Does anyone know how to plot a best fit curve in Python for data that satisfies the inverse-square law? I tried

import numpy as np

from scipy.optimize import curve_fit

x = np.array([1, 2, 3, 4,6,8])

y = np.array([660, 160, 72, 42,20,10])

def fit_func(x, a, b,c,d):

return (a*x+d)/(b*x + c)

params = curve_fit(fit_func, x, y)

[a, b, c,d] = params[0]

# print(a,b,c,d)

print((a*3.3+d)/(b*3.3+c))