booking-mcp
MCP server exposing a PostgreSQL booking datastore to MCP clients, enabling read/write operations on staff, schedules, clients, and bookings with optional human-approval workflow integration.
README
booking-mcp
A standalone MCP server (built on
FastMCP) that exposes the booking datastore used by
booking-agent to any MCP-compatible client. It is
decoupled from booking-agent and connects to the shared DB with its own
SQLAlchemy layer. booking-agent owns the
schema and migrations; a schema-contract test guards against drift.
Features
Resources (read-only, URI-addressed)
| URI | Returns |
|---|---|
booking://staff |
active cleaners (skills + location) |
booking://staff/{staff_id} |
one staff member |
booking://schedule/{date} |
appointments on a date |
booking://clients/{email} |
client + contacts + saved preferences |
Read tools (readOnly, idempotent)
search_availability(service, date, time, latitude?, longitude?, radius_km?): staff who can do the job, are free at the slot, and are within range. This uses the same skill/free/geo filter as the booking engine.find_next_available(service, date, time, days?, …): first day within the window with a free, qualified cleaner.list_staff(skill?),daily_schedule(date),get_client(email).
Write tools (only when READ_ONLY=false; each asks for confirmation via MCP elicitation before writing)
create_booking(...): client + job + appointment, idempotent (deduped on a hash of all material fields).cancel_booking(appointment_id): idempotent delete.reschedule_booking(appointment_id, date, time): moves a slot and rejects staff conflicts.add_customer_preference(email, note).book_from_text(request): parses a free-text request using the client's LLM via MCP sampling, then confirms and books. Requires a sampling-capable client. Idempotent.
Writes go directly to the DB and bypass booking-agent's approval workflow. Use the workflow bridge below if you want human approval.
Workflow bridge tools (only when BOOKING_AGENT_URL is set; routes through booking-agent's human-approval workflow over HTTP)
book_via_workflow(message): start an approval run from a natural-language request and return{run_id, status}.get_workflow_run(run_id): poll status and the final response.decide_workflow_run(run_id, approve, by?, reason?): submit the approve/reject decision.
Prompts: book_cleaning(...), summarize_schedule(date).
All inputs are validated (real calendar dates/times, email format); all outputs are typed (structured content).
Quickstart
cp .env.example .env # point DATABASE_URL at the shared Postgres
make install # uv sync --dev
make dev-up # start Postgres on :5433 (Docker)
make seed # create_all + demo data (requires STANDALONE_MODE guard)
make server # run in stdio mode
For the HTTP transport on the host: make server-http (binds :8000).
Fully standalone (own DB + data). No booking-agent needed. One-shot the whole stack:
make stack-up # docker compose up (db + seed + mcp on :8000)
booking-mcp-seed bootstraps the schema with create_all and populates demo staff, clients,
appointments, and preferences so the read tools return data immediately. STANDALONE_MODE=true
is required. The guard prevents accidental schema mutation against a shared DB. When sharing a
DB with booking-agent, skip the seed: booking-agent owns the canonical Alembic migrations.
API / Usage
Any MCP client takes the standard mcpServers config (the same JSON an mcp add accepts).
Local (stdio). The client launches the server as a subprocess. This is local and trusted, so no auth is required:
{
"mcpServers": {
"booking": {
"command": "/ABS/PATH/booking-mcp/.venv/bin/booking-mcp",
"env": {
"DATABASE_URL": "postgresql+psycopg://booking:booking@localhost:5432/booking",
"READ_ONLY": "true"
}
}
}
}
(booking-mcp is the console script installed into the venv.)
Remote (HTTP). Connect over the streamable-HTTP transport with a Bearer key. Mint a key, then
pass the hash in API_KEYS (the server refuses to start write-enabled over HTTP without credentials):
# 1. Mint a key (prints plaintext once + the JSON record to add to API_KEYS)
# Available scopes: read, write, workflow, pii (grant only what the client needs)
booking-mcp-mintkey --client claude-desktop --scopes read,write,pii
# 2. Start the server
API_KEYS='[{"hash":"<paste-hash>","client_id":"claude-desktop","scopes":["read","write","pii"]}]' \
READ_ONLY=false booking-mcp
{
"mcpServers": {
"booking": {
"url": "http://your-host:8000/mcp",
"headers": { "Authorization": "Bearer <plaintext-key>" }
}
}
}
A client with no or wrong key gets 401. Scope enforcement is strict: a key without read cannot
see read tools; write/workflow/pii are additional gates on top. stdio needs no token
because it is local/trusted, so all surfaces are open.
Legacy:
AUTH_TOKEN=<token>still works as a single full-access fallback but is deprecated It grants read+write with no scope isolation. Migrate toAPI_KEYS.
