Fields
API Documentation
The Field
function is used to customize and add metadata to fields of models.
Default values¶
The default
parameter is used to define a default value for a field.
from pydantic import BaseModel, Field
class User(BaseModel):
name: str = Field(default='John Doe')
user = User()
print(user)
#> name='John Doe'
You can also use default_factory
to define a callable that will be called to generate a default value.
from uuid import uuid4
from pydantic import BaseModel, Field
class User(BaseModel):
id: str = Field(default_factory=lambda: uuid4().hex)
Info
The default
and default_factory
parameters are mutually exclusive.
Note
If you use typing.Optional
, it doesn't mean that the field has a default value of None
!
Using Annotated
¶
The Field
function can also be used together with Annotated
.
from uuid import uuid4
from typing_extensions import Annotated
from pydantic import BaseModel, Field
class User(BaseModel):
id: Annotated[str, Field(default_factory=lambda: uuid4().hex)]
Field aliases¶
For validation and serialization, you can define an alias for a field.
There are three ways to define an alias:
Field(..., alias='foo')
Field(..., validation_alias='foo')
Field(..., serialization_alias='foo')
The alias
parameter is used for both validation and serialization. If you want to use
different aliases for validation and serialization respectively, you can use thevalidation_alias
and serialization_alias
parameters, which will apply only in their respective use cases.
Here is some example usage of the alias
parameter:
from pydantic import BaseModel, Field
class User(BaseModel):
name: str = Field(..., alias='username')
user = User(username='johndoe') # (1)!
print(user)
#> name='johndoe'
print(user.model_dump(by_alias=True)) # (2)!
#> {'username': 'johndoe'}
- The alias
'username'
is used for instance creation and validation. -
We are using
model_dump
to convert the model into a serializable format.You can see more details about
model_dump
in the API reference.Note that the
by_alias
keyword argument defaults toFalse
, and must be specified explicitly to dump models using the field (serialization) aliases.When
by_alias=True
, the alias'username'
is also used during serialization.
If you want to use an alias only for validation, you can use the validation_alias
parameter:
from pydantic import BaseModel, Field
class User(BaseModel):
name: str = Field(..., validation_alias='username')
user = User(username='johndoe') # (1)!
print(user)
#> name='johndoe'
print(user.model_dump(by_alias=True)) # (2)!
#> {'name': 'johndoe'}
- The validation alias
'username'
is used during validation. - The field name
'name'
is used during serialization.
If you only want to define an alias for serialization, you can use the serialization_alias
parameter:
from pydantic import BaseModel, Field
class User(BaseModel):
name: str = Field(..., serialization_alias='username')
user = User(name='johndoe') # (1)!
print(user)
#> name='johndoe'
print(user.model_dump(by_alias=True)) # (2)!
#> {'username': 'johndoe'}
- The field name
'name'
is used for validation. - The serialization alias
'username'
is used for serialization.
Alias precedence and priority
In case you use alias
together with validation_alias
or serialization_alias
at the same time,
the validation_alias
will have priority over alias
for validation, and serialization_alias
will have priority
over alias
for serialization.
You may also set alias_priority
on a field to change this behavior.
You can read more about Alias Precedence in the Model Config documentation.
VSCode and Pyright users
In VSCode, if you use the Pylance extension, you won't see a warning when instantiating a model using a field's alias:
from pydantic import BaseModel, Field
class User(BaseModel):
name: str = Field(..., alias='username')
user = User(username='johndoe') # (1)!
- VSCode will NOT show a warning here.
When the 'alias'
keyword argument is specified, even if you set populate_by_name
to True
in the
Model Config, VSCode will show a warning when instantiating
a model using the field name (though it will work at runtime) — in this case, 'name'
:
from pydantic import BaseModel, ConfigDict, Field
class User(BaseModel):
model_config = ConfigDict(populate_by_name=True)
name: str = Field(..., alias='username')
user = User(name='johndoe') # (1)!
- VSCode will show a warning here.
To "trick" VSCode into preferring the field name, you can use the str
function to wrap the alias value:
from pydantic import BaseModel, ConfigDict, Field
class User(BaseModel):
model_config = ConfigDict(populate_by_name=True)
name: str = Field(..., alias='username')
This is discussed in more detail in this issue.
