FMP MCP Server
Provides tools, resources, and prompts for financial analysis using the Financial Modelling Prep API.
FMP MCP Server
A Model Context Protocol (MCP) server that provides tools, resources, and prompts for financial analysis using the Financial Modelling Prep API.
Features
Tools
- get_company_profile: Get comprehensive company information
- get_stock_quote: Real-time stock quotes and market data
- get_financial_statements: Income statement, balance sheet, and cash flow data
- get_key_metrics: Key financial metrics and KPIs
- get_financial_ratios: Comprehensive financial ratios for analysis
- get_dcf_valuation: Discounted cash flow valuation
- search_companies: Search for companies by name or symbol
- get_sector_performance: Market sector performance overview
Resources
- Market Sectors: Real-time sector performance data
- Company Profiles: Detailed company information
- Financial Statements: Complete financial statement data
Prompts
- financial_analysis: Comprehensive financial analysis workflow
- investment_research: Detailed investment research report
- sector_analysis: Sector performance and comparison analysis
Setup
-
Install dependencies:
uv sync -
Configure API access:
cp .env.example .env # Edit .env and add your Financial Modelling Prep API key -
Get API Key:
- Visit Financial Modelling Prep
- Sign up for an account
- Copy your API key to the
.envfile
Usage
With Claude Code
Add to your Claude Code MCP configuration:
{
"mcpServers": {
"fmp": {
"command": "uv",
"args": ["run", "python", "-m", "fmp_mcp_server.server"],
"env": {
"FMP_API_KEY": "your_api_key_here"
}
}
}
}
Direct Usage
# Run the server
uv run python -m fmp_mcp_server.server
# Or use the installed script
uv run fmp-mcp-server
Docker Usage
Build and run with Docker
# Build the image
docker build -t fmp-mcp-server .
# Run with environment file
docker run --env-file .env fmp-mcp-server
Using Docker Compose
# Start the service
docker-compose up -d
# View logs
docker-compose logs -f
# Stop the service
docker-compose down
Using pre-built image from GitHub Container Registry
docker run --env-file .env ghcr.io/ccdatatraits/fmp-mcp-server:latest
Development
-
Install with development dependencies:
uv sync --dev -
Run tests:
uv run pytest -
Format code:
uv run black src/ uv run ruff check src/ -
Type checking:
uv run mypy src/
API Rate Limits
The Financial Modelling Prep API has rate limits depending on your subscription:
- Free: 250 requests/day
- Starter: 300 requests/minute
- Professional: 2000 requests/minute
Configure rate limiting in your .env file if needed.
License
MIT License
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