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Hi all,
I'd like to create two new columns, but I get an error "circular dependency was detected: DailyEntry[Intensity (%)], DailyEntry[Volume (%)], DailyEntry[Intensity (%)]"
The first column I want it to be:
Solved! Go to Solution.
Hi @vaz19 ,
If there is only one data table in the report, you need to set a key column for the table and then use removefilters() in the two calculated columns:
Column =
VAR TD = [TD_Game%]
VAR RESULT = TD / 4
RETURN
CALCULATE ( RESULT, REMOVEFILTERS ( 'Table'[Column 2] ) )
Column 2 =
VAR td = [TD_Game%]
VAR result = td / 4
RETURN
CALCULATE ( result, REMOVEFILTERS ( 'Table'[Column] ) )
Please refer this blog: Avoiding-circular-dependency-errors-in-dax
Best Regards,
Community Support Team _ Yingjie Li
If this post helps, then please consider Accept it as the solution to help the other members find it more quickly.
Hi @vaz19 ,
If there is only one data table in the report, you need to set a key column for the table and then use removefilters() in the two calculated columns:
Column =
VAR TD = [TD_Game%]
VAR RESULT = TD / 4
RETURN
CALCULATE ( RESULT, REMOVEFILTERS ( 'Table'[Column 2] ) )
Column 2 =
VAR td = [TD_Game%]
VAR result = td / 4
RETURN
CALCULATE ( result, REMOVEFILTERS ( 'Table'[Column] ) )
Please refer this blog: Avoiding-circular-dependency-errors-in-dax
Best Regards,
Community Support Team _ Yingjie Li
If this post helps, then please consider Accept it as the solution to help the other members find it more quickly.
The main problem I think is that these look like columns based on measures. Is that right? e.g. [Sprint Distance_Game%]
If so, you need to rewrite the columns to not use measures.
It is based on your model how you make the relations
Did I answer your question? If so, please mark my post as a solution!
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