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According to this article I read, it looks like immutable type may become immortal.

I am currently working on solve a memory usage problem for my web service which running on google app engine. Does "use too much tuple" could be a potential reason to cause this problem?

Thanks for the reply: I am running my code on google app engine backend instance and it has a memory usage upper bounds (128mb). It said I use more memory than allowed and stopped my instance. As comments mentioned, It could be "memory usage remain large" instead of "memory leaks".

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"Memory leak" is subtly different from "memory usage remains large after a brief period of high memory usage" (that's what that article describes) in my book. Could you clarify which is the case? As the article says, it will re-used space - it simply will set aside a large chunk of memory for future large allocations and not return it voluntarily. – delnan Nov 11 '11 at 19:45
I agree with delnan, the article doesn't say anything about tuples or immutable types. I don't know why your question focuses on tuples – TJD Nov 11 '11 at 19:59
Some ideas to help troubleshoot your memory issues: If you import resource; print resource.getrusage(resource.RUSAGE_SELF)[2] you can get a snapshot of the current maximum resident set size, or cat /proc/18444/status will show detailed memory info for a process. More good stuff: – chown Nov 11 '11 at 20:10
up vote 5 down vote accepted

This article doesn't specify immutable types - it specifies:

Another possible cause for excessive memory usage is that Python uses so-called “free lists” for certain object types, including integers and floats.

I don't know what information you can get on a GAE process, but you can try this experiment on your own system.

First, start up a python interpreter and find the process. Then run this command:

>>> many_tuples = [() for x in range(5000000)] #replace with xrange for 2.x

Then, take a look at the memory usage. You've just created a list of 5 million tuples. Now type:

>>> del many_tuples

On my system (Python 3.2, Win 7), my memory usage shot up about 20k, and then dropped by the same amount once I deled the variable. If you can get information about your processes (CPU, memory usage), you can try doing that - maybe several times in a row which should give you a few spikes of higher memory usage.

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I don't see in the article you linked that tuples are one of the types for which Python maintains its own free lists. They could well be, but according to this article the specific culprits are ints, floats, dicts, and lists. Although that article is from 2005 and things could have changed since then...

In Python 2.6 or later, the free lists for everything but ints and floats can be cleared with with gc.collect(2), which I guess doesn't help you on GAE, but I thought I'd mention it.

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The immutable type does not become immortal. The memory it occupied is still owned by Python, but it is available for use for other objects.

Circular dependencies is a possibility for your memory leak:

class Parent(object):
    def __init__(self):
        self.offspring = Child(self)
    def __del__(self):
        # doesn't matter what goes here, gc will not be able to auto collect
        # freed Parents and Childs

class Child(object):
    def __init__(self, parent):
        self.parent = parent

John_Doe = Parent()

At this point you have a Child with a link to its Parent, and a Parent with a link to its Child, and Python may have trouble releasing them.

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