转换表的高效可伸缩SPARQL查询处理

S. Huang, Chia-ho Yu, C. Shieh, Ming-Fong Tsai
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引用次数: 1

摘要

资源描述框架(RDF)是语义网的核心技术,近年来得到了越来越广泛的应用。随着RDF数据的快速增长,作为查询引擎和RDF数据存储的Triple Store需要更多的可伸缩和高效的技术。为了提高三重查询(即SPARQL查询处理)的可扩展性和性能,Map Reduce编程模型和H Base等NoSQL数据库系统是众所周知的大规模数据处理解决方案。但是,在一般情况下,三元组的主题被视为表中的Row Key。在某些查询中,查找匹配的三重模式是一项耗时的工作。因此,我们设计了另一个具有不同存储模式的表,称为transforms table,以减少读取操作的时间成本。实验结果表明,使用转换表可以显著提高三元查询的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient and Scalable SPARQL Query Processing with Transformed Table
Resource Description Framework (RDF) is the core technology of Semantic Web and has been more and more popular in recent years. With the rapid growth of the RDF data, the Triple Store, which is the query engine and RDF data storage, requires more scalable and efficient technologies. To improve the scalability and the performance of triple query, which is called SPARQL query processing, Map Reduce programming model and NoSQL database system such as H Base are well-known solutions for large scale data processing. However, in general case, the subject of a triple is regarded as Row Key in the table. In some queries, finding matched triple patterns is a time-consuming job. Therefore, we design another table with different storage schema called Transformed Table to reduce the time cost for read operation. The experimental results show that using Transformed Table can improve the triple query performance significantly.
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