LLM-Twin: Mini-Giant Model-driven Beyond 5G Digital Twin Networking Framework with Semantic Secure Communication and Computation
Yang Hong, Jun Wu, and Rosario Morello

TL;DR
This paper introduces LLM-Twin, a novel digital twin networking framework leveraging large language models for efficient, secure, and multimodal data processing in beyond 5G networks, addressing current resource and security challenges.
Contribution
The paper proposes a pioneering LLM-based digital twin networking framework with a mini-giant model collaboration scheme and semantic-level secure communication, enhancing efficiency and multimodal data handling.
Findings
Demonstrates feasibility through numerical experiments.
Achieves high communication efficiency and security.
Handles multimodal data effectively.
Abstract
Beyond 5G networks provide solutions for next-generation communications, especially digital twins networks (DTNs) have gained increasing popularity for bridging physical space and digital space. However, current DTNs networking frameworks pose a number of challenges especially when applied in scenarios that require high communication efficiency and multimodal data processing. First, current DTNs frameworks are unavoidable regarding high resource consumption and communication congestion because of original bit-level communication and high-frequency computation, especially distributed learning-based DTNs. Second, current machine learning models for DTNs are domain-specific (e.g. E-health), making it difficult to handle DT scenarios with multimodal data processing requirements. Last but not least, current security schemes for DTNs, such as blockchain, introduce additional overheads that…
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Taxonomy
TopicsDigital Transformation in Industry
