Ever wondered how machines learn to make decisions: not by rules, but by trial and error?
Learning to Learn: Reinforcement Learning Explained for Humans is your doorway into one of the most exciting areas of Artificial Intelligence. Written with stories, analogies, and real Python code, this book transforms complex equations into ideas you’ll never forget.
Inside, you’ll discover:
The core building blocks of Reinforcement Learning: agents, states, actions, rewards, and policies.
Why trial-and-error learning powers robots, self-driving cars, recommender systems, and even healthcare AI.
Intuitive analogies: from curious cats to game-playing algorithms.
Step-by-step Python examples you can run and modify yourself.
“Satyam’s Explanation” sections at the end of each chapter that strip away jargon and give you the heart of the idea in plain language.
Whether you’re a student, developer, researcher, or a curious learner, this book is designed to help you not just understand RL, but feel how it works. Each chapter includes quizzes, reflective exercises, and code experiments so you can learn actively.
If you’ve been intimidated by dense math and Bellman equations, this book is the friendly guide you’ve been looking for.
Learn to think like an agent. Learn to learn.
"synopsis" may belong to another edition of this title.
£ 7.39 shipping from U.S.A. to United Kingdom
Destination, rates & speedsSeller: California Books, Miami, FL, U.S.A.
Condition: New. Print on Demand. Seller Inventory # I-9798298399968
Quantity: Over 20 available