I need to calculate median value of a numeric sequence in Google BigQuery efficiently. Is the same possible?

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see also stackoverflow.com/questions/51981353/…– Felipe HoffaNov 13, 2018 at 1:26
3 Answers
Yeah it's possible with PERCENTILE_CONT window function.
Returns values that are based upon linear interpolation between the values of the group, after ordering them per the ORDER BY clause.
must be between 0 and 1.
This window function requires ORDER BY in the OVER clause.
So an example query would be like (the max() is there just to work across the group by but it's not being used as a math logic, should not confuse you)
SELECT room,
max(median) FROM (SELECT room,
percentile_cont(0.5) OVER (PARTITION BY room
ORDER BY temperature) AS median FROM
(SELECT 1 AS room,
11 AS temperature),
(SELECT 1 AS room,
12 AS temperature),
(SELECT 1 AS room,
14 AS temperature),
(SELECT 1 AS room,
19 AS temperature),
(SELECT 1 AS room,
13 AS temperature),
(SELECT 2 AS room,
20 AS temperature),
(SELECT 2 AS room,
21 AS temperature),
(SELECT 2 AS room,
29 AS temperature),
(SELECT 3 AS room,
30 AS temperature)) GROUP BY room
This returns:
+++
 room  temperature 
+++
 1  13 
 2  21 
 3  30 
+++

2Can we have a little clearer and concise query please? I could not understand the above. Mar 17, 2015 at 11:32

@ManishAgrawal Try running in pieces and you will eventually understand, this query is simple. Probably what's new for you is the OVER() thing, which you need to read further, it's the base for Window Functions. In case the from clause confuses you, I tried to replicate a table results so that you can copy paste and run this query as is. Mar 17, 2015 at 12:21

1the room 1 has the values 11,12,14,19,13 should not be the median 14? Dec 21, 2018 at 20:35

@AndresUrregoAngel the median value is derived from an ordered range of values. Sure, in the order you describe, above, the value '14' is in the middle. However, this is not an ordered list. The ordered list would be
11, 12, 13, 14, 19
. Therefore, '13' is the correct median value– Fab DotFeb 25, 2020 at 14:56
Alternative solution, when you don't need absolutely exact results and approximation is fine  you can use combination of NTH and QUANTILES aggregation functions. The advantage of this method is that it is much more scalable than analytic window functions, but the disadvantage is that it gives approximate results.
SELECT room,
NTH(50, QUANTILES(temperature, 101)) FROM
(SELECT 1 AS room,
11 AS temperature),
(SELECT 1 AS room,
12 AS temperature),
(SELECT 1 AS room,
14 AS temperature),
(SELECT 1 AS room,
19 AS temperature),
(SELECT 1 AS room,
13 AS temperature),
(SELECT 2 AS room,
20 AS temperature),
(SELECT 2 AS room,
21 AS temperature),
(SELECT 2 AS room,
29 AS temperature),
(SELECT 3 AS room,
30 AS temperature) GROUP BY room
This returns
room temperature
1 13
2 21
3 30

I think you need
NTH(51, QUANTILES(temperature, 101))
for the median, sinceNTH
is 1based. See cloud.google.com/bigquery/queryreference#quantiles Aug 4, 2016 at 20:53
2018 update with more metrics:
BigQuery SQL: Average, geometric mean, remove outliers, median
For my own memory purposes, working queries with taxi data:
Approximate quantiles:
SELECT MONTH(pickup_datetime) month, NTH(51, QUANTILES(tip_amount,101)) median
FROM [nyctlc:green.trips_2015]
WHERE tip_amount > 0
GROUP BY 1
ORDER BY 1
Gives the same results as PERCENTILE_DISC:
SELECT month, FIRST(median) median
FROM (
SELECT MONTH(pickup_datetime) month, tip_amount, PERCENTILE_DISC(0.5) OVER(PARTITION BY month ORDER BY tip_amount) median
FROM [nyctlc:green.trips_2015]
WHERE tip_amount > 0
)
GROUP BY 1
ORDER BY 1
StandardSQL:
#StandardSQL
SELECT DATE_TRUNC(DATE(pickup_datetime), MONTH) month, APPROX_QUANTILES(tip_amount,1000)[OFFSET(500)] median
FROM `nyctlc.green.trips_2015`
WHERE tip_amount > 0
GROUP BY 1
ORDER BY 1