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Windows XP, Python 2.5:

hash('') Result: 1934711907

Google App Engine (

hash('') Result: -5768830964305142685

Why is that? How can I have a hash function which will give me same results across different platforms (Windows, Linux, Mac)?

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this is owe to the fact your winxp is a 32bit platform while google's is 64 bit – Tzury Bar Yochay Mar 29 '11 at 4:23

11 Answers 11

up vote 41 down vote accepted

Use hashlib as hash() was designed to be used to:

quickly compare dictionary keys during a dictionary lookup

and therefore does not guarantee that it will be the same across Python implementations.

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Aren't the hash functions in hashlib a bit slow for non-cryptographic use? – Brandon Rhodes Nov 14 '10 at 5:31
@Brandon: are they? benchmarks? patches? – SilentGhost Nov 14 '10 at 10:08
They are actually very slow compared to general purpose hash functions such as Jenkins, Bernstein, FNV, MurmurHash, and many others. If you're looking to make your own hash table-like structure, I suggest looking at uthash.h – lericson Feb 4 '11 at 9:45
Benchmarks: hash 95 ns, binascii.crc32 570 ns, hashlib.md5.digest() 1.42 us, murmur.string_hash 234 ns – temoto Mar 14 '12 at 17:42

As stated in the documentation, built-in hash() function is not designed for storing resulting hashes somewhere externally. It is used to provide object's hash value, to store them in dictionaries and so on. It's also implementation-specific (GAE uses a modified version of Python). Check out:

>>> class Foo:
...     pass
>>> a = Foo()
>>> b = Foo()
>>> hash(a), hash(b)
(-1210747828, -1210747892)

As you can see, they are different, as hash() uses object's __hash__ method instead of 'normal' hashing algorithms, such as SHA.

Given the above, the rational choice is to use the hashlib module.

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Thank you! I came here wondering why I would always get different hash values for identical objects resulting in unexpected behaviour with dicts (which index by hash+type rather than checking for equality). A quick way to generate your own int hash from hashlib.md5 is int(hashlib.md5(repr(self)).hexdigest(), 16) (assuming that self.__repr__ has been defined to be identical iff objects are identical). If 32 bytes are too long, you can cut of course the size down by slicing the hex string prior to conversion. – Alan Plum Mar 28 '10 at 1:19
On second thought, if __repr__ is unique enough, you could just use str.__hash__ (i.e. hash(repr(self))) as dicts don't mix up non-equal objects with the same hash. This only works if the object is trivial enough that the repr can represent identity, obviously. – Alan Plum Mar 28 '10 at 1:34
So, in your example with two objects a and b, how could I use the hashlib module to see that the objects are identical? – Garrett Aug 5 '14 at 9:45

The response is absolutely no surprise: in fact

In [1]: -5768830964305142685L & 0xffffffff
Out[1]: 1934711907L

so if you want to get reliable responses on ASCII strings, just get the lower 32 bits as uint. The hash function for strings is 32-bit-safe and almost portable.

On the other side, you can't rely at all on getting the hash() of any object over which you haven't explicitly defined the __hash__ method to be invariant.

Over ASCII strings it works just because the hash is calculated on the single characters forming the string, like the following:

class string:
    def __hash__(self):
        if not self:
            return 0 # empty
        value = ord(self[0]) << 7
        for char in self:
            value = c_mul(1000003, value) ^ ord(char)
        value = value ^ len(self)
        if value == -1:
            value = -2
        return value

where the c_mul function is the "cyclic" multiplication (without overflow) as in C.

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Hash results varies between 32bit and 64bit platforms

If a calculated hash shall be the same on both platforms consider using

def hash32(value):
    return hash(value) & 0xffffffff
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At a guess, AppEngine is using a 64-bit implementation of Python (-5768830964305142685 won't fit in 32 bits) and your implementation of Python is 32 bits. You can't rely on object hashes being meaningfully comparable between different implementations.

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This is the hash function that Google uses in production for python 2.5:

def c_mul(a, b):
  return eval(hex((long(a) * b) & (2**64 - 1))[:-1])

def py25hash(self):
  if not self:
    return 0 # empty
  value = ord(self[0]) << 7
  for char in self:
    value = c_mul(1000003, value) ^ ord(char)
  value = value ^ len(self)
  if value == -1:
    value = -2
  if value >= 2**63:
    value -= 2**64
  return value
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Can you share any context about what this hash function is used for and why? – amcnabb Nov 8 '12 at 16:35

What about sign bit?

For example:

Hex value 0xADFE74A5 represents unsigned 2919134373 and signed -1375832923. Currect value must be signed (sign bit = 1) but python converts it as unsigned and we have an incorrect hash value after translation from 64 to 32 bit.

Be careful using:

def hash32(value):
    return hash(value) & 0xffffffff
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Polynomial hash for strings. 1000000009 and 239 are arbitrary prime numbers. Unlikely to have collisions by accident. Modular arithmetic is not very fast, but for preventing collisions this is more reliable than taking it modulo a power of 2. Of course, it is easy to find a collision on purpose.

def hash(s):
    for c in s:
        result = (result * 239 + ord(c)) % mod
    return result % mod
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Most answers suggest this is because of different platforms, but there is more to it. From the documentation:

Note: By default, the __hash__() values of str, bytes and datetime objects are “salted” with an unpredictable random value. Although they remain constant within an individual Python process, they are not predictable between repeated invocations of Python.

This is intended to provide protection against a denial-of-service caused by carefully-chosen inputs that exploit the worst case performance of a dict insertion, O(n^2) complexity. See for details.

Changing hash values affects the iteration order of dicts, sets and other mappings. Python has never made guarantees about this ordering (and it typically varies between 32-bit and 64-bit builds).


Even running on the same machine will yield varying results across invocations:

$ python -c "print(hash(''))"
$ python -c "print(hash(''))"


$ python -c "print(hash((1,2,3)))"
$ python -c "print(hash((1,2,3)))"

And three more machines I tried also gave the same hash for (1,2,3), although I'm not sure if that's something you could rely on.

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This is only true for Python 3.x, but since Python 3 is the present and the future and this is the only answer that addresses this, +1. – Alexander Huszagh Nov 20 '15 at 16:09

The value of PYTHONHASHSEED might be used to initialize the hash values.


PYTHONHASHSEED python -c 'print(hash(''))'
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It probably just asks the operating system provided function, rather than its own algorithm.

As other comments says, use hashlib or write your own hash function.

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