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setup.py
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setup.py
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# Copyright (c) 2022-2024, NVIDIA CORPORATION & AFFILIATES. All rights reserved.
#
# See LICENSE for license information.
"""Installation script."""
import ctypes
from functools import lru_cache
import os
from pathlib import Path
import re
import shutil
import subprocess
from subprocess import CalledProcessError
import sys
import sysconfig
from typing import List, Optional, Tuple, Union
import setuptools
from setuptools.command.build_ext import build_ext
from te_version import te_version
# Project directory root
root_path: Path = Path(__file__).resolve().parent
@lru_cache(maxsize=1)
def with_debug_build() -> bool:
"""Whether to build with a debug configuration"""
for arg in sys.argv:
if arg == "--debug":
sys.argv.remove(arg)
return True
if int(os.getenv("NVTE_BUILD_DEBUG", "0")):
return True
return False
# Call once in global scope since this function manipulates the
# command-line arguments. Future calls will use a cached value.
with_debug_build()
def found_cmake() -> bool:
""""Check if valid CMake is available
CMake 3.18 or newer is required.
"""
# Check if CMake is available
try:
_cmake_bin = cmake_bin()
except FileNotFoundError:
return False
# Query CMake for version info
output = subprocess.run(
[_cmake_bin, "--version"],
capture_output=True,
check=True,
universal_newlines=True,
)
match = re.search(r"version\s*([\d.]+)", output.stdout)
version = match.group(1).split('.')
version = tuple(int(v) for v in version)
return version >= (3, 18)
def cmake_bin() -> Path:
"""Get CMake executable
Throws FileNotFoundError if not found.
"""
# Search in CMake Python package
_cmake_bin: Optional[Path] = None
try:
import cmake
except ImportError:
pass
else:
cmake_dir = Path(cmake.__file__).resolve().parent
_cmake_bin = cmake_dir / "data" / "bin" / "cmake"
if not _cmake_bin.is_file():
_cmake_bin = None
# Search in path
if _cmake_bin is None:
_cmake_bin = shutil.which("cmake")
if _cmake_bin is not None:
_cmake_bin = Path(_cmake_bin).resolve()
# Return executable if found
if _cmake_bin is None:
raise FileNotFoundError("Could not find CMake executable")
return _cmake_bin
def found_ninja() -> bool:
""""Check if Ninja is available"""
return shutil.which("ninja") is not None
def found_pybind11() -> bool:
""""Check if pybind11 is available"""
# Check if Python package is installed
try:
import pybind11
except ImportError:
pass
else:
return True
# Check if CMake can find pybind11
if not found_cmake():
return False
try:
subprocess.run(
[
"cmake",
"--find-package",
"-DMODE=EXIST",
"-DNAME=pybind11",
"-DCOMPILER_ID=CXX",
"-DLANGUAGE=CXX",
],
stdout=subprocess.DEVNULL,
stderr=subprocess.DEVNULL,
check=True,
)
except (CalledProcessError, OSError):
pass
else:
return True
return False
def cuda_version() -> Tuple[int, ...]:
"""CUDA Toolkit version as a (major, minor) tuple
Throws FileNotFoundError if NVCC is not found.
"""
# Try finding NVCC
nvcc_bin: Optional[Path] = None
if nvcc_bin is None and os.getenv("CUDA_HOME"):
# Check in CUDA_HOME
cuda_home = Path(os.getenv("CUDA_HOME"))
nvcc_bin = cuda_home / "bin" / "nvcc"
if nvcc_bin is None:
# Check if nvcc is in path
nvcc_bin = shutil.which("nvcc")
if nvcc_bin is not None:
nvcc_bin = Path(nvcc_bin)
if nvcc_bin is None:
# Last-ditch guess in /usr/local/cuda
cuda_home = Path("/usr/local/cuda")
nvcc_bin = cuda_home / "bin" / "nvcc"
if not nvcc_bin.is_file():
raise FileNotFoundError(f"Could not find NVCC at {nvcc_bin}")
# Query NVCC for version info
output = subprocess.run(
[nvcc_bin, "-V"],
capture_output=True,
check=True,
universal_newlines=True,
)
match = re.search(r"release\s*([\d.]+)", output.stdout)
version = match.group(1).split('.')
