Guardians of the Deep Fog: Failure-Resilient DNN Inference from Edge to Cloud
September 03, 2019 Β· Declared Dead Β· π Proceedings of the First International Workshop on Challenges in Artificial Intelligence and Machine Learning for Internet of Things
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Authors
Ashkan Yousefpour, Siddartha Devic, Brian Q. Nguyen, Aboudy Kreidieh, Alan Liao, Alexandre M. Bayen, Jason P. Jue
arXiv ID
1909.00995
Category
cs.NI: Networking & Internet
Cross-listed
cs.LG
Citations
29
Venue
Proceedings of the First International Workshop on Challenges in Artificial Intelligence and Machine Learning for Internet of Things
Last Checked
4 months ago
Abstract
Partitioning and distributing deep neural networks (DNNs) over physical nodes such as edge, fog, or cloud nodes, could enhance sensor fusion, and reduce bandwidth and inference latency. However, when a DNN is distributed over physical nodes, failure of the physical nodes causes the failure of the DNN units that are placed on these nodes. The performance of the inference task will be unpredictable, and most likely, poor, if the distributed DNN is not specifically designed and properly trained for failures. Motivated by this, we introduce deepFogGuard, a DNN architecture augmentation scheme for making the distributed DNN inference task failure-resilient. To articulate deepFogGuard, we introduce the elements and a model for the resiliency of distributed DNN inference. Inspired by the concept of residual connections in DNNs, we introduce skip hyperconnections in distributed DNNs, which are the basis of deepFogGuard's design to provide resiliency. Next, our extensive experiments using two existing datasets for the sensing and vision applications confirm the ability of deepFogGuard to provide resiliency for distributed DNNs in edge-cloud networks.
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