Nordine Quadar, Mohamed Rahouti, Moussa Ayyash, S. Jagatheesaperumal, Abdellah Chehri
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引用次数: 0
摘要
物联网(IoT)是基于互联网的延伸,它的出现极大地改变了我们的日常生活。将人工智能(AI)和机器学习(ML)集成到物联网网络中,有可能实现自动响应并提高决策能力。然而,为了解决人工智能/ML 应用的实际和研究问题,管理大型物联网网络进行实验是必不可少的。研究人员面临的重大挑战之一是支持物联网和人工智能/移动语言的测试平台稀缺。虽然有很多物联网或人工智能/ML 的测试平台,但很少有同时包含这两种技术的。这给研究界带来了巨大的空白,因为我们亟需一个既能模拟真实世界物联网场景,又具备人工智能算法功能的测试平台。为了应对这一挑战,我们提出了一种结合物联网和人工智能/ML 的综合测试平台架构。该架构有助于模拟真实的物联网场景,使研究人员能够利用 ML 能力来开发和增强新型算法和应用。
IoT-AI/Machine Learning Experimental Testbeds: The Missing Piece
The Internet of Things (IoT) has emerged as an Internet-based extension and considerably changed our daily life. The integration of artificial intelligence (AI) and machine learning (ML) into IoT networks has the potential to enable automated responses and improved decision-making capabilities. Nonetheless, administering large IoT networks for experimental purposes is essential for addressing the practical and research implications of diverse AI/ML applications. One of the significant challenges researchers face is the scarcity of testbeds that support IoT and AI/ML. Although there are many testbeds for either IoT or AI/ML, few incorporate both technologies. This creates a significant gap in the research community, as there is a strong need for a testbed that can mimic real-world IoT scenarios while also having ML algorithms capabilities. In order to tackle this challenge, we put forth a comprehensive testbed architecture that combines the IoT and AI/ML. This architecture facilitates the simulation of authentic IoT scenarios, empowering researchers to leverage the ML capability to develop and enhance novel algorithms and applications.