Distributed triangle counting in the Graphulo matrix math library

D. Hutchison
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引用次数: 8

Abstract

Triangle counting is a key algorithm for large graph analysis. The Graphulo library provides a framework for implementing graph algorithms on the Apache Accumulo distributed database. In this work we adapt two algorithms for counting triangles, one that uses the adjacency matrix and another that also uses the incidence matrix, to the Graphulo library for serverside processing inside Accumulo. Cloud-based experiments show a similar performance profile for these different approaches on the family of power law Graph500 graphs, for which data skew increasingly bottlenecks. These results motivate the design of skew-aware hybrid algorithms that we propose for future work.
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分布式三角形计数在Graphulo矩阵数学库
三角形计数是大图分析的关键算法。Graphulo库为在Apache Accumulo分布式数据库上实现图形算法提供了一个框架。在这项工作中,我们采用了两种计算三角形的算法,一种使用邻接矩阵,另一种也使用关联矩阵,用于Graphulo库中的服务器端处理。基于云计算的实验显示,这些不同的方法在幂律Graph500图族上的性能表现相似,其中数据倾斜越来越成为瓶颈。这些结果激发了我们为未来工作提出的倾斜感知混合算法的设计。
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