I have a very large sparse matrix:

```
In [10]: s.matrix
Out[10]:
<19242x19242 sparse matrix of type '<type 'numpy.int64'>'
with 393555 stored elements in COOrdinate format>
```

I want to visualize the matrix for finding potential clusters. When trying to generate a heatmap by running `plt.pcolormesh`

on said matrix in the following fashion:

```
plt.pcolormesh(s.matrix.todense())
```

... I run out of memory. Do you have any suggestions on more efficient ways of doing this?

`Rectangle`

to only draw the non-zero squares?`pcolormesh`

is going to end up with I think 7 dense arrays the size of your input. – tcaswell May 16 at 2:47