You can’t make document alterations more convenient than editing your dot files online. With DocHub, you can get instruments to edit documents in fillable PDF, dot, or other formats: highlight, blackout, or erase document elements. Include text and images where you need them, rewrite your copy entirely, and more. You can download your edited file to your device or submit it by email or direct link. You can also transform your documents into fillable forms and ask others to complete them. DocHub even offers an eSignature that allows you to sign and send out paperwork for signing with just a few clicks.
Your records are securely stored in our DocHub cloud, so you can access them at any time from your desktop, laptop, smartphone, or tablet. Should you prefer to use your mobile device for file editing, you can easily do so with DocHub’s application for iOS or Android.
Hey guys, Cleaning up your pandas dataframe headers can be a necessary step to make your dataframes more readable and easier to understand. In this video, I will show you how you can easily tidy up your column headers. Ok, and without further ado, let us get started. As the first step, let me create a pandas dataframe. If I execute this cell, our dataframe looks like this. And as you can see, the header looks pretty messy. We have empty spaces between words, special characters and overall, the header styling is inconsistent. This might lead to potential errors when you further process the data. For instance, if you use the amp;#39;dotamp;#39; notation when selecting columns, you cannot have empty spaces in the header names. To solve this issue, we could create a custom function to clean up the header. For each value we pass to this function, I am checking if it is a string. If that is the case, I am iterating over each character in the string. First, I am removing any characters that