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arxiv: 2304.09781 · v2 · pith:A4J4KHDTnew · submitted 2023-04-19 · 💻 cs.DC

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

classification 💻 cs.DC
keywords carboninferencecloveremissionsserviceaccuracylearningmachine
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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.

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Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. GAR: Carbon-Aware Routing for LLM Inference via Constrained Optimization

    cs.AI 2026-05 unverdicted novelty 6.0

    GAR routes LLM inference requests via constrained multi-objective optimization to cut per-request CO2 emissions while respecting accuracy floors and p95 latency SLOs.