Skip to main content

MCP server for image analysis using OpenRouter

Project description

MCP OpenVision

CI PyPI version Python Versions PyPI (fork) Python Versions (fork) License: MIT Buy Me A Coffee smithery badge

Overview

MCP OpenVision is a Model Context Protocol (MCP) server that provides image analysis capabilities powered by OpenRouter vision models. It enables AI assistants to analyze images via a simple interface within the MCP ecosystem.

Installation

Installing via Smithery

To install mcp-openvision for Claude Desktop automatically via Smithery:

npx -y @smithery/cli install @Nazruden/mcp-openvision --client claude

Using pip

pip install mcp-openvision

Using UV (recommended)

uv pip install mcp-openvision

Installing this fork (PyPI)

This repository is a maintained fork published under the distribution name "wojons-mcp-openvision".

pip install wojons-mcp-openvision
# or
uv pip install wojons-mcp-openvision

Configuration

MCP OpenVision requires an OpenRouter API key and can be configured through environment variables:

  • OPENROUTER_API_KEY (required): Your OpenRouter API key
  • OPENROUTER_DEFAULT_MODEL (optional): The vision model to use

OpenRouter Vision Models

MCP OpenVision works with any OpenRouter model that supports vision capabilities. The default model is qwen/qwen2.5-vl-32b-instruct:free, but you can specify any other compatible model.

Some popular vision models available through OpenRouter include:

  • qwen/qwen2.5-vl-32b-instruct:free (default)
  • anthropic/claude-3-5-sonnet
  • anthropic/claude-3-opus
  • anthropic/claude-3-sonnet
  • openai/gpt-4o

You can specify custom models by setting the OPENROUTER_DEFAULT_MODEL environment variable or by passing the model parameter directly to the image_analysis function.

Usage

Testing with MCP Inspector

The easiest way to test MCP OpenVision is with the MCP Inspector tool:

npx @modelcontextprotocol/inspector uvx --from wojons-mcp-openvision mcp-openvision

Integration with Claude Desktop or Cursor

  1. Edit your MCP configuration file:

    • Windows: %USERPROFILE%\.cursor\mcp.json
    • macOS: ~/.cursor/mcp.json or ~/Library/Application Support/Claude/claude_desktop_config.json
  2. Add the following configuration:

{
  "mcpServers": {
    "openvision": {
      "command": "uvx",
      "args": ["--from", "wojons-mcp-openvision", "mcp-openvision"],
      "env": {
        "OPENROUTER_API_KEY": "your_openrouter_api_key_here",
        "OPENROUTER_DEFAULT_MODEL": "anthropic/claude-3-sonnet"
      }
    }
  }
}

Running Locally for Development

# Set the required API key
export OPENROUTER_API_KEY="your_api_key"

# Run the server module directly
python -m mcp_openvision

Features

MCP OpenVision provides the following core tool:

  • image_analysis: Analyze images with vision models, supporting various parameters:
    • image: Can be provided as:
      • Base64-encoded image data
      • Image URL (http/https)
      • Local file path
    • query: User instruction for the image analysis task
    • system_prompt: Instructions that define the model's role and behavior (optional)
    • model: Vision model to use
    • temperature: Controls randomness (0.0-1.0)
    • max_tokens: Maximum response length

Crafting Effective Queries

The query parameter is crucial for getting useful results from the image analysis. A well-crafted query provides context about:

  1. Purpose: Why you're analyzing this image
  2. Focus areas: Specific elements or details to pay attention to
  3. Required information: The type of information you need to extract
  4. Format preferences: How you want the results structured

Examples of Effective Queries

Basic Query Enhanced Query
"Describe this image" "Identify all retail products visible in this store shelf image and estimate their price range"
"What's in this image?" "Analyze this medical scan for abnormalities, focusing on the highlighted area and providing possible diagnoses"
"Analyze this chart" "Extract the numerical data from this bar chart showing quarterly sales, and identify the key trends from 2022-2023"
"Read the text" "Transcribe all visible text in this restaurant menu, preserving the item names, descriptions, and prices"

By providing context about why you need the analysis and what specific information you're seeking, you help the model focus on relevant details and produce more valuable insights.

