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Adaptive Scheduling for Machine Learning Tasks over Networks

机译:网络上机器学习任务的自适应调度

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A key functionality of emerging connected autonomous systems such as smart transportation systems, smart cities, and the industrial Internet-of-Things, is the ability to process and learn from data collected at different physical locations. This is increasingly attracting attention under the terms of distributed learning and federated learning. However, in this setup data transfer takes place over communication resources that are shared among many users and tasks or subject to capacity constraints. This paper examines algorithms for efficiently allocating resources to linear regression tasks by exploiting the informativeness of the data. The algorithms developed enable adaptive scheduling of learning tasks with reliable performance guarantees.
机译:诸如智能运输系统,智能城市和工业互联网等新兴的自治系统的关键功能是能够处理和学习在不同物理位置收集的数据。 这越来越多地引起了分布式学习和联邦学习的关注。 但是,在此设置中,数据传输通过许多用户和任务之间共享的通信资源或受容量约束来进行。 本文通过利用数据的信息性,研究了有效地将资源有效分配给线性回归任务的算法。 该算法开发了具有可靠性能保证的学习任务的自适应调度。

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