Catalyst / admin/Synapse-Cortex 14.8 GB / 57.8 GB 40.0 GB free
Help Sign in

admin / Synapse-Cortex

public

Self Hosted ITSM Tool with RBAC/Tenanting and MFA

Code Issues Pull requests Pipelines Packages Security Insights Wiki Settings
Synapse-Cortex / Synapse-Cortexv2 / .venv / Lib / site-packages / pydantic / config.py 32206 B · main
   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
 402
 403
 404
 405
 406
 407
 408
 409
 410
 411
 412
 413
 414
 415
 416
 417
 418
 419
 420
 421
 422
 423
 424
 425
 426
 427
 428
 429
 430
 431
 432
 433
 434
 435
 436
 437
 438
 439
 440
 441
 442
 443
 444
 445
 446
 447
 448
 449
 450
 451
 452
 453
 454
 455
 456
 457
 458
 459
 460
 461
 462
 463
 464
 465
 466
 467
 468
 469
 470
 471
 472
 473
 474
 475
 476
 477
 478
 479
 480
 481
 482
 483
 484
 485
 486
 487
 488
 489
 490
 491
 492
 493
 494
 495
 496
 497
 498
 499
 500
 501
 502
 503
 504
 505
 506
 507
 508
 509
 510
 511
 512
 513
 514
 515
 516
 517
 518
 519
 520
 521
 522
 523
 524
 525
 526
 527
 528
 529
 530
 531
 532
 533
 534
 535
 536
 537
 538
 539
 540
 541
 542
 543
 544
 545
 546
 547
 548
 549
 550
 551
 552
 553
 554
 555
 556
 557
 558
 559
 560
 561
 562
 563
 564
 565
 566
 567
 568
 569
 570
 571
 572
 573
 574
 575
 576
 577
 578
 579
 580
 581
 582
 583
 584
 585
 586
 587
 588
 589
 590
 591
 592
 593
 594
 595
 596
 597
 598
 599
 600
 601
 602
 603
 604
 605
 606
 607
 608
 609
 610
 611
 612
 613
 614
 615
 616
 617
 618
 619
 620
 621
 622
 623
 624
 625
 626
 627
 628
 629
 630
 631
 632
 633
 634
 635
 636
 637
 638
 639
 640
 641
 642
 643
 644
 645
 646
 647
 648
 649
 650
 651
 652
 653
 654
 655
 656
 657
 658
 659
 660
 661
 662
 663
 664
 665
 666
 667
 668
 669
 670
 671
 672
 673
 674
 675
 676
 677
 678
 679
 680
 681
 682
 683
 684
 685
 686
 687
 688
 689
 690
 691
 692
 693
 694
 695
 696
 697
 698
 699
 700
 701
 702
 703
 704
 705
 706
 707
 708
 709
 710
 711
 712
 713
 714
 715
 716
 717
 718
 719
 720
 721
 722
 723
 724
 725
 726
 727
 728
 729
 730
 731
 732
 733
 734
 735
 736
 737
 738
 739
 740
 741
 742
 743
 744
 745
 746
 747
 748
 749
 750
 751
 752
 753
 754
 755
 756
 757
 758
 759
 760
 761
 762
 763
 764
 765
 766
 767
 768
 769
 770
 771
 772
 773
 774
 775
 776
 777
 778
 779
 780
 781
 782
 783
 784
 785
 786
 787
 788
 789
 790
 791
 792
 793
 794
 795
 796
 797
 798
 799
 800
 801
 802
 803
 804
 805
 806
 807
 808
 809
 810
 811
 812
 813
 814
 815
 816
 817
 818
 819
 820
 821
 822
 823
 824
 825
 826
 827
 828
 829
 830
 831
 832
 833
 834
 835
 836
 837
 838
 839
 840
 841
 842
 843
 844
 845
 846
 847
 848
 849
 850
 851
 852
 853
 854
 855
 856
 857
 858
 859
 860
 861
 862
 863
 864
 865
 866
 867
 868
 869
 870
 871
 872
 873
 874
 875
 876
 877
 878
 879
 880
 881
 882
 883
 884
 885
 886
 887
 888
 889
 890
 891
 892
 893
 894
 895
 896
 897
 898
 899
 900
 901
 902
 903
 904
 905
 906
 907
 908
 909
 910
 911
 912
 913
 914
 915
 916
 917
 918
 919
 920
 921
 922
 923
 924
 925
 926
 927
 928
 929
 930
 931
 932
 933
 934
 935
 936
 937
 938
 939
 940
 941
 942
 943
 944
 945
 946
 947
 948
 949
 950
 951
 952
 953
 954
 955
 956
 957
 958
 959
 960
 961
 962
 963
 964
 965
 966
 967
 968
 969
 970
 971
 972
 973
 974
 975
 976
 977
 978
 979
 980
 981
 982
 983
 984
 985
 986
 987
 988
 989
 990
 991
 992
 993
 994
 995
 996
 997
 998
 999
1000
1001
1002
1003
"""Configuration for Pydantic models."""
from __future__ import annotations as _annotations

