I know, variations of this question had been asked before. But my case may be a little different :-)
So, I am building a site that tracks events. Each event has id and value. It is also performed by a user, which has id, age, gender, city, country and rank. (these attributes are all integers, if it matters)
I need to be able to quickly get answers to two queries:
- get number of events from users with certain profile (for example, males with age 18-25 from Moscow, Russia)
- get sum(maybe avg also) of values of events from users with certain profile -
Also, data is generated by multiple customers, which, in turn, can have multiple source_ids.
Access pattern: data will be mostly written by collector processes, but when queried (infrequently, by web ui) it has to respond quickly.
I expect LOTS of data, certainly more than one table or single server can handle.
I am thinking about grouping events in separate tables per day (that is, 'events_20111011'). Also I want to prefix table name with customer id and source id, so that data is isolated and can be trivially discarded (purge old data) and relatively easily moved around (distribute load to other machines). This way, every such table will have limited amount of rows, let's say, 10M tops.
So, the question is: what to do with user's attributes?
Option 1, normalized: store them in separate table and reference from event tables.
- (pro) No repetition of data.
- (con) joins, which are expensive (or so I heard).
- (con) this requires user table and event tables to be on the same server
Option 2, redundant: store user attributes in event tables and index them.
- (pro) easier load balancing (self-contained tables can be moved around)
- (pro) simpler (faster?) queries
- (con) lots of disk space and memory used for repeating user attributes and corresponding indexes