Suppose I have a dataframe like so:

```
n = 20
dim1 = np.random.randint(1, 3, size=n)
dim2 = np.random.randint(3, 5, size=n)
data1 = np.random.randint(10, 20, size=n)
data2 = np.random.randint(1, 10, size=n)
df = pd.DataFrame({'a': dim1, 'b': dim2 ,'val1': data1, 'val2': data2})
```

If I define a function that returns group-wise:

```
def h(x):
if x['val2'].sum() == 0:
return 0
else:
return (x['val1'].sum())*1.0/x['val2'].sum()*1.0
```

Grouping by one of the columns and aggregating returns a result:

```
df.groupby(['a']).aggregate(h)['val1']
```

Albeit it converts all the existing columns to the desired result rather than adding a new column

Grouping by two columns leads to an error when using aggregate:

```
df.groupby(['a','b']).aggregate(h)['val1']
KeyError: 'val2'
```

But switching aggregate for apply seems to work.

I have two questions:

- Why does apply work and not aggregte?
- If after grouping a dataframe by some set of keys, I want to use a function that aggregates group values as a new column, what's the best way to do that?

Thanks in advance.

`def test(x): print x; return x.sum()`

and call`aggregate`

in both cases, you'll see that in first case`x`

is a DataFrame and in second case`x`

is a Series (and when you call`apply`

, it's always DataFrame). I don't have time to dig into the code at the moment, and I'm sure some pandas developers will show up and explain this behaviour :) – Roman Pekar Nov 29 '13 at 6:04