TRAN:通过多臂强盗保证任务复制

Yitong Zhou, Bowen Peng, Jingmian Wang, Weiwei Miao, Zeng Zeng, Yibo Jin, Sheng Z. Zhang, Zhuzhong Qian
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引用次数: 1

摘要

随着边缘计算的快速发展,边缘集群需要处理大量的任务,这使得一些边缘集群过载,进而导致任务完成滞后。以往的工作通常是将任务从过载边复制到空闲边,以减少任务排队和计算延迟。但是,在做出复制决策之前,无法预测复制到不同边的任务的完成延迟,这会影响任务复制的整体性能。在本文中,我们提出了一种基于多臂强盗预测的在线任务复制算法。通过严格的证明,保证了对强盗的后悔是次线性的,测量了在线决策与离线最优决策之间的差距。进行了大量的仿真,以证实所提出的算法优于最先进的复制策略。
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TRAN: Task Replication with Guarantee via Multi-armed Bandit
With the rapid development of edge computing, edge clusters need to deal with a tremendous amount of tasks, making some edge clusters overloaded, which further translates into task completion lag. Previous works usually copy the tasks from overloaded edges to idle edges so as to reduce the task queuing and computing delay. However, the completion delay of tasks copied to different edges cannot be predicted before the replication decision is made, which affects the overall task replication performance. In this paper, we propose an online task replication algorithm based on the predictions derived from multi-armed bandit. Via rigorous proof, the regret is ensured to be sub-linear upon the bandit, measuring the gap between the online decisions and the offline optimum. Extensive simulations are conducted to confirm the superiority of the proposed algorithm over state-of-the-art replication strategies.
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