Efectos de la capacidad de Big Data en la fabricación sostenible y la economía circular en las industrias brasileñas
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Palabras clave

Resource-based theory
big data capability
sustainable manufacturing
circular economy

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Klein, L., & Sano Guilhem, A. P. (2024). Efectos de la capacidad de Big Data en la fabricación sostenible y la economía circular en las industrias brasileñas. RBGN Revista Brasileira De Gestão De Negócios, 26(01). https://doi.org/10.7819/rbgn.v26i01.4250

Resumen

Objeto – El objetivo es analizar la relación entre las capacidades de Análisis de Big Data (ABD) en el desarrollo de la manufactura sostenible y la economía circular en las industrias brasileñas.

https://doi.org/10.7819/rbgn.v26i01.4250
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