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I have a dataset which essentially consists of a list of job batches, the number of jobs contained in each batch, and the duration of each job batch. Here is a sample dataset:

CREATE TABLE test_data
   batch_id    NUMBER,
   job_count   NUMBER,
   duration    NUMBER

INSERT INTO test_data VALUES (1, 37, 9);
INSERT INTO test_data VALUES (2, 47, 4);
INSERT INTO test_data VALUES (3, 66, 6);
INSERT INTO test_data VALUES (4, 46, 6);
INSERT INTO test_data VALUES (5, 54, 1);
INSERT INTO test_data VALUES (6, 35, 1);
INSERT INTO test_data VALUES (7, 55, 9);
INSERT INTO test_data VALUES (8, 82, 7);
INSERT INTO test_data VALUES (9, 12, 9);
INSERT INTO test_data VALUES (10, 52, 4);
INSERT INTO test_data VALUES (11, 3, 9);
INSERT INTO test_data VALUES (12, 90, 2);

Now, I want to calculate some percentiles for the duration field. Typically, this is done with something like the following:

       PERCENTILE_DISC( 0.75 )
          WITHIN GROUP (ORDER BY duration ASC)
          AS third_quartile

(Which gives the result of 9)

My problem here is that we don't want to get the percentiles based on batches, I want to get them based on individual jobs. I can figure this out by hand quite easily by generating a running total of the job_count:

       OVER (
              ORDER BY duration
          AS total_jobs,
       duration ASC;

6            35           35           1            
5            54           89           1            
12           90           179          2            
2            47           226          4            
10           52           278          4            
3            66           344          6            
4            46           390          6            
8            82           472          7            
9            12           484          9            
1            37           521          9            
11           3            524          9            
7            55           579          9           

Since I have 579 jobs, then the 75th percentile would be job 434. Looking at the above result set, that corresponds with a duration of 7, different from what the standard function does.

Essentially, I want to consider each job in a batch as a separate observation, and determine percentiles based on those, instead on the batches.

Is there a relatively simple way to accomplish this?

share|improve this question
Do you mean that you're looking for "per job" duration? If so, can use duration/job_count as a measure? Please clarify your requirements. Your second approach does not make much sense (at least mathematically). –  PM 77-1 May 8 '13 at 22:17
While correct, that still leaves the problem in place. (I had omitted that for simplicity in the mock data) If I do that then the reported 75th percentile from the above dataset is 0.16, but the desired 75th percentile should be 0.13 because it's still determining the 75th percentile based on batches and not jobs. –  emiller42 May 8 '13 at 22:27
Also worth noting that functionally, no job in a batch is considered finished until the entire batch is finished. So from the perspective of an end user, all jobs in a batch take the same amount of time. –  emiller42 May 8 '13 at 22:31

2 Answers 2

up vote 2 down vote accepted

I would think of this as "weighted" percentiles. I don't know if there is a built-in analytic function for this in Oracle, but it is easy enough to calculate. And you are on the way there.

The additional idea is to calculate the total number of jobs, and then use arithmetic to select the value you want. For the 75th percentile, the value is the smallest duration such that the cumulative number of jobs is greater than 0.75 times the total number of jobs.

Here is the example in SQL:

select pcs.percentile, min(case when cumjobs >= totjobs * percentile then duration end)
from (SELECT batch_id, job_count,
             SUM(job_count) OVER (ORDER BY duration) as cumjobs,
             sum(job_count) over () as totjobs,
      FROM test_data
     ) t cross join
     (select 0.25 as percentile from dual union all
      select 0.5 from dual union all
      select 0.75 from dual
     ) pcs
group by pcs.percentile;

This example gives you the percentile values (and as an added bonus, for three different percentiles) with each value on its own row. If you want the values on each row, you need to join back to your original table.

share|improve this answer
Both of these answers get me exactly what I want, but I'm accepting this one as it runs much faster against a larger data set. (Tested against 600k batches, with up to 1,800 jobs per batch) I would upvote both, but I can't yet. Thank you both for the answers! –  emiller42 May 9 '13 at 15:05

OK. I think I have your answer. Idea is mine. Implementation is borrowed from this Ask Tom article

       WITHIN GROUP (ORDER BY duration ASC)
       AS third_quartile
with data as
  (select level l
   from dual, (select max(job_count) max_jobs from test_data)
   connect by level <= max_jobs
  select *
  from test_data, data
  where l <= job_count
  --ORDER BY duration, batch_id
  ) inner

Here is SQL Fiddle.

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