PterodactylMCP
MCP server for managing Pterodactyl game panel resources (users, servers, nodes, locations, etc.) via the Application API.
README
PterodactylMCP
Model Context Protocol (MCP) server for the Pterodactyl Panel Application API (admin endpoints), built with FastMCP.
Quick install
Pick whichever path matches your client.
uvx (recommended, no checkout needed):
uvx pterodactyl-mcp
pip:
pip install pterodactyl-mcp
pterodactyl-mcp
Docker:
docker build -t pterodactyl-mcp .
docker run --rm -i \
-e PANEL_URL=https://panel.example.com \
-e PANEL_TOKEN=ptla_REPLACE_ME \
pterodactyl-mcp
Claude Desktop one-click (DXT): see Building a DXT bundle below.
Smithery: a ready-to-use smithery.yaml ships at the repo root.
Capabilities
| Kind | Count | Highlights |
|---|---|---|
| Tools | 50 | All Application API routes (users, servers, nodes, locations, nests/eggs, databases) plus AI-friendly helpers and a generic raw-request escape hatch. |
| Prompts | 2 | troubleshoot_server, provision_user_and_server |
| Resources | 2 | pterodactyl://panel/overview, pterodactyl://servers/{server_id}/summary |
What this provides
- MCP tools that map to Pterodactyl Application API routes (users, servers, nodes, locations, nests/eggs, server databases).
- A generic
ptero_app_requesttool for calling any/api/application/...endpoint not yet mapped. - AI-friendly, token-efficient tools (search, compact lists, summaries).
Supported endpoints (Application API)
This server exposes one MCP tool per route from the NETVPX Application API docs, including:
- Users: list/get/create/update/delete, lookup by
external_id - Servers: list/get/create/delete, lookup by
external_id, update details/build/startup, suspend/unsuspend, reinstall - Nodes: list/get/create/update/delete, list deployable nodes, get config, manage allocations
- Locations: list/get/create/update/delete
- Nests/Eggs: list nests, get nest, list eggs, get egg
- Server databases: list/get/create/delete, reset database password
AI-friendly tools (recommended)
These tools are designed to keep responses small and “LLM-friendly”:
ptero_ai_search_users(top-N fuzzy search across username/email/name/external_id/uuid)ptero_ai_search_servers(top-N fuzzy search across name/identifier/uuid/external_id)ptero_ai_list_users/ptero_ai_list_servers(compact, safe defaults)ptero_ai_get_user_summary/ptero_ai_get_server_summary(compact single-resource views)ptero_ai_panel_totals(counts for common resources)
References
- FastMCP Quickstart: https://gofastmcp.com/getting-started/quickstart
- NETVPX Pterodactyl Application API docs: https://pterodactyl-api-docs.netvpx.com/docs/api/application
- NETVPX Authentication docs: https://pterodactyl-api-docs.netvpx.com/docs/authentication
Requirements
- Python 3.10+
- A Pterodactyl Application API key (
ptla_...) with appropriate permissions
Getting an Application API key
You need an Application token (usually ptla_...), not a Client token (ptlc_...).
Typical flow in the panel:
- Sign in with an admin account
- Open your account’s API credentials page
- Create an Application API key and copy it
If your panel UI differs, follow the Authentication reference link below.
Setup
- Create a virtual environment (recommended):
- Windows (PowerShell):
python -m venv .venv; .\\.venv\\Scripts\\Activate.ps1 - macOS/Linux:
python3 -m venv .venv && source .venv/bin/activate
- Install dependencies:
pip install -r requirements.txt
- Configure environment variables:
- Copy
.env.exampleto.env - Set:
PANEL_URL(e.g.https://panel.example.com)PANEL_TOKEN(your Application API key, usually starts withptla_)
Optional env vars:
PANEL_TIMEOUT(seconds, default30)PANEL_VERIFY_SSL(true/false, defaulttrue)PANEL_USER_AGENT(defaultPterodactylMCP/0.1)
Run the MCP server
STDIO transport (recommended for desktop MCP clients)
From the repo root:
python run_server.py
Alternatively:
python -m pterodactyl_mcp
HTTP transport (optional)
python -m pterodactyl_mcp --transport sse --host 127.0.0.1 --port 8000 --path /mcp
Connecting from an MCP client
Most MCP desktop clients launch the server as a subprocess. Point them at:
- Command:
python - Args:
C:\\path\\to\\PterodactylMCP\\run_server.py(recommended)
If your client does not run with this repo as the working directory, prefer setting PANEL_URL and PANEL_TOKEN in the client config environment instead of relying on .env discovery.
Claude Desktop example (uvx — works on Windows/macOS/Linux)
Edit your claude_desktop_config.json and add:
{
"mcpServers": {
"pterodactyl": {
"command": "uvx",
"args": ["pterodactyl-mcp"],
"env": {
"PANEL_URL": "https://panel.example.com",
"PANEL_TOKEN": "ptla_REPLACE_ME"
}
}
}
}
Claude Desktop (from a local checkout, Windows)
{
"mcpServers": {
"pterodactyl": {
"command": "python",
"args": ["C:\\\\path\\\\to\\\\PterodactylMCP\\\\run_server.py"],
"env": {
"PANEL_URL": "https://panel.example.com",
"PANEL_TOKEN": "ptla_REPLACE_ME"
}
}
}
}
Building a DXT bundle
This repo ships a manifest.json so you can build a one-click .dxt for Claude Desktop:
npm install -g @anthropic-ai/dxt
dxt pack
The resulting .dxt file can be dropped into Claude Desktop — it prompts the user for PANEL_URL and PANEL_TOKEN on install.
Development
pip install -e ".[dev]"
ruff check .
pytest
License
Tool naming
Route tools are generated using the pattern:
ptero_app_{method}_{path} (with /api/application/ removed, / → _, - → _, {param} → param).
Calling tools
- Each route tool takes the route path params as normal arguments (e.g.
server,user,node), plus optionalqueryandbody. - Use
queryfor query-string parameters (pagination, filters, includes), andbodyfor JSON request payloads. - To discover all tool names and their routes, call
ptero_app_list_endpoints. - For token efficiency, prefer the
ptero_ai_*tools for discovery (search/list/summary), then call the rawptero_app_*route tool once you have the exact ID.
Example query params (brackets are valid dict keys):
{"filter[email]": "admin@example.com", "include": "servers"}
Example workflow:
- Find the user you mean (compact results):
- Call
ptero_ai_search_userswithquery="pixel flip"
- Then fetch the full object only for the selected match:
- Call
ptero_app_get_users_userwithuser=<id>
To list all exposed tools and their routes, call:
ptero_app_list_endpoints
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