Skip to content

adding tags to a Sagemaker estimator in the training step does not seem to be supported #200

Open
@evaie

Description

@evaie

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

Metadata

Metadata

Assignees

No one assigned

    Labels

    bugSomething isn't working

    Type

    No type

    Projects

    No projects

    Milestone

    No milestone

    Relationships

    None yet

    Development

    No branches or pull requests

    Issue actions