| from typing import Any, Dict, Optional, Tuple, List, Sequence |
|
|
| import torch |
| from torch.utils.data import ConcatDataset, DataLoader, Dataset, random_split |
| from lightning import LightningDataModule |
| from hydra.utils import instantiate |
|
|
|
|
| class BatchTensorConverter: |
| """Callable to convert an unprocessed (labels + strings) batch to a |
| processed (labels + tensor) batch. |
| """ |
| def __init__(self, target_keys: Optional[List] = None): |
| self.target_keys = target_keys |
| |
| def __call__(self, raw_batch: Sequence[Dict[str, object]]): |
| B = len(raw_batch) |
| |
| target_keys = self.target_keys \ |
| if self.target_keys is not None else [k for k,v in raw_batch[0].items() if torch.is_tensor(v)] |
| |
| non_array_keys = [k for k in raw_batch[0] if k not in target_keys] |
| collated_batch = dict() |
| for k in target_keys: |
| collated_batch[k] = self.collate_dense_tensors([d[k] for d in raw_batch], pad_v=0.0) |
| for k in non_array_keys: |
| collated_batch[k] = [d[k] for d in raw_batch] |
| return collated_batch |
|
|
| @staticmethod |
| def collate_dense_tensors(samples: Sequence, pad_v: float = 0.0): |
| """ |
| Takes a list of tensors with the following dimensions: |
| [(d_11, ..., d_1K), |
| (d_21, ..., d_2K), |
| ..., |
| (d_N1, ..., d_NK)] |
| and stack + pads them into a single tensor of: |
| (N, max_i=1,N { d_i1 }, ..., max_i=1,N {diK}) |
| """ |
| if len(samples) == 0: |
| return torch.Tensor() |
| if len(set(x.dim() for x in samples)) != 1: |
| raise RuntimeError( |
| f"Samples has varying dimensions: {[x.dim() for x in samples]}" |
| ) |
| (device,) = tuple(set(x.device for x in samples)) |
| max_shape = [max(lst) for lst in zip(*[x.shape for x in samples])] |
| result = torch.empty( |
| len(samples), *max_shape, dtype=samples[0].dtype, device=device |
| ) |
| result.fill_(pad_v) |
| for i in range(len(samples)): |
| result_i = result[i] |
| t = samples[i] |
| result_i[tuple(slice(0, k) for k in t.shape)] = t |
| return result |
|
|
|
|
| class ProteinDataModule(LightningDataModule): |
| """`LightningDataModule` for a single protein dataset, |
| for pretrain or finetune purpose. |
| |
| ### To be revised.### |
| |
| The MNIST database of handwritten digits has a training set of 60,000 examples, and a test set of 10,000 examples. |
| It is a subset of a larger set available from NIST. The digits have been size-normalized and centered in a |
| fixed-size image. The original black and white images from NIST were size normalized to fit in a 20x20 pixel box |
| while preserving their aspect ratio. The resulting images contain grey levels as a result of the anti-aliasing |
| technique used by the normalization algorithm. the images were centered in a 28x28 image by computing the center of |
| mass of the pixels, and translating the image so as to position this point at the center of the 28x28 field. |
| |
| A `LightningDataModule` implements 7 key methods: |
| |
| ```python |
| def prepare_data(self): |
| # Things to do on 1 GPU/TPU (not on every GPU/TPU in DDP). |
| # Download data, pre-process, split, save to disk, etc... |
| |
| def setup(self, stage): |
| # Things to do on every process in DDP. |
| # Load data, set variables, etc... |
| |
| def train_dataloader(self): |
| # return train dataloader |
| |
| def val_dataloader(self): |
| # return validation dataloader |
| |
| def test_dataloader(self): |
| # return test dataloader |
| |
| def predict_dataloader(self): |
| # return predict dataloader |
| |
| def teardown(self, stage): |
| # Called on every process in DDP. |
| # Clean up after fit or test. |
| ``` |
| |
| This allows you to share a full dataset without explaining how to download, |
| split, transform and process the data. |
| |
| Read the docs: |
| https://lightning.ai/docs/pytorch/latest/data/datamodule.html |
| """ |
|
|
| def __init__( |
| self, |
| dataset: torch.utils.data.Dataset, |
| batch_size: int = 64, |
| generator_seed: int = 42, |
| train_val_split: Tuple[float, float] = (0.95, 0.05), |
| num_workers: int = 0, |
| pin_memory: bool = False, |
| shuffle: bool = False, |
| ) -> None: |
| """Initialize a `MNISTDataModule`. |
| |
| :param data_dir: The data directory. Defaults to `"data/"`. |
