Retrieval-Augmented Generation (RAG) is a groundbreaking advancement in artificial intelligence that combines the strengths of retrieval-based systems with generative models. By integrating real-time access to external knowledge bases, RAG models generate responses that are both contextually coherent and factually accurate. This fusion enables AI to provide up-to-date information, overcoming the limitations of traditional models that rely solely on static training data. RAG is transforming industries—from healthcare to legal services—by enhancing the way AI systems interact with and process information, marking a significant shift toward more intelligent and reliable AI-driven technology.
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