Skip to main content

Python library to convert dataclasses into marshmallow schemas.

Project description

marshmallow-dataclass

Build Status PyPI version marshmallow 3 compatible download stats

Automatic generation of marshmallow schemas from dataclasses.

from dataclasses import dataclass, field
from typing import List, Optional

import marshmallow_dataclass
import marshmallow.validate


@dataclass
class Building:
    # field metadata is used to instantiate the marshmallow field
    height: float = field(metadata={"validate": marshmallow.validate.Range(min=0)})
    name: str = field(default="anonymous")


@dataclass
class City:
    name: Optional[str]
    buildings: List[Building] = field(default_factory=list)


city_schema = marshmallow_dataclass.class_schema(City)()

city = city_schema.load(
    {"name": "Paris", "buildings": [{"name": "Eiffel Tower", "height": 324}]}
)
# => City(name='Paris', buildings=[Building(height=324.0, name='Eiffel Tower')])

city_dict = city_schema.dump(city)
# => {'name': 'Paris', 'buildings': [{'name': 'Eiffel Tower', 'height': 324.0}]}

Why

Using schemas in Python often means having both a class to represent your data and a class to represent its schema, which results in duplicated code that could fall out of sync. As of Python 3.6, types can be defined for class members, which allows libraries to generate schemas automatically.

Therefore, you can document your APIs in a way that allows you to statically check that the code matches the documentation.

Installation

This package is hosted on PyPI.

pip3 install marshmallow-dataclass

You may optionally install the following extras:

pip3 install "marshmallow-dataclass[enum,union]"

marshmallow 2 support

marshmallow-dataclass no longer supports marshmallow 2. Install marshmallow_dataclass<6.0 if you need marshmallow 2 compatibility.

Usage

Use the class_schema function to generate a marshmallow Schema class from a dataclass.

from dataclasses import dataclass
from datetime import date

import marshmallow_dataclass


@dataclass
class Person:
    name: str
    birth: date


PersonSchema = marshmallow_dataclass.class_schema(Person)

The type of your fields must be either basic types supported by marshmallow (such as float, str, bytes, datetime, ...), Union, or other dataclasses.

Union (de)serialization coercion

Typically the Union type; Union[X, Y] means—from a set theory perspective—either X or Y, i.e., an unordered set, howevever the order of the sub-types defines the precedence when attempting to ether deserialize or serialize the value per here.

For example,

from typing import Union

from dataclasses import dataclass


@dataclass
class Person:
    name: str
    age: Union[int, float]


PersonSchema = marshmallow_dataclass.class_schema(Person)
PersonSchema().load({"name": "jane", "age": 50.0})
# => Person(name="jane", age=50)

will first (sucessfully) try to coerce 50.0 to an int. If coercion is not desired the Any type can be used with the caveat that values will not be type checked without additional validation.

Customizing generated fields

To pass arguments to the generated marshmallow fields (e.g., validate, load_only, dump_only, etc.), pass them to the metadata argument of the field function.

Note that starting with version 4, marshmallow will disallow passing arbitrary arguments, so any additional metadata should itself be put in its own metadata dict:

from dataclasses import dataclass, field
import marshmallow_dataclass
import marshmallow.validate


@dataclass
class Person:
    name: str = field(
        metadata=dict(
            load_only=True, metadata=dict(description="The person's first name")
        )
    )
    height: float = field(metadata=dict(validate=marshmallow.validate.Range(min=0)))


PersonSchema = marshmallow_dataclass.class_schema(Person)

@dataclass shortcut

marshmallow_dataclass provides a @dataclass decorator that behaves like the standard library's @dataclasses.dataclass and adds a Schema attribute with the generated marshmallow Schema.

# Use marshmallow_dataclass's @dataclass shortcut
from marshmallow_dataclass import dataclass


@dataclass
class Point:
    x: float
    y: float


Point.Schema().dump(Point(4, 2))
# => {'x': 4, 'y': 2}

Note: Since the .Schema property is added dynamically, it can confuse type checkers. To avoid that, you can declare Schema as a ClassVar.

from typing import ClassVar, Type

from marshmallow_dataclass import dataclass
from marshmallow import Schema


@dataclass
class Point:
    x: float
    y: float
    Schema: ClassVar[Type[Schema]] = Schema

Customizing the base Schema

It is also possible to derive all schemas from your own base Schema class (see marshmallow's documentation about extending Schema). This allows you to implement custom (de)serialization behavior, for instance specifying a custom mapping between your classes and marshmallow fields, or renaming fields on serialization.

