Deep Reinforcement Learning techniques for dynamic task offloading in the 5G edge-cloud continuum

被引:3
|
作者
Nieto, Gorka [1 ,2 ]
de la Iglesia, Idoia [1 ]
Lopez-Novoa, Unai [2 ]
Perfecto, Cristina [2 ]
机构
[1] Basque Res & Technol Alliance BRTA, Ikerlan Technol Res Ctr, P JM Arizmendiarrieta 2, Arrasate Mondragon 20500, Spain
[2] Univ Basque Country UPV EHU, Sch Engn Bilbao, Alameda Urquijo S-N, Bilbao 48013, Spain
关键词
Task offloading; Performance evaluation; Energy consumption; Reinforcement Learning (RL); Quality-of-Experience (QoE); Multi-access Edge Computing (MEC); Internet of Things (IoT); Edge-Cloud-Continuum; MOBILE; ALLOCATION; RESOURCE;
D O I
10.1186/s13677-024-00658-0
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The integration of new Internet of Things (IoT) applications and services heavily relies on task offloading to external devices due to the constrained computing and battery resources of IoT devices. Up to now, Cloud Computing (CC) paradigm has been a good approach for tasks where latency is not critical, but it is not useful when latency matters, so Multi-access Edge Computing (MEC) can be of use. In this work, we propose a distributed Deep Reinforcement Learning (DRL) tool to optimize the binary task offloading decision, this is, the independent decision of where to execute each computing task, depending on many factors. The optimization goal in this work is to maximize the Quality-of-Experience (QoE) when performing tasks, which is defined as a metric related to the battery level of the UE, but subject to satisfying tasks' latency requirements. This distributed DRL approach, specifically an Actor-Critic (AC) algorithm running on each User Equipment (UE), is evaluated through the simulation of two distinct scenarios and outperforms other analyzed baselines in terms of QoE values and/or energy consumption in dynamic environments, also demonstrating that decisions need to be adapted to the environment's evolution.
引用
收藏
页数:24
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