You no longer have to worry about how to clean up identification in odt. Our powerful solution provides straightforward and fast document management, enabling you to work on odt files in a couple of moments instead of hours or days. Our platform includes all the tools you need: merging, adding fillable fields, approving documents legally, placing symbols, and much more. You don't need to set up additional software or bother with expensive applications demanding a powerful device. With only two clicks in your browser, you can access everything you need.
Start now and handle all different types of files professionally!
and so we can now go ahead to clean our data so as I mentioned weamp;#39;re going to drop the patientamp;#39;s ID column to prevent us from overheating and weamp;#39;re also going to encode the diabetes column as a category so that is basically what weamp;#39;re doing here and weamp;#39;re going to use the library Janita R has a lot of libraries and a lot of packages that make your work easier so just consider looking into all the developments that are going into making using are quite simple for you Iamp;#39;m just going to run that cell and then so now you see we have our diabetic column has now become a factor factor of zero and one the rest have remained the same and we donamp;#39;t have the patient ID column anymore so the next thing now weamp;#39;re going to do is weamp;#39;re trying to understand the relationships between our data attributes