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首页> 外文期刊>Journal of network and systems management >Monte Carlo Tree Search with Last-Good-Reply Policy for Cognitive Optimization of Cloud-Ready Optical Networks
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Monte Carlo Tree Search with Last-Good-Reply Policy for Cognitive Optimization of Cloud-Ready Optical Networks

机译:Monte Carlo树搜索使用云就绪光网络认知优化的最后一个好回复策略

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摘要

The rapid development of Cloud Computing and Content Delivery Networks (CDNs) brings a significant increase in data transfers that leads to new optimization challenges in inter-data center networks. In this article, we focus on the cross-stratum optimization of an inter-data center Elastic Optical Network (EON). We develop an optimization approach that employs machine learning Monte Carlo Tree Search (MCTS) algorithm for the simulation of future traffic to improve the performance of the network regarding the request blocking and the operational cost. The key novelty of our approach is using various selection strategies applied to the phase of building a search tree under different network scenarios. We evaluate the performance of these selection strategies using representative topologies and real-data provided by Amazon Web Services. The main conclusion is that the approach based on the policy of Last-Good-Reply with Forgetting enables more efficient cloud resource allocation, which results in lower request blocking, thus, reduces the operational cost of the network.
机译:云计算和内容交付网络的快速发展(CDNS)带来了数据传输的显着增加,导致数据间网络中的新优化挑战。在本文中,我们专注于数据间中心弹性光学网络(EON)的跨地层优化。我们开发了一种优化方法,采用机器学习蒙特卡罗树搜索(MCTS)算法,用于模拟未来流量,以提高关于请求阻塞和操作成本的网络性能。我们的方法的关键新颖性是使用应用于不同网络场景的各种选择策略应用于构建搜索树的阶段。我们使用Amazon Web服务提供的代表性拓扑和真实数据来评估这些选择策略的性能。主要结论是,基于忘记的最后答复政策的方法使得能够更有效的云资源分配,从而导致较低的请求阻断,从而降低了网络的运行成本。

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