A GPU-Parallel Algorithm for Fast Hybrid BFS-DFS Graph Traversal

A. Maratea, L. Marcellino, V. Duraccio
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引用次数: 3

Abstract

It seems natural to use the GPUs (Graphical Processing Units) for performing analytics on big graphs, due to the notable boost in high performance computing that their introduction has determined and to the huge volume of connected data that is being gathered and processed nowadays. A parallel strategy to speed-up the visit of all nodes of a graph based on the precomputation of critical frontiers is proposed in this paper: step by step the critical frontiers are reused so that all threads work optimally. The resulting algorithm is an asynchronous hybrid between Breadth and Depth First Search (BFS and DFS), called HBDFS. Tests with both real and synthetic heterogeneous datasets show a consistent dominance of the proposed approach over the baseline parallel BFS, achieving up to a 30 times speed-up with just a 20% memory overhead
一种快速混合BFS-DFS图遍历的gpu并行算法
使用gpu(图形处理单元)在大图形上执行分析似乎是很自然的,因为它们的引入决定了高性能计算的显着提升,以及现在正在收集和处理的大量连接数据。提出了一种基于临界边界预计算的加速图节点访问的并行策略:逐步重用临界边界,使所有线程都能最优地工作。由此产生的算法是广度优先和深度优先搜索(BFS和DFS)之间的异步混合,称为HBDFS。对真实和合成异构数据集的测试表明,所提出的方法在基准并行BFS上始终占据主导地位,实现了高达30倍的加速,而内存开销仅为20%
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