File size: 17,871 Bytes
4ae0b03 |
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132 133 134 135 136 137 138 139 140 141 142 143 144 145 146 147 148 149 150 151 152 153 154 155 156 157 158 159 160 161 162 163 164 165 166 167 168 169 170 171 172 173 174 175 176 177 178 179 180 181 182 183 184 185 186 187 188 189 190 191 192 193 194 195 196 197 198 199 200 201 202 203 204 205 206 207 208 209 210 211 212 213 214 215 216 217 218 219 220 221 222 223 224 225 226 227 228 229 230 231 232 233 234 235 236 237 238 239 240 241 242 243 244 245 246 247 248 249 250 251 252 253 254 255 256 257 258 259 260 261 262 263 264 265 266 267 268 269 270 271 272 273 274 275 276 277 278 279 280 281 282 283 284 285 286 287 288 289 290 291 292 293 294 295 296 297 298 299 300 301 302 303 304 305 306 307 308 309 310 311 312 313 314 315 316 317 318 319 320 321 322 323 324 325 326 327 328 329 330 331 332 333 334 335 336 337 338 339 340 341 342 343 344 345 346 347 348 349 350 351 352 353 354 355 356 357 358 359 360 361 362 363 364 365 366 367 368 369 370 371 372 373 374 375 376 377 378 379 380 381 382 383 384 385 386 387 388 389 390 391 392 393 394 395 396 397 398 399 400 401 |
import sys
import types
import typing
from typing import (
TYPE_CHECKING,
Any,
ClassVar,
Dict,
ForwardRef,
Generic,
Iterator,
List,
Mapping,
Optional,
Tuple,
Type,
TypeVar,
Union,
cast,
)
from weakref import WeakKeyDictionary, WeakValueDictionary
from typing_extensions import Annotated, Literal as ExtLiteral
from pydantic.v1.class_validators import gather_all_validators
from pydantic.v1.fields import DeferredType
from pydantic.v1.main import BaseModel, create_model
from pydantic.v1.types import JsonWrapper
from pydantic.v1.typing import display_as_type, get_all_type_hints, get_args, get_origin, typing_base
from pydantic.v1.utils import all_identical, lenient_issubclass
if sys.version_info >= (3, 10):
from typing import _UnionGenericAlias
if sys.version_info >= (3, 8):
from typing import Literal
GenericModelT = TypeVar('GenericModelT', bound='GenericModel')
TypeVarType = Any # since mypy doesn't allow the use of TypeVar as a type
CacheKey = Tuple[Type[Any], Any, Tuple[Any, ...]]
Parametrization = Mapping[TypeVarType, Type[Any]]
# weak dictionaries allow the dynamically created parametrized versions of generic models to get collected
# once they are no longer referenced by the caller.
if sys.version_info >= (3, 9): # Typing for weak dictionaries available at 3.9
GenericTypesCache = WeakValueDictionary[CacheKey, Type[BaseModel]]
AssignedParameters = WeakKeyDictionary[Type[BaseModel], Parametrization]
else:
GenericTypesCache = WeakValueDictionary
AssignedParameters = WeakKeyDictionary
# _generic_types_cache is a Mapping from __class_getitem__ arguments to the parametrized version of generic models.
# This ensures multiple calls of e.g. A[B] return always the same class.
_generic_types_cache = GenericTypesCache()
# _assigned_parameters is a Mapping from parametrized version of generic models to assigned types of parametrizations
# as captured during construction of the class (not instances).
# E.g., for generic model `Model[A, B]`, when parametrized model `Model[int, str]` is created,
# `Model[int, str]`: {A: int, B: str}` will be stored in `_assigned_parameters`.
# (This information is only otherwise available after creation from the class name string).
_assigned_parameters = AssignedParameters()
class GenericModel(BaseModel):
__slots__ = ()
__concrete__: ClassVar[bool] = False
if TYPE_CHECKING:
# Putting this in a TYPE_CHECKING block allows us to replace `if Generic not in cls.__bases__` with
# `not hasattr(cls, "__parameters__")`. This means we don't need to force non-concrete subclasses of
# `GenericModel` to also inherit from `Generic`, which would require changes to the use of `create_model` below.
__parameters__: ClassVar[Tuple[TypeVarType, ...]]
# Setting the return type as Type[Any] instead of Type[BaseModel] prevents PyCharm warnings
def __class_getitem__(cls: Type[GenericModelT], params: Union[Type[Any], Tuple[Type[Any], ...]]) -> Type[Any]:
"""Instantiates a new class from a generic class `cls` and type variables `params`.
