N-RPG - Novel role playing game da turfu

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Deep LearningN-RPG
Overview

N-RPG

Ce README sera la page de garde du projet.

Contenu

Il contiendra la présentation et le sommaire, les noms, les rôles Il documentera aussi comment lancer le jeu, l'installer ainsi que quelques informations de fonctionnement général montrant le plan du projet et comment le modifier.

Autres

Le planning (qui sera rempli au fur et à mesure), le journal des difficultés, des outils utilisés, et de la vision du projet en détail, et le journal (ainsi que les fichiers) de test sont dans le dossier portofolio. On y retrouvera aussi une modélisation de l'arbre de l'histoire, sous les différentes formes informatiques obtenues par le parser et la classe arbre ainsi que sous forme graphique.

La documentation et cet extrait sont éventuellement à traduire en fonction de la langue choisie.

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Comments
  • Parser links

    Parser links

    Ajout du parser entièrement fonctionnel, et de l'arbre pour y stocker l'information obtenue. Il est possible d'afficher l'arbre, et d'utiliser le parser directement par le moteur.

    opened by rigobert9 0
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