Buckets:
MisterAI/LocalAI_Demo_backends / cpu-pocket-tts.upgrade-tmp /venv /lib /python3.10 /site-packages /pydantic /dataclasses.py
| """Provide an enhanced dataclass that performs validation.""" | |
| from __future__ import annotations as _annotations | |
| import dataclasses | |
| import functools | |
| import sys | |
| import types | |
| from typing import TYPE_CHECKING, Any, Callable, Generic, Literal, NoReturn, TypeVar, overload | |
| from warnings import warn | |
| from typing_extensions import TypeGuard, dataclass_transform | |
| from ._internal import _config, _decorators, _mock_val_ser, _namespace_utils, _typing_extra | |
| from ._internal import _dataclasses as _pydantic_dataclasses | |
| from ._migration import getattr_migration | |
| from .config import ConfigDict | |
| from .errors import PydanticUserError | |
| from .fields import Field, FieldInfo, PrivateAttr | |
| if TYPE_CHECKING: | |
| from ._internal._dataclasses import PydanticDataclass | |
| from ._internal._namespace_utils import MappingNamespace | |
| __all__ = 'dataclass', 'rebuild_dataclass' | |
| _T = TypeVar('_T') | |
| if sys.version_info >= (3, 10): | |
| def dataclass( | |
| *, | |
| init: Literal[False] = False, | |
| repr: bool = True, | |
| eq: bool = True, | |
| order: bool = False, | |
| unsafe_hash: bool = False, | |
| frozen: bool = False, | |
| config: ConfigDict | type[object] | None = None, | |
| validate_on_init: bool | None = None, | |
| kw_only: bool = ..., | |
| slots: bool = ..., | |
| ) -> Callable[[type[_T]], type[PydanticDataclass]]: # type: ignore | |
| ... | |
| def dataclass( | |
| _cls: type[_T], # type: ignore | |
| *, | |
| init: Literal[False] = False, | |
| repr: bool = True, | |
| eq: bool = True, | |
| order: bool = False, | |
| unsafe_hash: bool = False, | |
| frozen: bool | None = None, | |
| config: ConfigDict | type[object] | None = None, | |
| validate_on_init: bool | None = None, | |
| kw_only: bool = ..., | |
| slots: bool = ..., | |
| ) -> type[PydanticDataclass]: ... | |
| else: | |
| def dataclass( | |
| *, | |
| init: Literal[False] = False, | |
| repr: bool = True, | |
| eq: bool = True, | |
| order: bool = False, | |
| unsafe_hash: bool = False, | |
| frozen: bool | None = None, | |
| config: ConfigDict | type[object] | None = None, | |
| validate_on_init: bool | None = None, | |
| ) -> Callable[[type[_T]], type[PydanticDataclass]]: # type: ignore | |
| ... | |
| def dataclass( | |
| _cls: type[_T], # type: ignore | |
| *, | |
| init: Literal[False] = False, | |
| repr: bool = True, | |
| eq: bool = True, | |
| order: bool = False, | |
| unsafe_hash: bool = False, | |
| frozen: bool | None = None, | |
| config: ConfigDict | type[object] | None = None, | |
| validate_on_init: bool | None = None, | |
| ) -> type[PydanticDataclass]: ... | |
| def dataclass( | |
| _cls: type[_T] | None = None, | |
| *, | |
| init: Literal[False] = False, | |
| repr: bool = True, | |
| eq: bool = True, | |
| order: bool = False, | |
| unsafe_hash: bool = False, | |
| frozen: bool | None = None, | |
| config: ConfigDict | type[object] | None = None, | |
| validate_on_init: bool | None = None, | |
| kw_only: bool = False, | |
| slots: bool = False, | |
| ) -> Callable[[type[_T]], type[PydanticDataclass]] | type[PydanticDataclass]: | |
| """!!! abstract "Usage Documentation" | |
| [`dataclasses`](../concepts/dataclasses.md) | |
| A decorator used to create a Pydantic-enhanced dataclass, similar to the standard Python `dataclass`, | |
| but with added validation. | |
| This function should be used similarly to `dataclasses.dataclass`. | |
| Args: | |
| _cls: The target `dataclass`. | |
| init: Included for signature compatibility with `dataclasses.dataclass`, and is passed through to | |
| `dataclasses.dataclass` when appropriate. If specified, must be set to `False`, as pydantic inserts its | |
| own `__init__` function. | |
| repr: A boolean indicating whether to include the field in the `__repr__` output. | |
| eq: Determines if a `__eq__` method should be generated for the class. | |
| order: Determines if comparison magic methods should be generated, such as `__lt__`, but not `__eq__`. | |
| unsafe_hash: Determines if a `__hash__` method should be included in the class, as in `dataclasses.dataclass`. | |
| frozen: Determines if the generated class should be a 'frozen' `dataclass`, which does not allow its | |
| attributes to be modified after it has been initialized. If not set, the value from the provided `config` argument will be used (and will default to `False` otherwise). | |
