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Oracle分析函数、多维函数和Model函数简要说明,主要针对BI报表统计

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以下代码均经过测试,可直接运行

Oracle分析函数、多维函数和Model函数简要说明,主要针对BI报表统计,不一定很全面,但对BI应用场景做了少许说明

--创建一张销售数量表,数据趋势是递增的

CREATE TABLE ComputerSales AS   

SELECT

 120+TRUNC(rn/12)+ROUND(DBMS_RANDOM.VALUE(1,10)) SalesNumber

  FROM

  (

    SELECT level,ROWNUM rn

      FROM DUAL

   CONNECT BY ROWNUM<=120

  );

--下面用于比较NULL值和非NULL值的统计,可以看出NULL值情况下的COUNT是存在问题的,所以建议数据库系统中最好不要使用NULL值列

SELECT 

  COUNT(*),

  COUNT(a.SalesNumber),

  COUNT(DISTINCT a.SalesNumber),

  SUM(a.SalesNumber),

  AVG(a.SalesNumber),

  MAX(a.SalesNumber),

  MIN(a.SalesNumber) 

  FROM ComputerSales A;

DELETE FROM ComputerSales WHERE SalesNumber IS NULL;

COMMIT;

INSERT INTO ComputerSales VALUES(NULL);

COMMIT;

INSERT INTO ComputerSales VALUES(NULL);

COMMIT;

SELECT 

  COUNT(*),

  COUNT(a.SalesNumber),

  COUNT(DISTINCT a.SalesNumber),

  SUM(a.SalesNumber),

  AVG(a.SalesNumber),

  MAX(a.SalesNumber),

  MIN(a.SalesNumber) 

  FROM ComputerSales A;

SELECT trunc(dbms_random.value(1,101)),  

DELETE FROM ComputerSales WHERE SalesNumber IS NULL;

COMMIT;

--创建增加了日期字段的表

CREATE TABLE ComputerSalesBAK AS   

SELECT SalesNumber,TRUNC(SYSDATE)+MOD(A.DateSEQ-1,10) SalesDate

  FROM (SELECT SalesNumber,ROW_NUMBER() OVER(ORDER BY ROWID) DateSEQ FROM ComputerSales) A;

DROP TABLE ComputerSales;

RENAME ComputerSalesBAK TO ComputerSales;

--下面是两种创建方式,构招Area列和日期列

CREATE TABLE ComputerSalesBAK AS   

SELECT SalesNumber,TRUNC(SYSDATE)+MOD(A.DateSEQ-1,24) SalesDate,

       CASE WHEN TRUNC((DateSEQ-1)/24)=1 THEN '华南地区'

            WHEN TRUNC((DateSEQ-1)/24)=2 THEN '华北地区'

            WHEN TRUNC((DateSEQ-1)/24)=3 THEN '东北地区'

            WHEN TRUNC((DateSEQ-1)/24)=4 THEN '华东地区'

            ELSE '其他地区'

       END

  FROM (SELECT SalesNumber,ROW_NUMBER() OVER(ORDER BY ROWID) DateSEQ FROM ComputerSales) A;

DROP TABLE ComputerSales;

RENAME ComputerSalesBAK TO ComputerSales;

--该例可构造SalesDate和Area的重复数据

CREATE TABLE ComputerSalesBAK AS 

SELECT SalesNumber,

       TRUNC(SYSDATE)+MOD(A.DateSEQ-1,10) SalesDate,

       CASE WHEN AreaSEQ=1 THEN '华南地区'

            WHEN AreaSEQ=2 THEN '华北地区'

            WHEN AreaSEQ=3 THEN '东北地区'

            WHEN AreaSEQ=4 THEN '华东地区'

            ELSE '其他地区'

       END

  FROM (SELECT SalesNumber,ROW_NUMBER() OVER(ORDER BY ROWID) DateSEQ,ROUND(dbms_random.VALUE(1,5)) AreaSEQ FROM ComputerSales) A;

DROP TABLE ComputerSales;

RENAME ComputerSalesBAK TO ComputerSales;

  

--移动平均值,累计求和,当前窗口平均值,当前窗口求和,以及窗口函数和排序函数的作用域

SELECT

  Area,SalesDate,SalesNumber,

  MIN(SalesNumber) OVER (PARTITION BY Area order by SalesDate) AS min_Area_SalesDate,

