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Main Authors: Tynchenko, Vadim, Kudryavtsev, Aleksei, Nelyub, Vladimir, Borodulin, Aleksei, Gantimurov, Andrei
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2405.00686
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author Tynchenko, Vadim
Kudryavtsev, Aleksei
Nelyub, Vladimir
Borodulin, Aleksei
Gantimurov, Andrei
author_facet Tynchenko, Vadim
Kudryavtsev, Aleksei
Nelyub, Vladimir
Borodulin, Aleksei
Gantimurov, Andrei
contents This report presents the test results Python library BaumEvA, which implements evolutionary algorithms for optimizing various types of problems, including computer vision tasks accompanied by the search for optimal model architectures. Testing was carried out to evaluate the effectiveness and reliability of the pro-posed methods, as well as to determine their applicability in various fields. Dur-ing testing, various test functions and parameters of evolutionary algorithms were used, which made it possible to evaluate their performance in a wide range of conditions. Test results showed that the library provides effective and reliable methods for solving optimization problems. However, some limitations were identified related to computational resources and execution time of algorithms on problems with large dimensions. The report includes a detailed description of the tests performed, the results obtained and conclusions about the applicability of the genetic algorithm in various tasks. Recommendations for choosing algorithm pa-rameters and using the library to achieve the best results are also provided. The report may be useful to developers involved in the optimization of complex com-puting systems, as well as to researchers studying the possibilities of using evo-lutionary algorithms in various fields of science and technology.
format Preprint
id arxiv_https___arxiv_org_abs_2405_00686
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Technical Report on BaumEvA Evolutionary Optimization Python-Library Testing
Tynchenko, Vadim
Kudryavtsev, Aleksei
Nelyub, Vladimir
Borodulin, Aleksei
Gantimurov, Andrei
Neural and Evolutionary Computing
Artificial Intelligence
Computer Vision and Pattern Recognition
65K10
I.2.8; I.2.5; G.4
This report presents the test results Python library BaumEvA, which implements evolutionary algorithms for optimizing various types of problems, including computer vision tasks accompanied by the search for optimal model architectures. Testing was carried out to evaluate the effectiveness and reliability of the pro-posed methods, as well as to determine their applicability in various fields. Dur-ing testing, various test functions and parameters of evolutionary algorithms were used, which made it possible to evaluate their performance in a wide range of conditions. Test results showed that the library provides effective and reliable methods for solving optimization problems. However, some limitations were identified related to computational resources and execution time of algorithms on problems with large dimensions. The report includes a detailed description of the tests performed, the results obtained and conclusions about the applicability of the genetic algorithm in various tasks. Recommendations for choosing algorithm pa-rameters and using the library to achieve the best results are also provided. The report may be useful to developers involved in the optimization of complex com-puting systems, as well as to researchers studying the possibilities of using evo-lutionary algorithms in various fields of science and technology.
title Technical Report on BaumEvA Evolutionary Optimization Python-Library Testing
topic Neural and Evolutionary Computing
Artificial Intelligence
Computer Vision and Pattern Recognition
65K10
I.2.8; I.2.5; G.4
url https://arxiv.org/abs/2405.00686