Interface AutoMLAlgorithmConfig.Builder
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- All Superinterfaces:
Buildable
,CopyableBuilder<AutoMLAlgorithmConfig.Builder,AutoMLAlgorithmConfig>
,SdkBuilder<AutoMLAlgorithmConfig.Builder,AutoMLAlgorithmConfig>
,SdkPojo
- Enclosing class:
- AutoMLAlgorithmConfig
public static interface AutoMLAlgorithmConfig.Builder extends SdkPojo, CopyableBuilder<AutoMLAlgorithmConfig.Builder,AutoMLAlgorithmConfig>
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Method Summary
All Methods Instance Methods Abstract Methods Modifier and Type Method Description AutoMLAlgorithmConfig.Builder
autoMLAlgorithms(Collection<AutoMLAlgorithm> autoMLAlgorithms)
The selection of algorithms trained on your dataset to generate the model candidates for an Autopilot job.AutoMLAlgorithmConfig.Builder
autoMLAlgorithms(AutoMLAlgorithm... autoMLAlgorithms)
The selection of algorithms trained on your dataset to generate the model candidates for an Autopilot job.AutoMLAlgorithmConfig.Builder
autoMLAlgorithmsWithStrings(String... autoMLAlgorithms)
The selection of algorithms trained on your dataset to generate the model candidates for an Autopilot job.AutoMLAlgorithmConfig.Builder
autoMLAlgorithmsWithStrings(Collection<String> autoMLAlgorithms)
The selection of algorithms trained on your dataset to generate the model candidates for an Autopilot job.-
Methods inherited from interface software.amazon.awssdk.utils.builder.CopyableBuilder
copy
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Methods inherited from interface software.amazon.awssdk.utils.builder.SdkBuilder
applyMutation, build
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Methods inherited from interface software.amazon.awssdk.core.SdkPojo
equalsBySdkFields, sdkFieldNameToField, sdkFields
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Method Detail
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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
orHYPERPARAMETER_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
orHYPERPARAMETER_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
orHYPERPARAMETER_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
orHYPERPARAMETER_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
orHYPERPARAMETER_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
orHYPERPARAMETER_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
orHYPERPARAMETER_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
orHYPERPARAMETER_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.
-
-
-