Design of Communication Network Data Processing and Analysis Platform Based on Cloud Computing

Design of Communication Network Data Processing and Analysis Platform Based on Cloud Computing

Authors

  • Tao Yan Shandong Yellow River Conservancy Bureau East Asia Lake Management Bureau Shandong Tai'an 271000
  • Fengbo Tao Shandong Yellow River Conservancy Bureau East Asia Lake Management Bureau Shandong Tai'an 271000

DOI:

https://doi.org/10.53469/ijomsr.2025.08(08).07

Keywords:

Cloud computing, Communication network, Data processing and analysis platform, Design

Abstract

With the rapid development of information technology, communication network data is growing explosively. How to efficiently process and analyze this data has become a major challenge facing the industry. This article aims to explore the design of a cloud computing based communication network data processing and analysis platform. By integrating the elastic scalability, on-demand payment, and resource sharing characteristics of cloud computing, an efficient, secure, and reliable data processing and analysis platform is constructed. The article first outlines the basic concepts and interrelationships between cloud computing and big data, and then elaborates in detail on the theoretical basis of platform design, requirement analysis, architecture design, key technology implementation, and information security assurance.

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Published

2025-08-31

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