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Hello all,
I'm trying to calculate the average velocity from the previous 3 sprints, so I can then calculate the variance of the current sprint velocity against the average velocity from the prior three sprints.
Here's a trimmed down view of the data I'm working with:
Sprint name | Complete date | Sprint Velocity |
ENRL | FY24 Q2 SP09 | 11/29/2023 | 39 |
ADM | FY24 Q2 SP09 | 11/29/2023 | 17 |
AAAMT | FY24 Q2 SP09 | 11/29/2023 | 34 |
ENRL | FY24 Q2 SP10 | 12/13/2023 | 46 |
ADM | FY24 Q2 SP10 | 12/13/2023 | 8 |
AAAMT | FY24 Q2 SP10 | 12/13/2023 | 13 |
ENRL | FY24 Q2 SP11 | 12/27/2023 | 16 |
ADM | FY24 Q2 SP11 | 12/27/2023 | 19 |
AAAMT | FY24 Q2 SP11 | 12/27/2023 | 26 |
ADM | FY24 Q2 SP12 | 1/17/2024 | 27 |
ENRL | FY24 Q2 SP12 | 1/17/2024 | 13 |
AAAMT | FY24 Q2 SP12 | 1/17/2024 | 0 |
Here's the approach I've tried, but it's not producing the expected result:
Solved! Go to Solution.
@Benx So like this? PBIX is attached.
Better Rolling Average =
VAR __EndDate = MAX('Table'[DateIndex])
VAR __StartDate = __EndDate - 2
VAR __Table =
SUMMARIZE(
FILTER(ALL('Table'),[DateIndex]>=__StartDate && [DateIndex]<=__EndDate),
'Table'[DateIndex],
"__Value",SUM('Table'[Sprint Velocity])
)
RETURN
AVERAGEX(__Table,[__Value])
@Benx Try this: Better Rolling Average - Microsoft Fabric Community
Thank you @Greg_Deckler ! Unfortunately, I'm having trouble making your solution work, as I'm not always dealing with a stadard period for the rolling avg. I want to dynamically capture the Sprint Velocity from the prior three recorded dates. These may fall over the past 6 weeks, but not always.
I created a DateIndex to assign a number to each distinct date, thinking this would give me what I needed to calcualte the rolling average, without using time intelligence functions. This also has not worked.
This is an example of what I'm trying to acheive.
@Benx So like this? PBIX is attached.
Better Rolling Average =
VAR __EndDate = MAX('Table'[DateIndex])
VAR __StartDate = __EndDate - 2
VAR __Table =
SUMMARIZE(
FILTER(ALL('Table'),[DateIndex]>=__StartDate && [DateIndex]<=__EndDate),
'Table'[DateIndex],
"__Value",SUM('Table'[Sprint Velocity])
)
RETURN
AVERAGEX(__Table,[__Value])
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