The PyO3 user guide
Welcome to the PyO3 user guide! This book is a companion to PyO3's API docs. It contains examples and documentation to explain all of PyO3's use cases in detail.
Please choose from the chapters on the left to jump to individual topics, or continue below to start with PyO3's README.
PyO3
Rust bindings for Python. This includes running and interacting with Python code from a Rust binary, as well as writing native Python modules.
A comparison with rust-cpython can be found in the guide.
Usage
PyO3 supports Python 3.5 and up. The minimum required Rust version is 1.39.0.
Building with PyPy is also possible (via cpyext) for Python 3.6, targeted PyPy version is 7.3+. Please refer to the pypy section in the guide.
You can either write a native Python module in Rust, or use Python from a Rust binary.
However, on some OSs, you need some additional packages. E.g. if you are on Ubuntu 18.04, please run
sudo apt install python3-dev python-dev
Using Rust from Python
PyO3 can be used to generate a native Python module.
Cargo.toml
[package]
name = "string-sum"
version = "0.1.0"
edition = "2018"
[lib]
name = "string_sum"
crate-type = ["cdylib"]
[dependencies.pyo3]
version = "0.12.4"
features = ["extension-module"]
src/lib.rs
#![allow(unused)] fn main() { use pyo3::prelude::*; use pyo3::wrap_pyfunction; /// 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. #[pymodule] fn string_sum(py: Python, m: &PyModule) -> PyResult<()> { m.add_function(wrap_pyfunction!(sum_as_string, m)?)?; Ok(()) } }
On Windows and Linux, you can build normally with cargo build --release
. On macOS, you need to set additional linker arguments. One option is to compile with cargo rustc --release -- -C link-arg=-undefined -C link-arg=dynamic_lookup
, the other is to create a .cargo/config
with the following content:
[target.x86_64-apple-darwin]
rustflags = [
"-C", "link-arg=-undefined",
"-C", "link-arg=dynamic_lookup",
]
While developing, you can symlink (or copy) and rename the shared library from the target folder: On MacOS, rename libstring_sum.dylib
to string_sum.so
, on Windows libstring_sum.dll
to string_sum.pyd
, and on Linux libstring_sum.so
to string_sum.so
. Then open a Python shell in the same folder and you'll be able to import string_sum
.
Adding the cdylib
arguments in the Cargo.toml
files changes the way your crate is compiled.
Other Rust projects using your crate will have to link against the .so
or .pyd
file rather than include your library directly as normal.
In order to make available your crate in the usual way for Rust user, you you might want to consider using both crate-type = ["cdylib", "rlib"]
so that Rust users can use the rlib
(the default lib crate type).
Another possibility is to create a new crate to perform the binding.
To build, test and publish your crate as a Python module, you can use maturin or setuptools-rust. You can find an example for setuptools-rust in examples/word-count, while maturin should work on your crate without any configuration.
Using Python from Rust
If you want your Rust application to create a Python interpreter internally and
use it to run Python code, add pyo3
to your Cargo.toml
like this:
[dependencies]
pyo3 = "0.12.4"
Example program displaying the value of sys.version
and the current user name:
use pyo3::prelude::*; use pyo3::types::IntoPyDict; fn main() -> Result<(), ()> { Python::with_gil(|py| { main_(py).map_err(|e| { // We can't display Python exceptions via std::fmt::Display, // so print the error here manually. e.print_and_set_sys_last_vars(py); }) }) } fn main_(py: Python) -> PyResult<()> { let sys = py.import("sys")?; let version: String = sys.get("version")?.extract()?; let locals = [("os", py.import("os")?)].into_py_dict(py); let code = "os.getenv('USER') or os.getenv('USERNAME') or 'Unknown'"; let user: String = py.eval(code, None, Some(&locals))?.extract()?; println!("Hello {}, I'm Python {}", user, version); Ok(()) }
Our guide has a section with lots of examples about this topic.
Tools and libraries
- maturin Zero configuration build tool for Rust-made Python extensions.
- 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
Examples
- hyperjson A hyper-fast Python module for reading/writing JSON data using Rust's serde-json
- html-py-ever Using html5ever through kuchiki to speed up html parsing and css-selecting.
- point-process High level API for pointprocesses as a Python library
- autopy A simple, cross-platform GUI automation library for Python and Rust.
- Contains an example of building wheels on TravisCI and appveyor using cibuildwheel
- orjson Fast Python JSON library
- inline-python Inline Python code directly in your Rust code
- Rogue-Gym Customizable rogue-like game for AI experiments
- Contains an example of building wheels on Azure Pipelines
- fastuuid Python bindings to Rust's UUID library
- wasmer-python Python library to run WebAssembly binaries
- mocpy Astronomical Python library offering data structures for describing any arbitrary coverage regions on the unit sphere
- tokenizers Python bindings to the Hugging Face tokenizers (NLP) written in Rust
License
PyO3 is licensed under the Apache-2.0 license. Python is licensed under the Python License.
Python Modules
You can create a module as follows:
use pyo3::prelude::*; // add bindings to the generated Python module // N.B: "rust2py" must be the name of the `.so` or `.pyd` file. /// This module is implemented in Rust. #[pymodule] fn rust2py(py: Python, m: &PyModule) -> PyResult<()> { // PyO3 aware function. All of our Python interfaces could be declared in a separate module. // Note that the `#[pyfn()]` annotation automatically converts the arguments from // Python objects to Rust values, and the Rust return value back into a Python object. // The `_py` argument represents that we're holding the GIL. #[pyfn(m, "sum_as_string")] fn sum_as_string_py(_py: Python, a: i64, b: i64) -> PyResult<String> { let out = sum_as_string(a, b); Ok(out) } Ok(()) } // logic implemented as a normal Rust function fn sum_as_string(a: i64, b: i64) -> String { format!("{}", a + b) } fn main() {}
The #[pymodule]
procedural macro attribute takes care of exporting the initialization function of your
module to Python. It can take as an argument the name of your module, which must be the name of the .so
or .pyd
file; the default is the Rust function's name.
If the name of the module (the default being the function name) does not match the name of the .so
or
.pyd
file, you will get an import error in Python with the following message:
ImportError: dynamic module does not define module export function (PyInit_name_of_your_module)
To import the module, either copy the shared library as described in the README
or use a tool, e.g. maturin develop
with maturin or
python setup.py develop
with setuptools-rust.
Documentation
The Rust doc comments of the module initialization function will be applied automatically as the Python docstring of your module.
import rust2py
print(rust2py.__doc__)
Which means that the above Python code will print This module is implemented in Rust.
.
Modules as objects
In Python, modules are first class objects. This means that you can store them as values or add them to dicts or other modules:
#![allow(unused)] fn main() { use pyo3::prelude::*; use pyo3::{wrap_pyfunction, wrap_pymodule}; use pyo3::types::IntoPyDict; #[pyfunction] fn subfunction() -> String { "Subfunction".to_string() } fn init_submodule(module: &PyModule) -> PyResult<()> { module.add_function(wrap_pyfunction!(subfunction, module)?)?; Ok(()) } #[pymodule] fn supermodule(py: Python, module: &PyModule) -> PyResult<()> { let submod = PyModule::new(py, "submodule")?; init_submodule(submod)?; module.add_submodule(submod)?; Ok(()) } Python::with_gil(|py| { let supermodule = wrap_pymodule!(supermodule)(py); let ctx = [("supermodule", supermodule)].into_py_dict(py); py.run("assert supermodule.submodule.subfunction() == 'Subfunction'", None, Some(&ctx)).unwrap(); }) }
This way, you can create a module hierarchy within a single extension module.
It is not necessary to add #[pymodule]
on nested modules, this is only required on the top-level module.
Python Functions
PyO3 supports two ways to define a free function in Python. Both require registering the function to a module.
One way is defining the function in the module definition, annotated with #[pyfn]
.
use pyo3::prelude::*; #[pymodule] fn rust2py(py: Python, m: &PyModule) -> PyResult<()> { #[pyfn(m, "sum_as_string")] fn sum_as_string_py(_py: Python, a:i64, b:i64) -> PyResult<String> { Ok(format!("{}", a + b)) } Ok(()) } fn main() {}
The other is annotating a function with #[pyfunction]
and then adding it
to the module using the wrap_pyfunction!
macro.
use pyo3::prelude::*; use pyo3::wrap_pyfunction; #[pyfunction] fn double(x: usize) -> usize { x * 2 } #[pymodule] fn module_with_functions(py: Python, m: &PyModule) -> PyResult<()> { m.add_function(wrap_pyfunction!(double, m)?).unwrap(); Ok(()) } fn main() {}
Argument parsing
Both the #[pyfunction]
and #[pyfn]
attributes support specifying details of
argument parsing. The details are given in the section "Method arguments" in
the Classes chapter. Here is an example for a function that accepts
arbitrary keyword arguments (**kwargs
in Python syntax) and returns the number
that was passed:
extern crate pyo3; use pyo3::prelude::*; use pyo3::wrap_pyfunction; use pyo3::types::PyDict; #[pyfunction(kwds="**")] fn num_kwds(kwds: Option<&PyDict>) -> usize { kwds.map_or(0, |dict| dict.len()) } #[pymodule] fn module_with_functions(py: Python, m: &PyModule) -> PyResult<()> { m.add_function(wrap_pyfunction!(num_kwds, m)?).unwrap(); Ok(()) } fn main() {}
Making the function signature available to Python
In order to make the function signature available to Python to be retrieved via
inspect.signature
, use the #[text_signature]
annotation as in the example
below. The /
signifies the end of positional-only arguments. (This
is not a feature of this library in particular, but the general format used by
CPython for annotating signatures of built-in functions.)
#![allow(unused)] fn main() { use pyo3::prelude::*; /// This function adds two unsigned 64-bit integers. #[pyfunction] #[text_signature = "(a, b, /)"] fn add(a: u64, b: u64) -> u64 { a + b } }
This also works for classes and methods:
#![allow(unused)] fn main() { use pyo3::prelude::*; use pyo3::types::PyType; // it works even if the item is not documented: #[pyclass] #[text_signature = "(c, d, /)"] struct MyClass {} #[pymethods] impl MyClass { // the signature for the constructor is attached // to the struct definition instead. #[new] fn new(c: i32, d: &str) -> Self { Self {} } // the self argument should be written $self #[text_signature = "($self, e, f)"] fn my_method(&self, e: i32, f: i32) -> i32 { e + f } #[classmethod] #[text_signature = "(cls, e, f)"] fn my_class_method(cls: &PyType, e: i32, f: i32) -> i32 { e + f } #[staticmethod] #[text_signature = "(e, f)"] fn my_static_method(e: i32, f: i32) -> i32 { e + f } } }
Making the function signature available to Python (old method)
Alternatively, simply make sure the first line of your docstring is
formatted like in the following example. Please note that the newline after the
--
is mandatory. The /
signifies the end of positional-only arguments.
#[text_signature]
should be preferred, since it will override automatically
generated signatures when those are added in a future version of PyO3.
#![allow(unused)] fn main() { use pyo3::prelude::*; /// add(a, b, /) /// -- /// /// This function adds two unsigned 64-bit integers. #[pyfunction] fn add(a: u64, b: u64) -> u64 { a + b } // a function with a signature but without docs. Both blank lines after the `--` are mandatory. /// sub(a, b, /) /// -- /// /// #[pyfunction] fn sub(a: u64, b: u64) -> u64 { a - b } }
When annotated like this, signatures are also correctly displayed in IPython.
>>> pyo3_test.add?
Signature: pyo3_test.add(a, b, /)
Docstring: This function adds two unsigned 64-bit integers.
Type: builtin_function_or_method
Closures
Currently, there are no conversions between Fn
s in Rust and callables in Python. This would
definitely be possible and very useful, so contributions are welcome. In the meantime, you can do
the following:
Calling Python functions in Rust
You can pass Python def
'd functions and built-in functions to Rust functions [PyFunction]
corresponds to regular Python functions while [PyCFunction]
describes built-ins such as
repr()
.
You can also use PyAny::is_callable
to check if you have a callable object. is_callable
will
return true
for functions (including lambdas), methods and objects with a __call__
method.
You can call the object with PyAny::call
with the args as first parameter and the kwargs
(or None
) as second parameter. There are also PyAny::call0
with no args and PyAny::call1
with only positional args.
Calling Rust functions in Python
If you have a static function, you can expose it with #[pyfunction]
and use wrap_pyfunction!
to get the corresponding [PyCFunction
]. For dynamic functions, e.g. lambdas and functions that
were passed as arguments, you must put them in some kind of owned container, e.g. a Box
.
(A long-term solution will be a special container similar to wasm-bindgen's Closure
). You can
then use a #[pyclass]
struct with that container as a field as a way to pass the function over
the FFI barrier. You can even make that class callable with __call__
so it looks like a function
in Python code.
Accessing the module of a function
It is possible to access the module of a #[pyfunction]
and #[pyfn]
in the
function body by passing the pass_module
argument to the attribute:
use pyo3::wrap_pyfunction; use pyo3::prelude::*; #[pyfunction(pass_module)] fn pyfunction_with_module(module: &PyModule) -> PyResult<&str> { module.name() } #[pymodule] fn module_with_fn(py: Python, m: &PyModule) -> PyResult<()> { m.add_function(wrap_pyfunction!(pyfunction_with_module, m)?) } fn main() {}
If pass_module
is set, the first argument must be the &PyModule
. It is then possible to use the module
in the function body.
The same works for #[pyfn]
:
use pyo3::wrap_pyfunction; use pyo3::prelude::*; #[pymodule] fn module_with_fn(py: Python, m: &PyModule) -> PyResult<()> { #[pyfn(m, "module_name", pass_module)] fn module_name(module: &PyModule) -> PyResult<&str> { module.name() } Ok(()) } fn main() {}
Accessing the FFI functions
In order to make Rust functions callable from Python, PyO3 generates a
extern "C" Fn(slf: *mut PyObject, args: *mut PyObject, kwargs: *mut PyObject) -> *mut Pyobject
function and embeds the call to the Rust function inside this FFI-wrapper function. This
wrapper handles extraction of the regular arguments and the keyword arguments from the input
PyObjects
. Since this function is not user-defined but required to build a PyCFunction
, PyO3
offers the raw_pycfunction!()
macro to get the identifier of this generated wrapper.
The wrap_pyfunction
macro can be used to directly get a PyCFunction
given a
#[pyfunction]
and a PyModule
: wrap_pyfunction!(rust_fun, module)
.
Python Classes
PyO3 exposes a group of attributes powered by Rust's proc macro system for defining Python classes as Rust structs. This chapter will discuss the functionality and configuration they offer.
For ease of discovery, below is a list of all custom attributes with links to the relevant section of this chapter:
Defining a new class
To define a custom Python class, a Rust struct needs to be annotated with the
#[pyclass]
attribute.
#![allow(unused)] fn main() { use pyo3::prelude::*; #[pyclass] struct MyClass { num: i32, debug: bool, } }
Because Python objects are freely shared between threads by the Python interpreter, all structs annotated with #[pyclass]
must implement Send
.
The above example generates implementations for PyTypeInfo
, PyTypeObject
, and PyClass
for MyClass
. To see these generated implementations, refer to the section How methods are implemented at the end of this chapter.
Adding the class to a module
Custom Python classes can then be added to a module using add_class()
.
#![allow(unused)] fn main() { use pyo3::prelude::*; #[pyclass] struct MyClass { num: i32, debug: bool, } #[pymodule] fn mymodule(_py: Python, m: &PyModule) -> PyResult<()> { m.add_class::<MyClass>()?; Ok(()) } }
PyCell and interior mutability
You sometimes need to convert your pyclass
into a Python object and access it
from Rust code (e.g., for testing it).
PyCell
is the primary interface for that.
PyCell<T: PyClass>
is always allocated in the Python heap, so Rust doesn't have ownership of it.
In other words, Rust code can only extract a &PyCell<T>
, not a PyCell<T>
.
Thus, to mutate data behind &PyCell
safely, PyO3 employs the
Interior Mutability Pattern
like RefCell
.
Users who are familiar with RefCell
can use PyCell
just like RefCell
.
For users who are not very familiar with RefCell
, here is a reminder of Rust's rules of borrowing:
- At any given time, you can have either (but not both of) one mutable reference or any number of immutable references.
- References must always be valid.
PyCell
, like RefCell
, ensures these borrowing rules by tracking references at runtime.
#![allow(unused)] fn main() { use pyo3::prelude::*; use pyo3::types::PyDict; #[pyclass] struct MyClass { #[pyo3(get)] num: i32, debug: bool, } let gil = Python::acquire_gil(); let py = gil.python(); let obj = PyCell::new(py, MyClass { num: 3, debug: true }).unwrap(); { let obj_ref = obj.borrow(); // Get PyRef assert_eq!(obj_ref.num, 3); // You cannot get PyRefMut unless all PyRefs are dropped assert!(obj.try_borrow_mut().is_err()); } { let mut obj_mut = obj.borrow_mut(); // Get PyRefMut obj_mut.num = 5; // You cannot get any other refs until the PyRefMut is dropped assert!(obj.try_borrow().is_err()); assert!(obj.try_borrow_mut().is_err()); } // You can convert `&PyCell` to a Python object pyo3::py_run!(py, obj, "assert obj.num == 5") }
&PyCell<T>
is bounded by the same lifetime as a GILGuard
.
To make the object longer lived (for example, to store it in a struct on the
Rust side), you can use Py<T>
, which stores an object longer than the GIL
lifetime, and therefore needs a Python<'_>
token to access.
#![allow(unused)] fn main() { use pyo3::prelude::*; #[pyclass] struct MyClass { num: i32, } fn return_myclass() -> Py<MyClass> { let gil = Python::acquire_gil(); let py = gil.python(); Py::new(py, MyClass { num: 1 }).unwrap() } let gil = Python::acquire_gil(); let obj = return_myclass(); let cell = obj.as_ref(gil.python()); // Py<MyClass>::as_ref returns &PyCell<MyClass> let obj_ref = cell.borrow(); // Get PyRef<T> assert_eq!(obj_ref.num, 1); }
Customizing the class
The #[pyclass]
macro accepts the following parameters:
name=XXX
- Set the class name shown in Python code. By default, the struct name is used as the class name.freelist=XXX
- Thefreelist
parameter adds support of free allocation list to custom class. The performance improvement applies to types that are often created and deleted in a row, so that they can benefit from a freelist.XXX
is a number of items for the free list.gc
- Classes with thegc
parameter participate in Python garbage collection. If a custom class contains references to other Python objects that can be collected, the [PyGCProtocol
] trait has to be implemented.weakref
- Adds support for Python weak references.extends=BaseType
- Use a custom base class. The baseBaseType
must implementPyTypeInfo
.subclass
- Allows Python classes to inherit from this class.dict
- Adds__dict__
support, so that the instances of this type have a dictionary containing arbitrary instance variables.unsendable
- Making it safe to expose!Send
structs to Python, where all object can be accessed by multiple threads. A class marked withunsendable
panics when accessed by another thread.module="XXX"
- Set the name of the module the class will be shown as defined in. If not given, the class will be a virtual member of thebuiltins
module.
