# dot products on sparse matrices

I'm trying to take the dot product of a row in a sparse matrix with the transpose of that row using Python. I have a huge sparse matrix called X2. And I am saving the results (which is supposed to be a single number) in a list called Njc.

``````    X2 = X.transpose()
for row in X2:
Njc.append(dot(row,row.transpose()))
``````

However, when I run my program, the results are not single numbers. They look like: (0, 0) 355

(0, 0) 295

(0, 0) 15

(0, 0) 204

(0, 0) 66

....

Unfortunately my sparse matrix is so huge that I can't make it into a dense matrix (my memory will blow up). Is there a way to get only the numbers on the right without the couples on the left?

-
out of curiosity, how big is the matrix? –  will Nov 19 '12 at 1:02
it is 1 million by 10 thousand –  BBB Nov 19 '12 at 1:34

The `dot` is returning a sparse matrix. To pick out the one value inside the sparse matrix, you could use `.todense().item()`:
``````Njc.append((np.dot(row, row.transpose())).todense().item())
@dsutandi: A SciPy sparse matrix is not a NumPy `ndarray`. Your matrix might be sparse in the mathematical sense, but it does not appear to be a SciPy sparse matrix. –  unutbu Dec 1 '12 at 9:44