Performance modeling for runtime kernel adaptation: A case study on infectious disease simulation

Jiangming Jin, S. Turner, Bu-Sung Lee, S. Kuo, R. Goh, T. Hung
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引用次数: 3

Abstract

In many large-scale scientific applications, there may be a compute intensive kernel that largely determines the overall performance of the application. Sometimes algorithmic variations of the kernel may be available and a performance benefit can then be gained by choosing the optimal kernel at runtime. However, it is sometimes difficult to choose the most efficient kernel as the kernel algorithms have varying performance under different execution conditions. This paper shows how to construct a set of performance models to explore and analyze the bottleneck of an application. Furthermore, based on the performance models, a theoretical method is proposed to guide the kernel adaptation at runtime. A component-based large-scale infectious disease simulation is used to illustrate the method. The performance models of the different kernels are validated by a range of experiments. The use of runtime kernel adaptation shows a significant performance gain.
运行时内核适应的性能建模:传染病模拟的案例研究
在许多大型科学应用程序中,可能存在计算密集型内核,它在很大程度上决定了应用程序的整体性能。有时内核的算法变化可能是可用的,然后可以通过在运行时选择最佳内核来获得性能优势。然而,由于内核算法在不同的执行条件下具有不同的性能,因此有时很难选择最有效的内核。本文展示了如何构建一套性能模型来探索和分析应用程序的瓶颈。在此基础上,提出了一种指导内核运行时自适应的理论方法。以基于构件的大规模传染病仿真为例,说明了该方法的可行性。通过一系列实验验证了不同核函数的性能模型。使用运行时内核适配可以显著提高性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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