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maneschr2022
Helper II
Helper II

Sum values and filtering on distinct values from other column

I have this measure that I'm using in a card visual
 
Measure = format(calculate(sum(Table1[ColumnX),Table1[ColumnH]=1) + 0,"#,##0") & max('Table2 Measure'[ColumnB])
 
I want to add to this measure a filter to only do this measure based on distinct values of Table3[columnP], as there are some duplicates row in the dataset.

How can I achieve this?, thanks!
1 ACCEPTED SOLUTION
ValtteriN
Super User
Super User

Hi,

You can achieve this by using distinct + sumx. E.g. 

ValtteriN_0-1666593382980.png

DAX:

Measure 20 =


SUMX(DISTINCT('Table (9)'),'Table (9)'[Value])


DISTINCT will remove duplicate rows in the calculation.

I hope this post helps to solve your issue and if it does consider accepting it as a solution and giving the post a thumbs up!

My LinkedIn: https://www.linkedin.com/in/n%C3%A4ttiahov-00001/





Did I answer your question? Mark my post as a solution!

Proud to be a Super User!




View solution in original post

1 REPLY 1
ValtteriN
Super User
Super User

Hi,

You can achieve this by using distinct + sumx. E.g. 

ValtteriN_0-1666593382980.png

DAX:

Measure 20 =


SUMX(DISTINCT('Table (9)'),'Table (9)'[Value])


DISTINCT will remove duplicate rows in the calculation.

I hope this post helps to solve your issue and if it does consider accepting it as a solution and giving the post a thumbs up!

My LinkedIn: https://www.linkedin.com/in/n%C3%A4ttiahov-00001/





Did I answer your question? Mark my post as a solution!

Proud to be a Super User!




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