Maria Ângela de S. Fernandes, Ricardo C. Rodrigues, Adelaide Maria S. Antunes
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Design/methodology/approach: The engineer-machine collaboration model draws on Design Thinking (Brown, 2010) and cognitive modeling of engineers based on a model of logical reasoning (Paul & Elder, 2002), integrating the cognitive model with a model of information flows in human-machine interactions (Riley, 1989). A competency model for Industry 4.0 (Prifti et al., 2017), interviews with leaders of Engineering schools of UFRJ, addressing their planning for the implementation of the new National Curriculum Guidelines for Engineering programs (Resolução no. 2, 2019), and application of the GRADE approach (Balshem et al., 2011) supported the identification of evidence of behavioral competencies for Industry 4.0 in the undergraduate programs. Findings: Engineering professionals train their critical analysis and decision-making skills while the machine searches for and processes information and performs simulations. Low quality evidence was found for the training of undergraduates in emotional intelligence, decision-making, and customer relations. No evidence was identified of training in self-management, entrepreneurship, and understanding of the business model.","PeriodicalId":37120,"journal":{"name":"Revista de Administracao Mackenzie","volume":"1 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2023-08-28","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Behavioral training of engineering professionals and students for Industry 4.0\",\"authors\":\"Maria Ângela de S. Fernandes, Ricardo C. Rodrigues, Adelaide Maria S. Antunes\",\"doi\":\"10.1590/1678-6971/eramr230084.en\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Abstract Purpose: To present suggestions for behavioral competency development for engineers and Engineering students to work in Industry 4.0. 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引用次数: 0
摘要
摘要目的:为工业4.0环境下工程师和工科学生的行为能力培养提供建议。原创性/价值:提出了一种人机协作模型(与人工智能应用),用于培训工作场所的工程专业人员。对巴西联邦大学(Universidade Federal do里约热内卢de Janeiro [UFRJ])工程学位课程中发展的工业4.0行为技能及其纳入此类课程的证据质量进行了评估。设计/方法论/方法:工程师-机器协作模型借鉴了设计思维(Brown, 2010)和基于逻辑推理模型的工程师认知模型(Paul & Elder, 2002),将认知模型与人机交互中的信息流模型相结合(Riley, 1989)。工业4.0的能力模型(Prifti et al., 2017),对UFRJ工程学院的领导进行了采访,讨论了他们为实施新的国家工程课程指南(resolution upal o no. 1)制定的计划。2, 2019),以及GRADE方法的应用(Balshem et al., 2011)支持在本科课程中识别工业4.0行为能力的证据。发现:工程专业人员训练他们的批判性分析和决策技能,而机器搜索和处理信息并执行模拟。大学生情商、决策和客户关系方面的培训证据质量较低。没有证据表明在自我管理、企业家精神和对商业模式的理解方面进行了培训。
Behavioral training of engineering professionals and students for Industry 4.0
Abstract Purpose: To present suggestions for behavioral competency development for engineers and Engineering students to work in Industry 4.0. Originality/value: A human-machine collaboration model (with artificial intelligence application) is proposed for training engineering professionals for the workplace. The behavioral skills for Industry 4.0 to be developed in Engineering degree programs and the quality of evidence of their inclusion in such programs of the Federal University of Rio de Janeiro (Universidade Federal do Rio de Janeiro [UFRJ]) are assessed. Design/methodology/approach: The engineer-machine collaboration model draws on Design Thinking (Brown, 2010) and cognitive modeling of engineers based on a model of logical reasoning (Paul & Elder, 2002), integrating the cognitive model with a model of information flows in human-machine interactions (Riley, 1989). A competency model for Industry 4.0 (Prifti et al., 2017), interviews with leaders of Engineering schools of UFRJ, addressing their planning for the implementation of the new National Curriculum Guidelines for Engineering programs (Resolução no. 2, 2019), and application of the GRADE approach (Balshem et al., 2011) supported the identification of evidence of behavioral competencies for Industry 4.0 in the undergraduate programs. Findings: Engineering professionals train their critical analysis and decision-making skills while the machine searches for and processes information and performs simulations. Low quality evidence was found for the training of undergraduates in emotional intelligence, decision-making, and customer relations. No evidence was identified of training in self-management, entrepreneurship, and understanding of the business model.