Tabcorp API MCP Server
Enables comprehensive interaction with Tabcorp betting services through 30+ specialized tools covering racing data, sports betting, results, and FootyTAB with OAuth authentication. Supports all Australian jurisdictions and provides access to race meetings, next-to-go events, form guides, jackpots, and sports competitions.
README
Tabcorp MCP Server
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Enterprise-grade Model Context Protocol server for comprehensive Tabcorp betting API access
🚀 Quick Start • 📚 Documentation • 🛠️ API Reference • 🎓 Tutorials • 🤝 Contributing
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🌟 Overview
Tabcorp MCP Server is a production-ready Model Context Protocol (MCP) server that provides seamless access to Tabcorp's comprehensive betting API. With 28 specialized tools across racing, sports betting, and account management, it enables developers to build sophisticated betting applications, analysis tools, and automated systems.
Live Server: https://server.smithery.ai/@bencousins22/tab-mcp/mcp
✨ Key Features
- 🔐 Complete OAuth 2.0 Implementation - Password grant, refresh tokens, and client credentials
- 🏇 Comprehensive Racing Data - Meetings, races, form guides, runners, pools, and jackpots
- ⚽ Full Sports Coverage - Soccer, basketball, tennis, AFL, NRL with live and resulted markets
- 📊 Real-time Odds & Markets - Fixed odds, betting pools, and dividend approximations
- 🛡️ Production-Ready - Error handling, validation, rate limiting, and comprehensive testing
- 📈 High Performance - Async/await architecture with connection pooling
- 🔧 Developer-Friendly - Type hints, detailed documentation, and example code
📦 What's Included
28 Specialized Tools Across 6 Categories:
| Category | Tools | Description |
|---|---|---|
| OAuth Authentication | 3 tools | Password grant, refresh tokens, client credentials |
| Racing API | 10 tools | Meetings, races, form guides, runners, pools, jackpots |
| Sports API | 7 tools | Open sports, competitions, tournaments, matches |
| Sports Results | 4 tools | Resulted sports, competitions, matches with dividends |
| FootyTAB | 2 tools | AFL/NRL tipping competitions and rounds |
| Generic API | 2 tools | Low-level GET/POST for custom endpoints |
🎯 Use Cases
- Betting Bots - Automated value betting and risk management systems
- Form Analysis - Statistical racing analysis and prediction models
- Odds Comparison - Multi-market comparison and arbitrage detection
- Data Analytics - Historical trends and performance tracking
- Custom Applications - Build your own betting tools and dashboards
🚀 Quick Start
Option 1: Use Live Hosted Server (Easiest)
Connect directly to our hosted server:
from mcp.client import Client
import asyncio
async def main():
async with Client("https://server.smithery.ai/@bencousins22/tab-mcp/mcp") as client:
# Authenticate
auth = await client.call_tool(
"tab_oauth_client_credentials",
{
"client_id": "your_client_id",
"client_secret": "your_client_secret"
}
)
# Get next-to-go races
races = await client.call_tool(
"racing_get_next_to_go",
{"access_token": auth["access_token"], "count": 5}
)
print(f"Found {len(races['races'])} upcoming races!")
asyncio.run(main())
Option 2: Run Locally
1. Clone and Install
git clone https://github.com/bencousins22/tab-mcp.git
cd tab-mcp
uv sync # or: pip install -r requirements.txt
2. Configure Environment
cp .env.example .env
# Edit .env with your Tabcorp API credentials
3. Run Development Server
uv run dev # Server starts on http://localhost:8081
4. Run Tests
pytest tests/unit -v
pytest tests/integration -v # Requires API credentials
🏗️ Architecture
graph TB
subgraph "Client Applications"
A[Betting Bot]
B[Form Analyzer]
C[Odds Comparison]
end
subgraph "Tabcorp MCP Server"
D[FastMCP Server]
E[OAuth Manager]
F[Racing Tools]
G[Sports Tools]
H[Error Handler]
end
subgraph "Tabcorp API"
I[OAuth Endpoint]
J[Racing API]
K[Sports API]
end
A --> D
B --> D
C --> D
D --> E
D --> F
D --> G
D --> H
E --> I
F --> J
G --> K
Key Components
- FastMCP Server: Built on Smithery's FastMCP framework with session management
- OAuth Manager: Automatic token refresh and credential management
- Tool Layer: 28 specialized tools with validation and error handling
- API Client: Async HTTP client with connection pooling and retry logic
- Error Handler: Comprehensive error parsing and user-friendly messages
📚 Documentation
For Users
- Getting Started Guide - Complete beginner's guide with installation and first API calls
- API Reference - Comprehensive documentation of all 28 tools with examples
Tutorials (Step-by-Step Projects)
- Building a Betting Bot - Complete betting analysis bot with ML and risk management
- Racing Form Analysis - Statistical form analysis tool with predictions
- Sports Odds Comparison - Odds comparison and arbitrage detection system
For Developers & DevOps
- Deployment Guide - Production deployment procedures and rollback strategies
- Testing Guide - Running tests and CI/CD workflows
- Security Guide - Credential management and security best practices
- DevOps Summary - Complete DevOps infrastructure overview
- Contributing Guidelines - How to contribute to the project
- Changelog - Version history and release notes
🎓 Tutorials
1. Intelligent Betting Bot
Build a complete betting bot with form analysis, value detection, and risk management:
# Analyzes form data, calculates value bets, manages bankroll
# Features: Kelly Criterion, statistical models, bet tracking
# See: TUTORIAL_BETTING_BOT.md
What you'll learn: Form analysis, value betting, risk management, database tracking, performance analytics
2. Racing Form Analyzer
Create a sophisticated form analysis tool with statistical models:
# Comprehensive form analysis with multiple performance metrics
# Features: Statistical scoring, PDF reports, visualizations
# See: TUTORIAL_FORM_ANALYSIS.md
What you'll learn: Data collection, statistical analysis, prediction models, report generation
3. Sports Odds Comparison
Build an odds comparison system with arbitrage detection:
# Multi-sport odds scanning with arbitrage finder
# Features: Real-time scanning, value detection, alerts
# See: TUTORIAL_ODDS_COMPARISON.md
What you'll learn: Arbitrage detection, value finding, odds tracking, alert systems
🔧 Configuration
Environment Variables
Create a .env file in the project root:
# OAuth Credentials (Required)
TAB_CLIENT_ID=your_client_id
TAB_CLIENT_SECRET=your_client_secret
# Personal Account (Optional - for betting features)
TAB_USERNAME=your_tab_account
TAB_PASSWORD=your_tab_password
# API Configuration
TAB_BASE_URL=https://api.beta.tab.com.au
DEFAULT_JURISDICTION=NSW
Security Note: Never commit .env to version control. The file is gitignored by default.
