MonetDB/XQuery: a fast XQuery processor powered by a relational engine

P. Boncz, Torsten Grust, M. V. Keulen, S. Manegold, J. Rittinger, J. Teubner
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引用次数: 355

Abstract

Relational XQuery systems try to re-use mature relational data management infrastructures to create fast and scalable XML database technology. This paper describes the main features, key contributions, and lessons learned while implementing such a system. Its architecture consists of (i) a range-based encoding of XML documents into relational tables, (ii) a compilation technique that translates XQuery into a basic relational algebra, (iii) a restricted (order) property-aware peephole relational query optimization strategy, and (iv) a mapping from XML update statements into relational updates. Thus, this system implements all essential XML database functionalities (rather than a single feature) such that we can learn from the full consequences of our architectural decisions. While implementing this system, we had to extend the state-of-the-art with a number of new technical contributions, such as loop-lifted staircase join and efficient relational query evaluation strategies for XQuery theta-joins with existential semantics. These contributions as well as the architectural lessons learned are also deemed valuable for other relational back-end engines. The performance and scalability of the resulting system is evaluated on the XMark benchmark up to data sizes of 11GB. The performance section also provides an extensive benchmark comparison of all major XMark results published previously, which confirm that the goal of purely relational XQuery processing, namely speed and scalability, was met.
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MonetDB/XQuery:一个由关系引擎驱动的快速XQuery处理器
关系XQuery系统尝试重用成熟的关系数据管理基础设施来创建快速且可扩展的XML数据库技术。本文描述了实现这样一个系统的主要特性、关键贡献和经验教训。它的体系结构包括(i)将XML文档编码为关系表的基于范围的编码,(ii)将XQuery转换为基本关系代数的编译技术,(iii)限制(顺序)属性感知的窥视孔关系查询优化策略,以及(iv)从XML更新语句到关系更新的映射。因此,该系统实现了所有基本的XML数据库功能(而不是单个特性),这样我们就可以从架构决策的全部结果中学习。在实现这个系统的过程中,我们必须通过一些新的技术贡献来扩展现有技术,比如循环提升的楼梯连接,以及针对带有存在语义的XQuery theta-join的高效关系查询求值策略。这些贡献以及从中学到的体系结构经验对于其他关系后端引擎也被认为是有价值的。最终系统的性能和可伸缩性在XMark基准测试上进行评估,直至数据大小为11GB。性能部分还对以前发布的所有主要XMark结果进行了广泛的基准比较,这些结果证实了纯关系XQuery处理的目标(即速度和可伸缩性)得到了满足。
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