Skuld: A self-learning tool for impact-driven technical debt management

Josep Burgaya Pujols, Pieter Bas, Silverio Martínez-Fernández, A. Martini, Adam Trendowicz
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引用次数: 1

Abstract

As the development progresses, software projects tend to accumulate Technical Debt and become harder to maintain. Multiple tools exist with the mission to help practitioners to better manage Technical Debt. Despite this progress, there is a lack of tools providing actionable and self-learned suggestions to practitioners aimed at mitigating the impact of Technical Debt in real projects. We aim to create a data-driven, lightweight, and self-learning tool positioning highly impactful refactoring proposals on a Jira backlog. Bearing this goal in mind, the first two authors have founded a startup, called Skuld.ai, with the vision of becoming the go-to software renovation company. In this tool paper, we present the software architecture and demonstrate the main functionalities of our tool. It has been showcased to practitioners, receiving positive feedback. Currently, its release to the market is underway thanks to an industry-research institute collaboration with Fraunhofer IESE to incorporate self-learning technical debt capabilities.
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skld:用于影响驱动的技术债务管理的自我学习工具
随着开发的进展,软件项目倾向于积累技术债务并变得更难维护。有多种工具的使命是帮助实践者更好地管理技术债务。尽管取得了这样的进展,但是仍然缺乏工具为从业者提供可操作的和自我学习的建议,这些建议旨在减轻实际项目中技术债务的影响。我们的目标是创建一个数据驱动的、轻量级的、自我学习的工具,在Jira待办事项列表中定位具有高度影响力的重构建议。带着这个目标,前两位作者创立了一家名为Skuld的初创公司。它的愿景是成为软件创新的首选公司。在本文中,我们介绍了该工具的软件体系结构,并演示了该工具的主要功能。它已经展示给从业者,得到了积极的反馈。目前,由于一个行业研究机构与Fraunhofer IESE合作,将自学技术债务功能纳入其中,它正在向市场发布。
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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