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Value Iteration Architecture Based Deep Learning for Intelligent Routing Exploiting Heterogeneous Computing Platforms

机译:基于价值迭代架构的深度学习的智能路由开发异构计算平台

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摘要

Recently, the rapid advancement of high computing platforms has accelerated the development and applications of artificial intelligence techniques. Deep learning, which has been regarded as the next paradigm to revolutionize users' experiences, has attracted networking researchers' interests to relieve the burden due to the exponentially growing traffic and increasing complexities. Various intelligent packet transmission strategies have been proposed to tackle different network problems. However, most of the existing research just focuses on the network related improvements and neglects the analysis about the computation consumptions. In this paper, we propose a Value Iteration Architecture based Deep Learning (VIADL) method to conduct routing design to address the limitations of existing deep learning based routing algorithms in dynamic networks. Besides the network performance analysis, we also study the complexity of our proposal as well as the resource consumptions in different deployment manners. Moreover, we adopt the Heterogeneous Computing Platform (HCP) to conduct the training and running of the proposed VIADL since the theoretical analysis demonstrates the significant reduction of the time complexity with the multiple GPUs in HCPs. Furthermore, simulation results demonstrate that compared with the existing deep learning based method, our proposal can guarantee more stable network performance when network topology changes.
机译:近来,高级计算平台的迅速发展加速了人工智能技术的发展和应用。深度学习已被认为是革新用户体验的下一个范例,它吸引了网络研究人员的兴趣,以减轻由于流量呈指数级增长和复杂性增加而带来的负担。已经提出了各种智能分组传输策略来解决不同的网络问题。但是,大多数现有研究只是集中在与网络有关的改进上,而忽略了对计算消耗的分析。在本文中,我们提出了一种基于价值迭代架构的深度学习(VIADL)方法来进行路由设计,以解决动态网络中现有基于深度学习的路由算法的局限性。除了网络性能分析之外,我们还研究了建议的复杂性以及不同部署方式下的资源消耗。此外,由于理论分析表明使用HCP中的多个GPU可以显着降低时间复杂性,因此我们采用异构计算平台(HCP)来进行所提出的VIADL的训练和运行。此外,仿真结果表明,与现有的基于深度学习的方法相比,我们的建议可以在网络拓扑发生变化时保证更稳定的网络性能。

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