PEP 673 – Self Type
- Author:
- Pradeep Kumar Srinivasan <gohanpra at gmail.com>, James Hilton-Balfe <gobot1234yt at gmail.com>
- Sponsor:
- Jelle Zijlstra <jelle.zijlstra at gmail.com>
- Discussions-To:
- Typing-SIG list
- Status:
- Accepted
- Type:
- Standards Track
- Topic:
- Typing
- Created:
- 10-Nov-2021
- Python-Version:
- 3.11
- Post-History:
- 17-Nov-2021
- Resolution:
- Python-Dev thread
Abstract
This PEP introduces a simple and intuitive way to annotate methods that return
an instance of their class. This behaves the same as the TypeVar
-based
approach specified in PEP 484
but is more concise and easier to follow.
Motivation
A common use case is to write a method that returns an instance of the same
class, usually by returning self
.
class Shape:
def set_scale(self, scale: float):
self.scale = scale
return self
Shape().set_scale(0.5) # => should be Shape
One way to denote the return type is to specify it as the current class, say,
Shape
. Using the method makes the type checker infer the type Shape
,
as expected.
class Shape:
def set_scale(self, scale: float) -> Shape:
self.scale = scale
return self
Shape().set_scale(0.5) # => Shape
However, when we call set_scale
on a subclass of Shape
, the type
checker still infers the return type to be Shape
. This is problematic in
situations such as the one shown below, where the type checker will return an
error because we are trying to use attributes or methods not present on the
base class.
class Circle(Shape):
def set_radius(self, r: float) -> Circle:
self.radius = r
return self
Circle().set_scale(0.5) # *Shape*, not Circle
Circle().set_scale(0.5).set_radius(2.7)
# => Error: Shape has no attribute set_radius
The present workaround for such instances is to define a TypeVar
with the
base class as the bound and use it as the annotation for the self
parameter and the return type:
from typing import TypeVar
TShape = TypeVar("TShape", bound="Shape")
class Shape:
def set_scale(self: TShape, scale: float) -> TShape:
self.scale = scale
return self
class Circle(Shape):
def set_radius(self, radius: float) -> Circle:
self.radius = radius
return self
Circle().set_scale(0.5).set_radius(2.7) # => Circle
Unfortunately, this is verbose and unintuitive. Because self
is usually
not explicitly annotated, the above solution doesn’t immediately come to mind,
and even if it does, it is very easy to go wrong by forgetting either the
bound on the TypeVar(bound="Shape")
or the annotation for self
.
This difficulty means that users often give up and either use fallback types
like Any
or just omit the type annotation completely, both of which make
the code less safe.
We propose a more intuitive and succinct way of expressing the above
intention. We introduce a special form Self
that stands for a type
variable bound to the encapsulating class. For situations such as the one
above, the user simply has to annotate the return type as Self
:
from typing import Self
class Shape:
def set_scale(self, scale: float) -> Self:
self.scale = scale
return self
class Circle(Shape):
def set_radius(self, radius: float) -> Self:
self.radius = radius
return self
By annotating the return type as Self
, we no longer have to declare a
TypeVar
with an explicit bound on the base class. The return type Self
mirrors the fact that the function returns self
and is easier to
understand.
As in the above example, the type checker will correctly infer the type of
Circle().set_scale(0.5)
to be Circle
, as expected.
Usage statistics
We analyzed popular
open-source projects and found that patterns like the above were used about
40% as often as popular types like dict
or Callable
. For example,
in typeshed alone, such “Self” types are used 523 times, compared to 1286 uses
of dict
and 1314 uses of Callable
as of October 2021.
This suggests that a Self
type will be used quite often and users will
benefit a lot from the simpler approach above.
Users of Python types have also frequently requested this feature, both on the proposal doc and on GitHub.
Specification
Use in Method Signatures
Self
used in the signature of a method is treated as if it were a
TypeVar
bound to the class.
from typing import Self
class Shape:
def set_scale(self, scale: float) -> Self:
self.scale = scale
return self
is treated equivalently to:
from typing import TypeVar
SelfShape = TypeVar("SelfShape", bound="Shape")
class Shape:
def set_scale(self: SelfShape, scale: float) -> SelfShape:
self.scale = scale
return self
This works the same for a subclass too:
class Circle(Shape):
def set_radius(self, radius: float) -> Self:
self.radius = radius
return self
which is treated equivalently to:
SelfCircle = TypeVar("SelfCircle", bound="Circle")
class Circle(Shape):
def set_radius(self: SelfCircle, radius: float) -> SelfCircle:
self.radius = radius
return self
One implementation strategy is to simply desugar the former to the latter in a
preprocessing step. If a method uses Self
in its signature, the type of
self
within a method will be Self
. In other cases, the type of
self
will remain the enclosing class.