Constructor
By default it is not possible to create an instance of a custom class from Python code.
To declare a constructor, you need to define a method and annotate it with the #[new]
attribute. Only Python's __new__
method can be specified, __init__
is not available.
#![allow(unused)] fn main() { use pyo3::prelude::*; #[pyclass] struct MyClass { num: i32, } #[pymethods] impl MyClass { #[new] fn new(num: i32) -> Self { MyClass { num } } } }
If no method marked with #[new]
is declared, object instances can only be
created from Rust, but not from Python.
For arguments, see the Method arguments
section below.
Return type
Generally, #[new]
method have to return T: Into<PyClassInitializer<Self>>
or
PyResult<T> where T: Into<PyClassInitializer<Self>>
.
For constructors that may fail, you should wrap the return type in a PyResult as well. Consult the table below to determine which type your constructor should return:
Cannot fail | May fail | |
---|---|---|
No inheritance | T | PyResult<T> |
Inheritance(T Inherits U) | (T, U) | PyResult<(T, U)> |
Inheritance(General Case) | PyClassInitializer<T> | PyResult<PyClassInitializer<T>> |
Inheritance
By default, PyAny
is used as the base class. To override this default,
use the extends
parameter for pyclass
with the full path to the base class.
For convenience, (T, U)
implements Into<PyClassInitializer<T>>
where U
is the
baseclass of T
.
But for more deeply nested inheritance, you have to return PyClassInitializer<T>
explicitly.
To get a parent class from a child, use PyRef
instead of &self
for methods,
or PyRefMut
instead of &mut self
.
Then you can access a parent class by self_.as_ref()
as &Self::BaseClass
,
or by self_.into_super()
as PyRef<Self::BaseClass>
.
#![allow(unused)] fn main() { use pyo3::prelude::*; #[pyclass] struct BaseClass { val1: usize, } #[pymethods] impl BaseClass { #[new] fn new() -> Self { BaseClass { val1: 10 } } pub fn method(&self) -> PyResult<usize> { Ok(self.val1) } } #[pyclass(extends=BaseClass)] struct SubClass { val2: usize, } #[pymethods] impl SubClass { #[new] fn new() -> (Self, BaseClass) { (SubClass { val2: 15 }, BaseClass::new()) } fn method2(self_: PyRef<Self>) -> PyResult<usize> { let super_ = self_.as_ref(); // Get &BaseClass super_.method().map(|x| x * self_.val2) } } #[pyclass(extends=SubClass)] struct SubSubClass { val3: usize, } #[pymethods] impl SubSubClass { #[new] fn new() -> PyClassInitializer<Self> { PyClassInitializer::from(SubClass::new()) .add_subclass(SubSubClass{val3: 20}) } fn method3(self_: PyRef<Self>) -> PyResult<usize> { let v = self_.val3; let super_ = self_.into_super(); // Get PyRef<SubClass> SubClass::method2(super_).map(|x| x * v) } } let gil = Python::acquire_gil(); let py = gil.python(); let subsub = pyo3::PyCell::new(py, SubSubClass::new()).unwrap(); pyo3::py_run!(py, subsub, "assert subsub.method3() == 3000") }
You can also inherit native types such as PyDict
, if they implement
PySizedLayout
.
However, because of some technical problems, we don't currently provide safe upcasting methods for types that inherit native types. Even in such cases, you can unsafely get a base class by raw pointer conversion.
#![allow(unused)] fn main() { use pyo3::prelude::*; use pyo3::types::PyDict; use pyo3::{AsPyPointer, PyNativeType}; use std::collections::HashMap; #[pyclass(extends=PyDict)] #[derive(Default)] struct DictWithCounter { counter: HashMap<String, usize>, } #[pymethods] impl DictWithCounter { #[new] fn new() -> Self { Self::default() } fn set(mut self_: PyRefMut<Self>, key: String, value: &PyAny) -> PyResult<()> { self_.counter.entry(key.clone()).or_insert(0); let py = self_.py(); let dict: &PyDict = unsafe { py.from_borrowed_ptr_or_err(self_.as_ptr())? }; dict.set_item(key, value) } } let gil = Python::acquire_gil(); let py = gil.python(); let cnt = pyo3::PyCell::new(py, DictWithCounter::new()).unwrap(); pyo3::py_run!(py, cnt, "cnt.set('abc', 10); assert cnt['abc'] == 10") }
If SubClass
does not provide a baseclass initialization, the compilation fails.
# use pyo3::prelude::*;
#[pyclass]
struct BaseClass {
val1: usize,
}
#[pyclass(extends=BaseClass)]
struct SubClass {
val2: usize,
}
#[pymethods]
impl SubClass {
#[new]
fn new() -> Self {
SubClass { val2: 15 }
}
}
Object properties
PyO3 supports two ways to add properties to your #[pyclass]
:
- For simple fields with no side effects, a
#[pyo3(get, set)]
attribute can be added directly to the field definition in the#[pyclass]
. - For properties which require computation you can define
#[getter]
and#[setter]
functions in the#[pymethods]
block.
We'll cover each of these in the following sections.
Object properties using #[pyo3(get, set)]
For simple cases where a member variable is just read and written with no side effects, you can declare getters and setters in your #[pyclass]
field definition using the pyo3
attribute, like in the example below:
#![allow(unused)] fn main() { use pyo3::prelude::*; #[pyclass] struct MyClass { #[pyo3(get, set)] num: i32 } }
The above would make the num
property available for reading and writing from Python code as self.num
.
Properties can be readonly or writeonly by using just #[pyo3(get)]
or #[pyo3(set)]
respectively.
To use these annotations, your field type must implement some conversion traits:
- For
get
the field type must implement bothIntoPy<PyObject>
andClone
. - For
set
the field type must implementFromPyObject
.
Object properties using #[getter]
and #[setter]
For cases which don't satisfy the #[pyo3(get, set)]
trait requirements, or need side effects, descriptor methods can be defined in a #[pymethods]
impl
block.
This is done using the #[getter]
and #[setter]
attributes, like in the example below:
#![allow(unused)] fn main() { use pyo3::prelude::*; #[pyclass] struct MyClass { num: i32, } #[pymethods] impl MyClass { #[getter] fn num(&self) -> PyResult<i32> { Ok(self.num) } } }
A getter or setter's function name is used as the property name by default. There are several ways how to override the name.
If a function name starts with get_
or set_
for getter or setter respectively,
the descriptor name becomes the function name with this prefix removed. This is also useful in case of
Rust keywords like type
(raw identifiers
can be used since Rust 2018).
#![allow(unused)] fn main() { use pyo3::prelude::*; #[pyclass] struct MyClass { num: i32, } #[pymethods] impl MyClass { #[getter] fn get_num(&self) -> PyResult<i32> { Ok(self.num) } #[setter] fn set_num(&mut self, value: i32) -> PyResult<()> { self.num = value; Ok(()) } } }
In this case, a property num
is defined and available from Python code as self.num
.
Both the #[getter]
and #[setter]
attributes accept one parameter.
If this parameter is specified, it is used as the property name, i.e.
#![allow(unused)] fn main() { use pyo3::prelude::*; #[pyclass] struct MyClass { num: i32, } #[pymethods] impl MyClass { #[getter(number)] fn num(&self) -> PyResult<i32> { Ok(self.num) } #[setter(number)] fn set_num(&mut self, value: i32) -> PyResult<()> { self.num = value; Ok(()) } } }
In this case, the property number
is defined and available from Python code as self.number
.
Instance methods
To define a Python compatible method, an impl
block for your struct has to be annotated with the
#[pymethods]
attribute. PyO3 generates Python compatible wrappers for all functions in this
block with some variations, like descriptors, class method static methods, etc.
Since Rust allows any number of impl
blocks, you can easily split methods
between those accessible to Python (and Rust) and those accessible only to Rust.
#![allow(unused)] fn main() { use pyo3::prelude::*; #[pyclass] struct MyClass { num: i32, } #[pymethods] impl MyClass { fn method1(&self) -> PyResult<i32> { Ok(10) } fn set_method(&mut self, value: i32) -> PyResult<()> { self.num = value; Ok(()) } } }
Calls to these methods are protected by the GIL, so both &self
and &mut self
can be used.
The return type must be PyResult<T>
or T
for some T
that implements IntoPy<PyObject>
;
the latter is allowed if the method cannot raise Python exceptions.
A Python
parameter can be specified as part of method signature, in this case the py
argument
gets injected by the method wrapper, e.g.
#![allow(unused)] fn main() { use pyo3::prelude::*; #[pyclass] struct MyClass { num: i32, debug: bool, } #[pymethods] impl MyClass { fn method2(&self, py: Python) -> PyResult<i32> { Ok(10) } } }
From the Python perspective, the method2
in this example does not accept any arguments.
Class methods
To create a class method for a custom class, the method needs to be annotated
with the #[classmethod]
attribute.
This is the equivalent of the Python decorator @classmethod
.
#![allow(unused)] fn main() { use pyo3::prelude::*; use pyo3::types::PyType; #[pyclass] struct MyClass { num: i32, debug: bool, } #[pymethods] impl MyClass { #[classmethod] fn cls_method(cls: &PyType) -> PyResult<i32> { Ok(10) } } }
Declares a class method callable from Python.
- The first parameter is the type object of the class on which the method is called. This may be the type object of a derived class.
- The first parameter implicitly has type
&PyType
. - For details on
parameter-list
, see the documentation ofMethod arguments
section. - The return type must be
PyResult<T>
orT
for someT
that implementsIntoPy<PyObject>
.
Static methods
To create a static method for a custom class, the method needs to be annotated with the
#[staticmethod]
attribute. The return type must be T
or PyResult<T>
for some T
that implements
IntoPy<PyObject>
.
#![allow(unused)] fn main() { use pyo3::prelude::*; #[pyclass] struct MyClass { num: i32, debug: bool, } #[pymethods] impl MyClass { #[staticmethod] fn static_method(param1: i32, param2: &str) -> PyResult<i32> { Ok(10) } } }
Class attributes
To create a class attribute (also called class variable), a method without
any arguments can be annotated with the #[classattr]
attribute. The return type must be T
for
some T
that implements IntoPy<PyObject>
.
#![allow(unused)] fn main() { use pyo3::prelude::*; #[pyclass] struct MyClass {} #[pymethods] impl MyClass { #[classattr] fn my_attribute() -> String { "hello".to_string() } } let gil = Python::acquire_gil(); let py = gil.python(); let my_class = py.get_type::<MyClass>(); pyo3::py_run!(py, my_class, "assert my_class.my_attribute == 'hello'") }
Note that unlike class variables defined in Python code, class attributes defined in Rust cannot be mutated at all:
// Would raise a `TypeError: can't set attributes of built-in/extension type 'MyClass'`
pyo3::py_run!(py, my_class, "my_class.my_attribute = 'foo'")
If the class attribute is defined with const
code only, one can also annotate associated
constants:
#![allow(unused)] fn main() { use pyo3::prelude::*; #[pyclass] struct MyClass {} #[pymethods] impl MyClass { #[classattr] const MY_CONST_ATTRIBUTE: &'static str = "foobar"; } }
Callable objects
To specify a custom __call__
method for a custom class, the method needs to be annotated with
the #[call]
attribute. Arguments of the method are specified as for instance methods.
#![allow(unused)] fn main() { use pyo3::prelude::*; use pyo3::types::PyTuple; #[pyclass] struct MyClass { num: i32, debug: bool, } #[pymethods] impl MyClass { #[call] #[args(args="*")] fn __call__(&self, args: &PyTuple) -> PyResult<i32> { println!("MyClass has been called"); Ok(self.num) } } }
Method arguments
By default, PyO3 uses function signatures to determine which arguments are required. Then it scans
the incoming args
and kwargs
parameters. If it can not find all required
parameters, it raises a TypeError
exception. It is possible to override the default behavior
with the #[args(...)]
attribute. This attribute accepts a comma separated list of parameters in
the form of attr_name="default value"
. Each parameter has to match the method parameter by name.
Each parameter can be one of the following types:
"*"
: var arguments separator, each parameter defined after"*"
is a keyword-only parameter. Corresponds to python'sdef meth(*, arg1.., arg2=..)
.args="*"
: "args" is var args, corresponds to Python'sdef meth(*args)
. Type of theargs
parameter has to be&PyTuple
.kwargs="**"
: "kwargs" receives keyword arguments, corresponds to Python'sdef meth(**kwargs)
. The type of thekwargs
parameter has to beOption<&PyDict>
.arg="Value"
: arguments with default value. Corresponds to Python'sdef meth(arg=Value)
. If thearg
argument is defined after var arguments, it is treated as a keyword-only argument. Note thatValue
has to be valid rust code, PyO3 just inserts it into the generated code unmodified.
Example:
#![allow(unused)] fn main() { use pyo3::prelude::*; use pyo3::types::{PyDict, PyTuple}; #[pyclass] struct MyClass { num: i32, debug: bool, } #[pymethods] impl MyClass { #[new] #[args(num = "-1", debug = "true")] fn new(num: i32, debug: bool) -> Self { MyClass { num, debug } } #[args( num = "10", debug = "true", py_args = "*", name = "\"Hello\"", py_kwargs = "**" )] fn method( &mut self, num: i32, debug: bool, name: &str, py_args: &PyTuple, py_kwargs: Option<&PyDict>, ) -> PyResult<String> { self.debug = debug; self.num = num; Ok(format!( "py_args={:?}, py_kwargs={:?}, name={}, num={}, debug={}", py_args, py_kwargs, name, self.num, self.debug )) } fn make_change(&mut self, num: i32, debug: bool) -> PyResult<String> { self.num = num; self.debug = debug; Ok(format!("num={}, debug={}", self.num, self.debug)) } } }
N.B. the position of the "*"
argument (if included) controls the system of handling positional and keyword arguments. In Python:
import mymodule
mc = mymodule.MyClass()
print(mc.method(44, False, "World", 666, x=44, y=55))
print(mc.method(num=-1, name="World"))
print(mc.make_change(44, False))
print(mc.make_change(debug=False, num=-1))
Produces output:
py_args=('World', 666), py_kwargs=Some({'x': 44, 'y': 55}), name=Hello, num=44, debug=false
py_args=(), py_kwargs=None, name=World, num=-1, debug=true
num=44, debug=false
num=-1, debug=false
How methods are implemented
Users should be able to define a #[pyclass]
with or without #[pymethods]
, while PyO3 needs a
trait with a function that returns all methods. Since it's impossible to make the code generation in
pyclass dependent on whether there is an impl block, we'd need to implement the trait on
#[pyclass]
and override the implementation in #[pymethods]
.
To enable this, we use a static registry type provided by inventory,
which allows us to collect impl
s from arbitrary source code by exploiting some binary trick.
See inventory: how it works and pyo3_derive_backend::py_class
for more details.
Also for #[pyproto]
, we use a similar, but more task-specific registry and
initialize it using the ctor crate.
Specifically, the following implementation is generated:
#![allow(unused)] fn main() { use pyo3::prelude::*; /// Class for demonstration struct MyClass { num: i32, debug: bool, } impl pyo3::pyclass::PyClassAlloc for MyClass {} unsafe impl pyo3::PyTypeInfo for MyClass { type Type = MyClass; type BaseType = PyAny; type BaseLayout = pyo3::pycell::PyCellBase<PyAny>; type Layout = PyCell<Self>; type Initializer = PyClassInitializer<Self>; type AsRefTarget = PyCell<Self>; const NAME: &'static str = "MyClass"; const MODULE: Option<&'static str> = None; const DESCRIPTION: &'static str = "Class for demonstration"; const FLAGS: usize = 0; #[inline] fn type_object_raw(py: pyo3::Python) -> *mut pyo3::ffi::PyTypeObject { use pyo3::type_object::LazyStaticType; static TYPE_OBJECT: LazyStaticType = LazyStaticType::new(); TYPE_OBJECT.get_or_init::<Self>(py) } } impl pyo3::pyclass::PyClass for MyClass { type Dict = pyo3::pyclass_slots::PyClassDummySlot; type WeakRef = pyo3::pyclass_slots::PyClassDummySlot; type BaseNativeType = PyAny; } impl pyo3::IntoPy<PyObject> for MyClass { fn into_py(self, py: pyo3::Python) -> pyo3::PyObject { pyo3::IntoPy::into_py(pyo3::Py::new(py, self).unwrap(), py) } } pub struct Pyo3MethodsInventoryForMyClass { methods: Vec<pyo3::class::PyMethodDefType>, } impl pyo3::class::methods::PyMethodsInventory for Pyo3MethodsInventoryForMyClass { fn new(methods: Vec<pyo3::class::PyMethodDefType>) -> Self { Self { methods } } fn get(&'static self) -> &'static [pyo3::class::PyMethodDefType] { &self.methods } } impl pyo3::class::methods::HasMethodsInventory for MyClass { type Methods = Pyo3MethodsInventoryForMyClass; } pyo3::inventory::collect!(Pyo3MethodsInventoryForMyClass); impl pyo3::class::proto_methods::HasProtoRegistry for MyClass { fn registry() -> &'static pyo3::class::proto_methods::PyProtoRegistry { static REGISTRY: pyo3::class::proto_methods::PyProtoRegistry = pyo3::class::proto_methods::PyProtoRegistry::new(); ®ISTRY } } impl pyo3::pyclass::PyClassSend for MyClass { type ThreadChecker = pyo3::pyclass::ThreadCheckerStub<MyClass>; } let gil = Python::acquire_gil(); let py = gil.python(); let cls = py.get_type::<MyClass>(); pyo3::py_run!(py, cls, "assert cls.__name__ == 'MyClass'") }
Class customizations
Python's object model defines several protocols for different object behavior, like sequence,
mapping or number protocols. PyO3 defines separate traits for each of them. To provide specific
Python object behavior, you need to implement the specific trait for your struct. Important note,
each protocol implementation block has to be annotated with the #[pyproto]
attribute.
All #[pyproto]
methods which can be defined below can return T
instead of PyResult<T>
if the
method implementation is infallible. In addition, if the return type is ()
, it can be omitted altogether.
Basic object customization
The PyObjectProtocol
trait provides several basic customizations.
Attribute access
To customize object attribute access, define the following methods:
fn __getattr__(&self, name: FromPyObject) -> PyResult<impl IntoPy<PyObject>>
fn __setattr__(&mut self, name: FromPyObject, value: FromPyObject) -> PyResult<()>
fn __delattr__(&mut self, name: FromPyObject) -> PyResult<()>
Each method corresponds to Python's self.attr
, self.attr = value
and del self.attr
code.
String Conversions
-
fn __repr__(&self) -> PyResult<impl ToPyObject<ObjectType=PyString>>
-
fn __str__(&self) -> PyResult<impl ToPyObject<ObjectType=PyString>>
Possible return types for
__str__
and__repr__
arePyResult<String>
orPyResult<PyString>
. -
fn __bytes__(&self) -> PyResult<PyBytes>
Provides the conversion to
bytes
. -
fn __format__(&self, format_spec: &str) -> PyResult<impl ToPyObject<ObjectType=PyString>>
Special method that is used by the
format()
builtin and thestr.format()
method. Possible return types arePyResult<String>
orPyResult<PyString>
.
