Click on "Install Server".
Wait a few minutes for the server to deploy. Once ready, it will show a "Started" state.
In the chat, type
@followed by the MCP server name and your instructions, e.g., "@College Football MCPwhat's the score of the Alabama vs Auburn game?"
That's it! The server will respond to your query, and you can continue using it as needed.
Here is a step-by-step guide with screenshots.
College Football MCP (cfb-mcp)
A Python-based Model Context Protocol (MCP) server that provides real-time college football game information, betting odds, and historical performance data for teams and players.
Features
Live Game Scores & Odds: Get real-time scores and betting odds for NCAA college football games
Player Statistics: Retrieve last 5 games' stats for any player
Team Performance: Get recent game results and team information
Next Game Odds: Find upcoming games and their betting lines
Quick Start
Prerequisites
Python 3.11+
Docker (optional, for containerized deployment)
API Keys:
The Odds API - for live scores and betting odds
CollegeFootballData API - for team and player statistics
Installation
Clone the repository:
git clone https://github.com/gedin-eth/cfb-mcp.git
cd cfb-mcpCreate a virtual environment:
python3 -m venv venv
source venv/bin/activate # On Windows: venv\Scripts\activateInstall dependencies:
pip install -r requirements.txtSet up environment variables:
cp .env.example .env
# Edit .env and add your API keysRunning the Server
uvicorn src.server:app --host 0.0.0.0 --port 8000Docker Deployment
Build the Docker image:
docker build -t cfb-mcp .Run the container:
docker run -p 8000:8000 --env-file .env cfb-mcpFor VPS deployment, pull and run:
docker pull <your-registry>/cfb-mcp:latest
docker run -d -p 8000:8000 --env-file .env --name cfb-mcp cfb-mcpAPI Endpoints
The MCP server exposes the following functions via both MCP protocol (/mcp/*) and REST API (/api/*) endpoints:
1. get_game_odds_and_score
Get live game scores and betting odds for a specific matchup.
POST /mcp/get_game_odds_and_score or GET /api/get_game_odds_and_score
Request:
{
"team1": "Alabama",
"team2": "Auburn" // optional
}Response:
{
"home_team": "Alabama",
"away_team": "Auburn",
"start_time": "2025-11-25T19:00:00Z",
"status": "completed",
"score": {
"home": 28,
"away": 14
},
"odds": {
"spread": {...},
"moneyline": {...},
"over_under": {...}
}
}2. get_recent_player_stats
Get player's last 5 games statistics.
POST /mcp/get_recent_player_stats or GET /api/get_recent_player_stats
Request:
{
"player_name": "Jalen Milroe",
"team": "Alabama" // optional, for disambiguation
}3. get_team_recent_results
Get team's last 5 game results.
POST /mcp/get_team_recent_results or GET /api/get_team_recent_results
Request:
{
"team": "Alabama"
}4. get_team_info
Get team's current season overview including record and rankings.
POST /mcp/get_team_info or GET /api/get_team_info
Request:
{
"team": "Alabama"
}5. get_next_game_odds
Get next scheduled game and betting odds for a team.
POST /mcp/get_next_game_odds or GET /api/get_next_game_odds
Request:
{
"team": "Alabama"
}Architecture
Phase 1: MCP Server (Completed ✅)
FastAPI-based REST API server
5 core functions for college football data
Integration with The Odds API and CollegeFootballData API
Phase 2: Full Web Application (In Progress)
Agent Service: FastAPI chat service with LLM integration
Web UI: Single-page chat interface (mobile-friendly)
Caddy: Reverse proxy with automatic HTTPS
Docker Compose: Multi-container orchestration
Development
This project follows the Model Context Protocol standard for AI agent integration.
