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I have some points in space where each point has an id. I also have a subset of these points in another group that have different id values.

How can I create a new type of id for both groups of points so that the points that have the same coordinates end up using the same id values?

I assume I need to generate hash codes using their coordinates which should give me the same id value for points that have the same coordinates, right?

I am confused how I could use it because the set of hashcodes is much smaller than float[3]. So not sure if I am on the right track.

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Which language are you using? C# or Python? –  TheEvilPenguin Feb 11 '13 at 0:32
Actually I didn't start writing the program, so could be either. The program I will use this code supports both. –  Joan Venge Feb 11 '13 at 0:33
I ask because it's preferred for SO questions to have at most one language tag. Questions which are too open-ended are at risk of being closed, which won't help you get the answer you're looking for. –  TheEvilPenguin Feb 11 '13 at 0:41
Thanks, I see. I added python because if it has some fancy library that would help, then I would use that language. Otherwise would be C#. –  Joan Venge Feb 11 '13 at 0:45

2 Answers 2

up vote 1 down vote accepted

I'm not completely sure what you mean here, but you could use __hash__ with a tuple:

class Point(object):
    def __init__(self,x,y,z):
        self.x = x
        self.y = y
        self.z = z

    def __hash__(self):
        return hash((self.x,self.y,self.z))

    def __eq__(self,other):
        return (self.x,self.y,self.z) == (other.x,other.y,other.z)

Now, objects which contain the same point all hash to the same value. As a side benefit, they can now be used as dictionary keys or in set objects a little bit more reasonably.

Of course, if you're going to write a class this simple, you might want to consider a collections.namedtuple instead. You could even subclass it (it's all spelled out in the link). This has the advantage of the object being immutable -- Mutating a hashable object just isn't a nice thing to do ;-). The objects also have no __dict__ associated with them, so they'll probably be a little easier on your memory if you're creating 100M of them.

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Thanks, do you know which hash function is that? I looked at hashlib but this one is a different one? Also I was thinking of this, but there is a high chance to get the same values for 2 different points with different coordinates when the number of points is say 100M, right? Maybe I should use something that's gonna be guaranteed to be unique? –  Joan Venge Feb 11 '13 at 0:36
The hash function that I used in the answer is the builtin function. If it's good enough for python tuple, then it's good enough for me :). There will probably be some hash collisions, but probably not too many and the underlying python machinery takes care of the collision resolution for you. –  mgilson Feb 11 '13 at 0:52
Thanks, the reason I asked is, I couldn't find the help for it. Google brings up hashlib when I type "python hash" :( –  Joan Venge Feb 11 '13 at 0:54
@JoanVenge -- Added a link which talks about __hash__ and that has a link to the builtin hash (which really just calls __hash__). What the exact algorithm is for tuples, I couldn't say (it's likely implementation dependent) -- But if it's good enough for the python core library, it's probably good enough for your purposes. –  mgilson Feb 11 '13 at 1:00
Thanks mgilson that link was enough for me to read about the function. –  Joan Venge Feb 11 '13 at 1:02

Hash codes aren't meant to be unique for unequal objects - there typically will be some collisions. They definitely can't be used to test for equality.

Hash codes are used to place objects (hopefully) evenly across a data structure. If you want to test for equality, test whether the coordinates are equal.

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Thanks, I know what you mean, but the problem is the point groups are too large, so it will take too long to compare every point with every other. So that's I was thinking of somehow mapping the first set and then doing a lookup using the same mapping technique. I don't know if this is a common problem, not sure what it's called. –  Joan Venge Feb 11 '13 at 0:44
Most hashes are designed such that collisions only happen rarely, and not systematically. Cryptographic hashes in particular have the property that it is extremely difficult to find another set of data that will yield the same hash. With a properly sized hash, winning the lottery a thousand times in a row would be more likely than getting a single collision. This assumes that the hash is larger than the input data, of course. Otherwise you will have collisions quite often. –  amaurea Feb 11 '13 at 0:45
@John Venge You can still hash and add to a hash table, but you do then have to test the results for equality. It will still greatly reduce the comparisons made. –  TheEvilPenguin Feb 11 '13 at 0:45
Collision resolution is about the only nontrivial thing about hash tables. They've become very good at it. You don't even need a cryptographic hash function, or even one whose output appears evenly distributed. You just shouldn't have terribly many collisions. –  delnan Feb 11 '13 at 0:47
Have a look at R-trees and variants. They are space partitioning trees, so identical points will end up in the same bucket. They are also searchable by region, if that's useful. –  TheEvilPenguin Feb 11 '13 at 1:04

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