  MAX(SalesNumber) OVER (PARTITION BY Area order by SalesDate) AS max_Area_SalesDate, 

  AVG(SalesNumber) OVER (PARTITION BY Area order by SalesDate) AS avg_Area_SalesDate,   

  SUM(SalesNumber) OVER (PARTITION BY Area order by SalesDate) AS sum_Area_SalesDate,   

  COUNT(*) OVER (PARTITION BY Area ORDER BY SalesDate) AS count_Area,

  MIN(SalesNumber) OVER (PARTITION BY Area) AS min_Area,

  MAX(SalesNumber) OVER (PARTITION BY Area) AS max_Area, 

  AVG(SalesNumber) OVER (PARTITION BY Area) AS avg_Area,   

  SUM(SalesNumber) OVER (PARTITION BY Area) AS sum_Area,   

  COUNT(*) OVER (PARTITION BY Area) AS count_Area  

FROM ComputerSales

--观察Rank、Dense_Rank,Row_number,Count的区别

--Rank跳号,Dense_Rank不跳号,Row_number唯一,Count按统计数计也跳号

--如果PARTITION BY和order by 的字段是唯一的话,则这四个函数没什么区别

SELECT

  Area,SalesDate,SalesNumber,

  RANK() OVER (PARTITION BY Area order by SalesNumber) AS Rank_Area_SalesNumber,

  DENSE_RANK() OVER (PARTITION BY Area order by SalesNumber) AS DenseRank_Area_SalesNumber, 

  ROW_NUMBER() OVER (PARTITION BY Area order by SalesNumber) AS Rownumber_Area_SalesNumber,

  COUNT(*) OVER (PARTITION BY Area order by SalesNumber) AS CountAll_Area_SalesNumber,

  COUNT(SalesNumber) OVER (PARTITION BY Area order by SalesNumber) AS Count_Area_SalesNumber

FROM ComputerSales

--观察Lag和Lead的异同,以及Lag参数之间的异同

--缺省情况下Lag取前一行的值,Lead取后一行的值

--Lag、lead的第一个参数决定了取行的位置,第二个参数为取不到值时的缺省值

SELECT

  Area,SalesDate,SalesNumber,

  LAG(SalesNumber) OVER (PARTITION BY Area order by SalesDate) AS Lag_Area_SalesNumber,  

  LEAD(SalesNumber) OVER (PARTITION BY Area order by SalesDate) AS Lead_Area_SalesNumber,    

  LAG(SalesNumber,1) OVER (PARTITION BY Area order by SalesDate) AS Lag1_Area_SalesNumber,

  LAG(SalesNumber,2) OVER (PARTITION BY Area order by SalesDate) AS Lag2_Area_SalesNumber, 

  LEAD(SalesNumber,1) OVER (PARTITION BY Area order by SalesDate) AS Lead1_Area_SalesNumber, 

  LEAD(SalesNumber,2) OVER (PARTITION BY Area order by SalesDate) AS Lead2_Area_SalesNumber,

  LAG(SalesNumber,1,0) OVER (PARTITION BY Area order by SalesDate) AS Lag10_Area_SalesNumber,

  LAG(SalesNumber,2,1) OVER (PARTITION BY Area order by SalesDate) AS Lag21_Area_SalesNumber, 

  LEAD(SalesNumber,1,0) OVER (PARTITION BY Area order by SalesDate) AS Lead10_Area_SalesNumber, 

  LEAD(SalesNumber,2,1) OVER (PARTITION BY Area order by SalesDate) AS Lead21_Area_SalesNumber  

FROM ComputerSales

--观察First_Value和Last_Value的不同

--如果取同一个同组中最大值最小值对应的某列,使用FIRST_VALUE,按照升降序排列即可

--LAST_VALUE有些像两次分组所求的最后一行

SELECT

  Area,SalesDate,SalesNumber,

  FIRST_VALUE(SalesDate) OVER (PARTITION BY Area order by SalesNumber) AS FirstValue_Area,  

  FIRST_VALUE(SalesDate) OVER (PARTITION BY Area order by SalesNumber DESC) AS FirstValue_Area_Desc,    

