Skip to main content

GraphQL Framework for Python

Project description

We are looking for contributors! Please check the ROADMAP to see how you can help ������


Graphene Logo Graphene Build Status PyPI version Coverage Status

Introduction

Graphene is a Python library for building GraphQL schemas/types fast and easily.

  • Easy to use: Graphene helps you use GraphQL in Python without effort.
  • Relay: Graphene has builtin support for Relay.
  • Data agnostic: Graphene supports any kind of data source: SQL (Django, SQLAlchemy), NoSQL, custom Python objects, etc. We believe that by providing a complete API you could plug Graphene anywhere your data lives and make your data available through GraphQL.

Integrations

Graphene has multiple integrations with different frameworks:

integration Package
Django graphene-django
SQLAlchemy graphene-sqlalchemy
Google App Engine graphene-gae
Peewee In progress (Tracking Issue)

Also, Graphene is fully compatible with the GraphQL spec, working seamlessly with all GraphQL clients, such as Relay, Apollo and gql.

Installation

For instaling graphene, just run this command in your shell

pip install "graphene>=2.0"

2.0 Upgrade Guide

Please read UPGRADE-v2.0.md to learn how to upgrade.

Examples

Here is one example for you to get started:

class Query(graphene.ObjectType):
    hello = graphene.String(description='A typical hello world')

    def resolve_hello(self, info):
        return 'World'

schema = graphene.Schema(query=Query)

Then Querying graphene.Schema is as simple as:

query = '''
    query SayHello {
      hello
    }
'''
result = schema.execute(query)

If you want to learn even more, you can also check the following examples:

Documentation

Documentation and links to additional resources are available at https://docs.graphene-python.org/en/latest/

Contributing

After cloning this repo, create a virtualenv and ensure dependencies are installed by running:

virtualenv venv
source venv/bin/activate
pip install -e ".[test]"

Well-written tests and maintaining good test coverage is important to this project. While developing, run new and existing tests with:

py.test graphene/relay/tests/test_node.py # Single file
py.test graphene/relay # All tests in directory

Add the -s flag if you have introduced breakpoints into the code for debugging. Add the -v (“verbose”) flag to get more detailed test output. For even more detailed output, use -vv. Check out the pytest documentation for more options and test running controls.

You can also run the benchmarks with:

py.test graphene --benchmark-only

Graphene supports several versions of Python. To make sure that changes do not break compatibility with any of those versions, we use tox to create virtualenvs for each Python version and run tests with that version. To run against all Python versions defined in the tox.ini config file, just run:

tox

If you wish to run against a specific version defined in the tox.ini file:

tox -e py36

Tox can only use whatever versions of Python are installed on your system. When you create a pull request, Travis will also be running the same tests and report the results, so there is no need for potential contributors to try to install every single version of Python on their own system ahead of time. We appreciate opening issues and pull requests to make graphene even more stable & useful!

Building Documentation

The documentation is generated using the excellent Sphinx and a custom theme.

An HTML version of the documentation is produced by running:

make docs

Project details


Release history Release notifications

This version

2.1.5

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Files for graphene, version 2.1.5
Filename, size & hash File type Python version Upload date
graphene-2.1.5-py2.py3-none-any.whl (100.3 kB) View hashes Wheel py2.py3
graphene-2.1.5.tar.gz (37.0 kB) View hashes Source None

Supported by

Elastic Elastic Search Pingdom Pingdom Monitoring Google Google BigQuery Sentry Sentry Error logging AWS AWS Cloud computing DataDog DataDog Monitoring Fastly Fastly CDN SignalFx SignalFx Supporter DigiCert DigiCert EV certificate StatusPage StatusPage Status page