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Contention Aware Workload and Resource Co-Scheduling on Power-Bounded Systems

机译:竞争意识工作负载和资源共同调度在电源限制系统上

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As power becomes a top challenge in HPC systems and data centers, how to sustain the system performance growth under limited available or permissible power becomes an important research topic. Traditionally, researchers have explored collocating non-interfering jobs on the same nodes to improve system performance. Nevertheless, power limits reduce the capacity of components, nodes, and systems, and induce or aggravate contention between jobs. Using prior power-oblivious job collocation strategies on power limited systems can adversely degrade system throughput. In this paper, we quantitatively estimate contention induced by power limits, and propose a Contention-Aware Power-bounded Scheduling (CAPS) for systems with finite power budgets. CAPS chooses to collocate jobs that are complementary when power is limited, and distributes the available power to nodes and components to minimize their interference. Experimental results show that CAPS improves system throughput and power efficiency by 10% or greater than power-oblivious job collocation strategies, depending on the available power, for hybrid MPI/OpenMP benchmarks on a 192-core 8-node cluster.
机译:由于功率变得HPC系统和数据中心中最大的挑战,如何保持在有限的可用或者允许电力系统的业绩增长成为一个重要的研究课题。传统上,研究人员已经探索并置在同一节点上的无干扰的工作,以提高系统性能。然而,功率限制减少部件,节点和系统的能力,并且诱导或作业之间加剧争用。电源使用前电力无视作业配置策略限制的系统可以产生不利降低系统的吞吐量。在本文中,我们定量估计由功率限制引起争用,并提出了有限的功率预算系统一个争感知电源有界调度(CAPS)。 CAPS选择,当功率被限制,并分配可用功率节点和组件以减少它们的干扰是互补搭配的工作。实验结果表明,通过CAPS 10%或更大改善的系统吞吐量和功率效率比电不经意作业配置策略,依赖于可用功率,对于192-8核心节点集群混合MPI / OpenMP的基准。

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