Building Multimodal AI RAG with LlamaIndex, NVIDIA NIM, and Milvus - LLM App Development
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Explore the process of building a multimodal AI retrieval-augmented generation (RAG) application in this 17-minute video tutorial. Learn how to convert documents into text using vision language models like NeVA 22B and DePlot, utilize GPU-accelerated Milvus for efficient embedding storage and retrieval, leverage NVIDIA NIM API's Llama 3 model for handling user queries, and seamlessly integrate all components with LlamaIndex. Gain practical insights into document processing, vector database management, inference techniques, and orchestration for creating a smooth Q&A experience. Access the accompanying notebook for hands-on practice and join the NVIDIA Developer Program for additional resources. Discover how to combine cutting-edge technologies such as LangChain, Mixtral, and NIM APIs to develop advanced LLM applications.
Syllabus
Building Multimodal AI RAG with LlamaIndex, NVIDIA NIM, and Milvus | LLM App Development
Taught by
NVIDIA Developer
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5.0 rating, based on 2 Class Central reviews
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it was very good i really did understood alot.
it is very rare that there are videos which a person sees and understands that instantly and if i be honest this video was one of them which really makes you understand the Llamalndex, NVIDIA NIM, and Milvus LLM App Development. -
good and excellent
The course content is well-structured and easy to follow.
Interactive elements like quizzes and assignments help reinforce learning.
The instructor is clear and engaging, providing useful examples.
The platform is user-friendly with minimal technical issues.
Timely responses from support and active discussion forums enhance the learning experience.