I need to compare large chunks of data for equality, and I need to compare many per second, fast. Every object is guaranteed to be the same size, and it is possible/likely they may only be slightly different (in unknown positions).
I have seen, from the interactive session below, using
== operator for byte strings can be slower if the differences are towards the end of the string, and it can be very fast if there is a difference near the start.
I thought there might be some way to speed things up using some sort of hash, of course computing the md5 hash and comparing is a fair whack slower, but python's inbuilt hash does seem to speed things up significantly.
However, I have no idea about the implementation details of this hash, is it really hash-like in that I can be comfortable that when
hash(a) == hash(b) then
a == b is very likely? I am happy to have a few incorrect results if a hash collision is reasonably rare (rare in the sense of needing an array of 200 PS3s several hours to make a collision)
In : import hashlib In : with open('/dev/urandom') as f: ...: spam = f.read(2**20 - 1) ...: In : spamA = spam + 'A' In : Aspam = 'A' + spam In : spamB = spam + 'B' In : timeit spamA == spamB 1000 loops, best of 3: 1.59 ms per loop In : timeit spamA == Aspam 10000000 loops, best of 3: 66.4 ns per loop In : timeit hashlib.md5(spamA) == hashlib.md5(spamB) 100 loops, best of 3: 4.42 ms per loop In : timeit hashlib.md5(spamA) == hashlib.md5(Aspam) 100 loops, best of 3: 4.39 ms per loop In : timeit hash(spamA) == hash(spamB) 10000000 loops, best of 3: 157 ns per loop In : timeit hash(spamA) == hash(Aspam) 10000000 loops, best of 3: 160 ns per loop