Guidelines for the Quality Assessment of Energy-Aware NAS Benchmarks
Nick Kocher, Christian Wassermann, Leona Hennig, Jonas Seng, Holger Hoos, Kristian Kersting, Marius Lindauer, Matthias M\"uller

TL;DR
This paper provides guidelines for designing energy-aware benchmarks for Neural Architecture Search, emphasizing reliable power measurements, diverse GPU usage, and comprehensive cost reporting to improve the accuracy and reliability of energy consumption estimates.
Contribution
It introduces three key design principles for energy-aware NAS benchmarks and analyzes existing tools, offering practical guidelines and calibration methods to enhance measurement accuracy.
Findings
GPU measurement API significantly affects energy estimation accuracy.
Narrow GPU usage range observed across devices, impacting benchmarking.
Calibration experiments reduce maximum inaccuracy in energy reporting.
Abstract
Neural Architecture Search (NAS) accelerates progress in deep learning through systematic refinement of model architectures. The downside is increasingly large energy consumption during the search process. Surrogate-based benchmarking mitigates the cost of full training by querying a pre-trained surrogate to obtain an estimate for the quality of the model. Specifically, energy-aware benchmarking aims to make it possible for NAS to favourably trade off model energy consumption against accuracy. Towards this end, we propose three design principles for such energy-aware benchmarks: (i) reliable power measurements, (ii) a wide range of GPU usage, and (iii) holistic cost reporting. We analyse EA-HAS-Bench based on these principles and find that the choice of GPU measurement API has a large impact on the quality of results. Using the Nvidia System Management Interface (SMI) on top of its…
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Taxonomy
TopicsGreen IT and Sustainability · Energy Efficiency and Management · Building Energy and Comfort Optimization
MethodsSoftmax · Attention Is All You Need · Lib
