I am fitting lots of curves and so far I have yet to make it through all of my data as I keep getting this error: raise RuntimeError("Optimal parameters not found: " + errmsg)

RuntimeError: Optimal parameters not found: Number of calls to function has reached maxfev = 1000.

I have found the cause to be having fewer than 3 points in the past but this latest error eludes me. This question has been asked before but a full explanation of the various causes of such errors has yet to be given. maybe we can create that here.

I have created a test program for the latest error:

``````import math

import matplotlib.pyplot as plt
from scipy.optimize import curve_fit
import numpy as np

rho = [-0.,          0.00722022,  0.000258,   -0.,          0.00722022,  0.00601504,
0.00120482,  0.00090416,  0.00135318,  0.00361011,  0.00361011,  0.00328299,
-0.,         -0.,         -0.]
theta = [1.20336943e-03, 7.27272727e-03, 2.58064516e-04, 2.71428571e-01,
1.81818182e-02, 6.05143722e-04, 1.20627262e-03, 7.23981900e-03,
9.03342367e-04, 3.62318841e-03, 3.62318841e-03, 9.88142292e-04,
5.41516245e-03, 2.70758123e-03, 3.61010830e-03]

def power_law(x, a, b):
return a*np.power(x, b)

popt, pcov = curve_fit(power_law, rho, theta, maxfev=1000)

x_eval = np.linspace(min(rho), max(rho), 100)

plt.plot(rho, theta, 'ro',label="Original Data")
plt.plot(x_eval, power_law(x_eval, *popt), label="Power Law Fitted Curve")
plt.legend(loc='upper left')
plt.show()
``````
• The disastrous outlier is on purpose? Do you know this? Commented Oct 9, 2020 at 8:59
• you have 5 different values at `x=-0`, 1 of which has a `theta` value 100x larger than all the others. Strangely (deliberately?) you put the plot legend in the upper-left of the plot frame as if to try to obscure this value. Furthermore, you do not provide initial values for your variables, which should be (well, are) required. Your values don't really seem to follow a power-law, but that seems less important than the other problems you've made for yourself. Commented Oct 10, 2020 at 11:41
• It was definitely not deliberate. That was just where a tutorial I followed placed it. All variables have initial values. Power-law most closely represents the larger set of data, but I may add more points in the future. Thanks for the pointers though. Commented Oct 10, 2020 at 21:44