This is the latest version of Azure Native. Use the Azure Native v1 docs if using the v1 version of this package.
Azure Native v2.63.0 published on Tuesday, Sep 24, 2024 by Pulumi
azure-native.machinelearningservices.getJob
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This is the latest version of Azure Native. Use the Azure Native v1 docs if using the v1 version of this package.
Azure Native v2.63.0 published on Tuesday, Sep 24, 2024 by Pulumi
Azure Resource Manager resource envelope. Azure REST API version: 2023-04-01.
Other available API versions: 2021-03-01-preview, 2022-02-01-preview, 2023-04-01-preview, 2023-06-01-preview, 2023-08-01-preview, 2023-10-01, 2024-01-01-preview, 2024-04-01, 2024-04-01-preview, 2024-07-01-preview.
Using getJob
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 getJob(args: GetJobArgs, opts?: InvokeOptions): Promise<GetJobResult>
function getJobOutput(args: GetJobOutputArgs, opts?: InvokeOptions): Output<GetJobResult>
def get_job(id: Optional[str] = None,
resource_group_name: Optional[str] = None,
workspace_name: Optional[str] = None,
opts: Optional[InvokeOptions] = None) -> GetJobResult
def get_job_output(id: Optional[pulumi.Input[str]] = None,
resource_group_name: Optional[pulumi.Input[str]] = None,
workspace_name: Optional[pulumi.Input[str]] = None,
opts: Optional[InvokeOptions] = None) -> Output[GetJobResult]
func LookupJob(ctx *Context, args *LookupJobArgs, opts ...InvokeOption) (*LookupJobResult, error)
func LookupJobOutput(ctx *Context, args *LookupJobOutputArgs, opts ...InvokeOption) LookupJobResultOutput
> Note: This function is named LookupJob
in the Go SDK.
public static class GetJob
{
public static Task<GetJobResult> InvokeAsync(GetJobArgs args, InvokeOptions? opts = null)
public static Output<GetJobResult> Invoke(GetJobInvokeArgs args, InvokeOptions? opts = null)
}
public static CompletableFuture<GetJobResult> getJob(GetJobArgs args, InvokeOptions options)
// Output-based functions aren't available in Java yet
fn::invoke:
function: azure-native:machinelearningservices:getJob
arguments:
# arguments dictionary
The following arguments are supported:
- Id string
- The name and identifier for the Job. This is case-sensitive.
- Resource
Group stringName - The name of the resource group. The name is case insensitive.
- Workspace
Name string - Name of Azure Machine Learning workspace.
- Id string
- The name and identifier for the Job. This is case-sensitive.
- Resource
Group stringName - The name of the resource group. The name is case insensitive.
- Workspace
Name string - Name of Azure Machine Learning workspace.
- id String
- The name and identifier for the Job. This is case-sensitive.
- resource
Group StringName - The name of the resource group. The name is case insensitive.
- workspace
Name String - Name of Azure Machine Learning workspace.
- id string
- The name and identifier for the Job. This is case-sensitive.
- resource
Group stringName - The name of the resource group. The name is case insensitive.
- workspace
Name string - Name of Azure Machine Learning workspace.
- id str
- The name and identifier for the Job. This is case-sensitive.
- resource_
group_ strname - The name of the resource group. The name is case insensitive.
- workspace_
name str - Name of Azure Machine Learning workspace.
- id String
- The name and identifier for the Job. This is case-sensitive.
- resource
Group StringName - The name of the resource group. The name is case insensitive.
- workspace
Name String - Name of Azure Machine Learning workspace.
getJob Result
The following output properties are available:
- Id string
- Fully qualified resource ID for the resource. Ex - /subscriptions/{subscriptionId}/resourceGroups/{resourceGroupName}/providers/{resourceProviderNamespace}/{resourceType}/{resourceName}
- Job
Base Pulumi.Properties Azure | Pulumi.Native. Machine Learning Services. Outputs. Auto MLJob Response Azure | Pulumi.Native. Machine Learning Services. Outputs. Command Job Response Azure | Pulumi.Native. Machine Learning Services. Outputs. Pipeline Job Response Azure Native. Machine Learning Services. Outputs. Sweep Job Response - [Required] Additional attributes of the entity.
- Name string
- The name of the resource
- System
Data Pulumi.Azure Native. Machine Learning Services. Outputs. System Data Response - Azure Resource Manager metadata containing createdBy and modifiedBy information.
- Type string
- The type of the resource. E.g. "Microsoft.Compute/virtualMachines" or "Microsoft.Storage/storageAccounts"
- Id string
- Fully qualified resource ID for the resource. Ex - /subscriptions/{subscriptionId}/resourceGroups/{resourceGroupName}/providers/{resourceProviderNamespace}/{resourceType}/{resourceName}
- Job
Base AutoProperties MLJob | CommandResponse Job | PipelineResponse Job | SweepResponse Job Response - [Required] Additional attributes of the entity.
- Name string
- The name of the resource
- System
Data SystemData Response - Azure Resource Manager metadata containing createdBy and modifiedBy information.
- Type string
- The type of the resource. E.g. "Microsoft.Compute/virtualMachines" or "Microsoft.Storage/storageAccounts"
- id String
- Fully qualified resource ID for the resource. Ex - /subscriptions/{subscriptionId}/resourceGroups/{resourceGroupName}/providers/{resourceProviderNamespace}/{resourceType}/{resourceName}
- job
Base AutoProperties MLJob | CommandResponse Job | PipelineResponse Job | SweepResponse Job Response - [Required] Additional attributes of the entity.
- name String
- The name of the resource
- system
Data SystemData Response - Azure Resource Manager metadata containing createdBy and modifiedBy information.
- type String
- The type of the resource. E.g. "Microsoft.Compute/virtualMachines" or "Microsoft.Storage/storageAccounts"
- id string
- Fully qualified resource ID for the resource. Ex - /subscriptions/{subscriptionId}/resourceGroups/{resourceGroupName}/providers/{resourceProviderNamespace}/{resourceType}/{resourceName}
- job
Base AutoProperties MLJob | CommandResponse Job | PipelineResponse Job | SweepResponse Job Response - [Required] Additional attributes of the entity.
- name string
- The name of the resource
- system
Data SystemData Response - Azure Resource Manager metadata containing createdBy and modifiedBy information.
- type string
- The type of the resource. E.g. "Microsoft.Compute/virtualMachines" or "Microsoft.Storage/storageAccounts"
- id str
- Fully qualified resource ID for the resource. Ex - /subscriptions/{subscriptionId}/resourceGroups/{resourceGroupName}/providers/{resourceProviderNamespace}/{resourceType}/{resourceName}
- job_
base_ Autoproperties MLJob | CommandResponse Job | PipelineResponse Job | SweepResponse Job Response - [Required] Additional attributes of the entity.
- name str
- The name of the resource
- system_
data SystemData Response - Azure Resource Manager metadata containing createdBy and modifiedBy information.
- type str
- The type of the resource. E.g. "Microsoft.Compute/virtualMachines" or "Microsoft.Storage/storageAccounts"
- id String
- Fully qualified resource ID for the resource. Ex - /subscriptions/{subscriptionId}/resourceGroups/{resourceGroupName}/providers/{resourceProviderNamespace}/{resourceType}/{resourceName}
- job
Base Property Map | Property Map | Property Map | Property MapProperties - [Required] Additional attributes of the entity.
- name String
- The name of the resource
- system
Data Property Map - Azure Resource Manager metadata containing createdBy and modifiedBy information.
- type String
- The type of the resource. E.g. "Microsoft.Compute/virtualMachines" or "Microsoft.Storage/storageAccounts"
Supporting Types
AllNodesResponse
AmlTokenResponse
AutoForecastHorizonResponse
AutoMLJobResponse
- Status string
- Status of the job.
- Task
Details Pulumi.Azure | Pulumi.Native. Machine Learning Services. Inputs. Classification Response Azure | Pulumi.Native. Machine Learning Services. Inputs. Forecasting Response Azure | Pulumi.Native. Machine Learning Services. Inputs. Image Classification Response Azure | Pulumi.Native. Machine Learning Services. Inputs. Image Classification Multilabel Response Azure | Pulumi.Native. Machine Learning Services. Inputs. Image Instance Segmentation Response Azure | Pulumi.Native. Machine Learning Services. Inputs. Image Object Detection Response Azure | Pulumi.Native. Machine Learning Services. Inputs. Regression Response Azure | Pulumi.Native. Machine Learning Services. Inputs. Text Classification Response Azure | Pulumi.Native. Machine Learning Services. Inputs. Text Classification Multilabel Response Azure Native. Machine Learning Services. Inputs. Text Ner Response - [Required] This represents scenario which can be one of Tables/NLP/Image
- Component
Id string - ARM resource ID of the component resource.
- Compute
Id string - ARM resource ID of the compute resource.
- Description string
- The asset description text.
- Display
Name string - Display name of job.
- Environment
Id string - The ARM resource ID of the Environment specification for the job. This is optional value to provide, if not provided, AutoML will default this to Production AutoML curated environment version when running the job.
- Environment
Variables Dictionary<string, string> - Environment variables included in the job.
- Experiment
Name string - The name of the experiment the job belongs to. If not set, the job is placed in the "Default" experiment.
- Identity
Pulumi.
Azure | Pulumi.Native. Machine Learning Services. Inputs. Aml Token Response Azure | Pulumi.Native. Machine Learning Services. Inputs. Managed Identity Response Azure Native. Machine Learning Services. Inputs. User Identity Response - Identity configuration. If set, this should be one of AmlToken, ManagedIdentity, UserIdentity or null. Defaults to AmlToken if null.
- Is
Archived bool - Is the asset archived?
- Outputs Dictionary<string, object>
- Mapping of output data bindings used in the job.
- Properties Dictionary<string, string>
- The asset property dictionary.
- Resources
Pulumi.
Azure Native. Machine Learning Services. Inputs. Job Resource Configuration Response - Compute Resource configuration for the job.
- Services
Dictionary<string, Pulumi.
Azure Native. Machine Learning Services. Inputs. Job Service Response> - List of JobEndpoints. For local jobs, a job endpoint will have an endpoint value of FileStreamObject.
- Dictionary<string, string>
- Tag dictionary. Tags can be added, removed, and updated.
- Status string
- Status of the job.
- Task
Details ClassificationResponse | ForecastingResponse | ImageClassification | ImageResponse Classification | ImageMultilabel Response Instance | ImageSegmentation Response Object | RegressionDetection Response Response | TextClassification | TextResponse Classification | TextMultilabel Response Ner Response - [Required] This represents scenario which can be one of Tables/NLP/Image
- Component
Id string - ARM resource ID of the component resource.
- Compute
Id string - ARM resource ID of the compute resource.
- Description string
- The asset description text.
- Display
Name string - Display name of job.
- Environment
Id string - The ARM resource ID of the Environment specification for the job. This is optional value to provide, if not provided, AutoML will default this to Production AutoML curated environment version when running the job.
- Environment
Variables map[string]string - Environment variables included in the job.
- Experiment
Name string - The name of the experiment the job belongs to. If not set, the job is placed in the "Default" experiment.
- Identity
Aml
Token | ManagedResponse Identity | UserResponse Identity Response - Identity configuration. If set, this should be one of AmlToken, ManagedIdentity, UserIdentity or null. Defaults to AmlToken if null.
- Is
Archived bool - Is the asset archived?
- Outputs map[string]interface{}
- Mapping of output data bindings used in the job.
- Properties map[string]string
- The asset property dictionary.
- Resources
Job
Resource Configuration Response - Compute Resource configuration for the job.
- Services
map[string]Job
Service Response - List of JobEndpoints. For local jobs, a job endpoint will have an endpoint value of FileStreamObject.
- map[string]string
- Tag dictionary. Tags can be added, removed, and updated.
- status String
- Status of the job.
- task
Details ClassificationResponse | ForecastingResponse | ImageClassification | ImageResponse Classification | ImageMultilabel Response Instance | ImageSegmentation Response Object | RegressionDetection Response Response | TextClassification | TextResponse Classification | TextMultilabel Response Ner Response - [Required] This represents scenario which can be one of Tables/NLP/Image
- component
Id String - ARM resource ID of the component resource.
- compute
Id String - ARM resource ID of the compute resource.
- description String
- The asset description text.
- display
Name String - Display name of job.
- environment
Id String - The ARM resource ID of the Environment specification for the job. This is optional value to provide, if not provided, AutoML will default this to Production AutoML curated environment version when running the job.
- environment
Variables Map<String,String> - Environment variables included in the job.
- experiment
Name String - The name of the experiment the job belongs to. If not set, the job is placed in the "Default" experiment.
- identity
Aml
Token | ManagedResponse Identity | UserResponse Identity Response - Identity configuration. If set, this should be one of AmlToken, ManagedIdentity, UserIdentity or null. Defaults to AmlToken if null.
- is
Archived Boolean - Is the asset archived?
- outputs Map<String,Object>
- Mapping of output data bindings used in the job.
- properties Map<String,String>
- The asset property dictionary.
- resources
Job
Resource Configuration Response - Compute Resource configuration for the job.
- services
Map<String,Job
Service Response> - List of JobEndpoints. For local jobs, a job endpoint will have an endpoint value of FileStreamObject.
- Map<String,String>
- Tag dictionary. Tags can be added, removed, and updated.
- status string
- Status of the job.
- task
Details ClassificationResponse | ForecastingResponse | ImageClassification | ImageResponse Classification | ImageMultilabel Response Instance | ImageSegmentation Response Object | RegressionDetection Response Response | TextClassification | TextResponse Classification | TextMultilabel Response Ner Response - [Required] This represents scenario which can be one of Tables/NLP/Image
- component
Id string - ARM resource ID of the component resource.
- compute
Id string - ARM resource ID of the compute resource.
- description string
- The asset description text.
- display
Name string - Display name of job.
- environment
Id string - The ARM resource ID of the Environment specification for the job. This is optional value to provide, if not provided, AutoML will default this to Production AutoML curated environment version when running the job.
- environment
Variables {[key: string]: string} - Environment variables included in the job.
- experiment
Name string - The name of the experiment the job belongs to. If not set, the job is placed in the "Default" experiment.
- identity
Aml
Token | ManagedResponse Identity | UserResponse Identity Response - Identity configuration. If set, this should be one of AmlToken, ManagedIdentity, UserIdentity or null. Defaults to AmlToken if null.
- is
Archived boolean - Is the asset archived?
- outputs
{[key: string]: Custom
Model Job Output Response | MLFlow Model Job Output Response | MLTable Job Output Response | Triton Model Job Output Response | Uri File Job Output Response | Uri Folder Job Output Response} - Mapping of output data bindings used in the job.
- properties {[key: string]: string}
- The asset property dictionary.
- resources
Job
Resource Configuration Response - Compute Resource configuration for the job.
- services
{[key: string]: Job
Service Response} - List of JobEndpoints. For local jobs, a job endpoint will have an endpoint value of FileStreamObject.
- {[key: string]: string}
- Tag dictionary. Tags can be added, removed, and updated.
- status str
- Status of the job.
- task_
details ClassificationResponse | ForecastingResponse | ImageClassification | ImageResponse Classification | ImageMultilabel Response Instance | ImageSegmentation Response Object | RegressionDetection Response Response | TextClassification | TextResponse Classification | TextMultilabel Response Ner Response - [Required] This represents scenario which can be one of Tables/NLP/Image
- component_
id str - ARM resource ID of the component resource.
- compute_
id str - ARM resource ID of the compute resource.
- description str
- The asset description text.
- display_
name str - Display name of job.
- environment_
id str - The ARM resource ID of the Environment specification for the job. This is optional value to provide, if not provided, AutoML will default this to Production AutoML curated environment version when running the job.
- environment_
variables Mapping[str, str] - Environment variables included in the job.
- experiment_
name str - The name of the experiment the job belongs to. If not set, the job is placed in the "Default" experiment.
- identity
Aml
Token | ManagedResponse Identity | UserResponse Identity Response - Identity configuration. If set, this should be one of AmlToken, ManagedIdentity, UserIdentity or null. Defaults to AmlToken if null.
- is_
archived bool - Is the asset archived?
- outputs
Mapping[str, Union[Custom
Model Job Output Response, MLFlow Model Job Output Response, MLTable Job Output Response, Triton Model Job Output Response, Uri File Job Output Response, Uri Folder Job Output Response]] - Mapping of output data bindings used in the job.
- properties Mapping[str, str]
- The asset property dictionary.
- resources
Job
Resource Configuration Response - Compute Resource configuration for the job.
- services
Mapping[str, Job
Service Response] - List of JobEndpoints. For local jobs, a job endpoint will have an endpoint value of FileStreamObject.
- Mapping[str, str]
- Tag dictionary. Tags can be added, removed, and updated.
- status String
- Status of the job.
- task
Details Property Map | Property Map | Property Map | Property Map | Property Map | Property Map | Property Map | Property Map | Property Map | Property Map - [Required] This represents scenario which can be one of Tables/NLP/Image
- component
Id String - ARM resource ID of the component resource.
- compute
Id String - ARM resource ID of the compute resource.
- description String
- The asset description text.
- display
Name String - Display name of job.
- environment
Id String - The ARM resource ID of the Environment specification for the job. This is optional value to provide, if not provided, AutoML will default this to Production AutoML curated environment version when running the job.
- environment
Variables Map<String> - Environment variables included in the job.
- experiment
Name String - The name of the experiment the job belongs to. If not set, the job is placed in the "Default" experiment.
- identity Property Map | Property Map | Property Map
- Identity configuration. If set, this should be one of AmlToken, ManagedIdentity, UserIdentity or null. Defaults to AmlToken if null.
- is
Archived Boolean - Is the asset archived?
- outputs Map<Property Map | Property Map | Property Map | Property Map | Property Map | Property Map>
- Mapping of output data bindings used in the job.
- properties Map<String>
- The asset property dictionary.
- resources Property Map
- Compute Resource configuration for the job.
- services Map<Property Map>
- List of JobEndpoints. For local jobs, a job endpoint will have an endpoint value of FileStreamObject.
- Map<String>
- Tag dictionary. Tags can be added, removed, and updated.
AutoNCrossValidationsResponse
AutoSeasonalityResponse
AutoTargetLagsResponse
AutoTargetRollingWindowSizeResponse
BanditPolicyResponse
- Delay
Evaluation int - Number of intervals by which to delay the first evaluation.
- Evaluation
Interval int - Interval (number of runs) between policy evaluations.
- Slack
Amount double - Absolute distance allowed from the best performing run.
- Slack
Factor double - Ratio of the allowed distance from the best performing run.
- Delay
Evaluation int - Number of intervals by which to delay the first evaluation.
- Evaluation
Interval int - Interval (number of runs) between policy evaluations.
- Slack
Amount float64 - Absolute distance allowed from the best performing run.
- Slack
Factor float64 - Ratio of the allowed distance from the best performing run.
- delay
Evaluation Integer - Number of intervals by which to delay the first evaluation.
- evaluation
Interval Integer - Interval (number of runs) between policy evaluations.
- slack
Amount Double - Absolute distance allowed from the best performing run.
- slack
Factor Double - Ratio of the allowed distance from the best performing run.
- delay
Evaluation number - Number of intervals by which to delay the first evaluation.
- evaluation
Interval number - Interval (number of runs) between policy evaluations.
- slack
Amount number - Absolute distance allowed from the best performing run.
- slack
Factor number - Ratio of the allowed distance from the best performing run.
- delay_
evaluation int - Number of intervals by which to delay the first evaluation.
- evaluation_
interval int - Interval (number of runs) between policy evaluations.
- slack_
amount float - Absolute distance allowed from the best performing run.
- slack_
factor float - Ratio of the allowed distance from the best performing run.
- delay
Evaluation Number - Number of intervals by which to delay the first evaluation.
- evaluation
Interval Number - Interval (number of runs) between policy evaluations.
- slack
Amount Number - Absolute distance allowed from the best performing run.
- slack
Factor Number - Ratio of the allowed distance from the best performing run.
BayesianSamplingAlgorithmResponse
ClassificationResponse
- Training
Data Pulumi.Azure Native. Machine Learning Services. Inputs. MLTable Job Input Response - [Required] Training data input.
- Cv
Split List<string>Column Names - Columns to use for CVSplit data.
- Featurization
Settings Pulumi.Azure Native. Machine Learning Services. Inputs. Table Vertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- Limit
Settings Pulumi.Azure Native. Machine Learning Services. Inputs. Table Vertical Limit Settings Response - Execution constraints for AutoMLJob.
- Log
Verbosity string - Log verbosity for the job.
- NCross
Validations Pulumi.Azure | Pulumi.Native. Machine Learning Services. Inputs. Auto NCross Validations Response Azure Native. Machine Learning Services. Inputs. Custom NCross Validations Response - Number of cross validation folds to be applied on training dataset when validation dataset is not provided.
- Positive
Label string - Positive label for binary metrics calculation.
- Primary
Metric string - Primary metric for the task.
- Target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- Test
Data Pulumi.Azure Native. Machine Learning Services. Inputs. MLTable Job Input Response - Test data input.
- Test
Data doubleSize - The fraction of test dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- Training
Settings Pulumi.Azure Native. Machine Learning Services. Inputs. Classification Training Settings Response - Inputs for training phase for an AutoML Job.
- Validation
Data Pulumi.Azure Native. Machine Learning Services. Inputs. MLTable Job Input Response - Validation data inputs.
- Validation
Data doubleSize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- Weight
Column stringName - The name of the sample weight column. Automated ML supports a weighted column as an input, causing rows in the data to be weighted up or down.
- Training
Data MLTableJob Input Response - [Required] Training data input.
- Cv
Split []stringColumn Names - Columns to use for CVSplit data.
- Featurization
Settings TableVertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- Limit
Settings TableVertical Limit Settings Response - Execution constraints for AutoMLJob.
- Log
Verbosity string - Log verbosity for the job.
- NCross
Validations AutoNCross | CustomValidations Response NCross Validations Response - Number of cross validation folds to be applied on training dataset when validation dataset is not provided.
- Positive
Label string - Positive label for binary metrics calculation.
- Primary
Metric string - Primary metric for the task.
- Target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- Test
Data MLTableJob Input Response - Test data input.
- Test
Data float64Size - The fraction of test dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- Training
Settings ClassificationTraining Settings Response - Inputs for training phase for an AutoML Job.
- Validation
Data MLTableJob Input Response - Validation data inputs.
- Validation
Data float64Size - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- Weight
Column stringName - The name of the sample weight column. Automated ML supports a weighted column as an input, causing rows in the data to be weighted up or down.
- training
Data MLTableJob Input Response - [Required] Training data input.
- cv
Split List<String>Column Names - Columns to use for CVSplit data.
- featurization
Settings TableVertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- limit
Settings TableVertical Limit Settings Response - Execution constraints for AutoMLJob.
- log
Verbosity String - Log verbosity for the job.
- n
Cross AutoValidations NCross | CustomValidations Response NCross Validations Response - Number of cross validation folds to be applied on training dataset when validation dataset is not provided.
- positive
Label String - Positive label for binary metrics calculation.
- primary
Metric String - Primary metric for the task.
- target
Column StringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- test
Data MLTableJob Input Response - Test data input.
- test
Data DoubleSize - The fraction of test dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- training
Settings ClassificationTraining Settings Response - Inputs for training phase for an AutoML Job.
- validation
Data MLTableJob Input Response - Validation data inputs.
- validation
Data DoubleSize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- weight
Column StringName - The name of the sample weight column. Automated ML supports a weighted column as an input, causing rows in the data to be weighted up or down.
- training
Data MLTableJob Input Response - [Required] Training data input.
- cv
Split string[]Column Names - Columns to use for CVSplit data.
- featurization
Settings TableVertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- limit
Settings TableVertical Limit Settings Response - Execution constraints for AutoMLJob.
- log
Verbosity string - Log verbosity for the job.
- n
Cross AutoValidations NCross | CustomValidations Response NCross Validations Response - Number of cross validation folds to be applied on training dataset when validation dataset is not provided.
- positive
Label string - Positive label for binary metrics calculation.
- primary
Metric string - Primary metric for the task.
- target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- test
Data MLTableJob Input Response - Test data input.
- test
Data numberSize - The fraction of test dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- training
Settings ClassificationTraining Settings Response - Inputs for training phase for an AutoML Job.
- validation
Data MLTableJob Input Response - Validation data inputs.
- validation
Data numberSize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- weight
Column stringName - The name of the sample weight column. Automated ML supports a weighted column as an input, causing rows in the data to be weighted up or down.
- training_
data MLTableJob Input Response - [Required] Training data input.
- cv_
split_ Sequence[str]column_ names - Columns to use for CVSplit data.
- featurization_
settings TableVertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- limit_
settings TableVertical Limit Settings Response - Execution constraints for AutoMLJob.
- log_
verbosity str - Log verbosity for the job.
- n_
cross_ Autovalidations NCross | CustomValidations Response NCross Validations Response - Number of cross validation folds to be applied on training dataset when validation dataset is not provided.
- positive_
label str - Positive label for binary metrics calculation.
- primary_
metric str - Primary metric for the task.
- target_
column_ strname - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- test_
data MLTableJob Input Response - Test data input.
- test_
data_ floatsize - The fraction of test dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- training_
settings ClassificationTraining Settings Response - Inputs for training phase for an AutoML Job.
- validation_
data MLTableJob Input Response - Validation data inputs.
- validation_
data_ floatsize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- weight_
column_ strname - The name of the sample weight column. Automated ML supports a weighted column as an input, causing rows in the data to be weighted up or down.
- training
Data Property Map - [Required] Training data input.
- cv
Split List<String>Column Names - Columns to use for CVSplit data.
- featurization
Settings Property Map - Featurization inputs needed for AutoML job.
- limit
Settings Property Map - Execution constraints for AutoMLJob.
- log
Verbosity String - Log verbosity for the job.
- n
Cross Property Map | Property MapValidations - Number of cross validation folds to be applied on training dataset when validation dataset is not provided.
- positive
Label String - Positive label for binary metrics calculation.
- primary
Metric String - Primary metric for the task.
- target
Column StringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- test
Data Property Map - Test data input.
- test
Data NumberSize - The fraction of test dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- training
Settings Property Map - Inputs for training phase for an AutoML Job.
- validation
Data Property Map - Validation data inputs.
- validation
Data NumberSize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- weight
Column StringName - The name of the sample weight column. Automated ML supports a weighted column as an input, causing rows in the data to be weighted up or down.
ClassificationTrainingSettingsResponse
- Allowed
Training List<string>Algorithms - Allowed models for classification task.
- Blocked
Training List<string>Algorithms - Blocked models for classification task.
- Enable
Dnn boolTraining - Enable recommendation of DNN models.
- Enable
Model boolExplainability - Flag to turn on explainability on best model.
- Enable
Onnx boolCompatible Models - Flag for enabling onnx compatible models.
- Enable
Stack boolEnsemble - Enable stack ensemble run.
- Enable
Vote boolEnsemble - Enable voting ensemble run.
- Ensemble
Model stringDownload Timeout - During VotingEnsemble and StackEnsemble model generation, multiple fitted models from the previous child runs are downloaded. Configure this parameter with a higher value than 300 secs, if more time is needed.
- Stack
Ensemble Pulumi.Settings Azure Native. Machine Learning Services. Inputs. Stack Ensemble Settings Response - Stack ensemble settings for stack ensemble run.
- Allowed
Training []stringAlgorithms - Allowed models for classification task.
- Blocked
Training []stringAlgorithms - Blocked models for classification task.
- Enable
Dnn boolTraining - Enable recommendation of DNN models.
- Enable
Model boolExplainability - Flag to turn on explainability on best model.
- Enable
Onnx boolCompatible Models - Flag for enabling onnx compatible models.
- Enable
Stack boolEnsemble - Enable stack ensemble run.
- Enable
Vote boolEnsemble - Enable voting ensemble run.
- Ensemble
Model stringDownload Timeout - During VotingEnsemble and StackEnsemble model generation, multiple fitted models from the previous child runs are downloaded. Configure this parameter with a higher value than 300 secs, if more time is needed.
- Stack
Ensemble StackSettings Ensemble Settings Response - Stack ensemble settings for stack ensemble run.
- allowed
Training List<String>Algorithms - Allowed models for classification task.
- blocked
Training List<String>Algorithms - Blocked models for classification task.
- enable
Dnn BooleanTraining - Enable recommendation of DNN models.
- enable
Model BooleanExplainability - Flag to turn on explainability on best model.
- enable
Onnx BooleanCompatible Models - Flag for enabling onnx compatible models.
- enable
Stack BooleanEnsemble - Enable stack ensemble run.
- enable
Vote BooleanEnsemble - Enable voting ensemble run.
- ensemble
Model StringDownload Timeout - During VotingEnsemble and StackEnsemble model generation, multiple fitted models from the previous child runs are downloaded. Configure this parameter with a higher value than 300 secs, if more time is needed.
- stack
Ensemble StackSettings Ensemble Settings Response - Stack ensemble settings for stack ensemble run.
- allowed
Training string[]Algorithms - Allowed models for classification task.
- blocked
Training string[]Algorithms - Blocked models for classification task.
- enable
Dnn booleanTraining - Enable recommendation of DNN models.
- enable
Model booleanExplainability - Flag to turn on explainability on best model.
- enable
Onnx booleanCompatible Models - Flag for enabling onnx compatible models.
- enable
Stack booleanEnsemble - Enable stack ensemble run.
- enable
Vote booleanEnsemble - Enable voting ensemble run.
- ensemble
Model stringDownload Timeout - During VotingEnsemble and StackEnsemble model generation, multiple fitted models from the previous child runs are downloaded. Configure this parameter with a higher value than 300 secs, if more time is needed.
- stack
Ensemble StackSettings Ensemble Settings Response - Stack ensemble settings for stack ensemble run.
- allowed_
training_ Sequence[str]algorithms - Allowed models for classification task.
- blocked_
training_ Sequence[str]algorithms - Blocked models for classification task.
- enable_
dnn_ booltraining - Enable recommendation of DNN models.
- enable_
model_ boolexplainability - Flag to turn on explainability on best model.
- enable_
onnx_ boolcompatible_ models - Flag for enabling onnx compatible models.
- enable_
stack_ boolensemble - Enable stack ensemble run.
- enable_
vote_ boolensemble - Enable voting ensemble run.
- ensemble_
model_ strdownload_ timeout - During VotingEnsemble and StackEnsemble model generation, multiple fitted models from the previous child runs are downloaded. Configure this parameter with a higher value than 300 secs, if more time is needed.
- stack_
ensemble_ Stacksettings Ensemble Settings Response - Stack ensemble settings for stack ensemble run.
- allowed
Training List<String>Algorithms - Allowed models for classification task.
- blocked
Training List<String>Algorithms - Blocked models for classification task.
- enable
Dnn BooleanTraining - Enable recommendation of DNN models.
- enable
Model BooleanExplainability - Flag to turn on explainability on best model.
- enable
Onnx BooleanCompatible Models - Flag for enabling onnx compatible models.
- enable
Stack BooleanEnsemble - Enable stack ensemble run.
- enable
Vote BooleanEnsemble - Enable voting ensemble run.
- ensemble
Model StringDownload Timeout - During VotingEnsemble and StackEnsemble model generation, multiple fitted models from the previous child runs are downloaded. Configure this parameter with a higher value than 300 secs, if more time is needed.
- stack
Ensemble Property MapSettings - Stack ensemble settings for stack ensemble run.
ColumnTransformerResponse
- Fields List<string>
- Fields to apply transformer logic on.
- Parameters object
- Different properties to be passed to transformer. Input expected is dictionary of key,value pairs in JSON format.
- Fields []string
- Fields to apply transformer logic on.
- Parameters interface{}
- Different properties to be passed to transformer. Input expected is dictionary of key,value pairs in JSON format.
- fields List<String>
- Fields to apply transformer logic on.
- parameters Object
- Different properties to be passed to transformer. Input expected is dictionary of key,value pairs in JSON format.
- fields string[]
- Fields to apply transformer logic on.
- parameters any
- Different properties to be passed to transformer. Input expected is dictionary of key,value pairs in JSON format.
- fields Sequence[str]
- Fields to apply transformer logic on.
- parameters Any
- Different properties to be passed to transformer. Input expected is dictionary of key,value pairs in JSON format.
- fields List<String>
- Fields to apply transformer logic on.
- parameters Any
- Different properties to be passed to transformer. Input expected is dictionary of key,value pairs in JSON format.
CommandJobLimitsResponse
- Timeout string
- The max run duration in ISO 8601 format, after which the job will be cancelled. Only supports duration with precision as low as Seconds.
- Timeout string
- The max run duration in ISO 8601 format, after which the job will be cancelled. Only supports duration with precision as low as Seconds.
- timeout String
- The max run duration in ISO 8601 format, after which the job will be cancelled. Only supports duration with precision as low as Seconds.
- timeout string
- The max run duration in ISO 8601 format, after which the job will be cancelled. Only supports duration with precision as low as Seconds.
- timeout str
- The max run duration in ISO 8601 format, after which the job will be cancelled. Only supports duration with precision as low as Seconds.
- timeout String
- The max run duration in ISO 8601 format, after which the job will be cancelled. Only supports duration with precision as low as Seconds.
CommandJobResponse
- Command string
- [Required] The command to execute on startup of the job. eg. "python train.py"
- Environment
Id string - [Required] The ARM resource ID of the Environment specification for the job.
- Parameters object
- Input parameters.
- Status string
- Status of the job.
- Code
Id string - ARM resource ID of the code asset.
- Component
Id string - ARM resource ID of the component resource.
- Compute
Id string - ARM resource ID of the compute resource.
- Description string
- The asset description text.
- Display
Name string - Display name of job.
- Distribution
Pulumi.
Azure | Pulumi.Native. Machine Learning Services. Inputs. Mpi Response Azure | Pulumi.Native. Machine Learning Services. Inputs. Py Torch Response Azure Native. Machine Learning Services. Inputs. Tensor Flow Response - Distribution configuration of the job. If set, this should be one of Mpi, Tensorflow, PyTorch, or null.
- Environment
Variables Dictionary<string, string> - Environment variables included in the job.
- Experiment
Name string - The name of the experiment the job belongs to. If not set, the job is placed in the "Default" experiment.
- Identity
Pulumi.
