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"""The types module contains custom types used by pydantic.""" from __future__ import annotations as _annotations import base64 import dataclasses as _dataclasses import re from datetime import date, datetime from decimal import Decimal from enum import Enum from pathlib import Path from types import ModuleType from typing import ( TYPE_CHECKING, Any, Callable, ClassVar, FrozenSet, Generic, Hashable, Iterator, List, Set, TypeVar, cast, ) from uuid import UUID import annotated_types from annotated_types import BaseMetadata, MaxLen, MinLen from pydantic_core import CoreSchema, PydanticCustomError, core_schema from typing_extensions import Annotated, Literal, Protocol, deprecated from ._internal import _fields, _internal_dataclass, _utils, _validators from ._migration import getattr_migration from .annotated_handlers import GetCoreSchemaHandler, GetJsonSchemaHandler from .errors import PydanticUserError from .json_schema import JsonSchemaValue from .warnings import PydanticDeprecatedSince20 __all__ = ( 'Strict', 'StrictStr', 'conbytes', 'conlist', 'conset', 'confrozenset', 'constr', 'ImportString', 'conint', 'PositiveInt', 'NegativeInt', 'NonNegativeInt', 'NonPositiveInt', 'confloat', 'PositiveFloat', 'NegativeFloat', 'NonNegativeFloat', 'NonPositiveFloat', 'FiniteFloat', 'condecimal', 'UUID1', 'UUID3', 'UUID4', 'UUID5', 'FilePath', 'DirectoryPath', 'NewPath', 'Json', 'SecretStr', 'SecretBytes', 'StrictBool', 'StrictBytes', 'StrictInt', 'StrictFloat', 'PaymentCardNumber', 'ByteSize', 'PastDate', 'FutureDate', 'PastDatetime', 'FutureDatetime', 'condate', 'AwareDatetime', 'NaiveDatetime', 'AllowInfNan', 'EncoderProtocol', 'EncodedBytes', 'EncodedStr', 'Base64Encoder', 'Base64Bytes', 'Base64Str', 'Base64UrlBytes', 'Base64UrlStr', 'GetPydanticSchema', 'StringConstraints', ) @_dataclasses.dataclass class Strict(_fields.PydanticMetadata, BaseMetadata): """A field metadata class to indicate that a field should be validated in strict mode. Attributes: strict: Whether to validate the field in strict mode. Example: ```python from typing_extensions import Annotated from pydantic.types import Strict StrictBool = Annotated[bool, Strict()] ``` """ strict: bool = True def __hash__(self) -> int: return hash(self.strict) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ BOOLEAN TYPES ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ StrictBool = Annotated[bool, Strict()] """A boolean that must be either ``True`` or ``False``.""" # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ INTEGER TYPES ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ def conint( *, strict: bool | None = None, gt: int | None = None, ge: int | None = None, lt: int | None = None, le: int | None = None, multiple_of: int | None = None, ) -> type[int]: """ !!! warning "Discouraged" This function is **discouraged** in favor of using [`Annotated`](https://docs.python.org/3/library/typing.html#typing.Annotated) with [`Field`][pydantic.fields.Field] instead. This function will be **deprecated** in Pydantic 3.0. The reason is that `conint` returns a type, which doesn't play well with static analysis tools. === ":x: Don't do this" ```py from pydantic import BaseModel, conint class Foo(BaseModel): bar: conint(strict=True, gt=0) ``` === ":white_check_mark: Do this" ```py from typing_extensions import Annotated from pydantic import BaseModel, Field class Foo(BaseModel): bar: Annotated[int, Field(strict=True, gt=0)] ``` A wrapper around `int` that allows for additional constraints. Args: strict: Whether to validate the integer in strict mode. Defaults to `None`. gt: The value must be greater than this. ge: The value must be greater than or equal to this. lt: The value must be less than this. le: The value must be less than or equal to this. multiple_of: The value must be a multiple of this. Returns: The wrapped integer type. ```py from pydantic import BaseModel, ValidationError, conint class ConstrainedExample(BaseModel): constrained_int: conint(gt=1) m = ConstrainedExample(constrained_int=2) print(repr(m)) #> ConstrainedExample(constrained_int=2) try: ConstrainedExample(constrained_int=0) except ValidationError as e: print(e.errors()) ''' [ { 'type': 'greater_than', 'loc': ('constrained_int',), 'msg': 'Input should be greater than 1', 'input': 0, 'ctx': {'gt': 1}, 'url': 'https://errors.pydantic.dev/2/v/greater_than', } ] ''' ``` """ # noqa: D212 return Annotated[ int, Strict(strict) if strict is not None else None, annotated_types.Interval(gt=gt, ge=ge, lt=lt, le=le), annotated_types.MultipleOf(multiple_of) if multiple_of is not None else None, ] PositiveInt = Annotated[int, annotated_types.Gt(0)] """An integer that must be greater than zero. ```py from pydantic import BaseModel, PositiveInt, ValidationError class Model(BaseModel): positive_int: PositiveInt m = Model(positive_int=1) print(repr(m)) #> Model(positive_int=1) try: Model(positive_int=-1) except ValidationError as e: print(e.errors()) ''' [ { 'type': 'greater_than', 'loc': ('positive_int',), 'msg': 'Input should be greater than 0', 'input': -1, 'ctx': {'gt': 0}, 'url': 'https://errors.pydantic.dev/2/v/greater_than', } ] ''' ``` """ NegativeInt = Annotated[int, annotated_types.Lt(0)] """An integer that must be less than zero. ```py from pydantic import BaseModel, NegativeInt, ValidationError class Model(BaseModel): negative_int: NegativeInt m = Model(negative_int=-1) print(repr(m)) #> Model(negative_int=-1) try: Model(negative_int=1) except ValidationError as e: print(e.errors()) ''' [ { 'type': 'less_than', 'loc': ('negative_int',), 'msg': 'Input should be less than 0', 'input': 1, 'ctx': {'lt': 0}, 'url': 'https://errors.pydantic.dev/2/v/less_than', } ] ''' ``` """ NonPositiveInt = Annotated[int, annotated_types.Le(0)] """An integer that must be less than or equal to zero. ```py from pydantic import BaseModel, NonPositiveInt, ValidationError class Model(BaseModel): non_positive_int: NonPositiveInt m = Model(non_positive_int=0) print(repr(m)) #> Model(non_positive_int=0) try: Model(non_positive_int=1) except ValidationError as e: print(e.errors()) ''' [ { 'type': 'less_than_equal', 'loc': ('non_positive_int',), 'msg': 'Input should be less than or equal to 0', 'input': 1, 'ctx': {'le': 0}, 'url': 'https://errors.pydantic.dev/2/v/less_than_equal', } ] ''' ``` """ NonNegativeInt = Annotated[int, annotated_types.Ge(0)] """An integer that must be greater than or equal to zero. ```py from pydantic import BaseModel, NonNegativeInt, ValidationError class Model(BaseModel): non_negative_int: NonNegativeInt m = Model(non_negative_int=0) print(repr(m)) #> Model(non_negative_int=0) try: Model(non_negative_int=-1) except ValidationError as e: print(e.errors()) ''' [ { 'type': 'greater_than_equal', 'loc': ('non_negative_int',), 'msg': 'Input should be greater than or equal to 0', 'input': -1, 'ctx': {'ge': 0}, 'url': 'https://errors.pydantic.dev/2/v/greater_than_equal', } ] ''' ``` """ StrictInt = Annotated[int, Strict()] """An integer that must be validated in strict mode. ```py from pydantic import BaseModel, StrictInt, ValidationError class StrictIntModel(BaseModel): strict_int: StrictInt try: StrictIntModel(strict_int=3.14159) except ValidationError as e: print(e) ''' 1 validation error for StrictIntModel strict_int Input should be a valid integer [type=int_type, input_value=3.14159, input_type=float] ''' ``` """ # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ FLOAT TYPES ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ @_dataclasses.dataclass