AI Colleagues?

Competence requirements and training for AI use in industry

JournalIndustry 4.0 Science
Issue Volume 42, 2026, Edition 2, Pages 78-86
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Abstract

Artificial intelligence is fundamentally changing tasks, roles, and skills in (industrial) companies. Increasingly, it acts as a colleague, preparing decisions, supporting processes, and interacting with people. This article highlights key competence requirements for AI use in industry, presents an integrated competence model, and outlines practical strategies for the transfer of skills. The aim is to prepare companies and employees for humane, competence-oriented AI implementation that combines technological efficiency with human creativity and judgment.

Keywords

Article

Environmental regulations, high energy prices, wars, and tariffs pose enormous challenges for German industry, leading in the worst case to job cuts and bankruptcies. With a sound AI strategy, industrial companies can build on their traditional strengths and position themselves for the future, but this requires more than just technical solutions: the transfer of skills for working with AI is also of crucial importance.   AI tools for analysis and forecasting, cobots, smart assistance systems, AI agents, and generative AI tools are finding their way into industrial environments and changing work …

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