A divide-and-conquer approach for solving singular value decomposition on a heterogeneous system

Ding Liu, Ruixuan Li, D. Lilja, Weijun Xiao
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引用次数: 8

Abstract

Singular value decomposition (SVD) is a fundamental linear operation that has been used for many applications, such as pattern recognition and statistical information processing. In order to accelerate this time-consuming operation, this paper presents a new divide-and-conquer approach for solving SVD on a heterogeneous CPU-GPU system. We carefully design our algorithm to match the mathematical requirements of SVD to the unique characteristics of a heterogeneous computing platform. This includes a high-performanc solution to the secular equation with good numerical stability, overlapping the CPU and the GPU tasks, and leveraging the GPU bandwidth in a heterogeneous system. The experimental results show that our algorithm has better performance than MKL's divide-and-conquer routine [18] with four cores (eight hardware threads) when the size of the input matrix is larger than 3000. Furthermore, it is up to 33 times faster than LAPACK's divide-and-conquer routine [17], 3 times faster than MKL's divide-and-conquer routine with four cores, and 7 times faster than CULA on the same device, when the size of the matrix grows up to 14,000. Our algorithm is also much faster than previous SVD approaches on GPUs.
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异构系统奇异值分解的分治方法
奇异值分解(SVD)是一种基本的线性运算,已被用于模式识别和统计信息处理等许多应用中。为了加速这一耗时的运算,本文提出了一种新的分而治之的方法来求解异构CPU-GPU系统上的奇异值分解。我们精心设计了算法,使奇异值分解的数学要求与异构计算平台的独特特征相匹配。这包括对长期方程的高性能解决方案,具有良好的数值稳定性,重叠CPU和GPU任务,并在异构系统中利用GPU带宽。实验结果表明,当输入矩阵的大小大于3000时,我们的算法比MKL的四核(8个硬件线程)分治算法[18]具有更好的性能。此外,当矩阵的大小增加到14000时,它比LAPACK的分治例程[17]快33倍,比MKL的四核分治例程快3倍,比相同设备上的CULA快7倍。我们的算法也比以前gpu上的SVD方法快得多。
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