Intrusion Detection Systems (IDS) play a crucial role in network security
defense. However, a significant challenge for IDS in training detection models
is the shortage of adequately labeled malicious samples. To address these
issues, this paper introduces a novel semi-supervised framework
\textbf{GANGRL-LLM}, which integrates Generative Adversarial Networks (GANs)
with Large Language Models (LLMs) to enhance malicious code generation and SQL
Injection (SQLi) detection capabilities in few-sample learning scenarios.
Specifically, our framework adopts a collaborative training paradigm where: (1)
the GAN-based discriminator improves malicious pattern recognition through
adversarial learning with generated samples and limited real samples; and (2)
the LLM-based generator refines the quality of malicious code synthesis using
reward signals from the discriminator. The experimental results demonstrate
that even with a limited number of labeled samples, our training framework is
highly effective in enhancing both malicious code generation and detection
capabilities. This dual enhancement capability offers a promising solution for
developing adaptive defense systems capable of countering evolving cyber
threats.