Azure | Pulumi.Native. Machine Learning Services. Inputs. Aml Token Response Azure | Pulumi.Native. Machine Learning Services. Inputs. Managed Identity Response Azure Native. Machine Learning Services. Inputs. User Identity Response - Identity configuration. If set, this should be one of AmlToken, ManagedIdentity, UserIdentity or null. Defaults to AmlToken if null.
- Inputs Dictionary<string, object>
- Mapping of input data bindings used in the job.
- Is
Archived bool - Is the asset archived?
- Limits
Pulumi.
Azure Native. Machine Learning Services. Inputs. Command Job Limits Response - Command Job limit.
- Outputs Dictionary<string, object>
- Mapping of output data bindings used in the job.
- Properties Dictionary<string, string>
- The asset property dictionary.
- Resources
Pulumi.
Azure Native. Machine Learning Services. Inputs. Job Resource Configuration Response - Compute Resource configuration for the job.
- Services
Dictionary<string, Pulumi.
Azure Native. Machine Learning Services. Inputs. Job Service Response> - List of JobEndpoints. For local jobs, a job endpoint will have an endpoint value of FileStreamObject.
- Dictionary<string, string>
- Tag dictionary. Tags can be added, removed, and updated.
- Command string
- [Required] The command to execute on startup of the job. eg. "python train.py"
- Environment
Id string - [Required] The ARM resource ID of the Environment specification for the job.
- Parameters interface{}
- Input parameters.
- Status string
- Status of the job.
- Code
Id string - ARM resource ID of the code asset.
- Component
Id string - ARM resource ID of the component resource.
- Compute
Id string - ARM resource ID of the compute resource.
- Description string
- The asset description text.
- Display
Name string - Display name of job.
- Distribution
Mpi
Response | PyTorch | TensorResponse Flow Response - Distribution configuration of the job. If set, this should be one of Mpi, Tensorflow, PyTorch, or null.
- Environment
Variables map[string]string - Environment variables included in the job.
- Experiment
Name string - The name of the experiment the job belongs to. If not set, the job is placed in the "Default" experiment.
- Identity
Aml
Token | ManagedResponse Identity | UserResponse Identity Response - Identity configuration. If set, this should be one of AmlToken, ManagedIdentity, UserIdentity or null. Defaults to AmlToken if null.
- Inputs map[string]interface{}
- Mapping of input data bindings used in the job.
- Is
Archived bool - Is the asset archived?
- Limits
Command
Job Limits Response - Command Job limit.
- Outputs map[string]interface{}
- Mapping of output data bindings used in the job.
- Properties map[string]string
- The asset property dictionary.
- Resources
Job
Resource Configuration Response - Compute Resource configuration for the job.
- Services
map[string]Job
Service Response - List of JobEndpoints. For local jobs, a job endpoint will have an endpoint value of FileStreamObject.
- map[string]string
- Tag dictionary. Tags can be added, removed, and updated.
- command String
- [Required] The command to execute on startup of the job. eg. "python train.py"
- environment
Id String - [Required] The ARM resource ID of the Environment specification for the job.
- parameters Object
- Input parameters.
- status String
- Status of the job.
- code
Id String - ARM resource ID of the code asset.
- component
Id String - ARM resource ID of the component resource.
- compute
Id String - ARM resource ID of the compute resource.
- description String
- The asset description text.
- display
Name String - Display name of job.
- distribution
Mpi
Response | PyTorch | TensorResponse Flow Response - Distribution configuration of the job. If set, this should be one of Mpi, Tensorflow, PyTorch, or null.
- environment
Variables Map<String,String> - Environment variables included in the job.
- experiment
Name String - The name of the experiment the job belongs to. If not set, the job is placed in the "Default" experiment.
- identity
Aml
Token | ManagedResponse Identity | UserResponse Identity Response - Identity configuration. If set, this should be one of AmlToken, ManagedIdentity, UserIdentity or null. Defaults to AmlToken if null.
- inputs Map<String,Object>
- Mapping of input data bindings used in the job.
- is
Archived Boolean - Is the asset archived?
- limits
Command
Job Limits Response - Command Job limit.
- outputs Map<String,Object>
- Mapping of output data bindings used in the job.
- properties Map<String,String>
- The asset property dictionary.
- resources
Job
Resource Configuration Response - Compute Resource configuration for the job.
- services
Map<String,Job
Service Response> - List of JobEndpoints. For local jobs, a job endpoint will have an endpoint value of FileStreamObject.
- Map<String,String>
- Tag dictionary. Tags can be added, removed, and updated.
- command string
- [Required] The command to execute on startup of the job. eg. "python train.py"
- environment
Id string - [Required] The ARM resource ID of the Environment specification for the job.
- parameters any
- Input parameters.
- status string
- Status of the job.
- code
Id string - ARM resource ID of the code asset.
- component
Id string - ARM resource ID of the component resource.
- compute
Id string - ARM resource ID of the compute resource.
- description string
- The asset description text.
- display
Name string - Display name of job.
- distribution
Mpi
Response | PyTorch | TensorResponse Flow Response - Distribution configuration of the job. If set, this should be one of Mpi, Tensorflow, PyTorch, or null.
- environment
Variables {[key: string]: string} - Environment variables included in the job.
- experiment
Name string - The name of the experiment the job belongs to. If not set, the job is placed in the "Default" experiment.
- identity
Aml
Token | ManagedResponse Identity | UserResponse Identity Response - Identity configuration. If set, this should be one of AmlToken, ManagedIdentity, UserIdentity or null. Defaults to AmlToken if null.
- inputs
{[key: string]: Custom
Model Job Input Response | Literal Job Input Response | MLFlow Model Job Input Response | MLTable Job Input Response | Triton Model Job Input Response | Uri File Job Input Response | Uri Folder Job Input Response} - Mapping of input data bindings used in the job.
- is
Archived boolean - Is the asset archived?
- limits
Command
Job Limits Response - Command Job limit.
- outputs
{[key: string]: Custom
Model Job Output Response | MLFlow Model Job Output Response | MLTable Job Output Response | Triton Model Job Output Response | Uri File Job Output Response | Uri Folder Job Output Response} - Mapping of output data bindings used in the job.
- properties {[key: string]: string}
- The asset property dictionary.
- resources
Job
Resource Configuration Response - Compute Resource configuration for the job.
- services
{[key: string]: Job
Service Response} - List of JobEndpoints. For local jobs, a job endpoint will have an endpoint value of FileStreamObject.
- {[key: string]: string}
- Tag dictionary. Tags can be added, removed, and updated.
- command str
- [Required] The command to execute on startup of the job. eg. "python train.py"
- environment_
id str - [Required] The ARM resource ID of the Environment specification for the job.
- parameters Any
- Input parameters.
- status str
- Status of the job.
- code_
id str - ARM resource ID of the code asset.
- component_
id str - ARM resource ID of the component resource.
- compute_
id str - ARM resource ID of the compute resource.
- description str
- The asset description text.
- display_
name str - Display name of job.
- distribution
Mpi
Response | PyTorch | TensorResponse Flow Response - Distribution configuration of the job. If set, this should be one of Mpi, Tensorflow, PyTorch, or null.
- environment_
variables Mapping[str, str] - Environment variables included in the job.
- experiment_
name str - The name of the experiment the job belongs to. If not set, the job is placed in the "Default" experiment.
- identity
Aml
Token | ManagedResponse Identity | UserResponse Identity Response - Identity configuration. If set, this should be one of AmlToken, ManagedIdentity, UserIdentity or null. Defaults to AmlToken if null.
- inputs
Mapping[str, Union[Custom
Model Job Input Response, Literal Job Input Response, MLFlow Model Job Input Response, MLTable Job Input Response, Triton Model Job Input Response, Uri File Job Input Response, Uri Folder Job Input Response]] - Mapping of input data bindings used in the job.
- is_
archived bool - Is the asset archived?
- limits
Command
Job Limits Response - Command Job limit.
- outputs
Mapping[str, Union[Custom
Model Job Output Response, MLFlow Model Job Output Response, MLTable Job Output Response, Triton Model Job Output Response, Uri File Job Output Response, Uri Folder Job Output Response]] - Mapping of output data bindings used in the job.
- properties Mapping[str, str]
- The asset property dictionary.
- resources
Job
Resource Configuration Response - Compute Resource configuration for the job.
- services
Mapping[str, Job
Service Response] - List of JobEndpoints. For local jobs, a job endpoint will have an endpoint value of FileStreamObject.
- Mapping[str, str]
- Tag dictionary. Tags can be added, removed, and updated.
- command String
- [Required] The command to execute on startup of the job. eg. "python train.py"
- environment
Id String - [Required] The ARM resource ID of the Environment specification for the job.
- parameters Any
- Input parameters.
- status String
- Status of the job.
- code
Id String - ARM resource ID of the code asset.
- component
Id String - ARM resource ID of the component resource.
- compute
Id String - ARM resource ID of the compute resource.
- description String
- The asset description text.
- display
Name String - Display name of job.
- distribution Property Map | Property Map | Property Map
- Distribution configuration of the job. If set, this should be one of Mpi, Tensorflow, PyTorch, or null.
- environment
Variables Map<String> - Environment variables included in the job.
- experiment
Name String - The name of the experiment the job belongs to. If not set, the job is placed in the "Default" experiment.
- identity Property Map | Property Map | Property Map
- Identity configuration. If set, this should be one of AmlToken, ManagedIdentity, UserIdentity or null. Defaults to AmlToken if null.
- inputs Map<Property Map | Property Map | Property Map | Property Map | Property Map | Property Map | Property Map>
- Mapping of input data bindings used in the job.
- is
Archived Boolean - Is the asset archived?
- limits Property Map
- Command Job limit.
- outputs Map<Property Map | Property Map | Property Map | Property Map | Property Map | Property Map>
- Mapping of output data bindings used in the job.
- properties Map<String>
- The asset property dictionary.
- resources Property Map
- Compute Resource configuration for the job.
- services Map<Property Map>
- List of JobEndpoints. For local jobs, a job endpoint will have an endpoint value of FileStreamObject.
- Map<String>
- Tag dictionary. Tags can be added, removed, and updated.
CustomForecastHorizonResponse
- Value int
- [Required] Forecast horizon value.
- Value int
- [Required] Forecast horizon value.
- value Integer
- [Required] Forecast horizon value.
- value number
- [Required] Forecast horizon value.
- value int
- [Required] Forecast horizon value.
- value Number
- [Required] Forecast horizon value.
CustomModelJobInputResponse
- Uri string
- [Required] Input Asset URI.
- Description string
- Description for the input.
- Mode string
- Input Asset Delivery Mode.
- Uri string
- [Required] Input Asset URI.
- Description string
- Description for the input.
- Mode string
- Input Asset Delivery Mode.
- uri String
- [Required] Input Asset URI.
- description String
- Description for the input.
- mode String
- Input Asset Delivery Mode.
- uri string
- [Required] Input Asset URI.
- description string
- Description for the input.
- mode string
- Input Asset Delivery Mode.
- uri str
- [Required] Input Asset URI.
- description str
- Description for the input.
- mode str
- Input Asset Delivery Mode.
- uri String
- [Required] Input Asset URI.
- description String
- Description for the input.
- mode String
- Input Asset Delivery Mode.
CustomModelJobOutputResponse
- Description string
- Description for the output.
- Mode string
- Output Asset Delivery Mode.
- Uri string
- Output Asset URI.
- Description string
- Description for the output.
- Mode string
- Output Asset Delivery Mode.
- Uri string
- Output Asset URI.
- description String
- Description for the output.
- mode String
- Output Asset Delivery Mode.
- uri String
- Output Asset URI.
- description string
- Description for the output.
- mode string
- Output Asset Delivery Mode.
- uri string
- Output Asset URI.
- description str
- Description for the output.
- mode str
- Output Asset Delivery Mode.
- uri str
- Output Asset URI.
- description String
- Description for the output.
- mode String
- Output Asset Delivery Mode.
- uri String
- Output Asset URI.
CustomNCrossValidationsResponse
- Value int
- [Required] N-Cross validations value.
- Value int
- [Required] N-Cross validations value.
- value Integer
- [Required] N-Cross validations value.
- value number
- [Required] N-Cross validations value.
- value int
- [Required] N-Cross validations value.
- value Number
- [Required] N-Cross validations value.
CustomSeasonalityResponse
- Value int
- [Required] Seasonality value.
- Value int
- [Required] Seasonality value.
- value Integer
- [Required] Seasonality value.
- value number
- [Required] Seasonality value.
- value int
- [Required] Seasonality value.
- value Number
- [Required] Seasonality value.
CustomTargetLagsResponse
- Values List<int>
- [Required] Set target lags values.
- Values []int
- [Required] Set target lags values.
- values List<Integer>
- [Required] Set target lags values.
- values number[]
- [Required] Set target lags values.
- values Sequence[int]
- [Required] Set target lags values.
- values List<Number>
- [Required] Set target lags values.
CustomTargetRollingWindowSizeResponse
- Value int
- [Required] TargetRollingWindowSize value.
- Value int
- [Required] TargetRollingWindowSize value.
- value Integer
- [Required] TargetRollingWindowSize value.
- value number
- [Required] TargetRollingWindowSize value.
- value int
- [Required] TargetRollingWindowSize value.
- value Number
- [Required] TargetRollingWindowSize value.
ForecastingResponse
- Training
Data Pulumi.Azure Native. Machine Learning Services. Inputs. MLTable Job Input Response - [Required] Training data input.
- Cv
Split List<string>Column Names - Columns to use for CVSplit data.
- Featurization
Settings Pulumi.Azure Native. Machine Learning Services. Inputs. Table Vertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- Forecasting
Settings Pulumi.Azure Native. Machine Learning Services. Inputs. Forecasting Settings Response - Forecasting task specific inputs.
- Limit
Settings Pulumi.Azure Native. Machine Learning Services. Inputs. Table Vertical Limit Settings Response - Execution constraints for AutoMLJob.
- Log
Verbosity string - Log verbosity for the job.
- NCross
Validations Pulumi.Azure | Pulumi.Native. Machine Learning Services. Inputs. Auto NCross Validations Response Azure Native. Machine Learning Services. Inputs. Custom NCross Validations Response - Number of cross validation folds to be applied on training dataset when validation dataset is not provided.
- Primary
Metric string - Primary metric for forecasting task.
- Target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- Test
Data Pulumi.Azure Native. Machine Learning Services. Inputs. MLTable Job Input Response - Test data input.
- Test
Data doubleSize - The fraction of test dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- Training
Settings Pulumi.Azure Native. Machine Learning Services. Inputs. Forecasting Training Settings Response - Inputs for training phase for an AutoML Job.
- Validation
Data Pulumi.Azure Native. Machine Learning Services. Inputs. MLTable Job Input Response - Validation data inputs.
- Validation
Data doubleSize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- Weight
Column stringName - The name of the sample weight column. Automated ML supports a weighted column as an input, causing rows in the data to be weighted up or down.
- Training
Data MLTableJob Input Response - [Required] Training data input.
- Cv
Split []stringColumn Names - Columns to use for CVSplit data.
- Featurization
Settings TableVertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- Forecasting
Settings ForecastingSettings Response - Forecasting task specific inputs.
- Limit
Settings TableVertical Limit Settings Response - Execution constraints for AutoMLJob.
- Log
Verbosity string - Log verbosity for the job.
- NCross
Validations AutoNCross | CustomValidations Response NCross Validations Response - Number of cross validation folds to be applied on training dataset when validation dataset is not provided.
- Primary
Metric string - Primary metric for forecasting task.
- Target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- Test
Data MLTableJob Input Response - Test data input.
- Test
Data float64Size - The fraction of test dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- Training
Settings ForecastingTraining Settings Response - Inputs for training phase for an AutoML Job.
- Validation
Data MLTableJob Input Response - Validation data inputs.
- Validation
Data float64Size - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- Weight
Column stringName - The name of the sample weight column. Automated ML supports a weighted column as an input, causing rows in the data to be weighted up or down.
- training
Data MLTableJob Input Response - [Required] Training data input.
- cv
Split List<String>Column Names - Columns to use for CVSplit data.
- featurization
Settings TableVertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- forecasting
Settings ForecastingSettings Response - Forecasting task specific inputs.
- limit
Settings TableVertical Limit Settings Response - Execution constraints for AutoMLJob.
- log
Verbosity String - Log verbosity for the job.
- n
Cross AutoValidations NCross | CustomValidations Response NCross Validations Response - Number of cross validation folds to be applied on training dataset when validation dataset is not provided.
- primary
Metric String - Primary metric for forecasting task.
- target
Column StringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- test
Data MLTableJob Input Response - Test data input.
- test
Data DoubleSize - The fraction of test dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- training
Settings ForecastingTraining Settings Response - Inputs for training phase for an AutoML Job.
- validation
Data MLTableJob Input Response - Validation data inputs.
- validation
Data DoubleSize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- weight
Column StringName - The name of the sample weight column. Automated ML supports a weighted column as an input, causing rows in the data to be weighted up or down.
- training
Data MLTableJob Input Response - [Required] Training data input.
- cv
Split string[]Column Names - Columns to use for CVSplit data.
- featurization
Settings TableVertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- forecasting
Settings ForecastingSettings Response - Forecasting task specific inputs.
- limit
Settings TableVertical Limit Settings Response - Execution constraints for AutoMLJob.
- log
Verbosity string - Log verbosity for the job.
- n
Cross AutoValidations NCross | CustomValidations Response NCross Validations Response - Number of cross validation folds to be applied on training dataset when validation dataset is not provided.
- primary
Metric string - Primary metric for forecasting task.
- target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- test
Data MLTableJob Input Response - Test data input.
- test
Data numberSize - The fraction of test dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- training
Settings ForecastingTraining Settings Response - Inputs for training phase for an AutoML Job.
- validation
Data MLTableJob Input Response - Validation data inputs.
- validation
Data numberSize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- weight
Column stringName - The name of the sample weight column. Automated ML supports a weighted column as an input, causing rows in the data to be weighted up or down.
- training_
data MLTableJob Input Response - [Required] Training data input.
- cv_
split_ Sequence[str]column_ names - Columns to use for CVSplit data.
- featurization_
settings TableVertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- forecasting_
settings ForecastingSettings Response - Forecasting task specific inputs.
- limit_
settings TableVertical Limit Settings Response - Execution constraints for AutoMLJob.
- log_
verbosity str - Log verbosity for the job.
- n_
cross_ Autovalidations NCross | CustomValidations Response NCross Validations Response - Number of cross validation folds to be applied on training dataset when validation dataset is not provided.
- primary_
metric str - Primary metric for forecasting task.
- target_
column_ strname - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- test_
data MLTableJob Input Response - Test data input.
- test_
data_ floatsize - The fraction of test dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- training_
settings ForecastingTraining Settings Response - Inputs for training phase for an AutoML Job.
- validation_
data MLTableJob Input Response - Validation data inputs.
- validation_
data_ floatsize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- weight_
column_ strname - The name of the sample weight column. Automated ML supports a weighted column as an input, causing rows in the data to be weighted up or down.
- training
Data Property Map - [Required] Training data input.
- cv
Split List<String>Column Names - Columns to use for CVSplit data.
- featurization
Settings Property Map - Featurization inputs needed for AutoML job.
- forecasting
Settings Property Map - Forecasting task specific inputs.
- limit
Settings Property Map - Execution constraints for AutoMLJob.
- log
Verbosity String - Log verbosity for the job.
- n
Cross Property Map | Property MapValidations - Number of cross validation folds to be applied on training dataset when validation dataset is not provided.
- primary
Metric String - Primary metric for forecasting task.
- target
Column StringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- test
Data Property Map - Test data input.
- test
Data NumberSize - The fraction of test dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- training
Settings Property Map - Inputs for training phase for an AutoML Job.
- validation
Data Property Map - Validation data inputs.
- validation
Data NumberSize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- weight
Column StringName - The name of the sample weight column. Automated ML supports a weighted column as an input, causing rows in the data to be weighted up or down.
ForecastingSettingsResponse
- Country
Or stringRegion For Holidays - Country or region for holidays for forecasting tasks. These should be ISO 3166 two-letter country/region codes, for example 'US' or 'GB'.
- Cv
Step intSize - Number of periods between the origin time of one CV fold and the next fold. For
example, if
CVStepSize
= 3 for daily data, the origin time for each fold will be three days apart. - Feature
Lags string - Flag for generating lags for the numeric features with 'auto' or null.
- Forecast
Horizon Pulumi.Azure | Pulumi.Native. Machine Learning Services. Inputs. Auto Forecast Horizon Response Azure Native. Machine Learning Services. Inputs. Custom Forecast Horizon Response - The desired maximum forecast horizon in units of time-series frequency.
- Frequency string
- When forecasting, this parameter represents the period with which the forecast is desired, for example daily, weekly, yearly, etc. The forecast frequency is dataset frequency by default.
- Seasonality
Pulumi.
Azure | Pulumi.Native. Machine Learning Services. Inputs. Auto Seasonality Response Azure Native. Machine Learning Services. Inputs. Custom Seasonality Response - Set time series seasonality as an integer multiple of the series frequency. If seasonality is set to 'auto', it will be inferred.
- Short
Series stringHandling Config - The parameter defining how if AutoML should handle short time series.
- Target
Aggregate stringFunction - The function to be used to aggregate the time series target column to conform to a user specified frequency. If the TargetAggregateFunction is set i.e. not 'None', but the freq parameter is not set, the error is raised. The possible target aggregation functions are: "sum", "max", "min" and "mean".
- Target
Lags Pulumi.Azure | Pulumi.Native. Machine Learning Services. Inputs. Auto Target Lags Response Azure Native. Machine Learning Services. Inputs. Custom Target Lags Response - The number of past periods to lag from the target column.
- Target
Rolling Pulumi.Window Size Azure | Pulumi.Native. Machine Learning Services. Inputs. Auto Target Rolling Window Size Response Azure Native. Machine Learning Services. Inputs. Custom Target Rolling Window Size Response - The number of past periods used to create a rolling window average of the target column.
- Time
Column stringName - The name of the time column. This parameter is required when forecasting to specify the datetime column in the input data used for building the time series and inferring its frequency.
- Time
Series List<string>Id Column Names - The names of columns used to group a timeseries. It can be used to create multiple series. If grain is not defined, the data set is assumed to be one time-series. This parameter is used with task type forecasting.
- Use
Stl string - Configure STL Decomposition of the time-series target column.
- Country
Or stringRegion For Holidays - Country or region for holidays for forecasting tasks. These should be ISO 3166 two-letter country/region codes, for example 'US' or 'GB'.
- Cv
Step intSize - Number of periods between the origin time of one CV fold and the next fold. For
example, if
CVStepSize
= 3 for daily data, the origin time for each fold will be three days apart. - Feature
Lags string - Flag for generating lags for the numeric features with 'auto' or null.
- Forecast
Horizon AutoForecast | CustomHorizon Response Forecast Horizon Response - The desired maximum forecast horizon in units of time-series frequency.
- Frequency string
- When forecasting, this parameter represents the period with which the forecast is desired, for example daily, weekly, yearly, etc. The forecast frequency is dataset frequency by default.
- Seasonality
Auto
Seasonality | CustomResponse Seasonality Response - Set time series seasonality as an integer multiple of the series frequency. If seasonality is set to 'auto', it will be inferred.
- Short
Series stringHandling Config - The parameter defining how if AutoML should handle short time series.
- Target
Aggregate stringFunction - The function to be used to aggregate the time series target column to conform to a user specified frequency. If the TargetAggregateFunction is set i.e. not 'None', but the freq parameter is not set, the error is raised. The possible target aggregation functions are: "sum", "max", "min" and "mean".
- Target
Lags AutoTarget | CustomLags Response Target Lags Response - The number of past periods to lag from the target column.
- Target
Rolling AutoWindow Size Target | CustomRolling Window Size Response Target Rolling Window Size Response - The number of past periods used to create a rolling window average of the target column.
- Time
Column stringName - The name of the time column. This parameter is required when forecasting to specify the datetime column in the input data used for building the time series and inferring its frequency.
- Time
Series []stringId Column Names - The names of columns used to group a timeseries. It can be used to create multiple series. If grain is not defined, the data set is assumed to be one time-series. This parameter is used with task type forecasting.
- Use
Stl string - Configure STL Decomposition of the time-series target column.
- country
Or StringRegion For Holidays - Country or region for holidays for forecasting tasks. These should be ISO 3166 two-letter country/region codes, for example 'US' or 'GB'.
- cv
Step IntegerSize - Number of periods between the origin time of one CV fold and the next fold. For
example, if
CVStepSize
= 3 for daily data, the origin time for each fold will be three days apart. - feature
Lags String - Flag for generating lags for the numeric features with 'auto' or null.
- forecast
Horizon AutoForecast | CustomHorizon Response Forecast Horizon Response - The desired maximum forecast horizon in units of time-series frequency.
- frequency String
- When forecasting, this parameter represents the period with which the forecast is desired, for example daily, weekly, yearly, etc. The forecast frequency is dataset frequency by default.
- seasonality
Auto
Seasonality | CustomResponse Seasonality Response - Set time series seasonality as an integer multiple of the series frequency. If seasonality is set to 'auto', it will be inferred.
- short
Series StringHandling Config - The parameter defining how if AutoML should handle short time series.
- target
Aggregate StringFunction - The function to be used to aggregate the time series target column to conform to a user specified frequency. If the TargetAggregateFunction is set i.e. not 'None', but the freq parameter is not set, the error is raised. The possible target aggregation functions are: "sum", "max", "min" and "mean".
- target
Lags AutoTarget | CustomLags Response Target Lags Response - The number of past periods to lag from the target column.
- target
Rolling AutoWindow Size Target | CustomRolling Window Size Response Target Rolling Window Size Response - The number of past periods used to create a rolling window average of the target column.
- time
Column StringName - The name of the time column. This parameter is required when forecasting to specify the datetime column in the input data used for building the time series and inferring its frequency.
- time
Series List<String>Id Column Names - The names of columns used to group a timeseries. It can be used to create multiple series. If grain is not defined, the data set is assumed to be one time-series. This parameter is used with task type forecasting.
- use
Stl String - Configure STL Decomposition of the time-series target column.
- country
Or stringRegion For Holidays - Country or region for holidays for forecasting tasks. These should be ISO 3166 two-letter country/region codes, for example 'US' or 'GB'.
- cv
Step numberSize - Number of periods between the origin time of one CV fold and the next fold. For
example, if
CVStepSize
= 3 for daily data, the origin time for each fold will be three days apart. - feature
Lags string - Flag for generating lags for the numeric features with 'auto' or null.
- forecast
Horizon AutoForecast | CustomHorizon Response Forecast Horizon Response - The desired maximum forecast horizon in units of time-series frequency.
- frequency string
- When forecasting, this parameter represents the period with which the forecast is desired, for example daily, weekly, yearly, etc. The forecast frequency is dataset frequency by default.
- seasonality
Auto
Seasonality | CustomResponse Seasonality Response - Set time series seasonality as an integer multiple of the series frequency. If seasonality is set to 'auto', it will be inferred.
- short
Series stringHandling Config - The parameter defining how if AutoML should handle short time series.
- target
Aggregate stringFunction - The function to be used to aggregate the time series target column to conform to a user specified frequency. If the TargetAggregateFunction is set i.e. not 'None', but the freq parameter is not set, the error is raised. The possible target aggregation functions are: "sum", "max", "min" and "mean".
- target
Lags AutoTarget | CustomLags Response Target Lags Response - The number of past periods to lag from the target column.
- target
Rolling AutoWindow Size Target | CustomRolling Window Size Response Target Rolling Window Size Response - The number of past periods used to create a rolling window average of the target column.
- time
Column stringName - The name of the time column. This parameter is required when forecasting to specify the datetime column in the input data used for building the time series and inferring its frequency.
- time
Series string[]Id Column Names - The names of columns used to group a timeseries. It can be used to create multiple series. If grain is not defined, the data set is assumed to be one time-series. This parameter is used with task type forecasting.
- use
Stl string - Configure STL Decomposition of the time-series target column.
- country_
or_ strregion_ for_ holidays - Country or region for holidays for forecasting tasks. These should be ISO 3166 two-letter country/region codes, for example 'US' or 'GB'.
- cv_
step_ intsize - Number of periods between the origin time of one CV fold and the next fold. For
example, if
CVStepSize
= 3 for daily data, the origin time for each fold will be three days apart. - feature_
lags str - Flag for generating lags for the numeric features with 'auto' or null.
- forecast_
horizon AutoForecast | CustomHorizon Response Forecast Horizon Response - The desired maximum forecast horizon in units of time-series frequency.
- frequency str
- When forecasting, this parameter represents the period with which the forecast is desired, for example daily, weekly, yearly, etc. The forecast frequency is dataset frequency by default.
- seasonality
Auto
Seasonality | CustomResponse Seasonality Response - Set time series seasonality as an integer multiple of the series frequency. If seasonality is set to 'auto', it will be inferred.
- short_
series_ strhandling_ config - The parameter defining how if AutoML should handle short time series.
- target_
aggregate_ strfunction - The function to be used to aggregate the time series target column to conform to a user specified frequency. If the TargetAggregateFunction is set i.e. not 'None', but the freq parameter is not set, the error is raised. The possible target aggregation functions are: "sum", "max", "min" and "mean".
- target_
lags AutoTarget | CustomLags Response Target Lags Response - The number of past periods to lag from the target column.
- target_
rolling_ Autowindow_ size Target | CustomRolling Window Size Response Target Rolling Window Size Response - The number of past periods used to create a rolling window average of the target column.
- time_
column_ strname - The name of the time column. This parameter is required when forecasting to specify the datetime column in the input data used for building the time series and inferring its frequency.
- time_
series_ Sequence[str]id_ column_ names - The names of columns used to group a timeseries. It can be used to create multiple series. If grain is not defined, the data set is assumed to be one time-series. This parameter is used with task type forecasting.
- use_
stl str - Configure STL Decomposition of the time-series target column.
- country
Or StringRegion For Holidays - Country or region for holidays for forecasting tasks. These should be ISO 3166 two-letter country/region codes, for example 'US' or 'GB'.
- cv
Step NumberSize - Number of periods between the origin time of one CV fold and the next fold. For
example, if
CVStepSize
= 3 for daily data, the origin time for each fold will be three days apart. - feature
Lags String - Flag for generating lags for the numeric features with 'auto' or null.
- forecast
Horizon Property Map | Property Map - The desired maximum forecast horizon in units of time-series frequency.
- frequency String
- When forecasting, this parameter represents the period with which the forecast is desired, for example daily, weekly, yearly, etc. The forecast frequency is dataset frequency by default.
- seasonality Property Map | Property Map
- Set time series seasonality as an integer multiple of the series frequency. If seasonality is set to 'auto', it will be inferred.
- short
Series StringHandling Config - The parameter defining how if AutoML should handle short time series.
- target
Aggregate StringFunction - The function to be used to aggregate the time series target column to conform to a user specified frequency. If the TargetAggregateFunction is set i.e. not 'None', but the freq parameter is not set, the error is raised. The possible target aggregation functions are: "sum", "max", "min" and "mean".
- target
Lags Property Map | Property Map - The number of past periods to lag from the target column.
- target
Rolling Property Map | Property MapWindow Size - The number of past periods used to create a rolling window average of the target column.
- time
Column StringName - The name of the time column. This parameter is required when forecasting to specify the datetime column in the input data used for building the time series and inferring its frequency.
- time
Series List<String>Id Column Names - The names of columns used to group a timeseries. It can be used to create multiple series. If grain is not defined, the data set is assumed to be one time-series. This parameter is used with task type forecasting.
- use
Stl String - Configure STL Decomposition of the time-series target column.
ForecastingTrainingSettingsResponse
- Allowed
Training List<string>Algorithms - Allowed models for forecasting task.
- Blocked
Training List<string>Algorithms - Blocked models for forecasting task.
- Enable
Dnn boolTraining - Enable recommendation of DNN models.
- Enable
Model boolExplainability - Flag to turn on explainability on best model.
- Enable
Onnx boolCompatible Models - Flag for enabling onnx compatible models.
- Enable
Stack boolEnsemble - Enable stack ensemble run.
- Enable
Vote boolEnsemble - Enable voting ensemble run.
- Ensemble
Model stringDownload Timeout - During VotingEnsemble and StackEnsemble model generation, multiple fitted models from the previous child runs are downloaded. Configure this parameter with a higher value than 300 secs, if more time is needed.
- Stack
Ensemble Pulumi.Settings Azure Native. Machine Learning Services. Inputs. Stack Ensemble Settings Response - Stack ensemble settings for stack ensemble run.
- Allowed
Training []stringAlgorithms - Allowed models for forecasting task.
- Blocked
Training []stringAlgorithms - Blocked models for forecasting task.
- Enable
Dnn boolTraining - Enable recommendation of DNN models.
- Enable
Model boolExplainability - Flag to turn on explainability on best model.
- Enable
Onnx boolCompatible Models - Flag for enabling onnx compatible models.
- Enable
Stack boolEnsemble - Enable stack ensemble run.
- Enable
Vote boolEnsemble - Enable voting ensemble run.
- Ensemble
Model stringDownload Timeout - During VotingEnsemble and StackEnsemble model generation, multiple fitted models from the previous child runs are downloaded. Configure this parameter with a higher value than 300 secs, if more time is needed.
- Stack
Ensemble StackSettings Ensemble Settings Response - Stack ensemble settings for stack ensemble run.
- allowed
Training List<String>Algorithms - Allowed models for forecasting task.
- blocked
Training List<String>Algorithms - Blocked models for forecasting task.
- enable
Dnn BooleanTraining - Enable recommendation of DNN models.
- enable
Model BooleanExplainability - Flag to turn on explainability on best model.
- enable
Onnx BooleanCompatible Models - Flag for enabling onnx compatible models.
- enable
Stack BooleanEnsemble - Enable stack ensemble run.
- enable
Vote BooleanEnsemble - Enable voting ensemble run.
- ensemble
Model StringDownload Timeout - During VotingEnsemble and StackEnsemble model generation, multiple fitted models from the previous child runs are downloaded. Configure this parameter with a higher value than 300 secs, if more time is needed.
- stack
Ensemble StackSettings Ensemble Settings Response - Stack ensemble settings for stack ensemble run.
- allowed
Training string[]Algorithms - Allowed models for forecasting task.
- blocked
Training string[]Algorithms - Blocked models for forecasting task.
