# Calculating the peak capacity of hotels with Sql

There is a number of hotels with different bed capacities. I need to learn that for any given day, how many beds are occupied in each hotel.

Sample data:

`````` HOTEL      CHECK-IN     CHECK-OUT
A       29.05.2010   30.05.2010
A       28.05.2010   30.05.2010
A       27.05.2010   29.05.2010
B       18.08.2010   19.08.2010
B       16.08.2010   20.08.2010
B       15.08.2010   17.08.2010
``````

Intermediary Result:

``````HOTEL      DAY          OCCUPIED_BEDS
A     27.05.2010           1
A     28.05.2010           2
A     29.05.2010           3
A     30.05.2010           2
B     15.08.2010           1
B     16.08.2010           2
B     17.08.2010           2
B     18.08.2010           2
B     19.08.2010           2
B     20.08.2010           1
``````

Final result:

`````` HOTEL     MAX_OCCUPATION
A            3
B            2
``````

A similar question is asked before. I thought getting the list of dates (as Tom Kyte shows) between two dates and calculating each day's capacity with a `group by`. The problem is my table is relatively big and I wonder if there is a less costly way of accomplishing this task.

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possible duplicate of Finding simultaneous events in a database between times – Martin Smith Nov 16 '12 at 20:29
Not a dupe of that actually. – Martin Smith Nov 16 '12 at 20:30

I don't think there's a better approach than the one you outlined in the question. Create your days table (or generate one on the fly). I personally like to have one lying around, updated once a year.

Someone who understand analytic functions will probably be able to do this without an inner/outer query, but as the inner grouping is a subset of the outer, it doesn't make much difference.

``````Select
i.Hotel,
Max(i.OccupiedBeds)
From (
Select
s.Hotel,
d.DayID,
Count(*) As OccupiedBeds
From
SampleData s
Inner Join
Days d
-- might not need to +1 depending on business rules.
-- I wouldn't count occupancy on the day I check out, if so get rid of it
On d.DayID >= s.CheckIn And d.DayID < s.CheckOut + 1
Group By
s.Hotel,
d.DayID
) i
Group By
i.Hotel
``````

After a bit of playing I couldn't get an analytic function version to work without an inner query:

If speed really is a problem with this, you could consider maintaining an intermediate table with triggers on main table.

http://sqlfiddle.com/#!4/e58e7/24

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It is an OLAP environment. Dou you know a practical way to create a days table spanning 6 years, i.e. 01.01.2008-01.12.2013 – bonsvr Nov 16 '12 at 21:51

create a temp table containing the days you are interested in

``````create table #dates (dat datetime)
insert into #dates (dat) values ('20121116')
insert into #dates (dat) values ('20121115')
insert into #dates (dat) values ('20121114')
insert into #dates (dat) values ('20121113')
``````

Get the intermediate result by joining the bookings with the dates so that one per booking-day is "generated"

``````SELECT Hotel, d.dat, COUNT(*) from bookings b
INNER JOIN #dates d on d.dat BETWEEN b.checkin AND b.checkout
GROUP BY Hotel, d.dat
``````

An finally get the Max

``````SELECT Hotel, Max(OCCUPIED_BEDS) FROM IntermediateResult GROUP BY Hotel
``````
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The poster doesn't have "intermediate result". He has "sample data" – Laurence Nov 16 '12 at 20:31
Oh yeah - thats the challange. I see. – Lukas Winzenried Nov 16 '12 at 20:33

The problem with performance is that the join conditions are not based on equality which makes a hash join impossible. Assuming we have a table hotel_day with hotel-day pairs, I would try something like that:

``````select ch_in.hotel, ch_in.day,
(check_in_cnt - check_out_cnt) as occupancy_change
from   ( select d.hotel, d.day, count(s.hotel) as check_in_cnt
from   hotel_days d,
sample_data s
where  s.hotel(+) = d.hotel
and  s.check_in(+) = d.day
group  by d.hotel, d.day
) ch_in,
( select d.hotel, d.day, count(s.hotel) as check_out_cnt
from   hotel_days d,
sample_data s
where  s.hotel(+) = d.hotel
and  s.check_out(+) = d.day
group  by d.hotel, d.day
) ch_out
where  ch_out.hotel = ch_in.hotel
and  ch_out.day = ch_in.day
``````

The tradeoff is a double full scan, but I think it would still run faster, and it may be parallelized. (I assume that sample_data is big mostly due to the number of bookings, not the number of hotels itself.) The output is a change of occupancy in particular hotels on particular days, but this may be easily summed up into total values with either analytical functions or (probably more efficiently) a PL/SQL procedure with bulk collect.

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