基于Giraph的分布式大图着色算法

Assia Brighen, Hachem Slimani, A. Rezgui, H. Kheddouci
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引用次数: 1

摘要

顶点图着色(VGC)是图论中一个众所周知的问题,在电信、生物信息学和互联网等各个领域都有大量的应用。它是Karp的21个np完全问题之一。已经出现了几个大型图形处理框架,它们是处理VGC问题的有效选择。这些框架的例子包括Pregel、Graphx和Giraph。后者是工业界和学术界最流行的大型图处理框架之一。在本文中,我们提出了一种新的图形着色算法,该算法旨在利用由Giraph框架或任何其他以顶点为中心的范式提供的简单并行化技术。我们使用几个大型图形数据集,将我们的算法与现有的图形着色算法在解决方案质量(使用颜色的数量)和CPU运行时间方面进行了比较。实验结果表明,该算法比现有的Giraph算法效率高得多。
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A distributed large graph coloring algorithm on Giraph
Vertex graph coloring (VGC) is a well known problem in graph theory and has a large number of applications in various domains such as telecommunications, bioinformatics, and Internet. It is one of the 21 NP-complete problems of Karp. Several large graph treatment frameworks have emerged and are effective options to deal with the VGC problem. Examples of those frameworks include Pregel, Graphx and Giraph. The latter is one of the most popular large graph processing frameworks both in industry and academia. In this paper, we present a novel graph coloring algorithm designed for utilizing the simple parallelization technique provided by the Giraph framework or any other vertex-centric paradigm. We have compared our algorithm to existing Giraph graph coloring algorithms with regard to solution quality (number of used colors) and CPU runtime, using several large graph datasets. The obtained results have shown that the proposed algorithm is much more efficient than existing Giraph algorithms.
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