使用正交树的块矩阵操作

A. Elster, A. Reeves
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引用次数: 12

摘要

提出了分布式块矩阵运算的超立方体算法。这些算法完全基于一种涉及两组正交二叉树的互连方案。这种交换拓扑以同步的方式利用所有超立方体互连链路。在此基础上提出了一种高效的矩阵向量乘法算法。此外,通过利用上述树结构,在某些应用程序中实现了仅移动指针而不移动实际数据的矩阵转置操作。对于需要实际物理向量和矩阵转置的情况,讨论了可能的技术,包括上述方案的扩展。这些算法支持数据的子矩阵分区,而不局限于行和/或列分区。这允许有效地使用节点矢量处理器以及更短的处理器间通信数据包。它还为涉及近邻操作(如图像处理)的应用程序提供了良好的数据分布。该算法基于处理器间通信范式,该范式涉及可变长度,标记块数据传输。在Christian Michelsen研究所开发的hypercube库的支持下,它们已经在Intel iPSC超立方体系统上实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Block-matrix operations using orthogonal trees
Hypercube algorithms are presented for distributed block-matrix operations. These algorithms are based entirely on an interconnection scheme which involves two orthogonal sets of binary trees. This switching topology makes use of all hypercube interconnection links in a synchronized manner. An efficient novel matrix-vector multiplication algorithm based on this technique is described. Also, matrix transpose operations moving just pointers rather than actual data, have been implemented for some applications by taking advantage of the above tree structures. For the cases where actual physical vector and matrix transposes are needed, possible techniques, including extensions of the above scheme, are discussed. The algorithms support submatrix partitionings of the data, instead of being limited to row and/or column partitionings. This allows efficient use of nodal vector processors as well as shorter interprocessor communication packets. It also produces a favorable data distribution for applications which involve near neighbor operations such as image processing. The algorithms are based on an interprocessor communication paradigm which involves variable length, tagged block data transfers. They have been implemented on an Intel iPSC hypercube system with the support of the Hypercube Library developed at the Christian Michelsen Institute.
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