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Suppose we have a dataframe with 2 or more columns of numeric data. e.g.

df = pd.DataFrame( {'a':linspace(1,10,10), 'b':linspace(11,20,10), 'c':linspace(21,30,10)})

df['a'][3]=None
df['b'][3]=None
df['a'][2]=None

df
Out[98]: 
    a   b   c
0   1  11  21
1   2  12  22
2 NaN  13  23
3 NaN NaN  24
4   5  15  25
5   6  16  26
6   7  17  27
7   8  18  28
8   9  19  29
9  10  20  30

I want to fill NaN values in column a with values from column b if b is not NaN, or values from column c otherwise.

i.e. df becomes

df
Out[102]: 
    a   b   c
0   1  11  21
1   2  12  22
2  13  13  23
3  24 NaN  24
4   5  15  25
5   6  16  26
6   7  17  27
7   8  18  28
8   9  19  29
9  10  20  30

The most obvious way to do it is to loop through the rows and then loop through the columns, but what is a more pythonic way?

share|improve this question
    
df.a = df.a.fillna(df.b).fillna(df.c) –  behzad.nouri Mar 14 at 22:29
2  
or df.a.fillna(df.b.fillna(df.c), inplace=True) –  behzad.nouri Mar 14 at 22:34
    
Nice. Thanks! Is it more Pythonic to do df.a or df['a'] ? –  Ginger Mar 14 at 22:35
    
i personally find .col notation cleaner, but this will not work if there is column the same name as a data-frame method (e.g. 'count') –  behzad.nouri Mar 14 at 22:42
1  
dot notation won't work either if the column name is not a valid identifier –  Andy Hayden Mar 14 at 23:57

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