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I have names of all the employees of my company (5000+). I want to write an engine which can on the fly find names in online articles(blogs/wikis/help documents) and tag them with "mailto" tag with the users email.

As of now I am planning to remove all the stop words from the article and then search for each word in a lucene index. But even in that case I see a lot of queries hitting the indexes, for example if there is an article with 2000 words and only two references to people names then most probably there will be 1000 lucene queries.

Is there a way to reduce these queries? Or a completely other way of achieving the same? Thanks in advance

share|improve this question
    
I am not sure I am following, isn't the list of employees pre-defined? aren't these names your queries? – amit Aug 31 '11 at 14:21
    
@amit list of employees is 5000, are you asking if I should search for each name in the article? 5000 queries in 2000 word document? I was wondering other way around. – Sap Aug 31 '11 at 14:33
    
you have only one document? if you do, lucene won't help you much.. – amit Aug 31 '11 at 14:41
    
@amit nope i have lot's of documents, I am using one doc as example. But I want to do this on the fly. This means that when a user is typing his wiki in the preview area it should on the fly mark a name with email address – Sap Aug 31 '11 at 14:47
    
If I understand correctly, what you'd like to do is search your list of names for terms that people type, so that you can offer them suggestions of email address, etc. when the text they typed is a name of a person in your collection. Is that correct? – Gene Golovchinsky Sep 1 '11 at 0:54
up vote 1 down vote accepted

http://en.wikipedia.org/wiki/Aho%E2%80%93Corasick_string_matching_algorithm
This algorithm might be of use to you. The way this would work is you first compile the entire list of names into a giant finite state machine (which would probably take a while), but then once this state machine is built, you can run it through as many documents as you want and detect names pretty efficiently.
I think it would look at every character in each document only once, so it should be much more efficient than tokenizing the document and comparing each word to a list of known names.
There are a bunch of implementations available for different languages on the web. Check it out.

share|improve this answer
    
I think he's trying to process a user's input on the fly to find tags. It doesn't seem like he is trying to do batch markup. – Gene Golovchinsky Sep 2 '11 at 0:26
    
This makes sense. I am running a asynchronous task every five seconds to do the mark up. Your answer is helpful. Thanks a lot – Sap Sep 2 '11 at 7:12

If you have only 5000 names, I would just stick them into a hash table in memory instead of bothering with Lucene. You can hash them several ways (e.g., nicknames, first-last or last-first, etc.) and still have a relatively small memory footprint and really efficient performance.

share|improve this answer
    
Nope, i have a lot more names for simplicity's sake I used the number "5000" they are actually way more. – Sap Sep 1 '11 at 7:24
1  
OK, but when you ask a question, please provide enough information for an appropriate answer. By holding back, you're wasting everyone's time. Would you please describe the actual problem you're trying to solve? – Gene Golovchinsky Sep 1 '11 at 7:31
    
The reason I have to holding back some information is because I work for a company and I can not give a lot of specifics about what I am working on. As far as the question is concerned the exact number is 99655 which will increase in time. Assuming I store each of them in a HashMap are you suggesting to lookup in the hashMap for each word of the article? – Sap Sep 1 '11 at 8:36
1  
OK, let's say your company does really well and doubles in size over the next three years (got a job?) so now you have 200,000 employees. Most of your people are from Thailand, and have 100 letter last names and first names (combined). Neglecting the size of the key, this means your hash table is 200K*0.1K = 20M. This easily fits into any reasonable machine. You can then look up anything you want in constant time: can't get more efficient than that. – Gene Golovchinsky Sep 1 '11 at 16:14
1  
(cont'd) If you are concerned about loading the data, if you need the data on multiple machines, etc., I suggest you look at a key-value store such as Redis. But I don't think you have that much data that it wouldn't be a good fit for main memory in modern machines. – Gene Golovchinsky Sep 1 '11 at 16:17

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