Ferret-UI-Gemma2b / README.md
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metadata
library_name: transformers
pipeline_tag: image-text-to-text

Ferret-UI is the first UI-centric multimodal large language model (MLLM) designed for referring, grounding, and reasoning tasks. Built on Gemma-2B and Llama-3-8B, it is capable of executing complex UI tasks. This is the Gemma-2B version of ferret-ui. It follows from this paper by Apple.

How to Use πŸ€—πŸ“±

You will need first to download builder.py, conversation.py, inference.py, model_UI.py, and mm_utils.py locally.

wget https://huggingface.co/jadechoghari/Ferret-UI-Gemma2b/raw/main/conversation.py
wget https://huggingface.co/jadechoghari/Ferret-UI-Gemma2b/raw/main/builder.py
wget https://huggingface.co/jadechoghari/Ferret-UI-Gemma2b/raw/main/inference.py
wget https://huggingface.co/jadechoghari/Ferret-UI-Gemma2b/raw/main/model_UI.py
wget https://huggingface.co/jadechoghari/Ferret-UI-Gemma2b/raw/main/mm_utils.py

Usage:

from inference import inference_and_run
image_path = "appstore_reminders.png"
prompt = "Describe the image in details"

# Call the function without a box
inference_text = inference_and_run(image_path, prompt, conv_mode="ferret_gemma_instruct", model_path="jadechoghari/Ferret-UI-Gemma2b")

# Output processed text
print("Inference Text:", inference_text)
# Task with bounding boxes
image_path = "appstore_reminders.png"
prompt = "What's inside the selected region?"
box = [189, 906, 404, 970]

inference_text = inference_and_run(
    image_path=image_path, 
    prompt=prompt, 
    conv_mode="ferret_gemma_instruct", 
    model_path="jadechoghari/Ferret-UI-Gemma2b", 
    box=box
)
# you could also pass process_image=True
# to output: processed_image, inference_text = inference_and_run(...., process_image=True)

print("Inference Text:", inference_text)
# GROUNDING PROMPTS
GROUNDING_TEMPLATES = [
    '\nProvide the bounding boxes of the mentioned objects.',
     '\nInclude the coordinates for each mentioned object.',
    '\nLocate the objects with their coordinates.',
    '\nAnswer in [x1, y1, x2, y2] format.',
    '\nMention the objects and their locations using the format [x1, y1, x2, y2].',
    '\nDraw boxes around the mentioned objects.',
    '\nUse boxes to show where each thing is.',
    '\nTell me where the objects are with coordinates.',
    '\nList where each object is with boxes.',
    '\nShow me the regions with boxes.'
]