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Hi guys,
For example, Staten Island opened in Week 8 of 2021, we would compare sales of that store from Week 9 2021 onwards with Hyannis that opened in Week 17 of 2022.
I will defenitley appreciate can anyone give solution for this.
Thanks,
Srikanth
Solved! Go to Solution.
Hi,
Please check the attached file and the below.
1. create a dim-calendar table
2. create a relationship between the sales table and dim-calendar table
3. create two calculated columns in the sales table
main point is to create a calculated column = Normalized Wk number CC
Normalized Wk number CC =
RANKX (
SUMMARIZE (
FILTER ( Sales, Sales[Store] = EARLIER ( Sales[Store] ) ),
Sales[Startdate of Wk CC]
),
Sales[Startdate of Wk CC],
,
ASC
)
4. create a measure that shows sales total and put it into the visualization that uses one of the newly created calculated columns as the X-axis
Hi,
Please check the attached file and the below.
1. create a dim-calendar table
2. create a relationship between the sales table and dim-calendar table
3. create two calculated columns in the sales table
main point is to create a calculated column = Normalized Wk number CC
Normalized Wk number CC =
RANKX (
SUMMARIZE (
FILTER ( Sales, Sales[Store] = EARLIER ( Sales[Store] ) ),
Sales[Startdate of Wk CC]
),
Sales[Startdate of Wk CC],
,
ASC
)
4. create a measure that shows sales total and put it into the visualization that uses one of the newly created calculated columns as the X-axis
Thank you.
it was helpful
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