电源感知异构节点组装

Bilge Acun, A. Buyuktosunoglu, Eun Kyung Lee, Yoonho Park
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引用次数: 3

摘要

为了满足不断增长的计算需求,超级计算机和数据中心开始利用具有多个硬件组件(如多核cpu和加速器)的大型计算节点。这些组件即使在同一制造商的同一型号组件之间也具有内在的功率差异。在本文中,我们认为考虑这些内在功率变化的节点组装技术可以在大型超级计算设施和数据中心上实现更好的功率效率,而无需任何性能折衷。我们提出了三种不同的节点组装技术:(1)排序组装,(2)均衡功率组装和(3)应用感知组装。排序装配是指将节点组件按照其能效进行分组,将同一组的组件组装到一个节点中。在均衡功率装配中,组件的装配是为了最小化节点间的功率变化。在应用感知组装中,应用最频繁使用的组件是基于最高的功率效率来选择的。在不同的节点数和可变性情况下,我们评估了这三种技术与标准随机装配相比的有效性和成本节约。
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Power Aware Heterogeneous Node Assembly
To meet ever increasing computational requirements, supercomputers and data centers are beginning to utilize fat compute nodes with multiple hardware components such as manycore CPUs and accelerators. These components have intrinsic power variations even among same model components from same manufacturer. In this paper, we argue that node assembly techniques that consider these intrinsic power variations can achieve better power efficiency without any performance trade off on large scale supercomputing facilities and data centers. We propose three different node assembly techniques: (1) Sorted Assembly, (2) Balanced Power Assembly, and (3) Application-Aware Assembly. In Sorted Assembly, node components are categorized (or sorted) into groups according to their power efficiency, and components from the same group are assembled into a node. In Balanced Power Assembly, components are assembled to minimize node-to-node power variations. In Application-Aware Assembly, the most heavily used components by the application are selected based on the highest power efficiency. We evaluate the effectiveness and cost savings of the three techniques compared to the standard random assembly under different node counts and variability scenarios.
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