# NBA Sports Betting Using Machine Learning 🏀

A machine learning AI used to predict the winners and under/overs of NBA games. Takes all team data from the 2007-08 season to current season, matched with odds of those games, using a neural network to predict winning bets for today's games. Achieves ~69% accuracy on money lines and ~55% on under/overs. Outputs expected value for teams money lines to provide better insight. The fraction of your bankroll to bet based on the Kelly Criterion is also outputted. Note that a popular, less risky approach is to bet 50% of the stake recommended by the Kelly Criterion. ## Packages Used Use Python 3.11. In particular the packages/libraries used are... * Tensorflow - Machine learning library * XGBoost - Gradient boosting framework * Numpy - Package for scientific computing in Python * Pandas - Data manipulation and analysis * Colorama - Color text output * Tqdm - Progress bars * Requests - Http library * Scikit_learn - Machine learning library ## Usage

Make sure all packages above are installed. ```bash $ git clone https://github.com/kyleskom/NBA-Machine-Learning-Sports-Betting.git $ cd NBA-Machine-Learning-Sports-Betting $ pip3 install -r requirements.txt $ python3 main.py -xgb -odds=fanduel ``` Odds data will be automatically fetched from sbrodds if the -odds option is provided with a sportsbook. Options include: fanduel, draftkings, betmgm, pointsbet, caesars, wynn, bet_rivers_ny If `-odds` is not given, enter the under/over and odds for today's games manually after starting the script. Optionally, you can add '-kc' as a command line argument to see the recommended fraction of your bankroll to wager based on the model's edge ## Flask Web App

This repo also includes a small Flask application to help view the data from this tool in the browser. To run it: ``` cd Flask flask --debug run ``` ## Getting new data and training models ``` # Create dataset with the latest data for 2023-24 season cd src/Process-Data python -m Get_Data python -m Get_Odds_Data python -m Create_Games # Train models cd ../Train-Models python -m XGBoost_Model_ML python -m XGBoost_Model_UO ``` ## Contributing All contributions welcomed and encouraged. # NBA-Machine-Learning-Sports-Betting