CLLGJan 31, 2025

Memory-Efficient Fine-Tuning of Transformers via Token Selection

arXiv:2501.18824v125 citationsh-index: 6Has CodeEMNLP
Originality Incremental advance
AI Analysis

This addresses memory constraints for researchers and practitioners fine-tuning large transformers, though it is incremental as it builds on existing memory-efficient methods.

The paper tackles the high memory overhead in fine-tuning large transformer models by introducing TokenTune, which reduces memory usage by caching only a subset of intermediate activations during backpropagation, achieving performance comparable to full fine-tuning while greatly reducing memory footprint, especially when combined with methods like LoRA.

Fine-tuning provides an effective means to specialize pre-trained models for various downstream tasks. However, fine-tuning often incurs high memory overhead, especially for large transformer-based models, such as LLMs. While existing methods may reduce certain parts of the memory required for fine-tuning, they still require caching all intermediate activations computed in the forward pass to update weights during the backward pass. In this work, we develop TokenTune, a method to reduce memory usage, specifically the memory to store intermediate activations, in the fine-tuning of transformer-based models. During the backward pass, TokenTune approximates the gradient computation by backpropagating through just a subset of input tokens. Thus, with TokenTune, only a subset of intermediate activations are cached during the forward pass. Also, TokenTune can be easily combined with existing methods like LoRA, further reducing the memory cost. We evaluate our approach on pre-trained transformer models with up to billions of parameters, considering the performance on multiple downstream tasks such as text classification and question answering in a few-shot learning setup. Overall, TokenTune achieves performance on par with full fine-tuning or representative memory-efficient fine-tuning methods, while greatly reducing the memory footprint, especially when combined with other methods with complementary memory reduction mechanisms. We hope that our approach will facilitate the fine-tuning of large transformers, in specializing them for specific domains or co-training them with other neural components from a larger system. Our code is available at https://github.com/facebookresearch/tokentune.

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