I want to know the memory usage of my Python application and specifically want to know what code blocks/portions or objects are consuming most memory. Google search shows a commercial one is Python Memory Validator (Windows only).

And open source ones are PySizer and Heapy.

I haven't tried anyone, so I wanted to know which one is the best considering:

  1. Gives most details.

  2. I have to do least or no changes to my code.

closed as off-topic by bmargulies, Chris Forrence, Chris, Kevin Panko, Doorknob Oct 2 '13 at 1:41

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  • 2
    For finding the sources of leaks I recommend objgraph. – pi. Nov 15 '12 at 10:23
  • 6
    @MikeiLL There is a place for questions like these: Software Recommendations – Poik Feb 5 '15 at 19:12
  • 1
    This is happening often enough that we should be able to migrate one question to another forum instead. – zabumba Apr 11 '16 at 14:53
  • One tip: If someone use gae to and want's to check memory usage - it's a big headache, because those tools didn't output nothing or event not started. If you want to test something small, move function that you want to test to separate file, and run this file alone. – alexche8 Jul 22 '16 at 11:34
  • 3
    having this comment be visible, but closed, is terrible - people are still using it to get guidance on profiling tools as it is one of the top google hits. I recommend pympler – zzzeek Jun 20 '17 at 13:57

Heapy is quite simple to use. At some point in your code, you have to write the following:

from guppy import hpy
h = hpy()
print h.heap()

This gives you some output like this:

Partition of a set of 132527 objects. Total size = 8301532 bytes.
Index  Count   %     Size   % Cumulative  % Kind (class / dict of class)
0  35144  27  2140412  26   2140412  26 str
1  38397  29  1309020  16   3449432  42 tuple
2    530   0   739856   9   4189288  50 dict (no owner)

You can also find out from where objects are referenced and get statistics about that, but somehow the docs on that are a bit sparse.

There is a graphical browser as well, written in Tk.

  • 1
    sadly doesn't seem to build or install in osx.. 10.4 at least. – shigeta Aug 28 '11 at 3:06
  • 24
    If you're on Python 2.7 you may need the trunk version of it: sourceforge.net/tracker/…, pip install https://guppy-pe.svn.sourceforge.net/svnroot/guppy-pe/trunk/guppy – James Snyder Jan 3 '12 at 20:06
  • 26
    The heapy docs are... not good. But I found this blog post very helpful for getting started: smira.ru/wp-content/uploads/2011/08/heapy.html – Joe Shaw Feb 13 '12 at 19:58
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    Note, heapy doesn't include memory allocated in python extensions. If anybody has worked out a mechanism to get heapy to include boost::python objects, it would be nice to see some examples! – amos Jul 3 '14 at 18:08
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    As of 2014-07-06, guppy does not support Python 3. – Quentin Pradet Jul 16 '14 at 19:05

Since nobody has mentioned it I'll point to my module memory_profiler which is capable of printing line-by-line report of memory usage and works on Unix and Windows (needs psutil on this last one). Output is not very detailed but the goal is to give you an overview of where the code is consuming more memory and not a exhaustive analysis on allocated objects.

After decorating your function with @profile and running your code with the -m memory_profiler flag it will print a line-by-line report like this:

Line #    Mem usage  Increment   Line Contents
     3                           @profile
     4      5.97 MB    0.00 MB   def my_func():
     5     13.61 MB    7.64 MB       a = [1] * (10 ** 6)
     6    166.20 MB  152.59 MB       b = [2] * (2 * 10 ** 7)
     7     13.61 MB -152.59 MB       del b
     8     13.61 MB    0.00 MB       return a
  • 1
    For my usecase - a simple image manipulation script, not a complex system, which happened to leave some cursors open - this was the best solution. Very simple to drop in and figure out what's going on, with minimal gunk added to your code. Perfect for quick fixes and probably great for other applications too. – hangtwenty Apr 8 '13 at 12:01
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    I find memory_profiler to be really simple and easy to use. I want to do profiling per line and not per object. Thanks for writing. – tommy.carstensen Sep 8 '13 at 17:27
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    @FabianPedregosa how dose memory_profiler handle loops, can it identifier loop iteration number? – Glen Fletcher Jun 17 '14 at 8:42
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    It identifies loops only implicitly when it tries to report the line-by-line amount and it finds duplicated lines. In that case it will just take the max of all iterations. – Fabian Pedregosa Jun 17 '14 at 9:15
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    @FabianPedregosa Does memory_profiler buffer its output? I may be doing something wrong, but it seems that rather than dump the profile for a function when it completes, it waits for the script to end. – Greenstick Jul 30 '18 at 17:51

