Assessing the Quality of Low-Code and Model-Driven Engineering Platforms for Engineering IoT Systems

Felicien Ihirwe, Davide Di Ruscio, Simone Gianfranceschi, A. Pierantonio
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Abstract

Over the last few years, industry and academia have proposed several Low-Code and Model-driven Engineering (MDE) platforms to ease the engineering process of the Internet of things (IoT) systems. However, deciding whether such engineering platforms meet the minimum required software quality standards is not straightforward. Software quality can be defined as the degree to which a software system achieves its intended goal. Various software quality standards have been established to aid in the software quality assessment process; however, due to the nature of engineering IoT platforms, such models may not entirely suit the IoT domain. This paper presents a model for assessing the software quality of Low-Code and MDE platforms for engineering IoT platforms. The proposed software quality model is based on and extends the ISO/IEC 25010:2011 software product quality model standard. It is intended to assist IoT practitioners in assessing and establishing quality requirements for engineering IoT platforms. To determine the effectiveness of the proposed model, we used it to evaluate the quality of 17 IoT engineering platforms, and the results obtained are promising.
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评估工程物联网系统的低代码和模型驱动工程平台的质量
在过去的几年里,工业界和学术界提出了几种低代码和模型驱动工程(MDE)平台,以简化物联网(IoT)系统的工程过程。然而,决定这样的工程平台是否满足最低要求的软件质量标准并不是直截了当的。软件质量可以定义为软件系统实现其预期目标的程度。已经建立了各种软件质量标准,以协助软件质量评估过程;然而,由于工程物联网平台的性质,这些模型可能并不完全适合物联网领域。本文提出了一个用于工程物联网平台的低码和MDE平台软件质量评估模型。提出的软件质量模型基于并扩展了ISO/IEC 25010:2011软件产品质量模型标准。它旨在帮助物联网从业者评估和建立工程物联网平台的质量要求。为了确定所提出的模型的有效性,我们使用它来评估17个物联网工程平台的质量,得到的结果是有希望的。
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