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[Music] thank you hello everyone welcome to Ivys YouTube channel we are back with another video series on data cleaning and preparation using Excel today we are going to deal with duplicate data data may have duplicate rows which means that the entire record is same lets have a look at the data and see we see that there are numerous duplicate records now we want a treatment for such kind of a data the treatment is the first treatment that we have is to remove duplicate so we go back to the data set we select the data in our data tab we have an icon named remove duplicate as soon as we click on it well see that it will ask for all the columns to be removed for duplicate we click on all and click ok and see that seven duplicate values found and removed and 17 unique values remain this was the first method now in our data suppose if we want to find that how many records are actually duplicate so the second option second way will be highlight using conditional formatting we select the d