16

I have a dataframe similar to below

id A   B   C   D E
1  2   3   4   5 5
1  NaN 4   NaN 6 7
2  3   4   5   6 6
2  NaN NaN 5   4 1

I want to do a null value imputation for columns A, B, C in a forward filling but for each group. That means, I want the forward filling be applied on each id. How can I do that?

1 Answer 1

26

Use GroupBy.ffill for forward filling per groups for all columns, but if first values per groups are NaNs there is no replace, so is possible use fillna and last casting to integers:

print (df)
   id    A    B    C  D    E
0   1  2.0  3.0  4.0  5  NaN
1   1  NaN  4.0  NaN  6  NaN
2   2  3.0  4.0  5.0  6  6.0
3   2  NaN  NaN  5.0  4  1.0

cols = ['A','B','C']
df[['id'] + cols] = df.groupby('id')[cols].ffill().fillna(0).astype(int)
print (df)
   id  A  B  C  D    E
0   1  2  3  4  5  NaN
1   1  2  4  4  6  NaN
2   2  3  4  5  6  6.0
3   2  3  4  5  4  1.0

Detail:

print (df.groupby('id')[cols].ffill().fillna(0).astype(int))
   id  A  B  C
0   1  2  3  4
1   1  2  4  4
2   2  3  4  5
3   2  3  4  5

Or:

cols = ['A','B','C']
df.update(df.groupby('id')[cols].ffill().fillna(0))
print (df)
   id    A    B    C  D    E
0   1  2.0  3.0  4.0  5  NaN
1   1  2.0  4.0  4.0  6  NaN
2   2  3.0  4.0  5.0  6  6.0
3   2  3.0  4.0  5.0  4  1.0
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  • 1
    I want to do it on some columns only like you last example, but when I use you're code I lose other columns, e.g. D to E
    – HHH
    Commented Dec 9, 2018 at 21:30
  • 1
    I have that piece as well...it only adds one extra column to the end!
    – HHH
    Commented Dec 9, 2018 at 21:36
  • 1
    @H.Z. - Interesting, for me it working nice. Added alternative solution with update, can you check it?
    – jezrael
    Commented Dec 9, 2018 at 21:38
  • 5
    Does the fillna(0) do anything in this example? I cannot see any values that were NaNs and are now zeros, in fact I cannot see any zeros at all. Is it OK to miss that out?
    – dumbledad
    Commented Mar 26, 2020 at 17:00
  • 1
    @jezrael: if I use this: s3[['ID'] + cols] = s3.groupby('ID')[cols].ffill().fillna(0). There is an error: ValueError: Columns must be same length as key.
    – Jason
    Commented Jun 5, 2020 at 9:20

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