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  • SQL Server 类似正则表达式的字符处理问题

    SQL Serve提供了简单的字符模糊匹配功能,比如:like, patindex,不过对于某些字符处理场景还显得并不足够,日常碰到的几个问题有:

    • 1. 同一个字符/字符串,出现了多少次
    • 2. 同一个字符,第N次出现的位置
    • 3. 多个相同字符连续,合并为一个字符
    • 4. 是否为有效IP/身份证号/手机号等
    • 5. 去除所有数字/字母

     

    同一个字符/字符串,出现了多少次

    同一个字符,将其替换为空串,即可计算

    declare @text varchar(1000)
    declare @str  varchar(10)
    set @text = 'ABCBDBE'
    set @str = 'B'
    
    select len(@text) - len(replace(@text,@str,''))

    同一个字符串,仍然是替换,因为是多个字符,方法1替换后需要做一次除法;方法2替换时增加一个字符,则不需要

    --方法1
    declare @text varchar(1000)
    declare @str  varchar(10)
    set @text = 'ABBBCBBBDBBBE'
    set @str = 'BBB'
    
    select (len(@text) - len(replace(@text,@str,'')))/len(@str)
    
    --方法2
    declare @text varchar(1000)
    declare @str  varchar(10)
    set @text = 'ABBBCBBBDBBBE'
    set @str = 'BBB'
    
    select len(replace(@text,@str,@str+'_')) - len(@text)

    同一个字符/字符串,第N次出现的位置

    SQL SERVER定位字符位置的函数为CHARINDEX:

    CHARINDEX ( expressionToFind , expressionToSearch [ , start_location ] )

    可以从指定位置起开始检索,但是不能取第N次出现的位置,需要自己写SQL来补充,有以下几种思路:

    1. 自定义函数, 循环中每次为charindex加一个计数,直到为N

    if object_id('NthChar','FN') is not null
        drop function Nthchar
    GO
    
    create function NthChar
    (
    @source_string as nvarchar(4000), 
    @sub_string    as nvarchar(1024),
    @nth           as int
    ) 
    returns int 
    as 
    begin 
        declare @postion int 
        declare @count   int 
    
        set @postion = CHARINDEX(@sub_string, @source_string) 
        set @count = 0 
      
        while @postion > 0 
        begin 
            set @count = @count + 1 
            if @count = @nth 
            begin 
                break 
            end
            set @postion = CHARINDEX(@sub_string, @source_string, @postion + 1) 
        End 
        return @postion 
    end 
    GO
    
    --select dbo.NthChar('abcabc','abc',2)
    --4

    2. 通过CTE,对待处理的整个表字段操作, 递归中每次为charindex加一个计数,直到为N

    if  object_id('tempdb..#T') is not null
        drop table #T
    
    create table #T
    (
    source_string nvarchar(4000)
    )
    
    insert into #T values (N'我们我们')
    insert into #T values (N'我我哦我')
    
    declare @sub_string nvarchar(1024)
    declare @nth        int
    set @sub_string = N'我们'
    set @nth = 2
    
    ;with T(source_string, starts, pos, nth) 
    as (
        select source_string, 1, charindex(@sub_string, source_string), 1 from #t
        union all
        select source_string, pos + 1, charindex(@sub_string, source_string, pos + 1), nth+1 from T
        where pos > 0
    )
    select 
        source_string, pos, nth
    from T
    where pos <> 0
      and nth = @nth
    order by source_string, starts
    
    --source_string    pos    nth
    --我们我们    3    2

    3. 借助数字表 (tally table),到不同起点位置去做charindex,需要先自己构造个数字表

    --numbers/tally table
    IF EXISTS (select * from dbo.sysobjects where id = object_id(N'[dbo].[Numbers]') and OBJECTPROPERTY(id, N'IsUserTable') = 1)
        DROP TABLE dbo.Numbers
    
