WiFiPenTester: Advancing Wireless Ethical Hacking with Governed GenAI
Haitham S. Al-Sinani, Chris J. Mitchell

TL;DR
WiFiPenTester introduces a GenAI-enabled system for wireless ethical hacking that enhances target selection and assessment efficiency while ensuring human oversight and ethical safeguards.
Contribution
It presents a novel, governed system integrating large language models into wireless security assessment, emphasizing safety, reproducibility, and practical deployment.
Findings
GenAI assistance improves target selection accuracy.
System enhances assessment efficiency in wireless environments.
Maintains auditability and ethical safeguards.
Abstract
Wireless ethical hacking relies heavily on skilled practitioners manually interpreting reconnaissance results and executing complex, time-sensitive sequences of commands to identify vulnerable targets, capture authentication handshakes, and assess password resilience; a process that is inherently labour-intensive, difficult to scale, and prone to subjective judgement and human error. To help address these limitations, we propose WiFiPenTester, an experimental, governed, and reproducible system for GenAI-enabled wireless ethical hacking. The system integrates large language models into the reconnaissance and decision-support phases of wireless security assessment, enabling intelligent target ranking, attack feasibility estimation, and strategy recommendation, while preserving strict human-in-the-loop control and budget-aware execution. We describe the system architecture, threat model,…
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Taxonomy
TopicsNetwork Security and Intrusion Detection · User Authentication and Security Systems · Information and Cyber Security
