcyPgt+2Mvv664czs/N9St5z+vSSlIbo19PEbqo8N+KI0R3l4H80XO1wmdBdOGLMrWlhnf+dTK p9cuu3a519J7Lv1DKmxi+qUjI7S3Wjnk3LkiE+KNP/WVj6nxcHhfNPFaK99aFVg41mKb0IX+CO3U JUwTzZeV0KXsOVe/9g6wUKiD3KNKn67NaSQ/BOIQ2nURUoDVUy9fe36dMst43vosKZN4L4TLnLmv jWHh+4zd5JDxXGYOQ+Xe4z+G0oC0rXhnBOR5k/4AOrC4O2DB5u8d4cFg7sTxb/L8gyk8usoEseFK ZNTR46Gu7zz+wQea9IkvDTxpZPFgk3t8gi/dm8yfPOG3RHmoydK5cSYPQu7OoT649AdYjFVI71Ia j6uGWtDn6vxOmn7w5FFKGlaM22QO07RMSDe/2KBMfmRJY0sdBxaVuUzuc4ELvTFPHLaw4Gr5hSVs TGFti7WGyJwZ4kRSKdEWbBOMMEssPtR5nRvLzFBm7yx5VOLrA9ZSLvNmAVKBMFSn4IWBBgcxu0s1 OjFoYEGhPgEI8vyjRt15iGdmkOoMzMs2t2MdxlmKyWoFPrXE2BA8aeaJU6QOk7uz8QzZOx/QFsaB OM10trKlZaTVAV35tA+/LA1SUjeIN3KZJUbKv/upfkG2XFlfevvWyG9L7udB/P3C/jrLXzbW80o9 tdy+JJF5LqeHYnJu6FvPXTpxXXJ9Sq8yblcIZMqgEr700ldS76qfSu2pfeeFTj/W0oJUilKbjN7m 7CZldjm3IyuCpQvpG6Y+w24XIIjZpaSfO/appd9W/Nta/HXQ/3xxnlqpduAfR73HrEI4AupUT5fJ uE/HbUr1ObMu1XWpHyp7X5hLX4AZOSbcM9x6JT8h7DNhm5JuXZ07WQYUcLGKmXWGnC9UwfwJtLKy XhYmxOHfjuHPpb0vpcqb5dqgd0ijqlUutrlYhswphTHXocpKYxYa48x7t65EhECNU50322f8qYB0 J/m2dsZLona4RJmTyn8fthfxcBfq97k1SfSRw3+wuQ8u/ylWRqQ/NvCiTeGdyXIb8THWxokx8eRH Xx644iCAT5SHRBvz97Y0dISBzT1AWgOGqTp3uEcXMBEH8CyhNfGdSWBPImfiqo+ech9qD4U9rR3Q xyySHhN5WFvzbcQf8UyCaaYNbPZemf7JoO5dYRCq49ye5u6odGF/Jq1PV9AhpGqIDfQ5/IJrTS1j pMuPujSA3u5Drffk3uLXnrh57yKb6FRkchGiNNTL0mtzq0/1wpMDnTWFsU4w9b7uuJCXhVj400Af 2OKDLQwNeuryHBJ4ps0rV4j1Oakm1eY6PxCpD8Lkg8WNIpWqHLH11cZTIw0WTPIUpBotUFmTR2YD AdFNILnSRKeRTx5DZRKpsBXUe7NBZRnqBSnQZcELJv8RvODKI0ekA4VTZ5N/12zv7edaJruJwYFW kx8H5r+/yr8u8m2hXnt1lTKbjDp37AtCdMN/XgkvZO9CYVuI6xRuXcCzveTyayPfSuac81eySb19 rTU42W3Kdv5kGVNbGPNaeO5V/IJoOeQC2eym0Z4q6akUDul8HY62yehSzb8s+d+PyttKOuRg/4dI +VDb423Cv7sG6dyybwfxy0k5Lth9J64Kbkf2ZrKfumCfW6U+P2b6a0U8SKneZepd485Ke1JaY1iV RH2ASO7fNxxfpPzrzrsurWtvfN8HP3fBrVLeWuNYKYU1WXhkYPbUW+tCrlMhD+hYeFjYjM8/utwn PEnfGEFp9KTtvL1JtO9b/0TKCycQY0+NdC6lzuEgfkqdOeTGkqzZB4k/htq9L30qnZnN/xZI94BD CkOqDH3+PcMLUN0PZI3Ae+VqqI18ZZToxCRGxtQSHmITFD+Bd4BJKU2msrjCYGNYS/ZeZz7B8Cbe zHMnvjt1jIEp30Eb2+KnSAcHPfrCXW5MlwG/9rnWmtYGpOagNvFY5rE6iZRppI5TY0psTkLX/qRx R4uAhbMoTCI/YpPyjYljTSx7ErhUStZTS8tAXTriKVTOibp4V+muPAlMsIbs2pLryqHDw5/i8JS5 LY5NsoIMGYbLkW28aag/2NInjf7wXvHLJppIxk4dgXSU1enQoA1+yE4/sJM/4b0RiMAWXHGaGlyi g1gl6CJXgi4SHJkOdVgzvglUYFal70320eZBoEMIsMIGebGw5y43ct4HqSzh3hHv4c2BBWWGYyhN xv/Cwq+t+21pvHT854X4Y69922qnhm3CYReNa3fU2jN4yUsn7Wv23AvnhbxvkJ+lz7X+UqinULpl 2nNlQI0cC+HWSa+9eGv4Y86cSpaUSST0OqEPBRnkARcccvFcaudSP+b6+7Ct8dIYzyCIRvnca99W xs+d89pr64iu7Qk8RetQMJX7RDumxj4xdh59COZnYLNkINUONfv1aP84e5dO3RXcc69/3pD2j7tK qUO6CKhFBjlEJxrRz7k+qu0Z2VI2YDIbQTWqfep5SWqlLrV2LZXenvQBDWl3rbRzJoNxdqXa5TKw sAnEhcVY1Edj/ieN+VPikCHZ2uFwF8dMPeXSOqAvpfC5NVbevDUnkfBI6nwcvrVJ5c97adC0D0lN IORTrI36gM/N+TqSImkIdeRy9ymoQSHBmegTDzncIMM1kTqJVdLIwpUefXUU6KNIm6bwCKB4gwHv ZDpZyFyQ6v15aM80KHl15Jq0b9KRTfK5BydLLO37NAFsMlK9OkuUSaqMYb3JagibJk0gfRHGBOf1 lfvCGvferCMT0EptCZFC+/IkMmdVSBoflS4b6xT4ovXkyuFjbQr5bUKVKSNLnQELsSNDtIQyE+tc BLQaRCkBzjCtdcikLpTeg0rfGTRSNx2qDI5IpRHkcLtgImR4X5mGJgNhpsMfyZPU4oiDZgY69RBr rEGBR4YWOzG5mTx7dGBJdLYNlSbUbGEqzx58eQ4vAD7N3gvUS9JXkHG4EcglUKjEpDKbTi0mMua+ zLkiHSr/nnd+bfXXVv39YPxxNL9tlVsnHJGuIfJXpCfY71uyz9r3U/Dt7L1d3MtK39XiuVJeS/U5 U18S7SXVbrn+XBukTrUns8m3jjvk1DqeLqLpPudunXptyHDNPhV2ZOZXWnr8JpRfGv9z5760xmtr fH1fEHRr4buJsIFcX3jMJhIvhfHa+S+Nt3SlUmdX5vwllS/AVwCVPnxZCm87+djSu5w5A4Cl+LLW z52+77Rtpy8bdYUIT4RVKu5ykBTZy6b3mcqeVc4U+f9QKftSWeP7Nce5+tA7c7J1IF7mUpdc2ZTa rtSaVNo0+srjFzbrsvcm9ZuvDcqQ28TSrfMWgfjUOFAg20h4bvTGmlTGMFcfQ+HeZT743H2uTwpj WpjTRBv40l1qjGoXDx/0xAciWIaI20ybVCZdIhSFx0xHqM8gkEJtaPGfTIZIX1P45MoPnnwPb/ve gvgOHtnjBoEwynVi3iP4EWPg6CNBeOC4e5kf2BoVWnxsC7krJQbbWNzKkztbSOBnmUePeYyFMc5b utPao4G4AHrPhNmnkCtWEfM+mk0qnVLS3B5MRMfWJDQgch4cceCLYzhZCHsoK5O/c9RHQ7lXhHuJ HxgiIlPIDDElk1+0r1BwHJlDJ/aMdAn2qdAcafQng31wxbknUTY/8fCLPDa5ewgbB5aHx40PLHns qFNdGOhkHuHBkXCFczgCl5+GMpL8TJ0N2HsY7QeLHycm2cEBBORIM5UeOuI81gVEO6mQ93jycBTK FcaxzuPvMW7T40qPzz02sxRXhsWg/xcWtO9r7cdWurWkTPraKm/rYF8I1577sbf+65L8z1v5j8/J 29G6btXzWj51wlMnfVuoPxfGH0v77zv/H6eY7GB4Df9yc//xav866ZeGe17AcZivS+OVBLnZ2lTA 36XKEGFDVuuXYAH358Z7abVDyu8S9pDxm4RryATQ9FSot8Z6qq1TpgE1vc13FvdU2OtYrZHBSAOE 0aaZ77vZaTF73lI/duJrx0Cn7UNqFwrbUAaJXArv1DuHFjSh7kFh7xs0v3T2rbV+7cN/zoZXznxB qo/A+HTnUttE+Lx0vvb2DloihBJg20yuEyGTR8b4P2BXK2PWRNySUIlxyPVDoS5CHhxxyLVToe8S ZRvLsYhA/dg5VGvPG3u+S+U+4GCTScdUaWQTe3uvTn+zmPtQHOGnzw9TJGqVTPsizYZI7NJ9Yk5j A6Qwsdk7R0YEfoz0gSV+ckXkvWGh07lKFRoDRLgCYDIMTaTQB1MZm/JYYR8l6iExYd6V2lNbT8l1 JoBcJ91gcA1wOjNfnobaJHPHqTVFCkWqTw021ek+kHap3jtcgVwtMj43s5mxxT4a/CeL/+gJn2J5 nGsMcjgZfRKHDnyEPtbEewX3haxrSbklk/7wwtjhhu+B/YA7Soz3E6kDjfmg04+RymSG7AqMK1CJ JuQ2lxp07Yi5wXkydM4DN/0gzD9S4//gZh9kCrp0aPPwU3OTerTJdMajPhtwD79Z7NgRx4E6JcSB G+RodT4zGKCMVMVHOvHmtvDR4YlAijShcLTMYTx1bEn3OGxxrnEjg5v/e66tlH9uzJeGee0EEMSV 7GVgfFlbf5zBFPavtfXWKwjsp5X0tJGf1tLTUvi6UX+s1J9L7f9eo//nKfqdbNDj/edb9o+34B+v 1u8X7WUl3nrp2sqHQoIIX8dcZU4aZ77ymWMmvbTm943/axf+3Hq/tt5fDsH3tf3UqMeCbPb9RNoc 2ecC8kNb+8LC4fah/JRZT7lduwCC0GXioVdve/nlwH8+8U/r2SF9vGbjLbyJNSJ9t0J5HSiFyqRI 9YW8KdVlTHZPPiTSNhQuhXYtVHiKbQwLYx1yhewJEtC3Rn/pzHOp7ENu67PvGxybm8ZoM6GzqLUL wyIfc+V5424abZeS6tZLY8IxnSt7E8kBPwiFQSwMPPYulh8LY7x736a2cSiH/WAjE/JDg/kEOITK +L1D0RxapYI8libI8zZzZzGf3qsghoEyCPVRoI5SbQayCLVBoD6k1ig1R73PLUKhgkBCZpbhu/nK YRHVOv+br498i7aUqatRgcFFplC4Ktk30BLxYoeB434IpDFJ5nDf0tjXJj4paJk6EhnGD1SqdIUl aRQglhqdK4xHTdXhvTEDo00DbeRJ96k6qB1AhtHoR2l2j7zt6GPPnFjaIDTmlac2rpbInEU9OvSj SX3C/XoS7P8gUhHMdxYPOz8mJROgDJHxBDrVxUTjA+V9zxFbhB4Tpnf04P8wk9+4+UeBuRfoj4Yw BBYsbkh0Dj3QJg+4JIseGxSE09gVx/L8T9LsN278J3k+EUZDaTpR5jOdGxj8I7y5r94HcNbKrIuc PnYTi3JgxJwZJLSnUsL0g0g9/gsL22i8j6cIpFsp/ljaX5b6rz10u/rrCL3En4t3T11yx4J+ajkY 59eO/byUvu3Mv13Dv56Db0vz+8L828H7v0/x3/HPtf620n7syDpQMquFeIh5xNsxV186C6//75f4 jxP4gr8081vLvPbca89fG+ZSc5+X6pc1acn+tjCfarVzptDeT6Xybem8VsY5lVbx/FTzu5K+dPzr EpcnrsLZLmJ6k67k6caXt4G4zcQuopts2tezRSkuCmkLLVSQ/WFXLr20ZqUy3AXcIRJI3nbmHvch NyZAyrEgG4607rQxRoeQLVx42ClMqGcMttD5xqwGvRrjBVlFxcHO40THVu8SOLipNv8ojT+a9GOq IL+BKYjc6v1ZIN0F8oNO/YnMIk0/6fNPvjhB+tWpO5MGI4w8OEp+FMvTzCAbVMGBImAs4Q5yKDam 2fuEGqmF8+e5M8YvZO5AGkTCGEeuzFuHz8wZXmnLH13lPjbIKjlSp20zMAg286hPP/mAp/CgzP7D 5D5GxjjBhzggVioLmMibQduw49/E+b3FzyINtlSIIELokT5+VB4exLtP4uOdNn8ItGkf4ZaF0mVc aSrTA37+QLCgwXTPyGIiQ2hUIVVY5G0ByZz/6KqPrvQJJzXYu0glWyekOlySWFpi48pgFpcf+yLl i7TLQ8/TnjhzxYlC36ssCG7i6lTosJY2NsURmaem7rXZnTa908Z3+uRBHT1oswc8cJ3B538Up7/B NQujMXX3KIwn0mSKt0hkLPoutceZxRGsuabFURr70dVGgTmwlE8GyFqfl4H6Lyx0zv3/1953NjeO ZVl+2JiZzBJJeO+BB+89QO8pyqakVFZWVnfXVNdMzP//Bbv3qXe79kc0A8FgSkgRBO+595z3rrnv 5S+j9W3j/9in3/fhb3f+X2/Rj4vztrM+0iHsSys9DPL73vy2M3+crF8v/vsBpIH/snZfVs6PQ/Sf 5/QvW/9t4Vxb9ZAL+0zcJMIulQ6Zctfab9vk20eP+j+e698ek28n+2WnPW2k+4X0AMdc+bLW3/Y4 3PztvnjZBpdOv+2MS6NfW/O+wyVj50K9VLhJ6cve+Xry3o7uz2fcgullGX/b5m9jflcEtzWeA7ut 1E2rXA7a7Vk7btFx6RwGC2xp9JkBUYdEfmzt+9qae2wH7NeYjKEAkhbP0Gyt+9E6VCp+RwBCoSxy ZajUvpB6RI0euy/1ecwvSrnN+XUurgu18KjAmEY67Stg6sw8Ng91BAIQxMg8kRYJ10fcqlBSa+ZL RKwxmck2nlw4AsSFVGc6TwEsAJ0YQHW6Im5qZ1KhPktsMgc1apNAkEqbXpXKupRXpYRTEz0WflLb PGChQxJIhsyiA31ahHSfCetK3tQqXFjj4Q2IVCMhFpQWUwJt8yCyiEAv+1Iaa3VotDIVQ48xtaku zhyFji0JaNWY2IUlJTIX8mzI8ZEgBCLvSXTssJjnRAw49tSVA0dOQPNm9ryycRVGDL7IGA11cLTG lmOLTeFknI4ljXAfUmMOfzm0O9+CYxE7Q2iC6AhVMrMgTsHVos4PcktJDKHycbJQFqpFpFep0RQW mGsZqIkFJFMOJbo05QwigszHKgtowq7DpuAdI7x85Fi8aHH4wJmuLj9k6mUJXNfrQq3yHVtkcghS mRK7N1lANKlaxUoV/1nXdu30p4XzsvTe1u7ryn7fWt/35o+DAcevR/SydC6VcsHuV30cjV/PAd6G uw1+OXnfT+5f7+P/+Vr9/pQ/Li0w1Htc0W+BXj626iJhjp3yuHLuF/b9Eky3/Mu1eVq4u1xahPQ+ h2Ck3y+0L1sDUPC0Nl62uJLoOlirVFwB1WnNux5tU3XwxEUA5Mp9HOK3MXzpnBdcEJG+XdDzrf12 tZ5OxsMcPQ3hyzw5JqAXtNe19bB2jqN+1xu3tXrA2wH8MlXBs70ci11nb0EdfKzqgDD57dp/2xaP Xfj3U//LMXgcjEMq9RbZ2fSAhEwjgJacCutp8Be+kmnkKlOHRG0jpvCpLHJ8R/UVsk/0yhJ3pbMq 1DXgLhFBiZzyoHeURKEDkTBY0pU5T54VDo87I/nCGCtdIPaBtEz1JbYWrfVxH5UezABxucvmHhs5 ROqSXcqPuYALJUIexHXrCZlB44CCBIhHcHLpCTX8HPi/K3YOD9ccKpNAvSkcwJEG6niRa4tC/0he xSSzSa3YVR2NNuWf4LDkG88gEiAz2OpkUKOxLoA4jTUxNeTMkBukrxJ3kZiVywMDb0DURMqQGfvO P89xtRpeLotAXyixTOc4YVXvcaaodoCbX5ubj2SPbYng6HE3V7G0ucKi+gBvrywSbYzNwpFClQ5U nJLna6Ql3IBkbrFm1wtfqiOlz4DnS1Uo9x+j3FLEhmD/DhM7TOhMkDb1DQrusEbTKjWzONo3ZkOh DoX4t5d+zNQKNIIvtSkEIBHxZCKzpaF0tgqBbEj/1AvgDB9G+3Xtfz8EP+/Qy0p9nkvPo/C+xoM2 XhbooTe/zJ1v2+Dbzvt+8P9yCf/rKf39IfrtIfr1Lvj51nvdo8ug7mucaPG48h7X7nnQt7UIWLjO gfyg75f86yG7juhUG+tEHH16XyiPI/p28N+P6MsGOJL9sgHVZm4LaZnwq1RqXbirs1iermPjWHp3 bfQ0Zq9d+rUL31dYjD/u9fXILDp23vHARjaxuI3Ea2k+j+alBVPkwSnNfWoR0IPPVojoQmFV65vW XrXGkMmLTN7jJXRj7gv7VH/GC2LxtZU2CYQPsjVmtUaOjrAKIa6h0eUag6oNeh0Zvc8Dq980Wp+L SeAoIoWkG6CsDZLxhNkIdO700DrzRB4cIxHoVAZXJiJZQAoP1GjEfbeceax2Abh0oEwgJEXgQgPY IRJym4OjQDzIYeC6eQTilCkjpo6YHkJSqqxSfRHrDZJyky0dIVCJ0CBjmwEjKV0+laaZTFQ2i3ei PaqJ+C4RMhdOIEsfSJfaxXoV6KElWjJrK5RvkqnHlXhbXK5iGV6HFu3jMAfSRi5sIDBG59u9b89D p3Kk3IYLE1MHoozQJ9oiM7e1e2q8RaS1SAQ537lKaQmFIzaB1gci8M8GsfDplrkFKmMI4eItEEqL WMMNmXFZn7lM9N5XM4tPTCYyqByw7HCpzYKKwR4mwA06Mk8o4QOGUobTmZjEZWNEewYZOnQIQcEl XA1oP+FrgkTOZGKiUBNPn8Y2MeTColTBsSQ269ss0C2TuvEEstHEhevMHWOObPAS/8TC49LFMw7W 8aU2t6mwSdhLLT302svSfhg0YEdPcwPE9a/H5GXl/jglv9+VfzzWv17ib4fwxyX95ZK9Ab3fAs/P vp2K6wgsRb7O7S+4V14Az+9H3GfpeRXejxAUtE0iPY7uj3P5/QjRBD2tnRc4E/jVLnrF7QWi1038 uPA2mbzNtXNtg9R9XSXv2+xcmRBNvm3R326750V5rNAi08+9/7BOrmO0iGSQw4+D875xXlfWQ+/f teG20cecB27QJ0CEHPBU94twk4M9s+tM2ZWgDkA1W+vcWJfm/Tq5H6NLgzap2jp0Y7OL0FiGTqGK pcbtEqdzmNIkQDLsa9fiJjpzI7BTiScc8ac+kW7bqEEAQHHXGbva6AK2t9XWFBuLBx/uaXxoSbHO zBOzD5VIm0Xa1JM+g16uEFfY4ISBlpMxsGWVxCaBuBQxsYuzdxJEpBjL/CrX1hnuU1qC1jbp1KAB OH2ogQt1xKkrzCKBikQ61gAI6pDhpruhSQYGxA62RDy8S6SQDjtBAhFpfGIBbVZXjbOozC5Ti4CP bCowcboaSOOPBnR67akNnpmrrzNrnugNnhtogom2sQrP8xTvNeRYlRAfqaRsqjG9pwEjanytdYUh 4De5vkgUoH+pxbS+uincE27oHW1zp/flGqIk/ApQoON9t9gkM4fOQRABbBP47nAPwNQVM1fASXRw W3ypipQiwD2O4HXuw6+02JY9TQbhbDCMRlE6Tej0DIlMoEm+zKrkTxYPf5lXVYYXprpExkjGS1KW ADwNLgmi4Z+5eef8+yl/24RnoA2lfMakQj6V8qGQTqV4CzwHp26ilzXOrP5+SD5aPnpfVs7TEjvz j+k5ydd99jD3D7Vx6nCvrbu5c+5ARQq3g4mH/hyShwGAoJ4r48syfNtgaDzBC7D/Hd6ePrUgNvUV yJyIWybiOlVw0kUNAcu/ds4+V5chd8jlh1F7nMMfsUZXWYb6KjU2pbmuDDDOTWatYvFYwWWzIFiu VXBXpavanNfq/S563ifLXB0jsfPY2iFbRFcgJF1ynSu3o/u4Ck+9AyRkm9mpStQ2swhliPv73DsW 4ejZC98akbaK5X2hdx4T64SvcAY9Y6lPqkTWPrdtzHkAkdE5dEYbsaXLpOa0ULhEohN5FqukC0rT hq+GSgwWbN6XJ4lBxdqssJncoj1x4goTT5rhQyYAC6FOInkC1CVyKGBKiUPgjTCgKC7f+jh9ep3a t320Kd3SlVKLq30FvHGisr5IAQnPkRSaDLAI4PmpwzWeBHgM5ZnD/OSwP4EIzQw+1BjfYGKb8w0S jshmgGAXgVyHeo7U1JIBL6kh1J4CBjPGOkj+NtTaGJsoUKkE8GtxHnw0/sblJpnCtI7aIi2SaE8g Ckf+mOCAa1prD4BAQ9jqQnWV40ptiA7zyIDoln5oqMRgEhPTwiqAZzp16DZRBhALkZoh3jfoDyEM F0lHEDQDpfCV2BHgtQchTBcjS/MUxeJ5k2N1hvYUPrN1eTZFgqASM40kFOInT2ZFieZ5UmKmKk/q 1E/gEGKF8sQZ/OV/YgH3AmqtJYgdn5uH4jKSGocZPG4ZyedGe1iq93PtaeV8P6a/XZsfx/JxDMA+ L4153ztfcF1b8LyKPtqZ+pfOfVr5j0vvOtgQbr7u46cluh/t5zl6GHC7pK+b+HUdPS2AaNV/vW1/ ORdv++jxY9G19djcIlYJvF1wP4T3Azz7r6vo2loPg/nzzv/vh/K3x+5pm8Ab7VLz2tivq+BpYV86 7dSheaRsSwNMfZsp963z0mevfXm7jvdzdyzV0qe3tTHGQOn1JVZzuB/Xde6+n4uHTYS7kuZ4X3VM 4YujhoSb5/yqlMdMnuOWKUZukI3DPa/czp/NY26I+dwRHYFwbX6oPdymrLX2BXrblfvOXOTSHHe3 U+auGglEIH4uHWC2HNIAAhQSJiC0AQhAtODntcvB60glC1vITR6s1BGmjjBx5Vmgk7Y6c3UiQWz3 sVgEbhNABPBZRAoECCDeoME/qoaNIbJrpLs85Qq0Tk89lcs98JxaGWIpCqcB3AJpmigEqGmAUmGy vkwgmbIloBZUYvORxYQfu1q5KxeuXPtaAVoVxymi9vh5ovQR+Gqzz+zY4W1lii3TZCODgWtOdaZx ZFDNta1UllxaUmYCMOkQrxgQkT4DhdtGSolEVyZ9gUoUrgalrLAOO4VYCYyrTXB6UhMLq8YAD9ZE EhC/wKQ8jbCkqa8DZoXcwxDIPDlFUuYCo6Mzj0kd8PB6YtqBqtgShRQytYXY5DxF0KmpRsxMmvIV NjFFw9Epjpr89O8U8UllJ7YyA5/TRGITW//EwqYE/SIuE7n3ucqhEm2a6URp0Z3HDyG7zJldLX7Z +O/75B9mfKzMZSzNQ36TyoCIQ6HBf6wRs81BNfvX8aPle6U+4h5HDqjy5xW6H8xzrewy8dqZ3/a4 S+Tf70Golk84MQMHEdwONBYPlXlqnMZh4QJWsXKqjEXIXGr5bW2/r+3XhX7p0ICzccwVbt2Dnsdg X8q1Ow21SYVHY/NtwAOzAp37PhaPub+p7ToWq5CrArYN2XkifYxIMECYH2v9DvdlAqIlb2rrsggg vgAJgbuxbZQxZ5p41ifsqgAbEDeFfOnN20E9d0CQlH0DTtIAFlEBSSicZaZcRvTH/epujEuPjvRp pBNYIJtSKtKVTa4zsy9Argo2N400BkJDpAEdIiJ1hrcP4ExPqcGTK7TF3IQqk1oCtjGD9kzw1SJu +OZLsQVmOS0cdojgZKAWfI3EVGf/4eRLW4kU3hWoQOUClY8tJUVqn6F56TWhXtkgV3Eh5yrSDrm1 A6mbAPNRY1N0QdrrYFE4XwiA0MUGHhqYWhACciRUnjTEWhdKBWI8bebIgE3Sh0Bm0vBC535CIE+Q PIZGi5REZgIRr3kGEu3wEIMmuQ5iX619uB6i9NkMsUiaIH4aSVQGJE3lM0PAU5sjpUuVPlfygC5C tgUXVBnL2mkTLUGco8xSR4BYEFl8aAKRExCobINzgWQaU7B/gyMsjrIFOgQIaGSKqDIAZ6WFiti4 yGaZQGWB06oGb8BNjhTksmWCkxjrSAIZXnh/6oVVIe8rHfQ+WNqpRUCn95V9qKwDbv0H37JytzQf VrjVCfj/XW7MA3ERSctQXCdwb3kQwssIz6MBINzhUWgKmM0dLiLTryC6Vy747V3OP4zG+y74y23x x1P3yzF/Hr2nwbvtTHgLsLRNAY5OBbVVWExlf0yER+Iu00+V9jx3Hgb9vlN2CbOusFi+XZpfcdPL Yh3riULWurAI1QqRQ0JvauENxPjaOmbaAvG1wSL2prTIMZa3rbqo5MvKud24txvvuvN3g7Uo1A1A O4W3FvZ4xo3exGIZiFiKwo0K+QJXWNMAh3u895ff9VmuSQ3SkDCrPbkr7Dqz3o/5wzrsHIj4dGqR 4L1XuTkA47VlOOYRXvzJfM4zSU+kIDS44izRqRFO8EUcHUAvm7zNTjTiE+JnqQmaWox0FpxbDCzC k8EPQxx3wSTsj+oexONdbIfLAC8yGUq0L9CIoQIRL7nnthIaYDBi5gGv1ooAYqIKPGeZO6fGx/NB Wuej9hOB7J1nqA3NJlRxPXWJFoUNKgDXDZlMBjLZlUARrEun9iVw7IUnJq5YREoFJuoJmS/WkQaR YpnZwHkAbmDhiJ36PAFYSHS+MIUWAblSF4WG13JTPnNpnE9ii7mOF0UjiQ1lGjxD4TF439ynE4+K ERUhCjQyfAsgB5pEaxOjSy2IR1WoQzjI8efSARS+Dnp54qq0xkIYpSJD+EAcV3h0FTAxOBydRiJp 0FOLm9ocqaqsDv/Lg4MrIqErFWBiTSx78p+1PAtg6TFeY9+VJlhj4wrzWD23uJTsZRfeg13hRFP7 0jtjKKTapEXsbesCgdmmyjaRLrXxime3Zb+cSyBFz2vcxQJ35F77j3PAlHRpVdDgT3PzFfeBAcUd v22iNxALC+BX7rlXlxm/zIQxEgqLbF3xULp3Q/g4j78sQcnqq5hZR9RtKVwq4X4tfn0wXs/uacTj 5pehtU7dQxrsK/MymK9H/+e78PvVf1qox1RYONPBwnDoEAtha1mKuIoffPsGHZf2slWHQqoDNrdn rcsuAzBdPjKmgT6rI7kI5dCmx1IbS3FecutSW2RS5SiBSAyeHckckG1XmqW+dFzlq0wZIsFjb4AS ePJNG8pdKGc2k4h0a0ig00uHCWzSNQjwlsrsU6BSQ6StCxtXYIUKSFqTutGJT2BCmYHX20tXASC4 CmWIM1MikEo5MmEJN7iQwaJSi8pNoFVT4DwOcxMIVG1rg+esEn+M7coFf640kdWldhloIa6IwZ1k jo2/r9AqA8ErQ/gbUgg9hK9SYPaRSWcuV4cSHA2EABdvTANAal9uP6aWwDmxSVUY0VIZq1ko56FS fajXMbdXuV0BLZGpUCAACykQElzIDA4Nvju4JB3PKo35TacBC+0SCYJgacqFoVSmCnEhs4U2EquI rRNxXhsQFAAOrj79WCYlQcKAK8hcoEx8aHHAjuBuuBrj6Wxks4FFQFDLkNBESgisz7iJ7VmXcGOO S5NSB3eeKZEG7gW0j2NzskIgmzRMInbZLOLhE9WxVKI/azxXGZ6RAcKztojGJuYht4j5dSredRaY 9MMa3S3QMlOB1gLnLG1mnern1sELpC2QDWAa5tPaecZtW/TbEQ91el45X/fB68YFXrQvhWsnPS00 OF7W5i9HD7d2vMt/PWbfdgkAZ98Kq4JfF8IQcWMinnpQsgkA4dp661hbBriv76lUH4Bcrf1fb/0v W9zUcZ5zy1LHXUlDvk/ldc5cB+HrRv+ykl/WwcOIzm1wqIIl0haW3Fv0CNypVK4r57R0zmt0mNvL BndQXBTGuXFXmZWps1i6iXAHBsk3CKRPi5hqS64tmb4EgSD7yqQwrUI3Q1FyOdaVP5c+M5beUHi1 w8fyNGDIVGIaX1rkFhxNoM49fxX560wfYiWwad8EsczGGtP6cMH2GrtTAy8xiTOD/OyLZG5KfWDV rgb81uZnBjdRuBsVeIhKOvI0g68PHCYCLMwyE1f9JDqZ6XSDFFCsy9DZF94u09Ypbr60yq0lnrOA Nq2378JtG4DPr0O5DsR5oW861BdajBhgOEiZxrgygs09rvT5JhSBbWYOFkQAycyScIIokCiLzQO+ AEsutTyRk1CoU63LjSE32kD+yCGhUw1i09TjbkJlVuHCZ6P3LeCKOBEiZMqABoMvAi6z8E0oTaWy VdD7Y2Z0mdhmXJPqVWLErgQsKIbY4YI8F0KdqUMFjsKTck90dSq0MG9MXPgV6yl0YrGVLwU64SlT WwB2yhVIChTQCNNAJRNTqJGRaWYsGUACXXXqa6SnEBD72lCHOJvaXPv/zSIZQ2YeMKPPLkNhHQub RDwU6qXWr42xBu+acl0AFz8pLHqRaPvKObcuKNBdqQEjuo4WJkXg9tfO49J6XJp3Cw3+eTe37kcT jrtevTTCoWLPDfe6NX9/iP/nSwVYeF64+0Lb5OyhE/atuK3F2zkAKvyyzR5X6aGyB0885OaXRfi2 Tv56Kn+/rf5+W37bAfVilwU75vx+cA/L+IBHVRqHVvr5hP77KXpdKre18gBQ7aLe11uNP0T2XeV+ meNmsG/H6Hbpnldo29vr3j7Pw+sS1H2KMxlcbgQa6UqBxuW+EDj0vFWXg3w9eosOqILeBmoiax4r 2iStE0RkEotSLQLDFimH+Q/58/8KWapU+WVuYY0ZaU2grMLokCeRNgvVqSVPgGAMgdH6agHM3OJ8 eYq4zz4IQ2kaKXSLqxGVzJRijTfZqcFMMBbYz+AGQTACGwkMEjQmGGobim2AWx5ViO99pQft7GqV rQy+Nvf4RQCAElKTgvNBceCSYdwgS8KT3Qo8D3pRWn2upQGf4HUbnMafIja2qdxlhkTBQ+ICMbXo zOZwXigeqSABYfPkGUj4vtKbQssiIQmA8hGuPgtMEjhbZXOxQgAwQZJ0ntTB28VqonOhjNfccpct fDowb2zlc+ZiWHn8DAgSYKF08OSp1CV9e4J00tGY0JYMnlCZSWTwIOGbUMMMzYErZHJPgGuIHAgH lG+Rkcknllx7Khh8qLEq+Ukjb0xuplM/WcwUbq8HDgr0u8JaJOvQEi4asmZImtnCjcneWNzM13Cx s81N/tx3HqxtLo0Bs0nFU6nctvrzAr0s3fsOpCtdoWnr0atUPTXoOgQfjRqCXQWeBz4v0wfkPKa3 lQiIWCbMMuUWGbfK+G0F5+tflt77NnjfuL+e/d8fwj+e4r9d/deNfTdo51q/4Aa/yrbiD4106bXb wbrOnUPz0RcI98qwb1t0KMxzZb2t45dFeKnMbcIeUv7Yq2PBlyGfhWKfGnjGceVfcm/nK6PFnT6q Dhufi6wZ8L1tjttQ78H/V+ZDb19r565xzrl7zr27Nr3vskMT9LHRpvJQaPPY3lXRaW7ero27vXpY cceVfrd1hhjcNXxAO1ZpafpvqYlTl4FNWeJUZz97/KfB5UEpjy5AAPwqD56nRFJr2cbkJpAmDv/Z gq/GYAKZjDXak6aBjLP1QoVwhRu8iGTy4N59gBVLBBAUuJnB3CCJiGwm8wR4Bt2KLcrjFgXeRO5D ufrYL6gcEdxv7QAQjG3mnEt9Cx8kBK9Ohib4wBsfWJ9JJA4TWYAO/CIPBNegZO6TyPy7LU0ACCli Co/tE7mNsC4AOgTxEUggyBZcYoCroXkwJBCkZcy3BXAk3rcJHCYCABrQIcrlb2KF7Fy5+78jSDTQ QanBphre1/jIsCJie5oiMjAmoTJJdCKSSdA7FfbP0pDhLMEICZGjWBIjUxNbog12anKTFFiur7Sh ChcQ6CRSJkgDAFKpxwEVrAO9cAEROGUFvJMvg2GTsY5XrROInjYRGyQSJyZF+IKUqkSiTBONjWTa E0kIxK4AeCEy60+90LnkNhOPlXrXm29r78ch/nGIXoAddfqxVM546reLm1EvorvRx/0/gVDlUhuQ fUT1ITHGFEBgjOjMusnsmzFl5oCIVDjWYPDa69r9cQq+7dHPB/uXk/N1az4Aj+ogWOjn2rrttbeD /bgyTp18N7cvnX1s7Ndd9r7P3nfp3YAHhD3Og0ttHXP9CCYdi4dEPDbyWLAQWIfK2Lb+rglvu+Rc Ro9V8lhEd1m49o0u5KsAhOrUZm8iZbpJtVNpzD1q7QvPHbqvw7sq2sSoMgRLmMTAATyuTiRw6ac+ WdVCl9NPF+f92b3uvP3CXOXo0CapCZKQxFlD+D7zQOAdkegj6773V6G8jZ3Rg4gge+qki4CAGYPr xpIIBh9plC2TpoSBkJrsx0Io0FQOqMU80mokgsxsHCVWuUjlEkP0FQYEHXZZ0szgbyxx4ioTgAM4 1fqjriHWyUCZ+eCrdRbcLxyNqwEWlqAKNYgyN4lBAHBAk2IpagMEqMJlweGPOehQA9dOAuM1aRAg oQmGhNlRalMgduCIDDJ3uArce6CNiQ3iOrGEHIlDpo2VOpQa8CuILHC0sVKBwrWB8DANnOABJEH+ AEunazy3Sx58HZ7BIGNr+mGuM8BCbtOtB9RFaP/RoMzhcXWPQVgSqbAEP/vMT/7DVcDUVUcgEhM4 jALg6mO18MCxUxFEBBuwgHdGIHDgVV+N1JlPJvcZiQTcPcBvitPFmcrD+V2uOHN5OpTkCmKl8ClS yFhhTHrmCBAUWIOdgez63/96/Ovxr8f/e/wf3q7ItgplbmRzdHJlYW0KZW5kb2JqCnhyZWYKMCAz MgowMDAwMDAwMDAwIDY1NTM1IGYgCjAwMDAwMDkzODUgMDAwMDAgbiAKMDAwMDAwOTQ0MyAwMDAw MCBuIAowMDAwMDA5MzIzIDAwMDAwIG4gCjAwMDAwMDkzMDIgMDAwMDAgbiAKMDAwMDA0MTkxOSAw MDAwMCBuIAowMDAwMDE5MjEyIDAwMDAwIG4gCjAwMDAwMzc0NzAgMDAwMDAgbiAKMDAwMDAwMDA5 MiAwMDAwMCBuIAowMDAwMDAwMDE1IDAwMDAwIG4gCjAwMDAwMDQxNjEgMDAwMDAgbiAKMDAwMDAw Mzk2MyAwMDAwMCBuIAowMDAwMDAzODUwIDAwMDAwIG4gCjAwMDAwMDM3NTQgMDAwMDAgbiAKMDAw MDAwNzUyOCAwMDAwMCBuIAowMDAwMDA5MTUzIDAwMDAwIG4gCjAwMDAwMDM4MDUgMDAwMDAgbiAK MDAwMDAwNjM0NCAwMDAwMCBuIAowMDAwMDA2MjU2IDAwMDAwIG4gCjAwMDAwMDYyODIgMDAwMDAg biAKMDAwMDAwNjMwOCAwMDAwMCBuIAowMDAwMDA5NDkwIDAwMDAwIG4gCjAwMDAwMDY0MjAgMDAw MDAgbiAKMDAwMDAwNjY4NyAwMDAwMCBuIAowMDAwMDA3MTcxIDAwMDAwIG4gCjAwMDAwMTI4NDUg MDAwMDAgbiAKMDAwMDAwNzY3NiAwMDAwMCBuIAowMDAwMDA3OTQyIDAwMDAwIG4gCjAwMDAwMDg3 MjkgMDAwMDAgbiAKMDAwMDAxODkwMCAwMDAwMCBuIAowMDAwMDMyMzkyIDAwMDAwIG4gCjAwMDAw NDE1MjcgMDAwMDAgbiAKdHJhaWxlcgo8PAovU2l6ZSAzMgovUm9vdCAzIDAgUgovSW5mbyAxNyAw IFIKL0lEIFs8NjYxZDMyOThjZGFjNDA3YTJmMTljYTE5NjU1NDVlZTQ+IDw2NjFkMzI5OGNkYWM0 MDdhMmYxOWNhMTk2NTU0NWVlND5dCj4+CnN0YXJ0eHJlZgo0MDc3NzAKJSVFT0YK --000000000000ba40c005bf7405c8-- ================================================ FILE: exampledir/test/github_email.eml ================================================ Return-Path: Date: Mon, 31 Jul 2023 01:34:57 -0700 From: "github-actions[bot]" To: KeYProject/key In-Reply-To: References: Subject: Re: [KeYProject/key] Fix more UI bugs (PR #3232) Mime-Version: 1.0 Content-Type: multipart/alternative; boundary="--==_mimepart_64c77231630fb_12bafdd0c012685"; charset=UTF-8 Content-Transfer-Encoding: 7bit Precedence: list X-GitHub-Sender: github-actions[bot] X-GitHub-Recipient: FliegendeWurst X-GitHub-Reason: author List-ID: KeYProject/key List-Archive: https://github.com/KeYProject/key X-Auto-Response-Suppress: All destinations: 2012gdwu+github@posteo.de X-GitHub-Recipient-Address: 2012gdwu+github@posteo.de ----==_mimepart_64c77231630fb_12bafdd0c012685 Content-Type: text/plain; charset=UTF-8 Content-Transfer-Encoding: 7bit Thank you for your contribution. The test artifacts are available on [Artiweb](https://keyproject.github.io/artiweb/3232/). The newest artifact is [here](https://keyproject.github.io/artiweb/3232/833812796/). -- Reply to this email directly or view it on GitHub: https://github.com/KeYProject/key/pull/3232#issuecomment-1657918122 You are receiving this because you authored the thread. Message ID: ----==_mimepart_64c77231630fb_12bafdd0c012685 Content-Type: text/html; charset=UTF-8 Content-Transfer-Encoding: 7bit

Thank you for your contribution.

The test artifacts are available on Artiweb.
The newest artifact is here.


