Class: Aws::SageMaker::Client
- Inherits:
-
Seahorse::Client::Base
- Object
- Seahorse::Client::Base
- Aws::SageMaker::Client
- Includes:
- ClientStubs
- Defined in:
- lib/aws-sdk-sagemaker/client.rb
Overview
An API client for SageMaker. To construct a client, you need to configure a ‘:region` and `:credentials`.
client = Aws::SageMaker::Client.new(
region: region_name,
credentials: credentials,
# ...
)
For details on configuring region and credentials see the [developer guide](/sdk-for-ruby/v3/developer-guide/setup-config.html).
See #initialize for a full list of supported configuration options.
Class Attribute Summary collapse
- .identifier ⇒ Object readonly private
API Operations collapse
-
#add_association(params = {}) ⇒ Types::AddAssociationResponse
Creates an association between the source and the destination.
-
#add_tags(params = {}) ⇒ Types::AddTagsOutput
Adds or overwrites one or more tags for the specified SageMaker resource.
-
#associate_trial_component(params = {}) ⇒ Types::AssociateTrialComponentResponse
Associates a trial component with a trial.
-
#attach_cluster_node_volume(params = {}) ⇒ Types::AttachClusterNodeVolumeResponse
Attaches your Amazon Elastic Block Store (Amazon EBS) volume to a node in your EKS orchestrated HyperPod cluster.
-
#batch_add_cluster_nodes(params = {}) ⇒ Types::BatchAddClusterNodesResponse
Adds nodes to a HyperPod cluster by incrementing the target count for one or more instance groups.
-
#batch_delete_cluster_nodes(params = {}) ⇒ Types::BatchDeleteClusterNodesResponse
Deletes specific nodes within a SageMaker HyperPod cluster.
-
#batch_describe_model_package(params = {}) ⇒ Types::BatchDescribeModelPackageOutput
This action batch describes a list of versioned model packages.
-
#batch_reboot_cluster_nodes(params = {}) ⇒ Types::BatchRebootClusterNodesResponse
Reboots specific nodes within a SageMaker HyperPod cluster using a soft recovery mechanism.
-
#batch_replace_cluster_nodes(params = {}) ⇒ Types::BatchReplaceClusterNodesResponse
Replaces specific nodes within a SageMaker HyperPod cluster with new hardware.
-
#create_action(params = {}) ⇒ Types::CreateActionResponse
Creates an action.
-
#create_ai_benchmark_job(params = {}) ⇒ Types::CreateAIBenchmarkJobResponse
Creates a benchmark job that runs performance benchmarks against inference infrastructure using a predefined AI workload configuration.
-
#create_ai_recommendation_job(params = {}) ⇒ Types::CreateAIRecommendationJobResponse
Creates a recommendation job that generates intelligent optimization recommendations for generative AI inference deployments.
-
#create_ai_workload_config(params = {}) ⇒ Types::CreateAIWorkloadConfigResponse
Creates a reusable AI workload configuration that defines datasets, data sources, and benchmark tool settings for consistent performance testing of generative AI inference deployments on Amazon SageMaker AI.
-
#create_algorithm(params = {}) ⇒ Types::CreateAlgorithmOutput
Create a machine learning algorithm that you can use in SageMaker and list in the Amazon Web Services Marketplace.
-
#create_app(params = {}) ⇒ Types::CreateAppResponse
Creates a running app for the specified UserProfile.
-
#create_app_image_config(params = {}) ⇒ Types::CreateAppImageConfigResponse
Creates a configuration for running a SageMaker AI image as a KernelGateway app.
-
#create_artifact(params = {}) ⇒ Types::CreateArtifactResponse
Creates an artifact.
-
#create_auto_ml_job(params = {}) ⇒ Types::CreateAutoMLJobResponse
Creates an Autopilot job also referred to as Autopilot experiment or AutoML job.
-
#create_auto_ml_job_v2(params = {}) ⇒ Types::CreateAutoMLJobV2Response
Creates an Autopilot job also referred to as Autopilot experiment or AutoML job V2.
-
#create_cluster(params = {}) ⇒ Types::CreateClusterResponse
Creates an Amazon SageMaker HyperPod cluster.
-
#create_cluster_scheduler_config(params = {}) ⇒ Types::CreateClusterSchedulerConfigResponse
Create cluster policy configuration.
-
#create_code_repository(params = {}) ⇒ Types::CreateCodeRepositoryOutput
Creates a Git repository as a resource in your SageMaker AI account.
-
#create_compilation_job(params = {}) ⇒ Types::CreateCompilationJobResponse
Starts a model compilation job.
-
#create_compute_quota(params = {}) ⇒ Types::CreateComputeQuotaResponse
Create compute allocation definition.
-
#create_context(params = {}) ⇒ Types::CreateContextResponse
Creates a context.
-
#create_data_quality_job_definition(params = {}) ⇒ Types::CreateDataQualityJobDefinitionResponse
Creates a definition for a job that monitors data quality and drift.
-
#create_device_fleet(params = {}) ⇒ Struct
Creates a device fleet.
-
#create_domain(params = {}) ⇒ Types::CreateDomainResponse
Creates a ‘Domain`.
-
#create_edge_deployment_plan(params = {}) ⇒ Types::CreateEdgeDeploymentPlanResponse
Creates an edge deployment plan, consisting of multiple stages.
-
#create_edge_deployment_stage(params = {}) ⇒ Struct
Creates a new stage in an existing edge deployment plan.
-
#create_edge_packaging_job(params = {}) ⇒ Struct
Starts a SageMaker Edge Manager model packaging job.
-
#create_endpoint(params = {}) ⇒ Types::CreateEndpointOutput
Creates an endpoint using the endpoint configuration specified in the request.
-
#create_endpoint_config(params = {}) ⇒ Types::CreateEndpointConfigOutput
Creates an endpoint configuration that SageMaker hosting services uses to deploy models.
-
#create_experiment(params = {}) ⇒ Types::CreateExperimentResponse
Creates a SageMaker experiment.
-
#create_feature_group(params = {}) ⇒ Types::CreateFeatureGroupResponse
Create a new ‘FeatureGroup`.
-
#create_flow_definition(params = {}) ⇒ Types::CreateFlowDefinitionResponse
Creates a flow definition.
-
#create_hub(params = {}) ⇒ Types::CreateHubResponse
Create a hub.
-
#create_hub_content_presigned_urls(params = {}) ⇒ Types::CreateHubContentPresignedUrlsResponse
Creates presigned URLs for accessing hub content artifacts.
-
#create_hub_content_reference(params = {}) ⇒ Types::CreateHubContentReferenceResponse
Create a hub content reference in order to add a model in the JumpStart public hub to a private hub.
-
#create_human_task_ui(params = {}) ⇒ Types::CreateHumanTaskUiResponse
Defines the settings you will use for the human review workflow user interface.
-
#create_hyper_parameter_tuning_job(params = {}) ⇒ Types::CreateHyperParameterTuningJobResponse
Starts a hyperparameter tuning job.
-
#create_image(params = {}) ⇒ Types::CreateImageResponse
Creates a custom SageMaker AI image.
-
#create_image_version(params = {}) ⇒ Types::CreateImageVersionResponse
Creates a version of the SageMaker AI image specified by ‘ImageName`.
-
#create_inference_component(params = {}) ⇒ Types::CreateInferenceComponentOutput
Creates an inference component, which is a SageMaker AI hosting object that you can use to deploy a model to an endpoint.
-
#create_inference_experiment(params = {}) ⇒ Types::CreateInferenceExperimentResponse
Creates an inference experiment using the configurations specified in the request.
-
#create_inference_recommendations_job(params = {}) ⇒ Types::CreateInferenceRecommendationsJobResponse
Starts a recommendation job.
-
#create_labeling_job(params = {}) ⇒ Types::CreateLabelingJobResponse
Creates a job that uses workers to label the data objects in your input dataset.
-
#create_mlflow_app(params = {}) ⇒ Types::CreateMlflowAppResponse
Creates an MLflow Tracking Server using a general purpose Amazon S3 bucket as the artifact store.
-
#create_mlflow_tracking_server(params = {}) ⇒ Types::CreateMlflowTrackingServerResponse
Creates an MLflow Tracking Server using a general purpose Amazon S3 bucket as the artifact store.
-
#create_model(params = {}) ⇒ Types::CreateModelOutput
Creates a model in SageMaker.
-
#create_model_bias_job_definition(params = {}) ⇒ Types::CreateModelBiasJobDefinitionResponse
Creates the definition for a model bias job.
-
#create_model_card(params = {}) ⇒ Types::CreateModelCardResponse
Creates an Amazon SageMaker Model Card.
-
#create_model_card_export_job(params = {}) ⇒ Types::CreateModelCardExportJobResponse
Creates an Amazon SageMaker Model Card export job.
-
#create_model_explainability_job_definition(params = {}) ⇒ Types::CreateModelExplainabilityJobDefinitionResponse
Creates the definition for a model explainability job.
-
#create_model_package(params = {}) ⇒ Types::CreateModelPackageOutput
Creates a model package that you can use to create SageMaker models or list on Amazon Web Services Marketplace, or a versioned model that is part of a model group.
-
#create_model_package_group(params = {}) ⇒ Types::CreateModelPackageGroupOutput
Creates a model group.
-
#create_model_quality_job_definition(params = {}) ⇒ Types::CreateModelQualityJobDefinitionResponse
Creates a definition for a job that monitors model quality and drift.
-
#create_monitoring_schedule(params = {}) ⇒ Types::CreateMonitoringScheduleResponse
Creates a schedule that regularly starts Amazon SageMaker AI Processing Jobs to monitor the data captured for an Amazon SageMaker AI Endpoint.
-
#create_notebook_instance(params = {}) ⇒ Types::CreateNotebookInstanceOutput
Creates an SageMaker AI notebook instance.
-
#create_notebook_instance_lifecycle_config(params = {}) ⇒ Types::CreateNotebookInstanceLifecycleConfigOutput
Creates a lifecycle configuration that you can associate with a notebook instance.
-
#create_optimization_job(params = {}) ⇒ Types::CreateOptimizationJobResponse
Creates a job that optimizes a model for inference performance.
-
#create_partner_app(params = {}) ⇒ Types::CreatePartnerAppResponse
Creates an Amazon SageMaker Partner AI App.
-
#create_partner_app_presigned_url(params = {}) ⇒ Types::CreatePartnerAppPresignedUrlResponse
Creates a presigned URL to access an Amazon SageMaker Partner AI App.
-
#create_pipeline(params = {}) ⇒ Types::CreatePipelineResponse
Creates a pipeline using a JSON pipeline definition.
-
#create_presigned_domain_url(params = {}) ⇒ Types::CreatePresignedDomainUrlResponse
Creates a URL for a specified UserProfile in a Domain.
-
#create_presigned_mlflow_app_url(params = {}) ⇒ Types::CreatePresignedMlflowAppUrlResponse
Returns a presigned URL that you can use to connect to the MLflow UI attached to your MLflow App.
-
#create_presigned_mlflow_tracking_server_url(params = {}) ⇒ Types::CreatePresignedMlflowTrackingServerUrlResponse
Returns a presigned URL that you can use to connect to the MLflow UI attached to your tracking server.
-
#create_presigned_notebook_instance_url(params = {}) ⇒ Types::CreatePresignedNotebookInstanceUrlOutput
Returns a URL that you can use to connect to the Jupyter server from a notebook instance.
-
#create_processing_job(params = {}) ⇒ Types::CreateProcessingJobResponse
Creates a processing job.
-
#create_project(params = {}) ⇒ Types::CreateProjectOutput
Creates a machine learning (ML) project that can contain one or more templates that set up an ML pipeline from training to deploying an approved model.
-
#create_space(params = {}) ⇒ Types::CreateSpaceResponse
Creates a private space or a space used for real time collaboration in a domain.
-
#create_studio_lifecycle_config(params = {}) ⇒ Types::CreateStudioLifecycleConfigResponse
Creates a new Amazon SageMaker AI Studio Lifecycle Configuration.
-
#create_training_job(params = {}) ⇒ Types::CreateTrainingJobResponse
Starts a model training job.
-
#create_training_plan(params = {}) ⇒ Types::CreateTrainingPlanResponse
Creates a new training plan in SageMaker to reserve compute capacity.
-
#create_transform_job(params = {}) ⇒ Types::CreateTransformJobResponse
Starts a transform job.
-
#create_trial(params = {}) ⇒ Types::CreateTrialResponse
Creates an SageMaker trial.
-
#create_trial_component(params = {}) ⇒ Types::CreateTrialComponentResponse
Creates a *trial component*, which is a stage of a machine learning trial.
-
#create_user_profile(params = {}) ⇒ Types::CreateUserProfileResponse
Creates a user profile.
-
#create_workforce(params = {}) ⇒ Types::CreateWorkforceResponse
Use this operation to create a workforce.
-
#create_workteam(params = {}) ⇒ Types::CreateWorkteamResponse
Creates a new work team for labeling your data.
-
#delete_action(params = {}) ⇒ Types::DeleteActionResponse
Deletes an action.
-
#delete_ai_benchmark_job(params = {}) ⇒ Types::DeleteAIBenchmarkJobResponse
Deletes the specified AI benchmark job.
-
#delete_ai_recommendation_job(params = {}) ⇒ Types::DeleteAIRecommendationJobResponse
Deletes the specified AI recommendation job.
-
#delete_ai_workload_config(params = {}) ⇒ Types::DeleteAIWorkloadConfigResponse
Deletes the specified AI workload configuration.
-
#delete_algorithm(params = {}) ⇒ Struct
Removes the specified algorithm from your account.
-
#delete_app(params = {}) ⇒ Struct
Used to stop and delete an app.
-
#delete_app_image_config(params = {}) ⇒ Struct
Deletes an AppImageConfig.
-
#delete_artifact(params = {}) ⇒ Types::DeleteArtifactResponse
Deletes an artifact.
-
#delete_association(params = {}) ⇒ Types::DeleteAssociationResponse
Deletes an association.
-
#delete_cluster(params = {}) ⇒ Types::DeleteClusterResponse
Delete a SageMaker HyperPod cluster.
-
#delete_cluster_scheduler_config(params = {}) ⇒ Struct
Deletes the cluster policy of the cluster.
-
#delete_code_repository(params = {}) ⇒ Struct
Deletes the specified Git repository from your account.
-
#delete_compilation_job(params = {}) ⇒ Struct
Deletes the specified compilation job.
-
#delete_compute_quota(params = {}) ⇒ Struct
Deletes the compute allocation from the cluster.
-
#delete_context(params = {}) ⇒ Types::DeleteContextResponse
Deletes an context.
-
#delete_data_quality_job_definition(params = {}) ⇒ Struct
Deletes a data quality monitoring job definition.
-
#delete_device_fleet(params = {}) ⇒ Struct
Deletes a fleet.
-
#delete_domain(params = {}) ⇒ Struct
Used to delete a domain.
-
#delete_edge_deployment_plan(params = {}) ⇒ Struct
Deletes an edge deployment plan if (and only if) all the stages in the plan are inactive or there are no stages in the plan.
-
#delete_edge_deployment_stage(params = {}) ⇒ Struct
Delete a stage in an edge deployment plan if (and only if) the stage is inactive.
-
#delete_endpoint(params = {}) ⇒ Struct
Deletes an endpoint.
-
#delete_endpoint_config(params = {}) ⇒ Struct
Deletes an endpoint configuration.
-
#delete_experiment(params = {}) ⇒ Types::DeleteExperimentResponse
Deletes an SageMaker experiment.
-
#delete_feature_group(params = {}) ⇒ Struct
Delete the ‘FeatureGroup` and any data that was written to the `OnlineStore` of the `FeatureGroup`.
-
#delete_flow_definition(params = {}) ⇒ Struct
Deletes the specified flow definition.
-
#delete_hub(params = {}) ⇒ Struct
Delete a hub.
-
#delete_hub_content(params = {}) ⇒ Struct
Delete the contents of a hub.
-
#delete_hub_content_reference(params = {}) ⇒ Struct
Delete a hub content reference in order to remove a model from a private hub.
-
#delete_human_task_ui(params = {}) ⇒ Struct
Use this operation to delete a human task user interface (worker task template).
-
#delete_hyper_parameter_tuning_job(params = {}) ⇒ Struct
Deletes a hyperparameter tuning job.
-
#delete_image(params = {}) ⇒ Struct
Deletes a SageMaker AI image and all versions of the image.
-
#delete_image_version(params = {}) ⇒ Struct
Deletes a version of a SageMaker AI image.
-
#delete_inference_component(params = {}) ⇒ Struct
Deletes an inference component.
-
#delete_inference_experiment(params = {}) ⇒ Types::DeleteInferenceExperimentResponse
Deletes an inference experiment.
-
#delete_mlflow_app(params = {}) ⇒ Types::DeleteMlflowAppResponse
Deletes an MLflow App.
-
#delete_mlflow_tracking_server(params = {}) ⇒ Types::DeleteMlflowTrackingServerResponse
Deletes an MLflow Tracking Server.
-
#delete_model(params = {}) ⇒ Struct
Deletes a model.
-
#delete_model_bias_job_definition(params = {}) ⇒ Struct
Deletes an Amazon SageMaker AI model bias job definition.
-
#delete_model_card(params = {}) ⇒ Struct
Deletes an Amazon SageMaker Model Card.
-
#delete_model_explainability_job_definition(params = {}) ⇒ Struct
Deletes an Amazon SageMaker AI model explainability job definition.
-
#delete_model_package(params = {}) ⇒ Struct
Deletes a model package.
-
#delete_model_package_group(params = {}) ⇒ Struct
Deletes the specified model group.
-
#delete_model_package_group_policy(params = {}) ⇒ Struct
Deletes a model group resource policy.
-
#delete_model_quality_job_definition(params = {}) ⇒ Struct
Deletes the secified model quality monitoring job definition.
-
#delete_monitoring_schedule(params = {}) ⇒ Struct
Deletes a monitoring schedule.
-
#delete_notebook_instance(params = {}) ⇒ Struct
Deletes an SageMaker AI notebook instance.
-
#delete_notebook_instance_lifecycle_config(params = {}) ⇒ Struct
Deletes a notebook instance lifecycle configuration.
-
#delete_optimization_job(params = {}) ⇒ Struct
Deletes an optimization job.
-
#delete_partner_app(params = {}) ⇒ Types::DeletePartnerAppResponse
Deletes a SageMaker Partner AI App.
-
#delete_pipeline(params = {}) ⇒ Types::DeletePipelineResponse
Deletes a pipeline if there are no running instances of the pipeline.
-
#delete_processing_job(params = {}) ⇒ Struct
Deletes a processing job.
-
#delete_project(params = {}) ⇒ Struct
Delete the specified project.
-
#delete_space(params = {}) ⇒ Struct
Used to delete a space.
-
#delete_studio_lifecycle_config(params = {}) ⇒ Struct
Deletes the Amazon SageMaker AI Studio Lifecycle Configuration.
-
#delete_tags(params = {}) ⇒ Struct
Deletes the specified tags from an SageMaker resource.
-
#delete_training_job(params = {}) ⇒ Struct
Deletes a training job.
-
#delete_trial(params = {}) ⇒ Types::DeleteTrialResponse
Deletes the specified trial.
-
#delete_trial_component(params = {}) ⇒ Types::DeleteTrialComponentResponse
Deletes the specified trial component.
-
#delete_user_profile(params = {}) ⇒ Struct
Deletes a user profile.
-
#delete_workforce(params = {}) ⇒ Struct
Use this operation to delete a workforce.
-
#delete_workteam(params = {}) ⇒ Types::DeleteWorkteamResponse
Deletes an existing work team.
-
#deregister_devices(params = {}) ⇒ Struct
Deregisters the specified devices.
-
#describe_action(params = {}) ⇒ Types::DescribeActionResponse
Describes an action.
-
#describe_ai_benchmark_job(params = {}) ⇒ Types::DescribeAIBenchmarkJobResponse
Returns details of an AI benchmark job, including its status, configuration, target endpoint, and timing information.
-
#describe_ai_recommendation_job(params = {}) ⇒ Types::DescribeAIRecommendationJobResponse
Returns details of an AI recommendation job, including its status, model source, performance targets, optimization recommendations, and deployment configurations.
-
#describe_ai_workload_config(params = {}) ⇒ Types::DescribeAIWorkloadConfigResponse
Returns details of an AI workload configuration, including the dataset configuration, benchmark tool settings, tags, and creation time.
-
#describe_algorithm(params = {}) ⇒ Types::DescribeAlgorithmOutput
Returns a description of the specified algorithm that is in your account.
-
#describe_app(params = {}) ⇒ Types::DescribeAppResponse
Describes the app.
-
#describe_app_image_config(params = {}) ⇒ Types::DescribeAppImageConfigResponse
Describes an AppImageConfig.
-
#describe_artifact(params = {}) ⇒ Types::DescribeArtifactResponse
Describes an artifact.
-
#describe_auto_ml_job(params = {}) ⇒ Types::DescribeAutoMLJobResponse
Returns information about an AutoML job created by calling [CreateAutoMLJob].
-
#describe_auto_ml_job_v2(params = {}) ⇒ Types::DescribeAutoMLJobV2Response
Returns information about an AutoML job created by calling [CreateAutoMLJobV2] or [CreateAutoMLJob].
-
#describe_cluster(params = {}) ⇒ Types::DescribeClusterResponse
Retrieves information of a SageMaker HyperPod cluster.
-
#describe_cluster_event(params = {}) ⇒ Types::DescribeClusterEventResponse
Retrieves detailed information about a specific event for a given HyperPod cluster.
-
#describe_cluster_node(params = {}) ⇒ Types::DescribeClusterNodeResponse
Retrieves information of a node (also called a instance interchangeably) of a SageMaker HyperPod cluster.
-
#describe_cluster_scheduler_config(params = {}) ⇒ Types::DescribeClusterSchedulerConfigResponse
Description of the cluster policy.
-
#describe_code_repository(params = {}) ⇒ Types::DescribeCodeRepositoryOutput
Gets details about the specified Git repository.
-
#describe_compilation_job(params = {}) ⇒ Types::DescribeCompilationJobResponse
Returns information about a model compilation job.
-
#describe_compute_quota(params = {}) ⇒ Types::DescribeComputeQuotaResponse
Description of the compute allocation definition.
-
#describe_context(params = {}) ⇒ Types::DescribeContextResponse
Describes a context.
-
#describe_data_quality_job_definition(params = {}) ⇒ Types::DescribeDataQualityJobDefinitionResponse
Gets the details of a data quality monitoring job definition.
-
#describe_device(params = {}) ⇒ Types::DescribeDeviceResponse
Describes the device.
-
#describe_device_fleet(params = {}) ⇒ Types::DescribeDeviceFleetResponse
A description of the fleet the device belongs to.
-
#describe_domain(params = {}) ⇒ Types::DescribeDomainResponse
The description of the domain.
-
#describe_edge_deployment_plan(params = {}) ⇒ Types::DescribeEdgeDeploymentPlanResponse
Describes an edge deployment plan with deployment status per stage.
-
#describe_edge_packaging_job(params = {}) ⇒ Types::DescribeEdgePackagingJobResponse
A description of edge packaging jobs.
-
#describe_endpoint(params = {}) ⇒ Types::DescribeEndpointOutput
Returns the description of an endpoint.
-
#describe_endpoint_config(params = {}) ⇒ Types::DescribeEndpointConfigOutput
Returns the description of an endpoint configuration created using the ‘CreateEndpointConfig` API.
-
#describe_experiment(params = {}) ⇒ Types::DescribeExperimentResponse
Provides a list of an experiment’s properties.
-
#describe_feature_group(params = {}) ⇒ Types::DescribeFeatureGroupResponse
Use this operation to describe a ‘FeatureGroup`.
-
#describe_feature_metadata(params = {}) ⇒ Types::DescribeFeatureMetadataResponse
Shows the metadata for a feature within a feature group.
-
#describe_flow_definition(params = {}) ⇒ Types::DescribeFlowDefinitionResponse
Returns information about the specified flow definition.
-
#describe_hub(params = {}) ⇒ Types::DescribeHubResponse
Describes a hub.
-
#describe_hub_content(params = {}) ⇒ Types::DescribeHubContentResponse
Describe the content of a hub.
-
#describe_human_task_ui(params = {}) ⇒ Types::DescribeHumanTaskUiResponse
Returns information about the requested human task user interface (worker task template).
-
#describe_hyper_parameter_tuning_job(params = {}) ⇒ Types::DescribeHyperParameterTuningJobResponse
Returns a description of a hyperparameter tuning job, depending on the fields selected.
-
#describe_image(params = {}) ⇒ Types::DescribeImageResponse
Describes a SageMaker AI image.
-
#describe_image_version(params = {}) ⇒ Types::DescribeImageVersionResponse
Describes a version of a SageMaker AI image.
-
#describe_inference_component(params = {}) ⇒ Types::DescribeInferenceComponentOutput
Returns information about an inference component.
-
#describe_inference_experiment(params = {}) ⇒ Types::DescribeInferenceExperimentResponse
Returns details about an inference experiment.
-
#describe_inference_recommendations_job(params = {}) ⇒ Types::DescribeInferenceRecommendationsJobResponse
Provides the results of the Inference Recommender job.
-
#describe_labeling_job(params = {}) ⇒ Types::DescribeLabelingJobResponse
Gets information about a labeling job.
-
#describe_lineage_group(params = {}) ⇒ Types::DescribeLineageGroupResponse
Provides a list of properties for the requested lineage group.
-
#describe_mlflow_app(params = {}) ⇒ Types::DescribeMlflowAppResponse
Returns information about an MLflow App.
-
#describe_mlflow_tracking_server(params = {}) ⇒ Types::DescribeMlflowTrackingServerResponse
Returns information about an MLflow Tracking Server.
-
#describe_model(params = {}) ⇒ Types::DescribeModelOutput
Describes a model that you created using the ‘CreateModel` API.
-
#describe_model_bias_job_definition(params = {}) ⇒ Types::DescribeModelBiasJobDefinitionResponse
Returns a description of a model bias job definition.
-
#describe_model_card(params = {}) ⇒ Types::DescribeModelCardResponse
Describes the content, creation time, and security configuration of an Amazon SageMaker Model Card.
-
#describe_model_card_export_job(params = {}) ⇒ Types::DescribeModelCardExportJobResponse
Describes an Amazon SageMaker Model Card export job.
-
#describe_model_explainability_job_definition(params = {}) ⇒ Types::DescribeModelExplainabilityJobDefinitionResponse
Returns a description of a model explainability job definition.
-
#describe_model_package(params = {}) ⇒ Types::DescribeModelPackageOutput
Returns a description of the specified model package, which is used to create SageMaker models or list them on Amazon Web Services Marketplace.
-
#describe_model_package_group(params = {}) ⇒ Types::DescribeModelPackageGroupOutput
Gets a description for the specified model group.
-
#describe_model_quality_job_definition(params = {}) ⇒ Types::DescribeModelQualityJobDefinitionResponse
Returns a description of a model quality job definition.
-
#describe_monitoring_schedule(params = {}) ⇒ Types::DescribeMonitoringScheduleResponse
Describes the schedule for a monitoring job.
-
#describe_notebook_instance(params = {}) ⇒ Types::DescribeNotebookInstanceOutput
Returns information about a notebook instance.
-
#describe_notebook_instance_lifecycle_config(params = {}) ⇒ Types::DescribeNotebookInstanceLifecycleConfigOutput
Returns a description of a notebook instance lifecycle configuration.
-
#describe_optimization_job(params = {}) ⇒ Types::DescribeOptimizationJobResponse
Provides the properties of the specified optimization job.
-
#describe_partner_app(params = {}) ⇒ Types::DescribePartnerAppResponse
Gets information about a SageMaker Partner AI App.
-
#describe_pipeline(params = {}) ⇒ Types::DescribePipelineResponse
Describes the details of a pipeline.
-
#describe_pipeline_definition_for_execution(params = {}) ⇒ Types::DescribePipelineDefinitionForExecutionResponse
Describes the details of an execution’s pipeline definition.
-
#describe_pipeline_execution(params = {}) ⇒ Types::DescribePipelineExecutionResponse
Describes the details of a pipeline execution.
-
#describe_processing_job(params = {}) ⇒ Types::DescribeProcessingJobResponse
Returns a description of a processing job.
-
#describe_project(params = {}) ⇒ Types::DescribeProjectOutput
Describes the details of a project.
-
#describe_reserved_capacity(params = {}) ⇒ Types::DescribeReservedCapacityResponse
Retrieves details about a reserved capacity.
-
#describe_space(params = {}) ⇒ Types::DescribeSpaceResponse
Describes the space.
-
#describe_studio_lifecycle_config(params = {}) ⇒ Types::DescribeStudioLifecycleConfigResponse
Describes the Amazon SageMaker AI Studio Lifecycle Configuration.
-
#describe_subscribed_workteam(params = {}) ⇒ Types::DescribeSubscribedWorkteamResponse
Gets information about a work team provided by a vendor.
-
#describe_training_job(params = {}) ⇒ Types::DescribeTrainingJobResponse
Returns information about a training job.
-
#describe_training_plan(params = {}) ⇒ Types::DescribeTrainingPlanResponse
Retrieves detailed information about a specific training plan.
-
#describe_training_plan_extension_history(params = {}) ⇒ Types::DescribeTrainingPlanExtensionHistoryResponse
Retrieves the extension history for a specified training plan.
-
#describe_transform_job(params = {}) ⇒ Types::DescribeTransformJobResponse
Returns information about a transform job.
-
#describe_trial(params = {}) ⇒ Types::DescribeTrialResponse
Provides a list of a trial’s properties.
-
#describe_trial_component(params = {}) ⇒ Types::DescribeTrialComponentResponse
Provides a list of a trials component’s properties.
-
#describe_user_profile(params = {}) ⇒ Types::DescribeUserProfileResponse
Describes a user profile.
-
#describe_workforce(params = {}) ⇒ Types::DescribeWorkforceResponse
Lists private workforce information, including workforce name, Amazon Resource Name (ARN), and, if applicable, allowed IP address ranges ([CIDRs]).
