E. Boman, K. Devine, S. Rajamanickam
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引用次数: 106

摘要

可伸缩并行计算对于处理大型无标度(幂律)图是必不可少的。在具有数千个核的分布式内存计算机上,跨进程的数据分布变得非常重要。研究表明,二维布局(边缘划分)比传统的一维布局具有显著的优势。然而,简单的2D块分布不使用图的结构,更高级的2D分区方法对于大型图来说过于昂贵。本文提出了一种新的二维分区算法,该算法将图分区与二维块分布相结合。该算法的计算代价与一维图划分基本相同。我们研究了稀疏矩阵向量乘法(SpMV)对来自网络和社交网络的无标度图的性能,使用几种不同的分区器和一维和二维数据布局。我们展示了通过利用图的结构来减少SpMV的运行时间。与普遍的看法相反,我们观察到当前的图和超图分区器通常在无标度图上产生相对较好的分区。我们证明,对于SpMV和特征求解器,我们的新2D划分方法在使用多达16,384个内核的矩阵上具有多达16亿个非零的矩阵上始终优于其他考虑的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scalable matrix computations on large scale-free graphs using 2D graph partitioning
Scalable parallel computing is essential for processing large scale-free (power-law) graphs. The distribution of data across processes becomes important on distributed-memory computers with thousands of cores. It has been shown that two-dimensional layouts (edge partitioning) can have significant advantages over traditional one-dimensional layouts. However, simple 2D block distribution does not use the structure of the graph, and more advanced 2D partitioning methods are too expensive for large graphs. We propose a new two-dimensional partitioning algorithm that combines graph partitioning with 2D block distribution. The computational cost of the algorithm is essentially the same as 1D graph partitioning. We study the performance of sparse matrix-vector multiplication (SpMV) for scale-free graphs from the web and social networks using several different partitioners and both 1D and 2D data layouts. We show that SpMV run time is reduced by exploiting the graph's structure. Contrary to popular belief, we observe that current graph and hypergraph partitioners often yield relatively good partitions on scale-free graphs. We demonstrate that our new 2D partitioning method consistently outperforms the other methods considered, for both SpMV and an eigensolver, on matrices with up to 1.6 billion nonzeros using up to 16,384 cores.
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