MIT Introduction to Deep Learning : Lecture 1 *New 2022 Edition* Foundations of Deep Learning Lecturer: Alexander Amini For all lectures, slides, and lab materials: Lecture Outline 0:00 - Introduction 6:35 - Course information 9:51 - Why deep learning? 12:30 - The perceptron 14:31 - Activation functions 17:03 - Perceptron example 20:25 - From perceptrons to neural networks 26:37 - Applying neural networks 29:18 - Loss functions 31:19 - Training and gradient descent 35:46 - Backpropagation 38:55 - Setting the learning rate 41:37 - Batched gradient descent 43:45 - Regularization: dropout and early stopping 47:58 - Summary Subscribe to stay up to date with new deep learning lectures at MIT, or follow us on @MITDeepLearning on Twitter and Instagram to stay fully-connected!!
Hide player controls
Hide resume playing