In the very simple example below (fitting a straight line
y=ax+b with known outcome `a=b=0), the SciPy curve_fit function yields a wrong result when the x-variable is supplied as float32-type:
import numpy as np import scipy.optimize as opt def func(x, a, b): return a*x + b x = np.array([0,1]) y = np.array([0,0]) p0 = [0.1, 0.1] p1 = opt.curve_fit(func, x , y, p0=p0) p2 = opt.curve_fit(func, np.float64(x), y, p0=p0) p3 = opt.curve_fit(func, np.float32(x), y, p0=p0) print '\n p1 = ',p1,'\n p2 = ',p2,'\n p3 = ',p3
which yields the output:
p1 = (array([ 0., 0.]), inf) p2 = (array([ 0., 0.]), inf) p3 = (array([ 0.1, 0.1]), inf)
Why is that last result (obtained with float32-input) different from the other two, and - obviously - wrong? Apparently,
curve_fit has not performed even a single iteration, since the fit result p3 equals the initial guess p0. To me, this seems like a bug ...