SmolVLM#
SmolVLM is HuggingFace’s compact vision language model designed for on-device and memory-constrained deployment, featuring an efficient image token compression strategy.
Task |
Image-Text-to-Text |
Architecture |
|
Parameters |
256M – 2B |
HF Org |
Available Models#
SmolVLM-Instruct: 2B
SmolVLM-256M-Instruct: 256M
Architecture#
SmolVLMForConditionalGeneration
Example HF Models#
Model |
HF ID |
|---|---|
SmolVLM Instruct |
|
SmolVLM 256M Instruct |
Try with NeMo AutoModel#
Install NeMo AutoModel and follow the fine-tuning guide to configure a recipe for this model.
1. Install (full instructions):
pip install nemo-automodel
2. Clone the repo to get example recipes you can adapt:
git clone https://github.com/NVIDIA-NeMo/Automodel.git
cd Automodel
3. Fine-tune by adapting a base VLM recipe — override the model ID on the CLI:
automodel --nproc-per-node=8 examples/vlm_finetune/gemma3/gemma3_vl_4b_cord_v2.yaml \
--model.pretrained_model_name_or_path <MODEL_HF_ID>
Replace <MODEL_HF_ID> with the model ID from Example HF Models above.
Run with Docker
1. Pull the container and mount a checkpoint directory:
docker run --gpus all -it --rm \
--shm-size=8g \
-v $(pwd)/checkpoints:/opt/Automodel/checkpoints \
nvcr.io/nvidia/nemo-automodel:26.02.00
2. The recipes are at /opt/Automodel/examples/ — navigate there:
cd /opt/Automodel
3. Fine-tune:
automodel --nproc-per-node=8 examples/vlm_finetune/gemma3/gemma3_vl_4b_cord_v2.yaml \
--model.pretrained_model_name_or_path <MODEL_HF_ID>
See the Installation Guide and VLM Fine-Tuning Guide.
Fine-Tuning#
See the VLM Fine-Tuning Guide.