Rank function in MySQL
I need to find out rank of customers. Here I am adding the corresponding ANSI standard SQL query for my requirement. Please help me to convert it to MySQL .
SELECT RANK() OVER (PARTITION BY Gender ORDER BY Age) AS [Partition by Gender],
FirstName,
Age,
Gender
FROM Person
Is th开发者_StackOverflowere any function to find out rank in MySQL?
One option is to use a ranking variable, such as the following:
SELECT first_name,
age,
gender,
@curRank := @curRank + 1 AS rank
FROM person p, (SELECT @curRank := 0) r
ORDER BY age;
The (SELECT @curRank := 0)
part allows the variable initialization without requiring a separate SET
command.
Test case:
CREATE TABLE person (id int, first_name varchar(20), age int, gender char(1));
INSERT INTO person VALUES (1, 'Bob', 25, 'M');
INSERT INTO person VALUES (2, 'Jane', 20, 'F');
INSERT INTO person VALUES (3, 'Jack', 30, 'M');
INSERT INTO person VALUES (4, 'Bill', 32, 'M');
INSERT INTO person VALUES (5, 'Nick', 22, 'M');
INSERT INTO person VALUES (6, 'Kathy', 18, 'F');
INSERT INTO person VALUES (7, 'Steve', 36, 'M');
INSERT INTO person VALUES (8, 'Anne', 25, 'F');
Result:
+------------+------+--------+------+
| first_name | age | gender | rank |
+------------+------+--------+------+
| Kathy | 18 | F | 1 |
| Jane | 20 | F | 2 |
| Nick | 22 | M | 3 |
| Bob | 25 | M | 4 |
| Anne | 25 | F | 5 |
| Jack | 30 | M | 6 |
| Bill | 32 | M | 7 |
| Steve | 36 | M | 8 |
+------------+------+--------+------+
8 rows in set (0.02 sec)
Here is a generic solution that assigns dense rank over partition to rows. It uses user variables:
CREATE TABLE person (
id INT NOT NULL PRIMARY KEY,
firstname VARCHAR(10),
gender VARCHAR(1),
age INT
);
INSERT INTO person (id, firstname, gender, age) VALUES
(1, 'Adams', 'M', 33),
(2, 'Matt', 'M', 31),
(3, 'Grace', 'F', 25),
(4, 'Harry', 'M', 20),
(5, 'Scott', 'M', 30),
(6, 'Sarah', 'F', 30),
(7, 'Tony', 'M', 30),
(8, 'Lucy', 'F', 27),
(9, 'Zoe', 'F', 30),
(10, 'Megan', 'F', 26),
(11, 'Emily', 'F', 20),
(12, 'Peter', 'M', 20),
(13, 'John', 'M', 21),
(14, 'Kate', 'F', 35),
(15, 'James', 'M', 32),
(16, 'Cole', 'M', 25),
(17, 'Dennis', 'M', 27),
(18, 'Smith', 'M', 35),
(19, 'Zack', 'M', 35),
(20, 'Jill', 'F', 25);
SELECT person.*, @rank := CASE
WHEN @partval = gender AND @rankval = age THEN @rank
WHEN @partval = gender AND (@rankval := age) IS NOT NULL THEN @rank + 1
WHEN (@partval := gender) IS NOT NULL AND (@rankval := age) IS NOT NULL THEN 1
END AS rnk
FROM person, (SELECT @rank := NULL, @partval := NULL, @rankval := NULL) AS x
ORDER BY gender, age;
Notice that the variable assignments are placed inside the CASE
expression. This (in theory) takes care of order of evaluation issue. The IS NOT NULL
is added to handle datatype conversion and short circuiting issues.
