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Reliability-Optimal Offloading in Low-Latency Edge Computing Networks: Analytical and Reinforcement Learning Based Designs

Yao Zhu, Yulin Hu, Tianyu Yang, Tao Yang, Jannik Vogt, Anke Schmeink

2021IEEE Transactions on Vehicular Technology30 citationsDOI

Abstract

In this paper, we consider a multi-access edge computing (MEC) network with multiple servers. Due to the low latency constraints, the wireless data transmission/offloading is carried by finite blocklength codes. We characterize the reliability of the transmission phase in the finite blocklength regime and investigate the extreme event of queue length violation in the computation phase by applying extreme value theory. Under the assumption of perfect channel state information (CSI), we follow the obtained characterizations and provide an optimal framework design including server selection and time allocation aiming to minimize the overall error probability. Moreover, when only the outdated CSI is available, a deep reinforcement learning based design is proposed applying the deep deterministic policy gradient method. Via simulations, we validate the convexity proven in our analytical model and show the performance advantage of proposed analytical solution and learning-based solution comparing to the benchmark for perfect CSI and outdated CSI, respectively.

Topics & Concepts

Computer scienceReinforcement learningReliability (semiconductor)ServerBenchmark (surveying)Wireless networkTransmission (telecommunications)Channel state informationMathematical optimizationWirelessEnhanced Data Rates for GSM EvolutionQueueing theoryComputationLatency (audio)Distributed computingComputer networkAlgorithmArtificial intelligenceMathematicsTelecommunicationsGeodesyGeographyPhysicsQuantum mechanicsPower (physics)Age of Information OptimizationIoT and Edge/Fog ComputingMolecular Communication and Nanonetworks
Reliability-Optimal Offloading in Low-Latency Edge Computing Networks: Analytical and Reinforcement Learning Based Designs | Litcius