Need to rough up some bulk test data in a hurry? A carefully thought-out Cross Join could be the answer.
Take any SQL query that joins two or more tables, delete the joining clause, and what do you get? In SQL terms you get a Cross Join, in relational database theory you get a Cartesian Product. Whatever you call it, you usually end up with far more rows than you wanted, and most of them make no sense. Although Cross Join queries are not normally much use, with a bit of thought we can use them to quickly create large amounts of useful test data.
A simple example
Take the following query:
select * from ( select "Fred" as fName union select "Wilma" union select "Barney" union select "Betty" ) as flintstones_1 CROSS JOIN ( select "Flintstone" as lName union select "Rubble" ) as flintstones_2
This will produce 8 rows--the result of multiplying the four rows in the first derived table (flintstones_1) against the two rows in the second derived table (flintstones_2):
fName lName ------ ---------- Betty Rubble Betty Flintstone Barney Rubble Barney Flintstone Wilma Rubble Wilma Flintstone Fred Rubble Fred Flintstone (8 row(s) affected)
Needless to say, not all the above are real Flintstones, but that is not the point. The point is that we have a cheap and cheerful way of generating multiple unique names. For a small extra investment we can generate eighteen, not eight, unique names:
select * from ( select "Fred" as fName union select "Wilma" union select "Barney" union select "Betty" union select "Al" union select "Peggy"
) as characters_1 CROSS JOIN (
select "Flintstone" as lName union select "Rubble" union select "Bundy" ) as characters_2
As many tables as you need can be Cross Joined to generate exponentially-large amounts of test data. This simple query generates 27 mostly-fake politicians with middle names:
select * from ( select "Harry" as fName union select "Winston" union select "Vladimir" ) as polit1 CROSS JOIN ( select "S " as mName union select "Spencer" union select "Ilich" ) as polit2 CROSS JOIN ( select "Trueman" as lName union select "Churchill" union select "Lenin" ) as polit3
A more practical example
In the following query I have raided a few more US Sitcoms to make a simple query that will generate no less than 150 unique authors in the PUBS database. Note that I have serialised the two parts of the data that will make up the author ID (and the phone number) to keep them unique, but I have chosen -55- to be the center portion of all my generated IDs (010-55-0010 for example) There were none in the initial authors table that matched this pattern so this gives me an at-a-glance way of identifying my auto-generated authors.
insert authors select au_id1 + '-' + au_id2 as au_ud, fName, lName, au_id1 + ' 5' + au_id2 as phone, 'Test address for ' + fName + ' ' + lName, 'London', 'UK', '12345', 1 from ( select '009' as au_id1, 'Fred' as fName union select '010', 'Wilma' union select '012', 'Barney' union select '013', 'Betty' union select '014', 'Al' union select '015', 'Peggy' union select '016', 'Frasier' union select '017', 'Niles' union select '018', 'Homer' union select '019', 'Marge' union select '020', 'Hawkeye' union select '021', 'Trapper' union select '024', 'Sam' union select '025', 'Diane' union select '026', 'Rebecca' ) as test_authors_part_1 CROSS JOIN ( select '55-0010' as au_id2, 'Flintstone' as lName union select '55-0021', 'Rubble' union select '55-0022', 'Bundy' union select '55-0023', 'Crane' union select '55-0024', 'Simpson' union select '55-0025', 'Pierce' union select '55-0026', 'John' union select '55-0028', 'Malone' union select '55-0029', 'Chambers' union select '55-0030', 'Howe' ) as test_authors_part_2
The principle will work for any test data provided you construct your query carefully--you can generate multiple orders for multiple books across multiple stores for multiple dates. The data will exhibit a regular pattern, rather than real-world randomness, but in most cases that will not be a problem.