[
  {
    "path": "README.md",
    "content": "# :balloon: :tada: Deep Learning Drizzle :confetti_ball: :balloon:\n\n:books: [**\"Read enough so you start developing intuitions and then trust your intuitions and go for it!\"** ](https://www.deeplearning.ai/hodl-geoffrey-hinton/) :books:  ​<br/>  Prof. Geoffrey Hinton, University of Toronto\n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n### Contents\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n|                                                              |                                                              |\n| ------------------------------------------------------------ | ------------------------------------------------------------ |\n| **Deep Learning (Deep Neural Networks)**  [:arrow_heading_down:](https://github.com/kmario23/deep-learning-drizzle#tada-deep-learning-deep-neural-networks-confetti_ball-balloon) | **Probabilistic Graphical Models**  [:arrow_heading_down:](https://github.com/kmario23/deep-learning-drizzle#loudspeaker-probabilistic-graphical-models-sparkles) |\n|                                                              |                                                              |\n| **Machine Learning Fundamentals**  [:arrow_heading_down:](https://github.com/kmario23/deep-learning-drizzle#cupid-machine-learning-fundamentals-cyclone-boom) | **Natural Language Processing**  [:arrow_heading_down:](https://github.com/kmario23/deep-learning-drizzle#hibiscus-natural-language-processing-cherry_blossom-sparkling_heart) |\n|                                                              |                                                              |\n| **Optimization for Machine Learning**  [:arrow_heading_down:](https://github.com/kmario23/deep-learning-drizzle#cupid-optimization-for-machine-learning-cyclone-boom) | **Automatic Speech Recognition** [:arrow_heading_down:](https://github.com/kmario23/deep-learning-drizzle#speaking_head-automatic-speech-recognition-speech_balloon-thought_balloon) |\n|                                                              |                                                              |\n| **General Machine Learning**  [:arrow_heading_down:](https://github.com/kmario23/deep-learning-drizzle#cupid-general-machine-learning-cyclone-boom) | **Modern Computer Vision** [:arrow_heading_down:](https://github.com/kmario23/deep-learning-drizzle#fire-modern-computer-vision-camera_flash-movie_camera) |\n|                                                              |                                                              |\n| **Reinforcement Learning**  [:arrow_heading_down:](https://github.com/kmario23/deep-learning-drizzle#balloon-reinforcement-learning-hotsprings-video_game) | **Boot Camps or Summer Schools** [:arrow_heading_down:](https://github.com/kmario23/deep-learning-drizzle#star2-boot-camps-or-summer-schools-maple_leaf) |\n|                                                              |                                                              |\n| **Bayesian Deep Learning** [:arrow_heading_down:](https://github.com/kmario23/deep-learning-drizzle#game_die-bayesian-deep-learning-spades-gem) | **Medical Imaging** [:arrow_heading_down:](https://github.com/kmario23/deep-learning-drizzle#movie_camera-medical-imaging-camera-video_camera) |\n|                                                              |                                                              |\n| **Graph Neural Networks** [:arrow_heading_down: ](https://github.com/kmario23/deep-learning-drizzle#tada-graph-neural-networks-geometric-dl-confetti_ball-balloon) | **Bird's-eye view of Artificial Intelligence** [:arrow_heading_down:](https://github.com/kmario23/deep-learning-drizzle#bird-birds-eye-view-of-agi-eagle) |\n|                                                              |                                                              |\n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n## :tada: Deep Learning (Deep Neural Networks) :confetti_ball: :balloon: \n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n| S.No | Course Name                                           | University/Instructor(s)                       | Course WebPage                                               | Lecture Videos                                               | Year            |\n| ---- | ----------------------------------------------------- | ---------------------------------------------- | ------------------------------------------------------------ | ------------------------------------------------------------ | --------------- |\n| 1.   | **Neural Networks for Machine Learning**              | Geoffrey Hinton, University of Toronto         | [Lecture-Slides](http://www.cs.toronto.edu/~hinton/coursera_slides.html) <br/> [CSC321-tijmen](https://www.cs.toronto.edu/~tijmen/csc321/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoRl3Ht4JOcdU872GhiYWf6jwrk_SNhz9) <br/> [UofT-mirror](https://www.cs.toronto.edu/~hinton/coursera_lectures.html) | 2012 <br/> 2014 |\n| 2.   | **Neural Networks Demystified**                       | Stephen Welch, Welch Labs                      | [Suppl. Code](https://github.com/stephencwelch/Neural-Networks-Demystified) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLiaHhY2iBX9hdHaRr6b7XevZtgZRa1PoU) | 2014            |\n| 3.   | **Deep Learning at Oxford**                           | Nando de Freitas, Oxford University            | [Oxford-ML](http://www.cs.ox.ac.uk/teaching/courses/2014-2015/ml/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLE6Wd9FR--EfW8dtjAuPoTuPcqmOV53Fu) | 2015            |\n| 4.   | **Deep Learning for Perception**                      | Dhruv Batra, Virginia Tech                     | [ECE-6504](https://computing.ece.vt.edu/~f15ece6504/)        | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL-fZD610i7yAsfH2eLBiRDa90kL2ML0f7) | 2015            |\n| 5.   | **Deep Learning**                                     | Ali Ghodsi, University of Waterloo             | [STAT-946](https://uwaterloo.ca/data-analytics/deep-learning) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLehuLRPyt1Hyi78UOkMPWCGRxGcA9NVOE) | F2015           |\n| 6.   | **CS231n: CNNs for Visual Recognition**               | Andrej Karpathy, Stanford University           | [CS231n](http://cs231n.stanford.edu/2015/)                   | `None`                                                       | 2015            |\n| 7.   | **CS224d: Deep Learning for NLP**                     | Richard Socher, Stanford University            | [CS224d](http://cs224d.stanford.edu)                         | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLmImxx8Char8dxWB9LRqdpCTmewaml96q) | 2015            |\n| 8.   | **Bay Area Deep Learning**                            | Many legends, Stanford                         | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLrAXtmErZgOfMuxkACrYnD2fTgbzk2THW) | 2016            |\n| 9.   | **CS231n: CNNs for Visual Recognition**               | Andrej Karpathy, Stanford University           | [CS231n](http://cs231n.stanford.edu/2016/)                   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLkt2uSq6rBVctENoVBg1TpCC7OQi31AlC) <br/>[(Academic Torrent)](https://academictorrents.com/details/46c5af9e2075d9af06f280b55b65cf9b44eb9fe7) | 2016            |\n| 10.  | **Neural Networks**                                   | Hugo Larochelle, Université de Sherbrooke      | [Neural-Networks](http://info.usherbrooke.ca/hlarochelle/neural_networks/content.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL6Xpj9I5qXYEcOhn7TqghAJ6NAPrNmUBH) <br/> [(Academic Torrent)](https://academictorrents.com/details/e046bca3bc837053d1609ef33d623ee5c5af7300) | 2016            |\n|      |                                                       |                                                |                                                              |                                                              |                 |\n| 11.  | **CS224d: Deep Learning for NLP**                     | Richard Socher, Stanford University            | [CS224d](http://cs224d.stanford.edu)                         | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLlJy-eBtNFt4CSVWYqscHDdP58M3zFHIG) <br/>[(Academic Torrent)](https://academictorrents.com/details/dd9b74b50a1292b4b154094b7338ec1d66e8894d) | 2016            |\n| 12.  | **CS224n: NLP with Deep Learning**                    | Richard Socher, Stanford University            | [CS224n](http://web.stanford.edu/class/cs224n/)              | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL3FW7Lu3i5Jsnh1rnUwq_TcylNr7EkRe6) | 2017            |\n| 13.  | **CS231n: CNNs for Visual Recognition**               | Justin Johnson, Stanford University            | [CS231n](http://cs231n.stanford.edu/2017/)                   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL3FW7Lu3i5JvHM8ljYj-zLfQRF3EO8sYv) <br/> [(Academic Torrent)](https://academictorrents.com/details/ed8a16ebb346e14119a03371665306609e485f13) | 2017            |\n| 14.  | **Topics in Deep Learning**                           | Ruslan Salakhutdinov, CMU                      | [10707](https://deeplearning-cmu-10707.github.io/)           | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLpIxOj-HnDsOSL__Buy7_UEVQkyfhHapa) | F2017           |\n| 15.  | **Deep Learning Crash Course**                        | Leo Isikdogan, UT Austin                       | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLWKotBjTDoLj3rXBL-nEIPRN9V3a9Cx07) | 2017            |\n| 16.  | **Deep Learning and its Applications**                | François Pitié, Trinity College Dublin         | [EE4C16](https://github.com/frcs/4C16-2017)                  | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLIo1iEzl5iB9NkulNR0X5vXN8AaEKglWT) | 2017            |\n| 17.  | **Deep Learning**                                     | Andrew Ng, Stanford University                 | [CS230](http://cs230.stanford.edu/)                          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoROMvodv4rOABXSygHTsbvUz4G_YQhOb) | 2018            |\n| 18.  | **UvA Deep Learning**                                 | Efstratios Gavves, University of Amsterdam     | [UvA-DLC](https://uvadlc.github.io/)                         | [Lecture-Videos](https://uvadlc.github.io/lectures-sep2018.html) | 2018            |\n| 19.  | **Advanced Deep Learning and Reinforcement Learning** | Many legends, DeepMind                         | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLqYmG7hTraZDNJre23vqCGIVpfZ_K2RZs) | 2018            |\n| 20.  | **Machine Learning**                                  | Peter Bloem, Vrije Universiteit Amsterdam      | [MLVU](https://mlvu.github.io/)                              | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLCof9EqayQgsORO3pFzeYZFz6cszYO0VJ) | 2018            |\n|      |                                                       |                                                |                                                              |                                                              |                 |\n| 21.  | **Deep Learning**                                     | Francois Fleuret, EPFL                         | [EE-59](https://fleuret.org/ee559-2018/dlc)                  | [Video-Lectures](https://fleuret.org/ee559-2018/dlc/#materials) | 2018            |\n| 22.  | **Introduction to Deep Learning**                     | Alexander Amini, Harini Suresh and others, MIT | [6.S191](http://introtodeeplearning.com/)                    | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLtBw6njQRU-rwp5__7C0oIVt26ZgjG9NI) <br/> [2017-version](https://www.youtube.com/playlist?list=PLkkuNyzb8LmxFutYuPA7B4oiMn6cjD6Rs) | 2017- 2021     |\n| 23.  | **Deep Learning for Self-Driving Cars**               | Lex Fridman, MIT                               | [6.S094](https://selfdrivingcars.mit.edu/)                   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLrAXtmErZgOeiKm4sgNOknGvNjby9efdf) | 2017-2018       |\n| 24.  | **Introduction to Deep Learning**                     | Bhiksha Raj and many others, CMU               | [11-485/785](http://deeplearning.cs.cmu.edu/)                | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLp-0K3kfddPwJBJ4Q8We-0yNQEG0fZrSa) | S2018           |\n| 25.  | **Introduction to Deep Learning**                     | Bhiksha Raj and many others, CMU               | [11-485/785](http://deeplearning.cs.cmu.edu/)                | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLp-0K3kfddPyH44FP0dl0CbYprvTcfgOI)   [Recitation-Inclusive](https://www.youtube.com/playlist?list=PLLR0_ZOlbfD6KDBq93G8-guHI-J1ICeFm) | F2018           |\n| 26.  | **Deep Learning Specialization**                      | Andrew Ng, Stanford                            | [DL.AI](https://www.deeplearning.ai/deep-learning-specialization/) | [YouTube-Lectures](https://www.youtube.com/channel/UCcIXc5mJsHVYTZR1maL5l9w/playlists) | 2017-2018       |\n| 27.  | **Deep Learning**                                     | Ali Ghodsi, University of Waterloo             | [STAT-946](https://uwaterloo.ca/data-analytics/teaching/deep-learning-2017) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLehuLRPyt1HxTolYUWeyyIoxDabDmaOSB) | F2017           |\n| 28.  | **Deep Learning**                                     | Mitesh Khapra, IIT-Madras                      | [CS7015](https://www.cse.iitm.ac.in/~miteshk/CS7015.html)    | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLyqSpQzTE6M9gCgajvQbc68Hk_JKGBAYT) | 2018            |\n| 29.  | **Deep Learning for AI**                              | UPC Barcelona                                  | [DLAI-2017](https://telecombcn-dl.github.io/2017-dlai/) <br/> [DLAI-2018](https://telecombcn-dl.github.io/2018-dlai/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL-5eMc3HQTBagIUjKefjcTbnXC0wXC_vd) | 2017-2018       |\n| 30.  | **Deep Learning**                                     | Alex Bronstein and Avi Mendelson, Technion     | [CS236605](https://vistalab-technion.github.io/cs236605/info/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLM0a6Z788YAZuqg2Ip-_dPLzEd33lZvP2) | 2018            |\n|      |                                                       |                                                |                                                              |                                                              |                 |\n| 31.  | **MIT Deep Learning**                                 | Many Researchers,  Lex Fridman, MIT            | [6.S094, 6.S091, 6.S093](https://deeplearning.mit.edu/)      | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLrAXtmErZgOeiKm4sgNOknGvNjby9efdf) | 2019            |\n| 32.  | **Deep Learning Book** companion videos               | Ian Goodfellow and others                      | [DL-book slides](https://www.deeplearningbook.org/lecture_slides.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLsXu9MHQGs8df5A4PzQGw-kfviylC-R9b) | 2017            |\n| 33.  | **Theories of Deep Learning**                         | Many Legends, Stanford                         | [Stats-385](https://stats385.github.io/)                     | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLwUqqMt5en7fFLwSDa9V3JIkDam-WWgqy) <br/> (first 10 lectures) | F2017           |\n| 34.  | **Neural Networks**                                   | Grant Sanderson                                | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLZHQObOWTQDNU6R1_67000Dx_ZCJB-3pi) | 2017-2018       |\n| 35.  | **CS230: Deep Learning**                              | Andrew Ng, Kian Katanforoosh, Stanford         | [CS230](http://cs230.stanford.edu/)                          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoROMvodv4rOABXSygHTsbvUz4G_YQhOb) | A2018           |\n| 36.  | **Theory of Deep Learning**                           | Lots of Legends, Canary Islands                | [DALI'18](http://dalimeeting.org/dali2018/workshopTheoryDL.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLeCNfJWZKqxtWBnV8gefGqmmPgz9YF4LR) | 2018            |\n| 37.  | **Introduction to Deep Learning**                     | Alex Smola, UC Berkeley                        | [Stat-157](http://courses.d2l.ai/berkeley-stat-157/index.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLZSO_6-bSqHQHBCoGaObUljoXAyyqhpFW) | S2019           |\n| 38.  | **Deep Unsupervised Learning**                        | Pieter Abbeel, UC Berkeley                     | [CS294-158](https://sites.google.com/view/berkeley-cs294-158-sp19/home) | [YouTube-Lectures](https://www.youtube.com/channel/UCf4SX8kAZM_oGcZjMREsU9w/videos) | S2019           |\n| 39.  | **Machine Learning**                                  | Peter Bloem, Vrije Universiteit Amsterdam      | [MLVU](https://mlvu.github.io/)                              | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLCof9EqayQgupldnTvqNy_BThTcME5r93) | 2019            |\n| 40.  | **Deep Learning on Computational Accelerators**       | Alex Bronstein and Avi Mendelson, Technion     | [CS236605](https://vistalab-technion.github.io/cs236605/lectures/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLM0a6Z788YAa_WCy_V-q9NrGm5qQegZR5) | S2019           |\n|      |                                                       |                                                |                                                              |                                                              |                 |\n| 41.  | **Introduction to Deep Learning**                     | Bhiksha Raj and many others, CMU               | [11-785](http://www.cs.cmu.edu/~bhiksha/courses/deeplearning/Spring.2019/www) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLp-0K3kfddPzNdZPX4p0lVi6AcDXBofuf) | S2019           |\n| 42.  | **Introduction to Deep Learning**                     | Bhiksha Raj and many others, CMU               | [11-785](https://www.cs.cmu.edu/~bhiksha/courses/deeplearning/Fall.2019/www) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLp-0K3kfddPwz13VqV1PaMXF6V6dYdEsj) <br> [Recitations](https://www.youtube.com/playlist?list=PLp-0K3kfddPxf4T59JEQKv5UanLPVsxzz) | F2019           |\n| 43.  | **UvA Deep Learning**                                 | Efstratios Gavves, University of Amsterdam     | [UvA-DLC](https://uvadlc.github.io/)                         | [Lecture-Videos](https://uvadlc.github.io/lectures-apr2019.html) | S2019           |\n| 44. | **Deep Learning** | Prabir Kumar Biswas, IIT Kgp | `None` | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLbRMhDVUMngc7NM-gDwcBzIYZNFSK2N1a) | 2019 |\n| 45. | **Deep Learning and its Applications** | Aditya Nigam, IIT Mandi | [CS-671](http://faculty.iitmandi.ac.in/~aditya/cs671/index.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLKvX2d3IUq586Ic9gIhZj6ubpWV-OJfl4) | 2019 |\n| 46. | **Neural Networks**                                   | Neil Rhodes, Harvey Mudd College               | [CS-152](https://www.cs.hmc.edu/~rhodes/cs152/schedule.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgEuVSRbAI9UIQSHGy4l01laA_12YOqEj) | F2019           |\n| 47. | **Deep Learning**                                     | Thomas Hofmann, ETH Zürich                     | [DAL-DL](http://www.da.inf.ethz.ch/teaching/2019/DeepLearning) | [Lecture-Videos](https://video.ethz.ch/lectures/d-infk/2019/autumn/263-3210-00L.html) | F2019           |\n| 48. | **Deep Learning**                                     | Milan Straka, Charles University               | [NPFL114](https://ufal.mff.cuni.cz/courses/npfl114) | [Lecture-Videos](https://ufal.mff.cuni.cz/courses/npfl114/1718-summer) | S2019 |\n| 49. | **UvA Deep Learning** | Efstratios Gavves, University of Amsterdam | [UvA-DLC-19](https://uvadlc.github.io/#lectures) | [Lecture-Videos](https://uvadlc.github.io/#lectures) | F2019 |\n| 50. | **Artificial Intelligence: Principles and Techniques** | Percy Liang and Dorsa Sadigh, Stanford University | [CS221](https://stanford-cs221.github.io/autumn2019/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoROMvodv4rO1NB9TD4iUZ3qghGEGtqNX) | F2019 |\n|  |  |  |  |  |  |\n| 51. | **Analyses of Deep Learning** | Lots of Legends, Stanford University | [STATS-385](https://stats385.github.io/) | [YouTube-Lectures](https://stats385.github.io/lecture_videos) | 2017-2019 |\n| 52. | **Deep Learning Foundations and Applications** | Debdoot Sheet and Sudeshna Sarkar, IIT-Kgp | [AI61002](http://www.facweb.iitkgp.ac.in/~debdoot/courses/AI61002/Spr2020) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL_AdDfjIMo6pZfwjZ0rJlkE_MIsmRW7Mh) | S2020 |\n| 53. | **Designing, Visualizing, and Understanding Deep Neural Networks** | John Canny, UC Berkeley | [CS 182/282A](https://bcourses.berkeley.edu/courses/1487769/pages/cs-l-w-182-slash-282a-designing-visualizing-and-understanding-deep-neural-networks-spring-2020) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLkFD6_40KJIwaO6Eca8kzsEFBob0nFvwm) | S2020 |\n| 54. | **Deep Learning** | Yann LeCun and Alfredo Canziani, NYU | [DS-GA 1008](https://atcold.github.io/pytorch-Deep-Learning/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLLHTzKZzVU9eaEyErdV26ikyolxOsz6mq) | S2020 |\n| 55. | **Introduction to Deep Learning** | Bhiksha Raj, CMU | [11-785](https://deeplearning.cs.cmu.edu/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLp-0K3kfddPzCnS4CqKphh-zT3aDwybDe) | S2020 |\n| 56. | **Deep Unsupervised Learning** | Pieter Abbeel, UC Berkeley | [CS294-158](https://sites.google.com/view/berkeley-cs294-158-sp20) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLwRJQ4m4UJjPiJP3691u-qWwPGVKzSlNP) | S2020 |\n| 57. | **Machine Learning** | Peter Bloem, Vrije Universiteit Amsterdam | [VUML](https://mlvu.github.io/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLCof9EqayQgthR7IViXkAkUwel_rhxGYM) | S2020 |\n| 58. | **Deep Learning (with PyTorch)** | Alfredo Canziani and Yann LeCun, NYU | [DS-GA 1008](https://atcold.github.io/pytorch-Deep-Learning/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLLHTzKZzVU9eaEyErdV26ikyolxOsz6mq) | S2020 |\n| 59. | **Introduction to Deep Learning and Generative Models** | Sebastian Raschka, UW-Madison | [Stat453](http://pages.stat.wisc.edu/~sraschka/teaching/stat453-ss2020/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLTKMiZHVd_2JkR6QtQEnml7swCnFBtq4P) | S2020 |\n| 60. | **Deep Learning** | Andreas Maier, FAU Erlangen-Nürnberg | [DL-2020](https://www.video.uni-erlangen.de/course/id/925) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLpOGQvPCDQzvgpD3S0vTy7bJe2pf_yJFj) <br/>[Lecture-Videos](https://www.video.uni-erlangen.de/course/id/925) | SS2020 |\n|  |  |  |  |  |  |\n| 61. | **Introduction to Deep Learning** | Laura Leal-Taixé and Matthias Niessner, TU-München | [I2DL-IN2346](https://dvl.in.tum.de/teaching/i2dl-ss20/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLQ8Y4kIIbzy_OaXv86lfbQwPHSomk2o2e) | SS2020 |\n| 62. | **Deep Learning** | Sargur Srihari, SUNY-Buffalo | [CSE676](https://cedar.buffalo.edu/~srihari/CSE676/) | [YouTube-Lectures-P1](https://www.youtube.com/playlist?list=PLmx4utxjUQD70k_NzeiSIXf30m54T_e1h) <br/>[YouTube-Lectures-P2](https://www.youtube.com/channel/UCUm7yUmVJyAbYh_0ppJ4H-g/videos) | 2020 |\n| 63. | **Deep Learning Lecture Series** | Lots of Legends, DeepMind x UCL, London | [DLLS-20](https://deepmind.com/learning-resources/deep-learning-lecture-series-2020) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLqYmG7hTraZCDxZ44o4p3N5Anz3lLRVZF) | 2020 |\n| 64. | **MultiModal Machine Learning** | Louis-Philippe Morency & others, Carnegie Mellon University | [11-777 MMML-20](https://cmu-multicomp-lab.github.io/mmml-course/fall2020) | [YouTube-Lectures](https://www.youtube.com/channel/UCqlHIJTGYhiwQpNuPU5e2gg/videos) | F2020 |\n| 65. | **Reliable and Interpretable Artificial Intelligence** | Martin Vechev, ETH Zürich | [RIAI-20](https://www.sri.inf.ethz.ch/teaching/riai2020) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLWjm4hHpaNg6c-W7JjNYDEC_kJK9oSp0Y) | F2020 |\n| 66. | **Fundamentals of Deep Learning** | David McAllester, Toyota Technological Institute, Chicago | [TTIC-31230](https://mcallester.github.io/ttic-31230/Fall2020) | [YouTube-Lectures](https://www.youtube.com/channel/UCciVrtrRR3bQdaGbti9-hVQ/videos) | F2020 |\n| 67. | **Foundations of Deep Learning** | Soheil Feize, University of Maryland, College Park | [CMSC 828W](http://www.cs.umd.edu/class/fall2020/cmsc828W) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLHgjs9ncvHi80UCSlSvQe-TK_uOyDv_Jf) | F2020 |\n| 68. | **Deep Learning** | Andreas Geiger, Universität Tübingen | [DL-UT](https://uni-tuebingen.de/fakultaeten/mathematisch-naturwissenschaftliche-fakultaet/fachbereiche/informatik/lehrstuehle/autonomous-vision/teaching/lecture-deep-learning/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL05umP7R6ij3NTWIdtMbfvX7Z-4WEXRqD) | W20/21 |\n| 69. | **Deep Learning** | Andreas Maier, FAU Erlangen-Nürnberg | [DL-FAU](https://www.fau.tv/course/id/1599) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLpOGQvPCDQzvJEPFUQ3mJz72GJ95jyZTh) | W20/21 |\n| 70. | **Fundamentals of Deep Learning** | Terence Parr and Yannet Interian, University of San Francisco | [DL-Fundamentals](https://github.com/parrt/fundamentals-of-deep-learning) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLFCc_Fc116ikeol9CZcWWKqmrJljxhE4N) | S2021 |\n|  |  |  |  |  |  |\n| 71. | **Full Stack Deep Learning** | Pieter Abbeel, Sergey Karayev, UC Berkeley | [FS-DL](https://fullstackdeeplearning.com/spring2021) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL1T8fO7ArWlcWg04OgNiJy91PywMKT2lv) | S2021 |\n| 72. | **Deep Learning: Designing, Visualizing, and Understanding DNNs** | Sergey Levine, UC Berkeley | [CS 182](https://cs182sp21.github.io) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL_iWQOsE6TfVmKkQHucjPAoRtIJYt8a5A) | S2021 |\n| 73. | **Deep Learning in the Life Sciences** | Manolis Kellis, MIT | [6.874](https://mit6874.github.io) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLypiXJdtIca5sxV7aE3-PS9fYX3vUdIOX) | S2021 |\n| 74. | **Introduction to Deep Learning and Generative Models** | Sebastian Raschka, University of Wisconsin-Madison | [Stat 453](http://pages.stat.wisc.edu/~sraschka/teaching/stat453-ss2021) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLTKMiZHVd_2KJtIXOW0zFhFfBaJJilH51) | S2021 |\n| 75. | **Deep Learning** | Alfredo Canziani and Yann LeCun, NYU | [NYU-DLSP21](https://atcold.github.io/NYU-DLSP21) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLLHTzKZzVU9e6xUfG10TkTWApKSZCzuBI) | S2021 |\n| 76. | **Applied Deep Learning** | Alexander Pacha, TU Wien | `None` | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLNsFwZQ_pkE8xNYTEyorbaWPN7nvbWyk1) | 2020-2021 |\n| 77. | **Machine Learning** | Hung-yi Lee, National Taiwan University | [ML'21](https://speech.ee.ntu.edu.tw/~hylee/ml/2021-spring.php) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLJV_el3uVTsNxV_IGauQZBHjBKZ26JHjd) | S2021 |\n| 78. | **Mathematics of Deep Learning** | Lots of legends, FAU | [MoDL](https://www.fau.tv/course/id/878) | [Lecture-Videos](https://www.fau.tv/course/id/878) | 2019-21 |\n| 79. | **Deep Learning** | Peter Bloem, Michael Cochez, and Jakub Tomczak, VU-Amsterdam | [DL](https://dlvu.github.io/) | [YouTube-Lectures](https://www.youtube.com/channel/UCYh1zKnwzrSjrO2Ae-akfTg/playlists) | 2020-21 |\n| 80. | **Applied Deep Learning** | Maziar Raissi, UC Boulder | [ADL'21](https://github.com/maziarraissi/Applied-Deep-Learning) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoEMreTa9CNmuxQeIKWaz7AVFd_ZeAcy4) | 2021 |\n| | | | | | |\n| 81. | **An Introduction to Group Equivariant Deep Learning** | Erik J. Bekkers, Universiteit van Amsterdam | [UvAGEDL](https://uvagedl.github.io) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL8FnQMH2k7jzPrxqdYufoiYVHim8PyZWd) | 2022 |\n| | | | | | |\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents) \n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n### :cupid: Machine Learning Fundamentals :cyclone: :boom: \n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n| S.No | Course Name                                                  | University/Instructor(s)                                | Course Webpage                                               | Video Lectures                                               | Year       |\n| ---- | ------------------------------------------------------------ | ------------------------------------------------------- | ------------------------------------------------------------ | ------------------------------------------------------------ | ---------- |\n| 1.   | **Linear Algebra**                                           | Gilbert Strang, MIT                                     | [18.06 SC](http://ocw.mit.edu/18-06SCF11)                    | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL221E2BBF13BECF6C) | 2011       |\n| 2.   | **Probability Primer**                                       | Jeffrey Miller, Brown University                        | `mathematical monk`                                          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL17567A1A3F5DB5E4) | 2011       |\n| 3.   | **Information Theory, Pattern Recognition, and Neural Networks** | David Mackay, University of Cambridge                   | [ITPRNN](http://www.inference.org.uk/mackay/itprnn)          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLruBu5BI5n4aFpG32iMbdWoRVAA-Vcso6) | 2012       |\n| 4.   | **Linear Algebra Review**                                    | Zico Kolter, CMU                                        | [LinAlg](http://www.cs.cmu.edu/~zkolter/course/linalg/index.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLM4Pv4KYYzGzL5ay6dmpyzRnbzQ__8v_t) | 2013       |\n| 5.   | **Probability and Statistics**                               | Michel van Biezen                                       | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLX2gX-ftPVXUWwTzAkOhBdhplvz0fByqV) | 2015       |\n| 6.   | **Linear Algebra: An in-depth Introduction**                 | Pavel Grinfeld                                          | `None`                                                       | [Part-1](https://www.youtube.com/playlist?list=PLlXfTHzgMRUKXD88IdzS14F4NxAZudSmv) <br/> [Part-2](https://www.youtube.com/playlist?list=PLlXfTHzgMRULWJYthculb2QWEiZOkwTSU)  <br/> [Part-3](https://www.youtube.com/playlist?list=PLlXfTHzgMRUIqYrutsFXCOmiqKUgOgGJ5) <br/> [Part-4](https://www.youtube.com/playlist?list=PLlXfTHzgMRULZfrNCrrJ7xDcTjGr633mm) | 2015- 2017 |\n| 7.   | **Multivariable Calculus**                                   | Grant Sanderson, Khan Academy                           | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLSQl0a2vh4HC5feHa6Rc5c0wbRTx56nF7) | 2016       |\n| 8.   | **Essence of Linear Algebra**                                | Grant Sanderson                                         | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLZHQObOWTQDPD3MizzM2xVFitgF8hE_ab) | 2016       |\n| 9.   | **Essence of Calculus**                                      | Grant Sanderson                                         | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLZHQObOWTQDMsr9K-rj53DwVRMYO3t5Yr) | 2017-2018  |\n| 10.  | **Math Background for Machine Learning**                     | Geoff Gordon, CMU                                       | [10-606](https://canvas.cmu.edu/courses/603/assignments/syllabus), [10-607](https://piazza.com/cmu/fall2017/1060610607/home) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL7y-1rk2cCsAqRtWoZ95z-GMcecVG5mzA) | F2017      |\n|      |                                                              |                                                         |                                                              |                                                              |            |\n| 11.  | **Mathematics for Machine Learning** (Linear Algebra, Calculus) | David Dye, Samuel Cooper, and Freddie Page, IC-London   | [MML](https://www.coursera.org/learn/linear-algebra-machine-learning) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLmAuaUS7wSOP-iTNDivR0ANKuTUhEzMe4) | 2018       |\n| 12.  | **Multivariable Calculus**                                   | S.K. Gupta and Sanjeev Kumar, IIT-Roorkee               | [MVC](https://nptel.ac.in/syllabus/111107108/)               | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLq-Gm0yRYwTiQtK374NzhFOcQkWmJ71vx) | 2018       |\n| 13.  | **Engineering Probability**                                  | Rich Radke, Rensselaer Polytechnic Institute            | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLuh62Q4Sv7BU1dN2G6ncyiMbML7OXh_Jx) | 2018       |\n| 14.  | **Matrix Methods in Data Analysis, Signal Processing, and Machine Learning** | Gilbert Strang, MIT                                     | [18.065](https://ocw.mit.edu/courses/mathematics/18-065-matrix-methods-in-data-analysis-signal-processing-and-machine-learning-spring-2018) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLUl4u3cNGP63oMNUHXqIUcrkS2PivhN3k) | S2018      |\n| 15.  | **Information Theory**                                       | Himanshu Tyagi, IISC, Bengaluru                         | [E2 201](https://ece.iisc.ac.in/~htyagi/course-E2201-2020.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgMDNELGJ1CYS-8dlMGPIaowVfeda4nUj) | 2018-20    |\n| 16.  | **Math Camp**                                                | Mark Walker, University of Arizona                      | [UAMathCamp / Econ-519](http://www.u.arizona.edu/~mwalker/MathCamp2019.htm) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLcjqUUQt__ZGLhwUacPm7_RKs2eJNFwco) | 2019       |\n| 17.  | **A 2020 Vision of Linear Algebra**                          | Gilbert Strang, MIT                                     | [VoLA](https://ocw.mit.edu/resources/res-18-010-a-2020-vision-of-linear-algebra-spring-2020/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLUl4u3cNGP61iQEFiWLE21EJCxwmWvvek) | S2020      |\n| 18.  | **Mathematics for Numerical Computing and Machine Learning** | Szymon Rusinkiewicz, Princeton University               | [COS-302](https://www.cs.princeton.edu/courses/archive/fall20/cos302/outline.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL88aSuXxl_dSjC5pIG8bGkC5wsUPyW_Hh) | F2020      |\n| 19.  | **Essential Statistics for Neuroscientists**                 | Philipp Berens, Universität Klinikum Tübingen           | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL05umP7R6ij0Gw5SLIrOA1dMYScCx4oXT) | 2020       |\n| 20.  | **Mathematics for Machine Learning**                         | Ulrike von Luxburg, Eberhard Karls Universität Tübingen | [Math4ML](https://www.tml.cs.uni-tuebingen.de/teaching/2020_maths_for_ml) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL05umP7R6ij1a6KdEy8PVE9zoCv6SlHRS) | W2020      |\n| 21.  | **Introduction to Causal Inference**                         | Brady Neal, Mila, Montréal                              | [CausalInf](https://www.bradyneal.com/causal-inference-course) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoazKTcS0Rzb6bb9L508cyJ1z-U9iWkA0) | F2020      |\n| 22.  | **Applied Linear Algebra**                                   | Andrew Thangaraj, IIT Madras                            | [EE5120](http://www.ee.iitm.ac.in/~andrew/EE5120)            | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLyqSpQzTE6M-CHZU5RGfamcXOnuFyTOpm) | 2021       |\n| 23.  | **Mathematical Tools for Data Science**                      | Carlos Fernandez-Granda, New York University            | [DS-GA 1013/Math-GA 2824](https://cds.nyu.edu/math-tools)    | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLBEf5mJtE6KtU6YlXFZD6lyYcHhW5pIlc) | 2021       |\n| 24.  | **Mathematics for Numerical Computing and Machine Learning** | Ryan Adams, Princeton University                        | [COS 302 / SML 305](https://www.cs.princeton.edu/courses/archive/spring21/cos302) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLCO4cUaBLHFEHo42HVIVWaSOvbAiH30uc) | 2021       |\n|      |                                                              |                                                         |                                                              |                                                              |            |\n|      |                                                              |                                                         |                                                              |                                                              |            |\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents) \n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n### :cupid: Optimization for Machine Learning :cyclone: :boom: \n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n| S.No | Course Name                                                  | University/Instructor(s)                                     | Course Webpage                                               | Video Lectures                                               | Year       |\n| ---- | ------------------------------------------------------------ | ------------------------------------------------------------ | ------------------------------------------------------------ | ------------------------------------------------------------ | ---------- |\n| 1.   | **Convex Optimization**                                      | Stephen Boyd, Stanford University                            | [ee364a](http://web.stanford.edu/class/ee364a/lectures.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL3940DD956CDF0622) | 2008       |\n| 2.   | **Introduction to Optimization**                             | Michael Zibulevsky, Technion                                 | [CS-236330](https://sites.google.com/site/michaelzibulevsky/optimization-course) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLDFB2EEF4DDAFE30B) | 2009       |\n| 3.   | **Optimization for Machine Learning**                        | S V N Vishwanathan, Purdue University                        | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL09B0E8AFC69BE108) | 2011       |\n| 4.   | **Optimization**                                             | Geoff Gordon & Ryan Tibshirani, CMU                          | [10-725](https://www.cs.cmu.edu/~ggordon/10725-F12/)         | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL7y-1rk2cCsDOv91McLOnV4kExFfTB7dU) | 2012       |\n| 5.   | **Convex Optimization**                                      | Joydeep Dutta, IIT-Kanpur                                    | [cvx-nptel](https://nptel.ac.in/courses/111/104/111104068)   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLbMVogVj5nJQHFqfiSdgaLCCWvDcm1W4l) | 2013       |\n| 6.   | **Foundations of Optimization**                              | Joydeep Dutta, IIT-Kanpur                                    | [fop-nptel](https://nptel.ac.in/courses/111/104/111104071)   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLbMVogVj5nJRRbofh3Qm3P6_NVyevDGD_) | 2014       |\n| 7.   | **Algorithmic Aspects of Machine Learning**                  | Ankur Moitra, MIT                                            | [18.409-AAML](http://people.csail.mit.edu/moitra/409.html)   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLB3sDpSRdrOvI1hYXNsa6Lety7K8FhPpx) | S2015      |\n| 8.   | **Numerical Optimization**                                   | Shirish K. Shevade, IISC                                     | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL6EA0722B99332589) | 2015       |\n| 9.   | **Convex Optimization**                                      | Ryan Tibshirani, CMU                                         | [10-725](https://www.stat.cmu.edu/~ryantibs/convexopt-S15/)  | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLjbUi5mgii6BZBhJ9nW7eydgycyCOYeZ6) | S2015      |\n| 10.  | **Convex Optimization**                                      | Ryan Tibshirani, CMU                                         | [10-725](http://stat.cmu.edu/~ryantibs/convexopt-F15/)       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLjbUi5mgii6AGJW3La3BpEXe27n8v3biT) | F2015      |\n| 11.  | **Advanced Algorithms**                                      | Ankur Moitra, MIT                                            | [6.854-AA](http://people.csail.mit.edu/moitra/854.html)      | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL6ogFv-ieghdoGKGg2Bik3Gl1glBTEu8c) | S2016      |\n| 12.  | **Introduction to Optimization**                             | Michael Zibulevsky, Technion                                 | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLBD31626529B0AC2A) | 2016       |\n| 13.  | **Convex Optimization**                                      | Javier Peña & Ryan Tibshirani                                | [10-725/36-725](https://www.stat.cmu.edu/~ryantibs/convexopt-F16) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLjbUi5mgii6AVdvImLB9-Hako68p9MpIC) | F2016      |\n| 14.  | **Convex Optimization**                                      | Ryan Tibshirani, CMU                                         | [10-725](https://www.stat.cmu.edu/~ryantibs/convexopt-F18/)  | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLpIxOj-HnDsMM7BCNGC3hPFU3DfCWfVIw) <br/> [Lecture-Videos](https://www.stat.cmu.edu/~ryantibs/convexopt-F18/) | F2018      |\n| 15.  | **Modern Algorithmic Optimization**                          | Yurii Nesterov, UCLouvain                                    | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLEqoHzpnmTfAoUDqnmMly-KgyJ6ZM_axf) | 2018       |\n| 16.  | **Optimization, Foundations of Optimization**                | Mark Walker, University of Arizona                           | [MathCamp-20](http://www.u.arizona.edu/~mwalker/MathCamp2020/MathCamp2020LectureNotes.htm) | [YouTube-Lectures-Found.](https://www.youtube.com/playlist?list=PLcjqUUQt__ZE6wp_c4-FcRdmzBvx8VN7O) <br/> [YouTube-Lectures-Opt](https://www.youtube.com/playlist?list=PLcjqUUQt__ZE0ZSTNRyBIgLJ5obPHdmxC) | 2019 - now |\n| 17.  | **Optimization: Principles and Algorithms**                  | Michel Bierlaire, École polytechnique fédérale de Lausanne (EPFL) | [opt-algo](https://transp-or.epfl.ch/books/optimization/html/about_book.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLM4Pv4KYYzGzOpWwsaV6GgllT6njsi1G-) | 2019       |\n| 18.  | **Optimization and Simulation**                              | Michel Bierlaire, École polytechnique fédérale de Lausanne (EPFL) | [opt-sim](https://transp-or.epfl.ch/courses/OptSim2019/slides.php) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL10NOnsbP5Q5NlJ-Y6Eiup6RTSfkuj1TR) | S2019      |\n| 19.  | **Brazilian Workshop on Continuous Optimization**            | Lots of Legends, Instituto Nacional de Matemática Pura e Aplicada, Rio de Janeiro | [cont. opt.](https://impa.br/eventos-do-impa/eventos-2019/xiii-brazilian-workshop-on-continuous-optimization) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLo4jXE-LdDTQVZhnLPq2W31vJ1fq1VSp6) | 2019       |\n| 20.  | **One World Optimization Seminar**                           | Lots of Legends, Universität Wien                            | [1W-OPT](https://owos.univie.ac.at)                          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLBQo-yZOMzLWEcAptzTYOnwXo9hhXrAa2) | 2020-      |\n|      |                                                              |                                                              |                                                              |                                                              |            |\n| 21.  | **Convex Optimization II**                                   | Constantine Caramanis, UT Austin                             | [CVX-Optim-II](http://users.ece.utexas.edu/~cmcaram/constantine_caramanis/Announcements.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLXsmhnDvpjORzPelSDs0LSDrfJcqyLlZc) | S2020      |\n| 22.  | **Combinatorial Optimization**                               | Constantine Caramanis, UT Austin                             | [comb-op](https://caramanis.github.io/teaching/)             | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLXsmhnDvpjORcTRFMVF3aUgyYlHsxfhNL) | F2020      |\n| 23.  | **Optimization Methods for Machine Learning and Engineering** | Julius Pfrommer, Jürgen Beyerer, Karlsruher Institut für Technologie (KIT) | [Optim-MLE](https://ies.iar.kit.edu/lehre_1487.php), [slides](https://drive.google.com/drive/folders/1WWVWV4vDBIOkjZc6uFY3nfXvpaOUHcfb) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLdkTDauaUnQpzuOCZyUUZc0lxf4-PXNR5) | W2020-21   |\n|      |                                                              |                                                              |                                                              |                                                              |            |\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents) \n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n### :cupid: General Machine Learning :cyclone: :boom: \n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n| S.No | Course Name                                                  | University/Instructor(s)                                     | Course Webpage                                               | Video Lectures                                               | Year      |\n| ---- | ------------------------------------------------------------ | ------------------------------------------------------------ | ------------------------------------------------------------ | ------------------------------------------------------------ | --------- |\n| 1.   | **CS229: Machine Learning**                                  | Andrew Ng, Stanford University                               | [CS229-old](https://see.stanford.edu/Course/CS229/) <br/> [CS229-new](http://cs229.stanford.edu/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLA89DCFA6ADACE599) | 2007      |\n| 2.   | **Machine Learning**                                         | Jeffrey Miller, Brown University                             | `mathematical monk`                                          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLD0F06AA0D2E8FFBA) | 2011      |\n| 3.   | **Machine Learning**                                         | Tom Mitchell, CMU                                            | [10-701](http://www.cs.cmu.edu/~tom/10701_sp11/)             | [Lecture-Videos](http://www.cs.cmu.edu/~tom/10701_sp11/lectures.shtml) | 2011      |\n| 4.   | **Machine Learning and Data Mining**                         | Nando de Freitas, University of British Columbia             | [CPSC-340](https://www.cs.ubc.ca/~nando/340-2012/index.php)  | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLE6Wd9FR--Ecf_5nCbnSQMHqORpiChfJf) | 2012      |\n| 5.   | **Learning from Data**                                       | Yaser Abu-Mostafa, CalTech                                   | [CS156](http://work.caltech.edu/telecourse.html)             | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLD63A284B7615313A) | 2012      |\n| 6.   | **Machine Learning**                                         | Rudolph Triebel, Technische Universität München              | [Machine Learning](https://vision.in.tum.de/teaching/ws2013/ml_ws13) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLTBdjV_4f-EIiongKlS9OKrBEp8QR47Wl) | 2013      |\n| 7.   | **Introduction to Machine Learning**                         | Alex Smola, CMU                                              | [10-701](http://alex.smola.org/teaching/cmu2013-10-701/)     | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLZSO_6-bSqHQmMKwWVvYwKreGu4b4kMU9) | 2013      |\n| 8.   | **Introduction to Machine Learning**                         | Alex Smola and Geoffrey Gordon, CMU                          | [10-701x](http://alex.smola.org/teaching/cmu2013-10-701x/)   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLZSO_6-bSqHR7NPk4k0zqdm2dPdraQZ_B) | 2013      |\n| 9.   | **Pattern Recognition**                                      | Sukhendu Das, IIT-M and C.A. Murthy, ISI-Calcutta            | [PR-NPTEL](https://nptel.ac.in/syllabus/106106046/)          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLbMVogVj5nJQJMLb2CYw9rry0d5s0TQRp) | 2014      |\n| 10.  | **An Introduction to Statistical Learning with Applications in R** | Trevor Hastie and Robert Tibshirani, Stanford                | [stat-learn](https://lagunita.stanford.edu/courses/HumanitiesandScience/StatLearning/Winter2015/about) <br/> [R-bloggers](https://www.r-bloggers.com/in-depth-introduction-to-machine-learning-in-15-hours-of-expert-videos/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLOg0ngHtcqbPTlZzRHA2ocQZqB1D_qZ5V) | 2014      |\n|      |                                                              |                                                              |                                                              |                                                              |           |\n| 11.  | **Introduction to Machine Learning**                         | Katie Malone, Sebastian Thrun, Udacity                       | [ML-Udacity](https://www.udacity.com/course/ud120)           | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLAwxTw4SYaPkQXg8TkVdIvYv4HfLG7SiH) | 2015      |\n| 12.  | **Introduction to Machine Learning**                         | Dhruv Batra, Virginia Tech                                   | [ECE-5984](https://filebox.ece.vt.edu/~s15ece5984/)          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL-fZD610i7yDUiNTFy-tEOxkTwg4mHZHu) | 2015      |\n| 13.  | **Statistical Learning - Classification**                    | Ali Ghodsi, University of Waterloo                           | [STAT-441](https://uwaterloo.ca/data-analytics/statistical-learning-classification) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLehuLRPyt1Hy-4ObWBK4Ab0xk97s6imfC) | 2015      |\n| 14.  | **Machine Learning Theory**                                  | Shai Ben-David, University of Waterloo                       | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLPW2keNyw-usgvmR7FTQ3ZRjfLs5jT4BO) | 2015      |\n| 15.  | **Introduction to Machine Learning**                         | Alex Smola, CMU                                              | [10-701](http://alex.smola.org/teaching/10-701-15/)          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLZSO_6-bSqHTTV7w9u7grTXBHMH-mw3qn) | S2015     |\n| 16.  | **Statistical Machine Learning**                             | Larry Wasserman, CMU                                         | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLjbUi5mgii6BWEUZf7He6nowWvGne_Y8r) | S2015     |\n| 17.  | **ML: Supervised Learning**                                  | Michael Littman, Charles Isbell, Pushkar Kolhe, GaTech       | [ML-Udacity](https://eu.udacity.com/course/machine-learning--ud262) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLAwxTw4SYaPl0N6-e1GvyLp5-MUMUjOKo) | 2015      |\n| 18.  | **ML: Unsupervised Learning**                                | Michael Littman, Charles Isbell, Pushkar Kolhe, GaTech       | [ML-Udacity](https://eu.udacity.com/course/machine-learning-unsupervised-learning--ud741) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLAwxTw4SYaPmaHhu-Lz3mhLSj-YH-JnG7) | 2015      |\n| 19.  | **Advanced Introduction to Machine Learning**                | Barnabas Poczos and Alex Smola                               | [10-715](https://www.cs.cmu.edu/~bapoczos/Classes/ML10715_2015Fall/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL4YhK0pT0ZhWBzSBkMGzpnPw6sf6Ma0IX) | F2015     |\n| 20.  | **Machine Learning**                                         | Pedro Domingos, UWashington                                  | [CSEP-546](https://courses.cs.washington.edu/courses/csep546/16sp/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLTPQEx-31JXgtDaC6-3HxWcp7fq4N8YGr) | S2016     |\n|      |                                                              |                                                              |                                                              |                                                              |           |\n| 21.  | **Statistical Machine Learning**                             | Larry Wasserman, CMU                                         | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLTB9VQq8WiaCBK2XrtYn5t9uuPdsNm7YE) | S2016     |\n| 22.  | **Machine Learning with Large Datasets**                     | William Cohen, CMU                                           | [10-605](http://curtis.ml.cmu.edu/w/courses/index.php/Machine_Learning_with_Large_Datasets_10-605_in_Fall_2016) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLnfBqXRW5MRhPtfkadfwQ0VcuSi2IwEcW) | F2016     |\n| 23.  | **Math Background for Machine Learning**                     | Geoffrey Gordon, CMU                                         | `10-600`                                                     | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL7y-1rk2cCsA339crwXMWUaBRuLBvPBCg) | F2016     |\n| 24.  | **Statistical Learning - Classification**                    | Ali Ghodsi, University of Waterloo                           | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLehuLRPyt1HzXDemu7K4ETcF0Ld_B5adG) | 2017      |\n| 25.  | **Machine Learning**                                         | Andrew Ng, Stanford University                               | [Coursera-ML](https://www.coursera.org/learn/machine-learning) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLLssT5z_DsK-h9vYZkQkYNWcItqhlRJLN) | 2017      |\n| 26.  | **Machine Learning**                                         | Roni Rosenfield, CMU                                         | [10-601](http://www.cs.cmu.edu/~roni/10601-f17/)             | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL7k0r4t5c10-g7CWCnHfZOAxLaiNinChk) | 2017      |\n| 27.  | **Statistical Machine Learning**                             | Ryan Tibshirani, Larry Wasserman, CMU                        | [10-702](http://www.stat.cmu.edu/~ryantibs/statml/)          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLjbUi5mgii6B7A0nM74zHTOVQtTC9DaCv) | S2017     |\n| 28.  | **Machine Learning for Computer Vision**                     | Fred Hamprecht, Heidelberg University                        | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLuRaSnb3n4kSQFyt8VBldsQ9pO9Xtu8rY) | F2017     |\n| 29.  | **Math Background for Machine Learning**                     | Geoffrey Gordon, CMU                                         | [10-606 / 10-607](https://canvas.cmu.edu/courses/603/assignments/syllabus) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL7y-1rk2cCsAqRtWoZ95z-GMcecVG5mzA) | F2017     |\n| 30.  | **Data Visualization**                                       | Ali Ghodsi, University of Waterloo                           | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLehuLRPyt1HzQoXEhtNuYTmd0aNQvtyAK) | 2017      |\n|      |                                                              |                                                              |                                                              |                                                              |           |\n| 31.  | **Machine Learning for Physicists**                          | Florian Marquardt, Uni Erlangen-Nürnberg                     | [ML4Phy-17](http://www.thp2.nat.uni-erlangen.de/index.php/2017_Machine_Learning_for_Physicists,_by_Florian_Marquardt) | [Lecture-Videos](https://www.video.uni-erlangen.de/course/id/574) | 2017      |\n| 32.  | **Machine Learning for Intelligent Systems**                 | Kilian Weinberger, Cornell University                        | [CS4780](http://www.cs.cornell.edu/courses/cs4780/2018fa/)   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLl8OlHZGYOQ7bkVbuRthEsaLr7bONzbXS) | F2018     |\n| 33.  | **Statistical Learning Theory and Applications**             | Tomaso Poggio, Lorenzo Rosasco, Sasha Rakhlin                | [9.520/6.860](https://cbmm.mit.edu/lh-9-520)                 | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLyGKBDfnk-iAtLO6oLW4swMiQGz4f2OPY) | F2018     |\n| 34.  | **Machine Learning and Data Mining**                         | Mike Gelbart, University of British Columbia                 | [CPSC-340](https://ubc-cs.github.io/cpsc340/)                | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLWmXHcz_53Q02ZLeAxigki1JZFfCO6M-b) | 2018      |\n| 35.  | **Foundations of Machine Learning**                          | David Rosenberg, Bloomberg                                   | [FOML](https://bloomberg.github.io/foml/#home)               | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLnZuxOufsXnvftwTB1HL6mel1V32w0ThI) | 2018      |\n| 36.  | **Introduction to Machine Learning**                         | Andreas Krause, ETH Zürich                                   | [IntroML](https://las.inf.ethz.ch/teaching/introml-s18)      | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLzn6LN6WhlN273tsqyfdrBUsA-o5nUESV) | 2018      |\n| 37.  | **Machine Learning Fundamentals**                            | Sanjoy Dasgupta, UC-San Diego                                | [MLF-slides](https://drive.google.com/drive/folders/1l1rwv-jMihLZIpW0zTgGN9-snWOsA3M9) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL_onPhFCkVQhUzcTVgQiC8W2ShZKWlm0s) | 2018      |\n| 38.  | **Machine Learning**                                         | Jordan Boyd-Graber, University of Maryland                   | [CMSC-726](http://users.umiacs.umd.edu/~jbg/teaching/CMSC_726/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLegWUnz91WfsELyRcZ7d1GwAVifDaZmgo) | 2015-2018 |\n| 39.  | **Machine Learning**                                         | Andrew Ng, Stanford University                               | [CS229](http://cs229.stanford.edu/syllabus-autumn2018.html)  | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoROMvodv4rMiGQp3WXShtMGgzqpfVfbU) | 2018      |\n| 40.  | **Machine Intelligence**                                     | H.R.Tizhoosh, UWaterloo                                      | [SYDE-522](https://kimialab.uwaterloo.ca/kimia/index.php/teaching/syde-522-machine-intelligence-2) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL4upCU5bnihwCX93Gv6AQnKmVMwx4AZoT) | 2019      |\n|      |                                                              |                                                              |                                                              |                                                              |           |\n| 41.  | **Introduction to Machine Learning**                         | Pascal Poupart, University of Waterloo                       | [CS480/680](https://cs.uwaterloo.ca/~ppoupart/teaching/cs480-spring19) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLdAoL1zKcqTW-uzoSVBNEecKHsnug_M0k) | S2019     |\n| 42.  | **Advanced Machine Learning**                                | Thorsten Joachims, Cornell University                        | [CS-6780](https://www.cs.cornell.edu/courses/cs6780/2019sp)  | [Lecture-Videos](https://cornell.mediasite.com/Mediasite/Catalog/Full/f5d1cd3323f746cca80b2468bf97efd421) | S2019     |\n| 43.  | **Machine Learning for Structured Data**                     | Matt Gormley, Carnegie Mellon University                     | [10-418/10-618](http://www.cs.cmu.edu/~mgormley/courses/10418/schedule.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL4CxkUJbvNVihRKP4bXufvRLIWzeS-ieP) | F2019     |\n| 44.  | **Advanced Machine Learning**                                | Joachim Buhmann, ETH Zürich                                  | [ML2-AML](https://ml2.inf.ethz.ch/courses/aml/)              | [Lecture-Videos](https://video.ethz.ch/lectures/d-infk/2019/autumn/252-0535-00L.html) | F2019     |\n| 45.  | **Machine Learning for Signal Processing**                   | Vipul Arora, IIT-Kanpur                                      | [MLSP](http://home.iitk.ac.in/~vipular/stuff/2019_MLSP.html) | [Lecture-Videos](https://iitk-my.sharepoint.com/:f:/g/personal/vipular_iitk_ac_in/Enf97NZfsoVBiyclC6yHfe4BlUv6CA4U8LPQQ4vtsDo_Xg) | F2019     |\n| 46.  | **Foundations of Machine Learning**                          | Animashree Anandkumar, CalTech                               | [CMS-165](http://tensorlab.cms.caltech.edu/users/anima/cms165-2019.