  LAST_VALUE(SalesDate) OVER (PARTITION BY Area order by SalesNumber) AS LastValue_Area,

  LAST_VALUE(SalesDate) OVER (PARTITION BY Area order by SalesNumber DESC) AS LastValue_Area_Desc

FROM ComputerSales

--与上面不同的是,KEEP需要和DENSE_RANK FIRST |DENSE_RANK LAST配合使用,且取的是相同Area中按SalesNumber排序所获得最大或最小的值,而上面只是取第一行或最后一行

SELECT Area,SalesDate,SalesNumber,

  DENSE_RANK() OVER(PARTITION BY Area ORDER BY SalesNumber) DENSE_RANK,

  MIN(SalesDate) KEEP (DENSE_RANK FIRST ORDER BY SalesNumber) OVER(PARTITION BY Area) min_first,

  MIN(SalesDate) KEEP (DENSE_RANK LAST ORDER BY SalesNumber) OVER(PARTITION BY Area) min_last,

  MAX(SalesDate) KEEP (DENSE_RANK FIRST ORDER BY SalesNumber) OVER(PARTITION BY Area) max_first,

  MAX(SalesDate) KEEP (DENSE_RANK LAST ORDER BY SalesNumber) OVER(PARTITION BY Area) max_last

FROM ComputerSales

--CUME_DIST和PERCENT_RANK差不多,都是累计计算比例,只不过计算基准不同,CUME_DIST更符合一般的做法

--NTILE把数据平分为若干份,更适合用来计算四分位上的值

--RATIO_TO_REPORT,则是求当前值在分区中的比例,且不能与ORDER BY 合起来使用

--PERCENTILE_DISC和PERCENTILE_CONT,则是给定的比例参数所对应的值,一般使用PERCENTILE_DISC即可

SELECT Area,SalesDate,SalesNumber,

  ROUND(CUME_DIST() OVER(PARTITION BY Area ORDER BY SalesNumber),2) cume_dist,

  ROUND(PERCENT_RANK() OVER(PARTITION BY Area ORDER BY SalesNumber),2) PERCENT_RANK,

  ROUND(RATIO_TO_REPORT(SalesNumber) OVER(PARTITION BY Area),2) RATIO_TO_REPORT,

  NTILE(4) OVER(PARTITION BY Area ORDER BY SalesNumber) NTILE,

  PERCENTILE_DISC(0.7) WITHIN GROUP (ORDER BY SalesNumber) OVER(PARTITION BY Area) PERCENTILE_DISC,

  PERCENTILE_CONT(0.7) WITHIN GROUP (ORDER BY SalesNumber) OVER(PARTITION BY Area) PERCENTILE_CONT

FROM ComputerSales

--增加了一列叫销售额,可以进行相关数理统计

CREATE TABLE ComputerSalesBAK AS   

SELECT SalesNumber,

       ROUND(SalesNumber*10+5*DBMS_RANDOM.VALUE(1,10)) SalesValue, 

       TRUNC(SYSDATE)+MOD(A.DateSEQ-1,24) SalesDate,

       CASE WHEN TRUNC((DateSEQ-1)/24)=1 THEN '华南地区'

            WHEN TRUNC((DateSEQ-1)/24)=2 THEN '华北地区'

            WHEN TRUNC((DateSEQ-1)/24)=3 THEN '东北地区'

            WHEN TRUNC((DateSEQ-1)/24)=4 THEN '华东地区'

            ELSE '其他地区'

       END Area

  FROM (SELECT SalesNumber,ROW_NUMBER() OVER(ORDER BY ROWID) DateSEQ FROM ComputerSales) A;

DROP TABLE ComputerSales;

RENAME ComputerSalesBAK TO ComputerSales;

SELECT * FROM ComputerSales;

--其他统计,对数理分析有研究的同学可以尝试一下其经济学含义

SELECT Area,SalesDate,SalesValue,SalesNumber,

  REGR_SLOPE(SalesValue,SalesNumber) OVER(PARTITION BY Area ORDER BY SalesDate) "斜率",

  REGR_INTERCEPT(SalesValue,SalesNumber) OVER(PARTITION BY Area ORDER BY SalesDate) "截距",

