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I have been coding a lot in Python of late. And I have been working with data that I haven't worked with before, using formulae never seen before and dealing with huge files. All this made me write a lot of print statements to verify if it's all going right and identify the points of failure. But, generally, outputting so much information is not a good practice. How do I use the print statements only when I want to debug and let them be skipped when I don't want them to be printed?

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5 Answers 5

up vote 42 down vote accepted

The logging module has everything you could want. It may seem excessive at first, but only use the parts you need. I'd recommend using logging.basicConfig to toggle the logging level to stderr and the simple log methods, debug, info, warning, error and critical.

logging.basicConfig(stream=sys.stderr, level=logging.DEBUG)
logging.debug('A debug message!')
logging.info('We processed %d records', len(processed_records))
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Use the logging built-in library module instead of printing.

You create a Logger object (say logger), and then after that, whenever you insert a debug print, you just put:

logger.debug("Some string")

You can use logger.setLevel at the start of the program to set the output level. If you set it to DEBUG, it will print all the debugs. Set it to INFO or higher and immediately all of the debugs will disappear.

You can also use it to log more serious things, at different levels (INFO, WARNING and ERROR).

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A simple way to do this is to call a logging function:

DEBUG = True

def log(s):
    if DEBUG:
        print s

log("hello world")

Then you can change the value of DEBUG and run your code with or without logging.

The standard logging module has a more elaborate mechanism for this.

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1  
It's probably better in the long run to use the supplied logging module than roll your own (even though it looks more complicated). –  mgiuca Jul 5 '11 at 8:00
2  
True, but it's worthwhile understanding how one could roll their own. –  Greg Hewgill Jul 5 '11 at 8:03
    
Indeed. The above is a good idea of how logging works (at a very simple level). –  mgiuca Jul 5 '11 at 8:05

I don't know about others, but I was used to define a "global constant" (DEBUG) and then a global function (debug(msg)) that would print msg only if DEBUG == True.

Then I write my debug statements like:

debug('My value: %d' % value)

...then I pick up unit testing and never did this again! :)

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Unit testing ha. Okay, thats another thing to be picked up then :( –  crazyaboutliv Jul 5 '11 at 8:01
1  
I don't want to discourage unit testing -- it is essential. But I don't think it's a substitute for logging, even as a debugging technique. I still do a lot of printing to quickly test things. –  mgiuca Jul 5 '11 at 8:02
    
@crazyaboutliv - Unit testing done properly is great. Have a look to this chapter of diving into python for a snappy, concise, easy-to-follow presentation –  mac Jul 5 '11 at 8:03
    
@mgiuca - I do quick printing too, but it's just a couple or so of print() while bringing up my code to the required level to pass the test. I never end up with huge amount of print() all over the place. Logging is cool too! :) –  mac Jul 5 '11 at 8:06
2  
@mac It looks like your link now requires an explicit 'www' - it is now hosted here. –  culix Sep 13 '12 at 6:46

First off, I will second the nomination of python's logging framework. Be a little careful about how you use it, however. Specifically: let the logging framework expand your variables, don't do it yourself. For instance, instead of:

logging.debug("datastructure: %r" % complex_dict_structure)

make sure you do:

logging.debug("datastructure: %r", complex_dict_structure)

because while they look similar, the first version incurs the repr() cost even if it's disabled. The second version avoid this. Similarly, if you roll your own, I'd suggest something like:

def debug_stdout(sfunc):
    print(sfunc())

debug = debug_stdout

called via:

debug(lambda: "datastructure: %r" % complex_dict_structure)

which will, again, avoid the overhead if you disable it by doing:

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

debug = debug_noop

The overhead of computing those strings probably doesn't matter unless they're either 1) expensive to compute or 2) the debug statement is in the middle of, say, an n^3 loop or something. Not that I would know anything about that.

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