Graph Aware Caching Policy for Distributed Graph Stores

Hidayet Aksu, Mustafa Canim, Yuan-Chi Chang, I. Korpeoglu, Ö. Ulusoy
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引用次数: 4

Abstract

Graph stores are becoming increasingly popular among NOSQL applications seeking flexibility and heterogeneity in managing linked data. Conceptually and in practice, applications ranging from social networks, knowledge representations to Internet of things benefit from graph data stores built on a combination of relational and non-relational technologies aimed at desired performance characteristics. The most common data access pattern in querying graph stores is to traverse from a node to its neighboring nodes. This paper studies the impact of such traversal pattern to common data caching policies in a partitioned data environment where a big graph is distributed across servers in a cluster. We propose and evaluate a new graph aware caching policy designed to keep and evict nodes, edges and their metadata optimized for query traversal pattern. The algorithm distinguishes the topology of the graph as well as the latency of access to the graph nodes and neighbors. We implemented graph aware caching on a distributed data store Apache HBase in the Hadoop family. Performance evaluations showed up to 15x speedup on the benchmark datasets preferring our new graph aware policy over non-aware policies. We also show how to improve the performance of existing caching algorithms for distributed graphs by exploiting the topology information.
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分布式图存储的图感知缓存策略
图存储在寻求管理关联数据的灵活性和异构性的NOSQL应用程序中变得越来越流行。从概念上和实践中,从社交网络、知识表示到物联网的应用程序都受益于基于关系和非关系技术的组合构建的图数据存储,这些技术旨在实现所需的性能特征。查询图存储中最常见的数据访问模式是从一个节点遍历到它的邻近节点。本文研究了这种遍历模式对分区数据环境中常见数据缓存策略的影响,其中大图分布在集群中的多个服务器上。我们提出并评估了一种新的图形感知缓存策略,该策略旨在保留和删除针对查询遍历模式优化的节点、边缘及其元数据。该算法区分了图的拓扑结构以及访问图节点和邻居的延迟。我们在Hadoop家族中的分布式数据存储Apache HBase上实现了图形感知缓存。性能评估显示,在基准数据集上,我们更喜欢新的图感知策略,而不是非感知策略,速度提高了15倍。我们还展示了如何通过利用拓扑信息来提高分布式图的现有缓存算法的性能。
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