Distributed Work Stealing in a Task-Based Dataflow Runtime

Joseph John, Joshua Milthorpe, P. Strazdins
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Abstract

The task-based dataflow programming model has emerged as an alternative to the process-centric programming model for extreme-scale applications. However, load balancing is still a challenge in task-based dataflow runtimes. In this paper, we present extensions to the PaR-SEC runtime to demonstrate that distributed work stealing is an effective load-balancing method for task-based dataflow runtimes. In contrast to shared-memory work stealing, we find that each process should consider future tasks and the expected waiting time for execution when determining whether to steal. We demonstrate the effectiveness of the proposed work-stealing policies for a sparse Cholesky factorization, which shows a speedup of up to 35% compared to a static division of work.
基于任务的数据流运行时中的分布式工作窃取
基于任务的数据流编程模型已经出现,它可以替代以流程为中心的编程模型,用于极端规模的应用程序。然而,在基于任务的数据流运行时中,负载平衡仍然是一个挑战。在本文中,我们提出了PaR-SEC运行时的扩展,以证明分布式工作窃取是基于任务的数据流运行时的有效负载平衡方法。与共享内存工作窃取相比,我们发现在决定是否窃取时,每个进程都应该考虑未来的任务和预期的执行等待时间。我们证明了所提出的工作窃取策略对于稀疏Cholesky分解的有效性,与静态工作分工相比,它的加速高达35%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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