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gitextract_eqgtrd1s/
├── LICENSE
└── README.md
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FILE: README.md
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# Awesome Chainer [](https://github.com/sindresorhus/awesome)
## What is Chainer?
Chainer is a flexible framework for neural networks. One of the major goals is flexibility, so it must enable us to write complex architectures simply and intuitively.
More info [here](http://chainer.org/)
ref [Chainer.wiki](https://github.com/chainer/chainer/wiki) - Chainer Wiki
## Table of Contents
<!-- MarkdownTOC depth=4 -->
* [Tutorials](#github-tutorials)
* [Models/Projects](#github-projects)
* [Examples](#github-examples)
* [Libraries](#libraries)
* [Videos](#video)
* [Papers](#papers)
* [Blog posts](#blogs)
* [Community](#community)
* [Books](#books)
<!-- /MarkdownTOC -->
<a name="github-tutorials" />
## Guides
* [Chainer Offical Guides](https://docs.chainer.org/en/stable/guides/index.html) - Chainer guides in the offical document
## Hands-on
* [hido/chainer-handson](https://github.com/hido/chainer-handson/blob/master/chainer.ipynb) - Chainer Hands-on
* [iwiwi/chainer-handson](https://github.com/iwiwi/chainer-handson/blob/master/chainer-ja.ipynb) - Chainer Hands-on(JP CPU only)
* [mitmul/chainer-handson](https://github.com/mitmul/chainer-handson) - Chainer Hands-on
* [mitmul/chainer-notebooks](https://github.com/mitmul/chainer-notebooks) - Chainer Jupyter Notebooks
<a name="github-projects" />
## Models/Projects
### Official Add-on Packages
* [ChainerRL](https://github.com/chainer/chainerrl) - ChainerRL is a deep reinforcement learning library built on top of Chainer.
* [ChainerCV](https://github.com/chainer/chainercv) - Versatile set of tools for Deep Learning based Computer Vision
* [ChainerMN](https://github.com/chainer/chainermn) - Scalable distributed deep learning with Chainer
* [ChainerUI](https://github.com/chainer/chainerui) - ChainerUI is a visualization and management tool for Chainer.
### Services using Chainer
* [PaintsChainer](https://github.com/pfnet/PaintsChainer) - Paints Chainer is line drawing colorizer using chainer.
<a name="#github-examples" />
# Chainer External Examples
* [chainer/models](https://github.com/chainer/models) - Models and examples built with Chainer
## Preferred Networks Research
* [chainer-LSGAN](https://github.com/pfnet-research/chainer-LSGAN) - Least Squares Generative Adversarial Network implemented in Chainer
* [chainer-gogh](https://github.com/pfnet-research/chainer-gogh) - Implementation of "A neural algorithm of Artistic style"
* [chainer-graph-cnn](https://github.com/pfnet-research/chainer-graph-cnn) - Chainer implementation of 'Convolutional Neural Networks on Graphs with Fast Localized Spectral Filtering' (https://arxiv.org/abs/1606.09375)
* [chainer-segnet](https://github.com/pfnet-research/chainer-segnet) - SegNet implementation & experiments in Chainer
* [chainer-pix2pix](https://github.com/pfnet-research/chainer-pix2pix) - chainer implementation of pix2pix
* [chainer-ADDA](https://github.com/pfnet-research/chainer-ADDA) - Adversarial Discriminative Domain Adaptation
* [chainer-gan-lib](https://github.com/pfnet-research/chainer-gan-lib) - Various GANs implementation
* [tgan](https://github.com/pfnet-research/tgan) - Temporal Generative Adversarial Nets
### NLP
* [odashi/chainer_examples](https://github.com/odashi/chainer_examples) - Machine Translation, word segmentation, and language model
* [odashi/chainer_rnnlm.py](https://gist.github.com/odashi/0d6e259abcc14f2d2d28) - RNN Language Model
* [odashi/chainer_encoder_decoder.py](https://gist.github.com/odashi/8d21f8fc23c075cd3042) - Neural Encoder-Decoder Machine Translation
* [prajdabre/chainer_examples](https://github.com/prajdabre/chainer_examples/blob/master/chainer-1.5/LSTMVariants.py) - LSTM variants
