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c++ - Should I prefer Rcpp::NumericVector over std::vector?

Is there any reason why I should prefer Rcpp::NumericVector over std::vector<double>?

For example, the two functions below

// [[Rcpp::export]]
Rcpp::NumericVector foo(const Rcpp::NumericVector& x) {
  Rcpp::NumericVector tmp(x.length());
  for (int i = 0; i < x.length(); i++)
    tmp[i] = x[i] + 1.0;
  return tmp;
}

// [[Rcpp::export]]
std::vector<double> bar(const std::vector<double>& x) {
  std::vector<double> tmp(x.size());
  for (int i = 0; i < x.size(); i++)
    tmp[i] = x[i] + 1.0;
  return tmp;
}

Are equivalent when considering their working and benchmarked performance. I understand that Rcpp offers sugar and vectorized operations, but if it is only about taking R's vector as input and returning vector as output, then would there be any difference which one of those I use? Can using std::vector<double> lead to any possible problems when interacting with R?

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Are equivalent when considering their working and benchmarked performance.

  1. I doubt that the benchmarks are accurate because going from a SEXP to std::vector<double> requires a deep copy from one data structure to another. (And as I was typing this, @DirkEddelbuettel ran a microbenchmark.)
  2. The markup of the Rcpp object (e.g. const Rcpp::NumericVector& x) is just visual sugar. By default, the object given is a pointer and as such can easily have a ripple modification effect (see below). Thus, there is no true match that exists with const std::vector<double>& x that effectively "locks" and "passes a references".

Can using std::vector<double> lead to any possible problems when interacting with R?

In short, no. The only penalty that is paid is the transference between objects.

The gain over this transference is the fact that modifying a value of a NumericVector that is assigned to another NumericVector will not cause a domino update. In essence, each std::vector<T> is a direct copy of the other. Therefore, the following couldn't happen:

#include<Rcpp.h>

// [[Rcpp::export]]
void test_copy(){
    NumericVector A = NumericVector::create(1, 2, 3);
    NumericVector B = A;

    Rcout << "Before: " << std::endl << "A: " << A << std::endl << "B: " << B << std::endl; 

    A[1] = 5; // 2 -> 5

    Rcout << "After: " << std::endl << "A: " << A << std::endl << "B: " << B << std::endl; 
}

Gives:

test_copy()
# Before: 
# A: 1 2 3
# B: 1 2 3
# After: 
# A: 1 5 3
# B: 1 5 3

Is there any reason why I should prefer Rcpp::NumericVector over std::vector<double>?

There are a few reasons:

  1. As hinted previously, using Rcpp::NumericVector avoids a deep copy to and fro the C++ std::vector<T>.
  2. You gain access to the sugar functions.
  3. Ability to 'mark up' Rcpp object in C++ (e.g. adding attributes via .attr())

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