1. Packages
  2. Oracle Cloud Infrastructure
  3. API Docs
  4. AiDocument
  5. getModels
Oracle Cloud Infrastructure v2.17.0 published on Friday, Nov 15, 2024 by Pulumi

oci.AiDocument.getModels

Explore with Pulumi AI

oci logo
Oracle Cloud Infrastructure v2.17.0 published on Friday, Nov 15, 2024 by Pulumi

    This data source provides the list of Models in Oracle Cloud Infrastructure Ai Document service.

    Returns a list of models in a compartment.

    Example Usage

    import * as pulumi from "@pulumi/pulumi";
    import * as oci from "@pulumi/oci";
    
    const testModels = oci.AiDocument.getModels({
        compartmentId: compartmentId,
        displayName: modelDisplayName,
        id: modelId,
        projectId: testProject.id,
        state: modelState,
    });
    
    import pulumi
    import pulumi_oci as oci
    
    test_models = oci.AiDocument.get_models(compartment_id=compartment_id,
        display_name=model_display_name,
        id=model_id,
        project_id=test_project["id"],
        state=model_state)
    
    package main
    
    import (
    	"github.com/pulumi/pulumi-oci/sdk/v2/go/oci/AiDocument"
    	"github.com/pulumi/pulumi/sdk/v3/go/pulumi"
    )
    
    func main() {
    	pulumi.Run(func(ctx *pulumi.Context) error {
    		_, err := AiDocument.GetModels(ctx, &aidocument.GetModelsArgs{
    			CompartmentId: pulumi.StringRef(compartmentId),
    			DisplayName:   pulumi.StringRef(modelDisplayName),
    			Id:            pulumi.StringRef(modelId),
    			ProjectId:     pulumi.StringRef(testProject.Id),
    			State:         pulumi.StringRef(modelState),
    		}, nil)
    		if err != nil {
    			return err
    		}
    		return nil
    	})
    }
    
    using System.Collections.Generic;
    using System.Linq;
    using Pulumi;
    using Oci = Pulumi.Oci;
    
    return await Deployment.RunAsync(() => 
    {
        var testModels = Oci.AiDocument.GetModels.Invoke(new()
        {
            CompartmentId = compartmentId,
            DisplayName = modelDisplayName,
            Id = modelId,
            ProjectId = testProject.Id,
            State = modelState,
        });
    
    });
    
    package generated_program;
    
    import com.pulumi.Context;
    import com.pulumi.Pulumi;
    import com.pulumi.core.Output;
    import com.pulumi.oci.AiDocument.AiDocumentFunctions;
    import com.pulumi.oci.AiDocument.inputs.GetModelsArgs;
    import java.util.List;
    import java.util.ArrayList;
    import java.util.Map;
    import java.io.File;
    import java.nio.file.Files;
    import java.nio.file.Paths;
    
    public class App {
        public static void main(String[] args) {
            Pulumi.run(App::stack);
        }
    
        public static void stack(Context ctx) {
            final var testModels = AiDocumentFunctions.getModels(GetModelsArgs.builder()
                .compartmentId(compartmentId)
                .displayName(modelDisplayName)
                .id(modelId)
                .projectId(testProject.id())
                .state(modelState)
                .build());
    
        }
    }
    
    variables:
      testModels:
        fn::invoke:
          Function: oci:AiDocument:getModels
          Arguments:
            compartmentId: ${compartmentId}
            displayName: ${modelDisplayName}
            id: ${modelId}
            projectId: ${testProject.id}
            state: ${modelState}
    

    Using getModels

    Two invocation forms are available. The direct form accepts plain arguments and either blocks until the result value is available, or returns a Promise-wrapped result. The output form accepts Input-wrapped arguments and returns an Output-wrapped result.

    function getModels(args: GetModelsArgs, opts?: InvokeOptions): Promise<GetModelsResult>
    function getModelsOutput(args: GetModelsOutputArgs, opts?: InvokeOptions): Output<GetModelsResult>
    def get_models(compartment_id: Optional[str] = None,
                   display_name: Optional[str] = None,
                   filters: Optional[Sequence[_aidocument.GetModelsFilter]] = None,
                   id: Optional[str] = None,
                   project_id: Optional[str] = None,
                   state: Optional[str] = None,
                   opts: Optional[InvokeOptions] = None) -> GetModelsResult
    def get_models_output(compartment_id: Optional[pulumi.Input[str]] = None,
                   display_name: Optional[pulumi.Input[str]] = None,
                   filters: Optional[pulumi.Input[Sequence[pulumi.Input[_aidocument.GetModelsFilterArgs]]]] = None,
                   id: Optional[pulumi.Input[str]] = None,
                   project_id: Optional[pulumi.Input[str]] = None,
                   state: Optional[pulumi.Input[str]] = None,
                   opts: Optional[InvokeOptions] = None) -> Output[GetModelsResult]
    func GetModels(ctx *Context, args *GetModelsArgs, opts ...InvokeOption) (*GetModelsResult, error)
    func GetModelsOutput(ctx *Context, args *GetModelsOutputArgs, opts ...InvokeOption) GetModelsResultOutput