* [yusuketomoto/chainer-char-rnn](https://github.com/yusuketomoto/chainer-char-rnn) - Recurrent neural network (RNN)
* [mlpnlp/mlpnlp-nmt](https://github.com/mlpnlp/mlpnlp-nmt) - LSTM encoder-decoder with attention mechanism
* [unnonouno/chainer-memnn](https://github.com/unnonouno/chainer-memnn) - End-to-end memory networks
* [jekbradbury/qrnn.py](http://metamind.io/research/new-neural-network-building-block-allows-faster-and-more-accurate-text-understanding/) - QRNN
### Computer Vision
* [tscohen/GrouPy](https://github.com/tscohen/GrouPy) - Group Equivariant Convolutional Neural Networks
* [mitmul/chainer-fast-rcnn](https://github.com/mitmul/chainer-fast-rcnn) - Fast R-CNN
* [mitmul/chainer-faster-rcnn](https://github.com/mitmul/chainer-faster-rcnn) - Faster R-CNN
* [mitmul/chainer-cifar10](https://github.com/mitmul/chainer-cifar10) - Cifar10
* [mitmul/DeepPose](https://github.com/mitmul/deeppose) - Deep pose
* [mitmul/chainer-conv-vis](https://github.com/mitmul/chainer-conv-vis) - Convolution Filter Visualization
* [mitmul/chainer-imagenet-vgg](https://github.com/mitmul/chainer-imagenet-vgg) - VGG
* [mitmul/chainer-segnet](https://github.com/mitmul/chainer-segnet) - SegNet
* [mitmul/PSPNet](https://github.com/mitmul/chainer-pspnet) - Pyramid Scene Parsing Network
* [apple2373/chainer-simple-fast-rnn](https://github.com/apple2373/chainer-simple-fast-rnn) - Fast R-CNN
* [apple2373/chainer_stylenet](https://github.com/apple2373/chainer_stylenet) - StyleNet (A Neural Algorithm of Artistic Style)
* [apple2373/chainer_caption_generation](https://github.com/apple2373/chainer_caption_generation) - Show and Tell
* [mrkn/chainer-srcnn](https://github.com/mrkn/chainer-srcnn) - Image super-resolution
* [Hi-king/chainer_superresolution](https://github.com/Hi-king/chainer_superresolution) - Image super-resolution
* [darashi/chainer-example-overfeat-classify](https://github.com/darashi/chainer-example-overfeat-classify) - Overfeat
* [RyotaKatoh/chainer-Variational-AutoEncoder](https://github.com/RyotaKatoh/chainer-Variational-AutoEncoder) - Variational autoencoder (VAE)
* [yasunorikudo/chainer-ResNet](https://github.com/yasunorikudo/chainer-ResNet) - ResNet
* [yasunorikudo/chainer-DenseNet](https://github.com/yasunorikudo/chainer-DenseNet) - DenseNet
* [yasunorikudo/chainer-ResDrop](https://github.com/yasunorikudo/chainer-ResDrop) - ResDrop
* [yusuketomoto/chainer-fast-neuralstyle](https://github.com/yusuketomoto/chainer-fast-neuralstyle) - Perceptual Losses for Real-Time Style Transfer and Super-Resolution
* [rezoo/illustration2vec](https://github.com/rezoo/illustration2vec) - illustration2vec
* [chainer-prednet](https://github.com/kunimasa-kawasaki/chainer-prednet) - Deep Predictive Coding Networks
* [hillbig/binary_net](https://github.com/hillbig/binary_net) - BinaryNet
* [stitchfix/fauxtograph](https://github.com/stitchfix/fauxtograph) - Variational Auto-Encoder (VAE), Generative Adversarial Nets (GAN), VAE-GAN
* [rezoo/data.py](https://gist.github.com/rezoo/4e005611aaa4dad26697) - Generative Adversarial Nets (GAN)
* [mattya/chainer-gogh](https://github.com/mattya/chainer-gogh) - StyleNet (A Neural Algorithm of Artistic Style)
* [mattya/chainer-DCGAN](https://github.com/mattya/chainer-DCGAN) - Deep Convolutional Generative Adversarial Network (DCGAN)
* [mattya/chainer-fluid](https://github.com/mattya/chainer-fluid) - Fluid simulation
* [ktnyt/chainer_ca.py](https://gist.github.com/ktnyt/58e015dd9ff33049da5a) - Convolutional Autoencoder
* [tochikuji/chainer-libDNN](https://github.com/tochikuji/chainer-libDNN/blob/master/examples/mnist/SdA.py) - Stacked Denoising Autoencoder
* [masaki-y/ram](https://github.com/masaki-y/ram) - Recurrent Attention Model
* [wkentaro/fcn](https://github.com/wkentaro/fcn) - Fully Convolutional Networks
* [hvy/chainer-gan-denoising-feature-matching](https://github.com/hvy/chainer-gan-denoising-feature-matching) - Generative Adversarial Networks with Denoising Feature Matching