PS: It can easily be converted to row number over partition by by removing all conditions that check for tie.
| id | firstname | gender | age | rank |
|----|-----------|--------|-----|------|
| 11 | Emily | F | 20 | 1 |
| 20 | Jill | F | 25 | 2 |
| 3 | Grace | F | 25 | 2 |
| 10 | Megan | F | 26 | 3 |
| 8 | Lucy | F | 27 | 4 |
| 6 | Sarah | F | 30 | 5 |
| 9 | Zoe | F | 30 | 5 |
| 14 | Kate | F | 35 | 6 |
| 4 | Harry | M | 20 | 1 |
| 12 | Peter | M | 20 | 1 |
| 13 | John | M | 21 | 2 |
| 16 | Cole | M | 25 | 3 |
| 17 | Dennis | M | 27 | 4 |
| 7 | Tony | M | 30 | 5 |
| 5 | Scott | M | 30 | 5 |
| 2 | Matt | M | 31 | 6 |
| 15 | James | M | 32 | 7 |
| 1 | Adams | M | 33 | 8 |
| 18 | Smith | M | 35 | 9 |
| 19 | Zack | M | 35 | 9 |
Demo on db<>fiddle
While the most upvoted answer ranks, it doesn't partition, You can do a self Join to get the whole thing partitioned also:
SELECT a.first_name,
a.age,
a.gender,
count(b.age)+1 as rank
FROM person a left join person b on a.age>b.age and a.gender=b.gender
group by a.first_name,
a.age,
a.gender
Use Case
CREATE TABLE person (id int, first_name varchar(20), age int, gender char(1));
INSERT INTO person VALUES (1, 'Bob', 25, 'M');
INSERT INTO person VALUES (2, 'Jane', 20, 'F');
INSERT INTO person VALUES (3, 'Jack', 30, 'M');
INSERT INTO person VALUES (4, 'Bill', 32, 'M');
INSERT INTO person VALUES (5, 'Nick', 22, 'M');
INSERT INTO person VALUES (6, 'Kathy', 18, 'F');
INSERT INTO person VALUES (7, 'Steve', 36, 'M');
INSERT INTO person VALUES (8, 'Anne', 25, 'F');
Answer:
Bill 32 M 4
Bob 25 M 2
Jack 30 M 3
Nick 22 M 1
Steve 36 M 5
Anne 25 F 3
Jane 20 F 2
Kathy 18 F 1
A tweak of Daniel's version to calculate percentile along with rank. Also two people with same marks will get the same rank.
set @totalStudents = 0;
select count(*) into @totalStudents from marksheets;
SELECT id, score, @curRank := IF(@prevVal=score, @curRank, @studentNumber) AS rank,
@percentile := IF(@prevVal=score, @percentile, (@totalStudents - @studentNumber + 1)/(@totalStudents)*100),
@studentNumber := @studentNumber + 1 as studentNumber,
@prevVal:=score
FROM marksheets, (
SELECT @curRank :=0, @prevVal:=null, @studentNumber:=1, @percentile:=100
) r
ORDER BY score DESC
Results of the query for a sample data -
+----+-------+------+---------------+---------------+-----------------+
| id | score | rank | percentile | studentNumber | @prevVal:=score |
+----+-------+------+---------------+---------------+-----------------+
| 10 | 98 | 1 | 100.000000000 | 2 | 98 |
| 5 | 95 | 2 | 90.000000000 | 3 | 95 |
| 6 | 91 | 3 | 80.000000000 | 4 | 91 |
| 2 | 91 | 3 | 80.000000000 | 5 | 91 |
| 8 | 90 | 5 | 60.000000000 | 6 | 90 |
| 1 | 90 | 5 | 60.000000000 | 7 | 90 |
| 9 | 84 | 7 | 40.000000000 | 8 | 84 |
| 3 | 83 | 8 | 30.000000000 | 9 | 83 |
| 4 | 72 | 9 | 20.000000000 | 10 | 72 |
| 7 | 60 | 10 | 10.000000000 | 11 | 60 |
+----+-------+------+---------------+---------------+-----------------+
Combination of Daniel's and Salman's answer. However the rank will not give as continues sequence with ties exists . Instead it skips the rank to next. So maximum always reach row count.