Comparison operators
-
fn __richcmp__(&self, other: impl FromPyObject, op: CompareOp) -> PyResult<impl ToPyObject>
Overloads Python comparison operations (
==
,!=
,<
,<=
,>
, and>=
). Theop
argument indicates the comparison operation being performed. The return type will normally bePyResult<bool>
, but any Python object can be returned. Ifother
is not of the type specified in the signature, the generated code will automaticallyreturn NotImplemented
. -
fn __hash__(&self) -> PyResult<impl PrimInt>
Objects that compare equal must have the same hash value. The return type must be
PyResult<T>
whereT
is one of Rust's primitive integer types.
Other methods
-
fn __bool__(&self) -> PyResult<bool>
Determines the "truthyness" of the object.
Emulating numeric types
The [PyNumberProtocol
] trait allows emulate numeric types.
fn __add__(lhs: impl FromPyObject, rhs: impl FromPyObject) -> PyResult<impl ToPyObject>
fn __sub__(lhs: impl FromPyObject, rhs: impl FromPyObject) -> PyResult<impl ToPyObject>
fn __mul__(lhs: impl FromPyObject, rhs: impl FromPyObject) -> PyResult<impl ToPyObject>
fn __matmul__(lhs: impl FromPyObject, rhs: impl FromPyObject) -> PyResult<impl ToPyObject>
fn __truediv__(lhs: impl FromPyObject, rhs: impl FromPyObject) -> PyResult<impl ToPyObject>
fn __floordiv__(lhs: impl FromPyObject, rhs: impl FromPyObject) -> PyResult<impl ToPyObject>
fn __mod__(lhs: impl FromPyObject, rhs: impl FromPyObject) -> PyResult<impl ToPyObject>
fn __divmod__(lhs: impl FromPyObject, rhs: impl FromPyObject) -> PyResult<impl ToPyObject>
fn __pow__(lhs: impl FromPyObject, rhs: impl FromPyObject, modulo: Option<impl FromPyObject>) -> PyResult<impl ToPyObject>
fn __lshift__(lhs: impl FromPyObject, rhs: impl FromPyObject) -> PyResult<impl ToPyObject>
fn __rshift__(lhs: impl FromPyObject, rhs: impl FromPyObject) -> PyResult<impl ToPyObject>
fn __and__(lhs: impl FromPyObject, rhs: impl FromPyObject) -> PyResult<impl ToPyObject>
fn __or__(lhs: impl FromPyObject, rhs: impl FromPyObject) -> PyResult<impl ToPyObject>
fn __xor__(lhs: impl FromPyObject, rhs: impl FromPyObject) -> PyResult<impl ToPyObject>
These methods are called to implement the binary arithmetic operations
(+
, -
, *
, @
, /
, //
, %
, divmod()
, pow()
and **
, <<
, >>
, &
, ^
, and |
).
If rhs
is not of the type specified in the signature, the generated code
will automatically return NotImplemented
. This is not the case for lhs
which must match signature or else raise a TypeError.
The reflected operations are also available:
fn __radd__(lhs: impl FromPyObject, rhs: impl FromPyObject) -> PyResult<impl ToPyObject>
fn __rsub__(lhs: impl FromPyObject, rhs: impl FromPyObject) -> PyResult<impl ToPyObject>
fn __rmul__(lhs: impl FromPyObject, rhs: impl FromPyObject) -> PyResult<impl ToPyObject>
fn __rmatmul__(lhs: impl FromPyObject, rhs: impl FromPyObject) -> PyResult<impl ToPyObject>
fn __rtruediv__(lhs: impl FromPyObject, rhs: impl FromPyObject) -> PyResult<impl ToPyObject>
fn __rfloordiv__(lhs: impl FromPyObject, rhs: impl FromPyObject) -> PyResult<impl ToPyObject>
fn __rmod__(lhs: impl FromPyObject, rhs: impl FromPyObject) -> PyResult<impl ToPyObject>
fn __rdivmod__(lhs: impl FromPyObject, rhs: impl FromPyObject) -> PyResult<impl ToPyObject>
fn __rpow__(lhs: impl FromPyObject, rhs: impl FromPyObject, modulo: Option<impl FromPyObject>) -> PyResult<impl ToPyObject>
fn __rlshift__(lhs: impl FromPyObject, rhs: impl FromPyObject) -> PyResult<impl ToPyObject>
fn __rrshift__(lhs: impl FromPyObject, rhs: impl FromPyObject) -> PyResult<impl ToPyObject>
fn __rand__(lhs: impl FromPyObject, rhs: impl FromPyObject) -> PyResult<impl ToPyObject>
fn __ror__(lhs: impl FromPyObject, rhs: impl FromPyObject) -> PyResult<impl ToPyObject>
fn __rxor__(lhs: impl FromPyObject, rhs: impl FromPyObject) -> PyResult<impl ToPyObject>
The code generated for these methods expect that all arguments match the signature, or raise a TypeError.
Note: Currently implementing the method for a binary arithmetic operations
(e.g, __add__
) shadows the reflected operation (e.g, __radd__
). This is
being addressed in #844. to make
these methods
This trait also has support the augmented arithmetic assignments (+=
, -=
,
*=
, @=
, /=
, //=
, %=
, **=
, <<=
, >>=
, &=
, ^=
, |=
):
fn __iadd__(&'p mut self, other: impl FromPyObject) -> PyResult<()>
fn __isub__(&'p mut self, other: impl FromPyObject) -> PyResult<()>
fn __imul__(&'p mut self, other: impl FromPyObject) -> PyResult<()>
fn __imatmul__(&'p mut self, other: impl FromPyObject) -> PyResult<()>
fn __itruediv__(&'p mut self, other: impl FromPyObject) -> PyResult<()>
fn __ifloordiv__(&'p mut self, other: impl FromPyObject) -> PyResult<()>
fn __imod__(&'p mut self, other: impl FromPyObject) -> PyResult<()>
fn __ipow__(&'p mut self, other: impl FromPyObject) -> PyResult<()>
fn __ilshift__(&'p mut self, other: impl FromPyObject) -> PyResult<()>
fn __irshift__(&'p mut self, other: impl FromPyObject) -> PyResult<()>
fn __iand__(&'p mut self, other: impl FromPyObject) -> PyResult<()>
fn __ior__(&'p mut self, other: impl FromPyObject) -> PyResult<()>
fn __ixor__(&'p mut self, other: impl FromPyObject) -> PyResult<()>
The following methods implement the unary arithmetic operations (-
, +
, abs()
and ~
):
fn __neg__(&'p self) -> PyResult<impl ToPyObject>
fn __pos__(&'p self) -> PyResult<impl ToPyObject>
fn __abs__(&'p self) -> PyResult<impl ToPyObject>
fn __invert__(&'p self) -> PyResult<impl ToPyObject>
Support for coercions:
fn __complex__(&'p self) -> PyResult<impl ToPyObject>
fn __int__(&'p self) -> PyResult<impl ToPyObject>
fn __float__(&'p self) -> PyResult<impl ToPyObject>
Other:
fn __index__(&'p self) -> PyResult<impl ToPyObject>
fn __round__(&'p self, ndigits: Option<impl FromPyObject>) -> PyResult<impl ToPyObject>
Garbage Collector Integration
If your type owns references to other Python objects, you will need to
integrate with Python's garbage collector so that the GC is aware of
those references.
To do this, implement the PyGCProtocol
trait for your struct.
It includes two methods __traverse__
and __clear__
.
These correspond to the slots tp_traverse
and tp_clear
in the Python C API.
__traverse__
must call visit.call()
for each reference to another Python object.
__clear__
must clear out any mutable references to other Python objects
(thus breaking reference cycles). Immutable references do not have to be cleared,
as every cycle must contain at least one mutable reference.
Example:
#![allow(unused)] fn main() { extern crate pyo3; use pyo3::prelude::*; use pyo3::PyTraverseError; use pyo3::gc::{PyGCProtocol, PyVisit}; #[pyclass] struct ClassWithGCSupport { obj: Option<PyObject>, } #[pyproto] impl PyGCProtocol for ClassWithGCSupport { fn __traverse__(&self, visit: PyVisit) -> Result<(), PyTraverseError> { if let Some(ref obj) = self.obj { visit.call(obj)? } Ok(()) } fn __clear__(&mut self) { // Clear reference, this decrements ref counter. self.obj = None; } } }
Special protocol trait implementations have to be annotated with the #[pyproto]
attribute.
It is also possible to enable GC for custom classes using the gc
parameter of the pyclass
attribute.
i.e. #[pyclass(gc)]
. In that case instances of custom class participate in Python garbage
collection, and it is possible to track them with gc
module methods. When using the gc
parameter,
it is required to implement the PyGCProtocol
trait, failure to do so will result in an error
at compile time:
#[pyclass(gc)]
struct GCTracked {} // Fails because it does not implement PyGCProtocol
Iterator Types
Iterators can be defined using the
PyIterProtocol
trait.
It includes two methods __iter__
and __next__
:
fn __iter__(slf: PyRefMut<Self>) -> PyResult<impl IntoPy<PyObject>>
fn __next__(slf: PyRefMut<Self>) -> PyResult<Option<impl IntoPy<PyObject>>>
Returning None
from __next__
indicates that that there are no further items.
These two methods can be take either PyRef<Self>
or PyRefMut<Self>
as their
first argument, so that mutable borrow can be avoided if needed.
Example:
#![allow(unused)] fn main() { use pyo3::prelude::*; use pyo3::PyIterProtocol; #[pyclass] struct MyIterator { iter: Box<Iterator<Item = PyObject> + Send>, } #[pyproto] impl PyIterProtocol for MyIterator { fn __iter__(slf: PyRef<Self>) -> PyRef<Self> { slf } fn __next__(mut slf: PyRefMut<Self>) -> Option<PyObject> { slf.iter.next() } } }
In many cases you'll have a distinction between the type being iterated over (i.e. the iterable) and the iterator it
provides. In this case, you should implement PyIterProtocol
for both the iterable and the iterator, but the iterable
only needs to support __iter__()
while the iterator must support both __iter__()
and __next__()
. The default
implementations in PyIterProtocol
will ensure that the objects behave correctly in Python. For example:
#![allow(unused)] fn main() { use pyo3::prelude::*; use pyo3::PyIterProtocol; #[pyclass] struct Iter { inner: std::vec::IntoIter<usize>, } #[pyproto] impl PyIterProtocol for Iter { fn __iter__(slf: PyRef<Self>) -> PyRef<Self> { slf } fn __next__(mut slf: PyRefMut<Self>) -> Option<usize> { slf.inner.next() } } #[pyclass] struct Container { iter: Vec<usize>, } #[pyproto] impl PyIterProtocol for Container { fn __iter__(slf: PyRef<Self>) -> PyResult<Py<Iter>> { let iter = Iter { inner: slf.iter.clone().into_iter(), }; Py::new(slf.py(), iter) } } let gil = Python::acquire_gil(); let py = gil.python(); let inst = pyo3::PyCell::new( py, Container { iter: vec![1, 2, 3, 4], }, ) .unwrap(); pyo3::py_run!(py, inst, "assert list(inst) == [1, 2, 3, 4]"); pyo3::py_run!(py, inst, "assert list(iter(iter(inst))) == [1, 2, 3, 4]"); }
For more details on Python's iteration protocols, check out the "Iterator Types" section of the library documentation.
Returning a value from iteration
This guide has so far shown how to use Option<T>
to implement yielding values during iteration.
In Python a generator can also return a value. To express this in Rust, PyO3 provides the
IterNextOutput
enum to
both Yield
values and Return
a final value - see its docs for further details and an example.
Type Conversions
In this portion of the guide we'll talk about the mapping of Python types to Rust types offered by PyO3, as well as the traits available to perform conversions between them.
Mapping of Rust types to Python types
When writing functions callable from Python (such as a #[pyfunction]
or in a #[pymethods]
block), the trait FromPyObject
is required for function arguments, and IntoPy<PyObject>
is required for function return values.
Consult the tables in the following section to find the Rust types provided by PyO3 which implement these traits.
Argument Types
When accepting a function argument, it is possible to either use Rust library types or PyO3's Python-native types. (See the next section for discussion on when to use each.)
The table below contains the Python type and the corresponding function argument types that will accept them:
Python | Rust | Rust (Python-native) |
---|---|---|
object | - | &PyAny |
str | String , Cow<str> , &str | &PyUnicode |
bytes | Vec<u8> , &[u8] | &PyBytes |
bool | bool | &PyBool |
int | Any integer type (i32 , u32 , usize , etc) | &PyLong |
float | f32 , f64 | &PyFloat |
complex | num_complex::Complex 1 | &PyComplex |
list[T] | Vec<T> | &PyList |
dict[K, V] | HashMap<K, V> , BTreeMap<K, V> , hashbrown::HashMap<K, V> 2 | &PyDict |
tuple[T, U] | (T, U) , Vec<T> | &PyTuple |
set[T] | HashSet<T> , BTreeSet<T> , hashbrown::HashSet<T> 2 | &PySet |
frozenset[T] | HashSet<T> , BTreeSet<T> , hashbrown::HashSet<T> 2 | &PyFrozenSet |
bytearray | Vec<u8> | &PyByteArray |
slice | - | &PySlice |
type | - | &PyType |
module | - | &PyModule |
datetime.datetime | - | &PyDateTime |
datetime.date | - | &PyDate |
datetime.time | - | &PyTime |
datetime.tzinfo | - | &PyTzInfo |
datetime.timedelta | - | &PyDelta |
typing.Optional[T] | Option<T> | - |
typing.Sequence[T] | Vec<T> | &PySequence |
typing.Iterator[Any] | - | &PyIterator |
typing.Union[...] | See #[derive(FromPyObject)] | - |
There are also a few special types related to the GIL and Rust-defined #[pyclass]
es which may come in useful:
What | Description |
---|---|
Python | A GIL token, used to pass to PyO3 constructors to prove ownership of the GIL |
Py<T> | A Python object isolated from the GIL lifetime. This can be sent to other threads. |
PyObject | An alias for Py<PyAny> |
&PyCell<T> | A #[pyclass] value owned by Python. |
PyRef<T> | A #[pyclass] borrowed immutably. |
PyRefMut<T> | A #[pyclass] borrowed mutably. |
For more detail on accepting #[pyclass]
values as function arguments, see the section of this guide on Python Classes.
Using Rust library types vs Python-native types
Using Rust library types as function arguments will incur a conversion cost compared to using the Python-native types. Using the Python-native types is almost zero-cost (they just require a type check similar to the Python builtin function isinstance()
).
However, once that conversion cost has been paid, the Rust standard library types offer a number of benefits:
- You can write functionality in native-speed Rust code (free of Python's runtime costs).
- You get better interoperability with the rest of the Rust ecosystem.
- You can use
Python::allow_threads
to release the Python GIL and let other Python threads make progress while your Rust code is executing. - You also benefit from stricter type checking. For example you can specify
Vec<i32>
, which will only accept a Pythonlist
containing integers. The Python-native equivalent,&PyList
, would accept a Pythonlist
containing Python objects of any type.
For most PyO3 usage the conversion cost is worth paying to get these benefits. As always, if you're not sure it's worth it in your case, benchmark it!
Returning Rust values to Python
When returning values from functions callable from Python, Python-native types (&PyAny
, &PyDict
etc.) can be used with zero cost.
Because these types are references, in some situations the Rust compiler may ask for lifetime annotations. If this is the case, you should use Py<PyAny>
, Py<PyDict>
etc. instead - which are also zero-cost. For all of these Python-native types T
, Py<T>
can be created from T
with an .into()
conversion.
If your function is fallible, it should return PyResult<T>
or Result<T, E>
where E
implements From<E> for PyErr
. This will raise a Python
exception if the Err
variant is returned.
Finally, the following Rust types are also able to convert to Python as return values:
Rust type | Resulting Python Type |
---|---|
String | str |
&str | str |
bool | bool |
Any integer type (i32 , u32 , usize , etc) | int |
f32 , f64 | float |
Option<T> | Optional[T] |
(T, U) | Tuple[T, U] |
Vec<T> | List[T] |
HashMap<K, V> | Dict[K, V] |
BTreeMap<K, V> | Dict[K, V] |
HashSet<T> | Set[T] |
BTreeSet<T> | Set[T] |
&PyCell<T: PyClass> | T |
PyRef<T: PyClass> | T |
PyRefMut<T: PyClass> | T |
Requires the num-complex
optional feature.
Requires the hashbrown
optional feature.
Conversion traits
PyO3 provides some handy traits to convert between Python types and Rust types.
.extract()
and the FromPyObject
trait
The easiest way to convert a Python object to a Rust value is using
.extract()
. It returns a PyResult
with a type error if the conversion
fails, so usually you will use something like
let v: Vec<i32> = obj.extract()?;
This method is available for many Python object types, and can produce a wide
variety of Rust types, which you can check out in the implementor list of
FromPyObject
.
FromPyObject
is also implemented for your own Rust types wrapped as Python
objects (see the chapter about classes). There, in order to both be
able to operate on mutable references and satisfy Rust's rules of non-aliasing
mutable references, you have to extract the PyO3 reference wrappers PyRef
and PyRefMut
. They work like the reference wrappers of
std::cell::RefCell
and ensure (at runtime) that Rust borrows are allowed.
Deriving FromPyObject
FromPyObject
can be automatically derived for many kinds of structs and enums
if the member types themselves implement FromPyObject
. This even includes members
with a generic type T: FromPyObject
. Derivation for empty enums, enum variants and
structs is not supported.
Deriving FromPyObject
for structs
use pyo3::prelude::*;
#[derive(FromPyObject)]
struct RustyStruct {
my_string: String,
}
The derivation generates code that will per default access the attribute my_string
on
the Python object, i.e. obj.getattr("my_string")
, and call extract()
on the attribute.
It is also possible to access the value on the Python object through obj.get_item("my_string")
by setting the attribute pyo3(item)
on the field:
use pyo3::prelude::*;
#[derive(FromPyObject)]
struct RustyStruct {
#[pyo3(item)]
my_string: String,
}
The argument passed to getattr
and get_item
can also be configured:
use pyo3::prelude::*;
#[derive(FromPyObject)]
struct RustyStruct {
#[pyo3(item("key"))]
string_in_mapping: String,
#[pyo3(attribute("name"))]
string_attr: String,
}
This tries to extract string_attr
from the attribute name
and string_in_mapping
from a mapping with the key "key"
. The arguments for attribute
are restricted to
non-empty string literals while item
can take any valid literal that implements
ToBorrowedObject
.
