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I'm new to Python logging and I can easily see how it is preferrable to the home-brew solution I have come up with.

One question I can't seem to find an answer to: how do I squelch logging messages on a per-method/function basis?

My hypothetical module contains a single function. As I develop, the log calls are a great help:

                format=('%(levelname)s: %(funcName)s(): %(message)s'))
log = logging.getLogger()

    log.debug("Here's an interesting value: %r" % some_value)
    log.info("Going great here!")
    more stuff...

As I wrap up my work on 'my_func1' and start work on a second function, 'my_func2', the logging messages from 'my_func1' start going from "helpful" to "clutter".

Is there single-line magic statement, such as 'logging.disabled_in_this_func()' that I can add to the top of 'my_func1' to disable all the logging calls within 'my_func1', but still leave logging calls in all other functions/methods unchanged?


linux, Python 2.7.1

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4 Answers 4

up vote 4 down vote accepted

The trick is to create multiple loggers.

There are several aspects to this.

First. Don't use logging.basicConfig() at the beginning of a module. Use it only inside the main-import switch

 if __name__ == "__main__":

Second. Never get the "root" logger, except to set global preferences.

Third. Get individual named loggers for things which might be enabled or disabled.

log = logging.getLogger(__name__)

func1_log = logging.getLogger( "{0}.{1}".format( __name__, "my_func1" )

Now you can set logging levels on each named logger.

log.setLevel( logging.INFO )
func1_log.setLevel( logging.ERROR )
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Thanks for the recommendation on putting logging configuration inside the main-import switch. Good to know. Is using the root logger not recommended even for a single-module script like I'm working on now? Could you please clarify the cons for doing so? –  JS. Sep 8 '11 at 23:28
" using the root logger not recommended". Period. Don't use it. It's "anonymous". You want only named loggers so you can configure and filter. –  S.Lott Sep 9 '11 at 1:56

You could create a decorator that would temporarily suspend logging, ala:

from functools import wraps

def suspendlogging(func):
    def inner(*args, **kwargs):
        previousloglevel = log.getEffectiveLevel()
            return func(*args, **kwargs)
    return inner

def my_func1(): ...

Caveat: that would also suspend logging for any function called from my_func1 so be careful how you use it.

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Good approach for a lot of applications. Thanks! –  JS. Sep 8 '11 at 23:29
I guess this should have been decorator factory taking the logger to suspend. –  Piotr Dobrogost Sep 19 '11 at 20:16
Please correct me if I am wrong, but looks to me that this would only disable one logger named log. If there are several loggers being used at the same time, e.g., in a Django application, how can this disable all loggers? –  Subhamoy Sengupta Nov 13 '13 at 13:53

You could use a decorator:

import logging
import functools

def disable_logging(func):
    def wrapper(*args,**kwargs):
        result = func(*args,**kwargs)
        return result
    return wrapper

def my_func1(...):
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Hah! You beat me by seconds. Be careful inside wrapper as it won't re-enable logging of the func() call throws an exception. That's why I use the try/finally phrase to guarantee that logging is re-enabled regardless of whether func() succeeds. –  Kirk Strauser Sep 7 '11 at 22:22

Both S.Lott's and Strauser/unutbu's answers are good, depending on how one would like to handle logging. They don't really appeal to me for my application, though. I was really hoping for a solution that would allow me to put a line like


at the top of each function.

Plundering more through Logging's Filter functionality allowed me to come up with something that is closer to what I'm looking for, but doesn't really reach my goal either. I include it here solely for the benefit of others who might find it a useful alternative.

Method: Create a Logging Filter that will check if the log message is coming from one of a list of functions approved for output. One can add the names of the functions you'd like to hear from to the list and leave off the ones you don't.

def my_func1():
    # Do stuff
    log.debug("Here I am!")
    # Do more stuff

def my_func2():
    # Do stuff
    log.debug("Look at me!")
    # Do other stuff

if __name__ in ("__main__", "__console__"):

    class log_filter(logging.Filter):

        def __init__(self, name=None): pass

        def filter(self, rec):
            will_pass = ['my_func']

            if rec.funcName in will_pass:
                return True
                return False

                        format=('%(levelname)s: %(funcName)s(): %(message)s'))

    log = logging.getLogger()
    logfilter = log_filter()


In this example, log messages from 'my_func1' will be output, all other log messages are squelched. Of course additional filtering on other factors can be easily added as well.

This is working for the single-module script I'm working on now. I haven't investigated how it will scale to multiple-module scripts. Probably won't unless you also integrate S.Lott's multiple-logger approach.

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For bonus points, then move all that into a module you import. Write a decorator that updates a module-level will_pass list. Then you can write @donotlog def foo() [...] and you can re-use it for every other module in the project you're working on. –  Kirk Strauser Sep 9 '11 at 14:58
Good idea! <fill, fill, fill...> –  JS. Sep 9 '11 at 16:52

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