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In Google BigQuery I have a table like this:

startTime:STRING, visitorId:STRING, category:STRING

Example for this content:

startTime            visitorId   category
-------------------  ---------   --------
2013-11-27 00:00:00     A           X         
2013-11-27 05:00:00     A           X 
2013-11-27 07:00:00     B           X 
2013-11-28 08:00:00     C           X 

I would like to have the following result:

day         category  runningCountOfDistinctVisitors  
---------   --------  ------------------------------   
2013-11-27     X                   2
2013-11-28     X                   3

I have tried the following query but it does not seems to work (it's been running for over 3 hours on 1.2M rows table and still hasn't finished) :

SELECT left(a.startTime,10) as day, 
a.category,
count(distinct a.visitorId) as runningCountOfDistinctVisitors
FROM [MyDataset.MyTable] a 
LEFT JOIN EACH [MyDataset.MyTable] b ON a.category = b.category 
WHERE left(b.startTime,10) < left(a.startTime,10)
GROUP EACH BY a.category, day
ORDER BY a.category, day

I also tried to work with the partition function but count distinct does not seems to be supported.

share|improve this question
    
Note: I have a total of 3 queries that are currently marked as "Query Running" (including the query that I mentioned). These queries started a little more than 3 hours ago. The queries are all similar. – YABADABADOU Nov 28 '13 at 18:45
up vote 3 down vote accepted

Try this:

ts:timestamp, visitor:string, category:string

ts                       visitor  category
-----------------------  -------  --------
2013-11-27 00:00:00 UTC  A        X  
2013-11-27 00:00:00 UTC  A        X  
2013-11-27 00:00:00 UTC  B        X  
2013-11-28 00:00:00 UTC  C        X  
2013-11-27 00:00:00 UTC  A        Y  
2013-11-28 00:00:00 UTC  B        Y  
2013-11-29 00:00:00 UTC  C        Y

query:

select 
  day, category, sum(cd) 
over
  (partition by category order by day) as running_total
from (select date(ts) as day, category, count(distinct visitor) as cd from
  [test.runningtotal] group by day, category)

this will produce:

day         category  running_total
----------  --------  -------------
2013-11-27  X         2  
2013-11-28  X         3  
2013-11-27  Y         1  
2013-11-28  Y         2  
2013-11-29  Y         3

I didn't test this on large dataset but it might be faster than the JOIN solution.

share|improve this answer
    
Thank you very much for your answer! I have tried it but for some reason the result for the running_total is a little higher than what it should be (on my table). I will try to dig deeper to find out why. – YABADABADOU Dec 3 '13 at 14:59
2  
count(distinct visitor) is approximation, try count(distinct visitor, xxx) where xxx is some high number, higher than the day/category group should have (see developers.google.com/bigquery/query-reference#aggfunctions for count) – Radek Michna Dec 3 '13 at 15:15
    
I forgot to mention, yes I already tried to use the count distinct with the second(optional) parameter and it didn't work either. I will try to see if can put my table public with some data. Thanks again for your help, it's really appreciated! – YABADABADOU Dec 3 '13 at 18:58

COUNT DISTINCT is a calculation intensive operation (that's why BigQuery offers to do an approximated count after 1000, unless explicitly requested not to). Doing an almost CROSS JOIN is also an intensive operation. Mix both 2 with a large dataset, and you could be running into a computationally hard to solve problem.

Suggestions (as I don't have access to your data to play with):

  • Instead of a COUNT DISTINCT, do a sub-query with a GROUP EACH. Then just COUNT that on an outer query. Same results, with a probably better computation distribution.
  • Why LEFT JOIN EACH and not just JOIN EACH?

Update: I like Radek's answer, where he uses a COUNT() OVER() instead of a JOIN: http://stackoverflow.com/a/20346427/132438

share|improve this answer

Realize I'm very late to this but it helped me iron out something I was working on, so I figured I'd add a bit more.

In BigQuery you can run a rolling count distinct on a dataset that widens with the window.

On this example it would look something like this.

`SELECT day, category, MAX(runningCountofDistinctVisitors) running_ct
FROM
(SELECT left(a.startTime,10) as day, 
a.category category,
count(distinct a.visitorId)
  OVER(PARTITION BY category
  ORDER BY LEFT(a.startTime,10)) as runningCountOfDistinctVisitors
FROM [MyDataset.MyTable] a 
LEFT JOIN EACH [MyDataset.MyTable] b ON a.category = b.category 
WHERE left(b.startTime,10) < left(a.startTime,10)
GROUP EACH BY a.category, day, a.visitorId)
GROUP EACH BY day, category
ORDER EACH BY day, category`

This solves the problem of the count being higher than you would expect it, because the window is widening to include the current day and all previous days, as opposed to summing the counts of the individual preceding days.

I believe there is also a way to do this without an outer query that gets the max each day, but I haven't been able to figure that out yet.

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