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RDF is a data representation format for schema-free structured information that is gaining momentum in the context of Semantic-Web corpora, life sciences, and also Web 2.0 platforms. The "pay-as-you-go" nature of RDF and the flexible pattern-matching capabilities of its query language SPARQL entail efficiency and scalability challenges for complex queries including long join paths. This paper presents the RDF-3X engine, an implementation of SPARQL that achieves excellent performance by pursuing a RISC-style architecture with a streamlined architecture and carefully designed, puristic data structures and operations. The salient points of RDF-3X are: 1) a generic solution for storing and indexing RDF triples that completely eliminates the need for physical-design tuning, 2) a powerful yet simple query processor that leverages fast merge joins to the largest possible extent, and 3) a query optimizer for choosing optimal join orders using a cost model based on statistical synopses for entire join paths. The performance of RDF-3X, in comparison to the previously best state-of-the-art systems, has been measured on several large-scale datasets with more than 50 million RDF triples and benchmark queries that include pattern matching and long join paths in the underlying data graphs.
Neumann et al. (Fri,) studied this question.
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