AI4IO:一套用于IO感知调度的基于AI的工具

IF 3.5 3区 计算机科学 Q2 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE International Journal of High Performance Computing Applications Pub Date : 2022-04-03 DOI:10.1177/10943420221079765
Michael R. Wyatt, Stephen Herbein, T. Gamblin, M. Taufer
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引用次数: 2

摘要

传统的工作负载管理器没有能力考虑IO争用如何增加作业运行时,甚至导致浪费整个资源分配。无论是IO需求爆发还是并行文件系统(PFS)性能下降,都必须识别和解决IO争用,以确保最大性能。在本文中,我们提出了AI4IO (AI for IO),这是一套使用AI方法来防止和减轻由于IO争用而导致的性能损失的工具。AI4IO使现有的工作负载管理器能够感知io。目前,AI4IO包括两个工具:PRIONN和CanarIO。PRIONN预测IO争用,并授权调度器防止它。CanarIO在IO争用发生时减轻了它的影响。我们测量了AI4IO集成到Flux(下一代调度器)中时的有效性,用于小型和大型io密集型工作负载。我们的结果表明,将AI4IO集成到Flux中可以将工作负载的makespan提高6.4%,在我们的大规模工作负载中,这可以在生产集群上每周节省超过18,000 node-h的资源。
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AI4IO: A suite of AI-based tools for IO-aware scheduling
Traditional workload managers do not have the capacity to consider how IO contention can increase job runtime and even cause entire resource allocations to be wasted. Whether from bursts of IO demand or parallel file systems (PFS) performance degradation, IO contention must be identified and addressed to ensure maximum performance. In this paper, we present AI4IO (AI for IO), a suite of tools using AI methods to prevent and mitigate performance losses due to IO contention. AI4IO enables existing workload managers to become IO-aware. Currently, AI4IO consists of two tools: PRIONN and CanarIO. PRIONN predicts IO contention and empowers schedulers to prevent it. CanarIO mitigates the impact of IO contention when it does occur. We measure the effectiveness of AI4IO when integrated into Flux, a next-generation scheduler, for both small- and large-scale IO-intensive job workloads. Our results show that integrating AI4IO into Flux improves the workload makespan up to 6.4%, which can account for more than 18,000 node-h of saved resources per week on a production cluster in our large-scale workload.
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来源期刊
International Journal of High Performance Computing Applications
International Journal of High Performance Computing Applications 工程技术-计算机:跨学科应用
CiteScore
6.10
自引率
6.50%
发文量
32
审稿时长
>12 weeks
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