Use in Classmethod Signatures
The Self
type annotation is also useful for classmethods that return
an instance of the class that they operate on. For example, from_config
in
the following snippet builds a Shape
object from a given config
.
class Shape:
def __init__(self, scale: float) -> None: ...
@classmethod
def from_config(cls, config: dict[str, float]) -> Shape:
return cls(config["scale"])
However, this means that Circle.from_config(...)
is inferred to return a
value of type Shape
, when in fact it should be Circle
:
class Circle(Shape):
def circumference(self) -> float: ...
shape = Shape.from_config({"scale": 7.0})
# => Shape
circle = Circle.from_config({"scale": 7.0})
# => *Shape*, not Circle
circle.circumference()
# Error: `Shape` has no attribute `circumference`
The current workaround for this is unintuitive and error-prone:
Self = TypeVar("Self", bound="Shape")
class Shape:
@classmethod
def from_config(
cls: type[Self], config: dict[str, float]
) -> Self:
return cls(config["scale"])
We propose using Self
directly:
from typing import Self
class Shape:
@classmethod
def from_config(cls, config: dict[str, float]) -> Self:
return cls(config["scale"])
This avoids the complicated cls: type[Self]
annotation and the TypeVar
declaration with a bound
. Once again, the latter code behaves equivalently
to the former code.
Use in Parameter Types
Another use for Self
is to annotate parameters that expect instances of
the current class:
Self = TypeVar("Self", bound="Shape")
class Shape:
def difference(self: Self, other: Self) -> float: ...
def apply(self: Self, f: Callable[[Self], None]) -> None: ...
We propose using Self
directly to achieve the same behavior:
from typing import Self
class Shape:
def difference(self, other: Self) -> float: ...
def apply(self, f: Callable[[Self], None]) -> None: ...
Note that specifying self: Self
is harmless, so some users may find it
more readable to write the above as:
class Shape:
def difference(self: Self, other: Self) -> float: ...
Use in Attribute Annotations
Another use for Self
is to annotate attributes. One example is where we
have a LinkedList
whose elements must be subclasses of the current class.
from dataclasses import dataclass
from typing import Generic, TypeVar
T = TypeVar("T")
@dataclass
class LinkedList(Generic[T]):
value: T
next: LinkedList[T] | None = None
# OK
LinkedList[int](value=1, next=LinkedList[int](value=2))
# Not OK
LinkedList[int](value=1, next=LinkedList[str](value="hello"))
However, annotating the next
attribute as LinkedList[T]
allows invalid
constructions with subclasses:
@dataclass
class OrdinalLinkedList(LinkedList[int]):
def ordinal_value(self) -> str:
return as_ordinal(self.value)
# Should not be OK because LinkedList[int] is not a subclass of
# OrdinalLinkedList, # but the type checker allows it.
xs = OrdinalLinkedList(value=1, next=LinkedList[int](value=2))
if xs.next:
print(xs.next.ordinal_value()) # Runtime Error.
We propose expressing this constraint using next: Self | None
:
from typing import Self
@dataclass
class LinkedList(Generic[T]):
value: T
next: Self | None = None
@dataclass
class OrdinalLinkedList(LinkedList[int]):
def ordinal_value(self) -> str:
return as_ordinal(self.value)
xs = OrdinalLinkedList(value=1, next=LinkedList[int](value=2))
# Type error: Expected OrdinalLinkedList, got LinkedList[int].
if xs.next is not None:
xs.next = OrdinalLinkedList(value=3, next=None) # OK
xs.next = LinkedList[int](value=3, next=None) # Not OK
The code above is semantically equivalent to treating each attribute
containing a Self
type as a property
that returns that type:
from dataclasses import dataclass
from typing import Any, Generic, TypeVar
T = TypeVar("T")
Self = TypeVar("Self", bound="LinkedList")
class LinkedList(Generic[T]):
value: T
@property
def next(self: Self) -> Self | None:
return self._next
@next.setter
def next(self: Self, next: Self | None) -> None:
self._next = next
class OrdinalLinkedList(LinkedList[int]):
def ordinal_value(self) -> str:
return str(self.value)
Use in Generic Classes
Self
can also be used in generic class methods:
class Container(Generic[T]):
value: T
def set_value(self, value: T) -> Self: ...
This is equivalent to writing:
Self = TypeVar("Self", bound="Container[Any]")
class Container(Generic[T]):
value: T
def set_value(self: Self, value: T) -> Self: ...
