I have a dataframe with this type of data (too many columns):
col1 int64 col2 int64 col3 category col4 category col5 category
Columns seems like this:
Name: col3, dtype: category Categories (8, object): [B, C, E, G, H, N, S, W]
I want to convert all value in columns to integer like this:
[1, 2, 3, 4, 5, 6, 7, 8]
I solved this for one column by this:
dataframe['c'] = pandas.Categorical.from_array(dataframe.col3).codes
Now I have two columns in my dataframe - old 'col3' and new 'c' and need to drop old columns.
That's bad practice. It's work but in my dataframe many columns and I don't want do it manually.
How do this pythonic and just cleverly?