# How to fill NaN values based on previous columns

I have an initial column with no missing data (A) but with repeated values. How do I fill the next column (B) with missing data so that it is filled and the column on the left always has the same value on the right? I would also like any other columns to remain the same (C)

For example, this is what I have

``````    A    B     C
1   1    20    4
2   2    NaN   8
3   3    NaN   2
4   2    30    9
5   3    40    1
6   1    NaN   3
``````

And this is what I want

``````    A    B     C
1   1    20    4
2   2    30*   8
3   3    40*   2
4   2    30    9
5   3    40    1
6   1    20*   3
``````

Asterisk on filled values.

This needs to be scalable with a very large dataframe.

Additionally, if I had a value on the left column that has more than one value on the right side on separate observations, how would I fill with the mean?

• The answer is very complex. Assuming you have huge data then imputing depends upon the type of data. Though, this can be done pro-grammatically but before that you need to do pre analysis of your data and check various type of missing. All data need not be required. Commented Feb 12, 2020 at 13:07
• You want: `df['B'] = df['B'].fillna(df.groupby('A')['B'].transform('mean'))` A similar question was asked earlier, I provided an explanation of how to fill missing numbers with the mean of a group here: stackoverflow.com/questions/60192232/… Commented Feb 12, 2020 at 19:09

You can use `groupby` on `'A'` and use `first` to find the first corresponding value in `'B'` (it will not select `NaN`).

``````import pandas as pd

df = pd.DataFrame({'A':[1,2,3,2,3,1],
'B':[20, None, None, 30, 40, None],
'C': [4,8,2,9,1,3]})

# find first 'B' value for each 'A'
lookup = df[['A', 'B']].groupby('A').first()['B']

# only use rows where 'B' is NaN

# replace NaN values in 'B' with lookup values

print(df)
``````

Which outputs:

``````   A     B  C
0  1  20.0  4
1  2  30.0  8
2  3  40.0  2
3  2  30.0  9
4  3  40.0  1
5  1  20.0  3
``````

If there are many `NaN` values in `'B'` you might want to exclude them before you use `groupby`.

``````import pandas as pd

df = pd.DataFrame({'A':[1,2,3,2,3,1],
'B':[20, None, None, 30, 40, None],
'C': [4,8,2,9,1,3]})

# Only use rows where 'B' is NaN

# Find first 'B' value for each 'A'

print(df)
``````

You could do sort_values first then forward fill column B based on column A. The way to implement this will be:

``````import pandas as pd
import numpy as np

x = {'A':[1,2,3,2,3,1],
'B':[20,np.nan,np.nan,30,40,np.nan],
'C':[4,8,2,9,1,3]}

df = pd.DataFrame(x)

#sort_values first, then forward fill based on column B
#this will get the right values for you while maintaing
#the original order of the dataframe
df['B'] = df.sort_values(by=['A','B'])['B'].ffill()
print (df)
``````

Output will be:

Original data:

``````   A     B  C
0  1  20.0  4
1  2   NaN  8
2  3   NaN  2
3  2  30.0  9
4  3  40.0  1
5  1   NaN  3
``````

Updated data:

``````   A     B  C
0  1  20.0  4
1  2  30.0  8
2  3  40.0  2
3  2  30.0  9
4  3  40.0  1
5  1  20.0  3
``````