- enable
Dnn booleanTraining - Enable recommendation of DNN models.
- enable
Model booleanExplainability - Flag to turn on explainability on best model.
- enable
Onnx booleanCompatible Models - Flag for enabling onnx compatible models.
- enable
Stack booleanEnsemble - Enable stack ensemble run.
- enable
Vote booleanEnsemble - Enable voting ensemble run.
- ensemble
Model stringDownload Timeout - During VotingEnsemble and StackEnsemble model generation, multiple fitted models from the previous child runs are downloaded. Configure this parameter with a higher value than 300 secs, if more time is needed.
- stack
Ensemble StackSettings Ensemble Settings Response - Stack ensemble settings for stack ensemble run.
- allowed_
training_ Sequence[str]algorithms - Allowed models for forecasting task.
- blocked_
training_ Sequence[str]algorithms - Blocked models for forecasting task.
- enable_
dnn_ booltraining - Enable recommendation of DNN models.
- enable_
model_ boolexplainability - Flag to turn on explainability on best model.
- enable_
onnx_ boolcompatible_ models - Flag for enabling onnx compatible models.
- enable_
stack_ boolensemble - Enable stack ensemble run.
- enable_
vote_ boolensemble - Enable voting ensemble run.
- ensemble_
model_ strdownload_ timeout - During VotingEnsemble and StackEnsemble model generation, multiple fitted models from the previous child runs are downloaded. Configure this parameter with a higher value than 300 secs, if more time is needed.
- stack_
ensemble_ Stacksettings Ensemble Settings Response - Stack ensemble settings for stack ensemble run.
- allowed
Training List<String>Algorithms - Allowed models for forecasting task.
- blocked
Training List<String>Algorithms - Blocked models for forecasting task.
- enable
Dnn BooleanTraining - Enable recommendation of DNN models.
- enable
Model BooleanExplainability - Flag to turn on explainability on best model.
- enable
Onnx BooleanCompatible Models - Flag for enabling onnx compatible models.
- enable
Stack BooleanEnsemble - Enable stack ensemble run.
- enable
Vote BooleanEnsemble - Enable voting ensemble run.
- ensemble
Model StringDownload Timeout - During VotingEnsemble and StackEnsemble model generation, multiple fitted models from the previous child runs are downloaded. Configure this parameter with a higher value than 300 secs, if more time is needed.
- stack
Ensemble Property MapSettings - Stack ensemble settings for stack ensemble run.
GridSamplingAlgorithmResponse
ImageClassificationMultilabelResponse
- Limit
Settings Pulumi.Azure Native. Machine Learning Services. Inputs. Image Limit Settings Response - [Required] Limit settings for the AutoML job.
- Training
Data Pulumi.Azure Native. Machine Learning Services. Inputs. MLTable Job Input Response - [Required] Training data input.
- Log
Verbosity string - Log verbosity for the job.
- Model
Settings Pulumi.Azure Native. Machine Learning Services. Inputs. Image Model Settings Classification Response - Settings used for training the model.
- Primary
Metric string - Primary metric to optimize for this task.
- Search
Space List<Pulumi.Azure Native. Machine Learning Services. Inputs. Image Model Distribution Settings Classification Response> - Search space for sampling different combinations of models and their hyperparameters.
- Sweep
Settings Pulumi.Azure Native. Machine Learning Services. Inputs. Image Sweep Settings Response - Model sweeping and hyperparameter sweeping related settings.
- Target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- Validation
Data Pulumi.Azure Native. Machine Learning Services. Inputs. MLTable Job Input Response - Validation data inputs.
- Validation
Data doubleSize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- Limit
Settings ImageLimit Settings Response - [Required] Limit settings for the AutoML job.
- Training
Data MLTableJob Input Response - [Required] Training data input.
- Log
Verbosity string - Log verbosity for the job.
- Model
Settings ImageModel Settings Classification Response - Settings used for training the model.
- Primary
Metric string - Primary metric to optimize for this task.
- Search
Space []ImageModel Distribution Settings Classification Response - Search space for sampling different combinations of models and their hyperparameters.
- Sweep
Settings ImageSweep Settings Response - Model sweeping and hyperparameter sweeping related settings.
- Target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- Validation
Data MLTableJob Input Response - Validation data inputs.
- Validation
Data float64Size - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- limit
Settings ImageLimit Settings Response - [Required] Limit settings for the AutoML job.
- training
Data MLTableJob Input Response - [Required] Training data input.
- log
Verbosity String - Log verbosity for the job.
- model
Settings ImageModel Settings Classification Response - Settings used for training the model.
- primary
Metric String - Primary metric to optimize for this task.
- search
Space List<ImageModel Distribution Settings Classification Response> - Search space for sampling different combinations of models and their hyperparameters.
- sweep
Settings ImageSweep Settings Response - Model sweeping and hyperparameter sweeping related settings.
- target
Column StringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- validation
Data MLTableJob Input Response - Validation data inputs.
- validation
Data DoubleSize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- limit
Settings ImageLimit Settings Response - [Required] Limit settings for the AutoML job.
- training
Data MLTableJob Input Response - [Required] Training data input.
- log
Verbosity string - Log verbosity for the job.
- model
Settings ImageModel Settings Classification Response - Settings used for training the model.
- primary
Metric string - Primary metric to optimize for this task.
- search
Space ImageModel Distribution Settings Classification Response[] - Search space for sampling different combinations of models and their hyperparameters.
- sweep
Settings ImageSweep Settings Response - Model sweeping and hyperparameter sweeping related settings.
- target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- validation
Data MLTableJob Input Response - Validation data inputs.
- validation
Data numberSize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- limit_
settings ImageLimit Settings Response - [Required] Limit settings for the AutoML job.
- training_
data MLTableJob Input Response - [Required] Training data input.
- log_
verbosity str - Log verbosity for the job.
- model_
settings ImageModel Settings Classification Response - Settings used for training the model.
- primary_
metric str - Primary metric to optimize for this task.
- search_
space Sequence[ImageModel Distribution Settings Classification Response] - Search space for sampling different combinations of models and their hyperparameters.
- sweep_
settings ImageSweep Settings Response - Model sweeping and hyperparameter sweeping related settings.
- target_
column_ strname - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- validation_
data MLTableJob Input Response - Validation data inputs.
- validation_
data_ floatsize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- limit
Settings Property Map - [Required] Limit settings for the AutoML job.
- training
Data Property Map - [Required] Training data input.
- log
Verbosity String - Log verbosity for the job.
- model
Settings Property Map - Settings used for training the model.
- primary
Metric String - Primary metric to optimize for this task.
- search
Space List<Property Map> - Search space for sampling different combinations of models and their hyperparameters.
- sweep
Settings Property Map - Model sweeping and hyperparameter sweeping related settings.
- target
Column StringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- validation
Data Property Map - Validation data inputs.
- validation
Data NumberSize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
ImageClassificationResponse
- Limit
Settings Pulumi.Azure Native. Machine Learning Services. Inputs. Image Limit Settings Response - [Required] Limit settings for the AutoML job.
- Training
Data Pulumi.Azure Native. Machine Learning Services. Inputs. MLTable Job Input Response - [Required] Training data input.
- Log
Verbosity string - Log verbosity for the job.
- Model
Settings Pulumi.Azure Native. Machine Learning Services. Inputs. Image Model Settings Classification Response - Settings used for training the model.
- Primary
Metric string - Primary metric to optimize for this task.
- Search
Space List<Pulumi.Azure Native. Machine Learning Services. Inputs. Image Model Distribution Settings Classification Response> - Search space for sampling different combinations of models and their hyperparameters.
- Sweep
Settings Pulumi.Azure Native. Machine Learning Services. Inputs. Image Sweep Settings Response - Model sweeping and hyperparameter sweeping related settings.
- Target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- Validation
Data Pulumi.Azure Native. Machine Learning Services. Inputs. MLTable Job Input Response - Validation data inputs.
- Validation
Data doubleSize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- Limit
Settings ImageLimit Settings Response - [Required] Limit settings for the AutoML job.
- Training
Data MLTableJob Input Response - [Required] Training data input.
- Log
Verbosity string - Log verbosity for the job.
- Model
Settings ImageModel Settings Classification Response - Settings used for training the model.
- Primary
Metric string - Primary metric to optimize for this task.
- Search
Space []ImageModel Distribution Settings Classification Response - Search space for sampling different combinations of models and their hyperparameters.
- Sweep
Settings ImageSweep Settings Response - Model sweeping and hyperparameter sweeping related settings.
- Target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- Validation
Data MLTableJob Input Response - Validation data inputs.
- Validation
Data float64Size - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- limit
Settings ImageLimit Settings Response - [Required] Limit settings for the AutoML job.
- training
Data MLTableJob Input Response - [Required] Training data input.
- log
Verbosity String - Log verbosity for the job.
- model
Settings ImageModel Settings Classification Response - Settings used for training the model.
- primary
Metric String - Primary metric to optimize for this task.
- search
Space List<ImageModel Distribution Settings Classification Response> - Search space for sampling different combinations of models and their hyperparameters.
- sweep
Settings ImageSweep Settings Response - Model sweeping and hyperparameter sweeping related settings.
- target
Column StringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- validation
Data MLTableJob Input Response - Validation data inputs.
- validation
Data DoubleSize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- limit
Settings ImageLimit Settings Response - [Required] Limit settings for the AutoML job.
- training
Data MLTableJob Input Response - [Required] Training data input.
- log
Verbosity string - Log verbosity for the job.
- model
Settings ImageModel Settings Classification Response - Settings used for training the model.
- primary
Metric string - Primary metric to optimize for this task.
- search
Space ImageModel Distribution Settings Classification Response[] - Search space for sampling different combinations of models and their hyperparameters.
- sweep
Settings ImageSweep Settings Response - Model sweeping and hyperparameter sweeping related settings.
- target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- validation
Data MLTableJob Input Response - Validation data inputs.
- validation
Data numberSize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- limit_
settings ImageLimit Settings Response - [Required] Limit settings for the AutoML job.
- training_
data MLTableJob Input Response - [Required] Training data input.
- log_
verbosity str - Log verbosity for the job.
- model_
settings ImageModel Settings Classification Response - Settings used for training the model.
- primary_
metric str - Primary metric to optimize for this task.
- search_
space Sequence[ImageModel Distribution Settings Classification Response] - Search space for sampling different combinations of models and their hyperparameters.
- sweep_
settings ImageSweep Settings Response - Model sweeping and hyperparameter sweeping related settings.
- target_
column_ strname - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- validation_
data MLTableJob Input Response - Validation data inputs.
- validation_
data_ floatsize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- limit
Settings Property Map - [Required] Limit settings for the AutoML job.
- training
Data Property Map - [Required] Training data input.
- log
Verbosity String - Log verbosity for the job.
- model
Settings Property Map - Settings used for training the model.
- primary
Metric String - Primary metric to optimize for this task.
- search
Space List<Property Map> - Search space for sampling different combinations of models and their hyperparameters.
- sweep
Settings Property Map - Model sweeping and hyperparameter sweeping related settings.
- target
Column StringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- validation
Data Property Map - Validation data inputs.
- validation
Data NumberSize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
ImageInstanceSegmentationResponse
- Limit
Settings Pulumi.Azure Native. Machine Learning Services. Inputs. Image Limit Settings Response - [Required] Limit settings for the AutoML job.
- Training
Data Pulumi.Azure Native. Machine Learning Services. Inputs. MLTable Job Input Response - [Required] Training data input.
- Log
Verbosity string - Log verbosity for the job.
- Model
Settings Pulumi.Azure Native. Machine Learning Services. Inputs. Image Model Settings Object Detection Response - Settings used for training the model.
- Primary
Metric string - Primary metric to optimize for this task.
- Search
Space List<Pulumi.Azure Native. Machine Learning Services. Inputs. Image Model Distribution Settings Object Detection Response> - Search space for sampling different combinations of models and their hyperparameters.
- Sweep
Settings Pulumi.Azure Native. Machine Learning Services. Inputs. Image Sweep Settings Response - Model sweeping and hyperparameter sweeping related settings.
- Target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- Validation
Data Pulumi.Azure Native. Machine Learning Services. Inputs. MLTable Job Input Response - Validation data inputs.
- Validation
Data doubleSize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- Limit
Settings ImageLimit Settings Response - [Required] Limit settings for the AutoML job.
- Training
Data MLTableJob Input Response - [Required] Training data input.
- Log
Verbosity string - Log verbosity for the job.
- Model
Settings ImageModel Settings Object Detection Response - Settings used for training the model.
- Primary
Metric string - Primary metric to optimize for this task.
- Search
Space []ImageModel Distribution Settings Object Detection Response - Search space for sampling different combinations of models and their hyperparameters.
- Sweep
Settings ImageSweep Settings Response - Model sweeping and hyperparameter sweeping related settings.
- Target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- Validation
Data MLTableJob Input Response - Validation data inputs.
- Validation
Data float64Size - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- limit
Settings ImageLimit Settings Response - [Required] Limit settings for the AutoML job.
- training
Data MLTableJob Input Response - [Required] Training data input.
- log
Verbosity String - Log verbosity for the job.
- model
Settings ImageModel Settings Object Detection Response - Settings used for training the model.
- primary
Metric String - Primary metric to optimize for this task.
- search
Space List<ImageModel Distribution Settings Object Detection Response> - Search space for sampling different combinations of models and their hyperparameters.
- sweep
Settings ImageSweep Settings Response - Model sweeping and hyperparameter sweeping related settings.
- target
Column StringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- validation
Data MLTableJob Input Response - Validation data inputs.
- validation
Data DoubleSize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- limit
Settings ImageLimit Settings Response - [Required] Limit settings for the AutoML job.
- training
Data MLTableJob Input Response - [Required] Training data input.
- log
Verbosity string - Log verbosity for the job.
- model
Settings ImageModel Settings Object Detection Response - Settings used for training the model.
- primary
Metric string - Primary metric to optimize for this task.
- search
Space ImageModel Distribution Settings Object Detection Response[] - Search space for sampling different combinations of models and their hyperparameters.
- sweep
Settings ImageSweep Settings Response - Model sweeping and hyperparameter sweeping related settings.
- target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- validation
Data MLTableJob Input Response - Validation data inputs.
- validation
Data numberSize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- limit_
settings ImageLimit Settings Response - [Required] Limit settings for the AutoML job.
- training_
data MLTableJob Input Response - [Required] Training data input.
- log_
verbosity str - Log verbosity for the job.
- model_
settings ImageModel Settings Object Detection Response - Settings used for training the model.
- primary_
metric str - Primary metric to optimize for this task.
- search_
space Sequence[ImageModel Distribution Settings Object Detection Response] - Search space for sampling different combinations of models and their hyperparameters.
- sweep_
settings ImageSweep Settings Response - Model sweeping and hyperparameter sweeping related settings.
- target_
column_ strname - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- validation_
data MLTableJob Input Response - Validation data inputs.
- validation_
data_ floatsize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- limit
Settings Property Map - [Required] Limit settings for the AutoML job.
- training
Data Property Map - [Required] Training data input.
- log
Verbosity String - Log verbosity for the job.
- model
Settings Property Map - Settings used for training the model.
- primary
Metric String - Primary metric to optimize for this task.
- search
Space List<Property Map> - Search space for sampling different combinations of models and their hyperparameters.
- sweep
Settings Property Map - Model sweeping and hyperparameter sweeping related settings.
- target
Column StringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- validation
Data Property Map - Validation data inputs.
- validation
Data NumberSize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
ImageLimitSettingsResponse
- Max
Concurrent intTrials - Maximum number of concurrent AutoML iterations.
- Max
Trials int - Maximum number of AutoML iterations.
- Timeout string
- AutoML job timeout.
- Max
Concurrent intTrials - Maximum number of concurrent AutoML iterations.
- Max
Trials int - Maximum number of AutoML iterations.
- Timeout string
- AutoML job timeout.
- max
Concurrent IntegerTrials - Maximum number of concurrent AutoML iterations.
- max
Trials Integer - Maximum number of AutoML iterations.
- timeout String
- AutoML job timeout.
- max
Concurrent numberTrials - Maximum number of concurrent AutoML iterations.
- max
Trials number - Maximum number of AutoML iterations.
- timeout string
- AutoML job timeout.
- max_
concurrent_ inttrials - Maximum number of concurrent AutoML iterations.
- max_
trials int - Maximum number of AutoML iterations.
- timeout str
- AutoML job timeout.
- max
Concurrent NumberTrials - Maximum number of concurrent AutoML iterations.
- max
Trials Number - Maximum number of AutoML iterations.
- timeout String
- AutoML job timeout.
ImageModelDistributionSettingsClassificationResponse
- Ams
Gradient string - Enable AMSGrad when optimizer is 'adam' or 'adamw'.
- Augmentations string
- Settings for using Augmentations.
- Beta1 string
- Value of 'beta1' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- Beta2 string
- Value of 'beta2' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- Distributed string
- Whether to use distributer training.
- Early
Stopping string - Enable early stopping logic during training.
- Early
Stopping stringDelay - Minimum number of epochs or validation evaluations to wait before primary metric improvement is tracked for early stopping. Must be a positive integer.
- Early
Stopping stringPatience - Minimum number of epochs or validation evaluations with no primary metric improvement before the run is stopped. Must be a positive integer.
- Enable
Onnx stringNormalization - Enable normalization when exporting ONNX model.
- Evaluation
Frequency string - Frequency to evaluate validation dataset to get metric scores. Must be a positive integer.
- Gradient
Accumulation stringStep - Gradient accumulation means running a configured number of "GradAccumulationStep" steps without updating the model weights while accumulating the gradients of those steps, and then using the accumulated gradients to compute the weight updates. Must be a positive integer.
- Layers
To stringFreeze - Number of layers to freeze for the model. Must be a positive integer. For instance, passing 2 as value for 'seresnext' means freezing layer0 and layer1. For a full list of models supported and details on layer freeze, please see: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- Learning
Rate string - Initial learning rate. Must be a float in the range [0, 1].
- Learning
Rate stringScheduler - Type of learning rate scheduler. Must be 'warmup_cosine' or 'step'.
- Model
Name string - Name of the model to use for training. For more information on the available models please visit the official documentation: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- Momentum string
- Value of momentum when optimizer is 'sgd'. Must be a float in the range [0, 1].
- Nesterov string
- Enable nesterov when optimizer is 'sgd'.
- Number
Of stringEpochs - Number of training epochs. Must be a positive integer.
- Number
Of stringWorkers - Number of data loader workers. Must be a non-negative integer.
- Optimizer string
- Type of optimizer. Must be either 'sgd', 'adam', or 'adamw'.
- Random
Seed string - Random seed to be used when using deterministic training.
- Step
LRGamma string - Value of gamma when learning rate scheduler is 'step'. Must be a float in the range [0, 1].
- Step
LRStep stringSize - Value of step size when learning rate scheduler is 'step'. Must be a positive integer.
- Training
Batch stringSize - Training batch size. Must be a positive integer.
- Training
Crop stringSize - Image crop size that is input to the neural network for the training dataset. Must be a positive integer.
- Validation
Batch stringSize - Validation batch size. Must be a positive integer.
- Validation
Crop stringSize - Image crop size that is input to the neural network for the validation dataset. Must be a positive integer.
- Validation
Resize stringSize - Image size to which to resize before cropping for validation dataset. Must be a positive integer.
- Warmup
Cosine stringLRCycles - Value of cosine cycle when learning rate scheduler is 'warmup_cosine'. Must be a float in the range [0, 1].
- Warmup
Cosine stringLRWarmup Epochs - Value of warmup epochs when learning rate scheduler is 'warmup_cosine'. Must be a positive integer.
- Weight
Decay string - Value of weight decay when optimizer is 'sgd', 'adam', or 'adamw'. Must be a float in the range[0, 1].
- Weighted
Loss string - Weighted loss. The accepted values are 0 for no weighted loss. 1 for weighted loss with sqrt.(class_weights). 2 for weighted loss with class_weights. Must be 0 or 1 or 2.
- Ams
Gradient string - Enable AMSGrad when optimizer is 'adam' or 'adamw'.
- Augmentations string
- Settings for using Augmentations.
- Beta1 string
- Value of 'beta1' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- Beta2 string
- Value of 'beta2' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- Distributed string
- Whether to use distributer training.
- Early
Stopping string - Enable early stopping logic during training.
- Early
Stopping stringDelay - Minimum number of epochs or validation evaluations to wait before primary metric improvement is tracked for early stopping. Must be a positive integer.
- Early
Stopping stringPatience - Minimum number of epochs or validation evaluations with no primary metric improvement before the run is stopped. Must be a positive integer.
- Enable
Onnx stringNormalization - Enable normalization when exporting ONNX model.
- Evaluation
Frequency string - Frequency to evaluate validation dataset to get metric scores. Must be a positive integer.
- Gradient
Accumulation stringStep - Gradient accumulation means running a configured number of "GradAccumulationStep" steps without updating the model weights while accumulating the gradients of those steps, and then using the accumulated gradients to compute the weight updates. Must be a positive integer.
- Layers
To stringFreeze - Number of layers to freeze for the model. Must be a positive integer. For instance, passing 2 as value for 'seresnext' means freezing layer0 and layer1. For a full list of models supported and details on layer freeze, please see: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- Learning
Rate string - Initial learning rate. Must be a float in the range [0, 1].
- Learning
Rate stringScheduler - Type of learning rate scheduler. Must be 'warmup_cosine' or 'step'.
- Model
Name string - Name of the model to use for training. For more information on the available models please visit the official documentation: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- Momentum string
- Value of momentum when optimizer is 'sgd'. Must be a float in the range [0, 1].
- Nesterov string
- Enable nesterov when optimizer is 'sgd'.
- Number
Of stringEpochs - Number of training epochs. Must be a positive integer.
- Number
Of stringWorkers - Number of data loader workers. Must be a non-negative integer.
- Optimizer string
- Type of optimizer. Must be either 'sgd', 'adam', or 'adamw'.
- Random
Seed string - Random seed to be used when using deterministic training.
- Step
LRGamma string - Value of gamma when learning rate scheduler is 'step'. Must be a float in the range [0, 1].
- Step
LRStep stringSize - Value of step size when learning rate scheduler is 'step'. Must be a positive integer.
- Training
Batch stringSize - Training batch size. Must be a positive integer.
- Training
Crop stringSize - Image crop size that is input to the neural network for the training dataset. Must be a positive integer.
- Validation
Batch stringSize - Validation batch size. Must be a positive integer.
- Validation
Crop stringSize - Image crop size that is input to the neural network for the validation dataset. Must be a positive integer.
- Validation
Resize stringSize - Image size to which to resize before cropping for validation dataset. Must be a positive integer.
- Warmup
Cosine stringLRCycles - Value of cosine cycle when learning rate scheduler is 'warmup_cosine'. Must be a float in the range [0, 1].
- Warmup
Cosine stringLRWarmup Epochs - Value of warmup epochs when learning rate scheduler is 'warmup_cosine'. Must be a positive integer.
- Weight
Decay string - Value of weight decay when optimizer is 'sgd', 'adam', or 'adamw'. Must be a float in the range[0, 1].
- Weighted
Loss string - Weighted loss. The accepted values are 0 for no weighted loss. 1 for weighted loss with sqrt.(class_weights). 2 for weighted loss with class_weights. Must be 0 or 1 or 2.
- ams
Gradient String - Enable AMSGrad when optimizer is 'adam' or 'adamw'.
- augmentations String
- Settings for using Augmentations.
- beta1 String
- Value of 'beta1' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- beta2 String
- Value of 'beta2' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- distributed String
- Whether to use distributer training.
- early
Stopping String - Enable early stopping logic during training.
- early
Stopping StringDelay - Minimum number of epochs or validation evaluations to wait before primary metric improvement is tracked for early stopping. Must be a positive integer.
- early
Stopping StringPatience - Minimum number of epochs or validation evaluations with no primary metric improvement before the run is stopped. Must be a positive integer.
- enable
Onnx StringNormalization - Enable normalization when exporting ONNX model.
- evaluation
Frequency String - Frequency to evaluate validation dataset to get metric scores. Must be a positive integer.
- gradient
Accumulation StringStep - Gradient accumulation means running a configured number of "GradAccumulationStep" steps without updating the model weights while accumulating the gradients of those steps, and then using the accumulated gradients to compute the weight updates. Must be a positive integer.
- layers
To StringFreeze - Number of layers to freeze for the model. Must be a positive integer. For instance, passing 2 as value for 'seresnext' means freezing layer0 and layer1. For a full list of models supported and details on layer freeze, please see: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- learning
Rate String - Initial learning rate. Must be a float in the range [0, 1].
- learning
Rate StringScheduler - Type of learning rate scheduler. Must be 'warmup_cosine' or 'step'.
- model
Name String - Name of the model to use for training. For more information on the available models please visit the official documentation: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- momentum String
- Value of momentum when optimizer is 'sgd'. Must be a float in the range [0, 1].
- nesterov String
- Enable nesterov when optimizer is 'sgd'.
- number
Of StringEpochs - Number of training epochs. Must be a positive integer.
- number
Of StringWorkers - Number of data loader workers. Must be a non-negative integer.
- optimizer String
- Type of optimizer. Must be either 'sgd', 'adam', or 'adamw'.
- random
Seed String - Random seed to be used when using deterministic training.
- step
LRGamma String - Value of gamma when learning rate scheduler is 'step'. Must be a float in the range [0, 1].
- step
LRStep StringSize - Value of step size when learning rate scheduler is 'step'. Must be a positive integer.
- training
Batch StringSize - Training batch size. Must be a positive integer.
- training
Crop StringSize - Image crop size that is input to the neural network for the training dataset. Must be a positive integer.
- validation
Batch StringSize - Validation batch size. Must be a positive integer.
- validation
Crop StringSize - Image crop size that is input to the neural network for the validation dataset. Must be a positive integer.
- validation
Resize StringSize - Image size to which to resize before cropping for validation dataset. Must be a positive integer.
- warmup
Cosine StringLRCycles - Value of cosine cycle when learning rate scheduler is 'warmup_cosine'. Must be a float in the range [0, 1].
- warmup
Cosine StringLRWarmup Epochs - Value of warmup epochs when learning rate scheduler is 'warmup_cosine'. Must be a positive integer.
- weight
Decay String - Value of weight decay when optimizer is 'sgd', 'adam', or 'adamw'. Must be a float in the range[0, 1].
- weighted
Loss String - Weighted loss. The accepted values are 0 for no weighted loss. 1 for weighted loss with sqrt.(class_weights). 2 for weighted loss with class_weights. Must be 0 or 1 or 2.
- ams
Gradient string - Enable AMSGrad when optimizer is 'adam' or 'adamw'.
- augmentations string
- Settings for using Augmentations.
- beta1 string
- Value of 'beta1' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- beta2 string
- Value of 'beta2' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- distributed string
- Whether to use distributer training.
- early
Stopping string - Enable early stopping logic during training.
- early
Stopping stringDelay - Minimum number of epochs or validation evaluations to wait before primary metric improvement is tracked for early stopping. Must be a positive integer.
- early
Stopping stringPatience - Minimum number of epochs or validation evaluations with no primary metric improvement before the run is stopped. Must be a positive integer.
- enable
Onnx stringNormalization - Enable normalization when exporting ONNX model.
- evaluation
Frequency string - Frequency to evaluate validation dataset to get metric scores. Must be a positive integer.
- gradient
Accumulation stringStep - Gradient accumulation means running a configured number of "GradAccumulationStep" steps without updating the model weights while accumulating the gradients of those steps, and then using the accumulated gradients to compute the weight updates. Must be a positive integer.
- layers
To stringFreeze - Number of layers to freeze for the model. Must be a positive integer. For instance, passing 2 as value for 'seresnext' means freezing layer0 and layer1. For a full list of models supported and details on layer freeze, please see: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- learning
Rate string - Initial learning rate. Must be a float in the range [0, 1].
- learning
Rate stringScheduler - Type of learning rate scheduler. Must be 'warmup_cosine' or 'step'.
- model
Name string - Name of the model to use for training. For more information on the available models please visit the official documentation: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- momentum string
- Value of momentum when optimizer is 'sgd'. Must be a float in the range [0, 1].
- nesterov string
- Enable nesterov when optimizer is 'sgd'.
- number
Of stringEpochs - Number of training epochs. Must be a positive integer.
- number
Of stringWorkers - Number of data loader workers. Must be a non-negative integer.
- optimizer string
- Type of optimizer. Must be either 'sgd', 'adam', or 'adamw'.
- random
Seed string - Random seed to be used when using deterministic training.
- step
LRGamma string - Value of gamma when learning rate scheduler is 'step'. Must be a float in the range [0, 1].
- step
LRStep stringSize - Value of step size when learning rate scheduler is 'step'. Must be a positive integer.
- training
Batch stringSize - Training batch size. Must be a positive integer.
- training
Crop stringSize - Image crop size that is input to the neural network for the training dataset. Must be a positive integer.
- validation
Batch stringSize - Validation batch size. Must be a positive integer.
- validation
Crop stringSize - Image crop size that is input to the neural network for the validation dataset. Must be a positive integer.
- validation
Resize stringSize - Image size to which to resize before cropping for validation dataset. Must be a positive integer.
- warmup
Cosine stringLRCycles - Value of cosine cycle when learning rate scheduler is 'warmup_cosine'. Must be a float in the range [0, 1].
- warmup
Cosine stringLRWarmup Epochs - Value of warmup epochs when learning rate scheduler is 'warmup_cosine'. Must be a positive integer.
- weight
Decay string - Value of weight decay when optimizer is 'sgd', 'adam', or 'adamw'. Must be a float in the range[0, 1].
- weighted
Loss string - Weighted loss. The accepted values are 0 for no weighted loss. 1 for weighted loss with sqrt.(class_weights). 2 for weighted loss with class_weights. Must be 0 or 1 or 2.
- ams_
gradient str - Enable AMSGrad when optimizer is 'adam' or 'adamw'.
- augmentations str
- Settings for using Augmentations.
- beta1 str
- Value of 'beta1' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- beta2 str
- Value of 'beta2' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- distributed str
- Whether to use distributer training.
- early_
stopping str - Enable early stopping logic during training.
- early_
stopping_ strdelay - Minimum number of epochs or validation evaluations to wait before primary metric improvement is tracked for early stopping. Must be a positive integer.
- early_
stopping_ strpatience - Minimum number of epochs or validation evaluations with no primary metric improvement before the run is stopped. Must be a positive integer.
- enable_
onnx_ strnormalization - Enable normalization when exporting ONNX model.
- evaluation_
frequency str - Frequency to evaluate validation dataset to get metric scores. Must be a positive integer.
- gradient_
accumulation_ strstep - Gradient accumulation means running a configured number of "GradAccumulationStep" steps without updating the model weights while accumulating the gradients of those steps, and then using the accumulated gradients to compute the weight updates. Must be a positive integer.
- layers_
to_ strfreeze - Number of layers to freeze for the model. Must be a positive integer. For instance, passing 2 as value for 'seresnext' means freezing layer0 and layer1. For a full list of models supported and details on layer freeze, please see: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- learning_
rate str - Initial learning rate. Must be a float in the range [0, 1].
- learning_
rate_ strscheduler - Type of learning rate scheduler. Must be 'warmup_cosine' or 'step'.
- model_
name str - Name of the model to use for training. For more information on the available models please visit the official documentation: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- momentum str
- Value of momentum when optimizer is 'sgd'. Must be a float in the range [0, 1].
- nesterov str
- Enable nesterov when optimizer is 'sgd'.
- number_
of_ strepochs - Number of training epochs. Must be a positive integer.
- number_
of_ strworkers - Number of data loader workers. Must be a non-negative integer.
- optimizer str
- Type of optimizer. Must be either 'sgd', 'adam', or 'adamw'.
- random_
seed str - Random seed to be used when using deterministic training.
- step_
lr_ strgamma - Value of gamma when learning rate scheduler is 'step'. Must be a float in the range [0, 1].
- step_
lr_ strstep_ size - Value of step size when learning rate scheduler is 'step'. Must be a positive integer.
- training_
batch_ strsize - Training batch size. Must be a positive integer.
- training_
crop_ strsize - Image crop size that is input to the neural network for the training dataset. Must be a positive integer.
- validation_
batch_ strsize - Validation batch size. Must be a positive integer.
- validation_
crop_ strsize - Image crop size that is input to the neural network for the validation dataset. Must be a positive integer.
- validation_
resize_ strsize - Image size to which to resize before cropping for validation dataset. Must be a positive integer.
- warmup_
cosine_ strlr_ cycles - Value of cosine cycle when learning rate scheduler is 'warmup_cosine'. Must be a float in the range [0, 1].
- warmup_
cosine_ strlr_ warmup_ epochs - Value of warmup epochs when learning rate scheduler is 'warmup_cosine'. Must be a positive integer.
- weight_
decay str - Value of weight decay when optimizer is 'sgd', 'adam', or 'adamw'. Must be a float in the range[0, 1].
- weighted_
loss str - Weighted loss. The accepted values are 0 for no weighted loss. 1 for weighted loss with sqrt.(class_weights). 2 for weighted loss with class_weights. Must be 0 or 1 or 2.
- ams
Gradient String - Enable AMSGrad when optimizer is 'adam' or 'adamw'.
- augmentations String
- Settings for using Augmentations.
- beta1 String
- Value of 'beta1' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- beta2 String
- Value of 'beta2' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- distributed String
- Whether to use distributer training.
- early
Stopping String - Enable early stopping logic during training.
- early
Stopping StringDelay - Minimum number of epochs or validation evaluations to wait before primary metric improvement is tracked for early stopping. Must be a positive integer.
- early
Stopping StringPatience - Minimum number of epochs or validation evaluations with no primary metric improvement before the run is stopped. Must be a positive integer.
- enable
Onnx StringNormalization - Enable normalization when exporting ONNX model.
- evaluation
Frequency String - Frequency to evaluate validation dataset to get metric scores. Must be a positive integer.
- gradient
Accumulation StringStep - Gradient accumulation means running a configured number of "GradAccumulationStep" steps without updating the model weights while accumulating the gradients of those steps, and then using the accumulated gradients to compute the weight updates. Must be a positive integer.
- layers
To StringFreeze - Number of layers to freeze for the model. Must be a positive integer. For instance, passing 2 as value for 'seresnext' means freezing layer0 and layer1. For a full list of models supported and details on layer freeze, please see: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- learning
Rate String - Initial learning rate. Must be a float in the range [0, 1].
