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Scalable and High Performance Betweenness Centrality on the GPU

机译:GPU上的可扩展性和高性能中间性中心

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摘要

Graphs that model social networks, numerical simulations, and the structure of the Internet are enormous and cannot be manually inspected. A popular metric used to analyze these networks is between ness centrality, which has applications in community detection, power grid contingency analysis, and the study of the human brain. However, these analyses come with a high computational cost that prevents the examination of large graphs of interest. Prior GPU implementations suffer from large local data structures and inefficient graph traversals that limit scalability and performance. Here we present several hybrid GPU implementations, providing good performance on graphs of arbitrary structure rather than just scale-free graphs as was done previously. We achieve up to 13x speedup on high-diameter graphs and an average of 2.71x speedup overall over the best existing GPU algorithm. We observe near linear speedup and performance exceeding tens of GTEPS when running between ness centrality on 192 GPUs.
机译:对社交网络,数值模拟和Internet结构进行建模的图形非常庞大,无法手动检查。用于分析这些网络的一种流行度量是在中心度之间,该中心度在社区检测,电网应变分析和人脑研究中都有应用。但是,这些分析具有很高的计算成本,因而无法检查大型的关注图。先前的GPU实施存在大型本地数据结构和效率低下的图形遍历的问题,从而限制了可伸缩性和性能。在这里,我们介绍了几种混合GPU实现,它们在任意结构的图形上提供了良好的性能,而不仅仅是像以前那样的无标度图形。在现有的最佳GPU算法上,我们在大直径图形上的速度最高可提高13倍,总体平均速度可达到2.71倍。当在192个GPU上的中心度之间运行时,我们观察到接近线性的加速和超过几十倍的GTEPS的性能。

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