SELECT first_name,
age,
gender,
IF(age=@_last_age,@curRank:=@curRank,@curRank:=@_sequence) AS rank,
@_sequence:=@_sequence+1,@_last_age:=age
FROM person p, (SELECT @curRank := 1, @_sequence:=1, @_last_age:=0) r
ORDER BY age;
Schema and Test Case:
CREATE TABLE person (id int, first_name varchar(20), age int, gender char(1));
INSERT INTO person VALUES (1, 'Bob', 25, 'M');
INSERT INTO person VALUES (2, 'Jane', 20, 'F');
INSERT INTO person VALUES (3, 'Jack', 30, 'M');
INSERT INTO person VALUES (4, 'Bill', 32, 'M');
INSERT INTO person VALUES (5, 'Nick', 22, 'M');
INSERT INTO person VALUES (6, 'Kathy', 18, 'F');
INSERT INTO person VALUES (7, 'Steve', 36, 'M');
INSERT INTO person VALUES (8, 'Anne', 25, 'F');
INSERT INTO person VALUES (9, 'Kamal', 25, 'M');
INSERT INTO person VALUES (10, 'Saman', 32, 'M');
Output:
+------------+------+--------+------+--------------------------+-----------------+
| first_name | age | gender | rank | @_sequence:=@_sequence+1 | @_last_age:=age |
+------------+------+--------+------+--------------------------+-----------------+
| Kathy | 18 | F | 1 | 2 | 18 |
| Jane | 20 | F | 2 | 3 | 20 |
| Nick | 22 | M | 3 | 4 | 22 |
| Kamal | 25 | M | 4 | 5 | 25 |
| Anne | 25 | F | 4 | 6 | 25 |
| Bob | 25 | M | 4 | 7 | 25 |
| Jack | 30 | M | 7 | 8 | 30 |
| Bill | 32 | M | 8 | 9 | 32 |
| Saman | 32 | M | 8 | 10 | 32 |
| Steve | 36 | M | 10 | 11 | 36 |
+------------+------+--------+------+--------------------------+-----------------+
Starting with MySQL 8, you can finally use window functions also in MySQL: https://dev.mysql.com/doc/refman/8.0/en/window-functions.html
Your query can be written exactly the same way:
SELECT RANK() OVER (PARTITION BY Gender ORDER BY Age) AS `Partition by Gender`,
FirstName,
Age,
Gender
FROM Person
@Sam, your point is excellent in concept but I think you misunderstood what the MySQL docs are saying on the referenced page -- or I misunderstand :-) -- and I just wanted to add this so that if someone feels uncomfortable with the @Daniel's answer they'll be more reassured or at least dig a little deeper.
You see the "@curRank := @curRank + 1 AS rank"
inside the SELECT
is not "one statement", it's one "atomic" part of the statement so it should be safe.
The document you reference goes on to show examples where the same user-defined variable in 2 (atomic) parts of the statement, for example, "SELECT @curRank, @curRank := @curRank + 1 AS rank"
.
One might argue that @curRank
is used twice in @Daniel's answer: (1) the "@curRank := @curRank + 1 AS rank"
and (2) the "(SELECT @curRank := 0) r"
but since the second usage is part of the FROM
clause, I'm pretty sure it is guaranteed to be evaluated first; essentially making it a second, and preceding, statement.
In fact, on that same MySQL docs page you referenced, you'll see the same solution in the comments -- it could be where @Daniel got it from; yeah, I know that it's the comments but it is comments on the official docs page and that does carry some weight.