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLVNifWxslHCA5GUh0o92neMiWiQiGVFqp) | 2019      |\n| 47.  | **Machine Learning for Physicists**                          | Florian Marquardt, Uni Erlangen-Nürnberg                     | `None`                                                       | [Lecture-Videos](https://www.video.uni-erlangen.de/course/id/778) | 2019      |\n| 48.  | **Applied Machine Learning**                                 | Andreas Müller, Columbia University                          | [COMS-W4995](https://www.cs.columbia.edu/~amueller/comsw4995s19/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL_pVmAaAnxIQGzQS2oI3OWEPT-dpmwTfA) | 2019      |\n| 49.  | **Fundamentals of Machine Learning over Networks**           | Hossein Shokri-Ghadikolaei, KTH, Sweden                      | [MLoNs](https://sites.google.com/view/mlons/course-materials) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLWoZTd81WFCEBFrxDfNUrDnt3ABdLfg80) | 2019      |\n| 50.  | **Foundations of Machine Learning and Statistical Inference** | Animashree Anandkumar, CalTech                               | [CMS-165](http://tensorlab.cms.caltech.edu/users/anima/cms165-2020.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLVNifWxslHCDlbyitaLLYBOAEPbmF1AHg) | 2020      |\n|      |                                                              |                                                              |                                                              |                                                              |           |\n| 51.  | **Machine Learning**                                         | Rebecca Willett and Yuxin Chen, University of Chicago        | [STAT 37710 / CMSC 35400](https://voices.uchicago.edu/willett/teaching/stats37710-cmsc35400-s20) | [Lecture-Videos](https://voices.uchicago.edu/willett/teaching/stats37710-cmsc35400-s20) | S2020     |\n| 52.  | **Introduction to Machine Learning**                         | Sanjay Lall and Stephen Boyd, Stanford University            | [EE104/CME107](http://ee104.stanford.edu)                    | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoROMvodv4rN_Uy7_wmS051_q1d6akXmK) | S2020     |\n| 53.  | **Applied Machine Learning**                                 | Andreas Müller, Columbia University                          | [COMS-W4995](https://www.cs.columbia.edu/~amueller/comsw4995s20/schedule/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL_pVmAaAnxIRnSw6wiCpSvshFyCREZmlM) | S2020     |\n| 54.  | **Statistical Machine Learning**                             | Ulrike von Luxburg, Eberhard Karls Universität Tübingen      | [Stat-ML](https://www.tml.cs.uni-tuebingen.de/teaching/2020_statistical_learning/index.php) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL05umP7R6ij2XCvrRzLokX6EoHWaGA2cC) | SS2020    |\n| 55.  | **Probabilistic Machine Learning**                           | Philipp Hennig, Eberhard Karls Universität Tübingen          | [Prob-ML](https://uni-tuebingen.de/en/180804)                | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL05umP7R6ij1tHaOFY96m5uX3J21a6yNd) | SS2020    |\n| 56.  | **Machine Learning**                                         | Sarath Chandar, PolyMTL, UdeM, Mila                          | [INF8953CE](http://sarathchandar.in/teaching/ml/fall2020)    | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLImtCgowF_ET0mi-AmmqQ0SIJUpWYaIOr) | F2020     |\n| 57.  | **Machine Learning**                                         | Erik Bekkers, Universiteit van Amsterdam                     | [UvA-ML](https://uvaml1.github.io/)                          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL8FnQMH2k7jzhtVYbKmvrMyXDYMmgjj_n) | F2020     |\n| 58.  | **Neural Networks for Signal Processing**                    | Shayan Srinivasa Garani, Indian Institute of Science         | [NN4SP](https://labs.dese.iisc.ac.in/pnsil/neural-networks-and-learning-systems-i-fall-2020/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgMDNELGJ1CZn1399dV7_U4VBNJflRsua) | F2020     |\n| 59.  | **Introduction to Machine Learning**                         | Dmitry Kobak, Universität Klinikum Tübingen                  | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL05umP7R6ij35ShKLDqccJSDntugY4FQT) | 2020      |\n| 60.  | **Machine Learning (PRML)**                                  | Erik J. Bekkers, Universiteit van Amsterdam                  | [UvAML-1](https://uvaml1.github.io)                          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL8FnQMH2k7jzhtVYbKmvrMyXDYMmgjj_n) | 2020      |\n|      |                                                              |                                                              |                                                              |                                                              |           |\n| 61.  | **Machine Learning with Kernel Methods**                     | Julien Mairal and Jean-Philippe Vert, Inria/ENS Paris-Saclay, Google | [ML-Kernels](http://members.cbio.mines-paristech.fr/~jvert/svn/kernelcourse/course/2021mva/index.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLD93kGj6_EdrkNj27AZMecbRlQ1SMkp_o) | S2021     |\n| 62.  | **Continual Learning**                                       | Vincenzo Lomonaco, Università di Pisa                        | [ContLearn'21](https://course.continualai.org/background/details) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLm6QXeaB-XkBfM5RgQP6wCR7Jegdg51Px) | 2021      |\n| 63.  | **Causality**                                                | Christina Heinze-Deml, ETH Zurich                            | [Causal'21](https://stat.ethz.ch/lectures/ss21/causality.php#course_materials) | [YouTube-Lectures](https://stat.ethz.ch/lectures/ss21/causality.php#course_materials) | 2021      |\n|      |                                                              |                                                              |                                                              |                                                              |           |\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents) \n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n### :balloon: Reinforcement Learning :hotsprings: :video_game: \n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n| S.No | Course Name                                              | University/Instructor(s)                                     | Course Webpage                                               | Video Lectures                                               | Year   |\n| ---- | -------------------------------------------------------- | ------------------------------------------------------------ | ------------------------------------------------------------ | ------------------------------------------------------------ | ------ |\n| 1.   | **A Short Course on Reinforcement Learning**             | Satinder Singh, UMichigan                                    | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLM4Pv4KYYzGy4cIFQ5C36-1jMNLab80Ky) | 2011   |\n| 2.   | **Approximate Dynamic Programming**                      | Dimitri P. Bertsekas, MIT                                    | [Lecture-Slides](http://adpthu2014.weebly.com/slides--materials.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLiCLbsFQNFAxOmVeqPhI5er1LGf2-L9I4) | 2014   |\n| 3.   | **Introduction to Reinforcement Learning**               | David Silver, DeepMind                                       | [UCL-RL](http://www0.cs.ucl.ac.uk/staff/d.silver/web/Teaching.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLqYmG7hTraZDM-OYHWgPebj2MfCFzFObQ) | 2015   |\n| 4.   | **Reinforcement Learning**                               | Charles Isbell, Chris Pryby, GaTech; Michael Littman, Brown  | [RL-Udacity](https://eu.udacity.com/course/reinforcement-learning--ud600) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLAwxTw4SYaPnidDwo9e2c7ixIsu_pdSNp) | 2015   |\n| 5.   | **Reinforcement Learning**                               | Balaraman Ravindran, IIT Madras                              | [RL-IITM](https://www.cse.iitm.ac.in/~ravi/courses/Reinforcement%20Learning.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLNdWVHi37UggQIVcaZcmtGGEQHY9W7d9D) | 2016   |\n| 6.   | **Deep Reinforcement Learning**                          | Sergey Levine, UC Berkeley                                   | [CS-294](http://rail.eecs.berkeley.edu/deeprlcoursesp17/)    | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLkFD6_40KJIwTmSbCv9OVJB3YaO4sFwkX) | S2017  |\n| 7.   | **Deep Reinforcement Learning**                          | Sergey Levine, UC Berkeley                                   | [CS-294](http://rail.eecs.berkeley.edu/deeprlcourse-fa17/)   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLkFD6_40KJIznC9CDbVTjAF2oyt8_VAe3) | F2017  |\n| 8.   | **Deep RL Bootcamp**                                     | Many legends, UC Berkeley                                    | [Deep-RL](https://sites.google.com/view/deep-rl-bootcamp/lectures) | [YouTube-Lectures](https://www.youtube.com/channel/UCTgM-VlXKuylPrZ_YGAJHOw/videos) | 2017   |\n| 9    | **Data Efficient Reinforcement Learning**                | Lots of Legends, Canary Islands                              | [DERL-17](http://dalimeeting.org/dali2017/data-efficient-reinforcement-learning.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL-tWvTpyd1VAvDpxukup6w-SuZQQ7e8K8) | 2017   |\n| 10.  | **Deep Reinforcement Learning**                          | Sergey Levine, UC Berkeley                                   | [CS-294-112](http://rail.eecs.berkeley.edu/deeprlcourse-fa18/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLkFD6_40KJIxJMR-j5A1mkxK26gh_qg37) | 2018   |\n|      |                                                          |                                                              |                                                              |                                                              |        |\n| 11.  | **Reinforcement Learning**                               | Pascal Poupart, University of Waterloo                       | [CS-885](https://cs.uwaterloo.ca/~ppoupart/teaching/cs885-spring18/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLdAoL1zKcqTXFJniO3Tqqn6xMBBL07EDc) | 2018   |\n| 12.  | **Deep Reinforcement Learning and Control**              | Katerina Fragkiadaki and Tom Mitchell, CMU                   | [10-703](http://www.andrew.cmu.edu/course/10-703/)           | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLpIxOj-HnDsNfvOwRKLsUobmnF2J1l5oV) | 2018   |\n| 13.  | **Reinforcement Learning and Optimal Control**           | Dimitri Bertsekas, Arizona State University                  | [RLOC](http://web.mit.edu/dimitrib/www/RLbook.html)          | [Lecture-Videos](http://web.mit.edu/dimitrib/www/RLbook.html) | 2019   |\n| 14.  | **Reinforcement Learning**                               | Emma Brunskill, Stanford University                          | [CS 234](http://web.stanford.edu/class/cs234/index.html)     | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoROMvodv4rOSOPzutgyCTapiGlY2Nd8u) | 2019   |\n| 15.  | **Reinforcement Learning Day**                           | Lots of Legends, Microsoft Research, New York                | [RLD-19](https://www.microsoft.com/en-us/research/event/reinforcement-learning-day-2019/#!agenda) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLD7HFcN7LXRe9nWEX3Up-RiCDi6-0mqVC) | 2019   |\n| 16.  | **New Directions in Reinforcement Learning and Control** | Lots of Legends, IAS, Princeton University                   | [NDRLC-19](https://www.math.ias.edu/ndrlc)                   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLdDZb3TwJPZ61sGqd6cbWCmTc275NrKu3) | 2019   |\n| 17.  | **Deep Reinforcement Learning**                          | Sergey Levine, UC Berkeley                                   | [CS 285](http://rail.eecs.berkeley.edu/deeprlcourse-fa19)    | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLkFD6_40KJIwhWJpGazJ9VSj9CFMkb79A) | F2019  |\n| 18.  | **Deep Multi-Task and Meta Learning**                    | Chelsea Finn, Stanford University                            | [CS 330](https://cs330.stanford.edu/)                        | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoROMvodv4rMC6zfYmnD7UG3LVvwaITY5) | F2019  |\n| 19.  | **RL-Theory Seminars**                                   | Lots of Legends, Earth                                       | [RL-theory-sem](https://sites.google.com/view/rltheoryseminars/past-seminars) | [YouTube-Lectures](https://www.youtube.com/channel/UCfBFutC9RbKK6p--B4R9ebA/videos) | 2020 - |\n| 20.  | **Deep Reinforcement Learning**                          | Sergey Levine, UC Berkeley                                   | [CS 285](http://rail.eecs.berkeley.edu/deeprlcourse-fa20)    | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL_iWQOsE6TfURIIhCrlt-wj9ByIVpbfGc) | F2020  |\n|      |                                                          |                                                              |                                                              |                                                              |        |\n| 21.  | **Introduction to Reinforcement Learning**               | Amir-massoud Farahmand, Vector Institute, University of Toronto | [RL-intro](https://amfarahmand.github.io/IntroRL)            | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLCveiXxL2xNbiDq51a8iJwPRq2aO0ykrq) | S2021  |\n| 22.  | **Reinforcement Learning**                               | Antonio Celani and Emanuele Panizon, International Centre for Theoretical Physics | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLp0hSY2uBeP8q2G3mfHGVGvQFEMX0QRWM) | 2021   |\n| 23.  | **Computational Sensorimotor Learning**                  | Pulkit Agrawal, MIT-CSAIL                                    | [6.884-CSL](https://pulkitag.github.io/6.884/lectures)       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLwNwxAG-kBxPMTIs2fKWSsf7HqL2TcC78) | S2021  |\n| 24.  | **Reinforcement Learning**                               | Dimitri P. Bertsekas, ASU/MIT                                | [RL-21](http://web.mit.edu/dimitrib/www/RLbook.html)         | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLmH30BG15SIp79JRJ-MVF12uvB1qPtPzn) | S2021  |\n| 25.  | **Reinforcement Learning**                               | Sarath Chandar,  École Polytechnique de Montréal             | [INF8953DE](https://chandar-lab.github.io/INF8953DE)         | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLImtCgowF_ES_JdF_UcM60EXTcGZg67Ua) | F2021  |\n| 26.  | **Deep Reinforcement Learning**                          | Sergey Levine, UC Berkeley                                   | [CS 285](http://rail.eecs.berkeley.edu/deeprlcourse)         | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL_iWQOsE6TfXxKgI1GgyV1B_Xa0DxE5eH) | F2021  |\n| 27.  | **Reinforcement Learning Lecture Series**                | Lots of Legends, DeepMind & UC London                        | [RL-series](https://deepmind.com/learning-resources/reinforcement-learning-series-2021) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLqYmG7hTraZDVH599EItlEWsUOsJbAodm) | 2021   |\n| 28.  | **Reinforcement Learning**                               | Dimitri P. Bertsekas, ASU/MIT                                | [RL-22](http://web.mit.edu/dimitrib/www/RLbook.html)         | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLmH30BG15SIoXhxLldoio0BhsIY84YMDj) | S2022  |\n|      |                                                          |                                                              |                                                              |                                                              |        |\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents) \n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n### :loudspeaker: Probabilistic Graphical Models :sparkles: \n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n| S.No | Course Name                                                  | University/Instructor(s)                            | Course WebPage                                               | Lecture Videos                                               | Year    |\n| ---- | ------------------------------------------------------------ | --------------------------------------------------- | ------------------------------------------------------------ | ------------------------------------------------------------ | ------- |\n| 1.   | **Probabilistic Graphical Models**                           | Many Legends, MPI-IS                                | [MLSS-Tuebingen](http://mlss.tuebingen.mpg.de/2013/2013/speakers.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLL0GjJzXhAWTRiW_ynFswMaiLSa0hjCZ3) | 2013    |\n| 2.   | **Probabilistic Modeling and Machine Learning**              | Zoubin Ghahramani, University of Cambridge          | [WUST-Wroclaw](https://www.ii.pwr.edu.pl/~gonczarek/zoubin.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLwUOK5j_XOsdfVAGKErx9HqnrVZIuRbZ2) | 2013    |\n| 3.   | **Probabilistic Graphical Models**                           | Eric Xing, CMU                                      | [10-708](http://www.cs.cmu.edu/~epxing/Class/10708/lecture.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLI3nIOD-p5aoXrOzTd1P6CcLavu9rNtC-) | 2014    |\n| 4.   | **Learning with Structured Data: An Introduction to Probabilistic Graphical Models** | Christoph Lampert, IST Austria                      | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLEqoHzpnmTfA0wc1JxjoVVOrJlx8W0rGf) | 2016    |\n| 5.   | **Probabilistic Graphical Models**                           | Nicholas Zabaras, University of Notre Dame          | [PGM](https://www.zabaras.com/probabilistic-graphical-models) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLd-PuDzW85AcV4bgdu7wHPL37hm60W4RM) | 2018    |\n| 6.   | **Probabilistic Graphical Models**                           | Eric Xing, CMU                                      | [10-708](https://sailinglab.github.io/pgm-spring-2019/)      | [Lecture-Videos](https://sailinglab.github.io/pgm-spring-2019/lectures) <br> [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoZgVqqHOumTY2CAQHL45tQp6kmDnDcqn) | S2019   |\n| 7.   | **Probabilistic Graphical Models**                           | Eric Xing, CMU                                      | [10-708](https://www.cs.cmu.edu/~epxing/Class/10708-20/index.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoZgVqqHOumTqxIhcdcpOAJOOimrRCGZn) | S2020   |\n| 8.   | **Uncertainty Modeling in AI**                               | Gim Hee Lee, National University of Singapura (NUS) | [CS 5340 - CH](https://www.coursehero.com/sitemap/schools/2652-National-University-of-Singapore/courses/7821096-CS5340/), [CS 5340-NB](https://github.com/clear-nus/CS5340-notebooks) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLxg0CGqViygOb9Eyc8IXM27doxjp2SK0H) | 2020-21 |\n|      |                                                              |                                                     |                                                              |                                                              |         |\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents)\n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n## :game_die: Bayesian Deep Learning :spades: :gem: \n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n| S.No | Course Name                                         | University/Instructor(s)          | Course WebPage                                           | Lecture Videos                                               | Year     |\n| ---- | --------------------------------------------------- | --------------------------------- | -------------------------------------------------------- | ------------------------------------------------------------ | -------- |\n| 1.   | **Bayesian Neural Networks, Variational Inference** | Lots of Legends                   | `None`                                                   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLM4Pv4KYYzGwUB4bFy183hwGhpL9ytvA1) | 2014-now |\n| 2.   | **Variational Inference**                           | Chieh Wu, Northeastern University | `None`                                                   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLdk2fd27CQzSd1sQ3kBYL4vtv6GjXvPsE) | 2015     |\n| 3.   | **Deep Learning and Bayesian Methods**              | Lots of Legends, HSE Moscow       | [DLBM-SS](http://deepbayes.ru/2018)                      | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLe5rNUydzV9Q01vWCP9BV7NhJG3j7mz62) | 2018     |\n| 4.   | **Deep Learning and Bayesian Methods**              | Lots of Legends, HSE Moscow       | [DLBM-SS](http://deepbayes.ru/)                          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLe5rNUydzV9QHe8VDStpU0o8Yp63OecdW) | 2019     |\n| 5.   | **Nordic Probabilistic AI**                         | Lots of Legends, NTNU, Trondheim  | [ProbAI](https://github.com/probabilisticai/probai-2019) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLRy-VW__9hV8s--JkHXZvnd26KgjRP2ik) | 2019     |\n|      |                                                     |                                   |                                                          |                                                              |          |\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents)\n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n## :movie_camera: Medical Imaging :camera: :video_camera: \n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n| S.No | Course Name                                                  | University/Instructor(s)                    | Course WebPage                                               | Lecture Videos                                               | Year  |\n| ---- | ------------------------------------------------------------ | ------------------------------------------- | ------------------------------------------------------------ | ------------------------------------------------------------ | ----- |\n| 1.   | **Medical Imaging Summer School**                            | Lots of Legends, Sicily                     | [MISS-14](http://iplab.dmi.unict.it/miss14/programme.html)   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL_VeUGLULXQtvcCdAgmvKoJ1k0Ajhz-Qu) | 2014  |\n| 2.   | **Biomedical Image Analysis Summer School**                  | Lots of Legends, Paris                      | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgSHH6boFf5uJAUT4ZRiAZc_ofXolkAGK) | 2015  |\n| 3.   | **Medical Imaging Summer School**                            | Lots of Legends, Sicily                     | [MISS-16](http://iplab.dmi.unict.it/miss16/programme.html)   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLTRCr47yTx5iXIYSneX3LKf16upaw59wa) | 2016  |\n| 4.   | **OPtical and UltraSound imaging - OPUS**                    | Lots of Legends, Université de Lyon, France | [OPUS'16](https://opus2016lyon.sciencesconf.org/resource/page/id/2) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL95ayoVLX8GdUKbxu-R9WqRWwzdWcKjti) | 2016  |\n| 5.   | **Medical Imaging Summer School**                            | Lots of Legends, Sicily                     | [MISS-18](http://iplab.dmi.unict.it/miss/programme.htm)      | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL_VeUGLULXQux1dV4iA3XuMX6AueJmGGa) | 2018  |\n| 6.   | **Seminar on AI in Healthcare**                              | Lots of Legends, Stanford                   | [CS 522](http://cs522.stanford.edu/2018/index.html)          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLYn-ZmPR1DtNQJ-ot-L2V2EgUEH6OH_7w) | 2018  |\n| 7.   | **Machine Learning for Healthcare**                          | David Sontag, Peter Szolovits, CSAIL MIT    | [MLHC-19](https://mlhc19mit.github.io/) <br/>[MIT 6.S897](https://ocw.mit.edu/courses/electrical-engineering-and-computer-science/6-s897-machine-learning-for-healthcare-spring-2019/lecture-notes/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLUl4u3cNGP60B0PQXVQyGNdCyCTDU1Q5j) | S2019 |\n| 8.   | **Deep Learning and Medical Applications**                   | Lots of Legends, IPAM, UCLA                 | [DLM-20](https://www.ipam.ucla.edu/programs/workshops/deep-learning-and-medical-applications/?tab=schedule) | [Lecture-Videos](https://www.ipam.ucla.edu/programs/workshops/deep-learning-and-medical-applications/?tab=schedule) | 2020  |\n| 9.   | **Stanford Symposium on Artificial Intelligence in Medicine and Imaging** | Lots of Legends, Stanford AIMI              | [AIMI-20](https://aimi.stanford.edu/news-events/aimi-symposium/agenda) | [YouTube-Lectures](https://www.youtube.com/watch?v=tR2ObiL4il8&list=PLe6zdIMe5B7IR0oDOobXBDBlYY1eqLYPx) | 2020  |\n|      |                                                              |                                             |                                                              |                                                              |       |\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents)\n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n## :tada: Graph Neural Networks (Geometric DL) :confetti_ball: :balloon: \n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n| S.No | Course Name                                                  | University/Instructor(s)                                | Course WebPage                                               | Lecture Videos                                               | Year  |\n| ---- | ------------------------------------------------------------ | ------------------------------------------------------- | ------------------------------------------------------------ | ------------------------------------------------------------ | ----- |\n| 1.   | **Deep learning on graphs and manifolds**                    | Michael Bronstein, Technion                             | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLH39kM3nuavcVOUIIBraBNHjv-CwEd1uV) | 2017  |\n| 2.   | **Geometric Deep Learning on Graphs and Manifolds**          | Michael Bronstein, Technische Universität München       | `None`                                                       | [Lec-part1](https://streams.tum.de/Mediasite/Play/1f3b894e78f6400daa7885c886b936fb1d),  <br/>[Lec-part2](https://streams.tum.de/Mediasite/Play/6039c846b2f84e7a806024c06e3f5c5c1d) | 2017  |\n| 3.   | **Eurographics Symposium on Geometry Processing - Graduate School** | Lots of Legends, SIGGRAPH, London                       | [SGP-2017](http://geometry.cs.ucl.ac.uk/SGP2017/?p=gradschool) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLOp-ngXvomHArqntgLVNzuJNdzNx3rDjZ) | 2017  |\n| 4.   | **Eurographics Symposium on Geometry Processing - Graduate School** | Lots of Legends, SIGGRAPH, Paris                        | [SGP-2018](https://sgp2018.sciencesconf.org/resource/page/id/7) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLvcoRb-DvAmgpp8LYw7dUvLxh-1Vrrm-v) | 2018  |\n| 5.   | **Analysis of Networks: Mining and Learning with Graphs**    | Jure Leskovec, Stanford University                      | [CS224W](http://snap.stanford.edu/class/cs224w-2018/)        | [Lecture-Videos](http://snap.stanford.edu/class/cs224w-2018/) | 2018  |\n| 6.   | **Machine Learning with Graphs**                             | Jure Leskovec, Stanford University                      | [CS224W](http://snap.stanford.edu/class/cs224w-2019/)        | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL-Y8zK4dwCrQyASidb2mjj_itW2-YYx6-) | 2019  |\n| 7.   | Geometry and Learning from Data in 3D and Beyond -**Geometry and Learning from Data Tutorials** | Lots of Legends, IPAM UCLA                              | [GLDT](http://www.ipam.ucla.edu/programs/workshops/geometry-and-learning-from-data-tutorials) | [Lecture-Videos](http://www.ipam.ucla.edu/programs/workshops/geometry-and-learning-from-data-tutorials/?tab=schedule) | 2019  |\n| 8.   | Geometry and Learning from Data in 3D and Beyond - **Geometric Processing** | Lots of Legends, IPAM UCLA                              | [GeoPro](http://www.ipam.ucla.edu/programs/workshops/workshop-i-geometric-processing/) | [Lecture-Videos](http://www.ipam.ucla.edu/programs/workshops/workshop-i-geometric-processing/?tab=schedule) | 2019  |\n| 9.   | Geometry and Learning from Data in 3D and Beyond - **Shape Analysis** | Lots of Legends, IPAM UCLA                              | [Shape-Analysis](http://www.ipam.ucla.edu/programs/workshops/workshop-ii-shape-analysis/) | [Lecture-Videos](http://www.ipam.ucla.edu/programs/workshops/workshop-ii-shape-analysis/?tab=schedule) | 2019  |\n| 10.  | Geometry and Learning from Data in 3D and Beyond - **Geometry of Big Data** | Lots of Legends, IPAM UCLA                              | [Geo-BData](http://www.ipam.ucla.edu/programs/workshops/workshop-iii-geometry-of-big-data) | [Lecture-Videos](http://www.ipam.ucla.edu/programs/workshops/workshop-iii-geometry-of-big-data/?tab=schedule) | 2019  |\n|      |                                                              |                                                         |                                                              |                                                              |       |\n| 11.  | Geometry and Learning from Data in 3D and Beyond - **Deep Geometric Learning of Big Data and Applications** | Lots of Legends, IPAM UCLA                              | [DGL-BData](http://www.ipam.ucla.edu/programs/workshops/workshop-iv-deep-geometric-learning-of-big-data-and-applications) | [Lecture-Videos](http://www.ipam.ucla.edu/programs/workshops/workshop-iv-deep-geometric-learning-of-big-data-and-applications/?tab=schedule) | 2019  |\n| 12.  | **Israeli Geometric Deep Learning**                          | Lots of Legends, Israel                                 | [iGDL-20](https://gdl-israel.github.io/schedule.html)        | [Lecture-Videos](https://www.youtube.com/watch?v=c8_32IVn-sg) | 2020  |\n| 13.  | **Machine Learning for Graphs and Sequential Data**          | Stephan Günnemann, Technische Universität München (TUM) | [MLGS-20](https://www.in.tum.de/en/daml/teaching/summer-term-2020/machine-learning-for-graphs-and-sequential-data/) | [Lecture-Videos](https://www.in.tum.de/daml/teaching/mlgs/)  | S2020 |\n| 14.  | **Machine Learning with Graphs**                             | Jure Leskovec, Stanford                                 | [CS224W](http://web.stanford.edu/class/cs224w)               | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoROMvodv4rPLKxIpqhjhPgdQy7imNkDn) | W2021 |\n| 15.  | **Geometric Deep Learning** - AMMI                           | Lots of Legends, Virtual                                | [GDL-AMMI](https://geometricdeeplearning.com/lectures)       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLn2-dEmQeTfQ8YVuHBOvAhUlnIPYxkeu3) | 2021  |\n| 16.  | **Summer School on Geometric Deep Learning** -               | Lots of Legends, DTU, DIKU & AAU                        | [GDL- DTU, DIKU & AAU](https://geometric-deep-learning.compute.dtu.dk) | [Lecture-Videos](https://geometric-deep-learning.compute.dtu.dk/talks-and-materials) | 2021  |\n| 17.  | **Graph Neural Networks**                                    | Alejandro Ribeiro, University of Pennsylvania           | [ESE 514](https://gnn.seas.upenn.edu)                        | [YouTube-Lectures](https://www.youtube.com/channel/UC_YPrqpiEqkeGOG1TCt0giQ/playlists) | F2021 |\n|      |                                                              |                                                         |                                                              |                                                              |       |\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents)\n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n### :hibiscus: Natural Language Processing :cherry_blossom: :sparkling_heart: \n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n| S.No | Course Name                                         | University/Instructor(s)                                     | Course WebPage                                               | Lecture Videos                                               | Year      |\n| ---- | --------------------------------------------------- | ------------------------------------------------------------ | ------------------------------------------------------------ | ------------------------------------------------------------ | --------- |\n| 1.   | **Computational Linguistics I**                     | Jordan Boyd-Graber, University of Maryland                   | [CMS-723](http://users.umiacs.umd.edu/~jbg/teaching/CMSC_723/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLegWUnz91WfuPebLI97-WueAP90JO-15i) | 2013-2018 |\n| 2.   | **Deep Learning for Natural Language Processing**   | Nils Reimers, TU Darmstadt                                   | [DL4NLP](https://github.com/UKPLab/deeplearning4nlp-tutorial) | [YouTube-Lectures](https://www.youtube.com/channel/UC1zCuTrfpjT6Sv2kJk-JkvA/videos) | 2015-2017 |\n| 3.   | **Deep Learning for Natural Language Processing**   | Many Legends, DeepMind-Oxford                                | [DL-NLP](http://www.cs.ox.ac.uk/teaching/courses/2016-2017/dl/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL613dYIGMXoZBtZhbyiBqb0QtgK6oJbpm) | 2017      |\n| 4.   | **Deep Learning for Speech & Language**             | UPC Barcelona                                                | [DL-SL](https://telecombcn-dl.github.io/2017-dlsl/)          | [Lecture-Videos](https://telecombcn-dl.github.io/2017-dlsl/) | 2017      |\n| 5.   | **Neural Networks for Natural Language Processing** | Graham Neubig, CMU                                           | [NN4NLP](http://www.phontron.com/class/nn4nlp2017/)   [Code](https://github.com/neubig/nn4nlp-code) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL8PYTP1V4I8ABXzdqtOpB_eqBlVAz_xPT) | 2017      |\n| 6.   | **Neural Networks for Natural Language Processing** | Graham Neubig, CMU                                           | [NN4-NLP](http://www.phontron.com/class/nn4nlp2018/)         | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL8PYTP1V4I8Ba7-rY4FoB4-jfuJ7VDKEE) | 2018      |\n| 7.   | **Deep Learning for NLP**                           | Min-Yen Kan, NUS                                             | [CS-6101](https://www.comp.nus.edu.sg/~kanmy/courses/6101_1810/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLllwxvcS7ca5eD44KTCiT7Rmu_hFAafXB) | 2018      |\n| 8.   | **Neural Networks for Natural Language Processing** | Graham Neubig, CMU                                           | [NN4NLP](http://www.phontron.com/class/nn4nlp2019/)          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL8PYTP1V4I8Ajj7sY6sdtmjgkt7eo2VMs) | 2019      |\n| 9.   | **Natural Language Processing with Deep Learning**  | Abigail See, Chris Manning, Richard Socher, Stanford University | [CS224n](http://web.stanford.edu/class/cs224n/)              | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoROMvodv4rOhcuXMZkNm7j3fVwBBY42z) | 2019      |\n| 10.  | **Natural Language Understanding**                  | Bill MacCartney and Christopher Potts                        | [CS224U](https://web.stanford.edu/class/cs224u)              | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoROMvodv4rObpMCir6rNNUlFAn56Js20) | S2019     |\n|      |                                                     |                                                              |                                                              |                                                              |           |\n| 11.  | **Neural Networks for Natural Language Processing** | Graham Neubig, Carnegie Mellon University                    | [CS 11-747](http://www.phontron.com/class/nn4nlp2020/schedule.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL8PYTP1V4I8CJ7nMxMC8aXv8WqKYwj-aJ) | S2020     |\n| 12.  | **Advanced Natural Language Processing**            | Mohit Iyyer, UMass Amherst                                   | [CS 685](https://people.cs.umass.edu/~miyyer/cs685)          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLWnsVgP6CzadmQX6qevbar3_vDBioWHJL) | F2020     |\n| 13.  | **Machine Translation**                             | Philipp Koehn, Johns Hopkins University                      | [EN 601.468/668](http://mt-class.org/jhu/syllabus.html)      | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLQrCiUDqDLG0lQX54o9jB4phJ-SLI6ZBQ) | F2020     |\n| 14.  | **Neural Networks for NLP**                         | Graham Neubig, Carnegie Mellon University                    | [CS 11-747](http://www.phontron.com/class/nn4nlp2021)        | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL8PYTP1V4I8AkaHEJ7lOOrlex-pcxS-XV) | 2021      |\n| 15.  | **Deep Learning for Natural Language Processing**   | Kyunghyun Cho, New York University                           | [DS-GA 1011](https://drive.google.com/drive/folders/1ykXBtophaY_65VHK_8yDzZQJwfJDD5Ve) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLdH9u0f1XKW_s-c8EcgJpn_HJz5Jj1IRf) | F2021     |\n| 16.  | **Natural Language Processing with Deep Learning**  | Chris Manning, Stanford University                           | [CS224n](https://web.stanford.edu/class/archive/cs/cs224n/cs224n.1214/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoROMvodv4rOSH4v6133s9LFPRHjEmbmJ) | 2021      |\n|      |                                                     |                                                              |                                                              |                                                              |           |\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents) \n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n###  :speaking_head: Automatic Speech Recognition :speech_balloon: :thought_balloon:\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n| S.No | Course Name                              | University/Instructor(s)       | Course WebPage                                      | Lecture Videos                                               | Year      |\n| ---- | ---------------------------------------- | ------------------------------ | --------------------------------------------------- | ------------------------------------------------------------ | --------- |\n| 1.   | **Deep Learning for Speech & Language**  | UPC Barcelona                  | [DL-SL](https://telecombcn-dl.github.io/2017-dlsl/) | [Lecture-Videos](https://telecombcn-dl.github.io/2017-dlsl/) <br/> [YouTube-Videos](https://www.youtube.com/playlist?list=PL-5DCZHuHZkWeF9ljIjoC_X5gHRLNtIkU) | 2017      |\n| 2.   | **Speech and Audio in the Northeast**    | Many Legends, Google NYC       | [SANE-15](http://www.saneworkshop.org/sane2015/)    | [YouTube-Videos](https://www.youtube.com/playlist?list=PLBJWRPcgwk7sZOB4UTVilWWnRg84L9o5i) | 2015      |\n| 3.   | **Automatic Speech Recognition**         | Samudra Vijaya K, TIFR         | `None`                                              | [YouTube-Videos](https://www.youtube.com/channel/UCHk6uq1Cr9J3k5KNmIsYUNw/videos) | 2016      |\n| 4.   | **Speech and Audio in the Northeast**    | Many Legends, Google NYC       | [SANE-17](http://www.saneworkshop.org/sane2017/)    | [YouTube-Videos](https://www.youtube.com/playlist?list=PLBJWRPcgwk7tNLaBVu_S90ZQSblO3bwjg) | 2017      |\n| 5.   | **Speech and Audio in the Northeast**    | Many Legends, Google Cambridge | [SANE-18](http://www.saneworkshop.org/sane2018/)    | [YouTube-Videos](https://www.youtube.com/playlist?list=PLBJWRPcgwk7sjMANn8jqosyHIMe6DJhmn) | 2018      |\n|      |                                          |                                |                                                     |                                                              |           |\n| -1.  | **Deep Learning for Speech Recognition** | Many Legends, AoE              | `None`                                              | [YouTube-Videos](https://www.youtube.com/playlist?list=PLM4Pv4KYYzGyFYCXV6YPWAKVOR2gmHnQd) | 2015-2018 |\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents) \n\n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n### :fire: Modern Computer Vision :camera_flash: :movie_camera: \n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n| S.No | Course Name                                                  | University/Instructor(s)                               | Course WebPage                                               | Lecture Videos                                               | Year       |\n| ---- | ------------------------------------------------------------ | ------------------------------------------------------ | ------------------------------------------------------------ | ------------------------------------------------------------ | ---------- |\n| 1.   | **Microsoft Computer Vision Summer School** - (classical)    | Lots of Legends, Lomonosov Moscow State University     | `None`                                                       | [YouTube-Videos](https://www.youtube.com/playlist?list=PLbwKcm5vdiSYU54xFUG1zoxQTulqvIcJu) <br> [Russian-mirror](https://www.youtube.com/playlist?list=PL-_cKNuVAYAUp0eCL7KO8QY4ETY3tIDFH) | 2011       |\n| 2.   | **Computer Vision** - (classical)                            | Mubarak Shah, UCF                                      | [CAP-5415](http://crcv.ucf.edu/courses/CAP5415/Fall2012/index.php) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLd3hlSJsX_Imk_BPmB_H3AQjFKZS9XgZm) | 2012       |\n| 3.   | **Image and Multidimensional Signal Processing** - (classical) | William Hoff, Colorado School of Mines                 | [CSCI 510/EENG 510](http://inside.mines.edu/~whoff/courses/EENG510) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLyED3W677ALNv8Htn0f9Xh-AHe1aZPftv) | 2012       |\n| 4.   | **Computer Vision** - (classical)                            | William Hoff, Colorado School of Mines                 | [CSCI 512/EENG 512](http://inside.mines.edu/~whoff/courses/EENG512/index.htm) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL4B3F8D4A5CAD8DA3) | 2012       |\n| 5.   | **Image and Video Processing: From Mars to Hollywood with a Stop at the Hospital** | Guillermo Sapiro, Duke University                      | `None`                                                       | [YouTube-Videos](https://www.youtube.com/playlist?list=PLZ9qNFMHZ-A79y1StvUUqgyL-O0fZh2rs) | 2013       |\n| 6.   | **Multiple View Geometry** (classical)                       | Daniel Cremers, Technische Universität München         | [mvg](https://vision.in.tum.de/teaching/ss2014/mvg2014)      | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLTBdjV_4f-EJn6udZ34tht9EVIW7lbeo4) | 2013       |\n| 7.   | **Mathematical Methods for Robotics, Vision, and Graphics**  | Justin Solomon, Stanford University                    | [CS-205A](http://graphics.stanford.edu/courses/cs205a/)      | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLQ3UicqQtfNvQ_VzflHYKhAqZiTxOkSwi) | 2013       |\n| 8.   | **Computer Vision** - (classical)                            | Mubarak Shah, UCF                                      | [CAP-5415](http://crcv.ucf.edu/courses/CAP5415/Fall2014/index.php) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLd3hlSJsX_ImKP68wfKZJVIPTd8Ie5u-9) | 2014       |\n| 9.   | **Computer Vision for Visual Effects** (classical)           | Rich Radke, Rensselaer Polytechnic Institute           | [ECSE-6969](https://www.ecse.rpi.edu/~rjradke/cvfxcourse.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLuh62Q4Sv7BUJlKlt84HFqSWfW36MDd5a) | S2014      |\n| 10.  | **Autonomous Navigation for Flying Robots**                  | Juergen Sturm, Technische Universität München          | [Autonavx](https://jsturm.de/wp/teaching/autonavx-slides/)   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLTBdjV_4f-EKBCUs1HmMtsnXv4JUoFrzg) | 2014       |\n|      |                                                              |                                                        |                                                              |                                                              |            |\n| 11.  | **SLAM - Mobile Robotics**                                   | Cyrill Stachniss, Universitaet Freiburg                | [RobotMapping](http://ais.informatik.uni-freiburg.de/teaching/ws13/mapping/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgnQpQtFTOGQrZ4O5QzbIHgl3b1JHimN_) | 2014       |\n| 12.  | **Computational Photography**                                | Irfan Essa, David Joyner, Arpan Chakraborty            | [CP-Udacity](https://eu.udacity.com/course/computational-photography--ud955) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLAwxTw4SYaPn-unAWtRMleY4peSe4OzIY) | 2015       |\n| 13.  | **Introduction to Digital Image Processing**                 | Rich Radke, Rensselaer Polytechnic Institute           | [ECSE-4540](https://www.ecse.rpi.edu/~rjradke/improccourse.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLuh62Q4Sv7BUf60vkjePfcOQc8sHxmnDX) | S2015      |\n| 14.  | **Lectures on Digital Photography**                          | Marc Levoy, Stanford/Google Research                   | [LoDP](https://sites.google.com/site/marclevoylectures/)     | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL7ddpXYvFXspUN0N-gObF1GXoCA-DA-7i) | 2016       |\n| 15.  | **Introduction to Computer Vision** (foundation)             | Aaron Bobick, Irfan Essa, Arpan Chakraborty            | [CV-Udacity](https://eu.udacity.com/course/introduction-to-computer-vision--ud810) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLAwxTw4SYaPnbDacyrK_kB_RUkuxQBlCm) | 2016       |\n| 16.  | **Computer Vision**                                          | Syed Afaq Ali Shah, University of Western Australia    | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLvqB6_mDBCdlnT84LK_NvbOqcXLlOTR8j) | 2016       |\n| 17.  | **Photogrammetry I & II**                                    | Cyrill Stachniss, University of Bonn                   | [PG-I&II](https://www.ipb.uni-bonn.de/photogrammetry-i-ii/)  | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgnQpQtFTOGRsi5vzy9PiQpNWHjq-bKN1) | 2016       |\n| 18.  | **Deep Learning for Computer Vision**                        | UPC Barcelona                                          | [DLCV-16](http://imatge-upc.github.io/telecombcn-2016-dlcv/) <br/> [DLCV-17](https://telecombcn-dl.github.io/2017-dlcv/) <br/> [DLCV-18](https://telecombcn-dl.github.io/2018-dlcv/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL-5eMc3HQTBbuaTFP4wsfD2Y2VqEfQcaP) | 2016-2018  |\n| 19.  | **Convolutional Neural Networks**                            | Andrew Ng, Stanford University                         | [DeepLearning.AI](https://www.deeplearning.ai/deep-learning-specialization/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLkDaE6sCZn6Gl29AoE31iwdVwSG-KnDzF) | 2017       |\n| 20.  | **Variational Methods for Computer Vision**                  | Daniel Cremers, Technische Universität München         | [VMCV](https://vision.in.tum.de/teaching/ws2016/vmcv2016)    | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLTBdjV_4f-EJ7A2iIH5L5ztqqrWYjP2RI) | 2017       |\n|      |                                                              |                                                        |                                                              |                                                              |            |\n| 21.  | **Winter School on Computer Vision**                         | Lots of Legends, Israel Institute for Advanced Studies | [WS-CV](http://www.as.huji.ac.il/cse)                        | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLTn74Qx5mPsSniA5tt6W-o0OGYEeKScug) | 2017       |\n| 22.  | **Deep Learning for Visual Computing**                       | Debdoot Sheet, IIT-Kgp                                 | [Nptel](https://onlinecourses.nptel.ac.in/noc18_ee08/preview)  [Notebooks](https://github.com/iitkliv/dlvcnptel) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLuv3GM6-gsE1Biyakccxb3FAn4wBLyfWf) | 2018       |\n| 23.  | **The Ancient Secrets of Computer Vision**                   | Joseph Redmon, Ali Farhadi                             | [TASCV](https://pjreddie.com/courses/computer-vision/) ; [TASCV-UW](https://courses.cs.washington.edu/courses/cse455/18sp/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLjMXczUzEYcHvw5YYSU92WrY8IwhTuq7p) | 2018       |\n| 24.  | **Modern Robotics**                                          | Kevin Lynch, Northwestern Robotics                     | [modern-robot](http://hades.mech.northwestern.edu/index.php/Modern_Robotics) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLggLP4f-rq02vX0OQQ5vrCxbJrzamYDfx) | 2018       |\n| 25.  | **Digial Image Processing**                                  | Alex Bronstein, Technion                               | [CS236860](https://vistalab-technion.github.io/cs236860/info/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLM0a6Z788YAZOxUyWda9y3N_i2upIj1Ep) | 2018       |\n| 26.  | **Mathematics of Imaging** - Variational Methods and Optimization in Imaging | Lots of Legends, Institut Henri Poincaré               | [Workshop-1](http://www.ihp.fr/sites/default/files/conf1-04_au_08_fevr-imaging2019.pdf) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL9kd4mpdvWcAzD5Aq-P1TrLLiYckrloxw) | 2019       |\n| 27.  | **Deep Learning for Video**                                  | Xavier Giró, UPC Barcelona                             | [deepvideo](https://mcv-m6-video.github.io/deepvideo-2019/)  | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL-5eMc3HQTBbPY-627Gornj09pZrNQgPD) | 2019       |\n| 28.  | **Statistical modeling for shapes and imaging**              | Lots of Legends, Institut Henri Poincaré, Paris        | [workshop-2](https://imaging-in-paris.github.io/semester2019/workshop2prog) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL9kd4mpdvWcAzD5Aq-P1TrLLiYckrloxw) | 2019       |\n| 29.  | **Imaging and machine learning**                             | Lots of Legends, Institut Henri Poincaré, Paris        | [workshop-3](https://imaging-in-paris.github.io/semester2019/workshop3prog) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL9kd4mpdvWcAzD5Aq-P1TrLLiYckrloxw) | 2019       |\n| 30.  | **Computer Vision**                                          | Jayanta Mukhopadhyay, IIT Kgp                          | [CV-nptel](https://nptel.ac.in/courses/106/105/106105216/)   | [YouTube-Lectures](https://nptel.ac.in/courses/106/105/106105216/) | 2019       |\n|      |                                                              |                                                        |                                                              |                                                              |            |\n| 31.  | **Deep Learning for Computer Vision**                        | Justin Johnson, UMichigan                              | [EECS 498-007](https://web.eecs.umich.edu/~justincj/teaching/eecs498/) | [Lecture-Videos](http://leccap.engin.umich.edu/leccap/site/jhygcph151x25gjj1f0) <br/> [YouTube-Lectures](https://www.youtube.com/playlist?list=PL5-TkQAfAZFbzxjBHtzdVCWE0Zbhomg7r) | 2019       |\n| 32.  | **Sensors and State Estimation 2**                           | Cyrill Stachniss, University of Bonn                   | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgnQpQtFTOGQh_J16IMwDlji18SWQ2PZ6) | S2020      |\n| 33.  | **Computer Vision III: Detection, Segmentation and Tracking** | Laura Leal-Taixé, TU München                           | [CV3DST](https://dvl.in.tum.de/teaching/cv3dst-ss20/)        | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLog3nOPCjKBneGyffEktlXXMfv1OtKmCs) | S2020      |\n| 34.  | **Advanced Deep Learning for Computer Vision**               | Laura Leal-Taixé and Matthias Nießner, TU München      | [ADL4CV](https://dvl.in.tum.de/teaching/adl4cv-ss20)         | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLog3nOPCjKBnjhuHMIXu4ISE4Z4f2jm39) | S2020      |\n| 35.  | **Computer Vision: Foundations**                             | Fred Hamprecht, Universität Heidelberg                 | [CVF](https://hci.iwr.uni-heidelberg.de/ial/cvf)             | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLuRaSnb3n4kRAbnmiyGd77hyoGzO9wPde) | SS2020     |\n| 36.  | **MIT Vision Seminar**                                       | Lots of Legends, MIT                                   | [MIT-Vision](https://sites.google.com/view/visionseminar/past-talks) | [YouTube-Lectures](https://www.youtube.com/channel/UCLMiFkFyfcNnZs6iwYLPI9g/videos) | 2015-now   |\n| 37.  | **TUM AI Guest Lectures**                                    | Lots of Legends, Technische Universität München        | [TUM-AI](https://niessner.github.io/TUM-AI-Lecture-Series)   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLQ8Y4kIIbzy8kMlz7cRqz-BjbdyWsfLXt) | 2020 - now |\n| 38.  | **Seminar on 3D Geometry & Vision**                          | Lots of Legends, Virtual                               | [3DGV seminar](https://3dgv.github.io)                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLZk0jtN0g8e-xVTfsiV67q8Iz1cZO_FpV) | 2020 - now |\n| 39.  | **Event-based Robot Vision**                                 | Guillermo Gallego, Technische Universität Berlin       | [EVIS-SS20](https://sites.google.com/view/guillermogallego/teaching/event-based-robot-vision) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL03Gm3nZjVgUFYUh3v5x8jVonjrGfcal8) | 2020 - now |\n| 40.  | **Deep Learning for Computer Vision**                        | Vineeth Balasubramanian, IIT Hyderabad                 | [DL-CV'20](https://onlinecourses.nptel.ac.in/noc20_cs88/preview) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLyqSpQzTE6M_PI-rIz4O1jEgffhJU9GgG) | 2020       |\n|      |                                                              |                                                        |                                                              |                                                              |            |\n| 41.  | **Deep Learning for Visual Computing**                       | Peter Wonka, KAUST, SA                                 | `NOne`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLMpQLEui13s2DHbw6kTTxwQma8rehlfZE) | 2020       |\n| 42.  | **Computer Vision**                                          | Yogesh Rawat, University of Central Florida            | [CAP5415-CV](https://www.crcv.ucf.edu/courses/cap5415-fall-2020/schedule/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLd3hlSJsX_Ikm5il1HgmDB_z62BeoikFX) | F2020      |\n| 43.  | **Multimedia Signal Processing**                             | Mark Hasegawa-Johnson, UIUC                            | [ECE-417 MSP](https://courses.engr.illinois.edu/ece417/fa2020/) | [Lecture Videos](https://mediaspace.illinois.edu/channel/ECE%20417/26816181) | F2020      |\n| 44.  | **Computer Vision**                                          | Andreas Geiger, Universität Tübingen                   | [Comp.Vis](https://uni-tuebingen.de/fakultaeten/mathematisch-naturwissenschaftliche-fakultaet/fachbereiche/informatik/lehrstuehle/autonomous-vision/lectures/computer-vision/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL05umP7R6ij35L2MHGzis8AEHz7mg381_) | S2021      |\n| 45.  | **3D Computer Vision**                                       | Lee Gim Hee, National Univeristy of Singapura          | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLxg0CGqViygP47ERvqHw_v7FVnUovJeaz) | 2021       |\n| 46.  | **Deep Learning for Computer Vision: Fundamentals and Applications** | T. Dekel et al., Weizmann Institute of Science         | [DL4CV](https://dl4cv.github.io/schedule.html)               | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL_Z2_U9MIJdNgFM7-f2fZ9ZxjVRP_jhJv) | S2021      |\n| 47.  | **Current Topics in ML Methods in 3D and Geometric Deep Learning** | Animesh Garg  & others, University of Toronto          | [CSC 2547](http://www.pair.toronto.edu/csc2547-w21)          | [YouTube-Lectures](https://www.youtube.com/channel/UCrsmAXnwu6sgccWevW12Dfg/videos) | 2021       |\n| 48.  | **First Principles of Computer Vision**                      | Shree K. Nayar, Columbia University                    | [FPCV](https://fpcv.cs.columbia.edu)                         | [YouTube-Lectures](https://www.youtube.com/channel/UCf0WB91t8Ky6AuYcQV0CcLw/videos) | 2021       |\n| 49.  | **Self-Driving Cars**                                        | Andreas Geiger, Universität Tübingen                   | [SDC'21](https://uni-tuebingen.de/de/123611)                 | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL05umP7R6ij321zzKXK6XCQXAaaYjQbzr) | W2021      |\n|      |                                                              |                                                        |                                                              |                                                              |            |\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents) \n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n### :star2: Boot Camps or Summer Schools :maple_leaf:\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n| S.No | Course Name                                             | University/Instructor(s)                                 | Course WebPage                                               | Lecture Videos                                               | Year      |\n| ---- | ------------------------------------------------------- | -------------------------------------------------------- | ------------------------------------------------------------ | ------------------------------------------------------------ | --------- |\n| 1.   | **Deep Learning, Feature Learning**                     | Lots of Legends, IPAM UCLA                               | [GSS-2012](https://www.ipam.ucla.edu/programs/summer-schools/graduate-summer-school-deep-learning-feature-learning/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLHyI3Fbmv0SdzMHAy0aN59oYnLy5vyyTA) | 2012      |\n| 2.   | **Big Data Boot Camp**                                  | Lots of Legends, Simons Institute                    | [Big Data](https://simons.berkeley.edu/workshops/schedule/316) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgKuh-lKre13RmUC2AybRvVAxO5DEMIBH) | 2013      |\n| 3. | **Machine Learning Summer School** | Lots of Legends, MPI-IS Tübingen | [MLSS-13](http://mlss.tuebingen.mpg.de/2013/2013/index.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLqJm7Rc5-EXFv6RXaPZzzlzo93Hl0v91E) | 2013 |\n| 4 | **Graduate Summer School: Computer Vision** | Lots of Legends, IPAM-UCLA | [GSS-CV](http://www.ipam.ucla.edu/programs/summer-schools/graduate-summer-school-computer-vision/) | [Video-Lectures](http://www.ipam.ucla.edu/programs/summer-schools/graduate-summer-school-computer-vision/?tab=schedule) | 2013 |\n| 5. | **Machine Learning Summer School** | Lots of Legends, Reykjavik University | [MLSS-14](http://mlss2014.hiit.fi/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLqdbxUnkqOw2nKn7VxYqIrKWcqRkQYOsF) | 2014 |\n| 6. | **Machine Learning Summer School** | Lots of Legends, Pittsburgh | [MLSS-14](http://www.mlss2014.com) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLZSO_6-bSqHQCIYxE3ycGLXHMjK3XV7Iz) | 2014 |\n| 7. | **Deep Learning Summer School** | Lots of Legends, Université de Montréal | [DLSS-15](https://sites.google.com/site/deeplearningsummerschool/home) | [YouTube-Lectures](http://videolectures.net/deeplearning2015_montreal/) | 2015 |\n| 8. | **Biomedical Image Analysis Summer School** | Lots of Legends, CentraleSupelec, Paris | `None` | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgSHH6boFf5uJAUT4ZRiAZc_ofXolkAGK) | 2015 |\n| 9. | **Mathematics of Signal Processing**                    | Lots of Legends, Hausdorff Institute for Mathematics | [SigProc](http://www.him.uni-bonn.de/signal-processing-2016/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLul8LCT3AJqSQo3lr5RbwxJ92RsgRuDtx) | 2016      |\n| 10. | **Microsoft Research - Machine Learning Course**        | S V N Vishwanathan and Prateek Jain MS-Research          | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL34iyE0uXtxo7vPXGFkmm6KbgZQwjf9Kf) | 2016      |\n|  |  |  |  |  |  |\n| 11. | **Deep Learning Summer School**                         | Lots of Legends, Université de Montréal                  | [DL-SS-16](https://sites.google.com/site/deeplearningsummerschool2016/home) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL5bqIc6XopCbb-FvnHmD1neVlQKwGzQyR) | 2016      |\n| 12. | **Lisbon Machine Learning School** | Lots of Legends, Instituto Superior Técnico, Portugal | [LxMLS-16](http://lxmls.it.pt/2016/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLToLj8M4ao-fymxXBIOU6sF1NGFLb5EiX) | 2016 |\n| 13. | **Machine Learning Advances and Applications Seminar**  | Lots of Legends, Fields Institute, University of Toronto | [MLAAS-16](http://www.fields.utoronto.ca/activities/16-17/machine-learning) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLfsVAYSMwskuQcRkuDApP40lX_i08d0QK) <br/> [Video-Lectures](http://www.fields.utoronto.ca/video-archive/event/2267) | 2016-2017 |\n| 14. | **Machine Learning Advances and Applications Seminar**  | Lots of Legends, Fields Institute, University of Toronto | [MLAAS-17](http://www.fields.utoronto.ca/activities/17-18/machine-learning) | [Video Lectures](http://www.fields.utoronto.ca/video-archive/event/2487) | 2017-2018 |\n| 15. | **Machine Learning Summer School** | Lots of Legends, MPI-IS Tübingen | [MLSS-17](http://mlss.tuebingen.mpg.de/2017/index.