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The Math of AI (Course 2): Deep Learning
Neural Network Basics
Neural Networks (Part 1): Linear Regression; Basic NN structure; and a brief history of Deep Learning (35:10)
Neural Networks (Part 2): Activation functions; Loss functions; Cross-Entropy; and One-hot-encoding (33:25)
Neural Networks (Part 3): Cross-Entropy Loss Explained; Gradient Descent; and SGD. (24:59)
Neural Networks (Part 4): Backpropagation; Convolutional Neural Networks. (25:33)
Deep Reinforcement Learning
Deep Reinforcement Learning Part 1: Intro, Exploration vs Exploitation; Monte Carlo Tree Search (MCTS). (25:29)
Deep Reinforcement Learning Part 2: Monte Carlo Tree Search (MCTS) example worked out. (24:18)
Deep Reinforcement Learning Part 3: AlphaGo intro and SL net & roll out net training eqns. (24:20)
Deep Reinforcement Learning Part 4: more on AlphaGo -- RL net and value net training eqns. (15:45)
Deep Reinforcement Learning Part 5: AlphaGo Zero (17:19)
Deep Reinforcement Learning Part 6: Alpha Tensor (27:07)
Generative AI Part 1: GANs, VAEs, and Diffusion Models.
Generative Adversarial Networks (Part 1): Discriminator vs Generator; Objective function; and KL Divergence. (23:47)
Generative Adversarial Networks (Part 2): Jensen-Shannon Metric; Analyzing the GAN Objective. (16:14)
Variational Autoencoders (Part 1): Encoder-Decoder; Reparametrization Trick; Bayesian Inference. (26:07)
Variational Autoencoders (Part 2): Likelihood Probability; Evidence Lower Bound (ELBO); VAE Objective. (25:07)
Diffusion Models (Part 1): Forward & Reverse Processes. (17:40)
Diffusion Models (Part 2): The LeapFrog Property. (23:02)
Diffusion Models (Part 3): DDPM Objective via KL Divergence of forward and reverse processes. (18:57)
Diffusion Models (Part 4): Deriving the DDPM Objective (contd). (13:28)
Diffusion Models (Part 5): Gaussian Forms (21:12)
Diffusion Models (Part 6): Deriving the Mean and Variance of the Fwd Process Posterior. (22:52)
Diffusion Models (Part 7): DDPM Loss Function Assuming Fixed Variance. (16:56)
Diffusion Models (Part 8): DDPM Simple Loss; DDPM Training and Sampling Pseudocodes. (17:40)
Generative AI Part 2: Language Models
Word Embedding: Word2Vec (33:02)
Attention Mechanism (36:58)
Transformer (Part 1): Transformer Architecture; Autoregression at Training Time. (29:02)
Transformer (Part 2): Autoregression at Inference Time; Large Language Models. (13:36)
Contrastive Language Image Pretraining (CLIP). (25:35)
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Contrastive Language Image Pretraining (CLIP).
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