Generic configuration mechanism
Project description
Overview
confetti is a generic mechanism for storing, loading and manipulating configuration.
Usage
Basics
Given a file like this:
>>> f = open("/tmp/my_file.cfg", "w") >>> _ = f.write(""" ... CONFIG = { ... "a" : { ... "b" : 2, ... } ... }""") >>> f.close()
Obtaining a configuration object is done via:
>>> from confetti import Config >>> c = Config.from_filename("/tmp/my_file.cfg") >>> c.root.a.b 2
Cross References
In many cases you want to set a single value in your configuration, and have other leaves take it by default. Instead of repeating yourself like so:
>>> cfg = Config(dict( ... my_value = 1337, ... value_1 = 1337, ... x = dict( ... y = dict( ... z = 1337, ... ) ... ) ... ))
You can do this:
>>> from confetti import Ref >>> cfg = Config(dict( ... my_value = 1337, ... value_1 = Ref(".my_value"), ... x = dict( ... y = dict( ... z = Ref("...my_value"), ... ) ... ) ... )) >>> cfg.root.x.y.z 1337
Or you can apply a custom filter to the reference, to create derived values:
>>> cfg = Config(dict( ... my_value = 1337, ... value_1 = Ref(".my_value", filter="I am {0}".format), ... )) >>> cfg.root.value_1 'I am 1337'
Loading From Other Sources
You can also load from string:
>>> c = Config.from_string("CONFIG = {'a' : 2}") >>> c.root.a 2
Updating Paths
Setting paths is done by settings items:
>>> c['a'] = 3 >>> c.root.a 3
Setting paths that didn’t exist before is not allowed, unless you assign a config object:
>>> c['b'] = 3 #doctest: +IGNORE_EXCEPTION_DETAIL Traceback (most recent call last): ... CannotSetValue: Cannot set key 'b' >>> c['b'] = Config(2) >>> c.root.b 2
Assigning can also be done via the root proxy:
>>> c.root.a = 3 >>> c.root.a 3
Backing Up/Restoring
Whenever you want to preserve the configuration prior to a change and restore it later, you can do it with backup() and restore(). They work like a stack, so they push and pop states:
>>> c = Config({"value":2}) >>> c['value'] 2 >>> c.backup() >>> c['value'] = 3 >>> c['value'] 3 >>> c.backup() >>> c['value'] = 4 >>> c['value'] 4 >>> c.restore() >>> c['value'] 3 >>> c.restore() >>> c['value'] 2
Metadata
You can store metadata on config variables and paths. This is useful for documenting paths or for attaching arbitrary information:
>>> from confetti import Metadata >>> c = Config({ ... "key" : "value" // Metadata(some_key="some_value"), ... })
It can later be retrieved:
>>> c.get_config("key").metadata {'some_key': 'some_value'}
Metadata can also be attached to config branches:
>>> c = Config({ ... "key" : { ... "a" : 1, ... "b" : 2, ... } // Metadata(doc="this is a nested dict") ... }) // Metadata(doc="and this is the root") >>> c.metadata {'doc': 'and this is the root'} >>> c.get_config("key").metadata {'doc': 'this is a nested dict'}
Utilities
Path Assignment
It is possible to assign to a config via path assignment, e.g:
>>> c = Config(dict(a=dict(b=dict(c=3)))) >>> from confetti.utils import assign_path >>> assign_path(c, "a.b.c", 4) >>> c.root.a.b.c 4
Expression Path Assignment
In some cases you would like to receive strings like this:
a.b.c=2
And make sense of them in the context of the configuration. This might be because they originate from command line, overlay files, or whatever other source comes to mind. confetti’s utilities provide a function for this:
>>> from confetti.utils import assign_path_expression >>> assign_path_expression(c, "a.b.c=2") >>> c.root.a.b.c '2'
Note that in this method, types are always strings. If your leaf already has a value, the deduce_type flag can be used to deduce the type from the current value:
>>> c['a']['b']['c'] = 3 >>> assign_path_expression(c, 'a.b.c=666', deduce_type=True) >>> c.root.a.b.c 666
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