Design of a collaborative network for mapping digital skills for Industry 5.0
Design of a collaborative network for mapping digital skills for Industry 5.0
Maria Gustavsson, Oliviu Matei, Laura Andreica, Agneta Halvarsson Lundkvist, Daniel Persson Thunqvist
Abstract. The transition to Industry 5.0 brings new demands for the workforce, where human-centric values, sustainability and resilience are combined with advanced digital technologies. This paper proposes the design of a collaborative network aimed at mapping the digital skills required for Industry 5.0. Drawing on the perspectives of academia, industry partners and public authorities, the work introduces a framework that enables the systematic identification, assessment and continuous updating of digital competencies. The proposed collaborative network provides the basis for shared learning paths, joint educational programmes and the alignment of training offers with the actual needs of organisations operating in the Industry 5.0 paradigm.
Keywords: collaborative networks; Industry 5.0; digital skills; competence mapping; human-centric manufacturing
📋 Cite this publication
Maria Gustavsson, Oliviu Matei, Laura Andreica, Agneta Halvarsson Lundkvist, Daniel Persson Thunqvist, "Design of a collaborative network for mapping digital skills for Industry 5.0", PRO-VE 2024 – 25th IFIP Working Conference on Virtual Enterprises, 2024, 2023.
Reference: PRO-VE 2024 – 25th IFIP Working Conference on Virtual Enterprises, 2024.
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