332

I have a small python project that has the following structure -

Project 
 -- pkg01
   -- test01.py
 -- pkg02
   -- test02.py
 -- logging.conf

I plan to use the default logging module to print messages to stdout and a log file. To use the logging module, some initialization is required -

import logging.config

logging.config.fileConfig('logging.conf')
logger = logging.getLogger('pyApp')

logger.info('testing')

At present, I perform this initialization in every module before I start logging messages. Is it possible to perform this initialization only once in one place such that the same settings are reused by logging all over the project?

4
  • 3
    In response to your comment on my answer: you don't have to call fileConfig in every module that does logging, unless you have if __name__ == '__main__' logic in all of them. prost's answer is not good practice if the package is a library, though it might work for you - one should not configure logging in library packages, other than to add a NullHandler. Apr 3 '13 at 1:04
  • 1
    prost implied that we need to call the import and logger stmts in every module, and only call the fileconfig stmt in the main module. isnt that similar to what you are saying? Apr 3 '13 at 5:02
  • 7
    prost is saying that you should put the logging config code in package/__init__.py. That's not normally the place you put if __name__ == '__main__' code. Also, prost's example looks like it will call the config code unconditionally on import, which doesn't look right to me. Generally, logging config code should be done in one place and should not happen as a side-effect of import except when you're importing __main__. Apr 3 '13 at 17:03
  • How about using builtins, stackoverflow.com/a/60232385/3404763?
    – fatih_dur
    May 14 at 2:38

11 Answers 11

367

Best practice is, in each module, to have a logger defined like this:

import logging
logger = logging.getLogger(__name__)

near the top of the module, and then in other code in the module do e.g.

logger.debug('My message with %s', 'variable data')

If you need to subdivide logging activity inside a module, use e.g.

loggerA = logging.getLogger(__name__ + '.A')
loggerB = logging.getLogger(__name__ + '.B')

and log to loggerA and loggerB as appropriate.

In your main program or programs, do e.g.:

def main():
    "your program code"

if __name__ == '__main__':
    import logging.config
    logging.config.fileConfig('/path/to/logging.conf')
    main()

or

def main():
    import logging.config
    logging.config.fileConfig('/path/to/logging.conf')
    # your program code

if __name__ == '__main__':
    main()

See here for logging from multiple modules, and here for logging configuration for code which will be used as a library module by other code.

Update: When calling fileConfig(), you may want to specify disable_existing_loggers=False if you're using Python 2.6 or later (see the docs for more information). The default value is True for backward compatibility, which causes all existing loggers to be disabled by fileConfig() unless they or their ancestor are explicitly named in the configuration. With the value set to False, existing loggers are left alone. If using Python 2.7/Python 3.2 or later, you may wish to consider the dictConfig() API which is better than fileConfig() as it gives more control over the configuration.

13
  • 35
    if you look at my example, i am already doing what you suggest above. my question was how do i centralize this logging initialization such that i dont have to repeat those 3 statements. also, in your example you missed the 'logging.config.fileConfig('logging.conf')' stmt. this stmt is actually the root cause of my concern. you see, if i have initiate the logger in every module, i would have to type this stmt in every module. that would mean tracking the path of conf file in every module, which does not look like a best practice to me (imagine the havoc when changing module/package locations). Apr 2 '13 at 22:51
  • 5
    If you call fileConfig after creating the logger, whether in the same or in another module (e.g. when you create the logger at the top of the file) does not work. The logging configuration only applies to loggers created after. So this approach does not work or is not a viable option for multiple modules. @Quest Monger: You can always create another file that holds the location of the config file..;) Sep 12 '13 at 14:33
  • 2
    @Oxidator: Not necessarily - see the disable_existing_loggers flag which is True by default but can be set to False. Sep 12 '13 at 23:22
  • 1
    @Vinay Sajip, thank you. Do you have recommendations for loggers that work in modules but outside classes as well? Since imports are done before the main function is called, those logs will have already been logged. I guess setting up your logger before all imports in the main module is the only way? This logger could then be overwritten in main, if you like. Sep 17 '13 at 11:48
  • 1
    If I want to have all my module specific loggers have a logging level different from the default WARNING, will I have to make that setting on each module? Say, I want to have all my modules log at INFO.
    – Raj
    Feb 9 '16 at 20:13
194

Actually every logger is a child of the parent's package logger (i.e. package.subpackage.module inherits configuration from package.subpackage), so all you need to do is just to configure the root logger. This can be achieved by logging.config.fileConfig (your own config for loggers) or logging.basicConfig (sets the root logger). Setup logging in your entry module (__main__.py or whatever you want to run, for example main_script.py. __init__.py works as well)

using basicConfig:

# package/__main__.py
import logging
import sys

logging.basicConfig(stream=sys.stdout, level=logging.INFO)

using fileConfig:

# package/__main__.py
import logging
import logging.config

logging.config.fileConfig('logging.conf')

and then create every logger using:

# package/submodule.py
# or
# package/subpackage/submodule.py
import logging
log = logging.getLogger(__name__)

log.info("Hello logging!")

