分布式图数据库的增量在线图划分算法

Dong Dai, Wei Zhang, Yong Chen
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引用次数: 29

摘要

图在许多应用和领域中变得越来越重要,例如查询社交网络中的关系或管理科学计算中生成的丰富元数据。许多这样的用例都需要高性能的分布式图数据库来服务于来自客户端的持续更新,同时,回答关于当前图的复杂查询。图数据库中的这些操作,也称为联机事务处理(OLTP)操作,对图分区算法有特定的设计和实现要求。在本研究中,我们认为在图划分过程中有必要考虑连通性和顶点度的变化。基于这一思想,我们设计了一种增量在线图划分(IOGP)算法,该算法对顶点度的增量变化做出相应的响应。IOGP有助于实现更好的局部性,生成平衡的分区,并增加访问图的高度顶点的并行性。在真实图和合成图上,与最先进的图分区算法相比,IOGP的查询性能提高了2倍,开销不到10%。
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IOGP: An Incremental Online Graph Partitioning Algorithm for Distributed Graph Databases
Graphs have become increasingly important in many applications and domains such as querying relationships in social networks or managing rich metadata generated in scientific computing. Many of these use cases require high-performance distributed graph databases for serving continuous updates from clients and, at the same time, answering complex queries regarding the current graph. These operations in graph databases, also referred to as online transaction processing (OLTP) operations, have specific design and implementation requirements for graph partitioning algorithms. In this research, we argue it is necessary to consider the connectivity and the vertex degree changes during graph partitioning. Based on this idea, we designed an Incremental Online Graph Partitioning (IOGP) algorithm that responds accordingly to the incremental changes of vertex degree. IOGP helps achieve better locality, generate balanced partitions, and increase the parallelism for accessing high-degree vertices of the graph. Over both real-world and synthetic graphs, IOGP demonstrates as much as 2x better query performance with a less than 10% overhead when compared against state-of-the-art graph partitioning algorithms.
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