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I've got a really large MySQL table that is simply too big to query frequently (500m+ rows). What I've done is cache the results I need in another table called "recent".

In the "recent" table the schema looks like this




I've put a unique index on USER_ID and DISPLAY_ORDER as I only want to store up to 64 records per user in this table. As such, DISPLAY_ORDER is simply an int that goes up to 64. The rows are updated using a REPLACE INTO.

Is this a good approach? Or should I periodically just delete data from the table once a user hits over 64 rows. I need to take performance into consideration. The master table that's at 500 million will grow to 1 billion over the next few months, and at 64 rows per user that means the "recent" table will be quite large, too...

Thanks for any help.

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You could consider partitioning your underlying table. – eggyal Oct 21 '12 at 7:50

If I were you, I would seriously consider moving to a Big Data NoSQL database. Something like Cassandra or HBase, which both have very good performance with large sets of data. Let 5-10 clustered nodes do the work for you with a MapReduce rather than one giant monolithic server trying to scan and seek through that many records.

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I agree with both eggyal and Todd Nakamura.

eggyal: partition your data
When dealing with datasets that large you really need to partition the data so you have the chance to run your queries on a subset of the data verses the whole thing.

Todd Nakamura: investigate a different database technology.
This problem does seem like a NoSQL data store would be a good solution. It would allow extremely large datasets, and the ability to use Map/Reduce (Hadoop) to parallalize queries.

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