移动访问云中的服务迁移:一种强化学习方法

Shan Cao, Yang Wang, Chengzhong Xu
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引用次数: 13

摘要

将服务迁移到离客户端较近的有利位置,不仅可以减少服务访问延迟,还可以将服务提供商的网络成本降至最低。因此,这个问题对于限时服务来说尤其重要,因为它既要实现增强的QoS,又要实现成本效益。但是,服务迁移不是免费的,需要付出大容量数据传输和可能的服务中断的代价,从而增加了总体服务成本。为了在最小化服务成本的同时获得服务迁移的好处,在本文中,我们利用强化学习(RL)方法提出了一种高效的算法,称为Mig- RL,用于云环境中的服务迁移。Mig-RL使用典型的RL算法Q-learning来学习确定服务迁移状态的最优策略。具体地说,代理从历史访问信息中学习,以决定应该在何时何地迁移服务,而不需要任何有关服务访问的事先信息。因此,agent可以动态适应环境,实现实时的在线迁移。在云网络真实接入序列和综合接入序列上的实验结果表明,Mig-RL能够最大限度地降低服务成本,同时适应移动接入模式的变化,提高服务质量(QoS)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Service Migrations in the Cloud for Mobile Accesses: A Reinforcement Learning Approach
Migrating service to certain vantage locations that are close to its clients can not only reduce the service access latency,but also minimize the network costs for its service provider. As such, this problem is particularly important for time-bounded services to achieve both enhanced QoS and cost effectiveness as well. However, the service migration is not free, coming at costs of bulk-data transfer and likely service disruption, as a result, increasing the overall service costs. To gain the benefits of service migration while minimizing service costs, in this paper, we leverage reinforecement learning (RL) methods to propose an efficient algorithm, called Mig- RL, for the service migration in a cloud environment. The Mig-RL utilizes an agent to learn the optimal policy that determines service migration status by using a typical RL algorithm, called Q-learning. Specifically, the agent learns from the historical access information to decide when and to where the service should be migrated, without requiring any prior information regarding the service accesses. Therefore, the agent can dynamically adapt to the environment and achieve online migration in real time. Experimental results on the real and synthesized access sequences from cloud networks show that Mig-RL can minimize the service costs, and in the meantime, improve the quality of service (QoS) by adapting to the changes of mobile access patterns.
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