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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 numpy as np |
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import multiprocessing |
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from .verbosity import set_verbosity |
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from .search_process import SearchProcess |
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from gradient_free_optimizers import ( |
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HillClimbingOptimizer, |
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StochasticHillClimbingOptimizer, |
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TabuOptimizer, |
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RandomSearchOptimizer, |
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RandomRestartHillClimbingOptimizer, |
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RandomAnnealingOptimizer, |
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SimulatedAnnealingOptimizer, |
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StochasticTunnelingOptimizer, |
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ParallelTemperingOptimizer, |
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ParticleSwarmOptimizer, |
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EvolutionStrategyOptimizer, |
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BayesianOptimizer, |
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TreeStructuredParzenEstimators, |
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DecisionTreeOptimizer, |
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) |
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optimizer_dict = { |
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"HillClimbing": HillClimbingOptimizer, |
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"StochasticHillClimbing": StochasticHillClimbingOptimizer, |
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"TabuSearch": TabuOptimizer, |
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"RandomSearch": RandomSearchOptimizer, |
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"RandomRestartHillClimbing": RandomRestartHillClimbingOptimizer, |
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"RandomAnnealing": RandomAnnealingOptimizer, |
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"SimulatedAnnealing": SimulatedAnnealingOptimizer, |
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"StochasticTunneling": StochasticTunnelingOptimizer, |
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"ParallelTempering": ParallelTemperingOptimizer, |
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"ParticleSwarm": ParticleSwarmOptimizer, |
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"EvolutionStrategy": EvolutionStrategyOptimizer, |
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"Bayesian": BayesianOptimizer, |
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"TPE": TreeStructuredParzenEstimators, |
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"DecisionTree": DecisionTreeOptimizer, |
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} |
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class Search: |
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def __init__(self, _main_args_): |
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self._main_args_ = _main_args_ |
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self._info_, _pbar_ = set_verbosity(_main_args_.verbosity) |
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self._pbar_ = _pbar_() |
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def search(self, nth_process=0, rayInit=False): |
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self.start_time = time.time() |
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self.results = {} |
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self.eval_times = {} |
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self.iter_times = {} |
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self.best_scores = {} |
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self.pos_list = {} |
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self.score_list = {} |
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if rayInit: |
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self._run_job(nth_process) |
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elif self._main_args_.n_jobs == 1: |
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self._run_job(nth_process) |
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else: |
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self._run_multiple_jobs() |
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return ( |
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self.results, |
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self.pos_list, |
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self.score_list, |
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self.eval_times, |
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self.iter_times, |
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self.best_scores, |
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) |
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def _search_multiprocessing(self): |
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"""Wrapper for the parallel search. Passes integer that corresponds to process number""" |
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pool = multiprocessing.Pool(self._main_args_.n_jobs) |
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self.processlist, _p_list = zip( |
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*pool.map(self._search, self._main_args_._n_process_range) |
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) |
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return self.processlist, _p_list |
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def _run_job(self, nth_process): |
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self.process, _p_ = self._search(nth_process) |
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self._get_attributes(_p_) |
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def _get_attributes(self, _p_): |
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self.results[self.process.func_] = self.process._process_results() |
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self.eval_times[self.process.func_] = self.process.eval_time |
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self.iter_times[self.process.func_] = self.process.iter_times |
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self.best_scores[self.process.func_] = self.process.score_best |
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if isinstance(_p_, list): |
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self.pos_list[self.process.func_] = [np.array(p.pos_list) for p in _p_] |
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self.score_list[self.process.func_] = [np.array(p.score_list) for p in _p_] |
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else: |
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self.pos_list[self.process.func_] = [np.array(_p_.pos_list)] |
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self.score_list[self.process.func_] = [np.array(_p_.score_list)] |
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def _run_multiple_jobs(self): |
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self.processlist, _p_list = self._search_multiprocessing() |
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for _ in range(int(self._main_args_.n_jobs / 2) + 2): |
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print("\n") |
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for self.process, _p_ in zip(self.processlist, _p_list): |
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self._get_attributes(_p_) |
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def _search(self, nth_process): |
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self._initialize_search(self._main_args_, nth_process, self._info_) |
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n_positions = 10 |
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init_positions = self.process.init_pos(n_positions) |
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self.opt = optimizer_dict[self._main_args_.optimizer]( |
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init_positions, self.process._space_.dim, self._main_args_.opt_para |
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) |
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# loop to initialize N positions |
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for nth_init in range(len(init_positions)): |
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pos_new = self.opt.init_pos(nth_init) |
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score_new = self._get_score(pos_new, 0) |
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self.opt.evaluate(score_new) |
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# loop to do the iterations |
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for nth_iter in range(len(init_positions), self._main_args_.n_iter): |
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pos_new = self.opt.iterate(nth_iter) |
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score_new = self._get_score(pos_new, nth_iter) |
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self.opt.evaluate(score_new) |
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self._pbar_.close_p_bar() |
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return self.process, self.opt.p_list |
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def _get_score(self, pos_new, nth_iter): |
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score_new = self.process.eval_pos(pos_new, self._pbar_, nth_iter) |
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self._pbar_.update_p_bar(1, self.process) |
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if score_new > self.process.score_best: |
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self.process.score = score_new |
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self.process.pos = pos_new |
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return score_new |
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def _time_exceeded(self): |
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run_time = time.time() - self.start_time |
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return self._main_args_.max_time and run_time > self._main_args_.max_time |
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def _initialize_search(self, _main_args_, nth_process, _info_): |
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_main_args_._set_random_seed(nth_process) |
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self.process = SearchProcess(nth_process, _main_args_, _info_) |
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self._pbar_.init_p_bar(nth_process, self._main_args_) |
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