An API Client package to access the APIs for NBA.com
-
Updated
Apr 9, 2025 - Python
An API Client package to access the APIs for NBA.com
Visualization and analysis of NBA player tracking data
Using data analytics and machine learning to create a comprehensive and profitable system for predicting the outcomes of NBA games.
Repository which contains various scripts and work with various basketball statistics
Predicts Daily NBA Games Using a Logistic Regression Model
An R package to quickly obtain clean and tidy men's basketball play by play data.
sportsdataverse python package
Python wrapper for the MySportsFeeds Sports Data API
NodeJS wrapper for the MySportsFeeds Sports Data API
Using AI to predict the outcomes of NBA games.
Stattleship R Wrapper
Feature requests for the MySportsFeeds Sports Data API.
Tools to help developers and data scientists in sports
Short, offhand analyses of the NBA
Python package for filling in information about players on court in NBA play-by-play data.
Create NBA shot charts using data scrapped from stats.nba.com and R package ggplot2.
NBA API Documentation
This repository contains CSV files containing comprehensive NBA data spanning from the year 2010 to 2024, offering valuable insights into player statistics, team performances, game outcomes, and more.
A sport predictions full-stack application that generates betting recommendations & data on Prize Picks using linear regression.
Add a description, image, and links to the nba-stats topic page so that developers can more easily learn about it.
To associate your repository with the nba-stats topic, visit your repo's landing page and select "manage topics."