I have two numpy arrays (data files loaded with
np.loadtxt). They do not have the same length (or number of rows if you will).
I want to create a mask, where I find the values in the smaller array in the larger array. For that I can use
np.in1d. However, the precision on the larger array is larger as well. My problem is illustrated in the following example
a = np.array([1.011, 2.000, 3.001]) b = np.array([1.01, 3.00]) mask = np.in1d(a, b) c array([False, False, False], dtype=bool)
What I want is
c to be
c array([True, False, True], dtype=bool)
So is there a way to either allow
np.in1d to allow a tolerance (
tol=0.01) or change the precision on array
a? I am also open to other solutions of cause.