mirror of
https://github.com/saymrwulf/onnxruntime.git
synced 2026-05-14 20:48:00 +00:00
* support optimizer opt for deepspeed 0.5.9 * resolve comments * resolve comments * FP16_Optimizer Support for more Deepspeed Versions (#12046) * fp16_optimizer for more ds versions * change ds version * bugfix * fix bug * Fix unused function warning for decodeMIDR(). (#12069) Changed from static function defined in header to function declared in header and defined in separate .cc file. * pin protobuf version to be compatible with onnx (#12132) Co-authored-by: Ashwini Khade <askhade@microsoft.com@orttrainingdev10.d32nl1ml4oruzj4qz3bqlggovf.px.internal.cloudapp.net> * RoiAlign CPU EP add warning for max mode with samples != 1 (#12136) * RoiAlign add warning about incorrect max summation when sample size not 1 * include coreml_provider_factory.h in macos build instead of coreml_ex… (#12138) include coreml_provider_factory.h in macos build instead of coreml_execution_provider.h * List 3.10 as supported python version and remove 3.6 (#12141) list 3.10 as supported python version and remove 3.6 Co-authored-by: Randy Shuai <rashuai@microsoft.com> * Use updated symbolic_helper.check_training_mode (#11900) Co-authored-by: Jingyan Wang, Baiju Meswani * Fix GH issue 12151 by using inverse perms for updating DQ axis attribute (#12158) * Fix GH issue 12151. Need to use inverse perms for updating that axis to what is used for transposing the input. This only applies if the DQ node is doing per-axis dequantization. * fixing positions for beam search gpt2 (#12156) * fixing positions for beam search gpt2 Co-authored-by: Tianlei Wu <tlwu@microsoft.com> * remove wrong placed libs (#12201) * Add file mapping for windows platform. (#12183) * Add file mapping for windows platform. * Add unit test for file mapping for windows. Also add an error message for mis-aligned offset * Add unit test for file mapping for windows. Also add an error message for mis-aligned offset * Update data type to avoid warnings * Compitable data type to avoid warnings. Update CreatFileMapping2 condition for winml compiling. * Add type conversion to avoid warnings for X86 release build. Co-authored-by: Ting Cao <ticao@microsoft.com> * Fix bug where onnxruntime_USE_NCCL flag would default to ON (#12195) Fix bug where onnxruntime_USE_NCCL flag would default to ON, causing ORT to not build properly. New functionality: flag is ON when training is enabled and NCCL is not disabled. Flag is OFF otherwise Co-authored-by: zhijxu <zhijxu@microsoft.com> Co-authored-by: zhijxu <zhijxu> Co-authored-by: Vincent Wang <wangwchpku@outlook.com> Co-authored-by: Edward Chen <18449977+edgchen1@users.noreply.github.com> Co-authored-by: Ashwini Khade <askhade@microsoft.com> Co-authored-by: Ashwini Khade <askhade@microsoft.com@orttrainingdev10.d32nl1ml4oruzj4qz3bqlggovf.px.internal.cloudapp.net> Co-authored-by: Dwayne Robinson <dwayner@microsoft.com> Co-authored-by: Carson Swope <carsonswope@users.noreply.github.com> Co-authored-by: Randy Shuai <rashuai@microsoft.com> Co-authored-by: jingyanwangms <47403504+jingyanwangms@users.noreply.github.com> Co-authored-by: Scott McKay <skottmckay@gmail.com> Co-authored-by: Viswanath Boga <44417868+viboga@users.noreply.github.com> Co-authored-by: leqiao-1 <61653207+leqiao-1@users.noreply.github.com> Co-authored-by: caoting-dotcom <71617901+caoting-dotcom@users.noreply.github.com> Co-authored-by: Ting Cao <ticao@microsoft.com> Co-authored-by: Sean Murray <59740888+seanmurr1@users.noreply.github.com>
684 lines
28 KiB
Python
684 lines
28 KiB
Python
# ------------------------------------------------------------------------
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# Copyright (c) Microsoft Corporation. All rights reserved.
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# Licensed under the MIT License.
