Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I'm using a variant of the following decorator for memoization (found here):

# note that this decorator ignores **kwargs
def memoize(obj):
    cache = obj.cache = {}

    def memoizer(*args, **kwargs):
        if args not in cache:
            cache[args] = obj(*args, **kwargs)
        return cache[args]
    return memoizer

I'm wondering, is there a reasonable way to memoize based on both args and kwargs, particularly in cases where two function calls specified with arguments assigned differently positionally and through keyword, but have the exact same arguments?

share|improve this question
up vote 1 down vote accepted

If you are using parameters either always as positionals or always as keywords, Thorsten solution works fine. But, if you want to consider equal calls that give to the parameters the same values, indipendently of how the parameters are passed, then you have to do something more complex:

import inspect

def make_key_maker(func):
    args_spec = inspect.getargspec(func)

    def key_maker(*args, **kwargs):
        left_args = args_spec.args[len(args):]
        num_defaults = len(args_spec.defaults or ())
        defaults_names = args_spec.args[-num_defaults:]

        if not set(left_args).symmetric_difference(kwargs).issubset(defaults_names):
            # We got an error in the function call. Let's simply trigger it
            func(*args, **kwargs)

        start = 0
        key = []
        for arg, arg_name in zip(args, args_spec.args):
            if arg_name in defaults_names:
                start += 1

        for left_arg in left_args:
            except KeyError:

            # Increase index if we used a default, or if the argument was provided
            if left_arg in defaults_names:
                start += 1
        return tuple(key)

    return key_maker

The above functions tries to map keyword arguments(and defaults) to positional and uses the resultant tuple as key. I tested it a bit and it seems to work properly in most cases. It fails when the target function also uses a **kwargs argument.

>>> def my_function(a,b,c,d,e=True,f="something"): pass
>>> key_maker = make_key_maker(my_function)
>>> key_maker(1,2,3,4)
(1, 2, 3, 4, True, 'something')
>>> key_maker(1,2,3,4, e=True)               # same as before
(1, 2, 3, 4, True, 'something')
>>> key_maker(1,2,3,4, True)                 # same as before
(1, 2, 3, 4, True, 'something')
>>> key_maker(1,2,3,4, True, f="something")  # same as before
(1, 2, 3, 4, True, 'something')
>>> key_maker(1,2,3,4, True, "something")    # same as before
(1, 2, 3, 4, True, 'something')
>>> key_maker(1,2,3,d=4)                     # same as before
(1, 2, 3, 4, True, 'something')
>>> key_maker(1,2,3,d=4, f="something")      # same as before
(1, 2, 3, 4, True, 'something')
share|improve this answer
So I suppose the answer is that there's no simple way. Correct me if I'm wrong, but it seems like you've done all the dirty work, and at this point, to handle kwargs, it would work to pop any used kwargs, and then make a final entry in the generated key a tuple of remaining key-value pairs, sorted by argument name? – acjay Jan 31 '13 at 16:48
@acjohnson55 Uhm it might be easier, but I don't know whether it will always work. Keep in mind you always have to deal with defaults, so you must always do some trick to find out which defaults where used. I don't know whether the resultant code will be much smaller/simpler. – Bakuriu Jan 31 '13 at 17:18
Alright, well, it seems like for now I'm better off just keeping funsction I want to memoize simple, but I think your approach is the right basis for something that could work in the general case. – acjay Jan 31 '13 at 19:05
import inspect
def memoize(obj):
    cache = obj.cache = {}
    def memoizer(*args, **kwargs):
        kwargs.update(dict(zip(inspect.getargspec(obj).args, args)))
        key = tuple(kwargs.get(k, None) for k in inspect.getargspec(obj).args)
        if key not in cache:
            cache[key] = obj(**kwargs)
        return cache[key]
    return memoizer
share|improve this answer
This does not work. co_varnames is the list of all variables defined in the function. If you want the names of the parameters you must use inspect.getargspec – Bakuriu Jan 31 '13 at 10:57
>>> def my_func(a,b,c,d): e=5 ... >>> print my_func.__code__.co_varnames ('a', 'b', 'c', 'd', 'e') Note the e at the end which is not a parameter at all! – Bakuriu Jan 31 '13 at 11:11
Yes. co_varnames lists the names of all local variables of the function. This includes the parameters but only for extremely simple function it will contain only the parameters. – Bakuriu Jan 31 '13 at 11:58
@Bakuriu thx, ive edited my answer – ndpu Feb 1 '13 at 8:15

