Skip to main content

Generate Avro Schemas from Python classes. Serialize/Deserialize python instances with avro schemas

Project description

Dataclasses Avro Schema Generator

Generate avro schemas from python dataclasses. Code generation from avro schemas. Serialize/Deserialize python instances with avro schemas

Tests GitHub license codecov python version

Requirements

python 3.8+

Installation

with pip or poetry:

pip install dataclasses-avroschema or poetry install

Extras

  • pydantic: pip install 'dataclasses-avroschema[pydantic]' or poetry install --extras "pydantic"
  • faust-streaming: pip install 'dataclasses-avroschema[faust]' or poetry install --extras "faust"
  • faker: pip install 'dataclasses-avroschema[faker]' or poetry install --extras "faker"

Note: You can install all extra dependencies with pip install dataclasses-avroschema[faust, pydantic, faker] or poetry install --extras "pydantic faust faker"

CLI

To add avro schemas cli install dc-avro

pip install 'dataclasses-avroschema[cli]' or poetry install --with cli

Documentation

https://marcosschroh.github.io/dataclasses-avroschema/

Usage

Generating the avro schema

from dataclasses import dataclass
import enum

import typing

from dataclasses_avroschema import AvroModel, types


class FavoriteColor(enum.Enum):
    BLUE = "BLUE"
    YELLOW = "YELLOW"
    GREEN = "GREEN"


@dataclass
class User(AvroModel):
    "An User"
    name: str
    age: int
    pets: typing.List[str]
    accounts: typing.Dict[str, int]
    favorite_colors: FavoriteColor
    country: str = "Argentina"
    address: str = None

    class Meta:
        namespace = "User.v1"
        aliases = ["user-v1", "super user"]

User.avro_schema()

'{
    "type": "record",
    "name": "User",
    "doc": "An User",
    "namespace": "User.v1",
    "aliases": ["user-v1", "super user"],
    "fields": [
        {"name": "name", "type": "string"},
        {"name": "age", "type": "long"},
        {"name": "pets", "type": "array", "items": "string"},
        {"name": "accounts", "type": "map", "values": "long"},
        {"name": "favorite_color", "type": {"type": "enum", "name": "FavoriteColor", "symbols": ["Blue", "Yellow", "Green"]}}
        {"name": "country", "type": "string", "default": "Argentina"},
        {"name": "address", "type": ["null", "string"], "default": null}
    ]
}'

User.avro_schema_to_python()

{
    "type": "record",
    "name": "User",
    "doc": "An User",
    "namespace": "User.v1",
    "aliases": ["user-v1", "super user"],
    "fields": [
        {"name": "name", "type": "string"},
        {"name": "age", "type": "long"},
        {"name": "pets", "type": {"type": "array", "items": "string", "name": "pet"}},
        {"name": "accounts", "type": {"type": "map", "values": "long", "name": "account"}},
        {"name": "favorite_colors", "type": {"type": "enum", "name": "FavoriteColor", "symbols": ["BLUE", "YELLOW", "GREEN"]}},
        {"name": "country", "type": "string", "default": "Argentina"},
        {"name": "address", "type": ["null", "string"], "default": None}
    ],
}

Serialization to avro or avro-json and json payload

For serialization is neccesary to use python class/dataclasses instance

from dataclasses import dataclass

import typing

from dataclasses_avroschema import AvroModel


@dataclass
class Address(AvroModel):
    "An Address"
    street: str
    street_number: int


@dataclass
class User(AvroModel):
    "User with multiple Address"
    name: str
    age: int
    addresses: typing.List[Address]

address_data = {
    "street": "test",
    "street_number": 10,
}

# create an Address instance
address = Address(**address_data)

data_user = {
    "name": "john",
    "age": 20,
    "addresses": [address],
}

# create an User instance
user = User(**data_user)

user.serialize()
# >>> b"\x08john(\x02\x08test\x14\x00"

user.serialize(serialization_type="avro-json")
# >>> b'{"name": "john", "age": 20, "addresses": [{"street": "test", "street_number": 10}]}'

# Get the json from the instance
user.to_json()
# >>> '{"name": "john", "age": 20, "addresses": [{"street": "test", "street_number": 10}]}'

# Get a python dict
user.to_dict()
# >>> {"name": "john", "age": 20, "addresses": [{"street": "test", "street_number": 10}]}

Deserialization

Deserialization could take place with an instance dataclass or the dataclass itself. Can return the dict representation or a new class instance

import typing
import dataclasses

from dataclasses_avroschema import AvroModel


@dataclasses.dataclass
class Address(AvroModel):
    "An Address"
    street: str
    street_number: int

