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Hidden Features of SQL Server

What are those pro/subtle techniques that SQL provides and not many know about which also cut code and improve performance?

eg: I have just learned how to use CASE statements inside aggregate functions and it totally changed my approach on things.

Are there others?

UPDATE: Basically any vendor. But PostgreSQL if you want to focus only on one :D

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marked as duplicate by Aaronaught, gnovice, Brian, Roger Pate, bmargulies May 30 '10 at 1:16

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

Marking as a duplicate of Hidden Features of SQL Server - expanding this to all platforms only puts this further into the "subjective"/NARQ category. – Aaronaught May 28 '10 at 16:32
please read the update. I'm also looking for common nice sql techniques. Just like the one in my example that applies to all RDBMSes – AlexRednic May 28 '10 at 19:45

14 Answers 14

OVER Clause (SQL Server) a.k.a. Window functions (PostgreSQL) or analytic functions (Oracle)

This has been very nice to know for me. You can do all sorts of handy things like counting, partitioning, ranking, etc.

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Same goes for PostgreSQL window functions - - with much the same syntax. Seems to be the answer to half of the sql questions I've answered recently... – araqnid May 28 '10 at 16:26


Analytic (AKA ranking, AKA windowing) functions IE:

  • RANK
  • OVER

Views: Normal and Materialized

It's difficult to say much without referencing vendor specific syntax

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Ranking functions are very useful. – Philip Kelley May 28 '10 at 16:14

EXISTS. I'm amazed how many people still use COUNT(*) when checking existence or IN (SELECT...) clauses when EXISTS can do the job much quicker.

Most frequently you might see :

SELECT @MyVar = Count(*) FROM Table1 WHERE....
If @MyVar <> 0
   --do something


    --don something

is always better.

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isn't it better to join and aggregate than use subqueries? :D – AlexRednic May 28 '10 at 16:32
Outer joins are typically faster (at least were in SQL Server 2000) than doing NOT EXISTS unless the set not fulfilling the existential predicate was much smaller than the table. However, overall performance will largely be dependent on whether the query optimiser gets the query right - which it will probably do in most cases. With this being the case EXISTS is probably better if it makes the query more legible. – ConcernedOfTunbridgeWells May 28 '10 at 16:40



can be useful (and disturbingly efficient) at pickout out differing or common rows--and that's for all columns in the row--between sets. This is extremely useful when you have lots of columns.

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People don't use built in functions enough and like to reinvent the wheel, here are Ten SQL Server Functions That You Have Ignored Until Now

Using NEWSEQUENTIALID() instead of NEWID() on a clustered uniqueidentifier column will perform much better since it won't cause page splits and thus fragmentation

Using an auxilarry table of numbers so that you can quickly do some set based logic

for example

select DATEADD(m,number,'20010101')
from master..spt_values
where type = 'P'
order by 1


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I haven't used ANY/ALL/SOME in ages, using JOINs – OMG Ponies May 28 '10 at 16:17
The third item is often referred to as using a "tally" table, and can be very useful for finding gaps in sequences. – Philip Kelley May 28 '10 at 16:19
Do people really not know about GETUTCDATE()? – Joe Philllips May 28 '10 at 20:17

Two from Postgresql: DISTINCT ON (see example) and the new WITH.

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dude these are kick@$$ :D +1 clearly – AlexRednic May 28 '10 at 19:52

Lately I have been using CROSS APPLY a lot.

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It's new in 2005 (which i know was a long time ago, but there's loads of people still using 2000). Saves doing a bunch of "case when name = 'tim' then value else 0 end" to build your aggregates this weekend.

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PIVOT/UNPIVOT is supported by SQL Server 2005+, Oracle 11g+. I believe it's ANSI. CASE is more widely supported, making it my preference over PIVOT for sake of portability. – OMG Ponies May 28 '10 at 17:03

Common Table Expressions (SQL Server 2005+)

    SELECT 1 as A, 2 as B, 3 as C
    SELECT 4 as A, 5 as B, 6 as C
    SELECT 7 as A, 8 as B, 9 as C

They are really nice for breaking your queries into steps

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under MySQL, using the keyword "STRAIGHT_JOIN". If you know your data, and the relationships of lookup tables that you are joining to, sometimes the optimizer looks at the smaller tables as a basis of a join and tries to query the "less record" count to your "bigger" table thus taking significantly more time. If your primary table is first in the "from", and its "criteria" up front, the straight join will hit that first, join to the rest of the tables and be done in no time.

I've had to do this dealing with gov't data of 10+ million records joined to about 15+ lookup tables. Without straight-join, the system choked after 20+ hours. Adding Straight-join, it was done in about 2 hrs.

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In Sql Server, the HAVING clause. Particularly, HAVING(COUNT DISTINCT FOO)> @SomeNumber to quickly find rows with more than one distinct value for a given grouping.

From MSDN:

USE AdventureWorks2008R2 ;
SELECT SalesOrderID, SUM(LineTotal) AS SubTotal
FROM Sales.SalesOrderDetail
HAVING SUM(LineTotal) > 100000.00
ORDER BY SalesOrderID ;
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From PostgreSQL Docs:

Table partitioning

Partitioning refers to splitting what is logically one large table into smaller physical pieces. Partitioning can provide several benefits:

  • Query performance can be improved dramatically for certain kinds of queries.

  • Update performance can be improved too, since each piece of the table has indexes smaller than an index on the entire data set would be. When an index no longer fits easily in memory, both read and write operations on the index take progressively more disk accesses.

  • Bulk deletes may be accomplished by simply removing one of the partitions, if that requirement is planned into the partitioning design. DROP TABLE is far faster than a bulk DELETE, to say nothing of the ensuing VACUUM overhead.

  • Seldom-used data can be migrated to cheaper and slower storage media.

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Derived tables to create "variables" and reduce repeated code.

Something like this but can be expanded upon. Obviously "Average Value" can be a much more complex calculation, and if you have several it helps clean up code.

Select *, case when AverageValue > 50 then 'Pass' Else 'Fail' end
 Select ColA, ColB, AverageValue = (ColA+ColB)/2
 From InnerMostTable
) AverageValues
Order By AverageValue Desc
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see leonbloy's answer. much more elegant. – AlexRednic May 28 '10 at 21:24

In SQL Server using the Convert() function to get dates in the format mm/dd/yyyy instead of Cast() function

SELECT convert(datetime,  '1/1/2010', 101)

I use this all the time

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