The SQL JOIN clause is used whenever we have to select data from 2 or more tables.
To be able to use SQL JOIN clause to extract data from 2 (or more) tables, we need a relationship between certain columns in these tables.
We are going to illustrate our SQL JOIN example with the following 2 tables:
Customers:
CustomerID | FirstName | LastName | Email | DOB | Phone |
1 | John | Smith | John.Smith@yahoo.com | 2/4/1968 | 626 222-2222 |
2 | Steven | Goldfish | goldfish@fishhere.net | 4/4/1974 | 323 455-4545 |
3 | Paula | Brown | pb@herowndomain.org | 5/24/1978 | 416 323-3232 |
4 | James | Smith | jim@supergig.co.uk | 20/10/1980 | 416 323-8888 |
Sales:
CustomerID | Date | SaleAmount |
2 | 5/6/2004 | $100.22 |
1 | 5/7/2004 | $99.95 |
3 | 5/7/2004 | $122.95 |
3 | 5/13/2004 | $100.00 |
4 | 5/22/2004 | $555.55 |
As you can see those 2 tables have common field called CustomerID and thanks to that we can extract information from both tables by matching their CustomerID columns.
Consider the following SQL statement:
SELECT Customers.FirstName, Customers.LastName, SUM(Sales.SaleAmount) AS SalesPerCustomer |
The SQL expression above will select all distinct customers (their first and last names) and the total respective amount of dollars they have spent.
The SQL JOIN condition has been specified after the SQL WHERE clause and says that the 2 tables have to be matched by their respective CustomerID columns.
Here is the result of this SQL statement:
FirstName | LastName | SalesPerCustomers |
John | Smith | $99.95 |
Steven | Goldfish | $100.22 |
Paula | Brown | $222.95 |
James | Smith | $555.55 |
The SQL statement above can be re-written using the SQL JOIN clause like this:
SELECT Customers.FirstName, Customers.LastName, SUM(Sales.SaleAmount) AS SalesPerCustomer |
There are 2 types of SQL JOINS – INNER JOINS and OUTER JOINS. If you don’t put INNER or OUTER keywords in front of the SQL JOIN keyword, then INNER JOIN is used. In short “INNER JOIN” = “JOIN” (note that different databases have different syntax for their JOIN clauses).
The INNER JOIN will select all rows from both tables as long as there is a match between the columns we are matching on. In case we have a customer in the Customers table, which still hasn’t made any orders (there are no entries for this customer in the Sales table), this customer will not be listed in the result of our SQL query above.
If the Sales table has the following rows:
CustomerID | Date | SaleAmount |
2 | 5/6/2004 | $100.22 |
1 | 5/6/2004 | $99.95 |
And we use the same SQL JOIN statement from above:
SELECT Customers.FirstName, Customers.LastName, SUM(Sales.SaleAmount) AS SalesPerCustomer |
We’ll get the following result:
FirstName | LastName | SalesPerCustomers |
John | Smith | $99.95 |
Steven | Goldfish | $100.22 |
Even though Paula and James are listed as customers in the Customers table they won’t be displayed because they haven’t purchased anything yet.
But what if you want to display all the customers and their sales, no matter if they have ordered something or not? We’ll do that with the help of SQL OUTER JOIN clause.
The second type of SQL JOIN is called SQL OUTER JOIN and it has 2 sub-types called LEFT OUTER JOIN and RIGHT OUTER JOIN.
The LEFT OUTER JOIN or simply LEFT JOIN (you can omit the OUTER keyword in most databases), selects all the rows from the first table listed after the FROM clause, no matter if they have matches in the second table.
If we slightly modify our last SQL statement to:
SELECT Customers.FirstName, Customers.LastName, SUM(Sales.SaleAmount) AS SalesPerCustomer |
and the Sales table still has the following rows:
CustomerID | Date | SaleAmount |
2 | 5/6/2004 | $100.22 |
1 | 5/6/2004 | $99.95 |
The result will be the following:
FirstName | LastName | SalesPerCustomers |
John | Smith | $99.95 |
Steven | Goldfish | $100.22 |
Paula | Brown | NULL |
James | Smith | NULL |
As you can see we have selected everything from the Customers (first table). For all rows from Customers, which don’t have a match in the Sales (second table), the SalesPerCustomer column has amount NULL (NULL means a column contains nothing).
The RIGHT OUTER JOIN or just RIGHT JOIN behaves exactly as SQL LEFT JOIN, except that it returns all rows from the second table (the right table in our SQL JOIN statement).
interesting?..http://www.devshed.com/c/a/MySQL/Understanding-SQL-Joins/
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