I have an interesting issue and requirement for a large multi-schema database.
-The database is around 130Gb in Size.
-It is a multi Schema database, each customer has a schema.
-We currently have 102,247 tables in the system.
-Microsoft SQL Server 2k8 r2
This is due to customisation requirements of customers, all using a single defined front end. The issue we have is that our database backups become astronomical and getting a database restore done for retrieval of lost/missing/incorrect data is a nightmare. The initial product did not have defined audit trails and we don't have 'changes' to data stored, we simply have 1 version of data.
getting lost data back basically means restoring a full 130GB backup and loading differentials/transaction files to get the data.
We want to introduce a 'Changeset' for each important table within each schema. essentially holding a set of the data, then any modified/different data as it is saved - every X number of minutes. This will have to be a SQL job initially, but I want to know what would be the best method.
Essentially I would run a script to insert the 'backup' tables into each schema for the tables we wish to keep backed up.
Then run a job every X minutes to cycle through each schema and insert current - then new/changed data as it spots a change. (based on the modifiedDate of the row) It will then retain this changelog for around a month before self-overwriting.
We still have our larger backups, but we wont need to keep a larger retention period. My point is, what is the best and most efficient method of checking for a changed data and performing an insert.
My gut feeling would be :
INSERT INTO BACKUP_table (UNIQUE ID, col1,col2,col3) select col1,col2,col3 from table where and ModifiedDate < DATEADD(mi,+90,Current_TimeStamp)
This would have to be in a loop to go through all schemas and run this. A number of tables wont have changed data.
Is this even a good method?
What does SO think?