Vulnerabilities
Collection
https://llm-attacks.org/ • 11 items • Updated • 1
Mixture of Experts (MoE) models are susceptible to cross-batch dependency attacks, where malicious queries influence benign queries within the same batch.
Mixture of Experts (MoE) has become a key ingredient for scaling large foundation models while keeping inference costs steady. We show that expert routing strategies that have cross-batch dependencies are vulnerable to attacks. Malicious queries can be sent to a model and can affect a model's output on other benign queries if they are grouped in the same batch. We demonstrate this via a proof-of-concept attack in a toy experimental setting.
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