**Method 1**

*use *`unstack`

to put first level of index into columns and then use `fillna`

```
series_A.unstack(0).fillna(series_B).unstack().dropna()
bar one 0.299368
two 0.123000
baz one -0.863838
two -0.251905
foo one 1.063327
two 0.456000
qux one 0.206053
quz two 0.408204
dtype: float64
```

**Method 2**

*use *`add`

method to leverage its `level`

and `fill_value`

parameters then `combine_first`

```
series_A.combine_first(series_A.add(series_B, level=0, fill_value=0))
bar one 0.299368
two 0.123000
baz one -0.863838
two -0.251905
foo one 1.063327
two 0.456000
qux one 0.206053
quz two 0.408204
dtype: float64
```

**Method 3**

*use *`map`

on the `Index`

object returned from `series_A.index.get_level_vaues(0)`

with the callable `series_B.get`

```
series_A.fillna(
pd.Series(series_A.index.get_level_values(0).map(series_B.get), series_A.index)
)
bar one 0.299368
two 0.123000
baz one -0.863838
two -0.251905
foo one 1.063327
two 0.456000
qux one 0.206053
quz two 0.408204
dtype: float64
```

**Method 4**

*use *`np.isnan`

and `np.flatnonzero`

to find the positions of where the `np.nan`

s are. Then find the values to insert with `get_level_values`

and `map`

. Finally, place into location with `iloc`

```
i = np.flatnonzero(np.isnan(series_A.values))
series_A.iloc[i] = series_A.index.get_level_values(0)[i].map(series_B.get)
series_A
bar one 0.299368
two 0.123000
baz one -0.863838
two -0.251905
foo one 1.063327
two 0.456000
qux one 0.206053
quz two 0.408204
dtype: float64
```