**UPDATE:** generic vectorized approach - will work also for multiple columns DFs:

assuming we have the following DF:

```
In [159]: df
Out[159]:
a b c
0 1 [1, 2] 5
1 2 [2, 3, 4] 6
2 3 [5] 7
```

**Solution:**

```
In [160]: lst_col = 'b'
In [161]: pd.DataFrame({
...: col:np.repeat(df[col].values, df[lst_col].str.len())
...: for col in df.columns.difference([lst_col])
...: }).assign(**{lst_col:np.concatenate(df[lst_col].values)})[df.columns.tolist()]
...:
Out[161]:
a b c
0 1 1 5
1 1 2 5
2 2 2 6
3 2 3 6
4 2 4 6
5 3 5 7
```

**Setup:**

```
df = pd.DataFrame({
"a" : [1,2,3],
"b" : [[1,2],[2,3,4],[5]],
"c" : [5,6,7]
})
```

Vectorized NumPy approach:

```
In [124]: pd.DataFrame({'a':np.repeat(df.a.values, df.b.str.len()),
'b':np.concatenate(df.b.values)})
Out[124]:
a b
0 1 1
1 1 2
2 2 2
3 2 3
4 2 4
5 3 5
```

**OLD answer:**

Try this:

```
In [89]: df.set_index('a', append=True).b.apply(pd.Series).stack().reset_index(level=[0, 2], drop=True).reset_index()
Out[89]:
a 0
0 1 1.0
1 1 2.0
2 2 2.0
3 2 3.0
4 2 4.0
5 3 5.0
```

Or bit nicer solution provided by @Boud:

```
In [110]: df.set_index('a').b.apply(pd.Series).stack().reset_index(level=-1, drop=True).astype(int).reset_index()
Out[110]:
a 0
0 1 1
1 1 2
2 2 2
3 2 3
4 2 4
5 3 5
```