from typing import TYPE_CHECKING, Any, Callable, Dict, List, Type, TypeVar, Union

from typing_extensions import Literal, TypeAlias, TypedDict

from ._migration import getattr_migration
from .aliases import AliasGenerator

if TYPE_CHECKING:
    from ._internal._generate_schema import GenerateSchema as _GenerateSchema

__all__ = ('ConfigDict', 'with_config')


JsonValue: TypeAlias = Union[int, float, str, bool, None, List['JsonValue'], 'JsonDict']
JsonDict: TypeAlias = Dict[str, JsonValue]

JsonEncoder = Callable[[Any], Any]

JsonSchemaExtraCallable: TypeAlias = Union[
    Callable[[JsonDict], None],
    Callable[[JsonDict, Type[Any]], None],
]

ExtraValues = Literal['allow', 'ignore', 'forbid']


class ConfigDict(TypedDict, total=False):
    """A TypedDict for configuring Pydantic behaviour."""

    title: str | None
    """The title for the generated JSON schema, defaults to the model's name"""

    str_to_lower: bool
    """Whether to convert all characters to lowercase for str types. Defaults to `False`."""

    str_to_upper: bool
    """Whether to convert all characters to uppercase for str types. Defaults to `False`."""
    str_strip_whitespace: bool
    """Whether to strip leading and trailing whitespace for str types."""

    str_min_length: int
    """The minimum length for str types. Defaults to `None`."""

    str_max_length: int | None
    """The maximum length for str types. Defaults to `None`."""

    extra: ExtraValues | None
    """
    Whether to ignore, allow, or forbid extra attributes during model initialization. Defaults to `'ignore'`.

    You can configure how pydantic handles the attributes that are not defined in the model:

    * `allow` - Allow any extra attributes.
    * `forbid` - Forbid any extra attributes.
    * `ignore` - Ignore any extra attributes.

    ```py
    from pydantic import BaseModel, ConfigDict


    class User(BaseModel):
        model_config = ConfigDict(extra='ignore')  # (1)!

        name: str


    user = User(name='John Doe', age=20)  # (2)!
    print(user)
    #> name='John Doe'
    ```

    1. This is the default behaviour.
    2. The `age` argument is ignored.

    Instead, with `extra='allow'`, the `age` argument is included:

    ```py
    from pydantic import BaseModel, ConfigDict


    class User(BaseModel):
        model_config = ConfigDict(extra='allow')

        name: str


    user = User(name='John Doe', age=20)  # (1)!
    print(user)
    #> name='John Doe' age=20
    ```

    1. The `age` argument is included.

    With `extra='forbid'`, an error is raised:

    ```py
    from pydantic import BaseModel, ConfigDict, ValidationError


    class User(BaseModel):
        model_config = ConfigDict(extra='forbid')

        name: str


    try:
        User(name='John Doe', age=20)
    except ValidationError as e:
        print(e)
        '''
        1 validation error for User
        age
        Extra inputs are not permitted [type=extra_forbidden, input_value=20, input_type=int]
        '''
    ```
    """

    frozen: bool
    """
    Whether models are faux-immutable, i.e. whether `__setattr__` is allowed, and also generates
    a `__hash__()` method for the model. This makes instances of the model potentially hashable if all the
    attributes are hashable. Defaults to `False`.

    Note:
        On V1, the inverse of this setting was called `allow_mutation`, and was `True` by default.
    """

    populate_by_name: bool
    """
    Whether an aliased field may be populated by its name as given by the model
    attribute, as well as the alias. Defaults to `False`.

    Note:
        The name of this configuration setting was changed in **v2.0** from
        `allow_population_by_field_name` to `populate_by_name`.

