# Replace Value in Numpy array, with Value in a second Numpy array, Given Criteria

I have 2 large arrays with the exact same ammount of elements.

``````Array1=[[1,2,3][1,1,2]]
Array2=[[0,2,0][3,1,3]]
``````

if Element in Array1="1", Replace "1" with whatever is in the same place as Array2

``````Output=[[0,2,3][3,1,2]]
``````

Should be easy, but this late on a friday has my brains scrambled.

-

This one's based on Akaval's solution, but in one line. It takes advantage of other features of `np.where()`:

``````import numpy as np
Array1 = np.array([[1,2,3], [1,1,2]])
Array2 = np.array([[0,2,0], [3,1,3]])

Output = np.where(Array1 == 1, Array2, Array1)
``````
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Nice, I did not know about this one-line solution. I guess the difference is that this creates a new array instead of modifying Array1. – Akavall Jul 27 '13 at 1:02
@Akavall: I'd actually never heard about `np.where()` until your answer sent me to the documentation. This is actually pretty close to one of the examples on that page. – Dan Jul 27 '13 at 1:03
``````import numpy as np

Array1 = np.array([[1,2,3], [1,1,2]])
Array2 = np.array([[0,2,0], [3,1,3]])

b = np.where(Array1 == 1)

Array1[b] = Array2[b]
``````

Result:

``````>>> Array1
array([[0, 2, 3],
[3, 1, 2]])
``````

As jorgeca pointed out the above solution can be reduced to:

``````b = Array1 == 1
Array1[b] = Array2[b]
``````
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You could forgo the call to `np.where` (since `Array1 == 1` returns a boolean mask that's already an index) or maybe use its three arguments' form. – jorgeca Jul 27 '13 at 0:57
@jorgeca, that's a good point. Thank You. – Akavall Jul 27 '13 at 1:08