**Numpy Functions:**

Well in this case, since `dct`

is a `numpy`

function, it has the functionality built-in to apply it over a particular axis. Nearly all numpy functions operate on complete arrays or can be told to operate on a particular axis (row or column).

So just by leveraging the `axis`

parameter for `dct`

function:

```
dct( X, axis=2)
```

you will get an equivalent result:

```
>>> ( dct(X, axis=2) == np.array(map(dct, X)) ).all()
True
```

which is also >35 times faster than using the `map`

function in our case of `(625,4,4)`

matrix:

```
%timeit dct(X, axis=2)
1000 loops, best of 3: 157 µs per loop
%timeit np.array(map(dct, X))
100 loops, best of 3: 5.76 ms per loop
```

**General Python Functions:**

In other cases, you can `vectorize`

a python function using either np.vectorize or np.frompyfunc functions. For instance if you have a demo function that performs a scalar operation:

```
def foo(x): # gives an error if passed in an array
return x**2
>>> X = np.arange(8, dtype=np.float32).reshape(-1,2,2)
>>> foo_arr = np.vectorize( foo)
>>> foo_arr(X)
array([[[ 0., 1.],
[ 4., 9.]],
[[ 16., 25.],
[ 36., 49.]]])
```

Discussion here might also be helpful for you. As they say, vectorizing your non-numpy function doesn't actually make it any faster though.