Journal article

Achieving AI-Enabled Robust End-to-End Quality of Experience Over Backhaul Radio Access Networks

D Roy, AS Rao, T Alpcan, G Das, M Palaniswami

IEEE Transactions on Cognitive Communications and Networking | IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC | Published : 2022

Abstract

Emerging applications such as Augmented Reality, the Internet of Vehicles and Remote Surgery require both computing and networking functions working in harmony. The End-to-end (E2E) quality of experience (QoE) for these applications depends on the synchronous allocation of networking and computing resources. However, the relationship between the resources and the E2E QoE outcomes is typically stochastic and non-linear. In order to make efficient resource allocation decisions, it is essential to model these relationships. This article presents a novel machine-learning based approach to learn these relationships and concurrently orchestrate both resources for this purpose. The machine learning..

View full abstract