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I have been using MySQL (InnoDB) for a social network like site and soon figured that in some cases more complex queries can get very slow. However, also very simple queries, e.g. when you have a range scan combined with ORDER BY.

Mysqlperformance blog talked about this issue of mysql, and I have tried to find solutions but till now nobody directly addressed this topic whenever I asked a question for this specific issue. As I understand and can see, MySQL can use an index both for range scan and order by only, if it is the last part in a compound index. E.g. index(range,sort_field) will not work.

Now, this basic query:

  SELECT id, username 
  FROM user 
  WHERE (birthday BETWEEN '1985-01-01' AND '1995-01-01') 
  ORDER BY timestamp_registered 

MySQL can use an index to order, and then use where to find 10 users that match the query. However, what if the majority of users is between 18 and 28, and you search for users between 78 and 79? If MySQL uses the index to order, using where will take a long time to find 10 users that match.

Now, the same issue, if you add more specifications such as country, language, blocked_users, friends etc. Some countries with larger populations will be faster, whereas smaller countries very slow.

Now, the question for me was, what is the solution? When I searched for fast indexing, I came across Sphinx, solr, lucene... but also as far as I understood they are all not exactly easy to implement and use and secondly are mostly mentioned for fulltext search, which is nice, but not such a high priority right now...

Can anybody address that specific issue with MySQL using index on range, multiple range, range and order by? And secondly, whether sphinx etc could help in that case or not? A big disadvantage that I found is the re-indexing necessary with sphinx, is that correct? Changes are very frequent and new users come. I calculate with about 1,500 new users per day and about 2milion in total.

Thank you very much in advance for any help!

share|improve this question
Sphinx has a different use, it's used for searching textual data and it builds pretty big indexes to do so. It's not exactly the same as InnoDB's indexes. The underlying problem isn't MySQL, it's the HDD subsystem that kills the performance. That's why you have to resort to horizontal scaling, which is an art in itself. Or, if you can afford it - you buy expensive hardware (FusionIO and similar products). Optimizations could be made by changing software here and there, but in the end it's the disk that has to seek and return the data and whatever you do - slow disk, slow app. –  N.B. Nov 5 '12 at 17:32
As noted sphinx isnt really designed for this. Filtering/sorting like this doesnt use any special indexes. Where sphinx might actully outperform mysql, is that it does load all attributes in memory. So by keeping everything in memory it can do well. It might not be much faster if could convince mysql to keep the data in memory. Personally would suggest a alternative storage engine for mysql, rather than abusing a full-text search engine (sphinx or otherwise). Infobright is one possiblity, or maybe TokuDB –  barryhunter Nov 5 '12 at 17:40
How much optimization have you done in MySQL, and are you quite sure that the performance you needs cannot be achieved by tuning MySQL? (E.g. Your basic query probably requires filesort, even if there is an index on (birthday, timestamped_registered), because it is not "ORDER BY birthday, timestamp_registered". How many date ranges do you have, and can you replace them with a finite number of groups?) As you state that writes are frequent, I am not sure if building a parallel index with Sphinx/Lucene is a good idea. It involves a lot of complexity but might not give you any benefit at all. –  Kai Chan Nov 5 '12 at 18:53
No. They are still mysql. Just using a different engine - like swapping mysiam for innodb. –  barryhunter Nov 5 '12 at 20:27
InnoDB keeps the workint-set data in memory, it's controlled by innodb_buffer_pool_size variable and it's an extremely good performant part of InnoDB. While the dataset fits the memory, nearly all operations performed are excellent. Changing for a NoSQL wouldn't help that much, NoSQLs will still have to deal with disk access at a certain point. A column-based engine like infobright might not hit that bottleneck immediately, but it does exist. And the two ways of "fixing" it are either scale up, or scale out. –  N.B. Nov 5 '12 at 21:42

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