log_calls — A decorator for debugging and profiling


(This document is a work in progress: an overly fat README that I still promise or threaten to reduce alot and make more of a "quick intro". Complete documentation is here. Thanks for your continued patience/check this space! — BTO)

log_calls is a Python 3 decorator that can print much useful information about calls to a decorated function. It can write to stdout, to another stream or file, or to a logger. It can save you from writing, rewriting, copying, pasting and tweaking a lot of ad hoc, boilerplate code - and it can keep your codebase free of that clutter.

For each call of a decorated function, log_calls can show you:

These and other features are optional and configurable settings, which can be specified for each decorated function via keyword parameters. You can also examine and change these settings on the fly using attributes with the same names as the keywords, or using a dict-like interface whose keys are the keywords.

log_calls can also collect profiling data and statistics, accessible at runtime:

The package contains two other decorators:

This document gives an overview of the decorator's features and their use. A thorough account, including many useful examples, can be found in the complete documentation for log_calls and record_history.

Version

This document describes version 0.2.4.post1 of log_calls.

What's New

Preliminaries

Dependencies and requirements

The log_calls package has no dependencies - it requires no other packages. All it requires is a standard distribution of Python 3.2+.

NOTE: This package does require the CPython implementation, as it uses internals of stack frames which may well differ in other interpreters.

Installation

You have two simple options:

  1. Download the compressed repository, uncompress it into a directory, and run:

    $ python setup.py install

    in that directory, or

  2. run

    $ pip install log_calls

to install log_calls from PyPI (the Python Package Index). Here and elsewhere, $ at the beginning of a line indicates your command prompt, whatever it may be.

Whichever you choose, ideally you'll do it in a virtual environment (a virtualenv). In Python 3.3+, virtual environments are easier than ever to set up because those distributions include everything you need to do so. For an excellent overview of these new capabilities, see Lightweight Virtual Environments in Python 3.4.

Running the tests

Each *.py file in the log_calls directory has a corresponding test file test_*.py in the log_calls/tests/ directory; log_calls.py itself has two more. The tests provide essentially 100% coverage (98% for log_calls.py, 100% for the others). All tests have passed on every tested platform + Python version; however, that's a sparse matrix :) If you encounter any turbulence, do let us know.

You can run the test suites either before or after installing log_calls.

Running the tests before installation

To do this, download the compressed repository, as in 1. above. After you uncompress the archive into a directory, and before you run python setup.py install, first run one of the following commands:

$ python setup.py test [-q]

(-q for "quiet", recommended) or

$ python run_tests.py [-q | -v | -h]

which takes switches -q for "quiet", -v for "verbose", and -h for "help".

Running the tests after installation

You can run the tests for log_calls after installing it, using the command:

$ python -m unittest discover log_calls.tests

What to expect

All the above commands run all tests in the log_calls/tests/ directory. If you run any of them, the output you see should end like so:

----------------------------------------------------------------------
Ran 58 tests in 0.832s

OK

indicating that all went well. If any tests failed, it will tell you.

Basic usage

log_calls has many features, and thus many, mostly independent, keyword parameters (15 in all). This section introduces all but five of them, one at a time, though of course you can use multiple parameters in any call to the decorator:

The two parameters that let you output log_calls messages to a Logger (logger and loglevel) are discussed in Using loggers. The two that determine whether call history is retained (record_history), and then how much of it (max_history), are discussed in Call history and statistics. The one parameter that is not a "setting", settings_path, lets you specify a file containing default settings; it's discussed in the section The settings_path parameter of the main documentation.

Every example in this document uses log_calls, so without further ado:

>>> from log_calls import log_calls

Using no parameters

First, let's see the simplest possible examples, using no parameters at all:

>>> @log_calls()
... def f(a, b, c):
...     pass
>>> f(1, 2, 3)
f <== called by <module>
    arguments: a=1, b=2, c=3
f ==> returning to <module>

Adding another decorated function to the call chain gives useful information too:

>>> @log_calls()
... def g(a):
...     f(a, 2*a, 3*a)
>>> g(3)
g <== called by <module>
    arguments: a=3
f <== called by g
    arguments: a=3, b=6, c=9
f ==> returning to g
g ==> returning to <module>

The enabled parameter (default – True)

The next most basic example:

>>> @log_calls(enabled=False)
... def f(a, b, c):
...     pass
>>> f(1, 2, 3)                # no output

The args_sep parameter (default – ', ')

The args_sep parameter specifies the character or string used to separate arguments. If the string ends in (or is) \n, additional whitespace is appended so that arguments line up nicely:

>>> @log_calls(args_sep='\\n')
... def f(a, b, c, **kwargs):
...     print(a + b + c)
>>> f(1, 2, 3, u='you')       # doctest: +NORMALIZE_WHITESPACE, +SKIP
f <== called by <module>
    arguments:
        a=1
        b=2
        c=3
        [**]kwargs={'u': 'you'}
6
f ==> returning to <module>

NOTE: In all the doctest examples in this document, you'll see '\\n' where in actual code you'd write '\n'. This is a doctest quirk: all the examples herein work (as tests, they pass), and they would fail if '\n' were used. The only alternative would be to use raw character strings and write r'\n', which is not obviously better.

The log_args parameter (default – True)

When true, as seen above, arguments passed to the decorated function are logged. If the function's signature contains positional and/or keyword "varargs" (*args and/or **kwargs), these are included if they're nonempty. Any default values of keyword parameters with no corresponding argument are also logged, on a separate line.

