1

Optimize for speed.

For a catalog, I have about 150K of items: Each item record has 8 search fields and one Json data string. (No: int; Search fields are max 30 characters, JSON min 200 : max 2000 characters)

Item No is a unique field and is PK all others fields are not unique.

No  Search1 Search2 ... Search8  JSON_datastring
1     a1      a2    ...   a8      {...json...}
2     b1      b2    ...   b8      {...json...}
..
x     a1      b2    ...   c8      {...json...}

A user can search on each of the eight fields. He can search on the whole field,

WHERE Search1 = 'x'

the start of the field

WHERE Search1 LIKE 'x%'

or any part of the field

WHERE Search1 LIKE '%x%'

My first approach is to keep all the data in on table and put an index on each of the search colomns; but I'm wondering if there are faster methods.

The goal here is to get all matching JSON_datastrings as fast as possible. 'Select' speed is the only concern here (users will not make any update/insert/delete commands). Memory or disk space are hardly relevant for this project. The catalog needs updating only once a week, so import and update time is also not a big cocern.

I'm working with a MYSQL database. The data in the table is imported from a csv file each week. I have full control over the MYSQL database.

I expect about 60% of the searches to be on the whole field. Current n° of records 150K with about 20K growth per year. Concurrent users: we don't have an estimate at the moment.

Are there any suggestions on how to improve the search speed? I'm still in the design phase of the project.

1 Answer 1

1

LIKE %x% will always require a full table scan. No matter the index used, you can't optimize this. Instead, you should set a FULLTEXT search for the field - requiring FULLTEXT index and modifying the query to use MATCH ... AGAINST instead of LIKE. Without knowing the exact data is hard to offer further improvements, but generally you may want to offload MySQL from the search, moving the search to a separate service (Lucene/Solr or Sphinx). They may be more suitable not only in terms of performance, but in terms of functionality, as they are built for searching.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.