Intelligent Resource Orchestration for 5G Edge Infrastructures

Author:

Moreno-Vozmediano Rafael1ORCID,Montero Rubén S.12ORCID,Huedo Eduardo1ORCID,Llorente Ignacio M.2ORCID

Affiliation:

1. Faculty of Computer Science, Complutense University of Madrid, 28040 Madrid, Spain

2. OpenNebula Systems, Paseo del Club Deportivo 1, Pozuelo de Alarcón, 28223 Madrid, Spain

Abstract

The adoption of edge infrastructure in 5G environments stands out as a transformative technology aimed at meeting the increasing demands of latency-sensitive and data-intensive applications. This research paper presents a comprehensive study on the intelligent orchestration of 5G edge computing infrastructures. The proposed Smart 5G Edge-Cloud Management Architecture, built upon an OpenNebula foundation, incorporates a ONEedge5G experimental component, which offers intelligent workload forecasting and infrastructure orchestration and automation capabilities, for optimal allocation of virtual resources across diverse edge locations. The research evaluated different forecasting models, based both on traditional statistical techniques and machine learning techniques, comparing their accuracy in CPU usage prediction for a dataset of virtual machines (VMs). Additionally, an integer linear programming formulation was proposed to solve the optimization problem of mapping VMs to physical servers in distributed edge infrastructure. Different optimization criteria such as minimizing server usage, load balancing, and reducing latency violations were considered, along with mapping constraints. Comprehensive tests and experiments were conducted to evaluate the efficacy of the proposed architecture.

Funder

Spanish Ministry for Digital Transformation and Civil Service

European Union

Publisher

MDPI AG

Reference82 articles.

1. Opportunistic Deployment of Distributed Edge Clouds for Latency-Critical Applications;Huedo;J. Grid Comput.,2021

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4. Kralicky, J. (2024, February 26). Opni-Multi-Cluster Observability with AIOps. Available online: https://opni.io/.

5. Google Developers (2024, February 26). Google Active Assist. Available online: https://cloud.google.com/recommender/docs/whatis-activeassist.

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