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Explore the fundamentals of using DeepSeek R1 for Retrieval-Augmented Generation (RAG) on documents, from installation to key features and deployment steps. This quiz covers main ideas, usability, and the technical workflow behind customizing and running DeepSeek R1 in a local chat interface.
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Source URL
https://medium.com/@CyberRaya/document-rag-using-deepseek-r1-29ebf40a2c64