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Welcome back to A4 Analysis. Today, we will be doing exploratory data analysis on a dataset related to bank loan defaulters. I have already completed the coding, visualization, and written a blog, but I will walk you through each step. The purpose of this case study is to use simple tools to gather information about loan applicants. The problem statement is that a bank wants to understand the risk of default when giving out loans.