Mimesis: mock data for developers.
Project description
Mimesis
Mimesis is a fast and easy to use library for Python programming language, which helps generate mock data for a variety of purposes (see “Data providers”) in a variety of languages (see “Locales”). This data can be particularly useful during software development and testing. For example, it could be used to populate a testing database for a web application with user information such as email addresses, usernames, first names, last names, etc.
Mimesis offers a number of advantages over other similar libraries, such as Faker:
Performance. Mimesis is significantly faster than other similar libraries.
Completeness. Mimesis strives to provide many detailed providers that offer a variety of data generators.
Simplicity. Mimesis does not require any modules other than the Python standard library.
See here for an example of how we compare performance with other libraries.
Documentation
Mimesis is very simple to use, and the below examples should help you get started. Complete documentation for Mimesis is available on Read the Docs.
Installation
To install mimesis, simply:
➜ ~ pip install mimesis
Note: Version 1.0.0 has suffered significant changes, so there is no backwards compatibility with earlier versions of this library.
Getting started
As we said above, this library is really easy to use. A simple usage example is given below:
>>> from mimesis import Personal
>>> from mimesis.enums import Gender
>>> person = Personal('en')
>>> person.full_name(gender=Gender.FEMALE)
'Antonetta Garrison'
>>> person.occupation()
'Backend Developer'
>>> templates = ['U_d', 'U-d', 'l_d', 'l-d']
>>> for template in templates:
... person.username(template=template)
'Adders_1893'
'Abdel-1888'
'constructor_1884'
'chegre-2051'
Locales
You can specify a locale when creating providers and they will return data that is appropriate for the language or country associated with that locale:
>>> from mimesis import Personal
>>> de = Personal('de')
>>> fr = Personal('fr')
>>> pl = Personal('pl')
>>> de.full_name()
'Sabrina Gutermuth'
>>> fr.full_name()
'César Bélair
>>> pl.full_name()
'Światosław Tomankiewicz'
Mimesis currently includes support for 33 different locales. See details for more information.
When you only need to generate data for a single locale, use the Generic() provider, and you can access all providers of Mimesis from one object.
>>> from mimesis import Generic
>>> from mimesis.enums import TLDType
>>> g = Generic('es')
>>> g.datetime.month()
'Agosto'
>>> g.food.fruit()
'Limón'
>>> g.internet.top_level_domain(TLDType.GEOTLD)
'.moscow'
Data Providers
Mimesis support over twenty different data providers available, which can produce data related to food, people, computer hardware, transportation, addresses, and more. See details for more information.
Custom Providers
You also can add custom provider to Generic(), using add_provider() method:
>>> from mimesis import Generic
>>> from mimesis.providers import BaseProvider
>>> generic = Generic('en')
>>> class SomeProvider(BaseProvider):
... class Meta:
... name = "some_provider"
...
... def hello(self):
... return "Hello!"
>>> class Another(BaseProvider):
... def bye(self):
... return "Bye!"
>>> generic.add_provider(SomeProvider)
>>> generic.add_provider(Another)
>>> generic.some_provider.hello()
'Hello!'
>>> generic.another.bye()
'Bye!'
or multiple custom providers using method add_providers():
>>> generic.add_providers(SomeProvider, Another)
Builtins specific data providers
Some countries have data types specific to that country. For example «Social Security Number» (SSN) in the United States of America (en), and «Cadastro de Pessoas Físicas» (CPF) in Brazil (pt-br). If you would like to use these country-specific providers, then you must import them explicitly:
>>> from mimesis import Generic
>>> from mimesis.builtins import BrazilSpecProvider
>>> generic = Generic('pt-br')
>>> generic.add_provider(BrazilSpecProvider)
>>> generic.brazil_provider.cpf()
'696.441.186-00'
You can use specific-provider without adding it to Generic():
>>> BrazilSpecProvider().cpf()
'712.455.163-37'
Generate data by schema
For generating data by schema, just create an instance of Field object, which take any string which represents name of the any method of any supported data provider and the **kwargs of the method, after that you should describe the schema in lambda function and run filling the schema using method fill():
>>> from mimesis.schema import Field
>>> from mimesis.enums import Gender
>>> _ = Field('en')
>>> app_schema = (
... lambda: {
... "id": _('uuid'),
... "name": _('word'),
... "version": _('version'),
... "owner": {
... "email": _('email'),
... "token": _('token'),
... "creator": _('full_name', gender=Gender.FEMALE),
... },
... }
... )
>>> _.fill(schema=app_schema, iterations=10)
Mimesis support generating data by schema only starting from version 1.0.0.
Integration with py.test and factory_boy
We have created libraries which can help you easily use Mimesis with factory_boy and py.test.
mimesis-factory - Integration with the factory_boy.
pytest-mimesis - Integration with the py.test.
How to Contribute
Fork it
Take a look at contributions guidelines
Create your feature branch (git checkout -b feature/new_locale)
Commit your changes (git commit -am 'Add new_locale')
Add yourself to list of contributors
Push to the branch (git push origin feature/new_locale)
Create a new Pull Request
License
Mimesis is licensed under the MIT License. See LICENSE for more information.
Disclaimer
The authors assume no responsibility for how you use this library data generated by it. This library is designed only for developers with good intentions. Do not use the data generated with Mimesis for illegal purposes.
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
File details
Details for the file mimesis-1.0.0.tar.gz
.
File metadata
- Download URL: mimesis-1.0.0.tar.gz
- Upload date:
- Size: 2.5 MB
- Tags: Source
- Uploaded using Trusted Publishing? No
File hashes
Algorithm | Hash digest | |
---|---|---|
SHA256 | 92df95485769de70a257d49f1b0b785a3d17f9239af35298b2bc927ea4513c83 |
|
MD5 | f6cada2bf5d5b8286623dd25f5a811e1 |
|
BLAKE2b-256 | 758726827627683672d07c9966df4e6aabe4ebed1a9ec8e418b7b4f6bbeda0b8 |