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Usage

import * as mod from "https://aws-api-bqtgftz736ft.deno.dev/v0.5/services/sagemaker.ts?docs=full";

§Classes

SageMaker

§Interfaces

ActionSource

A structure describing the source of an action.

ActionSummary

Lists the properties of an action. An action represents an action or activity. Some examples are a workflow step and a model deployment. Generally, an action involves at least one input artifact or output artifact.

AddAssociationRequest
AddAssociationResponse
AdditionalInferenceSpecificationDefinition

A structure of additional Inference Specification. Additional Inference Specification specifies details about inference jobs that can be run with models based on this model package

AdditionalModelDataSource

Data sources that are available to your model in addition to the one that you specify for ModelDataSource when you use the CreateModel action.

AdditionalS3DataSource

A data source used for training or inference that is in addition to the input dataset or model data.

AddTagsInput
AddTagsOutput
AgentVersion

Edge Manager agent version.

Alarm

An Amazon CloudWatch alarm configured to monitor metrics on an endpoint.

AlgorithmSpecification

Specifies the training algorithm to use in a CreateTrainingJob request.

AlgorithmStatusDetails

Specifies the validation and image scan statuses of the algorithm.

AlgorithmStatusItem

Represents the overall status of an algorithm.

AlgorithmSummary

Provides summary information about an algorithm.

AlgorithmValidationProfile

Defines a training job and a batch transform job that SageMaker runs to validate your algorithm.

AlgorithmValidationSpecification

Specifies configurations for one or more training jobs that SageMaker runs to test the algorithm.

AmazonQSettings

A collection of settings that configure the Amazon Q experience within the domain.

AnnotationConsolidationConfig

Configures how labels are consolidated across human workers and processes output data.

AppDetails

Details about an Amazon SageMaker app.

AppImageConfigDetails

The configuration for running a SageMaker image as a KernelGateway app.

AppLifecycleManagement

Settings that are used to configure and manage the lifecycle of Amazon SageMaker Studio applications.

AppSpecification

Configuration to run a processing job in a specified container image.

ArtifactSource

A structure describing the source of an artifact.

ArtifactSourceType

The ID and ID type of an artifact source.

ArtifactSummary

Lists a summary of the properties of an artifact. An artifact represents a URI addressable object or data. Some examples are a dataset and a model.

AssociateTrialComponentRequest
AssociateTrialComponentResponse
AssociationSummary

Lists a summary of the properties of an association. An association is an entity that links other lineage or experiment entities. An example would be an association between a training job and a model.

AsyncInferenceClientConfig

Configures the behavior of the client used by SageMaker to interact with the model container during asynchronous inference.

AsyncInferenceConfig

Specifies configuration for how an endpoint performs asynchronous inference.

AsyncInferenceNotificationConfig

Specifies the configuration for notifications of inference results for asynchronous inference.

AsyncInferenceOutputConfig

Specifies the configuration for asynchronous inference invocation outputs.

AthenaDatasetDefinition

Configuration for Athena Dataset Definition input.

AutoMLAlgorithmConfig

The selection of algorithms trained on your dataset to generate the model candidates for an Autopilot job.

AutoMLCandidate

Information about a candidate produced by an AutoML training job, including its status, steps, and other properties.

AutoMLCandidateGenerationConfig

Stores the configuration information for how a candidate is generated (optional).

AutoMLCandidateStep

Information about the steps for a candidate and what step it is working on.

AutoMLChannel

A channel is a named input source that training algorithms can consume. The validation dataset size is limited to less than 2 GB. The training dataset size must be less than 100 GB. For more information, see Channel.

AutoMLComputeConfig

Note: This data type is intended for use exclusively by SageMaker Canvas and cannot be used in other contexts at the moment.

AutoMLContainerDefinition

A list of container definitions that describe the different containers that make up an AutoML candidate. For more information, see ContainerDefinition.

AutoMLDataSource

The data source for the Autopilot job.

AutoMLDataSplitConfig

This structure specifies how to split the data into train and validation datasets.

AutoMLJobArtifacts

The artifacts that are generated during an AutoML job.

AutoMLJobChannel

A channel is a named input source that training algorithms can consume. This channel is used for AutoML jobs V2 (jobs created by calling CreateAutoMLJobV2).

AutoMLJobCompletionCriteria

How long a job is allowed to run, or how many candidates a job is allowed to generate.

AutoMLJobConfig

A collection of settings used for an AutoML job.

AutoMLJobObjective

Specifies a metric to minimize or maximize as the objective of an AutoML job.

AutoMLJobStepMetadata

Metadata for an AutoML job step.

AutoMLJobSummary

Provides a summary about an AutoML job.

AutoMLOutputDataConfig

The output data configuration.

AutoMLPartialFailureReason

The reason for a partial failure of an AutoML job.

AutoMLProblemTypeConfig

A collection of settings specific to the problem type used to configure an AutoML job V2. There must be one and only one config of the following type.

AutoMLProblemTypeResolvedAttributes

Stores resolved attributes specific to the problem type of an AutoML job V2.

AutoMLResolvedAttributes

The resolved attributes used to configure an AutoML job V2.

AutoMLS3DataSource

Describes the Amazon S3 data source.

AutoMLSecurityConfig

Security options.

AutoParameter

The name and an example value of the hyperparameter that you want to use in Autotune. If Automatic model tuning (AMT) determines that your hyperparameter is eligible for Autotune, an optimal hyperparameter range is selected for you.

AutoRollbackConfig

Automatic rollback configuration for handling endpoint deployment failures and recovery.

Autotune

A flag to indicate if you want to use Autotune to automatically find optimal values for the following fields:

BatchDataCaptureConfig

Configuration to control how SageMaker captures inference data for batch transform jobs.

BatchDescribeModelPackageError

The error code and error description associated with the resource.

BatchDescribeModelPackageInput
BatchDescribeModelPackageOutput
BatchDescribeModelPackageSummary

Provides summary information about the model package.

BatchTransformInput

Input object for the batch transform job.

BestObjectiveNotImproving

A structure that keeps track of which training jobs launched by your hyperparameter tuning job are not improving model performance as evaluated against an objective function.

Bias

Contains bias metrics for a model.

BlueGreenUpdatePolicy

Update policy for a blue/green deployment. If this update policy is specified, SageMaker creates a new fleet during the deployment while maintaining the old fleet. SageMaker flips traffic to the new fleet according to the specified traffic routing configuration. Only one update policy should be used in the deployment configuration. If no update policy is specified, SageMaker uses a blue/green deployment strategy with all at once traffic shifting by default.

CacheHitResult

Details on the cache hit of a pipeline execution step.

CallbackStepMetadata

Metadata about a callback step.

CandidateArtifactLocations

The location of artifacts for an AutoML candidate job.

CandidateGenerationConfig

Stores the configuration information for how model candidates are generated using an AutoML job V2.

CandidateProperties

The properties of an AutoML candidate job.

CanvasAppSettings

The SageMaker Canvas application settings.

CapacitySize

Specifies the type and size of the endpoint capacity to activate for a blue/green deployment, a rolling deployment, or a rollback strategy. You can specify your batches as either instance count or the overall percentage or your fleet.

CaptureContentTypeHeader

Configuration specifying how to treat different headers. If no headers are specified Amazon SageMaker will by default base64 encode when capturing the data.

CaptureOption

Specifies data Model Monitor will capture.

CategoricalParameter

Environment parameters you want to benchmark your load test against.

CategoricalParameterRange

A list of categorical hyperparameters to tune.

CategoricalParameterRangeSpecification

Defines the possible values for a categorical hyperparameter.

Channel

A channel is a named input source that training algorithms can consume.

ChannelSpecification

Defines a named input source, called a channel, to be used by an algorithm.

CheckpointConfig

Contains information about the output location for managed spot training checkpoint data.

ClarifyCheckStepMetadata

The container for the metadata for the ClarifyCheck step. For more information, see the topic on ClarifyCheck step in the Amazon SageMaker Developer Guide.

ClarifyExplainerConfig

The configuration parameters for the SageMaker Clarify explainer.

ClarifyInferenceConfig

The inference configuration parameter for the model container.

ClarifyShapBaselineConfig

The configuration for the SHAP baseline (also called the background or reference dataset) of the Kernal SHAP algorithm.

ClarifyShapConfig

The configuration for SHAP analysis using SageMaker Clarify Explainer.

ClarifyTextConfig

A parameter used to configure the SageMaker Clarify explainer to treat text features as text so that explanations are provided for individual units of text. Required only for natural language processing (NLP) explainability.

ClusterEbsVolumeConfig

Defines the configuration for attaching an additional Amazon Elastic Block Store (EBS) volume to each instance of the SageMaker HyperPod cluster instance group. To learn more, see SageMaker HyperPod release notes: June 20, 2024.

ClusterInstanceGroupDetails

Details of an instance group in a SageMaker HyperPod cluster.

ClusterInstanceGroupSpecification

The specifications of an instance group that you need to define.

ClusterInstancePlacement

Specifies the placement details for the node in the SageMaker HyperPod cluster, including the Availability Zone and the unique identifier (ID) of the Availability Zone.

ClusterInstanceStatusDetails

Details of an instance in a SageMaker HyperPod cluster.

ClusterInstanceStorageConfig

Defines the configuration for attaching additional storage to the instances in the SageMaker HyperPod cluster instance group. To learn more, see SageMaker HyperPod release notes: June 20, 2024.

ClusterLifeCycleConfig

The lifecycle configuration for a SageMaker HyperPod cluster.

ClusterNodeDetails

Details of an instance (also called a node interchangeably) in a SageMaker HyperPod cluster.

ClusterNodeSummary

Lists a summary of the properties of an instance (also called a node interchangeably) of a SageMaker HyperPod cluster.

ClusterSummary

Lists a summary of the properties of a SageMaker HyperPod cluster.

CodeEditorAppImageConfig

The configuration for the file system and kernels in a SageMaker image running as a Code Editor app. The FileSystemConfig object is not supported.

CodeEditorAppSettings

The Code Editor application settings.

CodeRepository

A Git repository that SageMaker automatically displays to users for cloning in the JupyterServer application.

CodeRepositorySummary

Specifies summary information about a Git repository.

CognitoConfig

Use this parameter to configure your Amazon Cognito workforce. A single Cognito workforce is created using and corresponds to a single Amazon Cognito user pool.

CognitoMemberDefinition

Identifies a Amazon Cognito user group. A user group can be used in on or more work teams.

CollectionConfig

Configuration for your collection.

CollectionConfiguration

Configuration information for the Amazon SageMaker Debugger output tensor collections.

CompilationJobSummary

A summary of a model compilation job.

ConditionStepMetadata

Metadata for a Condition step.

ContainerConfig

The configuration used to run the application image container.

ContainerDefinition

Describes the container, as part of model definition.

ContextSource

A structure describing the source of a context.

ContextSummary

Lists a summary of the properties of a context. A context provides a logical grouping of other entities.

ContinuousParameterRange

A list of continuous hyperparameters to tune.

ContinuousParameterRangeSpecification

Defines the possible values for a continuous hyperparameter.

ConvergenceDetected

A flag to indicating that automatic model tuning (AMT) has detected model convergence, defined as a lack of significant improvement (1% or less) against an objective metric.

