oracle分析函数

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来源:http://www.cnblogs.com/linjiqin/archive/2012/04/04/2431975.html


一、Oracle分析函数入门

分析函数是什么?
分析函数是Oracle专门用于解决复杂报表统计需求的功能强大的函数,它可以在数据中进行分组然后计算基于组的某种统计值,并且每一组的每一行都可以返回一个统计值。

          

分析函数和聚合函数的不同之处是什么?
普通的聚合函数用group by分组,每个分组返回一个统计值,而分析函数采用partition by分组,并且每组每行都可以返回一个统计值。

              

分析函数的形式
分析函数带有一个开窗函数over(),包含三个分析子句:分组(partition by), 排序(order by), 窗口(rows) ,他们的使用形式如下:over(partition by xxx order by yyy rows between zzz)。
注:窗口子句在这里我只说rows方式的窗口,range方式和滑动窗口也不提

    

分析函数例子(在scott用户下模拟)

示例目的:显示各部门员工的工资,并附带显示该部分的最高工资。

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--显示各部门员工的工资,并附带显示该部分的最高工资。SELECT E.DEPTNO,       E.EMPNO,       E.ENAME,       E.SAL,       LAST_VALUE(E.SAL)        OVER(PARTITION BY E.DEPTNO             ORDER BY E.SAL ROWS             --unbounded preceding and unbouned following针对当前所有记录的前一条、后一条记录,也就是表中的所有记录            --unbounded:不受控制的,无限的            --preceding:在...之前            --following:在...之后            BETWEEN UNBOUNDED PRECEDING AND UNBOUNDED FOLLOWING) MAX_SAL  FROM EMP E;
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运行结果:


               

示例目的:按照deptno分组,然后计算每组值的总和

SELECT EMPNO,       ENAME,       DEPTNO,       SAL,       SUM(SAL) OVER(PARTITION BY DEPTNO ORDER BY ENAME) max_sal  FROM SCOTT.EMP;

运行结果:


     

示例目的:对各部门进行分组,并附带显示第一行至当前行的汇总

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SELECT EMPNO,       ENAME,       DEPTNO,       SAL,       --注意ROWS BETWEEN unbounded preceding AND current row  是指第一行至当前行的汇总       SUM(SAL) OVER(PARTITION BY DEPTNO                      ORDER BY ENAME                      ROWS BETWEEN UNBOUNDED PRECEDING AND CURRENT ROW) max_sal  FROM SCOTT.EMP;
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运行结果:


   

示例目标:当前行至最后一行的汇总

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SELECT EMPNO,       ENAME,       DEPTNO,       SAL,       --注意ROWS BETWEEN current row AND unbounded following 指当前行到最后一行的汇总       SUM(SAL) OVER(PARTITION BY DEPTNO                      ORDER BY ENAME                      ROWS BETWEEN CURRENT ROW AND UNBOUNDED FOLLOWING) max_sal  FROM SCOTT.EMP;
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运行结果:

   

 示例目标:当前行的上一行(rownum-1)到当前行的汇总

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SELECT EMPNO,       ENAME,       DEPTNO,       SAL,       --注意ROWS BETWEEN 1 preceding AND current row 是指当前行的上一行(rownum-1)到当前行的汇总        SUM(SAL) OVER(PARTITION BY DEPTNO                      ORDER BY ENAME ROWS                      BETWEEN 1 PRECEDING AND CURRENT ROW) max_sal  FROM SCOTT.EMP;
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运行结果:

    

示例目标:   当前行的上一行(rownum-1)到当前行的下辆行(rownum+2)的汇总     

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SELECT EMPNO,       ENAME,       DEPTNO,       SAL,       --注意ROWS BETWEEN 1 preceding AND 1 following 是指当前行的上一行(rownum-1)到当前行的下辆行(rownum+2)的汇总       SUM(SAL) OVER(PARTITION BY DEPTNO                      ORDER BY ENAME                      ROWS BETWEEN 1 PRECEDING AND 2 FOLLOWING) max_sal  FROM SCOTT.EMP;
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运行结果:

