ABSTRACT The rapid advancement of mobile edge computing (MEC) has led to a growing need for executing complex in‐vehicle applications at the endpoint. These applications are often modeled as workflows with clearly defined task dependencies. In MEC environments, computation offloading plays a crucial role in enhancing Quality of Service (QoS). Nevertheless, most existing offloading strategies primarily address independent tasks, paying little attention to the intricate dependencies among tasks. Moreover, key factors such as budgets and privacy protection are not well tackled. Hence, in this paper, we propose a computation offloading model for workflow applications in mobile edge computing, where the makespan is optimized under budget and privacy constraints. To address it, we introduce an intelligent scheduling method, which consists of task offloading and resource preparation stages, and offloads tasks from the end to the edge and clouds with awareness of task urgency, device computing capabilities, economic costs, and privacy protection. Simulation experiments are conducted based on realistic datasets. Results demonstrate that the proposed method can improve task execution efficiency and ensure data security, thereby enhancing the performance of workflow applications in mobile edge computing scenarios.
Meng et al. (Mon,) studied this question.
Synapse has enriched 5 closely related papers on similar clinical questions. Consider them for comparative context: