I have a df with two columns and I want to combine both columns ignoring the NaN values. The catch is that sometimes both columns have NaN values in which case I want the new column to also have NaN. Here's the example:

df = pd.DataFrame({'foodstuff':['apple-martini', 'apple-pie', None, None, None], 'type':[None, None, 'strawberry-tart', 'dessert', None]})

foodstuff   type
0   apple-martini   None
1   apple-pie   None
2   None    strawberry-tart
3   None    dessert
4   None    None

I tried to use fillna and solve this :

df['foodstuff'].fillna('') + df['type'].fillna('')

and I got :

0      apple-martini
1          apple-pie
2    strawberry-tart
3            dessert
dtype: object

The row 4 has become a blank value. What I wan't in this situation is a NaN value since both the combining columns are NaNs.

0      apple-martini
1          apple-pie
2    strawberry-tart
3            dessert
4            None       
dtype: object

Use fillna on one column with the fill values being the other column:


The resulting output:

0      apple-martini
1          apple-pie
2    strawberry-tart
3            dessert
4               None
  • This only works because of the rather unrealistic example provided, in which there's always at least a None per row. – kilgoretrout Dec 5 '19 at 13:04
  • @kilgoretrout I find it works even when both columns contain null value – jdeng Aug 19 '20 at 21:24
  • Is there any option to remove 'type column after fillna in the same line.? ie by avoiding another 'drop` statement – sjd Mar 10 at 7:59

you can use the combine method with a lambda:

df['foodstuff'].combine(df['type'], lambda a, b: ((a or "") + (b or "")) or None, None)

(a or "") returns "" if a is None then the same logic is applied on the concatenation (where the result would be None if the concatenation is an empty string).


You can always fill the empty string in the new column with None

import numpy as np

df['new_col'].replace(r'^\s*$', np.nan, regex=True, inplace=True)

Complete code:

import pandas as pd
import numpy as np

df = pd.DataFrame({'foodstuff':['apple-martini', 'apple-pie', None, None, None], 'type':[None, None, 'strawberry-tart', 'dessert', None]})

df['new_col'] = df['foodstuff'].fillna('') + df['type'].fillna('')

df['new_col'].replace(r'^\s*$', np.nan, regex=True, inplace=True)



    foodstuff   type    new_col
0   apple-martini   None    apple-martini
1   apple-pie   None    apple-pie
2   None    strawberry-tart strawberry-tart
3   None    dessert dessert
4   None    None    NaN
  • A general solution should provide also zero replacement values for numeric data types (.fillna(default_str_or_val)) – mirekphd Jun 8 '20 at 6:31
  • fillna both columns together
  • sum(1) to add them
  • replace('', np.nan)

df.fillna('').sum(1).replace('', np.nan)

0      apple-martini
1          apple-pie
2    strawberry-tart
3            dessert
4                NaN
dtype: object
  1. You can replace the non zero values with column names like

    df1= df.replace(1, pd.Series(df.columns, df.columns))

  2. Replace 0's with empty string and then merge the columns like below

    f = f.replace(0, '') f['new'] = f.First+f.Second+f.Three+f.Four

Refer the full code below.

import pandas as pd
df = pd.DataFrame({'Second':[0,1,0,0],'First':[1,0,0,0],'Three':[0,0,1,0],'Four':[0,0,0,1], 'cl': ['3D', 'Wireless','Accounting','cisco']})
df1= df.replace(1, pd.Series(df.columns, df.columns))
f = pd.merge(df1,df2,how='right',left_on=['cl'],right_on=['pi'])
f = f.replace(0, '')
f['new'] = f.First+f.Second+f.Three+f.Four


In [3]: df1                                                                                                                                                                              
   Second  First  Three  Four          cl
0       0  First      0     0          3D
1  Second      0      0     0    Wireless
2       0      0  Three     0  Accounting
3       0      0      0  Four       cisco


In [4]: df2                                                                                                                                                                              
0  Accounting
1       cisco
2          3D
3    Wireless

Final df will be:

In [2]: f                                                                                                                                                                                
   Second  First  Three  Four          cl          pi     new
0          First                       3D          3D   First
1  Second                        Wireless    Wireless  Second
2                 Three        Accounting  Accounting   Three
3                        Four       cisco       cisco    Four

We can make this problem even more complete and have a universal solution for this type of problem.

The key things in there are that we wish to join a group of columns together but just ignore NaNs.

Here is my answer:

df = pd.DataFrame({'foodstuff':['apple-martini', 'apple-pie', None, None, None], 
               'type':[None, None, 'strawberry-tart', 'dessert', None],
              'type1':[98324, None, None, 'banan', None],
              'type2':[3, None, 'strawberry-tart', np.nan, None]})

enter image description here

df["output"] = df[['foodstuff', 'type', 'type1', 'type2']].agg(', '.join, axis=1)
df['output'] = df['output'].str.replace('NAN, ', '')
df['output'] = df['output'].str.replace(', NAN', '')

enter image description here


If you deal with columns that contain something where the others don't and vice-versa, a one-liner that does well the job is

>>> df.rename(columns={'type': 'foodstuff'}).stack().unstack()
0    apple-martini
1        apple-pie
2  strawberry-tart
3          dessert

... which solution also generalises well if you have multiple columns to "intricate", as long as you can define your ~.rename mapping. The intention behind such renaming is to create duplicates that ~.stack().unstack() will then process for you.

As explained, this solution only suits configuration with orthogonal columns, i.e. columns that never are simultaneously valued.


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