I am designing a new MySQL database (using InnoDB as the engine) that will host tables into which large amounts of data are being logged (around 2 million records per day, 5 years worth of data kept = approx 3 650 000 000 rows). Now, clearly it is not a very smart idea to store all of this in a single table, so these are pretty much my options:
- Use partitioning on the table (how much of an improvement will this really offer at this scale?)
- Generate a new table to contain a single month's data each (so, around 60 000 000 rows per table)
It needs to also be noted that I will have to do some kind of multi-master replication (or clustering).
Now, I'm thinking option 2 may be the better one, as it will allow for the smallest possible set of data to be queried (when the user specifies the dates to search), and will also simplify archiving of data after 5 years (just move the entire table). However, using option 2 means that I will have to either make use of joins, unions, or I'll have to run multiple separate queries in order to generate a resultset (the latter is not preferred if you need to order by something other than date).
So, my question is, is there a way to run the query in parallel across the multiple tables in a way that will really put the focus on speed, other than by using joins?. I'm thinking of guys like Google who are able to achieve their speed in searches by doing more or less this type of thing.