OpenAI Ads MCP Server
An MCP server that exposes the ChatGPT Ads API as tools an LLM host can call.
README
OpenAI Ads MCP Server (ChatGPT Ads)
An MCP (Model Context Protocol) server that
exposes the ChatGPT Ads API
(https://api.ads.openai.com/v1) as tools an LLM host can call. Runs as a plain
Python process — no cloud platform required.
What it exposes
Tools map to the Advertiser API documented under Ads → API Reference:
| Area | Tools |
|---|---|
| Ad account | get_ad_account |
| Campaigns | list_campaigns, get_campaign |
| Ad groups | list_ad_groups, get_ad_group |
| Ads | list_ads, get_ad |
| Insights | get_ad_account_insights, get_campaign_insights, get_ad_group_insights, get_ad_insights |
Only read/list/report tools are registered (GET-equivalent Ads calls).
Mutating actions (create/update/activate/pause/archive/upload) are omitted for now.
All exposed tools set read-only hints (readOnlyHint) for MCP clients.
Architecture
python -m openai_ads_mcp stdio (Cursor, Claude Desktop, etc.)
python -m openai_ads_mcp --transport http streamable HTTP (remote clients)
└─ openai_ads_mcp/server.py registers every tool
├─ coordinator.py FastMCP singleton
├─ client.py httpx wrapper + bearer auth
└─ tools/ resource modules
- Single registration point.
openai_ads_mcp/server.pyimports all tool modules. - Two transports. Stdio for local IDE hosts; HTTP for remote MCP clients (e.g. via ngrok).
Authentication
- This server → Ads API. Set
OPENAI_ADS_API_KEY(headerAuthorization: Bearer …per the authentication docs). - Caller → this server. Not enforced by default. Put auth (API gateway, reverse proxy, VPN, etc.) in front of HTTP mode if you expose it publicly.
Secrets: keep Ads keys out of git — copy .env.example to .env and add your key there.
Never commit real keys.
Quick start
Prerequisites
- Python 3.11+
- An OpenAI Ads API key
Install
python -m venv .venv
.\.venv\Scripts\Activate.ps1
python -m pip install -U pip
pip install -r requirements.txt
pip install -e .
Copy the example env file and add your key:
copy .env.example .env
# Edit .env and set OPENAI_ADS_API_KEY
Run (stdio — for Cursor and other IDE MCP hosts)
The process blocks with little or no visible output: MCP uses stdin/stdout for JSON-RPC. You should see a one-line notice on stderr; do not run the server interactively in a normal terminal expecting a prompt.
python -m openai_ads_mcp
Equivalent commands:
openai-ads-mcp
python -m openai_ads_mcp.server
Cursor MCP config — use your venv's python.exe as command, project root as cwd:
{
"mcpServers": {
"openai-ads": {
"command": "C:\\path\\to\\chatgptads-mcp\\.venv\\Scripts\\python.exe",
"args": ["-m", "openai_ads_mcp"],
"cwd": "C:\\path\\to\\chatgptads-mcp"
}
}
}
Or set OPENAI_ADS_API_KEY in the env block instead of using .env.
Run (HTTP — for remote MCP clients)
python -m openai_ads_mcp --transport http --host 127.0.0.1 --port 8000
Point remote MCP clients at http://127.0.0.1:8000/mcp. To expose publicly, tunnel
with ngrok or similar and add auth at the gateway layer.
Environment variables
| Variable | Required | Description |
|---|---|---|
OPENAI_ADS_API_KEY |
Yes | Ads API key |
Project layout
requirements.txt
pyproject.toml
.env.example
openai_ads_mcp/
__main__.py
server.py
coordinator.py
client.py
tools/
ad_account.py
campaigns.py
ad_groups.py
ads.py
insights.py
See also capabilities.md for a full tool reference.
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