Research on Intelligent Construction Education of Virtual Reality Technology
Keywords:
Virtual Reality Technology, Intelligent construction, Educational applications, Teaching effectivenessAbstract
With the continuous development of technology, the application of virtual reality technology in various fields is becoming increasingly widespread. In the field of architecture, virtual reality technology has brought new opportunities and challenges to intelligent construction education. Intelligent construction, as an important development direction in the construction industry, has put forward higher requirements for the cultivation of professional talents. Virtual reality technology provides a new teaching method and approach for intelligent construction education with its unique immersive experience and interactivity. This article will explore the application of virtual reality technology in intelligent construction education, aiming to improve teaching quality and cultivate professional talents that meet the needs of industry development.
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