CAREPROFSYS – UNE ONTOLOGIE POUR LE DÉVELOPPEMENT DE CARRIÈRE EN INGÉNIERIE CONÇUE POUR LE MARCHÉ DU TRAVAIL ROUMAIN

Auteurs

  • MARIA-IULIANA DASCĂLU Department of Engineering in Foreign Languages, University POLITEHNICA of Bucharest, Splaiul Independenţei 313, Bucharest, 060042, Romania Author
  • CONSTANȚA-NICOLETA BODEA Department of Economic Informatics and Cybernetics, Bucharest University of Economic Studies, Calea Dorobantilor 13-15, Bucharest, 010552, Romania, Centre for Industry and Services Economics, “COSTIN C. KIRITESCU”, National Institute for Economic Research, Romanian Academy, Calea 13 Septembrie, 13, Bucharest, 050711, Romania Author
  • IOSIF VASILE NEMOIANU Department of Engineering in Foreign Languages, University POLITEHNICA of Bucharest, Splaiul Independenţei 313, Bucharest, 060042, Romania Author
  • ALEXANDRU HANG Department of Engineering in Foreign Languages, University POLITEHNICA of Bucharest, Splaiul Independenţei 313, Bucharest, 060042, Romania Author
  • IMOLA-FLÓRA PUSKÁS Department of Engineering in Foreign Languages, University POLITEHNICA of Bucharest, Splaiul Independenţei 313, Bucharest, 060042, Romania Author
  • IULIA-CRISTINA STĂNICĂ Department of Engineering in Foreign Languages, University POLITEHNICA of Bucharest, Splaiul Independenţei 313, Bucharest, 060042, Romania Author
  • MIHAI DASCĂLU Computer Science Department University POLITEHNICA of Bucharest, Splaiul Independenţei 313, Bucharest, 060042, Romania Author

DOI :

https://doi.org/10.59277/RRST-EE.2023.68.2.16

Mots-clés :

Recommandation de carrière, Ontologie, Industrie 4.0, Professionnalisation de l'ingénierie

Résumé

La professionnalisation du travail représente le processus de transformation d'un métier en une profession avec un degré élevé d'intégrité et de compétence, nécessitant l'existence de cadres de qualification professionnelle, de normes et de nomenclatures pour décrire les compétences, les capacités et l'éducation nécessaires pour qu'un individu ait un carrière fructueuse. L'étude actuelle fournit des détails sur les professions du domaine de l'ingénierie qui sont modélisées à l'aide d'un prototype d'ontologie adapté au contexte de l'industrie 4.0 dans le paysage roumain. Notre ontologie représente les bases pour fournir des recommandations personnalisées pour trouver des professions appropriées sur le marché du travail roumain tout en illustrant l'importance des outils d'IA pour soutenir le développement de carrière.

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Publiée

2023-07-03

Numéro

Rubrique

Automatique et ordinateurs | Automation and Computer Sciences

Comment citer

CAREPROFSYS – UNE ONTOLOGIE POUR LE DÉVELOPPEMENT DE CARRIÈRE EN INGÉNIERIE CONÇUE POUR LE MARCHÉ DU TRAVAIL ROUMAIN. (2023). REVUE ROUMAINE DES SCIENCES TECHNIQUES — SÉRIE ÉLECTROTECHNIQUE ET ÉNERGÉTIQUE, 68(2), 212-217. https://doi.org/10.59277/RRST-EE.2023.68.2.16