7

Here's my situation (or see TLDR at bottom): I'm trying to make a system that will search for user entered words through several documents and return the documents that contain those words. The user(s) will be searching through thousands of documents, each of which will be 10 - 100+ pages long, and stored on a webserver.

The solution I have right now is to store each unique word in a table with an ID (only maybe 120 000 relevant words in the English language), and then in a separate table store the word id, the document it is in, and the number of times it appears in that document.

E.g: Document foo's text is

abc abc def

and document bar's text is

abc def ghi

Documents table will have

id | name

1 'foo'
2 'bar'

Words table:

id | word

1 'abc'
2 'def'
3 'ghi'

Word Document table:

word id | doc id | occurrences

1        1        2
1        2        1
2        1        1
2        2        1
3        2        1

As you can see when you have thousands of documents and each has thousands of unique words, the Word Document tables blows up very quickly and takes way too long to search through.

TL;DR My question is this:

How can I store searchable data from large documents in an SQL database, while retaining the ability to use my own search algorithm (I am aware SQL has one built in for .docs and pdfs) based on custom factors (like occurrence, as well as others) without having an outright massive table for all the entries linking each word to a document and its properties in that document?

Sorry for the long read and thanks for any help!

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  • 7
    If full-text search doesn't solve all of your problems, maybe a relational database isn't the solution you're after anyway... Dec 5, 2013 at 21:23
  • 2
    The content index guys actually store the location of each word in the document (so you can tell if words are nearby each other, find phrases, etc.), not just the number of occurrences.
    – Gabe
    Dec 5, 2013 at 21:23
  • 3
    This is a problem better suited for nosql In particular redis Dec 5, 2013 at 21:24
  • 1
    i think your structure is correct. it will be about the indexing
    – Randy
    Dec 5, 2013 at 21:28
  • 4
    Have you looked into Lucene?
    – mbeckish
    Dec 6, 2013 at 20:02

3 Answers 3

5

Rather than building your own search engine using SQL Server, have you considered using a C# .net implementation of the lucene search api's? Have a look at https://github.com/apache/lucene.net

1
  • It looks like my best bet is to use Lucene. Thanks.
    – Roman
    Feb 2, 2014 at 17:25
2

Good question. I would piggy back on the existing solution of SQL Server (full text indexing). They have integrated a nice indexing engine which optimises considerably better than your own code probably could do (or the developers at Microsoft are lazy or they just got a dime to build it :-)

Please see SQL server text indexing background. You could query views such as sys.fulltext_index_fragments or use stored procedures.

Ofcourse, piggy backing on an existing solution has some draw backs:

  1. You need to have a license for the solution.
  2. When your needs can no longer be served, you will have to program it all yourself.

But if you allow SQL Server to do the indexing, you could more easily and with less time build your own solution.

-3

Your question strikes me as being naive. In the first place... you are begging the question. You are giving a flawed solution to your own problem... and then explaining why it can't work. Your question would be much better if you simply described what your objective is... and then got out of the way so that people smarter than you could tell you HOW to accomplish that objective.

Just off hand... the database sounds like a really dumb idea to me. People have been grepping text with command line tools in UNIX-like environments for a long time. Either something already exists that will solve your problem or else a decent perl script will "fake" it for you-- depending on your real world constraints, of course.

Depending on what your problem actually is, I suspect that this could get into some really interesting computer science questions-- indexing, Bayesian filtering, and who knows what else. I suspect, however, that you're making a very basic task more complicated than it needs to be.

TL;DR My answer is this:

** Why wouldn't you just write a script to go through a directory... and then use regexes to count the occurences of the word in each file that is found there?

4
  • So you're saying there is no need to preprocess tens of thousands of documents to make subsequent searches faster? The solution is to just do a search through all of the files each time? Even if the system needs to do lots of searches quickly?
    – mbeckish
    Dec 6, 2013 at 19:57
  • 1
    That may be a significant problem there, mbeckish. The problem with breaking the documents down into individual words in a database is that it does not allow you to search for phrases or patterns. If speed is an issue, you can always cache your search results so that the most commonly used searches aren't being redone.
    – Jeff
    Dec 6, 2013 at 20:13
  • If you store the correct index data per word, you could also search for phrases, ans others have mentioned above.
    – mbeckish
    Dec 6, 2013 at 20:28
  • This solution will be deployed on a webserver. My sincerest apologies, I forgot to clarify that in the original post. There will be million of documents simultaneously being accessed by thousands of users. I can't imagine the kind of hard server-side storage I would require to search quickly. And the reason I provided my flawed solution is in an attempt to help people understand the objective in case I wasn't clear enough.
    – Roman
    Dec 7, 2013 at 2:16

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