English

ApiQ: Finetuning of 2-Bit Quantized Large Language Model

Machine Learning 2024-06-24 v3 Computation and Language

Abstract

Memory-efficient finetuning of large language models (LLMs) has recently attracted huge attention with the increasing size of LLMs, primarily due to the constraints posed by GPU memory limitations and the effectiveness of these methods compared to full finetuning. Despite the advancements, current strategies for memory-efficient finetuning, such as QLoRA, exhibit inconsistent performance across diverse bit-width quantizations and multifaceted tasks. This inconsistency largely stems from the detrimental impact of the quantization process on preserved knowledge, leading to catastrophic forgetting and undermining the utilization of pretrained models for finetuning purposes. In this work, we introduce a novel quantization framework, ApiQ, designed to restore the lost information from quantization by concurrently initializing the LoRA components and quantizing the weights of LLMs. This approach ensures the maintenance of the original LLM's activation precision while mitigating the error propagation from shallower into deeper layers. Through comprehensive evaluations conducted on a spectrum of language tasks with various LLMs, ApiQ demonstrably minimizes activation error during quantization. Consequently, it consistently achieves superior finetuning results across various bit-widths.

Keywords

Cite

@article{arxiv.2402.05147,
  title  = {ApiQ: Finetuning of 2-Bit Quantized Large Language Model},
  author = {Baohao Liao and Christian Herold and Shahram Khadivi and Christof Monz},
  journal= {arXiv preprint arXiv:2402.05147},
  year   = {2024}
}

Comments

more benchmarks and new method, block-wise ApiQ. code: https://github.com/BaohaoLiao/ApiQ

R2 v1 2026-06-28T14:42:04.424Z