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SmolVLM: Redefining small and efficient multimodal models

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Large Vision-Language Models (VLMs) deliver exceptional performance but require significant computational resources, limiting their deployment on mobile and edge devices. Smaller VLMs typically mirror design choices of larger models, such as extensive image tokenization, leading to inefficient GPU memory usage and constrained practicality for on-device applications. We introduce SmolVLM, a series of compact multimodal models specifically engineered for resource-efficient inference. We systematically explore architectural configurations, tokenization strategies, and data curation optimized for low computational overhead. Through this, we identify key design choices that yield substantial performance gains on image and video tasks with minimal memory footprints. Our smallest model, SmolVLM-256M, uses less than 1GB GPU memory during inference and outperforms the 300-times larger Idefics-80B model, despite an 18-month development gap. Our largest model, at 2.2B parameters, rivals state-of-the-art VLMs consuming twice the GPU memory. SmolVLM models extend beyond static images, demonstrating robust video comprehension capabilities. Our results emphasize that strategic architectural optimizations, aggressive yet efficient tokenization, and carefully curated training data significantly enhance multimodal performance, facilitating practical, energy-efficient deployments at significantly smaller scales.

Andr\'es Marafioti, Orr Zohar, Miquel Farr\'e, Merve Noyan, Elie Bakouch, Pedro Cuenca, Cyril Zakka, Loubna Ben Allal, Anton Lozhkov, Nouamane Tazi, Vaibhav Srivastav, Joshua Lochner, Hugo Larcher, Mathieu Morlon, Lewis Tunstall, Leandro von Werra, Thomas Wolf• 2025

Related benchmarks

TaskDatasetResultRank
Visual Question AnsweringTextVQA
Accuracy73.2
1117
Object Hallucination EvaluationPOPE
Accuracy85.1
935
Language UnderstandingMMLU
Accuracy26.89
756
Multimodal EvaluationMME
Score1.79e+3
557
Text-based Visual Question AnsweringTextVQA
Accuracy73
496
Visual Question AnsweringGQA
Accuracy50.574
374
Mathematical ReasoningMathVista
Score34.5
322
Visual Question AnsweringTextVQA (val)
VQA Score73.2
309
OCR EvaluationOCRBench
Score72.9
296
Visual Question AnsweringChartQA
Accuracy74.2
239
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