论文标题

关于随机调度的抢占和学习

On Preemption and Learning in Stochastic Scheduling

论文作者

Merlis, Nadav, Richard, Hugo, Sentenac, Flore, Odic, Corentin, Molina, Mathieu, Perchet, Vianney

论文摘要

我们研究工作的单机计划,每个计划都属于决定其持续时间分布的工作类型。我们首先分析已知类型特征的场景,然后转到两个类型未知的学习方案:非抢先的问题,每个启动工作必须完成,然后才能完成另一个工作;和先发制人的问题,可以暂停执行工作以转向其他工作。在这两种情况下,我们设计的算法与已知类型的性能相比,可以实现均方根超额成本,并证明了非抢先案例的下限。值得注意的是,我们在理论上还是通过模拟证明,当不同的工作类型的持续时间远非彼此之间,这种算法的表现如何极大地超过非优先级的算法,而当已知类型持续时间时,这种现象不会发生。

We study single-machine scheduling of jobs, each belonging to a job type that determines its duration distribution. We start by analyzing the scenario where the type characteristics are known and then move to two learning scenarios where the types are unknown: non-preemptive problems, where each started job must be completed before moving to another job; and preemptive problems, where job execution can be paused in the favor of moving to a different job. In both cases, we design algorithms that achieve sublinear excess cost, compared to the performance with known types, and prove lower bounds for the non-preemptive case. Notably, we demonstrate, both theoretically and through simulations, how preemptive algorithms can greatly outperform non-preemptive ones when the durations of different job types are far from one another, a phenomenon that does not occur when the type durations are known.

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