If I've understood your datatype correctly, to convert it into a numpy array and then plot it, you could do something like:

```
import numpy as np
import pylab as plt
# The example dict/matrix
dict = {}
for x in range(0, 11):
dict[x] = [0,1,2,3,4,5,6,7,8,9,10]
# Create an empty numpy array with the right dimensions
nparr = np.zeros((len(dict.keys()), len(dict[0])))
# Loop through converting each list into a row of the new array
for ii in xrange(nparr.shape[0]):
nparr[ii] = dict[ii]
# Plotting as a contour
plt.contour(nparr)
plt.show()
```

Note that the for loop won't be particularly quick for very large datasets, but should be fine for "image sized" data (I'd expect matplotlib's rendering to take the most time at any rate).