| config: The Pydantic config to use for the `dataclass`. | |
| validate_on_init: A deprecated parameter included for backwards compatibility; in V2, all Pydantic dataclasses | |
| are validated on init. | |
| kw_only: Determines if `__init__` method parameters must be specified by keyword only. Defaults to `False`. | |
| slots: Determines if the generated class should be a 'slots' `dataclass`, which does not allow the addition of | |
| new attributes after instantiation. | |
| Returns: | |
| A decorator that accepts a class as its argument and returns a Pydantic `dataclass`. | |
| Raises: | |
| AssertionError: Raised if `init` is not `False` or `validate_on_init` is `False`. | |
| """ | |
| assert init is False, 'pydantic.dataclasses.dataclass only supports init=False' | |
| assert validate_on_init is not False, 'validate_on_init=False is no longer supported' | |
| if sys.version_info >= (3, 10): | |
| kwargs = {'kw_only': kw_only, 'slots': slots} | |
| else: | |
| kwargs = {} | |
| def create_dataclass(cls: type[Any]) -> type[PydanticDataclass]: | |
| """Create a Pydantic dataclass from a regular dataclass. | |
| Args: | |
| cls: The class to create the Pydantic dataclass from. | |
| Returns: | |
| A Pydantic dataclass. | |
| """ | |
| from ._internal._utils import is_model_class | |
| if is_model_class(cls): | |
| raise PydanticUserError( | |
| f'Cannot create a Pydantic dataclass from {cls.__name__} as it is already a Pydantic model', | |
| code='dataclass-on-model', | |
| ) | |
| original_cls = cls | |
| # we warn on conflicting config specifications, but only if the class doesn't have a dataclass base | |
| # because a dataclass base might provide a __pydantic_config__ attribute that we don't want to warn about | |
| has_dataclass_base = any(dataclasses.is_dataclass(base) for base in cls.__bases__) | |
| if not has_dataclass_base and config is not None and hasattr(cls, '__pydantic_config__'): | |
| warn( | |
| f'`config` is set via both the `dataclass` decorator and `__pydantic_config__` for dataclass {cls.__name__}. ' | |
| f'The `config` specification from `dataclass` decorator will take priority.', | |
| category=UserWarning, | |
| stacklevel=2, | |
| ) | |
| # if config is not explicitly provided, try to read it from the type | |
| config_dict = config if config is not None else getattr(cls, '__pydantic_config__', None) | |
| config_wrapper = _config.ConfigWrapper(config_dict) | |
| decorators = _decorators.DecoratorInfos.build(cls, replace_wrapped_methods=True) | |
| decorators.update_from_config(config_wrapper) | |
| # Keep track of the original __doc__ so that we can restore it after applying the dataclasses decorator | |
| # Otherwise, classes with no __doc__ will have their signature added into the JSON schema description, | |
| # since dataclasses.dataclass will set this as the __doc__ | |
| original_doc = cls.__doc__ | |
| if _pydantic_dataclasses.is_stdlib_dataclass(cls): | |
| # Vanilla dataclasses include a default docstring (representing the class signature), | |
| # which we don't want to preserve. | |
| original_doc = None | |
| # We don't want to add validation to the existing std lib dataclass, so we will subclass it | |
| # If the class is generic, we need to make sure the subclass also inherits from Generic | |
| # with all the same parameters. | |
| bases = (cls,) | |
| if issubclass(cls, Generic): | |
| generic_base = Generic[cls.__parameters__] # type: ignore | |
| bases = bases + (generic_base,) | |
| cls = types.new_class(cls.__name__, bases) | |
| # Respect frozen setting from dataclass constructor and fallback to config setting if not provided | |
| if frozen is not None: | |
| frozen_ = frozen | |
| if config_wrapper.frozen: | |
| # It's not recommended to define both, as the setting from the dataclass decorator will take priority. | |
| warn( | |
| f'`frozen` is set via both the `dataclass` decorator and `config` for dataclass {cls.__name__!r}.' | |
| 'This is not recommended. The `frozen` specification on `dataclass` will take priority.', | |
| category=UserWarning, | |
| stacklevel=2, | |
| ) | |
| else: | |
| frozen_ = config_wrapper.frozen or False | |
| # Make Pydantic's `Field()` function compatible with stdlib dataclasses. As we'll decorate | |
| # `cls` with the stdlib `@dataclass` decorator first, there are two attributes, `kw_only` and | |
| # `repr` that need to be understood *during* the stdlib creation. We do so in two steps: | |
