# python plus equals slower

I ran some quick benchmarking using `timeit.repeat` comparing two different ways to use an `_accumulator_`.

``````def testAccumPlusEqual():
x = 0
for i in range(100):
x += 1
return x

def testAccumEqualPlus():
x = 0
for i in range(100):
x = x + 1
return x
``````

My implementation of `timeit.repeat` is:

``````if __name__ == '__main__':
import timeit
print(timeit.repeat("testAccumPlusEqual()",
setup="from __main__ import testAccumPlusEqual"))
print(timeit.repeat("testAccumEqualPlus()",
setup="from __main__ import testAccumEqualPlus"))
``````

The results are found below:

``````>>>
[8.824021608811469, 8.80440620087051, 8.791231916848997]
[8.101681307351758, 8.143080002052649, 8.181129610882778]
``````

Granted, in the grand scheme of things, this time difference may not be noticeable, but if used in large scale it could lead to a slow down. So I guess I'm really asking:

From everywhere I've seen, the de facto standard is to accumulate with `+=`, but should that be the case still?

Why would `+=` perform worse than `x=x+`?

NOTE: Using CPython 3.3.2 on Windows 7 64bit(using 32bit version of python)

-
I think `+=` is an in-place accumulation whereas doing `x = x + y` creates a new object in memory with the value `x+y` and just reassigns the name `x` to it. Thus `x = x + y` has 2 steps: storing value of `x + y` in some register and reassignment of x. `x += y` also 2 steps: Store value of `x + y` in some object. Then copy that value over to the location of x. It's possible that COPYING the value to the location of the object pointed to by `x` is a more costly operation than simply "reassigning" the pointer value of `x` itself. But hey, I know nothing about Python so this is all my guess. –  Shashank Gupta Sep 15 '13 at 17:32
Running the same code I got [8.69090794257174, 8.65746124451764, 9.022020214102863] [9.061213666780041, 9.197347861298582, 9.04849989044235] which seems to suggest `+=` is faster. –  sweeneyrod Sep 15 '13 at 17:35
@ShashankGupta That depends on the object, for integers both of them return a new object. For lists `+=` is an in-place operation, while the other one returns a new list. –  Aशwini चhaudhary Sep 15 '13 at 17:38
@ShashankGupta That depends on what does the `__iadd__` and `__add__` methods of those objects do, for immutable objects they always return new object and for mutable objects they can behave differently.(Integers don't have an `__iadd__` method.) Is the behaviour of Python's list += iterable documented anywhere?... When is “i += x” different from “i = i + x” in Python? –  Aशwini चhaudhary Sep 15 '13 at 17:50
@ShashankGupta Actually immutable objects like int, str, ..don't have `__iadd__` method, so `+=` falls back to `__add__`. Yes it means in-place add. –  Aशwini चhaudhary Sep 15 '13 at 17:54

It's not actually an answer, but it could help you to understand what happens in you Python code. You can call dis on both of functions and get:

``````>>> import dis
>>> dis.dis(testAccumEqualPlus)
3 STORE_FAST               0 (x)

3           6 SETUP_LOOP              30 (to 39)
15 CALL_FUNCTION            1
18 GET_ITER
>>   19 FOR_ITER                16 (to 38)
22 STORE_FAST               1 (i)

32 STORE_FAST               0 (x)
35 JUMP_ABSOLUTE           19
>>   38 POP_BLOCK

5     >>   39 LOAD_FAST                0 (x)
42 RETURN_VALUE
>>> dis.dis(testAccumPlusEqual)
3 STORE_FAST               0 (x)

3           6 SETUP_LOOP              30 (to 39)
15 CALL_FUNCTION            1
18 GET_ITER
>>   19 FOR_ITER                16 (to 38)
22 STORE_FAST               1 (i)

As you see, the only difference is `INPLACE_ADD` for `+=` and `BINARY_ADD` for `= .. +`
If `ints` don't have an `__iadd__` method, why would `dis` be showing `INPLACE_ADD` –  wpg4665 Sep 16 '13 at 14:42