健康保障:AI模型监测平台

Anirban I Ghosh, Radhika Sharma, Karan Goyal, Balakarthikeyan Rajan, S. Mani
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引用次数: 0

摘要

企业越来越依赖机器学习模型来管理用户体验。重要的是,不仅要专注于构建健壮的、最先进的模型,还要持续地监测和评估它们。持续监控使人工智能团队能够确保正确的模型训练频率,并在其产生更广泛的业务影响之前主动调查错误的模式和预测。因此,需要一个强大而有效的监控系统来确保业务和工程团队了解模型性能和任何可能影响下游模型准确性的数据异常。在本文中,我们提出了我们的健康保障模型监测解决方案。目前,该系统服务于11个AI垂直领域的250多个模型的健康监测需求,平均异常检测精度为60%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Health Assurance: AI Model Monitoring Platform
Businesses are increasingly reliant on Machine Learning models to manage user experiences. It becomes important to not only focus on building robust and state-of-the-art models but also continuously monitor and evaluate them. Continuous monitoring enables the AI team to ensure the right frequency of model training and pro-actively investigate erroneous patterns and predictions, before it has a wider business impact. A robust and effective monitoring system is thus needed to ensure business and engineering teams are aware of model performance and any data anomalies which could impact downstream model accuracy. In this paper, we present our Health Assurance model monitoring solution. Currently, the system serves the health monitoring needs of more than 250 models across 11 AI verticals with an average anomaly detection precision of 60%.
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