DanielBarLev2/Retrieval-Augmented-Generation
A project demonstrating RAG capabilities using Ollama and Wikipedia as the knowledge base. This application shows how you can "finetune" any AI to YOUR actual needs without expensive model training. Simply feed your AI with your own knowledge base, company documents, internal wikis, product specifications, or any domain-specific content.
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Python
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Last pushed
Nov 12, 2025
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