Automatic AI Model Selection for Wireless Systems: Online Learning via Digital Twinning
Qiushuo Hou, Matteo Zecchin, Sangwoo Park, Yunlong Cai, Guanding Yu,, Kaushik Chowdhury, Osvaldo Simeone

TL;DR
This paper presents a novel online optimization method for automatic AI model selection in wireless systems, leveraging digital twins and limited real data to improve performance despite simulator imperfections.
Contribution
It introduces a bias-correction technique for digital twin-based online optimization of AMS mappings in wireless AI applications.
Findings
Significant performance improvements over baseline methods
Effective bias correction using limited real data
Validated on graph neural network-based power control app
Abstract
In modern wireless network architectures, such as O-RAN, artificial intelligence (AI)-based applications are deployed at intelligent controllers to carry out functionalities like scheduling or power control. The AI "apps" are selected on the basis of contextual information such as network conditions, topology, traffic statistics, and design goals. The mapping between context and AI model parameters is ideally done in a zero-shot fashion via an automatic model selection (AMS) mapping that leverages only contextual information without requiring any current data. This paper introduces a general methodology for the online optimization of AMS mappings. Optimizing an AMS mapping is challenging, as it requires exposure to data collected from many different contexts. Therefore, if carried out online, this initial optimization phase would be extremely time consuming. A possible solution is to…
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Taxonomy
TopicsDigital Transformation in Industry