@dataclasses.dataclass
class User(AvroModel):
    "User with multiple Address"
    name: str
    age: int
    addresses: typing.List[Address]

avro_binary = b"\x08john(\x02\x08test\x14\x00"
avro_json_binary = b'{"name": "john", "age": 20, "addresses": [{"street": "test", "street_number": 10}]}'

# return a new class instance!!
User.deserialize(avro_binary)
# >>>> User(name='john', age=20, addresses=[Address(street='test', street_number=10)])

# return a python dict
User.deserialize(avro_binary, create_instance=False)
# >>> {"name": "john", "age": 20, "addresses": [{"street": "test", "street_number": 10}]}

# return a new class instance!!
User.deserialize(avro_json_binary, serialization_type="avro-json")
# >>>> User(name='john', age=20, addresses=[Address(street='test', street_number=10)])

# return a python dict
User.deserialize(avro_json_binary, serialization_type="avro-json", create_instance=False)
# >>> {"name": "john", "age": 20, "addresses": [{"street": "test", "street_number": 10}]}

Pydantic integration

To add dataclasses-avroschema functionality to pydantic you only need to replace BaseModel by AvroBaseModel:

import typing
import enum
import dataclasses

from dataclasses_avroschema.avrodantic import AvroBaseModel

from pydantic import Field


class FavoriteColor(str, enum.Enum):
    BLUE = "BLUE"
    YELLOW = "YELLOW"
    GREEN = "GREEN"


@dataclasses.dataclass
class UserAdvance(AvroBaseModel):
    name: str
    age: int
    pets: typing.List[str] = Field(default_factory=lambda: ["dog", "cat"])
    accounts: typing.Dict[str, int] = Field(default_factory=lambda: {"key": 1})
    has_car: bool = False
    favorite_colors: FavoriteColor = FavoriteColor.BLUE
    country: str = "Argentina"
    address: str = None

    class Meta:
        schema_doc = False


# Avro schema
UserAdvance.avro_schema()
'{
    "type": "record",
    "name": "UserAdvance",
    "fields": [
        {"name": "name", "type": "string"},
        {"name": "age", "type": "long"},
        {"name": "pets", "type": {"type": "array", "items": "string", "name": "pet"}, "default": ["dog", "cat"]},
        {"name": "accounts", "type": {"type": "map", "values": "long", "name": "account"}, "default": {"key": 1}},
        {"name": "has_car", "type": "boolean", "default": false},
        {"name": "favorite_colors", "type": {"type": "enum", "name": "favorite_color", "symbols": ["BLUE", "YELLOW", "GREEN"]}, "default": "BLUE"},
        {"name": "country", "type": "string", "default": "Argentina"},
        {"name": "address", "type": ["null", "string"], "default": null}
    ]
}'

# Json schema
UserAdvance.json_schema()

{
    "title": "UserAdvance",
    "description": "UserAdvance(*, name: str, age: int, pets: List[str] = None, ...",
    "type": "object",
    "properties": {
        "name": {"title": "Name", "type": "string"},
        "age": {"title": "Age", "type": "integer"},
        "pets": {"title": "Pets", "type": "array", "items": {"type": "string"}},
        "accounts": {"title": "Accounts", "type": "object", "additionalProperties": {"type": "integer"}},
        "has_car": {"title": "Has Car", "default": false, "type": "boolean"},
        "favorite_colors": {"default": "BLUE", "allOf": [{"$ref": "#/definitions/FavoriteColor"}]},
        "country": {"title": "Country", "default": "Argentina", "type": "string"},
        "address": {"title": "Address", "type": "string"}}, "required": ["name", "age"], "definitions": {"FavoriteColor": {"title": "FavoriteColor", "description": "An enumeration.", "enum": ["BLUE", "YELLOW", "GREEN"], "type": "string"}}
}

user = UserAdvance(name="bond", age=50)

# pydantic
user.dict()
# >>> {'name': 'bond', 'age': 50, 'pets': ['dog', 'cat'], 'accounts': {'key': 1}, 'has_car': False, 'favorite_colors': <FavoriteColor.BLUE: 'BLUE'>, 'country': 'Argentina', 'address': None}

# pydantic
user.json()
# >>> '{"name": "bond", "age": 50, "pets": ["dog", "cat"], "accounts": {"key": 1}, "has_car": false, "favorite_colors": "BLUE", "country": "Argentina", "address": null}'

