๐Ÿ“šDeep RL Resources

Master List

For a comprehensive, continuously updated collection:

Books

Recommended order for learning:

  1. Graesser and Keng, Foundations of Deep Reinforcement Learningarrow-up-right

    • Best for beginners; SLM Lab is the companion library

    • Covers REINFORCE, DQN, A2C, PPO with code examples

  2. Sutton and Barto, Reinforcement Learning: An Introductionarrow-up-right

Video Courses

Course
Level
Focus

Intermediate

Practical deep RL

Intermediate

Modern deep RL

Advanced

Research-level

Tutorials

Getting started:

Code-focused:

Papers by Algorithm

Value-Based Methods

Algorithm
Paper
Key Idea

DQN

Deep Q-learning with experience replay

Double DQN

Reduce overestimation bias

Dueling DQN

Separate value and advantage streams

PER

Prioritize important transitions

CER

Always include latest transition

Policy Gradient Methods

Algorithm
Paper
Key Idea

A3C

Asynchronous actor-critic

GAE

Better advantage estimation

PPO

Clipped surrogate objective

Other Notable Papers

Topic
Paper
Relevance

Benchmarking

Why implementation details matter

QT-Opt

Real-world robot learning

SIL

Learn from good past experiences

Reference Implementations

Library
Focus
Notes

Research, modularity

This project

Single-file implementations

Great for learning

Production use

Well-tested, easy API

Distributed training

Scalable

Staying Current

Last updated

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