Oracle Cloud Infrastructure v2.17.0 published on Friday, Nov 15, 2024 by Pulumi
oci.AiAnomalyDetection.getDetectionModel
Explore with Pulumi AI
This data source provides details about a specific Model resource in Oracle Cloud Infrastructure Ai Anomaly Detection service.
Gets a Model by identifier
Example Usage
import * as pulumi from "@pulumi/pulumi";
import * as oci from "@pulumi/oci";
const testModel = oci.AiAnomalyDetection.getDetectionModel({
modelId: testModelOciAiAnomalyDetectionModel.id,
});
import pulumi
import pulumi_oci as oci
test_model = oci.AiAnomalyDetection.get_detection_model(model_id=test_model_oci_ai_anomaly_detection_model["id"])
package main
import (
"github.com/pulumi/pulumi-oci/sdk/v2/go/oci/AiAnomalyDetection"
"github.com/pulumi/pulumi/sdk/v3/go/pulumi"
)
func main() {
pulumi.Run(func(ctx *pulumi.Context) error {
_, err := AiAnomalyDetection.GetDetectionModel(ctx, &aianomalydetection.GetDetectionModelArgs{
ModelId: testModelOciAiAnomalyDetectionModel.Id,
}, 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 testModel = Oci.AiAnomalyDetection.GetDetectionModel.Invoke(new()
{
ModelId = testModelOciAiAnomalyDetectionModel.Id,
});
});
package generated_program;
import com.pulumi.Context;
import com.pulumi.Pulumi;
import com.pulumi.core.Output;
import com.pulumi.oci.AiAnomalyDetection.AiAnomalyDetectionFunctions;
import com.pulumi.oci.AiAnomalyDetection.inputs.GetDetectionModelArgs;
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 testModel = AiAnomalyDetectionFunctions.getDetectionModel(GetDetectionModelArgs.builder()
.modelId(testModelOciAiAnomalyDetectionModel.id())
.build());
}
}
variables:
testModel:
fn::invoke:
Function: oci:AiAnomalyDetection:getDetectionModel
Arguments:
modelId: ${testModelOciAiAnomalyDetectionModel.id}
Using getDetectionModel
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 getDetectionModel(args: GetDetectionModelArgs, opts?: InvokeOptions): Promise<GetDetectionModelResult>
function getDetectionModelOutput(args: GetDetectionModelOutputArgs, opts?: InvokeOptions): Output<GetDetectionModelResult>
def get_detection_model(model_id: Optional[str] = None,
opts: Optional[InvokeOptions] = None) -> GetDetectionModelResult
def get_detection_model_output(model_id: Optional[pulumi.Input[str]] = None,
opts: Optional[InvokeOptions] = None) -> Output[GetDetectionModelResult]
func GetDetectionModel(ctx *Context, args *GetDetectionModelArgs, opts ...InvokeOption) (*GetDetectionModelResult, error)
func GetDetectionModelOutput(ctx *Context, args *GetDetectionModelOutputArgs, opts ...InvokeOption) GetDetectionModelResultOutput
> Note: This function is named GetDetectionModel
in the Go SDK.
public static class GetDetectionModel
{
public static Task<GetDetectionModelResult> InvokeAsync(GetDetectionModelArgs args, InvokeOptions? opts = null)
public static Output<GetDetectionModelResult> Invoke(GetDetectionModelInvokeArgs args, InvokeOptions? opts = null)
}
public static CompletableFuture<GetDetectionModelResult> getDetectionModel(GetDetectionModelArgs args, InvokeOptions options)
// Output-based functions aren't available in Java yet
fn::invoke:
function: oci:AiAnomalyDetection/getDetectionModel:getDetectionModel
arguments:
# arguments dictionary
The following arguments are supported:
- Model
Id string - The OCID of the Model.
- Model
Id string - The OCID of the Model.
- model
Id String - The OCID of the Model.
- model
Id string - The OCID of the Model.
- model_
id str - The OCID of the Model.
- model
Id String - The OCID of the Model.
getDetectionModel Result
The following output properties are available:
- Compartment
Id string - The OCID for the model's compartment.
- Dictionary<string, string>
- Defined tags for this resource. Each key is predefined and scoped to a namespace. Example:
{"foo-namespace.bar-key": "value"}
- Description string
- A short description of the Model.
