❗ This is a fork of related, which is apparently abandoned ❗ |
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Related
is a Python library for creating nested object models
that can be serialized to and de-serialized from
nested python dictionaries.
When paired with other libraries (e.g. PyYAML),
Related
object models can be used to convert to and from
nested data formats (e.g. JSON, YAML).
Example use cases for related
object models include:
- Configuration file reading and writing
- REST API message response generation and request processing
- Object-Document Mapping for a document store (e.g. MongoDB, elasticsearch)
- Data import parsing or export generation
- Python (3.6+)
Install using pip
...
pip install related-2
import related
@related.immutable
class Person(object):
first_name = related.StringField()
last_name = related.StringField()
@related.immutable
class RoleModels(object):
scientists = related.SetField(Person)
people = [Person(first_name="Grace", last_name="Hopper"),
Person(first_name="Katherine", last_name="Johnson"),
Person(first_name="Katherine", last_name="Johnson")]
print(related.to_yaml(RoleModels(scientists=people)))
Yields:
scientists:
- first_name: Grace
last_name: Hopper
- first_name: Katherine
last_name: Johnson
The below example is based off of this Docker Compose example. It shows how a YAML file can be loaded into an object model, tested, and then generated back into a string that matches the original YAML.
version: '2'
services:
web:
build: .
ports:
- 5000:5000
volumes:
- .:/code
redis:
image: redis
Below is the related
object model that represents the above configuration.
Notice how the name-based mapping of services (i.e. web, redis) are
represented by the model.
import related
@related.immutable
class Service(object):
name = related.StringField()
image = related.StringField(required=False)
build = related.StringField(required=False)
ports = related.SequenceField(str, required=False)
volumes = related.SequenceField(str, required=False)
command = related.StringField(required=False)
@related.immutable
class Compose(object):
version = related.StringField(required=False, default=None)
services = related.MappingField(Service, "name", required=False)
The above yaml can then be loaded by using one of the convenience
method and then round-tripped back to yaml to check that the format
has been maintained. The related
module uses OrderedDict
objects
in order to maintain sort order by default.
from os.path import join, dirname
from model import Compose
from related import to_yaml, from_yaml, to_model
YML_FILE = join(dirname(__file__), "docker-compose.yml")
def test_compose_from_yml():
original_yaml = open(YML_FILE).read().strip()
yml_dict = from_yaml(original_yaml)
compose = to_model(Compose, yml_dict)
assert compose.version == '2'
assert compose.services['web'].ports == ["5000:5000"]
assert compose.services['redis'].image == "redis"
generated_yaml = to_yaml(compose,
suppress_empty_values=True,
suppress_map_key_values=True).strip()
assert original_yaml == generated_yaml
More examples can be found by reviewing the tests/ folder of this project. Below are links and descriptions of the tests provided so far.
Example | description |
---|---|
Example 00 | First example above that shows how SetFields work. |
Example 01 | Second example above that demonstrates YAML (de)serialization. |
Example 02 | Compose v3 with long-form ports and singledispatch to_dict |
Example 03 | A single class (Company) with a bunch of value fields. |
Example 04 | A multi-class object model with Enum class value field. |
Example 05 | Handling of renaming of attributes including Python keywords. |
Example 06 | Basic JSON (de)serialization with TimeField, DateTimeField and DecimalField. |
Example 07 | Function decorator that converts inputs to obj and outputs to dict |
Example 08 | Handle self-referencing and out-of-order references using strings. |
[Example 09] | A simple, nested mapping example |
Below is a quick version of documentation until more time can be dedicated.
The attrs library is the underlying engine for related
.
As explained in this article by Glyph,
attrs
cleanly and cleverly
eliminates a lot of the boilerplate
required when creating Python classes
without using inheritance.
Some core functionality provided by attrs:
- Generated initializer method
(
__init__
) - Generated comparison methods
(
__eq__
,__ne__
,__lt__
,__le__
,__gt__
,__ge__
) - Human-readable representation method
(
__repr__
) - Attribute converter and validator framework
The related
project is an opinionated layer
built on top of the attrs
library
that provides the following:
- Value fields that handle both validation and conversion
to and from basic data types like
str
,float
, andbool
. - Nested fields that support relationships such as Child, Sequences, Mappings, and Sets of objects.
to_dict
function that converts nested object graphs to python dictionaries. Made customizable (without resorting to monkey-patching) by the singledispatch library.to_model
function that instantiated classes used by the de-serialization process going from python dictionaries to the related model.- Conversion helper functions
(
to_yaml
,from_yaml
,to_json
,from_json
) for easily going between related models and data formats. @mutable
and@immutable
for decorating classes as related models without the need for inheritance increasing maintainability and flexibility.
decorator | description |
---|---|
@mutable | Activate a related class that instantiates changeable objects. |
@immutable | Activate a related class that instantiates unchangeable objects. |
See the decorators.py file to view the source code until proper documentation is generated.
field type | description |
---|---|
BooleanField | bool value field. |
ChildField | Child object of a specified type cls . |
DateField | date field formatted using formatter . |
DateTimeField | datetime field formatted using formatter . |
TimeField | time field formatted using formatter . |
FloatField | float value field. |
IntegerField | int value field. |
MappingField(cls,key) | Dictionary of objects of type cls index by key field values. |
RegexField(regex) | str value field that is validated by re.match(regex ). |
SequenceField(cls) | List of objects all of specified type cls . |
SetField | Set of objects all of a specified type cls . |
StringField | str value field. |
URLField | ParseResult object. |
UUIDField | UUID object, will create uuid4 by default if not specified. |
Adding your own field types is fairly straightforward
due to the power of the underlying attrs
project.
See the fields.py file to see how the above are constructed.
All fields support the kw_only
keyword, which is part of attrs.
Setting kw_only=True
makes it possible to have a generated __init__
with keyword-only arguments,
relaxing the required ordering of default and non-default valued attributes.
function | description |
---|---|
from_json(s,cls) | Convert a JSON string or stream into specified class. |
from_yaml(s,cls) | Convert a YAML string or stream into specified class. |
is_related(obj) | Returns True if object is @mutable or @immutable. |
to_dict(obj) | Singledispatch function for converting to a dict. |
to_json(obj) | Convert object to a (pretty) JSON string via to_dict. |
to_model(cls,value) | Convert a value to a cls instance. |
to_yaml(obj) | Convert object to a YAML string via to_dict. |
See the functions.py file to view the source code until proper documentation is generated.
The related
project has been heavily influenced by the following
projects that might be worth looking at if related
doesn't meet your needs.
- attrs - The engine that powers
related
functionality. - Django ORM - Object-relational mapping for Django that inspired
related's
design. - cattrs - Alternative take for handling nested-objects using
attrs
. - addict and box - Python dictionary wrappers that do not require a model.
- Jackson - Java-based technology for serializing and de-serializing objects.
The MIT License (MIT) Copyright (c) 2017 Ian Maurer, Genomoncology LLC