For more information see Advanced Logging Tutorial.

16
  • 25
    this is, by far, the simplest solution to the problem, not to mention it exposes & leverages the parent-child relationship between modules, something that i as a noob was unaware of. danke. Apr 2 '13 at 22:41
  • 2
    actually much more relevant answer since the the question is concerned with separate modules.
    – Jan Sila
    Feb 26 '18 at 12:47
  • 1
    Dumb question perhaps: if there is no logger in __main__.py (e.g. If I want to use the module in a script that has no logger) will logging.getLogger(__name__) still do some kind of logging in the module or will it raise an exception?
    – Bill
    Sep 13 '18 at 1:09
  • 1
    @Bill I'm not sure if I understand your question. Do you mean that you have no logging.basicConfig or logging.config.fileConfig? You can definitely use logging.getLogger and do some logging, it just would not print anything anywhere. Many libraries do logging, but they leave the logging setup (like where the logging messages go) to their users. Sep 13 '18 at 3:19
  • 1
    Finally. I had a working logger, but it failed in Windows for Parallel runs with joblib. I guess this is a manual tweak to the system -- something else is wrong with Parallel. But, it surely works! Thanks
    – B Furtado
    Aug 12 '19 at 20:32
20

A simple way of using one instance of logging library in multiple modules for me was following solution:

base_logger.py

import logging

logger = logging
logger.basicConfig(format='%(asctime)s - %(message)s', level=logging.INFO)

Other files

from base_logger import logger

if __name__ == '__main__':
    logger.info("This is an info message")
2
  • 2
    For my small project, this was the solution to go. Note that the root logger is a singleton, conveniently, which adds to the texture of this simple solution.
    – Jabro
    Oct 8 '20 at 16:33
  • 2
    This is an underrated answer. If your project only needs a single logger, there's no need to create multiple loggers with getLogger(__name__). With this answer, you only need a single line to import/config the logger. I also prefer using basicConfig in code instead of fileConfig(logging.conf) because you can do dynamic configurations. Another variation is that you could delete logger = logging alias and just use logging.info() directly. Or you create a shorter alias like log=logging to use log.info().
    – wisbucky
    Sep 11 at 2:29
18

I always do it as below.

Use a single python file to config my log as singleton pattern which named 'log_conf.py'

#-*-coding:utf-8-*-

import logging.config

def singleton(cls):
    instances = {}
    def get_instance():
        if cls not in instances:
            instances[cls] = cls()
        return instances[cls]
    return get_instance()

@singleton
class Logger():
    def __init__(self):
        logging.config.fileConfig('logging.conf')
        self.logr = logging.getLogger('root')

In another module, just import the config.

from log_conf import Logger

Logger.logr.info("Hello World")

This is a singleton pattern to log, simply and efficiently.

3
  • 1
    thanks for detailing the singleton pattern. i was planning on implementing this, but then the @prost solution is much more simple and suits my needs perfectly. i however do see your solution being useful is bigger projects that have multiple points of entry (other than main). danke. Apr 2 '13 at 22:45
  • 63
    This is useless. The root logger is already a singleton. Just use logging.info instead of Logger.logr.info.
    – Pod
    Sep 6 '16 at 10:22
  • Is it useless though? In complex project, when you have multiple components (sets of modules) and you want each component to have its own logger and all modules of that component to share the same logger, this I think would help
    – Hamed
    Dec 24 '20 at 1:08
12

Several of these answers suggest that at the top of a module you you do

import logging
logger = logging.getLogger(__name__)

It is my understanding that this is considered very bad practice. The reason is that the file config will disable all existing loggers by default. E.g.

