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I'm using this simple code and observing monotonically increasing memory usage. I'm using this little module to dump stuff to disk. I observed it happens with unicode strings and not with integers, is there something I'm doing wrong?

When I do:

>>> from utils.diskfifo import DiskFifo
>>> df=DiskFifo()
>>> for i in xrange(1000000000):
...     df.append(i)

Memory consumption is stable

but when I do:

>>> while True:
...     a={'key': u'value', 'key2': u'value2'}
...     df.append(a)

It goes to the roof. Any hints? below the module...

import tempfile
import cPickle

class DiskFifo:
    def __init__(self):
        self.fd = tempfile.TemporaryFile()
        self.wpos = 0
        self.rpos = 0
        self.pickler = cPickle.Pickler(self.fd)
        self.unpickler = cPickle.Unpickler(self.fd)
        self.size = 0

    def __len__(self):
        return self.size

    def extend(self, sequence):
        map(self.append, sequence)

    def append(self, x):
        self.wpos = self.fd.tell()
        self.size = self.size + 1

    def next(self):
            x = self.unpickler.load()
            self.rpos = self.fd.tell()
            return x

        except EOFError:
            raise StopIteration

    def __iter__(self):
        self.rpos = 0
        return self
share|improve this question
Why not use shelve? docs.python.org/library/shelve.html –  katrielalex Jul 28 '11 at 9:55
How are you measuring memory consumption? Are you aware that Python rarely (almost never) returns memory to the OS? –  S.Lott Jul 28 '11 at 10:02
@S.Lott sort of, but then it should stabilize at some point right? one thing is not returning and the other is leaking... –  piotr Jul 28 '11 at 10:05
@piotr: a 'leak' is when the memory is still claimed but is inaccessible to the application. If python can still use the memory but hasn't decided to free it, say it's lying stale in a cache somewhere, then it isn't a leak. –  user23743 Jul 28 '11 at 10:08
When you do for i in xrange('1000000000') you'll get a TypeError. –  interjay Jul 28 '11 at 10:26
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1 Answer

up vote 12 down vote accepted

The pickler module is storing all objects it has seen in its memo, so it doesn't have to pickle the same thing twice. You want to skip this (so references to your objects aren't stored in your pickler object) and clear the memo before dumping:

def append(self, x):
    self.wpos = self.fd.tell()
    self.size = self.size + 1

Source: http://docs.python.org/library/pickle.html#pickle.Pickler.clear_memo

Edit: You can actually watch the size of the memo go up as you pickle your objects by using the following append function:

def append(self, x):
    print len(self.pickler.memo)
    self.wpos = self.fd.tell()
    self.size = self.size + 1
share|improve this answer
That doesn't explain the increase in memory, since the object being pickled again is the same. –  piotr Jul 28 '11 at 13:06
Yes, it does. When you call self.pickler.dump(x), the pickler object does something like self.memo.append(x). As you go through your while True: loop in your example code, you are creating thousands of objects which your pickler object is keeping references to, meaning they are kept in memory and not gotten rid of by the GC. Calling self.pickler.clear_memo() essentially causes the pickler to do self.memo = [], getting rid of any references to the objects and allowing the GC to get rid of them. –  combatdave Jul 28 '11 at 14:01
@poitr - I've edited my answer with some code which will allow you to watch the size of the memo increase as you pickle things. –  combatdave Jul 28 '11 at 14:19
True, it doesn't grow. Answer accepted. thanks! –  piotr Jul 28 '11 at 14:37
This made a huge difference in memory consumption, from 1.5G to 11M –  piotr Jul 28 '11 at 15:11
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