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Communication Dans Un Congrès Année : 2022

Regularized Bottleneck with Early Labeling

Gabriele Castellano
Fabio Pianese
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Tianzhu Zhang
Giovanni Neglia

Résumé

Small IoT devices, such as drones and lightweight battery-powered robots, are emerging as a major platform for the deployment of AI/ML capabilities. Autonomous and semiautonomous device operation relies on the systematic use of deep neural network models for solving complex tasks, such as image classification. The challenging restrictions of these devices in terms of computing capabilities, network connectivity, and power consumption are the main limits to the accuracy of latencysensitive inferences. This paper presents ReBEL, a split computing architecture enabling the dynamic remote offload of partial computations or, in alternative, a local approximate labeling based on a jointly-trained classifier. Our approach combines elements of head network distillation, early exit classification, and bottleneck injection with the goal of reducing the average endto-end latency of AI/ML inference on constrained IoT devices.
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Dates et versions

hal-03909557 , version 1 (21-12-2022)

Identifiants

  • HAL Id : hal-03909557 , version 1

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Gabriele Castellano, Fabio Pianese, Damiano Carra, Tianzhu Zhang, Giovanni Neglia. Regularized Bottleneck with Early Labeling. ITC 2022 - 34th International Teletraffic Congress, Sep 2022, Shenzhen, China. ⟨hal-03909557⟩
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