-
#describe_workteam(params = {}) ⇒ Types::DescribeWorkteamResponse
Gets information about a specific work team.
-
#detach_cluster_node_volume(params = {}) ⇒ Types::DetachClusterNodeVolumeResponse
Detaches your Amazon Elastic Block Store (Amazon EBS) volume from a node in your EKS orchestrated SageMaker HyperPod cluster.
-
#disable_sagemaker_servicecatalog_portfolio(params = {}) ⇒ Struct
Disables using Service Catalog in SageMaker.
-
#disassociate_trial_component(params = {}) ⇒ Types::DisassociateTrialComponentResponse
Disassociates a trial component from a trial.
-
#enable_sagemaker_servicecatalog_portfolio(params = {}) ⇒ Struct
Enables using Service Catalog in SageMaker.
-
#extend_training_plan(params = {}) ⇒ Types::ExtendTrainingPlanResponse
Extends an existing training plan by purchasing an extension offering.
-
#get_device_fleet_report(params = {}) ⇒ Types::GetDeviceFleetReportResponse
Describes a fleet.
-
#get_lineage_group_policy(params = {}) ⇒ Types::GetLineageGroupPolicyResponse
The resource policy for the lineage group.
-
#get_model_package_group_policy(params = {}) ⇒ Types::GetModelPackageGroupPolicyOutput
Gets a resource policy that manages access for a model group.
-
#get_sagemaker_servicecatalog_portfolio_status(params = {}) ⇒ Types::GetSagemakerServicecatalogPortfolioStatusOutput
Gets the status of Service Catalog in SageMaker.
-
#get_scaling_configuration_recommendation(params = {}) ⇒ Types::GetScalingConfigurationRecommendationResponse
Starts an Amazon SageMaker Inference Recommender autoscaling recommendation job.
-
#get_search_suggestions(params = {}) ⇒ Types::GetSearchSuggestionsResponse
An auto-complete API for the search functionality in the SageMaker console.
-
#import_hub_content(params = {}) ⇒ Types::ImportHubContentResponse
Import hub content.
-
#list_actions(params = {}) ⇒ Types::ListActionsResponse
Lists the actions in your account and their properties.
-
#list_ai_benchmark_jobs(params = {}) ⇒ Types::ListAIBenchmarkJobsResponse
Returns a list of AI benchmark jobs in your account.
-
#list_ai_recommendation_jobs(params = {}) ⇒ Types::ListAIRecommendationJobsResponse
Returns a list of AI recommendation jobs in your account.
-
#list_ai_workload_configs(params = {}) ⇒ Types::ListAIWorkloadConfigsResponse
Returns a list of AI workload configurations in your account.
-
#list_algorithms(params = {}) ⇒ Types::ListAlgorithmsOutput
Lists the machine learning algorithms that have been created.
-
#list_aliases(params = {}) ⇒ Types::ListAliasesResponse
Lists the aliases of a specified image or image version.
-
#list_app_image_configs(params = {}) ⇒ Types::ListAppImageConfigsResponse
Lists the AppImageConfigs in your account and their properties.
-
#list_apps(params = {}) ⇒ Types::ListAppsResponse
Lists apps.
-
#list_artifacts(params = {}) ⇒ Types::ListArtifactsResponse
Lists the artifacts in your account and their properties.
-
#list_associations(params = {}) ⇒ Types::ListAssociationsResponse
Lists the associations in your account and their properties.
-
#list_auto_ml_jobs(params = {}) ⇒ Types::ListAutoMLJobsResponse
Request a list of jobs.
-
#list_candidates_for_auto_ml_job(params = {}) ⇒ Types::ListCandidatesForAutoMLJobResponse
List the candidates created for the job.
-
#list_cluster_events(params = {}) ⇒ Types::ListClusterEventsResponse
Retrieves a list of event summaries for a specified HyperPod cluster.
-
#list_cluster_nodes(params = {}) ⇒ Types::ListClusterNodesResponse
Retrieves the list of instances (also called nodes interchangeably) in a SageMaker HyperPod cluster.
-
#list_cluster_scheduler_configs(params = {}) ⇒ Types::ListClusterSchedulerConfigsResponse
List the cluster policy configurations.
-
#list_clusters(params = {}) ⇒ Types::ListClustersResponse
Retrieves the list of SageMaker HyperPod clusters.
-
#list_code_repositories(params = {}) ⇒ Types::ListCodeRepositoriesOutput
Gets a list of the Git repositories in your account.
-
#list_compilation_jobs(params = {}) ⇒ Types::ListCompilationJobsResponse
Lists model compilation jobs that satisfy various filters.
-
#list_compute_quotas(params = {}) ⇒ Types::ListComputeQuotasResponse
List the resource allocation definitions.
-
#list_contexts(params = {}) ⇒ Types::ListContextsResponse
Lists the contexts in your account and their properties.
-
#list_data_quality_job_definitions(params = {}) ⇒ Types::ListDataQualityJobDefinitionsResponse
Lists the data quality job definitions in your account.
-
#list_device_fleets(params = {}) ⇒ Types::ListDeviceFleetsResponse
Returns a list of devices in the fleet.
-
#list_devices(params = {}) ⇒ Types::ListDevicesResponse
A list of devices.
-
#list_domains(params = {}) ⇒ Types::ListDomainsResponse
Lists the domains.
-
#list_edge_deployment_plans(params = {}) ⇒ Types::ListEdgeDeploymentPlansResponse
Lists all edge deployment plans.
-
#list_edge_packaging_jobs(params = {}) ⇒ Types::ListEdgePackagingJobsResponse
Returns a list of edge packaging jobs.
-
#list_endpoint_configs(params = {}) ⇒ Types::ListEndpointConfigsOutput
Lists endpoint configurations.
-
#list_endpoints(params = {}) ⇒ Types::ListEndpointsOutput
Lists endpoints.
-
#list_experiments(params = {}) ⇒ Types::ListExperimentsResponse
Lists all the experiments in your account.
-
#list_feature_groups(params = {}) ⇒ Types::ListFeatureGroupsResponse
List ‘FeatureGroup`s based on given filter and order.
-
#list_flow_definitions(params = {}) ⇒ Types::ListFlowDefinitionsResponse
Returns information about the flow definitions in your account.
-
#list_hub_content_versions(params = {}) ⇒ Types::ListHubContentVersionsResponse
List hub content versions.
-
#list_hub_contents(params = {}) ⇒ Types::ListHubContentsResponse
List the contents of a hub.
-
#list_hubs(params = {}) ⇒ Types::ListHubsResponse
List all existing hubs.
-
#list_human_task_uis(params = {}) ⇒ Types::ListHumanTaskUisResponse
Returns information about the human task user interfaces in your account.
-
#list_hyper_parameter_tuning_jobs(params = {}) ⇒ Types::ListHyperParameterTuningJobsResponse
Gets a list of [HyperParameterTuningJobSummary] objects that describe the hyperparameter tuning jobs launched in your account.
-
#list_image_versions(params = {}) ⇒ Types::ListImageVersionsResponse
Lists the versions of a specified image and their properties.
-
#list_images(params = {}) ⇒ Types::ListImagesResponse
Lists the images in your account and their properties.
-
#list_inference_components(params = {}) ⇒ Types::ListInferenceComponentsOutput
Lists the inference components in your account and their properties.
-
#list_inference_experiments(params = {}) ⇒ Types::ListInferenceExperimentsResponse
Returns the list of all inference experiments.
-
#list_inference_recommendations_job_steps(params = {}) ⇒ Types::ListInferenceRecommendationsJobStepsResponse
Returns a list of the subtasks for an Inference Recommender job.
-
#list_inference_recommendations_jobs(params = {}) ⇒ Types::ListInferenceRecommendationsJobsResponse
Lists recommendation jobs that satisfy various filters.
-
#list_labeling_jobs(params = {}) ⇒ Types::ListLabelingJobsResponse
Gets a list of labeling jobs.
-
#list_labeling_jobs_for_workteam(params = {}) ⇒ Types::ListLabelingJobsForWorkteamResponse
Gets a list of labeling jobs assigned to a specified work team.
-
#list_lineage_groups(params = {}) ⇒ Types::ListLineageGroupsResponse
A list of lineage groups shared with your Amazon Web Services account.
-
#list_mlflow_apps(params = {}) ⇒ Types::ListMlflowAppsResponse
Lists all MLflow Apps.
-
#list_mlflow_tracking_servers(params = {}) ⇒ Types::ListMlflowTrackingServersResponse
Lists all MLflow Tracking Servers.
-
#list_model_bias_job_definitions(params = {}) ⇒ Types::ListModelBiasJobDefinitionsResponse
Lists model bias jobs definitions that satisfy various filters.
-
#list_model_card_export_jobs(params = {}) ⇒ Types::ListModelCardExportJobsResponse
List the export jobs for the Amazon SageMaker Model Card.
-
#list_model_card_versions(params = {}) ⇒ Types::ListModelCardVersionsResponse
List existing versions of an Amazon SageMaker Model Card.
-
#list_model_cards(params = {}) ⇒ Types::ListModelCardsResponse
List existing model cards.
-
#list_model_explainability_job_definitions(params = {}) ⇒ Types::ListModelExplainabilityJobDefinitionsResponse
Lists model explainability job definitions that satisfy various filters.
-
#list_model_metadata(params = {}) ⇒ Types::ListModelMetadataResponse
Lists the domain, framework, task, and model name of standard machine learning models found in common model zoos.
-
#list_model_package_groups(params = {}) ⇒ Types::ListModelPackageGroupsOutput
Gets a list of the model groups in your Amazon Web Services account.
-
#list_model_packages(params = {}) ⇒ Types::ListModelPackagesOutput
Lists the model packages that have been created.
-
#list_model_quality_job_definitions(params = {}) ⇒ Types::ListModelQualityJobDefinitionsResponse
Gets a list of model quality monitoring job definitions in your account.
-
#list_models(params = {}) ⇒ Types::ListModelsOutput
Lists models created with the ‘CreateModel` API.
-
#list_monitoring_alert_history(params = {}) ⇒ Types::ListMonitoringAlertHistoryResponse
Gets a list of past alerts in a model monitoring schedule.
-
#list_monitoring_alerts(params = {}) ⇒ Types::ListMonitoringAlertsResponse
Gets the alerts for a single monitoring schedule.
-
#list_monitoring_executions(params = {}) ⇒ Types::ListMonitoringExecutionsResponse
Returns list of all monitoring job executions.
-
#list_monitoring_schedules(params = {}) ⇒ Types::ListMonitoringSchedulesResponse
Returns list of all monitoring schedules.
-
#list_notebook_instance_lifecycle_configs(params = {}) ⇒ Types::ListNotebookInstanceLifecycleConfigsOutput
Lists notebook instance lifestyle configurations created with the [CreateNotebookInstanceLifecycleConfig] API.
-
#list_notebook_instances(params = {}) ⇒ Types::ListNotebookInstancesOutput
Returns a list of the SageMaker AI notebook instances in the requester’s account in an Amazon Web Services Region.
-
#list_optimization_jobs(params = {}) ⇒ Types::ListOptimizationJobsResponse
Lists the optimization jobs in your account and their properties.
-
#list_partner_apps(params = {}) ⇒ Types::ListPartnerAppsResponse
Lists all of the SageMaker Partner AI Apps in an account.
-
#list_pipeline_execution_steps(params = {}) ⇒ Types::ListPipelineExecutionStepsResponse
Gets a list of ‘PipeLineExecutionStep` objects.
-
#list_pipeline_executions(params = {}) ⇒ Types::ListPipelineExecutionsResponse
Gets a list of the pipeline executions.
-
#list_pipeline_parameters_for_execution(params = {}) ⇒ Types::ListPipelineParametersForExecutionResponse
Gets a list of parameters for a pipeline execution.
-
#list_pipeline_versions(params = {}) ⇒ Types::ListPipelineVersionsResponse
Gets a list of all versions of the pipeline.
-
#list_pipelines(params = {}) ⇒ Types::ListPipelinesResponse
Gets a list of pipelines.
-
#list_processing_jobs(params = {}) ⇒ Types::ListProcessingJobsResponse
Lists processing jobs that satisfy various filters.
-
#list_projects(params = {}) ⇒ Types::ListProjectsOutput
Gets a list of the projects in an Amazon Web Services account.
-
#list_resource_catalogs(params = {}) ⇒ Types::ListResourceCatalogsResponse
Lists Amazon SageMaker Catalogs based on given filters and orders.
-
#list_spaces(params = {}) ⇒ Types::ListSpacesResponse
Lists spaces.
-
#list_stage_devices(params = {}) ⇒ Types::ListStageDevicesResponse
Lists devices allocated to the stage, containing detailed device information and deployment status.
-
#list_studio_lifecycle_configs(params = {}) ⇒ Types::ListStudioLifecycleConfigsResponse
Lists the Amazon SageMaker AI Studio Lifecycle Configurations in your Amazon Web Services Account.
-
#list_subscribed_workteams(params = {}) ⇒ Types::ListSubscribedWorkteamsResponse
Gets a list of the work teams that you are subscribed to in the Amazon Web Services Marketplace.
-
#list_tags(params = {}) ⇒ Types::ListTagsOutput
Returns the tags for the specified SageMaker resource.
-
#list_training_jobs(params = {}) ⇒ Types::ListTrainingJobsResponse
Lists training jobs.
-
#list_training_jobs_for_hyper_parameter_tuning_job(params = {}) ⇒ Types::ListTrainingJobsForHyperParameterTuningJobResponse
Gets a list of [TrainingJobSummary] objects that describe the training jobs that a hyperparameter tuning job launched.
-
#list_training_plans(params = {}) ⇒ Types::ListTrainingPlansResponse
Retrieves a list of training plans for the current account.
-
#list_transform_jobs(params = {}) ⇒ Types::ListTransformJobsResponse
Lists transform jobs.
-
#list_trial_components(params = {}) ⇒ Types::ListTrialComponentsResponse
Lists the trial components in your account.
-
#list_trials(params = {}) ⇒ Types::ListTrialsResponse
Lists the trials in your account.
-
#list_ultra_servers_by_reserved_capacity(params = {}) ⇒ Types::ListUltraServersByReservedCapacityResponse
Lists all UltraServers that are part of a specified reserved capacity.
-
#list_user_profiles(params = {}) ⇒ Types::ListUserProfilesResponse
Lists user profiles.
-
#list_workforces(params = {}) ⇒ Types::ListWorkforcesResponse
Use this operation to list all private and vendor workforces in an Amazon Web Services Region.
-
#list_workteams(params = {}) ⇒ Types::ListWorkteamsResponse
Gets a list of private work teams that you have defined in a region.
-
#put_model_package_group_policy(params = {}) ⇒ Types::PutModelPackageGroupPolicyOutput
Adds a resouce policy to control access to a model group.
-
#query_lineage(params = {}) ⇒ Types::QueryLineageResponse
Use this action to inspect your lineage and discover relationships between entities.
-
#register_devices(params = {}) ⇒ Struct
Register devices.
-
#render_ui_template(params = {}) ⇒ Types::RenderUiTemplateResponse
Renders the UI template so that you can preview the worker’s experience.
-
#retry_pipeline_execution(params = {}) ⇒ Types::RetryPipelineExecutionResponse
Retry the execution of the pipeline.
-
#search(params = {}) ⇒ Types::SearchResponse
Finds SageMaker resources that match a search query.
-
#search_training_plan_offerings(params = {}) ⇒ Types::SearchTrainingPlanOfferingsResponse
Searches for available training plan offerings based on specified criteria.
-
#send_pipeline_execution_step_failure(params = {}) ⇒ Types::SendPipelineExecutionStepFailureResponse
Notifies the pipeline that the execution of a callback step failed, along with a message describing why.
-
#send_pipeline_execution_step_success(params = {}) ⇒ Types::SendPipelineExecutionStepSuccessResponse
Notifies the pipeline that the execution of a callback step succeeded and provides a list of the step’s output parameters.
-
#start_cluster_health_check(params = {}) ⇒ Types::StartClusterHealthCheckResponse
Start deep health checks for a SageMaker HyperPod cluster.
-
#start_edge_deployment_stage(params = {}) ⇒ Struct
Starts a stage in an edge deployment plan.
-
#start_inference_experiment(params = {}) ⇒ Types::StartInferenceExperimentResponse
Starts an inference experiment.
-
#start_mlflow_tracking_server(params = {}) ⇒ Types::StartMlflowTrackingServerResponse
Programmatically start an MLflow Tracking Server.
-
#start_monitoring_schedule(params = {}) ⇒ Struct
Starts a previously stopped monitoring schedule.
-
#start_notebook_instance(params = {}) ⇒ Struct
Launches an ML compute instance with the latest version of the libraries and attaches your ML storage volume.
-
#start_pipeline_execution(params = {}) ⇒ Types::StartPipelineExecutionResponse
Starts a pipeline execution.
-
#start_session(params = {}) ⇒ Types::StartSessionResponse
Initiates a remote connection session between a local integrated development environments (IDEs) and a remote SageMaker space.
-
#stop_ai_benchmark_job(params = {}) ⇒ Types::StopAIBenchmarkJobResponse
Stops a running AI benchmark job.
-
#stop_ai_recommendation_job(params = {}) ⇒ Types::StopAIRecommendationJobResponse
Stops a running AI recommendation job.
-
#stop_auto_ml_job(params = {}) ⇒ Struct
A method for forcing a running job to shut down.
-
#stop_compilation_job(params = {}) ⇒ Struct
Stops a model compilation job.
-
#stop_edge_deployment_stage(params = {}) ⇒ Struct
Stops a stage in an edge deployment plan.
-
#stop_edge_packaging_job(params = {}) ⇒ Struct
Request to stop an edge packaging job.
-
#stop_hyper_parameter_tuning_job(params = {}) ⇒ Struct
Stops a running hyperparameter tuning job and all running training jobs that the tuning job launched.
-
#stop_inference_experiment(params = {}) ⇒ Types::StopInferenceExperimentResponse
Stops an inference experiment.
-
#stop_inference_recommendations_job(params = {}) ⇒ Struct
Stops an Inference Recommender job.
-
#stop_labeling_job(params = {}) ⇒ Struct
Stops a running labeling job.
-
#stop_mlflow_tracking_server(params = {}) ⇒ Types::StopMlflowTrackingServerResponse
Programmatically stop an MLflow Tracking Server.
-
#stop_monitoring_schedule(params = {}) ⇒ Struct
Stops a previously started monitoring schedule.
-
#stop_notebook_instance(params = {}) ⇒ Struct
Terminates the ML compute instance.
-
#stop_optimization_job(params = {}) ⇒ Struct
Ends a running inference optimization job.
-
#stop_pipeline_execution(params = {}) ⇒ Types::StopPipelineExecutionResponse
Stops a pipeline execution.
-
#stop_processing_job(params = {}) ⇒ Struct
Stops a processing job.
-
#stop_training_job(params = {}) ⇒ Struct
Stops a training job.
-
#stop_transform_job(params = {}) ⇒ Struct
Stops a batch transform job.
-
#update_action(params = {}) ⇒ Types::UpdateActionResponse
Updates an action.
-
#update_app_image_config(params = {}) ⇒ Types::UpdateAppImageConfigResponse
Updates the properties of an AppImageConfig.
-
#update_artifact(params = {}) ⇒ Types::UpdateArtifactResponse
Updates an artifact.
-
#update_cluster(params = {}) ⇒ Types::UpdateClusterResponse
Updates a SageMaker HyperPod cluster.
-
#update_cluster_scheduler_config(params = {}) ⇒ Types::UpdateClusterSchedulerConfigResponse
Update the cluster policy configuration.
-
#update_cluster_software(params = {}) ⇒ Types::UpdateClusterSoftwareResponse
Updates the platform software of a SageMaker HyperPod cluster for security patching.
-
#update_code_repository(params = {}) ⇒ Types::UpdateCodeRepositoryOutput
Updates the specified Git repository with the specified values.
-
#update_compute_quota(params = {}) ⇒ Types::UpdateComputeQuotaResponse
Update the compute allocation definition.
-
#update_context(params = {}) ⇒ Types::UpdateContextResponse
Updates a context.
-
#update_device_fleet(params = {}) ⇒ Struct
Updates a fleet of devices.
-
#update_devices(params = {}) ⇒ Struct
Updates one or more devices in a fleet.
-
#update_domain(params = {}) ⇒ Types::UpdateDomainResponse
Updates the default settings for new user profiles in the domain.
-
#update_endpoint(params = {}) ⇒ Types::UpdateEndpointOutput
Deploys the ‘EndpointConfig` specified in the request to a new fleet of instances.
-
#update_endpoint_weights_and_capacities(params = {}) ⇒ Types::UpdateEndpointWeightsAndCapacitiesOutput
Updates variant weight of one or more variants associated with an existing endpoint, or capacity of one variant associated with an existing endpoint.
-
#update_experiment(params = {}) ⇒ Types::UpdateExperimentResponse
Adds, updates, or removes the description of an experiment.
-
#update_feature_group(params = {}) ⇒ Types::UpdateFeatureGroupResponse
Updates the feature group by either adding features or updating the online store configuration.
-
#update_feature_metadata(params = {}) ⇒ Struct
Updates the description and parameters of the feature group.
-
#update_hub(params = {}) ⇒ Types::UpdateHubResponse
Update a hub.
-
#update_hub_content(params = {}) ⇒ Types::UpdateHubContentResponse
Updates SageMaker hub content (either a ‘Model` or `Notebook` resource).
-
#update_hub_content_reference(params = {}) ⇒ Types::UpdateHubContentReferenceResponse
Updates the contents of a SageMaker hub for a ‘ModelReference` resource.
-
#update_image(params = {}) ⇒ Types::UpdateImageResponse
Updates the properties of a SageMaker AI image.
-
#update_image_version(params = {}) ⇒ Types::UpdateImageVersionResponse
Updates the properties of a SageMaker AI image version.
-
#update_inference_component(params = {}) ⇒ Types::UpdateInferenceComponentOutput
Updates an inference component.
-
#update_inference_component_runtime_config(params = {}) ⇒ Types::UpdateInferenceComponentRuntimeConfigOutput
Runtime settings for a model that is deployed with an inference component.
-
#update_inference_experiment(params = {}) ⇒ Types::UpdateInferenceExperimentResponse
Updates an inference experiment that you created.
-
#update_mlflow_app(params = {}) ⇒ Types::UpdateMlflowAppResponse
Updates an MLflow App.
-
#update_mlflow_tracking_server(params = {}) ⇒ Types::UpdateMlflowTrackingServerResponse
Updates properties of an existing MLflow Tracking Server.
-
#update_model_card(params = {}) ⇒ Types::UpdateModelCardResponse
Update an Amazon SageMaker Model Card.
-
#update_model_package(params = {}) ⇒ Types::UpdateModelPackageOutput
Updates a versioned model.
-
#update_monitoring_alert(params = {}) ⇒ Types::UpdateMonitoringAlertResponse
Update the parameters of a model monitor alert.
-
#update_monitoring_schedule(params = {}) ⇒ Types::UpdateMonitoringScheduleResponse
Updates a previously created schedule.
-
#update_notebook_instance(params = {}) ⇒ Struct
Updates a notebook instance.
-
#update_notebook_instance_lifecycle_config(params = {}) ⇒ Struct
Updates a notebook instance lifecycle configuration created with the [CreateNotebookInstanceLifecycleConfig] API.
-
#update_partner_app(params = {}) ⇒ Types::UpdatePartnerAppResponse
Updates all of the SageMaker Partner AI Apps in an account.
-
#update_pipeline(params = {}) ⇒ Types::UpdatePipelineResponse
Updates a pipeline.
-
#update_pipeline_execution(params = {}) ⇒ Types::UpdatePipelineExecutionResponse
Updates a pipeline execution.
-
#update_pipeline_version(params = {}) ⇒ Types::UpdatePipelineVersionResponse
Updates a pipeline version.
-
#update_project(params = {}) ⇒ Types::UpdateProjectOutput
Updates a machine learning (ML) project that is created from a template that sets up an ML pipeline from training to deploying an approved model.
-
#update_space(params = {}) ⇒ Types::UpdateSpaceResponse
Updates the settings of a space.
-
#update_training_job(params = {}) ⇒ Types::UpdateTrainingJobResponse
Update a model training job to request a new Debugger profiling configuration or to change warm pool retention length.
-
#update_trial(params = {}) ⇒ Types::UpdateTrialResponse
Updates the display name of a trial.
-
#update_trial_component(params = {}) ⇒ Types::UpdateTrialComponentResponse
Updates one or more properties of a trial component.
-
#update_user_profile(params = {}) ⇒ Types::UpdateUserProfileResponse
Updates a user profile.
-
#update_workforce(params = {}) ⇒ Types::UpdateWorkforceResponse
Use this operation to update your workforce.
-
#update_workteam(params = {}) ⇒ Types::UpdateWorkteamResponse
Updates an existing work team with new member definitions or description.
Class Method Summary collapse
- .errors_module ⇒ Object private
Instance Method Summary collapse
- #build_request(operation_name, params = {}) ⇒ Object private
-
#initialize(options) ⇒ Client
constructor
A new instance of Client.
-
#wait_until(waiter_name, params = {}, options = {}) {|w.waiter| ... } ⇒ Boolean
Polls an API operation until a resource enters a desired state.
- #waiter_names ⇒ Object deprecated private Deprecated.
Constructor Details
#initialize(options) ⇒ Client
Returns a new instance of Client.
480 481 482 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 480 def initialize(*args) super end |
Class Attribute Details
.identifier ⇒ Object (readonly)
This method is part of a private API. You should avoid using this method if possible, as it may be removed or be changed in the future.
33882 33883 33884 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 33882 def identifier @identifier end |
Class Method Details
.errors_module ⇒ Object
This method is part of a private API. You should avoid using this method if possible, as it may be removed or be changed in the future.
33885 33886 33887 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 33885 def errors_module Errors end |
Instance Method Details
#add_association(params = {}) ⇒ Types::AddAssociationResponse
Creates an association between the source and the destination. A source can be associated with multiple destinations, and a destination can be associated with multiple sources. An association is a lineage tracking entity. For more information, see [Amazon SageMaker ML Lineage Tracking].
[1]: docs.aws.amazon.com/sagemaker/latest/dg/lineage-tracking.html
542 543 544 545 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 542 def add_association(params = {}, = {}) req = build_request(:add_association, params) req.send_request() end |
#add_tags(params = {}) ⇒ Types::AddTagsOutput
Adds or overwrites one or more tags for the specified SageMaker resource. You can add tags to notebook instances, training jobs, hyperparameter tuning jobs, batch transform jobs, models, labeling jobs, work teams, endpoint configurations, and endpoints.
Each tag consists of a key and an optional value. Tag keys must be unique per resource. For more information about tags, see For more information, see [Amazon Web Services Tagging Strategies].
<note markdown=“1”> Tags that you add to a hyperparameter tuning job by calling this API are also added to any training jobs that the hyperparameter tuning job launches after you call this API, but not to training jobs that the hyperparameter tuning job launched before you called this API. To make sure that the tags associated with a hyperparameter tuning job are also added to all training jobs that the hyperparameter tuning job launches, add the tags when you first create the tuning job by specifying them in the ‘Tags` parameter of
- CreateHyperParameterTuningJob][2
-
</note>
<note markdown=“1”> Tags that you add to a SageMaker Domain or User Profile by calling this API are also added to any Apps that the Domain or User Profile launches after you call this API, but not to Apps that the Domain or User Profile launched before you called this API. To make sure that the tags associated with a Domain or User Profile are also added to all Apps that the Domain or User Profile launches, add the tags when you first create the Domain or User Profile by specifying them in the ‘Tags` parameter of [CreateDomain] or [CreateUserProfile].
</note>
[1]: aws.amazon.com/answers/account-management/aws-tagging-strategies/ [2]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_CreateHyperParameterTuningJob.html [3]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_CreateDomain.html [4]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_CreateUserProfile.html
625 626 627 628 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 625 def (params = {}, = {}) req = build_request(:add_tags, params) req.send_request() end |
#associate_trial_component(params = {}) ⇒ Types::AssociateTrialComponentResponse
Associates a trial component with a trial. A trial component can be associated with multiple trials. To disassociate a trial component from a trial, call the [DisassociateTrialComponent] API.
[1]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_DisassociateTrialComponent.html
665 666 667 668 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 665 def associate_trial_component(params = {}, = {}) req = build_request(:associate_trial_component, params) req.send_request() end |
#attach_cluster_node_volume(params = {}) ⇒ Types::AttachClusterNodeVolumeResponse
Attaches your Amazon Elastic Block Store (Amazon EBS) volume to a node in your EKS orchestrated HyperPod cluster.
This API works with the Amazon Elastic Block Store (Amazon EBS) Container Storage Interface (CSI) driver to manage the lifecycle of persistent storage in your HyperPod EKS clusters.
721 722 723 724 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 721 def attach_cluster_node_volume(params = {}, = {}) req = build_request(:attach_cluster_node_volume, params) req.send_request() end |
#batch_add_cluster_nodes(params = {}) ⇒ Types::BatchAddClusterNodesResponse
Adds nodes to a HyperPod cluster by incrementing the target count for one or more instance groups. This operation returns a unique ‘NodeLogicalId` for each node being added, which can be used to track the provisioning status of the node. This API provides a safer alternative to `UpdateCluster` for scaling operations by avoiding unintended configuration changes.
<note markdown=“1”> This API is only supported for clusters using ‘Continuous` as the `NodeProvisioningMode`.
</note>
800 801 802 803 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 800 def batch_add_cluster_nodes(params = {}, = {}) req = build_request(:batch_add_cluster_nodes, params) req.send_request() end |
#batch_delete_cluster_nodes(params = {}) ⇒ Types::BatchDeleteClusterNodesResponse
Deletes specific nodes within a SageMaker HyperPod cluster. ‘BatchDeleteClusterNodes` accepts a cluster name and a list of node IDs.
