When you work with diverse document types like Football Camp Registration, you are aware how important precision and focus on detail are. This document type has its particular structure, so it is essential to save it with the formatting intact. For that reason, working with this sort of documents might be a challenge for traditional text editing applications: a single wrong action may ruin the format and take extra time to bring it back to normal.
If you want to clean up data in Football Camp Registration without any confusion, DocHub is a perfect tool for such tasks. Our online editing platform simplifies the process for any action you may want to do with Football Camp Registration. The streamlined interface design is proper for any user, no matter if that individual is used to working with such software or has only opened it for the first time. Gain access to all modifying tools you require quickly and save your time on daily editing tasks. All you need is a DocHub account.
See how easy document editing can be irrespective of the document type on your hands. Gain access to all essential modifying features and enjoy streamlining your work on paperwork. Sign up your free account now and see immediate improvements in your editing experience.
foreign course in our course series and this course will be showing you a glimpse of how to clean data so we are getting close to the end of the course Series this is the fifth one so I think we only have two left and I am thinking of doing a bonus video on creating web apps for football analytics so if you wish to see that please do let me know in the comments so we are still using the same Library pandas and we are still using the same data frame players underscore22.csv and we saw use calls in our last lesson so what it does is it takes a list of columns we wish to extract from our original data frame and we can use this new list of columns in our notebook so weve imported let me run them one by one this let us run this so now that we have a data set imported we want to rename columns so we want to rename two columns in our data frame we have the column club name and nationality name we want to remove the name after it because Club is Club nationalities nationality so we wish to r