# How to remove nan and inf values from a numpy matrix?

Here is my code

``````import numpy as np
cv = [[1,3,4,56,0,345],[2,3,2,56,87,255],[234,45,35,76,12,87]]
cv2 = [[1,6,4,56,0,345],[2,3,4,56,187,255],[234,45,35,0,12,87]]

output = np.true_divide(cv,cv2,where=(cv!=0) | (cv2!=0))
print(output)`
``````

I am getting Nan and inf values.i tried to remove differently means once i removed Nan and then i removed Inf values and replace them with 0.But i need to replace them together!Is there any way to replace them together ?

• "But i need to replace them together!I" Why? Sep 22, 2018 at 16:05

You can just replace `NaN` and infinite values with the following mask:

``````output[~np.isfinite(output)] = 0

>>> output
array([[1.        , 0.5       , 1.        , 1.        , 0.        ,
1.        ],
[1.        , 1.        , 0.5       , 1.        , 0.46524064,
1.        ],
[1.        , 1.        , 1.        , 0.        , 1.        ,
1.        ]])
``````

There is a special function just for that:

``````numpy.nan_to_num(x_arr, copy=False, nan=0.0, posinf=0.0, neginf=0.0)
``````

If you don't want to modify the array in place, you can make use of the `np.ma` library, and create a masked array:

``````np.ma.masked_array(output, ~np.isfinite(output)).filled(0)
``````

``````array([[1.        , 0.5       , 1.        , 1.        , 0.        ,
1.        ],
[1.        , 1.        , 0.5       , 1.        , 0.46524064,
1.        ],
[1.        , 1.        , 1.        , 0.        , 1.        ,
1.        ]])
``````