Substitute entries of numpy array with numpy arrays

I have a numpy array A of size ((s1,...sm)) with integer entries and a dictionary D with integers as keys and numpy arrays of size ((t)) as values. I would like to evaluate the dictionary on every entry of the array A to get a new array B of size ((s1,...sm,t)).

For example

``````D={1:[0,1],2:[1,0]}
A=np.array([1,2,1])
``````

The output shout be

``````array([[0,1],[1,0],[0,1]])
``````

Motivation: I have an array with indexes of unit vectors as entries and I need to transform it into an array with the vectors as entries.

If you can rename your keys to be 0-indexed, you might use direct array querying on your unit vectors:

``````>>> units = np.array([D[1], D[2]])
>>> B = units[A - 1]    # -1 because 0 indexed: 1 -> 0, 2 -> 1
>>> B
array([[0, 1],
[1, 0],
[0, 1]])
``````

And similarly for any shape:

``````>>> A = np.random.random_integers(0, 1, (10, 11, 12))
>>> A.shape
(10, 11, 12)
>>> B = units[A]
>>> B.shape
(10, 11, 12, 2)
``````

``````>>> np.asarray([D[key] for key in A])
array([[0, 1],
[1, 0],
[0, 1]])
``````
• Although this code may be help to solve the problem, providing additional context regarding why and/or how it answers the question would significantly improve its long-term value. Please edit your answer to add some explanation. Commented Jul 20, 2016 at 19:15

Here's an approach using `np.searchsorted` to locate those row indices to index into the values of the dictionary and then simply indexing it to get the desired output, like so -

``````idx = np.searchsorted(D.keys(),A)
out = np.asarray(D.values())[idx]
``````

Sample run -

``````In [45]: A
Out[45]: array([1, 2, 1])

In [46]: D
Out[46]: {1: [0, 1], 2: [1, 0]}

In [47]: idx = np.searchsorted(D.keys(),A)
...: out = np.asarray(D.values())[idx]
...:

In [48]: out
Out[48]:
array([[0, 1],
[1, 0],
[0, 1]])
``````