OPPORTUNITIES FOR THE DIGITAL TRANSFORMATION OF THE SUPPLY CHAIN OF THE BANANA SECTOR BASED ON ARTIFICIAL INTELLIGENCE SOFTWARE

Authors

DOI:

https://doi.org/10.33571/rpolitec.v17n33a4

Keywords:

software, artificial intelligent, banana sector, supply chain, digital transformation

Abstract

Artificial intelligence offers great opportunities for the supply chain, making it a competitive advantage for today's changing market. This paper aims to identify the impacts and opportunities that artificial intelligence software can offer to supply chain in the Colombian banana sector to facilitate the operation and improve the performance. The searching method consists of six steps getting 72 investigations finally. The sources of information were four databases. The main conclusion is the supply chain of the banana sector has everything for implementation of solutions based on intelligent software in order to achieve adaptation, flexibility and context awarenes and execution domain.

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Author Biography

Isabel Cristina Arango-Palacio, Magister Logística Integral, Docente, Politécnico Colombiano Jaime Isaza Cadavid

Medellín, Docente

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Published

2021-05-21

How to Cite

Arango-Palacio, I. C. (2021). OPPORTUNITIES FOR THE DIGITAL TRANSFORMATION OF THE SUPPLY CHAIN OF THE BANANA SECTOR BASED ON ARTIFICIAL INTELLIGENCE SOFTWARE. Revista Politécnica, 17(33), 47–63. https://doi.org/10.33571/rpolitec.v17n33a4

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