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MOORE: Multi-Dimension Resources Optimization for 6G IoT Net with Generative Artificial Intelligence

Reference number
Coordinator Kungliga Tekniska Högskolan - Avdelningen för teknisk informationsvetenskap
Funding from Vinnova SEK 2 699 600
Project duration October 2024 - September 2026
Status Ongoing
Venture 6G - Competence supply

Purpose and goal

6G IoT will fundamentally change our interaction with physical world. However, it also poses severe challenges, especially in managing resources and meet demands for latency, reliability etc. We will explore Generative AI to solve the problems. First, we will establish a framework for resource modeling, targeting optimizating service. Then, we will use Generative Decision Model (GDM) to streamline intent extraction, facilitating swift decision-making and improving the adaptability. Finally, we will leverage GDM to craft incentive structures, to enhance user experience.

Expected effects and result

The expected effects include a trained researcher and also technical improvements. One Postdoc fellow will be trained. Multiple technical reports will be delivered, including 2 reports (and 2 journal articles) and also 1 set of open software in simulations.

Planned approach and implementation

The project is planned to be 2 years, and has three work packages (WPs): WP1 aims at designing measurements for multi-dimensional resources, WP2 investigate the utilization of GDM for adaptive resource management, and in WP3, we seek to use GDM to ensure fairness in resource sharing. By integrating GAI as a solution to the multifaceted challenges of 6G IoT, we seek to expand and redefine the capabilities and applications of 6G IoT in real-world contexts.

The project description has been provided by the project members themselves and the text has not been looked at by our editors.

Last updated 17 June 2024

Reference number 2024-01698