Deriving FromPyObject
for tuple structs
Tuple structs are also supported but do not allow customizing the extraction. The input is
always assumed to be a Python tuple with the same length as the Rust type, the n
th field
is extracted from the n
th item in the Python tuple.
use pyo3::prelude::*;
#[derive(FromPyObject)]
struct RustyTuple(String, String);
Tuple structs with a single field are treated as wrapper types which are described in the following section. To override this behaviour and ensure that the input is in fact a tuple, specify the struct as
use pyo3::prelude::*;
#[derive(FromPyObject)]
struct RustyTuple((String,));
Deriving FromPyObject
for wrapper types
The pyo3(transparent)
attribute can be used on structs with exactly one field. This results
in extracting directly from the input object, i.e. obj.extract()
, rather than trying to access
an item or attribute. This behaviour is enabled per default for newtype structs and tuple-variants
with a single field.
use pyo3::prelude::*;
#[derive(FromPyObject)]
struct RustyTransparentTupleStruct(String);
#[derive(FromPyObject)]
#[pyo3(transparent)]
struct RustyTransparentStruct {
inner: String,
}
Deriving FromPyObject
for enums
The FromPyObject
derivation for enums generates code that tries to extract the variants in the
order of the fields. As soon as a variant can be extracted succesfully, that variant is returned.
This makes it possible to extract Python types like Union[str, int]
.
The same customizations and restrictions described for struct derivations apply to enum variants,
i.e. a tuple variant assumes that the input is a Python tuple, and a struct variant defaults to
extracting fields as attributes but can be configured in the same manner. The transparent
attribute can be applied to single-field-variants.
use pyo3::prelude::*;
#[derive(FromPyObject)]
enum RustyEnum<'a> {
Int(usize), // input is a positive int
String(String), // input is a string
IntTuple(usize, usize), // input is a 2-tuple with positive ints
StringIntTuple(String, usize), // input is a 2-tuple with String and int
Coordinates3d { // needs to be in front of 2d
x: usize,
y: usize,
z: usize,
},
Coordinates2d { // only gets checked if the input did not have `z`
#[pyo3(attribute("x"))]
a: usize,
#[pyo3(attribute("y"))]
b: usize,
},
#[pyo3(transparent)]
CatchAll(&'a PyAny), // This extraction never fails
}
If none of the enum variants match, a PyValueError
containing the names of the
tested variants is returned. The names reported in the error message can be customized
through the pyo3(annotation = "name")
attribute, e.g. to use conventional Python type
names:
use pyo3::prelude::*;
#[derive(FromPyObject)]
enum RustyEnum {
#[pyo3(transparent, annotation = "str")]
String(String),
#[pyo3(transparent, annotation = "int")]
Int(isize),
}
If the input is neither a string nor an integer, the error message will be:
"Can't convert <INPUT> to Union[str, int]"
, where <INPUT>
is replaced by the type name and
repr()
of the input object.
#[derive(FromPyObject)]
Container Attributes
pyo3(transparent)
- extract the field directly from the object as
obj.extract()
instead ofget_item()
orgetattr()
- Newtype structs and tuple-variants are treated as transparent per default.
- only supported for single-field structs and enum variants
- extract the field directly from the object as
pyo3(annotation = "name")
- changes the name of the failed variant in the generated error message in case of failure.
- e.g.
pyo3("int")
reports the variant's type asint
. - only supported for enum variants
#[derive(FromPyObject)]
Field Attributes
pyo3(attribute)
,pyo3(attribute("name"))
- retrieve the field from an attribute, possibly with a custom name specified as an argument
- argument must be a string-literal.
pyo3(item)
,pyo3(item("key"))
- retrieve the field from a mapping, possibly with the custom key specified as an argument.
- can be any literal that implements
ToBorrowedObject
IntoPy<T>
This trait defines the to-python conversion for a Rust type. It is usually implemented as
IntoPy<PyObject>
, which is the trait needed for returning a value from #[pyfunction]
and
#[pymethods]
.
All types in PyO3 implement this trait, as does a #[pyclass]
which doesn't use extends
.
Occasionally you may choose to implement this for custom types which are mapped to Python types without having a unique python type.
use pyo3::prelude::*;
struct MyPyObjectWrapper(PyObject);
impl IntoPy<PyObject> for MyPyObjectWrapper {
fn into_py(self, py: Python) -> PyObject {
self.0
}
}
The ToPyObject
trait
ToPyObject
is a conversion trait that allows various objects to be
converted into PyObject
. IntoPy<PyObject>
serves the
same purpose, except that it consumes self
.
*args
and **kwargs
for Python object calls
There are several ways how to pass positional and keyword arguments to a Python object call.
PyAny
provides two methods:
call
- call any callable Python object.call_method
- call a specific method on the object, shorthand forget_attr
thencall
.
Both methods need args
and kwargs
arguments, but there are variants for less
complex calls, such as call1
for only args
and call0
for no arguments at all.
use pyo3::prelude::*; use pyo3::types::{PyDict, PyTuple}; struct SomeObject; impl SomeObject { fn new(py: Python) -> PyObject { PyDict::new(py).to_object(py) } } fn main() { let arg1 = "arg1"; let arg2 = "arg2"; let arg3 = "arg3"; let gil = Python::acquire_gil(); let py = gil.python(); let obj = SomeObject::new(py); // call object without empty arguments obj.call0(py); // call object with PyTuple let args = PyTuple::new(py, &[arg1, arg2, arg3]); obj.call1(py, args); // pass arguments as rust tuple let args = (arg1, arg2, arg3); obj.call1(py, args); }
kwargs
can be None
or Some(&PyDict)
. You can use the
IntoPyDict
trait to convert other dict-like containers,
e.g. HashMap
or BTreeMap
, as well as tuples with up to 10 elements and
Vec
s where each element is a two-element tuple.
use pyo3::prelude::*; use pyo3::types::{IntoPyDict, PyDict}; use std::collections::HashMap; struct SomeObject; impl SomeObject { fn new(py: Python) -> PyObject { PyDict::new(py).to_object(py) } } fn main() { let key1 = "key1"; let val1 = 1; let key2 = "key2"; let val2 = 2; let gil = Python::acquire_gil(); let py = gil.python(); let obj = SomeObject::new(py); // call object with PyDict let kwargs = [(key1, val1)].into_py_dict(py); obj.call(py, (), Some(kwargs)); // pass arguments as Vec let kwargs = vec![(key1, val1), (key2, val2)]; obj.call(py, (), Some(kwargs.into_py_dict(py))); // pass arguments as HashMap let mut kwargs = HashMap::<&str, i32>::new(); kwargs.insert(key1, 1); obj.call(py, (), Some(kwargs.into_py_dict(py))); }
Python Exceptions
Defining a new exception
You can use the create_exception!
macro to define a new exception type:
#![allow(unused)] fn main() { use pyo3::create_exception; create_exception!(module, MyError, pyo3::exceptions::PyException); }
module
is the name of the containing module.MyError
is the name of the new exception type.
For example:
use pyo3::prelude::*; use pyo3::create_exception; use pyo3::types::IntoPyDict; use pyo3::exceptions::PyException; create_exception!(mymodule, CustomError, PyException); fn main() { let gil = Python::acquire_gil(); let py = gil.python(); let ctx = [("CustomError", py.get_type::<CustomError>())].into_py_dict(py); py.run("assert str(CustomError) == \"<class 'mymodule.CustomError'>\"", None, Some(&ctx)).unwrap(); py.run("assert CustomError('oops').args == ('oops',)", None, Some(&ctx)).unwrap(); }
When using PyO3 to create an extension module, you can add the new exception to the module like this, so that it is importable from Python:
create_exception!(mymodule, CustomError, PyException);
#[pymodule]
fn mymodule(py: Python, m: &PyModule) -> PyResult<()> {
// ... other elements added to module ...
m.add("CustomError", py.get_type::<CustomError>())?;
Ok(())
}
Raising an exception
To raise an exception, first you need to obtain an exception type and construct a new PyErr
, then call the PyErr::restore
method to write the exception back to the Python interpreter's global state.
use pyo3::{Python, PyErr}; use pyo3::exceptions::PyTypeError; fn main() { let gil = Python::acquire_gil(); let py = gil.python(); PyTypeError::new_err("Error").restore(py); assert!(PyErr::occurred(py)); drop(PyErr::fetch(py)); }
From pyfunction
s and pyclass
methods, returning an Err(PyErr)
is enough;
PyO3 will handle restoring the exception on the Python interpreter side.
If you already have a Python exception instance, you can simply call PyErr::from_instance
.
PyErr::from_instance(py, err).restore(py);
If a Rust type exists for the exception, then it is possible to use the new_err
method.
For example, each standard exception defined in the pyo3::exceptions
module
has a corresponding Rust type, exceptions defined by create_exception!
and import_exception!
macro
have Rust types as well.
#![allow(unused)] fn main() { use pyo3::exceptions::PyValueError; use pyo3::prelude::*; fn check_for_error() -> bool {false} fn my_func(arg: PyObject) -> PyResult<()> { if check_for_error() { Err(PyValueError::new_err("argument is wrong")) } else { Ok(()) } } }
Checking exception types
Python has an isinstance
method to check an object's type,
in PyO3 there is a Python::is_instance
method which does the same thing.
use pyo3::Python; use pyo3::types::{PyBool, PyList}; fn main() { let gil = Python::acquire_gil(); let py = gil.python(); assert!(py.is_instance::<PyBool, _>(PyBool::new(py, true)).unwrap()); let list = PyList::new(py, &[1, 2, 3, 4]); assert!(!py.is_instance::<PyBool, _>(list.as_ref()).unwrap()); assert!(py.is_instance::<PyList, _>(list.as_ref()).unwrap()); }
Python::is_instance
calls the underlying PyType::is_instance
method to do the actual work.
To check the type of an exception, you can similarly do:
#![allow(unused)] fn main() { use pyo3::exceptions::PyTypeError; use pyo3::prelude::*; let gil = Python::acquire_gil(); let py = gil.python(); let err = PyTypeError::new_err(()); err.is_instance::<PyTypeError>(py); }
Handling Rust errors
The vast majority of operations in this library will return
PyResult<T>
,
which is an alias for the type Result<T, PyErr>
.
A PyErr
represents a Python exception. Errors within the PyO3 library are also exposed as
Python exceptions.
If your code has a custom error type e.g. MyError
, adding an implementation of
std::convert::From<MyError> for PyErr
is usually enough. PyO3 will then automatically convert
your error to a Python exception when needed.
#![allow(unused)] fn main() { use pyo3::prelude::*; use pyo3::exceptions::PyOSError; use std::error::Error; use std::fmt; #[derive(Debug)] struct CustomIOError; impl Error for CustomIOError {} impl fmt::Display for CustomIOError { fn fmt(&self, f: &mut fmt::Formatter) -> fmt::Result { write!(f, "Oh no!") } } fn bind(_addr: &str) -> Result<(), CustomIOError> { Err(CustomIOError) } impl std::convert::From<CustomIOError> for PyErr { fn from(err: CustomIOError) -> PyErr { PyOSError::new_err(err.to_string()) } } #[pyfunction] fn connect(s: String) -> Result<bool, CustomIOError> { bind("127.0.0.1:80")?; Ok(true) } }
The code snippet above will raise an OSError
in Python if bind()
returns a CustomIOError
.
The std::convert::From<T>
trait is implemented for most of the Rust standard library's error
types so the ?
operator can be used.
#![allow(unused)] fn main() { use pyo3::prelude::*; fn parse_int(s: String) -> PyResult<usize> { Ok(s.parse::<usize>()?) } }
The code snippet above will raise a ValueError
in Python if String::parse()
returns an error.
If lazy construction of the Python exception instance is desired, the
PyErrArguments
trait can be implemented. In that case, actual exception argument creation is delayed
until the PyErr
is needed.
Using exceptions defined in Python code
It is possible to use an exception defined in Python code as a native Rust type.
The import_exception!
macro allows importing a specific exception class and defines a Rust type
for that exception.
#![allow(unused)] fn main() { use pyo3::prelude::*; mod io { pyo3::import_exception!(io, UnsupportedOperation); } fn tell(file: &PyAny) -> PyResult<u64> { use pyo3::exceptions::*; match file.call_method0("tell") { Err(_) => Err(io::UnsupportedOperation::new_err("not supported: tell")), Ok(x) => x.extract::<u64>(), } } }
pyo3::exceptions
defines exceptions for several standard library modules.
Calling Python in Rust code
These APIs work from Rust whenever you have a Python
object handy, whether
PyO3 is built for an extension module or not.
Want to access Python APIs? Then use PyModule::import
.
Pymodule::import
can
be used to get handle to a Python module from Rust. You can use this to import and use any Python
module available in your environment.
use pyo3::prelude::*; fn main() -> PyResult<()> { Python::with_gil(|py| { let builtins = PyModule::import(py, "builtins")?; let total: i32 = builtins.call1("sum", (vec![1, 2, 3],))?.extract()?; assert_eq!(total, 6); Ok(()) }) }
Want to run just an expression? Then use eval
.
Python::eval
is
a method to execute a Python expression
and return the evaluated value as a &PyAny
object.
use pyo3::prelude::*; use pyo3::types::IntoPyDict; fn main() -> Result<(), ()> { Python::with_gil(|py| { let result = py.eval("[i * 10 for i in range(5)]", None, None).map_err(|e| { e.print_and_set_sys_last_vars(py); })?; let res: Vec<i64> = result.extract().unwrap(); assert_eq!(res, vec![0, 10, 20, 30, 40]); Ok(()) }) }
Want to run statements? Then use run
.
Python::run
is a method to execute one or more
Python statements.
This method returns nothing (like any Python statement), but you can get
access to manipulated objects via the locals
dict.
You can also use the py_run!
macro, which is a shorthand for Python::run
.
Since py_run!
panics on exceptions, we recommend you use this macro only for
quickly testing your Python extensions.
use pyo3::prelude::*; use pyo3::{PyCell, PyObjectProtocol, py_run}; fn main() { #[pyclass] struct UserData { id: u32, name: String, } #[pymethods] impl UserData { fn as_tuple(&self) -> (u32, String) { (self.id, self.name.clone()) } } #[pyproto] impl PyObjectProtocol for UserData { fn __repr__(&self) -> PyResult<String> { Ok(format!("User {}(id: {})", self.name, self.id)) } } Python::with_gil(|py| { let userdata = UserData { id: 34, name: "Yu".to_string(), }; let userdata = PyCell::new(py, userdata).unwrap(); let userdata_as_tuple = (34, "Yu"); py_run!(py, userdata userdata_as_tuple, r#" assert repr(userdata) == "User Yu(id: 34)" assert userdata.as_tuple() == userdata_as_tuple "#); }) }
You have a Python file or Python function? Then use PyModule::from_code
.
PyModule::from_code
can be used to generate a Python module which can then be used just as if it was imported with
PyModule::import
.
use pyo3::{prelude::*, types::{IntoPyDict, PyModule}}; fn main() -> PyResult<()> { Python::with_gil(|py| { let activators = PyModule::from_code(py, r#" def relu(x): """see https://en.wikipedia.org/wiki/Rectifier_(neural_networks)""" return max(0.0, x) def leaky_relu(x, slope=0.01): return x if x >= 0 else x * slope "#, "activators.py", "activators")?; let relu_result: f64 = activators.call1("relu", (-1.0,))?.extract()?; assert_eq!(relu_result, 0.0); let kwargs = [("slope", 0.2)].into_py_dict(py); let lrelu_result: f64 = activators .call("leaky_relu", (-1.0,), Some(kwargs))? .extract()?; assert_eq!(lrelu_result, -0.2); Ok(()) }) }
GIL lifetimes, mutability and Python object types
On first glance, PyO3 provides a huge number of different types that can be used to wrap or refer to Python objects. This page delves into the details and gives an overview of their intended meaning, with examples when each type is best used.
Mutability and Rust types
Since Python has no concept of ownership, and works solely with boxed objects, any Python object can be referenced any number of times, and mutation is allowed from any reference.
The situation is helped a little by the Global Interpreter Lock (GIL), which ensures that only one thread can use the Python interpreter and its API at the same time, while non-Python operations (system calls and extension code) can unlock the GIL. (See the section on parallelism for how to do that in PyO3.)
In PyO3, holding the GIL is modeled by acquiring a token of the type
Python<'py>
, which serves three purposes:
- It provides some global API for the Python interpreter, such as
eval
. - It can be passed to functions that require a proof of holding the GIL,
such as
Py::clone_ref
. - Its lifetime can be used to create Rust references that implicitly guarantee
holding the GIL, such as
&'py PyAny
.
The latter two points are the reason why some APIs in PyO3 require the py: Python
argument, while others don't.
The PyO3 API for Python objects is written such that instead of requiring a
mutable Rust reference for mutating operations such as
PyList::append
, a shared reference (which, in turn, can only
be created through Python<'_>
with a GIL lifetime) is sufficient.
However, Rust structs wrapped as Python objects (called pyclass
types) usually
do need &mut
access. Due to the GIL, PyO3 can guarantee thread-safe acces
to them, but it cannot statically guarantee uniqueness of &mut
references once
an object's ownership has been passed to the Python interpreter, ensuring
references is done at runtime using PyCell
, a scheme very similar to
std::cell::RefCell
.
Object types
PyAny
Represents: a Python object of unspecified type, restricted to a GIL
lifetime. Currently, PyAny
can only ever occur as a reference, &PyAny
.
Used: Whenever you want to refer to some Python object and will have the
GIL for the whole duration you need to access that object. For example,
intermediate values and arguments to pyfunction
s or pymethod
s implemented
in Rust where any type is allowed.
Many general methods for interacting with Python objects are on the PyAny
struct,
such as getattr
, setattr
, and .call
.
Conversions:
For a &PyAny
object reference any
where the underlying object is a Python-native type such as
a list:
#![allow(unused)] fn main() { use pyo3::prelude::*; use pyo3::{Py, Python, PyAny, PyResult, types::PyList}; Python::with_gil(|py| -> PyResult<()> { let obj: &PyAny = PyList::empty(py); // To &PyList with PyAny::downcast let _: &PyList = obj.downcast()?; // To Py<PyAny> (aka PyObject) with .into() let _: Py<PyAny> = obj.into(); // To Py<PyList> with PyAny::extract let _: Py<PyList> = obj.extract()?; Ok(()) }).unwrap(); }
For a &PyAny
object reference any
where the underlying object is a #[pyclass]
:
#![allow(unused)] fn main() { use pyo3::prelude::*; use pyo3::{Py, Python, PyAny, PyResult, types::PyList}; #[pyclass] #[derive(Clone)] struct MyClass { } Python::with_gil(|py| -> PyResult<()> { let obj: &PyAny = Py::new(py, MyClass { })?.into_ref(py); // To &PyCell<MyClass> with PyAny::downcast let _: &PyCell<MyClass> = obj.downcast()?; // To Py<PyAny> (aka PyObject) with .into() let _: Py<PyAny> = obj.into(); // To Py<MyClass> with PyAny::extract let _: Py<MyClass> = obj.extract()?; // To MyClass with PyAny::extract, if MyClass: Clone let _: MyClass = obj.extract()?; // To PyRef<MyClass> or PyRefMut<MyClass> with PyAny::extract let _: PyRef<MyClass> = obj.extract()?; let _: PyRefMut<MyClass> = obj.extract()?; Ok(()) }).unwrap(); }
PyTuple
, PyDict
, and many more
Represents: a native Python object of known type, restricted to a GIL
lifetime just like PyAny
.