In general, it's not possible to infer that two calls have the same parameter meaning. Consider the calls


Which of these (if any) are equivalent depends on whether the positional argument is called foo or bar: if the argument is called foo, then the first call matches the second, etc. However, the positional parameter may also have an entirely different name.

IOW, you need to reflect on the function to be called, which, in turn, may not be possible (e.g. if it is implemented in C, or is itself a wrapper that only processes *args, **kwargs).

If you want to go the reflection route, something like ndpu's response is a good start.

share|improve this answer
If the function is a python function it is possible to determine how the parameters are parsed. You simply have to use inspect.getargspec to obtain all the required informatoin(parameter names, order, defaults values, starred arguments etc.) – Bakuriu Jan 31 '13 at 11:53
Try inspect.getargspec("".split) – Martin v. Löwis Jan 31 '13 at 13:12
Ahem. Please read again the first 7 words of my previous comment, then try inspect.getargspec("".split) on a python command line and read the exception message: TypeError: <built-in method split of str object at 0x7fb55abac508> is not a Python function – Bakuriu Jan 31 '13 at 17:14
You are right. I misread your comment as stating that it is possible to determine how parameters are parsed for a function. – Martin v. Löwis Jan 31 '13 at 17:26

You just have to find a good way to build a key from both args and kwargs. Maybe try this:

import functools
from collections import OrderedDict

# note that this decorator ignores **kwargs
def memoize(obj):
    def make_key(args, kwargs):
        ordered_kwargs = OrderedDict(kwargs)
        parameters = tuple([args, 
        return parameters
    cache = obj.cache = {}

    def memoizer(*args, **kwargs):
        key = make_key(args, kwargs)
        if key not in cache:
            cache[key] = obj(*args, **kwargs)
            print "Not using cached result for key %s" % str(key)
            print "Using cached result for key %s" % str(key)
        return cache[key]
    return memoizer

def calculate_sum(*args, **kwargs):
    return sum(args)


I put some print-statements into memoizer, just to demonstrate that it works. Output is:

Not using cached result for key ((4, 7, 9, 2), ('flag',), (0,))
Not using cached result for key ((4, 7, 9, 3), (), ())
Not using cached result for key ((4, 7, 9, 2), ('flag',), (1,))
Using cached result for key ((4, 7, 9, 2), ('flag',), (0,))

I'm sure I didn't tackle all corner-cases, especially if the values passed-in as kwargs (or even args) are not hashable. But maybe it can serve as a good starting-point.

share|improve this answer
This may work when you have some parameters accessed only as positional arguments, and other parameters accessed only as keywords. If you want to consider equals the calls f(a,b,third_param=c) and f(a,b,c) then you must do something more complex to map the keywords to the correct positional arguments. It's probably required to use inspect.getargspec – Bakuriu Jan 31 '13 at 10:26
By the way why are you using OrderedDict? According to python's documentation calls to items/keys/values etc without modifying the dict will all have the same order, so doing zip(kwargs.keys(), kwargs.values()) will always match the keys to the correct values. – Bakuriu Jan 31 '13 at 11:56
(1) Yes, you'Re right, I didn't tackle this requirement, will think about it for a while (2) What about calling calculate_sum(4,6,flag=0,x=7) vs. calculate_sum(4,6,x=7,flag=0)? they are equivalent, and should be treated so. – Thorsten Kranz Jan 31 '13 at 12:06

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.