## Background

Coming from R programming, I'm in the process of expanding to compiled code in the form of C/C++ with **Rcpp**. As a hands on exercise on the effect of loop interchange (and just C/C++ in general), I implemented equivalents to R's `rowSums()`

and `colSums()`

functions for matrices with **Rcpp** (I know these exist as Rcpp sugar and in Armadillo -- this was just an exercise).

## Question

I have my C++ implementation of `rowSums()`

and `colSums()`

along with Rcpp sugar and `arma::sum()`

versions in this `matsums.cpp`

file. Mine are just simple loops like this:

```
NumericVector Cpp_colSums(const NumericMatrix& x) {
int nr = x.nrow(), nc = x.ncol();
NumericVector ans(nc);
for (int j = 0; j < nc; j++) {
double sum = 0.0;
for (int i = 0; i < nr; i++) {
sum += x(i, j);
}
ans[j] = sum;
}
return ans;
}
NumericVector Cpp_rowSums(const NumericMatrix& x) {
int nr = x.nrow(), nc = x.ncol();
NumericVector ans(nr);
for (int j = 0; j < nc; j++) {
for (int i = 0; i < nr; i++) {
ans[i] += x(i, j);
}
}
return ans;
}
```

(*R matrices are stored column-major, so columns in the outer loop should be the more efficient approach. That's what I was testing originally.*)

While running benchmarks on these, I ran into something I wasn't expecting: there was a clear performance difference between row sums and col sums (see benchmarks below):

- Using the builtin R functions,
`colSums()`

is about twice as fast as`rowSums()`

. - With my own Rcpp and the sugar version, this is reversed: it is
`rowSums()`

that is about twice as fast as`colSums()`

. - And finally, adding the Armadillo implementations, the operations are roughly equal (col sum maybe a bit faster, as I would have expected them to be in R, too).

So my primary question is: *why is Cpp_rowSums() significantly faster than Cpp_colSums()?*

As a secondary interest, I'm also curious why the same difference is reversed in the R implementations. (I skimmed through the C source, but could not really make out the significant differences.) (And third, how come Armadillo gets equal performance?)

## Benchmarks

I tested all 4 implementations of both functions on a `10,000 x 10,000`

symmetric matrix:

```
Rcpp::sourceCpp("matsums.cpp")
set.seed(92136)
n <- 1e4 # build n x n test matrix
x <- matrix(rnorm(n), 1, n)
x <- crossprod(x, x) # symmetric
bench::mark(
rowSums(x),
colSums(x),
Cpp_rowSums(x),
Cpp_colSums(x),
Sugar_rowSums(x),
Sugar_colSums(x),
Arma_rowSums(x),
Arma_colSums(x)
)[, 1:7]
#> # A tibble: 8 x 7
#> expression min mean median max `itr/sec` mem_alloc
#> <chr> <bch:tm> <bch:tm> <bch:tm> <bch:tm> <dbl> <bch:byt>
#> 1 rowSums(x) 192.2ms 207.9ms 194.6ms 236.9ms 4.81 78.2KB
#> 2 colSums(x) 93.4ms 97.2ms 96.5ms 101.3ms 10.3 78.2KB
#> 3 Cpp_rowSums(x) 73.5ms 76.3ms 76ms 80.4ms 13.1 80.7KB
#> 4 Cpp_colSums(x) 126.5ms 127.6ms 126.8ms 130.3ms 7.84 80.7KB
#> 5 Sugar_rowSums(x) 73.9ms 75.6ms 74.3ms 79.4ms 13.2 80.7KB
#> 6 Sugar_colSums(x) 124.2ms 125.8ms 125.6ms 127.9ms 7.95 80.7KB
#> 7 Arma_rowSums(x) 73.2ms 74.7ms 73.9ms 79.3ms 13.4 80.7KB
#> 8 Arma_colSums(x) 62.8ms 64.4ms 63.7ms 69.6ms 15.5 80.7KB
```

(Again, you can find the C++ source file `matsums.cpp`

here.)

**Platform:**

```
> sessioninfo::platform_info()
setting value
version R version 3.5.1 (2018-07-02)
os Windows >= 8 x64
system x86_64, mingw32
ui RStudio
language (EN)
collate English_United States.1252
tz Europe/Helsinki
date 2018-08-09
```

# Update

Investigating further, I also wrote the same functions using R's traditional C interface: the source is here. I compiled the functions with `R CMD SHLIB`

, and tested again: the same phenomenon of row sums being faster than col sums persisted (benchmarks). I then also looked at the disassembly with `objdump`

, but it seems to me (with my very limited understanding of asm) that the compiler doesn't really optimize the main loop bodies (rows, cols) any further from the C code, either?