Artificial intelligence has fundamentally transformed the cybersecurity landscape, introducing both unprecedented defensive capabilities and novel attack vectors. Organizations now leverage machine learning algorithms, neural networks, and automated response systems to detect and neutralize threats at speeds impossible for human analysts. However, this technological evolution has simultaneously empowered adversaries with sophisticated tools for launching adaptive attacks, evading detection systems, and exploiting vulnerabilities at scale. Key opportunities include real-time threat detection, predictive analytics, automated incident response, and behavioral anomaly identification. Conversely, emerging threats encompass adversarial machine learning, AI-powered social engineering, automated vulnerability exploitation, and algorithmic bias in security systems. This article examines the dual nature of AI in cybersecurity, analyzing how organizations can maximize defensive benefits while mitigating risks associated with AI-enabled attacks. A balanced approach combining human expertise with machine intelligence, continuous model validation, and ethical AI governance frameworks proves essential for maintaining security in an increasingly automated threat landscape.
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Omowunmi Folashayo Makinde
GSC Advanced Research and Reviews
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Omowunmi Folashayo Makinde (Sun,) studied this question.
www.synapsesocial.com/papers/68ff87d8c8c50a61f2bdcad7 — DOI: https://doi.org/10.30574/gscarr.2025.25.1.0320