在空间查询引擎中支持编译:(视觉文件)

Ruby Y. Tahboub, Tiark Rompf
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引用次数: 11

摘要

今天的“大”空间计算和分析主要是在内存中处理的。但是,突出的空间查询引擎中的求值既没有针对现代级平台进行充分优化,也没有充分利用编译(即生成低级查询代码)的优势。查询编译在内存关系数据库管理系统(rdbms)中得到了迅速的发展,并取得了显著的速度提升;我们如何为空间查询引擎带来类似的好处?在本研究中,我们引入了经过验证的编程语言(PL)方法,如部分求值、生成式编程等,并利用现代硬件的力量在空间查询引擎中扩展查询编译。我们设想了一个完全编译的空间查询引擎,它可以高效、可行地用高级语言实现。我们描述lb2 -空间;一个采用生成式多阶段编程实现查询编译的全编译空间查询引擎原型。此外,我们讨论了挑战,并进行了初步实验,以突出编译的潜在收益。最后,我们概述了在Postgres/ PostGIS中支持空间查询编译的潜在途径;传统的RDBMS和Spark/ Spark SQL;一个主存集群计算框架。
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On supporting compilation in spatial query engines: (vision paper)
Today's 'Big' spatial computing and analytics are largely processed in-memory. Still, evaluation in prominent spatial query engines is neither fully optimized for modern-class platforms nor taking full advantage of compilation (i.e., generating low-level query code). Query compilation has been rapidly rising inside in-memory relational database management systems (RDBMSs) achieving remarkable speedups; how can we bring similar benefits to spatial query engines? In this research, we bring in proven Programming Languages (PL) approaches e.g., partial evaluation, generative programming, etc. and leverage the power of modern hardware to extend query compilation inside spatial query engines. We envision a fully compiled spatial query engine that is efficient and feasible to implement in a high-level language. We describe LB2-Spatial; a prototype for a fully compiled spatial query engine that employs generative and multi-stage programming to realize query compilation. Furthermore, we discuss challenges, and conduct a preliminary experiment to highlight potential gains of compilation. Finally, we sketch potential avenues for supporting spatial query compilation in Postgres/ PostGIS; a traditional RDBMS and Spark/ Spark SQL; a main-memory cluster computing framework.
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