Data Portal @ linkeddatafragments.org

ScholarlyData

Search ScholarlyData by triple pattern

Matches in ScholarlyData for { ?s ?p In previous work we have shown that the MapReduce framework for distributed computation can be deployed for highly scalable inference over RDF graphs under the RDF Schema semantics. Unfortunately, several key optimizations that enabled the scalable RDFS inference do not generalize to the richer OWL semantics. In this paper we analyze these problems, and we propose solutions to overcome them. Our solutions allow distributed computation of the closure of an RDF graph under the OWL Horst semantics. We have implemented our approach on the Hadoop platform and deployed it on a compute cluster of 64 machines. We have evaluated our approach using a real-world dataset (UniProt, about 1.5 billion triples) and a synthetic benchmark (LUBM, up to 100 billion triples). Results show that our implementation is scalable and vastly outperforms current systems when comparing supported language expressivity, maximum data size and inference speed.. }

Showing items 1 to 1 of 1 with 100 items per page.