OdooSurface MCP
Enables AI agents to interact with Odoo ERP as the authenticated user, with tools for discovery, planning, and mutations bounded by user permissions.
README
OdooSurface MCP
User-equivalent Odoo access for AI agents — what the authenticated user can do in their browser, nothing more.
Prerequisites
- Node.js 18+ (ships with
npx— no extra install needed) - A running Odoo instance (17.0+, CE or EE)
- An MCP-compatible client (VS Code, Claude Desktop, Claude Code, Cursor, …)
Configure your MCP client
Add this to your MCP client config (e.g. Claude Desktop claude_desktop_config.json):
{
"mcpServers": {
"odoo-surface": {
"command": "npx",
"args": ["-y", "@suco/odoo-surface-mcp@latest"],
"env": {
"ODOO_URL": "http://localhost:8069",
"ODOO_DB": "your_database",
"ODOO_USER": "admin",
"ODOO_PASSWORD": "admin"
}
}
}
}
Restart your MCP client after saving. npx downloads and runs the package automatically — no further install steps.
Authentication
Option A — .env file (keep credentials out of MCP config)
Instead of putting credentials in your MCP client JSON, create a .env file in the directory where you run the MCP:
ODOO_URL=http://localhost:8069
ODOO_DB=your_database
ODOO_USER=admin
ODOO_PASSWORD=your_password
Remove the env block from the MCP client config — the .env file is loaded automatically.
Option B — API Key (recommended, no password stored)
Since Odoo 14+, users can generate personal API keys that act as a password replacement. Each user generates their own key from their own account — there is no admin-side menu for this.
- Log in as the user the MCP will authenticate as
- Click the user avatar (top-right) → Preferences
- Go to the Account Security tab
- Under API Keys → click New API Key
- Enter your password when prompted, give the key a name, copy the generated key
- Use it as
ODOO_PASSWORD— the actual account password is never stored
ODOO_URL=http://localhost:8069
ODOO_DB=your_database
ODOO_USER=admin
ODOO_PASSWORD=your_api_key_here
API keys can be revoked individually from the same screen without changing the account password.
Advanced Configuration
Multiple Odoo instances
Technical users commonly work with more than one Odoo instance (local dev, staging, production). Each instance gets its own named entry in the MCP config — they run as independent processes with fully isolated credentials. The AI client exposes them as separate tool namespaces.
{
"mcpServers": {
"odoo-local": {
"command": "npx",
"args": ["-y", "@suco/odoo-surface-mcp@latest"],
"env": {
"ODOO_URL": "http://localhost:8069",
"ODOO_DB": "dev",
"ODOO_USER": "admin",
"ODOO_PASSWORD": "dev_api_key"
}
},
"odoo-production": {
"command": "npx",
"args": ["-y", "@suco/odoo-surface-mcp@latest"],
"env": {
"ODOO_URL": "https://mycompany.odoo.com",
"ODOO_DB": "prod",
"ODOO_USER": "admin",
"ODOO_PASSWORD": "prod_api_key"
}
}
}
}
Note: The
.envfile approach (Option A) does not work for multi-instance setups — both processes share the same working directory and would load the same file. Use theenvblock per entry instead.
Debug mode
Registers additional tools: ping, echo, inspect_view, inspect_action, inspect_fields, dump_cache, clear_cache, restart_mcp.
"args": ["-y", "@suco/odoo-surface-mcp@latest", "--debug"]
Tools
| Layer | Tools |
|---|---|
| Guidance | list_skills, get_skills, find_skill, list_workflows, get_workflows |
| Discovery | get_models, get_model_actions, get_model_interface |
| Planning | get_available_actions |
| Supporting | list_records, get_record, search_records, get_fields, get_defaults, get_filters, list_snippets, get_snippet, list_attachments, fetch_and_upload, translation_get, translation_update |
| Intent | create, update, execute_action, archive, post_message, schedule_activity, set_page_arch, set_page_visibility |
Architecture
Core Contract
The agent may only do what the authenticated user can do in their browser. Scope is bounded by the user's menus, views, and ACL — nothing more. Tool verbs express functional intent (publish, confirm) rather than raw ORM operations. Discovery is lazy: the agent resolves only what the current prompt requires.
Layered Tool Surface
| Layer | Role | When invoked |
|---|---|---|
| 0 — Guidance | Canonical recipes (skills, workflows) the agent consults before any multi-step operation. Pure documentation, no side effects. | Before planning |
| 1 — Discovery | Establishes the bounded universe of models and reachable relations for the current user. | At intent resolution |
| 2 — Planning Bridge | Answers "what is live on this specific record right now" — record-state-aware actions. | Once a record is identified |
| 3 — Supporting | Read-only data fetchers used silently to fill gaps in the agent's plan. | Throughout planning |
| 4 — Intent | Mutating actions that fulfill the user's request — bounded by the user's UI permissions. | Final execution |
Planning Loop
User prompt
├── Discovery — what models/relations does this user have?
├── (optional) — locate the specific record
├── Planning Bridge — what is live on that record right now?
├── Guidance — consult skills/workflows for multi-step recipes
└── Intent — execute the mutation(s)
Skills and workflows are authored in skills/ and workflows/ as markdown with YAML
frontmatter; they are exposed as Layer 0 tools at runtime.
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