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Distributed Artificial Intelligence-as-a-Service (DAIaaS) for Smarter IoE and 6G Environments

机译:用于更智能IOE和6G环境的分布式人工智能 - AS-Service(DAIAAS)

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摘要

Artificial intelligence (AI) has taken us by storm, helping us to make decisions in everything we do, even in finding our “true love” and the “significant other”. While 5G promises us high-speed mobile internet, 6G pledges to support ubiquitous AI services through next-generation softwarization, heterogeneity, and configurability of networks. The work on 6G is in its infancy and requires the community to conceptualize and develop its design, implementation, deployment, and use cases. Towards this end, this paper proposes a framework for Distributed AI as a Service (DAIaaS) provisioning for Internet of Everything (IoE) and 6G environments. The AI service is “distributed” because the actual training and inference computations are divided into smaller, concurrent, computations suited to the level and capacity of resources available with cloud, fog, and edge layers. Multiple DAIaaS provisioning configurations for distributed training and inference are proposed to investigate the design choices and performance bottlenecks of DAIaaS. Specifically, we have developed three case studies (e.g., smart airport) with eight scenarios (e.g., federated learning) comprising nine applications and AI delivery models (smart surveillance, etc.) and 50 distinct sensor and software modules (e.g., object tracker). The evaluation of the case studies and the DAIaaS framework is reported in terms of end-to-end delay, network usage, energy consumption, and financial savings with recommendations to achieve higher performance. DAIaaS will facilitate standardization of distributed AI provisioning, allow developers to focus on the domain-specific details without worrying about distributed training and inference, and help systemize the mass-production of technologies for smarter environments.
机译:人工智能(AI)让我们驾驭我们,帮助我们在我们所做的一切中做出决定,即使在找到我们的“真正的爱”和“重要的其他”中。虽然5G承诺通过下一代软态,异质性和网络可配置性支持美国高速移动互联网,6G合资支持普遍存在的AI服务。 6G的工作是其初期,并要求社区概念化和开发其设计,实施,部署和用例。为此,本文提出了一种分布式AI作为服务(DAIAAS)供应的互联网(IOE)和6G环境的服务框架。 AI服务是“分布式”,因为实际培训和推理计算分为较小,并发,适用于云,雾和边缘层可用的资源的级别和容量的计算。提出了多种DaiaAS供应配置,用于分布式培训和推理的配置,以研究DaiaAs的设计选择和性能瓶颈。具体而言,我们开发了三种情况(例如,智能机场),其中包括八种情况(例如,联合学习),包括九个应用程序和AI传递模型(智能监控等)和50个不同的传感器和软件模块(例如,对象跟踪器) 。根据端到端延迟,网络使用,能源消耗和金融节省,评估案例研究和DAIAAS框架的评估,并与建议实现更高的性能。 DaiaAs将促进分布式AI供应的标准化,允许开发人员专注于具体领域的细节,而无需担心分布式培训和推理,并帮助系统化智能环境的批量生产。

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