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Toolset for Vision Agent

Project description

🔍 Vision Agent

ci_status PyPI version version

Vision Agent is a library for that helps you to use multimodal models to organize and structure your image data. Check out our discord for roadmaps and updates!

One of the problems of dealing with image data is it can be difficult to organize and search. For example, you might have a bunch of pictures of houses and want to count how many yellow houses you have, or how many houses with adobe roofs. The vision agent library uses LMMs to help create tags or descriptions of images to allow you to search over them, or use them in a database to carry out other operations.

Getting Started

LMMs

To get started, you can use an LMM to start generating text from images. The following code will use the LLaVA-1.6 34B model to generate a description of the image you pass it.

import vision_agent as va

model = va.lmm.get_lmm("llava")
model.generate("Describe this image", "image.png")
>>> "A yellow house with a green lawn."

WARNING We are hosting the LLaVA-1.6 34B model, if it times out please wait ~3-5 min for the server to warm up as it shuts down when usage is low.

DataStore

You can use the DataStore class to store your images, add new metadata to them such as descriptions, and search over different columns.

import vision_agent as va
import pandas as pd

df = pd.DataFrame({"image_paths": ["image1.png", "image2.png", "image3.png"]})
ds = va.data.DataStore(df)
ds = ds.add_lmm(va.lmm.get_lmm("llava"))
ds = ds.add_embedder(va.emb.get_embedder("sentence-transformer"))

ds = ds.add_column("descriptions", "Describe this image.")

This will use the prompt you passed, "Describe this image.", and the LMM to create a new column of descriptions for your image. Your data will now contain a new column with the descriptions of each image:

image_paths image_id descriptions
image1.png 1 "A yellow house with a green lawn."
image2.png 2 "A white house with a two door garage."
image3.png 3 "A wooden house in the middle of the forest."

You can now create an index on the descriptions column and search over it to find images that match your query.

ds = ds.build_index("descriptions")
ds.search("A yellow house.", top_k=1)
>>> [{'image_paths': 'image1.png', 'image_id': 1, 'descriptions': 'A yellow house with a green lawn.'}]

You can also create other columns for you data such as is_yellow:

ds = ds.add_column("is_yellow", "Is the house in this image yellow? Please answer yes or no.")

which would give you a dataset similar to this:

image_paths image_id descriptions is_yellow
image1.png 1 "A yellow house with a green lawn." "yes"
image2.png 2 "A white house with a two door garage." "no"
image3.png 3 "A wooden house in the middle of the forest." "no"

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