It is anticipated that 6G wireless networks will accelerate the convergence of the physical and cyber worlds and enable a paradigm-shift in the way we deploy and exploit communication networks. Machine learning, in particular deep learning (DL), is expected to be one of the key technological enablers of 6G by offering a new paradigm for the design and optimization of networks with a high level of intelligence. In this article, we introduce an emerging DL architecture, known as the transformer, and discuss its potential impact on 6G network design. We first discuss the differences between the transformer and classical DL architectures, and emphasize the transformer's self-attention mechanism and strong representation capabilities, which make it particularly appealing for tackling various challenges in wireless network design. Specifically, we propose transformer-based solutions for various massive multiple-input multiple-output (MIMO) and semantic communication problems, and show their superiority compared to other architectures. Finally, we discuss key challenges and open issues in transformer-based solutions, and identify future research directions for their deployment in intelligent 6G networks.
翻译:预计6G无线网络将加速物理和网络世界的融合,并使我们能够在部署和利用通信网络的方式上实现范式转变。机器学习,特别是深学习(DL),通过为设计和优化具有高度情报水平的网络提供新的范例,预计将成为6G的关键技术促进因素之一。在本篇文章中,我们引入了一个新兴的DL架构,称为变压器,并讨论其对6G网络设计的潜在影响。我们首先讨论变压器和传统DL架构之间的差异,强调变压器的自我注意机制和强大的代表能力,这特别促使它呼吁应对无线网络设计中的各种挑战。具体地说,我们提出了基于变压器的多种产出(MIMO)和语义通信问题的各种大规模多重产出(MIMO)和语义通信问题解决方案,并展示其与其他架构相比的优势。最后,我们讨论了变压器解决方案中的关键挑战和开放问题,并确定了在智能6G网络中部署这些解决方案的未来研究方向。