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Bypassing the Safety Training of Open-Source LLMs with Priming Attacks

19 December 2023
Jason Vega
Isha Chaudhary
Changming Xu
Gagandeep Singh
    AAML
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Abstract

With the recent surge in popularity of LLMs has come an ever-increasing need for LLM safety training. In this paper, we investigate the fragility of SOTA open-source LLMs under simple, optimization-free attacks we refer to as priming attacks\textit{priming attacks}priming attacks, which are easy to execute and effectively bypass alignment from safety training. Our proposed attack improves the Attack Success Rate on Harmful Behaviors, as measured by Llama Guard, by up to 3.3×3.3\times3.3× compared to baselines. Source code and data are available at https://github.com/uiuc-focal-lab/llm-priming-attacks.

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