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I'm a Java programmer and if there's one thing that I dislike about it, it would be speed. Java seems really slow, but a lot of the Python scriptsprograms I have written so far seem really fast.

So I was just wondering if Python is faster than Java, or C# and how that compares to C/C++ (which I figure it'll be slower than)?

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closed as primarily opinion-based by S.L. Barth, Tom Zych, Adriano Repetti, Oliver Matthews, greg-449 Jun 16 '14 at 13:21

Many good questions generate some degree of opinion based on expert experience, but answers to this question will tend to be almost entirely based on opinions, rather than facts, references, or specific expertise.If this question can be reworded to fit the rules in the help center, please edit the question.

As fast as a piece of string is long. – hobbs Nov 6 '09 at 8:34
Java- 100 miles/hr ,Python 200 miles/hr, C/C++ 1000 miles/hr – Xinus Nov 6 '09 at 8:36
Xinus, how can you even say that? – Geo Nov 6 '09 at 8:41
@Geo: just a Wild guess.. it depends on road conditions, machine tunning, fuel and lots of other factors... – Xinus Nov 6 '09 at 9:04
The speed of a python is approximately… wait, are we talking about a European python or an African python? – Bombe Nov 6 '09 at 9:05

8 Answers 8

In terms of raw performance, Python is definitely slower than Java, C# and C/C++. However, there are other things that matter for the user/observer such as total memory usage, initial startup time, etc. For most things, Python is fast enough ;)

This site lets you compare different programming languages to each other. It uses simple bar graphs to show speed, memory usage, etc.

If you're interested, you can take a look at the much anticipated Unladen Swallow project that's striving to improve the performance of Python to five times that of CPython (!)

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I like your term "fast enough". This has certainly been my experience with Python as well. – Wernsey Nov 6 '09 at 9:17
+1 for "fast enough" - people tend to spend way too much time talking about performance anyway – sfussenegger Nov 6 '09 at 9:31
"fast enough" for everything that doesn't need to be fast :-) – igouy Nov 7 '09 at 0:34
@igouy and then you write the parts that need to be fast in Cython or use Numpy if appropriate. – Justin Peel Nov 22 '10 at 23:24
@igouy: I suppose when you are cultivating a team of less experienced developers, they can write code in C++ "fast enough" for any projects that don't need to be written "fast". I think the point lemonad is trying to make is that in a practically constrained working environment, the performance of the language is not necessarily "king". – threed Dec 14 '12 at 0:08

This totally depends on the usecase. For long running applications (like servers), Java has proven to be extremely fast - even faster than C. This is possible as the JVM might compile hot bytecode to machine code. While doing this, it may take fully advantage of each and every feature of the CPU. This typically isn't possible for C, at least as soon as you leave your laboratory environment: just assume distributing a dozen of optimized builds to your clients - that simply won't work.

But back to your question: it really depends. E.g. if startup time is an issue (which isn't an issue for a server application for instance) Java might not be the best choice. It may also depend on where your hot code areas are: If they are within native libraries with some Python code to simply glue them together, you will be able to get C like performance with Python as well.

Typically, scripting languages will tend to be slower though - at least most of the time.

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If you want speed in Python, especially for complex algorithms, Psyco usually helps. From their webpage:

Think of Psyco as a kind of just-in-time (JIT) compiler, a little bit like what exists for other languages, that emit machine code on the fly instead of interpreting your Python program step by step. The difference with the traditional approach to JIT compilers is that Psyco writes several version of the same blocks (a block is a bit of a function), which are optimized by being specialized to some kinds of variables (a "kind" can mean a type, but it is more general). The result is that your unmodified Python programs run faster.

2x to 100x speed-ups, typically 4x, with an unmodified Python interpreter and unmodified source code, just a dynamically loadable C extension module.

Strangely, it hasn't been mentioned in the above links.

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They forgot to say hat sometimes a slowdown is achieved xD – fortran Nov 6 '09 at 9:41
Unfortunately Psycho hasn't been developed for several years and will never work on 64 bit platforms. – robince Nov 6 '09 at 10:16
@thrope: That's because psyco is deprecated in favour of pypy, which has recently exceeded the performance of psyco when the x86 JIT backend finally implemented ints and floats. pypy is a JIT generator. – cjrh Nov 6 '09 at 11:06
Psyco will give you more Java-like performance. You will get slower start times and higher memory usage in exchange for faster algorithms. – Jason Baker Nov 19 '09 at 13:00

Here's another stackoverflow question that seems more complete: You might also look at the computer language shootout.

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Woops. Thanks for the alternative link. – Richard Nienaber Nov 7 '09 at 6:01
And yet, psyco, a Python JIT compiler isn't allowed in the shootout... – Justin Peel Nov 22 '10 at 23:34
pysco was shown in 2008, here's the InternetArchive link, why don't you use the Python scripts the benchmarks game provides to publish measurements for your favourite language implementations?… – igouy Jun 23 '14 at 16:08
@igouy please dont change answers content – AK_ Jun 23 '14 at 16:14
410 Gone. @AK_ please correct the URL. – igouy Sep 8 at 15:42

It is very hard to make a truly objective and general comparison of the runtime speed of two languages. In comparing any two languages X and Y, one often finds X is faster than Y in some respects while being slower in others. For me, this makes any benchmarks/comparisons available online largely useless. The best way is to test it yourself and see how fast each language is for the job that you are doing.

