Analysis of the Transformation and Response of Archives Management of Science and Technology Projects Based on Big Data

Analysis of the Transformation and Response of Archives Management of Science and Technology Projects Based on Big Data

Authors

  • Ya Sun China Media Group, Beijing, 100020

DOI:

https://doi.org/10.53469/ijomsr.2025.08(09).01

Keywords:

Big data, Archives management, Informatization

Abstract

In contemporary society, big data technology is profoundly transforming archival information management, driving it toward intelligent development. Supported by cloud computing, big data has become a defining theme of our era, revolutionizing traditional archival management methods, diversifying the content and forms of management, and enhancing efficiency and convenience. This evolution holds significant practical value for advancing current archival practices. This paper analyzes the characteristics of the big data environment, outlines the challenges faced by archival management in this new era, and proposes practical strategies from multiple perspectives to inform and inspire further innovation.

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Published

2025-09-24

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