Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I am using Java/R/Rserve for a project. I am facing the problem of transferring a multi-dimensional array from Java into R workspace for calculation. So far, the assign method of the RConnection object only allows the following to be passed: byte[], double[], int[], REXP, String,and String[].

I sidestepped this by creating a loop in Java, and passed the variables individually. Although this works, it looks ugly and inefficient.

RConnection c = new RConnection();
c.eval("x <- matrix(0,nrow=dimX[1],ncol=dimX[2])");
for (int i = 0; i < dimX[0]; i++){
  c.eval("i <- as.numeric(i)");
  for (int j = 0; j < dimX[1]; j++){
c.eval("j <- as.numeric(j)");
c.assign("tmp", Double.toString(XOBS[i][j]));
c.eval("x[i,j] <- as.numeric(tmp)");

The document for Rserve on seems to be outdated, and the examples for Rserve are rather limited. Could anyone give me a suggestion on how to improve on this code?

Thank you

share|improve this question
how big is your data? although, I am not sure about the possible precision loss, one way would be to dump your data into strings row by row and call eval with rbind in R, another way - is to dump all your Java data into the file and do read.table in R. – seninp Oct 27 '12 at 6:26

I found one solution and just made it a little bit more friendly, link on source also attached.

Comments: it's ready-to-use utility method. It based on JRI, which now is a part of rJava.


     * Creates and assigns a matrix object in R from 2D table of double
     * @param rEngine        the  R instance used
     * @param sourceArray    the 2D table of double
     *                       the matrix must have always the same column number on every row
     * @param nameToAssignOn the R object name
     * @return R matrix instance or null if R return an error
    public static REXP assignAsRMatrix(Rengine rEngine, double[][] sourceArray, String nameToAssignOn) {
        if (sourceArray.length == 0) {
            return null;

        rEngine.assign(nameToAssignOn, sourceArray[0]);
        REXP resultMatrix = rEngine.eval(nameToAssignOn + " <- matrix( " + nameToAssignOn + " ,nr=1)");
        for (int i = 1; i < sourceArray.length; i++) {
            rEngine.assign("temp", sourceArray[i]);
            resultMatrix = rEngine.eval(nameToAssignOn + " <- rbind(" + nameToAssignOn + ",matrix(temp,nr=1))");

        return resultMatrix;
share|improve this answer

what if you do something like this (altering row and line numbers for your needs)?

RConnection c = new RConnection();

double[][] test = { { 1.0D, 2.0D }, { 3.0D, 4.0D } };

c.assign("res", test[0]);
for (int i = 1; i < 2; i++) {
  c.assign("tmp", test[i]);

REXP x = c.eval("sum(res)");

this returns 10, as expected, but, however, this

String s = c.eval("rowSums(res)").asString();

doesnt printout what it suppose, it just returns 3, maybe my Ubuntu-installed RServe is broken and can't print whatever is after space in result string 3 7:

> rowSums(d)
c1 c2 
3  7 

and I cant find good examples too :(

share|improve this answer
This is a correct approach, but I did not want to follow it because I am wary of the potential run time/memory cost when using rbind. That's why I allocated the matrix in R at the beginning. – Linh B Ngo Oct 27 '12 at 19:37
soory, i've posted a wrong timing in the comment, so cleaned that up. My simple wall-time benchmark code is here, seems like rbind is way faster than matrix. i don't know why. – seninp Oct 27 '12 at 21:10

For reference (method might not have been available yet at the time question was asked):

REXP REXP.createDoubleMatrix(double[][] arg);
share|improve this answer

You could:

  • flatten the array into a vector of integer rows, such that

    a11 a12

    a21 a22


flat_array = new int[] {a11, a12, a21, a22}
  • Assign that to a local variable e.g:

    rEngine.assign(".values", flat_array);

  • Call an R function that makes a matrix (or dataframe) in a global, like:

In R:

 make.matrix <- function(nrows, ncols, values) {

        value_mat <- matrix(values, nrow=nrows, ncol=ncols, byrow=TRUE)
        temp.res <<- res

In Java:

  • Now you have the matrix in temp.res
share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.