Community Detection at scale: A comparison study among Apache Spark and Neo4j

Georgios Kalogeras, Vassilios D. Tsakanikas, Ioannis Ballas, Vassilios Aggelopoulos, Vassilios Tampakas
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Abstract

The proliferation of data generation devices, including IoT and edge computing has led to the big data paradigm, which has considerably placed pressure on well-established relational databases during the last decade. Researchers have proposed several alternative database models in order to model the captured data more efficiently. Among these approaches, graph databases seem the most promising candidate to supplement relational schemes. Within this study, a comparison is performed among Neo4j, one of the leading graph databases, and Apache Spark, a unified engine for distributed large-scale data processing environment, in terms of processing limits. More specifically, the two frameworks are compared on their capacity to execute community detection algorithms.
大规模社区检测:Apache Spark和Neo4j的比较研究
包括物联网和边缘计算在内的数据生成设备的激增导致了大数据范式的出现,这在过去十年中给成熟的关系数据库带来了相当大的压力。为了更有效地对捕获的数据进行建模,研究人员提出了几种可供选择的数据库模型。在这些方法中,图数据库似乎是最有希望补充关系方案的候选者。在本研究中,对领先的图形数据库Neo4j和分布式大规模数据处理环境的统一引擎Apache Spark在处理限制方面进行了比较。更具体地说,比较了这两个框架执行社区检测算法的能力。
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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