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Maxim Lapan delivers intuitive explanations and insights into complex reinforcement learning (RL) concepts, starting from the basics of RL on simple environments and tasks to modern, state-of-the-art methods Purchase of the print or Kindle book includes a free PDF eBook Free with your book: DRM-free PDF version + access to Packt's next-gen Reader* Key Features Learn with concise explanations, modern libraries, and diverse applications from games to stock trading and web navigation Develop deep RL models, improve their stability, and efficiently solve complex environments New content on RL from human feedback (RLHF), MuZero, and transformers Book Description Start your journey into reinforcement learning (RL) and reward yourself with the third edition of Deep Reinforcement Learning Hands-On. This book takes you through the basics of RL to more advanced concepts with the help of various applications, including game playing, discrete optimization, stock trading, and web browser navigation. By walking you through landmark research papers in the field, this deep RL book will equip you with practical knowledge of RL and the theoretical foundation to understand and implement most modern RL papers. The book retains its approach of providing concise and easy-to-follow explanations from the previous editions. You'll work through practical and diverse examples, from grid environments and games to stock trading and RL agents in web environments, to give you a well-rounded understanding of RL, its capabilities, and its use cases. You'll learn about key topics, such as deep Q-networks (DQNs), policy gradient methods, continuous control problems, and highly scalable, non-gradient methods. If you want to learn about RL through a practical approach using OpenAI Gym and PyTorch, concise explanations, and the incremental development of topics, then Deep Reinforcement Learning Hands-On, Third Edition, is your ideal companion *Email sign-up and proof of purchase required What you will learn Stay on the cutting edge with new content on MuZero, RL with human feedback, and LLMs Evaluate RL methods, including cross-entropy, DQN, actor-critic, TRPO, PPO, DDPG, and D4PG Implement RL algorithms using PyTorch and modern RL libraries Build and train deep Q-networks to solve complex tasks in Atari environments Speed up RL models using algorithmic and engineering approaches Leverage advanced techniques like proximal policy optimization (PPO) for more stable training Who this book is for This book is ideal for machine learning engineers, software engineers, and data scientists looking to learn and apply deep reinforcement learning in practice. It assumes familiarity with Python, calculus, and machine learning concepts. With practical examples and high-level overviews, it’s also suitable for experienced professionals looking to deepen their understanding of advanced deep RL methods and apply them across industries, such as gaming and finance Table of Contents What Is Reinforcement Learning? OpenAI Gym API and Gymnasium Deep Learning with PyTorch The Cross-Entropy Method Tabular Learning and the Bellman Equation Deep Q-Networks Higher-Level RL Libraries DQN Extensions Ways to Speed Up RL Stocks Trading Using RL Policy Gradients Actor-Critic Methods - A2C and A3C The TextWorld Environment Web Navigation Continuous Action Space Trust Region Methods Black-Box Optimizations in RL Advanced Exploration (N.B. Please use the Read Sample option to see further chapters) Review: Great Read on RL - Go ahead and buy without hesistation. This is a great read on RL. Review: Recommend for some one interested in see new RL tecnics - Awesome book I loved











| Best Sellers Rank | #100,190 in Books ( See Top 100 in Books ) #1 in Prolog Programming #9 in Cybernetics (Books) #13 in Machine Theory (Books) |
| Customer Reviews | 4.6 out of 5 stars 74 Reviews |
A**R
Great Read on RL
Go ahead and buy without hesistation. This is a great read on RL.
J**O
Recommend for some one interested in see new RL tecnics
Awesome book I loved
R**H
Good book
Good book
D**O
Good book on RL, well written, and delves into the nitty gritty.
The book is very well written and surprisingly it reads very quickly. I'm about 80% of the way through my first read. The code snippets are very useful and the github page is well mantained. The only thing: for this being called "Deep reinforcement learning" I was expecting there to be more exercises. As mock exercises I've been reading the theory and trying to implement models before looking at the code. There are some suggestions at the end of some chapters about how one could take the notions discussed in the chapter forwards. I also appreciated that the Author cites research papers that I can go read if I want to delve deeper into specific topics. All in all, pretty good book on RL, can highly advise for someone looking for the technicalities.
M**L
Great practical book
I’ve read more than half of the book and tried the codes, and I must say it’s a great resource for solving problems with deep reinforcement learning. While I’ve read other theory-heavy books, applying the algorithms on my own has been quite challenging. This book, however, provides the essential building blocks, allowing you to build upon them as needed. If you’re looking to apply deep RL, I highly recommend it. Plus, it comes with a colorful PDF, which is a nice bonus.
M**R
Comprehensive
Pretty decent intro of rl
S**B
A very helpful reference
A very helpful reference.
D**B
Poor quality plastic & construction
The book content seemed deep but book had with crushed corners, aonly in bubble wrap bag versus a cardboard container.
J**R
One of the best books on RL!
In my opinion, this is one of the best books on reinforcement learning. It provides a solid introduction, covers the most relevant concepts, and includes advanced chapters. Additionally, the accompanying repository offers up-to-date code for developing and training various models using Gymnasium.
W**R
Best book for "Hands-On" Reinforcement Learning
I learned a lot from this book, but I also had to search a lot in the Internet to get some of the code running. I understand that a book on a rapidly progressing field ages, but the code repository could be held up-to-date a little bit better. For the theoretical background I sometimes had to go to other resources to get a different angle of view. This is not a shortcoming of the book, just my unfamiliarity with the topic. The attached image shows what difference it makes to get the right Pong version from gymnasium (Chapter 6). At first I couldn't find the right version because of the mentioned issues with the outdated code. When I finally fixed this everything worked as shown in the book.
C**F
Recommend book for RL
Nice book, very well written with strong logic. Not only a hands-on as described in the title, it’s a ‘masterclass’. The exact book I’ve looking for.
M**A
Great book - totally recommended!
One of the best technical books I’ve ever read. It offers clear, intuitive explanations of the methods it covers, without overwhelming the reader with heavy math—though it always provides references for those who want to dive deeper into the formal proofs. Each new concept is paired with excellent examples, where you not only build the components from scratch but also learn how to work with their implementations in standard Python libraries. After finishing the book, my understanding of RL methods, their details, and their practical implementation is so much deeper. I would absolutely recommend this book!
V**R
Great book
Very practical !
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