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Comparison study between conventional machine learning and distributed multi-task learning models

机译:传统机器学习与分布式多任务学习模型的比较研究

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Applying machine learning in IoT devices is a challenge due to various reasons, such as the tremendous amount of data generated from IoT, the limitation of IoT devices' resources, and the non-IID nature of IoT data. On the other hand, transferring the generated IoT data to the cloud to train machine learning models consumes a lot of Bandwidth. Applying the distributed learning aspect in IoT large-scale deployments solves such issues, by employing edge computing devices as local cloud models in each location. This solution enhances the network overhead and helps in obtaining general models. However, this comes at the expense of the accuracy of the generated models. This paper provides a comparison study between applying a conventional machine learning model with a distributed multi-task learning model and discusses the factors that affect the distributed multi-task learning model.
机译:由于各种原因,在IOT设备中应用机器学习是一个挑战,例如从物联网生成的大量数据,限制IoT设备的资源,以及物联网数据的非IID性质。另一方面,将生成的物联网数据传送到云以训练机器学习模型消耗很多带宽。应用IOT大规模部署中的分布式学习方面通过使用边缘计算设备作为每个位置的本地云模型来解决此类问题。该解决方案增强了网络开销,并有助于获得一般模型。但是,这牺牲了所生成模型的准确性。本文提供了与分布式多任务学习模型应用传统机器学习模型之间的比较研究,并讨论了影响分布式多任务学习模型的因素。

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