dataeval.data.Select¶
-
class dataeval.data.Select(dataset, selections=
None)¶ Wraps a dataset and applies selection criteria to it.
- Parameters:¶
Examples
>>> from dataeval.data.selections import ClassFilter, Limit>>> # Construct a sample dataset with size of 100 and class count of 10 >>> # Elements at index `idx` are returned as tuples: >>> # - f"data_{idx}", one_hot_encoded(idx % class_count), {"id": idx} >>> dataset = SampleDataset(size=100, class_count=10)>>> # Apply a selection criteria to the dataset >>> selections = [Limit(size=5), ClassFilter(classes=[0, 2])] >>> selected_dataset = Select(dataset, selections=selections)>>> # Iterate over the selected dataset >>> for data, target, meta in selected_dataset: ... print(f"({data}, {np.argmax(target)}, {meta})") (data_0, 0, {'id': 0}) (data_2, 2, {'id': 2}) (data_10, 0, {'id': 10}) (data_12, 2, {'id': 12}) (data_20, 0, {'id': 20})