    --===== Create and populate the Tally table on the fly
     SELECT TOP 1000000 
            IDENTITY(int,1,1) AS number
       INTO dbo.Numbers
       FROM master.dbo.syscolumns sc1,
            master.dbo.syscolumns sc2
    
    --===== Add a Primary Key to maximize performance
      ALTER TABLE dbo.Numbers
            ADD CONSTRAINT PK_numbers_number PRIMARY KEY CLUSTERED (number)
    
    --===== Allow the general public to use it
      GRANT SELECT ON dbo.Numbers TO PUBLIC
    
    --以上数字表创建一次即可,不需要每次都重复创建
    
    DECLARE @source_string    nvarchar(4000), 
            @sub_string       nvarchar(1024), 
            @nth              int
    SET @source_string = 'abcabcvvvvabc'
    SET @sub_string = 'abc'
    SET @nth = 2 
    
    ;WITH T 
    AS
    (            
    SELECT ROW_NUMBER() OVER(ORDER BY number) AS nth,
           number AS [Position In String]
      FROM dbo.Numbers n 
     WHERE n.number <= LEN(@source_string)    
       AND CHARINDEX(@sub_string, @source_string, n.number)-number = 0
       ----OR
       --AND SUBSTRING(@source_string,number,LEN(@sub_string)) = @sub_string
    ) 
    SELECT * FROM T WHERE nth = @nth

    4. 通过CROSS APPLY结合charindex,适用于N值较小的时候,因为CROSS APPLY的次数要随着N的变大而增加,语句也要做相应的修改

    declare @T table
    (
    source_string nvarchar(4000)
    )
    
    insert into @T values
    ('abcabc'),
    ('abcabcvvvvabc')
    
    declare @sub_string nvarchar(1024)
    set @sub_string = 'abc'
    
    select source_string,
           p1.pos as no1,
           p2.pos as no2,
           p3.pos as no3
    from @T
    cross apply (select (charindex(@sub_string, source_string))) as P1(Pos)
    cross apply (select (charindex(@sub_string, source_string, P1.Pos+1))) as P2(Pos)
    cross apply (select (charindex(@sub_string, source_string, P2.Pos+1))) as P3(Pos)

    5. 在SSIS里有内置的函数,但T-SQL中并没有

    --FINDSTRING in SQL Server 2005 SSIS
    FINDSTRING([yourColumn], "|", 2),
    
    --TOKEN in SQL Server 2012 SSIS
    TOKEN(Col1,"|",3)

    注:不难发现,这些方法和字符串拆分的逻辑是类似的,只不过一个是定位,一个是截取,如果要获取第N个字符左右的一个/多个字符,有了N的位置,再结合substring去截取即可;

    多个相同字符连续,合并为一个字符

    最常见的就是把多个连续的空格合并为一个空格,解决思路有两个:

    1. 比较容易想到的就是用多个replace

    但是究竟需要replace多少次并不确定,所以还得循环多次才行

    --把两个连续空格替换成一个空格,然后循环,直到charindex检查不到两个连续空格
    declare @str varchar(100)
    set @str='abc        abc     kljlk     kljkl'
    while(charindex('  ',@str)>0)
    begin
        select @str=replace(@str,'  ',' ')
    end
    select @str

    2. 按照空格把字符串拆开

    对每一段拆分开的字符串trim或者replace后,再用一个空格连接,有点繁琐,没写代码示例,如何拆分字符串可参考:“第N次出现的位置”;

    是否为有效IP/身份证号/手机号等

    类似IP/身份证号/手机号等这些字符串,往往都有自身特定的规律,通过substring去逐位或逐段判断是可以的,但SQL语句的方式往往性能不佳,建议尝试正则函数,见下。

    去除所有数字/字母

    上面定位第N个字符的方式也都可以尝试使用,只是在定位的同时将数字/字母替换掉即可;

    另外也可以通过模糊匹配来做:

    --去除所有非数字
    declare @pos smallint
    declare @string varchar(100)
    
    set @string = '1109A><":{$%^&*4DSE2@!~$%^&567KJHGT'
    
    --如果是1102e53这样的字符串,会被isnumeric认为是科学计数法数字,加上e0就会返回0
    --如果是普通数字,加上e0也不会影响返回1
    while isnumeric(@string+'e0') = 0 --也可同下用patindex判断
    begin
        set @pos = (select patindex('%[^0-9]%',@string))
        set @string = (select replace(@string,substring(@string,@pos,1),''))
    end
    
    select @string
    
    --去除所有数字
    declare @pos smallint
    declare @string varchar(100)
    
    set @string = '1109A><":{$%^&*4DSE2@!~$%^&567KJHGT'
    
    while patindex('%[0-9]%',@string) > 0
    begin
        set @pos = (select patindex('%[0-9]%',@string))
        set @string = (select replace(@string,substring(@string,@pos,1),''))
    end
    
    select @string
    
    --去除所有字母
    declare @pos smallint
    declare @string varchar(100)
    
    set @string = '1109A><":{$%^&*4DSE2@!~$%^&567KJHGT'
    
    while patindex('%[A-Za-z]%',@string) > 0
    begin
        set @pos = (select patindex('%[A-Za-z]%',@string))
        set @string = (select replace(@string,substring(@string,@pos,1),''))
    end
    
    select @string

    正则表达式函数

    1. Oracle

    从10g开始,可以在查询中使用正则表达式,它通过一些支持正则表达式的函数来实现:

    Oracle 10 g

    REGEXP_LIKE

    REGEXP_REPLACE

    REGEXP_INSTR

    REGEXP_SUBSTR

    Oracle 11g (新增)

    REGEXP_COUNT

    Oracle用REGEXP函数处理上面几个问题:

    (1) 同一个字符/字符串,出现了多少次

    select length(regexp_replace('123-345-566', '[^-]', '')) from dual;
    select REGEXP_COUNT('123-345-566', '-') from dual; --Oracle 11g

    (2) 同一个字符/字符串,第N次出现的位置

    不需要正则,ORACLE的instr可以直接查找位置:

    instr('source_string','sub_string' [,n][,m])

    n表示从第n个字符开始搜索,缺省值为1,m表示第m次出现,缺省值为1。

    select instr('abcdefghijkabc','abc', 1, 2) position from dual; 

    (3) 多个相同字符连续,合并为一个字符

    select regexp_replace(trim('agc f   f  '),'s+',' ') from dual;

    (4) 是否为有效IP/身份证号/手机号等

    --是否为有效IP
    WITH IP
    AS(
    SELECT '10.20.30.40' ip_address FROM dual UNION ALL
    SELECT 'a.b.c.d' ip_address FROM dual UNION ALL
    SELECT '256.123.0.254' ip_address FROM dual UNION ALL
    SELECT '255.255.255.255' ip_address FROM dual
    )
    SELECT *
    FROM IP
    WHERE REGEXP_LIKE(ip_address, '^(([0-9]{1}|[0-9][0-9]|1[0-9][0-9]|2[0-4][0-9]|25[0-5]).){3}([0-9]{1}|[0-9][0-9]|1[0-9][0-9]|2[0-4][0-9]|25[0-5])$');
    --是否为有效身份证/手机号,暂未举例

    (5) 去除所有数字/字母

    --去除非数字
    SELECT regex_replace('1109A><":{$%^&*4DSE2@!~$%^&567KJHGT','[^0-9]','') FROM dual;
    
    --去除数字
    SELECT regex_replace('1109A><":{$%^&*4DSE2@!~$%^&567KJHGT','[0-9]','') FROM dual;
    
    --去除字母
    SELECT regex_replace('1109A><":{$%^&*4DSE2@!~$%^&567KJHGT','[A-Za-z]','') FROM dual;

    2. SQL Server

    目前最新版本为SQL Server 2017,还没有对REGEXP函数的支持,需要通用CLR来扩展,如下为CLR实现REG_REPLACE:

