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setup.py
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setup.py
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r"""
Parse additional arguments along with the setup.py arguments such as install, build, distribute, sdist, etc.
Usage:
python setup.py install <additional_flags>..<additional_flags> <additional_arg>=<value>..<additional_arg>=<value>
export CC=<C++ compiler>; python setup.py install <additional_flags>..<additional_flags> <additional_arg>=<value>..<additional_arg>=<value>
Examples:
python setup.py install --force_cuda --cuda_home=/usr/local/cuda
export CC=g++7; python setup.py install --force_cuda --cuda_home=/usr/local/cuda
Additional flags:
--cpu_only: Force building only a CPU version. However, if
torch.cuda.is_available() is False, it will default to CPU_ONLY.
--force_cuda: If torch.cuda.is_available() is false, but you have a working
nvcc, compile cuda files. --force_cuda will supercede --cpu_only.
Additional arguments:
--blas=<value> : type of blas library to use for CPU matrix multiplications.
Options: [openblas, mkl, atlas, blas]. By default, it will use the first
numpy blas library it finds.
--cuda_home=<value> : a directory that contains <value>/bin/nvcc and
<value>/lib64/libcudart.so. By default, use
`torch.utils.cpp_extension._find_cuda_home()`.
--blas_include_dirs=<comma_separated_values> : additional include dirs. Only
activated when --blas=<value> is set.
--blas_library_dirs=<comma_separated_values> : additional library dirs. Only
activated when --blas=<value> is set.
"""
import sys
if sys.version_info < (3, 6):
sys.stdout.write(
"Minkowski Engine requires Python 3.6 or higher. Please use anaconda https://www.anaconda.com/distribution/ for an isolated python environment.\n"
)
sys.exit(1)
try:
import torch
except ImportError:
raise ImportError("Pytorch not found. Please install pytorch first.")
import codecs
import os
import re
import subprocess
import warnings
from pathlib import Path
from sys import argv, platform
from setuptools import setup
from torch.utils.cpp_extension import BuildExtension, CppExtension, CUDAExtension
if platform == "win32":
raise ImportError("Windows is currently not supported.")
elif platform == "darwin":
# Set the distutils to use clang instead of g++ for valid std
if "CC" not in os.environ:
os.environ["CC"] = "/usr/local/opt/llvm/bin/clang"
here = os.path.abspath(os.path.dirname(__file__))
def read(*parts):
with codecs.open(os.path.join(here, *parts), "r") as fp:
return fp.read()
def find_version(*file_paths):
version_file = read(*file_paths)
version_match = re.search(r"^__version__ = ['\"]([^'\"]*)['\"]", version_file, re.M)
if version_match:
return version_match.group(1)
raise RuntimeError("Unable to find version string.")
def run_command(*args):
subprocess.check_call(args)
def _argparse(pattern, argv, is_flag=True, is_list=False):
if is_flag:
found = pattern in argv
if found:
argv.remove(pattern)
return found, argv
else:
arr = [arg for arg in argv if pattern == arg.split("=")[0]]
if is_list:
if len(arr) == 0: # not found
return False, argv
else:
assert "=" in arr[0], f"{arr[0]} requires a value."
argv.remove(arr[0])
val = arr[0].split("=")[1]
if "," in val:
return val.split(","), argv
else:
return [val], argv
else:
if len(arr) == 0: # not found
return False, argv
else:
assert "=" in arr[0], f"{arr[0]} requires a value."
argv.remove(arr[0])
return arr[0].split("=")[1], argv
run_command("rm", "-rf", "build")
run_command("pip", "uninstall", "MinkowskiEngine", "-y")
# For cpu only build
CPU_ONLY, argv = _argparse("--cpu_only", argv)
FORCE_CUDA, argv = _argparse("--force_cuda", argv)
if not torch.cuda.is_available() and not FORCE_CUDA:
warnings.warn(
"torch.cuda.is_available() is False. MinkowskiEngine will compile with CPU_ONLY. Please use `--force_cuda` to compile with CUDA."
)
CPU_ONLY = CPU_ONLY or not torch.cuda.is_available()
if FORCE_CUDA:
print("--------------------------------")
print("| FORCE_CUDA set |")
print("--------------------------------")
CPU_ONLY = False
# args with return value
CUDA_HOME, argv = _argparse("--cuda_home", argv, False)
BLAS, argv = _argparse("--blas", argv, False)
BLAS_INCLUDE_DIRS, argv = _argparse("--blas_include_dirs", argv, False, is_list=True)
BLAS_LIBRARY_DIRS, argv = _argparse("--blas_library_dirs", argv, False, is_list=True)
MAX_COMPILATION_THREADS = 12
Extension = CUDAExtension
extra_link_args = []
include_dirs = []
libraries = []
CC_FLAGS = []
NVCC_FLAGS = []
if CPU_ONLY:
print("--------------------------------")
print("| WARNING: CPU_ONLY build set |")
print("--------------------------------")
Extension = CppExtension
else:
print("--------------------------------")
print("| CUDA compilation set |")
print("--------------------------------")
# system python installation
libraries.append("cusparse")
if not (CUDA_HOME is False): # False when not set, str otherwise
print(f"Using CUDA_HOME={CUDA_HOME}")
if sys.platform == "win32":
vc_version = os.getenv("VCToolsVersion", "")
if vc_version.startswith("14.16."):
CC_FLAGS += ["/sdl"]
else:
CC_FLAGS += ["/sdl", "/permissive-"]
else:
CC_FLAGS += ["-fopenmp"]
if "darwin" in platform:
CC_FLAGS += ["-stdlib=libc++", "-std=c++17"]
NVCC_FLAGS += ["--expt-relaxed-constexpr", "--expt-extended-lambda"]
FAST_MATH, argv = _argparse("--fast_math", argv)
if FAST_MATH:
NVCC_FLAGS.append("--use_fast_math")
BLAS_LIST = ["flexiblas", "openblas", "mkl", "atlas", "blas"]
if not (BLAS is False): # False only when not set, str otherwise
assert BLAS in BLAS_LIST, f"Blas option {BLAS} not in valid options {BLAS_LIST}"
if BLAS == "mkl":
libraries.append("mkl_rt")
CC_FLAGS.append("-DUSE_MKL")
NVCC_FLAGS.append("-DUSE_MKL")
else:
libraries.append(BLAS)
if not (BLAS_INCLUDE_DIRS is False):
include_dirs += BLAS_INCLUDE_DIRS
if not (BLAS_LIBRARY_DIRS is False):
extra_link_args += [f"-Wl,-rpath,{BLAS_LIBRARY_DIRS}"]
else:
# find the default BLAS library
import numpy.distutils.system_info as sysinfo
# Search blas in this order
for blas in BLAS_LIST:
if "libraries" in sysinfo.get_info(blas):
BLAS = blas
libraries += sysinfo.get_info(blas)["libraries"]
break
else:
# BLAS not found
raise ImportError(
' \
\nBLAS not found from numpy.distutils.system_info.get_info. \
\nPlease specify BLAS with: python setup.py install --blas=openblas" \
\nfor more information, please visit https://github.com/NVIDIA/MinkowskiEngine/wiki/Installation'
)
print(f"\nUsing BLAS={BLAS}")
