PEMOGEN:在程序运行时自动自适应性能建模

Arnamoy Bhattacharyya, T. Hoefler
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引用次数: 46

摘要

收集性能数据的传统方法是跟踪和分析,前者受到可用存储的限制,后者的准确性有限。性能建模通常用于解释跟踪数据并生成性能预测。我们的目标是用在线性能建模来补充传统的数据收集机制,在线性能建模是一种在应用程序运行时生成性能模型的方法。这使我们能够大大减少存储开销,同时仍然产生准确的预测。我们介绍了PEMOGEN,我们的编译和建模框架,它可以在程序执行期间自动测量应用程序以生成性能模型。与传统技术(如最小二乘拟合)相比,我们证明了PEMOGEN在降低存储成本和提高预测精度方面的能力。使用我们的工具,我们自动检测了来自15个NAS和Mantevo应用程序的3370个内核,并对它们的执行时间建模,变异系数(R2)的中位数为0.81。这些自动生成的性能模型可用于快速评估与任何输入参数和并行应用程序的进程数量相关的可伸缩性和潜在瓶颈。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PEMOGEN: Automatic adaptive performance modeling during program runtime
Traditional means of gathering performance data are tracing, which is limited by the available storage, and profiling, which has limited accuracy. Performance modeling is often used to interpret the tracing data and generate performance predictions. We aim to complement the traditional data collection mechanisms with online performance modeling, a method that generates performance models while the application is running. This allows us to greatly reduce the storage overhead while still producing accurate predictions. We present PEMOGEN, our compilation and modeling framework that automatically instruments applications to generate performance models during program execution. We demonstrate the ability of PEMOGEN to both reduce storage cost and improve the prediction accuracy compared to traditional techniques such as least squares fitting. With our tool, we automatically detect 3,370 kernels from fifteen NAS and Mantevo applications and model their execution time with a median coefficient of variation (R2) of 0.81. These automatically generated performance models can be used to quickly assess the scaling and potential bottlenecks with regards to any input parameter and the number of processes of a parallel application.
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