- Display
Name string - A user-friendly display name for the resource. It does not have to be unique and can be modified. Avoid entering confidential information.
- Dictionary<string, string>
- Simple key-value pair that is applied without any predefined name, type or scope. Exists for cross-compatibility only. Example:
{"bar-key": "value"}
- Id string
- The OCID of the model that is immutable on creation.
- Lifecycle
Details string - A message describing the current state in more detail. For example, can be used to provide actionable information for a resource in Failed state.
- Model
Id string - Model
Training List<GetDetails Detection Model Model Training Detail> - Specifies the details of the MSET model during the create call.
- Model
Training List<GetResults Detection Model Model Training Result> - Specifies the details for an Anomaly Detection model trained with MSET.
- Project
Id string - The OCID of the project to associate with the model.
- State string
- The state of the model.
- Dictionary<string, string>
- Usage of system tag keys. These predefined keys are scoped to namespaces. Example:
{"orcl-cloud.free-tier-retained": "true"}
- Time
Created string - The time the the Model was created. An RFC3339 formatted datetime string.
- Time
Updated string - The time the Model was updated. An RFC3339 formatted datetime string.
- Compartment
Id string - The OCID for the model's compartment.
- map[string]string
- Defined tags for this resource. Each key is predefined and scoped to a namespace. Example:
{"foo-namespace.bar-key": "value"}
- Description string
- A short description of the Model.
- Display
Name string - A user-friendly display name for the resource. It does not have to be unique and can be modified. Avoid entering confidential information.
- map[string]string
- Simple key-value pair that is applied without any predefined name, type or scope. Exists for cross-compatibility only. Example:
{"bar-key": "value"}
- Id string
- The OCID of the model that is immutable on creation.
- Lifecycle
Details string - A message describing the current state in more detail. For example, can be used to provide actionable information for a resource in Failed state.
- Model
Id string - Model
Training []GetDetails Detection Model Model Training Detail - Specifies the details of the MSET model during the create call.
- Model
Training []GetResults Detection Model Model Training Result - Specifies the details for an Anomaly Detection model trained with MSET.
- Project
Id string - The OCID of the project to associate with the model.
- State string
- The state of the model.
- map[string]string
- Usage of system tag keys. These predefined keys are scoped to namespaces. Example:
{"orcl-cloud.free-tier-retained": "true"}
- Time
Created string - The time the the Model was created. An RFC3339 formatted datetime string.
- Time
Updated string - The time the Model was updated. An RFC3339 formatted datetime string.
- compartment
Id String - The OCID for the model's compartment.
- Map<String,String>
- Defined tags for this resource. Each key is predefined and scoped to a namespace. Example:
{"foo-namespace.bar-key": "value"}
- description String
- A short description of the Model.
- display
Name String - A user-friendly display name for the resource. It does not have to be unique and can be modified. Avoid entering confidential information.
- Map<String,String>
- Simple key-value pair that is applied without any predefined name, type or scope. Exists for cross-compatibility only. Example:
{"bar-key": "value"}
- id String
- The OCID of the model that is immutable on creation.
- lifecycle
Details String - A message describing the current state in more detail. For example, can be used to provide actionable information for a resource in Failed state.
- model
Id String - model
Training List<GetDetails Detection Model Model Training Detail> - Specifies the details of the MSET model during the create call.
- model
Training List<GetResults Detection Model Model Training Result> - Specifies the details for an Anomaly Detection model trained with MSET.
- project
Id String - The OCID of the project to associate with the model.
- state String
- The state of the model.
- Map<String,String>
- Usage of system tag keys. These predefined keys are scoped to namespaces. Example:
{"orcl-cloud.free-tier-retained": "true"}
- time
Created String - The time the the Model was created. An RFC3339 formatted datetime string.
- time
Updated String - The time the Model was updated. An RFC3339 formatted datetime string.
- compartment
Id string - The OCID for the model's compartment.
- {[key: string]: string}
- Defined tags for this resource. Each key is predefined and scoped to a namespace. Example:
{"foo-namespace.bar-key": "value"}
- description string
- A short description of the Model.
