Whenever you feel that itch…
Can’t I calculate this with SQL?
The answer is: Yes you can! And you should! Let’s see how…
Calculating time differences between rows
Let’s consider the following database containing timestamps (e.g. in a log database). We’re using PostgreSQL syntax for this:
CREATE TABLE timestamps (
ts timestamp
);
INSERT INTO timestamps VALUES
('2015-05-01 12:15:23.0'),
('2015-05-01 12:15:24.0'),
('2015-05-01 12:15:27.0'),
('2015-05-01 12:15:31.0'),
('2015-05-01 12:15:40.0'),
('2015-05-01 12:15:55.0'),
('2015-05-01 12:16:01.0'),
('2015-05-01 12:16:03.0'),
('2015-05-01 12:16:04.0'),
('2015-05-01 12:16:04.0');
Obviously, you’ll be adding constraints and indexes, etc. Now, let’s assume that each individual timestamp represents an event in your system, and you’d like to keep track of how long ago the previous event has happened. I.e. you’d like the following result:
ts delta
-------------------------------
2015-05-01 12:15:23
2015-05-01 12:15:24 00:00:01
2015-05-01 12:15:27 00:00:03
2015-05-01 12:15:31 00:00:04
2015-05-01 12:15:40 00:00:09
2015-05-01 12:15:55 00:00:15
2015-05-01 12:16:01 00:00:06
2015-05-01 12:16:03 00:00:02
2015-05-01 12:16:04 00:00:01
2015-05-01 12:16:04 00:00:00
In other words
- ts1 (12:15:23) + delta (00:00:01) = ts2 (12:15:24)
- ts2 (12:15:24) + delta (00:00:03) = ts3 (12:15:27)
- …
This can be achieved very easily with the
LAG() window function:
SELECT
ts,
ts - lag(ts, 1) OVER (ORDER BY ts) delta
FROM timestamps
ORDER BY ts;
The above reads simply:
Give me the difference between the ts value of the current row and the ts value of the row that “lags” behind this row by one, with rows ordered by ts.
Easy, right? With
LAG() you can actually access any row from another row within a “sliding window” by simply specifying the lag index.
We’ve already described this
wonderful window function in a previous blog post.
Bonus: A running total interval
In addition to the difference between this timestamp and the previous one, we might be interested in the total difference between this timestamp and the first timestamp. This may sound like a running total (
see our previous article about running totals using SQL), but it can be calculated much more easily using
FIRST_VALUE() – a “cousin” of
LAG()
SELECT
ts,
ts - lag(ts, 1) OVER w delta,
ts - first_value(ts) OVER w total
FROM timestamps
WINDOW w AS (ORDER BY ts)
ORDER BY ts;
… the above query then yields
ts delta total
---------------------------------------
2015-05-01 12:15:23 00:00:00
2015-05-01 12:15:24 00:00:01 00:00:01
2015-05-01 12:15:27 00:00:03 00:00:04
2015-05-01 12:15:31 00:00:04 00:00:08
2015-05-01 12:15:40 00:00:09 00:00:17
2015-05-01 12:15:55 00:00:15 00:00:32
2015-05-01 12:16:01 00:00:06 00:00:38
2015-05-01 12:16:03 00:00:02 00:00:40
2015-05-01 12:16:04 00:00:01 00:00:41
2015-05-01 12:16:04 00:00:00 00:00:41
Extra bonus: The total since a “reset” event
We can take this as far as we want. Let’s assume that we want to reset the total from time to time:
CREATE TABLE timestamps (
ts timestamp,
event varchar(50)
);
INSERT INTO timestamps VALUES
('2015-05-01 12:15:23.0', null),
('2015-05-01 12:15:24.0', null),
('2015-05-01 12:15:27.0', 'reset'),
('2015-05-01 12:15:31.0', null),
('2015-05-01 12:15:40.0', null),
('2015-05-01 12:15:55.0', 'reset'),
('2015-05-01 12:16:01.0', null),
('2015-05-01 12:16:03.0', null),
('2015-05-01 12:16:04.0', null),
('2015-05-01 12:16:04.0', null);
We can now run the following query:
SELECT
ts,
ts - lag(ts, 1)
OVER (ORDER BY ts) delta,
ts - first_value(ts)
OVER (PARTITION BY c ORDER BY ts) total
FROM (
SELECT
COUNT(*) FILTER (WHERE EVENT = 'reset')
OVER (ORDER BY ts) c,
ts
FROM timestamps
) timestamps
ORDER BY ts;
… to produce
ts delta total
---------------------------------------
2015-05-01 12:15:23 00:00:00
2015-05-01 12:15:24 00:00:01 00:00:01
2015-05-01 12:15:27 00:00:03 00:00:00 <-- reset
2015-05-01 12:15:31 00:00:04 00:00:04
2015-05-01 12:15:40 00:00:09 00:00:13
2015-05-01 12:15:55 00:00:15 00:00:00 <-- reset
2015-05-01 12:16:01 00:00:06 00:00:06
2015-05-01 12:16:03 00:00:02 00:00:08
2015-05-01 12:16:04 00:00:01 00:00:09
2015-05-01 12:16:04 00:00:00 00:00:09
The beautiful part is in the derived table
SELECT
COUNT(*) FILTER (WHERE EVENT = 'reset')
OVER (ORDER BY ts) c,
ts
FROM timestamps
This derived table just adds the “partition” to each set of timestamps given the most recent “reset” event. The result of the above subquery is:
c ts
----------------------
0 2015-05-01 12:15:23
0 2015-05-01 12:15:24
1 2015-05-01 12:15:27 <-- reset
1 2015-05-01 12:15:31
1 2015-05-01 12:15:40
2 2015-05-01 12:15:55 <-- reset
2 2015-05-01 12:16:01
2 2015-05-01 12:16:03
2 2015-05-01 12:16:04
2 2015-05-01 12:16:04
As you can see, the
COUNT(*) window function counts all the previous “reset” events, ordered by timestamp. This information can then be used as the
PARTITION for the
FIRST_VALUE() window function in order to find the first timestamp in each partition, i.e. at the time of the most recent “reset” event:
ts - first_value(ts)
OVER (PARTITION BY c ORDER BY ts) total
Conclusion
It’s almost a running gag on this blog to say that…
There was SQL before window functions and SQL after window functions
Window functions are extremely powerful and they’re a part of the SQL standard, supported in most commercial databases, in PostgreSQL, in Firebird 3.0, and in CUBRID. If you aren’t using them already, start using them today!
If you’ve liked this article, find out more about window functions in any of the following articles: