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Artificial intelligence, big data, algorithms and Industry 4.0 in firms and clusters

Author

Listed:
  • Luciana Lazzeretti
  • Rafael Boix Domenech
  • Jose-Luis Hervas-Oliver
  • Niccolò Innocenti

Abstract

This collection on ‘Artificial intelligence, big data, algorithms and Industry 4.0 in firms and clusters’ is introduced exploring the themes discussed by the nine papers and grouped into three categories to uncover new dynamics and identify future research opportunities for clusters and organizations in these transformative times. The first group explores theoretical aspects of AI and its evolution in social sciences, focusing on industry 4.0, smart cities, big data, and other related topics. The second group examines the role of industrial robots in employment, productivity, and knowledge absorption in industrial districts. The third group discusses innovation in the context of local production systems, AI ecosystems, and the growth and potential of the Metaverse.

Suggested Citation

  • Luciana Lazzeretti & Rafael Boix Domenech & Jose-Luis Hervas-Oliver & Niccolò Innocenti, 2023. "Artificial intelligence, big data, algorithms and Industry 4.0 in firms and clusters," European Planning Studies, Taylor & Francis Journals, vol. 31(7), pages 1297-1303, July.
  • Handle: RePEc:taf:eurpls:v:31:y:2023:i:7:p:1297-1303
    DOI: 10.1080/09654313.2023.2220490
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