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首页> 外文期刊>IEEE communications letters >Orchestrating In-Band Data Plane Telemetry With Machine Learning
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Orchestrating In-Band Data Plane Telemetry With Machine Learning

机译:使用机器学习策划带内置数据平面遥测

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In-band network telemetry (INT) is an emerging network monitoring paradigm. By collecting low-level telemetry items in real time, INT can substantially enhance network-wide visibility - allowing, for example, timely detection problems such as micro-burst. Recent studies have focused on (i) developing INT mechanisms to increase network-wide visibility; and (ii) to design new monitoring solutions. However, little has been done to coordinate the process of collecting telemetry items in this new paradigm. This is particularly challenging because depending on which network telemetry items are collected, it might degrade network-wide visibility in terms of consistency/freshness. In this letter, we theoretically formalize the In-band Network Telemetry Orchestration Plan Problem and propose a machine learning based orchestration model. Results show that our approach outperforms state-of-the-art heuristics by up a factor of 8x with respect to the number of network anomalies identified, for instance.
机译:带内网络遥测(INT)是一个新兴网络监控范式。通过实时收集低级遥测物品,int可以大大提高网络宽的可视性 - 例如,及时检测如微突发等问题。最近的研究专注于(i)开发型机制,以提高网络广泛的能见度; (ii)设计新的监控解决方案。但是,在这个新的范例中协调收集遥测项目的过程很少。这尤其具有挑战性,因为根据收集的网络遥测项目,它可能会在一致性/新鲜度方面降低网络范围广泛的可视性。在这封信中,我们理论上正式化了带内网络遥测编程计划问题,并提出了一种基于机器学习的编排模型。结果表明,我们的方法在例如所识别的网络异常数量增加8倍的情况下优于最先进的启发式。

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