Robinson Kyle, Bontekoe Karen, Muellenbach Joanne
J Med Libr Assoc. 2025 Apr 18;113(2):184-188. doi: 10.5195/jmla.2025.2022.
Prompt engineering, an emergent discipline at the intersection of Generative Artificial Intelligence (GAI), library science, and user experience design, presents an opportunity to enhance the quality and precision of information retrieval. An innovative approach applies the widely understood PICO framework, traditionally used in evidence-based medicine, to the art of prompt engineering. This approach is illustrated using the "Task, Context, Example, Persona, Format, Tone" (TCEPFT) prompt framework as an example. TCEPFT lends itself to a systematic methodology by incorporating elements of task specificity, contextual relevance, pertinent examples, personalization, formatting, and tonal appropriateness in a prompt design tailored to the desired outcome. Frameworks like TCEPFT offer substantial opportunities for librarians and information professionals to streamline prompt engineering and refine iterative processes. This practice can help information professionals produce consistent and high-quality outputs. Library professionals must embrace a renewed curiosity and develop expertise in prompt engineering to stay ahead in the digital information landscape and maintain their position at the forefront of the sector.
提示工程是生成式人工智能(GAI)、图书馆学和用户体验设计交叉领域的一门新兴学科,为提高信息检索的质量和精度提供了契机。一种创新方法将循证医学中广泛使用的PICO框架应用于提示工程技术。本文以“任务、背景、示例、角色、格式、语气”(TCEPFT)提示框架为例进行说明。TCEPFT通过在针对预期结果的提示设计中纳入任务特异性、上下文相关性、相关示例、个性化、格式和语气适当性等要素,形成了一种系统的方法。像TCEPFT这样的框架为图书馆员和信息专业人员简化提示工程并优化迭代过程提供了大量机会。这种做法有助于信息专业人员产出一致且高质量的成果。图书馆专业人员必须重新燃起好奇心,并培养提示工程方面的专业知识,以便在数字信息领域保持领先地位,并在该领域前沿站稳脚跟。