>>> @log_calls()
... def f_a(a, *args, something='that thing', **kwargs): pass
>>> f_a(1, 2, 3, foo='bar')
f_a <== called by <module>
    arguments: a=1, [*]args=(2, 3), [**]kwargs={'foo': 'bar'}
    defaults:  something='that thing'
f_a ==> returning to <module>

Here, no argument information is logged at all:

>>> @log_calls(log_args=False)
... def f_b(a, *args, something='that thing', **kwargs): pass
>>> f_b(1, 2, 3, foo='bar')
f_b <== called by <module>
f_b ==> returning to <module>

If a function has no parameters, log_calls won't display any "arguments" section:

>>> @log_calls()
... def f(): pass
>>> f()
f <== called by <module>
f ==> returning to <module>

If a function has parameters but is passed no arguments, log_calls will display arguments: <none>, plus any default values used:

>>> @log_calls()
... def ff(*args, **kwargs): pass
>>> ff()
ff <== called by <module>
    arguments: <none>
ff ==> returning to <module>

>>> @log_calls()
... def fff(*args, kw='doh', **kwargs): pass
>>> fff()
fff <== called by <module>
    arguments: <none>
    defaults:  kw='doh'
fff ==> returning to <module>

The log_retval parameter (default – False)

When true, this parameter displays the value returned by the function:

>>> @log_calls(log_retval=True)
... def f(a, b, c):
...     return a + b + c
>>> _ = f(1, 2, 3)
f <== called by <module>
    arguments: a=1, b=2, c=3
    f return value: 6
f ==> returning to <module>

The log_exit parameter (default – True)

When false, this parameter suppresses the ... ==> returning to ... line that indicates the function's return to its caller.

>>> @log_calls(log_exit=False)
... def f(a, b, c):
...     return a + b + c
>>> _ = f(1, 2, 3)
f <== called by <module>
    arguments: a=1, b=2, c=3

The log_call_numbers parameter (default – False)

log_calls keeps a running tally of the number of times a decorated function is called. You can display this (1-based) number using the log_call_numbers parameter:

>>> @log_calls(log_call_numbers=True)
... def f(): pass
>>> for i in range(2): f()
f [1] <== called by <module>
f [1] ==> returning to <module>
f [2] <== called by <module>
f [2] ==> returning to <module>

The call number is also displayed when log_retval is true:

>>> @log_calls(log_call_numbers=True, log_retval=True)
... def f():
...     return 81
>>> _ = f()
f [1] <== called by <module>
    f [1] return value: 81
f [1] ==> returning to <module>

This is particularly valuable in the presence of recursion, for example. See the recursion example later, where the feature is used to good effect.

The log_elapsed parameter (default – False)

For performance profiling, you can measure the time it took a function to execute by using the log_elapsed keyword. When true, log_calls reports the time the decorated function took to complete, in seconds:

>>> @log_calls(log_elapsed=True)
... def f(n):
...     for i in range(n):
...         # do something time-critical
...         pass
>>> f(5000)                 # doctest: +ELLIPSIS
f <== called by <module>
    arguments: n=5000
    elapsed time: ... [secs]
f ==> returning to <module>

The indent parameter (default - False)

The indent parameter, when true, indents each new level of logged messages by 4 spaces, providing a visualization of the call hierarchy.

A decorated function's logged output is indented only as much as is necessary. Here, the even numbered functions don't indent, so the indented functions that they call are indented just one level more than their "inherited" indentation level:

>>> @log_calls(indent=True)
... def g1():
...     pass
>>> @log_calls()    # no extra indentation for g1
... def g2():
...     g1()
>>> @log_calls(indent=True)
... def g3():
...     g2()
>>> @log_calls()    # no extra indentation for g3
... def g4():
...     g3()
>>> @log_calls(indent=True)
... def g5():
...     g4()
>>> g5()
g5 <== called by <module>
g4 <== called by g5
    g3 <== called by g4
    g2 <== called by g3
        g1 <== called by g2
        g1 ==> returning to g2
    g2 ==> returning to g3
    g3 ==> returning to g4
g4 ==> returning to g5
g5 ==> returning to <module>

The prefix parameter (default - ''): decorating methods

Especially useful for clarity when decorating methods, the prefix keyword parameter lets you specify a string with which to prefix the name of a function or method. log_calls uses the prefixed name in its output: when logging a call to, and a return from, the function; when reporting the function's return value; and when the function is at the end of a call or return chain.

>>> import math
>>> class Point():
...     # NOTE: You can't decorate __init__ :D
...     def __init__(self, x, y):
...         self.x = x
...         self.y = y
...     @staticmethod
...     @log_calls(prefix='Point.')
...     def distance(pt1, pt2):
...         return math.sqrt((pt1.x - pt2.x)**2 + (pt1.y - pt2.y)**2)
...     @log_calls(log_retval=True, prefix='Point.')
...     def length(self):
...         return self.distance(self, Point(0, 0))
...     @log_calls(prefix='Point.')
...     def diag_reflect(self):
...         self.x, self.y = self.y, self.x
...         return self
...     def __repr__(self):
...         return "Point" + str((self.x, self.y))

>>> print("Point(1, 2).diag_reflect() =", Point(1, 2).diag_reflect())
Point.diag_reflect <== called by <module>
    arguments: self=Point(1, 2)
Point.diag_reflect ==> returning to <module>
Point(1, 2).diag_reflect() = Point(2, 1)

>>> print("length of Point(1, 2) =", round(Point(1, 2).length(), 2))  # doctest: +ELLIPSIS
Point.length <== called by <module>
    arguments: self=Point(1, 2)
Point.distance <== called by Point.length
    arguments: pt1=Point(1, 2), pt2=Point(0, 0)
Point.distance ==> returning to Point.length
    Point.length return value: 2.236...
Point.length ==> returning to <module>
length of Point(1, 2) = 2.24

The file parameter (default - sys.stdout)

The file parameter specifies a stream (an instance of io.TextIOBase) to which log_calls will print its messages. This value is supplied to the file keyword parameter of the print function, and, like that parameter, its default value is sys.stdout. This parameter is ignored if you've supplied a logger for output using the logger parameter.