The behavior is to preserve the type argument of the object on which the
method was called. When called on an object with concrete type
Container[int]
, Self
is bound to Container[int]
. When called with
an object of generic type Container[T]
, Self
is bound to
Container[T]
:
def object_with_concrete_type() -> None:
int_container: Container[int]
str_container: Container[str]
reveal_type(int_container.set_value(42)) # => Container[int]
reveal_type(str_container.set_value("hello")) # => Container[str]
def object_with_generic_type(
container: Container[T], value: T,
) -> Container[T]:
return container.set_value(value) # => Container[T]
The PEP doesn’t specify the exact type of self.value
within the method
set_value
. Some type checkers may choose to implement Self
types using
class-local type variables with Self = TypeVar(“Self”,
bound=Container[T])
, which will infer a precise type T
. However, given
that class-local type variables are not a standardized type system feature, it
is also acceptable to infer Any
for self.value
. We leave this up to
the type checker.
Note that we reject using Self
with type arguments, such as Self[int]
.
This is because it creates ambiguity about the type of the self
parameter
and introduces unnecessary complexity:
class Container(Generic[T]):
def foo(
self, other: Self[int], other2: Self,
) -> Self[str]: # Rejected
...
In such cases, we recommend using an explicit type for self
:
class Container(Generic[T]):
def foo(
self: Container[T],
other: Container[int],
other2: Container[T]
) -> Container[str]: ...
Use in Protocols
Self
is valid within Protocols, similar to its use in classes:
from typing import Protocol, Self
class ShapeProtocol(Protocol):
scale: float
def set_scale(self, scale: float) -> Self:
self.scale = scale
return self
is treated equivalently to:
from typing import TypeVar
SelfShape = TypeVar("SelfShape", bound="ShapeProtocol")
class ShapeProtocol(Protocol):
scale: float
def set_scale(self: SelfShape, scale: float) -> SelfShape:
self.scale = scale
return self
See PEP 544 for details on the behavior of TypeVars bound to protocols.
Checking a class for compatibility with a protocol: If a protocol uses
Self
in methods or attribute annotations, then a class Foo
is
considered compatible with the protocol if its corresponding methods and
attribute annotations use either Self
or Foo
or any of Foo
’s
subclasses. See the examples below:
from typing import Protocol
class ShapeProtocol(Protocol):
def set_scale(self, scale: float) -> Self: ...
class ReturnSelf:
scale: float = 1.0
def set_scale(self, scale: float) -> Self:
self.scale = scale
return self
class ReturnConcreteShape:
scale: float = 1.0
def set_scale(self, scale: float) -> ReturnConcreteShape:
self.scale = scale
return self
class BadReturnType:
scale: float = 1.0
def set_scale(self, scale: float) -> int:
self.scale = scale
return 42
class ReturnDifferentClass:
scale: float = 1.0
def set_scale(self, scale: float) -> ReturnConcreteShape:
return ReturnConcreteShape(...)
def accepts_shape(shape: ShapeProtocol) -> None:
y = shape.set_scale(0.5)
reveal_type(y)
def main() -> None:
return_self_shape: ReturnSelf
return_concrete_shape: ReturnConcreteShape
bad_return_type: BadReturnType
return_different_class: ReturnDifferentClass
accepts_shape(return_self_shape) # OK
accepts_shape(return_concrete_shape) # OK
accepts_shape(bad_return_type) # Not OK
# Not OK because it returns a non-subclass.
accepts_shape(return_different_class)
Valid Locations for Self
A Self
annotation is only valid in class contexts, and will always refer
to the encapsulating class. In contexts involving nested classes, Self
will always refer to the innermost class.
The following uses of Self
are accepted:
class ReturnsSelf:
def foo(self) -> Self: ... # Accepted
@classmethod
def bar(cls) -> Self: # Accepted
return cls()
def __new__(cls, value: int) -> Self: ... # Accepted
def explicitly_use_self(self: Self) -> Self: ... # Accepted
# Accepted (Self can be nested within other types)
def returns_list(self) -> list[Self]: ...
# Accepted (Self can be nested within other types)
@classmethod
def return_cls(cls) -> type[Self]:
return cls
class Child(ReturnsSelf):
# Accepted (we can override a method that uses Self annotations)
def foo(self) -> Self: ...
class TakesSelf:
def foo(self, other: Self) -> bool: ... # Accepted
class Recursive:
# Accepted (treated as an @property returning ``Self | None``)
next: Self | None
class CallableAttribute:
def foo(self) -> int: ...
