I have two dataframes like this
import pandas as pd
import numpy as np
np.random.seed(0)
df1 = pd.DataFrame(np.random.randint(10, size=(5, 4)), index=list('ABCDE'), columns=list('abcd'))
df2 = pd.DataFrame(np.random.randint(10, size=(2, 4)), index=list('CE'), columns=list('abcd'))
a b c d
A 5 0 3 3
B 7 9 3 5
C 2 4 7 6
D 8 8 1 6
E 7 7 8 1
a b c d
C 5 9 8 9
E 4 3 0 3
The index of df2
is always a subset of the index of df1
and the column names are identical.
I want to create a third dataframe df3 = df1 - df2
. If one does that, one obtains
a b c d
A NaN NaN NaN NaN
B NaN NaN NaN NaN
C -3.0 -5.0 -1.0 -3.0
D NaN NaN NaN NaN
E 3.0 4.0 8.0 -2.0
I don't want the NAs
in the ouput but the respective values of df1
. Is there a smart way of using e.g. fillna
with the values of df1
in the rows not contained in df2
?
A workaround would be to do the subtract only the required rows like:
sub_ind = df2.index
df3 = df1.copy()
df3.loc[sub_ind, :] = df1.loc[sub_ind, :] - df2.loc[sub_ind, :]
which gives me the desired output
a b c d
A 5 0 3 3
B 7 9 3 5
C -3 -5 -1 -3
D 8 8 1 6
E 3 4 8 -2
but maybe there is a more straightforward way of achieving this?
df1-df2
? Isn't that your desired output?