Rust bindings for Python, including tools for creating native Python extension modules. Running and interacting with Python code from a Rust binary is also supported.
PyO3 supports the following software versions:
- Python 3.7 and up (CPython and PyPy)
- Rust 1.56 and up
You can use PyO3 to write a native Python module in Rust, or to embed Python in a Rust binary. The following sections explain each of these in turn.
PyO3 can be used to generate a native Python module. The easiest way to try this out for the first time is to use maturin
. maturin
is a tool for building and publishing Rust-based Python packages with minimal configuration. The following steps install maturin
, use it to generate and build a new Python package, and then launch Python to import and execute a function from the package.
First, follow the commands below to create a new directory containing a new Python virtualenv
, and install maturin
into the virtualenv using Python's package manager, pip
:
# (replace string_sum with the desired package name)
$ mkdir string_sum
$ cd string_sum
$ python -m venv .env
$ source .env/bin/activate
$ pip install maturin
Still inside this string_sum
directory, now run maturin init
. This will generate the new package source. When given the choice of bindings to use, select pyo3 bindings:
$ maturin init
✔ 🤷 What kind of bindings to use? · pyo3
✨ Done! New project created string_sum
The most important files generated by this command are Cargo.toml
and lib.rs
, which will look roughly like the following:
Cargo.toml
[package]
name = "string_sum"
version = "0.1.0"
edition = "2021"
[lib]
# The name of the native library. This is the name which will be used in Python to import the
# library (i.e. `import string_sum`). If you change this, you must also change the name of the
# `#[pymodule]` in `src/lib.rs`.
name = "string_sum"
# "cdylib" is necessary to produce a shared library for Python to import from.
#
# Downstream Rust code (including code in `bin/`, `examples/`, and `tests/`) will not be able
# to `use string_sum;` unless the "rlib" or "lib" crate type is also included, e.g.:
# crate-type = ["cdylib", "rlib"]
crate-type = ["cdylib"]
[dependencies]
pyo3 = { version = "0.20.2", features = ["extension-module"] }
src/lib.rs
use pyo3::prelude::*;
/// Formats the sum of two numbers as string.
#[pyfunction]
fn sum_as_string(a: usize, b: usize) -> PyResult<String> {
Ok((a + b).to_string())
}
/// A Python module implemented in Rust. The name of this function must match
/// the `lib.name` setting in the `Cargo.toml`, else Python will not be able to
/// import the module.
#[pymodule]
fn string_sum(_py: Python<'_>, m: &PyModule) -> PyResult<()> {
m.add_function(wrap_pyfunction!(sum_as_string, m)?)?;
Ok(())
}
Finally, run maturin develop
. This will build the package and install it into the Python virtualenv previously created and activated. The package is then ready to be used from python
:
$ maturin develop
# lots of progress output as maturin runs the compilation...
$ python
>>> import string_sum
>>> string_sum.sum_as_string(5, 20)
'25'
To make changes to the package, just edit the Rust source code and then re-run maturin develop
to recompile.
To run this all as a single copy-and-paste, use the bash script below (replace string_sum
in the first command with the desired package name):
mkdir string_sum && cd "$_"
python -m venv .env
source .env/bin/activate
pip install maturin
maturin init --bindings pyo3
maturin develop
If you want to be able to run cargo test
or use this project in a Cargo workspace and are running into linker issues, there are some workarounds in the FAQ.
As well as with maturin
, it is possible to build using setuptools-rust
or manually. Both offer more flexibility than maturin
but require more configuration to get started.
To embed Python into a Rust binary, you need to ensure that your Python installation contains a shared library. The following steps demonstrate how to ensure this (for Ubuntu), and then give some example code which runs an embedded Python interpreter.
To install the Python shared library on Ubuntu:
sudo apt install python3-dev
To install the Python shared library on RPM based distributions (e.g. Fedora, Red Hat, SuSE), install the python3-devel
package.
Start a new project with cargo new
and add pyo3
to the Cargo.toml
like this:
[dependencies.pyo3]
version = "0.20.2"
features = ["auto-initialize"]
Example program displaying the value of sys.version
and the current user name:
use pyo3::prelude::*;
use pyo3::types::IntoPyDict;
fn main() -> PyResult<()> {
Python::with_gil(|py| {
let sys = py.import_bound("sys")?;
let version: String = sys.getattr("version")?.extract()?;
let locals = [("os", py.import_bound("os")?)].into_py_dict_bound(py);
let code = "os.getenv('USER') or os.getenv('USERNAME') or 'Unknown'";
let user: String = py.eval_bound(code, None, Some(&locals))?.extract()?;
println!("Hello {}, I'm Python {}", user, version);
Ok(())
})
}
The guide has a section with lots of examples about this topic.
- maturin Build and publish crates with pyo3, rust-cpython or cffi bindings as well as rust binaries as python packages
- setuptools-rust Setuptools plugin for Rust support.
