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.