  REGR_R2(SalesValue,SalesNumber) OVER(PARTITION BY Area ORDER BY SalesDate) "回归线决定系数",

  REGR_AVGX(SalesValue,SalesNumber) OVER(PARTITION BY Area ORDER BY SalesDate) "回归线自变量平均值",

  REGR_AVGY(SalesValue,SalesNumber) OVER(PARTITION BY Area ORDER BY SalesDate) "回归线应变量平均值",  

  VAR_POP(SalesValue) OVER(PARTITION BY Area ORDER BY SalesDate) "VAR_POP_应变量",  

  VAR_POP(SalesNumber) OVER(PARTITION BY Area ORDER BY SalesDate) "VAR_POP_自变量",  

  COVAR_POP(SalesValue,SalesNumber) OVER(PARTITION BY Area ORDER BY SalesDate) "COVAR_POP",        

  REGR_SXX(SalesValue,SalesNumber) OVER(PARTITION BY Area ORDER BY SalesDate) "REGR_SXX",  --REGR_COUNT(expr1, expr2) * VAR_POP(expr2)  

  REGR_SYY(SalesValue,SalesNumber) OVER(PARTITION BY Area ORDER BY SalesDate) "REGR_SXY",  --REGR_COUNT(expr1, expr2) * VAR_POP(expr1) 

  REGR_SXY(SalesValue,SalesNumber) OVER(PARTITION BY Area ORDER BY SalesDate) "REGR_SXY",  --REGR_COUNT(expr1, expr2) * COVAR_POP(expr1, expr2)   

  REGR_COUNT(SalesValue,SalesNumber) OVER(PARTITION BY Area ORDER BY SalesDate) "REGR_COUNT"

FROM ComputerSales

--关于按日期进行环比的问题

--同比则有麻烦,因为日期天数是不固定的

--从ComputerSales随机删除几行再测

SELECT AREA,SALESDATE,SALESNUMBER,

  LAG(SalesNumber) OVER (PARTITION BY Area order by SalesDate) AS Lag_error,  --如遇断号,会导致数据不准

  SUM(SalesNumber) OVER (PARTITION BY AREA ORDER BY SALESDATE RANGE BETWEEN 1 PRECEDING AND 1 PRECEDING) yesterday, --昨天的值  

  SUM(SalesNumber) OVER (PARTITION BY AREA ORDER BY SALESDATE RANGE BETWEEN 6 PRECEDING AND 6 PRECEDING) lastweek, --上周数据  

  SUM(SalesNumber) OVER (PARTITION BY AREA ORDER BY SALESDATE RANGE BETWEEN 6 PRECEDING AND 0 PRECEDING) last7_accu, --前7天累计,包括当天

  SUM(SalesNumber) OVER (PARTITION BY AREA ORDER BY SALESDATE RANGE BETWEEN 29 PRECEDING AND 0 PRECEDING) last30_accu--前30天累计,包括当天

  FROM ComputerSales

 

--再度增加一个product产品列,以方便进行CUBE函数演示

CREATE TABLE ComputerSalesBAK AS   

SELECT SalesNumber,

       ROUND(SalesNumber*10+5*DBMS_RANDOM.VALUE(1,10)) SalesValue, 

       TRUNC(SYSDATE)+MOD(A.DateSEQ-1,24) SalesDate,

       CASE WHEN TRUNC((DateSEQ-1)/24)=1 THEN '华南地区'

            WHEN TRUNC((DateSEQ-1)/24)=2 THEN '华北地区'

            WHEN TRUNC((DateSEQ-1)/24)=3 THEN '东北地区'

            WHEN TRUNC((DateSEQ-1)/24)=4 THEN '华东地区'

            ELSE '其他地区'

       END Area,

       CASE WHEN ROUND(DBMS_RANDOM.VALUE(1,3))=1 THEN '产品A'

            WHEN ROUND(DBMS_RANDOM.VALUE(1,3))=2 THEN '产品B'

            ELSE '产品C'

       END Product       

  FROM (SELECT SalesNumber,ROW_NUMBER() OVER(ORDER BY ROWID) DateSEQ FROM ComputerSales) A;

DROP TABLE ComputerSales;

RENAME ComputerSalesBAK TO ComputerSales;

SELECT * FROM ComputerSales;

