Energy-Aware Dynamic Neural Inference
The growing demand for intelligent applications beyond the network edge, coupled with the need for sustainable operation, are driving the seamless integration of deep learning (DL) algorithms into energy-limited, and even energy-harvesting end-devices. However, the stochastic nature of ambient energ...
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Zusammenfassung: | The growing demand for intelligent applications beyond the network edge,
coupled with the need for sustainable operation, are driving the seamless
integration of deep learning (DL) algorithms into energy-limited, and even
energy-harvesting end-devices. However, the stochastic nature of ambient energy
sources often results in insufficient harvesting rates, failing to meet the
energy requirements for inference and causing significant performance
degradation in energy-agnostic systems. To address this problem, we consider an
on-device adaptive inference system equipped with an energy-harvester and
finite-capacity energy storage. We then allow the device to reduce the run-time
execution cost on-demand, by either switching between differently-sized neural
networks, referred to as multi-model selection (MMS), or by enabling earlier
predictions at intermediate layers, called early exiting (EE). The model to be
employed, or the exit point is then dynamically chosen based on the energy
storage and harvesting process states. We also study the efficacy of
integrating the prediction confidence into the decision-making process. We
derive a principled policy with theoretical guarantees for confidence-aware and
-agnostic controllers. Moreover, in multi-exit networks, we study the
advantages of taking decisions incrementally, exit-by-exit, by designing a
lightweight reinforcement learning-based controller. Experimental results show
that, as the rate of the ambient energy increases, energy- and confidence-aware
control schemes show approximately 5% improvement in accuracy compared to their
energy-aware confidence-agnostic counterparts. Incremental approaches achieve
even higher accuracy, particularly when the energy storage capacity is limited
relative to the energy consumption of the inference model. |
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DOI: | 10.48550/arxiv.2411.02471 |