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Source code for pytorch_lightning.core.datamodule

# Copyright The PyTorch Lightning team.
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# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
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#     http://www.apache.org/licenses/LICENSE-2.0
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# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
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"""LightningDataModule for loading DataLoaders with ease."""
from argparse import ArgumentParser, Namespace
from typing import Any, Dict, List, Mapping, Optional, Sequence, Tuple, Union

from torch.utils.data import DataLoader, Dataset, IterableDataset

from pytorch_lightning.core.hooks import CheckpointHooks, DataHooks
from pytorch_lightning.core.mixins import HyperparametersMixin
from pytorch_lightning.utilities import rank_zero_deprecation
from pytorch_lightning.utilities.argparse import add_argparse_args, from_argparse_args, get_init_arguments_and_types


[docs]class LightningDataModule(CheckpointHooks, DataHooks, HyperparametersMixin): """A DataModule standardizes the training, val, test splits, data preparation and transforms. The main advantage is consistent data splits, data preparation and transforms across models. Example:: class MyDataModule(LightningDataModule): def __init__(self): super().__init__() def prepare_data(self): # download, split, etc... # only called on 1 GPU/TPU in distributed def setup(self, stage): # make assignments here (val/train/test split) # called on every process in DDP def train_dataloader(self): train_split = Dataset(...) return DataLoader(train_split) def val_dataloader(self): val_split = Dataset(...) return DataLoader(val_split) def test_dataloader(self): test_split = Dataset(...) return DataLoader(test_split) def teardown(self): # clean up after fit or test # called on every process in DDP """ name: str = ... def __init__(self, train_transforms=None, val_transforms=None, test_transforms=None, dims=None): super().__init__() if train_transforms is not None: rank_zero_deprecation( "DataModule property `train_transforms` was deprecated in v1.5 and will be removed in v1.7." ) if val_transforms is not None: rank_zero_deprecation( "DataModule property `val_transforms` was deprecated in v1.5 and will be removed in v1.7." ) if test_transforms is not None: rank_zero_deprecation( "DataModule property `test_transforms` was deprecated in v1.5 and will be removed in v1.7." ) if dims is not None: rank_zero_deprecation("DataModule property `dims` was deprecated in v1.5 and will be removed in v1.7.") self._train_transforms = train_transforms self._val_transforms = val_transforms self._test_transforms = test_transforms self._dims = dims if dims is not None else () # Pointer to the trainer object self.trainer = None @property def train_transforms(self): """Optional transforms (or collection of transforms) you can apply to train dataset. .. deprecated:: v1.5 Will be removed in v1.7.0. """ rank_zero_deprecation( "DataModule property `train_transforms` was deprecated in v1.5 and will be removed in v1.7." ) return self._train_transforms @train_transforms.setter def train_transforms(self, t): rank_zero_deprecation( "DataModule property `train_transforms` was deprecated in v1.5 and will be removed in v1.7." ) self._train_transforms = t @property def val_transforms(self): """Optional transforms (or collection of transforms) you can apply to validation dataset. .. deprecated:: v1.5 Will be removed in v1.7.0. """ rank_zero_deprecation( "DataModule property `val_transforms` was deprecated in v1.5 and will be removed in v1.7." ) return self._val_transforms @val_transforms.setter def val_transforms(self, t): rank_zero_deprecation( "DataModule property `val_transforms` was deprecated in v1.5 and will be removed in v1.7." ) self._val_transforms = t @property def test_transforms(self): """Optional transforms (or collection of transforms) you can apply to test dataset. .. deprecated:: v1.5 Will be removed in v1.7.0. """ rank_zero_deprecation( "DataModule property `test_transforms` was deprecated in v1.5 and will be removed in v1.7." ) return self._test_transforms @test_transforms.setter def test_transforms(self, t): rank_zero_deprecation( "DataModule property `test_transforms` was deprecated in v1.5 and will be removed in v1.7." ) self._test_transforms = t @property def dims(self): """A tuple describing the shape of your data. Extra functionality exposed in ``size``. .. deprecated:: v1.5 Will be removed in v1.7.0. """ rank_zero_deprecation("DataModule property `dims` was deprecated in v1.5 and will be removed in v1.7.") return self._dims @dims.setter def dims(self, d): rank_zero_deprecation("DataModule property `dims` was deprecated in v1.5 and will be removed in v1.7.") self._dims = d
