Description
Extract from the workbook "machine_learning_workflow_abalone.ipynb"
When adding tags in the following estimator :
mes_tags = [{'key': 'cart', 'value': 'dataengineering'}]
xgb = sagemaker.estimator.Estimator(
image_uris.retrieve("xgboost", region, "1.2-1"),
sagemaker_execution_role,
train_instance_count=1,
train_instance_type="ml.m4.4xlarge",
train_volume_size=5,
output_path=bucket_path + "/" + prefix + "/single-xgboost",
base_job_name=base_job_name,
tags=mes_tags,
sagemaker_session=session,
)
No error when creating the sagemaker.estimator object
The workflow creation fails
When running the command (later in the notebook):
workflow.create()
I got the exception :
"InvalidDefinition: An error occurred (InvalidDefinition) when calling the CreateStateMachine operation: Invalid State Machine Definition: 'SCHEMA_VALIDATION_FAILED: The field "key" is not supported by Step Functions at /States/Train Step/Parameters"
Which is clearly related to the tags I previously added.
Apparently, adding tags to a Sagemaker estimator in the training step does not seem to be supported by the current version of the SDK.
To reproduce
You can comment "tags=mes_tags" and re-rerun the notebook and the state machine is created without any errors.
Logs
Only the stack trace in the notebook