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# ------------------------------------------------------------------------
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import datetime
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import platform
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import subprocess
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import sys
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from distutils import log as logger
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from distutils.command.build_ext import build_ext as _build_ext
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from glob import glob, iglob
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from os import environ, getcwd, path, popen, remove
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from pathlib import Path
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from shutil import copyfile
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from setuptools import Extension, setup
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from setuptools.command.install import install as InstallCommandBase
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from wheel.vendored.packaging.tags import sys_tags
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nightly_build = False
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package_name = "onnxruntime"
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wheel_name_suffix = None
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def parse_arg_remove_boolean(argv, arg_name):
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arg_value = False
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if arg_name in sys.argv:
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arg_value = True
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argv.remove(arg_name)
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return arg_value
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def parse_arg_remove_string(argv, arg_name_equal):
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arg_value = None
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for arg in sys.argv[1:]:
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if arg.startswith(arg_name_equal):
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arg_value = arg[len(arg_name_equal) :]
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sys.argv.remove(arg)
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break
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return arg_value
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# Any combination of the following arguments can be applied
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if parse_arg_remove_boolean(sys.argv, "--nightly_build"):
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package_name = "ort-nightly"
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nightly_build = True
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wheel_name_suffix = parse_arg_remove_string(sys.argv, "--wheel_name_suffix=")
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cuda_version = None
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rocm_version = None
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is_rocm = False
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is_openvino = False
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# The following arguments are mutually exclusive
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if wheel_name_suffix == "gpu":
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# TODO: how to support multiple CUDA versions?
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cuda_version = parse_arg_remove_string(sys.argv, "--cuda_version=")
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elif parse_arg_remove_boolean(sys.argv, "--use_rocm"):
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is_rocm = True
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package_name = "onnxruntime-rocm" if not nightly_build else "ort-rocm-nightly"
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rocm_version = parse_arg_remove_string(sys.argv, "--rocm_version=")
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elif parse_arg_remove_boolean(sys.argv, "--use_openvino"):
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is_openvino = True
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package_name = "onnxruntime-openvino"
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elif parse_arg_remove_boolean(sys.argv, "--use_dnnl"):
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package_name = "onnxruntime-dnnl"
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elif parse_arg_remove_boolean(sys.argv, "--use_nuphar"):
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package_name = "onnxruntime-nuphar"
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elif parse_arg_remove_boolean(sys.argv, "--use_tvm"):
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package_name = "onnxruntime-tvm"
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elif parse_arg_remove_boolean(sys.argv, "--use_vitisai"):
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package_name = "onnxruntime-vitisai"
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elif parse_arg_remove_boolean(sys.argv, "--use_acl"):
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package_name = "onnxruntime-acl"
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elif parse_arg_remove_boolean(sys.argv, "--use_armnn"):
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package_name = "onnxruntime-armnn"
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# PEP 513 defined manylinux1_x86_64 and manylinux1_i686
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# PEP 571 defined manylinux2010_x86_64 and manylinux2010_i686
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# PEP 599 defines the following platform tags:
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# manylinux2014_x86_64
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# manylinux2014_i686
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# manylinux2014_aarch64
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# manylinux2014_armv7l
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# manylinux2014_ppc64
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# manylinux2014_ppc64le
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# manylinux2014_s390x
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manylinux_tags = [
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"manylinux1_x86_64",
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"manylinux1_i686",
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"manylinux2010_x86_64",
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"manylinux2010_i686",
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"manylinux2014_x86_64",
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"manylinux2014_i686",
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"manylinux2014_aarch64",
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"manylinux2014_armv7l",
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"manylinux2014_ppc64",
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"manylinux2014_ppc64le",
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"manylinux2014_s390x",
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"manylinux_2_27_x86_64",
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]
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is_manylinux = environ.get("AUDITWHEEL_PLAT", None) in manylinux_tags
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class build_ext(_build_ext):
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def build_extension(self, ext):
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dest_file = self.get_ext_fullpath(ext.name)
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logger.info("copying %s -> %s", ext.sources[0], dest_file)
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copyfile(ext.sources[0], dest_file)
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try:
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from wheel.bdist_wheel import bdist_wheel as _bdist_wheel
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class bdist_wheel(_bdist_wheel):
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"""Helper functions to create wheel package"""
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if is_openvino and is_manylinux:
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def get_tag(self):
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_, _, plat = _bdist_wheel.get_tag(self)
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if platform.system() == "Linux":
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# Get the right platform tag by querying the linker version
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glibc_major, glibc_minor = popen("ldd --version | head -1").read().split()[-1].split(".")
