Some timings for reference

```
library(matrixStats)
library(inline)
library(data.table)
#devtools::install_github("privefl/bigstatsr")
library(bigstatsr)
library(RcppArmadillo)
library(microbenchmark)
set.seed(20L)
N <- 1e6
dat <- matrix(rnorm(N*100),ncol=100)
fbm <- FBM(N, 100)
big_apply(fbm, a.FUN = function(X, ind) {
print(min(ind))
X[, ind] <- rnorm(nrow(X) * length(ind))
NULL
}, a.combine = 'c')
bigstatsrMtd <- function() {
prods <- big_apply(fbm, a.FUN = function(X, ind) {
print(min(ind))
matrixStats::rowProds(X[ind, ])
}, a.combine = 'c', ind = rows_along(fbm),
block.size = 100e3, ncores = nb_cores())
}
df <- data.table(as.data.frame(dat), keep.rownames=TRUE)
data.tableMtd <- function() {
df[, rowprods:= Reduce("*", .SD), .SDcols = -1]
df[, .(rn, rowprods)]
}
code <- '
arma::mat prodDat = Rcpp::as<arma::mat>(dat);
int m = prodDat.n_rows;
int n = prodDat.n_cols;
arma::vec res(m);
for (int row=0; row < m; row++) {
res(row) = 1.0;
for (int col=0; col < n; col++) {
res(row) *= prodDat(row, col);
}
}
return Rcpp::wrap(res);
'
rcppProd <- cxxfunction(signature(dat="numeric"), code, plugin="RcppArmadillo")
rcppMtd <- function() {
rcppData <- rcppProd(dat) # generated by C++ code
}
baseMtd <- function() {
apply(dat, 1, prod)
}
microbenchmark(bigstatsrMtd(),
data.tableMtd(),
rcppMtd(),
baseMtd(),
times=5L
)
```

Note: Compiling the function in `cxxfunction`

seems to take some time

Here are the timing results:

```
# Unit: milliseconds
# expr min lq mean median uq max
# bigstatsrMtd() 4519.1861 4993.0879 5296.7000 5126.2282 5504.3981 6340.5995
# data.tableMtd() 443.1946 444.9686 690.3703 493.2399 513.4787 1556.9695
# rcppMtd() 787.9488 799.1575 828.3647 809.0645 871.0347 874.6178
# baseMtd() 5658.1424 6208.5123 6232.0040 6331.7431 6458.6806 6502.9417
```

`matrixStats::rowProds(df)`

. Also, what are those mysterious "space issues"? – David Arenburg Feb 20 '18 at 7:17