Leveraging Static Analysis for Feedback-Driven Security Patching in LLM-Generated Code

Zapisane w:
Opis bibliograficzny
Wydane w:Journal of Cybersecurity and Privacy vol. 5, no. 4 (2025), p. 110-139
1. autor: Kamel, Alrashedy
Kolejni autorzy: Aljasser Abdullah, Tambwekar Pradyumna, Gombolay Matthew
Wydane:
MDPI AG
Hasła przedmiotowe:
Dostęp online:Citation/Abstract
Full Text + Graphics
Full Text - PDF
Etykiety: Dodaj etykietę
Nie ma etykietki, Dołącz pierwszą etykiete!
Opis
Streszczenie:Large language models (LLMs) have shown remarkable potential for automatic code generation. Yet, these models share a weakness with their human counterparts: inadvertently generating code with security vulnerabilities that could allow unauthorized attackers to access sensitive data or systems. In this work, we propose Feedback-Driven Security Patching (FDSP), wherein LLMs automatically refine vulnerable generated code. The key to our approach is a unique framework that leverages automatic static code analysis to enable the LLM to create and implement potential solutions to code vulnerabilities. Further, we curate a novel benchmark, PythonSecurityEval, that can accelerate progress in the field of code generation by covering diverse, real-world applications, including databases, websites, and operating systems. Our proposed FDSP approach achieves the strongest improvements, reducing vulnerabilities by up to 33% when evaluated with Bandit and 12% with CodeQL and outperforming baseline refinement methods.
ISSN:2624-800X
DOI:10.3390/jcp5040110
Źródło:ABI/INFORM Global