基于流水线通信的k维网格可分负载分配改进方法

Keqin Li
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引用次数: 13

摘要

本文以网络大小N为函数,给出了处理线性阵列上可分负载的经典方法的并行时间和加速的封闭解。我们提出了两种利用流水线通信在线性阵列上分配可分负载的方法。我们推导了两种方法的并行时间和加速的封闭形式解,并证明了两种方法的渐近加速都是/spl beta/+1,其中/spl beta/是计算单位负载的时间与通信单位负载的时间之比,这样的性能甚至比已知方法在k维网格上的性能更好。将这两种使用管道通信的新算法推广到k维网格上分配可分负载,并证明了这两种算法的渐近加速都是k/spl beta/+1,其中k/spl ges/1。我们还证明了在k维网格上,当网络规模变大时,使用内部初始处理器处理可分负载可以实现2k/spl beta/+1的渐近加速。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved methods for divisible load distribution on k-dimensional meshes using pipelined communications
We give the closed form solutions to the parallel time and speedup of the classic method for processing divisible loads on linear arrays as functions of N, the network size. We propose two methods which employ pipelined communications to distribute divisible loads on linear arrays. We derive the closed form solutions to the parallel time and speedup for both methods and show that the asymptotic speedup of both methods is /spl beta/+1, where /spl beta/ is the ratio of the time for computing a unit load to the time for communicating a unit load Such performance is even better than that of the known methods on k-dimensional meshes with k>1. The two new algorithms which use pipelined communications are generalized to distribute divisible loads on k-dimensional meshes, and we show that the asymptotic speedup of both algorithms is k/spl beta/+1, where k/spl ges/1. We also prove that on k-dimensional meshes where k/spl ges/1, as the network size becomes large, the asymptotic speedup of 2k/spl beta/+1 can be achieved for processing divisible loads by using interior initial processors.
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