    > Note: This function is named GetModels in the Go SDK.

    public static class GetModels 
    {
        public static Task<GetModelsResult> InvokeAsync(GetModelsArgs args, InvokeOptions? opts = null)
        public static Output<GetModelsResult> Invoke(GetModelsInvokeArgs args, InvokeOptions? opts = null)
    }
    public static CompletableFuture<GetModelsResult> getModels(GetModelsArgs args, InvokeOptions options)
    // Output-based functions aren't available in Java yet
    
    fn::invoke:
      function: oci:AiDocument/getModels:getModels
      arguments:
        # arguments dictionary

    The following arguments are supported:

    CompartmentId string
    The ID of the compartment in which to list resources.
    DisplayName string
    A filter to return only resources that match the entire display name given.
    Filters List<GetModelsFilter>
    Id string
    The filter to find the model with the given identifier.
    ProjectId string
    The ID of the project for which to list the objects.
    State string
    The filter to match models with the given lifecycleState.
    CompartmentId string
    The ID of the compartment in which to list resources.
    DisplayName string
    A filter to return only resources that match the entire display name given.
    Filters []GetModelsFilter
    Id string
    The filter to find the model with the given identifier.
    ProjectId string
    The ID of the project for which to list the objects.
    State string
    The filter to match models with the given lifecycleState.
    compartmentId String
    The ID of the compartment in which to list resources.
    displayName String
    A filter to return only resources that match the entire display name given.
    filters List<GetModelsFilter>
    id String
    The filter to find the model with the given identifier.
    projectId String
    The ID of the project for which to list the objects.
    state String
    The filter to match models with the given lifecycleState.
    compartmentId string
    The ID of the compartment in which to list resources.
    displayName string
    A filter to return only resources that match the entire display name given.
    filters GetModelsFilter[]
    id string
    The filter to find the model with the given identifier.
    projectId string
    The ID of the project for which to list the objects.
    state string
    The filter to match models with the given lifecycleState.
    compartment_id str
    The ID of the compartment in which to list resources.
    display_name str
    A filter to return only resources that match the entire display name given.
    filters Sequence[aidocument.GetModelsFilter]
    id str
    The filter to find the model with the given identifier.
    project_id str
    The ID of the project for which to list the objects.
    state str
    The filter to match models with the given lifecycleState.
    compartmentId String
    The ID of the compartment in which to list resources.
    displayName String
    A filter to return only resources that match the entire display name given.
    filters List<Property Map>
    id String
    The filter to find the model with the given identifier.
    projectId String
    The ID of the project for which to list the objects.
    state String
    The filter to match models with the given lifecycleState.

    getModels Result

    The following output properties are available:

    ModelCollections List<GetModelsModelCollection>
    The list of model_collection.
    CompartmentId string
    The compartment identifier.
    DisplayName string
    A human-friendly name for the model, which can be changed.
    Filters List<GetModelsFilter>
    Id string
    A unique identifier that is immutable after creation.
    ProjectId string
    The OCID of the project that contains the model.
    State string
    The current state of the model.
    ModelCollections []GetModelsModelCollection
    The list of model_collection.
    CompartmentId string
    The compartment identifier.
    DisplayName string
    A human-friendly name for the model, which can be changed.
    Filters []GetModelsFilter
    Id string
    A unique identifier that is immutable after creation.
    ProjectId string
    The OCID of the project that contains the model.
    State string
    The current state of the model.
    modelCollections List<GetModelsModelCollection>
    The list of model_collection.
    compartmentId String
    The compartment identifier.
    displayName String
    A human-friendly name for the model, which can be changed.
    filters List<GetModelsFilter>
    id String
    A unique identifier that is immutable after creation.
    projectId String
    The OCID of the project that contains the model.
    state String
    The current state of the model.
    modelCollections GetModelsModelCollection[]
    The list of model_collection.
    compartmentId string
    The compartment identifier.
    displayName string
    A human-friendly name for the model, which can be changed.
    filters GetModelsFilter[]
    id string
    A unique identifier that is immutable after creation.
    projectId string
    The OCID of the project that contains the model.
    state string
    The current state of the model.
    model_collections Sequence[aidocument.GetModelsModelCollection]
    The list of model_collection.
    compartment_id str
    The compartment identifier.
    display_name str
    A human-friendly name for the model, which can be changed.
    filters Sequence[aidocument.GetModelsFilter]
    id str
    A unique identifier that is immutable after creation.
    project_id str
    The OCID of the project that contains the model.
    state str
    The current state of the model.
    modelCollections List<Property Map>
    The list of model_collection.
    compartmentId String
    The compartment identifier.
    displayName String
    A human-friendly name for the model, which can be changed.
    filters List<Property Map>
    id String
    A unique identifier that is immutable after creation.
    projectId String
    The OCID of the project that contains the model.
    state String
    The current state of the model.

