# Copyright (c) OpenMMLab. All rights reserved. import platform import random import warnings from copy import deepcopy from functools import partial import numpy as np import torch from mmcv.parallel import collate from mmcv.runner import get_dist_info from mmcv.utils import TORCH_VERSION, Registry, build_from_cfg, digit_version from torch.utils.data import DataLoader from .samplers import DistributedSampler if platform.system() != 'Windows': # https://github.com/pytorch/pytorch/issues/973 import resource rlimit = resource.getrlimit(resource.RLIMIT_NOFILE) base_soft_limit = rlimit[0] hard_limit = rlimit[1] soft_limit = min(max(4096, base_soft_limit), hard_limit) resource.setrlimit(resource.RLIMIT_NOFILE, (soft_limit, hard_limit)) DATASETS = Registry('dataset') PIPELINES = Registry('pipeline') def build_dataset(cfg, default_args=None): """Build dataset. Args: cfg (dict): Config for the dataset. default_args (dict | None, optional): Default arguments. Defaults to None. Returns: Object: Dataset for sampling data batch. """ from .dataset_wrappers import RepeatDataset if isinstance(cfg, (list, tuple)): raise NotImplementedError('Currently, we do NOT support ConcatDataset') # dataset = ConcatDataset( # [build_dataset(c, default_args) for c in cfg]) if cfg['type'] == 'RepeatDataset': dataset = RepeatDataset( build_dataset(cfg['dataset'], default_args), cfg['times']) # add support for using datasets from `MMClassification` elif cfg['type'].startswith('mmcls.'): try: from mmcls.datasets import build_dataset as build_dataset_mmcls except ImportError: raise ImportError( f'Please install mmcls to use {cfg["type"]} dataset.') _cfg = deepcopy(cfg) _cfg['type'] = _cfg['type'][6:] dataset = build_dataset_mmcls(_cfg, default_args) else: dataset = build_from_cfg(cfg, DATASETS, default_args) return dataset def build_dataloader(dataset, samples_per_gpu, workers_per_gpu, num_gpus=1, dist=True, shuffle=True, seed=None, persistent_workers=False, **kwargs): """Build PyTorch DataLoader. In distributed training, each GPU/process has a dataloader. In non-distributed training, there is only one dataloader for all GPUs. Args: dataset (Dataset): A PyTorch dataset. samples_per_gpu (int): Number of training samples on each GPU, i.e., batch size of each GPU. workers_per_gpu (int): How many subprocesses to use for data loading for each GPU. num_gpus (int): Number of GPUs. Only used in non-distributed training. dist (bool): Distributed training/test or not. Default: True. shuffle (bool): Whether to shuffle the data at every epoch. Default: True. persistent_workers (bool, optional): If True, the data loader will not shutdown the worker processes after a dataset has been consumed once. This allows to maintain the workers Dataset instances alive. The argument also has effect in PyTorch>=1.7.0. Default: False. kwargs: any keyword argument to be used to initialize DataLoader Returns: DataLoader: A PyTorch dataloader. """ rank, world_size = get_dist_info() if dist: sampler = DistributedSampler( dataset, world_size, rank, shuffle=shuffle, samples_per_gpu=samples_per_gpu, seed=seed) shuffle = False batch_size = samples_per_gpu num_workers = workers_per_gpu else: sampler = None batch_size = num_gpus * samples_per_gpu num_workers = num_gpus * workers_per_gpu init_fn = partial( worker_init_fn, num_workers=num_workers, rank=rank, seed=seed) if seed is not None else None if (digit_version(TORCH_VERSION) >= digit_version('1.7.0') and TORCH_VERSION != 'parrots'): kwargs['persistent_workers'] = persistent_workers elif persistent_workers is True: warnings.warn('persistent_workers is invalid because your pytorch ' 'version is lower than 1.7.0') data_loader = DataLoader( dataset, batch_size=batch_size, sampler=sampler, num_workers=num_workers, collate_fn=partial(collate, samples_per_gpu=samples_per_gpu), shuffle=shuffle, worker_init_fn=init_fn, **kwargs) return data_loader def worker_init_fn(worker_id, num_workers, rank, seed): # The seed of each worker equals to # num_worker * rank + worker_id + user_seed worker_seed = num_workers * rank + worker_id + seed np.random.seed(worker_seed) random.seed(worker_seed) torch.manual_seed(worker_seed)