Development of a Business Intelligence Model for Commercial Management in a Food Industry Company

Authors

DOI:

https://doi.org/10.33936/ecasinergia.v16i3.7671

Abstract

Companies generate large volumes of data through transactional systems, but they are not always able to centralize or analyze this information effectively for strategic decision- making. In the mass consumption food industry, and particularly in Ecuador´s coffee sector, the market and competition require a data-driven approach to identify trends, explore growth opportunities, and analyze consumer behavior with greater accuracy. In this context, a company dedicated to the production and commercialization of coffee faces the need to improve its commercial management through the use of business intelligence. The main problem lies in the fragmentation of information originating from various sources, which makes it difficult to access updated and interpretable reports. For this reason, this research develops a business intelligence model that facilitates data consolidation and enhances commercial management. Finally, after evaluating its implementation with the company’s strategic commercial area, the results confirmed that this solution contributes to more confident, agile, and reliable decision-making based on accurate and timely information.

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Published

2025-09-05