Publication | Open Access
Autodidactic Neurosurgeon: Collaborative Deep Inference for Mobile Edge Intelligence via Online Learning
68
Citations
15
References
2021
Year
Unknown Venue
Artificial IntelligenceGeometric LearningConvolutional Neural NetworkEngineeringMachine LearningNeural Networks (Machine Learning)Autodidactic NeurosurgeonSocial SciencesData ScienceSparse Neural NetworkComputing SystemsMobile Edge IntelligenceEmbedded Machine LearningEdge IntelligenceComputer ScienceNeural Networks (Computational Neuroscience)Mobile ComputingDeep LearningMedical Image ComputingEdge ServerDeep Neural NetworkNeural Architecture SearchCollaborative Deep InferenceEdge ComputingResource Optimization
Recent breakthroughs in deep learning (DL) have led to the emergence of many intelligent mobile applications and services, but in the meanwhile also pose unprecedented computing challenges on resource-constrained mobile devices. This paper builds a collaborative deep inference system between a resource-constrained mobile device and a powerful edge server, aiming at joining the power of both on-device processing and computation offloading. The basic idea of this system is to partition a deep neural network (DNN) into a front-end part running on the mobile device and a back-end part running on the edge server, with the key challenge being how to locate the optimal partition point to minimize the end-to-end inference delay. Unlike existing efforts on DNN partitioning that rely heavily on a dedicated offline profiling stage to search for the optimal partition point, our system has a built-in online learning module, called Autodidactic Neurosurgeon (ANS), to automatically learn the optimal partition point on-the-fly. Therefore, ANS is able to closely follow the changes of the system environment by generating new knowledge for adaptive decision making. The core of ANS is a novel contextual bandit learning algorithm, called μLinUCB, which not only has provable theoretical learning performance guarantee but also is ultra-lightweight for easy real-world implementation. We implement our system on a video stream object detection testbed to validate the design of ANS and evaluate its performance. The experiments show that ANS significantly outperforms state-of-the-art benchmarks in terms of tracking system changes and reducing the end-to-end inference delay.
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