Détails du livre
Format
livre numérique
Pages
276
Langue
Anglais
Publié
Jan 1, 2019
Éditeur
Athena Scientific
Description
Dimitri P. Bertsekas delves into the complexities of large multistage decision problems, guiding readers through the intricate landscape of reinforcement learning and optimal control systems. By emphasizing a systematic approach, the author fosters a deep understanding of how these two domains intersect and how they can be applied to tackle real-world challenges.
Through a blend of theoretical foundations and practical applications, the text not only lays out the principles of reinforcement learning but also explores the optimization techniques that drive effective decision-making. Bertsekas illustrates how these tools can be utilized to analyze and resolve problems that require sequential decision strategies, thus equipping readers with a comprehensive toolkit for approaching dynamic environments.
As readers navigate through the concepts presented, they are invited to engage with complex scenarios that enhance their problem-solving abilities. Ultimately, Bertsekas aims to enrich the reader's insight into the possibilities that emerge from combining reinforcement learning with optimal control.
Through a blend of theoretical foundations and practical applications, the text not only lays out the principles of reinforcement learning but also explores the optimization techniques that drive effective decision-making. Bertsekas illustrates how these tools can be utilized to analyze and resolve problems that require sequential decision strategies, thus equipping readers with a comprehensive toolkit for approaching dynamic environments.
As readers navigate through the concepts presented, they are invited to engage with complex scenarios that enhance their problem-solving abilities. Ultimately, Bertsekas aims to enrich the reader's insight into the possibilities that emerge from combining reinforcement learning with optimal control.