Validation Alias¶
Even though Pydantic treats alias
and validation_alias
the same when creating model instances, VSCode will not
use the validation_alias
in the class initializer signature. If you want VSCode to use the validation_alias
in the class initializer, you can instead specify both an alias
and serialization_alias
, as the
serialization_alias
will override the alias
during serialization:
from pydantic import BaseModel, Field
class MyModel(BaseModel):
my_field: int = Field(..., validation_alias='myValidationAlias')
from pydantic import BaseModel, Field
class MyModel(BaseModel):
my_field: int = Field(
...,
alias='myValidationAlias',
serialization_alias='my_serialization_alias',
)
m = MyModel(myValidationAlias=1)
print(m.model_dump(by_alias=True))
#> {'my_serialization_alias': 1}
All of the above will likely also apply to other tools that respect the
@typing.dataclass_transform
decorator, such as Pyright.
AliasPath
and AliasChoices
¶
API Documentation
Pydantic provides two special types for convenience when using validation_alias
: AliasPath
and AliasChoices
.
The AliasPath
is used to specify a path to a field using aliases. For example:
from pydantic import BaseModel, Field, AliasPath
class User(BaseModel):
first_name: str = Field(validation_alias=AliasPath('names', 0))
last_name: str = Field(validation_alias=AliasPath('names', 1))
user = User.model_validate({'names': ['John', 'Doe']}) # (1)!
print(user)
#> first_name='John' last_name='Doe'
-
We are using
model_validate
to validate a dictionary using the field aliases.You can see more details about
model_validate
in the API reference.
In the 'first_name'
field, we are using the alias 'names'
and the index 0
to specify the path to the first name.
In the 'last_name'
field, we are using the alias 'names'
and the index 1
to specify the path to the last name.
AliasChoices
is used to specify a choice of aliases. For example:
from pydantic import BaseModel, Field, AliasChoices
class User(BaseModel):
first_name: str = Field(validation_alias=AliasChoices('first_name', 'fname'))
last_name: str = Field(validation_alias=AliasChoices('last_name', 'lname'))
user = User.model_validate({'fname': 'John', 'lname': 'Doe'}) # (1)!
print(user)
#> first_name='John' last_name='Doe'
user = User.model_validate({'first_name': 'John', 'lname': 'Doe'}) # (2)!
print(user)
#> first_name='John' last_name='Doe'
- We are using the second alias choice for both fields.
- We are using the first alias choice for the field
'first_name'
and the second alias choice for the field'last_name'
.
You can also use AliasChoices
with AliasPath
:
from pydantic import BaseModel, Field, AliasPath, AliasChoices
class User(BaseModel):
first_name: str = Field(validation_alias=AliasChoices('first_name', AliasPath('names', 0)))
last_name: str = Field(validation_alias=AliasChoices('last_name', AliasPath('names', 1)))
user = User.model_validate({'first_name': 'John', 'last_name': 'Doe'})
print(user)
#> first_name='John' last_name='Doe'
user = User.model_validate({'names': ['John', 'Doe']})
print(user)
#> first_name='John' last_name='Doe'
user = User.model_validate({'names': ['John'], 'last_name': 'Doe'})
print(user)
#> first_name='John' last_name='Doe'
Numeric Constraints¶
There are some keyword arguments that can be used to constrain numeric values:
gt
- greater thanlt
- less thange
- greater than or equal tole
- less than or equal tomultiple_of
- a multiple of the given numberallow_inf_nan
- allow'inf'
,'-inf'
,'nan'
values
Here's an example:
from pydantic import BaseModel, Field
class Foo(BaseModel):
positive: int = Field(gt=0)
non_negative: int = Field(ge=0)
negative: int = Field(lt=0)
non_positive: int = Field(le=0)
even: int = Field(multiple_of=2)
love_for_pydantic: float = Field(allow_inf_nan=True)
foo = Foo(
positive=1,
non_negative=0,
negative=-1,
non_positive=0,
even=2,
love_for_pydantic=float('inf'),
)
print(foo)
"""
positive=1 non_negative=0 negative=-1 non_positive=0 even=2 love_for_pydantic=inf
"""
JSON Schema
In the generated JSON schema:
gt
andlt
constraints will be translated toexclusiveMinimum
andexclusiveMaximum
.ge
andle
constraints will be translated tominimum
andmaximum
.multiple_of
constraint will be translated tomultipleOf
.
