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MisterAI/LocalAI_Demo_backends / cpu-pocket-tts.upgrade-tmp /venv /lib /python3.10 /site-packages /pydantic /functional_serializers.py
| """This module contains related classes and functions for serialization.""" | |
| from __future__ import annotations | |
| import dataclasses | |
| from functools import partial, partialmethod | |
| from typing import TYPE_CHECKING, Annotated, Any, Callable, Literal, TypeVar, overload | |
| from pydantic_core import PydanticUndefined, core_schema | |
| from pydantic_core.core_schema import SerializationInfo, SerializerFunctionWrapHandler, WhenUsed | |
| from typing_extensions import TypeAlias | |
| from . import PydanticUndefinedAnnotation | |
| from ._internal import _decorators, _internal_dataclass | |
| from .annotated_handlers import GetCoreSchemaHandler | |
| from .errors import PydanticUserError | |
| class PlainSerializer: | |
| """Plain serializers use a function to modify the output of serialization. | |
| This is particularly helpful when you want to customize the serialization for annotated types. | |
| Consider an input of `list`, which will be serialized into a space-delimited string. | |
| ```python | |
| from typing import Annotated | |
| from pydantic import BaseModel, PlainSerializer | |
| CustomStr = Annotated[ | |
| list, PlainSerializer(lambda x: ' '.join(x), return_type=str) | |
| ] | |
| class StudentModel(BaseModel): | |
| courses: CustomStr | |
| student = StudentModel(courses=['Math', 'Chemistry', 'English']) | |
| print(student.model_dump()) | |
| #> {'courses': 'Math Chemistry English'} | |
| ``` | |
| Attributes: | |
| func: The serializer function. | |
| return_type: The return type for the function. If omitted it will be inferred from the type annotation. | |
| when_used: Determines when this serializer should be used. Accepts a string with values `'always'`, | |
| `'unless-none'`, `'json'`, and `'json-unless-none'`. Defaults to 'always'. | |
| """ | |
| func: core_schema.SerializerFunction | |
| return_type: Any = PydanticUndefined | |
| when_used: WhenUsed = 'always' | |
| def __get_pydantic_core_schema__(self, source_type: Any, handler: GetCoreSchemaHandler) -> core_schema.CoreSchema: | |
| """Gets the Pydantic core schema. | |
| Args: | |
| source_type: The source type. | |
| handler: The `GetCoreSchemaHandler` instance. | |
| Returns: | |
| The Pydantic core schema. | |
| """ | |
| schema = handler(source_type) | |
| if self.return_type is not PydanticUndefined: | |
| return_type = self.return_type | |
| else: | |
| try: | |
| # Do not pass in globals as the function could be defined in a different module. | |
| # Instead, let `get_callable_return_type` infer the globals to use, but still pass | |
| # in locals that may contain a parent/rebuild namespace: | |
| return_type = _decorators.get_callable_return_type( | |
| self.func, | |
| localns=handler._get_types_namespace().locals, | |
| ) | |
| except NameError as e: | |
| raise PydanticUndefinedAnnotation.from_name_error(e) from e | |
| return_schema = None if return_type is PydanticUndefined else handler.generate_schema(return_type) | |
| schema['serialization'] = core_schema.plain_serializer_function_ser_schema( | |
| function=self.func, | |
| info_arg=_decorators.inspect_annotated_serializer(self.func, 'plain'), | |
| return_schema=return_schema, | |
| when_used=self.when_used, | |
| ) | |
| return schema | |
| class WrapSerializer: | |
| """Wrap serializers receive the raw inputs along with a handler function that applies the standard serialization | |
| logic, and can modify the resulting value before returning it as the final output of serialization. | |
| For example, here's a scenario in which a wrap serializer transforms timezones to UTC **and** utilizes the existing `datetime` serialization logic. | |
| ```python | |
| from datetime import datetime, timezone | |
| from typing import Annotated, Any | |
| from pydantic import BaseModel, WrapSerializer | |
| class EventDatetime(BaseModel): | |
| start: datetime | |
| end: datetime | |
| def convert_to_utc(value: Any, handler, info) -> dict[str, datetime]: | |
| # Note that `handler` can actually help serialize the `value` for | |
| # further custom serialization in case it's a subclass. | |
| partial_result = handler(value, info) | |
| if info.mode == 'json': | |
| return { | |
| k: datetime.fromisoformat(v).astimezone(timezone.utc) | |
