I'm new to scipy and matplotlib, and I've been trying to fit functions to data. The first example in the Scipy Cookbook works fantastically, but when I am trying it with points read from a file, the initial coefficients I give (p0 below) never seem to actually change, and the covariance matrix is always INF.
I've tried to fit even data following a line, to no avail. Is it a problem with the way I am importing the data? If so, is there a better way to do it?
import matplotlib.pyplot as plt from scipy.optimize import curve_fit import scipy as sy with open('data.dat') as f: noms = f.readline().split('\t') dtipus = [('x', sy.float32)] + [('y', sy.float32)] data = sy.loadtxt(f,delimiter='\t',dtype=dtipus) x = data['x'] y = data['y'] def func(x, a, b, c): return a*x**b + c p0 = sy.array([1,1,1]) coeffs, matcov = curve_fit(func, x, y, p0) yaj = func(x, coeffs, coeffs, coeffs) print(coeffs) print(matcov) plt.plot(x,y,'x',x,yaj,'r-') plt.show()