Edit model card

UForm

Pocket-Sized Multimodal AI
For Content Understanding and Generation
In Python, JavaScript, and Swift


The uform3-image-text-english-small UForm model is a tiny vision and English language encoder, mapping them into a shared vector space. This model produces up to 256-dimensional embeddings and is made of:

  • Text encoder: 4-layer BERT for up to 64 input tokens.
  • Visual encoder: ViT-S/16 for images of 224 x 224 resolution.

Unlike most CLIP-like multomodal models, this model shares 2 layers between the text and visual encoder to allow for more data- and parameter-efficient training. Also unlike most models, UForm provides checkpoints compatible with PyTorch, ONNX, and CoreML, covering the absolute majority of AI-capable devices, with pre-quantized weights and inference code. If you need a larger, more accurate, or multilingual model, check our HuggingFace Hub. For more details on running the model, check out the UForm GitHub repository.

Evaluation

For zero-shot ImageNet classification the model achieves Top-1 accuracy of 36.1% and Top-5 of 60.8%. On text-to-image retrieval it reaches 86% Recall@10 for Flickr:

Dataset Recall@1 Recall@5 Recall@10
Zero-Shot Flickr 0.565 0.790 0.860
Zero-Shot MS-COCO 0.281 0.525 0.645

Installation

pip install "uform[torch,onnx]"

Usage

To load the model:

from uform import get_model, Modality

import requests
from io import BytesIO
from PIL import Image

model_name = 'unum-cloud/uform3-image-text-english-small'
modalities = [Modality.TEXT_ENCODER, Modality.IMAGE_ENCODER]
processors, models = get_model(model_name, modalities=modalities)

model_text = models[Modality.TEXT_ENCODER]
model_image = models[Modality.IMAGE_ENCODER]
processor_text = processors[Modality.TEXT_ENCODER]
processor_image = processors[Modality.IMAGE_ENCODER]

To encode the content:

text = 'a cityscape bathed in the warm glow of the sun, with varied architecture and a towering, snow-capped mountain rising majestically in the background'
image_url = 'https://media-cdn.tripadvisor.com/media/photo-s/1b/28/6b/53/lovely-armenia.jpg'
image_url = Image.open(BytesIO(requests.get(image_url).content))

image_data = processor_image(image)
text_data = processor_text(text)
image_features, image_embedding = model_image.encode(image_data, return_features=True)
text_features, text_embedding = model_text.encode(text_data, return_features=True)
Downloads last month
249
Inference Examples
This model does not have enough activity to be deployed to Inference API (serverless) yet. Increase its social visibility and check back later, or deploy to Inference Endpoints (dedicated) instead.

Dataset used to train unum-cloud/uform3-image-text-english-small

Collection including unum-cloud/uform3-image-text-english-small