1

I have a array like this

k = np.array([[   1. , -120.8,   39.5],
       [   0. , -120.5,   39.5],
       [   1. , -120.4,   39.5],
       [   1. , -120.3,   39.5]])

I am trying to remove the following row which is also at index 1 position.

b=np.array([   0. , -120.5,   39.5])

I have tried the traditional methods like the following:

k==b #try to get all True values at index 1 but instead got this
array([[False, False, False],
       [ True, False, False],
       [False, False, False],
       [False, False, False]])

Other thing I tried:

k[~(k[:,0]==0.) & (k[:,1]==-120.5) & (k[:,1]==39.5)]

Got the result like this:

array([], shape=(0, 3), dtype=float64)

I am really surprised why the above methods not working. By the way in the first method I am just trying to get the index so that i can use np.delete later. Also for this problem, I am assuming I don't know the index.

2

Both k and b are floats, so equality comparisons are subject to floating point inaccuracies. Use np.isclose instead:

k[~np.isclose(k, b).all(axis=1)]
# array([[   1. , -120.8,   39.5],
#        [   1. , -120.4,   39.5],
#        [   1. , -120.3,   39.5]])

Where

np.isclose(k, b).all(axis=1)
# array([False,  True, False, False])

Tells you which row of k matches b.

|improve this answer|||||

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.