The traditional paradigm of Penetration Testing (PenTest) is currently facing an efficacy crisis due to the exponential growth of polymorphic threats and the static nature of centralized computing environments. This research presents a novel, decentralized, and handheld framework that synthesizes the execution flexibility of Python, the cognitive reasoning capabilities of Generative AI (specifically Large Language Models), and the secure, ubiquitous interface of the Telegram Bot API. This paper moves beyond mere automation, proposing a “Cognitive Augmentation” model where the handheld device evolves from a passive tool into an active, autonomous cognitive agent. By mapping raw network telemetry to high-level adversarial tactics via zero-shot learning, the framework demonstrates a significant reduction in the Mean Time to Understand (MTTU) and Mean Time to Respond (MTTR) within critical infrastructure.
Keywords: Generative AI, Machine Reasoning, Handheld Penetration Testing, Pythonic Heuristics, Cognitive Security, Autonomous Security Agents.
Url https://zenodo.org/records/19650656