georgedouzas/sports-betting
Collection of sports betting AI tools.
Provides dataloaders for fetching historical sports data and fixtures, combined with scikit-learn-compatible bettor classifiers for backtesting strategies and identifying value bets. The architecture separates data ingestion from model evaluation, enabling systematic probability estimation against bookmaker odds. Accessible via Python API, CLI, and a Reflex-based GUI for interactive model development and backtesting workflows.
670 stars and 733 monthly downloads. Available on PyPI.
Stars
670
Forks
126
Language
Python
License
MIT
Category
Last pushed
Jan 21, 2026
Monthly downloads
733
Commits (30d)
0
Dependencies
9
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