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLqJm7Rc5-EXFUOvoYCdKikfck8YeUCnl9) | 2017 |\n| 16. | **Representation Learning**                             | Lots of Legends, Simons Institute                    | [RepLearn](https://simons.berkeley.edu/workshops/abstracts/3750) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgKuh-lKre13UNV4ztsWUXciUZ7x_ZDHz) | 2017      |\n| 17. | **Foundations of Machine Learning**                     | Lots of Legends, Simons Institute                  | [ML-BootCamp](https://simons.berkeley.edu/workshops/abstracts/3748) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgKuh-lKre11GbZWneln-VZDLHyejO7YD) | 2017      |\n| 18. | **Optimization, Statistics, and Uncertainty**           | Lots of Legends, Simons Institute                    | [Optim-Stats](https://simons.berkeley.edu/workshops/abstracts/4795) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgKuh-lKre13ACD44z2FH-IVP1e8ip5JO) | 2017      |\n| 19. | **Deep Learning: Theory, Algorithms, and Applications** | Lots of Legends, TU-Berlin                         | [DL: TAA](http://doc.ml.tu-berlin.de/dlworkshop2017/)        | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLJOzdkh8T5kqCNV_v1w2tapvtJDZYiohW) | 2017      |\n| 20. | **Deep Learning and Reinforcement Learning Summer School** | Lots of Legends, Université de Montréal                                   | [DLRL-2017](https://mila.quebec/en/cours/deep-learning-summer-school-2017/)   | [Lecture-videos](http://videolectures.net/deeplearning2017_montreal/)          | 2017 |\n|  |  |  |  |  |  |\n| 21. | **Statistical Physics Methods in Machine Learning** | Lots of Legends, International Centre for Theoretical Sciences, TIFR | [SPMML](https://www.icts.res.in/discussion-meeting/SPMML2017) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL04QVxpjcnjhtL3IIVyFRMOgdhWtPn7YJ) | 2017 |\n| 22. | **Lisbon Machine Learning School** | Lots of Legends, Instituto Superior Técnico, Portugal | [LxMLS-17](http://lxmls.it.pt/2017/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLToLj8M4ao-fuRfnzEJCCnvuW2_FeJ73N) | 2017 |\n| 23. | **Interactive Learning** | Lots of Legends, Simons Institute, Berkeley | [IL-2017](https://simons.berkeley.edu/workshops/schedule/3749) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgKuh-lKre10T2POF-WzXh0ckdpyvANUx) | 2017 |\n| 24. | **Computational Challenges in Machine Learning** | Lots of Legends, Simons Institute, Berkeley | [CCML-17](https://simons.berkeley.edu/workshops/schedule/3751) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgKuh-lKre12eXz4dnvc8oervo2_Af4iU) | 2017 |\n| 25. | **Foundations of Data Science**                         | Lots of Legends, Simons Institute                   | [DS-BootCamp](https://simons.berkeley.edu/workshops/abstracts/6680) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgKuh-lKre13r1Qrnrejj3f498-NurSf3) | 2018      |\n| 26. | **Deep Learning and Bayesian Methods**           | Lots of Legends, HSE Moscow                          | [DLBM-SS](http://deepbayes.ru/2018/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLe5rNUydzV9Q01vWCP9BV7NhJG3j7mz62) | 2018      |\n| 27. | **New Deep Learning Techniques**                        | Lots of Legends, IPAM UCLA                           | [IPAM-Workshop](https://www.ipam.ucla.edu/programs/workshops/new-deep-learning-techniques/?tab=schedule) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLHyI3Fbmv0SdM0zXj31HWjG9t9Q0v2xYN) | 2018      |\n| 28. | **Deep Learning and Reinforcement Learning Summer School** | Lots of Legends, University of Toronto | [DLRL-2018](https://dlrlsummerschool.ca/2018-event/) | [Lecture-videos](http://videolectures.net/DLRLsummerschool2018_toronto/) | 2018 |\n| 29. | **Machine Learning Summer School** | Lots of Legends, Universidad Autónoma de Madrid, Spain | [MLSS-18](http://mlss.ii.uam.es/mlss2018/index.html) | [YouTube-Lectures](https://www.youtube.com/channel/UCbPJHr__eIor_7jFH3HmVHQ/videos) <br/> [Course-videos](http://mlss.ii.uam.es/mlss2018/speakers.html) | 2018 |\n| 30. | **Theoretical Basis of Machine Learning** | Lots of Legends, International Centre for Theoretical Sciences, TIFR | [TBML-18](https://www.icts.res.in/discussion-meeting/tbml2018) | [Lecture-Videos](https://www.icts.res.in/discussion-meeting/tbml2018/talks) <br/> [YouTube-Videos](https://www.youtube.com/playlist?list=PL04QVxpjcnjj1DgnXxFBo2fkSju4r-ggr) | 2018 |\n|  |  |  |  |  |  |\n| 31. | **Polish View on Machine Learning** | Lots of Legends, Warsaw | [PLinML-18](https://plinml.mimuw.edu.pl/) | [YouTube-Videos](https://www.youtube.com/playlist?list=PLoaWrlj9TDhPcA6N9dZQ6GPXboYuumDRp) | 2018 |\n| 32. | **Big Data Analysis in Astronomy** | Lots of Legends, Tenerife | [BDAA-18](http://research.iac.es/winterschool/2018/pages/book-ws2018.php) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLM4Pv4KYYzGx42W5pSp3Itetp0u-PENtI) | 2018 |\n| 33. | **Machine Learning Advances and Applications Seminar**  | Lots of Legends, Fields Institute, University of Toronto | [MLASS](http://www.fields.utoronto.ca/activities/18-19/machine-learning) | [Video Lectures](http://www.fields.utoronto.ca/video-archive/event/2681) | 2018-2019 |\n| 34. | **MIFODS- ML, Stats, ToC seminar**                      | Lots of Legends, MIT                                     | [MIFODS-seminar](http://mifods.mit.edu/seminar.php)          | [Lecture-videos](http://mifods.mit.edu/seminar.php)          | 2018-2019 |\n| 35. | **Learning Machines Seminar Series** | Lots of Legends, Cornell Tech | [LMSS](https://lmss.tech.cornell.edu/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLycW2Yy79JuxbQZ9uHEu_NS3cGNomhL2A) | 2018-now |\n| 36. | **Machine Learning Summer School** | Lots of Legends, South Africa | [MLSS'19](https://mlssafrica.com/programme-schedule/) | [YouTube-Lectures](https://www.youtube.com/channel/UC722CmQVgcLtxt_jXr3RyWg/videos) | 2019 |\n| 37. | **Deep Learning Boot Camp** | Lots of Legends, Simons Institute, Berkeley | [DLBC-19](https://simons.berkeley.edu/workshops/schedule/10624) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgKuh-lKre12c2Il9mNX0Cmp9Z4oFNrQh) | 2019 |\n| 38. | **Frontiers of Deep Learning** | Lots of Legends, Simons Institute, Berkeley | [FoDL-19](https://simons.berkeley.edu/workshops/schedule/10627) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgKuh-lKre11ekU7g-Z_qsvjDD8cT-hi9) | 2019 |\n| 39. | **Mathematics of data: Structured representations for sensing, approximation and learning** | Lots of Legends, The Alan Turing Institute, London | [MoD-19](https://www.turing.ac.uk/sites/default/files/2019-05/agenda_9_3.pdf) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLuD_SqLtxSdX_w1Ztexpzl_EJgFQSkWez) | 2019 |\n| 40. | **Deep Learning and Bayesian Methods** | Lots of Legends, HSE Moscow | [DLBM-SS](http://deepbayes.ru/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLe5rNUydzV9QHe8VDStpU0o8Yp63OecdW) | 2019 |\n|  |  |  |  |  |  |\n| 41. | **The Mathematics of Deep Learning and Data Science** | Lots of Legends, Isaac Newton Institute, Cambridge | [MoDL-DS](https://gateway.newton.ac.uk/event/ofbw46) | [Lecture-Videos](https://gateway.newton.ac.uk/event/ofbw46/programme) | 2019 |\n| 42. | **Geometry of Deep Learning** | Lots of Legends, MSR Redmond | [GoDL](https://www.microsoft.com/en-us/research/event/ai-institute-2019) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLD7HFcN7LXRe30qq36It2XCljxc340O_d) | 2019 |\n| 43. | **Deep Learning for Science School** | Many folks, LBNL, Berkeley | [DLfSS](https://dl4sci-school.lbl.gov/agenda) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL20S5EeApOSvfvEyhCPOUzU7zkBcR5-eL) | 2019 |\n| 44. | **Emerging Challenges in Deep Learning** | Lots of Legends, Simons Institute, Berkeley | [ECDL](https://simons.berkeley.edu/workshops/schedule/10629) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgKuh-lKre10BpafDrv0fg2VNUweWXWVd) | 2019 |\n| 45. | **Full Stack Deep Learning** | Pieter Abbeel and many others, UC Berkeley | [FSDL-M19](https://fullstackdeeplearning.com/march2019) | [YouTube-Lectures-Day-1](https://www.youtube.com/playlist?list=PL1T8fO7ArWlcf3Hc4VMEVBlH8HZm_NbeB) <br/> [Day-2](https://www.youtube.com/playlist?list=PL1T8fO7ArWlf6TWwdstb-PcwlubnlrKrm) | 2019 |\n| 46. | **Algorithmic and Theoretical aspects of Machine Learning** | Lots of legends, IIIT-Bengaluru | [ACM-ML](https://india.acm.org/education/machine-learning) <br/> [nptel](https://nptel.ac.in/courses/128/106/128106011/) | [YouTube-Lectures](https://nptel.ac.in/courses/128/106/128106011) | 2019 |\n| 47. | **Deep Learning and Reinforcement Learning Summer School** | Lots of Legends, AMII, Edmonton, Canada | [DLRL-2019](https://dlrlsummerschool.ca/past-years) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLKlhhkvvU8-aXmPQZNYG_e-2nTd0tJE8v) | 2019 |\n| 48. | **Mathematics of Machine Learning** - Summer Graduate School | Lots of Legends, University of Washington | [MoML-SGS](http://www.msri.org/summer_schools/866#schedule), [MoML-SS](http://mathofml.cs.washington.edu/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLTPQEx-31JXhguCush5J7OGnEORofoCW9) | 2019 |\n| 49. | **Workshop on Theory of Deep Learning: Where next?** | Lots of Legends, IAS, Princeton University | [WTDL](https://www.math.ias.edu/wtdl) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLdDZb3TwJPZ5dqqg_S-rgJqSFeH4DQqFQ) | 2019 |\n| 50. | **Computational Vision Summer School** | Lots of Legends, Black Forest, Germany | [CVSS-2019](http://orga.cvss.cc/program-cvss-2019/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLeCNfJWZKqxsvidOlVLtWq9s7sIsX1QTC) | 2019 |\n| | | | | | |\n| 51. | **Learning under complex structure** | Lots of Legends, MIT | [LUCS](https://mifods.mit.edu/complex.php) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLM4Pv4KYYzGwhIHcaY6zYR7M9hhFO4Vud) | 2020 |\n| 52. | **Machine Learning Summer School** | Lots of Legends, MPI-IS Tübingen (virtual) | [MLSS](http://mlss.tuebingen.mpg.de/2020/schedule.html) | [YouTube-Lectures](https://www.youtube.com/channel/UCBOgpkDhQuYeVVjuzS5Wtxw/videos) | SS2020 |\n| 53. | **Eastern European Machine Learning Summer School** | Lots of Legends, Kraków, Poland (virtual) | [EEML](https://www.eeml.eu/program) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLaKY4p4V3gE1j01FOY2FeglV4jRntQj84) | S2020 |\n| 54. | **Lisbon Machine Learning Summer School** | Lots of Legends, Lisbon, Portugal (virtual) | [LxMLS](http://lxmls.it.pt/2020/?page_id=19) | [YouTube-Lectures](https://www.youtube.com/channel/UCkVFZWgT1jR75UvSLGP9_mw) | S2020 |\n| 55. | **Workshop on New Directions in Optimization, Statistics and Machine Learning** | Lots of Legends,  Institute of Advanced Study, Princeton | [ML-Opt new dir.](https://www.ias.edu/video/workshop/2020/0415-16) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLdDZb3TwJPZ4Ri6i0MIdesIEpYK4lx17Q) | 2020 |\n| 56. | **Mediterranean Machine Learning School** | Lots of Legends, Italy (virtual) | [M2L-school](https://www.m2lschool.org/talks) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLF-wkqRv4u1YRbfnwN8cXXyrmXld-sked) | 2021 |\n| 57. | **Mathematics of Machine Learning - One World Seminar** | Lots of Legends, Virtual | [1W-ML](https://sites.google.com/view/oneworldml/past-events) | [YouTube-Lectures](https://www.youtube.com/channel/UCz7WlgXs20CzugkfxhFCNFg/videos) | 2020 - now |\n| 58. | **Deep Learning Theory Summer School** | Lots of Legends, Princeton University (virtual) | [DLT'21](https://deep-learning-summer-school.princeton.edu) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL2mB9GGlueJj_FNjJ8RWgz4Nc_hCSXfMU) | 2021 |\n| | | | | | |\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents)\n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n### :bird: Bird's Eye view of A(G)I :eagle:\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n| S.No | Course Name                            | University/Instructor(s)                                 | Course WebPage                                               | Lecture Videos                                               | Year      |\n| ---- | -------------------------------------- | -------------------------------------------------------- | ------------------------------------------------------------ | ------------------------------------------------------------ | --------- |\n| 1.   | **Artificial General Intelligence**    | Lots of Legends, MIT                                     | [6.S099-AGI](https://agi.mit.edu/)                           | [Lecture-Videos](https://agi.mit.edu/)                       | 2018-2019 |\n| 2.   | **AI Podcast**                         | Lots of Legends, MIT                                     | [AI-Pod](https://lexfridman.com/ai/)                         | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLrAXtmErZgOdP_8GztsuKi9nrraNbKKp4) | 2018-2019 |\n| 3.   | **NYU - AI Seminars**                  | Lots of Legends, NYU                                     | [modern-AI](https://engineering.nyu.edu/academics/departments/electrical-and-computer-engineering/ece-seminar-series/modern-artificial) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLhwo5ntex8iY9xhpSwWas451NgVuqBE7U) | 2017-now  |\n| 4.   | **Deep Learning: Alchemy or Science?** | Lots of Legends, Institute for Advanced Study, Princeton | [DLAS](https://video.ias.edu/deeplearning/2019/0222) <br/> [Agenda](https://www.math.ias.edu/tml/dlasagenda) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLdDZb3TwJPZ7aAxhIHALBoh8l6-UxmMNP) | 2019      |\n|      |                                        |                                                          |                                                              |                                                              |           |\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents)\n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n### To-Do :running:\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n:white_large_square: Optimization courses which form the foundation for ML, DL, RL\n\n:white_large_square: Computer Vision courses which are DL & ML heavy\n\n:white_large_square: Speech recognition courses which are DL heavy\n\n:white_large_square: Structured Courses on Geometric, Graph Neural Networks\n\n:white_large_square: Section on Autonomous Vehicles\n\n:white_large_square: Section on Computer Graphics with ML/DL focus\n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents) \n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n\n### Around the Web :earth_asia:\n\n - [Montreal.AI](http://www.montreal.ai/ai4all.pdf)\n - [UPC-DLAI-2018](https://telecombcn-dl.github.io/2018-dlai/)\n - [UPC-DLAI-2019](https://telecombcn-dl.github.io/dlai-2019/)\n - [www.hashtagtechgeek.com](https://www.hashtagtechgeek.com/2019/10/250-machine-learning-deep-learning-videos-courseware.html)\n - [UPC-Barcelona, IDL-2020](https://telecombcn-dl.github.io/idl-2020/) \n - [UPC-DLAI-2020](https://telecombcn-dl.github.io/dlai-2020) \n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n\n### Contributions :pray:\n\nIf you find a course that fits in any of the above categories (i.e. DL, ML, RL, CV, NLP), **and** the course has lecture videos (with slides being optional), then please raise an issue or send a PR by updating the course according to the above format.\n\n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n\n### Support :moneybag:\n\n**Optional:** If you're a kind Samaritan and want to support me, please do so if possible, for which I would eternally be thankful and, most importantly, your contribution imbues me with greater motivation to work, particularly in hard times :pray:\n\n[![](https://www.paypalobjects.com/en_US/i/btn/btn_donateCC_LG.gif)](https://www.paypal.com/cgi-bin/webscr?cmd=_s-xclick&hosted_button_id=NT3EATS5N35WU)\n\n\nVielen lieben Dank! :blue_heart: \n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n###  :gift_heart: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board::mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board::mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :gift_heart: \n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n"
  },
  {
    "path": "markdown2html_py/README.md",
    "content": "# :balloon: :tada: Deep Learning Drizzle :confetti_ball: :balloon:\n\n:books: [**\"Read enough so you start developing intuitions and then trust your intuitions and go for it!\"** ](https://www.deeplearning.ai/hodl-geoffrey-hinton/) :books:  ​<br/>  Prof. Geoffrey Hinton, University of Toronto\n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n### Contents\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n|                                                              |                                                              |\n| ------------------------------------------------------------ | ------------------------------------------------------------ |\n| **Deep Learning (Deep Neural Networks)**  [:arrow_heading_down:](https://github.com/kmario23/deep-learning-drizzle#tada-deep-learning-deep-neural-networks-confetti_ball-balloon) | **Probabilistic Graphical Models**  [:arrow_heading_down:](https://github.com/kmario23/deep-learning-drizzle#loudspeaker-probabilistic-graphical-models-sparkles) |\n|                                                              |                                                              |\n| **Machine Learning Fundamentals**  [:arrow_heading_down:](https://github.com/kmario23/deep-learning-drizzle#cupid-machine-learning-fundamentals-cyclone-boom) | **Natural Language Processing**  [:arrow_heading_down:](https://github.com/kmario23/deep-learning-drizzle#hibiscus-natural-language-processing-cherry_blossom-sparkling_heart) |\n|                                                              |                                                              |\n| **Optimization for Machine Learning**  [:arrow_heading_down:](https://github.com/kmario23/deep-learning-drizzle#cupid-optimization-for-machine-learning-cyclone-boom) | **Automatic Speech Recognition** [:arrow_heading_down:](https://github.com/kmario23/deep-learning-drizzle#speaking_head-automatic-speech-recognition-speech_balloon-thought_balloon) |\n|                                                              |                                                              |\n| **General Machine Learning**  [:arrow_heading_down:](https://github.com/kmario23/deep-learning-drizzle#cupid-general-machine-learning-cyclone-boom) | **Modern Computer Vision** [:arrow_heading_down:](https://github.com/kmario23/deep-learning-drizzle#fire-modern-computer-vision-camera_flash-movie_camera) |\n|                                                              |                                                              |\n| **Reinforcement Learning**  [:arrow_heading_down:](https://github.com/kmario23/deep-learning-drizzle#balloon-reinforcement-learning-hotsprings-video_game) | **Boot Camps or Summer Schools** [:arrow_heading_down:](https://github.com/kmario23/deep-learning-drizzle#star2-boot-camps-or-summer-schools-maple_leaf) |\n|                                                              |                                                              |\n| **Bayesian Deep Learning** [:arrow_heading_down:](https://github.com/kmario23/deep-learning-drizzle#game_die-bayesian-deep-learning-spades-gem) | **Medical Imaging** [:arrow_heading_down:](https://github.com/kmario23/deep-learning-drizzle#movie_camera-medical-imaging-camera-video_camera) |\n|                                                              |                                                              |\n| **Graph Neural Networks** [:arrow_heading_down: ](https://github.com/kmario23/deep-learning-drizzle#tada-graph-neural-networks-geometric-dl-confetti_ball-balloon) | **Bird's-eye view of Artificial Intelligence** [:arrow_heading_down:](https://github.com/kmario23/deep-learning-drizzle#bird-birds-eye-view-of-agi-eagle) |\n|                                                              |                                                              |\n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n## :tada: Deep Learning (Deep Neural Networks) :confetti_ball: :balloon: \n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n| S.No | Course Name                                           | University/Instructor(s)                       | Course WebPage                                               | Lecture Videos                                               | Year            |\n| ---- | ----------------------------------------------------- | ---------------------------------------------- | ------------------------------------------------------------ | ------------------------------------------------------------ | --------------- |\n| 1.   | **Neural Networks for Machine Learning**              | Geoffrey Hinton, University of Toronto         | [Lecture-Slides](http://www.cs.toronto.edu/~hinton/coursera_slides.html) <br/> [CSC321-tijmen](https://www.cs.toronto.edu/~tijmen/csc321/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoRl3Ht4JOcdU872GhiYWf6jwrk_SNhz9) <br/> [UofT-mirror](https://www.cs.toronto.edu/~hinton/coursera_lectures.html) | 2012 <br/> 2014 |\n| 2.   | **Neural Networks Demystified**                       | Stephen Welch, Welch Labs                      | [Suppl. Code](https://github.com/stephencwelch/Neural-Networks-Demystified) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLiaHhY2iBX9hdHaRr6b7XevZtgZRa1PoU) | 2014            |\n| 3.   | **Deep Learning at Oxford**                           | Nando de Freitas, Oxford University            | [Oxford-ML](http://www.cs.ox.ac.uk/teaching/courses/2014-2015/ml/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLE6Wd9FR--EfW8dtjAuPoTuPcqmOV53Fu) | 2015            |\n| 4.   | **Deep Learning for Perception**                      | Dhruv Batra, Virginia Tech                     | [ECE-6504](https://computing.ece.vt.edu/~f15ece6504/)        | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL-fZD610i7yAsfH2eLBiRDa90kL2ML0f7) | 2015            |\n| 5.   | **Deep Learning**                                     | Ali Ghodsi, University of Waterloo             | [STAT-946](https://uwaterloo.ca/data-analytics/deep-learning) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLehuLRPyt1Hyi78UOkMPWCGRxGcA9NVOE) | F2015           |\n| 6.   | **CS231n: CNNs for Visual Recognition**               | Andrej Karpathy, Stanford University           | [CS231n](http://cs231n.stanford.edu/2015/)                   | `None`                                                       | 2015            |\n| 7.   | **CS224d: Deep Learning for NLP**                     | Richard Socher, Stanford University            | [CS224d](http://cs224d.stanford.edu)                         | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLmImxx8Char8dxWB9LRqdpCTmewaml96q) | 2015            |\n| 8.   | **Bay Area Deep Learning**                            | Many legends, Stanford                         | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLrAXtmErZgOfMuxkACrYnD2fTgbzk2THW) | 2016            |\n| 9.   | **CS231n: CNNs for Visual Recognition**               | Andrej Karpathy, Stanford University           | [CS231n](http://cs231n.stanford.edu/2016/)                   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLkt2uSq6rBVctENoVBg1TpCC7OQi31AlC) <br/>[(Academic Torrent)](https://academictorrents.com/details/46c5af9e2075d9af06f280b55b65cf9b44eb9fe7) | 2016            |\n| 10.  | **Neural Networks**                                   | Hugo Larochelle, Université de Sherbrooke      | [Neural-Networks](http://info.usherbrooke.ca/hlarochelle/neural_networks/content.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL6Xpj9I5qXYEcOhn7TqghAJ6NAPrNmUBH) <br/> [(Academic Torrent)](https://academictorrents.com/details/e046bca3bc837053d1609ef33d623ee5c5af7300) | 2016            |\n|      |                                                       |                                                |                                                              |                                                              |                 |\n| 11.  | **CS224d: Deep Learning for NLP**                     | Richard Socher, Stanford University            | [CS224d](http://cs224d.stanford.edu)                         | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLlJy-eBtNFt4CSVWYqscHDdP58M3zFHIG) <br/>[(Academic Torrent)](https://academictorrents.com/details/dd9b74b50a1292b4b154094b7338ec1d66e8894d) | 2016            |\n| 12.  | **CS224n: NLP with Deep Learning**                    | Richard Socher, Stanford University            | [CS224n](http://web.stanford.edu/class/cs224n/)              | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL3FW7Lu3i5Jsnh1rnUwq_TcylNr7EkRe6) | 2017            |\n| 13.  | **CS231n: CNNs for Visual Recognition**               | Justin Johnson, Stanford University            | [CS231n](http://cs231n.stanford.edu/2017/)                   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL3FW7Lu3i5JvHM8ljYj-zLfQRF3EO8sYv) <br/> [(Academic Torrent)](https://academictorrents.com/details/ed8a16ebb346e14119a03371665306609e485f13) | 2017            |\n| 14.  | **Topics in Deep Learning**                           | Ruslan Salakhutdinov, CMU                      | [10707](https://deeplearning-cmu-10707.github.io/)           | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLpIxOj-HnDsOSL__Buy7_UEVQkyfhHapa) | F2017           |\n| 15.  | **Deep Learning Crash Course**                        | Leo Isikdogan, UT Austin                       | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLWKotBjTDoLj3rXBL-nEIPRN9V3a9Cx07) | 2017            |\n| 16.  | **Deep Learning and its Applications**                | François Pitié, Trinity College Dublin         | [EE4C16](https://github.com/frcs/4C16-2017)                  | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLIo1iEzl5iB9NkulNR0X5vXN8AaEKglWT) | 2017            |\n| 17.  | **Deep Learning**                                     | Andrew Ng, Stanford University                 | [CS230](http://cs230.stanford.edu/)                          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoROMvodv4rOABXSygHTsbvUz4G_YQhOb) | 2018            |\n| 18.  | **UvA Deep Learning**                                 | Efstratios Gavves, University of Amsterdam     | [UvA-DLC](https://uvadlc.github.io/)                         | [Lecture-Videos](https://uvadlc.github.io/lectures-sep2018.html) | 2018            |\n| 19.  | **Advanced Deep Learning and Reinforcement Learning** | Many legends, DeepMind                         | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLqYmG7hTraZDNJre23vqCGIVpfZ_K2RZs) | 2018            |\n| 20.  | **Machine Learning**                                  | Peter Bloem, Vrije Universiteit Amsterdam      | [MLVU](https://mlvu.github.io/)                              | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLCof9EqayQgsORO3pFzeYZFz6cszYO0VJ) | 2018            |\n|      |                                                       |                                                |                                                              |                                                              |                 |\n| 21.  | **Deep Learning**                                     | Francois Fleuret, EPFL                         | [EE-59](https://fleuret.org/ee559-2018/dlc)                  | [Video-Lectures](https://fleuret.org/ee559-2018/dlc/#materials) | 2018            |\n| 22.  | **Introduction to Deep Learning**                     | Alexander Amini, Harini Suresh and others, MIT | [6.S191](http://introtodeeplearning.com/)                    | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLtBw6njQRU-rwp5__7C0oIVt26ZgjG9NI) <br/> [2017-version](https://www.youtube.com/playlist?list=PLkkuNyzb8LmxFutYuPA7B4oiMn6cjD6Rs) | 2017- 2021     |\n| 23.  | **Deep Learning for Self-Driving Cars**               | Lex Fridman, MIT                               | [6.S094](https://selfdrivingcars.mit.edu/)                   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLrAXtmErZgOeiKm4sgNOknGvNjby9efdf) | 2017-2018       |\n| 24.  | **Introduction to Deep Learning**                     | Bhiksha Raj and many others, CMU               | [11-485/785](http://deeplearning.cs.cmu.edu/)                | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLp-0K3kfddPwJBJ4Q8We-0yNQEG0fZrSa) | S2018           |\n| 25.  | **Introduction to Deep Learning**                     | Bhiksha Raj and many others, CMU               | [11-485/785](http://deeplearning.cs.cmu.edu/)                | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLp-0K3kfddPyH44FP0dl0CbYprvTcfgOI)   [Recitation-Inclusive](https://www.youtube.com/playlist?list=PLLR0_ZOlbfD6KDBq93G8-guHI-J1ICeFm) | F2018           |\n| 26.  | **Deep Learning Specialization**                      | Andrew Ng, Stanford                            | [DL.AI](https://www.deeplearning.ai/deep-learning-specialization/) | [YouTube-Lectures](https://www.youtube.com/channel/UCcIXc5mJsHVYTZR1maL5l9w/playlists) | 2017-2018       |\n| 27.  | **Deep Learning**                                     | Ali Ghodsi, University of Waterloo             | [STAT-946](https://uwaterloo.ca/data-analytics/teaching/deep-learning-2017) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLehuLRPyt1HxTolYUWeyyIoxDabDmaOSB) | F2017           |\n| 28.  | **Deep Learning**                                     | Mitesh Khapra, IIT-Madras                      | [CS7015](https://www.cse.iitm.ac.in/~miteshk/CS7015.html)    | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLyqSpQzTE6M9gCgajvQbc68Hk_JKGBAYT) | 2018            |\n| 29.  | **Deep Learning for AI**                              | UPC Barcelona                                  | [DLAI-2017](https://telecombcn-dl.github.io/2017-dlai/) <br/> [DLAI-2018](https://telecombcn-dl.github.io/2018-dlai/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL-5eMc3HQTBagIUjKefjcTbnXC0wXC_vd) | 2017-2018       |\n| 30.  | **Deep Learning**                                     | Alex Bronstein and Avi Mendelson, Technion     | [CS236605](https://vistalab-technion.github.io/cs236605/info/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLM0a6Z788YAZuqg2Ip-_dPLzEd33lZvP2) | 2018            |\n|      |                                                       |                                                |                                                              |                                                              |                 |\n| 31.  | **MIT Deep Learning**                                 | Many Researchers,  Lex Fridman, MIT            | [6.S094, 6.S091, 6.S093](https://deeplearning.mit.edu/)      | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLrAXtmErZgOeiKm4sgNOknGvNjby9efdf) | 2019            |\n| 32.  | **Deep Learning Book** companion videos               | Ian Goodfellow and others                      | [DL-book slides](https://www.deeplearningbook.org/lecture_slides.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLsXu9MHQGs8df5A4PzQGw-kfviylC-R9b) | 2017            |\n| 33.  | **Theories of Deep Learning**                         | Many Legends, Stanford                         | [Stats-385](https://stats385.github.io/)                     | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLwUqqMt5en7fFLwSDa9V3JIkDam-WWgqy) <br/> (first 10 lectures) | F2017           |\n| 34.  | **Neural Networks**                                   | Grant Sanderson                                | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLZHQObOWTQDNU6R1_67000Dx_ZCJB-3pi) | 2017-2018       |\n| 35.  | **CS230: Deep Learning**                              | Andrew Ng, Kian Katanforoosh, Stanford         | [CS230](http://cs230.stanford.edu/)                          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoROMvodv4rOABXSygHTsbvUz4G_YQhOb) | A2018           |\n| 36.  | **Theory of Deep Learning**                           | Lots of Legends, Canary Islands                | [DALI'18](http://dalimeeting.org/dali2018/workshopTheoryDL.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLeCNfJWZKqxtWBnV8gefGqmmPgz9YF4LR) | 2018            |\n| 37.  | **Introduction to Deep Learning**                     | Alex Smola, UC Berkeley                        | [Stat-157](http://courses.d2l.ai/berkeley-stat-157/index.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLZSO_6-bSqHQHBCoGaObUljoXAyyqhpFW) | S2019           |\n| 38.  | **Deep Unsupervised Learning**                        | Pieter Abbeel, UC Berkeley                     | [CS294-158](https://sites.google.com/view/berkeley-cs294-158-sp19/home) | [YouTube-Lectures](https://www.youtube.com/channel/UCf4SX8kAZM_oGcZjMREsU9w/videos) | S2019           |\n| 39.  | **Machine Learning**                                  | Peter Bloem, Vrije Universiteit Amsterdam      | [MLVU](https://mlvu.github.io/)                              | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLCof9EqayQgupldnTvqNy_BThTcME5r93) | 2019            |\n| 40.  | **Deep Learning on Computational Accelerators**       | Alex Bronstein and Avi Mendelson, Technion     | [CS236605](https://vistalab-technion.github.io/cs236605/lectures/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLM0a6Z788YAa_WCy_V-q9NrGm5qQegZR5) | S2019           |\n|      |                                                       |                                                |                                                              |                                                              |                 |\n| 41.  | **Introduction to Deep Learning**                     | Bhiksha Raj and many others, CMU               | [11-785](http://www.cs.cmu.edu/~bhiksha/courses/deeplearning/Spring.2019/www) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLp-0K3kfddPzNdZPX4p0lVi6AcDXBofuf) | S2019           |\n| 42.  | **Introduction to Deep Learning**                     | Bhiksha Raj and many others, CMU               | [11-785](https://www.cs.cmu.edu/~bhiksha/courses/deeplearning/Fall.2019/www) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLp-0K3kfddPwz13VqV1PaMXF6V6dYdEsj) <br> [Recitations](https://www.youtube.com/playlist?list=PLp-0K3kfddPxf4T59JEQKv5UanLPVsxzz) | F2019           |\n| 43.  | **UvA Deep Learning**                                 | Efstratios Gavves, University of Amsterdam     | [UvA-DLC](https://uvadlc.github.io/)                         | [Lecture-Videos](https://uvadlc.github.io/lectures-apr2019.html) | S2019           |\n| 44. | **Deep Learning** | Prabir Kumar Biswas, IIT Kgp | `None` | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLbRMhDVUMngc7NM-gDwcBzIYZNFSK2N1a) | 2019 |\n| 45. | **Deep Learning and its Applications** | Aditya Nigam, IIT Mandi | [CS-671](http://faculty.iitmandi.ac.in/~aditya/cs671/index.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLKvX2d3IUq586Ic9gIhZj6ubpWV-OJfl4) | 2019 |\n| 46. | **Neural Networks**                                   | Neil Rhodes, Harvey Mudd College               | [CS-152](https://www.cs.hmc.edu/~rhodes/cs152/schedule.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgEuVSRbAI9UIQSHGy4l01laA_12YOqEj) | F2019           |\n| 47. | **Deep Learning**                                     | Thomas Hofmann, ETH Zürich                     | [DAL-DL](http://www.da.inf.ethz.ch/teaching/2019/DeepLearning) | [Lecture-Videos](https://video.ethz.ch/lectures/d-infk/2019/autumn/263-3210-00L.html) | F2019           |\n| 48. | **Deep Learning**                                     | Milan Straka, Charles University               | [NPFL114](https://ufal.mff.cuni.cz/courses/npfl114) | [Lecture-Videos](https://ufal.mff.cuni.cz/courses/npfl114/1718-summer) | S2019 |\n| 49. | **UvA Deep Learning** | Efstratios Gavves, University of Amsterdam | [UvA-DLC-19](https://uvadlc.github.io/#lectures) | [Lecture-Videos](https://uvadlc.github.io/#lectures) | F2019 |\n| 50. | **Artificial Intelligence: Principles and Techniques** | Percy Liang and Dorsa Sadigh, Stanford University | [CS221](https://stanford-cs221.github.io/autumn2019/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoROMvodv4rO1NB9TD4iUZ3qghGEGtqNX) | F2019 |\n|  |  |  |  |  |  |\n| 51. | **Analyses of Deep Learning** | Lots of Legends, Stanford University | [STATS-385](https://stats385.github.io/) | [YouTube-Lectures](https://stats385.github.io/lecture_videos) | 2017-2019 |\n| 52. | **Deep Learning Foundations and Applications** | Debdoot Sheet and Sudeshna Sarkar, IIT-Kgp | [AI61002](http://www.facweb.iitkgp.ac.in/~debdoot/courses/AI61002/Spr2020) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL_AdDfjIMo6pZfwjZ0rJlkE_MIsmRW7Mh) | S2020 |\n| 53. | **Designing, Visualizing, and Understanding Deep Neural Networks** | John Canny, UC Berkeley | [CS 182/282A](https://bcourses.berkeley.edu/courses/1487769/pages/cs-l-w-182-slash-282a-designing-visualizing-and-understanding-deep-neural-networks-spring-2020) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLkFD6_40KJIwaO6Eca8kzsEFBob0nFvwm) | S2020 |\n| 54. | **Deep Learning** | Yann LeCun and Alfredo Canziani, NYU | [DS-GA 1008](https://atcold.github.io/pytorch-Deep-Learning/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLLHTzKZzVU9eaEyErdV26ikyolxOsz6mq) | S2020 |\n| 55. | **Introduction to Deep Learning** | Bhiksha Raj, CMU | [11-785](https://deeplearning.cs.cmu.edu/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLp-0K3kfddPzCnS4CqKphh-zT3aDwybDe) | S2020 |\n| 56. | **Deep Unsupervised Learning** | Pieter Abbeel, UC Berkeley | [CS294-158](https://sites.google.com/view/berkeley-cs294-158-sp20) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLwRJQ4m4UJjPiJP3691u-qWwPGVKzSlNP) | S2020 |\n| 57. | **Machine Learning** | Peter Bloem, Vrije Universiteit Amsterdam | [VUML](https://mlvu.github.io/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLCof9EqayQgthR7IViXkAkUwel_rhxGYM) | S2020 |\n| 58. | **Deep Learning (with PyTorch)** | Alfredo Canziani and Yann LeCun, NYU | [DS-GA 1008](https://atcold.github.io/pytorch-Deep-Learning/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLLHTzKZzVU9eaEyErdV26ikyolxOsz6mq) | S2020 |\n| 59. | **Introduction to Deep Learning and Generative Models** | Sebastian Raschka, UW-Madison | [Stat453](http://pages.stat.wisc.edu/~sraschka/teaching/stat453-ss2020/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLTKMiZHVd_2JkR6QtQEnml7swCnFBtq4P) | S2020 |\n| 60. | **Deep Learning** | Andreas Maier, FAU Erlangen-Nürnberg | [DL-2020](https://www.video.uni-erlangen.de/course/id/925) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLpOGQvPCDQzvgpD3S0vTy7bJe2pf_yJFj) <br/>[Lecture-Videos](https://www.video.uni-erlangen.de/course/id/925) | SS2020 |\n|  |  |  |  |  |  |\n| 61. | **Introduction to Deep Learning** | Laura Leal-Taixé and Matthias Niessner, TU-München | [I2DL-IN2346](https://dvl.in.tum.de/teaching/i2dl-ss20/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLQ8Y4kIIbzy_OaXv86lfbQwPHSomk2o2e) | SS2020 |\n| 62. | **Deep Learning** | Sargur Srihari, SUNY-Buffalo | [CSE676](https://cedar.buffalo.edu/~srihari/CSE676/) | [YouTube-Lectures-P1](https://www.youtube.com/playlist?list=PLmx4utxjUQD70k_NzeiSIXf30m54T_e1h) <br/>[YouTube-Lectures-P2](https://www.youtube.com/channel/UCUm7yUmVJyAbYh_0ppJ4H-g/videos) | 2020 |\n| 63. | **Deep Learning Lecture Series** | Lots of Legends, DeepMind x UCL, London | [DLLS-20](https://deepmind.com/learning-resources/deep-learning-lecture-series-2020) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLqYmG7hTraZCDxZ44o4p3N5Anz3lLRVZF) | 2020 |\n| 64. | **MultiModal Machine Learning** | Louis-Philippe Morency & others, Carnegie Mellon University | [11-777 MMML-20](https://cmu-multicomp-lab.github.io/mmml-course/fall2020) | [YouTube-Lectures](https://www.youtube.com/channel/UCqlHIJTGYhiwQpNuPU5e2gg/videos) | F2020 |\n| 65. | **Reliable and Interpretable Artificial Intelligence** | Martin Vechev, ETH Zürich | [RIAI-20](https://www.sri.inf.ethz.ch/teaching/riai2020) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLWjm4hHpaNg6c-W7JjNYDEC_kJK9oSp0Y) | F2020 |\n| 66. | **Fundamentals of Deep Learning** | David McAllester, Toyota Technological Institute, Chicago | [TTIC-31230](https://mcallester.github.io/ttic-31230/Fall2020) | [YouTube-Lectures](https://www.youtube.com/channel/UCciVrtrRR3bQdaGbti9-hVQ/videos) | F2020 |\n| 67. | **Foundations of Deep Learning** | Soheil Feize, University of Maryland, College Park | [CMSC 828W](http://www.cs.umd.edu/class/fall2020/cmsc828W) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLHgjs9ncvHi80UCSlSvQe-TK_uOyDv_Jf) | F2020 |\n| 68. | **Deep Learning** | Andreas Geiger, Universität Tübingen | [DL-UT](https://uni-tuebingen.de/fakultaeten/mathematisch-naturwissenschaftliche-fakultaet/fachbereiche/informatik/lehrstuehle/autonomous-vision/teaching/lecture-deep-learning/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL05umP7R6ij3NTWIdtMbfvX7Z-4WEXRqD) | W20/21 |\n| 69. | **Deep Learning** | Andreas Maier, FAU Erlangen-Nürnberg | [DL-FAU](https://www.fau.tv/course/id/1599) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLpOGQvPCDQzvJEPFUQ3mJz72GJ95jyZTh) | W20/21 |\n| 70. | **Fundamentals of Deep Learning** | Terence Parr and Yannet Interian, University of San Francisco | [DL-Fundamentals](https://github.com/parrt/fundamentals-of-deep-learning) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLFCc_Fc116ikeol9CZcWWKqmrJljxhE4N) | S2021 |\n|  |  |  |  |  |  |\n| 71. | **Full Stack Deep Learning** | Pieter Abbeel, Sergey Karayev, UC Berkeley | [FS-DL](https://fullstackdeeplearning.com/spring2021) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL1T8fO7ArWlcWg04OgNiJy91PywMKT2lv) | S2021 |\n| 72. | **Deep Learning: Designing, Visualizing, and Understanding DNNs** | Sergey Levine, UC Berkeley | [CS 182](https://cs182sp21.github.io) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL_iWQOsE6TfVmKkQHucjPAoRtIJYt8a5A) | S2021 |\n| 73. | **Deep Learning in the Life Sciences** | Manolis Kellis, MIT | [6.874](https://mit6874.github.io) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLypiXJdtIca5sxV7aE3-PS9fYX3vUdIOX) | S2021 |\n| 74. | **Introduction to Deep Learning and Generative Models** | Sebastian Raschka, University of Wisconsin-Madison | [Stat 453](http://pages.stat.wisc.edu/~sraschka/teaching/stat453-ss2021) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLTKMiZHVd_2KJtIXOW0zFhFfBaJJilH51) | S2021 |\n| 75. | **Deep Learning** | Alfredo Canziani and Yann LeCun, NYU | [NYU-DLSP21](https://atcold.github.io/NYU-DLSP21) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLLHTzKZzVU9e6xUfG10TkTWApKSZCzuBI) | S2021 |\n| 76. | **Applied Deep Learning** | Alexander Pacha, TU Wien | `None` | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLNsFwZQ_pkE8xNYTEyorbaWPN7nvbWyk1) | 2020-2021 |\n| 77. | **Machine Learning** | Hung-yi Lee, National Taiwan University | [ML'21](https://speech.ee.ntu.edu.tw/~hylee/ml/2021-spring.php) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLJV_el3uVTsNxV_IGauQZBHjBKZ26JHjd) | S2021 |\n| 78. | **Mathematics of Deep Learning** | Lots of legends, FAU | [MoDL](https://www.fau.tv/course/id/878) | [Lecture-Videos](https://www.fau.tv/course/id/878) | 2019-21 |\n| 79. | **Deep Learning** | Peter Bloem, Michael Cochez, and Jakub Tomczak, VU-Amsterdam | [DL](https://dlvu.github.io/) | [YouTube-Lectures](https://www.youtube.com/channel/UCYh1zKnwzrSjrO2Ae-akfTg/playlists) | 2020-21 |\n| 80. | **Applied Deep Learning** | Maziar Raissi, UC Boulder | [ADL'21](https://github.com/maziarraissi/Applied-Deep-Learning) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoEMreTa9CNmuxQeIKWaz7AVFd_ZeAcy4) | 2021 |\n| | | | | | |\n| 81. | **An Introduction to Group Equivariant Deep Learning** | Erik J. Bekkers, Universiteit van Amsterdam | [UvAGEDL](https://uvagedl.github.io) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL8FnQMH2k7jzPrxqdYufoiYVHim8PyZWd) | 2022 |\n| | | | | | |\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents) \n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n### :cupid: Machine Learning Fundamentals :cyclone: :boom: \n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n| S.No | Course Name                                                  | University/Instructor(s)                                | Course Webpage                                               | Video Lectures                                               | Year       |\n| ---- | ------------------------------------------------------------ | ------------------------------------------------------- | ------------------------------------------------------------ | ------------------------------------------------------------ | ---------- |\n| 1.   | **Linear Algebra**                                           | Gilbert Strang, MIT                                     | [18.06 SC](http://ocw.mit.edu/18-06SCF11)                    | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL221E2BBF13BECF6C) | 2011       |\n| 2.   | **Probability Primer**                                       | Jeffrey Miller, Brown University                        | `mathematical monk`                                          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL17567A1A3F5DB5E4) | 2011       |\n| 3.   | **Information Theory, Pattern Recognition, and Neural Networks** | David Mackay, University of Cambridge                   | [ITPRNN](http://www.inference.org.uk/mackay/itprnn)          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLruBu5BI5n4aFpG32iMbdWoRVAA-Vcso6) | 2012       |\n| 4.   | **Linear Algebra Review**                                    | Zico Kolter, CMU                                        | [LinAlg](http://www.cs.cmu.edu/~zkolter/course/linalg/index.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLM4Pv4KYYzGzL5ay6dmpyzRnbzQ__8v_t) | 2013       |\n| 5.   | **Probability and Statistics**                               | Michel van Biezen                                       | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLX2gX-ftPVXUWwTzAkOhBdhplvz0fByqV) | 2015       |\n| 6.   | **Linear Algebra: An in-depth Introduction**                 | Pavel Grinfeld                                          | `None`                                                       | [Part-1](https://www.youtube.com/playlist?list=PLlXfTHzgMRUKXD88IdzS14F4NxAZudSmv) <br/> [Part-2](https://www.youtube.com/playlist?list=PLlXfTHzgMRULWJYthculb2QWEiZOkwTSU)  <br/> [Part-3](https://www.youtube.com/playlist?list=PLlXfTHzgMRUIqYrutsFXCOmiqKUgOgGJ5) <br/> [Part-4](https://www.youtube.com/playlist?list=PLlXfTHzgMRULZfrNCrrJ7xDcTjGr633mm) | 2015- 2017 |\n| 7.   | **Multivariable Calculus**                                   | Grant Sanderson, Khan Academy                           | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLSQl0a2vh4HC5feHa6Rc5c0wbRTx56nF7) | 2016       |\n| 8.   | **Essence of Linear Algebra**                                | Grant Sanderson                                         | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLZHQObOWTQDPD3MizzM2xVFitgF8hE_ab) | 2016       |\n| 9.   | **Essence of Calculus**                                      | Grant Sanderson                                         | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLZHQObOWTQDMsr9K-rj53DwVRMYO3t5Yr) | 2017-2018  |\n| 10.  | **Math Background for Machine Learning**                     | Geoff Gordon, CMU                                       | [10-606](https://canvas.cmu.edu/courses/603/assignments/syllabus), [10-607](https://piazza.com/cmu/fall2017/1060610607/home) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL7y-1rk2cCsAqRtWoZ95z-GMcecVG5mzA) | F2017      |\n|      |                                                              |                                                         |                                                              |                                                              |            |\n| 11.  | **Mathematics for Machine Learning** (Linear Algebra, Calculus) | David Dye, Samuel Cooper, and Freddie Page, IC-London   | [MML](https://www.coursera.org/learn/linear-algebra-machine-learning) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLmAuaUS7wSOP-iTNDivR0ANKuTUhEzMe4) | 2018       |\n| 12.  | **Multivariable Calculus**                                   | S.K. Gupta and Sanjeev Kumar, IIT-Roorkee               | [MVC](https://nptel.ac.in/syllabus/111107108/)               | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLq-Gm0yRYwTiQtK374NzhFOcQkWmJ71vx) | 2018       |\n| 13.  | **Engineering Probability**                                  | Rich Radke, Rensselaer Polytechnic Institute            | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLuh62Q4Sv7BU1dN2G6ncyiMbML7OXh_Jx) | 2018       |\n| 14.  | **Matrix Methods in Data Analysis, Signal Processing, and Machine Learning** | Gilbert Strang, MIT                                     | [18.065](https://ocw.mit.edu/courses/mathematics/18-065-matrix-methods-in-data-analysis-signal-processing-and-machine-learning-spring-2018) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLUl4u3cNGP63oMNUHXqIUcrkS2PivhN3k) | S2018      |\n| 15.  | **Information Theory**                                       | Himanshu Tyagi, IISC, Bengaluru                         | [E2 201](https://ece.iisc.ac.in/~htyagi/course-E2201-2020.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgMDNELGJ1CYS-8dlMGPIaowVfeda4nUj) | 2018-20    |\n| 16.  | **Math Camp**                                                | Mark Walker, University of Arizona                      | [UAMathCamp / Econ-519](http://www.u.arizona.edu/~mwalker/MathCamp2019.htm) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLcjqUUQt__ZGLhwUacPm7_RKs2eJNFwco) | 2019       |\n| 17.  | **A 2020 Vision of Linear Algebra**                          | Gilbert Strang, MIT                                     | [VoLA](https://ocw.mit.edu/resources/res-18-010-a-2020-vision-of-linear-algebra-spring-2020/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLUl4u3cNGP61iQEFiWLE21EJCxwmWvvek) | S2020      |\n| 18.  | **Mathematics for Numerical Computing and Machine Learning** | Szymon Rusinkiewicz, Princeton University               | [COS-302](https://www.cs.princeton.edu/courses/archive/fall20/cos302/outline.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL88aSuXxl_dSjC5pIG8bGkC5wsUPyW_Hh) | F2020      |\n| 19.  | **Essential Statistics for Neuroscientists**                 | Philipp Berens, Universität Klinikum Tübingen           | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL05umP7R6ij0Gw5SLIrOA1dMYScCx4oXT) | 2020       |\n| 20.  | **Mathematics for Machine Learning**                         | Ulrike von Luxburg, Eberhard Karls Universität Tübingen | [Math4ML](https://www.tml.cs.uni-tuebingen.de/teaching/2020_maths_for_ml) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL05umP7R6ij1a6KdEy8PVE9zoCv6SlHRS) | W2020      |\n| 21.  | **Introduction to Causal Inference**                         | Brady Neal, Mila, Montréal                              | [CausalInf](https://www.bradyneal.com/causal-inference-course) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoazKTcS0Rzb6bb9L508cyJ1z-U9iWkA0) | F2020      |\n| 22.  | **Applied Linear Algebra**                                   | Andrew Thangaraj, IIT Madras                            | [EE5120](http://www.ee.iitm.ac.in/~andrew/EE5120)            | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLyqSpQzTE6M-CHZU5RGfamcXOnuFyTOpm) | 2021       |\n| 23.  | **Mathematical Tools for Data Science**                      | Carlos Fernandez-Granda, New York University            | [DS-GA 1013/Math-GA 2824](https://cds.nyu.edu/math-tools)    | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLBEf5mJtE6KtU6YlXFZD6lyYcHhW5pIlc) | 2021       |\n| 24.  | **Mathematics for Numerical Computing and Machine Learning** | Ryan Adams, Princeton University                        | [COS 302 / SML 305](https://www.cs.princeton.edu/courses/archive/spring21/cos302) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLCO4cUaBLHFEHo42HVIVWaSOvbAiH30uc) | 2021       |\n|      |                                                              |                                                         |                                                              |                                                              |            |\n|      |                                                              |                                                         |                                                              |                                                              |            |\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents) \n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n### :cupid: Optimization for Machine Learning :cyclone: :boom: \n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n| S.No | Course Name                                                  | University/Instructor(s)                                     | Course Webpage                                               | Video Lectures                                               | Year       |\n| ---- | ------------------------------------------------------------ | ------------------------------------------------------------ | ------------------------------------------------------------ | ------------------------------------------------------------ | ---------- |\n| 1.   | **Convex Optimization**                                      | Stephen Boyd, Stanford University                            | [ee364a](http://web.stanford.edu/class/ee364a/lectures.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL3940DD956CDF0622) | 2008       |\n| 2.   | **Introduction to Optimization**                             | Michael Zibulevsky, Technion                                 | [CS-236330](https://sites.google.com/site/michaelzibulevsky/optimization-course) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLDFB2EEF4DDAFE30B) | 2009       |\n| 3.   | **Optimization for Machine Learning**                        | S V N Vishwanathan, Purdue University                        | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL09B0E8AFC69BE108) | 2011       |\n| 4.   | **Optimization**                                             | Geoff Gordon & Ryan Tibshirani, CMU                          | [10-725](https://www.cs.cmu.edu/~ggordon/10725-F12/)         | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL7y-1rk2cCsDOv91McLOnV4kExFfTB7dU) | 2012       |\n| 5.   | **Convex Optimization**                                      | Joydeep Dutta, IIT-Kanpur                                    | [cvx-nptel](https://nptel.ac.in/courses/111/104/111104068)   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLbMVogVj5nJQHFqfiSdgaLCCWvDcm1W4l) | 2013       |\n| 6.   | **Foundations of Optimization**                              | Joydeep Dutta, IIT-Kanpur                                    | [fop-nptel](https://nptel.ac.in/courses/111/104/111104071)   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLbMVogVj5nJRRbofh3Qm3P6_NVyevDGD_) | 2014       |\n| 7.   | **Algorithmic Aspects of Machine Learning**                  | Ankur Moitra, MIT                                            | [18.409-AAML](http://people.csail.mit.edu/moitra/409.html)   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLB3sDpSRdrOvI1hYXNsa6Lety7K8FhPpx) | S2015      |\n| 8.   | **Numerical Optimization**                                   | Shirish K. Shevade, IISC                                     | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL6EA0722B99332589) | 2015       |\n| 9.   | **Convex Optimization**                                      | Ryan Tibshirani, CMU                                         | [10-725](https://www.stat.cmu.edu/~ryantibs/convexopt-S15/)  | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLjbUi5mgii6BZBhJ9nW7eydgycyCOYeZ6) | S2015      |\n| 10.  | **Convex Optimization**                                      | Ryan Tibshirani, CMU                                         | [10-725](http://stat.cmu.edu/~ryantibs/convexopt-F15/)       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLjbUi5mgii6AGJW3La3BpEXe27n8v3biT) | F2015      |\n| 11.  | **Advanced Algorithms**                                      | Ankur Moitra, MIT                                            | [6.854-AA](http://people.csail.mit.edu/moitra/854.html)      | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL6ogFv-ieghdoGKGg2Bik3Gl1glBTEu8c) | S2016      |\n| 12.  | **Introduction to Optimization**                             | Michael Zibulevsky, Technion                                 | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLBD31626529B0AC2A) | 2016       |\n| 13.  | **Convex Optimization**                                      | Javier Peña & Ryan Tibshirani                                | [10-725/36-725](https://www.stat.cmu.edu/~ryantibs/convexopt-F16) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLjbUi5mgii6AVdvImLB9-Hako68p9MpIC) | F2016      |\n| 14.  | **Convex Optimization**                                      | Ryan Tibshirani, CMU                                         | [10-725](https://www.stat.cmu.edu/~ryantibs/convexopt-F18/)  | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLpIxOj-HnDsMM7BCNGC3hPFU3DfCWfVIw) <br/> [Lecture-Videos](https://www.stat.cmu.edu/~ryantibs/convexopt-F18/) | F2018      |\n| 15.  | **Modern Algorithmic Optimization**                          | Yurii Nesterov, UCLouvain                                    | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLEqoHzpnmTfAoUDqnmMly-KgyJ6ZM_axf) | 2018       |\n| 16.  | **Optimization, Foundations of Optimization**                | Mark Walker, University of Arizona                           | [MathCamp-20](http://www.u.arizona.edu/~mwalker/MathCamp2020/MathCamp2020LectureNotes.htm) | [YouTube-Lectures-Found.](https://www.youtube.com/playlist?list=PLcjqUUQt__ZE6wp_c4-FcRdmzBvx8VN7O) <br/> [YouTube-Lectures-Opt](https://www.youtube.com/playlist?list=PLcjqUUQt__ZE0ZSTNRyBIgLJ5obPHdmxC) | 2019 - now |\n| 17.  | **Optimization: Principles and Algorithms**                  | Michel Bierlaire, École polytechnique fédérale de Lausanne (EPFL) | [opt-algo](https://transp-or.epfl.ch/books/optimization/html/about_book.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLM4Pv4KYYzGzOpWwsaV6GgllT6njsi1G-) | 2019       |\n| 18.  | **Optimization and Simulation**                              | Michel Bierlaire, École polytechnique fédérale de Lausanne (EPFL) | [opt-sim](https://transp-or.epfl.ch/courses/OptSim2019/slides.php) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL10NOnsbP5Q5NlJ-Y6Eiup6RTSfkuj1TR) | S2019      |\n| 19.  | **Brazilian Workshop on Continuous Optimization**            | Lots of Legends, Instituto Nacional de Matemática Pura e Aplicada, Rio de Janeiro | [cont. opt.](https://impa.br/eventos-do-impa/eventos-2019/xiii-brazilian-workshop-on-continuous-optimization) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLo4jXE-LdDTQVZhnLPq2W31vJ1fq1VSp6) | 2019       |\n| 20.  | **One World Optimization Seminar**                           | Lots of Legends, Universität Wien                            | [1W-OPT](https://owos.univie.ac.at)                          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLBQo-yZOMzLWEcAptzTYOnwXo9hhXrAa2) | 2020-      |\n|      |                                                              |                                                              |                                                              |                                                              |            |\n| 21.  | **Convex Optimization II**                                   | Constantine Caramanis, UT Austin                             | [CVX-Optim-II](http://users.ece.utexas.edu/~cmcaram/constantine_caramanis/Announcements.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLXsmhnDvpjORzPelSDs0LSDrfJcqyLlZc) | S2020      |\n| 22.  | **Combinatorial Optimization**                               | Constantine Caramanis, UT Austin                             | [comb-op](https://caramanis.github.io/teaching/)             | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLXsmhnDvpjORcTRFMVF3aUgyYlHsxfhNL) | F2020      |\n| 23.  | **Optimization Methods for Machine Learning and Engineering** | Julius Pfrommer, Jürgen Beyerer, Karlsruher Institut für Technologie (KIT) | [Optim-MLE](https://ies.anthropomatik.kit.edu/lehre_1487.php), [slides](https://drive.google.com/drive/folders/1WWVWV4vDBIOkjZc6uFY3nfXvpaOUHcfb) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLdkTDauaUnQpzuOCZyUUZc0lxf4-PXNR5) | W2020-21   |\n|      |                                                              |                                                              |                                                              |                                                              |            |\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents) \n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n### :cupid: General Machine Learning :cyclone: :boom: \n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n| S.No | Course Name                                                  | University/Instructor(s)                                     | Course Webpage                                               | Video Lectures                                               | Year      |\n| ---- | ------------------------------------------------------------ | ------------------------------------------------------------ | ------------------------------------------------------------ | ------------------------------------------------------------ | --------- |\n| 1.   | **CS229: Machine Learning**                                  | Andrew Ng, Stanford University                               | [CS229-old](https://see.stanford.edu/Course/CS229/) <br/> [CS229-new](http://cs229.stanford.edu/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLA89DCFA6ADACE599) | 2007      |\n| 2.   | **Machine Learning**                                         | Jeffrey Miller, Brown University                             | `mathematical monk`                                          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLD0F06AA0D2E8FFBA) | 2011      |\n| 3.   | **Machine Learning**                                         | Tom Mitchell, CMU                                            | [10-701](http://www.cs.cmu.edu/~tom/10701_sp11/)             | [Lecture-Videos](http://www.cs.cmu.edu/~tom/10701_sp11/lectures.shtml) | 2011      |\n| 4.   | **Machine Learning and Data Mining**                         | Nando de Freitas, University of British Columbia             | [CPSC-340](https://www.cs.ubc.ca/~nando/340-2012/index.php)  | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLE6Wd9FR--Ecf_5nCbnSQMHqORpiChfJf) | 2012      |\n| 5.   | **Learning from Data**                                       | Yaser Abu-Mostafa, CalTech                                   | [CS156](http://work.caltech.edu/telecourse.html)             | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLD63A284B7615313A) | 2012      |\n| 6.   | **Machine Learning**                                         | Rudolph Triebel, Technische Universität München              | [Machine Learning](https://vision.in.tum.de/teaching/ws2013/ml_ws13) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLTBdjV_4f-EIiongKlS9OKrBEp8QR47Wl) | 2013      |\n| 7.   | **Introduction to Machine Learning**                         | Alex Smola, CMU                                              | [10-701](http://alex.smola.org/teaching/cmu2013-10-701/)     | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLZSO_6-bSqHQmMKwWVvYwKreGu4b4kMU9) | 2013      |\n| 8.   | **Introduction to Machine Learning**                         | Alex Smola and Geoffrey Gordon, CMU                          | [10-701x](http://alex.smola.org/teaching/cmu2013-10-701x/)   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLZSO_6-bSqHR7NPk4k0zqdm2dPdraQZ_B) | 2013      |\n| 9.   | **Pattern Recognition**                                      | Sukhendu Das, IIT-M and C.A. Murthy, ISI-Calcutta            | [PR-NPTEL](https://nptel.ac.in/syllabus/106106046/)          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLbMVogVj5nJQJMLb2CYw9rry0d5s0TQRp) | 2014      |\n| 10.  | **An Introduction to Statistical Learning with Applications in R** | Trevor Hastie and Robert Tibshirani, Stanford                | [stat-learn](https://lagunita.stanford.edu/courses/HumanitiesandScience/StatLearning/Winter2015/about) <br/> [R-bloggers](https://www.r-bloggers.com/in-depth-introduction-to-machine-learning-in-15-hours-of-expert-videos/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLOg0ngHtcqbPTlZzRHA2ocQZqB1D_qZ5V) | 2014      |\n|      |                                                              |                                                              |                                                              |                                                              |           |\n| 11.  | **Introduction to Machine Learning**                         | Katie Malone, Sebastian Thrun, Udacity                       | [ML-Udacity](https://www.udacity.com/course/ud120)           | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLAwxTw4SYaPkQXg8TkVdIvYv4HfLG7SiH) | 2015      |\n| 12.  | **Introduction to Machine Learning**                         | Dhruv Batra, Virginia Tech                                   | [ECE-5984](https://filebox.ece.vt.edu/~s15ece5984/)          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL-fZD610i7yDUiNTFy-tEOxkTwg4mHZHu) | 2015      |\n| 13.  | **Statistical Learning - Classification**                    | Ali Ghodsi, University of Waterloo                           | [STAT-441](https://uwaterloo.ca/data-analytics/statistical-learning-classification) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLehuLRPyt1Hy-4ObWBK4Ab0xk97s6imfC) | 2015      |\n| 14.  | **Machine Learning Theory**                                  | Shai Ben-David, University of Waterloo                       | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLPW2keNyw-usgvmR7FTQ3ZRjfLs5jT4BO) | 2015      |\n| 15.  | **Introduction to Machine Learning**                         | Alex Smola, CMU                                              | [10-701](http://alex.smola.org/teaching/10-701-15/)          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLZSO_6-bSqHTTV7w9u7grTXBHMH-mw3qn) | S2015     |\n| 16.  | **Statistical Machine Learning**                             | Larry Wasserman, CMU                                         | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLjbUi5mgii6BWEUZf7He6nowWvGne_Y8r) | S2015     |\n| 17.  | **ML: Supervised Learning**                                  | Michael Littman, Charles Isbell, Pushkar Kolhe, GaTech       | [ML-Udacity](https://eu.udacity.com/course/machine-learning--ud262) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLAwxTw4SYaPl0N6-e1GvyLp5-MUMUjOKo) | 2015      |\n| 18.  | **ML: Unsupervised Learning**                                | Michael Littman, Charles Isbell, Pushkar Kolhe, GaTech       | [ML-Udacity](https://eu.udacity.com/course/machine-learning-unsupervised-learning--ud741) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLAwxTw4SYaPmaHhu-Lz3mhLSj-YH-JnG7) | 2015      |\n| 19.  | **Advanced Introduction to Machine Learning**                | Barnabas Poczos and Alex Smola                               | [10-715](https://www.cs.cmu.edu/~bapoczos/Classes/ML10715_2015Fall/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL4YhK0pT0ZhWBzSBkMGzpnPw6sf6Ma0IX) | F2015     |\n| 20.  | **Machine Learning**                                         | Pedro Domingos, UWashington                                  | [CSEP-546](https://courses.cs.washington.edu/courses/csep546/16sp/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLTPQEx-31JXgtDaC6-3HxWcp7fq4N8YGr) | S2016     |\n|      |                                                              |                                                              |                                                              |                                                              |           |\n| 21.  | **Statistical Machine Learning**                             | Larry Wasserman, CMU                                         | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLTB9VQq8WiaCBK2XrtYn5t9uuPdsNm7YE) | S2016     |\n| 22.  | **Machine Learning with Large Datasets**                     | William Cohen, CMU                                           | [10-605](http://curtis.ml.cmu.edu/w/courses/index.php/Machine_Learning_with_Large_Datasets_10-605_in_Fall_2016) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLnfBqXRW5MRhPtfkadfwQ0VcuSi2IwEcW) | F2016     |\n| 23.  | **Math Background for Machine Learning**                     | Geoffrey Gordon, CMU                                         | `10-600`                                                     | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL7y-1rk2cCsA339crwXMWUaBRuLBvPBCg) | F2016     |\n| 24.  | **Statistical Learning - Classification**                    | Ali Ghodsi, University of Waterloo                           | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLehuLRPyt1HzXDemu7K4ETcF0Ld_B5adG) | 2017      |\n| 25.  | **Machine Learning**                                         | Andrew Ng, Stanford University                               | [Coursera-ML](https://www.coursera.org/learn/machine-learning) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLLssT5z_DsK-h9vYZkQkYNWcItqhlRJLN) | 2017      |\n| 26.  | **Machine Learning**                                         | Roni Rosenfield, CMU                                         | [10-601](http://www.cs.cmu.edu/~roni/10601-f17/)             | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL7k0r4t5c10-g7CWCnHfZOAxLaiNinChk) | 2017      |\n| 27.  | **Statistical Machine Learning**                             | Ryan Tibshirani, Larry Wasserman, CMU                        | [10-702](http://www.stat.cmu.edu/~ryantibs/statml/)          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLjbUi5mgii6B7A0nM74zHTOVQtTC9DaCv) | S2017     |\n| 28.  | **Machine Learning for Computer Vision**                     | Fred Hamprecht, Heidelberg University                        | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLuRaSnb3n4kSQFyt8VBldsQ9pO9Xtu8rY) | F2017     |\n| 29.  | **Math Background for Machine Learning**                     | Geoffrey Gordon, CMU                                         | [10-606 / 10-607](https://canvas.cmu.edu/courses/603/assignments/syllabus) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL7y-1rk2cCsAqRtWoZ95z-GMcecVG5mzA) | F2017     |\n| 30.  | **Data Visualization**                                       | Ali Ghodsi, University of Waterloo                           | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLehuLRPyt1HzQoXEhtNuYTmd0aNQvtyAK) | 2017      |\n|      |                                                              |                                                              |                                                              |                                                              |           |\n| 31.  | **Machine Learning for Physicists**                          | Florian Marquardt, Uni Erlangen-Nürnberg                     | [ML4Phy-17](http://www.thp2.nat.uni-erlangen.de/index.php/2017_Machine_Learning_for_Physicists,_by_Florian_Marquardt) | [Lecture-Videos](https://www.video.uni-erlangen.de/course/id/574) | 2017      |\n| 32.  | **Machine Learning for Intelligent Systems**                 | Kilian Weinberger, Cornell University                        | [CS4780](http://www.cs.cornell.edu/courses/cs4780/2018fa/)   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLl8OlHZGYOQ7bkVbuRthEsaLr7bONzbXS) | F2018     |\n| 33.  | **Statistical Learning Theory and Applications**             | Tomaso Poggio, Lorenzo Rosasco, Sasha Rakhlin                | [9.520/6.860](https://cbmm.mit.edu/lh-9-520)                 | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLyGKBDfnk-iAtLO6oLW4swMiQGz4f2OPY) | F2018     |\n| 34.  | **Machine Learning and Data Mining**                         | Mike Gelbart, University of British Columbia                 | [CPSC-340](https://ubc-cs.github.io/cpsc340/)                | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLWmXHcz_53Q02ZLeAxigki1JZFfCO6M-b) | 2018      |\n| 35.  | **Foundations of Machine Learning**                          | David Rosenberg, Bloomberg                                   | [FOML](https://bloomberg.github.io/foml/#home)               | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLnZuxOufsXnvftwTB1HL6mel1V32w0ThI) | 2018      |\n| 36.  | **Introduction to Machine Learning**                         | Andreas Krause, ETH Zürich                                   | [IntroML](https://las.inf.ethz.ch/teaching/introml-s18)      | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLzn6LN6WhlN273tsqyfdrBUsA-o5nUESV) | 2018      |\n| 37.  | **Machine Learning Fundamentals**                            | Sanjoy Dasgupta, UC-San Diego                                | [MLF-slides](https://drive.google.com/drive/folders/1l1rwv-jMihLZIpW0zTgGN9-snWOsA3M9) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL_onPhFCkVQhUzcTVgQiC8W2ShZKWlm0s) | 2018      |\n| 38.  | **Machine Learning**                                         | Jordan Boyd-Graber, University of Maryland                   | [CMSC-726](http://users.umiacs.umd.edu/~jbg/teaching/CMSC_726/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLegWUnz91WfsELyRcZ7d1GwAVifDaZmgo) | 2015-2018 |\n| 39.  | **Machine Learning**                                         | Andrew Ng, Stanford University                               | [CS229](http://cs229.stanford.edu/syllabus-autumn2018.html)  | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoROMvodv4rMiGQp3WXShtMGgzqpfVfbU) | 2018      |\n| 40.  | **Machine Intelligence**                                     | H.R.Tizhoosh, UWaterloo                                      | [SYDE-522](https://kimialab.uwaterloo.ca/kimia/index.php/teaching/syde-522-machine-intelligence-2) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL4upCU5bnihwCX93Gv6AQnKmVMwx4AZoT) | 2019      |\n|      |                                                              |                                                              |                                                              |                                                              |           |\n| 41.  | **Introduction to Machine Learning**                         | Pascal Poupart, University of Waterloo                       | [CS480/680](https://cs.uwaterloo.ca/~ppoupart/teaching/cs480-spring19) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLdAoL1zKcqTW-uzoSVBNEecKHsnug_M0k) | S2019     |\n| 42.  | **Advanced Machine Learning**                                | Thorsten Joachims, Cornell University                        | [CS-6780](https://www.cs.cornell.edu/courses/cs6780/2019sp)  | [Lecture-Videos](https://cornell.mediasite.com/Mediasite/Catalog/Full/f5d1cd3323f746cca80b2468bf97efd421) | S2019     |\n| 43.  | **Machine Learning for Structured Data**                     | Matt Gormley, Carnegie Mellon University                     | [10-418/10-618](http://www.cs.cmu.edu/~mgormley/courses/10418/schedule.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL4CxkUJbvNVihRKP4bXufvRLIWzeS-ieP) | F2019     |\n| 44.  | **Advanced Machine Learning**                                | Joachim Buhmann, ETH Zürich                                  | [ML2-AML](https://ml2.inf.ethz.ch/courses/aml/)              | [Lecture-Videos](https://video.ethz.ch/lectures/d-infk/2019/autumn/252-0535-00L.html) | F2019     |\n| 45.  | **Machine Learning for Signal Processing**                   | Vipul Arora, IIT-Kanpur                                      | [MLSP](http://home.iitk.ac.in/~vipular/stuff/2019_MLSP.html) | [Lecture-Videos](https://iitk-my.sharepoint.com/:f:/g/personal/vipular_iitk_ac_in/Enf97NZfsoVBiyclC6yHfe4BlUv6CA4U8LPQQ4vtsDo_Xg) | F2019     |\n| 46.  | **Foundations of Machine Learning**                          | Animashree Anandkumar, CalTech                               | [CMS-165](http://tensorlab.cms.caltech.edu/users/anima/cms165-2019.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLVNifWxslHCA5GUh0o92neMiWiQiGVFqp) | 2019      |\n| 47.  | **Machine Learning for Physicists**                          | Florian Marquardt, Uni Erlangen-Nürnberg                     | `None`                                                       | [Lecture-Videos](https://www.video.uni-erlangen.de/course/id/778) | 2019      |\n| 48.  | **Applied Machine Learning**                                 | Andreas Müller, Columbia University                          | [COMS-W4995](https://www.cs.columbia.edu/~amueller/comsw4995s19/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL_pVmAaAnxIQGzQS2oI3OWEPT-dpmwTfA) | 2019      |\n| 49.  | **Fundamentals of Machine Learning over Networks**           | Hossein Shokri-Ghadikolaei, KTH, Sweden                      | [MLoNs](https://sites.google.com/view/mlons/course-materials) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLWoZTd81WFCEBFrxDfNUrDnt3ABdLfg80) | 2019      |\n| 50.  | **Foundations of Machine Learning and Statistical Inference** | Animashree Anandkumar, CalTech                               | [CMS-165](http://tensorlab.cms.caltech.edu/users/anima/cms165-2020.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLVNifWxslHCDlbyitaLLYBOAEPbmF1AHg) | 2020      |\n|      |                                                              |                                                              |                                                              |                                                              |           |\n| 51.  | **Machine Learning**                                         | Rebecca Willett and Yuxin Chen, University of Chicago        | [STAT 37710 / CMSC 35400](https://voices.uchicago.edu/willett/teaching/stats37710-cmsc35400-s20) | [Lecture-Videos](https://voices.uchicago.edu/willett/teaching/stats37710-cmsc35400-s20) | S2020     |\n| 52.  | **Introduction to Machine Learning**                         | Sanjay Lall and Stephen Boyd, Stanford University            | [EE104/CME107](http://ee104.stanford.edu)                    | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoROMvodv4rN_Uy7_wmS051_q1d6akXmK) | S2020     |\n| 53.  | **Applied Machine Learning**                                 | Andreas Müller, Columbia University                          | [COMS-W4995](https://www.cs.columbia.edu/~amueller/comsw4995s20/schedule/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL_pVmAaAnxIRnSw6wiCpSvshFyCREZmlM) | S2020     |\n| 54.  | **Statistical Machine Learning**                             | Ulrike von Luxburg, Eberhard Karls Universität Tübingen      | [Stat-ML](https://www.tml.cs.uni-tuebingen.de/teaching/2020_statistical_learning/index.php) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL05umP7R6ij2XCvrRzLokX6EoHWaGA2cC) | SS2020    |\n| 55.  | **Probabilistic Machine Learning**                           | Philipp Hennig, Eberhard Karls Universität Tübingen          | [Prob-ML](https://uni-tuebingen.de/en/180804)                | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL05umP7R6ij1tHaOFY96m5uX3J21a6yNd) | SS2020    |\n| 56.  | **Machine Learning**                                         | Sarath Chandar, PolyMTL, UdeM, Mila                          | [INF8953CE](http://sarathchandar.in/teaching/ml/fall2020)    | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLImtCgowF_ET0mi-AmmqQ0SIJUpWYaIOr) | F2020     |\n| 57.  | **Machine Learning**                                         | Erik Bekkers, Universiteit van Amsterdam                     | [UvA-ML](https://uvaml1.github.io/)                          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL8FnQMH2k7jzhtVYbKmvrMyXDYMmgjj_n) | F2020     |\n| 58.  | **Neural Networks for Signal Processing**                    | Shayan Srinivasa Garani, Indian Institute of Science         | [NN4SP](https://labs.dese.iisc.ac.in/pnsil/neural-networks-and-learning-systems-i-fall-2020/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgMDNELGJ1CZn1399dV7_U4VBNJflRsua) | F2020     |\n| 59.  | **Introduction to Machine Learning**                         | Dmitry Kobak, Universität Klinikum Tübingen                  | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL05umP7R6ij35ShKLDqccJSDntugY4FQT) | 2020      |\n| 60.  | **Machine Learning (PRML)**                                  | Erik J. Bekkers, Universiteit van Amsterdam                  | [UvAML-1](https://uvaml1.github.io)                          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL8FnQMH2k7jzhtVYbKmvrMyXDYMmgjj_n) | 2020      |\n|      |                                                              |                                                              |                                                              |                                                              |           |\n| 61.  | **Machine Learning with Kernel Methods**                     | Julien Mairal and Jean-Philippe Vert, Inria/ENS Paris-Saclay, Google | [ML-Kernels](http://members.cbio.mines-paristech.fr/~jvert/svn/kernelcourse/course/2021mva/index.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLD93kGj6_EdrkNj27AZMecbRlQ1SMkp_o) | S2021     |\n| 62.  | **Continual Learning**                                       | Vincenzo Lomonaco, Università di Pisa                        | [ContLearn'21](https://course.continualai.org/background/details) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLm6QXeaB-XkBfM5RgQP6wCR7Jegdg51Px) | 2021      |\n| 63.  | **Causality**                                                | Christina Heinze-Deml, ETH Zurich                            | [Causal'21](https://stat.ethz.ch/lectures/ss21/causality.php#course_materials) | [YouTube-Lectures](https://stat.ethz.ch/lectures/ss21/causality.php#course_materials) | 2021      |\n|      |                                                              |                                                              |                                                              |                                                              |           |\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents) \n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n### :balloon: Reinforcement Learning :hotsprings: :video_game: \n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n| S.No | Course Name                                              | University/Instructor(s)                                     | Course Webpage                                               | Video Lectures                                               | Year   |\n| ---- | -------------------------------------------------------- | ------------------------------------------------------------ | ------------------------------------------------------------ | ------------------------------------------------------------ | ------ |\n| 1.   | **A Short Course on Reinforcement Learning**             | Satinder Singh, UMichigan                                    | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLM4Pv4KYYzGy4cIFQ5C36-1jMNLab80Ky) | 2011   |\n| 2.   | **Approximate Dynamic Programming**                      | Dimitri P. Bertsekas, MIT                                    | [Lecture-Slides](http://adpthu2014.weebly.com/slides--materials.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLiCLbsFQNFAxOmVeqPhI5er1LGf2-L9I4) | 2014   |\n| 3.   | **Introduction to Reinforcement Learning**               | David Silver, DeepMind                                       | [UCL-RL](http://www0.cs.ucl.ac.uk/staff/d.silver/web/Teaching.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLqYmG7hTraZDM-OYHWgPebj2MfCFzFObQ) | 2015   |\n| 4.   | **Reinforcement Learning**                               | Charles Isbell, Chris Pryby, GaTech; Michael Littman, Brown  | [RL-Udacity](https://eu.udacity.com/course/reinforcement-learning--ud600) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLAwxTw4SYaPnidDwo9e2c7ixIsu_pdSNp) | 2015   |\n| 5.   | **Reinforcement Learning**                               | Balaraman Ravindran, IIT Madras                              | [RL-IITM](https://www.cse.iitm.ac.in/~ravi/courses/Reinforcement%20Learning.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLNdWVHi37UggQIVcaZcmtGGEQHY9W7d9D) | 2016   |\n| 6.   | **Deep Reinforcement Learning**                          | Sergey Levine, UC Berkeley                                   | [CS-294](http://rail.eecs.berkeley.edu/deeprlcoursesp17/)    | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLkFD6_40KJIwTmSbCv9OVJB3YaO4sFwkX) | S2017  |\n| 7.   | **Deep Reinforcement Learning**                          | Sergey Levine, UC Berkeley                                   | [CS-294](http://rail.eecs.berkeley.edu/deeprlcourse-fa17/)   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLkFD6_40KJIznC9CDbVTjAF2oyt8_VAe3) | F2017  |\n| 8.   | **Deep RL Bootcamp**                                     | Many legends, UC Berkeley                                    | [Deep-RL](https://sites.google.com/view/deep-rl-bootcamp/lectures) | [YouTube-Lectures](https://www.youtube.com/channel/UCTgM-VlXKuylPrZ_YGAJHOw/videos) | 2017   |\n| 9    | **Data Efficient Reinforcement Learning**                | Lots of Legends, Canary Islands                              | [DERL-17](http://dalimeeting.org/dali2017/data-efficient-reinforcement-learning.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL-tWvTpyd1VAvDpxukup6w-SuZQQ7e8K8) | 2017   |\n| 10.  | **Deep Reinforcement Learning**                          | Sergey Levine, UC Berkeley                                   | [CS-294-112](http://rail.eecs.berkeley.edu/deeprlcourse-fa18/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLkFD6_40KJIxJMR-j5A1mkxK26gh_qg37) | 2018   |\n|      |                                                          |                                                              |                                                              |                                                              |        |\n| 11.  | **Reinforcement Learning**                               | Pascal Poupart, University of Waterloo                       | [CS-885](https://cs.uwaterloo.ca/~ppoupart/teaching/cs885-spring18/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLdAoL1zKcqTXFJniO3Tqqn6xMBBL07EDc) | 2018   |\n| 12.  | **Deep Reinforcement Learning and Control**              | Katerina Fragkiadaki and Tom Mitchell, CMU                   | [10-703](http://www.andrew.cmu.edu/course/10-703/)           | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLpIxOj-HnDsNfvOwRKLsUobmnF2J1l5oV) | 2018   |\n| 13.  | **Reinforcement Learning and Optimal Control**           | Dimitri Bertsekas, Arizona State University                  | [RLOC](http://web.mit.edu/dimitrib/www/RLbook.html)          | [Lecture-Videos](http://web.mit.edu/dimitrib/www/RLbook.html) | 2019   |\n| 14.  | **Reinforcement Learning**                               | Emma Brunskill, Stanford University                          | [CS 234](http://web.stanford.edu/class/cs234/index.html)     | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoROMvodv4rOSOPzutgyCTapiGlY2Nd8u) | 2019   |\n| 15.  | **Reinforcement Learning Day**                           | Lots of Legends, Microsoft Research, New York                | [RLD-19](https://www.microsoft.com/en-us/research/event/reinforcement-learning-day-2019/#!agenda) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLD7HFcN7LXRe9nWEX3Up-RiCDi6-0mqVC) | 2019   |\n| 16.  | **New Directions in Reinforcement Learning and Control** | Lots of Legends, IAS, Princeton University                   | [NDRLC-19](https://www.math.ias.edu/ndrlc)                   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLdDZb3TwJPZ61sGqd6cbWCmTc275NrKu3) | 2019   |\n| 17.  | **Deep Reinforcement Learning**                          | Sergey Levine, UC Berkeley                                   | [CS 285](http://rail.eecs.berkeley.edu/deeprlcourse-fa19)    | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLkFD6_40KJIwhWJpGazJ9VSj9CFMkb79A) | F2019  |\n| 18.  | **Deep Multi-Task and Meta Learning**                    | Chelsea Finn, Stanford University                            | [CS 330](https://cs330.stanford.edu/)                        | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoROMvodv4rMC6zfYmnD7UG3LVvwaITY5) | F2019  |\n| 19.  | **RL-Theory Seminars**                                   | Lots of Legends, Earth                                       | [RL-theory-sem](https://sites.google.com/view/rltheoryseminars/past-seminars) | [YouTube-Lectures](https://www.youtube.com/channel/UCfBFutC9RbKK6p--B4R9ebA/videos) | 2020 - |\n| 20.  | **Deep Reinforcement Learning**                          | Sergey Levine, UC Berkeley                                   | [CS 285](http://rail.eecs.berkeley.edu/deeprlcourse-fa20)    | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL_iWQOsE6TfURIIhCrlt-wj9ByIVpbfGc) | F2020  |\n|      |                                                          |                                                              |                                                              |                                                              |        |\n| 21.  | **Introduction to Reinforcement Learning**               | Amir-massoud Farahmand, Vector Institute, University of Toronto | [RL-intro](https://amfarahmand.github.io/IntroRL)            | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLCveiXxL2xNbiDq51a8iJwPRq2aO0ykrq) | S2021  |\n| 22.  | **Reinforcement Learning**                               | Antonio Celani and Emanuele Panizon, International Centre for Theoretical Physics | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLp0hSY2uBeP8q2G3mfHGVGvQFEMX0QRWM) | 2021   |\n| 23.  | **Computational Sensorimotor Learning**                  | Pulkit Agrawal, MIT-CSAIL                                    | [6.884-CSL](https://pulkitag.github.io/6.884/lectures)       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLwNwxAG-kBxPMTIs2fKWSsf7HqL2TcC78) | S2021  |\n| 24.  | **Reinforcement Learning**                               | Dimitri P. Bertsekas, ASU/MIT                                | [RL-21](http://web.mit.edu/dimitrib/www/RLbook.html)         | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLmH30BG15SIp79JRJ-MVF12uvB1qPtPzn) | S2021  |\n| 25.  | **Reinforcement Learning**                               | Sarath Chandar,  École Polytechnique de Montréal             | [INF8953DE](https://chandar-lab.github.io/INF8953DE)         | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLImtCgowF_ES_JdF_UcM60EXTcGZg67Ua) | F2021  |\n| 26.  | **Deep Reinforcement Learning**                          | Sergey Levine, UC Berkeley                                   | [CS 285](http://rail.eecs.berkeley.edu/deeprlcourse)         | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL_iWQOsE6TfXxKgI1GgyV1B_Xa0DxE5eH) | F2021  |\n| 27.  | **Reinforcement Learning Lecture Series**                | Lots of Legends, DeepMind & UC London                        | [RL-series](https://deepmind.com/learning-resources/reinforcement-learning-series-2021) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLqYmG7hTraZDVH599EItlEWsUOsJbAodm) | 2021   |\n| 28.  | **Reinforcement Learning**                               | Dimitri P. Bertsekas, ASU/MIT                                | [RL-22](http://web.mit.edu/dimitrib/www/RLbook.html)         | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLmH30BG15SIoXhxLldoio0BhsIY84YMDj) | S2022  |\n|      |                                                          |                                                              |                                                              |                                                              |        |\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents) \n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n### :loudspeaker: Probabilistic Graphical Models :sparkles: \n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n| S.No | Course Name                                                  | University/Instructor(s)                            | Course WebPage                                               | Lecture Videos                                               | Year    |\n| ---- | ------------------------------------------------------------ | --------------------------------------------------- | ------------------------------------------------------------ | ------------------------------------------------------------ | ------- |\n| 1.   | **Probabilistic Graphical Models**                           | Many Legends, MPI-IS                                | [MLSS-Tuebingen](http://mlss.tuebingen.mpg.de/2013/2013/speakers.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLL0GjJzXhAWTRiW_ynFswMaiLSa0hjCZ3) | 2013    |\n| 2.   | **Probabilistic Modeling and Machine Learning**              | Zoubin Ghahramani, University of Cambridge          | [WUST-Wroclaw](https://www.ii.pwr.edu.pl/~gonczarek/zoubin.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLwUOK5j_XOsdfVAGKErx9HqnrVZIuRbZ2) | 2013    |\n| 3.   | **Probabilistic Graphical Models**                           | Eric Xing, CMU                                      | [10-708](http://www.cs.cmu.edu/~epxing/Class/10708/lecture.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLI3nIOD-p5aoXrOzTd1P6CcLavu9rNtC-) | 2014    |\n| 4.   | **Learning with Structured Data: An Introduction to Probabilistic Graphical Models** | Christoph Lampert, IST Austria                      | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLEqoHzpnmTfA0wc1JxjoVVOrJlx8W0rGf) | 2016    |\n| 5.   | **Probabilistic Graphical Models**                           | Nicholas Zabaras, University of Notre Dame          | [PGM](https://www.zabaras.com/probabilistic-graphical-models) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLd-PuDzW85AcV4bgdu7wHPL37hm60W4RM) | 2018    |\n| 6.   | **Probabilistic Graphical Models**                           | Eric Xing, CMU                                      | [10-708](https://sailinglab.github.io/pgm-spring-2019/)      | [Lecture-Videos](https://sailinglab.github.io/pgm-spring-2019/lectures) <br> [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoZgVqqHOumTY2CAQHL45tQp6kmDnDcqn) | S2019   |\n| 7.   | **Probabilistic Graphical Models**                           | Eric Xing, CMU                                      | [10-708](https://www.cs.cmu.edu/~epxing/Class/10708-20/index.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoZgVqqHOumTqxIhcdcpOAJOOimrRCGZn) | S2020   |\n| 8.   | **Uncertainty Modeling in AI**                               | Gim Hee Lee, National University of Singapura (NUS) | [CS 5340 - CH](https://www.coursehero.com/sitemap/schools/2652-National-University-of-Singapore/courses/7821096-CS5340/), [CS 5340-NB](https://github.com/clear-nus/CS5340-notebooks) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLxg0CGqViygOb9Eyc8IXM27doxjp2SK0H) | 2020-21 |\n|      |                                                              |                                                     |                                                              |                                                              |         |\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents)\n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n## :game_die: Bayesian Deep Learning :spades: :gem: \n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n| S.No | Course Name                                         | University/Instructor(s)          | Course WebPage                                           | Lecture Videos                                               | Year     |\n| ---- | --------------------------------------------------- | --------------------------------- | -------------------------------------------------------- | ------------------------------------------------------------ | -------- |\n| 1.   | **Bayesian Neural Networks, Variational Inference** | Lots of Legends                   | `None`                                                   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLM4Pv4KYYzGwUB4bFy183hwGhpL9ytvA1) | 2014-now |\n| 2.   | **Variational Inference**                           | Chieh Wu, Northeastern University | `None`                                                   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLdk2fd27CQzSd1sQ3kBYL4vtv6GjXvPsE) | 2015     |\n| 3.   | **Deep Learning and Bayesian Methods**              | Lots of Legends, HSE Moscow       | [DLBM-SS](http://deepbayes.ru/2018)                      | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLe5rNUydzV9Q01vWCP9BV7NhJG3j7mz62) | 2018     |\n| 4.   | **Deep Learning and Bayesian Methods**              | Lots of Legends, HSE Moscow       | [DLBM-SS](http://deepbayes.ru/)                          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLe5rNUydzV9QHe8VDStpU0o8Yp63OecdW) | 2019     |\n| 5.   | **Nordic Probabilistic AI**                         | Lots of Legends, NTNU, Trondheim  | [ProbAI](https://github.com/probabilisticai/probai-2019) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLRy-VW__9hV8s--JkHXZvnd26KgjRP2ik) | 2019     |\n|      |                                                     |                                   |                                                          |                                                              |          |\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents)\n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n## :movie_camera: Medical Imaging :camera: :video_camera: \n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n| S.No | Course Name                                                  | University/Instructor(s)                    | Course WebPage                                               | Lecture Videos                                               | Year  |\n| ---- | ------------------------------------------------------------ | ------------------------------------------- | ------------------------------------------------------------ | ------------------------------------------------------------ | ----- |\n| 1.   | **Medical Imaging Summer School**                            | Lots of Legends, Sicily                     | [MISS-14](http://iplab.dmi.unict.it/miss14/programme.html)   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL_VeUGLULXQtvcCdAgmvKoJ1k0Ajhz-Qu) | 2014  |\n| 2.   | **Biomedical Image Analysis Summer School**                  | Lots of Legends, Paris                      | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgSHH6boFf5uJAUT4ZRiAZc_ofXolkAGK) | 2015  |\n| 3.   | **Medical Imaging Summer School**                            | Lots of Legends, Sicily                     | [MISS-16](http://iplab.dmi.unict.it/miss16/programme.html)   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLTRCr47yTx5iXIYSneX3LKf16upaw59wa) | 2016  |\n| 4.   | **OPtical and UltraSound imaging - OPUS**                    | Lots of Legends, Université de Lyon, France | [OPUS'16](https://opus2016lyon.sciencesconf.org/resource/page/id/2) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL95ayoVLX8GdUKbxu-R9WqRWwzdWcKjti) | 2016  |\n| 5.   | **Medical Imaging Summer School**                            | Lots of Legends, Sicily                     | [MISS-18](http://iplab.dmi.unict.it/miss/programme.htm)      | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL_VeUGLULXQux1dV4iA3XuMX6AueJmGGa) | 2018  |\n| 6.   | **Seminar on AI in Healthcare**                              | Lots of Legends, Stanford                   | [CS 522](http://cs522.stanford.edu/2018/index.html)          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLYn-ZmPR1DtNQJ-ot-L2V2EgUEH6OH_7w) | 2018  |\n| 7.   | **Machine Learning for Healthcare**                          | David Sontag, Peter Szolovits, CSAIL MIT    | [MLHC-19](https://mlhc19mit.github.io/) <br/>[MIT 6.S897](https://ocw.mit.edu/courses/electrical-engineering-and-computer-science/6-s897-machine-learning-for-healthcare-spring-2019/lecture-notes/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLUl4u3cNGP60B0PQXVQyGNdCyCTDU1Q5j) | S2019 |\n| 8.   | **Deep Learning and Medical Applications**                   | Lots of Legends, IPAM, UCLA                 | [DLM-20](https://www.ipam.ucla.edu/programs/workshops/deep-learning-and-medical-applications/?tab=schedule) | [Lecture-Videos](https://www.ipam.ucla.edu/programs/workshops/deep-learning-and-medical-applications/?tab=schedule) | 2020  |\n| 9.   | **Stanford Symposium on Artificial Intelligence in Medicine and Imaging** | Lots of Legends, Stanford AIMI              | [AIMI-20](https://aimi.stanford.edu/news-events/aimi-symposium/agenda) | [YouTube-Lectures](https://www.youtube.com/watch?v=tR2ObiL4il8&list=PLe6zdIMe5B7IR0oDOobXBDBlYY1eqLYPx) | 2020  |\n|      |                                                              |                                             |                                                              |                                                              |       |\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents)\n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n## :tada: Graph Neural Networks (Geometric DL) :confetti_ball: :balloon: \n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n| S.No | Course Name                                                  | University/Instructor(s)                                | Course WebPage                                               | Lecture Videos                                               | Year  |\n| ---- | ------------------------------------------------------------ | ------------------------------------------------------- | ------------------------------------------------------------ | ------------------------------------------------------------ | ----- |\n| 1.   | **Deep learning on graphs and manifolds**                    | Michael Bronstein, Technion                             | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLH39kM3nuavcVOUIIBraBNHjv-CwEd1uV) | 2017  |\n| 2.   | **Geometric Deep Learning on Graphs and Manifolds**          | Michael Bronstein, Technische Universität München       | `None`                                                       | [Lec-part1](https://streams.tum.de/Mediasite/Play/1f3b894e78f6400daa7885c886b936fb1d),  <br/>[Lec-part2](https://streams.tum.de/Mediasite/Play/6039c846b2f84e7a806024c06e3f5c5c1d) | 2017  |\n| 3.   | **Eurographics Symposium on Geometry Processing - Graduate School** | Lots of Legends, SIGGRAPH, London                       | [SGP-2017](http://geometry.cs.ucl.ac.uk/SGP2017/?p=gradschool) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLOp-ngXvomHArqntgLVNzuJNdzNx3rDjZ) | 2017  |\n| 4.   | **Eurographics Symposium on Geometry Processing - Graduate School** | Lots of Legends, SIGGRAPH, Paris                        | [SGP-2018](https://sgp2018.sciencesconf.org/resource/page/id/7) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLvcoRb-DvAmgpp8LYw7dUvLxh-1Vrrm-v) | 2018  |\n| 5.   | **Analysis of Networks: Mining and Learning with Graphs**    | Jure Leskovec, Stanford University                      | [CS224W](http://snap.stanford.edu/class/cs224w-2018/)        | [Lecture-Videos](http://snap.stanford.edu/class/cs224w-2018/) | 2018  |\n| 6.   | **Machine Learning with Graphs**                             | Jure Leskovec, Stanford University                      | [CS224W](http://snap.stanford.edu/class/cs224w-2019/)        | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL-Y8zK4dwCrQyASidb2mjj_itW2-YYx6-) | 2019  |\n| 7.   | Geometry and Learning from Data in 3D and Beyond -**Geometry and Learning from Data Tutorials** | Lots of Legends, IPAM UCLA                              | [GLDT](http://www.ipam.ucla.edu/programs/workshops/geometry-and-learning-from-data-tutorials) | [Lecture-Videos](http://www.ipam.ucla.edu/programs/workshops/geometry-and-learning-from-data-tutorials/?tab=schedule) | 2019  |\n| 8.   | Geometry and Learning from Data in 3D and Beyond - **Geometric Processing** | Lots of Legends, IPAM UCLA                              | [GeoPro](http://www.ipam.ucla.edu/programs/workshops/workshop-i-geometric-processing/) | [Lecture-Videos](http://www.ipam.ucla.edu/programs/workshops/workshop-i-geometric-processing/?tab=schedule) | 2019  |\n| 9.   | Geometry and Learning from Data in 3D and Beyond - **Shape Analysis** | Lots of Legends, IPAM UCLA                              | [Shape-Analysis](http://www.ipam.ucla.edu/programs/workshops/workshop-ii-shape-analysis/) | [Lecture-Videos](http://www.ipam.ucla.edu/programs/workshops/workshop-ii-shape-analysis/?tab=schedule) | 2019  |\n| 10.  | Geometry and Learning from Data in 3D and Beyond - **Geometry of Big Data** | Lots of Legends, IPAM UCLA                              | [Geo-BData](http://www.ipam.ucla.edu/programs/workshops/workshop-iii-geometry-of-big-data) | [Lecture-Videos](http://www.ipam.ucla.edu/programs/workshops/workshop-iii-geometry-of-big-data/?tab=schedule) | 2019  |\n|      |                                                              |                                                         |                                                              |                                                              |       |\n| 11.  | Geometry and Learning from Data in 3D and Beyond - **Deep Geometric Learning of Big Data and Applications** | Lots of Legends, IPAM UCLA                              | [DGL-BData](http://www.ipam.ucla.edu/programs/workshops/workshop-iv-deep-geometric-learning-of-big-data-and-applications) | [Lecture-Videos](http://www.ipam.ucla.edu/programs/workshops/workshop-iv-deep-geometric-learning-of-big-data-and-applications/?tab=schedule) | 2019  |\n| 12.  | **Israeli Geometric Deep Learning**                          | Lots of Legends, Israel                                 | [iGDL-20](https://gdl-israel.github.io/schedule.html)        | [Lecture-Videos](https://www.youtube.com/watch?v=c8_32IVn-sg) | 2020  |\n| 13.  | **Machine Learning for Graphs and Sequential Data**          | Stephan Günnemann, Technische Universität München (TUM) | [MLGS-20](https://www.in.tum.de/en/daml/teaching/summer-term-2020/machine-learning-for-graphs-and-sequential-data/) | [Lecture-Videos](https://www.in.tum.de/daml/teaching/mlgs/)  | S2020 |\n| 14.  | **Machine Learning with Graphs**                             | Jure Leskovec, Stanford                                 | [CS224W](http://web.stanford.edu/class/cs224w)               | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoROMvodv4rPLKxIpqhjhPgdQy7imNkDn) | W2021 |\n| 15.  | **Geometric Deep Learning** - AMMI                           | Lots of Legends, Virtual                                | [GDL-AMMI](https://geometricdeeplearning.com/lectures)       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLn2-dEmQeTfQ8YVuHBOvAhUlnIPYxkeu3) | 2021  |\n| 16.  | **Summer School on Geometric Deep Learning** -               | Lots of Legends, DTU, DIKU & AAU                        | [GDL- DTU, DIKU & AAU](https://geometric-deep-learning.compute.dtu.dk) | [Lecture-Videos](https://geometric-deep-learning.compute.dtu.dk/talks-and-materials) | 2021  |\n| 17.  | **Graph Neural Networks**                                    | Alejandro Ribeiro, University of Pennsylvania           | [ESE 514](https://gnn.seas.upenn.edu)                        | [YouTube-Lectures](https://www.youtube.com/channel/UC_YPrqpiEqkeGOG1TCt0giQ/playlists) | F2021 |\n|      |                                                              |                                                         |                                                              |                                                              |       |\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents)\n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n### :hibiscus: Natural Language Processing :cherry_blossom: :sparkling_heart: \n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n| S.No | Course Name                                         | University/Instructor(s)                                     | Course WebPage                                               | Lecture Videos                                               | Year      |\n| ---- | --------------------------------------------------- | ------------------------------------------------------------ | ------------------------------------------------------------ | ------------------------------------------------------------ | --------- |\n| 1.   | **Computational Linguistics I**                     | Jordan Boyd-Graber, University of Maryland                   | [CMS-723](http://users.umiacs.umd.edu/~jbg/teaching/CMSC_723/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLegWUnz91WfuPebLI97-WueAP90JO-15i) | 2013-2018 |\n| 2.   | **Deep Learning for Natural Language Processing**   | Nils Reimers, TU Darmstadt                                   | [DL4NLP](https://github.com/UKPLab/deeplearning4nlp-tutorial) | [YouTube-Lectures](https://www.youtube.com/channel/UC1zCuTrfpjT6Sv2kJk-JkvA/videos) | 2015-2017 |\n| 3.   | **Deep Learning for Natural Language Processing**   | Many Legends, DeepMind-Oxford                                | [DL-NLP](http://www.cs.ox.ac.uk/teaching/courses/2016-2017/dl/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL613dYIGMXoZBtZhbyiBqb0QtgK6oJbpm) | 2017      |\n| 4.   | **Deep Learning for Speech & Language**             | UPC Barcelona                                                | [DL-SL](https://telecombcn-dl.github.io/2017-dlsl/)          | [Lecture-Videos](https://telecombcn-dl.github.io/2017-dlsl/) | 2017      |\n| 5.   | **Neural Networks for Natural Language Processing** | Graham Neubig, CMU                                           | [NN4NLP](http://www.phontron.com/class/nn4nlp2017/)   [Code](https://github.com/neubig/nn4nlp-code) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL8PYTP1V4I8ABXzdqtOpB_eqBlVAz_xPT) | 2017      |\n| 6.   | **Neural Networks for Natural Language Processing** | Graham Neubig, CMU                                           | [NN4-NLP](http://www.phontron.com/class/nn4nlp2018/)         | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL8PYTP1V4I8Ba7-rY4FoB4-jfuJ7VDKEE) | 2018      |\n| 7.   | **Deep Learning for NLP**                           | Min-Yen Kan, NUS                                             | [CS-6101](https://www.comp.nus.edu.sg/~kanmy/courses/6101_1810/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLllwxvcS7ca5eD44KTCiT7Rmu_hFAafXB) | 2018      |\n| 8.   | **Neural Networks for Natural Language Processing** | Graham Neubig, CMU                                           | [NN4NLP](http://www.phontron.com/class/nn4nlp2019/)          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL8PYTP1V4I8Ajj7sY6sdtmjgkt7eo2VMs) | 2019      |\n| 9.   | **Natural Language Processing with Deep Learning**  | Abigail See, Chris Manning, Richard Socher, Stanford University | [CS224n](http://web.stanford.edu/class/cs224n/)              | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoROMvodv4rOhcuXMZkNm7j3fVwBBY42z) | 2019      |\n| 10.  | **Natural Language Understanding**                  | Bill MacCartney and Christopher Potts                        | [CS224U](https://web.stanford.edu/class/cs224u)              | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoROMvodv4rObpMCir6rNNUlFAn56Js20) | S2019     |\n|      |                                                     |                                                              |                                                              |                                                              |           |\n| 11.  | **Neural Networks for Natural Language Processing** | Graham Neubig, Carnegie Mellon University                    | [CS 11-747](http://www.phontron.com/class/nn4nlp2020/schedule.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL8PYTP1V4I8CJ7nMxMC8aXv8WqKYwj-aJ) | S2020     |\n| 12.  | **Advanced Natural Language Processing**            | Mohit Iyyer, UMass Amherst                                   | [CS 685](https://people.cs.umass.edu/~miyyer/cs685)          | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLWnsVgP6CzadmQX6qevbar3_vDBioWHJL) | F2020     |\n| 13.  | **Machine Translation**                             | Philipp Koehn, Johns Hopkins University                      | [EN 601.468/668](http://mt-class.org/jhu/syllabus.html)      | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLQrCiUDqDLG0lQX54o9jB4phJ-SLI6ZBQ) | F2020     |\n| 14.  | **Neural Networks for NLP**                         | Graham Neubig, Carnegie Mellon University                    | [CS 11-747](http://www.phontron.com/class/nn4nlp2021)        | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL8PYTP1V4I8AkaHEJ7lOOrlex-pcxS-XV) | 2021      |\n| 15.  | **Deep Learning for Natural Language Processing**   | Kyunghyun Cho, New York University                           | [DS-GA 1011](https://drive.google.com/drive/folders/1ykXBtophaY_65VHK_8yDzZQJwfJDD5Ve) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLdH9u0f1XKW_s-c8EcgJpn_HJz5Jj1IRf) | F2021     |\n| 16.  | **Natural Language Processing with Deep Learning**  | Chris Manning, Stanford University                           | [CS224n](https://web.stanford.edu/class/archive/cs/cs224n/cs224n.1214/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoROMvodv4rOSH4v6133s9LFPRHjEmbmJ) | 2021      |\n|      |                                                     |                                                              |                                                              |                                                              |           |\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents) \n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n###  :speaking_head: Automatic Speech Recognition :speech_balloon: :thought_balloon:\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n| S.No | Course Name                              | University/Instructor(s)       | Course WebPage                                      | Lecture Videos                                               | Year      |\n| ---- | ---------------------------------------- | ------------------------------ | --------------------------------------------------- | ------------------------------------------------------------ | --------- |\n| 1.   | **Deep Learning for Speech & Language**  | UPC Barcelona                  | [DL-SL](https://telecombcn-dl.github.io/2017-dlsl/) | [Lecture-Videos](https://telecombcn-dl.github.io/2017-dlsl/) <br/> [YouTube-Videos](https://www.youtube.com/playlist?list=PL-5DCZHuHZkWeF9ljIjoC_X5gHRLNtIkU) | 2017      |\n| 2.   | **Speech and Audio in the Northeast**    | Many Legends, Google NYC       | [SANE-15](http://www.saneworkshop.org/sane2015/)    | [YouTube-Videos](https://www.youtube.com/playlist?list=PLBJWRPcgwk7sZOB4UTVilWWnRg84L9o5i) | 2015      |\n| 3.   | **Automatic Speech Recognition**         | Samudra Vijaya K, TIFR         | `None`                                              | [YouTube-Videos](https://www.youtube.com/channel/UCHk6uq1Cr9J3k5KNmIsYUNw/videos) | 2016      |\n| 4.   | **Speech and Audio in the Northeast**    | Many Legends, Google NYC       | [SANE-17](http://www.saneworkshop.org/sane2017/)    | [YouTube-Videos](https://www.youtube.com/playlist?list=PLBJWRPcgwk7tNLaBVu_S90ZQSblO3bwjg) | 2017      |\n| 5.   | **Speech and Audio in the Northeast**    | Many Legends, Google Cambridge | [SANE-18](http://www.saneworkshop.org/sane2018/)    | [YouTube-Videos](https://www.youtube.com/playlist?list=PLBJWRPcgwk7sjMANn8jqosyHIMe6DJhmn) | 2018      |\n|      |                                          |                                |                                                     |                                                              |           |\n| -1.  | **Deep Learning for Speech Recognition** | Many Legends, AoE              | `None`                                              | [YouTube-Videos](https://www.youtube.com/playlist?list=PLM4Pv4KYYzGyFYCXV6YPWAKVOR2gmHnQd) | 2015-2018 |\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents) \n\n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n### :fire: Modern Computer Vision :camera_flash: :movie_camera: \n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n| S.No | Course Name                                                  | University/Instructor(s)                               | Course WebPage                                               | Lecture Videos                                               | Year       |\n| ---- | ------------------------------------------------------------ | ------------------------------------------------------ | ------------------------------------------------------------ | ------------------------------------------------------------ | ---------- |\n| 1.   | **Microsoft Computer Vision Summer School** - (classical)    | Lots of Legends, Lomonosov Moscow State University     | `None`                                                       | [YouTube-Videos](https://www.youtube.com/playlist?list=PLbwKcm5vdiSYU54xFUG1zoxQTulqvIcJu) <br> [Russian-mirror](https://www.youtube.com/playlist?list=PL-_cKNuVAYAUp0eCL7KO8QY4ETY3tIDFH) | 2011       |\n| 2.   | **Computer Vision** - (classical)                            | Mubarak Shah, UCF                                      | [CAP-5415](http://crcv.ucf.edu/courses/CAP5415/Fall2012/index.php) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLd3hlSJsX_Imk_BPmB_H3AQjFKZS9XgZm) | 2012       |\n| 3.   | **Image and Multidimensional Signal Processing** - (classical) | William Hoff, Colorado School of Mines                 | [CSCI 510/EENG 510](http://inside.mines.edu/~whoff/courses/EENG510) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLyED3W677ALNv8Htn0f9Xh-AHe1aZPftv) | 2012       |\n| 4.   | **Computer Vision** - (classical)                            | William Hoff, Colorado School of Mines                 | [CSCI 512/EENG 512](http://inside.mines.edu/~whoff/courses/EENG512/index.htm) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL4B3F8D4A5CAD8DA3) | 2012       |\n| 5.   | **Image and Video Processing: From Mars to Hollywood with a Stop at the Hospital** | Guillermo Sapiro, Duke University                      | `None`                                                       | [YouTube-Videos](https://www.youtube.com/playlist?list=PLZ9qNFMHZ-A79y1StvUUqgyL-O0fZh2rs) | 2013       |\n| 6.   | **Multiple View Geometry** (classical)                       | Daniel Cremers, Technische Universität München         | [mvg](https://vision.in.tum.de/teaching/ss2014/mvg2014)      | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLTBdjV_4f-EJn6udZ34tht9EVIW7lbeo4) | 2013       |\n| 7.   | **Mathematical Methods for Robotics, Vision, and Graphics**  | Justin Solomon, Stanford University                    | [CS-205A](http://graphics.stanford.edu/courses/cs205a/)      | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLQ3UicqQtfNvQ_VzflHYKhAqZiTxOkSwi) | 2013       |\n| 8.   | **Computer Vision** - (classical)                            | Mubarak Shah, UCF                                      | [CAP-5415](http://crcv.ucf.edu/courses/CAP5415/Fall2014/index.php) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLd3hlSJsX_ImKP68wfKZJVIPTd8Ie5u-9) | 2014       |\n| 9.   | **Computer Vision for Visual Effects** (classical)           | Rich Radke, Rensselaer Polytechnic Institute           | [ECSE-6969](https://www.ecse.rpi.edu/~rjradke/cvfxcourse.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLuh62Q4Sv7BUJlKlt84HFqSWfW36MDd5a) | S2014      |\n| 10.  | **Autonomous Navigation for Flying Robots**                  | Juergen Sturm, Technische Universität München          | [Autonavx](https://jsturm.de/wp/teaching/autonavx-slides/)   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLTBdjV_4f-EKBCUs1HmMtsnXv4JUoFrzg) | 2014       |\n|      |                                                              |                                                        |                                                              |                                                              |            |\n| 11.  | **SLAM - Mobile Robotics**                                   | Cyrill Stachniss, Universitaet Freiburg                | [RobotMapping](http://ais.informatik.uni-freiburg.de/teaching/ws13/mapping/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgnQpQtFTOGQrZ4O5QzbIHgl3b1JHimN_) | 2014       |\n| 12.  | **Computational Photography**                                | Irfan Essa, David Joyner, Arpan Chakraborty            | [CP-Udacity](https://eu.udacity.com/course/computational-photography--ud955) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLAwxTw4SYaPn-unAWtRMleY4peSe4OzIY) | 2015       |\n| 13.  | **Introduction to Digital Image Processing**                 | Rich Radke, Rensselaer Polytechnic Institute           | [ECSE-4540](https://www.ecse.rpi.edu/~rjradke/improccourse.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLuh62Q4Sv7BUf60vkjePfcOQc8sHxmnDX) | S2015      |\n| 14.  | **Lectures on Digital Photography**                          | Marc Levoy, Stanford/Google Research                   | [LoDP](https://sites.google.com/site/marclevoylectures/)     | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL7ddpXYvFXspUN0N-gObF1GXoCA-DA-7i) | 2016       |\n| 15.  | **Introduction to Computer Vision** (foundation)             | Aaron Bobick, Irfan Essa, Arpan Chakraborty            | [CV-Udacity](https://eu.udacity.com/course/introduction-to-computer-vision--ud810) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLAwxTw4SYaPnbDacyrK_kB_RUkuxQBlCm) | 2016       |\n| 16.  | **Computer Vision**                                          | Syed Afaq Ali Shah, University of Western Australia    | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLvqB6_mDBCdlnT84LK_NvbOqcXLlOTR8j) | 2016       |\n| 17.  | **Photogrammetry I & II**                                    | Cyrill Stachniss, University of Bonn                   | [PG-I&II](https://www.ipb.uni-bonn.de/photogrammetry-i-ii/)  | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgnQpQtFTOGRsi5vzy9PiQpNWHjq-bKN1) | 2016       |\n| 18.  | **Deep Learning for Computer Vision**                        | UPC Barcelona                                          | [DLCV-16](http://imatge-upc.github.io/telecombcn-2016-dlcv/) <br/> [DLCV-17](https://telecombcn-dl.github.io/2017-dlcv/) <br/> [DLCV-18](https://telecombcn-dl.github.io/2018-dlcv/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL-5eMc3HQTBbuaTFP4wsfD2Y2VqEfQcaP) | 2016-2018  |\n| 19.  | **Convolutional Neural Networks**                            | Andrew Ng, Stanford University                         | [DeepLearning.AI](https://www.deeplearning.ai/deep-learning-specialization/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLkDaE6sCZn6Gl29AoE31iwdVwSG-KnDzF) | 2017       |\n| 20.  | **Variational Methods for Computer Vision**                  | Daniel Cremers, Technische Universität München         | [VMCV](https://vision.in.tum.de/teaching/ws2016/vmcv2016)    | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLTBdjV_4f-EJ7A2iIH5L5ztqqrWYjP2RI) | 2017       |\n|      |                                                              |                                                        |                                                              |                                                              |            |\n| 21.  | **Winter School on Computer Vision**                         | Lots of Legends, Israel Institute for Advanced Studies | [WS-CV](http://www.as.huji.ac.il/cse)                        | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLTn74Qx5mPsSniA5tt6W-o0OGYEeKScug) | 2017       |\n| 22.  | **Deep Learning for Visual Computing**                       | Debdoot Sheet, IIT-Kgp                                 | [Nptel](https://onlinecourses.nptel.ac.in/noc18_ee08/preview)  [Notebooks](https://github.com/iitkliv/dlvcnptel) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLuv3GM6-gsE1Biyakccxb3FAn4wBLyfWf) | 2018       |\n| 23.  | **The Ancient Secrets of Computer Vision**                   | Joseph Redmon, Ali Farhadi                             | [TASCV](https://pjreddie.com/courses/computer-vision/) ; [TASCV-UW](https://courses.cs.washington.edu/courses/cse455/18sp/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLjMXczUzEYcHvw5YYSU92WrY8IwhTuq7p) | 2018       |\n| 24.  | **Modern Robotics**                                          | Kevin Lynch, Northwestern Robotics                     | [modern-robot](http://hades.mech.northwestern.edu/index.php/Modern_Robotics) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLggLP4f-rq02vX0OQQ5vrCxbJrzamYDfx) | 2018       |\n| 25.  | **Digial Image Processing**                                  | Alex Bronstein, Technion                               | [CS236860](https://vistalab-technion.github.io/cs236860/info/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLM0a6Z788YAZOxUyWda9y3N_i2upIj1Ep) | 2018       |\n| 26.  | **Mathematics of Imaging** - Variational Methods and Optimization in Imaging | Lots of Legends, Institut Henri Poincaré               | [Workshop-1](http://www.ihp.fr/sites/default/files/conf1-04_au_08_fevr-imaging2019.pdf) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL9kd4mpdvWcAzD5Aq-P1TrLLiYckrloxw) | 2019       |\n| 27.  | **Deep Learning for Video**                                  | Xavier Giró, UPC Barcelona                             | [deepvideo](https://mcv-m6-video.github.io/deepvideo-2019/)  | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL-5eMc3HQTBbPY-627Gornj09pZrNQgPD) | 2019       |\n| 28.  | **Statistical modeling for shapes and imaging**              | Lots of Legends, Institut Henri Poincaré, Paris        | [workshop-2](https://imaging-in-paris.github.io/semester2019/workshop2prog) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL9kd4mpdvWcAzD5Aq-P1TrLLiYckrloxw) | 2019       |\n| 29.  | **Imaging and machine learning**                             | Lots of Legends, Institut Henri Poincaré, Paris        | [workshop-3](https://imaging-in-paris.github.io/semester2019/workshop3prog) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL9kd4mpdvWcAzD5Aq-P1TrLLiYckrloxw) | 2019       |\n| 30.  | **Computer Vision**                                          | Jayanta Mukhopadhyay, IIT Kgp                          | [CV-nptel](https://nptel.ac.in/courses/106/105/106105216/)   | [YouTube-Lectures](https://nptel.ac.in/courses/106/105/106105216/) | 2019       |\n|      |                                                              |                                                        |                                                              |                                                              |            |\n| 31.  | **Deep Learning for Computer Vision**                        | Justin Johnson, UMichigan                              | [EECS 498-007](https://web.eecs.umich.edu/~justincj/teaching/eecs498/) | [Lecture-Videos](http://leccap.engin.umich.edu/leccap/site/jhygcph151x25gjj1f0) <br/> [YouTube-Lectures](https://www.youtube.com/playlist?list=PL5-TkQAfAZFbzxjBHtzdVCWE0Zbhomg7r) | 2019       |\n| 32.  | **Sensors and State Estimation 2**                           | Cyrill Stachniss, University of Bonn                   | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgnQpQtFTOGQh_J16IMwDlji18SWQ2PZ6) | S2020      |\n| 33.  | **Computer Vision III: Detection, Segmentation and Tracking** | Laura Leal-Taixé, TU München                           | [CV3DST](https://dvl.in.tum.de/teaching/cv3dst-ss20/)        | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLog3nOPCjKBneGyffEktlXXMfv1OtKmCs) | S2020      |\n| 34.  | **Advanced Deep Learning for Computer Vision**               | Laura Leal-Taixé and Matthias Nießner, TU München      | [ADL4CV](https://dvl.in.tum.de/teaching/adl4cv-ss20)         | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLog3nOPCjKBnjhuHMIXu4ISE4Z4f2jm39) | S2020      |\n| 35.  | **Computer Vision: Foundations**                             | Fred Hamprecht, Universität Heidelberg                 | [CVF](https://hci.iwr.uni-heidelberg.de/ial/cvf)             | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLuRaSnb3n4kRAbnmiyGd77hyoGzO9wPde) | SS2020     |\n| 36.  | **MIT Vision Seminar**                                       | Lots of Legends, MIT                                   | [MIT-Vision](https://sites.google.com/view/visionseminar/past-talks) | [YouTube-Lectures](https://www.youtube.com/channel/UCLMiFkFyfcNnZs6iwYLPI9g/videos) | 2015-now   |\n| 37.  | **TUM AI Guest Lectures**                                    | Lots of Legends, Technische Universität München        | [TUM-AI](https://niessner.github.io/TUM-AI-Lecture-Series)   | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLQ8Y4kIIbzy8kMlz7cRqz-BjbdyWsfLXt) | 2020 - now |\n| 38.  | **Seminar on 3D Geometry & Vision**                          | Lots of Legends, Virtual                               | [3DGV seminar](https://3dgv.github.io)                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLZk0jtN0g8e-xVTfsiV67q8Iz1cZO_FpV) | 2020 - now |\n| 39.  | **Event-based Robot Vision**                                 | Guillermo Gallego, Technische Universität Berlin       | [EVIS-SS20](https://sites.google.com/view/guillermogallego/teaching/event-based-robot-vision) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL03Gm3nZjVgUFYUh3v5x8jVonjrGfcal8) | 2020 - now |\n| 40.  | **Deep Learning for Computer Vision**                        | Vineeth Balasubramanian, IIT Hyderabad                 | [DL-CV'20](https://onlinecourses.nptel.ac.in/noc20_cs88/preview) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLyqSpQzTE6M_PI-rIz4O1jEgffhJU9GgG) | 2020       |\n|      |                                                              |                                                        |                                                              |                                                              |            |\n| 41.  | **Deep Learning for Visual Computing**                       | Peter Wonka, KAUST, SA                                 | `NOne`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLMpQLEui13s2DHbw6kTTxwQma8rehlfZE) | 2020       |\n| 42.  | **Computer Vision**                                          | Yogesh Rawat, University of Central Florida            | [CAP5415-CV](https://www.crcv.ucf.edu/courses/cap5415-fall-2020/schedule/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLd3hlSJsX_Ikm5il1HgmDB_z62BeoikFX) | F2020      |\n| 43.  | **Multimedia Signal Processing**                             | Mark Hasegawa-Johnson, UIUC                            | [ECE-417 MSP](https://courses.engr.illinois.edu/ece417/fa2020/) | [Lecture Videos](https://mediaspace.illinois.edu/channel/ECE%20417/26816181) | F2020      |\n| 44.  | **Computer Vision**                                          | Andreas Geiger, Universität Tübingen                   | [Comp.Vis](https://uni-tuebingen.de/fakultaeten/mathematisch-naturwissenschaftliche-fakultaet/fachbereiche/informatik/lehrstuehle/autonomous-vision/lectures/computer-vision/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL05umP7R6ij35L2MHGzis8AEHz7mg381_) | S2021      |\n| 45.  | **3D Computer Vision**                                       | Lee Gim Hee, National Univeristy of Singapura          | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLxg0CGqViygP47ERvqHw_v7FVnUovJeaz) | 2021       |\n| 46.  | **Deep Learning for Computer Vision: Fundamentals and Applications** | T. Dekel et al., Weizmann Institute of Science         | [DL4CV](https://dl4cv.github.io/schedule.html)               | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL_Z2_U9MIJdNgFM7-f2fZ9ZxjVRP_jhJv) | S2021      |\n| 47.  | **Current Topics in ML Methods in 3D and Geometric Deep Learning** | Animesh Garg  & others, University of Toronto          | [CSC 2547](http://www.pair.toronto.edu/csc2547-w21)          | [YouTube-Lectures](https://www.youtube.com/channel/UCrsmAXnwu6sgccWevW12Dfg/videos) | 2021       |\n| 48.  | **First Principles of Computer Vision**                      | Shree K. Nayar, Columbia University                    | [FPCV](https://fpcv.cs.columbia.edu)                         | [YouTube-Lectures](https://www.youtube.com/channel/UCf0WB91t8Ky6AuYcQV0CcLw/videos) | 2021       |\n| 49.  | **Self-Driving Cars**                                        | Andreas Geiger, Universität Tübingen                   | [SDC'21](https://uni-tuebingen.de/de/123611)                 | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL05umP7R6ij321zzKXK6XCQXAaaYjQbzr) | W2021      |\n|      |                                                              |                                                        |                                                              |                                                              |            |\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents) \n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n### :star2: Boot Camps or Summer Schools :maple_leaf:\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n| S.No | Course Name                                             | University/Instructor(s)                                 | Course WebPage                                               | Lecture Videos                                               | Year      |\n| ---- | ------------------------------------------------------- | -------------------------------------------------------- | ------------------------------------------------------------ | ------------------------------------------------------------ | --------- |\n| 1.   | **Deep Learning, Feature Learning**                     | Lots of Legends, IPAM UCLA                               | [GSS-2012](https://www.ipam.ucla.edu/programs/summer-schools/graduate-summer-school-deep-learning-feature-learning/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLHyI3Fbmv0SdzMHAy0aN59oYnLy5vyyTA) | 2012      |\n| 2.   | **Big Data Boot Camp**                                  | Lots of Legends, Simons Institute                    | [Big Data](https://simons.berkeley.edu/workshops/schedule/316) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgKuh-lKre13RmUC2AybRvVAxO5DEMIBH) | 2013      |\n| 3. | **Machine Learning Summer School** | Lots of Legends, MPI-IS Tübingen | [MLSS-13](http://mlss.tuebingen.mpg.de/2013/2013/index.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLqJm7Rc5-EXFv6RXaPZzzlzo93Hl0v91E) | 2013 |\n| 4 | **Graduate Summer School: Computer Vision** | Lots of Legends, IPAM-UCLA | [GSS-CV](http://www.ipam.ucla.edu/programs/summer-schools/graduate-summer-school-computer-vision/) | [Video-Lectures](http://www.ipam.ucla.edu/programs/summer-schools/graduate-summer-school-computer-vision/?tab=schedule) | 2013 |\n| 5. | **Machine Learning Summer School** | Lots of Legends, Reykjavik University | [MLSS-14](http://mlss2014.hiit.fi/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLqdbxUnkqOw2nKn7VxYqIrKWcqRkQYOsF) | 2014 |\n| 6. | **Machine Learning Summer School** | Lots of Legends, Pittsburgh | [MLSS-14](http://www.mlss2014.com) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLZSO_6-bSqHQCIYxE3ycGLXHMjK3XV7Iz) | 2014 |\n| 7. | **Deep Learning Summer School** | Lots of Legends, Université de Montréal | [DLSS-15](https://sites.google.com/site/deeplearningsummerschool/home) | [YouTube-Lectures](http://videolectures.net/deeplearning2015_montreal/) | 2015 |\n| 8. | **Biomedical Image Analysis Summer School** | Lots of Legends, CentraleSupelec, Paris | `None` | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgSHH6boFf5uJAUT4ZRiAZc_ofXolkAGK) | 2015 |\n| 9. | **Mathematics of Signal Processing**                    | Lots of Legends, Hausdorff Institute for Mathematics | [SigProc](http://www.him.uni-bonn.de/signal-processing-2016/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLul8LCT3AJqSQo3lr5RbwxJ92RsgRuDtx) | 2016      |\n| 10. | **Microsoft Research - Machine Learning Course**        | S V N Vishwanathan and Prateek Jain MS-Research          | `None`                                                       | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL34iyE0uXtxo7vPXGFkmm6KbgZQwjf9Kf) | 2016      |\n|  |  |  |  |  |  |\n| 11. | **Deep Learning Summer School**                         | Lots of Legends, Université de Montréal                  | [DL-SS-16](https://sites.google.com/site/deeplearningsummerschool2016/home) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL5bqIc6XopCbb-FvnHmD1neVlQKwGzQyR) | 2016      |\n| 12. | **Lisbon Machine Learning School** | Lots of Legends, Instituto Superior Técnico, Portugal | [LxMLS-16](http://lxmls.it.pt/2016/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLToLj8M4ao-fymxXBIOU6sF1NGFLb5EiX) | 2016 |\n| 13. | **Machine Learning Advances and Applications Seminar**  | Lots of Legends, Fields Institute, University of Toronto | [MLAAS-16](http://www.fields.utoronto.ca/activities/16-17/machine-learning) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLfsVAYSMwskuQcRkuDApP40lX_i08d0QK) <br/> [Video-Lectures](http://www.fields.utoronto.ca/video-archive/event/2267) | 2016-2017 |\n| 14. | **Machine Learning Advances and Applications Seminar**  | Lots of Legends, Fields Institute, University of Toronto | [MLAAS-17](http://www.fields.utoronto.ca/activities/17-18/machine-learning) | [Video Lectures](http://www.fields.utoronto.ca/video-archive/event/2487) | 2017-2018 |\n| 15. | **Machine Learning Summer School** | Lots of Legends, MPI-IS Tübingen | [MLSS-17](http://mlss.tuebingen.mpg.de/2017/index.html) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLqJm7Rc5-EXFUOvoYCdKikfck8YeUCnl9) | 2017 |\n| 16. | **Representation Learning**                             | Lots of Legends, Simons Institute                    | [RepLearn](https://simons.berkeley.edu/workshops/abstracts/3750) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgKuh-lKre13UNV4ztsWUXciUZ7x_ZDHz) | 2017      |\n| 17. | **Foundations of Machine Learning**                     | Lots of Legends, Simons Institute                  | [ML-BootCamp](https://simons.berkeley.edu/workshops/abstracts/3748) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgKuh-lKre11GbZWneln-VZDLHyejO7YD) | 2017      |\n| 18. | **Optimization, Statistics, and Uncertainty**           | Lots of Legends, Simons Institute                    | [Optim-Stats](https://simons.berkeley.edu/workshops/abstracts/4795) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgKuh-lKre13ACD44z2FH-IVP1e8ip5JO) | 2017      |\n| 19. | **Deep Learning: Theory, Algorithms, and Applications** | Lots of Legends, TU-Berlin                         | [DL: TAA](http://doc.ml.tu-berlin.de/dlworkshop2017/)        | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLJOzdkh8T5kqCNV_v1w2tapvtJDZYiohW) | 2017      |\n| 20. | **Deep Learning and Reinforcement Learning Summer School** | Lots of Legends, Université de Montréal                                   | [DLRL-2017](https://mila.quebec/en/cours/deep-learning-summer-school-2017/)   | [Lecture-videos](http://videolectures.net/deeplearning2017_montreal/)          | 2017 |\n|  |  |  |  |  |  |\n| 21. | **Statistical Physics Methods in Machine Learning** | Lots of Legends, International Centre for Theoretical Sciences, TIFR | [SPMML](https://www.icts.res.in/discussion-meeting/SPMML2017) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL04QVxpjcnjhtL3IIVyFRMOgdhWtPn7YJ) | 2017 |\n| 22. | **Lisbon Machine Learning School** | Lots of Legends, Instituto Superior Técnico, Portugal | [LxMLS-17](http://lxmls.it.pt/2017/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLToLj8M4ao-fuRfnzEJCCnvuW2_FeJ73N) | 2017 |\n| 23. | **Interactive Learning** | Lots of Legends, Simons Institute, Berkeley | [IL-2017](https://simons.berkeley.edu/workshops/schedule/3749) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgKuh-lKre10T2POF-WzXh0ckdpyvANUx) | 2017 |\n| 24. | **Computational Challenges in Machine Learning** | Lots of Legends, Simons Institute, Berkeley | [CCML-17](https://simons.berkeley.edu/workshops/schedule/3751) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgKuh-lKre12eXz4dnvc8oervo2_Af4iU) | 2017 |\n| 25. | **Foundations of Data Science**                         | Lots of Legends, Simons Institute                   | [DS-BootCamp](https://simons.berkeley.edu/workshops/abstracts/6680) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgKuh-lKre13r1Qrnrejj3f498-NurSf3) | 2018      |\n| 26. | **Deep Learning and Bayesian Methods**           | Lots of Legends, HSE Moscow                          | [DLBM-SS](http://deepbayes.ru/2018/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLe5rNUydzV9Q01vWCP9BV7NhJG3j7mz62) | 2018      |\n| 27. | **New Deep Learning Techniques**                        | Lots of Legends, IPAM UCLA                           | [IPAM-Workshop](https://www.ipam.ucla.edu/programs/workshops/new-deep-learning-techniques/?tab=schedule) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLHyI3Fbmv0SdM0zXj31HWjG9t9Q0v2xYN) | 2018      |\n| 28. | **Deep Learning and Reinforcement Learning Summer School** | Lots of Legends, University of Toronto | [DLRL-2018](https://dlrlsummerschool.ca/2018-event/) | [Lecture-videos](http://videolectures.net/DLRLsummerschool2018_toronto/) | 2018 |\n| 29. | **Machine Learning Summer School** | Lots of Legends, Universidad Autónoma de Madrid, Spain | [MLSS-18](http://mlss.ii.uam.es/mlss2018/index.html) | [YouTube-Lectures](https://www.youtube.com/channel/UCbPJHr__eIor_7jFH3HmVHQ/videos) <br/> [Course-videos](http://mlss.ii.uam.es/mlss2018/speakers.html) | 2018 |\n| 30. | **Theoretical Basis of Machine Learning** | Lots of Legends, International Centre for Theoretical Sciences, TIFR | [TBML-18](https://www.icts.res.in/discussion-meeting/tbml2018) | [Lecture-Videos](https://www.icts.res.in/discussion-meeting/tbml2018/talks) <br/> [YouTube-Videos](https://www.youtube.com/playlist?list=PL04QVxpjcnjj1DgnXxFBo2fkSju4r-ggr) | 2018 |\n|  |  |  |  |  |  |\n| 31. | **Polish View on Machine Learning** | Lots of Legends, Warsaw | [PLinML-18](https://plinml.mimuw.edu.pl/) | [YouTube-Videos](https://www.youtube.com/playlist?list=PLoaWrlj9TDhPcA6N9dZQ6GPXboYuumDRp) | 2018 |\n| 32. | **Big Data Analysis in Astronomy** | Lots of Legends, Tenerife | [BDAA-18](http://research.iac.es/winterschool/2018/pages/book-ws2018.php) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLM4Pv4KYYzGx42W5pSp3Itetp0u-PENtI) | 2018 |\n| 33. | **Machine Learning Advances and Applications Seminar**  | Lots of Legends, Fields Institute, University of Toronto | [MLASS](http://www.fields.utoronto.ca/activities/18-19/machine-learning) | [Video Lectures](http://www.fields.utoronto.ca/video-archive/event/2681) | 2018-2019 |\n| 34. | **MIFODS- ML, Stats, ToC seminar**                      | Lots of Legends, MIT                                     | [MIFODS-seminar](http://mifods.mit.edu/seminar.php)          | [Lecture-videos](http://mifods.mit.edu/seminar.php)          | 2018-2019 |\n| 35. | **Learning Machines Seminar Series** | Lots of Legends, Cornell Tech | [LMSS](https://lmss.tech.cornell.edu/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLycW2Yy79JuxbQZ9uHEu_NS3cGNomhL2A) | 2018-now |\n| 36. | **Machine Learning Summer School** | Lots of Legends, South Africa | [MLSS'19](https://mlssafrica.com/programme-schedule/) | [YouTube-Lectures](https://www.youtube.com/channel/UC722CmQVgcLtxt_jXr3RyWg/videos) | 2019 |\n| 37. | **Deep Learning Boot Camp** | Lots of Legends, Simons Institute, Berkeley | [DLBC-19](https://simons.berkeley.edu/workshops/schedule/10624) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgKuh-lKre12c2Il9mNX0Cmp9Z4oFNrQh) | 2019 |\n| 38. | **Frontiers of Deep Learning** | Lots of Legends, Simons Institute, Berkeley | [FoDL-19](https://simons.berkeley.edu/workshops/schedule/10627) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgKuh-lKre11ekU7g-Z_qsvjDD8cT-hi9) | 2019 |\n| 39. | **Mathematics of data: Structured representations for sensing, approximation and learning** | Lots of Legends, The Alan Turing Institute, London | [MoD-19](https://www.turing.ac.uk/sites/default/files/2019-05/agenda_9_3.pdf) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLuD_SqLtxSdX_w1Ztexpzl_EJgFQSkWez) | 2019 |\n| 40. | **Deep Learning and Bayesian Methods** | Lots of Legends, HSE Moscow | [DLBM-SS](http://deepbayes.ru/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLe5rNUydzV9QHe8VDStpU0o8Yp63OecdW) | 2019 |\n|  |  |  |  |  |  |\n| 41. | **The Mathematics of Deep Learning and Data Science** | Lots of Legends, Isaac Newton Institute, Cambridge | [MoDL-DS](https://gateway.newton.ac.uk/event/ofbw46) | [Lecture-Videos](https://gateway.newton.ac.uk/event/ofbw46/programme) | 2019 |\n| 42. | **Geometry of Deep Learning** | Lots of Legends, MSR Redmond | [GoDL](https://www.microsoft.com/en-us/research/event/ai-institute-2019) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLD7HFcN7LXRe30qq36It2XCljxc340O_d) | 2019 |\n| 43. | **Deep Learning for Science School** | Many folks, LBNL, Berkeley | [DLfSS](https://dl4sci-school.lbl.gov/agenda) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL20S5EeApOSvfvEyhCPOUzU7zkBcR5-eL) | 2019 |\n| 44. | **Emerging Challenges in Deep Learning** | Lots of Legends, Simons Institute, Berkeley | [ECDL](https://simons.berkeley.edu/workshops/schedule/10629) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLgKuh-lKre10BpafDrv0fg2VNUweWXWVd) | 2019 |\n| 45. | **Full Stack Deep Learning** | Pieter Abbeel and many others, UC Berkeley | [FSDL-M19](https://fullstackdeeplearning.com/march2019) | [YouTube-Lectures-Day-1](https://www.youtube.com/playlist?list=PL1T8fO7ArWlcf3Hc4VMEVBlH8HZm_NbeB) <br/> [Day-2](https://www.youtube.com/playlist?list=PL1T8fO7ArWlf6TWwdstb-PcwlubnlrKrm) | 2019 |\n| 46. | **Algorithmic and Theoretical aspects of Machine Learning** | Lots of legends, IIIT-Bengaluru | [ACM-ML](https://india.acm.org/education/machine-learning) <br/> [nptel](https://nptel.ac.in/courses/128/106/128106011/) | [YouTube-Lectures](https://nptel.ac.in/courses/128/106/128106011) | 2019 |\n| 47. | **Deep Learning and Reinforcement Learning Summer School** | Lots of Legends, AMII, Edmonton, Canada | [DLRL-2019](https://dlrlsummerschool.ca/past-years) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLKlhhkvvU8-aXmPQZNYG_e-2nTd0tJE8v) | 2019 |\n| 48. | **Mathematics of Machine Learning** - Summer Graduate School | Lots of Legends, University of Washington | [MoML-SGS](http://www.msri.org/summer_schools/866#schedule), [MoML-SS](http://mathofml.cs.washington.edu/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLTPQEx-31JXhguCush5J7OGnEORofoCW9) | 2019 |\n| 49. | **Workshop on Theory of Deep Learning: Where next?** | Lots of Legends, IAS, Princeton University | [WTDL](https://www.math.ias.edu/wtdl) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLdDZb3TwJPZ5dqqg_S-rgJqSFeH4DQqFQ) | 2019 |\n| 50. | **Computational Vision Summer School** | Lots of Legends, Black Forest, Germany | [CVSS-2019](http://orga.cvss.cc/program-cvss-2019/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLeCNfJWZKqxsvidOlVLtWq9s7sIsX1QTC) | 2019 |\n| | | | | | |\n| 51. | **Learning under complex structure** | Lots of Legends, MIT | [LUCS](https://mifods.mit.edu/complex.php) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLM4Pv4KYYzGwhIHcaY6zYR7M9hhFO4Vud) | 2020 |\n| 52. | **Machine Learning Summer School** | Lots of Legends, MPI-IS Tübingen (virtual) | [MLSS](http://mlss.tuebingen.mpg.de/2020/schedule.html) | [YouTube-Lectures](https://www.youtube.com/channel/UCBOgpkDhQuYeVVjuzS5Wtxw/videos) | SS2020 |\n| 53. | **Eastern European Machine Learning Summer School** | Lots of Legends, Kraków, Poland (virtual) | [EEML](https://www.eeml.eu/program) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLaKY4p4V3gE1j01FOY2FeglV4jRntQj84) | S2020 |\n| 54. | **Lisbon Machine Learning Summer School** | Lots of Legends, Lisbon, Portugal (virtual) | [LxMLS](http://lxmls.it.pt/2020/?page_id=19) | [YouTube-Lectures](https://www.youtube.com/channel/UCkVFZWgT1jR75UvSLGP9_mw) | S2020 |\n| 55. | **Workshop on New Directions in Optimization, Statistics and Machine Learning** | Lots of Legends,  Institute of Advanced Study, Princeton | [ML-Opt new dir.](https://www.ias.edu/video/workshop/2020/0415-16) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLdDZb3TwJPZ4Ri6i0MIdesIEpYK4lx17Q) | 2020 |\n| 56. | **Mediterranean Machine Learning School** | Lots of Legends, Italy (virtual) | [M2L-school](https://www.m2lschool.org/talks) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLF-wkqRv4u1YRbfnwN8cXXyrmXld-sked) | 2021 |\n| 57. | **Mathematics of Machine Learning - One World Seminar** | Lots of Legends, Virtual | [1W-ML](https://sites.google.com/view/oneworldml/past-events) | [YouTube-Lectures](https://www.youtube.com/channel/UCz7WlgXs20CzugkfxhFCNFg/videos) | 2020 - now |\n| 58. | **Deep Learning Theory Summer School** | Lots of Legends, Princeton University (virtual) | [DLT'21](https://deep-learning-summer-school.princeton.edu) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PL2mB9GGlueJj_FNjJ8RWgz4Nc_hCSXfMU) | 2021 |\n| | | | | | |\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents)\n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n### :bird: Bird's Eye view of A(G)I :eagle:\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n| S.No | Course Name                            | University/Instructor(s)                                 | Course WebPage                                               | Lecture Videos                                               | Year      |\n| ---- | -------------------------------------- | -------------------------------------------------------- | ------------------------------------------------------------ | ------------------------------------------------------------ | --------- |\n| 1.   | **Artificial General Intelligence**    | Lots of Legends, MIT                                     | [6.S099-AGI](https://agi.mit.edu/)                           | [Lecture-Videos](https://agi.mit.edu/)                       | 2018-2019 |\n| 2.   | **AI Podcast**                         | Lots of Legends, MIT                                     | [AI-Pod](https://lexfridman.com/ai/)                         | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLrAXtmErZgOdP_8GztsuKi9nrraNbKKp4) | 2018-2019 |\n| 3.   | **NYU - AI Seminars**                  | Lots of Legends, NYU                                     | [modern-AI](https://engineering.nyu.edu/academics/departments/electrical-and-computer-engineering/ece-seminar-series/modern-artificial) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLhwo5ntex8iY9xhpSwWas451NgVuqBE7U) | 2017-now  |\n| 4.   | **Deep Learning: Alchemy or Science?** | Lots of Legends, Institute for Advanced Study, Princeton | [DLAS](https://video.ias.edu/deeplearning/2019/0222) <br/> [Agenda](https://www.math.ias.edu/tml/dlasagenda) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLdDZb3TwJPZ7aAxhIHALBoh8l6-UxmMNP) | 2019      |\n|      |                                        |                                                          |                                                              |                                                              |           |\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents)\n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n### To-Do :running:\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n:white_large_square: Optimization courses which form the foundation for ML, DL, RL\n\n:white_large_square: Computer Vision courses which are DL & ML heavy\n\n:white_large_square: Speech recognition courses which are DL heavy\n\n:white_large_square: Structured Courses on Geometric, Graph Neural Networks\n\n:white_large_square: Section on Autonomous Vehicles\n\n:white_large_square: Section on Computer Graphics with ML/DL focus\n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n[Go to Contents :arrow_heading_up:](https://github.com/kmario23/deep-learning-drizzle#contents) \n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n\n### Around the Web :earth_asia:\n\n - [Montreal.AI](http://www.montreal.ai/ai4all.pdf)\n - [UPC-DLAI-2018](https://telecombcn-dl.github.io/2018-dlai/)\n - [UPC-DLAI-2019](https://telecombcn-dl.github.io/dlai-2019/)\n - [www.hashtagtechgeek.com](https://www.hashtagtechgeek.com/2019/10/250-machine-learning-deep-learning-videos-courseware.html)\n - [UPC-Barcelona, IDL-2020](https://telecombcn-dl.github.io/idl-2020/) \n - [UPC-DLAI-2020](https://telecombcn-dl.github.io/dlai-2020) \n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n\n### Contributions :pray:\n\nIf you find a course that fits in any of the above categories (i.e. DL, ML, RL, CV, NLP), **and** the course has lecture videos (with slides being optional), then please raise an issue or send a PR by updating the course according to the above format.\n\n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n\n### Support :moneybag:\n\n**Optional:** If you're a kind Samaritan and want to support me, please do so if possible, for which I would eternally be thankful and, most importantly, your contribution imbues me with greater motivation to work, particularly in hard times :pray:\n\n[![](https://www.paypalobjects.com/en_US/i/btn/btn_donateCC_LG.gif)](https://www.paypal.com/cgi-bin/webscr?cmd=_s-xclick&hosted_button_id=NT3EATS5N35WU)\n\n\nVielen lieben Dank! :blue_heart: \n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n###  :gift_heart: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board::mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board::mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :mortar_board: :gift_heart: \n\n:heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign::heavy_minus_sign:\n\n"
  },
  {
    "path": "markdown2html_py/fontawesome-animations.txt",
    "content": "BEG: <i class='fab fa-jedi-order faa-pulse animated' style='font-size:40px;color:saddlebrown'></i> &nbsp;\nEND: &nbsp; <i class='fas fa-cloud-rain faa-passing animated' style='font-size:33px;color:dodgerblue'></i> <i class='fas fa-cloud-showers-heavy faa-passing animated' style='font-size:33px;color:dodgerblue'></i> <i class='fas fa-cloud-showers-heavy faa-passing animated' style='font-size:33px;color:dodgerblue'></i>\n"
  },
  {
    "path": "markdown2html_py/html_foot.txt",
    "content": "\n<a href=\"https://github.com/kmario23/deep-learning-drizzle\" class=\"github\">\n   <img style=\"position: absolute; top: 0; right: 0; border: 0;\" src=\"https://s3.amazonaws.com/github/ribbons/forkme_right_darkblue_121621.png\" alt=\"Fork me on GitHub\"  class=\"github\"/>\n</a>\n\n</body>\n<hr style=\"background-color:#E02461\">\n\n<p class=\"text_center\">\n   <!-- to get the counts, watch, and forks from github repository, using http://ghbtns.com/ -->\n    <iframe src=\"https://ghbtns.com/github-btn.html?user=kmario23&repo=deep-learning-drizzle&type=star&count=true\" frameborder=\"0\" scrolling=\"0\" width=\"110px\" height=\"17px\"></iframe>\n    Made with <i class='fas fa-heart faa-pulse faa-fast animated' style='font-size:23px;color:crimson'></i> and maintained by \n    <a href=\"https://github.com/kmario23\" style=\"text-decoration:none\"> @kmario23</a>, <b>S</b>aarland <b>I</b>nformatics <b>C</b>ampus &nbsp;\n    <iframe src=\"https://ghbtns.com/github-btn.html?user=kmario23&repo=deep-learning-drizzle&type=fork&count=true\" frameborder=\"0\" scrolling=\"0\" width=\"110px\" height=\"17px\"></iframe> \n<iframe src=\"https://ghbtns.com/github-btn.html?user=kmario23&repo=deep-learning-drizzle&type=watch&count=true&v=2\" frameborder=\"0\" scrolling=\"0\" width=\"110px\" height=\"17px\"></iframe>\n</p>\n\n</html>\n"
  },
  {
    "path": "markdown2html_py/html_head.txt",
    "content": "<!doctype html>\n\n<html lang=\"en\">\n\n<head>\n  <meta charset=\"utf-8\">\n  <meta name=\"viewport\" content=\"width=device-width, initial-scale=1, shrink-to-fit=no\">\n  <link href=\"https://afeld.github.io/emoji-css/emoji.css\" rel=\"stylesheet\">\n  <link href=\"https://emoji.tryhtml.org/emoji.css\" rel=\"stylesheet\">\n\n  <script src='https://kit.fontawesome.com/a076d05399.js'></script>\n  <!-- fontawesome animation (local copy)-->\n  <link href=\"./font-awesome/css/font-awesome-animation.min.css\" rel=\"stylesheet\">\n\n  <title>Deep Learning Drizzle</title>\n  <style>\n    h1{\n       text-align: center;\n    }\n\n    body{\n         background-color: #E5E0DF;\n    }\n    .heart{\n           color:#e25555;\n          }\n    .text_center {text-align: center;}\n\n    hr{\n       height: 2px;\n       color: #DBA345;\n       background-color: #DBA345;\n       border: none;\n     }\n\n   /* DIV ids for all tables' title */\n   #contents {color: red;}\n\n   .centerTable { margin: 0px auto; }\n\n   /* table of contents table*/\n   #toc {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 50%;  /* adjust table width */\n   }\n   #toc td, #toc th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #toc tr:nth-child(even){background-color: #f5f5f5;}\n   #toc tr:hover {background-color: #539a9a;}\n   #toc th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n\n   /* deep learning or deep neural networks table */\n   #dldnn {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 100%;  /* adjust table width */\n   }\n   #dldnn td, #dldnn th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #dldnn tr:nth-child(even){background-color: #f5f5f5;}\n   #dldnn tr:hover {background-color: #539a9a;}\n   #dldnn th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n\n  /* Machine Learning fundamentals table */\n   #mlfund {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 100%;  /* adjust table width */\n   }\n   #mlfund td, #mlfund th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #mlfund tr:nth-child(even){background-color: #f5f5f5;}\n   #mlfund tr:hover {background-color: #539a9a;}\n   #mlfund th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n  /* Optimization for Machine Learning table */\n   #opt4ml {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 100%;  /* adjust table width */\n   }\n   #opt4ml td, #opt4ml th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #opt4ml tr:nth-child(even){background-color: #f5f5f5;}\n   #opt4ml tr:hover {background-color: #539a9a;}\n   #opt4ml th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n\n  /* General Machine Learning table */\n   #genml {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 100%;  /* adjust table width */\n   }\n   #genml td, #genml th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #genml tr:nth-child(even){background-color: #f5f5f5;}\n   #genml tr:hover {background-color: #539a9a;}\n   #genml th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n\n  /* Reinforcement Learning table */\n   #reinf {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 100%;  /* adjust table width */\n   }\n   #reinf td, #reinf th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #reinf tr:nth-child(even){background-color: #f5f5f5;}\n   #reinf tr:hover {background-color: #539a9a;}\n   #reinf th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n\n  /* Bayesian Deep Learning table */\n   #bayesdl {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 100%;  /* adjust table width */\n   }\n   #bayesdl td, #bayesdl th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #bayesdl tr:nth-child(even){background-color: #f5f5f5;}\n   #bayesdl tr:hover {background-color: #539a9a;}\n   #bayesdl th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n\n  /* Medical Imaging table */\n   #medimg {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 100%;  /* adjust table width */\n   }\n   #medimg td, #medimg th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #medimg tr:nth-child(even){background-color: #f5f5f5;}\n   #medimg tr:hover {background-color: #539a9a;}\n   #medimg th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n\n\n  /* Probabilistic Graphical Models */\n   #probgm {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 100%;  /* adjust table width */\n   }\n   #probgm td, #probgm th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #probgm tr:nth-child(even){background-color: #f5f5f5;}\n   #probgm tr:hover {background-color: #539a9a;}\n   #probgm th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n  /* Graph Neural Networks */\n   #graphnn {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 100%;  /* adjust table width */\n   }\n   #graphnn td, #graphnn th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #graphnn tr:nth-child(even){background-color: #f5f5f5;}\n   #graphnn tr:hover {background-color: #539a9a;}\n   #graphnn th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n  /* Natural Language Processing */\n  #nlpnn {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 100%;  /* adjust table width */\n   }\n   #nlpnn td, #nlpnn th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #nlpnn tr:nth-child(even){background-color: #f5f5f5;}\n   #nlpnn tr:hover {background-color: #539a9a;}\n   #nlpnn th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n  /* Automatic Speech Recognition */\n  #asrnn {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 100%;  /* adjust table width */\n   }\n   #asrnn td, #asrnn th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #asrnn tr:nth-child(even){background-color: #f5f5f5;}\n   #asrnn tr:hover {background-color: #539a9a;}\n   #asrnn th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n  /* Modern Computer Vision */\n  #cvnn {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 100%;  /* adjust table width */\n   }\n   #cvnn td, #cvnn th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #cvnn tr:nth-child(even){background-color: #f5f5f5;}\n   #cvnn tr:hover {background-color: #539a9a;}\n   #cvnn th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n  /* Boot Camps or Summer Schools */\n  #bcss {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 100%;  /* adjust table width */\n   }\n   #bcss td, #bcss th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #bcss tr:nth-child(even){background-color: #f5f5f5;}\n   #bcss tr:hover {background-color: #539a9a;}\n   #bcss th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n  /* Bird's Eye-view of A(G)I */\n  #aginn {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 100%;  /* adjust table width */\n   }\n   #aginn td, #aginn th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #aginn tr:nth-child(even){background-color: #f5f5f5;}\n   #aginn tr:hover {background-color: #539a9a;}\n   #aginn th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n</style>\n\n</head>\n\n<body>\n\n"
  },
  {
    "path": "markdown2html_py/index.html",
    "content": "<!doctype html>\n\n<html lang=\"en\">\n\n<head>\n  <meta charset=\"utf-8\">\n  <meta name=\"viewport\" content=\"width=device-width, initial-scale=1, shrink-to-fit=no\">\n  <link href=\"https://afeld.github.io/emoji-css/emoji.css\" rel=\"stylesheet\">\n  <link href=\"https://emoji.tryhtml.org/emoji.css\" rel=\"stylesheet\">\n\n  <script src='https://kit.fontawesome.com/a076d05399.js'></script>\n  <!-- fontawesome animation (local copy)-->\n  <link href=\"./font-awesome/css/font-awesome-animation.min.css\" rel=\"stylesheet\">\n\n  <title>Deep Learning Drizzle</title>\n  <style>\n    h1{\n       text-align: center;\n    }\n\n    body{\n         background-color: #E5E0DF;\n    }\n    .heart{\n           color:#e25555;\n          }\n    .text_center {text-align: center;}\n\n    hr{\n       height: 2px;\n       color: #DBA345;\n       background-color: #DBA345;\n       border: none;\n     }\n\n   /* DIV ids for all tables' title */\n   #contents {color: red;}\n\n   .centerTable { margin: 0px auto; }\n\n   /* table of contents table*/\n   #toc {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 50%;  /* adjust table width */\n   }\n   #toc td, #toc th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #toc tr:nth-child(even){background-color: #f5f5f5;}\n   #toc tr:hover {background-color: #539a9a;}\n   #toc th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n\n   /* deep learning or deep neural networks table */\n   #dldnn {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 100%;  /* adjust table width */\n   }\n   #dldnn td, #dldnn th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #dldnn tr:nth-child(even){background-color: #f5f5f5;}\n   #dldnn tr:hover {background-color: #539a9a;}\n   #dldnn th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n\n  /* Machine Learning fundamentals table */\n   #mlfund {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 100%;  /* adjust table width */\n   }\n   #mlfund td, #mlfund th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #mlfund tr:nth-child(even){background-color: #f5f5f5;}\n   #mlfund tr:hover {background-color: #539a9a;}\n   #mlfund th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n  /* Optimization for Machine Learning table */\n   #opt4ml {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 100%;  /* adjust table width */\n   }\n   #opt4ml td, #opt4ml th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #opt4ml tr:nth-child(even){background-color: #f5f5f5;}\n   #opt4ml tr:hover {background-color: #539a9a;}\n   #opt4ml th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n\n  /* General Machine Learning table */\n   #genml {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 100%;  /* adjust table width */\n   }\n   #genml td, #genml th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #genml tr:nth-child(even){background-color: #f5f5f5;}\n   #genml tr:hover {background-color: #539a9a;}\n   #genml th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n\n  /* Reinforcement Learning table */\n   #reinf {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 100%;  /* adjust table width */\n   }\n   #reinf td, #reinf th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #reinf tr:nth-child(even){background-color: #f5f5f5;}\n   #reinf tr:hover {background-color: #539a9a;}\n   #reinf th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n\n  /* Bayesian Deep Learning table */\n   #bayesdl {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 100%;  /* adjust table width */\n   }\n   #bayesdl td, #bayesdl th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #bayesdl tr:nth-child(even){background-color: #f5f5f5;}\n   #bayesdl tr:hover {background-color: #539a9a;}\n   #bayesdl th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n\n  /* Medical Imaging table */\n   #medimg {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 100%;  /* adjust table width */\n   }\n   #medimg td, #medimg th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #medimg tr:nth-child(even){background-color: #f5f5f5;}\n   #medimg tr:hover {background-color: #539a9a;}\n   #medimg th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n\n\n  /* Probabilistic Graphical Models */\n   #probgm {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 100%;  /* adjust table width */\n   }\n   #probgm td, #probgm th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #probgm tr:nth-child(even){background-color: #f5f5f5;}\n   #probgm tr:hover {background-color: #539a9a;}\n   #probgm th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n  /* Graph Neural Networks */\n   #graphnn {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 100%;  /* adjust table width */\n   }\n   #graphnn td, #graphnn th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #graphnn tr:nth-child(even){background-color: #f5f5f5;}\n   #graphnn tr:hover {background-color: #539a9a;}\n   #graphnn th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n  /* Natural Language Processing */\n  #nlpnn {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 100%;  /* adjust table width */\n   }\n   #nlpnn td, #nlpnn th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #nlpnn tr:nth-child(even){background-color: #f5f5f5;}\n   #nlpnn tr:hover {background-color: #539a9a;}\n   #nlpnn th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n  /* Automatic Speech Recognition */\n  #asrnn {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 100%;  /* adjust table width */\n   }\n   #asrnn td, #asrnn th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #asrnn tr:nth-child(even){background-color: #f5f5f5;}\n   #asrnn tr:hover {background-color: #539a9a;}\n   #asrnn th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n  /* Modern Computer Vision */\n  #cvnn {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 100%;  /* adjust table width */\n   }\n   #cvnn td, #cvnn th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #cvnn tr:nth-child(even){background-color: #f5f5f5;}\n   #cvnn tr:hover {background-color: #539a9a;}\n   #cvnn th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n  /* Boot Camps or Summer Schools */\n  #bcss {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 100%;  /* adjust table width */\n   }\n   #bcss td, #bcss th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #bcss tr:nth-child(even){background-color: #f5f5f5;}\n   #bcss tr:hover {background-color: #539a9a;}\n   #bcss th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n  /* Bird's Eye-view of A(G)I */\n  #aginn {\n         font-family: \"Trebuchet MS\", Arial, Helvetica, sans-serif;\n         border-collapse: collapse;\n         width: 100%;  /* adjust table width */\n   }\n   #aginn td, #aginn th {\n                     border: 1px solid black; \n                     padding: 5px 10px 5px 20px;  /* top, right, bottom, left */\n                     text-align: left;\n   }\n   #aginn tr:nth-child(even){background-color: #f5f5f5;}\n   #aginn tr:hover {background-color: #539a9a;}\n   #aginn th {\n            padding-top: 12px;\n            padding-bottom: 12px;\n            text-align: center;\n            background-color: #539a9a;\n            color: white;\n   }\n\n</style>\n\n</head>\n\n<body>\n\n<h1> <i class='fab fa-jedi-order faa-pulse animated' style='font-size:40px;color:saddlebrown'></i> &nbsp;Deep Learning Drizzle &nbsp; <i class='fas fa-cloud-rain faa-passing animated' style='font-size:33px;color:dodgerblue'></i> <i class='fas fa-cloud-showers-heavy faa-passing animated' style='font-size:33px;color:dodgerblue'></i> <i class='fas fa-cloud-showers-heavy faa-passing animated' style='font-size:33px;color:dodgerblue'></i> </h1><hr><p style=\"text-align:center\"><i class=\"em em-books\"></i> <a href=\"https://www.deeplearning.ai/hodl-geoffrey-hinton/ \"style=\"text-decoration:none\"><strong>\"Read enough so you start developing intuitions and then trust your intuitions and go for it!\"</strong> </a> <i class=\"em em-books\"></i>  ​<br/>  Prof. Geoffrey Hinton, University of Toronto\n</p><div id=\"contents\"> <a href=\"index.html#contents\" style=\"text-decoration:none\"><h2>Contents\n </h2></a> </div><table id=\"toc\" class=\"centerTable\">\n<thead>\n<tr>\n<th></th>\n<th></th>\n</tr>\n</thead>\n<tbody>\n<tr>\n<td><strong>Deep Learning (Deep Neural Networks)</strong>  <a href=\"https://deep-learning-drizzle.github.io/index.html#dldnn\"><i class=\"em em-arrow_heading_down\"></i></a></td>\n<td><strong>Probabilistic Graphical Models</strong>  <a href=\"https://deep-learning-drizzle.github.io/index.html#probgm\"><i class=\"em em-arrow_heading_down\"></i></a></td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td><strong>Machine Learning Fundamentals</strong>  <a href=\"https://deep-learning-drizzle.github.io/index.html#mlfund\"><i class=\"em em-arrow_heading_down\"></i></a></td>\n<td><strong>Natural Language Processing</strong>  <a href=\"https://deep-learning-drizzle.github.io/index.html#nlpnn\"><i class=\"em em-arrow_heading_down\"></i></a></td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td><strong>Optimization for Machine Learning</strong>  <a href=\"https://deep-learning-drizzle.github.io/index.html#opt4ml\"><i class=\"em em-arrow_heading_down\"></i></a></td>\n<td><strong>Automatic Speech Recognition</strong> <a href=\"https://deep-learning-drizzle.github.io/index.html#asrnn\"><i class=\"em em-arrow_heading_down\"></i></a></td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td><strong>General Machine Learning</strong>  <a href=\"https://deep-learning-drizzle.github.io/index.html#genml\"><i class=\"em em-arrow_heading_down\"></i></a></td>\n<td><strong>Modern Computer Vision</strong> <a href=\"https://deep-learning-drizzle.github.io/index.html#cvnn\"><i class=\"em em-arrow_heading_down\"></i></a></td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td><strong>Reinforcement Learning</strong>  <a href=\"https://deep-learning-drizzle.github.io/index.html#reinf\"><i class=\"em em-arrow_heading_down\"></i></a></td>\n<td><strong>Boot Camps or Summer Schools</strong> <a href=\"https://deep-learning-drizzle.github.io/index.html#bcss\"><i class=\"em em-arrow_heading_down\"></i></a></td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td><strong>Bayesian Deep Learning</strong> <a href=\"https://deep-learning-drizzle.github.io/index.html#bayesdl\"><i class=\"em em-arrow_heading_down\"></i></a></td>\n<td><strong>Medical Imaging</strong> <a href=\"https://deep-learning-drizzle.github.io/index.html#medimg\"><i class=\"em em-arrow_heading_down\"></i></a></td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td><strong>Graph Neural Networks</strong> <a href=\"https://deep-learning-drizzle.github.io/index.html#graphnn\"><i class=\"em em-arrow_heading_down\"></i> </a></td>\n<td><strong>Bird's-eye view of Artificial Intelligence</strong> <a href=\"https://deep-learning-drizzle.github.io/index.html#aginn\"><i class=\"em em-arrow_heading_down\"></i></a></td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n</tr>\n</tbody>\n</table><br/> <br/><hr><a href=\"index.html#dldnn\" style=\"text-decoration:none\"><h2>Deep Learning (Deep Neural Networks) </h2></a><table id=\"dldnn\" style=\"text-decoration:none\">\n<thead>\n<tr>\n<th>S.No</th>\n<th>Course Name</th>\n<th>University/Instructor(s)</th>\n<th>Course WebPage</th>\n<th>Lecture Videos</th>\n<th>Year</th>\n</tr>\n</thead>\n<tbody>\n<tr>\n<td>1.</td>\n<td><strong>Neural Networks for Machine Learning</strong></td>\n<td>Geoffrey Hinton, University of Toronto</td>\n<td><a href=\"http://www.cs.toronto.edu/~hinton/coursera_slides.html\" style=\"text-decoration:none\">Lecture-Slides</a> <br/> <a href=\"https://www.cs.toronto.edu/~tijmen/csc321/\" style=\"text-decoration:none\">CSC321-tijmen</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLoRl3Ht4JOcdU872GhiYWf6jwrk_SNhz9\" style=\"text-decoration:none\">YouTube-Lectures</a> <br/> <a href=\"https://www.cs.toronto.edu/~hinton/coursera_lectures.html\" style=\"text-decoration:none\">UofT-mirror</a></td>\n<td>2012 <br/> 2014</td>\n</tr>\n<tr>\n<td>2.</td>\n<td><strong>Neural Networks Demystified</strong></td>\n<td>Stephen Welch, Welch Labs</td>\n<td><a href=\"https://github.com/stephencwelch/Neural-Networks-Demystified\" style=\"text-decoration:none\">Suppl. Code</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLiaHhY2iBX9hdHaRr6b7XevZtgZRa1PoU\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2014</td>\n</tr>\n<tr>\n<td>3.</td>\n<td><strong>Deep Learning at Oxford</strong></td>\n<td>Nando de Freitas, Oxford University</td>\n<td><a href=\"http://www.cs.ox.ac.uk/teaching/courses/2014-2015/ml/\" style=\"text-decoration:none\">Oxford-ML</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLE6Wd9FR--EfW8dtjAuPoTuPcqmOV53Fu\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2015</td>\n</tr>\n<tr>\n<td>4.</td>\n<td><strong>Deep Learning for Perception</strong></td>\n<td>Dhruv Batra, Virginia Tech</td>\n<td><a href=\"https://computing.ece.vt.edu/~f15ece6504/\" style=\"text-decoration:none\">ECE-6504</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL-fZD610i7yAsfH2eLBiRDa90kL2ML0f7\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2015</td>\n</tr>\n<tr>\n<td>5.</td>\n<td><strong>Deep Learning</strong></td>\n<td>Ali Ghodsi, University of Waterloo</td>\n<td><a href=\"https://uwaterloo.ca/data-analytics/deep-learning\" style=\"text-decoration:none\">STAT-946</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLehuLRPyt1Hyi78UOkMPWCGRxGcA9NVOE\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2015</td>\n</tr>\n<tr>\n<td>6.</td>\n<td><strong>CS231n: CNNs for Visual Recognition</strong></td>\n<td>Andrej Karpathy, Stanford University</td>\n<td><a href=\"http://cs231n.stanford.edu/2015/\" style=\"text-decoration:none\">CS231n</a></td>\n<td><code>None</code></td>\n<td>2015</td>\n</tr>\n<tr>\n<td>7.</td>\n<td><strong>CS224d: Deep Learning for NLP</strong></td>\n<td>Richard Socher, Stanford University</td>\n<td><a href=\"http://cs224d.stanford.edu\" style=\"text-decoration:none\">CS224d</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLmImxx8Char8dxWB9LRqdpCTmewaml96q\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2015</td>\n</tr>\n<tr>\n<td>8.</td>\n<td><strong>Bay Area Deep Learning</strong></td>\n<td>Many legends, Stanford</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLrAXtmErZgOfMuxkACrYnD2fTgbzk2THW\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2016</td>\n</tr>\n<tr>\n<td>9.</td>\n<td><strong>CS231n: CNNs for Visual Recognition</strong></td>\n<td>Andrej Karpathy, Stanford University</td>\n<td><a href=\"http://cs231n.stanford.edu/2016/\" style=\"text-decoration:none\">CS231n</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLkt2uSq6rBVctENoVBg1TpCC7OQi31AlC\" style=\"text-decoration:none\">YouTube-Lectures</a> <br/><a href=\"https://academictorrents.com/details/46c5af9e2075d9af06f280b55b65cf9b44eb9fe7\" style=\"text-decoration:none\">(Academic Torrent)</a></td>\n<td>2016</td>\n</tr>\n<tr>\n<td>10.</td>\n<td><strong>Neural Networks</strong></td>\n<td>Hugo Larochelle, Université de Sherbrooke</td>\n<td><a href=\"http://info.usherbrooke.ca/hlarochelle/neural_networks/content.html\" style=\"text-decoration:none\">Neural-Networks</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL6Xpj9I5qXYEcOhn7TqghAJ6NAPrNmUBH\" style=\"text-decoration:none\">YouTube-Lectures</a> <br/> <a href=\"https://academictorrents.com/details/e046bca3bc837053d1609ef33d623ee5c5af7300\" style=\"text-decoration:none\">(Academic Torrent)</a></td>\n<td>2016</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>11.</td>\n<td><strong>CS224d: Deep Learning for NLP</strong></td>\n<td>Richard Socher, Stanford University</td>\n<td><a href=\"http://cs224d.stanford.edu\" style=\"text-decoration:none\">CS224d</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLlJy-eBtNFt4CSVWYqscHDdP58M3zFHIG\" style=\"text-decoration:none\">YouTube-Lectures</a> <br/><a href=\"https://academictorrents.com/details/dd9b74b50a1292b4b154094b7338ec1d66e8894d\" style=\"text-decoration:none\">(Academic Torrent)</a></td>\n<td>2016</td>\n</tr>\n<tr>\n<td>12.</td>\n<td><strong>CS224n: NLP with Deep Learning</strong></td>\n<td>Richard Socher, Stanford University</td>\n<td><a href=\"http://web.stanford.edu/class/cs224n/\" style=\"text-decoration:none\">CS224n</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL3FW7Lu3i5Jsnh1rnUwq_TcylNr7EkRe6\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>13.