Google Cloud Ai Platform V1 Client - Class Model (0.16.0)

Reference documentation and code samples for the Google Cloud Ai Platform V1 Client class Model.

A trained machine learning Model.

Generated from protobuf message google.cloud.aiplatform.v1.Model

Methods

__construct

Constructor.

Parameters
Name
Description
data
array

Optional. Data for populating the Message object.

↳ name
string

The resource name of the Model.

↳ version_id
string

Output only. Immutable. The version ID of the model. A new version is committed when a new model version is uploaded or trained under an existing model id. It is an auto-incrementing decimal number in string representation.

↳ version_aliases
array

User provided version aliases so that a model version can be referenced via alias (i.e. projects/{project}/locations/{location}/models/{model_id}@{version_alias} instead of auto-generated version id (i.e. projects/{project}/locations/{location}/models/{model_id}@{version_id}) . The format is [a-z][a-zA-Z0-9-]{0,126}[a-z0-9] to distinguish from version_id. A default version alias will be created for the first version of the model, and there must be exactly one default version alias for a model.

↳ version_create_time
Google\Protobuf\Timestamp

Output only. Timestamp when this version was created.

↳ version_update_time
Google\Protobuf\Timestamp

Output only. Timestamp when this version was most recently updated.

↳ display_name
string

Required. The display name of the Model. The name can be up to 128 characters long and can consist of any UTF-8 characters.

↳ description
string

The description of the Model.

↳ version_description
string

The description of this version.

↳ predict_schemata
Google\Cloud\AIPlatform\V1\PredictSchemata

The schemata that describe formats of the Model's predictions and explanations as given and returned via PredictionService.Predict and PredictionService.Explain .

↳ metadata_schema_uri
string

Immutable. Points to a YAML file stored on Google Cloud Storage describing additional information about the Model, that is specific to it. Unset if the Model does not have any additional information. The schema is defined as an OpenAPI 3.0.2 Schema Object . AutoML Models always have this field populated by Vertex AI, if no additional metadata is needed, this field is set to an empty string. Note: The URI given on output will be immutable and probably different, including the URI scheme, than the one given on input. The output URI will point to a location where the user only has a read access.

↳ metadata
Google\Protobuf\Value

Immutable. An additional information about the Model; the schema of the metadata can be found in metadata_schema . Unset if the Model does not have any additional information.

↳ supported_export_formats
array< Google\Cloud\AIPlatform\V1\Model\ExportFormat >

Output only. The formats in which this Model may be exported. If empty, this Model is not available for export.

↳ training_pipeline
string

Output only. The resource name of the TrainingPipeline that uploaded this Model, if any.

↳ container_spec
Google\Cloud\AIPlatform\V1\ModelContainerSpec

Input only. The specification of the container that is to be used when deploying this Model. The specification is ingested upon ModelService.UploadModel , and all binaries it contains are copied and stored internally by Vertex AI. Not present for AutoML Models or Large Models.

↳ artifact_uri
string

Immutable. The path to the directory containing the Model artifact and any of its supporting files. Not present for AutoML Models or Large Models.

↳ supported_deployment_resources_types
array

Output only. When this Model is deployed, its prediction resources are described by the prediction_resources field of the Endpoint.deployed_models object. Because not all Models support all resource configuration types, the configuration types this Model supports are listed here. If no configuration types are listed, the Model cannot be deployed to an Endpoint and does not support online predictions ( PredictionService.Predict or PredictionService.Explain ). Such a Model can serve predictions by using a BatchPredictionJob , if it has at least one entry each in supported_input_storage_formats and supported_output_storage_formats .

↳ supported_input_storage_formats
array

Output only. The formats this Model supports in BatchPredictionJob.input_config . If PredictSchemata.instance_schema_uri exists, the instances should be given as per that schema. The possible formats are: * jsonl The JSON Lines format, where each instance is a single line. Uses GcsSource . * csv The CSV format, where each instance is a single comma-separated line. The first line in the file is the header, containing comma-separated field names. Uses GcsSource . * tf-record The TFRecord format, where each instance is a single record in tfrecord syntax. Uses GcsSource . * tf-record-gzip Similar to tf-record , but the file is gzipped. Uses GcsSource . * bigquery Each instance is a single row in BigQuery. Uses BigQuerySource . * file-list Each line of the file is the location of an instance to process, uses gcs_source field of the InputConfig object. If this Model doesn't support any of these formats it means it cannot be used with a BatchPredictionJob . However, if it has supported_deployment_resources_types , it could serve online predictions by using PredictionService.Predict or PredictionService.Explain .

