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Bring Intelligence among Edges: A Blockchain-Assisted Edge Intelligence Approach

机译:在边缘带来智能:宽松的辅助优势智力方法

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The revolutions of computing and communication have opened up demands for the high quality of service (QoS), such as high data transmission, high reliability, and low latency. These new opportunities have spawned numerous studies on edge computing and artificial intelligence (AI), even the cooperation between them, referred to as edge intelligence. However, there are a number of handicaps that prevent edge intelligence from being used as a generic platform. The most intractable one is the heterogeneity and un-credibility among edges, hindering the way of sharing the learning results reliably, flexibly, and efficiently. In this paper, we propose a blockchain-assisted edge intelligence (B-EI) approach to solve the problem. The edge learning nodes train their local intelligence, followed by the improved blockchain to share the local intelligence, constructing edge intelligence among the heterogeneous and uncredible edges. Specifically, the improved blockchain employs a novel learning-measured consensus protocol, named Proof of Learning. The edges, also acted as the blockchain nodes, compete to have more superior local intelligence, instead of solving a hashed result. The superior local intelligence is then shared and distributed with other edges. It is not only beneficial to achieve edge intelligence, but also efficient to employ the computation resource, by replacing the hashing as the intelligence training. In order to show the potential benefits, we then use the proposed B-EI approach to solve a joint resource assignment problem. Simulation results show that our scheme outperforms the other state-of-art solutions, in terms of training episodes, and resource utility.
机译:计算和通信的革命已经开辟了对高质量的服务(QoS)的需求,例如高数据传输,高可靠性和低延迟。这些新的机会产生了众多关于边缘计算和人工智能(AI)的研究,即使是它们之间的合作,也称为Edge Intelligence。但是,存在许多障碍,以防止边缘智能被用作通用平台。最棘手的是边缘之间的异质性和不可胜性,阻碍了可靠,灵活,有效地分享学习结果的方式。在本文中,我们提出了一种辅助的边缘智能(B-EI)方法来解决问题。边缘学习节点训练他们的本地情报,然后是改进的区块链来分享本地智能,构建异构和不可信任的边缘之间的边缘智能。具体地,改进的区块链采用了一种新的学习衡量的共识协议,命名为学习证明。边缘,也充当了区块链节点,竞争具有更优越的本地智能,而不是解决哈希结果。然后将卓越的本地智能与其他边缘共享和分发。通过将散列作为智能培训替换散列来实现边缘智能而且有效地使用计算资源,这不仅有益。为了展示潜在的好处,我们使用所提出的B-EI方法来解决联合资源分配问题。仿真结果表明,我们的方案在训练剧集和资源实用程序方面优于其他最先进的解决方案。

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