Skip to content

Latest commit

 

History

History
69 lines (51 loc) · 3.75 KB

File metadata and controls

69 lines (51 loc) · 3.75 KB

DOI License: MIT Build Status contributions welcome HitCount

TouchDown, an Analytics application for American Football

Watch the video

Project Idea:

Create a web application which can:

  • Analyze the football match data
  • Show the summary visuals of the analysis

Why TouchDown?

In 2002, Oakland Atheltics, a seemingly medium-strength team achieved unusual success in their season even after departure of key players. Behind their success was sabermetrics, a field which thrives on quantitative analysis of sports data. Drawing motivation from this success story and understanding the problems which the current football coaches at NC State are facing, we have developed TouchDown - a customer-centric easy-to-use application which provides you a pictorial analysis of position specific player performances.

With a simple UI, all you need to do it just upload the data file1 and the application promptly outputs the images where you can view your analysis. Furthermore, with some exciting features lined up, we'd be happy to incorporate some new features on demand.

To use the application, all the user needs to do is to upload the data file on provided tab. initialpage

Here is a sample of outputs generated by uploading one of the games data file in out application.

fieldgoal Here as you can see, Player S99 was present 2 times on position H and his overall score is 0.0

punt Here as you can see, Player D28 was present 6 times on position GL and his overall score is -0.5

As a part of Project 1, we have created a functioning application which performs data analytics on games data and outputs 6 individual images for each type of play. Each of these images have summarized data of respective plays imposed on them.

Tasks to be completed as a part of Project 2:

  1. Add functionality to get output of multiple files at once.
  2. After 1 is finished, add functionality to get output filtered based on SEASON / MATCH WEEK / MONTH / MATCH and OPPONENT
  3. Add Drag-and-Drop functionality in the Front End.
  4. Deploy the application on one of the publically available Cloud Services

Technology Stack

  • Python Flask
  • Vue.JS

Instructions to run:

  1. Install the dependency for backend application.
pip install -r requirements.txt
  1. Please go to vue-app directory for running the front end.
  • Make sure that npm is installed in the system
Run npm install 
  • Install Vue cli
npm install -g @vue/cli OR yarn global add @vue/cli
  • Run Vue UI
vue ui
 

For detailed steps visithere 3. Please go to backend/src directory for running the back end.

1 Data file refers to the files which are used by football coaches at NC State. The original source of the files is not known to us but it is believed that the source is widely popular amongst football coaches.