2012-04-05 119 views
6

我有我想建立使用distutils的动态库到Python代码CUDA。但是,即使安装了“nvcc”编译器,distutils似乎也无法识别“.cu”文件。不知道如何完成它。python distutils可以编译CUDA代码吗?

+0

你可以发布一些代码,以便我们可以看到你已经尝试过吗?另外,如果CUDA内核是关键部分,则可以尝试使用PyCUDA将其提供给python。 – 2012-04-05 19:08:31

+0

你是什么意思'不承认'?它不包括.cu文件的蛋?然后将package_data = {'':['* .cu']}添加到您的设置(...)中。 – 2012-04-05 19:34:48

回答

11

的Distutils不能默认编译CUDA,因为它不会同时使用多个编译器支持。默认情况下,它会根据您的平台设置为编译器,而不是您拥有的源代码类型。

我有一个包含一些猴子补丁到的distutils在这种支持砍在github的示例项目。示例项目是管理一些GPU内存和CUDA核心,包裹在痛饮,和所有刚刚python setup.py install编译的C++类。重点是数组操作,所以我们也使用numpy。所有内核都为此示例项目增加一个数组中的每个元素。

的代码是在这里:https://github.com/rmcgibbo/npcuda-example。这是setup.py脚本。整个代码的关键是customize_compiler_for_nvcc()

import os 
from os.path import join as pjoin 
from setuptools import setup 
from distutils.extension import Extension 
from distutils.command.build_ext import build_ext 
import subprocess 
import numpy 

def find_in_path(name, path): 
    "Find a file in a search path" 
    #adapted fom http://code.activestate.com/recipes/52224-find-a-file-given-a-search-path/ 
    for dir in path.split(os.pathsep): 
     binpath = pjoin(dir, name) 
     if os.path.exists(binpath): 
      return os.path.abspath(binpath) 
    return None 


def locate_cuda(): 
    """Locate the CUDA environment on the system 

    Returns a dict with keys 'home', 'nvcc', 'include', and 'lib64' 
    and values giving the absolute path to each directory. 

    Starts by looking for the CUDAHOME env variable. If not found, everything 
    is based on finding 'nvcc' in the PATH. 
    """ 

    # first check if the CUDAHOME env variable is in use 
    if 'CUDAHOME' in os.environ: 
     home = os.environ['CUDAHOME'] 
     nvcc = pjoin(home, 'bin', 'nvcc') 
    else: 
     # otherwise, search the PATH for NVCC 
     nvcc = find_in_path('nvcc', os.environ['PATH']) 
     if nvcc is None: 
      raise EnvironmentError('The nvcc binary could not be ' 
       'located in your $PATH. Either add it to your path, or set $CUDAHOME') 
     home = os.path.dirname(os.path.dirname(nvcc)) 

    cudaconfig = {'home':home, 'nvcc':nvcc, 
        'include': pjoin(home, 'include'), 
        'lib64': pjoin(home, 'lib64')} 
    for k, v in cudaconfig.iteritems(): 
     if not os.path.exists(v): 
      raise EnvironmentError('The CUDA %s path could not be located in %s' % (k, v)) 

    return cudaconfig 
CUDA = locate_cuda() 


# Obtain the numpy include directory. This logic works across numpy versions. 
try: 
    numpy_include = numpy.get_include() 
except AttributeError: 
    numpy_include = numpy.get_numpy_include() 


ext = Extension('_gpuadder', 
       sources=['src/swig_wrap.cpp', 'src/manager.cu'], 
       library_dirs=[CUDA['lib64']], 
       libraries=['cudart'], 
       runtime_library_dirs=[CUDA['lib64']], 
       # this syntax is specific to this build system 
       # we're only going to use certain compiler args with nvcc and not with gcc 
       # the implementation of this trick is in customize_compiler() below 
       extra_compile_args={'gcc': [], 
            'nvcc': ['-arch=sm_20', '--ptxas-options=-v', '-c', '--compiler-options', "'-fPIC'"]}, 
       include_dirs = [numpy_include, CUDA['include'], 'src']) 


# check for swig 
if find_in_path('swig', os.environ['PATH']): 
    subprocess.check_call('swig -python -c++ -o src/swig_wrap.cpp src/swig.i', shell=True) 
else: 
    raise EnvironmentError('the swig executable was not found in your PATH') 



def customize_compiler_for_nvcc(self): 
    """inject deep into distutils to customize how the dispatch 
    to gcc/nvcc works. 

    If you subclass UnixCCompiler, it's not trivial to get your subclass 
    injected in, and still have the right customizations (i.e. 
    distutils.sysconfig.customize_compiler) run on it. So instead of going 
    the OO route, I have this. Note, it's kindof like a wierd functional 
    subclassing going on.""" 

    # tell the compiler it can processes .cu 
    self.src_extensions.append('.cu') 

    # save references to the default compiler_so and _comple methods 
    default_compiler_so = self.compiler_so 
    super = self._compile 

    # now redefine the _compile method. This gets executed for each 
    # object but distutils doesn't have the ability to change compilers 
    # based on source extension: we add it. 
    def _compile(obj, src, ext, cc_args, extra_postargs, pp_opts): 
     if os.path.splitext(src)[1] == '.cu': 
      # use the cuda for .cu files 
      self.set_executable('compiler_so', CUDA['nvcc']) 
      # use only a subset of the extra_postargs, which are 1-1 translated 
      # from the extra_compile_args in the Extension class 
      postargs = extra_postargs['nvcc'] 
     else: 
      postargs = extra_postargs['gcc'] 

     super(obj, src, ext, cc_args, postargs, pp_opts) 
     # reset the default compiler_so, which we might have changed for cuda 
     self.compiler_so = default_compiler_so 

    # inject our redefined _compile method into the class 
    self._compile = _compile 


# run the customize_compiler 
class custom_build_ext(build_ext): 
    def build_extensions(self): 
     customize_compiler_for_nvcc(self.compiler) 
     build_ext.build_extensions(self) 

setup(name='gpuadder', 
     # random metadata. there's more you can supploy 
     author='Robert McGibbon', 
     version='0.1', 

     # this is necessary so that the swigged python file gets picked up 
     py_modules=['gpuadder'], 
     package_dir={'': 'src'}, 

     ext_modules = [ext], 

     # inject our custom trigger 
     cmdclass={'build_ext': custom_build_ext}, 

     # since the package has c code, the egg cannot be zipped 
     zip_safe=False) 
+1

这是一种古老的问题,但你有什么想法如何做到这一点的窗口?问题是** msvccompiler **没有使用** _ compile **方法。 – rAyyy 2017-03-14 10:52:23

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