lead
This function is used to return the value of the nth row downwards within a specified window.
Restrictions
The restrictions on using window functions are as follows:
- Window functions can be used only in select statements.
- Window functions and aggregate functions cannot be nested in window functions.
- Window functions cannot be used together with aggregate functions of the same level.
Syntax
lead(<expr>[, bigint <offset>[, <default>]]) over([partition_clause] orderby_clause)
Parameters
Parameter |
Mandatory |
Description |
---|---|---|
expr |
Yes |
Expression whose return result is to be calculated |
offset |
No |
Offset. It is a constant of the BIGINT type and its value is greater than or equal to 0. The value 0 indicates the current row, the value 1 indicates the previous row, and so on. The default value is 1. If the input value is of the STRING or DOUBLE type, it is implicitly converted to the BIGINT type before calculation. |
default |
Yes |
Constant. The default value is NULL. Default value when the range specified by offset is out of range. The value must be the same as the data type corresponding to expr. If expr is non-constant, the evaluation is performed based on the current row. |
partition_clause |
No |
Partition. Rows with the same value in partition columns are considered to be in the same window. |
orderby_clause |
No |
It is used to specify how data is sorted in a window. |
Return Values
The return value is of the data type of the parameter.
Example Code
Example data
create table logs( cookieid string, createtime string, url string ) STORED AS parquet;
Adds the following data:
cookie1 2015-04-10 10:00:02 url2 cookie1 2015-04-10 10:00:00 url1 cookie1 2015-04-10 10:03:04 url3 cookie1 2015-04-10 10:50:05 url6 cookie1 2015-04-10 11:00:00 url7 cookie1 2015-04-10 10:10:00 url4 cookie1 2015-04-10 10:50:01 url5 cookie2 2015-04-10 10:00:02 url22 cookie2 2015-04-10 10:00:00 url11 cookie2 2015-04-10 10:03:04 url33 cookie2 2015-04-10 10:50:05 url66 cookie2 2015-04-10 11:00:00 url77 cookie2 2015-04-10 10:10:00 url44 cookie2 2015-04-10 10:50:01 url55
Groups all records by cookieid, sorts them by createtime in ascending order, and returns the values of the second and first rows downwards within the specified window. An example command is as follows:
SELECT cookieid, createtime, url, LEAD(createtime, 2) OVER(PARTITION BY cookieid ORDER BY createtime) AS next_2_time, LEAD(createtime, 1, '1970-01-01 00:00:00') OVER(PARTITION BY cookieid ORDER BY createtime) AS next_1_time FROM logs; -- Returned result: cookieid createtime url next_2_time next_1_time cookie1 2015-04-10 10:00:00 url1 2015-04-10 10:03:04 2015-04-10 10:00:02 cookie1 2015-04-10 10:00:02 url2 2015-04-10 10:10:00 2015-04-10 10:03:04 cookie1 2015-04-10 10:03:04 url3 2015-04-10 10:50:01 2015-04-10 10:10:00 cookie1 2015-04-10 10:10:00 url4 2015-04-10 10:50:05 2015-04-10 10:50:01 cookie1 2015-04-10 10:50:01 url5 2015-04-10 11:00:00 2015-04-10 10:50:05 cookie1 2015-04-10 10:50:05 url6 NULL 2015-04-10 11:00:00 cookie1 2015-04-10 11:00:00 url7 NULL 1970-01-01 00:00:00 cookie2 2015-04-10 10:00:00 url11 2015-04-10 10:03:04 2015-04-10 10:00:02 cookie2 2015-04-10 10:00:02 url22 2015-04-10 10:10:00 2015-04-10 10:03:04 cookie2 2015-04-10 10:03:04 url33 2015-04-10 10:50:01 2015-04-10 10:10:00 cookie2 2015-04-10 10:10:00 url44 2015-04-10 10:50:05 2015-04-10 10:50:01 cookie2 2015-04-10 10:50:01 url55 2015-04-10 11:00:00 2015-04-10 10:50:05 cookie2 2015-04-10 10:50:05 url66 NULL 2015-04-10 11:00:00 cookie2 2015-04-10 11:00:00 url77 NULL 1970-01-01 00:00:00
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