SafetyCulture MCP Server

SafetyCulture MCP Server

By MCP-Mirror GitHub

Mirror of

safetyculture mcp-server
Overview

what is SafetyCulture MCP Server?

SafetyCulture MCP Server is a Model Context Protocol (MCP) server designed for the SafetyCulture API, enabling users to query their SafetyCulture data using natural language after providing an API key.

how to use SafetyCulture MCP Server?

To use the SafetyCulture MCP Server, clone the repository, install dependencies, configure your SafetyCulture API key in the .env file, and run the server using the provided scripts.

key features of SafetyCulture MCP Server?

  • Natural language querying of SafetyCulture data
  • Analysis of inspection data and trends
  • Comparison of safety metrics across different time periods and categories
  • Visualization of inspection trends over time

use cases of SafetyCulture MCP Server?

  1. Analyzing inspection data for safety compliance.
  2. Generating reports on safety trends over time.
  3. Comparing safety metrics across different sites or categories.

FAQ from SafetyCulture MCP Server?

  • Can I use this server without an API key?

No, an API key is required to access SafetyCulture data.

  • Is there a graphical interface for this server?

No, this server operates through command line and natural language queries.

  • What programming language is this project written in?

The SafetyCulture MCP Server is written in Python.

Content

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

  1. Clone this repository
  2. Install dependencies: pip install -r requirements.txt
  3. Copy example.env to .env and configure your SafetyCulture API key
  4. Run the server using one of these methods:
    • run_server.bat - Run the server with configuration from .env file
    • run_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 API
  • test_api.bat url - Check which API URLs are accessible without authentication

Usage with Claude for Desktop

  1. Install Claude for Desktop
  2. 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)
  3. Add the following configuration:
{
    "mcpServers": {
        "safetyculture": {
            "command": "python",
            "args": [
                "/path/to/your/project/src/main.py"
            ]
        }
    }
}
  1. Restart Claude for Desktop
  2. 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 period
  • get_inspection_trends: Analyze trends in SafetyCulture inspections over time
  • compare_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
No tools information available.

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