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using Rcpp I am trying to test for NA in a POSIXct vector passed to C++ (class DatetimeVector). It seems that the Rcpp::is_na(.) function works for NumericVector, CharcterVector... but not DatetimeVector.

Here is the C++ code that tests NA for NumericVector and CharacterVector but fails to compile if you add DatetimeVector

#include <Rcpp.h>
using namespace std;
using namespace Rcpp;

List testNA(DataFrame df){

    const int N = df.nrows();

    //Test for NA in an IntegerVector
    IntegerVector intV = df["intV"];
    LogicalVector resInt = is_na(intV); 
    //Test for NA in an CharacterVector
    CharacterVector strV = df["strV"];
    LogicalVector resStr = is_na(strV);

    //Test for NA in an DatetimeVector
    DatetimeVector dtV = df["dtV"];
    LogicalVector resDT;
    //resDT = is_na(dtV); UNCOMMENT => DOES NOT COMPILE


/*** R
cat("testing for NA\n")
intV <- c(1,NA,2)
df <- data.frame(intV=intV, strV=as.character(intV), dtV=as.POSIXct(intV,origin='1970-01-01'))

In R

share|improve this question
I might have found a way, in a loop we can do NumericVector::is_na(dtV[i].getFractionalTimestamp());, looks ok – statquant Jul 19 '13 at 16:43
up vote 2 down vote accepted

The compiler error suggests the method is not (yet?) available for DateTimeVectors:

test.cpp:18:13: error: no matching function for call to 'is_na'

An easy workaround:

resDT = is_na( as<NumericVector>(dtV) ); // As per Dirk's suggestion
share|improve this answer
your solution is better – statquant Jul 19 '13 at 16:54
I'd cast to NumericVector instead. – Dirk Eddelbuettel Jul 19 '13 at 23:26

I've added (rev 4405 of Rcpp) implementations of is_na for DateVector and DatetimeVector that don't need the cast to NumericVector, which creates a temporary object we don't actually need.

However, we don't get much of a performance hit, because most of the time is taken to construct DatetimeVector objects.

#include <Rcpp.h>
using namespace Rcpp ;

// [[Rcpp::export]]
LogicalVector isna_cast( DatetimeVector d){
    // version with the cast
    return is_na( as<NumericVector>( d ) ) ;

// [[Rcpp::export]]
LogicalVector isna( DatetimeVector d){
    // without cast
    return is_na( d ) ;

// [[Rcpp::export]]
void do_nothing( DatetimeVector d){
    // just measuring the time it takes to 
    // create a DatetimeVector from an R object    

Benchmarking this with microbenchmark :


intV <- rep( c(1,NA,2), 100000 )
dtV  <- as.POSIXct(intV,origin='1970-01-01')

    isna_cast( dtV ),
    isna( dtV ), 
    do_nothing( dtV )

#    Unit: milliseconds
#            expr      min       lq   median       uq      max neval
#  isna_cast(dtV) 67.03146 68.04593 68.71991 69.39960 96.46747   100
#       isna(dtV) 65.71262 66.43674 66.77992 67.16535 95.93567   100
# do_nothing(dtV) 57.15901 57.72670 58.08646 58.39948 58.97939   100

About 85% of the time is used to just create the DatetimeVector object. This is because the DatetimeVector and DateVector classes don't use the proxy design we used everywhere else in Rcpp. A DatetimeVector is essentially a std::vector<Datetime> and each of these Datetime objects is created from the corresponding element of the underlying object from R.

It is probably too late to change the api of DatetimeVector and DateVector and make them proxy based, but maybe there is room for something like a POSIXct class.

In comparison, let's measure the time it takes to do nothing with a NumericVector:

// [[Rcpp::export]]
void do_nothing_NumericVector( NumericVector d){}

#    Unit: microseconds
#                     expr      min         lq     median        uq       max
#           isna_cast(dtV) 66985.21 68103.0060 68960.7880 69416.227 95724.385
#                isna(dtV) 65699.72 66544.9935 66893.5720 67213.064 95262.267
#          do_nothing(dtV) 57209.26 57865.1140 58306.8780 58630.236 69897.636
# do_nothing_numeric(intV)     4.22     9.6095    15.2425    15.511    33.978
share|improve this answer
+1 and a big "Yikes"! DatetimeVector and DateVector are in fact "survivors" from my first 0.6.* releases of Rcpp. Seems like there is room for improvement. New Date and POSIXct classes, maybe? OTOH I don't really know who uses these. In practice, I mostly cast POSIXct in R via as.numeric() and work on the double precision values... – Dirk Eddelbuettel Jul 25 '13 at 13:55
That's interesting. For starters we can grep around for uses of them in Rcpp client packages. If we follow design principles from the current Rcpp api, we could make them more efficient. Anyway, we'll discuss this on appropriate channels :) – Romain Francois Jul 25 '13 at 15:09
Thank you Romain for adding this sugar. datetime are really fishy to work with in R, between the "display bug" of POSIXct, the relative slowness and timezones that are a mess. I regularily use fasttime, RcppBDT and still have to deal microseconds precision issues on some cases... datetimes are a piece of work. – statquant Jul 28 '13 at 12:01

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