An Efficient Architecture for Floating-Point Eigenvalue Decomposition

Xinying Wang, Joseph Zambreno
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引用次数: 3

Abstract

Eigenvalue decomposition (EVD) is a widely-used factorization tool to perform principal component analysis, and has been employed for dimensionality reduction and pattern recognition in many scientific and engineering applications, such as image processing, text mining and wireless communications. EVD is considered computationally expensive, and as software implementations have not been able to meet the performance requirements of many real-time applications, the use of reconfigurable computing technology has shown promise in accelerating this type of computation. In this paper, we present an efficient FPGA-based double-precision floating-point architecture for EVD, which can efficiently analyze large-scale matrices. Our experimental results using an FPGA-based hybrid acceleration system indicate the efficiency of our novel array architecture, with dimension-dependent speedups over an optimized software implementation that range from 1.5× to 15.45× in terms of computation time.
一种有效的浮点特征值分解结构
特征值分解(Eigenvalue decomposition, EVD)是一种被广泛应用于主成分分析的分解工具,在图像处理、文本挖掘和无线通信等科学和工程应用中被广泛用于降维和模式识别。EVD被认为是计算昂贵的,并且由于软件实现无法满足许多实时应用程序的性能要求,使用可重构计算技术在加速这种类型的计算方面显示出了希望。本文提出了一种高效的基于fpga的EVD双精度浮点结构,可以有效地分析大规模矩阵。我们使用基于fpga的混合加速系统的实验结果表明,我们的新型阵列架构的效率,在优化的软件实现上,计算时间的加速幅度从1.5倍到15.45倍不等。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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