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Graph Data Partition Models for Online Social Networks

机译:在线社交网络的图数据分区模型

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Online social networks have become important vehicles for connecting people for work and leisure. As these networks grow, data that are stored over these networks also grow, and management of these data becomes a challenge. Graph data models are a natural fit for representing online social networks but need to support distribution to allow the associated graph databases to scale while offering acceptable performance. We provide scalability by considering methods for partitioning graph databases and implement one within the Neo4j architecture based on distributing the vertices of the graph. We evaluate its performance in several simple scenarios and demonstrate that it is possible to partition a graph database without incurring significant overhead other than that required by network delays. We identify and discuss several methods to reduce the observed network delays in our prototype.
机译:在线社交网络已成为连接人们工作和休闲的重要工具。随着这些网络的增长,通过这些网络存储的数据也随之增长,对这些数据的管理成为一个挑战。图形数据模型很自然地适合表示在线社交网络,但需要支持分布以允许关联的图形数据库在提供可接受性能的同时进行扩展。我们通过考虑用于划分图数据库的方法来提供可伸缩性,并在Neo4j架构中基于分布图的顶点来实现一种方法。我们在几种简单的情况下评估其性能,并证明可以对图形数据库进行分区而不会引起网络延迟所需的大量开销。我们确定并讨论了几种减少原型中观察到的网络延迟的方法。

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