ARTIFICIAL INTELLIGENCE AS A TOOL FOR ENSURING CYBERSECURITY IN THE DIGITAL AGE
DOI:
https://doi.org/10.5281/zenodo.19328447Keywords:
Artificial Intelligence, Cybersecurity, Machine Learning, Anomaly Detection, Threat Intelligence, Adversarial AI, Digital Security.Abstract
The rapid evolution of cyber threats in the digital age has necessitated the integration of artificial intelligence (AI) into modern cybersecurity frameworks. This article examines the role of AI and machine learning technologies in detecting, preventing, and responding to cyberattacks. Key topics include anomaly detection systems, AI-driven threat intelligence, adversarial machine learning, and the ethical implications of automated security systems. The article also explores existing challenges and proposes directions for future research. The findings confirm that AI-enhanced cybersecurity solutions significantly improve the speed, accuracy, and scalability of threat detection compared to traditional methods.
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