CVAICLLGAug 28, 2025

MobileCLIP2: Improving Multi-Modal Reinforced Training

U of Toronto
arXiv:2508.20691v19 citationsh-index: 47Has CodeTrans. Mach. Learn. Res.
Originality Incremental advance
AI Analysis

This work addresses the problem of efficient and accurate multi-modal models for mobile and edge devices, though it is incremental as it builds on prior MobileCLIP methods.

The paper tackles improving multi-modal reinforced training for MobileCLIP, a low-latency image-text model family, by enhancing teacher ensembles and captioner fine-tuning, resulting in state-of-the-art zero-shot accuracy on ImageNet-1k with a 2.2% improvement for MobileCLIP2-B and matching larger models' accuracy at lower latencies.

Foundation image-text models such as CLIP with zero-shot capabilities enable a wide array of applications. MobileCLIP is a recent family of image-text models at 3-15ms latency and 50-150M parameters with state-of-the-art zero-shot accuracy. The main ingredients in MobileCLIP were its low-latency and light architectures and a novel multi-modal reinforced training that made knowledge distillation from multiple caption-generators and CLIP teachers efficient, scalable, and reproducible. In this paper, we improve the multi-modal reinforced training of MobileCLIP through: 1) better CLIP teacher ensembles trained on the DFN dataset, 2) improved captioner teachers trained on the DFN dataset and fine-tuned on a diverse selection of high-quality image-caption datasets. We discover new insights through ablations such as the importance of temperature tuning in contrastive knowledge distillation, the effectiveness of caption-generator fine-tuning for caption diversity, and the additive improvement from combining synthetic captions generated by multiple models. We train a new family of models called MobileCLIP2 and achieve state-of-the-art ImageNet-1k zero-shot accuracies at low latencies. In particular, we observe 2.2% improvement in ImageNet-1k accuracy for MobileCLIP2-B compared with MobileCLIP-B architecture. Notably, MobileCLIP2-S4 matches the zero-shot accuracy of SigLIP-SO400M/14 on ImageNet-1k while being 2$\times$ smaller and improves on DFN ViT-L/14 at 2.5$\times$ lower latency. We release our pretrained models (https://github.com/apple/ml-mobileclip) and the data generation code (https://github.com/apple/ml-mobileclip-dr). The data generation code makes it easy to create new reinforced datasets with arbitrary teachers using distributed scalable processing.

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