Fine-tuning is suitable when an LLM underperforms on a specific task and prompt engineering alone isn’t feasible due to large, task-specific data that can’t be efficiently included in prompts. This adjusts the model’s weights, making Option B correct. Option A suggests no customization is needed. Option C favors RAG for latest data, not fine-tuning. Option D is vague—fine-tuning requires data and goals, not just optimization without direction. Fine-tuning excels with substantial task-specific data.
OCI 2025 Generative AI documentation likely outlines fine-tuning use cases under customization strategies.
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