| for k, v in partial_result.items() | |
| } | |
| return {k: v.astimezone(timezone.utc) for k, v in partial_result.items()} | |
| UTCEventDatetime = Annotated[EventDatetime, WrapSerializer(convert_to_utc)] | |
| class EventModel(BaseModel): | |
| event_datetime: UTCEventDatetime | |
| dt = EventDatetime( | |
| start='2024-01-01T07:00:00-08:00', end='2024-01-03T20:00:00+06:00' | |
| ) | |
| event = EventModel(event_datetime=dt) | |
| print(event.model_dump()) | |
| ''' | |
| { | |
| 'event_datetime': { | |
| 'start': datetime.datetime( | |
| 2024, 1, 1, 15, 0, tzinfo=datetime.timezone.utc | |
| ), | |
| 'end': datetime.datetime( | |
| 2024, 1, 3, 14, 0, tzinfo=datetime.timezone.utc | |
| ), | |
| } | |
| } | |
| ''' | |
| print(event.model_dump_json()) | |
| ''' | |
| {"event_datetime":{"start":"2024-01-01T15:00:00Z","end":"2024-01-03T14:00:00Z"}} | |
| ''' | |
| ``` | |
| Attributes: | |
| func: The serializer function to be wrapped. | |
| return_type: The return type for the function. If omitted it will be inferred from the type annotation. | |
| when_used: Determines when this serializer should be used. Accepts a string with values `'always'`, | |
| `'unless-none'`, `'json'`, and `'json-unless-none'`. Defaults to 'always'. | |
| """ | |
| func: core_schema.WrapSerializerFunction | |
| return_type: Any = PydanticUndefined | |
| when_used: WhenUsed = 'always' | |
| def __get_pydantic_core_schema__(self, source_type: Any, handler: GetCoreSchemaHandler) -> core_schema.CoreSchema: | |
| """This method is used to get the Pydantic core schema of the class. | |
| Args: | |
| source_type: Source type. | |
| handler: Core schema handler. | |
| Returns: | |
| The generated core schema of the class. | |
| """ | |
| schema = handler(source_type) | |
| if self.return_type is not PydanticUndefined: | |
| return_type = self.return_type | |
| else: | |
| try: | |
| # Do not pass in globals as the function could be defined in a different module. | |
| # Instead, let `get_callable_return_type` infer the globals to use, but still pass | |
| # in locals that may contain a parent/rebuild namespace: | |
| return_type = _decorators.get_callable_return_type( | |
| self.func, | |
| localns=handler._get_types_namespace().locals, | |
| ) | |
| except NameError as e: | |
| raise PydanticUndefinedAnnotation.from_name_error(e) from e | |
| return_schema = None if return_type is PydanticUndefined else handler.generate_schema(return_type) | |
| schema['serialization'] = core_schema.wrap_serializer_function_ser_schema( | |
| function=self.func, | |
| info_arg=_decorators.inspect_annotated_serializer(self.func, 'wrap'), | |
| return_schema=return_schema, | |
| when_used=self.when_used, | |
| ) | |
| return schema | |
| if TYPE_CHECKING: | |
| _Partial: TypeAlias = 'partial[Any] | partialmethod[Any]' | |
| FieldPlainSerializer: TypeAlias = 'core_schema.SerializerFunction | _Partial' | |
| """A field serializer method or function in `plain` mode.""" | |
| FieldWrapSerializer: TypeAlias = 'core_schema.WrapSerializerFunction | _Partial' | |
| """A field serializer method or function in `wrap` mode.""" | |
| FieldSerializer: TypeAlias = 'FieldPlainSerializer | FieldWrapSerializer' | |
| """A field serializer method or function.""" | |
| _FieldPlainSerializerT = TypeVar('_FieldPlainSerializerT', bound=FieldPlainSerializer) | |
| _FieldWrapSerializerT = TypeVar('_FieldWrapSerializerT', bound=FieldWrapSerializer) | |
| def field_serializer( | |
| field: str, | |
| /, | |
| *fields: str, | |
| mode: Literal['wrap'], | |
| return_type: Any = ..., | |
| when_used: WhenUsed = ..., | |
| check_fields: bool | None = ..., | |
| ) -> Callable[[_FieldWrapSerializerT], _FieldWrapSerializerT]: ... | |
| def field_serializer( | |
| field: str, | |
| /, | |
| *fields: str, | |
| mode: Literal['plain'] = ..., | |
| return_type: Any = ..., | |
| when_used: WhenUsed = ..., | |
| check_fields: bool | None = ..., | |
| ) -> Callable[[_FieldPlainSerializerT], _FieldPlainSerializerT]: ... | |
| def field_serializer( # noqa: D417 | |
| field: str, | |
| /, | |
| *fields: str, | |
| mode: Literal['plain', 'wrap'] = 'plain', | |
| # TODO PEP 747 (grep for 'return_type' on the whole code base): | |
| return_type: Any = PydanticUndefined, | |
| when_used: WhenUsed = 'always', | |
| check_fields: bool | None = None, | |
| ) -> ( | |
| Callable[[_FieldWrapSerializerT], _FieldWrapSerializerT] | |
