• Skip to main content
  • Skip to header right navigation
  • Skip to site footer
Subscribe for exclusive resources and insights
Becket U

Becket U

The Best Resources for Learning STEM

  • Our Story
  • Subjects
    • Math
    • Physics
    • Computers
    • Microeconomics
    • Game Theory
    • Persuasion
  • Newsletter Archives
  • Requests & Feedback
  • Library
  • Math
  • Physics
  • Computers
  • Microeconomics
  • Game Theory
  • Persuasion

You are here: Home / Computers / Applied Machine Learning, Cornell CS 5787

Applied Machine Learning, Cornell CS 5787

Link here:
Click here for the full YouTube playlist and access to course materials.


Playlist description:

“Starting from the very basics, we cover all of the most important ML algorithms and how to apply them in practice.

One new idea we tried in this course was to make all the materials executable. The slides are also Jupyter notebooks with programmatically generated figures. Readers can tweak parameters and regenerate the figures themselves.

Also, whenever we introduce an important mathematical formula, we implement it in numpy. This helps establish connections between the math and how to apply it in code.

Another idea we tried was to include 3 full lectures on how to apply ML in practice in a principled way. This includes topics such as how to prioritize model improvements, diagnose overfitting, perform error analysis, visualize loss curves, etc.

Creating and running this course involved hundreds of hours of work from a teaching staff of 10+ people last Fall. I’m really excited to now make this material available to everyone!”

TweetEmailLinkedInFacebook

Subject: ComputersType: Computer Courses, Computers, Cornell, Free, Machine Learning, YouTube

© 2025 Becket U LLC.
All Rights Reserved. Powered by BizBudding

  • About
  • Sponsorship
  • Terms of Service
  • Privacy Policy

Becket U participates in the Amazon Services LLC Associates Program, an affiliate advertising program designed to provide a means for sites to earn advertising commissions by linking to Amazon.