利用OpenMP在多核上实现流水线并行逻辑分解

Panagiotis D. Michailidis, K. Margaritis
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引用次数: 16

摘要

高性能计算机体系结构的最新发展对科学计算的各个领域都产生了重大影响。线性代数,特别是线性方程组的解是科学计算中许多应用的核心。本文描述并分析了基于OpenMP接口的密集LU分解方法在多核线性系统求解中的三个并行版本。更具体地说,我们提出了两种基于行块和行循环数据分布的朴素并行算法,并重点介绍了基于管道技术的第三种并行算法。此外,我们还提出了在OpenMP中实现流水线技术的方法。在多核CPU上的实验结果表明,与其他两种朴素并行方法相比,本文提出的OpenMP管道实现具有良好的综合性能。最后,本文提出了一个简单、快速、合理的分析模型,用于预测基于流水线技术的逻辑单元分解方法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementing Parallel LU Factorization with Pipelining on a MultiCore Using OpenMP
Recent developments in high performance computer architecture have a significant effect on all fields of scientific computing. Linear algebra and especially the solution of linear systems of equations lies at the heart of many applications in scientific computing. This paper describes and analyzes three parallel versions of the dense LU factorization method that is used in linear system solving on a multicore using OpenMP interface. More specifically, we present two naive parallel algorithms based on row block and row cyclic data distribution and we put special emphasis on presenting a third parallel algorithm based on the pipeline technique. Further, we propose an implementation of the pipelining technique in OpenMP. Experimental results on a multicore CPU show that the proposed OpenMP pipeline implementation achieves good overall performance compared to the other two naive parallel methods. Finally, in this work we propose a simple, fast and reasonably analytical model to predict the performance of the LU decomposition method with the pipelining technique.
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