Unveiling livestock trade trends: A beginner's guide to generative AI-powered visualization

IF 2.2 3区 农林科学 Q1 VETERINARY SCIENCES Research in veterinary science Pub Date : 2024-10-10 DOI:10.1016/j.rvsc.2024.105435
Yoshiyasu Takefuji
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Abstract

This tutorial, rooted in the context of livestock research, is designed to assist novice or non-programmers in visualizing trends in livestock exports between the US and Japan using Python and generative AI systems such as Microsoft's Copilot and Google's Gemini. The analysis of these trends plays a pivotal role in optimizing livestock production. The tutorial offers a thorough guide on preparing data using reliable federal datasets, generating Python code, and tackling potential issues such as overlapping data points. It effectively simplifies complex tasks into manageable steps and includes Python code in the appendices for easy reference. By enabling researchers to extract insights and make predictions from livestock data, this tutorial addresses a significant void in the existing literature. This innovative approach has the potential to transform the way researchers engage with and interpret livestock data, thereby making a substantial contribution to the field.
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揭示牲畜贸易趋势:生成式人工智能可视化初学者指南
本教程以畜牧业研究为背景,旨在帮助新手或非程序员使用 Python 和生成式人工智能系统(如微软的 Copilot 和谷歌的 Gemini)可视化美国和日本之间的牲畜出口趋势。对这些趋势的分析在优化牲畜生产方面起着至关重要的作用。该教程提供了一份详尽的指南,指导如何使用可靠的联邦数据集准备数据、生成 Python 代码以及解决数据点重叠等潜在问题。它有效地将复杂的任务简化为易于管理的步骤,并在附录中提供了 Python 代码,以方便参考。本教程使研究人员能够从牲畜数据中提取见解并进行预测,从而弥补了现有文献中的重大空白。这种创新方法有可能改变研究人员处理和解释家畜数据的方式,从而为该领域做出重大贡献。
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来源期刊
Research in veterinary science
Research in veterinary science 农林科学-兽医学
CiteScore
4.40
自引率
4.20%
发文量
312
审稿时长
75 days
期刊介绍: Research in Veterinary Science is an International multi-disciplinary journal publishing original articles, reviews and short communications of a high scientific and ethical standard in all aspects of veterinary and biomedical research. The primary aim of the journal is to inform veterinary and biomedical scientists of significant advances in veterinary and related research through prompt publication and dissemination. Secondly, the journal aims to provide a general multi-disciplinary forum for discussion and debate of news and issues concerning veterinary science. Thirdly, to promote the dissemination of knowledge to a broader range of professions, globally. High quality papers on all species of animals are considered, particularly those considered to be of high scientific importance and originality, and with interdisciplinary interest. The journal encourages papers providing results that have clear implications for understanding disease pathogenesis and for the development of control measures or treatments, as well as those dealing with a comparative biomedical approach, which represents a substantial improvement to animal and human health. Studies without a robust scientific hypothesis or that are preliminary, or of weak originality, as well as negative results, are not appropriate for the journal. Furthermore, observational approaches, case studies or field reports lacking an advancement in general knowledge do not fall within the scope of the journal.
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