--传统的group by语法

SELECT Product,Area,SalesDate,SUM(SalesNumber),SUM(SalesValue) 

  FROM ComputerSales

 GROUP BY Product,Area,SalesDate

 ORDER BY Product,Area,SalesDate

 

--ROLLUP (group的字段顺序)

--会自动按Group字段分层统计,与日常报表较为相似

SELECT Product,Area,SalesDate,SUM(SalesNumber),SUM(SalesValue) 

  FROM ComputerSales

 GROUP BY ROLLUP(Product,Area,SalesDate)

 ORDER BY Product,Area,SalesDate --加不加均可,已经自动按分组字段排序

 

--等价于

SELECT * FROM 

(

SELECT Product,Area,SalesDate,SUM(SalesNumber) SalesNumber,SUM(SalesValue) SalesValue --最大级分组

  FROM ComputerSales

 GROUP BY Product,Area,SalesDate

 UNION ALL

SELECT Product,Area,NULL,SUM(SalesNumber),SUM(SalesValue) --按产品、地区分组

  FROM ComputerSales

 GROUP BY Product,Area,NULL

 UNION ALL

SELECT Product,NULL,NULL,SUM(SalesNumber),SUM(SalesValue) --按产品分组

  FROM ComputerSales

 GROUP BY Product,NULL,NULL

 UNION ALL  

SELECT NULL,NULL,NULL,SUM(SalesNumber),SUM(SalesValue)   --统计总和

  FROM ComputerSales

 GROUP BY NULL,NULL,NULL

) ORDER BY 1,2,3                                         --最后再排序

 

 

--CUBE (group的字段顺序),与OLAP比较相似,求得所有维度的交汇点

--会自动按Group字段排列组合进行统计

SELECT Product,Area,SalesDate,SUM(SalesNumber),SUM(SalesValue) 

  FROM ComputerSales

 GROUP BY CUBE(Product,Area,SalesDate)

 ORDER BY Product,Area,SalesDate --加不加均可,已经自动按分组字段排序

--两则的区别 

--即ROLLUP 为C(3,1)即多了3层

--按照Product,Area,SalesDate;Product,Area;Product;ALL的顺序进行了统计

--CUBE的统计层级则为2的N次方,即全部的有序组合

--按照Product,Area,SalesDate;Product,Area;Product,SalesDate;Product;Area,SalesDate;Area;SalesDate;ALL的顺序进行了统计

--与ROLLUP的等价表达式,相当于ROLLUP的排列组合

SELECT * FROM 

SELECT Product,Area,SalesDate,SUM(SalesNumber),SUM(SalesValue) --先按Product,Area,SalesDate求ROLLUP

  FROM ComputerSales

 GROUP BY ROLLUP(Product,Area,SalesDate)

UNION 

SELECT Product,NULL,SalesDate,SUM(SalesNumber),SUM(SalesValue) --再按Product,SalesDate求ROLLUP

  FROM ComputerSales

 GROUP BY ROLLUP(Product,NULL,SalesDate)

UNION 

SELECT NULL,Area,SalesDate,SUM(SalesNumber),SUM(SalesValue) --再按Area,SalesDate求ROLLUP

  FROM ComputerSales

 GROUP BY ROLLUP(NULL,Area,SalesDate)

UNION 

SELECT NULL,NULL,SalesDate,SUM(SalesNumber),SUM(SalesValue) --最后按SalesDate求ROLLUP

  FROM ComputerSales

 GROUP BY ROLLUP(NULL,NULL,SalesDate) 

 ) 

 ORDER BY 1,2,3

--GROUPING SETS等同于按三列单独求统计,一般不常用

SELECT Product,Area,SalesDate,SUM(SalesNumber),SUM(SalesValue) 

  FROM ComputerSales

 GROUP BY GROUPING SETS(Product,Area,SalesDate)

 ORDER BY Product,Area,SalesDate ;--加不加均可,已经自动按分组字段排序

--等价于 

SELECT * FROM 

(

SELECT Product,NULL Area,NULL SalesDate,SUM(SalesNumber),SUM(SalesValue) --按产品分组

  FROM ComputerSales

 GROUP BY Product,NULL,NULL

 UNION ALL

SELECT NULL,Area,NULL,SUM(SalesNumber),SUM(SalesValue) --按地区分组

  FROM ComputerSales

 GROUP BY NULL,Area,NULL

 UNION ALL 

SELECT NULL,NULL,SalesDate,SUM(SalesNumber) SalesNumber,SUM(SalesValue) SalesValue --按日期分组