Reply to this email directly, view it on GitHub, or unsubscribe.
You are receiving this because you authored the thread.Message ID: <KeYProject/key/pull/3232/c1657918122@github.com>

----==_mimepart_64c77231630fb_12bafdd0c012685-- ================================================ FILE: exampledir/test/mail_with_attachment.mbox ================================================ From - Mon Jul 31 15:15:47 2023 X-Mozilla-Status: 0001 X-Mozilla-Status2: 00000000 X-Mozilla-Keys: Content-Type: multipart/mixed; boundary="------------4qicfcop0idtQJYkG05sMt93" Message-ID: <68b5f6c4-8de4-02e9-fd09-8157d8ccd29b@student.kit.edu> Date: Mon, 31 Jul 2023 15:15:41 +0200 User-Agent: Mozilla/5.0 (X11; Linux x86_64; rv:102.0) Gecko/20100101 Thunderbird/102.13.0 From: Arne Keller Content-Language: de-DE To: Subject: Subject line X-Enigmail-Draft-Status: N00200 X-Mozilla-Draft-Info: internal/draft; vcard=0; receipt=0; DSN=0; uuencode=0; attachmentreminder=0; deliveryformat=0 X-Identity-Key: id6 Fcc: imap://KIT%5Cuskyk@imap.kit.edu/Sent MIME-Version: 1.0 --------------4qicfcop0idtQJYkG05sMt93 Content-Type: text/html; charset="UTF-8" Content-Transfer-Encoding: 7bit

