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OLAP-mdx函数参考

2009-03-26 17:15 225 查看
对丰富的函数集可以提供的强大功能有一个直观的认识
看看Microsoft是怎样应用函数,也许可以参考借鉴;

应用举例

成员百分比分析
函数:CurrentMember、Parent等;
分析各城市的销售所占全部城市的总销售额百分比。
WITH
MEMBER Measures.[Unit Sales Percent] AS '((Store.CURRENTMEMBER,
Measures.[Unit Sales]) / (Store.CURRENTMEMBER.PARENT, Measures.[Unit
Sales])) ', FORMAT_STRING = 'Percent'

SELECT {Measures.[Unit Sales], Measures.[Unit Sales Percent]} ON COLUMNS,

ORDER(DESCENDANTS(Store.[USA].[CA], Store.[Store City], SELF),[Measures].[Unit Sales], ASC) ON ROWS

FROM Sales

重要顾客分布分析
函数:Count、Sum、Filter、Descendants等;
分析各个省份中重要顾客的数量及他们的总购买量,"重要顾客"的定义是一个顾客的购买金额或者购买数目达到或超过一定的数值。

WITH
MEMBER [Measures].[Qualified Count] AS ‘
COUNT(FILTER(DESCENDANTS(Customers.CURRENTMEMBER, [Customers].[Name]),
([Measures].[Store Sales]) > 10000 OR ([Measures].[Unit Sales]) >
10))'

MEMBER [Measures].[Qualified Sales]
AS 'SUM(FILTER(DESCENDANTS(Customers.CURRENTMEMBER,
[Customers].[Name]), ([Measures].[Store Sales]) > 10000 OR
([Measures].[Unit Sales]) > 10), ([Measures].[Store Sales]))'

SELECT {[Measures].[Qualified Count], [Measures].[Qualified Sales]} ON COLUMNS,

DESCENDANTS([Customers].[All Customers], [State Province], SELF_AND_BEFORE) ON ROWS

FROM Sales

排序
函数:Order
对各个产品类别按照Store Sales指标降序排列,排序分为维内排序/整体排序。
select {[Measures].[Unit Sales], [Measures].[Store Sales]} on columns,

Order([Product].[Product Department].members, [Measures].[Store Sales], DESC) on rows

from Sales

历史相关的累计值
函数:YTD、Sum、Descendants
求销售额的本年累计值YTD(),类似还可以求解历史累计YTD()、本月累计MTD()、本周累计WTD()等, 以及更通用的函数PeriodToDate()。
with member [Measures].[Accumulated Sales] as 'Sum(YTD(),[Measures].[Store Sales])'

select
{[Measures].[Store Sales],[Measures].[Accumulated Sales]} on columns,
{Descendants([Time].[1997],[Time].[Month])} on rows

from [Warehouse and Sales]

四则运算
函数:四则运算函数;
在成员上及指标上均可以进行四则运算,动态派生出新的成员及指标。

WITH
MEMBER MEASURES.ProfitPercent AS '([Measures].[Store
Sales]-[Measures].[Store Cost])/([Measures].[Store
Cost])',FORMAT_STRING = '#.00%'

MEMBER [Time].[First Half 97] AS '[Time].[1997].[Q1] + [Time].[1997].[Q2]'

MEMBER [Time].[Second Half 97] AS '[Time].[1997].[Q3] + [Time].[1997].[Q4]'

SELECT {[Time].[First Half 97], [Time].[Second Half 97], [Time].[1997].CHILDREN} ON COLUMNS,

{[Store].[Store Country].[USA].CHILDREN} ON ROWS

FROM [Sales]

WHERE (MEASURES.ProfitPercent)

逻辑判断
函数:IIf
逻辑判断可以根据不同的条件产生不同的结果。下例判断各商店是否是啤酒及白酒的大卖家。

WITH MEMBER [Product].[BigSeller] AS 'IIf([Product].[Drink].[Alcoholic Beverages].[Beer and Wine] > 100, "Yes","No")'

SELECT {[Product].[BigSeller],[Product].children} ON COLUMNS,

{[Store].[All Stores].[USA].[CA].children} ON ROWS

FROM Sales

成员属性
函数:Properties、Dimension Properties
成员属性是与成员绑定的,其对应关系导致很难选择合适的使用方式。以下是使用成员属性的例子,它对应每个商店成员列出了商店类型属性,相应的,商店经理、商店规模、商店地址等属性也可以被列出。该用法稍加灵活应用就可以解决过去遇到的企业名称——〉企业代码对应展示问题。

