Query Optimization Using Case-Based Reasoning in Ubiquitous Environments

L. Martínez-Medina, Christophe Bibineau, J. Zechinelli-Martini
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引用次数: 3

Abstract

Query optimization is a widely studied problem, a variety of query optimization techniques have been suggested. These approaches are presented in the framework of classical query evaluation procedures that rely upon cost models heavily dependent on metadata (e.g. statistics and cardinality estimates) and that typically are restricted to execution time estimation. There are computational environments where metadata acquisition and support is very expensive. Additionally, execution time is not the only optimization objective of interest. A ubiquitous computing environment is an appropriate example where classical query optimization techniques are not useful any more. In order to solve this problem, this article presents a query optimization technique based on learning, particularly on case-based reasoning. Given a query, the knowledge acquired from previous experiences is exploited in order to propose reasonable solutions. It is possible to learn from each new experience in order to suggest better solutions to solve future queries.
泛在环境中基于案例推理的查询优化
查询优化是一个被广泛研究的问题,各种查询优化技术已经被提出。这些方法是在经典查询评估过程的框架中提出的,这些过程依赖于严重依赖元数据的成本模型(例如统计数据和基数估计),并且通常仅限于执行时间估计。在某些计算环境中,元数据的获取和支持非常昂贵。此外,执行时间并不是唯一感兴趣的优化目标。泛在计算环境就是一个合适的例子,在这个环境中,经典的查询优化技术不再有用。为了解决这一问题,本文提出了一种基于学习,特别是基于案例推理的查询优化技术。给定一个查询,利用从以前的经验中获得的知识来提出合理的解决方案。有可能从每一次新的经验中学习,以便为解决未来的查询提供更好的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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