DoorDash MCP Server
Enables AI agents to search restaurants, browse menus, and manage DoorDash carts through structured JSON data. It leverages a background browser to handle authentication and direct GraphQL API calls for efficient interaction.
README
DoorDash MCP Server
An MCP (Model Context Protocol) server that lets AI agents search restaurants, browse menus, compare prices, and manage your DoorDash cart — all without opening a browser or wasting tokens on HTML parsing.
How It Works
Instead of using a browser-based AI agent (which eats context and tokens parsing HTML), this MCP server runs a lightweight background browser that handles authentication and API calls. Your AI agent gets clean JSON — no HTML, no screenshots, no wasted tokens.
Under the hood, it uses DoorDash's internal GraphQL API (reverse-engineered from web traffic) via a Playwright browser instance that maintains your session.
Features
| Tool | Description |
|---|---|
login_check |
Check if your DoorDash session is active |
search_restaurants |
Search restaurants and food by keyword |
get_store_menu |
Get full menu with prices, deals, and badges |
add_to_cart |
Add items to your cart |
remove_from_cart |
Remove items from cart |
list_carts |
View all active carts |
order_history |
Get recent order history |
Deals and promotions (Buy 1 Get 1 Free, DashPass offers, etc.) are surfaced in both search results and menu items.
Setup
1. Install
git clone <this-repo>
cd doordash-mcp
npm install
npx playwright install chromium
2. Configure Email
cp .env.example .env
Edit .env and set your DoorDash account email:
DOORDASH_EMAIL=your-email@example.com
3. Login (one-time)
node login.js
This opens a browser, sends an OTP to your email/phone, and saves the session. You only need to do this once (or when your session expires).
On headless Linux: The script auto-starts a virtual display via Xvfb. Make sure xvfb is installed (sudo apt install xvfb).
4. Add to Claude Code
Add to ~/.claude/settings.json:
{
"mcpServers": {
"doordash": {
"command": "node",
"args": ["/absolute/path/to/doordash-mcp/mcp-server.js"]
}
}
}
Restart Claude Code to pick up the new server.
Usage
Once configured, just talk to your AI agent naturally:
- "Search for biryani near me"
- "Show me the Pizza Hut menu"
- "What's the cheapest dosa at Thanjai Restaurant?"
- "Add 2 Masala Dosas to my cart"
- "What did I order last time?"
- "Find me a burger place with deals"
How the Spy Tool Works
Want to discover new endpoints or debug? The spy.js script opens a browser and logs all DoorDash API traffic as you browse:
node spy.js
Browse DoorDash normally — search, view menus, add to cart. All API calls get logged to logs/api-calls.jsonl. Close the browser when done.
Architecture
AI Agent ──(MCP stdio)──> mcp-server.js ──(GraphQL via Playwright)──> DoorDash API
│
browser-data/ (persistent session cookies)
- No headless HTTP: Cloudflare blocks plain HTTP requests. The server uses a real browser (positioned off-screen on macOS, or via Xvfb on Linux)
- Persistent session: Login once, the browser profile in
browser-data/keeps your cookies alive - Minimal tokens: AI agents get structured JSON, never HTML
Platform Notes
| Platform | How it runs |
|---|---|
| macOS | Browser window positioned off-screen (-32000, -32000) |
| Linux with display | Same as macOS |
| Linux headless (SSH) | Auto-starts Xvfb virtual display |
Disclaimer
This project reverse-engineers DoorDash's internal web APIs for personal use. It is not affiliated with, endorsed by, or connected to DoorDash in any way. Use at your own risk — endpoints may change without notice, and automated access may violate DoorDash's Terms of Service.
License
MIT
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