I have two Data Frames with identical column names and identical IDs in the first column. With the exception of the ID column, every cell that contains a value in one DataFrame contains NaN in the other. Here's an example of what they look like:
ID Cat1 Cat2 Cat3 1 NaN 75 NaN 2 61 NaN 84 3 NaN NaN NaN ID Cat1 Cat2 Cat3 1 54 NaN 44 2 NaN 38 NaN 3 49 50 53
I want to merge them into one DataFrame while keeping the same Column Names. So the result would look like this:
ID Cat1 Cat2 Cat3 1 54 75 44 2 61 38 84 3 49 50 53
df3 = pd.merge(df1, df2, on='ID', how='outer')
Which gave me a DataFrame containing twice as many columns. How can I merge the values from each DataFrame into one?