CreateActionRequest
CreateActionResponse
CreateAlgorithmInput
CreateAlgorithmOutput
CreateAppImageConfigRequest
CreateAppImageConfigResponse
CreateAppRequest
CreateAppResponse
CreateArtifactRequest
CreateArtifactResponse
CreateAutoMLJobRequest
CreateAutoMLJobResponse
CreateAutoMLJobV2Request
CreateAutoMLJobV2Response
CreateClusterRequest
CreateClusterResponse
CreateCodeRepositoryInput
CreateCodeRepositoryOutput
CreateCompilationJobRequest
CreateCompilationJobResponse
CreateContextRequest
CreateContextResponse
CreateDataQualityJobDefinitionRequest
CreateDataQualityJobDefinitionResponse
CreateDeviceFleetRequest
CreateDomainRequest
CreateDomainResponse
CreateEdgeDeploymentPlanRequest
CreateEdgeDeploymentPlanResponse
CreateEdgeDeploymentStageRequest
CreateEdgePackagingJobRequest
CreateEndpointConfigInput
CreateEndpointConfigOutput
CreateEndpointInput
CreateEndpointOutput
CreateExperimentRequest
CreateExperimentResponse
CreateFeatureGroupRequest
CreateFeatureGroupResponse
CreateFlowDefinitionRequest
CreateFlowDefinitionResponse
CreateHubContentReferenceRequest
CreateHubContentReferenceResponse
CreateHubRequest
CreateHubResponse
CreateHumanTaskUiRequest
CreateHumanTaskUiResponse
CreateHyperParameterTuningJobRequest
CreateHyperParameterTuningJobResponse
CreateImageRequest
CreateImageResponse
CreateImageVersionRequest
CreateImageVersionResponse
CreateInferenceComponentInput
CreateInferenceComponentOutput
CreateInferenceExperimentRequest
CreateInferenceExperimentResponse
CreateInferenceRecommendationsJobRequest
CreateInferenceRecommendationsJobResponse
CreateLabelingJobRequest
CreateLabelingJobResponse
CreateMlflowTrackingServerRequest
CreateMlflowTrackingServerResponse
CreateModelBiasJobDefinitionRequest
CreateModelBiasJobDefinitionResponse
CreateModelCardExportJobRequest
CreateModelCardExportJobResponse
CreateModelCardRequest
CreateModelCardResponse
CreateModelExplainabilityJobDefinitionRequest
CreateModelExplainabilityJobDefinitionResponse
CreateModelInput
CreateModelOutput
CreateModelPackageGroupInput
CreateModelPackageGroupOutput
CreateModelPackageInput
CreateModelPackageOutput
CreateModelQualityJobDefinitionRequest
CreateModelQualityJobDefinitionResponse
CreateMonitoringScheduleRequest
CreateMonitoringScheduleResponse
CreateNotebookInstanceInput
CreateNotebookInstanceLifecycleConfigInput
CreateNotebookInstanceLifecycleConfigOutput
CreateNotebookInstanceOutput
CreateOptimizationJobRequest
CreateOptimizationJobResponse
CreatePipelineRequest
CreatePipelineResponse
CreatePresignedDomainUrlRequest
CreatePresignedDomainUrlResponse
CreatePresignedMlflowTrackingServerUrlRequest
CreatePresignedMlflowTrackingServerUrlResponse
CreatePresignedNotebookInstanceUrlInput
CreatePresignedNotebookInstanceUrlOutput
CreateProcessingJobRequest
CreateProcessingJobResponse
CreateProjectInput
CreateProjectOutput
CreateSpaceRequest
CreateSpaceResponse
CreateStudioLifecycleConfigRequest
CreateStudioLifecycleConfigResponse
CreateTrainingJobRequest
CreateTrainingJobResponse
CreateTransformJobRequest
CreateTransformJobResponse
CreateTrialComponentRequest
CreateTrialComponentResponse
CreateTrialRequest
CreateTrialResponse
CreateUserProfileRequest
CreateUserProfileResponse
CreateWorkforceRequest
CreateWorkforceResponse
CreateWorkteamRequest
CreateWorkteamResponse
CustomFileSystem

A file system, created by you, that you assign to a user profile or space for an Amazon SageMaker Domain. Permitted users can access this file system in Amazon SageMaker Studio.

CustomFileSystemConfig

The settings for assigning a custom file system to a user profile or space for an Amazon SageMaker Domain. Permitted users can access this file system in Amazon SageMaker Studio.

CustomImage

A custom SageMaker image. For more information, see Bring your own SageMaker image.

CustomizedMetricSpecification

A customized metric.

CustomPosixUserConfig

Details about the POSIX identity that is used for file system operations.

DataCaptureConfig

Configuration to control how SageMaker captures inference data.

DataCaptureConfigSummary

The currently active data capture configuration used by your Endpoint.

DataCatalogConfig

The meta data of the Glue table which serves as data catalog for the OfflineStore.

DataProcessing

The data structure used to specify the data to be used for inference in a batch transform job and to associate the data that is relevant to the prediction results in the output. The input filter provided allows you to exclude input data that is not needed for inference in a batch transform job. The output filter provided allows you to include input data relevant to interpreting the predictions in the output from the job. For more information, see Associate Prediction Results with their Corresponding Input Records.

DataQualityAppSpecification

Information about the container that a data quality monitoring job runs.

DataQualityBaselineConfig

Configuration for monitoring constraints and monitoring statistics. These baseline resources are compared against the results of the current job from the series of jobs scheduled to collect data periodically.

DataQualityJobInput

The input for the data quality monitoring job. Currently endpoints are supported for input.

DatasetDefinition

Configuration for Dataset Definition inputs. The Dataset Definition input must specify exactly one of either AthenaDatasetDefinition or RedshiftDatasetDefinition types.

DataSource

Describes the location of the channel data.

DebugHookConfig

Configuration information for the Amazon SageMaker Debugger hook parameters, metric and tensor collections, and storage paths. To learn more about how to configure the DebugHookConfig parameter, see Use the SageMaker and Debugger Configuration API Operations to Create, Update, and Debug Your Training Job.

DebugRuleConfiguration

Configuration information for SageMaker Debugger rules for debugging. To learn more about how to configure the DebugRuleConfiguration parameter, see Use the SageMaker and Debugger Configuration API Operations to Create, Update, and Debug Your Training Job.

DebugRuleEvaluationStatus

Information about the status of the rule evaluation.

DefaultEbsStorageSettings

A collection of default EBS storage settings that apply to spaces created within a domain or user profile.

DefaultSpaceSettings

A collection of settings that apply to spaces created in the domain.

DefaultSpaceStorageSettings

The default storage settings for a space.

DeleteActionRequest
DeleteActionResponse
DeleteAlgorithmInput
DeleteAppImageConfigRequest
DeleteAppRequest
DeleteArtifactRequest
DeleteArtifactResponse
DeleteAssociationRequest
DeleteAssociationResponse
DeleteClusterRequest
DeleteClusterResponse
DeleteCodeRepositoryInput
DeleteCompilationJobRequest
DeleteContextRequest
DeleteContextResponse
DeleteDataQualityJobDefinitionRequest
DeleteDeviceFleetRequest
DeleteDomainRequest
DeleteEdgeDeploymentPlanRequest
DeleteEdgeDeploymentStageRequest
DeleteEndpointConfigInput
DeleteEndpointInput
DeleteExperimentRequest
DeleteExperimentResponse
DeleteFeatureGroupRequest
DeleteFlowDefinitionRequest
DeleteHubContentReferenceRequest
DeleteHubContentRequest
DeleteHubRequest
DeleteHumanTaskUiRequest
DeleteHyperParameterTuningJobRequest
DeleteImageRequest
DeleteImageVersionRequest
DeleteInferenceComponentInput
DeleteInferenceExperimentRequest
DeleteInferenceExperimentResponse
DeleteMlflowTrackingServerRequest
DeleteMlflowTrackingServerResponse
DeleteModelBiasJobDefinitionRequest
DeleteModelCardRequest
DeleteModelExplainabilityJobDefinitionRequest
DeleteModelInput
DeleteModelPackageGroupInput
DeleteModelPackageGroupPolicyInput
DeleteModelPackageInput
DeleteModelQualityJobDefinitionRequest
DeleteMonitoringScheduleRequest
DeleteNotebookInstanceInput
DeleteNotebookInstanceLifecycleConfigInput
DeleteOptimizationJobRequest
DeletePipelineRequest
DeletePipelineResponse
DeleteProjectInput
DeleteSpaceRequest
DeleteStudioLifecycleConfigRequest
DeleteTagsInput
DeleteTrialComponentRequest
DeleteTrialComponentResponse
DeleteTrialRequest
DeleteTrialResponse
DeleteUserProfileRequest
DeleteWorkforceRequest
DeleteWorkteamRequest
DeleteWorkteamResponse
DeployedImage

Gets the Amazon EC2 Container Registry path of the docker image of the model that is hosted in this ProductionVariant.

DeploymentConfig

The deployment configuration for an endpoint, which contains the desired deployment strategy and rollback configurations.

DeploymentRecommendation

A set of recommended deployment configurations for the model. To get more advanced recommendations, see CreateInferenceRecommendationsJob to create an inference recommendation job.

DeploymentStage

Contains information about a stage in an edge deployment plan.

DeploymentStageStatusSummary

Contains information summarizing the deployment stage results.

DeregisterDevicesRequest
DerivedInformation

Information that SageMaker Neo automatically derived about the model.

