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NBA Statistics Feeds Updated 10.01.18 NBA Statistics Feeds 2017-18 Season 1 SPORTRADAR NBA STATISTICS FEEDS Updated 10.01.18 Table of Contents NBA Statistics Feeds .................................................................................................................................... 3 Coverage Levels ............................................................................................................................................. 4 League Information ....................................................................................................................................... 5 Game & Series Information ........................................................................................................................ 7 Venue Information .......................................................................................................................................10 Team Information ........................................................................................................................................11 Player Information .......................................................................................................................................13 Boxscore Information .................................................................................................................................16 Play-by-Play Information ...........................................................................................................................18 Period Statistics – Team ............................................................................................................................22 Period Statistics – Player ..........................................................................................................................24 Game Statistics – Team .............................................................................................................................26 Game Statistics – Player............................................................................................................................29 Season Statistics – Team ..........................................................................................................................32 Season Statistics – Player.........................................................................................................................36 Season Statistics – Opponent .................................................................................................................43 League Leaders – Player ...........................................................................................................................47 Standings Information ................................................................................................................................49 Frequently Asked Questions ....................................................................................................................51 Document Change History .......................................................................................................................59 2 SPORTRADAR NBA STATISTICS FEEDS Updated 10.01.18 NBA Statistics Feeds We package our comprehensive stats collection into 14 feeds, each focused on serving specific information needs. Daily Change Log – information on any changes made to teams, players, game statistics, and standings Daily Schedule – date, time, location, and other event details for every match-up taking place in the league-defined day Daily Transfers – information for all transfers added or edited during the league-defined day Free Agents – detailed player information for all free agents in the league Game Boxscore – top-level team scores by quarter along with full statistics for each team‘s leaders in points, rebounds, and assists Game Summary – top-level boxscore information along with detailed game stats at the team and player levels Injuries – information concerning all active player injuries for all teams within the league League Hierarchy – league, conference, division, and team identification and association information League Leaders – NBA leader information for various offensive and defensive categories including full player seasonal statistics for each player in each category Play-By-Play – detailed, real-time information on every team possession and game event Player Profile – detailed player information including a current look at the player’s statistics for the current season Rankings – conference and division rank for each team, including post season clinching status Schedule – date, time, location, and other event details for every match-up taking place in the full league season Seasonal Statistics – detailed team and player statistics for the defined season Series Schedule – play-off participant information as well as the date, time, location, and other event details for every match-up taking place for the entire play-offs Series Statistics – detailed team and player statistics for the defined series Standings – detailed team records across various views including, overall, conference, and division information Team Profile – detailed team information including league affiliation information as well as player roster information Push Clock – game clock feed with high level scoring and possession information Push Events – detailed, real-time information on every game event Push Statistics - detailed game stats at the team and player levels 3 SPORTRADAR NBA STATISTICS FEEDS Updated 10.01.18 Coverage Levels We provide two different levels of detail to ensure maximum coverage. We combine coverage levels with the correct feeds to ensure you are getting the most comprehensive data offering in the most efficient manner possible. Extended Boxscore – We provide scores, time remaining, and team leaders (assists, points, and rebounds), in a timely manner, as the game progresses. We provide team- and player-level data for the game within 30 minutes of the official results being posted. Full – We provide live play-by-play coverage for the entire game. We provide updated scores and time remaining as well as team- and player-level data in near real time. Full coverage is available for all regular and post-season games. Note: Preseason coverage of NBA games may vary. Due to data-entry coverage (from venue) not being available, some games may be covered via our extended boxscore coverage. 4 SPORTRADAR NBA STATISTICS FEEDS Updated 10.01.18 League Information Stat Feeds Element Attribute Format League Hierarchy Rankings Conference Alias conference alias String Standings Team Profile League Hierarchy Rankings Conference Id conference id GUID Standings Team Profile League Hierarchy Rankings Conference Name conference name String Standings Team Profile League Hierarchy Rankings Division Alias division alias String Standings Team Profile League Hierarchy Rankings Division Id division id GUID Standings Team Profile League Hierarchy Rankings Division Name division name String Standings Team Profile Daily Change Log Daily Schedule Daily Transfers Free Agents Injuries League Hierarchy League Alias league alias String Player Profile Rankings Schedule Series Schedule Standings Team Profile Daily Change Log Daily Schedule Daily Transfers Free Agents Injuries League Hierarchy League Id league id GUID Player Profile Rankings Schedule Series Schedule Standings Team Profile Daily Change Log Daily Schedule League Name league name String Daily Transfers Free Agents 5 SPORTRADAR NBA STATISTICS FEEDS Updated 10.01.18 Injuries League Hierarchy Player Profile Rankings Schedule Series Schedule Standings Team Profile Daily Change Log game season_id League Leaders Player Profile season Rankings Season Id GUID Schedule season-schedule id Season Statisitcs season Series Schedule season-schedule Standings season League Leaders Player Profile season Rankings Season Type Schedule season-schedule type String Seasonal Statistics season Series Schedule season-schedule Standings season League Leaders Player Profile season Rankings Season Year Schedule season-schedule year Integer Season Statisitcs season Series Schedule season-schedule Standings season 6 SPORTRADAR NBA STATISTICS FEEDS Updated 10.01.18 Game & Series Information Stat Feeds Element Attribute Format Daily Schedule Away Team Alias Schedule away alias String Series Schedule Daily Schedule away id Game Boxscore Game Summary game away_team Daily Schedule Away Team Id Play By Play GUID away id Schedule game away_team away id Series Schedule game away_team Daily Schedule Away Team Name Schedule away name String Series Schedule Daily Schedule Away Team Points Schedule game away_points Integer Series Schedule Daily Schedule Away Team Reference Schedule away reference GUID Series Schedule Daily Schedule Away Team Rotation Number Schedule away rotation Integer Series Schedule Daily Schedule Away Team Seed Number Schedule away seed Integer Series Schedule Daily Schedule Broadcast – Cable Schedule broadcast cable Integer Series Schedule Daily Schedule Broadcast – Internet Schedule broadcast internet Integer Series Schedule Daily Schedule Broadcast – Network Schedule broadcast network Integer Series Schedule Daily Schedule Broadcast – Radio Schedule broadcast radio Integer Series Schedule Daily Schedule Broadcast – Satellite Schedule broadcast satellite Integer Series Schedule Game Boxscore Entry Mode Game Summary game entry_mode String Play By Play Game Boxscore Game Clock Game Summary game clock Time Play By Play Daily Schedule Game
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