So I create a dataframe with MultiIndex

```
df = pd.DataFrame({
'C1': ['x', 'x', 'y', 'y', 'z', 'z'],
'C2': ['a', 'b', 'a', 'b', 'a', 'b'],
'C3': [10, 11, 12, 13, 14, 15]})
df.set_index(['C1', 'C2'], inplace=True)
```

And I get the following dataframe

```
C3
C1 C2
x a 10
b 11
y a 12
b 13
z a 14
b 15
```

I also have a series that has same index of `C2`

:

```
series = pd.Series([100], index=['a'])
```

I would like to assign this series to a new column, `C4`

, only to the 'x' first index. It works if I use `.assign`

, but it returns a copy:

```
df.loc['x'].assign(C4=series)
```

and I obtain

```
C3 C4
C2
a 10 100.0
b 11 NaN
```

but I fail to assign it to the original data

```
df.loc['x'] = df.loc['x'].assign(C4=series)
```

yields

```
C3
C1 C2
x a NaN
b NaN
```

I get same result if I use assignment like this:

```
df.loc['x', 'C4'] = series
```

But it yields NaN.

```
C3 C4
C1 C2
x a NaN NaN
b NaN NaN
y a 12.0 NaN
b 13.0 NaN
z a 14.0 NaN
b 15.0 NaN
```

How can I assign in this way?

`series.index = pd.MultiIndex.from_product([('x',), series.index])`

) If that's possible,`df['C4'] = series`

should work fine.