no_split#
Empty Data Splitter class.
Module Contents#
Contents#
- class evalml.preprocessing.data_splitters.no_split.NoSplit(random_seed=0)[source]#
Does not split the training data into training and validation sets.
All data is passed as the training set, test data is simply an array of None. To be used for future unsupervised learning, should not be used in any of the currently supported pipelines.
- Parameters
random_seed (int) – The seed to use for random sampling. Defaults to 0. Not used.
Methods
Return the number of splits of this object.
Returns whether or not the data splitter is a cross-validation data splitter.
Divide the data into training and testing sets, where the testing set is empty.
- static get_n_splits()[source]#
Return the number of splits of this object.
- Returns
Always returns 0.
- Return type
int
- property is_cv(self)#
Returns whether or not the data splitter is a cross-validation data splitter.
- Returns
If the splitter is a cross-validation data splitter
- Return type
bool