  FROM ComputerSales

 GROUP BY NULL,NULL,SalesDate

) ORDER BY 1,2,3     

--GROUPING函数只接受一个参数,参数为数据表的一列。如果该列为空返回1,否则返回0。

--并且它仅能与 GROUP BY,ROLLUP,CUBE,GROUPING SETS 一起使用。

--稍微运行一下,就发现该函数只是为了做BI报表使用的,把统计行变为1,将来用作字符串替代

SELECT GROUPING(Product), Product,GROUPING(Area),Area,GROUPING(SalesDate),SalesDate,SUM(SalesNumber),SUM(SalesValue) 

  FROM ComputerSales

 GROUP BY ROLLUP(Product,Area,SalesDate)

 ORDER BY Product,Area,SalesDate ;

--BI标准报表格式

SELECT 

  DECODE(ProductFlag,1,'产品汇总',Product),

  DECODE(AreaFlag,1,'地区汇总',Area),

  DECODE(SalesDateFlag,1,'日期汇总',TO_CHAR(SalesDate,'YYYY-MM-DD')),

  SalesNumber,SalesValue

  FROM

(

SELECT 

  GROUPING(Product) ProductFlag, Product,

  GROUPING(Area) AreaFlag,Area,

  GROUPING(SalesDate) SalesDateFlag,SalesDate,

  SUM(SalesNumber) SalesNumber,SUM(SalesValue) SalesValue

  FROM ComputerSales

 GROUP BY ROLLUP(Product,Area,SalesDate)

 ORDER BY Product,Area,SalesDate 

)

--GROUPING_ID其实和GROUPING原理差不多,GROUPING参数为单值,且只返回1,1

--GROUPING_ID,则返回按2的指数进行累计得到空值区域的值

SELECT Product,Area,SalesDate,

       GROUPING_ID(Product,Area,SalesDate) GROUPING421,

       GROUPING_ID(Product,Area) GROUPPING21,

       GROUPING_ID(Product) GROUPING1,

       SUM(SalesNumber),

       SUM(SalesValue) 

  FROM ComputerSales

 GROUP BY ROLLUP(Product,Area,SalesDate)

 ORDER BY Product,Area,SalesDate ;--加不加均可,已经自动按分组字段排序 

 

--GROUP_ID函数可以区分重复分组结果,第1 次出现为0,以后每次出现增1。

--GROUP_ID单独答应在SELECT 中出现意义不大,常在HAVING 中使用达到过滤重复统计的目的。 

SELECT Product,Area,SalesDate,GROUP_ID(),

       SUM(SalesNumber),SUM(SalesValue) 

  FROM ComputerSales

 GROUP BY CUBE(Product,Area),CUBE(Product,SalesDate)

HAVING GROUP_ID()=0

 ORDER BY 1,2,3

--例如该例子中分别按Product,Area和Product,SalesDate会导致产品地区、产品时间的重复计算,导致报表的不清晰

--我们用HAVING GROUP_ID()=0把重复计算的行去掉就OK了

--一般情况下不建议报表程序过度分组,否则到最后连自己都搞糊涂了

--GROUP BY,ROLLUP,CUBE能组合使用,但SELECT中的分组字段必须出现在GROUP BY的相关栏位

--MODEL:MODEL语句的关键字,必须。

--DIMENSION BY:DIMENSION维度的意思,可以理解为数组的索引,必须。

--MEASURES:指定作为数组的列

--RULES:对数组进行各种操作的描述。

--暂时还没搞明白如何应用,只是简单实现了一个求上月、前30天、前7天,前1天的例子

SELECT AREA,PRODUCT,SALESDATE,SALESNUMBER,

       AVG30DAY,AVG1MONTH, --最近30天的平均值,最近一个月的平均值

       ACCU30DAY,ACCU1MONTH, --最近30天的累加值,最近一个月的累加值

       SALESNUMBER1DAY,SALESNUMBER7DAY, --昨天的销售额,一周前的销售额

       SALESNUMBER30DAY,SALESNUMBER1MONTH  --30天的销售额,上月同天的销售额

  FROM ComputerSales

 MODEL DIMENSION BY (AREA,PRODUCT,SALESDATE)

