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todayamp;#39;s day 69 of learning python in todayamp;#39;s video Iamp;#39;m going to show you how to use pandas to fill null values in a CSV file in other words weamp;#39;re going to fill these blank cells with some sort of value the first step is to import pandas I did this by importing pandas as PD the next step is to read our data to do this I set DF equal to pd.read CSV and then the name of my file in the parentheses the next step is to use the fill na function to do this I type df.fill in a now in the parentheses weamp;#39;re going to put the value we want to fill the nas with for this example I put one one one the next thing we have to do is add a comma and set in place equal to true this will modify the data frame without having to create a new one now when I print DF and run the code you see we get one one in place of the empty cells when I set in place equal to false and run the code youamp;#39;ll see it no longer replaces the empty cells with one one this is because whe