* [hvy/chainer-visualization](https://github.com/hvy/chainer-visualization) - Visualizing and Understanding Convolutional Networks
* [hvy/chainer-gan-trainer](https://github.com/hvy/chainer-gan-trainer) - Chainer GAN Trainer
* [musyoku/wasserstein-gan](https://github.com/musyoku/wasserstein-gan) - WGAN
* [weihua916/imsat](https://github.com/weihua916/imsat) - IMSAT
* [Hakuyume/chainer-ssd](https://github.com/Hakuyume/chainer-ssd) - SSD
* [leetenki/YOLOv2](https://github.com/leetenki/YOLOv2) - YOLOv2
* [leetenki/YOLOtiny_v2](https://github.com/leetenki/YOLOtiny_v2_chainer) - YOLOtiny_v2
* [yuyu2172/deformable-conv](https://github.com/yuyu2172/deformable-conv) - Deformable-conv
* [dsanno/chainer-dfi](https://github.com/dsanno/chainer-dfi) - Deep Feature Interpolation for Image Content Changes
* [dsanno/chainer-dfi](https://github.com/dsanno/chainer-dfi) - Deep Feature Interpolation for Image Content Changes
* [osmr/imgclsmob](https://github.com/osmr/imgclsmob) - Collection of classification models pretrained on the ImageNet-1K
### Reinforcement Learning
* [ugo-nama-kun/DQN-chainer](https://github.com/ugo-nama-kun/DQN-chainer) - Deep Q-Network (DQN)
### Generative models
* [crcrpar/chainer-VAE](https://github.com/crcrpar/chainer-VAE) - Variational AutoEncoder
* [musyoku/LSGAN](https://github.com/musyoku/LSGAN) - LSGAN
* [musyoku/began](https://github.com/musyoku/began) - BEGAN
* [musyoku/adversarial-autoencoder](https://github.com/musyoku/adversarial-autoencoder) - adversarial-autoencoder
* [musyoku/unrolled-gan](https://github.com/musyoku/unrolled-gan) - unrolled-ga
* [musyoku/improved-gan](https://github.com/musyoku/improved-gan)- improved-gan
* [musyoku/variational-autoencoder](https://github.com/musyoku/variational-autoencoder) - Semi-Supervised Learning with Deep Generative Models
* [musyoku/adgm](https://github.com/musyoku/adgm) - Auxiliary Deep Generative Models
* [musyoku/ddgm](https://github.com/musyoku/ddgm) - Deep Directed Generative Models with Energy-Based Probability Estimation
* [musyoku/minibatch_discrimination](https://github.com/musyoku/minibatch_discrimination) - Minibatch discrimination
* [musyoku/wavenet](https://github.com/musyoku/wavenet) - wavenet
### Unsupervised/Semi-supervised learning
* [musyoku/IMSAT](https://github.com/musyoku/IMSAT) - IMSAT
* [musyoku/vat](https://github.com/musyoku/vat) - VAT
* [musyoku/mnist-oneshot](https://github.com/musyoku/mnist-oneshot) - mnist-oneshot
* [mitmul/chainer-siamese](https://github.com/mitmul/chainer-siamese) - Siamese Network
### Others
* [mitmul/chainer-svm](https://github.com/mitmul/chainer-svm) - Support Vector Machine (SVM)
## Blog posts
* [Introduction to Chainer: Neural Networks in Python](http://multithreaded.stitchfix.com/blog/2015/12/09/intro-to-chainer/)
* [The DIY Guide to Chainer](https://github.com/jxieeducation/DIY-Data-Science/blob/master/frameworks/chainer.md)
* [CHAINER CHARACTER EMBEDDINGS](http://dirko.github.io/Chainer-character-embeddings/)
* [A Fontastic Voyage: Generative Fonts with Adversarial Networks](http://multithreaded.stitchfix.com/blog/2016/02/02/a-fontastic-voyage/)
## Tools and extensions
* [uei/Deel; A High level deep neural network description language](https://github.com/uei/deel)
* [uei/DEEPstation](https://libraries.io/github/uei/deepstation)
* [shi3z/chainer_imagenet_tools](https://github.com/shi3z/chainer_imagenet_tools)
* [lucidfrontier45/scikit-chainer](https://github.com/lucidfrontier45/scikit-chainer)
* [tochikuji/chainer-libDNN](https://github.com/tochikuji/chainer-libDNN)
* [musyoku/weight-normalization](https://github.com/musyoku/weight-normalization) - Weight Normalization Layer for Chainer
* [musyoku/chainer-sequential](https://github.com/musyoku/chainer-sequential) - chainer-sequential
