2025: Crisis Management Days Conference Proceedings
Communication and Innovative Technologies for Crisis Management

The Role of AI in Information and Cyber Security Management

Silvana Tomić Rotim
Zavod za informatičku djelatnost Hrvatske

Published 2025-12-17

Keywords

  • Artificial Intelligence,
  • Information Security,
  • Cybersecurity,
  • Machine Learning,
  • Threat Detection

How to Cite

Tomić Rotim, S., & Kutnjak, J. (2025). The Role of AI in Information and Cyber Security Management. Crisis Management Days. Retrieved from https://ojs.vvg.hr/index.php/DKU/article/view/754

Abstract

This paper explores the transformative role of Artificial Intelligence (AI) in information and cybersecurity management, offering a comprehensive review of current research, practical applications, and future perspectives. By analyzing recent literature and evaluating real-world case studies across sectors such as finance, telecommunications, and healthcare, the study highlights the advantages of AI in threat detection, risk assessment, fraud prevention, and compliance with security standards like ISO/IEC 27001 and the NIS 2 Directive. The research emphasizes the efficiency of AI-driven systems in identifying sophisticated cyber threats, automating responses, and improving the effectiveness of security frameworks. An iterative five-phase implementation model is also presented, along with comparative performance results of AI algorithms, demonstrating their practical value. The findings underscore AI’s growing impact and provide valuable insights for organizations aiming to enhance their cybersecurity posture through intelligent and adaptive technologies.

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