If your program writes to the console a lot, you may not want log_calls messages interspersed with your real output: your understanding of both logically distinct streams can be compromised, so, better to make them two actually distinct streams. It can also be advantageous to gather all, and only all, of the log_calls messages in one place. You can use indent=True with a file, and the indentations will appear as intended.

It's not simple to test this feature with doctest (in fact, there are subtleties to supporting this feature and using doctest at all), so we'll just give an example of writing to stderr, and reproduce the output:

>>> import sys
>>> @log_calls(file=sys.stderr, indent=True)
... def f(n):
...     if n <= 0:
...         return 'a'
...     return '(' + f(n-1) + ')'

Running >>> f(2) will return '((a))' and will write the following to stderr:

f <== called by <module>
    f <== called by f
        arguments: n=1
        f <== called by f
            arguments: n=0
        f ==> returning to f
    f ==> returning to f
f ==> returning to <module>

Using loggers

log_calls works well with loggers obtained from Python's logging module – that is, objects of type logging.Logger. First, we'll set up a logger with a single handler that writes to the console. Because doctest doesn't capture output written to stderr (the default stream to which console handlers write), we'll send the console handler's output to stdout, using the format <loglevel>:<loggername>:<message>.

>>> import logging
>>> import sys
>>> ch = logging.StreamHandler(stream=sys.stdout)
>>> c_formatter = logging.Formatter('%(levelname)8s:%(name)s:%(message)s')
>>> ch.setFormatter(c_formatter)
>>> logger = logging.getLogger('a_logger')
>>> logger.addHandler(ch)
>>> logger.setLevel(logging.DEBUG)

The logger parameter (default – None)

The logger keyword parameter tells log_calls to write its output using that logger rather than the print function:

>>> @log_calls(logger=logger)
... def somefunc(v1, v2):
...     logger.debug(v1 + v2)
>>> somefunc(5, 16)             # doctest: +NORMALIZE_WHITESPACE
DEBUG:a_logger:somefunc <== called by <module>
DEBUG:a_logger:    arguments: v1=5, v2=16
DEBUG:a_logger:21
DEBUG:a_logger:somefunc ==> returning to <module>

>>> @log_calls(logger=logger)
... def anotherfunc():
...     somefunc(17, 19)
>>> anotherfunc()       # doctest: +NORMALIZE_WHITESPACE
DEBUG:a_logger:anotherfunc <== called by <module>
DEBUG:a_logger:somefunc <== called by anotherfunc
DEBUG:a_logger:    arguments: v1=17, v2=19
DEBUG:a_logger:36
DEBUG:a_logger:somefunc ==> returning to anotherfunc
DEBUG:a_logger:anotherfunc ==> returning to <module>

The value of logger can be either a logger instance (a logging.Logger) or a string giving the name of a logger. Instead of passing the logger instance as above, we can simply pass a_logger:

>>> @log_calls(logger='a_logger')
... def yetanotherfunc():
...     return 42
>>> _ = yetanotherfunc()       # doctest: +NORMALIZE_WHITESPACE
DEBUG:a_logger:yetanotherfunc <== called by <module>
DEBUG:a_logger:yetanotherfunc ==> returning to <module>

This works because "all calls to [logging.getLogger(name)] with a given name return the same logger instance", so that "logger instances never need to be passed between different parts of an application", as per the Python documentation for logging.getLogger

The loglevel parameter (default – logging.DEBUG)

log_calls also takes a loglevel keyword parameter, whose value must be one of the logging module's constants - logging.DEBUG, logging.INFO, etc. – or a custom logging level if you've added any. log_calls writes output messages using logger.log(loglevel, …). Thus, if the logger's log level is higher than loglevel, no output will appear:

>>> logger.setLevel(logging.INFO)   # raise logger's level to INFO
>>> @log_calls(logger='logger_=', loglevel=logging.DEBUG)
... def f(x, y, z, **kwargs):
...     return y + z
>>> # No log_calls output from f
>>> # because loglevel for f < level of logger
>>> f(1,2,3, logger_=logger)       # doctest: +NORMALIZE_WHITESPACE, +ELLIPSIS
5

The use of loggers, and of these parameters, is explored further in the main documentation, which contains an example of using a logger with multiple handlers that have different loglevels.

