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Hi all,
I've made a summary table of averages for different categories. I'm trying to create a measure that only adds certain rows of that table.
This is my attempt so far.
test = VAR averageingtable = SUMMARIZE( CaseHistory, CaseHistory[OPName], "AverageOpTime", [AvgOpFiltered] ) RETURN CALCULATE( SUMX(averageingtable,[AverageOpTime]/60), [OPName] = "OP20" || [OPName] = "OP30" )
The final line of code below returns an error as it doesn't recognise the row OPName from the summary table.
[OPName] = "OP20" || [OPName] = "OP30"
Is there any way to refer to the first column of the summary table I've created? Using CaseHistory[OPName] instead just sums up all the rows so is not an option.
Thanks
Solved! Go to Solution.
Found a solution in case anyone else has this problem.
test =
VAR averageingtable =
SUMMARIZE(
FILTER(
CaseHistory,
CaseHistory[OPName] = "OP20" || CaseHistory[OPName] = "OP30"
),
CaseHistory[OPName],
"AverageOpTime",
[AvgOpFiltered]
)
RETURN
SUMX(averageingtable,[AverageOpTime]/60)I filtered the data before I calculated the table which did the trick.
Found a solution in case anyone else has this problem.
test =
VAR averageingtable =
SUMMARIZE(
FILTER(
CaseHistory,
CaseHistory[OPName] = "OP20" || CaseHistory[OPName] = "OP30"
),
CaseHistory[OPName],
"AverageOpTime",
[AvgOpFiltered]
)
RETURN
SUMX(averageingtable,[AverageOpTime]/60)I filtered the data before I calculated the table which did the trick.
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