Study and Performance Analysis of Different Techniques for Computing Data Cubes

Aiasha Siddika
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引用次数: 1

Abstract

Data is an integrated form of observable and recordable facts in operational or transactional systems in the data warehouse. Usually, data warehouse stores aggregated and historical data in multi-dimensional schemas. Data only have value to end-users when it is formulated and represented as information. And Information is a composed collection of facts for decision making. Cube computation is the most efficient way for answering this decision making queries and retrieve information from data. Online Analytical Process (OLAP) used in this purpose of the cube computation. There are two types of OLAP: Relational Online Analytical Processing (ROLAP) and Multidimensional Online Analytical Processing (MOLAP).This research worked on ROLAP and MOLAP and then compare both methods to find out the computation times by the data volume. Generally, a large data warehouse produces an extensive output, and it takes a larger space with a huge amount of empty data cells. To solve this problem, data compression is inevitable. Therefore, Compressed Row Storage (CRS) is applied to reduce empty cell overhead.
不同数据立方体计算技术的研究与性能分析
数据是数据仓库中操作系统或事务系统中可观察和可记录事实的集成形式。通常,数据仓库以多维模式存储聚合数据和历史数据。数据只有在以信息形式表述和表示时才对最终用户有价值。信息是用于决策的事实的集合。多维数据集计算是回答这一决策的最有效方法,即查询和从数据中检索信息。联机分析过程(OLAP)用于此目的的多维数据集计算。OLAP有两种类型:关系型在线分析处理(ROLAP)和多维在线分析处理(MOLAP)。本研究以ROLAP和MOLAP为例,比较两种方法的数据量计算次数。通常,大型数据仓库会产生大量的输出,并且会占用更大的空间,其中包含大量的空数据单元。为了解决这个问题,数据压缩是不可避免的。因此,压缩行存储(CRS)被应用于减少空单元格开销。
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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