# Keeping rows from double-counting in a GROUP BY

Here's the basic guts of my schema and problem: http://sqlfiddle.com/#!1/72ec9/4/0

Note that the periods table can refer to a variable range of time - it could be an entire season, it could be a few games or one game. For a given team and year all period rows represent exclusive ranges of time.

I've got a query written which joins up tables and uses a GROUP BY periods.year to aggregate scores for a season (see sqlfiddle). However, if a coach had two positions in the same year the GROUP BY will count the same period row twice. How can I ditch the duplicates when a coach held two positions but still sum up periods when a year is comprised of multiple periods? If there's a better way to do the schema I'd also appreciate it if you pointed it out to me.

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+1 on supplying a functional demo for your problem. Makes it so much easier! –  Erwin Brandstetter Oct 3 '12 at 20:17

I explained the underlying problem (joining to multiple tables with multiple matches) in this closely related answer.

First, I simplified your query syntactically to make it easier to read:

select pe.year
,sum(pe.wins)       AS wins
,sum(pe.losses)     AS losses
,sum(pe.ties)       AS ties
,array_agg(po.id)   AS position_id
,array_agg(po.name) AS position_names
join   positions po ON po.id = pp.position
join   periods   pe ON pe.id = pp.period
where  pp.coach = 1
group  by pe.year
order  by pe.year;

Yields the same (incorrect) result as your original, but simpler / faster / easier to read.

• No point in joining in the table coach as long as you don't use columns in the SELECT list. I removed it completely and replace the WHERE condition with where pp.coach = 1.

• You don't need COALESCE at all. NULL values are ignored in the aggregate function sum(). No point in substituting 0.

• Use table aliases to make it easier to read

Next, I solved your problem like this:

SELECT *
FROM (
SELECT pe.year
,array_agg(DISTINCT po.id)   AS position_id
,array_agg(DISTINCT po.name) AS position_names
JOIN   positions po ON po.id = pp.position
JOIN   periods pe ON pe.id = pp.period
WHERE  pp.coach = 1
GROUP  BY pe.year
) po
LEFT JOIN (
SELECT pe.year
,sum(pe.wins)   AS wins
,sum(pe.losses) AS losses
,sum(pe.ties)   AS ties
FROM  (
SELECT period
WHERE  coach = 1
GROUP  BY period
) pp
JOIN   periods pe ON pe.id = pp.period
GROUP  BY pe.year
) pe USING (year)
ORDER  BY year
• Aggregate positions and periods separately before joining them.

• In the first sub-query list positions only once by simply using DISTINCT.

• In the second sub-query

• GROUP BY periods, because a coach can have multiple positions per period.
• JOIN to periods-data after that, and then aggregate to get sums.

### Updated sqlfiddle demonstrates solution.

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use distinct as shown here

code:

select periods.year as year,
sum(coalesce(periods.wins, 0)) as wins,
sum(coalesce(periods.losses, 0)) as losses,
sum(coalesce(periods.ties, 0)) as ties,
array_agg( distinct positions.id) as position_id,
array_agg( distinct positions.name) as position_names

join coaches on coaches.id = periods_positions_coaches_linking.coach
join positions on positions.id = periods_positions_coaches_linking.position
join periods on periods.id = periods_positions_coaches_linking.period

where coaches.id = 1

group by periods.year, positions.id
order by periods.year;
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This now returns two rows for year 2014. I'd prefer to get a single row returned for each year but I understand if SQL can't do that. If I'm using this query is there a guarantee that the two rows will have the same scores and I don't have to do any summing/processing outside of the query? (I'm worried about corner cases). –  ldrg Oct 3 '12 at 19:28
–  Teena Thomas Oct 3 '12 at 19:41
to guarantee that the scores are same, you need to add that criteria in the where clause –  Teena Thomas Oct 3 '12 at 20:00
This fails when a coach has multiple positions within per period, thereby multiplying values in the aggregation. You need to get distinct periods per coach first ... –  Erwin Brandstetter Oct 3 '12 at 20:08

In your case, the easiest way might be to divide out the positions:

select periods.year as year,
sum(coalesce(periods.wins, 0))/COUNT(distinct positions.id) as wins,
sum(coalesce(periods.losses, 0))/COUNT(distinct positions.id) as losses,
sum(coalesce(periods.ties, 0))/COUNT(distinct positions.id) as ties,
array_agg(distinct positions.id) as position_id,
array_agg(distinct positions.name) as position_names