论文标题
VNF和容器放置:最新进展和未来趋势
VNF and Container Placement: Recent Advances and Future Trends
论文作者
论文摘要
随着对开放性,可扩展性和粒度的需求不断增长,移动网络功能虚拟化(NFV)已成为大多数移动网络运营商的关键推动因素。 NFV将网络从硬件设备发出函数。这种去耦允许在商品硬件上托管的网络服务(称为虚拟化网络功能(VNF)),该硬件简化并增强了提供商的服务部署和管理,提高了灵活性,并导致有效且可扩展的资源使用情况,并降低了成本。 VNF在托管基础架构中的适当放置是主要技术挑战之一。此安置极大地影响了网络的性能,可靠性和运营成本。 VNF放置是NP-HARD。因此,有必要采用可以随着问题的复杂性扩展并在合理持续时间找到适当的解决方案的位置方法。这项研究的主要目的是提供用于解决VNF放置问题的优化技术的分类法。我们根据性能指标,方法,算法和环境对研究论文进行分类。虚拟化不仅限于简单地用虚拟机或VNF替换物理机器,还可能包括微服务,容器和云本地系统。在这种情况下,我们文章的第二部分重点是将容器的放置在边缘/雾计算中。许多问题都被认为是交通拥堵,资源利用,能源消耗,绩效降解,安全等。对于每个问题,通过不同的调查和研究论文提出了各种解决方案,在这些论文中,每个解决方案都通过基于单一的客观或多目标方法来解决特定方式解决位置问题,例如基于不同类型的Algorithms,例如均类的抗healuristic,Meta-Heuristic,Meta-Heerricist和Machine Algorth和Machine Algorgor。
With the growing demand for openness, scalability, and granularity, mobile network function virtualization (NFV) has emerged as a key enabler for most mobile network operators. NFV decouples network functions from hardware devices. This decoupling allows network services, referred to as Virtualized Network Functions (VNFs), to be hosted on commodity hardware which simplifies and enhances service deployment and management for providers, improves flexibility, and leads to efficient and scalable resource usage, and lower costs. The proper placement of VNFs in the hosting infrastructures is one of the main technical challenges. This placement significantly influences the network's performance, reliability, and operating costs. The VNF placement is NP-Hard. Hence, there is a need for placement methods that can scale with the issue's complexity and find appropriate solutions in a reasonable duration. The primary purpose of this study is to provide a taxonomy of optimization techniques used to tackle the VNF placement problems. We classify the studied papers based on performance metrics, methods, algorithms, and environment. Virtualization is not limited to simply replacing physical machines with virtual machines or VNFs, but may also include micro-services, containers, and cloud-native systems. In this context, the second part of our article focuses on the placement of containers in edge/fog computing. Many issues have been considered as traffic congestion, resource utilization, energy consumption, performance degradation, security, etc. For each matter, various solutions are proposed through different surveys and research papers in which each one addresses the placement problem in a specific manner by suggesting single objective or multi-objective methods based on different types of algorithms such as heuristic, meta-heuristic, and machine learning algorithms.