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Transformer Masked Autoencoders for Next-Generation Wireless Communications: Architecture and Opportunities

Abdullah Zayat, Mahmoud A. Hasabelnaby, Mohanad Obeed, Anas Chaaban

2023IEEE Communications Magazine15 citationsDOI

Abstract

Next-generation communication networks are expected to exploit recent advances in data science and cutting-edge communications technologies to improve the utilization of the available communications resources. In this article, we introduce an emerging deep learning (DL) architecture, the transformermasked autoencoder (TMAE), and discuss its potential in nextgeneration wireless networks. We discuss the limitations of current DL techniques in meeting the requirements of 5G and beyond 5G networks, and how the TMAE differs from the classical DL techniques can potentially address several wireless communication problems. We highlight various areas in nextgeneration mobile networks which can be addressed using a TMAE, including source and channel coding, estimation, and security. Furthermore, we demonstrate a case study showing how a TMAE can improve data compression performance and complexity compared to existing schemes. Finally, we discuss key challenges and open future research directions for deploying the TMAE in intelligent next-generation mobile networks.

Topics & Concepts

Computer scienceExploitAutoencoderWirelessWireless networkKey (lock)Coding (social sciences)ArchitectureDistributed computingComputer networkDeep learningComputer architectureArtificial intelligenceTelecommunicationsComputer securityStatisticsVisual artsMathematicsArtWireless Signal Modulation ClassificationAdvanced MIMO Systems OptimizationAdvanced Wireless Communication Technologies
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