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I want to fill data frame NaNs with the last valid value for a given group. For instance:

import pandas as pd
import random as randy
import numpy as np

df_size = int(1e1)                
df = pd.DataFrame({'category': randy.sample(np.repeat(['Strawberry','Apple',],df_size),df_size), 'values': randy.sample(np.repeat([np.NaN,0,1],df_size),df_size)}, index=randy.sample(np.arange(0,10),df_size)).sort_index(by=['category'], ascending=[True])

Delivers:

     category   value
7       Apple     NaN
6       Apple       1
4       Apple       0
5       Apple     NaN
1       Apple     NaN
0  Strawberry       1
8  Strawberry     NaN
2  Strawberry       0
3  Strawberry       0
9  Strawberry     NaN

And the column I wish to calculate looks like this:

     category   value  last_value
7       Apple     NaN         NaN
6       Apple       1         NaN
4       Apple       0           1
5       Apple     NaN           0
1       Apple     NaN           0
0  Strawberry       1         NaN
8  Strawberry     NaN           1
2  Strawberry       0           1
3  Strawberry       0           0
9  Strawberry     NaN           0

Tried shift() and iterrows() but to no avail.

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1 Answer 1

up vote 3 down vote accepted

It looks like you want to first do a ffill then do a shift:

In [11]: df['value'].ffill()
Out[11]:
7   NaN
6     1
4     0
5     0
1     0
0     1
8     1
2     0
3     0
9     0
Name: value, dtype: float64

In [12]: df['value'].ffill().shift(1)
Out[12]:
7   NaN
6   NaN
4     1
5     0
1     0
0     0
8     1
2     1
3     0
9     0
Name: value, dtype: float64

To do this over each group you have to groupby category first and then apply this function:

In [13]: g = df.groupby('category')

In [14]: g['value'].apply(lambda x: x.ffill().shift(1))
Out[14]:
7   NaN
6   NaN
4     1
5     0
1     0
0   NaN
8     1
2     1
3     0
9     0
dtype: float64

In [15]: df['last_value'] = g['value'].apply(lambda x: x.ffill().shift(1))
share|improve this answer
    
I think the OP wants this trick pulled on the groups from df.groupby("category"), which may explain the third NaN. –  DSM Jul 23 '13 at 17:25
    
@DSM :) seems so obvious now! –  Andy Hayden Jul 23 '13 at 17:26
    
Works like charm, thank you both! –  mrbarti Jul 23 '13 at 19:38

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