Development
Common make targets:
| Target | What it runs |
|---|---|
make install |
uv sync --dev |
make dev-up / dev-stop / dev-down |
Postgres container lifecycle |
make seed |
Schema + demo data (STANDALONE_MODE=true) |
make server |
stdio server on host |
make server-http |
HTTP server on host (:8000) |
make stack-up / stack-down |
Full containerised stack |
make mintkey ARGS="--client X --scopes read,pii" |
Mint an API key |
make db |
psql shell into the running container |
make test |
pytest --cov=booking_mcp |
make lint |
ruff check src tests |
make fmt |
ruff format src tests |
make audit |
pip-audit |
make check |
lint then test |
Testing
make test # pytest --cov=booking_mcp, requires 100% coverage to pass
- In-memory client: tools/resources are exercised through
fastmcp.Clientagainst the server object, with no subprocess. - Testcontainer Postgres: the MCP's own
create_allschema, truncated per test (real FK/types). - Schema-contract test (
test_schema_contract.py): when../booking-agent/backendis checked out, it applies booking-agent's real Alembic migrations to a fresh container and runs the MCP queries against them. This catches drift between this server's models and the owning service's schema. Skips when booking-agent isn't present.
Configuration
Copy .env.example to .env. All settings are read from the environment (or .env).
| Variable | Default | Purpose |
|---|---|---|
DATABASE_URL |
postgresql+psycopg://booking:booking@localhost:5432/booking |
The same Postgres booking-agent uses; booking-agent owns the schema, this is a client. |
READ_ONLY |
true |
Set to false to enable the write tools. Writes bypass booking-agent's human-approval workflow, so enable deliberately. |
STANDALONE_MODE |
false |
Must be true to run booking-mcp-seed / create_all(). Guards against accidental schema mutation on a shared DB. Not needed when connecting to a DB already managed by booking-agent. |
API_KEYS |
(empty) | Preferred HTTP auth. JSON array of {hash, client_id, scopes} records. Store hashes only, never plaintext. Mint records with booking-mcp-mintkey. All four scopes (read, write, workflow, pii) are enforced at the auth layer: a key sees only the surfaces its scopes explicitly cover. |
AUTH_TOKEN |
(empty) | Deprecated: single static token granting full access (all scopes). Superseded by API_KEYS. Kept for backward compatibility. |
REDACT_PII |
true |
Mask phone numbers (last-4 digits) and addresses ([REDACTED]) in client resources and get_client. Resources are pulled into model context, where PII can spread to prompts/logs/transcripts. Set false only for internal tooling backed by a scoped key. |
FORCE_WORKFLOW_FOR_SAMPLING |
false |
Redirect book_from_text to book_via_workflow instead of writing directly. Recommended in production: sampled LLM output carries implicit trust/quota risks. |
BOOKING_AGENT_URL |
(empty) | When set, the workflow-bridge tools are registered and POST to booking-agent so a booking goes through its full approval workflow. Decoupled: HTTP only, no import. |
BOOKING_AGENT_TIMEOUT |
10.0 |
HTTP timeout (seconds) for workflow-bridge calls to booking-agent. |
SAMPLE_TIMEOUT |
30.0 |
Cap on the client's LLM sampling call in book_from_text so a hung client can't pin a worker. |
DB_POOL_SIZE |
20 |
Connection pool size (sized for FastMCP's sync-tool threadpool). |
DB_MAX_OVERFLOW |
20 |
Pool overflow beyond DB_POOL_SIZE. |
DB_POOL_RECYCLE |
3600 |
Recycle connections after this many seconds. |
DB_POOL_TIMEOUT |
10 |
Seconds to wait for a pooled connection. |
DB_STATEMENT_TIMEOUT_MS |
30000 |
Per-query statement timeout (ms). |
LOG_LEVEL |
INFO |
Logging level. |
Notes
- Schema ownership: in standalone mode (
STANDALONE_MODE=true),booking-mcp-seedbootstraps the schema withcreate_all. When sharing a DB with booking-agent, booking-agent owns the canonical Alembic migrations. Skip the seed entirely; the schema-contract test guards against model drift. - No FastAPI/LangGraph. FastMCP brings its own (Starlette/uvicorn) HTTP stack for the HTTP transport.
- MCP client features used: elicitation (write confirmation), sampling (
book_from_text). Both degrade gracefully. A client that does not support them just cannot call those tools. - Per-resource content subscriptions and argument completions are not supported. Neither is first-class in this FastMCP version. Clients re-read
booking://schedule/{date}for fresh data.
License
MIT. See LICENSE.
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