    ```py
    from pydantic import BaseModel, ConfigDict, Field


    class User(BaseModel):
        model_config = ConfigDict(populate_by_name=True)

        name: str = Field(alias='full_name')  # (1)!
        age: int


    user = User(full_name='John Doe', age=20)  # (2)!
    print(user)
    #> name='John Doe' age=20
    user = User(name='John Doe', age=20)  # (3)!
    print(user)
    #> name='John Doe' age=20
    ```

    1. The field `'name'` has an alias `'full_name'`.
    2. The model is populated by the alias `'full_name'`.
    3. The model is populated by the field name `'name'`.
    """

    use_enum_values: bool
    """
    Whether to populate models with the `value` property of enums, rather than the raw enum.
    This may be useful if you want to serialize `model.model_dump()` later. Defaults to `False`.

    !!! note
        If you have an `Optional[Enum]` value that you set a default for, you need to use `validate_default=True`
        for said Field to ensure that the `use_enum_values` flag takes effect on the default, as extracting an
        enum's value occurs during validation, not serialization.

    ```py
    from enum import Enum
    from typing import Optional

    from pydantic import BaseModel, ConfigDict, Field


    class SomeEnum(Enum):
        FOO = 'foo'
        BAR = 'bar'
        BAZ = 'baz'


    class SomeModel(BaseModel):
        model_config = ConfigDict(use_enum_values=True)

        some_enum: SomeEnum
        another_enum: Optional[SomeEnum] = Field(default=SomeEnum.FOO, validate_default=True)


    model1 = SomeModel(some_enum=SomeEnum.BAR)
    print(model1.model_dump())
    # {'some_enum': 'bar', 'another_enum': 'foo'}

    model2 = SomeModel(some_enum=SomeEnum.BAR, another_enum=SomeEnum.BAZ)
    print(model2.model_dump())
    #> {'some_enum': 'bar', 'another_enum': 'baz'}
    ```
    """

    validate_assignment: bool
    """
    Whether to validate the data when the model is changed. Defaults to `False`.

    The default behavior of Pydantic is to validate the data when the model is created.

    In case the user changes the data after the model is created, the model is _not_ revalidated.

    ```py
    from pydantic import BaseModel

    class User(BaseModel):
        name: str

    user = User(name='John Doe')  # (1)!
    print(user)
    #> name='John Doe'
    user.name = 123  # (1)!
    print(user)
    #> name=123
    ```

    1. The validation happens only when the model is created.
    2. The validation does not happen when the data is changed.

    In case you want to revalidate the model when the data is changed, you can use `validate_assignment=True`:

    ```py
    from pydantic import BaseModel, ValidationError

    class User(BaseModel, validate_assignment=True):  # (1)!
        name: str

    user = User(name='John Doe')  # (2)!
    print(user)
    #> name='John Doe'
    try:
        user.name = 123  # (3)!
    except ValidationError as e:
        print(e)
        '''
        1 validation error for User
        name
          Input should be a valid string [type=string_type, input_value=123, input_type=int]
        '''
    ```

    1. You can either use class keyword arguments, or `model_config` to set `validate_assignment=True`.
    2. The validation happens when the model is created.
    3. The validation _also_ happens when the data is changed.
    """

    arbitrary_types_allowed: bool
    """
    Whether arbitrary types are allowed for field types. Defaults to `False`.

    ```py
    from pydantic import BaseModel, ConfigDict, ValidationError

    # This is not a pydantic model, it's an arbitrary class
    class Pet:
        def __init__(self, name: str):
            self.name = name

    class Model(BaseModel):
        model_config = ConfigDict(arbitrary_types_allowed=True)

        pet: Pet
        owner: str

    pet = Pet(name='Hedwig')
    # A simple check of instance type is used to validate the data
    model = Model(owner='Harry', pet=pet)
    print(model)
    #> pet=<__main__.Pet object at 0x0123456789ab> owner='Harry'
    print(model.pet)
    #> <__main__.Pet object at 0x0123456789ab>
    print(model.pet.name)
    #> Hedwig
    print(type(model.pet))
    #> <class '__main__.Pet'>
    try:
        # If the value is not an instance of the type, it's invalid
        Model(owner='Harry', pet='Hedwig')
    except ValidationError as e:
        print(e)
        '''
        1 validation error for Model
        pet
          Input should be an instance of Pet [type=is_instance_of, input_value='Hedwig', input_type=str]
        '''

