Fast and scalable parallel matrix computations with reconfigurable pipelined optical buses

Keqin Li
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引用次数: 2

Abstract

We present fast and highly scalable parallel computations for a number of important and fundamental matrix problems on linear arrays with reconfigurable pipelined optical bus systems. These problems include computing the powers, the inverse, the characteristic polynomial, the determinant, the rank and an LU- and a QR-factorization of a matrix; multiplying a chain of matrices; and solving linear systems of equations. These computations are based on efficient implementation of the fastest sequential matrix multiplication algorithm, and are highly scalable over a wide range of system size. Such fast and scalable parallel matrix computations were not seen before on distributed memory parallel computing systems.
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快速和可扩展的并行矩阵计算与可重构的流水线光总线
我们提出了快速和高度可扩展的并行计算的一些重要的和基本的矩阵问题的线性阵列与可重构的流水线光总线系统。这些问题包括计算幂、逆、特征多项式、行列式、秩以及矩阵的LU-和qr -分解;矩阵链的乘法;求解线性方程组。这些计算基于最快的顺序矩阵乘法算法的有效实现,并且在广泛的系统大小范围内具有高度可扩展性。这种快速和可扩展的并行矩阵计算在分布式内存并行计算系统上是前所未有的。
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