开源软件名称(OpenSource Name): Wrosinski/MachineLearning_ResourcesCompilation开源软件地址(OpenSource Url): https://github.com/Wrosinski/MachineLearning_ResourcesCompilation开源编程语言(OpenSource Language): 开源软件介绍(OpenSource Introduction): Machine Learning & Deep Learning Resources Compilation
Compilation of resources found around the web connected with Machine Learning, Deep Learning & Data Science in general.
Academic Machine Learning:
Oxford Machine Learning, 2014-2015 Slides in .pdf, videos. Mathematical problem sets & practicals in Torch. By Nando de Freitas.
NYU DS-GA-1003: Machine Learning and Computational Statistics, Spring 2016 Slides, notes, additional references to books and videos for some of the lectures.
CMU 10-701/15-781 Machine Learning, Spring 2011 Lectures by Tom Mitchell. Slides, videos, additional readings and handouts.
CMU 10-701/15-781 Machine Learning, 2015 Lectures by Alex Smola. Slides, high-quality videos, additional readings and handouts.
Stanford CS229: Machine Learning A classic by Andrew NG. Video lectures (old but very good in terms of content!), useful notes & review materials + assignmets. Materials (except videos) from 2016 available here .
Columbia COMS 4771: Machine Learning & COMS 4772: Advanced Machine Learning Lecture notes in form of slides + related notes and homework assignments.
Berkeley CS 189/289A: Introduction to Machine Learning, Spring 2017 Lecture notes and assigments.
UBC CPSC 340: Machine Learning and Data Mining, 2012 Bachelor's level ML course by Nando de Freitas. Videos, slides and assignments.
UBC CPSC 540: Machine Learning, 2013 MSc level course analogous to the one above by Nando de Freitas. Videos, slides and assignments.
Duke STA561 COMPSCI571: Probabilistic Machine Learning, Fall 2015 Notes and readings + homeworks.
Advanced & Theoretical ML:
CMU 10-715: Advanced Introduction to Machine Learning, Fall 2015 Video lectures by Alex Smola & Barnabas Poczos, slides and additional readings + homework.
CMU 10-702/36-702: Statistical Machine Learning, Spring 2016 Lecture videos, notes and assignments by Larry Wasserman. Cource concentrated on theoretical foundations.
Harvard CS281: Advanced Machine Learning, Fall 2013 Compiled resources on topics contained in the course - videos, papers, notes and assignments.
John Hopkins University: Unsupervised Learning: From Big Data to Low-Dimensional Representations, 2017 Video lectures and book.
Princeton COS511: Theoretical Machine Learning, Spring 2014 Lecture notes and readings.
University of Washington EE512A: Advanced Inference in Graphical Models, Fall Quarter, 2014 Lecture videos & slides.
Berkeley CS281a: Statistical Learning Theory Metacademy roadmap wit various materials on topics connected with the course.
MIT 9.520/6.860: Statistical Learning Theory and Applications, Fall 2016 Readings & link to videos from Fall 2015 class.
Academic Deep Learning:
Reinforcement Learning:
Various very useful ML & theoretical resources:
Mathematics:
Practical resources:
Deep Learning libraries-related compilations :
Tensorflow (chosen few):
Other Courses and tutorials:
Various Python:
ML Libraries:
Automated ML:
Parameter Optimization:
Various:
Feature Encoding:
Other:
Credits
Big thanks to all contributors to awesome lists (posted in other resources), which enabled me to find some of the courses contained in the list.
请发表评论