[docs] def size(self, dim=None) -> Union[Tuple, List[Tuple]]: """Return the dimension of each input either as a tuple or list of tuples. You can index this just as you would with a torch tensor. .. deprecated:: v1.5 Will be removed in v1.7.0. """ rank_zero_deprecation("DataModule property `size` was deprecated in v1.5 and will be removed in v1.7.") if dim is not None: return self.dims[dim] return self.dims
[docs] @classmethod def add_argparse_args(cls, parent_parser: ArgumentParser, **kwargs) -> ArgumentParser: """Extends existing argparse by default `LightningDataModule` attributes.""" return add_argparse_args(cls, parent_parser, **kwargs)
[docs] @classmethod def from_argparse_args(cls, args: Union[Namespace, ArgumentParser], **kwargs): """Create an instance from CLI arguments. Args: args: The parser or namespace to take arguments from. Only known arguments will be parsed and passed to the :class:`~pytorch_lightning.core.datamodule.LightningDataModule`. **kwargs: Additional keyword arguments that may override ones in the parser or namespace. These must be valid DataModule arguments. Example:: parser = ArgumentParser(add_help=False) parser = LightningDataModule.add_argparse_args(parser) module = LightningDataModule.from_argparse_args(args) """ return from_argparse_args(cls, args, **kwargs)
[docs] @classmethod def get_init_arguments_and_types(cls) -> List[Tuple[str, Tuple, Any]]: r"""Scans the DataModule signature and returns argument names, types and default values. Returns: List with tuples of 3 values: (argument name, set with argument types, argument default value). """ return get_init_arguments_and_types(cls)
[docs] @classmethod def from_datasets( cls, train_dataset: Optional[Union[Dataset, Sequence[Dataset], Mapping[str, Dataset]]] = None, val_dataset: Optional[Union[Dataset, Sequence[Dataset]]] = None, test_dataset: Optional[Union[Dataset, Sequence[Dataset]]] = None, batch_size: int = 1, num_workers: int = 0, ): r""" Create an instance from torch.utils.data.Dataset. Args: train_dataset: (optional) Dataset to be used for train_dataloader() val_dataset: (optional) Dataset or list of Dataset to be used for val_dataloader() test_dataset: (optional) Dataset or list of Dataset to be used for test_dataloader() batch_size: Batch size to use for each dataloader. Default is 1. num_workers: Number of subprocesses to use for data loading. 0 means that the data will be loaded in the main process. Number of CPUs available. """ def dataloader(ds: Dataset, shuffle: bool = False) -> DataLoader: shuffle &= not isinstance(ds, IterableDataset) return DataLoader(ds, batch_size=batch_size, shuffle=shuffle, num_workers=num_workers, pin_memory=True) def train_dataloader(): if isinstance(train_dataset, Mapping): return {key: dataloader(ds, shuffle=True) for key, ds in train_dataset.items()} if isinstance(train_dataset, Sequence): return [dataloader(ds, shuffle=True) for ds in train_dataset] return dataloader(train_dataset, shuffle=True) def val_dataloader(): if isinstance(val_dataset, Sequence): return [dataloader(ds) for ds in val_dataset] return dataloader(val_dataset) def test_dataloader(): if isinstance(test_dataset, Sequence): return [dataloader(ds) for ds in test_dataset] return dataloader(test_dataset) datamodule = cls() if train_dataset is not None: datamodule.train_dataloader = train_dataloader if val_dataset is not None: datamodule.val_dataloader = val_dataloader if test_dataset is not None: datamodule.test_dataloader = test_dataloader return datamodule
[docs] def state_dict(self) -> Dict[str, Any]: """Called when saving a checkpoint, implement to generate and save datamodule state. Returns: A dictionary containing datamodule state. """ return {}
[docs] def load_state_dict(self, state_dict: Dict[str, Any]) -> None: """Called when loading a checkpoint, implement to reload datamodule state given datamodule state_dict. Args: state_dict: the datamodule state returned by ``state_dict``. """ pass

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