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The dynamic configurator for your Python Project

Project description

dynaconf - The dynamic configurator for your Python Project

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dynaconf is an OSM (Object Settings Mapper) it can read settings variables from a set of different data stores such as python settings files, environment variables, redis, memcached, ini files, json files, yaml files and you can customize dynaconf loaders to read from wherever you want. (maybe you really want to read from xml files ughh?)



Why?

Store config in the environment

An app’s config is everything that is likely to vary between deploys (staging, production, developer environments, etc). This includes:

Resource handles to the database, Memcached, and other backing services Credentials to external services such as Amazon S3 or Twitter Per-deploy values such as the canonical hostname for the deploy Apps sometimes store config as constants in the code. This is a violation of twelve-factor, which requires strict separation of config > from code. Config varies substantially across deploys, code does not.

A litmus test for whether an app has all config correctly factored out of the code is whether the codebase could be made open source at > any moment, without compromising any credentials.

https://12factor.net/config

how does it work

In any place of your project you only need to

from dynaconf import settings

# Connecting to a database
conn = MyDB.connect(username=settings.USERNAME, password=settings.PASSWORD)

# Defaults?
servername = settings.get('SERVERNAME', 'http://mydefaultserver.com')

# namespaces and environment?
with settings.using_namespace('development'):
    ...

# Type casting?
$ export DYNACONF_VALUE='@float 66.6'
# or 
settings.as_float('VALUE')

# And more!!! Try it.

Q: Where those settings values comes from?

A: Your choice! environment variables, settings file, yaml file, toml file, ini file, json file, redis server, database, anywhere you want.

Install

pip install dynaconf

NOTE: this project officially supports and encourages only Python 3+. Currently this is working well and tests are passing on any Python version above 2.7 but at any moment we can drop python2.x support if needed.

define your settings module

export DYNACONF_SETTINGS=myproject.settings
or
export DYNACONF_SETTINGS=myproject.production_settings
or
export DYNACONF_SETTINGS=/etc/myprogram/settings.py

HINT: The DYNACONF_SETTINGS can be .py or .yml (Support for json, ini, toml is coming, please contribute.)

NOTE: If you do not define DYNACONF_SETTINGS so the default will be settings.py on the root directory

you can export extra values

export DYNACONF_DATABASE='mysql://....'
export DYNACONF_SYSTEM_USER='admin'
export DYNACONF_FOO='bar'

Or define all your settings as env_vars starting with DYNACONF_

HINT: You can change DYNACONF_NAMESPACE to any name e.g MYPROJECT and then environment vars prefixed with MYPROJECT_ will be loaded.

Example

export DYNACONF_SETTINGS=myproject.settings
export DYNACONF_FOO='bar'
export DYANCONF_NUMBER='@int 1234'  # force casting as int when reading

file: myproject/settings.py

NAME = 'Bruno'

file:app.py

from dynaconf import settings

print settings.NAME
print settings.DATABASE
print settings.SYSTEM_USER
print settings.get('FOO')
print settings.NUMBER

then

python app.py

Bruno
mysql://..
admin
bar
1234

Namespace support

When you are working with multiple projects using the same environment maybe you want to use different namespaces for ENV vars based configs

export DYNACONF_DATABASE="DYNADB"
export PROJ1_DATABASE="PROJ1DB"
export PROJ2_DATABASE="PROJ2DB"

and then access them

from dynaconf import settings

# configure() or configure('settingsmodule.path') is needed
# only when DYNACONF_SETINGS is not defined
settings.configure()

# access default namespace settings
settings.DATABASE
'DYNADB'

# switch namespaces
settings.namespace('PROJ1')
settings.DATABASE
'PROJ1DB'

settings.namespace('PROJ2')
settings.DATABASE
'PROJ2DB'

# return to default, call it without args
settings.namespace()
settings.DATABASE
'DYNADB'

You can also use the context manager:

settings.DATABASE
'DYNADB'

with settings.using_namespace('PROJ1'):
    settings.DATABASE
    'PROJ1DB'

with settings.using_namespace('PROJ2'):
    settings.DATABASE
    'PROJ2DB'

settings.DATABASE
'DYNADB'

namespace() and using_namespace() takes optional argument clean defaults to True. If you want to keep the pre-loaded values when switching namespaces set it to False.

Namespaced environment

It is usual to have e.g production and development environments, the way to set this is:

Using settings.py as base file you just need other <environment>_settings.py files.

settings.py
development_settings.py
production_settings.py

Then in your environment.

export DYNACONF_NAMESPACE=DEVELOPMENT|PRODUCTION  # switch enviroment using env vars.

Or using namespace

with settings.using_namespace('development'):
    # code here

settings.namespace('development')

NOTE: settings.py is the base and namespace specific overrides its vars.

using YAML

Using YAML is easier because it support multiple namespace in one file.

Lets say you have DYNACONF_NAMESPACE=DYNACONF (the default)

DYNACONF:  # this is the global namespace
  VARIABLE: 'this variable is available on every namespace'
  HOST: null  # this variable is set to None

DEVELOPMENT:
  HOST: devserver.com  # overrides the global or sets new

production:  # upper or lower case does not matter
  host: prodserver.com

Then it will be applied using env var DYNACONF_NAMESPACE or context manager.

HINT: When using yaml namespace identifier and first level vars are case insensitive, dynaconf will always have them read as upper case.

casting values from envvars

Sometimes you need to set some values as specific types, boolean, integer, float or lists and dicts.

built in casts

  • @int (as_int)
  • @bool (as_bool)
  • @float (as_float)
  • @json (as_json)

@json / as_json will use json to load a Python object from string, it is useful to get lists and dictionaries. The return is always a Python object.

strings does not need converters.

