通过合作和数据科学创新为那些寻求消除饥饿的人赋权

Jen-Li Ko, Jeff Joslyn, Ganhua Lu, Jason Palmer, Malcolm Charles, Marita Stapleton, Aishwarya Sanganalu Mattha, Bob Parsons, Ron Tatum, Carey Redmann, Hongkun Yu, Allen Moy, Walter Bialkowski
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引用次数: 0

摘要

在新冠肺炎大流行期间,向有需要的社区成员分发的食物比前一年多81%。尽管已经建立了管理食品接收和分发数据的系统,但社交距离要求和技术障碍表明,这些数据的利用效率低下。为了追求数据驱动的决策,在全球疫情的背景下,FAEW通过行业支持的赠款与马奎特大学的数据科学家合作。学生们运用商业智能中新学到的技能,制作了FAEW源系统中数据清洁度的详细报告,以提高底层数据质量并更好地支持分析工作。此外,学生们还同步了以人为本的设计思维和视觉分析,以生成一个交互式应用程序,用于优化库存管理、存储可用性和产品分销。最后,学生们正在利用商业分析技术,如有监督和无监督的数据挖掘,提供关于食品接收和分发模式的新见解,这将对FAEW的运营产生可持续的影响。这种独特的合作伙伴关系为学生提供了体验式学习机会,FAEW将使用有形的数据科学解决方案来确保最佳实践,以及合作消除社区饥饿的现实世界解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Empowering those who seek to end hunger through collaboration and data science innovation
Feeding America Eastern Wisconsin (FAEW) distributed 81% more food to community members in need during the COVID-19 pandemic than in the prior year. Though systems were in place to manage food receipt and distribution data, social distancing requirements and technological barriers revealed inefficiencies in how these data were being utilized. In pursuit of data-driven decision making and in the context of a global pandemic, FAEW partnered with Marquette University data scientists through an industry supported grant. Applying newly learned skills in Business Intelligence, students have produced detailed reports of data cleanliness in FAEW’s source systems to improve underlying data quality and better support analytic efforts. Additionally, students have synchronized Human Centered Design Thinking and Visual Analytics to produce an interactive application that is being used to optimize inventory management, storage availability, and product distribution. Finally, students are utilizing Business Analytics techniques such as supervised and unsupervised data mining to provide new insights about food receipt and distribution patterns that will have a sustainable impact on FAEW operations. This unique partnership is providing experiential learning opportunities for students, tangible data science solutions that FAEW will use to ensure best practices, and real-world solutions to collaboratively end hunger in our communities.
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