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The Generative Logic and Evolutionary Pathways of Emerging Occupations in the AIGC Era: An Analytical Framework Based on Technology-Skill-Society Dynamics

Authors

  • TONGWEI XIE

    Zhengzhou University of Technology
    Author
  • Zhengyue Zhao

    Author

Keywords:

Generative Artificial Intelligence; Emerging Occupations; Human-AI Collaboration; Skill Transformation; Technology-Society Interface

Abstract

This study presents a comprehensive theoretical framework to examine how generative artificial intelligence transforms occupational structures through the dynamic interplay of technological capabilities, skill requirements, and societal adaptation. Departing from conventional analyses focused on technical specifications or ethical risks, we develop a novel "technology-skill-society" triad to systematically investigate AIGC's role in occupational evolution. Our analysis reveals three distinct pathways for emerging professions: (1)prompting and optimization-led roles that combine human creative direction with AI execution, (2)evaluation and decision-augmenting positions emphasizing human oversight of AI outputs, and (3)interaction and agent-based occupations redefining human-AI service delivery. Through illustrative analysis of transformed and newly created occupations across multiple sectors, we identify a hierarchical progression of skill demands—from operational tool proficiency through synergistic workflow integration to strategic innovation capabilities. This study reveals that AIGC drives non-linear occupational transformation characterized by professional boundary erosion, cross-domain skill integration, and the rising premium on uniquely human capacities for ethical judgment, complex problem-framing, and emotional intelligence. We further delineate critical governance challenges in algorithmic accountability, intellectual property regimes, and workforce transition management.......

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Published

2026-03-17

How to Cite

The Generative Logic and Evolutionary Pathways of Emerging Occupations in the AIGC Era: An Analytical Framework Based on Technology-Skill-Society Dynamics. (2026). Art & Design for Humanity, 2(03). https://www.adh-journal.com/index.php/journal001/article/view/30