循环变换如何影响多线程龙格-库塔方法的能耗?

T. Rauber, G. Rünger
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引用次数: 3

摘要

龙格-库塔法是基于微分方程的科学模拟中应用最广泛、最流行的求解方法,其有效执行对许多应用至关重要。如今,对于高性能计算来说,能耗也变得越来越重要。在本文中,我们研究了龙格-库塔方法在最新的英特尔处理器上求解常微分方程组的性能和能耗。我们的具体兴趣是研究多线程龙格-库塔方法的不同程序版本,这些方法是由嵌套循环内的循环转换在阶段向量和系统大小上产生的。选择龙格-库塔方法DOPRI5的四个程序版本,并将其应用于不同工作量的常微分方程系统。在不同线程数的情况下进行了实验,并对其性能、功耗和能耗进行了报告和分析。
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How do Loop Transformations Affect the Energy Consumption of Multi-Threaded Runge-Kutta Methods?
Runge-Kutta methods are widely used and popular solutions method for scientific simulations based on differential equations and, thus, their efficient execution is crucial for many applications. Today, also the energy consumption is getting more and more important for high performance computing. In this article, we investigate the performance and the energy consumption of Runge-Kutta methods solving systems of ordinary differential equations on recent Intel processors. Our specific interest is the study of different program versions of multithreaded Runge-Kutta methods which result from loop transformations within the nested loops over stage vectors and systems sizes. Four program versions of the Runge-Kutta method DOPRI5 are chosen and are applied to systems of ordinary differential equations with different workload. Experiments have been performed for different numbers of threads and the performance, power and energy consumption is reported and analyzed.
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