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AI-Enhanced Cybersecurity Vulnerability-Based Prevention, Defense, and Mitigation using Generative AI

Osman Çaylı1
1VBT Yazılım R&D Center
Published:December 31, 2024
DOI: 10.56038/oprd.v5i1.616
Vol. 5, No. 1 · pp. 655–667

Abstract

The rapid evolution of cyberattacks, driven by increasingly sophisticated techniques and the proliferation of readily available AI tools, presents significant challenges for organizations worldwide. Traditional cybersecurity approaches often prove insufficient in addressing the speed, adaptability, and complexity of modern threats. The VULTURE project directly tackles these challenges by proposing a revolutionary AI-powered cybersecurity platform that leverages the capabilities of generative AI (GenAI) and large language models (LLMs) to enhance vulnerability prediction, automate penetration testing, improve intrusion detection, and enable advanced cyber-physical risk profiling. This paper will examine VULTURE's architecture, key technological innovations, anticipated impact, and future research directions.

The increasing sophistication and frequency of cyberattacks underscore the urgent need for innovative and adaptable cybersecurity solutions. Traditional approaches, often based on static rules and signature-based detection, struggle to keep pace with rapidly evolving threats, particularly the emergence of AI-driven attacks that can bypass conventional defenses and exploit previously unknown vulnerabilities (zero-day exploits). The shortage of skilled cybersecurity professionals further exacerbates these challenges, limiting organizations' ability to effectively respond to emerging threats.

The VULTURE project proposes a novel approach to cybersecurity leveraging the power of Large Language Models (LLMs). This paper explores the technical innovations presented in the VULTURE proposal, focusing on the application of LLMs for vulnerability prediction and automated penetration testing. We analyze the proposed methodologies and discuss their potential impact, highlighting opportunities and challenges. Further research is necessary to validate the efficacy and scalability of the proposed methods.

Keywords
Large Language Models (LLMs) in CybersecurityZero-Day Vulnerability DetectionAutomated Penetration TestingCyber-Physical Risk AssessmentGenerative AI for CybersecurityHarmonized Threat Assessment

References

  1. 1.https://attack.mitre.org/campaigns/C0024/Link
  2. 2.https://nvd.nist.gov/vuln/detail/CVE-2021-44228Link
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Cite This Article
Çaylı, O. (2024). AI-Enhanced Cybersecurity Vulnerability-Based Prevention, Defense, and Mitigation using Generative AI. *Orclever Proceedings of Research and Development*, 5(1), 655-667. https://doi.org/10.56038/oprd.v5i1.616

Bibliographic Info

JournalOrclever Proceedings of Research and Development
Volume5
Issue1
Pages655–667
PublishedDecember 31, 2024
eISSN2980-020X