RAG - Extracting Information from PDFs Using LlamaIndex, Gemini, and Nvidia NIM with Llama 3.2
The Machine Learning Engineer via YouTube
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Watch a 41-minute Spanish language tutorial demonstrating how to extract information from PDF documents using LlamaIndex framework in combination with different models - Gemini and Nvidia NIM for embeddings, and LLama 3.2 3B as the language model. Learn the practical implementation of RAG (Retrieval Augmented Generation) through a detailed walkthrough, with access to the complete code notebook on GitHub for hands-on practice. Master the techniques of building conversational AI systems that can effectively process and respond to queries about PDF content using state-of-the-art machine learning models.
Syllabus
RAG: Hablar con tus PDFs: LLamaIndex , Gemini vs Nvidia NIM Llama 3.2 #machinelearning #datascience
Taught by
The Machine Learning Engineer