etna.models.nn.PatchTSModel#
- class PatchTSModel(decoder_length: int, encoder_length: int, patch_len: int = 4, stride: int = 1, num_layers: int = 3, hidden_size: int = 128, feedforward_size: int = 256, nhead: int = 16, lr: float = 0.001, loss: Module | None = None, train_batch_size: int = 128, test_batch_size: int = 128, optimizer_params: dict | None = None, trainer_params: dict | None = None, train_dataloader_params: dict | None = None, test_dataloader_params: dict | None = None, val_dataloader_params: dict | None = None, split_params: dict | None = None)[source]#
Bases:
DeepBaseModel
PatchTS model using PyTorch layers. For more details read the paper.
Model uses only target column, other columns will be ignored.
Note
This model requires
torch
extension to be installed. Read more about this at installation page.Init PatchTS model.
- Parameters:
encoder_length (int) – encoder length
decoder_length (int) – decoder length
patch_len (int) – size of patch
stride (int) – step of patch
num_layers (int) – number of layers
hidden_size (int) – size of the hidden state
feedforward_size (int) – size of feedforward layers in transformer
nhead (int) – number of transformer heads
lr (float) – learning rate
loss (torch.nn.Module | None) – loss function, MSELoss by default
train_batch_size (int) – batch size for training
test_batch_size (int) – batch size for testing
optimizer_params (dict | None) – parameters for optimizer for Adam optimizer (api reference
torch.optim.Adam
)trainer_params (dict | None) – Pytorch ligthning trainer parameters (api reference
pytorch_lightning.trainer.trainer.Trainer
)train_dataloader_params (dict | None) – parameters for train dataloader like sampler for example (api reference
torch.utils.data.DataLoader
)test_dataloader_params (dict | None) – parameters for test dataloader
val_dataloader_params (dict | None) – parameters for validation dataloader
split_params (dict | None) –
- dictionary with parameters for
torch.utils.data.random_split()
for train-test splitting train_size: (float) value from 0 to 1 - fraction of samples to use for training
generator: (Optional[torch.Generator]) - generator for reproducibile train-test splitting
torch_dataset_size: (Optional[int]) - number of samples in dataset, in case of dataset not implementing
__len__
- dictionary with parameters for
Methods
fit
(ts)Fit model.
forecast
(ts, prediction_size[, ...])Make predictions.
Get model.
load
(path[, ts])Load an object.
Get default grid for tuning hyperparameters.
predict
(ts, prediction_size[, return_components])Make predictions.
raw_fit
(torch_dataset)Fit model on torch like Dataset.
raw_predict
(torch_dataset)Make inference on torch like Dataset.
save
(path)Save the object.
set_params
(**params)Return new object instance with modified parameters.
to_dict
()Collect all information about etna object in dict.
Attributes
This class stores its
__init__
parameters as attributes.Context size of the model.
- fit(ts: TSDataset) DeepBaseModel [source]#
Fit model.
- Parameters:
ts (TSDataset) – TSDataset with features
- Returns:
Model after fit
- Return type:
DeepBaseModel
- forecast(ts: TSDataset, prediction_size: int, return_components: bool = False) TSDataset [source]#
Make predictions.
This method will make autoregressive predictions.
- Parameters:
- Returns:
Dataset with predictions
- Return type:
- classmethod load(path: Path, ts: TSDataset | None = None) Self [source]#
Load an object.
Warning
This method uses
dill
module which is not secure. It is possible to construct malicious data which will execute arbitrary code during loading. Never load data that could have come from an untrusted source, or that could have been tampered with.
- params_to_tune() Dict[str, BaseDistribution] [source]#
Get default grid for tuning hyperparameters.
This grid tunes parameters:
num_layers
,hidden_size
,lr
,encoder_length
. Other parameters are expected to be set by the user.- Returns:
Grid to tune.
- Return type:
- predict(ts: TSDataset, prediction_size: int, return_components: bool = False) TSDataset [source]#
Make predictions.
This method will make predictions using true values instead of predicted on a previous step. It can be useful for making in-sample forecasts.
- Parameters:
- Returns:
Dataset with predictions
- Return type:
- raw_fit(torch_dataset: Dataset) DeepBaseModel [source]#
Fit model on torch like Dataset.
- Parameters:
torch_dataset (Dataset) – Torch like dataset for model fit
- Returns:
Model after fit
- Return type:
DeepBaseModel
- raw_predict(torch_dataset: Dataset) Dict[Tuple[str, str], ndarray] [source]#
Make inference on torch like Dataset.
- set_params(**params: dict) Self [source]#
Return new object instance with modified parameters.
Method also allows to change parameters of nested objects within the current object. For example, it is possible to change parameters of a
model
in aPipeline
.Nested parameters are expected to be in a
<component_1>.<...>.<parameter>
form, where components are separated by a dot.- Parameters:
**params (dict) – Estimator parameters
- Returns:
New instance with changed parameters
- Return type:
Self
Examples
>>> from etna.pipeline import Pipeline >>> from etna.models import NaiveModel >>> from etna.transforms import AddConstTransform >>> model = NaiveModel(lag=1) >>> transforms = [AddConstTransform(in_column="target", value=1)] >>> pipeline = Pipeline(model, transforms=transforms, horizon=3) >>> pipeline.set_params(**{"model.lag": 3, "transforms.0.value": 2}) Pipeline(model = NaiveModel(lag = 3, ), transforms = [AddConstTransform(in_column = 'target', value = 2, inplace = True, out_column = None, )], horizon = 3, )