Welcome to Francis Academic Press

International Journal of New Developments in Engineering and Society, 2020, 4(1); doi: 10.25236/IJNDES.040114.

Computer Data Processing Model in Big Data Era


Beibei Sun

Corresponding Author:
Beibei Sun

Zibo Vocational Institute, Zibo Shandong 255000, China


Traditional computer data processing mode cannot operate efficiently, and is inefficient in processing computer data in big data era. Therefore, the research on computer data processing model in big data era is carried out. This paper plans the overall architecture of computer data processing mode. On the basis of the overall architecture, big data processing mode is divided into three modes: offline batch data processing, query data processing and real-time data processing. Detailed design the core functions of the three modes, implement computer data processing in big data environment, complete the design of computer data processing mode in big data era. The experiment data proved its efficiency, the designed computer data processing mode in big data era is more efficient than the traditional data processing mode, The processing efficiency of this mode increased by 45%.


Big data era, Computers, Data processing, Processing mode

Cite This Paper

Beibei Sun. Computer Data Processing Model in Big Data Era. International Journal of New Developments in Engineering and Society (2020) Vol.4, Issue 1: 101-110. https://doi.org/10.25236/IJNDES.040114.


[1] CHEN Wen, PU Qingping, ZOU Fangming (2017). Transformation and coping strategies of university students' educational management mode in the era of big data. Jiangsu Higher Education, vol.19, no.1, pp.67-69.
[2] SUN Rui (2017). Virtual Computer Data Storage Space Stability Optimization Simulation. Computer Simulation, vol.234, no.9, pp.345-348.
[3] SONG Jie, SUN Zongzhe, MAO Keming (2017). Research Advance on MapReduce Based Big Data Processing Platforms and Algorithms. Journal of Software, vol.28, no.3, pp.514-543.
[4] WEI Wei, JIANG Dejun, XIONG Jin (2017). Study of the performance of in-memory key-value stores with non-volatile memory. Chinese High Technology Letters, vol.27, no.6, pp.519-529.
[5] QIN Yi, YANG Yun, MIN Yujuan (2018). IPv6 phased routing lookup algorithm combining hash table and multi bit Trie. Minicomputer system, vol.39, no.5, pp.66-71.
[6] GAO Guangjun, SUN Lingjie, LI Zili (2017). Research on Storage and Updating Mechanism of Real Estate Cadastral Database Based On “Multi-standard and Multi-source” Data. Modern Surveying and Mapping, vol.40, no.2, pp.10-12.
[7] KANG Yanli, LI Feng, WANG Lei (2017). Incremental Optimization Method for Periodic Query in Data Warehouse. Journal of Software, vol.28. no.8, pp.2126-2147.
[8] LIANG Yuxuan, QI Xin, HAN Junnan (2017). Research on pre stack depth migration parallel scheduling strategy in virtual computing environment. Journal of Shengli College China University of Petroleum, vol.31, no.2, pp.42-44.
[9] WU Haiqin, WANG Liangmin (2017). Research on optimal support tree for Top-k query in wireless sensor networks based on connected dominating set. Chinese Journal of Electronics, vol.45, no.1, pp.119-127.
[10] ZHOU Biao, LI Qiao, ZHOU Xiaohang (2017). A data processing method for bridge modal parameter identification based on Exploratory Data Analysis. Sichuan Building Science, vol.43, no.2, pp.33-37.