class AllowInfNan(_fields.PydanticMetadata): """A field metadata class to indicate that a field should allow ``-inf``, ``inf``, and ``nan``.""" allow_inf_nan: bool = True def __hash__(self) -> int: return hash(self.allow_inf_nan) def confloat( *, strict: bool | None = None, gt: float | None = None, ge: float | None = None, lt: float | None = None, le: float | None = None, multiple_of: float | None = None, allow_inf_nan: bool | None = None, ) -> type[float]: """ !!! warning "Discouraged" This function is **discouraged** in favor of using [`Annotated`](https://docs.python.org/3/library/typing.html#typing.Annotated) with [`Field`][pydantic.fields.Field] instead. This function will be **deprecated** in Pydantic 3.0. The reason is that `confloat` returns a type, which doesn't play well with static analysis tools. === ":x: Don't do this" ```py from pydantic import BaseModel, confloat class Foo(BaseModel): bar: confloat(strict=True, gt=0) ``` === ":white_check_mark: Do this" ```py from typing_extensions import Annotated from pydantic import BaseModel, Field class Foo(BaseModel): bar: Annotated[float, Field(strict=True, gt=0)] ``` A wrapper around `float` that allows for additional constraints. Args: strict: Whether to validate the float in strict mode. gt: The value must be greater than this. ge: The value must be greater than or equal to this. lt: The value must be less than this. le: The value must be less than or equal to this. multiple_of: The value must be a multiple of this. allow_inf_nan: Whether to allow `-inf`, `inf`, and `nan`. Returns: The wrapped float type. ```py from pydantic import BaseModel, ValidationError, confloat class ConstrainedExample(BaseModel): constrained_float: confloat(gt=1.0) m = ConstrainedExample(constrained_float=1.1) print(repr(m)) #> ConstrainedExample(constrained_float=1.1) try: ConstrainedExample(constrained_float=0.9) except ValidationError as e: print(e.errors()) ''' [ { 'type': 'greater_than', 'loc': ('constrained_float',), 'msg': 'Input should be greater than 1', 'input': 0.9, 'ctx': {'gt': 1.0}, 'url': 'https://errors.pydantic.dev/2/v/greater_than', } ] ''' ``` """ # noqa: D212 return Annotated[ float, Strict(strict) if strict is not None else None, annotated_types.Interval(gt=gt, ge=ge, lt=lt, le=le), annotated_types.MultipleOf(multiple_of) if multiple_of is not None else None, AllowInfNan(allow_inf_nan) if allow_inf_nan is not None else None, ] PositiveFloat = Annotated[float, annotated_types.Gt(0)] """A float that must be greater than zero. ```py from pydantic import BaseModel, PositiveFloat, ValidationError class Model(BaseModel): positive_float: PositiveFloat m = Model(positive_float=1.0) print(repr(m)) #> Model(positive_float=1.0) try: Model(positive_float=-1.0) except ValidationError as e: print(e.errors()) ''' [ { 'type': 'greater_than', 'loc': ('positive_float',), 'msg': 'Input should be greater than 0', 'input': -1.0, 'ctx': {'gt': 0.0}, 'url': 'https://errors.pydantic.dev/2/v/greater_than', } ] ''' ``` """ NegativeFloat = Annotated[float, annotated_types.Lt(0)] """A float that must be less than zero. ```py from pydantic import BaseModel, NegativeFloat, ValidationError class Model(BaseModel): negative_float: NegativeFloat m = Model(negative_float=-1.0) print(repr(m)) #> Model(negative_float=-1.0) try: Model(negative_float=1.0) except ValidationError as e: print(e.errors()) ''' [ { 'type': 'less_than', 'loc': ('negative_float',), 'msg': 'Input should be less than 0', 'input': 1.0, 'ctx': {'lt': 0.0}, 'url': 'https://errors.pydantic.dev/2/v/less_than', } ] ''' ``` """ NonPositiveFloat = Annotated[float, annotated_types.Le(0)] """A float that must be less than or equal to zero. ```py from pydantic import BaseModel, NonPositiveFloat, ValidationError class Model(BaseModel): non_positive_float: NonPositiveFloat m = Model(non_positive_float=0.0) print(repr(m)) #> Model(non_positive_float=0.0) try: Model(non_positive_float=1.0) except ValidationError as e: print(e.errors()) ''' [ { 'type': 'less_than_equal', 'loc': ('non_positive_float',), 'msg': 'Input should be less than or equal to 0', 'input': 1.0, 'ctx': {'le': 0.0}, 'url': 'https://errors.pydantic.dev/2/v/less_than_equal', } ] ''' ``` """ NonNegativeFloat = Annotated[float, annotated_types.Ge(0)] """A float that must be greater than or equal to zero. ```py from pydantic import BaseModel, NonNegativeFloat, ValidationError class Model(BaseModel): non_negative_float: NonNegativeFloat m = Model(non_negative_float=0.0) print(repr(m)) #> Model(non_negative_float=0.0) try: Model(non_negative_float=-1.0) except ValidationError as e: print(e.errors()) ''' [ { 'type': 'greater_than_equal', 'loc': ('non_negative_float',), 'msg': 'Input should be greater than or equal to 0', 'input': -1.0, 'ctx': {'ge': 0.0}, 'url': 'https://errors.pydantic.dev/2/v/greater_than_equal', } ] ''' ``` """ StrictFloat = Annotated[float, Strict(True)] """A float that must be validated in strict mode. ```py from pydantic import BaseModel, StrictFloat, ValidationError class StrictFloatModel(BaseModel): strict_float: StrictFloat try: StrictFloatModel(strict_float='1.0') except ValidationError as e: print(e) ''' 1 validation error for StrictFloatModel strict_float Input should be a valid number [type=float_type, input_value='1.0', input_type=str] ''' ``` """ FiniteFloat = Annotated[float, AllowInfNan(False)] """A float that must be finite (not ``-inf``, ``inf``, or ``nan``). ```py from pydantic import BaseModel, FiniteFloat class Model(BaseModel): finite: FiniteFloat m = Model(finite=1.0) print(m) #> finite=1.0 ``` """ # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ BYTES TYPES ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ def conbytes( *, min_length: int | None = None, max_length: int | None = None, strict: bool | None = None, ) -> type[bytes]: """A wrapper around `bytes` that allows for additional constraints. Args: min_length: The minimum length of the bytes. max_length: The maximum length of the bytes. strict: Whether to validate the bytes in strict mode. Returns: The wrapped bytes type. """ return Annotated[ bytes, Strict(strict) if strict is not None else None, annotated_types.Len(min_length or 0, max_length), ] StrictBytes = Annotated[bytes, Strict()] """A bytes that must be validated in strict mode.""" # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ STRING TYPES ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ @_dataclasses.dataclass(frozen=True) class StringConstraints(annotated_types.GroupedMetadata): """Apply constraints to `str` types. Attributes: strip_whitespace: Whether to strip whitespace from the string. to_upper: Whether to convert the string to uppercase. to_lower: Whether to convert the string to lowercase. strict: Whether to validate the string in strict mode. min_length: The minimum length of the string. max_length: The maximum length of the string. pattern: A regex pattern that the string must match. """ strip_whitespace: bool | None = None to_upper: bool | None = None to_lower: bool | None = None strict: bool | None = None min_length: int | None = None max_length: int | None = None pattern: str | None = None def __iter__(self) -> Iterator[BaseMetadata]: if self.min_length is not None: yield MinLen(self.min_length) if self.max_length is not None: yield MaxLen(self.max_length) if self.strict is not None: yield Strict() if ( self.strip_whitespace is not None or self.pattern is not None or self.to_lower is not None or self.to_upper is not None ): yield _fields.PydanticGeneralMetadata( strip_whitespace=self.strip_whitespace, to_upper=self.to_upper, to_lower=self.to_lower, pattern=self.pattern, ) def constr( *, strip_whitespace: bool | None = None, to_upper: bool | None = None, to_lower: bool | None = None, strict: bool | None = None, min_length: int | None = None, max_length: int | None = None, pattern: str | None = None, ) -> type[str]: """ !!! warning "Discouraged" This function is **discouraged** in favor of using [`Annotated`](https://docs.python.org/3/library/typing.html#typing.Annotated) with [`StringConstraints`][pydantic.types.StringConstraints] instead. This function will be **deprecated** in Pydantic 3.0. The reason is that `constr` returns a type, which doesn't play well with static analysis tools. === ":x: Don't do this" ```py from pydantic import BaseModel, constr class Foo(BaseModel): bar: constr(strip_whitespace=True, to_upper=True, pattern=r'^[A-Z]+$') ``` === ":white_check_mark: Do this" ```py from pydantic import BaseModel, Annotated, StringConstraints class Foo(BaseModel): bar: Annotated[str, StringConstraints(strip_whitespace=True, to_upper=True, pattern=r'^[A-Z]+$')] ``` A wrapper around `str` that allows for additional constraints. ```py from pydantic import BaseModel, constr class Foo(BaseModel): bar: constr(strip_whitespace=True, to_upper=True, pattern=r'^[A-Z]+$') foo = Foo(bar=' hello ') print(foo) #> bar='HELLO' ``` Args: strip_whitespace: Whether to remove leading and trailing whitespace. to_upper: Whether to turn all characters to uppercase. to_lower: Whether to turn all characters to lowercase. strict: Whether to validate the string in strict mode. min_length: The minimum length of the string. max_length: The maximum length of the string. pattern: A regex pattern to validate the string against. Returns: The wrapped string type. """ # noqa: D212 return Annotated[ str, StringConstraints( strip_whitespace=strip_whitespace, to_upper=to_upper, to_lower=to_lower, strict=strict, min_length=min_length, max_length=max_length, pattern=pattern, ), ] StrictStr = Annotated[str, Strict()] """A string that must be validated in strict mode.""" # ~~~~~~~~~~~~~~~~~~~~~~~~~~~ COLLECTION TYPES ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ HashableItemType = TypeVar('HashableItemType', bound=Hashable) def conset( item_type: type[HashableItemType], *, min_length: int | None = None, max_length: int | None = None ) -> type[set[HashableItemType]]: """A wrapper around `typing.Set` that allows for additional constraints. Args: item_type: The type of the items in the set. min_length: The minimum length of the set. max_length: The maximum length of the set. Returns: The wrapped set type. """ return Annotated[Set[item_type], annotated_types.Len(min_length or 0, max_length)] def confrozenset( item_type: type[HashableItemType], *, min_length: int | None = None, max_length: int | None = None ) -> type[frozenset[HashableItemType]]: """A wrapper around `typing.FrozenSet` that allows for additional constraints. Args: item_type: The type of the items in the frozenset. min_length: The minimum length of the frozenset. max_length: The maximum length of the frozenset. Returns: The wrapped frozenset type. """ return Annotated[FrozenSet[item_type], annotated_types.Len(min_length or 0, max_length)] AnyItemType = TypeVar('AnyItemType') def conlist( item_type: type[AnyItemType], *, min_length: int | None = None, max_length: int | None = None, unique_items: bool | None = None, ) -> type[list[AnyItemType]]: """A wrapper around typing.List that adds validation. Args: item_type: The type of the items in the list. min_length: The minimum length of the list. Defaults to None. max_length: The maximum length of the list. Defaults to None. unique_items: Whether the items in the list must be unique. Defaults to None. Returns: The wrapped list type. """ if unique_items is not None: raise PydanticUserError( ( '`unique_items` is removed, use `Set` instead' '(this feature is discussed in https://github.com/pydantic/pydantic-core/issues/296)' ), code='removed-kwargs', ) return Annotated[List[item_type], annotated_types.Len(min_length or 0, max_length)] # ~~~~~~~~~~~~~~~~~~~~~~~~~~ IMPORT STRING TYPE ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ AnyType = TypeVar('AnyType') if TYPE_CHECKING: ImportString = Annotated[AnyType, ...] else: class ImportString: """A type that can be used to import a type from a string. `ImportString` expects a string and loads the Python object importable at that dotted path. Attributes of modules may be separated from the module by `:` or `.`, e.g. if `'math:cos'` was provided, the resulting field value would be the function`cos`. If a `.` is used and both an attribute and submodule are present at the same path, the module will be preferred. On model instantiation, pointers will be evaluated and imported. There is some nuance to this behavior, demonstrated in the examples below. > A known limitation: setting a default value to a string > won't result in validation (thus evaluation). This is actively > being worked on. **Good behavior:** ```py from math import cos from pydantic import BaseModel, ImportString, ValidationError class ImportThings(BaseModel): obj: ImportString # A string value will cause an automatic import my_cos = ImportThings(obj='math.cos') # You can use the imported function as you would expect cos_of_0 = my_cos.obj(0) assert cos_of_0 == 1 # A string whose value cannot be imported will raise an error try: ImportThings(obj='foo.bar') except ValidationError as e: print(e) ''' 1 validation error for ImportThings obj Invalid python path: No module named 'foo.bar' [type=import_error, input_value='foo.bar', input_type=str] ''' # Actual python objects can be assigned as well my_cos = ImportThings(obj=cos) my_cos_2 = ImportThings(obj='math.cos') assert my_cos == my_cos_2 ``` Serializing an `ImportString` type to json is also possible. ```py from pydantic import BaseModel, ImportString class ImportThings(BaseModel): obj: ImportString # Create an instance m = ImportThings(obj='math:cos') print(m) #> obj=<built-in function cos> print(m.model_dump_json()) #> {"obj":"math.cos"} ``` """ @classmethod def __class_getitem__(cls, item: AnyType) -> AnyType: return Annotated[item, cls()] @classmethod def __get_pydantic_core_schema__( cls, source: type[Any], handler: GetCoreSchemaHandler ) -> core_schema.CoreSchema: serializer = core_schema.plain_serializer_function_ser_schema(cls._serialize, when_used='json') if cls is source: # Treat bare usage of ImportString (`schema is None`) as the same as ImportString[Any] return core_schema.no_info_plain_validator_function( function=_validators.import_string, serialization=serializer ) else: return core_schema.no_info_before_validator_function( function=_validators.import_string, schema=handler(source), serialization=serializer ) @staticmethod def _serialize(v: Any) -> str: if isinstance(v, ModuleType): return v.__name__ elif hasattr(v, '__module__') and hasattr(v, '__name__'): return f'{v.__module__}.{v.