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745 строки
24 KiB
Plaintext
Metadata-Version: 2.1
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Name: voluptuous
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Version: 0.11.5
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Summary: # Voluptuous is a Python data validation library
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Home-page: https://github.com/alecthomas/voluptuous
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Author: Alec Thomas
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Author-email: alec@swapoff.org
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License: BSD
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Download-URL: https://pypi.python.org/pypi/voluptuous
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Description: # Voluptuous is a Python data validation library
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[![Build Status](https://travis-ci.org/alecthomas/voluptuous.png)](https://travis-ci.org/alecthomas/voluptuous)
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[![Coverage Status](https://coveralls.io/repos/github/alecthomas/voluptuous/badge.svg?branch=master)](https://coveralls.io/github/alecthomas/voluptuous?branch=master) [![Gitter chat](https://badges.gitter.im/alecthomas.png)](https://gitter.im/alecthomas/Lobby)
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Voluptuous, *despite* the name, is a Python data validation library. It
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is primarily intended for validating data coming into Python as JSON,
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YAML, etc.
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It has three goals:
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1. Simplicity.
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2. Support for complex data structures.
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3. Provide useful error messages.
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## Contact
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Voluptuous now has a mailing list! Send a mail to
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[<voluptuous@librelist.com>](mailto:voluptuous@librelist.com) to subscribe. Instructions
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will follow.
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You can also contact me directly via [email](mailto:alec@swapoff.org) or
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[Twitter](https://twitter.com/alecthomas).
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To file a bug, create a [new issue](https://github.com/alecthomas/voluptuous/issues/new) on GitHub with a short example of how to replicate the issue.
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## Documentation
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The documentation is provided [here](http://alecthomas.github.io/voluptuous/).
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## Changelog
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See [CHANGELOG.md](https://github.com/alecthomas/voluptuous/blob/master/CHANGELOG.md).
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## Show me an example
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Twitter's [user search API](https://dev.twitter.com/rest/reference/get/users/search) accepts
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query URLs like:
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```
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$ curl 'https://api.twitter.com/1.1/users/search.json?q=python&per_page=20&page=1'
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```
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To validate this we might use a schema like:
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```pycon
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>>> from voluptuous import Schema
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>>> schema = Schema({
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... 'q': str,
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... 'per_page': int,
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... 'page': int,
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... })
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```
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This schema very succinctly and roughly describes the data required by
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the API, and will work fine. But it has a few problems. Firstly, it
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doesn't fully express the constraints of the API. According to the API,
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`per_page` should be restricted to at most 20, defaulting to 5, for
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example. To describe the semantics of the API more accurately, our
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schema will need to be more thoroughly defined:
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```pycon
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>>> from voluptuous import Required, All, Length, Range
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>>> schema = Schema({
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... Required('q'): All(str, Length(min=1)),
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... Required('per_page', default=5): All(int, Range(min=1, max=20)),
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... 'page': All(int, Range(min=0)),
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... })
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```
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This schema fully enforces the interface defined in Twitter's
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documentation, and goes a little further for completeness.
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"q" is required:
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```pycon
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>>> from voluptuous import MultipleInvalid, Invalid
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>>> try:
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... schema({})
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... raise AssertionError('MultipleInvalid not raised')
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... except MultipleInvalid as e:
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... exc = e
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>>> str(exc) == "required key not provided @ data['q']"
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True
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```
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...must be a string:
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```pycon
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>>> try:
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... schema({'q': 123})
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... raise AssertionError('MultipleInvalid not raised')
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... except MultipleInvalid as e:
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... exc = e
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>>> str(exc) == "expected str for dictionary value @ data['q']"
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True
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```
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...and must be at least one character in length:
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```pycon
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>>> try:
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... schema({'q': ''})
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... raise AssertionError('MultipleInvalid not raised')
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... except MultipleInvalid as e:
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... exc = e
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>>> str(exc) == "length of value must be at least 1 for dictionary value @ data['q']"
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True
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>>> schema({'q': '#topic'}) == {'q': '#topic', 'per_page': 5}
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True
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```
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"per\_page" is a positive integer no greater than 20:
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```pycon
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>>> try:
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... schema({'q': '#topic', 'per_page': 900})
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... raise AssertionError('MultipleInvalid not raised')
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... except MultipleInvalid as e:
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... exc = e
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>>> str(exc) == "value must be at most 20 for dictionary value @ data['per_page']"
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True
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>>> try:
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... schema({'q': '#topic', 'per_page': -10})
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... raise AssertionError('MultipleInvalid not raised')
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... except MultipleInvalid as e:
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... exc = e
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>>> str(exc) == "value must be at least 1 for dictionary value @ data['per_page']"
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True
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```
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"page" is an integer \>= 0:
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```pycon
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>>> try:
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... schema({'q': '#topic', 'per_page': 'one'})
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... raise AssertionError('MultipleInvalid not raised')
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... except MultipleInvalid as e:
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... exc = e
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>>> str(exc)
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"expected int for dictionary value @ data['per_page']"
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>>> schema({'q': '#topic', 'page': 1}) == {'q': '#topic', 'page': 1, 'per_page': 5}
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True
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```
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## Defining schemas
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Schemas are nested data structures consisting of dictionaries, lists,
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scalars and *validators*. Each node in the input schema is pattern
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matched against corresponding nodes in the input data.
