EvoVLMA: Evolutionary Vision-Language Model Adaptation
By: Kun Ding, Ying Wang, Shiming Xiang
Potential Business Impact:
Computer learns to see better, automatically.
Pre-trained Vision-Language Models (VLMs) have been exploited in various Computer Vision tasks (e.g., few-shot recognition) via model adaptation, such as prompt tuning and adapters. However, existing adaptation methods are designed by human experts, requiring significant time cost and experience. Inspired by recent advances in Large Language Models (LLMs) based code generation, we propose an Evolutionary Vision-Language Model Adaptation (EvoVLMA) method to automatically search training-free efficient adaptation algorithms for VLMs. We recognize feature selection and logits computation as the key functions in training-free VLM adaptation, and propose a two-stage LLM-assisted evolutionary algorithm for optimizing these parts in a sequential manner, effectively addressing the challenge posed by the expansive search space through a divide-and-conquer strategy. Besides, to enhance the stability and efficiency of searching process, we propose low-precision code conversion, web based code execution and process monitoring, leading to a highly effective automatic algorithm design system. Extensive experiments demonstrate that the algorithms found by EvoVLMA can obtain promising results compared to previous manually-designed ones. More specifically, in the 8-shot image classification setting, the classical APE algorithm can be improved by 1.91 points in recognition accuracy. This research opens new possibilities for automating the optimization of adaptation algorithms of pre-trained multimodal models. Code is available at: https://github.com/kding1225/EvoVLMA
Similar Papers
AdaptVision: Efficient Vision-Language Models via Adaptive Visual Acquisition
CV and Pattern Recognition
Lets computers see smarter, using less data.
EvoVLA: Self-Evolving Vision-Language-Action Model
CV and Pattern Recognition
Robots learn to do long, tricky jobs better.
Adapting Vision-Language Models Without Labels: A Comprehensive Survey
Machine Learning (CS)
Teaches computers to learn from pictures without labels.