How can I make @functools.lru_cache decorator ignore some of the function arguments with regard to caching key?

For example, I have a function that looks like this:

def find_object(db_handle, query):
    # (omitted code)
    return result

If I apply lru_cache decorator just like that, db_handle will be included in the cache key. As a result, if I try to call the function with the same query, but different db_handle, it will be executed again, which I'd like to avoid. I want lru_cache to consider query argument only.

2 Answers 2


With cachetools you can write:

from cachetools import cached
from cachetools.keys import hashkey

from random import randint

@cached(cache={}, key=lambda db_handle, query: hashkey(query))
def find_object(db_handle, query):
    print("processing {0}".format(query))
    return query

queries = list(range(5))
for q in queries:
    print("result: {0}".format(find_object(randint(0, 1000), q)))

You will need to install cachetools (pip install cachetools).

The syntax is:

    key=lambda <all-function-args>: hashkey(<relevant-args>)

Here is another example that includes keyword args:

    key=lambda a, b, c=1, d=2: hashkey(a, c)
def my_func(a, b, c=1, d=2):
    return a + c

In the example above note that the lambda function input args match the my_func args. You don't have to exactly match the argspec if you don't need to. For example, you can use kwargs to squash out things that aren't needed in the hashkey:

    key=lambda a, b, c=1, **kwargs: hashkey(a, c)
def my_func(a, b, c=1, d=2, e=3, f=4):
    return a + c

In the above example we don't care about d=, e= and f= args when looking up a cache value, so we can squash them all out with **kwargs.

  • 8
    can you please elaborate on this answer with what key and hashkey are?
    – Tommy
    Nov 19, 2021 at 1:32
  • 5
    For anyone else wanting an answer to @Tommy's comment, I was able to find the description of key and hashkey in this section of the cachetools docs. Essentially, key is a function which returns a cache key, and hashkey() returns a tuple of its args as an internal cache key and verifies that each arg is hashable. Feb 16, 2022 at 22:11
  • What does this print? Does it print: processing 0\n result: 0\n processing 1\n result: 1\n processing 2\n result: 2\n processing 3\n result: 3\n processing 4\n result: 4\n result: 0\n result: 1\n result: 2\n result: 3\n result: 4\n ???
    – joseville
    Feb 24, 2022 at 18:11
  • 1
    @Tommy, I edited the answer to include more explanation around the syntax needed. Hope this helps.
    – JGC
    Mar 24, 2022 at 16:44
  • in general for function def function(a,b): where only b is to be used as a cache key, do @cached(cache={}, key=lambda a,b: hashkey(b)) (syntax is confusing on the first look)
    – stam
    Feb 10, 2023 at 17:58

I have at least one very ugly solution. Wrap db_handle in a object that's always equals, and unwrap it inside the function.

It requires a decorator with quite a bit of helper functions, which makes stack trace quite confusing.

class _Equals(object):
    def __init__(self, o):
        self.obj = o

    def __eq__(self, other):
        return True

    def __hash__(self):
        return 0

def lru_cache_ignoring_first_argument(*args, **kwargs):
    lru_decorator = functools.lru_cache(*args, **kwargs)

    def decorator(f):
        def helper(arg1, *args, **kwargs):
            arg1 = arg1.obj
            return f(arg1, *args, **kwargs)

        def function(arg1, *args, **kwargs):
            arg1 = _Equals(arg1)
            return helper(arg1, *args, **kwargs)

        return function

    return decorator
  • I am reviving this very old answer, but how would you use the lru_cache_ignoring_first_argument decorator?
    – Sanandrea
    Dec 20, 2022 at 17:00
  • @Sanandrea, you just put @lru_cache_ignoring_first_argument()directly above your function.
    – Henrik
    Nov 21, 2023 at 7:24

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