To support emerging real-time monitoring and control applications, the timeliness of computation results is of critical importance to mobile-edge computing (MEC) systems. We propose a performance metric called age of task (AoT) based on the concept of age of information (AoI), to evaluate the temporal value of computation tasks. In this paper, we consider a system consisting of a single MEC server and one mobile device running several applications. We study an age minimization problem by jointly considering task scheduling, computation offloading and energy consumption. To solve the problem efficiently, we propose a light-weight task scheduling and computation offloading algorithm. Through performance evaluation, we show that our proposed age-based solution is competitive when compared with traditional strategies.
Bin LinXiaohui LinShengli ZhangHui WangSuzhi Bi
Xiao ZhengMingchu LiMuhammad TahirYuanfang ChenMuhammad Alam
Zhonglun WangPeifeng LiShuai ShenKun Yang
Abbas AlzaghirAndrey Koucheryavy
Zhang LinHaopeng ChenYucheng TaoChang LiuShengyang LiuFei Han