ACADEMIC INTELLIGENCE: DATA, TECHNOLOGY, AND EDUCATIONAL TOURISM IN SYNERGY

Main Article Content

José Coelho
https://orcid.org/0000-0003-4108-8435
Diogo Lima
https://orcid.org/0000-0001-9075-6044

Resumo

A transformação digital das instituições de ensino superior exige ferramentas mais inteligentes que apoiem a tomada de decisão com base em dados académicos. O projeto ADAPTE  recorre à modelação estatística e a visualizações para melhorar o planeamento institucional e o sucesso académico. Com base em dados anonimizados de uma instituição pública de ensino superior em Turismo, o projeto integra análises e dashboards acessíveis que apoiem os seus docentes e órgãos de gestão. Ao identificar padrões de risco associados ao abandono escolar e ao desempenho académico, o ADAPTE permite uma gestão mais eficiente dos planos de estudo, recursos humanos e planeamento estratégico. Embora desenvolvido no contexto de uma escola de hotelaria e turismo, o sistema revela um potencial alargado no domínio do turismo educativo, ao possibilitar uma maior articulação entre as experiências de aprendizagem e os dados sobre o ciclo de estudos dos estudantes.

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Como Citar
Coelho, J., & Lima, D. (2025). ACADEMIC INTELLIGENCE: DATA, TECHNOLOGY, AND EDUCATIONAL TOURISM IN SYNERGY. E3 — Revista De Economia, Empresas E Empreendedores Na CPLP, 11(2), 65–74. https://doi.org/10.29073/e3.v11i2.1045
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Biografias Autor

José Coelho, ESHTE

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Diogo Lima, ESHTE

Diogo Lima is a senior researcher at LaSIGE, also at the Faculty of Sciences, University of Lisbon, and holds a Ph.D. in Informatics (2024). His research centers on Distributed and Fog Computing, with applications in data consistency, systems scalability, and performance optimization. Diogo has taught extensively in database systems and has contributed to applied research in data prediction and data classification.

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