GraphLib: A Parallel Graph Mining Library for Joint Cloud Computing

2020 IEEE International Conference on Joint Cloud Computing(2020)

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摘要
Graph algorithms are widely applied in social networks, computational biology, Internet security and a broad range of complexity science. Although there are many state-of-the-art graph frameworks, few frameworks support parallel graph mining in joint cloud computing environment. In this paper, we propose GraphLib, a parallel graph mining library, based on a BSP (Bulk Synchronous Parallel) service over joint cloud computing which was proposed in our prior work. We first summarize the features of commonly-used graph mining algorithms, and present our approaches for parallelizing typical graph mining algorithms. GraphLib includes 17 parallel graph mining algorithms that can be used in 3 scenarios. We evaluate the performance of 4 typical parallel graph algorithms in GraphLib on three real-world datasets. Our parallelized algorithms can achieve sub-linear scalability.
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关键词
Graph algorithm, BSP, JointCloud
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