All GuidesGuide 01
Principiante • ~1h

LLM Fundamentals

Understand Transformers, tokens, temperature, top-p, and context windows. Free guide to the architecture behind ChatGPT and Claude.

Padroneggiare i fondamenti per ottenere sistematicamente risultati di qualità.

Obiettivi

01Comprendere le basi tecniche degli LLM
02Identificare l'anatomia di un prompt ben strutturato
03Formulare istruzioni complesse per risultati più precisi

Contenuti

Section 01
Come funziona un LLM? Token, contesto e temperatura.
Section 02
Le 5 componenti di un prompt efficace: ruolo, contesto, istruzione, formato, vincoli.
Section 03
Esercizio pratico: scrivere un prompt multi-parte.
Section 04
Errori comuni e come evitarli.

Competenze

Applicare le 5 componenti di un prompt efficace.Strutturare istruzioni multi-parte.Adattare i parametri LLM per i risultati desiderati.

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Domande frequenti

Cos'è il modulo "LLM Fundamentals"?+

"LLM Fundamentals" è un modulo di formazione online di livello Principiante • ~1h. Understand Transformers, tokens, temperature, top-p, and context windows. Free guide to the architecture behind ChatGPT and Claude.

Ci sono prerequisiti per questo modulo?+

Sì, consigliamo di completare il Modulo 0 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?+

Applicare le 5 componenti di un prompt efficace.. Strutturare istruzioni multi-parte.. Adattare i parametri LLM per i risultati desiderati..