Feb. 12, 2024, 5:10 a.m. | Muris Sladi\'c Veronica Valeros Carlos Catania Sebastian Garcia

cs.CR updates on arXiv.org arxiv.org

Honeypots are essential tools in cybersecurity. However, most of them (even the high-interaction ones) lack the required realism to engage and fool human attackers. This limitation makes them easily discernible, hindering their effectiveness. This work introduces a novel method to create dynamic and realistic software honeypots based on Large Language Models. Preliminary results indicate that LLMs can create credible and dynamic honeypots capable of addressing important limitations of previous honeypots, such as deterministic responses, lack of adaptability, etc. We evaluated …

attackers cs.ai cs.cl cs.cr cybersecurity discernible dynamic generative high honeypots human language language models large llm novel results shell software tools work

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