Our NFL Data product offers extensive access to historic and current National Football League statistics and results, available in multiple formats. Whether you're a sports analyst, data scientist, fantasy football enthusiast, or a developer building sports-related apps, this dataset provides everything you need to dive deep into NFL performance insights.
Key Benefits:
Comprehensive Coverage: Includes historic and real-time data on NFL stats, game results, team performance, player metrics, and more.
Multiple Formats: Datasets are available in various formats (CSV, JSON, XML) for easy integration into your tools and applications.
User-Friendly Access: Whether you are an advanced analyst or a beginner, you can easily access and manipulate data to suit your needs.
Free Trial: Explore the full range of data with our free trial before committing, ensuring the product meets your expectations.
Customizable: Filter and download only the data you need, tailored to specific seasons, teams, or players.
API Access: Developers can integrate real-time NFL data into their apps with API support, allowing seamless updates and user engagement.
Use Cases:
Fantasy Football Players: Use the data to analyze player performance, helping to draft winning teams and make better game-day decisions.
Sports Analysts: Dive deep into historical and current NFL stats for research, articles, and game predictions.
Developers: Build custom sports apps and dashboards by integrating NFL data directly through API access.
Betting & Prediction Models: Use data to create accurate predictions for NFL games, helping sportsbooks and bettors alike.
Media Outlets: Enhance game previews, post-game analysis, and highlight reels with accurate, detailed NFL stats.
Our NFL Data product ensures you have the most reliable, up-to-date information to drive your projects, whether it's enhancing user experiences, creating predictive models, or simply enjoying in-depth football analysis.
Apache License, v2.0https://www.apache.org/licenses/LICENSE-2.0
License information was derived automatically
This comprehensive dataset offers detailed information on approximately 17,000 FIFA football players, meticulously scraped from SoFIFA.com.
It encompasses a wide array of player-specific data points, including but not limited to player names, nationalities, clubs, player ratings, potential, positions, ages, and various skill attributes. This dataset is ideal for football enthusiasts, data analysts, and researchers seeking to conduct in-depth analysis, statistical studies, or machine learning projects related to football players' performance, characteristics, and career progressions.
This dataset is ideal for data analysis, predictive modeling, and machine learning projects. It can be used for:
Please ensure to adhere to the terms of service of SoFIFA.com and relevant data protection laws when using this dataset. The dataset is intended for educational and research purposes only and should not be used for commercial gains without proper authorization.
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
## Overview
Football Stat Tracker is a dataset for object detection tasks - it contains Ball annotations for 372 images.
## Getting Started
You can download this dataset for use within your own projects, or fork it into a workspace on Roboflow to create your own model.
## License
This dataset is available under the [CC BY 4.0 license](https://creativecommons.org/licenses/CC BY 4.0).
Apache License, v2.0https://www.apache.org/licenses/LICENSE-2.0
License information was derived automatically
The FIFA Football Players Dataset is a comprehensive collection of information about football (soccer) players from around the world. This dataset offers a wealth of attributes related to each player, making it a valuable resource for various analyses and insights into the realm of football, both for gaming enthusiasts and real-world sports enthusiasts.
Attributes:
Potential Uses:
Player Performance Analysis: Evaluate the performance of football players based on their attributes. Club Analysis: Investigate clubs, player distribution, and club statistics. Positional Insights: Explore the attributes specific to player positions. Player Valuation Trends: Analyze how player values change over time. Data Visualization:Create visualizations for better data representation. Machine Learning Models: Develop predictive models for various football-related forecasts.
Before using the dataset for analysis, it's advisable to preprocess the data, such as converting the "value" column into a numerical format, handling missing values, and ensuring consistency in column names. This dataset is a valuable resource for gaining insights into football, both in the context of the FIFA video game and real-world football.
All thanks and credit goes to FIFA Index
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
American College Football network of Girvan and Newman Mark Newman provides a football.gml file which contains the network of American football games between Division IA colleges during regular season Fall 2000. The file asks you to cite M. Girvan and M. E. J. Newman, Community structure in social and biological networks, Proc. Natl. Acad. Sci. USA 99, 7821-7826 (2002). There are are two issues with the original GN file. First three teams met twice in one season so the graph is not simple. This is easily dealt with if required. Secondly, the assignments to conferences, the node values, seem to be for the 2001 season and not the 2000 season. The games do appear to be for the 2000 season as stated. For instance the Big West conference existed for football till 2000 while the Sun Belt conference was only started in 2001. Also there were 11 conferences and 5 independents in 2001 but 10 conferences and 8 independents in 2000. I have provided a set of files footballTSE* which define a simple graph with the correct conference assignments in the archive here. There is a read me file included with more details. Further information about the problems with this data and the solutions are given in T.S. Evans, “Clique Graphs and Overlapping Communities”, J. Stat. Mech. (2010) P12037 [arXiv:1009.0638] which would be the appropriate source to cite along with the original GN publication.Note that Gschwind et al, 2015, Social Network Analysis and Community Detection by Decomposing a Graph into Relaxed Cliques, independently finds similar errors in this data.
https://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/
This data includes statistics up to the final of the 2022/23 season.
