# Copyright (c) 2025, NVIDIA CORPORATION. All rights reserved. # # 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 # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. import torch from lightning import LightningDataModule from lightning.pytorch.utilities import CombinedLoader from omegaconf import DictConfig, OmegaConf, open_dict from nemo.collections.common.data.fallback import FallbackDataset from nemo.collections.common.data.lhotse import get_lhotse_dataloader_from_config from nemo.collections.common.tokenizers import TokenizerSpec class DataModule(LightningDataModule): """ A Lightning DataModule specialized for Lhotse dataloading. It takes care of setting up the proper DP ranks for dataloaders, and instantiating them. Keep in mind the actual dataset paths and blend are defined by the YAML config, not Python code. The typical structure of the YAML config used to initialize this module looks like the following: .. code-block:: yaml data: train_ds: input_cfg: path/to/input_cfg.yaml num_workers: 2 batch_size: 4 # ... Other settings, see nemo/collections/common/data/lhotse/dataloader.py validation_ds: # The entries under 'datasets' are a list of separate dataloaders. # The structure is : {} # They inherit all settings from validation_ds, but can individually override them. datasets: val_set_0: # rename to your dataset name, add more as needed cuts_path: ??? # needs to be specified batch_size: 4 # ... Other settings, see nemo/collections/common/data/lhotse/dataloader.py See also the examples in ``examples/speechlm2/conf``. Args: cfg: a DictConfig instance, typically corresponding to `data` namespace in YAML configs. tokenizer: a tokenizer instance, typically NeMo's AutoTokenizer wrapping HF's AutoTokenizer. dataset: a torch.utils.data.Dataset instance, expected to define __getitem__ that accepts a lhotse.CutSet. It converts metadata + raw data to a batch of PyTorch tensors. The data sampling is controlled by Lhotse samplers rather than the dataset. """ def __init__(self, cfg, tokenizer: TokenizerSpec, dataset: torch.utils.data.Dataset) -> None: super().__init__() self.cfg = cfg with open_dict(self.cfg): for k in ("validation_ds", "test_ds"): if k in self.cfg: getattr(self.cfg, k).force_finite = True getattr(self.cfg, k).force_map_dataset = True self.tokenizer = tokenizer self.dataset = dataset def train_dataloader(self): if "train_ds" not in self.cfg: return None return get_lhotse_dataloader_from_config( config=self.cfg.train_ds, global_rank=self._get_dp_rank(), world_size=self._get_world_size(), dataset=FallbackDataset(self.dataset), tokenizer=self.tokenizer, ) def val_dataloader(self): if "validation_ds" not in self.cfg: return None cfg = self.cfg.validation_ds return self._build_test_dataloader(cfg) def test_dataloader(self): if "test_ds" not in self.cfg: return None cfg = self.cfg.test_ds return self._build_test_dataloader(cfg) def predict_dataloader(self): if "predict_ds" not in self.cfg: return None cfg = self.cfg.predict_ds base_cfg = cfg.copy() with open_dict(base_cfg): del base_cfg.datasets dloaders = {} for name, item in cfg.datasets.items(): with open_dict(base_cfg): item = OmegaConf.merge(base_cfg, item) dloaders[name] = self._build_test_dataloader(item) # NOTE(yifan): `trainer.predict()` only supports the `CombinedLoader(mode="sequential")` mode # so we cannot reuse the `_build_test_dataloader` function here return CombinedLoader(dloaders, mode="sequential") def _build_test_dataloader(self, cfg: DictConfig) -> torch.utils.data.DataLoader | CombinedLoader: # Single validation/test dataloader. # This is internal-only: the config has to specify multiple dataloaders via "datasets" key, # even for a single validation/test set. if "datasets" not in cfg: with open_dict(cfg): cfg.force_finite = True cfg.force_map_dataset = True return get_lhotse_dataloader_from_config( config=cfg, global_rank=self._get_dp_rank(), world_size=self._get_world_size(), dataset=self.dataset, tokenizer=self.tokenizer, ) # Multiple validation/test dataloaders. # Config looks like: # # validation_ds: # batch_size: ... # datasets: # easy_benchmark: # shar_path: ... # hard_benchmark: # shar_path: ... base_cfg = cfg.copy() with open_dict(base_cfg): del base_cfg.datasets dloaders = {} for name, item in cfg.datasets.items(): with open_dict(base_cfg): item = OmegaConf.merge(base_cfg, item) dloaders[name] = self._build_test_dataloader(item) return CombinedLoader(dloaders, mode="max_size") def _get_dp_rank(self): if torch.distributed.is_available() and torch.distributed.is_initialized(): if ( hasattr(self.trainer, "model") and hasattr(self.trainer.model, "device_mesh") and self.trainer.model.device_mesh is not None ): # model parallelism return self.trainer.model.device_mesh.get_coordinate()[0] else: return torch.distributed.get_rank() # plain ol' DDP else: return 0 # 1 GPU def _get_world_size(self): if torch.distributed.is_available() and torch.distributed.is_initialized(): if ( hasattr(self.trainer, "model") and hasattr(self.trainer.model, "device_mesh") and self.trainer.model.device_mesh is not None ): # model parallelism return self.trainer.model.device_mesh.shape[0] else: # plain ol' DDP return torch.distributed.get_world_size() else: return 1 # 1 GPU