Hypergraph-based locality-enhancing methods for graph operations in Big Data applications

Kadir Akbudak
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Abstract

The need for speeding up data analytics increases inevitably due to the need for extracting valuable information from social media, data generated by smart devices with sensors, patterns of people’s communications over the web, items viewed and bought by global-scale customers, cloud applications, etc., all of which take part in the “Big Data.” Such kind of interaction data is very well represented as sparse graphs to enable the graph analytics, which requires efficient underlying kernels. The breadth-first search (BFS)-based traversal is a commonly used kernel in graph algorithms such as the betweenness centrality algorithm for centrality analysis. In this work, we focus on parallel BFS operations and propose hypergraph-based combinatorial models that aim at reducing cache misses and hence exploiting data locality during the parallel BFS operations. Our models are based on finding new vertex visit orders so that locality in accessing the data associated with vertices is exploited. Experiments on graphs arising in a wide range of applications show that our proposed models achieve on average 9% performance improvement in the CPU-based Ligra data analytics framework.
基于超图的定位增强方法,用于大数据应用中的图操作
由于需要从社交媒体、带有传感器的智能设备产生的数据、人们在网络上的通信模式、全球客户浏览和购买的商品、云应用等 "大数据 "中提取有价值的信息,加快数据分析的需求不可避免地增加了。这类交互数据可以很好地表示为稀疏图,以便进行图分析,而图分析需要高效的底层内核。基于广度优先搜索(BFS)的遍历是图算法中常用的内核,如用于中心性分析的间度中心性算法。在这项工作中,我们专注于并行 BFS 操作,并提出了基于超图的组合模型,旨在减少缓存丢失,从而在并行 BFS 操作过程中利用数据局部性。我们的模型基于寻找新的顶点访问顺序,从而利用访问与顶点相关数据的局部性。对广泛应用中出现的图形进行的实验表明,我们提出的模型在基于 CPU 的 Ligra 数据分析框架中平均提高了 9% 的性能。
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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