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Scalable Smartphone Cluster for Deep Learning

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arxiv 2110.12172 v1 pith:4RYPFBB4 submitted 2021-10-23 cs.LG cs.DC

Scalable Smartphone Cluster for Deep Learning

classification cs.LG cs.DC
keywords clusterdeeptraininglearningsmartphonecomputationaldnnssmartphones
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Various deep learning applications on smartphones have been rapidly rising, but training deep neural networks (DNNs) has too large computational burden to be executed on a single smartphone. A portable cluster, which connects smartphones with a wireless network and supports parallel computation using them, can be a potential approach to resolve the issue. However, by our findings, the limitations of wireless communication restrict the cluster size to up to 30 smartphones. Such small-scale clusters have insufficient computational power to train DNNs from scratch. In this paper, we propose a scalable smartphone cluster enabling deep learning training by removing the portability to increase its computational efficiency. The cluster connects 138 Galaxy S10+ devices with a wired network using Ethernet. We implemented large-batch synchronous training of DNNs based on Caffe, a deep learning library. The smartphone cluster yielded 90% of the speed of a P100 when training ResNet-50, and approximately 43x speed-up of a V100 when training MobileNet-v1.

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