Dynamic resource aware VNF placement with deep reinforcement learning for 5G networks

A Dalgkitsis, PV Mekikis… - … 2020-2020 IEEE …, 2020 - ieeexplore.ieee.org
GLOBECOM 2020-2020 IEEE Global Communications Conference, 2020ieeexplore.ieee.org
The increasing demand for fast, reliable, and robust network services has driven the
telecommunications industry to design novel network architectures that employ Network
Functions Virtualization and Software Defined Networking. Despite the advancements in
cellular networks, there is a need for an automatic, self-adapting orchestrating mechanism
that can manage the placement of resources. Deep Reinforcement Learning can perform
such tasks dynamically, without any prior knowledge. In this work, we leverage a Deep …
The increasing demand for fast, reliable, and robust network services has driven the telecommunications industry to design novel network architectures that employ Network Functions Virtualization and Software Defined Networking. Despite the advancements in cellular networks, there is a need for an automatic, self-adapting orchestrating mechanism that can manage the placement of resources. Deep Reinforcement Learning can perform such tasks dynamically, without any prior knowledge. In this work, we leverage a Deep Deterministic Policy Gradient Reinforcement Learning algorithm, to fully automate the Virtual Network Functions deployment process between edge and cloud network nodes. We evaluate the performance of our implementation and compare it with alternative solutions to prove its superiority while demonstrating results that pave the way for Experiential Network Intelligence and fully automated, Zero touch network Service Management.
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