""" __init__.py Enables dynamic loading of datasets, depending on an argument. """ import importlib import torch.utils.data from data.base_dataset import BaseDataset def find_dataset_using_name(dataset_name): """Import the module "data/[dataset_name]_dataset.py". In the file, the class called DatasetNameDataset() will be instantiated. It has to be a subclass of BaseDataset, and it is case-insensitive. """ dataset_filename = "data." + dataset_name + "_dataset" datasetlib = importlib.import_module(dataset_filename) dataset = None target_dataset_name = dataset_name.replace('_', '') + 'dataset' for name, cls in datasetlib.__dict__.items(): if name.lower() == target_dataset_name.lower() \ and issubclass(cls, BaseDataset): dataset = cls if dataset is None: raise NotImplementedError("In %s.py, there should be a subclass of BaseDataset with class name that matches %s in lowercase." % (dataset_filename, target_dataset_name)) return dataset def create_dataset(opt): """Create a dataset given the option. This function wraps the class CustomDatasetDataLoader. This is the main interface between this package and 'train.py'/'test.py' Example: >>> from data import create_dataset >>> dataset = create_dataset(opt) """ data_loader = CustomDatasetDataLoader(opt) dataset = data_loader.load_data() return dataset def get_dataset_options(dataset_name): dataset_filename = "data." + dataset_name + "_dataset" datalib = importlib.import_module(dataset_filename) for name, cls in datalib.__dict__.items(): if name.lower() == 'datasetoptions': return cls return None class CustomDatasetDataLoader(): """Wrapper class of Dataset class that performs multi-threaded data loading""" def __init__(self, opt): """Initialize this class Step 1: create a dataset instance given the name [dataset_mode] Step 2: create a multi-threaded data loader. """ self.opt = opt dataset_class = find_dataset_using_name(opt.dataset_mode) self.dataset = dataset_class(opt) self.dataloader = torch.utils.data.DataLoader( self.dataset, batch_size=opt.batch_size, shuffle=not opt.serial_batches, num_workers=int(opt.num_threads)) def load_data(self): return self def __len__(self): """Return the number of data in the dataset""" return min(len(self.dataset), self.opt.max_dataset_size) def __iter__(self): """Return a batch of data""" for i, data in enumerate(self.dataloader): if i * self.opt.batch_size >= self.opt.max_dataset_size: break yield data