Data Source: oci_ai_vision_models
This data source provides the list of Models in Oracle Cloud Infrastructure Ai Vision service.
Returns a list of models in a compartment.
Example Usage
data "oci_ai_vision_models" "test_models" {
	#Optional
	compartment_id = var.compartment_id
	display_name = var.model_display_name
	id = var.model_id
	project_id = oci_ai_vision_project.test_project.id
	state = var.model_state
}
Argument Reference
The following arguments are supported:
- compartment_id- (Optional) The ID of the compartment in which to list resources.
- display_name- (Optional) A filter to return only resources that match the entire display name given.
- id- (Optional) The filter to find the model with the given identifier.
- project_id- (Optional) The ID of the project for which to list the objects.
- state- (Optional) The filter to match models with the given lifecycleState.
Attributes Reference
The following attributes are exported:
- model_collection- The list of model_collection.
Model Reference
The following attributes are exported:
- average_precision- The mean average precision of the trained model.
- compartment_id- The compartment identifier.
- confidence_threshold- The intersection over the union threshold used for calculating precision and recall.
- defined_tags- Defined tags for this resource. Each key is predefined and scoped to a namespace. For example:- {"foo-namespace": {"bar-key": "value"}}
- description- An optional description of the model.
- display_name- A human-friendly name for the model, which can be changed.
- freeform_tags- 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- A unique identifier that is immutable after creation.
- is_quick_mode- 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.
- lifecycle_details- A message describing the current state in more detail, that can provide actionable information if training failed.
- max_training_duration_in_hours- The maximum model training duration in hours, expressed as a decimal fraction.
- metrics- The complete set of per-label metrics for successfully trained models.
- model_type- What type of Vision model this is.
- model_version- The version of the model.
- precision- The precision of the trained model.
- project_id- The OCID of the project that contains the model.
- recall- Recall of the trained model.
- state- The current state of the model.
- system_tags- Usage of system tag keys. These predefined keys are scoped to namespaces. For example:- {"orcl-cloud": {"free-tier-retained": "true"}}
- test_image_count- The number of images set aside for evaluating model performance metrics after training.
- testing_dataset- The base entity which is the input for creating and training a model.- bucket- The name of the Object Storage bucket that contains the input data file.
- dataset_id- OCID of the Data Labeling dataset.
- dataset_type- The dataset type, based on where it is stored.
- namespace- The namespace name of the Object Storage bucket that contains the input data file.
- object- The object name of the input data file.
 
- time_created- When the model was created, as an RFC3339 datetime string.
- time_updated- When the model was updated, as an RFC3339 datetime string.
- total_image_count- The number of images in the dataset used to train, validate, and test the model.
- trained_duration_in_hours- The total hours actually used for model training.
- training_dataset- The base entity which is the input for creating and training a model.- bucket- The name of the Object Storage bucket that contains the input data file.
- dataset_id- OCID of the Data Labeling dataset.
- dataset_type- The dataset type, based on where it is stored.
- namespace- The namespace name of the Object Storage bucket that contains the input data file.
- object- The object name of the input data file.
 
- validation_dataset- The base entity which is the input for creating and training a model.- bucket- The name of the Object Storage bucket that contains the input data file.
- dataset_id- OCID of the Data Labeling dataset.
- dataset_type- The dataset type, based on where it is stored.
- namespace- The namespace name of the Object Storage bucket that contains the input data file.
- object- The object name of the input data file.