How do you teach an AI to make smart decisions on its own? You reward it. Reinforcement Learning Simplified is a beginner-friendly introduction to one of the most fascinating fields in artificial intelligence-where machines learn not from data alone, but from experience, feedback, and trial and error . From training agents to play games, navigate environments, or optimize real-world systems, this book explains core concepts in plain language with practical Python examples. No heavy math or academic jargon. Just the ...
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How do you teach an AI to make smart decisions on its own? You reward it. Reinforcement Learning Simplified is a beginner-friendly introduction to one of the most fascinating fields in artificial intelligence-where machines learn not from data alone, but from experience, feedback, and trial and error . From training agents to play games, navigate environments, or optimize real-world systems, this book explains core concepts in plain language with practical Python examples. No heavy math or academic jargon. Just the foundations you need to understand how reinforcement learning works-and how to build and experiment with your own agents. Inside, you'll learn how to: Understand key ideas like agents, environments, rewards, and policies Build simple RL simulations from scratch in Python Explore core algorithms like Q-learning , SARSA , and Deep Q-Networks (DQN) Visualize how agents learn over time Apply RL to small games, grid environments, and decision-making tasks Use libraries like gym, stable-baselines3, and PyTorch for hands-on development Understand the role of exploration vs. exploitation Tune hyperparameters and avoid common training pitfalls Whether you're a student, hobbyist, or aspiring AI developer, Reinforcement Learning Simplified is the perfect first step into a field that's powering the next generation of intelligent systems-from robotics to self-driving cars to recommendation engines.
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Add this copy of Reinforcement Learning Simplified: An Introduction to to cart. $16.09, new condition, Sold by Ingram Customer Returns Center rated 5.0 out of 5 stars, ships from NV, USA, published 2025 by Independently Published.