The usual way to do something like this is to maintain a permanent work table (or tables) that have no constraints on them. Often these might live in a separate work database on the same server.
To load the data, you empty the work tables, blast the data in via BCP/bulk copy. Once the data is loaded, you do whatever cleanup and/or transforms are necessary to prep the newly loaded data. Once that's done, as a final step, you migrate the data to the real tables by performing the update/delete/insert operations necessary to implement the delta between the old data and the new, or by simply truncating the real tables and reloading them.
Another option, if you've got something resembling a steady stream of data flowing in, might be to set up a daemon to monitor for the arrival of data and then do the inserts. For instance, if your data is flat files get dropped into a directory via FTP or the like, the daemon can monitor the directory for changes and do the necessary work (as above) when stuff arrives.
One thing to consider, if this is a production system, is that doing massive insert/delete/update statements is likely to cause blocking while the transaction is in-flight. Also, a gigantic transaction failing and rolling back has its own disadvantages:
- The rollback can take quite a while to process.
- Locks are held for the duration of the rollback, so more opportunity for blocking and other contention in the database.
- Worst, after all that happens, you've achieved no forward motion, so to speak: a lot of time and effort and you're right back where you started.
So, depending on your circumstances, you might be better off doing your insert/update/deletes in smaller batches so as to guarantee that you achieve forward progress. 30 million rows over 24 hours works out to be c. 350 per second.