Count unique values and their occurrence times in MySQL
Counting unique values and their occurrences is a common task in data processing. In MySQL you can achieve this with a simple query:
SELECT name, COUNT(*) AS count FROM tablename GROUP BY name ORDER BY count DESC;
Instructions:
-
SELECT name, COUNT(*) AS count
: Select thename
column and useCOUNT(*)
to count its occurrences (number of occurrences). The results are stored in thecount
column. -
FROM tablename
: Specify the MySQL table to extract data from. Replacetablename
with the actual table name. -
GROUP BY name
: Group results byname
column. This ensures that you only count occurrences of uniquename
values. -
ORDER BY count DESC
: Sort the results in descending order of thecount
column, displaying the most frequently occurringname
value first.
Example:
Consider the following example data:
id | name |
---|---|
1 | Mark |
2 | Mike |
3 | Paul |
4 | Mike |
5 | Mike |
6 | John |
7 | Mark |
Running a query on this data will produce the following results:
name | count |
---|---|
Mike | 3 |
Mark | 2 |
Paul | 1 |
John | 1 |
This query concisely and efficiently counts the number of occurrences of each unique name in the table, and sorts the results in descending order by the number of occurrences, allowing users to quickly understand the data distribution.
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