I have a `pandas dataframe`

in which one column of text strings contains comma-separated values. I want to split each CSV field and create a new row per entry (assume that CSV are clean and need only be split on ','). For example, `a`

should become `b`

:

```
In [7]: a
Out[7]:
var1 var2
0 a,b,c 1
1 d,e,f 2
In [8]: b
Out[8]:
var1 var2
0 a 1
1 b 1
2 c 1
3 d 2
4 e 2
5 f 2
```

So far, I have tried various simple functions, but the `.apply`

method seems to only accept one row as return value when it is used on an axis, and I can't get `.transform`

to work. Any suggestions would be much appreciated!

Example data:

```
from pandas import DataFrame
import numpy as np
a = DataFrame([{'var1': 'a,b,c', 'var2': 1},
{'var1': 'd,e,f', 'var2': 2}])
b = DataFrame([{'var1': 'a', 'var2': 1},
{'var1': 'b', 'var2': 1},
{'var1': 'c', 'var2': 1},
{'var1': 'd', 'var2': 2},
{'var1': 'e', 'var2': 2},
{'var1': 'f', 'var2': 2}])
```

I know this won't work because we lose DataFrame meta-data by going through numpy, but it should give you a sense of what I tried to do:

```
def fun(row):
letters = row['var1']
letters = letters.split(',')
out = np.array([row] * len(letters))
out['var1'] = letters
a['idx'] = range(a.shape[0])
z = a.groupby('idx')
z.transform(fun)
```