I have a pandas dataframe like below :

```
profile_index point_index z x y
0 0 1 -0.885429 297903.323027 6.669492e+06
1 0 2 -0.820151 297904.117752 6.669492e+06
2 0 3 -0.729671 297904.912476 6.669491e+06
3 0 4 -0.649332 297905.707201 6.669490e+06
4 1 1 -0.692186 297906.501926 6.669490e+06
5 1 2 -0.885429 297903.323027 6.669492e+06
6 1 3 -0.820151 297904.117752 6.669492e+06
3 1 4 -0.649332 297905.707201 6.669490e+06
```

I want to create a new "z_gauss" column by applying a convolution (numpy.convolve) with a gaussian filter on vectors (column z) corresponding to a group of rows in my dataframe with the same "profile_index".

I've tried to do something like

`data["z_gauss"] = data.groupby('profile_index').apply(lambda x: np.convolve(x, gaussian, 'same'))`

where `gaussian`

is my gaussian filter (vector). But I get some errors like `ValueError: object too deep for desired array`

Do you have any advices/hints on how to proceed ? Should I split my dataframe into different ones ?

`data.groupby('profile_index')['x'].apply(lambda x: np.convolve(x, gaussian, 'same'))`

?