| # 1. On the decorated class, wrap `Field()` assignment with `dataclass.field()`, with the | |
| # two attributes set (done in `as_dataclass_field()`) | |
| cls_anns = _typing_extra.safe_get_annotations(cls) | |
| for field_name in cls_anns: | |
| # We should look for assignments in `__dict__` instead, but for now we follow | |
| # the same behavior as stdlib dataclasses (see https://github.com/python/cpython/issues/88609) | |
| field_value = getattr(cls, field_name, None) | |
| if isinstance(field_value, FieldInfo): | |
| setattr(cls, field_name, _pydantic_dataclasses.as_dataclass_field(field_value)) | |
| # 2. For bases of `cls` that are stdlib dataclasses, we temporarily patch their fields | |
| # (see the docstring of the context manager): | |
| with _pydantic_dataclasses.patch_base_fields(cls): | |
| cls = dataclasses.dataclass( # pyright: ignore[reportCallIssue] | |
| cls, | |
| # the value of init here doesn't affect anything except that it makes it easier to generate a signature | |
| init=True, | |
| repr=repr, | |
| eq=eq, | |
| order=order, | |
| unsafe_hash=unsafe_hash, | |
| frozen=frozen_, | |
| **kwargs, | |
| ) | |
| if config_wrapper.validate_assignment: | |
| original_setattr = cls.__setattr__ | |
| def validated_setattr(instance: PydanticDataclass, name: str, value: Any, /) -> None: | |
| if frozen_: | |
| return original_setattr(instance, name, value) # pyright: ignore[reportCallIssue] | |
| inst_cls = type(instance) | |
| attr = getattr(inst_cls, name, None) | |
| if isinstance(attr, property): | |
| attr.__set__(instance, value) | |
| elif isinstance(attr, functools.cached_property): | |
| instance.__dict__.__setitem__(name, value) | |
| else: | |
| inst_cls.__pydantic_validator__.validate_assignment(instance, name, value) | |
| cls.__setattr__ = validated_setattr.__get__(None, cls) # type: ignore | |
| if slots and not hasattr(cls, '__setstate__'): | |
| # If slots is set, `pickle` (relied on by `copy.copy()`) will use | |
| # `__setattr__()` to reconstruct the dataclass. However, the custom | |
| # `__setattr__()` set above relies on `validate_assignment()`, which | |
| # in turn expects all the field values to be already present on the | |
| # instance, resulting in attribute errors. | |
| # As such, we make use of `object.__setattr__()` instead. | |
| # Note that we do so only if `__setstate__()` isn't already set (this is the | |
| # case if on top of `slots`, `frozen` is used). | |
| # Taken from `dataclasses._dataclass_get/setstate()`: | |
| def _dataclass_getstate(self: Any) -> list[Any]: | |
| return [getattr(self, f.name) for f in dataclasses.fields(self)] | |
| def _dataclass_setstate(self: Any, state: list[Any]) -> None: | |
| for field, value in zip(dataclasses.fields(self), state): | |
| object.__setattr__(self, field.name, value) | |
| cls.__getstate__ = _dataclass_getstate # pyright: ignore[reportAttributeAccessIssue] | |
| cls.__setstate__ = _dataclass_setstate # pyright: ignore[reportAttributeAccessIssue] | |
| # This is an undocumented attribute to distinguish stdlib/Pydantic dataclasses. | |
| # It should be set as early as possible: | |
| cls.__is_pydantic_dataclass__ = True | |
| cls.__pydantic_decorators__ = decorators # type: ignore | |
| cls.__doc__ = original_doc | |
| # Can be non-existent for dynamically created classes: | |
| firstlineno = getattr(original_cls, '__firstlineno__', None) | |
| cls.__module__ = original_cls.__module__ | |
| if sys.version_info >= (3, 13) and firstlineno is not None: | |
| # As per https://docs.python.org/3/reference/datamodel.html#type.__firstlineno__: | |
| # Setting the `__module__` attribute removes the `__firstlineno__` item from the type’s dictionary. | |
| original_cls.__firstlineno__ = firstlineno | |
| cls.__firstlineno__ = firstlineno | |
| cls.__qualname__ = original_cls.__qualname__ | |
| cls.__pydantic_fields_complete__ = classmethod(_pydantic_fields_complete) | |
| cls.__pydantic_complete__ = False # `complete_dataclass` will set it to `True` if successful. | |
| # TODO `parent_namespace` is currently None, but we could do the same thing as Pydantic models: | |
| # fetch the parent ns using `parent_frame_namespace` (if the dataclass was defined in a function), | |
| # and possibly cache it (see the `__pydantic_parent_namespace__` logic for models). | |
| _pydantic_dataclasses.complete_dataclass(cls, config_wrapper, raise_errors=False) | |
| return cls | |