      

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二、理解over()函数

1.1、两个order by的执行时机
分析函数是在整个sql查询结束后(sql语句中的order by的执行比较特殊)再进行的操作, 也就是说sql语句中的order by也会影响分析函数的执行结果:

a) 两者一致:如果sql语句中的order by满足分析函数分析时要求的排序,那么sql语句中的排序将先执行,分析函数在分析时就不必再排序
b) 两者不一致:如果sql语句中的order by不满足分析函数分析时要求的排序,那么sql语句中的排序将最后在分析函数分析结束后执行排序

           

1.2、分析函数中的分组/排序/窗口
      分析函数包含三个分析子句:分组(partition by), 排序(order by), 窗口(rows)
      窗口就是分析函数分析时要处理的数据范围,就拿sum来说,它是sum窗口中的记录而不是整个分组中的记录,因此我们在想得到某个栏位的累计值时,我们需要把窗口指定到该分组中的第一行数据到当前行, 如果你指定该窗口从该分组中的第一行到最后一行,那么该组中的每一个sum值都会一样,即整个组的总和。

      窗口子句在这里我只说rows方式的窗口,range方式和滑动窗口也不提。
      窗口子句中我们经常用到指定第一行,当前行,最后一行这样的三个属性。
第一行是 unbounded preceding,
当前行是 current row,
最后一行是 unbounded following,
窗口子句不能单独出现,必须有order by子句时才能出现,如:

last_value(sal) over(partition by deptno                      order by sal                      rows between unbounded preceding and unbounded following)

以上示例指定窗口为整个分组。而出现order by子句的时候,不一定要有窗口子句,但效果会很不一样,此时的窗口默认是当前组的第一行到当前行!

 

当省略窗口子句时:
a) 如果存在order by则默认的窗口是unbounded preceding and current row  --当前组的第一行到当前行
b) 如果同时省略order by则默认的窗口是unbounded preceding and unbounded following  --整个组

             
如果省略分组,则把全部记录当成一个组:
a) 如果存在order by则默认窗口是unbounded preceding and current row   --当前组的第一行到当前行
b) 如果这时省略order by则窗口默认为unbounded preceding and unbounded following  --整个组

     

1.3、帮助理解over()的实例

例1:关注点:sql无排序,over()排序子句省略

SELECT DEPTNO, EMPNO, ENAME, SAL,        LAST_VALUE(SAL) OVER(PARTITION BY DEPTNO)FROM EMP;

运行结果:

 


       

例2:关注点:sql无排序,over()排序子句有,窗口省略

 

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SELECT DEPTNO,       EMPNO,       ENAME,       SAL,       LAST_VALUE(SAL) OVER(PARTITION BY DEPTNO                             ORDER BY SAL DESC)  FROM EMP;
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运行结果:

 


                  
例3:关注点:sql无排序,over()排序子句有,窗口也有,窗口特意强调全组数据

 

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SELECT DEPTNO,       EMPNO,       ENAME,       SAL,       LAST_VALUE(SAL)        OVER(PARTITION BY DEPTNO             ORDER BY SAL             ROWS BETWEEN UNBOUNDED PRECEDING AND UNBOUNDED FOLLOWING) MAX_SAL  FROM EMP;
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运行结果:

 


     
例4:关注点:sql有排序(正序),over()排序子句无,先做sql排序再进行分析函数运算

 

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SELECT DEPTNO,       MGR,       ENAME,       SAL,       HIREDATE,       LAST_VALUE(SAL) OVER(PARTITION BY DEPTNO) LAST_VALUE  FROM EMP WHERE DEPTNO = 30 ORDER BY DEPTNO, MGR;
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运行结果:

 


 



例5:关注点:sql有排序(倒序),over()排序子句无,先做sql排序再进行分析函数运算

 

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SELECT DEPTNO,       MGR,       ENAME,       SAL,       HIREDATE,       LAST_VALUE(SAL) OVER(PARTITION BY DEPTNO) LAST_VALUE  FROM EMP WHERE DEPTNO = 30 ORDER BY DEPTNO, MGR DESC;
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运行结果:


                

例6:关注点:sql有排序(倒序),over()排序子句有,窗口子句无,此时的运算是:sql先选数据但是不排序,而后排序子句先排序并进行分析函数处理(窗口默认为第一行到当前行),最后再进行sql排序

 

 

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SELECT DEPTNO,       MGR,       ENAME,       SAL,       HIREDATE,       MIN(SAL) OVER(PARTITION BY DEPTNO ORDER BY SAL ASC) LAST_VALUE  FROM EMP WHERE DEPTNO = 30 ORDER BY DEPTNO, MGR DESC;
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运行结果:


 

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SELECT DEPTNO,       MGR,       ENAME,       SAL,       HIREDATE,       MIN(SAL) OVER(PARTITION BY DEPTNO ORDER BY SAL DESC) LAST_VALUE  FROM EMP WHERE DEPTNO = 30 ORDER BY DEPTNO, MGR DESC;
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运行结果:


              

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三、常见分析函数详解

为了方便进行实践,特将演示表和数据罗列如下:

一、创建表

create table t(    bill_month varchar2(12) ,    area_code number,    net_type varchar(2),    local_fare number );

      

二、插入数据

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insert into t values('200405',5761,'G', 7393344.04); insert into t values('200405',5761,'J', 5667089.85); insert into t values('200405',5762,'G', 6315075.96); insert into t values('200405',5762,'J', 6328716.15); insert into t values('200405',5763,'G', 8861742.59); insert into t values('200405',5763,'J', 7788036.32); insert into t values('200405',5764,'G', 6028670.45); insert into t values('200405',5764,'J', 6459121.49); insert into t values('200405',5765,'G', 13156065.77); insert into t values('200405',5765,'J', 11901671.70); insert into t values('200406',5761,'G', 7614587.96); insert into t values('200406',5761,'J', 5704343.05); insert into t values('200406',5762,'G', 6556992.60); insert into t values('200406',5762,'J', 6238068.05); insert into t values('200406',5763,'G', 9130055.46); insert into t values('200406',5763,'J', 7990460.25); insert into t values('200406',5764,'G', 6387706.01); insert into t values('200406',5764,'J', 6907481.66); insert into t values('200406',5765,'G', 13562968.81); insert into t values('200406',5765,'J', 12495492.50); insert into t values('200407',5761,'G', 7987050.65); insert into t values('200407',5761,'J', 5723215.28); insert into t values('200407',5762,'G', 6833096.68); insert into t values('200407',5762,'J', 6391201.44); insert into t values('200407',5763,'G', 9410815.91); insert into t values('200407',5763,'J', 8076677.41); insert into t values('200407',5764,'G', 6456433.23); insert into t values('200407',5764,'J', 6987660.53); insert into t values('200407',5765,'G', 14000101.20); insert into t values('200407',5765,'J', 12301780.20); insert into t values('200408',5761,'G', 8085170.84); insert into t values('200408',5761,'J', 6050611.37); insert into t values('200408',5762,'G', 6854584.22); insert into t values('200408',5762,'J', 6521884.50); insert into t values('200408',5763,'G', 9468707.65); insert into t values('200408',5763,'J', 8460049.43); insert into t values('200408',5764,'G', 6587559.23); insert into t values('200408',5764,'J', 7342135.86); insert into t values('200408',5765,'G', 14450586.63); insert into t values('200408',5765,'J', 12680052.38); commit;
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三、first_value()与last_value():求最值对应的其他属性
问题、取出每月通话费最高和最低的两个地区。

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SELECT BILL_MONTH,        AREA_CODE,       SUM(LOCAL_FARE) LOCAL_FARE,        FIRST_VALUE(AREA_CODE)        OVER(PARTITION BY BILL_MONTH             ORDER BY SUM(LOCAL_FARE) DESC             ROWS BETWEEN UNBOUNDED PRECEDING AND UNBOUNDED FOLLOWING) FIRSTVAL,        LAST_VALUE(AREA_CODE)        OVER(PARTITION BY BILL_MONTH             ORDER BY SUM(LOCAL_FARE) DESC             ROWS BETWEEN UNBOUNDED PRECEDING AND UNBOUNDED FOLLOWING) LASTVAL   FROM T  GROUP BY BILL_MONTH, AREA_CODE  ORDER BY BILL_MONTH
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运行结果:


   

四、rank(),dense_rank()与row_number():求排序

rank,dense_rank,row_number函数为每条记录产生一个从1开始至n的自然数,n的值可能小于等于记录的总数。这3个函数的唯一区别在于当碰到相同数据时的排名策略
①row_number:
row_number函数返回一个唯一的值,当碰到相同数据时,排名按照记录集中记录的顺序依次递增
②dense_rank:
dense_rank函数返回一个唯一的值,当碰到相同数据时,此时所有相同数据的排名都是一样的
③rank:
rank函数返回一个唯一的值,当碰到相同的数据时,此时所有相同数据的排名是一样的,同时会在最后一条相同记录和下一条不同记录的排名之间空出排名

          

演示数据在Oracle自带的scott用户下:
1、rank()值相同时排名相同,其后排名跳跃不连续

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SELECT *   FROM (SELECT DEPTNO,                RANK() OVER(PARTITION BY DEPTNO ORDER BY SAL DESC) RW,                ENAME,               SAL          FROM SCOTT.EMP)  WHERE RW <= 4;
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运行结果:


2、dense_rank()值相同时排名相同,其后排名连续不跳跃

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SELECT *   FROM (SELECT DEPTNO,                DENSE_RANK() OVER(PARTITION BY DEPTNO ORDER BY SAL DESC) RW,                ENAME,               SAL          FROM SCOTT.EMP)  WHERE RW <= 4;
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运行结果:


3、row_number()值相同时排名不相等,其后排名连续不跳跃

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SELECT *   FROM (SELECT DEPTNO,                ROW_NUMBER() OVER(PARTITION BY DEPTNO ORDER BY SAL DESC) RW,                ENAME,               SAL          FROM SCOTT.EMP)  WHERE RW <= 4;
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运行结果:


 

五、lag()与lead():求之前或之后的第N行
lag和lead函数可以在一次查询中取出同一字段的前n行的数据和后n行的值。这种操作可以使用对相同表的表连接来实现,不过使用lag和lead有更高的效率。
lag(arg1,arg2,arg3)
第一个参数是列名,
第二个参数是偏移的offset,
第三个参数是超出记录窗口时的默认值。
  
举例如下:
SQL> select *  from kkk;                                         
                                                                 
        ID NAME                                                  
---------- --------------------                                  
         1 1name                                                 
         2 2name                                                 
         3 3name                                                 
         4 4name                                                 
         5 5name                                                 
SQL> select id,name,lag(name,1,0) over(order by id) from kkk;
                                                                 
        ID NAME                 LAG(NAME,1,0)OVER(ORDERBYID)     
---------- -------------------- ----------------------------     
         1 1name                0                                
         2 2name                1name                            
         3 3name                2name                            
         4 4name                3name                            
         5 5name                4name

SQL> select id,name,lead(name,1,0) over(order by id) from kkk;
                                                                 
        ID NAME                 LEAD(NAME,1,0)OVER(ORDERBYID)    
---------- -------------------- -----------------------------    
         1 1name                2name                            
         2 2name                3name                            
         3 3name                4name                            
         4 4name                5name                            
         5 5name                0

SQL> select id,name,lead(name,2,0) over(order by id) from kkk;                                                                                                              
        ID NAME                 LEAD(NAME,2,0)OVER(ORDERBYID)    
---------- -------------------- -----------------------------    
         1 1name                3name                            
         2 2name                4name                            
         3 3name                5name                            
         4 4name                0                                
         5 5name                0 
SQL> select id,name,lead(name,1,'linjiqin') over(order by id) from kkk;                                 
                                                                                 
        ID NAME                 LEAD(NAME,1,'ALSDFJLASDJFSAF')                   
---------- -------------------- ------------------------------                   
         1 1name                2name                                            
         2 2name                3name                                            
         3 3name                4name                                            
         4 4name                5name                                            
         5 5name                linjiqin  