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### Literals
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Literals in the schema are matched using normal equality checks:
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```pycon
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>>> schema = Schema(1)
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>>> schema(1)
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1
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>>> schema = Schema('a string')
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>>> schema('a string')
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'a string'
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```
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### Types
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Types in the schema are matched by checking if the corresponding value
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is an instance of the type:
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```pycon
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>>> schema = Schema(int)
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>>> schema(1)
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1
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>>> try:
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... schema('one')
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... raise AssertionError('MultipleInvalid not raised')
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... except MultipleInvalid as e:
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... exc = e
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>>> str(exc) == "expected int"
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True
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```
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### URL's
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URL's in the schema are matched by using `urlparse` library.
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```pycon
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>>> from voluptuous import Url
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>>> schema = Schema(Url())
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>>> schema('http://w3.org')
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'http://w3.org'
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>>> try:
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... schema('one')
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... raise AssertionError('MultipleInvalid not raised')
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... except MultipleInvalid as e:
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... exc = e
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>>> str(exc) == "expected a URL"
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True
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```
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### Lists
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Lists in the schema are treated as a set of valid values. Each element
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in the schema list is compared to each value in the input data:
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```pycon
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>>> schema = Schema([1, 'a', 'string'])
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>>> schema([1])
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[1]
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>>> schema([1, 1, 1])
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[1, 1, 1]
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>>> schema(['a', 1, 'string', 1, 'string'])
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['a', 1, 'string', 1, 'string']
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```
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However, an empty list (`[]`) is treated as is. If you want to specify a list that can
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contain anything, specify it as `list`:
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```pycon
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>>> schema = Schema([])
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>>> try:
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... schema([1])
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... raise AssertionError('MultipleInvalid not raised')
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... except MultipleInvalid as e:
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... exc = e
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>>> str(exc) == "not a valid value @ data[1]"
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True
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>>> schema([])
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[]
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>>> schema = Schema(list)
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>>> schema([])
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[]
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>>> schema([1, 2])
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[1, 2]
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```
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### Sets and frozensets
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Sets and frozensets are treated as a set of valid values. Each element
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in the schema set is compared to each value in the input data:
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```pycon
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>>> schema = Schema({42})
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>>> schema({42}) == {42}
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True
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>>> try:
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... schema({43})
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... raise AssertionError('MultipleInvalid not raised')
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... except MultipleInvalid as e:
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... exc = e
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>>> str(exc) == "invalid value in set"
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True
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>>> schema = Schema({int})
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>>> schema({1, 2, 3}) == {1, 2, 3}
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True
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>>> schema = Schema({int, str})
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>>> schema({1, 2, 'abc'}) == {1, 2, 'abc'}
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True
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>>> schema = Schema(frozenset([int]))
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>>> try:
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... schema({3})
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... raise AssertionError('Invalid not raised')
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... except Invalid as e:
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... exc = e
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>>> str(exc) == 'expected a frozenset'
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True
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```
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However, an empty set (`set()`) is treated as is. If you want to specify a set
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that can contain anything, specify it as `set`:
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```pycon
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>>> schema = Schema(set())
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>>> try:
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... schema({1})
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... raise AssertionError('MultipleInvalid not raised')
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... except MultipleInvalid as e:
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... exc = e
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>>> str(exc) == "invalid value in set"
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True
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>>> schema(set()) == set()
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True
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>>> schema = Schema(set)
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>>> schema({1, 2}) == {1, 2}
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True
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```
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### Validation functions
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Validators are simple callables that raise an `Invalid` exception when
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they encounter invalid data. The criteria for determining validity is
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entirely up to the implementation; it may check that a value is a valid
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username with `pwd.getpwnam()`, it may check that a value is of a
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specific type, and so on.
