# How to calculate the sum of a column in an SQL table for a given date and patching missed values with those of the closest previous date?

I have a table that seems like this:

``````+-----+-----------+------------+
| id  |     value |       date |
+-----+-----------+------------+
| id1 |      1499 | 2012-05-10 |
| id1 |      1509 | 2012-05-11 |
| id1 |      1511 | 2012-05-12 |
| id1 |      1515 | 2012-05-13 |
| id1 |      1522 | 2012-05-14 |
| id1 |      1525 | 2012-05-15 |
| id2 |      2222 | 2012-05-10 |
| id2 |      2223 | 2012-05-11 |
| id2 |      2238 | 2012-05-13 |
| id2 |      2330 | 2012-05-14 |
| id2 |      2340 | 2012-05-15 |
| id3 |      1001 | 2012-05-10 |
| id3 |      1020 | 2012-05-11 |
| id3 |      1089 | 2012-05-12 |
| id3 |      1107 | 2012-05-13 |
| id3 |      1234 | 2012-05-14 |
| id3 |      1556 | 2012-05-15 |
| ... |       ... |        ... |
| ... |       ... |        ... |
| ... |       ... |        ... |
+-----+-----------+------------+
``````

What I want to do is to produce the total sum of the `value` column for all the data in this table per date. There is one entry for each `id` per day. The problem is that some ids haven't a value for all days, e.g. id2 haven't a value for the date: 2012-05-11

What I want to do is: when for a given date there is no value for a specific id, then the value of the previous date (much closer to the given date) to be calculated in the sum.

For example, suppose we have only the data shown above. we can take the sum of all values for a specific date from this query:

``````SELECT SUM(value) FROM mytable WHERE date='2012-05-12';
``````

the result will be: 1511 + 1089 = 2600

But what I want to have is to make a query that does this calculation: 1511 + 2223 + 1089 = 4823

so that the 2223 of `id2` of date 2012-05-11 is added instead of the missed value:

``````| id2 |  2223 | 2012-05-11 |
``````

Do you know how can I do this through an SQL query? or through a script? e.g. python..

I have thousands of ids per date, so I would like the query to be a little bit fast if it is possible.

-

It's not pretty, as it has to join four copies of your table to itself, which could hit all sorts of performance pain (I strongly advise you to have indexes on `id` and `date`)... but this will do the trick:

``````SELECT   y.report_date, SUM(x.value)
FROM     mytable AS x
NATURAL JOIN (
SELECT   a.id, b.date AS report_date, MAX(c.date) AS date
FROM     (SELECT DISTINCT id   FROM mytable) a JOIN
(SELECT DISTINCT date FROM mytable) b JOIN
mytable AS c ON (c.id = a.id AND c.date <= b.date)
GROUP BY a.id, b.date
) AS y
GROUP BY y.report_date
``````

See it on sqlfiddle.

-
I was curious to see how this performs on a large dataset, so I ran it locally on a randomized set with 10 ids, 100 days, and a 20% random density (using `random() <= 0.2` to decide whether to insert an id-date combination or not) and it slowed down to 100ms. The data is still sparse (not showing 0's for dates with no ids in them). You'd have to join on a data range sequence for that. sqlfiddle.com/#!2/5afe8/1 –  Nisan.H May 15 '12 at 19:47
That said, I like this solution as it keeps the heavy work on the database, rather than leaving it to the client. –  Nisan.H May 15 '12 at 19:48
@Nisan.H: Yes, agreed the data will be sparse (insofar as dates for which there is no data whatsoever will not appear in the resultset - but we know those must have a sum of zero so constructing an explicit date range is rather unnecessary) - missing results can be handled within the application. –  eggyal May 15 '12 at 19:49
@eggyal: Thank you very much, this is exactly what I wanted! Thanks for the sqlfiddle too. This is a very useful online tool! :) –  Thanasis Petsas May 16 '12 at 14:03

The SQL solution that I can think of for this is not very pretty (a sub-select inside a case statement on the value column with a right join to a dates sequence table... It's pretty ugly.) so I'll go with the python version:

``````import pyodbc
#connect to localhost
conn = pyodbc.connect('Driver={MySQL ODBC 5.1 Driver};Server=127.0.0.1;Port=3306;Database=information_schema;User=root; Password=root;Option=3;')
cursor = conn.cursor()

sums = {}  ## { id : { 'dates': [], 'values': [], 'sum': 0 } }      # sum is optional, you can always just sum() on the values list.

query = """SELECT
id, value, date
FROM mytable
ORDER BY date ASC, id ASC;"""

## note that I use "fetchall()" here because in my experience the memory
## required to hold the result set is available. If this is not the case
## for you, see below for a row-by-row streaming

for row in cursor.execute(query).fetchall():
id = sums.get(row['id'], {'dates' : [], 'values': [], 'sum': 0})
if len(id['date']) > 0: # previous records exist for id
# days diff is greater than 1
days = row['date'] - id['dates'][-1]).days
## days == 0, range(0) == [], in which case the loop steps won't be run
for d in range(1, days):
id['dates'].append(id['dates'][-1] + datetime.timedelta(days = 1))  # add date at 1 day increments from last date point
id['values'].append(id['values'][-1])  # add value of last date point again
id['sum'] = id['sum'] + id['values'][-1]    # add to sum
## finally add the actual time point
id['dates'].append(row['date'])
id['values'].append(row['value'])
id['sum'] = id['sum'] + row['value']

else: # this is the first record for the id
sums[row['id']] = {'dates': [row['date']], 'values': [row['value']], 'sum': row['value'] }
``````

Alternative row-by-row streaming loop:

``````cursor.execute(query)
while 1:
row = cursor.fetchone()
if not row:
break
id = sums.get(row['id'], {'dates' : [], 'values': [], 'sum': 0})
if len(id['date']) > 0: # previous records exist for id
# days diff is greater than 1
days = row['date'] - id['dates'][-1]).days
## days == 0, range(0) == [], in which case the loop steps won't be run
for d in range(1, days):
id['dates'].append(id['dates'][-1] + datetime.timedelta(days = 1))  # add date at 1 day increments from last date point
id['values'].append(id['values'][-1])  # add value of last date point again
id['sum'] = id['sum'] + id['values'][-1]    # add to sum
## finally add the actual time point
id['dates'].append(row['date'])
id['values'].append(row['value'])
id['sum'] = id['sum'] + row['value']

else: # this is the first record for the id
sums[row['id']] = {'dates': [row['date']], 'values': [row['value']], 'sum': row['value'] }
``````

Don't forget to close the connection when you're done!

``````conn.close()
``````
-
Thanks, but what is the query you execute on the script? –  Thanasis Petsas May 16 '12 at 14:05
@ThanasisPetsas See edit. I also included the pyodbc connection parameters for a standard local installation of mysql. The query is a straight-forward `select id, value, date from mytable order by date asc, id asc` –  Nisan.H May 16 '12 at 16:37
You might want to think about the semantics of your `date` column a bit more.
Perhaps you should add a column and make your `date` a range, instead.
Anything you do that does not involve data from the record is likely to be slow. A literal interpretation of your request would potentially require a `date` traversal for each value to sum.