# Fastest way to take the weighted sum of the columns of a matrix in R

I need the weighted sum of each column of a matrix.

``````data <- matrix(1:2e7,1e7,2) # warning large number, will eat up >100 megs of memory
weights <- 1:1e7/1e5
system.time(colSums(data*weights))
system.time(apply(data,2,function(x) sum(x*weights)))
all.equal(colSums(data*weights), apply(data,2,function(x) sum(x*weights)))
``````

Typically `colSums(data*weights)` is faster than the apply call.

I do this operation often (on a large matrix). Hence looking for advice on the most efficient implementation. Ideally, would have been great if we could pass weights to colSums (or rowSums).

Thanks, appreciate any insights!

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`colSums` and `*` are both internal or primitive functions and will be much faster than the `apply` approach

Another approach you could try is to use some basic matrix algebra as you are looking for

`````` weights %*% data
``````

The matrix multiplication method does not appear to be faster but it will avoid creating a temporary object the size of `data`

``````system.time({.y <- colSums(data * weights)})
##  user  system elapsed
##  0.12    0.03    0.16

system.time({.x <- weights %*% data})
##   user  system elapsed
##   0.20    0.05    0.25
``````
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Thanks, makes sense. – Anirban Nov 8 '12 at 3:55

Rcpp leads to a performance gain (particularly with a larger number of columns).

``````library(Rcpp)
library(inline)
src <- '
Rcpp::NumericMatrix dataR(data);
Rcpp::NumericVector weightsR(weights);
int ncol = dataR.ncol();
Rcpp::NumericVector sumR(ncol);
for (int col = 0; col<ncol; col++){
sumR[col] = Rcpp::sum(dataR( _, col)*weightsR);
}
return Rcpp::wrap(sumR);'

weighted.colSums <- cxxfunction(
signature(data="numeric", weights="numeric"), src, plugin="Rcpp")
data <- matrix(as.numeric(1:1e7),1e5,100) # warning large object
weights <- 1:1e5/1e5
all.equal(colSums(data*weights), weighted.colSums(data, weights))
## [1] TRUE
print(system.time(colSums(data*weights)))
##   user  system elapsed
##  0.065   0.001   0.064
print(system.time(as.vector(weighted.colSums(data, weights))))
##   user  system elapsed
##  0.019   0.001   0.019
all.equal(as.vector(weights %*% data), weighted.colSums(data, weights))
## [1] TRUE
print(system.time(weights %*% data))
##   user  system elapsed
##  0.066   0.001   0.066
``````
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