typing — Support for type hints¶
New in version 3.5.
Source code: Lib/typing.py
Note
The Python runtime does not enforce function and variable type annotations. They can be used by third party tools such as type checkers, IDEs, linters, etc.
This module provides runtime support for type hints. For the original specification of the typing system, see PEP 484. For a simplified introduction to type hints, see PEP 483.
The function below takes and returns a string and is annotated as follows:
def greeting(name: str) -> str:
return 'Hello ' + name
In the function greeting, the argument name is expected to be of type
str and the return type str. Subtypes are accepted as
arguments.
New features are frequently added to the typing module.
The typing_extensions package
provides backports of these new features to older versions of Python.
For a summary of deprecated features and a deprecation timeline, please see Deprecation Timeline of Major Features.
See also
- “Typing cheat sheet”
A quick overview of type hints (hosted at the mypy docs)
- “Type System Reference” section of the mypy docs
The Python typing system is standardised via PEPs, so this reference should broadly apply to most Python type checkers. (Some parts may still be specific to mypy.)
- “Static Typing with Python”
Type-checker-agnostic documentation written by the community detailing type system features, useful typing related tools and typing best practices.
Relevant PEPs¶
Since the initial introduction of type hints in PEP 484 and PEP 483, a number of PEPs have modified and enhanced Python’s framework for type annotations:
The full list of PEPs
- PEP 544: Protocols: Structural subtyping (static duck typing)
Introducing
Protocoland the@runtime_checkabledecorator
- PEP 585: Type Hinting Generics In Standard Collections
Introducing
types.GenericAliasand the ability to use standard library classes as generic types
- PEP 604: Allow writing union types as
X | Y Introducing
types.UnionTypeand the ability to use the binary-or operator|to signify a union of types
- PEP 604: Allow writing union types as
- PEP 612: Parameter Specification Variables
Introducing
ParamSpecandConcatenate
- PEP 646: Variadic Generics
Introducing
TypeVarTuple
- PEP 655: Marking individual TypedDict items as required or potentially missing
Introducing
RequiredandNotRequired
- PEP 675: Arbitrary Literal String Type
Introducing
LiteralString
- PEP 681: Data Class Transforms
Introducing the
@dataclass_transformdecorator
Type aliases¶
A type alias is defined by assigning the type to the alias. In this example,
Vector and list[float] will be treated as interchangeable synonyms:
Vector = list[float]
def scale(scalar: float, vector: Vector) -> Vector:
return [scalar * num for num in vector]
# passes type checking; a list of floats qualifies as a Vector.
new_vector = scale(2.0, [1.0, -4.2, 5.4])
Type aliases are useful for simplifying complex type signatures. For example:
from collections.abc import Sequence
ConnectionOptions = dict[str, str]
Address = tuple[str, int]
Server = tuple[Address, ConnectionOptions]
def broadcast_message(message: str, servers: Sequence[Server]) -> None:
...
# The static type checker will treat the previous type signature as
# being exactly equivalent to this one.
def broadcast_message(
message: str,
servers: Sequence[tuple[tuple[str, int], dict[str, str]]]) -> None:
...
Type aliases may be marked with TypeAlias to make it explicit that
the statement is a type alias declaration, not a normal variable assignment:
from typing import TypeAlias
Vector: TypeAlias = list[float]
NewType¶
Use the NewType helper to create distinct types:
from typing import NewType
UserId = NewType('UserId', int)
some_id = UserId(524313)
The static type checker will treat the new type as if it were a subclass of the original type. This is useful in helping catch logical errors:
def get_user_name(user_id: UserId) -> str:
...
# passes type checking
user_a = get_user_name(UserId(42351))
# fails type checking; an int is not a UserId
user_b = get_user_name(-1)
You may still perform all int operations on a variable of type UserId,
but the result will always be of type int. This lets you pass in a
UserId wherever an int might be expected, but will prevent you from
accidentally creating a UserId in an invalid way:
# 'output' is of type 'int', not 'UserId'
output = UserId(23413) + UserId(54341)
Note that these checks are enforced only by the static type checker. At runtime,
the statement Derived = NewType('Derived', Base) will make Derived a
callable that immediately returns whatever parameter you pass it. That means
the expression Derived(some_value) does not create a new class or introduce
much overhead beyond that of a regular function call.
More precisely, the expression some_value is Derived(some_value) is always
true at runtime.
It is invalid to create a subtype of Derived:
from typing import NewType
UserId = NewType('UserId', int)
# Fails at runtime and does not pass type checking
class AdminUserId(UserId): pass
However, it is possible to create a NewType based on a ‘derived’ NewType:
from typing import NewType
UserId = NewType('UserId', int)
ProUserId = NewType('ProUserId', UserId)
and typechecking for ProUserId will work as expected.
See PEP 484 for more details.
Note
Recall that the use of a type alias declares two types to be equivalent to
one another. Doing Alias = Original will make the static type checker
treat Alias as being exactly equivalent to Original in all cases.
This is useful when you want to simplify complex type signatures.
In contrast, NewType declares one type to be a subtype of another.
Doing Derived = NewType('Derived', Original) will make the static type
checker treat Derived as a subclass of Original, which means a
value of type Original cannot be used in places where a value of type
Derived is expected. This is useful when you want to prevent logic
errors with minimal runtime cost.
New in version 3.5.2.
Changed in version 3.10: NewType is now a class rather than a function. As a result, there is
some additional runtime cost when calling NewType over a regular
function.
Changed in version 3.11: The performance of calling NewType has been restored to its level in
Python 3.9.
Annotating callable objects¶
Functions – or other callable objects – can be annotated using
collections.abc.Callable or typing.Callable.
Callable[[int], str] signifies a function that takes a single parameter
of type int and returns a str.
For example:
from collections.abc import Callable, Awaitable
def feeder(get_next_item: Callable[[], str]) -> None:
... # Body
def async_query(on_success: Callable[[int], None],
on_error: Callable[[int, Exception], None]) -> None:
... # Body
async def on_update(value: str) -> None:
... # Body
callback: Callable[[str], Awaitable[None]] = on_update
The subscription syntax must always be used with exactly two values: the
argument list and the return type. The argument list must be a list of types,
a ParamSpec, Concatenate, or an ellipsis. The return type must
be a single type.
If a literal ellipsis ... is given as the argument list, it indicates that
a callable with any arbitrary parameter list would be acceptable:
def concat(x: str, y: str) -> str:
return x + y
x: Callable[..., str]
x = str # OK
x = concat # Also OK
Callable cannot express complex signatures such as functions that take a
variadic number of arguments, overloaded functions, or
functions that have keyword-only parameters. However, these signatures can be
expressed by defining a Protocol class with a
__call__() method:
from collections.abc import Iterable
from typing import Protocol
class Combiner(Protocol):
def __call__(self, *vals: bytes, maxlen: int | None = None) -> list[bytes]: ...
def batch_proc(data: Iterable[bytes], cb_results: Combiner) -> bytes:
for item in data:
...
def good_cb(*vals: bytes, maxlen: int | None = None) -> list[bytes]:
...
def bad_cb(*vals: bytes, maxitems: int | None) -> list[bytes]:
...
batch_proc([], good_cb) # OK
batch_proc([], bad_cb) # Error! Argument 2 has incompatible type because of
# different name and kind in the callback
Callables which take other callables as arguments may indicate that their
parameter types are dependent on each other using ParamSpec.
Additionally, if that callable adds or removes arguments from other
callables, the Concatenate operator may be used. They
take the form Callable[ParamSpecVariable, ReturnType] and
Callable[Concatenate[Arg1Type, Arg2Type, ..., ParamSpecVariable], ReturnType]
respectively.
Changed in version 3.10: Callable now supports ParamSpec and Concatenate.
See PEP 612 for more details.
See also
The documentation for ParamSpec and Concatenate provides
examples of usage in Callable.
Generics¶
Since type information about objects kept in containers cannot be statically inferred in a generic way, many container classes in the standard library support subscription to denote the expected types of container elements.
from collections.abc import Mapping, Sequence
class Employee: ...
# Sequence[Employee] indicates that all elements in the sequence
# must be instances of "Employee".
# Mapping[str, str] indicates that all keys and all values in the mapping
# must be strings.
def notify_by_email(employees: Sequence[Employee],
overrides: Mapping[str, str]) -> None: ...
Generics can be parameterized by using a factory available in typing
called TypeVar.
from collections.abc import Sequence
from typing import TypeVar
T = TypeVar('T') # Declare type variable "T"
def first(l: Sequence[T]) -> T: # Function is generic over the TypeVar "T"
return l[0]
Annotating tuples¶
For most containers in Python, the typing system assumes that all elements in the container will be of the same type. For example:
from collections.abc import Mapping
# Type checker will infer that all elements in ``x`` are meant to be ints
x: list[int] = []
# Type checker error: ``list`` only accepts a single type argument:
y: list[int, str] = [1, 'foo']
# Type checker will infer that all keys in ``z`` are meant to be strings,
# and that all values in ``z`` are meant to be either strings or ints
z: Mapping[str, str | int] = {}
list only accepts one type argument, so a type checker would emit an
error on the y assignment above. Similarly,
Mapping only accepts two type arguments: the first
indicates the type of the keys, and the second indicates the type of the
values.