Used: Whenever you want to operate with native Python types while holding
the GIL. Like PyAny
, this is the most convenient form to use for function
arguments and intermediate values.
These types all implement Deref<Target = PyAny>
, so they all expose the same
methods which can be found on PyAny
.
To see all Python types exposed by PyO3
you should consult the
pyo3::types
module.
Conversions:
#![allow(unused)] fn main() { use pyo3::prelude::*; use pyo3::types::PyList; Python::with_gil(|py| -> PyResult<()> { let list = PyList::empty(py); // Use methods from PyAny on all Python types with Deref implementation let _ = list.repr()?; // To &PyAny automatically with Deref implementation let _: &PyAny = list; // To &PyAny explicitly with .as_ref() let _: &PyAny = list.as_ref(); // To Py<T> with .into() or Py::from() let _: Py<PyList> = list.into(); // To PyObject with .into() or .to_object(py) let _: PyObject = list.into(); Ok(()) }).unwrap(); }
Py<T>
and PyObject
Represents: a GIL-independent reference to a Python object. This can be a Python native type
(like PyTuple
), or a pyclass
type implemented in Rust. The most commonly-used variant,
Py<PyAny>
, is also known as PyObject
.
Used: Whenever you want to carry around references to a Python object without caring about a GIL lifetime. For example, storing Python object references in a Rust struct that outlives the Python-Rust FFI boundary, or returning objects from functions implemented in Rust back to Python.
Can be cloned using Python reference counts with .clone()
.
Conversions:
For a Py<PyList>
, the conversions are as below:
#![allow(unused)] fn main() { use pyo3::prelude::*; use pyo3::types::PyList; let gil = Python::acquire_gil(); let py = gil.python(); let list: Py<PyList> = PyList::empty(py).into(); // To &PyList with Py::as_ref() (borrows from the Py) let _: &PyList = list.as_ref(py); let list_clone = list.clone(); // Because `.into_ref()` will consume `list`. // To &PyList with Py::into_ref() (moves the pointer into PyO3's object storage) let _: &PyList = list.into_ref(py); let list = list_clone; // To Py<PyAny> (aka PyObject) with .into() let _: Py<PyAny> = list.into(); }
For a #[pyclass] struct MyClass
, the conversions for Py<MyClass>
are below:
#![allow(unused)] fn main() { use pyo3::prelude::*; let gil = Python::acquire_gil(); let py = gil.python(); #[pyclass] struct MyClass { } Python::with_gil(|py| -> PyResult<()> { let my_class: Py<MyClass> = Py::new(py, MyClass { })?; // To &PyCell<MyClass> with Py::as_ref() (borrows from the Py) let _: &PyCell<MyClass> = my_class.as_ref(py); let my_class_clone = my_class.clone(); // Because `.into_ref()` will consume `my_class`. // To &PyCell<MyClass> with Py::into_ref() (moves the pointer into PyO3's object storage) let _: &PyCell<MyClass> = my_class.into_ref(py); let my_class = my_class_clone.clone(); // To Py<PyAny> (aka PyObject) with .into_py(py) let _: Py<PyAny> = my_class.into_py(py); let my_class = my_class_clone; // To PyRef<MyClass> with Py::borrow or Py::try_borrow let _: PyRef<MyClass> = my_class.try_borrow(py)?; // To PyRefMut<MyClass> with Py::borrow_mut or Py::try_borrow_mut let _: PyRefMut<MyClass> = my_class.try_borrow_mut(py)?; Ok(()) }).unwrap(); }
PyCell<SomeType>
Represents: a reference to a Rust object (instance of PyClass
) which is
wrapped in a Python object. The cell part is an analog to stdlib's
RefCell
to allow access to &mut
references.
Used: for accessing pure-Rust API of the instance (members and functions
taking &SomeType
or &mut SomeType
) while maintaining the aliasing rules of
Rust references.
Like pyo3's Python native types, PyCell<T>
implements Deref<Target = PyAny>
,
so it also exposes all of the methods on PyAny
.
Conversions:
PyCell<T>
can be used to access &T
and &mut T
via PyRef<T>
and PyRefMut<T>
respectively.
#![allow(unused)] fn main() { use pyo3::prelude::*; use pyo3::types::PyList; #[pyclass] struct MyClass { } Python::with_gil(|py| -> PyResult<()> { let cell: &PyCell<MyClass> = PyCell::new(py, MyClass { })?; // To PyRef<T> with .borrow() or .try_borrow() let py_ref: PyRef<MyClass> = cell.try_borrow()?; let _: &MyClass = &*py_ref; drop(py_ref); // To PyRefMut<T> with .borrow_mut() or .try_borrow_mut() let mut py_ref_mut: PyRefMut<MyClass> = cell.try_borrow_mut()?; let _: &mut MyClass = &mut *py_ref_mut; Ok(()) }).unwrap(); }
PyCell<T>
can also be accessed like a Python-native type.
#![allow(unused)] fn main() { use pyo3::prelude::*; use pyo3::types::PyList; #[pyclass] struct MyClass { } Python::with_gil(|py| -> PyResult<()> { let cell: &PyCell<MyClass> = PyCell::new(py, MyClass { })?; // Use methods from PyAny on PyCell<T> with Deref implementation let _ = cell.repr()?; // To &PyAny automatically with Deref implementation let _: &PyAny = cell; // To &PyAny explicitly with .as_ref() let _: &PyAny = cell.as_ref(); Ok(()) }).unwrap(); }
PyRef<SomeType>
and PyRefMut<SomeType>
Represents: reference wrapper types employed by PyCell
to keep track of
borrows, analog to Ref
and RefMut
used by RefCell
.
Used: while borrowing a PyCell
. They can also be used with .extract()
on types like Py<T>
and PyAny
to get a reference quickly.
Related traits and types
PyClass
This trait marks structs defined in Rust that are also usable as Python classes,
usually defined using the #[pyclass]
macro.
PyNativeType
This trait marks structs that mirror native Python types, such as PyList
.
Parallelism
CPython has the infamous Global Interpreter Lock, which prevents several threads from executing Python bytecode in parallel. This makes threading in Python a bad fit for CPU-bound tasks and often forces developers to accept the overhead of multiprocessing.
In PyO3 parallelism can be easily achieved in Rust-only code. Let's take a look at our word-count example, where we have a search
function that utilizes the rayon crate to count words in parallel.
#[pyfunction]
fn search(contents: &str, needle: &str) -> usize {
contents
.par_lines()
.map(|line| count_line(line, needle))
.sum()
}
But let's assume you have a long running Rust function which you would like to execute several times in parallel. For the sake of example let's take a sequential version of the word count:
fn search_sequential(contents: &str, needle: &str) -> usize {
contents.lines().map(|line| count_line(line, needle)).sum()
}
To enable parallel execution of this function, the Python::allow_threads
method can be used to temporarily release the GIL, thus allowing other Python threads to run. We then have a function exposed to the Python runtime which calls search_sequential
inside a closure passed to Python::allow_threads
to enable true parallelism:
#[pyfunction]
fn search_sequential_allow_threads(py: Python, contents: &str, needle: &str) -> usize {
py.allow_threads(|| search_sequential(contents, needle))
}
Now Python threads can use more than one CPU core, resolving the limitation which usually makes multi-threading in Python only good for IO-bound tasks:
from concurrent.futures import ThreadPoolExecutor
from word_count import search_sequential_allow_threads
executor = ThreadPoolExecutor(max_workers=2)
future_1 = executor.submit(
word_count.search_sequential_allow_threads, contents, needle
)
future_2 = executor.submit(
word_count.search_sequential_allow_threads, contents, needle
)
result_1 = future_1.result()
result_2 = future_2.result()
Benchmark
Let's benchmark the word-count
example to verify that we really did unlock parallelism with PyO3.
We are using pytest-benchmark
to benchmark four word count functions:
- Pure Python version
- Rust parallel version
- Rust sequential version
- Rust sequential version executed twice with two Python threads
The benchmark script can be found here, and we can run tox
in the word-count
folder to benchmark these functions.
While the results of the benchmark of course depend on your machine, the relative results should be similar to this (mid 2020):
-------------------------------------------------------------------------------------------------- benchmark: 4 tests -------------------------------------------------------------------------------------------------
Name (time in ms) Min Max Mean StdDev Median IQR Outliers OPS Rounds Iterations
-----------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------
test_word_count_rust_parallel 1.7315 (1.0) 4.6495 (1.0) 1.9972 (1.0) 0.4299 (1.0) 1.8142 (1.0) 0.2049 (1.0) 40;46 500.6943 (1.0) 375 1
test_word_count_rust_sequential 7.3348 (4.24) 10.3556 (2.23) 8.0035 (4.01) 0.7785 (1.81) 7.5597 (4.17) 0.8641 (4.22) 26;5 124.9457 (0.25) 121 1
test_word_count_rust_sequential_twice_with_threads 7.9839 (4.61) 10.3065 (2.22) 8.4511 (4.23) 0.4709 (1.10) 8.2457 (4.55) 0.3927 (1.92) 17;17 118.3274 (0.24) 114 1
test_word_count_python_sequential 27.3985 (15.82) 45.4527 (9.78) 28.9604 (14.50) 4.1449 (9.64) 27.5781 (15.20) 0.4638 (2.26) 3;5 34.5299 (0.07) 35 1
-----------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------
You can see that the Python threaded version is not much slower than the Rust sequential version, which means compared to an execution on a single CPU core the speed has doubled.
Debugging
Macros
PyO3's attributes (#[pyclass]
, #[pymodule]
, etc.) are procedural macros, which means that they rewrite the source of the annotated item. You can view the generated source with the following command, which also expands a few other things:
cargo rustc --profile=check -- -Z unstable-options --pretty=expanded > expanded.rs; rustfmt expanded.rs
(You might need to install rustfmt if you don't already have it.)
You can also debug classic !
-macros by adding -Z trace-macros
:
cargo rustc --profile=check -- -Z unstable-options --pretty=expanded -Z trace-macros > expanded.rs; rustfmt expanded.rs
See cargo expand for a more elaborate version of those commands.
Running with Valgrind
Valgrind is a tool to detect memory management bugs such as memory leaks.
You first need to install a debug build of Python, otherwise Valgrind won't produce usable results. In Ubuntu there's e.g. a python3-dbg
package.
Activate an environment with the debug interpreter and recompile. If you're on Linux, use ldd
with the name of your binary and check that you're linking e.g. libpython3.6dm.so.1.0
instead of libpython3.6m.so.1.0
.
Download the suppressions file for cpython.
Run Valgrind with valgrind --suppressions=valgrind-python.supp ./my-command --with-options
Getting a stacktrace
The best start to investigate a crash such as an segmentation fault is a backtrace.
- Link against a debug build of python as described in the previous chapter
- Run
gdb <my-binary>
- Enter
r
to run - After the crash occurred, enter
bt
orbt full
to print the stacktrace
Advanced topics
FFI
PyO3 exposes much of Python's C API through the ffi
module.
The C API is naturally unsafe and requires you to manage reference counts, errors and specific invariants yourself. Please refer to the C API Reference Manual and The Rustonomicon before using any function from that API.
Memory Management
PyO3's "owned references" (&PyAny
etc.) make PyO3 more ergonomic to use by ensuring that their lifetime can never be longer than the duration the Python GIL is held. This means that most of PyO3's API can assume the GIL is held. (If PyO3 could not assume this, every PyO3 API would need to take a Python
GIL token to prove that the GIL is held.)
The caveat to these "owned references" is that Rust references do not normally convey ownership (they are always Copy
, and cannot implement Drop
). Whenever a PyO3 API returns an owned reference, PyO3 stores it internally, so that PyO3 can decrease the reference count just before PyO3 releases the GIL.
For most use cases this behaviour is invisible. Occasionally, however, users may need to clear memory usage sooner than PyO3 usually does. PyO3 exposes this functionality with the the GILPool
struct. When a GILPool
is dropped, all owned references created after the GILPool
was created will be cleared.
The unsafe function Python::new_pool
allows you to create a new GILPool
. When doing this, you must be very careful to ensure that once the GILPool
is dropped you do not retain access any owned references created after the GILPool
was created.
The nightly
feature
The pyo3/nightly
feature needs the nightly Rust compiler. This allows PyO3 to use Rust's unstable specialization feature to apply the following optimizations:
FromPyObject
forVec
and[T;N]
can perform amemcpy
when the object is aPyBuffer
ToBorrowedObject
can skip a reference count increase when the provided object is a Python native type.
Building and Distribution
Python version
PyO3 uses a build script to determine the Python version and set the correct linker arguments. By default it uses the python3
executable. You can override the Python interpreter by setting PYO3_PYTHON
, e.g., PYO3_PYTHON=python3.6
.
Linking
Different linker arguments must be set for libraries/extension modules and binaries, which includes both standalone binaries and tests. (More specifically, binaries must be told where to find libpython and libraries must not link to libpython for manylinux compliance).
Since PyO3's build script can't know whether you're building a binary or a library, you have to activate the extension-module
feature to get the build options for a library, or it'll default to binary.
If you have e.g. a library crate and a profiling crate alongside, you need to use optional features. E.g. you put the following in the library crate:
[dependencies]
pyo3 = "0.6"
[lib]
name = "hyperjson"
crate-type = ["rlib", "cdylib"]
[features]
default = ["pyo3/extension-module"]
And this in the profiling crate:
[dependencies]
my_main_crate = { path = "..", default-features = false }
pyo3 = "0.6"
On Linux/macOS you might have to change LD_LIBRARY_PATH
to include libpython, while on windows you might need to set LIB
to include pythonxy.lib
(where x and y are major and minor version), which is normally either in the libs
or Lib
folder of a Python installation.
Distribution
There are two ways to distribute your module as a Python package: The old, setuptools-rust, and the new, maturin. setuptools-rust needs several configuration files (setup.py
, MANIFEST.in
, build-wheels.sh
, etc.). maturin doesn't need any configuration files, however it does not support some functionality of setuptools such as package data (pyo3/maturin#258) and requires a rigid project structure, while setuptools-rust allows (and sometimes requires) configuration with python code.
Cross Compiling
Cross compiling PyO3 modules is relatively straightforward and requires a few pieces of software:
- A toolchain for your target.
- The appropriate options in your Cargo
.config
for the platform you're targeting and the toolchain you are using. - A Python interpreter that's already been compiled for your target.
- A Python interpreter that is built for your host and available through the
PATH
or setting thePYO3_PYTHON
variable. - The headers that match the above interpreter.
See https://github.com/japaric/rust-cross for a primer on cross compiling Rust in general.
After you've obtained the above, you can build a cross compiled PyO3 module by setting a few extra environment variables:
PYO3_CROSS_INCLUDE_DIR
: This variable must be set to the directory containing the headers for the target's Python interpreter. It is only necessary if targeting Windows platformsPYO3_CROSS_LIB_DIR
: This variable must be set to the directory containing the target's libpython DSO and the associated_sysconfigdata*.py
file.PYO3_CROSS_PYTHON_VERSION
: This variable must be set if there are multiple versions of python compiled for a unix machine.
An example might look like the following (assuming your target's sysroot is at /home/pyo3/cross/sysroot
and that your target is armv7
):
export PYO3_CROSS_LIB_DIR="/home/pyo3/cross/sysroot/usr/lib"
cargo build --target armv7-unknown-linux-gnueabihf
If there are multiple python versions at the cross lib directory and you cannot set a more precise location to include both the libpython
DSO and _sysconfigdata*.py
files, you can set the required version:
export PYO3_CROSS_PYTHON_VERSION=3.8
export PYO3_CROSS_LIB_DIR="/home/pyo3/cross/sysroot/usr/lib"
cargo build --target armv7-unknown-linux-gnueabihf
Or another example with the same sys root but building for windows:
export PYO3_CROSS_INCLUDE_DIR="/home/pyo3/cross/sysroot/usr/include"
export PYO3_CROSS_LIB_DIR="/home/pyo3/cross/sysroot/usr/lib"
cargo build --target x86_64-pc-windows-gnu
Bazel
For an example of how to build python extensions using Bazel, see https://github.com/TheButlah/rules_pyo3
PyPy Support
Using PyPy is supported via cpyext.
Support is only provided for building Rust extension for code running under PyPy. This means that PyPy cannot be called from rust via cpyext. Note that there some differences in the ffi module between PyPy and CPython.
This is a limitation of cpyext and support for embedding cpyext is not planned.
Compilation against PyPy is done by exporting PYO3_PYTHON
to point to a PyPy binary or by compiling in a PyPy virtualenv.
For example, PYO3_PYTHON="/path/to/pypy3" /path/to/pypy3 setup.py install
Unsupported features
These are features currently supported by PyO3, but not yet implemented in cpyext.
- Complex number functions (
_Py_c_sum
,_Py_c_sum
..) - Conversion to rust's i128, u128 types.
PySequence_Count
(which is used to count number of element in array)PyDict_MergeFromSeq2
(used inPyDict::from_sequence
)
Frequently Asked Questions / Troubleshooting
I'm experiencing deadlocks using PyO3 with lazy_static or once_cell!
lazy_static
and once_cell::sync
both use locks to ensure that initialization is performed only by a single thread. Because the Python GIL is an additional lock this can lead to deadlocks in the following way:
- A thread (thread A) which has acquired the Python GIL starts initialization of a
lazy_static
value. - The initialization code calls some Python API which temporarily releases the GIL e.g.
Python::import
. - Another thread (thread B) acquires the Python GIL and attempts to access the same
lazy_static
value. - Thread B is blocked, because it waits for
lazy_static
's initialization to lock to release. - Thread A is blocked, because it waits to re-aquire the GIL which thread B still holds.
- Deadlock.
PyO3 provides a struct GILOnceCell
which works equivalently to OnceCell
but relies solely on the Python GIL for thread safety. This means it can be used in place of lazy_static
or once_cell
where you are experiencing the deadlock described above. See the documentation for GILOnceCell
for an example how to use it.
I can't run cargo test
: I'm having linker issues like "Symbol not found" or "Undefined reference to _PyExc_SystemError"!
Currently, #341 causes cargo test
to fail with linking errors when the extension-module
feature is activated. For now you can work around this by making the extension-module
feature optional and running the tests with cargo test --no-default-features
:
[dependencies.pyo3]
version = "*"
[features]
extension-module = ["pyo3/extension-module"]
default = ["extension-module"]
Migrating from older PyO3 versions
This guide can help you upgrade code through breaking changes from one PyO3 version to the next. For a detailed list of all changes, see the CHANGELOG.
from 0.11.* to 0.12
PyErr
has been reworked
In PyO3 0.12
the PyErr
type has been re-implemented to be significantly more compatible with
the standard Rust error handling ecosystem. Specificially PyErr
now implements
Error + Send + Sync
, which are the standard traits used for error types.