    # Nothing in the instance of the arbitrary type is checked
    # Here name probably should have been a str, but it's not validated
    pet2 = Pet(name=42)
    model2 = Model(owner='Harry', pet=pet2)
    print(model2)
    #> pet=<__main__.Pet object at 0x0123456789ab> owner='Harry'
    print(model2.pet)
    #> <__main__.Pet object at 0x0123456789ab>
    print(model2.pet.name)
    #> 42
    print(type(model2.pet))
    #> <class '__main__.Pet'>
    ```
    """

    from_attributes: bool
    """
    Whether to build models and look up discriminators of tagged unions using python object attributes.
    """

    loc_by_alias: bool
    """Whether to use the actual key provided in the data (e.g. alias) for error `loc`s rather than the field's name. Defaults to `True`."""

    alias_generator: Callable[[str], str] | AliasGenerator | None
    """
    A callable that takes a field name and returns an alias for it
    or an instance of [`AliasGenerator`][pydantic.aliases.AliasGenerator]. Defaults to `None`.

    When using a callable, the alias generator is used for both validation and serialization.
    If you want to use different alias generators for validation and serialization, you can use
    [`AliasGenerator`][pydantic.aliases.AliasGenerator] instead.

    If data source field names do not match your code style (e. g. CamelCase fields),
    you can automatically generate aliases using `alias_generator`. Here's an example with
    a basic callable:

    ```py
    from pydantic import BaseModel, ConfigDict
    from pydantic.alias_generators import to_pascal

    class Voice(BaseModel):
        model_config = ConfigDict(alias_generator=to_pascal)

        name: str
        language_code: str

    voice = Voice(Name='Filiz', LanguageCode='tr-TR')
    print(voice.language_code)
    #> tr-TR
    print(voice.model_dump(by_alias=True))
    #> {'Name': 'Filiz', 'LanguageCode': 'tr-TR'}
    ```

    If you want to use different alias generators for validation and serialization, you can use
    [`AliasGenerator`][pydantic.aliases.AliasGenerator].

    ```py
    from pydantic import AliasGenerator, BaseModel, ConfigDict
    from pydantic.alias_generators import to_camel, to_pascal

    class Athlete(BaseModel):
        first_name: str
        last_name: str
        sport: str

        model_config = ConfigDict(
            alias_generator=AliasGenerator(
                validation_alias=to_camel,
                serialization_alias=to_pascal,
            )
        )

    athlete = Athlete(firstName='John', lastName='Doe', sport='track')
    print(athlete.model_dump(by_alias=True))
    #> {'FirstName': 'John', 'LastName': 'Doe', 'Sport': 'track'}
    ```

    Note:
        Pydantic offers three built-in alias generators: [`to_pascal`][pydantic.alias_generators.to_pascal],
        [`to_camel`][pydantic.alias_generators.to_camel], and [`to_snake`][pydantic.alias_generators.to_snake].
    """

    ignored_types: tuple[type, ...]
    """A tuple of types that may occur as values of class attributes without annotations. This is
    typically used for custom descriptors (classes that behave like `property`). If an attribute is set on a
    class without an annotation and has a type that is not in this tuple (or otherwise recognized by
    _pydantic_), an error will be raised. Defaults to `()`.
    """

    allow_inf_nan: bool
    """Whether to allow infinity (`+inf` an `-inf`) and NaN values to float fields. Defaults to `True`."""

    json_schema_extra: JsonDict | JsonSchemaExtraCallable | None
    """A dict or callable to provide extra JSON schema properties. Defaults to `None`."""

    json_encoders: dict[type[object], JsonEncoder] | None
    """
    A `dict` of custom JSON encoders for specific types. Defaults to `None`.

    !!! warning "Deprecated"
        This config option is a carryover from v1.
        We originally planned to remove it in v2 but didn't have a 1:1 replacement so we are keeping it for now.
        It is still deprecated and will likely be removed in the future.
    """

    # new in V2
    strict: bool
    """
    _(new in V2)_ If `True`, strict validation is applied to all fields on the model.

    By default, Pydantic attempts to coerce values to the correct type, when possible.

    There are situations in which you may want to disable this behavior, and instead raise an error if a value's type
    does not match the field's type annotation.

    To configure strict mode for all fields on a model, you can set `strict=True` on the model.

