AutoMLExperimentExtension.SetDataset Method

Definition

Overloads

SetDataset(AutoMLExperiment, DataOperationsCatalog+TrainTestData)

Set train and validation dataset for AutoMLExperiment. This will make AutoMLExperiment uses TrainSet from trainValidationSplit to train a model, and use TestSet from trainValidationSplit to evaluate the model.

SetDataset(AutoMLExperiment, IDataView, IDataView, Boolean)

Set train and validation dataset for AutoMLExperiment. This will make AutoMLExperiment uses train to train a model, and use validation to evaluate the model.

SetDataset(AutoMLExperiment, IDataView, Int32, String)

Set cross-validation dataset for AutoMLExperiment. This will make AutoMLExperiment use n=fold cross-validation split on dataset to train and evaluate a model.

SetDataset(AutoMLExperiment, DataOperationsCatalog+TrainTestData)

Set train and validation dataset for AutoMLExperiment. This will make AutoMLExperiment uses TrainSet from trainValidationSplit to train a model, and use TestSet from trainValidationSplit to evaluate the model.

public static Microsoft.ML.AutoML.AutoMLExperiment SetDataset (this Microsoft.ML.AutoML.AutoMLExperiment experiment, Microsoft.ML.DataOperationsCatalog.TrainTestData trainValidationSplit);
static member SetDataset : Microsoft.ML.AutoML.AutoMLExperiment * Microsoft.ML.DataOperationsCatalog.TrainTestData -> Microsoft.ML.AutoML.AutoMLExperiment
<Extension()>
Public Function SetDataset (experiment As AutoMLExperiment, trainValidationSplit As DataOperationsCatalog.TrainTestData) As AutoMLExperiment

Parameters

trainValidationSplit
DataOperationsCatalog.TrainTestData

a DataOperationsCatalog.TrainTestData for train and validation.

Returns

AutoMLExperiment

Applies to

SetDataset(AutoMLExperiment, IDataView, IDataView, Boolean)

Set train and validation dataset for AutoMLExperiment. This will make AutoMLExperiment uses train to train a model, and use validation to evaluate the model.

public static Microsoft.ML.AutoML.AutoMLExperiment SetDataset (this Microsoft.ML.AutoML.AutoMLExperiment experiment, Microsoft.ML.IDataView train, Microsoft.ML.IDataView validation, bool subSamplingTrainDataset = false);
static member SetDataset : Microsoft.ML.AutoML.AutoMLExperiment * Microsoft.ML.IDataView * Microsoft.ML.IDataView * bool -> Microsoft.ML.AutoML.AutoMLExperiment
<Extension()>
Public Function SetDataset (experiment As AutoMLExperiment, train As IDataView, validation As IDataView, Optional subSamplingTrainDataset As Boolean = false) As AutoMLExperiment

Parameters

train
IDataView

dataset for training a model.

validation
IDataView

dataset for validating a model during training.

subSamplingTrainDataset
Boolean

determine if subsampling train to train. This will be useful if train is too large to be held in memory.

Returns

AutoMLExperiment

Applies to

SetDataset(AutoMLExperiment, IDataView, Int32, String)

Set cross-validation dataset for AutoMLExperiment. This will make AutoMLExperiment use n=fold cross-validation split on dataset to train and evaluate a model.

public static Microsoft.ML.AutoML.AutoMLExperiment SetDataset (this Microsoft.ML.AutoML.AutoMLExperiment experiment, Microsoft.ML.IDataView dataset, int fold = 10, string samplingKeyColumnName = default);
static member SetDataset : Microsoft.ML.AutoML.AutoMLExperiment * Microsoft.ML.IDataView * int * string -> Microsoft.ML.AutoML.AutoMLExperiment
<Extension()>
Public Function SetDataset (experiment As AutoMLExperiment, dataset As IDataView, Optional fold As Integer = 10, Optional samplingKeyColumnName As String = Nothing) As AutoMLExperiment

Parameters

dataset
IDataView

dataset for cross-validation split.

fold
Int32

number of cross-validation folds

samplingKeyColumnName
String

column name for sampling key

Returns

AutoMLExperiment

Applies to