Unlike most other Python containers, however, it is common in idiomatic Python
code for tuples to have elements which are not all of the same type. For this
reason, tuples are special-cased in Python’s typing system. tuple
accepts any number of type arguments:
# OK: ``x`` is assigned to a tuple of length 1 where the sole element is an int
x: tuple[int] = (5,)
# OK: ``y`` is assigned to a tuple of length 2;
# element 1 is an int, element 2 is a str
y: tuple[int, str] = (5, "foo")
# Error: the type annotation indicates a tuple of length 1,
# but ``z`` has been assigned to a tuple of length 3
z: tuple[int] = (1, 2, 3)
To denote a tuple which could be of any length, and in which all elements are
of the same type T, use tuple[T, ...]. To denote an empty tuple, use
tuple[()]. Using plain tuple as an annotation is equivalent to using
tuple[Any, ...]:
x: tuple[int, ...] = (1, 2)
# These reassignments are OK: ``tuple[int, ...]`` indicates x can be of any length
x = (1, 2, 3)
x = ()
# This reassignment is an error: all elements in ``x`` must be ints
x = ("foo", "bar")
# ``y`` can only ever be assigned to an empty tuple
y: tuple[()] = ()
z: tuple = ("foo", "bar")
# These reassignments are OK: plain ``tuple`` is equivalent to ``tuple[Any, ...]``
z = (1, 2, 3)
z = ()
The type of class objects¶
A variable annotated with C may accept a value of type C. In
contrast, a variable annotated with type[C] (or
typing.Type[C]) may accept values that are classes
themselves – specifically, it will accept the class object of C. For
example:
a = 3 # Has type ``int``
b = int # Has type ``type[int]``
c = type(a) # Also has type ``type[int]``
Note that type[C] is covariant:
class User: ...
class ProUser(User): ...
class TeamUser(User): ...
def make_new_user(user_class: type[User]) -> User:
# ...
return user_class()
make_new_user(User) # OK
make_new_user(ProUser) # Also OK: ``type[ProUser]`` is a subtype of ``type[User]``
make_new_user(TeamUser) # Still fine
make_new_user(User()) # Error: expected ``type[User]`` but got ``User``
make_new_user(int) # Error: ``type[int]`` is not a subtype of ``type[User]``
The only legal parameters for type are classes, Any,
type variables, and unions of any of these types.
For example:
def new_non_team_user(user_class: type[BasicUser | ProUser]): ...
new_non_team_user(BasicUser) # OK
new_non_team_user(ProUser) # OK
new_non_team_user(TeamUser) # Error: ``type[TeamUser]`` is not a subtype
# of ``type[BasicUser | ProUser]``
new_non_team_user(User) # Also an error
type[Any] is equivalent to type, which is the root of Python’s
metaclass hierarchy.
User-defined generic types¶
A user-defined class can be defined as a generic class.
from typing import TypeVar, Generic
from logging import Logger
T = TypeVar('T')
class LoggedVar(Generic[T]):
def __init__(self, value: T, name: str, logger: Logger) -> None:
self.name = name
self.logger = logger
self.value = value
def set(self, new: T) -> None:
self.log('Set ' + repr(self.value))
self.value = new
def get(self) -> T:
self.log('Get ' + repr(self.value))
return self.value
def log(self, message: str) -> None:
self.logger.info('%s: %s', self.name, message)
Generic[T] as a base class defines that the class LoggedVar takes a
single type parameter T . This also makes T valid as a type within the
class body.
The Generic base class defines __class_getitem__() so
that LoggedVar[T] is valid as a type:
from collections.abc import Iterable
def zero_all_vars(vars: Iterable[LoggedVar[int]]) -> None:
for var in vars:
var.set(0)
A generic type can have any number of type variables. All varieties of
TypeVar are permissible as parameters for a generic type:
from typing import TypeVar, Generic, Sequence
T = TypeVar('T', contravariant=True)
B = TypeVar('B', bound=Sequence[bytes], covariant=True)
S = TypeVar('S', int, str)
class WeirdTrio(Generic[T, B, S]):
...
Each type variable argument to Generic must be distinct.
This is thus invalid:
from typing import TypeVar, Generic
...
T = TypeVar('T')
class Pair(Generic[T, T]): # INVALID
...
You can use multiple inheritance with Generic:
from collections.abc import Sized
from typing import TypeVar, Generic
T = TypeVar('T')
class LinkedList(Sized, Generic[T]):
...
When inheriting from generic classes, some type parameters could be fixed:
from collections.abc import Mapping
from typing import TypeVar
T = TypeVar('T')
class MyDict(Mapping[str, T]):
...
In this case MyDict has a single parameter, T.
Using a generic class without specifying type parameters assumes
Any for each position. In the following example, MyIterable is
not generic but implicitly inherits from Iterable[Any]:
from collections.abc import Iterable
class MyIterable(Iterable): # Same as Iterable[Any]
...
User-defined generic type aliases are also supported. Examples:
from collections.abc import Iterable
from typing import TypeVar
S = TypeVar('S')
Response = Iterable[S] | int
# Return type here is same as Iterable[str] | int
def response(query: str) -> Response[str]:
...
T = TypeVar('T', int, float, complex)
Vec = Iterable[tuple[T, T]]
def inproduct(v: Vec[T]) -> T: # Same as Iterable[tuple[T, T]]
return sum(x*y for x, y in v)
Changed in version 3.7: Generic no longer has a custom metaclass.
User-defined generics for parameter expressions are also supported via parameter
specification variables in the form Generic[P]. The behavior is consistent
with type variables’ described above as parameter specification variables are
treated by the typing module as a specialized type variable. The one exception
to this is that a list of types can be used to substitute a ParamSpec:
>>> from typing import Generic, ParamSpec, TypeVar
>>> T = TypeVar('T')
>>> P = ParamSpec('P')
>>> class Z(Generic[T, P]): ...
...
>>> Z[int, [dict, float]]
__main__.Z[int, (<class 'dict'>, <class 'float'>)]
Furthermore, a generic with only one parameter specification variable will accept
parameter lists in the forms X[[Type1, Type2, ...]] and also
X[Type1, Type2, ...] for aesthetic reasons. Internally, the latter is converted
to the former, so the following are equivalent:
>>> class X(Generic[P]): ...
...
>>> X[int, str]
__main__.X[(<class 'int'>, <class 'str'>)]
>>> X[[int, str]]
__main__.X[(<class 'int'>, <class 'str'>)]
Note that generics with ParamSpec may not have correct
__parameters__ after substitution in some cases because they
are intended primarily for static type checking.
Changed in version 3.10: Generic can now be parameterized over parameter expressions.
See ParamSpec and PEP 612 for more details.
A user-defined generic class can have ABCs as base classes without a metaclass conflict. Generic metaclasses are not supported. The outcome of parameterizing generics is cached, and most types in the typing module are hashable and comparable for equality.
The Any type¶
A special kind of type is Any. A static type checker will treat
every type as being compatible with Any and Any as being
compatible with every type.
This means that it is possible to perform any operation or method call on a
value of type Any and assign it to any variable:
from typing import Any
a: Any = None
a = [] # OK
a = 2 # OK
s: str = ''
s = a # OK
def foo(item: Any) -> int:
# Passes type checking; 'item' could be any type,
# and that type might have a 'bar' method
item.bar()
...
Notice that no type checking is performed when assigning a value of type
Any to a more precise type. For example, the static type checker did
not report an error when assigning a to s even though s was
declared to be of type str and receives an int value at
runtime!
Furthermore, all functions without a return type or parameter types will
implicitly default to using Any:
def legacy_parser(text):
...
return data
# A static type checker will treat the above
# as having the same signature as:
def legacy_parser(text: Any) -> Any:
...
return data
This behavior allows Any to be used as an escape hatch when you
need to mix dynamically and statically typed code.
Contrast the behavior of Any with the behavior of object.
Similar to Any, every type is a subtype of object. However,
unlike Any, the reverse is not true: object is not a
subtype of every other type.
That means when the type of a value is object, a type checker will
reject almost all operations on it, and assigning it to a variable (or using
it as a return value) of a more specialized type is a type error. For example:
def hash_a(item: object) -> int:
# Fails type checking; an object does not have a 'magic' method.
item.magic()
...
def hash_b(item: Any) -> int:
# Passes type checking
item.magic()
...
# Passes type checking, since ints and strs are subclasses of object
hash_a(42)
hash_a("foo")
# Passes type checking, since Any is compatible with all types
hash_b(42)
hash_b("foo")
Use object to indicate that a value could be any type in a typesafe
manner. Use Any to indicate that a value is dynamically typed.
Nominal vs structural subtyping¶
Initially PEP 484 defined the Python static type system as using
nominal subtyping. This means that a class A is allowed where
a class B is expected if and only if A is a subclass of B.
This requirement previously also applied to abstract base classes, such as
Iterable. The problem with this approach is that a class had
to be explicitly marked to support them, which is unpythonic and unlike
what one would normally do in idiomatic dynamically typed Python code.
For example, this conforms to PEP 484:
from collections.abc import Sized, Iterable, Iterator
class Bucket(Sized, Iterable[int]):
...
def __len__(self) -> int: ...
def __iter__(self) -> Iterator[int]: ...
PEP 544 allows to solve this problem by allowing users to write
the above code without explicit base classes in the class definition,
allowing Bucket to be implicitly considered a subtype of both Sized
and Iterable[int] by static type checkers. This is known as
structural subtyping (or static duck-typing):
from collections.abc import Iterator, Iterable
class Bucket: # Note: no base classes
...
def __len__(self) -> int: ...
def __iter__(self) -> Iterator[int]: ...
def collect(items: Iterable[int]) -> int: ...
result = collect(Bucket()) # Passes type check
Moreover, by subclassing a special class Protocol, a user
can define new custom protocols to fully enjoy structural subtyping
(see examples below).
Module contents¶
The typing module defines the following classes, functions and decorators.
Special typing primitives¶
Special types¶
These can be used as types in annotations. They do not support subscription
using [].
- typing.Any¶
Special type indicating an unconstrained type.
Changed in version 3.11:
Anycan now be used as a base class. This can be useful for avoiding type checker errors with classes that can duck type anywhere or are highly dynamic.
- typing.AnyStr¶
-
Definition:
AnyStr = TypeVar('AnyStr', str, bytes)
AnyStris meant to be used for functions that may acceptstrorbytesarguments but cannot allow the two to mix.For example:
def concat(a: AnyStr, b: AnyStr) -> AnyStr: return a + b concat("foo", "bar") # OK, output has type 'str' concat(b"foo", b"bar") # OK, output has type 'bytes' concat("foo", b"bar") # Error, cannot mix str and bytes
Note that, despite its name,
AnyStrhas nothing to do with theAnytype, nor does it mean “any string”. In particular,AnyStrandstr | bytesare different from each other and have different use cases:# Invalid use of AnyStr: # The type variable is used only once in the function signature, # so cannot be "solved" by the type checker def greet_bad(cond: bool) -> AnyStr: return "hi there!" if cond else b"greetings!" # The better way of annotating this function: def greet_proper(cond: bool) -> str | bytes: return "hi there!" if cond else b"greetings!"
