AI-Governed Security Frameworks for Virtualized Enterprises: Preventing Data Breaches and Ensuring Compliance

Lisa Mmesoma Udechukwu *

University of Southern California, 3551 Trousdale Pkwy, Los Angeles, CA 90089, USA.

*Author to whom correspondence should be addressed.


Abstract

This study investigates the role of artificial intelligence AI–governed security frameworks in addressing cybersecurity risks, preventing data breaches, and ensuring regulatory compliance in virtualized enterprises. Virtualization technologies have enhanced scalability and efficiency but also introduced complex vulnerabilities such as misconfigurations, insider threats, and compliance gaps that traditional perimeter-based security models cannot adequately address. The objectives of this research are to identify the dominant sources of risk in virtualized environments, evaluate the performance of AI-driven detection models against traditional methods, and examine the capacity of AI systems to automate compliance with sectoral and international regulations. The analysis, conducted using multiple open-source datasets, revealed that misconfigurations, particularly unencrypted storage, overly permissive identity and access management (IAM) roles, and open ports collectively accounted for more than 70 percent of recurring vulnerabilities. A supervised Random Forest model demonstrated superior performance in detecting malicious network activity, achieving an accuracy of 96.4 percent and significantly outperforming a rule-based baseline (p < 0.001). Compliance mapping indicated that frameworks such as HIPAA and GDPR achieved 80 percent coverage of high-severity vulnerabilities, though remediation times varied considerably, reflecting inefficiencies in operational response. The findings underscore that while AI substantially enhances detection accuracy and strengthens compliance oversight, unresolved challenges remain, including inconsistent remediation speed, dataset bias, and risks of privilege escalation. To address these gaps, the study recommends hybrid AI–human oversight protocols, standardized remediation workflows, pre-deployment bias audits, and sector-specific benchmarks. These contributions provide actionable insights for advancing secure, efficient, and trustworthy governance of virtualized enterprise systems.

Keywords: AI-governed security, virtualized enterprises, misconfigurations, compliance automation, random forest detection


How to Cite

Udechukwu, Lisa Mmesoma. 2025. “AI-Governed Security Frameworks for Virtualized Enterprises: Preventing Data Breaches and Ensuring Compliance”. Asian Journal of Research in Computer Science 18 (9):39-57. https://doi.org/10.9734/ajrcos/2025/v18i9753.

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