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"""# See https://github.com/mayeut/pep600_compliance/blob/master/
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pep600_compliance/tools/manylinux-policy.json"""
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if glibc_major == "2" and glibc_minor == "17":
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plat = "manylinux_2_17_x86_64.manylinux2014_x86_64"
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else: # For manylinux2014 and above, no alias is required
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plat = "manylinux_%s_%s_x86_64" % (glibc_major, glibc_minor)
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tags = next(sys_tags())
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return (tags.interpreter, tags.abi, plat)
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def finalize_options(self):
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_bdist_wheel.finalize_options(self)
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if not is_manylinux:
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self.root_is_pure = False
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def _rewrite_ld_preload(self, to_preload):
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with open("onnxruntime/capi/_ld_preload.py", "a") as f:
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if len(to_preload) > 0:
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f.write("from ctypes import CDLL, RTLD_GLOBAL\n")
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for library in to_preload:
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f.write('_{} = CDLL("{}", mode=RTLD_GLOBAL)\n'.format(library.split(".")[0], library))
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def _rewrite_ld_preload_cuda(self, to_preload):
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with open("onnxruntime/capi/_ld_preload.py", "a") as f:
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if len(to_preload) > 0:
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f.write("from ctypes import CDLL, RTLD_GLOBAL\n")
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f.write("try:\n")
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for library in to_preload:
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f.write(' _{} = CDLL("{}", mode=RTLD_GLOBAL)\n'.format(library.split(".")[0], library))
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f.write("except OSError:\n")
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f.write(" import os\n")
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f.write(' os.environ["ORT_CUDA_UNAVAILABLE"] = "1"\n')
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def _rewrite_ld_preload_tensorrt(self, to_preload):
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with open("onnxruntime/capi/_ld_preload.py", "a") as f:
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if len(to_preload) > 0:
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f.write("from ctypes import CDLL, RTLD_GLOBAL\n")
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f.write("try:\n")
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for library in to_preload:
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f.write(' _{} = CDLL("{}", mode=RTLD_GLOBAL)\n'.format(library.split(".")[0], library))
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f.write("except OSError:\n")
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f.write(" import os\n")
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f.write(' os.environ["ORT_TENSORRT_UNAVAILABLE"] = "1"\n')
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def run(self):
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if is_manylinux:
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source = "onnxruntime/capi/onnxruntime_pybind11_state.so"
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dest = "onnxruntime/capi/onnxruntime_pybind11_state_manylinux1.so"
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logger.info("copying %s -> %s", source, dest)
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copyfile(source, dest)
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result = subprocess.run(
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["patchelf", "--print-needed", dest], check=True, stdout=subprocess.PIPE, universal_newlines=True
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)
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dependencies = [
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"librccl.so",
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"libamdhip64.so",
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"librocblas.so",
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"libMIOpen.so",
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"libhsa-runtime64.so",
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"libhsakmt.so",
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]
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to_preload = []
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to_preload_cuda = []
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to_preload_tensorrt = []
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cuda_dependencies = []
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args = ["patchelf", "--debug"]
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for line in result.stdout.split("\n"):
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for dependency in dependencies:
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if dependency in line:
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to_preload.append(line)
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args.extend(["--remove-needed", line])
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args.append(dest)
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if len(args) > 3:
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subprocess.run(args, check=True, stdout=subprocess.PIPE)
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dest = "onnxruntime/capi/libonnxruntime_providers_" + ("rocm.so" if is_rocm else "cuda.so")
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if path.isfile(dest):
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result = subprocess.run(
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["patchelf", "--print-needed", dest],
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check=True,
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stdout=subprocess.PIPE,
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universal_newlines=True,
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)
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cuda_dependencies = [
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"libcublas.so",
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"libcublasLt.so",
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"libcudnn.so",
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"libcudart.so",
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"libcurand.so",
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"libcufft.so",
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"libnvToolsExt.so",
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"libcupti.so",
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]
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rocm_dependencies = [
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"librccl.so",
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"libamdhip64.so",
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"librocblas.so",
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"libMIOpen.so",
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"libhsa-runtime64.so",
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"libhsakmt.so",
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]
