Register now to learn Fabric in free live sessions led by the best Microsoft experts. From Apr 16 to May 9, in English and Spanish.
I have the following data model:
FactSales *-1 DimensionEmployee
I have a base measures (call it [Base Measure]) that I need to use in another measure (call it [Wrapper Measure]). This other measure needs the filter context from DimensionEmployee cleared. To do so, I have defined the following:
[Wrapper Measure] =
CALCULATE(
[Base Measure]
,ALL('DimensionEmployee')
)
Is this the proper way to clear the filter context coming from 'DimensionEmployee' on 'FactSales'?
Solved! Go to Solution.
@Anonymous depends what you want to do, if you want to clear filter on all the columns then you will give ALL(TableName) but if you want to remove filter on one specific column then you will give column name ALL(Table[ColumnName1], Table[ColumnName2] )
Removefilters does the same but it is a sugar coater for ALL and was introduced recently.
✨ Follow us on LinkedIn
Check my latest blog post The Power of Using Calculation Groups with Inactive Relationships (Part 1) (perytus.com) I would ❤ Kudos if my solution helped. 👉 If you can spend time posting the question, you can also make efforts to give Kudos to whoever helped to solve your problem. It is a token of appreciation!
⚡ Visit us at https://perytus.com, your one-stop-shop for Power BI-related projects/training/consultancy.⚡
Subscribe to the @PowerBIHowTo YT channel for an upcoming video on List and Record functions in Power Query!!
Learn Power BI and Fabric - subscribe to our YT channel - Click here: @PowerBIHowTo
If my solution proved useful, I'd be delighted to receive Kudos. When you put effort into asking a question, it's equally thoughtful to acknowledge and give Kudos to the individual who helped you solve the problem. It's a small gesture that shows appreciation and encouragement! ❤
Did I answer your question? Mark my post as a solution. Proud to be a Super User! Appreciate your Kudos 🙂
Feel free to email me with any of your BI needs.
@Anonymous depends what you want to do, if you want to clear filter on all the columns then you will give ALL(TableName) but if you want to remove filter on one specific column then you will give column name ALL(Table[ColumnName1], Table[ColumnName2] )
Removefilters does the same but it is a sugar coater for ALL and was introduced recently.
✨ Follow us on LinkedIn
Check my latest blog post The Power of Using Calculation Groups with Inactive Relationships (Part 1) (perytus.com) I would ❤ Kudos if my solution helped. 👉 If you can spend time posting the question, you can also make efforts to give Kudos to whoever helped to solve your problem. It is a token of appreciation!
⚡ Visit us at https://perytus.com, your one-stop-shop for Power BI-related projects/training/consultancy.⚡
Subscribe to the @PowerBIHowTo YT channel for an upcoming video on List and Record functions in Power Query!!
Learn Power BI and Fabric - subscribe to our YT channel - Click here: @PowerBIHowTo
If my solution proved useful, I'd be delighted to receive Kudos. When you put effort into asking a question, it's equally thoughtful to acknowledge and give Kudos to the individual who helped you solve the problem. It's a small gesture that shows appreciation and encouragement! ❤
Did I answer your question? Mark my post as a solution. Proud to be a Super User! Appreciate your Kudos 🙂
Feel free to email me with any of your BI needs.
@Anonymous , all or removefilters should do. What is the issue you are getting?
https://www.linkedin.com/pulse/five-recent-power-bi-functions-you-should-use-more-often-amit-chandak
I'm not experiencing an issue. I just wanted to know if that is the typical pattern for doing so, as opposed to, say:
[Wrapper Measure] =
CALCULATE(
[Base Measure]
,ALL('FactSales'[EmpKey])
)
Covering the world! 9:00-10:30 AM Sydney, 4:00-5:30 PM CET (Paris/Berlin), 7:00-8:30 PM Mexico City
Check out the April 2024 Power BI update to learn about new features.
User | Count |
---|---|
110 | |
97 | |
78 | |
63 | |
55 |
User | Count |
---|---|
143 | |
109 | |
89 | |
84 | |
66 |