* [musyoku/recurrent-batch-normalization](https://github.com/musyoku/recurrent-batch-normalization) - Recurrent Batch Normalization
* [hitsgub/extra-chainer](https://github.com/hitsgub/extra-chainer) - Implements novel methods
<a name="video" />
## Videos
(in Japanese)
* Chainer Beginner's Hands-On: [01 (2018/12/01)](https://www.youtube.com/watch?v=q8LZRdjOkdM), [02 (2018/02/16)](https://www.youtube.com/watch?v=FF_x4G4JuFY)
* [Chainer の Trainer 解説とNStepLSTM について](https://www.youtube.com/watch?v=ok_bvPKAEaM) Published on Mar 15, 2017
* [Chainer Meetup #04](https://www.youtube.com/watch?v=Fq5ZQ1ccG38&t=6837s) Published on Feb 23, 2017
* [1014:深層学習フレームワークChainerの導入と化合物活性予測への応用](https://www.youtube.com/watch?v=lM76gLQag4I&t=1211s) Published on Dec 2, 2015
<a name="papers" />
## Papers
* [GP-GAN: Towards Realistic High-Resolution Image Blending](https://arxiv.org/abs/1703.07195)
* Conference: arXiv only
* Codes: [wuhuikai/GP-GAN](https://github.com/wuhuikai/GP-GAN)
* [Temporal Generative Adversarial Nets](https://arxiv.org/abs/1611.06624)
* Conference: arXiv only
* [Reasoning with Memory Augmented Neural Networks for Language Comprehension](https://arxiv.org/abs/1610.06454)
* Conference: arXiv only
* [PMI Matrix Approximations with Applications to Neural Language Modeling](https://arxiv.org/abs/1609.01235)
* Conference: arXiv only
* [Neural Tree Indexers for Text Understanding](https://arxiv.org/abs/1607.04492)
* Conference: arXiv only
* Codes: [NTI](https://bitbucket.org/tsendeemts/nti/src)
* [Neural Semantic Encoders](https://arxiv.org/abs/1607.04315)
* Conference: arXiv only
* [Networked Intelligence: Towards Autonomous Cyber Physical Systems](https://arxiv.org/abs/1606.04087)
* Conference: arXiv only
* [Modeling the dynamics of human brain activity with recurrent neural networks](https://arxiv.org/abs/1606.03071)
* Conference: arXiv only
* [A Deep-Learning Approach for Operation of an Automated Realtime Flare Forecast](https://arxiv.org/abs/1606.01587)
* Conference: arXiv only
* [Convolutional Neural Networks using Logarithmic Data Representation](https://arxiv.org/abs/1603.01025)
* Conference: arXiv only
* [context2vec: Learning Generic Context Embedding with Bidirectional LSTM](http://u.cs.biu.ac.il/%7Emelamuo/publications/context2vec_conll16.pdf)
* Conference: CoNLL 2016
* [Mixing Dirichlet Topic Models and Word Embeddings to Make lda2vec](https://arxiv.org/abs/1605.02019)
* Conference: CoNLL 2016
* [Deep Impression: Audiovisual Deep Residual Networks for Multimodal Apparent Personality Trait Recognition](https://arxiv.org/abs/1609.05119)
* Conference: ECCV 2016 Workshop
* comments: "3rd place in Looking at People ECCV Challenge"
* [Learning Joint Representations of Videos and Sentences with Web Image Search](https://arxiv.org/abs/1608.02367)
* Conference: ECCV 2016 Workshop
* [Incorporating Discrete Translation Lexicons into Neural Machine Translation](https://arxiv.org/abs/1606.02006)
* Conference: EMNLP 2016
* [Controlling Output Length in Neural Encoder-Decoders](https://arxiv.org/abs/1609.09552)
* Conference: EMNLP 2016
* [Insertion Position Selection Model for Flexible Non-Terminals in Dependency Tree-to-Tree Machine Translation](http://www.aclweb.org/anthology/D16-1247)
* Conference: EMNLP 2016
* [Learning Representations Using Complex-Valued Nets](https://arxiv.org/abs/1511.06351)
* Conference: ICLR 2016
* [Dynamic Coattention Networks For Qustion Answering](https://arxiv.org/abs/1611.01604)
* Conference: ICLR 2017 under review
* [SqueezeNet: AlexNet-level Accuracy with 50x Fewer Parameters and < 0.5MB Model Size](https://arxiv.org/abs/1602.07360)
* Conference: ICLR 2017 under review
* [Quasi-Recurrent Neural Networks](https://arxiv.org/abs/1611.01576)
* Conference: ICLR 2017 under review
* [Steerable CNNs](https://arxiv.org/abs/1612.08498)
* Conference: ICLR 2017
* comments: Chainer is not referred in the paper, but the authors kindly informed us.
