autogluon.cloud.TimeSeriesFoundationModel¶
- class autogluon.cloud.TimeSeriesFoundationModel(model_id: str, **kwargs)[source]¶
Foundation model for time series forecasting (Chronos, etc.).
- __init__(model_id: str, backend: Literal['sagemaker'] = 'sagemaker', cloud_output_path: str | None = None, hyperparameters: Dict[str, Any] | None = None, role: str | None = None)¶
- Parameters:
model_id – ID of the foundation model from the model registry.
backend – Cloud backend to use.
cloud_output_path – S3 path to store intermediate artifacts.
hyperparameters – Default hyperparameters applied to inference and (when supported) training.
role – ARN of the SageMaker execution role used to run training and inference jobs. If
None, falls back torole_arnin~/.autogluon/cloud.yaml(set byautogluon.cloud.bootstrap()/autogluon.cloud.register()), and finally tosagemaker.get_execution_role().
Methods