Szczegóły książki
Format
Twarda okładka
Strony
376
Język
Angielski
Opublikowany
Aug 1, 2020
Wydawca
Athena Scientific
ISBN-10
1886529078
ISBN-13
9781886529076
Opis
Dimitri P. Bertsekas explores the intricate world of reinforcement learning, revealing the complexities and nuances that underpin distributed systems and policy iteration methods. With a focus on the rollout technique, readers are guided through the development of frameworks that enhance decision-making processes in dynamic environments. The author meticulously dissects these methodologies, shedding light on their theoretical foundations while also delving into practical implications.
Throughout the narrative, Bertsekas presents various algorithms and their applications, showcasing how they can solve real-world problems through interactive learning and adaptation. The discussion extends to the challenges faced in distributed reinforcement learning, offering insights into how these systems can be tailored for efficiency and effectiveness in diverse contexts.
The book serves as a comprehensive resource for researchers and practitioners alike, fostering a deeper understanding of policy iteration within the realm of distributed systems. With its blend of theory and application, it stands as a valuable reference for those looking to expand their knowledge in the field of reinforcement learning.
Throughout the narrative, Bertsekas presents various algorithms and their applications, showcasing how they can solve real-world problems through interactive learning and adaptation. The discussion extends to the challenges faced in distributed reinforcement learning, offering insights into how these systems can be tailored for efficiency and effectiveness in diverse contexts.
The book serves as a comprehensive resource for researchers and practitioners alike, fostering a deeper understanding of policy iteration within the realm of distributed systems. With its blend of theory and application, it stands as a valuable reference for those looking to expand their knowledge in the field of reinforcement learning.
Gatunki
Nauka i Technologia