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, Les résultats de la tache 1 pourraient être améliorés en faisant appel à des techniques de recherche d'information plus poussée (e.g. utilisation d'ElasticSearch) pour la création d'autres traits

, Enfin, les deux tâches étant liées à de l'ordonnancement, des fonctions de coûts plus appropriées pourraient être considérées

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