:param params: Tuple of types the class . Given a generic class
`Model` with 2 type variables and a concrete model `Model[str, int]`,
the value `(str, int)` would be passed to `params`.
:return: New model class inheriting from `cls` with instantiated
types described by `params`. If no parameters are given, `cls` is
returned as is.
"""
def _cache_key(_params: Any) -> CacheKey:
args = get_args(_params)
# python returns a list for Callables, which is not hashable
if len(args) == 2 and isinstance(args[0], list):
args = (tuple(args[0]), args[1])
return cls, _params, args
cached = _generic_types_cache.get(_cache_key(params))
if cached is not None:
return cached
if cls.__concrete__ and Generic not in cls.__bases__:
raise TypeError('Cannot parameterize a concrete instantiation of a generic model')
if not isinstance(params, tuple):
params = (params,)
if cls is GenericModel and any(isinstance(param, TypeVar) for param in params):
raise TypeError('Type parameters should be placed on typing.Generic, not GenericModel')
if not hasattr(cls, '__parameters__'):
raise TypeError(f'Type {cls.__name__} must inherit from typing.Generic before being parameterized')
check_parameters_count(cls, params)
# Build map from generic typevars to passed params
typevars_map: Dict[TypeVarType, Type[Any]] = dict(zip(cls.__parameters__, params))
if all_identical(typevars_map.keys(), typevars_map.values()) and typevars_map:
return cls # if arguments are equal to parameters it's the same object
# Create new model with original model as parent inserting fields with DeferredType.
model_name = cls.__concrete_name__(params)
validators = gather_all_validators(cls)
type_hints = get_all_type_hints(cls).items()
instance_type_hints = {k: v for k, v in type_hints if get_origin(v) is not ClassVar}
fields = {k: (DeferredType(), cls.__fields__[k].field_info) for k in instance_type_hints if k in cls.__fields__}
model_module, called_globally = get_caller_frame_info()
created_model = cast(
Type[GenericModel], # casting ensures mypy is aware of the __concrete__ and __parameters__ attributes
create_model(
model_name,
__module__=model_module or cls.__module__,
__base__=(cls,) + tuple(cls.__parameterized_bases__(typevars_map)),
__config__=None,
__validators__=validators,
__cls_kwargs__=None,
**fields,
),
)
_assigned_parameters[created_model] = typevars_map
if called_globally: # create global reference and therefore allow pickling
object_by_reference = None
reference_name = model_name
reference_module_globals = sys.modules[created_model.__module__].__dict__
while object_by_reference is not created_model:
object_by_reference = reference_module_globals.setdefault(reference_name, created_model)
reference_name += '_'
created_model.Config = cls.Config
# Find any typevars that are still present in the model.
# If none are left, the model is fully "concrete", otherwise the new
# class is a generic class as well taking the found typevars as
# parameters.
new_params = tuple(
{param: None for param in iter_contained_typevars(typevars_map.values())}
) # use dict as ordered set
created_model.__concrete__ = not new_params
if new_params:
created_model.__parameters__ = new_params
# Save created model in cache so we don't end up creating duplicate
# models that should be identical.
_generic_types_cache[_cache_key(params)] = created_model
if len(params) == 1:
_generic_types_cache[_cache_key(params[0])] = created_model
# Recursively walk class type hints and replace generic typevars
# with concrete types that were passed.
_prepare_model_fields(created_model, fields, instance_type_hints, typevars_map)
return created_model
@classmethod
def __concrete_name__(cls: Type[Any], params: Tuple[Type[Any], ...]) -> str:
"""Compute class name for child classes.
