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Hi @Jansco ,
You can consider to use 'weeknum' and 'year' as group to summary your records, then you can compare the difference between current week and previous week.
Diff = VAR currDate = MAX ( Calendar[Date] ) VAR prevDate = DATE ( YEAR ( currDate ), MONTH ( currDate ), DAY ( curDate ) - 7 ) VAR curWeek = CALCULATE ( SUM ( Table[Sales] ), FILTER ( ALLSELECTED ( Table ), YEAR ( [Date] ) = YEAR ( currDate ) && WEEKNUM ( [Date], 1 ) = WEEKNUM ( currDate, 1 ) ) ) VAR preWeek = CALCULATE ( SUM ( Table[Sales] ), FILTER ( ALLSELECTED ( Table ), YEAR ( [Date] ) = YEAR ( prevDate ) && WEEKNUM ( [Date], 1 ) = WEEKNUM ( prevDate, 1 ) ) ) RETURN curWeek - preWeek
If above no help, please provide some sample data and expected result for test.
Regards,
Xiaoxin Sheng
My measures are set up like this:
SalesLast7 =calculate(sum(‘SalesTable’[Sales]),
(Datesinperiod(date[date], selevtedvslue (date[date])-1,-7,day)
SalesTwoWeeksPrior =
=calculate(sum(‘SalesTable’[Sales]),
(Datesinperiod(date[date], selevtedvslue (date[date])-8,-7,day)
I discovered a formula like the one below will work, but it takes FOREVER. Is there a faster way?
Num Consec Ups 60 Days =
SWITCH(
TRUE (),
[*Sales Last 7 Days vs 60 Day Avg]>0
&& [*Sales 2 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 3 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 4 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 5 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 6 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 7 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 8 Weeks Prior vs 60 Day Avg]>0 ,8,
[*Sales Last 7 Days vs 60 Day Avg]>0
&& [*Sales 2 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 3 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 4 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 5 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 6 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 7 Weeks Prior vs 60 Day Avg]>0,7,
[*Sales 2 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 3 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 4 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 5 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 6 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 7 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 8 Weeks Prior vs 60 Day Avg]>0 ,7,
[*Sales Last 7 Days vs 60 Day Avg]>0
&& [*Sales 2 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 3 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 4 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 5 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 6 Weeks Prior vs 60 Day Avg]>0,6,
[*Sales 3 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 4 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 5 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 6 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 7 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 8 Weeks Prior vs 60 Day Avg]>0 ,6,
[*Sales 2 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 3 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 4 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 5 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 6 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 7 Weeks Prior vs 60 Day Avg]>0,6,
[*Sales Last 7 Days vs 60 Day Avg]>0
&& [*Sales 2 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 3 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 4 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 5 Weeks Prior vs 60 Day Avg]>0,5,
[*Sales 2 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 3 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 4 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 5 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 6 Weeks Prior vs 60 Day Avg]>0,5,
[*Sales 3 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 4 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 5 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 6 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 7 Weeks Prior vs 60 Day Avg]>0,5,
[*Sales 4 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 5 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 6 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 7 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 8 Weeks Prior vs 60 Day Avg]>0 ,5,
[*Sales Last 7 Days vs 60 Day Avg]>0
&& [*Sales 2 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 3 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 4 Weeks Prior vs 60 Day Avg]>0, 4,
[*Sales 2 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 3 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 4 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 5 Weeks Prior vs 60 Day Avg]>0, 4,
[*Sales 3 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 4 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 5 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 6 Weeks Prior vs 60 Day Avg]>0, 4,
[*Sales 4 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 5 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 6 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 7 Weeks Prior vs 60 Day Avg]>0, 4,
[*Sales 5 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 6 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 7 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 8 Weeks Prior vs 60 Day Avg]>0 ,4,
[*Sales Last 7 Days vs 60 Day Avg]>0
&& [*Sales 2 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 3 Weeks Prior vs 60 Day Avg]>0,3,
[*Sales 2 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 3 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 4 Weeks Prior vs 60 Day Avg]>0,3,
[*Sales 3 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 4 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 5 Weeks Prior vs 60 Day Avg]>0,3,
[*Sales 4 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 5 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 6 Weeks Prior vs 60 Day Avg]>0,3,
[*Sales 5 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 6 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 7 Weeks Prior vs 60 Day Avg]>0,3,
[*Sales 6 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 7 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 8 Weeks Prior vs 60 Day Avg]>0 ,3,
[*Sales Last 7 Days vs 60 Day Avg]>0
&& [*Sales 2 Weeks Prior vs 60 Day Avg]>0,2,
[*Sales 2 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 3 Weeks Prior vs 60 Day Avg]>0,2,
[*Sales 3 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 4 Weeks Prior vs 60 Day Avg]>0,2,
[*Sales 4 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 5 Weeks Prior vs 60 Day Avg]>0,2,
[*Sales 5 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 6 Weeks Prior vs 60 Day Avg]>0,2,
[*Sales 6 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 7 Weeks Prior vs 60 Day Avg]>0,2,
[*Sales 7 Weeks Prior vs 60 Day Avg]>0
&& [*Sales 8 Weeks Prior vs 60 Day Avg]>0 ,2,
BLANK())
Hi @Jansco ,
If you can please share a sample pbix file for test, it is hard to modify dax formula without any detail sample data.
Regards,
Xiaoxin Sheng
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