The accepted answer suggests to use `groupby.sum`

, which is working fine with small number of lists, however using sum to concatenate lists is **quadratic**.

For a larger number of lists, a **much faster option** would be to use `itertools.chain`

or a list comprehension:

```
df = pd.DataFrame({'column_a': ['1', '1', '2'],
'column_b': [['1', '2', '3'], ['2', '5'], ['5', '6']]})
```

`itertools.chain`

:

```
from itertools import chain
out = (df.groupby('column_a', as_index=False)['column_b']
.agg(lambda x: list(chain.from_iterable(x)))
)
```

list comprehension:

```
out = (df.groupby('column_a', as_index=False, sort=False)['column_b']
.agg(lambda x: [e for l in x for e in l])
)
```

output:

```
column_a column_b
0 1 [1, 2, 3, 2, 5]
1 2 [5, 6]
```

#### Comparison of speed

Using n repeats of the example to show the impact of the number of lists to merge:

```
test_df = pd.concat([df]*n, ignore_index=True)
```

*NB. also comparing the numpy approach (*`agg(lambda x: np.concatenate(x.to_numpy()).tolist())`

).