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六、rollup()与cube():排列组合分组
1)、group by rollup(a, b, c):
首先会对(a、b、c)进行group by,
然后再对(a、b)进行group by,
其后再对(a)进行group by,
最后对全表进行汇总操作。

     

2)、group by cube(a, b, c):
则首先会对(a、b、c)进行group by,
然后依次是(a、b),(a、c),(a),(b、c),(b),(c),
最后对全表进行汇总操作。

   

1、生成演示数据:
Connected to Oracle Database 10g Enterprise Edition Release 10.2.0.1.0
Connected as ds_trade
 
SQL> conn system/oracle as sysdba
Connected to Oracle Database 10g Enterprise Edition Release 10.2.0.3.0
Connected as SYS
 
SQL> create table scott.t as select * from dba_indexes;
 
Table created
 
 
SQL> connect scott/oracle
Connected to Oracle Database 10g Enterprise Edition Release 10.2.0.3.0
Connected as scott
 
SQL>

    

2、普通group by体验
sql> select owner, index_type, status, count(*) from t where owner like 'SY%' group by owner, index_type, status;


3、group by rollup(A,B,C)
GROUP BY ROLLUP(A, B, C):
首先会对(A、B、C)进行GROUP BY,
然后再对(A、B)进行GROUP BY,
其后再对(A)进行GROUP BY,
最后对全表进行汇总操作。
sql> select owner, index_type, status, count(*) from t where owner like 'SY%' group by ROLLUP(owner, index_type, status);


4、group by cube(A,B,C)
GROUP BY CUBE(A, B, C):
则首先会对(A、B、C)进行GROUP BY,
然后依次是(A、B),(A、C),(A),(B、C),(B),(C),
最后对全表进行汇总操作。

sql> select owner, index_type, status, count(*) from t where owner like 'SY%' group by cube(owner, index_type, status);


  

七、max(),min(),sun()与avg():求移动的最值总和与平均值
问题:计算出各个地区连续3个月的通话费用的平均数(移动平均值)

 

复制代码
SELECT AREA_CODE,        BILL_MONTH,       LOCAL_FARE,       SUM(LOCAL_FARE) OVER(PARTITION BY AREA_CODE                             ORDER BY TO_NUMBER(BILL_MONTH)                             RANGE BETWEEN 1 PRECEDING AND 1 FOLLOWING) "3month_sum",        AVG(LOCAL_FARE) OVER(PARTITION BY AREA_CODE                             ORDER BY TO_NUMBER(BILL_MONTH)                             RANGE BETWEEN 1 PRECEDING AND 1 FOLLOWING) "3month_avg",        MAX(LOCAL_FARE) OVER(PARTITION BY AREA_CODE                             ORDER BY TO_NUMBER(BILL_MONTH)                             RANGE BETWEEN 1 PRECEDING AND 1 FOLLOWING) "3month_max",        MIN(LOCAL_FARE) OVER(PARTITION BY AREA_CODE                             ORDER BY TO_NUMBER(BILL_MONTH)                             RANGE BETWEEN 1 PRECEDING AND 1 FOLLOWING) "3month_min"   FROM (SELECT T.AREA_CODE, T.BILL_MONTH, SUM(T.LOCAL_FARE) LOCAL_FARE           FROM T          GROUP BY T.AREA_CODE, T.BILL_MONTH)
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运行结果:


  

问题:求各地区按月份累加的通话费

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SELECT AREA_CODE,        BILL_MONTH,       LOCAL_FARE,       SUM(LOCAL_FARE) OVER(PARTITION BY AREA_CODE                             ORDER BY BILL_MONTH ASC) "last_sum_value"   FROM (SELECT T.AREA_CODE, T.BILL_MONTH, SUM(T.LOCAL_FARE) LOCAL_FARE           FROM T          GROUP BY T.AREA_CODE, T.BILL_MONTH)  ORDER BY AREA_CODE, BILL_MONTH
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运行结果:


 

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