资源|机器学习/深度学习线上开放课程集锦

共 4677字,需浏览 10分钟

 ·

2020-08-12 15:40



写在最前面


本文整理了机器学习/深度学习比较优秀的线上开放课程,主要为了方便小伙伴们个人学习所用,目前机器学习与深度学习发展迅速,新的课程也层出不穷,所以本帖也会不定期更新,包括更新课程网址以及添加新的好课程。所以,各位小伙伴有比较好的课程一定要在评论区留言,我看到后会将其更新上来,以分享给其它小伙伴。也欢迎留下你的赞!

注意这里对各个课程并没有做好与坏的评论,一般来说,入门机器学习的经典课程是Stanford: CS229,入门深度学习的经典课程是Stanford: CS231n。

1

Table of Contents


  • Deep Learning

  • Machine Learning

  • Reinforcement Learning

  • Computer Vision

  • Artificial Intelligence

2

Deep Learning


  1. [CMU: 11-785 Introduction to Deep Learning](http://deeplearning.cs.cmu.edu/) [Spring 2018] [DL]

  2. [Stanford: CS230 Deep Learning](https://web.stanford.edu/class/cs230/) [Winter 2018][DL] [[Ng中文笔记-黄海广](http://www.ai-start.com/)]

  3. [University of Chicago: CMSC 35246 Deep Learning ](http://ttic.uchicago.edu/~shubhendu/Pages/CMSC35246.html) [Spring 2017][DL]

  4. [Stanford: CS231n Convolutional Neural Networks for Visual Recognition](http://cs231n.stanford.edu/) [Spring 2017][CV] [[中文翻译](http://www.mooc.ai/course/268#modal)]

  5. [Stanford: CS224n Natural Language Processing with Deep Learning](http://web.stanford.edu/class/cs224n/) [Winter 2018][NLP]

  6. [Stanford: CS 20 Tensorflow for Deep Learning Research](http://web.stanford.edu/class/cs20si/) [Winter 2018][TensorFlow]

  7. [Stanford: Theories of Deep Learning (STATS 385)](https://stats385.github.io/) [Fall 2017][DL]

  8. [CMU: 10707 Deep Learning](http://www.cs.cmu.edu/~rsalakhu/10707/) [Fall 2017][DL]

  9. [National Taiwan University: Applied Deep Learning /Machine Learning and Having It Deep and Structured](https://www.csie.ntu.edu.tw/~yvchen/f106-adl/) [2017 Fall][DL] [[Hung-yi Lee](http://speech.ee.ntu.edu.tw/~tlkagk/index.html)]

  10. [Theano: Deep Learning Tutorials](http://deeplearning.net/tutorial/) [Theano]

  11. [Mxnet: Deep Learning-The Straight Dope](http://gluon.mxnet.io/) [2017][Mxnet] [[中文](http://zh.gluon.ai/)]

  12. [MIT: 6.S191 Introduction to Deep Learning](http://introtodeeplearning.com/) [2018][DL]

  13. [UVA: DEEP LEARNING COURSE](http://uvadlc.github.io/) [DL]

  14. [Fast.ai: Practical Deep Learning For Coders](http://course.fast.ai/) [2018][DL]

  15. [CMU: CS 11-747 Neural networks fro NLP](http://phontron.com/class/nn4nlp2018/#) [Spring 2018][NLP]

  16. [Stanford: CS224S / LINGUIST285 - Spoken Language Processing](http://web.stanford.edu/class/cs224s/) [Spring 2017][Speech Recognition]

  17. [Berkeley: CS 294-131: Special Topics in Deep Learning](https://berkeley-deep-learning.github.io/cs294-131-f17/) [Fall 2017][Advanced DL]

  18. [CMU: 16-385 Computer Vision](http://www.cs.cmu.edu/~16385/) [Spring 2018][CV]

  19. [Columbia University: E6894 Deep Learning for Computer Vision, Speech, and Language](http://llcao.net/cu-deeplearning17/schedule.html) [Spring 2017][DL]

  20. [Colorado: CSCI 5922 Neural Networks and Deep Learning](https://www.cs.colorado.edu/~mozer/Teaching/syllabi/DeepLearningFall2017/) [Fall 2017][DL]

  21. [UIUC: CS 598 LAZ Cutting-Edge Trends in Deep Learning and Recognition](http://slazebni.cs.illinois.edu/spring17/) [2017][DL]

  22. [UPC: Deep Learning for Speech and Language](https://telecombcn-dl.github.io/2017-dlsl/) [2017 Winter][Speech Recognition]

  23. [toronto: CSC 321 Intro to Neural Networks and Machine Learning](http://www.cs.toronto.edu/~rgrosse/courses/csc321_2018/) [CSC 321 Winter 2018][DL]

3

Computer Vision


1.[toronto: CSC420: Intro to Image Understanding](http://www.teach.cs.toronto.edu/~csc420h/fall/) [Fall 2017][CV]

4

Machine Learning


  1. [Stanford: CS229 Machine Learning](http://cs229.stanford.edu/) [Autumn 2017][ML]

  2. [University of Notre Dame: Statistical Computing for Scientists and Engineers](https://www.zabaras.com/statisticalcomputing) [Fall 2017][SL]

  3. [CMU: Statistical Machine Learning](http://www.stat.cmu.edu/~ryantibs/statml/) [Spring 2017][ML]

  4. [Carnegie Mellon University:10-701/15-781 Machine Learning](http://www.cs.cmu.edu/~tom/10701_sp11/) [Spring 2011][ML]

  5. [toronto: CSC411  introduction to Machine Learning](http://www.cs.toronto.edu/~jlucas/teaching/csc411/) [Fall 2017][ML]

  6. [MIT: 6.S099 Artificial General Intelligence](https://agi.mit.edu/) [2018]

  7. [MIT 6.S094: Deep Learning for Self-Driving Cars](https://selfdrivingcars.mit.edu/) [2018]

5

Reinforcement Learning


  1. [Berkeley: CS 294 Deep Reinforcement Learning](http://rll.berkeley.edu/deeprlcourse/?utm_source=qq&utm_medium=social) [Fall 2017][RL]

  2. [CMU: 10703 Deep RL and Control](http://www.cs.cmu.edu/~rsalakhu/10703/) [Fall 2018][RL]

  3. [Stanford: CS234: Reinforcement Learning](http://web.stanford.edu/class/cs234/index.html?utm_source=wechat_session&utm_medium=social) [Winter 2018][RL]




参考

  1. 深度学习名校课程大全: https://zhuanlan.zhihu.com/p/33580103

  2. Awesome Deep Learning: https://github.com/xiaohu2015/awesome-deep-learning











机器学习算法全栈工程师


                            一个用心的公众号

长按,识别,加关注

进群,学习,得帮助

你的关注,我们的热度,

我们一定给你学习最大的帮助



浏览 45
点赞
评论
收藏
分享

手机扫一扫分享

分享
举报
评论
图片
表情
推荐
点赞
评论
收藏
分享

手机扫一扫分享

分享
举报