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my python code is interlaced with lots of function calls used for (debugging|profiling|tracing etc.) for example:

import logging

j = 0
for i in range(10):
    j += i
    logging.debug('i %d j %d' % (i,j))

i want to #define these resource consuming functions out of the code. something like the c equivalent

#define logging.debug(val)

yes, i know the logging module logging level mechanism can be used to mask out loggings below set log level. but, im asking for a general way to have the python interpreter skip functions (that take time to run even if they dont do much)

one idea is to redefine the functions i want to comment out into empty functions:

def lazy(*args): pass
logging.debug = lazy

the above idea still calls a function, and may create a myriad of other problems

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9 Answers 9

up vote 14 down vote accepted

Python does not have a preprocessor, although you could run your python source through an external preprocessor to get the same effect - e.g. sed "/logging.debug/d" will strip out all the debug logging commands. This is not very elegant though - you will end up needing some sort of build system to run all your modules through the preprocessor and perhaps create a new directory tree of the processed .py files before running the main script.

Alternatively if you put all your debug statements in an if __debug__: block they will get optimised out when python is run with the -O (optimise) flag.

As an aside, I checked the code with the dis module to ensure that it did get optimised away. I discovered that both

if __debug__: doStuff()


if 0: doStuff()

are optimised, but

if False: doStuff()

is not. This is because False is a regular Python object, and you can in fact do this:

>>> False = True
>>> if False: print "Illogical, captain"
Illogical, captain

Which seems to me a flaw in the language - hopefully it is fixed in Python 3.


This is fixed in Python 3: Assigning to True or False now gives a SyntaxError. Since True and False are constants in Python 3, it means that if False: doStuff() is now optimised:

>>> def f():
...     if False: print( "illogical")
>>> dis.dis(f)
  2           0 LOAD_CONST               0 (None) 
              3 RETURN_VALUE         
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It works the same in Python 3. –  Brian Jan 5 '10 at 14:44
prepending if 0: | if debug: | if variable: + optimization, whether through a script or a good editor may be the best idea (better than prepending # which does not handle multi line statements). maybe python isnt perfect after all –  random guy Jan 5 '10 at 14:44
@Dave: a nice python virus would inject the line 'False,True=True,False' into the code. wonderful things may happen –  random guy Jan 5 '10 at 14:55

Well, you can always implement your own simple preprocessor that does the trick. Or, even better, you can use an already existing one. Say http://code.google.com/p/preprocess/

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There's also code.google.com/p/pypreprocessor. –  Evan Plaice Mar 16 '11 at 3:41

Although I think the question is perfectly clear and valid (notwithstanding the many responses that suggest otherwise), the short answer is "there's no support in Python for this".

The only potential solution other than the preprocessor suggestion would be to use some bytecode hacking. I won't even begin to imagine how this should work in terms of the high-level API, but at a low level you could imagine examining code objects for particular sequences of instructions and re-writing them to eliminate them.

For example, look at the following two functions:

>>> def func():
...    if debug:  # analogous to if __debug__:
...       foo
>>> dis.dis(func)
  2           0 LOAD_GLOBAL              0 (debug)
              3 JUMP_IF_FALSE            8 (to 14)
              6 POP_TOP

  3           7 LOAD_GLOBAL              1 (foo)
             10 POP_TOP
             11 JUMP_FORWARD             1 (to 15)
        >>   14 POP_TOP
        >>   15 LOAD_CONST               0 (None)
             18 RETURN_VALUE

Here you could scan for the LOAD_GLOBAL of debug, and eliminate it and everything up to the JUMP_IF_FALSE target.

This one is the more traditional C-style debug() function that gets nicely obliterated by a preprocessor:

>>> def func2():
...    debug('bar', baz)
>>> dis.dis(func2)
  2           0 LOAD_GLOBAL              0 (debug)
              3 LOAD_CONST               1 ('bar')
              6 LOAD_GLOBAL              1 (baz)
              9 CALL_FUNCTION            2
             12 POP_TOP
             13 LOAD_CONST               0 (None)
             16 RETURN_VALUE

Here you would look for LOAD_GLOBAL of debug and wipe everything up to the corresponding CALL_FUNCTION.