The UEFA Champions League (abbreviated as UCL) is an annual club football competition organized by the Union of European Football Associations (UEFA) and contested by top-division European clubs, deciding the competition winners through a group and knockout format. It is one of the most prestigious football tournaments in the world and the most prestigious club competition in European football, played by the national league champions (and, for some nations, one or more runners-up) of their national associations. (*** From wikipidea)
Note: This doesn't have any information about the European cup competition (1950-1992). It starts with the beginning of the Champions league (1992/93) season.
So far this data has the following: 1- Each club's participation record in the competition 2- Each country's clubs participation records in the competition (summary of #1) 3- Top Player Appearances by club (i.e. number of times played for a club in the competition) 4- Top Player Appearances Total games (summary of #3) 5- Top Goal scorer by club (i.e. number of goals scored by a player for a club in the competition) 6- Top Goal scorer Totals (summary of #5) 7- Top Coach Appearances by club (i.e. number of times coached for a club in the competition) 8- Top Coach Appearances Total games (summary of #7) 9- Top Goal Scorer for each season in the competition with # of appearances 10- Number of goals scored per round per group in each season
All this data was provided by UEFA.com. All I did was download the PDF and then scrape the data and put it in csv format.
ODC Public Domain Dedication and Licence (PDDL) v1.0http://www.opendatacommons.org/licenses/pddl/1.0/
License information was derived automatically
This dataset contains data for last 10 seasons of Spanish La Liga including current season. The data is updated on weekly basis via Travis-CI. The dataset is sourced from http://www.football-data.co.u...
ODC Public Domain Dedication and Licence (PDDL) v1.0http://www.opendatacommons.org/licenses/pddl/1.0/
License information was derived automatically
This dataset contains data for last 10 seasons of Italian Serie A including current season. The data is updated on weekly basis via Travis-CI. The dataset is sourced from http://www.football-data.co.u...
This release presents statistics on football-related arrests and banning orders in connection with regulated international and domestic football matches involving teams from, or representing, England and Wales.
Information used to prepare this release was submitted to United Kingdom Football Policing Unit by all relevant police forces (and other sources such as the courts) in England and Wales and the British Transport Police.
The Home Office is seeking feedback on this publication so that we can assess how well it meets our users’ needs and make improvements where possible. If you have not already done so, please could you complete a short http://www.homeofficesurveys.homeoffice.gov.uk/s/football-related-arrests-and-banning-orders-2014-to-2015/" class="govuk-link">5-minute survey.
The Home Office statistician responsible for the statistics in this release is David Blunt, Chief Statistician and Head of Profession for Statistics.
If you have any queries about this release, please email CSU.Statistics@homeoffice.gov.uk.
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Our NFL Data product offers extensive access to historic and current National Football League statistics and results, available in multiple formats. Whether you're a sports analyst, data scientist, fantasy football enthusiast, or a developer building sports-related apps, this dataset provides everything you need to dive deep into NFL performance insights.
Key Benefits:
Comprehensive Coverage: Includes historic and real-time data on NFL stats, game results, team performance, player metrics, and more.
Multiple Formats: Datasets are available in various formats (CSV, JSON, XML) for easy integration into your tools and applications.
User-Friendly Access: Whether you are an advanced analyst or a beginner, you can easily access and manipulate data to suit your needs.
Free Trial: Explore the full range of data with our free trial before committing, ensuring the product meets your expectations.
Customizable: Filter and download only the data you need, tailored to specific seasons, teams, or players.
API Access: Developers can integrate real-time NFL data into their apps with API support, allowing seamless updates and user engagement.
Use Cases:
Fantasy Football Players: Use the data to analyze player performance, helping to draft winning teams and make better game-day decisions.
Sports Analysts: Dive deep into historical and current NFL stats for research, articles, and game predictions.
Developers: Build custom sports apps and dashboards by integrating NFL data directly through API access.
Betting & Prediction Models: Use data to create accurate predictions for NFL games, helping sportsbooks and bettors alike.
Media Outlets: Enhance game previews, post-game analysis, and highlight reels with accurate, detailed NFL stats.
Our NFL Data product ensures you have the most reliable, up-to-date information to drive your projects, whether it's enhancing user experiences, creating predictive models, or simply enjoying in-depth football analysis.