Scalable reduction of large datasets to interesting subsets

Date

2010-11

Advisors

Journal Title

Journal ISSN

ISSN

1570-8268

Volume Title

Publisher

Elsevier

Type

Article

Peer reviewed

Yes

Abstract

With a huge amount of RDF data available on the web, the ability to find and access relevant information is crucial. Traditional approaches to storing, querying, and reasoning fall short when faced with web-scale data. We present a system that combines the computational power of large clusters for enabling large-scale reasoning and data access with an efficient data structure for storing and querying the accessed data on a traditional personal computer or other resource-constrained device. We present results of using this system to load the 2009 Billion Triples Challenge dataset, materialize RDFS inferences, extract an “interesting” subset of the data using a large cluster, and further analyze the extracted data using a personal computer, all in the order of tens of minutes.

Description

Keywords

Billion Triples Challenge, scalability, Parallel, inferencing, query, Triplestore

Citation

Williams, G.T., Weaver, J., Atre, M. and Hendler, J.A. (2010) Scalable reduction of large datasets to interesting subsets. Web Semantics: Science, Services and Agents on the World Wide Web, 8 (4), pp. 365-373

Rights

Research Institute