Having said that, there are certain things one should remember when testing languages like Java and Python. Code in these languages can often be speeded up significantly by using constructions more suited to the language (e.g. list comprehensions in Python, or using char[] and StringBuilder for certain String operations in Java). Moreover, for Python, using psyco can greatly boost the speed of the program. And then there is the whole issue of using appropriate data structures and keeping an eye on the runtime complexity of your code.

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"your application is the ultimate benchmark"… – igouy Nov 7 '09 at 0:29

I think Keyle's answer (among others) brings home a basic point: a huge amount depends on how you do things. That link gave two answers for C++, but I have a hard time believing that anybody would normally write C++ that's much like either one. My first attempt would look something like this:

#include <iostream>
#include <vector>
#include <time.h>

class person { 
    int count_;
    static int current_;
    person() : count_(++current_) {}
    int count() { return count_; }
int person::current_ = 0;
typedef std::vector<person> plist;
class chain {
    plist people_;
    void check_wrap(std::vector<person>::iterator &p) {
    	if (p==people_.end())
    		p = people_.begin();
    void advance(std::vector<person>::iterator &p, int places) {
    	for (int i=0; i<places; i++)
    chain(int length) : people_(length) {}
    person *kill(int n) { 
    	plist::iterator current = people_.begin();
    	while (people_.size()>1) {
    		advance(current, n);
    		current = people_.erase(current);
    	return &(*current);
int main() {
    const int ITER = 1000000;  
    clock_t start = clock();
    for(int i = 0 ; i <ITER; i++) {
        chain c(40);
    clock_t end = clock();
    std::cout << "Time per iterator: " << (((end - start) /(double)CLOCKS_PER_SEC/ITER)*1000000 << " microseconds.\n";
    return 0;

(For portability I've used clock() instead of gettimeofday, but anybody who wants can easily change that back).

There are a couple of points about this that strike me as interesting. First, the code has gotten a lot shorter -- in fact, competitive as the shortest code shown. Second, the code has gotten quite a bit faster -- probably faster than anything but the specially optimized version in C++.

Finally, at least to me it seems like the code has gotten quite a bit easier to read and understand. To me, his 'shout()' seemed quite confusing, as was making a 'Person' really a node in a linked list of Person objects, with Chain handling some of the linked-list management, but 'Person' also doing linked-list things along with 'Person' things.

That doesn't necessarily (or directly) tell us about the speed of Python, but I think it gives an idea about the quality of many benchmarks you can find on the web. Writing almost any benchmark that's meaningful and accurate is tremendously difficult -- and trying to compare across languages is one of the most difficult of those.

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Indeed, although your algorithm is likely broken. As far as the comparison between Java and C++ goes, it probably only shows that small object allocation/deallocation is not a strength of C++. A straightforward and some 3-4 times shorter approach with a vector (even if allocated anew for each iteration) and erase showed that the C++ code could be trivially made some 5-6 times faster, without anything fancy. I suspect that benchmark is similarly suboptimal for other languages, possible for Java as well. – UncleBens Nov 6 '09 at 13:39
It's probably sub-optimal for Java, but with Java it probably doesn't make nearly as much difference. One part of this code is broken (I forgot that vector fills with a copy of a single object instead of creating each object independently, so they all get a count_ of 1. Other than that, I believe it works correctly. – Jerry Coffin Nov 6 '09 at 20:07

For the Python, velocity depends also for the interpreter implementations... I saw that pypy is generally faster than cpython.

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It's a question you can't answer properly, because it all depends when it has to be fast. Java is good for huge servers, it's bad when you have to re-compile and test a lot of times your code (compilation is sooooooo slow). Python doesn't even have to be compiled to test !

In production environment, it's totally silly to say Java is faster than C... it's like saying C is faster than assembly.

Anyway it's not possible to answer precisely : it all depends on what you want / need.

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I can't agree with your claim that Java code is hard to test. Incremental compilation and hot code replacement make testing Java really fast - I normally don't even note it. Furthermore it's not silly to say that Java can't be faster than C. The JVM will try to compile hot code areas to machine code. This machine code will be heavily optimized for the machine it's running on. For C you could do this at compile time - but you can't always predict the machine the code is going to run on, so it might be compiled for i386 to satisfy most clients. – sfussenegger Nov 6 '09 at 9:27
I do agree with you about the Java stuff. But for C it's always about who compiles it. If you make a good makefile, and you develop properly, it's not possible at all that the same compiled Java code will be faster. Not at all. The only possible cases it when you have the same developper who develops in Java and code a bad code with a bad makefile and compares the speed. It's all about the developper's skills. The only thing you can say is "Java is sometimes faster than C if the developper doesn't know C"!. But C is always to the worst as fast as Java. – Olivier Pons Jan 26 '10 at 8:47
For practical reasons, many C/C++ programs ship only a single executable (or as few executables as they can get away with, e.g. one for Mac and one for Windows). Given that, that one executable is likely going to be as vanilla as possible, so that the program can run on as many machines as possible. That means that if you have a new CPU with some nifty new instruction that can be used to speed up execution, said nifty new instruction will probably not be used by most C/C++ programs. Java programs, OTOH, can all take advantage of it as soon as your Java runtime's JIT knows about it. – Jeremy Friesner May 16 '14 at 23:27

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