同构聚类上并行任务图的进化调度

S. Hunold, Joachim Lepping
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引用次数: 8

摘要

并行任务图(PTGs)出现在并行程序被合并到更大的应用程序时,例如,科学工作流。将这些ptg调度到集群中是一个具有挑战性的问题,因为可建模任务产生了额外的并行度。大多数算法都基于这样的假设:并行任务的执行时间随着处理器数量的增加而单调减少。但这种假设在实践中并不成立,因为如果处理器的数量是内部使用的块大小的倍数,并行程序通常会执行得更好。在本文中,我们介绍了用于将静态ptg调度到同构集群上的进化可塑任务调度(EMTS)算法。我们采用进化的方法来确定每个任务的处理器分配。进化策略确保EMTS可以与任何底层模型一起使用,以预测可建模任务的执行时间。为了快速找到解决方案,EMTS会考虑其他启发式方法(如HCPA、MCPA)的结果作为起始解决方案。实验结果表明,与其他启发式算法相比,EMTS在非单调和单调递减模型上都显著减小了PTGs的生成跨度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evolutionary Scheduling of Parallel Tasks Graphs onto Homogeneous Clusters
Parallel task graphs (PTGs) arise when parallel programs are combined to larger applications, e.g., scientific workflows. Scheduling these PTGs onto clusters is a challenging problem due to the additional degree of parallelism stemming from moldable tasks. Most algorithms are based on the assumption that the execution time of a parallel task is monotonically decreasing as the number of processors increases. But this assumption does not hold in practice since parallel programs often perform better if the number of processors is a multiple of internally used block sizes. In this article, we introduce the Evolutionary Moldable Task Scheduling (EMTS) algorithm for scheduling static PTGs onto homogeneous clusters. We apply an evolutionary approach to determine the processor allocation of each task. The evolutionary strategy ensures that EMTS can be used with any underlying model for predicting the execution time of moldable tasks. With the purpose of finding solutions quickly, EMTS considers results of other heuristics (e.g., HCPA, MCPA) as starting solutions. The experimental results show that EMTS significantly reduces the make span of PTGs compared to other heuristics for both non-monotonically and monotonically decreasing models.
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