- pyo3-built Simple macro to expose metadata obtained with the
built
crate as aPyDict
- rust-numpy Rust binding of NumPy C-API
- dict-derive Derive FromPyObject to automatically transform Python dicts into Rust structs
- pyo3-log Bridge from Rust to Python logging
- pythonize Serde serializer for converting Rust objects to JSON-compatible Python objects
- pyo3-asyncio Utilities for working with Python's Asyncio library and async functions
- rustimport Directly import Rust files or crates from Python, without manual compilation step. Provides pyo3 integration by default and generates pyo3 binding code automatically.
- autopy A simple, cross-platform GUI automation library for Python and Rust.
- Contains an example of building wheels on TravisCI and appveyor using cibuildwheel
- ballista-python A Python library that binds to Apache Arrow distributed query engine Ballista.
- bed-reader Read and write the PLINK BED format, simply and efficiently.
- Shows Rayon/ndarray::parallel (including capturing errors, controlling thread num), Python types to Rust generics, Github Actions
- cryptography Python cryptography library with some functionality in Rust.
- css-inline CSS inlining for Python implemented in Rust.
- datafusion-python A Python library that binds to Apache Arrow in-memory query engine DataFusion.
- deltalake-python Native Delta Lake Python binding based on delta-rs with Pandas integration.
- fastbloom A fast bloom filter | counting bloom filter implemented by Rust for Rust and Python!
- fastuuid Python bindings to Rust's UUID library.
- feos Lightning fast thermodynamic modeling in Rust with fully developed Python interface.
- forust A lightweight gradient boosted decision tree library written in Rust.
- haem A Python library for working on Bioinformatics problems.
- html-py-ever Using html5ever through kuchiki to speed up html parsing and css-selecting.
- hyperjson A hyper-fast Python module for reading/writing JSON data using Rust's serde-json.
- inline-python Inline Python code directly in your Rust code.
- johnnycanencrypt OpenPGP library with Yubikey support.
- jsonschema-rs Fast JSON Schema validation library.
- mocpy Astronomical Python library offering data structures for describing any arbitrary coverage regions on the unit sphere.
- opendal A data access layer that allows users to easily and efficiently retrieve data from various storage services in a unified way.
- orjson Fast Python JSON library.
- ormsgpack Fast Python msgpack library.
- point-process High level API for pointprocesses as a Python library.
- polaroid Hyper Fast and safe image manipulation library for Python written in Rust.
- polars Fast multi-threaded DataFrame library in Rust | Python | Node.js.
- pydantic-core Core validation logic for pydantic written in Rust.
- pyheck Fast case conversion library, built by wrapping heck.
- Quite easy to follow as there's not much code.
- pyre Fast Python HTTP server written in Rust.
- ril-py A performant and high-level image processing library for Python written in Rust.
- river Online machine learning in python, the computationally heavy statistics algorithms are implemented in Rust.
- rust-python-coverage Example PyO3 project with automated test coverage for Rust and Python.
- tiktoken A fast BPE tokeniser for use with OpenAI's models.
- tokenizers Python bindings to the Hugging Face tokenizers (NLP) written in Rust.
- tzfpy A fast package to convert longitude/latitude to timezone name.
- utiles Fast Python web-map tile utilities
- wasmer-python Python library to run WebAssembly binaries.
- (Video) Extending Python with Rust using PyO3 - Dec 16, 2023
- A Week of PyO3 + rust-numpy (How to Speed Up Your Data Pipeline X Times) - Jun 6, 2023
- (Podcast) PyO3 with David Hewitt - May 19, 2023
- Making Python 100x faster with less than 100 lines of Rust - Mar 28, 2023
- How Pydantic V2 leverages Rust's Superpowers - Feb 4, 2023
- How we extended the River stats module with Rust using PyO3 - Dec 23, 2022
- Nine Rules for Writing Python Extensions in Rust - Dec 31, 2021
- Calling Rust from Python using PyO3 - Nov 18, 2021
- davidhewitt's 2021 talk at Rust Manchester meetup - Aug 19, 2021
- Incrementally porting a small Python project to Rust - Apr 29, 2021
- Vortexa - Integrating Rust into Python - Apr 12, 2021
- Writing and publishing a Python module in Rust - Aug 2, 2020
Everyone is welcomed to contribute to PyO3! There are many ways to support the project, such as:
- help PyO3 users with issues on GitHub and Gitter
- improve documentation
- write features and bugfixes
- publish blogs and examples of how to use PyO3
Our contributing notes and architecture guide have more resources if you wish to volunteer time for PyO3 and are searching where to start.
If you don't have time to contribute yourself but still wish to support the project's future success, some of our maintainers have GitHub sponsorship pages:
PyO3 is licensed under the Apache-2.0 license or the MIT license, at your option.
Python is licensed under the Python License.
Unless you explicitly state otherwise, any contribution intentionally submitted for inclusion in PyO3 by you, as defined in the Apache License, shall be dual-licensed as above, without any additional terms or conditions.