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 '09 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) – Paul Tarjan Aug 27 '09 at 17:55
up vote 31 down vote accepted

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 '11 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. – Paul Tarjan Aug 28 '09 at 18:22
  • This is it! The DEBUG set to True really eats up lots of memory when selecting from large database. – Jernej Jerin Feb 20 '14 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? – Paul Tarjan Aug 27 '09 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. – Nicolas Dumazet Aug 27 '09 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? – Paul Tarjan Aug 27 '09 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. – Paul Tarjan Aug 27 '09 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 '09 at 10:30
  • yes, you are right on the money! I'm using all of those. Any known solution? – Paul Tarjan Aug 28 '09 at 18:21
  • Try with the code from SVN, the leak has been fixed but update has not been released yet. – zgoda Aug 31 '09 at 7:09

Try Guppy.

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

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