Previously my employer have contracted a company to design a few schemas for us to implement as SSAS OLAP cubes. The purpose of one such schema is that our users can group teaching time by class, tutor group OR room.
In the design, the fact is de-normalised and surrounded by multi-valued dimensions. A timetabled slot:
- might have one or more more classes attached
- might have one or more tutor groups attached
- might have one or more rooms attached
These dimensions are not handled by bridging tables. If a 60 minute timetabled slot has two classes, two tutor groups and two rooms attached, there will be 8 fact records.
Our brief specification states "aggregated values will only be correct when grouping by any single dimension individually". However, to get the correct number of minutes (on an Excel pivot table say), you would have to group by a particular class, tutor group AND room to avoid double counting.
With this configuration, you cannot group by rooms alone (as the spec I have suggests): unless I am missing something in the cube set up that establishes this double counting can occur and will handle it for clients.
Is it common/has anyone else designed a cube with this level of de-normalisation? Will end users really have to group by every dimension to avoid double counting?
(The fact record with a measure of minutes is a unique combination of class, tutor group and room)