- typing.LiteralString¶
Special type that includes only literal strings.
Any string literal is compatible with
LiteralString, as is anotherLiteralString. However, an object typed as juststris not. A string created by composingLiteralString-typed objects is also acceptable as aLiteralString.Example:
def run_query(sql: LiteralString) -> None: ... def caller(arbitrary_string: str, literal_string: LiteralString) -> None: run_query("SELECT * FROM students") # OK run_query(literal_string) # OK run_query("SELECT * FROM " + literal_string) # OK run_query(arbitrary_string) # type checker error run_query( # type checker error f"SELECT * FROM students WHERE name = {arbitrary_string}" )
LiteralStringis useful for sensitive APIs where arbitrary user-generated strings could generate problems. For example, the two cases above that generate type checker errors could be vulnerable to an SQL injection attack.See PEP 675 for more details.
New in version 3.11.
- typing.Never¶
The bottom type, a type that has no members.
This can be used to define a function that should never be called, or a function that never returns:
from typing import Never def never_call_me(arg: Never) -> None: pass def int_or_str(arg: int | str) -> None: never_call_me(arg) # type checker error match arg: case int(): print("It's an int") case str(): print("It's a str") case _: never_call_me(arg) # OK, arg is of type Never
New in version 3.11: On older Python versions,
NoReturnmay be used to express the same concept.Neverwas added to make the intended meaning more explicit.
- typing.NoReturn¶
Special type indicating that a function never returns.
For example:
from typing import NoReturn def stop() -> NoReturn: raise RuntimeError('no way')
NoReturncan also be used as a bottom type, a type that has no values. Starting in Python 3.11, theNevertype should be used for this concept instead. Type checkers should treat the two equivalently.New in version 3.5.4.
New in version 3.6.2.
- typing.Self¶
Special type to represent the current enclosed class.
For example:
from typing import Self, reveal_type class Foo: def return_self(self) -> Self: ... return self class SubclassOfFoo(Foo): pass reveal_type(Foo().return_self()) # Revealed type is "Foo" reveal_type(SubclassOfFoo().return_self()) # Revealed type is "SubclassOfFoo"
This annotation is semantically equivalent to the following, albeit in a more succinct fashion:
from typing import TypeVar Self = TypeVar("Self", bound="Foo") class Foo: def return_self(self: Self) -> Self: ... return self
In general, if something returns
self, as in the above examples, you should useSelfas the return annotation. IfFoo.return_selfwas annotated as returning"Foo", then the type checker would infer the object returned fromSubclassOfFoo.return_selfas being of typeFoorather thanSubclassOfFoo.Other common use cases include:
classmethods that are used as alternative constructors and return instances of theclsparameter.Annotating an
__enter__()method which returns self.
You should not use
Selfas the return annotation if the method is not guaranteed to return an instance of a subclass when the class is subclassed:class Eggs: # Self would be an incorrect return annotation here, # as the object returned is always an instance of Eggs, # even in subclasses def returns_eggs(self) -> "Eggs": return Eggs()
See PEP 673 for more details.
New in version 3.11.
- typing.TypeAlias¶
Special annotation for explicitly declaring a type alias.
For example:
from typing import TypeAlias Factors: TypeAlias = list[int]
TypeAliasis particularly useful for annotating aliases that make use of forward references, as it can be hard for type checkers to distinguish these from normal variable assignments:from typing import Generic, TypeAlias, TypeVar T = TypeVar("T") # "Box" does not exist yet, # so we have to use quotes for the forward reference. # Using ``TypeAlias`` tells the type checker that this is a type alias declaration, # not a variable assignment to a string. BoxOfStrings: TypeAlias = "Box[str]" class Box(Generic[T]): @classmethod def make_box_of_strings(cls) -> BoxOfStrings: ...
See PEP 613 for more details.
New in version 3.10.
Special forms¶
These can be used as types in annotations. They all support subscription using
[], but each has a unique syntax.
- typing.Union¶
Union type;
Union[X, Y]is equivalent toX | Yand means either X or Y.To define a union, use e.g.
Union[int, str]or the shorthandint | str. Using that shorthand is recommended. Details:The arguments must be types and there must be at least one.
Unions of unions are flattened, e.g.:
Union[Union[int, str], float] == Union[int, str, float]
Unions of a single argument vanish, e.g.:
Union[int] == int # The constructor actually returns int
Redundant arguments are skipped, e.g.:
Union[int, str, int] == Union[int, str] == int | str
When comparing unions, the argument order is ignored, e.g.:
Union[int, str] == Union[str, int]
You cannot subclass or instantiate a
Union.You cannot write
Union[X][Y].
Changed in version 3.7: Don’t remove explicit subclasses from unions at runtime.
Changed in version 3.10: Unions can now be written as
X | Y. See union type expressions.
- typing.Optional¶
Optional[X]is equivalent toX | None(orUnion[X, None]).Note that this is not the same concept as an optional argument, which is one that has a default. An optional argument with a default does not require the
Optionalqualifier on its type annotation just because it is optional. For example:def foo(arg: int = 0) -> None: ...
On the other hand, if an explicit value of
Noneis allowed, the use ofOptionalis appropriate, whether the argument is optional or not. For example:def foo(arg: Optional[int] = None) -> None: ...
Changed in version 3.10: Optional can now be written as
X | None. See union type expressions.
- typing.Concatenate¶
Special form for annotating higher-order functions.
Concatenatecan be used in conjunction with Callable andParamSpecto annotate a higher-order callable which adds, removes, or transforms parameters of another callable. Usage is in the formConcatenate[Arg1Type, Arg2Type, ..., ParamSpecVariable].Concatenateis currently only valid when used as the first argument to a Callable. The last parameter toConcatenatemust be aParamSpecor ellipsis (...).For example, to annotate a decorator
with_lockwhich provides athreading.Lockto the decorated function,Concatenatecan be used to indicate thatwith_lockexpects a callable which takes in aLockas the first argument, and returns a callable with a different type signature. In this case, theParamSpecindicates that the returned callable’s parameter types are dependent on the parameter types of the callable being passed in:from collections.abc import Callable from threading import Lock from typing import Concatenate, ParamSpec, TypeVar P = ParamSpec('P') R = TypeVar('R') # Use this lock to ensure that only one thread is executing a function # at any time. my_lock = Lock() def with_lock(f: Callable[Concatenate[Lock, P], R]) -> Callable[P, R]: '''A type-safe decorator which provides a lock.''' def inner(*args: P.args, **kwargs: P.kwargs) -> R: # Provide the lock as the first argument. return f(my_lock, *args, **kwargs) return inner @with_lock def sum_threadsafe(lock: Lock, numbers: list[float]) -> float: '''Add a list of numbers together in a thread-safe manner.''' with lock: return sum(numbers) # We don't need to pass in the lock ourselves thanks to the decorator. sum_threadsafe([1.1, 2.2, 3.3])
New in version 3.10.
See also
PEP 612 – Parameter Specification Variables (the PEP which introduced
ParamSpecandConcatenate)
- typing.Literal¶
Special typing form to define “literal types”.
Literalcan be used to indicate to type checkers that the annotated object has a value equivalent to one of the provided literals.For example:
def validate_simple(data: Any) -> Literal[True]: # always returns True ... Mode: TypeAlias = Literal['r', 'rb', 'w', 'wb'] def open_helper(file: str, mode: Mode) -> str: ... open_helper('/some/path', 'r') # Passes type check open_helper('/other/path', 'typo') # Error in type checker
Literal[...]cannot be subclassed. At runtime, an arbitrary value is allowed as type argument toLiteral[...], but type checkers may impose restrictions. See PEP 586 for more details about literal types.New in version 3.8.
- typing.ClassVar¶
Special type construct to mark class variables.
As introduced in PEP 526, a variable annotation wrapped in ClassVar indicates that a given attribute is intended to be used as a class variable and should not be set on instances of that class. Usage:
class Starship: stats: ClassVar[dict[str, int]] = {} # class variable damage: int = 10 # instance variable
ClassVaraccepts only types and cannot be further subscribed.ClassVaris not a class itself, and should not be used withisinstance()orissubclass().ClassVardoes not change Python runtime behavior, but it can be used by third-party type checkers. For example, a type checker might flag the following code as an error:enterprise_d = Starship(3000) enterprise_d.stats = {} # Error, setting class variable on instance Starship.stats = {} # This is OK
New in version 3.5.3.
- typing.Final¶
Special typing construct to indicate final names to type checkers.
Final names cannot be reassigned in any scope. Final names declared in class scopes cannot be overridden in subclasses.
For example:
MAX_SIZE: Final = 9000 MAX_SIZE += 1 # Error reported by type checker class Connection: TIMEOUT: Final[int] = 10 class FastConnector(Connection): TIMEOUT = 1 # Error reported by type checker
There is no runtime checking of these properties. See PEP 591 for more details.
New in version 3.8.
- typing.Required¶
Special typing construct to mark a
TypedDictkey as required.This is mainly useful for
total=FalseTypedDicts. SeeTypedDictand PEP 655 for more details.New in version 3.11.
- typing.NotRequired¶
Special typing construct to mark a
TypedDictkey as potentially missing.See
TypedDictand PEP 655 for more details.New in version 3.11.
- typing.Annotated¶
Special typing form to add context-specific metadata to an annotation.
Add metadata
xto a given typeTby using the annotationAnnotated[T, x]. Metadata added usingAnnotatedcan be used by static analysis tools or at runtime. At runtime, the metadata is stored in a__metadata__attribute.If a library or tool encounters an annotation
Annotated[T, x]and has no special logic for the metadata, it should ignore the metadata and simply treat the annotation asT. As such,Annotatedcan be useful for code that wants to use annotations for purposes outside Python’s static typing system.Using
Annotated[T, x]as an annotation still allows for static typechecking ofT, as type checkers will simply ignore the metadatax. In this way,Annotateddiffers from the@no_type_checkdecorator, which can also be used for adding annotations outside the scope of the typing system, but completely disables typechecking for a function or class.The responsibility of how to interpret the metadata lies with the tool or library encountering an
Annotatedannotation. A tool or library encountering anAnnotatedtype can scan through the metadata elements to determine if they are of interest (e.g., usingisinstance()).- Annotated[<type>, <metadata>]
Here is an example of how you might use
Annotatedto add metadata to type annotations if you were doing range analysis:@dataclass class ValueRange: lo: int hi: int T1 = Annotated[int, ValueRange(-10, 5)] T2 = Annotated[T1, ValueRange(-20, 3)]
Details of the syntax:
The first argument to
Annotatedmust be a valid typeMultiple metadata elements can be supplied (
Annotatedsupports variadic arguments):@dataclass class ctype: kind: str Annotated[int, ValueRange(3, 10), ctype("char")]
It is up to the tool consuming the annotations to decide whether the client is allowed to add multiple metadata elements to one annotation and how to merge those annotations.
