{"payload":{"pageCount":2,"repositories":[{"type":"Public","name":"basketball-games","owner":"sportsanalytics-world","isFork":true,"description":"","allTopics":[],"primaryLanguage":{"name":"JavaScript","color":"#f1e05a"},"pullRequestCount":0,"issueCount":0,"starsCount":0,"forksCount":1,"license":null,"participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2024-05-24T14:50:40.035Z"}},{"type":"Public","name":"football_analysis","owner":"sportsanalytics-world","isFork":true,"description":"This repository contains a comprehensive computer vision/machine learning football project that uses YOLO for object detection, Kmeans for pixel segmentation, optical flow for motion tracking, and perspective transformation to analyze player movements in football videos","allTopics":[],"primaryLanguage":{"name":"Jupyter Notebook","color":"#DA5B0B"},"pullRequestCount":0,"issueCount":0,"starsCount":0,"forksCount":98,"license":null,"participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2024-04-23T09:06:13.913Z"}},{"type":"Public","name":"iBall","owner":"sportsanalytics-world","isFork":true,"description":"A basketball video-watching system that leverages gaze-moderated embedded visualizations to facilitate game understanding and engagement of casual fans","allTopics":[],"primaryLanguage":{"name":"TypeScript","color":"#3178c6"},"pullRequestCount":0,"issueCount":0,"starsCount":0,"forksCount":2,"license":null,"participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2023-03-15T16:29:32.086Z"}},{"type":"Public","name":"nba_data","owner":"sportsanalytics-world","isFork":true,"description":"NBA play-by-play data from stats.nba.com, data.nba.com, pbpstats.com, and also shots information with season 1996/97","allTopics":[],"primaryLanguage":{"name":"Python","color":"#3572A5"},"pullRequestCount":0,"issueCount":0,"starsCount":0,"forksCount":6,"license":"Apache License 2.0","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2023-02-14T15:03:29.150Z"}},{"type":"Public","name":"wyscout-python-scraping","owner":"sportsanalytics-world","isFork":true,"description":"","allTopics":[],"primaryLanguage":{"name":"Python","color":"#3572A5"},"pullRequestCount":0,"issueCount":0,"starsCount":0,"forksCount":1,"license":null,"participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2022-08-07T19:07:36.471Z"}},{"type":"Public","name":"rescheduling","owner":"sportsanalytics-world","isFork":true,"description":"","allTopics":[],"primaryLanguage":{"name":"Python","color":"#3572A5"},"pullRequestCount":0,"issueCount":0,"starsCount":0,"forksCount":1,"license":null,"participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2022-04-04T22:45:44.386Z"}},{"type":"Public","name":"nba_moneyball","owner":"sportsanalytics-world","isFork":true,"description":"","allTopics":[],"primaryLanguage":{"name":"Jupyter Notebook","color":"#DA5B0B"},"pullRequestCount":0,"issueCount":0,"starsCount":0,"forksCount":1,"license":null,"participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2022-01-23T14:46:54.762Z"}},{"type":"Public","name":"Di-Maria-goal","owner":"sportsanalytics-world","isFork":true,"description":"Code & data to create the events sequence linked to the Di Marรญa's goal at the final of Copa Amรฉrica 2021","allTopics":[],"primaryLanguage":{"name":"R","color":"#198CE7"},"pullRequestCount":0,"issueCount":0,"starsCount":0,"forksCount":3,"license":null,"participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2021-12-26T16:09:38.973Z"}},{"type":"Public","name":"Basketball-Winning-Probability","owner":"sportsanalytics-world","isFork":true,"description":"Calculate feature weights such as 2 Point percentage, steals and others to determine win probability","allTopics":[],"primaryLanguage":{"name":"Python","color":"#3572A5"},"pullRequestCount":0,"issueCount":0,"starsCount":0,"forksCount":1,"license":"MIT License","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2021-08-08T10:23:54.173Z"}},{"type":"Public","name":"hoopR","owner":"sportsanalytics-world","isFork":true,"description":"An R package to quickly obtain clean and tidy men's basketball play by play