</td>\n<td><strong>CS231n: CNNs for Visual Recognition</strong></td>\n<td>Justin Johnson, Stanford University</td>\n<td><a href=\"http://cs231n.stanford.edu/2017/\" style=\"text-decoration:none\">CS231n</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL3FW7Lu3i5JvHM8ljYj-zLfQRF3EO8sYv\" style=\"text-decoration:none\">YouTube-Lectures</a> <br/> <a href=\"https://academictorrents.com/details/ed8a16ebb346e14119a03371665306609e485f13\" style=\"text-decoration:none\">(Academic Torrent)</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>14.</td>\n<td><strong>Topics in Deep Learning</strong></td>\n<td>Ruslan Salakhutdinov, CMU</td>\n<td><a href=\"https://deeplearning-cmu-10707.github.io/\" style=\"text-decoration:none\">10707</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLpIxOj-HnDsOSL__Buy7_UEVQkyfhHapa\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2017</td>\n</tr>\n<tr>\n<td>15.</td>\n<td><strong>Deep Learning Crash Course</strong></td>\n<td>Leo Isikdogan, UT Austin</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLWKotBjTDoLj3rXBL-nEIPRN9V3a9Cx07\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>16.</td>\n<td><strong>Deep Learning and its Applications</strong></td>\n<td>François Pitié, Trinity College Dublin</td>\n<td><a href=\"https://github.com/frcs/4C16-2017\" style=\"text-decoration:none\">EE4C16</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLIo1iEzl5iB9NkulNR0X5vXN8AaEKglWT\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>17.</td>\n<td><strong>Deep Learning</strong></td>\n<td>Andrew Ng, Stanford University</td>\n<td><a href=\"http://cs230.stanford.edu/\" style=\"text-decoration:none\">CS230</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLoROMvodv4rOABXSygHTsbvUz4G_YQhOb\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>18.</td>\n<td><strong>UvA Deep Learning</strong></td>\n<td>Efstratios Gavves, University of Amsterdam</td>\n<td><a href=\"https://uvadlc.github.io/\" style=\"text-decoration:none\">UvA-DLC</a></td>\n<td><a href=\"https://uvadlc.github.io/lectures-sep2018.html\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>19.</td>\n<td><strong>Advanced Deep Learning and Reinforcement Learning</strong></td>\n<td>Many legends, DeepMind</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLqYmG7hTraZDNJre23vqCGIVpfZ_K2RZs\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>20.</td>\n<td><strong>Machine Learning</strong></td>\n<td>Peter Bloem, Vrije Universiteit Amsterdam</td>\n<td><a href=\"https://mlvu.github.io/\" style=\"text-decoration:none\">MLVU</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLCof9EqayQgsORO3pFzeYZFz6cszYO0VJ\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>21.</td>\n<td><strong>Deep Learning</strong></td>\n<td>Francois Fleuret, EPFL</td>\n<td><a href=\"https://fleuret.org/ee559-2018/dlc\" style=\"text-decoration:none\">EE-59</a></td>\n<td><a href=\"https://fleuret.org/ee559-2018/dlc/#materials\" style=\"text-decoration:none\">Video-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>22.</td>\n<td><strong>Introduction to Deep Learning</strong></td>\n<td>Alexander Amini, Harini Suresh and others, MIT</td>\n<td><a href=\"http://introtodeeplearning.com/\" style=\"text-decoration:none\">6.S191</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLtBw6njQRU-rwp5__7C0oIVt26ZgjG9NI\" style=\"text-decoration:none\">YouTube-Lectures</a> <br/> <a href=\"https://www.youtube.com/playlist?list=PLkkuNyzb8LmxFutYuPA7B4oiMn6cjD6Rs\" style=\"text-decoration:none\">2017-version</a></td>\n<td>2017- 2021</td>\n</tr>\n<tr>\n<td>23.</td>\n<td><strong>Deep Learning for Self-Driving Cars</strong></td>\n<td>Lex Fridman, MIT</td>\n<td><a href=\"https://selfdrivingcars.mit.edu/\" style=\"text-decoration:none\">6.S094</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLrAXtmErZgOeiKm4sgNOknGvNjby9efdf\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017-2018</td>\n</tr>\n<tr>\n<td>24.</td>\n<td><strong>Introduction to Deep Learning</strong></td>\n<td>Bhiksha Raj and many others, CMU</td>\n<td><a href=\"http://deeplearning.cs.cmu.edu/\" style=\"text-decoration:none\">11-485/785</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLp-0K3kfddPwJBJ4Q8We-0yNQEG0fZrSa\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2018</td>\n</tr>\n<tr>\n<td>25.</td>\n<td><strong>Introduction to Deep Learning</strong></td>\n<td>Bhiksha Raj and many others, CMU</td>\n<td><a href=\"http://deeplearning.cs.cmu.edu/\" style=\"text-decoration:none\">11-485/785</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLp-0K3kfddPyH44FP0dl0CbYprvTcfgOI\" style=\"text-decoration:none\">YouTube-Lectures</a>   <a href=\"https://www.youtube.com/playlist?list=PLLR0_ZOlbfD6KDBq93G8-guHI-J1ICeFm\" style=\"text-decoration:none\">Recitation-Inclusive</a></td>\n<td>F2018</td>\n</tr>\n<tr>\n<td>26.</td>\n<td><strong>Deep Learning Specialization</strong></td>\n<td>Andrew Ng, Stanford</td>\n<td><a href=\"https://www.deeplearning.ai/deep-learning-specialization/\" style=\"text-decoration:none\">DL.AI</a></td>\n<td><a href=\"https://www.youtube.com/channel/UCcIXc5mJsHVYTZR1maL5l9w/playlists\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017-2018</td>\n</tr>\n<tr>\n<td>27.</td>\n<td><strong>Deep Learning</strong></td>\n<td>Ali Ghodsi, University of Waterloo</td>\n<td><a href=\"https://uwaterloo.ca/data-analytics/teaching/deep-learning-2017\" style=\"text-decoration:none\">STAT-946</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLehuLRPyt1HxTolYUWeyyIoxDabDmaOSB\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2017</td>\n</tr>\n<tr>\n<td>28.</td>\n<td><strong>Deep Learning</strong></td>\n<td>Mitesh Khapra, IIT-Madras</td>\n<td><a href=\"https://www.cse.iitm.ac.in/~miteshk/CS7015.html\" style=\"text-decoration:none\">CS7015</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLyqSpQzTE6M9gCgajvQbc68Hk_JKGBAYT\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>29.</td>\n<td><strong>Deep Learning for AI</strong></td>\n<td>UPC Barcelona</td>\n<td><a href=\"https://telecombcn-dl.github.io/2017-dlai/\" style=\"text-decoration:none\">DLAI-2017</a> <br/> <a href=\"https://telecombcn-dl.github.io/2018-dlai/\" style=\"text-decoration:none\">DLAI-2018</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL-5eMc3HQTBagIUjKefjcTbnXC0wXC_vd\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017-2018</td>\n</tr>\n<tr>\n<td>30.</td>\n<td><strong>Deep Learning</strong></td>\n<td>Alex Bronstein and Avi Mendelson, Technion</td>\n<td><a href=\"https://vistalab-technion.github.io/cs236605/info/\" style=\"text-decoration:none\">CS236605</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLM0a6Z788YAZuqg2Ip-_dPLzEd33lZvP2\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>31.</td>\n<td><strong>MIT Deep Learning</strong></td>\n<td>Many Researchers,  Lex Fridman, MIT</td>\n<td><a href=\"https://deeplearning.mit.edu/\" style=\"text-decoration:none\">6.S094, 6.S091, 6.S093</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLrAXtmErZgOeiKm4sgNOknGvNjby9efdf\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>32.</td>\n<td><strong>Deep Learning Book</strong> companion videos</td>\n<td>Ian Goodfellow and others</td>\n<td><a href=\"https://www.deeplearningbook.org/lecture_slides.html\" style=\"text-decoration:none\">DL-book slides</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLsXu9MHQGs8df5A4PzQGw-kfviylC-R9b\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>33.</td>\n<td><strong>Theories of Deep Learning</strong></td>\n<td>Many Legends, Stanford</td>\n<td><a href=\"https://stats385.github.io/\" style=\"text-decoration:none\">Stats-385</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLwUqqMt5en7fFLwSDa9V3JIkDam-WWgqy\" style=\"text-decoration:none\">YouTube-Lectures</a> <br/> (first 10 lectures)</td>\n<td>F2017</td>\n</tr>\n<tr>\n<td>34.</td>\n<td><strong>Neural Networks</strong></td>\n<td>Grant Sanderson</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLZHQObOWTQDNU6R1_67000Dx_ZCJB-3pi\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017-2018</td>\n</tr>\n<tr>\n<td>35.</td>\n<td><strong>CS230: Deep Learning</strong></td>\n<td>Andrew Ng, Kian Katanforoosh, Stanford</td>\n<td><a href=\"http://cs230.stanford.edu/\" style=\"text-decoration:none\">CS230</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLoROMvodv4rOABXSygHTsbvUz4G_YQhOb\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>A2018</td>\n</tr>\n<tr>\n<td>36.</td>\n<td><strong>Theory of Deep Learning</strong></td>\n<td>Lots of Legends, Canary Islands</td>\n<td><a href=\"http://dalimeeting.org/dali2018/workshopTheoryDL.html\" style=\"text-decoration:none\">DALI'18</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLeCNfJWZKqxtWBnV8gefGqmmPgz9YF4LR\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>37.</td>\n<td><strong>Introduction to Deep Learning</strong></td>\n<td>Alex Smola, UC Berkeley</td>\n<td><a href=\"http://courses.d2l.ai/berkeley-stat-157/index.html\" style=\"text-decoration:none\">Stat-157</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLZSO_6-bSqHQHBCoGaObUljoXAyyqhpFW\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2019</td>\n</tr>\n<tr>\n<td>38.</td>\n<td><strong>Deep Unsupervised Learning</strong></td>\n<td>Pieter Abbeel, UC Berkeley</td>\n<td><a href=\"https://sites.google.com/view/berkeley-cs294-158-sp19/home\" style=\"text-decoration:none\">CS294-158</a></td>\n<td><a href=\"https://www.youtube.com/channel/UCf4SX8kAZM_oGcZjMREsU9w/videos\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2019</td>\n</tr>\n<tr>\n<td>39.</td>\n<td><strong>Machine Learning</strong></td>\n<td>Peter Bloem, Vrije Universiteit Amsterdam</td>\n<td><a href=\"https://mlvu.github.io/\" style=\"text-decoration:none\">MLVU</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLCof9EqayQgupldnTvqNy_BThTcME5r93\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>40.</td>\n<td><strong>Deep Learning on Computational Accelerators</strong></td>\n<td>Alex Bronstein and Avi Mendelson, Technion</td>\n<td><a href=\"https://vistalab-technion.github.io/cs236605/lectures/\" style=\"text-decoration:none\">CS236605</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLM0a6Z788YAa_WCy_V-q9NrGm5qQegZR5\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2019</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>41.</td>\n<td><strong>Introduction to Deep Learning</strong></td>\n<td>Bhiksha Raj and many others, CMU</td>\n<td><a href=\"http://www.cs.cmu.edu/~bhiksha/courses/deeplearning/Spring.2019/www\" style=\"text-decoration:none\">11-785</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLp-0K3kfddPzNdZPX4p0lVi6AcDXBofuf\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2019</td>\n</tr>\n<tr>\n<td>42.</td>\n<td><strong>Introduction to Deep Learning</strong></td>\n<td>Bhiksha Raj and many others, CMU</td>\n<td><a href=\"https://www.cs.cmu.edu/~bhiksha/courses/deeplearning/Fall.2019/www\" style=\"text-decoration:none\">11-785</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLp-0K3kfddPwz13VqV1PaMXF6V6dYdEsj\" style=\"text-decoration:none\">YouTube-Lectures</a> <br> <a href=\"https://www.youtube.com/playlist?list=PLp-0K3kfddPxf4T59JEQKv5UanLPVsxzz\" style=\"text-decoration:none\">Recitations</a></td>\n<td>F2019</td>\n</tr>\n<tr>\n<td>43.</td>\n<td><strong>UvA Deep Learning</strong></td>\n<td>Efstratios Gavves, University of Amsterdam</td>\n<td><a href=\"https://uvadlc.github.io/\" style=\"text-decoration:none\">UvA-DLC</a></td>\n<td><a href=\"https://uvadlc.github.io/lectures-apr2019.html\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>S2019</td>\n</tr>\n<tr>\n<td>44.</td>\n<td><strong>Deep Learning</strong></td>\n<td>Prabir Kumar Biswas, IIT Kgp</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLbRMhDVUMngc7NM-gDwcBzIYZNFSK2N1a\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>45.</td>\n<td><strong>Deep Learning and its Applications</strong></td>\n<td>Aditya Nigam, IIT Mandi</td>\n<td><a href=\"http://faculty.iitmandi.ac.in/~aditya/cs671/index.html\" style=\"text-decoration:none\">CS-671</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLKvX2d3IUq586Ic9gIhZj6ubpWV-OJfl4\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>46.</td>\n<td><strong>Neural Networks</strong></td>\n<td>Neil Rhodes, Harvey Mudd College</td>\n<td><a href=\"https://www.cs.hmc.edu/~rhodes/cs152/schedule.html\" style=\"text-decoration:none\">CS-152</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLgEuVSRbAI9UIQSHGy4l01laA_12YOqEj\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2019</td>\n</tr>\n<tr>\n<td>47.</td>\n<td><strong>Deep Learning</strong></td>\n<td>Thomas Hofmann, ETH Zürich</td>\n<td><a href=\"http://www.da.inf.ethz.ch/teaching/2019/DeepLearning\" style=\"text-decoration:none\">DAL-DL</a></td>\n<td><a href=\"https://video.ethz.ch/lectures/d-infk/2019/autumn/263-3210-00L.html\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>F2019</td>\n</tr>\n<tr>\n<td>48.</td>\n<td><strong>Deep Learning</strong></td>\n<td>Milan Straka, Charles University</td>\n<td><a href=\"https://ufal.mff.cuni.cz/courses/npfl114\" style=\"text-decoration:none\">NPFL114</a></td>\n<td><a href=\"https://ufal.mff.cuni.cz/courses/npfl114/1718-summer\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>S2019</td>\n</tr>\n<tr>\n<td>49.</td>\n<td><strong>UvA Deep Learning</strong></td>\n<td>Efstratios Gavves, University of Amsterdam</td>\n<td><a href=\"https://uvadlc.github.io/#lectures\" style=\"text-decoration:none\">UvA-DLC-19</a></td>\n<td><a href=\"https://uvadlc.github.io/#lectures\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>F2019</td>\n</tr>\n<tr>\n<td>50.</td>\n<td><strong>Artificial Intelligence: Principles and Techniques</strong></td>\n<td>Percy Liang and Dorsa Sadigh, Stanford University</td>\n<td><a href=\"https://stanford-cs221.github.io/autumn2019/\" style=\"text-decoration:none\">CS221</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLoROMvodv4rO1NB9TD4iUZ3qghGEGtqNX\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2019</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>51.</td>\n<td><strong>Analyses of Deep Learning</strong></td>\n<td>Lots of Legends, Stanford University</td>\n<td><a href=\"https://stats385.github.io/\" style=\"text-decoration:none\">STATS-385</a></td>\n<td><a href=\"https://stats385.github.io/lecture_videos\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017-2019</td>\n</tr>\n<tr>\n<td>52.</td>\n<td><strong>Deep Learning Foundations and Applications</strong></td>\n<td>Debdoot Sheet and Sudeshna Sarkar, IIT-Kgp</td>\n<td><a href=\"http://www.facweb.iitkgp.ac.in/~debdoot/courses/AI61002/Spr2020\" style=\"text-decoration:none\">AI61002</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL_AdDfjIMo6pZfwjZ0rJlkE_MIsmRW7Mh\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2020</td>\n</tr>\n<tr>\n<td>53.</td>\n<td><strong>Designing, Visualizing, and Understanding Deep Neural Networks</strong></td>\n<td>John Canny, UC Berkeley</td>\n<td><a href=\"https://bcourses.berkeley.edu/courses/1487769/pages/cs-l-w-182-slash-282a-designing-visualizing-and-understanding-deep-neural-networks-spring-2020\" style=\"text-decoration:none\">CS 182/282A</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLkFD6_40KJIwaO6Eca8kzsEFBob0nFvwm\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2020</td>\n</tr>\n<tr>\n<td>54.</td>\n<td><strong>Deep Learning</strong></td>\n<td>Yann LeCun and Alfredo Canziani, NYU</td>\n<td><a href=\"https://atcold.github.io/pytorch-Deep-Learning/\" style=\"text-decoration:none\">DS-GA 1008</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLLHTzKZzVU9eaEyErdV26ikyolxOsz6mq\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2020</td>\n</tr>\n<tr>\n<td>55.</td>\n<td><strong>Introduction to Deep Learning</strong></td>\n<td>Bhiksha Raj, CMU</td>\n<td><a href=\"https://deeplearning.cs.cmu.edu/\" style=\"text-decoration:none\">11-785</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLp-0K3kfddPzCnS4CqKphh-zT3aDwybDe\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2020</td>\n</tr>\n<tr>\n<td>56.</td>\n<td><strong>Deep Unsupervised Learning</strong></td>\n<td>Pieter Abbeel, UC Berkeley</td>\n<td><a href=\"https://sites.google.com/view/berkeley-cs294-158-sp20\" style=\"text-decoration:none\">CS294-158</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLwRJQ4m4UJjPiJP3691u-qWwPGVKzSlNP\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2020</td>\n</tr>\n<tr>\n<td>57.</td>\n<td><strong>Machine Learning</strong></td>\n<td>Peter Bloem, Vrije Universiteit Amsterdam</td>\n<td><a href=\"https://mlvu.github.io/\" style=\"text-decoration:none\">VUML</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLCof9EqayQgthR7IViXkAkUwel_rhxGYM\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2020</td>\n</tr>\n<tr>\n<td>58.</td>\n<td><strong>Deep Learning (with PyTorch)</strong></td>\n<td>Alfredo Canziani and Yann LeCun, NYU</td>\n<td><a href=\"https://atcold.github.io/pytorch-Deep-Learning/\" style=\"text-decoration:none\">DS-GA 1008</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLLHTzKZzVU9eaEyErdV26ikyolxOsz6mq\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2020</td>\n</tr>\n<tr>\n<td>59.</td>\n<td><strong>Introduction to Deep Learning and Generative Models</strong></td>\n<td>Sebastian Raschka, UW-Madison</td>\n<td><a href=\"http://pages.stat.wisc.edu/~sraschka/teaching/stat453-ss2020/\" style=\"text-decoration:none\">Stat453</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLTKMiZHVd_2JkR6QtQEnml7swCnFBtq4P\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2020</td>\n</tr>\n<tr>\n<td>60.</td>\n<td><strong>Deep Learning</strong></td>\n<td>Andreas Maier, FAU Erlangen-Nürnberg</td>\n<td><a href=\"https://www.video.uni-erlangen.de/course/id/925\" style=\"text-decoration:none\">DL-2020</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLpOGQvPCDQzvgpD3S0vTy7bJe2pf_yJFj\" style=\"text-decoration:none\">YouTube-Lectures</a> <br/><a href=\"https://www.video.uni-erlangen.de/course/id/925\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>SS2020</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>61.</td>\n<td><strong>Introduction to Deep Learning</strong></td>\n<td>Laura Leal-Taixé and Matthias Niessner, TU-München</td>\n<td><a href=\"https://dvl.in.tum.de/teaching/i2dl-ss20/\" style=\"text-decoration:none\">I2DL-IN2346</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLQ8Y4kIIbzy_OaXv86lfbQwPHSomk2o2e\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>SS2020</td>\n</tr>\n<tr>\n<td>62.</td>\n<td><strong>Deep Learning</strong></td>\n<td>Sargur Srihari, SUNY-Buffalo</td>\n<td><a href=\"https://cedar.buffalo.edu/~srihari/CSE676/\" style=\"text-decoration:none\">CSE676</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLmx4utxjUQD70k_NzeiSIXf30m54T_e1h\" style=\"text-decoration:none\">YouTube-Lectures-P1</a> <br/><a href=\"https://www.youtube.com/channel/UCUm7yUmVJyAbYh_0ppJ4H-g/videos\" style=\"text-decoration:none\">YouTube-Lectures-P2</a></td>\n<td>2020</td>\n</tr>\n<tr>\n<td>63.</td>\n<td><strong>Deep Learning Lecture Series</strong></td>\n<td>Lots of Legends, DeepMind x UCL, London</td>\n<td><a href=\"https://deepmind.com/learning-resources/deep-learning-lecture-series-2020\" style=\"text-decoration:none\">DLLS-20</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLqYmG7hTraZCDxZ44o4p3N5Anz3lLRVZF\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2020</td>\n</tr>\n<tr>\n<td>64.</td>\n<td><strong>MultiModal Machine Learning</strong></td>\n<td>Louis-Philippe Morency &amp; others, Carnegie Mellon University</td>\n<td><a href=\"https://cmu-multicomp-lab.github.io/mmml-course/fall2020\" style=\"text-decoration:none\">11-777 MMML-20</a></td>\n<td><a href=\"https://www.youtube.com/channel/UCqlHIJTGYhiwQpNuPU5e2gg/videos\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2020</td>\n</tr>\n<tr>\n<td>65.</td>\n<td><strong>Reliable and Interpretable Artificial Intelligence</strong></td>\n<td>Martin Vechev, ETH Zürich</td>\n<td><a href=\"https://www.sri.inf.ethz.ch/teaching/riai2020\" style=\"text-decoration:none\">RIAI-20</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLWjm4hHpaNg6c-W7JjNYDEC_kJK9oSp0Y\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2020</td>\n</tr>\n<tr>\n<td>66.</td>\n<td><strong>Fundamentals of Deep Learning</strong></td>\n<td>David McAllester, Toyota Technological Institute, Chicago</td>\n<td><a href=\"https://mcallester.github.io/ttic-31230/Fall2020\" style=\"text-decoration:none\">TTIC-31230</a></td>\n<td><a href=\"https://www.youtube.com/channel/UCciVrtrRR3bQdaGbti9-hVQ/videos\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2020</td>\n</tr>\n<tr>\n<td>67.</td>\n<td><strong>Foundations of Deep Learning</strong></td>\n<td>Soheil Feize, University of Maryland, College Park</td>\n<td><a href=\"http://www.cs.umd.edu/class/fall2020/cmsc828W\" style=\"text-decoration:none\">CMSC 828W</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLHgjs9ncvHi80UCSlSvQe-TK_uOyDv_Jf\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2020</td>\n</tr>\n<tr>\n<td>68.</td>\n<td><strong>Deep Learning</strong></td>\n<td>Andreas Geiger, Universität Tübingen</td>\n<td><a href=\"https://uni-tuebingen.de/fakultaeten/mathematisch-naturwissenschaftliche-fakultaet/fachbereiche/informatik/lehrstuehle/autonomous-vision/teaching/lecture-deep-learning/\" style=\"text-decoration:none\">DL-UT</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL05umP7R6ij3NTWIdtMbfvX7Z-4WEXRqD\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>W20/21</td>\n</tr>\n<tr>\n<td>69.</td>\n<td><strong>Deep Learning</strong></td>\n<td>Andreas Maier, FAU Erlangen-Nürnberg</td>\n<td><a href=\"https://www.fau.tv/course/id/1599\" style=\"text-decoration:none\">DL-FAU</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLpOGQvPCDQzvJEPFUQ3mJz72GJ95jyZTh\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>W20/21</td>\n</tr>\n<tr>\n<td>70.</td>\n<td><strong>Fundamentals of Deep Learning</strong></td>\n<td>Terence Parr and Yannet Interian, University of San Francisco</td>\n<td><a href=\"https://github.com/parrt/fundamentals-of-deep-learning\" style=\"text-decoration:none\">DL-Fundamentals</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLFCc_Fc116ikeol9CZcWWKqmrJljxhE4N\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2021</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>71.</td>\n<td><strong>Full Stack Deep Learning</strong></td>\n<td>Pieter Abbeel, Sergey Karayev, UC Berkeley</td>\n<td><a href=\"https://fullstackdeeplearning.com/spring2021\" style=\"text-decoration:none\">FS-DL</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL1T8fO7ArWlcWg04OgNiJy91PywMKT2lv\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2021</td>\n</tr>\n<tr>\n<td>72.</td>\n<td><strong>Deep Learning: Designing, Visualizing, and Understanding DNNs</strong></td>\n<td>Sergey Levine, UC Berkeley</td>\n<td><a href=\"https://cs182sp21.github.io\" style=\"text-decoration:none\">CS 182</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL_iWQOsE6TfVmKkQHucjPAoRtIJYt8a5A\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2021</td>\n</tr>\n<tr>\n<td>73.</td>\n<td><strong>Deep Learning in the Life Sciences</strong></td>\n<td>Manolis Kellis, MIT</td>\n<td><a href=\"https://mit6874.github.io\" style=\"text-decoration:none\">6.874</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLypiXJdtIca5sxV7aE3-PS9fYX3vUdIOX\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2021</td>\n</tr>\n<tr>\n<td>74.</td>\n<td><strong>Introduction to Deep Learning and Generative Models</strong></td>\n<td>Sebastian Raschka, University of Wisconsin-Madison</td>\n<td><a href=\"http://pages.stat.wisc.edu/~sraschka/teaching/stat453-ss2021\" style=\"text-decoration:none\">Stat 453</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLTKMiZHVd_2KJtIXOW0zFhFfBaJJilH51\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2021</td>\n</tr>\n<tr>\n<td>75.</td>\n<td><strong>Deep Learning</strong></td>\n<td>Alfredo Canziani and Yann LeCun, NYU</td>\n<td><a href=\"https://atcold.github.io/NYU-DLSP21\" style=\"text-decoration:none\">NYU-DLSP21</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLLHTzKZzVU9e6xUfG10TkTWApKSZCzuBI\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2021</td>\n</tr>\n<tr>\n<td>76.</td>\n<td><strong>Applied Deep Learning</strong></td>\n<td>Alexander Pacha, TU Wien</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLNsFwZQ_pkE8xNYTEyorbaWPN7nvbWyk1\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2020-2021</td>\n</tr>\n<tr>\n<td>77.</td>\n<td><strong>Machine Learning</strong></td>\n<td>Hung-yi Lee, National Taiwan University</td>\n<td><a href=\"https://speech.ee.ntu.edu.tw/~hylee/ml/2021-spring.php\" style=\"text-decoration:none\">ML'21</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLJV_el3uVTsNxV_IGauQZBHjBKZ26JHjd\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2021</td>\n</tr>\n<tr>\n<td>78.</td>\n<td><strong>Mathematics of Deep Learning</strong></td>\n<td>Lots of legends, FAU</td>\n<td><a href=\"https://www.fau.tv/course/id/878\" style=\"text-decoration:none\">MoDL</a></td>\n<td><a href=\"https://www.fau.tv/course/id/878\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>2019-21</td>\n</tr>\n<tr>\n<td>79.</td>\n<td><strong>Deep Learning</strong></td>\n<td>Peter Bloem, Michael Cochez, and Jakub Tomczak, VU-Amsterdam</td>\n<td><a href=\"https://dlvu.github.io/\" style=\"text-decoration:none\">DL</a></td>\n<td><a href=\"https://www.youtube.com/channel/UCYh1zKnwzrSjrO2Ae-akfTg/playlists\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2020-21</td>\n</tr>\n<tr>\n<td>80.</td>\n<td><strong>Applied Deep Learning</strong></td>\n<td>Maziar Raissi, UC Boulder</td>\n<td><a href=\"https://github.com/maziarraissi/Applied-Deep-Learning\" style=\"text-decoration:none\">ADL'21</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLoEMreTa9CNmuxQeIKWaz7AVFd_ZeAcy4\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2021</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>81.</td>\n<td><strong>An Introduction to Group Equivariant Deep Learning</strong></td>\n<td>Erik J. Bekkers, Universiteit van Amsterdam</td>\n<td><a href=\"https://uvagedl.github.io\" style=\"text-decoration:none\">UvAGEDL</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL8FnQMH2k7jzPrxqdYufoiYVHim8PyZWd\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2022</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n</tbody>\n</table><a href=\"https://deep-learning-drizzle.github.io/index.html#contents \"style=\"text-decoration:none\"><h5>Go to Contents <i class=\"em em-arrow_heading_up\"></i></h5></a><hr><a href=\"#mlfund\" style=\"text-decoration:none\"><h2>Machine Learning Fundamentals </h2></a><table id=\"mlfund\" style=\"text-decoration:none\">\n<thead>\n<tr>\n<th>S.No</th>\n<th>Course Name</th>\n<th>University/Instructor(s)</th>\n<th>Course Webpage</th>\n<th>Video Lectures</th>\n<th>Year</th>\n</tr>\n</thead>\n<tbody>\n<tr>\n<td>1.</td>\n<td><strong>Linear Algebra</strong></td>\n<td>Gilbert Strang, MIT</td>\n<td><a href=\"http://ocw.mit.edu/18-06SCF11\" style=\"text-decoration:none\">18.06 SC</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL221E2BBF13BECF6C\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2011</td>\n</tr>\n<tr>\n<td>2.</td>\n<td><strong>Probability Primer</strong></td>\n<td>Jeffrey Miller, Brown University</td>\n<td><code>mathematical monk</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL17567A1A3F5DB5E4\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2011</td>\n</tr>\n<tr>\n<td>3.</td>\n<td><strong>Information Theory, Pattern Recognition, and Neural Networks</strong></td>\n<td>David Mackay, University of Cambridge</td>\n<td><a href=\"http://www.inference.org.uk/mackay/itprnn\" style=\"text-decoration:none\">ITPRNN</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLruBu5BI5n4aFpG32iMbdWoRVAA-Vcso6\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2012</td>\n</tr>\n<tr>\n<td>4.</td>\n<td><strong>Linear Algebra Review</strong></td>\n<td>Zico Kolter, CMU</td>\n<td><a href=\"http://www.cs.cmu.edu/~zkolter/course/linalg/index.html\" style=\"text-decoration:none\">LinAlg</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLM4Pv4KYYzGzL5ay6dmpyzRnbzQ__8v_t\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2013</td>\n</tr>\n<tr>\n<td>5.</td>\n<td><strong>Probability and Statistics</strong></td>\n<td>Michel van Biezen</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLX2gX-ftPVXUWwTzAkOhBdhplvz0fByqV\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2015</td>\n</tr>\n<tr>\n<td>6.</td>\n<td><strong>Linear Algebra: An in-depth Introduction</strong></td>\n<td>Pavel Grinfeld</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLlXfTHzgMRUKXD88IdzS14F4NxAZudSmv\" style=\"text-decoration:none\">Part-1</a> <br/> <a href=\"https://www.youtube.com/playlist?list=PLlXfTHzgMRULWJYthculb2QWEiZOkwTSU\" style=\"text-decoration:none\">Part-2</a>  <br/> <a href=\"https://www.youtube.com/playlist?list=PLlXfTHzgMRUIqYrutsFXCOmiqKUgOgGJ5\" style=\"text-decoration:none\">Part-3</a> <br/> <a href=\"https://www.youtube.com/playlist?list=PLlXfTHzgMRULZfrNCrrJ7xDcTjGr633mm\" style=\"text-decoration:none\">Part-4</a></td>\n<td>2015- 2017</td>\n</tr>\n<tr>\n<td>7.</td>\n<td><strong>Multivariable Calculus</strong></td>\n<td>Grant Sanderson, Khan Academy</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLSQl0a2vh4HC5feHa6Rc5c0wbRTx56nF7\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2016</td>\n</tr>\n<tr>\n<td>8.</td>\n<td><strong>Essence of Linear Algebra</strong></td>\n<td>Grant Sanderson</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLZHQObOWTQDPD3MizzM2xVFitgF8hE_ab\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2016</td>\n</tr>\n<tr>\n<td>9.</td>\n<td><strong>Essence of Calculus</strong></td>\n<td>Grant Sanderson</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLZHQObOWTQDMsr9K-rj53DwVRMYO3t5Yr\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017-2018</td>\n</tr>\n<tr>\n<td>10.</td>\n<td><strong>Math Background for Machine Learning</strong></td>\n<td>Geoff Gordon, CMU</td>\n<td><a href=\"https://canvas.cmu.edu/courses/603/assignments/syllabus\" style=\"text-decoration:none\">10-606</a>, <a href=\"https://piazza.com/cmu/fall2017/1060610607/home\" style=\"text-decoration:none\">10-607</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL7y-1rk2cCsAqRtWoZ95z-GMcecVG5mzA\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2017</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>11.</td>\n<td><strong>Mathematics for Machine Learning</strong> (Linear Algebra, Calculus)</td>\n<td>David Dye, Samuel Cooper, and Freddie Page, IC-London</td>\n<td><a href=\"https://www.coursera.org/learn/linear-algebra-machine-learning\" style=\"text-decoration:none\">MML</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLmAuaUS7wSOP-iTNDivR0ANKuTUhEzMe4\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>12.</td>\n<td><strong>Multivariable Calculus</strong></td>\n<td>S.K. Gupta and Sanjeev Kumar, IIT-Roorkee</td>\n<td><a href=\"https://nptel.ac.in/syllabus/111107108/\" style=\"text-decoration:none\">MVC</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLq-Gm0yRYwTiQtK374NzhFOcQkWmJ71vx\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>13.</td>\n<td><strong>Engineering Probability</strong></td>\n<td>Rich Radke, Rensselaer Polytechnic Institute</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLuh62Q4Sv7BU1dN2G6ncyiMbML7OXh_Jx\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>14.</td>\n<td><strong>Matrix Methods in Data Analysis, Signal Processing, and Machine Learning</strong></td>\n<td>Gilbert Strang, MIT</td>\n<td><a href=\"https://ocw.mit.edu/courses/mathematics/18-065-matrix-methods-in-data-analysis-signal-processing-and-machine-learning-spring-2018\" style=\"text-decoration:none\">18.065</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLUl4u3cNGP63oMNUHXqIUcrkS2PivhN3k\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2018</td>\n</tr>\n<tr>\n<td>15.</td>\n<td><strong>Information Theory</strong></td>\n<td>Himanshu Tyagi, IISC, Bengaluru</td>\n<td><a href=\"https://ece.iisc.ac.in/~htyagi/course-E2201-2020.html\" style=\"text-decoration:none\">E2 201</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLgMDNELGJ1CYS-8dlMGPIaowVfeda4nUj\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018-20</td>\n</tr>\n<tr>\n<td>16.</td>\n<td><strong>Math Camp</strong></td>\n<td>Mark Walker, University of Arizona</td>\n<td><a href=\"http://www.u.arizona.edu/~mwalker/MathCamp2019.htm\" style=\"text-decoration:none\">UAMathCamp / Econ-519</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLcjqUUQt__ZGLhwUacPm7_RKs2eJNFwco\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>17.</td>\n<td><strong>A 2020 Vision of Linear Algebra</strong></td>\n<td>Gilbert Strang, MIT</td>\n<td><a href=\"https://ocw.mit.edu/resources/res-18-010-a-2020-vision-of-linear-algebra-spring-2020/\" style=\"text-decoration:none\">VoLA</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLUl4u3cNGP61iQEFiWLE21EJCxwmWvvek\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2020</td>\n</tr>\n<tr>\n<td>18.</td>\n<td><strong>Mathematics for Numerical Computing and Machine Learning</strong></td>\n<td>Szymon Rusinkiewicz, Princeton University</td>\n<td><a href=\"https://www.cs.princeton.edu/courses/archive/fall20/cos302/outline.html\" style=\"text-decoration:none\">COS-302</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL88aSuXxl_dSjC5pIG8bGkC5wsUPyW_Hh\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2020</td>\n</tr>\n<tr>\n<td>19.</td>\n<td><strong>Essential Statistics for Neuroscientists</strong></td>\n<td>Philipp Berens, Universität Klinikum Tübingen</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL05umP7R6ij0Gw5SLIrOA1dMYScCx4oXT\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2020</td>\n</tr>\n<tr>\n<td>20.</td>\n<td><strong>Mathematics for Machine Learning</strong></td>\n<td>Ulrike von Luxburg, Eberhard Karls Universität Tübingen</td>\n<td><a href=\"https://www.tml.cs.uni-tuebingen.de/teaching/2020_maths_for_ml\" style=\"text-decoration:none\">Math4ML</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL05umP7R6ij1a6KdEy8PVE9zoCv6SlHRS\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>W2020</td>\n</tr>\n<tr>\n<td>21.</td>\n<td><strong>Introduction to Causal Inference</strong></td>\n<td>Brady Neal, Mila, Montréal</td>\n<td><a href=\"https://www.bradyneal.com/causal-inference-course\" style=\"text-decoration:none\">CausalInf</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLoazKTcS0Rzb6bb9L508cyJ1z-U9iWkA0\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2020</td>\n</tr>\n<tr>\n<td>22.</td>\n<td><strong>Applied Linear Algebra</strong></td>\n<td>Andrew Thangaraj, IIT Madras</td>\n<td><a href=\"http://www.ee.iitm.ac.in/~andrew/EE5120\" style=\"text-decoration:none\">EE5120</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLyqSpQzTE6M-CHZU5RGfamcXOnuFyTOpm\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2021</td>\n</tr>\n<tr>\n<td>23.</td>\n<td><strong>Mathematical Tools for Data Science</strong></td>\n<td>Carlos Fernandez-Granda, New York University</td>\n<td><a href=\"https://cds.nyu.edu/math-tools\" style=\"text-decoration:none\">DS-GA 1013/Math-GA 2824</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLBEf5mJtE6KtU6YlXFZD6lyYcHhW5pIlc\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2021</td>\n</tr>\n<tr>\n<td>24.</td>\n<td><strong>Mathematics for Numerical Computing and Machine Learning</strong></td>\n<td>Ryan Adams, Princeton University</td>\n<td><a href=\"https://www.cs.princeton.edu/courses/archive/spring21/cos302\" style=\"text-decoration:none\">COS 302 / SML 305</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLCO4cUaBLHFEHo42HVIVWaSOvbAiH30uc\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2021</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n</tbody>\n</table><a href=\"https://deep-learning-drizzle.github.io/index.html#contents \"style=\"text-decoration:none\"><h5>Go to Contents <i class=\"em em-arrow_heading_up\"></i></h5></a><hr><a href=\"#opt4ml\" style=\"text-decoration:none\"><h2>Optimization for Machine Learning </h2></a><table id=\"opt4ml\" style=\"text-decoration:none\">\n<thead>\n<tr>\n<th>S.No</th>\n<th>Course Name</th>\n<th>University/Instructor(s)</th>\n<th>Course Webpage</th>\n<th>Video Lectures</th>\n<th>Year</th>\n</tr>\n</thead>\n<tbody>\n<tr>\n<td>1.</td>\n<td><strong>Convex Optimization</strong></td>\n<td>Stephen Boyd, Stanford University</td>\n<td><a href=\"http://web.stanford.edu/class/ee364a/lectures.html\" style=\"text-decoration:none\">ee364a</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL3940DD956CDF0622\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2008</td>\n</tr>\n<tr>\n<td>2.</td>\n<td><strong>Introduction to Optimization</strong></td>\n<td>Michael Zibulevsky, Technion</td>\n<td><a href=\"https://sites.google.com/site/michaelzibulevsky/optimization-course\" style=\"text-decoration:none\">CS-236330</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLDFB2EEF4DDAFE30B\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2009</td>\n</tr>\n<tr>\n<td>3.</td>\n<td><strong>Optimization for Machine Learning</strong></td>\n<td>S V N Vishwanathan, Purdue University</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL09B0E8AFC69BE108\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2011</td>\n</tr>\n<tr>\n<td>4.</td>\n<td><strong>Optimization</strong></td>\n<td>Geoff Gordon &amp; Ryan Tibshirani, CMU</td>\n<td><a href=\"https://www.cs.cmu.edu/~ggordon/10725-F12/\" style=\"text-decoration:none\">10-725</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL7y-1rk2cCsDOv91McLOnV4kExFfTB7dU\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2012</td>\n</tr>\n<tr>\n<td>5.</td>\n<td><strong>Convex Optimization</strong></td>\n<td>Joydeep Dutta, IIT-Kanpur</td>\n<td><a href=\"https://nptel.ac.in/courses/111/104/111104068\" style=\"text-decoration:none\">cvx-nptel</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLbMVogVj5nJQHFqfiSdgaLCCWvDcm1W4l\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2013</td>\n</tr>\n<tr>\n<td>6.</td>\n<td><strong>Foundations of Optimization</strong></td>\n<td>Joydeep Dutta, IIT-Kanpur</td>\n<td><a href=\"https://nptel.ac.in/courses/111/104/111104071\" style=\"text-decoration:none\">fop-nptel</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLbMVogVj5nJRRbofh3Qm3P6_NVyevDGD_\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2014</td>\n</tr>\n<tr>\n<td>7.</td>\n<td><strong>Algorithmic Aspects of Machine Learning</strong></td>\n<td>Ankur Moitra, MIT</td>\n<td><a href=\"http://people.csail.mit.edu/moitra/409.html\" style=\"text-decoration:none\">18.409-AAML</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLB3sDpSRdrOvI1hYXNsa6Lety7K8FhPpx\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2015</td>\n</tr>\n<tr>\n<td>8.</td>\n<td><strong>Numerical Optimization</strong></td>\n<td>Shirish K. Shevade, IISC</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL6EA0722B99332589\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2015</td>\n</tr>\n<tr>\n<td>9.</td>\n<td><strong>Convex Optimization</strong></td>\n<td>Ryan Tibshirani, CMU</td>\n<td><a href=\"https://www.stat.cmu.edu/~ryantibs/convexopt-S15/\" style=\"text-decoration:none\">10-725</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLjbUi5mgii6BZBhJ9nW7eydgycyCOYeZ6\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2015</td>\n</tr>\n<tr>\n<td>10.</td>\n<td><strong>Convex Optimization</strong></td>\n<td>Ryan Tibshirani, CMU</td>\n<td><a href=\"http://stat.cmu.edu/~ryantibs/convexopt-F15/\" style=\"text-decoration:none\">10-725</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLjbUi5mgii6AGJW3La3BpEXe27n8v3biT\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2015</td>\n</tr>\n<tr>\n<td>11.</td>\n<td><strong>Advanced Algorithms</strong></td>\n<td>Ankur Moitra, MIT</td>\n<td><a href=\"http://people.csail.mit.edu/moitra/854.html\" style=\"text-decoration:none\">6.854-AA</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL6ogFv-ieghdoGKGg2Bik3Gl1glBTEu8c\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2016</td>\n</tr>\n<tr>\n<td>12.</td>\n<td><strong>Introduction to Optimization</strong></td>\n<td>Michael Zibulevsky, Technion</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLBD31626529B0AC2A\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2016</td>\n</tr>\n<tr>\n<td>13.</td>\n<td><strong>Convex Optimization</strong></td>\n<td>Javier Peña &amp; Ryan Tibshirani</td>\n<td><a href=\"https://www.stat.cmu.edu/~ryantibs/convexopt-F16\" style=\"text-decoration:none\">10-725/36-725</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLjbUi5mgii6AVdvImLB9-Hako68p9MpIC\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2016</td>\n</tr>\n<tr>\n<td>14.</td>\n<td><strong>Convex Optimization</strong></td>\n<td>Ryan Tibshirani, CMU</td>\n<td><a href=\"https://www.stat.cmu.edu/~ryantibs/convexopt-F18/\" style=\"text-decoration:none\">10-725</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLpIxOj-HnDsMM7BCNGC3hPFU3DfCWfVIw\" style=\"text-decoration:none\">YouTube-Lectures</a> <br/> <a href=\"https://www.stat.cmu.edu/~ryantibs/convexopt-F18/\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>F2018</td>\n</tr>\n<tr>\n<td>15.</td>\n<td><strong>Modern Algorithmic Optimization</strong></td>\n<td>Yurii Nesterov, UCLouvain</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLEqoHzpnmTfAoUDqnmMly-KgyJ6ZM_axf\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>16.</td>\n<td><strong>Optimization, Foundations of Optimization</strong></td>\n<td>Mark Walker, University of Arizona</td>\n<td><a href=\"http://www.u.arizona.edu/~mwalker/MathCamp2020/MathCamp2020LectureNotes.htm\" style=\"text-decoration:none\">MathCamp-20</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLcjqUUQt__ZE6wp_c4-FcRdmzBvx8VN7O\" style=\"text-decoration:none\">YouTube-Lectures-Found.</a> <br/> <a href=\"https://www.youtube.com/playlist?list=PLcjqUUQt__ZE0ZSTNRyBIgLJ5obPHdmxC\" style=\"text-decoration:none\">YouTube-Lectures-Opt</a></td>\n<td>2019 - now</td>\n</tr>\n<tr>\n<td>17.</td>\n<td><strong>Optimization: Principles and Algorithms</strong></td>\n<td>Michel Bierlaire, École polytechnique fédérale de Lausanne (EPFL)</td>\n<td><a href=\"https://transp-or.epfl.ch/books/optimization/html/about_book.html\" style=\"text-decoration:none\">opt-algo</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLM4Pv4KYYzGzOpWwsaV6GgllT6njsi1G-\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>18.</td>\n<td><strong>Optimization and Simulation</strong></td>\n<td>Michel Bierlaire, École polytechnique fédérale de Lausanne (EPFL)</td>\n<td><a href=\"https://transp-or.epfl.ch/courses/OptSim2019/slides.php\" style=\"text-decoration:none\">opt-sim</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL10NOnsbP5Q5NlJ-Y6Eiup6RTSfkuj1TR\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2019</td>\n</tr>\n<tr>\n<td>19.</td>\n<td><strong>Brazilian Workshop on Continuous Optimization</strong></td>\n<td>Lots of Legends, Instituto Nacional de Matemática Pura e Aplicada, Rio de Janeiro</td>\n<td><a href=\"https://impa.br/eventos-do-impa/eventos-2019/xiii-brazilian-workshop-on-continuous-optimization\" style=\"text-decoration:none\">cont. opt.</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLo4jXE-LdDTQVZhnLPq2W31vJ1fq1VSp6\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>20.</td>\n<td><strong>One World Optimization Seminar</strong></td>\n<td>Lots of Legends, Universität Wien</td>\n<td><a href=\"https://owos.univie.ac.at\" style=\"text-decoration:none\">1W-OPT</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLBQo-yZOMzLWEcAptzTYOnwXo9hhXrAa2\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2020-</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>21.</td>\n<td><strong>Convex Optimization II</strong></td>\n<td>Constantine Caramanis, UT Austin</td>\n<td><a href=\"http://users.ece.utexas.edu/~cmcaram/constantine_caramanis/Announcements.html\" style=\"text-decoration:none\">CVX-Optim-II</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLXsmhnDvpjORzPelSDs0LSDrfJcqyLlZc\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2020</td>\n</tr>\n<tr>\n<td>22.</td>\n<td><strong>Combinatorial Optimization</strong></td>\n<td>Constantine Caramanis, UT Austin</td>\n<td><a href=\"https://caramanis.github.io/teaching/\" style=\"text-decoration:none\">comb-op</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLXsmhnDvpjORcTRFMVF3aUgyYlHsxfhNL\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2020</td>\n</tr>\n<tr>\n<td>23.</td>\n<td><strong>Optimization Methods for Machine Learning and Engineering</strong></td>\n<td>Julius Pfrommer, Jürgen Beyerer, Karlsruher Institut für Technologie (KIT)</td>\n<td><a href=\"https://ies.anthropomatik.kit.edu/lehre_1487.php\" style=\"text-decoration:none\">Optim-MLE</a>, <a href=\"https://drive.google.com/drive/folders/1WWVWV4vDBIOkjZc6uFY3nfXvpaOUHcfb\" style=\"text-decoration:none\">slides</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLdkTDauaUnQpzuOCZyUUZc0lxf4-PXNR5\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>W2020-21</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n</tbody>\n</table><a href=\"https://deep-learning-drizzle.github.io/index.html#contents \"style=\"text-decoration:none\"><h5>Go to Contents <i class=\"em em-arrow_heading_up\"></i></h5></a><hr><a href=\"#genml\" style=\"text-decoration:none\"><h2>General Machine Learning </h2></a><table id=\"genml\" style=\"text-decoration:none\">\n<thead>\n<tr>\n<th>S.No</th>\n<th>Course Name</th>\n<th>University/Instructor(s)</th>\n<th>Course Webpage</th>\n<th>Video Lectures</th>\n<th>Year</th>\n</tr>\n</thead>\n<tbody>\n<tr>\n<td>1.</td>\n<td><strong>CS229: Machine Learning</strong></td>\n<td>Andrew Ng, Stanford University</td>\n<td><a href=\"https://see.stanford.edu/Course/CS229/\" style=\"text-decoration:none\">CS229-old</a> <br/> <a href=\"http://cs229.stanford.edu/\" style=\"text-decoration:none\">CS229-new</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLA89DCFA6ADACE599\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2007</td>\n</tr>\n<tr>\n<td>2.</td>\n<td><strong>Machine Learning</strong></td>\n<td>Jeffrey Miller, Brown University</td>\n<td><code>mathematical monk</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLD0F06AA0D2E8FFBA\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2011</td>\n</tr>\n<tr>\n<td>3.</td>\n<td><strong>Machine Learning</strong></td>\n<td>Tom Mitchell, CMU</td>\n<td><a href=\"http://www.cs.cmu.edu/~tom/10701_sp11/\" style=\"text-decoration:none\">10-701</a></td>\n<td><a href=\"http://www.cs.cmu.edu/~tom/10701_sp11/lectures.shtml\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>2011</td>\n</tr>\n<tr>\n<td>4.</td>\n<td><strong>Machine Learning and Data Mining</strong></td>\n<td>Nando de Freitas, University of British Columbia</td>\n<td><a href=\"https://www.cs.ubc.ca/~nando/340-2012/index.php\" style=\"text-decoration:none\">CPSC-340</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLE6Wd9FR--Ecf_5nCbnSQMHqORpiChfJf\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2012</td>\n</tr>\n<tr>\n<td>5.</td>\n<td><strong>Learning from Data</strong></td>\n<td>Yaser Abu-Mostafa, CalTech</td>\n<td><a href=\"http://work.caltech.edu/telecourse.html\" style=\"text-decoration:none\">CS156</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLD63A284B7615313A\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2012</td>\n</tr>\n<tr>\n<td>6.</td>\n<td><strong>Machine Learning</strong></td>\n<td>Rudolph Triebel, Technische Universität München</td>\n<td><a href=\"https://vision.in.tum.de/teaching/ws2013/ml_ws13\" style=\"text-decoration:none\">Machine Learning</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLTBdjV_4f-EIiongKlS9OKrBEp8QR47Wl\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2013</td>\n</tr>\n<tr>\n<td>7.</td>\n<td><strong>Introduction to Machine Learning</strong></td>\n<td>Alex Smola, CMU</td>\n<td><a href=\"http://alex.smola.org/teaching/cmu2013-10-701/\" style=\"text-decoration:none\">10-701</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLZSO_6-bSqHQmMKwWVvYwKreGu4b4kMU9\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2013</td>\n</tr>\n<tr>\n<td>8.</td>\n<td><strong>Introduction to Machine Learning</strong></td>\n<td>Alex Smola and Geoffrey Gordon, CMU</td>\n<td><a href=\"http://alex.smola.org/teaching/cmu2013-10-701x/\" style=\"text-decoration:none\">10-701x</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLZSO_6-bSqHR7NPk4k0zqdm2dPdraQZ_B\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2013</td>\n</tr>\n<tr>\n<td>9.</td>\n<td><strong>Pattern Recognition</strong></td>\n<td>Sukhendu Das, IIT-M and C.A. Murthy, ISI-Calcutta</td>\n<td><a href=\"https://nptel.ac.in/syllabus/106106046/\" style=\"text-decoration:none\">PR-NPTEL</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLbMVogVj5nJQJMLb2CYw9rry0d5s0TQRp\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2014</td>\n</tr>\n<tr>\n<td>10.</td>\n<td><strong>An Introduction to Statistical Learning with Applications in R</strong></td>\n<td>Trevor Hastie and Robert Tibshirani, Stanford</td>\n<td><a href=\"https://lagunita.stanford.edu/courses/HumanitiesandScience/StatLearning/Winter2015/about\" style=\"text-decoration:none\">stat-learn</a> <br/> <a href=\"https://www.r-bloggers.com/in-depth-introduction-to-machine-learning-in-15-hours-of-expert-videos/\" style=\"text-decoration:none\">R-bloggers</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLOg0ngHtcqbPTlZzRHA2ocQZqB1D_qZ5V\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2014</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>11.</td>\n<td><strong>Introduction to Machine Learning</strong></td>\n<td>Katie Malone, Sebastian Thrun, Udacity</td>\n<td><a href=\"https://www.udacity.com/course/ud120\" style=\"text-decoration:none\">ML-Udacity</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLAwxTw4SYaPkQXg8TkVdIvYv4HfLG7SiH\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2015</td>\n</tr>\n<tr>\n<td>12.</td>\n<td><strong>Introduction to Machine Learning</strong></td>\n<td>Dhruv Batra, Virginia Tech</td>\n<td><a href=\"https://filebox.ece.vt.edu/~s15ece5984/\" style=\"text-decoration:none\">ECE-5984</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL-fZD610i7yDUiNTFy-tEOxkTwg4mHZHu\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2015</td>\n</tr>\n<tr>\n<td>13.</td>\n<td><strong>Statistical Learning - Classification</strong></td>\n<td>Ali Ghodsi, University of Waterloo</td>\n<td><a href=\"https://uwaterloo.ca/data-analytics/statistical-learning-classification\" style=\"text-decoration:none\">STAT-441</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLehuLRPyt1Hy-4ObWBK4Ab0xk97s6imfC\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2015</td>\n</tr>\n<tr>\n<td>14.</td>\n<td><strong>Machine Learning Theory</strong></td>\n<td>Shai Ben-David, University of Waterloo</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLPW2keNyw-usgvmR7FTQ3ZRjfLs5jT4BO\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2015</td>\n</tr>\n<tr>\n<td>15.</td>\n<td><strong>Introduction to Machine Learning</strong></td>\n<td>Alex Smola, CMU</td>\n<td><a href=\"http://alex.smola.org/teaching/10-701-15/\" style=\"text-decoration:none\">10-701</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLZSO_6-bSqHTTV7w9u7grTXBHMH-mw3qn\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2015</td>\n</tr>\n<tr>\n<td>16.</td>\n<td><strong>Statistical Machine Learning</strong></td>\n<td>Larry Wasserman, CMU</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLjbUi5mgii6BWEUZf7He6nowWvGne_Y8r\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2015</td>\n</tr>\n<tr>\n<td>17.</td>\n<td><strong>ML: Supervised Learning</strong></td>\n<td>Michael Littman, Charles Isbell, Pushkar Kolhe, GaTech</td>\n<td><a href=\"https://eu.udacity.com/course/machine-learning--ud262\" style=\"text-decoration:none\">ML-Udacity</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLAwxTw4SYaPl0N6-e1GvyLp5-MUMUjOKo\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2015</td>\n</tr>\n<tr>\n<td>18.</td>\n<td><strong>ML: Unsupervised Learning</strong></td>\n<td>Michael Littman, Charles Isbell, Pushkar Kolhe, GaTech</td>\n<td><a href=\"https://eu.udacity.com/course/machine-learning-unsupervised-learning--ud741\" style=\"text-decoration:none\">ML-Udacity</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLAwxTw4SYaPmaHhu-Lz3mhLSj-YH-JnG7\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2015</td>\n</tr>\n<tr>\n<td>19.</td>\n<td><strong>Advanced Introduction to Machine Learning</strong></td>\n<td>Barnabas Poczos and Alex Smola</td>\n<td><a href=\"https://www.cs.cmu.edu/~bapoczos/Classes/ML10715_2015Fall/\" style=\"text-decoration:none\">10-715</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL4YhK0pT0ZhWBzSBkMGzpnPw6sf6Ma0IX\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2015</td>\n</tr>\n<tr>\n<td>20.</td>\n<td><strong>Machine Learning</strong></td>\n<td>Pedro Domingos, UWashington</td>\n<td><a href=\"https://courses.cs.washington.edu/courses/csep546/16sp/\" style=\"text-decoration:none\">CSEP-546</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLTPQEx-31JXgtDaC6-3HxWcp7fq4N8YGr\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2016</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>21.</td>\n<td><strong>Statistical Machine Learning</strong></td>\n<td>Larry Wasserman, CMU</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLTB9VQq8WiaCBK2XrtYn5t9uuPdsNm7YE\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2016</td>\n</tr>\n<tr>\n<td>22.</td>\n<td><strong>Machine Learning with Large Datasets</strong></td>\n<td>William Cohen, CMU</td>\n<td><a href=\"http://curtis.ml.cmu.edu/w/courses/index.php/Machine_Learning_with_Large_Datasets_10-605_in_Fall_2016\" style=\"text-decoration:none\">10-605</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLnfBqXRW5MRhPtfkadfwQ0VcuSi2IwEcW\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2016</td>\n</tr>\n<tr>\n<td>23.</td>\n<td><strong>Math Background for Machine Learning</strong></td>\n<td>Geoffrey Gordon, CMU</td>\n<td><code>10-600</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL7y-1rk2cCsA339crwXMWUaBRuLBvPBCg\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2016</td>\n</tr>\n<tr>\n<td>24.</td>\n<td><strong>Statistical Learning - Classification</strong></td>\n<td>Ali Ghodsi, University of Waterloo</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLehuLRPyt1HzXDemu7K4ETcF0Ld_B5adG\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>25.</td>\n<td><strong>Machine Learning</strong></td>\n<td>Andrew Ng, Stanford University</td>\n<td><a href=\"https://www.coursera.org/learn/machine-learning\" style=\"text-decoration:none\">Coursera-ML</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLLssT5z_DsK-h9vYZkQkYNWcItqhlRJLN\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>26.</td>\n<td><strong>Machine Learning</strong></td>\n<td>Roni Rosenfield, CMU</td>\n<td><a href=\"http://www.cs.cmu.edu/~roni/10601-f17/\" style=\"text-decoration:none\">10-601</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL7k0r4t5c10-g7CWCnHfZOAxLaiNinChk\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>27.</td>\n<td><strong>Statistical Machine Learning</strong></td>\n<td>Ryan Tibshirani, Larry Wasserman, CMU</td>\n<td><a href=\"http://www.stat.cmu.edu/~ryantibs/statml/\" style=\"text-decoration:none\">10-702</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLjbUi5mgii6B7A0nM74zHTOVQtTC9DaCv\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2017</td>\n</tr>\n<tr>\n<td>28.</td>\n<td><strong>Machine Learning for Computer Vision</strong></td>\n<td>Fred Hamprecht, Heidelberg University</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLuRaSnb3n4kSQFyt8VBldsQ9pO9Xtu8rY\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2017</td>\n</tr>\n<tr>\n<td>29.</td>\n<td><strong>Math Background for Machine Learning</strong></td>\n<td>Geoffrey Gordon, CMU</td>\n<td><a href=\"https://canvas.cmu.edu/courses/603/assignments/syllabus\" style=\"text-decoration:none\">10-606 / 10-607</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL7y-1rk2cCsAqRtWoZ95z-GMcecVG5mzA\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2017</td>\n</tr>\n<tr>\n<td>30.</td>\n<td><strong>Data Visualization</strong></td>\n<td>Ali Ghodsi, University of Waterloo</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLehuLRPyt1HzQoXEhtNuYTmd0aNQvtyAK\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>31.</td>\n<td><strong>Machine Learning for Physicists</strong></td>\n<td>Florian Marquardt, Uni Erlangen-Nürnberg</td>\n<td><a href=\"http://www.thp2.nat.uni-erlangen.de/index.php/2017_Machine_Learning_for_Physicists,_by_Florian_Marquardt\" style=\"text-decoration:none\">ML4Phy-17</a></td>\n<td><a href=\"https://www.video.uni-erlangen.de/course/id/574\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>32.</td>\n<td><strong>Machine Learning for Intelligent Systems</strong></td>\n<td>Kilian Weinberger, Cornell University</td>\n<td><a href=\"http://www.cs.cornell.edu/courses/cs4780/2018fa/\" style=\"text-decoration:none\">CS4780</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLl8OlHZGYOQ7bkVbuRthEsaLr7bONzbXS\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2018</td>\n</tr>\n<tr>\n<td>33.</td>\n<td><strong>Statistical Learning Theory and Applications</strong></td>\n<td>Tomaso Poggio, Lorenzo Rosasco, Sasha Rakhlin</td>\n<td><a href=\"https://cbmm.mit.edu/lh-9-520\" style=\"text-decoration:none\">9.520/6.860</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLyGKBDfnk-iAtLO6oLW4swMiQGz4f2OPY\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2018</td>\n</tr>\n<tr>\n<td>34.</td>\n<td><strong>Machine Learning and Data Mining</strong></td>\n<td>Mike Gelbart, University of British Columbia</td>\n<td><a href=\"https://ubc-cs.github.io/cpsc340/\" style=\"text-decoration:none\">CPSC-340</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLWmXHcz_53Q02ZLeAxigki1JZFfCO6M-b\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>35.</td>\n<td><strong>Foundations of Machine Learning</strong></td>\n<td>David Rosenberg, Bloomberg</td>\n<td><a href=\"https://bloomberg.github.io/foml/#home\" style=\"text-decoration:none\">FOML</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLnZuxOufsXnvftwTB1HL6mel1V32w0ThI\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>36.</td>\n<td><strong>Introduction to Machine Learning</strong></td>\n<td>Andreas Krause, ETH Zürich</td>\n<td><a href=\"https://las.inf.ethz.ch/teaching/introml-s18\" style=\"text-decoration:none\">IntroML</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLzn6LN6WhlN273tsqyfdrBUsA-o5nUESV\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>37.</td>\n<td><strong>Machine Learning Fundamentals</strong></td>\n<td>Sanjoy Dasgupta, UC-San Diego</td>\n<td><a href=\"https://drive.google.com/drive/folders/1l1rwv-jMihLZIpW0zTgGN9-snWOsA3M9\" style=\"text-decoration:none\">MLF-slides</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL_onPhFCkVQhUzcTVgQiC8W2ShZKWlm0s\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>38.</td>\n<td><strong>Machine Learning</strong></td>\n<td>Jordan Boyd-Graber, University of Maryland</td>\n<td><a href=\"http://users.umiacs.umd.edu/~jbg/teaching/CMSC_726/\" style=\"text-decoration:none\">CMSC-726</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLegWUnz91WfsELyRcZ7d1GwAVifDaZmgo\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2015-2018</td>\n</tr>\n<tr>\n<td>39.</td>\n<td><strong>Machine Learning</strong></td>\n<td>Andrew Ng, Stanford University</td>\n<td><a href=\"http://cs229.stanford.edu/syllabus-autumn2018.html\" style=\"text-decoration:none\">CS229</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLoROMvodv4rMiGQp3WXShtMGgzqpfVfbU\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>40.</td>\n<td><strong>Machine Intelligence</strong></td>\n<td>H.R.Tizhoosh, UWaterloo</td>\n<td><a href=\"https://kimialab.uwaterloo.ca/kimia/index.php/teaching/syde-522-machine-intelligence-2\" style=\"text-decoration:none\">SYDE-522</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL4upCU5bnihwCX93Gv6AQnKmVMwx4AZoT\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>41.