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Functional Split of In-Network Deep Learning for 6G: A Feasibility Study

Jia He, Huanzhuo Wu, Xun Xiao, Riccardo Bassoli, Frank H. P. Fitzek

2022IEEE Wireless Communications13 citationsDOIOpen Access PDF

Abstract

In existing mobile network systems, the data plane (DP) is mainly considered a pipeline consisting of network elements end-to-end forwarding user data traffics. With the rapid maturity of programmable network devices, however, mobile network infrastructure mutates toward a programmable computing platform. Therefore, such a programmable DP can provide in-network computing capability for many application services. In this article, we plan to enhance the data plane with in-network deep learning (DL) capability. However, in-network intelligence can be a significant load for network devices. Then the paradigm of the functional split is applied so that the deep neural network (DNN) is decomposed into sub-elements of the data plane for making machine learning inference jobs more efficient. As a proof-of-concept, we take a Blind Source Separation (BSS) problem as an example to exhibit the benefits of such an approach. We implement the proposed enhancement in a full-stack emulator and we provide a quantitative evaluation with professional datasets. As an initial trial, our study provides insightful guidelines for the design of the future mobile network system, employing in-network intelligence (e.g., 6G).

Topics & Concepts

Computer scienceForwarding planePipeline (software)Network architectureNetwork simulationArtificial intelligenceArtificial neural networkDeep learningInferenceDistributed computingNetwork management stationComputer networkMachine learningOperating systemNetwork packetWireless Signal Modulation ClassificationEnergy Harvesting in Wireless NetworksBlind Source Separation Techniques