#[non_exhaustive]
pub struct ModelPackage {
Show 26 fields pub model_package_name: Option<String>, pub model_package_group_name: Option<String>, pub model_package_version: Option<i32>, pub model_package_arn: Option<String>, pub model_package_description: Option<String>, pub creation_time: Option<DateTime>, pub inference_specification: Option<InferenceSpecification>, pub source_algorithm_specification: Option<SourceAlgorithmSpecification>, pub validation_specification: Option<ModelPackageValidationSpecification>, pub model_package_status: Option<ModelPackageStatus>, pub model_package_status_details: Option<ModelPackageStatusDetails>, pub certify_for_marketplace: bool, pub model_approval_status: Option<ModelApprovalStatus>, pub created_by: Option<UserContext>, pub metadata_properties: Option<MetadataProperties>, pub model_metrics: Option<ModelMetrics>, pub last_modified_time: Option<DateTime>, pub last_modified_by: Option<UserContext>, pub approval_description: Option<String>, pub domain: Option<String>, pub task: Option<String>, pub sample_payload_url: Option<String>, pub additional_inference_specifications: Option<Vec<AdditionalInferenceSpecificationDefinition>>, pub tags: Option<Vec<Tag>>, pub customer_metadata_properties: Option<HashMap<String, String>>, pub drift_check_baselines: Option<DriftCheckBaselines>,
}
Expand description

A versioned model that can be deployed for SageMaker inference.

Fields (Non-exhaustive)

This struct is marked as non-exhaustive
Non-exhaustive structs could have additional fields added in future. Therefore, non-exhaustive structs cannot be constructed in external crates using the traditional Struct { .. } syntax; cannot be matched against without a wildcard ..; and struct update syntax will not work.
model_package_name: Option<String>

The name of the model.

model_package_group_name: Option<String>

The model group to which the model belongs.

model_package_version: Option<i32>

The version number of a versioned model.

model_package_arn: Option<String>

The Amazon Resource Name (ARN) of the model package.

model_package_description: Option<String>

The description of the model package.

creation_time: Option<DateTime>

The time that the model package was created.

inference_specification: Option<InferenceSpecification>

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

source_algorithm_specification: Option<SourceAlgorithmSpecification>

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

validation_specification: Option<ModelPackageValidationSpecification>

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

model_package_status: Option<ModelPackageStatus>

The status of the model package. This can be one of the following values.

  • PENDING - The model package is pending being created.

  • IN_PROGRESS - The model package is in the process of being created.

  • COMPLETED - The model package was successfully created.

  • FAILED - The model package failed.

  • DELETING - The model package is in the process of being deleted.

model_package_status_details: Option<ModelPackageStatusDetails>

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

certify_for_marketplace: bool

Whether the model package is to be certified to be listed on Amazon Web Services Marketplace. For information about listing model packages on Amazon Web Services Marketplace, see List Your Algorithm or Model Package on Amazon Web Services Marketplace.

model_approval_status: Option<ModelApprovalStatus>

The approval status of the model. This can be one of the following values.

  • APPROVED - The model is approved

  • REJECTED - The model is rejected.

  • PENDING_MANUAL_APPROVAL - The model is waiting for manual approval.

created_by: Option<UserContext>

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

metadata_properties: Option<MetadataProperties>

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

model_metrics: Option<ModelMetrics>

Metrics for the model.

last_modified_time: Option<DateTime>

The last time the model package was modified.

last_modified_by: Option<UserContext>

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

approval_description: Option<String>

A description provided when the model approval is set.

domain: Option<String>

The machine learning domain of your model package and its components. Common machine learning domains include computer vision and natural language processing.

task: Option<String>

The machine learning task your model package accomplishes. Common machine learning tasks include object detection and image classification.

sample_payload_url: Option<String>

The Amazon Simple Storage Service path where the sample payload are stored. This path must point to a single gzip compressed tar archive (.tar.gz suffix).

additional_inference_specifications: Option<Vec<AdditionalInferenceSpecificationDefinition>>

An array of additional Inference Specification objects.

tags: Option<Vec<Tag>>

A list of the tags associated with the model package. For more information, see Tagging Amazon Web Services resources in the Amazon Web Services General Reference Guide.

customer_metadata_properties: Option<HashMap<String, String>>

The metadata properties for the model package.

drift_check_baselines: Option<DriftCheckBaselines>

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

Implementations

The name of the model.

The model group to which the model belongs.

The version number of a versioned model.

The Amazon Resource Name (ARN) of the model package.

The description of the model package.

The time that the model package was created.

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

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

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

The status of the model package. This can be one of the following values.

  • PENDING - The model package is pending being created.

  • IN_PROGRESS - The model package is in the process of being created.

  • COMPLETED - The model package was successfully created.

  • FAILED - The model package failed.

  • DELETING - The model package is in the process of being deleted.

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

Whether the model package is to be certified to be listed on Amazon Web Services Marketplace. For information about listing model packages on Amazon Web Services Marketplace, see List Your Algorithm or Model Package on Amazon Web Services Marketplace.

The approval status of the model. This can be one of the following values.

  • APPROVED - The model is approved

  • REJECTED - The model is rejected.

  • PENDING_MANUAL_APPROVAL - The model is waiting for manual approval.

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

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

Metrics for the model.

The last time the model package was modified.

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

A description provided when the model approval is set.

The machine learning domain of your model package and its components. Common machine learning domains include computer vision and natural language processing.

The machine learning task your model package accomplishes. Common machine learning tasks include object detection and image classification.

The Amazon Simple Storage Service path where the sample payload are stored. This path must point to a single gzip compressed tar archive (.tar.gz suffix).

An array of additional Inference Specification objects.

A list of the tags associated with the model package. For more information, see Tagging Amazon Web Services resources in the Amazon Web Services General Reference Guide.

The metadata properties for the model package.

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

Creates a new builder-style object to manufacture ModelPackage

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