When using `pytables`

, there's no support (as far as I can tell) for the `scipy.sparse`

matrix formats, so to store a matrix I have to do some conversion, e.g.

```
def store_sparse_matrix(self):
grp1 = self.getFileHandle().createGroup(self.getGroup(), 'M')
self.getFileHandle().createArray(grp1, 'data', M.tocsr().data)
self.getFileHandle().createArray(grp1, 'indptr', M.tocsr().indptr)
self.getFileHandle().createArray(grp1, 'indices', M.tocsr().indices)
def get_sparse_matrix(self):
return sparse.csr_matrix((self.getGroup().M.data, self.getGroup().M.indices, self.getGroup().M.indptr))
```

The trouble is that the `get_sparse`

function takes some time (reading from disk), and if I understand it correctly also requires the data to fit into memory.

The only other option seems to convert the matrix to dense format (`numpy array`

) and then use `pytables`

normally. However this seems to be rather inefficient, although I suppose perhaps `pytables`

will deal with the compression itself?