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I need to compute a hash that needs to be stable across architectures. Is python's hash() stable?

To be more specific, the example below shows hash() computing the same value on two different hosts/architectures:

# on OSX based laptop
>>> hash((1,2,3,4))
485696759010151909
# on x86_64 Linux host
>>> hash((1,2,3,4))
485696759010151909

The above is true for at least those inputs, but my question is for the general case

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4 Answers 4

up vote 10 down vote accepted

If you need a well defined hash, you can use one out of hashlib.

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For this, you need a stable str, which I believe is true. –  kennytm Apr 7 '11 at 16:02
    
@KennyTM: Yes, the results of str() should be the same across platforms and implementations. –  nmichaels Apr 7 '11 at 16:04
    
That's what I was thinking, just as straightforward too. Thanks –  daniel Apr 7 '11 at 19:37
    
The result of str() is not stable for some objects types. For example, any instance of a user-defined class that contains its memory address in str(obj) (the default for most user-defined types). –  millerdev Sep 7 '12 at 13:02

No. On ARM with python 2.6:

>>> hash((1,2,3,4)) 

89902565

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The hash() function is not what you want; finding a reliable way to serialize the object (eg str() or repr()) and running it through hashlib.md5() would probably be much more preferrable.

In detail - hash() is designed to return an integer which uniquely identifies an object only within it's lifetime. Once the program is run again, constructing a new object may in fact have a different hash. Destroying an object means there's a chance another object will have that hash in the future. See python's definition of hashable for more.

Behind the scenes, most user-defined python objects fall back to id() to provide their hash value. While you're not supposed to make use of this, id(obj) and thus hash(obj) is usually implemented (eg in CPython) as the memory address of the underlying Python object. Thus you can see why it can't be relied on for anything.

The behavior you currently see is only reliable for certain builtin python objects, and that not very far. hash({}) for instance is not possible.


Regarding hashlib.md5(str(obj)) or equivalent - you'll need to make sure str(obj) is reliably the same. In particular, if you have a dictionary being rendering within that string, it may not list it's keys in the same order. There may also be subtle differences between python versions... I would definitely recommend unittests for any implementation you rely on.

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The second paragraph could really use a reference. Is there an official documentation of that information? –  phihag May 2 '13 at 20:46
    
@phihag Pretty much all the 2nd & 3rd paragraphs are just a restatement of the info in the official hashable and id() documentation linked to within the paragraphs; though the official docs could spell things out a little better. –  Eli Collins May 3 '13 at 3:58
    
It does not identify an object uniquely. It only provides a mapping into the int domain with a good distribution. Collisions are unavoidable and cared for. –  sleeplessnerd Sep 8 '14 at 20:41

No.

x86_64
>>> print hash("a")
12416037344

i386
>>> print hash("a")
-468864544

If you need a stable hash, create a digest of your data using something like sha1, which can be found in hashlib

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