关于大规模矩阵的分布乘法

V. Glushan, Lozovoy A. Yu.
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引用次数: 0

摘要

矩阵乘法是矩阵微积分中的主要问题之一。小尺度矩阵的乘法运算不存在任何困难,而大尺度矩阵的乘法运算通常会遇到很多困难。在这种情况下,使用块矩阵乘法。由于生成矩阵的每个块都是独立于所有其他块形成的,这使得块矩阵乘法可以并行执行,从而显着减少乘法时间。本文根据所使用的处理机数量,给出了矩形矩阵乘法分块的最优分割规则。给出了生成矩阵时间复杂度的证明和评估方法,并对分块矩阵乘法进行了进一步改进。对于某种矩形矩阵,改进过程简化为将原矩阵的元素行和元素列重新分配为若干个乘矩阵的块行和块列。这导致所得到的矩阵的最大块的维数减少,因此,乘法过程的加速。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On Distributed Multiplication of Large-Scale Matrices
Matrix multiplication is one of the main issues in matrix calculus. The multiplication of small-scale matrices does not cause any difficulties while multiplying of large-scale matrices usually faces many difficulties. In this case, block matrix multiplication is used. Since each block of the resultant matrix is formed independently of all the others, this allows the block matrix multiplication to be executed in parallel, significantly reducing the multiplication time. The article formulates the rules of optimal division of multiplied rectangular matrices into blocks depending on the number of processors used. The method of substantiation and assessment of the time complexity of the formation of the resulting matrix is also presented as well as further improvement of block matrix multiplication is proposed. In case of some kind of rectangular matrices, the process of improvement is reduced to the re-distribution of the elemental rows and columns of the original matrices into several block-rows and block-columns of the multiplied matrices. This leads to a decrease in the dimension of the largest block of the resultant matrix and, consequently, to an acceleration of the multiplication process.
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