DescribeActionRequest
DescribeActionResponse
DescribeAlgorithmInput
DescribeAlgorithmOutput
DescribeAppImageConfigRequest
DescribeAppImageConfigResponse
DescribeAppRequest
DescribeAppResponse
DescribeArtifactRequest
DescribeArtifactResponse
DescribeAutoMLJobRequest
DescribeAutoMLJobResponse
DescribeAutoMLJobV2Request
DescribeAutoMLJobV2Response
DescribeClusterNodeRequest
DescribeClusterNodeResponse
DescribeClusterRequest
DescribeClusterResponse
DescribeCodeRepositoryInput
DescribeCodeRepositoryOutput
DescribeCompilationJobRequest
DescribeCompilationJobResponse
DescribeContextRequest
DescribeContextResponse
DescribeDataQualityJobDefinitionRequest
DescribeDataQualityJobDefinitionResponse
DescribeDeviceFleetRequest
DescribeDeviceFleetResponse
DescribeDeviceRequest
DescribeDeviceResponse
DescribeDomainRequest
DescribeDomainResponse
DescribeEdgeDeploymentPlanRequest
DescribeEdgeDeploymentPlanResponse
DescribeEdgePackagingJobRequest
DescribeEdgePackagingJobResponse
DescribeEndpointConfigInput
DescribeEndpointConfigOutput
DescribeEndpointInput
DescribeEndpointOutput
DescribeExperimentRequest
DescribeExperimentResponse
DescribeFeatureGroupRequest
DescribeFeatureGroupResponse
DescribeFeatureMetadataRequest
DescribeFeatureMetadataResponse
DescribeFlowDefinitionRequest
DescribeFlowDefinitionResponse
DescribeHubContentRequest
DescribeHubContentResponse
DescribeHubRequest
DescribeHubResponse
DescribeHumanTaskUiRequest
DescribeHumanTaskUiResponse
DescribeHyperParameterTuningJobRequest
DescribeHyperParameterTuningJobResponse
DescribeImageRequest
DescribeImageResponse
DescribeImageVersionRequest
DescribeImageVersionResponse
DescribeInferenceComponentInput
DescribeInferenceComponentOutput
DescribeInferenceExperimentRequest
DescribeInferenceExperimentResponse
DescribeInferenceRecommendationsJobRequest
DescribeInferenceRecommendationsJobResponse
DescribeLabelingJobRequest
DescribeLabelingJobResponse
DescribeLineageGroupRequest
DescribeLineageGroupResponse
DescribeMlflowTrackingServerRequest
DescribeMlflowTrackingServerResponse
DescribeModelBiasJobDefinitionRequest
DescribeModelBiasJobDefinitionResponse
DescribeModelCardExportJobRequest
DescribeModelCardExportJobResponse
DescribeModelCardRequest
DescribeModelCardResponse
DescribeModelExplainabilityJobDefinitionRequest
DescribeModelExplainabilityJobDefinitionResponse
DescribeModelInput
DescribeModelOutput
DescribeModelPackageGroupInput
DescribeModelPackageGroupOutput
DescribeModelPackageInput
DescribeModelPackageOutput
DescribeModelQualityJobDefinitionRequest
DescribeModelQualityJobDefinitionResponse
DescribeMonitoringScheduleRequest
DescribeMonitoringScheduleResponse
DescribeNotebookInstanceInput
DescribeNotebookInstanceLifecycleConfigInput
DescribeNotebookInstanceLifecycleConfigOutput
DescribeNotebookInstanceOutput
DescribeOptimizationJobRequest
DescribeOptimizationJobResponse
DescribePipelineDefinitionForExecutionRequest
DescribePipelineDefinitionForExecutionResponse
DescribePipelineExecutionRequest
DescribePipelineExecutionResponse
DescribePipelineRequest
DescribePipelineResponse
DescribeProcessingJobRequest
DescribeProcessingJobResponse
DescribeProjectInput
DescribeProjectOutput
DescribeSpaceRequest
DescribeSpaceResponse
DescribeStudioLifecycleConfigRequest
DescribeStudioLifecycleConfigResponse
DescribeSubscribedWorkteamRequest
DescribeSubscribedWorkteamResponse
DescribeTrainingJobRequest
DescribeTrainingJobResponse
DescribeTransformJobRequest
DescribeTransformJobResponse
DescribeTrialComponentRequest
DescribeTrialComponentResponse
DescribeTrialRequest
DescribeTrialResponse
DescribeUserProfileRequest
DescribeUserProfileResponse
DescribeWorkforceRequest
DescribeWorkforceResponse
DescribeWorkteamRequest
DescribeWorkteamResponse
DesiredWeightAndCapacity

Specifies weight and capacity values for a production variant.

Device

Information of a particular device.

DeviceDeploymentSummary

Contains information summarizing device details and deployment status.

DeviceFleetSummary

Summary of the device fleet.

DeviceSelectionConfig

Contains information about the configurations of selected devices.

DeviceStats

Status of devices.

DeviceSummary

Summary of the device.

DirectDeploySettings

The model deployment settings for the SageMaker Canvas application.

DisassociateTrialComponentRequest
DisassociateTrialComponentResponse
DockerSettings

A collection of settings that configure the domain's Docker interaction.

DomainDetails

The domain's details.

DomainSettings

A collection of settings that apply to the SageMaker Domain. These settings are specified through the CreateDomain API call.

DomainSettingsForUpdate

A collection of Domain configuration settings to update.

DriftCheckBaselines

Represents the drift check baselines that can be used when the model monitor is set using the model package.

DriftCheckBias

Represents the drift check bias baselines that can be used when the model monitor is set using the model package.

DriftCheckExplainability

Represents the drift check explainability baselines that can be used when the model monitor is set using the model package.

DriftCheckModelDataQuality

Represents the drift check data quality baselines that can be used when the model monitor is set using the model package.

DriftCheckModelQuality

Represents the drift check model quality baselines that can be used when the model monitor is set using the model package.

DynamicScalingConfiguration

An object with the recommended values for you to specify when creating an autoscaling policy.

EbsStorageSettings

A collection of EBS storage settings that apply to both private and shared spaces.

Edge

A directed edge connecting two lineage entities.

EdgeDeploymentConfig

Contains information about the configuration of a deployment.

EdgeDeploymentModelConfig

Contains information about the configuration of a model in a deployment.

EdgeDeploymentPlanSummary

Contains information summarizing an edge deployment plan.

EdgeDeploymentStatus

Contains information summarizing the deployment stage results.

EdgeModel

The model on the edge device.

EdgeModelStat

Status of edge devices with this model.

EdgeModelSummary

Summary of model on edge device.

EdgeOutputConfig

The output configuration.

EdgePackagingJobSummary

Summary of edge packaging job.

EdgePresetDeploymentOutput

The output of a SageMaker Edge Manager deployable resource.

EFSFileSystem

A file system, created by you in Amazon EFS, that you assign to a user profile or space for an Amazon SageMaker Domain. Permitted users can access this file system in Amazon SageMaker Studio.

EFSFileSystemConfig

The settings for assigning a custom Amazon EFS file system to a user profile or space for an Amazon SageMaker Domain.

EmrServerlessComputeConfig

Note: This data type is intended for use exclusively by SageMaker Canvas and cannot be used in other contexts at the moment.

EmrServerlessSettings

The settings for running Amazon EMR Serverless jobs in SageMaker Canvas.

EmrSettings

The configuration parameters that specify the IAM roles assumed by the execution role of SageMaker (assumable roles) and the cluster instances or job execution environments (execution roles or runtime roles) to manage and access resources required for running Amazon EMR clusters or Amazon EMR Serverless applications.

EMRStepMetadata

The configurations and outcomes of an Amazon EMR step execution.

Endpoint

A hosted endpoint for real-time inference.

EndpointConfigStepMetadata

Metadata for an endpoint configuration step.

EndpointConfigSummary

Provides summary information for an endpoint configuration.

EndpointInfo

Details about a customer endpoint that was compared in an Inference Recommender job.

EndpointInput

Input object for the endpoint

EndpointInputConfiguration

The endpoint configuration for the load test.

EndpointMetadata

The metadata of the endpoint.

EndpointOutputConfiguration

The endpoint configuration made by Inference Recommender during a recommendation job.

EndpointPerformance

The performance results from running an Inference Recommender job on an existing endpoint.

EndpointStepMetadata

Metadata for an endpoint step.

EndpointSummary

Provides summary information for an endpoint.

EnvironmentParameter

A list of environment parameters suggested by the Amazon SageMaker Inference Recommender.

EnvironmentParameterRanges

Specifies the range of environment parameters

Experiment

The properties of an experiment as returned by the Search API.

ExperimentConfig

Associates a SageMaker job as a trial component with an experiment and trial. Specified when you call the following APIs:

ExperimentSource

The source of the experiment.

ExperimentSummary

A summary of the properties of an experiment. To get the complete set of properties, call the DescribeExperiment API and provide the ExperimentName.

Explainability

Contains explainability metrics for a model.

ExplainerConfig

A parameter to activate explainers.

FailStepMetadata

The container for the metadata for Fail step.

FeatureDefinition

A list of features. You must include FeatureName and FeatureType. Valid feature FeatureTypes are Integral, Fractional and String.

FeatureGroup

Amazon SageMaker Feature Store stores features in a collection called Feature Group. A Feature Group can be visualized as a table which has rows, with a unique identifier for each row where each column in the table is a feature. In principle, a Feature Group is composed of features and values per features.

FeatureGroupSummary

The name, ARN, CreationTime, FeatureGroup values, LastUpdatedTime and EnableOnlineStorage status of a FeatureGroup.

FeatureMetadata

The metadata for a feature. It can either be metadata that you specify, or metadata that is updated automatically.

FeatureParameter

A key-value pair that you specify to describe the feature.

FileSource

Contains details regarding the file source.

FileSystemConfig

The Amazon Elastic File System storage configuration for a SageMaker image.

FileSystemDataSource

Specifies a file system data source for a channel.

Filter

A conditional statement for a search expression that includes a resource property, a Boolean operator, and a value. Resources that match the statement are returned in the results from the Search API.

FinalAutoMLJobObjectiveMetric

The best candidate result from an AutoML training job.

FinalHyperParameterTuningJobObjectiveMetric

Shows the latest objective metric emitted by a training job that was launched by a hyperparameter tuning job. You define the objective metric in the HyperParameterTuningJobObjective parameter of HyperParameterTuningJobConfig.

FlowDefinitionOutputConfig

Contains information about where human output will be stored.

FlowDefinitionSummary

Contains summary information about the flow definition.

GenerativeAiSettings

The generative AI settings for the SageMaker Canvas application.

GetDeviceFleetReportRequest
GetDeviceFleetReportResponse
GetLineageGroupPolicyRequest
GetLineageGroupPolicyResponse
GetModelPackageGroupPolicyInput
GetModelPackageGroupPolicyOutput
GetSagemakerServicecatalogPortfolioStatusOutput
GetScalingConfigurationRecommendationRequest
GetScalingConfigurationRecommendationResponse
GetSearchSuggestionsRequest
GetSearchSuggestionsResponse
GitConfig

Specifies configuration details for a Git repository in your Amazon Web Services account.

GitConfigForUpdate

Specifies configuration details for a Git repository when the repository is updated.

HolidayConfigAttributes

Stores the holiday featurization attributes applicable to each item of time-series datasets during the training of a forecasting model. This allows the model to identify patterns associated with specific holidays.

HubContentDependency

Any dependencies related to hub content, such as scripts, model artifacts, datasets, or notebooks.

HubContentInfo

Information about hub content.

HubInfo

Information about a hub.

HubS3StorageConfig

The Amazon S3 storage configuration of a hub.

HumanLoopActivationConditionsConfig

Defines under what conditions SageMaker creates a human loop. Used within CreateFlowDefinition. See HumanLoopActivationConditionsConfig for the required format of activation conditions.

HumanLoopActivationConfig

Provides information about how and under what conditions SageMaker creates a human loop. If HumanLoopActivationConfig is not given, then all requests go to humans.

HumanLoopConfig

Describes the work to be performed by human workers.

HumanLoopRequestSource

Container for configuring the source of human task requests.

HumanTaskConfig

Information required for human workers to complete a labeling task.

HumanTaskUiSummary

Container for human task user interface information.

HyperbandStrategyConfig

The configuration for Hyperband, a multi-fidelity based hyperparameter tuning strategy. Hyperband uses the final and intermediate results of a training job to dynamically allocate resources to utilized hyperparameter configurations while automatically stopping under-performing configurations. This parameter should be provided only if Hyperband is selected as the StrategyConfig under the HyperParameterTuningJobConfig API.

HyperParameterAlgorithmSpecification

Specifies which training algorithm to use for training jobs that a hyperparameter tuning job launches and the metrics to monitor.

HyperParameterSpecification

Defines a hyperparameter to be used by an algorithm.

HyperParameterTrainingJobDefinition

Defines the training jobs launched by a hyperparameter tuning job.

HyperParameterTrainingJobSummary

The container for the summary information about a training job.

HyperParameterTuningInstanceConfig

The configuration for hyperparameter tuning resources for use in training jobs launched by the tuning job. These resources include compute instances and storage volumes. Specify one or more compute instance configurations and allocation strategies to select resources (optional).

HyperParameterTuningJobCompletionDetails

A structure that contains runtime information about both current and completed hyperparameter tuning jobs.

HyperParameterTuningJobConfig

Configures a hyperparameter tuning job.

HyperParameterTuningJobConsumedResources

The total resources consumed by your hyperparameter tuning job.