return tuple(int(v) for v in version)
@lru_cache(maxsize=1)
def with_userbuffers() -> bool:
"""Check if userbuffers support is enabled"""
if int(os.getenv("NVTE_WITH_USERBUFFERS", "0")):
assert os.getenv("MPI_HOME"), \
"MPI_HOME must be set if NVTE_WITH_USERBUFFERS=1"
return True
return False
@lru_cache(maxsize=1)
def frameworks() -> List[str]:
"""DL frameworks to build support for"""
_frameworks: List[str] = []
supported_frameworks = ["pytorch", "jax", "paddle"]
# Check environment variable
if os.getenv("NVTE_FRAMEWORK"):
_frameworks.extend(os.getenv("NVTE_FRAMEWORK").split(","))
# Check command-line arguments
for arg in sys.argv.copy():
if arg.startswith("--framework="):
_frameworks.extend(arg.replace("--framework=", "").split(","))
sys.argv.remove(arg)
# Detect installed frameworks if not explicitly specified
if not _frameworks:
try:
import torch
except ImportError:
pass
else:
_frameworks.append("pytorch")
try:
import jax
except ImportError:
pass
else:
_frameworks.append("jax")
try:
import paddle
except ImportError:
pass
else:
_frameworks.append("paddle")
# Special framework names
if "all" in _frameworks:
_frameworks = supported_frameworks.copy()
if "none" in _frameworks:
_frameworks = []
# Check that frameworks are valid
_frameworks = [framework.lower() for framework in _frameworks]
for framework in _frameworks:
if framework not in supported_frameworks:
raise ValueError(
f"Transformer Engine does not support framework={framework}"
)
return _frameworks
# Call once in global scope since this function manipulates the
# command-line arguments. Future calls will use a cached value.
frameworks()
def setup_requirements() -> Tuple[List[str], List[str], List[str]]:
"""Setup Python dependencies
Returns dependencies for build, runtime, and testing.
"""
# Common requirements
setup_reqs: List[str] = []
install_reqs: List[str] = [
"pydantic",
"importlib-metadata>=1.0; python_version<'3.8'",
]
test_reqs: List[str] = ["pytest"]
def add_unique(l: List[str], vals: Union[str, List[str]]) -> None:
"""Add entry to list if not already included"""
if isinstance(vals, str):
vals = [vals]
for val in vals:
if val not in l:
l.append(val)
# Requirements that may be installed outside of Python
if not found_cmake():
add_unique(setup_reqs, "cmake>=3.18")
if not found_ninja():
add_unique(setup_reqs, "ninja")
# Framework-specific requirements
if "pytorch" in frameworks():
add_unique(install_reqs, ["torch", "flash-attn>=2.0.6,<=2.5.8,!=2.0.9,!=2.1.0"])
add_unique(test_reqs, ["numpy", "onnxruntime", "torchvision"])
if "jax" in frameworks():
if not found_pybind11():
add_unique(setup_reqs, "pybind11")
add_unique(install_reqs, ["jax", "flax>=0.7.1"])
add_unique(test_reqs, ["numpy", "praxis"])
if "paddle" in frameworks():
add_unique(install_reqs, "paddlepaddle-gpu")
add_unique(test_reqs, "numpy")
return setup_reqs, install_reqs, test_reqs
class CMakeExtension(setuptools.Extension):
"""CMake extension module"""
def __init__(
self,
name: str,
cmake_path: Path,
cmake_flags: Optional[List[str]] = None,
) -> None:
super().__init__(name, sources=[]) # No work for base class
self.cmake_path: Path = cmake_path
self.cmake_flags: List[str] = [] if cmake_flags is None else cmake_flags
def _build_cmake(self, build_dir: Path, install_dir: Path) -> None:
# Make sure paths are str
_cmake_bin = str(cmake_bin())
cmake_path = str(self.cmake_path)
build_dir = str(build_dir)
install_dir = str(install_dir)
# CMake configure command
build_type = "Debug" if with_debug_build() else "Release"
configure_command = [
_cmake_bin,
"-S",
cmake_path,
"-B",
build_dir,
f"-DPython_EXECUTABLE={sys.executable}",
f"-DPython_INCLUDE_DIR={sysconfig.get_path('include')}",
f"-DCMAKE_BUILD_TYPE={build_type}",
f"-DCMAKE_INSTALL_PREFIX={install_dir}",
]
configure_command += self.cmake_flags
if found_ninja():
