Rapid prototyping IoT solutions based on Machine Learning

A. Rizzo, Francesco Montefoschi, Maurizio Caporali, Antonio Gisondi, G. Burresi, R. Giorgi
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引用次数: 5

Abstract

Nowadays Machine Learning (ML) has reached an all-time high, and this is evident by considering the increasing number of successful start-ups, applications and services in this domain. ML techniques are being developed and applied to an ever-growing range of fields, from on-demand delivery to smart home. Nevertheless, these solutions are failing at getting mainstream adoption among interaction designers due to high complexity. In this paper we present the integration of two Machine Learning algorithms into UAPPI, our open source extension of the prototyping environment MIT App Inventor. In UAPPI much of the complexity related to ML has been abstracted away, providing easy-to-use graphical blocks for rapid prototyping Internet of Things solutions. We report on limits and opportunities emerged from the first two scenario-based explorations of our design process.
基于机器学习的快速原型物联网解决方案
如今,机器学习(ML)已经达到了历史最高水平,考虑到这一领域越来越多的成功初创企业、应用程序和服务,这一点很明显。机器学习技术正在被开发并应用于越来越多的领域,从按需送货到智能家居。然而,由于这些解决方案的高复杂性,它们未能在交互设计师中获得主流采用。在本文中,我们将两种机器学习算法集成到UAPPI中,UAPPI是我们对原型环境MIT App Inventor的开源扩展。在UAPPI中,与ML相关的许多复杂性都被抽象掉了,为快速原型化物联网解决方案提供了易于使用的图形块。我们报告了前两个基于场景的设计过程探索中出现的限制和机会。
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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