Create Mlflow Tracking Server
sagemaker_create_mlflow_tracking_server | R Documentation |
Creates an MLflow Tracking Server using a general purpose Amazon S3 bucket as the artifact store¶
Description¶
Creates an MLflow Tracking Server using a general purpose Amazon S3 bucket as the artifact store. For more information, see Create an MLflow Tracking Server.
Usage¶
sagemaker_create_mlflow_tracking_server(TrackingServerName,
ArtifactStoreUri, TrackingServerSize, MlflowVersion, RoleArn,
AutomaticModelRegistration, WeeklyMaintenanceWindowStart, Tags)
Arguments¶
TrackingServerName |
[required] A unique string identifying the tracking server name. This string is part of the tracking server ARN. |
ArtifactStoreUri |
[required] The S3 URI for a general purpose bucket to use as the MLflow Tracking Server artifact store. |
TrackingServerSize |
The size of the tracking server you want to create. You can
choose between We recommend using a small tracking server for teams of up to 25 users, a medium tracking server for teams of up to 50 users, and a large tracking server for teams of up to 100 users. |
MlflowVersion |
The version of MLflow that the tracking server uses. To see which MLflow versions are available to use, see How it works. |
RoleArn |
[required] The Amazon Resource Name (ARN) for an IAM role in your
account that the MLflow Tracking Server uses to access the artifact
store in Amazon S3. The role should have |
AutomaticModelRegistration |
Whether to enable or disable automatic registration of new MLflow
models to the SageMaker Model Registry. To enable automatic model
registration, set this value to |
WeeklyMaintenanceWindowStart |
The day and time of the week in Coordinated Universal Time (UTC) 24-hour standard time that weekly maintenance updates are scheduled. For example: TUE:03:30. |
Tags |
Tags consisting of key-value pairs used to manage metadata for the tracking server. |
Value¶
A list with the following syntax:
list(
TrackingServerArn = "string"
)
Request syntax¶
svc$create_mlflow_tracking_server(
TrackingServerName = "string",
ArtifactStoreUri = "string",
TrackingServerSize = "Small"|"Medium"|"Large",
MlflowVersion = "string",
RoleArn = "string",
AutomaticModelRegistration = TRUE|FALSE,
WeeklyMaintenanceWindowStart = "string",
Tags = list(
list(
Key = "string",
Value = "string"
)
)
)