Master the art of decision-making with Reinforcement Learning: A comprehensive guide from fundamental concepts to advanced algorithms and applications.
This in-depth book covers the basics of RL, including Markov Decision Processes (MDPs), value-based methods, policy gradient methods, and more.
You'll also learn about cutting-edge topics like deep reinforcement learning, multi-agent systems, and transfer learning.
With real-world examples and case studies, this guide is perfect for beginners looking to start their RL journey or experienced professionals seeking to deepen their understanding of the field.
Dive in and discover how RL can be applied to robotics, finance, healthcare, and more.