I am using Hadoop/Mahout to decompose what will become a very large sparse matrix. The problem is, I cannot even get it done with 200 nonzero-values and dimensions 56000 x 56000 which is solved in Python in under a second. I have a creeping suspicion that the computations become dense at some point!
I am using single node/core at this moment. Is this relevant? All operations are run from Java-files, not from the command line. The exception I get is and oldie but goodie:
Exception in thread "main" java.lang.OutOfMemoryError: Java heap space at org.apache.mahout.math.DenseMatrix.<init>(DenseMatrix.java:50) at org.apache.mahout.math.solver.EigenDecomposition.<init>(EigenDecomposition.java:70) at myhadoop.MyHadoop.main(MyHadoop.java:84)
Java Result: 1
Naturally, since the Exceptions references DenseMatrix I get worried. If it is using an overridden method in some way, I could care less, but if actual zeros are being written it's not good. Also, my program runs very slowly.
SparseRowMatrix A = new SparseRowMatrix(); // Matrix A is then created by adding elements one by one in a // somewhat ordered fashion. B SparseRowMatrix = A; B.transpose(); A.plus(B); EigenDecomposition eigDec = new EigenDecomposition(A, true); myEig = eigDec.getRealEigenvalues();
Any ideas about how to make this truly sparse if it is in fact not?