利用GPU加速非对称特征值问题的Hessenberg约简

Jun-ichi Muramatsu, Shaoliang Zhang, Yusaku Yamamoto
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引用次数: 1

摘要

大规模密集非对称特征值问题的求解是汽车振动分析、电子衍射图分析等科学和工程计算领域的重要问题。在本研究中,我们主要关注海森伯格约简步骤,并考虑使用GPU加速它。我们的主要策略是使用CUBLAS,一个为GPU优化的BLAS库。然而,由于海森伯格约简需要CUBLAS不支持的操作,我们将CPU和GPU结合起来进行计算。我们提出了两种结合CPU和GPU的方法:一种是在GPU上执行尽可能多的工作,另一种是积极地将小尺寸矩阵的计算分配给CPU。实验结果表明,后一种方法比前一种方法要快得多。与在4核Core i7处理器上的计算相比,后一种方法在计算4800 $\times$ 4800实矩阵的Hessenberg形式时,使用Tesla C1060 GPU和Core i7处理器的速度提高了2.8倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Acceleration of Hessenberg Reduction for Nonsymmetric Eigenvalue Problems Using GPU
Solution of large-scale dense nonsymmetric eigenvalue problem is required in many areas of scientific and engineering computing, such as vibration analysis of automobiles and analysis of electronic diffraction patterns. In this study, we focus on the Hessenberg reduction step and consider accelerating it using GPU. Our main strategy is to use the CUBLAS, an optimized BLAS library for GPU. However, since Hessenberg reduction requires operations not supported by CUBLAS, we combine CPU and GPU to perform the computation. We propose two approaches for combining CPU and GPU: the one that performs as much work as possible on GPU and the one that aggressively assigns computation of small-size matrices to CPU. Experimental results show that the latter approach is considerably faster than the former. Compared with the computation on the Core i7 processor with 4 cores, the latter approach with the Tesla C1060 GPU and the Core i7 processor achieves 2.8 times speedup when computing the Hessenberg form of a 4,800 $\times$ 4,800 real matrix.
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