I have a DataFrame with columns like this:

```
["A_1", "A_2", "A_3", "B_1", "B_2", "B_3"]
```

What I'd like to to do is to "collapse" the various A and B columns in a single column each, by calculating their mean value. In short, at the end of the operation I'd get:

```
["A", "B"]
```

where "A" is the column-wise mean of all "A" columns and "B" the mean of all "B" columns.

As far as I understood, `groupby`

is not suited for this task, or perhaps I'm using it incorrectly:

```
grouped = data.groupby([item for item in data if "A" not in item])
```

If I use axis=1, all I get is an empty DataFrame when calling mean(), and if not I'm not getting the desired effect. I would like to avoid building a separate DataFrame to be fillled with the means via iteration (e.g. by calculating means separately then adding them like `new_df["A"] = mean_a`

). Is there an efficient solution for this?