-
To safeguard your work, back up your data to Amazon S3 or an FSx for Lustre file system before invoking the API on a worker node group. This will help prevent any potential data loss from the instance root volume. For more information about backup, see [Use the backup script provided by SageMaker HyperPod].
-
If you want to invoke this API on an existing cluster, you’ll first need to patch the cluster by running the [UpdateClusterSoftware API]. For more information about patching a cluster, see [Update the SageMaker HyperPod platform software of a cluster].
[1]: docs.aws.amazon.com/sagemaker/latest/dg/sagemaker-hyperpod-operate-cli-command.html#sagemaker-hyperpod-operate-cli-command-update-cluster-software-backup [2]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_UpdateClusterSoftware.html [3]: docs.aws.amazon.com/sagemaker/latest/dg/sagemaker-hyperpod-operate-cli-command.html#sagemaker-hyperpod-operate-cli-command-update-cluster-software
886 887 888 889 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 886 def batch_delete_cluster_nodes(params = {}, = {}) req = build_request(:batch_delete_cluster_nodes, params) req.send_request() end |
#batch_describe_model_package(params = {}) ⇒ Types::BatchDescribeModelPackageOutput
This action batch describes a list of versioned model packages
973 974 975 976 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 973 def batch_describe_model_package(params = {}, = {}) req = build_request(:batch_describe_model_package, params) req.send_request() end |
#batch_reboot_cluster_nodes(params = {}) ⇒ Types::BatchRebootClusterNodesResponse
Reboots specific nodes within a SageMaker HyperPod cluster using a soft recovery mechanism. ‘BatchRebootClusterNodes` performs a graceful reboot of the specified nodes by calling the Amazon Elastic Compute Cloud `RebootInstances` API, which attempts to cleanly shut down the operating system before restarting the instance.
This operation is useful for recovering from transient issues or applying certain configuration changes that require a restart.
<note markdown=“1”> * Rebooting a node may cause temporary service interruption for
workloads running on that node. Ensure your workloads can handle
node restarts or use appropriate scheduling to minimize impact.
-
You can reboot up to 25 nodes in a single request.
-
For SageMaker HyperPod clusters using the Slurm workload manager, ensure rebooting nodes will not disrupt critical cluster operations.
</note>
1063 1064 1065 1066 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 1063 def batch_reboot_cluster_nodes(params = {}, = {}) req = build_request(:batch_reboot_cluster_nodes, params) req.send_request() end |
#batch_replace_cluster_nodes(params = {}) ⇒ Types::BatchReplaceClusterNodesResponse
Replaces specific nodes within a SageMaker HyperPod cluster with new hardware. ‘BatchReplaceClusterNodes` terminates the specified instances and provisions new replacement instances with the same configuration but fresh hardware. The Amazon Machine Image (AMI) and instance configuration remain the same.
This operation is useful for recovering from hardware failures or persistent issues that cannot be resolved through a reboot.
-
**Data Loss Warning:** Replacing nodes destroys all instance volumes, including both root and secondary volumes. All data stored on these volumes will be permanently lost and cannot be recovered.
-
To safeguard your work, back up your data to Amazon S3 or an FSx for Lustre file system before invoking the API on a worker node group. This will help prevent any potential data loss from the instance root volume. For more information about backup, see [Use the backup script provided by SageMaker HyperPod].
-
If you want to invoke this API on an existing cluster, you’ll first need to patch the cluster by running the [UpdateClusterSoftware API]. For more information about patching a cluster, see [Update the SageMaker HyperPod platform software of a cluster].
-
You can replace up to 25 nodes in a single request.
[1]: docs.aws.amazon.com/sagemaker/latest/dg/sagemaker-hyperpod-operate-cli-command.html#sagemaker-hyperpod-operate-cli-command-update-cluster-software-backup [2]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_UpdateClusterSoftware.html [3]: docs.aws.amazon.com/sagemaker/latest/dg/sagemaker-hyperpod-operate-cli-command.html#sagemaker-hyperpod-operate-cli-command-update-cluster-software
1176 1177 1178 1179 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 1176 def batch_replace_cluster_nodes(params = {}, = {}) req = build_request(:batch_replace_cluster_nodes, params) req.send_request() end |
#build_request(operation_name, params = {}) ⇒ Object
This method is part of a private API. You should avoid using this method if possible, as it may be removed or be changed in the future.
33718 33719 33720 33721 33722 33723 33724 33725 33726 33727 33728 33729 33730 33731 33732 33733 33734 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 33718 def build_request(operation_name, params = {}) handlers = @handlers.for(operation_name) tracer = config.telemetry_provider.tracer_provider.tracer( Aws::Telemetry.module_to_tracer_name('Aws::SageMaker') ) context = Seahorse::Client::RequestContext.new( operation_name: operation_name, operation: config.api.operation(operation_name), client: self, params: params, config: config, tracer: tracer ) context[:gem_name] = 'aws-sdk-sagemaker' context[:gem_version] = '1.365.0' Seahorse::Client::Request.new(handlers, context) end |
#create_action(params = {}) ⇒ Types::CreateActionResponse
Creates an action. An action is a lineage tracking entity that represents an action or activity. For example, a model deployment or an HPO job. Generally, an action involves at least one input or output artifact. For more information, see [Amazon SageMaker ML Lineage Tracking].
[1]: docs.aws.amazon.com/sagemaker/latest/dg/lineage-tracking.html
1525 1526 1527 1528 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 1525 def create_action(params = {}, = {}) req = build_request(:create_action, params) req.send_request() end |
#create_ai_benchmark_job(params = {}) ⇒ Types::CreateAIBenchmarkJobResponse
Creates a benchmark job that runs performance benchmarks against inference infrastructure using a predefined AI workload configuration. The benchmark job measures metrics such as latency, throughput, and cost for your generative AI inference endpoints.
1261 1262 1263 1264 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 1261 def create_ai_benchmark_job(params = {}, = {}) req = build_request(:create_ai_benchmark_job, params) req.send_request() end |
#create_ai_recommendation_job(params = {}) ⇒ Types::CreateAIRecommendationJobResponse
Creates a recommendation job that generates intelligent optimization recommendations for generative AI inference deployments. The job analyzes your model, workload configuration, and performance targets to recommend optimal instance types, model optimization techniques (such as quantization and speculative decoding), and deployment configurations.
1370 1371 1372 1373 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 1370 def create_ai_recommendation_job(params = {}, = {}) req = build_request(:create_ai_recommendation_job, params) req.send_request() end |
#create_ai_workload_config(params = {}) ⇒ Types::CreateAIWorkloadConfigResponse
Creates a reusable AI workload configuration that defines datasets, data sources, and benchmark tool settings for consistent performance testing of generative AI inference deployments on Amazon SageMaker AI.
1444 1445 1446 1447 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 1444 def create_ai_workload_config(params = {}, = {}) req = build_request(:create_ai_workload_config, params) req.send_request() end |
#create_algorithm(params = {}) ⇒ Types::CreateAlgorithmOutput
Create a machine learning algorithm that you can use in SageMaker and list in the Amazon Web Services Marketplace.
1864 1865 1866 1867 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 1864 def create_algorithm(params = {}, = {}) req = build_request(:create_algorithm, params) req.send_request() end |
#create_app(params = {}) ⇒ Types::CreateAppResponse
Creates a running app for the specified UserProfile. This operation is automatically invoked by Amazon SageMaker AI upon access to the associated Domain, and when new kernel configurations are selected by the user. A user may have multiple Apps active simultaneously.
1947 1948 1949 1950 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 1947 def create_app(params = {}, = {}) req = build_request(:create_app, params) req.send_request() end |
#create_app_image_config(params = {}) ⇒ Types::CreateAppImageConfigResponse
Creates a configuration for running a SageMaker AI image as a KernelGateway app. The configuration specifies the Amazon Elastic File System storage volume on the image, and a list of the kernels in the image.
2046 2047 2048 2049 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 2046 def create_app_image_config(params = {}, = {}) req = build_request(:create_app_image_config, params) req.send_request() end |
#create_artifact(params = {}) ⇒ Types::CreateArtifactResponse
Creates an artifact. An artifact is a lineage tracking entity that represents a URI addressable object or data. Some examples are the S3 URI of a dataset and the ECR registry path of an image. For more information, see [Amazon SageMaker ML Lineage Tracking].
[1]: docs.aws.amazon.com/sagemaker/latest/dg/lineage-tracking.html
2122 2123 2124 2125 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 2122 def create_artifact(params = {}, = {}) req = build_request(:create_artifact, params) req.send_request() end |
#create_auto_ml_job(params = {}) ⇒ Types::CreateAutoMLJobResponse
Creates an Autopilot job also referred to as Autopilot experiment or AutoML job.
An AutoML job in SageMaker AI is a fully automated process that allows you to build machine learning models with minimal effort and machine learning expertise. When initiating an AutoML job, you provide your data and optionally specify parameters tailored to your use case. SageMaker AI then automates the entire model development lifecycle, including data preprocessing, model training, tuning, and evaluation. AutoML jobs are designed to simplify and accelerate the model building process by automating various tasks and exploring different combinations of machine learning algorithms, data preprocessing techniques, and hyperparameter values. The output of an AutoML job comprises one or more trained models ready for deployment and inference. Additionally, SageMaker AI AutoML jobs generate a candidate model leaderboard, allowing you to select the best-performing model for deployment.
For more information about AutoML jobs, see
- docs.aws.amazon.com/sagemaker/latest/dg/autopilot-automate-model-development.html][1
-
in the SageMaker AI developer guide.
<note markdown=“1”> We recommend using the new versions [CreateAutoMLJobV2] and [DescribeAutoMLJobV2], which offer backward compatibility.
`CreateAutoMLJobV2` can manage tabular problem types identical tothose of its previous version ‘CreateAutoMLJob`, as well as time-series forecasting, non-tabular problem types such as image or text classification, and text generation (LLMs fine-tuning).
Find guidelines about how to migrate a `CreateAutoMLJob` to‘CreateAutoMLJobV2` in [Migrate a CreateAutoMLJob to CreateAutoMLJobV2].
</note>You can find the best-performing model after you run an AutoML job by calling [DescribeAutoMLJobV2] (recommended) or [DescribeAutoMLJob].
[1]: docs.aws.amazon.com/sagemaker/latest/dg/autopilot-automate-model-development.html [2]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_CreateAutoMLJobV2.html [3]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_DescribeAutoMLJobV2.html [4]: docs.aws.amazon.com/sagemaker/latest/dg/autopilot-automate-model-development-create-experiment.html#autopilot-create-experiment-api-migrate-v1-v2 [5]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_DescribeAutoMLJob.html
2321 2322 2323 2324 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 2321 def create_auto_ml_job(params = {}, = {}) req = build_request(:create_auto_ml_job, params) req.send_request() end |
#create_auto_ml_job_v2(params = {}) ⇒ Types::CreateAutoMLJobV2Response
Creates an Autopilot job also referred to as Autopilot experiment or AutoML job V2.
An AutoML job in SageMaker AI is a fully automated process that allows you to build machine learning models with minimal effort and machine learning expertise. When initiating an AutoML job, you provide your data and optionally specify parameters tailored to your use case. SageMaker AI then automates the entire model development lifecycle, including data preprocessing, model training, tuning, and evaluation. AutoML jobs are designed to simplify and accelerate the model building process by automating various tasks and exploring different combinations of machine learning algorithms, data preprocessing techniques, and hyperparameter values. The output of an AutoML job comprises one or more trained models ready for deployment and inference. Additionally, SageMaker AI AutoML jobs generate a candidate model leaderboard, allowing you to select the best-performing model for deployment.
For more information about AutoML jobs, see
- docs.aws.amazon.com/sagemaker/latest/dg/autopilot-automate-model-development.html][1
-
in the SageMaker AI developer guide.
AutoML jobs V2 support various problem types such as regression, binary, and multiclass classification with tabular data, text and image classification, time-series forecasting, and fine-tuning of large language models (LLMs) for text generation.
<note markdown=“1”> [CreateAutoMLJobV2] and [DescribeAutoMLJobV2] are new versions of [CreateAutoMLJob] and [DescribeAutoMLJob] which offer backward compatibility.
`CreateAutoMLJobV2` can manage tabular problem types identical tothose of its previous version ‘CreateAutoMLJob`, as well as time-series forecasting, non-tabular problem types such as image or text classification, and text generation (LLMs fine-tuning).
Find guidelines about how to migrate a `CreateAutoMLJob` to‘CreateAutoMLJobV2` in [Migrate a CreateAutoMLJob to CreateAutoMLJobV2].
</note>For the list of available problem types supported by ‘CreateAutoMLJobV2`, see [AutoMLProblemTypeConfig].
You can find the best-performing model after you run an AutoML job V2 by calling [DescribeAutoMLJobV2].
[1]: docs.aws.amazon.com/sagemaker/latest/dg/autopilot-automate-model-development.html [2]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_CreateAutoMLJobV2.html [3]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_DescribeAutoMLJobV2.html [4]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_CreateAutoMLJob.html [5]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_DescribeAutoMLJob.html [6]: docs.aws.amazon.com/sagemaker/latest/dg/autopilot-automate-model-development-create-experiment.html#autopilot-create-experiment-api-migrate-v1-v2 [7]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_AutoMLProblemTypeConfig.html
2639 2640 2641 2642 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 2639 def create_auto_ml_job_v2(params = {}, = {}) req = build_request(:create_auto_ml_job_v2, params) req.send_request() end |
#create_cluster(params = {}) ⇒ Types::CreateClusterResponse
Creates an Amazon SageMaker HyperPod cluster. SageMaker HyperPod is a capability of SageMaker for creating and managing persistent clusters for developing large machine learning models, such as large language models (LLMs) and diffusion models. To learn more, see [Amazon SageMaker HyperPod] in the *Amazon SageMaker Developer Guide*.
[1]: docs.aws.amazon.com/sagemaker/latest/dg/sagemaker-hyperpod.html
2962 2963 2964 2965 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 2962 def create_cluster(params = {}, = {}) req = build_request(:create_cluster, params) req.send_request() end |
#create_cluster_scheduler_config(params = {}) ⇒ Types::CreateClusterSchedulerConfigResponse
Create cluster policy configuration. This policy is used for task prioritization and fair-share allocation of idle compute. This helps prioritize critical workloads and distributes idle compute across entities.
3025 3026 3027 3028 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 3025 def create_cluster_scheduler_config(params = {}, = {}) req = build_request(:create_cluster_scheduler_config, params) req.send_request() end |
#create_code_repository(params = {}) ⇒ Types::CreateCodeRepositoryOutput
Creates a Git repository as a resource in your SageMaker AI account. You can associate the repository with notebook instances so that you can use Git source control for the notebooks you create. The Git repository is a resource in your SageMaker AI account, so it can be associated with more than one notebook instance, and it persists independently from the lifecycle of any notebook instances it is associated with.
The repository can be hosted either in [Amazon Web Services CodeCommit] or in any other Git repository.
[1]: docs.aws.amazon.com/codecommit/latest/userguide/welcome.html
3093 3094 3095 3096 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 3093 def create_code_repository(params = {}, = {}) req = build_request(:create_code_repository, params) req.send_request() end |
#create_compilation_job(params = {}) ⇒ Types::CreateCompilationJobResponse
Starts a model compilation job. After the model has been compiled, Amazon SageMaker AI saves the resulting model artifacts to an Amazon Simple Storage Service (Amazon S3) bucket that you specify.
If you choose to host your model using Amazon SageMaker AI hosting services, you can use the resulting model artifacts as part of the model. You can also use the artifacts with Amazon Web Services IoT Greengrass. In that case, deploy them as an ML resource.
In the request body, you provide the following:
-
A name for the compilation job
-
Information about the input model artifacts
-
The output location for the compiled model and the device (target) that the model runs on
-
The Amazon Resource Name (ARN) of the IAM role that Amazon SageMaker AI assumes to perform the model compilation job.
You can also provide a ‘Tag` to track the model compilation job’s resource use and costs. The response body contains the ‘CompilationJobArn` for the compiled job.
To stop a model compilation job, use [StopCompilationJob]. To get information about a particular model compilation job, use [DescribeCompilationJob]. To get information about multiple model compilation jobs, use [ListCompilationJobs].
[1]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_StopCompilationJob.html [2]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_DescribeCompilationJob.html [3]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_ListCompilationJobs.html
3256 3257 3258 3259 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 3256 def create_compilation_job(params = {}, = {}) req = build_request(:create_compilation_job, params) req.send_request() end |
#create_compute_quota(params = {}) ⇒ Types::CreateComputeQuotaResponse
Create compute allocation definition. This defines how compute is allocated, shared, and borrowed for specified entities. Specifically, how to lend and borrow idle compute and assign a fair-share weight to the specified entities.
3358 3359 3360 3361 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 3358 def create_compute_quota(params = {}, = {}) req = build_request(:create_compute_quota, params) req.send_request() end |
#create_context(params = {}) ⇒ Types::CreateContextResponse
Creates a context. A context is a lineage tracking entity that represents a logical grouping of other tracking or experiment entities. Some examples are an endpoint and a model package. For more information, see [Amazon SageMaker ML Lineage Tracking].
[1]: docs.aws.amazon.com/sagemaker/latest/dg/lineage-tracking.html
3425 3426 3427 3428 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 3425 def create_context(params = {}, = {}) req = build_request(:create_context, params) req.send_request() end |
#create_data_quality_job_definition(params = {}) ⇒ Types::CreateDataQualityJobDefinitionResponse
Creates a definition for a job that monitors data quality and drift. For information about model monitor, see [Amazon SageMaker AI Model Monitor].
[1]: docs.aws.amazon.com/sagemaker/latest/dg/model-monitor.html
3590 3591 3592 3593 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 3590 def create_data_quality_job_definition(params = {}, = {}) req = build_request(:create_data_quality_job_definition, params) req.send_request() end |
#create_device_fleet(params = {}) ⇒ Struct
Creates a device fleet.
3649 3650 3651 3652 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 3649 def create_device_fleet(params = {}, = {}) req = build_request(:create_device_fleet, params) req.send_request() end |
#create_domain(params = {}) ⇒ Types::CreateDomainResponse
Creates a ‘Domain`. A domain consists of an associated Amazon Elastic File System volume, a list of authorized users, and a variety of security, application, policy, and Amazon Virtual Private Cloud (VPC) configurations. Users within a domain can share notebook files and other artifacts with each other.
**EFS storage**
When a domain is created, an EFS volume is created for use by all of the users within the domain. Each user receives a private home directory within the EFS volume for notebooks, Git repositories, and data files.
SageMaker AI uses the Amazon Web Services Key Management Service (Amazon Web Services KMS) to encrypt the EFS volume attached to the domain with an Amazon Web Services managed key by default. For more control, you can specify a customer managed key. For more information, see [Protect Data at Rest Using Encryption].
**VPC configuration**
All traffic between the domain and the Amazon EFS volume is through the specified VPC and subnets. For other traffic, you can specify the ‘AppNetworkAccessType` parameter. `AppNetworkAccessType` corresponds to the network access type that you choose when you onboard to the domain. The following options are available:
-
‘PublicInternetOnly` - Non-EFS traffic goes through a VPC managed by Amazon SageMaker AI, which allows internet access. This is the default value.
-
‘VpcOnly` - All traffic is through the specified VPC and subnets. Internet access is disabled by default. To allow internet access, you must specify a NAT gateway.
When internet access is disabled, you won’t be able to run a Amazon SageMaker AI Studio notebook or to train or host models unless your VPC has an interface endpoint to the SageMaker AI API and runtime or a NAT gateway and your security groups allow outbound connections.
NFS traffic over TCP on port 2049 needs to be allowed in both inbound and outbound rules in order to launch a Amazon SageMaker AI Studio app successfully.
For more information, see [Connect Amazon SageMaker AI Studio Notebooks to Resources in a VPC].
[1]: docs.aws.amazon.com/sagemaker/latest/dg/encryption-at-rest.html [2]: docs.aws.amazon.com/sagemaker/latest/dg/studio-notebooks-and-internet-access.html
4158 4159 4160 4161 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 4158 def create_domain(params = {}, = {}) req = build_request(:create_domain, params) req.send_request() end |
#create_edge_deployment_plan(params = {}) ⇒ Types::CreateEdgeDeploymentPlanResponse
Creates an edge deployment plan, consisting of multiple stages. Each stage may have a different deployment configuration and devices.
4227 4228 4229 4230 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 4227 def create_edge_deployment_plan(params = {}, = {}) req = build_request(:create_edge_deployment_plan, params) req.send_request() end |
#create_edge_deployment_stage(params = {}) ⇒ Struct
Creates a new stage in an existing edge deployment plan.
4266 4267 4268 4269 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 4266 def create_edge_deployment_stage(params = {}, = {}) req = build_request(:create_edge_deployment_stage, params) req.send_request() end |
#create_edge_packaging_job(params = {}) ⇒ Struct
Starts a SageMaker Edge Manager model packaging job. Edge Manager will use the model artifacts from the Amazon Simple Storage Service bucket that you specify. After the model has been packaged, Amazon SageMaker saves the resulting artifacts to an S3 bucket that you specify.
4333 4334 4335 4336 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 4333 def create_edge_packaging_job(params = {}, = {}) req = build_request(:create_edge_packaging_job, params) req.send_request() end |
#create_endpoint(params = {}) ⇒ Types::CreateEndpointOutput
Creates an endpoint using the endpoint configuration specified in the request. SageMaker uses the endpoint to provision resources and deploy models. You create the endpoint configuration with the
- CreateEndpointConfig][1
-
API.
Use this API to deploy models using SageMaker hosting services.
<note markdown=“1”> You must not delete an ‘EndpointConfig` that is in use by an endpoint that is live or while the `UpdateEndpoint` or `CreateEndpoint` operations are being performed on the endpoint. To update an endpoint, you must create a new `EndpointConfig`.
</note>
The endpoint name must be unique within an Amazon Web Services Region in your Amazon Web Services account.
When it receives the request, SageMaker creates the endpoint, launches the resources (ML compute instances), and deploys the model(s) on them.
<note markdown=“1”> When you call [CreateEndpoint], a load call is made to DynamoDB to verify that your endpoint configuration exists. When you read data from a DynamoDB table supporting [ ‘Eventually Consistent Reads` ][3], the response might not reflect the results of a recently completed write operation. The response might include some stale data. If the dependent entities are not yet in DynamoDB, this causes a validation error. If you repeat your read request after a short time, the response should return the latest data. So retry logic is recommended to handle these possible issues. We also recommend that customers call
- DescribeEndpointConfig][4
-
before calling [CreateEndpoint] to
minimize the potential impact of a DynamoDB eventually consistent read.
</note>
When SageMaker receives the request, it sets the endpoint status to ‘Creating`. After it creates the endpoint, it sets the status to `InService`. SageMaker can then process incoming requests for inferences. To check the status of an endpoint, use the
- DescribeEndpoint][5
-
API.
If any of the models hosted at this endpoint get model data from an Amazon S3 location, SageMaker uses Amazon Web Services Security Token Service to download model artifacts from the S3 path you provided. Amazon Web Services STS is activated in your Amazon Web Services account by default. If you previously deactivated Amazon Web Services STS for a region, you need to reactivate Amazon Web Services STS for that region. For more information, see [Activating and Deactivating Amazon Web Services STS in an Amazon Web Services Region] in the *Amazon Web Services Identity and Access Management User Guide*.
<note markdown=“1”> To add the IAM role policies for using this API operation, go to the [IAM console], and choose Roles in the left navigation pane. Search the IAM role that you want to grant access to use the
- CreateEndpoint][2
-
and [CreateEndpointConfig] API operations, add
the following policies to the role.
* Option 1: For a full SageMaker access, search and attach the
`AmazonSageMakerFullAccess` policy.
-
Option 2: For granting a limited access to an IAM role, paste the following Action elements manually into the JSON file of the IAM role:
‘“Action”: [“sagemaker:CreateEndpoint”, “sagemaker:CreateEndpointConfig”]`
‘“Resource”: [`
‘“arn:aws:sagemaker:region:account-id:endpoint/endpointName”`
‘“arn:aws:sagemaker:region:account-id:endpoint-config/endpointConfigName”`
‘]`
For more information, see [SageMaker API Permissions: Actions, Permissions, and Resources Reference].
</note>
[1]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_CreateEndpointConfig.html [2]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_CreateEndpoint.html [3]: docs.aws.amazon.com/amazondynamodb/latest/developerguide/HowItWorks.ReadConsistency.html [4]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_DescribeEndpointConfig.html [5]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_DescribeEndpoint.html [6]: docs.aws.amazon.com/IAM/latest/UserGuide/id_credentials_temp_enable-regions.html [7]: console.aws.amazon.com/iam/ [8]: docs.aws.amazon.com/sagemaker/latest/dg/api-permissions-reference.html
4524 4525 4526 4527 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 4524 def create_endpoint(params = {}, = {}) req = build_request(:create_endpoint, params) req.send_request() end |
#create_endpoint_config(params = {}) ⇒ Types::CreateEndpointConfigOutput
Creates an endpoint configuration that SageMaker hosting services uses to deploy models. In the configuration, you identify one or more models, created using the ‘CreateModel` API, to deploy and the resources that you want SageMaker to provision. Then you call the
- CreateEndpoint][1
-
API.
<note markdown=“1”> Use this API if you want to use SageMaker hosting services to deploy models into production.
</note>
In the request, you define a ‘ProductionVariant`, for each model that you want to deploy. Each `ProductionVariant` parameter also describes the resources that you want SageMaker to provision. This includes the number and type of ML compute instances to deploy.
If you are hosting multiple models, you also assign a ‘VariantWeight` to specify how much traffic you want to allocate to each model. For example, suppose that you want to host two models, A and B, and you assign traffic weight 2 for model A and 1 for model B. SageMaker distributes two-thirds of the traffic to Model A, and one-third to model B.
<note markdown=“1”> When you call [CreateEndpoint], a load call is made to DynamoDB to verify that your endpoint configuration exists. When you read data from a DynamoDB table supporting [ ‘Eventually Consistent Reads` ][2], the response might not reflect the results of a recently completed write operation. The response might include some stale data. If the dependent entities are not yet in DynamoDB, this causes a validation error. If you repeat your read request after a short time, the response should return the latest data. So retry logic is recommended to handle these possible issues. We also recommend that customers call
- DescribeEndpointConfig][3
-
before calling [CreateEndpoint] to
minimize the potential impact of a DynamoDB eventually consistent read.
</note>
[1]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_CreateEndpoint.html [2]: docs.aws.amazon.com/amazondynamodb/latest/developerguide/HowItWorks.ReadConsistency.html [3]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_DescribeEndpointConfig.html
4891 4892 4893 4894 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 4891 def create_endpoint_config(params = {}, = {}) req = build_request(:create_endpoint_config, params) req.send_request() end |
#create_experiment(params = {}) ⇒ Types::CreateExperimentResponse
Creates a SageMaker experiment. An experiment is a collection of trials that are observed, compared and evaluated as a group. A trial is a set of steps, called *trial components*, that produce a machine learning model.
<note markdown=“1”> In the Studio UI, trials are referred to as *run groups* and trial components are referred to as runs.
</note>
The goal of an experiment is to determine the components that produce the best model. Multiple trials are performed, each one isolating and measuring the impact of a change to one or more inputs, while keeping the remaining inputs constant.
When you use SageMaker Studio or the SageMaker Python SDK, all experiments, trials, and trial components are automatically tracked, logged, and indexed. When you use the Amazon Web Services SDK for Python (Boto), you must use the logging APIs provided by the SDK.
You can add tags to experiments, trials, trial components and then use the [Search] API to search for the tags.
To add a description to an experiment, specify the optional ‘Description` parameter. To add a description later, or to change the description, call the [UpdateExperiment] API.
To get a list of all your experiments, call the [ListExperiments] API. To view an experiment’s properties, call the
- DescribeExperiment][4
-
API. To get a list of all the trials
associated with an experiment, call the [ListTrials] API. To create a trial call the [CreateTrial] API.
[1]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_Search.html [2]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_UpdateExperiment.html [3]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_ListExperiments.html [4]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_DescribeExperiment.html [5]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_ListTrials.html [6]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_CreateTrial.html
4984 4985 4986 4987 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 4984 def create_experiment(params = {}, = {}) req = build_request(:create_experiment, params) req.send_request() end |
#create_feature_group(params = {}) ⇒ Types::CreateFeatureGroupResponse
Create a new ‘FeatureGroup`. A `FeatureGroup` is a group of `Features` defined in the `FeatureStore` to describe a `Record`.
The ‘FeatureGroup` defines the schema and features contained in the `FeatureGroup`. A `FeatureGroup` definition is composed of a list of `Features`, a `RecordIdentifierFeatureName`, an `EventTimeFeatureName` and configurations for its `OnlineStore` and `OfflineStore`. Check
- Amazon Web Services service quotas][1
-
to see the ‘FeatureGroup`s
quota for your Amazon Web Services account.
Note that it can take approximately 10-15 minutes to provision an ‘OnlineStore` `FeatureGroup` with the `InMemory` `StorageType`.
You must include at least one of ‘OnlineStoreConfig` and `OfflineStoreConfig` to create a `FeatureGroup`.
[1]: docs.aws.amazon.com/general/latest/gr/aws_service_limits.html
5209 5210 5211 5212 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 5209 def create_feature_group(params = {}, = {}) req = build_request(:create_feature_group, params) req.send_request() end |
#create_flow_definition(params = {}) ⇒ Types::CreateFlowDefinitionResponse
Creates a flow definition.
5300 5301 5302 5303 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 5300 def create_flow_definition(params = {}, = {}) req = build_request(:create_flow_definition, params) req.send_request() end |
#create_hub(params = {}) ⇒ Types::CreateHubResponse
Create a hub.
