Deploy an enterprise RAG chatbot with Red Hat OpenShift AI
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Enterprises generate an overwhelming amount of unstructured information, documents, policies, PDFs, wikis, knowledge bases, HR guidelines, legal documents, system manuals, architecture diagrams, and more. When employees struggle to find accurate answers quickly, productivity suffers and undocumented knowledge becomes a bottleneck.

Retrieval-augmented generation (RAG) solves this problem by grounding LLM responses in your company’s knowledge. Instead of relying on a model’s memory or hallucinations, RAG retrieves relevant document chunks from a vector database and supplies them to the model at inference time.

This blog explores the RAG quickstart, a comprehensive blueprint for deploying an enterprise RAG application on [R…

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