Skip to content

In this project, we are planning to build an analytical dashboard from the data of cricket matches. The data analysis would be dynamic in nature, where the user is able to provide parameters through filters. The user would be able to observe relations and trends in the result.

Notifications You must be signed in to change notification settings

hirdeshkumar2407/Analket-IPL-Data-Analysis

 
 

Repository files navigation

Analket-IPL-Data-Analysis

In this project, we are planning to build an analytical dashboard from the data of cricket matches. The data analysis would be dynamic in nature, where the user is able to provide parameters through filters. The user would be able to observe relations and trends in the result.

Problem Statement

Sports is an area where data analysis is growing day by day from the perspectives of athletes, broadcasters, brands, coaches, fans, investors, marketing, teams, team analysts and team owners. In order to find the hidden intricacies and pattern details that are not easily noticed in plain sight.

Objectives

Whereas the objective of our course is concerned, in this project we will be having an improvisation of the concepts in this course, we will use libraries like NumPy, MathPlotlib, Pandas, and Seaborn.

We have set the milestones for the implementation of the project:

  • Data Gathering
  • Data Cleaning
  • Dataset Merge
  • EDA
  • Front End Application
  • Back End Application
  • Data Visualization

Web Application

URL: www.analket.com

Username: datascience
Password: Data.123456789

Dataset Reference

https://www.kaggle.com/patrickb1912/ipl-complete-dataset-20082020

About

In this project, we are planning to build an analytical dashboard from the data of cricket matches. The data analysis would be dynamic in nature, where the user is able to provide parameters through filters. The user would be able to observe relations and trends in the result.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Jupyter Notebook 100.0%