[1]刘珊艳,胡 秀,严 武.大数据软件测试技术研究[J].湖北工业大学学报,2020,(5):55-61.
 LIU Shanyan,HU Xiu,YAN Wu.Research on Software Testing Technology of Big Data[J].,2020,(5):55-61.
点击复制

大数据软件测试技术研究()
分享到:

《湖北工业大学学报》[ISSN:1003-4684/CN:42-1752/Z]

卷:
期数:
2020年第5期
页码:
55-61
栏目:
湖北工业大学学报
出版日期:
2020-10-28

文章信息/Info

Title:
Research on Software Testing Technology of Big Data
文章编号:
1003-4684(2020)05-0055-07
作者:
刘珊艳1 胡  秀1 严  武2
1 荆楚理工学院计算机工程学院,湖北 荆门 448000;
2 荆门市优思信息服务有限公司, 湖北 荆门 448000
Author(s):
LIU Shanyan1HU Xiu1 YAN Wu2
1 Department of Computer Engin., Jingchu Univ. Sci. and Engin., Jingmen 448000,China;
2 Jingmen Yousi Information Technology co. LTD, Jingmen 448000, China
关键词:
大数据 软件测试 大数据测试 ETL测试 测试数据
Keywords:
big data software testing big data testing ETL testing test data
分类号:
TP311
文献标志码:
A
摘要:
在介绍了大数据测试的主要技术后,给出了面向大数据的测试过程,由于ETL(Extract Transform and Load抽取、转换和加载)测试是数据仓库测试中重要且复杂的阶段,给出了ETL测试的主要类型及ETL自动化测试的优势。通过对员工信息表进行数据填充测试及测试结果分析,说明ETL测试是保证数据质量有效性的重要途径。研究表明合理的搭建测试环境,应用自动化测试技术,可以提高测试效率以降低大数据测试的难度。
Abstract:
With the development of information technology, big data has become a new stage in the information age. For software testing, what should be tested, how to test and how to measure product quality for big data system are all problems that need to be solved urgently. Firstly, the paper analyzed several challenges of big data software testing, including testing basic theory, testing process, testing thinking. After introducing the main technology of big data testing, the paper analyzed the process of big data testing. Since ETL (Extract Transform and Load) testing is an important and complex stage in data warehouse testing, the main contents of ETL testing and the advantages of automated ETL testing were discussed. Through data filling test and test result analysis on employee table, it is shown that ETL test can improve the validity of data quality. The research shows that reasonable test environment construction and application of automated test technology can improve test efficiency and reduce the difficulty of big data test.

参考文献/References:

[1] 李昊, 张敏, 冯登国, 等. 大数据访问控制研究[J].计算机学报,2017,40(1):72-91.
[2] Chandrashekar A M, Bhavana S. Extending search based software testing techniques to big data applications[J].International Journal of Research and Scientific Innovation ,2017,4(6):142-146.
[3] 蔡立志,阎婷.大数据背景下软件测试的挑战与展望[J].计算机应用与软件,2014,2(31):5-8.
[4] 杜小勇,卢卫,张峰.大数据管理系统的历史、现状与未来[J].软件学报,2019,30(1):127-141.
[5] Mayer-Schnberger V, Cukier K. Big data: a revolution that will transform how we live, work, and think. Houghton Mifflin Harcourt[M].London:Houghton Mifflin Harcourt,,2015.
[6] Rajitha M, Sravanthi P. Data mining with big data[J]. International Journal of Research in Advanced Computer Science Engineering,2015,1(3):55-60.
[7] Zhang qingchen, Laurence T. Yang, Zhikui Chen,et al.A Survey on deep learning for big data[J]. Information Fusion,2018(42):146-157.
[8] Big data testing tutorial. what is, strategy, how to test Hadoop[EB/OL]. [2019-11-10]. https://www.guru99.com/big-data-testing-functional-performance.html.
[9] 程学旗,靳小龙,王元卓,郭嘉丰,张铁赢,李国杰.大数据系统和分析技术综述[J].软件学报, 2014, 25(9): 1889-1908.
[10] 代亮,陈婷,许宏科,等.大数据测试技术研究[J].计算机应用研究,2014,31(6): 1606- 1611.
[11] Krishna. ETL testing or data warehouse testing tutorial[EB/OL].[2019-11-10].https://www.guru99.com/utlimate-guide-etl-datawarehouse-testing.html.
[12] Vucevic D, Yaddow W. Testing the data warehouse practicum- assuring data content, data structures and quality, trafford[R].Trafford,2012.
[13] Tarek M Mahmoud,Sara B. Dakrory,Abdelmgeid A. Ali.Automated ETL testing on the data quality of a data warehouse[J]. International Journal of Computer Applications,2015,131(16):9-15.
[14] Saha B, Srivastava D. Data Quality:The other face of big data[C].Proceedings of IEEE International Conference on Data Engineering, 2014:1294–1297.
[15] Yu, Shui. Big Privacy: Challenges and opportunities of privacy study in the age of big data[J]. IEEE Access,2016(4): 2751-2763.
[16] 余佳,刘逸帆,葛云.加强个人信息保护促进社会和谐进步-访中国电子商务协会政策法律委员会副主任阿拉木斯[J].社会治理,2017(5):37-41.
[17] Sivarajah U, Kamal MM, Irani Z, et al. Critical analysis of big data challenges and analytical methods[J]. Journal of Business Research,2017(70): 263-286.

相似文献/References:

[1]邹贻权,宋凤蕾. 三类典型算量软件数据交换研究[J].湖北工业大学学报,2023,(1):94.
 ZOU Yiquan,SONG Fenglei. Study on Data Exchange of Three Typical Arithmetic Software[J].,2023,(5):94.

备注/Memo

备注/Memo:
[收稿日期] 2019-11-19
[基金项目] 湖北省教育厅科研项目(B2018242,B2020193);荆门市科技局科研项目(2019YFZD010,2018YDKY071)
[第一作者] 刘珊艳(1979-), 女,湖北潜江人,荆楚理工学院讲师,研究方向为软件测试技术
更新日期/Last Update: 2020-10-23