Active Data Curation Effectively Distills Large-Scale Multimodal Models
- URL: http://arxiv.org/abs/2411.18674v1
- Date: Wed, 27 Nov 2024 18:50:15 GMT
- Title: Active Data Curation Effectively Distills Large-Scale Multimodal Models
- Authors: Vishaal Udandarao, Nikhil Parthasarathy, Muhammad Ferjad Naeem, Talfan Evans, Samuel Albanie, Federico Tombari, Yongqin Xian, Alessio Tonioni, Olivier J. Hénaff,
- Abstract summary: Knowledge distillation (KD) is the de facto standard for compressing large-scale models into smaller ones.
In this work we explore an alternative, yet simple approach -- active data curation as effective distillation for contrastive multimodal pretraining.
Our simple online batch selection method, ACID, outperforms strong KD baselines across various model-, data- and compute-configurations.
- Score: 66.23057263509027
- License:
- Abstract: Knowledge distillation (KD) is the de facto standard for compressing large-scale models into smaller ones. Prior works have explored ever more complex KD strategies involving different objective functions, teacher-ensembles, and weight inheritance. In this work we explore an alternative, yet simple approach -- active data curation as effective distillation for contrastive multimodal pretraining. Our simple online batch selection method, ACID, outperforms strong KD baselines across various model-, data- and compute-configurations. Further, we find such an active data curation strategy to in fact be complementary to standard KD, and can be effectively combined to train highly performant inference-efficient models. Our simple and scalable pretraining framework, ACED, achieves state-of-the-art results across 27 zero-shot classification and retrieval tasks with upto 11% less inference FLOPs. We further demonstrate that our ACED models yield strong vision-encoders for training generative multimodal models in the LiT-Decoder setting, outperforming larger vision encoders for image-captioning and visual question-answering tasks.
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