octonion / scrapersLinks
Examples of web scrapers in Ruby, Python and Perl
☆23Updated 7 years ago
Alternatives and similar repositories for scrapers
Users that are interested in scrapers are comparing it to the libraries listed below
Sorting:
- Public subset of my basketball github☆70Updated 4 years ago
 - Hockey analytics☆35Updated 7 months ago
 - Fantasy Football Analysis☆25Updated 12 years ago
 - Machine Learning the NFL Draft☆19Updated 9 years ago
 - Based on NFL game data, we want to predict the success of a play. This can be used to insert different strategies before the play is call…☆37Updated 8 years ago
 - Ranking NFL teams☆48Updated 12 years ago
 - ☆28Updated 2 years ago
 - Materials for my PyData Seattle talk☆21Updated 10 years ago
 - Just a personal R Package for Demonstrative Purposes☆11Updated 7 years ago
 - Scraping and Analysis of NFL Drives☆14Updated 11 years ago
 - ☆21Updated 4 years ago
 - Men's basketball tools, data and analytics.☆34Updated 2 years ago
 - Example code from www.pena.lt/y☆42Updated 6 years ago
 - Contains scraper in R for grabbing NBA Sport Tracking Data☆55Updated 11 years ago
 - Simulate the NCAA tournament based on a kaggle-format bracket (with predictions for every possible matchup)☆38Updated 6 years ago
 - Soccer analytics☆161Updated 3 years ago
 - Materials for a workshop on developing undergraduate classes on Bayesian statistics.☆47Updated 9 years ago
 - Course materials for Sta 104 - Summer 2015 semester at Duke University☆22Updated 10 years ago
 - Analyzing NBA Data☆11Updated 10 years ago
 - The model behind @NYT4thDownBot☆113Updated 2 years ago
 - Scraping and analysis of data from NHL and other leagues☆24Updated 7 years ago
 - ☆12Updated 7 years ago
 - Python interface to the stats.nba.com HTTP API.☆11Updated 2 years ago
 - Modeling and Simulation for the 2018 FIFA World Cup☆10Updated 7 years ago
 - ☆39Updated 6 years ago
 - Betting data and analytics.☆42Updated 5 months ago
 - Companion to Analyzing Baseball Data with R☆215Updated 7 years ago
 - Create NBA shot charts using data scrapped from stats.nba.com and R package ggplot2.☆36Updated 8 years ago
 - A fun introduction to Pandas andScikit-Learn using nfl data☆45Updated 9 years ago
 - Material for Skidmore College, Statistics in Sports☆72Updated 4 years ago