使批调度适应工作负载特征:我们能从在线学习中得到什么?

Arnaud Legrand, D. Trystram, Salah Zrigui
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引用次数: 14

摘要

尽管超级计算机的增长和规模令人印象深刻,但它们提供的计算能力仍然无法满足需求。有效和公平的资源配置是一项关键任务。超级计算机使用资源和作业管理系统来调度应用程序,这通常是通过依赖一般索引策略来完成的,例如先到先得和最短处理时间优先与回填策略相结合。不幸的是,这种通用策略通常无法利用实际工作负载的特定特征。在这项工作中,我们的重点是提高在线调度程序的性能。我们研究混合策略,它是通过在加权线性表达式中组合多个工作特征而创建的,而不是仅使用单个特征的经典纯策略。这类更大的调度策略旨在提供更大的灵活性和适应性。我们使用空间覆盖和黑盒优化技术来探索混合策略的新空间,并研究它们如何适应工作负载的变化。我们进行了广泛的实验活动,通过这些活动我们表明:(1)即使是最好的纯策略也远非最优,(2)使用精心调整的混合策略将允许显着提高系统的性能。(3)我们还提供了经验证据,表明没有一个放之四海而皆准的策略,通过显示快速的工作量演变似乎阻止了经典的在线学习算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adapting Batch Scheduling to Workload Characteristics: What Can We Expect From Online Learning?
Despite the impressive growth and size of super-computers, the computational power they provide still cannot match the demand. Efficient and fair resource allocation is a critical task. Super-computers use Resource and Job Management Systems to schedule applications, which is generally done by relying on generic index policies such as First Come First Served and Shortest Processing time First in combination with Backfilling strategies. Unfortunately, such generic policies often fail to exploit specific characteristics of real workloads. In this work, we focus on improving the performance of online schedulers. We study mixed policies, which are created by combining multiple job characteristics in a weighted linear expression, as opposed to classical pure policies which use only a single characteristic. This larger class of scheduling policies aims at providing more flexibility and adaptability. We use space coverage and black-box optimization techniques to explore this new space of mixed policies and we study how can they adapt to the changes in the workload. We perform an extensive experimental campaign through which we show that (1) even the best pure policy is far from optimal and that (2) using a carefully tuned mixed policy would allow to significantly improve the performance of the system. (3) We also provide empirical evidence that there is no one size fits all policy, by showing that the rapid workload evolution seems to prevent classical online learning algorithms from being effective.
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