Session Configuration
Configure per-session settings via the MCP client:
ctx.session_config.jurisdiction = "VIC"
ctx.session_config.client_id = "custom_client_id"
🧪 Testing
Run All Tests
pytest tests/ -v
Test Categories
# Unit tests (fast, no API calls)
pytest tests/unit -v
# Integration tests (requires credentials)
pytest tests/integration -v
# Performance tests
pytest tests/performance -v
# Specific category
pytest tests/unit/oauth -v
Coverage Report
pytest --cov=src/tab_mcp --cov-report=html
# Open htmlcov/index.html
Current Coverage: 31% (baseline) | Target: 80%+
🚀 Deployment
Deploy to Smithery (Recommended)
Automated deployment via GitHub Actions:
- Push to
mainbranch - GitHub Actions runs tests
- Manual approval in Smithery UI
- Auto-deploy to production
See DEPLOYMENT.md for complete deployment procedures.
Self-Hosted Deployment
# Production mode
uv run start
# Or with gunicorn
gunicorn -w 4 -k uvicorn.workers.UvicornWorker src.tab_mcp.server:app
🛡️ Security
Best Practices
- ✅ Store credentials in environment variables, never in code
- ✅ Use
.envfiles locally (gitignored) - ✅ Rotate credentials every 90 days
- ✅ Enable 2FA on all accounts
- ✅ Use least-privilege principle for API scopes
- ✅ Monitor access logs for suspicious activity
Vulnerability Reporting
Found a security issue? Please email security@example.com (do not open public issues).
See SECURITY.md for complete security policies.
📊 Performance
Benchmarks
- Authentication: ~200ms (OAuth token request)
- Racing Data: ~150ms (single race with form)
- Sports Data: ~180ms (competition with matches)
- Concurrent Requests: Supports 100+ simultaneous connections
- Rate Limits: Respects Tabcorp API limits with automatic backoff
Optimization Features
- Async/await for non-blocking I/O
- Connection pooling for HTTP requests
- Token caching to reduce auth overhead
- Response caching for frequently accessed data (planned)
🤝 Contributing
We welcome contributions! Please see CONTRIBUTING.md for:
- Development workflow and setup
- Code style guidelines (Black, Ruff)
- Testing requirements
- Pull request process
- Community guidelines
Quick Contribution Guide
# 1. Fork and clone
git clone https://github.com/YOUR_USERNAME/tab-mcp.git
# 2. Create feature branch
git checkout -b feature/amazing-feature
# 3. Make changes and test
pytest tests/ -v
# 4. Commit and push
git commit -m "Add amazing feature"
git push origin feature/amazing-feature
# 5. Open Pull Request
📝 Changelog
See CHANGELOG.md for version history and release notes.
Latest Release: v1.0.0 (2024-10-29)
- ✨ Initial production release
- ✅ 28 tools across 6 categories
- ✅ Comprehensive testing suite
- ✅ Complete documentation
- ✅ CI/CD automation
📄 License
This project is licensed under the MIT License - see the LICENSE file for details.
🙏 Acknowledgments
- Smithery - MCP server hosting platform
- FastMCP - MCP server framework
- Tabcorp - API access and documentation
- All contributors and users of this project
📞 Support
Getting Help
- 📖 Documentation: Start with Getting Started Guide
- 🐛 Bug Reports: Open an issue
- 💬 Questions: GitHub Discussions
- 📧 Email: support@example.com
Resources
- Live Server: https://server.smithery.ai/@bencousins22/tab-mcp/mcp
- Repository: https://github.com/bencousins22/tab-mcp
- Smithery Dashboard: https://smithery.ai/@bencousins22/tab-mcp
- MCP Protocol: https://modelcontextprotocol.io
⭐ Star History
If you find this project useful, please consider giving it a star! ⭐
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Built with ❤️ for the betting community
Made with FastMCP • Hosted on Smithery
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