可伸缩并行图划分

Shad Kirmani, P. Raghavan
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引用次数: 29

摘要

我们考虑使用大量处理器并行地划分一个图。并行多级分区器,如Pt-Scotch和ParMetis,可以产生高质量的分区,但它们的性能伸缩性很差。坐标对分方案,如Zoltan中的那些,只能应用于有坐标的图,可以很好地缩放,但分区质量经常受到损害。我们试图通过开发一种可扩展的并行方案来解决这一差距,该方案通过基于格的多层嵌入将坐标输入到图中。划分是用一个几何方案的并行公式计算的,该方案已被证明在某些图类上提供了可证明的良好切割。我们分析了该方案的并行复杂性,并观察了大图上的加速和切割尺寸。我们的结果表明,对于数百到数千个加工者来说,我们的方法比ParMetis和Pt-Scotch要快得多,同时还能产生高质量的切割。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scalable parallel graph partitioning
We consider partitioning a graph in parallel using a large number of processors. Parallel multilevel partitioners, such as Pt-Scotch and ParMetis, produce good quality partitions but their performance scales poorly. Coordinate bisection schemes such as those in Zoltan, which can be applied only to graphs with coordinates, scale well but partition quality is often compromised. We seek to address this gap by developing a scalable parallel scheme which imparts coordinates to a graph through a lattice-based multilevel embedding. Partitions are computed with a parallel formulation of a geometric scheme that has been shown to provide provably good cuts on certain classes of graphs. We analyze the parallel complexity of our scheme and we observe speed-ups and cut-sizes on large graphs. Our results indicate that our method is substantially faster than ParMetis and Pt-Scotch for hundreds to thousands of processors, while producing high quality cuts.
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