5355 5356 5357 5358 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 5355 def create_hub(params = {}, = {}) req = build_request(:create_hub, params) req.send_request() end |
#create_hub_content_presigned_urls(params = {}) ⇒ Types::CreateHubContentPresignedUrlsResponse
Creates presigned URLs for accessing hub content artifacts. This operation generates time-limited, secure URLs that allow direct download of model artifacts and associated files from Amazon SageMaker hub content, including gated models that require end-user license agreement acceptance.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
5429 5430 5431 5432 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 5429 def create_hub_content_presigned_urls(params = {}, = {}) req = build_request(:create_hub_content_presigned_urls, params) req.send_request() end |
#create_hub_content_reference(params = {}) ⇒ Types::CreateHubContentReferenceResponse
Create a hub content reference in order to add a model in the JumpStart public hub to a private hub.
5481 5482 5483 5484 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 5481 def create_hub_content_reference(params = {}, = {}) req = build_request(:create_hub_content_reference, params) req.send_request() end |
#create_human_task_ui(params = {}) ⇒ Types::CreateHumanTaskUiResponse
Defines the settings you will use for the human review workflow user interface. Reviewers will see a three-panel interface with an instruction area, the item to review, and an input area.
5528 5529 5530 5531 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 5528 def create_human_task_ui(params = {}, = {}) req = build_request(:create_human_task_ui, params) req.send_request() end |
#create_hyper_parameter_tuning_job(params = {}) ⇒ Types::CreateHyperParameterTuningJobResponse
Starts a hyperparameter tuning job. A hyperparameter tuning job finds the best version of a model by running many training jobs on your dataset using the algorithm you choose and values for hyperparameters within ranges that you specify. It then chooses the hyperparameter values that result in a model that performs the best, as measured by an objective metric that you choose.
A hyperparameter tuning job automatically creates Amazon SageMaker experiments, trials, and trial components for each training job that it runs. You can view these entities in Amazon SageMaker Studio. For more information, see [View Experiments, Trials, and Trial Components].
Do not include any security-sensitive information including account access IDs, secrets, or tokens in any hyperparameter fields. As part of the shared responsibility model, you are responsible for any potential exposure, unauthorized access, or compromise of your sensitive data if caused by any security-sensitive information included in the request hyperparameter variable or plain text fields..
[1]: docs.aws.amazon.com/sagemaker/latest/dg/experiments-view-compare.html#experiments-view
6065 6066 6067 6068 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 6065 def create_hyper_parameter_tuning_job(params = {}, = {}) req = build_request(:create_hyper_parameter_tuning_job, params) req.send_request() end |
#create_image(params = {}) ⇒ Types::CreateImageResponse
Creates a custom SageMaker AI image. A SageMaker AI image is a set of image versions. Each image version represents a container image stored in Amazon ECR. For more information, see [Bring your own SageMaker AI image].
[1]: docs.aws.amazon.com/sagemaker/latest/dg/studio-byoi.html
6123 6124 6125 6126 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 6123 def create_image(params = {}, = {}) req = build_request(:create_image, params) req.send_request() end |
#create_image_version(params = {}) ⇒ Types::CreateImageVersionResponse
Creates a version of the SageMaker AI image specified by ‘ImageName`. The version represents the Amazon ECR container image specified by `BaseImage`.
6228 6229 6230 6231 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 6228 def create_image_version(params = {}, = {}) req = build_request(:create_image_version, params) req.send_request() end |
#create_inference_component(params = {}) ⇒ Types::CreateInferenceComponentOutput
Creates an inference component, which is a SageMaker AI hosting object that you can use to deploy a model to an endpoint. In the inference component settings, you specify the model, the endpoint, and how the model utilizes the resources that the endpoint hosts. You can optimize resource utilization by tailoring how the required CPU cores, accelerators, and memory are allocated. You can deploy multiple inference components to an endpoint, where each inference component contains one model and the resource utilization needs for that individual model. After you deploy an inference component, you can directly invoke the associated model when you use the InvokeEndpoint API action.
6375 6376 6377 6378 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 6375 def create_inference_component(params = {}, = {}) req = build_request(:create_inference_component, params) req.send_request() end |
#create_inference_experiment(params = {}) ⇒ Types::CreateInferenceExperimentResponse
Creates an inference experiment using the configurations specified in the request.
Use this API to setup and schedule an experiment to compare model variants on a Amazon SageMaker inference endpoint. For more information about inference experiments, see [Shadow tests].
Amazon SageMaker begins your experiment at the scheduled time and routes traffic to your endpoint’s model variants based on your specified configuration.
While the experiment is in progress or after it has concluded, you can view metrics that compare your model variants. For more information, see [View, monitor, and edit shadow tests].
[1]: docs.aws.amazon.com/sagemaker/latest/dg/shadow-tests.html [2]: docs.aws.amazon.com/sagemaker/latest/dg/shadow-tests-view-monitor-edit.html
6574 6575 6576 6577 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 6574 def create_inference_experiment(params = {}, = {}) req = build_request(:create_inference_experiment, params) req.send_request() end |
#create_inference_recommendations_job(params = {}) ⇒ Types::CreateInferenceRecommendationsJobResponse
Starts a recommendation job. You can create either an instance recommendation or load test job.
6737 6738 6739 6740 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 6737 def create_inference_recommendations_job(params = {}, = {}) req = build_request(:create_inference_recommendations_job, params) req.send_request() end |
#create_labeling_job(params = {}) ⇒ Types::CreateLabelingJobResponse
Creates a job that uses workers to label the data objects in your input dataset. You can use the labeled data to train machine learning models.
You can select your workforce from one of three providers:
-
A private workforce that you create. It can include employees, contractors, and outside experts. Use a private workforce when want the data to stay within your organization or when a specific set of skills is required.
-
One or more vendors that you select from the Amazon Web Services Marketplace. Vendors provide expertise in specific areas.
-
The Amazon Mechanical Turk workforce. This is the largest workforce, but it should only be used for public data or data that has been stripped of any personally identifiable information.
You can also use *automated data labeling* to reduce the number of data objects that need to be labeled by a human. Automated data labeling uses *active learning* to determine if a data object can be labeled by machine or if it needs to be sent to a human worker. For more information, see [Using Automated Data Labeling].
The data objects to be labeled are contained in an Amazon S3 bucket. You create a *manifest file* that describes the location of each object. For more information, see [Using Input and Output Data].
The output can be used as the manifest file for another labeling job or as training data for your machine learning models.
You can use this operation to create a static labeling job or a streaming labeling job. A static labeling job stops if all data objects in the input manifest file identified in ‘ManifestS3Uri` have been labeled. A streaming labeling job runs perpetually until it is manually stopped, or remains idle for 10 days. You can send new data objects to an active (`InProgress`) streaming labeling job in real time. To learn how to create a static labeling job, see [Create a Labeling Job (API) ][3] in the Amazon SageMaker Developer Guide. To learn how to create a streaming labeling job, see [Create a Streaming Labeling Job].
[1]: docs.aws.amazon.com/sagemaker/latest/dg/sms-automated-labeling.html [2]: docs.aws.amazon.com/sagemaker/latest/dg/sms-data.html [3]: docs.aws.amazon.com/sagemaker/latest/dg/sms-create-labeling-job-api.html [4]: docs.aws.amazon.com/sagemaker/latest/dg/sms-streaming-create-job.html
7044 7045 7046 7047 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 7044 def create_labeling_job(params = {}, = {}) req = build_request(:create_labeling_job, params) req.send_request() end |
#create_mlflow_app(params = {}) ⇒ Types::CreateMlflowAppResponse
Creates an MLflow Tracking Server using a general purpose Amazon S3 bucket as the artifact store.
7121 7122 7123 7124 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 7121 def create_mlflow_app(params = {}, = {}) req = build_request(:create_mlflow_app, params) req.send_request() end |
#create_mlflow_tracking_server(params = {}) ⇒ Types::CreateMlflowTrackingServerResponse
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].
[1]: docs.aws.amazon.com/sagemaker/latest/dg/mlflow-create-tracking-server.html
7230 7231 7232 7233 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 7230 def create_mlflow_tracking_server(params = {}, = {}) req = build_request(:create_mlflow_tracking_server, params) req.send_request() end |
#create_model(params = {}) ⇒ Types::CreateModelOutput
Creates a model in SageMaker. In the request, you name the model and describe a primary container. For the primary container, you specify the Docker image that contains inference code, artifacts (from prior training), and a custom environment map that the inference code uses when you deploy the model for predictions.
Use this API to create a model if you want to use SageMaker hosting services or run a batch transform job.
To host your model, you create an endpoint configuration with the ‘CreateEndpointConfig` API, and then create an endpoint with the `CreateEndpoint` API. SageMaker then deploys all of the containers that you defined for the model in the hosting environment.
To run a batch transform using your model, you start a job with the ‘CreateTransformJob` API. SageMaker uses your model and your dataset to get inferences which are then saved to a specified S3 location.
In the request, you also provide an IAM role that SageMaker can assume to access model artifacts and docker image for deployment on ML compute hosting instances or for batch transform jobs. In addition, you also use the IAM role to manage permissions the inference code needs. For example, if the inference code access any other Amazon Web Services resources, you grant necessary permissions via this role.
7464 7465 7466 7467 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 7464 def create_model(params = {}, = {}) req = build_request(:create_model, params) req.send_request() end |
#create_model_bias_job_definition(params = {}) ⇒ Types::CreateModelBiasJobDefinitionResponse
Creates the definition for a model bias job.
7621 7622 7623 7624 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 7621 def create_model_bias_job_definition(params = {}, = {}) req = build_request(:create_model_bias_job_definition, params) req.send_request() end |
#create_model_card(params = {}) ⇒ Types::CreateModelCardResponse
Creates an Amazon SageMaker Model Card.
For information about how to use model cards, see [Amazon SageMaker Model Card].
[1]: docs.aws.amazon.com/sagemaker/latest/dg/model-cards.html
7697 7698 7699 7700 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 7697 def create_model_card(params = {}, = {}) req = build_request(:create_model_card, params) req.send_request() end |
#create_model_card_export_job(params = {}) ⇒ Types::CreateModelCardExportJobResponse
Creates an Amazon SageMaker Model Card export job.
7741 7742 7743 7744 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 7741 def create_model_card_export_job(params = {}, = {}) req = build_request(:create_model_card_export_job, params) req.send_request() end |
#create_model_explainability_job_definition(params = {}) ⇒ Types::CreateModelExplainabilityJobDefinitionResponse
Creates the definition for a model explainability job.
7896 7897 7898 7899 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 7896 def create_model_explainability_job_definition(params = {}, = {}) req = build_request(:create_model_explainability_job_definition, params) req.send_request() end |
#create_model_package(params = {}) ⇒ Types::CreateModelPackageOutput
Creates a model package that you can use to create SageMaker models or list on Amazon Web Services Marketplace, or a versioned model that is part of a model group. Buyers can subscribe to model packages listed on Amazon Web Services Marketplace to create models in SageMaker.
To create a model package by specifying a Docker container that contains your inference code and the Amazon S3 location of your model artifacts, provide values for ‘InferenceSpecification`. To create a model from an algorithm resource that you created or subscribed to in Amazon Web Services Marketplace, provide a value for `SourceAlgorithmSpecification`.
<note markdown=“1”> There are two types of model packages:
* Versioned - a model that is part of a model group in the model
registry.
-
Unversioned - a model package that is not part of a model group.
</note>
8455 8456 8457 8458 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 8455 def create_model_package(params = {}, = {}) req = build_request(:create_model_package, params) req.send_request() end |
#create_model_package_group(params = {}) ⇒ Types::CreateModelPackageGroupOutput
Creates a model group. A model group contains a group of model versions.
8503 8504 8505 8506 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 8503 def create_model_package_group(params = {}, = {}) req = build_request(:create_model_package_group, params) req.send_request() end |
#create_model_quality_job_definition(params = {}) ⇒ Types::CreateModelQualityJobDefinitionResponse
Creates a definition for a job that monitors model quality and drift. For information about model monitor, see [Amazon SageMaker AI Model Monitor].
[1]: docs.aws.amazon.com/sagemaker/latest/dg/model-monitor.html
8669 8670 8671 8672 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 8669 def create_model_quality_job_definition(params = {}, = {}) req = build_request(:create_model_quality_job_definition, params) req.send_request() end |
#create_monitoring_schedule(params = {}) ⇒ Types::CreateMonitoringScheduleResponse
Creates a schedule that regularly starts Amazon SageMaker AI Processing Jobs to monitor the data captured for an Amazon SageMaker AI Endpoint.
8818 8819 8820 8821 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 8818 def create_monitoring_schedule(params = {}, = {}) req = build_request(:create_monitoring_schedule, params) req.send_request() end |
#create_notebook_instance(params = {}) ⇒ Types::CreateNotebookInstanceOutput
Creates an SageMaker AI notebook instance. A notebook instance is a machine learning (ML) compute instance running on a Jupyter notebook.
In a ‘CreateNotebookInstance` request, specify the type of ML compute instance that you want to run. SageMaker AI launches the instance, installs common libraries that you can use to explore datasets for model training, and attaches an ML storage volume to the notebook instance.
SageMaker AI also provides a set of example notebooks. Each notebook demonstrates how to use SageMaker AI with a specific algorithm or with a machine learning framework.
After receiving the request, SageMaker AI does the following:
-
Creates a network interface in the SageMaker AI VPC.
-
(Option) If you specified ‘SubnetId`, SageMaker AI creates a network interface in your own VPC, which is inferred from the subnet ID that you provide in the input. When creating this network interface, SageMaker AI attaches the security group that you specified in the request to the network interface that it creates in your VPC.
-
Launches an EC2 instance of the type specified in the request in the SageMaker AI VPC. If you specified ‘SubnetId` of your VPC, SageMaker AI specifies both network interfaces when launching this instance. This enables inbound traffic from your own VPC to the notebook instance, assuming that the security groups allow it.
After creating the notebook instance, SageMaker AI returns its Amazon Resource Name (ARN). You can’t change the name of a notebook instance after you create it.
After SageMaker AI creates the notebook instance, you can connect to the Jupyter server and work in Jupyter notebooks. For example, you can write code to explore a dataset that you can use for model training, train a model, host models by creating SageMaker AI endpoints, and validate hosted models.
For more information, see [How It Works].
[1]: docs.aws.amazon.com/sagemaker/latest/dg/how-it-works.html
9052 9053 9054 9055 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 9052 def create_notebook_instance(params = {}, = {}) req = build_request(:create_notebook_instance, params) req.send_request() end |
#create_notebook_instance_lifecycle_config(params = {}) ⇒ Types::CreateNotebookInstanceLifecycleConfigOutput
Creates a lifecycle configuration that you can associate with a notebook instance. A *lifecycle configuration* is a collection of shell scripts that run when you create or start a notebook instance.
Each lifecycle configuration script has a limit of 16384 characters.
The value of the ‘$PATH` environment variable that is available to both scripts is `/sbin:bin:/usr/sbin:/usr/bin`.
View Amazon CloudWatch Logs for notebook instance lifecycle configurations in log group ‘/aws/sagemaker/NotebookInstances` in log stream `[notebook-instance-name]/`.
Lifecycle configuration scripts cannot run for longer than 5 minutes. If a script runs for longer than 5 minutes, it fails and the notebook instance is not created or started.
For information about notebook instance lifestyle configurations, see [Step 2.1: (Optional) Customize a Notebook Instance].
<note markdown=“1”> Lifecycle configuration scripts execute with root access and the notebook instance’s IAM execution role privileges. Grant this permission only to trusted principals. See [Customize a Notebook Instance Using a Lifecycle Configuration Script] for security best practices.
</note>
[1]: docs.aws.amazon.com/sagemaker/latest/dg/notebook-lifecycle-config.html
9145 9146 9147 9148 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 9145 def create_notebook_instance_lifecycle_config(params = {}, = {}) req = build_request(:create_notebook_instance_lifecycle_config, params) req.send_request() end |
#create_optimization_job(params = {}) ⇒ Types::CreateOptimizationJobResponse
Creates a job that optimizes a model for inference performance. To create the job, you provide the location of a source model, and you provide the settings for the optimization techniques that you want the job to apply. When the job completes successfully, SageMaker uploads the new optimized model to the output destination that you specify.
For more information about how to use this action, and about the supported optimization techniques, see [Optimize model inference with Amazon SageMaker].
[1]: docs.aws.amazon.com/sagemaker/latest/dg/model-optimize.html
9332 9333 9334 9335 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 9332 def create_optimization_job(params = {}, = {}) req = build_request(:create_optimization_job, params) req.send_request() end |
#create_partner_app(params = {}) ⇒ Types::CreatePartnerAppResponse
Creates an Amazon SageMaker Partner AI App.
9438 9439 9440 9441 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 9438 def create_partner_app(params = {}, = {}) req = build_request(:create_partner_app, params) req.send_request() end |
#create_partner_app_presigned_url(params = {}) ⇒ Types::CreatePartnerAppPresignedUrlResponse
Creates a presigned URL to access an Amazon SageMaker Partner AI App.
9476 9477 9478 9479 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 9476 def create_partner_app_presigned_url(params = {}, = {}) req = build_request(:create_partner_app_presigned_url, params) req.send_request() end |
#create_pipeline(params = {}) ⇒ Types::CreatePipelineResponse
Creates a pipeline using a JSON pipeline definition.
9561 9562 9563 9564 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 9561 def create_pipeline(params = {}, = {}) req = build_request(:create_pipeline, params) req.send_request() end |
#create_presigned_domain_url(params = {}) ⇒ Types::CreatePresignedDomainUrlResponse
Creates a URL for a specified UserProfile in a Domain. When accessed in a web browser, the user will be automatically signed in to the domain, and granted access to all of the Apps and files associated with the Domain’s Amazon Elastic File System volume. This operation can only be called when the authentication mode equals IAM.
The IAM role or user passed to this API defines the permissions to access the app. Once the presigned URL is created, no additional permission is required to access this URL. IAM authorization policies for this API are also enforced for every HTTP request and WebSocket frame that attempts to connect to the app.
You can restrict access to this API and to the URL that it returns to a list of IP addresses, Amazon VPCs or Amazon VPC Endpoints that you specify. For more information, see [Connect to Amazon SageMaker AI Studio Through an Interface VPC Endpoint] .
<note markdown=“1”> * The URL that you get from a call to ‘CreatePresignedDomainUrl` has a
default timeout of 5 minutes. You can configure this value using
`ExpiresInSeconds`. If you try to use the URL after the timeout
limit expires, you are directed to the Amazon Web Services console
sign-in page.
-
The JupyterLab session default expiration time is 12 hours. You can configure this value using SessionExpirationDurationInSeconds.
</note>
[1]: docs.aws.amazon.com/sagemaker/latest/dg/studio-interface-endpoint.html
9663 9664 9665 9666 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 9663 def create_presigned_domain_url(params = {}, = {}) req = build_request(:create_presigned_domain_url, params) req.send_request() end |
#create_presigned_mlflow_app_url(params = {}) ⇒ Types::CreatePresignedMlflowAppUrlResponse
Returns a presigned URL that you can use to connect to the MLflow UI attached to your MLflow App. For more information, see [Launch the MLflow UI using a presigned URL].
[1]: docs.aws.amazon.com/sagemaker/latest/dg/mlflow-launch-ui.html
9707 9708 9709 9710 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 9707 def create_presigned_mlflow_app_url(params = {}, = {}) req = build_request(:create_presigned_mlflow_app_url, params) req.send_request() end |
#create_presigned_mlflow_tracking_server_url(params = {}) ⇒ Types::CreatePresignedMlflowTrackingServerUrlResponse
Returns a presigned URL that you can use to connect to the MLflow UI attached to your tracking server. For more information, see [Launch the MLflow UI using a presigned URL].
[1]: docs.aws.amazon.com/sagemaker/latest/dg/mlflow-launch-ui.html
9750 9751 9752 9753 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 9750 def create_presigned_mlflow_tracking_server_url(params = {}, = {}) req = build_request(:create_presigned_mlflow_tracking_server_url, params) req.send_request() end |
#create_presigned_notebook_instance_url(params = {}) ⇒ Types::CreatePresignedNotebookInstanceUrlOutput
Returns a URL that you can use to connect to the Jupyter server from a notebook instance. In the SageMaker AI console, when you choose ‘Open` next to a notebook instance, SageMaker AI opens a new tab showing the Jupyter server home page from the notebook instance. The console uses this API to get the URL and show the page.
The IAM role or user used to call this API defines the permissions to access the notebook instance. Once the presigned URL is created, no additional permission is required to access this URL. IAM authorization policies for this API are also enforced for every HTTP request and WebSocket frame that attempts to connect to the notebook instance.
You can restrict access to this API and to the URL that it returns to a list of IP addresses that you specify. Use the ‘NotIpAddress` condition operator and the `aws:SourceIP` condition context key to specify the list of IP addresses that you want to have access to the notebook instance. For more information, see [Limit Access to a Notebook Instance by IP Address].
<note markdown=“1”> The URL that you get from a call to
- CreatePresignedNotebookInstanceUrl][2
-
is valid only for 5 minutes.
If you try to use the URL after the 5-minute limit expires, you are directed to the Amazon Web Services console sign-in page.
</note>
[1]: docs.aws.amazon.com/sagemaker/latest/dg/security_iam_id-based-policy-examples.html#nbi-ip-filter [2]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_CreatePresignedNotebookInstanceUrl.html
9812 9813 9814 9815 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 9812 def create_presigned_notebook_instance_url(params = {}, = {}) req = build_request(:create_presigned_notebook_instance_url, params) req.send_request() end |
#create_processing_job(params = {}) ⇒ Types::CreateProcessingJobResponse
Creates a processing job.
10010 10011 10012 10013 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 10010 def create_processing_job(params = {}, = {}) req = build_request(:create_processing_job, params) req.send_request() end |
#create_project(params = {}) ⇒ Types::CreateProjectOutput
Creates a machine learning (ML) project that can contain one or more templates that set up an ML pipeline from training to deploying an approved model.
10103 10104 10105 10106 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 10103 def create_project(params = {}, = {}) req = build_request(:create_project, params) req.send_request() end |
#create_space(params = {}) ⇒ Types::CreateSpaceResponse
Creates a private space or a space used for real time collaboration in a domain.
10254 10255 10256 10257 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 10254 def create_space(params = {}, = {}) req = build_request(:create_space, params) req.send_request() end |
#create_studio_lifecycle_config(params = {}) ⇒ Types::CreateStudioLifecycleConfigResponse
Creates a new Amazon SageMaker AI Studio Lifecycle Configuration.
10303 10304 10305 10306 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 10303 def create_studio_lifecycle_config(params = {}, = {}) req = build_request(:create_studio_lifecycle_config, params) req.send_request() end |
#create_training_job(params = {}) ⇒ Types::CreateTrainingJobResponse
Starts a model training job. After training completes, SageMaker saves the resulting model artifacts to an Amazon S3 location that you specify.
If you choose to host your model using SageMaker hosting services, you can use the resulting model artifacts as part of the model. You can also use the artifacts in a machine learning service other than SageMaker, provided that you know how to use them for inference.
In the request body, you provide the following:
-
‘AlgorithmSpecification` - Identifies the training algorithm to use.
-
‘HyperParameters` - Specify these algorithm-specific parameters to enable the estimation of model parameters during training. Hyperparameters can be tuned to optimize this learning process. For a list of hyperparameters for each training algorithm provided by SageMaker, see [Algorithms].
Do not include any security-sensitive information including account access IDs, secrets, or tokens in any hyperparameter fields. As part of the shared responsibility model, you are responsible for any potential exposure, unauthorized access, or compromise of your sensitive data if caused by security-sensitive information included in the request hyperparameter variable or plain text fields.
-
‘InputDataConfig` - Describes the input required by the training job and the Amazon S3, EFS, or FSx location where it is stored.
-
‘OutputDataConfig` - Identifies the Amazon S3 bucket where you want SageMaker to save the results of model training.
-
‘ResourceConfig` - Identifies the resources, ML compute instances, and ML storage volumes to deploy for model training. In distributed training, you specify more than one instance.
-
‘EnableManagedSpotTraining` - Optimize the cost of training machine learning models by up to 80% by using Amazon EC2 Spot instances. For more information, see [Managed Spot Training].
-
‘RoleArn` - The Amazon Resource Name (ARN) that SageMaker assumes to perform tasks on your behalf during model training. You must grant this role the necessary permissions so that SageMaker can successfully complete model training.
-
‘StoppingCondition` - To help cap training costs, use `MaxRuntimeInSeconds` to set a time limit for training. Use `MaxWaitTimeInSeconds` to specify how long a managed spot training job has to complete.
-
‘Environment` - The environment variables to set in the Docker container.
Do not include any security-sensitive information including account access IDs, secrets, or tokens in any environment fields. As part of the shared responsibility model, you are responsible for any potential exposure, unauthorized access, or compromise of your sensitive data if caused by security-sensitive information included in the request environment variable or plain text fields.
-
‘RetryStrategy` - The number of times to retry the job when the job fails due to an `InternalServerError`.
For more information about SageMaker, see [How It Works].
[1]: docs.aws.amazon.com/sagemaker/latest/dg/algos.html [2]: docs.aws.amazon.com/sagemaker/latest/dg/model-managed-spot-training.html [3]: docs.aws.amazon.com/sagemaker/latest/dg/how-it-works.html
10855 10856 10857 10858 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 10855 def create_training_job(params = {}, = {}) req = build_request(:create_training_job, params) req.send_request() end |
#create_training_plan(params = {}) ⇒ Types::CreateTrainingPlanResponse
Creates a new training plan in SageMaker to reserve compute capacity.
Amazon SageMaker Training Plan is a capability within SageMaker that allows customers to reserve and manage GPU capacity for large-scale AI model training. It provides a way to secure predictable access to computational resources within specific timelines and budgets, without the need to manage underlying infrastructure.
**How it works**
Plans can be created for specific resources such as SageMaker Training Jobs or SageMaker HyperPod clusters, automatically provisioning resources, setting up infrastructure, executing workloads, and handling infrastructure failures.
**Plan creation workflow**
-
Users search for available plan offerings based on their requirements (e.g., instance type, count, start time, duration) using the ‘ SearchTrainingPlanOfferings ` API operation.
-
They create a plan that best matches their needs using the ID of the plan offering they want to use.
-
After successful upfront payment, the plan’s status becomes ‘Scheduled`.
-
The plan can be used to:
-
Queue training jobs.
-
Allocate to an instance group of a SageMaker HyperPod cluster.
-
-
When the plan start date arrives, it becomes ‘Active`. Based on available reserved capacity:
-
Training jobs are launched.
-
Instance groups are provisioned.
-
**Plan composition**
A plan can consist of one or more Reserved Capacities, each defined by a specific instance type, quantity, Availability Zone, duration, and start and end times. For more information about Reserved Capacity, see ‘ ReservedCapacitySummary `.
10946 10947 10948 10949 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 10946 def create_training_plan(params = {}, = {}) req = build_request(:create_training_plan, params) req.send_request() end |
#create_transform_job(params = {}) ⇒ Types::CreateTransformJobResponse
Starts a transform job. A transform job uses a trained model to get inferences on a dataset and saves these results to an Amazon S3 location that you specify.
To perform batch transformations, you create a transform job and use the data that you have readily available.
In the request body, you provide the following:
-
‘TransformJobName` - Identifies the transform job. The name must be unique within an Amazon Web Services Region in an Amazon Web Services account.
-
‘ModelName` - Identifies the model to use. `ModelName` must be the name of an existing Amazon SageMaker model in the same Amazon Web Services Region and Amazon Web Services account. For information on creating a model, see [CreateModel].
-
‘TransformInput` - Describes the dataset to be transformed and the Amazon S3 location where it is stored.
-
‘TransformOutput` - Identifies the Amazon S3 location where you want Amazon SageMaker to save the results from the transform job.
-
‘TransformResources` - Identifies the ML compute instances and AMI image versions for the transform job.
For more information about how batch transformation works, see [Batch Transform].
[1]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_CreateModel.html [2]: docs.aws.amazon.com/sagemaker/latest/dg/batch-transform.html
11181 11182 11183 11184 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 11181 def create_transform_job(params = {}, = {}) req = build_request(:create_transform_job, params) req.send_request() end |
#create_trial(params = {}) ⇒ Types::CreateTrialResponse
Creates an SageMaker trial. A trial is a set of steps called *trial components* that produce a machine learning model. A trial is part of a single SageMaker experiment.
When you use SageMaker Studio or the SageMaker Python SDK, all experiments, trials, and trial components are automatically tracked, logged, and indexed. When you use the Amazon Web Services SDK for Python (Boto), you must use the logging APIs provided by the SDK.
You can add tags to a trial and then use the [Search] API to search for the tags.
To get a list of all your trials, call the [ListTrials] API. To view a trial’s properties, call the [DescribeTrial] API. To create a trial component, call the [CreateTrialComponent] API.
[1]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_Search.html [2]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_ListTrials.html [3]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_DescribeTrial.html [4]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_CreateTrialComponent.html
11263 11264 11265 11266 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 11263 def create_trial(params = {}, = {}) req = build_request(:create_trial, params) req.send_request() end |
#create_trial_component(params = {}) ⇒ Types::CreateTrialComponentResponse
Creates a *trial component*, which is a stage of a machine learning trial. A trial is composed of one or more trial components. A trial component can be used in multiple trials.
Trial components include pre-processing jobs, training jobs, and batch transform jobs.
When you use SageMaker Studio or the SageMaker Python SDK, all experiments, trials, and trial components are automatically tracked, logged, and indexed. When you use the Amazon Web Services SDK for Python (Boto), you must use the logging APIs provided by the SDK.
You can add tags to a trial component and then use the [Search] API to search for the tags.
[1]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_Search.html
11389 11390 11391 11392 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 11389 def create_trial_component(params = {}, = {}) req = build_request(:create_trial_component, params) req.send_request() end |
#create_user_profile(params = {}) ⇒ Types::CreateUserProfileResponse
Creates a user profile. A user profile represents a single user within a domain, and is the main way to reference a “person” for the purposes of sharing, reporting, and other user-oriented features. This entity is created when a user onboards to a domain. If an administrator invites a person by email or imports them from IAM Identity Center, a user profile is automatically created. A user profile is the primary holder of settings for an individual user and has a reference to the user’s private Amazon Elastic File System home directory.
