CLMay 21, 2024

Unlocking Data-free Low-bit Quantization with Matrix Decomposition for KV Cache Compression

arXiv:2405.12591v129 citationsh-index: 25ACL
Originality Incremental advance
AI Analysis

This addresses the practical deployment challenge of LLMs by compressing KV cache without extra data, though it is incremental as it builds on existing quantization and decomposition methods.

The paper tackles the memory overhead of key-value caching in large language models by introducing DecoQuant, a data-free low-bit quantization technique based on tensor decomposition, which reduces memory footprint by up to 75% while preserving generation quality.

Key-value~(KV) caching is an important technique to accelerate the inference of large language models~(LLMs), but incurs significant memory overhead. To compress the size of KV cache, existing methods often compromise precision or require extra data for calibration, limiting their practicality in LLM deployment. In this paper, we introduce \textbf{DecoQuant}, a novel data-free low-bit quantization technique based on tensor decomposition methods, to effectively compress KV cache. Our core idea is to adjust the outlier distribution of the original matrix by performing tensor decomposition, so that the quantization difficulties are migrated from the matrix to decomposed local tensors. Specially, we find that outliers mainly concentrate on small local tensors, while large tensors tend to have a narrower value range. Based on this finding, we propose to apply low-bit quantization to the large tensor, while maintaining high-precision representation for the small tensor. Furthermore, we utilize the proposed quantization method to compress the KV cache of LLMs to accelerate the inference and develop an efficient dequantization kernel tailored specifically for DecoQuant. Through extensive experiments, DecoQuant demonstrates remarkable efficiency gains, showcasing up to a $\sim$75\% reduction in memory footprint while maintaining comparable generation quality.

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