Example Usage

# Analyze an image from a URL
result = await image_analysis(
    image="https://example.com/image.jpg",
    query="Describe this image in detail"
)

# Analyze an image from a local file with a focused query
result = await image_analysis(
    image="path/to/local/image.jpg",
    query="Identify all traffic signs in this street scene and explain their meanings for a driver education course"
)

# Analyze with a base64-encoded image and a specific analytical purpose
result = await image_analysis(
    image="SGVsbG8gV29ybGQ=...",  # base64 data
    query="Examine this product packaging design and highlight elements that could be improved for better visibility and brand recognition"
)

# Customize the system prompt for specialized analysis
result = await image_analysis(
    image="path/to/local/image.jpg",
    query="Analyze the composition and artistic techniques used in this painting, focusing on how they create emotional impact",
    system_prompt="You are an expert art historian with deep knowledge of painting techniques and art movements. Focus on formal analysis of composition, color, brushwork, and stylistic elements."
)

Image Input Types

The image_analysis tool accepts several types of image inputs:

  1. Base64-encoded strings
  2. Image URLs - must start with http:// or https://
  3. File paths:
    • Absolute paths: full paths starting with / (Unix) or drive letter (Windows)
    • Relative paths: paths relative to the current working directory
    • Relative paths with project_root: use the project_root parameter to specify a base directory

Using Relative Paths

When using relative file paths (like "examples/image.jpg"), you have two options:

  1. The path must be relative to the current working directory where the server is running
  2. Or, you can specify a project_root parameter:
# Example with relative path and project_root
result = await image_analysis(
    image="examples/image.jpg",
    project_root="/path/to/your/project",
    query="What is in this image?"
)

This is particularly useful in applications where the current working directory may not be predictable or when you want to reference files using paths relative to a specific directory.

Development

Setup Development Environment

# Clone the repository
git clone https://github.com/wojons/mcp-openvision.git
cd mcp-openvision

# Install development dependencies
pip install -e ".[dev]"

Code Formatting

This project uses Black for automatic code formatting. The formatting is enforced through GitHub Actions:

  • All code pushed to the repository is automatically formatted with Black
  • For pull requests from repository collaborators, Black formats the code and commits directly to the PR branch
  • For pull requests from forks, Black creates a new PR with the formatted code that can be merged into the original PR

You can also run Black locally to format your code before committing:

# Format all Python code in the src and tests directories
black src tests

Run Tests

pytest

Release Process

This project uses an automated release process:

  1. Update the version in pyproject.toml following Semantic Versioning principles
    • You can use the helper script: python scripts/bump_version.py [major|minor|patch]
  2. Update the CHANGELOG.md with details about the new version
    • The script also creates a template entry in CHANGELOG.md that you can fill in
  3. Commit and push these changes to the main branch
  4. The GitHub Actions workflow will:
    • Detect the version change
    • Automatically create a new GitHub release
    • Trigger the publishing workflow that publishes to PyPI

This automation helps maintain a consistent release process and ensures that every release is properly versioned and documented.

Support

If you find this project helpful, consider buying me a coffee to support ongoing development and maintenance.

Buy Me A Coffee

License

This project is licensed under the MIT License - see the LICENSE file for details.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

wojons_mcp_openvision-0.6.3.tar.gz (19.1 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

wojons_mcp_openvision-0.6.3-py3-none-any.whl (15.9 kB view details)

Uploaded Python 3

File details

Details for the file wojons_mcp_openvision-0.6.3.tar.gz.

File metadata

File hashes

Hashes for wojons_mcp_openvision-0.6.3.tar.gz
Algorithm Hash digest
SHA256 c72f499eb8dd1a85fd199c990dcb8a6f893d65f949734a69cde57e8c4969d570
MD5 fc09e11c73ddbe1c6d5ce0f1c2e1338f
BLAKE2b-256 b1911f8b0c6c9fb86e81d3ab913921fb893281f6e81ce32c3c88c477cfef0712

See more details on using hashes here.

File details

Details for the file wojons_mcp_openvision-0.6.3-py3-none-any.whl.

File metadata

File hashes

Hashes for wojons_mcp_openvision-0.6.3-py3-none-any.whl
Algorithm Hash digest
SHA256 1019cd730b1ece125b4e6a9c7092cc7e0b38218ace9cc857245357faa19b6fb9
MD5 f7b09b64393e87c5844d9f85233337c6
BLAKE2b-256 03026f5aa9187282457f18890158a280ac60ff0062d00785644a74bc073b89c5

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page