NIAIAug 29, 2018

Label-less Learning for Traffic Control in an Edge Network

arXiv:1809.04525v198 citations
Originality Incremental advance
AI Analysis

This addresses network traffic reduction for edge computing applications like self-driving, but it appears incremental as it builds on existing edge and traffic control methods.

The paper tackles the problem of achieving cloud intelligence with limited network bandwidth by designing a traffic control algorithm called LLTC that evaluates data value at the edge to minimize data transmission, with experimental results showing it guarantees required intelligence while reducing data offload.

With the development of intelligent applications (e.g., self-driving, real-time emotion recognition, etc), there are higher requirements for the cloud intelligence. However, cloud intelligence depends on the multi-modal data collected by user equipments (UEs). Due to the limited capacity of network bandwidth, offloading all data generated from the UEs to the remote cloud is impractical. Thus, in this article, we consider the challenging issue of achieving a certain level of cloud intelligence while reducing network traffic. In order to solve this problem, we design a traffic control algorithm based on label-less learning on the edge cloud, which is dubbed as LLTC. By the use of the limited computing and storage resources at edge cloud, LLTC evaluates the value of data, which will be offloaded. Specifically, we first give a statement of the problem and the system architecture. Then, we design the LLTC algorithm in detail. Finally, we set up the system testbed. Experimental results show that the proposed LLTC can guarantee the required cloud intelligence while minimizing the amount of data transmission.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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