__name__}' else: return v def __repr__(self) -> str: return 'ImportString' # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ DECIMAL TYPES ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ def condecimal( *, strict: bool | None = None, gt: int | Decimal | None = None, ge: int | Decimal | None = None, lt: int | Decimal | None = None, le: int | Decimal | None = None, multiple_of: int | Decimal | None = None, max_digits: int | None = None, decimal_places: int | None = None, allow_inf_nan: bool | None = None, ) -> type[Decimal]: """ !!! warning "Discouraged" This function is **discouraged** in favor of using [`Annotated`](https://docs.python.org/3/library/typing.html#typing.Annotated) with [`Field`][pydantic.fields.Field] instead. This function will be **deprecated** in Pydantic 3.0. The reason is that `condecimal` returns a type, which doesn't play well with static analysis tools. === ":x: Don't do this" ```py from pydantic import BaseModel, condecimal class Foo(BaseModel): bar: condecimal(strict=True, allow_inf_nan=True) ``` === ":white_check_mark: Do this" ```py from decimal import Decimal from typing_extensions import Annotated from pydantic import BaseModel, Field class Foo(BaseModel): bar: Annotated[Decimal, Field(strict=True, allow_inf_nan=True)] ``` A wrapper around Decimal that adds validation. Args: strict: Whether to validate the value in strict mode. Defaults to `None`. gt: The value must be greater than this. Defaults to `None`. ge: The value must be greater than or equal to this. Defaults to `None`. lt: The value must be less than this. Defaults to `None`. le: The value must be less than or equal to this. Defaults to `None`. multiple_of: The value must be a multiple of this. Defaults to `None`. max_digits: The maximum number of digits. Defaults to `None`. decimal_places: The number of decimal places. Defaults to `None`. allow_inf_nan: Whether to allow infinity and NaN. Defaults to `None`. ```py from decimal import Decimal from pydantic import BaseModel, ValidationError, condecimal class ConstrainedExample(BaseModel): constrained_decimal: condecimal(gt=Decimal('1.0')) m = ConstrainedExample(constrained_decimal=Decimal('1.1')) print(repr(m)) #> ConstrainedExample(constrained_decimal=Decimal('1.1')) try: ConstrainedExample(constrained_decimal=Decimal('0.9')) except ValidationError as e: print(e.errors()) ''' [ { 'type': 'greater_than', 'loc': ('constrained_decimal',), 'msg': 'Input should be greater than 1.0', 'input': Decimal('0.9'), 'ctx': {'gt': Decimal('1.0')}, 'url': 'https://errors.pydantic.dev/2/v/greater_than', } ] ''' ``` """ # noqa: D212 return Annotated[ Decimal, Strict(strict) if strict is not None else None, annotated_types.Interval(gt=gt, ge=ge, lt=lt, le=le), annotated_types.MultipleOf(multiple_of) if multiple_of is not None else None, _fields.PydanticGeneralMetadata(max_digits=max_digits, decimal_places=decimal_places), AllowInfNan(allow_inf_nan) if allow_inf_nan is not None else None, ] # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ UUID TYPES ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ @_dataclasses.dataclass(**_internal_dataclass.slots_true) class UuidVersion: """A field metadata class to indicate a [UUID](https://docs.python.org/3/library/uuid.html) version.""" uuid_version: Literal[1, 3, 4, 5] def __get_pydantic_json_schema__( self, core_schema: core_schema.CoreSchema, handler: GetJsonSchemaHandler ) -> JsonSchemaValue: field_schema = handler(core_schema) field_schema.pop('anyOf', None) # remove the bytes/str union field_schema.update(type='string', format=f'uuid{self.uuid_version}') return field_schema def __get_pydantic_core_schema__(self, source: Any, handler: GetCoreSchemaHandler) -> core_schema.CoreSchema: return core_schema.uuid_schema(version=self.uuid_version) def __hash__(self) -> int: return hash(type(self.uuid_version)) UUID1 = Annotated[UUID, UuidVersion(1)] """A [UUID](https://docs.python.org/3/library/uuid.html) that must be version 1. ```py import uuid from pydantic import BaseModel, UUID1 class Model(BaseModel): uuid1: UUID1 Model(uuid1=uuid.uuid1()) ``` """ UUID3 = Annotated[UUID, UuidVersion(3)] """A [UUID](https://docs.python.org/3/library/uuid.html) that must be version 3. ```py import uuid from pydantic import BaseModel, UUID3 class Model(BaseModel): uuid3: UUID3 Model(uuid3=uuid.uuid3(uuid.NAMESPACE_DNS, 'pydantic.org')) ``` """ UUID4 = Annotated[UUID, UuidVersion(4)] """A [UUID](https://docs.python.org/3/library/uuid.html) that must be version 4. ```py import uuid from pydantic import BaseModel, UUID4 class Model(BaseModel): uuid4: UUID4 Model(uuid4=uuid.uuid4()) ``` """ UUID5 = Annotated[UUID, UuidVersion(5)] """A [UUID](https://docs.python.org/3/library/uuid.html) that must be version 5. ```py import uuid from pydantic import BaseModel, UUID5 class Model(BaseModel): uuid5: UUID5 Model(uuid5=uuid.uuid5(uuid.NAMESPACE_DNS, 'pydantic.org')) ``` """ # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ PATH TYPES ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ @_dataclasses.dataclass class PathType: path_type: Literal['file', 'dir', 'new'] def __get_pydantic_json_schema__( self, core_schema: core_schema.CoreSchema, handler: GetJsonSchemaHandler ) -> JsonSchemaValue: field_schema = handler(core_schema) format_conversion = {'file': 'file-path', 'dir': 'directory-path'} field_schema.update(format=format_conversion.get(self.path_type, 'path'), type='string') return field_schema def __get_pydantic_core_schema__(self, source: Any, handler: GetCoreSchemaHandler) -> core_schema.CoreSchema: function_lookup = { 'file': cast(core_schema.WithInfoValidatorFunction, self.validate_file), 'dir': cast(core_schema.WithInfoValidatorFunction, self.validate_directory), 'new': cast(core_schema.WithInfoValidatorFunction, self.validate_new), } return core_schema.with_info_after_validator_function( function_lookup[self.path_type], handler(source), ) @staticmethod def validate_file(path: Path, _: core_schema.ValidationInfo) -> Path: if path.is_file(): return path else: raise PydanticCustomError('path_not_file', 'Path does not point to a file') @staticmethod def validate_directory(path: Path, _: core_schema.ValidationInfo) -> Path: if path.is_dir(): return path else: raise PydanticCustomError('path_not_directory', 'Path does not point to a directory') @staticmethod def validate_new(path: Path, _: core_schema.ValidationInfo) -> Path: if path.exists(): raise PydanticCustomError('path_exists', 'Path already exists') elif not path.parent.exists(): raise PydanticCustomError('parent_does_not_exist', 'Parent directory does not exist') else: return path def __hash__(self) -> int: return hash(type(self.path_type)) FilePath = Annotated[Path, PathType('file')] """A path that must point to a file. ```py from pathlib import Path from pydantic import BaseModel, FilePath, ValidationError class Model(BaseModel): f: FilePath path = Path('text.txt') path.touch() m = Model(f='text.txt') print(m.model_dump()) #> {'f': PosixPath('text.txt')} path.unlink() path = Path('directory') path.mkdir(exist_ok=True) try: Model(f='directory') # directory except ValidationError as e: print(e) ''' 1 validation error for Model f Path does not point to a file [type=path_not_file, input_value='directory', input_type=str] ''' path.rmdir() try: Model(f='not-exists-file') except ValidationError as e: print(e) ''' 1 validation error for Model f Path does not point to a file [type=path_not_file, input_value='not-exists-file', input_type=str] ''' ``` """ DirectoryPath = Annotated[Path, PathType('dir')] """A path that must point to a directory. ```py from pathlib import Path from pydantic import BaseModel, DirectoryPath, ValidationError class Model(BaseModel): f: DirectoryPath path = Path('directory/') path.mkdir() m = Model(f='directory/') print(m.model_dump()) #> {'f': PosixPath('directory')} path.rmdir() path = Path('file.txt') path.touch() try: Model(f='file.txt') # file except ValidationError as e: print(e) ''' 1 validation error for Model f Path does not point to a directory [type=path_not_directory, input_value='file.txt', input_type=str] ''' path.unlink() try: Model(f='not-exists-directory') except ValidationError as e: print(e) ''' 1 validation error for Model f Path does not point to a directory [type=path_not_directory, input_value='not-exists-directory', input_type=str] ''' ``` """ NewPath = Annotated[Path, PathType('new')] """A path for a new file or directory that must not already exist.""" # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ JSON TYPE ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ if TYPE_CHECKING: Json = Annotated[AnyType, ...] # Json[list[str]] will be recognized by type checkers as list[str] else: class Json: """A special type wrapper which loads JSON before parsing. You can use the `Json` data type to make Pydantic first load a raw JSON string before validating the loaded data into the parametrized type: ```py from typing import Any, List from pydantic import BaseModel, Json, ValidationError class AnyJsonModel(BaseModel): json_obj: Json[Any] class ConstrainedJsonModel(BaseModel): json_obj: Json[List[int]] print(AnyJsonModel(json_obj='{"b": 1}')) #> json_obj={'b': 1} print(ConstrainedJsonModel(json_obj='[1, 2, 3]')) #> json_obj=[1, 2, 3] try: ConstrainedJsonModel(json_obj=12) except ValidationError as e: print(e) ''' 1 validation error for ConstrainedJsonModel json_obj JSON input should be string, bytes or bytearray [type=json_type, input_value=12, input_type=int] ''' try: ConstrainedJsonModel(json_obj='[a, b]') except ValidationError as e: print(e) ''' 1 validation error for ConstrainedJsonModel json_obj Invalid JSON: expected value at line 1 column 2 [type=json_invalid, input_value='[a, b]', input_type=str] ''' try: ConstrainedJsonModel(json_obj='["a", "b"]') except ValidationError as e: print(e) ''' 2 validation errors for ConstrainedJsonModel json_obj.0 Input should be a valid integer, unable to parse string as an integer [type=int_parsing, input_value='a', input_type=str] json_obj.1 Input should be a valid integer, unable to parse string as an integer [type=int_parsing, input_value='b', input_type=str] ''' ``` When you dump the model using `model_dump` or `model_dump_json`, the dumped value will be the result of validation, not the original JSON string. However, you can use the argument `round_trip=True` to get the original JSON string back: ```py from typing import List from pydantic import BaseModel, Json class ConstrainedJsonModel(BaseModel): json_obj: Json[List[int]] print(ConstrainedJsonModel(json_obj='[1, 2, 3]').model_dump_json()) #> {"json_obj":[1,2,3]} print( ConstrainedJsonModel(json_obj='[1, 2, 3]').model_dump_json(round_trip=True) ) #> {"json_obj":"[1,2,3]"} ``` """ @classmethod def __class_getitem__(cls, item: AnyType) -> AnyType: return Annotated[item, cls()] @classmethod def __get_pydantic_core_schema__(cls, source: Any, handler: GetCoreSchemaHandler) -> core_schema.CoreSchema: if cls is source: return core_schema.json_schema(None) else: return core_schema.json_schema(handler(source)) def __repr__(self) -> str: return 'Json' def __hash__(self) -> int: return hash(type(self)) def __eq__(self, other: Any) -> bool: return type(other) == type(self) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ SECRET TYPES ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ SecretType = TypeVar('SecretType', str, bytes) class _SecretField(Generic[SecretType]): def __init__(self, secret_value: SecretType) -> None: self._secret_value: SecretType = secret_value def get_secret_value(self) -> SecretType: """Get the secret value. Returns: The secret value. """ return self._secret_value def __eq__(self, other: Any) -> bool: return isinstance(other, self.__class__) and self.get_secret_value() == other.get_secret_value() def __hash__(self) -> int: return hash(self.get_secret_value()) def __len__(self) -> int: return len(self._secret_value) def __str__(self) -> str: return str(self._display()) def __repr__(self) -> str: return f'{self.__class__.__name__}({self._display()!r})' def _display(self) -> SecretType: raise NotImplementedError @classmethod def __get_pydantic_core_schema__(cls, source: type[Any], handler: GetCoreSchemaHandler) -> core_schema.CoreSchema: if issubclass(source, SecretStr): field_type = str inner_schema = core_schema.str_schema() else: assert issubclass(source, SecretBytes) field_type = bytes inner_schema = core_schema.bytes_schema() error_kind = 'string_type' if field_type is str else 'bytes_type' def serialize( value: _SecretField[SecretType], info: core_schema.SerializationInfo ) -> str | _SecretField[SecretType]: if info.mode == 'json': # we want the output to always be string without the `b'` prefix for bytes, # hence we just use `secret_display` return _secret_display(value.get_secret_value()) else: return value def get_json_schema(_core_schema: core_schema.CoreSchema, handler: GetJsonSchemaHandler) -> JsonSchemaValue: json_schema = handler(inner_schema) _utils.update_not_none( json_schema, type='string', writeOnly=True, format='password', ) return json_schema s = core_schema.union_schema( [ core_schema.is_instance_schema(source), core_schema.no_info_after_validator_function( source, # construct the type inner_schema, ), ], strict=True, custom_error_type=error_kind, serialization=core_schema.plain_serializer_function_ser_schema( serialize, info_arg=True, return_schema=core_schema.str_schema(), when_used='json', ), ) s.setdefault('metadata', {}).setdefault('pydantic_js_functions', []).append(get_json_schema) return s def _secret_display(value: str | bytes) -> str: if isinstance(value, bytes): value = value.decode() return '**********' if value else '' class SecretStr(_SecretField[str]): """A string used for storing sensitive information that you do not want to be visible in logging or tracebacks. It displays `'**********'` instead of the string value on `repr()` and `str()` calls. ```py from pydantic import BaseModel, SecretStr class User(BaseModel): username: str password: SecretStr user = User(username='scolvin', password='password1') print(user) #> username='scolvin' password=SecretStr('**********') print(user.password.get_secret_value()) #> password1 ``` """ def _display(self) -> str: return _secret_display(self.get_secret_value()) class SecretBytes(_SecretField[bytes]): """A bytes used for storing sensitive information that you do not want to be visible in logging or tracebacks. It displays `b'**********'` instead of the string value on `repr()` and `str()` calls. ```py from pydantic import BaseModel, SecretBytes class User(BaseModel): username: str password: SecretBytes user = User(username='scolvin', password=b'password1') #> username='scolvin' password=SecretBytes(b'**********') print(user.password.get_secret_value()) #> b'password1' ``` """ def _display(self) -> bytes: return _secret_display(self.get_secret_value()).encode() # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ PAYMENT CARD TYPES ~~~~~~~~~~~~~~~~~~~~~~~~~~~~ class PaymentCardBrand(str, Enum): amex = 'American Express' mastercard = 'Mastercard' visa = 'Visa' other = 'other' def __str__(self) -> str: return self.value @deprecated( 'The `PaymentCardNumber` class is deprecated, use `pydantic_extra_types` instead. ' 'See https://docs.pydantic.dev/latest/api/pydantic_extra_types_payment/#pydantic_extra_types.payment.PaymentCardNumber.', category=PydanticDeprecatedSince20, ) class PaymentCardNumber(str): """Based on: https://en.wikipedia.org/wiki/Payment_card_number.""" strip_whitespace: ClassVar[bool] = True min_length: ClassVar[int] = 12 max_length: ClassVar[int] = 19 bin: str last4: str brand: PaymentCardBrand def __init__(self, card_number: str): self.validate_digits(card_number) card_number = self.validate_luhn_check_digit(card_number) self.bin = card_number[:6] self.last4 = card_number[-4:] self.brand = self.validate_brand(card_number) @classmethod def __get_pydantic_core_schema__(cls, source: type[Any], handler: GetCoreSchemaHandler) -> core_schema.CoreSchema: return core_schema.with_info_after_validator_function( cls.validate, core_schema.str_schema( min_length=cls.min_length, max_length=cls.max_length, strip_whitespace=cls.strip_whitespace ), ) @classmethod def validate(cls, __input_value: str, _: core_schema.ValidationInfo) -> PaymentCardNumber: """Validate the card number and return a `PaymentCardNumber` instance.""" return cls(__input_value) @property def masked(self) -> str: """Mask all but the last 4 digits of the card number. Returns: A masked card number string. """ num_masked = len(self) - 10 # len(bin) + len(last4) == 10 return f'{self.bin}{"*" * num_masked}{self.last4}' @classmethod def validate_digits(cls, card_number: str) -> None: """Validate that the card number is all digits.""" if not card_number.isdigit(): raise PydanticCustomError('payment_card_number_digits', 'Card number is not all digits') @classmethod def validate_luhn_check_digit(cls, card_number: str) -> str: """Based on: https://en.wikipedia.org/wiki/Luhn_algorithm.""" sum_ = int(card_number[-1]) length = len(card_number) parity = length % 2 for i in range(length - 1): digit = int(card_number[i]) if i % 2 == parity: digit *= 2 if digit > 9: digit -= 9 sum_ += digit valid = sum_ % 10 == 0 if not valid: raise PydanticCustomError('payment_card_number_luhn', 'Card number is not luhn valid') return card_number @staticmethod def validate_brand(card_number: str) -> PaymentCardBrand: """Validate length based on BIN for major brands: https://en.wikipedia.org/wiki/Payment_card_number#Issuer_identification_number_(IIN). """ if card_number[0] == '4': brand = PaymentCardBrand.visa elif 51 <= int(card_number[:2]) <= 55: brand = PaymentCardBrand.mastercard elif card_number[:2] in {'34', '37'}: brand = PaymentCardBrand.amex else: brand = PaymentCardBrand.other required_length: None | int | str = None if brand in PaymentCardBrand.mastercard: required_length = 16 valid = len(card_number) == required_length elif brand == PaymentCardBrand.visa: required_length = '13, 16 or 19' valid = len(card_number) in {13, 16, 19} elif brand == PaymentCardBrand.amex: required_length = 15 valid = len(card_number) == required_length else: valid = True if not valid: raise PydanticCustomError( 'payment_card_number_brand', 'Length for a {brand} card must be {required_length}', {'brand': brand, 'required_length': required_length}, ) return brand # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ BYTE SIZE TYPE ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ BYTE_SIZES = { 'b': 1, 'kb': 10**3, 'mb': 10**6, 'gb': 10**9, 'tb': 10**12, 'pb': 10**15, 'eb': 10**18, 'kib': 2**10, 'mib': 2**20, 'gib': 2**30, 'tib': 2**40, 'pib': 2**50, 'eib': 2**60, } BYTE_SIZES.update({k.lower()[0]: v for k, v in BYTE_SIZES.items() if 'i' not in k}) byte_string_re = re.compile(r'^\s*(\d*\.?\d+)\s*(\w+)?', re.IGNORECASE) class ByteSize(int): """Converts a string representing a number of bytes with units (such as `'1KB'` or `'11.5MiB'`) into an integer. You can use the `ByteSize` data type to (case-insensitively) convert a string representation of a number of bytes into an integer, and also to print out human-readable strings representing a number of bytes. In conformance with [IEC 80000-13 Standard](https://en.wikipedia.org/wiki/ISO/IEC_80000) we interpret `'1KB'` to mean 1000 bytes, and `'1KiB'` to mean 1024 bytes. In general, including a middle `'i'` will cause the unit to be interpreted as a power of 2, rather than a power of 10 (so, for example, `'1 MB'` is treated as `1_000_000` bytes, whereas `'1 MiB'` is treated as `1_048_576` bytes). !!! info Note that `1b` will be parsed as "1 byte" and not "1 bit". ```py from pydantic import BaseModel, ByteSize class MyModel(BaseModel): size: ByteSize print(MyModel(size=52000).size) #> 52000 print(MyModel(size='3000 KiB').size) #> 3072000 m = MyModel(size='50 PB') print(m.size.human_readable()) #> 44.4PiB print(m.size.human_readable(decimal=True)) #> 50.0PB print(m.size.to('TiB')) #> 45474.73508864641 ``` """ @classmethod def __get_pydantic_core_schema__(cls, source: type[Any], handler: GetCoreSchemaHandler) -> core_schema.CoreSchema: return core_schema.with_info_plain_validator_function(cls._validate) @classmethod def _validate(cls, __input_value: Any, _: core_schema.ValidationInfo) -> ByteSize: try: return cls(int(__input_value)) except ValueError: pass str_match = byte_string_re.match(str(__input_value)) if str_match is None: raise PydanticCustomError('byte_size', 'could not parse value and unit from byte string') scalar, unit = str_match.groups() if unit is None: unit = 'b' try: unit_mult = BYTE_SIZES[unit.lower()] except KeyError: raise PydanticCustomError('byte_size_unit', 'could not interpret byte unit: {unit}', {'unit': unit}) return cls(int(float(scalar) * unit_mult)) def human_readable(self, decimal: bool = False) -> str: """Converts a byte size to a human readable string. Args: decimal: If True, use decimal units (e.g. 1000 bytes per KB). If False, use binary units (e.g. 1024 bytes per KiB). Returns: A human readable string representation of the byte size. """ if decimal: divisor = 1000 units = 'B', 'KB', 'MB', 'GB', 'TB', 'PB' final_unit = 'EB' else: divisor = 1024 units = 'B', 'KiB', 'MiB', 'GiB', 'TiB', 'PiB' final_unit = 'EiB' num = float(self) for unit in units: if abs(num) < divisor: if unit == 'B': return f'{num:0.0f}{unit}' else: return f'{num:0.1f}{unit}' num /= divisor return f'{num:0.1f}{final_unit}' def to(self, unit: str) -> float: """Converts a byte size to another unit. Args: unit: The unit to convert to. Must be one of the following: B, KB, MB, GB, TB, PB, EiB, KiB, MiB, GiB, TiB, PiB, EiB. Returns: The byte size in the new unit. """ try: unit_div = BYTE_SIZES[unit.lower()] except KeyError: raise PydanticCustomError('byte_size_unit', 'Could not interpret byte unit: {unit}', {'unit': unit}) return self / unit_div # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ DATE TYPES ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ def _check_annotated_type(annotated_type: str, expected_type: str, annotation: str) -> None: if annotated_type != expected_type: raise PydanticUserError(f"'{annotation}' cannot annotate '{annotated_type}'.", code='invalid_annotated_type') if TYPE_CHECKING: PastDate = Annotated[date, ...] FutureDate = Annotated[date, ...] else: class PastDate: """A date in the past.""" @classmethod def __get_pydantic_core_schema__( cls, source: type[Any], handler: GetCoreSchemaHandler ) -> core_schema.CoreSchema: if cls is source: # used directly as a type return core_schema.date_schema(now_op='past') else: schema = handler(source) _check_annotated_type(schema['type'], 'date', cls.__name__) schema['now_op'] = 'past' return schema def __repr__(self) -> str: return 'PastDate' class FutureDate: """A date in the future.""" @classmethod def __get_pydantic_core_schema__( cls, source: type[Any], handler: GetCoreSchemaHandler ) -> core_schema.CoreSchema: if cls is source: # used directly as a type return core_schema.date_schema(now_op='future') else: schema = handler(source) _check_annotated_type(schema['type'], 'date', cls.