Annotatedmust be subscripted with at least two arguments (Annotated[int]is not valid)The order of the metadata elements is preserved and matters for equality checks:
assert Annotated[int, ValueRange(3, 10), ctype("char")] != Annotated[ int, ctype("char"), ValueRange(3, 10) ]
Nested
Annotatedtypes are flattened. The order of the metadata elements starts with the innermost annotation:assert Annotated[Annotated[int, ValueRange(3, 10)], ctype("char")] == Annotated[ int, ValueRange(3, 10), ctype("char") ]
Duplicated metadata elements are not removed:
assert Annotated[int, ValueRange(3, 10)] != Annotated[ int, ValueRange(3, 10), ValueRange(3, 10) ]
Annotatedcan be used with nested and generic aliases:@dataclass class MaxLen: value: int T = TypeVar("T") Vec: TypeAlias = Annotated[list[tuple[T, T]], MaxLen(10)] assert Vec[int] == Annotated[list[tuple[int, int]], MaxLen(10)]
Annotatedcannot be used with an unpackedTypeVarTuple:Variadic: TypeAlias = Annotated[*Ts, Ann1] # NOT valid
This would be equivalent to:
Annotated[T1, T2, T3, ..., Ann1]
where
T1,T2, etc. areTypeVars. This would be invalid: only one type should be passed to Annotated.By default,
get_type_hints()strips the metadata from annotations. Passinclude_extras=Trueto have the metadata preserved:>>> from typing import Annotated, get_type_hints >>> def func(x: Annotated[int, "metadata"]) -> None: pass ... >>> get_type_hints(func) {'x': <class 'int'>, 'return': <class 'NoneType'>} >>> get_type_hints(func, include_extras=True) {'x': typing.Annotated[int, 'metadata'], 'return': <class 'NoneType'>}
At runtime, the metadata associated with an
Annotatedtype can be retrieved via the__metadata__attribute:>>> from typing import Annotated >>> X = Annotated[int, "very", "important", "metadata"] >>> X typing.Annotated[int, 'very', 'important', 'metadata'] >>> X.__metadata__ ('very', 'important', 'metadata')
See also
- PEP 593 - Flexible function and variable annotations
The PEP introducing
Annotatedto the standard library.
New in version 3.9.
- typing.TypeGuard¶
Special typing construct for marking user-defined type guard functions.
TypeGuardcan be used to annotate the return type of a user-defined type guard function.TypeGuardonly accepts a single type argument. At runtime, functions marked this way should return a boolean.TypeGuardaims to benefit type narrowing – a technique used by static type checkers to determine a more precise type of an expression within a program’s code flow. Usually type narrowing is done by analyzing conditional code flow and applying the narrowing to a block of code. The conditional expression here is sometimes referred to as a “type guard”:def is_str(val: str | float): # "isinstance" type guard if isinstance(val, str): # Type of ``val`` is narrowed to ``str`` ... else: # Else, type of ``val`` is narrowed to ``float``. ...
Sometimes it would be convenient to use a user-defined boolean function as a type guard. Such a function should use
TypeGuard[...]as its return type to alert static type checkers to this intention.Using
-> TypeGuardtells the static type checker that for a given function:The return value is a boolean.
If the return value is
True, the type of its argument is the type insideTypeGuard.
For example:
def is_str_list(val: list[object]) -> TypeGuard[list[str]]: '''Determines whether all objects in the list are strings''' return all(isinstance(x, str) for x in val) def func1(val: list[object]): if is_str_list(val): # Type of ``val`` is narrowed to ``list[str]``. print(" ".join(val)) else: # Type of ``val`` remains as ``list[object]``. print("Not a list of strings!")
If
is_str_listis a class or instance method, then the type inTypeGuardmaps to the type of the second parameter afterclsorself.In short, the form
def foo(arg: TypeA) -> TypeGuard[TypeB]: ..., means that iffoo(arg)returnsTrue, thenargnarrows fromTypeAtoTypeB.Note
TypeBneed not be a narrower form ofTypeA– it can even be a wider form. The main reason is to allow for things like narrowinglist[object]tolist[str]even though the latter is not a subtype of the former, sincelistis invariant. The responsibility of writing type-safe type guards is left to the user.TypeGuardalso works with type variables. See PEP 647 for more details.New in version 3.10.
- typing.Unpack¶
Typing operator to conceptually mark an object as having been unpacked.
For example, using the unpack operator
*on a type variable tuple is equivalent to usingUnpackto mark the type variable tuple as having been unpacked:Ts = TypeVarTuple('Ts') tup: tuple[*Ts] # Effectively does: tup: tuple[Unpack[Ts]]
In fact,
Unpackcan be used interchangeably with*in the context oftyping.TypeVarTupleandbuiltins.tupletypes. You might seeUnpackbeing used explicitly in older versions of Python, where*couldn’t be used in certain places:# In older versions of Python, TypeVarTuple and Unpack # are located in the `typing_extensions` backports package. from typing_extensions import TypeVarTuple, Unpack Ts = TypeVarTuple('Ts') tup: tuple[*Ts] # Syntax error on Python <= 3.10! tup: tuple[Unpack[Ts]] # Semantically equivalent, and backwards-compatible
New in version 3.11.
Building generic types¶
The following classes should not be used directly as annotations. Their intended purpose is to be building blocks for creating generic types.
- class typing.Generic¶
Abstract base class for generic types.
A generic type is typically declared by inheriting from an instantiation of this class with one or more type variables. For example, a generic mapping type might be defined as:
class Mapping(Generic[KT, VT]): def __getitem__(self, key: KT) -> VT: ... # Etc.
This class can then be used as follows:
X = TypeVar('X') Y = TypeVar('Y') def lookup_name(mapping: Mapping[X, Y], key: X, default: Y) -> Y: try: return mapping[key] except KeyError: return default
- class typing.TypeVar(name, *constraints, bound=None, covariant=False, contravariant=False)¶
Type variable.
Usage:
T = TypeVar('T') # Can be anything S = TypeVar('S', bound=str) # Can be any subtype of str A = TypeVar('A', str, bytes) # Must be exactly str or bytes
Type variables exist primarily for the benefit of static type checkers. They serve as the parameters for generic types as well as for generic function and type alias definitions. See
Genericfor more information on generic types. Generic functions work as follows:def repeat(x: T, n: int) -> Sequence[T]: """Return a list containing n references to x.""" return [x]*n def print_capitalized(x: S) -> S: """Print x capitalized, and return x.""" print(x.capitalize()) return x def concatenate(x: A, y: A) -> A: """Add two strings or bytes objects together.""" return x + y
Note that type variables can be bound, constrained, or neither, but cannot be both bound and constrained.
Type variables may be marked covariant or contravariant by passing
covariant=Trueorcontravariant=True. See PEP 484 for more details. By default, type variables are invariant.Bound type variables and constrained type variables have different semantics in several important ways. Using a bound type variable means that the
TypeVarwill be solved using the most specific type possible:x = print_capitalized('a string') reveal_type(x) # revealed type is str class StringSubclass(str): pass y = print_capitalized(StringSubclass('another string')) reveal_type(y) # revealed type is StringSubclass z = print_capitalized(45) # error: int is not a subtype of str
Type variables can be bound to concrete types, abstract types (ABCs or protocols), and even unions of types:
U = TypeVar('U', bound=str|bytes) # Can be any subtype of the union str|bytes V = TypeVar('V', bound=SupportsAbs) # Can be anything with an __abs__ method
Using a constrained type variable, however, means that the
TypeVarcan only ever be solved as being exactly one of the constraints given:a = concatenate('one', 'two') reveal_type(a) # revealed type is str b = concatenate(StringSubclass('one'), StringSubclass('two')) reveal_type(b) # revealed type is str, despite StringSubclass being passed in c = concatenate('one', b'two') # error: type variable 'A' can be either str or bytes in a function call, but not both
At runtime,
isinstance(x, T)will raiseTypeError.- __name__¶
The name of the type variable.
- __covariant__¶
Whether the type var has been marked as covariant.
- __contravariant__¶
Whether the type var has been marked as contravariant.
- __bound__¶
The bound of the type variable, if any.
- __constraints__¶
A tuple containing the constraints of the type variable, if any.
- class typing.TypeVarTuple(name)¶
Type variable tuple. A specialized form of type variable that enables variadic generics.
Usage:
T = TypeVar("T") Ts = TypeVarTuple("Ts") def move_first_element_to_last(tup: tuple[T, *Ts]) -> tuple[*Ts, T]: return (*tup[1:], tup[0])
A normal type variable enables parameterization with a single type. A type variable tuple, in contrast, allows parameterization with an arbitrary number of types by acting like an arbitrary number of type variables wrapped in a tuple. For example:
# T is bound to int, Ts is bound to () # Return value is (1,), which has type tuple[int] move_first_element_to_last(tup=(1,)) # T is bound to int, Ts is bound to (str,) # Return value is ('spam', 1), which has type tuple[str, int] move_first_element_to_last(tup=(1, 'spam')) # T is bound to int, Ts is bound to (str, float) # Return value is ('spam', 3.0, 1), which has type tuple[str, float, int] move_first_element_to_last(tup=(1, 'spam', 3.0)) # This fails to type check (and fails at runtime) # because tuple[()] is not compatible with tuple[T, *Ts] # (at least one element is required) move_first_element_to_last(tup=())
Note the use of the unpacking operator
*intuple[T, *Ts]. Conceptually, you can think ofTsas a tuple of type variables(T1, T2, ...).tuple[T, *Ts]would then becometuple[T, *(T1, T2, ...)], which is equivalent totuple[T, T1, T2, ...]. (Note that in older versions of Python, you might see this written usingUnpackinstead, asUnpack[Ts].)Type variable tuples must always be unpacked. This helps distinguish type variable tuples from normal type variables:
x: Ts # Not valid x: tuple[Ts] # Not valid x: tuple[*Ts] # The correct way to do it
Type variable tuples can be used in the same contexts as normal type variables. For example, in class definitions, arguments, and return types:
Shape = TypeVarTuple("Shape") class Array(Generic[*Shape]): def __getitem__(self, key: tuple[*Shape]) -> float: ... def __abs__(self) -> "Array[*Shape]": ... def get_shape(self) -> tuple[*Shape]: ...
