Virne: A Comprehensive Benchmark for Deep RL-based Network Resource Allocation in NFV
Virne: A Comprehensive Benchmark for Deep RL-based Network Resource Allocation in NFV
Resource allocation (RA) is critical to efficient service deployment in Network Function Virtualization (NFV), a transformative networking paradigm. Recently, deep Reinforcement Learning (RL)-based methods have been showing promising potential to address this complexity. However, the lack of a systematic benchmarking framework and thorough analysis hinders the exploration of emerging networks and the development of more robust algorithms while causing inconsistent evaluation. In this paper, we introduce Virne, a comprehensive benchmarking framework for the NFV-RA problem, with a focus on supporting deep RL-based methods. Virne provides customizable simulations for diverse network scenarios, including cloud, edge, and 5G environments. It also features a modular and extensible implementation pipeline that supports over 30 methods of various types, and includes practical evaluation perspectives beyond effectiveness, such as scalability, generalization, and scalability. Furthermore, we conduct in-depth analysis through extensive experiments to provide valuable insights into performance trade-offs for efficient implementation and offer actionable guidance for future research directions. Overall, with its diverse simulations, rich implementations, and extensive evaluation capabilities, Virne could serve as a comprehensive benchmark for advancing NFV-RA methods and deep RL applications. The code is publicly available at https://github.com/GeminiLight/virne.
Tianfu Wang、Liwei Deng、Xi Chen、Junyang Wang、Huiguo He、Leilei Ding、Wei Wu、Qilin Fan、Hui Xiong
通信自动化技术、自动化技术设备计算技术、计算机技术
Tianfu Wang,Liwei Deng,Xi Chen,Junyang Wang,Huiguo He,Leilei Ding,Wei Wu,Qilin Fan,Hui Xiong.Virne: A Comprehensive Benchmark for Deep RL-based Network Resource Allocation in NFV[EB/OL].(2025-07-25)[2025-08-10].https://arxiv.org/abs/2507.19234.点此复制
评论