6.7960 Deep Learning
6.7960 - Deep Learning (Fall 2024, MIT OCW). Instructors: Prof. Phillip Isola, Prof. Sara Beery, and Dr. Jeremy Bernstein. This course covers the fundamentals of deep learning, including both theory and applications. Topics include neural net architectures (MLPs, CNNs, RNNs, graph nets, transformers), geometry and invariances in deep learning, backpropagation and automatic differentiation, learning theory and generalization in high dimensions, and applications to computer vision, natural language processing, and robotics. (from ocw.mit.edu)
| Lecture 02 - How to Train a Neural Net |
This video explains how to train a neural network using stochastic gradient descent (SGD), backpropagation, and automatic differentiation, key components of differentiable programming.
Go to the Course Home or watch other lectures: