airflow.contrib.operators.sagemaker_training_operator¶
Module Contents¶
- 
class airflow.contrib.operators.sagemaker_training_operator.SageMakerTrainingOperator(config, wait_for_completion=True, print_log=True, check_interval=30, max_ingestion_time=None, *args, **kwargs)[source]¶
- Bases: - airflow.contrib.operators.sagemaker_base_operator.SageMakerBaseOperator- Initiate a SageMaker training job. - This operator returns The ARN of the training job created in Amazon SageMaker. - Parameters
- config (dict) – - The configuration necessary to start a training job (templated). - For details of the configuration parameter see - SageMaker.Client.create_training_job()
- aws_conn_id (str) – The AWS connection ID to use. 
- wait_for_completion (bool) – If wait is set to True, the time interval, in seconds, that the operation waits to check the status of the training job. 
- print_log (bool) – if the operator should print the cloudwatch log during training 
- check_interval (int) – if wait is set to be true, this is the time interval in seconds which the operator will check the status of the training job 
- max_ingestion_time (int) – If wait is set to True, the operation fails if the training job doesn’t finish within max_ingestion_time seconds. If you set this parameter to None, the operation does not timeout.