This comprehensive volume offers an in-depth exploration of end-to-end differentiable architectures in the context of deep reinforcement learning for robotics control. Serving as an essential resource for students, researchers, and practitioners in robotics and artificial intelligence, it systematically unpacks the complexities of designing and implementing sophisticated control policies for robotic systems.
Structured across 33 detailed chapters, the book begins with foundational concepts of deep reinforcement learning and progresses to advanced topics that address current challenges in the field. It delves into various neural network architectures suitable for control tasks, elucidates gradient-based learning methods, and examines both model-based and model-free reinforcement learning approaches. Readers will gain a thorough understanding of policy gradient methods, value-based methods like Q-learning, and optimization algorithms crucial for training effective control policies.
The text places significant emphasis on practical strategies for handling high-dimensional state and action spaces, managing the exploration-exploitation trade-offs, and designing robust reward functions. It also explores continuous action spaces, hierarchical reinforcement learning structures, and techniques for improving sample efficiency. Advanced chapters introduce cutting-edge topics such as incorporating attention mechanisms, memory-augmented neural networks, and uncertainty estimation into control architectures.
Readers will benefit from discussions on transfer learning, sim-to-real transfer techniques, and the integration of physical dynamics into learning architectures. The book also addresses the importance of regularization, generalization, and scalability in deep reinforcement learning methods. By integrating perception and control within a unified end-to-end differentiable framework, the text provides valuable insights into the future direction of robotics control.
Authored by experts in the field, this authoritative guide bridges the gap between theoretical foundations and practical applications, equipping readers with the knowledge and tools necessary to advance the capabilities of robotic control systems through deep reinforcement learning.
"synopsis" may belong to another edition of this title.
Seller: Grand Eagle Retail, Bensenville, IL, U.S.A.
Paperback. Condition: new. Paperback. This comprehensive volume offers an in-depth exploration of end-to-end differentiable architectures in the context of deep reinforcement learning for robotics control. Serving as an essential resource for students, researchers, and practitioners in robotics and artificial intelligence, it systematically unpacks the complexities of designing and implementing sophisticated control policies for robotic systems.Structured across 33 detailed chapters, the book begins with foundational concepts of deep reinforcement learning and progresses to advanced topics that address current challenges in the field. It delves into various neural network architectures suitable for control tasks, elucidates gradient-based learning methods, and examines both model-based and model-free reinforcement learning approaches. Readers will gain a thorough understanding of policy gradient methods, value-based methods like Q-learning, and optimization algorithms crucial for training effective control policies.The text places significant emphasis on practical strategies for handling high-dimensional state and action spaces, managing the exploration-exploitation trade-offs, and designing robust reward functions. It also explores continuous action spaces, hierarchical reinforcement learning structures, and techniques for improving sample efficiency. Advanced chapters introduce cutting-edge topics such as incorporating attention mechanisms, memory-augmented neural networks, and uncertainty estimation into control architectures.Readers will benefit from discussions on transfer learning, sim-to-real transfer techniques, and the integration of physical dynamics into learning architectures. The book also addresses the importance of regularization, generalization, and scalability in deep reinforcement learning methods. By integrating perception and control within a unified end-to-end differentiable framework, the text provides valuable insights into the future direction of robotics control.Authored by experts in the field, this authoritative guide bridges the gap between theoretical foundations and practical applications, equipping readers with the knowledge and tools necessary to advance the capabilities of robotic control systems through deep reinforcement learning. This item is printed on demand. Shipping may be from multiple locations in the US or from the UK, depending on stock availability. Seller Inventory # 9798346620174
Seller: PBShop.store US, Wood Dale, IL, U.S.A.
PAP. Condition: New. New Book. Shipped from UK. THIS BOOK IS PRINTED ON DEMAND. Established seller since 2000. Seller Inventory # L0-9798346620174
Seller: PBShop.store UK, Fairford, GLOS, United Kingdom
PAP. Condition: New. New Book. Delivered from our UK warehouse in 4 to 14 business days. THIS BOOK IS PRINTED ON DEMAND. Established seller since 2000. Seller Inventory # L0-9798346620174
Quantity: Over 20 available
Seller: Ria Christie Collections, Uxbridge, United Kingdom
Condition: New. In. Seller Inventory # ria9798346620174_new
Quantity: Over 20 available
Seller: CitiRetail, Stevenage, United Kingdom
Paperback. Condition: new. Paperback. This comprehensive volume offers an in-depth exploration of end-to-end differentiable architectures in the context of deep reinforcement learning for robotics control. Serving as an essential resource for students, researchers, and practitioners in robotics and artificial intelligence, it systematically unpacks the complexities of designing and implementing sophisticated control policies for robotic systems.Structured across 33 detailed chapters, the book begins with foundational concepts of deep reinforcement learning and progresses to advanced topics that address current challenges in the field. It delves into various neural network architectures suitable for control tasks, elucidates gradient-based learning methods, and examines both model-based and model-free reinforcement learning approaches. Readers will gain a thorough understanding of policy gradient methods, value-based methods like Q-learning, and optimization algorithms crucial for training effective control policies.The text places significant emphasis on practical strategies for handling high-dimensional state and action spaces, managing the exploration-exploitation trade-offs, and designing robust reward functions. It also explores continuous action spaces, hierarchical reinforcement learning structures, and techniques for improving sample efficiency. Advanced chapters introduce cutting-edge topics such as incorporating attention mechanisms, memory-augmented neural networks, and uncertainty estimation into control architectures.Readers will benefit from discussions on transfer learning, sim-to-real transfer techniques, and the integration of physical dynamics into learning architectures. The book also addresses the importance of regularization, generalization, and scalability in deep reinforcement learning methods. By integrating perception and control within a unified end-to-end differentiable framework, the text provides valuable insights into the future direction of robotics control.Authored by experts in the field, this authoritative guide bridges the gap between theoretical foundations and practical applications, equipping readers with the knowledge and tools necessary to advance the capabilities of robotic control systems through deep reinforcement learning. This item is printed on demand. Shipping may be from our UK warehouse or from our Australian or US warehouses, depending on stock availability. Seller Inventory # 9798346620174
Quantity: 1 available
Seller: AHA-BUCH GmbH, Einbeck, Germany
Taschenbuch. Condition: Neu. Neuware - This comprehensive volume offers an in-depth exploration of end-to-end differentiable architectures in the context of deep reinforcement learning for robotics control. Serving as an essential resource for students, researchers, and practitioners in robotics and artificial intelligence, it systematically unpacks the complexities of designing and implementing sophisticated control policies for robotic systems. Seller Inventory # 9798346620174