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Les Linked Open Data (LOD) en bibliothèque Programme indicatif

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Les Linked Open Data (LOD) en bibliothèque

Programme indicatif 

 

9h00-

9h15 Introduction – Tour de table 9h15-

10h30 Introduction au web sémantique Travail de groupe A:

Analyse d’un document Turtle Introduction aux Linked Open Data 10h20-

10h50 10h50-

12h20 Travail de groupe B:

Comparer un document Turtle avec un document RDF/XML Introduction à RDF

Travail de groupe C:

Dessiner un graphe pour un article de périodique en appliquant les propriétés du Dublin Core

12h30- 13h45

13h45- 15h15

Introduction dans Turtle Travail de groupe D:

Décrire des livres en triplets dans le format Turtle

Avantages pour les bibliothèques et présentations d’exemples 15h15-

15h30

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15h30- 16h30

16h30- 16h45

Introduction aux ontologies Travail de groupe F :

Transformer Dublin Code en ontologie avec le logiciel Protégé Le futur des catalogueurs

Synthèse et évaluation de la formation  

 

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