Vectorising k-Truss Decomposition for Simple Multi-Core and SIMD Acceleration

Amir Mehrafsa, S. Chester, Alex Thomo
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Abstract

In this paper we tackle truss decomposition of large graphs, which is one of the popular tools for discovering dense hierarchical subgraphs in social and web networks; such subgraphs form the basis of community discovery, one of the cornerstones of modern graph analytics. Our goal is to offer a simple vectorisation approach which can be easily implemented in widely popular Python vector libraries, such as NumPy. This way has two advantages: (1) non-experts with basic knowledge of Python can implement our algorithm, and (2) they can obtain multi-threaded and SIMD parallelism “for free” without them needing to know about computer architecture or sophisticated C++ libraries for multi-threaded processing. We believe this is an important paradigm setting approach that opens the way for applying similar techniques to other problems that might seem at first remote to vectorisation and/or parallelisation.
简单多核矢量化k-桁架分解与SIMD加速
在本文中,我们研究了大型图的桁架分解,这是在社交网络和web网络中发现密集层次子图的流行工具之一;这些子图构成了社区发现的基础,是现代图分析的基石之一。我们的目标是提供一种简单的矢量化方法,可以在广泛流行的Python矢量库(如NumPy)中轻松实现。这种方式有两个优点:(1)具有基本Python知识的非专业人员可以实现我们的算法,(2)他们可以“免费”获得多线程和SIMD并行性,而不需要了解计算机体系结构或用于多线程处理的复杂c++库。我们相信这是一个重要的范式设置方法,为将类似的技术应用于其他问题开辟了道路,这些问题最初可能看起来与矢量化和/或并行化很遥远。
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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