    ```py
    from pydantic import BaseModel, ConfigDict

    class Model(BaseModel):
        model_config = ConfigDict(strict=True)

        name: str
        age: int
    ```

    See [Strict Mode](../concepts/strict_mode.md) for more details.

    See the [Conversion Table](../concepts/conversion_table.md) for more details on how Pydantic converts data in both
    strict and lax modes.
    """
    # whether instances of models and dataclasses (including subclass instances) should re-validate, default 'never'
    revalidate_instances: Literal['always', 'never', 'subclass-instances']
    """
    When and how to revalidate models and dataclasses during validation. Accepts the string
    values of `'never'`, `'always'` and `'subclass-instances'`. Defaults to `'never'`.

    - `'never'` will not revalidate models and dataclasses during validation
    - `'always'` will revalidate models and dataclasses during validation
    - `'subclass-instances'` will revalidate models and dataclasses during validation if the instance is a
        subclass of the model or dataclass

    By default, model and dataclass instances are not revalidated during validation.

    ```py
    from typing import List

    from pydantic import BaseModel

    class User(BaseModel, revalidate_instances='never'):  # (1)!
        hobbies: List[str]

    class SubUser(User):
        sins: List[str]

    class Transaction(BaseModel):
        user: User

    my_user = User(hobbies=['reading'])
    t = Transaction(user=my_user)
    print(t)
    #> user=User(hobbies=['reading'])

    my_user.hobbies = [1]  # (2)!
    t = Transaction(user=my_user)  # (3)!
    print(t)
    #> user=User(hobbies=[1])

    my_sub_user = SubUser(hobbies=['scuba diving'], sins=['lying'])
    t = Transaction(user=my_sub_user)
    print(t)
    #> user=SubUser(hobbies=['scuba diving'], sins=['lying'])
    ```

    1. `revalidate_instances` is set to `'never'` by **default.
    2. The assignment is not validated, unless you set `validate_assignment` to `True` in the model's config.
    3. Since `revalidate_instances` is set to `never`, this is not revalidated.

    If you want to revalidate instances during validation, you can set `revalidate_instances` to `'always'`
    in the model's config.

    ```py
    from typing import List

    from pydantic import BaseModel, ValidationError

    class User(BaseModel, revalidate_instances='always'):  # (1)!
        hobbies: List[str]

    class SubUser(User):
        sins: List[str]

    class Transaction(BaseModel):
        user: User

    my_user = User(hobbies=['reading'])
    t = Transaction(user=my_user)
    print(t)
    #> user=User(hobbies=['reading'])

    my_user.hobbies = [1]
    try:
        t = Transaction(user=my_user)  # (2)!
    except ValidationError as e:
        print(e)
        '''
        1 validation error for Transaction
        user.hobbies.0
          Input should be a valid string [type=string_type, input_value=1, input_type=int]
        '''

    my_sub_user = SubUser(hobbies=['scuba diving'], sins=['lying'])
    t = Transaction(user=my_sub_user)
    print(t)  # (3)!
    #> user=User(hobbies=['scuba diving'])
    ```

    1. `revalidate_instances` is set to `'always'`.
    2. The model is revalidated, since `revalidate_instances` is set to `'always'`.
    3. Using `'never'` we would have gotten `user=SubUser(hobbies=['scuba diving'], sins=['lying'])`.

    It's also possible to set `revalidate_instances` to `'subclass-instances'` to only revalidate instances
    of subclasses of the model.

    ```py
    from typing import List

    from pydantic import BaseModel

    class User(BaseModel, revalidate_instances='subclass-instances'):  # (1)!
        hobbies: List[str]

    class SubUser(User):
        sins: List[str]

    class Transaction(BaseModel):
        user: User

    my_user = User(hobbies=['reading'])
    t = Transaction(user=my_user)
    print(t)
    #> user=User(hobbies=['reading'])

    my_user.hobbies = [1]
    t = Transaction(user=my_user)  # (2)!
    print(t)
    #> user=User(hobbies=[1])

    my_sub_user = SubUser(hobbies=['scuba diving'], sins=['lying'])
    t = Transaction(user=my_sub_user)
    print(t)  # (3)!
    #> user=User(hobbies=['scuba diving'])
    ```

    1. `revalidate_instances` is set to `'subclass-instances'`.
    2. This is not revalidated, since `my_user` is not a subclass of `User`.
    3. Using `'never'` we would have gotten `user=SubUser(hobbies=['scuba diving'], sins=['lying'])`.
    """

    ser_json_timedelta: Literal['iso8601', 'float']
    """
    The format of JSON serialized timedeltas. Accepts the string values of `'iso8601'` and
    `'float'`. Defaults to `'iso8601'`.

