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Auteurs principaux: Wang, Yiping, Huang, Hanxian, Chen, Yifang, Zhao, Jishen, Du, Simon Shaolei, Tian, Yuandong
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2502.07832
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author Wang, Yiping
Huang, Hanxian
Chen, Yifang
Zhao, Jishen
Du, Simon Shaolei
Tian, Yuandong
author_facet Wang, Yiping
Huang, Hanxian
Chen, Yifang
Zhao, Jishen
Du, Simon Shaolei
Tian, Yuandong
contents While Large language models (LLMs) have advanced natural language processing tasks, their growing computational and memory demands make deployment on resource-constrained devices like mobile phones increasingly challenging. In this paper, we propose SHARP (SHaring Adjacent Layers with Recovery Parameters), a novel approach to accelerate LLM inference by sharing parameters across adjacent layers, thus reducing memory load overhead, while introducing low-rank recovery parameters to maintain performance. Inspired by observations that consecutive layers have similar outputs, SHARP employs a two-stage recovery process: Single Layer Warmup (SLW), and Supervised Fine-Tuning (SFT). The SLW stage aligns the outputs of the shared layers using L_2 loss, providing a good initialization for the following SFT stage to further restore the model performance. Extensive experiments demonstrate that SHARP can recover the model's perplexity on various in-distribution tasks using no more than 50k fine-tuning data while reducing the number of stored MLP parameters by 38% to 65%. We also conduct several ablation studies of SHARP and show that replacing layers towards the later parts of the model yields better performance retention, and that different recovery parameterizations perform similarly when parameter counts are matched. Furthermore, SHARP saves 42.8% in model storage and reduces the total inference time by 42.2% compared to the original Llama2-7b model on mobile devices. Our results highlight SHARP as an efficient solution for reducing inference costs in deploying LLMs without the need for pretraining-scale resources.
format Preprint
id arxiv_https___arxiv_org_abs_2502_07832
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle SHARP: Accelerating Language Model Inference by SHaring Adjacent layers with Recovery Parameters
Wang, Yiping
Huang, Hanxian
Chen, Yifang
Zhao, Jishen
Du, Simon Shaolei
Tian, Yuandong
Machine Learning
Artificial Intelligence
While Large language models (LLMs) have advanced natural language processing tasks, their growing computational and memory demands make deployment on resource-constrained devices like mobile phones increasingly challenging. In this paper, we propose SHARP (SHaring Adjacent Layers with Recovery Parameters), a novel approach to accelerate LLM inference by sharing parameters across adjacent layers, thus reducing memory load overhead, while introducing low-rank recovery parameters to maintain performance. Inspired by observations that consecutive layers have similar outputs, SHARP employs a two-stage recovery process: Single Layer Warmup (SLW), and Supervised Fine-Tuning (SFT). The SLW stage aligns the outputs of the shared layers using L_2 loss, providing a good initialization for the following SFT stage to further restore the model performance. Extensive experiments demonstrate that SHARP can recover the model's perplexity on various in-distribution tasks using no more than 50k fine-tuning data while reducing the number of stored MLP parameters by 38% to 65%. We also conduct several ablation studies of SHARP and show that replacing layers towards the later parts of the model yields better performance retention, and that different recovery parameterizations perform similarly when parameter counts are matched. Furthermore, SHARP saves 42.8% in model storage and reduces the total inference time by 42.2% compared to the original Llama2-7b model on mobile devices. Our results highlight SHARP as an efficient solution for reducing inference costs in deploying LLMs without the need for pretraining-scale resources.
title SHARP: Accelerating Language Model Inference by SHaring Adjacent layers with Recovery Parameters
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2502.07832