↳ supported_output_storage_formats
array

Output only. The formats this Model supports in BatchPredictionJob.output_config . If both PredictSchemata.instance_schema_uri and PredictSchemata.prediction_schema_uri exist, the predictions are returned together with their instances. In other words, the prediction has the original instance data first, followed by the actual prediction content (as per the schema). The possible formats are: * jsonl The JSON Lines format, where each prediction is a single line. Uses GcsDestination . * csv The CSV format, where each prediction is a single comma-separated line. The first line in the file is the header, containing comma-separated field names. Uses GcsDestination . * bigquery Each prediction is a single row in a BigQuery table, uses BigQueryDestination . If this Model doesn't support any of these formats it means it cannot be used with a BatchPredictionJob . However, if it has supported_deployment_resources_types , it could serve online predictions by using PredictionService.Predict or PredictionService.Explain .

↳ create_time
Google\Protobuf\Timestamp

Output only. Timestamp when this Model was uploaded into Vertex AI.

↳ update_time
Google\Protobuf\Timestamp

Output only. Timestamp when this Model was most recently updated.

↳ deployed_models
array< Google\Cloud\AIPlatform\V1\DeployedModelRef >

Output only. The pointers to DeployedModels created from this Model. Note that Model could have been deployed to Endpoints in different Locations.

↳ explanation_spec
Google\Cloud\AIPlatform\V1\ExplanationSpec

The default explanation specification for this Model. The Model can be used for requesting explanation after being deployed if it is populated. The Model can be used for batch explanation if it is populated. All fields of the explanation_spec can be overridden by explanation_spec of DeployModelRequest.deployed_model , or explanation_spec of BatchPredictionJob . If the default explanation specification is not set for this Model, this Model can still be used for requesting explanation by setting explanation_spec of DeployModelRequest.deployed_model and for batch explanation by setting explanation_spec of BatchPredictionJob .

↳ etag
string

Used to perform consistent read-modify-write updates. If not set, a blind "overwrite" update happens.

↳ labels
array| Google\Protobuf\Internal\MapField

The labels with user-defined metadata to organize your Models. Label keys and values can be no longer than 64 characters (Unicode codepoints), can only contain lowercase letters, numeric characters, underscores and dashes. International characters are allowed. See https://goo.gl/xmQnxf for more information and examples of labels.

↳ encryption_spec
Google\Cloud\AIPlatform\V1\EncryptionSpec

Customer-managed encryption key spec for a Model. If set, this Model and all sub-resources of this Model will be secured by this key.

↳ model_source_info
Google\Cloud\AIPlatform\V1\ModelSourceInfo

Output only. Source of a model. It can either be automl training pipeline, custom training pipeline, BigQuery ML, or existing Vertex AI Model.

↳ original_model_info
Google\Cloud\AIPlatform\V1\Model\OriginalModelInfo

Output only. If this Model is a copy of another Model, this contains info about the original.

↳ metadata_artifact
string

Output only. The resource name of the Artifact that was created in MetadataStore when creating the Model. The Artifact resource name pattern is projects/{project}/locations/{location}/metadataStores/{metadata_store}/artifacts/{artifact} .

getName

The resource name of the Model.

Returns
Type
Description
string

setName

The resource name of the Model.

Parameter
Name
Description
var
string
Returns
Type
Description
$this

getVersionId

Output only. Immutable. The version ID of the model.

A new version is committed when a new model version is uploaded or trained under an existing model id. It is an auto-incrementing decimal number in string representation.

Returns
Type
Description
string

setVersionId

Output only. Immutable. The version ID of the model.

A new version is committed when a new model version is uploaded or trained under an existing model id. It is an auto-incrementing decimal number in string representation.

Parameter
Name
Description
var
string
Returns
Type
Description
$this

getVersionAliases

User provided version aliases so that a model version can be referenced via alias (i.e.

projects/{project}/locations/{location}/models/{model_id}@{version_alias} instead of auto-generated version id (i.e. projects/{project}/locations/{location}/models/{model_id}@{version_id}) . The format is [a-z][a-zA-Z0-9-]{0,126}[a-z0-9] to distinguish from version_id. A default version alias will be created for the first version of the model, and there must be exactly one default version alias for a model.

Returns
Type
Description

setVersionAliases

User provided version aliases so that a model version can be referenced via alias (i.e.

projects/{project}/locations/{location}/models/{model_id}@{version_alias} instead of auto-generated version id (i.e. projects/{project}/locations/{location}/models/{model_id}@{version_id}) . The format is [a-z][a-zA-Z0-9-]{0,126}[a-z0-9] to distinguish from version_id. A default version alias will be created for the first version of the model, and there must be exactly one default version alias for a model.

