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A monitoring framework for deployed machine learning models with supply chain examples

Bradley Eck, Duygu Kabakci-Zorlu, Yan Chen, France Savard, Xiaowei Bao

20222022 IEEE International Conference on Big Data (Big Data)14 citationsDOI

Abstract

Actively monitoring machine learning models during production operations helps ensure prediction quality and detection and remediation of unexpected or undesired conditions. Monitoring models already deployed in big data environments brings the additional challenges of adding monitoring in parallel to the existing modelling workflow and controlling resource requirements. In this paper, we describe (1) a framework for monitoring machine learning models; and, (2) its implementation for a big data supply chain application. We use our implementation to study drift in model features, predictions, and performance on three real data sets. We compare hypothesis test and information theoretic approaches to drift detection in features and predictions using the Kolmogorov-Smirnov distance and Bhattacharyya coefficient. Results showed that model performance was stable over the evaluation period. Features and predictions showed statistically significant drifts; however, these drifts were not linked to changes in model performance during the time of our study.

Topics & Concepts

Computer scienceBhattacharyya distanceWorkflowBig dataMachine learningSupply chainData modelingArtificial intelligenceData miningConcept driftReal-time computingData stream miningDatabaseLawPolitical scienceData Stream Mining TechniquesAnomaly Detection Techniques and ApplicationsMachine Learning and Data Classification
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