- learning
Rate StringScheduler - Type of learning rate scheduler. Must be 'warmup_cosine' or 'step'.
- model
Name String - Name of the model to use for training. For more information on the available models please visit the official documentation: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- momentum String
- Value of momentum when optimizer is 'sgd'. Must be a float in the range [0, 1].
- nesterov String
- Enable nesterov when optimizer is 'sgd'.
- number
Of StringEpochs - Number of training epochs. Must be a positive integer.
- number
Of StringWorkers - Number of data loader workers. Must be a non-negative integer.
- optimizer String
- Type of optimizer. Must be either 'sgd', 'adam', or 'adamw'.
- random
Seed String - Random seed to be used when using deterministic training.
- step
LRGamma String - Value of gamma when learning rate scheduler is 'step'. Must be a float in the range [0, 1].
- step
LRStep StringSize - Value of step size when learning rate scheduler is 'step'. Must be a positive integer.
- training
Batch StringSize - Training batch size. Must be a positive integer.
- training
Crop StringSize - Image crop size that is input to the neural network for the training dataset. Must be a positive integer.
- validation
Batch StringSize - Validation batch size. Must be a positive integer.
- validation
Crop StringSize - Image crop size that is input to the neural network for the validation dataset. Must be a positive integer.
- validation
Resize StringSize - Image size to which to resize before cropping for validation dataset. Must be a positive integer.
- warmup
Cosine StringLRCycles - Value of cosine cycle when learning rate scheduler is 'warmup_cosine'. Must be a float in the range [0, 1].
- warmup
Cosine StringLRWarmup Epochs - Value of warmup epochs when learning rate scheduler is 'warmup_cosine'. Must be a positive integer.
- weight
Decay String - Value of weight decay when optimizer is 'sgd', 'adam', or 'adamw'. Must be a float in the range[0, 1].
- weighted
Loss String - Weighted loss. The accepted values are 0 for no weighted loss. 1 for weighted loss with sqrt.(class_weights). 2 for weighted loss with class_weights. Must be 0 or 1 or 2.
ImageModelDistributionSettingsObjectDetectionResponse
- Ams
Gradient string - Enable AMSGrad when optimizer is 'adam' or 'adamw'.
- Augmentations string
- Settings for using Augmentations.
- Beta1 string
- Value of 'beta1' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- Beta2 string
- Value of 'beta2' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- Box
Detections stringPer Image - Maximum number of detections per image, for all classes. Must be a positive integer. Note: This settings is not supported for the 'yolov5' algorithm.
- Box
Score stringThreshold - During inference, only return proposals with a classification score greater than BoxScoreThreshold. Must be a float in the range[0, 1].
- Distributed string
- Whether to use distributer training.
- Early
Stopping string - Enable early stopping logic during training.
- Early
Stopping stringDelay - Minimum number of epochs or validation evaluations to wait before primary metric improvement is tracked for early stopping. Must be a positive integer.
- Early
Stopping stringPatience - Minimum number of epochs or validation evaluations with no primary metric improvement before the run is stopped. Must be a positive integer.
- Enable
Onnx stringNormalization - Enable normalization when exporting ONNX model.
- Evaluation
Frequency string - Frequency to evaluate validation dataset to get metric scores. Must be a positive integer.
- Gradient
Accumulation stringStep - Gradient accumulation means running a configured number of "GradAccumulationStep" steps without updating the model weights while accumulating the gradients of those steps, and then using the accumulated gradients to compute the weight updates. Must be a positive integer.
- Image
Size string - Image size for train and validation. Must be a positive integer. Note: The training run may get into CUDA OOM if the size is too big. Note: This settings is only supported for the 'yolov5' algorithm.
- Layers
To stringFreeze - Number of layers to freeze for the model. Must be a positive integer. For instance, passing 2 as value for 'seresnext' means freezing layer0 and layer1. For a full list of models supported and details on layer freeze, please see: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- Learning
Rate string - Initial learning rate. Must be a float in the range [0, 1].
- Learning
Rate stringScheduler - Type of learning rate scheduler. Must be 'warmup_cosine' or 'step'.
- Max
Size string - Maximum size of the image to be rescaled before feeding it to the backbone. Must be a positive integer. Note: training run may get into CUDA OOM if the size is too big. Note: This settings is not supported for the 'yolov5' algorithm.
- Min
Size string - Minimum size of the image to be rescaled before feeding it to the backbone. Must be a positive integer. Note: training run may get into CUDA OOM if the size is too big. Note: This settings is not supported for the 'yolov5' algorithm.
- Model
Name string - Name of the model to use for training. For more information on the available models please visit the official documentation: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- Model
Size string - Model size. Must be 'small', 'medium', 'large', or 'xlarge'. Note: training run may get into CUDA OOM if the model size is too big. Note: This settings is only supported for the 'yolov5' algorithm.
- Momentum string
- Value of momentum when optimizer is 'sgd'. Must be a float in the range [0, 1].
- Multi
Scale string - Enable multi-scale image by varying image size by +/- 50%. Note: training run may get into CUDA OOM if no sufficient GPU memory. Note: This settings is only supported for the 'yolov5' algorithm.
- Nesterov string
- Enable nesterov when optimizer is 'sgd'.
- Nms
Iou stringThreshold - IOU threshold used during inference in NMS post processing. Must be float in the range [0, 1].
- Number
Of stringEpochs - Number of training epochs. Must be a positive integer.
- Number
Of stringWorkers - Number of data loader workers. Must be a non-negative integer.
- Optimizer string
- Type of optimizer. Must be either 'sgd', 'adam', or 'adamw'.
- Random
Seed string - Random seed to be used when using deterministic training.
- Step
LRGamma string - Value of gamma when learning rate scheduler is 'step'. Must be a float in the range [0, 1].
- Step
LRStep stringSize - Value of step size when learning rate scheduler is 'step'. Must be a positive integer.
- Tile
Grid stringSize - The grid size to use for tiling each image. Note: TileGridSize must not be None to enable small object detection logic. A string containing two integers in mxn format. Note: This settings is not supported for the 'yolov5' algorithm.
- Tile
Overlap stringRatio - Overlap ratio between adjacent tiles in each dimension. Must be float in the range [0, 1). Note: This settings is not supported for the 'yolov5' algorithm.
- Tile
Predictions stringNms Threshold - The IOU threshold to use to perform NMS while merging predictions from tiles and image. Used in validation/ inference. Must be float in the range [0, 1]. Note: This settings is not supported for the 'yolov5' algorithm. NMS: Non-maximum suppression
- Training
Batch stringSize - Training batch size. Must be a positive integer.
- Validation
Batch stringSize - Validation batch size. Must be a positive integer.
- Validation
Iou stringThreshold - IOU threshold to use when computing validation metric. Must be float in the range [0, 1].
- Validation
Metric stringType - Metric computation method to use for validation metrics. Must be 'none', 'coco', 'voc', or 'coco_voc'.
- Warmup
Cosine stringLRCycles - Value of cosine cycle when learning rate scheduler is 'warmup_cosine'. Must be a float in the range [0, 1].
- Warmup
Cosine stringLRWarmup Epochs - Value of warmup epochs when learning rate scheduler is 'warmup_cosine'. Must be a positive integer.
- Weight
Decay string - Value of weight decay when optimizer is 'sgd', 'adam', or 'adamw'. Must be a float in the range[0, 1].
- Ams
Gradient string - Enable AMSGrad when optimizer is 'adam' or 'adamw'.
- Augmentations string
- Settings for using Augmentations.
- Beta1 string
- Value of 'beta1' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- Beta2 string
- Value of 'beta2' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- Box
Detections stringPer Image - Maximum number of detections per image, for all classes. Must be a positive integer. Note: This settings is not supported for the 'yolov5' algorithm.
- Box
Score stringThreshold - During inference, only return proposals with a classification score greater than BoxScoreThreshold. Must be a float in the range[0, 1].
- Distributed string
- Whether to use distributer training.
- Early
Stopping string - Enable early stopping logic during training.
- Early
Stopping stringDelay - Minimum number of epochs or validation evaluations to wait before primary metric improvement is tracked for early stopping. Must be a positive integer.
- Early
Stopping stringPatience - Minimum number of epochs or validation evaluations with no primary metric improvement before the run is stopped. Must be a positive integer.
- Enable
Onnx stringNormalization - Enable normalization when exporting ONNX model.
- Evaluation
Frequency string - Frequency to evaluate validation dataset to get metric scores. Must be a positive integer.
- Gradient
Accumulation stringStep - Gradient accumulation means running a configured number of "GradAccumulationStep" steps without updating the model weights while accumulating the gradients of those steps, and then using the accumulated gradients to compute the weight updates. Must be a positive integer.
- Image
Size string - Image size for train and validation. Must be a positive integer. Note: The training run may get into CUDA OOM if the size is too big. Note: This settings is only supported for the 'yolov5' algorithm.
- Layers
To stringFreeze - Number of layers to freeze for the model. Must be a positive integer. For instance, passing 2 as value for 'seresnext' means freezing layer0 and layer1. For a full list of models supported and details on layer freeze, please see: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- Learning
Rate string - Initial learning rate. Must be a float in the range [0, 1].
- Learning
Rate stringScheduler - Type of learning rate scheduler. Must be 'warmup_cosine' or 'step'.
- Max
Size string - Maximum size of the image to be rescaled before feeding it to the backbone. Must be a positive integer. Note: training run may get into CUDA OOM if the size is too big. Note: This settings is not supported for the 'yolov5' algorithm.
- Min
Size string - Minimum size of the image to be rescaled before feeding it to the backbone. Must be a positive integer. Note: training run may get into CUDA OOM if the size is too big. Note: This settings is not supported for the 'yolov5' algorithm.
- Model
Name string - Name of the model to use for training. For more information on the available models please visit the official documentation: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- Model
Size string - Model size. Must be 'small', 'medium', 'large', or 'xlarge'. Note: training run may get into CUDA OOM if the model size is too big. Note: This settings is only supported for the 'yolov5' algorithm.
- Momentum string
- Value of momentum when optimizer is 'sgd'. Must be a float in the range [0, 1].
- Multi
Scale string - Enable multi-scale image by varying image size by +/- 50%. Note: training run may get into CUDA OOM if no sufficient GPU memory. Note: This settings is only supported for the 'yolov5' algorithm.
- Nesterov string
- Enable nesterov when optimizer is 'sgd'.
- Nms
Iou stringThreshold - IOU threshold used during inference in NMS post processing. Must be float in the range [0, 1].
- Number
Of stringEpochs - Number of training epochs. Must be a positive integer.
- Number
Of stringWorkers - Number of data loader workers. Must be a non-negative integer.
- Optimizer string
- Type of optimizer. Must be either 'sgd', 'adam', or 'adamw'.
- Random
Seed string - Random seed to be used when using deterministic training.
- Step
LRGamma string - Value of gamma when learning rate scheduler is 'step'. Must be a float in the range [0, 1].
- Step
LRStep stringSize - Value of step size when learning rate scheduler is 'step'. Must be a positive integer.
- Tile
Grid stringSize - The grid size to use for tiling each image. Note: TileGridSize must not be None to enable small object detection logic. A string containing two integers in mxn format. Note: This settings is not supported for the 'yolov5' algorithm.
- Tile
Overlap stringRatio - Overlap ratio between adjacent tiles in each dimension. Must be float in the range [0, 1). Note: This settings is not supported for the 'yolov5' algorithm.
- Tile
Predictions stringNms Threshold - The IOU threshold to use to perform NMS while merging predictions from tiles and image. Used in validation/ inference. Must be float in the range [0, 1]. Note: This settings is not supported for the 'yolov5' algorithm. NMS: Non-maximum suppression
- Training
Batch stringSize - Training batch size. Must be a positive integer.
- Validation
Batch stringSize - Validation batch size. Must be a positive integer.
- Validation
Iou stringThreshold - IOU threshold to use when computing validation metric. Must be float in the range [0, 1].
- Validation
Metric stringType - Metric computation method to use for validation metrics. Must be 'none', 'coco', 'voc', or 'coco_voc'.
- Warmup
Cosine stringLRCycles - Value of cosine cycle when learning rate scheduler is 'warmup_cosine'. Must be a float in the range [0, 1].
- Warmup
Cosine stringLRWarmup Epochs - Value of warmup epochs when learning rate scheduler is 'warmup_cosine'. Must be a positive integer.
- Weight
Decay string - Value of weight decay when optimizer is 'sgd', 'adam', or 'adamw'. Must be a float in the range[0, 1].
- ams
Gradient String - Enable AMSGrad when optimizer is 'adam' or 'adamw'.
- augmentations String
- Settings for using Augmentations.
- beta1 String
- Value of 'beta1' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- beta2 String
- Value of 'beta2' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- box
Detections StringPer Image - Maximum number of detections per image, for all classes. Must be a positive integer. Note: This settings is not supported for the 'yolov5' algorithm.
- box
Score StringThreshold - During inference, only return proposals with a classification score greater than BoxScoreThreshold. Must be a float in the range[0, 1].
- distributed String
- Whether to use distributer training.
- early
Stopping String - Enable early stopping logic during training.
- early
Stopping StringDelay - Minimum number of epochs or validation evaluations to wait before primary metric improvement is tracked for early stopping. Must be a positive integer.
- early
Stopping StringPatience - Minimum number of epochs or validation evaluations with no primary metric improvement before the run is stopped. Must be a positive integer.
- enable
Onnx StringNormalization - Enable normalization when exporting ONNX model.
- evaluation
Frequency String - Frequency to evaluate validation dataset to get metric scores. Must be a positive integer.
- gradient
Accumulation StringStep - Gradient accumulation means running a configured number of "GradAccumulationStep" steps without updating the model weights while accumulating the gradients of those steps, and then using the accumulated gradients to compute the weight updates. Must be a positive integer.
- image
Size String - Image size for train and validation. Must be a positive integer. Note: The training run may get into CUDA OOM if the size is too big. Note: This settings is only supported for the 'yolov5' algorithm.
- layers
To StringFreeze - Number of layers to freeze for the model. Must be a positive integer. For instance, passing 2 as value for 'seresnext' means freezing layer0 and layer1. For a full list of models supported and details on layer freeze, please see: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- learning
Rate String - Initial learning rate. Must be a float in the range [0, 1].
- learning
Rate StringScheduler - Type of learning rate scheduler. Must be 'warmup_cosine' or 'step'.
- max
Size String - Maximum size of the image to be rescaled before feeding it to the backbone. Must be a positive integer. Note: training run may get into CUDA OOM if the size is too big. Note: This settings is not supported for the 'yolov5' algorithm.
- min
Size String - Minimum size of the image to be rescaled before feeding it to the backbone. Must be a positive integer. Note: training run may get into CUDA OOM if the size is too big. Note: This settings is not supported for the 'yolov5' algorithm.
- model
Name String - Name of the model to use for training. For more information on the available models please visit the official documentation: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- model
Size String - Model size. Must be 'small', 'medium', 'large', or 'xlarge'. Note: training run may get into CUDA OOM if the model size is too big. Note: This settings is only supported for the 'yolov5' algorithm.
- momentum String
- Value of momentum when optimizer is 'sgd'. Must be a float in the range [0, 1].
- multi
Scale String - Enable multi-scale image by varying image size by +/- 50%. Note: training run may get into CUDA OOM if no sufficient GPU memory. Note: This settings is only supported for the 'yolov5' algorithm.
- nesterov String
- Enable nesterov when optimizer is 'sgd'.
- nms
Iou StringThreshold - IOU threshold used during inference in NMS post processing. Must be float in the range [0, 1].
- number
Of StringEpochs - Number of training epochs. Must be a positive integer.
- number
Of StringWorkers - Number of data loader workers. Must be a non-negative integer.
- optimizer String
- Type of optimizer. Must be either 'sgd', 'adam', or 'adamw'.
- random
Seed String - Random seed to be used when using deterministic training.
- step
LRGamma String - Value of gamma when learning rate scheduler is 'step'. Must be a float in the range [0, 1].
- step
LRStep StringSize - Value of step size when learning rate scheduler is 'step'. Must be a positive integer.
- tile
Grid StringSize - The grid size to use for tiling each image. Note: TileGridSize must not be None to enable small object detection logic. A string containing two integers in mxn format. Note: This settings is not supported for the 'yolov5' algorithm.
- tile
Overlap StringRatio - Overlap ratio between adjacent tiles in each dimension. Must be float in the range [0, 1). Note: This settings is not supported for the 'yolov5' algorithm.
- tile
Predictions StringNms Threshold - The IOU threshold to use to perform NMS while merging predictions from tiles and image. Used in validation/ inference. Must be float in the range [0, 1]. Note: This settings is not supported for the 'yolov5' algorithm. NMS: Non-maximum suppression
- training
Batch StringSize - Training batch size. Must be a positive integer.
- validation
Batch StringSize - Validation batch size. Must be a positive integer.
- validation
Iou StringThreshold - IOU threshold to use when computing validation metric. Must be float in the range [0, 1].
- validation
Metric StringType - Metric computation method to use for validation metrics. Must be 'none', 'coco', 'voc', or 'coco_voc'.
- warmup
Cosine StringLRCycles - Value of cosine cycle when learning rate scheduler is 'warmup_cosine'. Must be a float in the range [0, 1].
- warmup
Cosine StringLRWarmup Epochs - Value of warmup epochs when learning rate scheduler is 'warmup_cosine'. Must be a positive integer.
- weight
Decay String - Value of weight decay when optimizer is 'sgd', 'adam', or 'adamw'. Must be a float in the range[0, 1].
- ams
Gradient string - Enable AMSGrad when optimizer is 'adam' or 'adamw'.
- augmentations string
- Settings for using Augmentations.
- beta1 string
- Value of 'beta1' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- beta2 string
- Value of 'beta2' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- box
Detections stringPer Image - Maximum number of detections per image, for all classes. Must be a positive integer. Note: This settings is not supported for the 'yolov5' algorithm.
- box
Score stringThreshold - During inference, only return proposals with a classification score greater than BoxScoreThreshold. Must be a float in the range[0, 1].
- distributed string
- Whether to use distributer training.
- early
Stopping string - Enable early stopping logic during training.
- early
Stopping stringDelay - Minimum number of epochs or validation evaluations to wait before primary metric improvement is tracked for early stopping. Must be a positive integer.
- early
Stopping stringPatience - Minimum number of epochs or validation evaluations with no primary metric improvement before the run is stopped. Must be a positive integer.
- enable
Onnx stringNormalization - Enable normalization when exporting ONNX model.
- evaluation
Frequency string - Frequency to evaluate validation dataset to get metric scores. Must be a positive integer.
- gradient
Accumulation stringStep - Gradient accumulation means running a configured number of "GradAccumulationStep" steps without updating the model weights while accumulating the gradients of those steps, and then using the accumulated gradients to compute the weight updates. Must be a positive integer.
- image
Size string - Image size for train and validation. Must be a positive integer. Note: The training run may get into CUDA OOM if the size is too big. Note: This settings is only supported for the 'yolov5' algorithm.
- layers
To stringFreeze - Number of layers to freeze for the model. Must be a positive integer. For instance, passing 2 as value for 'seresnext' means freezing layer0 and layer1. For a full list of models supported and details on layer freeze, please see: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- learning
Rate string - Initial learning rate. Must be a float in the range [0, 1].
- learning
Rate stringScheduler - Type of learning rate scheduler. Must be 'warmup_cosine' or 'step'.
- max
Size string - Maximum size of the image to be rescaled before feeding it to the backbone. Must be a positive integer. Note: training run may get into CUDA OOM if the size is too big. Note: This settings is not supported for the 'yolov5' algorithm.
- min
Size string - Minimum size of the image to be rescaled before feeding it to the backbone. Must be a positive integer. Note: training run may get into CUDA OOM if the size is too big. Note: This settings is not supported for the 'yolov5' algorithm.
- model
Name string - Name of the model to use for training. For more information on the available models please visit the official documentation: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- model
Size string - Model size. Must be 'small', 'medium', 'large', or 'xlarge'. Note: training run may get into CUDA OOM if the model size is too big. Note: This settings is only supported for the 'yolov5' algorithm.
- momentum string
- Value of momentum when optimizer is 'sgd'. Must be a float in the range [0, 1].
- multi
Scale string - Enable multi-scale image by varying image size by +/- 50%. Note: training run may get into CUDA OOM if no sufficient GPU memory. Note: This settings is only supported for the 'yolov5' algorithm.
- nesterov string
- Enable nesterov when optimizer is 'sgd'.
- nms
Iou stringThreshold - IOU threshold used during inference in NMS post processing. Must be float in the range [0, 1].
- number
Of stringEpochs - Number of training epochs. Must be a positive integer.
- number
Of stringWorkers - Number of data loader workers. Must be a non-negative integer.
- optimizer string
- Type of optimizer. Must be either 'sgd', 'adam', or 'adamw'.
- random
Seed string - Random seed to be used when using deterministic training.
- step
LRGamma string - Value of gamma when learning rate scheduler is 'step'. Must be a float in the range [0, 1].
- step
LRStep stringSize - Value of step size when learning rate scheduler is 'step'. Must be a positive integer.
- tile
Grid stringSize - The grid size to use for tiling each image. Note: TileGridSize must not be None to enable small object detection logic. A string containing two integers in mxn format. Note: This settings is not supported for the 'yolov5' algorithm.
- tile
Overlap stringRatio - Overlap ratio between adjacent tiles in each dimension. Must be float in the range [0, 1). Note: This settings is not supported for the 'yolov5' algorithm.
- tile
Predictions stringNms Threshold - The IOU threshold to use to perform NMS while merging predictions from tiles and image. Used in validation/ inference. Must be float in the range [0, 1]. Note: This settings is not supported for the 'yolov5' algorithm. NMS: Non-maximum suppression
- training
Batch stringSize - Training batch size. Must be a positive integer.
- validation
Batch stringSize - Validation batch size. Must be a positive integer.
- validation
Iou stringThreshold - IOU threshold to use when computing validation metric. Must be float in the range [0, 1].
- validation
Metric stringType - Metric computation method to use for validation metrics. Must be 'none', 'coco', 'voc', or 'coco_voc'.
- warmup
Cosine stringLRCycles - Value of cosine cycle when learning rate scheduler is 'warmup_cosine'. Must be a float in the range [0, 1].
- warmup
Cosine stringLRWarmup Epochs - Value of warmup epochs when learning rate scheduler is 'warmup_cosine'. Must be a positive integer.
- weight
Decay string - Value of weight decay when optimizer is 'sgd', 'adam', or 'adamw'. Must be a float in the range[0, 1].
- ams_
gradient str - Enable AMSGrad when optimizer is 'adam' or 'adamw'.
- augmentations str
- Settings for using Augmentations.
- beta1 str
- Value of 'beta1' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- beta2 str
- Value of 'beta2' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- box_
detections_ strper_ image - Maximum number of detections per image, for all classes. Must be a positive integer. Note: This settings is not supported for the 'yolov5' algorithm.
- box_
score_ strthreshold - During inference, only return proposals with a classification score greater than BoxScoreThreshold. Must be a float in the range[0, 1].
- distributed str
- Whether to use distributer training.
- early_
stopping str - Enable early stopping logic during training.
- early_
stopping_ strdelay - Minimum number of epochs or validation evaluations to wait before primary metric improvement is tracked for early stopping. Must be a positive integer.
- early_
stopping_ strpatience - Minimum number of epochs or validation evaluations with no primary metric improvement before the run is stopped. Must be a positive integer.
- enable_
onnx_ strnormalization - Enable normalization when exporting ONNX model.
- evaluation_
frequency str - Frequency to evaluate validation dataset to get metric scores. Must be a positive integer.
- gradient_
accumulation_ strstep - Gradient accumulation means running a configured number of "GradAccumulationStep" steps without updating the model weights while accumulating the gradients of those steps, and then using the accumulated gradients to compute the weight updates. Must be a positive integer.
- image_
size str - Image size for train and validation. Must be a positive integer. Note: The training run may get into CUDA OOM if the size is too big. Note: This settings is only supported for the 'yolov5' algorithm.
- layers_
to_ strfreeze - Number of layers to freeze for the model. Must be a positive integer. For instance, passing 2 as value for 'seresnext' means freezing layer0 and layer1. For a full list of models supported and details on layer freeze, please see: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- learning_
rate str - Initial learning rate. Must be a float in the range [0, 1].
- learning_
rate_ strscheduler - Type of learning rate scheduler. Must be 'warmup_cosine' or 'step'.
- max_
size str - Maximum size of the image to be rescaled before feeding it to the backbone. Must be a positive integer. Note: training run may get into CUDA OOM if the size is too big. Note: This settings is not supported for the 'yolov5' algorithm.
- min_
size str - Minimum size of the image to be rescaled before feeding it to the backbone. Must be a positive integer. Note: training run may get into CUDA OOM if the size is too big. Note: This settings is not supported for the 'yolov5' algorithm.
- model_
name str - Name of the model to use for training. For more information on the available models please visit the official documentation: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- model_
size str - Model size. Must be 'small', 'medium', 'large', or 'xlarge'. Note: training run may get into CUDA OOM if the model size is too big. Note: This settings is only supported for the 'yolov5' algorithm.
- momentum str
- Value of momentum when optimizer is 'sgd'. Must be a float in the range [0, 1].
- multi_
scale str - Enable multi-scale image by varying image size by +/- 50%. Note: training run may get into CUDA OOM if no sufficient GPU memory. Note: This settings is only supported for the 'yolov5' algorithm.
- nesterov str
- Enable nesterov when optimizer is 'sgd'.
- nms_
iou_ strthreshold - IOU threshold used during inference in NMS post processing. Must be float in the range [0, 1].
- number_
of_ strepochs - Number of training epochs. Must be a positive integer.
- number_
of_ strworkers - Number of data loader workers. Must be a non-negative integer.
- optimizer str
- Type of optimizer. Must be either 'sgd', 'adam', or 'adamw'.
- random_
seed str - Random seed to be used when using deterministic training.
- step_
lr_ strgamma - Value of gamma when learning rate scheduler is 'step'. Must be a float in the range [0, 1].
- step_
lr_ strstep_ size - Value of step size when learning rate scheduler is 'step'. Must be a positive integer.
- tile_
grid_ strsize - The grid size to use for tiling each image. Note: TileGridSize must not be None to enable small object detection logic. A string containing two integers in mxn format. Note: This settings is not supported for the 'yolov5' algorithm.
- tile_
overlap_ strratio - Overlap ratio between adjacent tiles in each dimension. Must be float in the range [0, 1). Note: This settings is not supported for the 'yolov5' algorithm.
- tile_
predictions_ strnms_ threshold - The IOU threshold to use to perform NMS while merging predictions from tiles and image. Used in validation/ inference. Must be float in the range [0, 1]. Note: This settings is not supported for the 'yolov5' algorithm. NMS: Non-maximum suppression
- training_
batch_ strsize - Training batch size. Must be a positive integer.
- validation_
batch_ strsize - Validation batch size. Must be a positive integer.
- validation_
iou_ strthreshold - IOU threshold to use when computing validation metric. Must be float in the range [0, 1].
- validation_
metric_ strtype - Metric computation method to use for validation metrics. Must be 'none', 'coco', 'voc', or 'coco_voc'.
- warmup_
cosine_ strlr_ cycles - Value of cosine cycle when learning rate scheduler is 'warmup_cosine'. Must be a float in the range [0, 1].
- warmup_
cosine_ strlr_ warmup_ epochs - Value of warmup epochs when learning rate scheduler is 'warmup_cosine'. Must be a positive integer.
- weight_
decay str - Value of weight decay when optimizer is 'sgd', 'adam', or 'adamw'. Must be a float in the range[0, 1].
- ams
Gradient String - Enable AMSGrad when optimizer is 'adam' or 'adamw'.
- augmentations String
- Settings for using Augmentations.
- beta1 String
- Value of 'beta1' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- beta2 String
- Value of 'beta2' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- box
Detections StringPer Image - Maximum number of detections per image, for all classes. Must be a positive integer. Note: This settings is not supported for the 'yolov5' algorithm.
- box
Score StringThreshold - During inference, only return proposals with a classification score greater than BoxScoreThreshold. Must be a float in the range[0, 1].
- distributed String
- Whether to use distributer training.
- early
Stopping String - Enable early stopping logic during training.
- early
Stopping StringDelay - Minimum number of epochs or validation evaluations to wait before primary metric improvement is tracked for early stopping. Must be a positive integer.
- early
Stopping StringPatience - Minimum number of epochs or validation evaluations with no primary metric improvement before the run is stopped. Must be a positive integer.
- enable
Onnx StringNormalization - Enable normalization when exporting ONNX model.
- evaluation
Frequency String - Frequency to evaluate validation dataset to get metric scores. Must be a positive integer.
- gradient
Accumulation StringStep - Gradient accumulation means running a configured number of "GradAccumulationStep" steps without updating the model weights while accumulating the gradients of those steps, and then using the accumulated gradients to compute the weight updates. Must be a positive integer.
- image
Size String - Image size for train and validation. Must be a positive integer. Note: The training run may get into CUDA OOM if the size is too big. Note: This settings is only supported for the 'yolov5' algorithm.
- layers
To StringFreeze - Number of layers to freeze for the model. Must be a positive integer. For instance, passing 2 as value for 'seresnext' means freezing layer0 and layer1. For a full list of models supported and details on layer freeze, please see: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- learning
Rate String - Initial learning rate. Must be a float in the range [0, 1].
- learning
Rate StringScheduler - Type of learning rate scheduler. Must be 'warmup_cosine' or 'step'.
- max
Size String - Maximum size of the image to be rescaled before feeding it to the backbone. Must be a positive integer. Note: training run may get into CUDA OOM if the size is too big. Note: This settings is not supported for the 'yolov5' algorithm.
- min
Size String - Minimum size of the image to be rescaled before feeding it to the backbone. Must be a positive integer. Note: training run may get into CUDA OOM if the size is too big. Note: This settings is not supported for the 'yolov5' algorithm.
- model
Name String - Name of the model to use for training. For more information on the available models please visit the official documentation: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- model
Size String - Model size. Must be 'small', 'medium', 'large', or 'xlarge'. Note: training run may get into CUDA OOM if the model size is too big. Note: This settings is only supported for the 'yolov5' algorithm.
- momentum String
- Value of momentum when optimizer is 'sgd'. Must be a float in the range [0, 1].
- multi
Scale String - Enable multi-scale image by varying image size by +/- 50%. Note: training run may get into CUDA OOM if no sufficient GPU memory. Note: This settings is only supported for the 'yolov5' algorithm.
- nesterov String
- Enable nesterov when optimizer is 'sgd'.
- nms
Iou StringThreshold - IOU threshold used during inference in NMS post processing. Must be float in the range [0, 1].
- number
Of StringEpochs - Number of training epochs. Must be a positive integer.
- number
Of StringWorkers - Number of data loader workers. Must be a non-negative integer.
- optimizer String
- Type of optimizer. Must be either 'sgd', 'adam', or 'adamw'.
- random
Seed String - Random seed to be used when using deterministic training.
- step
LRGamma String - Value of gamma when learning rate scheduler is 'step'. Must be a float in the range [0, 1].
- step
LRStep StringSize - Value of step size when learning rate scheduler is 'step'. Must be a positive integer.
- tile
Grid StringSize - The grid size to use for tiling each image. Note: TileGridSize must not be None to enable small object detection logic. A string containing two integers in mxn format. Note: This settings is not supported for the 'yolov5' algorithm.
- tile
Overlap StringRatio - Overlap ratio between adjacent tiles in each dimension. Must be float in the range [0, 1). Note: This settings is not supported for the 'yolov5' algorithm.
- tile
Predictions StringNms Threshold - The IOU threshold to use to perform NMS while merging predictions from tiles and image. Used in validation/ inference. Must be float in the range [0, 1]. Note: This settings is not supported for the 'yolov5' algorithm. NMS: Non-maximum suppression
- training
Batch StringSize - Training batch size. Must be a positive integer.
- validation
Batch StringSize - Validation batch size. Must be a positive integer.
- validation
Iou StringThreshold - IOU threshold to use when computing validation metric. Must be float in the range [0, 1].
- validation
Metric StringType - Metric computation method to use for validation metrics. Must be 'none', 'coco', 'voc', or 'coco_voc'.
- warmup
Cosine StringLRCycles - Value of cosine cycle when learning rate scheduler is 'warmup_cosine'. Must be a float in the range [0, 1].
- warmup
Cosine StringLRWarmup Epochs - Value of warmup epochs when learning rate scheduler is 'warmup_cosine'. Must be a positive integer.
- weight
Decay String - Value of weight decay when optimizer is 'sgd', 'adam', or 'adamw'. Must be a float in the range[0, 1].
ImageModelSettingsClassificationResponse
- Advanced
Settings string - Settings for advanced scenarios.
- Ams
Gradient bool - Enable AMSGrad when optimizer is 'adam' or 'adamw'.
- Augmentations string
- Settings for using Augmentations.
- Beta1 double
- Value of 'beta1' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- Beta2 double
- Value of 'beta2' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- Checkpoint
Frequency int - Frequency to store model checkpoints. Must be a positive integer.
- Checkpoint
Model Pulumi.Azure Native. Machine Learning Services. Inputs. MLFlow Model Job Input Response - The pretrained checkpoint model for incremental training.
- Checkpoint
Run stringId - The id of a previous run that has a pretrained checkpoint for incremental training.
- Distributed bool
- Whether to use distributed training.
- Early
Stopping bool - Enable early stopping logic during training.
- Early
Stopping intDelay - Minimum number of epochs or validation evaluations to wait before primary metric improvement is tracked for early stopping. Must be a positive integer.
- Early
Stopping intPatience - Minimum number of epochs or validation evaluations with no primary metric improvement before the run is stopped. Must be a positive integer.
- Enable
Onnx boolNormalization - Enable normalization when exporting ONNX model.
- Evaluation
Frequency int - Frequency to evaluate validation dataset to get metric scores. Must be a positive integer.
- Gradient
Accumulation intStep - Gradient accumulation means running a configured number of "GradAccumulationStep" steps without updating the model weights while accumulating the gradients of those steps, and then using the accumulated gradients to compute the weight updates. Must be a positive integer.
