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Stakeholder Management in Technological Projects and the Opportunity of Artificial Intelligence. A Case Study

In: Digital Transformation in Industry

Author

Listed:
  • Manuel Otero-Mateo

    (University of Cadiz)

  • Alberto Cerezo-Narváez

    (University of Cadiz)

  • Andrés Pastor-Fernández

    (University of Cadiz)

  • Margarita Castilla-Barea

    (University of Cadiz)

  • Magdalena Ramírez-Peña

    (University of Cadiz)

Abstract

Successful project management entails meeting the project objectives, completing the project scope, and achieving the set deliverables, fulfilling stakeholder requirements. Thus, the more complex and varied the expectations of the stakeholders, the greater the need for engaging them in the decision-making process. In this sense, the application of artificial intelligence can help in this integration. First, the paper presents a framework to identifying the internal and external factors associated with stakeholders. Later the relationship is discussed between the identified Critical Success Factors (CSF) and the decision-making process serving as support artificial intelligence. The CSFs identified have been obtained through 315 questionnaires administered to various stakeholders who had taken part in 45 technological projects implemented in a manufacturing company over a 10-year period. The CSFs identified may help to gain a better understanding of dimensions such as top management support, personnel/teamwork and technical task ability, aspects which should not be overlooked, and where the use of artificial intelligence can help to maximize impact and support digital transformation in industry.

Suggested Citation

  • Manuel Otero-Mateo & Alberto Cerezo-Narváez & Andrés Pastor-Fernández & Margarita Castilla-Barea & Magdalena Ramírez-Peña, 2023. "Stakeholder Management in Technological Projects and the Opportunity of Artificial Intelligence. A Case Study," Lecture Notes in Information Systems and Organization, in: Vikas Kumar & Grigorios L. Kyriakopoulos & Victoria Akberdina & Evgeny Kuzmin (ed.), Digital Transformation in Industry, pages 297-318, Springer.
  • Handle: RePEc:spr:lnichp:978-3-031-30351-7_23
    DOI: 10.1007/978-3-031-30351-7_23
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