bernej / NBA-Draft-2017-Player-Comparison-GeneratorLinks
Uses a SQL database and Python to compute cosine similarity scores of the top prospects in the 2017 NBA Draft to alike professional players. Takes into account per 40 minutes and advanced statistics of both the prospects and NBA players' respective NCAA seasons.
☆25Updated 8 years ago
Alternatives and similar repositories for NBA-Draft-2017-Player-Comparison-Generator
Users that are interested in NBA-Draft-2017-Player-Comparison-Generator are comparing it to the libraries listed below
Sorting:
- NBA shot charts using matplotlib, seaborn, and bokeh.☆171Updated 8 years ago
- Python Package for facilitating analysis of NBA Data☆268Updated 4 years ago
- Node.js library for NBA stats☆360Updated 7 years ago
- Generic Basketball Shot Charts☆62Updated 10 years ago
- Populate a database with NBA shot data☆119Updated 2 years ago
- ☆209Updated 6 years ago
- DEFUNCT - This is a python module to scrape basketball-reference.com and convert various stats into usable data structures for analysis☆124Updated 6 years ago
- Scripts to collect and analyze basketball data☆94Updated 8 years ago
- Daily Fantasy Sports lineup optimzer using Python and or-tools☆47Updated 9 years ago
- Public subset of my basketball github☆70Updated 4 years ago
- Python client for NBA statistics located at stats.nba.com☆1,057Updated 5 years ago
- Experiments with nba player tracking data☆49Updated 10 years ago
- Python API for stats.nba.com with a focus on NBA and WNBA applications☆117Updated 10 months ago
- JSON file to be used for generating NBA API clients☆49Updated last year
- Node.js client for nba.com API endpoints☆720Updated 2 years ago
- PHP Library to access NBA API endpoints☆99Updated 7 years ago
- Visualizing NBA substitution patterns across teams and time☆62Updated 2 years ago
- Using k-means clustering to group NBA players by role☆12Updated 6 years ago
- A scraper to scrape the NBA API and compile a play by play file☆74Updated 2 years ago
- SQLAlchemy Models for basketball analytics☆76Updated 9 years ago
- Demo of NBA Expected Possession Value model☆74Updated 9 years ago
- Python interface to the stats.nba.com HTTP API.☆11Updated 2 years ago
- Tutorials for processing nba data☆181Updated last year
- Visualization and analysis of NBA player tracking data☆226Updated 7 years ago
- Parsing play-by-play data from stats.nba.com☆48Updated 4 years ago
- A python module that allows you to scrape and plot nba shot chart data.☆43Updated 10 years ago
- Short, offhand analyses of the NBA☆41Updated 6 years ago
- Quantifying dynamic player value using machine learning concepts☆26Updated 7 years ago
- ☆28Updated 2 years ago
- ☆29Updated 6 years ago