HyperParameterTuningJobObjective

Defines the objective metric for a hyperparameter tuning job. Hyperparameter tuning uses the value of this metric to evaluate the training jobs it launches, and returns the training job that results in either the highest or lowest value for this metric, depending on the value you specify for the Type parameter. If you want to define a custom objective metric, see Define metrics and environment variables.

HyperParameterTuningJobSearchEntity

An entity returned by the SearchRecord API containing the properties of a hyperparameter tuning job.

HyperParameterTuningJobStrategyConfig

The configuration for a training job launched by a hyperparameter tuning job. Choose Bayesian for Bayesian optimization, and Random for random search optimization. For more advanced use cases, use Hyperband, which evaluates objective metrics for training jobs after every epoch. For more information about strategies, see How Hyperparameter Tuning Works.

HyperParameterTuningJobSummary

Provides summary information about a hyperparameter tuning job.

HyperParameterTuningJobWarmStartConfig

Specifies the configuration for a hyperparameter tuning job that uses one or more previous hyperparameter tuning jobs as a starting point. The results of previous tuning jobs are used to inform which combinations of hyperparameters to search over in the new tuning job.

HyperParameterTuningResourceConfig

The configuration of resources, including compute instances and storage volumes for use in training jobs launched by hyperparameter tuning jobs. HyperParameterTuningResourceConfig is similar to ResourceConfig, but has the additional InstanceConfigs and AllocationStrategy fields to allow for flexible instance management. Specify one or more instance types, count, and the allocation strategy for instance selection.

IamIdentity

The IAM Identity details associated with the user. These details are associated with model package groups, model packages and project entities only.

IamPolicyConstraints

Use this parameter to specify a supported global condition key that is added to the IAM policy.

IdentityProviderOAuthSetting

The Amazon SageMaker Canvas application setting where you configure OAuth for connecting to an external data source, such as Snowflake.

IdleSettings

Settings related to idle shutdown of Studio applications.

Image

A SageMaker image. A SageMaker image represents a set of container images that are derived from a common base container image. Each of these container images is represented by a SageMaker ImageVersion.

ImageClassificationJobConfig

The collection of settings used by an AutoML job V2 for the image classification problem type.

ImageConfig

Specifies whether the model container is in Amazon ECR or a private Docker registry accessible from your Amazon Virtual Private Cloud (VPC).

ImageVersion

A version of a SageMaker Image. A version represents an existing container image.

ImportHubContentRequest
ImportHubContentResponse
InferenceComponentComputeResourceRequirements

Defines the compute resources to allocate to run a model that you assign to an inference component. These resources include CPU cores, accelerators, and memory.

InferenceComponentContainerSpecification

Defines a container that provides the runtime environment for a model that you deploy with an inference component.

InferenceComponentContainerSpecificationSummary

Details about the resources that are deployed with this inference component.

InferenceComponentRuntimeConfig

Runtime settings for a model that is deployed with an inference component.

InferenceComponentRuntimeConfigSummary

Details about the runtime settings for the model that is deployed with the inference component.

InferenceComponentSpecification

Details about the resources to deploy with this inference component, including the model, container, and compute resources.

InferenceComponentSpecificationSummary

Details about the resources that are deployed with this inference component.

InferenceComponentStartupParameters

Settings that take effect while the model container starts up.

InferenceComponentSummary

A summary of the properties of an inference component.

InferenceExecutionConfig

Specifies details about how containers in a multi-container endpoint are run.

InferenceExperimentDataStorageConfig

The Amazon S3 location and configuration for storing inference request and response data.

InferenceExperimentSchedule

The start and end times of an inference experiment.

InferenceExperimentSummary

Lists a summary of properties of an inference experiment.

InferenceHubAccessConfig

Configuration information specifying which hub contents have accessible deployment options.

InferenceMetrics

The metrics for an existing endpoint compared in an Inference Recommender job.

InferenceRecommendation

A list of recommendations made by Amazon SageMaker Inference Recommender.

InferenceRecommendationsJob

A structure that contains a list of recommendation jobs.

InferenceRecommendationsJobStep

A returned array object for the Steps response field in the ListInferenceRecommendationsJobSteps API command.

InferenceSpecification

Defines how to perform inference generation after a training job is run.

InfraCheckConfig

Configuration information for the infrastructure health check of a training job. A SageMaker-provided health check tests the health of instance hardware and cluster network connectivity.

InputConfig

Contains information about the location of input model artifacts, the name and shape of the expected data inputs, and the framework in which the model was trained.

InstanceGroup

Defines an instance group for heterogeneous cluster training. When requesting a training job using the CreateTrainingJob API, you can configure multiple instance groups .

InstanceMetadataServiceConfiguration

Information on the IMDS configuration of the notebook instance

IntegerParameterRange

For a hyperparameter of the integer type, specifies the range that a hyperparameter tuning job searches.

IntegerParameterRangeSpecification

Defines the possible values for an integer hyperparameter.

JupyterLabAppImageConfig

The configuration for the file system and kernels in a SageMaker image running as a JupyterLab app. The FileSystemConfig object is not supported.

JupyterLabAppSettings

The settings for the JupyterLab application.

JupyterServerAppSettings

The JupyterServer app settings.

KendraSettings

The Amazon SageMaker Canvas application setting where you configure document querying.

KernelGatewayAppSettings

The KernelGateway app settings.

KernelGatewayImageConfig

The configuration for the file system and kernels in a SageMaker image running as a KernelGateway app.

KernelSpec

The specification of a Jupyter kernel.

LabelCounters

Provides a breakdown of the number of objects labeled.

LabelCountersForWorkteam

Provides counts for human-labeled tasks in the labeling job.

LabelingJobAlgorithmsConfig

Provides configuration information for auto-labeling of your data objects. A LabelingJobAlgorithmsConfig object must be supplied in order to use auto-labeling.

LabelingJobDataAttributes

Attributes of the data specified by the customer. Use these to describe the data to be labeled.

LabelingJobDataSource

Provides information about the location of input data.

LabelingJobForWorkteamSummary

Provides summary information for a work team.

LabelingJobInputConfig

Input configuration information for a labeling job.

LabelingJobOutput

Specifies the location of the output produced by the labeling job.

LabelingJobOutputConfig

Output configuration information for a labeling job.

LabelingJobResourceConfig

Configure encryption on the storage volume attached to the ML compute instance used to run automated data labeling model training and inference.

LabelingJobS3DataSource

The Amazon S3 location of the input data objects.

LabelingJobSnsDataSource

An Amazon SNS data source used for streaming labeling jobs.

LabelingJobStoppingConditions

A set of conditions for stopping a labeling job. If any of the conditions are met, the job is automatically stopped. You can use these conditions to control the cost of data labeling.

LabelingJobSummary

Provides summary information about a labeling job.

LambdaStepMetadata

Metadata for a Lambda step.

LastUpdateStatus

A value that indicates whether the update was successful.

LineageGroupSummary

Lists a summary of the properties of a lineage group. A lineage group provides a group of shareable lineage entity resources.

ListActionsRequest
ListActionsResponse
ListAlgorithmsInput
ListAlgorithmsOutput
ListAliasesRequest
ListAliasesResponse
ListAppImageConfigsRequest
ListAppImageConfigsResponse
ListAppsRequest
ListAppsResponse
ListArtifactsRequest
ListArtifactsResponse
ListAssociationsRequest
ListAssociationsResponse
ListAutoMLJobsRequest
ListAutoMLJobsResponse
ListCandidatesForAutoMLJobRequest
ListCandidatesForAutoMLJobResponse
ListClusterNodesRequest
ListClusterNodesResponse
ListClustersRequest
ListClustersResponse
ListCodeRepositoriesInput
ListCodeRepositoriesOutput
ListCompilationJobsRequest
ListCompilationJobsResponse
ListContextsRequest
ListContextsResponse
ListDataQualityJobDefinitionsRequest
ListDataQualityJobDefinitionsResponse
ListDeviceFleetsRequest
ListDeviceFleetsResponse
ListDevicesRequest
ListDevicesResponse
ListDomainsRequest
ListDomainsResponse
ListEdgeDeploymentPlansRequest
ListEdgeDeploymentPlansResponse
ListEdgePackagingJobsRequest
ListEdgePackagingJobsResponse
ListEndpointConfigsInput
ListEndpointConfigsOutput
ListEndpointsInput
ListEndpointsOutput
ListExperimentsRequest
ListExperimentsResponse
ListFeatureGroupsRequest
ListFeatureGroupsResponse
ListFlowDefinitionsRequest
ListFlowDefinitionsResponse
ListHubContentsRequest
ListHubContentsResponse
ListHubContentVersionsRequest
ListHubContentVersionsResponse
ListHubsRequest
ListHubsResponse
ListHumanTaskUisRequest
ListHumanTaskUisResponse
ListHyperParameterTuningJobsRequest
ListHyperParameterTuningJobsResponse
ListImagesRequest
ListImagesResponse
ListImageVersionsRequest
ListImageVersionsResponse
ListInferenceComponentsInput
ListInferenceComponentsOutput
ListInferenceExperimentsRequest
ListInferenceExperimentsResponse
ListInferenceRecommendationsJobsRequest
ListInferenceRecommendationsJobsResponse
ListInferenceRecommendationsJobStepsRequest
ListInferenceRecommendationsJobStepsResponse
ListLabelingJobsForWorkteamRequest
ListLabelingJobsForWorkteamResponse
ListLabelingJobsRequest
ListLabelingJobsResponse
ListLineageGroupsRequest
ListLineageGroupsResponse
ListMlflowTrackingServersRequest
ListMlflowTrackingServersResponse
ListModelBiasJobDefinitionsRequest
ListModelBiasJobDefinitionsResponse
ListModelCardExportJobsRequest
ListModelCardExportJobsResponse
ListModelCardsRequest
ListModelCardsResponse
ListModelCardVersionsRequest
ListModelCardVersionsResponse
ListModelExplainabilityJobDefinitionsRequest
ListModelExplainabilityJobDefinitionsResponse
ListModelMetadataRequest
ListModelMetadataResponse
ListModelPackageGroupsInput
ListModelPackageGroupsOutput
ListModelPackagesInput
ListModelPackagesOutput
ListModelQualityJobDefinitionsRequest
ListModelQualityJobDefinitionsResponse
ListModelsInput
ListModelsOutput
ListMonitoringAlertHistoryRequest
ListMonitoringAlertHistoryResponse
ListMonitoringAlertsRequest
ListMonitoringAlertsResponse
ListMonitoringExecutionsRequest
ListMonitoringExecutionsResponse
ListMonitoringSchedulesRequest
ListMonitoringSchedulesResponse
ListNotebookInstanceLifecycleConfigsInput
ListNotebookInstanceLifecycleConfigsOutput
ListNotebookInstancesInput
ListNotebookInstancesOutput
ListOptimizationJobsRequest
ListOptimizationJobsResponse
ListPipelineExecutionsRequest
ListPipelineExecutionsResponse
ListPipelineExecutionStepsRequest
ListPipelineExecutionStepsResponse
ListPipelineParametersForExecutionRequest
ListPipelineParametersForExecutionResponse
ListPipelinesRequest
ListPipelinesResponse
ListProcessingJobsRequest
ListProcessingJobsResponse
ListProjectsInput
ListProjectsOutput
ListResourceCatalogsRequest
ListResourceCatalogsResponse
ListSpacesRequest
ListSpacesResponse
ListStageDevicesRequest
ListStageDevicesResponse
ListStudioLifecycleConfigsRequest
ListStudioLifecycleConfigsResponse
ListSubscribedWorkteamsRequest
ListSubscribedWorkteamsResponse
ListTagsInput
ListTagsOutput
ListTrainingJobsForHyperParameterTuningJobRequest
ListTrainingJobsForHyperParameterTuningJobResponse
ListTrainingJobsRequest
ListTrainingJobsResponse
ListTransformJobsRequest
ListTransformJobsResponse
ListTrialComponentsRequest
ListTrialComponentsResponse
ListTrialsRequest
ListTrialsResponse
ListUserProfilesRequest
ListUserProfilesResponse
ListWorkforcesRequest
ListWorkforcesResponse
ListWorkteamsRequest
ListWorkteamsResponse
MemberDefinition

Defines an Amazon Cognito or your own OIDC IdP user group that is part of a work team.