regular text

--------------4qicfcop0idtQJYkG05sMt93 Content-Type: application/pdf; name="short.pdf" Content-Disposition: attachment; filename="short.pdf" Content-Transfer-Encoding: base64 JVBERi0xLjUKJdDUxdgKNSAwIG9iago8PAovTGVuZ3RoIDE2OSAgICAgICAKL0ZpbHRlciAvRmxh dGVEZWNvZGUKPj4Kc3RyZWFtCnjaZY89C8JADIb3/oqM16HpJbnL2VWwgvNt4iC0WqUg2Ip/35ZT 8WMKged93sTCESysM/szlzEra7ZADsUpQzwAiWDQBagPyOIhNrA1Xdv3l7yQ4M09FzKXa9/ku7gp a1KosFLWOWuhYMIFp9DYnYYpI2LSdOack7kNY1r2ScD0IZg6nefJkwTtxP63kEcO+oJwJt4PQaWo EqDwTtE+r6cvZBWzB9RqPbcKZW5kc3RyZWFtCmVuZG9iagoyMSAwIG9iago8PAovTGVuZ3RoMSAx NzE1Ci9MZW5ndGgyIDE5NDgwCi9MZW5ndGgzIDAKL0xlbmd0aCAyMDU3OSAgICAgCi9GaWx0ZXIg L0ZsYXRlRGVjb2RlCj4+CnN0cmVhbQp42rS6ZVSc3ZY1irsFdwp3d5fg7hJcCodCCvdAcHf3IMGC W3B3Agnu7m5BL3lP99enz+i/d9QoWT732nPtekqoyVU1mMUtQGZAaZAjmJmdhU0AoKikDnIwdWTn YJYA2VsAOFjY2LiQqKk/ugBNwTYgR0lTMFAAwAu2BqiYg98DXQAcbGz8SNQAGaAj0OXdaAEw8wIo AcGmml5OQHYAnek/girIFcxsZur6bgY6Wtk4AunfQz6CnLxcbKyswX9zcDIz/830N1qCBSBvam4H 8nC1swGYOloA5FmUWADKII93pQ2ADuQIMANam9pbAkCWAE2gLkBLQ0pdAyCjrqKlqkHP8p5Yw83J CeTyX1g+amhqyTABJMWVNaUAQG0mgIyWhubfR02g4zt+KyaAsua7/W+dd8e/4UpSmuKaeqpS7Kx/ 1wBgB7gDXVxt/pb9D2w078gA/wPtPdTSBeTwTwEAnTUY7CTAyurh4cFi5eYKZgG5WLE42f+DT9Pa xhXgAXKxA7w/uwDtgf80xs3R4r2dYGvgvxL83RKAoo050NEV+DdIGvQvo8N7K9+D3vXg/wfsvRHg vznt/+UOcAUC/1cZa1PXf2IVVVUVAQ6mNo5goKOpo/m7I9gU7OYKMPlH934HWtD+CyAQ8NHNxeVv DaX/Nrn8vzL/DV0C9L4yA3sfP1OP/9wxU0c3V+9/683/XrY5yNHVxhXs+q+MQICljT3wL3rXv3tm 4/iPTklcWU5aSkOTWfGdeI7MSqD37jiygD3B/3j/zScuqSgA4GPjAbDzcwHY3kkq5WjxEeTg8I7a Felv+yRt3vsEBrl4sf4Hq+0cQR6OPv+ptbRxtLD823ULNydWLUcbZzegnOR/+b6rkP5HZwUEA9gA QGcA0NPcmvVvqX+Y8lfN/lf93gI/HyeQE8DS1N4V6GdjCXx/QvJxNXUHAsAubkA/n383/G8JiZ0X YGFjDn4n+fugIP2TXc7REgTg/5f6Hcl/m/5r++n+GVL69wm1ADnaewEsgJZIrMog8DsZ6P7/mbH/ qCXtZm+vbOoApPvfDf1PL1MHG3uv/+33Hy46wL9Q6f6PYBtXaRtPoIWqDdjc+l9d/ZdeDmz6Tnpx Ryt74PuO/KPS+jtH9u+EfT90bP6eWQBmdl7u/7C9c9HczhHo6grg4fnHBHzvwX/gfW/8X7QAVmV5 bSklOcb/oMs/TlKO5iALG0crAAc3D8DUxcXUC4ntnQMc3NwAH/Z3KlsAPf8hCYCVxREEfg8BOLmB /QCWIBekvxvJzsYGYLX4q/svkR3ACvw3kQvAav1vIh+A1f5/RPZ3Z9C/ie/OLv8m8gNYPf4R//ey VP/O8z90Zfufdf7XQfePrAF2AdkBdWws3g/5f3NRMgW72Hjqs71zjf1d/37771eG/6sA9f+Myb9F S0iAPH2YuXh5AMwcfPwAdm5e3neInLx+/yvW/F9nzj88f9+Q/5b/DjwACPQEmiMtzoHMBUNs05pC y/2liqa/wVLzs5xU4oroyifALGZO/yDCl8zfogCKFge1BGbRFIMUZQUM/VOCHEt0qUNw7F/XWpOr pm4s1MS2Tf2V/InQpMTH8rRZtD5nKS0EfuukoD+UzyvUK+WayWpLaCMFaI0dfeT/0fUnhmPy7cNV KoXBt7aVAliPr7/Ym7Fd7DE9FzAIO4gWpjsgwW9/sOOiTXvFFxlmTQpDccfk4Zx6ujD0SK4pEyjJ Fqsu0vr9Llp8OyeJgmgk/atxLHp6yljPm4iNcarqVKl04JUmN1I08xYXfui6BQg+LjeGfspTtFPm rUbijd/Pkhfq98BG1X8DMurtQFAIBf/aiKSC+6wSLqA+uOR+vqjze+n7sUHtB6LgklPthQ06KSei 5+ZDzTeDWcRBLyjji1eqS2rsdfTz0BNATRKN70WIqRvfx5vtSiFZB9v9OOj4nJhXogltKT1bWXsc +z+/5TJULUurfSgGCE62Zbu46UeMmEnHgpmonm8VQ5yjT00tqgK5J0iTojxoxnjGurjWRjx+0Wse RFCfxHOeYbcN/plrVP7SfcR/LmBJutPCDIpRz5Ec1mqSWNupskKgKgPB0flthyUGhF4kpqdSvels f5bIw44X5PPPbPX0XSo+FoS7lhEwryfGs4d+GGH/2tzY77u+BRfocq6Oyq3FZoJKB6OnFJv/5oAF xd6OQOGjWOWu40UWoZmXONQ97Y8Jo3C9eCx+6AenNBQ0sDsPMtbsrK6lHBAWtxREoU7mVuGf/V20 yR8ws4NqZKqhx1B0c1qW8aMMRM/91H0c89kKe1mqKIkpgS8+ViIdrogB3G+Bm0p9CcN3j+BzFdod cSRkbVl1o4Dt4z57lRqbBjNck/eZcgU7TGCGapLMMsdhvWKu0G5pqx5nrZxUinlpFg4UdCSty8Sh CMRKlUeQhSo0IsdAPFB2YX0zHbIZQJ6lb4nU131i4ncp5C/SwcwHXX69G7Y7cN6mDN77mWotyrSV MowmmiKVzvmNWbEEzoBRV0FxMm7l4xw8XSj3bxJWUaVVIbR5ntNGqV360Q+5Sd7KKh6NiHyxRS95 BfBpjYWrT3gKpGSrTp8uaPi+s0cdcXz/hVvnkwIzHNHzzFZke1XnQWStr+T/kmEhMSWjFXuxa7mE eobpm5u+cjgsuGN/96t2qbB6l+VYBf4BOixV2KG+PMQ7nrKJdU9SpS45OSYJtgnkoGecykJeIOok CelI5kPrvhJzX9DJzcmgrJrBDudyceV6Wvy9HYZV+rNSoSonyvQPwXV0bx3C6sCmJ+waFN5JCGyG 1MQg4vtpq1G/zVLfcxpeAsFB9NaZCidh3R0ihCVA3EaUIgqA3CYc9waX4yGUs5wzGFmSR1+CyhTv axfJ2b0wzhtgnKcBU19IW8Tx2LUNChBR3O8/BfkDVpqfszPnYcvLp5EpXxs6DH1/iGsBinL/T2t7 rIKWTh4QgafucROqrPOHoQN7cRnRnTbLZJiuI/RItsqJi6OhnvzS23LZchSTZNhabo8LQ4+YZWnD /OnW19lkFw/Gr1qnsl2wwx2QPlhKM4jYDO6St3bktedLXztUnPS06OEWSiOic/GR9u03VFxeKIt6 eRCQxl31T6TxFAhZvtUsHbQ3KuY5JXqEy7WGe5eln0TLQD3kWSLNRrZnHnzYGxIR/tMvenIEA+g4 hSdHKygwzaOPdX40Ngim7xqRe5sPza/ZO9q+dyMU2p0i7X7pfZ7APTRI+FiTmIkz7WDcZw6/UMw3 RH1YfoaDaw7NslkXLO30IxO/+sDh5iDGl0ygl79iZZbceYg3wL+DeodBIsTCmfcWU2Ko85xZR4UV G6thsGEzsFE4Ujju813GtzwdlAUh8B5ja8lsydn1yKjBknjI3FBP2q/8Ospa/BzJriPoa5w27GG0 QKpwgh9T3+L9Ksgt+JZUjyVjrkbboimdKLrfusavSF5hx50ek0X/lN8e/Ha25r703X6eezYusdVC pdI4dVO7SMN1ZcwKsH8R7ryucyHBgMUdC85dOlZ6hSQhkLn4FaZcW+AGJI8Y9nZVoWVY10V+pP2+ fY8mKx6n9ZmT4bFKQBCBo3f8F8qFf1HZCcKVf7r8ej9iLi5G2WXlD9RX7bWrU3PWsdDD+CriSGh2 NRFkEEO8JCuQ+zsiXSmRe5JzHY/dxOhtFjFjy++4dhmeqybVpXY0uBsgtOfFE6nT44kCV7iILNFR oxjl6WJ78r4n6tlXj6qyrnOmtLHJwha6vVuH2pQjmSUMtc3THpOmVSmsnstiY6H5NgipuNIC/1Zl 7JLBTjLO/GU3iwtixZ/cf+wHckoTIcZ7KIZ7RtOgz5OrjqaS0KzEF36MTNVdzLkZxgV8AhFat6cp Yp4ZsS/2F4OjxLSwSqTcs2Rv6vtpWHXabSkNdz3eIMWKEkIRB1C2z9gpGmk95MGVz6Rju82pqxfw NpbbK/F7st02IxelOOo+3RnSZAI5Zaq5/nsV6Q3t4XduQhzzhYqezCuIbHqblzlDdHZrIdKxiRiN XZ0xfEidiqvgD8hzbdHUJ1NBhwFLDxkYiIqdi0akyOGDRQwCJqiZXEHWWIOPDW2XKC6FLbtf1+qG Rm9kUGG4WGk4IuS77++iJ06saR3ebsRV+/FpTsUnY74OoOUa7+c3tRTByjz9QaiGIP8VbtpxZ8xq tJWK1F4sTZwQh/IbLTuFcfvhc5ckSQnL2D2H8z6L83habPhZ/qjTTZaal2uCdUhzwjK7N0L+48qb uijMssCeZdqtQV+HZYuAJSFTybD85OIGc670GOtWSd8f7dX4qsSVy6T8FTQkH2QBC/+k3fqajl9l HjirOtyO8EBBIuWYAp86O+h2uM3Ul5G6wgejqcBYURVX8U9m6HEkKebPfDxew31Wn6xE3i8W58Hz OHKkVPCnyXfEJaV+huwf5RGbVOIWyQVlvJ1kv68Pu8B+OHRTERaxbpwHUkU8bi0vvAwbZ2roMCwu /ixRudLEgrJg/xHBAjwuF9P28cRu8EfsraXjW//sP+lAvZV79pa9F4lG4thua/pFwzgm2mp3ITpy +09MqdcPFdx868xnmTlKd0KRFbQOT+JCVPzkGNJe3subTbREzyo4cJmnmHqKiGr23LoKQ3iTXdY4 9tWnNR2zbbqwSPV0rJjyyrF1PmFM+emiB2u6vLcTXcapJBH/mgSm0DH73+3rgYGlpZnbu+XTWH9g PJDJWLKcwBoPp1eHRd88wXSUosEeOyamcvWsSEuYKm5i9r8IA09gScN076RaRT/BHvHlfKMlr3S0 e4PAOeLy2ZVLaG/m0jP3Kk8w8eQZPAK39+kdfSBYL4XH64uinB/V5ATwftqaNKuvpx+tWK4vPbG2 gsiuMJGg2pS4zpe4roJzfJDd4W2ECzdO2oBWazSuev3SQWyrEdkQ7fsAvjeVMuNgWbYLK3I9S0nC W2974F1pIbr3WZHa2aNGjbBitc4UQwmhGOHs4ixbd2LGReFSnTnw2R3Z5+98WsodGX6AeDDLyAFM 2LXIbOnxFS/4LFTvrft2BsJmMwR/j3ZoLFUg16lakyAxVlvAavRoARNZR+A1zzIJa/nP3F2FjE2F a9cVsrh0D9DXEMIzzCygUmQVsX6y9gEv9UxGtJJQT17+0D5kXdMoBCWlWBH9BIrE3A3TnVKaXuKS b1irwR/c1Q3FRWdxvaiCvMEccM7q8vQuP1RVfBar/EfH10ZqyEWjYGOGxHsYSUe67J7s+uB0P5EV 1HYSo3M+beGKZOaf5o3R2GaFQU+5V9ln3nwilIPxNfqokHn/qxCaaTUqgsucr3UZFPyq5czVIy75 VXOQypT+xT5JoBUn6ZGq7UMJYZTYLEU2/put/Gf3+C4fR6mGByt5UKHTpYKc5JWPUpsqPQ15Lglk sIxeTyNbyNtSbQAalOyk/xq00rgkGAKqqrPg/ohgfCyi6WP1qkuTXcybmx8sTPRU6GKvqghtKb53 UNroG47kkD1mKMdX3sNhZ1PX82bobdG3HE890uP96liwcUSomkV6Ui0EK8xAifcm8dvrSna0W8rF TsnjnY8ydPaTFuhj9Vox/9Mlf4GtFheNkY7HhewsHjmSVcIvDkS59FrJH6CJw6jK7lomp7dTfLgP Um2L7EBCBdLnGccOLhYv0NWXC4SDIMOeoPsf9Si0HtubhXf3xAYLZoIk9betnNtD/Uz6ux46W0VH 8vzj45VPLhRD8j20XJSqEMCtLxr+UwNeIrX9WiMRVVDKa82saPG6O9466++zpVDtFiUT+2rQXqHG N7dTUZGxrI5cNucerMnc47t1xga3oR3Ulf/jfN8Zkxr/YW1TXrD5CJIn7JQnoxKMJz6ufCQmvFIR zntsY1epkGAw4hfthMFmiT7Zxa4/1tPQ7erfbibqVT9kPnlv51cG54wf31Opl3ZFiL2vLnRalyKj 8DBr4GEMeZC98XOf5pfJmrjIa4lNcwosphHcjG1Wp/rmQ6WeElmr7yAo7OuDUyoZ5+hbYAC1HTsm yv2HNarRRiEzZVMSx6l7xFXHReFkpjsjGwz8qYcZkYz7wRyxWvfi227aKH6D7cIx/irB0ZXIOb7B FP3D0xh0aNGG8JOLqkURf4ULw4l2wlMaKOPmerC4AuKY0Kx31TCkeUAUfny+2B1RTWhn2sNSGYdj bWGDGjYNXb60n6x22Sspm85plv2otK1IOX7B4XxA7aVuzg5s2QN579lXdkSeO0pa1fZnd8tOaJ+a H17XIvD1OFV32JXVs5RrVTBfVFTXdu8cO/TvG/f9VONWptvqWTh8LLs81BPXYe0fK8u6wxq6f/R+ 27zi84Qynd41lm2wnUoMkMHnaqgJkGs9yy5x1pUhXmPioH505Bey4g8fvdALUgvRMRY61f8ZWnq2 FKFB1BwGF1FTCt3rfm3XBebYCQPVD34xSZi8gEDqoTLprxMnS8pBx+YWG7X+pGH/801p54nnJz5X WrlxExQyotPnfW7EZnQUCxsF165bIdGSliDT136pEOKKgpmvWWL6oemCHxH1Im3JJu+IZ74i+k6p 2pvZ4W+OOyreD7Gu7q7QJjv5DbEUgSyM5NS2S9NL/bX1veigDMWEU/Abgl5XOtLaYFNCPPWBqG+5 Ab0l7qpoBDJ9XmrJfsFxNlcnMs7B+NqjDpipo4QRj1YbZjV7yhbWmpLXf3zC812MDez7YOPHoOZM UOuyR2v8LTjbWjnZBPzgzTTMJZSUg2eTUKBx8H7L2y/w7ZLy7bMYOgp04VkcjttKbeEWQisQnK2F txvVIm0rzVabXmke8hBJiabrJssNfn9zLXFh8+FmwcbknIhxIs0z6MwEl2tM6znq/VGD1Tkqhyd8 Wz/NMxV6bKttG/L0EAMcRCZVK9u75fYxYIw0j/M0XuWHWbxe1zXKzvDmkbFG6F8uVYDqq2wHtNz2 9mvNKyqg+vCapNuWTOTJMS0x98isXUu+0EbrhS+Lwka+Zu2o7uDI1b9fsmxNsNkckENqQLddr5VN EkROqDVEt5y9yO7DPiBDZI7j2nV9/9DUQ0mrxxqFYDvRYlLbotTaaXyw+ytJcZ2n+6x39upl3xF3 RCTrQ+ji6mMC3/7gTi3+uKWxQigJr2WhuBj8AMFlo76Oanzubrk5KcydH/uRocKdY0u36YCxg++n dRsSRVy+4Hb65M+2ySMoIopBWVb9MvJhlBVWwklLMjDVRfyQ+W2GUESsSsV4dePpIqek+eg72oSQ a2bzJadCzMhEqfMXpkcTO+lctkIlpT4GeI0vJ1TyZGycyMRUOBLpi5QeXNVptyjIOAZ4q3Pu7ApW S6gTHb7tF13QnaoSJhEnTs7YomrgdVHaN6+72zPnGHm5nPjTYRpw4nqPlQczKEqSKnG/LIf5AqAM 9EOTfP56n2EdUgDk1+sA4X9Nur+6p23b8vO2BNALSPFC9OdiIJJVO6uYF8qXR+oEXS1JC+9J84LX 1vsSI+Quc8/gevJ3O/FyhRGmEmPplFVpiBsh5RrXhMsOXzIjtwOJGj0ZSWWCi+LZtWw2tcX76OWI 81en6wXFcHgQapa+oMhWRHg0d7uYUEz/Ya2g6s1X4wzFCw71/4ZgVaXaXDmxFPmo0oGh+C2t+0N4 RcFFJaIY29YFOSgeWUIoWwet1wSakOuDMrvEV0Jd4hB1cRehbGb/efk2vwAHiWyYCRLDQP9xpar0 G1v4E12w5fddfe34FGMaJEnCRgVqq7yEexda22okBVq04C+L2yujW9eoqTWX0eyaRDF4leF8tl71 cnkZDXGRideeb6cMQq5KUF+DwLRtB+3PHxmMhYcPEV2cBGd155JIj+RD0Qjx4DP11lqHinvVyr1K /iRl0sfVZ8+1U5XEi0bObrYf6POppLrUFgjIUu5J8UbobRenJHAs9hwBKxQSkg3U6JyWqZO0pBvi 5jDgNy12Jti4vpHp93CEmbXmDDR8xfzRPmeZx6h6KPnLK1FcUMmPtHWDNzBQQOX6w3y0hH1LH3ij X3+XuOYIScpM/aekpeyAOuWsFzbj8hWETmiR/ECMKqqES7Qzigjd1HEGRwi5iaS0D3PXs3iqMqZO UlMf/EV4UeiYR75JI/2bWrzpzxzCV4ZeaK4s34Vpn3xiXSSnB8Jzp4MvzpV+4cdi5EkgLL7ojUqE qj4sJTK+ax8oDYhTKYhmfe0fXxcyLnXWoH4SN5RAfYpTUkV5+h40vx8tuVZ9AX8vQTpCRCkE2+ut 3pSMeQxpI9TGgiavHKWiVZNkwVdrsecv8aVZVxVp5OnMKq6pDVctYdX/akaVZp+SWBhp0kOrVPV0 zp3ih0ERRlHoWw6NfIACMXWuAgZGJbfB4s9VFBBJzFjOBkqYkwEB3diwQkDiykKxCJcTai2VV7iH xJlJ+Zx/1jxS1C4O1TWQHac90IeBrkNS6ef386U7q3J8vA82C5bZhk6Kd/nf00u1a74bajrcxWSo 8vD5J4YtH2lewYOZ2bubclbF28JdvANDU2lGzCXj5Z/73xS6wbxIrXxaE1JiBp9wSsr4YmDJ1QEI 4/4Crcwcku4ss+BvPsbxlAs9aV0KqqW02zgPgR+ZwXkYMimEX15HzmtDHsppg44oollxqjJrl9yg v6+p8k/K43BRCqB3DlfrlOoFmCgY8LotCyeW2mrVoXcMX0TJ6vS25qpXoVa2dAG7vtgPGDK6VFpZ eqEEnWyTw3C+bkR25T5pRNMqC1lY64aXEM+8MvBjun9PYPC3tHl83GSfHjnSCUttCA9M2afRYJeB kXQQwMTx29S1wsE5eISm+sLyhjI/gAdt1Jl2ZYesmyZS3rjx88Pi0Sg5ZNdeAgi9dI6USTvMhECB FW+81zUT6GPicu8BqNxiyghu4JrwiKYzB7sLAzW04s4M+inQRSqdlnGhJXGf97vlRTx/1+nRtkKQ 2i5VhLbZMSrTXQ9qWe40qUsZxcqWxAhCh4d20qhDfDYKhwEpkdzzctOquMnB1R8HSmG3xppTXpsQ zKp9YG8chuSjEYxFLXjup4xxVvMrMJeAyf8xGM45CIiY1TCg6IYc3VyBQtPxilusr6+iJW4cTS8n N3+Jr4Ffw8V4S0Og/r4itP6DUTDh4/bBk6PGIP25CVDV/uQrdRgBhY661Hx0AyuGGTY9NtNMuXQV YXNhOVxZAr57IrYi1IGSXJtMiGPxqcWPyYJVw6DClIkjLaSQOE59fkjkvntfMJtyqCBxhXC/VXqq NtpCh+r+RoJ+gu43WdEuZriJXwsMdmnSFstALedSRNx4z7CZxEdKvkPPByjrDppcxcJ8RtLtm1xm R4O2PJnfCTTZi4utJuiqaKJmxrkOJDsaBIG3Mh4YjQY6DFRtgqmqzn+ejtV3vTXUxVAmqOYRkW/i D9OceKSJLI8G2tPsbVRatTtxSDbjyWglcQ5XoWG9Z8fsUXpjb/dt5ylZ4S8F8O9inR9xrGqRUSZk IZf9YfFZKiKp1X/bFvX7TkSTOJrngn3dstRMoLKZAsOBVzv5+EKimNyxlh99U28j07EQUFGx1pmt SdcD4Gu00IXiOkI5nhyErPaKFyzM0rfoB/AOcqmFbIxZL4KqQvz03B/9JH89DA+pf2ceDV8FyQkm XCUGM9Gk7Gc9SjN7RAy73XHiRc3PHcRtZHfHcvhP07aQ1kqbb8OLlIRIyTWJESGxXy8vuR1Wmkna w2GmirHiXMXgYiA0w5Lv9F2f/3pQGmQLHs+t3RZChw4dMtdAbLBeeDJkNd8gPEp3W/+WwUibPMoV d+tZSIKc3/4kBVN5HPaiv7spvh3Lq7RB4NEjsXGKwR7MycdSwO0Gjmd1Zcol4re+Tf6m6VWRouLy Vdpa1ViEGlfm+vzm48HUL0prS75wPcGT8nAyu5CkZI7BB6ocNa8Ccysy0aWXRndHDUwlMOdZg6KL 8lx2aNq0rbr0OtKGwG+xTo8tOU3bo/WpNfUrxnOu+3bS6n4YNbZg3s1GVB6SNCJX/TvS/ozj5zBm TLjHg9t79SJ7yEWD+mXL77j49GJ380oRH+4Q5brdzFGN6BOY5vd4WNTj2E/8tzeTzWSN1ZfKlVql h6UHDg9lVGkSfq2Uu62oaiwc1jSZIPszu/RZkmrVWZw2rNSA1I/z457N+KQp0lnCu7r7+Kn6sjbZ WI+bBkq3VBNSyMkui5PnwfyH6UV75pZTzM4MA+dpJV8hGR/EXhwt9SkonXzQ9TUTFLyT/FzPlbpu Yb9H+EObXQ9B8kOBbwo5m3tJKwbMnDdmQCrmeBdFlsSIJBzMopfcPpJ2WMPhaNeRGf/HtyEqRFSr NQHzvo1c+yp6SD1xWkc3jA6wBdScP8NLMfTWARwbh9Eapm68TwnGNDQ7eXitzIOOpWTCQsIxL7wL z3airyEbiPLonDWusFdx129c6z6/E8uAD7jYdfD7OEx3X9EVpGpOZh+4h2EImipszGI3Zxhi9FPl sIk63w/g34tIxZo9hzmBrCyfd5CuSju31O+ZhOsdIIR4PPawJL9SDALxTSIHFlEju6KxE+noMZaY 7zTS5Zsv4WEm+RcIZiI384xpiSVwE8MWk51/w4l4+ZFg0L8xU/zENmNIRUCZLE5+5GN2QRWkaug0 HY6VSMehYzantIRRWPr9CXm4cm8/jWk1Cb9QJh7FJrZ+OpBfhPUrK3AsUX/JIP0w2ufrltGm+qtH 90EHMKIOCbd3c9KmgW3kwPr47BtBOQvHIuMMkgg55o0M5LGFZc9azJ30el8NNlLrinTRBkbirS/x 5lcZ+cT+sbC4xNXdq9AN+U7hmuFBuuM76w6BnT1o9t7g01un4dMLfH1MYdPEkM71gGpzeu3viLqU vvpIXoXOpzAwcacn8h1ZXtbh/bDy/ls6ZtPMjxD0lKSb21jsPA8dwi69qWc6OawAHWPFotalXObe 85vszhX2sgtbV9MNc6P72C11YgZ68TCLnT1No27sLDUFeH+5ScuC+KZWZBfnLG4VrBhAL7tSniPV piE6mWZYBhGjcrAx+hGp2ZXU4k6WgESqd0jhd8WerOSvDizhVAwvVzRYYLH4FMsxcTLHKktmu5/k ssNtLdH40BTOCpa2rMZjxVFPfOdvgNQ3o/Ac7rlRcopu6aGPk2G5XVu7KwJc5BxI/V7R8rDEEGkS BWTFo93s9A6DOCxiBHdq6jj9PjEJcHsqlg46GWWthsQ1OhYE6inDHkm/7+OuWNaoYLnnthfjP4id yp+HwAZUqvbSzgiPprikJbv4Mf2prg6Yr2FlDj/9A+eklte7l7tQ6OD/K8A/pyWUEVUOkY5Z7ui5 3H1rxrDv9yv1RsNYIuqGxmiUU4XLXqeVHWYML0jfwQdVWdQZjCNg6Jkbnq6MBH+GKCNUVSW7gEsS SHDz4cb2T9yNIAnlKe0k1PypyXyqi6d0XpCaG9qPrCtuo+vbdGUj5QzWnGTlZai71l/ZYSZmPbkm zHoI1RMwBAMbscPYXPLP5Gl2P4VuCIG7mba+Er+i3NbT49Xz2oWpgLgWBwpOZ5YUoUeXbJ+NBV7d TUJTpg696wdrhu+m2i72NlPGlgaygXq0iqeM6KafoeS+w2QabGz82cishk9MkSdjQvr2OXzt/A1G H4sc6cS5ejEYD99MUkxJFvOYlLam3+b6sq85SXwC7jC4dDIesZTRsZvUR7cSOA1l6XK/zBGUiwix /wfpUAA1UteF9doklOCixGalMhLGxsA3gyUC0HVgFpe8YTz/jcg13EnDDn8WgVX+TnmEbVsjX8r3 M8OObrsdznVwtcED8S21g5P6RD2s5SxbkOAGOr5hbC/jXXaAkA8H9xMdcXMVpkpVeAh2+m27qP1p 1YXK5kQPClpw0VCHu/RzU2946Ak5ElnIMmVj0PzsDk2LvVu5oltbqJOu2irjRV31IMEl0be3vTBH ZQ+U+agLvGS1YZWtcV1WUbTFkqKo+ux8Bm6Y19aTG0/f65GWcu+syRubDbYbGXf4mG9qM7tGOxxa ezLTuvN5MeIJcgLc8LLTxI1tVWECQcK/zqQRvlL1X5aIu2pD4uLaNIUdx4H7lJwCeic2dU7CjfIh kB3ljqKxFePwxvu7k+yCRAS3ytmEdLILoEkxaDQz5ySm3NUg3GkOZ85fILxj041PaETs49s2pp+k Cq+/lCk0KdAu6dj6LHCj0JmkHtMiei+YC/68n8sV7YtHIyil1o419U8kxUTgQdV84giustJDWjsS 1T+TyJ2MNVC5Xvr+MRq4W3DsUXNIq9gj5hrihyoy8N0BXk7O9ZYqK2IdBYWBvZB7qoehTlftLj40 jMq+Hl60aOqPFJyFP93PgJHRUKdPuLeGEZ8s121sWHPKBIm6fpLQB6M7xWmXcfg0Pxr07NrIXZOo esw3YDeEuNXxfwmxw7Hwn7sHnvHvB5sJXKCMWI6XE+Lx/NJTrSa5A55NMpYuoWcLo8w4myT6vmGk KHl3vDAoC+MjsaSNG9wfRH2tViU8Vprzkm9sdipQTC/mTanCdkOLKG/WcH1JDbvmS+SB6121g58I 85cKE5pd5QiaxwHzonD3r9a0CLsi2sEZmVl94CLvsmBrFUsobGBg6u3rYl5yumIN43tVL6VmoiAL vwwxS7q5BclcW+A7lg/s1Cpc2Rr2w6q9DLGsPmgAsI9bcuCzs7EHW2AWFlTzXxUeEMObl/Cu2QcW CBWXiOlPTYimbRJ96ixbCUb/hB1dSmck+Q/soT8JYFXmTQoNWmwua4RFwS16KCUrxMH7vGStsHwX wolDPFZdNH10Gr8q144VkHnTo4Qm9RmtEeTXL/jhG1n4TUtxGyL0AfqS+CSwsbjaSyBrvIv3lwzW dc9s4YgMI0tRHJ4wy0K5Pn/bMKX38yb3rPy1V1EqTqw6ywyMi1ixsxDQDBXx4fzVw/K0w3fD1qLb uv50biD0tvs5alyY+5OKkE/LGyTW/aHuWA11ygG+jEC3YdCydwGGODt64STXbzhk1RyfZgKKH8ng acER0VOTESisyIayhVTBvW98SOk6+xyFXLtQH52VxGCUvr0sUnMtoSG4P07yvIL4OUn6t0uKX+DQ EeyUBIi/tTPQLwpXxPbLu+CotAxIVejyxZiYLCBqmAK9XDv3I2p1QmN5HYiSIXAnqdQC32hJ+uSK 81MORbxhZ5PRowTrD4bo9T3SZGmFZD8Zh68QPFQncUlVF6vZ7F0M6JYOWUEvpmRJmN4pkf6YeeHK CElycyHhosMYErM4h2LUXGHQqDKKOStFzsFWEiHdp/xYZSqEqukpIEb1TaqYWD/O7rCvHgVNOxwR vqUoZNJcOhap1gzlFu8w9uBjgMxMwTW672FOZNxztTueFH5fL0j43OiX9d5EbcGd/F0BgdTq1iZ7 mkZ373KF4KLzECXhiW/F8Q5CGJ4/x5TULa11E4K9+PFyFDg5pzc1k9ZTTK0i12zsN1JnxO2SVMr8 GI3BddAFa1fwzwT3SoznBA4NU045gplOf4PLwYlXRZtFmj99pda7C5uBlGjrEM+XHtrwAogVj15M 7H3eI4PMA+f7n2MivTd6YVB3/1RcNYx9wctHCIdBIWdmUr82fHRf6KCrW8XtZdREntlefeNyp7ZW mx/krfvcfrv0HZ/J6gy2abhyAhe9qDo/A4LxLG4Qqn3u9Az0k4AG/zteXetjTofAH1F+8XEtHg7V ezIhtTco3L7ARpavWnJVa5qw+nG86n0dpuivfgwb5kKcwzufeYK6S0gX0gecIcwgrIlIb0YihupL ZWirGErY7CNmIvIN4E4MNhPFM+xZD7D54by8BlxgEb41NaYwoGhNpJl/Vka/dI4ylhrkZayALGCP BC3CrV2e5iEZmNCqnzpk6AZ6JVUQi+0F72j76KLAjG6RmBKN6Ts7qcPXGObe7xjM8Nuc5/L51Hea Fan1KFUqHAU0VVTKPppd4ibj6HagAzU31c9nrLc+OJfGXn6pe0HkSlqZiC8PoGhHdmpZoqjTJlhN OMmjlN+WYjoWBig4eDkJFR5lFSciZz+pBZmYaWDUqBgHHZUj9z/SNOaGGGlkL7XmyaY5839Otx0S WqtvcLe0JyNHZsSJY6+qlG4S6kY+m9XmKzzAE06yXwZwt8EdIJV0IkFg41wHUTroeqiHReUn5JyT iEoKcJRS5UP3Cu8oIWFCqLh3AbBxNMNWgEl5MOvUJiLK5FqcTQrcIWjI2gkHX9bjUbF+o4uW6amY cncWpkUC4OGlih+pJ6zFo408X+CdNkRM8pXSbvDkmL/5hZLyxYcKUOVNKYffZtW1tGG+BnKGkAq5 CTkmjQUy9gC+oiIg8XPhaQQEuAg3EwcOH1/O8Ivbh2X9BH8kYuxEC/FM1gr/6KfwZk+jxiG9dSBF Nlg0iJWjeziX4xA3bx/MLG5ao3j94dNH1BmZGo4JUlD9RuoO7FPx5tqPedhM94zZ/bhdqmVeLytG kT58jCEpaFeYxfxPJSGYVR6jvJSyXm4bUnmjz/Jbr8+biUgR6LZNKuY0PTSMEnJtmeOnpg4Lv80V 3DJ4WFeybuOr93XgJl9VSERhDgbpv+KnrG6b6ueRmnJpyLMb3PGy+uNDnv2++F1g2T2nqRvOFiU5 ZJjrfXJ7NPrpo8g3a5n0LRW5M5lwNXfmHzN1YcOa9wGja0FyOmTnP0KQZ93kUArHyCR0FiJk3W9s GRQqXauE0Bdg+hOCxn3gE7ISvnyY9qr+cnGpjhBstsP+23MTn5tLDzUoTFiD5OYpOITrWcEF9jMs 3GzlOCUQRSLzgurcqFePgeMQ5R7tpnRTUzZKsSvhvmW7UgjMUncdrVj5Zrb6oT8/JUJNhl+dV73X XYr9WtMQyV7dEjcH2fHCKf3XYcBx2aBqEBrlHDexv7kKQeg6Sky9GR7pXrKxjyCf4CL7h3m8J7xO a7/ugV+pYjS0T6kC8fX9fOe1dbFE4kOK1aNdobhVKS+5s7XECVH1MVhj6w+sgjmiBPlpIV4yGvA2 dH9CfdZiG2RqluVTwutKWLGguLvbtn7hYNUfswp/AS0n4HpHXA3xrH2+93aIwyg2XgoF2f9GRGjJ KtW0xPRGbbz5WrBIRBEkcTVAGsp9kjHFPuhUyWGR1LUfqSCMD+Gbu5AIsdrE6zIvxLNBhx45sbxm 8Ou2hmQvdITJ5Igj3q0PVTStiFxeJoLThLxAcNJqZULZ9Q9daJKLXe3GbE7fmSZ8os9H7dneVdgc 14IHBHOx/AkJ2VoDlHTrOdbVFVPbFf88rL2Wr2bR2ZwcluziDdcx7oVBu0EN/CToo+LB0ceycZhn /i2767ySw7Zku8YaNrUMsF+w2FOJmLKNhEHbPabsbwzoe7SZc3wcfHdIP/x101WOGm4JTOCsd6I2 hr7Gzw3jSagk2UbtekFYv12TJeoZ7zp8TMaTMjC8NIbidiJlRDd/oHHa/kN0lY2SRwnDoeNyavxd X2OztWPIvasT3D60mrgovgr8oTP6KCM8nySV0pGRLcC+ROnxrH8HJChifSmU1La0p5MBZSNAEBeo RqGtGohSD3rdaV6BLfo2lBVwHkGH0+cJtsT6JqTbjFTUWqQB0L9hrnz+xMUvDxk3/IYg8HOT+IGx /2eKdfU1+DvcK6ED1qjnJetp8OcJ+LtaijAWW+5LSq/aD8I4bkN8f3Q4uaYDzjb0xFKcWb+9XBSI CDk0CdS+hMrQIvvbNkmXoquJB3T76VnuxwYVMZ45weGK0vZoQKClGblhTeM4AOSN/HK1YkQtlbTk p0/wLWkio83djTfoly+tcsbCzKDMKMyfY6BbDyXEi3iQ1l8jpfraf5K4tEF6RUCvP5rcVeJ5ocZD ZmHEbMtpwI2kn9WXopJKuTlHX836I08L3BNV2yahTDPaK8HPTWfEFsRdeWDmE/DhG5Ocqf++5/85 tZqs9xvkXo55QbN9LPSsIHqUCcINQ55OQ0C+slkw5xfGgMw3VPTqchL1ENH5BOZzOG6nqrN/f9cO WaLsnUn60P9Ajb1y5WuXAHN0+fk7GARdRq8j5GURJWq8woGHUxPjfFYsbFoq4lJey0JwDEr+igLZ 55qkgxWtPFY8rvqARaKDfjWiibLmngJdjtuK9bBqpiMHGUnak+0jU2a3BLOKcSxdmxbMAFvOjJUZ eFIyR7Q/g1JI7hbx0UutKCqW5Y/ytNFbpFlAnJzMNhoqIeHLNfjb8WvGj/VZliaZxbBNCT4YKcXR oAmUBPRN5ui5ksGinQK1WMaJi4xllsQgxI/T8gM0Xqe+gpZPu5M9dGSp7vrXYsGWsKdV/E5dq6Qu EK8gD7ZZUeoN+GzcSrv0tRb/os+UwUEiiSFf0cZ6gFWKXQwfNKELD8PUnNXVfk1lLCy/H4B4fK3u /bAOT7QXGokfkgZy6iKK8eOyrhL9i/RjCaxjuQJEk7Q/4LhNq2RW/MgWDAo9o9Lcxr8d1yFMwUb8 vpfV/PXgDKM/OFIqP7botaclcuNOxzzkl3a+SR0FyyoOw89sNmf8SohQIDf5kd6caxs036o6hnaY 3kIzzs6BC4UeeYxPTNsgeeix69n6r5wdmrZDISfg9wyPQomiCpTit4IKyNQpZPKLLxhBhTY2+/oX VEMm9eYzXQTq1WcVmbPZX/zb8F4LcWvhO21DN0ohOg5vwbK9sHNjVs+sUrOWvtcBK4w5FtbKqkUU r2b6Qz9rmktP86JQ3R+HBck5OZf2dBugAX50VHeH/tHSsMvPvw/j/fmOoaj9AjhWewiQ7oicpZDG OuO16AV1PTnzGLoLjjR6eHnN10HDer3E/vM2u+4I9crAohgjVJsYHWlWbQgM1ZRoG2x0MibCQlUa dR+WP/AzbKYK3Ea5zqM1n/B+68XERjW7nLvuKHUAqJckf8Vy/eDTCWzh5fF2ZvXWmTYrYHvJtak0 mZYN/QnHKzFPeUwM1yp7cODz+Ex2vOdCDrPA9QvrYPyERKFQFO9j0+cUfy4JWYOrnbTOyB20AGNP XuzXkgIaaPNePs1D3WmjbjO7uWurF3IyMGek7zpnhbAUUElzmPf0uwXfjQaHVJApSjstbn6BFvnU j+uOksYOK8GDFfjqsbHoF/Fpze9RmT8JVagnedTziZ04La5praYhqsPyryoyrPMw6z75iyRagviP 0RbdNZRabr4hZszDUgX3dfz8VQCj2Wu0gMIKafuRGx2Cq3bqxIoo4DMKH7D6BH4qrxrTCFOAs9JT Eod+IStMHxtTLShZvG0LZvcrRY/KF3eXNMF26GtfdLZCXZg7VfimT9OXLoWpusgCxatT/mM1OspC KOpYB3CUlY3xkA8jxU4CT8mjCHvK5mG35qUmE5aJS6KBf1L3UL90WWW7UyVMPlUQeBwtInY/5UKi LELuPRsjkBJNDxh8Yd82/bjbXtW7SVXtw7Na//MMrpIQQYFNDu2z1LpBzq8mIrHYvstiQnEYY4LU 0AQF36Ev0G+VdBKMHZ2s9BOwTuBowU6LyvAgAUr+CKarRILwI1P9O4qxZ2bic4qIOFx+XttQ/qIO TQIH7fRY41GQ29thQG2Q8xl/a+r7JcGNIi+wQbgB+rfXjttGXahiPitL2YACh+YEDZHRBko1r2LL z1Q1euu6xhzxztakD2TnfK5C3LRqWnyQoKiSKtkV9ZPG0IqJkiL6J0N4qSx/e0trNckjufYPy9ha Fx3Gzz43bDJYyYyTaoQxJE4iVIM+PlWrCIod2geuUGJc1Qy0weX1eOiTKt8YOvH9z80K7lE3R2Hw 25wwSZfKxO/dYap2R8MQTQcNcw9M70gg4rl0dEq+oDhhe2hsuDfzhCUYwjoZ87kTEJxhLO3dryaj I7grHfDSObZrnA/XiP4M7rj2NrSgOIE6nK34Q1RtyfVKxHzUbUWJpZoiWnny8vlpgTwhl1uinid+ sULt//jYzv4moSKD37gqCqaJqLdm++ayMBR8gyHHS2TnWKLzhAPRSGzFvJoQNFXpoCX96lXpVeqj nOfka4uGmcnyax1V9OOs9nwS89Tvpqwa3QQxxl0GRWQsExZ+5tRVk4U8C1e7T0o2O8IOB+IlpjFO APgk78dwagXEU5yuMZIBjc/URrQk1FykjT8/+XfEI3z6xrmXtXMTHEF2O0BduT/O3DON8FG6brLT IS1ZSlKIx+MnfbC/ozNkP7O2lnH66Ckosxft1mZP+zLXRaX3pGbusqVM4EAldvxkeuIR/CKkUhwq 42ECTb9oD+0R+vJVdHS8NVnaUiYF5+6SzYOMV1jA/GCGCw0iUWJsg2Hy2oM9xovVrh5i4UxmPhfg /LW+XZQLed5+mZ2qHHVn6SxD/JdSDKkAAX8eVqtwlpqz0Ctl+0sHYlTLAlNglXZ0QqG/pzRNintj Y6647ZzmPqxPki8Ih/168oQxRhZb5CmSOfUVd4lVPXpJK7GPyid6XWW+ra7Kq6dMDFHMZ+csf2/j C6GeHmpw0/1PYDNPcKtL4PbDpJTMrZnkijUfLOtVEgWN3rKrMQM9u15VSA0CYwoIWyMBeIakx4aD itRgzUi98NSOganyvOOZiO/jW+anNUDF7ne81JMdyv3dPad9bGGMjywynwq7981MVxjXQuv+M6Fk r99JP/ePZ4FlXS+9aeNKCVBxMX9pdXE8JrNhBJmh0ZaBP4sFC+jMeDZn7OFNqA+rdxljdA228odV WLtRMfAN5XEia160Sw6N4/5uBDQ0N2PHQbNiuNY1Zw03j1kg5bOXUjRFaIAbFiPZyYfhz+HfPTGs 4DYZNajrqtiSs4wIK2iBqv2hmjSeevGouWG32fpIgSw1ndcF0Wf7wpmmxqIzcuGFrvw89pj6rpBt xfa7U2w5nPmXwDfCQa/gut0eoW99Wocp5WaLic7mAoHI7clfiMSAvhJqW0HgmzICvaEbcQzFCMzE mpOHfK2jA2I/xpgQQ9HExyy3XgvaJksYi9/BEGw/of+EQH9SF6o6diV3kXcMxiHqSuoYty0EGL2F vaL1x8e7fedXiFrkkUh/PRXMrmV5oefpqdtgKjwPmUzZJ8Bw1Osnn9dQlu3GPw+hBqaZTEjOk7W7 6L0Jg1U5D6FDhajyMTf5Lk6sconND6j44PmRmTGHJQm4He777jxMRuQnOriyO/APJksMkJCqguXr VNcIvP4gucFzQrUfPKBlByCeWhrJUwlwnj7oq47KgvS2ILRWCga0oECqXNZBosFS0Cy3YQXLXYlo /YlAXVlztTqgr55B3HdmmKzdZvWGzUPRu+TfALQsGEqzOv8p+H7zQ1XB4RFxSL5m+8W05Stp+obQ X9yWCeKv9nA+SiIqk3hcgFo2bpHKnNF45JVrP5ymQWg7z1uoIm/0zge8lc02KUpmKLBrdPOyciY2 PeGlwXb7XH0rmuYgYlhmMXZekol+0ZzT/snc2t72TwnULGQEdPjPR4IfJIbseJSYv9QEd+Qr6Wiw G2rSU9106atw0QwObrIgYPFPdEiWzD3G9+NLxB4FHKgyR5o2oks3tmLSYZN5ZqRbDVykIX974kAP ezbEhk4JbLGBaFelQ/oNJ/CVDwaKBNm0NG76W0picLp5RKFI0QNax3CnyK41yHYJHhetvRBBItb0 uyXcD6NGOqx+ekJnS/Y2tU8mXcaf1oun+/olZpVvtyXLCKYq+2Avsy2TA11vEOxUmkdiDl/jYJZm k8ds7727VconzJ5jr1nr/ZJ8ZHvVPkkXPT8hdCDNBC4SOGm6+BTo1H2nbU54hk6XYM0NfIuOETSk yBQvhKPYTgmHD/gubiyBEZGUh5gVIz1MBOPwaS2YZc6KGOVtORipHanNBrWtFpNENsRNKuPjVoJS hl41owXJ5uiW+o2ZtSezT3Vm1qdSJ+GiyNQ/qY8q6hEPKbnR0L7ZnqzE+4O4iBTK5S+ASfTC52ba fFxm+j+PnhP1DBAmT3tgaTxr3dRz1btLRx80HcNKb2iq+NzrcwZFl6hhWcN1SEpaty/+ax0Q3uWb ndt3JvpSdfXuNwX+6jyqkIKhykHZBwRXv1wOzfvfEjc1jRjWBsXdg3m1f/4ytr7w3L4qW+DQ5G31 2B6ISv5g2XNOa5N2I/piETb5fEpXWyRTsiYz8EZrxjAdyVltT23AX139f/ykMgKjgpCALsUUMOPc 09o2qk6gNNrRQCeXTM5srNR3oNM2xYUSrYwrBl8UIuPd4oG8a5X5rRIfZrgCEDLWTp87qzYx/rqf O2YSFzPAtGqv3vazQJXWq4lvPUnwyDynaLv3Q1ku7po+Ci9L2SqkhU8KW1ZLEPzjYTi2BNpV9+dy HGY6+6YGz5NO7fuuPykrgA2rMztRv1ekH0dUc8Jd7lyQskgRnp/TSEjFmS5+hVxCQrnHw6PVD/5J 9jMVdkPQ4LGRA2vu0lpWOOkVz7kLyWfbb5jiwv2JsU8Y0aXaQENVfuYoo4Rthm/NQuf8CGH/tInK zxFiebHna0C9LEVSqV0XegcR0AK2Bmq9wNrNFNIZUO9zDGUz7F6XTMYbvMa87N8v3IDe+p6tnDNV jRFFkA9SGIqYvopOx03JqFMKBkqmWtou5S8o/LB1+pTt0UgTOJGz8YkDLyka77m39FxeTCl5fRLJ pYXpCgnJBc/yz2KJe94Dshgy6fJzpUl9+kZ5siJiA7RzROH3aUnEsRDp9aifShLd8mYrw+3jdYvP MEcX1TyNqpwFGBVbJ0dFS96c1Yl4UxGdfDvscE6X+B766PzDgzx4woa5N/36BUgF9szTtvc/wMTR 5MBM/tsJohsg7louUDDmu9Wm0wMcaitLGFpwhL7d4TH0bm8wh1gl8ixsjuK3/dEGK6ILsg3hb8Jt RdRpI9XUzJDRIsaXPoSxZ/rUKDMagQwXRcuH5WA6Nlr3OO0RFuxZxzeiI6bbyjaHdcGxkqAQTr1k 8M7rbyqhhhgdq6F2egpem7Wekpbf62Ai/YvL4jJt083IdR1v72tD8SLOpt0MiZQck4ZbtD3u4uH7 oqZQUNKoBZko04gwLZJ3V/yn0K3BHhTc5Gt1EHJnrIohHWT++V2gBxZp3+EnG9GAcsiDVG/su/vD orEpOf2wlzyeHNf9AMyq9poFEYiH4c8HLGQzBCEzWksVODMa6KowF+ZVzls6bld5+HgRLy+WSTnj +B3Hya9RuQjzn6XgFciYIAZ4S/Oe2wk95fQaRHST70/uUMKePU3xITk3kBKxYnkCvMysqgHphXas x7+tx5IcyantNyf7OpXho85Ml22bIhWw52Ez2gccgukSjw+32l0Kf5TBfKvATpRl2ANKl8B+LzP7 rHCOK2Z9PIXNc/N78tXTWedh3HsA/s8ZjUrUc9TPtCi7YlTjOMzO2dRUHSsoOhdC4FymwusCgocf QMzM+/lzhI+W0i7GTI023v/xp1P2D7qEMrqfZHhqYbTFApERQyI+fx4LKrbMJDw4WXwM0mRcp4Lf 3niNiXrhhtMu3uheivfGC42svKbIxgP12j1taVUBM1sD1aduUVJmntAM2ysLMFeJ8Mr2vkGg/pC/ N48pONogfsV5AkgkfIcQBtLdLX7RCtQ+XwvT6RD7zbpP1oCX6Li/63GFFlLk7cPkAi37IDD5VhpB fzPVOGXTOLoNvNsyU0WGQhz/OjrPEROq2WzZjZ9Chc/gIR5zu/2R9PH0m2uU3px81kS3/5kK3rdz +toD6Q+RIxd1O0ww20fxuRuuHzw54vOPEPhkEaeArKQmLAEAi1+p+mR46RHmVqEIiKG86bRn9xKp 39sMDxlKt+dSW/3sYwj98xTrJsM/h2eEkk6zr53b/FbajYfMzgwbruMhkC/OC2rfzwB/Ynvpt9wj kVEUK5MhoZjZCw/zRV95ftovC+6Ma5khSRbmZDIgHG61EM7y76s3IhMYHDHGft7HshC8y6Y/1pSD oWssDgzMP/wEMX1p+fMb2QEyY/7N5M8HmQqcC/8dUixiV1S7cCpCQbWzg2Bius4PhrwGO9IvR/4I 8TqfWIx7EM+h5DJzW4VKyUa6ZylYknPJ9yqZYN5sw/2CHzwc3bkOavlhba2pEAsEXENjRX4hbB95 XMzqnJNLI4WQVdN3qXf4x4lYz2t/QXbg6f2KZXXJG1v8qTki9Th5yBF61eZzNokIkCIxKQGSVgTk Koz2uCjk/s4TZIKpsqiUDI3MoFwh28ZKax3lwbPxBkDjiJ7gh+KMYwa9L2HBjT6TLLGXM7pzG03H tjrNyuZFarFDlv7wbUbtKBa5Am3VXC5zB4sd48SF7I0aUeNoHBVffIMkY/TRsVZ+O1inXeME+T7M byEJrFaEZc9QdTAK/goTPBl2LR/CSy2Sa+caEDlttlBzKilp6ikzhNBNNNWdVuLtnZv6vGtCPBB2 n7lhEozfeh+ei2hO5xIykqdP9xbmMk/NWlPimhpGoQMpKZkcRwRX0JJPUz8q46c4iDm9Ev1Wt9Rj jCQ5qWG86cxBuI+xY4GDEtaxCjetwkmQx+eW//8FFw/o8L9KrsORQ9hc0yyUnz2Sq7OhpqvJYwKw QWP84wkfL/Dhr3fM0ps6MUMvXUy8MQzMBLafUGJuq6rpP1IbYr5byTBYuckDlZirY9gF3e+vxYk4 8jwVQmKze9Fq8VYS7ZrEi/YM/4XrT7xVonCdaXPOPC2rJyAraZShyBGMVmHerblneA90m084rN+C qjmVhe381IXOrGQHsJm+x804aZAV3fpeMhQ6zNcp6UeGea27a8HoHdWlwhfm6EwC/69g3+Tc5Whw bbq9yG7iiKOdsYee4gWjVP/etDGkPiL2f8zivFKrnJ2/Tq8qJEo9izMhDv2mgIuwbcFNebRLHWXP jC65f9NyV26OyEJv7EWNLCr9zKuHuQCBkZ4AiJY7YC6icpriGPRLTZvMx1B7LCJpvN9FMoRcLTb/ 7xfchCh5HJAON3t4RZzTzTwBNcW1fLnx9w7H69zDTaMU9qPw0kcXHInYqya37L/068tootMl8Cx4 P+H8Lo9wazNLa7O/471O8mZ0SkoFKIEKCuugqkg18BYpeqYwA/Bm3KYtI3id4V3x4jw1F6dysOqx NA+E0XSVjWSSwMswIziyQCq7vF7BgeP5Wr2K2NP3G2AlCWFSTRekg59w/fInh/s/g9NA+NnGbG8m H2RaKm00+0WUNlGjXdY9q2F8qLlB2mmpKOvkakayv5OkNbrf7k35l2M+U0gKHdmS+HUxVsMxQyVJ JYEKNlqdjiHZ/SGUTYvR4QpS9ZuJy1dhP6f8zMYUbntIOqfNE6keVKuxqdb2crUXqJ5JhIg3GTjF c7QNcJyAeKRkKpHxlHqrSngNA0vACxbXxNd8ppXb/LzvNJS+9jhAPzVZ1jGD1KsUV6fzWmanIQ/+ ZhftAidCbVsTUjl7xUsS7vNsYD+pZTL6APiPzHqVq15E64d8bptlapa/8z3PESSk4N8GEm5Yfo9e 1PYoDGRveXRaQVUvlfdFNsgD/Q5nsaAH4KKycz7RSrfp8b/3S26fkZ6175ZO4/hB8oVjWrBzA92D sxsBJrhu0o34yrNfywdV5nEICFZSugUXeHKkbaMQ8Xwcnk0XGNE89IWzyuDgGzJ+4pEHMZ0n9egM dKw9svpFzjvLLqHqf+O8ZnfxG6OpDZdl+QWYleSRVAVwlgf0s/7chaOlWlcZMBbEz4EkmvPdUEs0 vrtGMvTX4LM2MDnr0GjRMcfzAqL5+2XszK1GFpCdYcD8G6/cLksuStrFesToCINOpeHwmoWUEvmm