SPARQL的可伸缩多查询优化

Wangchao Le, Anastasios Kementsietsidis, S. Duan, Feifei Li
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引用次数: 120

摘要

本文回顾了RDF/SPARQL环境下的经典多查询优化问题。我们表明,为关系和半结构化数据/查询语言开发的技术很难(如果不是不可能的话)进行扩展,以解释用SPARQL表示的RDF数据模型和图查询模式。鉴于SPARQL的多查询优化的np -硬度,我们提出了启发式算法,将查询的输入批划分为组,以便每组查询可以一起优化。优化的一个重要组成部分包括一个有效的算法来发现多个SPARQL查询的公共子结构,以及一个有效的成本模型来比较候选执行计划。由于我们的优化技术没有对底层SPARQL查询引擎做任何假设,因此它们具有跨不同RDF存储可移植的优势。在三种流行的RDF存储上进行的大量实验研究表明,所提出的技术是有效的、高效的和可扩展的。
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Scalable Multi-query Optimization for SPARQL
This paper revisits the classical problem of multi-query optimization in the context of RDF/SPARQL. We show that the techniques developed for relational and semi-structured data/query languages are hard, if not impossible, to be extended to account for RDF data model and graph query patterns expressed in SPARQL. In light of the NP-hardness of the multi-query optimization for SPARQL, we propose heuristic algorithms that partition the input batch of queries into groups such that each group of queries can be optimized together. An essential component of the optimization incorporates an efficient algorithm to discover the common sub-structures of multiple SPARQL queries and an effective cost model to compare candidate execution plans. Since our optimization techniques do not make any assumption about the underlying SPARQL query engine, they have the advantage of being portable across different RDF stores. The extensive experimental studies, performed on three popular RDF stores, show that the proposed techniques are effective, efficient and scalable.
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