    --1. 开启 CLR 
    EXEC sp_configure 'show advanced options' , '1'
    GO
    RECONFIGURE
    GO
    EXEC sp_configure 'clr enabled' , '1'
    GO
    RECONFIGURE
    GO
    EXEC sp_configure 'show advanced options' , '0';
    GO
    --首次创建时,应该是从dll文件创建
    --CREATE ASSEMBLY [RegexUtility] FROM 'C:xxxxxxx.dll'
    --GO
    
    --创建好后,可以生成脚本出来部署到其他支持CLR的SQL Server上
    CREATE ASSEMBLY [RegexUtility]
    FROM 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    WITH PERMISSION_SET = SAFE
    
    GO
    View Code
    --3. 创建 CLR 函数
    CREATE FUNCTION [dbo].[regex_replace](@input [nvarchar](4000), @pattern [nvarchar](4000), @replacement [nvarchar](4000))
    RETURNS [nvarchar](4000) WITH EXECUTE AS CALLER, RETURNS NULL ON NULL INPUT
    AS 
    EXTERNAL NAME [RegexUtility].[RegexUtility].[RegexReplaceDefault]
    GO
    --4. 使用regex_replace替换多个空格为一个空格
    select dbo.regex_replace('agc f   f  ','s+',' ');
    --5. 使用regex_replace去除数字/字母
    --去除非数字
    select dbo.regex_replace('1109A><":{$%^&*4DSE2@!~$%^&567KJHGT','[^0-9]','');
    
    --去除数字
    select dbo.regex_replace('1109A><":{$%^&*4DSE2@!~$%^&567KJHGT','[0-9]','');
    
    --去除字母
    select dbo.regex_replace('1109A><":{$%^&*4DSE2@!~$%^&567KJHGT','[A-Za-z]','');
     

    注:通过CLR实现更多REGEXP函数,如果有高级语言开发能力,可以自行开发;或者直接使用一些开源贡献也行,比如:http://devnambi.com/2016/sql-server-regex/

    简单的正则表达式符号使用说明:

    f -> 匹配一个换页

    -> 匹配一个换行符

    -> 匹配一个回车符

    -> 匹配一个制表符

    v -> 匹配一个垂直制表符

    s 匹配任何空白字符,包括空格、制表符、换页符等等, 等价于[ f v]

    s+ 匹配任意多个空白字符

    S 匹配非空白字符

     

    ^ 匹配最前边的字符

    $ 与^类似,匹配最末的字符

    + 匹配+号前面的字符1次或n次.等价于{1,}

    * 匹配*前面的字符0次或n次

    ? 匹配?前面的字符0次或1次

    . (小数点)匹配除换行符外的所有单个的字符

     

    小结:

    1. 非正则SQL语句的思路,对不同数据库往往都适用;

    2. 正则表达式中的规则(pattern) 在不同开发语言里,有很多语法是相通的,通常是遵守perl或者linux shell中的sed等工具的规则;

    3. 从性能上来看,非循环写法的通用SQL判断 > REGEXP函数 > 自定义SQL函数;

    4. SQL SERVER 除了CLR的方式扩展正则表达式函数,也可以开启OLE Automation通过VBS来扩展正式表达式函数,曾经测试过性能,比CLR要差很多。

    参考:

    regular expression enhancements in 11g

    http://www.oracle-developer.net/display.php?id=508

    Using Regular Expressions With Oracle Database

    https://docs.oracle.com/cd/B12037_01/appdev.101/b10795/adfns_re.htm

    Replace non numeric characters in string

    https://www.sqlservercentral.com/Forums/Topic470379-338-1.aspx

    IsNumeric, IsInt, IsNumber

    https://www.tek-tips.com/faqs.cfm?fid=6423

     原文

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  • 原文地址:https://www.cnblogs.com/VicLiu/p/11770969.html
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