data.","allTopics":[],"primaryLanguage":{"name":"R","color":"#198CE7"},"pullRequestCount":0,"issueCount":0,"starsCount":0,"forksCount":17,"license":"Other","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2021-05-21T10:26:57.931Z"}},{"type":"Public","name":"NBA-team-optimization","owner":"sportsanalytics-world","isFork":true,"description":"","allTopics":[],"primaryLanguage":{"name":"Jupyter Notebook","color":"#DA5B0B"},"pullRequestCount":0,"issueCount":0,"starsCount":0,"forksCount":3,"license":null,"participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2021-02-02T00:31:28.316Z"}},{"type":"Public","name":"Euroleague-ML","owner":"sportsanalytics-world","isFork":true,"description":"The aim of this repository is to publish several Python Notebooks to see how Machine Learning can be applied to basketball-based European Datasets.","allTopics":[],"primaryLanguage":{"name":"Jupyter Notebook","color":"#DA5B0B"},"pullRequestCount":0,"issueCount":0,"starsCount":0,"forksCount":2,"license":null,"participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2021-01-17T18:52:57.033Z"}},{"type":"Public","name":"SpaceJam","owner":"sportsanalytics-world","isFork":true,"description":"SpaceJam: a Dataset for Basketball Action Recognition","allTopics":[],"primaryLanguage":null,"pullRequestCount":0,"issueCount":0,"starsCount":0,"forksCount":24,"license":"MIT License","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2020-12-14T23:59:48.250Z"}},{"type":"Public","name":"hydra-jekyll-template","owner":"sportsanalytics-world","isFork":true,"description":"๐Ÿ‰ Product marketing template for Jekyll","allTopics":[],"primaryLanguage":{"name":"SCSS","color":"#c6538c"},"pullRequestCount":0,"issueCount":0,"starsCount":0,"forksCount":396,"license":"MIT License","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2020-09-10T17:48:20.622Z"}},{"type":"Public","name":"awesome-football-analytics","owner":"sportsanalytics-world","isFork":true,"description":"A curated list of football analytics awesome resources, articles, books and more!","allTopics":[],"primaryLanguage":null,"pullRequestCount":0,"issueCount":0,"starsCount":2,"forksCount":17,"license":"MIT License","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2020-09-06T17:10:36.302Z"}},{"type":"Public","name":"nba-shot-chart-streamlit","owner":"sportsanalytics-world","isFork":true,"description":"","allTopics":[],"primaryLanguage":{"name":"Python","color":"#3572A5"},"pullRequestCount":0,"issueCount":0,"starsCount":1,"forksCount":1,"license":null,"participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2020-06-28T20:05:12.150Z"}},{"type":"Public","name":"NBA_Tutorials","owner":"sportsanalytics-world","isFork":true,"description":"Tutorials for processing nba data","allTopics":[],"primaryLanguage":{"name":"Python","color":"#3572A5"},"pullRequestCount":0,"issueCount":0,"starsCount":1,"forksCount":41,"license":"MIT License","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2020-06-28T00:21:55.810Z"}},{"type":"Public","name":"AI-basketball-analysis","owner":"sportsanalytics-world","isFork":true,"description":"๐Ÿ€๐Ÿค–๐Ÿ€ AI web app and API to analyze basketball shots.","allTopics":[],"primaryLanguage":{"name":"Python","color":"#3572A5"},"pullRequestCount":0,"issueCount":0,"starsCount":2,"forksCount":179,"license":"Other","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2020-06-18T23:55:22.343Z"}},{"type":"Public","name":"react-instantsearch","owner":"sportsanalytics-world","isFork":true,"description":"โšก๏ธ Lightning-fast search for React and React Native applications, by Algolia.","allTopics":[],"primaryLanguage":{"name":"TypeScript","color":"#3178c6"},"pullRequestCount":0,"issueCount":0,"starsCount":1,"forksCount":391,"license":"MIT License","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2020-06-15T09:40:57.338Z"}},{"type":"Public","name":"nba-classification","owner":"sportsanalytics-world","isFork":true,"description":"Classifying NBA Players Through Machine Learning / Cluster Analysis","allTopics":[],"primaryLanguage":{"name":"Python","color":"#3572A5"},"pullRequestCount":0,"issueCount":0,"starsCount":1,"forksCount":1,"license":null,"participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2020-06-05T01:36:06.178Z"}},{"type":"Public","name":"basketball_reference_web_scraper","owner":"sportsanalytics-world","isFork":true,"description":"NBA