Parameter
Name
Description
var
string[]
Returns
Type
Description
$this

getVersionCreateTime

Output only. Timestamp when this version was created.

Returns
Type
Description

hasVersionCreateTime

clearVersionCreateTime

setVersionCreateTime

Output only. Timestamp when this version was created.

Parameter
Name
Description
Returns
Type
Description
$this

getVersionUpdateTime

Output only. Timestamp when this version was most recently updated.

Returns
Type
Description

hasVersionUpdateTime

clearVersionUpdateTime

setVersionUpdateTime

Output only. Timestamp when this version was most recently updated.

Parameter
Name
Description
Returns
Type
Description
$this

getDisplayName

Required. The display name of the Model.

The name can be up to 128 characters long and can consist of any UTF-8 characters.

Returns
Type
Description
string

setDisplayName

Required. The display name of the Model.

The name can be up to 128 characters long and can consist of any UTF-8 characters.

Parameter
Name
Description
var
string
Returns
Type
Description
$this

getDescription

The description of the Model.

Returns
Type
Description
string

setDescription

The description of the Model.

Parameter
Name
Description
var
string
Returns
Type
Description
$this

getVersionDescription

The description of this version.

Returns
Type
Description
string

setVersionDescription

The description of this version.

Parameter
Name
Description
var
string
Returns
Type
Description
$this

getPredictSchemata

The schemata that describe formats of the Model's predictions and explanations as given and returned via PredictionService.Predict and PredictionService.Explain .

Returns
Type
Description

hasPredictSchemata

clearPredictSchemata

setPredictSchemata

The schemata that describe formats of the Model's predictions and explanations as given and returned via PredictionService.Predict and PredictionService.Explain .

Parameter
Name
Description
Returns
Type
Description
$this

getMetadataSchemaUri

Immutable. Points to a YAML file stored on Google Cloud Storage describing additional information about the Model, that is specific to it. Unset if the Model does not have any additional information. The schema is defined as an OpenAPI 3.0.2 Schema Object .

AutoML Models always have this field populated by Vertex AI, if no additional metadata is needed, this field is set to an empty string. Note: The URI given on output will be immutable and probably different, including the URI scheme, than the one given on input. The output URI will point to a location where the user only has a read access.

Returns
Type
Description
string

setMetadataSchemaUri

Immutable. Points to a YAML file stored on Google Cloud Storage describing additional information about the Model, that is specific to it. Unset if the Model does not have any additional information. The schema is defined as an OpenAPI 3.0.2 Schema Object .

AutoML Models always have this field populated by Vertex AI, if no additional metadata is needed, this field is set to an empty string. Note: The URI given on output will be immutable and probably different, including the URI scheme, than the one given on input. The output URI will point to a location where the user only has a read access.

Parameter
Name
Description
var
string
Returns
Type
Description
$this

Immutable. An additional information about the Model; the schema of the metadata can be found in metadata_schema .

Unset if the Model does not have any additional information.

Returns
Type
Description

Immutable. An additional information about the Model; the schema of the metadata can be found in metadata_schema .

Unset if the Model does not have any additional information.

Parameter
Name
Description
Returns
Type
Description
$this

getSupportedExportFormats

Output only. The formats in which this Model may be exported. If empty, this Model is not available for export.

Returns
Type
Description

setSupportedExportFormats

Output only. The formats in which this Model may be exported. If empty, this Model is not available for export.

Parameter
Name
Description
Returns
Type
Description
$this

getTrainingPipeline

Output only. The resource name of the TrainingPipeline that uploaded this Model, if any.

Returns
Type
Description
string

setTrainingPipeline

Output only. The resource name of the TrainingPipeline that uploaded this Model, if any.

Parameter
Name
Description
var
string
Returns
Type
Description
$this

getContainerSpec

Input only. The specification of the container that is to be used when deploying this Model. The specification is ingested upon ModelService.UploadModel , and all binaries it contains are copied and stored internally by Vertex AI.

Not present for AutoML Models or Large Models.

Returns
Type
Description

hasContainerSpec

clearContainerSpec

setContainerSpec

Input only. The specification of the container that is to be used when deploying this Model. The specification is ingested upon ModelService.UploadModel , and all binaries it contains are copied and stored internally by Vertex AI.

Not present for AutoML Models or Large Models.

Parameter
Name
Description
Returns
Type
Description
$this

getArtifactUri

Immutable. The path to the directory containing the Model artifact and any of its supporting files. Not present for AutoML Models or Large Models.