# The Ninja cannot compile the files that have the same name with different
# extensions correctly and uses the nvcc/CC based on the extension. Import a
# .cpp file to the corresponding .cu file to force the nvcc compilation.
SOURCE_SETS = {
"cpu": [
CppExtension,
[
"math_functions_cpu.cpp",
"coordinate_map_manager.cpp",
"convolution_cpu.cpp",
"convolution_transpose_cpu.cpp",
"local_pooling_cpu.cpp",
"local_pooling_transpose_cpu.cpp",
"global_pooling_cpu.cpp",
"broadcast_cpu.cpp",
"pruning_cpu.cpp",
"interpolation_cpu.cpp",
"quantization.cpp",
"direct_max_pool.cpp",
],
["pybind/minkowski.cpp"],
["-DCPU_ONLY"],
],
"gpu": [
CUDAExtension,
[
"math_functions_cpu.cpp",
"math_functions_gpu.cu",
"coordinate_map_manager.cu",
"coordinate_map_gpu.cu",
"convolution_kernel.cu",
"convolution_gpu.cu",
"convolution_transpose_gpu.cu",
"pooling_avg_kernel.cu",
"pooling_max_kernel.cu",
"local_pooling_gpu.cu",
"local_pooling_transpose_gpu.cu",
"global_pooling_gpu.cu",
"broadcast_kernel.cu",
"broadcast_gpu.cu",
"pruning_gpu.cu",
"interpolation_gpu.cu",
"spmm.cu",
"gpu.cu",
"quantization.cpp",
"direct_max_pool.cpp",
],
["pybind/minkowski.cu"],
[],
],
}
debug, argv = _argparse("--debug", argv)
HERE = Path(os.path.dirname(__file__)).absolute()
SRC_PATH = HERE / "src"
if "CC" in os.environ or "CXX" in os.environ:
# distutils only checks CC not CXX
if "CXX" in os.environ:
os.environ["CC"] = os.environ["CXX"]
CC = os.environ["CXX"]
else:
CC = os.environ["CC"]
print(f"Using {CC} for c++ compilation")
if torch.__version__ < "1.7.0":
NVCC_FLAGS += [f"-ccbin={CC}"]
else:
print("Using the default compiler")
if debug:
CC_FLAGS += ["-g", "-DDEBUG"]
NVCC_FLAGS += ["-g", "-DDEBUG", "-Xcompiler=-fno-gnu-unique"]
else:
CC_FLAGS += ["-O3"]
NVCC_FLAGS += ["-O3", "-Xcompiler=-fno-gnu-unique"]
if "MAX_JOBS" not in os.environ and os.cpu_count() > MAX_COMPILATION_THREADS:
# Clip the num compilation thread to 8
os.environ["MAX_JOBS"] = str(MAX_COMPILATION_THREADS)
target = "cpu" if CPU_ONLY else "gpu"
Extension = SOURCE_SETS[target][0]
SRC_FILES = SOURCE_SETS[target][1]
BIND_FILES = SOURCE_SETS[target][2]
ARGS = SOURCE_SETS[target][3]
CC_FLAGS += ARGS
NVCC_FLAGS += ARGS
ext_modules = [
Extension(
name="MinkowskiEngineBackend._C",
sources=[*[str(SRC_PATH / src_file) for src_file in SRC_FILES], *BIND_FILES],
extra_compile_args={"cxx": CC_FLAGS, "nvcc": NVCC_FLAGS},
libraries=libraries,
),
]
# Python interface
setup(
name="MinkowskiEngine",
version=find_version("MinkowskiEngine", "__init__.py"),
install_requires=["torch", "numpy"],
packages=["MinkowskiEngine", "MinkowskiEngine.utils", "MinkowskiEngine.modules"],
package_dir={"MinkowskiEngine": "./MinkowskiEngine"},
ext_modules=ext_modules,
include_dirs=[str(SRC_PATH), str(SRC_PATH / "3rdparty"), *include_dirs],
cmdclass={"build_ext": BuildExtension.with_options(use_ninja=True)},
author="Christopher Choy",
description="a convolutional neural network library for sparse tensors",
long_description=read("README.md"),
long_description_content_type="text/markdown",
url="https://github.com/NVIDIA/MinkowskiEngine",
keywords=[
"pytorch",
"Minkowski Engine",
"Sparse Tensor",
"Convolutional Neural Networks",
"3D Vision",
"Deep Learning",
],
zip_safe=False,
classifiers=[
# https: // pypi.org/classifiers/
"Environment :: Console",
"Development Status :: 3 - Alpha",
"Intended Audience :: Developers",
"Intended Audience :: Other Audience",
"Intended Audience :: Science/Research",
"License :: OSI Approved :: MIT License",
"Natural Language :: English",
"Programming Language :: C++",
"Programming Language :: Python :: 3.6",
"Programming Language :: Python :: 3.7",
"Programming Language :: Python :: 3.8",
"Topic :: Multimedia :: Graphics",
"Topic :: Scientific/Engineering",
"Topic :: Scientific/Engineering :: Artificial Intelligence",
"Topic :: Scientific/Engineering :: Mathematics",
"Topic :: Scientific/Engineering :: Physics",
"Topic :: Scientific/Engineering :: Visualization",
],
python_requires=">=3.6",
)