- Layers
To intFreeze - Number of layers to freeze for the model. Must be a positive integer. For instance, passing 2 as value for 'seresnext' means freezing layer0 and layer1. For a full list of models supported and details on layer freeze, please see: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- Learning
Rate double - Initial learning rate. Must be a float in the range [0, 1].
- Learning
Rate stringScheduler - Type of learning rate scheduler. Must be 'warmup_cosine' or 'step'.
- Model
Name string - Name of the model to use for training. For more information on the available models please visit the official documentation: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- Momentum double
- Value of momentum when optimizer is 'sgd'. Must be a float in the range [0, 1].
- Nesterov bool
- Enable nesterov when optimizer is 'sgd'.
- Number
Of intEpochs - Number of training epochs. Must be a positive integer.
- Number
Of intWorkers - Number of data loader workers. Must be a non-negative integer.
- Optimizer string
- Type of optimizer.
- Random
Seed int - Random seed to be used when using deterministic training.
- Step
LRGamma double - Value of gamma when learning rate scheduler is 'step'. Must be a float in the range [0, 1].
- Step
LRStep intSize - Value of step size when learning rate scheduler is 'step'. Must be a positive integer.
- Training
Batch intSize - Training batch size. Must be a positive integer.
- Training
Crop intSize - Image crop size that is input to the neural network for the training dataset. Must be a positive integer.
- Validation
Batch intSize - Validation batch size. Must be a positive integer.
- Validation
Crop intSize - Image crop size that is input to the neural network for the validation dataset. Must be a positive integer.
- Validation
Resize intSize - Image size to which to resize before cropping for validation dataset. Must be a positive integer.
- Warmup
Cosine doubleLRCycles - Value of cosine cycle when learning rate scheduler is 'warmup_cosine'. Must be a float in the range [0, 1].
- Warmup
Cosine intLRWarmup Epochs - Value of warmup epochs when learning rate scheduler is 'warmup_cosine'. Must be a positive integer.
- Weight
Decay double - Value of weight decay when optimizer is 'sgd', 'adam', or 'adamw'. Must be a float in the range[0, 1].
- Weighted
Loss int - Weighted loss. The accepted values are 0 for no weighted loss. 1 for weighted loss with sqrt.(class_weights). 2 for weighted loss with class_weights. Must be 0 or 1 or 2.
- Advanced
Settings string - Settings for advanced scenarios.
- Ams
Gradient bool - Enable AMSGrad when optimizer is 'adam' or 'adamw'.
- Augmentations string
- Settings for using Augmentations.
- Beta1 float64
- Value of 'beta1' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- Beta2 float64
- Value of 'beta2' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- Checkpoint
Frequency int - Frequency to store model checkpoints. Must be a positive integer.
- Checkpoint
Model MLFlowModel Job Input Response - The pretrained checkpoint model for incremental training.
- Checkpoint
Run stringId - The id of a previous run that has a pretrained checkpoint for incremental training.
- Distributed bool
- Whether to use distributed training.
- Early
Stopping bool - Enable early stopping logic during training.
- Early
Stopping intDelay - Minimum number of epochs or validation evaluations to wait before primary metric improvement is tracked for early stopping. Must be a positive integer.
- Early
Stopping intPatience - Minimum number of epochs or validation evaluations with no primary metric improvement before the run is stopped. Must be a positive integer.
- Enable
Onnx boolNormalization - Enable normalization when exporting ONNX model.
- Evaluation
Frequency int - Frequency to evaluate validation dataset to get metric scores. Must be a positive integer.
- Gradient
Accumulation intStep - Gradient accumulation means running a configured number of "GradAccumulationStep" steps without updating the model weights while accumulating the gradients of those steps, and then using the accumulated gradients to compute the weight updates. Must be a positive integer.
- Layers
To intFreeze - Number of layers to freeze for the model. Must be a positive integer. For instance, passing 2 as value for 'seresnext' means freezing layer0 and layer1. For a full list of models supported and details on layer freeze, please see: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- Learning
Rate float64 - Initial learning rate. Must be a float in the range [0, 1].
- Learning
Rate stringScheduler - Type of learning rate scheduler. Must be 'warmup_cosine' or 'step'.
- Model
Name string - Name of the model to use for training. For more information on the available models please visit the official documentation: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- Momentum float64
- Value of momentum when optimizer is 'sgd'. Must be a float in the range [0, 1].
- Nesterov bool
- Enable nesterov when optimizer is 'sgd'.
- Number
Of intEpochs - Number of training epochs. Must be a positive integer.
- Number
Of intWorkers - Number of data loader workers. Must be a non-negative integer.
- Optimizer string
- Type of optimizer.
- Random
Seed int - Random seed to be used when using deterministic training.
- Step
LRGamma float64 - Value of gamma when learning rate scheduler is 'step'. Must be a float in the range [0, 1].
- Step
LRStep intSize - Value of step size when learning rate scheduler is 'step'. Must be a positive integer.
- Training
Batch intSize - Training batch size. Must be a positive integer.
- Training
Crop intSize - Image crop size that is input to the neural network for the training dataset. Must be a positive integer.
- Validation
Batch intSize - Validation batch size. Must be a positive integer.
- Validation
Crop intSize - Image crop size that is input to the neural network for the validation dataset. Must be a positive integer.
- Validation
Resize intSize - Image size to which to resize before cropping for validation dataset. Must be a positive integer.
- Warmup
Cosine float64LRCycles - Value of cosine cycle when learning rate scheduler is 'warmup_cosine'. Must be a float in the range [0, 1].
- Warmup
Cosine intLRWarmup Epochs - Value of warmup epochs when learning rate scheduler is 'warmup_cosine'. Must be a positive integer.
- Weight
Decay float64 - Value of weight decay when optimizer is 'sgd', 'adam', or 'adamw'. Must be a float in the range[0, 1].
- Weighted
Loss int - Weighted loss. The accepted values are 0 for no weighted loss. 1 for weighted loss with sqrt.(class_weights). 2 for weighted loss with class_weights. Must be 0 or 1 or 2.
- advanced
Settings String - Settings for advanced scenarios.
- ams
Gradient Boolean - Enable AMSGrad when optimizer is 'adam' or 'adamw'.
- augmentations String
- Settings for using Augmentations.
- beta1 Double
- Value of 'beta1' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- beta2 Double
- Value of 'beta2' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- checkpoint
Frequency Integer - Frequency to store model checkpoints. Must be a positive integer.
- checkpoint
Model MLFlowModel Job Input Response - The pretrained checkpoint model for incremental training.
- checkpoint
Run StringId - The id of a previous run that has a pretrained checkpoint for incremental training.
- distributed Boolean
- Whether to use distributed training.
- early
Stopping Boolean - Enable early stopping logic during training.
- early
Stopping IntegerDelay - Minimum number of epochs or validation evaluations to wait before primary metric improvement is tracked for early stopping. Must be a positive integer.
- early
Stopping IntegerPatience - Minimum number of epochs or validation evaluations with no primary metric improvement before the run is stopped. Must be a positive integer.
- enable
Onnx BooleanNormalization - Enable normalization when exporting ONNX model.
- evaluation
Frequency Integer - Frequency to evaluate validation dataset to get metric scores. Must be a positive integer.
- gradient
Accumulation IntegerStep - Gradient accumulation means running a configured number of "GradAccumulationStep" steps without updating the model weights while accumulating the gradients of those steps, and then using the accumulated gradients to compute the weight updates. Must be a positive integer.
- layers
To IntegerFreeze - Number of layers to freeze for the model. Must be a positive integer. For instance, passing 2 as value for 'seresnext' means freezing layer0 and layer1. For a full list of models supported and details on layer freeze, please see: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- learning
Rate Double - Initial learning rate. Must be a float in the range [0, 1].
- learning
Rate StringScheduler - Type of learning rate scheduler. Must be 'warmup_cosine' or 'step'.
- model
Name String - Name of the model to use for training. For more information on the available models please visit the official documentation: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- momentum Double
- Value of momentum when optimizer is 'sgd'. Must be a float in the range [0, 1].
- nesterov Boolean
- Enable nesterov when optimizer is 'sgd'.
- number
Of IntegerEpochs - Number of training epochs. Must be a positive integer.
- number
Of IntegerWorkers - Number of data loader workers. Must be a non-negative integer.
- optimizer String
- Type of optimizer.
- random
Seed Integer - Random seed to be used when using deterministic training.
- step
LRGamma Double - Value of gamma when learning rate scheduler is 'step'. Must be a float in the range [0, 1].
- step
LRStep IntegerSize - Value of step size when learning rate scheduler is 'step'. Must be a positive integer.
- training
Batch IntegerSize - Training batch size. Must be a positive integer.
- training
Crop IntegerSize - Image crop size that is input to the neural network for the training dataset. Must be a positive integer.
- validation
Batch IntegerSize - Validation batch size. Must be a positive integer.
- validation
Crop IntegerSize - Image crop size that is input to the neural network for the validation dataset. Must be a positive integer.
- validation
Resize IntegerSize - Image size to which to resize before cropping for validation dataset. Must be a positive integer.
- warmup
Cosine DoubleLRCycles - Value of cosine cycle when learning rate scheduler is 'warmup_cosine'. Must be a float in the range [0, 1].
- warmup
Cosine IntegerLRWarmup Epochs - Value of warmup epochs when learning rate scheduler is 'warmup_cosine'. Must be a positive integer.
- weight
Decay Double - Value of weight decay when optimizer is 'sgd', 'adam', or 'adamw'. Must be a float in the range[0, 1].
- weighted
Loss Integer - Weighted loss. The accepted values are 0 for no weighted loss. 1 for weighted loss with sqrt.(class_weights). 2 for weighted loss with class_weights. Must be 0 or 1 or 2.
- advanced
Settings string - Settings for advanced scenarios.
- ams
Gradient boolean - Enable AMSGrad when optimizer is 'adam' or 'adamw'.
- augmentations string
- Settings for using Augmentations.
- beta1 number
- Value of 'beta1' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- beta2 number
- Value of 'beta2' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- checkpoint
Frequency number - Frequency to store model checkpoints. Must be a positive integer.
- checkpoint
Model MLFlowModel Job Input Response - The pretrained checkpoint model for incremental training.
- checkpoint
Run stringId - The id of a previous run that has a pretrained checkpoint for incremental training.
- distributed boolean
- Whether to use distributed training.
- early
Stopping boolean - Enable early stopping logic during training.
- early
Stopping numberDelay - Minimum number of epochs or validation evaluations to wait before primary metric improvement is tracked for early stopping. Must be a positive integer.
- early
Stopping numberPatience - Minimum number of epochs or validation evaluations with no primary metric improvement before the run is stopped. Must be a positive integer.
- enable
Onnx booleanNormalization - Enable normalization when exporting ONNX model.
- evaluation
Frequency number - Frequency to evaluate validation dataset to get metric scores. Must be a positive integer.
- gradient
Accumulation numberStep - Gradient accumulation means running a configured number of "GradAccumulationStep" steps without updating the model weights while accumulating the gradients of those steps, and then using the accumulated gradients to compute the weight updates. Must be a positive integer.
- layers
To numberFreeze - Number of layers to freeze for the model. Must be a positive integer. For instance, passing 2 as value for 'seresnext' means freezing layer0 and layer1. For a full list of models supported and details on layer freeze, please see: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- learning
Rate number - Initial learning rate. Must be a float in the range [0, 1].
- learning
Rate stringScheduler - Type of learning rate scheduler. Must be 'warmup_cosine' or 'step'.
- model
Name string - Name of the model to use for training. For more information on the available models please visit the official documentation: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- momentum number
- Value of momentum when optimizer is 'sgd'. Must be a float in the range [0, 1].
- nesterov boolean
- Enable nesterov when optimizer is 'sgd'.
- number
Of numberEpochs - Number of training epochs. Must be a positive integer.
- number
Of numberWorkers - Number of data loader workers. Must be a non-negative integer.
- optimizer string
- Type of optimizer.
- random
Seed number - Random seed to be used when using deterministic training.
- step
LRGamma number - Value of gamma when learning rate scheduler is 'step'. Must be a float in the range [0, 1].
- step
LRStep numberSize - Value of step size when learning rate scheduler is 'step'. Must be a positive integer.
- training
Batch numberSize - Training batch size. Must be a positive integer.
- training
Crop numberSize - Image crop size that is input to the neural network for the training dataset. Must be a positive integer.
- validation
Batch numberSize - Validation batch size. Must be a positive integer.
- validation
Crop numberSize - Image crop size that is input to the neural network for the validation dataset. Must be a positive integer.
- validation
Resize numberSize - Image size to which to resize before cropping for validation dataset. Must be a positive integer.
- warmup
Cosine numberLRCycles - Value of cosine cycle when learning rate scheduler is 'warmup_cosine'. Must be a float in the range [0, 1].
- warmup
Cosine numberLRWarmup Epochs - Value of warmup epochs when learning rate scheduler is 'warmup_cosine'. Must be a positive integer.
- weight
Decay number - Value of weight decay when optimizer is 'sgd', 'adam', or 'adamw'. Must be a float in the range[0, 1].
- weighted
Loss number - Weighted loss. The accepted values are 0 for no weighted loss. 1 for weighted loss with sqrt.(class_weights). 2 for weighted loss with class_weights. Must be 0 or 1 or 2.
- advanced_
settings str - Settings for advanced scenarios.
- ams_
gradient bool - Enable AMSGrad when optimizer is 'adam' or 'adamw'.
- augmentations str
- Settings for using Augmentations.
- beta1 float
- Value of 'beta1' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- beta2 float
- Value of 'beta2' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- checkpoint_
frequency int - Frequency to store model checkpoints. Must be a positive integer.
- checkpoint_
model MLFlowModel Job Input Response - The pretrained checkpoint model for incremental training.
- checkpoint_
run_ strid - The id of a previous run that has a pretrained checkpoint for incremental training.
- distributed bool
- Whether to use distributed training.
- early_
stopping bool - Enable early stopping logic during training.
- early_
stopping_ intdelay - Minimum number of epochs or validation evaluations to wait before primary metric improvement is tracked for early stopping. Must be a positive integer.
- early_
stopping_ intpatience - Minimum number of epochs or validation evaluations with no primary metric improvement before the run is stopped. Must be a positive integer.
- enable_
onnx_ boolnormalization - Enable normalization when exporting ONNX model.
- evaluation_
frequency int - Frequency to evaluate validation dataset to get metric scores. Must be a positive integer.
- gradient_
accumulation_ intstep - Gradient accumulation means running a configured number of "GradAccumulationStep" steps without updating the model weights while accumulating the gradients of those steps, and then using the accumulated gradients to compute the weight updates. Must be a positive integer.
- layers_
to_ intfreeze - Number of layers to freeze for the model. Must be a positive integer. For instance, passing 2 as value for 'seresnext' means freezing layer0 and layer1. For a full list of models supported and details on layer freeze, please see: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- learning_
rate float - Initial learning rate. Must be a float in the range [0, 1].
- learning_
rate_ strscheduler - Type of learning rate scheduler. Must be 'warmup_cosine' or 'step'.
- model_
name str - Name of the model to use for training. For more information on the available models please visit the official documentation: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- momentum float
- Value of momentum when optimizer is 'sgd'. Must be a float in the range [0, 1].
- nesterov bool
- Enable nesterov when optimizer is 'sgd'.
- number_
of_ intepochs - Number of training epochs. Must be a positive integer.
- number_
of_ intworkers - Number of data loader workers. Must be a non-negative integer.
- optimizer str
- Type of optimizer.
- random_
seed int - Random seed to be used when using deterministic training.
- step_
lr_ floatgamma - Value of gamma when learning rate scheduler is 'step'. Must be a float in the range [0, 1].
- step_
lr_ intstep_ size - Value of step size when learning rate scheduler is 'step'. Must be a positive integer.
- training_
batch_ intsize - Training batch size. Must be a positive integer.
- training_
crop_ intsize - Image crop size that is input to the neural network for the training dataset. Must be a positive integer.
- validation_
batch_ intsize - Validation batch size. Must be a positive integer.
- validation_
crop_ intsize - Image crop size that is input to the neural network for the validation dataset. Must be a positive integer.
- validation_
resize_ intsize - Image size to which to resize before cropping for validation dataset. Must be a positive integer.
- warmup_
cosine_ floatlr_ cycles - Value of cosine cycle when learning rate scheduler is 'warmup_cosine'. Must be a float in the range [0, 1].
- warmup_
cosine_ intlr_ warmup_ epochs - Value of warmup epochs when learning rate scheduler is 'warmup_cosine'. Must be a positive integer.
- weight_
decay float - Value of weight decay when optimizer is 'sgd', 'adam', or 'adamw'. Must be a float in the range[0, 1].
- weighted_
loss int - Weighted loss. The accepted values are 0 for no weighted loss. 1 for weighted loss with sqrt.(class_weights). 2 for weighted loss with class_weights. Must be 0 or 1 or 2.
- advanced
Settings String - Settings for advanced scenarios.
- ams
Gradient Boolean - Enable AMSGrad when optimizer is 'adam' or 'adamw'.
- augmentations String
- Settings for using Augmentations.
- beta1 Number
- Value of 'beta1' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- beta2 Number
- Value of 'beta2' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- checkpoint
Frequency Number - Frequency to store model checkpoints. Must be a positive integer.
- checkpoint
Model Property Map - The pretrained checkpoint model for incremental training.
- checkpoint
Run StringId - The id of a previous run that has a pretrained checkpoint for incremental training.
- distributed Boolean
- Whether to use distributed training.
- early
Stopping Boolean - Enable early stopping logic during training.
- early
Stopping NumberDelay - Minimum number of epochs or validation evaluations to wait before primary metric improvement is tracked for early stopping. Must be a positive integer.
- early
Stopping NumberPatience - Minimum number of epochs or validation evaluations with no primary metric improvement before the run is stopped. Must be a positive integer.
- enable
Onnx BooleanNormalization - Enable normalization when exporting ONNX model.
- evaluation
Frequency Number - Frequency to evaluate validation dataset to get metric scores. Must be a positive integer.
- gradient
Accumulation NumberStep - Gradient accumulation means running a configured number of "GradAccumulationStep" steps without updating the model weights while accumulating the gradients of those steps, and then using the accumulated gradients to compute the weight updates. Must be a positive integer.
- layers
To NumberFreeze - Number of layers to freeze for the model. Must be a positive integer. For instance, passing 2 as value for 'seresnext' means freezing layer0 and layer1. For a full list of models supported and details on layer freeze, please see: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- learning
Rate Number - Initial learning rate. Must be a float in the range [0, 1].
- learning
Rate StringScheduler - Type of learning rate scheduler. Must be 'warmup_cosine' or 'step'.
- model
Name String - Name of the model to use for training. For more information on the available models please visit the official documentation: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- momentum Number
- Value of momentum when optimizer is 'sgd'. Must be a float in the range [0, 1].
- nesterov Boolean
- Enable nesterov when optimizer is 'sgd'.
- number
Of NumberEpochs - Number of training epochs. Must be a positive integer.
- number
Of NumberWorkers - Number of data loader workers. Must be a non-negative integer.
- optimizer String
- Type of optimizer.
- random
Seed Number - Random seed to be used when using deterministic training.
- step
LRGamma Number - Value of gamma when learning rate scheduler is 'step'. Must be a float in the range [0, 1].
- step
LRStep NumberSize - Value of step size when learning rate scheduler is 'step'. Must be a positive integer.
- training
Batch NumberSize - Training batch size. Must be a positive integer.
- training
Crop NumberSize - Image crop size that is input to the neural network for the training dataset. Must be a positive integer.
- validation
Batch NumberSize - Validation batch size. Must be a positive integer.
- validation
Crop NumberSize - Image crop size that is input to the neural network for the validation dataset. Must be a positive integer.
- validation
Resize NumberSize - Image size to which to resize before cropping for validation dataset. Must be a positive integer.
- warmup
Cosine NumberLRCycles - Value of cosine cycle when learning rate scheduler is 'warmup_cosine'. Must be a float in the range [0, 1].
- warmup
Cosine NumberLRWarmup Epochs - Value of warmup epochs when learning rate scheduler is 'warmup_cosine'. Must be a positive integer.
- weight
Decay Number - Value of weight decay when optimizer is 'sgd', 'adam', or 'adamw'. Must be a float in the range[0, 1].
- weighted
Loss Number - Weighted loss. The accepted values are 0 for no weighted loss. 1 for weighted loss with sqrt.(class_weights). 2 for weighted loss with class_weights. Must be 0 or 1 or 2.
ImageModelSettingsObjectDetectionResponse
- Advanced
Settings string - Settings for advanced scenarios.
- Ams
Gradient bool - Enable AMSGrad when optimizer is 'adam' or 'adamw'.
- Augmentations string
- Settings for using Augmentations.
- Beta1 double
- Value of 'beta1' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- Beta2 double
- Value of 'beta2' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- Box
Detections intPer Image - Maximum number of detections per image, for all classes. Must be a positive integer. Note: This settings is not supported for the 'yolov5' algorithm.
- Box
Score doubleThreshold - During inference, only return proposals with a classification score greater than BoxScoreThreshold. Must be a float in the range[0, 1].
- Checkpoint
Frequency int - Frequency to store model checkpoints. Must be a positive integer.
- Checkpoint
Model Pulumi.Azure Native. Machine Learning Services. Inputs. MLFlow Model Job Input Response - The pretrained checkpoint model for incremental training.
- Checkpoint
Run stringId - The id of a previous run that has a pretrained checkpoint for incremental training.
- Distributed bool
- Whether to use distributed training.
- Early
Stopping bool - Enable early stopping logic during training.
- Early
Stopping intDelay - Minimum number of epochs or validation evaluations to wait before primary metric improvement is tracked for early stopping. Must be a positive integer.
- Early
Stopping intPatience - Minimum number of epochs or validation evaluations with no primary metric improvement before the run is stopped. Must be a positive integer.
- Enable
Onnx boolNormalization - Enable normalization when exporting ONNX model.
- Evaluation
Frequency int - Frequency to evaluate validation dataset to get metric scores. Must be a positive integer.
- Gradient
Accumulation intStep - Gradient accumulation means running a configured number of "GradAccumulationStep" steps without updating the model weights while accumulating the gradients of those steps, and then using the accumulated gradients to compute the weight updates. Must be a positive integer.
- Image
Size int - Image size for train and validation. Must be a positive integer. Note: The training run may get into CUDA OOM if the size is too big. Note: This settings is only supported for the 'yolov5' algorithm.
- Layers
To intFreeze - Number of layers to freeze for the model. Must be a positive integer. For instance, passing 2 as value for 'seresnext' means freezing layer0 and layer1. For a full list of models supported and details on layer freeze, please see: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- Learning
Rate double - Initial learning rate. Must be a float in the range [0, 1].
- Learning
Rate stringScheduler - Type of learning rate scheduler. Must be 'warmup_cosine' or 'step'.
- Max
Size int - Maximum size of the image to be rescaled before feeding it to the backbone. Must be a positive integer. Note: training run may get into CUDA OOM if the size is too big. Note: This settings is not supported for the 'yolov5' algorithm.
- Min
Size int - Minimum size of the image to be rescaled before feeding it to the backbone. Must be a positive integer. Note: training run may get into CUDA OOM if the size is too big. Note: This settings is not supported for the 'yolov5' algorithm.
- Model
Name string - Name of the model to use for training. For more information on the available models please visit the official documentation: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- Model
Size string - Model size. Must be 'small', 'medium', 'large', or 'xlarge'. Note: training run may get into CUDA OOM if the model size is too big. Note: This settings is only supported for the 'yolov5' algorithm.
- Momentum double
- Value of momentum when optimizer is 'sgd'. Must be a float in the range [0, 1].
- Multi
Scale bool - Enable multi-scale image by varying image size by +/- 50%. Note: training run may get into CUDA OOM if no sufficient GPU memory. Note: This settings is only supported for the 'yolov5' algorithm.
- Nesterov bool
- Enable nesterov when optimizer is 'sgd'.
- Nms
Iou doubleThreshold - IOU threshold used during inference in NMS post processing. Must be a float in the range [0, 1].
- Number
Of intEpochs - Number of training epochs. Must be a positive integer.
- Number
Of intWorkers - Number of data loader workers. Must be a non-negative integer.
- Optimizer string
- Type of optimizer.
- Random
Seed int - Random seed to be used when using deterministic training.
- Step
LRGamma double - Value of gamma when learning rate scheduler is 'step'. Must be a float in the range [0, 1].
- Step
LRStep intSize - Value of step size when learning rate scheduler is 'step'. Must be a positive integer.
- Tile
Grid stringSize - The grid size to use for tiling each image. Note: TileGridSize must not be None to enable small object detection logic. A string containing two integers in mxn format. Note: This settings is not supported for the 'yolov5' algorithm.
- Tile
Overlap doubleRatio - Overlap ratio between adjacent tiles in each dimension. Must be float in the range [0, 1). Note: This settings is not supported for the 'yolov5' algorithm.
- Tile
Predictions doubleNms Threshold - The IOU threshold to use to perform NMS while merging predictions from tiles and image. Used in validation/ inference. Must be float in the range [0, 1]. Note: This settings is not supported for the 'yolov5' algorithm.
- Training
Batch intSize - Training batch size. Must be a positive integer.
- Validation
Batch intSize - Validation batch size. Must be a positive integer.
- Validation
Iou doubleThreshold - IOU threshold to use when computing validation metric. Must be float in the range [0, 1].
- Validation
Metric stringType - Metric computation method to use for validation metrics.
- Warmup
Cosine doubleLRCycles - Value of cosine cycle when learning rate scheduler is 'warmup_cosine'. Must be a float in the range [0, 1].
- Warmup
Cosine intLRWarmup Epochs - Value of warmup epochs when learning rate scheduler is 'warmup_cosine'. Must be a positive integer.
- Weight
Decay double - Value of weight decay when optimizer is 'sgd', 'adam', or 'adamw'. Must be a float in the range[0, 1].
- Advanced
Settings string - Settings for advanced scenarios.
- Ams
Gradient bool - Enable AMSGrad when optimizer is 'adam' or 'adamw'.
- Augmentations string
- Settings for using Augmentations.
- Beta1 float64
- Value of 'beta1' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- Beta2 float64
- Value of 'beta2' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- Box
Detections intPer Image - Maximum number of detections per image, for all classes. Must be a positive integer. Note: This settings is not supported for the 'yolov5' algorithm.
- Box
Score float64Threshold - During inference, only return proposals with a classification score greater than BoxScoreThreshold. Must be a float in the range[0, 1].
- Checkpoint
Frequency int - Frequency to store model checkpoints. Must be a positive integer.
- Checkpoint
Model MLFlowModel Job Input Response - The pretrained checkpoint model for incremental training.
- Checkpoint
Run stringId - The id of a previous run that has a pretrained checkpoint for incremental training.
- Distributed bool
- Whether to use distributed training.
- Early
Stopping bool - Enable early stopping logic during training.
- Early
Stopping intDelay - Minimum number of epochs or validation evaluations to wait before primary metric improvement is tracked for early stopping. Must be a positive integer.
- Early
Stopping intPatience - Minimum number of epochs or validation evaluations with no primary metric improvement before the run is stopped. Must be a positive integer.
- Enable
Onnx boolNormalization - Enable normalization when exporting ONNX model.
- Evaluation
Frequency int - Frequency to evaluate validation dataset to get metric scores. Must be a positive integer.
- Gradient
Accumulation intStep - Gradient accumulation means running a configured number of "GradAccumulationStep" steps without updating the model weights while accumulating the gradients of those steps, and then using the accumulated gradients to compute the weight updates. Must be a positive integer.
- Image
Size int - Image size for train and validation. Must be a positive integer. Note: The training run may get into CUDA OOM if the size is too big. Note: This settings is only supported for the 'yolov5' algorithm.
- Layers
To intFreeze - Number of layers to freeze for the model. Must be a positive integer. For instance, passing 2 as value for 'seresnext' means freezing layer0 and layer1. For a full list of models supported and details on layer freeze, please see: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- Learning
Rate float64 - Initial learning rate. Must be a float in the range [0, 1].
- Learning
Rate stringScheduler - Type of learning rate scheduler. Must be 'warmup_cosine' or 'step'.
- Max
Size int - Maximum size of the image to be rescaled before feeding it to the backbone. Must be a positive integer. Note: training run may get into CUDA OOM if the size is too big. Note: This settings is not supported for the 'yolov5' algorithm.
- Min
Size int - Minimum size of the image to be rescaled before feeding it to the backbone. Must be a positive integer. Note: training run may get into CUDA OOM if the size is too big. Note: This settings is not supported for the 'yolov5' algorithm.
- Model
Name string - Name of the model to use for training. For more information on the available models please visit the official documentation: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- Model
Size string - Model size. Must be 'small', 'medium', 'large', or 'xlarge'. Note: training run may get into CUDA OOM if the model size is too big. Note: This settings is only supported for the 'yolov5' algorithm.
- Momentum float64
- Value of momentum when optimizer is 'sgd'. Must be a float in the range [0, 1].
- Multi
Scale bool - Enable multi-scale image by varying image size by +/- 50%. Note: training run may get into CUDA OOM if no sufficient GPU memory. Note: This settings is only supported for the 'yolov5' algorithm.
- Nesterov bool
- Enable nesterov when optimizer is 'sgd'.
- Nms
Iou float64Threshold - IOU threshold used during inference in NMS post processing. Must be a float in the range [0, 1].
- Number
Of intEpochs - Number of training epochs. Must be a positive integer.
- Number
Of intWorkers - Number of data loader workers. Must be a non-negative integer.
- Optimizer string
- Type of optimizer.
- Random
Seed int - Random seed to be used when using deterministic training.
- Step
LRGamma float64 - Value of gamma when learning rate scheduler is 'step'. Must be a float in the range [0, 1].
- Step
LRStep intSize - Value of step size when learning rate scheduler is 'step'. Must be a positive integer.
- Tile
Grid stringSize - The grid size to use for tiling each image. Note: TileGridSize must not be None to enable small object detection logic. A string containing two integers in mxn format. Note: This settings is not supported for the 'yolov5' algorithm.
- Tile
Overlap float64Ratio - Overlap ratio between adjacent tiles in each dimension. Must be float in the range [0, 1). Note: This settings is not supported for the 'yolov5' algorithm.
- Tile
Predictions float64Nms Threshold - The IOU threshold to use to perform NMS while merging predictions from tiles and image. Used in validation/ inference. Must be float in the range [0, 1]. Note: This settings is not supported for the 'yolov5' algorithm.
- Training
Batch intSize - Training batch size. Must be a positive integer.
- Validation
Batch intSize - Validation batch size. Must be a positive integer.
- Validation
Iou float64Threshold - IOU threshold to use when computing validation metric. Must be float in the range [0, 1].
- Validation
Metric stringType - Metric computation method to use for validation metrics.
- Warmup
Cosine float64LRCycles - Value of cosine cycle when learning rate scheduler is 'warmup_cosine'. Must be a float in the range [0, 1].
- Warmup
Cosine intLRWarmup Epochs - Value of warmup epochs when learning rate scheduler is 'warmup_cosine'. Must be a positive integer.
- Weight
Decay float64 - Value of weight decay when optimizer is 'sgd', 'adam', or 'adamw'. Must be a float in the range[0, 1].
- advanced
Settings String - Settings for advanced scenarios.
- ams
Gradient Boolean - Enable AMSGrad when optimizer is 'adam' or 'adamw'.
- augmentations String
- Settings for using Augmentations.
- beta1 Double
- Value of 'beta1' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- beta2 Double
- Value of 'beta2' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- box
Detections IntegerPer Image - Maximum number of detections per image, for all classes. Must be a positive integer. Note: This settings is not supported for the 'yolov5' algorithm.
- box
Score DoubleThreshold - During inference, only return proposals with a classification score greater than BoxScoreThreshold. Must be a float in the range[0, 1].
- checkpoint
Frequency Integer - Frequency to store model checkpoints. Must be a positive integer.
- checkpoint
Model MLFlowModel Job Input Response - The pretrained checkpoint model for incremental training.
- checkpoint
Run StringId - The id of a previous run that has a pretrained checkpoint for incremental training.
- distributed Boolean
- Whether to use distributed training.
- early
Stopping Boolean - Enable early stopping logic during training.
- early
Stopping IntegerDelay - Minimum number of epochs or validation evaluations to wait before primary metric improvement is tracked for early stopping. Must be a positive integer.
- early
Stopping IntegerPatience - Minimum number of epochs or validation evaluations with no primary metric improvement before the run is stopped. Must be a positive integer.
- enable
Onnx BooleanNormalization - Enable normalization when exporting ONNX model.
- evaluation
Frequency Integer - Frequency to evaluate validation dataset to get metric scores. Must be a positive integer.
- gradient
Accumulation IntegerStep - Gradient accumulation means running a configured number of "GradAccumulationStep" steps without updating the model weights while accumulating the gradients of those steps, and then using the accumulated gradients to compute the weight updates. Must be a positive integer.
- image
Size Integer - Image size for train and validation. Must be a positive integer. Note: The training run may get into CUDA OOM if the size is too big. Note: This settings is only supported for the 'yolov5' algorithm.
- layers
To IntegerFreeze - Number of layers to freeze for the model. Must be a positive integer. For instance, passing 2 as value for 'seresnext' means freezing layer0 and layer1. For a full list of models supported and details on layer freeze, please see: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- learning
Rate Double - Initial learning rate. Must be a float in the range [0, 1].
- learning
Rate StringScheduler - Type of learning rate scheduler. Must be 'warmup_cosine' or 'step'.
- max
Size Integer - Maximum size of the image to be rescaled before feeding it to the backbone. Must be a positive integer. Note: training run may get into CUDA OOM if the size is too big. Note: This settings is not supported for the 'yolov5' algorithm.
- min
Size Integer - Minimum size of the image to be rescaled before feeding it to the backbone. Must be a positive integer. Note: training run may get into CUDA OOM if the size is too big. Note: This settings is not supported for the 'yolov5' algorithm.
- model
Name String - Name of the model to use for training. For more information on the available models please visit the official documentation: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- model
Size String - Model size. Must be 'small', 'medium', 'large', or 'xlarge'. Note: training run may get into CUDA OOM if the model size is too big. Note: This settings is only supported for the 'yolov5' algorithm.
- momentum Double
- Value of momentum when optimizer is 'sgd'. Must be a float in the range [0, 1].
