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Consider the following:

def name(self):

    if not hasattr(self, '_name'):

    	# expensive calculation
    	self._name = 1 + 1

    return self._name

I'm new, but I think the caching could be factored out into a decorator. Only I didn't find one like it ;)

PS the real calculation doesn't depend on mutable values

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There may be a decorator out there that has some capability like that, but you haven't thoroughly specified what you want. What kind of caching backend are you using? And how will the value be keyed? I'm assuming from your code that what you are really asking for is a cached read-only property. –  David Berger May 2 '09 at 16:22

9 Answers 9

up vote 16 down vote accepted

There are memoizing decorators that perform what you call "caching", e.g. http://snippets.dzone.com/posts/show/4840 -- they typically work on functions as such (whether meant to become methods or not) whose results depend on their arguments (not on mutable things such as self!-) and so keep a separate memo-dict.

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Nowadays there's a memoized decorator in the PythonDecoratorLibrary that works with both function and methods. –  martineau Dec 23 '13 at 13:57

Starting from Python 3.2 there is a built-in decorator:

@functools.lru_cache(maxsize=100, typed=False)

Decorator to wrap a function with a memoizing callable that saves up to the maxsize most recent calls. It can save time when an expensive or I/O bound function is periodically called with the same arguments.

Example of an LRU cache for computing Fibonacci numbers:

def fib(n):
    if n < 2:
        return n
    return fib(n-1) + fib(n-2)

>>> print([fib(n) for n in range(16)])
[0, 1, 1, 2, 3, 5, 8, 13, 21, 34, 55, 89, 144, 233, 377, 610]

>>> print(fib.cache_info())
CacheInfo(hits=28, misses=16, maxsize=None, currsize=16)
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Backport code.activestate.com/recipes/… –  Kos Dec 23 '13 at 12:14
Note that this works only for immutable function arguments. –  gerrit Aug 20 '14 at 16:24

It sounds like you're not asking for a general-purpose memoization decorator (i.e., you're not interested in the general case where you want to cache return values for different argument values). That is, you'd like to have this:

x = obj.name  # expensive
y = obj.name  # cheap

while a general-purpose memoization decorator would give you this:

x = obj.name()  # expensive
y = obj.name()  # cheap

I submit that the method-call syntax is better style, because it suggests the possibility of expensive computation while the property syntax suggests a quick lookup.

[Update: The class-based memoization decorator I had linked to and quoted here previously doesn't work for methods. I've replaced it with a decorator function.] If you're willing to use a general-purpose memoization decorator, here's a simple one:

def memoize(function):
  memo = {}
  def wrapper(*args):
    if args in memo:
      return memo[args]
      rv = function(*args)
      memo[args] = rv
      return rv
  return wrapper

Example usage:

def fibonacci(n):
  if n < 2: return n
  return fibonacci(n - 1) + fibonacci(n - 2)

Another memoization decorator with a limit on the cache size can be found here.

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None of the decorators mentioned in all the answers work for methods! Probably because they're class-based. Only one self is passed? Others work fine, but it's crufty to store values in functions. –  Tobias May 2 '09 at 18:03
I think you may run into a problem if args is not hashable. –  Unknown May 3 '09 at 3:29
@Unknown Yes, the first decorator that I quoted here is limited to hashable types. The one at ActiveState (with the cache size limit) pickles the arguments into a (hashable) string which is of course more expensive but more general. –  Nathan Kitchen May 3 '09 at 5:43
@vanity Thanks for pointing out the limitations of the class-based decorators. I've revised my answer to show a decorator function, which works for methods (I actually tested this one). –  Nathan Kitchen May 3 '09 at 6:08
You might use an MD5 digest of the args to make it hash-able. Not sure if that's super performant or not. –  bitcycle May 8 '14 at 23:36

Werkzeug has a cached_property decorator (docs, source)

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Yes. This is worthwhile to distinguish from the general memoization case, as standard memoization doesn't work if the class isn't hashable. –  Jameson Quinn Jan 8 '14 at 15:16
class memorize(dict):
    def __init__(self, func):
        self.func = func

    def __call__(self, *args):
        return self[args]

    def __missing__(self, key):
        result = self[key] = self.func(*key)
        return result

Sample uses:

>>> @memorize
... def foo(a, b):
...     return a * b
>>> foo(2, 4)
>>> foo
{(2, 4): 8}
>>> foo('hi', 3)
>>> foo
{(2, 4): 8, ('hi', 3): 'hihihi'}
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Ah, just needed to find the right name for this: "Lazy property evaluation".

I do this a lot too; maybe I'll use that recipe in my code sometime.

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There is yet another example of a memoize decorator at Python Wiki:


That example is a bit smart, because it won't cache the results if the parameters are mutable. (check that code, it's very simple and interesting!)

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If you are using Django Framework, it has such a property to cache a view or response of API's using @cache_page(time) and there can be other options as well.

@cache_page(60 * 15, cache="special_cache")
def my_view(request):

More details can be found here.

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I implemented something like this, using pickle for persistance and using sha1 for short almost-certainly-unique IDs. Basically the cache hashed the code of the function and the hist of arguments to get a sha1 then looked for a file with that sha1 in the name. If it existed, it opened it and returned the result; if not, it calls the function and saves the result (optionally only saving if it took a certain amount of time to process).

That said, I'd swear I found an existing module that did this and find myself here trying to find that module... The closest I can find is this, which looks about right: http://chase-seibert.github.io/blog/2011/11/23/pythondjango-disk-based-caching-decorator.html

The only problem I see with that is it wouldn't work well for large inputs since it hashes str(arg), which isn't unique for giant arrays.

It would be nice if there were a unique_hash() protocol that had a class return a secure hash of its contents. I basically manually implemented that for the types I cared about.

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