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args = ["patchelf", "--debug"]
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for line in result.stdout.split("\n"):
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for dependency in cuda_dependencies + rocm_dependencies:
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if dependency in line:
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if dependency not in to_preload:
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to_preload_cuda.append(line)
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args.extend(["--remove-needed", line])
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args.append(dest)
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if len(args) > 3:
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subprocess.run(args, check=True, stdout=subprocess.PIPE)
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dest = "onnxruntime/capi/libonnxruntime_providers_" + ("migraphx.so" if is_rocm else "tensorrt.so")
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if path.isfile(dest):
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result = subprocess.run(
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["patchelf", "--print-needed", dest],
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check=True,
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stdout=subprocess.PIPE,
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universal_newlines=True,
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)
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tensorrt_dependencies = ["libnvinfer.so", "libnvinfer_plugin.so", "libnvonnxparser.so"]
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args = ["patchelf", "--debug"]
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for line in result.stdout.split("\n"):
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for dependency in cuda_dependencies + tensorrt_dependencies:
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if dependency in line:
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if dependency not in (to_preload + to_preload_cuda):
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to_preload_tensorrt.append(line)
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args.extend(["--remove-needed", line])
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args.append(dest)
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if len(args) > 3:
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subprocess.run(args, check=True, stdout=subprocess.PIPE)
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dest = "onnxruntime/capi/libonnxruntime_providers_openvino.so"
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if path.isfile(dest):
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subprocess.run(
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["patchelf", "--set-rpath", "$ORIGIN", dest, "--force-rpath"],
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check=True,
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stdout=subprocess.PIPE,
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universal_newlines=True,
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)
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self._rewrite_ld_preload(to_preload)
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self._rewrite_ld_preload_cuda(to_preload_cuda)
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self._rewrite_ld_preload_tensorrt(to_preload_tensorrt)
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_bdist_wheel.run(self)
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if is_manylinux and not disable_auditwheel_repair and not is_openvino:
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assert self.dist_dir is not None
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file = glob(path.join(self.dist_dir, "*linux*.whl"))[0]
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logger.info("repairing %s for manylinux1", file)
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try:
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subprocess.run(
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["auditwheel", "repair", "-w", self.dist_dir, file], check=True, stdout=subprocess.PIPE
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)
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finally:
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logger.info("removing %s", file)
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remove(file)
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except ImportError as error:
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print("Error importing dependencies:")
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print(error)
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bdist_wheel = None
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class InstallCommand(InstallCommandBase):
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def finalize_options(self):
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ret = InstallCommandBase.finalize_options(self)
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self.install_lib = self.install_platlib
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return ret
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providers_cuda_or_rocm = "libonnxruntime_providers_" + ("rocm.so" if is_rocm else "cuda.so")
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providers_tensorrt_or_migraphx = "libonnxruntime_providers_" + ("migraphx.so" if is_rocm else "tensorrt.so")
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providers_openvino = "libonnxruntime_providers_openvino.so"
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# Additional binaries
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dl_libs = []
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libs = []
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if platform.system() == "Linux":
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libs = [
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"onnxruntime_pybind11_state.so",
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"libdnnl.so.2",
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"libmklml_intel.so",
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"libmklml_gnu.so",
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"libiomp5.so",
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"mimalloc.so",
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]
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dl_libs = ["libonnxruntime_providers_shared.so"]
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dl_libs.append(providers_cuda_or_rocm)
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dl_libs.append(providers_tensorrt_or_migraphx)
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# DNNL, TensorRT & OpenVINO EPs are built as shared libs
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libs.extend(["libonnxruntime_providers_shared.so"])
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libs.extend(["libonnxruntime_providers_dnnl.so"])
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libs.extend(["libonnxruntime_providers_openvino.so"])
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libs.append(providers_cuda_or_rocm)
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libs.append(providers_tensorrt_or_migraphx)
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# Nuphar Libs
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libs.extend(["libtvm.so.0.5.1"])
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if nightly_build:
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libs.extend(["libonnxruntime_pywrapper.so"])
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elif platform.system() == "Darwin":
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libs = ["onnxruntime_pybind11_state.so", "libdnnl.2.dylib", "mimalloc.so"] # TODO add libmklml and libiomp5 later.