    - `'iso8601'` will serialize timedeltas to ISO 8601 durations.
    - `'float'` will serialize timedeltas to the total number of seconds.
    """

    ser_json_bytes: Literal['utf8', 'base64']
    """
    The encoding of JSON serialized bytes. Accepts the string values of `'utf8'` and `'base64'`.
    Defaults to `'utf8'`.

    - `'utf8'` will serialize bytes to UTF-8 strings.
    - `'base64'` will serialize bytes to URL safe base64 strings.
    """

    ser_json_inf_nan: Literal['null', 'constants']
    """
    The encoding of JSON serialized infinity and NaN float values. Accepts the string values of `'null'` and `'constants'`.
    Defaults to `'null'`.

    - `'null'` will serialize infinity and NaN values as `null`.
    - `'constants'` will serialize infinity and NaN values as `Infinity` and `NaN`.
    """

    # whether to validate default values during validation, default False
    validate_default: bool
    """Whether to validate default values during validation. Defaults to `False`."""

    validate_return: bool
    """whether to validate the return value from call validators. Defaults to `False`."""

    protected_namespaces: tuple[str, ...]
    """
    A `tuple` of strings that prevent model to have field which conflict with them.
    Defaults to `('model_', )`).

    Pydantic prevents collisions between model attributes and `BaseModel`'s own methods by
    namespacing them with the prefix `model_`.

    ```py
    import warnings

    from pydantic import BaseModel

    warnings.filterwarnings('error')  # Raise warnings as errors

    try:

        class Model(BaseModel):
            model_prefixed_field: str

    except UserWarning as e:
        print(e)
        '''
        Field "model_prefixed_field" has conflict with protected namespace "model_".

        You may be able to resolve this warning by setting `model_config['protected_namespaces'] = ()`.
        '''
    ```

    You can customize this behavior using the `protected_namespaces` setting:

    ```py
    import warnings

    from pydantic import BaseModel, ConfigDict

    warnings.filterwarnings('error')  # Raise warnings as errors

    try:

        class Model(BaseModel):
            model_prefixed_field: str
            also_protect_field: str

            model_config = ConfigDict(
                protected_namespaces=('protect_me_', 'also_protect_')
            )

    except UserWarning as e:
        print(e)
        '''
        Field "also_protect_field" has conflict with protected namespace "also_protect_".

        You may be able to resolve this warning by setting `model_config['protected_namespaces'] = ('protect_me_',)`.
        '''
    ```

    While Pydantic will only emit a warning when an item is in a protected namespace but does not actually have a collision,
    an error _is_ raised if there is an actual collision with an existing attribute:

    ```py
    from pydantic import BaseModel

    try:

        class Model(BaseModel):
            model_validate: str

    except NameError as e:
        print(e)
        '''
        Field "model_validate" conflicts with member <bound method BaseModel.model_validate of <class 'pydantic.main.BaseModel'>> of protected namespace "model_".
        '''
    ```
    """

    hide_input_in_errors: bool
    """
    Whether to hide inputs when printing errors. Defaults to `False`.

    Pydantic shows the input value and type when it raises `ValidationError` during the validation.

    ```py
    from pydantic import BaseModel, ValidationError

    class Model(BaseModel):
        a: str

    try:
        Model(a=123)
    except ValidationError as e:
        print(e)
        '''
        1 validation error for Model
        a
          Input should be a valid string [type=string_type, input_value=123, input_type=int]
        '''
    ```

    You can hide the input value and type by setting the `hide_input_in_errors` config to `True`.

    ```py
    from pydantic import BaseModel, ConfigDict, ValidationError

    class Model(BaseModel):
        a: str
        model_config = ConfigDict(hide_input_in_errors=True)

    try:
        Model(a=123)
    except ValidationError as e:
        print(e)
        '''
        1 validation error for Model
        a
          Input should be a valid string [type=string_type]
        '''
    ```
    """

    defer_build: bool
    """
    Whether to defer model validator and serializer construction until the first model validation.

    This can be useful to avoid the overhead of building models which are only
    used nested within other models, or when you want to manually define type namespace via
    [`Model.model_rebuild(_types_namespace=...)`][pydantic.BaseModel.model_rebuild]. Defaults to False.
    """

    plugin_settings: dict[str, object] | None
    """A `dict` of settings for plugins. Defaults to `None`.