| :param train_val_test_split: The train, validation and test split. Defaults to `(55_000, 5_000, 10_000)`. |
| :param batch_size: The batch size. Defaults to `64`. |
| :param num_workers: The number of workers. Defaults to `0`. |
| :param pin_memory: Whether to pin memory. Defaults to `False`. |
| """ |
| super().__init__() |
|
|
| |
| |
| self.save_hyperparameters(logger=False) |
| |
| self.dataset = dataset |
| |
| self.data_train: Optional[Dataset] = None |
| self.data_val: Optional[Dataset] = None |
| self.data_test: Optional[Dataset] = None |
|
|
| self.batch_size_per_device = batch_size |
|
|
| def prepare_data(self) -> None: |
| """Download data if needed. Lightning ensures that `self.prepare_data()` is called only |
| within a single process on CPU, so you can safely add your downloading logic within. In |
| case of multi-node training, the execution of this hook depends upon |
| `self.prepare_data_per_node()`. |
| |
| Do not use it to assign state (self.x = y). |
| """ |
| pass |
|
|
| def setup(self, stage: Optional[str] = None) -> None: |
| """Load data. Set variables: `self.data_train`, `self.data_val`, `self.data_test`. |
| |
| This method is called by Lightning before `trainer.fit()`, `trainer.validate()`, `trainer.test()`, and |
| `trainer.predict()`, so be careful not to execute things like random split twice! Also, it is called after |
| `self.prepare_data()` and there is a barrier in between which ensures that all the processes proceed to |
| `self.setup()` once the data is prepared and available for use. |
| |
| :param stage: The stage to setup. Either `"fit"`, `"validate"`, `"test"`, or `"predict"`. Defaults to ``None``. |
| """ |
| |
| if self.trainer is not None: |
| if self.hparams.batch_size % self.trainer.world_size != 0: |
| raise RuntimeError( |
| f"Batch size ({self.hparams.batch_size}) is not divisible by the number of devices ({self.trainer.world_size})." |
| ) |
| self.batch_size_per_device = self.hparams.batch_size // self.trainer.world_size |
|
|
| |
| if stage == 'fit' and not self.data_train and not self.data_val: |
| |
| self.data_train, self.data_val = random_split( |
| dataset=self.dataset, |
| lengths=self.hparams.train_val_split, |
| generator=torch.Generator().manual_seed(self.hparams.generator_seed), |
| ) |
| elif stage in ('predict', 'test'): |
| self.data_test = self.dataset |
| else: |
| raise NotImplementedError(f"Stage {stage} not implemented.") |
| |
| def _dataloader_template(self, dataset: Dataset[Any]) -> DataLoader[Any]: |
| """Create a dataloader from a dataset. |
| |
| :param dataset: The dataset. |
| :return: The dataloader. |
| """ |
| batch_collator = BatchTensorConverter() |
| return DataLoader( |
| dataset=dataset, |
| collate_fn=batch_collator, |
| batch_size=self.batch_size_per_device, |
| num_workers=self.hparams.num_workers, |
| pin_memory=self.hparams.pin_memory, |
| shuffle=self.hparams.shuffle, |
| ) |
| |
| def train_dataloader(self) -> DataLoader[Any]: |
| """Create and return the train dataloader. |
| |
| :return: The train dataloader. |
| """ |
| return self._dataloader_template(self.data_train) |
| |
|
|
| def val_dataloader(self) -> DataLoader[Any]: |
| """Create and return the validation dataloader. |
| |
| :return: The validation dataloader. |
| """ |
| return self._dataloader_template(self.data_val) |
|
|
| def test_dataloader(self) -> DataLoader[Any]: |
| """Create and return the test dataloader. |
| |
| :return: The test dataloader. |
| """ |
| return self._dataloader_template(self.data_test) |
|
|
| def teardown(self, stage: Optional[str] = None) -> None: |
| """Lightning hook for cleaning up after `trainer.fit()`, `trainer.validate()`, |
| `trainer.test()`, and `trainer.predict()`. |
| |
| :param stage: The stage being torn down. Either `"fit"`, `"validate"`, `"test"`, or `"predict"`. |
| Defaults to ``None``. |
| """ |
| pass |
|
|
| def state_dict(self) -> Dict[Any, Any]: |
| """Called when saving a checkpoint. Implement to generate and save the datamodule state. |
| |
| :return: A dictionary containing the datamodule state that you want to save. |
| """ |
| return {} |
|
|
| 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()`. |
| |
| :param state_dict: The datamodule state returned by `self.state_dict()`. |
| """ |
| pass |
|
|
|
|