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Writing SQL Queries: Let's Start with the Basics

 

Jackie Goldstein

Renaissance Computer Systems

November 2005

Summary: Learn to be more productive with SQL Server 2005 Express Edition with this quick introduction to the T-SQL language and the basics of getting information from the database using the SELECT statement.

Introduction
Fetching Data: SQL SELECT Queries
Conclusion
References

Introduction

With the availability of ever more powerful programming tools and environments such as Visual Basic and Visual Studio.NET, as well as the availability of powerful database engines such as the free SQL Server 2005 Express Edition, more and more people find themselves having to learn the basics of SQL queries and statements. Sometimes they are professional developers who are experienced in other types of programming, and sometimes they are individuals whose expertise lies in other areas, but they suddenly find themselves programming database applications for fun and/or profit. If you fall into one of these categories, or are just curious about database programming, then this article is for you.

SQL Server 2005 Express offers you the opportunity to dive deeply into advanced databases and database applications, while still being free of charge. It is the same core database engine as all of the other versions in the SQL Server 2005, but it allows for easier setup and distribution all at no cost. It supports all of the advanced database features including, views, stored procedures, triggers, functions, native XML support, full T-SQL support, and high performance.

The purpose of this article is to lay out the basic structure and use of SQL SELECT queries and statements. These statements are part of Transact-SQL (T-SQL) language specification and are central to the use of Microsoft SQL Server. T-SQL is an extension to the ANSI SQL standard and adds improvements and capabilities, making T-SQL an efficient, robust, and secure language for data access and manipulation.

Although many tools are available for designing your queries visually, such as the Visual Database Tools that are available with Microsoft Visual Studio, it is still worthwhile and important to understand the SQL language. There is a real benefit to understanding what the visual tools are doing and why. There are also times when manually writing the necessary SQL statement is the only, or simply the fastest, way to achieve what you want. It is also an ideal way to learn how to use the full power of a relational database such as SQL Express.

Relational Databases: A 30 Second Review

Although there exist many different types of database, we will focus on the most common type—the relational database. A relational database consists of one or more tables, where each table consists of 0 or more records, or rows, of data. The data for each row is organized into discrete units of information, known as fields or columns. When we want to show the fields of a table, let's say the Customers table, we will often show it like this:

Bb264565.sse_qbasics_1(en-US,SQL.90).gif

Many of the tables in a database will have relationships, or links, between them, either in a one-to-one or a one-to-many relationship. The connection between the tables is made by a Primary KeyForeign Key pair, where a Foreign Key field(s) in a given table is the Primary Key of another table. As a typical example, there is a one-to-many relationship between Customers and Orders. Both tables have a CustID field, which is the Primary Key of the Customers table and is a Foreign Key of the Orders Table. The related fields do not need to have the identical name, but it is a good practice to keep them the same.

Fetching Data: SQL SELECT Queries

It is a rare database application that doesn't spend much of its time fetching and displaying data. Once we have data in the database, we want to "slice and dice" it every which way. That is, we want to look at the data and analyze it in an endless number of different ways, constantly varying the filtering, sorting, and calculations that we apply to the raw data. The SQL SELECT statement is what we use to choose, or select, the data that we want returned from the database to our application. It is the language we use to formulate our question, or query, that we want answered by the database. We can start out with very simple queries, but the SELECT statement has many different options and extensions, which provide the great flexibility that we may ultimately need. Our goal is to help you understand the structure and most common elements of a SELECT statement, so that later you will be able to understand the many options and nuances and apply them to your specific needs. We'll start with the bare minimum and slowly add options for greater functionality.

Note: For our illustrations, we will use the Employees table from the Northwind sample database that has come with MS Access, MS SQL Server and is available for download at the Microsoft Download Center.

A SQL SELECT statement can be broken down into numerous elements, each beginning with a keyword. Although it is not necessary, common convention is to write these keywords in all capital letters. In this article, we will focus on the most fundamental and common elements of a SELECT statement, namely

  • SELECT
  • FROM
  • WHERE
  • ORDER BY

The SELECT ... FROM Clause

The most basic SELECT statement has only 2 parts: (1) what columns you want to return and (2) what table(s) those columns come from.

