April 4, 2024, 10:33 p.m. | Rutam Bhagat

DEV Community dev.to

RAG systems combine the power of retrieval mechanisms and language models, and enable them to generate contextually relevant and well-grounded responses. However, evaluating the performance and identifying potential failure modes of RAG systems can be a very hard.


Hence, the RAG Triad – a triad of metrics that provide three main steps of a RAG system's execution: Context Relevance, Groundedness, and Answer Relevance. In this blog post, I'll go through the intricacies of the RAG Triad, and guide you through …

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