    Supporting Types

    GetModelsFilter

    Name string
    Values List<string>
    Regex bool
    Name string
    Values []string
    Regex bool
    name String
    values List<String>
    regex Boolean
    name string
    values string[]
    regex boolean
    name str
    values Sequence[str]
    regex bool
    name String
    values List<String>
    regex Boolean

    GetModelsModelCollection

    GetModelsModelCollectionItem

    CompartmentId string
    The ID of the compartment in which to list resources.
    ComponentModels List<GetModelsModelCollectionItemComponentModel>
    The OCID collection of active custom Key Value models that need to be composed.
    DefinedTags Dictionary<string, string>
    Defined tags for this resource. Each key is predefined and scoped to a namespace. For example: {"foo-namespace": {"bar-key": "value"}}
    Description string
    An optional description of the model.
    DisplayName string
    A filter to return only resources that match the entire display name given.
    FreeformTags Dictionary<string, string>
    A simple key-value pair that is applied without any predefined name, type, or scope. It exists for cross-compatibility only. For example: {"bar-key": "value"}
    Id string
    The filter to find the model with the given identifier.
    IsComposedModel bool
    Set to true when the model is created by using multiple key value extraction models.
    IsQuickMode bool
    Set to true when experimenting with a new model type or dataset, so model training is quick, with a predefined low number of passes through the training data.
    Labels List<string>
    The collection of labels used to train the custom model.
    LifecycleDetails string
    A message describing the current state in more detail, that can provide actionable information if training failed.
    MaxTrainingTimeInHours double
    The maximum model training time in hours, expressed as a decimal fraction.
    Metrics List<GetModelsModelCollectionItemMetric>
    Trained Model Metrics.
    ModelId string
    The OCID of active custom Key Value model that need to be composed.
    ModelType string
    The type of the Document model.
    ModelVersion string
    The version of the model.
    ProjectId string
    The ID of the project for which to list the objects.
    State string
    The filter to match models with the given lifecycleState.
    SystemTags Dictionary<string, string>
    Usage of system tag keys. These predefined keys are scoped to namespaces. For example: {"orcl-cloud": {"free-tier-retained": "true"}}
    TenancyId string
    The tenancy id of the model.
    TestingDatasets List<GetModelsModelCollectionItemTestingDataset>
    The base entity which is the input for creating and training a model.
    TimeCreated string
    When the model was created, as an RFC3339 datetime string.
    TimeUpdated string
    When the model was updated, as an RFC3339 datetime string.
    TrainedTimeInHours double
    The total hours actually used for model training.
    TrainingDatasets List<GetModelsModelCollectionItemTrainingDataset>
    The base entity which is the input for creating and training a model.
    ValidationDatasets List<GetModelsModelCollectionItemValidationDataset>
    The base entity which is the input for creating and training a model.
    CompartmentId string
    The ID of the compartment in which to list resources.
    ComponentModels []GetModelsModelCollectionItemComponentModel
    The OCID collection of active custom Key Value models that need to be composed.
    DefinedTags map[string]string
    Defined tags for this resource. Each key is predefined and scoped to a namespace. For example: {"foo-namespace": {"bar-key": "value"}}
    Description string
    An optional description of the model.
    DisplayName string
    A filter to return only resources that match the entire display name given.
    FreeformTags map[string]string
    A simple key-value pair that is applied without any predefined name, type, or scope. It exists for cross-compatibility only. For example: {"bar-key": "value"}
    Id string
    The filter to find the model with the given identifier.
    IsComposedModel bool
    Set to true when the model is created by using multiple key value extraction models.
    IsQuickMode bool
    Set to true when experimenting with a new model type or dataset, so model training is quick, with a predefined low number of passes through the training data.
    Labels []string
    The collection of labels used to train the custom model.
    LifecycleDetails string
    A message describing the current state in more detail, that can provide actionable information if training failed.
    MaxTrainingTimeInHours float64
    The maximum model training time in hours, expressed as a decimal fraction.
    Metrics []GetModelsModelCollectionItemMetric
    Trained Model Metrics.
    ModelId string
    The OCID of active custom Key Value model that need to be composed.
    ModelType string
    The type of the Document model.
    ModelVersion string
    The version of the model.
    ProjectId string
    The ID of the project for which to list the objects.
    State string
    The filter to match models with the given lifecycleState.
    SystemTags map[string]string
    Usage of system tag keys. These predefined keys are scoped to namespaces. For example: {"orcl-cloud": {"free-tier-retained": "true"}}
    TenancyId string
    The tenancy id of the model.
    TestingDatasets []GetModelsModelCollectionItemTestingDataset
    The base entity which is the input for creating and training a model.
    TimeCreated string
    When the model was created, as an RFC3339 datetime string.
    TimeUpdated string
    When the model was updated, as an RFC3339 datetime string.
    TrainedTimeInHours float64