If we want to retrieve all of the information about all of the customers in the Employees table, we could use the asterisk (*) as a shortcut for all of the columns, and our query looks like

SELECT * FROM Employees

If we want only specific columns (as is usually the case), we can/should explicitly specify them in a comma-separated list, as in

SELECT EmployeeID, FirstName, LastName, HireDate, City FROM Employees

which results in the specified fields of data for all of the rows in the table:

Bb264565.sse_qbasics_2(en-US,SQL.90).gif

Explicitly specifying the desired fields also allows us to control the order in which the fields are returned, so that if we wanted the last name to appear before the first name, we could write

SELECT EmployeeID, LastName, FirstName, HireDate, City FROM Employees

The WHERE Clause

The next thing we want to do is to start limiting, or filtering, the data we fetch from the database. By adding a WHERE clause to the SELECT statement, we add one (or more) conditions that must be met by the selected data. This will limit the number of rows that answer the query and are fetched. In many cases, this is where most of the "action" of a query takes place.

We can continue with our previous query, and limit it to only those employees living in London:

SELECT EmployeeID, FirstName, LastName, HireDate, City FROM Employees
WHERE City = 'London'

resulting in

Bb264565.sse_qbasics_3(en-US,SQL.90).gif

If you wanted to get the opposite, the employees who do not live in London, you would write

SELECT EmployeeID, FirstName, LastName, HireDate, City FROM Employees
WHERE City <> 'London'

It is not necessary to test for equality; you can also use the standard equality/inequality operators that you would expect. For example, to get a list of employees who where hired on or after a given date, you would write

SELECT EmployeeID, FirstName, LastName, HireDate, City FROM Employees
WHERE HireDate >= '1-july-1993'

and get the resulting rows

Bb264565.sse_qbasics_4(en-US,SQL.90).gif

Of course, we can write more complex conditions. The obvious way to do this is by having multiple conditions in the WHERE clause. If we want to know which employees were hired between two given dates, we could write

SELECT     EmployeeID, FirstName, LastName, HireDate, City
FROM       Employees
WHERE      (HireDate >= '1-june-1992') AND (HireDate <= '15-december-1993')

resulting in

Bb264565.sse_qbasics_5(en-US,SQL.90).gif

Note that SQL also has a special BETWEEN operator that checks to see if a value is between two values (including equality on both ends). This allows us to rewrite the previous query as

SELECT    EmployeeID, FirstName, LastName, HireDate, City
FROM      Employees
WHERE     HireDate BETWEEN '1-june-1992' AND '15-december-1993'

We could also use the NOT operator, to fetch those rows that are not between the specified dates:

SELECT    EmployeeID, FirstName, LastName, HireDate, City
FROM      Employees
WHERE     HireDate NOT BETWEEN '1-june-1992' AND '15-december-1993'

Let us finish this section on the WHERE clause by looking at two additional, slightly more sophisticated, comparison operators.

What if we want to check if a column value is equal to more than one value? If it is only 2 values, then it is easy enough to test for each of those values, combining them with the OR operator and writing something like

SELECT EmployeeID, FirstName, LastName, HireDate, City FROM Employees
WHERE City = 'London' OR City = 'Seattle'

However, if there are three, four, or more values that we want to compare against, the above approach quickly becomes messy. In such cases, we can use the IN operator to test against a set of values. If we wanted to see if the City was either Seattle, Tacoma, or Redmond, we would write

SELECT EmployeeID, FirstName, LastName, HireDate, City FROM Employees
WHERE City IN ('Seattle', 'Tacoma', 'Redmond')

producing the results shown below.

Bb264565.sse_qbasics_6(en-US,SQL.90).gif

As with the BETWEEN operator, here too we can reverse the results obtained and query for those rows where City is not in the specified list:

SELECT EmployeeID, FirstName, LastName, HireDate, City FROM Employees

WHERE City NOT IN ('Seattle', 'Tacoma', 'Redmond')

Finally, the LIKE operator allows us to perform basic pattern-matching using wildcard characters. For Microsoft SQL Server, the wildcard characters are defined as follows:

Wildcard Description
_ (underscore) matches any single character
% matches a string of one or more characters
[ ] matches any single character within the specified range (e.g. [a-f]) or set (e.g. [abcdef]).
[^] matches any single character not within the specified range (e.g. [^a-f]) or set (e.g. [^abcdef]).

A few examples should help clarify these rules.

