


How Can I Simulate the LAG Function in MySQL to Calculate Differences Between Consecutive Rows?
Simulate the LAG function in MySQL
There is no direct LAG function in MySQL, but we can cleverly use user-defined variables to simulate its function and calculate the difference between consecutive rows.
Suppose we have the following table:
<code>| time | company | quote | +---------------------+---------+-------+ | 0000-00-00 00:00:00 | GOOGLE | 40 | | 2012-07-02 21:28:05 | GOOGLE | 60 | | 2012-07-02 21:28:51 | SAP | 60 | | 2012-07-02 21:29:05 | SAP | 20 |</code>
We can simulate the LAG function using the following query:
SET @quot=-1; SELECT time, company, @quot AS lag_quote, @quot:=quote AS curr_quote FROM stocks ORDER BY company, time;
This query:
- Initialize user-defined variable
@quot
to -1. - Calculate the difference between the current row
quote
and the previous row'squote
(although the difference is not calculated directly here, but how to get the previous row of data is shown). - Store the current row's
quote
value into@quot
for use in the next iteration.
Format results
To get the desired format:
<code>GOOGLE | 20 SAP | 40</code>
We can use nested subqueries:
SET @quot=0,@latest=0,company=''; SELECT B.* FROM ( SELECT A.time, A.change, IF(@comp=A.company, 0, 1) AS LATEST, @comp:=A.company AS company FROM ( SELECT time, company, quote - @quot AS change, @quot:=quote AS curr_quote FROM stocks ORDER BY company, time ) A ORDER BY company, time DESC ) B WHERE B.LATEST = 1;
This query:
- Calculate the difference of
quote
and store it in thechange
column. - Use the
IF
statement and the variable@comp
to identify the first row (LATEST=1
) in each company grouping. - Filter the results to include only the first row of each company group.
Conclusion
The above method effectively simulates the LAG function in MySQL, providing a practical and efficient way for the analysis of time series data. It should be noted that the two methods are implemented in slightly different ways. The first one more directly shows how to access the previous row of data, while the second one is more focused on calculating the difference and formatting the output results. Which method you choose depends on your specific needs.
The above is the detailed content of How Can I Simulate the LAG Function in MySQL to Calculate Differences Between Consecutive Rows?. For more information, please follow other related articles on the PHP Chinese website!

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