configure_command.append("-GNinja")
try:
import pybind11
except ImportError:
pass
else:
pybind11_dir = Path(pybind11.__file__).resolve().parent
pybind11_dir = pybind11_dir / "share" / "cmake" / "pybind11"
configure_command.append(f"-Dpybind11_DIR={pybind11_dir}")
# CMake build and install commands
build_command = [_cmake_bin, "--build", build_dir]
install_command = [_cmake_bin, "--install", build_dir]
# Run CMake commands
for command in [configure_command, build_command, install_command]:
print(f"Running command {' '.join(command)}")
try:
subprocess.run(command, cwd=build_dir, check=True)
except (CalledProcessError, OSError) as e:
raise RuntimeError(f"Error when running CMake: {e}")
# PyTorch extension modules require special handling
if "pytorch" in frameworks():
from torch.utils.cpp_extension import BuildExtension
elif "paddle" in frameworks():
from paddle.utils.cpp_extension import BuildExtension
else:
from setuptools.command.build_ext import build_ext as BuildExtension
class CMakeBuildExtension(BuildExtension):
"""Setuptools command with support for CMake extension modules"""
def __init__(self, *args, **kwargs) -> None:
super().__init__(*args, **kwargs)
def run(self) -> None:
# Build CMake extensions
for ext in self.extensions:
if isinstance(ext, CMakeExtension):
print(f"Building CMake extension {ext.name}")
# Set up incremental builds for CMake extensions
setup_dir = Path(__file__).resolve().parent
build_dir = setup_dir / "build" / "cmake"
build_dir.mkdir(parents=True, exist_ok=True) # Ensure the directory exists
package_path = Path(self.get_ext_fullpath(ext.name))
install_dir = package_path.resolve().parent
ext._build_cmake(
build_dir=build_dir,
install_dir=install_dir,
)
# Paddle requires linker search path for libtransformer_engine.so
paddle_ext = None
if "paddle" in frameworks():
for ext in self.extensions:
if "paddle" in ext.name:
ext.library_dirs.append(self.build_lib)
paddle_ext = ext
break
# Build non-CMake extensions as usual
all_extensions = self.extensions
self.extensions = [
ext for ext in self.extensions
if not isinstance(ext, CMakeExtension)
]
super().run()
self.extensions = all_extensions
# Manually write stub file for Paddle extension
if paddle_ext is not None:
# Load libtransformer_engine.so to avoid linker errors
for path in Path(self.build_lib).iterdir():
if path.name.startswith("libtransformer_engine."):
ctypes.CDLL(str(path), mode=ctypes.RTLD_GLOBAL)
# Figure out stub file path
module_name = paddle_ext.name
assert module_name.endswith("_pd_"), \
"Expected Paddle extension module to end with '_pd_'"
stub_name = module_name[:-4] # remove '_pd_'
stub_path = os.path.join(self.build_lib, stub_name + ".py")
# Figure out library name
# Note: This library doesn't actually exist. Paddle
# internally reinserts the '_pd_' suffix.
so_path = self.get_ext_fullpath(module_name)
_, so_ext = os.path.splitext(so_path)
lib_name = stub_name + so_ext
# Write stub file
print(f"Writing Paddle stub for {lib_name} into file {stub_path}")
from paddle.utils.cpp_extension.extension_utils import custom_write_stub
custom_write_stub(lib_name, stub_path)
def setup_common_extension() -> CMakeExtension:
"""Setup CMake extension for common library
Also builds JAX or userbuffers support if needed.
"""
cmake_flags = []
if "jax" in frameworks():
cmake_flags.append("-DENABLE_JAX=ON")
if with_userbuffers():
cmake_flags.append("-DNVTE_WITH_USERBUFFERS=ON")
return CMakeExtension(
name="transformer_engine",
cmake_path=root_path / "transformer_engine",
cmake_flags=cmake_flags,
)
def _all_files_in_dir(path):
return list(path.iterdir())
def setup_pytorch_extension() -> setuptools.Extension:
"""Setup CUDA extension for PyTorch support"""
# Source files
src_dir = root_path / "transformer_engine" / "pytorch" / "csrc"
extensions_dir = src_dir / "extensions"
