Let's consider an example: a table with invoice records, and a related table with invoice line item records. Consider the client pseudo code:
for each (invoice in invoices)
let invoiceLines = FindLinesFor(invoice)
...
If you have 100,000 invoices with 10 lines each, this code will look up 10 invoice lines from a table of 1 million, and it will do that 100,000 times. As the table size increases, the number of select operations increases, and the cost of each select operation increases.
Becase computers are fast, you may not notice a performance difference between the two approaches if you have several thousand records or fewer. Because the cost increase is more than linear, as the number of records increases (into the millions, say), you'll begin to notice a difference, and the difference will become less tolerable as the size of the data set grows.
The join, however. will use the table's indexes and merge the two data sets. This means that you're effectively scanning the second table once rather than randomly accessing it N times. If there's a foreign key defined, the database already has the links between the related records stored internally.
Imagine doing this yourself. You have an alphabetical list of students and a notebook with all the students' grade reports (one page per class). The notebook is sorted in order by the students' names, in the same order as the list. How would you prefer to proceed?
- Read a name from the list.
- Open the notebook.
- Find the student's name.
- Read the student's grades, turning pages until you reach the next student or the last page.
- Close the notebook.
- Repeat.
Or:
- Open the notebook to the first page.
- Read a name from the list.
- Read any grades for that name from the notebook.
- Repeat steps 2-3 until you get to the end
- Close the notebook.