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Main Authors: Xiao, Jinying, Ji, Bin, Li, Shasha, Liu, Xiaodong, Jun, Ma, Wang, Chao, Li, Wei, Zhong, Ye, Xie, Xuan, Tashi, Nyima, Yu, Jie
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2511.22316
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author Xiao, Jinying
Ji, Bin
Li, Shasha
Liu, Xiaodong
Jun, Ma
Wang, Chao
Li, Wei
Zhong, Ye
Xie, Xuan
Tashi, Nyima
Yu, Jie
author_facet Xiao, Jinying
Ji, Bin
Li, Shasha
Liu, Xiaodong
Jun, Ma
Wang, Chao
Li, Wei
Zhong, Ye
Xie, Xuan
Tashi, Nyima
Yu, Jie
contents Large Language Models (LLMs) quantization facilitates deploying LLMs in resource-limited settings, but existing methods that combine incompatible gradient optimization and quantization truncation lead to serious convergence pathology. This prolongs quantization time and degrades LLMs' task performance. Our studies confirm that Straight-Through Estimator (STE) on Stiefel manifolds introduce non-smoothness and gradient noise, obstructing optimization convergence and blocking high-fidelity quantized LLM development despite extensive training. To tackle the above limitations, we propose SingleQuant, a single-pass quantization framework that decouples from quantization truncation, thereby eliminating the above non-smoothness and gradient noise factors. Specifically, SingleQuant constructs Alignment Rotation Transformation (ART) and Uniformity Rotation Transformation (URT) targeting distinct activation outliers, where ART achieves smoothing of outlier values via closed-form optimal rotations, and URT reshapes distributions through geometric mapping. Both matrices comprise strictly formulated Givens rotations with predetermined dimensions and rotation angles, enabling promising LLMs task performance within a short time. Experimental results demonstrate SingleQuant's superiority over the selected baselines across diverse tasks on 7B-70B LLMs. To be more precise, SingleQuant enables quantized LLMs to achieve higher task performance while necessitating less time for quantization. For example, when quantizing LLaMA-2-13B, SingleQuant achieves 1,400$\times$ quantization speedup and increases +0.57\% average task performance compared to the selected best baseline.
format Preprint
id arxiv_https___arxiv_org_abs_2511_22316
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Outlier Smoothing with Closed-Form Rotations for W4A4 Large Language Model Quantization
Xiao, Jinying
Ji, Bin
Li, Shasha
Liu, Xiaodong
Jun, Ma
Wang, Chao
Li, Wei
Zhong, Ye
Xie, Xuan
Tashi, Nyima
Yu, Jie
Machine Learning
Large Language Models (LLMs) quantization facilitates deploying LLMs in resource-limited settings, but existing methods that combine incompatible gradient optimization and quantization truncation lead to serious convergence pathology. This prolongs quantization time and degrades LLMs' task performance. Our studies confirm that Straight-Through Estimator (STE) on Stiefel manifolds introduce non-smoothness and gradient noise, obstructing optimization convergence and blocking high-fidelity quantized LLM development despite extensive training. To tackle the above limitations, we propose SingleQuant, a single-pass quantization framework that decouples from quantization truncation, thereby eliminating the above non-smoothness and gradient noise factors. Specifically, SingleQuant constructs Alignment Rotation Transformation (ART) and Uniformity Rotation Transformation (URT) targeting distinct activation outliers, where ART achieves smoothing of outlier values via closed-form optimal rotations, and URT reshapes distributions through geometric mapping. Both matrices comprise strictly formulated Givens rotations with predetermined dimensions and rotation angles, enabling promising LLMs task performance within a short time. Experimental results demonstrate SingleQuant's superiority over the selected baselines across diverse tasks on 7B-70B LLMs. To be more precise, SingleQuant enables quantized LLMs to achieve higher task performance while necessitating less time for quantization. For example, when quantizing LLaMA-2-13B, SingleQuant achieves 1,400$\times$ quantization speedup and increases +0.57\% average task performance compared to the selected best baseline.
title Outlier Smoothing with Closed-Form Rotations for W4A4 Large Language Model Quantization
topic Machine Learning
url https://arxiv.org/abs/2511.22316