Oct. 6, 2023, 12:01 p.m. | Ksenia Se

TheSequence thesequence.substack.com

If you’re trying to improve the quality of your LLM-generated responses, you’ve probably explored retrieval augmented generation (RAG). Grounding your model on external sources of information improves explainability and the quality of responses. To truly make the most of RAG, you need the right infrastructure and evaluation frameworks in place.

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