Call chains

log_calls does its best to chase back along the call chain to find the first enabled log_calls-decorated function on the stack. If there's no such function, it just displays the immediate caller. If there is such a function, however, it displays the entire list of functions on the stack up to and including that function when reporting calls and returns. Without this, you'd have to guess at what was called in between calls to functions decorated by log_calls. If you specified a prefix for the decorated caller on the end of a call chain, log_calls will use the prefixed name:

>>> @log_calls()
... def g1():
...     pass
>>> def g2():
...     g1()
>>> @log_calls(prefix='mid.')
... def g3():
...     g2()
>>> def g4():
...     g3()
>>> @log_calls()
... def g5():
...     g4()
>>> g5()
g5 <== called by <module>
mid.g3 <== called by g4 <== g5
g1 <== called by g2 <== mid.g3
g1 ==> returning to g2 ==> mid.g3
mid.g3 ==> returning to g4 ==> g5
g5 ==> returning to <module>

In the next example, g is log_calls-decorated but logging is disabled, so the reported call chain for f stops at its immediate caller:

>>> @log_calls()
... def f(): pass
>>> def not_decorated(): f()
>>> @log_calls(enabled=False, log_call_numbers=True)
... def g(): not_decorated()
>>> g()
f <== called by not_decorated
f ==> returning to not_decorated

Elaborating on the previous example, here are longer call chains with an intermediate decorated function that has logging disabled. We've also enabled indentation:

>>> @log_calls(indent=True)
... def e(): pass
>>> def not_decorated_call_e(): e()
>>> @log_calls(indent=True)
... def f(): not_decorated_call_e()
>>> def not_decorated_call_f(): f()
>>> @log_calls(enabled=False, log_call_numbers=True, indent=True)
... def g(): not_decorated_call_f()
>>> @log_calls(indent=True)
... def h(): g()
>>> h()
h <== called by <module>
    f <== called by not_decorated_call_f <== g <== h
        e <== called by not_decorated_call_e <== f
        e ==> returning to not_decorated_call_e ==> f
    f ==> returning to not_decorated_call_f ==> g ==> h
h ==> returning to <module>

log_calls chases back to the nearest enabled decorated function, so that there aren't gaps between call chains.

Indentation and call numbers with recursion

These features are especially useful in recursive and mutually recursive situations. We have to use OrderedDicts here because of doctest:

>>> from collections import OrderedDict
>>> @log_calls(log_call_numbers=True, log_retval=True, indent=True)
... def depth(d, key=None):
...     if not isinstance(d, dict):
...         return 0    # base case
...     elif not d:
...         return 1
...     else:
...         return max(map(depth, d.values(), d.keys())) + 1
>>> depth(
...     OrderedDict(
...         (('a', 0),
...          ('b', OrderedDict( (('c1', 10), ('c2', 11)) )),
...          ('c', 'text'))
...     )
... )
depth [1] <== called by <module>
    arguments: d=OrderedDict([('a', 0), ('b', OrderedDict([('c1', 10), ('c2', 11)])), ('c', 'text')])
    defaults:  key=None
    depth [2] <== called by depth [1]
        arguments: d=0, key='a'
        depth [2] return value: 0
    depth [2] ==> returning to depth [1]
    depth [3] <== called by depth [1]
        arguments: d=OrderedDict([('c1', 10), ('c2', 11)]), key='b'
        depth [4] <== called by depth [3]
            arguments: d=10, key='c1'
            depth [4] return value: 0
        depth [4] ==> returning to depth [3]
        depth [5] <== called by depth [3]
            arguments: d=11, key='c2'
            depth [5] return value: 0
        depth [5] ==> returning to depth [3]
        depth [3] return value: 1
    depth [3] ==> returning to depth [1]
    depth [6] <== called by depth [1]
        arguments: d='text', key='c'
        depth [6] return value: 0
    depth [6] ==> returning to depth [1]
    depth [1] return value: 2
depth [1] ==> returning to <module>
2

NOTE: The optional key parameter is for instructional purposes, so you can see the key that's paired with the value of d in the caller's dictionary. Typically the signature of this function would be just def depth(d), and the recursive case would return max(map(depth, d.values())) + 1.

The indent-aware writing method log_message()

log_calls exposes the method it uses to write its messages, log_message, whose full signature is:

`log_message(msg, *msgs, sep=' ', 
             extra_indent_level=1, prefix_with_name=False)`

This method takes one or more "messages" (anything you want to see as a string), and writes one final output message formed by joining those messages separated by sep.

extra_indent_level is a number of 4-column-wide indent levels specifying where to begin writing that message. This value x 4 is an offset in columns from the left margin of the visual frame established by log_calls – that is, an offset from the column in which the function entry/exit messages begin. The default of 1 aligns the message with the "arguments: " line of log_calls's output.

prefix_with_name is a bool. If true, the final message is prefaced with the possibly prefixed name of the function (using the prefix setting), plus possibly its call number in square brackets (if the log_call_numbers setting is true).

If a decorated function or method writes debugging messages, even multiline messages, it can use this method to write them so that they sit nicely within the log_calls visual frame.

Consider the following function:

>>> @log_calls(indent=True, log_call_numbers=True)
... def f(n):
...     if n <= 0:
...         print("*** Base case n <= 0")
...     else:
...         print("*** n=%d is %s,\\n    but we knew that."
...                       % (n, "odd" if n%2 else "even"))
...         print("*** (n=%d) We'll be right back, after this:" % n)
...         f(n-1)
...         print("*** (n=%d) We're back." % n)
>>> f(2)                                            # doctest: +SKIP
f [1] <== called by <module>
    arguments: n=2
*** n=2 is even,
    but we knew that.
*** (n=2) We'll be right back, after this:
    f [2] <== called by f [1]
        arguments: n=1
*** n=1 is odd,
    but we knew that.
*** (n=1) We'll be right back, after this:
        f [3] <== called by f [2]
            arguments: n=0
*** Base case n <= 0
        f [3] ==> returning to f [2]
*** (n=1) We're back.
    f [2] ==> returning to f [1]
*** (n=2) We're back.
f [1] ==> returning to <module>

