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Three-Point Correlation Function Parallel Algorithm Based on MPI

机译:基于MPI的三点关联函数并行算法

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摘要

The computation of the three-point correlation function (3PCF) is a critical challenge in astrophysics. An algorithm, named as RCSF (recursive convolution for scalar fields), has been proposed to solve 3PCF by using a filter matrix to reduce the computation load. In this paper, we accelerate the 3PCF by parallel implementation of RCSF. The proposed parallel algorithm, denoted as p-RCSF, splits the 3PCF problem into sub-tasks and the tasks are assigned to each process evenly. The computation load of each task is further reduced by identifying filter matrices consisting of large number of zero elements. The proposed algorithm is capable of significantly accelerating the RCSF with higher accuracy in comparison with previous work. Experimental results show that p-RCSF is able to accelerate the RCSF by 71 times using 72 processes without loss in accuracy. In addition, the p-RCSF improves the accuracy to 99.9% which is higher than before.
机译:三点相关函数(3PCF)的计算是天体物理学中的关键挑战。提出了一种称为RCSF(标量字段的递归卷积)的算法,该算法通过使用滤波器矩阵来减少3PCF的计算量。在本文中,我们通过并行实现RCSF来加速3PCF。所提出的并行算法称为p-RCSF,它将3PCF问题分解为子任务,并将任务平均分配给每个进程。通过识别由大量零元素组成的滤波器矩阵,可以进一步减少每个任务的计算量。与以前的工作相比,该算法能够以更高的精度显着加速RCSF。实验结果表明,使用72个过程,p-RCSF可以将RCSF加速71倍,而不会降低精度。此外,p-RCSF将精度提高到99.9%,比以前更高。

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