A Shared-Memory Parallel Algorithm for Updating Single-Source Shortest Paths in Large Dynamic Networks

S. Srinivasan, Sara Riazi, B. Norris, Sajal K. Das, S. Bhowmick
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引用次数: 12

Abstract

Computing the single-source shortest path (SSSP) is one of the fundamental graph algorithms, and is used in many applications. Here, we focus on computing SSSP on large dynamic graphs, i.e. graphs whose structure evolves with time. We posit that instead of recomputing the SSSP for each set of changes on the dynamic graphs, it is more efficient to update the results based only on the region of change. To this end, we present a novel two-step shared-memory algorithm for updating SSSP on weighted large-scale graphs. The key idea of our algorithm is to identify changes, such as vertex/edge addition and deletion, that affect the shortest path computations and update only the parts of the graphs affected by the change. We provide the proof of correctness of our proposed algorithm. Our experiments on real and synthetic networks demonstrate that our algorithm is as much as 4X faster compared to computing SSSP with Galois, a state-of-the-art parallel graph analysis software for shared memory architectures. We also demonstrate how increasing the asynchrony can lead to even faster updates. To the best of our knowledge, this is one of the first practical parallel algorithms for updating networks on shared-memory systems, that is also scalable to large networks.
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大型动态网络中单源最短路径更新的共享内存并行算法
计算单源最短路径(SSSP)是一种基本的图算法,在许多应用中得到了应用。在这里,我们专注于计算大型动态图的SSSP,即结构随时间变化的图。我们假设,与其为动态图上的每组变化重新计算SSSP,不如仅基于变化区域更新结果更有效。为此,我们提出了一种新的两步共享内存算法来更新加权大规模图上的SSSP。我们算法的关键思想是识别影响最短路径计算的变化,例如顶点/边的添加和删除,并仅更新受变化影响的图的部分。给出了算法正确性的证明。我们在真实网络和合成网络上的实验表明,与使用Galois(一种用于共享内存架构的最先进的并行图形分析软件)计算SSSP相比,我们的算法快了4倍。我们还演示了增加异步性如何能够带来更快的更新。据我们所知,这是第一个用于更新共享内存系统上的网络的实用并行算法之一,它也可以扩展到大型网络。
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