Hive和SQL server的数据处理:查询性能对比分析

Nadeem Ahmed, Shakil Ahamed, Jahir Ibna Rafiq, Sifatur Rahim
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引用次数: 7

摘要

数据处理是指使用应用程序对输入的原始数据进行操作,以获得所需的输出。数据处理背后的主要目标是将不可用的数据转换成可用的形式。关系数据库管理系统(RDBMS)在大多数组织中起着数据处理的主要作用。MySQL, SQL Server, Oracle, SQLite是一些著名的数据库管理系统。随着数据集的性质和规模的迅速增长,大数据技术越来越受到许多组织的青睐。大数据特别适合于传统数据处理方法无法处理的超大数据量。通常,大型组织使用大数据技术来处理大量数据。然而,本文的目标受众是小型企业(SE),其中数据库大小相对较小,并且没有分布在多个服务器上。该尝试研究考察了基于SQLite、SQL Server的传统数据仓库与基于Hadoop之上的Hive的并行数据仓库之间的查询执行时间,以便SE可以确定哪个系统在数据处理时间方面表现更好。研究发现,如果SE在不久的将来没有计划处理大量数据(即数据集适合在一台计算机上),则最好使用传统数据库系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data processing in Hive vs. SQL server: A comparative analysis in the query performance
Data processing means manipulating the input raw data using application program to get the desired output. The main target behind data processing is to convert unusable data into a usable form. Relational database management system (RDBMS) is playing main role for data processing in most of the organizations. MySQL, SQL Server, Oracle, SQLite are some of the well-known database management systems. Moving forward big data technology is becoming more admired towards many organizations as nature and size of data sets grow rapidly. Big data is particularly apt for extreme large volume where conventional data processing application is inadequate to deal. Generally, large organizations use big data technology for processing large volume of data. However, this paper targets the audience of Small Enterprises (SE) where the database size is relatively small and is not distributed over multiple servers. The attempted study examines the query execution time between traditional data warehouse, grounded on the SQLite, SQL Server and a parallel data warehouse grounded on the Hive built on the top of Hadoop so that SE can decide which system performs better in terms of the time of data processing. The study finds that it is better to use traditional database systems if SE does not have a plan in near future to work with vast amount of data i.e. the data set fits on a single computer.
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