EXPLORING INTERCONNECTIONS BETWEEN MACHINE LEARNING AND OPERATIONS STRATEGY

Code: 220107244
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Título

EXPLORING INTERCONNECTIONS BETWEEN MACHINE LEARNING AND OPERATIONS STRATEGY

Autores(as):
  • Thais Carreira Pfutzenreuter

    PFUTZENREUTER, THAIS C.

  • Nathália Renata Grossi Chamie

    CHAMIE, NATHÁLIA R. G.

  • Sérgio Eduardo Gouvêa da Costa

    DA COSTA, SERGIO E. G.

  • Edson Pinheiro de Lima

    DE LIMA, EDSON P.

DOI
10.37885/220107244
Publicado em

16/02/2022

Páginas

2818-2830

Capítulo

217

Publicado no livro

OPEN SCIENCE RESEARCH I

Resumo

Within the data science and artificial intelligence fields of study, machine learning have supported performance improvement in medicine, manufacturing, law and even sport environments. The purpose of this paper is to investigate how machine learning has been used as a tool to improve the assertiveness of decision-making, providing competitive advantages in the wide field of operations management. This exploratory research analyzes the content of five machine-learning studies, relating each of them to Slack’s strategy pillars: cost, speed, quality, flexibility and dependability. Research design was limited to Scopus’ papers published exclusively in high impact journals. Results emphasize the important role of machine learning in organizational competitive advantages and limitations are used to address further research suggestions, extending the present investigation with a more extensive bibliographic portfolio analysis. The contribution of this paper is a matrix analysis of how machine-learning projects indirectly contribute to at least three strategy dimensions simultaneously. Complementarily, an illustration was built for a better comprehension of the interrelationships among the strategic pillars reinforced by the analyzed studies.

Palavras-chave

Artificial Intelligence, decision making, machine learning, Operations, Operations Strategy, Slack, Strategy.

Autor(a) Correspondente
Licença

Este capítulo está licenciado com uma Licença Creative Commons Atribuição-NãoComercial-SemDerivações 4.0 Internacional.

Licença Creative Commons

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