Returns
Type
Description
string

setArtifactUri

Immutable. The path to the directory containing the Model artifact and any of its supporting files. Not present for AutoML Models or Large Models.

Parameter
Name
Description
var
string
Returns
Type
Description
$this

getSupportedDeploymentResourcesTypes

Output only. When this Model is deployed, its prediction resources are described by the prediction_resources field of the Endpoint.deployed_models object. Because not all Models support all resource configuration types, the configuration types this Model supports are listed here. If no configuration types are listed, the Model cannot be deployed to an Endpoint and does not support online predictions ( PredictionService.Predict or PredictionService.Explain ).

Such a Model can serve predictions by using a BatchPredictionJob , if it has at least one entry each in supported_input_storage_formats and supported_output_storage_formats .

Returns
Type
Description

setSupportedDeploymentResourcesTypes

Output only. When this Model is deployed, its prediction resources are described by the prediction_resources field of the Endpoint.deployed_models object. Because not all Models support all resource configuration types, the configuration types this Model supports are listed here. If no configuration types are listed, the Model cannot be deployed to an Endpoint and does not support online predictions ( PredictionService.Predict or PredictionService.Explain ).

Such a Model can serve predictions by using a BatchPredictionJob , if it has at least one entry each in supported_input_storage_formats and supported_output_storage_formats .

Parameter
Name
Description
var
int[]
Returns
Type
Description
$this

getSupportedInputStorageFormats

Output only. The formats this Model supports in BatchPredictionJob.input_config .

If PredictSchemata.instance_schema_uri exists, the instances should be given as per that schema. The possible formats are:

  • jsonl The JSON Lines format, where each instance is a single line. Uses GcsSource .
  • csv The CSV format, where each instance is a single comma-separated line. The first line in the file is the header, containing comma-separated field names. Uses GcsSource .
  • tf-record The TFRecord format, where each instance is a single record in tfrecord syntax. Uses GcsSource .
  • tf-record-gzip Similar to tf-record , but the file is gzipped. Uses GcsSource .
  • bigquery Each instance is a single row in BigQuery. Uses BigQuerySource .
  • file-list Each line of the file is the location of an instance to process, uses gcs_source field of the InputConfig object. If this Model doesn't support any of these formats it means it cannot be used with a BatchPredictionJob . However, if it has supported_deployment_resources_types , it could serve online predictions by using PredictionService.Predict or PredictionService.Explain .
Returns
Type
Description

setSupportedInputStorageFormats

Output only. The formats this Model supports in BatchPredictionJob.input_config .

If PredictSchemata.instance_schema_uri exists, the instances should be given as per that schema. The possible formats are:

  • jsonl The JSON Lines format, where each instance is a single line. Uses GcsSource .
  • csv The CSV format, where each instance is a single comma-separated line. The first line in the file is the header, containing comma-separated field names. Uses GcsSource .
  • tf-record The TFRecord format, where each instance is a single record in tfrecord syntax. Uses GcsSource .
  • tf-record-gzip Similar to tf-record , but the file is gzipped. Uses GcsSource .
  • bigquery Each instance is a single row in BigQuery. Uses BigQuerySource .
  • file-list Each line of the file is the location of an instance to process, uses gcs_source field of the InputConfig object. If this Model doesn't support any of these formats it means it cannot be used with a BatchPredictionJob . However, if it has supported_deployment_resources_types , it could serve online predictions by using PredictionService.Predict or PredictionService.Explain .
Parameter
Name
Description
var
string[]
Returns
Type
Description
$this

getSupportedOutputStorageFormats

Output only. The formats this Model supports in BatchPredictionJob.output_config .

If both PredictSchemata.instance_schema_uri and PredictSchemata.prediction_schema_uri exist, the predictions are returned together with their instances. In other words, the prediction has the original instance data first, followed by the actual prediction content (as per the schema). The possible formats are:

Returns
Type
Description

setSupportedOutputStorageFormats

Output only. The formats this Model supports in BatchPredictionJob.output_config .

If both PredictSchemata.instance_schema_uri and PredictSchemata.prediction_schema_uri exist, the predictions are returned together with their instances. In other words, the prediction has the original instance data first, followed by the actual prediction content (as per the schema). The possible formats are:

Parameter
Name
Description
var
string[]
Returns
Type
Description
$this

getCreateTime

Output only. Timestamp when this Model was uploaded into Vertex AI.

Returns
Type
Description

hasCreateTime

clearCreateTime

setCreateTime

Output only. Timestamp when this Model was uploaded into Vertex AI.