:param params: Tuple of types the class . Given a generic class
`Model` with 2 type variables and a concrete model `Model[str, int]`,
the value `(str, int)` would be passed to `params`.
:return: String representing a the new class where `params` are
passed to `cls` as type variables.
This method can be overridden to achieve a custom naming scheme for GenericModels.
"""
param_names = [display_as_type(param) for param in params]
params_component = ', '.join(param_names)
return f'{cls.__name__}[{params_component}]'
@classmethod
def __parameterized_bases__(cls, typevars_map: Parametrization) -> Iterator[Type[Any]]:
"""
Returns unbound bases of cls parameterised to given type variables
:param typevars_map: Dictionary of type applications for binding subclasses.
Given a generic class `Model` with 2 type variables [S, T]
and a concrete model `Model[str, int]`,
the value `{S: str, T: int}` would be passed to `typevars_map`.
:return: an iterator of generic sub classes, parameterised by `typevars_map`
and other assigned parameters of `cls`
e.g.:
```
class A(GenericModel, Generic[T]):
...
class B(A[V], Generic[V]):
...
assert A[int] in B.__parameterized_bases__({V: int})
```
"""
def build_base_model(
base_model: Type[GenericModel], mapped_types: Parametrization
) -> Iterator[Type[GenericModel]]:
base_parameters = tuple(mapped_types[param] for param in base_model.__parameters__)
parameterized_base = base_model.__class_getitem__(base_parameters)
if parameterized_base is base_model or parameterized_base is cls:
# Avoid duplication in MRO
return
yield parameterized_base
for base_model in cls.__bases__:
if not issubclass(base_model, GenericModel):
# not a class that can be meaningfully parameterized
continue
elif not getattr(base_model, '__parameters__', None):
# base_model is "GenericModel" (and has no __parameters__)
# or
# base_model is already concrete, and will be included transitively via cls.
continue
elif cls in _assigned_parameters:
if base_model in _assigned_parameters:
# cls is partially parameterised but not from base_model
# e.g. cls = B[S], base_model = A[S]
# B[S][int] should subclass A[int], (and will be transitively via B[int])
# but it's not viable to consistently subclass types with arbitrary construction
# So don't attempt to include A[S][int]
continue
else: # base_model not in _assigned_parameters:
# cls is partially parameterized, base_model is original generic
# e.g. cls = B[str, T], base_model = B[S, T]
# Need to determine the mapping for the base_model parameters
mapped_types: Parametrization = {
key: typevars_map.get(value, value) for key, value in _assigned_parameters[cls].items()
}
yield from build_base_model(base_model, mapped_types)
else:
# cls is base generic, so base_class has a distinct base
# can construct the Parameterised base model using typevars_map directly
yield from build_base_model(base_model, typevars_map)
def replace_types(type_: Any, type_map: Mapping[Any, Any]) -> Any:
"""Return type with all occurrences of `type_map` keys recursively replaced with their values.
:param type_: Any type, class or generic alias
:param type_map: Mapping from `TypeVar` instance to concrete types.
:return: New type representing the basic structure of `type_` with all
`typevar_map` keys recursively replaced.
>>> replace_types(Tuple[str, Union[List[str], float]], {str: int})
Tuple[int, Union[List[int], float]]
"""
if not type_map:
return type_
type_args = get_args(type_)
origin_type = get_origin(type_)
if origin_type is Annotated:
annotated_type, *annotations = type_args
return Annotated[replace_types(annotated_type, type_map), tuple(annotations)]
if (origin_type is ExtLiteral) or (sys.version_info >= (3, 8) and origin_type is Literal):
return type_map.get(type_, type_)
# Having type args is a good indicator that this is a typing module
# class instantiation or a generic alias of some sort.
if type_args:
resolved_type_args = tuple(replace_types(arg, type_map) for arg in type_args)
if all_identical(type_args, resolved_type_args):
# If all arguments are the same, there is no need to modify the
# type or create a new object at all
return type_
if (
origin_type is not None
and isinstance(type_, typing_base)
and not isinstance(origin_type, typing_base)
and getattr(type_, '_name', None) is not None
):