    See [Pydantic Plugins](../concepts/plugins.md) for details.
    """

    schema_generator: type[_GenerateSchema] | None
    """
    A custom core schema generator class to use when generating JSON schemas.
    Useful if you want to change the way types are validated across an entire model/schema. Defaults to `None`.

    The `GenerateSchema` interface is subject to change, currently only the `string_schema` method is public.

    See [#6737](https://github.com/pydantic/pydantic/pull/6737) for details.
    """

    json_schema_serialization_defaults_required: bool
    """
    Whether fields with default values should be marked as required in the serialization schema. Defaults to `False`.

    This ensures that the serialization schema will reflect the fact a field with a default will always be present
    when serializing the model, even though it is not required for validation.

    However, there are scenarios where this may be undesirable — in particular, if you want to share the schema
    between validation and serialization, and don't mind fields with defaults being marked as not required during
    serialization. See [#7209](https://github.com/pydantic/pydantic/issues/7209) for more details.

    ```py
    from pydantic import BaseModel, ConfigDict

    class Model(BaseModel):
        a: str = 'a'

        model_config = ConfigDict(json_schema_serialization_defaults_required=True)

    print(Model.model_json_schema(mode='validation'))
    '''
    {
        'properties': {'a': {'default': 'a', 'title': 'A', 'type': 'string'}},
        'title': 'Model',
        'type': 'object',
    }
    '''
    print(Model.model_json_schema(mode='serialization'))
    '''
    {
        'properties': {'a': {'default': 'a', 'title': 'A', 'type': 'string'}},
        'required': ['a'],
        'title': 'Model',
        'type': 'object',
    }
    '''
    ```
    """

    json_schema_mode_override: Literal['validation', 'serialization', None]
    """
    If not `None`, the specified mode will be used to generate the JSON schema regardless of what `mode` was passed to
    the function call. Defaults to `None`.

    This provides a way to force the JSON schema generation to reflect a specific mode, e.g., to always use the
    validation schema.

    It can be useful when using frameworks (such as FastAPI) that may generate different schemas for validation
    and serialization that must both be referenced from the same schema; when this happens, we automatically append
    `-Input` to the definition reference for the validation schema and `-Output` to the definition reference for the
    serialization schema. By specifying a `json_schema_mode_override` though, this prevents the conflict between
    the validation and serialization schemas (since both will use the specified schema), and so prevents the suffixes
    from being added to the definition references.

    ```py
    from pydantic import BaseModel, ConfigDict, Json

    class Model(BaseModel):
        a: Json[int]  # requires a string to validate, but will dump an int

    print(Model.model_json_schema(mode='serialization'))
    '''
    {
        'properties': {'a': {'title': 'A', 'type': 'integer'}},
        'required': ['a'],
        'title': 'Model',
        'type': 'object',
    }
    '''

    class ForceInputModel(Model):
        # the following ensures that even with mode='serialization', we
        # will get the schema that would be generated for validation.
        model_config = ConfigDict(json_schema_mode_override='validation')

    print(ForceInputModel.model_json_schema(mode='serialization'))
    '''
    {
        'properties': {
            'a': {
                'contentMediaType': 'application/json',
                'contentSchema': {'type': 'integer'},
                'title': 'A',
                'type': 'string',
            }
        },
        'required': ['a'],
        'title': 'ForceInputModel',
        'type': 'object',
    }
    '''
    ```
    """

    coerce_numbers_to_str: bool
    """
    If `True`, enables automatic coercion of any `Number` type to `str` in "lax" (non-strict) mode. Defaults to `False`.

    Pydantic doesn't allow number types (`int`, `float`, `Decimal`) to be coerced as type `str` by default.

    ```py
    from decimal import Decimal

    from pydantic import BaseModel, ConfigDict, ValidationError

    class Model(BaseModel):
        value: str

    try:
        print(Model(value=42))
    except ValidationError as e:
        print(e)
        '''
        1 validation error for Model
        value
          Input should be a valid string [type=string_type, input_value=42, input_type=int]
        '''

    class Model(BaseModel):
        model_config = ConfigDict(coerce_numbers_to_str=True)

        value: str

    repr(Model(value=42).value)
    #> "42"
    repr(Model(value=42.13).value)
    #> "42.13"
    repr(Model(value=Decimal('42.13')).value)
    #> "42.13"
    ```
    """

    regex_engine: Literal['rust-regex', 'python-re']
    """
    The regex engine to be used for pattern validation.
    Defaults to `'rust-regex'`.

