DataHooks¶
- class pytorch_lightning.core.hooks.DataHooks[source]¶
Bases:
object
Hooks to be used for data related stuff.
- prepare_data_per_node¶
If True, each LOCAL_RANK=0 will call prepare data. Otherwise only NODE_RANK=0, LOCAL_RANK=0 will prepare data.
- allow_zero_length_dataloader_with_multiple_devices¶
If True, dataloader with zero length within local rank is allowed. Default value is False.
- on_after_batch_transfer(batch, dataloader_idx)[source]¶
Override to alter or apply batch augmentations to your batch after it is transferred to the device.
Note
To check the current state of execution of this hook you can use
self.trainer.training/testing/validating/predicting
so that you can add different logic as per your requirement.Note
This hook only runs on single GPU training and DDP (no data-parallel). Data-Parallel support will come in near future.
- Parameters
- Return type
- Returns
A batch of data
Example:
def on_after_batch_transfer(self, batch, dataloader_idx): batch['x'] = gpu_transforms(batch['x']) return batch
- Raises
MisconfigurationException – If using data-parallel,
Trainer(strategy='dp')
.
- on_before_batch_transfer(batch, dataloader_idx)[source]¶
Override to alter or apply batch augmentations to your batch before it is transferred to the device.
Note
To check the current state of execution of this hook you can use
self.trainer.training/testing/validating/predicting
so that you can add different logic as per your requirement.Note
This hook only runs on single GPU training and DDP (no data-parallel). Data-Parallel support will come in near future.
- Parameters
- Return type
- Returns
A batch of data
Example:
def on_before_batch_transfer(self, batch, dataloader_idx): batch['x'] = transforms(batch['x']) return batch
- Raises
MisconfigurationException – If using data-parallel,
Trainer(strategy='dp')
.
- on_predict_dataloader()[source]¶
Called before requesting the predict dataloader.
Deprecated since version v1.5:
on_predict_dataloader()
is deprecated and will be removed in v1.7.0. Please usepredict_dataloader()
directly.- Return type
- on_test_dataloader()[source]¶
Called before requesting the test dataloader.
Deprecated since version v1.5:
on_test_dataloader()
is deprecated and will be removed in v1.7.0. Please usetest_dataloader()
directly.- Return type
- on_train_dataloader()[source]¶
Called before requesting the train dataloader.
Deprecated since version v1.5:
on_train_dataloader()
is deprecated and will be removed in v1.7.0. Please usetrain_dataloader()
directly.- Return type
- on_val_dataloader()[source]¶
Called before requesting the val dataloader.
Deprecated since version v1.5:
on_val_dataloader()
is deprecated and will be removed in v1.7.0. Please useval_dataloader()
directly.- Return type
- predict_dataloader()[source]¶
Implement one or multiple PyTorch DataLoaders for prediction.
It’s recommended that all data downloads and preparation happen in
prepare_data()
.Note
Lightning adds the correct sampler for distributed and arbitrary hardware There is no need to set it yourself.
- Return type
- Returns
A
torch.utils.data.DataLoader
or a sequence of them specifying prediction samples.
Note
In the case where you return multiple prediction dataloaders, the
predict_step()
will have an argumentdataloader_idx
which matches the order here.
- prepare_data()[source]¶
Use this to download and prepare data. Downloading and saving data with multiple processes (distributed settings) will result in corrupted data. Lightning ensures this method is called only within a single process, so you can safely add your downloading logic within.
Warning
DO NOT set state to the model (use
setup
instead) since this is NOT called on every deviceExample:
def prepare_data(self): # good download_data() tokenize() etc() # bad self.split = data_split self.some_state = some_other_state()
In DDP
prepare_data
can be called in two ways (using Trainer(prepare_data_per_node)):Once per node. This is the default and is only called on LOCAL_RANK=0.
Once in total. Only called on GLOBAL_RANK=0.
Example:
# DEFAULT # called once per node on LOCAL_RANK=0 of that node Trainer(prepare_data_per_node=True) # call on GLOBAL_RANK=0 (great for shared file systems) Trainer(prepare_data_per_node=False)
This is called before requesting the dataloaders:
model.prepare_data() initialize_distributed() model.setup(stage) model.train_dataloader() model.val_dataloader() model.test_dataloader()
- Return type
- setup(stage=None)[source]¶
Called at the beginning of fit (train + validate), validate, test, or predict. This is a good hook when you need to build models dynamically or adjust something about them. This hook is called on every process when using DDP.
Example:
class LitModel(...): def __init__(self): self.l1 = None def prepare_data(self): download_data() tokenize() # don't do this self.something = else def setup(self, stage): data = load_data(...) self.l1 = nn.Linear(28, data.num_classes)
- Return type
- teardown(stage=None)[source]¶
Called at the end of fit (train + validate), validate, test, or predict.
- test_dataloader()[source]¶
Implement one or multiple PyTorch DataLoaders for testing.
For data processing use the following pattern:
download in
prepare_data()
process and split in
setup()
However, the above are only necessary for distributed processing.
Warning
do not assign state in prepare_data
Note
Lightning adds the correct sampler for distributed and arbitrary hardware. There is no need to set it yourself.
- Return type
- Returns
A
torch.utils.data.DataLoader
or a sequence of them specifying testing samples.