# In python < 3.9 generic aliases don't exist so any of these like `list`,
# `type` or `collections.abc.Callable` need to be translated.
# See: https://www.python.org/dev/peps/pep-0585
origin_type = getattr(typing, type_._name)
assert origin_type is not None
# PEP-604 syntax (Ex.: list | str) is represented with a types.UnionType object that does not have __getitem__.
# We also cannot use isinstance() since we have to compare types.
if sys.version_info >= (3, 10) and origin_type is types.UnionType: # noqa: E721
return _UnionGenericAlias(origin_type, resolved_type_args)
return origin_type[resolved_type_args]
# We handle pydantic generic models separately as they don't have the same
# semantics as "typing" classes or generic aliases
if not origin_type and lenient_issubclass(type_, GenericModel) and not type_.__concrete__:
type_args = type_.__parameters__
resolved_type_args = tuple(replace_types(t, type_map) for t in type_args)
if all_identical(type_args, resolved_type_args):
return type_
return type_[resolved_type_args]
# Handle special case for typehints that can have lists as arguments.
# `typing.Callable[[int, str], int]` is an example for this.
if isinstance(type_, (List, list)):
resolved_list = list(replace_types(element, type_map) for element in type_)
if all_identical(type_, resolved_list):
return type_
return resolved_list
# For JsonWrapperValue, need to handle its inner type to allow correct parsing
# of generic Json arguments like Json[T]
if not origin_type and lenient_issubclass(type_, JsonWrapper):
type_.inner_type = replace_types(type_.inner_type, type_map)
return type_
# If all else fails, we try to resolve the type directly and otherwise just
# return the input with no modifications.
new_type = type_map.get(type_, type_)
# Convert string to ForwardRef
if isinstance(new_type, str):
return ForwardRef(new_type)
else:
return new_type
def check_parameters_count(cls: Type[GenericModel], parameters: Tuple[Any, ...]) -> None:
actual = len(parameters)
expected = len(cls.__parameters__)
if actual != expected:
description = 'many' if actual > expected else 'few'
raise TypeError(f'Too {description} parameters for {cls.__name__}; actual {actual}, expected {expected}')
DictValues: Type[Any] = {}.values().__class__
def iter_contained_typevars(v: Any) -> Iterator[TypeVarType]:
"""Recursively iterate through all subtypes and type args of `v` and yield any typevars that are found."""
if isinstance(v, TypeVar):
yield v
elif hasattr(v, '__parameters__') and not get_origin(v) and lenient_issubclass(v, GenericModel):
yield from v.__parameters__
elif isinstance(v, (DictValues, list)):
for var in v:
yield from iter_contained_typevars(var)
else:
args = get_args(v)
for arg in args:
yield from iter_contained_typevars(arg)
def get_caller_frame_info() -> Tuple[Optional[str], bool]:
"""
Used inside a function to check whether it was called globally
Will only work against non-compiled code, therefore used only in pydantic.generics
:returns Tuple[module_name, called_globally]
"""
try:
previous_caller_frame = sys._getframe(2)
except ValueError as e:
raise RuntimeError('This function must be used inside another function') from e
except AttributeError: # sys module does not have _getframe function, so there's nothing we can do about it
return None, False
frame_globals = previous_caller_frame.f_globals
return frame_globals.get('__name__'), previous_caller_frame.f_locals is frame_globals
def _prepare_model_fields(
created_model: Type[GenericModel],
fields: Mapping[str, Any],
instance_type_hints: Mapping[str, type],
typevars_map: Mapping[Any, type],
) -> None:
"""
Replace DeferredType fields with concrete type hints and prepare them.
"""
for key, field in created_model.__fields__.items():
if key not in fields:
assert field.type_.__class__ is not DeferredType
# https://github.com/nedbat/coveragepy/issues/198
continue # pragma: no cover
assert field.type_.__class__ is DeferredType, field.type_.__class__
field_type_hint = instance_type_hints[key]
concrete_type = replace_types(field_type_hint, typevars_map)
field.type_ = concrete_type
field.outer_type_ = concrete_type
field.prepare()
created_model.__annotations__[key] = concrete_type
|