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首页> 外文期刊>Journal of Parallel and Distributed Computing >Fast shared-memory streaming multilevel graph partitioning
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Fast shared-memory streaming multilevel graph partitioning

机译:快速共享内存流式多级图形分区

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摘要

A fast parallel graph partitioner can benefit many applications by reducing data transfers. The online methods for partitioning graphs have to be fast and they often rely on simple one-pass streaming algorithms, while the offline methods for partitioning graphs contain more involved algorithms and the most successful methods in this category belong to the multilevel approaches. In this work, we assess the feasibility of using streaming graph partitioning algorithms within the multilevel framework. Our end goal is to come up with a fast parallel offline multilevel partitioner that can produce competitive cutsize quality. We rely on a simple but fast and flexible streaming algorithm throughout the entire multilevel framework. This streaming algorithm serves multiple purposes in the partitioning process: a clustering algorithm in the coarsening, an effective algorithm for the initial partitioning, and a fast refinement algorithm in the uncoarsening. Its simple nature also lends itself easily for parallelization. The experiments on various graphs show that our approach is on the average up to 5.1× faster than the multi-threaded MeTiS, which comes at the expense of only 2× worse cutsize.
机译:快并行图形分区器可以通过减少数据传输来利用许多应用程序。用于分区图形的在线方法必须快速,并且它们通常依赖于简单的单遍流算法算法,而分区图的离线方法包含更多涉及的算法以及此类别中最成功的方法属于多级方法。在这项工作中,我们评估了在多级框架内使用流式图形分区算法的可行性。我们的最终目标是提出一个快速并行的离线多级分区,可以产生竞争性的抑制质量。我们在整个多级框架中依赖简单但快速灵活的流算法。该流算法在分区处理中有多种目的:粗化中的聚类算法,初始分区的有效算法,以及在undoarening中的快速细化算法。它简单的性质也很容易借给并行化。关于各种图表的实验表明,我们的方法比多线程Metis的平均值高达5.1倍,以牺牲2倍更差的削减。

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