Say I want to calculate a value for every point on a grid. I would define some function `func`

that takes two values `x`

and `y`

as parameters and returns a third value. In the example below, calculating this value requires a look-up in an external dictionary. I would then generate a grid of points and evaluate `func`

on each of them to get my desired result.

The code below does precisely this, but in a somewhat roundabout way. First I reshape both the X and Y coordinate matrices into one-dimensional arrays, calculate all the values, and then reshape the result back into a matrix. My questions is, can this be done in a more elegant manner?

```
import collections as c
# some arbitrary lookup table
a = c.defaultdict(int)
a[1] = 2
a[2] = 3
a[3] = 2
a[4] = 3
def func(x,y):
# some arbitrary function
return a[x] + a[y]
X,Y = np.mgrid[1:3, 1:4]
X = X.T
Y = Y.T
Z = np.array([func(x,y) for (x,y) in zip(X.ravel(), Y.ravel())]).reshape(X.shape)
print Z
```

The purpose of this code is to generate a set of values that I can use with `pcolor`

in matplotlib to create a heatmap-type plot.

`X.reshape(X.size)`

is the same as`X.ravel()`

– mgilson Nov 26 '13 at 21:43`numpy.vectorize`

. – mgilson Nov 26 '13 at 21:45