The debugging messages written by f literally "stick out", and it becomes difficult, especially in more complex situations with multiple functions and methods, to figure out who actually wrote which message; hence the "(n=%d)" tag. If instead f uses log_message, all of its messages from each invocation align neatly within the log_calls visual frame. We take this opportunity to also illustrate the keyword parameters of log_message:

>>> @log_calls(indent=True, log_call_numbers=True)
... def f(n):
...     if n <= 0:
...         f.log_message("Base case n =", n, prefix_with_name=True)
...     else:
...         f.log_message("*** n=%d is %s,\\n    but we knew that."
...                       % (n, "odd" if n%2 else "even"),
...                       extra_indent_level=0)
...         f.log_message("We'll be right back", "after this:",
...                       sep=", ", prefix_with_name=True)
...         f(n-1)
...         f.log_message("We're back.", prefix_with_name=True)
>>> f(2)                                            # doctest: +SKIP
f [1] <== called by <module>
    arguments: n=2
*** n=2 is even,
    but we knew that.
    f [1]: We'll be right back, after this:
    f [2] <== called by f [1]
        arguments: n=1
    *** n=1 is odd,
        but we knew that.
        f [2]: We'll be right back, after this:
        f [3] <== called by f [2]
            arguments: n=0
            f [3]: Base case n = 0
        f [3] ==> returning to f [2]
        f [2]: We're back.
    f [2] ==> returning to f [1]
    f [1]: We're back.
f [1] ==> returning to <module>

The log_message() method works whether the output destination is stdout, another stream, a file, or a logger. The test file test_log_calls_more.py contains an example main__log_message__all_possible_output_destinations() which illustrates that.

See the full documentation for the log_message method for notes and internal links to further examples.

Advanced Features

log_calls provides a number of features beyond those already described. We'll only give an overview of them here. For a full account, see the complete documentation.

Dynamic control of settings

Sometimes, you'll need or want to change a log_calls setting for a decorated function on the fly. The major impediment to doing so is that the values of the log_calls parameters are set once the decorated function is interpreted. Those values are established once and for all when the Python interpreter parses the definition of a decorated function and creates a function object.

The problem, and two log_calls solutions

Even if a variable is used as a parameter value, its value at the time Python processes the definition is "frozen" for the created function object. Subsequently changing the value of the variable will not affect the behavior of the decorator.

For example, suppose DEBUG is a module-level variable initialized to False:

>>> DEBUG = False

and you use this code:

>>> @log_calls(enabled=DEBUG)
... def foo(**kwargs):
...     pass
>>> foo()       # No log_calls output: DEBUG is False

If later you set Debug = True and call foo, that call won't be logged, because the decorated foo's enabled setting is bound to the original value of DEBUG, established when the definition was processed:

>>> DEBUG = True
>>> foo()       # Still no log_calls output

log_calls provides two ways to overcome this limitation and dynamically control the settings of a decorated function:

The following two subsections give a brief introduction to these features, which the main documentation presents in depth.

The log_calls_settings attribute

log_calls adds an attribute log_calls_settings to a decorated function, through which you can access the decorator settings for that function. This attribute is an object which lets you control the settings for a decorated function via a mapping (dict-like) interface, and equivalently, via attributes of the object. The mapping keys and the attribute names are simply the log_calls keywords. log_calls_settings also implements many of the standard dict methods for interacting with the settings in familiar ways.

The mapping interface and the attribute interface to settings

Once you've decorated a function with log_calls,

>>> @log_calls()
... def f(*args, **kwargs):
...     return 91

you can access and change its settings via the log_calls_settings attribute of the decorated function, which behaves like a dictionary. You can read and write settings using the log_calls keywords as keys:

>>> f.log_calls_settings['enabled']
True
>>> f.log_calls_settings['enabled'] = False
>>> _ = f()                   # no output (not even 91, because of "_ = ")
>>> f.log_calls_settings['enabled']
False
>>> f.log_calls_settings['log_retval']
False
>>> f.log_calls_settings['log_retval'] = True
>>> f.log_calls_settings['log_elapsed']
False
>>> f.log_calls_settings['log_elapsed'] = True

You can also use the same keywords as attributes of log_calls_settings instead of as keywords to the mapping interface; they're completely equivalent:

>>> f.log_calls_settings.log_elapsed
True
>>> f.log_calls_settings.log_call_numbers
False
>>> f.log_calls_settings.log_call_numbers = True
>>> f.log_calls_settings.enabled = True     # turn it back on!
>>> _ = f()                                 # doctest: +ELLIPSIS
f [1] <== called by <module>
    arguments: <none>
    f [1] return value: 91
    elapsed time: ... [secs]
f [1] ==> returning to <module>

>>> f.log_calls_settings.log_args = False
>>> f.log_calls_settings.log_elapsed = False
>>> f.log_calls_settings.log_retval = False
>>> _ = f()                                 # doctest: +ELLIPSIS
f [2] <== called by <module>
f [2] ==> returning to <module>

The log_calls_settings attribute has a length (14), its keys and items() can be iterated through, you can use in to test for key membership, and it has an update() method. As with an ordinary dictionary, attempting to access a nonexistent setting raises KeyError. Unlike an ordinary dictionary, you can't add new keys – the log_calls_settings dictionary is closed to new members, and attempts to add one will also raise KeyError.

