I believed that hash() function works the same in all python interpreters. But it differs when I run it on my mobile using python for android. I get same hash value for hashing strings and numbers but when I hash built-in data types the hash value differs.

PC Python Interpreter (Python 2.7.3)

>>> hash(int)
>>> hash("hello sl4a")
>>> hash(101)

Mobile Python Interpreter (Python 2.6.2)

>>> hash(int)
>>> hash("hello sl4a")
>>> hash(101)

Can any one tell me is it a bug or I misunderstood something.

  • I don't know why it differs for hash() but maybe you could use base64 instead: docs.python.org/2/library/base64.html – gitaarik Jun 19 '13 at 13:27
  • @rednaw thanks, but I just want to know is it normal to have different hash values. – bkmagnetron Jun 19 '13 at 13:36
  • 6
    You should never rely on the hash value being constant between different interpreters. There's nothing in the spec to guarantee that behavior. the only guarantee is that the hash value will always be the same on a particular run of a particular interpreter. – mgilson Jun 19 '13 at 13:36
  • Is this a duplicate of stackoverflow.com/questions/793761/… ? – David Cary Aug 16 '15 at 13:55

for old python (at least, my Python 2.7), it seems that

hash(<some type>) = id(<type>) / 16

and for CPython id() is the address in memory - http://docs.python.org/2/library/functions.html#id

>>> id(int) / hash(int)                                                     
>>> id(int) % hash(int)                                                 

so my guess is that the Android port has some strange convention for memory addresses?

anyway, given the above, hashes for types (and other built-ins i guess) will differ across installs because functions are at different addresses.

in contrast, hashes for values (what i think you mean by "non-internal objects") (before the random stuff was added) are calculated from their values and so likely repeatable.

PS but there's at least one more CPython wrinkle:

>>> for i in range(-1000,1000):
...     if hash(i) != i: print(i)

there's an answer here somewhere explaining that one...

  • Yes I accept with you but how hash will work for non-internal objects. – bkmagnetron Jun 19 '13 at 14:16
  • In android >>> id(int) / hash(int) gives -2L and >>> id(int) % hash(int) gives -2144680448L – bkmagnetron Jun 19 '13 at 14:21
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    @andrewcooke wow hash(-1)=-2 really irritated me. In case someone is wondering, the question regarding it is here: stackoverflow.com/questions/10130454/… – JeD Jun 27 '16 at 18:54

hash() is randomised by default each time you start a new instance of recent versions (Python3.3+) to prevent dictionary insertion DOS attacks

Prior to that, hash() was different for 32bit and 64bit builds anyway.

If you want something that does hash to the same thing every time, use one of the hashes in hashlib

>>> import hashlib
>>> hashlib.algorithms
('md5', 'sha1', 'sha224', 'sha256', 'sha384', 'sha512')
  • For strings ... I'm not sure that they've added that randomization to integers or other builtin types .. (but I was about to make this point as well) – mgilson Jun 19 '13 at 13:35
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    But, none of the hashlib algorithms hashes data types. – bkmagnetron Jun 19 '13 at 13:59
  • How can you convert them to strings? pickle perhaps? – John La Rooy Jun 19 '13 at 14:02
  • The hash functions in hashlib are cryptographic and due to performance are not a good solution in all situations. – martinkunev May 31 '18 at 20:16

Hashing of things like int relies on id(), which is not guaranteed constant between runs or between interpreters. That is, hash(int) will always produce the same result during a program's run, but might not compare equal between runs, either on the same platform or on different platforms.

BTW, while hash randomization is available in Python, it's disabled by default. Since your strings and numbers are hashing equally, clearly it's not the issue here.

  • 4
    Hash randomization is only disabled by default on old versions of Python. For Python 3.3 and later it is enabled by default. – Duncan Jun 19 '13 at 14:05

With CPython, for efficiency reason hash() on internal objects returns the same value as id() which in its turn return the memory location ("address") of the object.

From one CPython-based interpreter to an other memory location of such object is subject to change. Depending on your OS, this could change from one run to an other.


From Python 3.3 the default hash algorithm has created hash values which are salted with a random value which is different even between different python processes on the same machine.

Hash randomization only is implemented currently for strings - since it was considered to be the most likely data type captured from outside that could be attacked.

The same frozenset consistently produces the same hash value across different machines or even different processes

Source: https://www.quora.com/Do-two-computers-produce-the-same-hash-for-identical-objects-in-Python

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