Fair Housing: A Blueprint for Equity in Life: Proceedings from the 2022-2023 High School Big Data ChallengeUnder the patronage of Canadian Commission for UNESCO

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Abstract

In the STEM Fellowship High School Big Data Challenge, students have the opportunity to engage in independent research projects and acquire fundamental data science skills – an essential skill set for a young researcher in the digital age. The program is inquiry-driven and experiential. This year, we invited students to explore issues of Fair Housing at the Individual and Community Levels and to suggest their own evidence-based solutions, using Open Data and the principles of Open Science. Students explored many topics, ranging from a New Framework for Public Rental Housing in Toronto to A Statistical Analysis on Thawing Permafrost and Its Effects on Housing. We designed in-depth learning modules for students as a means of bridging the gap between traditional high school courseware and digital reality and computational science. Students learned how to uncover hidden patterns and trends in structured and unstructured data using a range of data analytics tools and programming languages. Python, R, LaTeX, and machine learning were some of the tools the students learned and used. On behalf of the STEM Fellowship, we extend our sincere congratulations to all students who participated in the challenge, and wish them the best for their future endeavours. We want to express our appreciation to all the mentors and volunteers. This program would not be possible without patronage of CC UNESCO and generous support of our sponsors: RBC Future Launch, Let’s Talk Science, Digital Science, Infor, SCWST, CISCO Networking Academy, Canadian Science Publishing, and the University of Calgary Hunter Hub for Entrepreneurial Thinking. We were privileged to witness first-hand the analytical capabilities of the data-native generation of students, and we are confident they will demonstrate excellence throughout their academic and professional careers.
公平住房:生活公平的蓝图:2022-2023年高中大数据挑战的会议记录由联合国教科文组织加拿大委员会赞助
在STEM奖学金高中大数据挑战赛中,学生们有机会参与独立的研究项目,并获得基本的数据科学技能——这是数字时代年轻研究人员的基本技能。该计划是探究驱动和体验。今年,我们邀请学生探索个人和社区层面的公平住房问题,并利用开放数据和开放科学原则,提出他们自己的基于证据的解决方案。学生们探讨了许多主题,从多伦多公共租赁住房的新框架到永久冻土融化及其对住房影响的统计分析。我们为学生设计了深度学习模块,作为弥合传统高中课件与数字现实和计算科学之间差距的一种手段。学生们学习了如何使用一系列数据分析工具和编程语言发现结构化和非结构化数据中隐藏的模式和趋势。Python、R语言、LaTeX和机器学习是学生们学习和使用的一些工具。我们谨代表STEM奖学金向所有参与挑战的学生致以诚挚的祝贺,并祝愿他们在未来的努力中取得最好的成绩。我们要感谢所有的导师和志愿者。如果没有CC UNESCO的赞助和我们的赞助商的慷慨支持,这个项目是不可能的:RBC Future Launch, Let 's Talk Science, Digital Science, Infor, SCWST, CISCO Networking Academy, Canadian Science Publishing和University of Calgary Hunter for Entrepreneurial Thinking。我们有幸亲眼目睹了数据原生一代学生的分析能力,我们相信他们将在他们的学术和职业生涯中表现出色。
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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