Traditional red teaming and vulnerability assessment methodologies often struggle to keep pace with the dynamic and rapidly evolving nature of modern cyber threats. This paper proposes a novel framework for Agentic Generative Red Teaming, which utilizes LangGraph as the core orchestration engine to automate complex, multi-stage attack chains. Unlike traditional static scripts or linear chains, the proposed system employs a stateful, directed cyclic graph (DCG) architecture. This allows a multi-agent swarm comprising specialized LLM-powered agents for reconnaissance, payload generation, and lateral movement to maintain a persistent state and adaptively pivot based on real-time environment feedback. By modeling the penetration testing lifecycle through LangGraph’s state-management capabilities, the framework ensures rigorous style consistency and autonomous decision-making. Our implementation demonstrates that this agentic approach significantly enhances the efficiency of identifying critical vulnerabilities by simulating sophisticated, non-linear adversary behaviors in real-time.
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S et al. (Sun,) studied this question.
www.synapsesocial.com/papers/69ddda22e195c95cdefd798b — DOI: https://doi.org/10.5281/zenodo.19532779
Gnanesh V S
Ramya Bharathi V
Sri ram M
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