The update(), as_OrderedDict() and as_dict() methods – and a typical use-case

The update() method of the log_calls_settings object lets you update several settings at once:

>>> f.log_calls_settings.update(
...     log_args=True, log_elapsed=False, log_call_numbers=False,
...     log_retval=False)
>>> _ = f()
f <== called by <module>
    arguments: <none>
f ==> returning to <module>

You can retrieve the entire collection of settings as either an OrderedDict using the as_OrderedDict() method, or as a dict using as_dict(). Either can serve as a snapshot of the settings, so that you can change settings temporarily, use the new settings, and then use update() to restore settings from the snapshot. in addition to taking keyword arguments, as shown above, update() can take one or more dicts – in particular, a dictionary retrieved from one of the as_* methods. For example:

Retrieve settings (here, as an OrderedDict because those are more doctest-friendly, but using as_dict() suffices):

>>> od = f.log_calls_settings.as_OrderedDict()
>>> od                      # doctest: +NORMALIZE_WHITESPACE
OrderedDict([('enabled', True),           ('args_sep', ', '),
             ('log_args', True),          ('log_retval', False),
             ('log_elapsed', False),      ('log_exit', True),
             ('indent', False),           ('log_call_numbers', False),
             ('prefix', ''),              ('file', None),
             ('logger', None),            ('loglevel', 10),
             ('record_history', False),   ('max_history', 0)])

change settings temporarily:

>>> f.log_calls_settings.update(
...     log_args=False, log_elapsed=True, log_call_numbers=True,
...     log_retval=True)

use the new settings for f:

>>> _ = f()                     # doctest: +ELLIPSIS
f [4] <== called by <module>
    f [4] return value: 91
    elapsed time: ... [secs]
f [4] ==> returning to <module>

and restore original settings, this time passing the retrieved settings dictionary rather than keywords (we could pass **od, but that's unnecessary and a pointless expense):

>>> f.log_calls_settings.update(od)
>>> od == f.log_calls_settings.as_OrderedDict()
True

Indirect values

log_calls provides a second way to access and change settings on the fly. The decorator lets you specify any parameter except prefix or max_history with one level of indirection, by using indirect values: an indirect value is a string that names a keyword argument of the decorated function. It can be an explicit keyword argument present in the signature of the function, or an implicit keyword argument that ends up in **kwargs (if that's present in the function's signature). When the decorated function is called, the arguments passed by keyword, and the decorated function's explicit keyword parameters with default values, are both searched for the named parameter; if it is found and of the correct type, its value is used; otherwise the default value for the log_calls parameter is used.

To specify an indirect value for a parameter whose normal values are or can be strs (only args_sep and logger, at present), append an '=' to the value. For consistency, any indirect value can end in a trailing '=', which is stripped. Thus, enabled='enable_=' indicates an indirect value to be supplied by the keyword (argument or parameter) enable_ of the decorated function.

For example, in:

>>> @log_calls(args_sep='sep=', prefix="*** ")
... def f(a, b, c, sep='|'): pass

args_sep has an indirect value which names f's explicit keyword parameter sep, and prefix has a direct value as it always does. A call can dynamically override the default value '|' in the signature of f by supplying a value:

>>> f(1, 2, 3, sep=' / ')
*** f <== called by <module>
    arguments: a=1 / b=2 / c=3 / sep=' / '
*** f ==> returning to <module>

or it can use f's default value by not supplying a sep argument:

>>> f(1, 2, 3)
*** f <== called by <module>
    arguments: a=1|b=2|c=3
    defaults:  sep='|'
*** f ==> returning to <module>

A decorated function doesn't have to explicitly declare the parameter named as an indirect value, if its signature includes **kwargs: the intermediate parameter can be an implicit keyword parameter, passed by a caller but not present in the function's signature. Consider:

>>> @log_calls(enabled='enable')
... def func1(a, b, c, **kwargs): pass
>>> @log_calls(enabled='enable')
... def func2(z, **kwargs): func1(z, z+1, z+2, **kwargs)

When the following statement is executed, the calls to both func1 and func2 will be logged:

>>> func2(17, enable=True)
func2 <== called by <module>
    arguments: z=17, [**]kwargs={'enable': True}
func1 <== called by func2
    arguments: a=17, b=18, c=19, [**]kwargs={'enable': True}
func1 ==> returning to func2
func2 ==> returning to <module>

whereas neither of the following two statements will trigger logging:

>>> func2(42, enable=False)     # no log_calls output
>>> func2(99)                   # no log_calls output

See the section in the full documentation on indirect values for several more examples and useful techniques involving indirect values. The test suite log_calls/tests/test_log_calls_more.py also contains further doctests/examples.

Call history and statistics

log_calls always collects a few basic statistics about calls to a decorated function. It can collect the entire history of calls to a function if asked to, or just the most recent n calls; the *_history parameters, discussed next, determine these settings. The statistics and history are accessible via the stats attribute which log_calls adds to a decorated function.

The record_history and max_history parameters

The two settings parameters we haven't yet discussed govern the recording of a decorated function's call history.

The record_history parameter (default – False)

When the record_history setting is true for a decorated function f, log_calls will retain a sequence of records holding the details of each logged call to that function. That history is accessible via attributes of the stats object.

Let's define a function f with record_history set to true:

>>> @log_calls(record_history=True, log_call_numbers=True, log_exit=False)
... def f(a, *args, x=1, **kwargs): pass

In the following subsections, we'll call this function, manipulate its settings, and examine its statistics.

The max_history parameter (default – 0)

The max_history parameter determines how many call history records are retained for a decorated function whose call history is recorded. If this value is 0 or negative, unboundedly many records are retained (unless or until you set the record_history setting to false, or call the stats.clear_history() method). If the value of max_history is > 0, log_calls will retain at most that many records, discarding the oldest records to make room for newer ones if the history reaches capacity.

