Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am looking for options for dealing with large tables in MySQL. In my database there are few table with over 130 million of rows (over 70GB) increasing very fast. For reporting and analysis purposes I have to run some aggregation functions and the queries run very slow despite the indexes. i tried to make some table with consolidates data, but that is not optimal. So I am looking for option for tools I can use to solve this problem.

share|improve this question
    
What method/approach are you using for consolidating your data? –  Nonym Dec 23 '11 at 2:13
    
I ran some pre-aggregate queries to populate summary tables –  user1078191 Dec 23 '11 at 13:51
    
Hardware, storage engine, query itself, indexes - all of that influences the speed of the query. You can run EXPLAIN SELECT in order to see what MySQL does. 70 gigs is a lot of data, however it can always be optimized (different storage engine, normalization, partitioning) - since you haven't posted any of the information required to do the analysis, it's difficult to pinpoint the problem and propose the solution except the usual solutions - such as Nonym's answer. –  N.B. Dec 23 '11 at 15:13
    
Do you really need to have all data in this table? Could you accumulate new data in this table running stored procs periodically. And when they done you can push handled data to another (archive) table which you can still use in case of something. –  ravnur Dec 23 '11 at 15:15

1 Answer 1

Start by looking into partitioning your table if you haven't already:

http://dev.mysql.com/doc/refman/5.1/en/partitioning.html

http://www.slideshare.net/datacharmer/mysql-partitions-tutorial

http://blog.mayflower.de/archives/353-Is-MySQL-partitioning-useful-for-very-big-real-life-problems.html

How are you 'consolidating' your data? Maybe the method you are using isn't optimal. One good approach (let me know if this is actually what you are doing) is to create a table that contains aggregated data. Then set it up this way:

First putting aside how the data is being dumped into your main table...

  • Create a job (cron or whatever you may have handy or already configured) that runs at a specified interval, relative to how the data is loaded into the main table (let's call it MAIN, moving forward). If your MAIN table gets loaded hourly, then sync it. Half-hourly? Doesn't matter. You can check the speed anyway, or if it's near off-peak hours that your reports run, then schedule near then

  • Properly index your table for consolidated data. Let's call it AGG moving forward.

  • Create a stored procedure that loads data from MAIN to AGG, which is basically an AGG LOAD FOR INTERVAL-?. Of course, you're the only one here who knows how or when the data gets inserted into MAIN, so you'll also be the one who knows what the aggregation intention is. It's also possible to keep running the aggregating stored procedure if the aggregation intention is not completed (say it's for an entire day.. so it is an accumulative run until that is set)

  • Use STAGING tables. For me, they're the best.

  • Create a stored procedure that re-checks the data, so that any updates or additional insertion of records can be reflected in the AGG table by running this procedure. Include parameters for the range to update. If it's daily, then you have a DAILY AGG LOAD and DAILY AGG RELOAD procedure. Include an AGG CHECK INTERVAL and AGG CHECK DAILY procedure which will help you sleep well at night. Oh and not to mention a AGG DATA HOLE CHECK or a MISSING AGG DATA CHECK and apply business rules that implement checking for a required minimum amount of data which you can get from the aggregated table or from the main table or staging table (preferrably)

  • Of course, never modify the AGG table. Always only reload it.

  • How does this help? Wouldn't you then only need to have your reports query the AGG table, which is smaller, and faster (since the aggregation has been done already)? Maybe the performance issue comes in with the interval loading, but if you properly structure your table, its indexes and it's maintenance, it should be worth it.

  • Where does partitioning come in? Archiving. Once a certain time has passed (discuss what's acceptable with your team/boss/top man) you can archive the old data from MAIN. I experienced having to keep 1 year's worth of data in the production database. That kinda felt like a drag, but because it was the client's request, the company had no choice but to give me the disk space I needed (rubs hands) and boy did I play around with it until I got something running decently. I must mention that my experience was with Microsoft SQL Server 2005, and stored procedures and SSIS made it fun.

This is all if you don't know it already, and for others who may want to consider options. I'm not saying you didn't know any of the above already; I'm just stating what I have been able to do before -- considering that I didn't have more information to work with from your post, except that you have a consolidation process that you tried..

share|improve this answer
    
Thank you for your suggestions. I already tried quite of few, may be not in that order. So I should begin with a good planning. –  user1078191 Dec 23 '11 at 15:27
    
Yeah, I should have mentioned that.. Properly plan, anticipate and never underestimate (over estimations are better, in terms of disk space, for one) your requirements.. –  Nonym Dec 24 '11 at 4:46

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

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