I am currently using RavenDB in a proof-of-concept for a simple dashboard application that provides an aggregated view over incoming events into a system. Lets say for example the user can see a granularity of by hour (for a day), day, month or year.
I have 3 million existing events to import & index and I'm looking for the best / most performant way to go about doing this after a number of less than successful attempts.
Please note this question isn't about the performance of the application once the data and indexes have been generated, that part is very good.
So I have:
- A single class that represents the events, with fields for what happened and when (DateTime + 3 string fields).
- Map/Reduce indexes for Hour, Day, Month and Year based on then event date and event type.
- The app queries the indexes for the hourly, daily, monthly and yearly values
- Historically the hourly aggregates would needed at minimum (not the individual events).
I can import the data without issue provided the indexes don't exist, however if the indexes exist i consistently get OutOfMemoryExceptions after about 45 minutes of index processing.
Can the indexing process be tweaked and what would be the suitable values?
Alternatively happy to have it suggested to approach the problem from a different way.