Research on a "Software-Hardware Integration and Data-Intelligence Driven" Talent Cultivation Model for Electronic Information Majors in the AI Era
Journal: Journal of Higher Education Research DOI: 10.32629/jher.v7i1.4970
Abstract
With the rapid advancement of AI driving the electronic information industry transition from digitalization to intelligentization, higher education has new challenges for talent cultivation. To address persistent challenges in Electronic Information majors such as curriculum obsolescence, inadequate software-hardware integration and inflexible evaluation, we propose Software-Hardware Integration and Data-Intelligence Driven cultivation model based on the “New Engineering” initiative incorporating four components: visualized curriculum knowledge graph, AI-assisted PBL, virtual-real integrated practice platform and multidimensional evaluation system. By breaking down silos and allowing deep convergence between AI and Electronic Information disciplines, we aim to cultivate innovators in hardware design and advanced intelligent algorithms as theoretical and practical reference for high quality talent development.
Keywords
artificial intelligence, electronic information majors; industry-education integration; talent cultivation model
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Copyright © 2026 Yueyu Zhou
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