You cannot change max_history using the mapping interface or the attribute of the same name; attempts to do so raise ValueError. The only way to change its value is with the stats.clear_history() method, discussed below.

The stats attribute and its attributes

The stats attribute of a decorated function is an object that provides statistics and data about calls to a decorated function:

The first three don't depend on the record_history setting at all.The last three yield empty results unless record_history is true.

The stats attribute also provides one method, stats.clear_history().

Let's call the function f twice:

>>> f(0)
f [1] <== called by <module>
    arguments: a=0
    defaults:  x=1
>>> f(1, 100, 101, x=1000, y=1001)
f [2] <== called by <module>
    arguments: a=1, [*]args=(100, 101), x=1000, [**]kwargs={'y': 1001}

and explore its stats.

The num_calls_logged attribute

The stats.num_calls_logged attribute contains the number of the most recent logged call to a decorated function. Thus, f.stats.num_calls_logged will equal 2:

>>> f.stats.num_calls_logged
2

This counter gets incremented when a decorated function is called that has logging enabled, even if its log_call_numbers setting is false.

The num_calls_total attribute

The stats.num_calls_total attribute holds the total number of calls to a decorated function. This counter gets incremented even when logging is disabled for a function.

For example, let's now disable logging for f and call it 3 more times:

>>> f.log_calls_settings.enabled = False
>>> for i in range(3): f(i)

Now stats.num_calls_total will equal 5, but f.stats.num_calls_logged will still equal 2:

>>> f.stats.num_calls_total
5
>>> f.stats.num_calls_logged
2

Finally, let's re-enable logging for f and call it again. The displayed call number will be the number of the logged call, 3, the same value as f.stats.num_calls_logged after the call:

>>> f.log_calls_settings.enabled = True
>>> f(10, 20, z=5000)
f [3] <== called by <module>
    arguments: a=10, [*]args=(20,), [**]kwargs={'z': 5000}
    defaults:  x=1

>>> f.stats.num_calls_total
6
>>> f.stats.num_calls_logged
3

ATTENTION: Thus, log_calls has some overhead even when it's disabled, and somewhat more when it's enabled. So, comment it out in production code!

The elapsed_secs_logged attribute

The stats.elapsed_secs_logged attribute holds the sum of the elapsed times of all logged calls to a decorated function, in seconds. Here's its value for the 3 logged calls to f above:

>>> f.stats.elapsed_secs_logged   # doctest: +SKIP
6.67572021484375e-06
The history attribute

The stats.history attribute of a decorated function provides the call history of logged calls to the function as a tuple of records. Each record is a namedtupleof type CallRecord. Here's f's call history, in (almost) human-readable form:

>>> print('\\n'.join(map(str, f.stats.history)))   # doctest: +SKIP
CallRecord(call_num=1, argnames=['a'], argvals=(0,), varargs=(),
                       explicit_kwargs=OrderedDict(),
                       defaulted_kwargs=OrderedDict([('x', 1)]), implicit_kwargs={},
                       retval=None, elapsed_secs=2.1457672119140625e-06,
                       timestamp='10/28/14 15:56:13.733763',
                       prefixed_func_name='f', caller_chain=['<module>'])
CallRecord(call_num=2, argnames=['a'], argvals=(1,), varargs=(100, 101),
                       explicit_kwargs=OrderedDict([('x', 1000)]),
                       defaulted_kwargs=OrderedDict(), implicit_kwargs={'y': 1001},
                       retval=None, elapsed_secs=1.9073486328125e-06,
                       timestamp='10/28/14 15:56:13.734102',
                       prefixed_func_name='f', caller_chain=['<module>'])
CallRecord(call_num=3, argnames=['a'], argvals=(10,), varargs=(20,),
                       explicit_kwargs=OrderedDict(),
                       defaulted_kwargs=OrderedDict([('x', 1)]), implicit_kwargs={'z': 5000},
                       retval=None, elapsed_secs=2.1457672119140625e-06,
                       timestamp='10/28/14 15:56:13.734412',
                       prefixed_func_name='f', caller_chain=['<module>'])

The CSV representation pairs the argnames with their values in argvals (the argnames become column headings), making it even more human-readable, especially when viewed in a program that presents CSVs nicely.

The history_as_csv attribute

The value stats.history_as_csv attribute is a text representation in CSV format of a decorated function's call history. You can save this string and import it into the program or tool of your choice for further analysis. (Note: if your tool of choice is Pandas, you can use the stats attribute stats.history_as_DataFrame to obtain history directly in the representation you really want.) The CSV representation breaks out each argument into its own column, throwing away information about whether an argument's value was passed or is a default.

