RAG vs Agentic AI: How LLMs Connect Data for Smarter AI
Ready to become a certified watsonx AI Assistant Engineer? Register now and use code IBMTechYT20 for 20% off of your exam → https://ibm.biz/BdbvCM Learn more about agentic RAG here → https://ibm.biz/BdbvCS Agentic AI and RAG are redefining how LLMs think and act 🤖. Live from TechXchange in Orlando, Martin Keen & Cedric Clyburn unpack how vector databases, data integration, and context engineering enable smarter AI systems. See how this pairing powers innovation in automation. AI news moves fast. Sign up for a monthly newsletter for AI updates from IBM → https://ibm.biz/BdbvCv #agenticai #retrievalaugmentedgeneration #llm

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