    The total hours actually used for model training.
    TrainingDatasets []GetModelsModelCollectionItemTrainingDataset
    The base entity which is the input for creating and training a model.
    ValidationDatasets []GetModelsModelCollectionItemValidationDataset
    The base entity which is the input for creating and training a model.
    compartmentId String
    The ID of the compartment in which to list resources.
    componentModels List<GetModelsModelCollectionItemComponentModel>
    The OCID collection of active custom Key Value models that need to be composed.
    definedTags Map<String,String>
    Defined tags for this resource. Each key is predefined and scoped to a namespace. For example: {"foo-namespace": {"bar-key": "value"}}
    description String
    An optional description of the model.
    displayName String
    A filter to return only resources that match the entire display name given.
    freeformTags Map<String,String>
    A simple key-value pair that is applied without any predefined name, type, or scope. It exists for cross-compatibility only. For example: {"bar-key": "value"}
    id String
    The filter to find the model with the given identifier.
    isComposedModel Boolean
    Set to true when the model is created by using multiple key value extraction models.
    isQuickMode Boolean
    Set to true when experimenting with a new model type or dataset, so model training is quick, with a predefined low number of passes through the training data.
    labels List<String>
    The collection of labels used to train the custom model.
    lifecycleDetails String
    A message describing the current state in more detail, that can provide actionable information if training failed.
    maxTrainingTimeInHours Double
    The maximum model training time in hours, expressed as a decimal fraction.
    metrics List<GetModelsModelCollectionItemMetric>
    Trained Model Metrics.
    modelId String
    The OCID of active custom Key Value model that need to be composed.
    modelType String
    The type of the Document model.
    modelVersion String
    The version of the model.
    projectId String
    The ID of the project for which to list the objects.
    state String
    The filter to match models with the given lifecycleState.
    systemTags Map<String,String>
    Usage of system tag keys. These predefined keys are scoped to namespaces. For example: {"orcl-cloud": {"free-tier-retained": "true"}}
    tenancyId String
    The tenancy id of the model.
    testingDatasets List<GetModelsModelCollectionItemTestingDataset>
    The base entity which is the input for creating and training a model.
    timeCreated String
    When the model was created, as an RFC3339 datetime string.
    timeUpdated String
    When the model was updated, as an RFC3339 datetime string.
    trainedTimeInHours Double
    The total hours actually used for model training.
    trainingDatasets List<GetModelsModelCollectionItemTrainingDataset>
    The base entity which is the input for creating and training a model.
    validationDatasets List<GetModelsModelCollectionItemValidationDataset>
    The base entity which is the input for creating and training a model.
    compartmentId string
    The ID of the compartment in which to list resources.
    componentModels GetModelsModelCollectionItemComponentModel[]
    The OCID collection of active custom Key Value models that need to be composed.
    definedTags {[key: string]: string}
    Defined tags for this resource. Each key is predefined and scoped to a namespace. For example: {"foo-namespace": {"bar-key": "value"}}
    description string
    An optional description of the model.
    displayName string
    A filter to return only resources that match the entire display name given.
    freeformTags {[key: string]: string}
    A simple key-value pair that is applied without any predefined name, type, or scope. It exists for cross-compatibility only. For example: {"bar-key": "value"}
    id string
    The filter to find the model with the given identifier.
    isComposedModel boolean
    Set to true when the model is created by using multiple key value extraction models.
    isQuickMode boolean
    Set to true when experimenting with a new model type or dataset, so model training is quick, with a predefined low number of passes through the training data.
    labels string[]
    The collection of labels used to train the custom model.
    lifecycleDetails string
    A message describing the current state in more detail, that can provide actionable information if training failed.
    maxTrainingTimeInHours number
    The maximum model training time in hours, expressed as a decimal fraction.
    metrics GetModelsModelCollectionItemMetric[]
    Trained Model Metrics.
    modelId string
    The OCID of active custom Key Value model that need to be composed.
    modelType string
    The type of the Document model.
    modelVersion string
    The version of the model.
    projectId string
    The ID of the project for which to list the objects.
    state string
    The filter to match models with the given lifecycleState.
    systemTags {[key: string]: string}
    Usage of system tag keys. These predefined keys are scoped to namespaces. For example: {"orcl-cloud": {"free-tier-retained": "true"}}
    tenancyId string
    The tenancy id of the model.
    testingDatasets GetModelsModelCollectionItemTestingDataset[]
    The base entity which is the input for creating and training a model.
    timeCreated string
    When the model was created, as an RFC3339 datetime string.
    timeUpdated string
    When the model was updated, as an RFC3339 datetime string.
    trainedTimeInHours number
    The total hours actually used for model training.
    trainingDatasets GetModelsModelCollectionItemTrainingDataset[]
