I'm curious about the behavior of pandas groupby-apply when the apply function returns a series.

When the series are of different lengths, it returns a multi-indexed series.

```
In [1]: import pandas as pd
In [2]: df1=pd.DataFrame({'state':list("AABBB"),
...: 'city':list("vwxyz")})
In [3]: df1
Out[3]:
city state
0 v A
1 w A
2 x B
3 y B
4 z B
In [4]: def f(x):
...: return pd.Series(x['city'].values,index=range(len(x)))
...:
In [5]: df1.groupby('state').apply(f)
Out[5]:
state
A 0 v
1 w
B 0 x
1 y
2 z
dtype: object
```

This returns a a `Series`

object.

However, if every series has the same length, then it pivots this into a `DataFrame`

.

```
In [6]: df2=pd.DataFrame({'state':list("AAABBB"),
...: 'city':list("uvwxyz")})
In [7]: df2
Out[7]:
city state
0 u A
1 v A
2 w A
3 x B
4 y B
5 z B
In [8]: df2.groupby('state').apply(f)
Out[8]:
0 1 2
state
A u v w
B x y z
```

Is this really the intended behavior? Are we meant to check the return type if we use apply this way? Or is there an option in `apply`

that I'm not appreciating?

In case you're curious, in my actual use case, the returned Series will be the same length as the length of the group. It seems like an ideal case for `transform`

except that I've found that `apply`

with returning a Series is actually an order of magnitude faster on a large dataset. That can be another topic.

Edit: Loosely based on the Parfait's answer, we can certainly do this:

```
X=df.groupby('state').apply(f)
if not isinstance(X,pd.Series):
X=X.stack()
X
```

That will give the same output type for either `df=df1`

or `df=df2`

. I guess I'm just asking if this is really the normal or preferred way to handle this.