Stanford CS229: Mastering Linear Regression & Gradient Descent | Lecture 2 (Fall 2018) πŸ“Š

Dive into Stanford's CS229 lecture on Linear Regression and Gradient Descent, essential techniques for machine learning. Perfect for students and AI enthusiasts seeking a solid foundation!

Stanford CS229: Mastering Linear Regression & Gradient Descent | Lecture 2 (Fall 2018) πŸ“Š
Stanford Online
1.7M views β€’ Apr 17, 2020
Stanford CS229: Mastering Linear Regression & Gradient Descent | Lecture 2 (Fall 2018) πŸ“Š

About this video

For more information about Stanford’s Artificial Intelligence professional and graduate programs, visit: https://stanford.io/ai

This lecture covers supervised learning and linear regression.

Andrew Ng
Adjunct Professor of Computer Science
https://www.andrewng.org/

To follow along with the course schedule and syllabus, visit:
http://cs229.stanford.edu/syllabus-autumn2018.html

#andrewng #machinelearning

Chapters:
00:00 Intro
00:45 Motivate Linear Regression
03:01 Supervised Learning
04:44 Designing a Learning Algorithm
08:27 Parameters of the learning algorithm
14:44 Linear Regression Algorithm
18:06 Gradient Descent
33:01 Gradient Descent Algorithm
42:34 Batch Gradient Descent
44:56 Stochastic Gradient Descent

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1.7M

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01:18:17

Published

Apr 17, 2020

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