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Implementation:Scikit learn Scikit learn DatasetsModule

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Knowledge Sources
Domains Machine Learning, Data Loading
Last Updated 2026-02-08 15:00 GMT

Overview

Concrete tool for loading popular datasets and generating artificial data, provided by scikit-learn.

Description

The sklearn.datasets module is the central namespace that aggregates all dataset loading and generation utilities in scikit-learn. It re-exports functions for loading bundled toy datasets (iris, digits, wine, breast cancer, diabetes, linnerud), fetching remote datasets (California housing, covtype, Olivetti faces, 20 newsgroups, species distributions, OpenML), and generating synthetic datasets (blobs, classification, regression, moons, circles, Swiss roll).

Usage

Use this module whenever you need to load a standard dataset for benchmarking, testing, or prototyping machine learning models. It provides a unified interface for both local bundled datasets and remotely fetched datasets.

Code Reference

Source Location

Signature

# Module-level imports (selected):
from sklearn.datasets._base import load_iris, load_digits, load_wine, load_breast_cancer
from sklearn.datasets._california_housing import fetch_california_housing
from sklearn.datasets._covtype import fetch_covtype
from sklearn.datasets._samples_generator import make_classification, make_regression, make_blobs

Import

from sklearn import datasets
from sklearn.datasets import load_iris, fetch_california_housing, make_classification

I/O Contract

Inputs

Name Type Required Description
return_X_y bool No If True, returns (data, target) tuple instead of Bunch object
as_frame bool No If True, returns data as pandas DataFrame
data_home str or None No Custom directory for caching downloaded datasets

Outputs

Name Type Description
dataset Bunch Dictionary-like object with data, target, feature_names, and other metadata
(X, y) tuple Feature matrix and target array when return_X_y=True

Usage Examples

Basic Usage

from sklearn.datasets import load_iris, make_classification

# Load a bundled dataset
iris = load_iris()
print(iris.data.shape)  # (150, 4)

# Generate synthetic data
X, y = make_classification(n_samples=1000, n_features=20, random_state=42)
print(X.shape)  # (1000, 20)

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