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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')

Resultant Data


ID  Column1 Column2 sys_updated_on
1         A       B 31/10/2012 22:00:00
2         C       D 31/10/2012 22:30:00

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

Desired result

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

share|improve this question

1 Answer 1

up vote 1 down vote accepted


Try this

;with cte as
    select recs_id, sys_updated_on, column1, column2, 
        ROW_NUMBER() over (order by sys_updated_on) rn
    from audit a
        (max(old_value) for fieldname in (column1,column2)) p
    case when ud1>ud2 then ud1 else ud2 end as updateddate,
from cte
    outer apply 
        select top 1 
            column1 as mc1, sys_updated_on as ud1 
        from cte prev1 
        where prev1.recs_id=cte.recs_id and prev1.rn<cte.rn 
        order by prev1.rn desc
        ) r1
    outer apply 
        select top 1 
            column2 as mc2, sys_updated_on as ud2 
        from cte prev2 
        where prev2.recs_id=cte.recs_id and prev2.rn<cte.rn 
        order by prev2.rn desc
        ) r2
    inner join recs on cte.recs_id =
where cte.sys_updated_on is not null
    select id, sys_updated_on, Column1, Column2 from recs
order by recs_id, cte.updateddate   
share|improve this answer
This doesn't really work in my case (far too many fields and tables are involved to make writing a specific transform) so I've gone for a procedural component written in C# to generate historical rows that can be added to the current row version. I'm accepting the answer though as this would be a good solution for most people with this problem. – Steve Homer Nov 26 '12 at 14:00

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