Interface AutoMLAlgorithmConfig.Builder

    • Method Detail

      • autoMLAlgorithmsWithStrings

        AutoMLAlgorithmConfig.Builder autoMLAlgorithmsWithStrings​(Collection<String> autoMLAlgorithms)

        The selection of algorithms trained on your dataset to generate the model candidates for an Autopilot job.

        • For the tabular problem type TabularJobConfig:

          Selected algorithms must belong to the list corresponding to the training mode set in AutoMLJobConfig.Mode (ENSEMBLING or HYPERPARAMETER_TUNING). Choose a minimum of 1 algorithm.

          • In ENSEMBLING mode:

            • "catboost"

            • "extra-trees"

            • "fastai"

            • "lightgbm"

            • "linear-learner"

            • "nn-torch"

            • "randomforest"

            • "xgboost"

          • In HYPERPARAMETER_TUNING mode:

            • "linear-learner"

            • "mlp"

            • "xgboost"

        • For the time-series forecasting problem type TimeSeriesForecastingJobConfig:

          • Choose your algorithms from this list.

            • "cnn-qr"

            • "deepar"

            • "prophet"

            • "arima"

            • "npts"

            • "ets"

        Parameters:
        autoMLAlgorithms - The selection of algorithms trained on your dataset to generate the model candidates for an Autopilot job.

        • For the tabular problem type TabularJobConfig:

          Selected algorithms must belong to the list corresponding to the training mode set in AutoMLJobConfig.Mode (ENSEMBLING or HYPERPARAMETER_TUNING). Choose a minimum of 1 algorithm.

          • In ENSEMBLING mode:

            • "catboost"

            • "extra-trees"

            • "fastai"

            • "lightgbm"

            • "linear-learner"

            • "nn-torch"

            • "randomforest"

            • "xgboost"

          • In HYPERPARAMETER_TUNING mode:

            • "linear-learner"

            • "mlp"

            • "xgboost"

        • For the time-series forecasting problem type TimeSeriesForecastingJobConfig:

          • Choose your algorithms from this list.

            • "cnn-qr"

            • "deepar"

            • "prophet"

            • "arima"

            • "npts"

            • "ets"

        Returns:
        Returns a reference to this object so that method calls can be chained together.
      • autoMLAlgorithmsWithStrings

        AutoMLAlgorithmConfig.Builder autoMLAlgorithmsWithStrings​(String... autoMLAlgorithms)

        The selection of algorithms trained on your dataset to generate the model candidates for an Autopilot job.

        • For the tabular problem type TabularJobConfig:

          Selected algorithms must belong to the list corresponding to the training mode set in AutoMLJobConfig.Mode (ENSEMBLING or HYPERPARAMETER_TUNING). Choose a minimum of 1 algorithm.

          • In ENSEMBLING mode:

            • "catboost"

            • "extra-trees"

            • "fastai"

            • "lightgbm"

            • "linear-learner"

            • "nn-torch"

            • "randomforest"

            • "xgboost"

          • In HYPERPARAMETER_TUNING mode:

            • "linear-learner"

            • "mlp"

            • "xgboost"

        • For the time-series forecasting problem type TimeSeriesForecastingJobConfig:

          • Choose your algorithms from this list.

            • "cnn-qr"

            • "deepar"

            • "prophet"

            • "arima"

            • "npts"

            • "ets"

        Parameters:
        autoMLAlgorithms - The selection of algorithms trained on your dataset to generate the model candidates for an Autopilot job.

        • For the tabular problem type TabularJobConfig:

          Selected algorithms must belong to the list corresponding to the training mode set in AutoMLJobConfig.Mode (ENSEMBLING or HYPERPARAMETER_TUNING). Choose a minimum of 1 algorithm.

          • In ENSEMBLING mode:

            • "catboost"

            • "extra-trees"

            • "fastai"

            • "lightgbm"

            • "linear-learner"

            • "nn-torch"

            • "randomforest"

            • "xgboost"

          • In HYPERPARAMETER_TUNING mode:

            • "linear-learner"

            • "mlp"

            • "xgboost"

        • For the time-series forecasting problem type TimeSeriesForecastingJobConfig:

          • Choose your algorithms from this list.