p0Md9a+IjjxBT3MyHcX/XzVhuaymkusJ37C5VrQEx0ZXtyp34zj1Hwx50w6wOYi0sEB5HVV9oxpG /V8rm3KL8hVZuiDS4ZOCzJDf+yXmf2+3ZWCAwTNZBNoiNJqEet48BgrsacKYfrb1nplm+94rVaiw Ax3kVb64PfiXHMwyVja55pWrEKnn0jdHnBGv+04NtMBcSWsd21r6ePf7v9cVNf63BJ8gO0b54wUH FrzmkvQ0LGNGSbWizBXOWFlpmbrTa5rQGPZQvivMZmOpf5pJTveKk7joQcpNpLZHCvHfT06+kRWB 6jvonkzao0yk7FQuW7TYILHbTiICqFcYJwAYqFLR0oWVdKWwyEDntpYXoVerDPGIFgHvJ5MYAC0g mNlCmO69PpPoSP3rUjY3Yvk3nALwC0P2l9iJ0DOdL/ul8X7xWwdD9BmqmGb4GgK980n6sSnyPobJ vWL8CpjPlv0tA6G6JS12qEbB/Cx2DBGvAHhY2z9Lw5n2vEzCdg95c9b+d/erLnL+glxMTVsF/DP4 N5Ds/XZB3z+5QonioebbvqoicUzUSgTOKcm0FO9GNnmiLwNlL+fgDjUR+CPnWtSbJ9FfmRiBQ/Iv jz04+vgDi1UQXFeb8CGAksWCC1OK9gah5bIEYsSzJoWJKVVx+VmgpyE4iJhSrOQiSM5z9eHpgJzp vvZDwlaKM2WzwVQKLvgSxQqj/s+KBbCUr3XihpMUqi8zsJyljOuJdd7e51miu8pAyBG52FfPjlEG nsBA875oU36CPaZ8X5/bH7gQkWp64pinqVNH8tsW0zkPve/gWexLFU+sPlBLLofL8DT8TpA/yRDC XevhswdCIJbQQmqGaeYNiCzXwBA4vnov/+WWQvllRt43MSKk1j+m3vGUZbPx99nxEM7hivUjjBUN W0Jic1qCF0y8FdlQEa1XEGAxCPG8BBT8mPDwNThaH0mlydkCC/YuMHlj3fMXSgnjY+kqHqyHTkv3 VE/DJ1nIGpAol+l0BMOfrGCIdCEzn21FGlQIkfeiaaFIC2lPJoynyfeIscK5LzSnZs8XZ6Rygw/b 70lLZPbOA0KtLP4gczWqzQWbDQulLqVQ3S0Nv7pkJ5vIdbmdyAbC5JzY18+fsn2Qg0r/bTrwEY++ aLrSNXPt93mKQ5f8ayj337cvWJWmvUSFeBkI3ansieLxlxaBG6Nf6lr2UwuS5EAkU11sWjdNfgIm Ja3FTDnBiiYyIlIZb44gxR4mhBme5e/XoqlKK98uU5GsIuO8QleTP5hvpYwQbpiyVuIpMp3ccwf5 AKYINY8IESIhr49vSklUUBy4ERcMqyepXF/gDRHTlTAwkuBk+euwWkOGBfGKgdoLvGGKk3xBWcka RTqMSwiO7zQyJ5749pSv3owDslv8K1zdJZFUgGD43KO19nTU5WmC5aAZ2EoicnDROh1GpAECv3Gj nvWcnpcGKeuRs3pHzuHS5JpnYpqYb7EoMgA+9YSXTKkBajquHj2BXLmbL6nZ10iRwpWnAc9vY/UY GcQgbLRdUuiOscBC4opt+N8ZBQrQDRnP6/fImcttwPMM8494LJX7VHUjNY3koGtUfrM4BsT5Q8yP E0L8nWfFq76E16W4KTpSkI1OQhYoMpfk9+g0xb3esEB5cmykP8q+STUbSl/thlJidaA/pXCArlxA aI3K91SidvCh3kymq4jka1pmvLbCEK9oQzOmS6xVGjxbwSyzV8wWuH91oz7+9DKh4qjl/Ee4wHSy 7SeCvsP6cKNuby6BLCMRnXWkfrznf5uFcwpJMO8ePnMyksgGyAyIZWRcZLAK++PJYEJ4VVyBwl9r yEQiGnsbxZ47TmFGhbUjUV7BWIhOJqbubPpe6iXwOc4/saz6OF2crFdWYWP8zsIVevyP3I5LYfFD W4MGKAnhDTavWhXUwWI1fFka2/8Zj5vi1mDxOccN73jdaLWiHlcKKAYWw4C1LqVVSa3eVAVbjzdS w71hC6RlVYYCI4kX4nD/a5KjQ/RA6R0EP4V37F4s0P4cgWKxqYuQad2IAyhOhZYgUwC0PPiButOC DcpNANj1YS2jjBELCbf1hvGiNP34retVK35+EKpXftPVWQSSesf8vOGjH2AKIQ84nVlcuG0VVrwR gOHr8JTTt/ZUHfV9LD3TAu8ahSJZWdKNtc/SK3czcIzL51jvIZ/XLOSTAVBN+boYMhpYsm11vQlQ if/erXPe0vVWL8MQfwwCxE6mlgGAeG+SYdcOfuazJirbGR7/xXRYjeweGANB3JWfjvVu1bdLZj7U CCXHUmDHuopaCEdmH+4Pa4eelL3oPMfsjgECVgTOSfe7PkCp1X6qwMxrgREBYpQIIk0HAge6QYXH 76AdJ9BI1wgzxnURyA4c+wFMJdVByyQYAPcDX0qSH/awobyUDq94Kj3Zfp2cOLRVlK1o7kXstGBC KknvhFPqvCBkgooiVPVWio2eC45pkSafMP7Wa9kpkYopUBt3FhWGptIdelUxVNIv73GOzb/XUDoH UAJwQq4u0UTohEOvuD+W3s1eCzLF6jKcs0IAI1skGp6bh/KwNpLHXPVJLYjyy7szK3QHLwzEhnlJ Jk8gftzrb17AxVJDn8Lox3LhcYxjLDlx9VKGeqOGBgmFzsbgwwslVXBB+CFejtSiicx+2Siz4qIl MELCkykbt/25BNFJRn+6c5J/LMmC3xwmnBmWGWyXjZQhYaBPmAM3opW9yGms7VD6KykdqE/EDfuF MhF1o2hPMtMRRVunKf4UnD7gbRu2gz7kUXvXZe6bonctkYuEAbzRrJ3YjaheK+/O9M/XTzZZJ66v U6bBAvFxMgjJmrbMsLs+UKcLaj5reUkrxYw2b5A/cXwamjdxkHDbHjQOhX4V1pXzlHvHdrBiOBwl BX/qkNAvEwNVA/KPCXFNkgMeSMh9MIkQeDk5BicWX1lCjBPk0JDjCIbY8c4G42dYDWKnXZ9GxcQx f6FnkDk9jsA1ga5/XPtuKPb3awOM1QlDzdWzKtpW9QoeR/FVE85fQ3UVl8fF0l7p0kFEP4XMk2rJ K2ply9U1+919z+8H+TNmr38m817PjVqnOJNLE0VlgTpEGTHaGCQBJR8JV2wCPtI1TogBuqyvp7Lr bA2q1GgBl5v02EaUg/0G0wPO7w2eieZmDWCcF6PiCV8V6wObpKYbog505LMUIZXdj1sqJPAtVHW6 rpQr3kHfmMox6eFVgXmzcYcenqeXzP+Sz4v9EaxZ3/NsJaqox3GoPZy7e2ORBrdXGqrtEYznliRp QEY+LQRDWKyAuLG3ZX57KR6APRQuN+espmqyeTeOeFYqDzozr3DA1GEgEWrRDqPTMcOdxS9INnWR nc4UNb9dDWqy9jQI9HSCqzS/WJ1XwRWTMN5LNYD74UjB7wvLT/RzwSYpPZS7jE8vECgURty39LjF fQ0VThTJ0c5FvnlrXgTXV6yhXuDK95+XclyUDBMi8yB8/wZR+XigmLogzSiEDrzOYt3pE3jmntay gOkPsYFwjP+anTmQS1VC8FOGXR7jyTARB3c4CxsYX5FcJ/k+PPf2dRhoPdPsvDfMTpZUDkeRXsnm Ql1PpnoYR3QoDo+asrUmP4nvspIBVGSESio21Q4COGvqzDIoM1sKHLpBievGGRACKvI0SG/Us4R+ nV5ZrRVlAxvbnO2ZQjjDlZDm09RCiO+cXdbFSYtmKrhTAecHnHGowj6i4eumpbS3wsng+1aDQ/x8 NZM3mqew9ACpEDu4gYYOfsRMv7RaxrMKFd1kEuoLEBB4ExdJZ+43+SdW9htFo3hyQn9v6hwgSNy7 Ed5erh4j8KSuI9/vRdcOfua8FbftTbBiQs3hAWKkND/rHyLZ+jjOhluEmod90gh3bJ1EDn4DJai8 d2gHa7kdvBXOWcQZzGhl4HV4CSZ4mEHPhwplbmRzdHJlYW0KZW5kb2JqCjIzIDAgb2JqCjw8Ci9M ZW5ndGgxIDE3NjYKL0xlbmd0aDIgMjE1ODAKL0xlbmd0aDMgMAovTGVuZ3RoIDIyNjgzICAgICAK L0ZpbHRlciAvRmxhdGVEZWNvZGUKPj4Kc3RyZWFtCnjatHllVFvdtjYUKS7FPbi7FXd3d4oFhyDB XYu7uxV3KC4FWiju7u5OgaIffd9z75F7/n4jI9mZPteznrkydjYlqbIao4gZyAQoCbIHM7IysfAC 5BVUQXbG9qwsjKpACxdbYycAGxMLCwcCJaWYE9AYbAWyFzcGA3kB3GBLgJIp+C32zYOFhQeBEiAF tAc6vRnNACYeAAUg2FjdwwHICqAx/ktQBjmDGU2Mnd/MQHsLK3sg7VuIGMjBw8nKwhL8Jwc7I+Of TH+iRZkAssamNiA3ZxsrgLG9GUCWSYEJoAhye1NaAWhA9gAToKWxrTkAZA5QB2oDNNQkVNUAUqpK GspqtExvidVcHBxATv/oRUxNXUOKASAuoqguAQBqMgCkNNTU/3yqA+3f+rdgACiqv9n/1Hlz/BOu IKEuoq6jLMHK/GcNAFaAK9DJ2epP2f/ojeqtM8A/W3sLNXcC2f1VAEBjCQY78DIzu7m5MVm4OIOZ QE4WTA62f/WnbmnlDHADOdkA3q5OQFvgX8C42Ju9wQm2BP6d4M+uAOStTIH2zsA/QZKgv412b1C+ Bb3pwf/b2BsQ4D85bf92BzgDgf9WxtLY+a9YeWVleYCdsZU9GGhvbG/65gg2Brs4A4z+0r29gWbU fzcIBIi5ODn9qaHwPyan/y3zP62Lgt5Wpm/r5WPs9p87Zmzv4uz5L9j8+7JNQfbOVs5g578zAgHm VrbAP907/9kzK/u/dAoiijKSEmrqjPJvxLNnVAC9oWPPBHYH/+X9J5+IuDwv4CMLF4CVhwPA8kZS CXszMZCd3VvXzgh/4BO3esMJDHLyYP6/xLaxB7nZe/0Xg7mVvZn5H+zNXByYNeytHF2AMuL/cH9T IfxTZwEEA1gAQEcA0N3UkvlPwb/48kfN+kf9BoSPlwPIAWBubOsM9LEyB75dELycjV2BALCTC9DH 618N/y4hsHIDzKxMwW9UfxsXhL+yy9ibgwA8f6vfOvkf0z9IQPPXqNK+zakZyN7WA2AGNEdgVgSB 3yhB8/9n0v6jlqSLra2isR2Q5v9g+p+OxnZWth7/7vofLlrAP93SKIKc7Ixt/8Nm5Sxp5Q40U7YC m1r+De3fehmw8Rv/RewtbIFv2/KXSuPPSNm+cfft/LH6c3wBGFk5uP7D9kZLUxt7oLMzgOPvMOAb EP/R8Rv6f/oFMMsoqoorytH/X9r85Sdhbwoys7K3ALBxcgGMnZyMPRBY3rjAxskJ8GJ9I7YZ0P0v sgCYmexB4LcQgIML2AdgDnJC+LOhPNwAZuM/qr8kVhYOALPlv4icAGarfxG5AMzW/yty8ACYQfbA f8pvVgegkxXI7J8RrG8JnP9FfHMB/4v4VtzlL/Hf1678Z/7/IjbLP8H4x8H4l6wGdgLZALWszN5+ FP7FRcEY7GTlrsfyxkrWN/3b63++GfxbAcp/DtS/RIuKgty9GDnYWQCMbDxvGHK8tcfKysbt82+x pn+fUX9NxNuu/Y/854AAAIHuQFOExTmQKV+wdWpTaJmvROFEOQwlD9NJJbagtmw89GLGRAcBrnje FhlQqCigxT+TqggkL81r4JscYF+sTRmMZfuy1ppUNX5jpiK8beyr4EuAIiEynKvJpBGYqbDgX95F Rnsom1ugU8IxldkW30YM0Bg+EuPp6P4dzTb2in6VQqZf3raSD+P2ZYa1GdPJ9oP7Ahp+J8HCRCck +PU3ZmyUca/IIt20UUEo9rAsrENPN8YOZNQXoadImp1M3nsMCZrfjmtLGofv9cKdOxEJIYj8KAjL LaQA1In6CNhuGX0KOMlQYeMokPFFzl0uAQUyE2LUOUFHeF/RJxceeNivvXWE1ZcDUyVOlnsPUm0o eNPtpDxVM0Mt2oWa3QUQ3fiS6SQAcZn5x7L1DwofRzMZfrncbzzXH+ja6QwjvGzB3X9dNIKLSCK2 zzzuZno3XBj6fMYsiyDBm4LsPwgp2qC0QXDHbIFmCIWugEtkzRMHpct1WXkueRBcissCEA2XE4XN ng3TS62VmlbqdpJYu4P7uguxT1JZ/EvnY8/gBhfkJVprq30rMQqh9mxSLZ0bSbC/JGgF/FFMEpH3 FdeCy8dMGWerZNAGtb0MNzvdoAKGtOqC4qGD3ZJ+ORQGy9AAF2OLTzYtbkF1mW6A0UXsNJrj51ZG mEvMxVcueSxrAVK+0TijcAZu9Y2fuycLo7raKHma+EPEcZUGbrTrJXXjI4PRLbQ99UeUqIpf5dfr IjUXI56mE26WZF5ys56SMLw5H0KcReNixhUg8ICwZkpU6K+KFrUJFDiOVDsbOvO9ZSJ5BAsuL1U0 ocLSRGuaxY6PfSr4HrvnQliCVJ8WhKXkzFtYhnThJfTza7rqKF7ZgVWB8subCDi1MbxSNAx7mIjw 5jPHgcN6UAr9Kwa2XfaE6diIdTelLhI7c9Mnvizdqvd3GZ/B2LeZ7YZF79WQlY9eUrqtv125lRZq ueJy7aRfkRavHlYiQFVNnMez1tuLsbGRKM1mqXzFUkM8wm8Ae1wT5Ngn7UohIF5DQz1/JeqK8oER IPh0F1M6BHk9Zk8coyVkeNAbyEYg0yyQLZj1vQ/C4Fi+sCAwkjFytFLmpvrBERLGEDCa1giQUEBg 8JbjYe8IqES9ICRSmTKZa9Gdb3VwQZqYu1JGWa6g7JP8bW1Ek49mx1gs+OV977y4zFAvcucqu/8P sexhrgM6XactUZ1DV1NabmFyqRcUAJERSwzeWmEcMz8XYdfs+F0wDdOd5JcB96tvwlJfhpfDooKr +O8V1AuGWu2DXotgofOIfx4EII3rPkk8i1bu1+h8Re4T8gQuwBY+k6VFi0PzmHnR5w106GaWu6cY xXgDxvM+OZ4hentZLAxU3zgRezUt1Dz396MqsXRWpdywmsrkDdbbmVlvO/BZJjQR8TdWiHwOpju/ 4QMwt/4Yb+ta7aH0HLMY3kuIfTfFLIDSzzKex4CapWi0/UUcfGjh/4Xt+rbu/vU9MdRkO3X/l/jy 2662DwEUSN/MfZnmU0rnOrIOY+kdF0NJMfpzEToZYpDm++LgTK2mDQR14fgFAw87NMPF1vAtdXKY BW+ZvtA0hD3SHKCi2xmZYOvlbLQhfUZolKuz5OFonBFNUi4gzMkTyeLNzhHGHMHZ9EUqaInHEUFP LadVSMdU/EVu1n4OkZKVWygVbDzJmnXT/FrOvucYXizw0h428mJKSWju8eEWhtMirAFNx5HxZZTO dPVIpaOfALOX9aTD+Qe6Jf5crpwUKtMwep9e2XyTWVeJeIQNrN9hRzkfxYbKy+cGAhuvJoxTyCEF 4F2W945PFVuWP6BonmDjrnykocvwlo9Q0aMx89RZSPWLgGSAR6VNgahazA+zC/+Fq8kP6LaZqWzf a0KlgB7rwIj++uwXoVOmWy+a/FXaSSSvs6V9zMpLah8PAQtFoxuf3PDJnhnrXyxiVHcQTEHY8E7v lZp+w4QM6M8SL5M1lnOJbzS3DNPFx5P5Qzo2gkWy4xXW1x64Tu91ZHaEKTY4ZyQjdgdYuK4d5LDJ SD06PnyqLxQ5Vbep10XvjdSWrJeSVGW1IprffEidSoCxTM/QqcK01IfORljfrniGDqFPgT3YADeB 6XClerg4kGYldgUsVhySNdHQ1JLDXfOyFWKxJkVA1JF3P0SM4UfOT9iUptZTbZ9IL2gpraj60mhX Iug6n7Tl2n9WhLMNPz/mdr2zaorg9FlSzBBLkcqdSCi3MFd+RVxDvOXYOrSGY3dHcxZ/PqHDoDh1 x7SoWexvMQaYwcWOyLHMrDccE2ufpH65xdkPIoKCf4LtH9OGMbttRWbkVsDFxUR7NLbYStYdSGvn 5gUlChUcWZ5n643KK7U4Y3ewebYZfPp0KfdQsVRzRZmD/+Euftxs3Gs+hTyFuZYlxz6Yhxj+Re2h aDQnyi3BecZNY6jp9ULYncraGp19AQsfAjl5U/C4SolUk6YPFV/PloZhqplGLqhmalvg6B2uqGKd ndHlqn15nrKVmonlIHOtUxZVsXGOxgd57T0pkm+yAMFOZUZbTRtoSk359uYp1asQ0fg9XG+clNr6 cJyZabqKbYSzZr7fHs3mUCoozT5VfWWo8Vc1smbVgXz5l1IyTTH0hL+50UvEyYwCMIjRdBeSaY87 2pwxQu4lGZGWiKQhBiSQg/h/iMG3Z3h5fD/Eobj+cHTg147pZCiNsaEVaMn/2dv3+0870LS39heH LP80pMRp3vG4ynPTsiATDN7HnBKkLUg1HgMS0cov2ZCCZr1P8RO/jCpua212pATe2a5k/YikLIHH Ya7lt5xbaMI5BVMI7RLbVIUT9I5UXgxudiizuJD/lv++Ml4yy3ik7GvwzroazpIy6acuhS5PybPG DJPQ6w7PFMp1TBEuv4EjKKVFee7VGFPJOkdlhCAitFA5lIRmjccagqaB1s5ufZ5uiQaydBu5YZt4 0IhRUn2tISYmicwgNlTRg7jYMg4P4DY/hkCzQDRKHJ3061P+Ff6MHKwRwtzoDbl+Qtp5qUorka7S qOXmewefLuQQPtR8XQXttZsA5vUkbUimngpzTh70Zyj6/V0zKaEQEg8J6G5vN0X+j7PgtgxyrwkE Z8E8A2N2yLmiiSPXHHUdmtXJx97w/Ai5FOoD9iLH87GZ4N2sdfv5m8BbGJC02VF/lnYoSp4sV2Gn 3ctiByt08zSm0faD29qnXayP8LU1eKfx3jIDkogMxNGlofaqFtYxv34mpFivZPTBThDYUyzXjz+e Awx5ieF6WSVmQatlCrYwDpgUxTM5Cmfb6SVt15T2q0+7FytDKiZ3xfgM10iybVf7pPAlZssO33qb ymg0BP1QpwI+UPOMMwwIhQcaAj7/aDfuH3ympD8+TSTRHB1EsnBw0FShqtIcVgQutsQI0Vq+Otm3 cIWsNi5CWC175/qUimOWvsRRNf6+fcA0YqPqnBbtwjbfE+AvEiocd2YWFyBgodYY8sZnwRwNj4SO 3S7dHA4gI9HHx5zBH2UVcOenH/z5Ox9oE5LG/DC3FZblae5T67m64YcPYmQrcMDKwoikgJ8uyUmy 1/SHZmYDBeFbUcqq29iVng3JMGrW//6lx5PNdThwX1ZMY35zoHVz5EM58lmmFiw4K+zwE+Ge8efI gC2EV5ykscVkhc/0Q8p1zCe+eCBo7EjdPFHOi6J8AjYHW8KUsIAygABHRufbSkdk8mWLx7ATjItx iMlSp0/L/g0EwFl4t6HCBHh6Dh6j1z2nqtlzqgzAn2ez3qQPB4kQw/fowcBO3sPoqv2XsbgTy/aK pJYLblcFWf5mK7NG72Ok2ywaRD0M5OKCkb4z0P5McqZiRsOUocyutPsRXVCvv2N4TAEV/ssKxQzJ KmYBcmmdt9cpci6ATJ8fIOtoIT49ma0DLT3muwalMCIOhnhX1ZV/d4Q3MhxeW5ng1LBWWZCxbIWJ FJeGQCoFiE7k1dUrPDnTAbTXvHq3GwnsO61NTxaaUsnD3dTsGO8WnENBSDogShlCzHxg1LRGE4c7 +o7T2WgMqVRq+5GXMKMfgaJFP/3LYaS+RGxYeYgCM9ZdVcCwOo1IwXm8jTVTTZPKxE5cSVaLtOxO 08cfJvxsA3XTYXgbOfogJLAjPWNyu5HG0KS1ZyHT95xCbJFJ50wtIERV59wOptuk6N0cVK4xVrAh 6SMjdPE+H+m5TVIOkTRaFpMBWahcf1UaP0XiOI60Md/5OD1h40s+I16JhVP/Tco5I5Ou3V44Jvy7 PovoGyXAPq66PjPI17dIFdQhWd50N2fWmIbr0Z+Gr2wnOYGg+PyjD/njDha5XzW4ZZFiJybmyKuC xPf3lOBAg7Ar3JH75ioItOFMk2RCs2lhOIj02p1tW5p6ntBT0asXKwABT1W3ScBFgKNd/36dckWH M7uaTrk1on5quhgO/yuMXNi9oA5k67oV6+e4EVd7HzUJwnf9l/oYt4ndo34TjtpjQyRoX+b1I989 igc6MpcEqB9N1lYfTffRh2ArqLgYGymLyIkhfw0InrU7H3LCCMwdqxRDUC+vG/BesRU09f6pDZGW Qjh3fjyY7jyrpTLBAg/Zju/KNO1IvU4W1ArTOuq3c/WbBjf2zFJROd0TvuMerzPvl6YkQsktoESn nT/m/owTPUts1G/DcvMCu3zFWUGMTUivnrzNulFe4DCFYpmAS9EM3EYtaCUUYLuLCPPS6/pVaIV0 7b3G2d4vhFZCZJqezM7KCofNV4CL0UP7dyr/Jcm4WejPGZfKqIdlyhwz7rgt5DqAMmYlhscDUrGk Yx2E0ifKUepOq5K2iRfFZj4L2+i4wvTh+YSXjxrX2CvsuK4mX/F+D1FMDMcQX98TYlNtfxACcvoo y4h8QKCrtKyfltPOkwLEzbKs/25sLkamoqWNUWBKQESkVEJk7JAJs7QBtsCNj5BeSgKaOrGgkL2E TajVBksu6nqoWKUgrpSEQq5KOh62fnbYZaSggLGLO4keaQ/gES28DZgIazHQAqZxZENVFrRrJuLs MUfdC97x0AUjQZEafnUecNcLuSRq8muIgDaZ6oJhpdkoNyVSTD+D9d98wo3bf22S6kRMF9AVtR3K J5zVs3DOpHYc59m20kD5Zs4aH79Qt0PAt9UJR/iYuR0oATYhd+OPHGBKlgl6Weum/W5575BU7hDb vCp7yFeUOJx2vm+DZGLKG8K8wCM1SsyRBTicjFxUFAVO/HRFSNHcEPtVKYHrOMiAXTzLYCVj431y aRPVSgTDCsx928wyPl/qsm4eZzm1cRGEhuuCF8Fu3eRI9lQCi3kuBV74VDhqjfA0n+B1xqAzpJ/l PVruBew8XqJz19vhP/DxqB2LEQnTVRaKtIouhznE3eaLVYxZMq/639EPS1mPrn6DZ+lyTVVVVkj3 bz+ewpMbLiG6A810eVHELIJIsxX0fBoGe+rGNj200v0e5czqG5qMc1dcRDS8eOGs5MzxIEQORp81 mhE+b1wx55wInLP1/C4G5EMH1WYVosHx99dk94SFWFFJfK3DlUDNzcKoocL0BCWZWvKMo7nQmI8R RLp71JOsuLc1DIp3rMwV61lcW9E0Nu6cSUBmFr/63CDn7gbAacsDlwaNu7H1P5bLzOUyIbOlBGsQ xn3ACsIo/8y3ud0bYjDgWv15ICjNZhvSXyBEZNpGbrj/Y3jAsgXSr+EJ4swpUXJt8suWU7fMyYyB UWIZps7Sa9dStlo1V6yPU3vwZjY6OGs7LBseN5bhJko+Dgq9SBHu/YaeQ96dgssOmsk773/obn/G UFQdz+4eSfmKpe+SNjePjjlpvMn2nUDdy/YxOzGrbFV8IYYWzwrsYVliIaxgkUa20SQ/GVdUwwIA ipBr8hvYzzGjk0cEvaQGFjeqh/P2wEqNBNYleiWgfI6E9sF/jJAxyh65F6/0haKO1czz5qBSh/E3 /tit7nujJxCAXq2I1D1OpKeI4nJliQTN8CUBYzlxAtE437Mq4Zy/Btnlbtjm9SYZ9pd8zpfvBNzl RD5and7OrcmUwotV7DJkhjYxzdonpwc4fJ8bq9pG56Zq57vXlBRPifLVLGJzk8sOKG/f/8j5Yqrp 8xtt8BraBoBkmNgR2mrchrQDTB5J3TLvKsqWEBYW/2xX3NOhfgm3Asm4PtWInTHs5TeIMpb+7C9j S/3BAIcTiRMT91g3PLLMQFvrYm9hiO9Bqqsczl7oUV9Os1Ff2pzZhpoegwIgPrCc+H65rUHSsono HeiddkLdkqEJ7KOjjKd/Wpep0qQXHbMYbGUWCoOlD1HGmP1GzoknX/F2S4enUTB6keLzKB+Ys7H6 hf7VFaqN/6a/cVCHah2QPpkpTqvaAW+07kk9qfbr68PJxslXbQ4S+SvxcE5Z5jDivDklvgsGE72E hWARW7XhpJ2Y04Wo0famCkJGiKeszyLXsxraVU+E/p/Ul3p9dVncPzS2RlOxm8HyochwP/QwkM7N /GooDACr2grTC8GN7ZZs8Uh5X74+K78PyQGtPn3E16JM5pML5/FNkFbUM0KfeQkniI/+xsELCQcj 7U+m+WqinKzY0iAVHyUDGMCko+sPZF2l++XqwaMZ3JkUfDXXqvRh54g3c5lG7zSIPIGSMWq+uXgE INgP+btkq4hHt40DVpmjQ/+eqyEjt066g8Y+v+jr9mZ7HLGlP3nHb/vF6STffqvF/aHH9aEN3u5Z PQzazOy6xuawrsDqzh5nFh+3dSFzZYPG12h0jdGsG2xY5Dl+hHazmHGyai+YEHhMbRF4mp3PyYNY 6Fkb25m1pqUxFWaYki9We+yObqIUqqw+zIzLqtkvBVagCcvUd5kcG5nlGjmA0ULZPeVe/q/Ep8dW 1ueav+PJlwNZ5PpNFmZsOJjUcNBxHhVXCGOCuEI3KboQNIJp8OnYSWYXUs6xegviS4swmBW0RDjW 4cO1oUX4KhsrwFDx9ZCmZw1kGpgl1gPyHNgCzKww3lr0pV0+xlw/bGiyY8yLqpDB2i3yEkUQCRkj viR51K8yuwHOuR8xCSLlEHA2sHCdY31twtzTqNBxTnvRyewbyuMyqODI9nCbSZhnQ1otdT1V4LG4 XmtODmDEpCVMbTroY91GCYuZ53drPFTOIUVM5oQF+UTcfTFltH1p4AXNy4K8uuQePp2HOq+onwPh JxhA5zS2qraQyTiu4Scbvxzr4L5t+sjrf3yYF0vlt41P4YWeQuVR++bvJRiMQkTkoif8k+OBwCFq Gd1f34dMmVwKxfxYbuGwF6NMZQzd7dRaHmgkALW+9puBt8oPK6vXNvfpax42Fyu5MDiQV5Zan1dP 8Mjl00hgheBoTNdxyE4hMY5CGTt0/BlTFcJeR84JQZATguPD49ZPeJV62fLRS9r69mBedh2joLEz mqOQRmYKioyEZMBF97eJ1S0tvvk0jps5t85dXzZWYRo4DMfPg4qSJojSVpcgCf+gJjjhXIIerq7I ww+/MgizqkhgbE9kVMk8FacxI0qvIFHx9CmDcgYqO66jvuc7l1Wp5SOT7MWfdQjaMLnQER1qymYL vkez9xbsRrcQ+ZnULST84YZeyoaNXmwOcmmJaK9Pb3hXInEOfyHXgn5UAe92HkJnGr6ZEUH6hAKf plTWGYU6jGb43mp+96DSJGU2kIToKXt8ErzN6Zb6xSlSsm2Ic1HkkMXFOG+YlNlr2Stmj7q9zoKy 570yRNRMuXCwWpU/h5Fw+311jMdPYxpfHnZVt3OyJG6juuT3GNCOymzQjkjDeRsY0RLwRtWas89y ME3fvB7JPfB15n+44ZsMGhFjkHY+h3nwPz2VLe1seWdYKxb4cpJ+T5vQq1dPPGZ1owN9D9hB57v0 1cZKpWH+qBIV9IqLgu/B7vRFhW5yK0lwP08ZynIEfIezt/96V9e9dRj9mdL5J5Dr1tBcx0Xt91Bn V/zrsPahAT1N34kPEGbHNeDTIV3J9lxKq49tNL5vrnz9WFhgWPZqrG6cOsqn2QRmFQaEoPSs92PN hX6ueUOOrRwF+VoeOiS2qoqaLjy/XXSxpsAmROHXzTYJ8J5JTaR0OHB1ZZbHbL+uLdx5BwtLvyDn CAuvWK+He/QOOMXXKOWGOYWBHUwDNmwrlM45DLiIbV5qL8iVppKCfakb0Acvhq37+Tq+bXYY7Csi 733+MjqDqS1+6kWXLTlslXGUzocfpv2F3EWA55EqZIP/cBjXlM+0NFMxTZdzelzuSh88RWfcZhXi 598Snnx7bc16gUPYpVWSvmIkes1TkVgiRqHWpCbbZpB1TFHDGHvem3uw4Rp3u4kUd9Wqlhw4pRAW JzslIPR4WdONbgbLrK63LzaQxCftN2ycwkFww2y9qdHWSCWP/g5Hnv9r6XIWfKZzZfnVFZqR1WyI ez1WmZFtCI9imivEqgL0iKrkkme+XZWnYDUjpBYjLJztdhVf6+phCC4cu8KkCoT5Cr3gknuMFEQA /ExUpnqvAMhn1ydNtRNpSF0y6dDQ+tbbSyM2roHoRr0zHZJiM9ic5dtG1fD05HWTlUlJv1b2BlDh xdHyJIgDMoOIuRD0/riaQYhnKkFOthC/KhPPyjVwp7o0hiGb22QQvQauDW1edws9w42DEO+kdz/W 5st+urJ65sr4pSfWfWtHeYlI2tnBhIwQgMFaetC0rWRM4vq3V1ie0yd92z6YuOF3c0bI9VmDj30F hJtrDFXV+/ZYwqq+zvUCWXVytcsfe56VupgdXjTreMtQ3GvCGSybKKKbNlwziQlWja3Lzbv1LNTP vA9RDvqaTqm8ha6+tZCD6ZOl2lLrazG3omFheCWWovhQG5O/bdgU/5rkFhyqWI8E2yleAh3msrac pVsl4amALGvb083PSkk5MO+fBTU3HXu1ofuC3denB88DbRkqzuh/ycktN7GLsv+IQbH8bG0HkF6G pTeu2eUjg84Ekh0T4zfcfBzSKphJ/YpIPqX1mnJhXxCRNoP8mqFYm0iFLYi4pW/Q0hZhoVDZmcLl cyYQF8bfern0lY/niL/KQzSRtPS3PRPJuyqHreeuMxO9RvZY6eZepDw4YDjjI5yhXSm6Nsc4PJ6C t5IahpinuzwM8TuiTkqXHUHM22jpuEFupN4cADzlwqcCDh5ZgqrUcs+y6P5hZVUqIkctzoD3lh7h 8JwE2iwMI8DheNt2W52UQf20BuGO5jM4oW91NbjxkBcUabSo3CTFtV8KMxF3xZXbHWAbbzXTF3cM 2fiBfYtq03wWwXX/5SYTZWMpRX8ytuLkllLwhdh+5fBbsZbn5+ogg80R+65LtKGWhAhVKidfap5F wN2GF6NlZg/M6Erbb5ieTLepIn8X2DCu7/qOF4xDB9LyGHc/1pYVV5waoRlZJqVn2rR8tmmkGsb0 QATqmRnHtU1EVa2GEW4qzjLOabMwaeaVS3beR4O0aSvjZOypBRp4jylGyHAe7CO7x53PTJaNJ3Ui WP4+sGKSn18wjvjf/V6xewKQbFl9F+UDhcj3ZrJHGBL0yCdZflWN1TP42a2cFzVi6sxGNmHpS1Aq 1rsRRPhjMAn9bM4MFpPclNFsLTFXkyuBXPLT+gO9bXiZu3DuXJPcBa/kpvP7Uo9Z085bsHLAsV/P EBB6SGRakzm8dthlikbS3lZQ56ZJpt9zsK+V6HfRFPCjFbOyKM28sJRmzT10Yg2DtSgn6iIlwKxe hjPOTrviBAkzpKvSJOQIQlXNqXOL9rKD2k1FQsShaXlkWz0xRWmGNT2AXUL+opQvXXJuilx3p/Li rmJm0VxUqaoJJGmFR7/DssZkcqy7ylBdEga5fmmHpD8ZNEcVJmCAMGVcSkK3s/xInemb6hUma+O3 kq3Ay5gUBNMs03YdJOUKMfohC43lEEJ5uodo1qvAZ/uKGOq9NG6WBl+uyU9uYC1mIssQ1kt5VxWA BxY10qaxN6Ku9Uv5o1+r4j4b65MduU2Rt75qKT9++SyTqMfYuqBIVuVHNeGj0g86pBtmtkiuLS6v ouJ9qzA95/s7C2P62b7XDmy/rJI65hW7n0pMugwV0F34d67IU0wqn/aFgwCYk8RZl9bip5FhwwSU 4li8+KVTS1XJPO5B8qUW2pnSPxUOQKOrCrhyeNxcP1wVuxOrBA6/bqXSKZTQ2YyfKErVfPfv4h7X gGDXUGiCESMti55/oVw9RrQQi2O6gFOEatxUC372z/xsnEPufUXqu52vLfvR79DwnN2NbtVmuqJf iWYn/Wv28MKIVLe0BNXUcp5tC1TtrlJdDBGfGkqsY5j0TD1K0ZZb2cg58iwsdnFNTPVsCcKPtBqO +BHLeUc6MUwURsZt5+2rSCYl3PrcFuEHhob89z9x+9JuUbCqzfQirytCs8ooUBBvyMF9QgbTucRI tSzpNn3dar32Ke2u20b+xEYxMDI2+8aZUVa3gYGQ1p+L6UkV8zTJOLYF0EqT231RU623GnmSsAqn 7oKE5qkmLbcMR1+J51WkY/tINblfSgrvDPIIkk5ZUOTjzFzNvpq2kGv8yHP21PWGu3azAfwgeP06 a9xxX7mu3S6dTS+j8EkhaX0MAcyg3INIvfhxZ+sUb7FQMhVRqPz7akeOZJ/KDo9p5fx+aFS5eNhZ gIHwVtQXuXlMxyUUScnQ5KIhHwKC25lKejyh84wHzI4NzTysGChuTremqe7YFap537LOlPqWbsGr nv5lzedzkTgqXshqZ88xuu3W9DKqhgFjo4UlZ9K9KbJBLfoVhXEChujVQANff5GVJXKixxjrztSO lbJPUGDDVdNk8kxvwh+qxSd0Ea4HntsTOHp95ldi6r7THxBvkuPVhvu53XtYP1kg+j9PZz1NHBST yT1AHfTPC8nFSkNRxnfWV3n0lArDC3vtnOXtbYTg6+ggh2B0FKug+yDQpY48+RdnpSrVjzTYzdVU fHLzZX4FRU6sLlH8zr8Z4chZ/GReB2y9Hw45Dql7IfLWiNax9YFIfWDlyVp0dZii7A1BKfq8a7yH j008Oeted2nfj1FnI8eupYu0VynIL11N0lOc75cckumCiOx/heep/M45Nh3H+pxjyL7whrcfpDUf KGJnnlIZKrGJuuo/SwrfOAHLS+8RY66B2TUBtw8xd0LYJbXzGm26WTqgdR1GYpRuW8kbvRMBG02Y eCvS5kvNBu48Qutb4i4RSneSJt3c15xeYyCaS/rav1QiGdDF8n3PcTQlVSiauycHJ9nsR7J+CFRx x5njipLy14bGFCbYxQBgBRra8cK+10zzw6mXsZB0qGrXCQ/aYaJgfMGWgI0JtcdT6mSvqQgRffPv Wn6IDNf06f3YXYplbg8LesE+XLQBCShfABonc78tyE3ki+jh6FZKvZYLvVR/k7t9qDLueFlx7I85 1ekgyxDufW66Y9NMSKuUNjUrBK+DPNavB6ezBmTrfmcmcPqcVmI2AleKPv1V3y8FNwxZx34FkJRY s2Ep8IzgcbI+s5x5YhB+Yv8YwFaZh0a6uvxgsyQNgFF5Rhcu1ts8aTPOLe6LzqZm8avEFM1oecj4 VLgAeK+fNeOF5vBZKBsC3QBkeJagVQkT0IsidRrJhxJqBFmqdFlrnJl2a7gvzTy2+85lx8zodrm8 wYlCPhjNK40P33CKt5313rVrA4KFlvOLYffmWLyoU+mN4abEGomz4A9M07pznIyUg57248cDXj/p kDmMdQS9XXMbwAF0EL5U3PxnD+6iM8mQ7R/sNmYOqXC2ifjGUF8gYX6Yb5VczPj6M1sFJg/hVQXw 7qoerBzM/dIhF2on+CAf7V9JnXRar9ZdZXB6QcYwl0FPqt38im2r7CVTfvsg6zggGXTV1jAvxsdp 6n1Rkf2kc4GiEZjaMTfKPreq8xrPKYlUKGMT0ghDF0OU8cICpza9k88jtZU4Imr/EciLvVVyejsL cUjuMHy0597tDjuwiBpFgTmEbQXOwdgDx0gnqFsuCffjDFL6W6gZkTXLS23AESwJrkkREYKSCNoL MpDuxavHZaa4J4e6fNgWmBwxBH82ijfvr0hDOrJV204FJitg2lcoHrZTfah7JhPo/1kUydWCHfBU 4WR1oDGXPUhKKlJuiByXetaKf7dcSKYfZxHrx0+Ptcl/1OyOvosQO1IlHG0HBXH9QVCvpbLn/UIz mUhGFklMFztS0+WoI9N3U9VTglQL2OJqTYS5UgY+uA8vXiScLT3rBtRTp06Ol7Y7gea4xrpomPQt CGbWvlGxiEdaV2TcJnMLXGFSh72/J2+2SSbjdiKfPkBTNVGJjpPfQJHegGldZc0H5qoPUiFTPpsx 8V3u3NTki1qi3chLQfY4+3q7/MIjNKB7SrNBvmNnsWYF0ZmV3ljx+JAqFeUvvRLCa2owKRYud5V7 mtZSpxjf5uLi4SzSFXMmMzM1Sse9/6FRnBcp5vl0R156R1prTglLxD7S7IxgYlAYXDIa/TyWOOYD d9TG7/nSmYtuGuJkHxdZ4YOhpSws/e0Kbf0iQWnOHknfuCxjdvqYKIhdpxEuijzYr2XC83GQR66M VWj7JIQgG07XZzs7cKmjZMp/vSISkXdEjY/0WRJb5PsTS1lB0MqJuSoa/gceXox04i4tt5q1FM1z jCIi6pmtuS00Br86lhYzQErDVETaPnpmxQWmgSXFhcqoaXxHohSzOypiVFdQFJxIW8w59XOp7a09 FDMBsowkzooMdM3O40bmEJuAYfN9voGRtt/AFL8hPeAZFrg6wHzArR//uAilLeLqpN26V5a3j6K/ 8Sh2ACgfF/apt7xyReW6B/I3e2x+SN8vWtxfmHYYHzz6Aox1YPhGrriSZH7ZEvtyjUUOQbgTHcup R78WyQOtTZVt8VOwuPUXJy7WnnHIy7mtc55mAyfa3bWtjvyLICPdB0vcdGQz21iBtmYcz0keDF/i dAA5p62+ut2ZOuRGJCemeqCVCySAhY6bGirfZenbEX9ljUQ15TWi6JQSj8stVET5Zwd5OdLYTF9S tc6MO3R4C8mBjeciLr3pO+syUor8UM3tXXY7puVMO+maqZqfTMk8UE/5yC1RwcjHTaSEh2Y89x1k zDpOcujKoa0/rQTnUfgiN07OeH5IaBbNG4BUJH6sFH4jquQgaYpC5oUBQS2muSEgk9UNOThWcfiG TBYfFZMPpVju1C+hkEp0OFA80uOi6cDbAr121AroHmkmgy1GxF4dppMHSlu+d0JISP1IfT9XKo0s d+5FYFBsCJMjRrggeOQfss3uy7Z2qp/bmE064s2Nof/awbR8lcPTdYI1lL3pRKRoRbdC+BgLje9z YeYt4lL2KOBLwm4wiXmPDTIMsXFRwgtxP8ShZ/U9d8YQglwxwtntdRZucJ7BgbTE6Z/yGIGrDQ2J lMiDPV2yalZ4b+GicAQSqUvXFFd81yvtIvnIFoxr299mLYKme9NltPGiTyyBep1cUZXuvqgCDwkT yNtPvJfQh+ZW7i2VJty7t3mOOl4LiPKElVgxH8U98w51QJcnhIJgQcy51GWle63ODP+RopM06VwA h8B/Lz6D0NpXkg+cq0JOChzHRcYZuFYrktNvqBZ7xoJ3qA1qGBQ8NKCxvHm7/WNf35RrU1PlV4mT tpgnPy7LOuWHtqVKWm67D7x3Ry+zX901jD/GpPZYTTcDK0tIrDIQuBnKV1cSFel7UNOShVE3WD5r PpVuEMSekAdv2aT5c3lvPJgkZkZgwJaDpUVwxgyCfWn8TCw5tRSdpPHTiF+yz1qMX90SYl3662Wb 7WCPqQ2JRCvgGbJEsefBhZbpI+arORjm/Roti7q5ZsmSX9FlJLyiykHS/LLIVmjfghTgYwDoMlBY nzALp8BuH23MiVch8tLaKPK+l5pVhawD7wg0Cw7afjB2ivxMtEh7qsFvHJ/0yMB2Y/YwJvrYE5R7 vpv7BfY+gDm6oMvpItBJ8qlIUTrJT6VAm7/ndqZnaveI1RqeUCJiOsXMmpHwfSaSm+foO7TOogv7 X14vD6htygZUZfCMuXFp4e2f2EL3klimrQ0+eGxEY2XRhK4dn2rR6bk7B4ys39A1fM7NPggKmDpp Ye6ak+5NmCx//VwTuEAZcxd+PSd606SJvVVARl57eOdouHlg7Df82NmgxmGLkPhkSy/2SIYAZyU9 sv/TEl9c4or3aiQq0oQ4h83R5D3n4EAPIUWUlZ4nwzliGOsm2fhZ79q4a3lrQwcrtpuS8mcD58qA /pgO+uicdNibr7t+Wz003ywPHtHUQxIHDCYD2UozJHeQRQJvESy8DAc+i7487cjdHlSTHRM9HoyV jlRsu4gZuahfXjZSuys+ctl2X456T8MIZI5CQOd6JfYQbFTT1N9J5zYkoi1SpP0M4mNHxS+32s3l yaqPOr5sNJoHtbuS5PWF/kJmyB24Uq0yz2zIwJOhpYIMFH+2YPwl/Z2nNAgOhHmDF4jKyszR3UHD I3DfLQZb86FNIp84bI8EeiO3i3OvqxI7WZHKwUoFbmauFdCiCI1kOup6dkYNZKcgNaDRaErWcrgn VKUQKbdeajgnY6hkcNOzMqv+4qfJkJKVMGePXmHEuwlx0S8HQxSEfLaTa0O9ylNu9OLNLfgUMcEG g9sWZgTz7ofEbwro2zrZI31oBOJ0E4lulWPp5BnOqKbsUXd/F+8GN/P0mKBdLhWuyrvfE+m31qV5 2optRFlPpbr4jT64CNsVhisZ5sekqoUJdm4SAQwxOfvFZLemEE1ZetQjHE8bbnX93UGkKVPuVmeQ k1ZP2ndio9g/L/KePqx00aHVsvqSEiG3B6ibtDbYOFgmBuIna5d+xyKsbSsnU9gN1FGIC+3Oz8aC G0zYdXDhEY/fEe4gqbQAMz5JhxBrKDoGJOpk56R54/gzcO94VY0QoxwPF05izxgmG6HJ1Ao9TH10 sj56APCOJ98kWwE9B3C/AQuZ7oYiSH6FofYbp+ys4bhkETFUwWfPIZR0F2Jyrmr1CsRVK93uCCpa 0ccs1fH/qoSZxGe/mhXcsg+ecPlRnocHGejhaxSkC0Z5diKL6NFLRWo9Upc2mgs7HL0yTHPNXQp+ SFsqfND9tstj6khnX4VKGl1FHZAATCpCT0+N21RTC8gQgyh4COlJnRDny+qK94LtHyQO8ArK+i5b tbfe0+E93ZG8r1E7wFwnPIJkJXz20c7yBAPwjye7DGgZj9z5xzJlObLvVTRhjRGvmmUbCxh1fq02 1Y/ZY10MWLwDqxPVfyhVRW4QiDslxJaotHc1+85RgVy4RL1f/ITx/diWpkOJtag8vTISbqunyTEN mFDtjBbHM9lXDTWnya7gKZgbrCeztdHTrF7s2NW99Tqe0YA3eN2RJ4Pe7AX0RrFfhBOQKbPN8lBL Bvd+zykspPekoRorLVXWoHc4ZTahPW58Rlpy79fYR4Pqof1YJvyIGedhe633bjvykWv4am9inkVM /LsqpbbjN0HCnxsCH7fWoW0maab91Zum578LhrUFQTpNAIRpbJaycQpQ7fq+raO+r37S8Gj5wC92 UPmOkfnj1HdHiJrvIt8uLCREcYYD21CDjeKDsoqyafG0wFelwCmPx3iFd12buy+ROM17wp1KkK2W BOvdhL8Nx8y2j65vfEvNrV3q+jPfi/9ENuKzI41NFSmb6KBvN+qz+o4rZCTT+F/+ooL7eP4d9LOj iOMLlaIZVPt+EBdisipVoFUKnpSOayIfmBwG1g5bU4YnpaCYFmHyuU32N5+CjvjZQ3/cKyHOkoCc zVDUiP5/40OaOLtc8bGid76UZlaFsb7x5mte5VoW5vtGoZdUlCnVLEM4BykC4FjpMjmcC4Xjlxlz HvMo27mCjyvO1sm9UnjZcvMVjNxXFCdJ7MwzIm3eoR84A2816hAcmaYP8MNnXAOHSQYWYchfSYxL WhJf1HecOw7Gjh4FAsvtud89+ehGjua7EX2PQGU9DeT8iZMyKwAnHy4CA+emkoD3Ne9A9o78xtsG O6qZKuvnuzoJiZ/ikTqJlgVl5kTtxQEuxZoq4pSHdosOC0SyWt0IU/6LeA7qTl75WvW11M3xT1Bp orT7L1xrn6hrNCGjetBvGJY510s9lOKovByNHX4c+TS7fli3yIKHnfesx1QMEakfJbHUrkA+WJFi 3PwmXo1k6TDm+ADvgogKM6wYSv6eOS341KNElXSq0I2h3YRFspFuCxUmajpmGXv2E3lMf6Z9G+1B /MpVjPa269Y4LlrJ6RRR+LXQ3Z7w493YkxHJkVDvu59SkSiE4rWLSIA1Zp+PRdhy8cOlXILikY6/ H49Vdz3VNE67iubXE3Kfwy51Capd+8+ePHpYxGRpQvSo1vYFuRALJKGKG8nTwj+RJM/eNZnbfQu+ jV4z7OSd6t5Cn/nYU+pQg7Zmjm2zsD7bbx5ltCPgyOJ7km2fRaBcily2kKKIsMbJpO8buFxhOsSH Q2ydQ00dDb85FJEaDzNLc2NF/hpTd2WirLe3gTnUctTN6MC3Hdhdfq/itKeJl/aar7K386IOKKWe iEorvIl7pweo2MtrfGeYmvEqFLIXeBrqfzl5ww0W3BxcCdcKQ0kUtVAKkKvm63wdKRd8oL9wZUiB WNdHSOztMop/Re2503zZ2MXnVUnNL8Bt5vymvH1Bl8J1kHOX7CwrliTrRDp1dlj6rUHnKcJmS1rq i/hSyU8c6WkzqmVVsLTuiZdpXTH7exmZ99MwqIOzGsFUrp9KmERcJ1tf6Pq8o1B6UFtz2VqTwwn1 DjTlfscwzUBNbX4PZfoUVT04uzQCoHbl4UEYHgZl6TvsaqznL5yTbftUQA7nwsRViGMSV6PgEICj UdjO+2BvbV57ggv78wM1hUrvb/MK0IT1M/WXTt7VNwOjbz8PlrgsHvE7Wchq4vE8k+kqrm38oNT3 YradnNmKGxgqzDDLeup4mmJuiyLQt1pJF1mr3+yUGcBWpWb54FuKlU5xFAOzJh1nc+V6fZnjd7MW +gteAdI5QNbXjsES/wbugkgr4UvQb+qU91fdia/6gy/RGZN20Gton6mfvSFIel8rl9eUruDlxGXx 76EOj3JTxahfHMPSf4BAlIbv1+YjVDP92G0oIolsqjCKUGw8tmrdV8ttqL+zpwQpcrlgQFTkppYW zY41Eh/HULV6bdzQVFJ3XLBGw0kfH2vx+hcwck3ExpUBBxxc4SaoGx/5nbHbA8/peSdWUFYmV/b9 Nfw9eWMCGVJtF3MLaaaIc5hjqVtlvyGxbdsTo5rSH9T1sV9CV5uPiTuSr+uLyWgSdnh9UHa62crI qsgJJMC81DPE3DNXNWId7+GozRBguLA7iHBz3RfGhJ9cjQWYHl2hrLi3GGcX+ZRooAyVx5r295bI 4uUIgQdJFAWxlawzviXrQ3RBM/Yu+DKgzOx4OyBTJTa9L/ZFOFLnndf393UG9Y9wus+TB8PRWbf3 3zJnc0WjJn7f0iDBw4TYP2e831H9+IGWd2h8bi15ZbHhh2GDErbGOyTsluW8bLERgZi7WGpWSYpu pLyPVrTJZ7BxBe7xnogH3dSRxnTBt635i9EKiGFsnJodUaQfIwrqyQ/VIRtuv5aWqj8jxZdpixsm W/Ih8SZKB7cV8REgkGEQ1SqSMZeeo1qztgYiedZ4ewp8n7qvZQ5vpCVl0FZqlcRXXapTwOth0Pe7 c708yw3gxh/OuAjIOTu/DBEwH/Q5FVEAFSGc5EQIaGWduHH/XhwJ4Qgnbe5fODEq/CqNFCfxOz0i 75XI3t9DT1oBwa1tK9oXnANJwi1LEy33FUpbICml/Uv1QuHTYDp9uETPA91zhVl5Ydehx3SOUxS0 TVFguXF6XYgMekr7mrI7CbMkDerqes9ZwLsYjHd+VG3dvNsRdzp+Z+1qQOpJQfcsBfxjlVJjGpq1 aWlSvF8rXwTzvvjx51ATVbwcbSL8GJ+1MpEesfbpW36UlBb/PVfcLWLwKyBIvOmzMjs2WSk8MhKz Q4r6D10dGx8lbKVXkQT2A+k2ice5JX93RL/3dXoFnwN67mSFxpjVDrvphyHjGAN3jm16pkwL73Lv n3aJ/KCnKsIVfUa8FlCZYjDe87E8319KHyBNIAgsHPJnUcf5v1YRUHY4Z/Df1rPHGXXxU1x6ap9j Ut4DBqemjU9gvIINJM0W0Wv3RKG0FLUjQOhiS1e6wiplFtZ5jYnzs5K/Z0Dazjc7kB5OXAqumK8Z juW8WLDtqXMLnCtt/uqueJAMEuUvsYjV39q3y4G7mLSovl+l7kjcmTNAy2tqH0nqQyThPL1i2KCa EKJb2I7ibWoVcAfbagrYUM/n8XYEjj7VKmKLPFB2YMglgC0KGQCVHycvhnOKwKMcmOyknRRQ3iVl 9vzmj9aJo9BEGRxPHkSUGe/mT4fQPr4U2aRP6O6exrDBwbCltmCZ5XG8MvMZKQeo14YHNNExpYN3 GEq1zPBUk3+6Jc7exV4xrVHAcM5tr4WFmPMzY8g1fj0rhMoaFXq3LLH5EfocweTD90ABKSwbG0b8 9c0+u4tSfAPwcgo5zOQo7t3Lp2LUWOktIyU3l46e+kH/FME+ayNblF5GnDjZGkxhSLashkCrpkU+ bQ9GpYzRhFNdj2pjL7eF0AZ7YpTt7WH7wSd9/oprsKU+56awvu+vIP7W316KUFmPGiCx6rUinsdL nnxrDQ66tKyb3tgDxHnYF2T9iXcTxvTWu3PlJy59Gu3rpYji+y3Wn0LlWcfqK+aMpuqw2H3oMtpL 