WITH MEMBER [Measures].[StoreType] AS '[Store].CurrentMember.Properties("Store Type")',

MEMBER
[Measures].[ProfitPct] AS '(Measures.[Store Sales] - Measures.[Store
Cost]) / Measures.[Store Sales]', FORMAT_STRING = '##.00%'

SELECT { Descendants([Store].[USA], [Store].[Store Name])} ON COLUMNS,

{[Measures].[Store Sales], [Measures].[Store Cost], [Measures].[StoreType], [Measures].[ProfitPct] } ON ROWS"

FROM Sales

另外一种用法:

SELECT {[Measures].[Units Shipped], [Measures].[Units Ordered]} ON COLUMNS,

[Store].[Store Name].MEMBERS DIMENSION PROPERTIES [Store].[Store Name].[Store Type] ON ROWS

FROM Warehouse

多步计算实现复杂逻辑

函数:其实可以是任意函数合乎逻辑的组合

求出从来没有买过乳制品的顾客,求解过程是先求出每位顾客在过去购买的乳制品的数量累计,然后找出累计值为0的顾客。同样,过去遇到的求税额大于平均税额的海关的问题可以类似求出。

with member [Measures].[Dairy ever] as 'sum([Time].members, ([Measures].[Unit Sales],[Product].[Food].[Dairy]))'

set [Customers who never bought dairy] as 'filter([Customers].members, [Measures].[Dairy ever] = 0)'

select {[Measures].[Unit Sales], [Measures].[Dairy ever]} on columns,

[Customers who never bought dairy] on rows

from Sales

同期、前期

函数:PrevMember、ParellelPeriod

求解各产品销售额的去年同期值,年增长率。

with member [Measures].[Store Sales Last Period] as '([Measures].[Store Sales], Time.PrevMember)', format='#,###.00'

member
[Measures].[Yearly Increase Rate] as ‘([Measures].[Store Sales] -
[Measures].[Store Sales Last Period])/ [Measures].[Store Sales Last
Period]', FORMAT_STRING = 'Percent'

select {[Measures].[Store Sales], [Measures].[Store Sales Last Period]} on columns,

{ [Product].members} on rows

from Sales

where ([Time].[1998])

另一个例子,使用ParellelPeriod函数。

WITH
MEMBER [Measures].[YTD Unit Sales] AS 'COALESCEEMPTY(SUM(YTD(),
[Measures].[Unit Sales]), 0)' MEMBER [Measures].[Previous YTD Unit
Sales] AS '(Measures.[YTD Unit Sales], PARALLELPERIOD([Time].[Year]))'

MEMBER [Measures].[YTD Growth] AS '[Measures].[YTD Unit Sales] - ([Measures].[Previous YTD Unit Sales])'

SELECT {[Time].[1998]} ON COLUMNS,

{[Measures].[YTD Unit Sales], [Measures].[Previous YTD Unit Sales], [Measures].[YTD Growth]} ON ROWS

FROM Sales;

Top N分析

函数:TopCount

求解1998年总购买量处于前5名的顾客;

select {[Measures].[Store Sales]} on columns,

{TopCount([Customers].[Customer Name].members,5, [Measures].[Store Sales])} on rows

from Sales

where ([time].[1998])

成员过滤

函数:Filter、Except

求解1998年所有顾客中购买总额得到1万元以上的顾客,列出满足条件的顾客的名字、年购买数量、年购买金额。

Select {[measures].[Store Sales],[measures].[unit sales]} on columns,

FILTER(Customers.[Name].Members,[Measures].[Store Sales] > 10000) on rows

From sales

Whare ([time].[1998])

另外一种成员过滤(从所有的媒体类型中剔除No Media类型),确切的说应该是集合运算。

select {[Measures].[Unit Sales]} on columns,

except([Promotion Media].[Media Type].members,{[Promotion Media].[Media Type].[No Media]}) on rows

from Sales

时间段

函数:sum、":"运算符

求美国的商店在指定时间段内的销售额。

WITH MEMBER [Time].[1997].[Six Month] AS 'SUM([Time].[1]:[Time].[6])'

MEMBER [Time].[1997].[Nine Month] AS 'SUM([Time].[1]:[Time].[9])'

SELECT {[Time].[1997].[Six Month],[Time].[1997].[Nine Month]} ON COLUMNS,

{[measures].[store salse]} ON ROWS

FROM Sales

Where ([Store].[USA])
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