            • "cnn-qr"

            • "deepar"

            • "prophet"

            • "arima"

            • "npts"

            • "ets"

        Returns:
        Returns a reference to this object so that method calls can be chained together.
      • autoMLAlgorithms

        AutoMLAlgorithmConfig.Builder autoMLAlgorithms​(Collection<AutoMLAlgorithm> autoMLAlgorithms)

        The selection of algorithms trained on your dataset to generate the model candidates for an Autopilot job.

        • For the tabular problem type TabularJobConfig:

          Selected algorithms must belong to the list corresponding to the training mode set in AutoMLJobConfig.Mode (ENSEMBLING or HYPERPARAMETER_TUNING). Choose a minimum of 1 algorithm.

          • In ENSEMBLING mode:

            • "catboost"

            • "extra-trees"

            • "fastai"

            • "lightgbm"

            • "linear-learner"

            • "nn-torch"

            • "randomforest"

            • "xgboost"

          • In HYPERPARAMETER_TUNING mode:

            • "linear-learner"

            • "mlp"

            • "xgboost"

        • For the time-series forecasting problem type TimeSeriesForecastingJobConfig:

          • Choose your algorithms from this list.

            • "cnn-qr"

            • "deepar"

            • "prophet"

            • "arima"

            • "npts"

            • "ets"

        Parameters:
        autoMLAlgorithms - The selection of algorithms trained on your dataset to generate the model candidates for an Autopilot job.

        • For the tabular problem type TabularJobConfig:

          Selected algorithms must belong to the list corresponding to the training mode set in AutoMLJobConfig.Mode (ENSEMBLING or HYPERPARAMETER_TUNING). Choose a minimum of 1 algorithm.

          • In ENSEMBLING mode:

            • "catboost"

            • "extra-trees"

            • "fastai"

            • "lightgbm"

            • "linear-learner"

            • "nn-torch"

            • "randomforest"

            • "xgboost"

          • In HYPERPARAMETER_TUNING mode:

            • "linear-learner"

            • "mlp"

            • "xgboost"

        • For the time-series forecasting problem type TimeSeriesForecastingJobConfig:

          • Choose your algorithms from this list.

            • "cnn-qr"

            • "deepar"

            • "prophet"

            • "arima"

            • "npts"

            • "ets"

        Returns:
        Returns a reference to this object so that method calls can be chained together.
      • autoMLAlgorithms

        AutoMLAlgorithmConfig.Builder autoMLAlgorithms​(AutoMLAlgorithm... autoMLAlgorithms)

        The selection of algorithms trained on your dataset to generate the model candidates for an Autopilot job.

        • For the tabular problem type TabularJobConfig:

          Selected algorithms must belong to the list corresponding to the training mode set in AutoMLJobConfig.Mode (ENSEMBLING or HYPERPARAMETER_TUNING). Choose a minimum of 1 algorithm.

          • In ENSEMBLING mode:

            • "catboost"

            • "extra-trees"

            • "fastai"

            • "lightgbm"

            • "linear-learner"

            • "nn-torch"

            • "randomforest"

            • "xgboost"

          • In HYPERPARAMETER_TUNING mode:

            • "linear-learner"

            • "mlp"

            • "xgboost"

        • For the time-series forecasting problem type TimeSeriesForecastingJobConfig:

          • Choose your algorithms from this list.

            • "cnn-qr"

            • "deepar"

            • "prophet"

            • "arima"

            • "npts"

            • "ets"

        Parameters:
        autoMLAlgorithms - The selection of algorithms trained on your dataset to generate the model candidates for an Autopilot job.

        • For the tabular problem type TabularJobConfig:

          Selected algorithms must belong to the list corresponding to the training mode set in AutoMLJobConfig.Mode (ENSEMBLING or HYPERPARAMETER_TUNING). Choose a minimum of 1 algorithm.

          • In ENSEMBLING mode:

            • "catboost"

            • "extra-trees"

            • "fastai"

            • "lightgbm"

            • "linear-learner"

            • "nn-torch"

            • "randomforest"

            • "xgboost"

          • In HYPERPARAMETER_TUNING mode:

            • "linear-learner"

            • "mlp"

            • "xgboost"

        • For the time-series forecasting problem type TimeSeriesForecastingJobConfig:

          • Choose your algorithms from this list.

            • "cnn-qr"

            • "deepar"

            • "prophet"

            • "arima"

            • "npts"

            • "ets"

        Returns:
        Returns a reference to this object so that method calls can be chained together.