    The base entity which is the input for creating and training a model.
    validationDatasets GetModelsModelCollectionItemValidationDataset[]
    The base entity which is the input for creating and training a model.
    compartment_id str
    The ID of the compartment in which to list resources.
    component_models Sequence[aidocument.GetModelsModelCollectionItemComponentModel]
    The OCID collection of active custom Key Value models that need to be composed.
    defined_tags Mapping[str, str]
    Defined tags for this resource. Each key is predefined and scoped to a namespace. For example: {"foo-namespace": {"bar-key": "value"}}
    description str
    An optional description of the model.
    display_name str
    A filter to return only resources that match the entire display name given.
    freeform_tags Mapping[str, str]
    A simple key-value pair that is applied without any predefined name, type, or scope. It exists for cross-compatibility only. For example: {"bar-key": "value"}
    id str
    The filter to find the model with the given identifier.
    is_composed_model bool
    Set to true when the model is created by using multiple key value extraction models.
    is_quick_mode bool
    Set to true when experimenting with a new model type or dataset, so model training is quick, with a predefined low number of passes through the training data.
    labels Sequence[str]
    The collection of labels used to train the custom model.
    lifecycle_details str
    A message describing the current state in more detail, that can provide actionable information if training failed.
    max_training_time_in_hours float
    The maximum model training time in hours, expressed as a decimal fraction.
    metrics Sequence[aidocument.GetModelsModelCollectionItemMetric]
    Trained Model Metrics.
    model_id str
    The OCID of active custom Key Value model that need to be composed.
    model_type str
    The type of the Document model.
    model_version str
    The version of the model.
    project_id str
    The ID of the project for which to list the objects.
    state str
    The filter to match models with the given lifecycleState.
    system_tags Mapping[str, str]
    Usage of system tag keys. These predefined keys are scoped to namespaces. For example: {"orcl-cloud": {"free-tier-retained": "true"}}
    tenancy_id str
    The tenancy id of the model.
    testing_datasets Sequence[aidocument.GetModelsModelCollectionItemTestingDataset]
    The base entity which is the input for creating and training a model.
    time_created str
    When the model was created, as an RFC3339 datetime string.
    time_updated str
    When the model was updated, as an RFC3339 datetime string.
    trained_time_in_hours float
    The total hours actually used for model training.
    training_datasets Sequence[aidocument.GetModelsModelCollectionItemTrainingDataset]
    The base entity which is the input for creating and training a model.
    validation_datasets Sequence[aidocument.GetModelsModelCollectionItemValidationDataset]
    The base entity which is the input for creating and training a model.
    compartmentId String
    The ID of the compartment in which to list resources.
    componentModels List<Property Map>
    The OCID collection of active custom Key Value models that need to be composed.
    definedTags Map<String>
    Defined tags for this resource. Each key is predefined and scoped to a namespace. For example: {"foo-namespace": {"bar-key": "value"}}
    description String
    An optional description of the model.
    displayName String
    A filter to return only resources that match the entire display name given.
    freeformTags Map<String>
    A simple key-value pair that is applied without any predefined name, type, or scope. It exists for cross-compatibility only. For example: {"bar-key": "value"}
    id String
    The filter to find the model with the given identifier.
    isComposedModel Boolean
    Set to true when the model is created by using multiple key value extraction models.
    isQuickMode Boolean
    Set to true when experimenting with a new model type or dataset, so model training is quick, with a predefined low number of passes through the training data.
    labels List<String>
    The collection of labels used to train the custom model.
    lifecycleDetails String
    A message describing the current state in more detail, that can provide actionable information if training failed.
    maxTrainingTimeInHours Number
    The maximum model training time in hours, expressed as a decimal fraction.
    metrics List<Property Map>
    Trained Model Metrics.
    modelId String
    The OCID of active custom Key Value model that need to be composed.
    modelType String
    The type of the Document model.
    modelVersion String
    The version of the model.
    projectId String
    The ID of the project for which to list the objects.
    state String
    The filter to match models with the given lifecycleState.
    systemTags Map<String>
    Usage of system tag keys. These predefined keys are scoped to namespaces. For example: {"orcl-cloud": {"free-tier-retained": "true"}}
    tenancyId String
    The tenancy id of the model.
    testingDatasets List<Property Map>
    The base entity which is the input for creating and training a model.
    timeCreated String
    When the model was created, as an RFC3339 datetime string.
    timeUpdated String
    When the model was updated, as an RFC3339 datetime string.
    trainedTimeInHours Number
    The total hours actually used for model training.
    trainingDatasets List<Property Map>
    The base entity which is the input for creating and training a model.
    validationDatasets List<Property Map>
    The base entity which is the input for creating and training a model.