#my_module
import logging

logger = logging.getLogger(__name__)

def foo():
    logger.info('Hi, foo')

class Bar(object):
    def bar(self):
        logger.info('Hi, bar')

And in your main module :

#main
import logging

# load my module - this now configures the logger
import my_module

# This will now disable the logger in my module by default, [see the docs][1] 
logging.config.fileConfig('logging.ini')

my_module.foo()
bar = my_module.Bar()
bar.bar()

Now the log specified in logging.ini will be empty, as the existing logger was disabled by fileconfig call.

While is is certainly possible to get around this (disable_existing_Loggers=False), realistically many clients of your library will not know about this behavior, and will not receive your logs. Make it easy for your clients by always calling logging.getLogger locally. Hat Tip : I learned about this behavior from Victor Lin's Website.

So good practice is instead to always call logging.getLogger locally. E.g.

#my_module
import logging

logger = logging.getLogger(__name__)

def foo():
    logging.getLogger(__name__).info('Hi, foo')

class Bar(object):
    def bar(self):
        logging.getLogger(__name__).info('Hi, bar')    

Also, if you use fileconfig in your main, set disable_existing_loggers=False, just in case your library designers use module level logger instances.

14
  • Can you not run logging.config.fileConfig('logging.ini') before import my_module? As suggested in this answer. Sep 4 '17 at 2:17
  • Not sure - but it would definitely also be considered bad practice to mix imports and executable code in that way. You also don't want your clients to have to check whether they need to configure logging before they import, especially when there is a trivial alternative! Imagine if a widely used library like requests had done that....!
    – phil_20686
    Sep 4 '17 at 11:18
  • "Not sure - but it would definitely also be considered bad practice to mix imports and executable code in that way." - why? Sep 4 '17 at 15:08
  • 1
    You don't really need line 4 (logger = logging.getLogger(__name__)) in the last "good practice" example. Sep 13 '19 at 23:30
  • 4
    You seem to contradict the official docs: 'A good convention to use when naming loggers is to use a module-level logger, in each module which uses logging, named as follows: logger = logging.getLogger(__name__)'
    – iron9
    Apr 7 '20 at 15:58
11

Throwing in another solution.

In my module's init.py I have something like:

# mymodule/__init__.py
import logging

def get_module_logger(mod_name):
  logger = logging.getLogger(mod_name)
  handler = logging.StreamHandler()
  formatter = logging.Formatter(
        '%(asctime)s %(name)-12s %(levelname)-8s %(message)s')
  handler.setFormatter(formatter)
  logger.addHandler(handler)
  logger.setLevel(logging.DEBUG)
  return logger

Then in each module I need a logger, I do:

# mymodule/foo.py
from [modname] import get_module_logger
logger = get_module_logger(__name__)

When the logs are missed, you can differentiate their source by the module they came from.

2
  • What does "my module's main init" mean? And "Then in each class I need a logger, I do:"? Can you provide a sample called_module.py, and an example of its usage as an import from module caller_module.py ? See this answer for an inspiration of the format I'm asking about. Not trying to be patronising. I am trying to understand your answer and I know I would if you wrote it that way. Sep 4 '17 at 15:16
  • 1
    @lucid_dreamer I clarified.
    – Tommy
    Jul 4 '19 at 15:38
5

You could also come up with something like this!

def get_logger(name=None):
    default = "__app__"
    formatter = logging.Formatter('%(levelname)s: %(asctime)s %(funcName)s(%(lineno)d) -- %(message)s',
                              datefmt='%Y-%m-%d %H:%M:%S')
    log_map = {"__app__": "app.log", "__basic_log__": "file1.log", "__advance_log__": "file2.log"}
    if name:
        logger = logging.getLogger(name)
    else:
        logger = logging.getLogger(default)
    fh = logging.FileHandler(log_map[name])
    fh.setFormatter(formatter)
    logger.addHandler(fh)
    logger.setLevel(logging.DEBUG)
    return logger

Now you could use multiple loggers in same module and across whole project if the above is defined in a separate module and imported in other modules were logging is required.

a=get_logger("__app___")
b=get_logger("__basic_log__")
a.info("Starting logging!")
b.debug("Debug Mode")
5

@Yarkee's solution seemed better. I would like to add somemore to it -

class Singleton(type):
    _instances = {}

    def __call__(cls, *args, **kwargs):
        if cls not in cls._instances.keys():
            cls._instances[cls] = super(Singleton, cls).__call__(*args, **kwargs)
        return cls._instances[cls]


class LoggerManager(object):
    __metaclass__ = Singleton

    _loggers = {}

    def __init__(self, *args, **kwargs):
        pass

    @staticmethod
    def getLogger(name=None):
        if not name:
            logging.basicConfig()
            return logging.getLogger()
        elif name not in LoggerManager._loggers.keys():
            logging.basicConfig()
            LoggerManager._loggers[name] = logging.getLogger(str(name))
        return LoggerManager._loggers[name]    


log=LoggerManager().getLogger("Hello")
log.setLevel(level=logging.DEBUG)

So LoggerManager can be a pluggable to the entire application. Hope it makes sense and value.

