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Thanks for amazingly quick response. Stackoverflow is awesome!

I need to check if a word (or rather thousands of them) is matching a dict containing keywords.

For example, say I have a string: "The fluffy fox jumped the friggin fence." I need to check each word of the string against a dict of keywords, and if there's a match, return all values.

I've created a dict filters: (uniqueid means ie. "lk2m3lk4m2", rest is 'static'.)

        { "fox" : [
                    { 'subscription' : 'uniqueid', 'link' : 'uniqueid' },
                    { 'subscription' : 'uniqueid', 'link' : 'uniqueid' }

        { "fence" : [
                      { 'subscription' : 'uniqueid', 'link' : 'uniqueid' }

...and plan to iterate over filters for each word in string (and I have to do this with perhaps 5000 words / second. In other words, performance is the issue ABOVE ALL.

The number of filter-keywords may grow to thousands, while the strings will never be more than a normal sentence long (ie. 5-20 words). I'll therefore iterate over each word in the string and check if it's contained in the filter-list. However, at 500 sentences / second, I'm still looking at a lot of computation.

Is it possible to sort the list (ie. the key of dict's in list) and thus drastically improve performance, for example? And are there C-implementations I should use (like I'm using cjson with great performance gain)?

Sorry for the somewhat fluid question -- but how should I go about this task?


Expected input:
"The fluffy fox jumped the friggin fence."
Expected output:
{ 'subscription' : 'flskdmfslk32232', 'link' : 'sfdksmfls22323' }, { 'subscription' : '3023940fsdf', 'link' : 'sdflsfm223' }
(ie. the subscriptions listed under each matching keyword.)

share|improve this question
If each possible word is unique (i.e., if there can be no overlap between "fox", "fence", etc. in your dict), then why are you using a list of dicts instead of one big dict? Using one big dict would let you leverage the existing efficiency of dict lookup, and would remove the need to sort it. –  BrenBarn Nov 12 '12 at 20:25
Dictionaries are implemented with a hash table and should be about as fast as you can get. –  Mark Ransom Nov 12 '12 at 20:25
Why are you storing multiple dictionaries in one list instead of just using one dictionary? If the order is important, you might want to use OrderedDict instead. Using a dictionary would most likely speed up your algorithm by a very large margin. –  Vincent Savard Nov 12 '12 at 20:26
Access to a dict is O(1), so even if you do binary search in that list you'll still have much worse performance. –  Bakuriu Nov 12 '12 at 20:35
If you really care about performance, stop asking people to guess what's going to be fastest, and actually test. Sometimes you will want to analyze the code on top of testing, but you'll almost never want that instead of testing. See the timeit module for help. –  abarnert Nov 12 '12 at 22:18

2 Answers 2

up vote 4 down vote accepted

You can determine if a word is a key in filters by simply by doing filters.has_key(word) or by doing:

subscriptions = filters.get(word)
if subscriptions is not None:
    pass # TODO do something with subscriptions


    subscriptions = filters[word]
    # TODO do something with subscriptions
    pass # probably don't need to do anything if not present

It isn't necessary to iterate over each entry in filters. Rather you will want to split your input string, add each word to a Set (to eliminate duplicates), and then iterate over your set to look up each word in your filters dictionary.

share|improve this answer
Thanks! And for performance, which is faster (less CPU use)? I'm doing 5-10k words per second towards 1000 keywords. –  knutole Nov 12 '12 at 20:48
I agree with the approach, but filters.has_key(word) has been spelled like word in filters for a while now. :-) –  Kirk Strauser Nov 12 '12 at 20:49
Which one will be faster will depend on your filters and input data. try/except is generally considered cheaper than a branch (if) when no exception is thrown; however, it is slower to catch a raised exception than do a branch. Thus it will depend on how many exception are thrown. Since there are only 1000 keywords, I suggest going with the version using get and the branch rather than using the try/except version as it seems likely a lot of words will not be present in filters. –  Josh Heitzman Nov 12 '12 at 20:56
OK. Thanks everyone for great help! –  knutole Nov 12 '12 at 20:58
Yes, split will almost certainly be much faster than you need it to be. I created a string with a = 'the quick brown fox jumps over the lazy dog', then ran for i in range(100000): _ = a.split(). Again, the 100,000 loops were faster than my ability to release the enter key. :-) –  Kirk Strauser Nov 12 '12 at 21:48

The fastest way to do it in Python would be to use a dictionary look each word of the sentence up in it, and accumulate and associated values. The main data structure would probably look something like this:

filters = {
    "fox" : (
              ('uniqueid1', 'uniqueid2'),
              ('uniqueid3', 'uniqueid4'),
    "fence" : (
                ('uniqueid5', 'uniqueid6'),

Using this way (on 8-bit chars):

from string import punctuation

sentence = 'The fluffy fox jumped the friggin fence.'
sentence = sentence.translate(None, punctuation)  # remove punctuation chars

print [filters.get(word) for word in sentence.split() if word in filters]

Or it might be faster (time it to find out) like this which avoids a double dictionary look-up:

from string import punctuation

def map_words(sentence):
    for word in sentence.translate(None, punctuation).split():
            yield filters[word]
        except KeyError:

sentence = 'The fluffy fox jumped the friggin fence.'
print [v for v in map_words(sentence)]

Either way this is the output:

[(('uniqueid1', 'uniqueid2'), ('uniqueid3', 'uniqueid4')), (('uniqueid5', 'uniqueid6'),)]
share|improve this answer
Thank you. Is this the bleeding edge performance wise as well? –  knutole Nov 12 '12 at 20:51
It depends on if your data in each filter entry is fixed (i.e. it's always just a pair of ids) or if it's variable (i.e. sometimes it has a timestamp, a comment, and/or a moderator flag). If it is fixed then using tuples as shown here will be faster. Here the tuples containing the id pairs are contained in a list for each word in the dictionary. If you need to add pairs to a word frequently then a list is probably what you want, but if the lists of pairs are actually static, you'll want to you tuple instead. –  Josh Heitzman Nov 12 '12 at 21:29

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