I have a dataframe with two columns. The first column has the class number (either 1 or 0). The second column holds matrices that are (1999,13). I am trying to figure out how to convert the matrices to (1,13) by getting the mean of each matrix column.

The reason I am doing this is for audio processing. I extracted the MFCCs for each 10 second audio file I have. For each 10 second audio there are 1999 frames, and each frame has 13 cepstral coefficients.

```
example_df = pd.DataFrame()
example_df['Class'] = [1,0,0]
example_df['MFCCs'] =[np.random.rand(4,2),np.random.rand(4,2),np.random.rand(4,2)]
example_df
```

when I apply np.mean I am almost always getting the mean of the class as well which is about 0.5, even if I indicate the 'MFCCs' column.

The expected output should be something like

```
Class MFCCs
0 1 [C01,C02]
1 0 [C11,C12]
2 0 [C21,C22]
```

`example_df['MFCCs'].to_numpy()`

will a be an object dtype array. Applying`np.stack`

to that might work and produce a`(n,4,2)`

array. – hpaulj Jun 19 at 18:44