KiData: simple data visualization tool for future data scientists

IF 2.4 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Frontiers in Computer Science Pub Date : 2023-10-23 DOI:10.3389/fcomp.2023.1209515
Sally Hamouda, Sahith Kancharla, Gurkirat Singh, Lin Yang, Zhuoqun Wang, Siliang Zhang, Raseen Nirjhar, John Golden
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Abstract

Data and visualizations are powerful tools that provide insights, analysis, and conclusions in a logical and easy-to-understand manner. However, the current school curriculum lacks adequate preparation for students to understand, analyze, interpret, or create complex data visualizations, which can hinder their potential careers in data science. To address this gap, our project aimed to develop a user-friendly web-based tool that provides interactive lessons on data and visualizations for elementary school children. The website consists of 12 lessons, categorized by grade levels (1st–2nd grade, 3rd–4th grade, and 5th–6th grade), and includes an interactive question-answer section. Users can scroll down after reading the lessons and practice questions based on the visualizations. The website also has the potential to incorporate games related to data and visualization. The lessons are implemented using React.js and Java with the Spring framework, and new lessons can easily be added by storing them in a markdown folder. The website features a navigation bar with tabs for Home, Lessons, Games, About, and Contact. Additionally, a feedback form is included to gather user feedback for further improvements. The website is currently in the testing stage, and future surveys for teachers and elementary school students will be added to enhance the features provided. Our study presents preliminary findings and serves as a foundational exploration. We acknowledge that further research and experimentation are required to validate and expand upon the results discussed herein.
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KiData:面向未来数据科学家的简单数据可视化工具
数据和可视化是强大的工具,可以以逻辑和易于理解的方式提供见解、分析和结论。然而,目前的学校课程缺乏足够的准备,让学生理解、分析、解释或创建复杂的数据可视化,这可能会阻碍他们在数据科学领域的潜在职业发展。为了弥补这一差距,我们的项目旨在开发一种用户友好的基于网络的工具,为小学生提供有关数据和可视化的互动课程。该网站由12个课程组成,按年级(1 - 2年级,3 - 4年级,5 - 6年级)分类,并包括一个互动问答部分。用户可以在阅读课程和基于可视化的练习题后向下滚动。该网站还具有整合与数据和可视化相关的游戏的潜力。这些课程是使用React.js和Java在Spring框架下实现的,并且可以通过将它们存储在markdown文件夹中轻松添加新课程。该网站有一个导航栏,包含主页、课程、游戏、关于和联系标签。此外,还包括一个反馈表,用于收集用户反馈以进行进一步改进。该网站目前处于测试阶段,未来将增加对教师和小学生的调查,以增强所提供的功能。我们的研究提出了初步的发现,并作为一个基础的探索。我们承认需要进一步的研究和实验来验证和扩展本文讨论的结果。
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来源期刊
Frontiers in Computer Science
Frontiers in Computer Science COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
CiteScore
4.30
自引率
0.00%
发文量
152
审稿时长
13 weeks
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