We are developing a reporting module for our software, and because of this we need to move some data from the system's production db into a datawarehouse db which will be used as the datasource for the reports (SQL Server reporting).
The schema in the production DB is quite old, so once we have data in the DW DB, we will need some additional fields (for example, calculating a correct datetime colum out of the prod db's 'date' and 'time' integer columns. (Don't ask, it's old.)
We are discussing internally how to do this in an efficient manner. Right now, it is implemented in a fugly SSIS job that basically tears down the entire DW DB every night and builds it up again from the prod db, doing data transformations as it goes. This doesn't scale very well.
I've been looking into using "newer" technologies, like for example SQL Server replication to move data in a more granular fashion.
My questions about this is: -With replication the "move data" part is obviously solved, but not the data transform part. I know I can create update triggers on the DW DB, but all table-related triggers seem to be wiped whenever I do a reinitialize on the subscription, which makes it hard to set up.
I'm not looking for an exact answer here, more a hint on which direction to take this. Sorry if the question is a bit blurry.
update: thanks for the good points below. This is software we're selling to customers, so I'm a big fan of having as few as possible "config items" for the customer to set up and maintain. The SSIS package as it stands today is one more "item" for the customer to keep tabs on, along with its schedules.
Replication intriguied me because it completely abscracts the whole CRUD "dilemma" when moving data, but you may be right - SSIS would still be better, as long as the SSIS logic is created a bit smarter than today.
Data might be quite large tho, so wiping and reimporting everything like we do today is definetely a problem that needs adressing .