基于深度神经网络的抗噪声经验性能建模

M. Ritter, A. Geiss, Johannes Wehrstein, A. Calotoiu, Thorsten Reimann, T. Hoefler, F. Wolf
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引用次数: 3

摘要

经验性能建模是一种经过验证的分析高性能计算应用扩展行为的工具。通过一组小规模的实验,它可以为更大规模的应用程序行为提供重要的见解。Extra-P是一个经验建模工具,它应用线性回归来自动生成人类可读的性能模型。与其他基于回归的建模技术类似,Extra-P创建的模型的准确性随着底层数据中的噪声量的增加而降低。这就是为什么在许多现代系统中观察到的性能变化可能成为一个严重挑战的原因。在本文中,我们引入了一种新的自适应建模方法,使Extra-P更具噪声弹性,利用深度神经网络的能力来发现数值参数(如过程数量或问题大小)在处理噪声测量时对性能的影响。通过综合分析和来自三个不同案例研究的数据,我们证明了我们的解决方案在高噪声水平下将模型精度提高了25%,同时将其预测能力提高了约15%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Noise-Resilient Empirical Performance Modeling with Deep Neural Networks
Empirical performance modeling is a proven instrument to analyze the scaling behavior of HPC applications. Using a set of smaller-scale experiments, it can provide important insights into application behavior at larger scales. Extra-P is an empirical modeling tool that applies linear regression to automatically generate human-readable performance models. Similar to other regression-based modeling techniques, the accuracy of the models created by Extra-P decreases as the amount of noise in the underlying data increases. This is why the performance variability observed in many contemporary systems can become a serious challenge. In this paper, we introduce a novel adaptive modeling approach that makes Extra-P more noise resilient, exploiting the ability of deep neural networks to discover the effects of numerical parameters, such as the number of processes or the problem size, on performance when dealing with noisy measurements. Using synthetic analysis and data from three different case studies, we demonstrate that our solution improves the model accuracy at high noise levels by up to 25% while increasing their predictive power by about 15%.
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