AI inference can be relocated across geographies to access lower-cost or lower-carbon electricity when latency budgets are relaxed, with the energy-latency frontier quantifying marginal benefits and new metrics tracking returns on latency tolerance.
GreenLLM: SLO-aware dynamic frequency scaling for energy-efficient LLM serving
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Festina reduces energy consumption by up to 56% for serverless LLM inference on shared GPUs while keeping TTFT/TBT SLO attainment within 2% of four state-of-the-art baselines.
citing papers explorer
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AI Inference as Relocatable Electricity Demand: A Latency-Constrained Energy-Geography Framework
AI inference can be relocated across geographies to access lower-cost or lower-carbon electricity when latency budgets are relaxed, with the energy-latency frontier quantifying marginal benefits and new metrics tracking returns on latency tolerance.
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Energy-Aware Scheduling for Serverless LLM Serving on Shared GPUs
Festina reduces energy consumption by up to 56% for serverless LLM inference on shared GPUs while keeping TTFT/TBT SLO attainment within 2% of four state-of-the-art baselines.