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, Pour remplir cette tâche, les caractéristiques des données tabulaires doivent être analysées et les défis de la génération automatique de schémas multidimensionnels doivent être relevés, Par conséquent, nous proposons une typologie des données tabulaires et une démarche automatique basée sur différentes étapes pour intégrer aussi bien une source de données que plusieurs