Home

Awesome

python-patterns

A collection of design patterns and idioms in Python.

Remember that each pattern has its own trade-offs. And you need to pay attention more to why you're choosing a certain pattern than to how to implement it.

Current Patterns

Creational Patterns:

PatternDescription
abstract_factoryuse a generic function with specific factories
borga singleton with shared-state among instances
builderinstead of using multiple constructors, builder object receives parameters and returns constructed objects
factorydelegate a specialized function/method to create instances
lazy_evaluationlazily-evaluated property pattern in Python
poolpreinstantiate and maintain a group of instances of the same type
prototypeuse a factory and clones of a prototype for new instances (if instantiation is expensive)

Structural Patterns:

PatternDescription
3-tierdata<->business logic<->presentation separation (strict relationships)
adapteradapt one interface to another using a white-list
bridgea client-provider middleman to soften interface changes
compositelets clients treat individual objects and compositions uniformly
decoratorwrap functionality with other functionality in order to affect outputs
facadeuse one class as an API to a number of others
flyweighttransparently reuse existing instances of objects with similar/identical state
front_controllersingle handler requests coming to the application
mvcmodel<->view<->controller (non-strict relationships)
proxyan object funnels operations to something else

Behavioral Patterns:

PatternDescription
chain_of_responsibilityapply a chain of successive handlers to try and process the data
cataloggeneral methods will call different specialized methods based on construction parameter
chaining_methodcontinue callback next object method
commandbundle a command and arguments to call later
iteratortraverse a container and access the container's elements
iterator (alt. impl.)traverse a container and access the container's elements
mediatoran object that knows how to connect other objects and act as a proxy
mementogenerate an opaque token that can be used to go back to a previous state
observerprovide a callback for notification of events/changes to data
publish_subscribea source syndicates events/data to 0+ registered listeners
registrykeep track of all subclasses of a given class
specificationbusiness rules can be recombined by chaining the business rules together using boolean logic
statelogic is organized into a discrete number of potential states and the next state that can be transitioned to
strategyselectable operations over the same data
templatean object imposes a structure but takes pluggable components
visitorinvoke a callback for all items of a collection

Design for Testability Patterns:

PatternDescription
dependency_injection3 variants of dependency injection

Fundamental Patterns:

PatternDescription
delegation_patternan object handles a request by delegating to a second object (the delegate)

Others:

PatternDescription
blackboardarchitectural model, assemble different sub-system knowledge to build a solution, AI approach - non gang of four pattern
graph_searchgraphing algorithms - non gang of four pattern
hsmhierarchical state machine - non gang of four pattern

Videos

Design Patterns in Python by Peter Ullrich

Sebastian Buczyński - Why you don't need design patterns in Python?

You Don't Need That!

Pluggable Libs Through Design Patterns

Contributing

When an implementation is added or modified, please review the following guidelines:

Docstrings

Add module level description in form of a docstring with links to corresponding references or other useful information.

Add "Examples in Python ecosystem" section if you know some. It shows how patterns could be applied to real-world problems.

facade.py has a good example of detailed description, but sometimes the shorter one as in template.py would suffice.

Python 2 compatibility

To see Python 2 compatible versions of some patterns please check-out the legacy tag.

Update README

When everything else is done - update corresponding part of README.

Travis CI

Please run the following before submitting a patch

Then either:

You can also run flake8 or pytest commands manually. Examples can be found in tox.ini.

Contributing via issue triage Open Source Helpers

You can triage issues and pull requests which may include reproducing bug reports or asking for vital information, such as version numbers or reproduction instructions. If you would like to start triaging issues, one easy way to get started is to subscribe to python-patterns on CodeTriage.

AI codebase assistance

The folks at Mutable.ai have built an AI assistant that is codebase-aware. Give it a try Mutable.ai Auto Wiki