流处理器上的科学计算应用

Y. Zhang, Xuejun Yang, Guibin Wang, Ian Rogers, Gen Li, Yu Deng, Xiaobo Yan
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引用次数: 7

摘要

针对流编程模型开发的流处理器在媒体应用中表现良好。本文研究了流处理器在科学计算应用中的适用性。八个具有不同性能特征的科学应用程序被映射到一个流处理器。由于流编程模型的新颖性,我们将展示如何用传统语言(如FORTRAN)映射程序。在流处理器系统中,系统资源的管理是程序员的责任。我们提出了几个优化,使映射程序能够利用流处理器体系结构的各个方面。最后,我们分析了流处理器的性能,并在一系列科学计算应用中提出了优化方案。流程序比Itanium 2处理器上相应的FORTRAN程序快1.67到32.5倍,其中的优化在实现性能提升方面发挥了重要作用。
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Scientific Computing Applications on a Stream Processor
Stream processors, developed for the stream programming model, perform well on media applications. In this paper we examine the applicability of a stream processor to scientific computing applications. Eight scientific applications, each having different performance characteristics, are mapped to a stream processor. Due to the novelty of the stream programming model, we show how to map programs in a traditional language, such as FORTRAN. In a stream processor system, the management of system resources is the programmers' responsibility. We present several optimizations, which enable mapped programs to exploit various aspects of the stream processor architecture. Finally, we analyze the performance of the stream processor and the presented optimizations on a set of scientific computing applications. The stream programs are from 1.67 to 32.5 times faster than the corresponding FORTRAN programs on an Itanium 2 processor, with the optimizations playing an important role in realizing the performance improvement.
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