面向节能高性能计算的大内存节点

D. Zivanovic, M. Radulovic, Germán Llort, D. Zaragoza, J. Strassburg, P. Carpenter, Petar Radojkovic, E. Ayguadé
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引用次数: 7

摘要

到目前为止,能源消耗是HPC集群运营成本的最重要贡献者,它占总拥有成本的很大一部分。高性能计算组件的先进节能技术已经得到了大量的研究和开发工作,但是一个可以显著降低能耗的简单措施经常被忽视。我们表明,在容量计算中,许多中小型作业必须以最低的成本解决,一种实用的节能方法是在大内存节点上扩展应用程序。我们评估扩展;例如,减少应用程序进程和计算节点(服务器)的数量来解决固定大小的问题,使用一组运行在生产系统中的HPC应用程序。使用标准内存节点,我们平均节省了36%的能源,这已经是一个巨大的数字了。我们展示了这些节能的主要来源是节点小时的减少(node_hours = #nodes x exe_time),这是更有效地使用硬件资源的结果。扩展受到每个节点内存容量的限制。因此,我们考虑使用大内存节点来实现更大程度的扩展。我们表明,额外的能源节约高达52%,这意味着在许多情况下,升级硬件的投资将在典型的系统寿命不到五年的时间内收回。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Large-Memory Nodes for Energy Efficient High-Performance Computing
Energy consumption is by far the most important contributor to HPC cluster operational costs, and it accounts for a significant share of the total cost of ownership. Advanced energy-saving techniques in HPC components have received significant research and development effort, but a simple measure that can dramatically reduce energy consumption is often overlooked. We show that, in capacity computing, where many small to medium-sized jobs have to be solved at the lowest cost, a practical energy-saving approach is to scale-in the application on large-memory nodes. We evaluate scaling-in; i.e. decreasing the number of application processes and compute nodes (servers) to solve a fixed-sized problem, using a set of HPC applications running in a production system. Using standard-memory nodes, we obtain average energy savings of 36%, already a huge figure. We show that the main source of these energy savings is a decrease in the node-hours (node_hours = #nodes x exe_time), which is a consequence of the more efficient use of hardware resources. Scaling-in is limited by the per-node memory capacity. We therefore consider using large-memory nodes to enable a greater degree of scaling-in. We show that the additional energy savings, of up to 52%, mean that in many cases the investment in upgrading the hardware would be recovered in a typical system lifetime of less than five years.
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