Authors: Richard S. Sutton, Andrew G. Barto
Publisher: The MIT Press (2018) · Language: English
ISBN-10: 0262039249 · ISBN-13: 978-0262039246
Reinforcement Learning: An Introduction, 2nd Edition by Richard S. Sutton and Andrew G. Barto is the definitive textbook on the foundations, algorithms, and applications of reinforcement learning (RL).
This landmark work provides a comprehensive and mathematically rigorous introduction to the principles of learning from interaction and experience — a framework that underpins modern artificial intelligence, robotics, and autonomous systems.
The second edition expands upon the classic 1998 text, incorporating modern advancements in RL such as deep learning, policy gradient methods, and actor–critic architectures, making it the essential reference for students, researchers, and practitioners in machine learning.
Understand the fundamentals of Markov decision processes (MDPs), dynamic programming, Monte Carlo methods, and temporal-difference learning.
Explore key algorithms such as Q-learning, SARSA, eligibility traces, and policy iteration, with practical insights into their implementation and convergence properties.
Learn how neural networks and other approximators enable RL to scale to complex, high-dimensional environments.
Examine the trade-offs and strategies behind intelligent exploration, balancing learning efficiency and performance.
Delve into policy gradient methods, actor–critic frameworks, partially observable MDPs (POMDPs), and the theoretical basis for modern RL algorithms used in deep reinforcement learning systems.
Expanded chapters covering deep reinforcement learning and policy gradient methods.
New material on off-policy learning, function approximation, and generalization.
Integration of modern research insights and algorithmic refinements since the first edition.
Updated examples, pseudocode, and problem sets for advanced study.
Clearer mathematical explanations and improved notation for teaching and self-study.
Reinforcement Learning: An Introduction is universally recognized as the foundational text that defines the field of RL. Sutton and Barto’s work bridges theory and practice, offering readers a conceptual framework that underlies cutting-edge AI developments — from AlphaGo and autonomous vehicles to robotic control systems.
This edition provides not just algorithmic knowledge, but also the philosophical and mathematical insights that drive research and innovation in intelligent systems.
Graduate and Undergraduate Students studying AI, machine learning, or control theory.
Researchers and Academics exploring RL algorithms and theoretical developments.
Data Scientists and Engineers implementing RL in real-world systems.
AI Enthusiasts and Developers seeking a deep understanding of how agents learn through interaction.
Markov decision processes (MDPs)
Dynamic programming and temporal-difference learning
Monte Carlo methods and Q-learning
Policy gradient and actor–critic algorithms
Function approximation and generalization
Planning, exploration, and model-based learning
Deep reinforcement learning foundations
Reinforcement Learning: An Introduction, 2nd Edition by Richard S. Sutton and Andrew G. Barto remains the authoritative guide to one of the most transformative areas in artificial intelligence.
Through its clear exposition, rigorous analysis, and updated coverage of modern methods, it equips readers with both the theoretical grounding and practical tools to advance the science of learning from experience.
Whether used in academic study, AI research, or applied machine learning, this book continues to be the cornerstone of reinforcement learning education and innovation.