Fine-tuning vs RAG

Fine-tuning vs RAG

Update: 2023-09-063
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Description

In this episode we welcome back our good friend Demetrios from the MLOps Community to discuss fine-tuning vs. retrieval augmented generation. Along the way, we also chat about OpenAI Enterprise, results from the MLOps Community LLM survey, and the orchestration and evaluation of generative AI workloads.



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Fine-tuning vs RAG

Fine-tuning vs RAG

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