Conditionally Deep Hybrid Neural Networks Across Edge and Cloud
Yinghan Long, Indranil Chakraborty, Kaushik Roy

TL;DR
This paper introduces a conditionally deep hybrid neural network architecture for fog computing, enabling energy-efficient, distributed inference between edge devices and the cloud with minimal accuracy loss.
Contribution
It proposes a novel hybrid neural network with early exits and quantized layers, optimizing energy consumption and inference latency in edge-cloud systems.
Findings
Processes 65% of inferences at the edge with 5.5x energy reduction on CIFAR-10.
Achieves 52% early classification at the edge with 4.8x energy savings on CIFAR-100.
Significantly higher energy efficiency than full-precision networks.
Abstract
The pervasiveness of "Internet-of-Things" in our daily life has led to a recent surge in fog computing, encompassing a collaboration of cloud computing and edge intelligence. To that effect, deep learning has been a major driving force towards enabling such intelligent systems. However, growing model sizes in deep learning pose a significant challenge towards deployment in resource-constrained edge devices. Moreover, in a distributed intelligence environment, efficient workload distribution is necessary between edge and cloud systems. To address these challenges, we propose a conditionally deep hybrid neural network for enabling AI-based fog computing. The proposed network can be deployed in a distributed manner, consisting of quantized layers and early exits at the edge and full-precision layers on the cloud. During inference, if an early exit has high confidence in the classification…
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Taxonomy
TopicsAdvanced Neural Network Applications · IoT and Edge/Fog Computing · Air Quality Monitoring and Forecasting