    GetModelsModelCollectionItemComponentModel

    ModelId string
    The OCID of active custom Key Value model that need to be composed.
    ModelId string
    The OCID of active custom Key Value model that need to be composed.
    modelId String
    The OCID of active custom Key Value model that need to be composed.
    modelId string
    The OCID of active custom Key Value model that need to be composed.
    model_id str
    The OCID of active custom Key Value model that need to be composed.
    modelId String
    The OCID of active custom Key Value model that need to be composed.

    GetModelsModelCollectionItemMetric

    DatasetSummaries List<GetModelsModelCollectionItemMetricDatasetSummary>
    Summary of count of samples used during model training.
    LabelMetricsReports List<GetModelsModelCollectionItemMetricLabelMetricsReport>
    List of metrics entries per label.
    ModelType string
    The type of the Document model.
    OverallMetricsReports List<GetModelsModelCollectionItemMetricOverallMetricsReport>
    Overall Metrics report for Document Classification Model.
    DatasetSummaries []GetModelsModelCollectionItemMetricDatasetSummary
    Summary of count of samples used during model training.
    LabelMetricsReports []GetModelsModelCollectionItemMetricLabelMetricsReport
    List of metrics entries per label.
    ModelType string
    The type of the Document model.
    OverallMetricsReports []GetModelsModelCollectionItemMetricOverallMetricsReport
    Overall Metrics report for Document Classification Model.
    datasetSummaries List<GetModelsModelCollectionItemMetricDatasetSummary>
    Summary of count of samples used during model training.
    labelMetricsReports List<GetModelsModelCollectionItemMetricLabelMetricsReport>
    List of metrics entries per label.
    modelType String
    The type of the Document model.
    overallMetricsReports List<GetModelsModelCollectionItemMetricOverallMetricsReport>
    Overall Metrics report for Document Classification Model.
    datasetSummaries GetModelsModelCollectionItemMetricDatasetSummary[]
    Summary of count of samples used during model training.
    labelMetricsReports GetModelsModelCollectionItemMetricLabelMetricsReport[]
    List of metrics entries per label.
    modelType string
    The type of the Document model.
    overallMetricsReports GetModelsModelCollectionItemMetricOverallMetricsReport[]
    Overall Metrics report for Document Classification Model.
    datasetSummaries List<Property Map>
    Summary of count of samples used during model training.
    labelMetricsReports List<Property Map>
    List of metrics entries per label.
    modelType String
    The type of the Document model.
    overallMetricsReports List<Property Map>
    Overall Metrics report for Document Classification Model.

    GetModelsModelCollectionItemMetricDatasetSummary

    TestSampleCount int
    Number of samples used for testing the model.
    TrainingSampleCount int
    Number of samples used for training the model.
    ValidationSampleCount int
    Number of samples used for validating the model.
    TestSampleCount int
    Number of samples used for testing the model.
    TrainingSampleCount int
    Number of samples used for training the model.
    ValidationSampleCount int
    Number of samples used for validating the model.
    testSampleCount Integer
    Number of samples used for testing the model.
    trainingSampleCount Integer
    Number of samples used for training the model.
    validationSampleCount Integer
    Number of samples used for validating the model.
    testSampleCount number
    Number of samples used for testing the model.
    trainingSampleCount number
    Number of samples used for training the model.
    validationSampleCount number
    Number of samples used for validating the model.
    test_sample_count int
    Number of samples used for testing the model.
    training_sample_count int
    Number of samples used for training the model.
    validation_sample_count int
    Number of samples used for validating the model.
    testSampleCount Number
    Number of samples used for testing the model.
    trainingSampleCount Number
    Number of samples used for training the model.
    validationSampleCount Number
    Number of samples used for validating the model.

    GetModelsModelCollectionItemMetricLabelMetricsReport

    ConfidenceEntries List<GetModelsModelCollectionItemMetricLabelMetricsReportConfidenceEntry>
    List of document classification confidence report.
    DocumentCount int
    Total test documents in the label.
    Label string
    Label name
    MeanAveragePrecision double
    Mean average precision under different thresholds
    ConfidenceEntries []GetModelsModelCollectionItemMetricLabelMetricsReportConfidenceEntry
    List of document classification confidence report.
    DocumentCount int
    Total test documents in the label.
    Label string
    Label name
    MeanAveragePrecision float64
    Mean average precision under different thresholds
    confidenceEntries List<GetModelsModelCollectionItemMetricLabelMetricsReportConfidenceEntry>
    List of document classification confidence report.
    documentCount Integer
    Total test documents in the label.
    label String
    Label name
    meanAveragePrecision Double
    Mean average precision under different thresholds
    confidenceEntries GetModelsModelCollectionItemMetricLabelMetricsReportConfidenceEntry[]
    List of document classification confidence report.
    documentCount number
    Total test documents in the label.
    label string
    Label name
    meanAveragePrecision number
    Mean average precision under different thresholds
    confidence_entries Sequence[aidocument.GetModelsModelCollectionItemMetricLabelMetricsReportConfidenceEntry]
    List of document classification confidence report.
    document_count int
    Total test documents in the label.
    label str
    Label name
    mean_average_precision float
    Mean average precision under different thresholds
    confidenceEntries List<Property Map>
    List of document classification confidence report.
    documentCount Number
    Total test documents in the label.
    label String
    Label name
    meanAveragePrecision Number
    Mean average precision under different thresholds

