All GuidesGuide 05
Intermédiaire • ~50min

RAG — Retrieval-Augmented Generation

Ground AI in your documents with RAG. Learn chunking strategies, vector embeddings, and hallucination reduction techniques.

Réduisez les hallucinations en garantissant que chaque réponse peut être reliée à une source documentaire maîtrisée.

Objectifs

01Expliquer les principes du Retrieval-Augmented Generation
02Structurer un contexte documentaire adapté aux prompts
03Mettre en œuvre un mini-RAG local avec citations

Sommaire

Section 01
Principe de l'ancrage contextuel.
Section 02
Découper et vectoriser un corpus de référence.
Section 03
Optimiser la formulation de requêtes pour éviter la perte de contexte.
Section 04
Créer un assistant métier local citant ses sources.

Compétences

Construire une base de connaissances indexée pour un assistant IA.Évaluer la pertinence d'une réponse citée.Ancrer une génération sur des sources vérifiables.

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Questions fréquentes

Qu'est-ce que le module « RAG — Retrieval-Augmented Generation » ?+

« RAG — Retrieval-Augmented Generation » est un module de formation en ligne de niveau Intermédiaire • ~50min. Ground AI in your documents with RAG. Learn chunking strategies, vector embeddings, and hallucination reduction techniques.

Y a-t-il des prérequis pour ce module ?+

Oui, nous recommandons d'avoir complété le Module 4 avant de suivre ce module.

Ce module est-il gratuit ?+

Oui, ce module est entièrement gratuit et accessible sans inscription payante.

Qu'est-ce que je vais apprendre dans ce module ?+

Construire une base de connaissances indexée pour un assistant IA.. Évaluer la pertinence d'une réponse citée.. Ancrer une génération sur des sources vérifiables..