I understand that Django, PyPy, and Psycopg2 all work correctly together, and speed.pypy.org claims great performance improvements over CPython. Are there any downsides?

  1. Library support. Not all libraries are compatible with PyPy.

    Your best bet is to actually try running pypy manage.py test and see if it breaks. Then you know which dependencies need to be brought into line.


  2. Webservers

    You can't use pypy with Apache. You need to use a pure-python webserver + nginx. You MAY get it working on uwsgi.

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    I use pypy+ gunicorn + django + nginx and it works like a charm. – Games Brainiac Oct 12 '14 at 12:05

The PyPy wiki lists Django as compatible, but it doesn't go into great detail about how much of Django was tested. I am not aware of any major Django deployment that runs PyPy instead of CPython. A better question is why you'd want to switch to PyPy for a Django app, especially as Django has been extensively tested and deployed with CPython.

PyPy is good for tasks that are computationally intensive. Web apps are usually not. The Django benchmark they base their performance numbers off is essentially a template rendering benchmark which is a CPU intensive task. This is not representative of most web apps where the bottle neck tends to be I/O. As such, PyPy may not speed up your site as much as those graphs lead you to believe.

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    The "Webservers are IO Constrained, Don't worry about slow languages" fallacy is apparently alive and well. I know that 50% of the time spent in my database-heavy website IS ACTUALLY PYTHON PROCESSING TIME. Templates need rendering, querysets need deepcopying. Responsible developers should be looking for performance improvements everywhere, not just in the DB layer. – Thomas May 3 '13 at 4:12
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    "This is not representative of most web apps where the bottle neck tends to be I/O." As always you need to profile to figure out where your bottlenecks are. Nowhere does that imply that you needn't worry about writing optimised code. Responsible developers optimise the critical paths of their app. Switching to an experimental Python runtime based on a template rendering benchmark is hardly responsible! – CadentOrange May 3 '13 at 11:07
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    I did some tests of cpython2 vs pypy. Performance tests run much faster with pypy. On the other hand, django pages with db queries where served much faster with cpython. – francescortiz Jul 31 '13 at 10:50
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    @StefanNch More cores == more concurrency == more concurrently served requests. Remember that "Premature optimisation is the root of all evil". Always profile, understand the problem then begin to think of the solution. – CadentOrange May 6 '14 at 8:58
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    @CadentOrange You are correct my friend, unfortunatelly, I have some Django-python sites that keeps me awake 20 hours/day. They are a couple years old (not premature at all) and the only conclusion I've got is that I really need to search for something faster (faster for image manipulation, faster for db operation, faster for everything). Django is "fast enough", but not for me. For me Django is really slow, so slow that not even (mem)caching helps. As a last resort, while I'm searching for something more server-friendly, I'm using a CDN to help me out a bit. – StefanNch May 6 '14 at 10:33

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