LGMLOct 7, 2019

Energy-Aware Neural Architecture Optimization with Fast Splitting Steepest Descent

arXiv:1910.03103v326 citations
Originality Incremental advance
AI Analysis

This work addresses the need for energy-efficient deep learning in resource-constrained environments, but it is incremental as it builds upon prior splitting methods.

The paper tackles the problem of designing energy-efficient neural networks for mobile and edge settings by improving an existing splitting-based architecture search method to incorporate energy costs and accelerate computation, resulting in highly accurate and energy-efficient networks on datasets like ImageNet that outperform baselines.

Designing energy-efficient networks is of critical importance for enabling state-of-the-art deep learning in mobile and edge settings where the computation and energy budgets are highly limited. Recently, Liu et al. (2019) framed the search of efficient neural architectures into a continuous splitting process: it iteratively splits existing neurons into multiple off-springs to achieve progressive loss minimization, thus finding novel architectures by gradually growing the neural network. However, this method was not specifically tailored for designing energy-efficient networks, and is computationally expensive on large-scale benchmarks. In this work, we substantially improve Liu et al. (2019) in two significant ways: 1) we incorporate the energy cost of splitting different neurons to better guide the splitting process, thereby discovering more energy-efficient network architectures; 2) we substantially speed up the splitting process of Liu et al. (2019), which requires expensive eigen-decomposition, by proposing a highly scalable Rayleigh-quotient stochastic gradient algorithm. Our fast algorithm allows us to reduce the computational cost of splitting to the same level of typical back-propagation updates and enables efficient implementation on GPU. Extensive empirical results show that our method can train highly accurate and energy-efficient networks on challenging datasets such as ImageNet, improving a variety of baselines, including the pruning-based methods and expert-designed architectures.

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The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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