I have a data frame and I would like to group it by a particular column (or, in other words, by values from a particular column). I can do it in the following way: `grouped = df.groupby(['ColumnName'])`

.

I imagine the result of this operation as a table in which some cells can contain sets of values instead of single values. To get a usual table (i.e. a table in which every cell contains only one a single value) I need to indicate what function I want to use to transform the sets of values in the cells into single values.

For example I can replace sets of values by their sum, or by their minimal or maximal value. I can do it in the following way: `grouped.sum()`

or `grouped.min()`

and so on.

Now I want to use different functions for different columns. I figured out that I can do it in the following way: `grouped.agg({'ColumnName1':sum, 'ColumnName2':min})`

.

However, because of some reasons I cannot use `first`

. In more details, `grouped.first()`

works, but `grouped.agg({'ColumnName1':first, 'ColumnName2':first})`

does not work. As a result I get a NameError: `NameError: name 'first' is not defined`

. So, my question is: Why does it happen and how to resolve this problem.

**ADDED**

Here I found the following example:

```
grouped['D'].agg({'result1' : np.sum, 'result2' : np.mean})
```

May be I also need to use `np`

? But in my case python does not recognize "np". Should I import it?

`np`

, it'll work with plain old`sum`

(only less efficiently). numpy is imported with pandas (if you`import pandas as pd`

it's`pd.np`

) but most people will also import it separately for convenience. – Andy Hayden Feb 21 '13 at 12:59