SQL dynamic percentage calculation: efficient and comprehensive
Question:
Given a SQL table containing usernames and grades, you need to calculate the occurrence percentage of each possible grade. The challenge is to implement this dynamically, allowing for responsiveness from any open text field.
Solution:
There are three main ways to use SQL statements to calculate percentages:
Method 1: Efficiency Optimization
select Grade, count(*) * 100.0 / sum(count(*)) over() from MyTable group by Grade
This method is the most efficient, using the "over()" function to calculate the percentage based on the entire data set.
Method 2: Universal Applicability
select Grade, count(*) * 100.0 / (select count(*) from MyTable) from MyTable group by Grade;
This method works with any SQL version, regardless of whether it supports the "over()" function. It calculates the percentage based on the total number of rows in the table.
Method 3: Common Table Expression (CTE)
with t(Grade, GradeCount) as ( select Grade, count(*) from MyTable group by Grade ) select Grade, GradeCount * 100.0/(select sum(GradeCount) from t) from t;
This method is less efficient than the previous two, but may be more useful in more complex calculations. It utilizes CTE to calculate grade counts and percentages independently.
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