# How to replace NaNs in array by other array

I have 2 Numpy arrays with the same length

``````array([ 0.9737068 ,  NaN,  NaN, ..., -0.64236529,
-0.88137541, -0.78318609])

array([ 0.9 ,  0.7643,  0.61, ..., -0.64236529,
-0.88137541, -0.78318609])
``````

In the first array I have NaN values, how can I replace these NaN values with values from the second array. In this example my third array would be:

``````array([ 0.9737068 ,  Nan => 0.7643,  NaN => 0.61 , ..., -0.64236529,
-0.88137541, -0.78318609])
``````
• Do you want a new array or to replace one of them? Mar 28, 2020 at 18:33

Using Numpy, the following works by applying a Boolean mask to both arrays:

``````import numpy as np
x = np.array([0.9737068, np.nan, np.nan, -0.64236529, -0.88137541, -0.78318609])
y = np.array([0.9, 0.7643, 0.61, -0.64236529, -0.88137541, -0.78318609])

x[np.isnan(x)] = y[np.isnan(x)]
``````

Results in

``````In[1]:  x
Out[1]:
array([ 0.9737068 ,  0.7643    ,  0.61      , -0.64236529, -0.88137541,
-0.78318609])
``````

N.B. Running with `%timeit`, this solution takes < 4µs in repeated runs, vs. the other two Numpy solutions (at time of writing this) which both take 20-25µs

Pythonic solution:

``````import numpy as np

def no_nans_arrays(array_w_nans,array_no_nans):
return np.array([array_w_nans[i] if not np.isnan(array_w_nans[i]) else array_no_nans[i] for i in range(len(array_w_nans))])

``````

If not numpy, you might find this function helpful:

``````def swap(A,B,i,j):
TEMP_B = B[j]
B[j] = A[i]
A[i] = TEMP_B
return A,B
``````

Iterate over your first array, `if element is NaN`, then use swap.

Taken from this question.

``````res = np.array([ a1 if not np.isnan(a1) else b1 for a1,b1 in zip(a, b) ])
``````

`np.isnan` returns False if the given element in the `np.array` is `np.NaN`

• a more Pythonic solution would be `if not np.isnan(a1)` instead of `if np.isnan(a1)==False` Mar 28, 2020 at 18:53