I am trying to generate a heatmap of a 10x10 matrix. All values in the matrix are probabilities; sum of all elements equal to 1.0. I decided to use the matshow plot type (it seemed easy to use), however I cannot generate the output I'd like to have so far.

1.Visually it looks kinda ugly. Would you recommend a fitting color map for use in a heatmap?

2.Is there a way to assign predefined bins to the color map when using matshow? E.g. take a gradient of 1000 colors, always use the same colors for the corresponding probabilities. In default behavior, I think matshow checks the minimum and maximum values, assigned the first and last colors in the gradient to those values, then colorizes the values in between by interpolation.

Sometimes I have very similar probabilities in the matrix, and other times the range of probabilities may be great. Due to the default behavior I tried to explain above, I get similar plots, which makes comparisons harder.

My code for generating the said heat maps (and an example plot) is below by the way.

Thanks!

```
import bumpy as np
def pickcoord():
i = np.random.randint(0,10)
j = np.random.randint(0,10)
return [i,j]
board = np.zeros((10,10))
for i in range(1000000):
try:
direction = np.random.randint(0,2)
new_board = np.zeros((10,10))
coords = pickcoord()
if direction == 1:
for k in range(2):
new_board[coords[0]][coords[1]+k] = 1
else:
for k in range(2):
new_board[coords[0]+k][coords[1]] = 1
except IndexError:
new_board = np.zeros((10,10))
board = board + new_board
board_prob = board/np.sum(board)
figure(figsize(6,6))
matshow(board_prob, cmap=cm.Spectral_r, interpolation='none')
plt.xticks(np.arange(0.5,10.5), [])
plt.yticks(np.arange(0.5,10.5), [])
plt.grid()
```