Project Structure
cfb-mcp/
├── src/
│ ├── server.py # FastAPI MCP server
│ ├── odds_api.py # The Odds API client
│ └── cfbd_api.py # CollegeFootballData API client
├── agent_service/ # Agent service (Phase 2)
├── web_ui/ # Web UI (Phase 2)
├── Dockerfile # MCP server container
├── docker-compose.yml # Multi-container setup (Phase 2)
├── Caddyfile # Reverse proxy config (Phase 2)
└── requirements.txt # Python dependenciesEnvironment Variables
Create a .env file in the project root with the following variables:
# MCP Server API Keys
ODDS_API_KEY=your_odds_api_key
CFB_API_KEY=your_cfbd_api_key
# Agent Service Configuration
APP_TOKEN=choose-a-long-random-string-here
OPENAI_API_KEY=your_openai_api_key_here
# Optional: MCP Server URL (defaults to http://localhost:8000)
# MCP_SERVER_URL=http://localhost:8000Getting API Keys
The Odds API: Sign up at the-odds-api.com
CollegeFootballData API: Get a free key at collegefootballdata.com
OpenAI API: Get your key from platform.openai.com
Architecture Overview
System Components
┌─────────────┐
│ Web UI │ (Static HTML/JS)
│ (nginx) │
└──────┬──────┘
│
│ HTTPS
│
┌──────▼──────┐
│ Caddy │ (Reverse Proxy)
│ (HTTPS) │
└──────┬──────┘
│
┌───┴───┐
│ │
┌──▼───┐ ┌─▼────┐
│ Web │ │Agent │
│ UI │ │Service│
└──────┘ └───┬──┘
│
┌────▼────┐
│ MCP │
│ Server │
└────┬────┘
│
┌────────┴────────┐
│ │
┌───▼───┐ ┌───────▼──────┐
│ Odds │ │ CFBD API │
│ API │ │ │
└───────┘ └──────────────┘Component Details
MCP Server (
src/): FastAPI server exposing 5 core functions for college football dataAgent Service (
agent_service/): FastAPI service that orchestrates LLM + MCP callsWeb UI (
web_ui/): Single-page chat interface (mobile-friendly)Caddy: Reverse proxy providing HTTPS and routing
Deployment
Quick Start with Docker Compose
Set up environment variables:
cp .env.example .env # Edit .env and add your API keysUpdate Caddyfile: Edit
Caddyfileand replacecfb.yourdomain.comwith your actual domain.Deploy:
docker compose up -d --buildAccess:
Web UI:
https://cfb.yourdomain.comAPI:
https://cfb.yourdomain.com/api/*
Domain Setup for Caddy
Point your domain to your VPS IP address (A record)
Ensure ports are open:
Port 80 (HTTP)
Port 443 (HTTPS)
Caddy will automatically:
Obtain SSL certificate from Let's Encrypt
Renew certificates automatically
Handle HTTPS redirects
Individual Service Deployment
MCP Server Only
docker build -t cfb-mcp .
docker run -p 8000:8000 --env-file .env cfb-mcpAgent Service Only
cd agent_service
docker build -t cfb-agent .
docker run -p 8000:8000 --env-file ../.env cfb-agentTroubleshooting
Common Issues
"Missing Bearer token" error:
Ensure
APP_TOKENis set in.envCheck that the token is being sent in the Authorization header
"ODDS_API_KEY is not configured":
Verify
.envfile exists and containsODDS_API_KEYCheck that the MCP server container has access to the
.envfile
Caddy certificate issues:
Ensure domain DNS points to your server
Check that ports 80 and 443 are open
Verify Caddyfile domain matches your actual domain
Agent service can't reach MCP server:
Check
MCP_SERVER_URLenvironment variableVerify both services are on the same Docker network
Check service names in docker-compose.yml
OpenAI API errors:
Verify
OPENAI_API_KEYis set correctlyCheck API key has sufficient credits
Review OpenAI API rate limits
Logs
View logs for all services:
docker compose logs -fView logs for specific service:
docker compose logs -f agent
docker compose logs -f mcp-server
docker compose logs -f caddyDevelopment
Running Locally (without Docker)
MCP Server:
cd /path/to/cfb-mcp source venv/bin/activate uvicorn src.server:app --host 0.0.0.0 --port 8000Agent Service:
cd agent_service python -m venv venv source venv/bin/activate pip install -r requirements.txt uvicorn main:app --host 0.0.0.0 --port 8001Web UI:
Serve with any static file server, or use nginx locally
Update
API_BASEinindex.htmlto point to agent service
License
MIT
This server cannot be installed
Resources
Unclaimed servers have limited discoverability.
Looking for Admin?
If you are the server author, to access and configure the admin panel.