BottleNet: A Deep Learning Architecture for Intelligent Mobile Cloud Computing Services

2019 
Recent studies have shown the latency and energy consumption of deep neural networks can be significantly improved by splitting the network between the mobile device and cloud. This paper introduces a new deep learning architecture, called BottleNet, for reducing the feature size needed to be sent to the cloud. Furthermore, we propose a training method for compensating for the potential accuracy loss due to the lossy compression of features before transmitting them to the cloud. BottleNet achieves on average 5.1× improvement in end-to-end latency and 6.9× improvement in mobile energy consumption compared to the cloud-only approach with no accuracy loss.
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