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首页> 外文期刊>ACM transactions on mathematical software >Families of Algorithms for Reducing a Matrix to Condensed Form
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Families of Algorithms for Reducing a Matrix to Condensed Form

机译:用于将矩阵简化为压缩形式的算法家族

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摘要

In a recent paper it was shown how memory traffic can be diminished by reformulating the classic algorithm for reducing a matrix to bidiagonal form, a preprocess when computing the singular values of a dense matrix. The key is a reordering of the computation so that the most memory-intensive operations can be "fused." In this article, we show that other operations that reduce matrices to condensed form (reduction to upper Hessenberg form and reduction to tridiagonal form) can be similarly reorganized, yielding different sets of operations that can be fused. By developing the algorithms with a common framework and notation, we facilitate the comparing and contrasting of the different algorithms and opportunities for optimization on sequential architectures. We discuss the algorithms, develop a simple model to estimate the speedup potential from fusing, and showcase performance improvements consistent with the what the model predicts.
机译:在最近的一篇论文中,显示了如何通过重新格式化将矩阵简化为对角线形式的经典算法来减少内存流量,该算法是计算密集矩阵的奇异值时的预处理。关键是对计算进行重新排序,以便可以“融合”最占用内存的操作。在本文中,我们显示了将矩阵还原为压缩形式的其他操作(还原为上Hessenberg形式和还原为三对角线形式)可以类似地重组,产生可以融合的不同操作集。通过开发具有通用框架和符号的算法,我们促进了不同算法的比较和对比,并为顺序体系结构的优化提供了机会。我们讨论了这些算法,开发了一个简单的模型来估计融合带来的加速潜力,并展示与模型预测相符的性能改进。

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