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The simplest kind of validator is a Python function that raises
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ValueError when its argument is invalid. Conveniently, many builtin
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Python functions have this property. Here's an example of a date
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validator:
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```pycon
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>>> from datetime import datetime
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>>> def Date(fmt='%Y-%m-%d'):
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... return lambda v: datetime.strptime(v, fmt)
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```
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```pycon
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>>> schema = Schema(Date())
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>>> schema('2013-03-03')
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datetime.datetime(2013, 3, 3, 0, 0)
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>>> try:
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... schema('2013-03')
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... raise AssertionError('MultipleInvalid not raised')
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... except MultipleInvalid as e:
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... exc = e
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>>> str(exc) == "not a valid value"
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True
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```
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In addition to simply determining if a value is valid, validators may
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mutate the value into a valid form. An example of this is the
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`Coerce(type)` function, which returns a function that coerces its
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argument to the given type:
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```python
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def Coerce(type, msg=None):
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"""Coerce a value to a type.
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If the type constructor throws a ValueError, the value will be marked as
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Invalid.
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"""
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def f(v):
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try:
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return type(v)
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except ValueError:
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raise Invalid(msg or ('expected %s' % type.__name__))
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return f
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```
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This example also shows a common idiom where an optional human-readable
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message can be provided. This can vastly improve the usefulness of the
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resulting error messages.
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### Dictionaries
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Each key-value pair in a schema dictionary is validated against each
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key-value pair in the corresponding data dictionary:
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```pycon
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>>> schema = Schema({1: 'one', 2: 'two'})
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>>> schema({1: 'one'})
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{1: 'one'}
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```
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#### Extra dictionary keys
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By default any additional keys in the data, not in the schema will
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trigger exceptions:
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```pycon
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>>> schema = Schema({2: 3})
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>>> try:
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... schema({1: 2, 2: 3})
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... raise AssertionError('MultipleInvalid not raised')
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... except MultipleInvalid as e:
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... exc = e
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>>> str(exc) == "extra keys not allowed @ data[1]"
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True
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```
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This behaviour can be altered on a per-schema basis. To allow
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additional keys use
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`Schema(..., extra=ALLOW_EXTRA)`:
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```pycon
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>>> from voluptuous import ALLOW_EXTRA
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>>> schema = Schema({2: 3}, extra=ALLOW_EXTRA)
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>>> schema({1: 2, 2: 3})
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{1: 2, 2: 3}
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```
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To remove additional keys use
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`Schema(..., extra=REMOVE_EXTRA)`:
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```pycon
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>>> from voluptuous import REMOVE_EXTRA
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>>> schema = Schema({2: 3}, extra=REMOVE_EXTRA)
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>>> schema({1: 2, 2: 3})
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{2: 3}
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```
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It can also be overridden per-dictionary by using the catch-all marker
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token `extra` as a key:
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```pycon
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>>> from voluptuous import Extra
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>>> schema = Schema({1: {Extra: object}})
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>>> schema({1: {'foo': 'bar'}})
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{1: {'foo': 'bar'}}
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```
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#### Required dictionary keys
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By default, keys in the schema are not required to be in the data:
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```pycon
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>>> schema = Schema({1: 2, 3: 4})
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>>> schema({3: 4})
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{3: 4}
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```
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Similarly to how extra\_ keys work, this behaviour can be overridden
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per-schema:
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```pycon
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>>> schema = Schema({1: 2, 3: 4}, required=True)
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>>> try:
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... schema({3: 4})
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... raise AssertionError('MultipleInvalid not raised')
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... except MultipleInvalid as e:
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... exc = e
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>>> str(exc) == "required key not provided @ data[1]"
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True
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```
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And per-key, with the marker token `Required(key)`:
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```pycon
