RAG — Retrieval-Augmented Generation
Ground AI in your documents with RAG. Learn chunking strategies, vector embeddings, and hallucination reduction techniques.
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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..