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Utility-based resource management in an oversubscribed energy-constrained heterogeneous environment executing parallel applications

机译:基于实用的资源管理在超额认购的能量受限异构环境中执行并行应用

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The worth of completing parallel tasks is modeled using utility functions, which monotonically-decrease with time and represent the importance and urgency of a task. These functions define the utility earned by a task at the time of its completion. The performance of a computing system is measured as the total utility earned by all completed tasks over some interval of time (e.g., 24 h). We have designed, analyzed, and compared the performance of a set of heuristic techniques to maximize system performance when scheduling dynamically arriving parallel tasks onto a high performance computing (HPC) system that is oversubscribed and energy constrained. We consider six utility-aware heuristics and four existing heuristics for comparison. A new concept of temporary place holders is compared with scheduling using permanent reservations. We also present a novel energy filtering technique that constrains the maximum energy-per-resource used by each task. We conducted a simulation study to evaluate the performance of these heuristics and techniques in multiple energy-constrained oversubscribed HPC environments. We conduct an experiment with a subset of the heuristics on a physical testbed system for one scheduling scenario. We demonstrate that our proposed utility-aware resource management heuristics are able to significantly outperform existing techniques. (C) 2017 Elsevier B.V. All rights reserved.
机译:完成并行任务的价值是使用实用程序函数建模的,这些功能随时间单调减少,代表任务的重要性和紧迫性。这些函数定义完成时任务所获得的实用程序。计算系统的性能被测量为所有已完成任务所获得的总实用程序,在某些时间间隔(例如,24小时)中。我们已经设计了一组启发式技术的性能,以使系统性能最大化在调度到超额认购和能量受限的高性能计算(HPC)系统上时最大限度地提高系统性能。我们考虑了六种效用感知的启发式和四个现有的启发式学进行比较。将临时占位板的新概念与使用永久预订的调度进行比较。我们还提出了一种新颖的能量滤波技术,可以限制每个任务使用的最大能量资源。我们进行了模拟研究,以评估多个能量受限超额预定HPC环境中这些启发式和技术的性能。我们对一个调度方案进行物理测试系统的启发式系统进行实验。我们证明,我们所提出的效用感知资源管理启发式能够显着优于现有技术。 (c)2017年Elsevier B.V.保留所有权利。

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