python-config-parser
python-config-parser lets you create runtime configuration objects using json or yaml files.
MAIN FEATURES
- Declarative configurations without using .ini files
- Access using OOP or subscriptable, which means that you can iterate the config object items
- Runtime validation using schema
- Automatic environment variables interpolation
- Automatic parser selecting by config file extension
HOW TO INSTALL
Use pip
to install it.
pip install python-config-parser
HOW TO USE
By default, the config file will look for the following config files in the .config
directory: config.json
, config.yaml
, config.yml
.
You can also pass a config directory and or config file of your preference (assuming your current directory).
from pyconfigparser import configparser
configparser.get_config(CONFIG_SCHEMA, config_dir='your_config_dir_path', file_name='your_config_file_name')
Schema validation
You may or may not use schema validation. If you want to use it, it will validate the whole config object before returning it.
If you choose not to use it, it won't validate the config object before returning it, and it may generate runtime access inconsistencies.
How to use schema
from schema import Use, And
SCHEMA_CONFIG = {
'core': {
'logging': {
'format': And(Use(str), lambda string: len(string) > 0),
'date_fmt': And(Use(str), lambda string: len(string) > 0),
'random_env_variable': str
},
'allowed_clients': [{
'ip': str, # <- Here you can use regex to validate the ip format
'timeout': int
}
]
}
}
The config.yml
file
core:
random_env_variable: ${RANDOM_ENV_VARIABLE}
logging:
format: "[%(asctime)s][%(levelname)s]: %(message)s"
date_fmt: "%d-%b-%y %H:%M:%S"
allowed_clients:
- ip: 192.168.0.10
timeout: 60
- ip: 192.168.0.11
timeout: 100
A json config file would be something like:
{
"core": {
"random_env_variable": "${RANDOM_ENV_VARIABLE}",
"logging": {
"format": "[%(asctime)s][%(levelname)s]: %(message)s",
"date_fmt": "%d-%b-%y %H:%M:%S"
},
"allowed_clients": [
{
"ip": "192.168.0.10",
"timeout": 60
},
{
"ip": "192.168.0.11",
"timeout": 100
}
]
}
}
The config instance
from pyconfigparser import configparser, ConfigError
import logging
try:
config = configparser.get_config(SCHEMA_CONFIG) # <- Here I'm using that SCHEMA_CONFIG we had declared, and the dir file default value is being used
except ConfigError as e:
print(e)
exit()
# to access your config you need just:
fmt = config.core.logging.format # look this, at this point I'm already using the config variable
date_fmt = config['core']['logging']['date_fmt'] # here subscriptable access
logging.getLogger(__name__)
logging.basicConfig(
format=fmt,
datefmt=date_fmt,
level=logging.INFO
)
# the list of object example:
for client in config.core.allowed_clients:
print(client.ip)
print(client.timeout)
# The config object's parts which is not a list can also be itered but, it'll give you the attribute's names
# So you can access the values by subscriptale access
for logging_section_attr_key in config.core.logging:
print(config.core.logging[logging_section_attr_key])
# Accessing the environment variable already resolved
print(config.random_env_variable)
Since you've already created the first Config's instance this instance will be cached inside Config class, so after this first creation you can just invoke Config.get_config()
from pyconfigparser import configparser
config = configparser.get_config() # At this point you already have the configuration properties in your config object
You can also disable the action to cache the instance config
from pyconfigparser import configparser
configparser.hold_an_instance = False
Environment Variables Interpolation
If the process does not find a value already set to your env variables
It will raise a ConfigError. But you can disable this behavior, and the parser will set None
to these unresolved env vars
from pyconfigparser import configparser
configparser.ignore_unset_env_vars = True
config = configparser.get_config()
CONTRIBUTE
Fork https://github.com/BrunoSilvaAndrade/python-config-parser/ , create commit and pull request to develop
.