AI-Driven Computer Network Technologies: Applications and Research Perspectives

Authors

  • Saveen Souda Taibah University, Computer Science, AL Madinah, Saudi Arabia

Keywords:

Artificial intelligence, Computer network technology, Application

Abstract

With the advent of the information age, computer network technology has become an essential component of daily life and industrial production. Consequently, improving network service quality has emerged as a critical research priority within the field of computer network technology in the contemporary era. As an advanced analytical and computational paradigm, the application of artificial intelligence in computer network technology offers considerable value and plays a significant role in driving innovation and progress within the discipline. This paper provides a comprehensive discussion and systematic investigation of the application of artificial intelligence in computer network technology, aiming to serve as a valuable reference for practitioners and researchers in related fields.

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Published

2026-04-10

How to Cite

Souda, S. (2026). AI-Driven Computer Network Technologies: Applications and Research Perspectives. Journal of Artificial Intelligence and Information, 3, 22–28. Retrieved from https://www.woodyinterpub.com/index.php/jaii/article/view/322