Diverse Prompt
Diverse prompting in large language models (LLMs) focuses on optimizing the input instructions to improve model performance and reduce biases across various tasks, including summarization, keypoint detection, and question answering. Current research emphasizes developing methods for automatically generating and refining prompts, exploring different prompt formats (e.g., ensemble prompts, layered prompts), and analyzing the impact of prompt variations on model outputs. This research is significant because effective prompt engineering is crucial for unlocking the full potential of LLMs and ensuring their reliable and unbiased application in diverse fields, from software development to healthcare.
Papers
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