# Pandas replace zero as the nearest average non-zero value

I have a dataframe:

`````` df = pd.DataFrame({'A':[0,0,15,0,0,12,0,0,0,5]})
``````

And I want to replace the 0 value with the nearest non zero value,

For example, the first value is 0, then I find the the nearest non-zero value is 15, so I replace it as 15, then the data becomes:`[15,0,15,0,0,12,0,0,0,5],`

Then for all the value except first one, I need to find the both side of the nearest non-zero value, and average them. So for the second 0, it would be (15+15)/2; And the third zero would be (15+12)/2

I only know how to replace zero to the nearest value by:

``````df['A'].replace(to_replace=0, method='ffill')

0     0
1     0
2    15
3    15
4    15
5    12
6    12
7    12
8    12
9     5
``````

But the first two zero value cannot be replaced, and this way is not getting the average value.

• This is not something conventional, so you have to write a loop for this since you have to go through many iterations. Jul 19 '19 at 9:58
• To add to above comment, it is basically writing your own short algo. where you need to check each element, it's nearby element and then perform operations Jul 19 '19 at 10:02
• – anky
Jul 19 '19 at 10:05

While not exactly the same, it seems like a good solution to your problem would be to apply a linear interpolation.

You could use `interpolate`, which by default performs a linear interpolation, setting `limit_direction` to `both` so it fills both forward and backward:

``````df['A'] = df.A.interpolate(limit_direction='both')

A
0  15.00
1  15.00
2  15.00
3  14.00
4  13.00
5  12.00
6  10.25
7   8.50
8   6.75
9   5.00
``````