Artificial intelligence's rapid development is changing cybersecurity, particularly in the areas of vulnerability assessment and detection. Scalability and accuracy issues plague traditional vulnerability testing techniques, which is why AI-powered solutions are starting to look like a desirable substitute. This paper examines the integration of AI algorithms into vulnerability assessment, focusing how they can improve mitigation techniques, highlight risks, and improve threat detection. We investigate how AI-driven methods can improve system vulnerability detection, lower false positives, and expedite reaction times using a realworld case study. The findings demonstrate how AI could transform risk assessment and improve the intelligence, speed, and adaptability of security solutions
Veronica Hincu (Tue,) studied this question.