I recommend Dowser. It is very easy to setup, and you need zero changes to your code. You can view counts of objects of each type through time, view list of live objects, view references to live objects, all from the simple web interface.

# memdebug.py

import cherrypy
import dowser

def start(port):
        'environment': 'embedded',
        'server.socket_port': port

You import memdebug, and call memdebug.start. That's all.

I haven't tried PySizer or Heapy. I would appreciate others' reviews.


The above code is for CherryPy 2.X, CherryPy 3.X the server.quickstart method has been removed and engine.start does not take the blocking flag. So if you are using CherryPy 3.X

# memdebug.py

import cherrypy
import dowser

def start(port):
        'environment': 'embedded',
        'server.socket_port': port
  • 2
    but is it only for cherrypy, how to use it with a sinple script? – Anurag Uniyal Sep 21 '08 at 5:05
  • 13
    It is not for CherryPy. Think of CherryPy as a GUI toolkit. – sanxiyn Sep 21 '08 at 7:07
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    fwiw, the pysizer page pysizer.8325.org seems to recommend heapy, which it says is similar – Jacob Gabrielson Jul 7 '09 at 22:48
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    There is a generic WSGI port of Dowser called Dozer, which you can use with other web servers as well: pypi.python.org/pypi/Dozer – Joe Shaw Feb 13 '12 at 19:58
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    cherrypy 3.1 removed cherrypy.server.quickstart(), so just use cherrypy.engine.start() – MatsLindh Jan 24 '13 at 13:39

Consider the objgraph library (see http://www.lshift.net/blog/2008/11/14/tracing-python-memory-leaks for an example use case).

  • 7
    objgraph helped me solve a memory leak issue I was facing today. objgraph.show_growth() was particularly useful – Ngure Nyaga Oct 11 '12 at 19:36
  • I, too, found objgraph really useful. You can do things like objgraph.by_type('dict') to understand where all of those unexpected dict objects are coming from. – dino Aug 12 '13 at 13:20

Muppy is (yet another) Memory Usage Profiler for Python. The focus of this toolset is laid on the identification of memory leaks.

Muppy tries to help developers to identity memory leaks of Python applications. It enables the tracking of memory usage during runtime and the identification of objects which are leaking. Additionally, tools are provided which allow to locate the source of not released objects.


I found meliae to be much more functional than Heapy or PySizer. If you happen to be running a wsgi webapp, then Dozer is a nice middleware wrapper of Dowser


I'm developing a memory profiler for Python called memprof:


It allows you to log and plot the memory usage of your variables during the execution of the decorated methods. You just have to import the library using:

from memprof import memprof

And decorate your method using:


This is an example on how the plots look like:

enter image description here

The project is hosted in GitHub:


  • 2
    How do I use it? What is a,b,c? – tommy.carstensen Sep 8 '13 at 12:51
  • @tommy.carstensen a, b and c are the names of the variables. You can find the documentation at github.com/jmdana/memprof. If you have any questions please feel free to submit an issue in github or send an email to the mailing list that can be found in the documentation. – jmdana Sep 9 '13 at 12:13

Try also the pytracemalloc project which provides the memory usage per Python line number.

EDIT (2014/04): It now has a Qt GUI to analyze snapshots.

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