基于自监督学习的可重构光数据通信网络

Che-Yu Liu, Xiaoliang Chen, R. Proietti, Zhaohui Li, S. Yoo
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引用次数: 0

摘要

本文提出了一种自监督机器学习方法,用于类似hyper - x的柔性带宽光互连架构中的认知重构。该方法利用聚类算法从历史轨迹中学习流量模式。提出了一种启发式算法,用于优化每个已识别的交通模式的连通性图。此外,为了缓解频繁聚类操作引起的可扩展性问题,我们使用深度神经网络分类器对学习到的流量模式进行参数化。该分类器通过监督学习离线训练,实现在线操作中流量矩阵的分类,从而促进认知重构决策。仿真结果表明,与静态全对全互连相比,该方法可将吞吐量提高1.76倍,将端到端数据包延迟和流完成时间分别降低2.8倍和25倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reconfigurable Optical Datacom Networks by Self-supervised Learning
This paper presents a self-supervised machine learning approach for cognitive reconfiguration in a Hyper-X-like flexible-bandwidth optical interconnect architecture. The proposed approach makes use of a clustering algorithm to learn the traffic patterns from historical traces. A heuristic algorithm is developed for optimizing the connectivity graph for each identified traffic pattern. Further, to mitigate the scalability issue induced by frequent clustering operations, we parameterize the learned traffic patterns by a deep neural network classifier. The classifier is trained offline by supervised learning to enable classification of traffic matrices during online operations, thereby facilitating cognitive reconfiguration decision making. Simulation results show that compared with a static all-to-all interconnection, the proposed approach can improve throughput by up to 1.76× while reducing end-to-end packet latency and flow completion time by up to 2.8× and 25×, respectively.
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