While this has necessitated the removal of a number of APIs, the resulting PyErr
type should now
be much more easier to work with. The following sections list the changes in detail and how to
migrate to the new APIs.
PyErr::new
and PyErr::from_type
now require Send + Sync
for their argument
For most uses no change will be needed. If you are trying to construct PyErr
from a value that is
not Send + Sync
, you will need to first create the Python object and then use
PyErr::from_instance
.
Similarly, any types which implemented PyErrArguments
will now need to be Send + Sync
.
PyErr
's contents are now private
It is no longer possible to access the fields .ptype
, .pvalue
and .ptraceback
of a PyErr
.
You should instead now use the new methods PyErr::ptype()
, PyErr::pvalue()
and PyErr::ptraceback()
.
PyErrValue
and PyErr::from_value
have been removed
As these were part the internals of PyErr
which have been reworked, these APIs no longer exist.
If you used this API, it is recommended to use PyException::new_err
(see the section on
Exception types).
Into<PyResult<T>>
for PyErr
has been removed
This implementation was redundant. Just construct the Result::Err
variant directly.
Before:
let result: PyResult<()> = PyErr::new::<TypeError, _>("error message").into();
After (also using the new reworked exception types; see the following section):
#![allow(unused)] fn main() { use pyo3::{PyErr, PyResult, exceptions::PyTypeError}; let result: PyResult<()> = Err(PyTypeError::new_err("error message")); }
Exception types have been reworked
Previously exception types were zero-sized marker types purely used to construct PyErr
. In PyO3
0.12, these types have been replaced with full definitions and are usable in the same way as PyAny
, PyDict
etc. This
makes it possible to interact with Python exception objects.
The new types also have names starting with the "Py" prefix. For example, before:
let err: PyErr = TypeError::py_err("error message");
After:
#![allow(unused)] fn main() { use pyo3::{PyErr, PyResult, Python, type_object::PyTypeObject}; use pyo3::exceptions::{PyBaseException, PyTypeError}; Python::with_gil(|py| -> PyResult<()> { let err: PyErr = PyTypeError::new_err("error message"); // Uses Display for PyErr, new for PyO3 0.12 assert_eq!(err.to_string(), "TypeError: error message"); // Now possible to interact with exception instances, new for PyO3 0.12 let instance: &PyBaseException = err.instance(py); assert_eq!(instance.getattr("__class__")?, PyTypeError::type_object(py).as_ref()); Ok(()) }).unwrap(); }
FromPy
has been removed
To simplify the PyO3 conversion traits, the FromPy
trait has been removed. Previously there were
two ways to define the to-Python conversion for a type:
FromPy<T> for PyObject
and IntoPy<PyObject> for T
.
Now there is only one way to define the conversion, IntoPy
, so downstream crates may need to
adjust accordingly.
Before:
use pyo3::prelude::*;
struct MyPyObjectWrapper(PyObject);
impl FromPy<MyPyObjectWrapper> for PyObject {
fn from_py(other: MyPyObjectWrapper, _py: Python) -> Self {
other.0
}
}
After
#![allow(unused)] fn main() { use pyo3::prelude::*; struct MyPyObjectWrapper(PyObject); impl IntoPy<PyObject> for MyPyObjectWrapper { fn into_py(self, _py: Python) -> PyObject { self.0 } } }
Similarly, code which was using the FromPy
trait can be trivially rewritten to use IntoPy
.
Before:
use pyo3::prelude::*;
Python::with_gil(|py| {
let obj = PyObject::from_py(1.234, py);
})
After:
#![allow(unused)] fn main() { use pyo3::prelude::*; Python::with_gil(|py| { let obj: PyObject = 1.234.into_py(py); }) }
PyObject
is now a type alias of Py<PyAny>
This should change very little from a usage perspective. If you implemented traits for both
PyObject
and Py<T>
, you may find you can just remove the PyObject
implementation.
AsPyRef
has been removed
As PyObject
has been changed to be just a type alias, the only remaining implementor of AsPyRef
was Py<T>
. This removed the need for a trait, so the AsPyRef::as_ref
method has been moved to
Py::as_ref
.
This should require no code changes except removing use pyo3::AsPyRef
for code which did not use
pyo3::prelude::*
.
Before:
use pyo3::{AsPyRef, Py, types::PyList};
pyo3::Python::with_gil(|py| {
let list_py: Py<PyList> = PyList::empty(py).into();
let list_ref: &PyList = list_py.as_ref(py);
})
After:
#![allow(unused)] fn main() { use pyo3::{Py, types::PyList}; pyo3::Python::with_gil(|py| { let list_py: Py<PyList> = PyList::empty(py).into(); let list_ref: &PyList = list_py.as_ref(py); }) }
from 0.10.* to 0.11
Stable Rust
PyO3 now supports the stable Rust toolchain. The minimum required version is 1.39.0.
#[pyclass]
structs must now be Send
or unsendable
Because #[pyclass]
structs can be sent between threads by the Python interpreter, they must implement
Send
or declared as unsendable
(by #[pyclass(unsendable)]
).
Note that unsendable
is added in PyO3 0.11.1
and Send
is always required in PyO3 0.11.0
.
This may "break" some code which previously was accepted, even though it could be unsound. There can be two fixes:
-
If you think that your
#[pyclass]
actually must beSend
able, then let's implementSend
. A common, safer way is using thread-safe types. E.g.,Arc
instead ofRc
,Mutex
instead ofRefCell
, andBox<dyn Send + T>
instead ofBox<dyn T>
.Before:
#![allow(unused)] fn main() { use pyo3::prelude::*; use std::rc::Rc; use std::cell::RefCell; #[pyclass] struct NotThreadSafe { shared_bools: Rc<RefCell<Vec<bool>>>, closure: Box<dyn Fn()> } }
After:
#![allow(unused)] fn main() { use pyo3::prelude::*; use std::sync::{Arc, Mutex}; #[pyclass] struct ThreadSafe { shared_bools: Arc<Mutex<Vec<bool>>>, closure: Box<dyn Fn() + Send> } }
In situations where you cannot change your
#[pyclass]
to automatically implementSend
(e.g., when it contains a raw pointer), you can useunsafe impl Send
. In such cases, care should be taken to ensure the struct is actually thread safe. See the Rustnomicon for more. -
If you think that your
#[pyclass]
should not be accessed by another thread, you can useunsendable
flag. A class marked withunsendable
panics when accessed by another thread, making it thread-safe to expose an unsendable object to the Python interpreter.Before:
#![allow(unused)] fn main() { use pyo3::prelude::*; #[pyclass] struct Unsendable { pointers: Vec<*mut std::os::raw::c_char>, } }
After:
#![allow(unused)] fn main() { use pyo3::prelude::*; #[pyclass(unsendable)] struct Unsendable { pointers: Vec<*mut std::os::raw::c_char>, } }
All PyObject
and Py<T>
methods now take Python
as an argument
Previously, a few methods such as Object::get_refcnt
did not take Python
as an argument (to
ensure that the Python GIL was held by the current thread). Technically, this was not sound.
To migrate, just pass a py
argument to any calls to these methods.
Before:
#![allow(unused)] fn main() { use pyo3::prelude::*; let gil = Python::acquire_gil(); let py = gil.python(); py.None().get_refcnt(); }
After:
#![allow(unused)] fn main() { use pyo3::prelude::*; let gil = Python::acquire_gil(); let py = gil.python(); py.None().get_refcnt(py); }
from 0.9.* to 0.10
ObjectProtocol
is removed
All methods are moved to PyAny
.
And since now all native types (e.g., PyList
) implements Deref<Target=PyAny>
,
all you need to do is remove ObjectProtocol
from your code.
Or if you use ObjectProtocol
by use pyo3::prelude::*
, you have to do nothing.
Before:
#![allow(unused)] fn main() { use pyo3::ObjectProtocol; let gil = pyo3::Python::acquire_gil(); let obj = gil.python().eval("lambda: 'Hi :)'", None, None).unwrap(); let hi: &pyo3::types::PyString = obj.call0().unwrap().downcast().unwrap(); assert_eq!(hi.len().unwrap(), 5); }
After:
#![allow(unused)] fn main() { let gil = pyo3::Python::acquire_gil(); let obj = gil.python().eval("lambda: 'Hi :)'", None, None).unwrap(); let hi: &pyo3::types::PyString = obj.call0().unwrap().downcast().unwrap(); assert_eq!(hi.len().unwrap(), 5); }
No #![feature(specialization)]
in user code
While PyO3 itself still requires specialization and nightly Rust,
now you don't have to use #![feature(specialization)]
in your crate.
from 0.8.* to 0.9
#[new]
interface
PyRawObject
is now removed and our syntax for constructors has changed.
Before:
#![allow(unused)] fn main() { #[pyclass] struct MyClass {} #[pymethods] impl MyClass { #[new] fn new(obj: &PyRawObject) { obj.init(MyClass { }) } } }
After:
#![allow(unused)] fn main() { use pyo3::prelude::*; #[pyclass] struct MyClass {} #[pymethods] impl MyClass { #[new] fn new() -> Self { MyClass {} } } }
Basically you can return Self
or Result<Self>
directly.
For more, see the constructor section of this guide.
PyCell
PyO3 0.9 introduces PyCell
, which is a RefCell
-like object wrapper
for ensuring Rust's rules regarding aliasing of references are upheld.
For more detail, see the
Rust Book's section on Rust's rules of references
For #[pymethods]
or #[pyfunction]
s, your existing code should continue to work without any change.
Python exceptions will automatically be raised when your functions are used in a way which breaks Rust's
rules of references.
Here is an example.
#![allow(unused)] fn main() { use pyo3::prelude::*; #[pyclass] struct Names { names: Vec<String> } #[pymethods] impl Names { #[new] fn new() -> Self { Names { names: vec![] } } fn merge(&mut self, other: &mut Names) { self.names.append(&mut other.names) } } let gil = Python::acquire_gil(); let py = gil.python(); let names = PyCell::new(py, Names::new()).unwrap(); pyo3::py_run!(py, names, r" try: names.merge(names) assert False, 'Unreachable' except RuntimeError as e: assert str(e) == 'Already borrowed' "); }
Names
has a merge
method, which takes &mut self
and another argument of type &mut Self
.
Given this #[pyclass]
, calling names.merge(names)
in Python raises
a PyBorrowMutError
exception, since it requires two mutable borrows of names
.
However, for #[pyproto]
and some functions, you need to manually fix the code.
Object creation
In 0.8 object creation was done with PyRef::new
and PyRefMut::new
.
In 0.9 these have both been removed.
To upgrade code, please use
PyCell::new
instead.
If you need PyRef
or PyRefMut
, just call .borrow()
or .borrow_mut()
on the newly-created PyCell
.
Before:
#![allow(unused)] fn main() { use pyo3::prelude::*; #[pyclass] struct MyClass {} let gil = Python::acquire_gil(); let py = gil.python(); let obj_ref = PyRef::new(py, MyClass {}).unwrap(); }
After:
#![allow(unused)] fn main() { use pyo3::prelude::*; #[pyclass] struct MyClass {} let gil = Python::acquire_gil(); let py = gil.python(); let obj = PyCell::new(py, MyClass {}).unwrap(); let obj_ref = obj.borrow(); }
Object extraction
For PyClass
types T
, &T
and &mut T
no longer have FromPyObject
implementations.
Instead you should extract PyRef<T>
or PyRefMut<T>
, respectively.
If T
implements Clone
, you can extract T
itself.
In addition, you can also extract &PyCell<T>
, though you rarely need it.
Before:
let obj: &PyAny = create_obj();
let obj_ref: &MyClass = obj.extract().unwrap();
let obj_ref_mut: &mut MyClass = obj.extract().unwrap();
After:
#![allow(unused)] fn main() { use pyo3::prelude::*; use pyo3::types::IntoPyDict; #[pyclass] #[derive(Clone)] struct MyClass {} #[pymethods] impl MyClass { #[new]fn new() -> Self { MyClass {} }} let gil = Python::acquire_gil(); let py = gil.python(); let typeobj = py.get_type::<MyClass>(); let d = [("c", typeobj)].into_py_dict(py); let create_obj = || py.eval("c()", None, Some(d)).unwrap(); let obj: &PyAny = create_obj(); let obj_cell: &PyCell<MyClass> = obj.extract().unwrap(); let obj_cloned: MyClass = obj.extract().unwrap(); // extracted by cloning the object { let obj_ref: PyRef<MyClass> = obj.extract().unwrap(); // we need to drop obj_ref before we can extract a PyRefMut due to Rust's rules of references } let obj_ref_mut: PyRefMut<MyClass> = obj.extract().unwrap(); }
#[pyproto]
Most of the arguments to methods in #[pyproto]
impls require a
FromPyObject
implementation.
So if your protocol methods take &T
or &mut T
(where T: PyClass
),
please use PyRef
or PyRefMut
instead.
Before:
#![allow(unused)] fn main() { use pyo3::prelude::*; use pyo3::class::PySequenceProtocol; #[pyclass] struct ByteSequence { elements: Vec<u8>, } #[pyproto] impl PySequenceProtocol for ByteSequence { fn __concat__(&self, other: &Self) -> PyResult<Self> { let mut elements = self.elements.clone(); elements.extend_from_slice(&other.elements); Ok(Self { elements }) } } }
After:
#![allow(unused)] fn main() { use pyo3::prelude::*; use pyo3::class::PySequenceProtocol; #[pyclass] struct ByteSequence { elements: Vec<u8>, } #[pyproto] impl PySequenceProtocol for ByteSequence { fn __concat__(&self, other: PyRef<'p, Self>) -> PyResult<Self> { let mut elements = self.elements.clone(); elements.extend_from_slice(&other.elements); Ok(Self { elements }) } } }
PyO3 and rust-cpython
PyO3 began as fork of rust-cpython when rust-cpython wasn't maintained. Over time PyO3 has become fundamentally different from rust-cpython.
Macros
While rust-cpython has a macro_rules!
based dsl for declaring modules and classes, PyO3 uses proc macros. PyO3 also doesn't change your struct and functions so you can still use them as normal Rust functions.
rust-cpython
py_class!(class MyClass |py| {
data number: i32;
def __new__(_cls, arg: i32) -> PyResult<MyClass> {
MyClass::create_instance(py, arg)
}
def half(&self) -> PyResult<i32> {
Ok(self.number(py) / 2)
}
});
pyo3
#![allow(unused)] fn main() { use pyo3::prelude::*; #[pyclass] struct MyClass { num: u32, } #[pymethods] impl MyClass { #[new] fn new(num: u32) -> Self { MyClass { num } } fn half(&self) -> PyResult<u32> { Ok(self.num / 2) } } }
Ownership and lifetimes
While in rust-cpython you always own python objects, PyO3 allows efficient borrowed objects and most APIs are available with references.
Here is an example of the PyList API:
rust-cpython
impl PyList {
fn new(py: Python) -> PyList {...}
fn get_item(&self, py: Python, index: isize) -> PyObject {...}
}
pyo3
impl PyList {
fn new(py: Python) -> &PyList {...}
fn get_item(&self, index: isize) -> &PyAny {...}
}
In PyO3, all object references are bounded by the GIL lifetime.
So the owned Python object is not required, and it is safe to have functions like fn py<'p>(&'p self) -> Python<'p> {}
.
Error handling
rust-cpython requires a Python
parameter for constructing a PyErr
, so error handling ergonomics is pretty bad. It is not possible to use ?
with Rust errors.
PyO3 on other hand does not require Python
for constructing a PyErr
, it is only required if you want to raise an exception in Python with the PyErr::restore()
method. Due to various std::convert::From<E> for PyErr
implementations for Rust standard error types E
, propagating ?
is supported automatically.
Using in Python a Rust function with trait bounds
PyO3 allows for easy conversion from Rust to Python for certain functions and classes (see the conversion table. However, it is not always straightforward to convert Rust code that requires a given trait implementation as an argument.
This tutorial explains how to convert a Rust function that takes a trait as argument for use in Python with classes implementing the same methods as the trait.
Why is this useful?
Pros
- Make your Rust code available to Python users
- Code complex algorithms in Rust with the help of the borrow checker
Cons
- Not as fast as native Rust (type conversion has to be performed and one part of the code runs in Python)
- You need to adapt your code to expose it
Example
Let's work with the following basic example of an implementation of a optimization solver operating on a given model.
Let's say we have a function solve
that operates on a model and mutates its state.
The argument of the function can be any model that implements the Model
trait :
#![allow(unused)] fn main() { pub trait Model { fn set_variables(&mut self, inputs: &Vec<f64>); fn compute(&mut self); fn get_results(&self) -> Vec<f64>; } pub fn solve<T: Model>(model: &mut T) { println!("Magic solver that mutates the model into a resolved state"); } }
Let's assume we have the following constraints:
- We cannot change that code as it runs on many Rust models.
- We also have many Python models that cannot be solved as this solver is not available in that language. Rewriting it in Python would be cumbersome and error-prone, as everything is already available in Rust.
How could we expose this solver to Python thanks to PyO3 ?
Implementation of the trait bounds for the Python class
If a Python class implements the same three methods as the Model
trait, it seems logical it could be adapted to use the solver.
However, it is not possible to pass a PyObject
to it as it does not implement the Rust trait (even if the Python model has the required methods).
In order to implement the trait, we must write a wrapper around the calls in Rust to the Python model. The method signatures must be the same as the trait, keeping in mind that the Rust trait cannot be changed for the purpose of making the code available in Python.
The Python model we want to expose is the following one, which already contains all the required methods:
class Model:
def set_variables(self, inputs):
self.inputs = inputs
def compute(self):
self.results = [elt**2 - 3 for elt in self.inputs]
def get_results(self):
return self.results
The following wrapper will call the Python model from Rust, using a struct to hold the model as a PyAny
object:
#![allow(unused)] fn main() { use pyo3::prelude::*; use pyo3::types::PyAny; pub trait Model { fn set_variables(&mut self, inputs: &Vec<f64>); fn compute(&mut self); fn get_results(&self) -> Vec<f64>; } struct UserModel { model: Py<PyAny>, } impl Model for UserModel { fn set_variables(&mut self, var: &Vec<f64>) { println!("Rust calling Python to set the variables"); Python::with_gil(|py| { let values: Vec<f64> = var.clone(); let list: PyObject = values.into_py(py); let py_model = self.model.as_ref(py); py_model .call_method("set_variables", (list,), None) .unwrap(); }) } fn get_results(&self) -> Vec<f64> { println!("Rust calling Python to get the results"); Python::with_gil(|py| { self.model .as_ref(py) .call_method("get_results", (), None) .unwrap() .extract() .unwrap() }) } fn compute(&mut self) { println!("Rust calling Python to perform the computation"); Python::with_gil(|py| { self.model .as_ref(py) .call_method("compute", (), None) .unwrap(); }) } } }
Now that this bit is implemented, let's expose the model wrapper to Python. Let's add the PyO3 annotations and add a constructor:
#![allow(unused)] fn main() { pub trait Model { fn set_variables(&mut self, inputs: &Vec<f64>); fn compute(&mut self); fn get_results(&self) -> Vec<f64>; } use pyo3::prelude::*; use pyo3::types::PyAny; #[pyclass] struct UserModel { model: Py<PyAny>, } #[pymodule] fn trait_exposure(_py: Python, m: &PyModule) -> PyResult<()> { m.add_class::<UserModel>()?; Ok(()) } #[pymethods] impl UserModel { #[new] pub fn new(model: Py<PyAny>) -> Self { UserModel { model } } } }
Now we add the PyO3 annotations to the trait implementation:
#[pymethods]
impl Model for UserModel {
// the previous trait implementation
}
However, the previous code will not compile. The compilation error is the following one:
error: #[pymethods] cannot be used on trait impl blocks
That's a bummer! However, we can write a second wrapper around these functions to call them directly. This wrapper will also perform the type conversions between Python and Rust.
