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I've a python code where the memory consumption steadily grows with time. While there are several objects which can legitimately grow quite large, I'm trying to understand whether the memory footprint I'm observing is due to these objects, or is it just me littering the memory with temporaries which don't get properly disposed of --- Being a recent convert from a world of manual memory management, I guess I just don't exactly understand some very basic aspects of how the python runtime deals with temporary objects.

Consider a code with roughly this general structure (am omitting irrelevant details):

def tweak_list(lst):
    new_lst = copy.deepcopy(lst)
    if numpy.random.rand() > 0.5:
        new_lst[0] += 1  # in real code, the operation is a little more sensible :-)
        return new_lst
        return lst

lst = [1, 2, 3]
cache = {}

# main loop
for step in xrange(some_large_number):

    lst = tweak_list(lst)    # <<-----(1)

    # do something with lst here, cut out for clarity

    cache[tuple(lst)] = 42   # <<-----(2)

    if step%chunk_size == 0:
        # dump the cache dict to a DB, free the memory (?)
        cache = {}           # <<-----(3)


  1. What is the lifetime of a new_list created in a tweak_list? Will it be destroyed on exit, or will it be garbage collected (at which point?). Will repeated calls to tweak_list generate a gazillion of small lists lingering around for a long time?
  2. Is there a temporary creation when converting a list to a tuple to be used as a dict key?
  3. Will setting a dict to an empty one release the memory?
  4. Or, am I approaching the issue at hand from a completely wrong perspective?
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When you run the code you've shown here, do you still see the memory increase over time? –  interjay Dec 9 '12 at 13:06
Q: why are you using deepcopy()? Does your list contain more complex objects then numbers? If no, why not use a shallow copy or just list(). If yes, then that's most likely the reason for the leak as they will get copied and then stored in cache as keys. –  lqc Dec 9 '12 at 13:56
@lqc: in the (admittedly stupid) example here, the tweak_list modifies its argument in roughly 50% of calls; in other 50% it needs to leave the list intact. Sure, I could just operate on a view, lst[:], but would that be really different? –  ev-br Dec 9 '12 at 14:36
@interjay: No, there isn't. My question was more about what's going under the python's hood. –  ev-br Dec 9 '12 at 14:39

2 Answers 2

up vote 4 down vote accepted
  1. new_lst is cleaned up when the function exists when not returned. It's reference count drops to 0, and it can be garbage collected. On current cpython implementations that happens immediately.

    If it is returned, the value referenced by new_lst replaces lst; the list referred to by lst sees it's reference count drop by 1, but the value originally referred to by new_lst is still being referred to by another variable.

  2. The tuple() key is a value stored in the dict, so that's not a temporary. No extra objects are created other than that tuple.

  3. Replacing the old cache dict with a new one will reduce the reference count by one. If cache was the only reference to the dict it'll be garbage collected. This then causes the reference count for all contained tuple keys to drop by one. If nothing else references to those those will be garbage collected.

  4. Note that when Python frees memory, that does not necessarily mean the operating system reclaims it immediately. Most operating systems will only reclaim the memory when it is needed for something else, instead presuming the program might need some or all of that memory again soon.

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@lqc: clarified; it is not always returned. –  Martijn Pieters Dec 9 '12 at 13:50

You might want to take a look at Heapy as a way of profiling memory usage. I think PySizer is also used in some instances for this but I am not familiar with it. ObjGraph is also a strong tool to take a lok at.

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