I created this tool to assist friends and family when taking out loans. My goal was to create an intuitive, easy to use tool to assist with understanding the cost of taking out a loan, and to help plan monthly expenses going forward.
My python code starts with a welcome message explaining the function of the program, which is to calculate the payment schedule for the user's loan. It then prompts the user to input their loan amount, interest, and loan term. The code then takes the users inputs and plugs them into a math formula in order to to calculate the cost of the loan. The code then provides the user with information about payment amounts and schedules based on their input.
Below is a link to my code on github:
https://github.com/Isaiah633/Isaiah-s-Loan-Calculator/blob/982978924d33265a31fb4f4a2f90492e35b7eec1/Loan%20Calculator
My objectives in this project were accomplished with the code I wrote. The program worked and performed the tasks and calculations without errors.
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