Parameter
Name
Description
Returns
Type
Description
$this

getUpdateTime

Output only. Timestamp when this Model was most recently updated.

Returns
Type
Description

hasUpdateTime

clearUpdateTime

setUpdateTime

Output only. Timestamp when this Model was most recently updated.

Parameter
Name
Description
Returns
Type
Description
$this

getDeployedModels

Output only. The pointers to DeployedModels created from this Model. Note that Model could have been deployed to Endpoints in different Locations.

Returns
Type
Description

setDeployedModels

Output only. The pointers to DeployedModels created from this Model. Note that Model could have been deployed to Endpoints in different Locations.

Parameter
Name
Description
Returns
Type
Description
$this

getExplanationSpec

The default explanation specification for this Model.

The Model can be used for requesting explanation after being deployed if it is populated. The Model can be used for batch explanation if it is populated. All fields of the explanation_spec can be overridden by explanation_spec of DeployModelRequest.deployed_model , or explanation_spec of BatchPredictionJob . If the default explanation specification is not set for this Model, this Model can still be used for requesting explanation by setting explanation_spec of DeployModelRequest.deployed_model and for batch explanation by setting explanation_spec of BatchPredictionJob .

Returns
Type
Description

hasExplanationSpec

clearExplanationSpec

setExplanationSpec

The default explanation specification for this Model.

The Model can be used for requesting explanation after being deployed if it is populated. The Model can be used for batch explanation if it is populated. All fields of the explanation_spec can be overridden by explanation_spec of DeployModelRequest.deployed_model , or explanation_spec of BatchPredictionJob . If the default explanation specification is not set for this Model, this Model can still be used for requesting explanation by setting explanation_spec of DeployModelRequest.deployed_model and for batch explanation by setting explanation_spec of BatchPredictionJob .

Parameter
Name
Description
Returns
Type
Description
$this

getEtag

Used to perform consistent read-modify-write updates. If not set, a blind "overwrite" update happens.

Returns
Type
Description
string

setEtag

Used to perform consistent read-modify-write updates. If not set, a blind "overwrite" update happens.

Parameter
Name
Description
var
string
Returns
Type
Description
$this

getLabels

The labels with user-defined metadata to organize your Models.

Label keys and values can be no longer than 64 characters (Unicode codepoints), can only contain lowercase letters, numeric characters, underscores and dashes. International characters are allowed. See https://goo.gl/xmQnxf for more information and examples of labels.

Returns
Type
Description

setLabels

The labels with user-defined metadata to organize your Models.

Label keys and values can be no longer than 64 characters (Unicode codepoints), can only contain lowercase letters, numeric characters, underscores and dashes. International characters are allowed. See https://goo.gl/xmQnxf for more information and examples of labels.

Parameter
Name
Description
Returns
Type
Description
$this

getEncryptionSpec

Customer-managed encryption key spec for a Model. If set, this Model and all sub-resources of this Model will be secured by this key.

Returns
Type
Description

hasEncryptionSpec

clearEncryptionSpec

setEncryptionSpec

Customer-managed encryption key spec for a Model. If set, this Model and all sub-resources of this Model will be secured by this key.

Parameter
Name
Description
Returns
Type
Description
$this

getModelSourceInfo

Output only. Source of a model. It can either be automl training pipeline, custom training pipeline, BigQuery ML, or existing Vertex AI Model.

Returns
Type
Description

hasModelSourceInfo

clearModelSourceInfo

setModelSourceInfo

Output only. Source of a model. It can either be automl training pipeline, custom training pipeline, BigQuery ML, or existing Vertex AI Model.

Parameter
Name
Description
Returns
Type
Description
$this

getOriginalModelInfo

Output only. If this Model is a copy of another Model, this contains info about the original.

hasOriginalModelInfo

clearOriginalModelInfo

setOriginalModelInfo

Output only. If this Model is a copy of another Model, this contains info about the original.

Returns
Type
Description
$this

getMetadataArtifact

Output only. The resource name of the Artifact that was created in MetadataStore when creating the Model. The Artifact resource name pattern is projects/{project}/locations/{location}/metadataStores/{metadata_store}/artifacts/{artifact} .

Returns
Type
Description
string

setMetadataArtifact

Output only. The resource name of the Artifact that was created in MetadataStore when creating the Model. The Artifact resource name pattern is projects/{project}/locations/{location}/metadataStores/{metadata_store}/artifacts/{artifact} .

Parameter
Name
Description
var
string
Returns
Type
Description
$this
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