- display
Name string - A user-friendly display name for the resource. It does not have to be unique and can be modified. Avoid entering confidential information.
- {[key: string]: string}
- Simple key-value pair that is applied without any predefined name, type or scope. Exists for cross-compatibility only. Example:
{"bar-key": "value"}
- id string
- The OCID of the model that is immutable on creation.
- lifecycle
Details string - A message describing the current state in more detail. For example, can be used to provide actionable information for a resource in Failed state.
- model
Id string - model
Training GetDetails Detection Model Model Training Detail[] - Specifies the details of the MSET model during the create call.
- model
Training GetResults Detection Model Model Training Result[] - Specifies the details for an Anomaly Detection model trained with MSET.
- project
Id string - The OCID of the project to associate with the model.
- state string
- The state of the model.
- {[key: string]: string}
- Usage of system tag keys. These predefined keys are scoped to namespaces. Example:
{"orcl-cloud.free-tier-retained": "true"}
- time
Created string - The time the the Model was created. An RFC3339 formatted datetime string.
- time
Updated string - The time the Model was updated. An RFC3339 formatted datetime string.
- compartment_
id str - The OCID for the model's compartment.
- Mapping[str, str]
- Defined tags for this resource. Each key is predefined and scoped to a namespace. Example:
{"foo-namespace.bar-key": "value"}
- description str
- A short description of the Model.
- display_
name str - A user-friendly display name for the resource. It does not have to be unique and can be modified. Avoid entering confidential information.
- Mapping[str, str]
- Simple key-value pair that is applied without any predefined name, type or scope. Exists for cross-compatibility only. Example:
{"bar-key": "value"}
- id str
- The OCID of the model that is immutable on creation.
- lifecycle_
details str - A message describing the current state in more detail. For example, can be used to provide actionable information for a resource in Failed state.
- model_
id str - model_
training_ Sequence[aianomalydetection.details Get Detection Model Model Training Detail] - Specifies the details of the MSET model during the create call.
- model_
training_ Sequence[aianomalydetection.results Get Detection Model Model Training Result] - Specifies the details for an Anomaly Detection model trained with MSET.
- project_
id str - The OCID of the project to associate with the model.
- state str
- The state of the model.
- Mapping[str, str]
- Usage of system tag keys. These predefined keys are scoped to namespaces. Example:
{"orcl-cloud.free-tier-retained": "true"}
- time_
created str - The time the the Model was created. An RFC3339 formatted datetime string.
- time_
updated str - The time the Model was updated. An RFC3339 formatted datetime string.
- compartment
Id String - The OCID for the model's compartment.
- Map<String>
- Defined tags for this resource. Each key is predefined and scoped to a namespace. Example:
{"foo-namespace.bar-key": "value"}
- description String
- A short description of the Model.
- display
Name String - A user-friendly display name for the resource. It does not have to be unique and can be modified. Avoid entering confidential information.
- Map<String>
- Simple key-value pair that is applied without any predefined name, type or scope. Exists for cross-compatibility only. Example:
{"bar-key": "value"}
- id String
- The OCID of the model that is immutable on creation.
- lifecycle
Details String - A message describing the current state in more detail. For example, can be used to provide actionable information for a resource in Failed state.
- model
Id String - model
Training List<Property Map>Details - Specifies the details of the MSET model during the create call.
- model
Training List<Property Map>Results - Specifies the details for an Anomaly Detection model trained with MSET.
- project
Id String - The OCID of the project to associate with the model.
- state String
- The state of the model.
- Map<String>
- Usage of system tag keys. These predefined keys are scoped to namespaces. Example:
{"orcl-cloud.free-tier-retained": "true"}
- time
Created String - The time the the Model was created. An RFC3339 formatted datetime string.
- time
Updated String - The time the Model was updated. An RFC3339 formatted datetime string.
Supporting Types
GetDetectionModelModelTrainingDetail
- Algorithm
Hint string - User can choose specific algorithm for training.
- Data
Asset List<string>Ids - The list of OCIDs of the data assets to train the model. The dataAssets have to be in the same project where the ai model would reside.
- Target
Fap double - A target model accuracy metric user provides as their requirement
- Training
Fraction double - Fraction of total data that is used for training the model. The remaining is used for validation of the model.
