Scalable join processing on very large RDF graphs

Thomas Neumann, G. Weikum
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引用次数: 249

Abstract

With the proliferation of the RDF data format, engines for RDF query processing are faced with very large graphs that contain hundreds of millions of RDF triples. This paper addresses the resulting scalability problems. Recent prior work along these lines has focused on indexing and other physical-design issues. The current paper focuses on join processing, as the fine-grained and schema-relaxed use of RDF often entails star- and chain-shaped join queries with many input streams from index scans. We present two contributions for scalable join processing. First, we develop very light-weight methods for sideways information passing between separate joins at query run-time, to provide highly effective filters on the input streams of joins. Second, we improve previously proposed algorithms for join-order optimization by more accurate selectivity estimations for very large RDF graphs. Experimental studies with several RDF datasets, including the UniProt collection, demonstrate the performance gains of our approach, outperforming the previously fastest systems by more than an order of magnitude.
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在非常大的RDF图上进行可伸缩的连接处理
随着RDF数据格式的扩展,用于RDF查询处理的引擎面临着包含数亿个RDF三元组的非常大的图。本文解决了由此产生的可伸缩性问题。最近的前期工作主要集中在索引和其他物理设计问题上。本文的重点是连接处理,因为RDF的细粒度和模式宽松的使用通常需要带有来自索引扫描的许多输入流的星形和链状连接查询。我们为可伸缩连接处理提供了两个贡献。首先,我们开发了非常轻量级的方法,用于在查询运行时在独立连接之间传递横向信息,从而在连接的输入流上提供高效的过滤器。其次,我们通过对非常大的RDF图进行更精确的选择性估计,改进了先前提出的联合顺序优化算法。使用多个RDF数据集(包括UniProt集合)进行的实验研究表明,我们的方法获得了性能提升,性能比以前最快的系统高出一个数量级以上。
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