0nbvvCIrOgkwxm/LtFD21j+uf4hqnpkT74bqn7FbbiUPEJOkxhaKOwt8no36igNOOIfQa/DaxKru R9xBHbzDODejlaz7+mAcMu7acAPO7n7/uQFztS3Kdu9B8kC7r59BRD5LiEVJUSb42ctDa/Z5ostX pFOmeDjevgbfps+mBQU11p4wZNi/95vHiFJZK8w1hfUJ0pNgTWgohrfLTlb8F/ZG+I2JUJMEQCNF u92zFCXr17YLmpIDoJ5EuTCX+xnt+56FApnT+esm11/kEk75jgA0mg2dlU5BWLOfmWODIjPtLwsh jTZElpDb6ax3zS2DjFNGpM4BMB2ngkljY/V7u6qTd2ecEOrNJ5I9SAN38apri1qIfrwOHp+tdCUb kE4xsbv8BIP2KTzH9kUjyCdiHGmi10JpyUrvEZAXGsxdDtgdVyf8JSfrnb0f60U0MWuok4PPzsyf 55K8gg5NIuuzFhORcnB1BKYgWwXCdJwT9eMHe7ASO0fd6Agyslp6AJ/cUzh4nB9bE6dJY0wXy+5/ kuArjhOFEc77PVy5jDdoRGWQY4UGrsAb7+Bp57BVL+l1cjZ4FymwKxEJxngSkaGWoJQNXzRE25Wj 240+ekYye2WanKHDXHumF8LtL/kXQoazZu8YWV+Ku76T5uXA18lvNSwIGVQqHpGbU8eco63j+dbQ 2y1ACzP+cHh00fqh55HGB6z9dP+DhUiSfZHFbNElzn5qw+5hV9ZAaLrCakuqkhlH2zJNpUzNo8sI nLQXw8FDTCkax64BjJxy33NN+fAt+knMXlLU339ef8lmA+UGtjW/RWlpzOD9/GPizMN4kaFlgYTg ZrI4IRTZza3C2DRXO7p1Q5exy9wqYY0/psLsItW3ENR72Xcc06BfBJXfS1vMeBZOaWEzHNa8u5ri U9DbPiQh5n0NXsDuvNZa74zi8FlK/ZZHpha0sFRY/5RoDWjW87NTgAZOGucOCzfGU2JK2NXlKIXJ A+W9fvKdWYyxUjnkXgS12Aapi3O7lNiqnnAP+23bn9O0pnaJJHkMUVS2cTQZaezaycY2nEhpsS9+ wPqe7eKtvn9SyJDIfHaLSW/Cr9rXm80Mt4GTukADEzcas0pgI+GvsJ3P/UwUMRlz4L20519+jcz+ FTT241IzFKbgPf9XKBZhWsEs6CJk05zTnumAaMXmjQys6/C0FQV5JNEdAS6OdRlvPqrbhYWSoRN4 55Vh8Yqy2Bs1QwkRfPhNzHtTDP4NyvtDHmlNTe0gv2AbnwUHeOlIyC7HWVxRTYxRVJGKvUmbH6uc FrAjep6NnAxXEkl5euPaVo0GV7zkIWrZJ+HT04OSKbtBOXoyPjYs492+ltCS92El6OiZXNaxAJiT MS+mRSixKUEI+2EaOqGK/OpkS7qGTlemuqk7Minf6cEDMuKFHKNPBkbeF77RmM4gYpQsUtw8jWUd npVYnrCd/HSSh/3AtraDI86ygG+VEcGbthwWtvguiByyUaE+8CajKhpClGk8Vr6Dc+apqDybF1hk 3czDNjQ/qPuYSQ7vJS6/M+VUxhiqJKWinTp5G/j6cfNg4S1/HuB2LB6bcDR8FZPSRZ3zX80nLGRN 75QoFPaU8sH3SaWSudwtz9Oifr/li80rsrff9hlbajshtpBmj46luwnBlfOHwG0tRgSNLG2hUzCG bGuqRgjNknEs3pGQQ5OVa9RARc6gBnSUixEh9NTolQ+uMVhfAYFLciFoFDXPSy7xDC0KkibBvxhe VSP3d+cOhKZv48xTAkaxuwYIzjKTC244A1MMdisQhyHyd/JcUuinh9Y4sbmgb0Yrh9y08JFYAQo2 /lvlYagAximCZ+/B3f16ttFkh7UZxoqQigeUmlpvmgPUzS7puJuKza5g9g3Ch2gmiqXS5YUDomwv UJdFoawj+aeLj3jE9h6fNR4xBslInFHlt7qG4q95+iJIaBgyDAx8SMFH187i1wMRwd9qYCJvzege xKLzaLhC56cmP1fjyKg413Ww3iSeEZAF1pIKzDTPhXwfbnAxzaxAgFM8uESLI5mOvAtDhtf1XUp1 /C+P8Mc0DuGRAyMkTuUyB0SHpdZ7ZxsQIhb0KDZJGAorINqa5gZOAg33aqS69UDWMzgxNPft+Hu/ HD+t9H3WggF+IFXktohntnkX4tGyJ1bHGxVUjWD+IOOg8P8CUReu6EK92mo8ogRLHA7mCW4AitZy Jqmru0kcQTn8gDE09rzC6703A+lhn3YtZBKKGMlQWBEpPfVmWp61C2MDAacD3Wa3zinmQ57oxREU R16e5JculSTcPrCTonk9VTRwoFrG07V0YFGg6OFSyZ/yAhQVNVZHrjS269g0cJBUgv4XQojsn5VB uHV4cyBeRgOTsUPYB+NbjNwbPh3Czi0oqvVcrHwEJaUaGtZozFca4W0yfVIB0xKBB9WkZjp28PRC MrRii7y+HavA+IRB1Xw92PDoKPb0sIyFmFe840uR5RpkzWpAXM9hDUr7Yc+F1xjXcvgSxt4wkfOh /+7PFm4d6Qh4ClK1qPb4SP/LaRVujMuV8ZJOOlvIISDeD0QVEVDt0cZaPVTTpa9i4c3muIKA0lgO vWHXy5YsTqZ6t+skI26g5Poqak29ej8VMPXBuK715rxJr9rJaDk5fKqcI9D0g9FV+5PClBFtJe0g qW6PRDA0SYjrlASFRadhiS5LvyeLgIbuV826VdOUq2anxNOrLPpkR7x/AmRUxSbYm2tGKVDS/IaC awhFeurkBwDwWlcm5RbivAeII5HQl3UKyKn88DGAp+PBKigVElWhkMZcWsHBfiJfmAO0oE2mWTyE ax+3VDOySvH2zhJwQp9lhMm1F4nesH56WBB38vg4lokutp99JIAyKb7j37ZwtcTPpwwVWwuvANCx DrjvRyjBduPznDVItaK+JSZlh7Ur2iLas/F6orkqXSAKZhDN3iQuk8Cq9Ab7PXVwAMG5l6SR+KeR IewfF0mJ/84hL8kNRqXUBFD+d/yB4AOLrHZSm2X3PsNy5BdfBsUlxtYKbo+GxbYcdQ9wBdyJXrPl dbi/6CoebX8/6UxtkMDkT4I29Vk4w85anuqoN57n2H0q9JWop4sn7SDC16M8HcvYqiF6W4wfuPgb miPIczHJV5ufpKWmyJwPeaqmGj6W7d143/dpu8YlDqxYTTteiK3R7d13hX5Gil7FTG6MzqFvwH1Y 9q01s0W7YBAQbGhOxedRGuyltsF9V+vOFXLL/Wf4b8d/GqEaivprbrqPymdQy0ipXKM9d0g85Ccg dOvYjJ3L3R5RrBNT98HEEM8ehTJyuc/HRKcbQAH5ygKm5f4sQSfRN4MNaN4hGmmtiD+JJ4iscCzW 61UCWX0JoTgIrrGPLVIue1ApmLWqNXm5sYNttq+hW4G2KT1hrAvNihTExRGsj++aj6XBO1PQI/91 BpoPkbVRh095Zr6E0U7Dd5oQam2zC/G6j69lSfRELQ1b6TSEPCxkSrq7R5FN8+0scZdTux7tnENb 58fo7ag2L+l/IJuldLXV0Dmne6RlkDnw+z/ZsTTn97mzSesAXi55V+Io1pFrvTibo3kc6QWs3AWk exVNUMwg2U4vOBbWrVmEaT+HIb5rSOghhO3FCZkrtD0u5xFcqdcYX2N63JjPtgYeFytobpW5lWNr gm6X/JGgol/HlVtDSK3ffN8Uh1zvhrY721ddrp9+HlWtMIzZfKY6ymPnbtFwSjcJA0Cq02/twi9g 3c+jQ4SoYaf3mpFhbl0Re705dG4sQywq8uhq+BadAwkFtis/VYh5Rc4e9doZCfO9UGy0gFzHfF19 Zt/kMc1oJsr5ctIDnXgGVErGuAhUDFU9/3XzoASVcUgAswa+AVGWoHzRP08yA4/Iuq/Beo6bDOGp UyPG8GSN+Gti1jvAXm07t3Cvm1p0frAqoDwh8wiJDVNCUxECEVyG83w786oStkqzPPm95PxhD8pP ya2wmLw/G0Fi86ACCAxOySqVNxHUW2+CtaPqUjH8nkeNLpIkGbPWNarPUdWkTIQaloyN6fq7B6/M JlwBuLaThA7xUHbVQvG3hWc4BglSvYWjex89Y+z8nIhdY4NV126gEwOMo9XJBhTyLgJiar00PzrA qWmK6Ey/EsXEJLekh6SOpbVnsHqo1jTHAgOMdPAlkiCifL0jowVzcTMLQEFWbPWmZveE3ifwUe38 EJsrOO+MAvhhIOWH9/Phr/zv52M9pM2L9eUb3h+Tb0yC/GdmTgFkStIsvg2oP61E4Jaas6nYJM5X CwSgUY01yuP3j0DppFZTu68qXcpWDbW6qYSq19tRjQFwMBzQjnmQeBx05ShpD3MY7Yp3k/1rznWf gwJEf7Jp1sVZJNe9sq7VVEsGrUja1eN3wvN1ytE6kEQdFGRhOv+MMrgiTEjlvcAilM3RiW4+KJ4F SfNr29/Fqq5KoYsQbEPmXJOSXZy4sYnIrlgc5maPuazN+iJFNkzKFmQ8mheTv1JMpa99FAb4oQzi 0aOS7OPjpbwPjLNnMxsF760nldZn0+SVeUsu4oKoZSkujJzX9y3Ie31SMj66nFVhtndHeRApjelq ON+x204iAqhXGCcAGKhS0Cx4/VyDVhhAiMuXdV8xFs5en2pDkZkma3tpU3UF7vP5wwhVxjMt3Vii gJ+ZQy5sL7jtWQbsz/rK3XHuC3x7Z9jHrAVs5hFdRXWbTtQWiZ7aP60Dmzo3gJgLFLqVkA20oU92 ON3rbrovgihgPJkZ10SNm5MOzGNHW7uM0bFCYy+t0dbD1+RS3SS/PK3ufoyVZFRlD8bZ7P8urSXC gkA4fx1MKRKz/nk8a8QMgvOn69lTeVKxSQmSzyP2F9QNIwmrFu16AepMsQxaUohA6OKm/VY4pEfu UDoZEuuBF8Xm+kxHD3do5sQWdy2jyfID2pBTfDHjk+hEdlm9fjD0HOlZnCxfx1GBpC5lw+HPUmmw DjH7R7T3eSa1lCEiA8IaObaG+IdCynAgQs5v7hkPjPniSfDfzSEjFKN56/8TMhun46I/rhYC2jzb eK7VP5gWFGTcXf0rRguZCOHYFUdb+3mNjsKDugjMwwKAUrgQQYVSGQKp9pyxkeL4/P9v4jo6vI1u 4Td39jOfMCvbpX2mcaJqaiq+nTu5TIFpUO+zK5qE2rAMnED3xpU8/wceFjf1Q6xTk/iG1p+OXJdQ xMnnZUVpbKyAQhNhAQHPcjCZUNF2z6odFVMSWGqa3BNtlwQGMF7K0tzFGdmqsa02JtrYpveCXhWB 33fmaf13AAPt77dLm8rEDFicee2MRrMoJN7k7ZCvlyAKELOZIRJlfbIdsRheHuujbouNwSKxQypr qaimdMotXzsA32mCKWhwbrlNFyD7KHnlltOn75Qso7YG+verTY2AeWE5L7IsT4aAGI6Hxlif3zQP 2DPO9iK6ELo6h/JQr5z7wZTRI91+uyKYKzVRZJfYVe+NgN6sf0S9i4zoLh/SGYTSVdqrFdJTD1AE 8GOtcDfSAgTbnz4/vghKLeyqGWStMdnS9HJan1zm3JHU+LeACgXeyzAM16jDjXdKsoQMKomM8yuv JBjgofpuVOJFnvYoOY1JeejxR73bHcYHiF4S+/pzQ5kKFcINoTwjd9d52h8N5vwJkQoTsjhg11zl 1e2NGEvPalxK/RWQTWjBQMbOIxAV2u7FjF7pPSNmUXKoK2zboyZNpovD+R2V0LVokPWf9BQ+0uMl lkGvFT19SF+QPoBE/Wct9UjEOaiDCG8U9BmCDzEvN8OlvMHN9GktYBreXYMTPvCl0P77nA2O5Rnk euniubzjq+bsaP/pi4WXpkgNwvarYjAh+rl32/AR5/D9bJs+mHiP8KA0tMwaofTofx8YT2gZ9NJk FsP5uvVBxuQur3lH6qq1W0W3pcJHfXmvmQ5S7gSQpDgJF5YsGO/8Z3T22wi3mcWWajQISqTdJv5w pptY9FVkaDf1NyjZOzOq2f3E/NSxaXRDqZ/6RJHyuF0x+hk8emwgtrA2XG8caaowojZYNWfvfjvR Esw/QmJAuyrsr5IUd/zSmbLl6nrhmX6hzyr3wBUtra2DSkPdXLUQ9OKBOGj1h+vmqkYRx0Soves0 fXJiBinbagapm1P3+QTBfcIXx6nKYEz4QBsonBr+d4eADjAqg7lgtiTHLYaROjIhrpzh56IyDmYX TU2/kJsoWK0jNgxoDpTosZCxxRmRsQJmYmmzUSiI4QzJpFMBnfSJ+/zukV5vNjaqpicBJZkVvCZB 2wPvushbX8LCuOfN2kmGI3SPpjgFQcEwgkvlY1/bmYnbzSRPDBEIegd9IQPklEBrHcxoX8YnbqYa qUZbuzpWqsjRTmK4PvaPYr7FatwagGGfFVxm3GN7JCNtr+CvkdAUdAlsgBrz0HrTD5kxoZwcjtJi B1sU46YZGlFyMwDqmHOUkske53XgbiDx5n7r2/lnc9L4ba8PvanS5/mrZi9cXCMN5+2o49W6YGMw /1+2QrL0cLqSVC9Zw8VLBVFoNzB9uKwcDQKtrksM08HOmWhTGhZm0TXgmkawVGO4im6w8dePzfrQ RaBFyNfrm1BBNOtx8q2uUkmz1criH3MrDhOle0jMg59dtGzrRvgCezA/SzIIGloW81YpSv+zRJEd fs0Rqk/1Te943lOskW/CnbSHpmlIbegn36PEh/uuutTovRNx8gwoQwflSInqdHYOFpJvwglR36g4 4rw+AnULqaXKU4o1rQJpjsA0WESLs7Za/71i4evGPBgu/rSHoDOZtnlOcVdAFdSQpw9VvhpsE1wR I8shbXEgB/aaw9xfJY/jwY6H/EdOpKSRQZzwynblNJ9aWnwaQxSG7wPggsXGqfLR00NN1L16Btjs DwDmmYTsVeC0h/3rs/fyOxOX6hi7qSIobJjOqJuYWdjlkKIo6fQ8HIIu+manXgGmh1j9l8WSi7Kx 2UZTToUE+YFdttses0cqHPpTLoe4BgARSlUhtSJqPOZu+Cnb2J6yS7LzNQiv4zny0IXjDevhWge2 oEaUbRuuwIju/kcLjcYj5THqJ2V0yrb6PRTsYKJBMn7nDw/CUdD8VKUDD6tLNBvtwerc563ojyEM cGiR7S2KWkKImh4wcrlLoa06kjvJxPRUMOXhp7WJ/a10HJOu24J5V/ewRw39yRszRXScDzOWOSzn S6VeSL3kY8Rxqc0HIGYWJ4t6bsE2Z6SxZmLF10Fxc7LgT6Wji4lRSOU/is6MJjPxV/jPhNd/qVTt NoMme/UDaSL0MwnUdI3HIYuUtrd2UgXYK1v76qSRgdi3o4SgkXDZ3l9h4f+grN6QsPTOy486z66d Nst+Bvneov8upL1or6C+dUmaCIGWqHfP9CT5lYS/snTE0ijQfK+7JtYeVXDqQE9SAorOKNmdEsxv npGmKTkYjAFwYhWxIjEo3/Lxvs/cU4OOz1+Vey8s05v3a0ft7c1aJONG669W+KlEpyq/ge+F2BuH iiTpbW4WWD+iqH7oevXO0Jz3F9WOKhyLXnoq5OKNLlvSgxpkr9fJ2PhaAJgUypBo8Ar/7pQblrw0 fFYFOttHX5QvUVRwUaVOUlusgxR7qrjHjp7P3d5/QhKOrjAE9GiUf/9xq+TzbqAG4eYLjYV48bpU MF9yCom/nzrczy2qrYMQAOJzB9bLKqbs9fkgKiRjvM4StOpwpnprvpoC0YykRonl0X347LBlj/CZ 7mW3kcY+xq9AZW2T1hSCqq34no+bCwhq9qJcaQE6CV5dBhZYv6VHhlnCeKn+GCWv8rrURDknRDzg 7xirzCLkgM0GbRAZbAWg79l+5X9QxaghMsssnOwsvb3JzUnEfI4x5w/3X8TosDnC0RT6Q84LBqW4 +xMKOTbEUEJkxNWfVqX8RMJcDOfhKSnawI06eCNa2aEqiXRbPZn6LtA8R2S0OL/CRTyIW79NZxA5 nSKCvtrhSGTkjFfQ+DPesM8gbbE403EqiFkONrMEAwraDSrNK1er2emaRWZ52upYfTaiE4UCQrRN PToBJPQX2m0QLXugD07lw5gYi0Ds5WCijxgZb0vlXX0RpqfC5sWssS9A42FPpzi4ywWfEt2rCrM4 IwVJnz+kJIdPTQDk3Z+DNwojsEZ93Hn6KPuEXkrPzQFgE2vuMKC2VrOOsm8C/YsIeoYI/5yG6Da3 /7cIbizyAwaCdY63aXWnSg92dTa1ZixhvxfIDcpk2e5NNBfdi6JJlFIo4Uo4nwiSCzovwD/VJ2xs 1/OxbSMlfezwl0Z46lFYv1Ddx1rGq1FV9IP9OhLDMPVJJRG+zogxMXM9f//i5gg16OVw7iBgNHCP Xyf4LZdE7rF2oz9hkO86JwaY9rkjDSAaFJn/YvS2AEpvL4G6bksDFXr0L9sV/eWyVmof9lSpx8NL 7PSM2XJs8qSdSAJ2ECXDrEB/sk9KvhQ0XWo6JTyWe9ozIQ2Zgzyj9vfdrDgoPkY+qcEvkOK29Uss Kc/dpSwtOVjW312GCrVef3Xn87hFmdR1o/5YMtYu7prqkvittYEQM0uuPR2VH1oBMkFfo4Zs+7k5 Lgob+rzA2ls3uPZ3IYg7soA2X12hyaffKYuML+eTnh3fiZ7ows1WZo91bcW5zxyHu5LXxmn2OdWJ YSyTs5yg7CZzz+rYrxqmaaHIm1E7fdg3pr3/02hHvPEJmulayfGqxuD9yakKSd8sHFOXVQgKozKz NIguBaUAkf6vU0ylKOXYjv2FZok/VrISbKpdcbD4M4TZ+do9RnzXJ5cBc0jtIyXt0AoPpUp/Xpt6 tp3Hf+mig7OoxqkbKFAr8jq9SA7c00NwVJJ7NNGFBhAK14gRZU+hY8EWv0OB2NdYMJzILKXmpfHj s0t/n94UUi+WTc1qo9wm1oUREQmZZMHWC5g7ECjuT9x+9cyo0DjtpWgsL28/5HJ1hY7SXZmc3ZN2 gqkczZOm4YgINayQNosxqzEQy0640A32JGugEvNulVy3zheMUpzXQbzz4Zo60wlPXAnARGN1ifsO qHSSC6+4mIkHFykHbXVQKD5gEzjfh5BGFApzIdrpSSoAboTSHtPNVe58JLZgyD1B56i4Lqtv/pwp GeSg2/laN3/2JD6bOIFPnP53H0pfitoySM3EZwUPyUUx2/SAcW8f5/22/f70QS+Nb6XfVq8SUeSu CK1+FiP0Z5zytgDA87a+5A2hEK2j/395FXIE43pMu8sey7pG9WR8S30QoSk36lkimIXeL/H5qutX 0rTE41ZWzJ+NvGYi9nKeuCmVHSkadNRBAV/7f7wgBq6GuWe2SXYisbR3hj7ozORjIiNlNUZQiPA9 4ogbzspOeDytQQoEiWqCPDUpBQqpYLnZMoM9g/y9LLcgpSouZm5EU7XBSGR5HH4c+yG4jNP+MU9l 8H3/4NSVjNW+/P4RY17DSYu/ig0Dj8KKQqcTfFZBOq+6M+1pC87IPfEKMZ8X5FsXlXhv60YA3ctg AoaeJ/riYKtRCduUUcMekMuFBPiof3lfAUEc2nXExceG7xcqLUb8LmXtwt+gTBkEMaAJlTf5xtcw LRDaw9hPJEv1JKGT3IfYRw6SM6nFovMPvHmOJvvBkKdkM6zYVNI38WHArIJSG6FzgMmc6usOtwj8 Kw5rzqt9dH1CO/IHCnQXHqIcfnJbqIbL4oZD9HIrujTtjhq/r2SGqdsZtmAipS3Xud/CyzZ9gTTc kXua/7Gy6XsykO2u13UA7lXzn0aal2ykI6c1fNcybXYaz9UejrObN7QIBsoeVlmaju1eHAy9SPGG s4KhAH1+XOD818sFpc0mnYsxGdmBLs+68hZ4Y7jclSwYGgJHsfZl9NnZ0riQnLF6eS6aqQIUvRjV VpocJO4LfgGvhcoR0jCElVBGN1a6xBeWey7Q0HXHe/fJMAJR662dNi8VUEADElx/LcP9o10NWpEg Mn8bpSSLJVBMs9g2+sE4W08uq8pwwVh8Cc+wUjFt6toNzQEnK0uG0vi33yRdSIzkOw/Pkr/7BAbU aBligPlWsGvurO2vui4DoF7VmnI+wMJmO3CbtLP1AND98evHRmT5isESxPRZ6zt3aRz2St/vnyWu B+zSESNvtvFgdB6Fs/R7EtkTT/uGBkhY9tEOckfDbdu9mTBPjav+zspQ/3D5zjPcrDR3lxDJtE6A d+12lF8f2Fwe0D5x1H075+JdwDjKikQV+/on4QplbmRzdHJlYW0KZW5kb2JqCjI1IDAgb2JqCjw8 Ci9MZW5ndGgxIDE2NzQKL0xlbmd0aDIgNjczNgovTGVuZ3RoMyAwCi9MZW5ndGggNzgyOCAgICAg IAovRmlsdGVyIC9GbGF0ZURlY29kZQo+PgpzdHJlYW0KeNq1d3VUlFv7tqSIdCr5SIcMDA0KSEuP NJIDDDnMwMzQAtKgICotiLSUgoiAdHe3khIiLSUN36Dv+b3nnPfvb82aeWbfee1rX/de6+G8BdET kLdFWsNUkAiMABgkJA1oaukiXaAIsJCAGgYKd7QBhEFCQqLEnJyKKBgU44hEKEExMGlAAuMA6Nhg sKkoQFhISIqYE1CFIWAorNMWsPYGtGAYqL63KwwM8EB/LyBINEbAGorGumEIe0cEjBebooh09UY5 2jtgLmuICAhcVrrMVgAB6lAbZ6Qn2tkRgCJsAXWQFgjQRnpijY4ADxIBWMMcoHA7AGkH6MOMAQM9 ZV09QFVXxwCixwvCFtZzd3VFov6DRVFP30D1NqAkr62vDMAMbwOqBnr6l7/6MAQWv/1tQFsf67/s gw28TNdS1pfXN4EogwUv9wCAAQ8YCu142fZf2LiwyID/QsOm2qGQLr8bADwOGIyrtKCgp6cnyN4d jQEhUfYgV/hvfPoOjmjAE4lyBrBPFAwO+02MO8IWSyfGAfanwOWhAJqONjAEGnaZpIL843TBUolN wtox/wcMSwTmsib8TziAhsH+0cYBiv6dqwmBaAIuUEcEBoaAImywgRgoxh0NWP22Yb8wW+4/AGGA ojsKddlD6y8X6v/a/AVdAYndmRnc1w/q+e8TgyLc0T5/4+af27ZBItCOaAz6T0UYYOcIh12iR1+e mSPit01LXltNRVlPX0ATKzyEgBYSyw4ChPHC/I6+rCevpCkNSAqJA2ApUUAIK1JlhK0i0sUFixpN fEmfkiOWJwwS5S34P7p2RiA9Eb7/a7dzRNjaXTJv6+4qaIBwdHOHqSn9JxprIv6vzR6GAYQAmBsA 87JxELxs91stl2bwpRlLg5+vK9IVsIPC0TA/RzsY9kHsi4Z6wAAMyh3m5/t3xz9XxGAJwNbRBoMV OnZYiH9XV0PYIQGpP2Yskr9c/5EAz+9B5cVOqS0SAfcGbGF2xILaSAxWEDz/f+bsX71U3OFwbagL jOfflP47DuriCPf+Z+S/Qoxgl2B5tJEoFyj8Xz5HtIqjF8wW4oixcfjD7B/7n17yCHs4DBAAi4KE RMSF/3gMLscKjtUv9g5yvLzCLv3i//JhpWnjjICh0YCo0G8XDEvHv4Bjz+ASNiAoL/9QVU2J/3+0 8ztMGWGDtHVE2APCYuIAFIWCehMLYQUhLCYG+IKx2raFef1WDCAIQiAx2BTA1R3jB9ghUcSXpwoW AgOCsEvbnyVYDBBE/20pDghifi//CQ5yOaS/9Sf0X7T/ub1+r/UwKKQzzMjRFntz/y1EC4pBOXqZ CmHFA8basZ+//pn/owHnf3X/t2wFBaSXr4ComCQgICyF3aWIJHYWwcJifv/ItflzkfwWLpbWv9aX UwzAYF4wG+IvY0ibOyFOieVh+f7KWQMFBJxSoPUiOllj9Rf4X14N1DDeUEqfZ4PJZQdWPk7hykZq 3pc2948PROQac4bQws9nPse969+zfXBvAeqv5c9Ipizf/cYQZBCUojXxuKCOjXdF/U2myVvRoZSq F1UsgEH3qqJUTf1RtHDfBeVOAptZQdVUBoFnzgi4ggYFp/KaoGCoZZwYqMXBXBzRxERBm+S/8A1b ZYbRdasTujbWUy/iROXInT7lWUwR+nGFj+Z6qdBsHB5dc1501fmO2jH0k6mGYWvSCBeC6qDkJyGN nMGeXWD6MvLbDWlPgK7YxolfSPQbP1X12l02v77q4CSnK9p1kQIvRKV+fsOxyTHqsjMqE1viovxx T55X8g6Dg9G6hhrXSVvmsmrQkVjWCfkkQfeNs6f9MQzFhagGkXurhrOoSZMdRgrpqVbfcJBPg3eC 1kbDQBUhSOpa+/hqyNXWL8CD1QSP9+SBkQiZe6H9qvIWjYF6hc+dL1pcNk6ZpkC9WQNebom/yrIr Y83fq3P0q6ZZxmYPdpDUQ4uKixL3ulUgjO5CSgosMhEhrFAZBaggOhBHJZVifFSiZGT4ZUJ+oRy1 QH5WmUnJIWQ+kMEpOM53NISEkMai9ETQ6HEa1fWkO/IKIkmLiaIJ3cPv3n56f00tKhwv4fjkiGHu XaWj+RURu33I0v4FbHmAIrWnq7IziP+2SnMQE+Ha/hleI+Nye9NM7jCYmnBwdxZcr5E/qKwU1Wu2 dMsTpXnXhxFnOOl+1ckIJFEwjiL1qu8952cipZh3b/rqfgbyZagNDwfgNj2+AtgrLMooJP5MVDVQ ko3/nOAnKGt2fuDPuHwhchZQWUkDI/Br4o0cLtpjKD1LP68qmGlKRxO+/MCl21T9BpFgxcjglTIn bxna/QR2d7KQg4Ni4h2dh5Laoy/XBxIErC25fOYPo/e1OOxcyCgzUq7TpTFSE3qNFSTITb3Tex5t qurckePwySnDxy2Gup3ZdddE9Yjr2f5EGlcouUZnDd+H+rBrw7laTIrVH8JPJcpmra5Tcu2/5kJK Ge3WS4jeH9TkqCa++MLv0VvHQvHxFM9ddwODb0YUzuza0CKgTsF1haXuei3pa7kGYsuvNT95s83Y wdSSmfWE9aYYC8oA4pU0juJlNfKt5hPhmwlzXS9Snk9X11yNfPEMsTvzccxKZ+xVrtqRH7Byxybg 5kXFA+b5XLAPc7e2M9N30qLnXZ9jujluV8gWH/SR4RzYrmtPum1Qa+7XEwqq2r3YKLjZTR+ajOMB Z3ikj3Llz2keQzxk+4T0Pt9XFJa5eCETbZkC/qKebOE57FjOubUygetXHm7oJdxNeE9GvQNM3RsG OryRPhdkl1lOknoN970tN9KHycVnMTcC3iJq0Nai/aZi33LUNp7rCEzGA9EY24v27q7asTYDgZgK R2+8CL85iN47yXDZZN51y4ucQ+j4TOf2cJnhVJbHhpBtQzxGFbYrQu0lr+gG8ocQ/qSWySP5/tC9 i4vd5WipdhvG050YLdeE9mvNT0nZ2X/4hM9fdv/qgmkNFWK+wmgMEm5r3nFWIaZrREOdapJIOrmW E+0Wql7lXFhiip+tIgYrJIBz5z1agc5NF+bSqRWwaGSw+x9l++PJIPamixYM37y3E7j5QCsp28ol Nkui9gb3Y8nU9DeSFeidrHUl2+42y+ut7TkpYdPLEf3KSuP4Kv3DLjJHDem6gtHwj/WfAmjSr3dn htGLlyQdDtrfmbJZlNmHFSqfisuQ1BCqJVpbFNnatNLImeahcX0b4pbYqeZO6csKjC14DHIDlx/F f5cUmRQ+EolJpvq2Se+loV/0ieVR17KJWwiNYXGqdop07McIMZ0ud8eNHszhDV0hnWuPAhakvY/g 2a/JXz20KdCMe/CxhL6hqao3c0otpSJclXvm8Yu2c3kU/k/Va/74IPEcxcIPcyYc/twIAF5yfYPK LMYrp+qzTZ/1rhyJCZdchjbTK2JuRmPz/fLXUJmECSfGssDPoK4r0X0imxpurfmMLUiijcJ5fjqB /LdR7DqZc+6fT0mncuPYlcrWdWbEN+L5ndR2pPCcHALPbXnvWNYTSwQTKqfiCspz78wDblpbMVBr TDil7IjDbdOQX0xmkWEvZfu5wOH1Y7pT4obM3PkipjUZwWrv90DD3jT8kztXjMKy1FujIaQKqCg3 sgRrz29thle0RcfvFT6Vs81+/10nAL6P4X8fKxO2ZeAQ3NcOaaPd6O6Zld1mAqWyjVUe83Uq+0WW DPoUBzaOBqZJvGu6szMvrQLczO0YcMe7auvX+1rkxumLKAD/56i2W4BsnXsriaU/mKndPBh+IzZD 5W5CMSrV/VOVzBlsPm8UladCB9WPlfoUj8vN3miUvHS32cSUV1X6Gdpc5Kl0c/9keG9NasqWtsk0 mq35fPV+W9lsbVlMwJmap/gC0D54ullRxZHHq6nMJ+uEeMw6HXzxlS55wkb46PRgLull480Pa4/6 143ZXQe9BhdGiqWeJkS9PnkqElyfRL9r0Po521lnijmTA4akpZaBNirNKi+rdkL3rj8xi1SNv+/h HKoYRSEPSmUs9QtTibj6a86L9ZBdOoP0AIS4VlPeNJuiLtbVAFn4yZcg/iPtIB6trhinjro1KNSj ZIXxqnyCeIZv33DQUfPovS1eT6VIACH5+a0L1YlzTiL8oocR+jYfGlYapL+FS7XaxQ88jAu6eJc3 5R7ibWkQs2nWwkYuW+Q6SYenRHe63KAuRUyLixNNrjDUoOveuunTcPcrbyTRp5YkGOF6Y91z3gS1 QJ+KGYKIDoOhlaH+shcJkVMETodc4sTrBy0fIUG339WUW+vIlBAAFypGB4PcmdrlKepT6fKU5Hs+ Cl/YG/UO8u40Xnx/NMi6nf54nQX8SBL9dCyfdTaNqcmL5mE6iw/fGfjDdU8/Fzy8CXuQkryBMoVI 3+azVwB5yQNF0pEndB88JCCL2saWms9M5OxN05XzJl61PvUEiK+1uS/qeUNmBh8LgjqsT0IzFMdL k9lkJ3R1cduydgw5esr1GNbTxFCnvD3om2gw7EBUEO3wgtW5cHcx6VVzNEsWRIqte7ysP0mlV1JG 0mibqS/g4mWuPb49y4N2pvWsmbqSwARNKKSw1lRaI6Jyh6JXi10WqO5VOIhSGQO11OG0KmvjcVLA IuAFljjiM7VfRrhMnz7dzYoLn5ENrjrvzAMJFbzFrSOvETBeMFopuPntXEiQjit94N5iRtfCLff0 cfmFkE9h0iiCbFwc/qWF82fwxuddO+bJsM5atGvUB5ZKR1wwb6f98GK8twZoPqioKOyc2TmD+O5X HxYjrtMNE0kyEZ34ZgLQhHopuPKZ2+fh8wj86EJdni99cF1j8iwzQfHRJ98edPA2IVMiiqgldKxy 8et+bu2SnV+ZMyMqgKzWPS6rCvwWPrX1k4uAB3f5evdtm5pEE9EDZBSpiZgL/+0RRbcBARl80hgq pgU6+jeRTzAZOf4TRIMtJgI2C4d1zDOUUrlEJ/aoX/VXPTRJHrzhUo9MDU7Wy72TxmGUxbWS0+nj YLy9ndR77bt/4M2KDur2TUULZ6kC1/xfTD1KSOTQRFgIidNnrjTWMxlbYXZm1Y+oNwFvnqw7acKs ZPBmZ45uS78LoE1tgr85rU8cuXZNX4rv18oeXtS3DWRQtXwoz3wbYuo5f/CgxQ+9nNniZPZEvHOC voGCT5nnjPAbL26vV84r5bMwTBAqGl3vDwylvu0Nb/qlRzSUhtMeK51ASvR6wyNN34RnevCkKTLj iUYC9w+RbLe5IRyzuZjk4R5kC2rpBKx5Eu9p9LEQuodPqfXqocYc9CG+rydP6mBytLK7omp/g/4D SbacsFgBRqqbdboPoRdL8ZtQI/sHxO+yxTWb8Mw/9hJ9uEqJ+xyjF7YXuPEsKqSFndZQXTmEyQNt lH52w+wYNitTaVxzYBEvzOAG1vfHJ/A4UXvbKlYLceZnsxLJTFy9G5UaKFOopwJTcP9k+kJE94ob yxflb081ahYlgnbyCCALea/yMp6pX1kGhFf3NFnu1WQd8EEOWxSrRWdCBGVrF4xsn5b5+Wyt103U M19j6kv0+PWqmcom4EafTk3ZwSCsQjz4M+rxwmGfsuq+tdKUgyTOcHGoP6G5gVkp/WFowNwkKzLu 6z6FeiW13RxAenY6LpecyLJAFzJ+i0iYaBwOeEcehZ65v8YYPULWxYvlANLUV3HR2tRPn3gUwdVj znvSX/24RdpA6xFe/HBGjuGK0qesUInVeBWWVYa77TVxjpILt1vYKzLs0hXNnKO25JrBt7oqMo59 UtmDK73tGcJR7Fenn/7Qge0pVkS1PwA1CM788NeLM6aryFgs91AnDw95LNICosgftv3QSz2VNRxa KZrcTrs+bhJu7WGCeTMm98ynmCxD0BzhGCCqZmRINt9NNcrIwnZ6x9XCLJdmPmc1M2jWGp8HTRlu 47xevEEj9eou9U2oZNNoI04zZRDV0Ap1s1d+SdYHvmkyeKKyn+lZpsMSu7tEVJwluMku8e0GbYru S49k3ZcW3XD14XcVRq4OoRxzZcO0TBYPxu61yzfZtFyFqUeBme/cjTHBKS3yMmUDmS92//jQVKrc a82nEWd4GpkkNEZA0szum+7cMXnhAxQmu/YrcFVqGlpzq8/FFKxQyM3gsWR0LdssMuw+duN833vK z8CR6UejULK2k0+kIop2ukUVoTir1qFBHU2W9/1/Jvlc/Kty4rFzOZqA66VFeN/X5p1faehD2m0H QZGjrKswa/b07KUf6GkjHndq8NSvFh3fJlx264R8AnZCmzcqqBWyO68nO+laJ64hH5elZilpbvPq 1BcazRZ1DrCuBUU/8ZlrwiddOircKesOpU8niiBcvA/dfh4X8bGR1/Jj4MWcxBcq5/c1MeF20bFM EvzgiG9kyrSq9jAHybWWLDrwdqTF+nPdlaoIJ/Au86ZeMbv4UFLlIN3hukLOw1s7ug+jpl97gKaf yG9qW97qflEg6GnlrvWsL0t0kwtliCKFL348MzftnMLUuhuHR0CWJaLJPPNEwACTseCtq87G+WMp Tqhf4YpZLVNaj0arjnin+cuSHjtwEbiWRqhK7qgGsXLIRndI2zB5V8tQ7vyAKBqS724w2Y6BvJ2q RuxHJ7L15EkOktrv4e509cbKbjHthO7kzLUcnAn4gcboSYa03VSdZI9tGN6orBQKTYUpIjM4tG24 yojCPvTg6qHpVWy0anfWYGHJjjsw0ZuSpe1jn71Fec32O+eFx071Io1IVIrFCBRkz5qYCviKOBEN wV8/OKx9WiQNo3t2caDCV++6XSeW1aJGxq9US3S4pdhh+aS+vCenE/ejGYmwECkEf5JxSJKGFYHp uU79ie3zuQHjKvs5IF/3Wr6Rp4+W9eI66beCEvixaOi0d7vvAKeLs2lAf87yYW17rkq2WJKLa9sA qIp1pB7UNtXta+lTU8Xk3eRtZbahR+PzEDLQaJVuudSKi/8jSP/wJKo9u3+BbW3zm4VIfIn1Z5E1 g2OL0sFhsaE6KmenL7V52cgjLjL9IjEKTycOYgZzUKf7jXoph1banbFiH9d6Ni3hYyQTK1Wuct5z hK5mseQ+VOYriQKXreRXyJpS9E5XVRS7K1vDRX3PDvPZgyJhYGhofE5QK35igXw2WGrDpl+0D9Qx 7MYXYUIm/hEfj/grKV8vv1Hhlzm9X3xOCvf1wlfoosaorj9hxCvKIfDab7M63/y0UFDLedooIpWB 5yv3JZBzhVd03nmIx/qkHA/9lNtjsJGJKf1pE6R/73CacP0BiEWmK578+lEhqHO/ojrexy1M8P7P 0PsEvHC8xlf402xMVKcrPr0EvQnbZ1OCJHmnvzZp2DIJa6osPNriu/2oPKjatyyF87Laspeba2Lw t+DGWZuPXkRzdbgd+4r8LHcs/mHxkVQtSNG4JXnTkBv+qT0nTPRK9ThnNdFL31gn+t2sfMPu+sqF +jmOsDj36JT1ms61wI1YjyqhUGnsC+Oszy6qArmUNPiq2dynbgjW2bcpC9Y7LRSCdLnngeKC102l b8tKTdx4QczY0jP6Zn6FvqZTKp9e0vOmycsNSvKIBXl3BkM2Slpjp1dT1C4vjGoM6xMYNlrW2A0+ CjOFOP70knH73ieSY+p4zZTqrno6C291786SL1fOAIezLtny1hyRELMVkVzFj9q3DykFmLlXuE8z 65gnURVxwTMOCIesu/MkiQUyoqUGS4RjPq+C6vhyx5u02om639EXThwGgk+ZLlRf1tJxqzXT8Hp1 z+bInC7cP9f4zCzIVAomnWHM6ePbAm+mei9uQ6Zm44HOnMQXhKH5dYvdeQ7Duu8aiQ217RX2YWf3 olfXLAqRc8GoLS1NFu7lzcPHZvip8WMCjyMX3/tGq+zeYbkqHS7ZYGYiH7ltv0e2QXpAS1pGyk/D 3MNorcBEIfSrJwWizXrRk6WryEBqenp6PLBS2LB66m3xQ3A9ZvWRvSk9ayBP0Y72avE0jZ6kBW3T hShjI9Vb57tpT7SFY1n9V2JKT3D5OkMJfQivjTF1LuVauWVrc7b5HN/aC6IuFwVpE8bat1KixTUc 3S2HUHM+qx92BjrrO6zIO/3XPN2l3EaJ9H6yruQ3fH5FEpQCzkpLmJQrVyY3Q/+C775w/I4H/WGg e0eLLl6sOSt2d7K1eHd6oKCQJa+8DprefzIT1aQsOfEMg94qVYw7NvPoIe2cDC7fV2twmtzZllrp +jGWl5gAquubvjWzx0fcjTYmxfvQ2Ojx/flz8McyNenDX0rCREtV+VQ+v2Q8jlW/DWV7BsztZP/q ffCs/BH3UVb7WVxV8rSUdahRnnR8Dmn/mVbXkAymfG7AmYq77trQE9pRGdCBQ60nYpOlkLhrD7In n1RlIxMmlUT2thSI5PB9o2Wek8VxERn6eaL9VX7aiX9x71kRzRsVJ3kJT/8ZTw3Vl1tFpCENLjIM DeyFFbubz0DmWompd0NI9MVjo8YTTQs9928qVtye8NgfzTzLy60Q7TF7KrscauIrH5z9NrU6J/1A /3agA+5OXOjmAMMXu5ymUd7W0v2COFVYxcjrRw454SR5W8y78IcllmxWWpLkw0Yc998WUT/tE+Si l/2pFTyYm5f1S3bLiKunj/QMNfDmHp9Qp9a9VVgqx7XHEXWZzvtvOc8Ncc1Z+1Of8MC1PXJLVzfO BSfpL7j8yG81GxtI8SaqKsjvx9LvqVttoL9W8AkyNM4KJo3XFx/epS6+t4h0078Z7dvUtk0Q5iTA ejUZ04XkydFnaBuaoPz5nv98WrXRrp2ydcp8AyPtP8ISKtBi2oXjPEHxXUq36UTD6B7CkSukl+J4 Fr9strsAlxXnde7Xx8My2/alo2uPs64EVBdfH7/hr2FdpfNosVyLvXz0ztVVSrOF3P4niwmxVpE/ my3aiUZihj+Wj9veSIlU5Uz8Gjm80cUicSMyTukHy9cxxzk1nvABDzYZOFe9nKKFE+KFag2jwyq1 LietX/1Qx1Kt/b3pjMPPJdvrA6V9a3Vgujt599oePnibmu3fjOMaUSDz9GFdkX+n4cwIARRxHPzL iUAvzUi0LPNrVvv3s6BHO86TBBKafO8KOO4jXwUzZtCngLKsQKISa988kyUpeQre37wxajliM1+e uvTZtcKcvPuJpazwDdrm9iI3TZmO114vDYT0S8eSYUr74Sl9B65kjAupV5qWIefaNQBcGPctzVyb DmzuxlAR17cO79W8L9mJK7vvX6eh+R58rIx74j1BP0OhIS4AjicUjvwmdRZxYAzHD0hFvVRSO5jg qJ/l6gDqG461o72JOTls10ecR05jVwbGaNeD2HXd2VjPKIV1Oz1v5og7LStB6AcVK7h/aG8iy6mL 3Zn8lZ9E6LgTxpXz0cfcM9VtmeCpUeG1s2QC/2LLbUa9oV+xmXX8bnytIiMnILWVqraVZUc/Pjyr NQaexxbDu7x8p7PLAvhQ2lpUcRVyp4Q47bgjKIqzfVpeoFKeBOfBF7+kngcGiI76qsl3+GZXcpsj /ImveJtJUGV6HGJupg+pK/TtXu3ejjNlK3t6e5u8sOsWw/33yU+6d+zOK75y9zfM0hSqnqZrTXUd YnAkJMMuUs4hUdLuFEZg+Fmb3bTwdM0j5ZvC5t+Glog6ebUMAqHT9dq0L0uS/WmTdBRGKjim15RO zhUtk8I7g3h4jsfChVS2tUNJq1N+OJE3vqwROtkY10wlDXg14G1wP75PSZe7tp6tNH8Qb+UYvCMB AW2GfhBJF0GzzkP2fLXAtiXFVbHWVESLFCUAFDmT0UmoY/olFaeqgN3iKY9Ito12a5ztA9xS08bb Haoda/mb9xVo+p2oQFGrMVQVWp5bbbhgjmPXQYxxH/WJFm1JTrYz+51bGnBdgvFPabjN9V9kzTKM NwgepRzRkUONVYg2xRHgncX1zyxtAR88djaeW4WduN9op/OGhbHlWGeIrXVKVo8rH+CUmhy1JxrE huS88JI+ePYKOu6ZtjH4ASJA586XTmBClwFaXgAM0lVW3k6l+XD4p57ebrYyYXJjfC5bHeeIzFMQ 9X4JyOmZZZGQn76lOUFQHih+P4JPSok/9KyVuKbIvCVRwOK6EeY3DG8pKWxsfGRf+ybNpKVRzubu dZG5jBFGP3otS07e3LP6bana84rPRFTwkBYey2m56oWHb5m82mRPF5Bf7be+vreENpasmU3WmvhF j4xaMX7sPdujePleVw5ip9GiYgYVih2wl52dzKppK9xhbKvWbcmtbCDr4jO12xw5umWLLFCgVrub WU2lZXgWrQeds9LbyzO46E5/f+5x5doy3mRNgZ1Sr+3tiNNEtOd7qvEA3KiTU3KOsOYKVtIR0kpD gCeHDXVViUURH3pzPN/QkfIaqYvzaIQJCy7TPKlww2I77PGRqMgz3/v6V6yNyVcncLOW5PPXLJkL yf2UzDXu3KqgObOOuzA83eRUWckXYZkpc51+ptNhgFM0PL97j1XhokJBlCcZ/P8AhORPCgplbmRz dHJlYW0KZW5kb2JqCjMxIDAgb2JqCjw8Ci9BdXRob3IoKS9UaXRsZSgpL1N1YmplY3QoKS9DcmVh dG9yKFwzNzZcMzc3XDAwMExcMDAwYVwwMDBUXDAwMGVcMDAwWFwwMDBcMDQwXDAwMHZcMDAwaVww MDBhXDAwMFwwNDBcMDAwcFwwMDBhXDAwMG5cMDAwZFwwMDBvXDAwMGMpL1Byb2R1Y2VyKHBkZlRl WC0xLjQwLjE5KS9LZXl3b3JkcygpCi9DcmVhdGlvbkRhdGUgKEQ6MjAxOTA2MDUxNTA5MjArMDIn MDAnKQovTW9kRGF0ZSAoRDoyMDE5MDYwNTE1MDkyMCswMicwMCcpCi9UcmFwcGVkIC9GYWxzZQov UFRFWC5GdWxsYmFubmVyIChUaGlzIGlzIHBkZlRlWCwgVmVyc2lvbiAzLjE0MTU5MjY1LTIuNi0x LjQwLjE5IChUZVggTGl2ZSAyMDE4L0FyY2ggTGludXgpIGtwYXRoc2VhIHZlcnNpb24gNi4zLjAp Cj4+CmVuZG9iagoyIDAgb2JqCjw8Ci9UeXBlIC9PYmpTdG0KL04gMjUKL0ZpcnN0IDE3OAovTGVu Z3RoIDExMjkgICAgICAKL0ZpbHRlciAvRmxhdGVEZWNvZGUKPj4Kc3RyZWFtCnjarVZtc9s2DP6u X4GP8XYWxXfyrtc7J667rEnaS7Kua5IPms3a2imWT5Iv7b8fIMmW7cxd9vLBNAk+APEAIAUOCUiQ HAxwwcECNxIciMSAB6E8KBBeAFcgbYKboBIO3IGyScQ9aJMgFryyIBCVaFJCSw7V0KImIdq0ijZR Dw1yjhoJLgQIriVwCUImJhJoQiqHSmgCjxfohdIIRpPaoo94kvYyevUK2A2wt8VtAWwMdxIZXAOb ZPUDvH6N2xG7/bYKwD6k8xCxs2JZh2VdgSZcxK5DVazLaaiQWSO4DLMsPS2+wl2CAoNuWS8eIlQv UY/cI1hnuT/v02+fcU/E1jiwiY7R4+U6zx+OIWWDNMbG3Lv/G2p1zM0BdILEgYI1wQTxpIsSZhAT 0M4x38iW5qjCPpTF9CbUcIeRG0+A3YavNXTW9iJ+UoVpnRXLH2I+IM2Te2kN/uw9pnVBQ6Ah3w4F DfeJSuj/aSspt4DZILpTWElYBrEFmmnOY96te6nQOtbguI0dVp6IRYdrR0IowQmbuNiDxOxgIu+E bfBYci/9tRrtaJ+NytLJnUQnmH0XS7CikRqJJxuXxAaMFoRwCj0inDStr4RotY3Q4Lnp9jtZo9tZ l4Y0kLXZ2CecpnyK7fGaqpZM90S7Wauok52dVqaUwkDuzmVC8x7RanRS0YfDYcnJDtOjW4T0FHzp G3uOUtDsYgqIKBHHW6ywZJvk6Ya+5DTrpJ7GVuKl7RA9tt1X2uNaNRqqRzV7jnQfdt4AugTjUE3L bFUXZXsprtJH3Ln6+eOby/MfLy6vi8d0ycXwtMhnCMjTOT4NLfK0eRaGyhoYCodPl7b4mHFp8XkY VVN6HoxD7Fm6+ilk80W3pANpb8g9rs7rNM+mo+U8D5BE7KYOjx8xfz5inzolzADaWKQlXb8TNmOB LVjOClayp0HrySRDbcF3n6K/I3h+dT2+erclmAyvw3ydp+URjvi8DoXHylL0YHOxx9Hvc/Qv4mh2 KUq+SzFFghn7gxXLwFahzIoZq1jN1nts5T9hOxp9fns+3mHbunSErHYdWenoPRT635IdcrWhq81R uoHY7XHTz7m9WU6LWbac43HZly8BPz70kcJ3sYsQKE/xAm9ZivWTUJ3gv2pDiTPHcuTCWYGjwtpp Iopzz54enocR3V7/XjdLEqK/p2kVmo/G0buxF3364Dcf0ElWVjWRJa8idpFuVhxD92s2qxcV9QgN dkOSuoK/zO733PpORR94pg49U2bPMbt1DHuY/+7Y8eI78Ms8jxjfc8z0jrkXOEYtTkU9zpo6lYi9 y2ZV1yEcpPz9us6zJYGbw6nLaszT2dvFxs5GM6uxVnnn9IiawGbWdUZizyG6hnj2ybiYDm/qtKwH 0OzDySLkeTF8Ksp8NgDXylboOLUPpl3udhS+9Z5dZI9ZfWBxF9j3RKFCnHDPw3OWYh6KedTGadPK bWOxYdD5LvyG3jxcFrPAfqlCH7b3q7AcNYfD9hn+E7Q51S0KZW5kc3RyZWFtCmVuZG9iagozMiAw IG9iago8PAovVHlwZSAvWFJlZgovSW5kZXggWzAgMzNdCi9TaXplIDMzCi9XIFsxIDIgMV0KL1Jv b3QgMzAgMCBSCi9JbmZvIDMxIDAgUgovSUQgWzxCMjE4QUE3ODgwNDhGMjQ0QjUyRUNDMkJCRjdG REUzNz4gPEIyMThBQTc4ODA0OEYyNDRCNTJFQ0MyQkJGN0ZERTM3Pl0KL0xlbmd0aCA4OSAgICAg ICAgCi9GaWx0ZXIgL0ZsYXRlRGVjb2RlCj4+CnN0cmVhbQp42hXLyQGCUBRD0eShjMqkIG3Rg+3Y iKXohhrowTXevzhJNpF0hEL+vsgwcqtLO5DhhDN6DBhxQ4EJJTpUqNHYRfpfvO6pr37/Ure4Y8YD iz+St6f+7n0I1gplbmRzdHJlYW0KZW5kb2JqCnN0YXJ0eHJlZgo1MzM0OAolJUVPRgo= --------------4qicfcop0idtQJYkG05sMt93-- ================================================ FILE: exampledir/test/test.mbx ================================================ From Message-ID: <55a23774-4da7-057c-77a7-ec390fed487b@posteo.de> Date: Mon, 27 Feb 2023 12:05:46 +0100 MIME-Version: 1.0 User-Agent: Mozilla/5.0 (X11; Linux x86_64; rv:102.0) Gecko/20100101 Thunderbird/102.8.0 From: Arne Keller <2012gdwu@web.de> Subject: From encoding test To: arne.keller@posteo.de Content-Language: de-DE X-Enigmail-Draft-Status: N00200 X-Mozilla-Draft-Info: internal/draft; vcard=0; receipt=0; DSN=0; uuencode=0; attachmentreminder=0; deliveryformat=0 X-Identity-Key: id2 Fcc: imap://2012gdwu@imap.web.de/Gesendet Content-Type: text/html; charset=UTF-8 Content-Transfer-Encoding: 7bit

