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Hi,
I am trying to calculate moving Average for the below data:
Could someone help me with the DAX code for this calculation?
Thanks
Solved! Go to Solution.
@sv12 ,
Yes and no. Since you are asking about 50 and 200 day moving averages, I'm going to assume you are talking about stock data. Since stocks dont trade everyday, we cannot use simple calculations like DatesInPeriod because that will look at all the dates in the period even weekends and such. So a 50 day moving average might really be just, say, 45. so we need to use something else besides the date.
I loaded some sample S&P data into Power Query, sorted oldest to newest, and added an new Index column. This will be what we use for our start and end parameters. Much easier to see in the file. If it asks when you open, I just grabbed some data from yahoo.
Anyhow, with all that loaded, our table looks like:
Then we can write this measure:
50 Day Average:= Var __Length= 50 Var __CurrentIndex = MAX ( FactDailyData[Index] ) Var __PrevIndex= __CurrentIndex - __Length RETURN If (__CurrentIndex >= __Length, //this ensures we only get an average after enough data points AVERAGEX( FILTER( ALL ( FactDailyData), __CurrentIndex>= FactDailyData[Index] && __PrevIndex< FactDailyData[Index] ), FactDailyData[Close*]) )
This works as is since there's only one stock/index. If there was more would have to add in something to the filters likes __CurrentStock = FactDailyData[Stock]. Just something to keep in mind.
Not a huge fan of filtering this table, so this maybe something better as a calculated column (done in power query or dax) or a dimension table with index and stock, or something along those lines. But this method works:
Final Table:
Here's the file:
I thought I answered it here @sv11 @sv12
https://community.powerbi.com/t5/Desktop/Moving-Avg-Calculation/m-p/659236#M316557
Do you have a dedicated Date/Calendar Table? If so, does it contain some sort of WeekNumber?
@Anonymous
I had some issue logging in to my old profile, hence had to create a new one.
To answer your question, No i donot have a dedicated Date/Calendar Table.
Here's the final table, will explain more below. Excel file is also attached
First thing was to create a Date table, which then would have a field for the cumulative week number of the calender since the average could cross years, so couldnt use just a simple week number. We relate that to the fact table and will use columns from the DimCalendar table for our filters:
Then from there it is using that column to build our measure:
Avg Amount:=AVERAGE( Table1[Amount] ) 10 Week Average:= //this ensures we dont get a figure till there is a enough data VAR __FirstCumulativeWeek= CALCULATE( MIN( DimCalendar[CumulativeWeekNum]), CALCULATETABLE(Table1,ALL(DimCalendar) ) ) RETURN IF ( NOT ( ISBLANK( [Avg Amount]) ), CALCULATE( [Avg Amount], FILTER( ALL ( DimCalendar ), MAX( DimCalendar[CumulativeWeekNum]) >= DimCalendar[CumulativeWeekNum] && MAX( DimCalendar[CumulativeWeekNum]) -10 < DimCalendar[CumulativeWeekNum] && MAX( DimCalendar[CumulativeWeekNum]) >= __FirstCumulativeWeek +9 ) ) )
This all assumes there is just weekly data. If there is daily daily, we would need to sum that up to get the weekly total and then take an average of that. But that gets a little more involved.
Hope this helps
Here's the excel file:
@Anonymous Thanks for the detailed response. This really helps.
I am trying to calculate a 50 day and 200 day Moving average on similar data with daily values. Is there a easy modification to your provided solution to achieve this?
@sv12 ,
Yes and no. Since you are asking about 50 and 200 day moving averages, I'm going to assume you are talking about stock data. Since stocks dont trade everyday, we cannot use simple calculations like DatesInPeriod because that will look at all the dates in the period even weekends and such. So a 50 day moving average might really be just, say, 45. so we need to use something else besides the date.
I loaded some sample S&P data into Power Query, sorted oldest to newest, and added an new Index column. This will be what we use for our start and end parameters. Much easier to see in the file. If it asks when you open, I just grabbed some data from yahoo.
Anyhow, with all that loaded, our table looks like:
Then we can write this measure:
50 Day Average:= Var __Length= 50 Var __CurrentIndex = MAX ( FactDailyData[Index] ) Var __PrevIndex= __CurrentIndex - __Length RETURN If (__CurrentIndex >= __Length, //this ensures we only get an average after enough data points AVERAGEX( FILTER( ALL ( FactDailyData), __CurrentIndex>= FactDailyData[Index] && __PrevIndex< FactDailyData[Index] ), FactDailyData[Close*]) )
This works as is since there's only one stock/index. If there was more would have to add in something to the filters likes __CurrentStock = FactDailyData[Stock]. Just something to keep in mind.
Not a huge fan of filtering this table, so this maybe something better as a calculated column (done in power query or dax) or a dimension table with index and stock, or something along those lines. But this method works:
Final Table:
Here's the file:
Dear @sv12 ,
Thank you for posting this Power BI query.
Dear Anonymous,
Thank you for answering it with the sample measure. Adapting your solution enabled me to solve the rolling average issue that I had been facing for 2-3 months before I was able to find this query thread.
Thank you both so much!!
Dear @sv12 ,
Thank you for posting this Power BI query.
Dear Anonymous,
Thank you for answering it with the sample measure. Adapting your solution enabled me to solve the rolling average issue that I had been facing for 2-3 months before I was able to find this query thread.
Thank you both so much!!
Worked for me with slight modification
original
===========
Var __CurrentIndex = MAX ( FactDailyData[Index] )
revised
Var __CurrentIndex = FactDailyData[Index]
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