The most straight forward solution to determine the rank of a given value is to count the number of values before it. Suppose we have the following values:
10 20 30 30 30 40
- All
30
values are considered 3rd - All
40
values are considered 6th (rank) or 4th (dense rank)
Now back to the original question. Here is some sample data which is sorted as described in OP (expected ranks are added on the right):
+------+-----------+------+--------+ +------+------------+
| id | firstname | age | gender | | rank | dense_rank |
+------+-----------+------+--------+ +------+------------+
| 11 | Emily | 20 | F | | 1 | 1 |
| 3 | Grace | 25 | F | | 2 | 2 |
| 20 | Jill | 25 | F | | 2 | 2 |
| 10 | Megan | 26 | F | | 4 | 3 |
| 8 | Lucy | 27 | F | | 5 | 4 |
| 6 | Sarah | 30 | F | | 6 | 5 |
| 9 | Zoe | 30 | F | | 6 | 5 |
| 14 | Kate | 35 | F | | 8 | 6 |
| 4 | Harry | 20 | M | | 1 | 1 |
| 12 | Peter | 20 | M | | 1 | 1 |
| 13 | John | 21 | M | | 3 | 2 |
| 16 | Cole | 25 | M | | 4 | 3 |
| 17 | Dennis | 27 | M | | 5 | 4 |
| 5 | Scott | 30 | M | | 6 | 5 |
| 7 | Tony | 30 | M | | 6 | 5 |
| 2 | Matt | 31 | M | | 8 | 6 |
| 15 | James | 32 | M | | 9 | 7 |
| 1 | Adams | 33 | M | | 10 | 8 |
| 18 | Smith | 35 | M | | 11 | 9 |
| 19 | Zack | 35 | M | | 11 | 9 |
+------+-----------+------+--------+ +------+------------+
To calculate RANK() OVER (PARTITION BY Gender ORDER BY Age)
for Sarah, you can use this query:
SELECT COUNT(id) + 1 AS rank, COUNT(DISTINCT age) + 1 AS dense_rank
FROM testdata
WHERE gender = (SELECT gender FROM testdata WHERE id = 6)
AND age < (SELECT age FROM testdata WHERE id = 6)
+------+------------+
| rank | dense_rank |
+------+------------+
| 6 | 5 |
+------+------------+
To calculate RANK() OVER (PARTITION BY Gender ORDER BY Age)
for All rows you can use this query:
SELECT testdata.id, COUNT(lesser.id) + 1 AS rank, COUNT(DISTINCT lesser.age) + 1 AS dense_rank
FROM testdata
LEFT JOIN testdata AS lesser ON lesser.age < testdata.age AND lesser.gender = testdata.gender
GROUP BY testdata.id
And here is the result (joined values are added on right):
+------+------+------------+ +-----------+-----+--------+
| id | rank | dense_rank | | firstname | age | gender |
+------+------+------------+ +-----------+-----+--------+
| 11 | 1 | 1 | | Emily | 20 | F |
| 3 | 2 | 2 | | Grace | 25 | F |
| 20 | 2 | 2 | | Jill | 25 | F |
| 10 | 4 | 3 | | Megan | 26 | F |
| 8 | 5 | 4 | | Lucy | 27 | F |
| 6 | 6 | 5 | | Sarah | 30 | F |
| 9 | 6 | 5 | | Zoe | 30 | F |
| 14 | 8 | 6 | | Kate | 35 | F |
| 4 | 1 | 1 | | Harry | 20 | M |
| 12 | 1 | 1 | | Peter | 20 | M |
| 13 | 3 | 2 | | John | 21 | M |
| 16 | 4 | 3 | | Cole | 25 | M |
| 17 | 5 | 4 | | Dennis | 27 | M |
| 5 | 6 | 5 | | Scott | 30 | M |
| 7 | 6 | 5 | | Tony | 30 | M |
| 2 | 8 | 6 | | Matt | 31 | M |
| 15 | 9 | 7 | | James | 32 | M |
| 1 | 10 | 8 | | Adams | 33 | M |
| 18 | 11 | 9 | | Smith | 35 | M |
| 19 | 11 | 9 | | Zack | 35 | M |
+------+------+------------+ +-----------+-----+--------+
If you want to rank just one person you can do the following:
SELECT COUNT(Age) + 1
FROM PERSON
WHERE(Age < age_to_rank)
This ranking corresponds to the oracle RANK function (Where if you have people with the same age they get the same rank, and the ranking after that is non-consecutive).
It's a little bit faster than using one of the above solutions in a subquery and selecting from that to get the ranking of one person.
This can be used to rank everyone but it's slower than the above solutions.
SELECT
Age AS age_var,
(
SELECT COUNT(Age) + 1
FROM Person
WHERE (Age < age_var)
) AS rank
FROM Person
To avoid the "however" in Erandac's answer in combination of Daniel's and Salman's answers, one may use one of the following "partition workarounds"
SELECT customerID, myDate
-- partition ranking works only with CTE / from MySQL 8.0 on
, RANK() OVER (PARTITION BY customerID ORDER BY dateFrom) AS rank,
-- Erandac's method in combination of Daniel's and Salman's
-- count all items in sequence, maximum reaches row count.
