Exploiting CoDe modeling for the optimization of OLAP queries

V. I. Pisano, M. Risi, G. Tortora
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引用次数: 2

Abstract

The visualization of big-data represents a hard challenge due to the sheer amount of information contained in data warehouses. Thus, the accuracy on data relationships in a representation becomes one of the most crucial aspects to perform business knowledge discovery. A tool that allows to model and visualize information relationships between data is CoDe, which by processing several queries on a data-mart, generates a visualization of such data. However on a large data warehouse, the computation of these queries increases the response time by the query complexity. A common approach to speed up data warehousing is precompute a set of materialized views, store in the warehouse and use them to compute the workload queries. In this paper, we define a process exploiting the CoDe modeling to determine the minimal number of required OLAP queries and to mitigate the problem of view selection, i.e., select the optimal set of materialized views. The results of an experiment on a real data warehouse show an improvement in the range of 62–98% with respect the approach that does not consider materialized views, and 5% wrt. an approach that exploits them.
利用代码建模来优化OLAP查询
由于数据仓库中包含了大量的信息,大数据的可视化是一项艰巨的挑战。因此,表示中数据关系的准确性成为执行业务知识发现的最关键方面之一。允许对数据之间的信息关系进行建模和可视化的工具是CoDe,它通过处理数据集市上的几个查询,生成这些数据的可视化。然而,在大型数据仓库中,这些查询的计算增加了查询复杂性的响应时间。加速数据仓库的一种常用方法是预先计算一组物化视图,存储在仓库中,并使用它们来计算工作负载查询。在本文中,我们定义了一个利用CoDe建模来确定所需OLAP查询的最小数量并减轻视图选择问题的过程,即选择最优的物化视图集。在真实数据仓库上的实验结果表明,与不考虑物化视图的方法相比,该方法的改进范围为62-98%,wrt为5%。一种利用它们的方法。
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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