I'm using the excellent `read_csv()`

function from pandas, which gives:

```
In [31]: data = pandas.read_csv("lala.csv", delimiter=",")
In [32]: data
Out[32]:
<class 'pandas.core.frame.DataFrame'>
Int64Index: 12083 entries, 0 to 12082
Columns: 569 entries, REGIONC to SCALEKER
dtypes: float64(51), int64(518)
```

but when i apply a function from scikit-learn i loose the informations about colums:

```
preprocessing.scale(data)
```

gives numpy array.

Is there a way to apply scikit or numpy finction to DataFrames without loosing the information? Thanks