多处理器虚拟集群的分层调度框架

I. Shin, A. Easwaran, Insup Lee
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引用次数: 186

摘要

多处理器平台上零星任务系统的调度是近年来备受关注的一个领域。人们普遍认为找到最优调度程序是困难的,因此大多数研究都集中在开发具有良好利用率界限的算法上。这些算法大致可以分为两类:分区调度(其中任务静态分配给单个处理器)和全局调度(其中每个任务允许在平台中的任何处理器上执行)。在本文中,我们考虑了第三种更通用的方法,称为基于集群的调度。在这种方法中,每个任务被静态地分配给一个处理器集群,每个集群中的任务在它们之间进行全局调度,而集群又在多处理器平台上进行调度。我们开发了支持这种基于集群的调度算法的技术,并且还考虑了最小化单个集群的处理器利用率的属性。由于分区策略和全局策略都不占优势,因此基于集群的调度是研究提高利用率界限的自然方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hierarchical Scheduling Framework for Virtual Clustering of Multiprocessors
Scheduling of sporadic task systems on multiprocessor platforms is an area which has received much attention in the recent past. It is widely believed that finding an optimal scheduler is hard, and therefore most studies have focused on developing algorithms with good utilization bounds. These algorithms can be broadly classified into two categories: partitioned scheduling in which tasks are statically assigned to individual processors, and globalscheduling in which each task is allowed to execute on any processor in the platform. In this paper we consider a third, more general, approach called cluster-based scheduling. In this approach each task is statically assigned to a processor cluster, tasks in each cluster areglobally scheduled among themselves, and clusters in turn are scheduled on the multiprocessor platform. We develop techniques to support such cluster-based scheduling algorithms, and also consider properties that minimize processor utilization of individual clusters. Since neither partitioned nor global strategies dominate over the other, cluster-based scheduling is a natural direction for research towards achieving improved utilization bounds.
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