Given this DataFrame:

```
bowl cookie
0 one chocolate
1 two chocolate
2 two chocolate
3 two vanilla
4 one vanilla
5 one vanilla
6 one vanilla
7 one vanilla
8 one vanilla
9 two chocolate
```

I'd like to obtain the following summarized DataFrame:

```
vanilla chocolate
one 5 1
two 1 3
```

Apart from proceeding manually with:

```
vanilla_bowl1 = len(df_picks[(df_picks['bowl'] == 'one') & (df_picks['cookie'] == 'vanilla')])
vanilla_bowl2 = len(df_picks[(df_picks['bowl'] == 'two') & (df_picks['cookie'] == 'vanilla')])
chocolate_bowl1 = ...
chocolate_bowl2 = ...
```

Is there a way to do that in a single operation with `Pandas`

?

**Note**: I've had a look at `df.pivot()`

and this would work provided that I add a column `count`

equal to `1`

in each row:

```
bowl cookie count
0 one chocolate 1
1 two chocolate 1
2 two chocolate 1
3 two vanilla 1
4 one vanilla 1
5 one vanilla 1
6 one vanilla 1
7 one vanilla 1
8 one vanilla 1
9 two chocolate 1
```

And then

```
df.pivot(index='bowl', columns='cookie', values='count')
```

However, I'm wondering if there is a more direct method, that wouldn't require adding the `count`

column in the first place.