All GuidesGuide 05
Intermedio • ~50min

RAG — Retrieval-Augmented Generation

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

Rendete le vostre risposte IA più precise ancorandole ai vostri dati.

Obiettivi

01Comprendere il principio RAG (Retrieval-Augmented Generation)
02Implementare una pipeline RAG semplice con database vettoriale
03Ottimizzare strategie di chunking e qualità del recupero

Contenuti

Section 01
Introduzione al RAG: perché integrare dati esterni?
Section 02
Vettorizzazione, embedding e recupero semantico.
Section 03
Esercizio: indicizzare un set di documenti e interrogare con RAG.
Section 04
Ottimizzazione: chunking, metadati e reranking.

Competenze

Implementare una pipeline RAG con database vettoriale.Chunking e indicizzazione documenti per recupero ottimale.Migliorare la qualità del recupero con metadati e reranking.

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Domande frequenti

Cos'è il modulo "RAG — Retrieval-Augmented Generation"?+

"RAG — Retrieval-Augmented Generation" è un modulo di formazione online di livello Intermedio • ~50min. Ground AI in your documents with RAG. Learn chunking strategies, vector embeddings, and hallucination reduction techniques.

Ci sono prerequisiti per questo modulo?+

Sì, consigliamo di completare il Modulo 4 prima di iniziare questo modulo.

Questo modulo è gratuito?+

Sì, questo modulo è completamente gratuito e accessibile senza abbonamento a pagamento.

Cosa imparerò in questo modulo?+

Implementare una pipeline RAG con database vettoriale.. Chunking e indicizzazione documenti per recupero ottimale.. Migliorare la qualità del recupero con metadati e reranking..