Type variable tuples can be happily combined with normal type variables:
DType = TypeVar('DType') Shape = TypeVarTuple('Shape') class Array(Generic[DType, *Shape]): # This is fine pass class Array2(Generic[*Shape, DType]): # This would also be fine pass class Height: ... class Width: ... float_array_1d: Array[float, Height] = Array() # Totally fine int_array_2d: Array[int, Height, Width] = Array() # Yup, fine too
However, note that at most one type variable tuple may appear in a single list of type arguments or type parameters:
x: tuple[*Ts, *Ts] # Not valid class Array(Generic[*Shape, *Shape]): # Not valid pass
Finally, an unpacked type variable tuple can be used as the type annotation of
*args:def call_soon( callback: Callable[[*Ts], None], *args: *Ts ) -> None: ... callback(*args)
In contrast to non-unpacked annotations of
*args- e.g.*args: int, which would specify that all arguments areint-*args: *Tsenables reference to the types of the individual arguments in*args. Here, this allows us to ensure the types of the*argspassed tocall_soonmatch the types of the (positional) arguments ofcallback.See PEP 646 for more details on type variable tuples.
- __name__¶
The name of the type variable tuple.
New in version 3.11.
- class typing.ParamSpec(name, *, bound=None, covariant=False, contravariant=False)¶
Parameter specification variable. A specialized version of type variables.
Usage:
P = ParamSpec('P')
Parameter specification variables exist primarily for the benefit of static type checkers. They are used to forward the parameter types of one callable to another callable – a pattern commonly found in higher order functions and decorators. They are only valid when used in
Concatenate, or as the first argument toCallable, or as parameters for user-defined Generics. SeeGenericfor more information on generic types.For example, to add basic logging to a function, one can create a decorator
add_loggingto log function calls. The parameter specification variable tells the type checker that the callable passed into the decorator and the new callable returned by it have inter-dependent type parameters:from collections.abc import Callable from typing import TypeVar, ParamSpec import logging T = TypeVar('T') P = ParamSpec('P') def add_logging(f: Callable[P, T]) -> Callable[P, T]: '''A type-safe decorator to add logging to a function.''' def inner(*args: P.args, **kwargs: P.kwargs) -> T: logging.info(f'{f.__name__} was called') return f(*args, **kwargs) return inner @add_logging def add_two(x: float, y: float) -> float: '''Add two numbers together.''' return x + y
Without
ParamSpec, the simplest way to annotate this previously was to use aTypeVarwith boundCallable[..., Any]. However this causes two problems:The type checker can’t type check the
innerfunction because*argsand**kwargshave to be typedAny.cast()may be required in the body of theadd_loggingdecorator when returning theinnerfunction, or the static type checker must be told to ignore thereturn inner.
- args¶
- kwargs¶
Since
ParamSpeccaptures both positional and keyword parameters,P.argsandP.kwargscan be used to split aParamSpecinto its components.P.argsrepresents the tuple of positional parameters in a given call and should only be used to annotate*args.P.kwargsrepresents the mapping of keyword parameters to their values in a given call, and should be only be used to annotate**kwargs. Both attributes require the annotated parameter to be in scope. At runtime,P.argsandP.kwargsare instances respectively ofParamSpecArgsandParamSpecKwargs.
- __name__¶
The name of the parameter specification.
Parameter specification variables created with
covariant=Trueorcontravariant=Truecan be used to declare covariant or contravariant generic types. Theboundargument is also accepted, similar toTypeVar. However the actual semantics of these keywords are yet to be decided.New in version 3.10.
Note
Only parameter specification variables defined in global scope can be pickled.
See also
PEP 612 – Parameter Specification Variables (the PEP which introduced
ParamSpecandConcatenate)
- typing.ParamSpecArgs¶
- typing.ParamSpecKwargs¶
Arguments and keyword arguments attributes of a
ParamSpec. TheP.argsattribute of aParamSpecis an instance ofParamSpecArgs, andP.kwargsis an instance ofParamSpecKwargs. They are intended for runtime introspection and have no special meaning to static type checkers.Calling
get_origin()on either of these objects will return the originalParamSpec:>>> from typing import ParamSpec, get_origin >>> P = ParamSpec("P") >>> get_origin(P.args) is P True >>> get_origin(P.kwargs) is P True
New in version 3.10.
Other special directives¶
These functions and classes should not be used directly as annotations. Their intended purpose is to be building blocks for creating and declaring types.
- class typing.NamedTuple¶
Typed version of
collections.namedtuple().Usage:
class Employee(NamedTuple): name: str id: int
This is equivalent to:
Employee = collections.namedtuple('Employee', ['name', 'id'])
To give a field a default value, you can assign to it in the class body:
class Employee(NamedTuple): name: str id: int = 3 employee = Employee('Guido') assert employee.id == 3
Fields with a default value must come after any fields without a default.
The resulting class has an extra attribute
__annotations__giving a dict that maps the field names to the field types. (The field names are in the_fieldsattribute and the default values are in the_field_defaultsattribute, both of which are part of thenamedtuple()API.)NamedTuplesubclasses can also have docstrings and methods:class Employee(NamedTuple): """Represents an employee.""" name: str id: int = 3 def __repr__(self) -> str: return f'<Employee {self.name}, id={self.id}>'
NamedTuplesubclasses can be generic:class Group(NamedTuple, Generic[T]): key: T group: list[T]
Backward-compatible usage:
Employee = NamedTuple('Employee', [('name', str), ('id', int)])
Changed in version 3.6: Added support for PEP 526 variable annotation syntax.
Changed in version 3.6.1: Added support for default values, methods, and docstrings.
Changed in version 3.8: The
_field_typesand__annotations__attributes are now regular dictionaries instead of instances ofOrderedDict.Changed in version 3.9: Removed the
_field_typesattribute in favor of the more standard__annotations__attribute which has the same information.Changed in version 3.11: Added support for generic namedtuples.
- class typing.NewType(name, tp)¶
Helper class to create low-overhead distinct types.
A
NewTypeis considered a distinct type by a typechecker. At runtime, however, calling aNewTypereturns its argument unchanged.Usage:
UserId = NewType('UserId', int) # Declare the NewType "UserId" first_user = UserId(1) # "UserId" returns the argument unchanged at runtime
- __module__¶
The module in which the new type is defined.
- __name__¶
The name of the new type.
- __supertype__¶
The type that the new type is based on.
New in version 3.5.2.
Changed in version 3.10:
NewTypeis now a class rather than a function.
- class typing.Protocol(Generic)¶
Base class for protocol classes.
Protocol classes are defined like this:
class Proto(Protocol): def meth(self) -> int: ...
Such classes are primarily used with static type checkers that recognize structural subtyping (static duck-typing), for example:
class C: def meth(self) -> int: return 0 def func(x: Proto) -> int: return x.meth() func(C()) # Passes static type check
See PEP 544 for more details. Protocol classes decorated with
runtime_checkable()(described later) act as simple-minded runtime protocols that check only the presence of given attributes, ignoring their type signatures.Protocol classes can be generic, for example:
T = TypeVar("T") class GenProto(Protocol[T]): def meth(self) -> T: ...
New in version 3.8.
- @typing.runtime_checkable¶
Mark a protocol class as a runtime protocol.
Such a protocol can be used with
isinstance()andissubclass(). This raisesTypeErrorwhen applied to a non-protocol class. This allows a simple-minded structural check, very similar to “one trick ponies” incollections.abcsuch asIterable. For example:@runtime_checkable class Closable(Protocol): def close(self): ... assert isinstance(open('/some/file'), Closable) @runtime_checkable class Named(Protocol): name: str import threading assert isinstance(threading.Thread(name='Bob'), Named)
Note
runtime_checkable()will check only the presence of the required methods or attributes, not their type signatures or types. For example,ssl.SSLObjectis a class, therefore it passes anissubclass()check against Callable. However, thessl.SSLObject.__init__method exists only to raise aTypeErrorwith a more informative message, therefore making it impossible to call (instantiate)ssl.SSLObject.Note
An
isinstance()check against a runtime-checkable protocol can be surprisingly slow compared to anisinstance()check against a non-protocol class. Consider using alternative idioms such ashasattr()calls for structural checks in performance-sensitive code.New in version 3.8.
- class typing.TypedDict(dict)¶
Special construct to add type hints to a dictionary. At runtime it is a plain
dict.TypedDictdeclares a dictionary type that expects all of its instances to have a certain set of keys, where each key is associated with a value of a consistent type. This expectation is not checked at runtime but is only enforced by type checkers. Usage:class Point2D(TypedDict): x: int y: int label: str a: Point2D = {'x': 1, 'y': 2, 'label': 'good'} # OK b: Point2D = {'z': 3, 'label': 'bad'} # Fails type check assert Point2D(x=1, y=2, label='first') == dict(x=1, y=2, label='first')
To allow using this feature with older versions of Python that do not support PEP 526,
TypedDictsupports two additional equivalent syntactic forms:Using a literal
dictas the second argument:Point2D = TypedDict('Point2D', {'x': int, 'y': int, 'label': str})
Using keyword arguments:
Point2D = TypedDict('Point2D', x=int, y=int, label=str)
Deprecated since version 3.11, will be removed in version 3.13: The keyword-argument syntax is deprecated in 3.11 and will be removed in 3.13. It may also be unsupported by static type checkers.
