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How to remove urls and special characters in pPython pandas dataframe. In this video im so excited to share with you a simple trick on how you can remove all URLs and a special characters in Python pandas dataframe. dont forget to subscribe and turn on notification. Okay guys im moses from motech and welcome back to our youtube channel here as you can see this is our dataframe loaded on a jupyter notebook and here it shows the first five rows of dataframe. As you can see from the first row, the first row contain youtube URL link but also the third row contain URLs right. The fourth row containing special character which is pipe line. so this dataframe contain or it is a mixture of some string, some URLs and some special characters.So as part of data cleaning in python pandas data science we want to remove all the urls and they want to remove all special character because these are noisy data right. so they bring noise in our data frame so we need to re