# Accepted (treated as an @property returning the Callable type)
bar: Callable[[Self], int] = foo
class HasNestedFunction:
x: int = 42
def foo(self) -> None:
# Accepted (Self is bound to HasNestedFunction).
def nested(z: int, inner_self: Self) -> Self:
print(z)
print(inner_self.x)
return inner_self
nested(42, self) # OK
class Outer:
class Inner:
def foo(self) -> Self: ... # Accepted (Self is bound to Inner)
The following uses of Self
are rejected.
def foo(bar: Self) -> Self: ... # Rejected (not within a class)
bar: Self # Rejected (not within a class)
class Foo:
# Rejected (Self is treated as unknown).
def has_existing_self_annotation(self: T) -> Self: ...
class Foo:
def return_concrete_type(self) -> Self:
return Foo() # Rejected (see FooChild below for rationale)
class FooChild(Foo):
child_value: int = 42
def child_method(self) -> None:
# At runtime, this would be Foo, not FooChild.
y = self.return_concrete_type()
y.child_value
# Runtime error: Foo has no attribute child_value
class Bar(Generic[T]):
def bar(self) -> T: ...
class Baz(Bar[Self]): ... # Rejected
We reject type aliases containing Self
. Supporting Self
outside class definitions can require a lot of special-handling in
type checkers. Given that it also goes against the rest of the PEP to
use Self
outside a class definition, we believe the added
convenience of aliases is not worth it:
TupleSelf = Tuple[Self, Self] # Rejected
class Alias:
def return_tuple(self) -> TupleSelf: # Rejected
return (self, self)
Note that we reject Self
in staticmethods. Self
does not add much
value since there is no self
or cls
to return. The only possible use
cases would be to return a parameter itself or some element from a container
passed in as a parameter. These don’t seem worth the additional complexity.
class Base:
@staticmethod
def make() -> Self: # Rejected
...
@staticmethod
def return_parameter(foo: Self) -> Self: # Rejected
...
Likewise, we reject Self
in metaclasses. Self
in this PEP consistently
refers to the same type (that of self
). But in metaclasses, it would have
to refer to different types in different method signatures. For example, in
__mul__
, Self
in the return type would refer to the implementing class
Foo
, not the enclosing class MyMetaclass
. But, in __new__
, Self
in the return type would refer to the enclosing class MyMetaclass
. To
avoid confusion, we reject this edge case.
class MyMetaclass(type):
def __new__(cls, *args: Any) -> Self: # Rejected
return super().__new__(cls, *args)
def __mul__(cls, count: int) -> list[Self]: # Rejected
return [cls()] * count
class Foo(metaclass=MyMetaclass): ...
Runtime behavior
Because Self
is not subscriptable, we propose an implementation similar to
typing.NoReturn
.
@_SpecialForm
def Self(self, params):
"""Used to spell the type of "self" in classes.
Example::
from typing import Self
class ReturnsSelf:
def parse(self, data: bytes) -> Self:
...
return self
"""
raise TypeError(f"{self} is not subscriptable")
Rejected Alternatives
Allow the Type Checker to Infer the Return Type
One proposal is to leave the Self
type implicit and let the type checker
infer from the body of the method that the return type must be the same as the
type of the self
parameter:
class Shape:
def set_scale(self, scale: float):
self.scale = scale
return self # Type checker infers that we are returning self
We reject this because Explicit Is Better Than Implicit. Beyond that, the above approach will fail for type stubs, which don’t have method bodies to analyze.
Reference Implementations
Mypy: Proof of concept implementation in Mypy.
Pyright: v1.1.184
Runtime implementation of Self
: PR.
Resources
Similar discussions on a Self
type in Python started in Mypy around 2016:
Mypy issue #1212 - SelfType or
another way to spell “type of self”. However, the approach ultimately taken
there was the bounded TypeVar
approach shown in our “before” examples.
Other issues that discuss this include Mypy issue #2354 - Self types in generic
classes.
- Pradeep made a concrete proposal at the PyCon Typing Summit 2021:
- recorded talk, slides.
James brought up the proposal independently on typing-sig: Typing-sig thread.
Other languages have similar ways to express the type of the enclosing class:
- TypeScript has the
this
type (TypeScript docs) - Rust has the
Self
type (Rust docs)
Thanks to the following people for their feedback on the PEP:
Jia Chen, Rebecca Chen, Sergei Lebedev, Kaylynn Morgan, Tuomas Suutari, Eric Traut, Alex Waygood, Shannon Zhu, and Никита Соболев
Copyright
This document is placed in the public domain or under the CC0-1.0-Universal license, whichever is more permissive.
Source: https://github.com/python/peps/blob/main/pep-0673.rst
Last modified: 2022-10-07 00:36:39 GMT