dsipts.PatchTST¶
- class dsipts.PatchTST(d_model: int, patch_len: int, kernel_size: int, decomposition: bool = True, activation: str = 'torch.nn.ReLU', n_head: int = 1, n_layer: int = 2, stride: int = 8, remove_last: bool = False, hidden_size: int = 1048, dropout_rate: float = 0.1, **kwargs)¶
Initializes the model with specified parameters.https://github.com/yuqinie98/PatchTST/blob/main/
- Parameters:
d_model (int) – The dimensionality of the model.
patch_len (int) – The length of the patches.
kernel_size (int) – The size of the kernel for convolutional layers.
decomposition (bool, optional) – Whether to use decomposition. Defaults to True.
activation (str, optional) – The activation function to use. Defaults to ‘torch.nn.ReLU’.
n_head (int, optional) – The number of attention heads. Defaults to 1.
n_layer (int, optional) – The number of layers in the model. Defaults to 2.
stride (int, optional) – The stride for convolutional layers. Defaults to 8.
remove_last (bool, optional) – Whether to remove the last layer. Defaults to False.
hidden_size (int, optional) – The size of the hidden layers. Defaults to 1048.
dropout_rate (float, optional) – The dropout rate for regularization. Defaults to 0.1.
**kwargs – Additional keyword arguments.
- Raises:
ValueError – If the activation function is not recognized.
- __init__(d_model: int, patch_len: int, kernel_size: int, decomposition: bool = True, activation: str = 'torch.nn.ReLU', n_head: int = 1, n_layer: int = 2, stride: int = 8, remove_last: bool = False, hidden_size: int = 1048, dropout_rate: float = 0.1, **kwargs) None ¶
Initializes the model with specified parameters.https://github.com/yuqinie98/PatchTST/blob/main/
- Parameters:
d_model (int) – The dimensionality of the model.
patch_len (int) – The length of the patches.
kernel_size (int) – The size of the kernel for convolutional layers.
decomposition (bool, optional) – Whether to use decomposition. Defaults to True.
activation (str, optional) – The activation function to use. Defaults to ‘torch.nn.ReLU’.
n_head (int, optional) – The number of attention heads. Defaults to 1.
n_layer (int, optional) – The number of layers in the model. Defaults to 2.
stride (int, optional) – The stride for convolutional layers. Defaults to 8.
remove_last (bool, optional) – Whether to remove the last layer. Defaults to False.
hidden_size (int, optional) – The size of the hidden layers. Defaults to 1048.
dropout_rate (float, optional) – The dropout rate for regularization. Defaults to 0.1.
**kwargs – Additional keyword arguments.
- Raises:
ValueError – If the activation function is not recognized.
Methods
__init__
(d_model, patch_len, kernel_size[, ...])Initializes the model with specified parameters.https://github.com/yuqinie98/PatchTST/blob/main/
add_module
(name, module)Add a child module to the current module.
all_gather
(data[, group, sync_grads])Gather tensors or collections of tensors from multiple processes.
apply
(fn)Apply
fn
recursively to every submodule (as returned by.children()
) as well as self.backward
(loss, *args, **kwargs)Called to perform backward on the loss returned in
training_step()
.bfloat16
()Casts all floating point parameters and buffers to
bfloat16
datatype.buffers
([recurse])Return an iterator over module buffers.
children
()Return an iterator over immediate children modules.
clip_gradients
(optimizer[, ...])Handles gradient clipping internally.
compile
(*args, **kwargs)Compile this Module's forward using
torch.compile()
.compute_loss
(batch, y_hat)custom loss calculation
configure_callbacks
()Configure model-specific callbacks.
configure_gradient_clipping
(optimizer[, ...])Perform gradient clipping for the optimizer parameters.
configure_model
()Hook to create modules in a strategy and precision aware context.
configure_optimizers
()Each model has optim_config and scheduler_config
configure_sharded_model
()Deprecated.
cpu
()See
torch.nn.Module.cpu()
.cuda
([device])Moves all model parameters and buffers to the GPU.
double
()See
torch.nn.Module.double()
.eval
()Set the module in evaluation mode.
extra_repr
()Return the extra representation of the module.
float
()See
torch.nn.Module.float()
.forward
(batch)Forlward method used during the training loop
freeze
()Freeze all params for inference.
get_buffer
(target)Return the buffer given by
target
if it exists, otherwise throw an error.get_extra_state
()Return any extra state to include in the module's state_dict.
get_parameter
(target)Return the parameter given by
target
if it exists, otherwise throw an error.get_submodule
(target)Return the submodule given by
target
if it exists, otherwise throw an error.half
()See
torch.nn.Module.half()
.inference
(batch)Usually it is ok to return the output of the forward method but sometimes not (e.g. RNN).
