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Reinforcement Learning in Python & PyTorch: A Practical Guide to Modern RL Algorithms and Python Implementations: From Theory to Deep RL & Real-World Applications: Building Intelligent Agents - Brossura

 
9798290162072: Reinforcement Learning in Python & PyTorch: A Practical Guide to Modern RL Algorithms and Python Implementations: From Theory to Deep RL & Real-World Applications: Building Intelligent Agents

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You'll Learn

  • Grasp the Foundational Theory of Reinforcement Learning: Understand the core components of RL, including the agent-environment interface, Markov Decision Processes (MDPs), and the Bellman equations that form the mathematical backbone of decision-making under uncertainty.

  • Master Classic RL Algorithms: Learn and implement fundamental model-free and model-based algorithms like Monte Carlo methods, Temporal Difference (TD) learning (SARSA and Q-Learning), and Dynamic Programming to solve problems in simplified environments like Grid World and classic games.

  • Implement Modern Deep Reinforcement Learning Algorithms: Use deep neural networks as function approximators to scale RL to complex, high-dimensional problems. You will build and train state-of-the-art agents using Deep Q-Networks (DQN), Policy Gradients (REINFORCE), and Actor-Critic methods (A2C/A3C).

  • Tackle Continuous Control Tasks: Learn advanced actor-critic algorithms like DDPG, TD3, and SAC to train agents for tasks with continuous action spaces, such as robotics control and other complex simulations.

  • Build and Debug Practical RL Systems in Python: Gain hands-on experience by implementing algorithms from scratch using popular libraries like NumPy, PyTorch, and Gymnasium. You will learn essential debugging strategies, hyperparameter tuning techniques, and best practices for evaluating your agents' performance.

  • Explore Advanced and Cutting-Edge Topics: Dive into specialized areas of RL, including Multi-Agent Systems (MARL), Hierarchical Reinforcement Learning (HRL), Model-Based RL, and Offline RL. You will also learn about the revolutionary concept of Reinforcement Learning from Human Feedback (RLHF) and its role in aligning large language models.

  • Apply RL to Real-World Case Studies: Understand how to frame diverse real-world problems—from robotics and game-playing to recommender systems and resource management—as RL problems and select the appropriate algorithms to solve them.

  • Address the Challenges and Ethics of RL: Recognize key challenges like the exploration-exploitation dilemma and the "deadly triad." You will also gain an understanding of the ethical considerations, safety, and societal impact of deploying RL systems.

Le informazioni nella sezione "Riassunto" possono far riferimento a edizioni diverse di questo titolo.

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Publishing, PythQuill
Editore: Independently published, 2025
ISBN 13: 9798290162072
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Da: California Books, Miami, FL, U.S.A.

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Da: U.S.A. a: Italia
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