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I'm having a hard time searching the internet for this, so thought I would ask the T-SQL question here. I have a table called CUST. CUST contains customer entrydate, name, company, address, email, among other things. I wrote a simple query to find new customers based off entrydate;

Select * from CUST WHERE ENTRYDATE between '2012-08-01' and '2012-08-30'

This works great, except I found a problem. When our webstore creates new orders, if the customer details don't match EXACTLY, a new customer is created. That being the case, I want to take my original results, and trim the results set if I have more than one occurrence of cust.firstname + cust.lastname + I can write these in individual queries, just unsure how to do this in a single sql script.

I thought about doing a join on name back to the table, and while the join doesn't error, I don't know how to count the occurrences, I was thinking of counting customer numbers.

My join looks like this (stripped out the group by and column selection to make it easier to read;

from CUST
    Right Outer Join 
    select *
    from CUST 
    WHERE ENTRYDATE between '2012-08-01' and '2012-08-30'
            AND LTRIM(RTRIM(Firstname + Lastname + Company)) <> ''
    Group By *     
    ) as newcs

    on LTRIM(RTRIM(CUST.Firstname + CUST.Lastname + CUST.Company)) = LTRIM(RTRIM(newcs.Firstname + newcs.Lastname + newcs.Company))

Any suggestions?

share|improve this question
What version of SQL Server are you using? – JNK Sep 25 '12 at 19:46
What are you using for the customer login? If you use an email address you can stop the system from make new accounts for the same customer. – hbrock Sep 25 '12 at 19:47
Sorry, using SQL-Server 2003. I have no control over the webstore, or the customer order system (the other place customers are created). I do have access to the database though. – MLindsay Sep 25 '12 at 19:49
There is no SQL Server 2003. Do you mean 2008? 2005? 2000? – JNK Sep 25 '12 at 19:55
Without a CustomerID (primary key) have no way to establish which duplicates are valid and which are not. – Frisbee Sep 25 '12 at 23:06
up vote 1 down vote accepted

Distinct records in the current time period that were not entered prior to this reporting period:

WHERE c1.ENTRYDATE BETWEEN '2012-08-01' AND '2012-08-30'
    FROM @CUST c2 
    WHERE c2.ENTRYDATE < '2012-08-01'
    AND LTRIM(RTRIM(c1.Firstname + c1.Lastname + c1.Company)) = LTRIM(RTRIM(c2.Firstname + c2.Lastname + c2.Company))
share|improve this answer
Thanks Diana, this did the trick. Will save my customer service person hours of labor. – MLindsay Sep 26 '12 at 0:37

If you are looking to delete the duplicate records, you can use the following script:

    SELECT PK_Column FROM 
        SELECT ROW_NUMBER() OVER(PARTITION BY FirstName, LastName, Company ORDER BY EntryDate) AS RN, PK_Column
        FROM Customers
    ) A
    WHERE A.RN > 1 
share|improve this answer
Not trying to delete, just trying to create a report that accurately dumps a list of new users for my customer service staff. – MLindsay Sep 25 '12 at 21:04

This query results only newest customers with distinct (trimmed) FirstName+LastName+Company

SELECT FirstName,LastName,Company,EntryDate FROM(
        SELECT FirstName,LastName,Company , EntryDate, ID= LTRIM(RTRIM(FirstName)) + LTRIM(RTRIM(LastName)) + LTRIM(RTRIM(Company))
         FROM CUST
        WHERE EntryDate BETWEEN '2012-08-01' and '2012-08-30'
        ) AS a
    ) AS b

If you need to take oldest ones, remove the DESC part after ORDER BY Clause

share|improve this answer
Thanks for your responses, I will start investigating and report back which ones work! – MLindsay Sep 25 '12 at 23:00

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