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# Copyright (c) Facebook, Inc. and its affiliates.
import importlib
import importlib.util
import logging
import numpy as np
import os
import random
import sys
from datetime import datetime
import torch
__all__ = ["seed_all_rng"]
TORCH_VERSION = tuple(int(x) for x in torch.__version__.split(".")[:2])
"""
PyTorch version as a tuple of 2 ints. Useful for comparison.
"""
DOC_BUILDING = os.getenv("_DOC_BUILDING", False) # set in docs/conf.py
"""
Whether we're building documentation.
"""
def seed_all_rng(seed=None):
"""
Set the random seed for the RNG in torch, numpy and python.
Args:
seed (int): if None, will use a strong random seed.
"""
if seed is None:
seed = (
os.getpid()
+ int(datetime.now().strftime("%S%f"))
+ int.from_bytes(os.urandom(2), "big")
)
logger = logging.getLogger(__name__)
logger.info("Using a generated random seed {}".format(seed))
np.random.seed(seed)
torch.manual_seed(seed)
random.seed(seed)
os.environ["PYTHONHASHSEED"] = str(seed)
# from https://stackoverflow.com/questions/67631/how-to-import-a-module-given-the-full-path
def _import_file(module_name, file_path, make_importable=False):
spec = importlib.util.spec_from_file_location(module_name, file_path)
module = importlib.util.module_from_spec(spec)
spec.loader.exec_module(module)
if make_importable:
sys.modules[module_name] = module
return module
def _configure_libraries():
"""
Configurations for some libraries.
"""
# An environment option to disable `import cv2` globally,
# in case it leads to negative performance impact
disable_cv2 = int(os.environ.get("DETECTRON2_DISABLE_CV2", False))
if disable_cv2:
sys.modules["cv2"] = None
else:
# Disable opencl in opencv since its interaction with cuda often has negative effects
# This envvar is supported after OpenCV 3.4.0
os.environ["OPENCV_OPENCL_RUNTIME"] = "disabled"
try:
import cv2
if int(cv2.__version__.split(".")[0]) >= 3:
cv2.ocl.setUseOpenCL(False)
except ModuleNotFoundError:
# Other types of ImportError, if happened, should not be ignored.
# Because a failed opencv import could mess up address space
# https://github.com/skvark/opencv-python/issues/381
pass
def get_version(module, digit=2):
return tuple(map(int, module.__version__.split(".")[:digit]))
# fmt: off
assert get_version(torch) >= (1, 4), "Requires torch>=1.4"
import fvcore
assert get_version(fvcore, 3) >= (0, 1, 2), "Requires fvcore>=0.1.2"
import yaml
assert get_version(yaml) >= (5, 1), "Requires pyyaml>=5.1"
# fmt: on
_ENV_SETUP_DONE = False
def setup_environment():
"""Perform environment setup work. The default setup is a no-op, but this
function allows the user to specify a Python source file or a module in
the $DETECTRON2_ENV_MODULE environment variable, that performs
custom setup work that may be necessary to their computing environment.
"""
global _ENV_SETUP_DONE
if _ENV_SETUP_DONE:
return
_ENV_SETUP_DONE = True
_configure_libraries()
custom_module_path = os.environ.get("DETECTRON2_ENV_MODULE")
if custom_module_path:
setup_custom_environment(custom_module_path)
else:
# The default setup is a no-op
pass
def setup_custom_environment(custom_module):
"""
Load custom environment setup by importing a Python source file or a
module, and run the setup function.
"""
if custom_module.endswith(".py"):
module = _import_file("detectron2.utils.env.custom_module", custom_module)
else:
module = importlib.import_module(custom_module)
assert hasattr(module, "setup_environment") and callable(module.setup_environment), (
"Custom environment module defined in {} does not have the "
"required callable attribute 'setup_environment'."
).format(custom_module)
module.setup_environment()
def fixup_module_metadata(module_name, namespace, keys=None):
"""
Fix the __qualname__ of module members to be their exported api name, so
when they are referenced in docs, sphinx can find them. Reference:
https://github.com/python-trio/trio/blob/6754c74eacfad9cc5c92d5c24727a2f3b620624e/trio/_util.py#L216-L241
"""
if not DOC_BUILDING:
return
seen_ids = set()
def fix_one(qualname, name, obj):
# avoid infinite recursion (relevant when using
# typing.Generic, for example)
if id(obj) in seen_ids:
return
seen_ids.add(id(obj))
mod = getattr(obj, "__module__", None)
if mod is not None and (mod.startswith(module_name) or mod.startswith("fvcore.")):
obj.__module__ = module_name
# Modules, unlike everything else in Python, put fully-qualitied
# names into their __name__ attribute. We check for "." to avoid
# rewriting these.
if hasattr(obj, "__name__") and "." not in obj.__name__:
obj.__name__ = name
obj.__qualname__ = qualname
if isinstance(obj, type):
for attr_name, attr_value in obj.__dict__.items():
fix_one(objname + "." + attr_name, attr_name, attr_value)
if keys is None:
keys = namespace.keys()
for objname in keys:
if not objname.startswith("_"):
obj = namespace[objname]
fix_one(objname, objname, obj)
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