The functional syntax should also be used when any of the keys are not valid identifiers, for example because they are keywords or contain hyphens. Example:
# raises SyntaxError class Point2D(TypedDict): in: int # 'in' is a keyword x-y: int # name with hyphens # OK, functional syntax Point2D = TypedDict('Point2D', {'in': int, 'x-y': int})
By default, all keys must be present in a
TypedDict. It is possible to mark individual keys as non-required usingNotRequired:class Point2D(TypedDict): x: int y: int label: NotRequired[str] # Alternative syntax Point2D = TypedDict('Point2D', {'x': int, 'y': int, 'label': NotRequired[str]})
This means that a
Point2DTypedDictcan have thelabelkey omitted.It is also possible to mark all keys as non-required by default by specifying a totality of
False:class Point2D(TypedDict, total=False): x: int y: int # Alternative syntax Point2D = TypedDict('Point2D', {'x': int, 'y': int}, total=False)
This means that a
Point2DTypedDictcan have any of the keys omitted. A type checker is only expected to support a literalFalseorTrueas the value of thetotalargument.Trueis the default, and makes all items defined in the class body required.Individual keys of a
total=FalseTypedDictcan be marked as required usingRequired:class Point2D(TypedDict, total=False): x: Required[int] y: Required[int] label: str # Alternative syntax Point2D = TypedDict('Point2D', { 'x': Required[int], 'y': Required[int], 'label': str }, total=False)
It is possible for a
TypedDicttype to inherit from one or more otherTypedDicttypes using the class-based syntax. Usage:class Point3D(Point2D): z: int
Point3Dhas three items:x,yandz. It is equivalent to this definition:class Point3D(TypedDict): x: int y: int z: int
A
TypedDictcannot inherit from a non-TypedDictclass, except forGeneric. For example:class X(TypedDict): x: int class Y(TypedDict): y: int class Z(object): pass # A non-TypedDict class class XY(X, Y): pass # OK class XZ(X, Z): pass # raises TypeError
A
TypedDictcan be generic:T = TypeVar("T") class Group(TypedDict, Generic[T]): key: T group: list[T]
A
TypedDictcan be introspected via annotations dicts (see Annotations Best Practices for more information on annotations best practices),__total__,__required_keys__, and__optional_keys__.- __total__¶
Point2D.__total__gives the value of thetotalargument. Example:>>> from typing import TypedDict >>> class Point2D(TypedDict): pass >>> Point2D.__total__ True >>> class Point2D(TypedDict, total=False): pass >>> Point2D.__total__ False >>> class Point3D(Point2D): pass >>> Point3D.__total__ True
This attribute reflects only the value of the
totalargument to the currentTypedDictclass, not whether the class is semantically total. For example, aTypedDictwith__total__set to True may have keys marked withNotRequired, or it may inherit from anotherTypedDictwithtotal=False. Therefore, it is generally better to use__required_keys__and__optional_keys__for introspection.
- __required_keys__¶
New in version 3.9.
- __optional_keys__¶
Point2D.__required_keys__andPoint2D.__optional_keys__returnfrozensetobjects containing required and non-required keys, respectively.Keys marked with
Requiredwill always appear in__required_keys__and keys marked withNotRequiredwill always appear in__optional_keys__.For backwards compatibility with Python 3.10 and below, it is also possible to use inheritance to declare both required and non-required keys in the same
TypedDict. This is done by declaring aTypedDictwith one value for thetotalargument and then inheriting from it in anotherTypedDictwith a different value fortotal:>>> class Point2D(TypedDict, total=False): ... x: int ... y: int ... >>> class Point3D(Point2D): ... z: int ... >>> Point3D.__required_keys__ == frozenset({'z'}) True >>> Point3D.__optional_keys__ == frozenset({'x', 'y'}) True
New in version 3.9.
Note
If
from __future__ import annotationsis used or if annotations are given as strings, annotations are not evaluated when theTypedDictis defined. Therefore, the runtime introspection that__required_keys__and__optional_keys__rely on may not work properly, and the values of the attributes may be incorrect.
See PEP 589 for more examples and detailed rules of using
TypedDict.New in version 3.8.
Changed in version 3.11: Added support for marking individual keys as
RequiredorNotRequired. See PEP 655.Changed in version 3.11: Added support for generic
TypedDicts.
Protocols¶
The following protocols are provided by the typing module. All are decorated
with @runtime_checkable.
- class typing.SupportsAbs¶
An ABC with one abstract method
__abs__that is covariant in its return type.
- class typing.SupportsBytes¶
An ABC with one abstract method
__bytes__.
- class typing.SupportsComplex¶
An ABC with one abstract method
__complex__.
- class typing.SupportsFloat¶
An ABC with one abstract method
__float__.
- class typing.SupportsIndex¶
An ABC with one abstract method
__index__.New in version 3.8.
- class typing.SupportsInt¶
An ABC with one abstract method
__int__.
- class typing.SupportsRound¶
An ABC with one abstract method
__round__that is covariant in its return type.
ABCs for working with IO¶
Functions and decorators¶
- typing.cast(typ, val)¶
Cast a value to a type.
This returns the value unchanged. To the type checker this signals that the return value has the designated type, but at runtime we intentionally don’t check anything (we want this to be as fast as possible).
- typing.assert_type(val, typ, /)¶
Ask a static type checker to confirm that val has an inferred type of typ.
At runtime this does nothing: it returns the first argument unchanged with no checks or side effects, no matter the actual type of the argument.
When a static type checker encounters a call to
assert_type(), it emits an error if the value is not of the specified type:def greet(name: str) -> None: assert_type(name, str) # OK, inferred type of `name` is `str` assert_type(name, int) # type checker error
This function is useful for ensuring the type checker’s understanding of a script is in line with the developer’s intentions:
def complex_function(arg: object): # Do some complex type-narrowing logic, # after which we hope the inferred type will be `int` ... # Test whether the type checker correctly understands our function assert_type(arg, int)
New in version 3.11.
- typing.assert_never(arg, /)¶
Ask a static type checker to confirm that a line of code is unreachable.
Example:
def int_or_str(arg: int | str) -> None: match arg: case int(): print("It's an int") case str(): print("It's a str") case _ as unreachable: assert_never(unreachable)
Here, the annotations allow the type checker to infer that the last case can never execute, because
argis either anintor astr, and both options are covered by earlier cases.If a type checker finds that a call to
assert_never()is reachable, it will emit an error. For example, if the type annotation forargwas insteadint | str | float, the type checker would emit an error pointing out thatunreachableis of typefloat. For a call toassert_neverto pass type checking, the inferred type of the argument passed in must be the bottom type,Never, and nothing else.At runtime, this throws an exception when called.
See also
Unreachable Code and Exhaustiveness Checking has more information about exhaustiveness checking with static typing.
New in version 3.11.
- typing.reveal_type(obj, /)¶
Reveal the inferred static type of an expression.
When a static type checker encounters a call to this function, it emits a diagnostic with the type of the argument. For example:
x: int = 1 reveal_type(x) # Revealed type is "builtins.int"
This can be useful when you want to debug how your type checker handles a particular piece of code.
The function returns its argument unchanged, which allows using it within an expression:
x = reveal_type(1) # Revealed type is "builtins.int"
Most type checkers support
reveal_type()anywhere, even if the name is not imported fromtyping. Importing the name fromtypingallows your code to run without runtime errors and communicates intent more clearly.At runtime, this function prints the runtime type of its argument to stderr and returns it unchanged:
x = reveal_type(1) # prints "Runtime type is int" print(x) # prints "1"
New in version 3.11.
- @typing.dataclass_transform(*, eq_default=True, order_default=False, kw_only_default=False, field_specifiers=(), **kwargs)¶
Decorator to mark an object as providing
dataclass-like behavior.dataclass_transformmay be used to decorate a class, metaclass, or a function that is itself a decorator. The presence of@dataclass_transform()tells a static type checker that the decorated object performs runtime “magic” that transforms a class in a similar way to@dataclasses.dataclass.Example usage with a decorator function:
T = TypeVar("T") @dataclass_transform() def create_model(cls: type[T]) -> type[T]: ... return cls @create_model class CustomerModel: id: int name: str
On a base class:
@dataclass_transform() class ModelBase: ... class CustomerModel(ModelBase): id: int name: str
On a metaclass:
@dataclass_transform() class ModelMeta(type): ... class ModelBase(metaclass=ModelMeta): ... class CustomerModel(ModelBase): id: int name: str
The
CustomerModelclasses defined above will be treated by type checkers similarly to classes created with@dataclasses.dataclass. For example, type checkers will assume these classes have__init__methods that acceptidandname.The decorated class, metaclass, or function may accept the following bool arguments which type checkers will assume have the same effect as they would have on the
@dataclasses.dataclassdecorator:init,eq,order,unsafe_hash,frozen,match_args,kw_only, andslots. It must be possible for the value of these arguments (TrueorFalse) to be statically evaluated.The arguments to the
dataclass_transformdecorator can be used to customize the default behaviors of the decorated class, metaclass, or function:- Parameters
eq_default (bool) – Indicates whether the
eqparameter is assumed to beTrueorFalseif it is omitted by the caller. Defaults toTrue.order_default (bool) – Indicates whether the
orderparameter is assumed to beTrueorFalseif it is omitted by the caller. Defaults toFalse.kw_only_default (bool) – Indicates whether the
kw_onlyparameter is assumed to beTrueorFalseif it is omitted by the caller. Defaults toFalse.field_specifiers (tuple[Callable[..., Any], ...]) – Specifies a static list of supported classes or functions that describe fields, similar to
dataclasses.field(). Defaults to().**kwargs (Any) – Arbitrary other keyword arguments are accepted in order to allow for possible future extensions.
Type checkers recognize the following optional parameters on field specifiers:
Recognised parameters for field specifiers¶ Parameter name
Description
initIndicates whether the field should be included in the synthesized
__init__method. If unspecified,initdefaults toTrue.defaultProvides the default value for the field.
default_factoryProvides a runtime callback that returns the default value for the field. If neither
defaultnordefault_factoryare specified, the field is assumed to have no default value and must be provided a value when the class is instantiated.factoryAn alias for the
default_factoryparameter on field specifiers.kw_onlyIndicates whether the field should be marked as keyword-only. If
True, the field will be keyword-only. IfFalse, it will not be keyword-only. If unspecified, the value of thekw_onlyparameter on the object decorated withdataclass_transformwill be used, or if that is unspecified, the value ofkw_only_defaultondataclass_transformwill be used.aliasProvides an alternative name for the field. This alternative name is used in the synthesized
__init__method.At runtime, this decorator records its arguments in the
__dataclass_transform__attribute on the decorated object. It has no other runtime effect.See PEP 681 for more details.
New in version 3.11.
