I was trying to count duplicate words over a list of 230 thousand words.I used python dictionary to do so. The code is given below:

for words in word_list:
    if words in word_dict.keys():
       word_dict[words] += 1
       word_dict[words] = 1

The above code took 3 minutes!. I ran the same code over 1.5 million words and it was running for more than 25 minutes and I lost my patience and terminated. Then I found that I can use the following code from here (also shown below). The result was so surprising, it completed within seconds!. So my question is what is the faster way to do this operation?. I guess the dictionary creation process must be taking O(N) time. How was the Counter method able to complete this process in seconds and create an exact dictionary of word as key and frequency as it's value?

from collections import Counter
word_dict = Counter(word_list)

It's because of this:

if words in word_dict.keys():

.keys() returns a list of all the keys. Lists take linear time to scan, so your program was running in quadratic time!

Try this instead:

if words in word_dict:

Also, if you're interested, you can see the Counter implementation for yourself. It's written in regular Python.


your dictionary counting method is not well constructed.

you could have used a defaultdict in the following way:

d = defaultdict(int)

for word in word_list:
    d[word] += 1

but the counter method from itertools is still faster even though it is doing almost the same thing, because it is written in a more efficient implementation. however, with the counter method, you need to pass it a list to count, whereas using a defaultdict, you can put sources from different locations and have a more complicated loop.

ultimately it is your preference. if counting a list, counter is the way to go, if iterating from multiple sources, or you simply want a counter in your program and dont want the extra lookup to check if an item is already being counted or not. then defaultdict is your choice.

  • same idea :-) +1 – Thorsten Kranz Jan 17 '13 at 8:14
  • Thanks very informative indeed. – Rkz Jan 17 '13 at 8:19

You can actually look at the Counter code, here is the update method that is called on init:

(Notice it uses the performance trick of defining a local definition of self.get)

def update(self, iterable=None, **kwds):
    '''Like dict.update() but add counts instead of replacing them.

    Source can be an iterable, a dictionary, or another Counter instance.

    >>> c = Counter('which')
    >>> c.update('witch')           # add elements from another iterable
    >>> d = Counter('watch')
    >>> c.update(d)                 # add elements from another counter
    >>> c['h']                      # four 'h' in which, witch, and watch

    # The regular dict.update() operation makes no sense here because the
    # replace behavior results in the some of original untouched counts
    # being mixed-in with all of the other counts for a mismash that
    # doesn't have a straight-forward interpretation in most counting
    # contexts.  Instead, we implement straight-addition.  Both the inputs
    # and outputs are allowed to contain zero and negative counts.

    if iterable is not None:
        if isinstance(iterable, Mapping):
            if self:
                self_get = self.get
                for elem, count in iterable.iteritems():
                    self[elem] = self_get(elem, 0) + count
                super(Counter, self).update(iterable) # fast path when counter is empty
            self_get = self.get
            for elem in iterable:
                self[elem] = self_get(elem, 0) + 1
    if kwds:

You could also try to use defaultdict as a more competitive choice. Try:

from collections import defaultdict

word_dict = defaultdict(lambda: 0)
for word in word_list:
    word_dict[word] +=1

print word_dict

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