Cost-optimized Task Offloading for Dependent Applications in Collaborative Edge and Cloud Computing
Document Type
Article
Publication Date
1-1-2024
Abstract
A collaborative system that includes mobile devices (MDs), edge nodes (ENs), and the cloud is needed where ENs at the network edge can run offloaded tasks of MDs with limited resources and energy for timely processing for latency-sensitive applications. Unlike existing studies, we formulate a total cost minimization problem for the system for applications, which can be divided into several interdependent subtasks. Each subtask can be executed in MDs, ENs, and the cloud. This work formulates a mixed-integer nonlinear program to minimize the total system cost. To address it, a novel meta-heuristic optimization algorithm called Genetic Simulated-annealing-based Particle swarm optimization with Auto-Encoder (GSPAE) is proposed, which innovatively combines feature extraction of deep learning and global search of meta-heuristic optimization. Genetic operations provide diverse solutions, the Metropolis acceptance of annealing offers a robust global search, and autoencoders extract distribution characteristics of particles towards high-quality regions for fast convergence. Thus, GSPAE optimizes the associations between ENs and MDs and the scheduling of subtasks among MDs, ENs, and the cloud. Experiments with large-scale Google cluster datasets show that compared to state-of-the-art benchmark methods, GSPAE reduces the total cost by at least 17% while strictly meeting limits of application latency, available energy, computing, and communication resources of ENs and MDs.
Identifier
85214703352 (Scopus)
Publication Title
IEEE Internet of Things Journal
External Full Text Location
https://doi.org/10.1109/JIOT.2024.3522964
e-ISSN
23274662
Recommended Citation
Yuan, Haitao; Hu, Qinglong; Wang, Shen; Bi, Jing; Buyya, Rajkumar; Lu, Jinhu; Yang, Jinhong; Zhang, Jia; and Zhou, Mengchu, "Cost-optimized Task Offloading for Dependent Applications in Collaborative Edge and Cloud Computing" (2024). Faculty Publications. 747.
https://digitalcommons.njit.edu/fac_pubs/747