| | Callable[[_FieldPlainSerializerT], _FieldPlainSerializerT] | |
| ): | |
| """Decorator that enables custom field serialization. | |
| In the below example, a field of type `set` is used to mitigate duplication. A `field_serializer` is used to serialize the data as a sorted list. | |
| ```python | |
| from pydantic import BaseModel, field_serializer | |
| class StudentModel(BaseModel): | |
| name: str = 'Jane' | |
| courses: set[str] | |
| @field_serializer('courses', when_used='json') | |
| def serialize_courses_in_order(self, courses: set[str]): | |
| return sorted(courses) | |
| student = StudentModel(courses={'Math', 'Chemistry', 'English'}) | |
| print(student.model_dump_json()) | |
| #> {"name":"Jane","courses":["Chemistry","English","Math"]} | |
| ``` | |
| See [the usage documentation](../concepts/serialization.md#serializers) for more information. | |
| Four signatures are supported for the decorated serializer: | |
| - `(self, value: Any, info: FieldSerializationInfo)` | |
| - `(self, value: Any, nxt: SerializerFunctionWrapHandler, info: FieldSerializationInfo)` | |
| - `(value: Any, info: SerializationInfo)` | |
| - `(value: Any, nxt: SerializerFunctionWrapHandler, info: SerializationInfo)` | |
| Args: | |
| *fields: The field names the serializer should apply to. | |
| mode: The serialization mode. | |
| - `plain` means the function will be called instead of the default serialization logic, | |
| - `wrap` means the function will be called with an argument to optionally call the | |
| default serialization logic. | |
| return_type: Optional return type for the function, if omitted it will be inferred from the type annotation. | |
| when_used: Determines the serializer will be used for serialization. | |
| check_fields: Whether to check that the fields actually exist on the model. | |
| Raises: | |
| PydanticUserError: | |
| - If the decorator is used without any arguments (at least one field name must be provided). | |
| - If the provided field names are not strings. | |
| """ | |
| if callable(field) or isinstance(field, classmethod): | |
| raise PydanticUserError( | |
| 'The `@field_serializer` decorator cannot be used without arguments, at least one field must be provided. ' | |
| "For example: `@field_serializer('<field_name>', ...)`.", | |
| code='decorator-missing-arguments', | |
| ) | |
| fields = field, *fields | |
| if not all(isinstance(field, str) for field in fields): | |
| raise PydanticUserError( | |
| 'The provided field names to the `@field_serializer` decorator should be strings. ' | |
| "For example: `@field_serializer('<field_name_1>', '<field_name_2>', ...).`", | |
| code='decorator-invalid-fields', | |
| ) | |
| def dec(f: FieldSerializer) -> _decorators.PydanticDescriptorProxy[Any]: | |
| dec_info = _decorators.FieldSerializerDecoratorInfo( | |
| fields=fields, | |
| mode=mode, | |
| return_type=return_type, | |
| when_used=when_used, | |
| check_fields=check_fields, | |
| ) | |
| return _decorators.PydanticDescriptorProxy(f, dec_info) # pyright: ignore[reportArgumentType] | |
| return dec # pyright: ignore[reportReturnType] | |
| if TYPE_CHECKING: | |
| # The first argument in the following callables represent the `self` type: | |
| ModelPlainSerializerWithInfo: TypeAlias = Callable[[Any, SerializationInfo[Any]], Any] | |
| """A model serializer method with the `info` argument, in `plain` mode.""" | |
| ModelPlainSerializerWithoutInfo: TypeAlias = Callable[[Any], Any] | |
| """A model serializer method without the `info` argument, in `plain` mode.""" | |
| ModelPlainSerializer: TypeAlias = 'ModelPlainSerializerWithInfo | ModelPlainSerializerWithoutInfo' | |
| """A model serializer method in `plain` mode.""" | |
| ModelWrapSerializerWithInfo: TypeAlias = Callable[[Any, SerializerFunctionWrapHandler, SerializationInfo[Any]], Any] | |
| """A model serializer method with the `info` argument, in `wrap` mode.""" | |
| ModelWrapSerializerWithoutInfo: TypeAlias = Callable[[Any, SerializerFunctionWrapHandler], Any] | |
| """A model serializer method without the `info` argument, in `wrap` mode.""" | |
| ModelWrapSerializer: TypeAlias = 'ModelWrapSerializerWithInfo | ModelWrapSerializerWithoutInfo' | |
| """A model serializer method in `wrap` mode.""" | |
| ModelSerializer: TypeAlias = 'ModelPlainSerializer | ModelWrapSerializer' | |
| _ModelPlainSerializerT = TypeVar('_ModelPlainSerializerT', bound=ModelPlainSerializer) | |
