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My question is about using fulltext.As I know like queries which begin with % never use index :

SELECT * from customer where name like %username%

If I use fulltext for this query can ı take better performance? Can SQL Server use fulltext index advantages for queries like %username%?

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3 Answers 3

Short answer: there is no efficient way to perform infix searches in SQL Server, neither using LIKE on an indexed column, or with a fulltext index.

Long answer: There is no fulltext equivalent to the LIKE operator in the general case. It is important to understand that while LIKE words on strings of characters, fulltext works by breaking the query and target string into words/terms, and performs comparisons upon these individual terms.

SQL Server fulltext does support a subset of LIKE with the prefix term operator. From the docs (http://msdn.microsoft.com/en-us/library/ms187787.aspx):

SELECT Name
FROM Production.Product
WHERE CONTAINS(Name, ' "Chain*" ');

would return products named chainsaw, chainmail, etc. Functionally, this doesn't gain you anything over the standard LIKE operator (LIKE 'Chain%'), and as long as the column is indexed, using LIKE for a prefixed search should give acceptable performance.

Trying LIKE '%username%' on an indexed column is of no help, because the leading % prevents any index from being used. Further, the asterisk of a fulltext query can only appear at the end of the query term, so again this is of no help to you.

It is possible to do efficient indexed postfix searches by creating a second column of the data you want to search, setting its value to the reverse of the first, and indexing it. You can then query as follows:

SELECT Name
FROM Production.Product
WHERE Name_Reversed LIKE 'niahc%'; /* "chain" backwards */

which returns products with their names ending with "chain".

I suppose you could then combine the prefix and reversed postfix hack:

SELECT Name
FROM Production.Product
WHERE Name LIKE 'chain%'
AND Name_Reversed LIKE 'niahc%';

which implements a (potentially) indexed infix search, but it's not particularly pretty.

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Very creative idea on combining the prefix and reversed postfix hack! Would have never thought of that! –  RSW Jan 25 '13 at 22:37

You have to understand how index is working. Index is the very same like the dead-wood edition of encyclopedia.

If you use:

SELECT * from customer where name like username%

The index, in fulltext or no fulltext should work. but

SELECT * from customer where name like %username%

will never work with index. and it will be time-consuming query.

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Ok Ran thank you very much for your comment I am agree with you about working mechanishm for index.(Like encyclopedia).But fulltext much faster(1/20) than like query for our situation( SELECT * from customer where name like %username% ).Actually I wonder How it achive this? –  profvm Nov 16 '10 at 15:02
    
developer.com/db/article.php/3446891 LIKE is totally different than fulltext searches. Only a simple index on a char/varchar attribute would work in your first query. No fulltext index is used in this case. –  AlexanderMP Nov 17 '10 at 6:42

Of what I know about fulltext indexes, i'll make the following extrapolations:

  1. Upon indexing, it parses the text, searching for words (some RDBMS, like MySQL, only consider words longer than 3 chars), and placing the words in the index.
  2. When you search in the fulltext index, you search for words, which then link to the row.
  3. If I'm right about the first two (for MSSQL), then it will only work if you search for WORDS, with lengths of 4 or more characters. It won't find 'armchair' if you look for 'chair'.

Assuming all that is correct, I'll go ahead and make the following statement: The fulltext index is in fact an index, which makes search faster. It is large, and has fewer search posibilities than LIKE would have, but it's way faster.

More info:
http://www.developer.com/db/article.php/3446891
http://en.wikipedia.org/wiki/Full_text_search

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