Leveraging human-AI collaboration to visualize age-related diabetes features using dataset

Yoshiyasu Takefuji
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Abstract

This paper explores the synergy between humans and generative AI in the context of diabetes and biochemical analysis for endocrinologists. It underscores the necessity for human intervention to supplement the information that the AI has not yet learned, using search engines as a tool. The paper is crafted to be user-friendly, catering to both novices and those without a programming background. It covers human-centric for code verification, while the generative AI is tasked with creating Python code for data visualization automatically. The paper introduces a succinct set of guidelines for interacting with these AI tools, with the aim of minimizing unnecessary interactions. It guides readers on how to harness the power of the latest generative AI to assist and expedite research, using various search operators or options. While acknowledging the limitations of these generative AI tools, the paper emphasizes their potential in streamlining scientific research by reducing time and cost. It provides tangible examples, such as the visualization of graphs for the HbA1c dataset. In conclusion, despite their limitations, the paper champions the use of generative AI tools to propel advancements in science and technology. It highlights their significant potential in reducing time and cost, thereby catalyzing the pace of research.

利用人类与人工智能的合作,使用数据集直观显示与年龄相关的糖尿病特征
本文以糖尿病和内分泌学家的生化分析为背景,探讨了人类与生成式人工智能之间的协同作用。它强调了人类干预的必要性,以搜索引擎为工具,补充人工智能尚未掌握的信息。该论文的编写对用户非常友好,既适合新手,也适合没有编程背景的人。它涵盖了以人为中心的代码验证,而生成式人工智能的任务是为数据可视化自动创建 Python 代码。本文介绍了一套与这些人工智能工具交互的简明指南,目的是尽量减少不必要的交互。它指导读者如何利用最新的生成式人工智能的力量,使用各种搜索运算符或选项来协助和加快研究。在承认这些生成式人工智能工具局限性的同时,论文强调了它们在通过减少时间和成本来简化科学研究方面的潜力。它提供了具体的例子,例如 HbA1c 数据集的图表可视化。总之,尽管存在局限性,本文仍倡导使用生成式人工智能工具推动科技进步。它强调了这些工具在减少时间和成本方面的巨大潜力,从而推动了研究的步伐。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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