mcp-server-starter
A small but real MCP server (FastMCP) with inventory management tools and a destructive action that requires human confirmation before executing.
README
mcp-server-starter
A small but real MCP server (FastMCP) — with a destructive action guarded behind human confirmation.
Most "MCP server" examples stop at a hello_world tool. This one shows the part
that actually matters when an agent is on the other end: a destructive tool that
refuses to run until a confirmation token is supplied, forcing the agent to
surface the decision to a human instead of wiping data on its own.
It exposes a tiny inventory domain as MCP tools + one resource, over stdio transport — drop-in for Claude Desktop, Cursor, or the MCP Inspector.
Tools
| Tool | Tier | Behavior |
|---|---|---|
list_items / get_item |
read | runs freely |
add_item / adjust_quantity |
low-impact write | runs freely (validates inputs) |
delete_all_items(confirm_token) |
destructive | guarded — returns a one-time token first; only deletes when called again with that token |
inventory://summary (resource) |
read | human-readable inventory snapshot |
The guard pattern (delete_all_items) is the point: call it once with no token →
you get back {"status": "confirmation_required", "confirm_token": "..."} → a human
approves → call again with the token → it executes. An irreversible action never
runs on the agent's say-so alone.
Quick start
python -m venv .venv && source .venv/bin/activate
pip install -r requirements.txt
python server.py # stdio transport
Inspect it interactively:
npx @modelcontextprotocol/inspector python server.py
Wire it into Claude Desktop / Cursor
Add to your MCP config (claude_desktop_config.json or .cursor/mcp.json):
{
"mcpServers": {
"inventory-starter": {
"command": "python",
"args": ["/absolute/path/to/mcp-server-starter/server.py"]
}
}
}
Tip (Claude Code schema): for HTTP-based servers use
"type": "http"— the validator rejects the spec-name"streamable-http"even though they're the same transport. (stdio servers like this one don't need atype.)
Going further
- Swap the in-memory
_ITEMSdict for Postgres/Supabase (see the companionfastapi-supabase-multitenant-starter). - Route the confirmation to Slack/web instead of a token — see
agent-guardrailsfor a pluggable approver + audit trail. - For a LangGraph agent that consumes a guarded tool like this, see
langgraph-hitl-agent.
License
MIT.
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