Skip to content

miguelsaddress/machine-learning-resources

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

23 Commits
 
 
 
 

Repository files navigation

About

This is a list of free resources to learn Machine Learning. Feel free to submit your PR correcting anything you feel like and/or adding new materials that are either free or reasonable cheap, as Coursera Certifications

Online programs and courses

Programs and degrees

Instructors: Cheng Han-Lee, Miriam Swords Kalk

TODO: add other courses Courses:

Courses:

Courses:

Instructors: Emily Fox, Carlos Guestrin

Courses

Machine Learning [Coursera]

Instructors: Andrew Ng
University: Stanford

Pros/cons:

  • Strong focus on algorithms and models, less on statistics
  • Plenty of insightful details from teacher
  • Student gets hand on experience with programming assignments using MATLAB/Octave
  • Weak focus on large data sets

Original course resources: Playlist on Youtube, Website

###Intro to Machine Learning [Udacity]

Instructors: Sebastian Thrun
University: Stanford

###Introduction to Big Data [Coursera]

Instructors: Natasha Balac
Institute: San Diego Supercomputer Center (SDSC)

###Machine Learning with Big Data [Coursera]

Instructors: Paul Rodriguez, Natasha Balac
Institute: San Diego Supercomputer Center (SDSC)

###Graph Analytics for Big Data [Coursera]

Instructors: Amarnath Gupta
Institute: San Diego Supercomputer Center (SDSC)

###Introduction to Big Data Analytics [Coursera]

Instructors: Paul Rodriguez, Andrea Zonca, Natasha Balac
Institute: San Diego Supercomputer Center (SDSC)

###Hadoop Platform and Application Framework [Coursera]

Instructors: Natasha Balac, Paul Rodriguez, Andrea Zonca
Institute: San Diego Supercomputer Center (SDSC)

###DS101x: Statistical Thinking for Data Science and Analytics [edX] Instructors:
University: Columbia University

###DS102x: Machine Learning for Data Science and Analytics [edX] Instructors:
University: Columbia University

###DS103x: Enabling Technologies for Data Science and Analytics: The Internet of Things [edX] Instructors:
University: Columbia University

Instructor: Mark Schmidt
University: University of British Columbia

Instructor: Mark Schmidt
University: University of British Columbia

Instructor: Nando de Freitas
University: University of Oxford

"Deep Learning" course at Oxford University. Yes, it is about Machine Learning, but anyway he is about modern approaches in the machine learning area. Website includes slides and videos.

Additional material:

Instructor: Geoffrey Hinton
University: University of Toronto

Pros/cons:

  • Complex
  • Covers lot of topics
  • Lots of supplementary reading

Instructor: Richard Zemel
University: University of Toronto

Machine Learning [Coursera]

Instructor: Pedro Domingos
University: University of Washington

Archives

Other Resources

Blogs:

Tool tutorials

Books

Contributors

Special thanks to:

About

This is a list of free resources to learn Machine Learning.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published