Cloud-Driven Security Optimization, Threat Detection, and Service Architecture Design in Telecom Networks

Main Article Content

Jianting Wang
Min Zhao

Abstract

This research article explores the integration of cloud-driven methodologies for optimizing security, detecting threats, and designing service architectures within telecom networks. The study begins by outlining the challenges inherent in modern telecom infrastructures, including the increasing complexity of threat landscapes and the demand for scalable, adaptive security solutions. A comprehensive methodology is proposed, leveraging cloud-based tools and frameworks to enhance threat detection accuracy and optimize resource allocation. Results demonstrate significant improvements in detection rates and system efficiency, supported by quantitative metrics and conceptual models. The discussion contextualizes these findings within the broader industry landscape, emphasizing the implications for future telecom network design. The paper concludes by summarizing key contributions and identifying potential avenues for further research.

Article Details

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Articles

How to Cite

Cloud-Driven Security Optimization, Threat Detection, and Service Architecture Design in Telecom Networks. (2026). Hua Xia Xin Zhi, 2(1), 121-132. https://journals.hubblepress.com/index.php/HXXZ/article/view/33

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