Given the following tables recs and audit, how would one in SQL transform into the resultant table.
A little background, the former table is a simplified example of an standard SQL table used in a CRUD application collecting data. On any update to a column a record is written to an audit table in EAV form. There is now a requirement to transform the recs table into a historical table with a copy of each row as it was at a point in time for reporting (the data will be stored in a star schema data warehouse ultimately.
It seems like this would be straightforward enough in a procedural language and manageable (if ugly) using cursors, but is there a set based approach that would work?
I'm using T-SQL right now, but I imagine that I could port any examples or ideas from any sufficiently rich SQL dialect.
create table recs ( ID int identity(1,1) not null primary key, Column1 nvarchar(30) not null, Column2 nvarchar(30) not null, sys_updated_on datetime not null ) create table audit ( ID int identity(1,1) not null primary key, recs_id int not null, fieldname nvarchar(30) not null, old_value nvarchar(30) not null, new_value nvarchar(30) not null, sys_updated_on datetime not null ) insert into recs (Column1, Column2, sys_updated_on) values ('A', 'B', '2012-10-31 22:00') , ('C', 'D', '2012-10-31 22:30') insert into audit (recs_id, fieldname, old_value, new_value, sys_updated_on) values (1, 'Column1', 'Z', 'A', '2012-10-31 22:00') , (2, 'Column2','X', 'D', '2012-10-31 22:30') , (1, 'Column1', 'Y', 'Z', '2012-10-31 21:00')
Recs ID Column1 Column2 sys_updated_on 1 A B 31/10/2012 22:00:00 2 C D 31/10/2012 22:30:00
Audit ID recs_id fieldname old_value new_value sys_updated_on 1 1 Column1 Z A 31/10/2012 22:00:00 2 2 Column2 X D 31/10/2012 22:30:00 3 1 Column1 Y Z 31/10/2012 21:00:00
recs_id sys_updated_on Column1 Column2 1 null Y B 1 31/10/2012 21:00:00 Z B 1 31/10/2012 22:00:00 A B 2 null C X 2 31/10/2012 22:30:00 C D