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APTQ: Attention-aware Post-Training Mixed-Precision Quantization for Large Language Models

Large Language Models (LLMs) have greatly advanced the natural language processing paradigm. However, the high computational load and huge model sizes pose a grand challenge for deployment on edge devices. To this end, we propose APTQ (Attention-aware Post-Training Mixed-Precision Quantization) for LLMs, which considers not only the second-order information of each layer’s weights, but also, for the first time, the nonlinear effect of attention outputs on the entire model.

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Ziyi Guan, Hantao Huang, Yupeng Su, Hong Huang, Ngai Wong, Hao Yu (2024). Dataset: APTQ: Attention-aware Post-Training Mixed-Precision Quantization for Large Language Models. https://doi.org/10.57702/i1dmoyg7

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Additional Info

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Created December 16, 2024
Last update December 16, 2024
Defined In https://doi.org/10.1145/3649329.3658498
Author Ziyi Guan
More Authors
Hantao Huang
Yupeng Su
Hong Huang
Ngai Wong
Hao Yu