ipu
([device])Move all model parameters and buffers to the IPU.
load_from_checkpoint
(checkpoint_path[, ...])Primary way of loading a model from a checkpoint.
load_state_dict
(state_dict[, strict, assign])Copy parameters and buffers from
state_dict
into this module and its descendants.log
(name, value[, prog_bar, logger, ...])Log a key, value pair.
log_dict
(dictionary[, prog_bar, logger, ...])Log a dictionary of values at once.
lr_scheduler_step
(scheduler, metric)Override this method to adjust the default way the
Trainer
calls each scheduler.lr_schedulers
()Returns the learning rate scheduler(s) that are being used during training.
manual_backward
(loss, *args, **kwargs)Call this directly from your
training_step()
when doing optimizations manually.modules
()Return an iterator over all modules in the network.
mtia
([device])Move all model parameters and buffers to the MTIA.
named_buffers
([prefix, recurse, ...])Return an iterator over module buffers, yielding both the name of the buffer as well as the buffer itself.
named_children
()Return an iterator over immediate children modules, yielding both the name of the module as well as the module itself.
named_modules
([memo, prefix, remove_duplicate])Return an iterator over all modules in the network, yielding both the name of the module as well as the module itself.
named_parameters
([prefix, recurse, ...])Return an iterator over module parameters, yielding both the name of the parameter as well as the parameter itself.
on_after_backward
()Called after
loss.backward()
and before optimizers are stepped.on_after_batch_transfer
(batch, dataloader_idx)Override to alter or apply batch augmentations to your batch after it is transferred to the device.
on_before_backward
(loss)Called before
loss.backward()
.on_before_batch_transfer
(batch, dataloader_idx)Override to alter or apply batch augmentations to your batch before it is transferred to the device.
on_before_optimizer_step
(optimizer)Called before
optimizer.step()
.on_before_zero_grad
(optimizer)Called after
training_step()
and beforeoptimizer.zero_grad()
.on_fit_end
()Called at the very end of fit.
on_fit_start
()Called at the very beginning of fit.
on_load_checkpoint
(checkpoint)Called by Lightning to restore your model.
on_predict_batch_end
(outputs, batch, batch_idx)Called in the predict loop after the batch.
on_predict_batch_start
(batch, batch_idx[, ...])Called in the predict loop before anything happens for that batch.
on_predict_end
()Called at the end of predicting.
on_predict_epoch_end
()Called at the end of predicting.
on_predict_epoch_start
()Called at the beginning of predicting.
on_predict_model_eval
()Called when the predict loop starts.
on_predict_start
()Called at the beginning of predicting.
on_save_checkpoint
(checkpoint)Called by Lightning when saving a checkpoint to give you a chance to store anything else you might want to save.
on_test_batch_end
(outputs, batch, batch_idx)Called in the test loop after the batch.
on_test_batch_start
(batch, batch_idx[, ...])Called in the test loop before anything happens for that batch.
on_test_end
()Called at the end of testing.
on_test_epoch_end
()Called in the test loop at the very end of the epoch.
on_test_epoch_start
()Called in the test loop at the very beginning of the epoch.
on_test_model_eval
()Called when the test loop starts.
on_test_model_train
()Called when the test loop ends.
on_test_start
()Called at the beginning of testing.
on_train_batch_end
(outputs, batch, batch_idx)Called in the training loop after the batch.
on_train_batch_start
(batch, batch_idx)Called in the training loop before anything happens for that batch.
on_train_end
()Called at the end of training before logger experiment is closed.
on_train_epoch_end
()pythotrch lightening stuff
on_train_epoch_start
()Called in the training loop at the very beginning of the epoch.
on_train_start
()Called at the beginning of training after sanity check.
on_validation_batch_end
(outputs, batch, ...)Called in the validation loop after the batch.
on_validation_batch_start
(batch, batch_idx)Called in the validation loop before anything happens for that batch.
on_validation_end
()Called at the end of validation.
on_validation_epoch_end
()pythotrch lightening stuff
on_validation_epoch_start
()Called in the validation loop at the very beginning of the epoch.
on_validation_model_eval
()Called when the validation loop starts.
on_validation_model_train
()Called when the validation loop ends.
on_validation_model_zero_grad
()Called by the training loop to release gradients before entering the validation loop.
on_validation_start
()Called at the beginning of validation.
optimizer_step
(epoch, batch_idx, optimizer)Override this method to adjust the default way the
Trainer
calls the optimizer.optimizer_zero_grad
(epoch, batch_idx, optimizer)Override this method to change the default behaviour of
optimizer.zero_grad()
.optimizers
([use_pl_optimizer])Returns the optimizer(s) that are being used during training.
parameters
([recurse])Return an iterator over module parameters.
