from setuptools import setup import setuptools.command.build_py def readme(): with open('README.rst') as f: return f.read() class BuildTestCommand(setuptools.command.build_py.build_py): """Custom build command.""" def run(self): # run tests using doctest import doctest from ipfml import processing from ipfml import metrics from ipfml.filters import noise as noise_filters print("==============================") print("Run test command...") doctest.testmod(processing) doctest.testmod(metrics) doctest.testmod(noise_filters) # Run format code using ypaf try: print("==============================") print("Run format code command...") self.spawn(['yapf', '-ir', '-vv', 'ipfml']) except RuntimeError: self.warn('format pakcage code failed') # Run update auto generated documentation try: print("==============================") print("Run update of auto generated documentation...") self.spawn(['bash', './build.sh']) except RuntimeError: self.warn('Error during documentation rendering') setuptools.command.build_py.build_py.run(self) setup( name='ipfml', version='0.2.0', description='Image Processing For Machine Learning', long_description=readme(), classifiers=[ 'Development Status :: 3 - Alpha', 'License :: OSI Approved :: MIT License', 'Programming Language :: Python :: 3.6', 'Topic :: Scientific/Engineering :: Artificial Intelligence' ], url='https://gogs.univ-littoral.fr/jerome.buisine/IPFML', author='Jérôme BUISINE', author_email='jerome.buisine@univ-littoral.fr', license='MIT', packages=['ipfml'], install_requires=[ 'matplotlib', 'numpy', 'Pillow', 'sklearn', 'scikit-image', 'scipy', 'opencv-python', 'scipy', 'yapf' ], cmdclass={ 'build_py': BuildTestCommand, }, zip_safe=False)