I have a scenario where I need to check if rows in a target database need updating from a source database. The source data is actually a view and data from that view gets pumped into a destination table. Because the source view collects/rolls-up/pivots data from several underlying tables we don't really have a good way to change the schema to support change tracking, so my thought was to compute a hash of each row's data and include that as part of the view. We can then compare the hash value in the destination table to see if there's a difference and update accordingly.
I'm aware of the:
CHECKSUM BINARY_CHECKSUM HASHYBYTES
functions. Either CHECKSUM() or BINARY_CHECKSUM() seems to be the best option but I'm not sure how well it will perform over a view with 50 columns and a million+ rows. I'm also aware that the checksums/hashes generated may not be different even after an edit, but that's tolerable in this case.
So the question: Is the hash/checksum approach a good way to do this and if so what's the best function to use? Or is there another, better way entirely to approach the problem?
(Oh, running on SQL Server 2005 now but we'll soon be moving to 2008R2, if that helps.)