使用线性代数操作改进图数据库查询的性能

Bruno Amaral, Juan Manuel Tirado Martin, Lorena Etcheverry, P. Ezzatti
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引用次数: 0

摘要

图数据库在不同领域的应用正在蓬勃发展。资源描述框架(RDF)是图数据库支持的数据模型之一,SPARQL是RDF图的标准查询语言。这些数据库也被称为RDF三元库。许多三重存储都是在关系数据模型上实现的,它们使用表来存储图形,并将SPARQL查询转换为SQL查询,这种方法可能会导致不必要的开销。另一方面,在高性能计算(HPC)的背景下,在混合硬件平台上使用数值线性代数(NLA)运算的实现在过去十年中已经成为一种有效和高效的计算策略。特别是,图形处理单元(gpu)由于其高性能、合理的价格以及计算能力和能耗之间的良好关系而被用于执行通用计算。在上面描述的上下文中,本文对一组SPARQL查询在NLA操作方面的有效实现进行了初步研究。此外,我们还评估了在gpu上实现这些操作的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving the performance of graph database queries using linear algebra operations
The application of graph databases to different domains is gaining momentum. The Resource Description Framework (RDF) is one of the data models supported by graph databases, and SPARQL is the standard query language for RDF graphs. These databases are also known as RDF triplestores. Many triplestores are implemented over the relational data model, using tables to store graphs and translating SPARQL queries into SQL queries, and this approach can lead to unnecessary overheads. On the other hand, in the context of High- Performance Computing (HPC), implementations over hybrid hardware platforms using Numerical Linear Algebra (NLA) operations have become an effective and efficient computing strategy in the last decade. In particular, Graphics Processing Units (GPUs) have been adopted to perform general-purpose computations due to their high performance, reasonable prices, and an attractive relationship between computing capacity and energy consumption. In the context described above, this paper presents an initial study on the efficient implementation of a set of SPARQL queries in terms of NLA operations. Additionally, we evaluate the performance of implementing these operations on GPUs.
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