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# DNNL & TensorRT EPs are built as shared libs
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libs.extend(["libonnxruntime_providers_shared.dylib"])
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libs.extend(["libonnxruntime_providers_dnnl.dylib"])
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libs.extend(["libonnxruntime_providers_tensorrt.dylib"])
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libs.extend(["libonnxruntime_providers_cuda.dylib"])
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if nightly_build:
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libs.extend(["libonnxruntime_pywrapper.dylib"])
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else:
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libs = ["onnxruntime_pybind11_state.pyd", "dnnl.dll", "mklml.dll", "libiomp5md.dll"]
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# DNNL, TensorRT & OpenVINO EPs are built as shared libs
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libs.extend(["onnxruntime_providers_shared.dll"])
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libs.extend(["onnxruntime_providers_dnnl.dll"])
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libs.extend(["onnxruntime_providers_tensorrt.dll"])
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libs.extend(["onnxruntime_providers_openvino.dll"])
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libs.extend(["onnxruntime_providers_cuda.dll"])
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# DirectML Libs
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libs.extend(["DirectML.dll"])
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# Nuphar Libs
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libs.extend(["tvm.dll"])
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if nightly_build:
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libs.extend(["onnxruntime_pywrapper.dll"])
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if is_manylinux:
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if is_openvino:
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ov_libs = [
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"libopenvino_intel_cpu_plugin.so",
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"libopenvino_intel_gpu_plugin.so",
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"libopenvino_intel_myriad_plugin.so",
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"libopenvino_auto_plugin.so",
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"libopenvino_hetero_plugin.so",
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"libtbb.so.2",
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"libtbbmalloc.so.2",
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"libopenvino.so",
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"libopenvino_c.so",
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"libopenvino_onnx_frontend.so",
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]
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for x in ov_libs:
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y = "onnxruntime/capi/" + x
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subprocess.run(
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["patchelf", "--set-rpath", "$ORIGIN", y, "--force-rpath"],
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check=True,
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stdout=subprocess.PIPE,
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universal_newlines=True,
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)
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dl_libs.append(x)
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dl_libs.append(providers_openvino)
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dl_libs.append("plugins.xml")
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dl_libs.append("usb-ma2x8x.mvcmd")
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data = ["capi/libonnxruntime_pywrapper.so"] if nightly_build else []
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data += [path.join("capi", x) for x in dl_libs if path.isfile(path.join("onnxruntime", "capi", x))]
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ext_modules = [
|
|
Extension(
|
|
"onnxruntime.capi.onnxruntime_pybind11_state",
|
|
["onnxruntime/capi/onnxruntime_pybind11_state_manylinux1.so"],
|
|
),
|
|
]
|
|
else:
|
|
data = [path.join("capi", x) for x in libs if path.isfile(path.join("onnxruntime", "capi", x))]
|
|
ext_modules = []
|
|
|
|
# Additional examples
|
|
examples_names = ["mul_1.onnx", "logreg_iris.onnx", "sigmoid.onnx"]
|
|
examples = [path.join("datasets", x) for x in examples_names]
|
|
|
|
# Extra files such as EULA and ThirdPartyNotices
|
|
extra = ["LICENSE", "ThirdPartyNotices.txt", "Privacy.md"]
|
|
|
|
# Description
|
|
readme_file = "docs/python/ReadMeOV.rst" if is_openvino else "docs/python/README.rst"
|
|
README = path.join(getcwd(), readme_file)
|
|
if not path.exists(README):
|
|
this = path.dirname(__file__)
|
|
README = path.join(this, readme_file)
|
|
|
|
if not path.exists(README):
|
|
raise FileNotFoundError("Unable to find 'README.rst'")
|
|
with open(README) as f:
|
|
long_description = f.read()
|
|
|
|
# Include files in onnxruntime/external if --enable_external_custom_op_schemas build.sh command
|
|
# line option is specified.
|
|
# If the options is not specified this following condition fails as onnxruntime/external folder is not created in the
|
|
# build flow under the build binary directory.
|
|
if path.isdir(path.join("onnxruntime", "external")):
