Thread Count Prediction Model: Dynamically Adjusting Threads for Heterogeneous Many-Core Systems

Tao Ju, Weiguo Wu, Heng Chen, Zhengdong Zhu, Xiaoshe Dong
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引用次数: 9

Abstract

Determining an appropriate thread count for a multithread application running on a heterogeneous many-core system is crucial for improving computing performance and reducing energy consumption. This paper investigates the interrelation between thread count and computing performance of applications, and designs a prediction model of the optimum thread count on the basis of Amdahl's law combined with regression analysis theory to improve computing performance and reduce energy consumption. The prediction model can estimate the optimum tread count relying on the program running behaviors and the architecture characteristics of heterogeneous many-core system. Using the estimated optimum thread count, the number of the active hardware threads and processing cores on the many-core processor is dynamically adjusted in the process of thread mapping to improve the energy efficiency of entire heterogeneous many-core system. The experimental results show that, using this paper proposed thread count prediction model, on an average, the computing performance is improved by 48.6%, energy consumption is reduced by 59%, and additional overhead introduced is 2.03% compared with that of the traditional thread mapping for the PARSEC benchmark programs run on an Intel MIC heterogeneous many-core system.
线程数预测模型:动态调整异构多核系统的线程
为在异构多核系统上运行的多线程应用程序确定适当的线程数对于提高计算性能和降低能耗至关重要。本文研究了线程数与应用程序计算性能之间的相互关系,并结合回归分析理论,设计了基于Amdahl定律的最佳线程数预测模型,以提高计算性能,降低能耗。该预测模型可以根据程序运行行为和异构多核系统的体系结构特点来估计最佳胎面数。利用估计的最优线程数,在线程映射过程中动态调整多核处理器上的活动硬件线程数和处理核数,以提高整个异构多核系统的能源效率。实验结果表明,在Intel MIC异构多核系统上运行的PARSEC基准测试程序,采用本文提出的线程数预测模型,与传统的线程映射方法相比,计算性能平均提高48.6%,能耗降低59%,额外开销减少2.03%。
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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