Analysis of Data Mode in the Information Construction

Article Preview

Abstract:

This article firstly introduces the commonly used data modes in the information construction, and then analyzes and contrasts data centralization mode and data distribution mode from the aspects of the cost of system construction, upgrade and maintenance, reliability, utilization effect and data standardization according to the characteristics of the two modes. The authors also put forward their own views and finally point out that cloud database will be the future direction of development.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

3369-3372

Citation:

Online since:

May 2014

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2014 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

* - Corresponding Author

[1] Liu Yan. Thinking of Data Concentration Realization in the Tax Information Construction [J]. Modern Economic Information, 2009(4): 97-98.

Google Scholar

[2] Zhou Minglei. Brief introduction of electric power marketing system based on Provincial Data Concentration [J]. Electric Power Information Technology,2008 (S1): 40-43.

Google Scholar

[3] Huang Jian. Discussion on the Maintenance and Management of the Power Grid Enterprise Information System in the Data Centralization Mode [J]. Electronic Technology & Software Engineering,2013,16:235-236.

Google Scholar

[4] Li Yin, Li Jianfeng. the pros and cons of data concentration of Zhejiang rural credit system [J]. Financial Technology Time, 2011(6): 60-61.

Google Scholar

[5] Rural Finance Research Group of Nantong City, Problems and Countermeasures of Bank Management System After Data Concentration, Jiangsu Province, China Finance, 2007. 12.

Google Scholar

[6] Peng Xinyong, With the Goal of Intensity and Cost Saving - the Concentration, Development Idea of Guangxi E-Government, Information System Engineering, 2008. 9.

Google Scholar

[7] Chen Yonghua, Cloud Storage of Billing Data: Key Point of Carrying out Data Centralization,. Communication World Weekly, 2011. 6.

Google Scholar

[8] YAO Zong-guo1, LI Jin-ping. Design and Implementation of Two- Level Distributed Data Center [J]. Journal of University of Jinan (Science and Technology), 2008(4): 384-387.

Google Scholar

[9] Gao Fei, Ruan Hongli . Study and Design of Distributed Data Integration System. Land and Resources Informatization, 2009(5): 33-36.

Google Scholar

[10] DING Kai. A Brief Study of the Application of Distributed Database in GIS [J]. GEOMATICS & SPATIAL INFORMATION TECHNOLOGY, 2012(3): 76-77, 82.

Google Scholar

[11] Liu yanyan. Marine Environmental Data Storage Optimization and Distr1buted Management Based on the Database Cluster Technology [D]. Qingdao ocean ,university of China, (2008).

Google Scholar

[12] Shen Chunhui . The Study and Implementation of Massive Data Storage and Organization in the Digital Library [D]. Hangzhou, zhejiang university,(2011).

Google Scholar

[13] LI Na. Design of IOT Database Based on Distributed Processing Technology [J]. Modern Electronics Technique, 2012(4): 120-122.

Google Scholar

[14] Qi Hongyi. The Advantages and Disadvantages of the Distribution and Centralization Database Structures and the Corresponding Solutions [J]. Computer Era, 2002(9): 17-19.

Google Scholar

[15] Chang Xiaoming. The Idea of Safety Management of the Service System After Data Centralization [J]. Heilongjiang Finance, 2007(12): 39-40.

Google Scholar

[16] Jin Yiqing. the contradiction between data centralization of the Central bank and the utilization of regional data [J]. Financial Computer of Huanan, 2010(9):52-54.

Google Scholar

[17] Gao Zhenqing. Research of data replication in distributed database [J]. Journal of Yan'an Vocational & Technical Institute, 2013(5): 100-101, 116.

Google Scholar

[18] LIN Zi-Yu, LAI Yong-Xuan, LIN Chen, XIE Yi, ZOU Quan. Research on Cloud Databases[J]. Journal of software,2012. 5: 1148-1166.

DOI: 10.3724/sp.j.1001.2012.04195

Google Scholar