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I want to compare a large set of data in the form of 2 dictionaries of varying lengths. (edit)

post = {0: [0.96180319786071777, 0.37529754638671875], 
        10: [0.20612385869026184, 0.17849941551685333],
        20: [0.20612400770187378, 0.17510984838008881],...}

pre = {0: [0.96180319786071777, 0.37529754638671875],
       1: [0.20612385869026184, 0.17849941551685333],
       2: [0.20612400770187378, 0.17510984838008881],
       5065: [0.80861318111419678, 0.76381617784500122],...}

The answer we need to get is 5065: [0.80861318111419678, 0.76381617784500122]. This is based on the fact that we are only comparing the values and not the indices at all.

I am using this key value pair only to remember the sequence of data. The data type can be replaced with a list/set if need be. I need to find out the key:value (index and value) pairs of the elements that are not in common to the dictionaries.

The code that I am using is very simple..

new = {}
found = []

for i in range(0, len(post)): 
    found= []
    for j in range(0, len(pre)): 
        if post[i] not in pre.values():
            if post[i] not in new:
                new[i] = post[i]
    if found:
        for f in found: pre.pop(f)

new{} contains the elements I need. The problem I am facing is that this process is too slow. It takes sometimes over an hour to process. The data can be much larger at times. I need it to be faster.

Is there an efficient way of doing what I am trying to achieve ? I would like it if we dont depend on external packages apart from those bundled with python 2.5 (64 bit) unless absolutely necessary.

Thank you all.

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2 Answers 2

This is basically what sets are designed for (computing differences in sets of items). The only gotcha is that the things you put into a set need to be hashable, and lists aren't. However, tuples are, so if you convert to that, you can put those into a set:

post_set = set(tuple(x) for x in post.itervalues())
pre_set = set(tuple(x) for x in pre.itervalues())

items_in_only_one_set = post_set ^ pre_set

For more about sets: http://docs.python.org/library/stdtypes.html#set

To get the original indices after you've computed the differences, what you'd probably want is to generate reverse lookup tables:

post_indices = dict((tuple(v),k) for k,v in post.iteritems())
pre_indices = dict((tuple(v),k) for k,v in pre.iteritems())

Then you can just take a given tuple and look up its index via the dictionaries:

index = post_indices.get(a_tuple, pre_indices.get(a_tuple))
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That looks like a reasonable solution. –  Raymond Hettinger Oct 31 '11 at 3:12
That looks good, but the OP said that they need the key:value pairs. Your solution loses the keys. –  Gabe Oct 31 '11 at 3:15
I need the index numbers corresponding to the values. When it gets converted to a set from dict, I think the numbers get jumbled up. –  sbetharia Oct 31 '11 at 3:17
@sbetharia - what you probably want to do then is construct a reverse-lookup dictionary that maps tuples to indices. [Example added to answer.] –  Amber Oct 31 '11 at 3:28
There are a few problems: If there are duplicate values the reverse lookup will fail - that may seem unlikely for floats, but common values like 0.0 or 1.0 can be problematic. It also has no respect for the indices, when pre = { 0 : tup_a, 1 : tup_b} and post = { 0 : tup_b, 1 : tup_a} it would regard them equal. If these problems have to be solved it can be done with 3-tuples like (a,b,index) or a custom object with __hash__ and __eq__. –  Jochen Ritzel Oct 31 '11 at 13:39

Your problem is likely the nested for loops combined with use of range(), which creates a new list each time which can be slow. You will probably get some automatic speedups by iterating pre and post directly, and avoid doing so in a nested fashion.

post = {0: [0.96180319786071777, 0.37529754638671875],
       10: [0.20612385869026184, 0.17849941551685333],
       20: [0.20612400770187378, 0.17510984838008881]}

pre = {0: [0.96180319786071777, 0.37529754638671875],
       1: [0.20612385869026184, 0.17849941551685333],
       2: [0.20612400770187378, 0.17510984838008881],
    5065: [0.80861318111419678, 0.76381617784500122]}

'''Create sets of values, independent of dict key for O(1) lookup'''
post_set=set(map(tuple, post.values()))
pre_set=set(map(tuple, pre.values()))

'''Iterate through each structure only once, filtering items that are found in
   the sets we created earlier, updating new_diff'''
from itertools import ifilterfalse

new_diff=dict(ifilterfalse(lambda x: tuple(x[1]) in pre_set, post.items()))
new_diff.update(ifilterfalse(lambda x: tuple(x[1]) in post_set, pre.items()))

new_diff is now a dict such that each value is not found in both post and pre, with the original index preserved.

>>> print new_diff
{5065: [0.80861318111419678, 0.76381617784500122]}
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set(post.items()) # Error: TypeError: unhashable type: 'list' –  sbetharia Oct 31 '11 at 3:23
In my case the dict a = dict(a=['A','B'], b=['C','D']) and I need to compare only the values of the 2 dicts. Your example gives me this error: set(post.items()) # Error: TypeError: unhashable type: 'list' –  sbetharia Oct 31 '11 at 3:32
Ah, I didn't catch that earlier. I've updated my answer to compensate. –  Austin Marshall Oct 31 '11 at 3:33
I am not sure if the index numbers are getting in the comparison as well. We only need to compare the values, not the index numbers. I will update my example in the question. –  sbetharia Oct 31 '11 at 3:55
when we convert to (key, tuple(value)) the index number gets in the comparison too, correct ? Please correct me if I am wrong. –  sbetharia Oct 31 '11 at 3:59

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