8.4.1.8. sklearn.datasets.load_iris¶
- sklearn.datasets.load_iris()¶
- Load and return the iris dataset (classification). - The iris dataset is a classic and very easy multi-class classification dataset. - Classes - 3 - Samples per class - 50 - Samples total - 150 - Dimensionality - 4 - Features - real, positive - Returns : - data : Bunch - Dictionary-like object, the interesting attributes are: ‘data’, the data to learn, ‘target’, the classification labels, ‘target_names’, the meaning of the labels, ‘feature_names’, the meaning of the features, and ‘DESCR’, the full description of the dataset. - Examples - Let’s say you are interested in the samples 10, 25, and 50, and want to know their class name. - >>> from sklearn.datasets import load_iris >>> data = load_iris() >>> data.target[[10, 25, 50]] array([0, 0, 1]) >>> list(data.target_names) ['setosa', 'versicolor', 'virginica'] 