| return create_dataclass if _cls is None else create_dataclass(_cls) | |
| def _pydantic_fields_complete(cls: type[PydanticDataclass]) -> bool: | |
| """Return whether the fields were successfully collected (i.e. type hints were successfully resolved). | |
| This is a private helper, not meant to be used outside Pydantic. | |
| """ | |
| return all(field_info._complete for field_info in cls.__pydantic_fields__.values()) | |
| __getattr__ = getattr_migration(__name__) | |
| if sys.version_info < (3, 11): | |
| # Monkeypatch dataclasses.InitVar so that typing doesn't error if it occurs as a type when evaluating type hints | |
| # Starting in 3.11, typing.get_type_hints will not raise an error if the retrieved type hints are not callable. | |
| def _call_initvar(*args: Any, **kwargs: Any) -> NoReturn: | |
| """This function does nothing but raise an error that is as similar as possible to what you'd get | |
| if you were to try calling `InitVar[int]()` without this monkeypatch. The whole purpose is just | |
| to ensure typing._type_check does not error if the type hint evaluates to `InitVar[<parameter>]`. | |
| """ | |
| raise TypeError("'InitVar' object is not callable") | |
| dataclasses.InitVar.__call__ = _call_initvar | |
| def rebuild_dataclass( | |
| cls: type[PydanticDataclass], | |
| *, | |
| force: bool = False, | |
| raise_errors: bool = True, | |
| _parent_namespace_depth: int = 2, | |
| _types_namespace: MappingNamespace | None = None, | |
| ) -> bool | None: | |
| """Try to rebuild the pydantic-core schema for the dataclass. | |
| This may be necessary when one of the annotations is a ForwardRef which could not be resolved during | |
| the initial attempt to build the schema, and automatic rebuilding fails. | |
| This is analogous to `BaseModel.model_rebuild`. | |
| Args: | |
| cls: The class to rebuild the pydantic-core schema for. | |
| force: Whether to force the rebuilding of the schema, defaults to `False`. | |
| raise_errors: Whether to raise errors, defaults to `True`. | |
| _parent_namespace_depth: The depth level of the parent namespace, defaults to 2. | |
| _types_namespace: The types namespace, defaults to `None`. | |
| Returns: | |
| Returns `None` if the schema is already "complete" and rebuilding was not required. | |
| If rebuilding _was_ required, returns `True` if rebuilding was successful, otherwise `False`. | |
| """ | |
| if not force and cls.__pydantic_complete__: | |
| return None | |
| for attr in ('__pydantic_core_schema__', '__pydantic_validator__', '__pydantic_serializer__'): | |
| if attr in cls.__dict__ and not isinstance(getattr(cls, attr), _mock_val_ser.MockValSer): | |
| # Deleting the validator/serializer is necessary as otherwise they can get reused in | |
| # pydantic-core. Same applies for the core schema that can be reused in schema generation. | |
| delattr(cls, attr) | |
| cls.__pydantic_complete__ = False | |
| if _types_namespace is not None: | |
| rebuild_ns = _types_namespace | |
| elif _parent_namespace_depth > 0: | |
| rebuild_ns = _typing_extra.parent_frame_namespace(parent_depth=_parent_namespace_depth, force=True) or {} | |
| else: | |
| rebuild_ns = {} | |
| ns_resolver = _namespace_utils.NsResolver( | |
| parent_namespace=rebuild_ns, | |
| ) | |
| return _pydantic_dataclasses.complete_dataclass( | |
| cls, | |
| _config.ConfigWrapper(cls.__pydantic_config__, check=False), | |
| raise_errors=raise_errors, | |
| ns_resolver=ns_resolver, | |
| # We could provide a different config instead (with `'defer_build'` set to `True`) | |
| # of this explicit `_force_build` argument, but because config can come from the | |
| # decorator parameter or the `__pydantic_config__` attribute, `complete_dataclass` | |
| # will overwrite `__pydantic_config__` with the provided config above: | |
| _force_build=True, | |
| ) | |
| def is_pydantic_dataclass(class_: type[Any], /) -> TypeGuard[type[PydanticDataclass]]: | |
| """Whether a class is a pydantic dataclass. | |
| Args: | |
| class_: The class. | |
| Returns: | |
| `True` if the class is a pydantic dataclass, `False` otherwise. | |
| """ | |
| try: | |
| return '__is_pydantic_dataclass__' in class_.__dict__ and dataclasses.is_dataclass(class_) | |
| except AttributeError: | |
| return False | |
Xet Storage Details
- Size:
- 19 kB
- Xet hash:
- 8499e60d9ed169bd715209ee8996f2cf29e09d513b070ca9d98b42dd87fa48cc
·
Xet efficiently stores files, intelligently splitting them into unique chunks and accelerating uploads and downloads. More info.