- Window
Size int - Window size defined during training or deduced by the algorithm.
- Algorithm
Hint string - User can choose specific algorithm for training.
- Data
Asset []stringIds - The list of OCIDs of the data assets to train the model. The dataAssets have to be in the same project where the ai model would reside.
- Target
Fap float64 - A target model accuracy metric user provides as their requirement
- Training
Fraction float64 - Fraction of total data that is used for training the model. The remaining is used for validation of the model.
- Window
Size int - Window size defined during training or deduced by the algorithm.
- algorithm
Hint String - User can choose specific algorithm for training.
- data
Asset List<String>Ids - The list of OCIDs of the data assets to train the model. The dataAssets have to be in the same project where the ai model would reside.
- target
Fap Double - A target model accuracy metric user provides as their requirement
- training
Fraction Double - Fraction of total data that is used for training the model. The remaining is used for validation of the model.
- window
Size Integer - Window size defined during training or deduced by the algorithm.
- algorithm
Hint string - User can choose specific algorithm for training.
- data
Asset string[]Ids - The list of OCIDs of the data assets to train the model. The dataAssets have to be in the same project where the ai model would reside.
- target
Fap number - A target model accuracy metric user provides as their requirement
- training
Fraction number - Fraction of total data that is used for training the model. The remaining is used for validation of the model.
- window
Size number - Window size defined during training or deduced by the algorithm.
- algorithm_
hint str - User can choose specific algorithm for training.
- data_
asset_ Sequence[str]ids - The list of OCIDs of the data assets to train the model. The dataAssets have to be in the same project where the ai model would reside.
- target_
fap float - A target model accuracy metric user provides as their requirement
- training_
fraction float - Fraction of total data that is used for training the model. The remaining is used for validation of the model.
- window_
size int - Window size defined during training or deduced by the algorithm.
- algorithm
Hint String - User can choose specific algorithm for training.
- data
Asset List<String>Ids - The list of OCIDs of the data assets to train the model. The dataAssets have to be in the same project where the ai model would reside.
- target
Fap Number - A target model accuracy metric user provides as their requirement
- training
Fraction Number - Fraction of total data that is used for training the model. The remaining is used for validation of the model.
- window
Size Number - Window size defined during training or deduced by the algorithm.
GetDetectionModelModelTrainingResult
- Fap double
- Accuracy metric for a signal.
- Is
Training boolGoal Achieved - A boolean value to indicate if train goal/targetFap is achieved for trained model
- Mae double
- Max
Inference intSync Rows - Multivariate
Fap double - The model accuracy metric on timestamp level.
- Rmse double
- Row
Reduction List<GetDetails Detection Model Model Training Result Row Reduction Detail> - Information regarding how/what row reduction methods will be applied. If this property is not present or is null, then it means row reduction is not applied.
- Signal
Details List<GetDetection Model Model Training Result Signal Detail> - The list of signal details.
- Warning string
- A warning message to explain the reason when targetFap cannot be achieved for trained model
- Window
Size int - Window size defined during training or deduced by the algorithm.
- Fap float64
- Accuracy metric for a signal.
- Is
Training boolGoal Achieved - A boolean value to indicate if train goal/targetFap is achieved for trained model
- Mae float64
- Max
Inference intSync Rows - Multivariate
Fap float64 - The model accuracy metric on timestamp level.
- Rmse float64
- Row
Reduction []GetDetails Detection Model Model Training Result Row Reduction Detail - Information regarding how/what row reduction methods will be applied. If this property is not present or is null, then it means row reduction is not applied.
- Signal
Details []GetDetection Model Model Training Result Signal Detail - The list of signal details.
- Warning string
- A warning message to explain the reason when targetFap cannot be achieved for trained model
- Window
Size int - Window size defined during training or deduced by the algorithm.
- fap Double
- Accuracy metric for a signal.
- is
Training BooleanGoal Achieved - A boolean value to indicate if train goal/targetFap is achieved for trained model
- mae Double
- max
Inference IntegerSync Rows - multivariate
Fap Double - The model accuracy metric on timestamp level.
- rmse Double
- row
Reduction List<GetDetails Detection Model Model Training Result Row Reduction Detail> - Information regarding how/what row reduction methods will be applied. If this property is not present or is null, then it means row reduction is not applied.
