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VLM Run Hub for various industry-specific schemas

Project description

VLM Run Hub

Welcome to VLM Run Hub, the ultimate repository of pre-defined Pydantic schemas for extracting structured data from unstructured visual domains such as images, videos, and documents. Designed for Vision Language Models (VLMs) and optimized for real-world use cases, VLM Run Hub simplifies the integration of visual ETL into your workflows.

Website | Docs | Blog | Discord | Schema Catalog

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💡 Motivation

While vision models like OpenAI’s GPT-4o and Anthropic’s Claude Vision excel in exploratory tasks like "chat with images," they often lack practicality for automation and integration, where strongly-typed, validated outputs are crucial.

The Structured Outputs API (popularized by GPT-4o, Gemini) addresses this by constraining LLMs to return data in precise, strongly-typed formats such as Pydantic models. This eliminates complex parsing and validation, ensuring outputs conform to expected types and structures. These schemas can be nested and include complex types like lists and dictionaries, enabling seamless integration with existing systems while leveraging the full capabilities of the model.

Why use this repo / pre-defined Pydantic schemas?

  • 📚 Easy to use: Pydantic is a well-understood and battle-tested data model for structured data.
  • 🔋 Batteries included: Each schema in this repo has been validated across real-world industry use cases—from healthcare to finance to media—saving you weeks of development effort.
  • 🔍 Automatic Data-validation: Built-in Pydantic validation ensures your extracted data is clean, accurate, and reliable, reducing errors and simplifying downstream workflows.
  • 🔌 Type-safety: With Pydantic’s type-safety and compatibility with tools like mypy and pyright, you can build composable, modular systems that are robust and maintainable.
  • 🧰 Model-agnostic: Use the same schema with multiple VLM providers, no need to rewrite prompts for different VLMs.
  • 🚀 Optimized for Visual ETL: Purpose-built for extracting structured data from images, videos, and documents, this repo bridges the gap between unstructured data and actionable insights.

🚀 Getting Started

Let's say we want to extract invoice metadata from an invoice image. You can readily use our Invoice schema we have defined under vlmrun.hub.schemas.document.invoice and use it with any VLM of your choosing.

With Instructor / OpenAI

import instructor
from openai import OpenAI

from vlmrun.hub.schemas.document.invoice import Invoice

IMAGE_URL = "https://storage.googleapis.com/vlm-data-public-prod/hub/examples/document.invoice-extraction/invoice_1.jpg"

client = instructor.from_openai(
    OpenAI(), mode=instructor.Mode.MD_JSON
)
response = client.chat.completions.create(
    model="gpt-4o-mini",
    messages=[
        { "role": "user", "content": [
            {"type": "text", "text": "Extract the invoice in JSON."},
            {"type": "image_url", "image_url": {"url": IMAGE_URL}, "detail": "auto"}
        ]}
    ],
    response_model=Invoice,
    temperature=0,
)
JSON Response:
Image JSON Output 🔐
{
  "invoice_id": "9999999",
  "period_start": null,
  "period_end": null,
  "invoice_issue_date": "2023-11-11",
  "invoice_due_date": null,
  "order_id": null,
  "customer_id": null,
  "issuer": "Anytown, USA",
  "issuer_address": {
    "street": "123 Main Street",
    "city": "Anytown",
    "state": "USA",
    "postal_code": "01234",
    "country": null
  },
  "customer": "Fred Davis",
  "customer_email": "email@invoice.com",
  "customer_phone": "(800) 123-4567",
  "customer_billing_address": {
    "street": "1335 Martin Luther King Jr Ave",
    "city": "Dunedin",
    "state": "FL",
    "postal_code": "34698",
    "country": null
  },
  "customer_shipping_address": {
    "street": "249 Windward Passage",
    "city": "Clearwater",
    "state": "FL",
    "postal_code": "33767",
    "country": null
  },
  "items": [
    {
      "description": "Service",
      "quantity": 1,
      "currency": null,
      "unit_price": 200.0,
      "total_price": 200.0
    },
    {
      "description": "Parts AAA",
      "quantity": 1,
      "currency": null,
      "unit_price": 100.0,
      "total_price": 100.0
    },
    {
      "description": "Parts BBB",
      "quantity": 2,
      "currency": null,
      "unit_price": 50.0,
      "total_price": 100.0
    }
  ],
  "subtotal": 400.0,
  "tax": null,
  "total": 400.0,
  "currency": null,
  "notes": "",
  "others": null
}

With VLM Run

import requests

from vlmrun.hub.schemas.document.invoice import Invoice


IMAGE_URL = "https://storage.googleapis.com/vlm-data-public-prod/hub/examples/document.invoice-extraction/invoice_1.jpg"

json_data = {
    "image": IMAGE_URL,
    "model": "vlm-1",
    "domain": "document.invoice",
    "json_schema": Invoice.model_json_schema(),
}
response = requests.post(
    f"https://api.vlm.run/v1/image/generate",
    headers={"Authorization": f"Bearer <your-api-key>"},
    json=json_data,
)

With OpenAI Structured Outputs API

import instructor
from openai import OpenAI

from vlmrun.hub.schemas.document.invoice import Invoice

IMAGE_URL = "https://storage.googleapis.com/vlm-data-public-prod/hub/examples/document.invoice-extraction/invoice_1.jpg"

client = OpenAI()
completion = client.beta.chat.completions.parse(
    model="gpt-4o-mini",
    messages=[
        {"role": "user", "content": [
            {"type": "text", "text": "Extract the invoice in JSON."},
            {"type": "image_url", "image_url": {"url": IMAGE_URL}, "detail": "auto"}
        ]},
    ],
    response_format=Invoice,
    temperature=0,
)

When working with the OpenAI Structured Outputs API, you need to ensure that the response_format is a valid Pydantic model with the supported types.

Locally with Ollama

from ollama import chat

from vlmrun.hub.schemas.document.invoice import Invoice
from vlmrun.hub.utils import encode_image, remote_image

IMAGE_URL = "https://storage.googleapis.com/vlm-data-public-prod/hub/examples/document.invoice-extraction/invoice_1.jpg"

img = remote_image(IMAGE_URL)
chat_response = chat(
    model="llama3.2-vision:11b",
    format=Invoice.model_json_schema(),
    messages=[
        {
            "role": "user",
            "content": "Extract the invoice in JSON.",
            "images": [encode_image(img, format="JPEG").split(",")[1]],
        },
    ],
    options={
        "temperature": 0
    },
)
response = Invoice.model_validate_json(
    chat_response.message.content
)

📂 Directory Structure

Schemas are organized by industry for easy navigation:

vlmrun
└── hub
    ├── schemas
    |   ├── <industry>
    |   |   ├── <use-case-1>.py
    |   |   ├── <use-case-2>.py
    |   |   └── ...
       ├── aerospace
          └── remote_sensing.py
       ├── document
          └── invoice.py
       ├── healthcare
          └── medical_insurance_card.py
       └── retail
           └── ecommerce_product_caption.py
    └── version.py

✨ How to Contribute

We’re building this hub for the community, and contributions are always welcome! Follow the SCHEMA-GUIDELINES.md to get started.

📖 Schema Catalog

The VLM Run Hub maintains a comprehensive catalog of all available schemas in the vlmrun/hub/catalog.yaml file. This catalog provides:

  • Domain-specific schema references
  • Detailed descriptions and prompts
  • Sample data references
  • Version information
  • Metadata including relevant tags

The catalog is automatically validated to ensure consistency and completeness of schema documentation.

🔗 Quick Links

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