# Copyright (c) OpenMMLab. All rights reserved. import os import platform import warnings import cv2 import torch.multiprocessing as mp def setup_multi_processes(cfg): """Setup multi-processing environment variables.""" # set multi-process start method as `fork` to speed up the training if platform.system() != 'Windows': mp_start_method = cfg.get('mp_start_method', 'fork') current_method = mp.get_start_method(allow_none=True) if current_method is not None and current_method != mp_start_method: warnings.warn( f'Multi-processing start method `{mp_start_method}` is ' f'different from the previous setting `{current_method}`.' f'It will be force set to `{mp_start_method}`. You can change ' f'this behavior by changing `mp_start_method` in your config.') mp.set_start_method(mp_start_method, force=True) # disable opencv multithreading to avoid system being overloaded opencv_num_threads = cfg.get('opencv_num_threads', 0) cv2.setNumThreads(opencv_num_threads) # setup OMP threads # This code is referred from https://github.com/pytorch/pytorch/blob/master/torch/distributed/run.py # noqa if 'OMP_NUM_THREADS' not in os.environ and cfg.data.workers_per_gpu > 1: omp_num_threads = 1 warnings.warn( f'Setting OMP_NUM_THREADS environment variable for each process ' f'to be {omp_num_threads} in default, to avoid your system being ' f'overloaded, please further tune the variable for optimal ' f'performance in your application as needed.') os.environ['OMP_NUM_THREADS'] = str(omp_num_threads) # setup MKL threads if 'MKL_NUM_THREADS' not in os.environ and cfg.data.workers_per_gpu > 1: mkl_num_threads = 1 warnings.warn( f'Setting MKL_NUM_THREADS environment variable for each process ' f'to be {mkl_num_threads} in default, to avoid your system being ' f'overloaded, please further tune the variable for optimal ' f'performance in your application as needed.') os.environ['MKL_NUM_THREADS'] = str(mkl_num_threads) # def register_all_modules(init_default_scope: bool = True) -> None: # """Register all modules in mmpose into the registries. # Args: # init_default_scope (bool): Whether initialize the mmpose default scope. # When `init_default_scope=True`, the global default scope will be # set to `mmpose`, and all registries will build modules from mmpose's # registry node. To understand more about the registry, please refer # to https://github.com/open-mmlab/mmengine/blob/main/docs/en/tutorials/registry.md # Defaults to True. # """ # noqa # import mmpose.models # noqa: F401,F403 # if init_default_scope: # never_created = DefaultScope.get_current_instance() is None \ # or not DefaultScope.check_instance_created('mmpose') # if never_created: # DefaultScope.get_instance('mmpose', scope_name='mmpose') # return # current_scope = DefaultScope.get_current_instance() # if current_scope.scope_name != 'mmpose': # warnings.warn('The current default scope ' # f'"{current_scope.scope_name}" is not "mmpose", ' # '`register_all_modules` will force the current' # 'default scope to be "mmpose". If this is not ' # 'expected, please set `init_default_scope=False`.') # # avoid name conflict # new_instance_name = f'mmpose-{datetime.datetime.now()}' # DefaultScope.get_instance(new_instance_name, scope_name='mmpose')