# Vectorize this function in Numpy Python

I have an array of 60,000 numbers from 0-9:

``````In [1]: trainY
Out[1]:
array([[5],
[0],
[4],
...,
[5],
[6],
[8]], dtype=int8)
``````

And I have a function to transform each element in `trainY` into a 10 element vector as per below:

``````0 -> [1,0,0,0,0,0,0,0,0,0]
1 -> [0,1,0,0,0,0,0,0,0,0]
2 -> [0,0,1,0,0,0,0,0,0,0]
3 -> [0,0,0,1,0,0,0,0,0,0]
...
9 -> [0,0,0,0,0,0,0,0,0,1]
``````

The function:

``````def transform_y(y):
new_y = np.zeros(10)
new_y[y] = 1
return new_y
``````

My code only works 1 element at a time. What's the best way to transform my `trainY` array all at once (other than a for loop)? Should I use `map`? Can someone also show me how to re-write the function so that's it's vectorised?

Thank you.

-

You can considerably improve your code speed creating an 2-D array with ones along the diagonal and then extract the right rows based on the input array:

``````a = array([[5],
[0],
[4],
...,
[5],
[6],
[8]], dtype=int8)

new_y = np.eye(a.max()+1)[a.ravel()]
``````

An even faster solution would be to create the output array with zeros and then populate it according to the indices from `a`:

``````new_y = np.zeros((a.shape[0], a.max()+1))
new_y[np.indices(a.ravel().shape)[0], a.ravel()] = 1.
``````
-
True, I didn't even read the code ;-) Your answer presents a better solution for his present case but I keep mine as a more generic answer. – Bruce Nov 7 '13 at 8:49

You can use the `vectorize`decorator

``````@np.vectorize
def transform_y(y):
new_y = np.zeros(10)
new_y[y] = 1
return new_y
``````
-