# pydantic
user = UserAdvance(name="bond")

# ValidationError: 1 validation error for UserAdvance
# age
# field required (type=value_error.missing)


# dataclasses-avroschema
event = user.serialize()
print(event)
# >>> b'\x08bondd\x04\x06dog\x06cat\x00\x02\x06key\x02\x00\x00\x00\x12Argentina\x00'

UserAdvance.deserialize(data=event)
# >>> UserAdvance(name='bond', age=50, pets=['dog', 'cat'], accounts={'key': 1}, has_car=False, favorite_colors=<FavoriteColor.BLUE: 'BLUE'>, country='Argentina', address=None)

Examples with python streaming drivers (kafka and redis)

Under examples folder you can find 3 differents kafka examples, one with aiokafka (async) showing the simplest use case when a AvroModel instance is serialized and sent it thorught kafka, and the event is consumed. The other two examples are sync using the kafka-python driver, where the avro-json serialization and schema evolution (FULL compatibility) is shown. Also, there are two redis examples using redis streams with walrus and redisgears-py

Factory and fixtures

Dataclasses Avro Schema also includes a factory feature, so you can generate fast python instances and use them, for example, to test your data streaming pipelines. Instances can be generated using the fake method.

Note: This feature is not enabled by default and requires you have the faker extra installed. You may install it with pip install 'dataclasses-avroschema[faker]'

import typing
import dataclasses

from dataclasses_avroschema import AvroModel


@dataclasses.dataclass
class Address(AvroModel):
    "An Address"
    street: str
    street_number: int


@dataclasses.dataclass
class User(AvroModel):
    "User with multiple Address"
    name: str
    age: int
    addresses: typing.List[Address]


Address.fake()
# >>>> Address(street='PxZJILDRgbXyhWrrPWxQ', street_number=2067)

User.fake()
# >>>> User(name='VGSBbOGfSGjkMDnefHIZ', age=8974, addresses=[Address(street='vNpPYgesiHUwwzGcmMiS', street_number=4790)])

Features

  • Primitive types: int, long, double, float, boolean, string and null support
  • Complex types: enum, array, map, fixed, unions and records support
  • typing.Annotated supported
  • Logical Types: date, time (millis and micro), datetime (millis and micro), uuid support
  • Schema relations (oneToOne, oneToMany)
  • Recursive Schemas
  • Generate Avro Schemas from faust.Record
  • Instance serialization correspondent to avro schema generated
  • Data deserialization. Return python dict or class instance
  • Generate json from python class instance
  • Case Schemas
  • Generate models from avsc files
  • Examples of integration with kafka drivers: aiokafka, kafka-python
  • Example of integration with redis drivers: walrus and redisgears-py
  • Factory instances
  • Pydantic integration

Development

Poetry is needed to install the dependencies and develope locally

  1. Install dependencies: poetry install
  2. Code linting: ./scripts/format
  3. Run tests: ./scripts/test

For commit messages we use commitizen in order to standardize a way of committing rules

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

dataclasses_avroschema-0.48.0.tar.gz (33.7 kB view details)

Uploaded Source

Built Distribution

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

dataclasses_avroschema-0.48.0-py3-none-any.whl (37.9 kB view details)

Uploaded Python 3

File details

Details for the file dataclasses_avroschema-0.48.0.tar.gz.

File metadata

  • Download URL: dataclasses_avroschema-0.48.0.tar.gz
  • Upload date:
  • Size: 33.7 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: poetry/1.6.1 CPython/3.11.5 Linux/5.15.0-1041-azure

File hashes

Hashes for dataclasses_avroschema-0.48.0.tar.gz
Algorithm Hash digest
SHA256 977a38b71e53663d8d58bb90a1bb366c579a7a156175584b7e3e763b7347b434
MD5 d2b2609c57e56fc7b583b3c26a1a3e12
BLAKE2b-256 4bc7afe6b51c433638931051d516f20d251783d5f585cb2bf5acead31f511693

See more details on using hashes here.

File details

Details for the file dataclasses_avroschema-0.48.0-py3-none-any.whl.

File metadata

File hashes

Hashes for dataclasses_avroschema-0.48.0-py3-none-any.whl
Algorithm Hash digest
SHA256 dd6bdfa980d7260236cb01ee1e6226e9aa27f0e8a920e0ded47645a102a9a311
MD5 f6ca4ed795697541212fd874cb7837d0
BLAKE2b-256 1f5a72b44308854f22f1f1c29b42474db0a22b375a96cffe1fd8c46f4f9ca1a0

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