Retrieval-Augmented Generation (RAG) vs LLM Fine-Tuning, by Cobus Greyling
By A Mystery Man Writer
Description
RAG is known for improving accuracy via in-context learning and is very affective where context is important. RAG is easier to implement and often serves as a first foray into implementing LLMs due…
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Cobus Greyling on LinkedIn: Accuracy & Efficiency Let me first start with a few general observations……
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