Example:
def test_dataloader(self): transform = transforms.Compose([transforms.ToTensor(), transforms.Normalize((0.5,), (1.0,))]) dataset = MNIST(root='/path/to/mnist/', train=False, transform=transform, download=True) loader = torch.utils.data.DataLoader( dataset=dataset, batch_size=self.batch_size, shuffle=False ) return loader # can also return multiple dataloaders def test_dataloader(self): return [loader_a, loader_b, ..., loader_n]
Note
If you don’t need a test dataset and a
test_step()
, you don’t need to implement this method.Note
In the case where you return multiple test dataloaders, the
test_step()
will have an argumentdataloader_idx
which matches the order here.
- train_dataloader()[source]¶
Implement one or more PyTorch DataLoaders for training.
- Return type
Union
[DataLoader
,Sequence
[DataLoader
],Sequence
[Sequence
[DataLoader
]],Sequence
[Dict
[str
,DataLoader
]],Dict
[str
,DataLoader
],Dict
[str
,Dict
[str
,DataLoader
]],Dict
[str
,Sequence
[DataLoader
]]]- Returns
A collection of
torch.utils.data.DataLoader
specifying training samples. In the case of multiple dataloaders, please see this section.
The dataloader you return will not be reloaded unless you set
reload_dataloaders_every_n_epochs
to a positive integer.For data processing use the following pattern:
download in
prepare_data()
process and split in
setup()
However, the above are only necessary for distributed processing.
Warning
do not assign state in prepare_data
Note
Lightning adds the correct sampler for distributed and arbitrary hardware. There is no need to set it yourself.
Example:
# single dataloader def train_dataloader(self): transform = transforms.Compose([transforms.ToTensor(), transforms.Normalize((0.5,), (1.0,))]) dataset = MNIST(root='/path/to/mnist/', train=True, transform=transform, download=True) loader = torch.utils.data.DataLoader( dataset=dataset, batch_size=self.batch_size, shuffle=True ) return loader # multiple dataloaders, return as list def train_dataloader(self): mnist = MNIST(...) cifar = CIFAR(...) mnist_loader = torch.utils.data.DataLoader( dataset=mnist, batch_size=self.batch_size, shuffle=True ) cifar_loader = torch.utils.data.DataLoader( dataset=cifar, batch_size=self.batch_size, shuffle=True ) # each batch will be a list of tensors: [batch_mnist, batch_cifar] return [mnist_loader, cifar_loader] # multiple dataloader, return as dict def train_dataloader(self): mnist = MNIST(...) cifar = CIFAR(...) mnist_loader = torch.utils.data.DataLoader( dataset=mnist, batch_size=self.batch_size, shuffle=True ) cifar_loader = torch.utils.data.DataLoader( dataset=cifar, batch_size=self.batch_size, shuffle=True ) # each batch will be a dict of tensors: {'mnist': batch_mnist, 'cifar': batch_cifar} return {'mnist': mnist_loader, 'cifar': cifar_loader}
- transfer_batch_to_device(batch, device, dataloader_idx)[source]¶
Override this hook if your
DataLoader
returns tensors wrapped in a custom data structure.The data types listed below (and any arbitrary nesting of them) are supported out of the box:
torch.Tensor
or anything that implements .to(…)torchtext.data.batch.Batch
For anything else, you need to define how the data is moved to the target device (CPU, GPU, TPU, …).
Note
This hook should only transfer the data and not modify it, nor should it move the data to any other device than the one passed in as argument (unless you know what you are doing). To check the current state of execution of this hook you can use
self.trainer.training/testing/validating/predicting
so that you can add different logic as per your requirement.Note
This hook only runs on single GPU training and DDP (no data-parallel). Data-Parallel support will come in near future.
- Parameters
- Return type
- Returns
A reference to the data on the new device.
Example:
def transfer_batch_to_device(self, batch, device, dataloader_idx): if isinstance(batch, CustomBatch): # move all tensors in your custom data structure to the device batch.samples = batch.samples.to(device) batch.targets = batch.targets.to(device) elif dataloader_idx == 0: # skip device transfer for the first dataloader or anything you wish pass else: batch = super().transfer_batch_to_device(data, device, dataloader_idx) return batch
- Raises
MisconfigurationException – If using data-parallel,
Trainer(strategy='dp')
.
See also
move_data_to_device()
apply_to_collection()
- val_dataloader()[source]¶
Implement one or multiple PyTorch DataLoaders for validation.
The dataloader you return will not be reloaded unless you set
reload_dataloaders_every_n_epochs
to a positive integer.It’s recommended that all data downloads and preparation happen in
prepare_data()
.Note
Lightning adds the correct sampler for distributed and arbitrary hardware There is no need to set it yourself.
- Return type
- Returns
A
torch.utils.data.DataLoader
or a sequence of them specifying validation samples.
Examples:
def val_dataloader(self): transform = transforms.Compose([transforms.ToTensor(), transforms.Normalize((0.5,), (1.0,))]) dataset = MNIST(root='/path/to/mnist/', train=False, transform=transform, download=True) loader = torch.utils.data.DataLoader( dataset=dataset, batch_size=self.batch_size, shuffle=False ) return loader # can also return multiple dataloaders def val_dataloader(self): return [loader_a, loader_b, ..., loader_n]
Note
If you don’t need a validation dataset and a
validation_step()
, you don’t need to implement this method.Note
In the case where you return multiple validation dataloaders, the
validation_step()
will have an argumentdataloader_idx
which matches the order here.