小世界图中强连通分量的快速并行检测

Sungpack Hong, Nicole C. Rodia, K. Olukotun
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引用次数: 95

摘要

检测有向图中的强连通分量(SCCs)是一种基本的图分析算法,在许多科学和工程领域都有应用。然而,传统的并行SCC检测方法在应用于现实世界的大型图实例时表现出有限的性能和不良的扩展行为。在本文中,我们研究了传统方法的缺点,并提出了一系列考虑真实世界图的基本性质的扩展,例如小世界性质。我们的可扩展实现在各种小世界图上提供了出色的性能,与具有16核和32个硬件线程的最佳顺序算法相比,并行速度提高了5.01倍到29.41倍。
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On fast parallel detection of strongly connected components (SCC) in small-world graphs
Detecting strongly connected components (SCCs) in a directed graph is a fundamental graph analysis algorithm that is used in many science and engineering domains. Traditional approaches in parallel SCC detection, however, show limited performance and poor scaling behavior when applied to large real-world graph instances. In this paper, we investigate the shortcomings of the conventional approach and propose a series of extensions that consider the fundamental properties of real-world graphs, e.g. the small-world property. Our scalable implementation offers excellent performance on diverse, small-world graphs resulting in a 5.01× to 29.41× parallel speedup over the optimal sequential algorithm with 16 cores and 32 hardware threads.
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