Rustrees is an efficient decision tree and random forest library written in Rust with Python bindings. It aims to provide speed comparable to Sklearn with the reliability and performance of Rust.
- 🏎️ Speed: As fast as Sklearn on average.
- 🔗 Python Bindings: Effortless integration with Python.
- 🔒 Type Safety: Benefit from Rust's strong type system.
pip install rustreesfrom sklearn.metrics import accuracy_score
from sklearn import datasets
import rustrees.decision_tree as rt_dt
df = datasets.load_breast_cancer()
model = rt_dt.DecisionTreeClassifier(max_depth=5).fit(df["data"], df["target"])
acc = accuracy_score(df["target"], model.predict(df["data"]))
print("accuracy", acc)cargo add rustreesuse rustrees::{DecisionTree, Dataset, r2};
let dataset = Dataset::read_csv("iris.csv", ",");
let dt = DecisionTree::train_reg(
&dataset,
5, // max_depth
Some(1), // min_samples_leaf
Some(42), // random_state
);
let pred = dt.predict(&dataset);
println!("r2 score: {}", r2(&dataset.target_vector, &pred));First, create a virtualenv (this just needs to be done once):
python -m venv .envThen, activate the virtualenv (needs to be done every time):
source .env/bin/activateNow, install the requirements (just needs to be done once):
pip install -r requirements.txtFinally, install the Python library at the local virtual environment with the following command (needs to be done every time you change the Rust code):
maturin develop --releaseNow, you can import the library rustrees in Python. This can be done also from Jupyter notebooks. To do so, run the following command:
jupyter notebookAnd then import the library in the notebook:
import rustrees.decision_tree as rt_dt