Skip to main content

Simple creation of data classes from dictionaries.

Project description

dacite

Build Status License Version Python versions

This module simplifies creation of data classes (PEP 557) from dictionaries.

Installation

To install dacite, simply use pip (or pipenv):

$ pip install dacite

Requirements

Minimum Python version supported by dacite is 3.6.

Quick start

from dataclasses import dataclass
from dacite import from_dict


@dataclass
class User:
    name: str
    age: int
    is_active: bool


data = {
    'name': 'john',
    'age': 30,
    'is_active': True,
}

user = from_dict(data_class=User, data=data)

assert user == User(name='john', age=30, is_active=True)

Features

Dacite supports following features:

  • nested structures
  • (basic) types checking
  • optional fields (i.e. typing.Optional)
  • unions
  • collections
  • values casting and transformation
  • remapping of fields names

Motivation

Passing plain dictionaries as a data container between your functions or methods isn't a good practice. Of course you can always create your custom class instead, but this solution is an overkill if you only want to merge a few fields within a single object.

Fortunately Python has a good solution to this problem - data classes. Thanks to @dataclass decorator you can easily create a new custom type with a list of given fields in a declarative manner. Data classes support type hints by design.

However, even if you are using data classes, you have to create their instances somehow. In many such cases, your input is a dictionary - it can be a payload from a HTTP request or a raw data from a database. If you want to convert those dictionaries into data classes, dacite is your best friend.

This library was originally created to simplify creation of type hinted data transfer objects (DTO) which can cross the boundaries in the application architecture.

Usage

Dacite is based on a single function - dacite.from_dict. This function takes 3 parameters:

  • data_class - data class type
  • data - dictionary of input data
  • config (optional) - configuration of the creation process, instance of dacite.Config class

Configuration is a (data) class with following fields:

  • remap
  • flattened
  • prefixed
  • cast
  • transform

The examples below show all features of from_dict function and usage of all Config parameters.

Nested structures

You can pass a data with nested dictionaries and it will create a proper result.

@dataclass
class A:
    x: str
    y: int


@dataclass
class B:
    a: A


data = {
    'a': {
        'x': 'test',
        'y': 1,
    }
}

result = from_dict(data_class=B, data=data)

assert result == B(a=A(x='test', y=1))

Optional fields

Whenever your data class has a Optional field and you will not provide input data for this field, it will take the None value.

from typing import Optional

@dataclass
class A:
    x: str
    y: Optional[int]


data = {
    'x': 'test',
}

result = from_dict(data_class=A, data=data)

assert result == A(x='test', y=None)

Unions

If your field can accept multiple types, you should use Union. Dacite will try to match data with provided types one by one. If none will match, it will raise UnionMatchError exception.

from typing import Union

@dataclass
class A:
    x: str

@dataclass
class B:
    y: int

@dataclass
class C:
    u: Union[A, B]


data = {
    'u': {
        'y': 1,
    },
}

result = from_dict(data_class=C, data=data)

assert result == C(u=B(y=1))

Collections

Dacite supports fields defined as collections. It works for both - basic types and data classes.

@dataclass
class A:
    x: str
    y: int


@dataclass
class B:
    a_list: List[A]


data = {
    'a_list': [
        {
            'x': 'test1',
            'y': 1,
        },
        {
            'x': 'test2',
            'y': 2,
        }
    ],
}

result = from_dict(data_class=B, data=data)

assert result == B(a_list=[A(x='test1', y=1), A(x='test2', y=2)])

Remapping

If your input data key does not match with a data class field name, you can use Config.remap argument to handle this case. You have to pass dictionary with a following mapping: {'data_class_field': 'input_field'}

@dataclass
class A:
    x: str


data = {
    'y': 'test',
}

result = from_dict(data_class=A, data=data, config=Config(remap={'x': 'y'}))

assert result == A(x='test')

Flattened

You often receive a flat structure which you want to convert to something more sophisticated. In this case you can use Config.flattened argument. You have to pass list of flattened fields.

