Community Detection on the GPU

M. Naim, F. Manne, M. Halappanavar, Antonino Tumeo
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引用次数: 23

Abstract

We present and evaluate a new GPU algorithm based on the Louvain method for community detection. Our algorithm is the first for this problem that parallelizes the access to individual edges. In this way we can fine tune the load balance when processing networks with nodes of highly varying degrees. This is achieved by scaling the number of threads assigned to each node according to its degree. Extensive experiments show that we obtain speedups up to a factor of 270 compared to the sequential algorithm. The algorithm consistently outperforms other recent shared memory implementationsand is only one order of magnitude slower than the current fastest parallel Louvain method running on a Blue Gene/Q supercomputer using more than 500K threads.
GPU上的团体字检测
我们提出并评估了一种基于Louvain方法的新的GPU社区检测算法。我们的算法是第一个并行访问各个边的算法。通过这种方式,我们可以在处理具有高度不同程度节点的网络时微调负载平衡。这是通过根据每个节点的程度缩放分配给每个节点的线程数量来实现的。大量的实验表明,与顺序算法相比,我们获得了高达270倍的加速。该算法始终优于其他最近的共享内存实现,并且只比目前最快的并行Louvain方法慢一个数量级,该方法运行在Blue Gene/Q超级计算机上,使用超过500K的线程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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