Reinforcement Learning (RL) is one of the most exciting and transformative fields in artificial intelligence. From mastering complex games like Go and Chess to enabling autonomous vehicles and revolutionizing healthcare, RL has demonstrated its potential to solve some of the most challenging problems across diverse domains. This book, AI's Decision-Making Engine: Reinforcement Learning Explained, is designed to take you on a comprehensive journey through the world of RL, from its fundamental principles to its cutting-edge ...
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Reinforcement Learning (RL) is one of the most exciting and transformative fields in artificial intelligence. From mastering complex games like Go and Chess to enabling autonomous vehicles and revolutionizing healthcare, RL has demonstrated its potential to solve some of the most challenging problems across diverse domains. This book, AI's Decision-Making Engine: Reinforcement Learning Explained, is designed to take you on a comprehensive journey through the world of RL, from its fundamental principles to its cutting-edge advancements and real-world applications. When I first began exploring RL, I was captivated by its elegance and power. The idea that an agent could learn to make optimal decisions through trial and error, much like humans do, was both inspiring and profound. However, I also quickly realized that RL is a complex and multifaceted field, requiring a deep understanding of mathematics, algorithms, and practical implementation. This book is my attempt to bridge that gap, providing a structured and accessible guide for students, researchers, and practitioners alike. The book is organized into 13 chapters, each building on the previous one to create a cohesive and comprehensive understanding of RL. We start with the basics, introducing the core concepts of RL and its mathematical foundations. From there, we explore key algorithms, including value-based methods, policy-based methods, and advanced techniques like Deep Q-Networks (DQN), Proximal Policy Optimization (PPO), and Soft Actor-Critic (SAC). Along the way, we delve into practical applications, from game AI and robotics to finance and healthcare, showcasing how RL is transforming industries and solving real-world problems. But this book is not just about algorithms and applications. It also addresses the challenges and ethical considerations that come with developing and deploying RL systems. From sample efficiency and generalization to fairness, safety, and accountability, we examine the critical issues that must be addressed to ensure that RL technologies are not only effective but also responsible and beneficial to society. Finally, we look to the future, exploring emerging trends in RL research and its potential role in the development of Artificial General Intelligence (AGI). By understanding these directions, we can envision how RL will shape the future of AI and its impact on our world. This book is the culmination of years of research, teaching, and practical experience in RL. It is my hope that it will serve as a valuable resource for anyone interested in learning about RL, whether you are a student just starting out, a researcher pushing the boundaries of the field, or a practitioner applying RL to solve real-world problems.
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Add this copy of AI's Decision-Making Engine Reinforcement Learning to cart. $14.49, new condition, Sold by Ingram Customer Returns Center rated 5.0 out of 5 stars, ships from NV, USA, published 2025 by Independently Published.
Add this copy of Ai? S Decision-Making Engine Reinforcement Learning to cart. $16.25, new condition, Sold by Just one more Chapter rated 3.0 out of 5 stars, ships from Miramar, FL, UNITED STATES, published 2025 by Independently published.