基于强化学习的策略控制多域云网络切片编排策略

Asma Islam Swapna, R. V. Rosa, Christian Esteve Rothenberg, R. Pasquini, J. Baliosian
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引用次数: 2

摘要

随着5G推出由不同利益相关者担保的商业模式,网络切片的概念发挥着蓬勃发展的作用。端到端云网络切片的动态和可变特征包括位于不同管理域的不同切片部分的组合。遵循利润最大化的切片即服务(SaaS)模型,这样的多领域方面为支持不同的垂直行业提供了有前途的商业机会,向网络切片市场成员呈现了基础设施提供商、切片提供商和租户的角色。SaaS方法的有效实现引入了动态资源分配问题,表现为对按需切片部件请求的运行时决策具有挑战性。因此,Orchestrator负责实时执行一个优化的决策,根据在Network Slice架构上下文中为以下收入模型定义的编排策略,对弹性请求进行处理。本文提出了一种基于强化学习的协调器可以遵循的片管理策略,能够有效地协调片弹性请求,以了解端到端网络片生命周期的利益相关者的最大收益。建议的策略引导切片编排器根据不同参与基础设施提供者所需资源的可用性来了解要处理哪些切片请求。实验结果表明,基于强化学习的编排器优于几种关注收益最大化的基准启发式算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Policy Controlled Multi-domain cloud-network Slice Orchestration Strategy based on Reinforcement Learning
The concept of network slicing plays a thriving role as 5G rolls out business models vouched by different stakeholders. The dynamic and variable characterization of end-to-end cloud-network slices encompasses the composition of different slice parts laying at different administrative domains. Following a profit-maximizing Slice-as-a-Service (SaaS) model, such a multi-domain facet offers promising business opportunities in support of diverse vertical industries, rendering to network slicing marketplace members the roles of Infrastructure Provider, Slice Provider, and Tenants. The effective realization of SaaS approaches introduces a dynamic resource allocation problem, manifested as challenging run-time decisions upon on-demand slice part requests. The Orchestrator is hence responsible to perform an optimized decision on-the-fly on which elasticity requests to address based on an orchestration policy defined within the context of Network Slice architecture for the followed revenue model. This paper presents a slice management strategy for such an orchestrator can follow, based on reinforcement learning, able to efficiently orchestrate slice elasticity requests to comprehend the maximum revenue for the stakeholders of end-to-end network slice lifecycle. The proposed strategy orients a Slice Orchestrator to learn which slice requests to address as per availability of the required resources at the different participating Infrastructure Providers. The experimental results show the Reinforcement Learning based Orchestrator outperforms several benchmark heuristics focused on revenue maximization.
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