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In this video we want to talk about cut function in pandas package in python programming language. So suppose that we have a data set like this, which there are some students and we have their marks, and we want to convert their mark into a qualitative mark based on these conditions. For example: 86 is in this interval so the qualitative mark is going to be B. So first of all we should import pandas as pd then we should define our data frame which you dont have to type these lines because we have put them in the description below. So now if I print the df which is our data frame and if I run the code you can see that heres our data frame and we want to convert these marks into qualitative mark. In order to do that, first of all we should define our cutoff points so as you can see our cutoff points are 0 are 0, then 50, and you can see 50, then 70 then 90 and then 100. And then we are going to define our labels in a list so as you can see the first lab