迈向高性能集群的新能效极限

D. Tomić, E. Imamagic, L. Gjenero
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引用次数: 0

摘要

近年来,高性能计算集群的性能优先于其功耗。然而,能源成本和对生态可接受的IT解决方案的需求比以往任何时候都要高,因此对具有可接受功耗的高性能计算集群的需求变得越来越重要。因此,同时考虑高性能计算集群性能和功耗的Green500榜单几乎达到了Top500榜单的普及程度。有趣的是,Green500榜单并不是Top500榜单的对手;其核心理念是与世界500强形成互补。因此,Top500榜单仍然是Green500榜单的基础,而Top500榜单中与HPL性能相关的数据则是计算Green500榜单的基础。事实上,Green500是根据HPL测量的每瓦特性能排序的Top500榜单。从高性能Linpack基准测试中获得的Rmax数字作为性能输入参数,在特定HPC集群上执行HPL期间消耗的总功耗是功耗参数。关键的问题仍然是:如何正确地测量消耗的功率?本文提出,如果无法测量所消耗的功率,仍然可以使用硬件供应商提供的最大功耗数字来确定HPC集群的绿色效率的下限。这种方法背后的主要思想是,在Top500列表中发现的Rmax值永远不会达到Rpeak理论值,并且即使是最高效的HPL基准也永远无法最大限度地利用计算节点。此外,通过比较我们获得的MFLOPS/W结果与Green500列表中发现的结果,我们注意到萨格勒布大学计算中心最近启用的新高性能计算伊莎贝拉集群的出色效率,仅次于北卡罗来纳大学的KillDevil超级集群Top500。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards new energy efficiency limits of High Performance Clusters
In recent years performance of High Performance Computing Clusters took precedence over their power consumption. However, costs of energy and demand for ecologically acceptable IT solutions are higher than ever before, therefore a need for HPC clusters with acceptable power consumption becomes increasingly important. Consequently, the Green500 list, which takes into account both performance and power consumption of HPC clusters, almost reached the popularity of the Top500 list. Interestingly, the Green500 list is not an opponent to Top500 list; its core idea is to complement the Top500. Therefore, the Top500 list still serves as the basis for the Green500 list, and its numbers regarding measured HPL performance, are a basis for calculating the Green500 list. Indeed, the Green500 is the Top500 list ordered by HPL measured performance per Watt. Rmax numbers gained from High Performance Linpack benchmarks serve as performance input parameters, and total power consumed during execution of HPL on a certain HPC clusters is a power consumption parameter. The critical question remains: how to measure the consumed power correctly? This paper proposes that if it is not possible to measure the consumed power, one can still use maximum power consumption numbers rated from hardware vendors to find at least the lower bound green efficiency of HPC clusters. The main idea behind this approach is that Rmax values found on Top500 list never achieve Rpeak theoretical values, and that even most efficient HPL benchmark can never utilize computing nodes at their maximum. Furthermore by comparing MFLOPS/W results we gained with those found on Green500 list, we noted the excellent efficiency of the new HPC Isabella cluster recently powered on at University Computing Centre in Zagreb, ranking in just behind University of North Carolina KillDevil Top500 super cluster.
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