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# Author: Simon Blanke |
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# Email: [email protected] |
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# License: MIT License |
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import time |
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import pytest |
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import random |
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import numpy as np |
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from gradient_free_optimizers import LipschitzOptimizer |
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from ._base_para_test import _base_para_test_func |
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from gradient_free_optimizers import RandomSearchOptimizer |
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def objective_function_nan(para): |
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rand = random.randint(0, 1) |
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if rand == 0: |
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return 1 |
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else: |
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return np.nan |
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def objective_function_m_inf(para): |
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rand = random.randint(0, 1) |
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if rand == 0: |
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return 1 |
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else: |
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return -np.inf |
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def objective_function_inf(para): |
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rand = random.randint(0, 1) |
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if rand == 0: |
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return 1 |
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else: |
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return np.inf |
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search_space_ = {"x1": np.arange(0, 20, 1)} |
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def objective_function(para): |
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score = -para["x1"] * para["x1"] |
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return score |
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search_space = {"x1": np.arange(-10, 11, 1)} |
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search_space2 = {"x1": np.arange(-10, 51, 1)} |
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search_space3 = {"x1": np.arange(-50, 11, 1)} |
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opt1 = RandomSearchOptimizer(search_space) |
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opt2 = RandomSearchOptimizer(search_space2) |
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opt3 = RandomSearchOptimizer(search_space3) |
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opt4 = RandomSearchOptimizer(search_space_) |
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opt5 = RandomSearchOptimizer(search_space_) |
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opt6 = RandomSearchOptimizer(search_space_) |
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opt1.search(objective_function, n_iter=30) |
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opt2.search(objective_function, n_iter=30) |
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opt3.search(objective_function, n_iter=30) |
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opt4.search(objective_function_nan, n_iter=30) |
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opt5.search(objective_function_m_inf, n_iter=30) |
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opt6.search(objective_function_inf, n_iter=30) |
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search_data1 = opt1.search_data |
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search_data2 = opt2.search_data |
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search_data3 = opt3.search_data |
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search_data4 = opt4.search_data |
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search_data5 = opt5.search_data |
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search_data6 = opt6.search_data |
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lipschitz_para = [ |
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({"warm_start_smbo": None}), |
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({"warm_start_smbo": search_data1}), |
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({"warm_start_smbo": search_data2}), |
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({"warm_start_smbo": search_data3}), |
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({"warm_start_smbo": search_data4}), |
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({"warm_start_smbo": search_data5}), |
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({"warm_start_smbo": search_data6}), |
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({"max_sample_size": 10000000}), |
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({"max_sample_size": 10000}), |
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({"max_sample_size": 1000000000}), |
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({"sampling": False}), |
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({"sampling": {"random": 1}}), |
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({"sampling": {"random": 100000000}}), |
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({"replacement": True}), |
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({"replacement": False}), |
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] |
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pytest_wrapper = ("opt_para", lipschitz_para) |
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@pytest.mark.parametrize(*pytest_wrapper) |
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def test_lipschitz_para(opt_para): |
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_base_para_test_func(opt_para, LipschitzOptimizer) |
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def test_warm_start_0(): |
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opt = LipschitzOptimizer(search_space, warm_start_smbo=search_data1) |
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assert len(opt.X_sample) == 30 |
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