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Below is my list:

col = [['red', 'yellow', 'blue', 'red', 'green', 'yellow'],
       ['pink', 'orange', 'brown', 'pink', 'brown']

My goal is to eliminate items that appear once in each list.

Here is my code:

eliminate = [[w for w in c if c.count(w)>1]for c in col]

Output: [['red', 'red', 'yellow','yellow'], ['pink','pink', 'brown','brown']]

The code works fine for small dataset such as the list above, however, my dataset is very large. Each list contains up to a 1000 items.

Is there a way to make the above code work faster? like breaking the code down into two or more for-loops, as my understanding is that the normal for-loop is faster than list comprehension.

Any suggestions? thanks.

share|improve this question
Is order important? –  Martijn Pieters Oct 9 '13 at 13:23
Hi Martijin, thanks for your response. Then problem is about speed (complexity) not the duplication. –  Tiger1 Oct 9 '13 at 13:24
order is not important –  Tiger1 Oct 9 '13 at 13:24
In all cases I've measured the time a list comprehension was always faster than a standard for loop. You might be able to speed up this by generating a counter of the list items outside of the loop. –  Matthias Oct 9 '13 at 13:26
@Tiger1: Updated my answer too then. –  Martijn Pieters Oct 9 '13 at 14:18

4 Answers 4

I'd have a go at trying an OrderedCounter to avoid the repeated .count() calls:

from collections import OrderedDict, Counter

col=[['red', 'yellow', 'blue', 'red', 'green', 'yellow'],['pink', 'orange', 'brown', 'pink', 'brown']]

class OrderedCounter(Counter, OrderedDict):

new = [[k for k, v in OrderedCounter(el).iteritems() if v != 1] for el in col]
# [['red', 'yellow'], ['pink', 'brown']]

And if we just wish to iterate once, then (similar to Martijn's - plus playing less with sets):

from itertools import count
def unique_plurals(iterable):
    seen = {}
    return [el for el in iterable if next(seen.setdefault(el, count())) == 1]

new = map(unique_plurals, col)

This is more flexible in terms of specifying how many occurrences are required, and keeps one dict instead of multiple sets.

share|improve this answer
Nice use of inheritance. According to the comments, order doesn't matter, but I still like this. –  Marcin Oct 9 '13 at 13:30
I just wrote this with a classic for-loop. I bow to your genius. –  Matthias Oct 9 '13 at 13:32
@Marcin I hadn't noticed order wasn't important - was looking at the example output - not the comments. Anyway, the OrderedCounter here is just lifted (minus the repr and reduce) from the end of recipes listed at docs.python.org/2/library/… –  Jon Clements Oct 9 '13 at 13:32
This method is way, way too slow. My solution beats yours by a factor of 8.. –  Martijn Pieters Oct 9 '13 at 13:37
I understand OrderedCounter inherits Counter and OrderedDict but I couldn't understand your first trick (I tired) How this is working? Can you give some hint. Thanks! –  Grijesh Chauhan Oct 10 '13 at 5:37

Don't use .count() as it scans through your list for each element. Moreover, it'll add items to the output multiple times if they appear 3 or more times in the input.

You'd be better off using a generator function here that only yields items it has seen before, but only once:

def unique_plurals(lst):
    seen, seen_twice = set(), set()
    seen_add, seen_twice_add = seen.add, seen_twice.add
    for item in lst:
        if item in seen and item not in seen_twice:
            yield item

[list(unique_plurals(c)) for c in col]

This iterates just once through each list (unlike using a Counter()).

This method is far faster:

>>> timeit('[[k for k, v in OrderedCounter(el).iteritems() if v != 1] for el in col]', 'from __main__ import col, OrderedCounter')
>>> timeit('[[k for k, v in Counter(el).iteritems() if v != 1] for el in col]', 'from __main__ import col, Counter')
>>> timeit('[list(unique_plurals(c)) for c in col]', 'from __main__ import col, unique_plurals')
>>> timeit('[list(unique_plurals_dict(c)) for c in col]', 'from __main__ import col, unique_plurals_dict')

That's about 8 times faster than the OrderedCounter method, 2.2 times the Counter method.

Jon's one-dictionary-plus-counter method is faster still, though!

However, if you just needed to eliminate values that appear only once but keep the rest intact including repeats, then you'd use (borrowing from Jon):

from itertools import count
from collections import defaultdict

def nonunique_plurals(lst):
    seen = defaultdict(count)
    for item in lst:
        cnt = next(seen[item])
        if cnt:
            if cnt == 1:
                # yield twice to make up for skipped first item
                yield item
            yield item

This produces:

>>> [list(nonunique_plurals(c)) for c in col]
[['red', 'red', 'yellow', 'yellow'], ['pink', 'pink', 'brown', 'brown']]
>>> timeit('[non_uniques(c) for c in col]', 'from __main__ import col, non_uniques')
>>> timeit('[list(nonunique_plurals(c)) for c in col]', 'from __main__ import col, unique_plurals')

That's almost twice the speed of the Counter() solution proposed by FMc, but it doesn't retain order as precisely:

>>> list(nonunique_plurals(['a', 'a', 'b', 'a', 'b', 'c']))
['a', 'a', 'a', 'b', 'b']
>>> non_uniques(['a', 'a', 'b', 'a', 'b', 'c'])
['a', 'a', 'b', 'a', 'b']
share|improve this answer
I suspect the difference would narrow significantly for a larger input. –  Marcin Oct 9 '13 at 13:42
@Marcin: Why's that? I think it'll widen. The Counter keeps updating the count past 2, so the more values there are to count, the more it'll increment the counter, issuing an update. –  Martijn Pieters Oct 9 '13 at 13:43
@Marcin: That's apart from iterating over the full input list plus the unique values, while mine omits that extra iteration step. –  Martijn Pieters Oct 9 '13 at 13:45
Because the Counter method should only be iterating twice over each list (once to build the Counter, once over the Counter). –  Marcin Oct 9 '13 at 13:45
@Grijesh: thanks, yes that should have used the local. Local lookups are faster than attribute lookups; in critical loops that can make a big difference. –  Martijn Pieters Oct 10 '13 at 6:20

my understanding is that the normal for-loop is faster than list comprehension.


Your loop is slow because it duplicates operations. For every string in each nested list in col it performs a count of the number of instances of that string, so for each c in col, it performs len(c)**2 comparisons. That's an O(NM^2) squared algorithm. That gets slow quickly.

To make this faster, use better datastructures. Use collections.Counter.

share|improve this answer
Hi Marcin, your solution worked fine. I used collections.Counter and it was 100 times faster. –  Tiger1 Oct 9 '13 at 13:44
@Tiger1 You're welcome! –  Marcin Oct 9 '13 at 13:50

This addresses your revised question: it does make two passes over the inner lists (first to count, then to retrieve) and thus isn't as fast as possible; however, it preserves order and is very readable. As usual, trade-offs abound!

from collections import Counter

cols = [
    ['red', 'yellow', 'blue', 'red', 'green', 'yellow'],
    ['pink', 'orange', 'brown', 'pink', 'brown'],

def non_uniques(vals):
    counts = Counter(vals)
    return [v for v in vals if counts[v] > 1]

non_uniqs = map(non_uniques, cols)

# [
#    ['red', 'yellow', 'red', 'yellow'],
#    ['pink', 'brown', 'pink', 'brown'],
# ]
share|improve this answer
Many thanks FMc, your solution is spot-on. –  Tiger1 Oct 9 '13 at 14:24

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