- multi
Scale Boolean - Enable multi-scale image by varying image size by +/- 50%. Note: training run may get into CUDA OOM if no sufficient GPU memory. Note: This settings is only supported for the 'yolov5' algorithm.
- nesterov Boolean
- Enable nesterov when optimizer is 'sgd'.
- nms
Iou DoubleThreshold - IOU threshold used during inference in NMS post processing. Must be a float in the range [0, 1].
- number
Of IntegerEpochs - Number of training epochs. Must be a positive integer.
- number
Of IntegerWorkers - Number of data loader workers. Must be a non-negative integer.
- optimizer String
- Type of optimizer.
- random
Seed Integer - Random seed to be used when using deterministic training.
- step
LRGamma Double - Value of gamma when learning rate scheduler is 'step'. Must be a float in the range [0, 1].
- step
LRStep IntegerSize - Value of step size when learning rate scheduler is 'step'. Must be a positive integer.
- tile
Grid StringSize - The grid size to use for tiling each image. Note: TileGridSize must not be None to enable small object detection logic. A string containing two integers in mxn format. Note: This settings is not supported for the 'yolov5' algorithm.
- tile
Overlap DoubleRatio - Overlap ratio between adjacent tiles in each dimension. Must be float in the range [0, 1). Note: This settings is not supported for the 'yolov5' algorithm.
- tile
Predictions DoubleNms Threshold - The IOU threshold to use to perform NMS while merging predictions from tiles and image. Used in validation/ inference. Must be float in the range [0, 1]. Note: This settings is not supported for the 'yolov5' algorithm.
- training
Batch IntegerSize - Training batch size. Must be a positive integer.
- validation
Batch IntegerSize - Validation batch size. Must be a positive integer.
- validation
Iou DoubleThreshold - IOU threshold to use when computing validation metric. Must be float in the range [0, 1].
- validation
Metric StringType - Metric computation method to use for validation metrics.
- warmup
Cosine DoubleLRCycles - Value of cosine cycle when learning rate scheduler is 'warmup_cosine'. Must be a float in the range [0, 1].
- warmup
Cosine IntegerLRWarmup Epochs - Value of warmup epochs when learning rate scheduler is 'warmup_cosine'. Must be a positive integer.
- weight
Decay Double - Value of weight decay when optimizer is 'sgd', 'adam', or 'adamw'. Must be a float in the range[0, 1].
- advanced
Settings string - Settings for advanced scenarios.
- ams
Gradient boolean - Enable AMSGrad when optimizer is 'adam' or 'adamw'.
- augmentations string
- Settings for using Augmentations.
- beta1 number
- Value of 'beta1' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- beta2 number
- Value of 'beta2' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- box
Detections numberPer Image - Maximum number of detections per image, for all classes. Must be a positive integer. Note: This settings is not supported for the 'yolov5' algorithm.
- box
Score numberThreshold - During inference, only return proposals with a classification score greater than BoxScoreThreshold. Must be a float in the range[0, 1].
- checkpoint
Frequency number - Frequency to store model checkpoints. Must be a positive integer.
- checkpoint
Model MLFlowModel Job Input Response - The pretrained checkpoint model for incremental training.
- checkpoint
Run stringId - The id of a previous run that has a pretrained checkpoint for incremental training.
- distributed boolean
- Whether to use distributed training.
- early
Stopping boolean - Enable early stopping logic during training.
- early
Stopping numberDelay - Minimum number of epochs or validation evaluations to wait before primary metric improvement is tracked for early stopping. Must be a positive integer.
- early
Stopping numberPatience - Minimum number of epochs or validation evaluations with no primary metric improvement before the run is stopped. Must be a positive integer.
- enable
Onnx booleanNormalization - Enable normalization when exporting ONNX model.
- evaluation
Frequency number - Frequency to evaluate validation dataset to get metric scores. Must be a positive integer.
- gradient
Accumulation numberStep - Gradient accumulation means running a configured number of "GradAccumulationStep" steps without updating the model weights while accumulating the gradients of those steps, and then using the accumulated gradients to compute the weight updates. Must be a positive integer.
- image
Size number - Image size for train and validation. Must be a positive integer. Note: The training run may get into CUDA OOM if the size is too big. Note: This settings is only supported for the 'yolov5' algorithm.
- layers
To numberFreeze - Number of layers to freeze for the model. Must be a positive integer. For instance, passing 2 as value for 'seresnext' means freezing layer0 and layer1. For a full list of models supported and details on layer freeze, please see: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- learning
Rate number - Initial learning rate. Must be a float in the range [0, 1].
- learning
Rate stringScheduler - Type of learning rate scheduler. Must be 'warmup_cosine' or 'step'.
- max
Size number - Maximum size of the image to be rescaled before feeding it to the backbone. Must be a positive integer. Note: training run may get into CUDA OOM if the size is too big. Note: This settings is not supported for the 'yolov5' algorithm.
- min
Size number - Minimum size of the image to be rescaled before feeding it to the backbone. Must be a positive integer. Note: training run may get into CUDA OOM if the size is too big. Note: This settings is not supported for the 'yolov5' algorithm.
- model
Name string - Name of the model to use for training. For more information on the available models please visit the official documentation: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- model
Size string - Model size. Must be 'small', 'medium', 'large', or 'xlarge'. Note: training run may get into CUDA OOM if the model size is too big. Note: This settings is only supported for the 'yolov5' algorithm.
- momentum number
- Value of momentum when optimizer is 'sgd'. Must be a float in the range [0, 1].
- multi
Scale boolean - Enable multi-scale image by varying image size by +/- 50%. Note: training run may get into CUDA OOM if no sufficient GPU memory. Note: This settings is only supported for the 'yolov5' algorithm.
- nesterov boolean
- Enable nesterov when optimizer is 'sgd'.
- nms
Iou numberThreshold - IOU threshold used during inference in NMS post processing. Must be a float in the range [0, 1].
- number
Of numberEpochs - Number of training epochs. Must be a positive integer.
- number
Of numberWorkers - Number of data loader workers. Must be a non-negative integer.
- optimizer string
- Type of optimizer.
- random
Seed number - Random seed to be used when using deterministic training.
- step
LRGamma number - Value of gamma when learning rate scheduler is 'step'. Must be a float in the range [0, 1].
- step
LRStep numberSize - Value of step size when learning rate scheduler is 'step'. Must be a positive integer.
- tile
Grid stringSize - The grid size to use for tiling each image. Note: TileGridSize must not be None to enable small object detection logic. A string containing two integers in mxn format. Note: This settings is not supported for the 'yolov5' algorithm.
- tile
Overlap numberRatio - Overlap ratio between adjacent tiles in each dimension. Must be float in the range [0, 1). Note: This settings is not supported for the 'yolov5' algorithm.
- tile
Predictions numberNms Threshold - The IOU threshold to use to perform NMS while merging predictions from tiles and image. Used in validation/ inference. Must be float in the range [0, 1]. Note: This settings is not supported for the 'yolov5' algorithm.
- training
Batch numberSize - Training batch size. Must be a positive integer.
- validation
Batch numberSize - Validation batch size. Must be a positive integer.
- validation
Iou numberThreshold - IOU threshold to use when computing validation metric. Must be float in the range [0, 1].
- validation
Metric stringType - Metric computation method to use for validation metrics.
- warmup
Cosine numberLRCycles - Value of cosine cycle when learning rate scheduler is 'warmup_cosine'. Must be a float in the range [0, 1].
- warmup
Cosine numberLRWarmup Epochs - Value of warmup epochs when learning rate scheduler is 'warmup_cosine'. Must be a positive integer.
- weight
Decay number - Value of weight decay when optimizer is 'sgd', 'adam', or 'adamw'. Must be a float in the range[0, 1].
- advanced_
settings str - Settings for advanced scenarios.
- ams_
gradient bool - Enable AMSGrad when optimizer is 'adam' or 'adamw'.
- augmentations str
- Settings for using Augmentations.
- beta1 float
- Value of 'beta1' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- beta2 float
- Value of 'beta2' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- box_
detections_ intper_ image - Maximum number of detections per image, for all classes. Must be a positive integer. Note: This settings is not supported for the 'yolov5' algorithm.
- box_
score_ floatthreshold - During inference, only return proposals with a classification score greater than BoxScoreThreshold. Must be a float in the range[0, 1].
- checkpoint_
frequency int - Frequency to store model checkpoints. Must be a positive integer.
- checkpoint_
model MLFlowModel Job Input Response - The pretrained checkpoint model for incremental training.
- checkpoint_
run_ strid - The id of a previous run that has a pretrained checkpoint for incremental training.
- distributed bool
- Whether to use distributed training.
- early_
stopping bool - Enable early stopping logic during training.
- early_
stopping_ intdelay - Minimum number of epochs or validation evaluations to wait before primary metric improvement is tracked for early stopping. Must be a positive integer.
- early_
stopping_ intpatience - Minimum number of epochs or validation evaluations with no primary metric improvement before the run is stopped. Must be a positive integer.
- enable_
onnx_ boolnormalization - Enable normalization when exporting ONNX model.
- evaluation_
frequency int - Frequency to evaluate validation dataset to get metric scores. Must be a positive integer.
- gradient_
accumulation_ intstep - Gradient accumulation means running a configured number of "GradAccumulationStep" steps without updating the model weights while accumulating the gradients of those steps, and then using the accumulated gradients to compute the weight updates. Must be a positive integer.
- image_
size int - Image size for train and validation. Must be a positive integer. Note: The training run may get into CUDA OOM if the size is too big. Note: This settings is only supported for the 'yolov5' algorithm.
- layers_
to_ intfreeze - Number of layers to freeze for the model. Must be a positive integer. For instance, passing 2 as value for 'seresnext' means freezing layer0 and layer1. For a full list of models supported and details on layer freeze, please see: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- learning_
rate float - Initial learning rate. Must be a float in the range [0, 1].
- learning_
rate_ strscheduler - Type of learning rate scheduler. Must be 'warmup_cosine' or 'step'.
- max_
size int - Maximum size of the image to be rescaled before feeding it to the backbone. Must be a positive integer. Note: training run may get into CUDA OOM if the size is too big. Note: This settings is not supported for the 'yolov5' algorithm.
- min_
size int - Minimum size of the image to be rescaled before feeding it to the backbone. Must be a positive integer. Note: training run may get into CUDA OOM if the size is too big. Note: This settings is not supported for the 'yolov5' algorithm.
- model_
name str - Name of the model to use for training. For more information on the available models please visit the official documentation: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- model_
size str - Model size. Must be 'small', 'medium', 'large', or 'xlarge'. Note: training run may get into CUDA OOM if the model size is too big. Note: This settings is only supported for the 'yolov5' algorithm.
- momentum float
- Value of momentum when optimizer is 'sgd'. Must be a float in the range [0, 1].
- multi_
scale bool - Enable multi-scale image by varying image size by +/- 50%. Note: training run may get into CUDA OOM if no sufficient GPU memory. Note: This settings is only supported for the 'yolov5' algorithm.
- nesterov bool
- Enable nesterov when optimizer is 'sgd'.
- nms_
iou_ floatthreshold - IOU threshold used during inference in NMS post processing. Must be a float in the range [0, 1].
- number_
of_ intepochs - Number of training epochs. Must be a positive integer.
- number_
of_ intworkers - Number of data loader workers. Must be a non-negative integer.
- optimizer str
- Type of optimizer.
- random_
seed int - Random seed to be used when using deterministic training.
- step_
lr_ floatgamma - Value of gamma when learning rate scheduler is 'step'. Must be a float in the range [0, 1].
- step_
lr_ intstep_ size - Value of step size when learning rate scheduler is 'step'. Must be a positive integer.
- tile_
grid_ strsize - The grid size to use for tiling each image. Note: TileGridSize must not be None to enable small object detection logic. A string containing two integers in mxn format. Note: This settings is not supported for the 'yolov5' algorithm.
- tile_
overlap_ floatratio - Overlap ratio between adjacent tiles in each dimension. Must be float in the range [0, 1). Note: This settings is not supported for the 'yolov5' algorithm.
- tile_
predictions_ floatnms_ threshold - The IOU threshold to use to perform NMS while merging predictions from tiles and image. Used in validation/ inference. Must be float in the range [0, 1]. Note: This settings is not supported for the 'yolov5' algorithm.
- training_
batch_ intsize - Training batch size. Must be a positive integer.
- validation_
batch_ intsize - Validation batch size. Must be a positive integer.
- validation_
iou_ floatthreshold - IOU threshold to use when computing validation metric. Must be float in the range [0, 1].
- validation_
metric_ strtype - Metric computation method to use for validation metrics.
- warmup_
cosine_ floatlr_ cycles - Value of cosine cycle when learning rate scheduler is 'warmup_cosine'. Must be a float in the range [0, 1].
- warmup_
cosine_ intlr_ warmup_ epochs - Value of warmup epochs when learning rate scheduler is 'warmup_cosine'. Must be a positive integer.
- weight_
decay float - Value of weight decay when optimizer is 'sgd', 'adam', or 'adamw'. Must be a float in the range[0, 1].
- advanced
Settings String - Settings for advanced scenarios.
- ams
Gradient Boolean - Enable AMSGrad when optimizer is 'adam' or 'adamw'.
- augmentations String
- Settings for using Augmentations.
- beta1 Number
- Value of 'beta1' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- beta2 Number
- Value of 'beta2' when optimizer is 'adam' or 'adamw'. Must be a float in the range [0, 1].
- box
Detections NumberPer Image - Maximum number of detections per image, for all classes. Must be a positive integer. Note: This settings is not supported for the 'yolov5' algorithm.
- box
Score NumberThreshold - During inference, only return proposals with a classification score greater than BoxScoreThreshold. Must be a float in the range[0, 1].
- checkpoint
Frequency Number - Frequency to store model checkpoints. Must be a positive integer.
- checkpoint
Model Property Map - The pretrained checkpoint model for incremental training.
- checkpoint
Run StringId - The id of a previous run that has a pretrained checkpoint for incremental training.
- distributed Boolean
- Whether to use distributed training.
- early
Stopping Boolean - Enable early stopping logic during training.
- early
Stopping NumberDelay - Minimum number of epochs or validation evaluations to wait before primary metric improvement is tracked for early stopping. Must be a positive integer.
- early
Stopping NumberPatience - Minimum number of epochs or validation evaluations with no primary metric improvement before the run is stopped. Must be a positive integer.
- enable
Onnx BooleanNormalization - Enable normalization when exporting ONNX model.
- evaluation
Frequency Number - Frequency to evaluate validation dataset to get metric scores. Must be a positive integer.
- gradient
Accumulation NumberStep - Gradient accumulation means running a configured number of "GradAccumulationStep" steps without updating the model weights while accumulating the gradients of those steps, and then using the accumulated gradients to compute the weight updates. Must be a positive integer.
- image
Size Number - Image size for train and validation. Must be a positive integer. Note: The training run may get into CUDA OOM if the size is too big. Note: This settings is only supported for the 'yolov5' algorithm.
- layers
To NumberFreeze - Number of layers to freeze for the model. Must be a positive integer. For instance, passing 2 as value for 'seresnext' means freezing layer0 and layer1. For a full list of models supported and details on layer freeze, please see: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- learning
Rate Number - Initial learning rate. Must be a float in the range [0, 1].
- learning
Rate StringScheduler - Type of learning rate scheduler. Must be 'warmup_cosine' or 'step'.
- max
Size Number - Maximum size of the image to be rescaled before feeding it to the backbone. Must be a positive integer. Note: training run may get into CUDA OOM if the size is too big. Note: This settings is not supported for the 'yolov5' algorithm.
- min
Size Number - Minimum size of the image to be rescaled before feeding it to the backbone. Must be a positive integer. Note: training run may get into CUDA OOM if the size is too big. Note: This settings is not supported for the 'yolov5' algorithm.
- model
Name String - Name of the model to use for training. For more information on the available models please visit the official documentation: https://docs.microsoft.com/en-us/azure/machine-learning/how-to-auto-train-image-models.
- model
Size String - Model size. Must be 'small', 'medium', 'large', or 'xlarge'. Note: training run may get into CUDA OOM if the model size is too big. Note: This settings is only supported for the 'yolov5' algorithm.
- momentum Number
- Value of momentum when optimizer is 'sgd'. Must be a float in the range [0, 1].
- multi
Scale Boolean - Enable multi-scale image by varying image size by +/- 50%. Note: training run may get into CUDA OOM if no sufficient GPU memory. Note: This settings is only supported for the 'yolov5' algorithm.
- nesterov Boolean
- Enable nesterov when optimizer is 'sgd'.
- nms
Iou NumberThreshold - IOU threshold used during inference in NMS post processing. Must be a float in the range [0, 1].
- number
Of NumberEpochs - Number of training epochs. Must be a positive integer.
- number
Of NumberWorkers - Number of data loader workers. Must be a non-negative integer.
- optimizer String
- Type of optimizer.
- random
Seed Number - Random seed to be used when using deterministic training.
- step
LRGamma Number - Value of gamma when learning rate scheduler is 'step'. Must be a float in the range [0, 1].
- step
LRStep NumberSize - Value of step size when learning rate scheduler is 'step'. Must be a positive integer.
- tile
Grid StringSize - The grid size to use for tiling each image. Note: TileGridSize must not be None to enable small object detection logic. A string containing two integers in mxn format. Note: This settings is not supported for the 'yolov5' algorithm.
- tile
Overlap NumberRatio - Overlap ratio between adjacent tiles in each dimension. Must be float in the range [0, 1). Note: This settings is not supported for the 'yolov5' algorithm.
- tile
Predictions NumberNms Threshold - The IOU threshold to use to perform NMS while merging predictions from tiles and image. Used in validation/ inference. Must be float in the range [0, 1]. Note: This settings is not supported for the 'yolov5' algorithm.
- training
Batch NumberSize - Training batch size. Must be a positive integer.
- validation
Batch NumberSize - Validation batch size. Must be a positive integer.
- validation
Iou NumberThreshold - IOU threshold to use when computing validation metric. Must be float in the range [0, 1].
- validation
Metric StringType - Metric computation method to use for validation metrics.
- warmup
Cosine NumberLRCycles - Value of cosine cycle when learning rate scheduler is 'warmup_cosine'. Must be a float in the range [0, 1].
- warmup
Cosine NumberLRWarmup Epochs - Value of warmup epochs when learning rate scheduler is 'warmup_cosine'. Must be a positive integer.
- weight
Decay Number - Value of weight decay when optimizer is 'sgd', 'adam', or 'adamw'. Must be a float in the range[0, 1].
ImageObjectDetectionResponse
- Limit
Settings Pulumi.Azure Native. Machine Learning Services. Inputs. Image Limit Settings Response - [Required] Limit settings for the AutoML job.
- Training
Data Pulumi.Azure Native. Machine Learning Services. Inputs. MLTable Job Input Response - [Required] Training data input.
- Log
Verbosity string - Log verbosity for the job.
- Model
Settings Pulumi.Azure Native. Machine Learning Services. Inputs. Image Model Settings Object Detection Response - Settings used for training the model.
- Primary
Metric string - Primary metric to optimize for this task.
- Search
Space List<Pulumi.Azure Native. Machine Learning Services. Inputs. Image Model Distribution Settings Object Detection Response> - Search space for sampling different combinations of models and their hyperparameters.
- Sweep
Settings Pulumi.Azure Native. Machine Learning Services. Inputs. Image Sweep Settings Response - Model sweeping and hyperparameter sweeping related settings.
- Target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- Validation
Data Pulumi.Azure Native. Machine Learning Services. Inputs. MLTable Job Input Response - Validation data inputs.
- Validation
Data doubleSize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- Limit
Settings ImageLimit Settings Response - [Required] Limit settings for the AutoML job.
- Training
Data MLTableJob Input Response - [Required] Training data input.
- Log
Verbosity string - Log verbosity for the job.
- Model
Settings ImageModel Settings Object Detection Response - Settings used for training the model.
- Primary
Metric string - Primary metric to optimize for this task.
- Search
Space []ImageModel Distribution Settings Object Detection Response - Search space for sampling different combinations of models and their hyperparameters.
- Sweep
Settings ImageSweep Settings Response - Model sweeping and hyperparameter sweeping related settings.
- Target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- Validation
Data MLTableJob Input Response - Validation data inputs.
- Validation
Data float64Size - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- limit
Settings ImageLimit Settings Response - [Required] Limit settings for the AutoML job.
- training
Data MLTableJob Input Response - [Required] Training data input.
- log
Verbosity String - Log verbosity for the job.
- model
Settings ImageModel Settings Object Detection Response - Settings used for training the model.
- primary
Metric String - Primary metric to optimize for this task.
- search
Space List<ImageModel Distribution Settings Object Detection Response> - Search space for sampling different combinations of models and their hyperparameters.
- sweep
Settings ImageSweep Settings Response - Model sweeping and hyperparameter sweeping related settings.
- target
Column StringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- validation
Data MLTableJob Input Response - Validation data inputs.
- validation
Data DoubleSize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- limit
Settings ImageLimit Settings Response - [Required] Limit settings for the AutoML job.
- training
Data MLTableJob Input Response - [Required] Training data input.
- log
Verbosity string - Log verbosity for the job.
- model
Settings ImageModel Settings Object Detection Response - Settings used for training the model.
- primary
Metric string - Primary metric to optimize for this task.
- search
Space ImageModel Distribution Settings Object Detection Response[] - Search space for sampling different combinations of models and their hyperparameters.
- sweep
Settings ImageSweep Settings Response - Model sweeping and hyperparameter sweeping related settings.
- target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- validation
Data MLTableJob Input Response - Validation data inputs.
- validation
Data numberSize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- limit_
settings ImageLimit Settings Response - [Required] Limit settings for the AutoML job.
- training_
data MLTableJob Input Response - [Required] Training data input.
- log_
verbosity str - Log verbosity for the job.
- model_
settings ImageModel Settings Object Detection Response - Settings used for training the model.
- primary_
metric str - Primary metric to optimize for this task.
- search_
space Sequence[ImageModel Distribution Settings Object Detection Response] - Search space for sampling different combinations of models and their hyperparameters.
- sweep_
settings ImageSweep Settings Response - Model sweeping and hyperparameter sweeping related settings.
- target_
column_ strname - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- validation_
data MLTableJob Input Response - Validation data inputs.
- validation_
data_ floatsize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- limit
Settings Property Map - [Required] Limit settings for the AutoML job.
- training
Data Property Map - [Required] Training data input.
- log
Verbosity String - Log verbosity for the job.
- model
Settings Property Map - Settings used for training the model.
- primary
Metric String - Primary metric to optimize for this task.
- search
Space List<Property Map> - Search space for sampling different combinations of models and their hyperparameters.
- sweep
Settings Property Map - Model sweeping and hyperparameter sweeping related settings.
- target
Column StringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- validation
Data Property Map - Validation data inputs.
- validation
Data NumberSize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
ImageSweepSettingsResponse
- Sampling
Algorithm string - [Required] Type of the hyperparameter sampling algorithms.
- Early
Termination Pulumi.Azure | Pulumi.Native. Machine Learning Services. Inputs. Bandit Policy Response Azure | Pulumi.Native. Machine Learning Services. Inputs. Median Stopping Policy Response Azure Native. Machine Learning Services. Inputs. Truncation Selection Policy Response - Type of early termination policy.
- Sampling
Algorithm string - [Required] Type of the hyperparameter sampling algorithms.
- Early
Termination BanditPolicy | MedianResponse Stopping | TruncationPolicy Response Selection Policy Response - Type of early termination policy.
- sampling
Algorithm String - [Required] Type of the hyperparameter sampling algorithms.
- early
Termination BanditPolicy | MedianResponse Stopping | TruncationPolicy Response Selection Policy Response - Type of early termination policy.
- sampling
Algorithm string - [Required] Type of the hyperparameter sampling algorithms.
- early
Termination BanditPolicy | MedianResponse Stopping | TruncationPolicy Response Selection Policy Response - Type of early termination policy.
- sampling_
algorithm str - [Required] Type of the hyperparameter sampling algorithms.
- early_
termination BanditPolicy | MedianResponse Stopping | TruncationPolicy Response Selection Policy Response - Type of early termination policy.
- sampling
Algorithm String - [Required] Type of the hyperparameter sampling algorithms.
- early
Termination Property Map | Property Map | Property Map - Type of early termination policy.
JobResourceConfigurationResponse
- Docker
Args string - Extra arguments to pass to the Docker run command. This would override any parameters that have already been set by the system, or in this section. This parameter is only supported for Azure ML compute types.
- Instance
Count int - Optional number of instances or nodes used by the compute target.
- Instance
Type string - Optional type of VM used as supported by the compute target.
- Properties Dictionary<string, object>
- Additional properties bag.
- Shm
Size string - Size of the docker container's shared memory block. This should be in the format of (number)(unit) where number as to be greater than 0 and the unit can be one of b(bytes), k(kilobytes), m(megabytes), or g(gigabytes).
- Docker
Args string - Extra arguments to pass to the Docker run command. This would override any parameters that have already been set by the system, or in this section. This parameter is only supported for Azure ML compute types.
- Instance
Count int - Optional number of instances or nodes used by the compute target.
- Instance
Type string - Optional type of VM used as supported by the compute target.
- Properties map[string]interface{}
- Additional properties bag.
- Shm
Size string - Size of the docker container's shared memory block. This should be in the format of (number)(unit) where number as to be greater than 0 and the unit can be one of b(bytes), k(kilobytes), m(megabytes), or g(gigabytes).
- docker
Args String - Extra arguments to pass to the Docker run command. This would override any parameters that have already been set by the system, or in this section. This parameter is only supported for Azure ML compute types.
- instance
Count Integer - Optional number of instances or nodes used by the compute target.
- instance
Type String - Optional type of VM used as supported by the compute target.
- properties Map<String,Object>
- Additional properties bag.
- shm
Size String - Size of the docker container's shared memory block. This should be in the format of (number)(unit) where number as to be greater than 0 and the unit can be one of b(bytes), k(kilobytes), m(megabytes), or g(gigabytes).
- docker
Args string - Extra arguments to pass to the Docker run command. This would override any parameters that have already been set by the system, or in this section. This parameter is only supported for Azure ML compute types.
- instance
Count number - Optional number of instances or nodes used by the compute target.
- instance
Type string - Optional type of VM used as supported by the compute target.
- properties {[key: string]: any}
- Additional properties bag.
- shm
Size string - Size of the docker container's shared memory block. This should be in the format of (number)(unit) where number as to be greater than 0 and the unit can be one of b(bytes), k(kilobytes), m(megabytes), or g(gigabytes).
- docker_
args str - Extra arguments to pass to the Docker run command. This would override any parameters that have already been set by the system, or in this section. This parameter is only supported for Azure ML compute types.
- instance_
count int - Optional number of instances or nodes used by the compute target.
- instance_
type str - Optional type of VM used as supported by the compute target.
- properties Mapping[str, Any]
- Additional properties bag.
- shm_
size str - Size of the docker container's shared memory block. This should be in the format of (number)(unit) where number as to be greater than 0 and the unit can be one of b(bytes), k(kilobytes), m(megabytes), or g(gigabytes).
- docker
Args String - Extra arguments to pass to the Docker run command. This would override any parameters that have already been set by the system, or in this section. This parameter is only supported for Azure ML compute types.
- instance
Count Number - Optional number of instances or nodes used by the compute target.
- instance
Type String - Optional type of VM used as supported by the compute target.
- properties Map<Any>
- Additional properties bag.
- shm
Size String - Size of the docker container's shared memory block. This should be in the format of (number)(unit) where number as to be greater than 0 and the unit can be one of b(bytes), k(kilobytes), m(megabytes), or g(gigabytes).
JobServiceResponse
- Error
Message string - Any error in the service.
- Status string
- Status of endpoint.
- Endpoint string
- Url for endpoint.
- Job
Service stringType - Endpoint type.
- Nodes
Pulumi.
Azure Native. Machine Learning Services. Inputs. All Nodes Response - Nodes that user would like to start the service on. If Nodes is not set or set to null, the service will only be started on leader node.
- Port int
- Port for endpoint.
- Properties Dictionary<string, string>
- Additional properties to set on the endpoint.
- Error
Message string - Any error in the service.
- Status string
- Status of endpoint.
- Endpoint string
- Url for endpoint.
- Job
Service stringType - Endpoint type.
- Nodes
All
Nodes Response - Nodes that user would like to start the service on. If Nodes is not set or set to null, the service will only be started on leader node.
- Port int
- Port for endpoint.
- Properties map[string]string
- Additional properties to set on the endpoint.
- error
Message String - Any error in the service.
- status String
- Status of endpoint.
- endpoint String
- Url for endpoint.
- job
Service StringType - Endpoint type.
- nodes
All
Nodes Response - Nodes that user would like to start the service on. If Nodes is not set or set to null, the service will only be started on leader node.
- port Integer
- Port for endpoint.
- properties Map<String,String>
- Additional properties to set on the endpoint.
- error
Message string - Any error in the service.
- status string
- Status of endpoint.
- endpoint string
- Url for endpoint.
- job
Service stringType - Endpoint type.
- nodes
All
Nodes Response - Nodes that user would like to start the service on. If Nodes is not set or set to null, the service will only be started on leader node.
- port number
- Port for endpoint.
- properties {[key: string]: string}
- Additional properties to set on the endpoint.
- error_
message str - Any error in the service.
- status str
- Status of endpoint.
- endpoint str
- Url for endpoint.
- job_
service_ strtype - Endpoint type.
- nodes
All
Nodes Response - Nodes that user would like to start the service on. If Nodes is not set or set to null, the service will only be started on leader node.
- port int
- Port for endpoint.
- properties Mapping[str, str]
- Additional properties to set on the endpoint.
- error
Message String - Any error in the service.
- status String
- Status of endpoint.
- endpoint String
- Url for endpoint.
- job
Service StringType - Endpoint type.
- nodes Property Map
- Nodes that user would like to start the service on. If Nodes is not set or set to null, the service will only be started on leader node.
- port Number
- Port for endpoint.
- properties Map<String>
- Additional properties to set on the endpoint.
LiteralJobInputResponse
- Value string
- [Required] Literal value for the input.
- Description string
- Description for the input.
- Value string
- [Required] Literal value for the input.
- Description string
- Description for the input.
- value String
- [Required] Literal value for the input.
- description String
- Description for the input.
- value string
- [Required] Literal value for the input.
- description string
- Description for the input.
- value str
- [Required] Literal value for the input.
- description str
- Description for the input.
- value String
- [Required] Literal value for the input.
- description String
- Description for the input.
MLFlowModelJobInputResponse
- Uri string
- [Required] Input Asset URI.
- Description string
- Description for the input.
- Mode string
- Input Asset Delivery Mode.
- Uri string
- [Required] Input Asset URI.
- Description string
- Description for the input.
- Mode string
- Input Asset Delivery Mode.
- uri String
- [Required] Input Asset URI.
- description String
- Description for the input.
- mode String
- Input Asset Delivery Mode.
- uri string
- [Required] Input Asset URI.
- description string
- Description for the input.
- mode string
- Input Asset Delivery Mode.
- uri str
- [Required] Input Asset URI.
- description str
- Description for the input.
- mode str
- Input Asset Delivery Mode.
- uri String
- [Required] Input Asset URI.
- description String
- Description for the input.
- mode String
- Input Asset Delivery Mode.
MLFlowModelJobOutputResponse
- Description string
- Description for the output.
- Mode string
- Output Asset Delivery Mode.
- Uri string
- Output Asset URI.
- Description string
- Description for the output.
- Mode string
- Output Asset Delivery Mode.
- Uri string
- Output Asset URI.
- description String
- Description for the output.
- mode String
- Output Asset Delivery Mode.
- uri String
- Output Asset URI.
- description string
- Description for the output.
- mode string
- Output Asset Delivery Mode.
- uri string
- Output Asset URI.
- description str
- Description for the output.
- mode str
- Output Asset Delivery Mode.
- uri str
- Output Asset URI.
- description String
- Description for the output.
- mode String
- Output Asset Delivery Mode.
- uri String
- Output Asset URI.
MLTableJobInputResponse
- Uri string
- [Required] Input Asset URI.
- Description string
- Description for the input.
- Mode string
- Input Asset Delivery Mode.
- Uri string
- [Required] Input Asset URI.
- Description string
- Description for the input.
- Mode string
- Input Asset Delivery Mode.
- uri String
- [Required] Input Asset URI.
- description String
- Description for the input.
- mode String
- Input Asset Delivery Mode.
- uri string
- [Required] Input Asset URI.
- description string
- Description for the input.
- mode string
- Input Asset Delivery Mode.
- uri str
- [Required] Input Asset URI.
- description str
- Description for the input.
- mode str
- Input Asset Delivery Mode.
- uri String
- [Required] Input Asset URI.
- description String
- Description for the input.
- mode String
- Input Asset Delivery Mode.
MLTableJobOutputResponse
- Description string
- Description for the output.
- Mode string
- Output Asset Delivery Mode.
- Uri string
- Output Asset URI.
- Description string
- Description for the output.
- Mode string
- Output Asset Delivery Mode.
- Uri string
- Output Asset URI.
- description String
- Description for the output.
- mode String
- Output Asset Delivery Mode.
- uri String
- Output Asset URI.
- description string
- Description for the output.
- mode string
- Output Asset Delivery Mode.
- uri string
- Output Asset URI.
- description str
- Description for the output.
- mode str
- Output Asset Delivery Mode.
- uri str
- Output Asset URI.
- description String
- Description for the output.
- mode String
- Output Asset Delivery Mode.
- uri String
- Output Asset URI.
ManagedIdentityResponse
- Client
Id string - Specifies a user-assigned identity by client ID. For system-assigned, do not set this field.
- Object
Id string - Specifies a user-assigned identity by object ID. For system-assigned, do not set this field.
- Resource
Id string - Specifies a user-assigned identity by ARM resource ID. For system-assigned, do not set this field.
- Client
Id string - Specifies a user-assigned identity by client ID. For system-assigned, do not set this field.
- Object
Id string - Specifies a user-assigned identity by object ID. For system-assigned, do not set this field.
- Resource
Id string - Specifies a user-assigned identity by ARM resource ID. For system-assigned, do not set this field.
- client
Id String - Specifies a user-assigned identity by client ID. For system-assigned, do not set this field.