    GetModelsModelCollectionItemMetricLabelMetricsReportConfidenceEntry

    Accuracy double
    accuracy under the threshold
    F1score double
    f1Score under the threshold
    Precision double
    Precision under the threshold
    Recall double
    Recall under the threshold
    Threshold double
    Threshold used to calculate precision and recall.
    Accuracy float64
    accuracy under the threshold
    F1score float64
    f1Score under the threshold
    Precision float64
    Precision under the threshold
    Recall float64
    Recall under the threshold
    Threshold float64
    Threshold used to calculate precision and recall.
    accuracy Double
    accuracy under the threshold
    f1score Double
    f1Score under the threshold
    precision Double
    Precision under the threshold
    recall Double
    Recall under the threshold
    threshold Double
    Threshold used to calculate precision and recall.
    accuracy number
    accuracy under the threshold
    f1score number
    f1Score under the threshold
    precision number
    Precision under the threshold
    recall number
    Recall under the threshold
    threshold number
    Threshold used to calculate precision and recall.
    accuracy float
    accuracy under the threshold
    f1score float
    f1Score under the threshold
    precision float
    Precision under the threshold
    recall float
    Recall under the threshold
    threshold float
    Threshold used to calculate precision and recall.
    accuracy Number
    accuracy under the threshold
    f1score Number
    f1Score under the threshold
    precision Number
    Precision under the threshold
    recall Number
    Recall under the threshold
    threshold Number
    Threshold used to calculate precision and recall.

    GetModelsModelCollectionItemMetricOverallMetricsReport

    ConfidenceEntries List<GetModelsModelCollectionItemMetricOverallMetricsReportConfidenceEntry>
    List of document classification confidence report.
    DocumentCount int
    Total test documents in the label.
    MeanAveragePrecision double
    Mean average precision under different thresholds
    ConfidenceEntries []GetModelsModelCollectionItemMetricOverallMetricsReportConfidenceEntry
    List of document classification confidence report.
    DocumentCount int
    Total test documents in the label.
    MeanAveragePrecision float64
    Mean average precision under different thresholds
    confidenceEntries List<GetModelsModelCollectionItemMetricOverallMetricsReportConfidenceEntry>
    List of document classification confidence report.
    documentCount Integer
    Total test documents in the label.
    meanAveragePrecision Double
    Mean average precision under different thresholds
    confidenceEntries GetModelsModelCollectionItemMetricOverallMetricsReportConfidenceEntry[]
    List of document classification confidence report.
    documentCount number
    Total test documents in the label.
    meanAveragePrecision number
    Mean average precision under different thresholds
    confidence_entries Sequence[aidocument.GetModelsModelCollectionItemMetricOverallMetricsReportConfidenceEntry]
    List of document classification confidence report.
    document_count int
    Total test documents in the label.
    mean_average_precision float
    Mean average precision under different thresholds
    confidenceEntries List<Property Map>
    List of document classification confidence report.
    documentCount Number
    Total test documents in the label.
    meanAveragePrecision Number
    Mean average precision under different thresholds

    GetModelsModelCollectionItemMetricOverallMetricsReportConfidenceEntry

    Accuracy double
    accuracy under the threshold
    F1score double
    f1Score under the threshold
    Precision double
    Precision under the threshold
    Recall double
    Recall under the threshold
    Threshold double
    Threshold used to calculate precision and recall.
    Accuracy float64
    accuracy under the threshold
    F1score float64
    f1Score under the threshold
    Precision float64
    Precision under the threshold
    Recall float64
    Recall under the threshold
    Threshold float64
    Threshold used to calculate precision and recall.
    accuracy Double
    accuracy under the threshold
    f1score Double
    f1Score under the threshold
    precision Double
    Precision under the threshold
    recall Double
    Recall under the threshold
    threshold Double
    Threshold used to calculate precision and recall.
    accuracy number
    accuracy under the threshold
    f1score number
    f1Score under the threshold
    precision number
    Precision under the threshold
    recall number
    Recall under the threshold
    threshold number
    Threshold used to calculate precision and recall.
    accuracy float
    accuracy under the threshold
    f1score float
    f1Score under the threshold
    precision float
    Precision under the threshold
    recall float
    Recall under the threshold
    threshold float
    Threshold used to calculate precision and recall.
    accuracy Number
    accuracy under the threshold
    f1score Number
    f1Score under the threshold
    precision Number
    Precision under the threshold
    recall Number
    Recall under the threshold
    threshold Number
    Threshold used to calculate precision and recall.

    GetModelsModelCollectionItemTestingDataset

    Bucket string
    The name of the Object Storage bucket that contains the input data file.
    DatasetId string
    OCID of the Data Labeling dataset.
    DatasetType string
    The dataset type, based on where it is stored.
    Namespace string
    The namespace name of the Object Storage bucket that contains the input data file.
    Object string
    The object name of the input data file.
    Bucket string
    The name of the Object Storage bucket that contains the input data file.
    DatasetId string
    OCID of the Data Labeling dataset.
    DatasetType string
    The dataset type, based on where it is stored.
    Namespace string
    The namespace name of the Object Storage bucket that contains the input data file.
    Object string
    The object name of the input data file.
    bucket String
    The name of the Object Storage bucket that contains the input data file.
    datasetId String
    OCID of the Data Labeling dataset.
    datasetType String
    The dataset type, based on where it is stored.
    namespace String
    The namespace name of the Object Storage bucket that contains the input data file.
    object String
    The object name of the input data file.
    bucket string
    The name of the Object Storage bucket that contains the input data file.
    datasetId string
    OCID of the Data Labeling dataset.
    datasetType string
    The dataset type, based on where it is stored.
    namespace string
    The namespace name of the Object Storage bucket that contains the input data file.
    object string
    The object name of the input data file.
    bucket str
    The name of the Object Storage bucket that contains the input data file.
    dataset_id str
    OCID of the Data Labeling dataset.
    dataset_type str
    The dataset type, based on where it is stored.
    namespace str
    The namespace name of the Object Storage bucket that contains the input data file.
    object str
    The object name of the input data file.
    bucket String
    The name of the Object Storage bucket that contains the input data file.
    datasetId String
    OCID of the Data Labeling dataset.
    datasetType String
    The dataset type, based on where it is stored.
    namespace String
    The namespace name of the Object Storage bucket that contains the input data file.
    object String
    The object name of the input data file.