The CSV separator is '|' rather than ',' because some of the fields – args, kwargs and caller_chain – use commas intrinsically. Let's examine one more history_as_csv for a function that has all of those fields:

>>> @log_calls(record_history=True, log_call_numbers=True,
...            log_exit=False, log_args=False)
... def f(a, *extra_args, x=1, **kw_args): pass
>>> def g(a, *args, **kwargs): f(a, *args, **kwargs)
>>> @log_calls(log_exit=False, log_args=False)
... def h(a, *args, **kwargs): g(a, *args, **kwargs)
>>> h(0)
h <== called by <module>
f [1] <== called by g <== h
>>> h(10, 17, 19, z=100)
h <== called by <module>
f [2] <== called by g <== h
>>> h(20, 3, 4, 6, x=5, y='Yarborough', z=100)
h <== called by <module>
f [3] <== called by g <== h

Here's the call history in CSV format:

>>> print(f.stats.history_as_csv)        # doctest: +NORMALIZE_WHITESPACE, +ELLIPSIS
call_num|a|extra_args|x|kw_args|retval|elapsed_secs|timestamp|prefixed_fname|caller_chain
1|0|()|1|{}|None|...|...|'f'|['g', 'h']
2|10|(17, 19)|1|{'z': 100}|None|...|...|'f'|['g', 'h']
3|20|(3, 4, 6)|5|{'y': 'Yarborough', 'z': 100}|None|...|...|'f'|['g', 'h']
<BLANKLINE>

Ellipses are for the elapsed_secs and timestamp fields. As usual, log_calls will use whatever names you use for varargs parameters (here, extra_args and kw_args). Whatever the name of the kwargs parameter, items within that field are guaranteed to be in sorted order.

The history_as_DataFrame attribute

The stats.history_as_DataFrame attribute returns the history of a decorated function as a Pandas DataFrame, if the Pandas library is installed. This saves you the intermediate step of calling DataFrame.from_csv with the proper arguments (and also saves you from having to know or care what those are).

If Pandas is not installed, the value of this attribute is None.

The documentation for the record_history decorator contains an example of the history_as_DataFrame attribute which also illustrates its use in an IPython notebook.

The clear_history(max_history=0) method

As you might expect, the stats.clear_history(max_history=0) method clears the call history of a decorated function. In addition, it resets all running sums: num_calls_total and num_calls_logged are reset to 0, and elapsed_secs_logged is reset to 0.0.

It is the only way to change the value of the max_history setting, via the optional keyword parameter for which you can supply any (integer) value, by default 0.

The function f has a nonempty history, as we just saw. Let's clear f's history, setting max_history to 33, and check that settings and stats tallies are reset:

>>> f.stats.clear_history(max_history=33)
>>> f.log_calls_settings.max_history
33
>>> f.stats.num_calls_logged
0
>>> f.stats.num_calls_total
0
>>> f.stats.elapsed_secs_logged
0.0

The record_history decorator

The record_history decorator is a stripped-down version of log_calls which records calls to a decorated function but writes no messages. You can think of it as log_calls with the record_history and log_call_numbers settings always true, and without any of the message-logging apparatus.

record_history has only three keyword parameters:

Just as the settings of log_calls for a decorated function are accessible dynamically through the log_calls_settings attribute, these settings of record_history are exposed via a record_history_settings attribute. record_history_settings is an object of the same type as log_calls_settings, so it has the same methods and behaviors described in the log_calls_settings section.

Functions decorated by record_history have a full-featured stats attribute, as described in the Call history and statistics section above.

See the documentation for record_history for examples and tests.

ATTENTION: Like log_calls, record_history has some overhead. So, comment it out in production code!

Appendix – Keyword Parameters Reference

The log_calls decorator takes various keyword arguments, all with hopefully sensible defaults:

Keyword parameter Default value Description
enabled True An int. If true, then log_calls will output (or "log") messages.
args_sep ', ' str used to separate arguments. The default is ', ', which lists all args on the same line. If args_sep='\n' is used, or more generally if the args_sep string ends in \n, then additional spaces are appended to the separator for a neater display. Other separators in which '\n' occurs are left unchanged, and are untested – experiment/use at your own risk.
log_args True If true, arguments passed to the decorated function, and default values used by the function, will be logged.
log_retval False If true, log what the decorated function returns. At most 60 chars are printed, with a trailing ellipsis if the value is truncated.
log_exit True If true, the decorator will log an exiting message after calling the function of the form f returning to ==> caller, and before returning what the function returned.
log_call_number False If true, display the (1-based) number of the function call, e.g. f [3] called by <== <module> and f [3] returning to ==> <module> for the 3rd logged call. This would correspond to the 3rd record in the function's call history, if record_history is true.
log_elapsed False If true, display how long it took the function to execute, in seconds.
indent False The indent parameter indents each new level of logged messages by 4 spaces, giving a visualization of the call hierarchy.
prefix '' A str to prefix the function name with in logged messages: on entry, in reporting return value (if log_retval is true) and on exit (if log_exit is true).
file sys.stdout If logger is None, a stream (an instance of type io.TextIOBase) to which log_calls will print its messages. This value is supplied to the file keyword parameter of the print function.
logger None If not None, either a logger (a logging.Logger instance), or the name of a logger (a str that will be passed to logging.getLogger()); that logger will be used to write messages, provided it exists/has handlers. Otherwise, print is used.
loglevel logging.DEBUG Logging level, ignored unless a logger is specified. This should be one of the logging levels recognized by the logging module – one of the constants defined by that module, or a custom level you've added.
record_history False If true, a list of records will be kept, one for each logged call to the function. Each record holds: call number (1-based), arguments and defaulted keyword arguments, return value, time elapsed, time of call, prefixed function name, caller (call chain). The value of this attribute is a tuple.
max_history 0 An int. value > 0 --> store at most value-many records, oldest records overwritten; value ≤ 0 --> store unboundedly many records. Ignored unless record_history is true.
settings_loc '' A string giving the path to a settings file. If the path is a directory and not a file, log_calls looks for a file .log_calls in that directory; otherwise, it looks for the named file. The format of a settings file is: zero or more lines of the form setting = value; lines whose first non-whitespace character is '#' are comments. These settings are defaults: other settings passed to log_calls override any values for those settings from the file.

— Brian O'Neill, October-November 2014, NYC