With the increasing number of created and deployed prediction models and the complexity of machine learning workflows we require so called model management systems to support data scientists in their tasks. In this work we describe our technological concept for such a model management system. This concept includes versioned storage of data, support for different machine learning algorithms, fine tuning of models, subsequent deployment of models and monitoring of model performance after deployment. We describe this concept with a close focus on model lifecycle requirements stemming from our industry application cases, but generalize key features that are relevant for all applications of machine learning.
翻译:随着建立和部署的预测模型越来越多,以及机器学习工作流程的复杂性,我们需要所谓的模型管理系统来支持数据科学家执行任务。我们在此工作中描述了我们为这种模型管理系统提出的技术概念。这个概念包括数据储存版本、支持不同的机器学习算法、对模型进行微调、随后部署模型并监测部署后的模型性能。我们描述了这个概念,密切关注来自我们行业应用案例的模型生命周期要求,但概括了与机器学习所有应用相关的关键特征。