Music Curriculum Research Using a Large Language Model, Cloud Computing and Data Mining Technologies

Authors

  • Yuting Shang Nanchong Vocational and Technical College, Nanchong 637131, China

DOI:

https://doi.org/10.13052/jwe1540-9589.2323

Keywords:

Large language model, cloud computing, data mining, music, curriculum model

Abstract

This paper presents a method to enhance the scientific nature of the music curriculum model by integrating a large language model, cloud computing and data mining technology for the analysis of the music teaching curriculum model. To maintain the integrity of the mixing matrix while employing the frequency hopping frequency, the paper suggests dividing the mixing matrix into a series of sub-matrices along the vertical time axis. This approach transforms wideband music signal processing into a narrowband processing problem. Additionally, two hybrid matrix estimation algorithms are proposed in this paper using underdetermined conditions. Furthermore, utilizing the estimated mixing matrix and the detected time-frequency support domain, the paper employs the subspace projection algorithm for underdetermined blind separation of music signals in the time-frequency domain. This procedure, along with the integration of the estimated direction of arrival (DoA), enables the completion of frequency-hopping network station music signal sorting. Extensive simulation teaching demonstrates that the music curriculum model proposed in this paper, based on a large language model, cloud computing and data mining technologies, significantly enhances the quality of modern music teaching.

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Author Biography

Yuting Shang, Nanchong Vocational and Technical College, Nanchong 637131, China

Yuting Shang has successfully completed the requirements for and been awarded a Master’s degree. Currently, she is employed in Nanchong Vocational and Technical College. Her research interests lie in the application of computer science within the domain of music education..

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Published

2024-04-08

How to Cite

Shang, Y. (2024). Music Curriculum Research Using a Large Language Model, Cloud Computing and Data Mining Technologies. Journal of Web Engineering, 23(02), 251–274. https://doi.org/10.13052/jwe1540-9589.2323

Issue

Section

Advances, Risks, Solutions, and Ethics in Generative AI for Web Engineering