Brief Announcement: Faster Stencil Computations using Gaussian Approximations

Zafar Ahmad, R. Chowdhury, Rathish Das, P. Ganapathi, Aaron Gregory, Yimin Zhu
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引用次数: 1

Abstract

Stencil computations are widely used to simulate the change of state of physical systems. The current best algorithm for performing aperiodic linear stencil computations on a d (≥ 1)-dimensional grid of size N for T timesteps does Θ(TN1-1/d+N Log N) work. We introduce novel techniques based on random walks and Gaussian approximations for an asymptotic improvement of this work bound for a class of linear stencils. We also improve the span (i.e., parallel running time on an unbounded number of processors) asymptotically from the current state of the art.
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简要公告:使用高斯近似更快的模板计算
模板计算被广泛用于模拟物理系统的状态变化。目前在d(≥1)维、大小为N、时间步长为T的网格上执行非周期线性模板计算的最佳算法是Θ(TN1-1/d+N Log N)。我们引入了基于随机漫步和高斯近似的新技术,对一类线性模板的工作界进行了渐近改进。我们还从目前的技术状态渐近地改进了跨度(即在无限数量的处理器上并行运行时间)。
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