I have a conceptual question. We can read sparse matrices in Spark and convert them into Compressed Sparse Column (CSC) format using the `Matrices.sparse`

method from the `import org.apache.spark.mllib.linalg.{Matrix, Matrices}`

class. If I convert this into `RowMatrix`

Format and perform SVD, will it be faster and more efficient than directly converting the dense matrix into the `RowMatrix`

format and performing SVD?

Common sense may suggest that sparse matrix would be faster but is it indeed faster?, does the `RowMatrix`

interpretation of the sparse matrix give it a performance boost? If so why?