__name__) schema['now_op'] = 'future' return schema def __repr__(self) -> str: return 'FutureDate' def condate( *, strict: bool | None = None, gt: date | None = None, ge: date | None = None, lt: date | None = None, le: date | None = None, ) -> type[date]: """A wrapper for date that adds constraints. Args: strict: Whether to validate the date value in strict mode. Defaults to `None`. gt: The value must be greater than this. Defaults to `None`. ge: The value must be greater than or equal to this. Defaults to `None`. lt: The value must be less than this. Defaults to `None`. le: The value must be less than or equal to this. Defaults to `None`. Returns: A date type with the specified constraints. """ return Annotated[ date, Strict(strict) if strict is not None else None, annotated_types.Interval(gt=gt, ge=ge, lt=lt, le=le), ] # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ DATETIME TYPES ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ if TYPE_CHECKING: AwareDatetime = Annotated[datetime, ...] NaiveDatetime = Annotated[datetime, ...] PastDatetime = Annotated[datetime, ...] FutureDatetime = Annotated[datetime, ...] else: class AwareDatetime: """A datetime that requires timezone info.""" @classmethod def __get_pydantic_core_schema__( cls, source: type[Any], handler: GetCoreSchemaHandler ) -> core_schema.CoreSchema: if cls is source: # used directly as a type return core_schema.datetime_schema(tz_constraint='aware') else: schema = handler(source) _check_annotated_type(schema['type'], 'datetime', cls.__name__) schema['tz_constraint'] = 'aware' return schema def __repr__(self) -> str: return 'AwareDatetime' class NaiveDatetime: """A datetime that doesn't require timezone info.""" @classmethod def __get_pydantic_core_schema__( cls, source: type[Any], handler: GetCoreSchemaHandler ) -> core_schema.CoreSchema: if cls is source: # used directly as a type return core_schema.datetime_schema(tz_constraint='naive') else: schema = handler(source) _check_annotated_type(schema['type'], 'datetime', cls.__name__) schema['tz_constraint'] = 'naive' return schema def __repr__(self) -> str: return 'NaiveDatetime' class PastDatetime: """A datetime that must be in the past.""" @classmethod def __get_pydantic_core_schema__( cls, source: type[Any], handler: GetCoreSchemaHandler ) -> core_schema.CoreSchema: if cls is source: # used directly as a type return core_schema.datetime_schema(now_op='past') else: schema = handler(source) _check_annotated_type(schema['type'], 'datetime', cls.__name__) schema['now_op'] = 'past' return schema def __repr__(self) -> str: return 'PastDatetime' class FutureDatetime: """A datetime that must be in the future.""" @classmethod def __get_pydantic_core_schema__( cls, source: type[Any], handler: GetCoreSchemaHandler ) -> core_schema.CoreSchema: if cls is source: # used directly as a type return core_schema.datetime_schema(now_op='future') else: schema = handler(source) _check_annotated_type(schema['type'], 'datetime', cls.__name__) schema['now_op'] = 'future' return schema def __repr__(self) -> str: return 'FutureDatetime' # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ Encoded TYPES ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ class EncoderProtocol(Protocol): """Protocol for encoding and decoding data to and from bytes.""" @classmethod def decode(cls, data: bytes) -> bytes: """Decode the data using the encoder. Args: data: The data to decode. Returns: The decoded data. """ ... @classmethod def encode(cls, value: bytes) -> bytes: """Encode the data using the encoder. Args: value: The data to encode. Returns: The encoded data. """ ... @classmethod def get_json_format(cls) -> str: """Get the JSON format for the encoded data. Returns: The JSON format for the encoded data. """ ... class Base64Encoder(EncoderProtocol): """Standard (non-URL-safe) Base64 encoder.""" @classmethod def decode(cls, data: bytes) -> bytes: """Decode the data from base64 encoded bytes to original bytes data. Args: data: The data to decode. Returns: The decoded data. """ try: return base64.decodebytes(data) except ValueError as e: raise PydanticCustomError('base64_decode', "Base64 decoding error: '{error}'", {'error': str(e)}) @classmethod def encode(cls, value: bytes) -> bytes: """Encode the data from bytes to a base64 encoded bytes. Args: value: The data to encode. Returns: The encoded data. """ return base64.encodebytes(value) @classmethod def get_json_format(cls) -> Literal['base64']: """Get the JSON format for the encoded data. Returns: The JSON format for the encoded data. """ return 'base64' class Base64UrlEncoder(EncoderProtocol): """URL-safe Base64 encoder.""" @classmethod def decode(cls, data: bytes) -> bytes: """Decode the data from base64 encoded bytes to original bytes data. Args: data: The data to decode. Returns: The decoded data. """ try: return base64.urlsafe_b64decode(data) except ValueError as e: raise PydanticCustomError('base64_decode', "Base64 decoding error: '{error}'", {'error': str(e)}) @classmethod def encode(cls, value: bytes) -> bytes: """Encode the data from bytes to a base64 encoded bytes. Args: value: The data to encode. Returns: The encoded data. """ return base64.urlsafe_b64encode(value) @classmethod def get_json_format(cls) -> Literal['base64url']: """Get the JSON format for the encoded data. Returns: The JSON format for the encoded data. """ return 'base64url' @_dataclasses.dataclass(**_internal_dataclass.slots_true) class EncodedBytes: """A bytes type that is encoded and decoded using the specified encoder. `EncodedBytes` needs an encoder that implements `EncoderProtocol` to operate. ```py from typing_extensions import Annotated from pydantic import BaseModel, EncodedBytes, EncoderProtocol, ValidationError class MyEncoder(EncoderProtocol): @classmethod def decode(cls, data: bytes) -> bytes: if data == b'**undecodable**': raise ValueError('Cannot decode data') return data[13:] @classmethod def encode(cls, value: bytes) -> bytes: return b'**encoded**: ' + value @classmethod def get_json_format(cls) -> str: return 'my-encoder' MyEncodedBytes = Annotated[bytes, EncodedBytes(encoder=MyEncoder)] class Model(BaseModel): my_encoded_bytes: MyEncodedBytes # Initialize the model with encoded data m = Model(my_encoded_bytes=b'**encoded**: some bytes') # Access decoded value print(m.my_encoded_bytes) #> b'some bytes' # Serialize into the encoded form print(m.model_dump()) #> {'my_encoded_bytes': b'**encoded**: some bytes'} # Validate encoded data try: Model(my_encoded_bytes=b'**undecodable**') except ValidationError as e: print(e) ''' 1 validation error for Model my_encoded_bytes Value error, Cannot decode data [type=value_error, input_value=b'**undecodable**', input_type=bytes] ''' ``` """ encoder: type[EncoderProtocol] def __get_pydantic_json_schema__( self, core_schema: core_schema.CoreSchema, handler: GetJsonSchemaHandler ) -> JsonSchemaValue: field_schema = handler(core_schema) field_schema.update(type='string', format=self.encoder.get_json_format()) return field_schema def __get_pydantic_core_schema__(self, source: type[Any], handler: GetCoreSchemaHandler) -> core_schema.CoreSchema: return core_schema.with_info_after_validator_function( function=self.decode, schema=core_schema.bytes_schema(), serialization=core_schema.plain_serializer_function_ser_schema(function=self.encode), ) def decode(self, data: bytes, _: core_schema.ValidationInfo) -> bytes: """Decode the data using the specified encoder. Args: data: The data to decode. Returns: The decoded data. """ return self.encoder.decode(data) def encode(self, value: bytes) -> bytes: """Encode the data using the specified encoder. Args: