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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 numpy as np |
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import pandas as pd |
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from tqdm import tqdm |
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from .optimizers import RandomSearchOptimizer |
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from .run_search import run_search |
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from .print_info import print_info |
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class HyperactiveResults: |
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def __init__(*args, **kwargs): |
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pass |
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def _sort_results_objFunc(self, objective_function): |
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best_score = -np.inf |
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best_para = None |
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search_data = None |
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results_list = [] |
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for results_ in self.results_list: |
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nth_process = results_["nth_process"] |
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process_infos = self.process_infos[nth_process] |
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objective_function_ = process_infos["objective_function"] |
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if objective_function_ != objective_function: |
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continue |
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if results_["best_score"] > best_score: |
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best_score = results_["best_score"] |
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best_para = results_["best_para"] |
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results_list.append(results_["results"]) |
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if len(results_list) > 0: |
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search_data = pd.concat(results_list) |
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self.objFunc2results[objective_function] = { |
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"best_para": best_para, |
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"best_score": best_score, |
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"search_data": search_data, |
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} |
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def _sort_results_search_id(self, search_id): |
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for results_ in self.results_list: |
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nth_process = results_["nth_process"] |
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search_id_ = self.process_infos[nth_process]["search_id"] |
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if search_id_ != search_id: |
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continue |
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best_score = results_["best_score"] |
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best_para = results_["best_para"] |
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search_data = results_["results"] |
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self.search_id2results[search_id] = { |
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"best_para": best_para, |
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"best_score": best_score, |
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"search_data": search_data, |
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} |
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def _get_one_result(self, id_, result_name): |
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if isinstance(id_, str): |
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if id_ not in self.search_id2results: |
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self._sort_results_search_id(id_) |
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return self.search_id2results[id_][result_name] |
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else: |
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if id_ not in self.objFunc2results: |
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self._sort_results_objFunc(id_) |
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return self.objFunc2results[id_][result_name] |
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def best_para(self, id_): |
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return self._get_one_result(id_, "best_para") |
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def best_score(self, id_): |
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return self._get_one_result(id_, "best_score") |
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def results(self, id_): |
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return self._get_one_result(id_, "search_data") |
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class Hyperactive(HyperactiveResults): |
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def __init__( |
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self, |
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verbosity=["progress_bar", "print_results", "print_times"], |
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distribution={ |
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"multiprocessing": { |
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"initializer": tqdm.set_lock, |
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"initargs": (tqdm.get_lock(),), |
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} |
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}, |
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n_processes="auto", |
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): |
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super().__init__() |
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if verbosity is False: |
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verbosity = [] |
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self.verbosity = verbosity |
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self.distribution = distribution |
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self.n_processes = n_processes |
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self.search_ids = [] |
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self.process_infos = {} |
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self.objFunc2results = {} |
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self.search_id2results = {} |
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def _add_search_processes( |
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self, |
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random_state, |
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objective_function, |
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search_space, |
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optimizer, |
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n_iter, |
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n_jobs, |
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max_score, |
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memory, |
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memory_warm_start, |
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search_id, |
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): |
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for _ in range(n_jobs): |
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nth_process = len(self.process_infos) |
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self.process_infos[nth_process] = { |
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"random_state": random_state, |
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"verbosity": self.verbosity, |
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"nth_process": nth_process, |
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"objective_function": objective_function, |
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"search_space": search_space, |
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"optimizer": optimizer, |
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"n_iter": n_iter, |
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"max_score": max_score, |
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"memory": memory, |
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"memory_warm_start": memory_warm_start, |
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"search_id": search_id, |
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} |
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def add_search( |
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self, |
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objective_function, |
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search_space, |
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n_iter, |
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search_id=None, |
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optimizer="default", |
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n_jobs=1, |
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initialize={"grid": 4, "random": 2, "vertices": 4}, |
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max_score=None, |
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random_state=None, |
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memory=True, |
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memory_warm_start=None, |
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): |
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if isinstance(optimizer, str): |
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if optimizer == "default": |
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optimizer = RandomSearchOptimizer() |
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optimizer.init(search_space, initialize) |
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if search_id is not None: |
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search_id = search_id |
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self.search_ids.append(search_id) |
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else: |
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search_id = str(len(self.search_ids)) |
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self.search_ids.append(search_id) |
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self._add_search_processes( |
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random_state, |
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objective_function, |
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search_space, |
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optimizer, |
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n_iter, |
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n_jobs, |
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max_score, |
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memory, |
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memory_warm_start, |
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search_id, |
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) |
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def run(self, max_time=None): |
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for nth_process in self.process_infos.keys(): |
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self.process_infos[nth_process]["max_time"] = max_time |
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self.results_list = run_search( |
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self.process_infos, self.distribution, self.n_processes |
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) |
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for results in self.results_list: |
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nth_process = results["nth_process"] |
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print_info( |
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verbosity=self.process_infos[nth_process]["verbosity"], |
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objective_function=self.process_infos[nth_process][ |
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"objective_function" |
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], |
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best_score=results["best_score"], |
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best_para=results["best_para"], |
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best_iter=results["best_iter"], |
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eval_times=results["eval_times"], |
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iter_times=results["iter_times"], |
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n_iter=self.process_infos[nth_process]["n_iter"], |
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) |
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