# How to determine SciPy matrix “type” of a variable M

Is there a method or a reliable way to determine if a given matrix `M` was created via `coo_matrix()` or `csc_matrix()` / `csr_matrix()`?

How could I write a method like this:

``````MATRIX_TYPE_CSC = 1
MATRIX_TYPE_CSR = 2
MATRIX_TYPE_COO = 3
MATRIX_TYPE_BSR = 4
...

def getMatrixType(M):
if ...:
return MATRIX_TYPE_COO
else if ...:
return MATRIX_TYPE_CSR
return ...
``````

Thanks!

-

Assuming that your matrix is a sparse matrix, you want the `.getformat()` method:

``````In [70]: s = scipy.sparse.coo_matrix([1,2,3])

In [71]: s
Out[71]:
<1x3 sparse matrix of type '<type 'numpy.int32'>'
with 3 stored elements in COOrdinate format>

In [72]: s.getformat()
Out[72]: 'coo'

In [73]: s = scipy.sparse.csr_matrix([1,2,3])

In [74]: s
Out[74]:
<1x3 sparse matrix of type '<type 'numpy.int32'>'
with 3 stored elements in Compressed Sparse Row format>

In [75]: s.getformat()
Out[75]: 'csr'
``````
-
``````def getMatrixType(M):
if isinstance(M, matrix_coo):
return MATRIX_TYPE_COO
else if isinstance(M, matrix_csr):
return MATRIX_TYPE_CSR
``````

The type of `scipy.sparse.coo_matrix` is `type`, so `isinstance` works just fine.

but... why would you want to do this? It's not very pythonic.

-

Seems that SciPy provides a functional interface to check the sparse matrix type:

``````In [38]: import scipy.sparse as sps

In [39]: sps.is
sps.issparse        sps.isspmatrix_coo  sps.isspmatrix_dia
sps.isspmatrix      sps.isspmatrix_csc  sps.isspmatrix_dok
sps.isspmatrix_bsr  sps.isspmatrix_csr  sps.isspmatrix_lil
``````

Example:

``````In [39]: spm = sps.lil_matrix((4, 5))

In [40]: spm
Out[40]:
<4x5 sparse matrix of type '<type 'numpy.float64'>'
with 0 stored elements in LInked List format>

In [41]: sps.isspmatrix_lil(spm)
Out[41]: True

In [42]: sps.isspmatrix_csr(spm)
Out[42]: False
``````
-