QSMat: Query-Based Materialization for Efficient RDF Stream Processing
نویسندگان
چکیده
This paper presents a novel approach, QSMat, for efficient RDF data stream querying with flexible query-based materialization. Previous work accelerates either the maintenance of a stream window materialization or the evaluation of a query over the stream. QSMat exploits knowledge of a given query and entailment rule-set to accelerate window materialization by avoiding inferences that provably do not affect the evaluation of the query. We prove that stream querying over the resulting partial window materializations with QSMat is sound and complete with regard to the query. A comparative experimental performance evaluation based on the Berlin SPARQL benchmark and with selected representative systems for stream reasoning shows that QSMat can significantly reduce window materialization size, reasoning overhead, and thus stream query evaluation time.
منابع مشابه
Query Rewriting in RDF Stream Processing
Querying and reasoning over RDF streams are two increasingly relevant areas in the broader scope of processing structured data on the Web. While RDF Stream Processing (RSP) has focused so far on extending SPARQL for continuous query and event processing, stream reasoning has concentrated on ontology evolution and incremental materialization. In this paper we propose a different approach for que...
متن کاملA Solution to View Management to Build a Data Warehouse
Several techniques exist to select and materialize a proper set of data in a suitable structure that manage the queries submitted to the online analytical processing systems. These techniques are called view management techniques, which consist of three research areas: 1) view selection to materialize, 2) query processing and rewriting using the materialized views, and 3) maintaining materializ...
متن کاملDIONYSUS: Towards Query-aware Distributed Processing of RDF Graph Streams
Arguably, the most significant obstacle to handle the emerging application’s data deluge is to design a system that addresses the challenges for big data’s volume, velocity and variety. Work in RDF stream processing (RSP) systems partly addresses the challenge of variety by promoting the RDF model. However, challenges like volume, velocity are overlooked by existing approaches. These challenges...
متن کاملStrider-lsa: Massive RDF Stream Reasoning in the Cloud
Reasoning over semantically annotated data is an emerging trend in stream processing aiming to produce sound and complete answers to a set of continuous queries. It usually comes at the cost of finding a trade-off between data throughput and the cost of expressive inferences. Striderlsa proposes such a trade-off and combines a scalable RDF stream processing engine with an efficient reasoning sy...
متن کاملEfficient and Adaptable Query Workload-Aware Management for RDF Data
The Resource Description Framework (RDF) is a flexible model for representing information about resources in the web. With the increasing amount of RDF data which is becoming available, efficient and scalable management of RDF data has become a fundamental challenge to achieve the Semantic Web vision. We present a flexible and adaptable approach for achieving efficient and scalable management o...
متن کامل