>From

Another word >From

From Message-ID: <55a23774-4da7-057c-77a7-ec390fed487b@posteo.de> Date: Mon, 27 Feb 2023 12:06:56 +0100 MIME-Version: 1.0 User-Agent: Mozilla/5.0 (X11; Linux x86_64; rv:102.0) Gecko/20100101 Thunderbird/102.8.0 From: Arne Keller <2012gdwu@web.de> Subject: From encoding test To: arne.keller@posteo.de Content-Language: de-DE X-Enigmail-Draft-Status: N00200 X-Mozilla-Draft-Info: internal/draft; vcard=0; receipt=0; DSN=0; uuencode=0; attachmentreminder=0; deliveryformat=1 X-Identity-Key: id2 Fcc: imap://2012gdwu@imap.web.de/Gesendet Content-Type: text/html; charset=UTF-8 Content-Transfer-Encoding: 7bit

>From

Another word >From

From - Mon Feb 27 12:06:57 2023 X-Mozilla-Status: 0001 X-Mozilla-Status2: 00000000 Message-ID: <55a23774-4da7-057c-77a7-ec390fed487b@posteo.de> Date: Mon, 27 Feb 2023 12:06:56 +0100 MIME-Version: 1.0 User-Agent: Mozilla/5.0 (X11; Linux x86_64; rv:102.0) Gecko/20100101 Thunderbird/102.8.0 From: Arne Keller <2012gdwu@web.de> Subject: From encoding test To: arne.keller@posteo.de Content-Language: de-DE X-Enigmail-Draft-Status: N00200 X-Mozilla-Draft-Info: internal/draft; vcard=0; receipt=0; DSN=0; uuencode=0; attachmentreminder=0; deliveryformat=1 X-Identity-Key: id2 Fcc: imap://2012gdwu@imap.web.de/Gesendet Content-Type: text/html; charset=UTF-8 Content-Transfer-Encoding: 7bit

>From

Another word >From

================================================ FILE: exampledir/wasteland.fb2 ================================================ unrecognisedT.S.EliotThe Waste Land2011-09-01pandoc<p>The Waste Land</p>

<p>I. THE BURIAL OF THE DEAD</p>

April is the cruellest month, breeding

Lilacs out of the dead land, mixing

Memory and desire, stirring

Dull roots with spring rain.

Winter kept us warm, covering

Earth in forgetful snow, feeding

A little life with dried tubers.

Summer surprised us, coming over the Starnbergersee

With a shower of rain; we stopped in the colonnade,

And went on in sunlight, into the Hofgarten,10

And drank coffee, and talked for an hour.

Bin gar keine Russin, stamm' aus Litauen, echt deutsch.

And when we were children, staying at the archduke's,

My cousin's, he took me out on a sled,

And I was frightened. He said, Marie,

Marie, hold on tight. And down we went.

In the mountains, there you feel free.

I read, much of the night, and go south in the winter.

What are the roots that clutch, what branches grow

Out of this stony rubbish? Son of man,[1]

You cannot say, or guess, for you know only

A heap of broken images, where the sun beats,

And the dead tree gives no shelter, the cricket no relief,[2]

And the dry stone no sound of water. Only

There is shadow under this red rock,

(Come in under the shadow of this red rock),

And I will show you something different from either

Your shadow at morning striding behind you

Or your shadow at evening rising to meet you;

I will show you fear in a handful of dust.30

Frisch weht der Wind[3]

Der Heimat zu

Mein Irisch Kind,

Wo weilest du?

"You gave me hyacinths first a year ago;

"They called me the hyacinth girl."

―Yet when we came back, late, from the Hyacinth garden,

Your arms full, and your hair wet, I could not

Speak, and my eyes failed, I was neither

Living nor dead, and I knew nothing,40

Looking into the heart of light, the silence.

Od' und leer das Meer.[4]

Madame Sosostris, famous clairvoyante,

Had a bad cold, nevertheless

Is known to be the wisest woman in Europe,

With a wicked pack of cards. Here, said she,[5]

Is your card, the drowned Phoenician Sailor,

(Those are pearls that were his eyes. Look!)

Here is Belladonna, the Lady of the Rocks,

The lady of situations.50

Here is the man with three staves, and here the Wheel,

And here is the one-eyed merchant, and this card,

Which is blank, is something he carries on his back,

Which I am forbidden to see. I do not find

The Hanged Man. Fear death by water.

I see crowds of people, walking round in a ring.

Thank you. If you see dear Mrs. Equitone,

Tell her I bring the horoscope myself:

One must be so careful these days.

Unreal City,[6]

Under the brown fog of a winter dawn,

A crowd flowed over London Bridge, so many,

I had not thought death had undone so many.[7]

Sighs, short and infrequent, were exhaled,[8]

And each man fixed his eyes before his feet.

Flowed up the hill and down King William Street,

To where Saint Mary Woolnoth kept the hours

With a dead sound on the final stroke of nine.[9]

There I saw one I knew, and stopped him, crying "Stetson!

"You who were with me in the ships at Mylae!70

"That corpse you planted last year in your garden,

"Has it begun to sprout? Will it bloom this year?

"Or has the sudden frost disturbed its bed?

"Oh keep the Dog far hence, that's friend to men,[10]

"Or with his nails he'll dig it up again!

"You! hypocrite lecteur! - mon semblable, - mon frere !"[11]

<p>II. A GAME OF CHESS</p>

The Chair she sat in, like a burnished throne,[12]

Glowed on the marble, where the glass

Held up by standards wrought with fruited vines

From which a golden Cupidon peeped out80

(Another hid his eyes behind his wing)

Doubled the flames of sevenbranched candelabra

Reflecting light upon the table as

The glitter of her jewels rose to meet it,

From satin cases poured in rich profusion;

In vials of ivory and coloured glass

Unstoppered, lurked her strange synthetic perfumes,

Unguent, powdered, or liquid - troubled, confused

And drowned the sense in odours; stirred by the air

That freshened from the window, these ascended90

In fattening the prolonged candle-flames,

Flung their smoke into the laquearia,[13]

Stirring the pattern on the coffered ceiling.

Huge sea-wood fed with copper

Burned green and orange, framed by the coloured stone,

In which sad light a carved dolphin swam.

Above the antique mantel was displayed

As though a window gave upon the sylvan scene[14]

The change of Philomel, by the barbarous king[15]

So rudely forced; yet there the nightingale[16]

Filled all the desert with inviolable voice

And still she cried, and still the world pursues,

"Jug Jug" to dirty ears.

And other withered stumps of time

Were told upon the walls; staring forms

Leaned out, leaning, hushing the room enclosed.

Footsteps shuffled on the stair.

Under the firelight, under the brush, her hair

Spread out in fiery points

Glowed into words, then would be savagely still.110

"My nerves are bad to-night. Yes, bad. Stay with me.

"Speak to me. Why do you never speak. Speak.

"What are you thinking of? What thinking? What?

"I never know what you are thinking. Think."

I think we are in rats' alley[17]

Where the dead men lost their bones.

"What is that noise?"

The wind under the door.[18]

"What is that noise now? What is the wind doing?"

Nothing again nothing.120

"Do

"You know nothing? Do you see nothing? Do you remember

"Nothing?"

I remember

Those are pearls that were his eyes.

"Are you alive, or not? Is there nothing in your head?"[19]

But

O O O O that Shakespeherian Rag―

It's so elegant

So intelligent130

"What shall I do now? What shall I do?"

I shall rush out as I am, and walk the street

"With my hair down, so. What shall we do to-morrow?

"What shall we ever do?"

The hot water at ten.

And if it rains, a closed car at four.

And we shall play a game of chess,

Pressing lidless eyes and waiting for a knock upon the door.[20]

When Lil's husband got demobbed, I said -

I didn't mince my words, I said to her myself,140

HURRY UP PLEASE ITS TIME

Now Albert's coming back, make yourself a bit smart.

He'll want to know what you done with that money he gave you

To get yourself some teeth. He did, I was there.

You have them all out, Lil, and get a nice set,

He said, I swear, I can't bear to look at you.

And no more can't I, I said, and think of poor Albert,

He's been in the army four years, he wants a good time,

And if you don't give it him, there's others will, I said.

Oh is there, she said. Something o' that, I said.150

Then I'll know who to thank, she said, and give me a straight look.

HURRY UP PLEASE ITS TIME

If you don't like it you can get on with it, I said.

Others can pick and choose if you can't.

But if Albert makes off, it won't be for lack of telling.

You ought to be ashamed, I said, to look so antique.

(And her only thirty-one.)

I can't help it, she said, pulling a long face,

It's them pills I took, to bring it off, she said.

(She's had five already, and nearly died of young George.)160

The chemist said it would be all right, but I've never been the same.

You are a proper fool, I said.

Well, if Albert won't leave you alone, there it is, I said,

What you get married for if you don't want children?

HURRY UP PLEASE ITS TIME

Well, that Sunday Albert was home, they had a hot gammon,

And they asked me in to dinner, to get the beauty of it hot―

HURRY UP PLEASE ITS TIME

HURRY UP PLEASE ITS TIME

Goonight Bill. Goonight Lou. Goonight May. Goonight.170

Ta ta. Goonight. Goonight.

Good night, ladies, good night, sweet ladies, good night, good night.

<p>III. THE FIRE SERMON</p>

The river's tent is broken: the last fingers of leaf

Clutch and sink into the wet bank. The wind

Crosses the brown land, unheard. The nymphs are departed.

Sweet Thames, run softly, till I end my song.[21]

The river bears no empty bottles, sandwich papers,

Silk handkerchiefs, cardboard boxes, cigarette ends

Or other testimony of summer nights. The nymphs are departed.

And their friends, the loitering heirs of city directors;180

Departed, have left no addresses.

By the waters of Leman I sat down and wept . . .

Sweet Thames, run softly till I end my song,

Sweet Thames, run softly, for I speak not loud or long.

But at my back in a cold blast I hear

The rattle of the bones, and chuckle spread from ear to ear.

A rat crept softly through the vegetation

Dragging its slimy belly on the bank

While I was fishing in the dull canal

On a winter evening round behind the gashouse190

Musing upon the king my brother's wreck

And on the king my father's death before him.[22]

White bodies naked on the low damp ground

And bones cast in a little low dry garret,

Rattled by the rat's foot only, year to year.

But at my back from time to time I hear[23]

The sound of horns and motors, which shall bring[24]

Sweeney to Mrs. Porter in the spring.

O the moon shone bright on Mrs. Porter[25]

And on her daughter200

They wash their feet in soda water

Et O ces voix d'enfants, chantant dans la coupole![26]

Twit twit twit

Jug jug jug jug jug jug

So rudely forc'd.

Tereu

Unreal City

Under the brown fog of a winter noon

Mr. Eugenides, the Smyrna merchant

Unshaven, with a pocket full of currants[27]

C.i.f. London: documents at sight,

Asked me in demotic French

To luncheon at the Cannon Street Hotel

Followed by a weekend at the Metropole.

At the violet hour, when the eyes and back

Turn upward from the desk, when the human engine waits

Like a taxi throbbing waiting,

I Tiresias, though blind, throbbing between two lives,[28]

Old man with wrinkled female breasts, can see

At the violet hour, the evening hour that strives220

Homeward, and brings the sailor home from sea,[29]

The typist home at teatime, clears her breakfast, lights

Her stove, and lays out food in tins.

Out of the window perilously spread

Her drying combinations touched by the sun's last rays,

On the divan are piled (at night her bed)

Stockings, slippers, camisoles, and stays.

I Tiresias, old man with wrinkled dugs

Perceived the scene, and foretold the rest -

I too awaited the expected guest.230

He, the young man carbuncular, arrives,

A small house agent's clerk, with one bold stare,

One of the low on whom assurance sits

As a silk hat on a Bradford millionaire.

The time is now propitious, as he guesses,

The meal is ended, she is bored and tired,

Endeavours to engage her in caresses

Which still are unreproved, if undesired.

Flushed and decided, he assaults at once;

Exploring hands encounter no defence;240

His vanity requires no response,

And makes a welcome of indifference.

(And I Tiresias have foresuffered all

Enacted on this same divan or bed;

I who have sat by Thebes below the wall

And walked among the lowest of the dead.)

Bestows one final patronising kiss,

And gropes his way, finding the stairs unlit . . .

She turns and looks a moment in the glass,

Hardly aware of her departed lover;250

Her brain allows one half-formed thought to pass:

"Well now that's done: and I'm glad it's over."

When lovely woman stoops to folly and[30]

Paces about her room again, alone,

She smoothes her hair with automatic hand,

And puts a record on the gramophone.

"This music crept by me upon the waters"[31]

And along the Strand, up Queen Victoria Street.

O City city, I can sometimes hear

Beside a public bar in Lower Thames Street,260

The pleasant whining of a mandoline

And a clatter and a chatter from within

Where fishmen lounge at noon: where the walls

Of Magnus Martyr hold[32]

Inexplicable splendour of Ionian white and gold.

The river sweats[33]

Oil and tar

The barges drift

With the turning tide

Red sails270

Wide

To leeward, swing on the heavy spar.

The barges wash

Drifting logs

Down Greenwich reach

Past the Isle of Dogs.

Weialala leia

Wallala leialala

Elizabeth and Leicester[34]

Beating oars280

The stern was formed

A gilded shell

Red and gold

The brisk swell

Rippled both shores

Southwest wind

Carried down stream

The peal of bells

White towers

Weialala leia290

Wallala leialala

"Trams and dusty trees.

Highbury bore me. Richmond and Kew[35]

Undid me. By Richmond I raised my knees

Supine on the floor of a narrow canoe."

"My feet are at Moorgate, and my heart

Under my feet. After the event

He wept. He promised 'a new start'.

I made no comment. What should I resent?"

"On Margate Sands.300

I can connect

Nothing with nothing.

The broken fingernails of dirty hands.

My people humble people who expect

Nothing."

la la

To Carthage then I came[36]

Burning burning burning burning[37]

O Lord Thou pluckest me out[38]

O Lord Thou pluckest310

burning

<p>IV. DEATH BY WATER</p>

Phlebas the Phoenician, a fortnight dead,

Forgot the cry of gulls, and the deep sea swell

And the profit and loss.

