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Cognitive Popularity Based AI Service Sharing for Software-Defined Information-Centric Networks

机译:基于认知人气的AI服务共享软件定义的信息中心网络

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摘要

As an important architecture of next-generation network, Software-Defined Information-Centric Networking (SD-ICN) enables flexible and fast content sharing in beyond the fifth-generation (B5G). The clear advantages of SD-ICN in fast and efficient content distribution and flexible control make it a perfect platform for solving the rapid sharing and cognitive caching of AI services, including data samples sharing and pre-trained models transferring. With the explosive growth of decentralized artificial intelligence (AI) services, the training and sharing efficiency of edge AI is affected. Various applications usually request the same AI samples and training models, but the efficient and cognitive sharing of AI services remain unsolved. To address these issues, we propose a cognitive popularity-based AI service distribution architecture based on SD-ICN. First, an SD-ICN enabled edge training scheme is proposed to generate accurate AI service models over decentralized big data samples. Second, Pure Birth Process (PBP) and error correction-based AI service caching and distribution schemes are proposed, which provides user request-oriented cognitive popularity model for caching and distribution optimization. Simulation results indicate the superiority of the proposed architecture, and the proposed cognitive SD-ICN scheme has 62.11% improved to the conventional methods.
机译:作为下一代网络的重要架构,软件定义的信息中心网络(SD-ICN)可以在Fifth-Groto(B5G)之外,灵活和快速的内容共享。 SD-ICN在快速高效的内容分发和灵活控制中的明显优势使其成为解决AI服务的快速共享和认知缓存的完美平台,包括数据样本共享和预先训练的模型转移。随着分散的人工智能(AI)服务的爆炸性增长,边缘AI的培训和分享效率受到影响。各种应用程序通常要求相同的AI样本和培训模型,但AI服务的有效和认知共享仍未解决。为解决这些问题,我们提出了一种基于SD-ICN的认知人气的AI服务分发架构。首先,提出了一种支持SD-ICN的边缘训练方案,以通过分散的大数据样本来生成准确的AI服务模型。第二,提出了纯初生过程(PBP)和基于纠错的AI服务缓存和分配方案,为缓存和分发优化提供了用户请求的认知认知人气模型。仿真结果表明拟议架构的优越性,拟议的认知SD-ICN方案有62.11%改善了传统方法。

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