论文标题
SAIA:移动医疗系统的分裂人工智能体系结构
SAIA: Split Artificial Intelligence Architecture for Mobile Healthcare System
论文作者
论文摘要
随着深度学习的发展(DL),物联网和云计算技术针对生物医学和医疗保健问题,移动医疗保健系统已受到前所未有的关注。由于DL技术通常需要大量的计算,因此大多数无法直接部署在资源受限的移动设备上。因此,大多数移动医疗系统都利用云计算基础架构,其中移动设备和IoT设备收集的数据将传输到云计算平台进行分析。但是,在有争议的环境中,依靠云在任何时候都不是实际的。例如,卫星通信可能会被拒绝或中断。我们提出了Saia,这是一种用于移动医疗系统的人工智能架构。与仅利用云服务器的计算能力的传统方法(AI)不同,Saia不仅可以依赖云计算基础架构,而无线通信可用,而且还可以利用在客户端上工作的轻量级AI解决方案,因此即使在通信不足的情况下它也可以正常工作。在SAIA中,我们提出了一个基于元信息的决策单位,可以调整客户端捕获的样本是否应由嵌入式AI(即保留客户端)或网络AI(即发送到服务器),在不同条件下,在不同条件下操作。在我们的实验评估中,已经在两个流行的医疗保健数据集上进行了广泛的实验。我们的结果表明,在有效性和效率方面,SAIA始终优于其基准。
As the advancement of deep learning (DL), the Internet of Things and cloud computing techniques for biomedical and healthcare problems, mobile healthcare systems have received unprecedented attention. Since DL techniques usually require enormous amount of computation, most of them cannot be directly deployed on the resource-constrained mobile and IoT devices. Hence, most of the mobile healthcare systems leverage the cloud computing infrastructure, where the data collected by the mobile and IoT devices would be transmitted to the cloud computing platforms for analysis. However, in the contested environments, relying on the cloud might not be practical at all times. For instance, the satellite communication might be denied or disrupted. We propose SAIA, a Split Artificial Intelligence Architecture for mobile healthcare systems. Unlike traditional approaches for artificial intelligence (AI) which solely exploits the computational power of the cloud server, SAIA could not only relies on the cloud computing infrastructure while the wireless communication is available, but also utilizes the lightweight AI solutions that work locally on the client side, hence, it can work even when the communication is impeded. In SAIA, we propose a meta-information based decision unit, that could tune whether a sample captured by the client should be operated by the embedded AI (i.e., keeping on the client) or the networked AI (i.e., sending to the server), under different conditions. In our experimental evaluation, extensive experiments have been conducted on two popular healthcare datasets. Our results show that SAIA consistently outperforms its baselines in terms of both effectiveness and efficiency.