#![allow(unused)] fn main() { use pyo3::prelude::*; use pyo3::types::PyAny; pub trait Model { fn set_variables(&mut self, inputs: &Vec<f64>); fn compute(&mut self); fn get_results(&self) -> Vec<f64>; } #[pyclass] struct UserModel { model: Py<PyAny>, } impl Model for UserModel { fn set_variables(&mut self, var: &Vec<f64>) { println!("Rust calling Python to set the variables"); Python::with_gil(|py| { let values: Vec<f64> = var.clone(); let list: PyObject = values.into_py(py); let py_model = self.model.as_ref(py); py_model .call_method("set_variables", (list,), None) .unwrap(); }) } fn get_results(&self) -> Vec<f64> { println!("Rust calling Python to get the results"); Python::with_gil(|py| { self.model .as_ref(py) .call_method("get_results", (), None) .unwrap() .extract() .unwrap() }) } fn compute(&mut self) { println!("Rust calling Python to perform the computation"); Python::with_gil(|py| { self.model .as_ref(py) .call_method("compute", (), None) .unwrap(); }) } } #[pymethods] impl UserModel { pub fn set_variables(&mut self, var: Vec<f64>) { println!("Set variables from Python calling Rust"); Model::set_variables(self, &var) } pub fn get_results(&mut self) -> Vec<f64> { println!("Get results from Python calling Rust"); Model::get_results(self) } pub fn compute(&mut self) { println!("Compute from Python calling Rust"); Model::compute(self) } } }
This wrapper handles the type conversion between the PyO3 requirements and the trait. In order to meet PyO3 requirements, this wrapper must:
- return an object of type
PyResult
- use only values, not references in the method signatures
Let's run the file python file:
class Model:
def set_variables(self, inputs):
self.inputs = inputs
def compute(self):
self.results = [elt**2 - 3 for elt in self.inputs]
def get_results(self):
return self.results
if __name__=="__main__":
import trait_exposure
myModel = Model()
my_rust_model = trait_exposure.UserModel(myModel)
my_rust_model.set_variables([2.0])
print("Print value from Python: ", myModel.inputs)
my_rust_model.compute()
print("Print value from Python through Rust: ", my_rust_model.get_results())
print("Print value directly from Python: ", myModel.get_results())
This outputs:
Set variables from Python calling Rust
Set variables from Rust calling Python
Print value from Python: [2.0]
Compute from Python calling Rust
Compute from Rust calling Python
Get results from Python calling Rust
Get results from Rust calling Python
Print value from Python through Rust: [1.0]
Print value directly from Python: [1.0]
We have now successfully exposed a Rust model that implements the Model
trait to Python!
We will now expose the solve
function, but before, let's talk about types errors.
Type errors in Python
What happens if you have type errors when using Python and how can you improve the error messages?
Wrong types in Python function arguments
Let's assume in the first case that you will use in your Python file my_rust_model.set_variables(2.0)
instead of my_rust_model.set_variables([2.0])
.
The Rust signature expects a vector, which corresponds to a list in Python. What happens if instead of a vector, we pass a single value ?
At the execution of Python, we get :
File "main.py", line 15, in <module>
my_rust_model.set_variables(2)
TypeError
It is a type error and Python points to it, so it's easy to identify and solve.
Wrong types in Python method signatures
Let's assume now that the return type of one of the methods of our Model class is wrong, for example the get_results
method that is expected to return a Vec<f64>
in Rust, a list in Python.
class Model:
def set_variables(self, inputs):
self.inputs = inputs
def compute(self):
self.results = [elt**2 -3 for elt in self.inputs]
def get_results(self):
return self.results[0]
#return self.results <-- this is the expected output
This call results in the following panic:
pyo3_runtime.PanicException: called `Result::unwrap()` on an `Err` value: PyErr { type: Py(0x10dcf79f0, PhantomData) }
This error code is not helpful for a Python user that does not know anything about Rust, or someone that does not know PyO3 was used to interface the Rust code.
However, as we are responsible for making the Rust code available to Python, we can do something about it.
The issue is that we called unwrap
anywhere we could, and therefore any panic from PyO3 will be directly forwarded to the end user.
Let's modify the code performing the type conversion to give a helpful error message to the Python user:
We used in our get_results
method the following call that performs the type conversion:
#![allow(unused)] fn main() { use pyo3::prelude::*; use pyo3::types::PyAny; pub trait Model { fn set_variables(&mut self, inputs: &Vec<f64>); fn compute(&mut self); fn get_results(&self) -> Vec<f64>; } #[pyclass] struct UserModel { model: Py<PyAny>, } impl Model for UserModel { fn get_results(&self) -> Vec<f64> { println!("Rust calling Python to get the results"); Python::with_gil(|py| { self.model .as_ref(py) .call_method("get_results", (), None) .unwrap() .extract() .unwrap() }) } fn set_variables(&mut self, var: &Vec<f64>) { println!("Rust calling Python to set the variables"); Python::with_gil(|py| { let values: Vec<f64> = var.clone(); let list: PyObject = values.into_py(py); let py_model = self.model.as_ref(py); py_model .call_method("set_variables", (list,), None) .unwrap(); }) } fn compute(&mut self) { println!("Rust calling Python to perform the computation"); Python::with_gil(|py| { self.model .as_ref(py) .call_method("compute", (), None) .unwrap(); }) } } }
Let's break it down in order to perform better error handling:
#![allow(unused)] fn main() { use pyo3::prelude::*; use pyo3::types::PyAny; pub trait Model { fn set_variables(&mut self, inputs: &Vec<f64>); fn compute(&mut self); fn get_results(&self) -> Vec<f64>; } #[pyclass] struct UserModel { model: Py<PyAny>, } impl Model for UserModel { fn get_results(&self) -> Vec<f64> { println!("Get results from Rust calling Python"); Python::with_gil(|py| { let py_result: &PyAny = self .model .as_ref(py) .call_method("get_results", (), None) .unwrap(); if py_result.get_type().name() != "list" { panic!("Expected a list for the get_results() method signature, got {}", py_result.get_type().name()); } py_result.extract() }) .unwrap() } fn set_variables(&mut self, var: &Vec<f64>) { println!("Rust calling Python to set the variables"); Python::with_gil(|py| { let values: Vec<f64> = var.clone(); let list: PyObject = values.into_py(py); let py_model = self.model.as_ref(py); py_model .call_method("set_variables", (list,), None) .unwrap(); }) } fn compute(&mut self) { println!("Rust calling Python to perform the computation"); Python::with_gil(|py| { self.model .as_ref(py) .call_method("compute", (), None) .unwrap(); }) } } }
By doing so, you catch the result of the Python computation and check its type in order to be able to deliver a better error message before performing the unwrapping.
Of course, it does not cover all the possible wrong outputs: the user could return a list of strings instead of a list of floats. In this case, a runtime panic would still occur due to PyO3, but with an error message much more difficult to decipher for non-rust user.
It is up to the developer exposing the rust code to decide how much effort to invest into Python type error handling and improved error messages.
The final code
Now let's expose the solve()
function to make it available from Python.
It is not possible to directly expose the solve
function to Python, as the type conversion cannot be performed.
It requires an object implementing the Model
trait as input.
However, the UserModel
already implements this trait.
Because of this, we can write a function wrapper that takes the UserModel
--which has already been exposed to Python--as an argument in order to call the core function solve
.
It is also required to make the struct public.
#![allow(unused)] fn main() { use pyo3::prelude::*; use pyo3::wrap_pyfunction; use pyo3::types::PyAny; pub trait Model { fn set_variables(&mut self, var: &Vec<f64>); fn get_results(&self) -> Vec<f64>; fn compute(&mut self); } pub fn solve<T: Model>(model: &mut T) { println!("Magic solver that mutates the model into a resolved state"); } #[pyfunction] #[name = "solve"] pub fn solve_wrapper(model: &mut UserModel) { solve(model); } #[pyclass] pub struct UserModel { model: Py<PyAny>, } #[pymodule] fn trait_exposure(_py: Python, m: &PyModule) -> PyResult<()> { m.add_class::<UserModel>()?; m.add_function(wrap_pyfunction!(solve_wrapper, m)?)?; Ok(()) } #[pymethods] impl UserModel { #[new] pub fn new(model: Py<PyAny>) -> Self { UserModel { model } } pub fn set_variables(&mut self, var: Vec<f64>) { println!("Set variables from Python calling Rust"); Model::set_variables(self, &var) } pub fn get_results(&mut self) -> Vec<f64> { println!("Get results from Python calling Rust"); Model::get_results(self) } pub fn compute(&mut self) { Model::compute(self) } } impl Model for UserModel { fn set_variables(&mut self, var: &Vec<f64>) { println!("Rust calling Python to set the variables"); Python::with_gil(|py| { let values: Vec<f64> = var.clone(); let list: PyObject = values.into_py(py); let py_model = self.model.as_ref(py); py_model .call_method("set_variables", (list,), None) .unwrap(); }) } fn get_results(&self) -> Vec<f64> { println!("Get results from Rust calling Python"); Python::with_gil(|py| { let py_result: &PyAny = self .model .as_ref(py) .call_method("get_results", (), None) .unwrap(); if py_result.get_type().name() != "list" { panic!("Expected a list for the get_results() method signature, got {}", py_result.get_type().name()); } py_result.extract() }) .unwrap() } fn compute(&mut self) { println!("Rust calling Python to perform the computation"); Python::with_gil(|py| { self.model .as_ref(py) .call_method("compute", (), None) .unwrap(); }) } } }
Logging
It is desirable if both the Python and Rust parts of the application end up logging using the same configuration into the same place.
This section of the guide briefly discusses how to connect the two languages'
logging ecosystems together. The recommended way for Python extension modules is
to configure Rust's logger to send log messages to Python using the pyo3-log
crate. For users who want to do the opposite and send Python log messages to
Rust, see the note at the end of this guide.
Using pyo3-log
to send Rust log messages to Python
The pyo3-log crate allows sending the messages from the Rust side to Python's logging system. This is mostly suitable for writing native extensions for Python programs.
Use pyo3_log::init
to install the logger in its default configuration.
It's also possible to tweak its configuration (mostly to tune its performance).
#![allow(unused)] fn main() { use log::info; use pyo3::prelude::*; use pyo3::wrap_pyfunction; #[pyfunction] fn log_something() { // This will use the logger installed in `my_module` to send the `info` // message to the Python logging facilities. info!("Something!"); } #[pymodule] fn my_module(_py: Python<'_>, m: &PyModule) -> PyResult<()> { // A good place to install the Rust -> Python logger. pyo3_log::init(); m.add_function(wrap_pyfunction!(log_something))?; Ok(()) } }
Then it is up to the Python side to actually output the messages somewhere.
import logging
import my_module
FORMAT = '%(levelname)s %(name)s %(asctime)-15s %(filename)s:%(lineno)d %(message)s'
logging.basicConfig(format=FORMAT)
logging.getLogger().setLevel(logging.INFO)
my_module.log_something()
It is important to initialize the Python loggers first, before calling any Rust functions that may log. This limitation can be worked around if it is not possible to satisfy, read the documentation about caching.
The Python to Rust direction
To best of our knowledge nobody implemented the reverse direction yet, though it
should be possible. If interested, the pyo3
community would be happy to
provide guidance.
Changelog
All notable changes to this project will be documented in this file. For help with updating to new PyO3 versions, please see the migration guide.
The format is based on Keep a Changelog and this project adheres to Semantic Versioning.
0.12.4 - 2020-11-28
- Fix reference count bug in implementation of
From<Py<T>>
forPyObject
, a regression introduced in PyO3 0.12. #1297
0.12.3 - 2020-10-12
Fixed
- Fix support for Rust versions 1.39 to 1.44, broken by an incorrect internal update to paste 1.0 which was done in PyO3 0.12.2. #1234
0.12.2 - 2020-10-12
Added
- Add support for keyword-only arguments without default values in
#[pyfunction]
. #1209 - Add
Python::check_signals()
as a safe a wrapper forPyErr_CheckSignals()
. #1214
Fixed
- Fix invalid document for protocol methods. #1169
- Hide docs of PyO3 private implementation details in
pyo3::class::methods
. #1169 - Fix unnecessary rebuild on PATH changes when the python interpreter is provided by PYO3_PYTHON. #1231
0.12.1 - 2020-09-16
Fixed
- Fix building for a 32-bit Python on 64-bit Windows with a 64-bit Rust toolchain. #1179
- Fix building on platforms where
c_char
isu8
. #1182
0.12.0 - 2020-09-12
Added
- Add FFI definitions
Py_FinalizeEx
,PyOS_getsig
, andPyOS_setsig
. #1021 - Add
PyString::to_str
for accessingPyString
as&str
. #1023 - Add
Python::with_gil
for executing a closure with the Python GIL. #1037 - Add type information to failures in
PyAny::downcast()
. #1050 - Implement
Debug
forPyIterator
. #1051 - Add
PyBytes::new_with
andPyByteArray::new_with
for initialisingbytes
andbytearray
objects using a closure. #1074 - Add
#[derive(FromPyObject)]
macro for enums and structs. #1065 - Add
Py::as_ref
andPy::into_ref
for convertingPy<T>
to&T
. #1098 - Add ability to return
Result
types other thanPyResult
from#[pyfunction]
,#[pymethod]
and#[pyproto]
functions. #1106. - Implement
ToPyObject
,IntoPy
, andFromPyObject
for hashbrown'sHashMap
andHashSet
types (requires thehashbrown
feature). #1114 - Add
#[pyfunction(pass_module)]
and#[pyfn(pass_module)]
to pass the module object as the first function argument. #1143 - Add
PyModule::add_function
andPyModule::add_submodule
as typed alternatives toPyModule::add_wrapped
. #1143 - Add native
PyCFunction
andPyFunction
types. #1163
Changed
- Rework exception types: #1024 #1115
- Rename exception types from e.g.
RuntimeError
toPyRuntimeError
. The old names continue to exist but are deprecated. - Exception objects are now accessible as
&T
orPy<T>
, just like other Python-native types. - Rename
PyException::py_err()
toPyException::new_err()
. - Rename
PyUnicodeDecodeErr::new_err()
toPyUnicodeDecodeErr::new()
. - Remove
PyStopIteration::stop_iteration()
.
- Rename exception types from e.g.
- Require
T: Send
for the return valueT
ofPython::allow_threads
. #1036 - Rename
PYTHON_SYS_EXECUTABLE
toPYO3_PYTHON
. The old name will continue to work (undocumented) but will be removed in a future release. #1039 - Remove
unsafe
from signature ofPyType::as_type_ptr
. #1047 - Change return type of
PyIterator::from_object
toPyResult<PyIterator>
(wasResult<PyIterator, PyDowncastError>
). #1051 IntoPy
is no longer implied byFromPy
. #1063- Change
PyObject
to be a type alias forPy<PyAny>
. #1063 - Rework
PyErr
to be compatible with thestd::error::Error
trait: #1067 #1115- Implement
Display
,Error
,Send
andSync
forPyErr
andPyErrArguments
. - Add
PyErr::instance()
for accessingPyErr
as&PyBaseException
. PyErr
's fields are now an implementation detail. The equivalent values can be accessed withPyErr::ptype()
,PyErr::pvalue()
andPyErr::ptraceback()
.- Change receiver of
PyErr::print()
andPyErr::print_and_set_sys_last_vars()
to&self
(wasself
). - Remove
PyErrValue
,PyErr::from_value
,PyErr::into_normalized()
, andPyErr::normalize()
. - Remove
PyException::into()
. - Remove
Into<PyResult<T>>
forPyErr
andPyException
.
