HomeBooksReinforcement Learning: Theory and Python Implementation

Reinforcement Learning: Theory and Python Implementation

English | 978-981-19-4933-3 | 559 pages| PDF (True) | 8 MB

Reinforcement Learning: Theory and Python Implementation is a tutorial book on reinforcement learning, with explanations of both theory and applications. Starting from a uniform mathematical framework, this book derives the theory of modern reinforcement learning systematically and introduces all mainstream reinforcement learning algorithms such as PPO, SAC, and MuZero. It also covers key technologies of GPT training such as RLHF, IRL, and PbRL. Every chapter is accompanied by high-quality implementations, and all implementations of deep reinforcement learning algorithms are with both TensorFlow and PyTorch. Codes can be found on GitHub along with their results and are runnable on a conventional laptop with either Windows, macOS, or Linux.

This book is intended for readers who want to learn reinforcement learning systematically and apply reinforcement learning to practical applications. It is also ideal to academical researchers who seek theoretical foundation or algorithm enhancement in their cutting-edge AI research.

- Advertisment -

Operating System

Windows 10

Windows 8

Windows 7

Windows 11

Mageia

Solus OS

openSUSE

Windows 8.1

Android-x86

Zorin OS

Ubuntu MATE

Kubuntu

Deepin

MX Linux

CloudReady

Fedora Linux

elementary OS

Linux Mint

Ubuntu OS

Exit mobile version