```
>>> L1 = [[1, 2], [3, 4], [5, 6]]
>>> L2 =[["a", "b"], ["c", "d"], ["e", "f"]]
>>> [x + y for x,y in zip(L1,L2)]
[[1, 2, 'a', 'b'], [3, 4, 'c', 'd'], [5, 6, 'e', 'f']]
```

Or,

```
>>> [sum(x,[]) for x in zip(L1,L2)]
[[1, 2, 'a', 'b'], [3, 4, 'c', 'd'], [5, 6, 'e', 'f']]
```

or,

```
>>> import itertools
>>> [list(itertools.chain(*x)) for x in zip(L1,L2)]
[[1, 2, 'a', 'b'], [3, 4, 'c', 'd'], [5, 6, 'e', 'f']]
```

We can also do it without `zip()`

:

```
>>> [L1[i] + L2[i] for i in xrange(min(len(L1), len(L2)))]
[[1, 2, 'a', 'b'], [3, 4, 'c', 'd'], [5, 6, 'e', 'f']]
>>> [x + L2[i] for i, x in enumerate(L1)] # assuming len(L1) == len(l2)
[[1, 2, 'a', 'b'], [3, 4, 'c', 'd'], [5, 6, 'e', 'f']]
>>> # same as above, but deals with different lengths
>>> Lx, Ly = ((L2,L1), (L1,L2))[len(L1)<=len(L2)] # shortcut for if/else
>>> [x + Ly[i] for i, x in enumerate(Lx)]
```

### Some benchmarks

Here are some benchmarks for the answers provided so far.

It looks like the most popular answer (`[x + y for x,y in zip(L1,L2)]`

) is pretty much on par with @hammar's `map`

solution. ~~On the other hand, the alternative solutions I've given have proven to be rubbish!~~

However, the fastest solutions (for now) seems to be the ones that uses list comprehension without `zip()`

.

```
[me@home]$ SETUP="L1=[[x,x+1] for x in xrange(10000)];L2=[[x+2,x+3] for x in xrange(10000)]"
[me@home]$ # this raises IndexError if len(L1) > len(L2)
[me@home]$ python -m timeit "$SETUP" "[x + L2[i] for i, x in enumerate(L1)]"
100 loops, best of 3: 10.6 msec per loop
[me@home]$ # same as above, but deals with length inconsistencies
[me@home]$ python -m timeit "$SETUP" "Lx,Ly=((L2,L1),(L1,L2))[len(L1)<=len(L2)];[x + Ly[i] for i, x in enumerate(Lx)]"
100 loops, best of 3: 10.6 msec per loop
[me@home]$ # almost as fast as above, but easier to read
[me@home]$ python -m timeit "$SETUP" "[L1[i] + L2[i] for i in xrange(min(len(L1),len(L2)))]"
100 loops, best of 3: 10.8 msec per loop
[me@home]$ python -m timeit "$SETUP" "L3=[x + y for x,y in zip(L1,L2)]"
100 loops, best of 3: 13.4 msec per loop
[me@home]$ python -m timeit "$SETUP" "L3=map(list.__add__, L1, L2)"
100 loops, best of 3: 13.5 msec per loop
[me@home]$ python -m timeit "$SETUP" "L3=[sum(x,[]) for x in zip(L1,L2)]"
100 loops, best of 3: 18.1 msec per loop
[me@home]$ python -m timeit "$SETUP;import itertools" "L3=[list(itertools.chain(*x)) for x in zip(L1,L2)]"
10 loops, best of 3: 32.9 msec per loop
```

@Zac's suggestion is really quick, but then we're comparing apples and oranges here since it does a list extension *in-place* on `L1`

instead of creating a third list. So, if `L1`

is not longer needed, this is a great solution.

```
[me@home]$ python -m timeit "$SETUP" "for index, x in enumerate(L1): x.extend(L2[index])"
100 loops, best of 3: 9.46 msec per loop
```

However, if `L1`

has to be kept intact, then performance would be sub par once you include the deepcopy.

```
[me@home]$ python -m timeit "$SETUP;from copy import deepcopy" "L3=deepcopy(L1)
> for index, x in enumerate(L1): x.extend(L2[index])"
10 loops, best of 3: 116 msec per loop
```