
Package Manager
Search and retrieve detailed information about packages across multiple repositories including PyPI, npm, crates.io, Docker Hub, and Terraform Registry.
Integrates with package repositories including PyPI, npm, crates.io, Docker Hub, and Terraform Registry to search and retrieve detailed information about packages, versions, dependencies, and Docker images.
What it does
- Search packages across PyPI, npm, crates.io, and Terraform Registry
- Get detailed package information including versions and dependencies
- Search Docker images on Docker Hub
- Retrieve Docker image metadata and tags
- Check latest versions of Terraform modules
Best for
About Package Manager
Package Manager is a community-built MCP server published by oborchers that provides AI assistants with tools and capabilities via the Model Context Protocol. Easily search npm and other repositories with Package Manager. Get package, version, and dependency info fast. Supports It is categorized under developer tools. This server exposes 5 tools that AI clients can invoke during conversations and coding sessions.
How to install
You can install Package Manager in your AI client of choice. Use the install panel on this page to get one-click setup for Cursor, Claude Desktop, VS Code, and other MCP-compatible clients. This server runs locally on your machine via the stdio transport.
License
Package Manager is released under the MIT license. This is a permissive open-source license, meaning you can freely use, modify, and distribute the software.
Tools (5)
Search for packages in package indices (PyPI, npm, crates.io, Terraform Registry)
Get detailed information about a specific package
Search for Docker images in Docker Hub
Get detailed information about a specific Docker image
Get the latest version of a Terraform module

Pacman MCP Server
A Model Context Protocol server that provides package index querying capabilities. This server enables LLMs to search and retrieve information from package repositories like PyPI, npm, crates.io, Docker Hub, and Terraform Registry.
Available Tools
-
search_package- Search for packages in package indicesindex(string, required): Package index to search ("pypi", "npm", "crates", "terraform")query(string, required): Package name or search querylimit(integer, optional): Maximum number of results to return (default: 5, max: 50)
-
package_info- Get detailed information about a specific packageindex(string, required): Package index to query ("pypi", "npm", "crates", "terraform")name(string, required): Package nameversion(string, optional): Specific version to get info for (default: latest)
-
search_docker_image- Search for Docker images in Docker Hubquery(string, required): Image name or search querylimit(integer, optional): Maximum number of results to return (default: 5, max: 50)
-
docker_image_info- Get detailed information about a specific Docker imagename(string, required): Image name (e.g., user/repo or library/repo)tag(string, optional): Specific image tag (default: latest)
-
terraform_module_latest_version- Get the latest version of a Terraform modulename(string, required): Module name (format: namespace/name/provider)
Prompts
-
search_pypi
- Search for Python packages on PyPI
- Arguments:
query(string, required): Package name or search query
-
pypi_info
- Get information about a specific Python package
- Arguments:
name(string, required): Package nameversion(string, optional): Specific version
-
search_npm
- Search for JavaScript packages on npm
- Arguments:
query(string, required): Package name or search query
-
npm_info
- Get information about a specific JavaScript package
- Arguments:
name(string, required): Package nameversion(string, optional): Specific version
-
search_crates
- Search for Rust packages on crates.io
- Arguments:
query(string, required): Package name or search query
-
crates_info
- Get information about a specific Rust package
- Arguments:
name(string, required): Package nameversion(string, optional): Specific version
-
search_docker
- Search for Docker images on Docker Hub
- Arguments:
query(string, required): Image name or search query
-
docker_info
- Get information about a specific Docker image
- Arguments:
name(string, required): Image name (e.g., user/repo)tag(string, optional): Specific tag
-
search_terraform
- Search for Terraform modules in the Terraform Registry
- Arguments:
query(string, required): Module name or search query
-
terraform_info
- Get information about a specific Terraform module
- Arguments:
name(string, required): Module name (format: namespace/name/provider)
-
terraform_latest_version
- Get the latest version of a specific Terraform module
- Arguments:
name(string, required): Module name (format: namespace/name/provider)
Installation
Using uv (recommended)
When using uv no specific installation is needed. We will
use uvx to directly run mcp-server-pacman.
