LPulse: An efficient algorithm for service function chain placement and routing with delay guarantee

IF 4.4 2区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Computer Networks Pub Date : 2024-08-22 DOI:10.1016/j.comnet.2024.110728
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Abstract

Modern network services increasingly depend on the effective orchestration of the Service Function Chain (SFC) with stringent end-to-end delay guarantees. To achieve this, the Delay-Constrained Service Function Chain Placement and Routing (DC-SFCPR) problem must be addressed. This problem involves the optimal selection of nodes for placing network functions and routes that adhere to a specific sequence of service functions, to minimize network bandwidth and CPU costs while strictly adhering to stringent end-to-end delay constraints. The DC-SFCPR problem is NP-hard and existing algorithms either fail to guarantee strict delay constraints or are computationally expensive, making them unsuitable for expanding network topologies. We propose the LPulse algorithm, designed to efficiently solve the DC-SFCPR problem. This algorithm utilizes a layered graph to embed the requirements of service functions, transforming the DC-SFCPR problem into a Delay-Constrained Shortest Path (DCSP) problem. The LPulse algorithm then applies Pulse, a depth-first search framework enhanced with efficient pruning strategies, and incorporates two novel acceleration strategies to solve the DCSP problem. We prove that LPulse ensures the optimality of solutions. Evaluations conducted across various topologies, with node scales ranging from 22 to 10,000, show that LPulse surpasses existing algorithms in both solution quality and speed. For instance, the number of cases meeting strict delay constraints with LPulse is 1.9× that of those solved by deep reinforcement learning algorithms; furthermore, its solving efficiency is 4.9× that of the highest-performing existing optimal algorithm, the LagrangianKsp algorithm.

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LPulse:具有延迟保证的服务功能链放置和路由的高效算法
现代网络服务越来越依赖于服务功能链(SFC)的有效协调和严格的端到端延迟保证。为此,必须解决延迟约束服务功能链放置和路由选择(DC-SFCPR)问题。这个问题涉及如何优化选择节点来放置网络功能和路由,以遵守特定的服务功能序列,最大限度地降低网络带宽和 CPU 成本,同时严格遵守严格的端到端延迟约束。DC-SFCPR 问题是 NP 难问题,现有算法要么无法保证严格的延迟约束,要么计算成本高昂,因此不适合不断扩展的网络拓扑结构。我们提出了 LPulse 算法,旨在高效解决 DC-SFCPR 问题。该算法利用分层图嵌入服务功能要求,将 DC-SFCPR 问题转化为延迟约束最短路径 (DCSP) 问题。然后,LPulse 算法应用 Pulse(一种深度优先搜索框架,采用高效剪枝策略进行增强),并结合两种新型加速策略来解决 DCSP 问题。我们证明,LPulse 可确保解决方案的最优性。在节点规模从 22 到 10,000 不等的各种拓扑结构中进行的评估表明,LPulse 在求解质量和速度方面都超越了现有算法。例如,使用 LPulse 时满足严格延迟约束的案例数是深度强化学习算法求解案例数的 1.9 倍;此外,其求解效率是性能最高的现有最优算法 LagrangianKsp 算法的 4.9 倍。
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来源期刊
Computer Networks
Computer Networks 工程技术-电信学
CiteScore
10.80
自引率
3.60%
发文量
434
审稿时长
8.6 months
期刊介绍: Computer Networks is an international, archival journal providing a publication vehicle for complete coverage of all topics of interest to those involved in the computer communications networking area. The audience includes researchers, managers and operators of networks as well as designers and implementors. The Editorial Board will consider any material for publication that is of interest to those groups.
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