The Impact of Artificial Intelligence on Cybersecurity: A Review of the Current State and Future Directions

Yanjuk Won, Shen Zanjuk

Abstract


The increasing adoption of artificial intelligence (AI) in various industries has led to a growing concern about its potential impact on cybersecurity. This paper provides a comprehensive review of the current state of AI in cybersecurity, including its benefits and challenges. We discuss the ways in which AI can be used to improve cybersecurity, such as anomaly detection, intrusion prevention, and incident response. However, we also highlight the potential risks associated with the use of AI in cybersecurity, including the possibility of AI-powered attacks and the need for robust and adaptable security measures. Finally, we outline future directions for research and development in this field, including the integration of human-AI collaboration and the development of more sophisticated AI models for cybersecurity.

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