Skip to content

This project aims understand a cohort of people who have difficulties paying back loans to make better business decisions as well as ensure that capable loan applicants are not rejected. It involves the use of Explanatory Data Analysis (EDA) to analyze patterns in the data and find a solution to challenges faced by a financial company.

Notifications You must be signed in to change notification settings

sanskriti2005/bank-loan-case-study

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

4 Commits
 
 
 
 
 
 
 
 

Repository files navigation

bank-loan-case-study

This project aims understand a cohort of people who have difficulties paying back loans to make better business decisions as well as ensure that capable loan applicants are not rejected. It involves the use of Explanatory Data Analysis (EDA) to analyze patterns in the data and find a solution to challenges faced by a financial company.

APPROACH

The approach for this project is defined in the following steps:

  • RESEARCH, it was done to understand the dataset, the values and the questions for proper Exploratory Data Analysis.
  • Then, the dataset was loaded into the tech-stack that I wanted to use. It was prepared by cleaning it – removing empty and unnecessary values, filtering out rows and columns not important to my analysis.
  • Then, analysis was done on this cleaned data.

TECH-STACK USED

Python Programming Language, Jupyter Notebook, Pandas Module, Matplotlib Module, Seaborn Module, MS Excel and MS Word were used to execute this project.

A large part of the analysis was done using Python, in Jupyter Notebook, Python modules - Pandas, Matplotlib and Seaborn were used for the analysis and visualisation. Excel was used to visualise and analyze data. MS Word was used to present all this analysis and insight.

About

This project aims understand a cohort of people who have difficulties paying back loans to make better business decisions as well as ensure that capable loan applicants are not rejected. It involves the use of Explanatory Data Analysis (EDA) to analyze patterns in the data and find a solution to challenges faced by a financial company.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published