# How to calculate cumulative moving average in Python/SQLAlchemy/Flask

I'll give some context so it makes sense. I'm capturing Customer Ratings for Products in a table (Rating) and want to be able to return a Cumulative Moving Average of the ratings based on time.

A basic example follows taking a rating per day:

``````02 FEB - Rating: 5 - Cum Avg: 5
03 FEB - Rating: 4 - Cum Avg: (5+4)/2 = 4.5
04 FEB - Rating: 1 - Cum Avg: (5+4+1)/3 = 3.3
05 FEB - Rating: 5 - Cum Avg: (5+4+1+5)/4 = 3.75
Etc...
``````

I'm trying to think of an approach that won't scale horribly.

My current idea is to have a function that is tripped when a row is inserted into the Rating table that works out the Cum Avg based on the previous row for that product

So the fields would be something like:

``````TABLE: Rating
| RatingId | DateTime | ProdId | RatingVal | RatingCnt | CumAvg |
``````

But this seems like a fairly dodgy way to store the data.

What would be the (or any) way to accomplish this? If I was to use the 'trigger' of sorts, how do you go about doing that in SQLAlchemy?

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It's definitely possible to do this in SQL -- see: stackoverflow.com/questions/4107479/… ... I'm not sure how to get SQLAlchemy to generate a query like that though (and your database may not support the necessary syntax.) – Sean Vieira Aug 23 '11 at 16:56
@Sean Vieria: Thanks for the link - I know it's possible in pure SQL, but again this means as the # of ratings grows, the performance gets worse as the calculations are made on each row. I might try implement my original idea of storing it as each row is entered as I know that will scale. I just wasn't sure whether there was something basic I was overlooking. Thanks for the help! – mwan Aug 23 '11 at 22:43

I don't know about SQLAlchemy, but I might use an approach like this:

• Store the cumulative average and rating count separately from individual ratings.
• Every time you get a new rating, update the cumulative average and rating count:
• new_count = old_count + 1
• new_average = ((old_average * old_count) + new_rating) / new_count
• Optionally, store a row for each new rating.

Updating the average and rating count could be done with a single SQL statement.

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Thanks, I implemented most of it yesterday and this is the approach I ended up taking anyway, I've just got to finish implementing it and then I'll post back the code I used. It scales responsibly and predictably, which is what I was after. – mwan Aug 25 '11 at 0:14
And if the user can edit the rating? This approach would work? – user2990084 Feb 13 '15 at 1:13
It's a lot easier to store the sum and the count, rather than the average and the count. – Timothy Shields Feb 13 '15 at 18:26

I think you should store the MA in a 2 element list, it would be much more simple:

``````#first rating 5 is rating number 0
a = [5,0]

#next:
for i in rating:
a = [(a[0]*a[1]+lastRating)/(a[1]+1),a[1]+1]
``````

Bye

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Are you suggesting that I store the list Python-side (ie have to recalculate the entire list for each query that is run)? I'm not sure I follow. Wouldn't this scale badly as the number of ratings grow? – mwan Aug 23 '11 at 22:39