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easyRAG Evaluation

A team deploys a RAG system and wants to evaluate it. They measure: (1) user satisfaction score (thumbs up/down), (2) response time, (3) number of tokens generated. Their ML lead says: "None of these metrics tell us whether the RAG pipeline components are working correctly." What are the four core RAGAS metrics that directly evaluate RAG pipeline component quality?

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