研究合作项目中的自动化软件质量监控

Michael Sildatke, H. Karwanni, B. Kraft, Oliver Schmidts, Albert Zündorf
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引用次数: 2

摘要

在协作研究项目中,研究人员和实践者共同解决关键业务挑战。这些项目通常处理ETL过程,在这个过程中,人们手工从非机器可读的文档中提取信息。基于人工智能的机器学习模型可以帮助解决这个问题。由于机器学习方法不确定,它们的输出质量可能会随着时间的推移而下降。这一事实导致嵌入机器学习模型的应用程序的整体质量下降。因此,开发和生产中的软件质量可能不同。机器学习模型是黑盒子。这使得从业者持怀疑态度,并增加了早期有效使用研究原型的抑制阈值。持续监控产品中的软件质量提供了对质量损失的早期响应能力,并鼓励使用机器学习方法。此外,专家必须确保他们尽可能快地将可能的新输入整合到模型训练中。在本文中,我们介绍了一个架构模式,该模式带有一个参考实现,它扩展了Metrics Driven Research Collaboration的概念,在生产中使用自动化的软件质量监控,并可能自动生成来自生产中处理过的文档的新测试数据。通过对软件质量和自动生成的测试数据的自动监控,这种方法确保软件质量在生产使用中满足并保持所要求的阈值,即使在进一步的连续部署和更改输入数据期间也是如此。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Software Quality Monitoring in Research Collaboration Projects
In collaborative research projects, both researchers and practitioners work together solving business-critical challenges. These projects often deal with ETL processes, in which humans extract information from non-machine-readable documents by hand. AI-based machine learning models can help to solve this problem. Since machine learning approaches are not deterministic, their quality of output may decrease over time. This fact leads to an overall quality loss of the application which embeds machine learning models. Hence, the software qualities in development and production may differ. Machine learning models are black boxes. That makes practitioners skeptical and increases the inhibition threshold for early productive use of research prototypes. Continuous monitoring of software quality in production offers an early response capability on quality loss and encourages the use of machine learning approaches. Furthermore, experts have to ensure that they integrate possible new inputs into the model training as quickly as possible. In this paper, we introduce an architecture pattern with a reference implementation that extends the concept of Metrics Driven Research Collaboration with an automated software quality monitoring in productive use and a possibility to auto-generate new test data coming from processed documents in production. Through automated monitoring of the software quality and auto-generated test data, this approach ensures that the software quality meets and keeps requested thresholds in productive use, even during further continuous deployment and changing input data.
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