Using kernel couplings to predict parallel application performance

V. Taylor, Xingfu Wu, J. Geisler, R. Stevens
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引用次数: 52

Abstract

Performance models provide significant insight into the performance relationships between an application and the system used for execution. The major obstacle to developing performance models is the lack of knowledge about the performance relationships between the different functions that compose an application. This paper addresses the issue by using a coupling parameter, which quantifies the interaction between kernels, to develop performance predictions. The results, using three NAS parallel application benchmarks, indicate that the predictions using the coupling parameter were greatly improved over a traditional technique of summing the execution times of the individual kernels in an application. In one case the coupling predictor had less than 1% relative error in contrast the summation methodology that had over 20% relative error. Further, as the problem size and number of processors scale, the coupling values go through a finite number of major value changes that is dependent on the memory subsystem of the processor architecture.
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使用内核耦合来预测并行应用程序的性能
性能模型提供了对应用程序和用于执行的系统之间的性能关系的重要洞察。开发性能模型的主要障碍是缺乏关于组成应用程序的不同功能之间的性能关系的知识。本文通过使用耦合参数来解决这个问题,该参数量化了内核之间的交互,从而进行性能预测。使用三个NAS并行应用程序基准测试的结果表明,使用耦合参数的预测比将应用程序中单个内核的执行时间相加的传统技术有了很大的改进。在一个案例中,耦合预测器的相对误差小于1%,而求和方法的相对误差超过20%。此外,随着问题大小和处理器数量的增加,耦合值会经历有限的主要值变化,这取决于处理器体系结构的内存子系统。
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