CVMar 19, 2025

EfficientLLaVA:Generalizable Auto-Pruning for Large Vision-language Models

arXiv:2503.15369v110 citationsh-index: 18CVPR
Originality Incremental advance
AI Analysis

This work addresses efficiency issues for deploying multimodal models in constrained environments, offering a practical solution with incremental improvements over existing pruning methods.

The paper tackles the challenge of deploying large vision-language models on resource-limited devices by proposing an automatic pruning method that uses only 64 samples to search for a pruning policy, achieving 83.05% accuracy on ScienceQA with a 1.8x speedup compared to the dense model.

While multimodal large language models demonstrate strong performance in complex reasoning tasks, they pose significant challenges related to model complexity during deployment, especially for resource-limited devices. In this paper, we propose an automatic pruning method for large vision-language models to enhance the efficiency of multimodal reasoning. Conventional methods rely on the training data of the original model to select the proper pruning ratio for different network components. However, these methods are impractical for large vision-language models due to the unaffordable search costs caused by web-scale training corpus. In contrast, our approach only leverages a small number of samples to search for the desired pruning policy by maximizing its generalization ability on unknown training data while maintaining the model accuracy, which enables the achievement of an optimal trade-off between accuracy and efficiency for large visual language models. Specifically, we formulate the generalization gap of the pruning strategy using the structural risk minimization principle. Based on both task performance and generalization capability, we iteratively search for the optimal pruning policy within a given search space and optimize the vision projector to evolve the search space with higher upper bound of performance. We conduct extensive experiments on the ScienceQA, Vizwiz, MM-vet, and LLaVA-Bench datasets for the task of visual question answering. Using only 64 samples for pruning policy search, EfficientLLaVA achieves an accuracy of 83.05% on ScienceQA, along with a $\times$ 1.8 speedup compared to the dense LLaVA-v1.5-7B model.

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