predict_dataloader
()An iterable or collection of iterables specifying prediction samples.
predict_step
(*args, **kwargs)Step function called during
predict()
.prepare_data
()Use this to download and prepare data.
print
(*args, **kwargs)Prints only from process 0.
register_backward_hook
(hook)Register a backward hook on the module.
register_buffer
(name, tensor[, persistent])Add a buffer to the module.
register_forward_hook
(hook, *[, prepend, ...])Register a forward hook on the module.
register_forward_pre_hook
(hook, *[, ...])Register a forward pre-hook on the module.
register_full_backward_hook
(hook[, prepend])Register a backward hook on the module.
register_full_backward_pre_hook
(hook[, prepend])Register a backward pre-hook on the module.
register_load_state_dict_post_hook
(hook)Register a post-hook to be run after module's
load_state_dict()
is called.register_load_state_dict_pre_hook
(hook)Register a pre-hook to be run before module's
load_state_dict()
is called.register_module
(name, module)Alias for
add_module()
.register_parameter
(name, param)Add a parameter to the module.
register_state_dict_post_hook
(hook)Register a post-hook for the
state_dict()
method.register_state_dict_pre_hook
(hook)Register a pre-hook for the
state_dict()
method.requires_grad_
([requires_grad])Change if autograd should record operations on parameters in this module.
save_hyperparameters
(*args[, ignore, frame, ...])Save arguments to
hparams
attribute.set_extra_state
(state)Set extra state contained in the loaded state_dict.
set_submodule
(target, module[, strict])Set the submodule given by
target
if it exists, otherwise throw an error.setup
(stage)Called at the beginning of fit (train + validate), validate, test, or predict.
share_memory
()See
torch.Tensor.share_memory_()
.state_dict
(*args[, destination, prefix, ...])Return a dictionary containing references to the whole state of the module.
teardown
(stage)Called at the end of fit (train + validate), validate, test, or predict.
test_dataloader
()An iterable or collection of iterables specifying test samples.
test_step
(*args, **kwargs)Operates on a single batch of data from the test set.
to
(*args, **kwargs)See
torch.nn.Module.to()
.to_empty
(*, device[, recurse])Move the parameters and buffers to the specified device without copying storage.
to_onnx
([file_path, input_sample])Saves the model in ONNX format.
to_torchscript
([file_path, method, ...])By default compiles the whole model to a
ScriptModule
.toggle_optimizer
(optimizer)Makes sure only the gradients of the current optimizer's parameters are calculated in the training step to prevent dangling gradients in multiple-optimizer setup.
toggled_optimizer
(optimizer)Makes sure only the gradients of the current optimizer's parameters are calculated in the training step to prevent dangling gradients in multiple-optimizer setup.
train
([mode])Set the module in training mode.
train_dataloader
()An iterable or collection of iterables specifying training samples.
training_step
(batch, batch_idx)pythotrch lightening stuff
transfer_batch_to_device
(batch, device, ...)Override this hook if your
DataLoader
returns tensors wrapped in a custom data structure.type
(dst_type)See
torch.nn.Module.type()
.unfreeze
()Unfreeze all parameters for training.
untoggle_optimizer
(optimizer)Resets the state of required gradients that were toggled with
toggle_optimizer()
.val_dataloader
()An iterable or collection of iterables specifying validation samples.
validation_step
(batch, batch_idx)pythotrch lightening stuff
xpu
([device])Move all model parameters and buffers to the XPU.
zero_grad
([set_to_none])Reset gradients of all model parameters.
Attributes
CHECKPOINT_HYPER_PARAMS_KEY
CHECKPOINT_HYPER_PARAMS_NAME
CHECKPOINT_HYPER_PARAMS_TYPE
T_destination
automatic_optimization
If set to
False
you are responsible for calling.backward()
,.step()
,.zero_grad()
.call_super_init
current_epoch
The current epoch in the
Trainer
, or 0 if not attached.device
device_mesh
Strategies like
ModelParallelStrategy
will create a device mesh that can be accessed in theconfigure_model()
hook to parallelize the LightningModule.dtype
dump_patches
example_input_array
The example input array is a specification of what the module can consume in the
forward()
method.fabric
global_rank
The index of the current process across all nodes and devices.
global_step
Total training batches seen across all epochs.
hparams
The collection of hyperparameters saved with
save_hyperparameters()
.hparams_initial
The collection of hyperparameters saved with
save_hyperparameters()
.local_rank
The index of the current process within a single node.
logger
Reference to the logger object in the Trainer.
loggers
Reference to the list of loggers in the Trainer.
on_gpu
Returns
True
if this model is currently located on a GPU.strict_loading
Determines how Lightning loads this model using .load_state_dict(..., strict=model.strict_loading).
trainer
training