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I have two tables, one an import table, the other a FK constraint on the table the import table will eventually be put into. In the import table a user can provide a list of semicolon separated values that correspond to values in the 2nd table.

So we're looking at something like this:

ID | Column1
1  | A; B; C; D

ID  | Column2
1   | A
2   | B
3   | D
4   | E

The requirement is:

Rows in TABLE 1 with a value not in TABLE 2 (C in our example) should be marked as invalid for manual cleanup by the user. Rows where all values are valid are handled by another script that already works.

In production we'll be dealing with 6 columns that need to be checked and imports of AT LEAST 100k rows at a time. As a result I'd like to do all the work in the DB, not in another app.

BTW, it's SQL2008.

I'm stuck, anyone have any ideas. Thanks!

share|improve this question
It'd be much easier to find records in T2 but not in T1. This is a perfect situation of de-normalizing the wrong table. It's probably okay if the script is ran in mid-night or is some reporting that's ran once a while. I can't imagine how bad it is to go through all that parsing for each request. – Haoest Feb 12 '09 at 1:44
it's an import, so speed isn't too important and is only run when an import is done (couple times a week). – Kyle West Feb 12 '09 at 3:25
Most efficient non-CLR splitter I am aware of: – MarkD Jan 4 '13 at 15:02
up vote 3 down vote accepted

Seems to me you could pass ID & Column1 values from Table1 to a Table-Valued function (or a temp table in-line) which would parse the ;-delimited list, returning individual values per record.

Here are a couple options:

The result (ID, value) from the function could be used to compare (unmatched query) against values in Table 2.

FROM tmp
LEFT JOIN Table2 ON = tmp.ID
WHERE is null

The ID results of the comparison would then be used to flag records in Table 1.

share|improve this answer
although not exactly, this is pretty much what I ended up doing. – Kyle West Feb 12 '09 at 1:14

Perhaps inserting those composite values into 'TABLE 1' may have seemed like the most convenient solution at one time. However, unless your users are using SQL Server Management Studio or something similar to enter the values directly into the table then I assume there must be a software layer between the UI and the database. If so, you're going to save yourself a lot headaches both now and in the long run by investing a little time in altering your code to split the semi-colon delimited inputs into discrete values before inserting them into the database. This will result in 'TABLE 1' looking something like this

ID  | Column1
1   | A
1   | B
1   | C
1   | D

It's then trivial to write the SQL to find those IDs which are invalid.

share|improve this answer
I wish I could, I have no control over where the imports are coming from though. Legacy systems, excel, 3rd parties, etc. Huge PITA. – Kyle West Feb 12 '09 at 1:15
my sympathies are with you ;-) – Adam Ralph Feb 12 '09 at 7:56

If it is possible, try putting the values in separate rows when importing (instead of storing it as ; separated).

This might help.

share|improve this answer

Here is an easy and straightforward solution for the IDs of the invalid rows, despite its lack of performance because of string manipulations.

select T1.ID
from [TABLE 1] T1
    left join [TABLE 2] T2
        on ('; ' + T1.COLUMN1 + '; ') like ('%; ' + T2.COLUMN2 + '; %')
where T1.COLUMN1 is not null
group by T1.ID
having count(*) < len(T1.COLUMN1) - len(replace(T1.COLUMN1, ';', '')) + 1

There are two assumptions:

  1. The semicolon-separated list does not contain duplicates
  2. TABLE 2 does not contain duplicates in COLUMN2.

The second assumption can easily be fixed by using (select distinct COLUMN2 from [TABLE 2]) rather than [TABLE 2].

share|improve this answer

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