This is an article or technical note which is intended to provides an insight journey of Machine Learning Systems (MLS) testing, its evolution, current paradigm and future work. Machine Learning Models, used in critical applications such as healthcare industry, Automobile, and Air Traffic control, Share Trading etc., and failure of ML Model can lead to severe consequences in terms of loss of life or property. To remediate this, developers, scientists, and ML community around the world, must build a highly reliable test architecture for critical ML application. At the very foundation layer, any test model must satisfy the core testing attributes such as test properties and its components. This attribute comes from the software engineering, but the same cannot be applied in as-is form to the ML testing and we will tell you why.
翻译:这是一篇文章或技术说明,旨在为机器学习系统测试、其演变、当前模式和未来工作提供一个洞察历程。机器学习模型,用于医疗行业、汽车和空中交通管制、共享交易等关键应用,以及ML模型的失败,可能导致生命或财产损失的严重后果。为了补救这个问题,世界各地的开发商、科学家和ML社区必须为关键的ML应用建立一个非常可靠的测试架构。在基础层,任何测试模型都必须满足测试属性及其组成部分等核心测试属性。这一属性来自软件工程,但不能以同样形式适用于ML测试,我们将告诉你们原因。