MetadataProperties

Metadata properties of the tracking entity, trial, or trial component.

MetricData

The name, value, and date and time of a metric that was emitted to Amazon CloudWatch.

MetricDatum

Information about the metric for a candidate produced by an AutoML job.

MetricDefinition

Specifies a metric that the training algorithm writes to stderr or stdout. You can view these logs to understand how your training job performs and check for any errors encountered during training. SageMaker hyperparameter tuning captures all defined metrics. Specify one of the defined metrics to use as an objective metric using the TuningObjective parameter in the HyperParameterTrainingJobDefinition API to evaluate job performance during hyperparameter tuning.

MetricSpecification

An object containing information about a metric.

MetricsSource

Details about the metrics source.

Model

The properties of a model as returned by the Search API.

ModelAccessConfig

The access configuration file to control access to the ML model. You can explicitly accept the model end-user license agreement (EULA) within the ModelAccessConfig.

ModelArtifacts

Provides information about the location that is configured for storing model artifacts.

ModelBiasAppSpecification

Docker container image configuration object for the model bias job.

ModelBiasBaselineConfig

The configuration for a baseline model bias job.

ModelBiasJobInput

Inputs for the model bias job.

ModelCard

An Amazon SageMaker Model Card.

ModelCardExportArtifacts

The artifacts of the model card export job.

ModelCardExportJobSummary

The summary of the Amazon SageMaker Model Card export job.

ModelCardExportOutputConfig

Configure the export output details for an Amazon SageMaker Model Card.

ModelCardSecurityConfig

Configure the security settings to protect model card data.

ModelCardSummary

A summary of the model card.

ModelCardVersionSummary

A summary of a specific version of the model card.

ModelClientConfig

Configures the timeout and maximum number of retries for processing a transform job invocation.

ModelCompilationConfig

Settings for the model compilation technique that's applied by a model optimization job.

ModelConfiguration

Defines the model configuration. Includes the specification name and environment parameters.

ModelDashboardEndpoint

An endpoint that hosts a model displayed in the Amazon SageMaker Model Dashboard.

ModelDashboardIndicatorAction

An alert action taken to light up an icon on the Amazon SageMaker Model Dashboard when an alert goes into InAlert status.

ModelDashboardModel

A model displayed in the Amazon SageMaker Model Dashboard.

ModelDashboardModelCard

The model card for a model displayed in the Amazon SageMaker Model Dashboard.

ModelDashboardMonitoringSchedule

A monitoring schedule for a model displayed in the Amazon SageMaker Model Dashboard.

ModelDataQuality

Data quality constraints and statistics for a model.

ModelDataSource

Specifies the location of ML model data to deploy. If specified, you must specify one and only one of the available data sources.

ModelDeployConfig

Specifies how to generate the endpoint name for an automatic one-click Autopilot model deployment.

ModelDeployResult

Provides information about the endpoint of the model deployment.

ModelDigests

Provides information to verify the integrity of stored model artifacts.

ModelExplainabilityAppSpecification

Docker container image configuration object for the model explainability job.

ModelExplainabilityBaselineConfig

The configuration for a baseline model explainability job.

ModelExplainabilityJobInput

Inputs for the model explainability job.

ModelInfrastructureConfig

The configuration for the infrastructure that the model will be deployed to.

ModelInput

Input object for the model.

ModelLatencyThreshold

The model latency threshold.

ModelMetadataFilter

Part of the search expression. You can specify the name and value (domain, task, framework, framework version, task, and model).

ModelMetadataSearchExpression

One or more filters that searches for the specified resource or resources in a search. All resource objects that satisfy the expression's condition are included in the search results

ModelMetadataSummary

A summary of the model metadata.

ModelMetrics

Contains metrics captured from a model.

ModelPackage

A versioned model that can be deployed for SageMaker inference.

ModelPackageContainerDefinition

Describes the Docker container for the model package.

ModelPackageGroup

A group of versioned models in the model registry.

ModelPackageGroupSummary

Summary information about a model group.

ModelPackageModelCard

The model card associated with the model package. Since ModelPackageModelCard is tied to a model package, it is a specific usage of a model card and its schema is simplified compared to the schema of ModelCard. The ModelPackageModelCard schema does not include model_package_details, and model_overview is composed of the model_creator and model_artifact properties. For more information about the model package model card schema, see Model package model card schema. For more information about the model card associated with the model package, see View the Details of a Model Version.

ModelPackageSecurityConfig

An optional Key Management Service key to encrypt, decrypt, and re-encrypt model package information for regulated workloads with highly sensitive data.

ModelPackageStatusDetails

Specifies the validation and image scan statuses of the model package.

ModelPackageStatusItem

Represents the overall status of a model package.

ModelPackageSummary

Provides summary information about a model package.

ModelPackageValidationProfile

Contains data, such as the inputs and targeted instance types that are used in the process of validating the model package.

ModelPackageValidationSpecification

Specifies batch transform jobs that SageMaker runs to validate your model package.

ModelQuality

Model quality statistics and constraints.

ModelQualityAppSpecification

Container image configuration object for the monitoring job.

ModelQualityBaselineConfig

Configuration for monitoring constraints and monitoring statistics. These baseline resources are compared against the results of the current job from the series of jobs scheduled to collect data periodically.

ModelQualityJobInput

The input for the model quality monitoring job. Currently endpoints are supported for input for model quality monitoring jobs.

ModelQuantizationConfig

Settings for the model quantization technique that's applied by a model optimization job.

ModelRegisterSettings

The model registry settings for the SageMaker Canvas application.

ModelStepMetadata

Metadata for Model steps.

ModelSummary

Provides summary information about a model.

ModelVariantConfig

Contains information about the deployment options of a model.

ModelVariantConfigSummary

Summary of the deployment configuration of a model.

MonitoringAlertActions

A list of alert actions taken in response to an alert going into InAlert status.

MonitoringAlertHistorySummary

Provides summary information of an alert's history.

MonitoringAlertSummary

Provides summary information about a monitor alert.

MonitoringAppSpecification

Container image configuration object for the monitoring job.

MonitoringBaselineConfig

Configuration for monitoring constraints and monitoring statistics. These baseline resources are compared against the results of the current job from the series of jobs scheduled to collect data periodically.

MonitoringClusterConfig

Configuration for the cluster used to run model monitoring jobs.

MonitoringConstraintsResource

The constraints resource for a monitoring job.

MonitoringCsvDatasetFormat

Represents the CSV dataset format used when running a monitoring job.

MonitoringDatasetFormat

Represents the dataset format used when running a monitoring job.

MonitoringExecutionSummary

Summary of information about the last monitoring job to run.

MonitoringGroundTruthS3Input

The ground truth labels for the dataset used for the monitoring job.

MonitoringInput

The inputs for a monitoring job.

MonitoringJobDefinition

Defines the monitoring job.

MonitoringJobDefinitionSummary

Summary information about a monitoring job.

MonitoringJsonDatasetFormat

Represents the JSON dataset format used when running a monitoring job.

MonitoringNetworkConfig

The networking configuration for the monitoring job.

MonitoringOutput

The output object for a monitoring job.

MonitoringOutputConfig

The output configuration for monitoring jobs.

MonitoringParquetDatasetFormat

Represents the Parquet dataset format used when running a monitoring job.

MonitoringResources

Identifies the resources to deploy for a monitoring job.

MonitoringS3Output

Information about where and how you want to store the results of a monitoring job.

MonitoringSchedule

A schedule for a model monitoring job. For information about model monitor, see Amazon SageMaker Model Monitor.

MonitoringScheduleConfig

Configures the monitoring schedule and defines the monitoring job.

MonitoringScheduleSummary

Summarizes the monitoring schedule.

MonitoringStatisticsResource

The statistics resource for a monitoring job.

MonitoringStoppingCondition

A time limit for how long the monitoring job is allowed to run before stopping.

MultiModelConfig

Specifies additional configuration for hosting multi-model endpoints.

NeoVpcConfig

The VpcConfig configuration object that specifies the VPC that you want the compilation jobs to connect to. For more information on controlling access to your Amazon S3 buckets used for compilation job, see Give Amazon SageMaker Compilation Jobs Access to Resources in Your Amazon VPC.

NestedFilters

A list of nested Filter objects. A resource must satisfy the conditions of all filters to be included in the results returned from the Search API.

NetworkConfig

Networking options for a job, such as network traffic encryption between containers, whether to allow inbound and outbound network calls to and from containers, and the VPC subnets and security groups to use for VPC-enabled jobs.

NotebookInstanceLifecycleConfigSummary

Provides a summary of a notebook instance lifecycle configuration.

NotebookInstanceLifecycleHook

Contains the notebook instance lifecycle configuration script.

NotebookInstanceSummary

Provides summary information for an SageMaker notebook instance.

NotificationConfiguration

Configures Amazon SNS notifications of available or expiring work items for work teams.

ObjectiveStatusCounters

Specifies the number of training jobs that this hyperparameter tuning job launched, categorized by the status of their objective metric. The objective metric status shows whether the final objective metric for the training job has been evaluated by the tuning job and used in the hyperparameter tuning process.

OfflineStoreConfig

The configuration of an OfflineStore.

OfflineStoreStatus

The status of OfflineStore.

OidcConfig

Use this parameter to configure your OIDC Identity Provider (IdP).

OidcConfigForResponse

Your OIDC IdP workforce configuration.

OidcMemberDefinition

A list of user groups that exist in your OIDC Identity Provider (IdP). One to ten groups can be used to create a single private work team. When you add a user group to the list of Groups, you can add that user group to one or more private work teams. If you add a user group to a private work team, all workers in that user group are added to the work team.

OnlineStoreConfig

Use this to specify the Amazon Web Services Key Management Service (KMS) Key ID, or KMSKeyId, for at rest data encryption. You can turn OnlineStore on or off by specifying the EnableOnlineStore flag at General Assembly.

OnlineStoreConfigUpdate

Updates the feature group online store configuration.

OnlineStoreSecurityConfig

The security configuration for OnlineStore.

OptimizationConfig

Settings for an optimization technique that you apply with a model optimization job.

OptimizationJobModelSource

The location of the source model to optimize with an optimization job.

OptimizationJobModelSourceS3

The Amazon S3 location of a source model to optimize with an optimization job.

OptimizationJobOutputConfig

Details for where to store the optimized model that you create with the optimization job.

OptimizationJobSummary

Summarizes an optimization job by providing some of its key properties.

OptimizationModelAccessConfig

The access configuration settings for the source ML model for an optimization job, where you can accept the model end-user license agreement (EULA).

OptimizationOutput

Output values produced by an optimization job.

OptimizationVpcConfig

A VPC in Amazon VPC that's accessible to an optimized that you create with an optimization job. You can control access to and from your resources by configuring a VPC. For more information, see Give SageMaker Access to Resources in your Amazon VPC.

