MDX 用NonEmpty过滤度量为NULL的数据

1.未用NonEmpty的MDX

select {( [Measures].[职位审批 总数])}on 0,
{ [Dim Job].[Job Title].children} 
* {[Dim Job].[Job Id].&[41164]}//,[Dim Job].[Job Id].&[390]
* {[Dim Job].[Job Status Alias].children}
*{[Dim Job].[Department key].children} 
*{[Dim Job].[Head Count].children } 
*{[Dim Job].[Hr Duty User Key].children}
*{[Dim Job].[Busi Duty User Key].children}
*{[Dim Job].[Job Kind Alias].children}
*{[Dim Job].[Available Date].children}
*{[Dim Job].[Salary Range].children}
*{[Dim Job].[Create By Key].children}
*{[Dim Job Approve].[Approve Status Alias].children}
on rows from [ASA Recruitment V2]

结果如下

 

2.使用NonEmpty过滤后的MDX

select  {( [Measures].[职位审批 总数])}on 0,
nonempty({ [Dim Job].[Job Title].children} 
* {[Dim Job].[Job Id].&[41164]}//,[Dim Job].[Job Id].&[390]
* {[Dim Job].[Job Status Alias].children}
*{[Dim Job].[Department key].children} 
*{[Dim Job].[Head Count].children } 
*{[Dim Job].[Hr Duty User Key].children}
*{[Dim Job].[Busi Duty User Key].children}
*{[Dim Job].[Job Kind Alias].children}
*{[Dim Job].[Available Date].children}
*{[Dim Job].[Salary Range].children}
*{[Dim Job].[Create By Key].children}
*{[Dim Job Approve].[Approve Status Alias].children},
[Measures].[职位审批 总数])
 on rows from  [ASA Recruitment V2]

结果如下

 

MDX : Non Empty v/s NonEmpty的请参考

http://www.ssas-info.com/analysis-services-articles/50-mdx/2196-mdx-non-empty-vs-nonempty

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One of my favourite questions in MDX is the difference between Non Empty and NonEmpty because even though many people use them daily to remove NULLS from their queries, very few understand the working behind it. Many times, I have even got answers like “there is a space between Non and Empty, that is the difference”. The objective of this post is to clearly differentiate between the two.

Let us say my initial query is

SELECT  
  { 
    [Measures].[Hits] 
   ,[Measures].[Subscribers] 
   ,[Measures].[Spam] 
  } ON COLUMNS 
,{ 
    [Geography].[Country].Children 
  } ON ROWS 
FROM [Blog Statistics];

This will give the following output

Full query results

NON EMPTY

Non Empty is prefixed before the sets defining the axes and is used for removing NULLs. Let us see what happens when we add Non Empty on the Rows axis.

SELECT  
  { 
    [Measures].[Hits] 
   ,[Measures].[Subscribers] 
   ,[Measures].[Spam] 
  } ON COLUMNS 
,NON EMPTY  
    { 
      [Geography].[Country].Children 
    } ON ROWS 
FROM [Blog Statistics];

The output is shown below

Non Empty on Rows

 

 

 

You will notice that Chile (CL) has been filtered out while rows like UK, Canada, etc are still there even if they have NULLs for some of the measures. In short, only the rows having NULL for all the members of the set defined in the column axis is filtered out. This is because the Non Empty operator works on the top level of the query. Internally, the sets defined for the axes are generated first and then the tuples having NULL values are removed. Now that we know how NON EMPTY works, it shouldn’t be hard for us to tell the output of the below query

SELECT  
  NON EMPTY  
    { 
      [Measures].[Hits] 
     ,[Measures].[Subscribers] 
     ,[Measures].[Spam] 
    } ON COLUMNS 
,{ 
    [Geography].[Country].Children 
  } ON ROWS 
FROM [Blog Statistics];

The output is shown below

Non Empty on Columns 

NONEMPTY()

The NonEmpty() returns the set of tuples that are not empty from a specified set, based on the cross product of the specified set with a second set. Suppose we want to see all the measures related to countries which have a non-null value for Subscribers

SELECT  
  { 
    [Measures].[Hits] 
   ,[Measures].[Subscribers] 
   ,[Measures].[Spam] 
  } ON COLUMNS 
,{ 
    NonEmpty 
    ( 
      [Geography].[Country].Children 
     ,[Measures].[Subscribers] 
    ) 
  } ON ROWS 
FROM [Blog Statistics];

This will give the following output

NonEmpty on Subscriber measure 

As you can see, the NonEmpty operator takes all the rows having a not NULL value for Subscribers in the rows and then displays all the measures defined in the column axis. Basically what happens internally is that NonEmpty is evaluated when the sets defining the axis are evaluated. So at this point of time, there is no context of the other axes. What I said now can be better understood from the following example

NonEmpty second example

Now, we write the below query

SELECT  
  {[Date].[Month].[March]} ON COLUMNS 
,{ 
    [Geography].[Country].Children 
  } ON ROWS 
FROM [Blog Statistics] 
WHERE  
  [Measures].[Hits];

Output is given below

NonEmpty second example - March 

Think for a while and predict which all rows would be returned when the NonEmpty operator is applied on the rows

SELECT  
  {[Date].[Month].[March]} ON COLUMNS 
,{ 
    NonEmpty([Geography].[Country].Children
  } ON ROWS 
FROM [Blog Statistics] 
WHERE  
  [Measures].[Hits];

 If you guessed just IN, US, GB and AU, please go back and read once again. If you replied All rows except Chile, full marks to you, you have been an attentive reader. The reason is because NonEmpty is evaluated when the set defining the axis is evaluated (here, Country) and at that point of time, NonEmpty is evaluated for each member of the country against the default member of the Date dimension (which would be ALL generally). As you can see, we already have values for CA and AP for other months and hence they will not be filtered out.

 

Optimizing Non Empty by using NonEmpty

 

Ok, now you know how Non Empty and NonEmpty works internally and we can apply this knowledge to optimize our queries. Suppose there is a complex logic in our axes like finding all the countries that have 30 or more hits in any month. The query is given below

SELECT  
  {[Measures].[Hits]} ON COLUMNS 
,{ 
    Filter 
    ( 
        [Geography].[Country].Children 
      *  
        [Date].[Month].Children 
     , 
      [Measures].[Hits] > 30 
    ) 
  } ON ROWS 
FROM [Blog Statistics];

Now my time dimension will have 10 years of data, which means around 120 (10*12) members for the month attribute and my country attribute may have let’s say, 100 members. Now even though I just have 3 months of data for 10 countries for hits, the filter function will need to go through all the combinations of country and month (120*100 combinations). Instead of that, we can just use the NonEmpty operator and bring down the combinations to less than 30 (3 months*10 countries) by using the below query

SELECT  
  {[Measures].[Hits]} ON COLUMNS 
,{ 
    Filter 
    ( 
      NonEmpty 
      ( 
          [Geography].[Country].Children 
        *  
          [Date].[Month].Children 
       ,[Measures].[Hits] 
      ) 
     , 
      [Measures].[Hits] > 30 
    ) 
  } ON ROWS 
FROM [Blog Statistics];

 

 

posted on 2013-05-31 13:47  huyg  阅读(821)  评论(0编辑  收藏  举报