2024
DOI: 10.1609/aaai.v38i18.29964
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MERGE: Fast Private Text Generation

Zi Liang,
Pinghui Wang,
Ruofei Zhang
et al.

Abstract: The drastic increase in language models' parameters has led to a new trend of deploying models in cloud servers, raising growing concerns about private inference for Transformer-based models. Existing two-party privacy-preserving techniques, however, only take into account natural language understanding (NLU) scenarios. Private inference in natural language generation (NLG), crucial for applications like translation and code completion, remains underexplored. In addition, previous privacy-preserving techniques… Show more

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