支持复杂的查询时间丰富分析

Dhrubajyoti Ghosh, Peeyush Gupta, S. Mehrotra, Shantanu Sharma
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引用次数: 1

摘要

一些应用程序域需要在使用数据之前对其进行充实。数据丰富通常使用昂贵的机器学习模型来解释低级数据(例如:G .人脸检测模型)转化为语义上有意义的观察。如果希望在数据到达时对其进行在线分析,那么在将数据加载到数据库之前离线收集和丰富数据是不可行的。在插入时动态地充实数据可能会导致冗余工作(如果应用程序只需要充实一小部分数据),并可能导致瓶颈(如果充实函数很昂贵)。任何可扩展的解决方案都需要在查询处理期间进行充实。本文探讨了将浓缩集成到查询处理中的两种不同的体系结构——一种是松耦合的方法,其中浓缩在DBMS之外执行,另一种是紧耦合的方法,其中浓缩在DBMS内执行。本文解决了由于查询时间丰富而增加的查询延迟的挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Supporting Complex Query Time Enrichment For Analytics
Several application domains require data to be enriched prior to its use. Data enrichment is often performed using expensive machine learning models to interpret low-level data ( e . g ., models for face detection) into semantically meaningful observation. Col-lecting and enriching data offline before loading it to a database is infeasible if one desires online analysis on data as it arrives. Enriching data on the fly at insertion could result in redundant work (if applications require only a fraction of the data to be enriched) and could result in a bottleneck (if enrichment functions are expensive). Any scalable solution requires enrichment during query processing. This paper explores two different architectures for integrating enrichment into query processing – a loosely coupled approach wherein enrichment is performed outside of the DBMS and a tightly coupled approach wherein it is performed within the DBMS. The paper addresses the challenges of increased query latency due to query time enrichment.
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