Qué necesitas saber antes de
comenzar

Inicio 4 June 2026 04:18

Fin 4 June 2026

00 Días
00 Horas
00 Minutos
00 Segundos
course image

RAG: Construir aplicaciones con LangChain y LlamaIndex

Aprende el desarrollo de RAG mediante entrenamiento práctico en pipelines de recuperación, interfaces Gradio y flujos de trabajo de LlamaIndex para construir aplicaciones de IA precisas y conscientes del contexto.
IBM via edX

IBM

537 Cursos


9 hours

Actualización opcional disponible

Intermedio

Avanza a tu propio ritmo

Free Online Course (Audit)

Actualización opcional disponible

Resumen

Retrieval-Augmented Generation (RAG) is rapidly becoming a core skill for Data Scientists, AI Engineers, and Software Developers, with competitive salaries reflecting its demand. In this course, you’ll start by learning how RAG improves information retrieval, context accuracy, and user interactions.

You’ll build your first retrieval pipeline and experiment with document splitting, embedding, and retrieval workflows using Python. You’ll design user-facing GenAI applications with Gradio, creating clean, interactive interfaces that connect your retrieval pipeline to real-time user queries.

Through guided labs, you’ll transform project ideas into a working QA system capable of answering questions from loaded documents. You’ll explore LlamaIndex as an alternative RAG framework, examining its structure, strengths, and differences compared with LangChain.

By completing hands-on labs, you’ll build a full RAG application using both frameworks, gaining a practical understanding of when each tool is most effective. By the end of this course, you’ll have the experience needed to design, implement, evaluate, and deploy end-to-end RAG applications that power context-aware AI solutions.

Programa


    Materias

    Artificial Intelligence