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iOn-Profiler: intelligent Online multi-objective VNF Profiling with Reinforcement Learning

Authors :
Vasilakos, Xenofon
Moazzeni, Shadi
Bravalheri, Anderson
Jaisudthi, Pratchaya
Nejabati, Reza
Simeonidou, Dimitra
Publication Year :
2023

Abstract

Leveraging the potential of Virtualised Network Functions (VNFs) requires a clear understanding of the link between resource consumption and performance. The current state of the art tries to do that by utilising Machine Learning (ML) and specifically Supervised Learning (SL) models for given network environments and VNF types assuming single-objective optimisation targets. Taking a different approach poses a novel VNF profiler optimising multi-resource type allocation and performance objectives using adapted Reinforcement Learning (RL). Our approach can meet Key Performance Indicator (KPI) targets while minimising multi-resource type consumption and optimising the VNF output rate compared to existing single-objective solutions. Our experimental evaluation with three real-world VNF types over a total of 39 study scenarios (13 per VNF), for three resource types (virtual CPU, memory, and network link capacity), verifies the accuracy of resource allocation predictions and corresponding successful profiling decisions via a benchmark comparison between our RL model and SL models. We also conduct a complementary exhaustive search-space study revealing that different resources impact performance in varying ways per VNF type, implying the necessity of multi-objective optimisation, individualised examination per VNF type, and adaptable online profile learning, such as with the autonomous online learning approach of iOn-Profiler.<br />Comment: 22 pages, 12 figures, 8 tables, journal article pre-print version

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2312.09355
Document Type :
Working Paper