    - `rust-regex` uses the [`regex`](https://docs.rs/regex) Rust crate,
      which is non-backtracking and therefore more DDoS resistant, but does not support all regex features.
    - `python-re` use the [`re`](https://docs.python.org/3/library/re.html) module,
      which supports all regex features, but may be slower.

    ```py
    from pydantic import BaseModel, ConfigDict, Field, ValidationError

    class Model(BaseModel):
        model_config = ConfigDict(regex_engine='python-re')

        value: str = Field(pattern=r'^abc(?=def)')

    print(Model(value='abcdef').value)
    #> abcdef

    try:
        print(Model(value='abxyzcdef'))
    except ValidationError as e:
        print(e)
        '''
        1 validation error for Model
        value
          String should match pattern '^abc(?=def)' [type=string_pattern_mismatch, input_value='abxyzcdef', input_type=str]
        '''
    ```
    """

    validation_error_cause: bool
    """
    If `True`, Python exceptions that were part of a validation failure will be shown as an exception group as a cause. Can be useful for debugging. Defaults to `False`.

    Note:
        Python 3.10 and older don't support exception groups natively. <=3.10, backport must be installed: `pip install exceptiongroup`.

    Note:
        The structure of validation errors are likely to change in future Pydantic versions. Pydantic offers no guarantees about their structure. Should be used for visual traceback debugging only.
    """

    use_attribute_docstrings: bool
    '''
    Whether docstrings of attributes (bare string literals immediately following the attribute declaration)
    should be used for field descriptions. Defaults to `False`.

    ```py
    from pydantic import BaseModel, ConfigDict, Field


    class Model(BaseModel):
        model_config = ConfigDict(use_attribute_docstrings=True)

        x: str
        """
        Example of an attribute docstring
        """

        y: int = Field(description="Description in Field")
        """
        Description in Field overrides attribute docstring
        """


    print(Model.model_fields["x"].description)
    # > Example of an attribute docstring
    print(Model.model_fields["y"].description)
    # > Description in Field
    ```
    This requires the source code of the class to be available at runtime.

    !!! warning "Usage with `TypedDict`"
        Due to current limitations, attribute docstrings detection may not work as expected when using `TypedDict`
        (in particular when multiple `TypedDict` classes have the same name in the same source file). The behavior
        can be different depending on the Python version used.
    '''

    cache_strings: bool | Literal['all', 'keys', 'none']
    """
    Whether to cache strings to avoid constructing new Python objects. Defaults to True.

    Enabling this setting should significantly improve validation performance while increasing memory usage slightly.

    - `True` or `'all'` (the default): cache all strings
    - `'keys'`: cache only dictionary keys
    - `False` or `'none'`: no caching

    !!! note
        `True` or `'all'` is required to cache strings during general validation because
        validators don't know if they're in a key or a value.

    !!! tip
        If repeated strings are rare, it's recommended to use `'keys'` or `'none'` to reduce memory usage,
        as the performance difference is minimal if repeated strings are rare.
    """


_TypeT = TypeVar('_TypeT', bound=type)


def with_config(config: ConfigDict) -> Callable[[_TypeT], _TypeT]:
    """Usage docs: https://docs.pydantic.dev/2.7/concepts/config/#configuration-with-dataclass-from-the-standard-library-or-typeddict

    A convenience decorator to set a [Pydantic configuration](config.md) on a `TypedDict` or a `dataclass` from the standard library.

    Although the configuration can be set using the `__pydantic_config__` attribute, it does not play well with type checkers,
    especially with `TypedDict`.

    !!! example "Usage"

        ```py
        from typing_extensions import TypedDict

        from pydantic import ConfigDict, TypeAdapter, with_config

        @with_config(ConfigDict(str_to_lower=True))
        class Model(TypedDict):
            x: str

        ta = TypeAdapter(Model)

        print(ta.validate_python({'x': 'ABC'}))
        #> {'x': 'abc'}
        ```
    """

    def inner(TypedDictClass: _TypeT, /) -> _TypeT:
        TypedDictClass.__pydantic_config__ = config
        return TypedDictClass

    return inner


__getattr__ = getattr_migration(__name__)