I've been running through Project Euler trying to write programs that are computationally efficient. Consider problem 1: http://projecteuler.net/problem=1. I've upped the range from 1000 to 10,000,000 to highlight inefficiencies.

This is my solution:

```
system.time({
x <- 1:1E7
a <- sum(as.numeric(x[x%%3 ==0 | x%%5==0]))
})
user system elapsed
0.980 0.041 1.011
```

Here is some C++ code written by a friend to do the same thing.

```
#include <iostream>
using namespace std;
int main(int argc, char** argv)
{
long x = 0;
for (int i = 1; i < 10000000; i++)
{
if (i % 3 == 0)
x += i;
else if (i % 5 == 0)
x += i;
}
cout << x;
return 0;
}
cbaden$ time ./a.out
23333331666668
real 0m0.044s
user 0m0.042s
sys 0m0.001s
```

I know C++ should be faster than R, but *this* much faster? Rprof indicate that I'm spending almost 60% of my time with the modulo operator and 13% of the time with the "==" operation. Are there any vectorized ways of doing this faster?

A secondary concern would be that I'm going to run out of memory--this approach is not very scalable as the range gets larger. Is there a good way to do this that preserves the vectorizability, yet doesn't try to keep the subset in memory?