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Optimal Stochastic Scheduling [electronic resource] / by Xiaoqiang Cai, Xianyi Wu, Xian Zhou.

By: Cai, Xiaoqiang [author.].
Contributor(s): Wu, Xianyi [author.] | Zhou, Xian [author.] | SpringerLink (Online service).
Material type: materialTypeLabelBookSeries: International Series in Operations Research & Management Science: 207Publisher: Boston, MA : Springer US : Imprint: Springer, 2014Description: X, 416 p. 3 illus. online resource.Content type: text Media type: computer Carrier type: online resourceISBN: 9781489974051.Subject(s): Business | Production management | Operations research | Decision making | Business and Management | Operation Research/Decision Theory | Operations ManagementAdditional physical formats: Printed edition:: No titleDDC classification: 658.40301 Online resources: Click here to access online
Contents:
Basic Concepts -- Regular Performance Measures -- Irregular Performance Measures -- Stochastic Machine Breakdowns -- Optimal Stopping Problems -- Multi-armed Bandit Processes -- Dynamic Policies -- Stochastic Scheduling with Incomplete Information -- Optimal Policies in Time-varying Scheduling -- More Stochastic Scheduling Models.                                                                                             .
In: Springer eBooksSummary: Many interesting and important results on stochastic scheduling problems have been developed in recent years, with the aid of probability theory. This book provides a comprehensive and unified coverage of studies in stochastic scheduling. The objective is two-fold: (i) to summarize the elementary models and results in stochastic scheduling, so as to offer an entry-level reading material for students to learn and understand the fundamentals of this area; and (ii) to include in details the latest developments and research topics on stochastic scheduling, so as to provide a useful reference for researchers and practitioners in this area. Optimal Stochastic Scheduling is organized into two parts: Chapters 1-4 cover fundamental models and results, whereas Chapters 5-10 elaborate on more advanced topics. More specifically, Chapter 1 provides the relevant basic theory of probability, and then introduces the basic concepts and notation of stochastic scheduling. In Chapters 2 and 3, the authors review well-established models and scheduling policies, under regular and irregular performance measures, respectively. Chapter 4 describes models with stochastic machine breakdowns. Chapters 5 and 6 introduce, respectively, the optimal stopping problems and the multi-armed bandit processes, which are necessary for studies of more advanced subjects in subsequent chapters. Chapter 7 is focused on optimal dynamic policies, which allow adjustments of policies based on up-to-date information. Chapter 8 describes stochastic scheduling with incomplete information in the sense that the probability distributions of random variables contain unknown parameters, which can however be estimated progressively according to updated information. Chapter 9 is devoted to the situation where the processing time of a job depends on the time when it is started. Lastly, in Chapter 10 the authors look at several recent models beyond those surveyed in the previous chapters.
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Basic Concepts -- Regular Performance Measures -- Irregular Performance Measures -- Stochastic Machine Breakdowns -- Optimal Stopping Problems -- Multi-armed Bandit Processes -- Dynamic Policies -- Stochastic Scheduling with Incomplete Information -- Optimal Policies in Time-varying Scheduling -- More Stochastic Scheduling Models.                                                                                             .

Many interesting and important results on stochastic scheduling problems have been developed in recent years, with the aid of probability theory. This book provides a comprehensive and unified coverage of studies in stochastic scheduling. The objective is two-fold: (i) to summarize the elementary models and results in stochastic scheduling, so as to offer an entry-level reading material for students to learn and understand the fundamentals of this area; and (ii) to include in details the latest developments and research topics on stochastic scheduling, so as to provide a useful reference for researchers and practitioners in this area. Optimal Stochastic Scheduling is organized into two parts: Chapters 1-4 cover fundamental models and results, whereas Chapters 5-10 elaborate on more advanced topics. More specifically, Chapter 1 provides the relevant basic theory of probability, and then introduces the basic concepts and notation of stochastic scheduling. In Chapters 2 and 3, the authors review well-established models and scheduling policies, under regular and irregular performance measures, respectively. Chapter 4 describes models with stochastic machine breakdowns. Chapters 5 and 6 introduce, respectively, the optimal stopping problems and the multi-armed bandit processes, which are necessary for studies of more advanced subjects in subsequent chapters. Chapter 7 is focused on optimal dynamic policies, which allow adjustments of policies based on up-to-date information. Chapter 8 describes stochastic scheduling with incomplete information in the sense that the probability distributions of random variables contain unknown parameters, which can however be estimated progressively according to updated information. Chapter 9 is devoted to the situation where the processing time of a job depends on the time when it is started. Lastly, in Chapter 10 the authors look at several recent models beyond those surveyed in the previous chapters.

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