- Implement
- Change methods generated by
#[pyproto]
to returnNotImplemented
if Python should try a reversed operation. #1072 - Change argument to
PyModule::add
toimpl IntoPy<PyObject>
(wasimpl ToPyObject
). #1124
Removed
- Remove many exception and
PyErr
APIs; see the "changed" section above. #1024 #1067 #1115 - Remove
PyString::to_string
(use newPyString::to_str
). #1023 - Remove
PyString::as_bytes
. #1023 - Remove
Python::register_any
. #1023 - Remove
GILGuard::acquire
from the public API. UsePython::acquire_gil
orPython::with_gil
. #1036 - Remove the
FromPy
trait. #1063 - Remove the
AsPyRef
trait. #1098
Fixed
- Correct FFI definitions
Py_SetProgramName
andPy_SetPythonHome
to take*const
arguments (was*mut
). #1021 - Fix
FromPyObject
fornum_bigint::BigInt
for Python objects with an__index__
method. #1027 - Correct FFI definition
_PyLong_AsByteArray
to take*mut c_uchar
argument (was*const c_uchar
). #1029 - Fix segfault with
#[pyclass(dict, unsendable)]
. #1058 #1059 - Fix using
&Self
as an argument type for functions in a#[pymethods]
block. #1071 - Fix best-effort build against PyPy 3.6. #1092
- Fix many cases of lifetime elision in
#[pyproto]
implementations. #1093 - Fix detection of Python build configuration when cross-compiling. #1095
- Always link against libpython on android with the
extension-module
feature. #1095 - Fix the
+
operator not trying__radd__
when both__add__
and__radd__
are defined inPyNumberProtocol
(and similar for all other reversible operators). #1107 - Fix building with Anaconda python. #1175
0.11.1 - 2020-06-30
Added
#[pyclass(unsendable)]
. #1009
Changed
- Update
parking_lot
dependency to0.11
. #1010
0.11.0 - 2020-06-28
Added
- Support stable versions of Rust (>=1.39). #969
- Add FFI definition
PyObject_AsFileDescriptor
. #938 - Add
PyByteArray::data
,PyByteArray::as_bytes
, andPyByteArray::as_bytes_mut
. #967 - Add
GILOnceCell
to use in situations wherelazy_static
oronce_cell
can deadlock. #975 - Add
Py::borrow
,Py::borrow_mut
,Py::try_borrow
, andPy::try_borrow_mut
for accessing#[pyclass]
values. #976 - Add
IterNextOutput
andIterANextOutput
for returning from__next__
/__anext__
. #997
Changed
- Simplify internals of
#[pyo3(get)]
attribute. (Remove the hidden APIGetPropertyValue
.) #934 - Call
Py_Finalize
at exit to flush buffers, etc. #943 - Add type parameter to PyBuffer. #951
- Require
Send
bound for#[pyclass]
. #966 - Add
Python
argument to most methods onPyObject
andPy<T>
to ensure GIL safety. #970 - Change signature of
PyTypeObject::type_object()
- now takesPython
argument and returns&PyType
. #970 - Change return type of
PyTuple::slice()
andPyTuple::split_from()
fromPy<PyTuple>
to&PyTuple
. #970 - Change return type of
PyTuple::as_slice
to&[&PyAny]
. #971 - Rename
PyTypeInfo::type_object
totype_object_raw
, and addPython
argument. #975 - Update
num-complex
optional dependendency from0.2
to0.3
. #977 - Update
num-bigint
optional dependendency from0.2
to0.3
. #978 #[pyproto]
is re-implemented without specialization. #961PyClassAlloc::alloc
is renamed toPyClassAlloc::new
. #990#[pyproto]
methods can now have return valueT
orPyResult<T>
(previously onlyPyResult<T>
was supported). #996#[pyproto]
methods can now skip annotating the return type if it is()
. #998
Removed
- Remove
ManagedPyRef
(unused, and needs specialization) #930
Fixed
- Fix passing explicit
None
toOption<T>
argument#[pyfunction]
with a default value. #936 - Fix
PyClass.__new__
's not respecting subclasses when inherited by a Python class. #990 - Fix returning
Option<T>
from#[pyproto]
methods. #996 - Fix accepting
PyRef<Self>
andPyRefMut<Self>
to#[getter]
and#[setter]
methods. #999
0.10.1 - 2020-05-14
Fixed
- Fix deadlock in
Python::acquire_gil()
after dropping aPyObject
orPy<T>
. #924
0.10.0 - 2020-05-13
Added
- Add FFI definition
_PyDict_NewPresized
. #849 - Implement
IntoPy<PyObject>
forHashSet
andBTreeSet
. #864 - Add
PyAny::dir
method. #886 - Gate macros behind a
macros
feature (enabled by default). #897 - Add ability to define class attributes using
#[classattr]
on functions in#[pymethods]
. #905 - Implement
Clone
forPyObject
andPy<T>
. #908 - Implement
Deref<Target = PyAny>
for all builtin types. (PyList
,PyTuple
,PyDict
etc.) #911 - Implement
Deref<Target = PyAny>
forPyCell<T>
. #911 - Add
#[classattr]
support for associated constants in#[pymethods]
. #914
Changed
- Panics will now be raised as a Python
PanicException
. #797 - Change
PyObject
andPy<T>
reference counts to decrement immediately upon drop when the GIL is held. #851 - Allow
PyIterProtocol
methods to use eitherPyRef
orPyRefMut
as the receiver type. #856 - Change the implementation of
FromPyObject
forPy<T>
to apply to a wider range ofT
, including allT: PyClass
. #880 - Move all methods from the
ObjectProtocol
trait to thePyAny
struct. #911 - Remove need for
#![feature(specialization)]
in crates depending on PyO3. #917
Removed
- Remove
PyMethodsProtocol
trait. #889 - Remove
num-traits
dependency. #895 - Remove
ObjectProtocol
trait. #911 - Remove
PyAny::None
. Users should usePython::None
instead. #911 - Remove all
*ProtocolImpl
traits. #917
Fixed
- Fix support for
__radd__
and other__r*__
methods as implementations for Python mathematical operators. #839 - Fix panics during garbage collection when traversing objects that were already mutably borrowed. #855
- Prevent
&'static
references to Python objects as arguments to#[pyfunction]
and#[pymethods]
. #869 - Fix lifetime safety bug with
AsPyRef::as_ref
. #876 - Fix
#[pyo3(get)]
attribute onPy<T>
fields. #880 - Fix segmentation faults caused by functions such as
PyList::get_item
returning borrowed objects when it was not safe to do so. #890 - Fix segmentation faults caused by nested
Python::acquire_gil
calls creating dangling references. #893 - Fix segmentatation faults when a panic occurs during a call to
Python::allow_threads
. #912
0.9.2 - 2020-04-09
Added
FromPyObject
implementations forHashSet
andBTreeSet
. #842
Fixed
- Correctly detect 32bit architecture. #830
0.9.1 - 2020-03-23
Fixed
0.9.0 - 2020-03-19
Added
PyCell
, which has RefCell-like features. #770PyClass
,PyLayout
,PyClassInitializer
. #683- Implemented
IntoIterator
forPySet
andPyFrozenSet
. #716 FromPyObject
is now automatically implemented forT: Clone
pyclasses. #730#[pyo3(get)]
and#[pyo3(set)]
will now use the Rust doc-comment from the field for the Python property. #755#[setter]
functions may now take an argument ofPyo3::Python
. #760PyTypeInfo::BaseLayout
andPyClass::BaseNativeType
. #770PyDowncastImpl
. #770- Implement
FromPyObject
andIntoPy<PyObject>
traits for arrays (up to 32). #778 migration.md
andtypes.md
in the guide. #795, #802ffi::{_PyBytes_Resize, _PyDict_Next, _PyDict_Contains, _PyDict_GetDictPtr}
. #820
Changed
#[new]
does not takePyRawObject
and can returnSelf
. #683- The blanket implementations for
FromPyObject
for&T
and&mut T
are no longer specializable. ImplementPyTryFrom
for your type to control the behavior ofFromPyObject::extract()
for your types. #713 - The implementation for
IntoPy<U> for T
whereU: FromPy<T>
is no longer specializable. Control the behavior of this via the implementation ofFromPy
. #713 - Use
parking_lot::Mutex
instead ofspin::Mutex
. #734 - Bumped minimum Rust version to
1.42.0-nightly 2020-01-21
. #761 PyRef
andPyRefMut
are renewed forPyCell
. #770- Some new FFI functions for Python 3.8. #784
PyAny
is now on the top level module and prelude. #816
Removed
PyRawObject
. #683PyNoArgsFunction
. #741initialize_type()
. To set the module name for a#[pyclass]
, use themodule
argument to the macro. #751AsPyRef::as_mut/with/with_mut/into_py/into_mut_py
. #770PyTryFrom::try_from_mut/try_from_mut_exact/try_from_mut_unchecked
. #770Python::mut_from_owned_ptr/mut_from_borrowed_ptr
. #770ObjectProtocol::get_base/get_mut_base
. #770
Fixed
- Fixed unsoundness of subclassing. #683.
- Clear error indicator when the exception is handled on the Rust side. #719
- Usage of raw identifiers with
#[pyo3(set)]
. #745 - Usage of
PyObject
with#[pyo3(get)]
. #760 #[pymethods]
used in conjunction with#[cfg]
. #769"*"
in a#[pyfunction()]
argument list incorrectly accepting any number of positional arguments (useargs = "*"
when this behaviour is desired). #792PyModule::dict
. #809- Fix the case where
DESCRIPTION
is not null-terminated. #822
[0.8.5] - 2020-01-05
Added
- Implemented
FromPyObject
forHashMap
andBTreeMap
- Support for
#[name = "foo"]
attribute for#[pyfunction]
and in#[pymethods]
. #692
0.8.4 - 2019-12-14
Added
- Support for
#[text_signature]
attribute. #675
0.8.3 - 2019-11-23
Removed
#[init]
is removed. #658
Fixed
- Now all
&Py~
types have!Send
bound. #655 - Fix a compile error raised by the stabilization of
!
type. #672.
0.8.2 - 2019-10-27
Added
- FFI compatibility for PEP 590 Vectorcall. #641
Fixed
- Fix PySequenceProtocol::set_item. #624
- Fix a corner case of BigInt::FromPyObject. #630
- Fix index errors in parameter conversion. #631
- Fix handling of invalid utf-8 sequences in
PyString::as_bytes
. #639 andPyString::to_string_lossy
#642. - Remove
__contains__
and__iter__
from PyMappingProtocol. #644 - Fix proc-macro definition of PySetAttrProtocol. #645
0.8.1 - 2019-10-08
Added
- Conversion between num-bigint and Python int. #608
Fixed
- Make sure the right Python interpreter is used in OSX builds. #604
- Patch specialization being broken by Rust 1.40. #614
- Fix a segfault around PyErr. #597
0.8.0 - 2019-09-16
Added
module
argument topyclass
macro. #499py_run!
macro #512- Use existing fields and methods before calling custom getattr. #505
PyBytes
can now be indexed just likeVec<u8>
- Implement
IntoPy<PyObject>
forPyRef
andPyRefMut
.
Changed
- Implementing the Using the
gc
parameter forpyclass
(e.g.#[pyclass(gc)]
) without implementing theclass::PyGCProtocol
trait is now a compile-time error. Failing to implement this trait could lead to segfaults. #532 PyByteArray::data
has been replaced withPyDataArray::to_vec
because returning a&[u8]
is unsound. (See this comment for a great write-up for why that was unsound)- Replace
mashup
withpaste
. GILPool
gained aPython
marker to prevent it from being misused to release Python objects without the GIL held.
Removed
IntoPyObject
was replaced withIntoPy<PyObject>
#[pyclass(subclass)]
is hidden aunsound-subclass
feature because it's causing segmentation faults.
Fixed
- More readable error message for generics in pyclass #503
0.7.0 - 2019-05-26
Added
- PyPy support by omerbenamram in #393
- Have
PyModule
generate an index of its members (__all__
list). - Allow
slf: PyRef<T>
for pyclass(#419) - Allow to use lifetime specifiers in
pymethods
- Add
marshal
module. #460
Changed
Python::run
returnsPyResult<()>
instead ofPyResult<&PyAny>
.- Methods decorated with
#[getter]
and#[setter]
can now omit wrapping the result type inPyResult
if they don't raise exceptions.
Fixed
type_object::PyTypeObject
has been marked unsafe because breaking the contracttype_object::PyTypeObject::init_type
can lead to UB.- Fixed automatic derive of
PySequenceProtocol
implementation in #423. - Capitalization & better wording to README.md.
- Docstrings of properties is now properly set using the doc of the
#[getter]
method. - Fixed issues with
pymethods
crashing on doc comments containing double quotes. PySet::new
andPyFrozenSet::new
now returnPyResult<&Py[Frozen]Set>
; exceptions are raised if the items are not hashable.- Fixed building using
venv
on Windows. PyTuple::new
now returns&PyTuple
instead ofPy<PyTuple>
.- Fixed several issues with argument parsing; notable, the
*args
and**kwargs
tuple/dict now doesn't contain arguments that are otherwise assigned to parameters.
0.6.0 - 2019-03-28
Regressions
- Currently, #341 causes
cargo test
to fail with weird linking errors when theextension-module
feature is activated. For now you can work around this by making theextension-module
feature optional and running the tests withcargo test --no-default-features
:
[dependencies.pyo3]
version = "0.6.0"
[features]
extension-module = ["pyo3/extension-module"]
default = ["extension-module"]
Added
- Added a
wrap_pymodule!
macro similar to the existingwrap_pyfunction!
macro. Only available on python 3 - Added support for cross compiling (e.g. to arm v7) by mtp401 in #327. See the "Cross Compiling" section in the "Building and Distribution" chapter of the guide for more details.
- The
PyRef
andPyRefMut
types, which allow to differentiate between an instance of a rust struct on the rust heap and an instance that is embedded inside a python object. By kngwyu in #335 - Added
FromPy<T>
andIntoPy<T>
which are equivalent toFrom<T>
andInto<T>
except that they require a gil token. - Added
ManagedPyRef
, which should eventually replaceToBorrowedObject
.
Changed
- Renamed
PyObjectRef
toPyAny
in #388 - Renamed
add_function
toadd_wrapped
as it now also supports modules. - Renamed
#[pymodinit]
to#[pymodule]
py.init(|| value)
becomesPy::new(value)
py.init_ref(|| value)
becomesPyRef::new(value)
py.init_mut(|| value)
becomesPyRefMut::new(value)
.PyRawObject::init
is now infallible, e.g. it returns()
instead ofPyResult<()>
.- Renamed
py_exception!
tocreate_exception!
and refactored the error macros. - Renamed
wrap_function!
towrap_pyfunction!
- Renamed
#[prop(get, set)]
to#[pyo3(get, set)]
#[pyfunction]
now supports the same arguments as#[pyfn()]
- Some macros now emit proper spanned errors instead of panics.
- Migrated to the 2018 edition
crate::types::exceptions
moved tocrate::exceptions
- Replace
IntoPyTuple
withIntoPy<Py<PyTuple>>
. IntoPyPointer
andToPyPointer
moved into the crate root.class::CompareOp
moved intoclass::basic::CompareOp
- PyTypeObject is now a direct subtrait PyTypeCreate, removing the old cyclical implementation in #350
- Add
PyList::{sort, reverse}
by chr1sj0nes in #357 and #358 - Renamed the
typeob
module totype_object
Removed
PyToken
was removed due to unsoundness (See #94).- Removed the unnecessary type parameter from
PyObjectAlloc
NoArgs
. Just use an empty tuplePyObjectWithGIL
.PyNativeType
is sufficient now that PyToken is removed.
Fixed
- A soudness hole where every instances of a
#[pyclass]
struct was considered to be part of a python object, even though you can create instances that are not part of the python heap. This was fixed throughPyRef
andPyRefMut
. - Fix kwargs support in #328.
- Add full support for
__dict__
in #403.
0.5.3 - 2019-01-04
Fixed
- Fix memory leak in ArrayList by kngwyu #316
0.5.2 - 2018-11-25
Fixed
- Fix undeterministic segfaults when creating many objects by kngwyu in #281
[0.5.1] - 2018-11-24
Yanked
0.5.0 - 2018-11-11
Added
#[pyclass]
objects can now be returned from rust functionsPyComplex
by kngwyu in #226PyDict::from_sequence()
, equivalent todict([(key, val), ...])
- Bindings for the
datetime
standard library types:PyDate
,PyTime
,PyDateTime
,PyTzInfo
,PyDelta
with associatedffi
types, by pganssle #200. PyString
,PyUnicode
, andPyBytes
now have anas_bytes()
method that returns&[u8]
.PyObjectProtocol::get_type_ptr()
by ijl in #242
Changed
- Removes the types from the root module and the prelude. They now live in
pyo3::types
instead. - All exceptions are consturcted with
py_err
instead ofnew
, as they returnPyErr
and notSelf
. as_mut
and friends take and&mut self
instead of&self
ObjectProtocol::call
now takes anOption<&PyDict>
for the kwargs instead of anIntoPyDictPointer
.IntoPyDictPointer
was replace byIntoPyDict
which doesn't convertPyDict
itself anymore and returns aPyDict
instead of*mut PyObject
.PyTuple::new
now takes anIntoIterator
instead of a slice- Updated to syn 0.15
- Splitted
PyTypeObject
intoPyTypeObject
without the create method andPyTypeCreate
with requiresPyObjectAlloc<Self> + PyTypeInfo + Sized
. - Ran
cargo edition --fix
which prefixed path withcrate::
for rust 2018 - Renamed
async
topyasync
as async will be a keyword in the 2018 edition. - Starting to use
NonNull<*mut PyObject>
for Py and PyObject by ijl #260
Removed
- Removed most entries from the prelude. The new prelude is small and clear.
- Slowly removing specialization uses
PyString
,PyUnicode
, andPyBytes
no longer have adata()
method (replaced byas_bytes()
) andPyStringData
has been removed.- The pyobject_extract macro
Fixed
- Added an explanation that the GIL can temporarily be released even while holding a GILGuard.
- Lots of clippy errors
- Fix segfault on calling an unknown method on a PyObject
- Work around a bug in the rust compiler by kngwyu #252
- Fixed a segfault with subclassing pyo3 create classes and using
__class__
by kngwyu #263
0.4.1 - 2018-08-20
Changed
- PyTryFrom's error is always to
PyDowncastError
Fixed
- Fixed compilation on nightly since
use_extern_macros
was stabilized
Removed
- The pyobject_downcast macro
0.4.0 - 2018-07-30
Changed
- Merged both examples into one
- Rustfmt all the things :heavy_check_mark:
- Switched to Keep a Changelog
Removed
- Conversions from tuples to PyDict due to rust-lang/rust#52050
0.3.2 - 2018-07-22
Changed
- Replaced
concat_idents
with mashup
0.3.1 - 2018-07-18
Fixed
- Fixed scoping bug in pyobject_native_type that would break rust-numpy
0.3.0 - 2018-07-18
Added
- A few internal macros became part of the public api (#155, #186)
- Always clone in getters. This allows using the get-annotation on all Clone-Types
Changed
- Upgraded to syn 0.14 which means much better error messages :tada:
- 128 bit integer support by kngwyu (#137)
proc_macro
has been stabilized on nightly (rust-lang/rust#52081). This means that we can remove theproc_macro
feature, but now we need theuse_extern_macros
from the 2018 edition instead.- All proc macro are now prefixed with
py
and live in the prelude. This means you can use#[pyclass]
,#[pymethods]
,#[pyproto]
,#[pyfunction]
and#[pymodinit]
directly, at least after ause pyo3::prelude::*
. They were also moved into a module calledproc_macro
. You shouldn't use#[pyo3::proc_macro::pyclass]
or other longer paths in attributes becauseproc_macro_path_invoc
isn't going to be stabilized soon. - Renamed the
base
option in thepyclass
macro toextends
. #[pymodinit]
uses the function name as module name, unless the name is overrriden with#[pymodinit(name)]
- The guide is now properly versioned.
0.2.7 - 2018-05-18
Fixed
- Fix nightly breakage with proc_macro_path
0.2.6 - 2018-04-03
Fixed
- Fix compatibility with TryFrom trait #137
0.2.5 - 2018-02-21
Added
- CPython 3.7 support
Fixed
- Embedded CPython 3.7b1 crashes on initialization #110
- Generated extension functions are weakly typed #108
- call_method*() crashes when the method does not exist #113
- Allow importing exceptions from nested modules #116
0.2.4 - 2018-01-19
Added
- Allow to get mutable ref from PyObject #106
- Drop
RefFromPyObject
trait - Add Python::register_any() method
Fixed
- Fix impl
FromPyObject
forPy<T>
- Mark method that work with raw pointers as unsafe #95
0.2.3 - 11-27-2017
Changed
- Rustup to 1.23.0-nightly 2017-11-07
Fixed
- Proper
c_char
usage #93
Removed
- Remove use of now unneeded 'AsciiExt' trait
0.2.2 - 09-26-2017
Changed
- Rustup to 1.22.0-nightly 2017-09-30
0.2.1 - 09-26-2017
Fixed
- Fix rustc const_fn nightly breakage
0.2.0 - 08-12-2017
Added
- Added inheritance support #15
- Added weakref support #56
- Added subclass support #64
- Added
self.__dict__
supoort #68 - Added
pyo3::prelude
module #70 - Better
Iterator
support for PyTuple, PyList, PyDict #75 - Introduce IntoPyDictPointer similar to IntoPyTuple #69
Changed
- Allow to add gc support without implementing PyGCProtocol #57
- Refactor
PyErr
implementation. Droppy
parameter from constructor.
0.1.0 - 07-23-2017
Added
- Initial release