</td>\n<td><strong>Introduction to Machine Learning</strong></td>\n<td>Pascal Poupart, University of Waterloo</td>\n<td><a href=\"https://cs.uwaterloo.ca/~ppoupart/teaching/cs480-spring19\" style=\"text-decoration:none\">CS480/680</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLdAoL1zKcqTW-uzoSVBNEecKHsnug_M0k\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2019</td>\n</tr>\n<tr>\n<td>42.</td>\n<td><strong>Advanced Machine Learning</strong></td>\n<td>Thorsten Joachims, Cornell University</td>\n<td><a href=\"https://www.cs.cornell.edu/courses/cs6780/2019sp\" style=\"text-decoration:none\">CS-6780</a></td>\n<td><a href=\"https://cornell.mediasite.com/Mediasite/Catalog/Full/f5d1cd3323f746cca80b2468bf97efd421\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>S2019</td>\n</tr>\n<tr>\n<td>43.</td>\n<td><strong>Machine Learning for Structured Data</strong></td>\n<td>Matt Gormley, Carnegie Mellon University</td>\n<td><a href=\"http://www.cs.cmu.edu/~mgormley/courses/10418/schedule.html\" style=\"text-decoration:none\">10-418/10-618</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL4CxkUJbvNVihRKP4bXufvRLIWzeS-ieP\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2019</td>\n</tr>\n<tr>\n<td>44.</td>\n<td><strong>Advanced Machine Learning</strong></td>\n<td>Joachim Buhmann, ETH Zürich</td>\n<td><a href=\"https://ml2.inf.ethz.ch/courses/aml/\" style=\"text-decoration:none\">ML2-AML</a></td>\n<td><a href=\"https://video.ethz.ch/lectures/d-infk/2019/autumn/252-0535-00L.html\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>F2019</td>\n</tr>\n<tr>\n<td>45.</td>\n<td><strong>Machine Learning for Signal Processing</strong></td>\n<td>Vipul Arora, IIT-Kanpur</td>\n<td><a href=\"http://home.iitk.ac.in/~vipular/stuff/2019_MLSP.html\" style=\"text-decoration:none\">MLSP</a></td>\n<td><a href=\"https://iitk-my.sharepoint.com/:f:/g/personal/vipular_iitk_ac_in/Enf97NZfsoVBiyclC6yHfe4BlUv6CA4U8LPQQ4vtsDo_Xg\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>F2019</td>\n</tr>\n<tr>\n<td>46.</td>\n<td><strong>Foundations of Machine Learning</strong></td>\n<td>Animashree Anandkumar, CalTech</td>\n<td><a href=\"http://tensorlab.cms.caltech.edu/users/anima/cms165-2019.html\" style=\"text-decoration:none\">CMS-165</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLVNifWxslHCA5GUh0o92neMiWiQiGVFqp\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>47.</td>\n<td><strong>Machine Learning for Physicists</strong></td>\n<td>Florian Marquardt, Uni Erlangen-Nürnberg</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.video.uni-erlangen.de/course/id/778\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>48.</td>\n<td><strong>Applied Machine Learning</strong></td>\n<td>Andreas Müller, Columbia University</td>\n<td><a href=\"https://www.cs.columbia.edu/~amueller/comsw4995s19/\" style=\"text-decoration:none\">COMS-W4995</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL_pVmAaAnxIQGzQS2oI3OWEPT-dpmwTfA\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>49.</td>\n<td><strong>Fundamentals of Machine Learning over Networks</strong></td>\n<td>Hossein Shokri-Ghadikolaei, KTH, Sweden</td>\n<td><a href=\"https://sites.google.com/view/mlons/course-materials\" style=\"text-decoration:none\">MLoNs</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLWoZTd81WFCEBFrxDfNUrDnt3ABdLfg80\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>50.</td>\n<td><strong>Foundations of Machine Learning and Statistical Inference</strong></td>\n<td>Animashree Anandkumar, CalTech</td>\n<td><a href=\"http://tensorlab.cms.caltech.edu/users/anima/cms165-2020.html\" style=\"text-decoration:none\">CMS-165</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLVNifWxslHCDlbyitaLLYBOAEPbmF1AHg\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2020</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>51.</td>\n<td><strong>Machine Learning</strong></td>\n<td>Rebecca Willett and Yuxin Chen, University of Chicago</td>\n<td><a href=\"https://voices.uchicago.edu/willett/teaching/stats37710-cmsc35400-s20\" style=\"text-decoration:none\">STAT 37710 / CMSC 35400</a></td>\n<td><a href=\"https://voices.uchicago.edu/willett/teaching/stats37710-cmsc35400-s20\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>S2020</td>\n</tr>\n<tr>\n<td>52.</td>\n<td><strong>Introduction to Machine Learning</strong></td>\n<td>Sanjay Lall and Stephen Boyd, Stanford University</td>\n<td><a href=\"http://ee104.stanford.edu\" style=\"text-decoration:none\">EE104/CME107</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLoROMvodv4rN_Uy7_wmS051_q1d6akXmK\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2020</td>\n</tr>\n<tr>\n<td>53.</td>\n<td><strong>Applied Machine Learning</strong></td>\n<td>Andreas Müller, Columbia University</td>\n<td><a href=\"https://www.cs.columbia.edu/~amueller/comsw4995s20/schedule/\" style=\"text-decoration:none\">COMS-W4995</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL_pVmAaAnxIRnSw6wiCpSvshFyCREZmlM\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2020</td>\n</tr>\n<tr>\n<td>54.</td>\n<td><strong>Statistical Machine Learning</strong></td>\n<td>Ulrike von Luxburg, Eberhard Karls Universität Tübingen</td>\n<td><a href=\"https://www.tml.cs.uni-tuebingen.de/teaching/2020_statistical_learning/index.php\" style=\"text-decoration:none\">Stat-ML</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL05umP7R6ij2XCvrRzLokX6EoHWaGA2cC\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>SS2020</td>\n</tr>\n<tr>\n<td>55.</td>\n<td><strong>Probabilistic Machine Learning</strong></td>\n<td>Philipp Hennig, Eberhard Karls Universität Tübingen</td>\n<td><a href=\"https://uni-tuebingen.de/en/180804\" style=\"text-decoration:none\">Prob-ML</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL05umP7R6ij1tHaOFY96m5uX3J21a6yNd\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>SS2020</td>\n</tr>\n<tr>\n<td>56.</td>\n<td><strong>Machine Learning</strong></td>\n<td>Sarath Chandar, PolyMTL, UdeM, Mila</td>\n<td><a href=\"http://sarathchandar.in/teaching/ml/fall2020\" style=\"text-decoration:none\">INF8953CE</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLImtCgowF_ET0mi-AmmqQ0SIJUpWYaIOr\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2020</td>\n</tr>\n<tr>\n<td>57.</td>\n<td><strong>Machine Learning</strong></td>\n<td>Erik Bekkers, Universiteit van Amsterdam</td>\n<td><a href=\"https://uvaml1.github.io/\" style=\"text-decoration:none\">UvA-ML</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL8FnQMH2k7jzhtVYbKmvrMyXDYMmgjj_n\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2020</td>\n</tr>\n<tr>\n<td>58.</td>\n<td><strong>Neural Networks for Signal Processing</strong></td>\n<td>Shayan Srinivasa Garani, Indian Institute of Science</td>\n<td><a href=\"https://labs.dese.iisc.ac.in/pnsil/neural-networks-and-learning-systems-i-fall-2020/\" style=\"text-decoration:none\">NN4SP</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLgMDNELGJ1CZn1399dV7_U4VBNJflRsua\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2020</td>\n</tr>\n<tr>\n<td>59.</td>\n<td><strong>Introduction to Machine Learning</strong></td>\n<td>Dmitry Kobak, Universität Klinikum Tübingen</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL05umP7R6ij35ShKLDqccJSDntugY4FQT\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2020</td>\n</tr>\n<tr>\n<td>60.</td>\n<td><strong>Machine Learning (PRML)</strong></td>\n<td>Erik J. Bekkers, Universiteit van Amsterdam</td>\n<td><a href=\"https://uvaml1.github.io\" style=\"text-decoration:none\">UvAML-1</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL8FnQMH2k7jzhtVYbKmvrMyXDYMmgjj_n\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2020</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>61.</td>\n<td><strong>Machine Learning with Kernel Methods</strong></td>\n<td>Julien Mairal and Jean-Philippe Vert, Inria/ENS Paris-Saclay, Google</td>\n<td><a href=\"http://members.cbio.mines-paristech.fr/~jvert/svn/kernelcourse/course/2021mva/index.html\" style=\"text-decoration:none\">ML-Kernels</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLD93kGj6_EdrkNj27AZMecbRlQ1SMkp_o\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2021</td>\n</tr>\n<tr>\n<td>62.</td>\n<td><strong>Continual Learning</strong></td>\n<td>Vincenzo Lomonaco, Università di Pisa</td>\n<td><a href=\"https://course.continualai.org/background/details\" style=\"text-decoration:none\">ContLearn'21</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLm6QXeaB-XkBfM5RgQP6wCR7Jegdg51Px\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2021</td>\n</tr>\n<tr>\n<td>63.</td>\n<td><strong>Causality</strong></td>\n<td>Christina Heinze-Deml, ETH Zurich</td>\n<td><a href=\"https://stat.ethz.ch/lectures/ss21/causality.php#course_materials\" style=\"text-decoration:none\">Causal'21</a></td>\n<td><a href=\"https://stat.ethz.ch/lectures/ss21/causality.php#course_materials\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2021</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n</tbody>\n</table><a href=\"https://deep-learning-drizzle.github.io/index.html#contents \"style=\"text-decoration:none\"><h5>Go to Contents <i class=\"em em-arrow_heading_up\"></i></h5></a><hr><a href=\"#reinf\" style=\"text-decoration:none\"><h2>Reinforcement Learning </h2></a><table id=\"reinf\" style=\"text-decoration:none\">\n<thead>\n<tr>\n<th>S.No</th>\n<th>Course Name</th>\n<th>University/Instructor(s)</th>\n<th>Course Webpage</th>\n<th>Video Lectures</th>\n<th>Year</th>\n</tr>\n</thead>\n<tbody>\n<tr>\n<td>1.</td>\n<td><strong>A Short Course on Reinforcement Learning</strong></td>\n<td>Satinder Singh, UMichigan</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLM4Pv4KYYzGy4cIFQ5C36-1jMNLab80Ky\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2011</td>\n</tr>\n<tr>\n<td>2.</td>\n<td><strong>Approximate Dynamic Programming</strong></td>\n<td>Dimitri P. Bertsekas, MIT</td>\n<td><a href=\"http://adpthu2014.weebly.com/slides--materials.html\" style=\"text-decoration:none\">Lecture-Slides</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLiCLbsFQNFAxOmVeqPhI5er1LGf2-L9I4\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2014</td>\n</tr>\n<tr>\n<td>3.</td>\n<td><strong>Introduction to Reinforcement Learning</strong></td>\n<td>David Silver, DeepMind</td>\n<td><a href=\"http://www0.cs.ucl.ac.uk/staff/d.silver/web/Teaching.html\" style=\"text-decoration:none\">UCL-RL</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLqYmG7hTraZDM-OYHWgPebj2MfCFzFObQ\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2015</td>\n</tr>\n<tr>\n<td>4.</td>\n<td><strong>Reinforcement Learning</strong></td>\n<td>Charles Isbell, Chris Pryby, GaTech; Michael Littman, Brown</td>\n<td><a href=\"https://eu.udacity.com/course/reinforcement-learning--ud600\" style=\"text-decoration:none\">RL-Udacity</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLAwxTw4SYaPnidDwo9e2c7ixIsu_pdSNp\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2015</td>\n</tr>\n<tr>\n<td>5.</td>\n<td><strong>Reinforcement Learning</strong></td>\n<td>Balaraman Ravindran, IIT Madras</td>\n<td><a href=\"https://www.cse.iitm.ac.in/~ravi/courses/Reinforcement%20Learning.html\" style=\"text-decoration:none\">RL-IITM</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLNdWVHi37UggQIVcaZcmtGGEQHY9W7d9D\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2016</td>\n</tr>\n<tr>\n<td>6.</td>\n<td><strong>Deep Reinforcement Learning</strong></td>\n<td>Sergey Levine, UC Berkeley</td>\n<td><a href=\"http://rail.eecs.berkeley.edu/deeprlcoursesp17/\" style=\"text-decoration:none\">CS-294</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLkFD6_40KJIwTmSbCv9OVJB3YaO4sFwkX\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2017</td>\n</tr>\n<tr>\n<td>7.</td>\n<td><strong>Deep Reinforcement Learning</strong></td>\n<td>Sergey Levine, UC Berkeley</td>\n<td><a href=\"http://rail.eecs.berkeley.edu/deeprlcourse-fa17/\" style=\"text-decoration:none\">CS-294</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLkFD6_40KJIznC9CDbVTjAF2oyt8_VAe3\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2017</td>\n</tr>\n<tr>\n<td>8.</td>\n<td><strong>Deep RL Bootcamp</strong></td>\n<td>Many legends, UC Berkeley</td>\n<td><a href=\"https://sites.google.com/view/deep-rl-bootcamp/lectures\" style=\"text-decoration:none\">Deep-RL</a></td>\n<td><a href=\"https://www.youtube.com/channel/UCTgM-VlXKuylPrZ_YGAJHOw/videos\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>9</td>\n<td><strong>Data Efficient Reinforcement Learning</strong></td>\n<td>Lots of Legends, Canary Islands</td>\n<td><a href=\"http://dalimeeting.org/dali2017/data-efficient-reinforcement-learning.html\" style=\"text-decoration:none\">DERL-17</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL-tWvTpyd1VAvDpxukup6w-SuZQQ7e8K8\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>10.</td>\n<td><strong>Deep Reinforcement Learning</strong></td>\n<td>Sergey Levine, UC Berkeley</td>\n<td><a href=\"http://rail.eecs.berkeley.edu/deeprlcourse-fa18/\" style=\"text-decoration:none\">CS-294-112</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLkFD6_40KJIxJMR-j5A1mkxK26gh_qg37\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>11.</td>\n<td><strong>Reinforcement Learning</strong></td>\n<td>Pascal Poupart, University of Waterloo</td>\n<td><a href=\"https://cs.uwaterloo.ca/~ppoupart/teaching/cs885-spring18/\" style=\"text-decoration:none\">CS-885</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLdAoL1zKcqTXFJniO3Tqqn6xMBBL07EDc\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>12.</td>\n<td><strong>Deep Reinforcement Learning and Control</strong></td>\n<td>Katerina Fragkiadaki and Tom Mitchell, CMU</td>\n<td><a href=\"http://www.andrew.cmu.edu/course/10-703/\" style=\"text-decoration:none\">10-703</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLpIxOj-HnDsNfvOwRKLsUobmnF2J1l5oV\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>13.</td>\n<td><strong>Reinforcement Learning and Optimal Control</strong></td>\n<td>Dimitri Bertsekas, Arizona State University</td>\n<td><a href=\"http://web.mit.edu/dimitrib/www/RLbook.html\" style=\"text-decoration:none\">RLOC</a></td>\n<td><a href=\"http://web.mit.edu/dimitrib/www/RLbook.html\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>14.</td>\n<td><strong>Reinforcement Learning</strong></td>\n<td>Emma Brunskill, Stanford University</td>\n<td><a href=\"http://web.stanford.edu/class/cs234/index.html\" style=\"text-decoration:none\">CS 234</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLoROMvodv4rOSOPzutgyCTapiGlY2Nd8u\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>15.</td>\n<td><strong>Reinforcement Learning Day</strong></td>\n<td>Lots of Legends, Microsoft Research, New York</td>\n<td><a href=\"https://www.microsoft.com/en-us/research/event/reinforcement-learning-day-2019/#!agenda\" style=\"text-decoration:none\">RLD-19</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLD7HFcN7LXRe9nWEX3Up-RiCDi6-0mqVC\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>16.</td>\n<td><strong>New Directions in Reinforcement Learning and Control</strong></td>\n<td>Lots of Legends, IAS, Princeton University</td>\n<td><a href=\"https://www.math.ias.edu/ndrlc\" style=\"text-decoration:none\">NDRLC-19</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLdDZb3TwJPZ61sGqd6cbWCmTc275NrKu3\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>17.</td>\n<td><strong>Deep Reinforcement Learning</strong></td>\n<td>Sergey Levine, UC Berkeley</td>\n<td><a href=\"http://rail.eecs.berkeley.edu/deeprlcourse-fa19\" style=\"text-decoration:none\">CS 285</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLkFD6_40KJIwhWJpGazJ9VSj9CFMkb79A\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2019</td>\n</tr>\n<tr>\n<td>18.</td>\n<td><strong>Deep Multi-Task and Meta Learning</strong></td>\n<td>Chelsea Finn, Stanford University</td>\n<td><a href=\"https://cs330.stanford.edu/\" style=\"text-decoration:none\">CS 330</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLoROMvodv4rMC6zfYmnD7UG3LVvwaITY5\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2019</td>\n</tr>\n<tr>\n<td>19.</td>\n<td><strong>RL-Theory Seminars</strong></td>\n<td>Lots of Legends, Earth</td>\n<td><a href=\"https://sites.google.com/view/rltheoryseminars/past-seminars\" style=\"text-decoration:none\">RL-theory-sem</a></td>\n<td><a href=\"https://www.youtube.com/channel/UCfBFutC9RbKK6p--B4R9ebA/videos\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2020 -</td>\n</tr>\n<tr>\n<td>20.</td>\n<td><strong>Deep Reinforcement Learning</strong></td>\n<td>Sergey Levine, UC Berkeley</td>\n<td><a href=\"http://rail.eecs.berkeley.edu/deeprlcourse-fa20\" style=\"text-decoration:none\">CS 285</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL_iWQOsE6TfURIIhCrlt-wj9ByIVpbfGc\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2020</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>21.</td>\n<td><strong>Introduction to Reinforcement Learning</strong></td>\n<td>Amir-massoud Farahmand, Vector Institute, University of Toronto</td>\n<td><a href=\"https://amfarahmand.github.io/IntroRL\" style=\"text-decoration:none\">RL-intro</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLCveiXxL2xNbiDq51a8iJwPRq2aO0ykrq\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2021</td>\n</tr>\n<tr>\n<td>22.</td>\n<td><strong>Reinforcement Learning</strong></td>\n<td>Antonio Celani and Emanuele Panizon, International Centre for Theoretical Physics</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLp0hSY2uBeP8q2G3mfHGVGvQFEMX0QRWM\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2021</td>\n</tr>\n<tr>\n<td>23.</td>\n<td><strong>Computational Sensorimotor Learning</strong></td>\n<td>Pulkit Agrawal, MIT-CSAIL</td>\n<td><a href=\"https://pulkitag.github.io/6.884/lectures\" style=\"text-decoration:none\">6.884-CSL</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLwNwxAG-kBxPMTIs2fKWSsf7HqL2TcC78\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2021</td>\n</tr>\n<tr>\n<td>24.</td>\n<td><strong>Reinforcement Learning</strong></td>\n<td>Dimitri P. Bertsekas, ASU/MIT</td>\n<td><a href=\"http://web.mit.edu/dimitrib/www/RLbook.html\" style=\"text-decoration:none\">RL-21</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLmH30BG15SIp79JRJ-MVF12uvB1qPtPzn\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2021</td>\n</tr>\n<tr>\n<td>25.</td>\n<td><strong>Reinforcement Learning</strong></td>\n<td>Sarath Chandar,  École Polytechnique de Montréal</td>\n<td><a href=\"https://chandar-lab.github.io/INF8953DE\" style=\"text-decoration:none\">INF8953DE</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLImtCgowF_ES_JdF_UcM60EXTcGZg67Ua\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2021</td>\n</tr>\n<tr>\n<td>26.</td>\n<td><strong>Deep Reinforcement Learning</strong></td>\n<td>Sergey Levine, UC Berkeley</td>\n<td><a href=\"http://rail.eecs.berkeley.edu/deeprlcourse\" style=\"text-decoration:none\">CS 285</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL_iWQOsE6TfXxKgI1GgyV1B_Xa0DxE5eH\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2021</td>\n</tr>\n<tr>\n<td>27.</td>\n<td><strong>Reinforcement Learning Lecture Series</strong></td>\n<td>Lots of Legends, DeepMind &amp; UC London</td>\n<td><a href=\"https://deepmind.com/learning-resources/reinforcement-learning-series-2021\" style=\"text-decoration:none\">RL-series</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLqYmG7hTraZDVH599EItlEWsUOsJbAodm\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2021</td>\n</tr>\n<tr>\n<td>28.</td>\n<td><strong>Reinforcement Learning</strong></td>\n<td>Dimitri P. Bertsekas, ASU/MIT</td>\n<td><a href=\"http://web.mit.edu/dimitrib/www/RLbook.html\" style=\"text-decoration:none\">RL-22</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLmH30BG15SIoXhxLldoio0BhsIY84YMDj\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2022</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n</tbody>\n</table><a href=\"https://deep-learning-drizzle.github.io/index.html#contents \"style=\"text-decoration:none\"><h5>Go to Contents <i class=\"em em-arrow_heading_up\"></i></h5></a><hr><a href=\"#probgm\" style=\"text-decoration:none\"><h2>Probabilistic Graphical Models </h2></a><table id=\"probgm\" style=\"text-decoration:none\">\n<thead>\n<tr>\n<th>S.No</th>\n<th>Course Name</th>\n<th>University/Instructor(s)</th>\n<th>Course WebPage</th>\n<th>Lecture Videos</th>\n<th>Year</th>\n</tr>\n</thead>\n<tbody>\n<tr>\n<td>1.</td>\n<td><strong>Probabilistic Graphical Models</strong></td>\n<td>Many Legends, MPI-IS</td>\n<td><a href=\"http://mlss.tuebingen.mpg.de/2013/2013/speakers.html\" style=\"text-decoration:none\">MLSS-Tuebingen</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLL0GjJzXhAWTRiW_ynFswMaiLSa0hjCZ3\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2013</td>\n</tr>\n<tr>\n<td>2.</td>\n<td><strong>Probabilistic Modeling and Machine Learning</strong></td>\n<td>Zoubin Ghahramani, University of Cambridge</td>\n<td><a href=\"https://www.ii.pwr.edu.pl/~gonczarek/zoubin.html\" style=\"text-decoration:none\">WUST-Wroclaw</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLwUOK5j_XOsdfVAGKErx9HqnrVZIuRbZ2\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2013</td>\n</tr>\n<tr>\n<td>3.</td>\n<td><strong>Probabilistic Graphical Models</strong></td>\n<td>Eric Xing, CMU</td>\n<td><a href=\"http://www.cs.cmu.edu/~epxing/Class/10708/lecture.html\" style=\"text-decoration:none\">10-708</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLI3nIOD-p5aoXrOzTd1P6CcLavu9rNtC-\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2014</td>\n</tr>\n<tr>\n<td>4.</td>\n<td><strong>Learning with Structured Data: An Introduction to Probabilistic Graphical Models</strong></td>\n<td>Christoph Lampert, IST Austria</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLEqoHzpnmTfA0wc1JxjoVVOrJlx8W0rGf\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2016</td>\n</tr>\n<tr>\n<td>5.</td>\n<td><strong>Probabilistic Graphical Models</strong></td>\n<td>Nicholas Zabaras, University of Notre Dame</td>\n<td><a href=\"https://www.zabaras.com/probabilistic-graphical-models\" style=\"text-decoration:none\">PGM</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLd-PuDzW85AcV4bgdu7wHPL37hm60W4RM\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>6.</td>\n<td><strong>Probabilistic Graphical Models</strong></td>\n<td>Eric Xing, CMU</td>\n<td><a href=\"https://sailinglab.github.io/pgm-spring-2019/\" style=\"text-decoration:none\">10-708</a></td>\n<td><a href=\"https://sailinglab.github.io/pgm-spring-2019/lectures\" style=\"text-decoration:none\">Lecture-Videos</a> <br> <a href=\"https://www.youtube.com/playlist?list=PLoZgVqqHOumTY2CAQHL45tQp6kmDnDcqn\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2019</td>\n</tr>\n<tr>\n<td>7.</td>\n<td><strong>Probabilistic Graphical Models</strong></td>\n<td>Eric Xing, CMU</td>\n<td><a href=\"https://www.cs.cmu.edu/~epxing/Class/10708-20/index.html\" style=\"text-decoration:none\">10-708</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLoZgVqqHOumTqxIhcdcpOAJOOimrRCGZn\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2020</td>\n</tr>\n<tr>\n<td>8.</td>\n<td><strong>Uncertainty Modeling in AI</strong></td>\n<td>Gim Hee Lee, National University of Singapura (NUS)</td>\n<td><a href=\"https://www.coursehero.com/sitemap/schools/2652-National-University-of-Singapore/courses/7821096-CS5340/\" style=\"text-decoration:none\">CS 5340 - CH</a>, <a href=\"https://github.com/clear-nus/CS5340-notebooks\" style=\"text-decoration:none\">CS 5340-NB</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLxg0CGqViygOb9Eyc8IXM27doxjp2SK0H\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2020-21</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n</tbody>\n</table><a href=\"https://deep-learning-drizzle.github.io/index.html#contents \"style=\"text-decoration:none\"><h5>Go to Contents <i class=\"em em-arrow_heading_up\"></i></h5></a><hr><a href=\"#bayesdl\" style=\"text-decoration:none\"><h2>Bayesian Deep Learning </h2></a><table id=\"bayesdl\">\n<thead>\n<tr>\n<th>S.No</th>\n<th>Course Name</th>\n<th>University/Instructor(s)</th>\n<th>Course WebPage</th>\n<th>Lecture Videos</th>\n<th>Year</th>\n</tr>\n</thead>\n<tbody>\n<tr>\n<td>1.</td>\n<td><strong>Bayesian Neural Networks, Variational Inference</strong></td>\n<td>Lots of Legends</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLM4Pv4KYYzGwUB4bFy183hwGhpL9ytvA1\">YouTube-Lectures</a></td>\n<td>2014-now</td>\n</tr>\n<tr>\n<td>2.</td>\n<td><strong>Variational Inference</strong></td>\n<td>Chieh Wu, Northeastern University</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLdk2fd27CQzSd1sQ3kBYL4vtv6GjXvPsE\">YouTube-Lectures</a></td>\n<td>2015</td>\n</tr>\n<tr>\n<td>3.</td>\n<td><strong>Deep Learning and Bayesian Methods</strong></td>\n<td>Lots of Legends, HSE Moscow</td>\n<td><a href=\"http://deepbayes.ru/2018\">DLBM-SS</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLe5rNUydzV9Q01vWCP9BV7NhJG3j7mz62\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>4.</td>\n<td><strong>Deep Learning and Bayesian Methods</strong></td>\n<td>Lots of Legends, HSE Moscow</td>\n<td><a href=\"http://deepbayes.ru/\">DLBM-SS</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLe5rNUydzV9QHe8VDStpU0o8Yp63OecdW\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>5.</td>\n<td><strong>Nordic Probabilistic AI</strong></td>\n<td>Lots of Legends, NTNU, Trondheim</td>\n<td><a href=\"https://github.com/probabilisticai/probai-2019\">ProbAI</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLRy-VW__9hV8s--JkHXZvnd26KgjRP2ik\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n</tbody>\n</table><a href=\"https://deep-learning-drizzle.github.io/index.html#contents \"style=\"text-decoration:none\"><h5>Go to Contents <i class=\"em em-arrow_heading_up\"></i></h5></a><hr><a href=\"#medimg\" style=\"text-decoration:none\"><h2>Medical Imaging </h2></a><table id=\"medimg\" style=\"text-decoration:none\">\n<thead>\n<tr>\n<th>S.No</th>\n<th>Course Name</th>\n<th>University/Instructor(s)</th>\n<th>Course WebPage</th>\n<th>Lecture Videos</th>\n<th>Year</th>\n</tr>\n</thead>\n<tbody>\n<tr>\n<td>1.</td>\n<td><strong>Medical Imaging Summer School</strong></td>\n<td>Lots of Legends, Sicily</td>\n<td><a href=\"http://iplab.dmi.unict.it/miss14/programme.html\" style=\"text-decoration:none\">MISS-14</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL_VeUGLULXQtvcCdAgmvKoJ1k0Ajhz-Qu\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2014</td>\n</tr>\n<tr>\n<td>2.</td>\n<td><strong>Biomedical Image Analysis Summer School</strong></td>\n<td>Lots of Legends, Paris</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLgSHH6boFf5uJAUT4ZRiAZc_ofXolkAGK\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2015</td>\n</tr>\n<tr>\n<td>3.</td>\n<td><strong>Medical Imaging Summer School</strong></td>\n<td>Lots of Legends, Sicily</td>\n<td><a href=\"http://iplab.dmi.unict.it/miss16/programme.html\" style=\"text-decoration:none\">MISS-16</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLTRCr47yTx5iXIYSneX3LKf16upaw59wa\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2016</td>\n</tr>\n<tr>\n<td>4.</td>\n<td><strong>OPtical and UltraSound imaging - OPUS</strong></td>\n<td>Lots of Legends, Université de Lyon, France</td>\n<td><a href=\"https://opus2016lyon.sciencesconf.org/resource/page/id/2\" style=\"text-decoration:none\">OPUS'16</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL95ayoVLX8GdUKbxu-R9WqRWwzdWcKjti\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2016</td>\n</tr>\n<tr>\n<td>5.</td>\n<td><strong>Medical Imaging Summer School</strong></td>\n<td>Lots of Legends, Sicily</td>\n<td><a href=\"http://iplab.dmi.unict.it/miss/programme.htm\" style=\"text-decoration:none\">MISS-18</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL_VeUGLULXQux1dV4iA3XuMX6AueJmGGa\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>6.</td>\n<td><strong>Seminar on AI in Healthcare</strong></td>\n<td>Lots of Legends, Stanford</td>\n<td><a href=\"http://cs522.stanford.edu/2018/index.html\" style=\"text-decoration:none\">CS 522</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLYn-ZmPR1DtNQJ-ot-L2V2EgUEH6OH_7w\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>7.</td>\n<td><strong>Machine Learning for Healthcare</strong></td>\n<td>David Sontag, Peter Szolovits, CSAIL MIT</td>\n<td><a href=\"https://mlhc19mit.github.io/\" style=\"text-decoration:none\">MLHC-19</a> <br/><a href=\"https://ocw.mit.edu/courses/electrical-engineering-and-computer-science/6-s897-machine-learning-for-healthcare-spring-2019/lecture-notes/\" style=\"text-decoration:none\">MIT 6.S897</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLUl4u3cNGP60B0PQXVQyGNdCyCTDU1Q5j\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2019</td>\n</tr>\n<tr>\n<td>8.</td>\n<td><strong>Deep Learning and Medical Applications</strong></td>\n<td>Lots of Legends, IPAM, UCLA</td>\n<td><a href=\"https://www.ipam.ucla.edu/programs/workshops/deep-learning-and-medical-applications/?tab=schedule\" style=\"text-decoration:none\">DLM-20</a></td>\n<td><a href=\"https://www.ipam.ucla.edu/programs/workshops/deep-learning-and-medical-applications/?tab=schedule\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>2020</td>\n</tr>\n<tr>\n<td>9.</td>\n<td><strong>Stanford Symposium on Artificial Intelligence in Medicine and Imaging</strong></td>\n<td>Lots of Legends, Stanford AIMI</td>\n<td><a href=\"https://aimi.stanford.edu/news-events/aimi-symposium/agenda\" style=\"text-decoration:none\">AIMI-20</a></td>\n<td><a href=\"https://www.youtube.com/watch?v=tR2ObiL4il8&amp;list=PLe6zdIMe5B7IR0oDOobXBDBlYY1eqLYPx\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2020</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n</tbody>\n</table><a href=\"https://deep-learning-drizzle.github.io/index.html#contents \"style=\"text-decoration:none\"><h5>Go to Contents <i class=\"em em-arrow_heading_up\"></i></h5></a><hr><a href=\"#graphnn\" style=\"text-decoration:none\"><h2>Graph Neural Networks (Geometric DL) </h2></a><table id=\"graphnn\" style=\"text-decoration:none\">\n<thead>\n<tr>\n<th>S.No</th>\n<th>Course Name</th>\n<th>University/Instructor(s)</th>\n<th>Course WebPage</th>\n<th>Lecture Videos</th>\n<th>Year</th>\n</tr>\n</thead>\n<tbody>\n<tr>\n<td>1.</td>\n<td><strong>Deep learning on graphs and manifolds</strong></td>\n<td>Michael Bronstein, Technion</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLH39kM3nuavcVOUIIBraBNHjv-CwEd1uV\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>2.</td>\n<td><strong>Geometric Deep Learning on Graphs and Manifolds</strong></td>\n<td>Michael Bronstein, Technische Universität München</td>\n<td><code>None</code></td>\n<td><a href=\"https://streams.tum.de/Mediasite/Play/1f3b894e78f6400daa7885c886b936fb1d\" style=\"text-decoration:none\">Lec-part1</a>,  <br/><a href=\"https://streams.tum.de/Mediasite/Play/6039c846b2f84e7a806024c06e3f5c5c1d\" style=\"text-decoration:none\">Lec-part2</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>3.</td>\n<td><strong>Eurographics Symposium on Geometry Processing - Graduate School</strong></td>\n<td>Lots of Legends, SIGGRAPH, London</td>\n<td><a href=\"http://geometry.cs.ucl.ac.uk/SGP2017/?p=gradschool\" style=\"text-decoration:none\">SGP-2017</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLOp-ngXvomHArqntgLVNzuJNdzNx3rDjZ\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>4.</td>\n<td><strong>Eurographics Symposium on Geometry Processing - Graduate School</strong></td>\n<td>Lots of Legends, SIGGRAPH, Paris</td>\n<td><a href=\"https://sgp2018.sciencesconf.org/resource/page/id/7\" style=\"text-decoration:none\">SGP-2018</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLvcoRb-DvAmgpp8LYw7dUvLxh-1Vrrm-v\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>5.</td>\n<td><strong>Analysis of Networks: Mining and Learning with Graphs</strong></td>\n<td>Jure Leskovec, Stanford University</td>\n<td><a href=\"http://snap.stanford.edu/class/cs224w-2018/\" style=\"text-decoration:none\">CS224W</a></td>\n<td><a href=\"http://snap.stanford.edu/class/cs224w-2018/\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>6.</td>\n<td><strong>Machine Learning with Graphs</strong></td>\n<td>Jure Leskovec, Stanford University</td>\n<td><a href=\"http://snap.stanford.edu/class/cs224w-2019/\" style=\"text-decoration:none\">CS224W</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL-Y8zK4dwCrQyASidb2mjj_itW2-YYx6-\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>7.</td>\n<td>Geometry and Learning from Data in 3D and Beyond -<strong>Geometry and Learning from Data Tutorials</strong></td>\n<td>Lots of Legends, IPAM UCLA</td>\n<td><a href=\"http://www.ipam.ucla.edu/programs/workshops/geometry-and-learning-from-data-tutorials\" style=\"text-decoration:none\">GLDT</a></td>\n<td><a href=\"http://www.ipam.ucla.edu/programs/workshops/geometry-and-learning-from-data-tutorials/?tab=schedule\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>8.</td>\n<td>Geometry and Learning from Data in 3D and Beyond - <strong>Geometric Processing</strong></td>\n<td>Lots of Legends, IPAM UCLA</td>\n<td><a href=\"http://www.ipam.ucla.edu/programs/workshops/workshop-i-geometric-processing/\" style=\"text-decoration:none\">GeoPro</a></td>\n<td><a href=\"http://www.ipam.ucla.edu/programs/workshops/workshop-i-geometric-processing/?tab=schedule\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>9.</td>\n<td>Geometry and Learning from Data in 3D and Beyond - <strong>Shape Analysis</strong></td>\n<td>Lots of Legends, IPAM UCLA</td>\n<td><a href=\"http://www.ipam.ucla.edu/programs/workshops/workshop-ii-shape-analysis/\" style=\"text-decoration:none\">Shape-Analysis</a></td>\n<td><a href=\"http://www.ipam.ucla.edu/programs/workshops/workshop-ii-shape-analysis/?tab=schedule\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>10.</td>\n<td>Geometry and Learning from Data in 3D and Beyond - <strong>Geometry of Big Data</strong></td>\n<td>Lots of Legends, IPAM UCLA</td>\n<td><a href=\"http://www.ipam.ucla.edu/programs/workshops/workshop-iii-geometry-of-big-data\" style=\"text-decoration:none\">Geo-BData</a></td>\n<td><a href=\"http://www.ipam.ucla.edu/programs/workshops/workshop-iii-geometry-of-big-data/?tab=schedule\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>11.</td>\n<td>Geometry and Learning from Data in 3D and Beyond - <strong>Deep Geometric Learning of Big Data and Applications</strong></td>\n<td>Lots of Legends, IPAM UCLA</td>\n<td><a href=\"http://www.ipam.ucla.edu/programs/workshops/workshop-iv-deep-geometric-learning-of-big-data-and-applications\" style=\"text-decoration:none\">DGL-BData</a></td>\n<td><a href=\"http://www.ipam.ucla.edu/programs/workshops/workshop-iv-deep-geometric-learning-of-big-data-and-applications/?tab=schedule\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>12.</td>\n<td><strong>Israeli Geometric Deep Learning</strong></td>\n<td>Lots of Legends, Israel</td>\n<td><a href=\"https://gdl-israel.github.io/schedule.html\" style=\"text-decoration:none\">iGDL-20</a></td>\n<td><a href=\"https://www.youtube.com/watch?v=c8_32IVn-sg\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>2020</td>\n</tr>\n<tr>\n<td>13.</td>\n<td><strong>Machine Learning for Graphs and Sequential Data</strong></td>\n<td>Stephan Günnemann, Technische Universität München (TUM)</td>\n<td><a href=\"https://www.in.tum.de/en/daml/teaching/summer-term-2020/machine-learning-for-graphs-and-sequential-data/\" style=\"text-decoration:none\">MLGS-20</a></td>\n<td><a href=\"https://www.in.tum.de/daml/teaching/mlgs/\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>S2020</td>\n</tr>\n<tr>\n<td>14.</td>\n<td><strong>Machine Learning with Graphs</strong></td>\n<td>Jure Leskovec, Stanford</td>\n<td><a href=\"http://web.stanford.edu/class/cs224w\" style=\"text-decoration:none\">CS224W</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLoROMvodv4rPLKxIpqhjhPgdQy7imNkDn\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>W2021</td>\n</tr>\n<tr>\n<td>15.</td>\n<td><strong>Geometric Deep Learning</strong> - AMMI</td>\n<td>Lots of Legends, Virtual</td>\n<td><a href=\"https://geometricdeeplearning.com/lectures\" style=\"text-decoration:none\">GDL-AMMI</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLn2-dEmQeTfQ8YVuHBOvAhUlnIPYxkeu3\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2021</td>\n</tr>\n<tr>\n<td>16.</td>\n<td><strong>Summer School on Geometric Deep Learning</strong> -</td>\n<td>Lots of Legends, DTU, DIKU &amp; AAU</td>\n<td><a href=\"https://geometric-deep-learning.compute.dtu.dk\" style=\"text-decoration:none\">GDL- DTU, DIKU &amp; AAU</a></td>\n<td><a href=\"https://geometric-deep-learning.compute.dtu.dk/talks-and-materials\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>2021</td>\n</tr>\n<tr>\n<td>17.</td>\n<td><strong>Graph Neural Networks</strong></td>\n<td>Alejandro Ribeiro, University of Pennsylvania</td>\n<td><a href=\"https://gnn.seas.upenn.edu\" style=\"text-decoration:none\">ESE 514</a></td>\n<td><a href=\"https://www.youtube.com/channel/UC_YPrqpiEqkeGOG1TCt0giQ/playlists\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2021</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n</tbody>\n</table><a href=\"https://deep-learning-drizzle.github.io/index.html#contents \"style=\"text-decoration:none\"><h5>Go to Contents <i class=\"em em-arrow_heading_up\"></i></h5></a><hr><a href=\"#nlpnn\" style=\"text-decoration:none\"><h2>Natural Language Processing </h2></a><table id=\"nlpnn\" style=\"text-decoration:none\">\n<thead>\n<tr>\n<th>S.No</th>\n<th>Course Name</th>\n<th>University/Instructor(s)</th>\n<th>Course WebPage</th>\n<th>Lecture Videos</th>\n<th>Year</th>\n</tr>\n</thead>\n<tbody>\n<tr>\n<td>1.</td>\n<td><strong>Computational Linguistics I</strong></td>\n<td>Jordan Boyd-Graber, University of Maryland</td>\n<td><a href=\"http://users.umiacs.umd.edu/~jbg/teaching/CMSC_723/\" style=\"text-decoration:none\">CMS-723</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLegWUnz91WfuPebLI97-WueAP90JO-15i\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2013-2018</td>\n</tr>\n<tr>\n<td>2.</td>\n<td><strong>Deep Learning for Natural Language Processing</strong></td>\n<td>Nils Reimers, TU Darmstadt</td>\n<td><a href=\"https://github.com/UKPLab/deeplearning4nlp-tutorial\" style=\"text-decoration:none\">DL4NLP</a></td>\n<td><a href=\"https://www.youtube.com/channel/UC1zCuTrfpjT6Sv2kJk-JkvA/videos\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2015-2017</td>\n</tr>\n<tr>\n<td>3.</td>\n<td><strong>Deep Learning for Natural Language Processing</strong></td>\n<td>Many Legends, DeepMind-Oxford</td>\n<td><a href=\"http://www.cs.ox.ac.uk/teaching/courses/2016-2017/dl/\" style=\"text-decoration:none\">DL-NLP</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL613dYIGMXoZBtZhbyiBqb0QtgK6oJbpm\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>4.</td>\n<td><strong>Deep Learning for Speech &amp; Language</strong></td>\n<td>UPC Barcelona</td>\n<td><a href=\"https://telecombcn-dl.github.io/2017-dlsl/\" style=\"text-decoration:none\">DL-SL</a></td>\n<td><a href=\"https://telecombcn-dl.github.io/2017-dlsl/\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>5.</td>\n<td><strong>Neural Networks for Natural Language Processing</strong></td>\n<td>Graham Neubig, CMU</td>\n<td><a href=\"http://www.phontron.com/class/nn4nlp2017/\" style=\"text-decoration:none\">NN4NLP</a>   <a href=\"https://github.com/neubig/nn4nlp-code\" style=\"text-decoration:none\">Code</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL8PYTP1V4I8ABXzdqtOpB_eqBlVAz_xPT\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>6.</td>\n<td><strong>Neural Networks for Natural Language Processing</strong></td>\n<td>Graham Neubig, CMU</td>\n<td><a href=\"http://www.phontron.com/class/nn4nlp2018/\" style=\"text-decoration:none\">NN4-NLP</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL8PYTP1V4I8Ba7-rY4FoB4-jfuJ7VDKEE\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>7.</td>\n<td><strong>Deep Learning for NLP</strong></td>\n<td>Min-Yen Kan, NUS</td>\n<td><a href=\"https://www.comp.nus.edu.sg/~kanmy/courses/6101_1810/\" style=\"text-decoration:none\">CS-6101</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLllwxvcS7ca5eD44KTCiT7Rmu_hFAafXB\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>8.</td>\n<td><strong>Neural Networks for Natural Language Processing</strong></td>\n<td>Graham Neubig, CMU</td>\n<td><a href=\"http://www.phontron.com/class/nn4nlp2019/\" style=\"text-decoration:none\">NN4NLP</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL8PYTP1V4I8Ajj7sY6sdtmjgkt7eo2VMs\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>9.</td>\n<td><strong>Natural Language Processing with Deep Learning</strong></td>\n<td>Abigail See, Chris Manning, Richard Socher, Stanford University</td>\n<td><a href=\"http://web.stanford.edu/class/cs224n/\" style=\"text-decoration:none\">CS224n</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLoROMvodv4rOhcuXMZkNm7j3fVwBBY42z\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>10.</td>\n<td><strong>Natural Language Understanding</strong></td>\n<td>Bill MacCartney and Christopher Potts</td>\n<td><a href=\"https://web.stanford.edu/class/cs224u\" style=\"text-decoration:none\">CS224U</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLoROMvodv4rObpMCir6rNNUlFAn56Js20\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2019</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>11.</td>\n<td><strong>Neural Networks for Natural Language Processing</strong></td>\n<td>Graham Neubig, Carnegie Mellon University</td>\n<td><a href=\"http://www.phontron.com/class/nn4nlp2020/schedule.html\" style=\"text-decoration:none\">CS 11-747</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL8PYTP1V4I8CJ7nMxMC8aXv8WqKYwj-aJ\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2020</td>\n</tr>\n<tr>\n<td>12.</td>\n<td><strong>Advanced Natural Language Processing</strong></td>\n<td>Mohit Iyyer, UMass Amherst</td>\n<td><a href=\"https://people.cs.umass.edu/~miyyer/cs685\" style=\"text-decoration:none\">CS 685</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLWnsVgP6CzadmQX6qevbar3_vDBioWHJL\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2020</td>\n</tr>\n<tr>\n<td>13.</td>\n<td><strong>Machine Translation</strong></td>\n<td>Philipp Koehn, Johns Hopkins University</td>\n<td><a href=\"http://mt-class.org/jhu/syllabus.html\" style=\"text-decoration:none\">EN 601.468/668</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLQrCiUDqDLG0lQX54o9jB4phJ-SLI6ZBQ\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2020</td>\n</tr>\n<tr>\n<td>14.</td>\n<td><strong>Neural Networks for NLP</strong></td>\n<td>Graham Neubig, Carnegie Mellon University</td>\n<td><a href=\"http://www.phontron.com/class/nn4nlp2021\" style=\"text-decoration:none\">CS 11-747</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL8PYTP1V4I8AkaHEJ7lOOrlex-pcxS-XV\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2021</td>\n</tr>\n<tr>\n<td>15.</td>\n<td><strong>Deep Learning for Natural Language Processing</strong></td>\n<td>Kyunghyun Cho, New York University</td>\n<td><a href=\"https://drive.google.com/drive/folders/1ykXBtophaY_65VHK_8yDzZQJwfJDD5Ve\" style=\"text-decoration:none\">DS-GA 1011</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLdH9u0f1XKW_s-c8EcgJpn_HJz5Jj1IRf\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2021</td>\n</tr>\n<tr>\n<td>16.</td>\n<td><strong>Natural Language Processing with Deep Learning</strong></td>\n<td>Chris Manning, Stanford University</td>\n<td><a href=\"https://web.stanford.edu/class/archive/cs/cs224n/cs224n.1214/\" style=\"text-decoration:none\">CS224n</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLoROMvodv4rOSH4v6133s9LFPRHjEmbmJ\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2021</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n</tbody>\n</table><a href=\"https://deep-learning-drizzle.github.io/index.html#contents \"style=\"text-decoration:none\"><h5>Go to Contents <i class=\"em em-arrow_heading_up\"></i></h5></a><hr><a href=\"#asrnn\" style=\"text-decoration:none\"><h2>Automatic Speech Recognition </h2></a><table id=\"asrnn\" style=\"text-decoration:none\">\n<thead>\n<tr>\n<th>S.No</th>\n<th>Course Name</th>\n<th>University/Instructor(s)</th>\n<th>Course WebPage</th>\n<th>Lecture Videos</th>\n<th>Year</th>\n</tr>\n</thead>\n<tbody>\n<tr>\n<td>1.</td>\n<td><strong>Deep Learning for Speech &amp; Language</strong></td>\n<td>UPC Barcelona</td>\n<td><a href=\"https://telecombcn-dl.github.io/2017-dlsl/\" style=\"text-decoration:none\">DL-SL</a></td>\n<td><a href=\"https://telecombcn-dl.github.io/2017-dlsl/\" style=\"text-decoration:none\">Lecture-Videos</a> <br/> <a href=\"https://www.youtube.com/playlist?list=PL-5DCZHuHZkWeF9ljIjoC_X5gHRLNtIkU\" style=\"text-decoration:none\">YouTube-Videos</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>2.</td>\n<td><strong>Speech and Audio in the Northeast</strong></td>\n<td>Many Legends, Google NYC</td>\n<td><a href=\"http://www.saneworkshop.org/sane2015/\" style=\"text-decoration:none\">SANE-15</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLBJWRPcgwk7sZOB4UTVilWWnRg84L9o5i\" style=\"text-decoration:none\">YouTube-Videos</a></td>\n<td>2015</td>\n</tr>\n<tr>\n<td>3.</td>\n<td><strong>Automatic Speech Recognition</strong></td>\n<td>Samudra Vijaya K, TIFR</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/channel/UCHk6uq1Cr9J3k5KNmIsYUNw/videos\" style=\"text-decoration:none\">YouTube-Videos</a></td>\n<td>2016</td>\n</tr>\n<tr>\n<td>4.</td>\n<td><strong>Speech and Audio in the Northeast</strong></td>\n<td>Many Legends, Google NYC</td>\n<td><a href=\"http://www.saneworkshop.org/sane2017/\" style=\"text-decoration:none\">SANE-17</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLBJWRPcgwk7tNLaBVu_S90ZQSblO3bwjg\" style=\"text-decoration:none\">YouTube-Videos</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>5.</td>\n<td><strong>Speech and Audio in the Northeast</strong></td>\n<td>Many Legends, Google Cambridge</td>\n<td><a href=\"http://www.saneworkshop.org/sane2018/\" style=\"text-decoration:none\">SANE-18</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLBJWRPcgwk7sjMANn8jqosyHIMe6DJhmn\" style=\"text-decoration:none\">YouTube-Videos</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>-1.</td>\n<td><strong>Deep Learning for Speech Recognition</strong></td>\n<td>Many Legends, AoE</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLM4Pv4KYYzGyFYCXV6YPWAKVOR2gmHnQd\" style=\"text-decoration:none\">YouTube-Videos</a></td>\n<td>2015-2018</td>\n</tr>\n</tbody>\n</table><a href=\"https://deep-learning-drizzle.github.io/index.html#contents \"style=\"text-decoration:none\"><h5>Go to Contents <i class=\"em em-arrow_heading_up\"></i></h5></a><hr><a href=\"#cvnn\" style=\"text-decoration:none\"><h2>Modern Computer Vision </h2></a><table id=\"cvnn\" style=\"text-decoration:none\">\n<thead>\n<tr>\n<th>S.No</th>\n<th>Course Name</th>\n<th>University/Instructor(s)</th>\n<th>Course WebPage</th>\n<th>Lecture Videos</th>\n<th>Year</th>\n</tr>\n</thead>\n<tbody>\n<tr>\n<td>1.</td>\n<td><strong>Microsoft Computer Vision Summer School</strong> - (classical)</td>\n<td>Lots of Legends, Lomonosov Moscow State University</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLbwKcm5vdiSYU54xFUG1zoxQTulqvIcJu\" style=\"text-decoration:none\">YouTube-Videos</a> <br> <a href=\"https://www.youtube.com/playlist?list=PL-_cKNuVAYAUp0eCL7KO8QY4ETY3tIDFH\" style=\"text-decoration:none\">Russian-mirror</a></td>\n<td>2011</td>\n</tr>\n<tr>\n<td>2.</td>\n<td><strong>Computer Vision</strong> - (classical)</td>\n<td>Mubarak Shah, UCF</td>\n<td><a href=\"http://crcv.ucf.edu/courses/CAP5415/Fall2012/index.php\" style=\"text-decoration:none\">CAP-5415</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLd3hlSJsX_Imk_BPmB_H3AQjFKZS9XgZm\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2012</td>\n</tr>\n<tr>\n<td>3.</td>\n<td><strong>Image and Multidimensional Signal Processing</strong> - (classical)</td>\n<td>William Hoff, Colorado School of Mines</td>\n<td><a href=\"http://inside.mines.edu/~whoff/courses/EENG510\" style=\"text-decoration:none\">CSCI 510/EENG 510</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLyED3W677ALNv8Htn0f9Xh-AHe1aZPftv\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2012</td>\n</tr>\n<tr>\n<td>4.</td>\n<td><strong>Computer Vision</strong> - (classical)</td>\n<td>William Hoff, Colorado School of Mines</td>\n<td><a href=\"http://inside.mines.edu/~whoff/courses/EENG512/index.htm\" style=\"text-decoration:none\">CSCI 512/EENG 512</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL4B3F8D4A5CAD8DA3\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2012</td>\n</tr>\n<tr>\n<td>5.</td>\n<td><strong>Image and Video Processing: From Mars to Hollywood with a Stop at the Hospital</strong></td>\n<td>Guillermo Sapiro, Duke University</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLZ9qNFMHZ-A79y1StvUUqgyL-O0fZh2rs\" style=\"text-decoration:none\">YouTube-Videos</a></td>\n<td>2013</td>\n</tr>\n<tr>\n<td>6.</td>\n<td><strong>Multiple View Geometry</strong> (classical)</td>\n<td>Daniel Cremers, Technische Universität München</td>\n<td><a href=\"https://vision.in.tum.de/teaching/ss2014/mvg2014\" style=\"text-decoration:none\">mvg</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLTBdjV_4f-EJn6udZ34tht9EVIW7lbeo4\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2013</td>\n</tr>\n<tr>\n<td>7.</td>\n<td><strong>Mathematical Methods for Robotics, Vision, and Graphics</strong></td>\n<td>Justin Solomon, Stanford University</td>\n<td><a href=\"http://graphics.stanford.edu/courses/cs205a/\" style=\"text-decoration:none\">CS-205A</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLQ3UicqQtfNvQ_VzflHYKhAqZiTxOkSwi\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2013</td>\n</tr>\n<tr>\n<td>8.</td>\n<td><strong>Computer Vision</strong> - (classical)</td>\n<td>Mubarak Shah, UCF</td>\n<td><a href=\"http://crcv.ucf.edu/courses/CAP5415/Fall2014/index.php\" style=\"text-decoration:none\">CAP-5415</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLd3hlSJsX_ImKP68wfKZJVIPTd8Ie5u-9\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2014</td>\n</tr>\n<tr>\n<td>9.</td>\n<td><strong>Computer Vision for Visual Effects</strong> (classical)</td>\n<td>Rich Radke, Rensselaer Polytechnic Institute</td>\n<td><a href=\"https://www.ecse.rpi.edu/~rjradke/cvfxcourse.html\" style=\"text-decoration:none\">ECSE-6969</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLuh62Q4Sv7BUJlKlt84HFqSWfW36MDd5a\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2014</td>\n</tr>\n<tr>\n<td>10.</td>\n<td><strong>Autonomous Navigation for Flying Robots</strong></td>\n<td>Juergen Sturm, Technische Universität München</td>\n<td><a href=\"https://jsturm.de/wp/teaching/autonavx-slides/\" style=\"text-decoration:none\">Autonavx</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLTBdjV_4f-EKBCUs1HmMtsnXv4JUoFrzg\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2014</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>11.</td>\n<td><strong>SLAM - Mobile Robotics</strong></td>\n<td>Cyrill Stachniss, Universitaet Freiburg</td>\n<td><a href=\"http://ais.informatik.uni-freiburg.de/teaching/ws13/mapping/\" style=\"text-decoration:none\">RobotMapping</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLgnQpQtFTOGQrZ4O5QzbIHgl3b1JHimN_\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2014</td>\n</tr>\n<tr>\n<td>12.</td>\n<td><strong>Computational Photography</strong></td>\n<td>Irfan Essa, David Joyner, Arpan Chakraborty</td>\n<td><a href=\"https://eu.udacity.com/course/computational-photography--ud955\" style=\"text-decoration:none\">CP-Udacity</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLAwxTw4SYaPn-unAWtRMleY4peSe4OzIY\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2015</td>\n</tr>\n<tr>\n<td>13.</td>\n<td><strong>Introduction to Digital Image Processing</strong></td>\n<td>Rich Radke, Rensselaer Polytechnic Institute</td>\n<td><a href=\"https://www.ecse.rpi.edu/~rjradke/improccourse.html\" style=\"text-decoration:none\">ECSE-4540</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLuh62Q4Sv7BUf60vkjePfcOQc8sHxmnDX\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2015</td>\n</tr>\n<tr>\n<td>14.</td>\n<td><strong>Lectures on Digital Photography</strong></td>\n<td>Marc Levoy, Stanford/Google Research</td>\n<td><a href=\"https://sites.google.com/site/marclevoylectures/\" style=\"text-decoration:none\">LoDP</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL7ddpXYvFXspUN0N-gObF1GXoCA-DA-7i\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2016</td>\n</tr>\n<tr>\n<td>15.</td>\n<td><strong>Introduction to Computer Vision</strong> (foundation)</td>\n<td>Aaron Bobick, Irfan Essa, Arpan Chakraborty</td>\n<td><a href=\"https://eu.udacity.com/course/introduction-to-computer-vision--ud810\" style=\"text-decoration:none\">CV-Udacity</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLAwxTw4SYaPnbDacyrK_kB_RUkuxQBlCm\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2016</td>\n</tr>\n<tr>\n<td>16.</td>\n<td><strong>Computer Vision</strong></td>\n<td>Syed Afaq Ali Shah, University of Western Australia</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLvqB6_mDBCdlnT84LK_NvbOqcXLlOTR8j\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2016</td>\n</tr>\n<tr>\n<td>17.</td>\n<td><strong>Photogrammetry I &amp; II</strong></td>\n<td>Cyrill Stachniss, University of Bonn</td>\n<td><a href=\"https://www.ipb.uni-bonn.de/photogrammetry-i-ii/\" style=\"text-decoration:none\">PG-I&amp;II</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLgnQpQtFTOGRsi5vzy9PiQpNWHjq-bKN1\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2016</td>\n</tr>\n<tr>\n<td>18.</td>\n<td><strong>Deep Learning for Computer Vision</strong></td>\n<td>UPC Barcelona</td>\n<td><a href=\"http://imatge-upc.github.io/telecombcn-2016-dlcv/\" style=\"text-decoration:none\">DLCV-16</a> <br/> <a href=\"https://telecombcn-dl.github.io/2017-dlcv/\" style=\"text-decoration:none\">DLCV-17</a> <br/> <a href=\"https://telecombcn-dl.github.io/2018-dlcv/\" style=\"text-decoration:none\">DLCV-18</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL-5eMc3HQTBbuaTFP4wsfD2Y2VqEfQcaP\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2016-2018</td>\n</tr>\n<tr>\n<td>19.</td>\n<td><strong>Convolutional Neural Networks</strong></td>\n<td>Andrew Ng, Stanford University</td>\n<td><a href=\"https://www.deeplearning.ai/deep-learning-specialization/\" style=\"text-decoration:none\">DeepLearning.AI</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLkDaE6sCZn6Gl29AoE31iwdVwSG-KnDzF\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>20.</td>\n<td><strong>Variational Methods for Computer Vision</strong></td>\n<td>Daniel Cremers, Technische Universität München</td>\n<td><a href=\"https://vision.in.tum.de/teaching/ws2016/vmcv2016\" style=\"text-decoration:none\">VMCV</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLTBdjV_4f-EJ7A2iIH5L5ztqqrWYjP2RI\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>21.</td>\n<td><strong>Winter School on Computer Vision</strong></td>\n<td>Lots of Legends, Israel Institute for Advanced Studies</td>\n<td><a href=\"http://www.as.huji.ac.il/cse\" style=\"text-decoration:none\">WS-CV</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLTn74Qx5mPsSniA5tt6W-o0OGYEeKScug\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>22.</td>\n<td><strong>Deep Learning for Visual Computing</strong></td>\n<td>Debdoot Sheet, IIT-Kgp</td>\n<td><a href=\"https://onlinecourses.nptel.ac.in/noc18_ee08/preview\" style=\"text-decoration:none\">Nptel</a>  <a href=\"https://github.com/iitkliv/dlvcnptel\" style=\"text-decoration:none\">Notebooks</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLuv3GM6-gsE1Biyakccxb3FAn4wBLyfWf\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>23.</td>\n<td><strong>The Ancient Secrets of Computer Vision</strong></td>\n<td>Joseph Redmon, Ali Farhadi</td>\n<td><a href=\"https://pjreddie.com/courses/computer-vision/\" style=\"text-decoration:none\">TASCV</a> ; <a href=\"https://courses.cs.washington.edu/courses/cse455/18sp/\" style=\"text-decoration:none\">TASCV-UW</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLjMXczUzEYcHvw5YYSU92WrY8IwhTuq7p\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>24.</td>\n<td><strong>Modern Robotics</strong></td>\n<td>Kevin Lynch, Northwestern Robotics</td>\n<td><a href=\"http://hades.mech.northwestern.edu/index.php/Modern_Robotics\" style=\"text-decoration:none\">modern-robot</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLggLP4f-rq02vX0OQQ5vrCxbJrzamYDfx\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>25.</td>\n<td><strong>Digial Image Processing</strong></td>\n<td>Alex Bronstein, Technion</td>\n<td><a href=\"https://vistalab-technion.github.io/cs236860/info/\" style=\"text-decoration:none\">CS236860</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLM0a6Z788YAZOxUyWda9y3N_i2upIj1Ep\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>26.</td>\n<td><strong>Mathematics of Imaging</strong> - Variational Methods and Optimization in Imaging</td>\n<td>Lots of Legends, Institut Henri Poincaré</td>\n<td><a href=\"http://www.ihp.fr/sites/default/files/conf1-04_au_08_fevr-imaging2019.pdf\" style=\"text-decoration:none\">Workshop-1</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL9kd4mpdvWcAzD5Aq-P1TrLLiYckrloxw\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>27.</td>\n<td><strong>Deep Learning for Video</strong></td>\n<td>Xavier Giró, UPC Barcelona</td>\n<td><a href=\"https://mcv-m6-video.github.io/deepvideo-2019/\" style=\"text-decoration:none\">deepvideo</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL-5eMc3HQTBbPY-627Gornj09pZrNQgPD\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>28.</td>\n<td><strong>Statistical modeling for shapes and imaging</strong></td>\n<td>Lots of Legends, Institut Henri Poincaré, Paris</td>\n<td><a href=\"https://imaging-in-paris.github.io/semester2019/workshop2prog\" style=\"text-decoration:none\">workshop-2</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL9kd4mpdvWcAzD5Aq-P1TrLLiYckrloxw\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>29.</td>\n<td><strong>Imaging and machine learning</strong></td>\n<td>Lots of Legends, Institut Henri Poincaré, Paris</td>\n<td><a href=\"https://imaging-in-paris.github.io/semester2019/workshop3prog\" style=\"text-decoration:none\">workshop-3</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL9kd4mpdvWcAzD5Aq-P1TrLLiYckrloxw\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>30.</td>\n<td><strong>Computer Vision</strong></td>\n<td>Jayanta Mukhopadhyay, IIT Kgp</td>\n<td><a href=\"https://nptel.ac.in/courses/106/105/106105216/\" style=\"text-decoration:none\">CV-nptel</a></td>\n<td><a href=\"https://nptel.ac.in/courses/106/105/106105216/\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>31.</td>\n<td><strong>Deep Learning for Computer Vision</strong></td>\n<td>Justin Johnson, UMichigan</td>\n<td><a href=\"https://web.eecs.umich.edu/~justincj/teaching/eecs498/\" style=\"text-decoration:none\">EECS 498-007</a></td>\n<td><a href=\"http://leccap.engin.umich.edu/leccap/site/jhygcph151x25gjj1f0\" style=\"text-decoration:none\">Lecture-Videos</a> <br/> <a href=\"https://www.youtube.com/playlist?list=PL5-TkQAfAZFbzxjBHtzdVCWE0Zbhomg7r\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>32.</td>\n<td><strong>Sensors and State Estimation 2</strong></td>\n<td>Cyrill Stachniss, University of Bonn</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLgnQpQtFTOGQh_J16IMwDlji18SWQ2PZ6\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2020</td>\n</tr>\n<tr>\n<td>33.</td>\n<td><strong>Computer Vision III: Detection, Segmentation and Tracking</strong></td>\n<td>Laura Leal-Taixé, TU München</td>\n<td><a href=\"https://dvl.in.tum.de/teaching/cv3dst-ss20/\" style=\"text-decoration:none\">CV3DST</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLog3nOPCjKBneGyffEktlXXMfv1OtKmCs\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2020</td>\n</tr>\n<tr>\n<td>34.</td>\n<td><strong>Advanced Deep Learning for Computer Vision</strong></td>\n<td>Laura Leal-Taixé and Matthias Nießner, TU München</td>\n<td><a href=\"https://dvl.in.tum.de/teaching/adl4cv-ss20\" style=\"text-decoration:none\">ADL4CV</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLog3nOPCjKBnjhuHMIXu4ISE4Z4f2jm39\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2020</td>\n</tr>\n<tr>\n<td>35.