Mitigating the impact of activation smoothing on weights: A channel permutation and smoothing-based LLMs quantization method
摘要
Quantization has emerged as an effective technique to reduce the memory requirement of Large Language Models (LLMs). However, we observed that activation smoothing destroys the original flat distribution of weights and existing methods struggle to smooth activation outliers with extremely large magnitudes, resulting in increased quantization errors. To overcome these challenges, we propose