Enabling fair pricing on HPC systems with node sharing

Alex D. Breslow, Ananta Tiwari, M. Schulz, L. Carrington, Lingjia Tang, Jason Mars
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引用次数: 26

Abstract

Co-location, where multiple jobs share compute nodes in large-scale HPC systems, has been shown to increase aggregate throughput and energy efficiency by 10 to 20%. However, system operators disallow co-location due to fair-pricing concerns, i.e., a pricing mechanism that considers performance interference from co-running jobs. In the current pricing model, application execution time determines the price, which results in unfair prices paid by the minority of users whose jobs suffer from co-location. This paper presents POPPA, a runtime system that enables fair pricing by delivering precise online interference detection and facilitates the adoption of supercomputers with co-locations. POPPA leverages a novel shutter mechanism - a cyclic, fine-grained interference sampling mechanism to accurately deduce the interference between co-runners - to provide unbiased pricing of jobs that share nodes. POPPA is able to quantify inter-application interference within 4% mean absolute error on a variety of co-located benchmark and real scientific workloads.
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在具有节点共享的HPC系统上实现公平定价
在大型HPC系统中,多个作业共享计算节点的协同位置(Co-location)已被证明可以将总吞吐量和能源效率提高10%至20%。然而,由于公平定价的考虑,系统运营商不允许共址,也就是说,定价机制考虑了共同运行作业的性能干扰。在当前的定价模型中,应用程序的执行时间决定了价格,这导致少数用户支付了不公平的价格,他们的工作受到了托管的影响。本文介绍了POPPA,这是一个运行时系统,通过提供精确的在线干扰检测来实现公平定价,并促进采用具有共同位置的超级计算机。POPPA利用一种新颖的快门机制——一种循环的、细粒度的干扰采样机制,以准确地推断共同运行者之间的干扰——为共享节点的作业提供无偏定价。POPPA能够在各种共置基准测试和实际科学工作负载上量化应用程序间干扰,平均绝对误差在4%以内。
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