Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

The original problem i am dealing with is outlined here. I would like to ask an additional question (about Python reference counting) related to the original problem.

Lets say that i have the following script:

from bitarray import bitarray
from array import array

list1=[bitarray('00011'), bitarray('00010'), bitarray('11011')]
list2=[array('i',[0,0,0,0]),array('i',[1,1,1,1]),array('i',[2,2,2,2])]

def calculate(l1,l2):
    result1=l1[0]&l1[1]&l1[2]
    result2=l2[0][0]+l2[1][1]+l2[2][2]
return result1, result2

print calculate(list1,list2)

Does the reference count of list1, list2 or any of the objects in either lists changes at some point when i call calculate(list1,list2)?

Just to clarify: I do not mean if the reference count will be the same before and after calling calculate(list1,list2). I mean if the reference count changes at any point during the execution of calculate(list1,list2).

share|improve this question

1 Answer 1

up vote 3 down vote accepted

The reference count of list1 and list2 doesn't change, they are just variables and thus string keys in a locals() namespace.

The Python list objects that these two variables point to, though, yes, their reference count changes when passed to a function. During the call to the function two new variables refer to those lists (l1 and l2) increasing the count, and when the function returns those variables are cleaned up and the ref count goes down again.

Inside the calculate() function, you are accessing items of these two lists (l1[0], etc.). Item access could use the __getitem__ method of objects; methods are created on-the-fly when accessed, and hold a reference to the instance and the underlying function. For a list that is another reference to the list object, and another temporary reference count increase. Once the function has been called and returned it's value, the method is discarded again (nothing is referencing it) and the ref count for the list drops again.

As delnan rightly points out in the comments, for list subscription the BINARY_SUBSCR opcode optimizes access (provided the index is an integer) and no method is created in that specific case.

The python interpreter, when handling bytecode and values on the stack, is increasing and decreasing reference counts all the time though. Take a look through the Python bytecode evaluation loop and count the number of Py_INCREF and Py_DECREF occurrences to to get an idea of how common this is.

share|improve this answer
    
+1 There may also be (even shorter-lived) references during the calls to __getitem__ inside calculate, or in preparation of that call (LOAD_FAST 0 (l1); LOAD_CONST 0; BINARY_SUBSCR). –  delnan Jan 3 '13 at 11:07
    
Do I understand correctly that even the line result1=l1[0]&l1[1]&l1[2] will modify the reference counts of related objects? –  anti666 Jan 3 '13 at 11:10
    
@anti666: Yes, ref counts can go up and down rapidly. –  Martijn Pieters Jan 3 '13 at 11:11
    
Nitpick: As special method lookup happens on the class, and indexing has its own opcode, l1[0] etc. probably don't create a bound method object. They still put a temporary reference on the stack though. (And as always, this is all CPython-specific.) –  delnan Jan 3 '13 at 11:25
    
@delnan: The BINARY_SUBSCR will use __getitem__ in all cases but a list access with an integer. :-) It's special cased, see ceval.c. –  Martijn Pieters Jan 3 '13 at 11:29

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.