Using PIP
Alternatively you can install mcp-server-pacman via pip:
pip install mcp-server-pacman
After installation, you can run it as a script using:
python -m mcp_server_pacman
Using Docker
You can also use the Docker image:
docker pull oborchers/mcp-server-pacman:latest
docker run -i --rm oborchers/mcp-server-pacman
Configuration
Configure for Claude.app
Add to your Claude settings:
Using uvx
"mcpServers": {
"pacman": {
"command": "uvx",
"args": ["mcp-server-pacman"]
}
}
Using docker
"mcpServers": {
"pacman": {
"command": "docker",
"args": ["run", "-i", "--rm", "oborchers/mcp-server-pacman:latest"]
}
}
Using pip installation
"mcpServers": {
"pacman": {
"command": "python",
"args": ["-m", "mcp-server-pacman"]
}
}
Configure for VS Code
For manual installation, add the following JSON block to your User Settings (JSON) file in VS Code. You can do this by pressing Ctrl + Shift + P and typing Preferences: Open User Settings (JSON).
Optionally, you can add it to a file called .vscode/mcp.json in your workspace. This will allow you to share the configuration with others.
Note that the
mcpkey is needed when using themcp.jsonfile.
Using uvx
{
"mcp": {
"servers": {
"pacman": {
"command": "uvx",
"args": ["mcp-server-pacman"]
}
}
}
}
Using Docker
{
"mcp": {
"servers": {
"pacman": {
"command": "docker",
"args": ["run", "-i", "--rm", "oborchers/mcp-server-pacman:latest"]
}
}
}
}
Customization - User-agent
By default, the server will use the user-agent:
ModelContextProtocol/1.0 Pacman (+https://github.com/modelcontextprotocol/servers)
This can be customized by adding the argument --user-agent=YourUserAgent to the args list in the configuration.
Development
Running Tests
-
Run all tests:
uv run pytest -xvs -
Run specific test categories:
# Run all provider tests uv run pytest -xvs tests/providers/ # Run integration tests for a specific provider uv run pytest -xvs tests/integration/test_pypi_integration.py # Run specific test class uv run pytest -xvs tests/providers/test_npm.py::TestNPMFunctions # Run a specific test method uv run pytest -xvs tests/providers/test_pypi.py::TestPyPIFunctions::test_search_pypi_success -
Check code style:
uv run ruff check . uv run ruff format --check . -
Format code:
uv run ruff format .
Debugging
You can use the MCP inspector to debug the server. For uvx installations:
npx @modelcontextprotocol/inspector uvx mcp-server-pacman
Or if you've installed the package in a specific directory or are developing on it:
cd path/to/pacman
npx @modelcontextprotocol/inspector uv run mcp-server-pacman
Release Process
The project uses GitHub Actions for automated releases:
- Update the version in
pyproject.toml - Create a new tag with
git tag vX.Y.Z(e.g.,git tag v0.1.0) - Push the tag with
git push --tags
This will automatically:
- Verify the version in
pyproject.tomlmatches the tag - Run tests and lint checks
- Build and publish to PyPI
- Build and publish to Docker Hub as
oborchers/mcp-server-pacman:latestandoborchers/mcp-server-pacman:X.Y.Z
Project Structure
The codebase is organized into the following structure:
src/mcp_server_pacman/
├── models/ # Data models/schemas
├── providers/ # Package registry API clients
│ ├── pypi.py # PyPI API functions
│ ├── npm.py # npm API functions
│ ├── crates.py # crates.io API functions
│ ├── dockerhub.py # Docker Hub API functions
│ └── terraform.py # Terraform Registry API functions
├── utils/ # Utilities and helpers
│ ├── cache.py # Caching functionality
│ ├── constants.py # Shared constants
│ └── parsers.py # HTML parsing utilities
├── __init__.py # Package initialization
├── __main__.py # Entry point
└── server.py # MCP server implementation
Tests follow a similar structure:
tests/
├── integration/ # Integration tests (real API calls)
├── models/ # Model validation tests
├── providers/ # Provider function tests
└── utils/ # Test utilities
Contributing
We encourage contributions to help expand and improve mcp-server-pacman. Whether you want to add new package indices, enhance existing functionality, or improve documentation, your input is valuable.
For examples of other MCP servers and implementation patterns, see: https://github.com/modelcontextprotocol/servers
Pull requests are welcome! Feel free to contribute new ideas, bug fixes, or enhancements to make mcp-server-pacman even more powerful and useful.
License
mcp-server-pacman is licensed under the MIT License. This means you are free to use, modify, and distribute the software, subject to the terms and conditions of the MIT License. For more details, please see the LICENSE file in the project repository.
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