sources = [
src_dir / "common.cu",
src_dir / "ts_fp8_op.cpp",
# We need to compile system.cpp because the pytorch extension uses
# transformer_engine::getenv. This is a workaround to avoid direct
# linking with libtransformer_engine.so, as the pre-built PyTorch
# wheel from conda or PyPI was not built with CXX11_ABI, and will
# cause undefined symbol issues.
root_path / "transformer_engine" / "common" / "util" / "system.cpp",
] + \
_all_files_in_dir(extensions_dir)
# Header files
include_dirs = [
root_path / "transformer_engine" / "common" / "include",
root_path / "transformer_engine" / "pytorch" / "csrc",
root_path / "transformer_engine",
root_path / "3rdparty" / "cudnn-frontend" / "include",
]
# Compiler flags
cxx_flags = ["-O3"]
nvcc_flags = [
"-O3",
"-gencode",
"arch=compute_70,code=sm_70",
"-U__CUDA_NO_HALF_OPERATORS__",
"-U__CUDA_NO_HALF_CONVERSIONS__",
"-U__CUDA_NO_BFLOAT16_OPERATORS__",
"-U__CUDA_NO_BFLOAT16_CONVERSIONS__",
"-U__CUDA_NO_BFLOAT162_OPERATORS__",
"-U__CUDA_NO_BFLOAT162_CONVERSIONS__",
"--expt-relaxed-constexpr",
"--expt-extended-lambda",
"--use_fast_math",
]
# Version-dependent CUDA options
try:
version = cuda_version()
except FileNotFoundError:
print("Could not determine CUDA Toolkit version")
else:
if version >= (11, 2):
nvcc_flags.extend(["--threads", "4"])
if version >= (11, 0):
nvcc_flags.extend(["-gencode", "arch=compute_80,code=sm_80"])
if version >= (11, 8):
nvcc_flags.extend(["-gencode", "arch=compute_90,code=sm_90"])
# userbuffers support
if with_userbuffers():
if os.getenv("MPI_HOME"):
mpi_home = Path(os.getenv("MPI_HOME"))
include_dirs.append(mpi_home / "include")
cxx_flags.append("-DNVTE_WITH_USERBUFFERS")
nvcc_flags.append("-DNVTE_WITH_USERBUFFERS")
# Construct PyTorch CUDA extension
sources = [str(path) for path in sources]
include_dirs = [str(path) for path in include_dirs]
from torch.utils.cpp_extension import CUDAExtension
return CUDAExtension(
name="transformer_engine_extensions",
sources=sources,
include_dirs=include_dirs,
# libraries=["transformer_engine"], ### TODO (tmoon) Debug linker errors
extra_compile_args={
"cxx": cxx_flags,
"nvcc": nvcc_flags,
},
)
def setup_paddle_extension() -> setuptools.Extension:
"""Setup CUDA extension for Paddle support"""
# Source files
src_dir = root_path / "transformer_engine" / "paddle" / "csrc"
sources = [
src_dir / "extensions.cu",
src_dir / "common.cpp",
src_dir / "custom_ops.cu",
]
# Header files
include_dirs = [
root_path / "transformer_engine" / "common" / "include",
root_path / "transformer_engine" / "paddle" / "csrc",
root_path / "transformer_engine",
]
# Compiler flags
cxx_flags = ["-O3"]
nvcc_flags = [
"-O3",
"-gencode",
"arch=compute_70,code=sm_70",
"-U__CUDA_NO_HALF_OPERATORS__",
"-U__CUDA_NO_HALF_CONVERSIONS__",
"-U__CUDA_NO_BFLOAT16_OPERATORS__",
"-U__CUDA_NO_BFLOAT16_CONVERSIONS__",
"-U__CUDA_NO_BFLOAT162_OPERATORS__",
"-U__CUDA_NO_BFLOAT162_CONVERSIONS__",
"--expt-relaxed-constexpr",
"--expt-extended-lambda",
"--use_fast_math",
]
# Version-dependent CUDA options
try:
version = cuda_version()
except FileNotFoundError:
print("Could not determine CUDA Toolkit version")
else:
if version >= (11, 2):
nvcc_flags.extend(["--threads", "4"])
if version >= (11, 0):
nvcc_flags.extend(["-gencode", "arch=compute_80,code=sm_80"])
if version >= (11, 8):
nvcc_flags.extend(["-gencode", "arch=compute_90,code=sm_90"])
# Construct Paddle CUDA extension
sources = [str(path) for path in sources]
include_dirs = [str(path) for path in include_dirs]
from paddle.utils.cpp_extension import CUDAExtension
ext = CUDAExtension(
sources=sources,
include_dirs=include_dirs,
libraries=["transformer_engine"],
extra_compile_args={
"cxx": cxx_flags,
"nvcc": nvcc_flags,
},
)
ext.name = "transformer_engine_paddle_pd_"
return ext
def main():
# Submodules to install
packages = setuptools.find_packages(
include=["transformer_engine", "transformer_engine.*"],
)
# Dependencies
setup_requires, install_requires, test_requires = setup_requirements()
# Extensions
ext_modules = [setup_common_extension()]
if "pytorch" in frameworks():
ext_modules.append(setup_pytorch_extension())
if "paddle" in frameworks():
ext_modules.append(setup_paddle_extension())
# Configure package
setuptools.setup(
name="transformer_engine",
version=te_version(),
packages=packages,
description="Transformer acceleration library",
ext_modules=ext_modules,
cmdclass={"build_ext": CMakeBuildExtension},
setup_requires=setup_requires,
install_requires=install_requires,
extras_require={"test": test_requires},
license_files=("LICENSE",),
)
if __name__ == "__main__":
main()