Context: An increasing demand is observed in various domains to employ Machine Learning (ML) for solving complex problems. ML models are implemented as software components and deployed in Machine Learning Software Systems (MLSSs). Problem: There is a strong need for ensuring the serving quality of MLSSs. False or poor decisions of such systems can lead to malfunction of other systems, significant financial losses, or even threat to human life. The quality assurance of MLSSs is considered as a challenging task and currently is a hot research topic. Moreover, it is important to cover all various aspects of the quality in MLSSs. Objective: This paper aims to investigate the characteristics of real quality issues in MLSSs from the viewpoint of practitioners. This empirical study aims to identify a catalog of bad-practices related to poor quality in MLSSs. Method: We plan to conduct a set of interviews with practitioners/experts, believing that interviews are the best method to retrieve their experience and practices when dealing with quality issues. We expect that the catalog of issues developed at this step will also help us later to identify the severity, root causes, and possible remedy for quality issues of MLSSs, allowing us to develop efficient quality assurance tools for ML models and MLSSs.
翻译:问题:非常需要确保MLSS的服务质量。这种系统的错误或错误决定可能导致其他系统失灵、重大财政损失,甚至对人类生命的威胁。MLSS的质量保证被认为是一项具有挑战性的任务,目前是一个热门研究专题。此外,重要的是要涵盖MLSS质量的所有各个方面。目标:本文件的目的是从实践者的角度调查MLSS的真正质量问题的特点。这项实证研究旨在查明与MLSS质量差有关的不良做法的目录。方法:我们计划与从业者/专家进行一系列访谈,认为面谈是恢复处理质量问题的经验和做法的最佳方法。我们期望,在这一步骤中编制的问题目录也将帮助我们稍后查明MLSS的质量问题的严重性、根源和可能的补救措施。