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Map-Side Join Processing of SPARQL Queries Based on Abstract RDF Data Filtering

机译:基于抽象RDF数据过滤的SPARQL查询的Map-Side加入处理

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摘要

The amount of RDF data being published on the Web is increasing at a massive rate. MapReduce-based distributed frameworks have become the general trend in processing SPARQL queries against RDF data. Currently, query processing systems that use MapReduce have not been able to keep up with the increase of semantic annotated data, resulting in non-interactive SPARQL query processing. The principal reason is that intermediate query results from join operations in a MapReduce framework are so massive that they consume all available network bandwidth. In this article, the authors present an efficient SPARQL processing system that uses MapReduce and HBase. The system runs a job optimized query plan using their proposed abstract RDF data to decrease the number of jobs and also decrease the amount of input data. The authors also present an efficient algorithm of using Map-side joins while also using the abstract RDF data to filter out unneeded RDF data. Experimental results show that the proposed approach demonstrates better performance when processing queries with a large amount of input data than those found in previous works.
机译:在Web上发布的RDF数据的量以大量速度增加。基于MapReduce的分布式框架已成为处理对RDF数据的SPARQL查询的一般趋势。目前,使用MapReduce的查询处理系统尚未能够跟上语义注释数据的增加,从而导致非交互式SPARQL查询处理。主要原因是MapReduce框架中加入操作的中间查询结果是如此大量的,它们消耗了所有可用的网络带宽。在本文中,作者呈现了一种使用MapReduce和HBase的有效的SPARQL处理系统。系统使用所提出的抽象RDF数据运行作业优化的查询计划,以减少作业的数量,并且还减少输入数据量。作者还呈现了使用映射侧连接的有效算法,同时还使用抽象的RDF数据来过滤掉不需要的RDF数据。实验结果表明,该方法在处理具有大量输入数据的查询时表现出比在以前的作品中的那些的查询。

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