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Clover: Toward Sustainable AI with Carbon-Aware Machine Learning Inference Service

Baolin Li, Siddharth Samsi, Vijay Gadepally, Devesh Tiwari

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Abstract

This paper presents a solution to the challenge of mitigating carbon emissions from hosting large-scale machine learning (ML) inference services. ML inference is critical to modern technology products, but it is also a significant contributor to carbon footprint. We introduce, Clover, a carbon-friendly ML inference service runtime system that balances performance, accuracy, and carbon emissions through mixed-quality models and GPU resource partitioning. Our experimental results demonstrate that Clover is effective in substantially reducing carbon emissions while maintaining high accuracy and meeting service level agreement (SLA) targets.

Topics & Concepts

Carbon footprintInferenceComputer scienceGreenhouse gasCarbon fibersService (business)Scale (ratio)Resource (disambiguation)Environmental economicsArtificial intelligenceAlgorithmBusinessMarketingComputer networkQuantum mechanicsPhysicsEconomicsEcologyComposite numberBiologyGreen IT and SustainabilityIoT and Edge/Fog ComputingMobile Crowdsensing and Crowdsourcing
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