11666 11667 11668 11669 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 11666 def create_user_profile(params = {}, = {}) req = build_request(:create_user_profile, params) req.send_request() end |
#create_workforce(params = {}) ⇒ Types::CreateWorkforceResponse
Use this operation to create a workforce. This operation will return an error if a workforce already exists in the Amazon Web Services Region that you specify. You can only create one workforce in each Amazon Web Services Region per Amazon Web Services account.
If you want to create a new workforce in an Amazon Web Services Region where a workforce already exists, use the [DeleteWorkforce] API operation to delete the existing workforce and then use ‘CreateWorkforce` to create a new workforce.
To create a private workforce using Amazon Cognito, you must specify a Cognito user pool in ‘CognitoConfig`. You can also create an Amazon Cognito workforce using the Amazon SageMaker console. For more information, see [ Create a Private Workforce (Amazon Cognito)].
To create a private workforce using your own OIDC Identity Provider (IdP), specify your IdP configuration in ‘OidcConfig`. Your OIDC IdP must support groups because groups are used by Ground Truth and Amazon A2I to create work teams. For more information, see [ Create a Private Workforce (OIDC IdP)].
[1]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_DeleteWorkforce.html [2]: docs.aws.amazon.com/sagemaker/latest/dg/sms-workforce-create-private.html [3]: docs.aws.amazon.com/sagemaker/latest/dg/sms-workforce-create-private-oidc.html
11791 11792 11793 11794 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 11791 def create_workforce(params = {}, = {}) req = build_request(:create_workforce, params) req.send_request() end |
#create_workteam(params = {}) ⇒ Types::CreateWorkteamResponse
Creates a new work team for labeling your data. A work team is defined by one or more Amazon Cognito user pools. You must first create the user pools before you can create a work team.
You cannot create more than 25 work teams in an account and region.
11908 11909 11910 11911 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 11908 def create_workteam(params = {}, = {}) req = build_request(:create_workteam, params) req.send_request() end |
#delete_action(params = {}) ⇒ Types::DeleteActionResponse
Deletes an action.
12021 12022 12023 12024 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12021 def delete_action(params = {}, = {}) req = build_request(:delete_action, params) req.send_request() end |
#delete_ai_benchmark_job(params = {}) ⇒ Types::DeleteAIBenchmarkJobResponse
Deletes the specified AI benchmark job.
11936 11937 11938 11939 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 11936 def delete_ai_benchmark_job(params = {}, = {}) req = build_request(:delete_ai_benchmark_job, params) req.send_request() end |
#delete_ai_recommendation_job(params = {}) ⇒ Types::DeleteAIRecommendationJobResponse
Deletes the specified AI recommendation job.
11964 11965 11966 11967 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 11964 def delete_ai_recommendation_job(params = {}, = {}) req = build_request(:delete_ai_recommendation_job, params) req.send_request() end |
#delete_ai_workload_config(params = {}) ⇒ Types::DeleteAIWorkloadConfigResponse
Deletes the specified AI workload configuration. You cannot delete a configuration that is referenced by an active benchmark job.
11993 11994 11995 11996 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 11993 def delete_ai_workload_config(params = {}, = {}) req = build_request(:delete_ai_workload_config, params) req.send_request() end |
#delete_algorithm(params = {}) ⇒ Struct
Removes the specified algorithm from your account.
12043 12044 12045 12046 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12043 def delete_algorithm(params = {}, = {}) req = build_request(:delete_algorithm, params) req.send_request() end |
#delete_app(params = {}) ⇒ Struct
Used to stop and delete an app.
12083 12084 12085 12086 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12083 def delete_app(params = {}, = {}) req = build_request(:delete_app, params) req.send_request() end |
#delete_app_image_config(params = {}) ⇒ Struct
Deletes an AppImageConfig.
12105 12106 12107 12108 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12105 def delete_app_image_config(params = {}, = {}) req = build_request(:delete_app_image_config, params) req.send_request() end |
#delete_artifact(params = {}) ⇒ Types::DeleteArtifactResponse
Deletes an artifact. Either ‘ArtifactArn` or `Source` must be specified.
12146 12147 12148 12149 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12146 def delete_artifact(params = {}, = {}) req = build_request(:delete_artifact, params) req.send_request() end |
#delete_association(params = {}) ⇒ Types::DeleteAssociationResponse
Deletes an association.
12180 12181 12182 12183 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12180 def delete_association(params = {}, = {}) req = build_request(:delete_association, params) req.send_request() end |
#delete_cluster(params = {}) ⇒ Types::DeleteClusterResponse
Delete a SageMaker HyperPod cluster.
12209 12210 12211 12212 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12209 def delete_cluster(params = {}, = {}) req = build_request(:delete_cluster, params) req.send_request() end |
#delete_cluster_scheduler_config(params = {}) ⇒ Struct
Deletes the cluster policy of the cluster.
12231 12232 12233 12234 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12231 def delete_cluster_scheduler_config(params = {}, = {}) req = build_request(:delete_cluster_scheduler_config, params) req.send_request() end |
#delete_code_repository(params = {}) ⇒ Struct
Deletes the specified Git repository from your account.
12253 12254 12255 12256 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12253 def delete_code_repository(params = {}, = {}) req = build_request(:delete_code_repository, params) req.send_request() end |
#delete_compilation_job(params = {}) ⇒ Struct
Deletes the specified compilation job. This action deletes only the compilation job resource in Amazon SageMaker AI. It doesn’t delete other resources that are related to that job, such as the model artifacts that the job creates, the compilation logs in CloudWatch, the compiled model, or the IAM role.
You can delete a compilation job only if its current status is ‘COMPLETED`, `FAILED`, or `STOPPED`. If the job status is `STARTING` or `INPROGRESS`, stop the job, and then delete it after its status becomes `STOPPED`.
12284 12285 12286 12287 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12284 def delete_compilation_job(params = {}, = {}) req = build_request(:delete_compilation_job, params) req.send_request() end |
#delete_compute_quota(params = {}) ⇒ Struct
Deletes the compute allocation from the cluster.
12306 12307 12308 12309 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12306 def delete_compute_quota(params = {}, = {}) req = build_request(:delete_compute_quota, params) req.send_request() end |
#delete_context(params = {}) ⇒ Types::DeleteContextResponse
Deletes an context.
12334 12335 12336 12337 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12334 def delete_context(params = {}, = {}) req = build_request(:delete_context, params) req.send_request() end |
#delete_data_quality_job_definition(params = {}) ⇒ Struct
Deletes a data quality monitoring job definition.
12356 12357 12358 12359 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12356 def delete_data_quality_job_definition(params = {}, = {}) req = build_request(:delete_data_quality_job_definition, params) req.send_request() end |
#delete_device_fleet(params = {}) ⇒ Struct
Deletes a fleet.
12378 12379 12380 12381 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12378 def delete_device_fleet(params = {}, = {}) req = build_request(:delete_device_fleet, params) req.send_request() end |
#delete_domain(params = {}) ⇒ Struct
Used to delete a domain. If you onboarded with IAM mode, you will need to delete your domain to onboard again using IAM Identity Center. Use with caution. All of the members of the domain will lose access to their EFS volume, including data, notebooks, and other artifacts.
12411 12412 12413 12414 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12411 def delete_domain(params = {}, = {}) req = build_request(:delete_domain, params) req.send_request() end |
#delete_edge_deployment_plan(params = {}) ⇒ Struct
Deletes an edge deployment plan if (and only if) all the stages in the plan are inactive or there are no stages in the plan.
12434 12435 12436 12437 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12434 def delete_edge_deployment_plan(params = {}, = {}) req = build_request(:delete_edge_deployment_plan, params) req.send_request() end |
#delete_edge_deployment_stage(params = {}) ⇒ Struct
Delete a stage in an edge deployment plan if (and only if) the stage is inactive.
12462 12463 12464 12465 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12462 def delete_edge_deployment_stage(params = {}, = {}) req = build_request(:delete_edge_deployment_stage, params) req.send_request() end |
#delete_endpoint(params = {}) ⇒ Struct
Deletes an endpoint. SageMaker frees up all of the resources that were deployed when the endpoint was created.
SageMaker retires any custom KMS key grants associated with the endpoint, meaning you don’t need to use the [RevokeGrant] API call.
When you delete your endpoint, SageMaker asynchronously deletes associated endpoint resources such as KMS key grants. You might still see these resources in your account for a few minutes after deleting your endpoint. Do not delete or revoke the permissions for your ‘ ExecutionRoleArn `, otherwise SageMaker cannot delete these resources.
[1]: docs.aws.amazon.com/kms/latest/APIReference/API_RevokeGrant.html
12499 12500 12501 12502 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12499 def delete_endpoint(params = {}, = {}) req = build_request(:delete_endpoint, params) req.send_request() end |
#delete_endpoint_config(params = {}) ⇒ Struct
Deletes an endpoint configuration. The ‘DeleteEndpointConfig` API deletes only the specified configuration. It does not delete endpoints created using the configuration.
You must not delete an ‘EndpointConfig` in use by an endpoint that is live or while the `UpdateEndpoint` or `CreateEndpoint` operations are being performed on the endpoint. If you delete the `EndpointConfig` of an endpoint that is active or being created or updated you may lose visibility into the instance type the endpoint is using. The endpoint must be deleted in order to stop incurring charges.
12530 12531 12532 12533 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12530 def delete_endpoint_config(params = {}, = {}) req = build_request(:delete_endpoint_config, params) req.send_request() end |
#delete_experiment(params = {}) ⇒ Types::DeleteExperimentResponse
Deletes an SageMaker experiment. All trials associated with the experiment must be deleted first. Use the [ListTrials] API to get a list of the trials associated with the experiment.
[1]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_ListTrials.html
12564 12565 12566 12567 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12564 def delete_experiment(params = {}, = {}) req = build_request(:delete_experiment, params) req.send_request() end |
#delete_feature_group(params = {}) ⇒ Struct
Delete the ‘FeatureGroup` and any data that was written to the `OnlineStore` of the `FeatureGroup`. Data cannot be accessed from the `OnlineStore` immediately after `DeleteFeatureGroup` is called.
Data written into the ‘OfflineStore` will not be deleted. The Amazon Web Services Glue database and tables that are automatically created for your `OfflineStore` are not deleted.
Note that it can take approximately 10-15 minutes to delete an ‘OnlineStore` `FeatureGroup` with the `InMemory` `StorageType`.
12597 12598 12599 12600 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12597 def delete_feature_group(params = {}, = {}) req = build_request(:delete_feature_group, params) req.send_request() end |
#delete_flow_definition(params = {}) ⇒ Struct
Deletes the specified flow definition.
12619 12620 12621 12622 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12619 def delete_flow_definition(params = {}, = {}) req = build_request(:delete_flow_definition, params) req.send_request() end |
#delete_hub(params = {}) ⇒ Struct
Delete a hub.
12641 12642 12643 12644 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12641 def delete_hub(params = {}, = {}) req = build_request(:delete_hub, params) req.send_request() end |
#delete_hub_content(params = {}) ⇒ Struct
Delete the contents of a hub.
12675 12676 12677 12678 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12675 def delete_hub_content(params = {}, = {}) req = build_request(:delete_hub_content, params) req.send_request() end |
#delete_hub_content_reference(params = {}) ⇒ Struct
Delete a hub content reference in order to remove a model from a private hub.
12707 12708 12709 12710 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12707 def delete_hub_content_reference(params = {}, = {}) req = build_request(:delete_hub_content_reference, params) req.send_request() end |
#delete_human_task_ui(params = {}) ⇒ Struct
Use this operation to delete a human task user interface (worker task template).
To see a list of human task user interfaces (work task templates) in your account, use [ListHumanTaskUis]. When you delete a worker task template, it no longer appears when you call ‘ListHumanTaskUis`.
[1]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_ListHumanTaskUis.html
12739 12740 12741 12742 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12739 def delete_human_task_ui(params = {}, = {}) req = build_request(:delete_human_task_ui, params) req.send_request() end |
#delete_hyper_parameter_tuning_job(params = {}) ⇒ Struct
Deletes a hyperparameter tuning job. The ‘DeleteHyperParameterTuningJob` API deletes only the tuning job entry that was created in SageMaker when you called the `CreateHyperParameterTuningJob` API. It does not delete training jobs, artifacts, or the IAM role that you specified when creating the model.
12765 12766 12767 12768 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12765 def delete_hyper_parameter_tuning_job(params = {}, = {}) req = build_request(:delete_hyper_parameter_tuning_job, params) req.send_request() end |
#delete_image(params = {}) ⇒ Struct
Deletes a SageMaker AI image and all versions of the image. The container images aren’t deleted.
12788 12789 12790 12791 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12788 def delete_image(params = {}, = {}) req = build_request(:delete_image, params) req.send_request() end |
#delete_image_version(params = {}) ⇒ Struct
Deletes a version of a SageMaker AI image. The container image the version represents isn’t deleted.
12819 12820 12821 12822 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12819 def delete_image_version(params = {}, = {}) req = build_request(:delete_image_version, params) req.send_request() end |
#delete_inference_component(params = {}) ⇒ Struct
Deletes an inference component.
12841 12842 12843 12844 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12841 def delete_inference_component(params = {}, = {}) req = build_request(:delete_inference_component, params) req.send_request() end |
#delete_inference_experiment(params = {}) ⇒ Types::DeleteInferenceExperimentResponse
Deletes an inference experiment.
<note markdown=“1”> This operation does not delete your endpoint, variants, or any underlying resources. This operation only deletes the metadata of your experiment.
</note>
12875 12876 12877 12878 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12875 def delete_inference_experiment(params = {}, = {}) req = build_request(:delete_inference_experiment, params) req.send_request() end |
#delete_mlflow_app(params = {}) ⇒ Types::DeleteMlflowAppResponse
Deletes an MLflow App.
12903 12904 12905 12906 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12903 def delete_mlflow_app(params = {}, = {}) req = build_request(:delete_mlflow_app, params) req.send_request() end |
#delete_mlflow_tracking_server(params = {}) ⇒ Types::DeleteMlflowTrackingServerResponse
Deletes an MLflow Tracking Server. For more information, see [Clean up MLflow resources].
[1]: docs.aws.amazon.com/sagemaker/latest/dg/mlflow-cleanup.html.html
12936 12937 12938 12939 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12936 def delete_mlflow_tracking_server(params = {}, = {}) req = build_request(:delete_mlflow_tracking_server, params) req.send_request() end |
#delete_model(params = {}) ⇒ Struct
Deletes a model. The ‘DeleteModel` API deletes only the model entry that was created in SageMaker when you called the `CreateModel` API. It does not delete model artifacts, inference code, or the IAM role that you specified when creating the model.
12961 12962 12963 12964 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12961 def delete_model(params = {}, = {}) req = build_request(:delete_model, params) req.send_request() end |
#delete_model_bias_job_definition(params = {}) ⇒ Struct
Deletes an Amazon SageMaker AI model bias job definition.
12983 12984 12985 12986 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 12983 def delete_model_bias_job_definition(params = {}, = {}) req = build_request(:delete_model_bias_job_definition, params) req.send_request() end |
#delete_model_card(params = {}) ⇒ Struct
Deletes an Amazon SageMaker Model Card.
13005 13006 13007 13008 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 13005 def delete_model_card(params = {}, = {}) req = build_request(:delete_model_card, params) req.send_request() end |
#delete_model_explainability_job_definition(params = {}) ⇒ Struct
Deletes an Amazon SageMaker AI model explainability job definition.
13027 13028 13029 13030 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 13027 def delete_model_explainability_job_definition(params = {}, = {}) req = build_request(:delete_model_explainability_job_definition, params) req.send_request() end |
#delete_model_package(params = {}) ⇒ Struct
Deletes a model package.
A model package is used to create SageMaker models or list on Amazon Web Services Marketplace. Buyers can subscribe to model packages listed on Amazon Web Services Marketplace to create models in SageMaker.
13057 13058 13059 13060 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 13057 def delete_model_package(params = {}, = {}) req = build_request(:delete_model_package, params) req.send_request() end |
#delete_model_package_group(params = {}) ⇒ Struct
Deletes the specified model group.
13079 13080 13081 13082 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 13079 def delete_model_package_group(params = {}, = {}) req = build_request(:delete_model_package_group, params) req.send_request() end |
#delete_model_package_group_policy(params = {}) ⇒ Struct
Deletes a model group resource policy.
13101 13102 13103 13104 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 13101 def delete_model_package_group_policy(params = {}, = {}) req = build_request(:delete_model_package_group_policy, params) req.send_request() end |
#delete_model_quality_job_definition(params = {}) ⇒ Struct
Deletes the secified model quality monitoring job definition.
13123 13124 13125 13126 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 13123 def delete_model_quality_job_definition(params = {}, = {}) req = build_request(:delete_model_quality_job_definition, params) req.send_request() end |
#delete_monitoring_schedule(params = {}) ⇒ Struct
Deletes a monitoring schedule. Also stops the schedule had not already been stopped. This does not delete the job execution history of the monitoring schedule.
13147 13148 13149 13150 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 13147 def delete_monitoring_schedule(params = {}, = {}) req = build_request(:delete_monitoring_schedule, params) req.send_request() end |
#delete_notebook_instance(params = {}) ⇒ Struct
Deletes an SageMaker AI notebook instance. Before you can delete a notebook instance, you must call the ‘StopNotebookInstance` API.
When you delete a notebook instance, you lose all of your data. SageMaker AI removes the ML compute instance, and deletes the ML storage volume and the network interface associated with the notebook instance.
13175 13176 13177 13178 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 13175 def delete_notebook_instance(params = {}, = {}) req = build_request(:delete_notebook_instance, params) req.send_request() end |
#delete_notebook_instance_lifecycle_config(params = {}) ⇒ Struct
Deletes a notebook instance lifecycle configuration.
13197 13198 13199 13200 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 13197 def delete_notebook_instance_lifecycle_config(params = {}, = {}) req = build_request(:delete_notebook_instance_lifecycle_config, params) req.send_request() end |
#delete_optimization_job(params = {}) ⇒ Struct
Deletes an optimization job.
13219 13220 13221 13222 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 13219 def delete_optimization_job(params = {}, = {}) req = build_request(:delete_optimization_job, params) req.send_request() end |
#delete_partner_app(params = {}) ⇒ Types::DeletePartnerAppResponse
Deletes a SageMaker Partner AI App.
13255 13256 13257 13258 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 13255 def delete_partner_app(params = {}, = {}) req = build_request(:delete_partner_app, params) req.send_request() end |
#delete_pipeline(params = {}) ⇒ Types::DeletePipelineResponse
Deletes a pipeline if there are no running instances of the pipeline. To delete a pipeline, you must stop all running instances of the pipeline using the ‘StopPipelineExecution` API. When you delete a pipeline, all instances of the pipeline are deleted.
13295 13296 13297 13298 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 13295 def delete_pipeline(params = {}, = {}) req = build_request(:delete_pipeline, params) req.send_request() end |
#delete_processing_job(params = {}) ⇒ Struct
Deletes a processing job. After Amazon SageMaker deletes a processing job, all of the metadata for the processing job is lost. You can delete only processing jobs that are in a terminal state (‘Stopped`, `Failed`, or `Completed`). You cannot delete a job that is in the `InProgress` or `Stopping` state. After deleting the job, you can reuse its name to create another processing job.
13322 13323 13324 13325 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 13322 def delete_processing_job(params = {}, = {}) req = build_request(:delete_processing_job, params) req.send_request() end |
#delete_project(params = {}) ⇒ Struct
Delete the specified project.
13344 13345 13346 13347 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 13344 def delete_project(params = {}, = {}) req = build_request(:delete_project, params) req.send_request() end |
#delete_space(params = {}) ⇒ Struct
Used to delete a space.
13370 13371 13372 13373 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 13370 def delete_space(params = {}, = {}) req = build_request(:delete_space, params) req.send_request() end |
#delete_studio_lifecycle_config(params = {}) ⇒ Struct
Deletes the Amazon SageMaker AI Studio Lifecycle Configuration. In order to delete the Lifecycle Configuration, there must be no running apps using the Lifecycle Configuration. You must also remove the Lifecycle Configuration from UserSettings in all Domains and UserProfiles.
13397 13398 13399 13400 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 13397 def delete_studio_lifecycle_config(params = {}, = {}) req = build_request(:delete_studio_lifecycle_config, params) req.send_request() end |
#delete_tags(params = {}) ⇒ Struct
Deletes the specified tags from an SageMaker resource.
To list a resource’s tags, use the ‘ListTags` API.
<note markdown=“1”> When you call this API to delete tags from a hyperparameter tuning job, the deleted tags are not removed from training jobs that the hyperparameter tuning job launched before you called this API.
</note>
<note markdown=“1”> When you call this API to delete tags from a SageMaker Domain or User Profile, the deleted tags are not removed from Apps that the SageMaker Domain or User Profile launched before you called this API.
</note>
13438 13439 13440 13441 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 13438 def (params = {}, = {}) req = build_request(:delete_tags, params) req.send_request() end |
#delete_training_job(params = {}) ⇒ Struct
Deletes a training job. After SageMaker deletes a training job, all of the metadata for the training job is lost. You can delete only training jobs that are in a terminal state (‘Stopped`, `Failed`, or `Completed`) and don’t retain an ‘Available` [managed warm pool]. You cannot delete a job that is in the `InProgress` or `Stopping` state. After deleting the job, you can reuse its name to create another training job.
[1]: docs.aws.amazon.com/sagemaker/latest/dg/train-warm-pools.html
13470 13471 13472 13473 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 13470 def delete_training_job(params = {}, = {}) req = build_request(:delete_training_job, params) req.send_request() end |
#delete_trial(params = {}) ⇒ Types::DeleteTrialResponse
Deletes the specified trial. All trial components that make up the trial must be deleted first. Use the [DescribeTrialComponent] API to get the list of trial components.
[1]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_DescribeTrialComponent.html
13504 13505 13506 13507 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 13504 def delete_trial(params = {}, = {}) req = build_request(:delete_trial, params) req.send_request() end |
#delete_trial_component(params = {}) ⇒ Types::DeleteTrialComponentResponse
Deletes the specified trial component. A trial component must be disassociated from all trials before the trial component can be deleted. To disassociate a trial component from a trial, call the
- DisassociateTrialComponent][1
-
API.
[1]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_DisassociateTrialComponent.html
13539 13540 13541 13542 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 13539 def delete_trial_component(params = {}, = {}) req = build_request(:delete_trial_component, params) req.send_request() end |
#delete_user_profile(params = {}) ⇒ Struct
Deletes a user profile. When a user profile is deleted, the user loses access to their EFS volume, including data, notebooks, and other artifacts.
13567 13568 13569 13570 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 13567 def delete_user_profile(params = {}, = {}) req = build_request(:delete_user_profile, params) req.send_request() end |
#delete_workforce(params = {}) ⇒ Struct
Use this operation to delete a workforce.
If you want to create a new workforce in an Amazon Web Services Region where a workforce already exists, use this operation to delete the existing workforce and then use [CreateWorkforce] to create a new workforce.
If a private workforce contains one or more work teams, you must use the [DeleteWorkteam] operation to delete all work teams before you delete the workforce. If you try to delete a workforce that contains one or more work teams, you will receive a ‘ResourceInUse` error.
[1]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_CreateWorkforce.html [2]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_DeleteWorkteam.html
13604 13605 13606 13607 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 13604 def delete_workforce(params = {}, = {}) req = build_request(:delete_workforce, params) req.send_request() end |
#delete_workteam(params = {}) ⇒ Types::DeleteWorkteamResponse
Deletes an existing work team. This operation can’t be undone.
13632 13633 13634 13635 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 13632 def delete_workteam(params = {}, = {}) req = build_request(:delete_workteam, params) req.send_request() end |
#deregister_devices(params = {}) ⇒ Struct
Deregisters the specified devices. After you deregister a device, you will need to re-register the devices.
13659 13660 13661 13662 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 13659 def deregister_devices(params = {}, = {}) req = build_request(:deregister_devices, params) req.send_request() end |
#describe_action(params = {}) ⇒ Types::DescribeActionResponse
Describes an action.
13930 13931 13932 13933 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 13930 def describe_action(params = {}, = {}) req = build_request(:describe_action, params) req.send_request() end |
#describe_ai_benchmark_job(params = {}) ⇒ Types::DescribeAIBenchmarkJobResponse
Returns details of an AI benchmark job, including its status, configuration, target endpoint, and timing information.
13723 13724 13725 13726 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 13723 def describe_ai_benchmark_job(params = {}, = {}) req = build_request(:describe_ai_benchmark_job, params) req.send_request() end |
#describe_ai_recommendation_job(params = {}) ⇒ Types::DescribeAIRecommendationJobResponse
Returns details of an AI recommendation job, including its status, model source, performance targets, optimization recommendations, and deployment configurations.
13819 13820 13821 13822 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 13819 def describe_ai_recommendation_job(params = {}, = {}) req = build_request(:describe_ai_recommendation_job, params) req.send_request() end |
#describe_ai_workload_config(params = {}) ⇒ Types::DescribeAIWorkloadConfigResponse
Returns details of an AI workload configuration, including the dataset configuration, benchmark tool settings, tags, and creation time.
13862 13863 13864 13865 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 13862 def describe_ai_workload_config(params = {}, = {}) req = build_request(:describe_ai_workload_config, params) req.send_request() end |
#describe_algorithm(params = {}) ⇒ Types::DescribeAlgorithmOutput
Returns a description of the specified algorithm that is in your account.
14133 14134 14135 14136 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 14133 def describe_algorithm(params = {}, = {}) req = build_request(:describe_algorithm, params) req.send_request() end |
#describe_app(params = {}) ⇒ Types::DescribeAppResponse
Describes the app.
14210 14211 14212 14213 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 14210 def describe_app(params = {}, = {}) req = build_request(:describe_app, params) req.send_request() end |
#describe_app_image_config(params = {}) ⇒ Types::DescribeAppImageConfigResponse
Describes an AppImageConfig.
14271 14272 14273 14274 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 14271 def describe_app_image_config(params = {}, = {}) req = build_request(:describe_app_image_config, params) req.send_request() end |
#describe_artifact(params = {}) ⇒ Types::DescribeArtifactResponse
Describes an artifact.
14336 14337 14338 14339 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 14336 def describe_artifact(params = {}, = {}) req = build_request(:describe_artifact, params) req.send_request() end |
#describe_auto_ml_job(params = {}) ⇒ Types::DescribeAutoMLJobResponse
Returns information about an AutoML job created by calling [CreateAutoMLJob].
<note markdown=“1”> AutoML jobs created by calling [CreateAutoMLJobV2] cannot be described by ‘DescribeAutoMLJob`.
</note>
[1]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_CreateAutoMLJob.html [2]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_CreateAutoMLJobV2.html
14477 14478 14479 14480 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 14477 def describe_auto_ml_job(params = {}, = {}) req = build_request(:describe_auto_ml_job, params) req.send_request() end |
#describe_auto_ml_job_v2(params = {}) ⇒ Types::DescribeAutoMLJobV2Response
Returns information about an AutoML job created by calling
- CreateAutoMLJobV2][1
-
or [CreateAutoMLJob].
[1]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_CreateAutoMLJobV2.html [2]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_CreateAutoMLJob.html
14656 14657 14658 14659 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 14656 def describe_auto_ml_job_v2(params = {}, = {}) req = build_request(:describe_auto_ml_job_v2, params) req.send_request() end |
#describe_cluster(params = {}) ⇒ Types::DescribeClusterResponse
Retrieves information of a SageMaker HyperPod cluster.
14828 14829 14830 14831 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 14828 def describe_cluster(params = {}, = {}) req = build_request(:describe_cluster, params) req.send_request() end |
#describe_cluster_event(params = {}) ⇒ Types::DescribeClusterEventResponse
Retrieves detailed information about a specific event for a given HyperPod cluster. This functionality is only supported when the ‘NodeProvisioningMode` is set to `Continuous`.
14895 14896 14897 14898 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 14895 def describe_cluster_event(params = {}, = {}) req = build_request(:describe_cluster_event, params) req.send_request() end |
#describe_cluster_node(params = {}) ⇒ Types::DescribeClusterNodeResponse
Retrieves information of a node (also called a instance interchangeably) of a SageMaker HyperPod cluster.
14984 14985 14986 14987 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 14984 def describe_cluster_node(params = {}, = {}) req = build_request(:describe_cluster_node, params) req.send_request() end |
#describe_cluster_scheduler_config(params = {}) ⇒ Types::DescribeClusterSchedulerConfigResponse
Description of the cluster policy. This policy is used for task prioritization and fair-share allocation. This helps prioritize critical workloads and distributes idle compute across entities.
15059 15060 15061 15062 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 15059 def describe_cluster_scheduler_config(params = {}, = {}) req = build_request(:describe_cluster_scheduler_config, params) req.send_request() end |
#describe_code_repository(params = {}) ⇒ Types::DescribeCodeRepositoryOutput
Gets details about the specified Git repository.
15097 15098 15099 15100 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 15097 def describe_code_repository(params = {}, = {}) req = build_request(:describe_code_repository, params) req.send_request() end |
#describe_compilation_job(params = {}) ⇒ Types::DescribeCompilationJobResponse
Returns information about a model compilation job.
To create a model compilation job, use [CreateCompilationJob]. To get information about multiple model compilation jobs, use [ListCompilationJobs].
[1]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_CreateCompilationJob.html [2]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_ListCompilationJobs.html
15182 15183 15184 15185 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 15182 def describe_compilation_job(params = {}, = {}) req = build_request(:describe_compilation_job, params) req.send_request() end |
#describe_compute_quota(params = {}) ⇒ Types::DescribeComputeQuotaResponse
Description of the compute allocation definition.
15271 15272 15273 15274 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 15271 def describe_compute_quota(params = {}, = {}) req = build_request(:describe_compute_quota, params) req.send_request() end |
#describe_context(params = {}) ⇒ Types::DescribeContextResponse
Describes a context.
