# Fill the gaps of NULL-s in a table with average values

I have a table with fields (id,letter,date) and some data in it:

1 A 2012-01-01
2 B NULL
3 C NULL
4 D 2012-01-15


I want to fill the NULL values with an average date of nearest non-NULL values. Like that:

1 A 2012-01-01
2 B 2012-01-08
3 C 2012-01-08
4 D 2012-01-15


OR, maybe, even like that:

1 A 2012-01-01
2 B 2012-01-08
3 C 2012-01-11
4 D 2012-01-15


Both variants are great. Is there a simple way to implement it in MySQL?

UPD Table is pretty large, about 700.000 records, and about 50.000 gaps like described ones.

UPD2 A bit cleaner: table may be like that:

1 A 2012-01-01
2 B NULL
3 C NULL
4 D 2012-01-15
5 E NULL
6 F 2012-01-17
7 G NULL
8 H NULL
9 I 2012-01-20


The result expected is like:

1 A 2012-01-01
2 B **2012-01-08**
3 C **2012-01-08**
4 D 2012-01-15
5 E **2012-01-16**
6 F 2012-01-17
7 G **2012-01-18**
8 H **2012-01-18**
9 I 2012-01-20


(Asterisks are to note the changed values). Thanks

UPD3 THANKS EVERYONE. But I will just do that in another way, calculating date with a simple formula: needed_date = [(max(date)-min(date))/(max(id)-min(id)]*(my_ID-min(id)) + min(date)

-
take a look at the first set of data, what if you have another records like 5, E, NULL, 6, F, 2012-01-20, what will be the result? –  John Woo Mar 22 '13 at 18:05
Why would you want to manipulate the data? You should do this calculation when the records are retrieved. –  Kermit Mar 22 '13 at 18:05
What's the correlation between the order of records and the values of the fields (i.e. will A always be before B in time)? –  Mike Dinescu Mar 22 '13 at 18:07
@J W Thanks for your answer. Result will be as follows: (first 4 records of result table are the same) 5 E 2012-01-17 6 F 2012-01-20 . So that record number 5 would have date column as an average of nearest non-nulls. –  No Way Mar 22 '13 at 18:09
@MikyDinescu Thanks for your answer. Yes, it will. If id1 > id2, date1 should be greater than date2 –  No Way Mar 22 '13 at 18:10

Assuming you have a table called T like this:

CREATE TABLE T(
id INT,
time DATETIME
);


The following query would give you boundaries for each NULL record:

SELECT T.Id
, MAX(T1.Time) as MinDate
, MIN(T2.Time) as MaxDate
FROM T
INNER JOIN T T1 ON T1.Id < T.Id
AND T.time IS NULL
AND NOT T1.time IS NULL
INNER JOIN T T2 ON T2.id > T.id
AND T.time IS NULL
AND NOT T2.time IS NULL
GROUP BY Id


The output would be:

Id  MinDate     MaxDate
2   2012-01-01  2012-01-15
3   2012-01-01  2012-01-15


So the next step would be to do an update using the values from this result-set to update the NULLs with an average for instance..

UPDATE T
INNER JOIN
(
SELECT T.Id, MAX(T1.Time) as MinTime, MIN(T2.Time) as MaxTime
FROM T
INNER JOIN T T1 ON T1.id < T.id
AND T.time IS NULL
AND NOT T1.time IS NULL
INNER JOIN T T2 ON T2.id > T.id
AND T.time IS NULL
AND NOT T2.time IS NULL
GROUP BY T.ID) T3
ON T3.id = T.id
SET T.time = FROM_UNIXTIME((UNIX_TIMESTAMP(T3.MinTime) + UNIX_TIMESTAMP(T3.MaxTime)) / 2)
WHERE T.time IS NULL


Working SQLFiddle Here

-
It IS a solution. But it's EXPLAIN with a table of about 700.000 records is not so good :( –  No Way Mar 22 '13 at 18:26

# QUERY #1

SELECT id,letter,IFNULL(date,dt) date FROM mytable,
(SELECT DATE(mindate + INTERVAL (secdiff/2) SECOND) dt
FROM (SELECT mindate,UNIX_TIMESTAMP(maxdate)
- UNIX_TIMESTAMP(mindate) secdiff
FROM (SELECT MIN(date) mindate FROM mytable) N,
(SELECT MAX(date) maxdate FROM mytable) X) AA) A;


# SAMPLE DATA

mysql> DROP TABLE IF EXISTS mytable;
Query OK, 0 rows affected (0.00 sec)

mysql> CREATE TABLE mytable
-> (
->    id int not null auto_increment,
->    letter char(1),
->    date date,
->    primary key (id)
-> );
Query OK, 0 rows affected (0.07 sec)

mysql> INSERT INTO mytable (letter,date) VALUES
-> ('A','2012-01-01'),('B',NULL),('C',NULL),('D','2012-01-15');
Query OK, 4 rows affected (0.00 sec)
Records: 4  Duplicates: 0  Warnings: 0

mysql> SELECT * FROM mytable;
+----+--------+------------+
| id | letter | date       |
+----+--------+------------+
|  1 | A      | 2012-01-01 |
|  2 | B      | NULL       |
|  3 | C      | NULL       |
|  4 | D      | 2012-01-15 |
+----+--------+------------+
4 rows in set (0.00 sec)

mysql>


# QUERY #1 EXECUTED

mysql> SELECT id,letter,IFNULL(date,dt) date FROM mytable,
-> (SELECT DATE(mindate + INTERVAL (secdiff/2) SECOND) dt
-> FROM (SELECT mindate,UNIX_TIMESTAMP(maxdate)
-> - UNIX_TIMESTAMP(mindate) secdiff
-> FROM (SELECT MIN(date) mindate FROM mytable) N,
-> (SELECT MAX(date) maxdate FROM mytable) X) AA) A;
+----+--------+------------+
| id | letter | date       |
+----+--------+------------+
|  1 | A      | 2012-01-01 |
|  2 | B      | 2012-01-08 |
|  3 | C      | 2012-01-08 |
|  4 | D      | 2012-01-15 |
+----+--------+------------+
4 rows in set (0.00 sec)

mysql>


# QUERY #2 (Cleaner Version)

This query uses the average of UNIX Timestamps. If all the dates are NULL, it uses today's date:

SELECT id,letter,IFNULL(date,dt) date FROM mytable,
(
SELECT IF(K=0,DATE(NOW()),avgdt) dt FROM
(SELECT DATE(FROM_UNIXTIME(AVG(UNIX_TIMESTAMP(date))))
avgdt FROM mytable) AA,
(SELECT COUNT(date) K FROM mytable) BB
) A;


# QUERY #2 EXECUTED

mysql> SELECT id,letter,IFNULL(date,dt) date FROM mytable,
-> (
->     SELECT IF(K=0,DATE(NOW()),avgdt) dt FROM
->     (SELECT DATE(FROM_UNIXTIME(AVG(UNIX_TIMESTAMP(date))))
->     avgdt FROM mytable) AA,
->     (SELECT COUNT(date) K FROM mytable) BB
-> ) A;
+----+--------+------------+
| id | letter | date       |
+----+--------+------------+
|  1 | A      | 2012-01-01 |
|  2 | B      | 2012-01-08 |
|  3 | C      | 2012-01-08 |
|  4 | D      | 2012-01-15 |
+----+--------+------------+
4 rows in set (0.05 sec)

mysql>


# Give it a Try !!!

-
Thanks. But this would change all my NULL-s to an average date between FIRST PAIR of non-null values. See updated question :( –  No Way Mar 22 '13 at 19:08