|
|
# Gather all files under onnxruntime/external directory.
|
|
extra.extend(
|
|
list(
|
|
str(Path(*Path(x).parts[1:]))
|
|
for x in list(iglob(path.join(path.join("onnxruntime", "external"), "**/*.*"), recursive=True))
|
|
)
|
|
)
|
|
|
|
packages = [
|
|
"onnxruntime",
|
|
"onnxruntime.backend",
|
|
"onnxruntime.capi",
|
|
"onnxruntime.capi.training",
|
|
"onnxruntime.datasets",
|
|
"onnxruntime.tools",
|
|
"onnxruntime.tools.mobile_helpers",
|
|
"onnxruntime.tools.ort_format_model",
|
|
"onnxruntime.tools.ort_format_model.ort_flatbuffers_py",
|
|
"onnxruntime.tools.ort_format_model.ort_flatbuffers_py.fbs",
|
|
"onnxruntime.tools.qdq_helpers",
|
|
"onnxruntime.quantization",
|
|
"onnxruntime.quantization.operators",
|
|
"onnxruntime.quantization.CalTableFlatBuffers",
|
|
"onnxruntime.transformers",
|
|
"onnxruntime.transformers.models.gpt2",
|
|
"onnxruntime.transformers.models.longformer",
|
|
"onnxruntime.transformers.models.t5",
|
|
]
|
|
|
|
package_data = {"onnxruntime.tools.mobile_helpers": ["*.md", "*.config"]}
|
|
data_files = []
|
|
|
|
requirements_file = "requirements.txt"
|
|
|
|
local_version = None
|
|
enable_training = parse_arg_remove_boolean(sys.argv, "--enable_training")
|
|
disable_auditwheel_repair = parse_arg_remove_boolean(sys.argv, "--disable_auditwheel_repair")
|
|
default_training_package_device = parse_arg_remove_boolean(sys.argv, "--default_training_package_device")
|
|
|
|
classifiers = [
|
|
"Development Status :: 5 - Production/Stable",
|
|
"Intended Audience :: Developers",
|
|
"License :: OSI Approved :: MIT License",
|
|
"Operating System :: POSIX :: Linux",
|
|
"Topic :: Scientific/Engineering",
|
|
"Topic :: Scientific/Engineering :: Mathematics",
|
|
"Topic :: Scientific/Engineering :: Artificial Intelligence",
|
|
"Topic :: Software Development",
|
|
"Topic :: Software Development :: Libraries",
|
|
"Topic :: Software Development :: Libraries :: Python Modules",
|
|
"Programming Language :: Python",
|
|
"Programming Language :: Python :: 3 :: Only",
|
|
"Programming Language :: Python :: 3.7",
|
|
"Programming Language :: Python :: 3.8",
|
|
"Programming Language :: Python :: 3.9",
|
|
"Programming Language :: Python :: 3.10",
|
|
]
|
|
|
|
if not enable_training:
|
|
classifiers.extend(["Operating System :: Microsoft :: Windows", "Operating System :: MacOS"])
|
|
|
|
if enable_training:
|
|
packages.extend(
|
|
[
|
|
"onnxruntime.training",
|
|
"onnxruntime.training.amp",
|
|
"onnxruntime.training.experimental",
|
|
"onnxruntime.training.experimental.gradient_graph",
|
|
"onnxruntime.training.optim",
|
|
"onnxruntime.training.ortmodule",
|
|
"onnxruntime.training.ortmodule.experimental",
|
|
"onnxruntime.training.ortmodule.experimental.json_config",
|
|
"onnxruntime.training.ortmodule.experimental.hierarchical_ortmodule",
|
|
"onnxruntime.training.ortmodule.torch_cpp_extensions",
|
|
"onnxruntime.training.ortmodule.torch_cpp_extensions.cpu.aten_op_executor",
|
|
"onnxruntime.training.ortmodule.torch_cpp_extensions.cpu.torch_interop_utils",
|
|
"onnxruntime.training.ortmodule.torch_cpp_extensions.cuda.torch_gpu_allocator",
|
|
"onnxruntime.training.ortmodule.torch_cpp_extensions.cuda.fused_ops",
|
|
"onnxruntime.training.utils.data",
|
|
]
|
|
)
|
|
package_data["onnxruntime.training.ortmodule.torch_cpp_extensions.cpu.aten_op_executor"] = ["*.cc"]
|
|
package_data["onnxruntime.training.ortmodule.torch_cpp_extensions.cpu.torch_interop_utils"] = ["*.cc"]
|
|
package_data["onnxruntime.training.ortmodule.torch_cpp_extensions.cuda.torch_gpu_allocator"] = ["*.cc"]
|
|
package_data["onnxruntime.training.ortmodule.torch_cpp_extensions.cuda.fused_ops"] = [
|
|
"*.cpp",
|
|
"*.cu",
|
|
"*.cuh",
|
|
"*.h",
|
|
]
|
|
requirements_file = "requirements-training.txt"