A current under sea

Picked his bones in whispers. As he rose and fell

He passed the stages of his age and youth

Entering the whirlpool.

Gentile or Jew

O you who turn the wheel and look to windward,320

Consider Phlebas, who was once handsome and tall as you.

<p>V. WHAT THE THUNDER SAID</p>

After the torchlight red on sweaty faces

After the frosty silence in the gardens

After the agony in stony places

The shouting and the crying

Prison and palace and reverberation

Of thunder of spring over distant mountains

He who was living is now dead

We who were living are now dying

With a little patience330

Here is no water but only rock

Rock and no water and the sandy road

The road winding above among the mountains

Which are mountains of rock without water

If there were water we should stop and drink

Amongst the rock one cannot stop or think

Sweat is dry and feet are in the sand

If there were only water amongst the rock

Dead mountain mouth of carious teeth that cannot spit

Here one can neither stand nor lie nor sit340

There is not even silence in the mountains

But dry sterile thunder without rain

There is not even solitude in the mountains

But red sullen faces sneer and snarl

From doors of mudcracked houses

If there were water

And no rock

If there were rock

And also water

And water350

A spring

A pool among the rock

If there were the sound of water only

Not the cicada

And dry grass singing

But sound of water over a rock

Where the hermit-thrush sings in the pine trees[39]

Drip drop drip drop drop drop drop

But there is no water

Who is the third who walks always beside you?[40]

When I count, there are only you and I together

But when I look ahead up the white road

There is always another one walking beside you

Gliding wrapt in a brown mantle, hooded

I do not know whether a man or a woman

―But who is that on the other side of you?[41]

What is that sound high in the air

Murmur of maternal lamentation

Who are those hooded hordes swarming

Over endless plains, stumbling in cracked earth370

Ringed by the flat horizon only

What is the city over the mountains

Cracks and reforms and bursts in the violet air

Falling towers

Jerusalem Athens Alexandria

Vienna London

Unreal

A woman drew her long black hair out tight

And fiddled whisper music on those strings

And bats with baby faces in the violet light380

Whistled, and beat their wings

And crawled head downward down a blackened wall

And upside down in air were towers

Tolling reminiscent bells, that kept the hours

And voices singing out of empty cisterns and exhausted wells.

In this decayed hole among the mountains

In the faint moonlight, the grass is singing

Over the tumbled graves, about the chapel

There is the empty chapel, only the wind's home.

It has no windows, and the door swings,390

Dry bones can harm no one.

Only a cock stood on the rooftree

Co co rico co co rico

In a flash of lightning. Then a damp gust

Bringing rain

Ganga was sunken, and the limp leaves

Waited for rain, while the black clouds

Gathered far distant, over Himavant.

The jungle crouched, humped in silence.

Then spoke the thunder400

DA

Datta: what have we given?[42]

My friend, blood shaking my heart

The awful daring of a moment's surrender

Which an age of prudence can never retract

By this, and this only, we have existed

Which is not to be found in our obituaries

Or in memories draped by the beneficent spider[43]

Or under seals broken by the lean solicitor

In our empty rooms410

DA

Dayadhvam: I have heard the key[44]

Turn in the door once and turn once only

We think of the key, each in his prison

Thinking of the key, each confirms a prison

Only at nightfall, aetherial rumours

Revive for a moment a broken Coriolanus

DA

Damyata: The boat responded

Gaily, to the hand expert with sail and oar420

The sea was calm, your heart would have responded

Gaily, when invited, beating obedient

To controlling hands

I sat upon the shore

Fishing, with the arid plain behind me[45]

Shall I at least set my lands in order?

London Bridge is falling down falling down falling down

Poi s'ascose nel foco che gli affina [46]

Quando fiam ceu chelidon - O swallow swallow[47]

Le Prince d'Aquitaine a la tour abolie [48]

These fragments I have shored against my ruins

Why then Ile fit you. Hieronymo's mad againe.[49]

Datta. Dayadhvam. Damyata.

Shantih shantih shantih[50]

<p>NOTES ON "THE WASTE LAND"</p>

Not only the title, but the plan and a good deal of the incidental symbolism of the poem were suggested by Miss Jessie L. Weston's book on the Grail legend: From Ritual to Romance

Indeed, so deeply am I indebted, Miss Weston's book will elucidate the difficulties of the poem much better than my notes can do; and I recommend it (apart from the great interest of the book itself) to any who think such elucidation of the poem worth the trouble. To another work of anthropology I am indebted in general, one which has influenced our generation profoundly; I mean The Golden Bough; I have used especially the two volumes Adonis, Attis, Osiris. Anyone who is acquainted with these works will immediately recognise in the poem certain references to vegetation ceremonies.

<p>I. THE BURIAL OF THE DEAD</p>
<p>II. A GAME OF CHESS</p>
<p>III. THE FIRE SERMON</p>
<p>V. WHAT THE THUNDER SAID</p>

In the first part of Part V three themes are employed: the journey to Emmaus, the approach to the Chapel Perilous (see Miss Weston's book) and the present decay of eastern Europe.

<p>1</p>

Line 20. Cf. Ezekiel 2:1.

<p>2</p>

23. Cf. Ecclesiastes 12:5.

<p>3</p>

31. V. Tristan und Isolde, i, verses 5-8.

<p>4</p>

42. Id. iii, verse 24.

<p>5</p>

46. I am not familiar with the exact constitution of the Tarot pack of cards, from which I have obviously departed to suit my own convenience. The Hanged Man, a member of the traditional pack, fits my purpose in two ways: because he is associated in my mind with the Hanged God of Frazer, and because I associate him with the hooded figure in the passage of the disciples to Emmaus in Part V. The Phoenician Sailor and the Merchant appear later; also the "crowds of people," and Death by Water is executed in Part IV. The Man with Three Staves (an authentic member of the Tarot pack) I associate, quite arbitrarily, with the Fisher King himself.

<p>6</p>

60. Cf. Baudelaire:

"Fourmillante cite;, cite; pleine de reves, Ou le spectre en plein jour raccroche le passant."

<p>7</p>

63. Cf. Inferno, iii. 55-7.

"si lunga tratta di gente, ch'io non avrei mai creduto che morte tanta n'avesse disfatta."

<p>8</p>

64. Cf. Inferno, iv. 25-7:

"Quivi, secondo che per ascoltahre, "non avea pianto, ma' che di sospiri, "che l'aura eterna facevan tremare."

<p>9</p>

68. A phenomenon which I have often noticed.

<p>10</p>

74. Cf. the Dirge in Webster's White Devil .

<p>11</p>

76. V. Baudelaire, Preface to Fleurs du Mal.

<p>12</p>

77. Cf. Antony and Cleopatra, II. ii., l. 190.

<p>13</p>

92. Laquearia. V. Aeneid, I. 726:

dependent lychni laquearibus aureis incensi, et noctem flammis funalia vincunt.

<p>14</p>

98. Sylvan scene. V. Milton, Paradise Lost, iv. 140.

<p>15</p>

99. V. Ovid, Metamorphoses, vi, Philomela.

<p>16</p>

100. Cf. Part III, l. 204.

<p>17</p>

115. Cf. Part III, l. 195.

<p>18</p>

118. Cf. Webster:

"Is the wind in that door still?"

<p>19</p>

126. Cf. Part I, l. 37, 48.

<p>20</p>

138. Cf. the game of chess in Middleton's Women beware Women.

<p>21</p>

176. V. Spenser, Prothalamion.

<p>22</p>

192. Cf. The Tempest, I. ii.

<p>23</p>

196. Cf. Marvell, To His Coy Mistress.

<p>24</p>

197. Cf. Day, Parliament of Bees:

"When of the sudden, listening, you shall hear,

"A noise of horns and hunting, which shall bring

"Actaeon to Diana in the spring,

"Where all shall see her naked skin . . ."

<p>25</p>

199. I do not know the origin of the ballad from which these lines are taken: it was reported to me from Sydney, Australia.

<p>26</p>

202. V. Verlaine, Parsifal.

<p>27</p>

210. The currants were quoted at a price "cost insurance and freight to London"; and the Bill of Lading etc. were to be handed to the buyer upon payment of the sight draft.

<p>28</p>

218. Tiresias, although a mere spectator and not indeed a "character," is yet the most important personage in the poem, uniting all the rest. Just as the one-eyed merchant, seller of currants, melts into the Phoenician Sailor, and the latter is not wholly distinct from Ferdinand Prince of Naples, so all the women are one woman, and the two sexes meet in Tiresias. What Tiresias sees, in fact, is the substance of the poem. The whole passage from Ovid is of great anthropological interest:

'. . . Cum Iunone iocos et maior vestra profecto est Quam, quae contingit maribus,' dixisse, 'voluptas.' Illa negat; placuit quae sit sententia docti Quaerere Tiresiae: venus huic erat utraque nota. Nam duo magnorum viridi coeuntia silva Corpora serpentum baculi violaverat ictu Deque viro factus, mirabile, femina septem Egerat autumnos; octavo rursus eosdem Vidit et 'est vestrae si tanta potentia plagae,' Dixit 'ut auctoris sortem in contraria mutet, Nunc quoque vos feriam!' percussis anguibus isdem Forma prior rediit genetivaque venit imago. Arbiter hic igitur sumptus de lite iocosa Dicta Iovis firmat; gravius Saturnia iusto Nec pro materia fertur doluisse suique Iudicis aeterna damnavit lumina nocte, At pater omnipotens (neque enim licet inrita cuiquam Facta dei fecisse deo) pro lumine adempto Scire futura dedit poenamque levavit honore.

<p>29</p>

221. This may not appear as exact as Sappho's lines, but I had in mind the "longshore" or "dory" fisherman, who returns at nightfall.

<p>30</p>

253. V. Goldsmith, the song in The Vicar of Wakefield.

<p>31</p>

257. V. The Tempest, as above.

<p>32</p>

264. The interior of St. Magnus Martyr is to my mind one of the finest among Wren's interiors. See The Proposed Demolition of Nineteen City Churches (P. S. King & Son, Ltd.).

<p>33</p>

266. The Song of the (three) Thames-daughters begins here. From line 292 to 306 inclusive they speak in turn. V. Gutterdsammerung, III. i: the Rhine-daughters.

<p>34</p>

279. V. Froude, Elizabeth, Vol. I, ch. iv, letter of De Quadra to Philip of Spain:

"In the afternoon we were in a barge, watching the games on the river.

(The queen) was alone with Lord Robert and myself on the poop,

when they began to talk nonsense, and went so far that Lord Robert

at last said, as I was on the spot there was no reason why they

should not be married if the queen pleased."

<p>35</p>

293. Cf. Purgatorio, v. 133:

"Ricorditi di me, che son la Pia; Siena mi fe', disfecemi Maremma."

<p>36</p>

307. V. St. Augustine's Confessions: "to Carthage then I came, where a cauldron of unholy loves sang all about mine ears."

<p>37</p>

308. The complete text of the Buddha's Fire Sermon (which corresponds in importance to the Sermon on the Mount) from which these words are taken, will be found translated in the late Henry Clarke Warren's Buddhism in Translation (Harvard Oriental Series). Mr. Warren was one of the great pioneers of Buddhist studies in the Occident.

<p>38</p>

309. From St. Augustine's Confessions again. The collocation of these two representatives of eastern and western asceticism, as the culmination of this part of the poem, is not an accident.

<p>39</p>

357. This is Turdus aonalaschkae pallasii, the hermit-thrush which I have heard in Quebec County. Chapman says (Handbook of Birds of Eastern North America) "it is most at home in secluded woodland and thickety retreats. . . . Its notes are not remarkable for variety or volume, but in purity and sweetness of tone and exquisite modulation they are unequalled." Its "water-dripping song" is justly celebrated.

<p>40</p>

360. The following lines were stimulated by the account of one of the Antarctic expeditions (I forget which, but I think one of Shackleton's): it was related that the party of explorers, at the extremity of their strength, had the constant delusion that there was one more member than could actually be counted.

<p>41</p>

367-77. Cf. Hermann Hesse, Blick ins Chaos:

"Schon ist halb Europa, schon ist zumindest der halbe Osten Europas auf dem Wege zum Chaos, fhrt betrunken im heiligem Wahn am Abgrund entlang und singt dazu, singt betrunken und hymnisch wie Dmitri Karamasoff sang. Ueber diese Lieder lacht der Bsrger beleidigt, der Heilige und Seher hrt sie mit Trvnen."

<p>42</p>

402. “"Datta, dayadhvam, damyata"” (Give, sympathize, control). The fable of the meaning of the Thunder is found in the Brihadaranyaka-Upanishad, 5, 1. A translation is found in Deussen's Sechzig Upanishads des Veda, p. 489.

<p>43</p>

408. Cf. Webster, The White Devil, v. vi:

". . . they'll remarry Ere the worm pierce your winding-sheet, ere the spider Make a thin curtain for your epitaphs."

<p>44</p>

412. Cf. Inferno, xxxiii. 46:

"ed io sentii chiavar l'uscio di sotto all'orribile torre."

Also F. H. Bradley, Appearance and Reality, p. 346:

"My external sensations are no less private to myself than are my thoughts or my feelings. In either case my experience falls within my own circle, a circle closed on the outside; and, with all its elements alike, every sphere is opaque to the others which surround it. . . . In brief, regarded as an existence which appears in a soul, the whole world for each is peculiar and private to that soul."

<p>45</p>

425. V. Weston, From Ritual to Romance; chapter on the Fisher King.

<p>46</p>

428. V. Purgatorio, xxvi. 148.

"'Ara vos prec per aquella valor 'que vos guida al som de l'escalina, 'sovegna vos a temps de ma dolor.' Poi s'ascose nel foco che gli affina."

<p>47</p>

429. V. Pervigilium Veneris. Cf. Philomela in Parts II and III.

<p>48</p>

430. V. Gerard de Nerval, Sonnet El Desdichado.

<p>49</p>

432. V. Kyd's Spanish Tragedy.

<p>50</p>

434. Shantih. Repeated as here, a formal ending to an Upanishad. 'The Peace which passeth understanding' is a feeble translation of the content of this word.

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
================================================ FILE: flake.nix ================================================ { inputs = { nixpkgs.url = "github:NixOS/nixpkgs"; flake-parts = { url = "github:hercules-ci/flake-parts"; inputs.nixpkgs-lib.follows = "nixpkgs"; }; git-hooks-nix = { url = "github:cachix/git-hooks.nix"; inputs.nixpkgs.follows = "nixpkgs"; }; nix-systems = { url = "github:nix-systems/default"; flake = false; }; rust-flake = { url = "github:juspay/rust-flake"; inputs.nixpkgs.follows = "nixpkgs"; }; treefmt-nix = { url = "github:numtide/treefmt-nix"; inputs.nixpkgs.follows = "nixpkgs"; }; }; outputs = inputs@{ flake-parts, nix-systems, ... }: flake-parts.lib.mkFlake { inherit inputs; } ( top@{ config, withSystem, moduleWithSystem, ... }: { imports = [ inputs.git-hooks-nix.flakeModule inputs.rust-flake.flakeModules.default inputs.rust-flake.flakeModules.nixpkgs inputs.treefmt-nix.flakeModule ]; systems = import nix-systems; perSystem = { config, self', pkgs, ... }: { pre-commit = { check.enable = true; settings.hooks = { ripsecrets.enable = true; treefmt.enable = true; typos = { enable = true; settings.exclude = "exampledir/*"; }; }; }; rust-project = let dependencies = with pkgs; [ ffmpeg pandoc poppler_utils ripgrep zip ]; in { src = pkgs.lib.cleanSourceWith { src = config.rust-project.crane-lib.path ./.; filter = pkgs.lib.cleanSourceFilter; }; crates.ripgrep_all.crane.args.buildInputs = dependencies; crates.ripgrep_all.crane.args.nativeBuildInputs = dependencies; }; treefmt.config = { projectRootFile = ".git/config"; flakeCheck = false; # use pre-commit's check instead programs = { nixfmt.enable = true; rustfmt = { enable = true; package = config.rust-project.crane-lib.rustfmt; }; }; }; packages = { default = self'.packages.ripgrep_all; ripgrep-all = self'.packages.ripgrep_all; rga = self'.packages.ripgrep_all; }; devShells.default = config.rust-project.crane-lib.devShell { inputsFrom = [ config.pre-commit.devShell config.treefmt.build.devShell ]; }; }; } ); } ================================================ FILE: rust-toolchain.toml ================================================ [toolchain] channel = "stable" ================================================ FILE: src/adapted_iter.rs ================================================ use std::pin::Pin; use tokio_stream::Stream; use crate::adapters::AdaptInfo; pub trait AdaptedFilesIter: Stream> + Send {} impl AdaptedFilesIter for T where T: Stream> + Send {} pub type AdaptedFilesIterBox = Pin>; pub fn one_file(ai: AdaptInfo) -> AdaptedFilesIterBox { Box::pin(tokio_stream::once(Ok(ai))) } ================================================ FILE: src/adapters/custom.rs ================================================ use super::*; use super::{AdaptInfo, AdapterMeta, FileAdapter, GetMetadata}; use crate::adapted_iter::one_file; use crate::{ adapted_iter::AdaptedFilesIterBox, expand::expand_str_ez, matching::{FastFileMatcher, FileMatcher}, }; use crate::{join_handle_to_stream, to_io_err}; use anyhow::Result; use async_stream::stream; use bytes::Bytes; use lazy_static::lazy_static; use log::debug; use schemars::JsonSchema; use serde::{Deserialize, Serialize}; use std::path::Path; use std::process::Stdio; use tokio::io::AsyncReadExt; use tokio::process::Child; use tokio::process::Command; use tokio_util::io::StreamReader; // mostly the same as AdapterMeta + SpawningFileAdapter #[derive(Debug, Deserialize, Serialize, JsonSchema, Default, PartialEq, Clone)] pub struct CustomAdapterConfig { /// The unique identifier and name of this adapter. /// /// Must only include a-z, 0-9, _. pub name: String, /// The description of this adapter shown in help. pub description: String, /// If true, the adapter will be disabled by default. pub disabled_by_default: Option, /// Version identifier used to key cache entries. /// /// Change this if the configuration or program changes. pub version: i32, /// The file extensions this adapter supports, for example `["epub", "mobi"]`. pub extensions: Vec, /// If not null and `--rga-accurate` is enabled, mimetype matching is used instead of file name matching. pub mimetypes: Option>, /// If `--rga-accurate`, only match by mime types and ignore extensions completely. pub match_only_by_mime: Option, /// The name or path of the binary to run. pub binary: String, /// The arguments to run the program with. /// Placeholders: /// - `$input_file_extension`: the file extension (without dot). e.g. foo.tar.gz -> gz /// - `$input_file_stem`: the file name without the last extension. e.g. foo.tar.gz -> foo.tar /// - `$input_virtual_path`: the full input file path. /// Note that this path may not actually exist on disk because it is the result of another adapter. /// /// stdin of the program will be connected to the input file, and stdout is assumed to be the converted file pub args: Vec, /// The output path hint. /// The placeholders are the same as for `.args` /// /// If not set, defaults to `"${input_virtual_path}.txt"`. /// /// Setting this is useful if the output format is not plain text (.txt) but instead some other format that should be passed to another adapter pub output_path_hint: Option, } fn strs(arr: &[&str]) -> Vec { arr.iter().map(ToString::to_string).collect() } lazy_static! { pub static ref BUILTIN_SPAWNING_ADAPTERS: Vec = vec![ // from https://github.com/jgm/pandoc/blob/master/src/Text/Pandoc/App/FormatHeuristics.hs // excluding formats that could cause problems (.db ?= sqlite) or that are already text formats (e.g. xml-based) //"db" -> Just "docbook" //"adoc" -> Just "asciidoc" //"asciidoc" -> Just "asciidoc" //"context" -> Just "context" //"ctx" -> Just "context" //"dokuwiki" -> Just "dokuwiki" //"htm" -> Just "html" //"html" -> Just "html" //"json" -> Just "json" //"latex" -> Just "latex" //"lhs" -> Just "markdown+lhs" //"ltx" -> Just "latex" //"markdown" -> Just "markdown" //"md" -> Just "markdown" //"ms" -> Just "ms" //"muse" -> Just "muse" //"native" -> Just "native" //"opml" -> Just "opml" //"org" -> Just "org" //"roff" -> Just "ms" //"rst" -> Just "rst" //"s5" -> Just "s5" //"t2t" -> Just "t2t" //"tei" -> Just "tei" //"tei.xml" -> Just "tei" //"tex" -> Just "latex" //"texi" -> Just "texinfo" //"texinfo" -> Just "texinfo" //"textile" -> Just "textile" //"text" -> Just "markdown" //"txt" -> Just "markdown" //"xhtml" -> Just "html" //"wiki" -> Just "mediawiki" CustomAdapterConfig { name: "pandoc".to_string(), description: "Uses pandoc to convert binary/unreadable text documents to plain markdown-like text".to_string(), version: 3, extensions: strs(&["epub", "odt", "docx", "fb2", "ipynb", "html", "htm"]), binary: "pandoc".to_string(), mimetypes: None, // simpler markdown (with more information loss but plainer text) //.arg("--to=commonmark-header_attributes-link_attributes-fenced_divs-markdown_in_html_blocks-raw_html-native_divs-native_spans-bracketed_spans") args: strs(&[ "--from=$input_file_extension", "--to=plain", "--wrap=none", "--markdown-headings=atx" ]), disabled_by_default: None, match_only_by_mime: None, output_path_hint: None }, CustomAdapterConfig { name: "poppler".to_owned(), version: 1, description: "Uses pdftotext (from poppler-utils) to extract plain text from PDF files" .to_owned(), extensions: strs(&["pdf"]), mimetypes: Some(strs(&["application/pdf"])), binary: "pdftotext".to_string(), args: strs(&["-", "-"]), disabled_by_default: None, match_only_by_mime: None, output_path_hint: Some("${input_virtual_path}.txt.asciipagebreaks".into()) } ]; } /// replace a Command.spawn() error "File not found" with a more readable error /// to indicate some program is not installed pub fn map_exe_error(err: std::io::Error, exe_name: &str, help: &str) -> anyhow::Error { use std::io::ErrorKind::*; match err.kind() { NotFound => format_err!("Could not find executable \"{}\". {}", exe_name, help), _ => anyhow::Error::from(err), } } fn proc_wait(mut child: Child, context: impl FnOnce() -> String) -> impl AsyncRead { let s = stream! { let res = child.wait().await?; if res.success() { yield std::io::Result::Ok(Bytes::new()); } else { Err(format_err!("{:?}", res)).with_context(context).map_err(to_io_err)?; } }; StreamReader::new(s) } pub fn pipe_output( _line_prefix: &str, mut cmd: Command, inp: ReadBox, exe_name: &str, help: &str, ) -> Result { let cmd_log = format!("{:?}", cmd); // todo: perf let mut cmd = cmd .stdin(Stdio::piped()) .stdout(Stdio::piped()) .spawn() .map_err(|e| map_exe_error(e, exe_name, help))?; let mut stdi = cmd.stdin.take().expect("is piped"); let stdo = cmd.stdout.take().expect("is piped"); let join = tokio::spawn(async move { let mut z = inp; tokio::io::copy(&mut z, &mut stdi).await?; std::io::Result::Ok(()) }); Ok(Box::pin(stdo.chain( proc_wait(cmd, move || format!("subprocess: {cmd_log}")).chain(join_handle_to_stream(join)), ))) } pub struct CustomSpawningFileAdapter { binary: String, args: Vec, meta: AdapterMeta, output_path_hint: Option, } impl GetMetadata for CustomSpawningFileAdapter { fn metadata(&self) -> &AdapterMeta { &self.meta } } fn arg_replacer(arg: &str, filepath_hint: &Path) -> Result { expand_str_ez(arg, |s| match s { "input_virtual_path" => Ok(filepath_hint.to_string_lossy()), "input_file_stem" => Ok(filepath_hint .file_stem() .unwrap_or_default() .to_string_lossy()), "input_file_extension" => Ok(filepath_hint .extension() .unwrap_or_default() .to_string_lossy()), e => Err(anyhow::format_err!("unknown replacer ${{{e}}}")), }) } impl CustomSpawningFileAdapter { fn command( &self, filepath_hint: &std::path::Path, mut command: tokio::process::Command, ) -> Result { command.args( self.args .iter() .map(|arg| arg_replacer(arg, filepath_hint)) .collect::>>()?, ); log::debug!("running command {:?}", command); Ok(command) } } #[async_trait] impl FileAdapter for CustomSpawningFileAdapter { async fn adapt( &self, ai: AdaptInfo, _detection_reason: &FileMatcher, ) -> Result { let AdaptInfo { filepath_hint, inp, line_prefix, archive_recursion_depth, postprocess, config, .. } = ai; let cmd = Command::new(&self.binary); let cmd = self .command(&filepath_hint, cmd) .with_context(|| format!("Could not set cmd arguments for {}", self.binary))?; debug!("executing {:?}", cmd); let output = pipe_output(&line_prefix, cmd, inp, &self.binary, "")?; Ok(one_file(AdaptInfo { filepath_hint: PathBuf::from(arg_replacer( self.output_path_hint .as_deref() .unwrap_or("${input_virtual_path}.txt"), &filepath_hint, )?), inp: output, line_prefix, is_real_file: false, archive_recursion_depth: archive_recursion_depth + 1, postprocess, config, })) } } impl CustomAdapterConfig { pub fn to_adapter(&self) -> CustomSpawningFileAdapter { CustomSpawningFileAdapter { binary: self.binary.clone(), args: self.args.clone(), output_path_hint: self.output_path_hint.clone(), meta: AdapterMeta { name: self.name.clone(), version: self.version, description: format!( "{}\nRuns: {} {}", self.description, self.binary, self.args.join(" ") ), recurses: true, fast_matchers: self .extensions .iter() .map(|s| FastFileMatcher::FileExtension(s.to_string())) .collect(), slow_matchers: self.mimetypes.as_ref().map(|mimetypes| { mimetypes .iter() .map(|s| FileMatcher::MimeType(s.to_string())) .collect() }), keep_fast_matchers_if_accurate: !self.match_only_by_mime.unwrap_or(false), disabled_by_default: self.disabled_by_default.unwrap_or(false), }, } } } #[cfg(test)] mod test { use super::super::FileAdapter; use super::*; use crate::preproc::loop_adapt; use crate::test_utils::*; use anyhow::Result; use pretty_assertions::assert_eq; use tokio::fs::File; #[tokio::test] async fn poppler() -> Result<()> { let adapter = poppler_adapter(); let filepath = test_data_dir().join("short.pdf"); let (a, d) = simple_adapt_info(&filepath, Box::pin(File::open(&filepath).await?)); // let r = adapter.adapt(a, &d)?; let r = loop_adapt(&adapter, d, a).await?; let o = adapted_to_vec(r).await?; assert_eq!( String::from_utf8(o)?, "PREFIX:Page 1: hello world PREFIX:Page 1: this is just a test. PREFIX:Page 1: PREFIX:Page 1: 1 PREFIX:Page 1: PREFIX:Page 1: " ); Ok(()) } use crate::{ adapters::custom::CustomAdapterConfig, test_utils::{adapted_to_vec, simple_adapt_info}, }; use std::io::Cursor; #[tokio::test] async fn streaming() -> anyhow::Result<()> { // an adapter that converts input line by line (deadlocks if the parent process tries to write everything and only then read it) let adapter = CustomAdapterConfig { name: "simple text replacer".to_string(), description: "oo".to_string(), disabled_by_default: None, version: 1, extensions: vec!["txt".to_string()], mimetypes: None, match_only_by_mime: None, binary: "sed".to_string(), args: vec!["s/e/u/g".to_string()], output_path_hint: None, }; let adapter = adapter.to_adapter(); let input = r#" This is the story of a very strange lorry with a long dead crew and a witch with the flu "#; let input = format!("{input}{input}{input}{input}"); let input = format!("{input}{input}{input}{input}"); let input = format!("{input}{input}{input}{input}"); let input = format!("{input}{input}{input}{input}"); let input = format!("{input}{input}{input}{input}"); let input = format!("{input}{input}{input}{input}"); let (a, d) = simple_adapt_info( Path::new("foo.txt"), Box::pin(Cursor::new(Vec::from(input))), ); let output = adapter.adapt(a, &d).await.unwrap(); let oup = adapted_to_vec(output).await?; println!("output: {}", String::from_utf8_lossy(&oup)); Ok(()) } } ================================================ FILE: src/adapters/decompress.rs ================================================ use crate::adapted_iter::one_file; use super::*; use anyhow::Result; use lazy_static::lazy_static; use tokio::io::BufReader; use std::path::{Path, PathBuf}; static EXTENSIONS: &[&str] = &["als", "bz2", "gz", "tbz", "tbz2", "tgz", "xz", "zst"]; static MIME_TYPES: &[&str] = &[ "application/gzip", "application/x-bzip", "application/x-xz", "application/zstd", ]; lazy_static! { static ref METADATA: AdapterMeta = AdapterMeta { name: "decompress".to_owned(), version: 1, description: "Reads compressed file as a stream and runs a different extractor on the contents." .to_owned(), recurses: true, fast_matchers: EXTENSIONS .iter() .map(|s| FastFileMatcher::FileExtension(s.to_string())) .collect(), slow_matchers: Some( MIME_TYPES .iter() .map(|s| FileMatcher::MimeType(s.to_string())) .collect() ), disabled_by_default: false, keep_fast_matchers_if_accurate: true }; } #[derive(Default)] pub struct DecompressAdapter; impl DecompressAdapter { pub fn new() -> Self { Self } } impl GetMetadata for DecompressAdapter { fn metadata(&self) -> &AdapterMeta { &METADATA } } fn decompress_any(reason: &FileMatcher, inp: ReadBox) -> Result { use FastFileMatcher::*; use FileMatcher::*; use async_compression::tokio::bufread; let gz = |inp: ReadBox| Box::pin(bufread::GzipDecoder::new(BufReader::new(inp))); let bz2 = |inp: ReadBox| Box::pin(bufread::BzDecoder::new(BufReader::new(inp))); let xz = |inp: ReadBox| Box::pin(bufread::XzDecoder::new(BufReader::new(inp))); let zst = |inp: ReadBox| Box::pin(bufread::ZstdDecoder::new(BufReader::new(inp))); Ok(match reason { Fast(FileExtension(ext)) => match ext.as_ref() { "als" | "gz" | "tgz" => gz(inp), "bz2" | "tbz" | "tbz2" => bz2(inp), "zst" => zst(inp), "xz" => xz(inp), ext => Err(format_err!("don't know how to decompress {}", ext))?, }, MimeType(mime) => match mime.as_ref() { "application/gzip" => gz(inp), "application/x-bzip" => bz2(inp), "application/x-xz" => xz(inp), "application/zstd" => zst(inp), mime => Err(format_err!("don't know how to decompress mime {}", mime))?, }, }) } fn get_inner_filename(filename: &Path) -> PathBuf { let extension = filename .extension() .map(|e| e.to_string_lossy()) .unwrap_or(Cow::Borrowed("")); let stem = filename .file_stem() .expect("no filename given?") .to_string_lossy(); let new_extension = match extension.as_ref() { "tgz" | "tbz" | "tbz2" => ".tar", _other => "", }; filename.with_file_name(format!("{}{}", stem, new_extension)) } #[async_trait] impl FileAdapter for DecompressAdapter { async fn adapt( &self, ai: AdaptInfo, detection_reason: &FileMatcher, ) -> Result { Ok(one_file(AdaptInfo { filepath_hint: get_inner_filename(&ai.filepath_hint), is_real_file: false, archive_recursion_depth: ai.archive_recursion_depth + 1, inp: decompress_any(detection_reason, ai.inp)?, line_prefix: ai.line_prefix, config: ai.config.clone(), postprocess: ai.postprocess, })) } } #[cfg(test)] mod tests { use super::*; use crate::preproc::loop_adapt; use crate::test_utils::*; use pretty_assertions::assert_eq; use tokio::fs::File; #[test] fn test_inner_filename() { for (a, b) in &[ ("hi/test.tgz", "hi/test.tar"), ("hi/hello.gz", "hi/hello"), ("a/b/initramfs", "a/b/initramfs"), ("hi/test.tbz2", "hi/test.tar"), ("hi/test.tbz", "hi/test.tar"), ("hi/test.hi.bz2", "hi/test.hi"), ("hello.tar.gz", "hello.tar"), ] { assert_eq!(get_inner_filename(&PathBuf::from(a)), PathBuf::from(*b)); } } #[tokio::test] async fn gz() -> Result<()> { let adapter = DecompressAdapter; let filepath = test_data_dir().join("hello.gz"); let (a, d) = simple_adapt_info(&filepath, Box::pin(File::open(&filepath).await?)); let r = adapter.adapt(a, &d).await?; let o = adapted_to_vec(r).await?; assert_eq!(String::from_utf8(o)?, "hello\n"); Ok(()) } #[tokio::test] async fn pdf_gz() -> Result<()> { let adapter = DecompressAdapter; let filepath = test_data_dir().join("short.pdf.gz"); let (a, d) = simple_adapt_info(&filepath, Box::pin(File::open(&filepath).await?)); let r = loop_adapt(&adapter, d, a).await?; let o = adapted_to_vec(r).await?; assert_eq!( String::from_utf8(o)?, "PREFIX:Page 1: hello world PREFIX:Page 1: this is just a test. PREFIX:Page 1: PREFIX:Page 1: 1 PREFIX:Page 1: PREFIX:Page 1: " ); Ok(()) } } ================================================ FILE: src/adapters/ffmpeg.rs ================================================ use super::*; use super::{custom::map_exe_error, writing::async_writeln}; use anyhow::*; use async_trait::async_trait; use lazy_static::lazy_static; use regex::Regex; use serde::{Deserialize, Serialize}; use std::process::Stdio; use tokio::io::AsyncWrite; use tokio::io::{AsyncBufReadExt, BufReader}; use tokio::process::Command; use writing::WritingFileAdapter; // todo: // maybe todo: read list of extensions from // ffmpeg -demuxers | tail -n+5 | awk '{print $2}' | while read demuxer; do echo MUX=$demuxer; ffmpeg -h demuxer=$demuxer | grep 'Common extensions'; done 2>/dev/null // but really, the probability of getting useful information from a .flv is low static EXTENSIONS: &[&str] = &["mkv", "mp4", "avi", "mp3", "ogg", "flac", "webm"]; lazy_static! { static ref METADATA: AdapterMeta = AdapterMeta { name: "ffmpeg".to_owned(), version: 1, description: "Uses ffmpeg to extract video metadata/chapters, subtitles, lyrics, and other metadata" .to_owned(), recurses: false, fast_matchers: EXTENSIONS .iter() .map(|s| FastFileMatcher::FileExtension(s.to_string())) .collect(), slow_matchers: None, disabled_by_default: false, keep_fast_matchers_if_accurate: true }; } #[derive(Default, Clone)] pub struct FFmpegAdapter; impl FFmpegAdapter { pub fn new() -> Self { Self } } impl GetMetadata for FFmpegAdapter { fn metadata(&self) -> &AdapterMeta { &METADATA } } #[derive(Serialize, Deserialize)] struct FFprobeOutput { streams: Vec, } #[derive(Serialize, Deserialize)] struct FFprobeStream { index: i32, // stream index } #[async_trait] impl WritingFileAdapter for FFmpegAdapter { async fn adapt_write( ai: AdaptInfo, _detection_reason: &FileMatcher, mut oup: Pin>, ) -> Result<()> { let AdaptInfo { is_real_file, filepath_hint, line_prefix, .. } = ai; if !is_real_file { // we *could* probably adapt this to also work based on streams, // it would require using a BufReader to read at least part of the file to memory // but really when would you want to search for videos within archives? // So instead, we only run this adapter if the file is a actual file on disk for now async_writeln!(oup, "{line_prefix}[rga: skipping video in archive]\n")?; return Ok(()); } let inp_fname = filepath_hint; let spawn_fail = |e| map_exe_error(e, "ffprobe", "Make sure you have ffmpeg installed."); let subtitle_streams = { let probe = Command::new("ffprobe") .args(vec![ "-v", "error", // show all errors "-select_streams", "s", // show only subtitle streams "-of", "json", // use json as output format "-show_entries", "stream=index", // show index of subtitle streams ]) .arg("-i") .arg(&inp_fname) .output() .await .map_err(spawn_fail)?; if !probe.status.success() { return Err(format_err!( "ffprobe failed: {:?}\n{}", probe.status, String::from_utf8_lossy(&probe.stderr) )); } let p: FFprobeOutput = serde_json::from_slice(&probe.stdout)?; p.streams }; { // extract file metadata (especially chapter names in a greppable format) let mut probe = Command::new("ffprobe") .args(vec![ "-v", "error", "-show_format", "-show_streams", "-of", "flat", // "-show_data", "-show_error", "-show_programs", "-show_chapters", // "-count_frames", //"-count_packets", ]) .arg("-i") .arg(&inp_fname) .stdout(Stdio::piped()) .spawn()?; let mut lines = BufReader::new(probe.stdout.as_mut().unwrap()).lines(); while let Some(line) = lines.next_line().await? { let line = line.replace("\\r\\n", "\n").replace("\\n", "\n"); // just unescape newlines async_writeln!(oup, "metadata: {line}")?; } let exit = probe.wait().await?; if !exit.success() { return Err(format_err!("ffprobe failed: {:?}", exit)); } } if !subtitle_streams.is_empty() { let time_re = Regex::new(r".*\d.*-->.*\d.*").unwrap(); for probe_stream in subtitle_streams.iter() { // extract subtitles let mut cmd = Command::new("ffmpeg"); cmd.arg("-hide_banner") .arg("-loglevel") .arg("panic") .arg("-i") .arg(&inp_fname) .arg("-map") .arg(format!("0:{}", probe_stream.index)) // 0 for first input .arg("-f") .arg("webvtt") .arg("-"); let mut cmd = cmd.stdout(Stdio::piped()).spawn().map_err(spawn_fail)?; let stdo = cmd.stdout.as_mut().expect("is piped"); let mut time: String = "".to_owned(); // rewrite subtitle times so they are shown as a prefix in every line let mut lines = BufReader::new(stdo).lines(); while let Some(line) = lines.next_line().await? { // 09:55.195 --> 09:56.730 if time_re.is_match(&line) { time = line.to_owned(); } else if line.is_empty() { async_writeln!(oup)?; } else { async_writeln!(oup, "{time}: {line}")?; } } } } Ok(()) } } ================================================ FILE: src/adapters/mbox.rs ================================================ use super::*; use anyhow::Result; use async_stream::stream; use lazy_static::lazy_static; use mime2ext::mime2ext; use regex::bytes::Regex; use tokio::io::AsyncReadExt; use std::{collections::VecDeque, io::Cursor}; static EXTENSIONS: &[&str] = &["mbox", "mbx", "eml"]; static MIME_TYPES: &[&str] = &["application/mbox", "message/rfc822"]; lazy_static! { static ref METADATA: AdapterMeta = AdapterMeta { name: "mail".to_owned(), version: 1, description: "Reads mailbox/mail files and runs extractors on the contents and attachments." .to_owned(), recurses: true, fast_matchers: EXTENSIONS .iter() .map(|s| FastFileMatcher::FileExtension(s.to_string())) .collect(), slow_matchers: Some( MIME_TYPES .iter() .map(|s| FileMatcher::MimeType(s.to_string())) .collect() ), disabled_by_default: true, keep_fast_matchers_if_accurate: true }; static ref FROM_REGEX: Regex = Regex::new("\r?\nFrom [^\n]+\n").unwrap(); } #[derive(Default)] pub struct MboxAdapter; impl MboxAdapter { pub fn new() -> Self { Self } } impl GetMetadata for MboxAdapter { fn metadata(&self) -> &AdapterMeta { &METADATA } } #[async_trait] impl FileAdapter for MboxAdapter { async fn adapt( &self, ai: AdaptInfo, _detection_reason: &FileMatcher, ) -> Result { let AdaptInfo { filepath_hint, mut inp, line_prefix, archive_recursion_depth, config, postprocess, .. } = ai; let mut content = Vec::new(); let s = stream! { inp.read_to_end(&mut content).await?; let mut ais = vec![]; for mail_bytes in FROM_REGEX.splitn(&content, usize::MAX) { let mail_content = mail_bytes.splitn(2, |x| *x == b'\n').nth(1).unwrap(); let mail = mailparse::parse_mail(mail_content); if mail.is_err() { continue; } let mail = mail.unwrap(); let mut todos = VecDeque::new(); todos.push_back(mail); while let Some(mail) = todos.pop_front() { let mut path = filepath_hint.clone(); let filename = mail.get_content_disposition().params.get("filename").cloned(); match &*mail.ctype.mimetype { x if x.starts_with("multipart/") => { todos.extend(mail.subparts); continue; } mime => { if let Some(name) = filename { path.push(name); } else if let Some(extension) = mime2ext(mime) { path.push(format!("data.{extension}")); } else { path.push("data"); } } } let mut config = config.clone(); config.accurate = true; let raw_body = mail.get_body_raw(); if raw_body.is_err() { continue; } let ai2: AdaptInfo = AdaptInfo { filepath_hint: path, is_real_file: false, archive_recursion_depth: archive_recursion_depth + 1, inp: Box::pin(Cursor::new(raw_body.unwrap())), line_prefix: line_prefix.to_string(), config, postprocess, }; ais.push(ai2); } } for a in ais { yield(Ok(a)); } }; Ok(Box::pin(s)) } } #[cfg(test)] mod tests { use super::*; use crate::preproc::loop_adapt; use crate::test_utils::*; use pretty_assertions::assert_eq; use tokio::fs::File; use tokio_stream::StreamExt; #[tokio::test] async fn mail_simple() -> Result<()> { let adapter = MboxAdapter; let filepath = test_data_dir().join("github_email.eml"); let (a, d) = simple_adapt_info(&filepath, Box::pin(File::open(&filepath).await?)); let mut r = adapter.adapt(a, &d).await?; let mut count = 0; while let Some(file) = r.next().await { let mut file = file?; let mut buf = Vec::new(); file.inp.read_to_end(&mut buf).await?; match file .filepath_hint .components() .next_back() .unwrap() .as_os_str() .to_str() .unwrap() { "data.txt" | "data.html" => { assert!(String::from_utf8(buf)?.contains("Thank you for your contribution")); } x => panic!("unexpected filename {x:?}"), } count += 1; } assert_eq!(2, count); Ok(()) } #[tokio::test] async fn mbox_simple() -> Result<()> { let adapter = MboxAdapter; let filepath = test_data_dir().join("test.mbx"); let (a, d) = simple_adapt_info(&filepath, Box::pin(File::open(&filepath).await?)); let mut r = adapter.adapt(a, &d).await?; let mut count = 0; while let Some(file) = r.next().await { let mut file = file?; assert_eq!( "data.html", file.filepath_hint .components() .next_back() .unwrap() .as_os_str() ); let mut buf = Vec::new(); file.inp.read_to_end(&mut buf).await?; assert_eq!( "\r\n \r\n \r\n \r\n \r\n

