分析CPU固定和部分CPU负载对性能和能效的影响

Andrej Podzimek, L. Bulej, L. Chen, Walter Binder, P. Tůma
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引用次数: 46

摘要

虽然工作负载搭配是提高当代多核硬件能源效率的必要条件,但它也增加了由于工作负载干扰而导致性能异常的风险。将某些工作负载固定到cpu子集是增加工作负载隔离的一种简单方法,但其效果取决于工作负载类型和系统架构。除了常识性的指导方针外,到目前为止,钉住的效果还没有得到广泛的研究。本文研究了CPU钉住对并行工作负载的性能干扰和能效的影响。除了工作负载、虚拟化和资源隔离的各种组合之外,我们还探讨了根据后台负载级别绑定的影响。所提出的结果是基于在基于英特尔的NUMA系统上进行的1000多个实验,所有电源管理功能都能反映现实世界的设置。我们发现,不太常见的CPU固定配置可以提高部分后台负载下的能源效率,这表明托管并发工作负载的系统可以从基于CPU负载和工作负载类型的动态CPU固定中受益。
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Analyzing the Impact of CPU Pinning and Partial CPU Loads on Performance and Energy Efficiency
While workload collocation is a necessity to increase energy efficiency of contemporary multi-core hardware, it also increases the risk of performance anomalies due to workload interference. Pinning certain workloads to a subset of CPUs is a simple approach to increasing workload isolation, but its effect depends on workload type and system architecture. Apart from common sense guidelines, the effect of pinning has not been extensively studied so far. In this paper we study the impact of CPU pinning on performance interference and energy efficiency for pairs of collocated workloads. Besides various combinations of workloads, virtualization and resource isolation, we explore the effects of pinning depending on the level of background load. The presented results are based on more than 1000 experiments carried out on an Intel-based NUMA system, with all power management features enabled to reflect real-world settings. We find that less common CPU pinning configurations improve energy efficiency at partial background loads, indicating that systems hosting collocated workloads could benefit from dynamic CPU pinning based on CPU load and workload type.
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