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Sustainable MLOps: Trends and Challenges

Damian A. Tamburri

2020109 citationsDOI

Abstract

Even simply through a GoogleTrends search it becomes clear that Machine-Learning Operations-or MLOps, for short-are climbing in interest from both a scientific and practical perspective. On the one hand, software components and middleware are proliferating to support all manners of MLOps, from AutoML (i.e., software which enables developers with limited machine-learning expertise to train high-quality models specific to their domain or data) to feature-specific ML engineering, e.g., Explainability and Interpretability. On the other hand, the more these platforms penetrate the day-to-day activities of software operations, the more the risk for AI Software becoming unsustainable from a social, technical, or organisational perspective. This paper offers a concise definition of MLOps and AI Software Sustainability and outlines key challenges in its pursuit.

Topics & Concepts

Computer scienceInterpretabilitySoftwarePerspective (graphical)Software engineeringDomain (mathematical analysis)Data scienceKey (lock)Quality (philosophy)Software qualitySocial software engineeringMiddleware (distributed applications)Domain engineeringSoftware developmentSoftware constructionArtificial intelligenceComputer securityDatabaseEpistemologyMathematical analysisMathematicsPhilosophyProgramming languagePrivacy-Preserving Technologies in DataMachine Learning and Data ClassificationAdversarial Robustness in Machine Learning
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