I am running Postgres 9.2 and I have a large table something like

CREATE TABLE sensor_values
  ts timestamp with time zone NOT NULL,
  value double precision NOT NULL DEFAULT 'NaN'::real,
  sensor_id integer NOT NULL

I have values coming into the system constantly ie many per minute. I want to maintain a rolling standard deviation / average for the last 200 values so I can determine if new values entering the system are within say 3 standard deviations of the mean. To do so I would need the current standard deviation and mean to be constantly updated for the last 200 values. As the table can be hundreds of millions of rows I do not want to get the last say 200 rows for a sensor ordered by time and then do vg(value), var_samp(value) for every new value coming in. I and assuming it will be faster to updated the standard deviation and mean.

I have started writing a PL/pgSQL function to update a rolling variance and mean on each new value entering the system for a particular sensor.

I can do this using code pseudo like

newavg = oldavg + (new_value - old_value)/window_size
new_variance += (new_value-old_value)*(new_value-newavg+old_value-oldavg)/(window_size-1)

This is based on http://jonisalonen.com/2014/efficient-and-accurate-rolling-standard-deviation/

Basically the window is of size 200 values. The old_value is the first value of the window. When a new value comes in we shift the window forward one. After I get the result I store the following values for the sensor

The first value of the window.
The mean average of the window values.
The variance of the window values.

This way I don't have to constantly get there last 200 value and do a sum etc.I can reuse this values when a new sensor value come in.

My problem is when first running I have no previous window data for a sensor ie the three values above so I have to do it the slow way.

something like

        (SELECT value FROM sensor_values WHERE sensor_values.sensor_id = $1  AND ts >= (NOW() - INTERVAL '2 day')::timestamptz ORDER BY ts DESC LIMIT 200)
    SELECT avg(value), var_samp(value)  INTO last_window_average, last_window_variance FROM s;

But how could I get the last value (ealiest) to save from that select statement ? Can I access the first row from s in PL/pgSQL.

I thought PL/pgSQL would be faster / cleaner approach but maybe its better to do this is client code ? Are there better ways to perform this type on rolling statistic update ?

  • 1
    What about avg(value) over (partition by sensor_id order by ts rows between 200 preceding and current row) as avg Apr 23, 2015 at 9:29

1 Answer 1


I assume, that it will not be drastically slow to re-calculated latest 200 entries each time with proper indexing. If you'll do an index, like:

CREATE INDEX i_sensor_values ON sensor_values(sensor_id, ts DESC);

you'll be able to get results fairly quickly doing:

SELECT sum("value") -- add more expressions as required
  FROM sensor_values
 WHERE sensor_id=$1
 LIMIT 200;

You can execute this query in a loop from PL/pgSQL function. If you'll migrate to 9.3 (or higher) any time soon, you'll be able to also use LATERAL joins for this purpose.

I do not think a covering index will do a good thing here, as table is constantly changing and IndexOnlyScan will not kick in.

It is good to check Loose Index scans also.

P.S. Column name value should be double quoted, as this is an SQL reserved word.

  • Hmm doing SELECT sensor_id, value FROM sensor_values WHERE sensor_id=555 ORDER BY ts DESC LIMIT 200; Took over two minutes as it has to order all the data. 1 second cached. explain.depesz.com/s/DbN Doing SELECT ts, value FROM sensor_values WHERE sensor_values.sensor_id = 540 AND ts >= (NOW() - INTERVAL '2 day')::timestamptz ORDER BY ts DESC LIMIT 200 takes 100 ms . When I could get a thousand new entries a minute I think this is too much overhead. I think the indexes are working ok. Maybe I can make it non realtime every 1000 or so entries. Apr 23, 2015 at 14:21
  • @GlennPierce, You haven't mentioned partitioning. Of course, to get a proper partition pruning you need to add an appropriate predicate. Can you show plan for the second query, please?
    – vyegorov
    Apr 23, 2015 at 14:53
  • Plan for second query explain.depesz.com/s/tXrD Not sure why it has to check partition tables for earlier years Apr 24, 2015 at 10:21
  • @GlennPierce, this is because planner is not good with expressions on partitioning keys. Try to pre-calculate the value (in the client code or in the PL/pgSQL function) and use it as a constant, like ts >= '2015-04-22'::timestamptz.
    – vyegorov
    Apr 24, 2015 at 10:34

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