Asymptotically Optimal Energy Efficient Offloading Policies in Multi-Access Edge Computing Systems with Task Handover

06/27/2023
by   Ling Hou, et al.
0

We study energy-efficient offloading strategies in a large-scale MEC system with heterogeneous mobile users and network components. The system is considered with enabled user-task handovers that capture the mobility of various mobile users. We focus on a long-run objective and online algorithms that are applicable to realistic systems. The problem is significantly complicated by the large problem size, the heterogeneity of user tasks and network components, and the mobility of the users, for which conventional optimizers cannot reach optimum with a reasonable amount of computational and storage power. We formulate the problem in the vein of the restless multi-armed bandit process that enables the decomposition of high-dimensional state spaces and then achieves near-optimal algorithms applicable to realistically large problems in an online manner. Following the restless bandit technique, we propose two offloading policies by prioritizing the least marginal costs of selecting the corresponding computing and communication resources in the edge and cloud networks. This coincides with selecting the resources with the highest energy efficiency. Both policies are scalable to the offloading problem with a great potential to achieve proved asymptotic optimality - approach optimality as the problem size tends to infinity. With extensive numerical simulations, the proposed policies are demonstrated to clearly outperform baseline policies with respect to power conservation and robust to the tested heavy-tailed lifespan distributions of the offloaded tasks.

READ FULL TEXT
research
08/12/2023

Energy-Efficient Deadline-Aware Edge Computing: Bandit Learning with Partial Observations in Multi-Channel Systems

In this paper, we consider a task offloading problem in a multi-access e...
research
12/16/2020

Task Offloading for Large-Scale Asynchronous Mobile Edge Computing: An Index Policy Approach

Mobile-edge computing (MEC) offloads computational tasks from wireless d...
research
12/12/2021

A Restless Bandit Model for Energy-Efficient Job Assignments in Server Farms

We aim to maximize the energy efficiency, gauged as average energy cost ...
research
06/27/2018

Online optimal task offloading with one-bit feedback

Task offloading is an emerging technology in fog-enabled networks. It al...
research
06/09/2023

Adaptive Multi-Armed Bandit Learning for Task Offloading in Edge Computing

The widespread adoption of edge computing has emerged as a prominent tre...
research
05/08/2022

A Multi-User Effective Computation Offloading Mechanism for MEC System: Batched Multi-Armed Bandits Approach

With the development of 5G technology, mobile edge computing (MEC) is be...
research
05/06/2020

AutoScale: Optimizing Energy Efficiency of End-to-End Edge Inference under Stochastic Variance

Deep learning inference is increasingly run at the edge. As the programm...

Please sign up or login with your details

Forgot password? Click here to reset