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Hi,
I currently have this measure
Solved! Go to Solution.
Hi @Anonymous ,
The outcome you have is because TIME() returns a datetime value, not a duration value. A datetime value reflects the timestamp of a moment, while a duration reflects the amount of time something takes. The notation can be similar (e.g. HH:MM:SS) but the datatypes are very different.
In your case, I would recommend to calculate everything in seconds and then revert it to a HH:MM:SS format.
FTE =
VAR howlongItTook = COUNT('Processing_Log'[Sl. No])) * (12*60)
VAR avgTimeTaken = AVERAGE('Processing_Log'[Total time Taken])
//Depending on your datastructure, avgTimeTaken would need to be converted to seconds.
VAR fteSeconds = howlongItTook - avgTimeTaken
VAR Hr = INT(fteSeconds/3600)
VAR Mi = INT((fteSeconds - (Hr *3600))/60)
VAR Se = MOD(fteSeconds, 60)
RETURN
Hr&":"&FORMAT(Mi,"00")&":"&FORMAT(Se,"00")Something like this. Note that this wouldn't work right away, see comment after VAR avgTimeTaken. You will need to calculate the average of the [Total time Taken] column in seconds, but you get the idea.
Hope this helps!
Kind regards
Djerro123
-------------------------------
If this answered your question, please mark it as the Solution. This also helps others to find what they are looking for.
Kudo's are welcome 🙂
Proud to be a Super User!
Hi @Anonymous ,
The outcome you have is because TIME() returns a datetime value, not a duration value. A datetime value reflects the timestamp of a moment, while a duration reflects the amount of time something takes. The notation can be similar (e.g. HH:MM:SS) but the datatypes are very different.
In your case, I would recommend to calculate everything in seconds and then revert it to a HH:MM:SS format.
FTE =
VAR howlongItTook = COUNT('Processing_Log'[Sl. No])) * (12*60)
VAR avgTimeTaken = AVERAGE('Processing_Log'[Total time Taken])
//Depending on your datastructure, avgTimeTaken would need to be converted to seconds.
VAR fteSeconds = howlongItTook - avgTimeTaken
VAR Hr = INT(fteSeconds/3600)
VAR Mi = INT((fteSeconds - (Hr *3600))/60)
VAR Se = MOD(fteSeconds, 60)
RETURN
Hr&":"&FORMAT(Mi,"00")&":"&FORMAT(Se,"00")Something like this. Note that this wouldn't work right away, see comment after VAR avgTimeTaken. You will need to calculate the average of the [Total time Taken] column in seconds, but you get the idea.
Hope this helps!
Kind regards
Djerro123
-------------------------------
If this answered your question, please mark it as the Solution. This also helps others to find what they are looking for.
Kudo's are welcome 🙂
Proud to be a Super User!
Thank you soo much ... worked like a charm.
i just had a small query of the average time.. my total time taken column contains data in HH : MM : SS format as well. which contains data both in Minutes and seconds. how do i convert it? how do you suggest i move forward.?
You could try something like this:
VAR tttAVG = AVERAGE('Processing_Log'[Total time Taken])
VAR tttH2S = HOUR(tttAVG) * 3600
VAR tttM2S = MINUTE(tttAVG) * 60
VAR tttSeconds = SECOND(tttAVG) + tttH2S + tttM2StttSeconds will now hold the average time in seconds 🙂
Kind regards
Djerro123
-------------------------------
If this answered your question, please mark it as the Solution. This also helps others to find what they are looking for.
Kudo's are welcome 🙂
Proud to be a Super User!
Hey @JarroVGIT
Executed your query as mentioned above but, I'm getting the solution as,
but FTE calculation goes like this
=596 * [(12*60) - ((3*60)+32)]
=596[720-212]~ 302768 sec ~ 84hours.
The data isn't matching. please help.. 😞
Hope I haven't messed up during implementation
Proud to be a Super User!
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