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Watermarking LLMs with Weight Quantization

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arxiv 2310.11237 v1 pith:5ZKORGGM submitted 2023-10-17 cs.CL

Watermarking LLMs with Weight Quantization

classification cs.CL
keywords modellanguagelargemodelsweightsinferenceopen-sourcequantization
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Abuse of large language models reveals high risks as large language models are being deployed at an astonishing speed. It is important to protect the model weights to avoid malicious usage that violates licenses of open-source large language models. This paper proposes a novel watermarking strategy that plants watermarks in the quantization process of large language models without pre-defined triggers during inference. The watermark works when the model is used in the fp32 mode and remains hidden when the model is quantized to int8, in this way, the users can only inference the model without further supervised fine-tuning of the model. We successfully plant the watermark into open-source large language model weights including GPT-Neo and LLaMA. We hope our proposed method can provide a potential direction for protecting model weights in the era of large language model applications.

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