 MEASURES (SALESNUMBER,0 AVG30DAY,0 AVG1MONTH,0 ACCU30DAY,0 ACCU1MONTH,0 SALESNUMBER1DAY,0 SALESNUMBER7DAY,0 SALESNUMBER30DAY,0 SALESNUMBER1MONTH) 

 RULES UPDATE

 (AVG30DAY[ANY,ANY,ANY]=AVG(SALESNUMBER)[CV(),CV(),SALESDATE BETWEEN CV(SALESDATE)-29 AND CV(SALESDATE)],

  AVG1MONTH[ANY,ANY,ANY]=AVG(SALESNUMBER)[CV(),CV(),SALESDATE BETWEEN ADD_MONTHS(CV(SALESDATE),-1) AND CV(SALESDATE)],

  ACCU30DAY[ANY,ANY,ANY]=SUM(SALESNUMBER)[CV(),CV(),SALESDATE BETWEEN CV(SALESDATE)-30 AND CV(SALESDATE)],

  ACCU1MONTH[ANY,ANY,ANY]=SUM(SALESNUMBER)[CV(),CV(),SALESDATE BETWEEN ADD_MONTHS(CV(SALESDATE),-1) AND CV(SALESDATE)],

  SALESNUMBER1DAY[ANY,ANY,ANY]=MAX(SALESNUMBER)[CV(),CV(),SALESDATE BETWEEN CV(SALESDATE)-1 AND CV(SALESDATE)-1],

  SALESNUMBER7DAY[ANY,ANY,ANY]=MAX(SALESNUMBER)[CV(),CV(),SALESDATE BETWEEN CV(SALESDATE)-7 AND CV(SALESDATE)-7],

  SALESNUMBER30DAY[ANY,ANY,ANY]=MAX(SALESNUMBER)[CV(),CV(),SALESDATE BETWEEN CV(SALESDATE)-30 AND CV(SALESDATE)-30],

  SALESNUMBER1MONTH[ANY,ANY,ANY]=MAX(SALESNUMBER)[CV(),CV(),SALESDATE BETWEEN CV(SALESDATE)-30 AND CV(SALESDATE)-30]  

  )

ORDER BY 1,2,3

关于按年月环比统计中可能出现的问题

CREATE TABLE TEST (SALESMONTH VARCHAR(6),SALESNUMBER INT) ;

INSERT INTO TEST VALUES('201002',2);

INSERT INTO TEST VALUES('201004',4);

INSERT INTO TEST VALUES('201007',7);

INSERT INTO TEST VALUES('201008',8);

INSERT INTO TEST VALUES('201010',10);

SELECT SALESMONTH,SALESNUMBER,

LAG(SalesNumber) OVER(order by SalesMONTH) AS Lag10_Area_SalesNumber,

--如遇断号,会导致数据不准

SUM(SalesNumber) OVER(ORDER BY TO_DATE(SalesMONTH||'01','YYYYMMDD') RANGE BETWEEN 1 PRECEDING AND 1 PRECEDING)

FROM TEST

遇到一个问题,假如BI报表中的月份是字符串,而碰巧断月了,如何准确求得上个月的数据,理应为空

如果是天的话可以想办法规避掉,如果是字符串月没想好怎么处理

newkid给了算法

SELECT SALESMONTH,SALESNUMBER,  

  MAX(SalesNumber) OVER(order by TO_DATE(SalesMONTH,'YYYYMM') RANGE BETWEEN 31 PRECEDING AND 1 PRECEDING )

FROM TEST;

但我觉得结果很正确,但是不保险,而且有点迷糊

是把当前的月份转换成当月的第一天,并且向前推31天到前1天

假如当前月是2月,向前推31天应该到去年12月份了,求的 MAX(SalesNumber) 未必有效

可实际结果是正确的,奇怪

关于Model的用法,实在读不下去

http://download.oracle.com/docs/cd/B19306_01/server.102/b14223/sqlmodel.htm

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