Custom mapping between classes and fields

class BaseSchema(marshmallow.Schema):
    TYPE_MAPPING = {CustomType: CustomField, List: CustomListField}


class Sample:
    my_custom: CustomType
    my_custom_list: List[int]


SampleSchema = marshmallow_dataclass.class_schema(Sample, base_schema=BaseSchema)
# SampleSchema now serializes my_custom using the CustomField marshmallow field
# and serializes my_custom_list using the CustomListField marshmallow field

Renaming fields on serialization

import marshmallow
import marshmallow_dataclass


class UppercaseSchema(marshmallow.Schema):
    """A Schema that marshals data with uppercased keys."""

    def on_bind_field(self, field_name, field_obj):
        field_obj.data_key = (field_obj.data_key or field_name).upper()


class Sample:
    my_text: str
    my_int: int


SampleSchema = marshmallow_dataclass.class_schema(Sample, base_schema=UppercaseSchema)

SampleSchema().dump(Sample(my_text="warm words", my_int=1))
# -> {"MY_TEXT": "warm words", "MY_INT": 1}

You can also pass base_schema to marshmallow_dataclass.dataclass.

@marshmallow_dataclass.dataclass(base_schema=UppercaseSchema)
class Sample:
    my_text: str
    my_int: int

See marshmallow's documentation about extending Schema.

Custom NewType declarations

This library exports a NewType function to create types that generate customized marshmallow fields.

Keyword arguments to NewType are passed to the marshmallow field constructor.

import marshmallow.validate
from marshmallow_dataclass import NewType

IPv4 = NewType(
    "IPv4", str, validate=marshmallow.validate.Regexp(r"^([0-9]{1,3}\\.){3}[0-9]{1,3}$")
)

You can also pass a marshmallow field to NewType.

import marshmallow
from marshmallow_dataclass import NewType

Email = NewType("Email", str, field=marshmallow.fields.Email)

For convenience, some custom types are provided:

from marshmallow_dataclass.typing import Email, Url

Note: if you are using mypy, you will notice that mypy throws an error if a variable defined with NewType is used in a type annotation. To resolve this, add the marshmallow_dataclass.mypy plugin to your mypy configuration, e.g.:

[mypy]
plugins = marshmallow_dataclass.mypy
# ...

Meta options

Meta options are set the same way as a marshmallow Schema.

from marshmallow_dataclass import dataclass


@dataclass
class Point:
    x: float
    y: float

    class Meta:
        ordered = True

Documentation

The project documentation is hosted on GitHub Pages: https://lovasoa.github.io/marshmallow_dataclass/

Contributing

To install this project and make changes to it locally, follow the instructions in CONTRIBUTING.md.

Project details


Release history Release notifications | RSS feed

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

marshmallow_dataclass-8.5.4.tar.gz (18.6 kB view details)

Uploaded Source

Built Distribution

marshmallow_dataclass-8.5.4-py3-none-any.whl (17.0 kB view details)

Uploaded Python 3

File details

Details for the file marshmallow_dataclass-8.5.4.tar.gz.

File metadata

  • Download URL: marshmallow_dataclass-8.5.4.tar.gz
  • Upload date:
  • Size: 18.6 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/4.0.0 CPython/3.10.4

File hashes

Hashes for marshmallow_dataclass-8.5.4.tar.gz
Algorithm Hash digest
SHA256 665d83756a313f5cb40a5927ef0b29c906df21174089a1865a16fe5a94e51566
MD5 681c33fb9c0d57f2022fcb19122d417d
BLAKE2b-256 b5c7eb04b54161d7fa81b2a1fb2d5a5f5444a54eabf7d45c4c55542e493e94a2

See more details on using hashes here.

File details

Details for the file marshmallow_dataclass-8.5.4-py3-none-any.whl.

File metadata

File hashes

Hashes for marshmallow_dataclass-8.5.4-py3-none-any.whl
Algorithm Hash digest
SHA256 0d9bfc0feb45d5ee587f0603e9cbc8ae6ec7b4bb94376dc34075dcc05f61bea7
MD5 88b2e38c82192115cb9731e697617475
BLAKE2b-256 f8599e6605a0c2144233370fe79391f7ae2d0073ba349af6839e85887f87d3f4

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page