OutputConfig

Contains information about the output location for the compiled model and the target device that the model runs on. TargetDevice and TargetPlatform are mutually exclusive, so you need to choose one between the two to specify your target device or platform. If you cannot find your device you want to use from the TargetDevice list, use TargetPlatform to describe the platform of your edge device and CompilerOptions if there are specific settings that are required or recommended to use for particular TargetPlatform.

OutputDataConfig

Provides information about how to store model training results (model artifacts).

OutputParameter

An output parameter of a pipeline step.

OwnershipSettings

The collection of ownership settings for a space.

OwnershipSettingsSummary

Specifies summary information about the ownership settings.

ParallelismConfiguration

Configuration that controls the parallelism of the pipeline. By default, the parallelism configuration specified applies to all executions of the pipeline unless overridden.

Parameter

Assigns a value to a named Pipeline parameter.

ParameterRange

Defines the possible values for categorical, continuous, and integer hyperparameters to be used by an algorithm.

ParameterRanges

Specifies ranges of integer, continuous, and categorical hyperparameters that a hyperparameter tuning job searches. The hyperparameter tuning job launches training jobs with hyperparameter values within these ranges to find the combination of values that result in the training job with the best performance as measured by the objective metric of the hyperparameter tuning job.

Parent

The trial that a trial component is associated with and the experiment the trial is part of. A component might not be associated with a trial. A component can be associated with multiple trials.

ParentHyperParameterTuningJob

A previously completed or stopped hyperparameter tuning job to be used as a starting point for a new hyperparameter tuning job.

PendingDeploymentSummary

The summary of an in-progress deployment when an endpoint is creating or updating with a new endpoint configuration.

PendingProductionVariantSummary

The production variant summary for a deployment when an endpoint is creating or updating with the CreateEndpoint or UpdateEndpoint operations. Describes the VariantStatus, weight and capacity for a production variant associated with an endpoint.

Phase

Defines the traffic pattern.

Pipeline

A SageMaker Model Building Pipeline instance.

PipelineDefinitionS3Location

The location of the pipeline definition stored in Amazon S3.

PipelineExecution

An execution of a pipeline.

PipelineExecutionStep

An execution of a step in a pipeline.

PipelineExecutionStepMetadata

Metadata for a step execution.

PipelineExecutionSummary

A pipeline execution summary.

PipelineExperimentConfig

Specifies the names of the experiment and trial created by a pipeline.

PipelineSummary

A summary of a pipeline.

PredefinedMetricSpecification

A specification for a predefined metric.

ProcessingClusterConfig

Configuration for the cluster used to run a processing job.

ProcessingFeatureStoreOutput

Configuration for processing job outputs in Amazon SageMaker Feature Store.

ProcessingInput

The inputs for a processing job. The processing input must specify exactly one of either S3Input or DatasetDefinition types.

ProcessingJob

An Amazon SageMaker processing job that is used to analyze data and evaluate models. For more information, see Process Data and Evaluate Models.

ProcessingJobStepMetadata

Metadata for a processing job step.

ProcessingJobSummary

Summary of information about a processing job.

ProcessingOutput

Describes the results of a processing job. The processing output must specify exactly one of either S3Output or FeatureStoreOutput types.

ProcessingOutputConfig

Configuration for uploading output from the processing container.

ProcessingResources

Identifies the resources, ML compute instances, and ML storage volumes to deploy for a processing job. In distributed training, you specify more than one instance.

ProcessingS3Input

Configuration for downloading input data from Amazon S3 into the processing container.

ProcessingS3Output

Configuration for uploading output data to Amazon S3 from the processing container.

ProcessingStoppingCondition

Configures conditions under which the processing job should be stopped, such as how long the processing job has been running. After the condition is met, the processing job is stopped.

ProductionVariant

Identifies a model that you want to host and the resources chosen to deploy for hosting it. If you are deploying multiple models, tell SageMaker how to distribute traffic among the models by specifying variant weights. For more information on production variants, check Production variants.

ProductionVariantCoreDumpConfig

Specifies configuration for a core dump from the model container when the process crashes.

ProductionVariantManagedInstanceScaling

Settings that control the range in the number of instances that the endpoint provisions as it scales up or down to accommodate traffic.

ProductionVariantRoutingConfig

Settings that control how the endpoint routes incoming traffic to the instances that the endpoint hosts.

ProductionVariantServerlessConfig

Specifies the serverless configuration for an endpoint variant.

ProductionVariantServerlessUpdateConfig

Specifies the serverless update concurrency configuration for an endpoint variant.

ProductionVariantStatus

Describes the status of the production variant.

ProductionVariantSummary

Describes weight and capacities for a production variant associated with an endpoint. If you sent a request to the UpdateEndpointWeightsAndCapacities API and the endpoint status is Updating, you get different desired and current values.

ProfilerConfig

Configuration information for Amazon SageMaker Debugger system monitoring, framework profiling, and storage paths.

ProfilerConfigForUpdate

Configuration information for updating the Amazon SageMaker Debugger profile parameters, system and framework metrics configurations, and storage paths.

ProfilerRuleConfiguration

Configuration information for profiling rules.

ProfilerRuleEvaluationStatus

Information about the status of the rule evaluation.

Project

The properties of a project as returned by the Search API.

ProjectSummary

Information about a project.

PropertyNameQuery

Part of the SuggestionQuery type. Specifies a hint for retrieving property names that begin with the specified text.

PropertyNameSuggestion

A property name returned from a GetSearchSuggestions call that specifies a value in the PropertyNameQuery field.

ProvisioningParameter

A key value pair used when you provision a project as a service catalog product. For information, see What is Amazon Web Services Service Catalog.

PublicWorkforceTaskPrice

Defines the amount of money paid to an Amazon Mechanical Turk worker for each task performed.

PutModelPackageGroupPolicyInput
PutModelPackageGroupPolicyOutput
QualityCheckStepMetadata

Container for the metadata for a Quality check step. For more information, see the topic on QualityCheck step in the Amazon SageMaker Developer Guide.

QueryFilters

A set of filters to narrow the set of lineage entities connected to the StartArn(s) returned by the QueryLineage API action.

QueryLineageRequest
QueryLineageResponse
RealTimeInferenceConfig

The infrastructure configuration for deploying the model to a real-time inference endpoint.

RealTimeInferenceRecommendation

The recommended configuration to use for Real-Time Inference.

RecommendationJobCompiledOutputConfig

Provides information about the output configuration for the compiled model.

RecommendationJobContainerConfig

Specifies mandatory fields for running an Inference Recommender job directly in the CreateInferenceRecommendationsJob API. The fields specified in ContainerConfig override the corresponding fields in the model package. Use ContainerConfig if you want to specify these fields for the recommendation job but don't want to edit them in your model package.

RecommendationJobInferenceBenchmark

The details for a specific benchmark from an Inference Recommender job.

RecommendationJobInputConfig

The input configuration of the recommendation job.

RecommendationJobOutputConfig

Provides information about the output configuration for the compiled model.

RecommendationJobPayloadConfig

The configuration for the payload for a recommendation job.

RecommendationJobResourceLimit

Specifies the maximum number of jobs that can run in parallel and the maximum number of jobs that can run.

RecommendationJobStoppingConditions

Specifies conditions for stopping a job. When a job reaches a stopping condition limit, SageMaker ends the job.

RecommendationJobVpcConfig

Inference Recommender provisions SageMaker endpoints with access to VPC in the inference recommendation job.

RecommendationMetrics

The metrics of recommendations.

RedshiftDatasetDefinition

Configuration for Redshift Dataset Definition input.

RegisterDevicesRequest
RegisterModelStepMetadata

Metadata for a register model job step.

RemoteDebugConfig

Configuration for remote debugging for the CreateTrainingJob API. To learn more about the remote debugging functionality of SageMaker, see Access a training container through Amazon Web Services Systems Manager (SSM) for remote debugging.

RemoteDebugConfigForUpdate

Configuration for remote debugging for the UpdateTrainingJob API. To learn more about the remote debugging functionality of SageMaker, see Access a training container through Amazon Web Services Systems Manager (SSM) for remote debugging.

RenderableTask

Contains input values for a task.

RenderingError

A description of an error that occurred while rendering the template.

RenderUiTemplateRequest
RenderUiTemplateResponse
RepositoryAuthConfig

Specifies an authentication configuration for the private docker registry where your model image is hosted. Specify a value for this property only if you specified Vpc as the value for the RepositoryAccessMode field of the ImageConfig object that you passed to a call to CreateModel and the private Docker registry where the model image is hosted requires authentication.

ResolvedAttributes

The resolved attributes.

ResourceCatalog

A resource catalog containing all of the resources of a specific resource type within a resource owner account. For an example on sharing the Amazon SageMaker Feature Store DefaultFeatureGroupCatalog, see Share Amazon SageMaker Catalog resource type in the Amazon SageMaker Developer Guide.

ResourceConfig

Describes the resources, including machine learning (ML) compute instances and ML storage volumes, to use for model training.

ResourceConfigForUpdate

The ResourceConfig to update KeepAlivePeriodInSeconds. Other fields in the ResourceConfig cannot be updated.

ResourceLimits

Specifies the maximum number of training jobs and parallel training jobs that a hyperparameter tuning job can launch.

ResourceSpec

Specifies the ARN's of a SageMaker image and SageMaker image version, and the instance type that the version runs on.

RetentionPolicy

The retention policy for data stored on an Amazon Elastic File System volume.

RetryPipelineExecutionRequest
RetryPipelineExecutionResponse
RetryStrategy

The retry strategy to use when a training job fails due to an InternalServerError. RetryStrategy is specified as part of the CreateTrainingJob and CreateHyperParameterTuningJob requests. You can add the StoppingCondition parameter to the request to limit the training time for the complete job.

RollingUpdatePolicy

Specifies a rolling deployment strategy for updating a SageMaker endpoint.

RSessionAppSettings

A collection of settings that apply to an RSessionGateway app.

RStudioServerProAppSettings

A collection of settings that configure user interaction with the RStudioServerPro app.

RStudioServerProDomainSettings

A collection of settings that configure the RStudioServerPro Domain-level app.

RStudioServerProDomainSettingsForUpdate

A collection of settings that update the current configuration for the RStudioServerPro Domain-level app.

S3DataSource

Describes the S3 data source.

S3ModelDataSource

Specifies the S3 location of ML model data to deploy.

S3Presign

This object defines the access restrictions to Amazon S3 resources that are included in custom worker task templates using the Liquid filter, grant_read_access.

S3StorageConfig

The Amazon Simple Storage (Amazon S3) location and security configuration for OfflineStore.

ScalingPolicy

An object containing a recommended scaling policy.

ScalingPolicyMetric

The metric for a scaling policy.

ScalingPolicyObjective

An object where you specify the anticipated traffic pattern for an endpoint.

ScheduleConfig

Configuration details about the monitoring schedule.

SearchExpression

A multi-expression that searches for the specified resource or resources in a search. All resource objects that satisfy the expression's condition are included in the search results. You must specify at least one subexpression, filter, or nested filter. A SearchExpression can contain up to twenty elements.

SearchRecord

A single resource returned as part of the Search API response.

SearchRequest
SearchResponse
SecondaryStatusTransition

An array element of SecondaryStatusTransitions for DescribeTrainingJob. It provides additional details about a status that the training job has transitioned through. A training job can be in one of several states, for example, starting, downloading, training, or uploading. Within each state, there are a number of intermediate states. For example, within the starting state, SageMaker could be starting the training job or launching the ML instances. These transitional states are referred to as the job's secondary status.