|
|
# with training, we want to follow this naming convention:
|
|
# stable:
|
|
# onnxruntime-training-1.7.0+cu111-cp36-cp36m-linux_x86_64.whl
|
|
# nightly:
|
|
# onnxruntime-training-1.7.0.dev20210408+cu111-cp36-cp36m-linux_x86_64.whl
|
|
# this is needed immediately by pytorch/ort so that the user is able to
|
|
# install an onnxruntime training package with matching torch cuda version.
|
|
if not is_openvino:
|
|
# To support the package consisting of both openvino and training modules part of it
|
|
package_name = "onnxruntime-training"
|
|
|
|
# we want put default training packages to pypi. pypi does not accept package with a local version.
|
|
if not default_training_package_device or nightly_build:
|
|
if cuda_version:
|
|
# removing '.' to make Cuda version number in the same form as Pytorch.
|
|
local_version = "+cu" + cuda_version.replace(".", "")
|
|
elif rocm_version:
|
|
# removing '.' to make Rocm version number in the same form as Pytorch.
|
|
local_version = "+rocm" + rocm_version.replace(".", "")
|
|
else:
|
|
# cpu version for documentation
|
|
local_version = "+cpu"
|
|
|
|
if package_name == "onnxruntime-nuphar":
|
|
packages += ["onnxruntime.nuphar"]
|
|
extra += [path.join("nuphar", "NUPHAR_CACHE_VERSION")]
|
|
|
|
if package_name == "onnxruntime-tvm":
|
|
packages += ["onnxruntime.providers.tvm"]
|
|
|
|
package_data["onnxruntime"] = data + examples + extra
|
|
|
|
version_number = ""
|
|
with open("VERSION_NUMBER") as f:
|
|
version_number = f.readline().strip()
|
|
if nightly_build:
|
|
# https://docs.microsoft.com/en-us/azure/devops/pipelines/build/variables
|
|
build_suffix = environ.get("BUILD_BUILDNUMBER")
|
|
if build_suffix is None:
|
|
# The following line is only for local testing
|
|
build_suffix = str(datetime.datetime.now().date().strftime("%Y%m%d"))
|
|
else:
|
|
build_suffix = build_suffix.replace(".", "")
|
|
|
|
if len(build_suffix) > 8 and len(build_suffix) < 12:
|
|
# we want to format the build_suffix to avoid (the 12th run on 20210630 vs the first run on 20210701):
|
|
# 2021063012 > 202107011
|
|
# in above 2021063012 is treated as the latest which is incorrect.
|
|
# we want to convert the format to:
|
|
# 20210630012 < 20210701001
|
|
# where the first 8 digits are date. the last 3 digits are run count.
|
|
# as long as there are less than 1000 runs per day, we will not have the problem.
|
|
# to test this code locally, run:
|
|
# NIGHTLY_BUILD=1 BUILD_BUILDNUMBER=202107011 python tools/ci_build/build.py --config RelWithDebInfo \
|
|
# --enable_training --use_cuda --cuda_home /usr/local/cuda --cudnn_home /usr/lib/x86_64-linux-gnu/ \
|
|
# --nccl_home /usr/lib/x86_64-linux-gnu/ --build_dir build/Linux --build --build_wheel --skip_tests \
|
|
# --cuda_version 11.1
|
|
def check_date_format(date_str):
|
|
try:
|
|
datetime.datetime.strptime(date_str, "%Y%m%d")
|
|
return True
|
|
except: # noqa
|
|
return False
|
|
|
|
def reformat_run_count(count_str):
|
|
try:
|
|
count = int(count_str)
|
|
if count >= 0 and count < 1000:
|
|
return "{:03}".format(count)
|
|
elif count >= 1000:
|
|
raise RuntimeError(f"Too many builds for the same day: {count}")
|
|
return ""
|
|
except: # noqa
|
|
return ""
|
|
|
|
build_suffix_is_date_format = check_date_format(build_suffix[:8])
|
|
build_suffix_run_count = reformat_run_count(build_suffix[8:])
|
|
if build_suffix_is_date_format and build_suffix_run_count:
|
|
build_suffix = build_suffix[:8] + build_suffix_run_count
|
|
elif len(build_suffix) >= 12:
|
|
raise RuntimeError(f'Incorrect build suffix: "{build_suffix}"')
|
|
|
|
if enable_training:
|
|
from packaging import version
|
|
from packaging.version import Version
|
|
|
|
# with training package, we need to bump up version minor number so that
|
|
# nightly releases take precedence over the latest release when --pre is used during pip install.
|
|
# eventually this shall be the behavior of all onnxruntime releases.
|
|
# alternatively we may bump up version number right after every release.
|
|
ort_version = version.parse(version_number)
|
|
if isinstance(ort_version, Version):
|
|
# TODO: this is the last time we have to do this!!!
|
|
# We shall bump up release number right after release cut.
|
|
if ort_version.major == 1 and ort_version.minor == 8 and ort_version.micro == 0:
|
|
version_number = "{major}.{minor}.{macro}".format(
|
|
major=ort_version.major, minor=ort_version.minor + 1, macro=ort_version.micro
|
|
)
|
|
|
|
version_number = version_number + ".dev" + build_suffix
|
|
|
|
if local_version:
|
|
version_number = version_number + local_version
|
|
|
|
if wheel_name_suffix:
|
|
if not (enable_training and wheel_name_suffix == "gpu"):
|
|
# for training packages, local version is used to indicate device types
|
|
package_name = "{}-{}".format(package_name, wheel_name_suffix)
|
|
|
|
cmd_classes = {}
|
|
if bdist_wheel is not None:
|
|
cmd_classes["bdist_wheel"] = bdist_wheel
|
|
cmd_classes["install"] = InstallCommand
|
|
cmd_classes["build_ext"] = build_ext
|
|
|
|
requirements_path = path.join(getcwd(), requirements_file)
|
|
if not path.exists(requirements_path):
|
|
this = path.dirname(__file__)
|
|
requirements_path = path.join(this, requirements_file)
|
|
if not path.exists(requirements_path):
|
|
raise FileNotFoundError("Unable to find " + requirements_file)
|
|
with open(requirements_path) as f:
|
|
install_requires = f.read().splitlines()
|
|
|
|
|
|
if enable_training:
|
|
|
|
def save_build_and_package_info(package_name, version_number, cuda_version, rocm_version):
|
|
sys.path.append(path.join(path.dirname(__file__), "onnxruntime", "python"))
|
|
from onnxruntime_collect_build_info import find_cudart_versions
|
|
|
|
version_path = path.join("onnxruntime", "capi", "build_and_package_info.py")
|
|
with open(version_path, "w") as f:
|
|
f.write("package_name = '{}'\n".format(package_name))
|
|
f.write("__version__ = '{}'\n".format(version_number))
|
|
|
|
if cuda_version:
|
|
f.write("cuda_version = '{}'\n".format(cuda_version))
|
|
|
|
# cudart_versions are integers
|
|
cudart_versions = find_cudart_versions(build_env=True)
|
|
if cudart_versions and len(cudart_versions) == 1:
|
|
f.write("cudart_version = {}\n".format(cudart_versions[0]))
|
|
else:
|
|
print(
|
|
"Error getting cudart version. ",
|
|
"did not find any cudart library"
|
|
if not cudart_versions or len(cudart_versions) == 0
|
|
else "found multiple cudart libraries",
|
|
)
|
|
elif rocm_version:
|
|
f.write("rocm_version = '{}'\n".format(rocm_version))
|
|
|
|
save_build_and_package_info(package_name, version_number, cuda_version, rocm_version)
|
|
|
|
# Setup
|
|
setup(
|
|
name=package_name,
|
|
version=version_number,
|
|
description="ONNX Runtime is a runtime accelerator for Machine Learning models",
|
|
long_description=long_description,
|
|
author="Microsoft Corporation",
|
|
author_email="onnxruntime@microsoft.com",
|
|
cmdclass=cmd_classes,
|
|
license="MIT License",
|
|
packages=packages,
|
|
ext_modules=ext_modules,
|
|
package_data=package_data,
|
|
url="https://onnxruntime.ai",
|
|
download_url="https://github.com/microsoft/onnxruntime/tags",
|
|
data_files=data_files,
|
|
install_requires=install_requires,
|
|
keywords="onnx machine learning",
|
|
entry_points={
|
|
"console_scripts": [
|
|
"onnxruntime_test = onnxruntime.tools.onnxruntime_test:main",
|
|
]
|
|
},
|
|
classifiers=classifiers,
|
|
)
|