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I am trying to minimize a function using scipy.optimize.minimize(). Below is the piece of code which I am trying to execute.

When I execute the same I am getting

NameError: name 'j' is not defined

import numpy as np
import pandas as pd
import matplotlib.pyplot as plt
from scipy.optimize import minimize
from sklearn.metrics import r2_score

url = 'test_data.txt'
z = pd.read_csv(url)
#
e1 = z['strain'].values
sigx = z['stress'].values
e=np.array(e1)
sig1=np.array(sigx)
#print (sig1)

def sig2(e):
    j=[1000,0.2]
    return np.mean((sig1-(j[0]*np.power(e,j[1])))*(sig1-(j[0]*np.power(e,j[1]))))
print (sig2(e))

res= minimize(sig2,j)
print(res)

What I expect as the outcome was values of j[0] & j[1] to get the function value (sig2) to be near to zero

2
  • Initialize 'j' outside the loop. By defining inside, it's scope is limited to that function only.
    – vb_rises
    May 2 '19 at 12:18
  • What is/are your optimization variable(s)? is it j or e; because your objective function take e as an argument but you say your outcome is j May 3 '19 at 11:15

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