What are prompt engineering techniques, and how can they improve LLM outputs?
Answer Posted / Kori Ravindra Kumar Ramnihor
Prompt Engineering techniques refer to strategies for designing effective input prompts that guide the behavior of LLMs towards producing desired outputs. These techniques can include using clear instructions, providing relevant context, and fine-tuning the structure of prompts to encourage specific responses from the model.
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