LLM Agent Honeypot: Monitoring AI Hacking Agents in the Wild

Authors: Reworr, Dmitrii Volkov

License: CC BY 4.0

Abstract: We introduce the LLM Honeypot, a system for monitoring autonomous AI hacking agents. We deployed a customized SSH honeypot and applied prompt injections with temporal analysis to identify LLM-based agents among attackers. Over a trial run of a few weeks in a public environment, we collected 800,000 hacking attempts and 6 potential AI agents, which we plan to analyze in depth in future work. Our objectives aim to improve awareness of AI hacking agents and enhance preparedness for their risks.

Submitted to arXiv on 17 Oct. 2024

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