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Autores principales: Ghaffari, Alireza, Younesian, Sharareh, Chen, Boxing, Nia, Vahid Partovi, Asgharian, Masoud
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2501.09107
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author Ghaffari, Alireza
Younesian, Sharareh
Chen, Boxing
Nia, Vahid Partovi
Asgharian, Masoud
author_facet Ghaffari, Alireza
Younesian, Sharareh
Chen, Boxing
Nia, Vahid Partovi
Asgharian, Masoud
contents As Large Language Models (LLMs) become increasingly computationally complex, developing efficient deployment strategies, such as quantization, becomes crucial. State-of-the-art Post-training Quantization (PTQ) techniques often rely on calibration processes to maintain the accuracy of these models. However, while these calibration techniques can enhance performance in certain domains, they may not be as effective in others. This paper aims to draw attention to robust statistical approaches that can mitigate such issues. We propose a weight-adaptive PTQ method that can be considered a precursor to calibration-based PTQ methods, guiding the quantization process to preserve the distribution of weights by minimizing the Kullback-Leibler divergence between the quantized weights and the originally trained weights. This minimization ensures that the quantized model retains the Shannon information content of the original model to a great extent, guaranteeing robust and efficient deployment across many tasks. As such, our proposed approach can perform on par with most common calibration-based PTQ methods, establishing a new pre-calibration step for further adjusting the quantized weights with calibration. We show that our pre-calibration results achieve the same accuracy as some existing calibration-based PTQ methods on various LLMs.
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spellingShingle Rethinking Post-Training Quantization: Introducing a Statistical Pre-Calibration Approach
Ghaffari, Alireza
Younesian, Sharareh
Chen, Boxing
Nia, Vahid Partovi
Asgharian, Masoud
Machine Learning
As Large Language Models (LLMs) become increasingly computationally complex, developing efficient deployment strategies, such as quantization, becomes crucial. State-of-the-art Post-training Quantization (PTQ) techniques often rely on calibration processes to maintain the accuracy of these models. However, while these calibration techniques can enhance performance in certain domains, they may not be as effective in others. This paper aims to draw attention to robust statistical approaches that can mitigate such issues. We propose a weight-adaptive PTQ method that can be considered a precursor to calibration-based PTQ methods, guiding the quantization process to preserve the distribution of weights by minimizing the Kullback-Leibler divergence between the quantized weights and the originally trained weights. This minimization ensures that the quantized model retains the Shannon information content of the original model to a great extent, guaranteeing robust and efficient deployment across many tasks. As such, our proposed approach can perform on par with most common calibration-based PTQ methods, establishing a new pre-calibration step for further adjusting the quantized weights with calibration. We show that our pre-calibration results achieve the same accuracy as some existing calibration-based PTQ methods on various LLMs.
title Rethinking Post-Training Quantization: Introducing a Statistical Pre-Calibration Approach
topic Machine Learning
url https://arxiv.org/abs/2501.09107