import math
def noisy_func(X):
x, y = X
return (math.exp(math.sin(50*x)) +
math.sin(60*math.exp(y)) +
math.sin(70*math.sin(x)) +
math.sin(math.sin(80*y)) -
math.sin(10*(x + y)) +
0.25*(math.pow(x, 2) +
math.pow(y, 2)))
import frigidum
import numpy as np
import random
def random_start():
return np.random.random( 2 ) * 4
def random_small_step(x):
if np.random.random() < .5:
return np.clip( x + np.array( [0, 0.02 * (random.random() - .5)] ), -4,4)
else:
return np.clip( x + np.array( [0.02 * (random.random() - .5), 0] ), -4,4)
def random_big_step(x):
if np.random.random() < .5:
return np.clip( x + np.array( [0, 0.5 * (random.random() - .5)] ), -4,4)
else:
return np.clip( x + np.array( [0.5 * (random.random() - .5), 0] ), -4,4)
local_opt = frigidum.sa(random_start=random_start,
neighbours=[random_small_step, random_big_step],
objective_function=noisy_func,
T_start=10**2,
T_stop=0.00001,
repeats=10**4,
copy_state=frigidum.annealing.copy)