Suppose I have a RowMatrix.

  1. How can I transpose it. The API documentation does not seem to have a transpose method.
  2. The Matrix has the transpose() method. But it is not distributed. If I have a large matrix greater that the memory how can I transpose it?
  3. I have converted a RowMatrix to DenseMatrix as follows

    DenseMatrix Mat = new DenseMatrix(m,n,MatArr);

    which requires converting the RowMatrix to JavaRDD and converting JavaRDD to an array.

Is there any other convenient way to do the conversion?

Thanks in advance


You are correct: there is no


method. You will need to do this operation manually.

Here is the non-distributed/local matrix versions:

def transpose(m: Array[Array[Double]]): Array[Array[Double]] = {
    (for {
      c <- m(0).indices
    } yield m.map(_(c)) ).toArray

The distributed version would be along the following lines:

    origMatRdd.rows.zipWithIndex.map{ case (rvect, i) =>
        rvect.zipWithIndex.map{ case (ax, j) => ((j,(i,ax))
    .sortBy{ case (i, ax) => i }
    .foldByKey(new DenseVector(origMatRdd.numRows())) { case (dv, (ix,ax))  =>
              dv(ix) = ax

Caveat: I have not tested the above: it will have bugs. But the basic approach is valid - and similar to work I had done in the past for a small LinAlg library for spark.

  • 1
    that means distributed matrix transpose is an open problem? – Chandan Jun 1 '15 at 4:57
  • 2
    AFAIK yes that is the case. E.g. an email to the Spark users' list in April on the transpose of a large matrix received no replies. – javadba Jun 1 '15 at 5:25
  • Checked further: there are open JIRA's for this and related RowSimilarity and BlockMatrix operations. – javadba Jun 1 '15 at 5:41

If anybody interested, I've implemented the distributed version @javadba had proposed.

  def transposeRowMatrix(m: RowMatrix): RowMatrix = {
    val transposedRowsRDD = m.rows.zipWithIndex.map{case (row, rowIndex) => rowToTransposedTriplet(row, rowIndex)}
      .flatMap(x => x) // now we have triplets (newRowIndex, (newColIndex, value))
      .sortByKey().map(_._2) // sort rows and remove row indexes
      .map(buildRow) // restore order of elements in each row and remove column indexes
    new RowMatrix(transposedRowsRDD)

  def rowToTransposedTriplet(row: Vector, rowIndex: Long): Array[(Long, (Long, Double))] = {
    val indexedRow = row.toArray.zipWithIndex
    indexedRow.map{case (value, colIndex) => (colIndex.toLong, (rowIndex, value))}

  def buildRow(rowWithIndexes: Iterable[(Long, Double)]): Vector = {
    val resArr = new Array[Double](rowWithIndexes.size)
    rowWithIndexes.foreach{case (index, value) =>
        resArr(index.toInt) = value
  • Can you share the PySpark Version for this? – Nikhil Baby Dec 22 '17 at 4:41
  • Sorry, no :( I wrote it long ago and hadn't touched Spark for a while now. It shouldn't be hard to adapt it. – ars Dec 22 '17 at 10:42

You can use BlockMatrix, which can be created from an IndexedRowMatrix:

BlockMatrix matA = (new IndexedRowMatrix(...).toBlockMatrix().cache();

BlockMatrix matB = matA.transpose();

Then, can be easily put back as IndexedRowMatrix. This is described in the spark documentation.


For very large and sparse matrix, (like the one you get from text feature extraction), the best and easiest way is:

def transposeRowMatrix(m: RowMatrix): RowMatrix = {
  val indexedRM = new IndexedRowMatrix(m.rows.zipWithIndex.map({
    case (row, idx) => new IndexedRow(idx, row)}))
  val transposed = indexedRM.toCoordinateMatrix().transpose.toIndexedRowMatrix()
  new RowMatrix(transposed.rows
    .map(idxRow => (idxRow.index, idxRow.vector))

For not so sparse matrix, you can use BlockMatrix as the bridge as mentioned by aletapool's answer above.

However aletapool's answer misses a very important point: When you start from RowMaxtrix -> IndexedRowMatrix -> BlockMatrix -> transpose -> BlockMatrix -> IndexedRowMatrix -> RowMatrix, in the last step (IndexedRowMatrix -> RowMatrix), you have to do a sort. Because by default, converting from IndexedRowMatrix to RowMatrix, the index is simply dropped and the order will be messed up.

val data = Array(
  MllibVectors.sparse(5, Seq((1, 1.0), (3, 7.0))),
  MllibVectors.dense(2.0, 0.0, 3.0, 4.0, 5.0),
  MllibVectors.dense(4.0, 0.0, 0.0, 6.0, 7.0),
  MllibVectors.sparse(5, Seq((2, 2.0), (3, 7.0))))

val dataRDD = sc.parallelize(data, 4)

val testMat: RowMatrix = new RowMatrix(dataRDD)




Getting the transpose of RowMatrix in Java:

public static RowMatrix transposeRM(JavaSparkContext jsc, RowMatrix mat){
List<Vector> newList=new ArrayList<Vector>();
List<Vector> vs = mat.rows().toJavaRDD().collect();
double [][] tmp=new double[(int)mat.numCols()][(int)mat.numRows()] ;

for(int i=0; i < vs.size(); i++){
    double[] rr=vs.get(i).toArray();
    for(int j=0; j < mat.numCols(); j++){

for(int i=0; i < mat.numCols();i++)

JavaRDD<Vector> rows2 = jsc.parallelize(newList);
RowMatrix newmat = new RowMatrix(rows2.rdd());
return (newmat);

This is a variant of the previous solution but working for sparse row matrix and keeping the transposed sparse too when needed:

  def transpose(X: RowMatrix): RowMatrix = {
    val m = X.numRows ().toInt
    val n = X.numCols ().toInt

    val transposed = X.rows.zipWithIndex.flatMap {
      case (sp: SparseVector, i: Long) => sp.indices.zip (sp.values).map {case (j, value) => (i, j, value)}
      case (dp: DenseVector, i: Long) => Range (0, n).toArray.zip (dp.values).map {case (j, value) => (i, j, value)}
    }.sortBy (t => t._1).groupBy (t => t._2).map {case (i, g) =>
      val (indices, values) = g.map {case (i, j, value) => (i.toInt, value)}.unzip
      if (indices.size == m) {
        (i, Vectors.dense (values.toArray) )
      } else {
        (i, Vectors.sparse (m, indices.toArray, values.toArray))
    }.sortBy(t => t._1).map (t => t._2)

    new RowMatrix (transposed)

Hope this help!

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