value: The data to encode. Returns: The encoded data. """ return self.encoder.encode(value) def __hash__(self) -> int: return hash(self.encoder) @_dataclasses.dataclass(**_internal_dataclass.slots_true) class EncodedStr(EncodedBytes): """A str type that is encoded and decoded using the specified encoder. `EncodedStr` needs an encoder that implements `EncoderProtocol` to operate. ```py from typing_extensions import Annotated from pydantic import BaseModel, EncodedStr, EncoderProtocol, ValidationError class MyEncoder(EncoderProtocol): @classmethod def decode(cls, data: bytes) -> bytes: if data == b'**undecodable**': raise ValueError('Cannot decode data') return data[13:] @classmethod def encode(cls, value: bytes) -> bytes: return b'**encoded**: ' + value @classmethod def get_json_format(cls) -> str: return 'my-encoder' MyEncodedStr = Annotated[str, EncodedStr(encoder=MyEncoder)] class Model(BaseModel): my_encoded_str: MyEncodedStr # Initialize the model with encoded data m = Model(my_encoded_str='**encoded**: some str') # Access decoded value print(m.my_encoded_str) #> some str # Serialize into the encoded form print(m.model_dump()) #> {'my_encoded_str': '**encoded**: some str'} # Validate encoded data try: Model(my_encoded_str='**undecodable**') except ValidationError as e: print(e) ''' 1 validation error for Model my_encoded_str Value error, Cannot decode data [type=value_error, input_value='**undecodable**', input_type=str] ''' ``` """ def __get_pydantic_core_schema__(self, source: type[Any], handler: GetCoreSchemaHandler) -> core_schema.CoreSchema: return core_schema.with_info_after_validator_function( function=self.decode_str, schema=super(EncodedStr, self).__get_pydantic_core_schema__(source=source, handler=handler), # noqa: UP008 serialization=core_schema.plain_serializer_function_ser_schema(function=self.encode_str), ) def decode_str(self, data: bytes, _: core_schema.ValidationInfo) -> str: """Decode the data using the specified encoder. Args: data: The data to decode. Returns: The decoded data. """ return data.decode() def encode_str(self, value: str) -> str: """Encode the data using the specified encoder. Args: value: The data to encode. Returns: The encoded data. """ return super(EncodedStr, self).encode(value=value.encode()).decode() # noqa: UP008 def __hash__(self) -> int: return hash(self.encoder) Base64Bytes = Annotated[bytes, EncodedBytes(encoder=Base64Encoder)] """A bytes type that is encoded and decoded using the standard (non-URL-safe) base64 encoder. Note: Under the hood, `Base64Bytes` use standard library `base64.encodebytes` and `base64.decodebytes` functions. As a result, attempting to decode url-safe base64 data using the `Base64Bytes` type may fail or produce an incorrect decoding. ```py from pydantic import Base64Bytes, BaseModel, ValidationError class Model(BaseModel): base64_bytes: Base64Bytes # Initialize the model with base64 data m = Model(base64_bytes=b'VGhpcyBpcyB0aGUgd2F5') # Access decoded value print(m.base64_bytes) #> b'This is the way' # Serialize into the base64 form print(m.model_dump()) #> {'base64_bytes': b'VGhpcyBpcyB0aGUgd2F5\n'} # Validate base64 data try: print(Model(base64_bytes=b'undecodable').base64_bytes) except ValidationError as e: print(e) ''' 1 validation error for Model base64_bytes Base64 decoding error: 'Incorrect padding' [type=base64_decode, input_value=b'undecodable', input_type=bytes] ''' ``` """ Base64Str = Annotated[str, EncodedStr(encoder=Base64Encoder)] """A str type that is encoded and decoded using the standard (non-URL-safe) base64 encoder. Note: Under the hood, `Base64Bytes` use standard library `base64.encodebytes` and `base64.decodebytes` functions. As a result, attempting to decode url-safe base64 data using the `Base64Str` type may fail or produce an incorrect decoding. ```py from pydantic import Base64Str, BaseModel, ValidationError class Model(BaseModel): base64_str: Base64Str # Initialize the model with base64 data m = Model(base64_str='VGhlc2UgYXJlbid0IHRoZSBkcm9pZHMgeW91J3JlIGxvb2tpbmcgZm9y') # Access decoded value print(m.base64_str) #> These aren't the droids you're looking for # Serialize into the base64 form print(m.model_dump()) #> {'base64_str': 'VGhlc2UgYXJlbid0IHRoZSBkcm9pZHMgeW91J3JlIGxvb2tpbmcgZm9y\n'} # Validate base64 data try: print(Model(base64_str='undecodable').base64_str) except ValidationError as e: print(e) ''' 1 validation error for Model base64_str Base64 decoding error: 'Incorrect padding' [type=base64_decode, input_value='undecodable', input_type=str] ''' ``` """ Base64UrlBytes = Annotated[bytes, EncodedBytes(encoder=Base64UrlEncoder)] """A bytes type that is encoded and decoded using the URL-safe base64 encoder. Note: Under the hood, `Base64UrlBytes` use standard library `base64.urlsafe_b64encode` and `base64.urlsafe_b64decode` functions. As a result, the `Base64UrlBytes` type can be used to faithfully decode "vanilla" base64 data (using `'+'` and `'/'`). ```py from pydantic import Base64UrlBytes, BaseModel class Model(BaseModel): base64url_bytes: Base64UrlBytes # Initialize the model with base64 data m = Model(base64url_bytes=b'SHc_dHc-TXc==') print(m) #> base64url_bytes=b'Hw?tw>Mw' ``` """ Base64UrlStr = Annotated[str, EncodedStr(encoder=Base64UrlEncoder)] """A str type that is encoded and decoded using the URL-safe base64 encoder. Note: Under the hood, `Base64UrlStr` use standard library `base64.urlsafe_b64encode` and `base64.urlsafe_b64decode` functions. As a result, the `Base64UrlStr` type can be used to faithfully decode "vanilla" base64 data (using `'+'` and `'/'`). ```py from pydantic import Base64UrlStr, BaseModel class Model(BaseModel): base64url_str: Base64UrlStr # Initialize the model with base64 data m = Model(base64url_str='SHc_dHc-TXc==') print(m) #> base64url_str='Hw?tw>Mw' ``` """ __getattr__ = getattr_migration(__name__) @_dataclasses.dataclass(**_internal_dataclass.slots_true) class GetPydanticSchema: """A convenience class for creating an annotation that provides pydantic custom type hooks. This class is intended to eliminate the need to create a custom "marker" which defines the `__get_pydantic_core_schema__` and `__get_pydantic_json_schema__` custom hook methods. For example, to have a field treated by type checkers as `int`, but by pydantic as `Any`, you can do: ```python from typing import Any from typing_extensions import Annotated from pydantic import BaseModel, GetPydanticSchema HandleAsAny = GetPydanticSchema(lambda _s, h: h(Any)) class Model(BaseModel): x: Annotated[int, HandleAsAny] # pydantic sees `x: Any` print(repr(Model(x='abc').x)) #> 'abc' ``` """ get_pydantic_core_schema: Callable[[Any, GetCoreSchemaHandler], CoreSchema] | None = None get_pydantic_json_schema: Callable[[Any, GetJsonSchemaHandler], JsonSchemaValue] | None = None # Note: we may want to consider adding a convenience staticmethod `def for_type(type_: Any) -> GetPydanticSchema:` # which returns `GetPydanticSchema(lambda _s, h: h(type_))` if not TYPE_CHECKING: # We put `__getattr__` in a non-TYPE_CHECKING block because otherwise, mypy allows arbitrary attribute access def __getattr__(self, item: str) -> Any: """Use this rather than defining `__get_pydantic_core_schema__` etc. to reduce the number of nested calls.""" if item == '__get_pydantic_core_schema__' and self.get_pydantic_core_schema: return self.get_pydantic_core_schema elif item == '__get_pydantic_json_schema__' and self.get_pydantic_json_schema: return self.get_pydantic_json_schema else: return object.__getattribute__(self, item) __hash__ = object.__hash__