Variance-Reduced Zeroth-Order Methods for Fine-Tuning Language Models
Abstract
Fine-tuning language models (LMs) has demonstrated success in a wide array of downstream tasks. However, as LMs are scaled up, the memory requirements for backpropagation become prohibitively high. Zeroth-order (ZO) optimization methods can leverage memory-efficient forward passes to estimate gradients. More recently, MeZO, an adaptation of ZO-SGD, has been shown to consistently outperform zero-shot and in-context learning when combined with suitable task prompts. In this work, we couple ZO methods with variance reduction techniques to enhance stability and convergence for inference-based LM fine-tuning. We introduce Memory-Efficient Zeroth-Order Stochastic Variance-Reduced Gradient (MeZO-SVRG) and demonstrate its efficacy across multiple LM fine-tuning tasks, eliminating the reliance on task-specific prompts. Evaluated across a range of both masked and autoregressive LMs on benchmark GLUE tasks, MeZO-SVRG outperforms MeZO with up to 20% increase in test accuracies in both full- and partial-parameter fine-tuning settings. MeZO-SVRG benefits from reduced computation time as it often surpasses MeZO’s peak test accuracy with a $2\times$ reduction in GPU-hours. MeZO-SVRG significantly reduces the required memory footprint compared to first-order SGD, i.e. by $2\times$ for autoregressive models. Our experiments highlight that MeZO-SVRG’s memory savings progressively improve compared to SGD with larger batch sizes.
Cite
Text
Gautam et al. "Variance-Reduced Zeroth-Order Methods for Fine-Tuning Language Models." International Conference on Machine Learning, 2024.Markdown
[Gautam et al. "Variance-Reduced Zeroth-Order Methods for Fine-Tuning Language Models." International Conference on Machine Learning, 2024.](https://mlanthology.org/icml/2024/gautam2024icml-variancereduced/)BibTeX
@inproceedings{gautam2024icml-variancereduced,
title = {{Variance-Reduced Zeroth-Order Methods for Fine-Tuning Language Models}},
author = {Gautam, Tanmay and Park, Youngsuk and Zhou, Hao and Raman, Parameswaran and Ha, Wooseok},
booktitle = {International Conference on Machine Learning},
year = {2024},
pages = {15180-15208},
volume = {235},
url = {https://mlanthology.org/icml/2024/gautam2024icml-variancereduced/}
}