Reinforcement Learning Course
Offered By: YouTube
Course Description
Overview
Embark on a comprehensive 17-hour journey into the world of Reinforcement Learning. Explore key concepts from introduction to advanced topics, covering exploration and exploitation, Markov Decision Processes, dynamic programming, model-free prediction and control, function approximation, deep reinforcement learning, policy gradients, actor critics, planning, and models. Gain practical insights through a case study on classic games and take a tour of deep RL agents. Master the fundamentals and cutting-edge techniques of this powerful machine learning paradigm.
Syllabus
Reinforcement Learning 1: Introduction to Reinforcement Learning.
Reinforcement Learning 2: Exploration and Exploitation.
Reinforcement Learning 3: Markov Decision Processes and Dynamic Programming.
Reinforcement Learning 4: Model-Free Prediction and Control.
Reinforcement Learning 5: Function Approximation and Deep Reinforcement Learning.
Reinforcement Learning 6: Policy Gradients and Actor Critics.
Reinforcement Learning 7: Planning and Models.
Reinforcement Learning 8: Advanced Topics in Deep RL.
Reinforcement Learning 9: A Brief Tour of Deep RL Agents.
Reinforcement Learning 10: Classic Games Case Study.
Taught by
DeepMind
Related Courses
Artificial Intelligence 2.0: AI, Python, DRL + ChatGPT PrizeUdemy Neural Networks
Serrano.Academy via YouTube Stanford CS234: Reinforcement Learning - Winter 2019
Stanford University via YouTube TF-Agents - A Flexible Reinforcement Learning Library for TensorFlow
TensorFlow via YouTube TensorFlow and Deep Reinforcement Learning, Without a PhD - Google I/O '18
TensorFlow via YouTube