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首页> 外文期刊>International Journal of Networking and Computing >Applications of Ear Decomposition to Efficient Heterogeneous Algorithms for Shortest Path/Cycle Problems
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Applications of Ear Decomposition to Efficient Heterogeneous Algorithms for Shortest Path/Cycle Problems

机译:耳朵分解在最短路径/循环问题的高效异构算法中的应用

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Graph algorithms play an important role in several fields of sciences and engineering. Prominent among them are the All-Pairs-Shortest-Paths ( APSP ) and related problems. Indeed there are several efficient implementations for such problems on a variety of modern multi- and many-core architectures. It can be noticed that for several graph problems, parallelism offers only a limited success as current parallel architectures have severe short-comings when deployed for most graph algorithms. At the same time, some of these graphs exhibit clear structural properties due to their sparsity. This calls for particular solution strategies aimed at scalable processing of large, sparse graphs on modern parallel architectures. In this paper, we study the applicability of an ear decomposition of graphs to problems such as all-pairs-shortest-paths and minimum cost cycle basis. Through experimentation, we show that the resulting solutions are scalable in terms of both memory usage and also their speedup over best known current implementations. We believe that our techniques have the potential to be relevant for designing scalable solutions for other computations on large sparse graphs.
机译:图算法在科学和工程学的多个领域中发挥着重要作用。其中最突出的是所有对最短路径(APSP)和相关问题。实际上,在各种现代的多核和多核体系结构上,有几种针对此类问题的有效实现。可以注意到,对于几个图形问题,并行性只能提供有限的成功,因为当前的并行体系结构在部署到大多数图形算法时都存在严重的缺点。同时,这些图中的一些由于其稀疏性而显示出清晰的结构特性。这就要求采取特定的解决方案策略,以在现代并行体系结构上可伸缩地处理大型稀疏图。在本文中,我们研究了图的耳朵分解对所有对-最短路径和最小成本周期基础等问题的适用性。通过实验,我们表明,所产生的解决方案在内存使用以及相对于最著名的当前实现的加速方面均具有可伸缩性。我们认为,我们的技术有可能与为大型稀疏图上的其他计算设计可伸缩解决方案相关。

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