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Data Processing System Based on Computer Software Engineering Technology

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DOI: 10.23977/jeis.2025.100203 | Downloads: 10 | Views: 199

Author(s)

Jiashan Zhao 1, Li Chen 1

Affiliation(s)

1 Digital Campus Construction Center, Chang'an University, Xi'an, Shaanxi Province, China

Corresponding Author

Jiashan Zhao

ABSTRACT

Under the background of big data, the data processing system based on computer software engineering technology can provide effective support for big data processing. This paper analyzed the data processing system based on computer software engineering technology, and put forward relevant suggestions, hoping to promote the better development of big data work in China. At the same time, people also put forward higher requirements for society, environment, life and other aspects. In this context, big data work has also been widely used. In the context of the continuous maturity, popularization and development of Internet technology, big data has become a very important and irreplaceable factor of production in all fields of society. A series of benefits and impacts generated by big data application are also very significant. The analysis and research on big data application in big data platform have greatly promoted the interconnection and exchange between various fields of society. Therefore, this paper studied the data processing system based on computer software engineering technology, and used wavelet threshold filtering algorithm to optimize processing. The research results showed that the data processing system based on computer software engineering technology could complete data processing and write into the database in about 30s under the same other conditions. The conventional system needed about 40s, which indicated that the relationship between computer software engineering technology and data processing system was positive.

KEYWORDS

Data Processing System; Computer Technology; Software Engineering; System Test

CITE THIS PAPER

Jiashan Zhao, Li Chen, Data Processing System Based on Computer Software Engineering Technology. Journal of Electronics and Information Science (2025) Vol. 10: 22-34. DOI: http://dx.doi.org/10.23977/10.23977/jeis.2025.100203.

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