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引用次数: 17

摘要

阵列是对大数据贡献最大的数据类型之一,例如地球科学中的卫星图像和天气模拟输出,生命科学中的共聚焦显微镜和CAT扫描,以及空间科学中的望远镜和宇宙学观测,仅举几例。传统上,数据库社区忽略了这一点,其结果是临时实现占上风。然而,随着近年来NewSQL的出现,数据库范围得到了扩展,数组建模和查询支持得到了认真的考虑。已经提出了不同的模型,其中一些已经实施或正在实施,并且可以观察到概念的巩固。因此,正在解决将数组查询集成到SQL中的问题。我们提出了一个通用模型ASQL来填补这一空白,ASQL用于在ISO SQL中建模和查询多维数组。该模型集成了目前所见的三种主要数组模型的概念:rasdaman、SciQL和SciDB。它是声明性的、可优化的、最小的,但对于科学、工程等领域的应用程序来说却足够强大。ASQL已经实现,目前正在ISO中讨论扩展标准SQL。
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Extending the SQL array concept to support scientific analytics
Arrays are among those data types which contribute the most to Big Data -- examples include satellite images and weather simulation output in the Earth sciences, confocal microscopy and CAT scans in the Life sciences, as well as telescope and cosmological observations in Space science, to name but a few. Traditionally, the database community has neglected this, with the effect that ad-hoc implementations prevail. With the advent of NewSQL in recent years, however, the database scope has broadened, and array modelling and query support is seriously considered. Different models have been suggested, some of which are implemented or under implementation, and a consolidation of concepts can be observed. Consequently, integration of array queries into SQL is being addressed. We fill this gap by proposing a generic model, ASQL, for modelling and querying multi-dimensional arrays in ISO SQL. The model integrates concepts from the three major array models seen today: rasdaman, SciQL, and SciDB. It is declarative, optimizable, minimal, yet powerful enough for application domains in science, engineering, and beyond. ASQL has been implemented and is currently being discussed in ISO for extending standard SQL.
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