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MIT Introduction to Deep Learning | 6.S191
MIT Introduction to Deep Learning 6.S191: Lecture 1
*New 2024 Edition*
Foundations of Deep Learning
Lecturer: Alexander Amini
For all lectures, slides, and lab materials: http://introtodeeplearning.com/
Lecture Outline
0:00 - Introduction
7:25 - Course information
13:37 - Why deep learning?
17:20 - The perceptron
24:30 - Perceptron example
31;16 - From perceptrons to neural networks
37:51 - Applying neural networks
41:12 - Loss functions
44:22 - Training and gradient descent
49:52 - Backpropagation
54:57 - Setting the learning rate
58:54 - Batched gradient descent
1:02:28 - Regularization: dropout and early stopping
1:08:47 - Summary
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