Extending SLURM for Dynamic Resource-Aware Adaptive Batch Scheduling

Mohak Chadha, Jophin John, M. Gerndt
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引用次数: 12

Abstract

With the growing constraints on power budget and increasing hardware failure rates, the operation of future exascale systems faces several challenges. Towards this, resource awareness and adaptivity by enabling malleable jobs has been actively researched in the HPC community. Malleable jobs can change their computing resources at runtime and can significantly improve HPC system performance. However, due to the rigid nature of popular parallel programming paradigms such as MPI and lack of support for dynamic resource management in batch systems, malleable jobs have been largely unrealized. In this paper, we extend the SLURM batch system to support the execution and batch scheduling of malleable jobs. The malleable applications are written using a new adaptive parallel paradigm called Invasive MPI which extends the MPI standard to support resource-adaptivity at runtime. We propose two malleable job scheduling strategies to support performance-aware and power-aware dynamic reconfiguration decisions at runtime. We implement the strategies in SLURM and evaluate them on a production HPC system. Results for our performance-aware scheduling strategy show improvements in makespan, average system utilization, average response, and waiting times as compared to other scheduling strategies. Moreover, we demonstrate dynamic power corridor management using our power-aware strategy.
扩展SLURM用于动态资源感知自适应批调度
随着功率预算的限制和硬件故障率的增加,未来的百亿亿级系统的运行面临着一些挑战。为此,高性能计算社区一直在积极研究通过可塑作业实现的资源意识和适应性。延展性作业可以在运行时改变它们的计算资源,并且可以显著提高HPC系统的性能。然而,由于流行的并行编程范例(如MPI)的刚性以及缺乏对批处理系统中动态资源管理的支持,可塑性作业在很大程度上没有实现。在本文中,我们扩展了SLURM批处理系统,以支持可伸缩作业的执行和批调度。可扩展的应用程序是使用一种新的自适应并行范式编写的,称为入侵式MPI,它扩展了MPI标准,以支持运行时的资源自适应。我们提出了两种可伸缩的作业调度策略来支持性能感知和功耗感知的运行时动态重配置决策。我们在SLURM中实现了这些策略,并在生产HPC系统上进行了评估。我们的性能感知调度策略的结果显示,与其他调度策略相比,在完工时间、平均系统利用率、平均响应和等待时间方面有所改进。此外,我们还演示了使用我们的功率感知策略的动态功率走廊管理。
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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