Stateless ARE: Action Recommendation Engine without Network State Measurement

Ayşe Rumeysa Mohammed, S. Mohammed, David Côté, S. Shirmohammadi
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Abstract

Network Operation Centers (NOC) are responsible for a communication network's efficient operation, traffic engineering, failure management, and network assurance. Due to the size and complexity of today's networks, the traditionally manual operations in an NOC are becoming more difficult to perform optimally. In response to that, in our previous work we showed that Artificial Intelligence (AI) can be utilized for autonomous action recommendation in an NOC. While in that work the network's state was measured, in this work we study if actions can be recommended without measuring the network's state, saving both time and processing power, reducing complexity, and avoiding mistakes in measuring network state. To that end, we design an AI-based action recommender that recommends actions for an NOC without first measuring the network state. Results show that although such a stateless action recommender does not initially outperform its stateful equivalent, it does significantly outperform a static network, leading to the conclusion that with more optimization and/or by choosing better AI methods, a stateless action recommender could potentially reach the same performance of a stateful action recommender.
无状态ARE:没有网络状态度量的动作推荐引擎
网络运营中心(Network Operation Centers, NOC)负责通信网络的高效运营、流量工程、故障管理和网络保障。由于当今网络的规模和复杂性,NOC中传统的手动操作越来越难以达到最佳效果。为此,在我们之前的工作中,我们表明人工智能(AI)可以用于NOC中的自主行动建议。虽然在该工作中测量了网络的状态,但在本工作中,我们研究了是否可以在不测量网络状态的情况下推荐操作,从而节省时间和处理能力,降低复杂性,并避免在测量网络状态时出现错误。为此,我们设计了一个基于人工智能的行动推荐器,它可以在不首先测量网络状态的情况下为NOC推荐行动。结果表明,尽管这种无状态动作推荐器最初的性能并不优于其有状态的等效物,但它确实明显优于静态网络,从而得出结论,通过更多的优化和/或选择更好的人工智能方法,无状态动作推荐器可能会达到与有状态动作推荐器相同的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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