SelectedStep

A step selected to run in selective execution mode.

SelectiveExecutionConfig

The selective execution configuration applied to the pipeline run.

SelectiveExecutionResult

The ARN from an execution of the current pipeline.

SendPipelineExecutionStepFailureRequest
SendPipelineExecutionStepFailureResponse
SendPipelineExecutionStepSuccessRequest
SendPipelineExecutionStepSuccessResponse
ServiceCatalogProvisionedProductDetails

Details of a provisioned service catalog product. For information about service catalog, see What is Amazon Web Services Service Catalog.

ServiceCatalogProvisioningDetails

Details that you specify to provision a service catalog product. For information about service catalog, see What is Amazon Web Services Service Catalog.

ServiceCatalogProvisioningUpdateDetails

Details that you specify to provision a service catalog product. For information about service catalog, see What is Amazon Web Services Service Catalog.

SessionChainingConfig

Contains information about attribute-based access control (ABAC) for a training job. The session chaining configuration uses Amazon Security Token Service (STS) for your training job to request temporary, limited-privilege credentials to tenants. For more information, see Attribute-based access control (ABAC) for multi-tenancy training.

ShadowModeConfig

The configuration of ShadowMode inference experiment type, which specifies a production variant to take all the inference requests, and a shadow variant to which Amazon SageMaker replicates a percentage of the inference requests. For the shadow variant it also specifies the percentage of requests that Amazon SageMaker replicates.

ShadowModelVariantConfig

The name and sampling percentage of a shadow variant.

SharingSettings

Specifies options for sharing Amazon SageMaker Studio notebooks. These settings are specified as part of DefaultUserSettings when the CreateDomain API is called, and as part of UserSettings when the CreateUserProfile API is called. When SharingSettings is not specified, notebook sharing isn't allowed.

ShuffleConfig

A configuration for a shuffle option for input data in a channel. If you use S3Prefix for S3DataType, the results of the S3 key prefix matches are shuffled. If you use ManifestFile, the order of the S3 object references in the ManifestFile is shuffled. If you use AugmentedManifestFile, the order of the JSON lines in the AugmentedManifestFile is shuffled. The shuffling order is determined using the Seed value.

SourceAlgorithm

Specifies an algorithm that was used to create the model package. The algorithm must be either an algorithm resource in your SageMaker account or an algorithm in Amazon Web Services Marketplace that you are subscribed to.

SourceAlgorithmSpecification

A list of algorithms that were used to create a model package.

SourceIpConfig

A list of IP address ranges (CIDRs). Used to create an allow list of IP addresses for a private workforce. Workers will only be able to log in to their worker portal from an IP address within this range. By default, a workforce isn't restricted to specific IP addresses.

SpaceAppLifecycleManagement

Settings that are used to configure and manage the lifecycle of Amazon SageMaker Studio applications in a space.

SpaceCodeEditorAppSettings

The application settings for a Code Editor space.

SpaceDetails

The space's details.

SpaceIdleSettings

Settings related to idle shutdown of Studio applications in a space.

SpaceJupyterLabAppSettings

The settings for the JupyterLab application within a space.

SpaceSettings

A collection of space settings.

SpaceSettingsSummary

Specifies summary information about the space settings.

SpaceSharingSettings

A collection of space sharing settings.

SpaceSharingSettingsSummary

Specifies summary information about the space sharing settings.

SpaceStorageSettings

The storage settings for a space.

Stairs

Defines the stairs traffic pattern for an Inference Recommender load test. This pattern type consists of multiple steps where the number of users increases at each step.

StartEdgeDeploymentStageRequest
StartInferenceExperimentRequest
StartInferenceExperimentResponse
StartMlflowTrackingServerRequest
StartMlflowTrackingServerResponse
StartMonitoringScheduleRequest
StartNotebookInstanceInput
StartPipelineExecutionRequest
StartPipelineExecutionResponse
StopAutoMLJobRequest
StopCompilationJobRequest
StopEdgeDeploymentStageRequest
StopEdgePackagingJobRequest
StopHyperParameterTuningJobRequest
StopInferenceExperimentRequest
StopInferenceExperimentResponse
StopInferenceRecommendationsJobRequest
StopLabelingJobRequest
StopMlflowTrackingServerRequest
StopMlflowTrackingServerResponse
StopMonitoringScheduleRequest
StopNotebookInstanceInput
StopOptimizationJobRequest
StoppingCondition

Specifies a limit to how long a job can run. When the job reaches the time limit, SageMaker ends the job. Use this API to cap costs.

StopPipelineExecutionRequest
StopPipelineExecutionResponse
StopProcessingJobRequest
StopTrainingJobRequest
StopTransformJobRequest
StudioLifecycleConfigDetails

Details of the Amazon SageMaker Studio Lifecycle Configuration.

StudioWebPortalSettings

Studio settings. If these settings are applied on a user level, they take priority over the settings applied on a domain level.

SubscribedWorkteam

Describes a work team of a vendor that does the labelling job.

SuggestionQuery

Specified in the GetSearchSuggestions request. Limits the property names that are included in the response.

TabularJobConfig

The collection of settings used by an AutoML job V2 for the tabular problem type.

TabularResolvedAttributes

The resolved attributes specific to the tabular problem type.

Tag

A tag object that consists of a key and an optional value, used to manage metadata for SageMaker Amazon Web Services resources.

TargetPlatform

Contains information about a target platform that you want your model to run on, such as OS, architecture, and accelerators. It is an alternative of TargetDevice.

TargetTrackingScalingPolicyConfiguration

A target tracking scaling policy. Includes support for predefined or customized metrics.

TensorBoardAppSettings

The TensorBoard app settings.

TensorBoardOutputConfig

Configuration of storage locations for the Amazon SageMaker Debugger TensorBoard output data.

TextClassificationJobConfig

The collection of settings used by an AutoML job V2 for the text classification problem type.

TextGenerationJobConfig

The collection of settings used by an AutoML job V2 for the text generation problem type.

TextGenerationResolvedAttributes

The resolved attributes specific to the text generation problem type.

ThroughputConfig

Used to set feature group throughput configuration. There are two modes: ON_DEMAND and PROVISIONED. With on-demand mode, you are charged for data reads and writes that your application performs on your feature group. You do not need to specify read and write throughput because Feature Store accommodates your workloads as they ramp up and down. You can switch a feature group to on-demand only once in a 24 hour period. With provisioned throughput mode, you specify the read and write capacity per second that you expect your application to require, and you are billed based on those limits. Exceeding provisioned throughput will result in your requests being throttled.

ThroughputConfigDescription

Active throughput configuration of the feature group. There are two modes: ON_DEMAND and PROVISIONED. With on-demand mode, you are charged for data reads and writes that your application performs on your feature group. You do not need to specify read and write throughput because Feature Store accommodates your workloads as they ramp up and down. You can switch a feature group to on-demand only once in a 24 hour period. With provisioned throughput mode, you specify the read and write capacity per second that you expect your application to require, and you are billed based on those limits. Exceeding provisioned throughput will result in your requests being throttled.

ThroughputConfigUpdate

The new throughput configuration for the feature group. You can switch between on-demand and provisioned modes or update the read / write capacity of provisioned feature groups. You can switch a feature group to on-demand only once in a 24 hour period.

TimeSeriesConfig

The collection of components that defines the time-series.

TimeSeriesForecastingJobConfig

The collection of settings used by an AutoML job V2 for the time-series forecasting problem type.

TimeSeriesForecastingSettings

Time series forecast settings for the SageMaker Canvas application.

TimeSeriesTransformations

Transformations allowed on the dataset. Supported transformations are Filling and Aggregation. Filling specifies how to add values to missing values in the dataset. Aggregation defines how to aggregate data that does not align with forecast frequency.

TrackingServerSummary

The summary of the tracking server to list.

TrafficPattern

Defines the traffic pattern of the load test.

TrafficRoutingConfig

Defines the traffic routing strategy during an endpoint deployment to shift traffic from the old fleet to the new fleet.

TrainingImageConfig

The configuration to use an image from a private Docker registry for a training job.

TrainingJob

Contains information about a training job.

TrainingJobDefinition

Defines the input needed to run a training job using the algorithm.

TrainingJobStatusCounters

The numbers of training jobs launched by a hyperparameter tuning job, categorized by status.

TrainingJobStepMetadata

Metadata for a training job step.

TrainingJobSummary

Provides summary information about a training job.

TrainingRepositoryAuthConfig

An object containing authentication information for a private Docker registry.

TrainingSpecification

Defines how the algorithm is used for a training job.

TransformDataSource

Describes the location of the channel data.

TransformInput

Describes the input source of a transform job and the way the transform job consumes it.

TransformJob

A batch transform job. For information about SageMaker batch transform, see Use Batch Transform.

TransformJobDefinition

Defines the input needed to run a transform job using the inference specification specified in the algorithm.

TransformJobStepMetadata

Metadata for a transform job step.

TransformJobSummary

Provides a summary of a transform job. Multiple TransformJobSummary objects are returned as a list after in response to a ListTransformJobs call.

TransformOutput

Describes the results of a transform job.

TransformResources

Describes the resources, including ML instance types and ML instance count, to use for transform job.

TransformS3DataSource

Describes the S3 data source.

Trial

The properties of a trial as returned by the Search API.

TrialComponent

The properties of a trial component as returned by the Search API.

TrialComponentArtifact

Represents an input or output artifact of a trial component. You specify TrialComponentArtifact as part of the InputArtifacts and OutputArtifacts parameters in the CreateTrialComponent request.

TrialComponentMetricSummary

A summary of the metrics of a trial component.

TrialComponentParameterValue

The value of a hyperparameter. Only one of NumberValue or StringValue can be specified.

TrialComponentSimpleSummary

A short summary of a trial component.

TrialComponentSource

The Amazon Resource Name (ARN) and job type of the source of a trial component.

TrialComponentSourceDetail

Detailed information about the source of a trial component. Either ProcessingJob or TrainingJob is returned.

TrialComponentStatus

The status of the trial component.

TrialComponentSummary

A summary of the properties of a trial component. To get all the properties, call the DescribeTrialComponent API and provide the TrialComponentName.

TrialSource

The source of the trial.

TrialSummary

A summary of the properties of a trial. To get the complete set of properties, call the DescribeTrial API and provide the TrialName.

TtlDuration

Time to live duration, where the record is hard deleted after the expiration time is reached; ExpiresAt = EventTime + TtlDuration. For information on HardDelete, see the DeleteRecord API in the Amazon SageMaker API Reference guide.

TuningJobCompletionCriteria

The job completion criteria.

TuningJobStepMetaData

Metadata for a tuning step.

UiConfig

Provided configuration information for the worker UI for a labeling job. Provide either HumanTaskUiArn or UiTemplateS3Uri.

UiTemplate

The Liquid template for the worker user interface.

UiTemplateInfo

Container for user interface template information.

