A simple test of the efficiency of three paging methods
Just compared the larger amount of data and pages at different locations.
Create table:
CREATE TABLE [TestTable] ( [ID] [int] IDENTITY (1, 1) NOT NULL , [FirstName] [nvarchar] (100) COLLATE Chinese_PRC_CI_AS NULL , [LastName] [nvarchar] (100) COLLATE Chinese_PRC_CI_AS NULL , [Country] [nvarchar] (50) COLLATE Chinese_PRC_CI_AS NULL , [Note] [nvarchar] (2000) COLLATE Chinese_PRC_CI_AS NULL ) ON [PRIMARY] GO
Insert data: (1 million)
SET IDENTITY_INSERT TestTable ON declare @i int set @i=1 while @i<=1000000 begin insert into TestTable([id], FirstName, LastName, Country,Note) values(@i, 'FirstName_XXX','LastName_XXX','Country_XXX','Note_XXX') set @i=@i+1 end SET IDENTITY_INSERT TestTable OFF
Paging solution one: (Use Not In and SELECT TOP paging)
Statement form:
SELECT TOP 页大小 * FROM TestTable WHERE (ID NOT IN (SELECT TOP 页大小*页数 id FROM 表 ORDER BY id)) ORDER BY ID
Paging scheme two: (Use ID greater than and SELECT TOP paging)
SELECT TOP 页大小 * FROM TestTable WHERE (ID > (SELECT MAX(id) FROM (SELECT TOP 页大小*页数 id FROM 表 ORDER BY id) AS T)) ORDER BY ID
Paging solution three: (Using SQL cursor stored procedure paging)
create procedure XiaoZhengGe @sqlstr nvarchar(4000), --查询字符串 @currentpage int, --第N页 @pagesize int --每页行数 as set nocount on declare @P1 int, --P1是游标的id @rowcount int exec sp_cursoropen @P1 output,@sqlstr,@scrollopt=1,@ccopt=1,@rowcount=@rowcount output select ceiling(1.0*@rowcount/@pagesize) as 总页数--,@rowcount as 总行数,@currentpage as 当前页 set @currentpage=(@currentpage-1)*@pagesize+1 exec sp_cursorfetch @P1,16,@currentpage,@pagesize exec sp_cursorclose @P1 set nocount off
Test Results:
The tests are all 10 items per page. The three numbers are the time it takes for the three solutions to produce results. The unit is seconds:
Page 2: 18, 10, 29
Page 500: 12, 8, 21
Page 50000: 16, 18, 22
Page 500000: 24, 16, 22
The main purpose of this test is to test the page turning efficiency of different parts of large data volumes. I thought it should be a linear result, but found that the change was strange. After testing several times, the error is within 1 or 2 seconds. It is estimated that SQL Server is also optimized for page turning according to different positions. After looking at the query analysis, the main cost is still order by, which is still the primary key. If it is not the primary key, or it is a string, it will probably be slower.
Because there are other things to be busy with, no further testing has been done. Friends who are interested can continue to do various tests with 100,000 items, no index, and string content. Remember to tell me the results.
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