- @typing.overload¶
Decorator for creating overloaded functions and methods.
The
@overloaddecorator allows describing functions and methods that support multiple different combinations of argument types. A series of@overload-decorated definitions must be followed by exactly one non-@overload-decorated definition (for the same function/method).@overload-decorated definitions are for the benefit of the type checker only, since they will be overwritten by the non-@overload-decorated definition. The non-@overload-decorated definition, meanwhile, will be used at runtime but should be ignored by a type checker. At runtime, calling an@overload-decorated function directly will raiseNotImplementedError.An example of overload that gives a more precise type than can be expressed using a union or a type variable:
@overload def process(response: None) -> None: ... @overload def process(response: int) -> tuple[int, str]: ... @overload def process(response: bytes) -> str: ... def process(response): ... # actual implementation goes here
See PEP 484 for more details and comparison with other typing semantics.
Changed in version 3.11: Overloaded functions can now be introspected at runtime using
get_overloads().
- typing.get_overloads(func)¶
Return a sequence of
@overload-decorated definitions for func.func is the function object for the implementation of the overloaded function. For example, given the definition of
processin the documentation for@overload,get_overloads(process)will return a sequence of three function objects for the three defined overloads. If called on a function with no overloads,get_overloads()returns an empty sequence.get_overloads()can be used for introspecting an overloaded function at runtime.New in version 3.11.
- typing.clear_overloads()¶
Clear all registered overloads in the internal registry.
This can be used to reclaim the memory used by the registry.
New in version 3.11.
- @typing.final¶
Decorator to indicate final methods and final classes.
Decorating a method with
@finalindicates to a type checker that the method cannot be overridden in a subclass. Decorating a class with@finalindicates that it cannot be subclassed.For example:
class Base: @final def done(self) -> None: ... class Sub(Base): def done(self) -> None: # Error reported by type checker ... @final class Leaf: ... class Other(Leaf): # Error reported by type checker ...
There is no runtime checking of these properties. See PEP 591 for more details.
New in version 3.8.
Changed in version 3.11: The decorator will now attempt to set a
__final__attribute toTrueon the decorated object. Thus, a check likeif getattr(obj, "__final__", False)can be used at runtime to determine whether an objectobjhas been marked as final. If the decorated object does not support setting attributes, the decorator returns the object unchanged without raising an exception.
- @typing.no_type_check¶
Decorator to indicate that annotations are not type hints.
This works as a class or function decorator. With a class, it applies recursively to all methods and classes defined in that class (but not to methods defined in its superclasses or subclasses). Type checkers will ignore all annotations in a function or class with this decorator.
@no_type_checkmutates the decorated object in place.
- @typing.no_type_check_decorator¶
Decorator to give another decorator the
no_type_check()effect.This wraps the decorator with something that wraps the decorated function in
no_type_check().
- @typing.type_check_only¶
Decorator to mark a class or function as unavailable at runtime.
This decorator is itself not available at runtime. It is mainly intended to mark classes that are defined in type stub files if an implementation returns an instance of a private class:
@type_check_only class Response: # private or not available at runtime code: int def get_header(self, name: str) -> str: ... def fetch_response() -> Response: ...
Note that returning instances of private classes is not recommended. It is usually preferable to make such classes public.
Introspection helpers¶
- typing.get_type_hints(obj, globalns=None, localns=None, include_extras=False)¶
Return a dictionary containing type hints for a function, method, module or class object.
This is often the same as
obj.__annotations__. In addition, forward references encoded as string literals are handled by evaluating them inglobalsandlocalsnamespaces. For a classC, return a dictionary constructed by merging all the__annotations__alongC.__mro__in reverse order.The function recursively replaces all
Annotated[T, ...]withT, unlessinclude_extrasis set toTrue(seeAnnotatedfor more information). For example:class Student(NamedTuple): name: Annotated[str, 'some marker'] assert get_type_hints(Student) == {'name': str} assert get_type_hints(Student, include_extras=False) == {'name': str} assert get_type_hints(Student, include_extras=True) == { 'name': Annotated[str, 'some marker'] }
Note
get_type_hints()does not work with imported type aliases that include forward references. Enabling postponed evaluation of annotations (PEP 563) may remove the need for most forward references.Changed in version 3.9: Added
include_extrasparameter as part of PEP 593. See the documentation onAnnotatedfor more information.Changed in version 3.11: Previously,
Optional[t]was added for function and method annotations if a default value equal toNonewas set. Now the annotation is returned unchanged.
- typing.get_origin(tp)¶
Get the unsubscripted version of a type: for a typing object of the form
X[Y, Z, ...]returnX.If
Xis a typing-module alias for a builtin orcollectionsclass, it will be normalized to the original class. IfXis an instance ofParamSpecArgsorParamSpecKwargs, return the underlyingParamSpec. ReturnNonefor unsupported objects.Examples:
assert get_origin(str) is None assert get_origin(Dict[str, int]) is dict assert get_origin(Union[int, str]) is Union P = ParamSpec('P') assert get_origin(P.args) is P assert get_origin(P.kwargs) is P
New in version 3.8.
- typing.get_args(tp)¶
Get type arguments with all substitutions performed: for a typing object of the form
X[Y, Z, ...]return(Y, Z, ...).If
Xis a union orLiteralcontained in another generic type, the order of(Y, Z, ...)may be different from the order of the original arguments[Y, Z, ...]due to type caching. Return()for unsupported objects.Examples:
assert get_args(int) == () assert get_args(Dict[int, str]) == (int, str) assert get_args(Union[int, str]) == (int, str)
New in version 3.8.
- typing.is_typeddict(tp)¶
Check if a type is a
TypedDict.For example:
class Film(TypedDict): title: str year: int assert is_typeddict(Film) assert not is_typeddict(list | str) # TypedDict is a factory for creating typed dicts, # not a typed dict itself assert not is_typeddict(TypedDict)
New in version 3.10.
- class typing.ForwardRef¶
Class used for internal typing representation of string forward references.
For example,
List["SomeClass"]is implicitly transformed intoList[ForwardRef("SomeClass")].ForwardRefshould not be instantiated by a user, but may be used by introspection tools.Note
PEP 585 generic types such as
list["SomeClass"]will not be implicitly transformed intolist[ForwardRef("SomeClass")]and thus will not automatically resolve tolist[SomeClass].New in version 3.7.4.
Constant¶
- typing.TYPE_CHECKING¶
A special constant that is assumed to be
Trueby 3rd party static type checkers. It isFalseat runtime.Usage:
if TYPE_CHECKING: import expensive_mod def fun(arg: 'expensive_mod.SomeType') -> None: local_var: expensive_mod.AnotherType = other_fun()
The first type annotation must be enclosed in quotes, making it a “forward reference”, to hide the
expensive_modreference from the interpreter runtime. Type annotations for local variables are not evaluated, so the second annotation does not need to be enclosed in quotes.Note
If
from __future__ import annotationsis used, annotations are not evaluated at function definition time. Instead, they are stored as strings in__annotations__. This makes it unnecessary to use quotes around the annotation (see PEP 563).New in version 3.5.2.
Deprecated aliases¶
This module defines several deprecated aliases to pre-existing
standard library classes. These were originally included in the typing
module in order to support parameterizing these generic classes using [].
However, the aliases became redundant in Python 3.9 when the
corresponding pre-existing classes were enhanced to support [] (see
PEP 585).
The redundant types are deprecated as of Python 3.9. However, while the aliases may be removed at some point, removal of these aliases is not currently planned. As such, no deprecation warnings are currently issued by the interpreter for these aliases.
If at some point it is decided to remove these deprecated aliases, a deprecation warning will be issued by the interpreter for at least two releases prior to removal. The aliases are guaranteed to remain in the typing module without deprecation warnings until at least Python 3.14.
Type checkers are encouraged to flag uses of the deprecated types if the program they are checking targets a minimum Python version of 3.9 or newer.
Aliases to built-in types¶
- class typing.Dict(dict, MutableMapping[KT, VT])¶
Deprecated alias to
dict.Note that to annotate arguments, it is preferred to use an abstract collection type such as
Mappingrather than to usedictortyping.Dict.This type can be used as follows:
def count_words(text: str) -> Dict[str, int]: ...
Deprecated since version 3.9:
builtins.dictnow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- class typing.List(list, MutableSequence[T])¶
Deprecated alias to
list.Note that to annotate arguments, it is preferred to use an abstract collection type such as
SequenceorIterablerather than to uselistortyping.List.This type may be used as follows:
T = TypeVar('T', int, float) def vec2(x: T, y: T) -> List[T]: return [x, y] def keep_positives(vector: Sequence[T]) -> List[T]: return [item for item in vector if item > 0]
Deprecated since version 3.9:
builtins.listnow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- class typing.Set(set, MutableSet[T])¶
Deprecated alias to
builtins.set.Note that to annotate arguments, it is preferred to use an abstract collection type such as
AbstractSetrather than to usesetortyping.Set.Deprecated since version 3.9:
builtins.setnow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- class typing.FrozenSet(frozenset, AbstractSet[T_co])¶
Deprecated alias to
builtins.frozenset.Deprecated since version 3.9:
builtins.frozensetnow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- typing.Tuple¶
Deprecated alias for
tuple.tupleandTupleare special-cased in the type system; see Annotating tuples for more details.Deprecated since version 3.9:
builtins.tuplenow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- class typing.Type(Generic[CT_co])¶
Deprecated alias to
type.See The type of class objects for details on using
typeortyping.Typein type annotations.New in version 3.5.2.
Deprecated since version 3.9:
builtins.typenow supports subscripting ([]). See PEP 585 and Generic Alias Type.
Aliases to types in collections¶
- class typing.DefaultDict(collections.defaultdict, MutableMapping[KT, VT])¶
Deprecated alias to
collections.defaultdict.New in version 3.5.2.
Deprecated since version 3.9:
collections.defaultdictnow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- class typing.OrderedDict(collections.OrderedDict, MutableMapping[KT, VT])¶
Deprecated alias to
collections.OrderedDict.New in version 3.7.2.
