Repository URL to install this package:
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Version:
1.8.0 ▾
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import numpy as np
from scipy.optimize import minimize, Bounds
def test_gh10880():
# checks that verbose reporting works with trust-constr for
# bound-contrained problems
bnds = Bounds(1, 2)
opts = {'maxiter': 1000, 'verbose': 2}
minimize(lambda x: x**2, x0=2., method='trust-constr',
bounds=bnds, options=opts)
opts = {'maxiter': 1000, 'verbose': 3}
minimize(lambda x: x**2, x0=2., method='trust-constr',
bounds=bnds, options=opts)
def test_gh12922():
# checks that verbose reporting works with trust-constr for
# general constraints
def objective(x):
return np.array([(np.sum((x+1)**4))])
cons = {'type': 'ineq', 'fun': lambda x: -x[0]**2}
n = 25
x0 = np.linspace(-5, 5, n)
opts = {'maxiter': 1000, 'verbose': 2}
result = minimize(objective, x0=x0, method='trust-constr',
constraints=cons, options=opts)
opts = {'maxiter': 1000, 'verbose': 3}
result = minimize(objective, x0=x0, method='trust-constr',
constraints=cons, options=opts)