RLDRM:基于深度强化学习的网络功能虚拟化闭环动态缓存分配

Bin Li, Yipeng Wang, Ren Wang, Charlie Tai, R. Iyer, Zhu Zhou, Andrew J. Herdrich, Tong Zhang, Ameer Haj-Ali, I. Stoica, K. Asanović
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引用次数: 12

摘要

网络功能虚拟化(NFV)技术吸引了电信行业和数据中心运营商的极大兴趣,因为它允许服务提供商按需为虚拟网络功能(VNFs)分配资源,从而实现更好的灵活性、可编程性和可扩展性。为了提高服务器利用率,一种流行的做法是,当检测到高优先级VNF的资源使用量较低时,将best effort (BE)工作负载与高优先级(HP) VNF一起部署。该部署方案的关键挑战是动态平衡服务水平目标(SLO)和总拥有成本(TCO),以优化固有波动工作负载下的数据中心效率。随着深度强化学习的最新进展,我们推测它有可能通过自适应调整资源分配来解决这一挑战,以达到改进的性能和更高的服务器利用率。在本文中,我们提出了一个闭环自动化系统RLDRM11RLDRM:强化学习动态资源管理,使用深度强化学习动态调整HP VNFs和BE工作负载之间的最后一级缓存分配。结果表明,在保持HP VNFs所需的SLO的同时,提高了服务器利用率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RLDRM: Closed Loop Dynamic Cache Allocation with Deep Reinforcement Learning for Network Function Virtualization
Network function virtualization (NFV) technology attracts tremendous interests from telecommunication industry and data center operators, as it allows service providers to assign resource for Virtual Network Functions (VNFs) on demand, achieving better flexibility, programmability, and scalability. To improve server utilization, one popular practice is to deploy best effort (BE) workloads along with high priority (HP) VNFs when high priority VNF's resource usage is detected to be low. The key challenge of this deployment scheme is to dynamically balance the Service level objective (SLO) and the total cost of ownership (TCO) to optimize the data center efficiency under inherently fluctuating workloads. With the recent advancement in deep reinforcement learning, we conjecture that it has the potential to solve this challenge by adaptively adjusting resource allocation to reach the improved performance and higher server utilization. In this paper, we present a closed-loop automation system RLDRM11RLDRM: Reinforcement Learning Dynamic Resource Management to dynamically adjust Last Level Cache allocation between HP VNFs and BE workloads using deep reinforcement learning. The results demonstrate improved server utilization while maintaining required SLO for the HP VNFs.
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