* [f-GAN: Training Generative Neural Samplers using Variational Divergence Minimization](https://arxiv.org/abs/1606.00709)
* Conference: NIPS 2016 Workshop
* [QSGD: Randomized Quantization for Communication-Optimal Stochastic Gradient Descent](https://arxiv.org/abs/1610.02132)
* Conference: OPT 2016
* [Evaluation of Deep Learning based Pose Estimation for Sign Language Recognition](https://arxiv.org/abs/1602.09065)
* Conference: PETRA 2016
* [Machine-learning Selection of Optical Transients in Subaru/Hyper Suprime-Cam Survey](https://arxiv.org/abs/1609.03249)
* Conference: PASJ 2016
* comments: PASJ: Publications of the Astronomical Society of Japan
* [A Deep-Learning Approach for Operation of an Automated Realtime Flare Forecast](https://arxiv.org/abs/1606.01587)
* Conference: Space Weather 2016
* [Dynamic Entity Representation with Max-pooling Improves Machine Reading](http://aclweb.org/anthology/N/N16/N16-1099.pdf)
* Conference: NAACL 2016
* [Feature-based Model versus Convolutional Neural Network for Stance Detection](http://aclweb.org/anthology/S/S16/S16-1065.pdf)
* Conference: SemEval 2016
* [Cross-Lingual Image Caption Generation](https://www.aclweb.org/anthology/P/P16/P16-1168.pdf)
* Conference: ACL 2016
* [Composing Distributed Representations of Relational Patterns](http://www.aclweb.org/anthology/P16-1215)
* Conference: ACL 2016
* [Generating Natural Language Descriptions for Semantic Representations of Human Brain Activity](https://www.aclweb.org/anthology/P/P16/P16-3004.pdf)
* Conference: ACL 2016
* [MetaMind Neural Machine Translation System for WMT 2016](https://aclweb.org/anthology/W/W16/W16-2308.pdf)
* Conference: WMT 2016
* [Group Equivariant Convolutional Networks](https://arxiv.org/abs/1602.07576)
* Conference: ICML 2016
* Codes: [GitHub](https://github.com/tscohen/GrouPy)
* comments: Chainer is not referred in the paper, but the authors kindly informed us.
* [Robocodes: Towards Generative Street Addresses from Satellite Imagery](https://research.fb.com/publications/robocodes-towards-generative-street-addresses-from-satellite-imagery/)
* Conference: CVPR 2017 Workshop
<a name="blogs" />
## Official announcements
* [Chainer document](http://docs.chainer.org/en/latest/index.html) - An introduction to Chainer
* [Chainer blogs](http://chainer.org/blog/)
## Community
* [Introduction to Chainer: Neural Networks in Python](http://multithreaded.stitchfix.com/blog/2015/12/09/intro-to-chainer/)
* [The DIY Guide to Chainer](https://github.com/jxieeducation/DIY-Data-Science/blob/master/frameworks/chainer.md)
* [CHAINER CHARACTER EMBEDDINGS](http://dirko.github.io/Chainer-character-embeddings/)
* [A Fontastic Voyage: Generative Fonts with Adversarial Networks](http://multithreaded.stitchfix.com/blog/2016/02/02/a-fontastic-voyage/)
<a name="community" />
## Community
### Global
* [@ChainerOfficial on Twitter](https://twitter.com/ChainerOfficial)
* [Mailing List](https://groups.google.com/forum/#!forum/chainer)
* [Slack](http://bit.ly/chainer-slack)
### Japan
* [@ChainerJP on Twitter](https://twitter.com/ChainerJP)
* [Mailing List](https://groups.google.com/forum/#!forum/chainer-jp)
* [Slack](http://bit.ly/chainer-jp-slack)
* [connpass](https://chainer.connpass.com/)
<a name="books" />
## Books
* [Chainerによる実践深層学習](https://www.amazon.co.jp/dp/B01NBMKH21/ref=dp-kindle-redirect?_encoding=UTF8&btkr=1) by 新納浩幸
gitextract_eqgtrd1s/ ├── LICENSE └── README.md
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"preview": "# Awesome Chainer [. The extraction includes 2 files (29.7 KB), approximately 8.0k tokens. Use this with OpenClaw, Claude, ChatGPT, Cursor, Windsurf, or any other AI tool that accepts text input. You can copy the full output to your clipboard or download it as a .txt file.
Extracted by GitExtract — free GitHub repo to text converter for AI. Built by Nikandr Surkov.