- signal
Details List<GetDetection Model Model Training Result Signal Detail> - The list of signal details.
- warning String
- A warning message to explain the reason when targetFap cannot be achieved for trained model
- window
Size Integer - Window size defined during training or deduced by the algorithm.
- fap number
- Accuracy metric for a signal.
- is
Training booleanGoal Achieved - A boolean value to indicate if train goal/targetFap is achieved for trained model
- mae number
- max
Inference numberSync Rows - multivariate
Fap number - The model accuracy metric on timestamp level.
- rmse number
- row
Reduction GetDetails Detection Model Model Training Result Row Reduction Detail[] - Information regarding how/what row reduction methods will be applied. If this property is not present or is null, then it means row reduction is not applied.
- signal
Details GetDetection Model Model Training Result Signal Detail[] - The list of signal details.
- warning string
- A warning message to explain the reason when targetFap cannot be achieved for trained model
- window
Size number - Window size defined during training or deduced by the algorithm.
- fap float
- Accuracy metric for a signal.
- is_
training_ boolgoal_ achieved - A boolean value to indicate if train goal/targetFap is achieved for trained model
- mae float
- max_
inference_ intsync_ rows - multivariate_
fap float - The model accuracy metric on timestamp level.
- rmse float
- row_
reduction_ Sequence[aianomalydetection.details Get Detection Model Model Training Result Row Reduction Detail] - Information regarding how/what row reduction methods will be applied. If this property is not present or is null, then it means row reduction is not applied.
- signal_
details Sequence[aianomalydetection.Get Detection Model Model Training Result Signal Detail] - The list of signal details.
- warning str
- A warning message to explain the reason when targetFap cannot be achieved for trained model
- window_
size int - Window size defined during training or deduced by the algorithm.
- fap Number
- Accuracy metric for a signal.
- is
Training BooleanGoal Achieved - A boolean value to indicate if train goal/targetFap is achieved for trained model
- mae Number
- max
Inference NumberSync Rows - multivariate
Fap Number - The model accuracy metric on timestamp level.
- rmse Number
- row
Reduction List<Property Map>Details - Information regarding how/what row reduction methods will be applied. If this property is not present or is null, then it means row reduction is not applied.
- signal
Details List<Property Map> - The list of signal details.
- warning String
- A warning message to explain the reason when targetFap cannot be achieved for trained model
- window
Size Number - Window size defined during training or deduced by the algorithm.
GetDetectionModelModelTrainingResultRowReductionDetail
- Is
Reduction boolEnabled - A boolean value to indicate if row reduction is applied
- Reduction
Method string - Method for row reduction:
- DELETE_ROW - delete rows with equal intervals
- AVERAGE_ROW - average multiple rows to one row
- Reduction
Percentage double - A percentage to reduce data size down to on top of original data
- Is
Reduction boolEnabled - A boolean value to indicate if row reduction is applied
- Reduction
Method string - Method for row reduction:
- DELETE_ROW - delete rows with equal intervals
- AVERAGE_ROW - average multiple rows to one row
- Reduction
Percentage float64 - A percentage to reduce data size down to on top of original data
- is
Reduction BooleanEnabled - A boolean value to indicate if row reduction is applied
- reduction
Method String - Method for row reduction:
- DELETE_ROW - delete rows with equal intervals
- AVERAGE_ROW - average multiple rows to one row
- reduction
Percentage Double - A percentage to reduce data size down to on top of original data
- is
Reduction booleanEnabled - A boolean value to indicate if row reduction is applied
- reduction
Method string - Method for row reduction:
- DELETE_ROW - delete rows with equal intervals
- AVERAGE_ROW - average multiple rows to one row
- reduction
Percentage number - A percentage to reduce data size down to on top of original data
- is_
reduction_ boolenabled - A boolean value to indicate if row reduction is applied
- reduction_
method str - Method for row reduction:
- DELETE_ROW - delete rows with equal intervals
- AVERAGE_ROW - average multiple rows to one row
- reduction_
percentage float - A percentage to reduce data size down to on top of original data
- is
Reduction BooleanEnabled - A boolean value to indicate if row reduction is applied
- reduction
Method String - Method for row reduction:
- DELETE_ROW - delete rows with equal intervals
- AVERAGE_ROW - average multiple rows to one row
- reduction
Percentage Number - A percentage to reduce data size down to on top of original data
GetDetectionModelModelTrainingResultSignalDetail
- Details string
- detailed information for a signal.
