1

I want to fill v5 column's NaN with its longest length (by position from left side) not NaN columns' values.

     v1   v2   v3    v4     v5
0     a   ab  abc  abcd  abcde
1  abcd  abc   ab   NaN    NaN
2     a  abc   ac   cde    NaN
3   cde    c  NaN    cd    NaN

For example, for the second row of v5, its its longest length Not NaN column is v1, then we take abcd. If multiple values with the same longest length exist, then the value far left has priority, as example in the third row, we take abc as value of v5 instead of cde.

Is it possible to do that in Pandas? Thanks.

The expected output is like this:

     v1   v2   v3    v4     v5
0     a   ab  abc  abcd  abcde
1  abcd  abc   ab   NaN   abcd
2     a  abc   ac   cde    abc
3   cde    c  NaN    cd    cde
1

Idea is test lengths of all values by DataFrame.apply with Series.str.len, then replace rows by missing values with no maximal rows by DataFrame.where, back filling missing values and last get first column by position:

df1 = df.apply(lambda x: x.str.len())

df['v5'] = df.where(df1.eq(df1.max(axis=1), axis=0)).bfill(axis=1).iloc[:, 0]
print (df)
     v1   v2   v3    v4     v5
0     a   ab  abc  abcd  abcde
1  abcd  abc   ab   NaN   abcd
2     a  abc   ac   cde    abc
3   cde    c  NaN    cd    cde
| improve this answer | |
  • Thank you, if the value far right has priority, what I should modify in your code? – ahbon Feb 13 at 6:38
  • 1
    @ahbon - Then use df['v5'] = df.where(df1.eq(df1.max(axis=1), axis=0)).ffill(axis=1).iloc[:, -1] – jezrael Feb 13 at 6:41

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