@dataclass
class A:
    x: str
    y: int


@dataclass
class B:
    a: A
    z: float


data = {
    'x': 'test',
    'y': 1,
    'z': 2.0,
}

result = from_dict(data_class=B, data=data, config=Config(flattened=['a']))

assert result == B(a=A(x='test', y=1), z=2.0)

Prefixed

Sometimes your data is prefixed rather than nested. To handle this case, you have to use Config.prefixed argument, just pass a following mapping: {'data_class_field': 'prefix'}

@dataclass
class A:
    x: str
    y: int


@dataclass
class B:
    a: A
    z: float


data = {
    'a_x': 'test',
    'a_y': 1,
    'z': 2.0,
}

result = from_dict(data_class=B, data=data, config=Config(prefixed={'a': 'a_'}))

assert result == B(a=A(x='test', y=1), z=2.0)

Casting

Input values are not casted by default. If you want to use field type information to transform input value from one type to another, you have to pass given field name as an element of the Config.cast argument list.

@dataclass
class A:
    x: str


data = {
    'x': 1,
}

result = from_dict(data_class=A, data=data, config=Config(cast=['x']))

assert result == A(x='1')

Transformation

You can use Config.transform argument if you want to transform the input data into the new value. You have to pass a following mapping: {'data_class_field': callable}, where callable is a Callable[[Any], Any].

@dataclass
class A:
    x: str


data = {
    'x': 'TEST',
}

result = from_dict(data_class=A, data=data, config=Config(transform={'x': str.lower}))

assert result == A(x='test')

Exceptions

Whenever something goes wrong, from_dict will raise adequate exception. There are a few of them:

  • WrongTypeError - raised when a type of a input value does not match with a type of a data class field
  • MissingValueError - raised when you don't provide a value for a required field
  • InvalidConfigurationError - raised when you provide a invalid value (a field name or a input data key) for a configuration
  • UnionMatchError - raised when provided data does not match any type of Union

Authors

Created by Konrad Hałas.

Project details


Download files

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

Source Distribution

dacite-0.0.18.tar.gz (7.0 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

dacite-0.0.18-py3-none-any.whl (7.0 kB view details)

Uploaded Python 3

File details

Details for the file dacite-0.0.18.tar.gz.

File metadata

  • Download URL: dacite-0.0.18.tar.gz
  • Upload date:
  • Size: 7.0 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/1.12.1 pkginfo/1.4.2 requests/2.19.1 setuptools/40.4.3 requests-toolbelt/0.8.0 tqdm/4.25.0 CPython/3.6.3

File hashes

Hashes for dacite-0.0.18.tar.gz
Algorithm Hash digest
SHA256 e53c423b844355f09993816cc95e7c185ee4952db5c50a7b1a888766d04d6c6b
MD5 a004db205ba6ed9680cfc341d69765b6
BLAKE2b-256 d2c98f586daa4f0d1577b6a52e9b7da0fafc32ec727e734b4127e3d17bbcac12

See more details on using hashes here.

File details

Details for the file dacite-0.0.18-py3-none-any.whl.

File metadata

  • Download URL: dacite-0.0.18-py3-none-any.whl
  • Upload date:
  • Size: 7.0 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/1.12.1 pkginfo/1.4.2 requests/2.19.1 setuptools/40.4.3 requests-toolbelt/0.8.0 tqdm/4.25.0 CPython/3.6.3

File hashes

Hashes for dacite-0.0.18-py3-none-any.whl
Algorithm Hash digest
SHA256 83aff4f9be4f96b4a22b5a9dfcf72a82187777f7ef14c35e08b5d69d8045b26c
MD5 3d7983cce21fa0d34da53a7d6c9663f9
BLAKE2b-256 bc2edca062ecb909345107f846b314c651e08e1ed8065970f9951e80426e73a5

See more details on using hashes here.

Supported by

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