I'm a new pandas user (as of yesterday), and have found it at times both convenient and frustrating.
My current frustration is in trying to use df.fillna() on multiple columns of a dataframe. For example, I've got two sets of data (a newer set and an older set) which partially overlap. For the cases where we have new data, I just use that, but I also want to use the older data if there isn't anything newer. It seems I should be able to use fillna() to fill the newer columns with the older ones, but I'm having trouble getting that to work.
Attempt at a specific example:
But this doesn't work as expected - numbers show up in the new columns that had been NaNs, but not the ones that were in the old columns (in fact, looking through the data, I have no idea where the numbers it picked came from, as they don't exist in either the new or old data anywhere).
Is there a way to fill in NaNs of specific columns in a DataFrame with vales from other specific columns of the DataFrame?