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>>> schema = Schema({Required(1): 2, 3: 4})
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>>> try:
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... schema({3: 4})
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... raise AssertionError('MultipleInvalid not raised')
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... except MultipleInvalid as e:
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... exc = e
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>>> str(exc) == "required key not provided @ data[1]"
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True
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>>> schema({1: 2})
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{1: 2}
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```
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#### Optional dictionary keys
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If a schema has `required=True`, keys may be individually marked as
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optional using the marker token `Optional(key)`:
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```pycon
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>>> from voluptuous import Optional
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>>> schema = Schema({1: 2, Optional(3): 4}, required=True)
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>>> try:
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... schema({})
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... raise AssertionError('MultipleInvalid not raised')
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... except MultipleInvalid as e:
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... exc = e
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>>> str(exc) == "required key not provided @ data[1]"
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True
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>>> schema({1: 2})
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{1: 2}
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>>> try:
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... schema({1: 2, 4: 5})
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... raise AssertionError('MultipleInvalid not raised')
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... except MultipleInvalid as e:
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... exc = e
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>>> str(exc) == "extra keys not allowed @ data[4]"
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True
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```
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```pycon
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>>> schema({1: 2, 3: 4})
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{1: 2, 3: 4}
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```
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### Recursive / nested schema
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You can use `voluptuous.Self` to define a nested schema:
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```pycon
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>>> from voluptuous import Schema, Self
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>>> recursive = Schema({"more": Self, "value": int})
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>>> recursive({"more": {"value": 42}, "value": 41}) == {'more': {'value': 42}, 'value': 41}
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True
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```
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### Extending an existing Schema
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Often it comes handy to have a base `Schema` that is extended with more
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requirements. In that case you can use `Schema.extend` to create a new
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`Schema`:
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```pycon
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>>> from voluptuous import Schema
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>>> person = Schema({'name': str})
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>>> person_with_age = person.extend({'age': int})
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>>> sorted(list(person_with_age.schema.keys()))
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['age', 'name']
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```
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The original `Schema` remains unchanged.
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### Objects
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Each key-value pair in a schema dictionary is validated against each
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attribute-value pair in the corresponding object:
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```pycon
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>>> from voluptuous import Object
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>>> class Structure(object):
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... def __init__(self, q=None):
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... self.q = q
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... def __repr__(self):
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... return '<Structure(q={0.q!r})>'.format(self)
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...
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>>> schema = Schema(Object({'q': 'one'}, cls=Structure))
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>>> schema(Structure(q='one'))
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<Structure(q='one')>
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```
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### Allow None values
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To allow value to be None as well, use Any:
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```pycon
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>>> from voluptuous import Any
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>>> schema = Schema(Any(None, int))
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>>> schema(None)
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>>> schema(5)
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5
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```
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## Error reporting
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Validators must throw an `Invalid` exception if invalid data is passed
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to them. All other exceptions are treated as errors in the validator and
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will not be caught.
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Each `Invalid` exception has an associated `path` attribute representing
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the path in the data structure to our currently validating value, as well
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as an `error_message` attribute that contains the message of the original
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exception. This is especially useful when you want to catch `Invalid`
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exceptions and give some feedback to the user, for instance in the context of
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an HTTP API.
|
|
|
|
|
|
```pycon
|
|
>>> def validate_email(email):
|
|
... """Validate email."""
|
|
... if not "@" in email:
|
|
... raise Invalid("This email is invalid.")
|
|
... return email
|
|
>>> schema = Schema({"email": validate_email})
|
|
>>> exc = None
|
|
>>> try:
|
|
... schema({"email": "whatever"})
|
|
... except MultipleInvalid as e:
|
|
... exc = e
|
|
>>> str(exc)
|
|
"This email is invalid. for dictionary value @ data['email']"
|
|
>>> exc.path
|
|
['email']
|
|
>>> exc.msg
|
|
'This email is invalid.'
|
|
>>> exc.error_message
|
|
'This email is invalid.'
|
|
|
|
```
|
|
|
|
The `path` attribute is used during error reporting, but also during matching
|
|
to determine whether an error should be reported to the user or if the next
|
|
match should be attempted. This is determined by comparing the depth of the
|
|
path where the check is, to the depth of the path where the error occurred. If
|
|
the error is more than one level deeper, it is reported.
|
|
|
|
The upshot of this is that *matching is depth-first and fail-fast*.