, IF(customerID=@_lastRank, @_curRank:=@_curRank, @_curRank:=@_sequence+1) AS sequenceRank
, @_sequence:=@_sequence+1 as sequenceOverAll
-- Dense partition ranking, works also with MySQL 5.7
-- remember to set offset values in from clause
, IF(customerID=@_lastRank, @_nxtRank:=@_nxtRank, @_nxtRank:=@_nxtRank+1 ) AS partitionRank
, IF(customerID=@_lastRank, @_overPart:=@_overPart+1, @_overPart:=1 ) AS partitionSequence
, @_lastRank:=customerID
FROM myCustomers,
(SELECT @_curRank:=0, @_sequence:=0, @_lastRank:=0, @_nxtRank:=0, @_overPart:=0 ) r
ORDER BY customerID, myDate
The partition ranking in the 3rd variant in this code snippet will return continous ranking numbers. this will lead to a data structur similar to the rank() over partition by
result. As an example, see below. In particular, the partitionSequence will always start with 1 for each new partitionRank, using this method:
customerID myDate sequenceRank (Erandac)
| sequenceOverAll
| | partitionRank
| | | partitionSequence
| | | | lastRank
... lines ommitted for clarity
40 09.11.2016 11:19 1 44 1 44 40
40 09.12.2016 12:08 1 45 1 45 40
40 09.12.2016 12:08 1 46 1 46 40
40 09.12.2016 12:11 1 47 1 47 40
40 09.12.2016 12:12 1 48 1 48 40
40 13.10.2017 16:31 1 49 1 49 40
40 15.10.2017 11:00 1 50 1 50 40
76 01.07.2015 00:24 51 51 2 1 76
77 04.08.2014 13:35 52 52 3 1 77
79 15.04.2015 20:25 53 53 4 1 79
79 24.04.2018 11:44 53 54 4 2 79
79 08.10.2018 17:37 53 55 4 3 79
117 09.07.2014 18:21 56 56 5 1 117
119 26.06.2014 13:55 57 57 6 1 119
119 02.03.2015 10:23 57 58 6 2 119
119 12.10.2015 10:16 57 59 6 3 119
119 08.04.2016 09:32 57 60 6 4 119
119 05.10.2016 12:41 57 61 6 5 119
119 05.10.2016 12:42 57 62 6 6 119
...
select id,first_name,gender,age,
rank() over(partition by gender order by age) rank_g
from person
CREATE TABLE person (id int, first_name varchar(20), age int, gender char(1));
INSERT INTO person VALUES (1, 'Bob', 25, 'M');
INSERT INTO person VALUES (2, 'Jane', 20, 'F');
INSERT INTO person VALUES (3, 'Jack', 30, 'M');
INSERT INTO person VALUES (4, 'Bill', 32, 'M');
INSERT INTO person VALUES (5, 'Nick', 22, 'M');
INSERT INTO person VALUES (6, 'Kathy', 18, 'F');
INSERT INTO person VALUES (7, 'Steve', 36, 'M');
INSERT INTO person VALUES (8, 'Anne', 25, 'F');
INSERT INTO person VALUES (9,'AKSH',32,'M');
SELECT FirstName,Age,Gender, RANK() OVER (partition by Gender order by Age desc) AS 'Partition by Gender' FROM Person
- you can use asc/desc depending on which order you want if whether ascending or descending
In a tweak to Daniel's answer, Some MySQL Versions throw errors at the IF statement
SELECT first_name,
age,
gender,
(IF(age=@_last_age,@curRank:=@curRank,@curRank:=@_sequence)) AS `rank`,
@_sequence:=@_sequence+1,@_last_age:=age
FROM person p, (SELECT @curRank := 1, @_sequence:=1, @_last_age:=0) r
ORDER BY age;
So I had to wrap the IF condition testing in Ranking with braces
This anly calculates ranking but not Dense_rank
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