Network softwarization has revolutionized the architecture of cellular wireless networks. State-of-the-art container based virtual radio access networks (vRAN) provide enormous flexibility and reduced life cycle management costs, but they also come with prohibitive energy consumption. We argue that for future AI-native wireless networks to be flexible and energy efficient, there is a need for a new abstraction in network softwarization that caters for neural network type of workloads and allows a large degree of service composability. In this paper we present the NeuroRAN architecture, which leverages stateful function as a user facing execution model, and is complemented with virtualized resources and decentralized resource management. We show that neural network based implementations of common transceiver functional blocks fit the proposed architecture, and we discuss key research challenges related to compilation and code generation, resource management, reliability and security.
翻译:网络软化使蜂窝无线网络的架构发生了革命性的变化。 最先进的以集装箱为基础的虚拟无线电接入网络(vRAN)提供了巨大的灵活性,降低了寿命周期管理成本,但也带来了令人望而却步的能源消耗。 我们主张,要使未来的AI-National无线网络具有灵活性和能源效率,就需要在网络软化中进行新的抽象化,以适应神经网络的工作量类型,并允许大量服务兼容性。 在本文中,我们介绍了NeuroRAN结构,它利用了作为面临执行模式的用户的国有功能,并辅之以虚拟化的资源和分散的资源管理。我们表明,基于神经网络实施通用收发器功能块符合拟议的架构,我们讨论了与汇编和代码生成、资源管理、可靠性和安全相关的关键研究挑战。