Skip to main content

YAML-based configuration module

Project description

layered-yaml-attrdict-config (lya)

YAML-based configuration module.

A set of classes I’ve created over time to make configuration files more readable and easier to use in the code.

Basic syntax

Idea is the same as with yaml.safe_load() (yaml.load() was used before 14.06.5, see #2 for rationale behind the change) to load YAML configuration file like this one:

core:
  connection:
    # twisted endpoint syntax, see twisted.internet.endpoints.html#clientFromString
    endpoint: tcp:host=example.com:port=6667
    nickname: testbot
    reconnect:
      maxDelay: 30
  xattr_emulation: /tmp/xattr.db

But when you use resulting nested-dicts in code, consider the difference between config['core']['connection']['reconnect']['maxDelay'] and config.core.connection.reconnect.maxDelay.

Python dicts support only the first syntax, this module supports both. Assigning values through attributes is also possible.

Recursive updates (inheritance)

I find it useful to have default parameters specified in the same format as any configurable overrides to them - simple yaml file.

So consider this use-case:

import lya
cfg = lya.AttrDict.from_yaml('default.yaml')
for path in sys.argv[1:]: cfg.update_yaml(path)
cfg.dump(sys.stdout)

(there is also AttrDict.update_dict method for recursive updates from dict)

With default configuration file from the previous section shipped along with the package as “default.yaml”, you can have simple override like:

core:
  connection:
    endpoint: ssl:host=some.local.host:port=6697

And above code will result in the following config (which will be dumped as nicely-formatted yaml, as presented below):

core:
  connection:
    endpoint: ssl:host=some.local.host:port=6697
    nickname: testbot
    reconnect:
      maxDelay: 30
  xattr_emulation: /tmp/xattr.db

Rebase

Similar to the above, but reversed, so result presented above can be produced by taking some arbitrary configuration (AttrDict) and rebasing it on top of some other (base) config:

import lya
base = lya.AttrDict.from_yaml('default.yaml')
for path in sys.argv[1:]:
  cfg.rebase(base)
  print 'Config:', path
  cfg.dump(sys.stdout)

Useful to fill-in default values for similar configuration parts (e.g. configuration for each module or component).

Key ordering

Keys in python dictionaries are unordered and by default, yaml module loses any ordering of keys in yaml dicts as well.

Strictly speaking, this is correct processing of YAML, but for most cases it is inconvenient when instead of clear section like this one:

processing_order:
  receive_test:
    name: '#bot-central'
    server: testserver
  important_filter: '^important:'
  announce: '#important-news'
  debug_filter: '\(debug message\)'
  feedback: botmaster

…you have to resort to putting all the keys that need ordering into a list just to preserve ordering.

Especially annoying if you have to access these sections by key afterwards (and they should be unique) or you need to override some of the sections later, so list wrapper becomes completely artificial as it have to be converted into OrderedDict anyway.

YAML files, parsed from AttrDict.from_yaml and AttrDict.update_yaml methods have key ordering preserved, and AttrDict objects are based on OrderedDict objects, which provide all the features of dict and preserve ordering during the iteration like lists do.

There’s no downside to it - both ordered dicts and lists can be used as usual, if that’s more desirable.

Flattening

Sometimes it’s useful to have nested configuration (like presented above) to be represented as flat list of key-value pairs.

Example usage can be storage of the configuration tree in a simple k-v database (like berkdb) or comparison of configuration objects - ordered flat lists can be easily processed by the “diff” command, tested for equality or hashed.

That is easy to do via AttrDict.flatten method, producing (from config above) a list like this one:

[ (('core', 'connection', 'endpoint'), 'ssl:host=some.local.host:port=6697'),
  (('core', 'connection', 'nickname'), 'testbot'),
  (('core', 'connection', 'reconnect', 'maxDelay'), 30),
  (('core', 'xattr_emulation'), '/tmp/xattr.db') ]

Resulting list contains 2-value tuples - key tuple, containing the full path of the value and the value object itself.

A note on name clashes

Methods of AttrDict object itself, like ones listed above can clash with keys in the config file itself, in which case attribute access to config values is not possible, i.e.:

>>> a = lya.AttrDict(keys=1)
>>> a.keys
<bound method AttrDict.keys of AttrDict([('keys', 1)])>
>>> a['keys']
1

It’s kinda-deliberate that such basic methods (like the ones from built-in dict and listed above) are accessible by as usual attributes, though a bit inconsistent.

With any kind of dynamic keys, just use access by key, not by attr.

More stuff

Some extra data-mangling methods are available via AttrDict._ proxy object (that allows access to all other methods as well, e.g. a._.pop(k)).

  • AttrDict._.apply(func, items=False, update=True)

    Apply a function (f(v) or f(k, v) if “items” is set) to all values (on any level, depth-first), modifying them in-place if “update” is set.

  • AttrDict._.apply_flat(func, update=True)

    Same as “apply” above, but passes tuple of keys forming a path to each value (e.g. ('a', 'b', 'c') for value in dict(a=dict(b=dict(c=1)))) to f(k, v).

  • AttrDict._.filter(func, items=False)

    Same as “apply” above, but will remove values if filter function returns falsy value, leaving them unchanged otherwise.

Installation

It’s a regular package for Python 2.7+ and Python 3.0+.

Using pip is the best way (see also pip2014 basic usage essentials):

% pip install layered-yaml-attrdict-config

If you don’t have it, use:

% easy_install pip
% pip install layered-yaml-attrdict-config

Alternatively (see also):

% curl https://raw.github.com/pypa/pip/master/contrib/get-pip.py | python
% pip install layered-yaml-attrdict-config

Or, if you absolutely must:

% easy_install layered-yaml-attrdict-config

But, you really shouldn’t do that.

Current-git version can be installed like this:

% pip install 'git+https://github.com/mk-fg/layered-yaml-attrdict-config.git#egg=layered-yaml-attrdict-config'

Module uses PyYAML for processing of the actual YAML files, but can work without it, as long as you use any methods with “yaml” in their name, i.e. creating and using AttrDict objects like a regular dicts.

Example

import sys, lya

if len(sys.argv) == 1:
  print('Usage: {} [ config.yaml ... ]', file=sys.stderr)
  sys.exit(1)

cfg = lya.AttrDict.from_yaml(sys.argv[1])
for path in sys.argv[2:]: cfg.update_yaml(path)

cfg.dump(sys.stdout)

Project details


Download files

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

Source Distribution

layered-yaml-attrdict-config-15.5.0.tar.gz (7.3 kB view hashes)

Uploaded Source

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page