| _ModelWrapSerializerT = TypeVar('_ModelWrapSerializerT', bound=ModelWrapSerializer) | |
| def model_serializer(f: _ModelPlainSerializerT, /) -> _ModelPlainSerializerT: ... | |
| def model_serializer( | |
| *, mode: Literal['wrap'], when_used: WhenUsed = 'always', return_type: Any = ... | |
| ) -> Callable[[_ModelWrapSerializerT], _ModelWrapSerializerT]: ... | |
| def model_serializer( | |
| *, | |
| mode: Literal['plain'] = ..., | |
| when_used: WhenUsed = 'always', | |
| return_type: Any = ..., | |
| ) -> Callable[[_ModelPlainSerializerT], _ModelPlainSerializerT]: ... | |
| def model_serializer( | |
| f: _ModelPlainSerializerT | _ModelWrapSerializerT | None = None, | |
| /, | |
| *, | |
| mode: Literal['plain', 'wrap'] = 'plain', | |
| when_used: WhenUsed = 'always', | |
| return_type: Any = PydanticUndefined, | |
| ) -> ( | |
| _ModelPlainSerializerT | |
| | Callable[[_ModelWrapSerializerT], _ModelWrapSerializerT] | |
| | Callable[[_ModelPlainSerializerT], _ModelPlainSerializerT] | |
| ): | |
| """Decorator that enables custom model serialization. | |
| This is useful when a model need to be serialized in a customized manner, allowing for flexibility beyond just specific fields. | |
| An example would be to serialize temperature to the same temperature scale, such as degrees Celsius. | |
| ```python | |
| from typing import Literal | |
| from pydantic import BaseModel, model_serializer | |
| class TemperatureModel(BaseModel): | |
| unit: Literal['C', 'F'] | |
| value: int | |
| @model_serializer() | |
| def serialize_model(self): | |
| if self.unit == 'F': | |
| return {'unit': 'C', 'value': int((self.value - 32) / 1.8)} | |
| return {'unit': self.unit, 'value': self.value} | |
| temperature = TemperatureModel(unit='F', value=212) | |
| print(temperature.model_dump()) | |
| #> {'unit': 'C', 'value': 100} | |
| ``` | |
| Two signatures are supported for `mode='plain'`, which is the default: | |
| - `(self)` | |
| - `(self, info: SerializationInfo)` | |
| And two other signatures for `mode='wrap'`: | |
| - `(self, nxt: SerializerFunctionWrapHandler)` | |
| - `(self, nxt: SerializerFunctionWrapHandler, info: SerializationInfo)` | |
| See [the usage documentation](../concepts/serialization.md#serializers) for more information. | |
| Args: | |
| f: The function to be decorated. | |
| mode: The serialization mode. | |
| - `'plain'` means the function will be called instead of the default serialization logic | |
| - `'wrap'` means the function will be called with an argument to optionally call the default | |
| serialization logic. | |
| when_used: Determines when this serializer should be used. | |
| return_type: The return type for the function. If omitted it will be inferred from the type annotation. | |
| Returns: | |
| The decorator function. | |
| """ | |
| def dec(f: ModelSerializer) -> _decorators.PydanticDescriptorProxy[Any]: | |
| dec_info = _decorators.ModelSerializerDecoratorInfo(mode=mode, return_type=return_type, when_used=when_used) | |
| return _decorators.PydanticDescriptorProxy(f, dec_info) | |
| if f is None: | |
| return dec # pyright: ignore[reportReturnType] | |
| else: | |
| return dec(f) # pyright: ignore[reportReturnType] | |
| AnyType = TypeVar('AnyType') | |
| if TYPE_CHECKING: | |
| SerializeAsAny = Annotated[AnyType, ...] # SerializeAsAny[list[str]] will be treated by type checkers as list[str] | |
| """Annotation used to mark a type as having duck-typing serialization behavior. | |
| See [usage documentation](../concepts/serialization.md#serializing-with-duck-typing) for more details. | |
| """ | |
| else: | |
| class SerializeAsAny: | |
| """Annotation used to mark a type as having duck-typing serialization behavior. | |
| See [usage documentation](../concepts/serialization.md#serializing-with-duck-typing) for more details. | |
| """ | |
| def __class_getitem__(cls, item: Any) -> Any: | |
| return Annotated[item, SerializeAsAny()] | |
| def __get_pydantic_core_schema__( | |
| self, source_type: Any, handler: GetCoreSchemaHandler | |
| ) -> core_schema.CoreSchema: | |
| schema = handler(source_type) | |
| schema_to_update = schema | |
| while schema_to_update['type'] == 'definitions': | |
| schema_to_update = schema_to_update.copy() | |
| schema_to_update = schema_to_update['schema'] | |
| schema_to_update['serialization'] = core_schema.simple_ser_schema('any') | |
| return schema | |
| __hash__ = object.__hash__ | |
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