GitHunt
SH

shivanidashore777/IPL_Exploratory_Data_Analysis_project

The IPL EDA (Exploratory Data Analysis) was conducted, revealing valuable insights. The analysis focused on various aspects such as player performance, team statistics, and match outcomes. Key findings include trends in run-scoring, top performers, and team dynamics. The EDA offers actionable insights for teams and fans to make data-driven decision

IPL_Exploratory_Data_Analysis_project

The IPL EDA (Exploratory Data Analysis) was conducted, revealing valuable insights. The analysis focused on various aspects such as player performance, team statistics, and match outcomes. Key findings include trends in run-scoring, top performers, and team dynamics. The EDA offers actionable insights for teams and fans to make data-driven decision

๐Ÿ” Step 1: Data Scraping ๐ŸŒ
Scraped IPL data from the website using Beautiful Soup library, extracting valuable information for analysis.

๐Ÿงน Step 2: Data Cleaning ๐Ÿงผ
Utilized the powerful pandas library to clean the dataset, removing duplicates, handling missing values, and ensuring data consistency.

๐Ÿ“Š Step 3: Visualization ๐Ÿ“ˆ
Leveraged Plotly libraries to create visually appealing charts and graphs, uncovering patterns, trends, and key insights in the IPL data.

๐Ÿš€ Step 4: Deployment ๐ŸŒŸ
Deployed the IPL EDA project using Streamlit, providing an interactive and user-friendly interface for easy exploration and sharing of findings.

๐Ÿ”‘ Key Takeaways ๐Ÿ“š
This project showcases the power of web scraping, data cleaning, visualization, and deployment using popular Python libraries. It enables efficient analysis and empowers IPL enthusiasts with valuable insights.

Dataset resource: I scraped the dataset from this website link:https://www.iplt20.com/matches/results/2008
and Kaggle

Website link: https://eda-ipl.streamlit.app/

Website Interface
Screenshot 2023-07-17 215006

Languages

Python100.0%

Contributors

Created July 16, 2023
Updated July 13, 2024