Deprecated since version 3.9:
collections.OrderedDictnow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- class typing.ChainMap(collections.ChainMap, MutableMapping[KT, VT])¶
Deprecated alias to
collections.ChainMap.New in version 3.5.4.
New in version 3.6.1.
Deprecated since version 3.9:
collections.ChainMapnow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- class typing.Counter(collections.Counter, Dict[T, int])¶
Deprecated alias to
collections.Counter.New in version 3.5.4.
New in version 3.6.1.
Deprecated since version 3.9:
collections.Counternow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- class typing.Deque(deque, MutableSequence[T])¶
Deprecated alias to
collections.deque.New in version 3.5.4.
New in version 3.6.1.
Deprecated since version 3.9:
collections.dequenow supports subscripting ([]). See PEP 585 and Generic Alias Type.
Aliases to other concrete types¶
- class typing.Pattern¶
- class typing.Match¶
Deprecated aliases corresponding to the return types from
re.compile()andre.match().These types (and the corresponding functions) are generic over
AnyStr.Patterncan be specialised asPattern[str]orPattern[bytes];Matchcan be specialised asMatch[str]orMatch[bytes].Deprecated since version 3.8, will be removed in version 3.13: The
typing.renamespace is deprecated and will be removed. These types should be directly imported fromtypinginstead.Deprecated since version 3.9: Classes
PatternandMatchfromrenow support[]. See PEP 585 and Generic Alias Type.
- class typing.Text¶
Deprecated alias for
str.Textis provided to supply a forward compatible path for Python 2 code: in Python 2,Textis an alias forunicode.Use
Textto indicate that a value must contain a unicode string in a manner that is compatible with both Python 2 and Python 3:def add_unicode_checkmark(text: Text) -> Text: return text + u' \u2713'
New in version 3.5.2.
Deprecated since version 3.11: Python 2 is no longer supported, and most type checkers also no longer support type checking Python 2 code. Removal of the alias is not currently planned, but users are encouraged to use
strinstead ofText.
Aliases to container ABCs in collections.abc¶
- class typing.AbstractSet(Collection[T_co])¶
Deprecated alias to
collections.abc.Set.Deprecated since version 3.9:
collections.abc.Setnow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- class typing.ByteString(Sequence[int])¶
This type represents the types
bytes,bytearray, andmemoryviewof byte sequences.Deprecated since version 3.9, will be removed in version 3.14: Prefer
typing_extensions.Buffer, or a union likebytes | bytearray | memoryview.
- class typing.Collection(Sized, Iterable[T_co], Container[T_co])¶
Deprecated alias to
collections.abc.Collection.New in version 3.6.0.
Deprecated since version 3.9:
collections.abc.Collectionnow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- class typing.Container(Generic[T_co])¶
Deprecated alias to
collections.abc.Container.Deprecated since version 3.9:
collections.abc.Containernow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- class typing.ItemsView(MappingView, AbstractSet[tuple[KT_co, VT_co]])¶
Deprecated alias to
collections.abc.ItemsView.Deprecated since version 3.9:
collections.abc.ItemsViewnow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- class typing.KeysView(MappingView, AbstractSet[KT_co])¶
Deprecated alias to
collections.abc.KeysView.Deprecated since version 3.9:
collections.abc.KeysViewnow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- class typing.Mapping(Collection[KT], Generic[KT, VT_co])¶
Deprecated alias to
collections.abc.Mapping.This type can be used as follows:
def get_position_in_index(word_list: Mapping[str, int], word: str) -> int: return word_list[word]
Deprecated since version 3.9:
collections.abc.Mappingnow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- class typing.MappingView(Sized)¶
Deprecated alias to
collections.abc.MappingView.Deprecated since version 3.9:
collections.abc.MappingViewnow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- class typing.MutableMapping(Mapping[KT, VT])¶
Deprecated alias to
collections.abc.MutableMapping.Deprecated since version 3.9:
collections.abc.MutableMappingnow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- class typing.MutableSequence(Sequence[T])¶
Deprecated alias to
collections.abc.MutableSequence.Deprecated since version 3.9:
collections.abc.MutableSequencenow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- class typing.MutableSet(AbstractSet[T])¶
Deprecated alias to
collections.abc.MutableSet.Deprecated since version 3.9:
collections.abc.MutableSetnow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- class typing.Sequence(Reversible[T_co], Collection[T_co])¶
Deprecated alias to
collections.abc.Sequence.Deprecated since version 3.9:
collections.abc.Sequencenow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- class typing.ValuesView(MappingView, Collection[_VT_co])¶
Deprecated alias to
collections.abc.ValuesView.Deprecated since version 3.9:
collections.abc.ValuesViewnow supports subscripting ([]). See PEP 585 and Generic Alias Type.
Aliases to asynchronous ABCs in collections.abc¶
- class typing.Coroutine(Awaitable[ReturnType], Generic[YieldType, SendType, ReturnType])¶
Deprecated alias to
collections.abc.Coroutine.The variance and order of type variables correspond to those of
Generator, for example:from collections.abc import Coroutine c: Coroutine[list[str], str, int] # Some coroutine defined elsewhere x = c.send('hi') # Inferred type of 'x' is list[str] async def bar() -> None: y = await c # Inferred type of 'y' is int
New in version 3.5.3.
Deprecated since version 3.9:
collections.abc.Coroutinenow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- class typing.AsyncGenerator(AsyncIterator[YieldType], Generic[YieldType, SendType])¶
Deprecated alias to
collections.abc.AsyncGenerator.An async generator can be annotated by the generic type
AsyncGenerator[YieldType, SendType]. For example:async def echo_round() -> AsyncGenerator[int, float]: sent = yield 0 while sent >= 0.0: rounded = await round(sent) sent = yield rounded
Unlike normal generators, async generators cannot return a value, so there is no
ReturnTypetype parameter. As withGenerator, theSendTypebehaves contravariantly.If your generator will only yield values, set the
SendTypetoNone:async def infinite_stream(start: int) -> AsyncGenerator[int, None]: while True: yield start start = await increment(start)
Alternatively, annotate your generator as having a return type of either
AsyncIterable[YieldType]orAsyncIterator[YieldType]:async def infinite_stream(start: int) -> AsyncIterator[int]: while True: yield start start = await increment(start)
New in version 3.6.1.
Deprecated since version 3.9:
collections.abc.AsyncGeneratornow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- class typing.AsyncIterable(Generic[T_co])¶
Deprecated alias to
collections.abc.AsyncIterable.New in version 3.5.2.
Deprecated since version 3.9:
collections.abc.AsyncIterablenow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- class typing.AsyncIterator(AsyncIterable[T_co])¶
Deprecated alias to
collections.abc.AsyncIterator.New in version 3.5.2.
Deprecated since version 3.9:
collections.abc.AsyncIteratornow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- class typing.Awaitable(Generic[T_co])¶
Deprecated alias to
collections.abc.Awaitable.New in version 3.5.2.
Deprecated since version 3.9:
collections.abc.Awaitablenow supports subscripting ([]). See PEP 585 and Generic Alias Type.
Aliases to other ABCs in collections.abc¶
- class typing.Iterable(Generic[T_co])¶
Deprecated alias to
collections.abc.Iterable.Deprecated since version 3.9:
collections.abc.Iterablenow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- class typing.Iterator(Iterable[T_co])¶
Deprecated alias to
collections.abc.Iterator.Deprecated since version 3.9:
collections.abc.Iteratornow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- typing.Callable¶
Deprecated alias to
collections.abc.Callable.See Annotating callable objects for details on how to use
collections.abc.Callableandtyping.Callablein type annotations.Deprecated since version 3.9:
collections.abc.Callablenow supports subscripting ([]). See PEP 585 and Generic Alias Type.Changed in version 3.10:
Callablenow supportsParamSpecandConcatenate. See PEP 612 for more details.
- class typing.Generator(Iterator[YieldType], Generic[YieldType, SendType, ReturnType])¶
Deprecated alias to
collections.abc.Generator.A generator can be annotated by the generic type
Generator[YieldType, SendType, ReturnType]. For example:def echo_round() -> Generator[int, float, str]: sent = yield 0 while sent >= 0: sent = yield round(sent) return 'Done'
Note that unlike many other generics in the typing module, the
SendTypeofGeneratorbehaves contravariantly, not covariantly or invariantly.If your generator will only yield values, set the
SendTypeandReturnTypetoNone:def infinite_stream(start: int) -> Generator[int, None, None]: while True: yield start start += 1
Alternatively, annotate your generator as having a return type of either
Iterable[YieldType]orIterator[YieldType]:def infinite_stream(start: int) -> Iterator[int]: while True: yield start start += 1
Deprecated since version 3.9:
collections.abc.Generatornow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- class typing.Hashable¶
Alias to
collections.abc.Hashable.
- class typing.Reversible(Iterable[T_co])¶
Deprecated alias to
collections.abc.Reversible.Deprecated since version 3.9:
collections.abc.Reversiblenow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- class typing.Sized¶
Alias to
collections.abc.Sized.
Aliases to contextlib ABCs¶
- class typing.ContextManager(Generic[T_co])¶
Deprecated alias to
contextlib.AbstractContextManager.New in version 3.5.4.
New in version 3.6.0.
Deprecated since version 3.9:
contextlib.AbstractContextManagernow supports subscripting ([]). See PEP 585 and Generic Alias Type.
- class typing.AsyncContextManager(Generic[T_co])¶
Deprecated alias to
contextlib.AbstractAsyncContextManager.New in version 3.5.4.
New in version 3.6.2.
Deprecated since version 3.9:
contextlib.AbstractAsyncContextManagernow supports subscripting ([]). See PEP 585 and Generic Alias Type.
Deprecation Timeline of Major Features¶
Certain features in typing are deprecated and may be removed in a future
version of Python. The following table summarizes major deprecations for your
convenience. This is subject to change, and not all deprecations are listed.
Feature |
Deprecated in |
Projected removal |
PEP/issue |
|---|---|---|---|
|
3.8 |
3.13 |
|
|
3.9 |
Undecided (see Deprecated aliases for more information) |
|
3.9 |
3.14 |
||
3.11 |
Undecided |