- Fap double
- Accuracy metric for a signal.
- Is
Quantized bool - A boolean value to indicate if a signal is quantized or not.
- Max double
- Max value within a signal.
- Min double
- Min value within a signal.
- Mvi
Ratio double - The ratio of missing values in a signal filled/imputed by the IDP algorithm.
- Signal
Name string - The name of a signal.
- Status string
- Status of the signal:
- ACCEPTED - the signal is used for training the model
- DROPPED - the signal does not meet requirement, and is dropped before training the model.
- OTHER - placeholder for other status
- Std double
- Standard deviation of values within a signal.
- Details string
- detailed information for a signal.
- Fap float64
- Accuracy metric for a signal.
- Is
Quantized bool - A boolean value to indicate if a signal is quantized or not.
- Max float64
- Max value within a signal.
- Min float64
- Min value within a signal.
- Mvi
Ratio float64 - The ratio of missing values in a signal filled/imputed by the IDP algorithm.
- Signal
Name string - The name of a signal.
- Status string
- Status of the signal:
- ACCEPTED - the signal is used for training the model
- DROPPED - the signal does not meet requirement, and is dropped before training the model.
- OTHER - placeholder for other status
- Std float64
- Standard deviation of values within a signal.
- details String
- detailed information for a signal.
- fap Double
- Accuracy metric for a signal.
- is
Quantized Boolean - A boolean value to indicate if a signal is quantized or not.
- max Double
- Max value within a signal.
- min Double
- Min value within a signal.
- mvi
Ratio Double - The ratio of missing values in a signal filled/imputed by the IDP algorithm.
- signal
Name String - The name of a signal.
- status String
- Status of the signal:
- ACCEPTED - the signal is used for training the model
- DROPPED - the signal does not meet requirement, and is dropped before training the model.
- OTHER - placeholder for other status
- std Double
- Standard deviation of values within a signal.
- details string
- detailed information for a signal.
- fap number
- Accuracy metric for a signal.
- is
Quantized boolean - A boolean value to indicate if a signal is quantized or not.
- max number
- Max value within a signal.
- min number
- Min value within a signal.
- mvi
Ratio number - The ratio of missing values in a signal filled/imputed by the IDP algorithm.
- signal
Name string - The name of a signal.
- status string
- Status of the signal:
- ACCEPTED - the signal is used for training the model
- DROPPED - the signal does not meet requirement, and is dropped before training the model.
- OTHER - placeholder for other status
- std number
- Standard deviation of values within a signal.
- details str
- detailed information for a signal.
- fap float
- Accuracy metric for a signal.
- is_
quantized bool - A boolean value to indicate if a signal is quantized or not.
- max float
- Max value within a signal.
- min float
- Min value within a signal.
- mvi_
ratio float - The ratio of missing values in a signal filled/imputed by the IDP algorithm.
- signal_
name str - The name of a signal.
- status str
- Status of the signal:
- ACCEPTED - the signal is used for training the model
- DROPPED - the signal does not meet requirement, and is dropped before training the model.
- OTHER - placeholder for other status
- std float
- Standard deviation of values within a signal.
- details String
- detailed information for a signal.
- fap Number
- Accuracy metric for a signal.
- is
Quantized Boolean - A boolean value to indicate if a signal is quantized or not.
- max Number
- Max value within a signal.
- min Number
- Min value within a signal.
- mvi
Ratio Number - The ratio of missing values in a signal filled/imputed by the IDP algorithm.
- signal
Name String - The name of a signal.
- status String
- Status of the signal:
- ACCEPTED - the signal is used for training the model
- DROPPED - the signal does not meet requirement, and is dropped before training the model.
- OTHER - placeholder for other status
- std Number
- Standard deviation of values within a signal.
Package Details
- Repository
- oci pulumi/pulumi-oci
- License
- Apache-2.0
- Notes
- This Pulumi package is based on the
oci
Terraform Provider.