In existing mobile network systems, the data plane (DP) is mainly considered a pipeline consisting of network elements end-to-end forwarding user data traffics. With the rapid maturity of programmable network devices, however, mobile network infrastructure mutates towards a programmable computing platform. Therefore, such a programmable DP can provide in-network computing capability for many application services. In this paper, we target to enhance the data plane with in-network deep learning (DL) capability. However, in-network intelligence can be a significant load for network devices. Then, the paradigm of the functional split is applied so that the deep neural network (DNN) is decomposed into sub-elements of the data plane for making machine learning inference jobs more efficient. As a proof-of-concept, we take a Blind Source Separation (BSS) problem as an example to exhibit the benefits of such an approach. We implement the proposed enhancement in a full-stack emulator and we provide a quantitative evaluation with professional datasets. As an initial trial, our study provides insightful guidelines for the design of the future mobile network system, employing in-network intelligence (e.g., 6G).
翻译:在现有的移动网络系统中,数据平面(DP)主要被视为由网络要素端到端传输用户数据传输数据流量组成的管道。然而,随着可编程网络装置的快速成熟,移动网络基础设施会向可编程计算平台转变,因此,这种可编程的DP可以为许多应用服务提供网络内计算能力。在本文件中,我们的目标是利用网络深层学习(DL)能力加强数据平面。然而,网络内情报可能是网络设备的重要负担。然后,应用功能分割的范例,使深神经网(DNNN)分解成数据平面的子元素,使机器学习推断工作更加有效。作为一个验证概念,我们把“盲人源分离”问题作为展示这种方法好处的范例。我们用全式模拟器实施拟议的增强,我们用专业数据集进行定量评估。作为初步试验,我们的研究为未来移动网络系统的设计提供了深刻的指导方针,在网络情报中应用(G)。