qrz-mcp
MCP server for QRZ.com — callsign lookups, DXCC entity resolution, and logbook queries through any MCP-compatible AI assistant.
README
<!-- mcp-name: io.github.qso-graph/qrz-mcp -->
qrz-mcp
MCP server for QRZ.com — callsign lookups, DXCC entity resolution, and logbook queries through any MCP-compatible AI assistant.
Part of the qso-graph project. Uses qso-graph-auth for credential management.
Install
pip install qrz-mcp
Tools
| Tool | API | Auth | Description |
|---|---|---|---|
qrz_lookup |
XML | Session key | Callsign lookup (name, grid, DXCC, license class, QSL info, image) |
qrz_dxcc |
XML | Session key | DXCC entity resolution from callsign or entity code |
qrz_logbook_status |
Logbook | API key | Logbook stats (QSO count, DXCC total, date range) |
qrz_logbook_fetch |
Logbook | API key | Query QSOs with filters and transparent pagination |
qrz_download |
Logbook | API key | Download full logbook as ADIF |
get_version_info |
— | None | Service version + upstream QRZ API version (fleet identity attestation) |
Quick Start
1. Set up credentials
qrz-mcp uses qso-graph-auth personas for credential management. QRZ has two separate auth mechanisms — set up whichever you need:
# Install qso-graph-auth if you haven't
pip install qso-graph-auth
# Create a persona
qso-auth persona create ki7mt --callsign KI7MT
# Enable QRZ provider
qso-auth persona provider ki7mt qrz --username KI7MT
# Set password (for XML API: qrz_lookup, qrz_dxcc)
qso-auth persona secret ki7mt qrz
# Set API key (for Logbook API: qrz_logbook_status, qrz_logbook_fetch)
qso-auth creds set --persona ki7mt --provider qrz --api-key YOUR_API_KEY
XML API (callsign lookup, DXCC) requires a QRZ XML Subscription ($35.95/yr). Free tier returns name and address only.
Logbook API requires an API key from QRZ Settings > API.
2. Configure your MCP client
qrz-mcp works with any MCP-compatible client. Add the server config and restart — tools appear automatically.
Claude Desktop
Add to claude_desktop_config.json (~/Library/Application Support/Claude/ on macOS, %APPDATA%\Claude\ on Windows):
{
"mcpServers": {
"qrz": {
"command": "qrz-mcp"
}
}
}
Claude Code
Add to .claude/settings.json:
{
"mcpServers": {
"qrz": {
"command": "qrz-mcp"
}
}
}
ChatGPT Desktop
ChatGPT supports MCP via the OpenAI Agents SDK. Add under Settings > Apps & Connectors, or configure in your agent definition:
{
"mcpServers": {
"qrz": {
"command": "qrz-mcp"
}
}
}
Cursor
Add to .cursor/mcp.json (project-level) or ~/.cursor/mcp.json (global):
{
"mcpServers": {
"qrz": {
"command": "qrz-mcp"
}
}
}
VS Code / GitHub Copilot
Add to .vscode/mcp.json in your workspace:
{
"servers": {
"qrz": {
"command": "qrz-mcp"
}
}
}
Gemini CLI
Add to ~/.gemini/settings.json (global) or .gemini/settings.json (project):
{
"mcpServers": {
"qrz": {
"command": "qrz-mcp"
}
}
}
3. Ask questions
"Look up W1AW on QRZ — what's their grid and license class?"
"What DXCC entity is VP8PJ?"
"How many QSOs do I have in my QRZ logbook?"
"Show me all 20m FT8 QSOs from my QRZ logbook this year"
Rate Limiting
QRZ enforces undocumented rate limits that can trigger 24-hour IP bans. qrz-mcp protects you:
- 500ms minimum delay between all API calls
- Token bucket: 35 requests/minute
- 60s freeze on authentication failures
- 3600s freeze on connection refused (IP ban detection)
- In-memory response cache (5 min for callsigns, 1 hour for DXCC)
Testing Without Credentials
Set the mock environment variable to test all 4 tools without QRZ credentials:
QRZ_MCP_MOCK=1 qrz-mcp
MCP Inspector
qrz-mcp --transport streamable-http --port 8002
Then open the MCP Inspector at http://localhost:8002.
Development
git clone https://github.com/qso-graph/qrz-mcp.git
cd qrz-mcp
pip install -e .
QRZ Subscription Tiers
| Feature | Free | XML Data ($35.95/yr) |
|---|---|---|
| Callsign lookups/day | 100 | Unlimited |
| Fields returned | Name + address only | All (grid, lat/lon, DXCC, class, QSL, image) |
| Logbook API | No | Yes |
| DXCC lookup | No | Yes |
License
GPL-3.0-or-later
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