auto_dataloader#
- ignite.distributed.auto.auto_dataloader(dataset, **kwargs)[source]#
- Helper method to create a dataloader adapted for non-distributed and distributed configurations (supporting all available backends from - available_backends()).- Internally, we create a dataloader with provided kwargs while applying the following updates: - batch size is scaled by world size: - batch_size / world_sizeif larger or equal world size.
- number of workers is scaled by number of local processes: - num_workers / nprocsif larger or equal world size.
- if no sampler provided by user, a torch DistributedSampler is setup. 
- if a torch DistributedSampler is provided by user, it is used without wrapping it. 
- if another sampler is provided, it is wrapped by - DistributedProxySampler.
- if the default device is ‘cuda’, pin_memory is automatically set to True. 
 - Warning - Custom batch sampler is not adapted for distributed configuration. Please, make sure that provided batch sampler is compatible with distributed configuration. - Parameters
- dataset (Dataset) – input torch dataset. If input dataset is torch IterableDataset then dataloader will be created without any distributed sampling. Please, make sure that the dataset itself produces different data on different ranks. 
- kwargs (Any) – keyword arguments for torch DataLoader. 
 
- Returns
- torch DataLoader or XLA MpDeviceLoader for XLA devices 
- Return type
- Union[DataLoader, _MpDeviceLoader] 
 - Examples - import ignite.distribted as idist train_loader = idist.auto_dataloader( train_dataset, batch_size=32, num_workers=4, shuffle=True, pin_memory="cuda" in idist.device().type, drop_last=True, )