基于遗传算法的自动化领导选择教育项目

E. Kovshov, V. Kuvshinnikov, L. Osipenko
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引用次数: 0

摘要

目的或研究。这项研究的目的是进行一项可能性的研究,使用自动化的方法来寻找一个解决方案的任务,形成一个候选人的选择,在解决广泛的业务问题的可能性的影响因素,如:对业务流程质量的要求,对候选人能力的限制,公司其他流程对候选人的雇用,完成任务的计划紧迫性,任务池中的任务数量和预期任务,任务特点,公司在选择候选人时的私人政策,公司对风险的政策。创新业务任务的类型由主题领域、目标结果的范围、执行的持续时间等给出。考虑外部和内部因素,确保项目团队的有效运作和项目的成功。为工程质量和潜在工程的评价提供了一套属性特征。考虑了为解决一组问题而创建一组候选问题的算法结构。给出了利用遗传规划原理解决所考虑问题的先决条件。定义了搜索算法的实现参数、准则和约束条件。在Jupyter Lab v2环境中实现了算法和建模。结果在文中作了说明。根据建模参数的选取,对算法的实际有效性进行了相对分析。在研究过程中描述了考虑到许多因素,为实施项目池创建候选选择的任务。提出了一种基于遗传启发式搜索算法的求解方法。在Jupyter Lab v2中进行了数值模拟。对仿真结果进行了分析,并对算法参数进行了选择。提出的方法不仅可以根据积累的数据历史自动选择管理人员,还可以调整已建立的流程以改变组织发展的矢量。教育和信息学(信息技术)的相互作用可以在创新项目团队的招聘领域丰富和扩展这两门科学的领域。它们的对象分析,加上遗传编程能力的补充,共同使您能够实现创新项目团队负责人的特定质量,从而帮助最大化业务利益,同时最小化材料成本。由于使用数学仪器和遗传算法技术进行计算实验,有必要强调将这种方法外推到实施创新项目的任何级别的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Leadership Selection Educational Projects Based on Genetic Algorithms
Purpose or research. The purpose of the study is to conduct a research of the possibility to use automated methods of finding a solution for the task of forming a selection of candidates in solving a wide range of business problems with the possibility of the influence of such factors as: requirements for the quality of business processes, restrictions on the competence of candidates, the employment of candidates in other processes of the company, planned urgency of fulfilling tasks, the amount of tasks in the pool and expected tasks, tasks characteristics, private policy of the company when selecting candidates, company's policy on risks.Methods. A typology of innovative business tasks is given by the subject area, the range of target results, the duration of execution, etc. External and internal factors are considered to ensure the effective operation of the project team and the success of the project. There are offered sets of attributive characteristics for assessment of projects quality and potential projects. The structure of the algorithm for solving the problem of creating a selection of candidates for solving a set of problems is considered. Prerequisites for using principles of genetic programming in solving the problem under consideration are given. Search algorithm implementation parameters, criteria and constraints are defined. Algorithm was implemented as well as modeling in the Jupyter Lab v2 environment. The results are described in the text. A relative analysis of practical effectiveness of the algorithm was carried out depending on the modeling parameters to justify the selection of their values.Results. The task of creating a selection of candidates for the implementation of projects pool considering a number of factors was described during the study. An approach to solving the problem based on a genetic heuristic search algorithm has been developed. A numerical simulation was performed in Jupyter Lab v2. Simulation results were analyzed, and algorithm parameters were selected.Conclusion. The proposed approach allows not only automatize the selection of managers based on the accumulated data history, but also to adjust the established process to change the vector of organization development. The interaction of education and informatics (information technology) can enrich and expand the field of both sciences in the field of recruitment of innovative project teams. Their object analysis, supplemented by genetic programming capabilities, together allows you to achieve specified qualities of the head of innovative project teams that help maximize business benefits while minimizing material costs. As a result of computational experiments using mathematical apparatus and genetic algorithm technologies, it is necessary to emphasize the possibility of extrapolating such approaches to any level of implementation of innovative projects.
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