Nba Machine Learning Sports Betting Alternatives

NBA sports betting using machine learning
Suggest Alternative
Alternatives To kyleskom/NBA-Machine-Learning-Sports-Betting
Project Name Stars Downloads Repos Using This Packages Using This Most Recent Commit Total Releases Latest Release Open Issues License Language
the-pudding/data 932 0 0 over 2 years ago 0 2 mit HTML
Data sets created for stories on The Pudding, open to the public.
kyleskom/NBA-Machine-Learning-Sports-Betting 904 0 0 over 2 years ago 0 8 Python
NBA sports betting using machine learning
bttmly/nba 654 84 10 about 4 years ago 43 January 28, 2021 7 mit JavaScript
Node.js client for nba.com API endpoints
roclark/sportsipy 455 10 1 over 2 years ago 19 April 09, 2020 121 mit Python
A free sports API written for python
linouk23/NBA-Player-Movements 436 0 0 over 9 years ago 0 10 Python
🏀 Visualization of NBA games from raw SportVU data logs
DimaKudosh/pydfs-lineup-optimizer 363 0 0 over 2 years ago 51 September 27, 2021 145 mit Python
Daily Fantasy Sports lineup optimzer for all popular daily fantasy sports sites
kshvmdn/nba.js 339 17 2 almost 8 years ago 18 April 14, 2018 mit JavaScript
Node.js library for NBA stats
bradleyfay/py-Goldsberry 236 4 0 over 4 years ago 23 December 27, 2018 7 mit Python
Python Package for facilitating analysis of NBA Data
danchyy/Basketball_Analytics 141 0 0 about 2 years ago 0 0 Jupyter Notebook
Repository which contains various scripts and work with various basketball statistics
Seb943/scrapeOP 95 0 0 about 3 years ago 0 3 Python
A python package for scraping oddsportal.com
Alternatives To kyleskom/NBA-Machine-Learning-Sports-Betting
Select To Compare


Alternative Project Comparisons
Popular Sports Projects
Popular Nba Projects
Popular Community Categories
Related Searches
Get A Weekly Email With Trending Projects
No Spam. Unsubscribe easily at any time.
Privacy | About | Terms | Follow Us On Twitter

Downloads, Dependent Repos, Dependent Packages, Total Releases, Latest Releases data powered by Libraries.io.

Copyright 2018-2026 Awesome Open Source.  All rights reserved.