开发工程能力的元空间

Junjiraporn Thongprasit, Pallop Piriyasurawong
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引用次数: 2

摘要

本研究的目的是开发一个工程能力发展的元框架。本研究分为两个阶段。在第一阶段,它将研究和综合工程能力发展的元空间框架的元素。研究人员从相关文献和研究中对各种问题进行了研究、分析和综合。然后它被发展成一个工程能力发展的元框架。研究发现,工程能力发展的元域框架包括三个组成部分,即:元域、元域平台和面向未来的工程能力。在工程中应用元数据库有助于工程管理系统的完善和发展。它也有助于劳动力生产或工程人员有适当的表现,满足世界劳动力市场的需求。因此,利用元宇宙来培养能够达到国际标准并在工程中充分发挥作用的工程师,是为未来即将发生的数字化转型做好准备的好方法。
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Metaverse for Developing Engineering Competency
The objective of this research is to develop a metaverse framework for engineering competency development. This research is divided into two phases. In the first phase, it will study and synthesize the elements of a metaverse framework for engineering competency development. The researcher has studied, analyzed, and synthesized data on various issues from related documents and research. It was then developed into a metaverse framework for engineering competency development. We found that a metaverse framework for engineering competency development comprises three components, namely: metaverse, metaverse platform, and engineering competency for future ready. Using the metaverse in engineering will help improve and develop the engineering management system. It is also useful for workforce production or engineering personnel to have appropriate performance and meet the needs of the world workforce market. So, using the metaverse to train engineers who can meet international standards and play a full role in engineering is a good way to get ready for the digital transformation that will happen in the future.
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