- object
Id String - Specifies a user-assigned identity by object ID. For system-assigned, do not set this field.
- resource
Id String - Specifies a user-assigned identity by ARM resource ID. For system-assigned, do not set this field.
- client
Id string - Specifies a user-assigned identity by client ID. For system-assigned, do not set this field.
- object
Id string - Specifies a user-assigned identity by object ID. For system-assigned, do not set this field.
- resource
Id string - Specifies a user-assigned identity by ARM resource ID. For system-assigned, do not set this field.
- client_
id str - Specifies a user-assigned identity by client ID. For system-assigned, do not set this field.
- object_
id str - Specifies a user-assigned identity by object ID. For system-assigned, do not set this field.
- resource_
id str - Specifies a user-assigned identity by ARM resource ID. For system-assigned, do not set this field.
- client
Id String - Specifies a user-assigned identity by client ID. For system-assigned, do not set this field.
- object
Id String - Specifies a user-assigned identity by object ID. For system-assigned, do not set this field.
- resource
Id String - Specifies a user-assigned identity by ARM resource ID. For system-assigned, do not set this field.
MedianStoppingPolicyResponse
- Delay
Evaluation int - Number of intervals by which to delay the first evaluation.
- Evaluation
Interval int - Interval (number of runs) between policy evaluations.
- Delay
Evaluation int - Number of intervals by which to delay the first evaluation.
- Evaluation
Interval int - Interval (number of runs) between policy evaluations.
- delay
Evaluation Integer - Number of intervals by which to delay the first evaluation.
- evaluation
Interval Integer - Interval (number of runs) between policy evaluations.
- delay
Evaluation number - Number of intervals by which to delay the first evaluation.
- evaluation
Interval number - Interval (number of runs) between policy evaluations.
- delay_
evaluation int - Number of intervals by which to delay the first evaluation.
- evaluation_
interval int - Interval (number of runs) between policy evaluations.
- delay
Evaluation Number - Number of intervals by which to delay the first evaluation.
- evaluation
Interval Number - Interval (number of runs) between policy evaluations.
MpiResponse
- Process
Count intPer Instance - Number of processes per MPI node.
- Process
Count intPer Instance - Number of processes per MPI node.
- process
Count IntegerPer Instance - Number of processes per MPI node.
- process
Count numberPer Instance - Number of processes per MPI node.
- process_
count_ intper_ instance - Number of processes per MPI node.
- process
Count NumberPer Instance - Number of processes per MPI node.
NlpVerticalFeaturizationSettingsResponse
- Dataset
Language string - Dataset language, useful for the text data.
- Dataset
Language string - Dataset language, useful for the text data.
- dataset
Language String - Dataset language, useful for the text data.
- dataset
Language string - Dataset language, useful for the text data.
- dataset_
language str - Dataset language, useful for the text data.
- dataset
Language String - Dataset language, useful for the text data.
NlpVerticalLimitSettingsResponse
- Max
Concurrent intTrials - Maximum Concurrent AutoML iterations.
- Max
Trials int - Number of AutoML iterations.
- Timeout string
- AutoML job timeout.
- Max
Concurrent intTrials - Maximum Concurrent AutoML iterations.
- Max
Trials int - Number of AutoML iterations.
- Timeout string
- AutoML job timeout.
- max
Concurrent IntegerTrials - Maximum Concurrent AutoML iterations.
- max
Trials Integer - Number of AutoML iterations.
- timeout String
- AutoML job timeout.
- max
Concurrent numberTrials - Maximum Concurrent AutoML iterations.
- max
Trials number - Number of AutoML iterations.
- timeout string
- AutoML job timeout.
- max_
concurrent_ inttrials - Maximum Concurrent AutoML iterations.
- max_
trials int - Number of AutoML iterations.
- timeout str
- AutoML job timeout.
- max
Concurrent NumberTrials - Maximum Concurrent AutoML iterations.
- max
Trials Number - Number of AutoML iterations.
- timeout String
- AutoML job timeout.
ObjectiveResponse
- Goal string
- [Required] Defines supported metric goals for hyperparameter tuning
- Primary
Metric string - [Required] Name of the metric to optimize.
- Goal string
- [Required] Defines supported metric goals for hyperparameter tuning
- Primary
Metric string - [Required] Name of the metric to optimize.
- goal String
- [Required] Defines supported metric goals for hyperparameter tuning
- primary
Metric String - [Required] Name of the metric to optimize.
- goal string
- [Required] Defines supported metric goals for hyperparameter tuning
- primary
Metric string - [Required] Name of the metric to optimize.
- goal str
- [Required] Defines supported metric goals for hyperparameter tuning
- primary_
metric str - [Required] Name of the metric to optimize.
- goal String
- [Required] Defines supported metric goals for hyperparameter tuning
- primary
Metric String - [Required] Name of the metric to optimize.
PipelineJobResponse
- Status string
- Status of the job.
- Component
Id string - ARM resource ID of the component resource.
- Compute
Id string - ARM resource ID of the compute resource.
- Description string
- The asset description text.
- Display
Name string - Display name of job.
- Experiment
Name string - The name of the experiment the job belongs to. If not set, the job is placed in the "Default" experiment.
- Identity
Pulumi.
Azure | Pulumi.Native. Machine Learning Services. Inputs. Aml Token Response Azure | Pulumi.Native. Machine Learning Services. Inputs. Managed Identity Response Azure Native. Machine Learning Services. Inputs. User Identity Response - Identity configuration. If set, this should be one of AmlToken, ManagedIdentity, UserIdentity or null. Defaults to AmlToken if null.
- Inputs Dictionary<string, object>
- Inputs for the pipeline job.
- Is
Archived bool - Is the asset archived?
- Jobs Dictionary<string, object>
- Jobs construct the Pipeline Job.
- Outputs Dictionary<string, object>
- Outputs for the pipeline job
- Properties Dictionary<string, string>
- The asset property dictionary.
- Services
Dictionary<string, Pulumi.
Azure Native. Machine Learning Services. Inputs. Job Service Response> - List of JobEndpoints. For local jobs, a job endpoint will have an endpoint value of FileStreamObject.
- Settings object
- Pipeline settings, for things like ContinueRunOnStepFailure etc.
- Source
Job stringId - ARM resource ID of source job.
- Dictionary<string, string>
- Tag dictionary. Tags can be added, removed, and updated.
- Status string
- Status of the job.
- Component
Id string - ARM resource ID of the component resource.
- Compute
Id string - ARM resource ID of the compute resource.
- Description string
- The asset description text.
- Display
Name string - Display name of job.
- Experiment
Name string - The name of the experiment the job belongs to. If not set, the job is placed in the "Default" experiment.
- Identity
Aml
Token | ManagedResponse Identity | UserResponse Identity Response - Identity configuration. If set, this should be one of AmlToken, ManagedIdentity, UserIdentity or null. Defaults to AmlToken if null.
- Inputs map[string]interface{}
- Inputs for the pipeline job.
- Is
Archived bool - Is the asset archived?
- Jobs map[string]interface{}
- Jobs construct the Pipeline Job.
- Outputs map[string]interface{}
- Outputs for the pipeline job
- Properties map[string]string
- The asset property dictionary.
- Services
map[string]Job
Service Response - List of JobEndpoints. For local jobs, a job endpoint will have an endpoint value of FileStreamObject.
- Settings interface{}
- Pipeline settings, for things like ContinueRunOnStepFailure etc.
- Source
Job stringId - ARM resource ID of source job.
- map[string]string
- Tag dictionary. Tags can be added, removed, and updated.
- status String
- Status of the job.
- component
Id String - ARM resource ID of the component resource.
- compute
Id String - ARM resource ID of the compute resource.
- description String
- The asset description text.
- display
Name String - Display name of job.
- experiment
Name String - The name of the experiment the job belongs to. If not set, the job is placed in the "Default" experiment.
- identity
Aml
Token | ManagedResponse Identity | UserResponse Identity Response - Identity configuration. If set, this should be one of AmlToken, ManagedIdentity, UserIdentity or null. Defaults to AmlToken if null.
- inputs Map<String,Object>
- Inputs for the pipeline job.
- is
Archived Boolean - Is the asset archived?
- jobs Map<String,Object>
- Jobs construct the Pipeline Job.
- outputs Map<String,Object>
- Outputs for the pipeline job
- properties Map<String,String>
- The asset property dictionary.
- services
Map<String,Job
Service Response> - List of JobEndpoints. For local jobs, a job endpoint will have an endpoint value of FileStreamObject.
- settings Object
- Pipeline settings, for things like ContinueRunOnStepFailure etc.
- source
Job StringId - ARM resource ID of source job.
- Map<String,String>
- Tag dictionary. Tags can be added, removed, and updated.
- status string
- Status of the job.
- component
Id string - ARM resource ID of the component resource.
- compute
Id string - ARM resource ID of the compute resource.
- description string
- The asset description text.
- display
Name string - Display name of job.
- experiment
Name string - The name of the experiment the job belongs to. If not set, the job is placed in the "Default" experiment.
- identity
Aml
Token | ManagedResponse Identity | UserResponse Identity Response - Identity configuration. If set, this should be one of AmlToken, ManagedIdentity, UserIdentity or null. Defaults to AmlToken if null.
- inputs
{[key: string]: Custom
Model Job Input Response | Literal Job Input Response | MLFlow Model Job Input Response | MLTable Job Input Response | Triton Model Job Input Response | Uri File Job Input Response | Uri Folder Job Input Response} - Inputs for the pipeline job.
- is
Archived boolean - Is the asset archived?
- jobs {[key: string]: any}
- Jobs construct the Pipeline Job.
- outputs
{[key: string]: Custom
Model Job Output Response | MLFlow Model Job Output Response | MLTable Job Output Response | Triton Model Job Output Response | Uri File Job Output Response | Uri Folder Job Output Response} - Outputs for the pipeline job
- properties {[key: string]: string}
- The asset property dictionary.
- services
{[key: string]: Job
Service Response} - List of JobEndpoints. For local jobs, a job endpoint will have an endpoint value of FileStreamObject.
- settings any
- Pipeline settings, for things like ContinueRunOnStepFailure etc.
- source
Job stringId - ARM resource ID of source job.
- {[key: string]: string}
- Tag dictionary. Tags can be added, removed, and updated.
- status str
- Status of the job.
- component_
id str - ARM resource ID of the component resource.
- compute_
id str - ARM resource ID of the compute resource.
- description str
- The asset description text.
- display_
name str - Display name of job.
- experiment_
name str - The name of the experiment the job belongs to. If not set, the job is placed in the "Default" experiment.
- identity
Aml
Token | ManagedResponse Identity | UserResponse Identity Response - Identity configuration. If set, this should be one of AmlToken, ManagedIdentity, UserIdentity or null. Defaults to AmlToken if null.
- inputs
Mapping[str, Union[Custom
Model Job Input Response, Literal Job Input Response, MLFlow Model Job Input Response, MLTable Job Input Response, Triton Model Job Input Response, Uri File Job Input Response, Uri Folder Job Input Response]] - Inputs for the pipeline job.
- is_
archived bool - Is the asset archived?
- jobs Mapping[str, Any]
- Jobs construct the Pipeline Job.
- outputs
Mapping[str, Union[Custom
Model Job Output Response, MLFlow Model Job Output Response, MLTable Job Output Response, Triton Model Job Output Response, Uri File Job Output Response, Uri Folder Job Output Response]] - Outputs for the pipeline job
- properties Mapping[str, str]
- The asset property dictionary.
- services
Mapping[str, Job
Service Response] - List of JobEndpoints. For local jobs, a job endpoint will have an endpoint value of FileStreamObject.
- settings Any
- Pipeline settings, for things like ContinueRunOnStepFailure etc.
- source_
job_ strid - ARM resource ID of source job.
- Mapping[str, str]
- Tag dictionary. Tags can be added, removed, and updated.
- status String
- Status of the job.
- component
Id String - ARM resource ID of the component resource.
- compute
Id String - ARM resource ID of the compute resource.
- description String
- The asset description text.
- display
Name String - Display name of job.
- experiment
Name String - The name of the experiment the job belongs to. If not set, the job is placed in the "Default" experiment.
- identity Property Map | Property Map | Property Map
- Identity configuration. If set, this should be one of AmlToken, ManagedIdentity, UserIdentity or null. Defaults to AmlToken if null.
- inputs Map<Property Map | Property Map | Property Map | Property Map | Property Map | Property Map | Property Map>
- Inputs for the pipeline job.
- is
Archived Boolean - Is the asset archived?
- jobs Map<Any>
- Jobs construct the Pipeline Job.
- outputs Map<Property Map | Property Map | Property Map | Property Map | Property Map | Property Map>
- Outputs for the pipeline job
- properties Map<String>
- The asset property dictionary.
- services Map<Property Map>
- List of JobEndpoints. For local jobs, a job endpoint will have an endpoint value of FileStreamObject.
- settings Any
- Pipeline settings, for things like ContinueRunOnStepFailure etc.
- source
Job StringId - ARM resource ID of source job.
- Map<String>
- Tag dictionary. Tags can be added, removed, and updated.
PyTorchResponse
- Process
Count intPer Instance - Number of processes per node.
- Process
Count intPer Instance - Number of processes per node.
- process
Count IntegerPer Instance - Number of processes per node.
- process
Count numberPer Instance - Number of processes per node.
- process_
count_ intper_ instance - Number of processes per node.
- process
Count NumberPer Instance - Number of processes per node.
RandomSamplingAlgorithmResponse
RegressionResponse
- Training
Data Pulumi.Azure Native. Machine Learning Services. Inputs. MLTable Job Input Response - [Required] Training data input.
- Cv
Split List<string>Column Names - Columns to use for CVSplit data.
- Featurization
Settings Pulumi.Azure Native. Machine Learning Services. Inputs. Table Vertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- Limit
Settings Pulumi.Azure Native. Machine Learning Services. Inputs. Table Vertical Limit Settings Response - Execution constraints for AutoMLJob.
- Log
Verbosity string - Log verbosity for the job.
- NCross
Validations Pulumi.Azure | Pulumi.Native. Machine Learning Services. Inputs. Auto NCross Validations Response Azure Native. Machine Learning Services. Inputs. Custom NCross Validations Response - Number of cross validation folds to be applied on training dataset when validation dataset is not provided.
- Primary
Metric string - Primary metric for regression task.
- Target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- Test
Data Pulumi.Azure Native. Machine Learning Services. Inputs. MLTable Job Input Response - Test data input.
- Test
Data doubleSize - The fraction of test dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- Training
Settings Pulumi.Azure Native. Machine Learning Services. Inputs. Regression Training Settings Response - Inputs for training phase for an AutoML Job.
- Validation
Data Pulumi.Azure Native. Machine Learning Services. Inputs. MLTable Job Input Response - Validation data inputs.
- Validation
Data doubleSize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- Weight
Column stringName - The name of the sample weight column. Automated ML supports a weighted column as an input, causing rows in the data to be weighted up or down.
- Training
Data MLTableJob Input Response - [Required] Training data input.
- Cv
Split []stringColumn Names - Columns to use for CVSplit data.
- Featurization
Settings TableVertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- Limit
Settings TableVertical Limit Settings Response - Execution constraints for AutoMLJob.
- Log
Verbosity string - Log verbosity for the job.
- NCross
Validations AutoNCross | CustomValidations Response NCross Validations Response - Number of cross validation folds to be applied on training dataset when validation dataset is not provided.
- Primary
Metric string - Primary metric for regression task.
- Target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- Test
Data MLTableJob Input Response - Test data input.
- Test
Data float64Size - The fraction of test dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- Training
Settings RegressionTraining Settings Response - Inputs for training phase for an AutoML Job.
- Validation
Data MLTableJob Input Response - Validation data inputs.
- Validation
Data float64Size - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- Weight
Column stringName - The name of the sample weight column. Automated ML supports a weighted column as an input, causing rows in the data to be weighted up or down.
- training
Data MLTableJob Input Response - [Required] Training data input.
- cv
Split List<String>Column Names - Columns to use for CVSplit data.
- featurization
Settings TableVertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- limit
Settings TableVertical Limit Settings Response - Execution constraints for AutoMLJob.
- log
Verbosity String - Log verbosity for the job.
- n
Cross AutoValidations NCross | CustomValidations Response NCross Validations Response - Number of cross validation folds to be applied on training dataset when validation dataset is not provided.
- primary
Metric String - Primary metric for regression task.
- target
Column StringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- test
Data MLTableJob Input Response - Test data input.
- test
Data DoubleSize - The fraction of test dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- training
Settings RegressionTraining Settings Response - Inputs for training phase for an AutoML Job.
- validation
Data MLTableJob Input Response - Validation data inputs.
- validation
Data DoubleSize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- weight
Column StringName - The name of the sample weight column. Automated ML supports a weighted column as an input, causing rows in the data to be weighted up or down.
- training
Data MLTableJob Input Response - [Required] Training data input.
- cv
Split string[]Column Names - Columns to use for CVSplit data.
- featurization
Settings TableVertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- limit
Settings TableVertical Limit Settings Response - Execution constraints for AutoMLJob.
- log
Verbosity string - Log verbosity for the job.
- n
Cross AutoValidations NCross | CustomValidations Response NCross Validations Response - Number of cross validation folds to be applied on training dataset when validation dataset is not provided.
- primary
Metric string - Primary metric for regression task.
- target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- test
Data MLTableJob Input Response - Test data input.
- test
Data numberSize - The fraction of test dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- training
Settings RegressionTraining Settings Response - Inputs for training phase for an AutoML Job.
- validation
Data MLTableJob Input Response - Validation data inputs.
- validation
Data numberSize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- weight
Column stringName - The name of the sample weight column. Automated ML supports a weighted column as an input, causing rows in the data to be weighted up or down.
- training_
data MLTableJob Input Response - [Required] Training data input.
- cv_
split_ Sequence[str]column_ names - Columns to use for CVSplit data.
- featurization_
settings TableVertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- limit_
settings TableVertical Limit Settings Response - Execution constraints for AutoMLJob.
- log_
verbosity str - Log verbosity for the job.
- n_
cross_ Autovalidations NCross | CustomValidations Response NCross Validations Response - Number of cross validation folds to be applied on training dataset when validation dataset is not provided.
- primary_
metric str - Primary metric for regression task.
- target_
column_ strname - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- test_
data MLTableJob Input Response - Test data input.
- test_
data_ floatsize - The fraction of test dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- training_
settings RegressionTraining Settings Response - Inputs for training phase for an AutoML Job.
- validation_
data MLTableJob Input Response - Validation data inputs.
- validation_
data_ floatsize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- weight_
column_ strname - The name of the sample weight column. Automated ML supports a weighted column as an input, causing rows in the data to be weighted up or down.
- training
Data Property Map - [Required] Training data input.
- cv
Split List<String>Column Names - Columns to use for CVSplit data.
- featurization
Settings Property Map - Featurization inputs needed for AutoML job.
- limit
Settings Property Map - Execution constraints for AutoMLJob.
- log
Verbosity String - Log verbosity for the job.
- n
Cross Property Map | Property MapValidations - Number of cross validation folds to be applied on training dataset when validation dataset is not provided.
- primary
Metric String - Primary metric for regression task.
- target
Column StringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- test
Data Property Map - Test data input.
- test
Data NumberSize - The fraction of test dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- training
Settings Property Map - Inputs for training phase for an AutoML Job.
- validation
Data Property Map - Validation data inputs.
- validation
Data NumberSize - The fraction of training dataset that needs to be set aside for validation purpose. Values between (0.0 , 1.0) Applied when validation dataset is not provided.
- weight
Column StringName - The name of the sample weight column. Automated ML supports a weighted column as an input, causing rows in the data to be weighted up or down.
RegressionTrainingSettingsResponse
- Allowed
Training List<string>Algorithms - Allowed models for regression task.
- Blocked
Training List<string>Algorithms - Blocked models for regression task.
- Enable
Dnn boolTraining - Enable recommendation of DNN models.
- Enable
Model boolExplainability - Flag to turn on explainability on best model.
- Enable
Onnx boolCompatible Models - Flag for enabling onnx compatible models.
- Enable
Stack boolEnsemble - Enable stack ensemble run.
- Enable
Vote boolEnsemble - Enable voting ensemble run.
- Ensemble
Model stringDownload Timeout - During VotingEnsemble and StackEnsemble model generation, multiple fitted models from the previous child runs are downloaded. Configure this parameter with a higher value than 300 secs, if more time is needed.
- Stack
Ensemble Pulumi.Settings Azure Native. Machine Learning Services. Inputs. Stack Ensemble Settings Response - Stack ensemble settings for stack ensemble run.
- Allowed
Training []stringAlgorithms - Allowed models for regression task.
- Blocked
Training []stringAlgorithms - Blocked models for regression task.
- Enable
Dnn boolTraining - Enable recommendation of DNN models.
- Enable
Model boolExplainability - Flag to turn on explainability on best model.
- Enable
Onnx boolCompatible Models - Flag for enabling onnx compatible models.
- Enable
Stack boolEnsemble - Enable stack ensemble run.
- Enable
Vote boolEnsemble - Enable voting ensemble run.
- Ensemble
Model stringDownload Timeout - During VotingEnsemble and StackEnsemble model generation, multiple fitted models from the previous child runs are downloaded. Configure this parameter with a higher value than 300 secs, if more time is needed.
- Stack
Ensemble StackSettings Ensemble Settings Response - Stack ensemble settings for stack ensemble run.
- allowed
Training List<String>Algorithms - Allowed models for regression task.
- blocked
Training List<String>Algorithms - Blocked models for regression task.
- enable
Dnn BooleanTraining - Enable recommendation of DNN models.
- enable
Model BooleanExplainability - Flag to turn on explainability on best model.
- enable
Onnx BooleanCompatible Models - Flag for enabling onnx compatible models.
- enable
Stack BooleanEnsemble - Enable stack ensemble run.
- enable
Vote BooleanEnsemble - Enable voting ensemble run.
- ensemble
Model StringDownload Timeout - During VotingEnsemble and StackEnsemble model generation, multiple fitted models from the previous child runs are downloaded. Configure this parameter with a higher value than 300 secs, if more time is needed.
- stack
Ensemble StackSettings Ensemble Settings Response - Stack ensemble settings for stack ensemble run.
- allowed
Training string[]Algorithms - Allowed models for regression task.
- blocked
Training string[]Algorithms - Blocked models for regression task.
- enable
Dnn booleanTraining - Enable recommendation of DNN models.
- enable
Model booleanExplainability - Flag to turn on explainability on best model.
- enable
Onnx booleanCompatible Models - Flag for enabling onnx compatible models.
- enable
Stack booleanEnsemble - Enable stack ensemble run.
- enable
Vote booleanEnsemble - Enable voting ensemble run.
- ensemble
Model stringDownload Timeout - During VotingEnsemble and StackEnsemble model generation, multiple fitted models from the previous child runs are downloaded. Configure this parameter with a higher value than 300 secs, if more time is needed.
- stack
Ensemble StackSettings Ensemble Settings Response - Stack ensemble settings for stack ensemble run.
- allowed_
training_ Sequence[str]algorithms - Allowed models for regression task.
- blocked_
training_ Sequence[str]algorithms - Blocked models for regression task.
- enable_
dnn_ booltraining - Enable recommendation of DNN models.
- enable_
model_ boolexplainability - Flag to turn on explainability on best model.
- enable_
onnx_ boolcompatible_ models - Flag for enabling onnx compatible models.
- enable_
stack_ boolensemble - Enable stack ensemble run.
- enable_
vote_ boolensemble - Enable voting ensemble run.
- ensemble_
model_ strdownload_ timeout - During VotingEnsemble and StackEnsemble model generation, multiple fitted models from the previous child runs are downloaded. Configure this parameter with a higher value than 300 secs, if more time is needed.
- stack_
ensemble_ Stacksettings Ensemble Settings Response - Stack ensemble settings for stack ensemble run.
- allowed
Training List<String>Algorithms - Allowed models for regression task.
- blocked
Training List<String>Algorithms - Blocked models for regression task.
- enable
Dnn BooleanTraining - Enable recommendation of DNN models.
- enable
Model BooleanExplainability - Flag to turn on explainability on best model.
- enable
Onnx BooleanCompatible Models - Flag for enabling onnx compatible models.
- enable
Stack BooleanEnsemble - Enable stack ensemble run.
- enable
Vote BooleanEnsemble - Enable voting ensemble run.
- ensemble
Model StringDownload Timeout - During VotingEnsemble and StackEnsemble model generation, multiple fitted models from the previous child runs are downloaded. Configure this parameter with a higher value than 300 secs, if more time is needed.
- stack
Ensemble Property MapSettings - Stack ensemble settings for stack ensemble run.
StackEnsembleSettingsResponse
- Stack
Meta objectLearner KWargs - Optional parameters to pass to the initializer of the meta-learner.
- Stack
Meta doubleLearner Train Percentage - Specifies the proportion of the training set (when choosing train and validation type of training) to be reserved for training the meta-learner. Default value is 0.2.
- Stack
Meta stringLearner Type - The meta-learner is a model trained on the output of the individual heterogeneous models.
- Stack
Meta interface{}Learner KWargs - Optional parameters to pass to the initializer of the meta-learner.
- Stack
Meta float64Learner Train Percentage - Specifies the proportion of the training set (when choosing train and validation type of training) to be reserved for training the meta-learner. Default value is 0.2.
- Stack
Meta stringLearner Type - The meta-learner is a model trained on the output of the individual heterogeneous models.
- stack
Meta ObjectLearner KWargs - Optional parameters to pass to the initializer of the meta-learner.
- stack
Meta DoubleLearner Train Percentage - Specifies the proportion of the training set (when choosing train and validation type of training) to be reserved for training the meta-learner. Default value is 0.2.
- stack
Meta StringLearner Type - The meta-learner is a model trained on the output of the individual heterogeneous models.
- stack
Meta anyLearner KWargs - Optional parameters to pass to the initializer of the meta-learner.
- stack
Meta numberLearner Train Percentage - Specifies the proportion of the training set (when choosing train and validation type of training) to be reserved for training the meta-learner. Default value is 0.2.
- stack
Meta stringLearner Type - The meta-learner is a model trained on the output of the individual heterogeneous models.
- stack_
meta_ Anylearner_ k_ wargs - Optional parameters to pass to the initializer of the meta-learner.
- stack_
meta_ floatlearner_ train_ percentage - Specifies the proportion of the training set (when choosing train and validation type of training) to be reserved for training the meta-learner. Default value is 0.2.
- stack_
meta_ strlearner_ type - The meta-learner is a model trained on the output of the individual heterogeneous models.
- stack
Meta AnyLearner KWargs - Optional parameters to pass to the initializer of the meta-learner.
- stack
Meta NumberLearner Train Percentage - Specifies the proportion of the training set (when choosing train and validation type of training) to be reserved for training the meta-learner. Default value is 0.2.
- stack
Meta StringLearner Type - The meta-learner is a model trained on the output of the individual heterogeneous models.
SweepJobLimitsResponse
- Max
Concurrent intTrials - Sweep Job max concurrent trials.
- Max
Total intTrials - Sweep Job max total trials.
- Timeout string
- The max run duration in ISO 8601 format, after which the job will be cancelled. Only supports duration with precision as low as Seconds.
- Trial
Timeout string - Sweep Job Trial timeout value.
- Max
Concurrent intTrials - Sweep Job max concurrent trials.
- Max
Total intTrials - Sweep Job max total trials.
- Timeout string
- The max run duration in ISO 8601 format, after which the job will be cancelled. Only supports duration with precision as low as Seconds.
- Trial
Timeout string - Sweep Job Trial timeout value.
- max
Concurrent IntegerTrials - Sweep Job max concurrent trials.
- max
Total IntegerTrials - Sweep Job max total trials.
- timeout String
- The max run duration in ISO 8601 format, after which the job will be cancelled. Only supports duration with precision as low as Seconds.
- trial
Timeout String - Sweep Job Trial timeout value.
- max
Concurrent numberTrials - Sweep Job max concurrent trials.
- max
Total numberTrials - Sweep Job max total trials.
- timeout string
- The max run duration in ISO 8601 format, after which the job will be cancelled. Only supports duration with precision as low as Seconds.
- trial
Timeout string - Sweep Job Trial timeout value.
- max_
concurrent_ inttrials - Sweep Job max concurrent trials.
- max_
total_ inttrials - Sweep Job max total trials.
- timeout str
- The max run duration in ISO 8601 format, after which the job will be cancelled. Only supports duration with precision as low as Seconds.
- trial_
timeout str - Sweep Job Trial timeout value.
- max
Concurrent NumberTrials - Sweep Job max concurrent trials.
- max
Total NumberTrials - Sweep Job max total trials.
- timeout String
- The max run duration in ISO 8601 format, after which the job will be cancelled. Only supports duration with precision as low as Seconds.
- trial
Timeout String - Sweep Job Trial timeout value.
SweepJobResponse
- Objective
Pulumi.
Azure Native. Machine Learning Services. Inputs. Objective Response - [Required] Optimization objective.
- Sampling
Algorithm Pulumi.Azure | Pulumi.Native. Machine Learning Services. Inputs. Bayesian Sampling Algorithm Response Azure | Pulumi.Native. Machine Learning Services. Inputs. Grid Sampling Algorithm Response Azure Native. Machine Learning Services. Inputs. Random Sampling Algorithm Response - [Required] The hyperparameter sampling algorithm
- Search
Space object - [Required] A dictionary containing each parameter and its distribution. The dictionary key is the name of the parameter
- Status string
- Status of the job.
- Trial
Pulumi.
Azure Native. Machine Learning Services. Inputs. Trial Component Response - [Required] Trial component definition.
- Component
Id string - ARM resource ID of the component resource.
- Compute
Id string - ARM resource ID of the compute resource.
- Description string
- The asset description text.
- Display
Name string - Display name of job.
- Early
Termination Pulumi.Azure | Pulumi.Native. Machine Learning Services. Inputs. Bandit Policy Response Azure | Pulumi.Native. Machine Learning Services. Inputs. Median Stopping Policy Response Azure Native. Machine Learning Services. Inputs. Truncation Selection Policy Response - Early termination policies enable canceling poor-performing runs before they complete
- Experiment
Name string - The name of the experiment the job belongs to. If not set, the job is placed in the "Default" experiment.
- Identity
Pulumi.
Azure | Pulumi.Native. Machine Learning Services. Inputs. Aml Token Response Azure | Pulumi.Native. Machine Learning Services. Inputs. Managed Identity Response Azure Native. Machine Learning Services. Inputs. User Identity Response - Identity configuration. If set, this should be one of AmlToken, ManagedIdentity, UserIdentity or null. Defaults to AmlToken if null.
- Inputs Dictionary<string, object>
- Mapping of input data bindings used in the job.
- Is
Archived bool - Is the asset archived?
- Limits
Pulumi.
Azure Native. Machine Learning Services. Inputs. Sweep Job Limits Response - Sweep Job limit.
- Outputs Dictionary<string, object>
- Mapping of output data bindings used in the job.
- Properties Dictionary<string, string>
- The asset property dictionary.
- Services
Dictionary<string, Pulumi.
Azure Native. Machine Learning Services. Inputs. Job Service Response> - List of JobEndpoints. For local jobs, a job endpoint will have an endpoint value of FileStreamObject.
- Dictionary<string, string>
- Tag dictionary. Tags can be added, removed, and updated.
- Objective
Objective
Response - [Required] Optimization objective.
- Sampling
Algorithm BayesianSampling | GridAlgorithm Response Sampling | RandomAlgorithm Response Sampling Algorithm Response - [Required] The hyperparameter sampling algorithm
- Search
Space interface{} - [Required] A dictionary containing each parameter and its distribution. The dictionary key is the name of the parameter
- Status string
- Status of the job.
- Trial
Trial
Component Response - [Required] Trial component definition.
- Component
Id string - ARM resource ID of the component resource.
- Compute
Id string - ARM resource ID of the compute resource.
- Description string
- The asset description text.
- Display
Name string - Display name of job.
- Early
Termination BanditPolicy | MedianResponse Stopping | TruncationPolicy Response Selection Policy Response - Early termination policies enable canceling poor-performing runs before they complete
- Experiment
Name string - The name of the experiment the job belongs to. If not set, the job is placed in the "Default" experiment.
- Identity
Aml
Token | ManagedResponse Identity | UserResponse Identity Response - Identity configuration. If set, this should be one of AmlToken, ManagedIdentity, UserIdentity or null. Defaults to AmlToken if null.
- Inputs map[string]interface{}
- Mapping of input data bindings used in the job.
- Is
Archived bool - Is the asset archived?
- Limits
Sweep
Job Limits Response - Sweep Job limit.
- Outputs map[string]interface{}
- Mapping of output data bindings used in the job.
- Properties map[string]string
- The asset property dictionary.
- Services
map[string]Job
Service Response - List of JobEndpoints. For local jobs, a job endpoint will have an endpoint value of FileStreamObject.
- map[string]string
- Tag dictionary. Tags can be added, removed, and updated.
- objective
Objective
Response - [Required] Optimization objective.
- sampling
Algorithm BayesianSampling | GridAlgorithm Response Sampling | RandomAlgorithm Response Sampling Algorithm Response - [Required] The hyperparameter sampling algorithm
- search
Space Object - [Required] A dictionary containing each parameter and its distribution. The dictionary key is the name of the parameter
- status String
- Status of the job.
- trial
Trial
Component Response - [Required] Trial component definition.
- component
Id String - ARM resource ID of the component resource.
- compute
Id String - ARM resource ID of the compute resource.
- description String
- The asset description text.
- display
Name String - Display name of job.
- early
Termination BanditPolicy | MedianResponse Stopping | TruncationPolicy Response Selection Policy Response - Early termination policies enable canceling poor-performing runs before they complete
- experiment
Name String - The name of the experiment the job belongs to. If not set, the job is placed in the "Default" experiment.
- identity
Aml
Token | ManagedResponse Identity | UserResponse Identity Response - Identity configuration. If set, this should be one of AmlToken, ManagedIdentity, UserIdentity or null. Defaults to AmlToken if null.
- inputs Map<String,Object>
- Mapping of input data bindings used in the job.
- is
Archived Boolean - Is the asset archived?
- limits
Sweep
Job Limits Response - Sweep Job limit.
- outputs Map<String,Object>
- Mapping of output data bindings used in the job.
- properties Map<String,String>
- The asset property dictionary.
