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I just want to know the ways you guys use while writing a complex queries depending upon the scenario. Any tool or instant logic or paper pen. I am asking so as Sql do not provide as much as flexibility (like API, Debuggers etc) than Visual Studio, where we can debug and fix code instantly. I has posted numerous questions here on SO regarding SQL and got the answer in a minute or two.

I am not that much good in Sql programming, as I feel more comfortable in the C# or VB.net. But i am working on that part too. So, How Do I improve my programming skill in SQL query writing, apart from studying books.

Please guide...

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closed as not a real question by Quassnoi, JNK, HLGEM, C. A. McCann, Bo Persson Jul 14 '11 at 19:25

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thanks both of u –  Amit Ranjan Jul 13 '11 at 12:05

3 Answers 3

up vote 5 down vote accepted

Logical side

Populate your query clauses in this order:

FROM, WHERE, SELECT (last)

Don't be afraid of subqueries - use all three types -

  • single result - use anywhere
  • column result - use this with IN
  • row-column result - use this in FROM, you can join to it.

Learn the datatypes! Don't convert datetimes into varchars. Don't represent monetary values as float, use decimal or currency.


Execution side

Show the execution plan!

Run the query with:

SET STATISTICS IO ON
SET STATISTICS TIME ON

Learn the difference between 5 possible ways a table may be accessed (table scan, clustered index scan, clustered index seek, index scan, index seek).

Learn the difference between the 3 possible ways to execute a join (nested loop, merge, hash).

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Know your data. Know your system. Know what the results should be.

The most common error I find when working with SQL developers is that they don't know what the results of their query should be; if results come back and look "close", they assume the results are correct.

For complex queries or queries for large volume, I suggest you "evolve" the query.

1) Start with the simplest query possible and run it. The more familiar you are with your environment, the more complex the first draft of your query can be. Only put the minimum number of columns in the SELECT clause needed to verify the results are correct.

2) Evaluate the results. Evaluate the performance.

3) Repeat until finished.

Generally the first issue that occurs is you will go from a query that returns 10 records to a query that returns 0 records or a 1000 records. At that point you know that a mistake has been made and can correct it.

Generally the second thing that happens is that a query that runs sub-second takes much longer. At this point you have either made a mistake in the SQL, of found a performance issue. Once you have eliminated a SQL error, now is a good time to start using the execution plans to evaluate where the performance issue is.

As you become more familiar with SQL and your environment, you can skip steps.

Now, I generally write the full query at the start and run it. If I run into problems, then I follow the steps above.

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Excellent answer –  HLGEM Jul 13 '11 at 14:30

I write complex queries daily and have done so for more than ten years.

For complex queries, derived tables and CTEs, temp tables or table variables are your friend. They allow you to figure out chunks of the data so that when you combine them together into a larger query you know you have filtered to the correct records.

For instance recently I did a complex aggregate spend report. The first chunk of data I wanted was the group of activities that would be covered by the report. The next chunk was the expenses associated with only those activities (by doing in chunks I knew I was only going to get the activities I wanted). The next chunk of data concerned the address and name of the recipient of the expenses. And so on.

By breaking things down into chunks, you can test early and often and be sure that you have the correct data at each step. This reduces the chances of an unnoticed bug when returning reports with thousands of records.

Another important issue in writng complex queries is knowing which structures are most likely to be performant. I virtually never write a correlated subquery for instance because they are known to perform badly (in the database I use) and can almost always be replaced by a derived table or join which will perform better. What makes little difference when you are running a test in January and there are only ten records available will make a huge difference in performance in an aggregate report that accummmulates data for the whole year by the time you get to November or so. So knowing the structures that perform well is critical to writing complex queries.

A thorough understanding of some SQL concepts (such as what joins are appropriate for what circumstances, how to use aggregate functions and grouping, how to vary the data for one field based on some criteria (using CASE), the handling of nulls, how to make sure a divide by zero error won't happen, how to handle UNION and UNION ALL and when to use which, etc.) is critial to being able to rapidly develop a complex query. I know what technique to use for the date I need to get. There are data design patterns just as there are patterns in object oriented programming. The SQL people just haven't really done a good job of spelling them out in that way.

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