The content discusses the application of Large Language Models (LLMs) in accelerating radio spectrum regulation workflows. It highlights the challenges faced in spectrum regulation due to technological advancements, increasing demand, and diverse stakeholders. The paper explores the role of LLMs in streamlining regulatory processes, decision-making, and ensuring comprehensive responses to inquiries. Various applications of LLMs in stakeholder consultations, rules as code, knowledge-base question answering, and automating processes are detailed. The challenges of unconscious bias, inaccuracy, automation bias, and legal risks associated with LLMs are addressed. Real-world case studies demonstrate the practical implementation of LLMs in spectrum regulation tasks. Lessons learned during the implementation of LLM-based question-answering systems are shared, emphasizing the importance of human oversight and metadata in ensuring accuracy and fairness. The conclusion highlights the promising future prospects of integrating LLMs into regulatory workflows for efficient spectrum regulation.
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