A multi-agent framework that integrates static analysis and dynamic fuzzing to generate secure and functionally correct code by leveraging large language models.
Large language models can be enhanced to generate more secure code by automatically synthesizing pairs of vulnerable and fixed code samples, and fine-tuning the models using this data.