Distributed Artificial Intelligence (DAI) is regarded as one of the most promising techniques to provide intelligent services under strict privacy protection regulations for multiple clients. By applying DAI, training on raw data is carried out locally, while the trained outputs, e.g., model parameters, from multiple local clients, are sent back to a central server for aggregation. Recently, for achieving better practicality, DAI is studied in conjunction with wireless communication networks, incorporating various random effects brought by wireless channels. However, because of the complex and case-dependent nature of wireless channels, a generic simulator for applying DAI in wireless communication networks is still lacking. To accelerate the development of DAI applied in wireless communication networks, we propose a generic system design in this paper as well as an associated simulator that can be set according to wireless channels and system-level configurations. Details of the system design and analysis of the impacts of wireless environments are provided to facilitate further implementations and updates. We employ a series of experiments to verify the effectiveness and efficiency of the proposed system design and reveal its superior scalability.
翻译:根据严格的隐私保护条例,向多个客户提供智能服务的最有希望的技术之一是分配人工智能情报(DAI)。应用DAI,原始数据培训就在当地进行,而经过培训的产出,例如来自多个当地客户的模型参数,则被送回中央服务器汇总。最近,为了实现更好的实用性,DAI与无线通信网络一起研究,其中包括无线频道带来的各种随机效应。然而,由于无线频道的复杂和个案性质,仍然缺乏在无线通信网络中应用DAI的通用模拟器。为加快无线通信网络应用DAI的开发,我们提议在本文中采用通用系统设计,以及可根据无线频道和系统配置设置的相关模拟器。提供了系统设计和分析无线环境影响的详细信息,以便利进一步实施和更新。我们采用了一系列实验,以核实拟议系统设计的有效性和效率,并披露其高可扩展性。