Home
L1 Introduction -- CS294-158 SP24 Deep Unsupervised Learning -- UC Berkeley Spring 2024
Pieter Abbeel
Jan 20, 2024
14,469 views
L2 Autoregressive Models -- CS294-158 SP24 Deep Unsupervised Learning -- UC Berkeley Spring 2024
Jeff Dean (Google): Exciting Trends in Machine Learning
L6 Diffusion Models (SP24)
L1 MDPs, Exact Solution Methods, Max-ent RL (Foundations of Deep RL Series)
Building OpenAI o1 (Extended Cut)
🚀 Android Architecture the Simple Way Masterclass
L7 Self-Supervised Learning (Spring 2024, UC Berkeley) -- Pieter Abbeel & Philipp Wu
GraphRAG: The Marriage of Knowledge Graphs and RAG: Emil Eifrem
MIT Introduction to Deep Learning | 6.S191
L4 Latent Variable Models and Variational AutoEncoders -- CS294-158 SP24 Deep Unsupervised Learning
L3 Policy Gradients and Advantage Estimation (Foundations of Deep RL Series)
What is generative AI and how does it work? – The Turing Lectures with Mirella Lapata
L5 GANs -- CS294-158 SP24 Deep Unsupervised Learning -- UC Berkeley
Exploring foundation models - Session 1
Deep Learning Bootcamp: Kaiming He
Andrew Ng: Opportunities in AI - 2023
L4 TRPO and PPO (Foundations of Deep RL Series)
L13a Generative Modeling for Science -- Guest Lecturer John Ingraham
MIT 6.S191 (2023): Deep Learning New Frontiers