The above snippet will generate the following JSON Schema:
{
"title": "Foo",
"type": "object",
"properties": {
"positive": {
"title": "Positive",
"type": "integer",
"exclusiveMinimum": 0
},
"non_negative": {
"title": "Non Negative",
"type": "integer",
"minimum": 0
},
"negative": {
"title": "Negative",
"type": "integer",
"exclusiveMaximum": 0
},
"non_positive": {
"title": "Non Positive",
"type": "integer",
"maximum": 0
},
"even": {
"title": "Even",
"type": "integer",
"multipleOf": 2
},
"love_for_pydantic": {
"title": "Love For Pydantic",
"type": "number"
}
},
"required": [
"positive",
"non_negative",
"negative",
"non_positive",
"even",
"love_for_pydantic"
]
}
See the JSON Schema Draft 2020-12 for more details.
Constraints on compound types
In case you use field constraints with compound types, an error can happen in some cases. To avoid potential issues,
you can use Annotated
:
from typing import Optional
from typing_extensions import Annotated
from pydantic import BaseModel, Field
class Foo(BaseModel):
positive: Optional[Annotated[int, Field(gt=0)]]
# Can error in some cases, not recommended:
non_negative: Optional[int] = Field(ge=0)
String Constraints¶
There are fields that can be used to constrain strings:
min_length
: Minimum length of the string.max_length
: Maximum length of the string.pattern
: A regular expression that the string must match.
Here's an example:
from pydantic import BaseModel, Field
class Foo(BaseModel):
short: str = Field(min_length=3)
long: str = Field(max_length=10)
regex: str = Field(pattern=r'^\d*$') # (1)!
foo = Foo(short='foo', long='foobarbaz', regex='123')
print(foo)
#> short='foo' long='foobarbaz' regex='123'
- Only digits are allowed.
JSON Schema
In the generated JSON schema:
min_length
constraint will be translated tominLength
.max_length
constraint will be translated tomaxLength
.pattern
constraint will be translated topattern
.
The above snippet will generate the following JSON Schema:
{
"title": "Foo",
"type": "object",
"properties": {
"short": {
"title": "Short",
"type": "string",
"minLength": 3
},
"long": {
"title": "Long",
"type": "string",
"maxLength": 10
},
"regex": {
"title": "Regex",
"type": "string",
"pattern": "^\\d*$"
}
},
"required": [
"short",
"long",
"regex"
]
}
Decimal Constraints¶
There are fields that can be used to constrain decimals:
max_digits
: Maximum number of digits within theDecimal
. It does not include a zero before the decimal point or trailing decimal zeroes.decimal_places
: Maximum number of decimal places allowed. It does not include trailing decimal zeroes.
Here's an example:
from decimal import Decimal
from pydantic import BaseModel, Field
class Foo(BaseModel):
precise: Decimal = Field(max_digits=5, decimal_places=2)
foo = Foo(precise=Decimal('123.45'))
print(foo)
#> precise=Decimal('123.45')
Dataclass Constraints¶
There are fields that can be used to constrain dataclasses:
init_var
: Whether the field should be seen as an init-only field in the dataclass.kw_only
: Whether the field should be a keyword-only argument in the constructor of the dataclass.
Here's an example:
from pydantic import BaseModel, Field
from pydantic.dataclasses import dataclass
@dataclass
class Foo:
bar: str
baz: str = Field(init_var=True)
qux: str = Field(kw_only=True)
class Model(BaseModel):
foo: Foo
model = Model(foo=Foo('bar', baz='baz', qux='qux'))
print(model.model_dump()) # (1)!
#> {'foo': {'bar': 'bar', 'qux': 'qux'}}
- The
baz
field is not included in themodel_dump()
output, since it is an init-only field.
Validate Default Values¶
The parameter validate_default
can be used to control whether the default value of the field should be validated.
By default, the default value of the field is not validated.
from pydantic import BaseModel, Field, ValidationError
class User(BaseModel):
age: int = Field(default='twelve', validate_default=True)
try:
user = User()
except ValidationError as e:
print(e)
"""
1 validation error for User
age
Input should be a valid integer, unable to parse string as an integer [type=int_parsing, input_value='twelve', input_type=str]
"""
Field Representation¶
The parameter repr
can be used to control whether the field should be included in the string
representation of the model.
from pydantic import BaseModel, Field
class User(BaseModel):
name: str = Field(repr=True) # (1)!
age: int = Field(repr=False)
user = User(name='John', age=42)
print(user)
#> name='John'
- This is the default value.