</td>\n<td><strong>Computer Vision: Foundations</strong></td>\n<td>Fred Hamprecht, Universität Heidelberg</td>\n<td><a href=\"https://hci.iwr.uni-heidelberg.de/ial/cvf\" style=\"text-decoration:none\">CVF</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLuRaSnb3n4kRAbnmiyGd77hyoGzO9wPde\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>SS2020</td>\n</tr>\n<tr>\n<td>36.</td>\n<td><strong>MIT Vision Seminar</strong></td>\n<td>Lots of Legends, MIT</td>\n<td><a href=\"https://sites.google.com/view/visionseminar/past-talks\" style=\"text-decoration:none\">MIT-Vision</a></td>\n<td><a href=\"https://www.youtube.com/channel/UCLMiFkFyfcNnZs6iwYLPI9g/videos\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2015-now</td>\n</tr>\n<tr>\n<td>37.</td>\n<td><strong>TUM AI Guest Lectures</strong></td>\n<td>Lots of Legends, Technische Universität München</td>\n<td><a href=\"https://niessner.github.io/TUM-AI-Lecture-Series\" style=\"text-decoration:none\">TUM-AI</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLQ8Y4kIIbzy8kMlz7cRqz-BjbdyWsfLXt\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2020 - now</td>\n</tr>\n<tr>\n<td>38.</td>\n<td><strong>Seminar on 3D Geometry &amp; Vision</strong></td>\n<td>Lots of Legends, Virtual</td>\n<td><a href=\"https://3dgv.github.io\" style=\"text-decoration:none\">3DGV seminar</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLZk0jtN0g8e-xVTfsiV67q8Iz1cZO_FpV\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2020 - now</td>\n</tr>\n<tr>\n<td>39.</td>\n<td><strong>Event-based Robot Vision</strong></td>\n<td>Guillermo Gallego, Technische Universität Berlin</td>\n<td><a href=\"https://sites.google.com/view/guillermogallego/teaching/event-based-robot-vision\" style=\"text-decoration:none\">EVIS-SS20</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL03Gm3nZjVgUFYUh3v5x8jVonjrGfcal8\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2020 - now</td>\n</tr>\n<tr>\n<td>40.</td>\n<td><strong>Deep Learning for Computer Vision</strong></td>\n<td>Vineeth Balasubramanian, IIT Hyderabad</td>\n<td><a href=\"https://onlinecourses.nptel.ac.in/noc20_cs88/preview\" style=\"text-decoration:none\">DL-CV'20</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLyqSpQzTE6M_PI-rIz4O1jEgffhJU9GgG\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2020</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>41.</td>\n<td><strong>Deep Learning for Visual Computing</strong></td>\n<td>Peter Wonka, KAUST, SA</td>\n<td><code>NOne</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLMpQLEui13s2DHbw6kTTxwQma8rehlfZE\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2020</td>\n</tr>\n<tr>\n<td>42.</td>\n<td><strong>Computer Vision</strong></td>\n<td>Yogesh Rawat, University of Central Florida</td>\n<td><a href=\"https://www.crcv.ucf.edu/courses/cap5415-fall-2020/schedule/\" style=\"text-decoration:none\">CAP5415-CV</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLd3hlSJsX_Ikm5il1HgmDB_z62BeoikFX\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>F2020</td>\n</tr>\n<tr>\n<td>43.</td>\n<td><strong>Multimedia Signal Processing</strong></td>\n<td>Mark Hasegawa-Johnson, UIUC</td>\n<td><a href=\"https://courses.engr.illinois.edu/ece417/fa2020/\" style=\"text-decoration:none\">ECE-417 MSP</a></td>\n<td><a href=\"https://mediaspace.illinois.edu/channel/ECE%20417/26816181\" style=\"text-decoration:none\">Lecture Videos</a></td>\n<td>F2020</td>\n</tr>\n<tr>\n<td>44.</td>\n<td><strong>Computer Vision</strong></td>\n<td>Andreas Geiger, Universität Tübingen</td>\n<td><a href=\"https://uni-tuebingen.de/fakultaeten/mathematisch-naturwissenschaftliche-fakultaet/fachbereiche/informatik/lehrstuehle/autonomous-vision/lectures/computer-vision/\" style=\"text-decoration:none\">Comp.Vis</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL05umP7R6ij35L2MHGzis8AEHz7mg381_\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2021</td>\n</tr>\n<tr>\n<td>45.</td>\n<td><strong>3D Computer Vision</strong></td>\n<td>Lee Gim Hee, National Univeristy of Singapura</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLxg0CGqViygP47ERvqHw_v7FVnUovJeaz\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2021</td>\n</tr>\n<tr>\n<td>46.</td>\n<td><strong>Deep Learning for Computer Vision: Fundamentals and Applications</strong></td>\n<td>T. Dekel et al., Weizmann Institute of Science</td>\n<td><a href=\"https://dl4cv.github.io/schedule.html\" style=\"text-decoration:none\">DL4CV</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL_Z2_U9MIJdNgFM7-f2fZ9ZxjVRP_jhJv\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2021</td>\n</tr>\n<tr>\n<td>47.</td>\n<td><strong>Current Topics in ML Methods in 3D and Geometric Deep Learning</strong></td>\n<td>Animesh Garg  &amp; others, University of Toronto</td>\n<td><a href=\"http://www.pair.toronto.edu/csc2547-w21\" style=\"text-decoration:none\">CSC 2547</a></td>\n<td><a href=\"https://www.youtube.com/channel/UCrsmAXnwu6sgccWevW12Dfg/videos\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2021</td>\n</tr>\n<tr>\n<td>48.</td>\n<td><strong>First Principles of Computer Vision</strong></td>\n<td>Shree K. Nayar, Columbia University</td>\n<td><a href=\"https://fpcv.cs.columbia.edu\" style=\"text-decoration:none\">FPCV</a></td>\n<td><a href=\"https://www.youtube.com/channel/UCf0WB91t8Ky6AuYcQV0CcLw/videos\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2021</td>\n</tr>\n<tr>\n<td>49.</td>\n<td><strong>Self-Driving Cars</strong></td>\n<td>Andreas Geiger, Universität Tübingen</td>\n<td><a href=\"https://uni-tuebingen.de/de/123611\" style=\"text-decoration:none\">SDC'21</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL05umP7R6ij321zzKXK6XCQXAaaYjQbzr\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>W2021</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n</tbody>\n</table><a href=\"https://deep-learning-drizzle.github.io/index.html#contents \"style=\"text-decoration:none\"><h5>Go to Contents <i class=\"em em-arrow_heading_up\"></i></h5></a><hr><a href=\"#bcss\" style=\"text-decoration:none\"><h2>Boot Camps or Summer Schools </h2></a><table id=\"bcss\" style=\"text-decoration:none\">\n<thead>\n<tr>\n<th>S.No</th>\n<th>Course Name</th>\n<th>University/Instructor(s)</th>\n<th>Course WebPage</th>\n<th>Lecture Videos</th>\n<th>Year</th>\n</tr>\n</thead>\n<tbody>\n<tr>\n<td>1.</td>\n<td><strong>Deep Learning, Feature Learning</strong></td>\n<td>Lots of Legends, IPAM UCLA</td>\n<td><a href=\"https://www.ipam.ucla.edu/programs/summer-schools/graduate-summer-school-deep-learning-feature-learning/\" style=\"text-decoration:none\">GSS-2012</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLHyI3Fbmv0SdzMHAy0aN59oYnLy5vyyTA\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2012</td>\n</tr>\n<tr>\n<td>2.</td>\n<td><strong>Big Data Boot Camp</strong></td>\n<td>Lots of Legends, Simons Institute</td>\n<td><a href=\"https://simons.berkeley.edu/workshops/schedule/316\" style=\"text-decoration:none\">Big Data</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLgKuh-lKre13RmUC2AybRvVAxO5DEMIBH\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2013</td>\n</tr>\n<tr>\n<td>3.</td>\n<td><strong>Machine Learning Summer School</strong></td>\n<td>Lots of Legends, MPI-IS Tübingen</td>\n<td><a href=\"http://mlss.tuebingen.mpg.de/2013/2013/index.html\" style=\"text-decoration:none\">MLSS-13</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLqJm7Rc5-EXFv6RXaPZzzlzo93Hl0v91E\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2013</td>\n</tr>\n<tr>\n<td>4</td>\n<td><strong>Graduate Summer School: Computer Vision</strong></td>\n<td>Lots of Legends, IPAM-UCLA</td>\n<td><a href=\"http://www.ipam.ucla.edu/programs/summer-schools/graduate-summer-school-computer-vision/\" style=\"text-decoration:none\">GSS-CV</a></td>\n<td><a href=\"http://www.ipam.ucla.edu/programs/summer-schools/graduate-summer-school-computer-vision/?tab=schedule\" style=\"text-decoration:none\">Video-Lectures</a></td>\n<td>2013</td>\n</tr>\n<tr>\n<td>5.</td>\n<td><strong>Machine Learning Summer School</strong></td>\n<td>Lots of Legends, Reykjavik University</td>\n<td><a href=\"http://mlss2014.hiit.fi/\" style=\"text-decoration:none\">MLSS-14</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLqdbxUnkqOw2nKn7VxYqIrKWcqRkQYOsF\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2014</td>\n</tr>\n<tr>\n<td>6.</td>\n<td><strong>Machine Learning Summer School</strong></td>\n<td>Lots of Legends, Pittsburgh</td>\n<td><a href=\"http://www.mlss2014.com\" style=\"text-decoration:none\">MLSS-14</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLZSO_6-bSqHQCIYxE3ycGLXHMjK3XV7Iz\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2014</td>\n</tr>\n<tr>\n<td>7.</td>\n<td><strong>Deep Learning Summer School</strong></td>\n<td>Lots of Legends, Université de Montréal</td>\n<td><a href=\"https://sites.google.com/site/deeplearningsummerschool/home\" style=\"text-decoration:none\">DLSS-15</a></td>\n<td><a href=\"http://videolectures.net/deeplearning2015_montreal/\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2015</td>\n</tr>\n<tr>\n<td>8.</td>\n<td><strong>Biomedical Image Analysis Summer School</strong></td>\n<td>Lots of Legends, CentraleSupelec, Paris</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLgSHH6boFf5uJAUT4ZRiAZc_ofXolkAGK\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2015</td>\n</tr>\n<tr>\n<td>9.</td>\n<td><strong>Mathematics of Signal Processing</strong></td>\n<td>Lots of Legends, Hausdorff Institute for Mathematics</td>\n<td><a href=\"http://www.him.uni-bonn.de/signal-processing-2016/\" style=\"text-decoration:none\">SigProc</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLul8LCT3AJqSQo3lr5RbwxJ92RsgRuDtx\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2016</td>\n</tr>\n<tr>\n<td>10.</td>\n<td><strong>Microsoft Research - Machine Learning Course</strong></td>\n<td>S V N Vishwanathan and Prateek Jain MS-Research</td>\n<td><code>None</code></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL34iyE0uXtxo7vPXGFkmm6KbgZQwjf9Kf\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2016</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>11.</td>\n<td><strong>Deep Learning Summer School</strong></td>\n<td>Lots of Legends, Université de Montréal</td>\n<td><a href=\"https://sites.google.com/site/deeplearningsummerschool2016/home\" style=\"text-decoration:none\">DL-SS-16</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL5bqIc6XopCbb-FvnHmD1neVlQKwGzQyR\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2016</td>\n</tr>\n<tr>\n<td>12.</td>\n<td><strong>Lisbon Machine Learning School</strong></td>\n<td>Lots of Legends, Instituto Superior Técnico, Portugal</td>\n<td><a href=\"http://lxmls.it.pt/2016/\" style=\"text-decoration:none\">LxMLS-16</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLToLj8M4ao-fymxXBIOU6sF1NGFLb5EiX\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2016</td>\n</tr>\n<tr>\n<td>13.</td>\n<td><strong>Machine Learning Advances and Applications Seminar</strong></td>\n<td>Lots of Legends, Fields Institute, University of Toronto</td>\n<td><a href=\"http://www.fields.utoronto.ca/activities/16-17/machine-learning\" style=\"text-decoration:none\">MLAAS-16</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLfsVAYSMwskuQcRkuDApP40lX_i08d0QK\" style=\"text-decoration:none\">YouTube-Lectures</a> <br/> <a href=\"http://www.fields.utoronto.ca/video-archive/event/2267\" style=\"text-decoration:none\">Video-Lectures</a></td>\n<td>2016-2017</td>\n</tr>\n<tr>\n<td>14.</td>\n<td><strong>Machine Learning Advances and Applications Seminar</strong></td>\n<td>Lots of Legends, Fields Institute, University of Toronto</td>\n<td><a href=\"http://www.fields.utoronto.ca/activities/17-18/machine-learning\" style=\"text-decoration:none\">MLAAS-17</a></td>\n<td><a href=\"http://www.fields.utoronto.ca/video-archive/event/2487\" style=\"text-decoration:none\">Video Lectures</a></td>\n<td>2017-2018</td>\n</tr>\n<tr>\n<td>15.</td>\n<td><strong>Machine Learning Summer School</strong></td>\n<td>Lots of Legends, MPI-IS Tübingen</td>\n<td><a href=\"http://mlss.tuebingen.mpg.de/2017/index.html\" style=\"text-decoration:none\">MLSS-17</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLqJm7Rc5-EXFUOvoYCdKikfck8YeUCnl9\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>16.</td>\n<td><strong>Representation Learning</strong></td>\n<td>Lots of Legends, Simons Institute</td>\n<td><a href=\"https://simons.berkeley.edu/workshops/abstracts/3750\" style=\"text-decoration:none\">RepLearn</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLgKuh-lKre13UNV4ztsWUXciUZ7x_ZDHz\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>17.</td>\n<td><strong>Foundations of Machine Learning</strong></td>\n<td>Lots of Legends, Simons Institute</td>\n<td><a href=\"https://simons.berkeley.edu/workshops/abstracts/3748\" style=\"text-decoration:none\">ML-BootCamp</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLgKuh-lKre11GbZWneln-VZDLHyejO7YD\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>18.</td>\n<td><strong>Optimization, Statistics, and Uncertainty</strong></td>\n<td>Lots of Legends, Simons Institute</td>\n<td><a href=\"https://simons.berkeley.edu/workshops/abstracts/4795\" style=\"text-decoration:none\">Optim-Stats</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLgKuh-lKre13ACD44z2FH-IVP1e8ip5JO\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>19.</td>\n<td><strong>Deep Learning: Theory, Algorithms, and Applications</strong></td>\n<td>Lots of Legends, TU-Berlin</td>\n<td><a href=\"http://doc.ml.tu-berlin.de/dlworkshop2017/\" style=\"text-decoration:none\">DL: TAA</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLJOzdkh8T5kqCNV_v1w2tapvtJDZYiohW\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>20.</td>\n<td><strong>Deep Learning and Reinforcement Learning Summer School</strong></td>\n<td>Lots of Legends, Université de Montréal</td>\n<td><a href=\"https://mila.quebec/en/cours/deep-learning-summer-school-2017/\" style=\"text-decoration:none\">DLRL-2017</a></td>\n<td><a href=\"http://videolectures.net/deeplearning2017_montreal/\" style=\"text-decoration:none\">Lecture-videos</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>21.</td>\n<td><strong>Statistical Physics Methods in Machine Learning</strong></td>\n<td>Lots of Legends, International Centre for Theoretical Sciences, TIFR</td>\n<td><a href=\"https://www.icts.res.in/discussion-meeting/SPMML2017\" style=\"text-decoration:none\">SPMML</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL04QVxpjcnjhtL3IIVyFRMOgdhWtPn7YJ\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>22.</td>\n<td><strong>Lisbon Machine Learning School</strong></td>\n<td>Lots of Legends, Instituto Superior Técnico, Portugal</td>\n<td><a href=\"http://lxmls.it.pt/2017/\" style=\"text-decoration:none\">LxMLS-17</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLToLj8M4ao-fuRfnzEJCCnvuW2_FeJ73N\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>23.</td>\n<td><strong>Interactive Learning</strong></td>\n<td>Lots of Legends, Simons Institute, Berkeley</td>\n<td><a href=\"https://simons.berkeley.edu/workshops/schedule/3749\" style=\"text-decoration:none\">IL-2017</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLgKuh-lKre10T2POF-WzXh0ckdpyvANUx\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>24.</td>\n<td><strong>Computational Challenges in Machine Learning</strong></td>\n<td>Lots of Legends, Simons Institute, Berkeley</td>\n<td><a href=\"https://simons.berkeley.edu/workshops/schedule/3751\" style=\"text-decoration:none\">CCML-17</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLgKuh-lKre12eXz4dnvc8oervo2_Af4iU\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017</td>\n</tr>\n<tr>\n<td>25.</td>\n<td><strong>Foundations of Data Science</strong></td>\n<td>Lots of Legends, Simons Institute</td>\n<td><a href=\"https://simons.berkeley.edu/workshops/abstracts/6680\" style=\"text-decoration:none\">DS-BootCamp</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLgKuh-lKre13r1Qrnrejj3f498-NurSf3\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>26.</td>\n<td><strong>Deep Learning and Bayesian Methods</strong></td>\n<td>Lots of Legends, HSE Moscow</td>\n<td><a href=\"http://deepbayes.ru/2018/\" style=\"text-decoration:none\">DLBM-SS</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLe5rNUydzV9Q01vWCP9BV7NhJG3j7mz62\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>27.</td>\n<td><strong>New Deep Learning Techniques</strong></td>\n<td>Lots of Legends, IPAM UCLA</td>\n<td><a href=\"https://www.ipam.ucla.edu/programs/workshops/new-deep-learning-techniques/?tab=schedule\" style=\"text-decoration:none\">IPAM-Workshop</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLHyI3Fbmv0SdM0zXj31HWjG9t9Q0v2xYN\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>28.</td>\n<td><strong>Deep Learning and Reinforcement Learning Summer School</strong></td>\n<td>Lots of Legends, University of Toronto</td>\n<td><a href=\"https://dlrlsummerschool.ca/2018-event/\" style=\"text-decoration:none\">DLRL-2018</a></td>\n<td><a href=\"http://videolectures.net/DLRLsummerschool2018_toronto/\" style=\"text-decoration:none\">Lecture-videos</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>29.</td>\n<td><strong>Machine Learning Summer School</strong></td>\n<td>Lots of Legends, Universidad Autónoma de Madrid, Spain</td>\n<td><a href=\"http://mlss.ii.uam.es/mlss2018/index.html\" style=\"text-decoration:none\">MLSS-18</a></td>\n<td><a href=\"https://www.youtube.com/channel/UCbPJHr__eIor_7jFH3HmVHQ/videos\" style=\"text-decoration:none\">YouTube-Lectures</a> <br/> <a href=\"http://mlss.ii.uam.es/mlss2018/speakers.html\" style=\"text-decoration:none\">Course-videos</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>30.</td>\n<td><strong>Theoretical Basis of Machine Learning</strong></td>\n<td>Lots of Legends, International Centre for Theoretical Sciences, TIFR</td>\n<td><a href=\"https://www.icts.res.in/discussion-meeting/tbml2018\" style=\"text-decoration:none\">TBML-18</a></td>\n<td><a href=\"https://www.icts.res.in/discussion-meeting/tbml2018/talks\" style=\"text-decoration:none\">Lecture-Videos</a> <br/> <a href=\"https://www.youtube.com/playlist?list=PL04QVxpjcnjj1DgnXxFBo2fkSju4r-ggr\" style=\"text-decoration:none\">YouTube-Videos</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>31.</td>\n<td><strong>Polish View on Machine Learning</strong></td>\n<td>Lots of Legends, Warsaw</td>\n<td><a href=\"https://plinml.mimuw.edu.pl/\" style=\"text-decoration:none\">PLinML-18</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLoaWrlj9TDhPcA6N9dZQ6GPXboYuumDRp\" style=\"text-decoration:none\">YouTube-Videos</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>32.</td>\n<td><strong>Big Data Analysis in Astronomy</strong></td>\n<td>Lots of Legends, Tenerife</td>\n<td><a href=\"http://research.iac.es/winterschool/2018/pages/book-ws2018.php\" style=\"text-decoration:none\">BDAA-18</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLM4Pv4KYYzGx42W5pSp3Itetp0u-PENtI\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018</td>\n</tr>\n<tr>\n<td>33.</td>\n<td><strong>Machine Learning Advances and Applications Seminar</strong></td>\n<td>Lots of Legends, Fields Institute, University of Toronto</td>\n<td><a href=\"http://www.fields.utoronto.ca/activities/18-19/machine-learning\" style=\"text-decoration:none\">MLASS</a></td>\n<td><a href=\"http://www.fields.utoronto.ca/video-archive/event/2681\" style=\"text-decoration:none\">Video Lectures</a></td>\n<td>2018-2019</td>\n</tr>\n<tr>\n<td>34.</td>\n<td><strong>MIFODS- ML, Stats, ToC seminar</strong></td>\n<td>Lots of Legends, MIT</td>\n<td><a href=\"http://mifods.mit.edu/seminar.php\" style=\"text-decoration:none\">MIFODS-seminar</a></td>\n<td><a href=\"http://mifods.mit.edu/seminar.php\" style=\"text-decoration:none\">Lecture-videos</a></td>\n<td>2018-2019</td>\n</tr>\n<tr>\n<td>35.</td>\n<td><strong>Learning Machines Seminar Series</strong></td>\n<td>Lots of Legends, Cornell Tech</td>\n<td><a href=\"https://lmss.tech.cornell.edu/\" style=\"text-decoration:none\">LMSS</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLycW2Yy79JuxbQZ9uHEu_NS3cGNomhL2A\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018-now</td>\n</tr>\n<tr>\n<td>36.</td>\n<td><strong>Machine Learning Summer School</strong></td>\n<td>Lots of Legends, South Africa</td>\n<td><a href=\"https://mlssafrica.com/programme-schedule/\" style=\"text-decoration:none\">MLSS'19</a></td>\n<td><a href=\"https://www.youtube.com/channel/UC722CmQVgcLtxt_jXr3RyWg/videos\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>37.</td>\n<td><strong>Deep Learning Boot Camp</strong></td>\n<td>Lots of Legends, Simons Institute, Berkeley</td>\n<td><a href=\"https://simons.berkeley.edu/workshops/schedule/10624\" style=\"text-decoration:none\">DLBC-19</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLgKuh-lKre12c2Il9mNX0Cmp9Z4oFNrQh\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>38.</td>\n<td><strong>Frontiers of Deep Learning</strong></td>\n<td>Lots of Legends, Simons Institute, Berkeley</td>\n<td><a href=\"https://simons.berkeley.edu/workshops/schedule/10627\" style=\"text-decoration:none\">FoDL-19</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLgKuh-lKre11ekU7g-Z_qsvjDD8cT-hi9\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>39.</td>\n<td><strong>Mathematics of data: Structured representations for sensing, approximation and learning</strong></td>\n<td>Lots of Legends, The Alan Turing Institute, London</td>\n<td><a href=\"https://www.turing.ac.uk/sites/default/files/2019-05/agenda_9_3.pdf\" style=\"text-decoration:none\">MoD-19</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLuD_SqLtxSdX_w1Ztexpzl_EJgFQSkWez\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>40.</td>\n<td><strong>Deep Learning and Bayesian Methods</strong></td>\n<td>Lots of Legends, HSE Moscow</td>\n<td><a href=\"http://deepbayes.ru/\" style=\"text-decoration:none\">DLBM-SS</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLe5rNUydzV9QHe8VDStpU0o8Yp63OecdW\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>41.</td>\n<td><strong>The Mathematics of Deep Learning and Data Science</strong></td>\n<td>Lots of Legends, Isaac Newton Institute, Cambridge</td>\n<td><a href=\"https://gateway.newton.ac.uk/event/ofbw46\" style=\"text-decoration:none\">MoDL-DS</a></td>\n<td><a href=\"https://gateway.newton.ac.uk/event/ofbw46/programme\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>42.</td>\n<td><strong>Geometry of Deep Learning</strong></td>\n<td>Lots of Legends, MSR Redmond</td>\n<td><a href=\"https://www.microsoft.com/en-us/research/event/ai-institute-2019\" style=\"text-decoration:none\">GoDL</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLD7HFcN7LXRe30qq36It2XCljxc340O_d\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>43.</td>\n<td><strong>Deep Learning for Science School</strong></td>\n<td>Many folks, LBNL, Berkeley</td>\n<td><a href=\"https://dl4sci-school.lbl.gov/agenda\" style=\"text-decoration:none\">DLfSS</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL20S5EeApOSvfvEyhCPOUzU7zkBcR5-eL\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>44.</td>\n<td><strong>Emerging Challenges in Deep Learning</strong></td>\n<td>Lots of Legends, Simons Institute, Berkeley</td>\n<td><a href=\"https://simons.berkeley.edu/workshops/schedule/10629\" style=\"text-decoration:none\">ECDL</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLgKuh-lKre10BpafDrv0fg2VNUweWXWVd\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>45.</td>\n<td><strong>Full Stack Deep Learning</strong></td>\n<td>Pieter Abbeel and many others, UC Berkeley</td>\n<td><a href=\"https://fullstackdeeplearning.com/march2019\" style=\"text-decoration:none\">FSDL-M19</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL1T8fO7ArWlcf3Hc4VMEVBlH8HZm_NbeB\" style=\"text-decoration:none\">YouTube-Lectures-Day-1</a> <br/> <a href=\"https://www.youtube.com/playlist?list=PL1T8fO7ArWlf6TWwdstb-PcwlubnlrKrm\" style=\"text-decoration:none\">Day-2</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>46.</td>\n<td><strong>Algorithmic and Theoretical aspects of Machine Learning</strong></td>\n<td>Lots of legends, IIIT-Bengaluru</td>\n<td><a href=\"https://india.acm.org/education/machine-learning\" style=\"text-decoration:none\">ACM-ML</a> <br/> <a href=\"https://nptel.ac.in/courses/128/106/128106011/\" style=\"text-decoration:none\">nptel</a></td>\n<td><a href=\"https://nptel.ac.in/courses/128/106/128106011\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>47.</td>\n<td><strong>Deep Learning and Reinforcement Learning Summer School</strong></td>\n<td>Lots of Legends, AMII, Edmonton, Canada</td>\n<td><a href=\"https://dlrlsummerschool.ca/past-years\" style=\"text-decoration:none\">DLRL-2019</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLKlhhkvvU8-aXmPQZNYG_e-2nTd0tJE8v\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>48.</td>\n<td><strong>Mathematics of Machine Learning</strong> - Summer Graduate School</td>\n<td>Lots of Legends, University of Washington</td>\n<td><a href=\"http://www.msri.org/summer_schools/866#schedule\" style=\"text-decoration:none\">MoML-SGS</a>, <a href=\"http://mathofml.cs.washington.edu/\" style=\"text-decoration:none\">MoML-SS</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLTPQEx-31JXhguCush5J7OGnEORofoCW9\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>49.</td>\n<td><strong>Workshop on Theory of Deep Learning: Where next?</strong></td>\n<td>Lots of Legends, IAS, Princeton University</td>\n<td><a href=\"https://www.math.ias.edu/wtdl\" style=\"text-decoration:none\">WTDL</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLdDZb3TwJPZ5dqqg_S-rgJqSFeH4DQqFQ\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td>50.</td>\n<td><strong>Computational Vision Summer School</strong></td>\n<td>Lots of Legends, Black Forest, Germany</td>\n<td><a href=\"http://orga.cvss.cc/program-cvss-2019/\" style=\"text-decoration:none\">CVSS-2019</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLeCNfJWZKqxsvidOlVLtWq9s7sIsX1QTC\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n<tr>\n<td>51.</td>\n<td><strong>Learning under complex structure</strong></td>\n<td>Lots of Legends, MIT</td>\n<td><a href=\"https://mifods.mit.edu/complex.php\" style=\"text-decoration:none\">LUCS</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLM4Pv4KYYzGwhIHcaY6zYR7M9hhFO4Vud\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2020</td>\n</tr>\n<tr>\n<td>52.</td>\n<td><strong>Machine Learning Summer School</strong></td>\n<td>Lots of Legends, MPI-IS Tübingen (virtual)</td>\n<td><a href=\"http://mlss.tuebingen.mpg.de/2020/schedule.html\" style=\"text-decoration:none\">MLSS</a></td>\n<td><a href=\"https://www.youtube.com/channel/UCBOgpkDhQuYeVVjuzS5Wtxw/videos\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>SS2020</td>\n</tr>\n<tr>\n<td>53.</td>\n<td><strong>Eastern European Machine Learning Summer School</strong></td>\n<td>Lots of Legends, Kraków, Poland (virtual)</td>\n<td><a href=\"https://www.eeml.eu/program\" style=\"text-decoration:none\">EEML</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLaKY4p4V3gE1j01FOY2FeglV4jRntQj84\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2020</td>\n</tr>\n<tr>\n<td>54.</td>\n<td><strong>Lisbon Machine Learning Summer School</strong></td>\n<td>Lots of Legends, Lisbon, Portugal (virtual)</td>\n<td><a href=\"http://lxmls.it.pt/2020/?page_id=19\" style=\"text-decoration:none\">LxMLS</a></td>\n<td><a href=\"https://www.youtube.com/channel/UCkVFZWgT1jR75UvSLGP9_mw\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>S2020</td>\n</tr>\n<tr>\n<td>55.</td>\n<td><strong>Workshop on New Directions in Optimization, Statistics and Machine Learning</strong></td>\n<td>Lots of Legends,  Institute of Advanced Study, Princeton</td>\n<td><a href=\"https://www.ias.edu/video/workshop/2020/0415-16\" style=\"text-decoration:none\">ML-Opt new dir.</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLdDZb3TwJPZ4Ri6i0MIdesIEpYK4lx17Q\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2020</td>\n</tr>\n<tr>\n<td>56.</td>\n<td><strong>Mediterranean Machine Learning School</strong></td>\n<td>Lots of Legends, Italy (virtual)</td>\n<td><a href=\"https://www.m2lschool.org/talks\" style=\"text-decoration:none\">M2L-school</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLF-wkqRv4u1YRbfnwN8cXXyrmXld-sked\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2021</td>\n</tr>\n<tr>\n<td>57.</td>\n<td><strong>Mathematics of Machine Learning - One World Seminar</strong></td>\n<td>Lots of Legends, Virtual</td>\n<td><a href=\"https://sites.google.com/view/oneworldml/past-events\" style=\"text-decoration:none\">1W-ML</a></td>\n<td><a href=\"https://www.youtube.com/channel/UCz7WlgXs20CzugkfxhFCNFg/videos\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2020 - now</td>\n</tr>\n<tr>\n<td>58.</td>\n<td><strong>Deep Learning Theory Summer School</strong></td>\n<td>Lots of Legends, Princeton University (virtual)</td>\n<td><a href=\"https://deep-learning-summer-school.princeton.edu\" style=\"text-decoration:none\">DLT'21</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PL2mB9GGlueJj_FNjJ8RWgz4Nc_hCSXfMU\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2021</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n</tbody>\n</table><a href=\"https://deep-learning-drizzle.github.io/index.html#contents \"style=\"text-decoration:none\"><h5>Go to Contents <i class=\"em em-arrow_heading_up\"></i></h5></a><hr><a href=\"#aginn\" style=\"text-decoration:none\"><h2>Bird's Eye view of A(G)I </h2></a><table id=\"aginn\" style=\"text-decoration:none\">\n<thead>\n<tr>\n<th>S.No</th>\n<th>Course Name</th>\n<th>University/Instructor(s)</th>\n<th>Course WebPage</th>\n<th>Lecture Videos</th>\n<th>Year</th>\n</tr>\n</thead>\n<tbody>\n<tr>\n<td>1.</td>\n<td><strong>Artificial General Intelligence</strong></td>\n<td>Lots of Legends, MIT</td>\n<td><a href=\"https://agi.mit.edu/\" style=\"text-decoration:none\">6.S099-AGI</a></td>\n<td><a href=\"https://agi.mit.edu/\" style=\"text-decoration:none\">Lecture-Videos</a></td>\n<td>2018-2019</td>\n</tr>\n<tr>\n<td>2.</td>\n<td><strong>AI Podcast</strong></td>\n<td>Lots of Legends, MIT</td>\n<td><a href=\"https://lexfridman.com/ai/\" style=\"text-decoration:none\">AI-Pod</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLrAXtmErZgOdP_8GztsuKi9nrraNbKKp4\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2018-2019</td>\n</tr>\n<tr>\n<td>3.</td>\n<td><strong>NYU - AI Seminars</strong></td>\n<td>Lots of Legends, NYU</td>\n<td><a href=\"https://engineering.nyu.edu/academics/departments/electrical-and-computer-engineering/ece-seminar-series/modern-artificial\" style=\"text-decoration:none\">modern-AI</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLhwo5ntex8iY9xhpSwWas451NgVuqBE7U\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2017-now</td>\n</tr>\n<tr>\n<td>4.</td>\n<td><strong>Deep Learning: Alchemy or Science?</strong></td>\n<td>Lots of Legends, Institute for Advanced Study, Princeton</td>\n<td><a href=\"https://video.ias.edu/deeplearning/2019/0222\" style=\"text-decoration:none\">DLAS</a> <br/> <a href=\"https://www.math.ias.edu/tml/dlasagenda\" style=\"text-decoration:none\">Agenda</a></td>\n<td><a href=\"https://www.youtube.com/playlist?list=PLdDZb3TwJPZ7aAxhIHALBoh8l6-UxmMNP\" style=\"text-decoration:none\">YouTube-Lectures</a></td>\n<td>2019</td>\n</tr>\n<tr>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n<td></td>\n</tr>\n</tbody>\n</table><a href=\"https://deep-learning-drizzle.github.io/index.html#contents \"style=\"text-decoration:none\"><h5>Go to Contents <i class=\"em em-arrow_heading_up\"></i></h5></a><hr>\n<a href=\"https://github.com/kmario23/deep-learning-drizzle\" class=\"github\">\n   <img style=\"position: absolute; top: 0; right: 0; border: 0;\" src=\"https://s3.amazonaws.com/github/ribbons/forkme_right_darkblue_121621.png\" alt=\"Fork me on GitHub\"  class=\"github\"/>\n</a>\n\n</body>\n<hr style=\"background-color:#E02461\">\n\n<p class=\"text_center\">\n   <!-- to get the counts, watch, and forks from github repository, using http://ghbtns.com/ -->\n    <iframe src=\"https://ghbtns.com/github-btn.html?user=kmario23&repo=deep-learning-drizzle&type=star&count=true\" frameborder=\"0\" scrolling=\"0\" width=\"110px\" height=\"17px\"></iframe>\n    Made with <i class='fas fa-heart faa-pulse faa-fast animated' style='font-size:23px;color:crimson'></i> and maintained by \n    <a href=\"https://github.com/kmario23\" style=\"text-decoration:none\"> @kmario23</a>, <b>S</b>aarland <b>I</b>nformatics <b>C</b>ampus &nbsp;\n    <iframe src=\"https://ghbtns.com/github-btn.html?user=kmario23&repo=deep-learning-drizzle&type=fork&count=true\" frameborder=\"0\" scrolling=\"0\" width=\"110px\" height=\"17px\"></iframe> \n<iframe src=\"https://ghbtns.com/github-btn.html?user=kmario23&repo=deep-learning-drizzle&type=watch&count=true&v=2\" frameborder=\"0\" scrolling=\"0\" width=\"110px\" height=\"17px\"></iframe>\n</p>\n\n</html>\n"
  },
  {
    "path": "markdown2html_py/markdown2html.py",
    "content": "from pyemojify import emojify\nimport re\nimport markdown\nfrom lxml import etree\n\n\n# read contents from github README.md\nwith open('README.md', 'r') as f:\n    markdn = f.readlines()\n\n# read some header contents for html\nwith open('html_head.txt', 'r') as f:\n    html_head = f.readlines()\n\n# read some footer contents for html\nwith open('html_foot.txt', 'r') as f:\n    html_foot = f.readlines()\n\n# read some fontawesome stuff for html\nwith open('fontawesome-animations.txt', 'r') as f:\n    fontawesome_animations = []\n    for line in f:\n        line = line.strip().replace('BEG:', '')\n        line = line.strip().replace('END:', '')\n        fontawesome_animations.append(line)\n\n# to color code the emojies\nem1 = '<i class=\"em em-'\nem2 = '\"></i>'\n\n# link to specific part of page\nahref1 = '<a href=\"'\nahrefm = '\" style=\"text-decoration:none\">'\nahref2 = '</a>'\n\nhost_url = \"https://deep-learning-drizzle.github.io/\"\nhost_page = \"index.html\"\n\n# heading size 1\nh1b = \"<h1> \"\nh1e = \" </h1>\"\n\n# heading size 2\nh2b = \"<h2>\"\nh2e = \" </h2>\"\n\n# heading size 5\nh5b = \"<h5>\"\nh5e = \"</h5>\"\n\n# line break html\nlb_html = '<br/>'\n\n# html url construction\nurl1 = '<a href=\"'\nurl2 = ' \"style=\"text-decoration:none\">'\nurl3 = '</a>'\n\n# center align something\ncenter1 = '<p style=\"text-align:center\">'\ncenter2 = '</p>'\n\n# navigation to toc\ng2c = \"Go to Contents \"\ndivcont = '#contents'\n\n# navigation to top of table\ndivdnns = '#dldnn'\ndivmlfund = '#mlfund'\ndivopt4ml = '#opt4ml'\ndivgenml = '#genml'\ndivreinf = '#reinf'\ndivbdl = '#bayesdl'\ndivmi = '#medimg'\ndivpgm = '#probgm'\ndivgnn = '#graphnn'\ndivnlp = '#nlpnn'\ndivasr = '#asrnn'\ndivcvnn = '#cvnn'\ndivbcss = '#bcss'\ndivagi = '#aginn'\n\n\ndef prettify_emoji(word):\n    return em1 + word + em2\n\n\n# down arrow\ndown_arrow = \":arrow_heading_down:\"\ndown_arrow_prettified = prettify_emoji(\"arrow_heading_down\")\n\n# up arrow\nup_arrow = \":arrow_heading_up:\"\nup_arrow_prettified = prettify_emoji(\"arrow_heading_up\")\n\n\ndef parse_markdown_url(text):\n    \"\"\"\n    A simple helper function to convert markdwon url to a tuple:\n    [url_text](https://) => ('url_text', 'https://')\n    From: https://stackoverflow.com/a/23395483\n    \"\"\"\n    # Anything that isn't a square closing bracket\n    name_regex = \"[^]]+\"\n    # http:// or https:// followed by anything but a closing paren\n    url_regex = \"http[s]?://[^)]+\"\n\n    markup_regex = '\\[({0})]\\(\\s*({1})\\s*\\)'.format(name_regex, url_regex)\n\n    extracted = []\n    for match in re.findall(markup_regex, text):\n        extracted.append(match)\n    return extracted\n\n# s = '| 1.   | **Neural Networks for Machine Learning**              | Geoffrey Hinton, University of Toronto         | [Lecture-Slides](http://www.cs.toronto.edu/~hinton/coursera_slides.html) <br/> [CSC321-tijmen](https://www.cs.toronto.edu/~tijmen/csc321/) | [YouTube-Lectures](https://www.youtube.com/playlist?list=PLoRl3Ht4JOcdU872GhiYWf6jwrk_SNhz9) <br/> [UofT-mirror](https://www.cs.toronto.edu/~hinton/coursera_lectures.html) | 2012 <br/> 2014 |'\n# print(parse_markdown_url(s))\n\n\ndef convert_markdown_url2html(text, extracted):\n    if len(extracted) == 1:\n        url_text, url_link = extracted[0][0], extracted[0][1]\n        text = text.replace(url_text, \"\")\n        text = text.replace(url_link, \"\")\n        url = url1 + url_link + url2 + url_text + url3\n        text = text.replace(\"[]()\", url)\n\n        # center align\n        text = center1 + text + center2\n        return text\n\n\ndef table_topic_emoji_processor(line):\n    if \":\" in line:\n        matches = re.findall(r\":(.*?):\", line)\n        # print(matches)\n        for emj in matches:\n            m = \":\" + emj + \":\"\n            if m in line:\n                # line = line.replace(m, prettify_emoji(emj)) # uncomment this line to enable emojis\n                line = line.replace(m, '')\n    return line.strip()\n\n\ndef add_navigation_button():\n    \"\"\"\n    adds a go to contents button\n    \"\"\"\n    pret = prettify_emoji(\"arrow_heading_up\")\n    pret = url1 + host_url + host_page + divcont + url2 + h5b + g2c + pret + h5e + url3\n    return pret\n\n\ndef replace_github_url_with_webpage_url(line, matches):\n    for lnk in matches:\n        lnk = lnk.replace('(', '')\n        lnk = lnk.replace(')', '')\n        if \"deep-learning-deep-neural-networks\" in line:\n            line = line.replace(lnk, host_url + host_page + divdnns)\n        if \"probabilistic-graphical-models\" in line:\n            line = line.replace(lnk, host_url + host_page + divpgm)\n        if \"bayesian-deep-learning\" in line:\n            line = line.replace(lnk, host_url + host_page + divbdl)\n        if \"medical-imaging\" in line:\n            line = line.replace(lnk, host_url + host_page + divmi)\n        if \"machine-learning-fundamentals\" in line:\n            line = line.replace(lnk, host_url + host_page + divmlfund)\n        if \"natural-language-processing\" in line:\n            line = line.replace(lnk, host_url + host_page + divnlp)\n        if \"optimization-for-machine-learning\" in line:\n            line = line.replace(lnk, host_url + host_page + divopt4ml)\n        if \"automatic-speech-recognition-speech\" in line:\n            line = line.replace(lnk, host_url + host_page + divasr)\n        if \"general-machine-learning\" in line:\n            line = line.replace(lnk, host_url + host_page + divgenml)\n        if \"modern-computer-vision\" in line:\n            line = line.replace(lnk, host_url + host_page + divcvnn)\n        if \"reinforcement-learning\" in line:\n            line = line.replace(lnk, host_url + host_page + divreinf)\n        if \"boot-camps-or-summer-schools\" in line:\n            line = line.replace(lnk, host_url + host_page + divbcss)\n        if \"graph-neural-networks\" in line:\n            line = line.replace(lnk, host_url + host_page + divgnn)\n        if \"birds-eye-view-of-agi\" in line:\n            line = line.replace(lnk, host_url + host_page + divagi)\n\n    return line\n\n\n# desired html\nwith open('index.html', 'w') as f:\n    # write header info\n    f.write(''.join(html_head))\n\n    heavy_minus_tracker = 0\n    all_lines = []\n    table_of_contents = []\n    dl_dnn = []\n    ml_fund = []\n    opt_ml = []\n    gen_ml = []\n    reinf_learn = []\n    bayes_dl = []\n    med_img = []\n    prob_gm = []\n    graph_nn = []\n    nlp_nn = []\n    asr_nn = []\n    cv_nn = []\n    bcss = []\n    agi_nn = []\n    for line in markdn:\n        if line.startswith('# '):\n            line = line.replace('# ', '')\n            # very first line\n            if \":\" in line:\n                temp = []\n                line_contents = line.split(\" \")\n                for w in line_contents:\n                    if \":\" in w:\n                        continue  # comment this line to enable emoji\n                        w = w.replace(\":\", \"\")\n                        w = prettify_emoji(w)\n                        temp.append(w)\n                    else:\n                        temp.append(w)\n                line = \" \".join(temp)\n                del temp\n                line = h1b + fontawesome_animations[0] + line + fontawesome_animations[1] + h1e\n                all_lines.append(line)\n                # line separator\n                all_lines.append('<hr>')\n\n        # quote\n        if \":books:\" in line:\n            # extract URL/text\n            extracted = parse_markdown_url(line)\n            line = convert_markdown_url2html(line, extracted)\n\n            # line = line.replace(lb_html, '')  # remove line break\n            line = line.replace(\":books:\", prettify_emoji(\"books\"))  # color code emoji\n            line = line.replace('**\"', '<strong>\"')  # bold text\n            line = line.replace('\"**', '\"</strong>')\n            all_lines.append(line)\n\n        # if heavy minus, just pass\n        if \":heavy_minus_sign:\" in line:\n            heavy_minus_tracker += 1\n            continue\n\n        # table of contents\n        if \"### Contents\" in line:\n            line = line.replace('### ', '')\n            line = '<div id=\"contents\"> ' + ahref1 + host_page + divcont + ahrefm + h2b + line + h2e + ahref2\n            line = line + ' </div>'\n            # print(line)\n            all_lines.append(line)\n\n        # group toc in a list and then process them\n        if \"| \" in line and heavy_minus_tracker == 2:\n            line = line.replace(down_arrow, down_arrow_prettified)\n            extr = parse_markdown_url(line)\n            matches = re.findall(r\"\\(https.*?\\)\", line)\n            line = replace_github_url_with_webpage_url(line, matches)\n            table_of_contents.append(line)\n\n        # signifies end of table; now convert them to html table\n        if heavy_minus_tracker == 3:\n            # convert toc markdown to html table\n            toc_html = markdown.markdown(\"\".join(table_of_contents), extensions=['markdown.extensions.tables'])\n            toc_html = toc_html.replace('<table>', '<table id=\"toc\" class=\"centerTable\">')  # center align table\n            all_lines.append(toc_html)\n            all_lines.append('<br/> <br/>')\n            all_lines.append('<hr>')\n\n        # Depp Neurl Networks TABLE\n        # table Deep Learning (Deep Neural Networks)\n        if \"## :tada: Deep Learning\" in line:\n            line = line.replace('## ', '')\n            line = table_topic_emoji_processor(line)\n            line = ahref1 + host_page + divdnns + ahrefm + h2b + line + h2e + ahref2\n            # print(line)\n            all_lines.append(line)\n\n        # group DNN table in a list and then process them\n        if \"| \" in line and heavy_minus_tracker == 4:\n            dl_dnn.append(line)\n\n        # signifies end of table; now convert them to html table\n        if heavy_minus_tracker == 5:\n            # convert DL DNN markdown to html table\n            dl_dnn_html = markdown.markdown(\"\".join(dl_dnn), extensions=['markdown.extensions.tables'])\n            dl_dnn_html = dl_dnn_html.replace('<table>', '<table id=\"dldnn\">')  # center align table\n            # remove underline in url links\n            dl_dnn_html = dl_dnn_html.replace('\">', '\" style=\"text-decoration:none\">')\n            # print(dl_dnn_html)\n            all_lines.append(dl_dnn_html)\n\n            # navigation to top\n            all_lines.append(add_navigation_button())\n            all_lines.append(\"<hr>\")\n\n        # ML FUNDAMENTALS TABLE\n        # ML fundamentals\n        if \"### :cupid: Machine Learning\" in line:\n            line = line.replace('### ', '')\n            line = table_topic_emoji_processor(line)\n            line = ahref1 + divmlfund + ahrefm + h2b + line + h2e + ahref2\n            # print(line)\n            all_lines.append(line)\n\n         # group ML fundamentals table in a list and then process them\n        if \"| \" in line and heavy_minus_tracker == 6:\n            ml_fund.append(line)\n\n        # signifies end of table; now convert them to html table\n        if heavy_minus_tracker == 7:\n            # convert ML Funda markdown to html table\n            ml_fund_html = markdown.markdown(\"\".join(ml_fund), extensions=['markdown.extensions.tables'])\n            ml_fund_html = ml_fund_html.replace('<table>', '<table id=\"mlfund\">')  # center align table\n            # remove underline in url links\n            ml_fund_html = ml_fund_html.replace('\">', '\" style=\"text-decoration:none\">')\n            # print(ml_fund_html)\n            all_lines.append(ml_fund_html)\n\n            # navigation to top\n            all_lines.append(add_navigation_button())\n            all_lines.append(\"<hr>\")\n\n        # OPT for ML TABLE\n        # Optimization for Machine Learning\n        if \"### :cupid: Optimization for Machine Learning\" in line:\n            line = line.replace('### ', '')\n            line = table_topic_emoji_processor(line)\n            line = ahref1 + divopt4ml + ahrefm + h2b + line + h2e + ahref2\n            # print(line)\n            all_lines.append(line)\n\n         # group OPT 4 ML table in a list and then process them\n        if \"| \" in line and heavy_minus_tracker == 8:\n            opt_ml.append(line)\n\n        # signifies end of table; now convert them to html table\n        if heavy_minus_tracker == 9:\n            # convert Optim 4 ML markdown to html table\n            opt_ml_html = markdown.markdown(\"\".join(opt_ml), extensions=['markdown.extensions.tables'])\n            opt_ml_html = opt_ml_html.replace('<table>', '<table id=\"opt4ml\">')  # center align table\n            # remove underline in url links\n            opt_ml_html = opt_ml_html.replace('\">', '\" style=\"text-decoration:none\">')\n            # print(opt_ml_html)\n            all_lines.append(opt_ml_html)\n\n            # navigation to top\n            all_lines.append(add_navigation_button())\n            all_lines.append(\"<hr>\")\n\n        # GENERAL ML TABLE\n        # General Machine Learning\n        if \"### :cupid: General Machine\" in line:\n            line = line.replace('### ', '')\n            line = table_topic_emoji_processor(line)\n            line = ahref1 + divgenml + ahrefm + h2b + line + h2e + ahref2\n            # print(line)\n            all_lines.append(line)\n\n        # group General ML table in a list and then process them\n        if \"| \" in line and heavy_minus_tracker == 10:\n            gen_ml.append(line)\n\n        # signifies end of table; now convert them to html table\n        if heavy_minus_tracker == 11:\n            # convert General ML markdown to html table\n            gen_ml_html = markdown.markdown(\"\".join(gen_ml), extensions=['markdown.extensions.tables'])\n            gen_ml_html = gen_ml_html.replace('<table>', '<table id=\"genml\">')  # center align table\n            # remove underline in url links\n            gen_ml_html = gen_ml_html.replace('\">', '\" style=\"text-decoration:none\">')\n            # print(gen_ml_html)\n            all_lines.append(gen_ml_html)\n\n            # navigation to top\n            all_lines.append(add_navigation_button())\n            all_lines.append(\"<hr>\")\n\n        # REINFORCEMENT LEARNING TABLE\n        # Reinforcement Learning\n        if \"### :balloon: Reinforcement\" in line:\n            line = line.replace('### ', '')\n            line = table_topic_emoji_processor(line)\n            line = ahref1 + divreinf + ahrefm + h2b + line + h2e + ahref2\n            # print(line)\n            all_lines.append(line)\n\n        # group Reinforcement Learning table in a list and then process them\n        if \"| \" in line and heavy_minus_tracker == 12:\n            reinf_learn.append(line)\n\n        # signifies end of table; now convert them to html table\n        if heavy_minus_tracker == 13:\n            # convert reinforce learn markdown to html table\n            reinf_learn_html = markdown.markdown(\"\".join(reinf_learn), extensions=['markdown.extensions.tables'])\n            reinf_learn_html = reinf_learn_html.replace('<table>', '<table id=\"reinf\">')  # center align table\n            # remove underline in url links\n            reinf_learn_html = reinf_learn_html.replace('\">', '\" style=\"text-decoration:none\">')\n            # print(reinf_learn_html)\n            all_lines.append(reinf_learn_html)\n\n            # navigation to top\n            all_lines.append(add_navigation_button())\n            all_lines.append(\"<hr>\")\n\n        # PROBABILISTIC GRAPHICAL MODELS TABLE\n        # Probabilistic Graphical Models\n        if \"### :loudspeaker: Probabilistic Graphical Models\" in line:\n            line = line.replace('### ', '')\n            line = table_topic_emoji_processor(line)\n            line = ahref1 + divpgm + ahrefm + h2b + line + h2e + ahref2\n            # print(line)\n            all_lines.append(line)\n\n        # group Probabilistic Graphical Models table in a list and then process them\n        if \"| \" in line and heavy_minus_tracker == 14:\n            prob_gm.append(line)\n\n        # signifies end of table; now convert them to html table\n        if heavy_minus_tracker == 15:\n            # convert Probabilistic Graphical Models markdown to html table\n            prob_gm_html = markdown.markdown(\"\".join(prob_gm), extensions=['markdown.extensions.tables'])\n            prob_gm_html = prob_gm_html.replace('<table>', '<table id=\"probgm\">')  # center align table\n            # remove underline in url links\n            prob_gm_html = prob_gm_html.replace('\">', '\" style=\"text-decoration:none\">')\n            # print(prob_gm_html)\n            all_lines.append(prob_gm_html)\n\n            # navigation to top\n            all_lines.append(add_navigation_button())\n            all_lines.append(\"<hr>\")\n\n        # BAYESIAN DEEP LEARNING TABLE\n        # Bayesian Deep Learning\n        if \"## :game_die: Bayesian\" in line:\n            line = line.replace('## ', '')\n            line = table_topic_emoji_processor(line)\n            line = ahref1 + divbdl + ahrefm + h2b + line + h2e + ahref2\n            # print(line)\n            all_lines.append(line)\n\n        # group Bayesian Deep Learning table in a list and then process them\n        if \"| \" in line and heavy_minus_tracker == 16:\n            bayes_dl.append(line)\n\n        # signifies end of table; now convert them to html table\n        if heavy_minus_tracker == 17:\n            # convert bayes deep learn markdown to html table\n            bayes_dl_html = markdown.markdown(\"\".join(bayes_dl), extensions=['markdown.extensions.tables'])\n            bayes_dl_html = bayes_dl_html.replace('<table>', '<table id=\"bayesdl\">')  # center align table\n            # remove underline in url links\n            reinf_learn_html = bayes_dl_html.replace('\">', '\" style=\"text-decoration:none\">')\n            # print(bayes_dl_html)\n            all_lines.append(bayes_dl_html)\n\n            # navigation to top\n            all_lines.append(add_navigation_button())\n            all_lines.append(\"<hr>\")\n\n        # MEDICAL IMAGING TABLE\n        # Medical Imaging\n        if \"## :movie_camera: Medical\" in line:\n            line = line.replace('## ', '')\n            line = table_topic_emoji_processor(line)\n            line = ahref1 + divmi + ahrefm + h2b + line + h2e + ahref2\n            # print(line)\n            all_lines.append(line)\n\n        # group Medical Imaging table in a list and then process them\n        if \"| \" in line and heavy_minus_tracker == 18:\n            med_img.append(line)\n\n        # signifies end of table; now convert them to html table\n        if heavy_minus_tracker == 19:\n            # convert medical imaging markdown to html table\n            med_img_html = markdown.markdown(\"\".join(med_img), extensions=['markdown.extensions.tables'])\n            med_img_html = med_img_html.replace('<table>', '<table id=\"medimg\">')  # center align table\n            # remove underline in url links\n            med_img_html = med_img_html.replace('\">', '\" style=\"text-decoration:none\">')\n            # print(med_img_html)\n            all_lines.append(med_img_html)\n\n            # navigation to top\n            all_lines.append(add_navigation_button())\n            all_lines.append(\"<hr>\")\n\n        # GRAPH NEURAL NETWORKS TABLE\n        # Graph Neural Networks\n        if \"## :tada: Graph Neural Networks\" in line:\n            line = line.replace('## ', '')\n            line = table_topic_emoji_processor(line)\n            line = ahref1 + divgnn + ahrefm + h2b + line + h2e + ahref2\n            # print(line)\n            all_lines.append(line)\n\n        # group Graph Neural Networks table in a list and then process them\n        if \"| \" in line and heavy_minus_tracker == 20:\n            graph_nn.append(line)\n\n        # signifies end of table; now convert them to html table\n        if heavy_minus_tracker == 21:\n            # convert Graph Neural Networks markdown to html table\n            graph_nn_html = markdown.markdown(\"\".join(graph_nn), extensions=['markdown.extensions.tables'])\n            graph_nn_html = graph_nn_html.replace('<table>', '<table id=\"graphnn\">')  # center align table\n            # remove underline in url links\n            graph_nn_html = graph_nn_html.replace('\">', '\" style=\"text-decoration:none\">')\n            # print(graph_nn_html)\n            all_lines.append(graph_nn_html)\n\n            # navigation to top\n            all_lines.append(add_navigation_button())\n            all_lines.append(\"<hr>\")\n\n        # NATURAL LANGUAGE PROCESSING TABLE\n        # Natural Language Processing\n        if \"### :hibiscus: Natural Language Processing\" in line:\n            line = line.replace('### ', '')\n            line = table_topic_emoji_processor(line)\n            line = ahref1 + divnlp + ahrefm + h2b + line + h2e + ahref2\n            # print(line)\n            all_lines.append(line)\n\n        # group Natural Language Processing table in a list and then process them\n        if \"| \" in line and heavy_minus_tracker == 22:\n            nlp_nn.append(line)\n\n        # signifies end of table; now convert them to html table\n        if heavy_minus_tracker == 23:\n            # convert Graph Neural Networks markdown to html table\n            nlp_nn_html = markdown.markdown(\"\".join(nlp_nn), extensions=['markdown.extensions.tables'])\n            nlp_nn_html = nlp_nn_html.replace('<table>', '<table id=\"nlpnn\">')  # center align table\n            # remove underline in url links\n            nlp_nn_html = nlp_nn_html.replace('\">', '\" style=\"text-decoration:none\">')\n            # print(nlp_nn_html)\n            all_lines.append(nlp_nn_html)\n\n            # navigation to top\n            all_lines.append(add_navigation_button())\n            all_lines.append(\"<hr>\")\n\n        # Automatic Speech Recognition TABLE\n        # Automatic Speech Recognition\n        if \"###  :speaking_head: Automatic Speech Recognition\" in line:\n            line = line.replace('### ', '')\n            line = table_topic_emoji_processor(line)\n            line = ahref1 + divasr + ahrefm + h2b + line + h2e + ahref2\n            # print(line)\n            all_lines.append(line)\n\n        # group Automatic Speech Recognition table in a list and then process them\n        if \"| \" in line and heavy_minus_tracker == 24:\n            asr_nn.append(line)\n\n        # signifies end of table; now convert them to html table\n        if heavy_minus_tracker == 25:\n            # convert Automatic Speech Recognition markdown to html table\n            asr_nn_html = markdown.markdown(\"\".join(asr_nn), extensions=['markdown.extensions.tables'])\n            asr_nn_html = asr_nn_html.replace('<table>', '<table id=\"asrnn\">')  # center align table\n            # remove underline in url links\n            asr_nn_html = asr_nn_html.replace('\">', '\" style=\"text-decoration:none\">')\n            # print(asr_nn_html)\n            all_lines.append(asr_nn_html)\n\n            # navigation to top\n            all_lines.append(add_navigation_button())\n            all_lines.append(\"<hr>\")\n\n        # Modern Computer Vision TABLE\n        # Modern Computer Vision\n        if \"### :fire: Modern Computer Vision\" in line:\n            line = line.replace('### ', '')\n            line = table_topic_emoji_processor(line)\n            line = ahref1 + divcvnn + ahrefm + h2b + line + h2e + ahref2\n            # print(line)\n            all_lines.append(line)\n\n        # group Modern Computer Vision table in a list and then process them\n        if \"| \" in line and heavy_minus_tracker == 26:\n            cv_nn.append(line)\n\n        # signifies end of table; now convert them to html table\n        if heavy_minus_tracker == 27:\n            # convert Modern Computer Vision markdown to html table\n            cv_nn_html = markdown.markdown(\"\".join(cv_nn), extensions=['markdown.extensions.tables'])\n            cv_nn_html = cv_nn_html.replace('<table>', '<table id=\"cvnn\">')  # center align table\n            # remove underline in url links\n            cv_nn_html = cv_nn_html.replace('\">', '\" style=\"text-decoration:none\">')\n            # print(cv_nn_html)\n            all_lines.append(cv_nn_html)\n\n            # navigation to top\n            all_lines.append(add_navigation_button())\n            all_lines.append(\"<hr>\")\n\n        # Boot Camps or Summer Schools TABLE\n        # Boot Camps or Summer Schools\n        if \"### :star2: Boot Camps or Summer Schools\" in line:\n            line = line.replace('### ', '')\n            line = table_topic_emoji_processor(line)\n            line = ahref1 + divbcss + ahrefm + h2b + line + h2e + ahref2\n            # print(line)\n            all_lines.append(line)\n\n        # group Boot Camps or Summer Schools table in a list and then process them\n        if \"| \" in line and heavy_minus_tracker == 28:\n            bcss.append(line)\n\n        # signifies end of table; now convert them to html table\n        if heavy_minus_tracker == 29:\n            # convert Boot Camps or Summer Schools markdown to html table\n            bcss_html = markdown.markdown(\"\".join(bcss), extensions=['markdown.extensions.tables'])\n            bcss_html = bcss_html.replace('<table>', '<table id=\"bcss\">')  # center align table\n            # remove underline in url links\n            bcss_html = bcss_html.replace('\">', '\" style=\"text-decoration:none\">')\n            # print(bcss_html)\n            all_lines.append(bcss_html)\n\n            # navigation to top\n            all_lines.append(add_navigation_button())\n            all_lines.append(\"<hr>\")\n\n        # Bird's Eye view of A(G)I TABLE\n        # Bird's Eye view of A(G)I\n        if \"### :bird: Bird\" in line:\n            line = line.replace('### ', '')\n            line = table_topic_emoji_processor(line)\n            line = ahref1 + divagi + ahrefm + h2b + line + h2e + ahref2\n            # print(line)\n            all_lines.append(line)\n\n        # group Bird's Eye view of A(G)I table in a list and then process them\n        if \"| \" in line and heavy_minus_tracker == 30:\n            agi_nn.append(line)\n\n        # signifies end of table; now convert them to html table\n        if heavy_minus_tracker == 31:\n            # convert Bird's Eye view of A(G)I markdown to html table\n            agi_nn_html = markdown.markdown(\"\".join(agi_nn), extensions=['markdown.extensions.tables'])\n            agi_nn_html = agi_nn_html.replace('<table>', '<table id=\"aginn\">')  # center align table\n            # remove underline in url links\n            agi_nn_html = agi_nn_html.replace('\">', '\" style=\"text-decoration:none\">')\n            # print(agi_nn_html)\n            all_lines.append(agi_nn_html)\n\n            # navigation to top\n            all_lines.append(add_navigation_button())\n            all_lines.append(\"<hr>\")\n\n    # write everything to desired html file\n    for line in all_lines:\n        f.write(line)\n\n    # write footer info\n    f.write(''.join(html_foot))\n"
  }
]