Mastering Reinforcement Learning with Python: Build next-generation,self-learning models using reinforcement learning techniques and best practices
by: Enes Bilgin
Publisher Finelybook 出版社： Packt Publishing (December 18,2020)
Language 语言： English
pages 页数： 544 pages
ISBN-10 书号： 1838644148
ISBN-13 书号： 9781838644147
Get hands-on experience in creating state-of-the-art reinforcement learning agents using TensorFlow and RLlib to solve complex real-world business and industry problems with the help of expert tips and best practices
Reinforcement learning (RL) is a field of artificial intelligence (AI) used for creating self-learning autonomous agents. Building on a strong theoretical foundation,this book takes a practical approach and uses examples inspired by: real-world industry problems to teach you about state-of-the-art RL.
Starting with bandit problems,Markov decision processes,and dynamic programming,the book provides an in-depth review of the classical RL techniques,such as Monte Carlo methods and temporal-difference learning. After that,you will learn about deep Q-learning,policy gradient algorithms,actor-critic methods,model-based methods,and multi-agent reinforcement learning. Then,you’ll be introduced to some of the key approaches behind the most successful RL implementations,such as domain randomization and curiosity-driven learning.
As you advance,you’ll explore many novel algorithms with advanced implementations using modern Python libraries such as TensorFlow and Ray’s RLlib package. You’ll also find out how to implement RL in areas such as robotics,supply chain management,marketing,finance,smart cities,and cybersecurity while assessing the trade-offs between different approaches and avoiding common pitfalls.
By the end of this book,you’ll have mastered how to train and deploy your own RL agents for solving RL problems.
What you will learn
Model and solve complex sequential decision-making problems using RL
Develop a solid understanding of how state-of-the-art RL methods work
Use Python and TensorFlow to code RL algorithms from scratch
Parallelize and scale up your RL implementations using Ray’s RLlib package
Get in-depth knowledge of a wide variety of RL topics
Understand the trade-offs between different RL approaches
Discover and address the challenges of implementing RL in the real world