    GetModelsModelCollectionItemTrainingDataset

    Bucket string
    The name of the Object Storage bucket that contains the input data file.
    DatasetId string
    OCID of the Data Labeling dataset.
    DatasetType string
    The dataset type, based on where it is stored.
    Namespace string
    The namespace name of the Object Storage bucket that contains the input data file.
    Object string
    The object name of the input data file.
    Bucket string
    The name of the Object Storage bucket that contains the input data file.
    DatasetId string
    OCID of the Data Labeling dataset.
    DatasetType string
    The dataset type, based on where it is stored.
    Namespace string
    The namespace name of the Object Storage bucket that contains the input data file.
    Object string
    The object name of the input data file.
    bucket String
    The name of the Object Storage bucket that contains the input data file.
    datasetId String
    OCID of the Data Labeling dataset.
    datasetType String
    The dataset type, based on where it is stored.
    namespace String
    The namespace name of the Object Storage bucket that contains the input data file.
    object String
    The object name of the input data file.
    bucket string
    The name of the Object Storage bucket that contains the input data file.
    datasetId string
    OCID of the Data Labeling dataset.
    datasetType string
    The dataset type, based on where it is stored.
    namespace string
    The namespace name of the Object Storage bucket that contains the input data file.
    object string
    The object name of the input data file.
    bucket str
    The name of the Object Storage bucket that contains the input data file.
    dataset_id str
    OCID of the Data Labeling dataset.
    dataset_type str
    The dataset type, based on where it is stored.
    namespace str
    The namespace name of the Object Storage bucket that contains the input data file.
    object str
    The object name of the input data file.
    bucket String
    The name of the Object Storage bucket that contains the input data file.
    datasetId String
    OCID of the Data Labeling dataset.
    datasetType String
    The dataset type, based on where it is stored.
    namespace String
    The namespace name of the Object Storage bucket that contains the input data file.
    object String
    The object name of the input data file.

    GetModelsModelCollectionItemValidationDataset

    Bucket string
    The name of the Object Storage bucket that contains the input data file.
    DatasetId string
    OCID of the Data Labeling dataset.
    DatasetType string
    The dataset type, based on where it is stored.
    Namespace string
    The namespace name of the Object Storage bucket that contains the input data file.
    Object string
    The object name of the input data file.
    Bucket string
    The name of the Object Storage bucket that contains the input data file.
    DatasetId string
    OCID of the Data Labeling dataset.
    DatasetType string
    The dataset type, based on where it is stored.
    Namespace string
    The namespace name of the Object Storage bucket that contains the input data file.
    Object string
    The object name of the input data file.
    bucket String
    The name of the Object Storage bucket that contains the input data file.
    datasetId String
    OCID of the Data Labeling dataset.
    datasetType String
    The dataset type, based on where it is stored.
    namespace String
    The namespace name of the Object Storage bucket that contains the input data file.
    object String
    The object name of the input data file.
    bucket string
    The name of the Object Storage bucket that contains the input data file.
    datasetId string
    OCID of the Data Labeling dataset.
    datasetType string
    The dataset type, based on where it is stored.
    namespace string
    The namespace name of the Object Storage bucket that contains the input data file.
    object string
    The object name of the input data file.
    bucket str
    The name of the Object Storage bucket that contains the input data file.
    dataset_id str
    OCID of the Data Labeling dataset.
    dataset_type str
    The dataset type, based on where it is stored.
    namespace str
    The namespace name of the Object Storage bucket that contains the input data file.
    object str
    The object name of the input data file.
    bucket String
    The name of the Object Storage bucket that contains the input data file.
    datasetId String
    OCID of the Data Labeling dataset.
    datasetType String
    The dataset type, based on where it is stored.
    namespace String
    The namespace name of the Object Storage bucket that contains the input data file.
    object String
    The object name of the input data file.

    Package Details

    Repository
    oci pulumi/pulumi-oci
    License
    Apache-2.0
    Notes
    This Pulumi package is based on the oci Terraform Provider.
    oci logo
    Oracle Cloud Infrastructure v2.17.0 published on Friday, Nov 15, 2024 by Pulumi