UpdateActionRequest
UpdateActionResponse
UpdateAppImageConfigRequest
UpdateAppImageConfigResponse
UpdateArtifactRequest
UpdateArtifactResponse
UpdateClusterRequest
UpdateClusterResponse
UpdateClusterSoftwareRequest
UpdateClusterSoftwareResponse
UpdateCodeRepositoryInput
UpdateCodeRepositoryOutput
UpdateContextRequest
UpdateContextResponse
UpdateDeviceFleetRequest
UpdateDevicesRequest
UpdateDomainRequest
UpdateDomainResponse
UpdateEndpointInput
UpdateEndpointOutput
UpdateEndpointWeightsAndCapacitiesInput
UpdateEndpointWeightsAndCapacitiesOutput
UpdateExperimentRequest
UpdateExperimentResponse
UpdateFeatureGroupRequest
UpdateFeatureGroupResponse
UpdateFeatureMetadataRequest
UpdateHubRequest
UpdateHubResponse
UpdateImageRequest
UpdateImageResponse
UpdateImageVersionRequest
UpdateImageVersionResponse
UpdateInferenceComponentInput
UpdateInferenceComponentOutput
UpdateInferenceComponentRuntimeConfigInput
UpdateInferenceComponentRuntimeConfigOutput
UpdateInferenceExperimentRequest
UpdateInferenceExperimentResponse
UpdateMlflowTrackingServerRequest
UpdateMlflowTrackingServerResponse
UpdateModelCardRequest
UpdateModelCardResponse
UpdateModelPackageInput
UpdateModelPackageOutput
UpdateMonitoringAlertRequest
UpdateMonitoringAlertResponse
UpdateMonitoringScheduleRequest
UpdateMonitoringScheduleResponse
UpdateNotebookInstanceInput
UpdateNotebookInstanceLifecycleConfigInput
UpdatePipelineExecutionRequest
UpdatePipelineExecutionResponse
UpdatePipelineRequest
UpdatePipelineResponse
UpdateProjectInput
UpdateProjectOutput
UpdateSpaceRequest
UpdateSpaceResponse
UpdateTrainingJobRequest
UpdateTrainingJobResponse
UpdateTrialComponentRequest
UpdateTrialComponentResponse
UpdateTrialRequest
UpdateTrialResponse
UpdateUserProfileRequest
UpdateUserProfileResponse
UpdateWorkforceRequest
UpdateWorkforceResponse
UpdateWorkteamRequest
UpdateWorkteamResponse
USD

Represents an amount of money in United States dollars.

UserContext

Information about the user who created or modified an experiment, trial, trial component, lineage group, project, or model card.

UserProfileDetails

The user profile details.

UserSettings

A collection of settings that apply to users in a domain. These settings are specified when the CreateUserProfile API is called, and as DefaultUserSettings when the CreateDomain API is called.

VariantProperty

Specifies a production variant property type for an Endpoint.

VectorConfig

Configuration for your vector collection type.

Vertex

A lineage entity connected to the starting entity(ies).

VisibilityConditions

The list of key-value pairs used to filter your search results. If a search result contains a key from your list, it is included in the final search response if the value associated with the key in the result matches the value you specified. If the value doesn't match, the result is excluded from the search response. Any resources that don't have a key from the list that you've provided will also be included in the search response.

VpcConfig

Specifies an Amazon Virtual Private Cloud (VPC) that your SageMaker jobs, hosted models, and compute resources have access to. You can control access to and from your resources by configuring a VPC. For more information, see Give SageMaker Access to Resources in your Amazon VPC.

WarmPoolStatus

Status and billing information about the warm pool.

WorkerAccessConfiguration

Use this optional parameter to constrain access to an Amazon S3 resource based on the IP address using supported IAM global condition keys. The Amazon S3 resource is accessed in the worker portal using a Amazon S3 presigned URL.

Workforce

A single private workforce, which is automatically created when you create your first private work team. You can create one private work force in each Amazon Web Services Region. By default, any workforce-related API operation used in a specific region will apply to the workforce created in that region. To learn how to create a private workforce, see Create a Private Workforce.

WorkforceVpcConfigRequest

The VPC object you use to create or update a workforce.

WorkforceVpcConfigResponse

A VpcConfig object that specifies the VPC that you want your workforce to connect to.

WorkspaceSettings

The workspace settings for the SageMaker Canvas application.

Workteam

Provides details about a labeling work team.

§Type Aliases

ActionStatus
AdditionalS3DataSourceDataType
AggregationTransformationValue
AlgorithmSortBy
AlgorithmStatus
AppImageConfigSortKey
AppInstanceType
AppNetworkAccessType
AppSecurityGroupManagement
AppSortKey
AppStatus
AppType
ArtifactSourceIdType
AssemblyType
AssociationEdgeType
AsyncNotificationTopicTypes
AthenaResultCompressionType

The compression used for Athena query results.

AthenaResultFormat

The data storage format for Athena query results.

AuthMode
AutoMLAlgorithm
AutoMLChannelType
AutoMLJobObjectiveType
AutoMLJobSecondaryStatus
AutoMLJobStatus
AutoMLMetricEnum
AutoMLMetricExtendedEnum
AutoMLMode
AutoMLProblemTypeConfigName
AutoMLProcessingUnit
AutoMLS3DataType
AutoMLSortBy
AutoMLSortOrder
AutoMountHomeEFS
AutotuneMode
AwsManagedHumanLoopRequestSource
BatchStrategy
BooleanOperator
CandidateSortBy
CandidateStatus
CandidateStepType
CapacitySizeType
CaptureMode
CaptureStatus
ClarifyFeatureType
ClarifyTextGranularity
ClarifyTextLanguage
ClusterInstanceStatus
ClusterInstanceType
ClusterSortBy
ClusterStatus
CodeRepositorySortBy
CodeRepositorySortOrder
CollectionType
CompilationJobStatus
CompleteOnConvergence
CompressionType
ConditionOutcome
ContainerMode
ContentClassifier
CrossAccountFilterOption
DataDistributionType
DataSourceName
DetailedAlgorithmStatus
DetailedModelPackageStatus
DeviceDeploymentStatus
DeviceSubsetType
DirectInternetAccess
Direction
DomainStatus
EdgePackagingJobStatus
EdgePresetDeploymentStatus
EdgePresetDeploymentType
EnabledOrDisabled
EndpointConfigSortKey
EndpointSortKey
EndpointStatus
ExecutionRoleIdentityConfig
ExecutionStatus
FailureHandlingPolicy
FeatureGroupSortBy
FeatureGroupSortOrder
FeatureGroupStatus
FeatureStatus
FeatureType
FileSystemAccessMode
FileSystemType
FillingType
FlatInvocations
FlowDefinitionStatus
Framework
HubContentSortBy
HubContentStatus
HubContentSupportStatus
HubContentType
HubSortBy
HubStatus
HumanTaskUiStatus
HyperParameterScalingType
HyperParameterTuningAllocationStrategy
HyperParameterTuningJobObjectiveType
HyperParameterTuningJobSortByOptions
HyperParameterTuningJobStatus
HyperParameterTuningJobStrategyType

The strategy hyperparameter tuning uses to find the best combination of hyperparameters for your model.

HyperParameterTuningJobWarmStartType
ImageSortBy
ImageSortOrder
ImageStatus
ImageVersionSortBy
ImageVersionSortOrder
ImageVersionStatus
InferenceComponentSortKey
InferenceComponentStatus
InferenceExecutionMode
InferenceExperimentStatus
InferenceExperimentStopDesiredState
InferenceExperimentType
InputMode
InstanceType
IsTrackingServerActive
JobType
JoinSource
LabelingJobStatus
LastUpdateStatusValue
LifecycleManagement
LineageType
ListCompilationJobsSortBy
ListDeviceFleetsSortBy
ListEdgeDeploymentPlansSortBy
ListEdgePackagingJobsSortBy
ListInferenceRecommendationsJobsSortBy
ListLabelingJobsForWorkteamSortByOptions
ListOptimizationJobsSortBy
ListWorkforcesSortByOptions
ListWorkteamsSortByOptions
ManagedInstanceScalingStatus
MetricSetSource
MlTools
ModelApprovalStatus
ModelCacheSetting
ModelCardExportJobSortBy

Attribute by which to sort returned export jobs.

ModelCardExportJobSortOrder
ModelCardExportJobStatus
ModelCardProcessingStatus
ModelCardSortBy
ModelCardSortOrder
ModelCardStatus
ModelCardVersionSortBy
ModelCompressionType
ModelInfrastructureType
ModelMetadataFilterType
ModelPackageGroupSortBy
ModelPackageGroupStatus
ModelPackageSortBy
ModelPackageStatus
ModelPackageType
ModelSortKey
ModelVariantAction
ModelVariantStatus
MonitoringAlertHistorySortKey
MonitoringAlertStatus
MonitoringExecutionSortKey
MonitoringJobDefinitionSortKey
MonitoringProblemType
MonitoringScheduleSortKey
MonitoringType
NotebookInstanceAcceleratorType
NotebookInstanceLifecycleConfigSortKey
NotebookInstanceLifecycleConfigSortOrder
NotebookInstanceSortKey
NotebookInstanceSortOrder
NotebookInstanceStatus
NotebookOutputOption
ObjectiveStatus
OfflineStoreStatusValue
Operator
OptimizationJobDeploymentInstanceType
OptimizationJobStatus
OrderKey
OutputCompressionType
ParameterType
PipelineExecutionStatus
PipelineStatus
ProblemType
ProcessingInstanceType
ProcessingJobStatus
ProcessingS3CompressionType
ProcessingS3DataDistributionType
ProcessingS3DataType
ProcessingS3InputMode
ProcessingS3UploadMode
Processor
ProductionVariantAcceleratorType
ProductionVariantInferenceAmiVersion
ProductionVariantInstanceType
ProfilingStatus
ProjectSortBy
ProjectSortOrder
ProjectStatus
RecommendationJobStatus
RecommendationJobSupportedEndpointType
RecommendationJobType
RecommendationStatus
RecommendationStepType
RecordWrapper
RedshiftResultCompressionType

The compression used for Redshift query results.

RedshiftResultFormat

The data storage format for Redshift query results.

RepositoryAccessMode
ResourceCatalogSortBy
ResourceCatalogSortOrder
ResourceType
RetentionType
RootAccess
RoutingStrategy
RStudioServerProAccessStatus
RStudioServerProUserGroup
RuleEvaluationStatus
S3DataDistribution
S3DataType
S3ModelDataType
SagemakerServicecatalogStatus
ScheduleStatus
SearchSortOrder
SecondaryStatus
SharingType
SkipModelValidation
SortActionsBy
SortArtifactsBy
SortAssociationsBy
SortBy
SortContextsBy
SortExperimentsBy
SortInferenceExperimentsBy
SortLineageGroupsBy
SortOrder
SortPipelineExecutionsBy
SortPipelinesBy
SortTrackingServerBy
SortTrialComponentsBy
SortTrialsBy
SpaceSortKey
SpaceStatus
SplitType
StageStatus
Statistic
StepStatus
StorageType
StudioLifecycleConfigAppType
StudioLifecycleConfigSortKey
StudioWebPortal
TableFormat
TargetDevice
TargetPlatformAccelerator
TargetPlatformArch
TargetPlatformOs
ThroughputMode
TrackingServerSize
TrackingServerStatus
TrafficRoutingConfigType
TrafficType
TrainingInputMode

The training input mode that the algorithm supports. For more information about input modes, see Algorithms.

TrainingInstanceType
TrainingJobEarlyStoppingType
TrainingJobSortByOptions
TrainingJobStatus
TrainingRepositoryAccessMode
TransformInstanceType
TransformJobStatus
TrialComponentPrimaryStatus
TtlDurationUnit
UserProfileSortKey
UserProfileStatus
VariantPropertyType
VariantStatus
VendorGuidance
WarmPoolResourceStatus
WorkforceStatus