# Numpy remove a row from a multidimesional array

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.

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`.