Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

is it possible to convert a Python program to C/C++?

I need to implement a couple of algorithms, and I'm not sure if the performance gap is big enough to justify all the pain I'd go through when doing it in C/C++ (which I'm not good at). I thought about writing one simple algorithm and benchmark it against such a converted solution. If that alone is significantly faster than the Python version, then I'll have no other choice than doing it in C/C++.

Thanks in advance for your help!

share|improve this question
12  
As much as Python loses on benchmarks, keep in mind that that 50x or 100x slowdown is still negible if the calculation finishes in a few seconds in Python, and not even true when you do a lot of I/O or have a horrible algorithm. Rather than asking "how much slower is Python?" you should ask "is Python fast enough?" (and it most propably is, honestly) - that's also faster than benchmarking or asking here. –  delnan Jan 10 '11 at 19:03
1  
Implementing an algorithm in python is quite fast and straight forward...you simply have to do it and then check if it is fast enough. Most times you can optimize the algorithm to run much faster using different data structures(dict/sets instead of lists...) or different operations. Anyway optimization should occur after you have already implemented a first draft of the algorithm and benchmarked/profiled it. –  Bakuriu Jan 10 '11 at 19:09
    
@delnan: in my case it's all about computation time. If the C variant needs x hours less, then I'd invest that time in letting the algorithms run longer/again. I simply want to find out (roughly) how much slower Python would be - if it's just a couple of hours I certainly wouldn't use a language I'm not comfortable with (you can ruin the best solutions to problems with bad implementations :P). –  CrazyFlyingCloseline Jan 10 '11 at 19:20
    
@delnan's right about Python probably being fast enough for many things. Even when it slower, the ease of devleopment, maintenance, and future enhancement are important factors to consider. –  martineau Jan 10 '11 at 19:32
    
"x hours"? How big is this? Have you benchmarked an implementation? Do you have measurements? Have you profiled the implementation? Or are you trying to prematurely optimize the solution? –  S.Lott Jan 10 '11 at 19:59

5 Answers 5

up vote 28 down vote accepted

Yes. Look at Cython. It does just that: Converts Python to C for speedups.

share|improve this answer
2  
Of course that won't save you anything unless you add a bunch of cdef declarations and thereby introduce static typing (otherwise you just juggle opaque PyObject * stuff). And it will never get quite as fast as plain C because it's usually interfacing with Python (100% or more? only for plain numerical code that doesn't interface with Python at all for the most time!). But other than that, yes, it can get you a pretty devent speedup. –  delnan Jan 10 '11 at 19:00
3  
@delnan: In fact, it does save you something. Most pure Python code will be faster after compiled. But yes, with the cdefs and static typing you really start seeing differences. And the interfacing with Python you get in all cases where you use C from Python. –  Lennart Regebro Jan 10 '11 at 19:30

If the C variant needs x hours less, then I'd invest that time in letting the algorithms run longer/again

"invest" isn't the right word here.

  1. Build a working implementation in Python. You'll finish this long before you'd finish a C version.

  2. Measure performance with the Python profiler. Fix any problems you find. Change data structures and algorithms as necessary to really do this properly. You'll finish this long before you finish the first version in C.

  3. If it's still too slow, manually translate the well-designed and carefully constructed Python into C.

    Because of the way hindsight works, doing the second version from existing Python (with existing unit tests, and with existing profiling data) will still be faster than trying to do the C code from scratch.

This quote is important.

Thompson's Rule for First-Time Telescope Makers
It is faster to make a four-inch mirror and then a six-inch mirror than to make a six-inch mirror.

Bill McKeenan
Wang Institute

share|improve this answer
13  
+1 for the telescope quote I like that –  User Nov 1 '12 at 19:09
1  
very nice answer. –  Isopycnal Oscillation Oct 19 '13 at 2:32

Shed Skin is "a (restricted) Python-to-C++ compiler".

share|improve this answer
    
+1 one advantage of Shed Skin is type inference: if it is possible to go guess variable types from the program flow, dynamic type-checking is avoided. This typically leads to shorter C++ code that it is actually possible to read and compiles to faster programs. –  Kyss Tao Mar 30 '12 at 14:19

Just came across this new tool in hacker news.

From their page - "Nuitka is a good replacement for the Python interpreter and compiles every construct that CPython 2.6, 2.7, 3.2 and 3.3 offer. It translates the Python into a C++ program that then uses "libpython" to execute in the same way as CPython does, in a very compatible way."

share|improve this answer

http://code.google.com/p/py2c/ looks like a possibility - they also mention on their site: Cython, Shedskin and RPython and confirm that they are converting Python code to pure C/C++ which is much faster than C/C++ riddled with Python API calls. Note: I haven’t tried it but I am going to..

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.