Class AutoMLAlgorithmConfig
- All Implemented Interfaces:
Serializable
,SdkPojo
,ToCopyableBuilder<AutoMLAlgorithmConfig.Builder,
AutoMLAlgorithmConfig>
The selection of algorithms trained on your dataset to generate the model candidates for an Autopilot job.
- See Also:
-
Nested Class Summary
Nested Classes -
Method Summary
Modifier and TypeMethodDescriptionfinal List
<AutoMLAlgorithm> The selection of algorithms trained on your dataset to generate the model candidates for an Autopilot job.The selection of algorithms trained on your dataset to generate the model candidates for an Autopilot job.builder()
final boolean
final boolean
equalsBySdkFields
(Object obj) Indicates whether some other object is "equal to" this one by SDK fields.final <T> Optional
<T> getValueForField
(String fieldName, Class<T> clazz) final boolean
For responses, this returns true if the service returned a value for the AutoMLAlgorithms property.final int
hashCode()
static Class
<? extends AutoMLAlgorithmConfig.Builder> Take this object and create a builder that contains all of the current property values of this object.final String
toString()
Returns a string representation of this object.Methods inherited from interface software.amazon.awssdk.utils.builder.ToCopyableBuilder
copy
-
Method Details
-
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"
-
-
Attempts to modify the collection returned by this method will result in an UnsupportedOperationException.
This method will never return null. If you would like to know whether the service returned this field (so that you can differentiate between null and empty), you can use the
hasAutoMLAlgorithms()
method.- Returns:
- 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"
-
-
-
-
-
hasAutoMLAlgorithms
public final boolean hasAutoMLAlgorithms()For responses, this returns true if the service returned a value for the AutoMLAlgorithms property. This DOES NOT check that the value is non-empty (for which, you should check theisEmpty()
method on the property). This is useful because the SDK will never return a null collection or map, but you may need to differentiate between the service returning nothing (or null) and the service returning an empty collection or map. For requests, this returns true if a value for the property was specified in the request builder, and false if a value was not specified. -
autoMLAlgorithmsAsStrings
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"
-
-
Attempts to modify the collection returned by this method will result in an UnsupportedOperationException.
This method will never return null. If you would like to know whether the service returned this field (so that you can differentiate between null and empty), you can use the
hasAutoMLAlgorithms()
method.- Returns:
- 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"
-
-
-
-
-
toBuilder
Description copied from interface:ToCopyableBuilder
Take this object and create a builder that contains all of the current property values of this object.- Specified by:
toBuilder
in interfaceToCopyableBuilder<AutoMLAlgorithmConfig.Builder,
AutoMLAlgorithmConfig> - Returns:
- a builder for type T
-
builder
-
serializableBuilderClass
-
hashCode
public final int hashCode() -
equals
-
equalsBySdkFields
Description copied from interface:SdkPojo
Indicates whether some other object is "equal to" this one by SDK fields. An SDK field is a modeled, non-inherited field in anSdkPojo
class, and is generated based on a service model.If an
SdkPojo
class does not have any inherited fields,equalsBySdkFields
andequals
are essentially the same.- Specified by:
equalsBySdkFields
in interfaceSdkPojo
- Parameters:
obj
- the object to be compared with- Returns:
- true if the other object equals to this object by sdk fields, false otherwise.
-
toString
Returns a string representation of this object. This is useful for testing and debugging. Sensitive data will be redacted from this string using a placeholder value. -
getValueForField
-
sdkFields
-