SafetyCulture MCP Server
Ask natural language questions about your SafetyCulture data using the SafetyCulture API.
SafetyCulture MCP Server
A Model Context Protocol (MCP) server for the SafetyCulture API. This project allows users to ask natural language questions about their SafetyCulture data after providing an API key.
Features
- Query SafetyCulture data using natural language
- Analyze inspection data and trends
- Compare safety metrics across time periods and categories
- Visualize inspection trends over time
Setup
- Clone this repository
- Install dependencies:
pip install -r requirements.txt - Copy
example.envto.envand configure your SafetyCulture API key - Run the server using one of these methods:
run_server.bat- Run the server with configuration from .env filerun_with_key.bat YOUR_API_KEY- Run the server with the provided API key
Testing the API
To test if your SafetyCulture API key works properly:
test_api.bat YOUR_API_KEY
Additional testing options:
test_api.bat- Run tests in interactive mode (prompts for API key)test_api.bat feed YOUR_API_KEY- Test just the Feed APItest_api.bat url- Check which API URLs are accessible without authentication
Usage with Claude for Desktop
- Install Claude for Desktop
- Configure Claude for Desktop to use this MCP server by editing the configuration file at
~/Library/Application Support/Claude/claude_desktop_config.json(Mac) or%APPDATA%\Claude\claude_desktop_config.json(Windows) - Add the following configuration:
{
"mcpServers": {
"safetyculture": {
"command": "python",
"args": [
"/path/to/your/project/src/main.py"
]
}
}
}
- Restart Claude for Desktop
- Use the MCP tools to query your SafetyCulture data with questions like:
- "How many inspections were done in this site over the last 3 months?"
- "Compare any trends in rise of injuries report for this category"
Available Tools
Authentication
authenticate: Authenticate with the SafetyCulture API using your API key
Inspection Data (Using Feed API)
get_inspections: Get SafetyCulture inspections for a specific time periodget_inspection_trends: Analyze trends in SafetyCulture inspections over timecompare_injury_reports: Compare injury reports between two time periods
Action Data (Using Feed API)
get_actions: Get SafetyCulture actions for a specific time period- Filter by status (e.g., 'in_progress', 'completed', 'overdue')
- Filter by priority (e.g., 'low', 'medium', 'high')
- View detailed information about each action
get_action_details: Get detailed information about a specific action by ID
About the Feed API
This MCP server uses the SafetyCulture Feed API, which provides a simple way to access collections of resources:
/feed/inspections: For listing inspections with various filter parameters/feed/actions: For listing actions with various filter parameters
The Feed API is preferred over the individual resource endpoints when you need to list multiple items.
Development
Project Structure
.
├── README.md
├── requirements.txt
├── example.env
└── src/
├── main.py # Main entry point
├── safetyculture_api/ # SafetyCulture API client
│ ├── __init__.py
│ └── client.py # API client implementation
├── tools/ # MCP tools
│ ├── __init__.py
│ └── inspection_tools.py # Inspection and action tools
└── utils/ # Utility modules
├── __init__.py
├── analysis.py # Data analysis utilities
├── config.py # Configuration management
└── date_utils.py # Date parsing utilities
Development Log
Initial Setup
- Created project structure
- Set up git repository
- Added README and requirements
- Implemented SafetyCulture API client
- Added MCP tools for querying inspection data
- Added utility modules for date parsing and data analysis
- Added configuration management
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