15332 15333 15334 15335 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 15332 def describe_context(params = {}, = {}) req = build_request(:describe_context, params) req.send_request() end |
#describe_data_quality_job_definition(params = {}) ⇒ Types::DescribeDataQualityJobDefinitionResponse
Gets the details of a data quality monitoring job definition.
15425 15426 15427 15428 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 15425 def describe_data_quality_job_definition(params = {}, = {}) req = build_request(:describe_data_quality_job_definition, params) req.send_request() end |
#describe_device(params = {}) ⇒ Types::DescribeDeviceResponse
Describes the device.
15485 15486 15487 15488 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 15485 def describe_device(params = {}, = {}) req = build_request(:describe_device, params) req.send_request() end |
#describe_device_fleet(params = {}) ⇒ Types::DescribeDeviceFleetResponse
A description of the fleet the device belongs to.
15530 15531 15532 15533 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 15530 def describe_device_fleet(params = {}, = {}) req = build_request(:describe_device_fleet, params) req.send_request() end |
#describe_domain(params = {}) ⇒ Types::DescribeDomainResponse
The description of the domain.
15802 15803 15804 15805 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 15802 def describe_domain(params = {}, = {}) req = build_request(:describe_domain, params) req.send_request() end |
#describe_edge_deployment_plan(params = {}) ⇒ Types::DescribeEdgeDeploymentPlanResponse
Describes an edge deployment plan with deployment status per stage.
15874 15875 15876 15877 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 15874 def describe_edge_deployment_plan(params = {}, = {}) req = build_request(:describe_edge_deployment_plan, params) req.send_request() end |
#describe_edge_packaging_job(params = {}) ⇒ Types::DescribeEdgePackagingJobResponse
A description of edge packaging jobs.
15936 15937 15938 15939 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 15936 def describe_edge_packaging_job(params = {}, = {}) req = build_request(:describe_edge_packaging_job, params) req.send_request() end |
#describe_endpoint(params = {}) ⇒ Types::DescribeEndpointOutput
Returns the description of an endpoint.
The following waiters are defined for this operation (see #wait_until for detailed usage):
* endpoint_deleted
* endpoint_in_service
16190 16191 16192 16193 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 16190 def describe_endpoint(params = {}, = {}) req = build_request(:describe_endpoint, params) req.send_request() end |
#describe_endpoint_config(params = {}) ⇒ Types::DescribeEndpointConfigOutput
Returns the description of an endpoint configuration created using the ‘CreateEndpointConfig` API.
16345 16346 16347 16348 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 16345 def describe_endpoint_config(params = {}, = {}) req = build_request(:describe_endpoint_config, params) req.send_request() end |
#describe_experiment(params = {}) ⇒ Types::DescribeExperimentResponse
Provides a list of an experiment’s properties.
16400 16401 16402 16403 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 16400 def describe_experiment(params = {}, = {}) req = build_request(:describe_experiment, params) req.send_request() end |
#describe_feature_group(params = {}) ⇒ Types::DescribeFeatureGroupResponse
Use this operation to describe a ‘FeatureGroup`. The response includes information on the creation time, `FeatureGroup` name, the unique identifier for each `FeatureGroup`, and more.
16489 16490 16491 16492 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 16489 def describe_feature_group(params = {}, = {}) req = build_request(:describe_feature_group, params) req.send_request() end |
#describe_feature_metadata(params = {}) ⇒ Types::DescribeFeatureMetadataResponse
Shows the metadata for a feature within a feature group.
16538 16539 16540 16541 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 16538 def (params = {}, = {}) req = build_request(:describe_feature_metadata, params) req.send_request() end |
#describe_flow_definition(params = {}) ⇒ Types::DescribeFlowDefinitionResponse
Returns information about the specified flow definition.
16596 16597 16598 16599 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 16596 def describe_flow_definition(params = {}, = {}) req = build_request(:describe_flow_definition, params) req.send_request() end |
#describe_hub(params = {}) ⇒ Types::DescribeHubResponse
Describes a hub.
16643 16644 16645 16646 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 16643 def describe_hub(params = {}, = {}) req = build_request(:describe_hub, params) req.send_request() end |
#describe_hub_content(params = {}) ⇒ Types::DescribeHubContentResponse
Describe the content of a hub.
16724 16725 16726 16727 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 16724 def describe_hub_content(params = {}, = {}) req = build_request(:describe_hub_content, params) req.send_request() end |
#describe_human_task_ui(params = {}) ⇒ Types::DescribeHumanTaskUiResponse
Returns information about the requested human task user interface (worker task template).
16763 16764 16765 16766 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 16763 def describe_human_task_ui(params = {}, = {}) req = build_request(:describe_human_task_ui, params) req.send_request() end |
#describe_hyper_parameter_tuning_job(params = {}) ⇒ Types::DescribeHyperParameterTuningJobResponse
Returns a description of a hyperparameter tuning job, depending on the fields selected. These fields can include the name, Amazon Resource Name (ARN), job status of your tuning job and more.
17074 17075 17076 17077 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 17074 def describe_hyper_parameter_tuning_job(params = {}, = {}) req = build_request(:describe_hyper_parameter_tuning_job, params) req.send_request() end |
#describe_image(params = {}) ⇒ Types::DescribeImageResponse
Describes a SageMaker AI image.
The following waiters are defined for this operation (see #wait_until for detailed usage):
* image_created
* image_deleted
* image_updated
17125 17126 17127 17128 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 17125 def describe_image(params = {}, = {}) req = build_request(:describe_image, params) req.send_request() end |
#describe_image_version(params = {}) ⇒ Types::DescribeImageVersionResponse
Describes a version of a SageMaker AI image.
The following waiters are defined for this operation (see #wait_until for detailed usage):
* image_version_created
* image_version_deleted
17198 17199 17200 17201 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 17198 def describe_image_version(params = {}, = {}) req = build_request(:describe_image_version, params) req.send_request() end |
#describe_inference_component(params = {}) ⇒ Types::DescribeInferenceComponentOutput
Returns information about an inference component.
17298 17299 17300 17301 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 17298 def describe_inference_component(params = {}, = {}) req = build_request(:describe_inference_component, params) req.send_request() end |
#describe_inference_experiment(params = {}) ⇒ Types::DescribeInferenceExperimentResponse
Returns details about an inference experiment.
17374 17375 17376 17377 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 17374 def describe_inference_experiment(params = {}, = {}) req = build_request(:describe_inference_experiment, params) req.send_request() end |
#describe_inference_recommendations_job(params = {}) ⇒ Types::DescribeInferenceRecommendationsJobResponse
Provides the results of the Inference Recommender job. One or more recommendation jobs are returned.
17503 17504 17505 17506 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 17503 def describe_inference_recommendations_job(params = {}, = {}) req = build_request(:describe_inference_recommendations_job, params) req.send_request() end |
#describe_labeling_job(params = {}) ⇒ Types::DescribeLabelingJobResponse
Gets information about a labeling job.
17599 17600 17601 17602 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 17599 def describe_labeling_job(params = {}, = {}) req = build_request(:describe_labeling_job, params) req.send_request() end |
#describe_lineage_group(params = {}) ⇒ Types::DescribeLineageGroupResponse
Provides a list of properties for the requested lineage group. For more information, see [ Cross-Account Lineage Tracking ][1] in the *Amazon SageMaker Developer Guide*.
[1]: docs.aws.amazon.com/sagemaker/latest/dg/xaccount-lineage-tracking.html
17657 17658 17659 17660 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 17657 def describe_lineage_group(params = {}, = {}) req = build_request(:describe_lineage_group, params) req.send_request() end |
#describe_mlflow_app(params = {}) ⇒ Types::DescribeMlflowAppResponse
Returns information about an MLflow App.
17724 17725 17726 17727 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 17724 def describe_mlflow_app(params = {}, = {}) req = build_request(:describe_mlflow_app, params) req.send_request() end |
#describe_mlflow_tracking_server(params = {}) ⇒ Types::DescribeMlflowTrackingServerResponse
Returns information about an MLflow Tracking Server.
17796 17797 17798 17799 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 17796 def describe_mlflow_tracking_server(params = {}, = {}) req = build_request(:describe_mlflow_tracking_server, params) req.send_request() end |
#describe_model(params = {}) ⇒ Types::DescribeModelOutput
Describes a model that you created using the ‘CreateModel` API.
17907 17908 17909 17910 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 17907 def describe_model(params = {}, = {}) req = build_request(:describe_model, params) req.send_request() end |
#describe_model_bias_job_definition(params = {}) ⇒ Types::DescribeModelBiasJobDefinitionResponse
Returns a description of a model bias job definition.
17997 17998 17999 18000 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 17997 def describe_model_bias_job_definition(params = {}, = {}) req = build_request(:describe_model_bias_job_definition, params) req.send_request() end |
#describe_model_card(params = {}) ⇒ Types::DescribeModelCardResponse
Describes the content, creation time, and security configuration of an Amazon SageMaker Model Card.
18061 18062 18063 18064 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 18061 def describe_model_card(params = {}, = {}) req = build_request(:describe_model_card, params) req.send_request() end |
#describe_model_card_export_job(params = {}) ⇒ Types::DescribeModelCardExportJobResponse
Describes an Amazon SageMaker Model Card export job.
18108 18109 18110 18111 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 18108 def describe_model_card_export_job(params = {}, = {}) req = build_request(:describe_model_card_export_job, params) req.send_request() end |
#describe_model_explainability_job_definition(params = {}) ⇒ Types::DescribeModelExplainabilityJobDefinitionResponse
Returns a description of a model explainability job definition.
18197 18198 18199 18200 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 18197 def describe_model_explainability_job_definition(params = {}, = {}) req = build_request(:describe_model_explainability_job_definition, params) req.send_request() end |
#describe_model_package(params = {}) ⇒ Types::DescribeModelPackageOutput
Returns a description of the specified model package, which is used to create SageMaker models or list them on Amazon Web Services Marketplace.
If you provided a KMS Key ID when you created your model package, you will see the [KMS Decrypt] API call in your CloudTrail logs when you use this API.
To create models in SageMaker, buyers can subscribe to model packages listed on Amazon Web Services Marketplace.
[1]: docs.aws.amazon.com/kms/latest/APIReference/API_Decrypt.html
18501 18502 18503 18504 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 18501 def describe_model_package(params = {}, = {}) req = build_request(:describe_model_package, params) req.send_request() end |
#describe_model_package_group(params = {}) ⇒ Types::DescribeModelPackageGroupOutput
Gets a description for the specified model group.
18544 18545 18546 18547 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 18544 def describe_model_package_group(params = {}, = {}) req = build_request(:describe_model_package_group, params) req.send_request() end |
#describe_model_quality_job_definition(params = {}) ⇒ Types::DescribeModelQualityJobDefinitionResponse
Returns a description of a model quality job definition.
18639 18640 18641 18642 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 18639 def describe_model_quality_job_definition(params = {}, = {}) req = build_request(:describe_model_quality_job_definition, params) req.send_request() end |
#describe_monitoring_schedule(params = {}) ⇒ Types::DescribeMonitoringScheduleResponse
Describes the schedule for a monitoring job.
18752 18753 18754 18755 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 18752 def describe_monitoring_schedule(params = {}, = {}) req = build_request(:describe_monitoring_schedule, params) req.send_request() end |
#describe_notebook_instance(params = {}) ⇒ Types::DescribeNotebookInstanceOutput
Returns information about a notebook instance.
The following waiters are defined for this operation (see #wait_until for detailed usage):
* notebook_instance_deleted
* notebook_instance_in_service
* notebook_instance_stopped
18834 18835 18836 18837 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 18834 def describe_notebook_instance(params = {}, = {}) req = build_request(:describe_notebook_instance, params) req.send_request() end |
#describe_notebook_instance_lifecycle_config(params = {}) ⇒ Types::DescribeNotebookInstanceLifecycleConfigOutput
Returns a description of a notebook instance lifecycle configuration.
For information about notebook instance lifestyle configurations, see [Step 2.1: (Optional) Customize a Notebook Instance].
[1]: docs.aws.amazon.com/sagemaker/latest/dg/notebook-lifecycle-config.html
18881 18882 18883 18884 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 18881 def describe_notebook_instance_lifecycle_config(params = {}, = {}) req = build_request(:describe_notebook_instance_lifecycle_config, params) req.send_request() end |
#describe_optimization_job(params = {}) ⇒ Types::DescribeOptimizationJobResponse
Provides the properties of the specified optimization job.
18965 18966 18967 18968 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 18965 def describe_optimization_job(params = {}, = {}) req = build_request(:describe_optimization_job, params) req.send_request() end |
#describe_partner_app(params = {}) ⇒ Types::DescribePartnerAppResponse
Gets information about a SageMaker Partner AI App.
19046 19047 19048 19049 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 19046 def describe_partner_app(params = {}, = {}) req = build_request(:describe_partner_app, params) req.send_request() end |
#describe_pipeline(params = {}) ⇒ Types::DescribePipelineResponse
Describes the details of a pipeline.
19116 19117 19118 19119 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 19116 def describe_pipeline(params = {}, = {}) req = build_request(:describe_pipeline, params) req.send_request() end |
#describe_pipeline_definition_for_execution(params = {}) ⇒ Types::DescribePipelineDefinitionForExecutionResponse
Describes the details of an execution’s pipeline definition.
19146 19147 19148 19149 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 19146 def describe_pipeline_definition_for_execution(params = {}, = {}) req = build_request(:describe_pipeline_definition_for_execution, params) req.send_request() end |
#describe_pipeline_execution(params = {}) ⇒ Types::DescribePipelineExecutionResponse
Describes the details of a pipeline execution.
19216 19217 19218 19219 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 19216 def describe_pipeline_execution(params = {}, = {}) req = build_request(:describe_pipeline_execution, params) req.send_request() end |
#describe_processing_job(params = {}) ⇒ Types::DescribeProcessingJobResponse
Returns a description of a processing job.
The following waiters are defined for this operation (see #wait_until for detailed usage):
* processing_job_completed_or_stopped
19341 19342 19343 19344 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 19341 def describe_processing_job(params = {}, = {}) req = build_request(:describe_processing_job, params) req.send_request() end |
#describe_project(params = {}) ⇒ Types::DescribeProjectOutput
Describes the details of a project.
19416 19417 19418 19419 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 19416 def describe_project(params = {}, = {}) req = build_request(:describe_project, params) req.send_request() end |
#describe_reserved_capacity(params = {}) ⇒ Types::DescribeReservedCapacityResponse
Retrieves details about a reserved capacity.
19472 19473 19474 19475 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 19472 def describe_reserved_capacity(params = {}, = {}) req = build_request(:describe_reserved_capacity, params) req.send_request() end |
#describe_space(params = {}) ⇒ Types::DescribeSpaceResponse
Describes the space.
19569 19570 19571 19572 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 19569 def describe_space(params = {}, = {}) req = build_request(:describe_space, params) req.send_request() end |
#describe_studio_lifecycle_config(params = {}) ⇒ Types::DescribeStudioLifecycleConfigResponse
Describes the Amazon SageMaker AI Studio Lifecycle Configuration.
19608 19609 19610 19611 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 19608 def describe_studio_lifecycle_config(params = {}, = {}) req = build_request(:describe_studio_lifecycle_config, params) req.send_request() end |
#describe_subscribed_workteam(params = {}) ⇒ Types::DescribeSubscribedWorkteamResponse
Gets information about a work team provided by a vendor. It returns details about the subscription with a vendor in the Amazon Web Services Marketplace.
19643 19644 19645 19646 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 19643 def describe_subscribed_workteam(params = {}, = {}) req = build_request(:describe_subscribed_workteam, params) req.send_request() end |
#describe_training_job(params = {}) ⇒ Types::DescribeTrainingJobResponse
Returns information about a training job.
Some of the attributes below only appear if the training job successfully starts. If the training job fails, ‘TrainingJobStatus` is `Failed` and, depending on the `FailureReason`, attributes like `TrainingStartTime`, `TrainingTimeInSeconds`, `TrainingEndTime`, and `BillableTimeInSeconds` may not be present in the response.
The following waiters are defined for this operation (see #wait_until for detailed usage):
* training_job_completed_or_stopped
19898 19899 19900 19901 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 19898 def describe_training_job(params = {}, = {}) req = build_request(:describe_training_job, params) req.send_request() end |
#describe_training_plan(params = {}) ⇒ Types::DescribeTrainingPlanResponse
Retrieves detailed information about a specific training plan.
19973 19974 19975 19976 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 19973 def describe_training_plan(params = {}, = {}) req = build_request(:describe_training_plan, params) req.send_request() end |
#describe_training_plan_extension_history(params = {}) ⇒ Types::DescribeTrainingPlanExtensionHistoryResponse
Retrieves the extension history for a specified training plan. The response includes details about each extension, such as the offering ID, start and end dates, status, payment status, and cost information.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
20027 20028 20029 20030 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 20027 def describe_training_plan_extension_history(params = {}, = {}) req = build_request(:describe_training_plan_extension_history, params) req.send_request() end |
#describe_transform_job(params = {}) ⇒ Types::DescribeTransformJobResponse
Returns information about a transform job.
The following waiters are defined for this operation (see #wait_until for detailed usage):
* transform_job_completed_or_stopped
20119 20120 20121 20122 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 20119 def describe_transform_job(params = {}, = {}) req = build_request(:describe_transform_job, params) req.send_request() end |
#describe_trial(params = {}) ⇒ Types::DescribeTrialResponse
Provides a list of a trial’s properties.
20179 20180 20181 20182 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 20179 def describe_trial(params = {}, = {}) req = build_request(:describe_trial, params) req.send_request() end |
#describe_trial_component(params = {}) ⇒ Types::DescribeTrialComponentResponse
Provides a list of a trials component’s properties.
20273 20274 20275 20276 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 20273 def describe_trial_component(params = {}, = {}) req = build_request(:describe_trial_component, params) req.send_request() end |
#describe_user_profile(params = {}) ⇒ Types::DescribeUserProfileResponse
Describes a user profile. For more information, see ‘CreateUserProfile`.
20444 20445 20446 20447 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 20444 def describe_user_profile(params = {}, = {}) req = build_request(:describe_user_profile, params) req.send_request() end |
#describe_workforce(params = {}) ⇒ Types::DescribeWorkforceResponse
Lists private workforce information, including workforce name, Amazon Resource Name (ARN), and, if applicable, allowed IP address ranges ([CIDRs]). Allowable IP address ranges are the IP addresses that workers can use to access tasks.
This operation applies only to private workforces.
[1]: docs.aws.amazon.com/vpc/latest/userguide/VPC_Subnets.html
20510 20511 20512 20513 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 20510 def describe_workforce(params = {}, = {}) req = build_request(:describe_workforce, params) req.send_request() end |
#describe_workteam(params = {}) ⇒ Types::DescribeWorkteamResponse
Gets information about a specific work team. You can see information such as the creation date, the last updated date, membership information, and the work team’s Amazon Resource Name (ARN).
20557 20558 20559 20560 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 20557 def describe_workteam(params = {}, = {}) req = build_request(:describe_workteam, params) req.send_request() end |
#detach_cluster_node_volume(params = {}) ⇒ Types::DetachClusterNodeVolumeResponse
Detaches your Amazon Elastic Block Store (Amazon EBS) volume from a node in your EKS orchestrated SageMaker HyperPod cluster.
This API works with the Amazon Elastic Block Store (Amazon EBS) Container Storage Interface (CSI) driver to manage the lifecycle of persistent storage in your HyperPod EKS clusters.
20612 20613 20614 20615 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 20612 def detach_cluster_node_volume(params = {}, = {}) req = build_request(:detach_cluster_node_volume, params) req.send_request() end |
#disable_sagemaker_servicecatalog_portfolio(params = {}) ⇒ Struct
Disables using Service Catalog in SageMaker. Service Catalog is used to create SageMaker projects.
20626 20627 20628 20629 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 20626 def disable_sagemaker_servicecatalog_portfolio(params = {}, = {}) req = build_request(:disable_sagemaker_servicecatalog_portfolio, params) req.send_request() end |
#disassociate_trial_component(params = {}) ⇒ Types::DisassociateTrialComponentResponse
Disassociates a trial component from a trial. This doesn’t effect other trials the component is associated with. Before you can delete a component, you must disassociate the component from all trials it is associated with. To associate a trial component with a trial, call the
- AssociateTrialComponent][1
-
API.
To get a list of the trials a component is associated with, use the
- Search][2
-
API. Specify ‘ExperimentTrialComponent` for the `Resource`
parameter. The list appears in the response under ‘Results.TrialComponent.Parents`.
[1]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_AssociateTrialComponent.html [2]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_Search.html
20674 20675 20676 20677 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 20674 def disassociate_trial_component(params = {}, = {}) req = build_request(:disassociate_trial_component, params) req.send_request() end |
#enable_sagemaker_servicecatalog_portfolio(params = {}) ⇒ Struct
Enables using Service Catalog in SageMaker. Service Catalog is used to create SageMaker projects.
20688 20689 20690 20691 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 20688 def enable_sagemaker_servicecatalog_portfolio(params = {}, = {}) req = build_request(:enable_sagemaker_servicecatalog_portfolio, params) req.send_request() end |
#extend_training_plan(params = {}) ⇒ Types::ExtendTrainingPlanResponse
Extends an existing training plan by purchasing an extension offering. This allows you to add additional compute capacity time to your training plan without creating a new plan or reconfiguring your workloads.
To find available extension offerings, use the ‘ SearchTrainingPlanOfferings ` API with the `TrainingPlanArn` parameter.
To view the history of extensions for a training plan, use the ‘ DescribeTrainingPlanExtensionHistory ` API.
20739 20740 20741 20742 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 20739 def extend_training_plan(params = {}, = {}) req = build_request(:extend_training_plan, params) req.send_request() end |
#get_device_fleet_report(params = {}) ⇒ Types::GetDeviceFleetReportResponse
Describes a fleet.
20793 20794 20795 20796 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 20793 def get_device_fleet_report(params = {}, = {}) req = build_request(:get_device_fleet_report, params) req.send_request() end |
#get_lineage_group_policy(params = {}) ⇒ Types::GetLineageGroupPolicyResponse
The resource policy for the lineage group.
20823 20824 20825 20826 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 20823 def get_lineage_group_policy(params = {}, = {}) req = build_request(:get_lineage_group_policy, params) req.send_request() end |
#get_model_package_group_policy(params = {}) ⇒ Types::GetModelPackageGroupPolicyOutput
Gets a resource policy that manages access for a model group. For information about resource policies, see [Identity-based policies and resource-based policies] in the *Amazon Web Services Identity and Access Management User Guide.*.
[1]: docs.aws.amazon.com/IAM/latest/UserGuide/access_policies_identity-vs-resource.html
20858 20859 20860 20861 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 20858 def get_model_package_group_policy(params = {}, = {}) req = build_request(:get_model_package_group_policy, params) req.send_request() end |
#get_sagemaker_servicecatalog_portfolio_status(params = {}) ⇒ Types::GetSagemakerServicecatalogPortfolioStatusOutput
Gets the status of Service Catalog in SageMaker. Service Catalog is used to create SageMaker projects.
20878 20879 20880 20881 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 20878 def get_sagemaker_servicecatalog_portfolio_status(params = {}, = {}) req = build_request(:get_sagemaker_servicecatalog_portfolio_status, params) req.send_request() end |
#get_scaling_configuration_recommendation(params = {}) ⇒ Types::GetScalingConfigurationRecommendationResponse
Starts an Amazon SageMaker Inference Recommender autoscaling recommendation job. Returns recommendations for autoscaling policies that you can apply to your SageMaker endpoint.
20962 20963 20964 20965 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 20962 def get_scaling_configuration_recommendation(params = {}, = {}) req = build_request(:get_scaling_configuration_recommendation, params) req.send_request() end |
#get_search_suggestions(params = {}) ⇒ Types::GetSearchSuggestionsResponse
An auto-complete API for the search functionality in the SageMaker console. It returns suggestions of possible matches for the property name to use in ‘Search` queries. Provides suggestions for `HyperParameters`, `Tags`, and `Metrics`.
21002 21003 21004 21005 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 21002 def get_search_suggestions(params = {}, = {}) req = build_request(:get_search_suggestions, params) req.send_request() end |
#import_hub_content(params = {}) ⇒ Types::ImportHubContentResponse
Import hub content.
21083 21084 21085 21086 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 21083 def import_hub_content(params = {}, = {}) req = build_request(:import_hub_content, params) req.send_request() end |
#list_actions(params = {}) ⇒ Types::ListActionsResponse
Lists the actions in your account and their properties.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
21364 21365 21366 21367 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 21364 def list_actions(params = {}, = {}) req = build_request(:list_actions, params) req.send_request() end |
#list_ai_benchmark_jobs(params = {}) ⇒ Types::ListAIBenchmarkJobsResponse
Returns a list of AI benchmark jobs in your account. You can filter the results by name, status, and creation time, and sort the results. The response is paginated.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
21153 21154 21155 21156 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 21153 def list_ai_benchmark_jobs(params = {}, = {}) req = build_request(:list_ai_benchmark_jobs, params) req.send_request() end |
#list_ai_recommendation_jobs(params = {}) ⇒ Types::ListAIRecommendationJobsResponse
Returns a list of AI recommendation jobs in your account. You can filter the results by name, status, and creation time, and sort the results. The response is paginated.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
21223 21224 21225 21226 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 21223 def list_ai_recommendation_jobs(params = {}, = {}) req = build_request(:list_ai_recommendation_jobs, params) req.send_request() end |
#list_ai_workload_configs(params = {}) ⇒ Types::ListAIWorkloadConfigsResponse
Returns a list of AI workload configurations in your account. You can filter the results by name and creation time, and sort the results. The response is paginated.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
21290 21291 21292 21293 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 21290 def list_ai_workload_configs(params = {}, = {}) req = build_request(:list_ai_workload_configs, params) req.send_request() end |
#list_algorithms(params = {}) ⇒ Types::ListAlgorithmsOutput
Lists the machine learning algorithms that have been created.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
21431 21432 21433 21434 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 21431 def list_algorithms(params = {}, = {}) req = build_request(:list_algorithms, params) req.send_request() end |
#list_aliases(params = {}) ⇒ Types::ListAliasesResponse
Lists the aliases of a specified image or image version.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
21483 21484 21485 21486 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 21483 def list_aliases(params = {}, = {}) req = build_request(:list_aliases, params) req.send_request() end |
#list_app_image_configs(params = {}) ⇒ Types::ListAppImageConfigsResponse
Lists the AppImageConfigs in your account and their properties. The list can be filtered by creation time or modified time, and whether the AppImageConfig name contains a specified string.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
21589 21590 21591 21592 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 21589 def list_app_image_configs(params = {}, = {}) req = build_request(:list_app_image_configs, params) req.send_request() end |
#list_apps(params = {}) ⇒ Types::ListAppsResponse
Lists apps.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
21667 21668 21669 21670 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 21667 def list_apps(params = {}, = {}) req = build_request(:list_apps, params) req.send_request() end |
#list_artifacts(params = {}) ⇒ Types::ListArtifactsResponse
Lists the artifacts in your account and their properties.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
21742 21743 21744 21745 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 21742 def list_artifacts(params = {}, = {}) req = build_request(:list_artifacts, params) req.send_request() end |
#list_associations(params = {}) ⇒ Types::ListAssociationsResponse
Lists the associations in your account and their properties.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
21837 21838 21839 21840 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 21837 def list_associations(params = {}, = {}) req = build_request(:list_associations, params) req.send_request() end |
#list_auto_ml_jobs(params = {}) ⇒ Types::ListAutoMLJobsResponse
Request a list of jobs.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
21916 21917 21918 21919 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 21916 def list_auto_ml_jobs(params = {}, = {}) req = build_request(:list_auto_ml_jobs, params) req.send_request() end |
#list_candidates_for_auto_ml_job(params = {}) ⇒ Types::ListCandidatesForAutoMLJobResponse
List the candidates created for the job.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
22008 22009 22010 22011 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 22008 def list_candidates_for_auto_ml_job(params = {}, = {}) req = build_request(:list_candidates_for_auto_ml_job, params) req.send_request() end |
#list_cluster_events(params = {}) ⇒ Types::ListClusterEventsResponse
Retrieves a list of event summaries for a specified HyperPod cluster. The operation supports filtering, sorting, and pagination of results. This functionality is only supported when the ‘NodeProvisioningMode` is set to `Continuous`.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
22097 22098 22099 22100 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 22097 def list_cluster_events(params = {}, = {}) req = build_request(:list_cluster_events, params) req.send_request() end |
#list_cluster_nodes(params = {}) ⇒ Types::ListClusterNodesResponse
Retrieves the list of instances (also called nodes interchangeably) in a SageMaker HyperPod cluster.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
22213 22214 22215 22216 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 22213 def list_cluster_nodes(params = {}, = {}) req = build_request(:list_cluster_nodes, params) req.send_request() end |
#list_cluster_scheduler_configs(params = {}) ⇒ Types::ListClusterSchedulerConfigsResponse
List the cluster policy configurations.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
22301 22302 22303 22304 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 22301 def list_cluster_scheduler_configs(params = {}, = {}) req = build_request(:list_cluster_scheduler_configs, params) req.send_request() end |
#list_clusters(params = {}) ⇒ Types::ListClustersResponse
Retrieves the list of SageMaker HyperPod clusters.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
22410 22411 22412 22413 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 22410 def list_clusters(params = {}, = {}) req = build_request(:list_clusters, params) req.send_request() end |
#list_code_repositories(params = {}) ⇒ Types::ListCodeRepositoriesOutput
Gets a list of the Git repositories in your account.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
22488 22489 22490 22491 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 22488 def list_code_repositories(params = {}, = {}) req = build_request(:list_code_repositories, params) req.send_request() end |
#list_compilation_jobs(params = {}) ⇒ Types::ListCompilationJobsResponse
Lists model compilation jobs that satisfy various filters.
To create a model compilation job, use [CreateCompilationJob]. To get information about a particular model compilation job you have created, use [DescribeCompilationJob].
[1]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_CreateCompilationJob.html [2]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_DescribeCompilationJob.html
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
22585 22586 22587 22588 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 22585 def list_compilation_jobs(params = {}, = {}) req = build_request(:list_compilation_jobs, params) req.send_request() end |
#list_compute_quotas(params = {}) ⇒ Types::ListComputeQuotasResponse
List the resource allocation definitions.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
22695 22696 22697 22698 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 22695 def list_compute_quotas(params = {}, = {}) req = build_request(:list_compute_quotas, params) req.send_request() end |
#list_contexts(params = {}) ⇒ Types::ListContextsResponse
Lists the contexts in your account and their properties.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
22769 22770 22771 22772 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 22769 def list_contexts(params = {}, = {}) req = build_request(:list_contexts, params) req.send_request() end |
#list_data_quality_job_definitions(params = {}) ⇒ Types::ListDataQualityJobDefinitionsResponse
Lists the data quality job definitions in your account.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
22842 22843 22844 22845 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 22842 def list_data_quality_job_definitions(params = {}, = {}) req = build_request(:list_data_quality_job_definitions, params) req.send_request() end |
#list_device_fleets(params = {}) ⇒ Types::ListDeviceFleetsResponse
Returns a list of devices in the fleet.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
22912 22913 22914 22915 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 22912 def list_device_fleets(params = {}, = {}) req = build_request(:list_device_fleets, params) req.send_request() end |
#list_devices(params = {}) ⇒ Types::ListDevicesResponse
A list of devices.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
22973 22974 22975 22976 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 22973 def list_devices(params = {}, = {}) req = build_request(:list_devices, params) req.send_request() end |
#list_domains(params = {}) ⇒ Types::ListDomainsResponse
Lists the domains.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
23023 23024 23025 23026 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 23023 def list_domains(params = {}, = {}) req = build_request(:list_domains, params) req.send_request() end |
#list_edge_deployment_plans(params = {}) ⇒ Types::ListEdgeDeploymentPlansResponse
Lists all edge deployment plans.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
23102 23103 23104 23105 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 23102 def list_edge_deployment_plans(params = {}, = {}) req = build_request(:list_edge_deployment_plans, params) req.send_request() end |
#list_edge_packaging_jobs(params = {}) ⇒ Types::ListEdgePackagingJobsResponse
Returns a list of edge packaging jobs.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
23183 23184 23185 23186 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 23183 def list_edge_packaging_jobs(params = {}, = {}) req = build_request(:list_edge_packaging_jobs, params) req.send_request() end |
#list_endpoint_configs(params = {}) ⇒ Types::ListEndpointConfigsOutput
Lists endpoint configurations.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
23247 23248 23249 23250 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 23247 def list_endpoint_configs(params = {}, = {}) req = build_request(:list_endpoint_configs, params) req.send_request() end |
#list_endpoints(params = {}) ⇒ Types::ListEndpointsOutput
Lists endpoints.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
23328 23329 23330 23331 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 23328 def list_endpoints(params = {}, = {}) req = build_request(:list_endpoints, params) req.send_request() end |
#list_experiments(params = {}) ⇒ Types::ListExperimentsResponse
Lists all the experiments in your account. The list can be filtered to show only experiments that were created in a specific time range. The list can be sorted by experiment name or creation time.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
23395 23396 23397 23398 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 23395 def list_experiments(params = {}, = {}) req = build_request(:list_experiments, params) req.send_request() end |
#list_feature_groups(params = {}) ⇒ Types::ListFeatureGroupsResponse
List ‘FeatureGroup`s based on given filter and order.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
23468 23469 23470 23471 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 23468 def list_feature_groups(params = {}, = {}) req = build_request(:list_feature_groups, params) req.send_request() end |
#list_flow_definitions(params = {}) ⇒ Types::ListFlowDefinitionsResponse
Returns information about the flow definitions in your account.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
23527 23528 23529 23530 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 23527 def list_flow_definitions(params = {}, = {}) req = build_request(:list_flow_definitions, params) req.send_request() end |
#list_hub_content_versions(params = {}) ⇒ Types::ListHubContentVersionsResponse
List hub content versions.
23615 23616 23617 23618 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 23615 def list_hub_content_versions(params = {}, = {}) req = build_request(:list_hub_content_versions, params) req.send_request() end |
#list_hub_contents(params = {}) ⇒ Types::ListHubContentsResponse
List the contents of a hub.
23697 23698 23699 23700 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 23697 def list_hub_contents(params = {}, = {}) req = build_request(:list_hub_contents, params) req.send_request() end |
#list_hubs(params = {}) ⇒ Types::ListHubsResponse
List all existing hubs.
23770 23771 23772 23773 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 23770 def list_hubs(params = {}, = {}) req = build_request(:list_hubs, params) req.send_request() end |
#list_human_task_uis(params = {}) ⇒ Types::ListHumanTaskUisResponse
Returns information about the human task user interfaces in your account.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
23828 23829 23830 23831 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 23828 def list_human_task_uis(params = {}, = {}) req = build_request(:list_human_task_uis, params) req.send_request() end |
#list_hyper_parameter_tuning_jobs(params = {}) ⇒ Types::ListHyperParameterTuningJobsResponse
Gets a list of [HyperParameterTuningJobSummary] objects that describe the hyperparameter tuning jobs launched in your account.
[1]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_HyperParameterTuningJobSummary.html
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
23926 23927 23928 23929 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 23926 def list_hyper_parameter_tuning_jobs(params = {}, = {}) req = build_request(:list_hyper_parameter_tuning_jobs, params) req.send_request() end |
#list_image_versions(params = {}) ⇒ Types::ListImageVersionsResponse
Lists the versions of a specified image and their properties. The list can be filtered by creation time or modified time.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
24006 24007 24008 24009 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 24006 def list_image_versions(params = {}, = {}) req = build_request(:list_image_versions, params) req.send_request() end |
#list_images(params = {}) ⇒ Types::ListImagesResponse
Lists the images in your account and their properties. The list can be filtered by creation time or modified time, and whether the image name contains a specified string.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
24088 24089 24090 24091 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 24088 def list_images(params = {}, = {}) req = build_request(:list_images, params) req.send_request() end |
#list_inference_components(params = {}) ⇒ Types::ListInferenceComponentsOutput
Lists the inference components in your account and their properties.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
24186 24187 24188 24189 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 24186 def list_inference_components(params = {}, = {}) req = build_request(:list_inference_components, params) req.send_request() end |
#list_inference_experiments(params = {}) ⇒ Types::ListInferenceExperimentsResponse
Returns the list of all inference experiments.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
24283 24284 24285 24286 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 24283 def list_inference_experiments(params = {}, = {}) req = build_request(:list_inference_experiments, params) req.send_request() end |
#list_inference_recommendations_job_steps(params = {}) ⇒ Types::ListInferenceRecommendationsJobStepsResponse
Returns a list of the subtasks for an Inference Recommender job.
The supported subtasks are benchmarks, which evaluate the performance of your model on different instance types.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
24368 24369 24370 24371 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 24368 def list_inference_recommendations_job_steps(params = {}, = {}) req = build_request(:list_inference_recommendations_job_steps, params) req.send_request() end |
#list_inference_recommendations_jobs(params = {}) ⇒ Types::ListInferenceRecommendationsJobsResponse
Lists recommendation jobs that satisfy various filters.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
24467 24468 24469 24470 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 24467 def list_inference_recommendations_jobs(params = {}, = {}) req = build_request(:list_inference_recommendations_jobs, params) req.send_request() end |
#list_labeling_jobs(params = {}) ⇒ Types::ListLabelingJobsResponse
Gets a list of labeling jobs.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
24563 24564 24565 24566 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 24563 def list_labeling_jobs(params = {}, = {}) req = build_request(:list_labeling_jobs, params) req.send_request() end |
#list_labeling_jobs_for_workteam(params = {}) ⇒ Types::ListLabelingJobsForWorkteamResponse
Gets a list of labeling jobs assigned to a specified work team.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
24638 24639 24640 24641 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 24638 def list_labeling_jobs_for_workteam(params = {}, = {}) req = build_request(:list_labeling_jobs_for_workteam, params) req.send_request() end |
#list_lineage_groups(params = {}) ⇒ Types::ListLineageGroupsResponse
A list of lineage groups shared with your Amazon Web Services account. For more information, see [ Cross-Account Lineage Tracking ][1] in the *Amazon SageMaker Developer Guide*.
[1]: docs.aws.amazon.com/sagemaker/latest/dg/xaccount-lineage-tracking.html
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
24706 24707 24708 24709 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 24706 def list_lineage_groups(params = {}, = {}) req = build_request(:list_lineage_groups, params) req.send_request() end |
#list_mlflow_apps(params = {}) ⇒ Types::ListMlflowAppsResponse
Lists all MLflow Apps
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
24790 24791 24792 24793 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 24790 def list_mlflow_apps(params = {}, = {}) req = build_request(:list_mlflow_apps, params) req.send_request() end |
#list_mlflow_tracking_servers(params = {}) ⇒ Types::ListMlflowTrackingServersResponse
Lists all MLflow Tracking Servers.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
24877 24878 24879 24880 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 24877 def list_mlflow_tracking_servers(params = {}, = {}) req = build_request(:list_mlflow_tracking_servers, params) req.send_request() end |
#list_model_bias_job_definitions(params = {}) ⇒ Types::ListModelBiasJobDefinitionsResponse
Lists model bias jobs definitions that satisfy various filters.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
24947 24948 24949 24950 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 24947 def list_model_bias_job_definitions(params = {}, = {}) req = build_request(:list_model_bias_job_definitions, params) req.send_request() end |
#list_model_card_export_jobs(params = {}) ⇒ Types::ListModelCardExportJobsResponse
List the export jobs for the Amazon SageMaker Model Card.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
25028 25029 25030 25031 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 25028 def list_model_card_export_jobs(params = {}, = {}) req = build_request(:list_model_card_export_jobs, params) req.send_request() end |
#list_model_card_versions(params = {}) ⇒ Types::ListModelCardVersionsResponse
List existing versions of an Amazon SageMaker Model Card.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
25100 25101 25102 25103 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 25100 def list_model_card_versions(params = {}, = {}) req = build_request(:list_model_card_versions, params) req.send_request() end |
#list_model_cards(params = {}) ⇒ Types::ListModelCardsResponse
List existing model cards.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
25168 25169 25170 25171 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 25168 def list_model_cards(params = {}, = {}) req = build_request(:list_model_cards, params) req.send_request() end |
#list_model_explainability_job_definitions(params = {}) ⇒ Types::ListModelExplainabilityJobDefinitionsResponse
Lists model explainability job definitions that satisfy various filters.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
25240 25241 25242 25243 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 25240 def list_model_explainability_job_definitions(params = {}, = {}) req = build_request(:list_model_explainability_job_definitions, params) req.send_request() end |
#list_model_metadata(params = {}) ⇒ Types::ListModelMetadataResponse
Lists the domain, framework, task, and model name of standard machine learning models found in common model zoos.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
25299 25300 25301 25302 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 25299 def (params = {}, = {}) req = build_request(:list_model_metadata, params) req.send_request() end |
#list_model_package_groups(params = {}) ⇒ Types::ListModelPackageGroupsOutput
Gets a list of the model groups in your Amazon Web Services account.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
25373 25374 25375 25376 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 25373 def list_model_package_groups(params = {}, = {}) req = build_request(:list_model_package_groups, params) req.send_request() end |
#list_model_packages(params = {}) ⇒ Types::ListModelPackagesOutput
Lists the model packages that have been created.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
25469 25470 25471 25472 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 25469 def list_model_packages(params = {}, = {}) req = build_request(:list_model_packages, params) req.send_request() end |
#list_model_quality_job_definitions(params = {}) ⇒ Types::ListModelQualityJobDefinitionsResponse
Gets a list of model quality monitoring job definitions in your account.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
25544 25545 25546 25547 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 25544 def list_model_quality_job_definitions(params = {}, = {}) req = build_request(:list_model_quality_job_definitions, params) req.send_request() end |
#list_models(params = {}) ⇒ Types::ListModelsOutput
Lists models created with the ‘CreateModel` API.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
25608 25609 25610 25611 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 25608 def list_models(params = {}, = {}) req = build_request(:list_models, params) req.send_request() end |
#list_monitoring_alert_history(params = {}) ⇒ Types::ListMonitoringAlertHistoryResponse
Gets a list of past alerts in a model monitoring schedule.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
25681 25682 25683 25684 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 25681 def list_monitoring_alert_history(params = {}, = {}) req = build_request(:list_monitoring_alert_history, params) req.send_request() end |
#list_monitoring_alerts(params = {}) ⇒ Types::ListMonitoringAlertsResponse
Gets the alerts for a single monitoring schedule.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
25730 25731 25732 25733 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 25730 def list_monitoring_alerts(params = {}, = {}) req = build_request(:list_monitoring_alerts, params) req.send_request() end |
#list_monitoring_executions(params = {}) ⇒ Types::ListMonitoringExecutionsResponse
Returns list of all monitoring job executions.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
25834 25835 25836 25837 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 25834 def list_monitoring_executions(params = {}, = {}) req = build_request(:list_monitoring_executions, params) req.send_request() end |
#list_monitoring_schedules(params = {}) ⇒ Types::ListMonitoringSchedulesResponse
Returns list of all monitoring schedules.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
25934 25935 25936 25937 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 25934 def list_monitoring_schedules(params = {}, = {}) req = build_request(:list_monitoring_schedules, params) req.send_request() end |
#list_notebook_instance_lifecycle_configs(params = {}) ⇒ Types::ListNotebookInstanceLifecycleConfigsOutput
Lists notebook instance lifestyle configurations created with the
- CreateNotebookInstanceLifecycleConfig][1
-
API.
[1]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_CreateNotebookInstanceLifecycleConfig.html
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
26015 26016 26017 26018 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 26015 def list_notebook_instance_lifecycle_configs(params = {}, = {}) req = build_request(:list_notebook_instance_lifecycle_configs, params) req.send_request() end |
#list_notebook_instances(params = {}) ⇒ Types::ListNotebookInstancesOutput
Returns a list of the SageMaker AI notebook instances in the requester’s account in an Amazon Web Services Region.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
26129 26130 26131 26132 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 26129 def list_notebook_instances(params = {}, = {}) req = build_request(:list_notebook_instances, params) req.send_request() end |
#list_optimization_jobs(params = {}) ⇒ Types::ListOptimizationJobsResponse
Lists the optimization jobs in your account and their properties.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
26224 26225 26226 26227 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 26224 def list_optimization_jobs(params = {}, = {}) req = build_request(:list_optimization_jobs, params) req.send_request() end |
#list_partner_apps(params = {}) ⇒ Types::ListPartnerAppsResponse
Lists all of the SageMaker Partner AI Apps in an account.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
26272 26273 26274 26275 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 26272 def list_partner_apps(params = {}, = {}) req = build_request(:list_partner_apps, params) req.send_request() end |
#list_pipeline_execution_steps(params = {}) ⇒ Types::ListPipelineExecutionStepsResponse
Gets a list of ‘PipeLineExecutionStep` objects.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
26385 26386 26387 26388 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 26385 def list_pipeline_execution_steps(params = {}, = {}) req = build_request(:list_pipeline_execution_steps, params) req.send_request() end |
#list_pipeline_executions(params = {}) ⇒ Types::ListPipelineExecutionsResponse
Gets a list of the pipeline executions.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
26451 26452 26453 26454 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 26451 def list_pipeline_executions(params = {}, = {}) req = build_request(:list_pipeline_executions, params) req.send_request() end |
#list_pipeline_parameters_for_execution(params = {}) ⇒ Types::ListPipelineParametersForExecutionResponse
Gets a list of parameters for a pipeline execution.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
26496 26497 26498 26499 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 26496 def list_pipeline_parameters_for_execution(params = {}, = {}) req = build_request(:list_pipeline_parameters_for_execution, params) req.send_request() end |
#list_pipeline_versions(params = {}) ⇒ Types::ListPipelineVersionsResponse
Gets a list of all versions of the pipeline.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
26558 26559 26560 26561 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 26558 def list_pipeline_versions(params = {}, = {}) req = build_request(:list_pipeline_versions, params) req.send_request() end |
#list_pipelines(params = {}) ⇒ Types::ListPipelinesResponse
Gets a list of pipelines.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
26626 26627 26628 26629 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 26626 def list_pipelines(params = {}, = {}) req = build_request(:list_pipelines, params) req.send_request() end |
#list_processing_jobs(params = {}) ⇒ Types::ListProcessingJobsResponse
Lists processing jobs that satisfy various filters.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
26709 26710 26711 26712 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 26709 def list_processing_jobs(params = {}, = {}) req = build_request(:list_processing_jobs, params) req.send_request() end |
#list_projects(params = {}) ⇒ Types::ListProjectsOutput
Gets a list of the projects in an Amazon Web Services account.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
26776 26777 26778 26779 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 26776 def list_projects(params = {}, = {}) req = build_request(:list_projects, params) req.send_request() end |
#list_resource_catalogs(params = {}) ⇒ Types::ListResourceCatalogsResponse
Lists Amazon SageMaker Catalogs based on given filters and orders. The maximum number of ‘ResourceCatalog`s viewable is 1000.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
26840 26841 26842 26843 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 26840 def list_resource_catalogs(params = {}, = {}) req = build_request(:list_resource_catalogs, params) req.send_request() end |
#list_spaces(params = {}) ⇒ Types::ListSpacesResponse
Lists spaces.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
26911 26912 26913 26914 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 26911 def list_spaces(params = {}, = {}) req = build_request(:list_spaces, params) req.send_request() end |
#list_stage_devices(params = {}) ⇒ Types::ListStageDevicesResponse
Lists devices allocated to the stage, containing detailed device information and deployment status.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
26972 26973 26974 26975 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 26972 def list_stage_devices(params = {}, = {}) req = build_request(:list_stage_devices, params) req.send_request() end |
#list_studio_lifecycle_configs(params = {}) ⇒ Types::ListStudioLifecycleConfigsResponse
Lists the Amazon SageMaker AI Studio Lifecycle Configurations in your Amazon Web Services Account.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
27058 27059 27060 27061 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 27058 def list_studio_lifecycle_configs(params = {}, = {}) req = build_request(:list_studio_lifecycle_configs, params) req.send_request() end |
#list_subscribed_workteams(params = {}) ⇒ Types::ListSubscribedWorkteamsResponse
Gets a list of the work teams that you are subscribed to in the Amazon Web Services Marketplace. The list may be empty if no work team satisfies the filter specified in the ‘NameContains` parameter.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
27109 27110 27111 27112 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 27109 def list_subscribed_workteams(params = {}, = {}) req = build_request(:list_subscribed_workteams, params) req.send_request() end |
#list_tags(params = {}) ⇒ Types::ListTagsOutput
Returns the tags for the specified SageMaker resource.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
27154 27155 27156 27157 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 27154 def (params = {}, = {}) req = build_request(:list_tags, params) req.send_request() end |
#list_training_jobs(params = {}) ⇒ Types::ListTrainingJobsResponse
Lists training jobs.
<note markdown=“1”> When ‘StatusEquals` and `MaxResults` are set at the same time, the `MaxResults` number of training jobs are first retrieved ignoring the `StatusEquals` parameter and then they are filtered by the `StatusEquals` parameter, which is returned as a response.
For example, if `ListTrainingJobs` is invoked with the following
parameters:
`{ ... MaxResults: 100, StatusEquals: InProgress ... }`
First, 100 trainings jobs with any status, including those other than
‘InProgress`, are selected (sorted according to the creation time, from the most current to the oldest). Next, those with a status of `InProgress` are returned.
You can quickly test the API using the following Amazon Web Services
CLI code.
`aws sagemaker list-training-jobs --max-results 100 --status-equals
InProgress`
</note>
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
27275 27276 27277 27278 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 27275 def list_training_jobs(params = {}, = {}) req = build_request(:list_training_jobs, params) req.send_request() end |
#list_training_jobs_for_hyper_parameter_tuning_job(params = {}) ⇒ Types::ListTrainingJobsForHyperParameterTuningJobResponse
Gets a list of [TrainingJobSummary] objects that describe the training jobs that a hyperparameter tuning job launched.
[1]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_TrainingJobSummary.html
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
27354 27355 27356 27357 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 27354 def list_training_jobs_for_hyper_parameter_tuning_job(params = {}, = {}) req = build_request(:list_training_jobs_for_hyper_parameter_tuning_job, params) req.send_request() end |
#list_training_plans(params = {}) ⇒ Types::ListTrainingPlansResponse
Retrieves a list of training plans for the current account.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
27447 27448 27449 27450 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 27447 def list_training_plans(params = {}, = {}) req = build_request(:list_training_plans, params) req.send_request() end |
#list_transform_jobs(params = {}) ⇒ Types::ListTransformJobsResponse
Lists transform jobs.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
27530 27531 27532 27533 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 27530 def list_transform_jobs(params = {}, = {}) req = build_request(:list_transform_jobs, params) req.send_request() end |
#list_trial_components(params = {}) ⇒ Types::ListTrialComponentsResponse
Lists the trial components in your account. You can sort the list by trial component name or creation time. You can filter the list to show only components that were created in a specific time range. You can also filter on one of the following:
-
‘ExperimentName`
-
‘SourceArn`
-
‘TrialName`
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
27638 27639 27640 27641 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 27638 def list_trial_components(params = {}, = {}) req = build_request(:list_trial_components, params) req.send_request() end |
#list_trials(params = {}) ⇒ Types::ListTrialsResponse
Lists the trials in your account. Specify an experiment name to limit the list to the trials that are part of that experiment. Specify a trial component name to limit the list to the trials that associated with that trial component. The list can be filtered to show only trials that were created in a specific time range. The list can be sorted by trial name or creation time.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
27715 27716 27717 27718 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 27715 def list_trials(params = {}, = {}) req = build_request(:list_trials, params) req.send_request() end |
#list_ultra_servers_by_reserved_capacity(params = {}) ⇒ Types::ListUltraServersByReservedCapacityResponse
Lists all UltraServers that are part of a specified reserved capacity.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
27768 27769 27770 27771 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 27768 def list_ultra_servers_by_reserved_capacity(params = {}, = {}) req = build_request(:list_ultra_servers_by_reserved_capacity, params) req.send_request() end |
#list_user_profiles(params = {}) ⇒ Types::ListUserProfilesResponse
Lists user profiles.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
27833 27834 27835 27836 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 27833 def list_user_profiles(params = {}, = {}) req = build_request(:list_user_profiles, params) req.send_request() end |
#list_workforces(params = {}) ⇒ Types::ListWorkforcesResponse
Use this operation to list all private and vendor workforces in an Amazon Web Services Region. Note that you can only have one private workforce per Amazon Web Services Region.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
27912 27913 27914 27915 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 27912 def list_workforces(params = {}, = {}) req = build_request(:list_workforces, params) req.send_request() end |
#list_workteams(params = {}) ⇒ Types::ListWorkteamsResponse
Gets a list of private work teams that you have defined in a region. The list may be empty if no work team satisfies the filter specified in the ‘NameContains` parameter.
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
27984 27985 27986 27987 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 27984 def list_workteams(params = {}, = {}) req = build_request(:list_workteams, params) req.send_request() end |
#put_model_package_group_policy(params = {}) ⇒ Types::PutModelPackageGroupPolicyOutput
Adds a resouce policy to control access to a model group. For information about resoure policies, see [Identity-based policies and resource-based policies] in the *Amazon Web Services Identity and Access Management User Guide.*.
[1]: docs.aws.amazon.com/IAM/latest/UserGuide/access_policies_identity-vs-resource.html
28023 28024 28025 28026 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 28023 def put_model_package_group_policy(params = {}, = {}) req = build_request(:put_model_package_group_policy, params) req.send_request() end |
#query_lineage(params = {}) ⇒ Types::QueryLineageResponse
Use this action to inspect your lineage and discover relationships between entities. For more information, see [ Querying Lineage Entities] in the *Amazon SageMaker Developer Guide*.
[1]: docs.aws.amazon.com/sagemaker/latest/dg/querying-lineage-entities.html
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
28130 28131 28132 28133 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 28130 def query_lineage(params = {}, = {}) req = build_request(:query_lineage, params) req.send_request() end |
#register_devices(params = {}) ⇒ Struct
Register devices.
28171 28172 28173 28174 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 28171 def register_devices(params = {}, = {}) req = build_request(:register_devices, params) req.send_request() end |
#render_ui_template(params = {}) ⇒ Types::RenderUiTemplateResponse
Renders the UI template so that you can preview the worker’s experience.
28229 28230 28231 28232 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 28229 def render_ui_template(params = {}, = {}) req = build_request(:render_ui_template, params) req.send_request() end |
#retry_pipeline_execution(params = {}) ⇒ Types::RetryPipelineExecutionResponse
Retry the execution of the pipeline.
28273 28274 28275 28276 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 28273 def retry_pipeline_execution(params = {}, = {}) req = build_request(:retry_pipeline_execution, params) req.send_request() end |
#search(params = {}) ⇒ Types::SearchResponse
Finds SageMaker resources that match a search query. Matching resources are returned as a list of ‘SearchRecord` objects in the response. You can sort the search results by any resource property in a ascending or descending order.
You can query against the following value types: numeric, text, Boolean, and timestamp.
<note markdown=“1”> The Search API may provide access to otherwise restricted data. See [Amazon SageMaker API Permissions: Actions, Permissions, and Resources Reference] for more information.
</note>
[1]: docs.aws.amazon.com/sagemaker/latest/dg/api-permissions-reference.html
The returned response is a pageable response and is Enumerable. For details on usage see PageableResponse.
28397 28398 28399 28400 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 28397 def search(params = {}, = {}) req = build_request(:search, params) req.send_request() end |
#search_training_plan_offerings(params = {}) ⇒ Types::SearchTrainingPlanOfferingsResponse
Searches for available training plan offerings based on specified criteria.
-
Users search for available plan offerings based on their requirements (e.g., instance type, count, start time, duration).
-
And then, they create a plan that best matches their needs using the ID of the plan offering they want to use.
For more information about how to reserve GPU capacity for your SageMaker training jobs or SageMaker HyperPod clusters using Amazon SageMaker Training Plan , see ‘ CreateTrainingPlan `.
28525 28526 28527 28528 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 28525 def search_training_plan_offerings(params = {}, = {}) req = build_request(:search_training_plan_offerings, params) req.send_request() end |
#send_pipeline_execution_step_failure(params = {}) ⇒ Types::SendPipelineExecutionStepFailureResponse
Notifies the pipeline that the execution of a callback step failed, along with a message describing why. When a callback step is run, the pipeline generates a callback token and includes the token in a message sent to Amazon Simple Queue Service (Amazon SQS).
28569 28570 28571 28572 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 28569 def send_pipeline_execution_step_failure(params = {}, = {}) req = build_request(:send_pipeline_execution_step_failure, params) req.send_request() end |
#send_pipeline_execution_step_success(params = {}) ⇒ Types::SendPipelineExecutionStepSuccessResponse
Notifies the pipeline that the execution of a callback step succeeded and provides a list of the step’s output parameters. When a callback step is run, the pipeline generates a callback token and includes the token in a message sent to Amazon Simple Queue Service (Amazon SQS).
28618 28619 28620 28621 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 28618 def send_pipeline_execution_step_success(params = {}, = {}) req = build_request(:send_pipeline_execution_step_success, params) req.send_request() end |
#start_cluster_health_check(params = {}) ⇒ Types::StartClusterHealthCheckResponse
Start deep health checks for a SageMaker HyperPod cluster. You can use
- DescribeClusterNode][1
-
API to track progress of the deep health
checks. The unhealthy nodes will be automatically rebooted or replaced. Please see [ Resilience-related Kubernetes labels by SageMaker HyperPod] for details.
[1]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_DescribeClusterNode.html [2]: docs.aws.amazon.com/sagemaker/latest/dg/sagemaker-hyperpod-eks-resiliency-node-labels.html
28667 28668 28669 28670 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 28667 def start_cluster_health_check(params = {}, = {}) req = build_request(:start_cluster_health_check, params) req.send_request() end |
#start_edge_deployment_stage(params = {}) ⇒ Struct
Starts a stage in an edge deployment plan.
28693 28694 28695 28696 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 28693 def start_edge_deployment_stage(params = {}, = {}) req = build_request(:start_edge_deployment_stage, params) req.send_request() end |
#start_inference_experiment(params = {}) ⇒ Types::StartInferenceExperimentResponse
Starts an inference experiment.
28721 28722 28723 28724 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 28721 def start_inference_experiment(params = {}, = {}) req = build_request(:start_inference_experiment, params) req.send_request() end |
#start_mlflow_tracking_server(params = {}) ⇒ Types::StartMlflowTrackingServerResponse
Programmatically start an MLflow Tracking Server.
28749 28750 28751 28752 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 28749 def start_mlflow_tracking_server(params = {}, = {}) req = build_request(:start_mlflow_tracking_server, params) req.send_request() end |
#start_monitoring_schedule(params = {}) ⇒ Struct
Starts a previously stopped monitoring schedule.
<note markdown=“1”> By default, when you successfully create a new schedule, the status of a monitoring schedule is ‘scheduled`.
</note>
28776 28777 28778 28779 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 28776 def start_monitoring_schedule(params = {}, = {}) req = build_request(:start_monitoring_schedule, params) req.send_request() end |
#start_notebook_instance(params = {}) ⇒ Struct
Launches an ML compute instance with the latest version of the libraries and attaches your ML storage volume. After configuring the notebook instance, SageMaker AI sets the notebook instance status to ‘InService`. A notebook instance’s status must be ‘InService` before you can connect to your Jupyter notebook.
28802 28803 28804 28805 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 28802 def start_notebook_instance(params = {}, = {}) req = build_request(:start_notebook_instance, params) req.send_request() end |
#start_pipeline_execution(params = {}) ⇒ Types::StartPipelineExecutionResponse
Starts a pipeline execution.
