# How to fill NaN values of a column using the mean of surrounding (top and bottom) values of that column?

I have a df which has some NaN values. For example here is the df:

import numpy as np
import pandas as pd

np.random.seed(100)
data = np.random.rand(10,3)
data[3,0] = np.NaN
data[6,0] = np.NaN

data[5,1] = np.NaN
data[7,1] = np.NaN

data[1,2] = np.NaN
data[8,2] = np.NaN
data[6,2] = np.NaN

df = pd.DataFrame(data)
df


here is the result of running the above code:

    0           1           2
0   0.543405    0.278369    0.424518
1   0.844776    0.004719    NaN
2   0.670749    0.825853    0.136707
3   NaN         0.891322    0.209202
4   0.185328    0.108377    0.219697
5   0.978624    NaN         0.171941
6   NaN         0.274074    NaN
7   0.940030    NaN         0.336112
8   0.175410    0.372832    NaN
9   0.252426    0.795663    0.015255


What I want is that the NaN values be filled with the mean of upper and lower values, just like below:

np.random.seed(100)
data = np.random.rand(10,3)
data[3,0] = (data[2,0] + data[4,0])/2
data[6,0] = (data[5,0] + data[7,0])/2

data[5,1] = (data[4,1] + data[6,1])/2
data[7,1] = (data[6,1] + data[8,1])/2

data[1,2] = (data[0,2] + data[2,2])/2
data[8,2] = (data[7,2] + data[9,2])/2
data[6,2] = (data[5,2] + data[7,2])/2
df = pd.DataFrame(data)
df


result of the code above is:

    0           1           2
0   0.543405    0.278369    0.424518
1   0.844776    0.004719    0.280612
2   0.670749    0.825853    0.136707
3   0.428039    0.891322    0.209202
4   0.185328    0.108377    0.219697
5   0.978624    0.191225    0.171941
6   0.959327    0.274074    0.254026
7   0.940030    0.323453    0.336112
8   0.175410    0.372832    0.175683
9   0.252426    0.795663    0.015255


How can I automatically do this in python?

• Is possible use df = df.interpolate() ? Commented Sep 13, 2018 at 8:25
• Interpolate is the solution, as suggested above. There are also other interpolation methods available besides the mean, which is the default method used by the function. Commented Sep 13, 2018 at 8:48

I think DataFrame.interpolate should help here:

df1 = df.interpolate()
print (df1)
0         1         2
0  0.543405  0.278369  0.424518
1  0.844776  0.004719  0.280612
2  0.670749  0.825853  0.136707
3  0.428039  0.891322  0.209202
4  0.185328  0.108377  0.219697
5  0.978624  0.191225  0.171941
6  0.959327  0.274074  0.254026
7  0.940030  0.323453  0.336112
8  0.175410  0.372832  0.175683
9  0.252426  0.795663  0.015255


If there are multiple consecutive NaNs interpolate it not replace by mean:

np.random.seed(100)
data = np.random.rand(10,3)
data[3,0] = np.NaN
data[6,0] = np.NaN

data[5,1] = np.NaN
data[7,1] = np.NaN

data[1,2] = np.NaN
data[2,2] = np.NaN
data[8,2] = np.NaN
data[6,2] = np.NaN

df = pd.DataFrame(data)
print (df)
0         1         2
0  0.543405  0.278369  0.424518
1  0.844776  0.004719       NaN
2  0.670749  0.825853       NaN
3       NaN  0.891322  0.209202
4  0.185328  0.108377  0.219697
5  0.978624       NaN  0.171941
6       NaN  0.274074       NaN
7  0.940030       NaN  0.336112
8  0.175410  0.372832       NaN


df1 = df.interpolate()
print (df1)
0         1         2
0  0.543405  0.278369  0.424518
1  0.844776  0.004719  0.352746
2  0.670749  0.825853  0.280974
3  0.428039  0.891322  0.209202
4  0.185328  0.108377  0.219697
5  0.978624  0.191225  0.171941
6  0.959327  0.274074  0.254026
7  0.940030  0.323453  0.336112
8  0.175410  0.372832  0.175683
9  0.252426  0.795663  0.015255


Solution for mean:

df2 = df.ffill().add(df.bfill()).div(2)
print (df2)
0         1         2
0  0.543405  0.278369  0.424518
1  0.844776  0.004719  0.316860
2  0.670749  0.825853  0.316860
3  0.428039  0.891322  0.209202
4  0.185328  0.108377  0.219697
5  0.978624  0.191225  0.171941
6  0.959327  0.274074  0.254026
7  0.940030  0.323453  0.336112
8  0.175410  0.372832  0.175683
9  0.252426  0.795663  0.015255

• Thank you dear Jezrael. In your second solution, you are filling every missing value with mean of 2 upper and 2 lower values? Could you please elaborate further on the second solution? Commented Sep 13, 2018 at 9:45
• @hyTuev - For column 2 are 2 consecutive NaN values, do you need replace them by (0.424518 + 0.209202) / 2 = 0.31686000000000003 ? Commented Sep 13, 2018 at 10:18
• @jezrael, for your last solution, if there are NaN values at the beginning or at the end of the dataframe, they will not change. So you have to add a .ffill().bfill() at the end of your solution, that is df2 = df.ffill().add(df_tmp.bfill()).div(2).ffill().bfill(). Commented Jul 5, 2022 at 18:06

Using interpolate per your specifications (only one index row away):

df.interpolate(method='index', limit=1)


Or doing it directly using combine_first:

fills = 0.5 * (df.fillna(method='ffill', limit=1)
+ df.fillna(method='bfill', limit=1))
df.combine_first(fills)


More accurately using sklearn

from sklearn.preprocessing import Imputer

mean_imputer = Imputer(missing_values='NaN', strategy='mean', axis=0)

mean_imputer = mean_imputer.fit(df)

imputed_df = mean_imputer.transform(df.values)

imputed_df

[0.54340494, 0.27836939, 0.42451759],
[0.84477613, 0.00471886, 0.21620453],
[0.67074908, 0.82585276, 0.13670659],
[0.5738436 , 0.89132195, 0.20920212],
[0.18532822, 0.10837689, 0.21969749],
[0.97862378, 0.44390102, 0.17194101],
[0.5738436 , 0.27407375, 0.21620453],
[0.94002982, 0.44390102, 0.33611195],
[0.17541045, 0.37283205, 0.21620453],
[0.25242635, 0.79566251, 0.01525497]]

• I think Imputer uses the mean of whole column and is not suitable for my question. Commented Sep 13, 2018 at 9:35