Introduction to TF Agents and Deep Q Learning (Reinforcement learning with TensorFlow Agents)
Wei Wei, a Developer Advocate for TensorFlow, introduces TF Agents and walks through how to use the Deep Q Learning model to solve the cartpole environment.
Resources:
TensorFlow Agents homepage →
Train a Deep Q Network with TF Agents Tutorial →
TF-Agent DQN example →
Reinforcement Learning Lecture Series 2021 (DeepMind x UCL) →
Human Level Control Through Deep Reinforcement Learning (DQN) →
DeepMind Reverb: a framework for experience replay →
Opening up a physics simulator for robotics →
Chapters:
00:00 Introduction
00:23 What is TF Agents
1:38 TF Agents system overview
2:56 Deep Q Network (DQN)
4:10 Environment/Task
5:12 Define Q network
5:40 Define the DQN agent
5:49 Define the collect and eval policies
7:13 Set up the Reverb replay buffer
7:38 Define the replay buffer observer
7:54 Create the driver to collect experience
8:09 Inspe
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