2024
DOI: 10.3390/app14020776
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Renewable-Aware Frequency Scaling Approach for Energy-Efficient Deep Learning Clusters

Hyuk-Gyu Park,
Dong-Ki Kang

Abstract: Recently, renewable energy has emerged as an attractive means to reduce energy consumption costs for deep learning (DL) job processing in modern GPU-based clusters. In this paper, we propose a novel Renewable-Aware Frequency Scaling (RA-FS) approach for energy-efficient DL clusters. We have developed a real-time GPU core and memory frequency scaling method that finely tunes the training performance of DL jobs while maximizing renewable energy utilization. We introduce quantitative metrics: Deep Learning Job Re… Show more

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