Holistic Slowdown Driven Scheduling and Resource Management for Malleable Jobs

Marco D'Amico, Ana Jokanovic, J. Corbalán
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引用次数: 9

Abstract

In job scheduling, the concept of malleability has been explored since many years ago. Research shows that malleability improves system performance, but its utilization in HPC never became widespread. The causes are the difficulty in developing malleable applications, and the lack of support and integration of the different layers of the HPC software stack. However, in the last years, malleability in job scheduling is becoming more critical because of the increasing complexity of hardware and workloads. In this context, using nodes in an exclusive mode is not always the most efficient solution as in traditional HPC jobs, where applications were highly tuned for static allocations, but offering zero flexibility to dynamic executions. This paper proposes a new holistic, dynamic job scheduling policy, Slowdown Driven (SD-Policy), which exploits the malleability of applications as the key technology to reduce the average slowdown and response time of jobs. SD-Policy is based on backfill and node sharing. It applies malleability to running jobs to make room for jobs that will run with a reduced set of resources, only when the estimated slowdown improves over the static approach. We implemented SD-Policy in SLURM and evaluated it in a real production environment, and with a simulator using workloads of up to 198K jobs. Results show better resource utilization with the reduction of makespan, response time, slowdown, and energy consumption, up to respectively 7%, 50%, 70%, and 6%, for the evaluated workloads.
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可延展作业的整体减速驱动调度和资源管理
在作业调度中,延展性的概念早在许多年前就被探索出来了。研究表明,延展性提高了系统性能,但它在高性能计算中的应用从未得到广泛应用。其原因是开发可伸缩性应用程序的困难,以及缺乏对HPC软件堆栈不同层的支持和集成。然而,在过去几年中,由于硬件和工作负载的复杂性日益增加,作业调度的可伸缩性变得越来越重要。在这种情况下,在排他模式下使用节点并不总是最有效的解决方案,因为在传统的HPC作业中,应用程序对静态分配进行了高度调整,但对动态执行没有提供任何灵活性。本文提出了一种新的整体动态作业调度策略SD-Policy,该策略利用应用程序的可延展性作为降低作业平均延迟和响应时间的关键技术。SD-Policy基于回填和节点共享。它对正在运行的作业应用延展性,以便为使用减少的资源集运行的作业腾出空间,只有当估计的减速比静态方法有所改善时才这样做。我们在SLURM中实现了SD-Policy,并在真实的生产环境中对其进行了评估,并使用了高达198K个作业的工作负载模拟器。结果显示,通过减少完工时间、响应时间、减速和能耗,对评估的工作负载分别减少了7%、50%、70%和6%,从而提高了资源利用率。
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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