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setup.py
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from setuptools import setup
import re
__version__ = re.findall(
r"""__version__ = ["']+([0-9\.]*)["']+""",
open('adflow/__init__.py').read(),
)[0]
setup(name='adflow',
version=__version__,
description="ADflow is a multi-block structured flow solver developed by the MDO Lab at the University of Michigan",
long_description="""ADflow is a multi-block structured flow solver developed by the MDO Lab at the University of Michigan.
It solves the compressible Euler, laminar Navier-Stokes and Reynolds-Averaged Navier-Stokes equations.
ADflow's features include the following:
- Discrete adjoint implementation
- "Complexified" code for complex-step derivative verification
- Massively parallel (both CPU and memory scalable) implementation using MPI.
## Documentation
Please see the [documentation](https://mdolab-adflow.readthedocs-hosted.com/en/latest/) for installation details and API documentation.
To locally build the documentation, enter the `doc` folder and enter `make html` in terminal.
You can then view the built documentation in the `_build` folder.
""",
long_description_content_type="text/markdown",
keywords='RANS adjoint fast optimization',
author='',
author_email='',
url='https://github.com/mdolab/adflow',
license='LGPL version 2.1',
packages=[
'adflow',
],
package_data={
'adflow': ['*.so']
},
install_requires=[
'numpy>=1.16.4',
'baseclasses>=1.2.0',
'mpi4py>=3.0.2',
'petsc4py>=3.11.0',
],
classifiers=[
"Operating System :: Linux",
"Programming Language :: Python, Fortran"]
)