|
|
|
|
To illustrate this, here is an example schema:
|
|
|
|
```pycon
|
|
>>> schema = Schema([[2, 3], 6])
|
|
|
|
```
|
|
|
|
Each value in the top-level list is matched depth-first in-order. Given
|
|
input data of `[[6]]`, the inner list will match the first element of
|
|
the schema, but the literal `6` will not match any of the elements of
|
|
that list. This error will be reported back to the user immediately. No
|
|
backtracking is attempted:
|
|
|
|
```pycon
|
|
>>> try:
|
|
... schema([[6]])
|
|
... raise AssertionError('MultipleInvalid not raised')
|
|
... except MultipleInvalid as e:
|
|
... exc = e
|
|
>>> str(exc) == "not a valid value @ data[0][0]"
|
|
True
|
|
|
|
```
|
|
|
|
If we pass the data `[6]`, the `6` is not a list type and so will not
|
|
recurse into the first element of the schema. Matching will continue on
|
|
to the second element in the schema, and succeed:
|
|
|
|
```pycon
|
|
>>> schema([6])
|
|
[6]
|
|
|
|
```
|
|
|
|
## Multi-field validation
|
|
|
|
Validation rules that involve multiple fields can be implemented as
|
|
custom validators. It's recommended to use `All()` to do a two-pass
|
|
validation - the first pass checking the basic structure of the data,
|
|
and only after that, the second pass applying your cross-field
|
|
validator:
|
|
|
|
```python
|
|
def passwords_must_match(passwords):
|
|
if passwords['password'] != passwords['password_again']:
|
|
raise Invalid('passwords must match')
|
|
return passwords
|
|
|
|
s=Schema(All(
|
|
# First "pass" for field types
|
|
{'password':str, 'password_again':str},
|
|
# Follow up the first "pass" with your multi-field rules
|
|
passwords_must_match
|
|
))
|
|
|
|
# valid
|
|
s({'password':'123', 'password_again':'123'})
|
|
|
|
# raises MultipleInvalid: passwords must match
|
|
s({'password':'123', 'password_again':'and now for something completely different'})
|
|
|
|
```
|
|
|
|
With this structure, your multi-field validator will run with
|
|
pre-validated data from the first "pass" and so will not have to do
|
|
its own type checking on its inputs.
|
|
|
|
The flipside is that if the first "pass" of validation fails, your
|
|
cross-field validator will not run:
|
|
|
|
```
|
|
# raises Invalid because password_again is not a string
|
|
# passwords_must_match() will not run because first-pass validation already failed
|
|
s({'password':'123', 'password_again': 1337})
|
|
```
|
|
|
|
## Running tests.
|
|
|
|
Voluptuous is using nosetests:
|
|
|
|
$ nosetests
|
|
|
|
|
|
## Why use Voluptuous over another validation library?
|
|
|
|
**Validators are simple callables**
|
|
: No need to subclass anything, just use a function.
|
|
|
|
**Errors are simple exceptions.**
|
|
: A validator can just `raise Invalid(msg)` and expect the user to get
|
|
useful messages.
|
|
|
|
**Schemas are basic Python data structures.**
|
|
: Should your data be a dictionary of integer keys to strings?
|
|
`{int: str}` does what you expect. List of integers, floats or
|
|
strings? `[int, float, str]`.
|
|
|
|
**Designed from the ground up for validating more than just forms.**
|
|
: Nested data structures are treated in the same way as any other
|
|
type. Need a list of dictionaries? `[{}]`
|
|
|
|
**Consistency.**
|
|
: Types in the schema are checked as types. Values are compared as
|
|
values. Callables are called to validate. Simple.
|
|
|
|
## Other libraries and inspirations
|
|
|
|
Voluptuous is heavily inspired by
|
|
[Validino](http://code.google.com/p/validino/), and to a lesser extent,
|
|
[jsonvalidator](http://code.google.com/p/jsonvalidator/) and
|
|
[json\_schema](http://blog.sendapatch.se/category/json_schema.html).
|
|
|
|
[pytest-voluptuous](https://github.com/F-Secure/pytest-voluptuous) is a
|
|
[pytest](https://github.com/pytest-dev/pytest) plugin that helps in
|
|
using voluptuous validators in `assert`s.
|
|
|
|
I greatly prefer the light-weight style promoted by these libraries to
|
|
the complexity of libraries like FormEncode.
|
|
|
|
Platform: any
|
|
Classifier: Development Status :: 5 - Production/Stable
|
|
Classifier: Intended Audience :: Developers
|
|
Classifier: License :: OSI Approved :: BSD License
|
|
Classifier: Operating System :: OS Independent
|
|
Classifier: Programming Language :: Python :: 2
|
|
Classifier: Programming Language :: Python :: 2.7
|
|
Classifier: Programming Language :: Python :: 3
|
|
Classifier: Programming Language :: Python :: 3.6
|
|
Classifier: Programming Language :: Python :: 3.7
|
|
Description-Content-Type: text/markdown
|