I have a small multithreaded script running in django and over time its starts using more and more memory. Leaving it for a full day eats about 6GB of RAM and I start to swap.

Following http://www.lshift.net/blog/2008/11/14/tracing-python-memory-leaks I see this as the most common types (with only 800M of memory used):

(Pdb)  objgraph.show_most_common_types(limit=20)
dict                       43065
tuple                      28274
function                   7335
list                       6157
NavigableString            3479
instance                   2454
cell                       1256
weakref                    974
wrapper_descriptor         836
builtin_function_or_method 766
type                       742
getset_descriptor          562
module                     423
method_descriptor          373
classobj                   256
instancemethod             255
member_descriptor          218
property                   185
Comment                    183
__proxy__                  155

which doesn't show anything weird. What should I do now to help debug the memory problems?

Update: Trying some things people are recommending. I ran the program overnight, and when I work up, 50% * 8G == 4G of RAM used.

(Pdb) from pympler import muppy
(Pdb) muppy.print_summary()
                                     types |   # objects |   total size
========================================== | =========== | ============
                                   unicode |      210997 |     97.64 MB
                                      list |        1547 |     88.29 MB
                                      dict |       41630 |     13.21 MB
                                       set |          50 |      8.02 MB
                                       str |      109360 |      7.11 MB
                                     tuple |       27898 |      2.29 MB
                                      code |        6907 |      1.16 MB
                                      type |         760 |    653.12 KB
                                   weakref |        1014 |     87.14 KB
                                       int |        3552 |     83.25 KB
                    function (__wrapper__) |         702 |     82.27 KB
                        wrapper_descriptor |         998 |     77.97 KB
                                      cell |        1357 |     74.21 KB
  <class 'pympler.asizeof.asizeof._Claskey |        1113 |     69.56 KB
                       function (__init__) |         574 |     67.27 KB

That doesn't sum to 4G, nor really give me any big data structured to go fix. The unicode is from a set() of "done" nodes, and the list's look like just random weakrefs.

I didn't use guppy since it required a C extension and I didn't have root so it was going to be a pain to build.

None of the objectI was using have a __del__ method, and looking through the libraries, it doesn't look like django nor the python-mysqldb do either. Any other ideas?

  • "running in Django"? Do you mean that you're using the Django web server for doing additional non-web-service background processing? Have you considered splitting this non-web-serving stuff into a separate process?
    – S.Lott
    Aug 27, 2009 at 10:03
  • 2
    It is a cron job that imports the Django settgings.py and uses many of the Django ORM features. So, it isn't spawned by a webserver, but still uses many of the features (which might have been pertinent) Aug 27, 2009 at 17:55

7 Answers 7


See http://opensourcehacker.com/2008/03/07/debugging-django-memory-leak-with-trackrefs-and-guppy/ . Short answer: if you're running django but not in a web-request-based format, you need to manually run db.reset_queries() (and of course have DEBUG=False, as others have mentioned). Django automatically does reset_queries() after a web request, but in your format, that never happens.

  • 2
    db.reset_queries() solved a problem for me, thank you very much.
    – endre
    Jun 2, 2011 at 8:30

Is DEBUG=False in settings.py?

If not Django will happily store all the SQL queries you make which adds up.

  • 2
    wow, I knew writing the words django in there would help. Yes, my script wasn't using my production settings.py. embarrassed. Lets see if it clears up the memory problem. Aug 28, 2009 at 18:22
  • This is it! The DEBUG set to True really eats up lots of memory when selecting from large database. Feb 20, 2014 at 16:33

Have you tried gc.set_debug() ?

You need to ask yourself simple questions:

  • Am I using objects with __del__ methods? Do I absolutely, unequivocally, need them?
  • Can I get reference cycles in my code? Can't we break these circles before getting rid of the objects?

See, the main issue would be a cycle of objects containing __del__ methods:

import gc

class A(object):
    def __del__(self):
        print 'a deleted'
        if hasattr(self, 'b'):
            delattr(self, 'b')

class B(object):
    def __init__(self, a):
        self.a = a
    def __del__(self):
        print 'b deleted'
        del self.a

def createcycle():
    a = A()
    b = B(a)
    a.b = b
    return a, b


a, b = createcycle()

# remove references
del a, b

# prints:
## gc: uncollectable <A 0x...>
## gc: uncollectable <B 0x...>
## gc: uncollectable <dict 0x...>
## gc: uncollectable <dict 0x...>

# to solve this we break explicitely the cycles:
a, b = createcycle()
del a.b

del a, b

# objects are removed correctly:
## a deleted
## b deleted

I would really encourage you to flag objects / concepts that are cycling in your application and focus on their lifetime: when you don't need them anymore, do we have anything referencing it?

Even for cycles without __del__ methods, we can have an issue:

import gc

# class without destructor
class A(object): pass

def createcycle():
    # a -> b -> c 
    # ^         |
    # ^<--<--<--|
    a = A()
    b = A()
    a.next = b
    c = A()
    b.next = c
    c.next = a
    return a, b, b


a, b, c = createcycle()
# since we have no __del__ methods, gc is able to collect the cycle:

del a, b, c
# no panic message, everything is collectable:
##gc: collectable <A 0x...>
##gc: collectable <A 0x...>
##gc: collectable <dict 0x...>
##gc: collectable <A 0x...>
##gc: collectable <dict 0x...>
##gc: collectable <dict 0x...>

a, b, c = createcycle()

# but as long as we keep an exterior ref to the cycle...:
seen = dict()
seen[a] = True

# delete the cycle
del a, b, c
# nothing is collected

If you have to use "seen"-like dictionaries, or history, be careful that you keep only the actual data you need, and no external references to it.

I'm a bit disappointed now by set_debug, I wish it could be configured to output data somewhere else than to stderr, but hopefully that should change soon.

  • gc.collect() is returning everything as collectible, and on the second invocation returns 0. That means I don't have any cycles right? Aug 27, 2009 at 8:09
  • @Paul: No, you can still have cycles. Look at the very last example I gave: here, gc.collect() does return 0, and nothing is printed. If you have cycles of objects that don't have del methods, gc will stay quiet. Aug 27, 2009 at 8:23

See this excellent blog post from Ned Batchelder on how they traced down real memory leak in HP's Tabblo. A classic and worth reading.


I think you should use different tools. Apparently, the statistics you got is only about GC objects (i.e. objects which may participate in cycles); most notably, it lacks strings.

I recommend to use Pympler; this should provide you with more detailed statistics.

  • top shows my app using 7% * 8GB = 560M. pympler.muppy.print_summary() shows around 55M. Where is the rest? Aug 27, 2009 at 8:08

Do you use any extension? They are a wonderful place for memory leaks, and will not be tracked by python tools.

  • No extensions, but a good place for others stumbling here to look. Aug 27, 2009 at 8:10
  • If you use Django ORM, you use extension module - DB-API database driver. Is this MySQLdb? Current version has known cursor memory leak when connection is established with use_unicode=True (which is the case for Django>=1.0).
    – zgoda
    Aug 28, 2009 at 10:30
  • yes, you are right on the money! I'm using all of those. Any known solution? Aug 28, 2009 at 18:21
  • Try with the code from SVN, the leak has been fixed but update has not been released yet.
    – zgoda
    Aug 31, 2009 at 7:09

Try Guppy.

Basicly, you need more information or be able to extract some. Guppy even provides graphical representation of data.

Your Answer

Reminder: Answers generated by Artificial Intelligence tools are not allowed on Stack Overflow. Learn more

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge that you have read and understand our privacy policy and code of conduct.

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