一种新的高性能计算负载性能估计方法

J. Issa
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引用次数: 1

摘要

鉴于过去几年处理器架构的快速变化,有必要评估高性能计算工作负载的处理器性能。评估给定工作负载的性能对于了解工作负载性能对哪些体系结构参数敏感非常重要。给定的工作负载可以分为内存受限、计算受限或两者之间。本文采用LS-DYNA/car2car对高性能计算负载进行了性能敏感性分析。我们根据不同的处理器架构参数(如线程数和内存)对该工作负载进行敏感性分析。我们还提出了一个性能估计分析模型,在该模型中,我们可以通过改变特定的处理器架构参数来估计LS-DYNA工作负载的性能。经过验证,该模型可以在误差小于5%的情况下估计不同处理器架构的性能。
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A novel method to estimate performance for a high performance computation workload
Given the rapid change in processor architecture in the past years, there is a driving necessity to assess processor performance for a high performance computation workload. Assessing performance for a given workload is important to understand which architecture parameters the workload performance is sensitive to. A given workload can be categorized as memory bounded, compute bounded, or in between. In this paper we present performance sensitivity analysis for a high performance computation workload using LS-DYNA/car2car. We derive a sensitivity analysis for this workload with respect to different processor architecture parameters such as number for threads and memory. We also propose a performance estimation analytical model in which we can estimate performance for LS-DYNA workload by changing specific processor architecture parameters. The models is verified to estimate performance for different processor architectures with error margin <;5%.
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