Thus far, our queries have only accessed one table at a time.
Queries can access multiple tables at once, or access the same
table in such a way that multiple rows of the table are being
processed at the same time. A query that accesses multiple rows
of the same or different tables at one time is called a
join query. As an example, say you wish to
list all the weather records together with the location of the
associated city. To do that, we need to compare the city
column of each row of the weather
table with the
name
column of all rows in the cities
table, and select the pairs of rows where these values match.
This is only a conceptual model. The join is usually performed in a more efficient manner than actually comparing each possible pair of rows, but this is invisible to the user.
This would be accomplished by the following query:
SELECT * FROM weather, cities WHERE city = name;
city | temp_lo | temp_hi | prcp | date | name | location ---------------+---------+---------+------+------------+---------------+----------- San Francisco | 46 | 50 | 0.25 | 1994-11-27 | San Francisco | (-194,53) San Francisco | 43 | 57 | 0 | 1994-11-29 | San Francisco | (-194,53) (2 rows)
Observe two things about the result set:
There is no result row for the city of Hayward. This is
because there is no matching entry in the
cities
table for Hayward, so the join
ignores the unmatched rows in the weather
table. We will see
shortly how this can be fixed.
There are two columns containing the city name. This is
correct because the lists of columns from the
weather
and
cities
tables are concatenated. In
practice this is undesirable, though, so you will probably want
to list the output columns explicitly rather than using
*
:
SELECT city, temp_lo, temp_hi, prcp, date, location FROM weather, cities WHERE city = name;
Exercise: Attempt to determine the semantics of this query when the
WHERE
clause is omitted.
Since the columns all had different names, the parser automatically found which table they belong to. If there were duplicate column names in the two tables you'd need to qualify the column names to show which one you meant, as in:
SELECT weather.city, weather.temp_lo, weather.temp_hi, weather.prcp, weather.date, cities.location FROM weather, cities WHERE cities.name = weather.city;
It is widely considered good style to qualify all column names in a join query, so that the query won't fail if a duplicate column name is later added to one of the tables.
Join queries of the kind seen thus far can also be written in this alternative form:
SELECT * FROM weather INNER JOIN cities ON (weather.city = cities.name);
This syntax is not as commonly used as the one above, but we show it here to help you understand the following topics.
Now we will figure out how we can get the Hayward records back in.
What we want the query to do is to scan the
weather
table and for each row to find the
matching cities
row(s). If no matching row is
found we want some “empty values” to be substituted
for the cities
table's columns. This kind
of query is called an outer join. (The
joins we have seen so far are inner joins.) The command looks
like this:
SELECT * FROM weather LEFT OUTER JOIN cities ON (weather.city = cities.name); city | temp_lo | temp_hi | prcp | date | name | location ---------------+---------+---------+------+------------+---------------+----------- Hayward | 37 | 54 | | 1994-11-29 | | San Francisco | 46 | 50 | 0.25 | 1994-11-27 | San Francisco | (-194,53) San Francisco | 43 | 57 | 0 | 1994-11-29 | San Francisco | (-194,53) (3 rows)
This query is called a left outer join because the table mentioned on the left of the join operator will have each of its rows in the output at least once, whereas the table on the right will only have those rows output that match some row of the left table. When outputting a left-table row for which there is no right-table match, empty (null) values are substituted for the right-table columns.
Exercise: There are also right outer joins and full outer joins. Try to find out what those do.
We can also join a table against itself. This is called a
self join. As an example, suppose we wish
to find all the weather records that are in the temperature range
of other weather records. So we need to compare the
temp_lo
and temp_hi
columns of
each weather
row to the
temp_lo
and
temp_hi
columns of all other
weather
rows. We can do this with the
following query:
SELECT W1.city, W1.temp_lo AS low, W1.temp_hi AS high, W2.city, W2.temp_lo AS low, W2.temp_hi AS high FROM weather W1, weather W2 WHERE W1.temp_lo < W2.temp_lo AND W1.temp_hi > W2.temp_hi; city | low | high | city | low | high ---------------+-----+------+---------------+-----+------ San Francisco | 43 | 57 | San Francisco | 46 | 50 Hayward | 37 | 54 | San Francisco | 46 | 50 (2 rows)
Here we have relabeled the weather table as W1
and
W2
to be able to distinguish the left and right side
of the join. You can also use these kinds of aliases in other
queries to save some typing, e.g.:
SELECT * FROM weather w, cities c WHERE w.city = c.name;
You will encounter this style of abbreviating quite frequently.