I'm working rearchitecting a reporting/data warehouse type database. We currently have a table that has data at the hotel grain (i.e. HotelID plus lots of measures, including measures like Last7DaysGross, Last28DaysXXX, etc).
I'm thinking that it would be best to move to a fact table that is at the Hotel/StayDate grain. However, grouping on the HotelID and including date related measures such as Last7DaysGross need to perform very well.
What kind of structures would work here? I don't think I'd be able to use indexed views the way that I had hoped, because of the multiple restrictions on them (no subqueries, etc.) To have reasonable performance, will I need to create a new table at the Hotel level (aggregated from the HotelStayDate level?) That's the level at which people will most often be querying. Do I need to actually create fields such as Last7DaysGross? That doesn't seem like a good design, but I'm having a hard time coming up with another one.
Sorry this question is a little vague. Is there something else I'm missing here? I know most often these kind date related measures would be done at the front-end level (i.e. in a tool such as Business Objects). However, for this project, we'll need to have it in the database.
Thanks for all the thoughtful comments! I accepted David Marwick answer because of his idea of having an expanded date dimension. That thought hadn't even crossed my mind, and it sounds well worth trying.
Expanding a little on David Marwick's thoughts, I came up with this idea. I might try and see how it actually works:
DateDimension DateKey DateKeyBeginLast28Days DateKeyEndLast28Days Fact DateKey GrossTransactions
Then when querying:
Select DateKey ,SumLast28Day = sum(GrossTransaction) from Fact join DateDimension on Fact.DateKey >= DateDimension.DateKeyBeginLast28Days and Fact.DateKey <= DateDimension.DateKeyEndLast28Days group by DateKey