Discriminator¶
The parameter discriminator
can be used to control the field that will be used to discriminate between different
models in a union.
from typing import Literal, Union
from pydantic import BaseModel, Field
class Cat(BaseModel):
pet_type: Literal['cat']
age: int
class Dog(BaseModel):
pet_type: Literal['dog']
age: int
class Model(BaseModel):
pet: Union[Cat, Dog] = Field(discriminator='pet_type')
print(Model.model_validate({'pet': {'pet_type': 'cat', 'age': 12}})) # (1)!
#> pet=Cat(pet_type='cat', age=12)
- See more about Helper Functions in the Models page.
from typing import Literal
from pydantic import BaseModel, Field
class Cat(BaseModel):
pet_type: Literal['cat']
age: int
class Dog(BaseModel):
pet_type: Literal['dog']
age: int
class Model(BaseModel):
pet: Cat | Dog = Field(discriminator='pet_type')
print(Model.model_validate({'pet': {'pet_type': 'cat', 'age': 12}})) # (1)!
#> pet=Cat(pet_type='cat', age=12)
- See more about Helper Functions in the Models page.
See the Discriminated Unions for more details.
Strict Mode¶
The strict
parameter on a Field
specifies whether the field should be validated in "strict mode".
In strict mode, Pydantic throws an error during validation instead of coercing data on the field where strict=True
.
from pydantic import BaseModel, Field
class User(BaseModel):
name: str = Field(strict=True) # (1)!
age: int = Field(strict=False)
user = User(name='John', age='42') # (2)!
print(user)
#> name='John' age=42
- This is the default value.
- The
age
field is not validated in the strict mode. Therefore, it can be assigned a string.
See Strict Mode for more details.
See Conversion Table for more details on how Pydantic converts data in both strict and lax modes.
Immutability¶
The parameter frozen
is used to emulate the [frozen dataclass] behaviour. It is used to prevent the field from being
assigned a new value after the model is created (immutability).
See the frozen dataclass documentation for more details.
from pydantic import BaseModel, Field, ValidationError
class User(BaseModel):
name: str = Field(frozen=True)
age: int
user = User(name='John', age=42)
try:
user.name = 'Jane' # (1)!
except ValidationError as e:
print(e)
"""
1 validation error for User
name
Field is frozen [type=frozen_field, input_value='Jane', input_type=str]
"""
- Since
name
field is frozen, the assignment is not allowed.
Exclude¶
The exclude
parameter can be used to control which fields should be excluded from the
model when exporting the model.
See the following example:
from pydantic import BaseModel, Field
class User(BaseModel):
name: str
age: int = Field(exclude=True)
user = User(name='John', age=42)
print(user.model_dump()) # (1)!
#> {'name': 'John'}
- The
age
field is not included in themodel_dump()
output, since it is excluded.
See the Serialization section for more details.
Customizing JSON Schema¶
There are fields that exclusively to customise the generated JSON Schema:
title
: The title of the field.description
: The description of the field.examples
: The examples of the field.json_schema_extra
: Extra JSON Schema properties to be added to the field.
Here's an example:
from pydantic import BaseModel, EmailStr, Field, SecretStr
class User(BaseModel):
age: int = Field(description='Age of the user')
email: EmailStr = Field(examples=['[email protected]'])
name: str = Field(title='Username')
password: SecretStr = Field(
json_schema_extra={
'title': 'Password',
'description': 'Password of the user',
'examples': ['123456'],
}
)
print(User.model_json_schema())
"""
{
'properties': {
'age': {
'description': 'Age of the user',
'title': 'Age',
'type': 'integer',
},
'email': {
'examples': ['[email protected]'],
'format': 'email',
'title': 'Email',
'type': 'string',
},
'name': {'title': 'Username', 'type': 'string'},
'password': {
'description': 'Password of the user',
'examples': ['123456'],
'format': 'password',
'title': 'Password',
'type': 'string',
'writeOnly': True,
},
},
'required': ['age', 'email', 'name', 'password'],
'title': 'User',
'type': 'object',
}
"""