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I've seen this argument in a few places, and now, recently i saw it again on a reddit post. This is by no means a flame against any of these two languages. I am just puzzled why there is this bad reputation about python not being scalable.
I'm a python guy and now I'm getting started with Java and i just want to understand what makes Java so scalable and if the python setup that I have in mind is a good way to scale large python apps.

Now back to my idea of scaling a Python app. Let's say you code it using Django. Django runs its apps in fastcgi mode. So what if you have a front Nginx server and behind it as many other servers as needed that will each run your Django app in fastcgi mode. The front Nginx server will then load balance between your backend Django fastcgi running servers. Django also supports multiple databases so you could write to one master DB and then read from many slaves, again for load balancing. Throw a memcached server in to this mix and there you go you have scalability. Don't you?

Is this a viable setup? What does Java makes better? How do you scale a Java app?

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This will probably be closed because any time you discuss potential problems with dynamic languages, feelings get hurt very fast. However, keep in mind, your idea about scaling python may be fine but that doesn't say anything about whether Java is more scalable or not. Also, another thing to consider, if one platform can scale "similarly well" to another but requires a much more complex setup, is it really more scalable? –  BobbyShaftoe Oct 24 '10 at 21:47
"feelings get hurt very fast". I think that some people should stop having too much coffee and focus on more important things in life. It's just a damn language... –  Stefano Borini Oct 24 '10 at 23:22
Scalable can mean many things. If you say something doesn't scale, you have to say in what way, and also say why it is important. C++ can scale to 100K thread and Java can scale to 10K threads, but if you only need 10s of threads, does it matter? –  Peter Lawrey Oct 25 '10 at 0:00
Scale in terms of what? Single CPU time? IO? Network? Parallelization? Memory usage? –  Piskvor Oct 25 '10 at 14:13
Well i took Django as example as i was thinking at a webapp, so scale in terms of requests/second that can be handled. –  daniels Oct 25 '10 at 16:22
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closed as not constructive by Dave Webb, Wooble, Piskvor, gnovice, ho1 Oct 26 '10 at 8:08

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6 Answers

up vote 18 down vote accepted

Scalability is a very overloaded term these days. The comments probably refer to in-process vertical scalability.

Python has a global interpreter lock (GIL) that severely limits its ability to scale up to many threads. It releases it when calling native code (reacquiring it when the native returns), but this still requires careful design when trying to write scalable software in Python.

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That said, some implementations like Stackless are better in the threading aspect -- much better. For example, Stackless Python is employed by the MMORPG Eve Online. –  Tim Čas Oct 24 '10 at 21:48
But it should be noted that Stackless Python does not remove the GIL. It may make concurrent programming easier but it does not enable parallel execution. PyPy and Unladen Swallow both have removal of the GIL as one of their goals, but neither (as I recall) are there yet. IronPython and Jython are the only serious, currently GIL-less contenders as far as I'm aware. –  James Cunningham Oct 24 '10 at 23:39
@Tim: Stackless is single-threaded. It simulates threads to allow highly concurrent behavior, as long everything is I/O-bound. But if you run a CPU-bound workload through Stackless on an 8-core system, You won't see more than about 12% utilization. –  Marcelo Cantos Oct 25 '10 at 2:30
Yes, I thought it was - nevertheless, I think it adds plenty to the scalability. Just my opinion, you don't have to agree with it. –  Tim Čas Oct 25 '10 at 8:23
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While I don't agree with the statement, I suppose they think Java is more scalable because it runs a lot faster. The JVM is very efficient (except perhaps in memory usage). Also Python's GIL (Global Interpreter Lock) doesn't allow "real" threading, while Java doesn't have a GIL and has true multithreading.

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What do you mean by "the JVM"? Its just a spec that might be implemented in very different ways, leading to very different performance results. Not trying to be a dick, really just curious. –  darren Oct 24 '10 at 23:26
HotSpot, which is what most people use. –  alpha123 Oct 24 '10 at 23:35
But Python runs on the JVM, and consequently obviously also on HotSpot, so if scalability is all about HotSpot, and both languages run on HotSpot, then why exactly is one "more scalable" than the other? –  Jörg W Mittag Oct 25 '10 at 1:35
Most people use CPython and not Jython. Jython does indeed eliminate all the scaling problems of Python (GIL etc). –  alpha123 Oct 25 '10 at 16:38
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Without getting into a flamewar, consider how Python handles multi-threaded apps as compared to Java? For example, what global locks are in place in both languages that hurt concurrency (hint, Python's GIL - Global Interpreter Lock)?

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I think this article sums up many of the arguments about scaling and dynamic languages:


It's worth noting its two definition for scaling...

  1. Size of project, as in lines-of-code (LOC)
  2. Capacity handling, as in "it needs to scale to 100,000 requests per second"

One often used argument about any dynamic language scaling is that as the code-base grows it becomes harder to refactor it without IDE support. Due to the lack of type information at compile time this support is often impossible to implement in dynamic languages.

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I'm calling bullshit on this. Automatic Refactoring IDEs were invented in dynamic languages and the refactoring support in dynamic language IDEs such as VisualWorks and co. is still way ahead of anything I have seen for statically typed languages. –  Jörg W Mittag Oct 25 '10 at 1:36
No need to curse! - I'm a big fan of dynamic languages but it is a fact that many types of refactoring are a lot harder to implement in dynamic languages. beust.com/weblog/2006/10/01/… –  Pablojim Oct 26 '10 at 13:07
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I get mad when I see arguments like this. Not because I get all butthurt about haters harshing my Python mellow, but because to my mind, saying "X doesn't scale" is meaningless. It is necessary to specify a dimension, at the very least.

People are reluctant to do this, as it often reveals the fact that they don't have a good handle on the problem that they're speaking with confidence about. The global interpreter lock is a good touchstone here: threads are not the only way to perform concurrent operations.

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Hmmm - scalable could mean many things - scalable by distributed architecture, scalable by speed?

On the scalable by speed front, Java generally can process instructions faster than python - for the right kind of problem, much faster (I guess the main reason for that is that Java is compiled whereas Python is interpreted). From that point of view, Java can generally do more with less, and so is more scalable.

I'm referring my source experimental information back to two sources; http://mrpointy.wordpress.com/2007/11/06/java-vs-python-performance/ and http://blog.dhananjaynene.com/2008/07/performance-comparison-c-java-python-ruby-jython-jruby-groovy/

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On the number crunching front, you are technically correct. Except that, any serious number crunching in Python is done using the numpy library, which is C/Fortran based and typically performs better than Java libraries. –  Muhammad Alkarouri Oct 24 '10 at 22:10
Sorry, when I say number crunching, I'm not specifically referring to linear algebra and the like. I'll rephrase. –  Brabster Oct 24 '10 at 22:33
1) Python is not interpreted, it is compiled. That's what the downvote is about. 2) most number crunching reduces to linear algebra "and the like." –  aaronasterling Oct 25 '10 at 8:50
@aaronsterling "Python is an interpreted language, as opposed to a compiled one" - from docs.python.org/glossary.html - if docs.python.org is wrong, I give up... I also already rephrased "number crunching" to "processing instructions", which is what I actually meant, for better accuracy. –  Brabster Oct 25 '10 at 10:49
It's common knowledge that they're using a weird definition on that boint. They view anything that isn't compiled to native code as interpreted. Java is interpreted by that view. –  aaronasterling Oct 25 '10 at 20:03
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