Stats API via Basketball Reference","allTopics":[],"primaryLanguage":{"name":"HTML","color":"#e34c26"},"pullRequestCount":0,"issueCount":0,"starsCount":1,"forksCount":98,"license":"MIT License","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2020-05-11T00:03:59.205Z"}},{"type":"Public","name":"socceraction","owner":"sportsanalytics-world","isFork":true,"description":"Convert existing soccer event stream data to SPADL and value player actions","allTopics":[],"primaryLanguage":{"name":"Jupyter Notebook","color":"#DA5B0B"},"pullRequestCount":0,"issueCount":0,"starsCount":0,"forksCount":133,"license":"MIT License","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2020-04-29T20:02:03.560Z"}},{"type":"Public","name":"basketball-shot-detection","owner":"sportsanalytics-world","isFork":true,"description":"๐Ÿ€ Judging basketball shots and analyzing shooting pose with machine learning","allTopics":[],"primaryLanguage":{"name":"Python","color":"#3572A5"},"pullRequestCount":0,"issueCount":0,"starsCount":0,"forksCount":21,"license":null,"participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2020-04-15T18:42:59.520Z"}},{"type":"Public","name":"DatoFutbol","owner":"sportsanalytics-world","isFork":true,"description":"Dato Fรบtbol repository","allTopics":[],"primaryLanguage":{"name":"R","color":"#198CE7"},"pullRequestCount":0,"issueCount":0,"starsCount":1,"forksCount":8,"license":null,"participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2020-03-29T10:43:18.236Z"}},{"type":"Public","name":"BueStats","owner":"sportsanalytics-world","isFork":true,"description":"Basketball Scrapper + Reporting Tool for FEB teams","allTopics":[],"primaryLanguage":{"name":"Python","color":"#3572A5"},"pullRequestCount":0,"issueCount":0,"starsCount":1,"forksCount":7,"license":null,"participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2020-03-22T20:39:50.059Z"}},{"type":"Public","name":"nba-go","owner":"sportsanalytics-world","isFork":true,"description":"๐Ÿ€ ๐Ÿ’ป The finest NBA CLI.","allTopics":[],"primaryLanguage":{"name":"JavaScript","color":"#f1e05a"},"pullRequestCount":0,"issueCount":0,"starsCount":1,"forksCount":219,"license":"MIT License","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2020-03-14T19:53:53.835Z"}},{"type":"Public","name":"flask-black-dashboard","owner":"sportsanalytics-world","isFork":true,"description":"Flask Dashboard Black - Open-Source Admin Panel | AppSeed","allTopics":[],"primaryLanguage":{"name":"CSS","color":"#563d7c"},"pullRequestCount":0,"issueCount":0,"starsCount":0,"forksCount":141,"license":"MIT License","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2020-03-11T15:57:15.990Z"}},{"type":"Public","name":"daily-nba","owner":"sportsanalytics-world","isFork":true,"description":"๐Ÿ€๐Ÿ”ฅ๐Ÿ€ LINE Bot that implemented FSM model with 9 features.","allTopics":[],"primaryLanguage":{"name":"Python","color":"#3572A5"},"pullRequestCount":0,"issueCount":0,"starsCount":1,"forksCount":14,"license":null,"participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2020-03-03T07:32:47.869Z"}},{"type":"Public","name":"Tracking-Data","owner":"sportsanalytics-world","isFork":true,"description":"","allTopics":[],"primaryLanguage":{"name":"R","color":"#198CE7"},"pullRequestCount":0,"issueCount":0,"starsCount":0,"forksCount":10,"license":null,"participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2020-01-15T21:00:07.664Z"}},{"type":"Public","name":"nba-roster-turnover","owner":"sportsanalytics-world","isFork":true,"description":"Interactive exploration of NBA roster turnover","allTopics":[],"primaryLanguage":{"name":"Python","color":"#3572A5"},"pullRequestCount":0,"issueCount":0,"starsCount":1,"forksCount":1,"license":null,"participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2019-11-13T01:28:49.555Z"}}],"repositoryCount":42,"userInfo":null,"searchable":true,"definitions":[],"typeFilters":[{"id":"all","text":"All"},{"id":"public","text":"Public"},{"id":"source","text":"Sources"},{"id":"fork","text":"Forks"},{"id":"archived","text":"Archived"},{"id":"template","text":"Templates"}],"compactMode":false},"title":"Repositories"}