//! # The Iris Dataset flower //! //! | Number of Instances | Number of Attributes | Missing Values? | Associated Tasks: | //! |-|-|-|-| //! | 150 | 4 | No | Classification | //! //! [Fisher's Iris dataset](https://archive.ics.uci.edu/ml/datasets/iris) is a multivariate dataset that was published in 1936 by Ronald Fisher. //! This multivariate dataset is frequently used to demonstrate various machine learning algorithms. The dataset has following attributes: //! //! | Predictor | Data Type | Target? | //! |-|-|-| //! | Sepal length | Numerical | No | //! | Sepal width | Numerical | No | //! | Petal length | Numerical | No | //! | Petal width | Numerical | No | //! | Class | Nominal | Yes | //! use crate::dataset::deserialize_data; use crate::dataset::Dataset; /// Get dataset pub fn load_dataset() -> Dataset { let (x, y, num_samples, num_features) = match deserialize_data(std::include_bytes!("iris.xy")) { Err(why) => panic!("Can't deserialize iris.xy. {}", why), Ok((x, y, num_samples, num_features)) => (x, y, num_samples, num_features), }; Dataset { data: x, target: y, num_samples, num_features, feature_names: vec![ "sepal length (cm)", "sepal width (cm)", "petal length (cm)", "petal width (cm)", ] .iter() .map(|s| s.to_string()) .collect(), target_names: vec!["setosa", "versicolor", "virginica"] .iter() .map(|s| s.to_string()) .collect(), description: "Iris dataset: https://archive.ics.uci.edu/ml/datasets/iris".to_string(), } } #[cfg(test)] mod tests { use super::super::*; use super::*; #[test] #[ignore] fn refresh_iris_dataset() { // run this test to generate iris.xy file. let dataset = load_dataset(); assert!(serialize_data(&dataset, "iris.xy").is_ok()); } #[test] fn iris_dataset() { let dataset = load_dataset(); assert_eq!(dataset.data.len(), 50 * 3 * 4); assert_eq!(dataset.target.len(), 50 * 3); assert_eq!(dataset.num_features, 4); assert_eq!(dataset.num_samples, 50 * 3); } }