Additional notes based on the answers of georg, NPE and Scott.

I was trying to perform this action on collections of 2 *or more* dictionaries and was interested in seeing the time it took for each. Because I wanted to do this on any number of dictionaries, I had to change some of the answers a bit. If anyone has better suggestions for them, feel free to edit.

Here are my results:

I used the following data:

```
x = {'xy1': 1, 'xy2': 2, 'xyz': 3, 'only_x': 100}
y = {'xy1': 10, 'xy2': 20, 'xyz': 30, 'only_y': 200}
z = {'xyz': 300, 'only_z': 300}
tests = [x, y, z]
```

For georg's answer (assuming union was the operation we wanted to use):

```
print( {k: sum(t.get(k, 0) for t in tests) for k in set.union(*[set(t) for t in tests])} )
#: {'xyz': 333, 'xy2': 22, 'xy1': 11, 'only_z': 300, 'only_y': 200, 'only_x': 100}
%timeit {k: sum(t.get(k, 0) for t in tests) for k in set.union(*[set(t) for t in tests])}
#: 100000 loops, best of 3: 7.53 µs per loop
```

If you didn't use `sum()`

and expected exactly 3 arguments:

```
%timeit {k: x.get(k, 0) + y.get(k, 0) + z.get(k, 0) for k in set.union(*[set(t) for t in tests])}
#: 100000 loops, best of 3: 4.64 µs per loop
```

For NPE's answer:

```
from collections import defaultdict
def dsum(*dicts):
ret = defaultdict(int)
for d in dicts:
for k, v in d.items():
ret[k] += v
return dict(ret)
print(dsum(*tests))
#: {'xyz': 333, 'xy2': 22, 'xy1': 11, 'only_z': 300, 'only_y': 200, 'only_x': 100}
%timeit dsum(*tests)
#: 100000 loops, best of 3: 3.52 µs per loop
```

Editing the arguments so it expected an iterable instead of a `*args`

made no difference.

For Scott's answer:

```
from collections import Counter
# We stick the extra `Counter()` at the end of sum() for the
# optional `start` argument. See:
# http://stackoverflow.com/a/30003471/1112586
print( dict(sum((Counter(t) for t in tests), Counter())) )
#: {'xyz': 333, 'xy2': 22, 'xy1': 11, 'only_z': 300, 'only_y': 200, 'only_x': 100}
%timeit dict(sum((Counter(t) for t in tests), Counter()))
#: 10000 loops, best of 3: 37.6 µs per loop
```

If you didn't use sum and expected exactly 3 arguments you do get a slight improvement:

```
%timeit dict(Counter(x) + Counter(y) + Counter(z))
#: 10000 loops, best of 3: 28 µs per loop
```

### In Conclusion:

```
╔═══════════════════════════╦═══════╦════════════════════════════╗
║ Algorithm ║ By ║ Best of 3 time ║
╠═══════════════════════════╬═══════╬════════════════════════════╣
║ set unions and dictionary ║ georg ║ 07.53 µs per loop ║
║ comprehension ║ ║ (04.64 µs without sum()) ║
║ defaultdict sum ║ NPE ║ 03.52 µs per loop ║
║ sum Counter() ║ Scott ║ 37.6 µs per loop ║
║ ║ ║ (28 µs without sum()) ║
╚═══════════════════════════╩═══════╩════════════════════════════╝
```

YMMV