- services
Map<String,Job
Service Response> - List of JobEndpoints. For local jobs, a job endpoint will have an endpoint value of FileStreamObject.
- Map<String,String>
- Tag dictionary. Tags can be added, removed, and updated.
- objective
Objective
Response - [Required] Optimization objective.
- sampling
Algorithm BayesianSampling | GridAlgorithm Response Sampling | RandomAlgorithm Response Sampling Algorithm Response - [Required] The hyperparameter sampling algorithm
- search
Space any - [Required] A dictionary containing each parameter and its distribution. The dictionary key is the name of the parameter
- status string
- Status of the job.
- trial
Trial
Component Response - [Required] Trial component definition.
- component
Id string - ARM resource ID of the component resource.
- compute
Id string - ARM resource ID of the compute resource.
- description string
- The asset description text.
- display
Name string - Display name of job.
- early
Termination BanditPolicy | MedianResponse Stopping | TruncationPolicy Response Selection Policy Response - Early termination policies enable canceling poor-performing runs before they complete
- experiment
Name string - The name of the experiment the job belongs to. If not set, the job is placed in the "Default" experiment.
- identity
Aml
Token | ManagedResponse Identity | UserResponse Identity Response - Identity configuration. If set, this should be one of AmlToken, ManagedIdentity, UserIdentity or null. Defaults to AmlToken if null.
- inputs
{[key: string]: Custom
Model Job Input Response | Literal Job Input Response | MLFlow Model Job Input Response | MLTable Job Input Response | Triton Model Job Input Response | Uri File Job Input Response | Uri Folder Job Input Response} - Mapping of input data bindings used in the job.
- is
Archived boolean - Is the asset archived?
- limits
Sweep
Job Limits Response - Sweep Job limit.
- outputs
{[key: string]: Custom
Model Job Output Response | MLFlow Model Job Output Response | MLTable Job Output Response | Triton Model Job Output Response | Uri File Job Output Response | Uri Folder Job Output Response} - Mapping of output data bindings used in the job.
- properties {[key: string]: string}
- The asset property dictionary.
- services
{[key: string]: Job
Service Response} - List of JobEndpoints. For local jobs, a job endpoint will have an endpoint value of FileStreamObject.
- {[key: string]: string}
- Tag dictionary. Tags can be added, removed, and updated.
- objective
Objective
Response - [Required] Optimization objective.
- sampling_
algorithm BayesianSampling | GridAlgorithm Response Sampling | RandomAlgorithm Response Sampling Algorithm Response - [Required] The hyperparameter sampling algorithm
- search_
space Any - [Required] A dictionary containing each parameter and its distribution. The dictionary key is the name of the parameter
- status str
- Status of the job.
- trial
Trial
Component Response - [Required] Trial component definition.
- component_
id str - ARM resource ID of the component resource.
- compute_
id str - ARM resource ID of the compute resource.
- description str
- The asset description text.
- display_
name str - Display name of job.
- early_
termination BanditPolicy | MedianResponse Stopping | TruncationPolicy Response Selection Policy Response - Early termination policies enable canceling poor-performing runs before they complete
- experiment_
name str - The name of the experiment the job belongs to. If not set, the job is placed in the "Default" experiment.
- identity
Aml
Token | ManagedResponse Identity | UserResponse Identity Response - Identity configuration. If set, this should be one of AmlToken, ManagedIdentity, UserIdentity or null. Defaults to AmlToken if null.
- inputs
Mapping[str, Union[Custom
Model Job Input Response, Literal Job Input Response, MLFlow Model Job Input Response, MLTable Job Input Response, Triton Model Job Input Response, Uri File Job Input Response, Uri Folder Job Input Response]] - Mapping of input data bindings used in the job.
- is_
archived bool - Is the asset archived?
- limits
Sweep
Job Limits Response - Sweep Job limit.
- outputs
Mapping[str, Union[Custom
Model Job Output Response, MLFlow Model Job Output Response, MLTable Job Output Response, Triton Model Job Output Response, Uri File Job Output Response, Uri Folder Job Output Response]] - Mapping of output data bindings used in the job.
- properties Mapping[str, str]
- The asset property dictionary.
- services
Mapping[str, Job
Service Response] - List of JobEndpoints. For local jobs, a job endpoint will have an endpoint value of FileStreamObject.
- Mapping[str, str]
- Tag dictionary. Tags can be added, removed, and updated.
- objective Property Map
- [Required] Optimization objective.
- sampling
Algorithm Property Map | Property Map | Property Map - [Required] The hyperparameter sampling algorithm
- search
Space Any - [Required] A dictionary containing each parameter and its distribution. The dictionary key is the name of the parameter
- status String
- Status of the job.
- trial Property Map
- [Required] Trial component definition.
- component
Id String - ARM resource ID of the component resource.
- compute
Id String - ARM resource ID of the compute resource.
- description String
- The asset description text.
- display
Name String - Display name of job.
- early
Termination Property Map | Property Map | Property Map - Early termination policies enable canceling poor-performing runs before they complete
- experiment
Name String - The name of the experiment the job belongs to. If not set, the job is placed in the "Default" experiment.
- identity Property Map | Property Map | Property Map
- Identity configuration. If set, this should be one of AmlToken, ManagedIdentity, UserIdentity or null. Defaults to AmlToken if null.
- inputs Map<Property Map | Property Map | Property Map | Property Map | Property Map | Property Map | Property Map>
- Mapping of input data bindings used in the job.
- is
Archived Boolean - Is the asset archived?
- limits Property Map
- Sweep Job limit.
- outputs Map<Property Map | Property Map | Property Map | Property Map | Property Map | Property Map>
- Mapping of output data bindings used in the job.
- properties Map<String>
- The asset property dictionary.
- services Map<Property Map>
- List of JobEndpoints. For local jobs, a job endpoint will have an endpoint value of FileStreamObject.
- Map<String>
- Tag dictionary. Tags can be added, removed, and updated.
SystemDataResponse
- Created
At string - The timestamp of resource creation (UTC).
- Created
By string - The identity that created the resource.
- Created
By stringType - The type of identity that created the resource.
- Last
Modified stringAt - The timestamp of resource last modification (UTC)
- Last
Modified stringBy - The identity that last modified the resource.
- Last
Modified stringBy Type - The type of identity that last modified the resource.
- Created
At string - The timestamp of resource creation (UTC).
- Created
By string - The identity that created the resource.
- Created
By stringType - The type of identity that created the resource.
- Last
Modified stringAt - The timestamp of resource last modification (UTC)
- Last
Modified stringBy - The identity that last modified the resource.
- Last
Modified stringBy Type - The type of identity that last modified the resource.
- created
At String - The timestamp of resource creation (UTC).
- created
By String - The identity that created the resource.
- created
By StringType - The type of identity that created the resource.
- last
Modified StringAt - The timestamp of resource last modification (UTC)
- last
Modified StringBy - The identity that last modified the resource.
- last
Modified StringBy Type - The type of identity that last modified the resource.
- created
At string - The timestamp of resource creation (UTC).
- created
By string - The identity that created the resource.
- created
By stringType - The type of identity that created the resource.
- last
Modified stringAt - The timestamp of resource last modification (UTC)
- last
Modified stringBy - The identity that last modified the resource.
- last
Modified stringBy Type - The type of identity that last modified the resource.
- created_
at str - The timestamp of resource creation (UTC).
- created_
by str - The identity that created the resource.
- created_
by_ strtype - The type of identity that created the resource.
- last_
modified_ strat - The timestamp of resource last modification (UTC)
- last_
modified_ strby - The identity that last modified the resource.
- last_
modified_ strby_ type - The type of identity that last modified the resource.
- created
At String - The timestamp of resource creation (UTC).
- created
By String - The identity that created the resource.
- created
By StringType - The type of identity that created the resource.
- last
Modified StringAt - The timestamp of resource last modification (UTC)
- last
Modified StringBy - The identity that last modified the resource.
- last
Modified StringBy Type - The type of identity that last modified the resource.
TableVerticalFeaturizationSettingsResponse
- Blocked
Transformers List<string> - These transformers shall not be used in featurization.
- Column
Name Dictionary<string, string>And Types - Dictionary of column name and its type (int, float, string, datetime etc).
- Dataset
Language string - Dataset language, useful for the text data.
- Enable
Dnn boolFeaturization - Determines whether to use Dnn based featurizers for data featurization.
- Mode string
- Featurization mode - User can keep the default 'Auto' mode and AutoML will take care of necessary transformation of the data in featurization phase. If 'Off' is selected then no featurization is done. If 'Custom' is selected then user can specify additional inputs to customize how featurization is done.
- Transformer
Params Dictionary<string, ImmutableArray<Pulumi. Azure Native. Machine Learning Services. Inputs. Column Transformer Response>> - User can specify additional transformers to be used along with the columns to which it would be applied and parameters for the transformer constructor.
- Blocked
Transformers []string - These transformers shall not be used in featurization.
- Column
Name map[string]stringAnd Types - Dictionary of column name and its type (int, float, string, datetime etc).
- Dataset
Language string - Dataset language, useful for the text data.
- Enable
Dnn boolFeaturization - Determines whether to use Dnn based featurizers for data featurization.
- Mode string
- Featurization mode - User can keep the default 'Auto' mode and AutoML will take care of necessary transformation of the data in featurization phase. If 'Off' is selected then no featurization is done. If 'Custom' is selected then user can specify additional inputs to customize how featurization is done.
- Transformer
Params map[string][]ColumnTransformer Response - User can specify additional transformers to be used along with the columns to which it would be applied and parameters for the transformer constructor.
- blocked
Transformers List<String> - These transformers shall not be used in featurization.
- column
Name Map<String,String>And Types - Dictionary of column name and its type (int, float, string, datetime etc).
- dataset
Language String - Dataset language, useful for the text data.
- enable
Dnn BooleanFeaturization - Determines whether to use Dnn based featurizers for data featurization.
- mode String
- Featurization mode - User can keep the default 'Auto' mode and AutoML will take care of necessary transformation of the data in featurization phase. If 'Off' is selected then no featurization is done. If 'Custom' is selected then user can specify additional inputs to customize how featurization is done.
- transformer
Params Map<String,List<ColumnTransformer Response>> - User can specify additional transformers to be used along with the columns to which it would be applied and parameters for the transformer constructor.
- blocked
Transformers string[] - These transformers shall not be used in featurization.
- column
Name {[key: string]: string}And Types - Dictionary of column name and its type (int, float, string, datetime etc).
- dataset
Language string - Dataset language, useful for the text data.
- enable
Dnn booleanFeaturization - Determines whether to use Dnn based featurizers for data featurization.
- mode string
- Featurization mode - User can keep the default 'Auto' mode and AutoML will take care of necessary transformation of the data in featurization phase. If 'Off' is selected then no featurization is done. If 'Custom' is selected then user can specify additional inputs to customize how featurization is done.
- transformer
Params {[key: string]: ColumnTransformer Response[]} - User can specify additional transformers to be used along with the columns to which it would be applied and parameters for the transformer constructor.
- blocked_
transformers Sequence[str] - These transformers shall not be used in featurization.
- column_
name_ Mapping[str, str]and_ types - Dictionary of column name and its type (int, float, string, datetime etc).
- dataset_
language str - Dataset language, useful for the text data.
- enable_
dnn_ boolfeaturization - Determines whether to use Dnn based featurizers for data featurization.
- mode str
- Featurization mode - User can keep the default 'Auto' mode and AutoML will take care of necessary transformation of the data in featurization phase. If 'Off' is selected then no featurization is done. If 'Custom' is selected then user can specify additional inputs to customize how featurization is done.
- transformer_
params Mapping[str, Sequence[ColumnTransformer Response]] - User can specify additional transformers to be used along with the columns to which it would be applied and parameters for the transformer constructor.
- blocked
Transformers List<String> - These transformers shall not be used in featurization.
- column
Name Map<String>And Types - Dictionary of column name and its type (int, float, string, datetime etc).
- dataset
Language String - Dataset language, useful for the text data.
- enable
Dnn BooleanFeaturization - Determines whether to use Dnn based featurizers for data featurization.
- mode String
- Featurization mode - User can keep the default 'Auto' mode and AutoML will take care of necessary transformation of the data in featurization phase. If 'Off' is selected then no featurization is done. If 'Custom' is selected then user can specify additional inputs to customize how featurization is done.
- transformer
Params Map<List<Property Map>> - User can specify additional transformers to be used along with the columns to which it would be applied and parameters for the transformer constructor.
TableVerticalLimitSettingsResponse
- Enable
Early boolTermination - Enable early termination, determines whether or not if AutoMLJob will terminate early if there is no score improvement in last 20 iterations.
- Exit
Score double - Exit score for the AutoML job.
- Max
Concurrent intTrials - Maximum Concurrent iterations.
- Max
Cores intPer Trial - Max cores per iteration.
- Max
Trials int - Number of iterations.
- Timeout string
- AutoML job timeout.
- Trial
Timeout string - Iteration timeout.
- Enable
Early boolTermination - Enable early termination, determines whether or not if AutoMLJob will terminate early if there is no score improvement in last 20 iterations.
- Exit
Score float64 - Exit score for the AutoML job.
- Max
Concurrent intTrials - Maximum Concurrent iterations.
- Max
Cores intPer Trial - Max cores per iteration.
- Max
Trials int - Number of iterations.
- Timeout string
- AutoML job timeout.
- Trial
Timeout string - Iteration timeout.
- enable
Early BooleanTermination - Enable early termination, determines whether or not if AutoMLJob will terminate early if there is no score improvement in last 20 iterations.
- exit
Score Double - Exit score for the AutoML job.
- max
Concurrent IntegerTrials - Maximum Concurrent iterations.
- max
Cores IntegerPer Trial - Max cores per iteration.
- max
Trials Integer - Number of iterations.
- timeout String
- AutoML job timeout.
- trial
Timeout String - Iteration timeout.
- enable
Early booleanTermination - Enable early termination, determines whether or not if AutoMLJob will terminate early if there is no score improvement in last 20 iterations.
- exit
Score number - Exit score for the AutoML job.
- max
Concurrent numberTrials - Maximum Concurrent iterations.
- max
Cores numberPer Trial - Max cores per iteration.
- max
Trials number - Number of iterations.
- timeout string
- AutoML job timeout.
- trial
Timeout string - Iteration timeout.
- enable_
early_ booltermination - Enable early termination, determines whether or not if AutoMLJob will terminate early if there is no score improvement in last 20 iterations.
- exit_
score float - Exit score for the AutoML job.
- max_
concurrent_ inttrials - Maximum Concurrent iterations.
- max_
cores_ intper_ trial - Max cores per iteration.
- max_
trials int - Number of iterations.
- timeout str
- AutoML job timeout.
- trial_
timeout str - Iteration timeout.
- enable
Early BooleanTermination - Enable early termination, determines whether or not if AutoMLJob will terminate early if there is no score improvement in last 20 iterations.
- exit
Score Number - Exit score for the AutoML job.
- max
Concurrent NumberTrials - Maximum Concurrent iterations.
- max
Cores NumberPer Trial - Max cores per iteration.
- max
Trials Number - Number of iterations.
- timeout String
- AutoML job timeout.
- trial
Timeout String - Iteration timeout.
TensorFlowResponse
- Parameter
Server intCount - Number of parameter server tasks.
- Worker
Count int - Number of workers. If not specified, will default to the instance count.
- Parameter
Server intCount - Number of parameter server tasks.
- Worker
Count int - Number of workers. If not specified, will default to the instance count.
- parameter
Server IntegerCount - Number of parameter server tasks.
- worker
Count Integer - Number of workers. If not specified, will default to the instance count.
- parameter
Server numberCount - Number of parameter server tasks.
- worker
Count number - Number of workers. If not specified, will default to the instance count.
- parameter_
server_ intcount - Number of parameter server tasks.
- worker_
count int - Number of workers. If not specified, will default to the instance count.
- parameter
Server NumberCount - Number of parameter server tasks.
- worker
Count Number - Number of workers. If not specified, will default to the instance count.
TextClassificationMultilabelResponse
- Primary
Metric string - Primary metric for Text-Classification-Multilabel task. Currently only Accuracy is supported as primary metric, hence user need not set it explicitly.
- Training
Data Pulumi.Azure Native. Machine Learning Services. Inputs. MLTable Job Input Response - [Required] Training data input.
- Featurization
Settings Pulumi.Azure Native. Machine Learning Services. Inputs. Nlp Vertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- Limit
Settings Pulumi.Azure Native. Machine Learning Services. Inputs. Nlp Vertical Limit Settings Response - Execution constraints for AutoMLJob.
- Log
Verbosity string - Log verbosity for the job.
- Target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- Validation
Data Pulumi.Azure Native. Machine Learning Services. Inputs. MLTable Job Input Response - Validation data inputs.
- Primary
Metric string - Primary metric for Text-Classification-Multilabel task. Currently only Accuracy is supported as primary metric, hence user need not set it explicitly.
- Training
Data MLTableJob Input Response - [Required] Training data input.
- Featurization
Settings NlpVertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- Limit
Settings NlpVertical Limit Settings Response - Execution constraints for AutoMLJob.
- Log
Verbosity string - Log verbosity for the job.
- Target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- Validation
Data MLTableJob Input Response - Validation data inputs.
- primary
Metric String - Primary metric for Text-Classification-Multilabel task. Currently only Accuracy is supported as primary metric, hence user need not set it explicitly.
- training
Data MLTableJob Input Response - [Required] Training data input.
- featurization
Settings NlpVertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- limit
Settings NlpVertical Limit Settings Response - Execution constraints for AutoMLJob.
- log
Verbosity String - Log verbosity for the job.
- target
Column StringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- validation
Data MLTableJob Input Response - Validation data inputs.
- primary
Metric string - Primary metric for Text-Classification-Multilabel task. Currently only Accuracy is supported as primary metric, hence user need not set it explicitly.
- training
Data MLTableJob Input Response - [Required] Training data input.
- featurization
Settings NlpVertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- limit
Settings NlpVertical Limit Settings Response - Execution constraints for AutoMLJob.
- log
Verbosity string - Log verbosity for the job.
- target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- validation
Data MLTableJob Input Response - Validation data inputs.
- primary_
metric str - Primary metric for Text-Classification-Multilabel task. Currently only Accuracy is supported as primary metric, hence user need not set it explicitly.
- training_
data MLTableJob Input Response - [Required] Training data input.
- featurization_
settings NlpVertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- limit_
settings NlpVertical Limit Settings Response - Execution constraints for AutoMLJob.
- log_
verbosity str - Log verbosity for the job.
- target_
column_ strname - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- validation_
data MLTableJob Input Response - Validation data inputs.
- primary
Metric String - Primary metric for Text-Classification-Multilabel task. Currently only Accuracy is supported as primary metric, hence user need not set it explicitly.
- training
Data Property Map - [Required] Training data input.
- featurization
Settings Property Map - Featurization inputs needed for AutoML job.
- limit
Settings Property Map - Execution constraints for AutoMLJob.
- log
Verbosity String - Log verbosity for the job.
- target
Column StringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- validation
Data Property Map - Validation data inputs.
TextClassificationResponse
- Training
Data Pulumi.Azure Native. Machine Learning Services. Inputs. MLTable Job Input Response - [Required] Training data input.
- Featurization
Settings Pulumi.Azure Native. Machine Learning Services. Inputs. Nlp Vertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- Limit
Settings Pulumi.Azure Native. Machine Learning Services. Inputs. Nlp Vertical Limit Settings Response - Execution constraints for AutoMLJob.
- Log
Verbosity string - Log verbosity for the job.
- Primary
Metric string - Primary metric for Text-Classification task.
- Target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- Validation
Data Pulumi.Azure Native. Machine Learning Services. Inputs. MLTable Job Input Response - Validation data inputs.
- Training
Data MLTableJob Input Response - [Required] Training data input.
- Featurization
Settings NlpVertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- Limit
Settings NlpVertical Limit Settings Response - Execution constraints for AutoMLJob.
- Log
Verbosity string - Log verbosity for the job.
- Primary
Metric string - Primary metric for Text-Classification task.
- Target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- Validation
Data MLTableJob Input Response - Validation data inputs.
- training
Data MLTableJob Input Response - [Required] Training data input.
- featurization
Settings NlpVertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- limit
Settings NlpVertical Limit Settings Response - Execution constraints for AutoMLJob.
- log
Verbosity String - Log verbosity for the job.
- primary
Metric String - Primary metric for Text-Classification task.
- target
Column StringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- validation
Data MLTableJob Input Response - Validation data inputs.
- training
Data MLTableJob Input Response - [Required] Training data input.
- featurization
Settings NlpVertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- limit
Settings NlpVertical Limit Settings Response - Execution constraints for AutoMLJob.
- log
Verbosity string - Log verbosity for the job.
- primary
Metric string - Primary metric for Text-Classification task.
- target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- validation
Data MLTableJob Input Response - Validation data inputs.
- training_
data MLTableJob Input Response - [Required] Training data input.
- featurization_
settings NlpVertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- limit_
settings NlpVertical Limit Settings Response - Execution constraints for AutoMLJob.
- log_
verbosity str - Log verbosity for the job.
- primary_
metric str - Primary metric for Text-Classification task.
- target_
column_ strname - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- validation_
data MLTableJob Input Response - Validation data inputs.
- training
Data Property Map - [Required] Training data input.
- featurization
Settings Property Map - Featurization inputs needed for AutoML job.
- limit
Settings Property Map - Execution constraints for AutoMLJob.
- log
Verbosity String - Log verbosity for the job.
- primary
Metric String - Primary metric for Text-Classification task.
- target
Column StringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- validation
Data Property Map - Validation data inputs.
TextNerResponse
- Primary
Metric string - Primary metric for Text-NER task. Only 'Accuracy' is supported for Text-NER, so user need not set this explicitly.
- Training
Data Pulumi.Azure Native. Machine Learning Services. Inputs. MLTable Job Input Response - [Required] Training data input.
- Featurization
Settings Pulumi.Azure Native. Machine Learning Services. Inputs. Nlp Vertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- Limit
Settings Pulumi.Azure Native. Machine Learning Services. Inputs. Nlp Vertical Limit Settings Response - Execution constraints for AutoMLJob.
- Log
Verbosity string - Log verbosity for the job.
- Target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- Validation
Data Pulumi.Azure Native. Machine Learning Services. Inputs. MLTable Job Input Response - Validation data inputs.
- Primary
Metric string - Primary metric for Text-NER task. Only 'Accuracy' is supported for Text-NER, so user need not set this explicitly.
- Training
Data MLTableJob Input Response - [Required] Training data input.
- Featurization
Settings NlpVertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- Limit
Settings NlpVertical Limit Settings Response - Execution constraints for AutoMLJob.
- Log
Verbosity string - Log verbosity for the job.
- Target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- Validation
Data MLTableJob Input Response - Validation data inputs.
- primary
Metric String - Primary metric for Text-NER task. Only 'Accuracy' is supported for Text-NER, so user need not set this explicitly.
- training
Data MLTableJob Input Response - [Required] Training data input.
- featurization
Settings NlpVertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- limit
Settings NlpVertical Limit Settings Response - Execution constraints for AutoMLJob.
- log
Verbosity String - Log verbosity for the job.
- target
Column StringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- validation
Data MLTableJob Input Response - Validation data inputs.
- primary
Metric string - Primary metric for Text-NER task. Only 'Accuracy' is supported for Text-NER, so user need not set this explicitly.
- training
Data MLTableJob Input Response - [Required] Training data input.
- featurization
Settings NlpVertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- limit
Settings NlpVertical Limit Settings Response - Execution constraints for AutoMLJob.
- log
Verbosity string - Log verbosity for the job.
- target
Column stringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- validation
Data MLTableJob Input Response - Validation data inputs.
- primary_
metric str - Primary metric for Text-NER task. Only 'Accuracy' is supported for Text-NER, so user need not set this explicitly.
- training_
data MLTableJob Input Response - [Required] Training data input.
- featurization_
settings NlpVertical Featurization Settings Response - Featurization inputs needed for AutoML job.
- limit_
settings NlpVertical Limit Settings Response - Execution constraints for AutoMLJob.
- log_
verbosity str - Log verbosity for the job.
- target_
column_ strname - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- validation_
data MLTableJob Input Response - Validation data inputs.
- primary
Metric String - Primary metric for Text-NER task. Only 'Accuracy' is supported for Text-NER, so user need not set this explicitly.
- training
Data Property Map - [Required] Training data input.
- featurization
Settings Property Map - Featurization inputs needed for AutoML job.
- limit
Settings Property Map - Execution constraints for AutoMLJob.
- log
Verbosity String - Log verbosity for the job.
- target
Column StringName - Target column name: This is prediction values column. Also known as label column name in context of classification tasks.
- validation
Data Property Map - Validation data inputs.
TrialComponentResponse
- Command string
- [Required] The command to execute on startup of the job. eg. "python train.py"
- Environment
Id string - [Required] The ARM resource ID of the Environment specification for the job.
- Code
Id string - ARM resource ID of the code asset.
- Distribution
Pulumi.
Azure | Pulumi.Native. Machine Learning Services. Inputs. Mpi Response Azure | Pulumi.Native. Machine Learning Services. Inputs. Py Torch Response Azure Native. Machine Learning Services. Inputs. Tensor Flow Response - Distribution configuration of the job. If set, this should be one of Mpi, Tensorflow, PyTorch, or null.
- Environment
Variables Dictionary<string, string> - Environment variables included in the job.
- Resources
Pulumi.
Azure Native. Machine Learning Services. Inputs. Job Resource Configuration Response - Compute Resource configuration for the job.
- Command string
- [Required] The command to execute on startup of the job. eg. "python train.py"
- Environment
Id string - [Required] The ARM resource ID of the Environment specification for the job.
- Code
Id string - ARM resource ID of the code asset.
- Distribution
Mpi
Response | PyTorch | TensorResponse Flow Response - Distribution configuration of the job. If set, this should be one of Mpi, Tensorflow, PyTorch, or null.
- Environment
Variables map[string]string - Environment variables included in the job.
- Resources
Job
Resource Configuration Response - Compute Resource configuration for the job.
- command String
- [Required] The command to execute on startup of the job. eg. "python train.py"
- environment
Id String - [Required] The ARM resource ID of the Environment specification for the job.
- code
Id String - ARM resource ID of the code asset.
- distribution
Mpi
Response | PyTorch | TensorResponse Flow Response - Distribution configuration of the job. If set, this should be one of Mpi, Tensorflow, PyTorch, or null.
- environment
Variables Map<String,String> - Environment variables included in the job.
- resources
Job
Resource Configuration Response - Compute Resource configuration for the job.
- command string
- [Required] The command to execute on startup of the job. eg. "python train.py"
- environment
Id string - [Required] The ARM resource ID of the Environment specification for the job.
- code
Id string - ARM resource ID of the code asset.
- distribution
Mpi
Response | PyTorch | TensorResponse Flow Response - Distribution configuration of the job. If set, this should be one of Mpi, Tensorflow, PyTorch, or null.
- environment
Variables {[key: string]: string} - Environment variables included in the job.
- resources
Job
Resource Configuration Response - Compute Resource configuration for the job.
- command str
- [Required] The command to execute on startup of the job. eg. "python train.py"
- environment_
id str - [Required] The ARM resource ID of the Environment specification for the job.
- code_
id str - ARM resource ID of the code asset.
- distribution
Mpi
Response | PyTorch | TensorResponse Flow Response - Distribution configuration of the job. If set, this should be one of Mpi, Tensorflow, PyTorch, or null.
- environment_
variables Mapping[str, str] - Environment variables included in the job.
- resources
Job
Resource Configuration Response - Compute Resource configuration for the job.
- command String
- [Required] The command to execute on startup of the job. eg. "python train.py"
- environment
Id String - [Required] The ARM resource ID of the Environment specification for the job.
- code
Id String - ARM resource ID of the code asset.
- distribution Property Map | Property Map | Property Map
- Distribution configuration of the job. If set, this should be one of Mpi, Tensorflow, PyTorch, or null.
- environment
Variables Map<String> - Environment variables included in the job.
- resources Property Map
- Compute Resource configuration for the job.
TritonModelJobInputResponse
- Uri string
- [Required] Input Asset URI.
- Description string
- Description for the input.
- Mode string
- Input Asset Delivery Mode.
- Uri string
- [Required] Input Asset URI.
- Description string
- Description for the input.
- Mode string
- Input Asset Delivery Mode.
- uri String
- [Required] Input Asset URI.
- description String
- Description for the input.
- mode String
- Input Asset Delivery Mode.
- uri string
- [Required] Input Asset URI.
- description string
- Description for the input.
- mode string
- Input Asset Delivery Mode.
- uri str
- [Required] Input Asset URI.
- description str
- Description for the input.
- mode str
- Input Asset Delivery Mode.
- uri String
- [Required] Input Asset URI.
- description String
- Description for the input.
- mode String
- Input Asset Delivery Mode.
TritonModelJobOutputResponse
- Description string
- Description for the output.
- Mode string
- Output Asset Delivery Mode.
- Uri string
- Output Asset URI.
- Description string
- Description for the output.
- Mode string
- Output Asset Delivery Mode.
- Uri string
- Output Asset URI.
- description String
- Description for the output.
- mode String
- Output Asset Delivery Mode.
- uri String
- Output Asset URI.
- description string
- Description for the output.
- mode string
- Output Asset Delivery Mode.
- uri string
- Output Asset URI.
- description str
- Description for the output.
- mode str
- Output Asset Delivery Mode.
- uri str
- Output Asset URI.
- description String
- Description for the output.
- mode String
- Output Asset Delivery Mode.
- uri String
- Output Asset URI.
TruncationSelectionPolicyResponse
- Delay
Evaluation int - Number of intervals by which to delay the first evaluation.
- Evaluation
Interval int - Interval (number of runs) between policy evaluations.
- Truncation
Percentage int - The percentage of runs to cancel at each evaluation interval.
- Delay
Evaluation int - Number of intervals by which to delay the first evaluation.
- Evaluation
Interval int - Interval (number of runs) between policy evaluations.
- Truncation
Percentage int - The percentage of runs to cancel at each evaluation interval.
- delay
Evaluation Integer - Number of intervals by which to delay the first evaluation.
- evaluation
Interval Integer - Interval (number of runs) between policy evaluations.
- truncation
Percentage Integer - The percentage of runs to cancel at each evaluation interval.
- delay
Evaluation number - Number of intervals by which to delay the first evaluation.
- evaluation
Interval number - Interval (number of runs) between policy evaluations.
- truncation
Percentage number - The percentage of runs to cancel at each evaluation interval.
- delay_
evaluation int - Number of intervals by which to delay the first evaluation.
- evaluation_
interval int - Interval (number of runs) between policy evaluations.
- truncation_
percentage int - The percentage of runs to cancel at each evaluation interval.
- delay
Evaluation Number - Number of intervals by which to delay the first evaluation.
- evaluation
Interval Number - Interval (number of runs) between policy evaluations.
- truncation
Percentage Number - The percentage of runs to cancel at each evaluation interval.
UriFileJobInputResponse
- Uri string
- [Required] Input Asset URI.
- Description string
- Description for the input.
- Mode string
- Input Asset Delivery Mode.
- Uri string
- [Required] Input Asset URI.
- Description string
- Description for the input.
- Mode string
- Input Asset Delivery Mode.
- uri String
- [Required] Input Asset URI.
- description String
- Description for the input.
- mode String
- Input Asset Delivery Mode.
- uri string
- [Required] Input Asset URI.
- description string
- Description for the input.
- mode string
- Input Asset Delivery Mode.
- uri str
- [Required] Input Asset URI.
- description str
- Description for the input.
- mode str
- Input Asset Delivery Mode.
- uri String
- [Required] Input Asset URI.
- description String
- Description for the input.
- mode String
- Input Asset Delivery Mode.
UriFileJobOutputResponse
- Description string
- Description for the output.
- Mode string
- Output Asset Delivery Mode.
- Uri string
- Output Asset URI.
- Description string
- Description for the output.
- Mode string
- Output Asset Delivery Mode.
- Uri string
- Output Asset URI.
- description String
- Description for the output.
- mode String
- Output Asset Delivery Mode.
- uri String
- Output Asset URI.
- description string
- Description for the output.
- mode string
- Output Asset Delivery Mode.
- uri string
- Output Asset URI.
- description str
- Description for the output.
- mode str
- Output Asset Delivery Mode.
- uri str
- Output Asset URI.
- description String
- Description for the output.
- mode String
- Output Asset Delivery Mode.
- uri String
- Output Asset URI.
UriFolderJobInputResponse
- Uri string
- [Required] Input Asset URI.
- Description string
- Description for the input.
- Mode string
- Input Asset Delivery Mode.
- Uri string
- [Required] Input Asset URI.
- Description string
- Description for the input.
- Mode string
- Input Asset Delivery Mode.
- uri String
- [Required] Input Asset URI.
- description String
- Description for the input.
- mode String
- Input Asset Delivery Mode.
- uri string
- [Required] Input Asset URI.
- description string
- Description for the input.
- mode string
- Input Asset Delivery Mode.
- uri str
- [Required] Input Asset URI.
- description str
- Description for the input.
- mode str
- Input Asset Delivery Mode.
- uri String
- [Required] Input Asset URI.
- description String
- Description for the input.
- mode String
- Input Asset Delivery Mode.
UriFolderJobOutputResponse
- Description string
- Description for the output.
- Mode string
- Output Asset Delivery Mode.
- Uri string
- Output Asset URI.
- Description string
- Description for the output.
- Mode string
- Output Asset Delivery Mode.
- Uri string
- Output Asset URI.
- description String
- Description for the output.
- mode String
- Output Asset Delivery Mode.
- uri String
- Output Asset URI.
- description string
- Description for the output.
- mode string
- Output Asset Delivery Mode.
- uri string
- Output Asset URI.
- description str
- Description for the output.
- mode str
- Output Asset Delivery Mode.
- uri str
- Output Asset URI.
- description String
- Description for the output.
- mode String
- Output Asset Delivery Mode.
- uri String
- Output Asset URI.
UserIdentityResponse
Package Details
- Repository
- Azure Native pulumi/pulumi-azure-native
- License
- Apache-2.0
This is the latest version of Azure Native. Use the Azure Native v1 docs if using the v1 version of this package.
Azure Native v2.63.0 published on Tuesday, Sep 24, 2024 by Pulumi