The decision between using Long Context and RAG in model applications depends on the specific use case. Long Context is beneficial for tasks where making accurate and thoughtful decisions is crucial, even though it may be more expensive. On the other hand, RAG is preferred in scenarios where quick retrieval of information is more important than extensive context. Both approaches have their advantages and drawbacks, and choosing between them can be based on the nature of the application. Additionally, incorporating fine-tuning of models with new knowledge can be beneficial depending on the business use case and the stability of the domain.

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