Enabling Edge Artificial Intelligence via Goal-oriented Deep Neural Network Splitting
arxiv(2023)
摘要
Deep Neural Network (DNN) splitting is one of the key enablers of edge
Artificial Intelligence (AI), as it allows end users to pre-process data and
offload part of the computational burden to nearby Edge Cloud Servers (ECSs).
This opens new opportunities and degrees of freedom in balancing energy
consumption, delay, accuracy, privacy, and other trustworthiness metrics. In
this work, we explore the opportunity of DNN splitting at the edge of 6G
wireless networks to enable low energy cooperative inference with target delay
and accuracy with a goal-oriented perspective. Going beyond the current
literature, we explore new trade-offs that take into account the accuracy
degradation as a function of the Splitting Point (SP) selection and wireless
channel conditions. Then, we propose an algorithm that dynamically controls SP
selection, local computing resources, uplink transmit power and bandwidth
allocation, in a goal-oriented fashion, to meet a target goal-effectiveness. To
the best of our knowledge, this is the first work proposing adaptive SP
selection on the basis of all learning performance (i.e., energy, delay,
accuracy), with the aim of guaranteeing the accomplishment of a goal (e.g.,
minimize the energy consumption under latency and accuracy constraints).
Numerical results show the advantages of the proposed SP selection and resource
allocation, to enable energy frugal and effective edge AI.
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