I have a DataFrame with columns that can be divided into different groups. I need to return a df where the entries are the original values minus the group mean.

I did the following by using groupby which gives me the group means.

```
base = datetime.today().date()
date_list = [base - timedelta(days=x) for x in range(0, 10)]
df = pd.DataFrame(data=np.random.randint(1, 100, (10, 8)), index=date_list, columns=['a1', 'a2', 'b1', 'a3', 'b2', 'c1' , 'c2', 'b3'])
xx = df.loc[[datetime(2016, 5, 18).date()]]
xx.index = ['group']
xx.a1 = 1
xx.a2 = 1
xx.a3 = 1
xx.b3 = 2
xx.b2 = 2
xx.b1 = 2
xx.c1 = 3
xx.c2 = 3
df = df.append(xx)
dft = df.T
dft.groupby(['group']).mean().T
```

Update 20/05/16:

Aided by unutbu's answer, I come up the following solution as well:

```
df.T.groupby(group, axis=0).apply(lambda x: x - np.mean(x)).T
```