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Retrieval-Augmented Generation (RAG) doesn’t stop at text. The future is multimodal RAG, where models can reason over documents, images, charts, and more.
​In this hands-on session, we’ll explore:

  • ​What Multimodal RAG is and why it matters
  • ​How to combine text + images in a retrieval pipeline
  • ​Using vision-language embeddings for storing & searching multimodal data
  • ​Running live demos with small VLMs (Vision-Language Models) and vector databases
  • ​Practical use cases: compliance checks, document Q&A, product search, and research workflows

​🔹 Format: Interactive demo + live coding walkthrough
🔹 Who’s it for: AI engineers, researchers, and product teams building advanced AI systems
🔹 Takeaway: A working notebook + examples of multimodal retrieval powering next-gen AI apps

Artificial Intelligence
Artificial Intelligence Applications
Machine Intelligence
Machine Learning
Data Science

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