You have 2 ways to use the casts.

Casting on declaration

Just start your ENV settigs with this

export DYNACONF_DEFAULT_THEME='material'
export DYNACONF_DEBUG='@bool True'
export DYNACONF_DEBUG_TOOLBAR_ENABLED='@bool False'
export DYNACONF_PAGINATION_PER_PAGE='@int 20'
export DYNACONF_MONGODB_SETTINGS='@json {"DB": "quokka_db"}'
export DYNACONF_ALLOWED_EXTENSIONS='@json ["jpg", "png"]'

Starting the settings values with @ will make dynaconf.settings to cast it in the time od load.

Casting on access

export DYNACONF_USE_SSH='yes'

from dynaconf import settings
use_ssh = settings.get('USE_SSH', cast='@bool')
# or
use_ssh = settings('USE_SSH', cast='@bool')
# or
use_ssh = settings.as_bool('USE_SSH')

print use_ssh

True

more examples

export DYNACONF_USE_SSH='enabled'

export DYNACONF_ALIST='@json [1,2,3]'
export DYNACONF_ADICT='@json {"name": "Bruno"}'
export DYNACONF_AINT='@int 42'
export DYNACONF_ABOOL='@bool on'
export DYNACONF_AFLOAT='@float 42.5'
from dynaconf import settings

# original value
settings('USE_SSH')
'enabled'

# cast as bool
settings('USE_SSH', cast='@bool')
True

# also cast as bool
settings.as_bool('USE_SSH')
True

# cast defined in declaration '@bool on'
settings.ABOOL
True

# cast defined in declaration '@json {"name": "Bruno"}'
settings.ADICT
{u'name': u'Bruno'}

# cast defined in declaration '@json [1,2,3]'
settings.ALIST
[1, 2, 3]

# cast defined in decalration '@float 42.5'
settings.AFLOAT
42.5

# cast defined in declaration '@int 42'
settings.AINT
42

Defining default namespace

Include in the file defined in DYNACONF_SETTINGS the desired namespace

DYNACONF_NAMESPACE = 'DYNACONF'

Storing settings in databases

Using REDIS

Redis support relies on the following two settings that you can setup in the DYNACONF_SETTINGS file

1 Add the configuration for redis client

REDIS_FOR_DYNACONF = {
    'host': 'localhost',
    'port': 6379,
    'db': 0
}

NOTE: if running on Python 3 include 'decode_responses': True in REDIS_FOR_DYNACONF

Include redis_loader in dynaconf LOADERS_FOR_DYNACONF

the order is the precedence

# Loaders to read namespace based vars from diferent data stores
LOADERS_FOR_DYNACONF = [
    'dynaconf.loaders.env_loader',
    'dynaconf.loaders.redis_loader'
]

You can now write variables direct in to a redis hash named DYNACONF_< NAMESPACE >

By default DYNACONF_DYNACONF

You can also use the redis writer

from dynaconf.utils import redis_writer
from dynaconf import settings

redis_writer.write(settings, name='Bruno', database='localhost', PORT=1234)

The above data will be converted to namespaced values and recorded in redis as a hash:

DYNACONF_DYNACONF:
    NAME='Bruno'
    DATABASE='localhost'
    PORT='@int 1234'

if you want to skip type casting, write as string intead of PORT=1234 use PORT='1234' as redis stores everything as string anyway

Data is read from redis and another loaders only once or when namespace() and using_namespace() are invoked. You can access the fresh value using settings.get_fresh(key)

There is also the fresh context manager

from dynaconf import settings

print settings.FOO  # this data was loaded once on import

with settings.fresh():
    print settings.FOO  # this data is being directly read from loaders

And you can also force some variables to be fresh setting in your setting file

DYNACONF_ALWAYS_FRESH_VARS = ['MYSQL_HOST']

or using env vars

export DYNACONF_ALWAYS_FRESH_VARS='@json ["MYSQL_HOST"]'

Then

from dynaconf import settings

print settings.FOO  # This data was loaded once on import

print settings.MYSQL_HOST # This data is being read from redis imediatelly!

Using programatically

Sometimes you want to override settings for your existing Package or Framework lets say you have a conf module exposing a settings object and used to do:

from myprogram.conf import settings

Now you want to use Dynaconf, open that conf.py or conf/__init__.py and do:

# coding: utf-8
from dynaconf import LazySettings

settings = LazySettings(
    ENVVAR_FOR_DYNACONF="MYPROGRAM_SETTINGS_MODULE",
    DYNACONF_NAMESPACE='MYPROGRAM'
)

Now you can import settings from your own program and dynaconf will do the rest!

Flask Extension

Dynaconf provides an extension to make your app.config in Flask to be a dynaconf instance.

from flask import Flask
from dynaconf.contrib import FlaskDynaconf

app = Flask(__name__)
FlaskDynaconf(
    app,
    ENVVAR_FOR_DYNACONF="MYSITE_SETTINGS_MODULE",
    DYNACONF_NAMESPACE='MYSITE',
    SETTINGS_MODULE_FOR_DYNACONF='settings.yml',  # or settings.py, .toml, .ini etc....
    YAML='.secrets.yml',  # aditional config where you store sensitive data our of vcs
    EXTRA_VALUE='You can add aditional config vars here'
)

Take a look at examples/flask for more.

This was inspired by flask.config and django.conf.settings

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