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I am writing a method to generate cache keys for caching function results, the key is based on a combination of function name and hash value of parameters.

Currently I am using hashlib to hash the serialized version of parameters, however the operation is very expensive to serialize large objects, so what's the alternative?

#get the cache key for storage
def cache_get_key(*args):
    import hashlib
    serialise = []
    for arg in args:
    key = hashlib.md5("".join(serialise)).hexdigest()
    return key

UPDATE: I tried using hash(str(args)), but if args have relatively large data in it, still takes long time to compute the hash value. Any better way to do it?

Actually str(args) with large data takes forever...

share|improve this question
Your example doesn't align with your question. You're not hashing an object, you're hashing several objects. – Tim McNamara Apr 10 '12 at 22:01
Curious, why don't you just use a dictionary with function names keys to dictionarys with input arguments as keys to results? – 8bitwide Apr 10 '12 at 22:02
@TimMcNamara the current way right now I need to serialize all objects to string, then md5 it. – James Lin Apr 10 '12 at 22:04
@JamesLin At the very least, you probably want a nonempty string to use in join using non-hex characters. Consider the hashes of ("foo", "bar") and ("fo", "obar"). – Michael Mior Apr 10 '12 at 22:06
I might be confused about the question, so correct me if I'm way off base.The python dictionary is basically as hash with a lookup run time of more or less O(1). So make a dictionay { Functionname key:{}}. a dictionary of dictionaries. You index a dictionary by function name. That dictionary is {(*args tuple):function results}. A dictionary of results for that function, indexed by the arguments passed in. – 8bitwide Apr 10 '12 at 22:20

Assuming you made the object, and it is composed of smaller components (it is not a binary blob), you can precompute the hash when you build the object by using the hashes of its subcomponents.

For example, rather than serialize(repr(arg)), do arg.precomputedHash if isinstance(arg, ...) else serialize(repr(arg))

If you neither make your own objects nor use hashable objects, you can perhaps keep a memoization table of objectreferences -> hashes, assuming you don't mutate the objects. Worst case, you can use a functional language which allows for memoization, since all objects in such a language are probably immutable and hence hashable.

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how could you precompute hash from the smaller hashes? You would still have to dynamically combine those smaller hashes and hash them. You can't precompute that, right? Or am I missing something? – Alexander Bird Apr 10 '12 at 22:09
@Thr4wn: Suppose we called these objects MyObj. Then MyObj(MyObj(foo, bar, baz), MyObj(bing, biz)) would only require 1 hash at the time you combine the two MyObjs into the larger MyObj. You can precompute the hashes of the smaller objects ahead of time. Even if you didn't have this structure, the point is that at some point you needed to read all that data in an O(datasize) operator. Therefore you should be able to do the hashing at object-creation/reading time rather than at the last minute. – ninjagecko Apr 10 '12 at 22:21
def cache_get_key(*args):
    return hash(str(args))

or (if you really want to use the hashlib library)

def cache_get_key(*args):
    return hashlib.md5(str(args)).hexdigest()

I wouldn't bother rewriting code to make arrays into strings. Use the inbuilt one.

alternative solution

below is the solution @8bitwide suggested. No hashing required at all with this solution!

def foo(x, y):
    return x+y+1

result1 = foo(1,1)
result2 = foo(2,3)

results = {}
results[foo] = {}
results[foo][ [1,1] ] = result1
results[foo][ [2,3] ] = result2
share|improve this answer

I've seen people feed an arbitrary python object to random.seed(), and then use the first value back from random.random() as the "hash" value. It doesn't give a terrific distribution of values (can be skewed), but it seems to work for arbitrary objects.

If you don't need cryptographic-strength hashes, I came up with a pair of hash functions for a list of integers that I use in a bloom filter. They appear below. The bloom filter actually uses linear combinations of these two hash functions to obtain an arbitrarily large number of hash functions, but they should work fine in other contexts that just need a bit of scattering with a decent distribution. They're inspired by Knuth's writing on Linear Congruential Random Number Generation. They take a list of integers as input, which I believe could just be the ord()'s of your serialized characters.

MERSENNES1 = [ 2 ** x - 1 for x in [ 17, 31, 127 ] ]
MERSENNES2 = [ 2 ** x - 1 for x in [ 19, 67, 257 ] ]

def simple_hash(int_list, prime1, prime2, prime3):
    '''Compute a hash value from a list of integers and 3 primes'''
    result = 0
    for integer in int_list:
        result += ((result + integer + prime1) * prime2) % prime3
    return result

def hash1(int_list):
    '''Basic hash function #1'''
    return simple_hash(int_list, MERSENNES1[0], MERSENNES1[1], MERSENNES1[2])

def hash2(int_list):
    '''Basic hash function #2'''
    return simple_hash(int_list, MERSENNES2[0], MERSENNES2[1], MERSENNES2[2])
share|improve this answer

Have you tried just using the hash function? It works perfectly well on tuples.

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hash function doesn't have any objects I think, eg, TypeError: unhashable type: 'list' – James Lin Apr 10 '12 at 22:01
Even for objects which can be hashed, this will often not give the results you want. – Michael Mior Apr 10 '12 at 22:04
@MichaelMior I don't see the problem: – Marcin Apr 10 '12 at 22:16
@JamesLin Not all classes are hashable, however OP does not indicate that they are using mutable collections. – Marcin Apr 10 '12 at 22:18
2.6.6 isn't "really old"; people use Jython, and that currently implements 2.5. That said, I could have sworn this worked in 2.6. – Karl Knechtel Apr 10 '12 at 23:41

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