1
  • 11
    The logging module already deals with singletons. logging.getLogger("Hello") will get the same logger across all of your modules.
    – Pod
    Sep 6 '16 at 10:23
2

There are several answers. i ended up with a similar yet different solution that makes sense to me, maybe it will make sense to you as well. My main objective was to be able to pass logs to handlers by their level (debug level logs to the console, warnings and above to files):

from flask import Flask
import logging
from logging.handlers import RotatingFileHandler

app = Flask(__name__)

# make default logger output everything to the console
logging.basicConfig(level=logging.DEBUG)

rotating_file_handler = RotatingFileHandler(filename="logs.log")
rotating_file_handler.setLevel(logging.INFO)

app.logger.addHandler(rotating_file_handler)

created a nice util file named logger.py:

import logging

def get_logger(name):
    return logging.getLogger("flask.app." + name)

the flask.app is a hardcoded value in flask. the application logger is always starting with flask.app as its the module's name.

now, in each module, i'm able to use it in the following mode:

from logger import get_logger
logger = get_logger(__name__)

logger.info("new log")

This will create a new log for "app.flask.MODULE_NAME" with minimum effort.

2

The best practice would be to create a module separately which has only one method whose task we be to give a logger handler to the the calling method. Save this file as m_logger.py

import logger, logging

def getlogger():
    # logger
    logger = logging.getLogger(__name__)
    logger.setLevel(logging.DEBUG)
    # create console handler and set level to debug
    #ch = logging.StreamHandler()
    ch = logging.FileHandler(r'log.txt')
    ch.setLevel(logging.DEBUG)
    # create formatter
    formatter = logging.Formatter('%(asctime)s - %(levelname)s - %(message)s')
    # add formatter to ch
    ch.setFormatter(formatter)
    # add ch to logger
    logger.addHandler(ch)
    return logger

Now call the getlogger() method whenever logger handler is needed.

from m_logger import getlogger
logger = getlogger()
logger.info('My mssg')
3
  • 1
    This is good if you don't have any additional parameters. But if, let's say, you have --debug option in the app and want to set logging level in all loggers in your app based on this parameter... Jun 13 '19 at 16:45
  • @TheGodfather Yes this is hard to achieve by this methodology. What we can do in this situation is that create a class for which would take formatter as parameter at the time of object creation and would have the similar function to return the logger handler.What are your views on this? Jun 14 '19 at 7:25
  • Yes,I did similar thing, made get_logger(level=logging.INFO) to return some kind of singleton, so when it called first time from the main app, it initializes the logger and handlers with the proper level and then returns the same logger object to all other methods. Jun 14 '19 at 8:21
1

New to python so I don't know if this is advisable, but it works great for not re-writing boilerplate.

Your project must have an init.py so it can be loaded as a module

# Put this in your module's __init__.py
import logging.config
import sys

# I used this dictionary test, you would put:
# logging.config.fileConfig('logging.conf')
# The "" entry in loggers is the root logger, tutorials always 
# use "root" but I can't get that to work
logging.config.dictConfig({
    "version": 1,
    "formatters": {
        "default": {
            "format": "%(asctime)s %(levelname)s %(name)s %(message)s"
        },
    },
    "handlers": {
        "console": {
            "level": 'DEBUG',
            "class": "logging.StreamHandler",
            "stream": "ext://sys.stdout"
        }
    },
    "loggers": {
        "": {
            "level": "DEBUG",
            "handlers": ["console"]
        }
    }
})

def logger():
    # Get the name from the caller of this function
    return logging.getLogger(sys._getframe(1).f_globals['__name__'])

sys._getframe(1) suggestion comes from here

Then to use your logger in any other file:

from [your module name here] import logger

logger().debug("FOOOOOOOOO!!!")

Caveats:

  1. You must run your files as modules, otherwise import [your module] won't work:
    • python -m [your module name].[your filename without .py]
  2. The name of the logger for the entry point of your program will be __main__, but any solution using __name__ will have that issue.

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