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.

Domina los fundamentos para obtener sistemáticamente resultados de calidad.

Objetivos

01Comprender las bases técnicas de los LLM
02Identificar la anatomía de un prompt bien estructurado
03Formular instrucciones complejas para resultados más precisos

Contenido

Section 01
Cómo funciona un LLM? Tokens, contexto y temperatura.
Section 02
Los 5 componentes de un prompt efectivo: rol, contexto, instrucción, formato, restricciones.
Section 03
Ejercicio práctico: escribir un prompt multi-parte.
Section 04
Errores comunes y cómo evitarlos.

Habilidades

Aplicar los 5 componentes de un prompt efectivo.Estructurar instrucciones multi-parte.Ajustar parámetros LLM para resultados deseados.

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Preguntas frecuentes

¿Qué es el módulo "LLM Fundamentals"?+

"LLM Fundamentals" es un módulo de formación en línea de nivel Principiante • ~1h. Understand Transformers, tokens, temperature, top-p, and context windows. Free guide to the architecture behind ChatGPT and Claude.

¿Hay requisitos previos para este módulo?+

Sí, recomendamos completar el Módulo 0 antes de comenzar este módulo.

¿Este módulo es gratuito?+

Sí, este módulo es completamente gratuito y accesible sin suscripción de pago.

¿Qué aprenderé en este módulo?+

Aplicar los 5 componentes de un prompt efectivo.. Estructurar instrucciones multi-parte.. Ajustar parámetros LLM para resultados deseados..