>From

\r\n

Another word >From
\r\n

\r\n \r\n", String::from_utf8(buf)?.trim() ); count += 1; } assert_eq!(3, count); Ok(()) } #[tokio::test] async fn mbox_attachment() -> Result<()> { init_logging(); let adapter = MboxAdapter; let filepath = test_data_dir().join("mail_with_attachment.mbox"); let (a, d) = simple_adapt_info(&filepath, Box::pin(File::open(&filepath).await?)); let mut r = loop_adapt(&adapter, d, a).await?; let mut count = 0; while let Some(file) = r.next().await { let mut file = file?; let path = file .filepath_hint .components() .next_back() .unwrap() .as_os_str() .to_str() .unwrap(); let mut buf = Vec::new(); file.inp.read_to_end(&mut buf).await?; match path { "data.html.txt" => { assert_eq!( "PREFIX:regular text\nPREFIX:\n", String::from_utf8(buf).unwrap_or("err".to_owned()) ); } "short.pdf.txt" => { assert_eq!( "PREFIX:Page 1: hello world\nPREFIX:Page 1: this is just a test.\nPREFIX:Page 1: \nPREFIX:Page 1: 1\nPREFIX:Page 1: \nPREFIX:Page 1: \n", String::from_utf8(buf).unwrap_or("err".to_owned()) ); } _ => { panic!("unrelated {path:?}"); } } count += 1; } assert_eq!(2, count); // one message + one attachment Ok(()) } } ================================================ FILE: src/adapters/postproc.rs ================================================ //trait RunFnAdapter: GetMetadata {} //impl FileAdapter for T where T: RunFnAdapter {} use anyhow::Result; use async_stream::stream; use async_trait::async_trait; use bytes::Bytes; use encoding_rs::Encoding; use encoding_rs_io::DecodeReaderBytesBuilder; use tokio_util::io::SyncIoBridge; use std::io::Cursor; use std::path::PathBuf; use std::pin::Pin; use tokio::io::{AsyncRead, AsyncReadExt}; use tokio_util::io::ReaderStream; use tokio_util::io::StreamReader; use crate::adapted_iter::AdaptedFilesIterBox; use crate::adapted_iter::one_file; use crate::matching::FastFileMatcher; use super::{AdaptInfo, AdapterMeta, FileAdapter, GetMetadata}; fn add_newline(ar: impl AsyncRead + Send) -> impl AsyncRead + Send { ar.chain(Cursor::new(b"\n")) } pub struct PostprocPrefix {} impl GetMetadata for PostprocPrefix { fn metadata(&self) -> &super::AdapterMeta { lazy_static::lazy_static! { static ref METADATA: AdapterMeta = AdapterMeta { name: "postprocprefix".to_owned(), version: 1, description: "Adds the line prefix to each line (e.g. the filename within a zip)".to_owned(), recurses: false, fast_matchers: vec![], slow_matchers: None, keep_fast_matchers_if_accurate: false, disabled_by_default: false }; } &METADATA } } #[async_trait] impl FileAdapter for PostprocPrefix { async fn adapt( &self, a: super::AdaptInfo, _detection_reason: &crate::matching::FileMatcher, ) -> Result { let read = add_newline(postproc_prefix( &a.line_prefix, postproc_encoding(&a.line_prefix, a.inp).await?, )); // keep adapt info (filename etc) except replace inp let ai = AdaptInfo { inp: Box::pin(read), postprocess: false, ..a }; Ok(one_file(ai)) } } /*struct ReadErr { err: Fn() -> std::io::Error, } impl Read for ReadErr { fn read(&mut self, buf: &mut [u8]) -> std::io::Result { Err(self.err()) } }*/ /** * Detects and converts encodings other than utf-8 to utf-8. * If the input stream does not contain valid text, returns the string `[rga: binary data]` instead */ async fn postproc_encoding( _line_prefix: &str, inp: Pin>, ) -> Result>> { // check for binary content in first 8kB // read the first 8kB into a buffer, check for null bytes, then return the buffer concatenated with the rest of the file let mut fourk = Vec::with_capacity(1 << 13); let mut beginning = inp.take(1 << 13); beginning.read_to_end(&mut fourk).await?; let has_binary = fourk.contains(&0u8); let enc = Encoding::for_bom(&fourk); let inp = Cursor::new(fourk).chain(beginning.into_inner()); match enc { Some((enc, _)) if enc != encoding_rs::UTF_8 => { // detected UTF16LE or UTF16BE, convert to UTF8 in separate thread // TODO: parse these options from ripgrep's configuration let encoding = None; // detect bom but usually assume utf8 let bom_sniffing = true; let mut decode_builder = DecodeReaderBytesBuilder::new(); // https://github.com/BurntSushi/ripgrep/blob/a7d26c8f144a4957b75f71087a66692d0b25759a/grep-searcher/src/searcher/mod.rs#L706 // this detects utf-16 BOMs and transcodes to utf-8 if they are present // it does not detect any other char encodings. that would require https://github.com/hsivonen/chardetng or similar but then binary detection is hard (?) let mut inp = decode_builder .encoding(encoding) .utf8_passthru(true) .strip_bom(bom_sniffing) .bom_override(true) .bom_sniffing(bom_sniffing) .build(SyncIoBridge::new(inp)); let oup = tokio::task::spawn_blocking(move || -> Result> { let mut oup = Vec::new(); std::io::Read::read_to_end(&mut inp, &mut oup)?; Ok(oup) }) .await??; Ok(Box::pin(Cursor::new(oup))) } _ => { if has_binary { log::debug!("detected binary"); return Ok(Box::pin(Cursor::new("[rga: binary data]"))); } Ok(Box::pin(inp)) } } } /// Adds the given prefix to each line in an `AsyncRead`. pub fn postproc_prefix( line_prefix: &str, inp: T, ) -> impl AsyncRead + Send + use { let line_prefix_n = format!("\n{line_prefix}"); // clone since we need it later let line_prefix_o = Bytes::copy_from_slice(line_prefix.as_bytes()); let regex = regex::bytes::Regex::new("\n").unwrap(); let inp_stream = ReaderStream::new(inp); let oup_stream = stream! { yield Ok(line_prefix_o); for await chunk in inp_stream { match chunk { Err(e) => yield Err(e), Ok(chunk) => { if chunk.contains(&b'\n') { yield Ok(Bytes::copy_from_slice(®ex.replace_all(&chunk, line_prefix_n.as_bytes()))); } else { yield Ok(chunk); } } } } }; Box::pin(StreamReader::new(oup_stream)) } #[derive(Default)] pub struct PostprocPageBreaks {} impl GetMetadata for PostprocPageBreaks { fn metadata(&self) -> &super::AdapterMeta { lazy_static::lazy_static! { static ref METADATA: AdapterMeta = AdapterMeta { name: "postprocpagebreaks".to_owned(), version: 1, description: "Adds the page number to each line for an input file that specifies page breaks as ascii page break character.\nMainly to be used internally by the poppler adapter.".to_owned(), recurses: false, fast_matchers: vec![FastFileMatcher::FileExtension("asciipagebreaks".to_string())], slow_matchers: None, keep_fast_matchers_if_accurate: false, disabled_by_default: false }; } &METADATA } } #[async_trait] impl FileAdapter for PostprocPageBreaks { async fn adapt( &self, a: super::AdaptInfo, _detection_reason: &crate::matching::FileMatcher, ) -> Result { let read = postproc_pagebreaks(postproc_encoding(&a.line_prefix, a.inp).await?); // keep adapt info (filename etc) except replace inp let ai = AdaptInfo { inp: Box::pin(read), archive_recursion_depth: a.archive_recursion_depth + 1, filepath_hint: a .filepath_hint .parent() .map(PathBuf::from) .unwrap_or_default() .join(a.filepath_hint.file_stem().unwrap_or_default()), ..a }; Ok(one_file(ai)) } } /// Adds the prefix "Page N: " to each line, /// where N starts at one and is incremented for each ASCII Form Feed character in the input stream. /// ASCII form feeds are the page delimiters output by `pdftotext`. pub fn postproc_pagebreaks(input: impl AsyncRead + Send) -> impl AsyncRead + Send { let regex_linefeed = regex::bytes::Regex::new(r"\x0c").unwrap(); let regex_newline = regex::bytes::Regex::new("\n").unwrap(); let mut page_count: i32 = 1; let mut page_prefix: String = format!("\nPage {page_count}: "); let input_stream = ReaderStream::new(input); let output_stream = stream! { yield std::io::Result::Ok(Bytes::copy_from_slice(format!("Page {page_count}: ").as_bytes())); // store Page X: line prefixes in pending and only write it to the output when there is more text to be written // this is needed since pdftotext outputs a \x0c at the end of the last page let mut pending: Option = None; for await read_chunk in input_stream { let read_chunk = read_chunk?; let page_chunks = regex_linefeed.split(&read_chunk); for (chunk_idx, page_chunk) in page_chunks.enumerate() { if chunk_idx != 0 { page_count += 1; page_prefix = format!("\nPage {page_count}: "); if let Some(p) = pending.take() { yield Ok(p); } pending = Some(Bytes::copy_from_slice(page_prefix.as_bytes())); } if !page_chunk.is_empty() { if let Some(p) = pending.take() { yield Ok(p); } yield Ok(Bytes::copy_from_slice(®ex_newline.replace_all(page_chunk, page_prefix.as_bytes()))); } } } }; Box::pin(StreamReader::new(output_stream)) } #[cfg(test)] mod tests { use crate::preproc::loop_adapt; use crate::test_utils::*; use super::*; use anyhow::Result; use pretty_assertions::assert_eq; use tokio::fs::File; use tokio::pin; use tokio_test::io::Builder; use tokio_test::io::Mock; #[tokio::test] async fn test_with_pagebreaks() { let mut output: Vec = Vec::new(); let mock: Mock = Builder::new() .read(b"Hello\nWorld\x0cFoo Bar\n\x0cTest\x0c") .build(); let res = postproc_pagebreaks(mock).read_to_end(&mut output).await; println!("{}", String::from_utf8_lossy(&output)); assert!(res.is_ok()); assert_eq!( String::from_utf8_lossy(&output), "Page 1: Hello\nPage 1: World\nPage 2: Foo Bar\nPage 2: \nPage 3: Test" ); } #[tokio::test] async fn test_with_pagebreaks_chunks() { let mut output: Vec = Vec::new(); let mock: Mock = Builder::new() .read(b"Hello\nWo") .read(b"rld\x0c") .read(b"Foo Bar\n") .read(b"\x0cTest\x0c") .build(); let res = postproc_pagebreaks(mock).read_to_end(&mut output).await; println!("{}", String::from_utf8_lossy(&output)); assert!(res.is_ok()); assert_eq!( String::from_utf8_lossy(&output), "Page 1: Hello\nPage 1: World\nPage 2: Foo Bar\nPage 2: \nPage 3: Test" ); } #[tokio::test] async fn test_pdf_twoblank() -> Result<()> { let adapter = poppler_adapter(); let fname = test_data_dir().join("twoblankpages.pdf"); let rd = File::open(&fname).await?; let (a, d) = simple_adapt_info(&fname, Box::pin(rd)); let res = loop_adapt(&adapter, d, a).await?; let buf = adapted_to_vec(res).await?; assert_eq!( String::from_utf8(buf)?, "PREFIX:Page 1: PREFIX:Page 2: PREFIX:Page 3: HelloWorld PREFIX:Page 3: PREFIX:Page 3: ", ); Ok(()) } #[tokio::test] async fn test_postproc_prefix() { let mut output: Vec = Vec::new(); let mock: Mock = Builder::new().read(b"Hello\nWorld").build(); let res = postproc_prefix("prefix: ", mock) .read_to_end(&mut output) .await; println!("{}", String::from_utf8_lossy(&output)); assert!(res.is_ok()); assert_eq!(output, b"prefix: Hello\nprefix: World"); } async fn test_from_strs( pagebreaks: bool, line_prefix: &str, a: &'static str, b: &str, ) -> Result<()> { test_from_bytes(pagebreaks, line_prefix, a.as_bytes(), b).await } async fn test_from_bytes( pagebreaks: bool, line_prefix: &str, a: &'static [u8], b: &str, ) -> Result<()> { let mut oup = Vec::new(); let inp = Box::pin(Cursor::new(a)); let inp = postproc_encoding("", inp).await?; if pagebreaks { postproc_pagebreaks(inp).read_to_end(&mut oup).await?; } else { let x = postproc_prefix(line_prefix, inp); pin!(x); x.read_to_end(&mut oup).await?; } let c = String::from_utf8_lossy(&oup); assert_eq!(c, b, "source: {}", String::from_utf8_lossy(a)); Ok(()) } #[tokio::test] async fn test_utf16() -> Result<()> { let utf16lebom: &[u8] = &[ 0xff, 0xfe, 0x68, 0x00, 0x65, 0x00, 0x6c, 0x00, 0x6c, 0x00, 0x6f, 0x00, 0x20, 0x00, 0x77, 0x00, 0x6f, 0x00, 0x72, 0x00, 0x6c, 0x00, 0x64, 0x00, 0x20, 0x00, 0x3d, 0xd8, 0xa9, 0xdc, 0x0a, 0x00, ]; let utf16bebom: &[u8] = &[ 0xfe, 0xff, 0x00, 0x68, 0x00, 0x65, 0x00, 0x6c, 0x00, 0x6c, 0x00, 0x6f, 0x00, 0x20, 0x00, 0x77, 0x00, 0x6f, 0x00, 0x72, 0x00, 0x6c, 0x00, 0x64, 0x00, 0x20, 0xd8, 0x3d, 0xdc, 0xa9, 0x00, 0x0a, ]; test_from_bytes(false, "", utf16lebom, "hello world 💩\n").await?; test_from_bytes(false, "", utf16bebom, "hello world 💩\n").await?; Ok(()) } #[tokio::test] async fn post1() -> Result<()> { let inp = "What is this\nThis is a test\nFoo"; let oup = "Page 1: What is this\nPage 1: This is a test\nPage 1: Foo"; test_from_strs(true, "", inp, oup).await?; println!("\n\n\n\n"); let inp = "What is this\nThis is a test\nFoo\x0c\nHelloooo\nHow are you?\x0c\nGreat!"; let oup = "Page 1: What is this\nPage 1: This is a test\nPage 1: Foo\nPage 2: \nPage 2: Helloooo\nPage 2: How are you?\nPage 3: \nPage 3: Great!"; test_from_strs(true, "", inp, oup).await?; let inp = "What is this\nThis is a test\nFoo\x0c\nHelloooo\nHow are you?\x0c\nGreat!"; let oup = "foo.pdf:What is this\nfoo.pdf:This is a test\nfoo.pdf:Foo\x0c\nfoo.pdf:Helloooo\nfoo.pdf:How are you?\x0c\nfoo.pdf:Great!"; test_from_strs(false, "foo.pdf:", inp, oup).await?; Ok(()) } #[tokio::test] async fn test_binary_content() -> Result<()> { test_from_strs( false, "foo:", "this is a test \n\n \0 foo", "foo:[rga: binary data]", ) .await?; test_from_strs(false, "foo:", "\0", "foo:[rga: binary data]").await?; Ok(()) } /*#[test] fn chardet() -> Result<()> { let mut d = chardetng::EncodingDetector::new(); let mut v = Vec::new(); std::fs::File::open("/home/phire/passwords-2018.kdbx.old").unwrap().read_to_end(&mut v).unwrap(); d.feed(&v, false); println!("foo {:?}", d.guess(None, true)); Ok(()) }*/ } ================================================ FILE: src/adapters/sqlite.rs ================================================ use super::{writing::WritingFileAdapter, *}; use anyhow::Result; use async_trait::async_trait; use lazy_static::lazy_static; use log::*; use rusqlite::types::ValueRef; use rusqlite::*; use std::{convert::TryInto, io::Write}; use tokio::io::AsyncWrite; use tokio_util::io::SyncIoBridge; static EXTENSIONS: &[&str] = &["db", "db3", "sqlite", "sqlite3"]; lazy_static! { static ref METADATA: AdapterMeta = AdapterMeta { name: "sqlite".to_owned(), version: 1, description: "Uses sqlite bindings to convert sqlite databases into a simple plain text format" .to_owned(), recurses: false, // set to true if we decide to make sqlite blobs searchable (gz blob in db is kinda common I think) fast_matchers: EXTENSIONS .iter() .map(|s| FastFileMatcher::FileExtension(s.to_string())) .collect(), slow_matchers: Some(vec![FileMatcher::MimeType( "application/x-sqlite3".to_owned() )]), keep_fast_matchers_if_accurate: false, disabled_by_default: false }; } #[derive(Default, Clone)] pub struct SqliteAdapter; impl SqliteAdapter { pub fn new() -> Self { Self } } impl GetMetadata for SqliteAdapter { fn metadata(&self) -> &AdapterMeta { &METADATA } } fn format_blob(b: ValueRef) -> String { use ValueRef; match b { ValueRef::Null => "NULL".to_owned(), ValueRef::Integer(i) => format!("{}", i), ValueRef::Real(i) => format!("{}", i), ValueRef::Text(i) => format!("'{}'", String::from_utf8_lossy(i).replace('\'', "''")), ValueRef::Blob(b) => format!( "[blob {}B]", size_format::SizeFormatterSI::new( // can't be larger than 2GB anyways b.len().try_into().unwrap() ) ), } } fn synchronous_dump_sqlite(ai: AdaptInfo, mut s: impl Write) -> Result<()> { let AdaptInfo { is_real_file, filepath_hint, line_prefix, .. } = ai; if !is_real_file { // db is in an archive // todo: read to memory and then use that blob if size < max writeln!(s, "{line_prefix}[rga: skipping sqlite in archive]",)?; return Ok(()); } let inp_fname = filepath_hint; let conn = Connection::open_with_flags(&inp_fname, OpenFlags::SQLITE_OPEN_READ_ONLY) .with_context(|| format!("opening sqlite connection to {}", inp_fname.display()))?; let tables: Vec = conn .prepare("select name from sqlite_master where type='table'") .context("while preparing query")? .query_map([], |r| r.get::<_, String>(0)) .context("while executing query")? .filter_map(|e| e.ok()) .collect(); debug!("db has {} tables", tables.len()); for table in tables { // can't use query param at that position let mut sel = conn.prepare(&format!( "select * from {}", rusqlite::vtab::escape_double_quote(&table) ))?; let col_names: Vec = sel .column_names() .into_iter() .map(|e| e.to_owned()) .collect(); let mut z = sel.query([])?; // writeln!(oup, "{}: {}", table, cols.join(", "))?; // kind of shitty (lossy) output. maybe output real csv or something? while let Some(row) = z.next()? { let row_str = col_names .iter() .enumerate() .map(|(i, e)| Ok(format!("{}={}", e, format_blob(row.get_ref(i)?)))) .collect::>>()? .join(", "); writeln!(s, "{line_prefix}{table}: {row_str}",)?; } } Ok(()) } #[async_trait] impl WritingFileAdapter for SqliteAdapter { async fn adapt_write( ai: AdaptInfo, _detection_reason: &FileMatcher, oup: Pin>, ) -> Result<()> { if ai.filepath_hint.file_name().and_then(|e| e.to_str()) == Some("Thumbs.db") { // skip windows thumbnail cache return Ok(()); } let oup_sync = SyncIoBridge::new(oup); tokio::task::spawn_blocking(|| synchronous_dump_sqlite(ai, oup_sync)) .await? .context("in synchronous sqlite task")?; Ok(()) } } #[cfg(test)] mod test { use super::*; use crate::test_utils::*; use pretty_assertions::assert_eq; #[tokio::test] async fn simple() -> Result<()> { let adapter: Box = Box::::default(); let fname = test_data_dir().join("hello.sqlite3"); let (a, d) = simple_fs_adapt_info(&fname).await?; let res = adapter.adapt(a, &d).await?; let buf = adapted_to_vec(res).await?; assert_eq!( String::from_utf8(buf)?, "PREFIX:tbl: greeting='hello', from='sqlite database!'\nPREFIX:tbl2: x=123, y=456.789\n", ); Ok(()) } } ================================================ FILE: src/adapters/tar.rs ================================================ use crate::{ adapted_iter::AdaptedFilesIterBox, adapters::AdapterMeta, matching::{FastFileMatcher, FileMatcher}, print_bytes, }; use anyhow::*; use async_stream::stream; use async_trait::async_trait; use lazy_static::lazy_static; use log::*; use std::path::PathBuf; use tokio_stream::StreamExt; use super::{AdaptInfo, FileAdapter, GetMetadata}; static EXTENSIONS: &[&str] = &["tar"]; lazy_static! { static ref METADATA: AdapterMeta = AdapterMeta { name: "tar".to_owned(), version: 1, description: "Reads a tar file as a stream and recurses down into its contents".to_owned(), recurses: true, fast_matchers: EXTENSIONS .iter() .map(|s| FastFileMatcher::FileExtension(s.to_string())) .collect(), slow_matchers: None, keep_fast_matchers_if_accurate: true, disabled_by_default: false }; } #[derive(Default, Clone)] pub struct TarAdapter; impl TarAdapter { pub fn new() -> Self { Self } } impl GetMetadata for TarAdapter { fn metadata(&self) -> &AdapterMeta { &METADATA } } #[async_trait] impl FileAdapter for TarAdapter { async fn adapt( &self, ai: AdaptInfo, _detection_reason: &FileMatcher, ) -> Result { let AdaptInfo { filepath_hint, inp, line_prefix, archive_recursion_depth, config, postprocess, .. } = ai; let mut archive = ::tokio_tar::Archive::new(inp); let mut entries = archive.entries()?; let s = stream! { while let Some(entry) = entries.next().await { let file = entry?; if tokio_tar::EntryType::Regular == file.header().entry_type() { let path = PathBuf::from(file.path()?.to_owned()); debug!( "{}|{}: {}", filepath_hint.display(), path.display(), print_bytes(file.header().size().unwrap_or(0) as f64), ); let line_prefix = &format!("{}{}: ", line_prefix, path.display()); let ai2: AdaptInfo = AdaptInfo { filepath_hint: path, is_real_file: false, archive_recursion_depth: archive_recursion_depth + 1, inp: Box::pin(file), line_prefix: line_prefix.to_string(), config: config.clone(), postprocess, }; yield Ok(ai2); } } }; Ok(Box::pin(s)) } } #[cfg(test)] mod tests { use super::*; use crate::{preproc::loop_adapt, test_utils::*}; use pretty_assertions::assert_eq; use tokio::fs::File; #[tokio::test] async fn test_simple_tar() -> Result<()> { let filepath = test_data_dir().join("hello.tar"); let (a, d) = simple_adapt_info(&filepath, Box::pin(File::open(&filepath).await?)); let adapter = TarAdapter::new(); let r = loop_adapt(&adapter, d, a).await.context("adapt")?; let o = adapted_to_vec(r).await.context("adapted_to_vec")?; assert_eq!( String::from_utf8(o).context("parsing utf8")?, "PREFIX:dir/file-b.pdf: Page 1: hello world PREFIX:dir/file-b.pdf: Page 1: this is just a test. PREFIX:dir/file-b.pdf: Page 1: PREFIX:dir/file-b.pdf: Page 1: 1 PREFIX:dir/file-b.pdf: Page 1: PREFIX:dir/file-b.pdf: Page 1: PREFIX:dir/file-a.pdf: Page 1: hello world PREFIX:dir/file-a.pdf: Page 1: this is just a test. PREFIX:dir/file-a.pdf: Page 1: PREFIX:dir/file-a.pdf: Page 1: 1 PREFIX:dir/file-a.pdf: Page 1: PREFIX:dir/file-a.pdf: Page 1: " ); Ok(()) } } ================================================ FILE: src/adapters/writing.rs ================================================ use std::pin::Pin; use crate::{adapted_iter::one_file, join_handle_to_stream, to_io_err}; use super::{AdaptInfo, FileAdapter, GetMetadata}; use anyhow::{Context, Result}; use async_trait::async_trait; use tokio::io::{AsyncReadExt, AsyncWrite}; #[async_trait] pub trait WritingFileAdapter: GetMetadata + Send + Sync + Clone { async fn adapt_write( a: super::AdaptInfo, detection_reason: &crate::matching::FileMatcher, oup: Pin>, ) -> Result<()>; } macro_rules! async_writeln { ($dst: expr_2021) => { { tokio::io::AsyncWriteExt::write_all(&mut $dst, b"\n").await } }; ($dst: expr_2021, $fmt: expr_2021) => { { use std::io::Write; let mut buf = Vec::::new(); writeln!(buf, $fmt)?; tokio::io::AsyncWriteExt::write_all(&mut $dst, &buf).await } }; ($dst: expr_2021, $fmt: expr_2021, $($arg: tt)*) => { { use std::io::Write; let mut buf = Vec::::new(); writeln!(buf, $fmt, $( $arg )*)?; tokio::io::AsyncWriteExt::write_all(&mut $dst, &buf).await } }; } pub(crate) use async_writeln; #[async_trait] impl FileAdapter for T where T: WritingFileAdapter, { async fn adapt( &self, a: super::AdaptInfo, detection_reason: &crate::matching::FileMatcher, ) -> Result { let name = self.metadata().name.clone(); let (w, r) = tokio::io::duplex(128 * 1024); let d2 = detection_reason.clone(); let archive_recursion_depth = a.archive_recursion_depth + 1; let filepath_hint = format!("{}.txt", a.filepath_hint.to_string_lossy()); let postprocess = a.postprocess; let line_prefix = a.line_prefix.clone(); let config = a.config.clone(); let joiner = tokio::spawn(async move { let x = d2; T::adapt_write(a, &x, Box::pin(w)) .await .with_context(|| format!("in {}.adapt_write", name)) .map_err(to_io_err) }); Ok(one_file(AdaptInfo { is_real_file: false, filepath_hint: filepath_hint.into(), archive_recursion_depth, config, inp: Box::pin(r.chain(join_handle_to_stream(joiner))), line_prefix, postprocess, })) } } ================================================ FILE: src/adapters/zip.rs ================================================ use super::*; use crate::print_bytes; use anyhow::*; use async_stream::stream; use lazy_static::lazy_static; use log::*; // TODO: allow users to configure file extensions instead of hard coding the list // https://github.com/phiresky/ripgrep-all/pull/208#issuecomment-2173241243 static EXTENSIONS: &[&str] = &["zip", "jar", "xpi", "kra", "snagx"]; lazy_static! { static ref METADATA: AdapterMeta = AdapterMeta { name: "zip".to_owned(), version: 1, description: "Reads a zip file as a stream and recurses down into its contents".to_owned(), recurses: true, fast_matchers: EXTENSIONS .iter() .map(|s| FastFileMatcher::FileExtension(s.to_string())) .collect(), slow_matchers: Some(vec![FileMatcher::MimeType("application/zip".to_owned())]), keep_fast_matchers_if_accurate: false, disabled_by_default: false }; } #[derive(Default, Clone)] pub struct ZipAdapter; impl ZipAdapter { pub fn new() -> Self { Self } } impl GetMetadata for ZipAdapter { fn metadata(&self) -> &AdapterMeta { &METADATA } } #[async_trait] impl FileAdapter for ZipAdapter { async fn adapt( &self, ai: AdaptInfo, _detection_reason: &FileMatcher, ) -> Result { // let (s, r) = mpsc::channel(1); let AdaptInfo { inp, filepath_hint, archive_recursion_depth, postprocess, line_prefix, config, is_real_file, .. } = ai; if is_real_file { use async_zip::read::fs::ZipFileReader; let zip = ZipFileReader::new(&filepath_hint).await?; let s = stream! { for i in 0..zip.file().entries().len() { let file = zip.get_entry(i)?; let reader = zip.entry(i).await?; if file.filename().ends_with('/') { continue; } debug!( "{}{}|{}: {} ({} packed)", line_prefix, filepath_hint.display(), file.filename(), print_bytes(file.uncompressed_size() as f64), print_bytes(file.compressed_size() as f64) ); let new_line_prefix = format!("{}{}: ", line_prefix, file.filename()); let fname = PathBuf::from(file.filename()); tokio::pin!(reader); // SAFETY: this should be solvable without unsafe but idk how :( // the issue is that ZipEntryReader borrows from ZipFileReader, but we need to yield it here into the stream // but then it can't borrow from the ZipFile let reader2 = unsafe { std::mem::transmute::< Pin<&mut (dyn AsyncRead + Send)>, Pin<&'static mut (dyn AsyncRead + Send)>, >(reader) }; yield Ok(AdaptInfo { filepath_hint: fname, is_real_file: false, inp: Box::pin(reader2), line_prefix: new_line_prefix, archive_recursion_depth: archive_recursion_depth + 1, postprocess, config: config.clone(), }); } }; Ok(Box::pin(s)) } else { use async_zip::read::stream::ZipFileReader; let mut zip = ZipFileReader::new(inp); let s = stream! { trace!("begin zip"); while let Some(mut entry) = zip.next_entry().await? { trace!("zip next entry"); let file = entry.entry(); if file.filename().ends_with('/') { zip = entry.skip().await?; continue; } debug!( "{}{}|{}: {} ({} packed)", line_prefix, filepath_hint.display(), file.filename(), print_bytes(file.uncompressed_size() as f64), print_bytes(file.compressed_size() as f64) ); let new_line_prefix = format!("{}{}: ", line_prefix, file.filename()); let fname = PathBuf::from(file.filename()); let reader = entry.reader(); tokio::pin!(reader); // SAFETY: this should be solvable without unsafe but idk how :( // the issue is that ZipEntryReader borrows from ZipFileReader, but we need to yield it here into the stream // but then it can't borrow from the ZipFile let reader2 = unsafe { std::mem::transmute::< Pin<&mut (dyn AsyncRead + Send)>, Pin<&'static mut (dyn AsyncRead + Send)>, >(reader) }; yield Ok(AdaptInfo { filepath_hint: fname, is_real_file: false, inp: Box::pin(reader2), line_prefix: new_line_prefix, archive_recursion_depth: archive_recursion_depth + 1, postprocess, config: config.clone(), }); zip = entry.done().await.context("going to next file in zip but entry was not read fully")?; } trace!("zip over"); }; Ok(Box::pin(s)) } } } /*struct ZipAdaptIter { inp: AdaptInfo, } impl<'a> AdaptedFilesIter for ZipAdaptIter<'a> { fn next<'b>(&'b mut self) -> Option> { let line_prefix = &self.inp.line_prefix; let filepath_hint = &self.inp.filepath_hint; let archive_recursion_depth = &self.inp.archive_recursion_depth; let postprocess = self.inp.postprocess; ::zip::read::read_zipfile_from_stream(&mut self.inp.inp) .unwrap() .and_then(|file| { if file.is_dir() { return None; } debug!( "{}{}|{}: {} ({} packed)", line_prefix, filepath_hint.to_string_lossy(), file.name(), print_bytes(file.size() as f64), print_bytes(file.compressed_size() as f64) ); let line_prefix = format!("{}{}: ", line_prefix, file.name()); Some(AdaptInfo { filepath_hint: PathBuf::from(file.name()), is_real_file: false, inp: Box::new(file), line_prefix, archive_recursion_depth: archive_recursion_depth + 1, postprocess, config: RgaConfig::default(), //config.clone(), }) }) } }*/ #[cfg(test)] mod test { use async_zip::{Compression, ZipEntryBuilder, write::ZipFileWriter}; use super::*; use crate::{preproc::loop_adapt, test_utils::*}; use pretty_assertions::assert_eq; #[async_recursion::async_recursion] async fn create_zip(fname: &str, content: &str, add_inner: bool) -> Result> { let v = Vec::new(); let mut cursor = std::io::Cursor::new(v); let mut zip = ZipFileWriter::new(&mut cursor); let options = ZipEntryBuilder::new(fname.to_string(), Compression::Stored); zip.write_entry_whole(options, content.as_bytes()).await?; if add_inner { let opts = ZipEntryBuilder::new("inner.zip".to_string(), Compression::Stored); zip.write_entry_whole( opts, &create_zip("inner.txt", "inner text file", false).await?, ) .await?; } zip.close().await?; Ok(cursor.into_inner()) } #[tokio::test] async fn only_seek_zip_fs() -> Result<()> { let zip = test_data_dir().join("only-seek-zip.zip"); let (a, d) = simple_fs_adapt_info(&zip).await?; let _v = adapted_to_vec(loop_adapt(&ZipAdapter::new(), d, a).await?).await?; // assert_eq!(String::from_utf8(v)?, ""); Ok(()) } /*#[tokio::test] async fn only_seek_zip_mem() -> Result<()> { let zip = test_data_dir().join("only-seek-zip.zip"); let (a, d) = simple_adapt_info(&zip, Box::pin(File::open(&zip).await?)); let v = adapted_to_vec(loop_adapt(&ZipAdapter::new(), d, a)?).await?; // assert_eq!(String::from_utf8(v)?, ""); Ok(()) }*/ #[tokio::test] async fn recurse() -> Result<()> { let zipfile = create_zip("outer.txt", "outer text file", true).await?; let adapter = ZipAdapter::new(); let (a, d) = simple_adapt_info( &PathBuf::from("outer.zip"), Box::pin(std::io::Cursor::new(zipfile)), ); let buf = adapted_to_vec(loop_adapt(&adapter, d, a).await?).await?; assert_eq!( String::from_utf8(buf)?, "PREFIX:outer.txt: outer text file\nPREFIX:inner.zip: inner.txt: inner text file\n", ); Ok(()) } } ================================================ FILE: src/adapters.rs ================================================ pub mod custom; pub mod decompress; pub mod ffmpeg; pub mod mbox; pub mod postproc; use std::sync::Arc; pub mod sqlite; pub mod tar; pub mod writing; pub mod zip; use crate::{adapted_iter::AdaptedFilesIterBox, config::RgaConfig, matching::*}; use anyhow::{Context, Result, format_err}; use async_trait::async_trait; use custom::BUILTIN_SPAWNING_ADAPTERS; use custom::CustomAdapterConfig; use log::*; use tokio::io::AsyncRead; use core::fmt::Debug; use std::borrow::Cow; use std::collections::HashMap; use std::iter::Iterator; use std::path::PathBuf; use std::pin::Pin; use self::postproc::PostprocPageBreaks; pub type ReadBox = Pin>; pub struct AdapterMeta { /// unique short name of this adapter (a-z0-9 only) pub name: String, /// version identifier. used to key cache entries, change if your output format changes pub version: i32, pub description: String, /// indicates whether this adapter can descend (=call rga_preproc again). if true, the cache key needs to include the list of active adapters pub recurses: bool, /// list of matchers (interpreted as a OR b OR ...) pub fast_matchers: Vec, /// list of matchers when we have mime type detection active (interpreted as ORed) /// warning: this *overrides* the fast matchers pub slow_matchers: Option>, /// if true, slow_matchers is merged with fast matchers if accurate is enabled /// for example, in sqlite you want this disabled since the db extension can mean other things and the mime type matching is very accurate for sqlite. /// but for tar you want it enabled, since the tar extension is very accurate but the tar mime matcher can have false negatives pub keep_fast_matchers_if_accurate: bool, // if true, adapter is only used when user lists it in `--rga-adapters` pub disabled_by_default: bool, } impl AdapterMeta { // todo: this is pretty ugly pub fn get_matchers<'a>( &'a self, slow: bool, ) -> Box> + 'a> { match ( slow, self.keep_fast_matchers_if_accurate, &self.slow_matchers, ) { (true, false, Some(sm)) => Box::new(sm.iter().map(Cow::Borrowed)), (true, true, Some(sm)) => Box::new( sm.iter().map(Cow::Borrowed).chain( self.fast_matchers .iter() .map(|e| Cow::Owned(FileMatcher::Fast(e.clone()))), ), ), // don't have slow matchers or slow matching disabled (true, _, None) | (false, _, _) => Box::new( self.fast_matchers .iter() .map(|e| Cow::Owned(FileMatcher::Fast(e.clone()))), ), } } } pub trait GetMetadata { fn metadata(&self) -> &AdapterMeta; } #[async_trait] pub trait FileAdapter: GetMetadata + Send + Sync { /// adapt a file. /// /// detection_reason is the Matcher that was used to identify this file. Unless --rga-accurate was given, it is always a FastMatcher async fn adapt( &self, a: AdaptInfo, detection_reason: &FileMatcher, ) -> Result; } pub struct AdaptInfo { /// file path. May not be an actual file on the file system (e.g. in an archive). Used for matching file extensions. pub filepath_hint: PathBuf, /// true if filepath_hint is an actual file on the file system pub is_real_file: bool, /// depth at which this file is in archives. 0 for real filesystem pub archive_recursion_depth: i32, /// stream to read the file from. can be from a file or from some decoder pub inp: ReadBox, /// prefix every output line with this string to better indicate the file's location if it is in some archive pub line_prefix: String, pub postprocess: bool, pub config: RgaConfig, } /// (enabledAdapters, disabledAdapters) type AdaptersTuple = (Vec>, Vec>); pub fn get_all_adapters(custom_adapters: Option>) -> AdaptersTuple { // order in descending priority let mut adapters: Vec> = vec![]; if let Some(custom_adapters) = custom_adapters { for adapter_config in custom_adapters { adapters.push(Arc::new(adapter_config.to_adapter())); } } let internal_adapters: Vec> = vec![ Arc::new(PostprocPageBreaks::default()), Arc::new(ffmpeg::FFmpegAdapter::new()), Arc::new(zip::ZipAdapter::new()), Arc::new(decompress::DecompressAdapter::new()), Arc::new(mbox::MboxAdapter::new()), Arc::new(tar::TarAdapter::new()), Arc::new(sqlite::SqliteAdapter::new()), ]; adapters.extend( BUILTIN_SPAWNING_ADAPTERS .iter() .map(|e| -> Arc { Arc::new(e.to_adapter()) }), ); adapters.extend(internal_adapters); adapters .into_iter() .partition(|e| !e.metadata().disabled_by_default) } /** * filter adapters by given names: * * - "" means use default enabled adapter list * - "a,b" means use adapters a,b * - "-a,b" means use default list except for a and b * - "+a,b" means use default list but also a and b (a,b will be prepended to the list so given higher priority) */ pub fn get_adapters_filtered>( custom_adapters: Option>, adapter_names: &[T], ) -> Result>> { let (def_enabled_adapters, def_disabled_adapters) = get_all_adapters(custom_adapters); let adapters = if !adapter_names.is_empty() { let adapters_map: HashMap<_, _> = def_enabled_adapters .iter() .chain(def_disabled_adapters.iter()) .map(|e| (e.metadata().name.clone(), e.clone())) .collect(); let mut adapters = vec![]; let mut subtractive = false; let mut additive = false; for (i, name) in adapter_names.iter().enumerate() { let mut name = name.as_ref(); if i == 0 && (name.starts_with('-')) { subtractive = true; name = &name[1..]; adapters = def_enabled_adapters.clone(); } else if i == 0 && (name.starts_with('+')) { name = &name[1..]; adapters = def_enabled_adapters.clone(); additive = true; } if subtractive { let inx = adapters .iter() .position(|a| a.metadata().name == name) .ok_or_else(|| format_err!("Could not remove adapter {}: Not in list", name))?; adapters.remove(inx); } else { let adapter = adapters_map .get(name) .ok_or_else(|| { format_err!( "Unknown adapter: \"{}\". Known adapters: {}", name, adapters_map .keys() .map(|e| e.as_ref()) .collect::>() .join(", ") ) })? .clone(); if additive { adapters.insert(0, adapter); } else { adapters.push(adapter); } } } adapters } else { def_enabled_adapters }; debug!( "Chosen available adapters: {}", adapters .iter() .map(|a| a.metadata().name.clone()) .collect::>() .join(",") ); Ok(adapters) } ================================================ FILE: src/bin/rga-fzf-open.rs ================================================ use anyhow::Context; use std::process::Command; // TODO: add --rg-params=..., --rg-preview-params=... and --fzf-params=... params // TODO: remove passthrough_args fn main() -> anyhow::Result<()> { env_logger::init(); let mut args = std::env::args().skip(1); let query = args.next().context("no query")?; let fname = args.next().context("no filename")?; // let instance_id = std::env::var("RGA_FZF_INSTANCE").unwrap_or("unk".to_string()); if fname.ends_with(".pdf") { use std::io::ErrorKind::*; let worked = Command::new("evince") .arg("--find") .arg(&query) .arg(&fname) .spawn() .map_or_else( |err| match err.kind() { NotFound => Ok(false), _ => Err(err), }, |_| Ok(true), )?; if worked { return Ok(()); } } Ok(open::that_detached(&fname)?) } ================================================ FILE: src/bin/rga-fzf.rs ================================================ use anyhow::Context; use rga::adapters::custom::map_exe_error; use ripgrep_all as rga; use std::process::{Command, Stdio}; // TODO: add --rg-params=..., --rg-preview-params=... and --fzf-params=... params // TODO: remove passthrough_args fn main() -> anyhow::Result<()> { env_logger::init(); let mut passthrough_args: Vec = std::env::args().skip(1).collect(); let inx = passthrough_args.iter().position(|e| !e.starts_with('-')); let initial_query = if let Some(inx) = inx { passthrough_args.remove(inx) } else { "".to_string() }; let exe = std::env::current_exe().context("Could not get executable location")?; let preproc_exe = exe.with_file_name("rga"); let preproc_exe = preproc_exe .to_str() .context("rga executable is in non-unicode path")?; let open_exe = exe.with_file_name("rga-fzf-open"); let open_exe = open_exe .to_str() .context("rga-fzf-open executable is in non-unicode path")?; let rg_prefix = format!("{preproc_exe} --files-with-matches --rga-cache-max-blob-len=10M"); let child = Command::new("fzf") .arg(format!( "--preview={preproc_exe} --pretty --context 5 {{q}} --rga-fzf-path=_{{}}" )) .arg("--preview-window=70%:wrap") .arg("--phony") .arg("--query") .arg(&initial_query) .arg("--print-query") .arg(format!("--bind=change:reload: {rg_prefix} {{q}}")) .arg(format!("--bind=ctrl-m:execute:{open_exe} {{q}} {{}}")) .env( "FZF_DEFAULT_COMMAND", format!("{} '{}'", rg_prefix, &initial_query), ) .env("RGA_FZF_INSTANCE", format!("{}", std::process::id())) // may be useful to open stuff in the same tab .stdout(Stdio::piped()) .spawn() .map_err(|e| map_exe_error(e, "fzf", "Please make sure you have fzf installed."))?; let output = child.wait_with_output()?; let mut x = output.stdout.split(|e| e == &b'\n'); let final_query = std::str::from_utf8(x.next().context("fzf output empty")?).context("fzf query not utf8")?; let selected_file = std::str::from_utf8(x.next().context("fzf output not two line")?) .context("fzf ofilename not utf8")?; println!("query='{final_query}', file='{selected_file}'"); Ok(()) } ================================================ FILE: src/bin/rga-preproc.rs ================================================ use rga::adapters::*; use rga::preproc::*; use rga::print_dur; use ripgrep_all as rga; use anyhow::Context; use log::debug; use std::time::Instant; use tokio::fs::File; #[tokio::main] async fn main() -> anyhow::Result<()> { env_logger::init(); let mut arg_arr: Vec = std::env::args_os().collect(); let last = arg_arr.pop().expect("No filename specified"); let config = rga::config::parse_args(arg_arr, true)?; //clap::App::new("rga-preproc").arg(Arg::from_usage()) let path = { let filepath = last; std::env::current_dir()?.join(filepath) }; let i = File::open(&path) .await .context("Specified input file not found")?; let mut o = tokio::io::stdout(); let ai = AdaptInfo { inp: Box::pin(i), filepath_hint: path, is_real_file: true, line_prefix: "".to_string(), archive_recursion_depth: 0, postprocess: !config.no_prefix_filenames, config, }; let start = Instant::now(); let mut oup = rga_preproc(ai).await.context("during preprocessing")?; debug!("finding and starting adapter took {}", print_dur(start)); let res = tokio::io::copy(&mut oup, &mut o).await; if let Err(e) = res { if e.kind() == std::io::ErrorKind::BrokenPipe { // happens if e.g. ripgrep detects binary data in the pipe so it cancels reading debug!("output cancelled (broken pipe)"); } else { Err(e).context("copying adapter output to stdout")?; } } debug!("running adapter took {} total", print_dur(start)); Ok(()) } ================================================ FILE: src/bin/rga.rs ================================================ use anyhow::Result; use rga::adapters::custom::map_exe_error; use rga::adapters::*; use rga::config::{RgaConfig, split_args}; use rga::matching::*; use rga::print_dur; use ripgrep_all as rga; use structopt::StructOpt; use schemars::schema_for; use std::process::Command; use std::time::Instant; fn list_adapters(args: RgaConfig) -> Result<()> { let (enabled_adapters, disabled_adapters) = get_all_adapters(args.custom_adapters); println!("Adapters:\n"); let print = |adapter: std::sync::Arc| { let meta = adapter.metadata(); let matchers = meta .fast_matchers .iter() .map(|m| match m { FastFileMatcher::FileExtension(ext) => format!(".{ext}"), }) .collect::>() .join(", "); let slow_matchers = meta .slow_matchers .as_ref() .unwrap_or(&vec![]) .iter() .filter_map(|m| match m { FileMatcher::MimeType(x) => Some(x.to_string()), FileMatcher::Fast(_) => None, }) .collect::>() .join(", "); print!( " - **{name}**\n {desc} \n Extensions: {matchers} \n Mime Types: {mime} \n", name = meta.name, desc = meta.description.replace('\n', "\n "), matchers = matchers, mime = slow_matchers, ); println!(); }; for adapter in enabled_adapters { print(adapter) } println!( "The following adapters are disabled by default, and can be enabled using '--rga-adapters=+foo,bar':\n" ); for adapter in disabled_adapters { print(adapter) } Ok(()) } fn main() -> anyhow::Result<()> { // set debugging as early as possible if std::env::args().any(|e| e == "--debug") { // TODO: Audit that the environment access only happens in single-threaded code. unsafe { std::env::set_var("RUST_LOG", "debug") }; } env_logger::init(); let (config, mut passthrough_args) = split_args(false)?; if config.print_config_schema { println!("{}", serde_json::to_string_pretty(&schema_for!(RgaConfig))?); return Ok(()); } if config.list_adapters { return list_adapters(config); } if let Some(path) = config.fzf_path { if path == "_" { // fzf found no result, ignore everything and return println!("[no file found]"); return Ok(()); } passthrough_args.push(std::ffi::OsString::from(&path[1..])); } if passthrough_args.is_empty() { // rg would show help. Show own help instead. RgaConfig::clap().print_help()?; println!(); return Ok(()); } let adapters = get_adapters_filtered(config.custom_adapters.clone(), &config.adapters)?; let pre_glob = if !config.accurate { let extensions = adapters .iter() .flat_map(|a| &a.metadata().fast_matchers) .flat_map(|m| match m { FastFileMatcher::FileExtension(ext) => vec![ext.clone(), ext.to_ascii_uppercase()], }) .collect::>() .join(","); format!("*.{{{extensions}}}") } else { "*".to_owned() }; add_exe_to_path()?; let rg_args = vec![ "--no-line-number", // smart case by default because within weird files // we probably can't really trust casing anyways "--smart-case", ]; let exe = std::env::current_exe().expect("Could not get executable location"); let preproc_exe = exe.with_file_name("rga-preproc"); let before = Instant::now(); let mut cmd = Command::new("rg"); cmd.args(rg_args) .arg("--pre") .arg(preproc_exe) .arg("--pre-glob") .arg(pre_glob) .args(passthrough_args); log::debug!("rg command to run: {:?}", cmd); let mut child = cmd .spawn() .map_err(|e| map_exe_error(e, "rg", "Please make sure you have ripgrep installed."))?; let result = child.wait()?; log::debug!("running rg took {}", print_dur(before)); if !result.success() { std::process::exit(result.code().unwrap_or(1)); } Ok(()) } /// add the directory that contains `rga` to PATH, so rga-preproc can find pandoc etc (if we are on Windows where we include dependent binaries) fn add_exe_to_path() -> Result<()> { use std::env; let mut exe = env::current_exe().expect("Could not get executable location"); // let preproc_exe = exe.with_file_name("rga-preproc"); exe.pop(); // dirname let path = env::var_os("PATH").unwrap_or_default(); let paths = env::split_paths(&path).collect::>(); // prepend: prefer bundled versions to system-installed versions of binaries // solves https://github.com/phiresky/ripgrep-all/issues/32 // may be somewhat of a security issue if rga binary is in installed in unprivileged locations let paths = [&[exe.to_owned(), exe.join("lib")], &paths[..]].concat(); let new_path = env::join_paths(paths)?; // TODO: Audit that the environment access only happens in single-threaded code. unsafe { env::set_var("PATH", new_path) }; Ok(()) } ================================================ FILE: src/caching_writer.rs ================================================ use std::{future::Future, pin::Pin}; use anyhow::{Context, Result}; use async_compression::tokio::write::ZstdEncoder; use async_stream::stream; use crate::to_io_err; use log::*; use tokio::io::{AsyncRead, AsyncWriteExt}; use tokio_stream::StreamExt; use tokio_util::io::{ReaderStream, StreamReader}; type FinishHandler = dyn FnOnce((u64, Option>)) -> Pin> + Send>> + Send; /** * wrap a AsyncRead so that it is passthrough, * but also the written data is compressed and written into a buffer, * unless more than max_cache_size bytes is written, then the cache is dropped and it is pure passthrough. */ pub fn async_read_and_write_to_cache<'a>( inp: impl AsyncRead + Send + 'a, max_cache_size: usize, compression_level: i32, on_finish: Box, ) -> Result>> { let inp = Box::pin(inp); let mut zstd_writer = Some(ZstdEncoder::with_quality( Vec::new(), async_compression::Level::Precise(compression_level), )); let mut bytes_written = 0; let s = stream! { let mut stream = ReaderStream::new(inp); while let Some(bytes) = stream.next().await { trace!("read bytes: {:?}", bytes); if let (Ok(bytes), Some(writer)) = (&bytes, zstd_writer.as_mut()) { writer.write_all(bytes).await?; bytes_written += bytes.len() as u64; let compressed_len = writer.get_ref().len(); trace!("wrote {} to zstd, len now {}", bytes.len(), compressed_len); if compressed_len > max_cache_size { debug!("cache longer than max, dropping"); //writer.finish(); zstd_writer.take(); } } yield bytes; } trace!("eof"); // EOF, call on_finish let finish = { match zstd_writer.take() { Some(mut writer) => { writer.shutdown().await?; let res = writer.into_inner(); trace!("EOF"); if res.len() <= max_cache_size { trace!("writing {} bytes to cache", res.len()); (bytes_written, Some(res)) } else { trace!("cache longer than max, dropping"); (bytes_written, None) } } _ => { (bytes_written, None) }} }; // EOF, finish! on_finish(finish).await.context("write_to_cache on_finish") .map_err(to_io_err)?; }; Ok(Box::pin(StreamReader::new(s))) } ================================================ FILE: src/config.rs ================================================ use crate::{adapters::custom::CustomAdapterConfig, project_dirs}; use anyhow::{Context, Result}; use derive_more::FromStr; use log::*; use schemars::JsonSchema; use serde::{Deserialize, Serialize}; use std::ffi::OsString; use std::io::Read; use std::{fs::File, io::Write, iter::IntoIterator, path::PathBuf, str::FromStr}; use structopt::StructOpt; fn is_default(t: &T) -> bool { t == &T::default() } #[derive(JsonSchema, Debug, Serialize, Deserialize, Copy, Clone, PartialEq, FromStr)] pub struct CacheCompressionLevel(pub i32); impl std::fmt::Display for CacheCompressionLevel { fn fmt(&self, f: &mut std::fmt::Formatter<'_>) -> std::fmt::Result { write!(f, "{}", self.0) } } impl Default for CacheCompressionLevel { fn default() -> Self { Self(12) } } #[derive(JsonSchema, Debug, Serialize, Deserialize, Copy, Clone, PartialEq, FromStr)] pub struct MaxArchiveRecursion(pub i32); impl std::fmt::Display for MaxArchiveRecursion { fn fmt(&self, f: &mut std::fmt::Formatter<'_>) -> std::fmt::Result { write!(f, "{}", self.0) } } impl Default for MaxArchiveRecursion { fn default() -> Self { Self(5) } } #[derive(JsonSchema, Debug, Serialize, Deserialize, Clone, PartialEq, FromStr)] pub struct CachePath(pub String); impl std::fmt::Display for CachePath { fn fmt(&self, f: &mut std::fmt::Formatter<'_>) -> std::fmt::Result { write!(f, "{}", self.0) } } impl Default for CachePath { fn default() -> Self { let pd = project_dirs().expect("could not get cache path"); let app_cache = pd.cache_dir(); Self(app_cache.to_str().expect("cache path not utf8").to_owned()) } } #[derive(JsonSchema, Debug, Serialize, Deserialize, Copy, Clone, PartialEq, Eq)] pub struct CacheMaxBlobLen(pub usize); impl std::fmt::Display for CacheMaxBlobLen { fn fmt(&self, f: &mut std::fmt::Formatter<'_>) -> std::fmt::Result { write!(f, "{}", self.0) } } impl Default for CacheMaxBlobLen { fn default() -> Self { Self(2000000) } } impl FromStr for CacheMaxBlobLen { type Err = anyhow::Error; fn from_str(s: &str) -> Result { let suffix = s.chars().last(); if let Some(suffix) = suffix { Ok(Self(match suffix { 'k' | 'M' | 'G' => usize::from_str(s.trim_end_matches(suffix)) .with_context(|| "Could not parse int".to_string()) .map(|e| { e * match suffix { 'k' => 1000, 'M' => 1_000_000, 'G' => 1_000_000_000, _ => panic!("impossible"), } }), _ => usize::from_str(s).with_context(|| "Could not parse int".to_string()), }?)) } else { Err(anyhow::format_err!("empty byte input")) } } } /// # rga configuration /// /// This is kind of a "polyglot" struct serving multiple purposes: /// /// 1. Declare the command line arguments using structopt+clap /// 1. Provide information for manpage / readme generation. /// 1. Describe the config file format (output as JSON schema via schemars). #[derive(StructOpt, Debug, Deserialize, Serialize, JsonSchema, Default, Clone)] #[structopt( name = "ripgrep-all", rename_all = "kebab-case", about = env!("CARGO_PKG_DESCRIPTION"), author = env!("CARGO_PKG_HOMEPAGE"), long_about="rga: ripgrep, but also search in PDFs, E-Books, Office documents, zip, tar.gz, etc.", // TODO: long_about does not seem to work to only show this on short help after_help = "-h shows a concise overview, --help shows more detail and advanced options.\n\nAll other options not shown here are passed directly to rg, especially [PATTERN] and [PATH ...]", usage = "rga [RGA OPTIONS] [RG OPTIONS] PATTERN [PATH ...]" )] pub struct RgaConfig { /// Use more accurate but slower matching by mime type. /// /// By default, rga will match files using file extensions. /// Some programs, such as sqlite3, don't care about the file extension at all, so users sometimes use any or no extension at all. /// With this flag, rga will try to detect the mime type of input files using the magic bytes (similar to the `file` utility), and use that to choose the adapter. /// Detection is only done on the first 8KiB of the file, since we can't always seek on the input (in archives). #[serde(default, skip_serializing_if = "is_default")] #[structopt(long = "--rga-accurate")] pub accurate: bool, /// Change which adapters to use and in which priority order (descending). /// /// - "foo,bar" means use only adapters foo and bar. /// - "-bar,baz" means use all default adapters except for bar and baz. /// - "+bar,baz" means use all default adapters and also bar and baz. #[serde(default, skip_serializing_if = "is_default")] #[structopt( long = "--rga-adapters", require_equals = true, require_delimiter = true )] pub adapters: Vec, #[serde(default, skip_serializing_if = "is_default")] #[structopt(flatten)] pub cache: CacheConfig, /// Maximum depth of nested archives to recurse into. /// /// When searching in archives, rga will recurse into archives inside archives. /// This option limits the depth. #[serde(default, skip_serializing_if = "is_default")] #[structopt( default_value, long = "--rga-max-archive-recursion", require_equals = true, hidden_short_help = true )] pub max_archive_recursion: MaxArchiveRecursion, /// Don't prefix lines of files within archive with the path inside the archive. /// /// Inside archives, by default rga prefixes the content of each file with the file path within the archive. /// This is usually useful, but can cause problems because then the inner path is also searched for the pattern. #[serde(default, skip_serializing_if = "is_default")] #[structopt(long = "--rga-no-prefix-filenames")] pub no_prefix_filenames: bool, #[serde(default, skip_serializing_if = "is_default")] #[structopt(skip)] // config file only pub custom_adapters: Option>, #[serde(skip)] #[structopt(long = "--rga-config-file", require_equals = true)] pub config_file_path: Option, /// Same as passing path directly, except if argument is empty. /// /// Kinda hacky, but if no file is found, `fzf` calls `rga` with empty string as path, which causes "No such file or directory from rg". /// So filter those cases and return specially. #[serde(skip)] // CLI only #[structopt(long = "--rga-fzf-path", require_equals = true, hidden = true)] pub fzf_path: Option, #[serde(skip)] // CLI only #[structopt(long = "--rga-list-adapters", help = "List all known adapters")] pub list_adapters: bool, #[serde(skip)] // CLI only #[structopt( long = "--rga-print-config-schema", help = "Print the JSON Schema of the configuration file" )] pub print_config_schema: bool, #[serde(skip)] // CLI only #[structopt(long, help = "Show help for ripgrep itself")] pub rg_help: bool, #[serde(skip)] // CLI only #[structopt(long, help = "Show version of ripgrep itself")] pub rg_version: bool, } #[derive(StructOpt, Debug, Deserialize, Serialize, JsonSchema, Default, Clone, PartialEq)] pub struct CacheConfig { /// Disable caching of results. /// /// By default, rga caches the extracted text, if it is small enough, to a database. /// This way, repeated searches on the same set of files will be much faster. /// The location of the DB varies by platform: /// - `${XDG_CACHE_DIR-~/.cache}/ripgrep-all` on Linux /// - `~/Library/Caches/ripgrep-all` on macOS /// - `C:\Users\username\AppData\Local\ripgrep-all` on Windows /// /// If you pass this flag, all caching will be disabled. #[serde(default, skip_serializing_if = "is_default")] #[structopt(long = "--rga-no-cache")] pub disabled: bool, /// Max compressed size to cache. /// /// Longest byte length (after compression) to store in cache. /// Longer adapter outputs will not be cached and recomputed every time. /// /// Allowed suffixes on command line: k M G #[serde(default, skip_serializing_if = "is_default")] #[structopt( default_value, long = "--rga-cache-max-blob-len", hidden_short_help = true, require_equals = true, // parse(try_from_str = parse_readable_bytes_str) )] pub max_blob_len: CacheMaxBlobLen, /// ZSTD compression level to apply to adapter outputs before storing in cache DB. /// /// Ranges from 1 - 22. #[serde(default, skip_serializing_if = "is_default")] #[structopt( default_value, long = "--rga-cache-compression-level", hidden_short_help = true, require_equals = true, help = "" )] pub compression_level: CacheCompressionLevel, /// Path to store cache DB. #[serde(default, skip_serializing_if = "is_default")] #[structopt( default_value, long = "--rga-cache-path", hidden_short_help = true, require_equals = true )] pub path: CachePath, } static RGA_CONFIG: &str = "RGA_CONFIG"; use serde_json::Value; fn json_merge(a: &mut Value, b: &Value) { match (a, b) { (&mut Value::Object(ref mut a), Value::Object(b)) => { for (k, v) in b { json_merge(a.entry(k.clone()).or_insert(Value::Null), v); } } (a, b) => { *a = b.clone(); } } } fn read_config_file(path_override: Option) -> Result<(String, Value)> { let proj = project_dirs()?; let config_dir = proj.config_dir(); let config_filename = path_override .as_ref() .map(PathBuf::from) .unwrap_or_else(|| config_dir.join("config.jsonc")); let config_filename_str = config_filename.to_string_lossy().into_owned(); if config_filename.exists() { let config_file_contents = { let raw = std::fs::read_to_string(config_filename).with_context(|| { format!("Could not read config file json {config_filename_str}") })?; let mut s = String::new(); json_comments::StripComments::new(raw.as_bytes()) .read_to_string(&mut s) .context("strip comments")?; s }; { // just for error messages, actual deserialization happens after merging with cmd args serde_json::from_str::(&config_file_contents).with_context(|| { format!("Error in config file {config_filename_str}: {config_file_contents}") })?; } let config_json: serde_json::Value = serde_json::from_str(&config_file_contents).context("Could not parse config json")?; Ok((config_filename_str, config_json)) } else if let Some(p) = path_override.as_ref() { Err(anyhow::anyhow!("Config file not found: {}", p))? } else { // write default config std::fs::create_dir_all(config_dir)?; let mut schemafile = File::create(config_dir.join("config.v1.schema.json"))?; schemafile.write_all( serde_json::to_string_pretty(&schemars::schema_for!(RgaConfig))?.as_bytes(), )?; let mut configfile = File::create(config_filename)?; configfile.write_all(include_str!("../doc/config.default.jsonc").as_bytes())?; Ok(( config_filename_str, serde_json::Value::Object(Default::default()), )) } } fn read_config_env() -> Result { let val = std::env::var(RGA_CONFIG).ok(); if let Some(val) = val { serde_json::from_str(&val).context("could not parse config from env RGA_CONFIG") } else { serde_json::to_value(RgaConfig::default()).context("could not create default config") } } pub fn parse_args(args: I, is_rga_preproc: bool) -> Result where I: IntoIterator, I::Item: Into + Clone, { // TODO: don't read config file in rga-preproc for performance (called for every file) let arg_matches: RgaConfig = RgaConfig::from_iter(args); let args_config = serde_json::to_value(&arg_matches)?; let merged_config = { if is_rga_preproc { // only read from env and args let mut merged_config = read_config_env()?; json_merge(&mut merged_config, &args_config); log::debug!("Config: {}", serde_json::to_string(&merged_config)?); merged_config } else { // read from config file, env and args let (config_filename, config_file_config) = read_config_file(arg_matches.config_file_path)?; let env_var_config = read_config_env()?; let mut merged_config = config_file_config.clone(); json_merge(&mut merged_config, &env_var_config); json_merge(&mut merged_config, &args_config); log::debug!( "Configs:\n{}: {}\n{}: {}\nArgs: {}\nMerged: {}", config_filename, serde_json::to_string_pretty(&config_file_config)?, RGA_CONFIG, serde_json::to_string_pretty(&env_var_config)?, serde_json::to_string_pretty(&args_config)?, serde_json::to_string_pretty(&merged_config)? ); // pass to child processes // TODO: Audit that the environment access only happens in single-threaded code. unsafe { std::env::set_var(RGA_CONFIG, merged_config.to_string()) }; merged_config } }; let mut res: RgaConfig = serde_json::from_value(merged_config.clone()) .map_err(|e| { println!("{e:?}"); e }) .with_context(|| { format!( "Error parsing merged config: {}", serde_json::to_string_pretty(&merged_config).expect("no tostring") ) })?; { // readd values with [serde(skip)] res.fzf_path = arg_matches.fzf_path; res.list_adapters = arg_matches.list_adapters; res.print_config_schema = arg_matches.print_config_schema; res.rg_help = arg_matches.rg_help; res.rg_version = arg_matches.rg_version; } Ok(res) } /// Split arguments into the ones we care about and the ones rg cares about pub fn split_args(is_rga_preproc: bool) -> Result<(RgaConfig, Vec)> { let mut app = RgaConfig::clap(); app.p.create_help_and_version(); let mut firstarg = true; // debug!("{:#?}", app.p.flags); let (our_args, mut passthrough_args): (Vec, Vec) = std::env::args_os() .partition(|os_arg| { if firstarg { // hacky, but .enumerate() would be ugly because partition is too simplistic firstarg = false; return true; } if let Some(arg) = os_arg.to_str() { arg.starts_with("--rga-") || arg.starts_with("--rg-") || arg == "--help" || arg == "-h" || arg == "--version" || arg == "-V" } else { // args that are not unicode can only be filenames, pass them to rg false } }); debug!("rga (our) args: {:?}", our_args); let matches = parse_args(our_args, is_rga_preproc).context("Could not parse config")?; if matches.rg_help { passthrough_args.insert(0, "--help".into()); } if matches.rg_version { passthrough_args.insert(0, "--version".into()); } debug!("rga (passthrough) args: {:?}", passthrough_args); Ok((matches, passthrough_args)) } ================================================ FILE: src/expand.rs ================================================ use std::borrow::Cow; use anyhow::Result; // from https://github.com/phiresky/timetrackrs/blob/1c3df09ba2c1fda6065f2927045bd28dea0738d3/src/expand.rs pub fn find_byte(needle: u8, haystack: &[u8]) -> Option { #[cfg(not(feature = "perf-literal"))] fn imp(needle: u8, haystack: &[u8]) -> Option { haystack.iter().position(|&b| b == needle) } #[cfg(feature = "perf-literal")] fn imp(needle: u8, haystack: &[u8]) -> Option { use memchr::memchr; memchr(needle, haystack) } imp(needle, haystack) } pub fn expand_str_ez<'a, F>(replacement: &'a str, lambda: F) -> Result where F: Fn(&str) -> Result>, { let mut dst = String::new(); expand_str_lambda(lambda, replacement, &mut dst)?; Ok(dst) } pub fn expand_str_lambda<'a, F>(cap: F, replacement: &'a str, dst: &mut String) -> Result<()> where F: Fn(&str) -> Result>, { let mut replacement = replacement; while !replacement.is_empty() { match find_byte(b'$', replacement.as_bytes()) { None => break, Some(i) => { dst.push_str(&replacement[..i]); replacement = &replacement[i..]; } } if replacement.as_bytes().get(1).is_some_and(|&b| b == b'$') { dst.push('$'); replacement = &replacement[2..]; continue; } debug_assert!(!replacement.is_empty()); let cap_ref = match find_cap_ref(replacement.as_bytes()) { Some(cap_ref) => cap_ref, None => { dst.push('$'); replacement = &replacement[1..]; continue; } }; replacement = &replacement[cap_ref.end..]; dst.push_str(cap(cap_ref.cap)?.as_ref()); } dst.push_str(replacement); Ok(()) } /// `CaptureRef` represents a reference to a capture group inside some text. /// The reference is either a capture group name or a number. /// /// It is also tagged with the position in the text following the /// capture reference. #[derive(Clone, Copy, Debug, Eq, PartialEq)] struct CaptureRef<'a> { cap: &'a str, end: usize, } /// Parses a possible reference to a capture group name in the given text, /// starting at the beginning of `replacement`. /// /// If no such valid reference could be found, None is returned. fn find_cap_ref(replacement: &[u8]) -> Option> { let mut i = 0; let rep: &[u8] = replacement; if rep.len() <= 1 || rep[0] != b'$' { return None; } i += 1; if rep[i] == b'{' { return find_cap_ref_braced(rep, i + 1); } let mut cap_end = i; while rep.get(cap_end).is_some_and(is_valid_cap_letter) { cap_end += 1; } if cap_end == i { return None; } // We just verified that the range 0..cap_end is valid ASCII, so it must // therefore be valid UTF-8. If we really cared, we could avoid this UTF-8 // check with either unsafe or by parsing the number straight from &[u8]. let cap = std::str::from_utf8(&rep[i..cap_end]).expect("valid UTF-8 capture name"); Some(CaptureRef { cap, end: cap_end }) } fn find_cap_ref_braced(rep: &[u8], mut i: usize) -> Option> { let start = i; while rep.get(i).is_some_and(|&b| b != b'}') { i += 1; } if rep.get(i).is_none_or(|&b| b != b'}') { return None; } // When looking at braced names, we don't put any restrictions on the name, // so it's possible it could be invalid UTF-8. But a capture group name // can never be invalid UTF-8, so if we have invalid UTF-8, then we can // safely return None. let cap = match std::str::from_utf8(&rep[start..i]) { Err(_) => return None, Ok(cap) => cap, }; Some(CaptureRef { cap, end: i + 1 }) } /// Returns true if and only if the given byte is allowed in a capture name. fn is_valid_cap_letter(b: &u8) -> bool { matches!(b, b'0'..=b'9' | b'a'..=b'z' | b'A'..=b'Z' | b'_') } ================================================ FILE: src/lib.rs ================================================ #![warn(clippy::all)] pub mod adapted_iter; pub mod adapters; mod caching_writer; pub mod config; pub mod expand; pub mod matching; pub mod preproc; pub mod preproc_cache; pub mod recurse; #[cfg(test)] pub mod test_utils; use anyhow::Context; use anyhow::Result; use async_stream::stream; use directories_next::ProjectDirs; use std::time::Instant; use tokio::io::AsyncRead; use tokio::task::JoinHandle; use tokio_util::io::StreamReader; pub fn project_dirs() -> Result { directories_next::ProjectDirs::from("", "", "ripgrep-all") .context("no home directory found! :(") } // no "significant digits" format specifier in rust?? // https://stackoverflow.com/questions/60497397/how-do-you-format-a-float-to-the-first-significant-decimal-and-with-specified-pr fn meh(float: f32, precision: usize) -> usize { // compute absolute value let a = float.abs(); // if abs value is greater than 1, then precision becomes less than "standard" if a >= 1. { // reduce by number of digits, minimum 0 let n = (1. + a.log10().floor()) as usize; precision.saturating_sub(n) // if precision is less than 1 (but non-zero), then precision becomes greater than "standard" } else if a > 0. { // increase number of digits let n = -(1. + a.log10().floor()) as usize; precision + n // special case for 0 } else { 0 } } pub fn print_dur(start: Instant) -> String { let mut dur = Instant::now().duration_since(start).as_secs_f32(); let mut suffix = ""; if dur < 0.1 { suffix = "m"; dur *= 1000.0; } let precision = meh(dur, 3); format!("{dur:.precision$}{suffix}s") } pub fn print_bytes(bytes: impl Into) -> String { pretty_bytes::converter::convert(bytes.into()) } pub fn to_io_err(e: anyhow::Error) -> std::io::Error { std::io::Error::other(e) } #[cfg(test)] #[ctor::ctor] fn init() { env_logger::init(); } /** returns an AsyncRead that is empty but returns an io error if the given task had an io error or join error */ pub fn join_handle_to_stream(join: JoinHandle>) -> impl AsyncRead { let st = stream! { join.await.map_err(std::io::Error::other)??; yield std::io::Result::Ok(&b""[..]) }; StreamReader::new(st) } ================================================ FILE: src/matching.rs ================================================ /** * Module for matching adapters to files based on file name or mime type */ use crate::adapters::*; use anyhow::*; use regex::{Regex, RegexSet}; use std::iter::Iterator; use std::sync::Arc; // match only based on file path #[derive(Clone, Debug)] pub enum FastFileMatcher { // MimeType(Regex), /** * without the leading dot, e.g. "jpg" or "tar.gz". Matched as /.*\.ext$/ * */ FileExtension(String), // todo: maybe add others, e.g. regex on whole filename or even paths // todo: maybe allow matching a directory (e.g. /var/lib/postgres) } #[derive(Clone, Debug)] pub enum FileMatcher { /// any type of fast matcher Fast(FastFileMatcher), /// /// match by exact mime type extracted using tree_magic /// TODO: allow match ignoring suffix etc? MimeType(String), } impl From for FileMatcher { fn from(t: FastFileMatcher) -> Self { Self::Fast(t) } } pub struct FileMeta { // filename is not actually a utf8 string, but since we can't do regex on OsStr and can't get a &[u8] from OsStr either, // and since we probably only want to do only matching on ascii stuff anyways, this is the filename as a string with non-valid bytes removed pub lossy_filename: String, // only given when slow matching is enabled pub mimetype: Option<&'static str>, } pub fn extension_to_regex(extension: &str) -> Regex { Regex::new(&format!("(?i)\\.{}$", ®ex::escape(extension))) .expect("we know this regex compiles") } #[allow(clippy::type_complexity)] pub fn adapter_matcher( adapters: &[Arc], slow: bool, ) -> Result Option<(Arc, FileMatcher)> + use<>> { // need order later let adapter_names: Vec = adapters.iter().map(|e| e.metadata().name.clone()).collect(); let mut fname_regexes = vec![]; let mut mime_regexes = vec![]; for adapter in adapters.iter() { let metadata = adapter.metadata(); use FileMatcher::*; for matcher in metadata.get_matchers(slow) { match matcher.as_ref() { MimeType(re) => { mime_regexes.push((re.clone(), adapter.clone(), MimeType(re.clone()))) } Fast(FastFileMatcher::FileExtension(re)) => fname_regexes.push(( extension_to_regex(re), adapter.clone(), Fast(FastFileMatcher::FileExtension(re.clone())), )), }; } } let fname_regex_set = RegexSet::new(fname_regexes.iter().map(|p| p.0.as_str()))?; let mime_regex_set = RegexSet::new(mime_regexes.iter().map(|p| p.0.as_str()))?; Ok(move |meta: FileMeta| { let fname_matches: Vec<_> = fname_regex_set .matches(&meta.lossy_filename) .into_iter() .collect(); let mime_matches: Vec<_> = if slow { mime_regex_set .matches(meta.mimetype.expect("No mimetype?")) .into_iter() .collect() } else { vec![] }; if fname_matches.len() + mime_matches.len() > 1 { // get first according to original priority list... // todo: kinda ugly let fa = fname_matches .iter() .map(|e| (fname_regexes[*e].1.clone(), fname_regexes[*e].2.clone())); let fb = mime_matches .iter() .map(|e| (mime_regexes[*e].1.clone(), mime_regexes[*e].2.clone())); let mut v = vec![]; v.extend(fa); v.extend(fb); v.sort_by_key(|e| { adapter_names .iter() .position(|r| r == &e.0.metadata().name) .expect("impossib7") }); eprintln!( "Warning: found multiple adapters for {}:", meta.lossy_filename ); for mmatch in v.iter() { eprintln!(" - {}", mmatch.0.metadata().name); } return Some(v[0].clone()); } if mime_matches.is_empty() { if fname_matches.is_empty() { None } else { let (_, adapter, matcher) = &fname_regexes[fname_matches[0]]; Some((adapter.clone(), matcher.clone())) } } else { let (_, adapter, matcher) = &mime_regexes[mime_matches[0]]; Some((adapter.clone(), matcher.clone())) } }) } ================================================ FILE: src/preproc.rs ================================================ use crate::adapted_iter::AdaptedFilesIterBox; use crate::adapters::*; use crate::caching_writer::async_read_and_write_to_cache; use crate::config::RgaConfig; use crate::matching::*; use crate::preproc_cache::CacheKey; use crate::recurse::concat_read_streams; use crate::{ preproc_cache::{PreprocCache, open_cache_db}, print_bytes, }; use anyhow::*; use async_compression::tokio::bufread::ZstdDecoder; use async_stream::stream; // use futures::future::{BoxFuture, FutureExt}; use log::*; use postproc::PostprocPrefix; use std::future::Future; use std::io::Cursor; use std::path::Path; use std::pin::Pin; use std::sync::Arc; use tokio::io::AsyncBufReadExt; use tokio::io::BufReader; use tokio::io::{AsyncBufRead, AsyncReadExt}; pub type ActiveAdapters = Vec>; async fn choose_adapter( config: &RgaConfig, filepath_hint: &Path, archive_recursion_depth: i32, inp: &mut (impl AsyncBufRead + Unpin), ) -> Result, FileMatcher, ActiveAdapters)>> { let active_adapters = get_adapters_filtered(config.custom_adapters.clone(), &config.adapters)?; let adapters = adapter_matcher(&active_adapters, config.accurate)?; let filename = filepath_hint .file_name() .ok_or_else(|| format_err!("Empty filename"))?; debug!("Archive recursion depth: {}", archive_recursion_depth); let mimetype = if config.accurate { let buf = inp.fill_buf().await?; // fill but do not consume! if buf.starts_with(b"From \x0d") || buf.starts_with(b"From -") { Some("application/mbox") } else { let mimetype = tree_magic::from_u8(buf); debug!("mimetype: {:?}", mimetype); Some(mimetype) } } else { None }; let adapter = adapters(FileMeta { mimetype, lossy_filename: filename.to_string_lossy().to_string(), }); Ok(adapter.map(|e| (e.0, e.1, active_adapters))) } enum Ret { Recurse(AdaptInfo, Arc, FileMatcher, ActiveAdapters), Passthrough(AdaptInfo), } async fn buf_choose_adapter(ai: AdaptInfo) -> Result { let mut inp = BufReader::with_capacity(1 << 16, ai.inp); let adapter = choose_adapter( &ai.config, &ai.filepath_hint, ai.archive_recursion_depth, &mut inp, ) .await?; let ai = AdaptInfo { inp: Box::pin(inp), ..ai }; let (a, b, c) = match adapter { Some(x) => x, None => { // allow passthrough if the file is in an archive or accurate matching is enabled // otherwise it should have been filtered out by rg pre-glob since rg can handle those better than us let allow_cat = !ai.is_real_file || ai.config.accurate; if allow_cat { if ai.postprocess { ( Arc::new(PostprocPrefix {}) as Arc, FileMatcher::Fast(FastFileMatcher::FileExtension("default".to_string())), Vec::new(), ) } else { return Ok(Ret::Passthrough(ai)); } } else { return Err(format_err!( "No adapter found for file {:?}, passthrough disabled.", ai.filepath_hint .file_name() .ok_or_else(|| format_err!("Empty filename"))? )); } } }; Ok(Ret::Recurse(ai, a, b, c)) } /** * preprocess a file as defined in `ai`. * * If a cache is passed, read/write to it. * */ pub async fn rga_preproc(ai: AdaptInfo) -> Result { debug!("path (hint) to preprocess: {:?}", ai.filepath_hint); // todo: figure out when using a bufreader is a good idea and when it is not // seems to be good for File::open() reads, but not sure about within archives (tar, zip) let (ai, adapter, detection_reason, active_adapters) = match buf_choose_adapter(ai).await? { Ret::Recurse(ai, a, b, c) => (ai, a, b, c), Ret::Passthrough(ai) => { return Ok(ai.inp); } }; let path_hint_copy = ai.filepath_hint.clone(); adapt_caching(ai, adapter, detection_reason, active_adapters) .await .with_context(|| format!("run_adapter({})", &path_hint_copy.to_string_lossy())) } async fn adapt_caching( ai: AdaptInfo, adapter: Arc, detection_reason: FileMatcher, active_adapters: ActiveAdapters, ) -> Result { let meta = adapter.metadata(); debug!( "Chose adapter '{}' because of matcher {:?}", &meta.name, &detection_reason ); eprintln!( "{} adapter: {}", ai.filepath_hint.to_string_lossy(), &meta.name ); let cache_compression_level = ai.config.cache.compression_level; let cache_max_blob_len = ai.config.cache.max_blob_len; let cache = if ai.is_real_file && !ai.config.cache.disabled { Some(open_cache_db(Path::new(&ai.config.cache.path.0)).await?) } else { None }; let mut cache = cache.context("No cache?")?; let cache_key = CacheKey::new( ai.postprocess, &ai.filepath_hint, adapter.as_ref(), &active_adapters, )?; // let dbg_ctx = format!("adapter {}", &adapter.metadata().name); let cached = cache.get(&cache_key).await.context("cache.get")?; match cached { Some(cached) => Ok(Box::pin(ZstdDecoder::new(Cursor::new(cached)))), None => { debug!("cache MISS, running adapter with caching..."); let inp = loop_adapt(adapter.as_ref(), detection_reason, ai).await?; let inp = concat_read_streams(inp); let inp = async_read_and_write_to_cache( inp, cache_max_blob_len.0, cache_compression_level.0, Box::new(move |(uncompressed_size, compressed)| { Box::pin(async move { debug!( "uncompressed output: {}", print_bytes(uncompressed_size as f64) ); if let Some(cached) = compressed { debug!("compressed output: {}", print_bytes(cached.len() as f64)); cache .set(&cache_key, cached) .await .context("writing to cache")? } Ok(()) }) }), )?; Ok(Box::pin(inp)) } } } async fn read_discard(mut x: ReadBox) -> Result<()> { let mut buf = [0u8; 1 << 16]; loop { let n = x.read(&mut buf).await?; if n == 0 { break; } } Ok(()) } pub fn loop_adapt( adapter: &dyn FileAdapter, detection_reason: FileMatcher, ai: AdaptInfo, ) -> Pin> + Send + '_>> { Box::pin(async move { loop_adapt_inner(adapter, detection_reason, ai).await }) } pub async fn loop_adapt_inner( adapter: &dyn FileAdapter, detection_reason: FileMatcher, ai: AdaptInfo, ) -> anyhow::Result { let fph = ai.filepath_hint.clone(); let inp = adapter.adapt(ai, &detection_reason).await; let inp = if adapter.metadata().name == "postprocprefix" { // don't add confusing error context inp? } else { inp.with_context(|| { format!( "adapting {} via {} failed", fph.to_string_lossy(), adapter.metadata().name ) })? }; let s = stream! { for await file in inp { trace!("next file"); match buf_choose_adapter(file?).await? { Ret::Recurse(ai, adapter, detection_reason, _active_adapters) => { if ai.archive_recursion_depth >= ai.config.max_archive_recursion.0 { // some adapters (esp. zip) assume that the entry is read fully and might hang otherwise read_discard(ai.inp).await?; let s = format!("{}[rga: max archive recursion reached ({})]\n", ai.line_prefix, ai.archive_recursion_depth).into_bytes(); yield Ok(AdaptInfo { inp: Box::pin(Cursor::new(s)), ..ai }); continue; } debug!( "Chose adapter '{}' because of matcher {:?}", &adapter.metadata().name, &detection_reason ); eprintln!( "{} adapter: {}", ai.filepath_hint.to_string_lossy(), &adapter.metadata().name ); for await ifile in loop_adapt(adapter.as_ref(), detection_reason, ai).await? { yield ifile; } } Ret::Passthrough(ai) => { debug!("no adapter for {}, ending recursion", ai.filepath_hint.to_string_lossy()); yield Ok(ai); } } trace!("done with files"); } trace!("stream ended"); }; Ok(Box::pin(s)) } ================================================ FILE: src/preproc_cache.rs ================================================ use crate::{adapters::FileAdapter, preproc::ActiveAdapters}; use anyhow::{Context, Result}; use log::warn; use path_clean::PathClean; use rusqlite::{OptionalExtension, named_params}; use std::{path::Path, time::UNIX_EPOCH}; use tokio_rusqlite::Connection; static SCHEMA_VERSION: i32 = 3; #[derive(Clone)] pub struct CacheKey { config_hash: String, adapter: String, adapter_version: i32, active_adapters: String, file_path: String, file_mtime_unix_ms: i64, } impl CacheKey { pub fn new( postprocess: bool, filepath_hint: &Path, adapter: &dyn FileAdapter, active_adapters: &ActiveAdapters, ) -> Result { let meta = std::fs::metadata(filepath_hint) .with_context(|| format!("reading metadata for {}", filepath_hint.to_string_lossy()))?; let modified = meta.modified().expect("weird OS that can't into mtime"); let file_mtime_unix_ms = modified.duration_since(UNIX_EPOCH)?.as_millis() as i64; let active_adapters = if adapter.metadata().recurses { serde_json::to_string( &active_adapters .iter() .map(|a| format!("{}.v{}", a.metadata().name, a.metadata().version)) .collect::>(), )? } else { "null".to_string() }; Ok(Self { config_hash: if postprocess { "a41e2e9".to_string() } else { "f1502a3".to_string() }, // todo: when we add more config options that affect caching, create a struct and actually hash it adapter: adapter.metadata().name.clone(), adapter_version: adapter.metadata().version, file_path: filepath_hint.clean().to_string_lossy().to_string(), file_mtime_unix_ms, active_adapters, }) } } #[async_trait::async_trait] pub trait PreprocCache { async fn get(&self, key: &CacheKey) -> Result>>; async fn set(&mut self, key: &CacheKey, value: Vec) -> Result<()>; } async fn connect_pragmas(db: &Connection) -> Result<()> { // https://phiresky.github.io/blog/2020/sqlite-performance-tuning/ //let want_page_size = 32768; //db.execute(&format!("pragma page_size = {};", want_page_size)) // .context("setup pragma 1")?; db.call(|db| { // db.busy_timeout(Duration::from_secs(10))?; db.pragma_update(None, "journal_mode", "wal")?; db.pragma_update(None, "foreign_keys", "on")?; db.pragma_update(None, "temp_store", "memory")?; db.pragma_update(None, "synchronous", "off")?; // integrity isn't very important here db.pragma_update(None, "mmap_size", "2000000000")?; db.execute(" create table if not exists preproc_cache ( config_hash text not null, adapter text not null, adapter_version integer not null, created_unix_ms integer not null default (unixepoch() * 1000), active_adapters text not null, -- 'null' if adapter cannot recurse file_path text not null, file_mtime_unix_ms integer not null, text_content_zstd blob not null ) strict", [] )?; db.execute("create unique index if not exists preproc_cache_idx on preproc_cache (config_hash, adapter, adapter_version, file_path, active_adapters)", [])?; Ok(()) }) .await.context("connect_pragmas")?; let jm: i64 = db .call(|db| Ok(db.pragma_query_value(None, "application_id", |r| r.get(0))?)) .await?; if jm != 924716026 { // (probably) newly created db db.call(|db| Ok(db.pragma_update(None, "application_id", "924716026")?)) .await?; } Ok(()) } struct SqliteCache { db: Connection, } impl SqliteCache { async fn new(path: &Path) -> Result { let db = Connection::open(path.join("cache.sqlite3")).await?; db.call(|db| { let schema_version: i32 = db.pragma_query_value(None, "user_version", |r| r.get(0))?; if schema_version != SCHEMA_VERSION { warn!("Cache schema version mismatch, clearing cache"); db.execute("drop table if exists preproc_cache", [])?; db.pragma_update(None, "user_version", format!("{SCHEMA_VERSION}"))?; } Ok(()) }) .await?; connect_pragmas(&db).await?; Ok(Self { db }) } } #[async_trait::async_trait] impl PreprocCache for SqliteCache { async fn get(&self, key: &CacheKey) -> Result>> { let key = (*key).clone(); // todo: without cloning Ok(self .db .call(move |db| { Ok(db .query_row( "select text_content_zstd from preproc_cache where adapter = :adapter and config_hash = :config_hash and adapter_version = :adapter_version and active_adapters = :active_adapters and file_path = :file_path and file_mtime_unix_ms = :file_mtime_unix_ms ", named_params! { ":config_hash": &key.config_hash, ":adapter": &key.adapter, ":adapter_version": &key.adapter_version, ":active_adapters": &key.active_adapters, ":file_path": &key.file_path, ":file_mtime_unix_ms": &key.file_mtime_unix_ms }, |r| r.get::<_, Vec>(0), ) .optional()?) }) .await .context("reading from cache")?) } async fn set(&mut self, key: &CacheKey, value: Vec) -> Result<()> { let key = (*key).clone(); // todo: without cloning log::trace!( "Writing to cache: {}, {}, {} byte", key.adapter, key.file_path, value.len() ); Ok(self .db .call(move |db| { db.execute( "insert into preproc_cache (config_hash, adapter, adapter_version, active_adapters, file_path, file_mtime_unix_ms, text_content_zstd) values (:config_hash, :adapter, :adapter_version, :active_adapters, :file_path, :file_mtime_unix_ms, :text_content_zstd) on conflict (config_hash, adapter, adapter_version, active_adapters, file_path) do update set file_mtime_unix_ms = :file_mtime_unix_ms, created_unix_ms = unixepoch() * 1000, text_content_zstd = :text_content_zstd", named_params! { ":config_hash": &key.config_hash, ":adapter": &key.adapter, ":adapter_version": &key.adapter_version, ":active_adapters": &key.active_adapters, ":file_path": &key.file_path, ":file_mtime_unix_ms": &key.file_mtime_unix_ms, ":text_content_zstd": value })?; Ok(()) }) .await?) } } /// opens a default cache pub async fn open_cache_db(path: &Path) -> Result> { std::fs::create_dir_all(path)?; SqliteCache::new(path).await } #[cfg(test)] mod test { use crate::preproc_cache::*; #[tokio::test] async fn test_read_write() -> anyhow::Result<()> { let path = tempfile::tempdir()?; let _db = open_cache_db(&path.path().join("foo.sqlite3")).await?; // db.set(); Ok(()) } } ================================================ FILE: src/recurse.rs ================================================ use tokio_util::io::{ReaderStream, StreamReader}; use crate::{adapted_iter::AdaptedFilesIterBox, adapters::*, to_io_err}; use async_stream::stream; pub fn concat_read_streams(input: AdaptedFilesIterBox) -> ReadBox { let s = stream! { for await output in input { let o = output.map_err(to_io_err)?.inp; let stream = ReaderStream::new(o); for await bytes in stream { yield bytes; } } }; Box::pin(StreamReader::new(s)) } ================================================ FILE: src/test_utils.rs ================================================ use crate::{ adapted_iter::AdaptedFilesIterBox, adapters::{ AdaptInfo, ReadBox, custom::{BUILTIN_SPAWNING_ADAPTERS, CustomSpawningFileAdapter}, }, config::RgaConfig, matching::{FastFileMatcher, FileMatcher}, recurse::concat_read_streams, }; use anyhow::Result; use std::path::{Path, PathBuf}; use tokio::{fs::File, io::AsyncReadExt}; pub use pretty_assertions::{assert_eq, assert_ne}; pub fn test_data_dir() -> PathBuf { let mut d = PathBuf::from(env!("CARGO_MANIFEST_DIR")); d.push("exampledir/test/"); d } pub async fn simple_fs_adapt_info(filepath: &Path) -> Result<(AdaptInfo, FileMatcher)> { Ok(simple_adapt_info_full( filepath, Box::pin(File::open(filepath).await?), true, )) } pub fn simple_adapt_info(filepath: &Path, inp: ReadBox) -> (AdaptInfo, FileMatcher) { simple_adapt_info_full(filepath, inp, false) } pub fn simple_adapt_info_full( filepath: &Path, inp: ReadBox, is_real_file: bool, ) -> (AdaptInfo, FileMatcher) { ( AdaptInfo { filepath_hint: filepath.to_owned(), is_real_file, archive_recursion_depth: 0, inp, line_prefix: "PREFIX:".to_string(), config: RgaConfig::default(), postprocess: true, }, FastFileMatcher::FileExtension( filepath .extension() .unwrap_or_default() .to_string_lossy() .into_owned(), ) .into(), ) } pub async fn adapted_to_vec(adapted: AdaptedFilesIterBox) -> Result> { let mut res = concat_read_streams(adapted); let mut buf = Vec::new(); res.read_to_end(&mut buf).await?; Ok(buf) } pub fn poppler_adapter() -> CustomSpawningFileAdapter { let adapter = BUILTIN_SPAWNING_ADAPTERS .iter() .find(|e| e.name == "poppler") .expect("no poppler adapter"); adapter.to_adapter() } #[cfg(test)] pub fn init_logging() { let _ = env_logger::builder().is_test(true).try_init(); }