CreatePredictorRequest

public struct CreatePredictorRequest : AWSShape

Undocumented

  • Declaration

    Swift

    public static var _members: [AWSShapeMember]
  • The Amazon Resource Name (ARN) of the algorithm to use for model training. Required if PerformAutoML is not set to true. Supported algorithms: arn:aws:forecast:::algorithm/ARIMA arn:aws:forecast:::algorithm/Deep_AR_Plus Supports hyperparameter optimization (HPO) arn:aws:forecast:::algorithm/ETS arn:aws:forecast:::algorithm/NPTS arn:aws:forecast:::algorithm/Prophet

    Declaration

    Swift

    public let algorithmArn: String?
  • An AWS Key Management Service (KMS) key and the AWS Identity and Access Management (IAM) role that Amazon Forecast can assume to access the key.

    Declaration

    Swift

    public let encryptionConfig: EncryptionConfig?
  • Used to override the default evaluation parameters of the specified algorithm. Amazon Forecast evaluates a predictor by splitting a dataset into training data and testing data. The evaluation parameters define how to perform the split and the number of iterations.

    Declaration

    Swift

    public let evaluationParameters: EvaluationParameters?
  • The featurization configuration.

    Declaration

    Swift

    public let featurizationConfig: FeaturizationConfig
  • Specifies the number of time-steps that the model is trained to predict. The forecast horizon is also called the prediction length. For example, if you configure a dataset for daily data collection (using the DataFrequency parameter of the CreateDataset operation) and set the forecast horizon to 10, the model returns predictions for 10 days. The maximum forecast horizon is the lesser of 500 time-steps or 1/3 of the TARGET_TIME_SERIES dataset length.

    Declaration

    Swift

    public let forecastHorizon: Int
  • Provides hyperparameter override values for the algorithm. If you don’t provide this parameter, Amazon Forecast uses default values. The individual algorithms specify which hyperparameters support hyperparameter optimization (HPO). For more information, see aws-forecast-choosing-recipes. If you included the HPOConfig object, you must set PerformHPO to true.

    Declaration

    Swift

    public let hPOConfig: HyperParameterTuningJobConfig?
  • Describes the dataset group that contains the data to use to train the predictor.

    Declaration

    Swift

    public let inputDataConfig: InputDataConfig
  • Whether to perform AutoML. When Amazon Forecast performs AutoML, it evaluates the algorithms it provides and chooses the best algorithm and configuration for your training dataset. The default value is false. In this case, you are required to specify an algorithm. Set PerformAutoML to true to have Amazon Forecast perform AutoML. This is a good option if you aren’t sure which algorithm is suitable for your training data. In this case, PerformHPO must be false.

    Declaration

    Swift

    public let performAutoML: Bool?
  • Whether to perform hyperparameter optimization (HPO). HPO finds optimal hyperparameter values for your training data. The process of performing HPO is known as running a hyperparameter tuning job. The default value is false. In this case, Amazon Forecast uses default hyperparameter values from the chosen algorithm. To override the default values, set PerformHPO to true and, optionally, supply the HyperParameterTuningJobConfig object. The tuning job specifies a metric to optimize, which hyperparameters participate in tuning, and the valid range for each tunable hyperparameter. In this case, you are required to specify an algorithm and PerformAutoML must be false. The following algorithm supports HPO: DeepAR+

    Declaration

    Swift

    public let performHPO: Bool?
  • A name for the predictor.

    Declaration

    Swift

    public let predictorName: String
  • The optional metadata that you apply to the predictor to help you categorize and organize them. Each tag consists of a key and an optional value, both of which you define. The following basic restrictions apply to tags: Maximum number of tags per resource - 50. For each resource, each tag key must be unique, and each tag key can have only one value. Maximum key length - 128 Unicode characters in UTF-8. Maximum value length - 256 Unicode characters in UTF-8. If your tagging schema is used across multiple services and resources, remember that other services may have restrictions on allowed characters. Generally allowed characters are: letters, numbers, and spaces representable in UTF-8, and the following characters: + - = . _ : / @. Tag keys and values are case sensitive. Do not use aws:, AWS:, or any upper or lowercase combination of such as a prefix for keys as it is reserved for AWS use. You cannot edit or delete tag keys with this prefix. Values can have this prefix. If a tag value has aws as its prefix but the key does not, then Forecast considers it to be a user tag and will count against the limit of 50 tags. Tags with only the key prefix of aws do not count against your tags per resource limit.

    Declaration

    Swift

    public let tags: [Tag]?
  • The hyperparameters to override for model training. The hyperparameters that you can override are listed in the individual algorithms. For the list of supported algorithms, see aws-forecast-choosing-recipes.

    Declaration

    Swift

    public let trainingParameters: [String : String]?
  • Undocumented

    Declaration

    Swift

    public init(algorithmArn: String? = nil, encryptionConfig: EncryptionConfig? = nil, evaluationParameters: EvaluationParameters? = nil, featurizationConfig: FeaturizationConfig, forecastHorizon: Int, hPOConfig: HyperParameterTuningJobConfig? = nil, inputDataConfig: InputDataConfig, performAutoML: Bool? = nil, performHPO: Bool? = nil, predictorName: String, tags: [Tag]? = nil, trainingParameters: [String : String]? = nil)
  • Declaration

    Swift

    public func validate(name: String) throws