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I have a data.table such as the following:

a <- data.table(color=c("Red","Blue","Red","Green","Red","Blue","Blue"), count=c(1,2,6,4,2,1,1),include=c(1,1,1,1,0,0,1))

> a
     color count include
[1,]   Red     1       1
[2,]  Blue     2       1
[3,]   Red     6       1
[4,] Green     4       1
[5,]   Red     2       0
[6,]  Blue     1       0
[7,]  Blue     1       1

I wish to create a new data.table which has only the unique colour values, and a sum of the count column for each of these that match include=1, like the below:

     colour total
[1,]   Red     7
[2,]  Blue     2
[3,] Green     4  

I have tried the following, which I've had some success with in the past:

> a[,include == 1,list(total=sum(count)),by=colour]
Error in `[.data.table`(a, , include == 1, list(quantity = sum(count)),  : 
  Provide either 'by' or 'keyby' but not both

This same error message is received when a has no key, and when it has a key of colour. I have also tried, with the key set to colour, the following:

> a[,include == 1,list(quantity=sum(count))]
Error in `[.data.table`(a, , include == 1, list(quantity = sum(count))) : 
  Each item in the 'by' or 'keyby' list must be same length as rows in x (7): 1

I can't find any other good solutions. Any help much appreciated.

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1 Answer

up vote 2 down vote accepted

This should work

a <- data.table(color=c("Red","Blue","Red","Green","Red","Blue","Blue"), count=c(1,2,6,4,2,1,1),include=c(1,1,1,1,0,0,1))
a[include == 1, list(total=sum(count)), keyby = color]

   color total
1:  Blue     3
2: Green     4
3:   Red     7

Edit from Matthew :

Or if include takes (only) values 0 and 1 then :

a[, list(total=sum(count*include)), keyby = color]

or if include includes other values then :

a[, list(total=sum(count*(include==1))), keyby = color]

where NAs may need to be considered.

Those might be more efficient by avoiding the vector scanning i, but it depends a lot on data size and properties. These only need working memory as large as the largest group, whereas include==1 in i needs at least one vector allocated as long as nrow(a).

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@Ina So you were out by just one character: the first comma! –  Matt Dowle Aug 13 '12 at 15:41
Argh, you're kidding me! Thanks for the help :) –  Ina Aug 13 '12 at 15:43
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