Join us at FabCon Atlanta from March 16 - 20, 2026, for the ultimate Fabric, Power BI, AI and SQL community-led event. Save $200 with code FABCOMM.
Register now!To celebrate FabCon Vienna, we are offering 50% off select exams. Ends October 3rd. Request your discount now.
Hi
I have a table called Activity which contains activity types and time associated. I need to perform a sum based on 7 of these activity types
Table_Activity | |
Activity | Time_Mins |
HOLIDAY | 300 |
SICK | 200 |
BANK_HOL | 400 |
WORKING | 40000 |
COLLECTION | 2000 |
TRAVEL | 15000 |
DOCTORS | 120 |
FLEET | 800 |
TRAINING | 1200 |
DEPOT | 100 |
Here are the results I would exspect
SUM (HOLIDAY,SICK,BANK_HOL,DOCTORS,TRAINING,DEPOT) =3120 |
thank you
RIchard
Solved! Go to Solution.
You can use the following measure for this:
Measure =
CALCULATE (
SUM ( 'Table'[Time_Mins] );
'Table'[Activity] <> "WORKING"
&& 'Table'[Activity] <> "COLLECTION"
)
Kind regards
Joren Venema
Data & Analytics Consultant
If this reply solved your question be sure to mark this post as the solution to help others find the answer more easily.
You could also add a Calculated Column to differentiate different groupings:
Category =
IF(
'Table'[Activity] IN {"HOLIDAY","SICK","BANK_HOL","DOCTORS","TRAINING","DEPOT"}, "In", "Out"
)
Whether you use a grouping or not, you'll probably want to use a Slicer visualization:
You could also add a Calculated Column to differentiate different groupings:
Category =
IF(
'Table'[Activity] IN {"HOLIDAY","SICK","BANK_HOL","DOCTORS","TRAINING","DEPOT"}, "In", "Out"
)
Whether you use a grouping or not, you'll probably want to use a Slicer visualization:
You can use the following measure for this:
Measure =
CALCULATE (
SUM ( 'Table'[Time_Mins] );
'Table'[Activity] <> "WORKING"
&& 'Table'[Activity] <> "COLLECTION"
)
Kind regards
Joren Venema
Data & Analytics Consultant
If this reply solved your question be sure to mark this post as the solution to help others find the answer more easily.
Works fine thanks you your quick response
User | Count |
---|---|
98 | |
76 | |
74 | |
49 | |
26 |