Of course, both of those descriptions of what you would do are far simpler than what you'd really need for all but the most simplistic patterns of use, but I think it would be feasible. Would make a cute project, if nobody's already done it.

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Use a module scoped variable?

from config_module import debug_flag

and use this "variable" to gate access to the logging function(s). You would build yourself a logging module that uses the debug_flag to gate the logging functionality.

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so i would have to add a check before every function call? –  random guy Jan 5 '10 at 13:15
@random guy: Dirtier than it already is with all these debug statements?? –  cschol Jan 5 '10 at 13:25
@jldupont: wouldnt i have to change all the calls to logging to my wrapper class? –  random guy Jan 5 '10 at 13:29
@cschol: debugging is the most common example i could think off. but this magical feature im requesting is good for other things such as real turn on/off of features –  random guy Jan 5 '10 at 13:31
@random guy: not really: just use the module to configure the logging functionality based on the debug_flag. –  jldupont Jan 5 '10 at 13:32

I think that completely aboiding the calling on a function is not posible, as Python works in a different way that C. The #define takes place in the pre-compiler, before the code is compiled. In Python, there's no such thing.

If you want to completely remove the calling to debug in a work environment, I think the only way if to actually change the code before execution. With a script previous to execution you could comment/uncomment the debug lines.

Something like this:

File logging.py

#Main module
def log():
    print 'logging'

def main():
    print 'Hello'

File call_log.py

import re
#To log or not to log, that's the question
log = True

#Change the loging
with open('logging.py') as f:
    new_data = []
    for line in f:
       if not log and re.match(r'\s*log.*', line):
         line = '#' + line
       if log and re.match(r'#\s*log.*', line):
         line = line[1:]

#Save file with adequate log level
with open('logging.py', 'w') as f:

#Call the module
import logging

Of course, it has its problems, specially if there are a lot of modules and are complex, but could be usable if you need to absolutely avoid the calling to a function.

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Before you do this, have you profiled to verify that the logging is actually taking a substantial amount of time? You may find that you spend more time trying to remove the calls than you save.

Next, have you tried something like Psyco? If you've got things set up so logging is disabled, then Psyco may be able to optimise away most of the overhead of calling the logging function, noticing that it will always return without action.

If you still find logging taking an appreciable amount of time, you might then want to look at overriding the logging function inside critical loops, possibly by binding a local variable to either the logging function or a dummy function as appropriate (or by checking for None before calling it).

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i haven't made myself clear. i used the logging module and performance as an example. there are other reasons for wanting to comment out functions, for example, when eliminating a feature from the code –  random guy Jan 5 '10 at 15:03

define a function that does nothing, ie

def nuzzing(*args, **kwargs): pass

Then just overload all the functions you want to get rid of with your function, ala

logging.debug = nuzzing
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my original question includes a variant of this solution –  random guy Jan 6 '10 at 7:56
Yeah but by letting your placeholder function call itself recursively, you're leaving the door open for immediate badness ( max call depth stack exceeded ). The recent cpython compiler is clever enough to reduce any function that's only pass to a noop anyway, so any calls to it are effectively commented out. I don't imagine you're going to find a better solution. –  richo Jan 6 '10 at 8:52

I like the 'if _debug' solution except that putting it in front of every call is a bit distracting and ugly. I had this same problem and overcame it by writing a script which automatically parses your source files and replaces logging statements with pass statements (and commented out copies of the logging statements). It can also undo this conversion.

I use it when I deploy new code to a production environment when there are lots of logging statements which I don't need in a production setting and they are affecting performance.

You can find the script here: http://dound.com/2010/02/python-logging-performance/

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You can't skip function calls. You could redefine these as empty though, e.g. by creating another logging object that provides the same interface, but with empty functions.

But by far the cleanest approach is to ignore the low priority log messages (as you suggested):

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i havent made myself clear. i am looking for a general purpose python hack to 'comment out' function calls. that is, i want the 'commented' functions not to even be called. your suggestion does not eliminate the function call to logging.debug(). the function gets called, and does some processing. this is what i want to avoid –  random guy Jan 5 '10 at 14:59
You made yourself clear, but I don't think it's pythonic to do what you asked for. –  user238424 Jan 5 '10 at 15:03

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