28882 28883 28884 28885 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 28882 def start_pipeline_execution(params = {}, = {}) req = build_request(:start_pipeline_execution, params) req.send_request() end |
#start_session(params = {}) ⇒ Types::StartSessionResponse
Initiates a remote connection session between a local integrated development environments (IDEs) and a remote SageMaker space.
28918 28919 28920 28921 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 28918 def start_session(params = {}, = {}) req = build_request(:start_session, params) req.send_request() end |
#stop_ai_benchmark_job(params = {}) ⇒ Types::StopAIBenchmarkJobResponse
Stops a running AI benchmark job.
28946 28947 28948 28949 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 28946 def stop_ai_benchmark_job(params = {}, = {}) req = build_request(:stop_ai_benchmark_job, params) req.send_request() end |
#stop_ai_recommendation_job(params = {}) ⇒ Types::StopAIRecommendationJobResponse
Stops a running AI recommendation job.
28974 28975 28976 28977 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 28974 def stop_ai_recommendation_job(params = {}, = {}) req = build_request(:stop_ai_recommendation_job, params) req.send_request() end |
#stop_auto_ml_job(params = {}) ⇒ Struct
A method for forcing a running job to shut down.
28996 28997 28998 28999 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 28996 def stop_auto_ml_job(params = {}, = {}) req = build_request(:stop_auto_ml_job, params) req.send_request() end |
#stop_compilation_job(params = {}) ⇒ Struct
Stops a model compilation job.
To stop a job, Amazon SageMaker AI sends the algorithm the SIGTERM signal. This gracefully shuts the job down. If the job hasn’t stopped, it sends the SIGKILL signal.
When it receives a ‘StopCompilationJob` request, Amazon SageMaker AI changes the `CompilationJobStatus` of the job to `Stopping`. After Amazon SageMaker stops the job, it sets the `CompilationJobStatus` to `Stopped`.
29027 29028 29029 29030 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 29027 def stop_compilation_job(params = {}, = {}) req = build_request(:stop_compilation_job, params) req.send_request() end |
#stop_edge_deployment_stage(params = {}) ⇒ Struct
Stops a stage in an edge deployment plan.
29053 29054 29055 29056 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 29053 def stop_edge_deployment_stage(params = {}, = {}) req = build_request(:stop_edge_deployment_stage, params) req.send_request() end |
#stop_edge_packaging_job(params = {}) ⇒ Struct
Request to stop an edge packaging job.
29075 29076 29077 29078 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 29075 def stop_edge_packaging_job(params = {}, = {}) req = build_request(:stop_edge_packaging_job, params) req.send_request() end |
#stop_hyper_parameter_tuning_job(params = {}) ⇒ Struct
Stops a running hyperparameter tuning job and all running training jobs that the tuning job launched.
All model artifacts output from the training jobs are stored in Amazon Simple Storage Service (Amazon S3). All data that the training jobs write to Amazon CloudWatch Logs are still available in CloudWatch. After the tuning job moves to the ‘Stopped` state, it releases all reserved resources for the tuning job.
29104 29105 29106 29107 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 29104 def stop_hyper_parameter_tuning_job(params = {}, = {}) req = build_request(:stop_hyper_parameter_tuning_job, params) req.send_request() end |
#stop_inference_experiment(params = {}) ⇒ Types::StopInferenceExperimentResponse
Stops an inference experiment.
29177 29178 29179 29180 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 29177 def stop_inference_experiment(params = {}, = {}) req = build_request(:stop_inference_experiment, params) req.send_request() end |
#stop_inference_recommendations_job(params = {}) ⇒ Struct
Stops an Inference Recommender job.
29199 29200 29201 29202 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 29199 def stop_inference_recommendations_job(params = {}, = {}) req = build_request(:stop_inference_recommendations_job, params) req.send_request() end |
#stop_labeling_job(params = {}) ⇒ Struct
Stops a running labeling job. A job that is stopped cannot be restarted. Any results obtained before the job is stopped are placed in the Amazon S3 output bucket.
29223 29224 29225 29226 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 29223 def stop_labeling_job(params = {}, = {}) req = build_request(:stop_labeling_job, params) req.send_request() end |
#stop_mlflow_tracking_server(params = {}) ⇒ Types::StopMlflowTrackingServerResponse
Programmatically stop an MLflow Tracking Server.
29251 29252 29253 29254 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 29251 def stop_mlflow_tracking_server(params = {}, = {}) req = build_request(:stop_mlflow_tracking_server, params) req.send_request() end |
#stop_monitoring_schedule(params = {}) ⇒ Struct
Stops a previously started monitoring schedule.
29273 29274 29275 29276 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 29273 def stop_monitoring_schedule(params = {}, = {}) req = build_request(:stop_monitoring_schedule, params) req.send_request() end |
#stop_notebook_instance(params = {}) ⇒ Struct
Terminates the ML compute instance. Before terminating the instance, SageMaker AI disconnects the ML storage volume from it. SageMaker AI preserves the ML storage volume. SageMaker AI stops charging you for the ML compute instance when you call ‘StopNotebookInstance`.
To access data on the ML storage volume for a notebook instance that has been terminated, call the ‘StartNotebookInstance` API. `StartNotebookInstance` launches another ML compute instance, configures it, and attaches the preserved ML storage volume so you can continue your work.
29304 29305 29306 29307 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 29304 def stop_notebook_instance(params = {}, = {}) req = build_request(:stop_notebook_instance, params) req.send_request() end |
#stop_optimization_job(params = {}) ⇒ Struct
Ends a running inference optimization job.
29326 29327 29328 29329 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 29326 def stop_optimization_job(params = {}, = {}) req = build_request(:stop_optimization_job, params) req.send_request() end |
#stop_pipeline_execution(params = {}) ⇒ Types::StopPipelineExecutionResponse
Stops a pipeline execution.
**Callback Step**
A pipeline execution won’t stop while a callback step is running. When you call ‘StopPipelineExecution` on a pipeline execution with a running callback step, SageMaker Pipelines sends an additional Amazon SQS message to the specified SQS queue. The body of the SQS message contains a “Status” field which is set to “Stopping”.
You should add logic to your Amazon SQS message consumer to take any needed action (for example, resource cleanup) upon receipt of the message followed by a call to ‘SendPipelineExecutionStepSuccess` or `SendPipelineExecutionStepFailure`.
Only when SageMaker Pipelines receives one of these calls will it stop the pipeline execution.
**Lambda Step**
A pipeline execution can’t be stopped while a lambda step is running because the Lambda function invoked by the lambda step can’t be stopped. If you attempt to stop the execution while the Lambda function is running, the pipeline waits for the Lambda function to finish or until the timeout is hit, whichever occurs first, and then stops. If the Lambda function finishes, the pipeline execution status is ‘Stopped`. If the timeout is hit the pipeline execution status is `Failed`.
29390 29391 29392 29393 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 29390 def stop_pipeline_execution(params = {}, = {}) req = build_request(:stop_pipeline_execution, params) req.send_request() end |
#stop_processing_job(params = {}) ⇒ Struct
Stops a processing job.
29412 29413 29414 29415 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 29412 def stop_processing_job(params = {}, = {}) req = build_request(:stop_processing_job, params) req.send_request() end |
#stop_training_job(params = {}) ⇒ Struct
Stops a training job. To stop a job, SageMaker sends the algorithm the ‘SIGTERM` signal, which delays job termination for 120 seconds. Algorithms might use this 120-second window to save the model artifacts, so the results of the training is not lost.
When it receives a ‘StopTrainingJob` request, SageMaker changes the status of the job to `Stopping`. After SageMaker stops the job, it sets the status to `Stopped`.
29441 29442 29443 29444 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 29441 def stop_training_job(params = {}, = {}) req = build_request(:stop_training_job, params) req.send_request() end |
#stop_transform_job(params = {}) ⇒ Struct
Stops a batch transform job.
When Amazon SageMaker receives a ‘StopTransformJob` request, the status of the job changes to `Stopping`. After Amazon SageMaker stops the job, the status is set to `Stopped`. When you stop a batch transform job before it is completed, Amazon SageMaker doesn’t store the job’s output in Amazon S3.
29469 29470 29471 29472 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 29469 def stop_transform_job(params = {}, = {}) req = build_request(:stop_transform_job, params) req.send_request() end |
#update_action(params = {}) ⇒ Types::UpdateActionResponse
Updates an action.
29515 29516 29517 29518 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 29515 def update_action(params = {}, = {}) req = build_request(:update_action, params) req.send_request() end |
#update_app_image_config(params = {}) ⇒ Types::UpdateAppImageConfigResponse
Updates the properties of an AppImageConfig.
29593 29594 29595 29596 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 29593 def update_app_image_config(params = {}, = {}) req = build_request(:update_app_image_config, params) req.send_request() end |
#update_artifact(params = {}) ⇒ Types::UpdateArtifactResponse
Updates an artifact.
29635 29636 29637 29638 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 29635 def update_artifact(params = {}, = {}) req = build_request(:update_artifact, params) req.send_request() end |
#update_cluster(params = {}) ⇒ Types::UpdateClusterResponse
Updates a SageMaker HyperPod cluster.
29873 29874 29875 29876 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 29873 def update_cluster(params = {}, = {}) req = build_request(:update_cluster, params) req.send_request() end |
#update_cluster_scheduler_config(params = {}) ⇒ Types::UpdateClusterSchedulerConfigResponse
Update the cluster policy configuration.
29924 29925 29926 29927 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 29924 def update_cluster_scheduler_config(params = {}, = {}) req = build_request(:update_cluster_scheduler_config, params) req.send_request() end |
#update_cluster_software(params = {}) ⇒ Types::UpdateClusterSoftwareResponse
Updates the platform software of a SageMaker HyperPod cluster for security patching. To learn how to use this API, see [Update the SageMaker HyperPod platform software of a cluster].
The ‘UpgradeClusterSoftware` API call may impact your SageMaker HyperPod cluster uptime and availability. Plan accordingly to mitigate potential disruptions to your workloads.
30021 30022 30023 30024 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 30021 def update_cluster_software(params = {}, = {}) req = build_request(:update_cluster_software, params) req.send_request() end |
#update_code_repository(params = {}) ⇒ Types::UpdateCodeRepositoryOutput
Updates the specified Git repository with the specified values.
30061 30062 30063 30064 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 30061 def update_code_repository(params = {}, = {}) req = build_request(:update_code_repository, params) req.send_request() end |
#update_compute_quota(params = {}) ⇒ Types::UpdateComputeQuotaResponse
Update the compute allocation definition.
30151 30152 30153 30154 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 30151 def update_compute_quota(params = {}, = {}) req = build_request(:update_compute_quota, params) req.send_request() end |
#update_context(params = {}) ⇒ Types::UpdateContextResponse
Updates a context.
30193 30194 30195 30196 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 30193 def update_context(params = {}, = {}) req = build_request(:update_context, params) req.send_request() end |
#update_device_fleet(params = {}) ⇒ Struct
Updates a fleet of devices.
30241 30242 30243 30244 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 30241 def update_device_fleet(params = {}, = {}) req = build_request(:update_device_fleet, params) req.send_request() end |
#update_devices(params = {}) ⇒ Struct
Updates one or more devices in a fleet.
30273 30274 30275 30276 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 30273 def update_devices(params = {}, = {}) req = build_request(:update_devices, params) req.send_request() end |
#update_domain(params = {}) ⇒ Types::UpdateDomainResponse
Updates the default settings for new user profiles in the domain.
30700 30701 30702 30703 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 30700 def update_domain(params = {}, = {}) req = build_request(:update_domain, params) req.send_request() end |
#update_endpoint(params = {}) ⇒ Types::UpdateEndpointOutput
Deploys the ‘EndpointConfig` specified in the request to a new fleet of instances. SageMaker shifts endpoint traffic to the new instances with the updated endpoint configuration and then deletes the old instances using the previous `EndpointConfig` (there is no availability loss). For more information about how to control the update and traffic shifting process, see [ Update models in production].
When SageMaker receives the request, it sets the endpoint status to ‘Updating`. After updating the endpoint, it sets the status to `InService`. To check the status of an endpoint, use the
- DescribeEndpoint][2
-
API.
<note markdown=“1”> You must not delete an ‘EndpointConfig` in use by an endpoint that is live or while the `UpdateEndpoint` or `CreateEndpoint` operations are being performed on the endpoint. To update an endpoint, you must create a new `EndpointConfig`.
If you delete the `EndpointConfig` of an endpoint that is active or
being created or updated you may lose visibility into the instance type the endpoint is using. The endpoint must be deleted in order to stop incurring charges.
</note>
[1]: docs.aws.amazon.com/sagemaker/latest/dg/deployment-guardrails.html [2]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_DescribeEndpoint.html
30838 30839 30840 30841 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 30838 def update_endpoint(params = {}, = {}) req = build_request(:update_endpoint, params) req.send_request() end |
#update_endpoint_weights_and_capacities(params = {}) ⇒ Types::UpdateEndpointWeightsAndCapacitiesOutput
Updates variant weight of one or more variants associated with an existing endpoint, or capacity of one variant associated with an existing endpoint. When it receives the request, SageMaker sets the endpoint status to ‘Updating`. After updating the endpoint, it sets the status to `InService`. To check the status of an endpoint, use the
- DescribeEndpoint][1
-
API.
[1]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_DescribeEndpoint.html
30889 30890 30891 30892 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 30889 def update_endpoint_weights_and_capacities(params = {}, = {}) req = build_request(:update_endpoint_weights_and_capacities, params) req.send_request() end |
#update_experiment(params = {}) ⇒ Types::UpdateExperimentResponse
Adds, updates, or removes the description of an experiment. Updates the display name of an experiment.
30928 30929 30930 30931 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 30928 def update_experiment(params = {}, = {}) req = build_request(:update_experiment, params) req.send_request() end |
#update_feature_group(params = {}) ⇒ Types::UpdateFeatureGroupResponse
Updates the feature group by either adding features or updating the online store configuration. Use one of the following request parameters at a time while using the ‘UpdateFeatureGroup` API.
You can add features for your feature group using the ‘FeatureAdditions` request parameter. Features cannot be removed from a feature group.
You can update the online store configuration by using the ‘OnlineStoreConfig` request parameter. If a `TtlDuration` is specified, the default `TtlDuration` applies for all records added to the feature group *after the feature group is updated*. If a record level `TtlDuration` exists from using the `PutRecord` API, the record level `TtlDuration` applies to that record instead of the default `TtlDuration`. To remove the default `TtlDuration` from an existing feature group, use the `UpdateFeatureGroup` API and set the `TtlDuration` `Unit` and `Value` to `null`.
31011 31012 31013 31014 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 31011 def update_feature_group(params = {}, = {}) req = build_request(:update_feature_group, params) req.send_request() end |
#update_feature_metadata(params = {}) ⇒ Struct
Updates the description and parameters of the feature group.
31057 31058 31059 31060 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 31057 def (params = {}, = {}) req = build_request(:update_feature_metadata, params) req.send_request() end |
#update_hub(params = {}) ⇒ Types::UpdateHubResponse
Update a hub.
31097 31098 31099 31100 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 31097 def update_hub(params = {}, = {}) req = build_request(:update_hub, params) req.send_request() end |
#update_hub_content(params = {}) ⇒ Types::UpdateHubContentResponse
Updates SageMaker hub content (either a ‘Model` or `Notebook` resource).
You can update the metadata that describes the resource. In addition to the required request fields, specify at least one of the following fields to update:
-
‘HubContentDescription`
-
‘HubContentDisplayName`
-
‘HubContentMarkdown`
-
‘HubContentSearchKeywords`
-
‘SupportStatus`
For more information about hubs, see [Private curated hubs for foundation model access control in JumpStart].
<note markdown=“1”> If you want to update a ‘ModelReference` resource in your hub, use the `UpdateHubContentResource` API instead.
</note>
[1]: docs.aws.amazon.com/sagemaker/latest/dg/jumpstart-curated-hubs.html
31192 31193 31194 31195 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 31192 def update_hub_content(params = {}, = {}) req = build_request(:update_hub_content, params) req.send_request() end |
#update_hub_content_reference(params = {}) ⇒ Types::UpdateHubContentReferenceResponse
Updates the contents of a SageMaker hub for a ‘ModelReference` resource. A `ModelReference` allows you to access public SageMaker JumpStart models from within your private hub.
When using this API, you can update the ‘MinVersion` field for additional flexibility in the model version. You shouldn’t update any additional fields when using this API, because the metadata in your private hub should match the public JumpStart model’s metadata.
<note markdown=“1”> If you want to update a ‘Model` or `Notebook` resource in your hub, use the `UpdateHubContent` API instead.
</note>
For more information about adding model references to your hub, see [ Add models to a private hub].
[1]: docs.aws.amazon.com/sagemaker/latest/dg/jumpstart-curated-hubs-admin-guide-add-models.html
31259 31260 31261 31262 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 31259 def update_hub_content_reference(params = {}, = {}) req = build_request(:update_hub_content_reference, params) req.send_request() end |
#update_image(params = {}) ⇒ Types::UpdateImageResponse
Updates the properties of a SageMaker AI image. To change the image’s tags, use the [AddTags] and [DeleteTags] APIs.
[1]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_AddTags.html [2]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_DeleteTags.html
31311 31312 31313 31314 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 31311 def update_image(params = {}, = {}) req = build_request(:update_image, params) req.send_request() end |
#update_image_version(params = {}) ⇒ Types::UpdateImageVersionResponse
Updates the properties of a SageMaker AI image version.
31408 31409 31410 31411 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 31408 def update_image_version(params = {}, = {}) req = build_request(:update_image_version, params) req.send_request() end |
#update_inference_component(params = {}) ⇒ Types::UpdateInferenceComponentOutput
Updates an inference component.
31546 31547 31548 31549 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 31546 def update_inference_component(params = {}, = {}) req = build_request(:update_inference_component, params) req.send_request() end |
#update_inference_component_runtime_config(params = {}) ⇒ Types::UpdateInferenceComponentRuntimeConfigOutput
Runtime settings for a model that is deployed with an inference component.
31582 31583 31584 31585 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 31582 def update_inference_component_runtime_config(params = {}, = {}) req = build_request(:update_inference_component_runtime_config, params) req.send_request() end |
#update_inference_experiment(params = {}) ⇒ Types::UpdateInferenceExperimentResponse
Updates an inference experiment that you created. The status of the inference experiment has to be either ‘Created`, `Running`. For more information on the status of an inference experiment, see [DescribeInferenceExperiment].
[1]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_DescribeInferenceExperiment.html
31676 31677 31678 31679 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 31676 def update_inference_experiment(params = {}, = {}) req = build_request(:update_inference_experiment, params) req.send_request() end |
#update_mlflow_app(params = {}) ⇒ Types::UpdateMlflowAppResponse
Updates an MLflow App.
31737 31738 31739 31740 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 31737 def update_mlflow_app(params = {}, = {}) req = build_request(:update_mlflow_app, params) req.send_request() end |
#update_mlflow_tracking_server(params = {}) ⇒ Types::UpdateMlflowTrackingServerResponse
Updates properties of an existing MLflow Tracking Server.
31798 31799 31800 31801 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 31798 def update_mlflow_tracking_server(params = {}, = {}) req = build_request(:update_mlflow_tracking_server, params) req.send_request() end |
#update_model_card(params = {}) ⇒ Types::UpdateModelCardResponse
Update an Amazon SageMaker Model Card.
You cannot update both model card content and model card status in a single call.
31856 31857 31858 31859 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 31856 def update_model_card(params = {}, = {}) req = build_request(:update_model_card, params) req.send_request() end |
#update_model_package(params = {}) ⇒ Types::UpdateModelPackageOutput
Updates a versioned model.
32115 32116 32117 32118 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 32115 def update_model_package(params = {}, = {}) req = build_request(:update_model_package, params) req.send_request() end |
#update_monitoring_alert(params = {}) ⇒ Types::UpdateMonitoringAlertResponse
Update the parameters of a model monitor alert.
32159 32160 32161 32162 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 32159 def update_monitoring_alert(params = {}, = {}) req = build_request(:update_monitoring_alert, params) req.send_request() end |
#update_monitoring_schedule(params = {}) ⇒ Types::UpdateMonitoringScheduleResponse
Updates a previously created schedule.
32294 32295 32296 32297 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 32294 def update_monitoring_schedule(params = {}, = {}) req = build_request(:update_monitoring_schedule, params) req.send_request() end |
#update_notebook_instance(params = {}) ⇒ Struct
Updates a notebook instance. NotebookInstance updates include upgrading or downgrading the ML compute instance used for your notebook instance to accommodate changes in your workload requirements.
<note markdown=“1”> This API can attach lifecycle configurations to notebook instances. Lifecycle configuration scripts execute with root access and the notebook instance’s IAM execution role privileges. Principals with this permission and access to lifecycle configurations can execute code with the execution role’s credentials. See [Customize a Notebook Instance Using a Lifecycle Configuration Script] for security best practices.
</note>
[1]: docs.aws.amazon.com/sagemaker/latest/dg/notebook-lifecycle-config.html
32471 32472 32473 32474 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 32471 def update_notebook_instance(params = {}, = {}) req = build_request(:update_notebook_instance, params) req.send_request() end |
#update_notebook_instance_lifecycle_config(params = {}) ⇒ Struct
Updates a notebook instance lifecycle configuration created with the
- CreateNotebookInstanceLifecycleConfig][1
-
API.
<note markdown=“1”> Updates to lifecycle configurations affect all notebook instances using that configuration upon their next start. Lifecycle configuration scripts execute with root access and the notebook instance’s IAM execution role privileges. Grant this permission only to trusted principals. See [Customize a Notebook Instance Using a Lifecycle Configuration Script] for security best practices.
</note>
[1]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_CreateNotebookInstanceLifecycleConfig.html [2]: docs.aws.amazon.com/sagemaker/latest/dg/notebook-lifecycle-config.html
32527 32528 32529 32530 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 32527 def update_notebook_instance_lifecycle_config(params = {}, = {}) req = build_request(:update_notebook_instance_lifecycle_config, params) req.send_request() end |
#update_partner_app(params = {}) ⇒ Types::UpdatePartnerAppResponse
Updates all of the SageMaker Partner AI Apps in an account.
32619 32620 32621 32622 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 32619 def update_partner_app(params = {}, = {}) req = build_request(:update_partner_app, params) req.send_request() end |
#update_pipeline(params = {}) ⇒ Types::UpdatePipelineResponse
Updates a pipeline.
32682 32683 32684 32685 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 32682 def update_pipeline(params = {}, = {}) req = build_request(:update_pipeline, params) req.send_request() end |
#update_pipeline_execution(params = {}) ⇒ Types::UpdatePipelineExecutionResponse
Updates a pipeline execution.
32725 32726 32727 32728 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 32725 def update_pipeline_execution(params = {}, = {}) req = build_request(:update_pipeline_execution, params) req.send_request() end |
#update_pipeline_version(params = {}) ⇒ Types::UpdatePipelineVersionResponse
Updates a pipeline version.
32767 32768 32769 32770 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 32767 def update_pipeline_version(params = {}, = {}) req = build_request(:update_pipeline_version, params) req.send_request() end |
#update_project(params = {}) ⇒ Types::UpdateProjectOutput
Updates a machine learning (ML) project that is created from a template that sets up an ML pipeline from training to deploying an approved model.
<note markdown=“1”> You must not update a project that is in use. If you update the ‘ServiceCatalogProvisioningUpdateDetails` of a project that is active or being created, or updated, you may lose resources already created by the project.
</note>
32865 32866 32867 32868 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 32865 def update_project(params = {}, = {}) req = build_request(:update_project, params) req.send_request() end |
#update_space(params = {}) ⇒ Types::UpdateSpaceResponse
Updates the settings of a space.
<note markdown=“1”> You can’t edit the app type of a space in the ‘SpaceSettings`.
</note>
32996 32997 32998 32999 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 32996 def update_space(params = {}, = {}) req = build_request(:update_space, params) req.send_request() end |
#update_training_job(params = {}) ⇒ Types::UpdateTrainingJobResponse
Update a model training job to request a new Debugger profiling configuration or to change warm pool retention length.
33077 33078 33079 33080 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 33077 def update_training_job(params = {}, = {}) req = build_request(:update_training_job, params) req.send_request() end |
#update_trial(params = {}) ⇒ Types::UpdateTrialResponse
Updates the display name of a trial.
33110 33111 33112 33113 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 33110 def update_trial(params = {}, = {}) req = build_request(:update_trial, params) req.send_request() end |
#update_trial_component(params = {}) ⇒ Types::UpdateTrialComponentResponse
Updates one or more properties of a trial component.
33207 33208 33209 33210 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 33207 def update_trial_component(params = {}, = {}) req = build_request(:update_trial_component, params) req.send_request() end |
#update_user_profile(params = {}) ⇒ Types::UpdateUserProfileResponse
Updates a user profile.
33447 33448 33449 33450 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 33447 def update_user_profile(params = {}, = {}) req = build_request(:update_user_profile, params) req.send_request() end |
#update_workforce(params = {}) ⇒ Types::UpdateWorkforceResponse
Use this operation to update your workforce. You can use this operation to require that workers use specific IP addresses to work on tasks and to update your OpenID Connect (OIDC) Identity Provider (IdP) workforce configuration.
The worker portal is now supported in VPC and public internet.
Use ‘SourceIpConfig` to restrict worker access to tasks to a specific range of IP addresses. You specify allowed IP addresses by creating a list of up to ten [CIDRs]. By default, a workforce isn’t restricted to specific IP addresses. If you specify a range of IP addresses, workers who attempt to access tasks using any IP address outside the specified range are denied and get a ‘Not Found` error message on the worker portal.
To restrict public internet access for all workers, configure the ‘SourceIpConfig` CIDR value. For example, when using `SourceIpConfig` with an `IpAddressType` of `IPv4`, you can restrict access to the IPv4 CIDR block “10.0.0.0/16”. When using an `IpAddressType` of `dualstack`, you can specify both the IPv4 and IPv6 CIDR blocks, such as “10.0.0.0/16” for IPv4 only, “2001:db8:1234:1a00::/56” for IPv6 only, or “10.0.0.0/16” and “2001:db8:1234:1a00::/56” for dual stack.
Amazon SageMaker does not support Source Ip restriction for worker portals in VPC.
Use ‘OidcConfig` to update the configuration of a workforce created using your own OIDC IdP.
You can only update your OIDC IdP configuration when there are no work teams associated with your workforce. You can delete work teams using the [DeleteWorkteam] operation.
After restricting access to a range of IP addresses or updating your OIDC IdP configuration with this operation, you can view details about your update workforce using the [DescribeWorkforce] operation.
This operation only applies to private workforces.
[1]: docs.aws.amazon.com/vpc/latest/userguide/VPC_Subnets.html [2]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_DeleteWorkteam.html [3]: docs.aws.amazon.com/sagemaker/latest/APIReference/API_DescribeWorkforce.html
33595 33596 33597 33598 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 33595 def update_workforce(params = {}, = {}) req = build_request(:update_workforce, params) req.send_request() end |
#update_workteam(params = {}) ⇒ Types::UpdateWorkteamResponse
Updates an existing work team with new member definitions or description.
33709 33710 33711 33712 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 33709 def update_workteam(params = {}, = {}) req = build_request(:update_workteam, params) req.send_request() end |
#wait_until(waiter_name, params = {}, options = {}) {|w.waiter| ... } ⇒ Boolean
Polls an API operation until a resource enters a desired state.
## Basic Usage
A waiter will call an API operation until:
-
It is successful
-
It enters a terminal state
-
It makes the maximum number of attempts
In between attempts, the waiter will sleep.
# polls in a loop, sleeping between attempts
client.wait_until(waiter_name, params)
## Configuration
You can configure the maximum number of polling attempts, and the delay (in seconds) between each polling attempt. You can pass configuration as the final arguments hash.
# poll for ~25 seconds
client.wait_until(waiter_name, params, {
max_attempts: 5,
delay: 5,
})
## Callbacks
You can be notified before each polling attempt and before each delay. If you throw ‘:success` or `:failure` from these callbacks, it will terminate the waiter.
started_at = Time.now
client.wait_until(waiter_name, params, {
# disable max attempts
max_attempts: nil,
# poll for 1 hour, instead of a number of attempts
before_wait: -> (attempts, response) do
throw :failure if Time.now - started_at > 3600
end
})
## Handling Errors
When a waiter is unsuccessful, it will raise an error. All of the failure errors extend from Waiters::Errors::WaiterFailed.
begin
client.wait_until(...)
rescue Aws::Waiters::Errors::WaiterFailed
# resource did not enter the desired state in time
end
## Valid Waiters
The following table lists the valid waiter names, the operations they call, and the default ‘:delay` and `:max_attempts` values.
| waiter_name | params | :delay | :max_attempts | | ———————————– | ———————————– | ——– | ————- | | endpoint_deleted | #describe_endpoint | 30 | 60 | | endpoint_in_service | #describe_endpoint | 30 | 120 | | image_created | #describe_image | 60 | 60 | | image_deleted | #describe_image | 60 | 60 | | image_updated | #describe_image | 60 | 60 | | image_version_created | #describe_image_version | 60 | 60 | | image_version_deleted | #describe_image_version | 60 | 60 | | notebook_instance_deleted | #describe_notebook_instance | 30 | 60 | | notebook_instance_in_service | #describe_notebook_instance | 30 | 60 | | notebook_instance_stopped | #describe_notebook_instance | 30 | 60 | | processing_job_completed_or_stopped | #describe_processing_job | 60 | 60 | | training_job_completed_or_stopped | #describe_training_job | 120 | 180 | | transform_job_completed_or_stopped | #describe_transform_job | 60 | 60 |
33836 33837 33838 33839 33840 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 33836 def wait_until(waiter_name, params = {}, = {}) w = waiter(waiter_name, ) yield(w.waiter) if block_given? # deprecated w.wait(params) end |
#waiter_names ⇒ Object
This method is part of a private API. You should avoid using this method if possible, as it may be removed or be changed in the future.
33844 33845 33846 |
# File 'lib/aws-sdk-sagemaker/client.rb', line 33844 def waiter_names waiters.keys end |