  • WHERE FirstName LIKE '_im' finds all three-letter first names that end with 'im' (e.g. Jim, Tim).
  • WHERE LastName LIKE '%stein' finds all employees whose last name ends with 'stein'
  • WHERE LastName LIKE '%stein%' finds all employees whose last name includes 'stein' anywhere in the name.
  • WHERE FirstName LIKE '[JT]im' finds three-letter first names that end with 'im' and begin with either 'J' or 'T' (that is, only Jim and Tim)
  • WHERE LastName LIKE 'm[^c]%' finds all last names beginning with 'm' where the following (second) letter is not 'c'.

Here too, we can opt to use the NOT operator: to find all of the employees whose first name does not start with 'M' or 'A', we would write

SELECT EmployeeID, FirstName, LastName, HireDate, City FROM Employees
WHERE (FirstName NOT LIKE 'M%') AND (FirstName NOT LIKE 'A%')

resulting in

Bb264565.sse_qbasics_7(en-US,SQL.90).gif

The ORDER BY Clause

Until now, we have been discussing filtering the data: that is, defining the conditions that determine which rows will be included in the final set of rows to be fetched and returned from the database. Once we have determined which columns and rows will be included in the results of our SELECT query, we may want to control the order in which the rows appear—sorting the data.

To sort the data rows, we include the ORDER BY clause. The ORDER BY clause includes one or more column names that specify the sort order. If we return to one of our first SELECT statements, we can sort its results by City with the following statement:

SELECT EmployeeID, FirstName, LastName, HireDate, City FROM Employees
ORDER BY City

By default, the sort order for a column is ascending (from lowest value to highest value), as shown below for the previous query:

Bb264565.sse_qbasics_8(en-US,SQL.90).gif

If we want the sort order for a column to be descending, we can include the DESC keyword after the column name.

The ORDER BY clause is not limited to a single column. You can include a comma-delimited list of columns to sort by—the rows will all be sorted by the first column specified and then by the next column specified. If we add the Country field to the SELECT clause and want to sort by Country and City, we would write:

SELECT EmployeeID, FirstName, LastName, HireDate, Country, City FROM Employees
ORDER BY Country, City DESC

Note that to make it interesting, we have specified the sort order for the City column to be descending (from highest to lowest value). The sort order for the Country column is still ascending. We could be more explicit about this by writing

SELECT EmployeeID, FirstName, LastName, HireDate, Country, City FROM Employees
ORDER BY Country ASC, City DESC

but this is not necessary and is rarely done. The results returned by this query are

Bb264565.sse_qbasics_9(en-US,SQL.90).gif

It is important to note that a column does not need to be included in the list of selected (returned) columns in order to be used in the ORDER BY clause. If we don't need to see/use the Country values, but are only interested in them as the primary sorting field we could write the query as

SELECT EmployeeID, FirstName, LastName, HireDate, City FROM Employees
ORDER BY Country ASC, City DESC

with the results being sorted in the same order as before:

Bb264565.sse_qbasics_10(en-US,SQL.90).gif

Conclusion

In this article we have taken a look at the most basic elements of a SQL SELECT statement used for common database querying tasks. This includes how to specify and filter both the columns and the rows to be returned by the query. We also looked at how to control the order of rows that are returned.

Although the elements discussed here allow you to accomplish many data access / querying tasks, the SQL SELECT statement has many more options and additional functionality. This additional functionality includes grouping and aggregating data (summarizing, counting, and analyzing data, e.g. minimum, maximum, average values). This article has also not addressed another fundamental aspect of fetching data from a relational database—selecting data from multiple tables.

References

Additional and more detailed information on writing SQL queries and statements can be found in these two books:

McManus, Jeffrey P. and Goldstein, Jackie, Database Access with Visual Basic.NET (Third Edition), Addison-Wesley, 2003

Hernandez Michael J. and Viescas, John L., SQL Queries for Mere Mortals, Addison-Wesley, 2000.

Jackie Goldstein is the principal of Renaissance Computer Systems, specializing in consulting, training, and development with Microsoft tools and technologies. Jackie is a Microsoft Regional Director and MVP, founder of the Israel VB User Group, and a featured speaker at international developer events including TechEd, VSLive!, Developer Days, and Microsoft PDC. He is also the author of Database Access with Visual Basic.NET (Addison-Wesley, ISBN 0-67232-3435) and a member of the INETA Speakers Bureau. In December 2003, Microsoft designated Jackie as a .NET Software Legend.

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